def get_btchromas_loudness(h5): """ Similar to btchroma, but adds the loudness back. We use the segments_loudness_max There is no max value constraint, simply no negative values. """ # if string, open and get chromas, if h5, get chromas if type(h5).__name__ == "str": h5 = GETTERS.open_h5_file_read(h5) chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) loudnessmax = GETTERS.get_segments_loudness_max(h5) h5.close() else: chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) loudnessmax = GETTERS.get_segments_loudness_max(h5) # get the series of starts for segments and beats segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # add back loudness chromas = chromas.T * idB(loudnessmax) # aligned features btchroma = align_feats(chromas, segstarts, btstarts, duration) if btchroma is None: return None # done (no renormalization) return btchroma
def get_btchromas_loudness(h5): """ Similar to btchroma, but adds the loudness back. We use the segments_loudness_max There is no max value constraint, simply no negative values. """ # if string, open and get chromas, if h5, get chromas if type(h5).__name__ == 'str': h5 = GETTERS.open_h5_file_read(h5) chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) loudnessmax = GETTERS.get_segments_loudness_max(h5) h5.close() else: chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) loudnessmax = GETTERS.get_segments_loudness_max(h5) # get the series of starts for segments and beats segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # add back loudness chromas = chromas.T * idB(loudnessmax) # aligned features btchroma = align_feats(chromas, segstarts, btstarts, duration) if btchroma is None: return None # done (no renormalization) return btchroma
def get_bttimbre(h5): """ Get beat-aligned timbre from a song file of the Million Song Dataset INPUT: h5 - filename or open h5 file RETURN: bttimbre - beat-aligned timbre, one beat per column or None if something went wrong (e.g. no beats) """ # if string, open and get timbre, if h5, get timbre if type(h5).__name__ == "str": h5 = GETTERS.open_h5_file_read(h5) timbre = GETTERS.get_segments_timbre(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) h5.close() else: timbre = GETTERS.get_segments_timbre(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) # get the series of starts for segments and beats # NOTE: MAYBE USELESS? # result for track: 'TR0002Q11C3FA8332D' # segstarts.shape = (708,) # btstarts.shape = (304,) segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # aligned features bttimbre = align_feats(timbre.T, segstarts, btstarts, duration) if bttimbre is None: return None # done (no renormalization) return bttimbre
def get_bttimbre(h5): """ Get beat-aligned timbre from a song file of the Million Song Dataset INPUT: h5 - filename or open h5 file RETURN: bttimbre - beat-aligned timbre, one beat per column or None if something went wrong (e.g. no beats) """ # if string, open and get timbre, if h5, get timbre if type(h5).__name__ == 'str': h5 = GETTERS.open_h5_file_read(h5) timbre = GETTERS.get_segments_timbre(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) h5.close() else: timbre = GETTERS.get_segments_timbre(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) # get the series of starts for segments and beats # NOTE: MAYBE USELESS? # result for track: 'TR0002Q11C3FA8332D' # segstarts.shape = (708,) # btstarts.shape = (304,) segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # aligned features bttimbre = align_feats(timbre.T, segstarts, btstarts, duration) if bttimbre is None: return None # done (no renormalization) return bttimbre
def get_bttatums(h5): """ Get beat-aligned timbre from a song file of the Million Song Dataset INPUT: h5 - filename or open h5 file RETURN: bttimbre - beat-aligned timbre, one beat per column or None if something went wrong (e.g. no beats) """ # if string, open and get timbre, if h5, get timbre if type(h5).__name__ == 'str': h5 = GETTERS.open_h5_file_read(h5) tatums = GETTERS.get_tatums_start(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) h5.close() else: tatums = GETTERS.get_tatums_start(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) tatums = np.array([tatums]) segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # aligned features bttatums = align_feats(tatums, segstarts, btstarts, duration) if bttatums is None: return None # done (no renormalization) return bttatums
def msd_beatchroma(filename): """ Get the same beatchroma as Dan Our filename is the full path TESTED """ nchr=12 # get segments, pitches, beats, loudness h5 = GETTERS.open_h5_file_read(filename) pitches = GETTERS.get_segments_pitches(h5).T loudness = GETTERS.get_segments_loudness_start(h5) Tsegs = GETTERS.get_segments_start(h5) Tbeats = GETTERS.get_beats_start(h5) h5.close() # sanity checks if len(Tsegs) < 3 or len(Tbeats) < 2: return None # get chroma and apply per segments loudness Segs = pitches * np.tile(np.power(10., loudness/20.), (nchr, 1)) if Segs.shape[0] < 12 or Segs.shape[1] < 3: return None # properly figure time overlaps and weights C = resample_mx(Segs, Tsegs, Tbeats) # renormalize columns n = C.max(axis=0) return C * np.tile(1./n, (nchr, 1))
def msd_beatchroma(filename): """ Get the same beatchroma as Dan Our filename is the full path TESTED """ nchr = 12 # get segments, pitches, beats, loudness h5 = GETTERS.open_h5_file_read(filename) pitches = GETTERS.get_segments_pitches(h5).T loudness = GETTERS.get_segments_loudness_start(h5) Tsegs = GETTERS.get_segments_start(h5) Tbeats = GETTERS.get_beats_start(h5) h5.close() # sanity checks if len(Tsegs) < 3 or len(Tbeats) < 2: return None # get chroma and apply per segments loudness Segs = pitches * np.tile(np.power(10., loudness / 20.), (nchr, 1)) if Segs.shape[0] < 12 or Segs.shape[1] < 3: return None # properly figure time overlaps and weights C = resample_mx(Segs, Tsegs, Tbeats) # renormalize columns n = C.max(axis=0) return C * np.tile(1. / n, (nchr, 1))
def hdf5_to_features(file_name): """ Receives path to HDF5 file, returns 2 lists of identification for the song as well as the features for the algorithm. Parameters ---------- file_name : str Absolute path to the HDF5 file. Returns ------- list1 : list List consisting of ID, song title and artist name. list2 : list 34 features to represent the song. """ with hdf5_getters.open_h5_file_read(file_name) as reader: # ID ID = hdf5_getters.get_song_id(reader) title = hdf5_getters.get_title(reader) artist = hdf5_getters.get_artist_name(reader) # Features 1-4 beat_starts = hdf5_getters.get_beats_start(reader) beat_durations = np.diff(beat_starts, axis=0) # try: tempo_10, tempo_90 = np.quantile(beat_durations, [0.1, 0.9]) # except: # print(beat_durations) # exit() temp_var = np.var(beat_durations) temp_mean = np.mean(beat_durations) # Features 5-8 segment_loudness = hdf5_getters.get_segments_loudness_max(reader) loud_10, loud_90 = np.quantile(segment_loudness, [0.1, 0.9]) loud_var = np.var(segment_loudness) loud_mean = np.mean(segment_loudness) # Features 9-21 pitch_dominance = hdf5_getters.get_segments_pitches(reader) pitch_means = pitch_dominance.mean(axis=0) pitch_var = pitch_means.var() # Features 22-34 timbre = hdf5_getters.get_segments_timbre(reader) timbre_means = timbre.mean(axis=0) timbre_var = timbre_means.var() return [ID, title, artist], [ tempo_10, tempo_90, temp_var, temp_mean, loud_10, loud_90, loud_var, loud_mean ] + list(pitch_means) + [pitch_var] + list(timbre_means) + [timbre_var]
def get_btloudnessmax(h5): """ Get beat-aligned loudness max from a song file of the Million Song Dataset INPUT: h5 - filename or open h5 file RETURN: btloudnessmax - beat-aligned loudness max, one beat per column or None if something went wrong (e.g. no beats) """ # if string, open and get max loudness, if h5, get max loudness if type(h5).__name__ == 'str': h5 = GETTERS.open_h5_file_read(h5) loudnessmax = GETTERS.get_segments_loudness_max(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) h5.close() else: loudnessmax = GETTERS.get_segments_loudness_max(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) # get the series of starts for segments and beats # NOTE: MAYBE USELESS? # result for track: 'TR0002Q11C3FA8332D' # segstarts.shape = (708,) # btstarts.shape = (304,) segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # reverse dB loudnessmax = idB(loudnessmax) # aligned features btloudnessmax = align_feats(loudnessmax.reshape(1, loudnessmax.shape[0]), segstarts, btstarts, duration) if btloudnessmax is None: return None # set it back to dB btloudnessmax = dB(btloudnessmax + 1e-10) # done (no renormalization) return btloudnessmax
def get_btchromas(h5): """ Get beat-aligned chroma from a song file of the Million Song Dataset INPUT: h5 - filename or open h5 file RETURN: btchromas - beat-aligned chromas, one beat per column or None if something went wrong (e.g. no beats) """ # if string, open and get chromas, if h5, get chromas if type(h5).__name__ == 'str': h5 = GETTERS.open_h5_file_read(h5) chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) h5.close() else: chromas = GETTERS.get_segments_pitches(h5) segstarts = GETTERS.get_segments_start(h5) btstarts = GETTERS.get_beats_start(h5) duration = GETTERS.get_duration(h5) # get the series of starts for segments and beats # NOTE: MAYBE USELESS? # result for track: 'TR0002Q11C3FA8332D' # segstarts.shape = (708,) # btstarts.shape = (304,) segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() # aligned features btchroma = align_feats(chromas.T, segstarts, btstarts, duration) if btchroma is None: return None # Renormalize. Each column max is 1. maxs = btchroma.max(axis=0) maxs[np.where(maxs == 0)] = 1. btchroma = (btchroma / maxs) # done return btchroma
def process_song(h5_song_file): song = {} song['artist_familiarity'] = hdf5_getters.get_artist_familiarity(h5) song['artist_id'] = hdf5_getters.get_artist_id(h5) song['artist_name'] = hdf5_getters.get_artist_name(h5) song['artist_hotttnesss'] = hdf5_getters.get_artist_hotttnesss(h5); song['title'] = hdf5_getters.get_title(h5) terms = hdf5_getters.get_artist_terms(h5) terms_freq = hdf5_getters.get_artist_terms_freq(h5) terms_weight = hdf5_getters.get_artist_terms_weight(h5) terms_array = [] # Creating a array of [term, its frequency, its weight]. Doing this for all terms associated # with the artist for i in range(len(terms)): terms_array.append([terms[i], terms_freq[i], terms_weight[i]]) song['artist_terms'] = terms_array beats_start = hdf5_getters.get_beats_start(h5) song['beats_start_variance'] = variance(beats_start) #beats variance in yocto seconds(10^-24s) song['number_of_beats'] = len(beats_start) song['duration'] = hdf5_getters.get_duration(h5) song['loudness'] = hdf5_getters.get_loudness(h5) sections_start = hdf5_getters.get_sections_start(h5) song['sections_start_variance'] = variance(sections_start) song['number_of_sections'] = len(sections_start) segments_pitches = hdf5_getters.get_segments_pitches(h5) (a0, a1, a2, a3, a4, a5, a6, a7, a8, a9, a10, a11) = split_segments(segments_pitches) song['segments_pitches_variance'] = [variance(a0), variance(a1), variance(a2), variance(a3), variance(a4), variance(a5), variance(a6), variance(a7), variance(a8), variance(a9), variance(a10), variance(a11)] song['segments_pitches_mean'] = [mean(a0), mean(a1), mean(a2), mean(a3), mean(a4), mean(a5), mean(a6), mean(a7), mean(a8), mean(a9), mean(a10), mean(a11)] segments_timbre = hdf5_getters.get_segments_timbre(h5) (a0, a1, a2, a3, a4, a5, a6, a7, a8, a9, a10, a11) = split_segments(segments_timbre) song['segments_timbre_variance'] = [variance(a0), variance(a1), variance(a2), variance(a3), variance(a4), variance(a5), variance(a6), variance(a7), variance(a8), variance(a9), variance(a10), variance(a11)] song['segments_timbre_mean'] = [mean(a0), mean(a1), mean(a2), mean(a3), mean(a4), mean(a5), mean(a6), mean(a7), mean(a8), mean(a9), mean(a10), mean(a11)] song['tempo'] = hdf5_getters.get_tempo(h5) song['_id'] = hdf5_getters.get_song_id(h5) song['year'] = hdf5_getters.get_year(h5) return song
def extractFeatures(self): with hdf5_getters.open_h5_file_read(self.h5) as h5: self.tempo = hdf5_getters.get_tempo(h5, 0) ## Select the first 20 segments of the song self.segments_start = hdf5_getters.get_segments_start(h5)[0:20] ## Each segment has 12 timbre coeffs self.segments_timbre = hdf5_getters.get_segments_timbre( h5)[0:20].flatten() ## Each segment contains info on 12 pitch classes (C, C#, D to B) self.segments_pitches = hdf5_getters.get_segments_timbre( h5)[0:20].flatten() ## Segment intensity points self.segments_loudness_max = hdf5_getters.get_segments_loudness_max( h5)[0:20].flatten() ## Beats self.beats_start = hdf5_getters.get_beats_start(h5) self.beats_duration = np.diff(self.beats_start)[0:20] self.beats_average_period = np.mean(self.beats_duration)
def convert_to_csv(): i = 0 data = [] target = [] count = 0 with open('data_timbre.csv', 'w+') as f: with open('target_timbre.csv', 'w+') as f2: writer = csv.writer(f) target_writer = csv.writer(f2) for root, dirs, files in os.walk(msd_subset_data_path): files = glob.glob(os.path.join(root,'*.h5')) for f in sorted(files): try: # Opening is very prone to causing exceptions, we'll just skip file if exception is thrown h5 = getter.open_h5_file_read(f) year = getter.get_year(h5) if year: count +=1 analysis_file = open('current_analysis_status.txt','a') update = "Currently at file name: " + str(f) + " and at number " + str(count) + "\n" analysis_file.write(update) print update analysis_file.close() target.append([year]) row = [] timbre = getter.get_segments_timbre(h5) segstarts = getter.get_segments_start(h5) btstarts = getter.get_beats_start(h5) duration = getter.get_duration(h5) end_of_fade_in = getter.get_end_of_fade_in(h5) key = getter.get_key(h5) key_confidence = getter.get_key_confidence(h5) loudness = getter.get_loudness(h5) start_of_fade_out = getter.get_start_of_fade_out(h5) tempo = getter.get_tempo(h5) time_signature = getter.get_time_signature(h5) time_signature_confidence = getter.get_time_signature_confidence(h5) h5.close() # VERY IMPORTANT segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() bttimbre = align_feats(timbre.T, segstarts, btstarts, duration, end_of_fade_in, key, key_confidence, loudness, start_of_fade_out, tempo, time_signature, time_signature_confidence) if bttimbre is None: continue # Skip this track, some features broken npicks, winsize, finaldim = 12, 12, 144 # Calculated by 12 * 12. 12 is fixed as number of dimensions. processed_feats = extract_and_compress(bttimbre, npicks, winsize, finaldim) n_p_feats = processed_feats.shape[0] if processed_feats is None: continue # Skip this track, some features broken row = processed_feats.flatten() if len(row) != 12*144: # 12 dimensions * 144 features per dimension continue # Not enough features year_row = np.array([year]) if row.any() and year_row.any(): writer.writerow(row) target_writer.writerow(year_row) i+=1 else: h5.close() except Exception: pass print 'Finished!' analysis_file = open('current_analysis_status.txt','a') analysis_file.write('Done!') analysis_file.close() return
duration = hdf5_getters.get_duration(h5, songidx=row) energy = hdf5_getters.get_energy(h5, songidx=row) loudness = hdf5_getters.get_loudness(h5, songidx=row) musicalKey = hdf5_getters.get_key(h5, songidx=row) mode = hdf5_getters.get_mode(h5, songidx=row) tempo = hdf5_getters.get_tempo(h5, songidx=row) time_signature = hdf5_getters.get_time_signature(h5, songidx=row) year = hdf5_getters.get_year(h5, songidx=row) song_hottness = hdf5_getters.get_song_hotttnesss(h5, songidx=row) end_of_fade_in = hdf5_getters.get_end_of_fade_in(h5, songidx=row) start_of_fade_out = hdf5_getters.get_start_of_fade_out(h5, songidx=row) #timestamp features #take last element and divide by length to get beats/unit time, segments/unit_time bars_start = hdf5_getters.get_bars_start(h5, songidx=row) beats_start = hdf5_getters.get_beats_start(h5, songidx=row) sections_start = hdf5_getters.get_sections_start(h5, songidx=row) tatums_start = hdf5_getters.get_tatums_start(h5, songidx=row) segments_start = hdf5_getters.get_segments_start(h5, songidx=row) if len(bars_start) == 0: bars_start = 0. else: bars_start = bars_start[-1] / len(bars_start) if len(beats_start) == 0: beats_start = 0. else: beats_start = beats_start[-1] / len(beats_start) if len(sections_start) == 0: sections_start = 0. else: sections_start = sections_start[-1] / len(sections_start) if len(tatums_start) == 0: tatums_start = 0. else: tatums_start = tatums_start[-1] / len(tatums_start) if len(segments_start) == 0: segments_start = 0. else: segments_start = segments_start[-1] / len(segments_start) #time series features
def getData(starting_point): starting = starting_point * 10000 files = glob.glob('/mnt/snap/data/*/*/*/*.h5') file_one_round = files[starting:starting + 10000] artist_ids = [] song_beats_persecond = [] song_duration = [] song_end_fade_in = [] song_start_fade_out = [] song_key = [] song_loudness = [] song_segments_loudness_max = [] song_segments_loudness_min = [] song_segments_loudness_med = [] song_segments_loudness_time_max = [] song_segments_loudness_time_min = [] song_segments_loudness_time_med = [] song_mode = [] song_sections_start = [] song_pitches = [] song_timbre = [] song_tempo = [] song_time_signature = [] song_title = [] artist_name = [] year = [] idx = np.triu_indices(12) #count = 1 for f in file_one_round: h5 = HDF5.open_h5_file_read(f) songYear = g.get_year(h5) if songYear < 1990: continue artist_id = g.get_artist_id(h5) song_beat = (g.get_beats_start(h5)).tolist() songDuration = g.get_duration(h5) song_beat_persecond = float(len(song_beat)) / songDuration song_end_fadein = g.get_end_of_fade_in(h5) song_start_fadeout = g.get_start_of_fade_out(h5) songKey = g.get_key(h5) songLoudness = g.get_loudness(h5) song_loudness_max = (g.get_segments_loudness_max(h5)) // 10 song_loudness_antilog = np.power(10, song_loudness_max) song_segmentsLoudness_max = np.amax(song_loudness_antilog) song_segmentsLoudness_min = np.amin(song_loudness_antilog) song_segmentsLoudness_med = np.median(song_loudness_antilog) song_segmentsLoudness_max_time = ( g.get_segments_loudness_max_time(h5)).tolist() song_loudness_time = np.multiply(song_loudness_antilog, song_segmentsLoudness_max_time) song_segmentsLoudnessTime_max = np.amax(song_loudness_time) song_segmentsLoudnessTime_min = np.amin(song_loudness_time) song_segmentsLoudnessTime_med = np.median(song_loudness_time) songMode = g.get_mode(h5) song_sectionsStart = (g.get_sections_start(h5)).tolist() songPitches = g.get_segments_pitches(h5) songPitches_cov = np.cov(songPitches, rowvar=False) songPitches_mean = np.mean(songPitches, axis=0) #print(songPitches_cov.shape) songTimbre = g.get_segments_timbre(h5) songTimbre_cov = np.cov(songTimbre, rowvar=False) songTimbre_mean = np.mean(songTimbre, axis=0) #print(songTimbre_cov.shape) songTempo = g.get_tempo(h5) songTime_signature = g.get_time_signature(h5) songTitle = g.get_title(h5) artistName = g.get_artist_name(h5) artist_ids.append(artist_id) song_beats_persecond.append(song_beat_persecond) song_duration.append(songDuration) song_end_fade_in.append(song_end_fadein) song_start_fade_out.append(song_start_fadeout) song_key.append(songKey) song_loudness.append(songLoudness) song_segments_loudness_max.append(song_segmentsLoudness_max) song_segments_loudness_min.append(song_segmentsLoudness_min) song_segments_loudness_med.append(song_segmentsLoudness_med) song_segments_loudness_time_max.append(song_segmentsLoudnessTime_max) song_segments_loudness_time_min.append(song_segmentsLoudnessTime_min) song_segments_loudness_time_med.append(song_segmentsLoudnessTime_med) song_mode.append(songMode) song_sections_start.append(song_sectionsStart) pitches_mean_cov = (songPitches_cov[idx]).tolist() pitches_mean_cov.extend((songPitches_mean).tolist()) song_pitches.append(pitches_mean_cov) timbre_mean_cov = (songTimbre_cov[idx]).tolist() timbre_mean_cov.extend((songTimbre_mean).tolist()) song_timbre.append(timbre_mean_cov) song_tempo.append(songTempo) song_time_signature.append(songTime_signature) song_title.append(songTitle) artist_name.append(artistName) year.append(songYear) #print(count) #count = count + 1 h5.close() #def createDictsFrom2DArray(dictionary, colName, featureList): # for i in range(0,12): # dictionary[colName+str(i)] = featureList[i] #i = 1 #for t in itertools.izip_longest(*featureList): # dictionary[colName+str(i)] = t # i = i + 1 # return dictionary data = collections.OrderedDict() data['year'] = year data['artist_name'] = artist_name data['artist_id'] = artist_ids data['song_title'] = song_title data['song_beats_persecond'] = song_beats_persecond data['song_duration'] = song_duration data['song_end_fade_in'] = song_end_fade_in data['song_start_fade_out'] = song_start_fade_out data['song_key'] = song_key data['song_loudness'] = song_loudness data['song_loudness_max'] = song_segments_loudness_max data['song_loudness_min'] = song_segments_loudness_min data['song_loudness_med'] = song_segments_loudness_med data['song_loudness_time_max'] = song_segments_loudness_time_max data['song_loudness_time_min'] = song_segments_loudness_time_min data['song_loudness_time_med'] = song_segments_loudness_time_med data['song_mode'] = song_mode data['song_tempo'] = song_tempo data['song_time_signature'] = song_time_signature data = createDictsFrom1DArray(data, 'pitches', song_pitches) data = createDictsFrom1DArray(data, 'timbre', song_timbre) data = createDictsFrom1DArray(data, 'sections_start', song_sections_start) df = pd.DataFrame(data) print('before return ' + str(starting_point)) return df
