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| import pandas as pd | |
| import matplotlib.pyplot as plt | |
| import sys | |
| sys.path.append("../") | |
| from model import Kronos, KronosTokenizer, KronosPredictor | |
| def plot_prediction(kline_df, pred_df): | |
| pred_df.index = kline_df.index[-pred_df.shape[0]:] | |
| sr_close = kline_df['close'] | |
| sr_pred_close = pred_df['close'] | |
| sr_close.name = 'Ground Truth' | |
| sr_pred_close.name = "Prediction" | |
| sr_volume = kline_df['volume'] | |
| sr_pred_volume = pred_df['volume'] | |
| sr_volume.name = 'Ground Truth' | |
| sr_pred_volume.name = "Prediction" | |
| close_df = pd.concat([sr_close, sr_pred_close], axis=1) | |
| volume_df = pd.concat([sr_volume, sr_pred_volume], axis=1) | |
| fig, (ax1, ax2) = plt.subplots(2, 1, figsize=(8, 6), sharex=True) | |
| ax1.plot(close_df['Ground Truth'], label='Ground Truth', color='blue', linewidth=1.5) | |
| ax1.plot(close_df['Prediction'], label='Prediction', color='red', linewidth=1.5) | |
| ax1.set_ylabel('Close Price', fontsize=14) | |
| ax1.legend(loc='lower left', fontsize=12) | |
| ax1.grid(True) | |
| ax2.plot(volume_df['Ground Truth'], label='Ground Truth', color='blue', linewidth=1.5) | |
| ax2.plot(volume_df['Prediction'], label='Prediction', color='red', linewidth=1.5) | |
| ax2.set_ylabel('Volume', fontsize=14) | |
| ax2.legend(loc='upper left', fontsize=12) | |
| ax2.grid(True) | |
| plt.tight_layout() | |
| plt.show() | |
| # 1. Load Model and Tokenizer | |
| tokenizer = KronosTokenizer.from_pretrained('/home/csc/huggingface/Kronos-Tokenizer-base/') | |
| model = Kronos.from_pretrained("/home/csc/huggingface/Kronos-base/") | |
| # 2. Instantiate Predictor | |
| predictor = KronosPredictor(model, tokenizer, device="cuda:0", max_context=512) | |
| # 3. Prepare Data | |
| df = pd.read_csv("./data/XSHG_5min_600977.csv") | |
| df['timestamps'] = pd.to_datetime(df['timestamps']) | |
| lookback = 400 | |
| pred_len = 120 | |
| dfs = [] | |
| xtsp = [] | |
| ytsp = [] | |
| for i in range(5): | |
| idf = df.loc[(i*400):(i*400+lookback-1), ['open', 'high', 'low', 'close', 'volume', 'amount']] | |
| i_x_timestamp = df.loc[(i*400):(i*400+lookback-1), 'timestamps'] | |
| i_y_timestamp = df.loc[(i*400+lookback):(i*400+lookback+pred_len-1), 'timestamps'] | |
| dfs.append(idf) | |
| xtsp.append(i_x_timestamp) | |
| ytsp.append(i_y_timestamp) | |
| pred_df = predictor.predict_batch( | |
| df_list=dfs, | |
| x_timestamp_list=xtsp, | |
| y_timestamp_list=ytsp, | |
| pred_len=pred_len, | |
| ) | |