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---
license: other
task_categories:
- time-series-forecasting
task_ids:
- univariate-time-series-forecasting
- multivariate-time-series-forecasting
annotations_creators:
- no-annotation
source_datasets:
- original
tags:
- time-series
- forecasting
- benchmark
- fev
- tsfile
- apache-tsfile
- modality:timeseries
- Time-series
- format:tsfile
- arxiv:2509.26468
size_categories:
- 100K<n<1M
pretty_name: entsoe (TsFile format)
configs:
- config_name: default
data_files:
- split: train
path: "**/*.tsfile"
---
# entsoe (TsFile format)
This repository contains time-series forecasting data stored in [Apache TsFile](https://tsfile.apache.org/) format.
## Summary
- FEV subset: `entsoe`
- Unified source collection: [`autogluon/fev_datasets`](https://huggingface.co/datasets/autogluon/fev_datasets)
- Original source: https://data.open-power-system-data.org/time_series/2020-10-06
- Paper / citation: [[6]](https://doi.org/10.25832/time_series/2020-10-06)
- Series: 6
- Modalities: Time-series
- TsFile rows (flattened observations): 11,043,324
- Frequencies: 15T, 1H, 30T
- TsFile files: 4
- Time precision: milliseconds (`INT64`).
Licensing and citation requirements follow the original source. This repository does not claim ownership of the original data.
## Dataset Statistics
| Frequency | Series | Median series length | TsFile rows (observations) | Dynamic columns | Static columns | Data files |
|---|---:|---:|---:|---:|---:|---|
| 15T | 6 | 175,292 | 6,310,512 | 6 | 0 | `15T/15T_1..15T_2.tsfile` (2 shards) |
| 1H | 6 | 43,822 | 1,577,592 | 6 | 0 | `1H/1H.tsfile` |
| 30T | 6 | 87,645 | 3,155,220 | 6 | 0 | `30T/30T.tsfile` |
## Files
The Hugging Face dataset card YAML points `configs.data_files` to all `*.tsfile` files in this repository.
- `15T/15T_1.tsfile`
- `15T/15T_2.tsfile`
- `1H/1H.tsfile`
- `30T/30T.tsfile`
## TsFile Storage Model
- Each original series (`id`) is stored as one TsFile device.
- Time-varying targets and dynamic covariates are stored as FIELD measurements.
- Source `timestamp` values are mapped to the TsFile `Time` column as millisecond timestamps.
- Table name(s): entsoe_15T, entsoe_1H, entsoe_30T.
### Column Schema
| Column | Role | TsFile type |
|---|---|---|
| `Time` | Time column | INT64 |
| `id` | TAG (device dimension) | STRING |
| `target` | FIELD (measurement) | FLOAT |
| `solar_generation_actual` | FIELD (measurement) | FLOAT |
| `wind_onshore_generation_actual` | FIELD (measurement) | FLOAT |
| `temperature` | FIELD (measurement) | FLOAT |
| `radiation_direct_horizontal` | FIELD (measurement) | FLOAT |
| `radiation_diffuse_horizontal` | FIELD (measurement) | FLOAT |
## Conversion Notes
- The source FEV format stores each time series as one nested row containing `id`, `timestamp[]`, and target or covariate arrays.
- The TsFile conversion flattens those nested arrays into long rows. Therefore, the `TsFile rows` values above correspond to the number of timestamped observations after flattening.
- TAG columns identify the device and static metadata. FIELD columns contain values that change over time.
- Large logical tables may be split into multiple `.tsfile` shards such as `<name>_1.tsfile`, `<name>_2.tsfile`, and so on. Shards listed for the same frequency belong to the same logical table.
## Reading Example
```python
from tsfile import TsFileReader
reader = TsFileReader("15T/15T_1.tsfile")
schemas = reader.get_all_table_schemas()
# Table name(s): entsoe_15T, entsoe_1H, entsoe_30T
```