def data_to_flat_file(basedir,ext='.h5') : """This function extract the information from the tables and creates the flat file.""" count = 0; #song counter list_to_write= [] row_to_write = "" writer = csv.writer(open("metadata_wholeA.csv", "wb")) for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root,'*'+ext)) for f in files: print f #the name of the file h5 = hdf5_getters.open_h5_file_read(f) title = hdf5_getters.get_title(h5) title= title.replace('"','') comma=title.find(',') #eliminating commas in the title if comma != -1: print title time.sleep(1) album = hdf5_getters.get_release(h5) album= album.replace('"','') #eliminating commas in the album comma=album.find(',') if comma != -1: print album time.sleep(1) artist_name = hdf5_getters.get_artist_name(h5) comma=artist_name.find(',') if comma != -1: print artist_name time.sleep(1) artist_name= artist_name.replace('"','') #eliminating double quotes duration = hdf5_getters.get_duration(h5) samp_rt = hdf5_getters.get_analysis_sample_rate(h5) artist_7digitalid = hdf5_getters.get_artist_7digitalid(h5) artist_fam = hdf5_getters.get_artist_familiarity(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_fam) == True: artist_fam=-1 artist_hotness= hdf5_getters.get_artist_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_hotness) == True: artist_hotness=-1 artist_id = hdf5_getters.get_artist_id(h5) artist_lat = hdf5_getters.get_artist_latitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lat) == True: artist_lat=-1 artist_loc = hdf5_getters.get_artist_location(h5) #checks artist_loc to see if it is a hyperlink if it is set as empty string artist_loc = artist_loc.replace(",", "\,"); if artist_loc.startswith("<a"): artist_loc = "" if len(artist_loc) > 100: artist_loc = "" artist_lon = hdf5_getters.get_artist_longitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lon) == True: artist_lon=-1 artist_mbid = hdf5_getters.get_artist_mbid(h5) artist_pmid = hdf5_getters.get_artist_playmeid(h5) audio_md5 = hdf5_getters.get_audio_md5(h5) danceability = hdf5_getters.get_danceability(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(danceability) == True: danceability=-1 end_fade_in =hdf5_getters.get_end_of_fade_in(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(end_fade_in) == True: end_fade_in=-1 energy = hdf5_getters.get_energy(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(energy) == True: energy=-1 song_key = hdf5_getters.get_key(h5) key_c = hdf5_getters.get_key_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(key_c) == True: key_c=-1 loudness = hdf5_getters.get_loudness(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(loudness) == True: loudness=-1 mode = hdf5_getters.get_mode(h5) mode_conf = hdf5_getters.get_mode_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(mode_conf) == True: mode_conf=-1 release_7digitalid = hdf5_getters.get_release_7digitalid(h5) song_hot = hdf5_getters.get_song_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(song_hot) == True: song_hot=-1 song_id = hdf5_getters.get_song_id(h5) start_fade_out = hdf5_getters.get_start_of_fade_out(h5) tempo = hdf5_getters.get_tempo(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(tempo) == True: tempo=-1 time_sig = hdf5_getters.get_time_signature(h5) time_sig_c = hdf5_getters.get_time_signature_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(time_sig_c) == True: time_sig_c=-1 track_id = hdf5_getters.get_track_id(h5) track_7digitalid = hdf5_getters.get_track_7digitalid(h5) year = hdf5_getters.get_year(h5) bars_c = hdf5_getters.get_bars_confidence(h5) bars_c_avg= get_avg(bars_c) bars_c_max= get_max(bars_c) bars_c_min = get_min(bars_c) bars_c_stddev= get_stddev(bars_c) bars_c_count = get_count(bars_c) bars_c_sum = get_sum(bars_c) bars_start = hdf5_getters.get_bars_start(h5) bars_start_avg = get_avg(bars_start) bars_start_max= get_max(bars_start) bars_start_min = get_min(bars_start) bars_start_stddev= get_stddev(bars_start) bars_start_count = get_count(bars_start) bars_start_sum = get_sum(bars_start) beats_c = hdf5_getters.get_beats_confidence(h5) beats_c_avg= get_avg(beats_c) beats_c_max= get_max(beats_c) beats_c_min = get_min(beats_c) beats_c_stddev= get_stddev(beats_c) beats_c_count = get_count(beats_c) beats_c_sum = get_sum(beats_c) beats_start = hdf5_getters.get_beats_start(h5) beats_start_avg = get_avg(beats_start) beats_start_max= get_max(beats_start) beats_start_min = get_min(beats_start) beats_start_stddev= get_stddev(beats_start) beats_start_count = get_count(beats_start) beats_start_sum = get_sum(beats_start) sec_c = hdf5_getters.get_sections_confidence(h5) sec_c_avg= get_avg(sec_c) sec_c_max= get_max(sec_c) sec_c_min = get_min(sec_c) sec_c_stddev= get_stddev(sec_c) sec_c_count = get_count(sec_c) sec_c_sum = get_sum(sec_c) sec_start = hdf5_getters.get_sections_start(h5) sec_start_avg = get_avg(sec_start) sec_start_max= get_max(sec_start) sec_start_min = get_min(sec_start) sec_start_stddev= get_stddev(sec_start) sec_start_count = get_count(sec_start) sec_start_sum = get_sum(sec_start) seg_c = hdf5_getters.get_segments_confidence(h5) seg_c_avg= get_avg(seg_c) seg_c_max= get_max(seg_c) seg_c_min = get_min(seg_c) seg_c_stddev= get_stddev(seg_c) seg_c_count = get_count(seg_c) seg_c_sum = get_sum(seg_c) seg_loud_max = hdf5_getters.get_segments_loudness_max(h5) seg_loud_max_avg= get_avg(seg_loud_max) seg_loud_max_max= get_max(seg_loud_max) seg_loud_max_min = get_min(seg_loud_max) seg_loud_max_stddev= get_stddev(seg_loud_max) seg_loud_max_count = get_count(seg_loud_max) seg_loud_max_sum = get_sum(seg_loud_max) seg_loud_max_time = hdf5_getters.get_segments_loudness_max_time(h5) seg_loud_max_time_avg= get_avg(seg_loud_max_time) seg_loud_max_time_max= get_max(seg_loud_max_time) seg_loud_max_time_min = get_min(seg_loud_max_time) seg_loud_max_time_stddev= get_stddev(seg_loud_max_time) seg_loud_max_time_count = get_count(seg_loud_max_time) seg_loud_max_time_sum = get_sum(seg_loud_max_time) seg_loud_start = hdf5_getters.get_segments_loudness_start(h5) seg_loud_start_avg= get_avg(seg_loud_start) seg_loud_start_max= get_max(seg_loud_start) seg_loud_start_min = get_min(seg_loud_start) seg_loud_start_stddev= get_stddev(seg_loud_start) seg_loud_start_count = get_count(seg_loud_start) seg_loud_start_sum = get_sum(seg_loud_start) seg_pitch = hdf5_getters.get_segments_pitches(h5) pitch_size = len(seg_pitch) seg_start = hdf5_getters.get_segments_start(h5) seg_start_avg= get_avg(seg_start) seg_start_max= get_max(seg_start) seg_start_min = get_min(seg_start) seg_start_stddev= get_stddev(seg_start) seg_start_count = get_count(seg_start) seg_start_sum = get_sum(seg_start) seg_timbre = hdf5_getters.get_segments_timbre(h5) tatms_c = hdf5_getters.get_tatums_confidence(h5) tatms_c_avg= get_avg(tatms_c) tatms_c_max= get_max(tatms_c) tatms_c_min = get_min(tatms_c) tatms_c_stddev= get_stddev(tatms_c) tatms_c_count = get_count(tatms_c) tatms_c_sum = get_sum(tatms_c) tatms_start = hdf5_getters.get_tatums_start(h5) tatms_start_avg= get_avg(tatms_start) tatms_start_max= get_max(tatms_start) tatms_start_min = get_min(tatms_start) tatms_start_stddev= get_stddev(tatms_start) tatms_start_count = get_count(tatms_start) tatms_start_sum = get_sum(tatms_start) #Getting the genres genre_set = 0 #flag to see if the genre has been set or not art_trm = hdf5_getters.get_artist_terms(h5) trm_freq = hdf5_getters.get_artist_terms_freq(h5) trn_wght = hdf5_getters.get_artist_terms_weight(h5) a_mb_tags = hdf5_getters.get_artist_mbtags(h5) genre_indexes=get_genre_indexes(trm_freq) #index of the highest freq final_genre=[] genres_so_far=[] for i in range(len(genre_indexes)): genre_tmp=get_genre(art_trm,genre_indexes[i]) #genre that corresponds to the highest freq genres_so_far=genre_dict.get_genre_in_dict(genre_tmp) #getting the genre from the dictionary if len(genres_so_far) != 0: for i in genres_so_far: final_genre.append(i) genre_set=1 #genre was found in dictionary if genre_set == 1: col_num=[] for genre in final_genre: column=int(genre) #getting the column number of the genre col_num.append(column) genre_array=genre_columns(col_num) #genre array else: genre_array=genre_columns(-1) #the genre was not found in the dictionary transpose_pitch= seg_pitch.transpose() #this is to tranpose the matrix,so we can have 12 rows #arrays containing the aggregate values of the 12 rows seg_pitch_avg=[] seg_pitch_max=[] seg_pitch_min=[] seg_pitch_stddev=[] seg_pitch_count=[] seg_pitch_sum=[] i=0 #Getting the aggregate values in the pitches array for row in transpose_pitch: seg_pitch_avg.append(get_avg(row)) seg_pitch_max.append(get_max(row)) seg_pitch_min.append(get_min(row)) seg_pitch_stddev.append(get_stddev(row)) seg_pitch_count.append(get_count(row)) seg_pitch_sum.append(get_sum(row)) i=i+1 #extracting information from the timbre array transpose_timbre = seg_pitch.transpose() #tranposing matrix, to have 12 rows #arrays containing the aggregate values of the 12 rows seg_timbre_avg=[] seg_timbre_max=[] seg_timbre_min=[] seg_timbre_stddev=[] seg_timbre_count=[] seg_timbre_sum=[] i=0 for row in transpose_timbre: seg_timbre_avg.append(get_avg(row)) seg_timbre_max.append(get_max(row)) seg_timbre_min.append(get_min(row)) seg_timbre_stddev.append(get_stddev(row)) seg_timbre_count.append(get_count(row)) seg_timbre_sum.append(get_sum(row)) i=i+1 #Writing to the flat file writer.writerow([title,album,artist_name,year,duration,seg_start_count, tempo]) h5.close() count=count+1; print count;
def func_to_extract_features(filename): """ This function does 3 simple things: - open the song file - get artist ID and put it - close the file """ global cntnan global listfeatures cf = [] h5 = GETTERS.open_h5_file_read(filename) nanfound = 0 #Get target feature: song hotness #FEATURE 0 song_hotness = GETTERS.get_song_hotttnesss(h5) if math.isnan(song_hotness): nanfound = 1 cntnan = cntnan + 1 h5.close() return 0 elif song_hotness > 0.3 and song_hotness < 0.6: h5.close() return 0 else: if song_hotness <= 0.3: hotness_class = 0 elif song_hotness >= 0.6: hotness_class = 1 cf.append(hotness_class) #FEATURE 1 #Get song loudness song_loudness = GETTERS.get_loudness(h5) if math.isnan(song_loudness): nanfound = 1 cntnan = cntnan + 1 else: #cf.append(song_loudness) pass #FEATURE 2 #Get key of the song song_key = GETTERS.get_key(h5) if math.isnan(song_key): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(song_key) pass #FEATURE 3 song_duration = GETTERS.get_duration(h5) if math.isnan(song_duration): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(song_duration) pass #Feature 4 #Get song tempo song_tempo = GETTERS.get_tempo(h5) if math.isnan(song_tempo): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(song_tempo) pass #Feature 5: artist familarity artist_familiarity = GETTERS.get_artist_familiarity(h5) if math.isnan(artist_familiarity): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(artist_familiarity) pass #Feature 6: artist_hotness artist_hotness = GETTERS.get_artist_hotttnesss(h5) if math.isnan(artist_hotness): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(artist_hotness) pass #Feature 7 time signature time_signature = GETTERS.get_time_signature(h5) # cf.append(time_signature) #Feature 8 #Loudness COV loudness_segments = np.array(GETTERS.get_segments_loudness_max(h5)) loudness_cov = abs(variation(loudness_segments)) if math.isnan(loudness_cov): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(loudness_cov) pass #Feature 9 #Beat COV beat_segments = np.array(GETTERS.get_beats_start(h5)) beat_cov = abs(variation(beat_segments)) if math.isnan(beat_cov): nanfound = 1 cntnan = cntnan + 1 else: # cf.append(beat_cov) pass #Feature 10 #Year song_year = GETTERS.get_year(h5) if song_year == 0: nanfound = 1 cntnan = cntnan + 1 else: # cf.append(song_year) pass title = GETTERS.get_title(h5) if title in energydict: audio_summary = energydict[title] energy = audio_summary['energy'] danceability = audio_summary['danceability'] speechiness = audio_summary['speechiness'] liveness = audio_summary['liveness'] else: stitle = re.sub(r'\([^)]*\)','', title) if stitle in energydict: audio_summary = energydict[stitle] energy = audio_summary['energy'] danceability = audio_summary['danceability'] speechiness = audio_summary['speechiness'] liveness = audio_summary['liveness'] else: energy = 0.0 danceability = 0.0 speechiness = 0.0 liveness = 0.0 # Feature 11 cf.append(energy) # Feature 12 # cf.append(danceability) # Feature 13 # cf.append(speechiness) # Feature 14 # cf.append(liveness) if nanfound == 0: strlist = list_to_csv(cf) listfeatures.append(strlist) h5.close()
def fill_attributes(song, songH5File): #----------------------------non array attributes------------------------------- song.analysisSampleRate = str( hdf5_getters.get_analysis_sample_rate(songH5File)) song.artistDigitalID = str(hdf5_getters.get_artist_7digitalid(songH5File)) song.artistFamiliarity = str( hdf5_getters.get_artist_familiarity(songH5File)) song.artistHotness = str(hdf5_getters.get_artist_hottness(songH5File)) song.artistID = str(hdf5_getters.get_artist_id(songH5File)) song.artistLatitude = str(hdf5_getters.get_artist_latitude(songH5File)) song.artistLocation = str(hdf5_getters.get_artist_location(songH5File)) song.artistLongitude = str(hdf5_getters.get_artist_longitude(songH5File)) song.artistmbID = str(hdf5_getters.get_artist_mbid(songH5File)) song.artistName = str(hdf5_getters.get_artist_name(songH5File)) song.artistPlayMeID = str(hdf5_getters.get_artist_playmeid(songH5File)) song.audioMD5 = str(hdf5_getters.get_audio_md5(songH5File)) song.danceability = str(hdf5_getters.get_danceability(songH5File)) song.duration = str(hdf5_getters.get_duration(songH5File)) song.endOfFadeIn = str(hdf5_getters.get_end_of_fade_in(songH5File)) song.energy = str(hdf5_getters.get_energy(songH5File)) song.key = str(hdf5_getters.get_key(songH5File)) song.keyConfidence = str(hdf5_getters.get_key_confidence(songH5File)) song.segementsConfidence = str( hdf5_getters.get_segments_confidence(songH5File)) song.segementsConfidence = str( hdf5_getters.get_sections_confidence(songH5File)) song.loudness = str(hdf5_getters.get_loudness(songH5File)) song.mode = str(hdf5_getters.get_mode(songH5File)) song.modeConfidence = str(hdf5_getters.get_mode_confidence(songH5File)) song.release = str(hdf5_getters.get_release(songH5File)) song.releaseDigitalID = str( hdf5_getters.get_release_7digitalid(songH5File)) song.songHotttnesss = str(hdf5_getters.get_song_hotttnesss(songH5File)) song.startOfFadeOut = str(hdf5_getters.get_start_of_fade_out(songH5File)) song.tempo = str(hdf5_getters.get_tempo(songH5File)) song.timeSignature = str(hdf5_getters.get_time_signature(songH5File)) song.timeSignatureConfidence = str( hdf5_getters.get_time_signature_confidence(songH5File)) song.title = str(hdf5_getters.get_title(songH5File)) song.trackID = str(hdf5_getters.get_track_id(songH5File)) song.trackDigitalID = str(hdf5_getters.get_track_7digitalid(songH5File)) song.year = str(hdf5_getters.get_year(songH5File)) #-------------------------------array attributes-------------------------------------- #array float song.beatsStart_mean, song.beatsStart_var = convert_array_to_meanvar( hdf5_getters.get_beats_start(songH5File)) #array float song.artistTermsFreq_mean, song.artistTermsFreq_var = convert_array_to_meanvar( hdf5_getters.get_artist_terms_freq(songH5File)) #array float song.artistTermsWeight_mean, song.artistTermsWeight_var = convert_array_to_meanvar( hdf5_getters.get_artist_terms_weight(songH5File)) #array int song.artistmbTagsCount_mean, song.artistmbTagsCount_var = convert_array_to_meanvar( hdf5_getters.get_artist_mbtags_count(songH5File)) #array float song.barsConfidence_mean, song.barsConfidence_var = convert_array_to_meanvar( hdf5_getters.get_bars_confidence(songH5File)) #array float song.barsStart_mean, song.barsStart_var = convert_array_to_meanvar( hdf5_getters.get_bars_start(songH5File)) #array float song.beatsConfidence_mean, song.beatsConfidence_var = convert_array_to_meanvar( hdf5_getters.get_beats_confidence(songH5File)) #array float song.sectionsConfidence_mean, song.sectionsConfidence_var = convert_array_to_meanvar( hdf5_getters.get_sections_confidence(songH5File)) #array float song.sectionsStart_mean, song.sectionsStart_var = convert_array_to_meanvar( hdf5_getters.get_sections_start(songH5File)) #array float song.segmentsConfidence_mean, song.segmentsConfidence_var = convert_array_to_meanvar( hdf5_getters.get_segments_confidence(songH5File)) #array float song.segmentsLoudness_mean, song.segmentsLoudness_var = convert_array_to_meanvar( hdf5_getters.get_segments_loudness_max(songH5File)) #array float song.segmentsLoudnessMaxTime_mean, song.segmentsLoudnessMaxTime_var = convert_array_to_meanvar( hdf5_getters.get_segments_loudness_max_time(songH5File)) #array float song.segmentsLoudnessMaxStart_mean, song.segmentsLoudnessMaxStart_var = convert_array_to_meanvar( hdf5_getters.get_segments_loudness_start(songH5File)) #array float song.segmentsStart_mean, song.segmentsStart_var = convert_array_to_meanvar( hdf5_getters.get_segments_start(songH5File)) #array float song.tatumsConfidence_mean, song.tatumsConfidence_var = convert_array_to_meanvar( hdf5_getters.get_tatums_confidence(songH5File)) #array float song.tatumsStart_mean, song.tatumsStart_var = convert_array_to_meanvar( hdf5_getters.get_tatums_start(songH5File)) #array2d float song.segmentsTimbre_mean, song.segmentsTimbre_var = covert_2darray_to_meanvar( hdf5_getters.get_segments_timbre(songH5File)) #array2d float song.segmentsPitches_mean, song.segmentsPitches_var = covert_2darray_to_meanvar( hdf5_getters.get_segments_pitches(songH5File)) #------------------------array string attributes------------------------ song.similarArtists = convert_array_to_string( hdf5_getters.get_similar_artists(songH5File)) #array string song.artistTerms = convert_array_to_string( hdf5_getters.get_artist_terms(songH5File)) #array string song.artistmbTags = convert_array_to_string( hdf5_getters.get_artist_mbtags(songH5File)) #array string return song
def classify(h5): output_array={} # duration duration=hdf5_getters.get_duration(h5) output_array["duration"]=duration ### ADDED VALUE TO ARRAY # number of bars bars=hdf5_getters.get_bars_start(h5) num_bars=len(bars) output_array["num_bars"]=num_bars ### ADDED VALUE TO ARRAY # mean and variance in bar length bar_length=numpy.ediff1d(bars) variance_bar_length=numpy.var(bar_length) output_array["variance_bar_length"]=variance_bar_length ### ADDED VALUE TO ARRAY # number of beats beats=hdf5_getters.get_beats_start(h5) num_beats=len(beats) output_array["num_beats"]=num_beats ### ADDED VALUE TO ARRAY # mean and variance in beats length beats_length=numpy.ediff1d(beats) variance_beats_length=numpy.var(bar_length) output_array["variance_beats_length"]=variance_beats_length ### ADDED VALUE TO ARRAY # danceability danceability=hdf5_getters.get_danceability(h5) output_array["danceability"]=danceability ### ADDED VALUE TO ARRAY # end of fade in end_of_fade_in=hdf5_getters.get_end_of_fade_in(h5) output_array["end_of_fade_in"]=end_of_fade_in ### ADDED VALUE TO ARRAY # energy energy=hdf5_getters.get_energy(h5) output_array["energy"]=energy ### ADDED VALUE TO ARRAY # key key=hdf5_getters.get_key(h5) output_array["key"]=int(key) ### ADDED VALUE TO ARRAY # loudness loudness=hdf5_getters.get_loudness(h5) output_array["loudness"]=loudness ### ADDED VALUE TO ARRAY # mode mode=hdf5_getters.get_mode(h5) output_array["mode"]=int(mode) ### ADDED VALUE TO ARRAY # number sections sections=hdf5_getters.get_sections_start(h5) num_sections=len(sections) output_array["num_sections"]=num_sections ### ADDED VALUE TO ARRAY # mean and variance in sections length sections_length=numpy.ediff1d(sections) variance_sections_length=numpy.var(sections) output_array["variance_sections_length"]=variance_sections_length ### ADDED VALUE TO ARRAY # number segments segments=hdf5_getters.get_segments_start(h5) num_segments=len(segments) output_array["num_segments"]=num_segments ### ADDED VALUE TO ARRAY # mean and variance in segments length segments_length=numpy.ediff1d(segments) variance_segments_length=numpy.var(segments) output_array["variance_segments_length"]=variance_segments_length ### ADDED VALUE TO ARRAY # segment loudness max segment_loudness_max_array=hdf5_getters.get_segments_loudness_max(h5) segment_loudness_max_time_array=hdf5_getters.get_segments_loudness_max_time(h5) segment_loudness_max_index=0 for i in range(len(segment_loudness_max_array)): if segment_loudness_max_array[i]>segment_loudness_max_array[segment_loudness_max_index]: segment_loudness_max_index=i segment_loudness_max=segment_loudness_max_array[segment_loudness_max_index] segment_loudness_max_time=segment_loudness_max_time_array[segment_loudness_max_index] output_array["segment_loudness_max"]=segment_loudness_max ### ADDED VALUE TO ARRAY output_array["segment_loudness_time"]=segment_loudness_max_time ### ADDED VALUE TO ARRAY # POSSIBLE TODO: use average function instead and weight by segment length # segment loudness mean (start) segment_loudness_array=hdf5_getters.get_segments_loudness_start(h5) segment_loudness_mean=numpy.mean(segment_loudness_array) output_array["segment_loudness_mean"]=segment_loudness_mean ### ADDED VALUE TO ARRAY # segment loudness variance (start) segment_loudness_variance=numpy.var(segment_loudness_array) output_array["segment_loudness_variance"]=segment_loudness_variance ### ADDED VALUE TO ARRAY # segment pitches segment_pitches_array=hdf5_getters.get_segments_pitches(h5) segment_pitches_mean=numpy.mean(segment_pitches_array,axis=0).tolist() output_array["segment_pitches_mean"]=segment_pitches_mean # segment pitches variance (start) segment_pitches_variance=numpy.var(segment_pitches_array,axis=0).tolist() output_array["segment_pitches_variance"]=segment_pitches_variance # segment timbres segment_timbres_array=hdf5_getters.get_segments_timbre(h5) segment_timbres_mean=numpy.mean(segment_timbres_array,axis=0).tolist() output_array["segment_timbres_mean"]=segment_timbres_mean # segment timbres variance (start) segment_timbres_variance=numpy.var(segment_timbres_array,axis=0).tolist() output_array["segment_timbres_variance"]=segment_timbres_variance # hotttnesss hottness=hdf5_getters.get_song_hotttnesss(h5,0) output_array["hottness"]=hottness ### ADDED VALUE TO ARRAY # duration-start of fade out start_of_fade_out=hdf5_getters.get_start_of_fade_out(h5) fade_out=duration-start_of_fade_out output_array["fade_out"]=fade_out ### ADDED VALUE TO ARRAY # tatums tatums=hdf5_getters.get_tatums_start(h5) num_tatums=len(tatums) output_array["num_tatums"]=num_tatums ### ADDED VALUE TO ARRAY # mean and variance in tatums length tatums_length=numpy.ediff1d(tatums) variance_tatums_length=numpy.var(tatums_length) output_array["variance_tatums_length"]=variance_tatums_length ### ADDED VALUE TO ARRAY # tempo tempo=hdf5_getters.get_tempo(h5) output_array["tempo"]=tempo ### ADDED VALUE TO ARRAY # time signature time_signature=hdf5_getters.get_time_signature(h5) output_array["time_signature"]=int(time_signature) ### ADDED VALUE TO ARRAY # year year=hdf5_getters.get_year(h5) output_array["year"]=int(year) ### ADDED VALUE TO ARRAY # artist terms artist_terms=hdf5_getters.get_artist_terms(h5,0) output_array["artist_terms"]=artist_terms.tolist() artist_terms_freq=hdf5_getters.get_artist_terms_freq(h5,0) output_array["artist_terms_freq"]=artist_terms_freq.tolist() artist_name=hdf5_getters.get_artist_name(h5,0) output_array["artist_name"]=artist_name artist_id=hdf5_getters.get_artist_id(h5,0) output_array["artist_id"]=artist_id # title title=hdf5_getters.get_title(h5,0) output_array["title"]=title return output_array
