I'm using Pandas version 0.12.0 on Ubuntu 13.04. I'm trying to create a 5D panel object to contain some EEG data split by condition.

How I'm chosing to structure my data:

Let me begin by demonstrating my use of pandas.core.panelnd.creat_nd_panel_factory.

Subject = panelnd.create_nd_panel_factory(
    klass_name='Subject',
    axis_orders=['setsize', 'location', 'vfield', 'channels', 'samples'],
    axis_slices={'labels': 'location',
            'items': 'vfield',
            'major_axis': 'major_axis',
            'minor_axis': 'minor_axis'},
    slicer=pd.Panel4D,
    axis_aliases={'ss': 'setsize',
            'loc': 'location',
            'vf': 'vfield',
            'major': 'major_axis',
            'minor': 'minor_axis'}
    # stat_axis=2  # dafuq is this?
    )

Essentially, the organization is as follows:

  • setsize: an experimental condition, can be 1 or 2
  • location: an experimental condition, can be "same", "diff" or None
  • vfield: an experimental condition, can be "lvf" or "rvf"

The last two axes correspond to a DataFrame's major_axis and minor_axis. They have been renamed for clarity:

  • channels: columns, the EEG channels (129 of them)
  • samples: rows, the individual samples. samples can be though of as a time axis.

What I'm trying to do:

Each experimental condition (subject x setsize x location x vfield) is stored in it's own tab-delimited file, which I am reading in with pandas.read_table, obtaining a DataFrame object. I want to create one 5-dimensional panel (i.e. Subject) for each subject, which will contain all experimental conditions (i.e. DataFrames) for that subject.

To start, I'm building a nested dictionary for each subject/Subject:

# ... do some boring stuff to get the text files, etc...
for _, factors in df.iterrows():
    # `factors` is a 4-tuple containing
    #  (subject number, setsize, location, vfield, 
    #  and path to the tab-delimited file).
    sn, ss, loc, vf, path = factors
    eeg = pd.read_table(path, sep='\t', names=range(1, 129) + ['ref'], header=None)

    # build nested dict
    subjects.setdefault(sn, {}).setdefault(ss, {}).setdefault(loc, {})[vf] = eeg

# and now attempt to build `Subject`
for sn, d in subjects.iteritems():
    subjects[sn] = Subject(d)

Full stack trace

---------------------------------------------------------------------------
KeyError                                  Traceback (most recent call last)
<ipython-input-2-831fa603ca8f> in <module>()
----> 1 import_data()

/home/louist/Dropbox/Research/VSTM/scripts/vstmlib.py in import_data()
     64 
     65     import ipdb; ipdb.set_trace()
---> 66     for sn, d in subjects.iteritems():
     67         subjects[sn] = Subject(d)
     68 

/usr/local/lib/python2.7/dist-packages/pandas/core/panelnd.pyc in __init__(self, *args, **kwargs)
     65         if 'dtype' not in kwargs:
     66             kwargs['dtype'] = None
---> 67         self._init_data(*args, **kwargs)
     68     klass.__init__ = __init__
     69 

/usr/local/lib/python2.7/dist-packages/pandas/core/panel.pyc in _init_data(self, data, copy, dtype, **kwargs)
    250             mgr = data
    251         elif isinstance(data, dict):
--> 252             mgr = self._init_dict(data, passed_axes, dtype=dtype)
    253             copy = False
    254             dtype = None

/usr/local/lib/python2.7/dist-packages/pandas/core/panel.pyc in _init_dict(self, data, axes, dtype)
    293         raxes = [self._extract_axis(self, data, axis=i)
    294                  if a is None else a for i, a in enumerate(axes)]
--> 295         raxes_sm = self._extract_axes_for_slice(self, raxes)
    296 
    297         # shallow copy

/usr/local/lib/python2.7/dist-packages/pandas/core/panel.pyc in _extract_axes_for_slice(self, axes)
   1477         """ return the slice dictionary for these axes """
   1478         return dict([(self._AXIS_SLICEMAP[i], a) for i, a
-> 1479                      in zip(self._AXIS_ORDERS[self._AXIS_LEN - len(axes):], axes)])
   1480 
   1481     @staticmethod

KeyError: 'location'

I understand that panelnd is an experimental feature, but I'm fairly certain that I'm doing something wrong. Can somebody please point me in the right direction? If it is a bug, is there something that can be done about it?

As usual, thank you very much in advance!

up vote 3 down vote accepted

Working example. You needed to specify the mapping of your axes to the internal axes names via the slices. This fiddles with the internal structure, but the fixed names of pandas still exist (and are somewhat hardcoded via Panel/Panel4D), so you need to provide the mapping.

I would create a Panel4D first, then your Subject as I did below.

Pls post on github / here if you find more bugs. This is not a heavily used feature.

Output

<class 'pandas.core.panelnd.Subject'>
Dimensions: 3 (setsize) x 1 (location) x 1 (vfield) x 10 (channels) x 2 (samples)
Setsize axis: level0_0 to level0_2
Location axis: level1_0 to level1_0
Vfield axis: level2_0 to level2_0
Channels axis: level3_0 to level3_9
Samples axis: level4_1 to level4_2

Code

import pandas as pd
import numpy as np
from pandas.core import panelnd

Subject = panelnd.create_nd_panel_factory(
    klass_name='Subject',
    axis_orders=['setsize', 'location', 'vfield', 'channels', 'samples'],
    axis_slices={'location' : 'labels',
                 'vfield' : 'items',
                 'channels' : 'major_axis',
                 'samples': 'minor_axis'},
    slicer=pd.Panel4D,
    axis_aliases={'ss': 'setsize',
                  'loc': 'labels',
                  'vf': 'items',
                  'major': 'major_axis',
                  'minor': 'minor_axis'})


subjects = dict()
for i in range(3):
    eeg = pd.DataFrame(np.random.randn(10,2),columns=['level4_1','level4_2'],index=[ "level3_%s" % x for x in range(10)])

    loc, vf = ('level1_0','level2_0')
    subjects["level0_%s" % i] = pd.Panel4D({ loc : { vf : eeg }})

print Subject(subjects)
  • thanks very much for your example. I'll get started on that right away. In the meantime, do you happen to know what the stat_axis parameter does in panelnd.create_nd_panel_factory? I wasn't able to find any documentation and I think I'll be using this feature extensively. – blz Sep 11 '13 at 20:07
  • Ok, your example seems to work beautifully, so I am happily accepting your answer! I still have a few questions, though. 1) I tried it without constructing a Panel4D and it seems to work (other than the caveat mentioned question #2). Why do you recommend creating a Panel4D first? 2) My channels and samples axes seem to be reversed. What gives? – blz Sep 11 '13 at 20:12
  • 1
    you don't really need it, it just has to do with the default when you don't provide an axis. Just specify when you actually do it. e.g. s.mean(axis='location') (and its only used in certain cases) – Jeff Sep 11 '13 at 20:14
  • 1
    a DataFrame has reversed axes when its put into a higher level, just provide df.T when you are assigning them (similar to what you get when you provide a dict as a constructor) – Jeff Sep 11 '13 at 20:16
  • Perfect! I can't thank you enough! Just one final question regarding your last comment -- why does DataFrame reverse it's axes in such cases? I assume this is intentional, but I'm not very clear on why this is a desirable feature. – blz Sep 11 '13 at 20:17

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