intelligent-trading-bot/scripts/train.py

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from pathlib import Path
from datetime import datetime, timezone, timedelta
import click
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from tqdm import tqdm
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import numpy as np
import pandas as pd
from service.App import *
from common.classifiers import *
from common.feature_generation import *
from common.model_store import *
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"""
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Train models for all target labels and all algorithms declared in the configuration using the specified features.
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"""
#
# Parameters
#
class P:
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in_nrows = 100_000_000 # For debugging
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tail_rows = 0 # How many last rows to select (for debugging)
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# Whether to store file with predictions
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store_predictions = True
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@click.command()
@click.option('--config_file', '-c', type=click.Path(), default='', help='Configuration file name')
def main(config_file):
load_config(config_file)
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time_column = App.config["time_column"]
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now = datetime.now()
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#
# Load feature matrix
#
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symbol = App.config["symbol"]
data_path = Path(App.config["data_folder"]) / symbol
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file_path = (data_path / App.config.get("matrix_file_name")).with_suffix(".csv")
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if not file_path.is_file():
print(f"ERROR: Input file does not exist: {file_path}")
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return
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print(f"Loading data from source data file {file_path}...")
df = pd.read_csv(file_path, parse_dates=[time_column], nrows=P.in_nrows)
print(f"Finished loading {len(df)} records with {len(df.columns)} columns.")
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df = df.iloc[-P.tail_rows:]
df = df.reset_index(drop=True)
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#
# Prepare data by selecting columns and rows
#
label_horizon = App.config["label_horizon"] # Labels are generated from future data and hence we might want to explicitly remove some tail rows
train_length = App.config.get("train_length")
train_features = App.config.get("train_features")
labels = App.config["labels"]
algorithms = App.config.get("algorithms")
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# Select necessary features and label
out_columns = ['timestamp', 'open', 'high', 'low', 'close', 'volume', 'close_time']
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out_columns = [x for x in out_columns if x in df.columns]
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all_features = train_features + labels
df = df[out_columns + all_features]
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for label in labels:
# "category" NN does not work without this (note that we assume a classification task here)
df[label] = df[label].astype(int)
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# Spot and futures have different available histories. If we drop nans in all of them, then we get a very short data frame (corresponding to futureus which have little data)
# So we do not drop data here but rather when we select necessary input features
# Nans result in constant accuracy and nan loss. MissingValues procedure does not work and produces exceptions
pd.set_option('use_inf_as_na', True)
#in_df = in_df.dropna(subset=labels)
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df = df.reset_index(drop=True) # We must reset index after removing rows to remove gaps
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# Remove the tail data for which no labels are available
# The reason is that these labels are computed from future which is not available
if label_horizon:
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df = df.head(-label_horizon)
# Limit maximum length
train_df = df.tail(train_length)
train_df = train_df.dropna(subset=train_features)
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if len(train_df) == 0:
print(f"ERROR: Empty data set after removing NULLs in feature columns. Some features might have all NULL values.")
#print(train_df.isnull().sum().sort_values(ascending=False))
return
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models = dict()
scores = dict()
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out_df = pd.DataFrame() # Collect predictions
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for label in tqdm(labels, desc="LABELS", colour='red', position=0):
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for algo_name in tqdm(algorithms, desc="ALGORITHMS", colour='red', leave=False, position=1):
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model_config = get_model(algo_name) # Get algorithm description from the algo store
algo_type = model_config.get("algo")
algo_train_length = model_config.get("train", {}).get("length")
score_column_name = label + label_algo_separator + algo_name
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# Limit length according to the algorith parameters
if algo_train_length and algo_train_length < train_length:
train_df_2 = train_df.iloc[-algo_train_length:]
else:
train_df_2 = train_df
df_X = train_df_2[train_features]
df_y = train_df_2[label]
print(f"Train '{score_column_name}'. Train length {len(df_X)}. Train columns {len(df_X.columns)}. Algorithm {algo_name}")
if algo_type == "gb":
model_pair = train_gb(df_X, df_y, model_config)
models[score_column_name] = model_pair
df_y_hat = predict_gb(model_pair, df_X, model_config)
elif algo_type == "nn":
model_pair = train_nn(df_X, df_y, model_config)
models[score_column_name] = model_pair
df_y_hat = predict_nn(model_pair, df_X, model_config)
elif algo_type == "lc":
model_pair = train_lc(df_X, df_y, model_config)
models[score_column_name] = model_pair
df_y_hat = predict_lc(model_pair, df_X, model_config)
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elif algo_type == "svc":
model_pair = train_svc(df_X, df_y, model_config)
models[score_column_name] = model_pair
df_y_hat = predict_svc(model_pair, df_X, model_config)
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else:
print(f"ERROR: Unknown algorithm type {algo_type}. Check algorithm list.")
return
scores[score_column_name] = compute_scores(df_y, df_y_hat)
out_df[score_column_name] = df_y_hat
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#
# Store all collected models in files
#
model_path = data_path / "MODELS"
model_path.mkdir(parents=True, exist_ok=True) # Ensure that folder exists
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for score_column_name, model_pair in models.items():
save_model_pair(model_path, score_column_name, model_pair)
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print(f"Models stored in path: {model_path.absolute()}")
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#
# Store scores
#
lines = list()
for score_column_name, score in scores.items():
line = score_column_name + ", " + str(score)
lines.append(line)
metrics_file_name = f"prediction-metrics.txt"
metrics_path = (data_path / metrics_file_name).resolve()
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with open(metrics_path, 'a+') as f:
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f.write("\n".join(lines) + "\n\n")
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print(f"Metrics stored in path: {metrics_path.absolute()}")
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#
# Store predictions if necessary
#
if P.store_predictions:
# Store only selected original data, labels, and their predictions
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out_df = out_df.join(df[out_columns + labels])
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out_path = data_path / App.config.get("predict_file_name")
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print(f"Storing output file...")
out_df.to_csv(out_path.with_suffix(".csv"), index=False, float_format='%.4f')
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print(f"Predictions stored in file: {out_path}. Length: {len(out_df)}. Columns: {len(out_df.columns)}")
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#
# End
#
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elapsed = datetime.now() - now
print(f"Finished training models in {str(elapsed).split('.')[0]}")
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if __name__ == '__main__':
main()