song_keys = [] for f in files: h5 = tables.open_file(f) filepath = f artist_name = g.get_artist_name(h5) artist_familar = g.get_artist_familiarity(h5) artist_hot = g.get_artist_hotttnesss(h5) artist_ids = g.get_artist_id(h5) artist_lat = g.get_artist_latitude(h5) artist_long = g.get_artist_longitude(h5) artist_loc = g.get_artist_location(h5) song_idss = g.get_song_id(h5) song_speed = g.get_tempo(h5) song_bar = g.get_bars_start(h5) song_beat = g.get_beats_start(h5) song_time_signature = g.get_time_signature(h5) song_tat = g.get_tatums_start(h5) song_mode = g.get_mode(h5) song_key = g.get_key(h5) song_idss = g.get_song_id(h5) song_title = g.get_title(h5) song_duration = g.get_duration(h5) song_release_years = g.get_year(h5) song_hot = g.get_song_hotttnesss (h5) track_idss = g.get_track_id(h5) file_path.append(filepath) artist_names.append(artist_name) artist_familiarty.append(artist_familar) artist_hotness.append(artist_hot)
def data_to_flat_file(basedir, ext='.h5'): """This function extract the information from the tables and creates the flat file.""" count = 0 #song counter list_to_write = [] row_to_write = "" writer = csv.writer(open("metadata_wholeA.csv", "wb")) for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root, '*' + ext)) for f in files: print f #the name of the file h5 = hdf5_getters.open_h5_file_read(f) title = hdf5_getters.get_title(h5) title = title.replace('"', '') comma = title.find(',') #eliminating commas in the title if comma != -1: print title time.sleep(1) album = hdf5_getters.get_release(h5) album = album.replace('"', '') #eliminating commas in the album comma = album.find(',') if comma != -1: print album time.sleep(1) artist_name = hdf5_getters.get_artist_name(h5) comma = artist_name.find(',') if comma != -1: print artist_name time.sleep(1) artist_name = artist_name.replace('"', '') #eliminating double quotes duration = hdf5_getters.get_duration(h5) samp_rt = hdf5_getters.get_analysis_sample_rate(h5) artist_7digitalid = hdf5_getters.get_artist_7digitalid(h5) artist_fam = hdf5_getters.get_artist_familiarity(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_fam) == True: artist_fam = -1 artist_hotness = hdf5_getters.get_artist_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_hotness) == True: artist_hotness = -1 artist_id = hdf5_getters.get_artist_id(h5) artist_lat = hdf5_getters.get_artist_latitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lat) == True: artist_lat = -1 artist_loc = hdf5_getters.get_artist_location(h5) #checks artist_loc to see if it is a hyperlink if it is set as empty string artist_loc = artist_loc.replace(",", "\,") if artist_loc.startswith("<a"): artist_loc = "" if len(artist_loc) > 100: artist_loc = "" artist_lon = hdf5_getters.get_artist_longitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lon) == True: artist_lon = -1 artist_mbid = hdf5_getters.get_artist_mbid(h5) artist_pmid = hdf5_getters.get_artist_playmeid(h5) audio_md5 = hdf5_getters.get_audio_md5(h5) danceability = hdf5_getters.get_danceability(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(danceability) == True: danceability = -1 end_fade_in = hdf5_getters.get_end_of_fade_in(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(end_fade_in) == True: end_fade_in = -1 energy = hdf5_getters.get_energy(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(energy) == True: energy = -1 song_key = hdf5_getters.get_key(h5) key_c = hdf5_getters.get_key_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(key_c) == True: key_c = -1 loudness = hdf5_getters.get_loudness(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(loudness) == True: loudness = -1 mode = hdf5_getters.get_mode(h5) mode_conf = hdf5_getters.get_mode_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(mode_conf) == True: mode_conf = -1 release_7digitalid = hdf5_getters.get_release_7digitalid(h5) song_hot = hdf5_getters.get_song_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(song_hot) == True: song_hot = -1 song_id = hdf5_getters.get_song_id(h5) start_fade_out = hdf5_getters.get_start_of_fade_out(h5) tempo = hdf5_getters.get_tempo(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(tempo) == True: tempo = -1 time_sig = hdf5_getters.get_time_signature(h5) time_sig_c = hdf5_getters.get_time_signature_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(time_sig_c) == True: time_sig_c = -1 track_id = hdf5_getters.get_track_id(h5) track_7digitalid = hdf5_getters.get_track_7digitalid(h5) year = hdf5_getters.get_year(h5) bars_c = hdf5_getters.get_bars_confidence(h5) bars_c_avg = get_avg(bars_c) bars_c_max = get_max(bars_c) bars_c_min = get_min(bars_c) bars_c_stddev = get_stddev(bars_c) bars_c_count = get_count(bars_c) bars_c_sum = get_sum(bars_c) bars_start = hdf5_getters.get_bars_start(h5) bars_start_avg = get_avg(bars_start) bars_start_max = get_max(bars_start) bars_start_min = get_min(bars_start) bars_start_stddev = get_stddev(bars_start) bars_start_count = get_count(bars_start) bars_start_sum = get_sum(bars_start) beats_c = hdf5_getters.get_beats_confidence(h5) beats_c_avg = get_avg(beats_c) beats_c_max = get_max(beats_c) beats_c_min = get_min(beats_c) beats_c_stddev = get_stddev(beats_c) beats_c_count = get_count(beats_c) beats_c_sum = get_sum(beats_c) beats_start = hdf5_getters.get_beats_start(h5) beats_start_avg = get_avg(beats_start) beats_start_max = get_max(beats_start) beats_start_min = get_min(beats_start) beats_start_stddev = get_stddev(beats_start) beats_start_count = get_count(beats_start) beats_start_sum = get_sum(beats_start) sec_c = hdf5_getters.get_sections_confidence(h5) sec_c_avg = get_avg(sec_c) sec_c_max = get_max(sec_c) sec_c_min = get_min(sec_c) sec_c_stddev = get_stddev(sec_c) sec_c_count = get_count(sec_c) sec_c_sum = get_sum(sec_c) sec_start = hdf5_getters.get_sections_start(h5) sec_start_avg = get_avg(sec_start) sec_start_max = get_max(sec_start) sec_start_min = get_min(sec_start) sec_start_stddev = get_stddev(sec_start) sec_start_count = get_count(sec_start) sec_start_sum = get_sum(sec_start) seg_c = hdf5_getters.get_segments_confidence(h5) seg_c_avg = get_avg(seg_c) seg_c_max = get_max(seg_c) seg_c_min = get_min(seg_c) seg_c_stddev = get_stddev(seg_c) seg_c_count = get_count(seg_c) seg_c_sum = get_sum(seg_c) seg_loud_max = hdf5_getters.get_segments_loudness_max(h5) seg_loud_max_avg = get_avg(seg_loud_max) seg_loud_max_max = get_max(seg_loud_max) seg_loud_max_min = get_min(seg_loud_max) seg_loud_max_stddev = get_stddev(seg_loud_max) seg_loud_max_count = get_count(seg_loud_max) seg_loud_max_sum = get_sum(seg_loud_max) seg_loud_max_time = hdf5_getters.get_segments_loudness_max_time(h5) seg_loud_max_time_avg = get_avg(seg_loud_max_time) seg_loud_max_time_max = get_max(seg_loud_max_time) seg_loud_max_time_min = get_min(seg_loud_max_time) seg_loud_max_time_stddev = get_stddev(seg_loud_max_time) seg_loud_max_time_count = get_count(seg_loud_max_time) seg_loud_max_time_sum = get_sum(seg_loud_max_time) seg_loud_start = hdf5_getters.get_segments_loudness_start(h5) seg_loud_start_avg = get_avg(seg_loud_start) seg_loud_start_max = get_max(seg_loud_start) seg_loud_start_min = get_min(seg_loud_start) seg_loud_start_stddev = get_stddev(seg_loud_start) seg_loud_start_count = get_count(seg_loud_start) seg_loud_start_sum = get_sum(seg_loud_start) seg_pitch = hdf5_getters.get_segments_pitches(h5) pitch_size = len(seg_pitch) seg_start = hdf5_getters.get_segments_start(h5) seg_start_avg = get_avg(seg_start) seg_start_max = get_max(seg_start) seg_start_min = get_min(seg_start) seg_start_stddev = get_stddev(seg_start) seg_start_count = get_count(seg_start) seg_start_sum = get_sum(seg_start) seg_timbre = hdf5_getters.get_segments_timbre(h5) tatms_c = hdf5_getters.get_tatums_confidence(h5) tatms_c_avg = get_avg(tatms_c) tatms_c_max = get_max(tatms_c) tatms_c_min = get_min(tatms_c) tatms_c_stddev = get_stddev(tatms_c) tatms_c_count = get_count(tatms_c) tatms_c_sum = get_sum(tatms_c) tatms_start = hdf5_getters.get_tatums_start(h5) tatms_start_avg = get_avg(tatms_start) tatms_start_max = get_max(tatms_start) tatms_start_min = get_min(tatms_start) tatms_start_stddev = get_stddev(tatms_start) tatms_start_count = get_count(tatms_start) tatms_start_sum = get_sum(tatms_start) #Getting the genres genre_set = 0 #flag to see if the genre has been set or not art_trm = hdf5_getters.get_artist_terms(h5) trm_freq = hdf5_getters.get_artist_terms_freq(h5) trn_wght = hdf5_getters.get_artist_terms_weight(h5) a_mb_tags = hdf5_getters.get_artist_mbtags(h5) genre_indexes = get_genre_indexes( trm_freq) #index of the highest freq final_genre = [] genres_so_far = [] for i in range(len(genre_indexes)): genre_tmp = get_genre( art_trm, genre_indexes[i] ) #genre that corresponds to the highest freq genres_so_far = genre_dict.get_genre_in_dict( genre_tmp) #getting the genre from the dictionary if len(genres_so_far) != 0: for i in genres_so_far: final_genre.append(i) genre_set = 1 #genre was found in dictionary if genre_set == 1: col_num = [] for genre in final_genre: column = int( genre) #getting the column number of the genre col_num.append(column) genre_array = genre_columns(col_num) #genre array else: genre_array = genre_columns( -1) #the genre was not found in the dictionary transpose_pitch = seg_pitch.transpose( ) #this is to tranpose the matrix,so we can have 12 rows #arrays containing the aggregate values of the 12 rows seg_pitch_avg = [] seg_pitch_max = [] seg_pitch_min = [] seg_pitch_stddev = [] seg_pitch_count = [] seg_pitch_sum = [] i = 0 #Getting the aggregate values in the pitches array for row in transpose_pitch: seg_pitch_avg.append(get_avg(row)) seg_pitch_max.append(get_max(row)) seg_pitch_min.append(get_min(row)) seg_pitch_stddev.append(get_stddev(row)) seg_pitch_count.append(get_count(row)) seg_pitch_sum.append(get_sum(row)) i = i + 1 #extracting information from the timbre array transpose_timbre = seg_pitch.transpose( ) #tranposing matrix, to have 12 rows #arrays containing the aggregate values of the 12 rows seg_timbre_avg = [] seg_timbre_max = [] seg_timbre_min = [] seg_timbre_stddev = [] seg_timbre_count = [] seg_timbre_sum = [] i = 0 for row in transpose_timbre: seg_timbre_avg.append(get_avg(row)) seg_timbre_max.append(get_max(row)) seg_timbre_min.append(get_min(row)) seg_timbre_stddev.append(get_stddev(row)) seg_timbre_count.append(get_count(row)) seg_timbre_sum.append(get_sum(row)) i = i + 1 #Writing to the flat file writer.writerow([ title, album, artist_name, year, duration, seg_start_count, tempo ]) h5.close() count = count + 1 print count
segments_confidence = hdf5_getters.get_segments_confidence(hdf) segments_pitches = hdf5_getters.get_segments_pitches(hdf) segments_timbre = hdf5_getters.get_segments_timbre(hdf) segments_loudness_max = hdf5_getters.get_segments_loudness_max( hdf) segments_loudness_max_time = hdf5_getters.get_segments_loudness_max_time( hdf) segments_loudness_start = hdf5_getters.get_segments_loudness_start( hdf) sections_start = hdf5_getters.get_sections_start(hdf) sections_confidence = hdf5_getters.get_sections_confidence(hdf) beats_start = hdf5_getters.get_beats_start(hdf) beats_confidence = hdf5_getters.get_beats_confidence(hdf) bars_start = hdf5_getters.get_bars_start(hdf) bars_confidence = hdf5_getters.get_bars_confidence(hdf) tatums_start = hdf5_getters.get_tatums_start(hdf) tatums_confidence = hdf5_getters.get_tatums_confidence(hdf) artist_mbtags = hdf5_getters.get_artist_mbtags(hdf) artist_mbtags_count = hdf5_getters.get_artist_mbtags_count(hdf) trList = [ artist_id.decode(), artists_mb_id.decode(), artist_playmeid, artist_7digitalid, artist_familarity,
for t in [tag[0].lower() for tag in json_object[track_id]]: if t in target_genres: best_tag = t if best_tag == '': best_tag = 'other' if best_tag != 'other': h5_dict = dict() h5_dict['title'] = hdf5_getters.get_title(h5) h5_dict['artist_name'] = hdf5_getters.get_artist_name(h5) h5_dict['year'] = hdf5_getters.get_year(h5) h5_dict[ 'beats_confidence'] = hdf5_getters.get_beats_confidence( h5).tolist() h5_dict['beats_start'] = hdf5_getters.get_beats_start( h5).tolist() h5_dict['tempo'] = hdf5_getters.get_tempo(h5) h5_dict[ 'time_signature'] = hdf5_getters.get_time_signature(h5) h5_dict[ 'segments_timbre'] = hdf5_getters.get_segments_timbre( h5).tolist() h5_dict[ 'segments_loudness_max'] = hdf5_getters.get_segments_loudness_max( h5).tolist() h5_dict[ 'segments_loudness_max_time'] = hdf5_getters.get_segments_loudness_max_time( h5).tolist() h5_dict[ 'segments_loudness_start'] = hdf5_getters.get_segments_loudness_start( h5).tolist()
def get_beats_start(self): if self.h5 == None: self.open() return hdf5_getters.get_beats_start(self.h5)
def func_to_extract_features(filename): """ This function does 3 simple things: - open the song file - get artist ID and put it - close the file """ global cntnan global listfeatures cf = [] h5 = GETTERS.open_h5_file_read(filename) nanfound = 0 # Get target feature: song hotness # FEATURE 0 song_hotness = GETTERS.get_song_hotttnesss(h5) if math.isnan(song_hotness): nanfound = 1 cntnan = cntnan + 1 h5.close() return 0 elif song_hotness > 0.3 and song_hotness < 0.6: h5.close() return 0 else: cf.append(song_hotness) # FEATURE 1 # Get song loudness song_loudness = GETTERS.get_loudness(h5) if math.isnan(song_loudness): nanfound = 1 cntnan = cntnan + 1 else: cf.append(song_loudness) # FEATURE 2 # Get key of the song song_key = GETTERS.get_key(h5) if math.isnan(song_key): nanfound = 1 cntnan = cntnan + 1 else: cf.append(song_key) # FEATURE 3 # Get duration of the song song_duration = GETTERS.get_duration(h5) if math.isnan(song_duration): nanfound = 1 cntnan = cntnan + 1 else: cf.append(song_duration) # Feature 4 # Get song tempo song_tempo = GETTERS.get_tempo(h5) if math.isnan(song_tempo): nanfound = 1 cntnan = cntnan + 1 else: cf.append(song_tempo) # Feature 5: artist familarity artist_familiarity = GETTERS.get_artist_familiarity(h5) if math.isnan(artist_familiarity): nanfound = 1 cntnan = cntnan + 1 else: cf.append(artist_familiarity) # Feature 6: artist_hotness artist_hotness = GETTERS.get_artist_hotttnesss(h5) if math.isnan(artist_hotness): nanfound = 1 cntnan = cntnan + 1 else: cf.append(artist_hotness) # Feature 7 time signature time_signature = GETTERS.get_time_signature(h5) cf.append(time_signature) # Feature 8 # Loudness COV loudness_segments = np.array(GETTERS.get_segments_loudness_max(h5)) loudness_cov = abs(variation(loudness_segments)) if math.isnan(loudness_cov): nanfound = 1 cntnan = cntnan + 1 else: cf.append(loudness_cov) # Feature 9 # Beat COV beat_segments = np.array(GETTERS.get_beats_start(h5)) beat_cov = abs(variation(beat_segments)) if math.isnan(beat_cov): nanfound = 1 cntnan = cntnan + 1 else: cf.append(beat_cov) # Feature 10 # Year song_year = GETTERS.get_year(h5) if song_year == 0: nanfound = 1 cntnan = cntnan + 1 else: cf.append(song_year) if nanfound == 0: strlist = list_to_csv(cf) listfeatures.append(strlist) strtitle = GETTERS.get_title(h5) listtitle.append(strtitle) h5.close()
def classify(h5): output_array = {} # duration duration = hdf5_getters.get_duration(h5) output_array["duration"] = duration ### ADDED VALUE TO ARRAY # number of bars bars = hdf5_getters.get_bars_start(h5) num_bars = len(bars) output_array["num_bars"] = num_bars ### ADDED VALUE TO ARRAY # mean and variance in bar length bar_length = numpy.ediff1d(bars) variance_bar_length = numpy.var(bar_length) output_array[ "variance_bar_length"] = variance_bar_length ### ADDED VALUE TO ARRAY # number of beats beats = hdf5_getters.get_beats_start(h5) num_beats = len(beats) output_array["num_beats"] = num_beats ### ADDED VALUE TO ARRAY # mean and variance in beats length beats_length = numpy.ediff1d(beats) variance_beats_length = numpy.var(bar_length) output_array[ "variance_beats_length"] = variance_beats_length ### ADDED VALUE TO ARRAY # danceability danceability = hdf5_getters.get_danceability(h5) output_array["danceability"] = danceability ### ADDED VALUE TO ARRAY # end of fade in end_of_fade_in = hdf5_getters.get_end_of_fade_in(h5) output_array["end_of_fade_in"] = end_of_fade_in ### ADDED VALUE TO ARRAY # energy energy = hdf5_getters.get_energy(h5) output_array["energy"] = energy ### ADDED VALUE TO ARRAY # key key = hdf5_getters.get_key(h5) output_array["key"] = int(key) ### ADDED VALUE TO ARRAY # loudness loudness = hdf5_getters.get_loudness(h5) output_array["loudness"] = loudness ### ADDED VALUE TO ARRAY # mode mode = hdf5_getters.get_mode(h5) output_array["mode"] = int(mode) ### ADDED VALUE TO ARRAY # number sections sections = hdf5_getters.get_sections_start(h5) num_sections = len(sections) output_array["num_sections"] = num_sections ### ADDED VALUE TO ARRAY # mean and variance in sections length sections_length = numpy.ediff1d(sections) variance_sections_length = numpy.var(sections) output_array[ "variance_sections_length"] = variance_sections_length ### ADDED VALUE TO ARRAY # number segments segments = hdf5_getters.get_segments_start(h5) num_segments = len(segments) output_array["num_segments"] = num_segments ### ADDED VALUE TO ARRAY # mean and variance in segments length segments_length = numpy.ediff1d(segments) variance_segments_length = numpy.var(segments) output_array[ "variance_segments_length"] = variance_segments_length ### ADDED VALUE TO ARRAY # segment loudness max segment_loudness_max_array = hdf5_getters.get_segments_loudness_max(h5) segment_loudness_max_time_array = hdf5_getters.get_segments_loudness_max_time( h5) segment_loudness_max_index = 0 for i in range(len(segment_loudness_max_array)): if segment_loudness_max_array[i] > segment_loudness_max_array[ segment_loudness_max_index]: segment_loudness_max_index = i segment_loudness_max = segment_loudness_max_array[ segment_loudness_max_index] segment_loudness_max_time = segment_loudness_max_time_array[ segment_loudness_max_index] output_array[ "segment_loudness_max"] = segment_loudness_max ### ADDED VALUE TO ARRAY output_array[ "segment_loudness_time"] = segment_loudness_max_time ### ADDED VALUE TO ARRAY # POSSIBLE TODO: use average function instead and weight by segment length # segment loudness mean (start) segment_loudness_array = hdf5_getters.get_segments_loudness_start(h5) segment_loudness_mean = numpy.mean(segment_loudness_array) output_array[ "segment_loudness_mean"] = segment_loudness_mean ### ADDED VALUE TO ARRAY # segment loudness variance (start) segment_loudness_variance = numpy.var(segment_loudness_array) output_array[ "segment_loudness_variance"] = segment_loudness_variance ### ADDED VALUE TO ARRAY # segment pitches segment_pitches_array = hdf5_getters.get_segments_pitches(h5) segment_pitches_mean = numpy.mean(segment_pitches_array, axis=0).tolist() output_array["segment_pitches_mean"] = segment_pitches_mean # segment pitches variance (start) segment_pitches_variance = numpy.var(segment_pitches_array, axis=0).tolist() output_array["segment_pitches_variance"] = segment_pitches_variance # segment timbres segment_timbres_array = hdf5_getters.get_segments_timbre(h5) segment_timbres_mean = numpy.mean(segment_timbres_array, axis=0).tolist() output_array["segment_timbres_mean"] = segment_timbres_mean # segment timbres variance (start) segment_timbres_variance = numpy.var(segment_timbres_array, axis=0).tolist() output_array["segment_timbres_variance"] = segment_timbres_variance # hotttnesss hottness = hdf5_getters.get_song_hotttnesss(h5, 0) output_array["hottness"] = hottness ### ADDED VALUE TO ARRAY # duration-start of fade out start_of_fade_out = hdf5_getters.get_start_of_fade_out(h5) fade_out = duration - start_of_fade_out output_array["fade_out"] = fade_out ### ADDED VALUE TO ARRAY # tatums tatums = hdf5_getters.get_tatums_start(h5) num_tatums = len(tatums) output_array["num_tatums"] = num_tatums ### ADDED VALUE TO ARRAY # mean and variance in tatums length tatums_length = numpy.ediff1d(tatums) variance_tatums_length = numpy.var(tatums_length) output_array[ "variance_tatums_length"] = variance_tatums_length ### ADDED VALUE TO ARRAY # tempo tempo = hdf5_getters.get_tempo(h5) output_array["tempo"] = tempo ### ADDED VALUE TO ARRAY # time signature time_signature = hdf5_getters.get_time_signature(h5) output_array["time_signature"] = int( time_signature) ### ADDED VALUE TO ARRAY # year year = hdf5_getters.get_year(h5) output_array["year"] = int(year) ### ADDED VALUE TO ARRAY # artist terms artist_terms = hdf5_getters.get_artist_terms(h5, 0) output_array["artist_terms"] = artist_terms.tolist() artist_terms_freq = hdf5_getters.get_artist_terms_freq(h5, 0) output_array["artist_terms_freq"] = artist_terms_freq.tolist() artist_name = hdf5_getters.get_artist_name(h5, 0) output_array["artist_name"] = artist_name artist_id = hdf5_getters.get_artist_id(h5, 0) output_array["artist_id"] = artist_id # title title = hdf5_getters.get_title(h5, 0) output_array["title"] = title return output_array
