--- dataset_info: features: - name: function_name dtype: string - name: docstring dtype: string - name: masked_code dtype: string - name: implementation dtype: string - name: start_line dtype: int32 - name: end_line dtype: int32 - name: file_content dtype: string splits: - name: train num_bytes: 420616564 num_examples: 2760 download_size: 64655948 dataset_size: 420616564 configs: - config_name: default data_files: - split: train path: data/train-* --- # Stack-Smol-Docstrings This dataset contains Python functions extracted from [the-stack-smol](https://huggingface.co/datasets/bigcode/the-stack-smol), filtered for high-quality docstrings and implementations. Each sample includes the function's docstring, implementation, and a masked version of the code where the function is replaced with a comment. The dataset is designed for code completion tasks where a model needs to restore a function that has been replaced with a comment. The model is provided with: 1. The full file context with the function replaced by a comment 2. The docstring of the function 3. The function name The model's task is to generate code that replaces the comment with a proper implementation of the function based on the docstring and surrounding context. ## Dataset Structure Each sample contains: - `function_name`: Name of the function - `docstring`: The function's docstring - `masked_code`: The full file with the function replaced by a comment - `implementation`: The original function implementation - `start_line`: The starting line number of the function in the original file - `end_line`: The ending line number of the function in the original file - `file_content`: The full original file content ## Quality Filtering Functions are filtered based on: - Docstring quality (length, structure, descriptiveness) - Implementation quality (no SQL strings, reasonable number of variables, sufficient complexity)