{ "name": "28_Stock_Price_Prediction_LSTM_YahooFinance_ML", "query": "Could you help me build a stock price prediction system using an LSTM model and the Yahoo Finance dataset? Please clean the data, including handling missing values and outliers, and use a time window to convert the time series data to a supervised learning problem. The LSTM model should be implemented in `src/model.py`, and the dataset loading, cleaning, and conversion should be implemented in `src/data_loader.py`. Save the prediction results to `results/predictions.txt` and generate and save interactive charts of the prediction results in `results/figures/prediction_interactive.html` using Plotly. Create a Jupyter Notebook with model architecture visualization, training process, and prediction results and save it as a PDF report at `results/report.pdf`.", "tags": [ "Financial Analysis", "Supervised Learning", "Time Series Forecasting" ], "requirements": [ { "requirement_id": 0, "prerequisites": [], "criteria": "The \"LSTM\" model is implemented in `src/model.py`.", "category": "Machine Learning Method", "satisfied": null }, { "requirement_id": 1, "prerequisites": [], "criteria": "The \"Yahoo Finance\" dataset is loaded in `src/data_loader.py`.", "category": "Dataset or Environment", "satisfied": null }, { "requirement_id": 2, "prerequisites": [ 1 ], "criteria": "Data cleaning, including handling missing values and outliers, is performed in `src/data_loader.py`.", "category": "Data preprocessing and postprocessing", "satisfied": null }, { "requirement_id": 3, "prerequisites": [ 0, 2 ], "criteria": "A time window is used to convert the time series data to a supervised learning problem. Please save the implementation in `src/data_loader.py`.", "category": "Data preprocessing and postprocessing", "satisfied": null }, { "requirement_id": 4, "prerequisites": [ 2, 3 ], "criteria": "Prediction results are saved in `results/predictions.txt`.", "category": "Other", "satisfied": null }, { "requirement_id": 5, "prerequisites": [ 0, 1, 2 ], "criteria": "Interactive charts of prediction results are generated using \"Plotly\" and saved in `results/figures/prediction_interactive.html`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 6, "prerequisites": [ 0, 1, 2, 3, 4 ], "criteria": "A Jupyter Notebook containing the model architecture visualization, training process, and prediction results are created and saved as PDF report as `results/report.pdf`.", "category": "Other", "satisfied": null } ], "preferences": [], "is_kaggle_api_needed": false, "is_training_needed": true, "is_web_navigation_needed": false }