song.segmentsTimbre = \ remove_trap_characters(str(parse_nested_list(hdf5_getters.get_segments_timbre(songH5File)))) song.segmentsLoudnessMax = \ remove_trap_characters(str(list(hdf5_getters.get_segments_loudness_max(songH5File)))) song.segmentsLoudnessMaxTime = \ remove_trap_characters(str(list(hdf5_getters.get_segments_loudness_max_time(songH5File)))) song.segmentsLoudnessStart = \ remove_trap_characters(str(list(hdf5_getters.get_segments_loudness_start(songH5File)))) temp = hdf5_getters.get_sections_start(songH5File) song.sectionStarts = remove_trap_characters(str(list(temp))) song.sectionCount = get_list_length(temp) song.sectionsConfidence = remove_trap_characters( str(list(hdf5_getters.get_sections_confidence(songH5File)))) temp = hdf5_getters.get_beats_start(songH5File) song.beatsStart = remove_trap_characters(str(list(temp))) song.beatsCount = get_list_length(temp) song.beatsConfidence = remove_trap_characters( str(list(hdf5_getters.get_beats_confidence(songH5File)))) temp = hdf5_getters.get_bars_start(songH5File) song.barsStart = remove_trap_characters(str(list(temp))) song.barsCount = get_list_length(temp) song.barsConfidence = remove_trap_characters( str(list(hdf5_getters.get_bars_confidence(songH5File)))) temp = hdf5_getters.get_tatums_start(songH5File) song.tatumsStart = remove_trap_characters(str(list(temp))) song.tatumsCount = get_list_length(temp) song.tatumsConfidence = remove_trap_characters(
def get_all_files(basedir,ext='.h5') : """ From a root directory, go through all subdirectories and find all files with the given extension. Return all absolute paths in a list. """ c=0 title=[]#get_title(h5) name=[]#get_artist_name` familiarity=[]#get_artist_familiarity() artist_hotness=[]#get_artist_hotttnesss song_hotness=[]# get_song_hotttnesss danceability=[]#get_danceability energy=[]#get_energy loudness=[]#get_loudness tempo=[]#get_tempo mode_confidence=[]#get_mode_confidence() time_sig_confidence=[]#get_time_signature_confidence() no_segments=[]#len(get_segments_start()) avg_segment_confidence=[]#np.mean(hdf5_getters.get_segments_confidence(h5)) avg_segment_pitches=[]#np.mean(hdf5_getters.get_segments_pitches(h51)) no_sections=[]#len(hdf5_getters.get_sections_start()) avg_sections_confidence=[]#np.mean(hdf5_getters.get_sections_confidence(h51)) no_beats_start=[]#len(hdf5_getters.get_beats_start(h51)) avg_beats_confidence=[]#np.mean(hdf5_getters.get_beats_confidence(h51)) no_bars=[]#len(hdf5_getters.get_bars_start(h5)) avg_bar_confidence=[]#np.mean(hdf5_getters.get_bars_confidence((h51)) no_tatums_start=[]#len(hdf5_getters.get_tatums_start(h5)) avg_tatums_start=[]#np.mean(get_tatums_confidence()) billboard_presence=[]#returned value from web scraper key=[] duration=[] mode=[] target=pd.read_csv('Billboard.csv') j=0 if(not(os.path.isfile('./data.csv'))): for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root,'*'+ext)) for f in files : h5 = hdf5_getters.open_h5_file_read(f) songnme=hdf5_getters.get_title(h5) artst=hdf5_getters.get_artist_name(h5) for i in range(len(target)): if(target.Title[i]==songnme and target.Name[i]==artst): billboard_presence.append(target.Presence[i]) title.append(songnme) name.append(artst) familiarity.append(hdf5_getters.get_artist_familiarity(h5)) artist_hotness.append(hdf5_getters.get_artist_hotttnesss(h5)) song_hotness.append(hdf5_getters. get_song_hotttnesss(h5)) danceability.append(hdf5_getters.get_danceability(h5)) key.append(hdf5_getters.get_key(h5)) duration.append(hdf5_getters.get_duration(h5)) mode.append(hdf5_getters.get_mode(h5)) energy.append(hdf5_getters.get_energy(h5)) loudness.append(hdf5_getters.get_loudness(h5)) tempo.append(hdf5_getters.get_tempo(h5)) mode_confidence.append(hdf5_getters.get_mode_confidence(h5)) time_sig_confidence.append(hdf5_getters.get_time_signature_confidence(h5)) no_segments.append(len(hdf5_getters.get_segments_start(h5))) avg_segment_confidence.append(np.mean(hdf5_getters.get_segments_confidence(h5))) avg_segment_pitches.append(np.mean(hdf5_getters.get_segments_pitches(h5))) no_sections.append(len(hdf5_getters.get_sections_start(h5))) avg_sections_confidence.append(np.mean(hdf5_getters.get_sections_confidence(h5))) no_beats_start.append(len(hdf5_getters.get_beats_start(h5))) avg_beats_confidence.append(np.mean(hdf5_getters.get_beats_confidence(h5))) no_bars.append(len(hdf5_getters.get_bars_start(h5))) avg_bar_confidence.append(np.mean(hdf5_getters.get_bars_confidence(h5))) no_tatums_start.append(len(hdf5_getters.get_tatums_start(h5))) avg_tatums_start.append(np.mean(hdf5_getters.get_tatums_confidence(h5))) j+=1 print j #prints the index number of each song, to keep track of the song being saved to the database, and to identify errors. break; h5.close() print "Created Arrays" df=pd.DataFrame(title,columns=['Title']) df['Artist_Name']=name df['Familiarity']=familiarity df['Hotness']=artist_hotness df['Song_hotness']=song_hotness df['Danceability']=danceability df['energy']=energy df['loudness']=loudness df['tempo']=tempo df['mode_confidence']=mode_confidence df['time_sig_confidence']=time_sig_confidence df['no_segments']=no_segments df['avg_segment_confidence']=avg_segment_confidence df['avg_segment_pitches']=avg_segment_pitches df['no_sections']=no_sections df['avg_sections_confidence']=avg_sections_confidence df['no_beats_start']=no_beats_start df['avg_beats_confidence']=avg_beats_confidence df['no_bars']=no_bars df['avg_bar_confidence']=avg_bar_confidence df['no_tatums_start']=no_tatums_start df['avg_tatums_start']=avg_tatums_start df['key']=key df['Mode']=mode df['duration']=duration df['Presence']=billboard_presence print df.head() print billboard_presence df.to_csv("data.csv") else: df=pd.read_csv('data.csv',index_col=0) print "Number of features in the created dataset:", print len(df.keys()) print return df
def data_to_flat_file(basedir, ext='.h5'): """ This function extracts the information from the tables and creates the flat file. """ count = 0 #song counter list_to_write = [] group_index = 0 row_to_write = "" writer = csv.writer(open("complete.csv", "wb")) for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root, '*' + ext)) for f in files: row = [] print f h5 = hdf5_getters.open_h5_file_read(f) title = hdf5_getters.get_title(h5) title = title.replace('"', '') row.append(title) comma = title.find(',') if comma != -1: print title time.sleep(1) album = hdf5_getters.get_release(h5) album = album.replace('"', '') row.append(album) comma = album.find(',') if comma != -1: print album time.sleep(1) artist_name = hdf5_getters.get_artist_name(h5) comma = artist_name.find(',') if comma != -1: print artist_name time.sleep(1) artist_name = artist_name.replace('"', '') row.append(artist_name) duration = hdf5_getters.get_duration(h5) row.append(duration) samp_rt = hdf5_getters.get_analysis_sample_rate(h5) row.append(samp_rt) artist_7digitalid = hdf5_getters.get_artist_7digitalid(h5) row.append(artist_7digitalid) artist_fam = hdf5_getters.get_artist_familiarity(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_fam) == True: artist_fam = -1 row.append(artist_fam) artist_hotness = hdf5_getters.get_artist_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_hotness) == True: artist_hotness = -1 row.append(artist_hotness) artist_id = hdf5_getters.get_artist_id(h5) row.append(artist_id) artist_lat = hdf5_getters.get_artist_latitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lat) == True: artist_lat = -1 row.append(artist_lat) artist_loc = hdf5_getters.get_artist_location(h5) row.append(artist_loc) artist_lon = hdf5_getters.get_artist_longitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lon) == True: artist_lon = -1 row.append(artist_lon) artist_mbid = hdf5_getters.get_artist_mbid(h5) row.append(artist_mbid) #Getting the genre art_trm = hdf5_getters.get_artist_terms(h5) trm_freq = hdf5_getters.get_artist_terms_freq(h5) trn_wght = hdf5_getters.get_artist_terms_weight(h5) a_mb_tags = hdf5_getters.get_artist_mbtags(h5) genre_indexes = get_genre_indexes( trm_freq) #index of the highest freq genre_set = 0 #flag to see if the genre has been set or not final_genre = [] genres_so_far = [] for i in range(len(genre_indexes)): genre_tmp = get_genre( art_trm, genre_indexes[i] ) #genre that corresponds to the highest freq genres_so_far = genre_dict.get_genre_in_dict( genre_tmp) #getting the genre from the dictionary if len(genres_so_far) != 0: for i in genres_so_far: final_genre.append(i) genre_set = 1 if genre_set == 1: col_num = [] for i in final_genre: column = int(i) #getting the column number of the genre col_num.append(column) genre_array = genre_columns(col_num) #genre array for i in range(len( genre_array)): #appending the genre_array to the row row.append(genre_array[i]) else: genre_array = genre_columns( -1 ) #when there is no genre matched, return an array of [0...0] for i in range(len( genre_array)): #appending the genre_array to the row row.append(genre_array[i]) artist_pmid = hdf5_getters.get_artist_playmeid(h5) row.append(artist_pmid) audio_md5 = hdf5_getters.get_audio_md5(h5) row.append(audio_md5) danceability = hdf5_getters.get_danceability(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(danceability) == True: danceability = -1 row.append(danceability) end_fade_in = hdf5_getters.get_end_of_fade_in(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(end_fade_in) == True: end_fade_in = -1 row.append(end_fade_in) energy = hdf5_getters.get_energy(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(energy) == True: energy = -1 row.append(energy) song_key = hdf5_getters.get_key(h5) row.append(song_key) key_c = hdf5_getters.get_key_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(key_c) == True: key_c = -1 row.append(key_c) loudness = hdf5_getters.get_loudness(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(loudness) == True: loudness = -1 row.append(loudness) mode = hdf5_getters.get_mode(h5) row.append(mode) mode_conf = hdf5_getters.get_mode_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(mode_conf) == True: mode_conf = -1 row.append(mode_conf) release_7digitalid = hdf5_getters.get_release_7digitalid(h5) row.append(release_7digitalid) song_hot = hdf5_getters.get_song_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(song_hot) == True: song_hot = -1 row.append(song_hot) song_id = hdf5_getters.get_song_id(h5) row.append(song_id) start_fade_out = hdf5_getters.get_start_of_fade_out(h5) row.append(start_fade_out) tempo = hdf5_getters.get_tempo(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(tempo) == True: tempo = -1 row.append(tempo) time_sig = hdf5_getters.get_time_signature(h5) row.append(time_sig) time_sig_c = hdf5_getters.get_time_signature_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(time_sig_c) == True: time_sig_c = -1 row.append(time_sig_c) track_id = hdf5_getters.get_track_id(h5) row.append(track_id) track_7digitalid = hdf5_getters.get_track_7digitalid(h5) row.append(track_7digitalid) year = hdf5_getters.get_year(h5) row.append(year) bars_c = hdf5_getters.get_bars_confidence(h5) bars_start = hdf5_getters.get_bars_start(h5) row_bars_padding = padding( 245 ) #this is the array that will be attached at the end of th row #--------------bars---------------" gral_info = [] gral_info = row[:] empty = [] for i, item in enumerate(bars_c): row.append(group_index) row.append(i) row.append(bars_c[i]) bars_c_avg = get_avg(bars_c) row.append(bars_c_avg) bars_c_max = get_max(bars_c) row.append(bars_c_max) bars_c_min = get_min(bars_c) row.append(bars_c_min) bars_c_stddev = get_stddev(bars_c) row.append(bars_c_stddev) bars_c_count = get_count(bars_c) row.append(bars_c_count) bars_c_sum = get_sum(bars_c) row.append(bars_c_sum) row.append(bars_start[i]) bars_start_avg = get_avg(bars_start) row.append(bars_start_avg) bars_start_max = get_max(bars_start) row.append(bars_start_max) bars_start_min = get_min(bars_start) row.append(bars_start_min) bars_start_stddev = get_stddev(bars_start) row.append(bars_start_stddev) bars_start_count = get_count(bars_start) row.append(bars_start_count) bars_start_sum = get_sum(bars_start) row.append(bars_start_sum) for i in row_bars_padding: row.append(i) writer.writerow(row) row = [] row = gral_info[:] #--------beats---------------" beats_c = hdf5_getters.get_beats_confidence(h5) group_index = 1 row = [] row = gral_info[:] row_front = padding( 14) #blanks left in front of the row(empty spaces for bars) row_beats_padding = padding(231) for i, item in enumerate(beats_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the beats row.append(index) row.append(beats_c[i]) beats_c_avg = get_avg(beats_c) row.append(beats_c_avg) beats_c_max = get_max(beats_c) row.append(beats_c_max) beats_c_min = get_min(beats_c) row.append(beats_c_min) beats_c_stddev = get_stddev(beats_c) row.append(beats_c_stddev) beats_c_count = get_count(beats_c) row.append(beats_c_count) beats_c_sum = get_sum(beats_c) row.append(beats_c_sum) beats_start = hdf5_getters.get_beats_start(h5) row.append(beats_start[i]) beats_start_avg = get_avg(beats_start) row.append(beats_start_avg) beats_start_max = get_max(beats_start) row.append(beats_start_max) beats_start_min = get_min(beats_start) row.append(beats_start_min) beats_start_stddev = get_stddev(beats_start) row.append(beats_start_stddev) beats_start_count = get_count(beats_start) row.append(beats_start_count) beats_start_sum = get_sum(beats_start) row.append(beats_start_sum) for i in row_beats_padding: row.append(i) writer.writerow(row) row = [] row = gral_info[:] # "--------sections---------------" row_sec_padding = padding( 217) #blank spaces left at the end of the row sec_c = hdf5_getters.get_sections_confidence(h5) group_index = 2 row = [] row = gral_info[:] row_front = padding( 28) #blank spaces left in front(empty spaces for bars,beats) for i, item in enumerate(sec_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the sections row.append(index) row.append(sec_c[i]) sec_c_avg = get_avg(sec_c) row.append(sec_c_avg) sec_c_max = get_max(sec_c) row.append(sec_c_max) sec_c_min = get_min(sec_c) row.append(sec_c_min) sec_c_stddev = get_stddev(sec_c) row.append(sec_c_stddev) sec_c_count = get_count(sec_c) row.append(sec_c_count) sec_c_sum = get_sum(sec_c) row.append(sec_c_sum) sec_start = hdf5_getters.get_sections_start(h5) row.append(sec_start[i]) sec_start_avg = get_avg(sec_start) row.append(sec_start_avg) sec_start_max = get_max(sec_start) row.append(sec_start_max) sec_start_min = get_min(sec_start) row.append(sec_start_min) sec_start_stddev = get_stddev(sec_start) row.append(sec_start_stddev) sec_start_count = get_count(sec_start) row.append(sec_start_count) sec_start_sum = get_sum(sec_start) row.append(sec_start_sum) for i in row_sec_padding: #appending the blank spaces at the end of the row row.append(i) writer.writerow(row) row = [] row = gral_info[:] #--------segments---------------" row_seg_padding = padding(182) #blank spaces at the end of the row row_front = padding(42) #blank spaces left in front of segments seg_c = hdf5_getters.get_segments_confidence(h5) group_index = 3 row = [] row = gral_info[:] for i, item in enumerate(seg_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the segments row.append(index) row.append(seg_c[i]) seg_c_avg = get_avg(seg_c) row.append(seg_c_avg) seg_c_max = get_max(seg_c) row.append(seg_c_max) seg_c_min = get_min(seg_c) row.append(seg_c_min) seg_c_stddev = get_stddev(seg_c) row.append(seg_c_stddev) seg_c_count = get_count(seg_c) row.append(seg_c_count) seg_c_sum = get_sum(seg_c) row.append(seg_c_sum) seg_loud_max = hdf5_getters.get_segments_loudness_max(h5) row.append(seg_loud_max[i]) seg_loud_max_avg = get_avg(seg_loud_max) row.append(seg_loud_max_avg) seg_loud_max_max = get_max(seg_loud_max) row.append(seg_loud_max_max) seg_loud_max_min = get_min(seg_loud_max) row.append(seg_loud_max_min) seg_loud_max_stddev = get_stddev(seg_loud_max) row.append(seg_loud_max_stddev) seg_loud_max_count = get_count(seg_loud_max) row.append(seg_loud_max_count) seg_loud_max_sum = get_sum(seg_loud_max) row.append(seg_loud_max_sum) seg_loud_max_time = hdf5_getters.get_segments_loudness_max_time( h5) row.append(seg_loud_max_time[i]) seg_loud_max_time_avg = get_avg(seg_loud_max_time) row.append(seg_loud_max_time_avg) seg_loud_max_time_max = get_max(seg_loud_max_time) row.append(seg_loud_max_time_max) seg_loud_max_time_min = get_min(seg_loud_max_time) row.append(seg_loud_max_time_min) seg_loud_max_time_stddev = get_stddev(seg_loud_max_time) row.append(seg_loud_max_time_stddev) seg_loud_max_time_count = get_count(seg_loud_max_time) row.append(seg_loud_max_time_count) seg_loud_max_time_sum = get_sum(seg_loud_max_time) row.append(seg_loud_max_time_sum) seg_loud_start = hdf5_getters.get_segments_loudness_start(h5) row.append(seg_loud_start[i]) seg_loud_start_avg = get_avg(seg_loud_start) row.append(seg_loud_start_avg) seg_loud_start_max = get_max(seg_loud_start) row.append(seg_loud_start_max) seg_loud_start_min = get_min(seg_loud_start) row.append(seg_loud_start_min) seg_loud_start_stddev = get_stddev(seg_loud_start) row.append(seg_loud_start_stddev) seg_loud_start_count = get_count(seg_loud_start) row.append(seg_loud_start_count) seg_loud_start_sum = get_sum(seg_loud_start) row.append(seg_loud_start_sum) seg_start = hdf5_getters.get_segments_start(h5) row.append(seg_start[i]) seg_start_avg = get_avg(seg_start) row.append(seg_start_avg) seg_start_max = get_max(seg_start) row.append(seg_start_max) seg_start_min = get_min(seg_start) row.append(seg_start_min) seg_start_stddev = get_stddev(seg_start) row.append(seg_start_stddev) seg_start_count = get_count(seg_start) row.append(seg_start_count) seg_start_sum = get_sum(seg_start) row.append(seg_start_sum) for i in row_seg_padding: #appending blank spaces at the end of the row row.append(i) writer.writerow(row) row = [] row = gral_info[:] #----------segments pitch and timbre---------------" row_seg2_padding = padding( 14) #blank spaces left at the end of the row row_front = padding( 77) #blank spaces left at the front of the segments and timbre seg_pitch = hdf5_getters.get_segments_pitches(h5) transpose_pitch = seg_pitch.transpose( ) #this is to tranpose the matrix,so we can have 12 rows group_index = 4 row = [] row = gral_info[:] for i, item in enumerate(transpose_pitch[0]): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of segments and timbre row.append(index) row.append(transpose_pitch[0][i]) seg_pitch_avg = get_avg(transpose_pitch[0]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[0]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[0]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[0]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[0]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[0]) row.append(seg_pitch_sum) row.append(transpose_pitch[1][i]) seg_pitch_avg = get_avg(transpose_pitch[1]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[1]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[1]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[1]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[1]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[1]) row.append(seg_pitch_sum) row.append(transpose_pitch[2][i]) seg_pitch_avg = get_avg(transpose_pitch[2]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[2]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[2]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[2]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[2]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[2]) row.append(seg_pitch_sum) row.append(transpose_pitch[3][i]) seg_pitch_avg = get_avg(transpose_pitch[3]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[3]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[3]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[3]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[3]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[3]) row.append(seg_pitch_sum) row.append(transpose_pitch[4][i]) seg_pitch_avg = get_avg(transpose_pitch[4]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[4]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[4]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[4]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[4]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[4]) row.append(seg_pitch_sum) row.append(transpose_pitch[5][i]) seg_pitch_avg = get_avg(transpose_pitch[5]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[5]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[5]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[5]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[5]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[5]) row.append(seg_pitch_sum) row.append(transpose_pitch[6][i]) seg_pitch_avg = get_avg(transpose_pitch[6]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[6]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[6]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[6]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[6]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[6]) row.append(seg_pitch_sum) row.append(transpose_pitch[7][i]) seg_pitch_avg = get_avg(transpose_pitch[7]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[7]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[7]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[7]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[7]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[7]) row.append(seg_pitch_sum) row.append(transpose_pitch[8][i]) seg_pitch_avg = get_avg(transpose_pitch[8]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[8]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[8]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[8]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[8]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[8]) row.append(seg_pitch_sum) row.append(transpose_pitch[9][i]) seg_pitch_avg = get_avg(transpose_pitch[9]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[9]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[9]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[9]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[9]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[9]) row.append(seg_pitch_sum) row.append(transpose_pitch[10][i]) seg_pitch_avg = get_avg(transpose_pitch[10]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[10]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[10]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[10]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[10]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[10]) row.append(seg_pitch_sum) row.append(transpose_pitch[11][i]) seg_pitch_avg = get_avg(transpose_pitch[11]) row.append(seg_pitch_avg) seg_pitch_max = get_max(transpose_pitch[11]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[11]) row.append(seg_pitch_min) seg_pitch_stddev = get_stddev(transpose_pitch[11]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[11]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[11]) row.append(seg_pitch_sum) #timbre