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| import pandas as pd | |
| import talib as ta | |
| import numpy as np | |
| def format_date(df): | |
| format = '%Y-%m-%d %H:%M:%S' | |
| df['Datetime'] = pd.to_datetime(df['date'] + ' ' + df['time'], format=format) | |
| df = df.set_index(pd.DatetimeIndex(df['Datetime'])) | |
| df = df.drop('Datetime', axis=1) | |
| return df | |
| # https://stackoverflow.com/questions/39684548/convert-the-string-2-90k-to-2900-or-5-2m-to-5200000-in-pandas-dataframe | |
| def replace_vol(df): | |
| df.volume = (df.volume.replace(r'[KM]+$', '', regex=True).astype(float) * \ | |
| df.volume.str.extract(r'[\d\.]+([KM]+)', expand=False) | |
| .fillna(1) | |
| .replace(['K','M'], [10**3, 10**6]).astype(int)) | |
| return df | |
| def get_all_features(df): | |
| #get_overlap_studies | |
| # BBANDS - Bollinger Bands | |
| df['bbub'], df['bbmb'], df['bblb'] = ta.BBANDS(df['close']) | |
| # DEMA - Double Exponential Moving Average | |
| df['DEMA_100'] = ta.DEMA(df['close'],timeperiod=100) | |
| df['DEMA_30'] = ta.DEMA(df['close'],timeperiod=30) | |
| df['DEMA_5'] = ta.DEMA(df['close'],timeperiod=5) | |
| # EMA - Exponential Moving Average | |
| df['EMA_100'] = ta.EMA(df['close'],timeperiod=100) | |
| df['EMA_30'] = ta.EMA(df['close'],timeperiod=30) | |
| df['EMA_5'] = ta.EMA(df['close'],timeperiod=5) | |
| # HT_TRENDLINE - Hilbert Transform - Instantaneous Trendline | |
| df['HT_TRENDLINE'] = ta.HT_TRENDLINE(df['close']) | |
| # KAMA - Kaufman Adaptive Moving Average | |
| df['KAMA'] = ta.KAMA(df['close']) | |
| # MA - Moving average | |
| df['MA_100'] = ta.MA(df['close'],timeperiod=100) | |
| df['MA_30'] = ta.MA(df['close'],timeperiod=30) | |
| df['MA_5'] = ta.MA(df['close'],timeperiod=5) | |
| # MAMA - MESA Adaptive Moving Average | |
| df['MAMA'], df['FAMA'] = ta.MAMA(df['close']) | |
| # MIDPOINT - MidPoint over period | |
| df['MIDPOINT'] = ta.MIDPOINT(df['close']) | |
| # MIDPRICE - Midpoint Price over period | |
| df['MIDPRICE'] = ta.MIDPRICE(df.high, df.low, timeperiod=14) | |
| # SAR - Parabolic SAR | |
| df['SAR'] = ta.SAR(df.high, df.low, acceleration=0, maximum=0) | |
| # SAREXT - Parabolic SAR - Extended | |
| df['SAREXT'] = ta.SAREXT(df.high, df.low, startvalue=0, offsetonreverse=0, accelerationinitlong=0, accelerationlong=0, accelerationmaxlong=0, accelerationinitshort=0, accelerationshort=0, accelerationmaxshort=0) | |
| # SMA - Simple Moving Average | |
| df['SMA_100'] = ta.SMA(df['close'],timeperiod=100) | |
| df['SMA_30'] = ta.SMA(df['close'],timeperiod=30) | |
| df['SMA_5'] = ta.SMA(df['close'],timeperiod=5) | |
| # T3 - Triple Exponential Moving Average (T3) | |
| df['T3'] = ta.T3(df.close, timeperiod=5, vfactor=0) | |
| # TEMA - Triple Exponential Moving Average | |
| df['TEMA_100'] = ta.TEMA(df['close'],timeperiod=100) | |
| df['TEMA_30'] = ta.TEMA(df['close'],timeperiod=30) | |
| df['TEMA_5'] = ta.TEMA(df['close'],timeperiod=5) | |
| # TRIMA - Triangular Moving Average | |
