intelligent-trading-bot/scripts/features.py
2023-10-01 20:51:09 +02:00

180 lines
6.9 KiB
Python

from typing import Tuple
from pathlib import Path
import click
import numpy as np
import pandas as pd
from service.App import *
from common.feature_generation import *
from common.label_generation_highlow import generate_labels_highlow
from common.label_generation_highlow import generate_labels_highlow2
from common.label_generation_topbot import generate_labels_topbot
from common.label_generation_topbot import generate_labels_topbot2
#
# Parameters
#
class P:
in_nrows = 50_000_000 # Load only this number of records
tail_rows = int(10.0 * 525_600) # Process only this number of last rows
@click.command()
@click.option('--config_file', '-c', type=click.Path(), default='', help='Configuration file name')
def main(config_file):
load_config(config_file)
time_column = App.config["time_column"]
now = datetime.now()
#
# Load merged data with regular time series
#
symbol = App.config["symbol"]
data_path = Path(App.config["data_folder"]) / symbol
file_path = (data_path / App.config.get("merge_file_name")).with_suffix(".csv")
if not file_path.is_file():
print(f"Data file does not exist: {file_path}")
return
print(f"Loading data from source data file {file_path}...")
df = pd.read_csv(file_path, parse_dates=[time_column], date_format="ISO8601", nrows=P.in_nrows)
print(f"Finished loading {len(df)} records with {len(df.columns)} columns.")
df = df.iloc[-P.tail_rows:]
df = df.reset_index(drop=True)
print(f"Input data size {len(df)} records. Range: [{df.iloc[0][time_column]}, {df.iloc[-1][time_column]}]")
#
# Generate derived features
#
feature_sets = App.config.get("feature_sets", [])
if not feature_sets:
print(f"ERROR: no feature sets defined. Nothing to process.")
return
# By default, we generate standard kline features
#feature_sets = [{"column_prefix": "", "generator": "klines", "feature_prefix": ""}]
# Apply all feature generators to the data frame which get accordingly new derived columns
# The feature parameters will be taken from App.config (depending on generator)
print(f"Start generating features for {len(df)} input records.")
all_features = []
for i, fs in enumerate(feature_sets):
fs_now = datetime.now()
print(f"Start feature set {i}/{len(feature_sets)}. Generator {fs.get('generator')}...")
df, new_features = generate_feature_set(df, fs, last_rows=0)
all_features.extend(new_features)
fs_elapsed = datetime.now() - fs_now
print(f"Finished feature set {i}/{len(feature_sets)}. Generator {fs.get('generator')}. Features: {len(new_features)}. Time: {str(fs_elapsed).split('.')[0]}")
print(f"Finished generating features.")
print(f"Number of NULL values:")
print(df[all_features].isnull().sum().sort_values(ascending=False))
#
# Store feature matrix in output file
#
out_file_name = App.config.get("feature_file_name")
out_path = (data_path / out_file_name).with_suffix(".csv").resolve()
print(f"Storing feature matrix with {len(df)} records and {len(df.columns)} columns in output file...")
df.to_csv(out_path, index=False, float_format="%.4f")
#df.to_parquet(out_path.with_suffix('.parquet'), engine='auto', compression=None, index=None, partition_cols=None)
#
# Store features
#
with open(out_path.with_suffix('.txt'), "a+") as f:
f.write(", ".join([f'"{f}"' for f in all_features] ) + "\n\n")
print(f"Stored {len(all_features)} features in output file {out_path}")
elapsed = datetime.now() - now
print(f"Finished generating {len(all_features)} features in {str(elapsed).split('.')[0]}. Time per feature: {str(elapsed/len(all_features)).split('.')[0]}")
print(f"Output file location: {out_path}")
def generate_feature_set(df: pd.DataFrame, fs: dict, last_rows: int) -> Tuple[pd.DataFrame, list]:
"""
Apply the specified resolved feature generator to the input data set.
"""
#
# Select columns from the data set to be processed by the feature generator
#
cp = fs.get("column_prefix")
if cp:
cp = cp + "_"
f_cols = [col for col in df if col.startswith(cp)]
f_df = df[f_cols] # Alternatively: f_df = df.loc[:, df.columns.str.startswith(cf)]
# Remove prefix because feature generators are generic (a prefix will be then added to derived features before adding them back to the main frame)
f_df = f_df.rename(columns=lambda x: x[len(cp):] if x.startswith(cp) else x) # Alternatively: f_df.columns = f_df.columns.str.replace(cp, "")
else:
f_df = df[df.columns.to_list()] # We want to have a different data frame object to add derived featuers and then join them back to the main frame with prefix
#
# Resolve and apply feature generator functions from the configuration
#
generator = fs.get("generator")
gen_config = fs.get('config', {})
if generator == "itblib":
features = generate_features_itblib(f_df, gen_config, last_rows=last_rows)
elif generator == "depth":
features = generate_features_depth(f_df)
elif generator == "tsfresh":
features = generate_features_tsfresh(f_df, gen_config, last_rows=last_rows)
elif generator == "talib":
features = generate_features_talib(f_df, gen_config, last_rows=last_rows)
elif generator == "itbstats":
features = generate_features_itbstats(f_df, gen_config, last_rows=last_rows)
# Labels
elif generator == "highlow":
horizon = gen_config.get("horizon")
# Binary labels whether max has exceeded a threshold or not
print(f"Generating 'highlow' labels with horizon {horizon}...")
features = generate_labels_highlow(f_df, horizon=horizon)
print(f"Finished generating 'highlow' labels. {len(features)} labels generated.")
elif generator == "highlow2":
print(f"Generating 'highlow2' labels...")
f_df, features = generate_labels_highlow2(f_df, gen_config)
print(f"Finished generating 'highlow2' labels. {len(features)} labels generated.")
elif generator == "topbot":
column_name = gen_config.get("columns", "close")
top_level_fracs = [0.01, 0.02, 0.03, 0.04, 0.05]
bot_level_fracs = [-x for x in top_level_fracs]
f_df, features = generate_labels_topbot(f_df, column_name, top_level_fracs, bot_level_fracs)
elif generator == "topbot2":
f_df, features = generate_labels_topbot2(f_df, gen_config)
else:
print(f"Unknown feature generator {generator}")
return
#
# Add generated features to the main data frame with all other columns and features
#
f_df = f_df[features]
fp = fs.get("feature_prefix")
if fp:
f_df = f_df.add_prefix(fp + "_")
new_features = f_df.columns.to_list()
df = df.join(f_df) # Attach all derived features to the main frame
return df, new_features
if __name__ == '__main__':
main()