arrays seg_timbre = hdf5_getters.get_segments_timbre(h5) transpose_timbre = seg_pitch.transpose( ) #tranposing matrix, to have 12 rows row.append(transpose_timbre[0][i]) seg_timbre_avg = get_avg(transpose_timbre[0]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[0]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[0]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[0]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[0]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[0]) row.append(seg_timbre_sum) row.append(transpose_timbre[1][i]) seg_timbre_avg = get_avg(transpose_timbre[1]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[1]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[1]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[1]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[1]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[1]) row.append(seg_timbre_sum) row.append(transpose_timbre[2][i]) seg_timbre_avg = get_avg(transpose_timbre[2]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[2]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[2]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[2]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[2]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[2]) row.append(seg_timbre_sum) row.append(transpose_timbre[3][i]) seg_timbre_avg = get_avg(transpose_timbre[3]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[3]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[3]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[3]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[3]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[3]) row.append(seg_timbre_sum) row.append(transpose_timbre[4][i]) seg_timbre_avg = get_avg(transpose_timbre[4]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[4]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[4]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[4]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[4]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[4]) row.append(seg_timbre_sum) row.append(transpose_timbre[5][i]) seg_timbre_avg = get_avg(transpose_timbre[5]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[5]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[5]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[5]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[5]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[5]) row.append(seg_timbre_sum) row.append(transpose_timbre[6][i]) seg_timbre_avg = get_avg(transpose_timbre[6]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[6]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[6]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[6]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[6]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[6]) row.append(seg_timbre_sum) row.append(transpose_timbre[7][i]) seg_timbre_avg = get_avg(transpose_timbre[7]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[7]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[7]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[7]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[7]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[7]) row.append(seg_timbre_sum) row.append(transpose_timbre[8][i]) seg_timbre_avg = get_avg(transpose_timbre[8]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[8]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[8]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[8]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[8]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[8]) row.append(seg_timbre_sum) row.append(transpose_timbre[9][i]) seg_timbre_avg = get_avg(transpose_timbre[9]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[9]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[9]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[9]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[9]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[9]) row.append(seg_timbre_sum) row.append(transpose_timbre[10][i]) seg_timbre_avg = get_avg(transpose_timbre[10]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[10]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[10]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[10]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[10]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[10]) row.append(seg_timbre_sum) row.append(transpose_timbre[11][i]) seg_timbre_avg = get_avg(transpose_timbre[11]) row.append(seg_timbre_avg) seg_timbre_max = get_max(transpose_timbre[11]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[11]) row.append(seg_timbre_min) seg_timbre_stddev = get_stddev(transpose_timbre[11]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[11]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[11]) row.append(seg_timbre_sum) for item in row_seg2_padding: row.append(item) writer.writerow(row) row = [] row = gral_info[:] # "--------tatums---------------" tatms_c = hdf5_getters.get_tatums_confidence(h5) group_index = 5 row_front = padding(245) #blank spaces left in front of tatums row = [] row = gral_info[:] for i, item in enumerate(tatms_c): row.append(group_index) row.append(i) for item in row_front: #appending blank spaces at the front of the row row.append(item) row.append(tatms_c[i]) tatms_c_avg = get_avg(tatms_c) row.append(tatms_c_avg) tatms_c_max = get_max(tatms_c) row.append(tatms_c_max) tatms_c_min = get_min(tatms_c) row.append(tatms_c_min) tatms_c_stddev = get_stddev(tatms_c) row.append(tatms_c_stddev) tatms_c_count = get_count(tatms_c) row.append(tatms_c_count) tatms_c_sum = get_sum(tatms_c) row.append(tatms_c_sum) tatms_start = hdf5_getters.get_tatums_start(h5) row.append(tatms_start[i]) tatms_start_avg = get_avg(tatms_start) row.append(tatms_start_avg) tatms_start_max = get_max(tatms_start) row.append(tatms_start_max) tatms_start_min = get_min(tatms_start) row.append(tatms_start_min) tatms_start_stddev = get_stddev(tatms_start) row.append(tatms_start_stddev) tatms_start_count = get_count(tatms_start) row.append(tatms_start_count) tatms_start_sum = get_sum(tatms_start) row.append(tatms_start_sum) writer.writerow(row) row = [] row = gral_info[:] transpose_pitch = seg_pitch.transpose( ) #this is to tranpose the matrix,so we can have 12 rows #arrays containing the aggregate values of the 12 rows seg_pitch_avg = [] seg_pitch_max = [] seg_pitch_min = [] seg_pitch_stddev = [] seg_pitch_count = [] seg_pitch_sum = [] i = 0 #Getting the aggregate values in the pitches array for row in transpose_pitch: seg_pitch_avg.append(get_avg(row)) seg_pitch_max.append(get_max(row)) seg_pitch_min.append(get_min(row)) seg_pitch_stddev.append(get_stddev(row)) seg_pitch_count.append(get_count(row)) seg_pitch_sum.append(get_sum(row)) i = i + 1 #extracting information from the timbre array transpose_timbre = seg_pitch.transpose( ) #tranposing matrix, to have 12 rows #arrays containing the aggregate values of the 12 rows seg_timbre_avg = [] seg_timbre_max = [] seg_timbre_min = [] seg_timbre_stddev = [] seg_timbre_count = [] seg_timbre_sum = [] i = 0 for row in transpose_timbre: seg_timbre_avg.append(get_avg(row)) seg_timbre_max.append(get_max(row)) seg_timbre_min.append(get_min(row)) seg_timbre_stddev.append(get_stddev(row)) seg_timbre_count.append(get_count(row)) seg_timbre_sum.append(get_sum(row)) i = i + 1 h5.close() count = count + 1 print count
def data_to_flat_file(basedir,ext='.h5') : """This function extract the information from the tables and creates the flat file.""" count = 0; #song counter list_to_write= [] row_to_write = "" writer = csv.writer(open("metadata.csv", "wb")) for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root,'*'+ext)) for f in files: print f #the name of the file h5 = hdf5_getters.open_h5_file_read(f) title = hdf5_getters.get_title(h5) title= title.replace('"','') comma=title.find(',') #eliminating commas in the title if comma != -1: print title time.sleep(1) album = hdf5_getters.get_release(h5) album= album.replace('"','') #eliminating commas in the album comma=album.find(',') if comma != -1: print album time.sleep(1) artist_name = hdf5_getters.get_artist_name(h5) comma=artist_name.find(',') if comma != -1: print artist_name time.sleep(1) artist_name= artist_name.replace('"','') #eliminating double quotes duration = hdf5_getters.get_duration(h5) samp_rt = hdf5_getters.get_analysis_sample_rate(h5) artist_7digitalid = hdf5_getters.get_artist_7digitalid(h5) artist_fam = hdf5_getters.get_artist_familiarity(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_fam) == True: artist_fam=-1 artist_hotness= hdf5_getters.get_artist_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_hotness) == True: artist_hotness=-1 artist_id = hdf5_getters.get_artist_id(h5) artist_lat = hdf5_getters.get_artist_latitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lat) == True: artist_lat=-1 artist_loc = hdf5_getters.get_artist_location(h5) #checks artist_loc to see if it is a hyperlink if it is set as empty string artist_loc = artist_loc.replace(",", "\,"); if artist_loc.startswith("<a"): artist_loc = "" if len(artist_loc) > 100: artist_loc = "" artist_lon = hdf5_getters.get_artist_longitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lon) == True: artist_lon=-1 artist_mbid = hdf5_getters.get_artist_mbid(h5) artist_pmid = hdf5_getters.get_artist_playmeid(h5) audio_md5 = hdf5_getters.get_audio_md5(h5) danceability = hdf5_getters.get_danceability(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(danceability) == True: danceability=-1 end_fade_in =hdf5_getters.get_end_of_fade_in(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(end_fade_in) == True: end_fade_in=-1 energy = hdf5_getters.get_energy(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(energy) == True: energy=-1 song_key = hdf5_getters.get_key(h5) key_c = hdf5_getters.get_key_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(key_c) == True: key_c=-1 loudness = hdf5_getters.get_loudness(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(loudness) == True: loudness=-1 mode = hdf5_getters.get_mode(h5) mode_conf = hdf5_getters.get_mode_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(mode_conf) == True: mode_conf=-1 release_7digitalid = hdf5_getters.get_release_7digitalid(h5) song_hot = hdf5_getters.get_song_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(song_hot) == True: song_hot=-1 song_id = hdf5_getters.get_song_id(h5) start_fade_out = hdf5_getters.get_start_of_fade_out(h5) tempo = hdf5_getters.get_tempo(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(tempo) == True: tempo=-1 time_sig = hdf5_getters.get_time_signature(h5) time_sig_c = hdf5_getters.get_time_signature_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(time_sig_c) == True: time_sig_c=-1 track_id = hdf5_getters.get_track_id(h5) track_7digitalid = hdf5_getters.get_track_7digitalid(h5) year = hdf5_getters.get_year(h5) bars_c = hdf5_getters.get_bars_confidence(h5) bars_c_avg= get_avg(bars_c) bars_c_max= get_max(bars_c) bars_c_min = get_min(bars_c) bars_c_stddev= get_stddev(bars_c) bars_c_count = get_count(bars_c) bars_c_sum = get_sum(bars_c) bars_start = hdf5_getters.get_bars_start(h5) bars_start_avg = get_avg(bars_start) bars_start_max= get_max(bars_start) bars_start_min = get_min(bars_start) bars_start_stddev= get_stddev(bars_start) bars_start_count = get_count(bars_start) bars_start_sum = get_sum(bars_start) beats_c = hdf5_getters.get_beats_confidence(h5) beats_c_avg= get_avg(beats_c) beats_c_max= get_max(beats_c) beats_c_min = get_min(beats_c) beats_c_stddev= get_stddev(beats_c) beats_c_count = get_count(beats_c) beats_c_sum = get_sum(beats_c) beats_start = hdf5_getters.get_beats_start(h5) beats_start_avg = get_avg(beats_start) beats_start_max= get_max(beats_start) beats_start_min = get_min(beats_start) beats_start_stddev= get_stddev(beats_start) beats_start_count = get_count(beats_start) beats_start_sum = get_sum(beats_start) sec_c = hdf5_getters.get_sections_confidence(h5) sec_c_avg= get_avg(sec_c) sec_c_max= get_max(sec_c) sec_c_min = get_min(sec_c) sec_c_stddev= get_stddev(sec_c) sec_c_count = get_count(sec_c) sec_c_sum = get_sum(sec_c) sec_start = hdf5_getters.get_sections_start(h5) sec_start_avg = get_avg(sec_start) sec_start_max= get_max(sec_start) sec_start_min = get_min(sec_start) sec_start_stddev= get_stddev(sec_start) sec_start_count = get_count(sec_start) sec_start_sum = get_sum(sec_start) seg_c = hdf5_getters.get_segments_confidence(h5) seg_c_avg= get_avg(seg_c) seg_c_max= get_max(seg_c) seg_c_min = get_min(seg_c) seg_c_stddev= get_stddev(seg_c) seg_c_count = get_count(seg_c) seg_c_sum = get_sum(seg_c) seg_loud_max = hdf5_getters.get_segments_loudness_max(h5) seg_loud_max_avg= get_avg(seg_loud_max) seg_loud_max_max= get_max(seg_loud_max) seg_loud_max_min = get_min(seg_loud_max) seg_loud_max_stddev= get_stddev(seg_loud_max) seg_loud_max_count = get_count(seg_loud_max) seg_loud_max_sum = get_sum(seg_loud_max) seg_loud_max_time = hdf5_getters.get_segments_loudness_max_time(h5) seg_loud_max_time_avg= get_avg(seg_loud_max_time) seg_loud_max_time_max= get_max(seg_loud_max_time) seg_loud_max_time_min = get_min(seg_loud_max_time) seg_loud_max_time_stddev= get_stddev(seg_loud_max_time) seg_loud_max_time_count = get_count(seg_loud_max_time) seg_loud_max_time_sum = get_sum(seg_loud_max_time) seg_loud_start = hdf5_getters.get_segments_loudness_start(h5) seg_loud_start_avg= get_avg(seg_loud_start) seg_loud_start_max= get_max(seg_loud_start) seg_loud_start_min = get_min(seg_loud_start) seg_loud_start_stddev= get_stddev(seg_loud_start) seg_loud_start_count = get_count(seg_loud_start) seg_loud_start_sum = get_sum(seg_loud_start) seg_pitch = hdf5_getters.get_segments_pitches(h5) pitch_size = len(seg_pitch) seg_start = hdf5_getters.get_segments_start(h5) seg_start_avg= get_avg(seg_start) seg_start_max= get_max(seg_start) seg_start_min = get_min(seg_start) seg_start_stddev= get_stddev(seg_start) seg_start_count = get_count(seg_start) seg_start_sum = get_sum(seg_start) seg_timbre = hdf5_getters.get_segments_timbre(h5) tatms_c = hdf5_getters.get_tatums_confidence(h5) tatms_c_avg= get_avg(tatms_c) tatms_c_max= get_max(tatms_c) tatms_c_min = get_min(tatms_c) tatms_c_stddev= get_stddev(tatms_c) tatms_c_count = get_count(tatms_c) tatms_c_sum = get_sum(tatms_c) tatms_start = hdf5_getters.get_tatums_start(h5) tatms_start_avg= get_avg(tatms_start) tatms_start_max= get_max(tatms_start) tatms_start_min = get_min(tatms_start) tatms_start_stddev= get_stddev(tatms_start) tatms_start_count = get_count(tatms_start) tatms_start_sum = get_sum(tatms_start) #Getting the genres genre_set = 0 #flag to see if the genre has been set or not art_trm = hdf5_getters.get_artist_terms(h5) trm_freq = hdf5_getters.get_artist_terms_freq(h5) trn_wght = hdf5_getters.get_artist_terms_weight(h5) a_mb_tags = hdf5_getters.get_artist_mbtags(h5) genre_indexes=get_genre_indexes(trm_freq) #index of the highest freq final_genre=[] genres_so_far=[] for i in range(len(genre_indexes)): genre_tmp=get_genre(art_trm,genre_indexes[i]) #genre that corresponds to the highest freq genres_so_far=genre_dict.get_genre_in_dict(genre_tmp) #getting the genre from the dictionary if len(genres_so_far) != 0: for i in genres_so_far: final_genre.append(i) genre_set=1 #genre was found in dictionary if genre_set == 1: col_num=[] for genre in final_genre: column=int(genre) #getting the column number of the genre col_num.append(column) genre_array=genre_columns(col_num) #genre array else: genre_array=genre_columns(-1) #the genre was not found in the dictionary transpose_pitch= seg_pitch.transpose() #this is to tranpose the matrix,so we can have 12 rows #arrays containing the aggregate values of the 12 rows seg_pitch_avg=[] seg_pitch_max=[] seg_pitch_min=[] seg_pitch_stddev=[] seg_pitch_count=[] seg_pitch_sum=[] i=0 #Getting the aggregate values in the pitches array for row in transpose_pitch: seg_pitch_avg.append(get_avg(row)) seg_pitch_max.append(get_max(row)) seg_pitch_min.append(get_min(row)) seg_pitch_stddev.append(get_stddev(row)) seg_pitch_count.append(get_count(row)) seg_pitch_sum.append(get_sum(row)) i=i+1 #extracting information from the timbre array transpose_timbre = seg_pitch.transpose() #tranposing matrix, to have 12 rows #arrays containing the aggregate values of the 12 rows seg_timbre_avg=[] seg_timbre_max=[] seg_timbre_min=[] seg_timbre_stddev=[] seg_timbre_count=[] seg_timbre_sum=[] i=0 for row in transpose_timbre: seg_timbre_avg.append(get_avg(row)) seg_timbre_max.append(get_max(row)) seg_timbre_min.append(get_min(row)) seg_timbre_stddev.append(get_stddev(row)) seg_timbre_count.append(get_count(row)) seg_timbre_sum.append(get_sum(row)) i=i+1 #Writing to the flat file writer.writerow([title,album,artist_name,duration,samp_rt,artist_7digitalid,artist_fam,artist_hotness,artist_id,artist_lat,artist_loc,artist_lon,artist_mbid,genre_array[0],genre_array[1],genre_array[2], genre_array[3],genre_array[4],genre_array[5],genre_array[6],genre_array[7],genre_array[8],genre_array[9],genre_array[10],genre_array[11],genre_array[12],genre_array[13],genre_array[14],genre_array[15], genre_array[16],genre_array[17],genre_array[18],genre_array[19],genre_array[20],genre_array[21],genre_array[22],genre_array[23],genre_array[24],genre_array[25],genre_array[26], genre_array[27],genre_array[28],genre_array[29],genre_array[30],genre_array[31],genre_array[32],genre_array[33],genre_array[34],genre_array[35],genre_array[36],genre_array[37],genre_array[38], genre_array[39],genre_array[40],genre_array[41],genre_array[42],genre_array[43],genre_array[44],genre_array[45],genre_array[46],genre_array[47],genre_array[48],genre_array[49], genre_array[50],genre_array[51],genre_array[52],genre_array[53],genre_array[54],genre_array[55],genre_array[56],genre_array[57],genre_array[58],genre_array[59], genre_array[60],genre_array[61],genre_array[62],genre_array[63],genre_array[64],genre_array[65],genre_array[66],genre_array[67],genre_array[68],genre_array[69], genre_array[70],genre_array[71],genre_array[72],genre_array[73],genre_array[74],genre_array[75],genre_array[76],genre_array[77],genre_array[78],genre_array[79], genre_array[80],genre_array[81],genre_array[82],genre_array[83],genre_array[84],genre_array[85],genre_array[86],genre_array[87],genre_array[88],genre_array[89], genre_array[90],genre_array[91],genre_array[92],genre_array[93],genre_array[94],genre_array[95],genre_array[96],genre_array[97],genre_array[98],genre_array[99],genre_array[100],genre_array[101], genre_array[102],genre_array[103],genre_array[104],genre_array[105],genre_array[106],genre_array[107],genre_array[108],genre_array[109],genre_array[110],genre_array[111],genre_array[112], genre_array[113],genre_array[114],genre_array[115],genre_array[116],genre_array[117],genre_array[118],genre_array[119],genre_array[120],genre_array[121],genre_array[122],genre_array[123], genre_array[124],genre_array[125],genre_array[126],genre_array[127],genre_array[128],genre_array[129],genre_array[130],genre_array[131],genre_array[132], artist_pmid,audio_md5,danceability,end_fade_in,energy,song_key,key_c,loudness,mode,mode_conf,release_7digitalid,song_hot,song_id,start_fade_out,tempo,time_sig,time_sig_c,track_id,track_7digitalid,year,bars_c_avg,bars_c_max,bars_c_min,bars_c_stddev,bars_c_count,bars_c_sum,bars_start_avg,bars_start_max,bars_start_min,bars_start_stddev,bars_start_count,bars_start_sum,beats_c_avg,beats_c_max,beats_c_min,beats_c_stddev,beats_c_count,beats_c_sum,beats_start_avg,beats_start_max,beats_start_min, beats_start_stddev,beats_start_count,beats_start_sum, sec_c_avg,sec_c_max,sec_c_min,sec_c_stddev,sec_c_count,sec_c_sum,sec_start_avg,sec_start_max,sec_start_min,sec_start_stddev,sec_start_count,sec_start_sum,seg_c_avg,seg_c_max,seg_c_min,seg_c_stddev,seg_c_count,seg_c_sum,seg_loud_max_avg,seg_loud_max_max,seg_loud_max_min,seg_loud_max_stddev,seg_loud_max_count,seg_loud_max_sum,seg_loud_max_time_avg,seg_loud_max_time_max,seg_loud_max_time_min,seg_loud_max_time_stddev,seg_loud_max_time_count,seg_loud_max_time_sum,seg_loud_start_avg,seg_loud_start_max,seg_loud_start_min,seg_loud_start_stddev,seg_loud_start_count,seg_loud_start_sum,seg_pitch_avg[0],seg_pitch_max[0],seg_pitch_min[0],seg_pitch_stddev[0],seg_pitch_count[0],seg_pitch_sum[0],seg_pitch_avg[1],seg_pitch_max[1],seg_pitch_min[1],seg_pitch_stddev[1],seg_pitch_count[1],seg_pitch_sum[1],seg_pitch_avg[2],seg_pitch_max[2],seg_pitch_min[2],seg_pitch_stddev[2],seg_pitch_count[2],seg_pitch_sum[2],seg_pitch_avg[3],seg_pitch_max[3],seg_pitch_min[3],seg_pitch_stddev[3],seg_pitch_count[3],seg_pitch_sum[3],seg_pitch_avg[4],seg_pitch_max[4],seg_pitch_min[4],seg_pitch_stddev[4],seg_pitch_count[4],seg_pitch_sum[4],seg_pitch_avg[5],seg_pitch_max[5],seg_pitch_min[5],seg_pitch_stddev[5],seg_pitch_count[5],seg_pitch_sum[5],seg_pitch_avg[6],seg_pitch_max[6],seg_pitch_min[6],seg_pitch_stddev[6],seg_pitch_count[6],seg_pitch_sum[6],seg_pitch_avg[7],seg_pitch_max[7],seg_pitch_min[7],seg_pitch_stddev[7],seg_pitch_count[7],seg_pitch_sum[7],seg_pitch_avg[8],seg_pitch_max[8],seg_pitch_min[8],seg_pitch_stddev[8],seg_pitch_count[8],seg_pitch_sum[8],seg_pitch_avg[9],seg_pitch_max[9],seg_pitch_min[9],seg_pitch_stddev[9],seg_pitch_count[9],seg_pitch_sum[9],seg_pitch_avg[10],seg_pitch_max[10],seg_pitch_min[10],seg_pitch_stddev[10],seg_pitch_count[10],seg_pitch_sum[10],seg_pitch_avg[11],seg_pitch_max[11],seg_pitch_min[11], seg_pitch_stddev[11],seg_pitch_count[11],seg_pitch_sum[11],seg_start_avg,seg_start_max,seg_start_min,seg_start_stddev, seg_start_count,seg_start_sum,seg_timbre_avg[0],seg_timbre_max[0],seg_timbre_min[0],seg_timbre_stddev[0],seg_timbre_count[0], seg_timbre_sum[0],seg_timbre_avg[1],seg_timbre_max[1],seg_timbre_min[1],seg_timbre_stddev[1],seg_timbre_count[1], seg_timbre_sum[1],seg_timbre_avg[2],seg_timbre_max[2],seg_timbre_min[2],seg_timbre_stddev[2],seg_timbre_count[2], seg_timbre_sum[2],seg_timbre_avg[3],seg_timbre_max[3],seg_timbre_min[3],seg_timbre_stddev[3],seg_timbre_count[3], seg_timbre_sum[3],seg_timbre_avg[4],seg_timbre_max[4],seg_timbre_min[4],seg_timbre_stddev[4],seg_timbre_count[4], seg_timbre_sum[4],seg_timbre_avg[5],seg_timbre_max[5],seg_timbre_min[5],seg_timbre_stddev[5],seg_timbre_count[5], seg_timbre_sum[5],seg_timbre_avg[6],seg_timbre_max[6],seg_timbre_min[6],seg_timbre_stddev[6],seg_timbre_count[6], seg_timbre_sum[6],seg_timbre_avg[7],seg_timbre_max[7],seg_timbre_min[7],seg_timbre_stddev[7],seg_timbre_count[7], seg_timbre_sum[7],seg_timbre_avg[8],seg_timbre_max[8],seg_timbre_min[8],seg_timbre_stddev[8],seg_timbre_count[8], seg_timbre_sum[8],seg_timbre_avg[9],seg_timbre_max[9],seg_timbre_min[9],seg_timbre_stddev[9],seg_timbre_count[9], seg_timbre_sum[9],seg_timbre_avg[10],seg_timbre_max[10],seg_timbre_min[10],seg_timbre_stddev[10],seg_timbre_count[10], seg_timbre_sum[10],seg_timbre_avg[11],seg_timbre_max[11],seg_timbre_min[11],seg_timbre_stddev[11],seg_timbre_count[11], seg_timbre_sum[11],tatms_c_avg,tatms_c_max,tatms_c_min,tatms_c_stddev,tatms_c_count,tatms_c_sum,tatms_start_avg,tatms_start_max,tatms_start_min,tatms_start_stddev,tatms_start_count,tatms_start_sum]) h5.close() count=count+1; print count;
