Пример #1
0
    def __init__(self, tempdir):
        np.random.seed(42)
        self.tmp_dir = tempdir
        p = Path(self.tmp_dir)
        self.ns = 100
        self.nsamp = 25
        self.ncmax = 42
        self.nc = 10
        self.nt = 5
        self.ncd = 1000
        np.save(p / 'spike_times.npy',
                .01 * np.cumsum(nr.exponential(size=self.ns)))
        np.save(p / 'spike_clusters.npy',
                nr.randint(low=1, high=self.nt, size=self.ns))
        shutil.copy(p / 'spike_clusters.npy', p / 'spike_templates.npy')
        np.save(p / 'amplitudes.npy',
                nr.uniform(low=0.5, high=1.5, size=self.ns))
        np.save(p / 'channel_positions.npy', np.c_[np.arange(self.nc),
                                                   np.zeros(self.nc)])
        np.save(p / 'templates.npy',
                np.random.normal(size=(self.nt, 50, self.nc)))
        np.save(p / 'similar_templates.npy',
                np.tile(np.arange(self.nt), (self.nt, 1)))
        np.save(p / 'channel_map.npy', np.c_[np.arange(self.nc)])
        np.save(p / 'channel_probe.npy', np.zeros(self.nc))
        np.save(p / 'whitening_mat.npy', np.eye(self.nc, self.nc))
        np.save(p / '_phy_spikes_subset.channels.npy',
                np.zeros([self.ns, self.ncmax]))
        np.save(p / '_phy_spikes_subset.spikes.npy', np.zeros([self.ns]))
        np.save(p / '_phy_spikes_subset.waveforms.npy',
                np.zeros([self.ns, self.nsamp, self.ncmax]))

        _write_tsv_simple(p / 'cluster_group.tsv', 'group', {
            2: 'good',
            3: 'mua',
            5: 'noise'
        })
        _write_tsv_simple(
            p / 'cluster_Amplitude.tsv',
            field_name='Amplitude',
            data={str(n): np.random.rand() * 120
                  for n in np.arange(self.nt)})
        with open(p / 'probes.description.txt', 'w+') as fid:
            fid.writelines(['label\n'])

        # Raw data
        self.dat_path = p / 'rawdata.npy'
        np.save(self.dat_path, np.random.normal(size=(self.ncd, self.nc)))

        # LFP data.
        lfdata = (100 * np.random.normal(size=(1000, self.nc))).astype(
            np.int16)
        with (p / 'mydata.lf.bin').open('wb') as f:
            lfdata.tofile(f)

        self.files = os.listdir(self.tmp_dir)
Пример #2
0
    def write_cluster_data(self):
        """We load all cluster metadata from TSV files, renumber the clusters,
        merge the dictionaries, and save in a new merged TSV file. """

        cluster_data = [
            'cluster_Amplitude.tsv', 'cluster_ContamPct.tsv',
            'cluster_KSLabel.tsv'
        ]

        for fn in cluster_data:
            metadata = {}
            for subdir, offset in zip(self.subdirs, self.cluster_offsets):
                try:
                    field_name, metadata_loc = _read_tsv_simple(subdir / fn)
                except ValueError:
                    # Skipping non-existing file.
                    continue
                for k, v in metadata_loc.items():
                    metadata[k + offset] = v
            if metadata:
                _write_tsv_simple(self.out_dir / fn, field_name, metadata)
Пример #3
0
    def __init__(self, tempdir):
        self.tmp_dir = tempdir
        p = Path(self.tmp_dir)
        self.ns = 100
        self.nc = 10
        self.nt = 5
        self.ncd = 1000
        np.save(p / 'spike_times.npy',
                .01 * np.cumsum(nr.exponential(size=self.ns)))
        np.save(p / 'spike_clusters.npy',
                nr.randint(low=10, high=10 + self.nt, size=self.ns))
        shutil.copy(p / 'spike_clusters.npy', p / 'spike_templates.npy')
        np.save(p / 'amplitudes.npy',
                nr.uniform(low=0.5, high=1.5, size=self.ns))
        np.save(p / 'channel_positions.npy', np.c_[np.arange(self.nc),
                                                   np.zeros(self.nc)])
        np.save(p / 'templates.npy',
                np.random.normal(size=(self.nt, 50, self.nc)))
        np.save(p / 'similar_templates.npy',
                np.tile(np.arange(self.nt), (self.nt, 1)))
        np.save(p / 'channel_map.npy', np.c_[np.arange(self.nc)])
        _write_tsv_simple(p / 'cluster_group.tsv', 'group', {
            2: 'good',
            3: 'mua',
            5: 'noise'
        })

        # Raw data
        self.dat_path = p / 'rawdata.npy'
        np.save(self.dat_path, np.random.normal(size=(self.ncd, self.nc)))

        # LFP data.
        lfdata = (100 * np.random.normal(size=(1000, self.nc))).astype(
            np.int16)
        with (p / 'mydata.lf.bin').open('wb') as f:
            lfdata.tofile(f)

        self.files = os.listdir(self.tmp_dir)
Пример #4
0
def save_metadata(filename, field_name, metadata):
    """Save metadata in a CSV file."""
    return _write_tsv_simple(filename, field_name, metadata)