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@ -236,8 +236,10 @@ class Components :
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# We need to remove the continuous columns from the data-frame
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# @TODO: Abstract this !!
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#
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real_df = pd.DataFrame()
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if x_cols :
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args['data'] = args['data'][list(set(args['data'].columns) - set(x_cols))]
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real_df = args[x_cols].copy()
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args['candidates'] = 1 if 'candidates' not in args else int(args['candidates'])
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if 'gpu' in args :
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@ -276,7 +278,7 @@ class Components :
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_df = _df[list(set(_df.columns) - set(skip_columns))]
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if x_cols :
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for _col in x_cols :
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if df[_col].unique().size > 0 :
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if real_df[_col].unique().size > 0 :
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_df[_col] = self.approximate(df[_col].fillna(-1))
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else:
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_df[_col] = -1
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@ -289,6 +291,7 @@ class Components :
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# Let us merge the dataset here and and have a comprehensive dataset
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_df = pd.DataFrame.join(df,_df)
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if _schema :
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for _item in _schema :
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if _item['type'] in ['DATE','TIMESTAMP','DATETIME'] :
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