| Conditions | 10 |
| Total Lines | 60 |
| Lines | 0 |
| Ratio | 0 % |
| Changes | 1 | ||
| Bugs | 0 | Features | 0 |
Small methods make your code easier to understand, in particular if combined with a good name. Besides, if your method is small, finding a good name is usually much easier.
For example, if you find yourself adding comments to a method's body, this is usually a good sign to extract the commented part to a new method, and use the comment as a starting point when coming up with a good name for this new method.
Commonly applied refactorings include:
If many parameters/temporary variables are present:
Complex classes like FifFile.inspect() often do a lot of different things. To break such a class down, we need to identify a cohesive component within that class. A common approach to find such a component is to look for fields/methods that share the same prefixes, or suffixes.
Once you have determined the fields that belong together, you can apply the Extract Class refactoring. If the component makes sense as a sub-class, Extract Subclass is also a candidate, and is often faster.
| 1 | from __future__ import division |
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| 15 | def inspect(self): |
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| 16 | provenance = super(FifFile, self).inspect() |
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| 17 | """ try: |
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| 18 | img = self.libs.mne.io.Raw(self.path, allow_maxshield=True) |
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| 19 | except ValueError: |
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| 20 | pass |
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| 21 | else: |
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| 22 | inspect file |
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| 23 | Return |
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| 24 | """ |
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| 25 | ftypes = { |
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| 26 | 'cov': self.libs.mne.read_cov, |
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| 27 | 'epo': self.libs.mne.read_epochs, |
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| 28 | 'ave': self.libs.mne.read_evokeds, |
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| 29 | 'fwd': self.libs.mne.read_forward_solution, |
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| 30 | 'trans': self.libs.mne.read_trans, |
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| 31 | 'raw': partial(self.libs.mne.io.read_raw_fif, allow_maxshield=True), |
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| 32 | } |
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| 33 | oldLevel = logging.getLogger('mne').getEffectiveLevel() |
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| 34 | logging.getLogger('mne').setLevel(logging.ERROR) |
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| 35 | for ftype, readfif in ftypes.items(): |
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| 36 | try: |
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| 37 | img = readfif(self.path) |
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| 38 | if img == []: |
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| 39 | continue |
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| 40 | break |
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| 41 | except ValueError: |
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| 42 | continue |
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| 43 | else: |
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| 44 | ftype = 'other' |
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| 45 | logging.getLogger('mne').setLevel(oldLevel) |
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| 46 | |||
| 47 | if ftype == 'raw': |
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| 48 | sub = img.info['subject_info'] |
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| 49 | if sub is not None: |
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| 50 | provenance['subject'] = sub['first_name']+' '+sub['last_name'] |
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| 51 | provenance['project'] = img.info['proj_name'] |
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| 52 | acqTS = img.info['meas_date'][0] |
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| 53 | provenance['acquired'] = datetime.fromtimestamp(acqTS) |
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| 54 | T = img.last_samp - img.first_samp + 1 |
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| 55 | provenance['dimensions'] = [img.info['nchan'], T] |
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| 56 | provenance['sampling-frequency'] = img.info['sfreq'] |
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| 57 | provenance['duration'] = T/img.info['sfreq'] |
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| 58 | |||
| 59 | if ftype == 'epo': |
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| 60 | provenance['lowpass'] = img.info['lowpass'] |
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| 61 | provenance['highpass'] = img.info['highpass'] |
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| 62 | provenance['bad-channels'] = img.info['bads'] |
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| 63 | provenance['dimensions'] = [img.events.shape[0], img.times.shape[0]] |
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| 64 | |||
| 65 | if ftype == 'ave': |
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| 66 | nEvokeds = len(img) |
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| 67 | provenance['dimensions'] = [nEvokeds] + list(img[0].data.shape) |
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| 68 | |||
| 69 | if ftype == 'cov': |
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| 70 | provenance['dimensions'] = list(img.data.shape) |
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| 71 | |||
| 72 | provenance['fif-type'] = ftype |
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| 73 | provenance['modality'] = 'MEG' |
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| 74 | return provenance |
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| 75 | |||
| 95 |