| df['TRIMA_100'] = ta.TRIMA(df['close'],timeperiod=100) | |
| df['TRIMA_30'] = ta.TRIMA(df['close'],timeperiod=30) | |
| df['TRIMA_5'] = ta.TRIMA(df['close'],timeperiod=5) | |
| # WMA - Weighted Moving Average | |
| df['WMA_100'] = ta.WMA(df['close'],timeperiod=100) | |
| df['WMA_30'] = ta.WMA(df['close'],timeperiod=30) | |
| df['WMA_5'] = ta.WMA(df['close'],timeperiod=5) | |
| #get_momentum_indicator | |
| # ADX - Average Directional Movement Index | |
| df['ADX'] = ta.ADX(df.high, df.low, df.close, timeperiod=14) | |
| # ADXR - Average Directional Movement Index Rating | |
| df['ADXR'] = ta.ADXR(df.high, df.low, df.close, timeperiod=14) | |
| # APO - Absolute Price Oscillator | |
| df['APO'] = ta.APO(df.close, fastperiod=12, slowperiod=26, matype=0) | |
| # AROON - Aroon | |
| df['AROON_DWN'],df['AROON_UP'] = ta.AROON(df.high, df.low, timeperiod=14) | |
| # AROONOSC - Aroon Oscillator | |
| df['AROONOSC'] = ta.AROONOSC(df.high, df.low, timeperiod=14) | |
| # BOP - Balance Of Power | |
| df['BOP'] = ta.BOP(df.open, df.high, df.low, df.close) | |
| # CCI - Commodity Channel Index | |
| df['CCI'] = ta.CCI(df.high, df.low, df.close, timeperiod=14) | |
| # CMO - Chande Momentum Oscillator | |
| df['CMO']= ta.CMO(df.close, timeperiod=14) | |
| # DX - Directional Movement Index | |
| df['DX'] = ta.DX(df.high, df.low, df.close, timeperiod=14) | |
| # MACD - Moving Average Convergence/Divergence | |
| df['MACD'], df['MACD_SGNL'], df['MACD_HIST'] = ta.MACD(df.close, fastperiod=12, slowperiod=26, signalperiod=9) | |
| # MACDFIX - Moving Average Convergence/Divergence Fix 12/26 | |
| df['MACDF'], df['MACDF_SGNL'], df['MACDF_HIST'] = ta.MACDFIX(df.close) | |
| # MFI - Money Flow Index | |
| df['MFI'] = ta.MFI(df.high, df.low, df.close, df.volume, timeperiod=14) | |
| # MINUS_DI - Minus Directional Indicator | |
| df['MINUS_DI'] = ta.MINUS_DI(df.high, df.low, df.close, timeperiod=14) | |
| # MINUS_DM - Minus Directional Movement | |
| df['MINUS_DM'] = ta.MINUS_DM(df.high, df.low, timeperiod=14) | |
| # MOM - Momentum | |
| df['MOM'] = ta.MOM(df.close, timeperiod=10) | |
| # PLUS_DI - Plus Directional Indicator | |
| df['PLUS_DI'] = ta.PLUS_DI(df.high, df.low, df.close, timeperiod=14) | |
| # PLUS_DM - Plus Directional Indicator | |
| df['PLUS_DM'] = ta.PLUS_DM(df.high, df.low, timeperiod=14) | |
| # PPO - Percentage Price Oscillator | |
| df['PPO'] = ta.PPO(df.close, fastperiod=12, slowperiod=26, matype=0) | |
| # ROC - Rate of change : ((price/prevPrice)-1)*100 | |
| df['ROC'] = ta.ROC(df.close, timeperiod=10) | |
| # ROCP - Rate of change Percentage: (price-prevPrice)/prevPrice | |
| df['ROCP'] = ta.ROCP(df.close, timeperiod=10) | |
| # ROCR - Rate of change Percentage: (price-prevPrice)/prevPrice | |
| df['ROCR'] = ta.ROCR(df.close, timeperiod=10) | |
| # ROCR100 - Rate of change ratio 100 scale: (price/prevPrice)*100 | |
| df['ROCR100'] = ta.ROCR100(df.close, timeperiod=10) | |
| # RSI - Relative Strength Index | |
