Ejemplo n.º 1
0
            lb.append(x)
    del buf
    return lb

outputs = ['ex1', 'ex1a', 'ex2', 'ex3', 'ex4', 'ex5', 'ex6']

# load data

fnms = ['neg.csv', 'pos.csv']


for dirnm in outputs:
    read = []
    path = "./" + dirnm + "/"
    for x in fnms:
        read.append( lcsv(path + x, delim = ',', quote = '"', blank_str = 'Blank', qc_str = None, sample_str = 'Sample') )

    neg = read[0]
    pos = read[1]
    lab = load_labels(path + 'labels.dat')

    np.savez_compressed(path+dirnm, negmz = neg[0], posmz = pos[0],
                                    negrt = neg[1], posrt = pos[1],
                                    negbl = neg[2], posbl = pos[2],
                                    negsp = neg[4], possp = pos[4],
                                    label = lab)

exit()

# construct appropriate input
mza = 100.
Ejemplo n.º 2
0
rootdir = "./data/peak_tables/"

dirnms = [x[0] for x in os.walk(rootdir)]
dirnms = filter(lambda x: "batch" in x, dirnms)
dirnms.sort()

read = []
for curdir in dirnms:
    fnms = os.listdir(curdir)
    fnms.sort()
    fnms = filter(lambda x: x.endswith(".csv"), fnms)
    fnms = filter(lambda x: x != "sample_batch.csv", fnms)

    part_read = []
    for x in fnms:
        part_read.append(lcsv(curdir + "/" + x))
        print x
    read.append(part_read)


# construct appropriate input

exp_file = "./data/sample_batch.csv"
# meaningful_interval =
# 1 26
# 1 26


# blank, flav, trial = loadpar(exp_file)
# exit()