--- license: cc-by-nc-4.0 tags: - tsfile - time-series - recommendation - taac2026 modality: timeseries pretty_name: TAAC2026 Data Sample 1000 TsFile configs: - config_name: default data_files: - split: train path: data/*.tsfile --- # TAAC2026 Data Sample 1000 TsFile This dataset is a TsFile conversion of [`TAAC2026/data_sample_1000`](https://huggingface.co/datasets/TAAC2026/data_sample_1000), the TAAC2026 demo recommendation dataset with 1,000 user-item interaction records. Modalities: Time-series. The source dataset is a flat Parquet file where all features are top-level columns. Some top-level columns are variable-length list features, so the conversion stores scalar interaction features and sequence features in separate TsFile tables instead of expanding the lists into more than 130,000 wide columns. ## Source Dataset - Original dataset: [`TAAC2026/data_sample_1000`](https://huggingface.co/datasets/TAAC2026/data_sample_1000) - Source file: `demo_1000.parquet` - Source license: `cc-by-nc-4.0` - Source tags: `TAAC2026`, `recommendation` - Source scale: 1,000 rows, 120 top-level columns, about 39 MB - Source schema groups: 5 ID/label columns, 46 user integer features, 10 user dense features, 14 item integer features, and 45 domain sequence features ## Converted Files The upload contains 9 TsFile files under `data/`. | File | Table | Rows | Notes | |---|---|---:|---| | `data/data_sample_1000_scalar.tsfile` | `data_sample_1000_scalar` | 1,000 | Scalar interaction features | | `data/data_sample_1000_user_int_lists.tsfile` | `data_sample_1000_user_int_lists` | 11,560 | 11 user integer list features | | `data/data_sample_1000_user_dense_lists.tsfile` | `data_sample_1000_user_dense_lists` | 318,538 | 10 user dense list features | | `data/data_sample_1000_item_lists.tsfile` | `data_sample_1000_item_lists` | 2,086 | 1 item list feature | | `data/data_sample_1000_domain_a_seq.tsfile` | `data_sample_1000_domain_a_seq` | 701,086 | 9 domain A sequence features | | `data/data_sample_1000_domain_b_seq.tsfile` | `data_sample_1000_domain_b_seq` | 570,758 | 14 domain B sequence features | | `data/data_sample_1000_domain_c_seq.tsfile` | `data_sample_1000_domain_c_seq` | 449,431 | 12 domain C sequence features | | `data/data_sample_1000_domain_d_seq_1.tsfile` | `data_sample_1000_domain_d_seq` | 1,048,576 | Domain D sequence shard 1 | | `data/data_sample_1000_domain_d_seq_2.tsfile` | `data_sample_1000_domain_d_seq` | 51,283 | Domain D sequence shard 2 | The sequence tables contain 3,153,318 rows in total. `domain_d_seq` was split into two TsFile shards by the TsFile conversion tool. ## Schema Design Scalar event table: - `Time`: epoch milliseconds derived from source `timestamp * 1000` - TAG columns: `event_index`, `user_id` - FIELD columns: `item_id`, `label_type`, `label_time`, `event_timestamp`, and all source scalar user/item features Sequence tables: - `Time`: `sequence_index` within each source interaction event - TAG columns: `event_index`, `user_id`, `item_id` - FIELD columns: `event_timestamp`, `label_time`, `label_type`, plus the list feature values for that sequence family - `event_timestamp` preserves the source `timestamp` value in seconds ## Conversion Notes - No source columns are intentionally dropped. - Source `timestamp` is renamed to `event_timestamp` and also used to create the scalar event table's TsFile `Time`. - Variable-length list columns are reshaped into per-family sequence tables. This preserves list positions while avoiding an extremely wide table. - Missing list positions caused by unequal sequence lengths are stored as nulls. - The converted layout keeps one `event_index` per original source row so users can join scalar and sequence tables back to the original interaction record. ## Validation Local validation confirmed that all 9 TsFile files are non-empty. TsFile metadata row counts match the staged Parquet row counts for every table, including both shards of `data_sample_1000_domain_d_seq`. ## Minimal Read Example ```python from tsfile import TsFileReader path = "data/data_sample_1000_scalar.tsfile" with TsFileReader(path) as reader: schemas = reader.get_all_table_schemas() print(schemas.keys()) ```