--- language_creators: - found language: - en license: odc-by source_datasets: - c4 task_categories: - text-generation - fill-mask task_ids: - language-modeling - masked-language-modeling dataset_info: features: - name: text dtype: string - name: score dtype: float64 splits: - name: train num_bytes: 406516813.06260204 num_examples: 302378 download_size: 245347331 dataset_size: 406516813.06260204 configs: - config_name: default data_files: - split: train path: data/train-* --- # crumb/c4-benchfilter-nano A derivation of the first 3M samples from the C4 dataset. The estimated top 10% of highest n-token (mean 3,4,5) overlaps for each of the selected benchmark datasets (arc, truthful_qa, hellaswag, mmlu, humaneval) based on 1k samples, within the first 3M samples of C4. The top scoring sample datasets for each benchmark are then filtered again for top 30% scores and combined and exact-match de-duplicated. Then the top 3% scores and samples less than 20 characters long are removed because they likely have exact large n-token matches by chance such as exact dates or times that aren't actually relevant to the data.\* \*Upon further examination, some of these samples are still present throughout the data, you might benefit from using `dataset.filter(x['score'] > thresh)` for some threshold, but you risk losing high quality samples as well, this tradeoff should be well-examined before training. Another option is filtering out the shorter samples because they seem to be more likely to contain the exact string-matches and don't contribute to the data mixture as much anyway.