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process_data.py
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process_data.py
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import pandas as pd
import talib
import numpy as np
from sklearn.preprocessing import MinMaxScaler
import ta
from ta import zigzag, money_flow_index
class FeatureExtractor:
def __init__(self, df):
self.df = df
self.open = df['open'].astype('float')
self.close = df['close'].astype('float')
self.high = df['high'].astype('float')
self.low = df['low'].astype('float')
self.volume = df['volume'].astype('float')
def add_bar_features(self):
# stationary candle
self.df['bar_hc'] = self.high - self.close
self.df['bar_ho'] = self.high - self.open
self.df['bar_hl'] = self.high - self.low
self.df['bar_cl'] = self.close - self.low
self.df['bar_ol'] = self.open - self.low
self.df['bar_co'] = self.close - self.open
self.df['bar_mov'] = self.df['close'] - self.df['close'].shift(1)
return self.df
def add_mv_avg_features(self):
self.df['sma5'] = talib.SMA(self.close,5)
self.df['sma20'] = talib.SMA(self.close,20)
self.df['sma120'] = talib.SMA(self.close,120)
self.df['ema12'] = talib.SMA(self.close,5)
self.df['ema26'] = talib.SMA(self.close,26)
return self.df
def add_adj_features(self):
self.df['adj_open'] = self.df['open'] / self.close
self.df['adj_high'] = self.df['high'] / self.close
self.df['adj_low'] = self.df['low'] / self.close
self.df['adj_close'] = self.df['close'] / self.close
return self.df
# note! this is not a complete list
# additional indicator can help in some scenario but usually acts as a noise
def add_ta_features(self):
obv = talib.OBV(self.close, self.volume)
obv_mv_avg = talib.MA(obv, timeperiod=10)
obv_mv_avg[np.isnan(obv_mv_avg)] = obv[np.isnan(obv_mv_avg)]
difference = obv - obv_mv_avg
self.df['obv'] = obv
self.df['obv_signal'] = difference
self.df['obv_cheat'] = np.gradient(difference)
upper, middle, lower = talib.BBANDS(self.close, timeperiod=20, nbdevup=2, nbdevdn=2, matype=0)
self.df['dn'] = lower
self.df['mavg'] = middle
self.df['up'] = upper
self.df['pctB'] = (self.close - self.df.dn) / (self.df.up - self.df.dn)
rsi14 = talib.RSI(self.close, 14)
self.df['rsi14'] = rsi14
macd, macdsignal, macdhist = talib.MACD(self.close, 12, 26, 9)
self.df['macd'] = macd
self.df['signal'] = macdsignal
## addtional info
self.df['adx'] = talib.ADX(self.high, self.low, self.close, timeperiod=14)
self.df['cci'] = talib.CCI(self.high, self.low, self.close, timeperiod=14)
## maximum profit
self.df['plus_di'] = talib.PLUS_DI(self.high, self.low, self.close, timeperiod=14)
## lower_bound
self.df['lower_bound'] = self.df['open'] - self.df['low'] + 1
## ATR
self.df['atr'] = talib.ATR(self.high, self.low, self.close, timeperiod=14)
## STOCH momentum
self.df = ta.stochastic_oscillator_k(self.df)
self.df = ta.stochastic_oscillator_d(self.df, n=10)
## TRIX
self.df['trix'] = talib.TRIX(self.close, timeperiod=5)
self.df['trix_signal'] = ta.moving_average(self.df['trix'], n=3)
self.df['trix_hist'] = self.df['trix'] - self.df['trix_signal']
## MFI
self.df['mfi14'] = money_flow_index(self.df, 14)