| df['RSI'] = ta.RSI(df.close, timeperiod=14) | |
| # STOCH - Stochastic | |
| df['STOCH_SLWK'], df['STOCH_SLWD'] = ta.STOCH(df.high, df.low, df.close, fastk_period=5, slowk_period=3, slowk_matype=0, slowd_period=3, slowd_matype=0) | |
| # STOCHF - Stochastic Fast | |
| df['STOCH_FSTK'], df['STOCH_FSTD'] = ta.STOCHF(df.high, df.low, df.close, fastk_period=5, fastd_period=3, fastd_matype=0) | |
| # STOCHRSI - Stochastic Relative Strength Index | |
| df['STOCHRSI_FSTK'], df['STOCHRSI_FSTD'] = ta.STOCHRSI(df.close, timeperiod=14, fastk_period=5, fastd_period=3, fastd_matype=0) | |
| # TRIX - 1-day Rate-Of-Change (ROC) of a Triple Smooth EMA | |
| df['TRIX'] = ta.TRIX(df.close, timeperiod=30) | |
| # ULTOSC - Ultimate Oscillator | |
| df['ULTOSC'] = ta.ULTOSC(df.high, df.low, df.close, timeperiod1=7, timeperiod2=14, timeperiod3=28) | |
| # WILLR - Williams' %R | |
| df['WILLR'] = ta.WILLR(df.high, df.low, df.close, timeperiod=14) | |
| # get_volume_indicator | |
| # AD - Chaikin A/D Line | |
| df['AD'] = ta.AD(df.high, df.low, df.close, df.volume) | |
| # ADOSC - Chaikin A/D Oscillator | |
| df['ADOSC'] = ta.ADOSC(df.high, df.low, df.close, df.volume, fastperiod=3, slowperiod=10) | |
| # OBV - On Balance Volume | |
| df['OBV'] = ta.OBV(df.close, df.volume) | |
| # get_volatility_indicator | |
| # ATR - Average True Range | |
| df['ATR'] = ta.ATR(df.high, df.low, df.close, timeperiod=14) | |
| # NATR - Normalized Average True Range | |
| df['NATR'] = ta.NATR(df.high, df.low, df.close, timeperiod=14) | |
| # TRANGE - True Range | |
| df['TRANGE'] = ta.TRANGE(df.high, df.low, df.close) | |
| # get_transform_price | |
| # AVGPRICE - Average Price | |
| df['AVGPRICE'] = ta.AVGPRICE(df.open, df.high, df.low, df.close) | |
| # MEDPRICE - Median Price | |
| df['MEDPRICE'] = ta.MEDPRICE(df.high, df.low) | |
| # TYPPRICE - Typical Price | |
| df['TYPPRICE'] = ta.TYPPRICE(df.high, df.low, df.close) | |
| # WCLPRICE - Weighted Close Price | |
| df['WCLPRICE'] = ta.WCLPRICE(df.high, df.low, df.close) | |
| # get_cycle_indicator | |
| # HT_DCPERIOD - Hilbert Transform - Dominant Cycle Period | |
| df['HT_DCPERIOD'] = ta.HT_DCPERIOD(df.close) | |
| # HT_DCPHASE - Hilbert Transform - Dominant Cycle Phase | |
| df['HT_DCPHASE'] = ta.HT_DCPHASE(df.close) | |
| # HT_PHASOR - Hilbert Transform - Phasor Components | |
| df['HT_PHASOR_IP'], df['HT_PHASOR_QD'] = ta.HT_PHASOR(df.close) | |
| # HT_SINE - Hilbert Transform - SineWave | |
| df['HT_SINE'], df['HT_SINE_LEADSINE'] = ta.HT_SINE(df.close) | |
| # HT_TRENDMODE - Hilbert Transform - Trend vs Cycle Mode | |
| df['HT_TRENDMODE'] = ta.HT_TRENDMODE(df.close) | |
| return df | |
| def feature_main(df): | |
| df['time'] = df['time'].map(lambda x: np.sum(list(map(int, str(x).split(':'))))) | |
| df = get_all_features(df) | |
| values = {} | |
| for col in df.columns: | |
| idx = df.reset_index()[col].first_valid_index() | |
| values[col] = df.iloc[idx][col] | |
| df = df.fillna(value=values) | |
| return df |