--- dataset_info: features: - name: Date dtype: string - name: Open dtype: float64 - name: High dtype: float64 - name: Low dtype: float64 - name: Volume dtype: int64 - name: OpenInt dtype: int64 - name: Close dtype: float64 splits: - name: train num_bytes: 96470 num_examples: 1582 download_size: 56653 dataset_size: 96470 configs: - config_name: default data_files: - split: train path: data/train-* --- # Stock Market Dataset ## Description This dataset contains stock market data for a specific stock over a period of time. The dataset includes **daily stock prices and trading information**, which can be used for **financial analysis, time series forecasting,** and **stock price prediction**. ## Dataset Details ### **Columns:** - **Date**: The trading date (**MM/DD/YYYY format**). - **Open**: The opening price of the stock on that day. - **High**: The highest price reached during the trading day. - **Low**: The lowest price reached during the trading day. - **Volume**: The number of shares traded on that day. - **OpenInt**: Open interest (**often used in derivatives markets; for stocks, this might not be relevant**). - **Close**: The closing price of the stock on that day. ### **Notes:** - The column **Unnamed: 6** contains only NaN values and should be ignored. - The dataset contains **1,582 entries**. ## Use Cases - **Stock price trend analysis**. - **Predictive modeling using machine learning**. - **Time series forecasting for financial markets**. ## How to Use You can load the dataset using the `datasets` library: ```python from datasets import load_dataset dataset = load_dataset("Tarakeshwaran/Hackathon_Stock_Prediction") print(dataset)