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e5af702ddb
Author | SHA1 | Date |
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Steve Nyemba | e5af702ddb | |
Steve Nyemba | f1e2fe3699 |
16
data/gan.py
16
data/gan.py
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@ -103,11 +103,12 @@ class GNet :
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CHECKPOINT_SKIPS = int(args['checkpoint_skips']) if 'checkpoint_skips' in args else int(self.MAX_EPOCHS/10)
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CHECKPOINT_SKIPS = 1 if CHECKPOINT_SKIPS < 1 else CHECKPOINT_SKIPS
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# if self.MAX_EPOCHS < 2*CHECKPOINT_SKIPS :
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# CHECKPOINT_SKIPS = 2
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# self.CHECKPOINTS = [1,self.MAX_EPOCHS] + np.repeat( np.divide(self.MAX_EPOCHS,CHECKPOINT_SKIPS),CHECKPOINT_SKIPS ).cumsum().astype(int).tolist()
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self.CHECKPOINTS = np.repeat(CHECKPOINT_SKIPS, self.MAX_EPOCHS/ CHECKPOINT_SKIPS).cumsum().astype(int).tolist()
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self.ROW_COUNT = args['real'].shape[0] if 'real' in args else 100
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self.CONTEXT = args['context']
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self.ATTRIBUTES = {"id":args['column_id'] if 'column_id' in args else None,"synthetic":args['column'] if 'column' in args else None}
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@ -287,8 +288,17 @@ class Generator (GNet):
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"""
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def __init__(self,**args):
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GNet.__init__(self,**args)
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self.discriminator = Discriminator(**args)
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if 'trainer' not in args :
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GNet.__init__(self,**args)
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self.discriminator = Discriminator(**args)
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else:
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_args = {}
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_trainer = args['trainer']
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for key in vars(_trainer) :
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value = getattr(_trainer,key)
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setattr(self,key,value)
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_args[key] = value
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self.discriminator = Discriminator(**_args)
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def loss(self,**args):
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fake = args['fake']
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label = args['label']
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@ -33,6 +33,7 @@ class Learner(Process):
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super(Learner, self).__init__()
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self._arch = {'init':_args}
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self.ndx = 0
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self._queue = Queue()
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self.lock = RLock()
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@ -44,6 +45,8 @@ class Learner(Process):
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self.gpu = None
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self.info = _args['info']
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if 'context' not in self.info :
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self.info['context'] = self.info['from']
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self.columns = self.info['columns'] if 'columns' in self.info else None
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self.store = _args['store']
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@ -97,9 +100,12 @@ class Learner(Process):
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# __info = (pd.DataFrame(self._states)[['name','path','args']]).to_dict(orient='records')
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if self._states :
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__info = {}
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# print (self._states)
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for key in self._states :
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__info[key] = [{"name":_item['name'],"args":_item['args'],"path":_item['path']} for _item in self._states[key]]
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_pipeline = self._states[key]
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# __info[key] = ([{'name':_payload['name']} for _payload in _pipeline])
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__info[key] = [{"name":_item['name'],"args":_item['args'],"path":_item['path']} for _item in self._states[key] if _item ]
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self.log(object='state-space',action='load',input=__info)
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@ -270,18 +276,23 @@ class Trainer(Learner):
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#
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_epochs = [_e for _e in gTrain.logs['epochs'] if _e['path'] != '']
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_epochs.sort(key=lambda _item: _item['loss'],reverse=False)
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_args['network_args']['max_epochs'] = _epochs[0]['epochs']
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self.log(action='autopilot',input={'epoch':_epochs[0]})
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g = Generator(**_args)
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# g.run()
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end = datetime.now() #.strftime('%Y-%m-%d %H:%M:%S')
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_min = float((end-beg).seconds/ 60)
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_logs = {'action':'train','input':{'start':beg.strftime('%Y-%m-%d %H:%M:%S'),'minutes':_min,"unique_counts":self._encoder._io[0]}}
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self.log(**_logs)
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self._g = g
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if self.autopilot :
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if self.autopilot :
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# g = Generator(**_args)
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g = Generator(**self._arch['init'])
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self._g = g
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self._g.run()
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#
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#@TODO Find a way to have the data in the object ....
