У меня есть несколько функций для препроцессинга данных и так же модель для обучения.
Я хочу все эти функции использовать внутри одного pipeline
.
Вот мои функции:
Первая функция:
def group_timestamp(dataset, size=False):
"""
dataset - dataset
returns: grouped data by timestamp
"""
if size==False:
data = dataset.groupby(['time']).mean()
print('Trades from grouped data: {}'.format(data.shape[0]))
else:
if size==True:
data_1 = dataset[['time','p']]
data_2 = dataset[['time','s']]
data_1 = data_1.groupby(['time']).mean()
data_2 = data_2.groupby(['time']).sum()
data = pd.concat([data_1, data_2],axis=1)
return data
Вторая функция:
def get_target_size(data, predict_step = 5, trades = 5, limit=5):
"""
data - dataset for preprocessing
predict_step - the number of trades in the future where we want to predict the movement
trades - the number of trades in the past we use for prediction
return: X, y - attributes and target for models
"""
data['step'] = data['p'].shift(predict_step)
data['step_vol'] = data['s'].shift(predict_step)
data['step-1'] = data['p'].shift(predict_step+1)
for i in range(1, trades+1):
data[i] = data['step-1'].pct_change(i)
data.dropna(inplace = True)
data['y'] = data['p'] - data['step']
data['y'] = data['y'].apply(lambda s: 1 if s > 0 else 0)
data['y'] = data.apply(filter_size, limit = limit, axis=1)
y = data['y']
y = y[:-trades]
X = data.drop(['p', 'step', 'step-1', 'y', 'step_vol'], axis=1)
X = X[:-trades]
print('Classes distribution:')
print(data['y'].value_counts())
print('X shape: {}'.format(X.shape))
print('y shape: {}'.format(y.shape))
# print('Examples of X data: {}'.format(X.head()))
# print('Examples of y data: {}'.format(y.head()))
return X, y
Третья функция:
def data_split(X, y, size_valid = 0.15, size_test = 0.1):
"""
X - attributes
y - target variable
size_valid - the size of the validation set. Might be (0...1). Uses for the model evaluation
size_test - the size of the test set. Might be (0...1). Uses for the model predictions
return:
- X_train_t - dataset for training, attributes
- y_train_t - dataset for training, target
- X_train_v - dataset for validation after training, attributes
- y_train_v - dataset for validation after training, target
- X_test - dataset for testing the model after training, attributes
- y_test - dataset for testing the model after training, target
"""
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=size_test)
X_train_t, X_train_v, y_train_t, y_train_v = train_test_split(X_train, y_train, test_size=size_valid)
print('Train set size: {}, {}'.format(X_train_t.shape, y_train_t.shape))
print('Validation set size: {}, {}'.format(X_train_v.shape, y_train_v.shape))
print('Test set size: {}, {}'.format(X_test.shape, y_test.shape))
return (X_train_t, y_train_t, X_train_v, y_train_v, X_test, y_test)
Обучение модели:
clf = LGBMClassifier()
clf.fit(X_train, y_train)
Сейчас я использую эти функции друг за другом, вызывая следующую функцию, после предыдущей.
Как эти 3 функции завернуть в один pipeline
?
Нужно ли для этого изменять функции, описанные выше?
Я хочу иметь что-то вроде:
pipeline = Pipeline([
('group_time', group_timestamp),
('get_target', get_target_size),
('split', data_split),
('clf',LGBMClassifier)])
pipeline.fit(X_train,y_train)
Спасибо