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featurize_file.py
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featurize_file.py
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import pandas as pd
from sklearn.preprocessing import normalize, StandardScaler
from cbfv.composition import generate_features as gf
class Featurize():
def __init__(self, data_path, scale=True, save=True):
self.data_path = data_path
self.scale = scale
self.save = save
self.get_xy()
def get_xy(self):
df = pd.read_csv(self.data_path)
df.columns = ['formula', 'target']
self.df = df
X, y, formulae, skipped = gf(df, elem_prop='oliynyk')
self.columns = X.columns
self.X = X
self.y = y
if self.scale:
self.scaler = StandardScaler()
self.X = normalize(self.scaler.fit_transform(X))
self.formula = formulae
self.skipped = skipped
train_file = 'data/ael_bulk_modulus_vrh/train.csv'
# greate a model (featurization of train data here)
feats = Featurize(train_file, scale=True, save=True)
# set training and predicted data as pandas dataframes (can be saved to csv)
X = pd.DataFrame(feats.X, columns=feats.columns)
X.to_csv('featurized_data/X.csv', index=False)