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@ -300,10 +311,15 @@ class Generator (Learner):
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#
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# We need to load the mapping information for the space we are working with ...
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#
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self.network_args['candidates'] = int(_args['candidates']) if 'candidates' in _args else 1
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filename = os.sep.join([self.network_args['logs'],'output',self.network_args['context'],'map.json'])
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# filename = os.sep.join([self.network_args['logs'],'output',self.network_args['context'],'map.json'])
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_suffix = self.network_args['context']
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filename = os.sep.join([self.network_args['logs'],'output',self.network_args['context'],'meta-',_suffix,'.json'])
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self.log(**{'action':'init-map','input':{'filename':filename,'exists':os.path.exists(filename)}})
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if os.path.exists(filename):
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file = open(filename)
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self._map = json.loads(file.read())
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file.close()
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@ -580,6 +596,7 @@ class factory :
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"""
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#
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if _args['apply'] in [apply.RANDOM] :
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pthread = Shuffle(**_args)
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@ -69,7 +69,7 @@ class Date(Post):
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"""
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"""
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pass
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pass
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class Approximate(Post):
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def apply(**_args):
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pass
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@ -31,12 +31,22 @@ class State :
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continue
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pointer = _item['module']
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_args = _item['args']
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if type(pointer).__name__ != 'function':
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_args = _item['args'] if 'args' in _item else {}
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else:
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pointer = _item['module']
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_args = _item['args'] if 'args' in _item else {}
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_data = pointer(_data,_args)
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return _data
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@staticmethod
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def instance(_args):
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"""
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"""
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pre = []
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post=[]
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@ -45,8 +55,20 @@ class State :
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#
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# If the item has a path property is should be ignored
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path = _args[key]['path'] if 'path' in _args[key] else ''
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out[key] = [ State._build(dict(_item,**{'path':path})) if 'path' not in _item else State._build(_item) for _item in _args[key]['pipeline']]
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# out[key] = [ State._build(dict(_item,**{'path':path})) if 'path' not in _item else State._build(_item) for _item in _args[key]['pipeline']]
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out[key] = []
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for _item in _args[key]['pipeline'] :
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if type(_item).__name__ == 'function':
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_stageInfo = {'module':_item,'name':_item.__name__,'args':{},'path':''}
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pass
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else:
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if 'path' in _item :
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_stageInfo = State._build(dict(_item,**{'path':path}))
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else :
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_stageInfo= State._build(_item)
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out[key].append(_stageInfo)
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# print ([out])
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return out
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# if 'pre' in _args:
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# path = _args['pre']['path'] if 'path' in _args['pre'] else ''
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@ -68,11 +90,18 @@ class State :
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pass
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@staticmethod
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def _build(_args):
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"""
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This function builds the object {module,path} where module is extracted from a file (if needed)
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:param _args dictionary containing attributes that can be value pair
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It can also be a function
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"""
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#
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# In the advent an actual pointer is passed we should do the following
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_info = State._extract(_args)
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# _info = dict(_args,**_info)
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_info['module'] = State._instance(_info)
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_info['module'] = State._instance(_info)
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return _info if _info['module'] is not None else None
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@staticmethod
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2
setup.py
2
setup.py
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@ -4,7 +4,7 @@ import sys
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def read(fname):
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return open(os.path.join(os.path.dirname(__file__), fname)).read()
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args = {"name":"data-maker","version":"1.6.4",
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args = {"name":"data-maker","version":"1.6.6",
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"author":"Vanderbilt University Medical Center","author_email":"steve.l.nyemba@vumc.org","license":"MIT",
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"packages":find_packages(),"keywords":["healthcare","data","transport","protocol"]}
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args["install_requires"] = ['data-transport@git+https://github.com/lnyemba/data-transport.git','tensorflow']
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