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@ -432,67 +432,7 @@ class Generator (Learner):
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return _date.strftime(FORMAT)
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pass
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def format(self,_df,_schema):
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r = {}
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for _item in _schema :
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name = _item['name']
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if _item['type'].upper() in ['DATE','DATETIME','TIMESTAMP'] :
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FORMAT = '%Y-%m-%d'
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try:
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#
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#-- Sometimes data isn't all it's meant to be
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SIZE = -1
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if 'format' in self.info and name in self.info['format'] :
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FORMAT = self.info['format'][name]
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SIZE = 10
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elif _item['type'] in ['DATETIME','TIMESTAMP'] :
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FORMAT = '%Y-%m-%-d %H:%M:%S'
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SIZE = 19
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# if SIZE > 0 :
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# values = pd.to_datetime(_df[name], format=FORMAT).astype(np.datetime64)
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# # _df[name] = [_date[:SIZE].strip() for _date in values]
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# _df[name] = _df[name].astype(str)
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r[name] = FORMAT
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# _df[name] = pd.to_datetime(_df[name], format=FORMAT) #.astype('datetime64[ns]')
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if _item['type'] in ['DATETIME','TIMESTAMP']:
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pass #;_df[name] = _df[name].fillna('').astype('datetime64[ns]')
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except Exception as e:
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print (e)
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pass
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finally:
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pass
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else:
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#
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# Because types are inferred on the basis of the sample being processed they can sometimes be wrong
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# To help disambiguate we add the schema information
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_type = None
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if 'int' in _df[name].dtypes.name or 'int' in _item['type'].lower():
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_type = np.int
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elif 'float' in _df[name].dtypes.name or 'float' in _item['type'].lower():
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_type = np.float
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if _type :
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_df[name] = _df[name].fillna(0).replace(' ',0).replace('',0).replace('NA',0).replace('nan',0).astype(_type)
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# else:
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# _df[name] = _df[name].astype(str)
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# _df = _df.replace('NaT','').replace('NA','')
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if r :
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self.log(**{'action':'format','input':r})
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return _df
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pass
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def post(self,_candidates):
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if 'target' in self.store :
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@ -540,7 +480,7 @@ class Generator (Learner):
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_df = self.format(_df,_schema)
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# _df = self.format(_df,_schema)
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# _log = [{"name":_schema[i]['name'],"dataframe":_df[_df.columns[i]].dtypes.name,"schema":_schema[i]['type']} for i in np.arange(len(_schema)) ]
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self.log(**{"action":"consolidate","input":{"rows":N,"candidate":_candidates.index(_iodf)}})
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