--- license: cc-by-4.0 annotations_creators: - no-annotation language_creators: - found multilinguality: - monolingual source_datasets: - original task_categories: - time-series-forecasting task_ids: - univariate-time-series-forecasting tags: - time-series - forecasting - benchmark - monash-time-series-forecasting-repository - monash-tsf - tsfile - apache-tsfile - modality:timeseries - Time-series - format:tsfile pretty_name: wind_4_seconds (TsFile format) configs: - config_name: default data_files: - split: train path: "*.tsfile" --- # wind_4_seconds (TsFile format) A single very long daily time series representing the wind power production in MW recorded per every 4 seconds starting from 01/08/2019. This repository contains the full source `.tsf` series from the Monash Time Series Forecasting Repository converted to [Apache TsFile](https://tsfile.apache.org/) format. ## Summary - Source dataset: [`Monash-University/monash_tsf`](https://huggingface.co/datasets/Monash-University/monash_tsf) - Original source: https://zenodo.org/record/4656032 - Monash subset: `wind_4_seconds` - Modalities: Time-series - Source series: 1 - Rows: 7,397,147 flattened timestamped observations - Frequency: `4_seconds` - Forecast horizon metadata: not specified - Missing-values metadata: False - Equal-length metadata: True - Missing target values preserved as NaN: 0 - Series length range: 7,397,147 to 7,397,147 - TsFile output: 8 files (wind_4_seconds_1.tsfile .. wind_4_seconds_8.tsfile) ## Files - `wind_4_seconds_1.tsfile` - `wind_4_seconds_2.tsfile` - `wind_4_seconds_3.tsfile` - `wind_4_seconds_4.tsfile` - `wind_4_seconds_5.tsfile` - `wind_4_seconds_6.tsfile` - `wind_4_seconds_7.tsfile` - `wind_4_seconds_8.tsfile` ## TsFile Schema | Column | Role | TsFile type | |---|---|---| | `Time` | TIME | INT64 | | `series_id` | TAG | STRING | | `series_name` | TAG | STRING | | `start_timestamp` | TAG | STRING | | `target` | FIELD | FLOAT | ## Conversion Notes - Each source `.tsf` data row is stored as one TsFile device. - Source `.tsf` attributes are stored as TAG columns. - The `target` series values are flattened into timestamped rows and stored as a FLOAT FIELD. - `Time` is synthesized from the source start timestamp and the `.tsf` frequency metadata, with millisecond precision. - Large outputs may be sharded by the TsFile conversion tool; all listed shards belong to the same logical table `wind_4_seconds`. ## Reading Example ```python from tsfile import TsFileReader reader = TsFileReader("wind_4_seconds_1.tsfile") schemas = reader.get_all_table_schemas() ```