best_tag = '' for t in [tag[0].lower() for tag in json_object[track_id]]: if t in target_genres: best_tag = t if best_tag == '': best_tag = 'other' if best_tag != 'other': h5_dict = dict() h5_dict['title'] = hdf5_getters.get_title(h5) h5_dict['artist_name'] = hdf5_getters.get_artist_name(h5) h5_dict['year'] = hdf5_getters.get_year(h5) h5_dict['beats_confidence'] = hdf5_getters.get_beats_confidence(h5).tolist() h5_dict['beats_start'] = hdf5_getters.get_beats_start(h5).tolist() h5_dict['tempo'] = hdf5_getters.get_tempo(h5) h5_dict['time_signature'] = hdf5_getters.get_time_signature(h5) h5_dict['segments_timbre'] = hdf5_getters.get_segments_timbre(h5).tolist() h5_dict['segments_loudness_max'] = hdf5_getters.get_segments_loudness_max(h5).tolist() h5_dict['segments_loudness_max_time'] = hdf5_getters.get_segments_loudness_max_time(h5).tolist() h5_dict['segments_loudness_start'] = hdf5_getters.get_segments_loudness_start(h5).tolist() h5_dict['segments_pitches'] = hdf5_getters.get_segments_pitches(h5).tolist() h5_dict['best_tag'] = best_tag h5_dict['duration'] = hdf5_getters.get_duration(h5) song_dict[track_id] = h5_dict song_count += 1 print 'song {0}: {1} by {2}, year of {3}'.format(str(song_count),h5_dict['title'],h5_dict['artist_name'],h5_dict['year']) h5.close()
def main(argv): if len(argv) != 1: print "Specify data directory" return basedir = argv[0] outputFile1 = open('SongCSV.csv', 'w') outputFile2 = open('TagsCSV.csv', 'w') csvRowString = "" csvLabelString = "" ################################################# #if you want to prompt the user for the order of attributes in the csv, #leave the prompt boolean set to True #else, set 'prompt' to False and set the order of attributes in the 'else' #clause prompt = False ################################################# if prompt == True: while prompt: prompt = False csvAttributeString = raw_input("\n\nIn what order would you like the colums of the CSV file?\n" + "Please delineate with commas. The options are: " + "AlbumName, AlbumID, ArtistID, ArtistLatitude, ArtistLocation, ArtistLongitude,"+ " ArtistName, Danceability, Duration, KeySignature, KeySignatureConfidence, Tempo," + " SongID, TimeSignature, TimeSignatureConfidence, Title, and Year.\n\n" + "For example, you may write \"Title, Tempo, Duration\"...\n\n" + "...or exit by typing 'exit'.\n\n") csvAttributeList = re.split('\W+', csvAttributeString) for i, v in enumerate(csvAttributeList): csvAttributeList[i] = csvAttributeList[i].lower() for attribute in csvAttributeList: # print "Here is the attribute: " + attribute + " \n" if attribute == 'AlbumID'.lower(): csvRowString += 'AlbumID' elif attribute == 'AlbumName'.lower(): csvRowString += 'AlbumName' elif attribute == 'ArtistID'.lower(): csvRowString += 'ArtistID' elif attribute == 'ArtistLatitude'.lower(): csvRowString += 'ArtistLatitude' elif attribute == 'ArtistLocation'.lower(): csvRowString += 'ArtistLocation' elif attribute == 'ArtistLongitude'.lower(): csvRowString += 'ArtistLongitude' elif attribute == 'ArtistName'.lower(): csvRowString += 'ArtistName' elif attribute == 'Danceability'.lower(): csvRowString += 'Danceability' elif attribute == 'Duration'.lower(): csvRowString += 'Duration' elif attribute == 'KeySignature'.lower(): csvRowString += 'KeySignature' elif attribute == 'KeySignatureConfidence'.lower(): csvRowString += 'KeySignatureConfidence' elif attribute == 'SongID'.lower(): csvRowString += "SongID" elif attribute == 'Tempo'.lower(): csvRowString += 'Tempo' elif attribute == 'TimeSignature'.lower(): csvRowString += 'TimeSignature' elif attribute == 'TimeSignatureConfidence'.lower(): csvRowString += 'TimeSignatureConfidence' elif attribute == 'Title'.lower(): csvRowString += 'Title' elif attribute == 'Year'.lower(): csvRowString += 'Year' elif attribute == 'Exit'.lower(): sys.exit() else: prompt = True print "==============" print "I believe there has been an error with the input." print "==============" break csvRowString += "," lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex-1] csvRowString += "\n" outputFile1.write(csvRowString); csvRowString = "" #else, if you want to hard code the order of the csv file and not prompt #the user, else: ################################################# #change the order of the csv file here #Default is to list all available attributes (in alphabetical order) #csvRowString = ("SongID,AlbumID,AlbumName,ArtistID,ArtistLatitude,ArtistLocation,"+ # "ArtistLongitude,ArtistName,Danceability,Duration,KeySignature,"+ # "KeySignatureConfidence,Tempo,TimeSignature,TimeSignatureConfidence,"+ # "Title,Year") csvRowString = ("ArtistFamiliarity,ArtistHotttnesss,"+ "BarsConfidence,BarsStart,BeatsConfidence,BeatsStart,Duration,"+ "EndOfFadeIn,Key,KeyConfidence,Loudness,Mode,ModeConfidence,"+ "SectionsConfidence,SectionsStart,SegmentsConfidence,SegmentsLoudnessMax,"+ "SegmentsLoudnessMaxTime,SegmentsLoudnessStart,SegmentsStart,"+ "SongHotttnesss,StartOfFadeOut,TatumsConfidence,TatumsStart,Tempo,TimeSignature,TimeSignatureConfidence,"+ "SegmentsPitches,SegmentsTimbre,Title,Year,Decade,ArtistMbtags") ################################################# header = str() csvAttributeList = re.split('\W+', csvRowString) arrayAttributes = ["BarsConfidence","BarsStart","BeatsConfidence","BeatsStart", "SectionsConfidence","SectionsStart","SegmentsConfidence","SegmentsLoudnessMax", "SegmentsLoudnessMaxTime","SegmentsLoudnessStart","SegmentsStart", "TatumsConfidence","TatumsStart"] for i, v in enumerate(csvAttributeList): csvAttributeList[i] = csvAttributeList[i].lower() if(v=="SegmentsPitches"): for i in range(90): header = header + "SegmentsPitches" + str(i) + "," elif(v=="SegmentsTimbre"): for i in range(90): header = header + "SegmentsTimbre" + str(i) + "," elif(v in arrayAttributes): header = header + v + str(0) + "," header = header + v + str(1) + "," else: header = header + v + "," outputFile1.write("SongNumber,"); #outputFile1.write(csvRowString + "\n"); outputFile1.write(header + "\n"); csvRowString = "" ################################################# #Set the basedir here, the root directory from which the search #for files stored in a (hierarchical data structure) will originate #basedir = "MillionSongSubset/data/A/A/" # "." As the default means the current directory ext = ".h5" #Set the extension here. H5 is the extension for HDF5 files. ################################################# #FOR LOOP all = sorted(os.walk(basedir)) for root, dirs, files in all: files = sorted(glob.glob(os.path.join(root,'*'+ext))) for f in files: print f songH5File = hdf5_getters.open_h5_file_read(f) song = Song(str(hdf5_getters.get_song_id(songH5File))) #testDanceability = hdf5_getters.get_danceability(songH5File) # print type(testDanceability) # print ("Here is the danceability: ") + str(testDanceability) song.analysisSampleRate = str(hdf5_getters.get_analysis_sample_rate(songH5File)) song.artistFamiliarity = str(hdf5_getters.get_artist_familiarity(songH5File)) song.artistHotttnesss = str(hdf5_getters.get_artist_hotttnesss(songH5File)) song.artistLatitude = str(hdf5_getters.get_artist_latitude(songH5File)) song.artistLongitude = str(hdf5_getters.get_artist_longitude(songH5File)) song.artistMbid = str(hdf5_getters.get_artist_mbid(songH5File)) song.barsConfidence = np.array(hdf5_getters.get_bars_confidence(songH5File)) song.barsStart = np.array(hdf5_getters.get_bars_start(songH5File)) song.beatsConfidence = np.array(hdf5_getters.get_beats_confidence(songH5File)) song.beatsStart = np.array(hdf5_getters.get_beats_start(songH5File)) song.danceability = str(hdf5_getters.get_danceability(songH5File)) song.duration = str(hdf5_getters.get_duration(songH5File)) song.endOfFadeIn = str(hdf5_getters.get_end_of_fade_in(songH5File)) song.energy = str(hdf5_getters.get_energy(songH5File)) song.key = str(hdf5_getters.get_key(songH5File)) song.keyConfidence = str(hdf5_getters.get_key_confidence(songH5File)) song.loudness = str(hdf5_getters.get_loudness(songH5File)) song.mode = str(hdf5_getters.get_mode(songH5File)) song.modeConfidence = str(hdf5_getters.get_mode_confidence(songH5File)) song.sectionsConfidence = np.array(hdf5_getters.get_sections_confidence(songH5File)) song.sectionsStart = np.array(hdf5_getters.get_sections_start(songH5File)) song.segmentsConfidence = np.array(hdf5_getters.get_segments_confidence(songH5File)) song.segmentsLoudnessMax = np.array(hdf5_getters.get_segments_loudness_max(songH5File)) song.segmentsLoudnessMaxTime = np.array(hdf5_getters.get_segments_loudness_max_time(songH5File)) song.segmentsLoudnessStart = np.array(hdf5_getters.get_segments_loudness_start(songH5File)) song.segmentsPitches = np.array(hdf5_getters.get_segments_pitches(songH5File)) song.segmentsStart = np.array(hdf5_getters.get_segments_start(songH5File)) song.segmentsTimbre = np.array(hdf5_getters.get_segments_timbre(songH5File)) song.songHotttnesss = str(hdf5_getters.get_song_hotttnesss(songH5File)) song.startOfFadeOut = str(hdf5_getters.get_start_of_fade_out(songH5File)) song.tatumsConfidence = np.array(hdf5_getters.get_tatums_confidence(songH5File)) song.tatumsStart = np.array(hdf5_getters.get_tatums_start(songH5File)) song.tempo = str(hdf5_getters.get_tempo(songH5File)) song.timeSignature = str(hdf5_getters.get_time_signature(songH5File)) song.timeSignatureConfidence = str(hdf5_getters.get_time_signature_confidence(songH5File)) song.songid = str(hdf5_getters.get_song_id(songH5File)) song.title = str(hdf5_getters.get_title(songH5File)) song.year = str(hdf5_getters.get_year(songH5File)) song.artistMbtags = str(hdf5_getters.get_artist_mbtags(songH5File)) #print song count csvRowString += str(song.songCount) + "," csvLabelString += str(song.songCount) + "," for attribute in csvAttributeList: # print "Here is the attribute: " + attribute + " \n" if attribute == 'AnalysisSampleRate'.lower(): csvRowString += song.analysisSampleRate elif attribute == 'ArtistFamiliarity'.lower(): csvRowString += song.artistFamiliarity elif attribute == 'ArtistHotttnesss'.lower(): csvRowString += song.artistHotttnesss elif attribute == 'ArtistLatitude'.lower(): latitude = song.artistLatitude if latitude == 'nan': latitude = '' csvRowString += latitude elif attribute == 'ArtistLongitude'.lower(): longitude = song.artistLongitude if longitude == 'nan': longitude = '' csvRowString += longitude elif attribute == 'ArtistMbid'.lower(): csvRowString += song.artistMbid elif attribute == 'BarsConfidence'.lower(): arr = song.barsConfidence if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'BarsStart'.lower(): arr = song.barsStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'BeatsConfidence'.lower(): arr = song.beatsConfidence if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'BeatsStart'.lower(): arr = song.beatsStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'Danceability'.lower(): csvRowString += song.danceability elif attribute == 'Duration'.lower(): csvRowString += song.duration elif attribute == 'EndOfFadeIn'.lower(): csvRowString += song.endOfFadeIn elif attribute == 'Energy'.lower(): csvRowString += song.energy elif attribute == 'Key'.lower(): csvRowString += song.key elif attribute == 'KeyConfidence'.lower(): csvRowString += song.keyConfidence elif attribute == 'Loudness'.lower(): csvRowString += song.loudness elif attribute == 'Mode'.lower(): csvRowString += song.mode elif attribute == 'ModeConfidence'.lower(): csvRowString += song.modeConfidence elif attribute == 'SectionsConfidence'.lower(): arr = song.sectionsConfidence if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SectionsStart'.lower(): arr = song.sectionsStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SegmentsConfidence'.lower(): arr = song.segmentsConfidence if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SegmentsLoudnessMax'.lower(): arr = song.segmentsLoudnessMax if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SegmentsLoudnessMaxTime'.lower(): arr = song.segmentsLoudnessMaxTime if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SegmentsLoudnessStart'.lower(): arr = song.segmentsLoudnessStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SegmentsStart'.lower(): arr = song.segmentsStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'SongHotttnesss'.lower(): hotttnesss = song.songHotttnesss if hotttnesss == 'nan': hotttnesss = 'NaN' csvRowString += hotttnesss elif attribute == 'StartOfFadeOut'.lower(): csvRowString += song.startOfFadeOut elif attribute == 'TatumsConfidence'.lower(): arr = song.tatumsConfidence if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'TatumsStart'.lower(): arr = song.tatumsStart if arr.shape[0] == 0: arrmean = '' arrnorm = '' else: arrmean = np.mean(arr) arrnorm = np.linalg.norm(arr) csvRowString += str(arrmean) + ',' + str(arrnorm) elif attribute == 'Tempo'.lower(): # print "Tempo: " + song.tempo csvRowString += song.tempo elif attribute == 'TimeSignature'.lower(): csvRowString += song.timeSignature elif attribute == 'TimeSignatureConfidence'.lower(): # print "time sig conf: " + song.timeSignatureConfidence csvRowString += song.timeSignatureConfidence elif attribute == 'SegmentsPitches'.lower(): colmean = np.mean(song.segmentsPitches,axis=0) for m in colmean: csvRowString += str(m) + "," cov = np.dot(song.segmentsPitches.T,song.segmentsPitches) utriind = np.triu_indices(cov.shape[0]) feats = cov[utriind] for feat in feats: csvRowString += str(feat) + "," lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex-1] elif attribute == 'SegmentsTimbre'.lower(): colmean = np.mean(song.segmentsTimbre,axis=0) for m in colmean: csvRowString += str(m) + "," cov = np.dot(song.segmentsTimbre.T,song.segmentsTimbre) utriind = np.triu_indices(cov.shape[0]) feats = cov[utriind] for feat in feats: csvRowString += str(feat) + "," lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex-1] elif attribute == 'SongID'.lower(): csvRowString += "\"" + song.id + "\"" elif attribute == 'Title'.lower(): csvRowString += "\"" + song.title + "\"" elif attribute == 'Year'.lower(): csvRowString += song.year elif attribute == 'Decade'.lower(): yr = song.year if yr > 0: decade = song.year[:-1] + '0' else: decade = '0' csvRowString += decade elif attribute == 'ArtistMbtags'.lower(): tags = song.artistMbtags[1:-1] tags = "\"" + tags + "\"" tags = tags.replace("\n",'') csvRowString += tags tagsarray = shlex.split(tags) for t in tagsarray: csvLabelString += t + "," else: csvRowString += "Erm. This didn't work. Error. :( :(\n" csvRowString += "," ''' if attribute == 'AlbumID'.lower(): csvRowString += song.albumID elif attribute == 'AlbumName'.lower(): albumName = song.albumName albumName = albumName.replace(',',"") csvRowString += "\"" + albumName + "\"" elif attribute == 'ArtistID'.lower(): csvRowString += "\"" + song.artistID + "\"" elif attribute == 'ArtistLatitude'.lower(): latitude = song.artistLatitude if latitude == 'nan': latitude = '' csvRowString += latitude elif attribute == 'ArtistLocation'.lower(): location = song.artistLocation location = location.replace(',','') csvRowString += "\"" + location + "\"" elif attribute == 'ArtistLongitude'.lower(): longitude = song.artistLongitude if longitude == 'nan': longitude = '' csvRowString += longitude elif attribute == 'ArtistName'.lower(): csvRowString += "\"" + song.artistName + "\"" elif attribute == 'Danceability'.lower(): csvRowString += song.danceability elif attribute == 'Duration'.lower(): csvRowString += song.duration elif attribute == 'KeySignature'.lower(): csvRowString += song.keySignature elif attribute == 'KeySignatureConfidence'.lower(): # print "key sig conf: " + song.timeSignatureConfidence csvRowString += song.keySignatureConfidence elif attribute == 'SongID'.lower(): csvRowString += "\"" + song.id + "\"" elif attribute == 'Tempo'.lower(): # print "Tempo: " + song.tempo csvRowString += song.tempo elif attribute == 'TimeSignature'.lower(): csvRowString += song.timeSignature elif attribute == 'TimeSignatureConfidence'.lower(): # print "time sig conf: " + song.timeSignatureConfidence csvRowString += song.timeSignatureConfidence elif attribute == 'Title'.lower(): csvRowString += "\"" + song.title + "\"" elif attribute == 'Year'.lower(): csvRowString += song.year else: csvRowString += "Erm. This didn't work. Error. :( :(\n" csvRowString += "," ''' #Remove the final comma from each row in the csv lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex-1] csvRowString += "\n" outputFile1.write(csvRowString) csvRowString = "" lastIndex = len(csvLabelString) csvLabelString = csvLabelString[0:lastIndex-1] csvLabelString += "\n" outputFile2.write(csvLabelString) csvLabelString = "" songH5File.close() outputFile1.close() outputFile2.close()
return '{}.{}.mid'.format(base, n) def to_h5_path(filename): ''' Given an mp3 filename, returns the path to the corresponding -beats.npy file ''' return os.path.join(base_data_path, get_data_folder(filename), 'msd', filename.replace('.mp3', '.h5')) def to_midi_path(filename): ''' Given an mp3 filename, returns the path to the corresponding midi file ''' return os.path.join(base_data_path, get_data_folder(filename), midi_directory, to_numbered_mid(filename)) # Load in list of files which were aligned correctly, and the start/end times of the good alignment files, start_times, end_times = load_results(tsv_path) for filename, start_time, end_time in zip(files, start_times, end_times): # Load in MSD hdf5 file h5 = hdf5_getters.open_h5_file_read(to_h5_path(filename)) # Load in beat times from MSD beats = hdf5_getters.get_beats_start(h5) # Some files have no EN analysis if beats.size == 0: continue # Get indices which fall within the range of correct alignment time_mask = np.logical_and(beats > start_time, beats < end_time) beats = beats[time_mask] # and beat-synchronous feature matrices, within the time range of correct alignment chroma = beat_aligned_feats.get_btchromas(h5)[:, time_mask] timbre = beat_aligned_feats.get_bttimbre(h5)[:, time_mask] loudness = beat_aligned_feats.get_btloudnessmax(h5)[:, time_mask] h5.close() # Stack it msd_features = np.vstack([chroma, timbre, loudness]) if np.isnan(msd_features).any(): print filename
def convert_to_csv(): i = 0 data = [] target = [] count = 0 with open('data_timbre.csv', 'w+') as f: with open('target_timbre.csv', 'w+') as f2: writer = csv.writer(f) target_writer = csv.writer(f2) for root, dirs, files in os.walk(msd_subset_data_path): files = glob.glob(os.path.join(root, '*.h5')) for f in sorted(files): try: # Opening is very prone to causing exceptions, we'll just skip file if exception is thrown h5 = getter.open_h5_file_read(f) year = getter.get_year(h5) if year: count += 1 analysis_file = open('current_analysis_status.txt', 'a') update = "Currently at file name: " + str( f) + " and at number " + str(count) + "\n" analysis_file.write(update) print update analysis_file.close() target.append([year]) row = [] timbre = getter.get_segments_timbre(h5) segstarts = getter.get_segments_start(h5) btstarts = getter.get_beats_start(h5) duration = getter.get_duration(h5) end_of_fade_in = getter.get_end_of_fade_in(h5) key = getter.get_key(h5) key_confidence = getter.get_key_confidence(h5) loudness = getter.get_loudness(h5) start_of_fade_out = getter.get_start_of_fade_out( h5) tempo = getter.get_tempo(h5) time_signature = getter.get_time_signature(h5) time_signature_confidence = getter.get_time_signature_confidence( h5) h5.close() # VERY IMPORTANT segstarts = np.array(segstarts).flatten() btstarts = np.array(btstarts).flatten() bttimbre = align_feats( timbre.T, segstarts, btstarts, duration, end_of_fade_in, key, key_confidence, loudness, start_of_fade_out, tempo, time_signature, time_signature_confidence) if bttimbre is None: continue # Skip this track, some features broken npicks, winsize, finaldim = 12, 12, 144 # Calculated by 12 * 12. 12 is fixed as number of dimensions. processed_feats = extract_and_compress( bttimbre, npicks, winsize, finaldim) n_p_feats = processed_feats.shape[0] if processed_feats is None: continue # Skip this track, some features broken row = processed_feats.flatten() if len( row ) != 12 * 144: # 12 dimensions * 144 features per dimension continue # Not enough features year_row = np.array([year]) if row.any() and year_row.any(): writer.writerow(row) target_writer.writerow(year_row) i += 1 else: h5.close() except Exception: pass print 'Finished!' analysis_file = open('current_analysis_status.txt', 'a') analysis_file.write('Done!') analysis_file.close() return
