import os import pickle import numpy as np from xgboost import XGBRegressor from zipfile import ZipFile from datetime import datetime, timedelta import pandas as pd from sklearn.model_selection import train_test_split from updater import download_binance_monthly_data, download_binance_daily_data from config import data_base_path, model_file_path binance_data_path = os.path.join(data_base_path, "binance/futures-klines") def get_training_data_path(token): """ Возвращает путь к файлу данных для указанного токена. """ return os.path.join(data_base_path, f"{token}_price_data.csv") def download_data(): cm_or_um = "um" symbols = ["ETHUSDT", "BTCUSDT", "SOLUSDT", "BNBUSDT", "ARBUSDT"] intervals = ["10min", "1d"] years = ["2020", "2021", "2022", "2023", "2024"] months = ["01", "02", "03", "04", "05", "06", "07", "08", "09", "10", "11", "12"] download_path = binance_data_path download_binance_monthly_data( cm_or_um, symbols, intervals, years, months, download_path ) print(f"Downloaded monthly data to {download_path}.") current_datetime = datetime.now() current_year = current_datetime.year current_month = current_datetime.month download_binance_daily_data( cm_or_um, symbols, intervals, current_year, current_month, download_path ) print(f"Downloaded daily data to {download_path}.") def format_data(token): files = sorted( [x for x in os.listdir(binance_data_path) if x.endswith(".zip") and token in x] ) if len(files) == 0: return price_df = pd.DataFrame() for file in files: zip_file_path = os.path.join(binance_data_path, file) myzip = ZipFile(zip_file_path) with myzip.open(myzip.filelist[0]) as f: line = f.readline() header = 0 if line.decode("utf-8").startswith("open_time") else None df = pd.read_csv(myzip.open(myzip.filelist[0]), header=header).iloc[:, :11] df.columns = [ "start_time", "open", "high", "low", "close", "volume", "end_time", "volume_usd", "n_trades", "taker_volume", "taker_volume_usd", ] df.index = [pd.Timestamp(x + 1, unit="ms") for x in df["end_time"]] df.index.name = "date" price_df = pd.concat([price_df, df]) price_df["timestamp"] = price_df.index.map(pd.Timestamp.timestamp) price_df["price_diff"] = price_df["close"].diff() price_df["volatility"] = (price_df["high"] - price_df["low"]) / price_df["open"] price_df["volume"] = price_df["volume"] price_df["moving_avg_7"] = price_df["close"].rolling(window=7).mean() price_df["moving_avg_30"] = price_df["close"].rolling(window=30).mean() # Удаляем строки с NaN значениями price_df.dropna(inplace=True) # Сохраняем данные training_price_data_path = get_training_data_path(token) price_df.sort_index().to_csv(training_price_data_path) def train_model(token): training_price_data_path = get_training_data_path(token) price_data = pd.read_csv(training_price_data_path) # Используем дополнительные признаки x = price_data[ [ "timestamp", "price_diff", "volatility", "volume", "moving_avg_7", "moving_avg_30", ] ] y = price_data["close"] x_train, x_test, y_train, y_test = train_test_split( x, y, test_size=0.2, random_state=0 ) model = XGBRegressor() model.fit(x_train, y_train) token_model_path = model_file_path[token] os.makedirs(os.path.dirname(token_model_path), exist_ok=True) with open(token_model_path, "wb") as f: pickle.dump(model, f) print(f"Trained model saved to {token_model_path}") # Optional: Оценка модели y_pred = model.predict(x_test) print(f"Mean Absolute Error: {np.mean(np.abs(y_test - y_pred))}")