def getInfo(files): data = [] build_str = '' with open(sys.argv[1], 'r') as f: contents = f.read() c = contents.split() f.close() print("creating csv with following fields:" + contents) for i in c: build_str = build_str + i + ',' build_str = build_str[:-1] build_str = build_str + '\n' for fil in files: curFile = getters.open_h5_file_read(fil) d2 = {} get_table = {'track_id': getters.get_track_id(curFile), 'segments_pitches': getters.get_segments_pitches(curFile), 'time_signature_confidence': getters.get_time_signature_confidence(curFile), 'song_hotttnesss': getters.get_song_hotttnesss(curFile), 'artist_longitude': getters.get_artist_longitude(curFile), 'tatums_confidence': getters.get_tatums_confidence(curFile), 'num_songs': getters.get_num_songs(curFile), 'duration': getters.get_duration(curFile), 'start_of_fade_out': getters.get_start_of_fade_out(curFile), 'artist_name': getters.get_artist_name(curFile), 'similar_artists': getters.get_similar_artists(curFile), 'artist_mbtags': getters.get_artist_mbtags(curFile), 'artist_terms_freq': getters.get_artist_terms_freq(curFile), 'release': getters.get_release(curFile), 'song_id': getters.get_song_id(curFile), 'track_7digitalid': getters.get_track_7digitalid(curFile), 'title': getters.get_title(curFile), 'artist_latitude': getters.get_artist_latitude(curFile), 'energy': getters.get_energy(curFile), 'key': getters.get_key(curFile), 'release_7digitalid': getters.get_release_7digitalid(curFile), 'artist_mbid': getters.get_artist_mbid(curFile), 'segments_confidence': getters.get_segments_confidence(curFile), 'artist_hotttnesss': getters.get_artist_hotttnesss(curFile), 'time_signature': getters.get_time_signature(curFile), 'segments_loudness_max_time': getters.get_segments_loudness_max_time(curFile), 'mode': getters.get_mode(curFile), 'segments_loudness_start': getters.get_segments_loudness_start(curFile), 'tempo': getters.get_tempo(curFile), 'key_confidence': getters.get_key_confidence(curFile), 'analysis_sample_rate': getters.get_analysis_sample_rate(curFile), 'bars_confidence': getters.get_bars_confidence(curFile), 'artist_playmeid': getters.get_artist_playmeid(curFile), 'artist_terms_weight': getters.get_artist_terms_weight(curFile), 'segments_start': getters.get_segments_start(curFile), 'artist_location': getters.get_artist_location(curFile), 'loudness': getters.get_loudness(curFile), 'year': getters.get_year(curFile), 'artist_7digitalid': getters.get_artist_7digitalid(curFile), 'audio_md5': getters.get_audio_md5(curFile), 'segments_timbre': getters.get_segments_timbre(curFile), 'mode_confidence': getters.get_mode_confidence(curFile), 'end_of_fade_in': getters.get_end_of_fade_in(curFile), 'danceability': getters.get_danceability(curFile), 'artist_familiarity': getters.get_artist_familiarity(curFile), 'artist_mbtags_count': getters.get_artist_mbtags_count(curFile), 'tatums_start': getters.get_tatums_start(curFile), 'artist_id': getters.get_artist_id(curFile), 'segments_loudness_max': getters.get_segments_loudness_max(curFile), 'bars_start': getters.get_bars_start(curFile), 'beats_start': getters.get_beats_start(curFile), 'artist_terms': getters.get_artist_terms(curFile), 'sections_start': getters.get_sections_start(curFile), 'beats_confidence': getters.get_beats_confidence(curFile), 'sections_confidence': getters.get_sections_confidence(curFile)} tid = fil.split('/')[-1].split('.')[0] # print(c) for i in c: if i in get_table: d2[i] = get_table[i] d2[i] = str(d2[i]).replace('\n','') build_str = build_str + d2[i] + ',' else: print('error: unspecified field') exit(0) build_str = build_str[:-1] # print(build_str[:-1]) build_str = build_str + '\n' curFile.close() build_str = build_str.replace('b','').replace("'",'').replace('"','') return (build_str)
def data_to_flat_file(basedir,ext='.h5') : """ This function extracts the information from the tables and creates the flat file. """ count = 0; #song counter list_to_write= [] group_index=0 row_to_write = "" writer = csv.writer(open("complete.csv", "wb")) for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root,'*'+ext)) for f in files: row=[] print f h5 = hdf5_getters.open_h5_file_read(f) title = hdf5_getters.get_title(h5) title= title.replace('"','') row.append(title) comma=title.find(',') if comma != -1: print title time.sleep(1) album = hdf5_getters.get_release(h5) album= album.replace('"','') row.append(album) comma=album.find(',') if comma != -1: print album time.sleep(1) artist_name = hdf5_getters.get_artist_name(h5) comma=artist_name.find(',') if comma != -1: print artist_name time.sleep(1) artist_name= artist_name.replace('"','') row.append(artist_name) duration = hdf5_getters.get_duration(h5) row.append(duration) samp_rt = hdf5_getters.get_analysis_sample_rate(h5) row.append(samp_rt) artist_7digitalid = hdf5_getters.get_artist_7digitalid(h5) row.append(artist_7digitalid) artist_fam = hdf5_getters.get_artist_familiarity(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_fam) == True: artist_fam=-1 row.append(artist_fam) artist_hotness= hdf5_getters.get_artist_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_hotness) == True: artist_hotness=-1 row.append(artist_hotness) artist_id = hdf5_getters.get_artist_id(h5) row.append(artist_id) artist_lat = hdf5_getters.get_artist_latitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lat) == True: artist_lat=-1 row.append(artist_lat) artist_loc = hdf5_getters.get_artist_location(h5) row.append(artist_loc) artist_lon = hdf5_getters.get_artist_longitude(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(artist_lon) == True: artist_lon=-1 row.append(artist_lon) artist_mbid = hdf5_getters.get_artist_mbid(h5) row.append(artist_mbid) #Getting the genre art_trm = hdf5_getters.get_artist_terms(h5) trm_freq = hdf5_getters.get_artist_terms_freq(h5) trn_wght = hdf5_getters.get_artist_terms_weight(h5) a_mb_tags = hdf5_getters.get_artist_mbtags(h5) genre_indexes=get_genre_indexes(trm_freq) #index of the highest freq genre_set=0 #flag to see if the genre has been set or not final_genre=[] genres_so_far=[] for i in range(len(genre_indexes)): genre_tmp=get_genre(art_trm,genre_indexes[i]) #genre that corresponds to the highest freq genres_so_far=genre_dict.get_genre_in_dict(genre_tmp) #getting the genre from the dictionary if len(genres_so_far) != 0: for i in genres_so_far: final_genre.append(i) genre_set=1 if genre_set == 1: col_num=[] for i in final_genre: column=int(i) #getting the column number of the genre col_num.append(column) genre_array=genre_columns(col_num) #genre array for i in range(len(genre_array)): #appending the genre_array to the row row.append(genre_array[i]) else: genre_array=genre_columns(-1) #when there is no genre matched, return an array of [0...0] for i in range(len(genre_array)): #appending the genre_array to the row row.append(genre_array[i]) artist_pmid = hdf5_getters.get_artist_playmeid(h5) row.append(artist_pmid) audio_md5 = hdf5_getters.get_audio_md5(h5) row.append(audio_md5) danceability = hdf5_getters.get_danceability(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(danceability) == True: danceability=-1 row.append(danceability) end_fade_in =hdf5_getters.get_end_of_fade_in(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(end_fade_in) == True: end_fade_in=-1 row.append(end_fade_in) energy = hdf5_getters.get_energy(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(energy) == True: energy=-1 row.append(energy) song_key = hdf5_getters.get_key(h5) row.append(song_key) key_c = hdf5_getters.get_key_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(key_c) == True: key_c=-1 row.append(key_c) loudness = hdf5_getters.get_loudness(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(loudness) == True: loudness=-1 row.append(loudness) mode = hdf5_getters.get_mode(h5) row.append(mode) mode_conf = hdf5_getters.get_mode_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(mode_conf) == True: mode_conf=-1 row.append(mode_conf) release_7digitalid = hdf5_getters.get_release_7digitalid(h5) row.append(release_7digitalid) song_hot = hdf5_getters.get_song_hotttnesss(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(song_hot) == True: song_hot=-1 row.append(song_hot) song_id = hdf5_getters.get_song_id(h5) row.append(song_id) start_fade_out = hdf5_getters.get_start_of_fade_out(h5) row.append(start_fade_out) tempo = hdf5_getters.get_tempo(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(tempo) == True: tempo=-1 row.append(tempo) time_sig = hdf5_getters.get_time_signature(h5) row.append(time_sig) time_sig_c = hdf5_getters.get_time_signature_confidence(h5) #checking if we get a "nan" if we do we change it to -1 if numpy.isnan(time_sig_c) == True: time_sig_c=-1 row.append(time_sig_c) track_id = hdf5_getters.get_track_id(h5) row.append(track_id) track_7digitalid = hdf5_getters.get_track_7digitalid(h5) row.append(track_7digitalid) year = hdf5_getters.get_year(h5) row.append(year) bars_c = hdf5_getters.get_bars_confidence(h5) bars_start = hdf5_getters.get_bars_start(h5) row_bars_padding=padding(245) #this is the array that will be attached at the end of th row #--------------bars---------------" gral_info=[] gral_info=row[:] empty=[] for i,item in enumerate(bars_c): row.append(group_index) row.append(i) row.append(bars_c[i]) bars_c_avg= get_avg(bars_c) row.append(bars_c_avg) bars_c_max= get_max(bars_c) row.append(bars_c_max) bars_c_min = get_min(bars_c) row.append(bars_c_min) bars_c_stddev= get_stddev(bars_c) row.append(bars_c_stddev) bars_c_count = get_count(bars_c) row.append(bars_c_count) bars_c_sum = get_sum(bars_c) row.append(bars_c_sum) row.append(bars_start[i]) bars_start_avg = get_avg(bars_start) row.append(bars_start_avg) bars_start_max= get_max(bars_start) row.append(bars_start_max) bars_start_min = get_min(bars_start) row.append(bars_start_min) bars_start_stddev= get_stddev(bars_start) row.append(bars_start_stddev) bars_start_count = get_count(bars_start) row.append(bars_start_count) bars_start_sum = get_sum(bars_start) row.append(bars_start_sum) for i in row_bars_padding: row.append(i) writer.writerow(row) row=[] row=gral_info[:] #--------beats---------------" beats_c = hdf5_getters.get_beats_confidence(h5) group_index=1 row=[] row=gral_info[:] row_front=padding(14) #blanks left in front of the row(empty spaces for bars) row_beats_padding=padding(231) for i,item in enumerate(beats_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the beats row.append(index) row.append(beats_c[i]) beats_c_avg= get_avg(beats_c) row.append(beats_c_avg) beats_c_max= get_max(beats_c) row.append(beats_c_max) beats_c_min = get_min(beats_c) row.append(beats_c_min) beats_c_stddev= get_stddev(beats_c) row.append(beats_c_stddev) beats_c_count = get_count(beats_c) row.append(beats_c_count) beats_c_sum = get_sum(beats_c) row.append(beats_c_sum) beats_start = hdf5_getters.get_beats_start(h5) row.append(beats_start[i]) beats_start_avg = get_avg(beats_start) row.append(beats_start_avg) beats_start_max= get_max(beats_start) row.append(beats_start_max) beats_start_min = get_min(beats_start) row.append(beats_start_min) beats_start_stddev= get_stddev(beats_start) row.append(beats_start_stddev) beats_start_count = get_count(beats_start) row.append(beats_start_count) beats_start_sum = get_sum(beats_start) row.append(beats_start_sum) for i in row_beats_padding: row.append(i) writer.writerow(row) row=[] row=gral_info[:] # "--------sections---------------" row_sec_padding=padding(217) #blank spaces left at the end of the row sec_c = hdf5_getters.get_sections_confidence(h5) group_index=2 row=[] row=gral_info[:] row_front=padding(28) #blank spaces left in front(empty spaces for bars,beats) for i,item in enumerate(sec_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the sections row.append(index) row.append(sec_c[i]) sec_c_avg= get_avg(sec_c) row.append(sec_c_avg) sec_c_max= get_max(sec_c) row.append(sec_c_max) sec_c_min = get_min(sec_c) row.append(sec_c_min) sec_c_stddev= get_stddev(sec_c) row.append(sec_c_stddev) sec_c_count = get_count(sec_c) row.append(sec_c_count) sec_c_sum = get_sum(sec_c) row.append(sec_c_sum) sec_start = hdf5_getters.get_sections_start(h5) row.append(sec_start[i]) sec_start_avg = get_avg(sec_start) row.append(sec_start_avg) sec_start_max= get_max(sec_start) row.append(sec_start_max) sec_start_min = get_min(sec_start) row.append(sec_start_min) sec_start_stddev= get_stddev(sec_start) row.append(sec_start_stddev) sec_start_count = get_count(sec_start) row.append(sec_start_count) sec_start_sum = get_sum(sec_start) row.append(sec_start_sum) for i in row_sec_padding: #appending the blank spaces at the end of the row row.append(i) writer.writerow(row) row=[] row=gral_info[:] #--------segments---------------" row_seg_padding=padding(182) #blank spaces at the end of the row row_front=padding(42) #blank spaces left in front of segments seg_c = hdf5_getters.get_segments_confidence(h5) group_index=3 row=[] row=gral_info[:] for i,item in enumerate(seg_c): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of the segments row.append(index) row.append(seg_c[i]) seg_c_avg= get_avg(seg_c) row.append(seg_c_avg) seg_c_max= get_max(seg_c) row.append(seg_c_max) seg_c_min = get_min(seg_c) row.append(seg_c_min) seg_c_stddev= get_stddev(seg_c) row.append(seg_c_stddev) seg_c_count = get_count(seg_c) row.append(seg_c_count) seg_c_sum = get_sum(seg_c) row.append(seg_c_sum) seg_loud_max = hdf5_getters.get_segments_loudness_max(h5) row.append(seg_loud_max[i]) seg_loud_max_avg= get_avg(seg_loud_max) row.append(seg_loud_max_avg) seg_loud_max_max= get_max(seg_loud_max) row.append(seg_loud_max_max) seg_loud_max_min = get_min(seg_loud_max) row.append(seg_loud_max_min) seg_loud_max_stddev= get_stddev(seg_loud_max) row.append(seg_loud_max_stddev) seg_loud_max_count = get_count(seg_loud_max) row.append(seg_loud_max_count) seg_loud_max_sum = get_sum(seg_loud_max) row.append(seg_loud_max_sum) seg_loud_max_time = hdf5_getters.get_segments_loudness_max_time(h5) row.append(seg_loud_max_time[i]) seg_loud_max_time_avg= get_avg(seg_loud_max_time) row.append(seg_loud_max_time_avg) seg_loud_max_time_max= get_max(seg_loud_max_time) row.append(seg_loud_max_time_max) seg_loud_max_time_min = get_min(seg_loud_max_time) row.append(seg_loud_max_time_min) seg_loud_max_time_stddev= get_stddev(seg_loud_max_time) row.append(seg_loud_max_time_stddev) seg_loud_max_time_count = get_count(seg_loud_max_time) row.append(seg_loud_max_time_count) seg_loud_max_time_sum = get_sum(seg_loud_max_time) row.append(seg_loud_max_time_sum) seg_loud_start = hdf5_getters.get_segments_loudness_start(h5) row.append(seg_loud_start[i]) seg_loud_start_avg= get_avg(seg_loud_start) row.append(seg_loud_start_avg) seg_loud_start_max= get_max(seg_loud_start) row.append(seg_loud_start_max) seg_loud_start_min = get_min(seg_loud_start) row.append(seg_loud_start_min) seg_loud_start_stddev= get_stddev(seg_loud_start) row.append(seg_loud_start_stddev) seg_loud_start_count = get_count(seg_loud_start) row.append(seg_loud_start_count) seg_loud_start_sum = get_sum(seg_loud_start) row.append(seg_loud_start_sum) seg_start = hdf5_getters.get_segments_start(h5) row.append(seg_start[i]) seg_start_avg= get_avg(seg_start) row.append(seg_start_avg) seg_start_max= get_max(seg_start) row.append(seg_start_max) seg_start_min = get_min(seg_start) row.append(seg_start_min) seg_start_stddev= get_stddev(seg_start) row.append(seg_start_stddev) seg_start_count = get_count(seg_start) row.append(seg_start_count) seg_start_sum = get_sum(seg_start) row.append(seg_start_sum) for i in row_seg_padding: #appending blank spaces at the end of the row row.append(i) writer.writerow(row) row=[] row=gral_info[:] #----------segments pitch and timbre---------------" row_seg2_padding=padding(14) #blank spaces left at the end of the row row_front=padding(77) #blank spaces left at the front of the segments and timbre seg_pitch = hdf5_getters.get_segments_pitches(h5) transpose_pitch= seg_pitch.transpose() #this is to tranpose the matrix,so we can have 12 rows group_index=4 row=[] row=gral_info[:] for i,item in enumerate(transpose_pitch[0]): row.append(group_index) row.append(i) for index in row_front: #padding blanks in front of segments and timbre row.append(index) row.append(transpose_pitch[0][i]) seg_pitch_avg= get_avg(transpose_pitch[0]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[0]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[0]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[0]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[0]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[0]) row.append(seg_pitch_sum) row.append(transpose_pitch[1][i]) seg_pitch_avg= get_avg(transpose_pitch[1]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[1]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[1]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[1]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[1]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[1]) row.append(seg_pitch_sum) row.append(transpose_pitch[2][i]) seg_pitch_avg= get_avg(transpose_pitch[2]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[2]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[2]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[2]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[2]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[2]) row.append(seg_pitch_sum) row.append(transpose_pitch[3][i]) seg_pitch_avg= get_avg(transpose_pitch[3]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[3]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[3]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[3]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[3]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[3]) row.append(seg_pitch_sum) row.append(transpose_pitch[4][i]) seg_pitch_avg= get_avg(transpose_pitch[4]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[4]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[4]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[4]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[4]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[4]) row.append(seg_pitch_sum) row.append(transpose_pitch[5][i]) seg_pitch_avg= get_avg(transpose_pitch[5]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[5]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[5]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[5]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[5]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[5]) row.append(seg_pitch_sum) row.append(transpose_pitch[6][i]) seg_pitch_avg= get_avg(transpose_pitch[6]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[6]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[6]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[6]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[6]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[6]) row.append(seg_pitch_sum) row.append(transpose_pitch[7][i]) seg_pitch_avg= get_avg(transpose_pitch[7]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[7]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[7]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[7]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[7]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[7]) row.append(seg_pitch_sum) row.append(transpose_pitch[8][i]) seg_pitch_avg= get_avg(transpose_pitch[8]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[8]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[8]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[8]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[8]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[8]) row.append(seg_pitch_sum) row.append(transpose_pitch[9][i]) seg_pitch_avg= get_avg(transpose_pitch[9]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[9]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[9]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[9]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[9]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[9]) row.append(seg_pitch_sum) row.append(transpose_pitch[10][i]) seg_pitch_avg= get_avg(transpose_pitch[10]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[10]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[10]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[10]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[10]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[10]) row.append(seg_pitch_sum) row.append(transpose_pitch[11][i]) seg_pitch_avg= get_avg(transpose_pitch[11]) row.append(seg_pitch_avg) seg_pitch_max= get_max(transpose_pitch[11]) row.append(seg_pitch_max) seg_pitch_min = get_min(transpose_pitch[11]) row.append(seg_pitch_min) seg_pitch_stddev= get_stddev(transpose_pitch[11]) row.append(seg_pitch_stddev) seg_pitch_count = get_count(transpose_pitch[11]) row.append(seg_pitch_count) seg_pitch_sum = get_sum(transpose_pitch[11]) row.append(seg_pitch_sum) #timbre arrays seg_timbre = hdf5_getters.get_segments_timbre(h5) transpose_timbre = seg_pitch.transpose() #tranposing matrix, to have 12 rows row.append(transpose_timbre[0][i]) seg_timbre_avg= get_avg(transpose_timbre[0]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[0]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[0]) row.append(seg_timbre_min) seg_timbre_stddev=get_stddev(transpose_timbre[0]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[0]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[0]) row.append(seg_timbre_sum) row.append(transpose_timbre[1][i]) seg_timbre_avg= get_avg(transpose_timbre[1]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[1]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[1]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[1]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[1]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[1]) row.append(seg_timbre_sum) row.append(transpose_timbre[2][i]) seg_timbre_avg= get_avg(transpose_timbre[2]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[2]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[2]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[2]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[2]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[2]) row.append(seg_timbre_sum) row.append(transpose_timbre[3][i]) seg_timbre_avg= get_avg(transpose_timbre[3]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[3]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[3]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[3]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[3]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[3]) row.append(seg_timbre_sum) row.append(transpose_timbre[4][i]) seg_timbre_avg= get_avg(transpose_timbre[4]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[4]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[4]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[4]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[4]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[4]) row.append(seg_timbre_sum) row.append(transpose_timbre[5][i]) seg_timbre_avg= get_avg(transpose_timbre[5]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[5]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[5]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[5]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[5]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[5]) row.append(seg_timbre_sum) row.append(transpose_timbre[6][i]) seg_timbre_avg= get_avg(transpose_timbre[6]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[6]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[6]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[6]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[6]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[6]) row.append(seg_timbre_sum) row.append(transpose_timbre[7][i]) seg_timbre_avg= get_avg(transpose_timbre[7]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[7]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[7]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[7]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[7]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[7]) row.append(seg_timbre_sum) row.append(transpose_timbre[8][i]) seg_timbre_avg= get_avg(transpose_timbre[8]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[8]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[8]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[8]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[8]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[8]) row.append(seg_timbre_sum) row.append(transpose_timbre[9][i]) seg_timbre_avg= get_avg(transpose_timbre[9]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[9]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[9]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[9]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[9]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[9]) row.append(seg_timbre_sum) row.append(transpose_timbre[10][i]) seg_timbre_avg= get_avg(transpose_timbre[10]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[10]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[10]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[10]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[10]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[10]) row.append(seg_timbre_sum) row.append(transpose_timbre[11][i]) seg_timbre_avg= get_avg(transpose_timbre[11]) row.append(seg_timbre_avg) seg_timbre_max= get_max(transpose_timbre[11]) row.append(seg_timbre_max) seg_timbre_min = get_min(transpose_timbre[11]) row.append(seg_timbre_min) seg_timbre_stddev= get_stddev(transpose_timbre[11]) row.append(seg_timbre_stddev) seg_timbre_count = get_count(transpose_timbre[11]) row.append(seg_timbre_count) seg_timbre_sum = get_sum(transpose_timbre[11]) row.append(seg_timbre_sum) for item in row_seg2_padding: row.append(item) writer.writerow(row) row=[] row=gral_info[:] # "--------tatums---------------" tatms_c = hdf5_getters.get_tatums_confidence(h5) group_index=5 row_front=padding(245) #blank spaces left in front of tatums row=[] row=gral_info[:] for i,item in enumerate(tatms_c): row.append(group_index) row.append(i) for item in row_front: #appending blank spaces at the front of the row row.append(item) row.append(tatms_c[i]) tatms_c_avg= get_avg(tatms_c) row.append(tatms_c_avg) tatms_c_max= get_max(tatms_c) row.append(tatms_c_max) tatms_c_min = get_min(tatms_c) row.append(tatms_c_min) tatms_c_stddev= get_stddev(tatms_c) row.append(tatms_c_stddev) tatms_c_count = get_count(tatms_c) row.append(tatms_c_count) tatms_c_sum = get_sum(tatms_c) row.append(tatms_c_sum) tatms_start = hdf5_getters.get_tatums_start(h5) row.append(tatms_start[i]) tatms_start_avg= get_avg(tatms_start) row.append(tatms_start_avg) tatms_start_max= get_max(tatms_start) row.append(tatms_start_max) tatms_start_min = get_min(tatms_start) row.append(tatms_start_min) tatms_start_stddev= get_stddev(tatms_start) row.append(tatms_start_stddev) tatms_start_count = get_count(tatms_start) row.append(tatms_start_count) tatms_start_sum = get_sum(tatms_start) row.append(tatms_start_sum) writer.writerow(row) row=[] row=gral_info[:] transpose_pitch= seg_pitch.transpose() #this is to tranpose the matrix,so we can have 12 rows #arrays containing the aggregate values of the 12 rows seg_pitch_avg=[] seg_pitch_max=[] seg_pitch_min=[] seg_pitch_stddev=[] seg_pitch_count=[] seg_pitch_sum=[] i=0 #Getting the aggregate values in the pitches array for row in transpose_pitch: seg_pitch_avg.append(get_avg(row)) seg_pitch_max.append(get_max(row)) seg_pitch_min.append(get_min(row)) seg_pitch_stddev.append(get_stddev(row)) seg_pitch_count.append(get_count(row)) seg_pitch_sum.append(get_sum(row)) i=i+1 #extracting information from the timbre array transpose_timbre = seg_pitch.transpose() #tranposing matrix, to have 12 rows #arrays containing the aggregate values of the 12 rows seg_timbre_avg=[] seg_timbre_max=[] seg_timbre_min=[] seg_timbre_stddev=[] seg_timbre_count=[] seg_timbre_sum=[] i=0 for row in transpose_timbre: seg_timbre_avg.append(get_avg(row)) seg_timbre_max.append(get_max(row)) seg_timbre_min.append(get_min(row)) seg_timbre_stddev.append(get_stddev(row)) seg_timbre_count.append(get_count(row)) seg_timbre_sum.append(get_sum(row)) i=i+1 h5.close() count=count+1; print count;
def main(): outputFile1 = open('SongCSV.csv', 'w') csvRowString = "" ################################################# #if you want to prompt the user for the order of attributes in the csv, #leave the prompt boolean set to True #else, set 'prompt' to False and set the order of attributes in the 'else' #clause prompt = False ################################################# if prompt == True: while prompt: prompt = False csvAttributeString = raw_input( "\n\nIn what order would you like the colums of the CSV file?\n" + "Please delineate with commas. The options are: " + "AlbumName, AlbumID, ArtistID, ArtistLatitude, ArtistLocation, ArtistLongitude," + " ArtistName, Danceability, Duration, KeySignature, KeySignatureConfidence, Tempo," + " SongID, TimeSignature, TimeSignatureConfidence, Title, Year and Hotttnesss.\n\n" + "For example, you may write \"Title, Tempo, Duration\"...\n\n" + "...or exit by typing 'exit'.\n\n") csvAttributeList = re.split('\W+', csvAttributeString) for i, v in enumerate(csvAttributeList): csvAttributeList[i] = csvAttributeList[i].lower() for attribute in csvAttributeList: # print "Here is the attribute: " + attribute + " \n" if attribute == 'AlbumID'.lower(): csvRowString += 'AlbumID' elif attribute == 'AlbumName'.lower(): csvRowString += 'AlbumName' elif attribute == 'ArtistID'.lower(): csvRowString += 'ArtistID' elif attribute == 'ArtistLatitude'.lower(): csvRowString += 'ArtistLatitude' elif attribute == 'ArtistLocation'.lower(): csvRowString += 'ArtistLocation' elif attribute == 'ArtistLongitude'.lower(): csvRowString += 'ArtistLongitude' elif attribute == 'ArtistName'.lower(): csvRowString += 'ArtistName' elif attribute == 'Danceability'.lower(): csvRowString += 'Danceability' elif attribute == 'Duration'.lower(): csvRowString += 'Duration' elif attribute == 'KeySignature'.lower(): csvRowString += 'KeySignature' elif attribute == 'KeySignatureConfidence'.lower(): csvRowString += 'KeySignatureConfidence' elif attribute == 'SongID'.lower(): csvRowString += "SongID" elif attribute == 'Tempo'.lower(): csvRowString += 'Tempo' elif attribute == 'TimeSignature'.lower(): csvRowString += 'TimeSignature' elif attribute == 'TimeSignatureConfidence'.lower(): csvRowString += 'TimeSignatureConfidence' elif attribute == 'Title'.lower(): csvRowString += 'Title' elif attribute == 'Year'.lower(): csvRowString += 'Year' elif attribute == 'SongHotttnesss'.lower(): csvRowString += 'SongHotttnesss' elif attribute == 'Exit'.lower(): sys.exit() else: prompt = True print("==============") print("I believe there has been an error with the input.") print("==============") break csvRowString += "," lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex - 1] csvRowString += "\n" outputFile1.write(csvRowString) csvRowString = "" #else, if you want to hard code the order of the csv file and not prompt #the user, else: ################################################# #change the order of the csv file here #Default is to list all available attributes (in alphabetical order) csvRowString = ( "SongID,AlbumID,AlbumName,ArtistFamiliarity,ArtistHotttnesss,ArtistID," + "ArtistLatitude,ArtistLocation," + "ArtistLongitude,ArtistName,BarsConfidence,BarsStart,BeatsConfidence," + "BeatsStart,Danceability,Duration,EndOfFadeIn,Energy,KeySignature," + "KeySignatureConfidence,Loudness,Mode,ModeConfidence,SectionsConfidence," + "SectionsStart,SegmentsConfidence,SegmentsLoudnessMax," + "SegmentsLoudnessMaxTime,SegmentsLoudnessMaxStart,SegmentsPitches," + "SegmentsStart,SegmentsTimbre,SongHotttnesss,TatumsConfidence," + "TatumsStart,Tempo,TimeSignature," + "TimeSignatureConfidence,Title,Year") ''' csvRowString = ("SongID,AlbumID,AlbumName,ArtistFamiliarity,"+ "ArtistHotttnesss,ArtistID,"+ "ArtistLatitude,ArtistLocation,"+ "ArtistLongitude,ArtistName,"+ "BarsConfidence,BarsStart,"+ "Danceability,Duration,EndOfFadeIn,Energy,KeySignature,"+ "KeySignatureConfidence,Loudness,Mode,ModeConfidence,"+ "SegmentsPitches,"+ "SegmentsTimbre,SongHotttnesss,"+ "Tempo,TimeSignature,"+ "TimeSignatureConfidence,Title,Year") ''' ################################################# csvAttributeList = re.split('\W+', csvRowString) for i, v in enumerate(csvAttributeList): csvAttributeList[i] = csvAttributeList[i].lower() outputFile1.write("SongNumber,") outputFile1.write(csvRowString + "\n") csvRowString = "" ################################################# #Set the basedir here, the root directory from which the search #for files stored in a (hierarchical data structure) will originate #basedir = "./I/" basedir = "./MillionSongSubset/data/" # "." As the default means the current directory #basedir = "/Users/dafirebanks/Downloads/MillionSongSubset/data/" # "." As the default means the current directory ext = "*.h5" #Set the extension here. H5 is the extension for HDF5 files. ################################################# #FOR LOOP for root, dirs, files in os.walk(basedir): files = glob.glob(os.path.join(root, ext)) for f in files: print(f) songH5File = hdf5_getters.open_h5_file_read(f) song = Song(str(hdf5_getters.get_song_id(songH5File))) #testDanceability = hdf5_getters.get_danceability(songH5File) # print type(testDanceability) # print ("Here is the danceability: ") + str(testDanceability) song.artistFamiliarity = str( hdf5_getters.get_artist_familiarity(songH5File)) song.artistHotttnesss = str( hdf5_getters.get_artist_hotttnesss(songH5File)) song.artistID = str(hdf5_getters.get_artist_id(songH5File)) song.albumID = str(hdf5_getters.get_release_7digitalid(songH5File)) song.albumName = str(hdf5_getters.get_release(songH5File)) song.artistLatitude = str( hdf5_getters.get_artist_latitude(songH5File)) song.artistLocation = str( hdf5_getters.get_artist_location(songH5File)) song.artistLongitude = str( hdf5_getters.get_artist_longitude(songH5File)) song.artistName = str(hdf5_getters.get_artist_name(songH5File)) song.barsConfidence = str( hdf5_getters.get_bars_confidence(songH5File)).replace( ",", "").replace("\n", "") song.barsStart = str( hdf5_getters.get_bars_start(songH5File)).replace(",", "").replace( "\n", "") song.beatsConfidence = str( hdf5_getters.get_beats_confidence(songH5File)).replace( ",", "").replace("\n", "") song.beatsStart = str( hdf5_getters.get_beats_start(songH5File)).replace(",", "").replace( "\n", "") song.danceability = str(hdf5_getters.get_danceability(songH5File)) song.duration = str(hdf5_getters.get_duration(songH5File)) song.endOfFadeIn = str(hdf5_getters.get_end_of_fade_in(songH5File)) song.energy = str(hdf5_getters.get_energy(songH5File)) # song.setGenreList() song.hotttnesss = str(hdf5_getters.get_song_hotttnesss(songH5File)) song.keySignature = str(hdf5_getters.get_key(songH5File)) song.keySignatureConfidence = str( hdf5_getters.get_key_confidence(songH5File)) song.loudness = str(hdf5_getters.get_loudness(songH5File)) song.mode = str(hdf5_getters.get_mode(songH5File)) song.modeConfidence = str( hdf5_getters.get_mode_confidence(songH5File)) # song.lyrics = None # song.popularity = None song.sectionsConfidence = str( hdf5_getters.get_sections_confidence(songH5File)).replace( ",", "").replace("\n", "") song.sectionsStart = str( hdf5_getters.get_segments_start(songH5File)).replace( ",", "").replace("\n", "") song.segmentsConfidence = str( hdf5_getters.get_segments_confidence(songH5File)).replace( ",", "").replace("\n", "") song.segmentsLoudnessMax = str( hdf5_getters.get_segments_loudness_max(songH5File)).replace( ",", "").replace("\n", "") song.segmentsLoudnessMaxTime = str( hdf5_getters.get_segments_loudness_max_time( songH5File)).replace(",", "").replace("\n", "") song.segmentsLoudnessMaxStart = str( hdf5_getters.get_segments_loudness_start(songH5File)).replace( ",", "").replace("\n", "") song.segmentsPitches = str( hdf5_getters.get_segments_pitches(songH5File)).replace( ",", "").replace("\n", "") song.segmentsStart = str( hdf5_getters.get_segments_start(songH5File)).replace( ",", "").replace("\n", "") song.segmentsTimbre = str( hdf5_getters.get_segments_timbre(songH5File)).replace( ",", "").replace("\n", "") song.startOfFadeOut = str( hdf5_getters.get_start_of_fade_out(songH5File)) song.tatumsConfidence = str( hdf5_getters.get_tatums_confidence(songH5File)).replace( ",", "").replace("\n", "") song.tatumsStart = str( hdf5_getters.get_tatums_start(songH5File)).replace( ",", "").replace("\n", "") song.tempo = str(hdf5_getters.get_tempo(songH5File)) song.timeSignature = str( hdf5_getters.get_time_signature(songH5File)) song.timeSignatureConfidence = str( hdf5_getters.get_time_signature_confidence(songH5File)) song.title = str(hdf5_getters.get_title(songH5File)) song.year = str(hdf5_getters.get_year(songH5File)) #print song count csvRowString += str(song.songCount) + "," for attribute in csvAttributeList: # print "Here is the attribute: " + attribute + " \n" if attribute == 'AlbumID'.lower(): csvRowString += song.albumID elif attribute == 'AlbumName'.lower(): albumName = song.albumName albumName = albumName.replace(',', "") csvRowString += "\"" + albumName + "\"" elif attribute == 'ArtistFamiliarity'.lower(): csvRowString += song.artistFamiliarity elif attribute == 'ArtistHotttnesss'.lower(): csvRowString += song.artistHotttnesss elif attribute == 'ArtistID'.lower(): csvRowString += "\"" + song.artistID + "\"" elif attribute == 'ArtistLatitude'.lower(): latitude = song.artistLatitude if latitude == 'nan': latitude = '' csvRowString += latitude elif attribute == 'ArtistLocation'.lower(): location = song.artistLocation location = location.replace(',', '') csvRowString += "\"" + location + "\"" elif attribute == 'ArtistLongitude'.lower(): longitude = song.artistLongitude if longitude == 'nan': longitude = '' csvRowString += longitude elif attribute == 'ArtistName'.lower(): csvRowString += "\"" + song.artistName + "\"" elif attribute == 'BarsConfidence'.lower(): csvRowString += song.barsConfidence elif attribute == 'BarsStart'.lower(): csvRowString += song.barsStart elif attribute == 'BeatsConfidence'.lower(): csvRowString += song.beatsConfidence elif attribute == 'BeatsStart'.lower(): csvRowString += song.beatsStart elif attribute == 'Danceability'.lower(): csvRowString += song.danceability elif attribute == 'Duration'.lower(): csvRowString += song.duration elif attribute == 'EndOfFadeIn'.lower(): csvRowString += song.endOfFadeIn elif attribute == 'Energy'.lower(): csvRowString += song.energy elif attribute == 'KeySignature'.lower(): csvRowString += song.keySignature elif attribute == 'KeySignatureConfidence'.lower(): # print "key sig conf: " + song.timeSignatureConfidence csvRowString += song.keySignatureConfidence elif attribute == 'Loudness'.lower(): csvRowString += song.loudness elif attribute == 'Mode'.lower(): csvRowString += song.mode elif attribute == 'ModeConfidence'.lower(): csvRowString += song.modeConfidence elif attribute == 'SectionsConfidence'.lower(): csvRowString += song.sectionsConfidence elif attribute == 'SectionsStart'.lower(): csvRowString += song.sectionsStart elif attribute == 'SegmentsConfidence'.lower(): csvRowString += song.segmentsConfidence elif attribute == 'SegmentsLoudnessMax'.lower(): csvRowString += song.segmentsLoudnessMax elif attribute == 'SegmentsLoudnessMaxTime'.lower(): csvRowString += song.segmentsLoudnessMaxTime elif attribute == 'SegmentsLoudnessMaxStart'.lower(): csvRowString += song.segmentsLoudnessMaxStart elif attribute == 'SegmentsPitches'.lower(): csvRowString += song.segmentsPitches elif attribute == 'SegmentsStart'.lower(): csvRowString += song.segmentsStart elif attribute == 'SegmentsTimbre'.lower(): csvRowString += song.segmentsTimbre elif attribute == 'SongHotttnesss'.lower(): csvRowString += song.hotttnesss elif attribute == 'SongID'.lower(): csvRowString += "\"" + song.id + "\"" elif attribute == 'StartOfFadeOut'.lower(): csvRowString += song.startOfFadeOut elif attribute == 'TatumsConfidence'.lower(): csvRowString += song.tatumsConfidence elif attribute == 'TatumsStart'.lower(): csvRowString += song.tatumsStart elif attribute == 'Tempo'.lower(): # print "Tempo: " + song.tempo csvRowString += song.tempo elif attribute == 'TimeSignature'.lower(): csvRowString += song.timeSignature elif attribute == 'TimeSignatureConfidence'.lower(): # print "time sig conf: " + song.timeSignatureConfidence csvRowString += song.timeSignatureConfidence elif attribute == 'Title'.lower(): csvRowString += "\"" + song.title + "\"" elif attribute == 'Year'.lower(): csvRowString += song.year else: csvRowString += "Erm. This didn't work. Error. :( :(\n" csvRowString += "," #Remove the final comma from each row in the csv lastIndex = len(csvRowString) csvRowString = csvRowString[0:lastIndex - 1] csvRowString += "\n" outputFile1.write(csvRowString) csvRowString = "" songH5File.close() outputFile1.close()
def hd5_single_random_file_parser(): # Open an h5 file in read mode h5 = hdf5_getters.open_h5_file_read( '/home/skalogerakis/Documents/MillionSong/MillionSongSubset/A/M/G/TRAMGDX12903CEF79F.h5' ) function_tracker = filter( lambda x: x.startswith('get'), hdf5_getters.__dict__.keys()) # Detects all the getter functions for f in function_tracker: # Print everything in function tracker print(f) # First effort to check what each field contains. print() # 55 available fields (exluding number of songs fields) print("Num of songs -- ", hdf5_getters.get_num_songs(h5)) # One song per file print("Title -- ", hdf5_getters.get_title(h5)) # Print the title of a specific h5 file print("Artist familiarity -- ", hdf5_getters.get_artist_familiarity(h5)) print("Artist hotness -- ", hdf5_getters.get_artist_hotttnesss(h5)) print("Artist ID -- ", hdf5_getters.get_artist_id(h5)) print("Artist mbID -- ", hdf5_getters.get_artist_mbid(h5)) print("Artist playmeid -- ", hdf5_getters.get_artist_playmeid(h5)) print("Artist 7DigitalID -- ", hdf5_getters.get_artist_7digitalid(h5)) print("Artist latitude -- ", hdf5_getters.get_artist_latitude(h5)) print("Artist longitude -- ", hdf5_getters.get_artist_longitude(h5)) print("Artist location -- ", hdf5_getters.get_artist_location(h5)) print("Artist Name -- ", hdf5_getters.get_artist_name(h5)) print("Release -- ", hdf5_getters.get_release(h5)) print("Release 7DigitalID -- ", hdf5_getters.get_release_7digitalid(h5)) print("Song ID -- ", hdf5_getters.get_song_id(h5)) print("Song Hotness -- ", hdf5_getters.get_song_hotttnesss(h5)) print("Track 7Digital -- ", hdf5_getters.get_track_7digitalid(h5)) print("Similar artists -- ", hdf5_getters.get_similar_artists(h5)) print("Artist terms -- ", hdf5_getters.get_artist_terms(h5)) print("Artist terms freq -- ", hdf5_getters.get_artist_terms_freq(h5)) print("Artist terms weight -- ", hdf5_getters.get_artist_terms_weight(h5)) print("Analysis sample rate -- ", hdf5_getters.get_analysis_sample_rate(h5)) print("Audio md5 -- ", hdf5_getters.get_audio_md5(h5)) print("Danceability -- ", hdf5_getters.get_danceability(h5)) print("Duration -- ", hdf5_getters.get_duration(h5)) print("End of Fade -- ", hdf5_getters.get_end_of_fade_in(h5)) print("Energy -- ", hdf5_getters.get_energy(h5)) print("Key -- ", hdf5_getters.get_key(h5)) print("Key Confidence -- ", hdf5_getters.get_key_confidence(h5)) print("Loudness -- ", hdf5_getters.get_loudness(h5)) print("Mode -- ", hdf5_getters.get_mode(h5)) print("Mode Confidence -- ", hdf5_getters.get_mode_confidence(h5)) print("Start of fade out -- ", hdf5_getters.get_start_of_fade_out(h5)) print("Tempo -- ", hdf5_getters.get_tempo(h5)) print("Time signature -- ", hdf5_getters.get_time_signature(h5)) print("Time signature confidence -- ", hdf5_getters.get_time_signature_confidence(h5)) print("Track ID -- ", hdf5_getters.get_track_id(h5)) print("Segments Start -- ", hdf5_getters.get_segments_start(h5)) print("Segments Confidence -- ", hdf5_getters.get_segments_confidence(h5)) print("Segments Pitches -- ", hdf5_getters.get_segments_pitches(h5)) print("Segments Timbre -- ", hdf5_getters.get_segments_timbre(h5)) print("Segments Loudness max -- ", hdf5_getters.get_segments_loudness_max(h5)) print("Segments Loudness max time-- ", hdf5_getters.get_segments_loudness_max_time(h5)) print("Segments Loudness start -- ", hdf5_getters.get_segments_loudness_start(h5)) print("Sections start -- ", hdf5_getters.get_sections_start(h5)) print("Sections Confidence -- ", hdf5_getters.get_sections_confidence(h5)) print("Beats start -- ", hdf5_getters.get_beats_start(h5)) print("Beats confidence -- ", hdf5_getters.get_beats_confidence(h5)) print("Bars start -- ", hdf5_getters.get_bars_start(h5)) print("Bars confidence -- ", hdf5_getters.get_bars_confidence(h5)) print("Tatums start -- ", hdf5_getters.get_tatums_start(h5)) print("Tatums confidence -- ", hdf5_getters.get_tatums_confidence(h5)) print("Artist mbtags -- ", hdf5_getters.get_artist_mbtags(h5)) print("Artist mbtags count -- ", hdf5_getters.get_artist_mbtags_count(h5)) print("Year -- ", hdf5_getters.get_year(h5)) fields = ['Title', 'Artist ID'] with open('Tester2.csv', 'w', newline='') as csvfile: csv_writer = csv.writer(csvfile, delimiter=';') # writing the fields csv_writer.writerow(fields) # writing the data rows csv_writer.writerow( [hdf5_getters.get_title(h5), hdf5_getters.get_artist_id(h5)]) h5.close() # close h5 when completed in the end