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metadata
pretty_name: Chronos datasets (extra)
annotations_creators:
  - no-annotation
source_datasets:
  - original
task_categories:
  - time-series-forecasting
task_ids:
  - univariate-time-series-forecasting
  - multivariate-time-series-forecasting
license: apache-2.0
dataset_info:
  - config_name: ETTh
    features:
      - name: id
        dtype: string
      - name: timestamp
        sequence: timestamp[ns]
      - name: HUFL
        sequence: float64
      - name: HULL
        sequence: float64
      - name: MUFL
        sequence: float64
      - name: MULL
        sequence: float64
      - name: LUFL
        sequence: float64
      - name: LULL
        sequence: float64
      - name: OT
        sequence: float64
    splits:
      - name: train
        num_bytes: 2229840
        num_examples: 2
    download_size: 0
    dataset_size: 2229840
  - config_name: ETTm
    features:
      - name: id
        dtype: string
      - name: timestamp
        sequence: timestamp[ms]
      - name: HUFL
        sequence: float64
      - name: HULL
        sequence: float64
      - name: MUFL
        sequence: float64
      - name: MULL
        sequence: float64
      - name: LUFL
        sequence: float64
      - name: LULL
        sequence: float64
      - name: OT
        sequence: float64
    splits:
      - name: train
        num_bytes: 8919120
        num_examples: 2
    download_size: 0
    dataset_size: 8919120
  - config_name: brazilian_cities_temperature
    features:
      - name: id
        dtype: string
      - name: timestamp
        sequence: timestamp[ms]
      - name: temperature
        sequence: float32
    splits:
      - name: train
        num_bytes: 109234
        num_examples: 12
    download_size: 0
    dataset_size: 109234
  - config_name: spanish_energy_and_weather
    features:
      - name: timestamp
        sequence: timestamp[ms]
      - name: generation_biomass
        sequence: float64
      - name: generation_fossil_brown_coal/lignite
        sequence: float64
      - name: generation_fossil_gas
        sequence: float64
      - name: generation_fossil_hard_coal
        sequence: float64
      - name: generation_fossil_oil
        sequence: float64
      - name: generation_hydro_pumped_storage_consumption
        sequence: float64
      - name: generation_hydro_run-of-river_and_poundage
        sequence: float64
      - name: generation_hydro_water_reservoir
        sequence: float64
      - name: generation_nuclear
        sequence: float64
      - name: generation_other
        sequence: float64
      - name: generation_other_renewable
        sequence: float64
      - name: generation_solar
        sequence: float64
      - name: generation_waste
        sequence: float64
      - name: generation_wind_onshore
        sequence: float64
      - name: total_load_actual
        sequence: float64
      - name: price_actual
        sequence: float64
      - name: Barcelona_temp
        sequence: float64
      - name: Bilbao_temp
        sequence: float64
      - name: Madrid_temp
        sequence: float64
      - name: Seville_temp
        sequence: float64
      - name: Valencia_temp
        sequence: float64
      - name: Barcelona_temp_min
        sequence: float64
      - name: Bilbao_temp_min
        sequence: float64
      - name: Madrid_temp_min
        sequence: float64
      - name: Seville_temp_min
        sequence: float64
      - name: Valencia_temp_min
        sequence: float64
      - name: Barcelona_temp_max
        sequence: float64
      - name: Bilbao_temp_max
        sequence: float64
      - name: Madrid_temp_max
        sequence: float64
      - name: Seville_temp_max
        sequence: float64
      - name: Valencia_temp_max
        sequence: float64
      - name: Barcelona_pressure
        sequence: float64
      - name: Bilbao_pressure
        sequence: float64
      - name: Madrid_pressure
        sequence: float64
      - name: Seville_pressure
        sequence: float64
      - name: Valencia_pressure
        sequence: float64
      - name: Barcelona_humidity
        sequence: float64
      - name: Bilbao_humidity
        sequence: float64
      - name: Madrid_humidity
        sequence: float64
      - name: Seville_humidity
        sequence: float64
      - name: Valencia_humidity
        sequence: float64
      - name: Barcelona_wind_speed
        sequence: float64
      - name: Bilbao_wind_speed
        sequence: float64
      - name: Madrid_wind_speed
        sequence: float64
      - name: Seville_wind_speed
        sequence: float64
      - name: Valencia_wind_speed
        sequence: float64
      - name: Barcelona_wind_deg
        sequence: float64
      - name: Bilbao_wind_deg
        sequence: float64
      - name: Madrid_wind_deg
        sequence: float64
      - name: Seville_wind_deg
        sequence: float64
      - name: Valencia_wind_deg
        sequence: float64
      - name: Barcelona_rain_1h
        sequence: float64
      - name: Bilbao_rain_1h
        sequence: float64
      - name: Madrid_rain_1h
        sequence: float64
      - name: Seville_rain_1h
        sequence: float64
      - name: Valencia_rain_1h
        sequence: float64
      - name: Barcelona_snow_3h
        sequence: float64
      - name: Bilbao_snow_3h
        sequence: float64
      - name: Madrid_snow_3h
        sequence: float64
      - name: Seville_snow_3h
        sequence: float64
      - name: Valencia_snow_3h
        sequence: float64
      - name: Barcelona_clouds_all
        sequence: float64
      - name: Bilbao_clouds_all
        sequence: float64
      - name: Madrid_clouds_all
        sequence: float64
      - name: Seville_clouds_all
        sequence: float64
      - name: Valencia_clouds_all
        sequence: float64
    splits:
      - name: train
        num_bytes: 18794572
        num_examples: 1
    download_size: 0
    dataset_size: 18794572

Chronos datasets

Time series datasets used for training and evaluation of the Chronos forecasting models.

This repository contains scripts for constructing datasets that cannot be hosted in the main Chronos datasets repository due to license restrictions.

Usage

Datasets can be loaded using the 🤗 datasets library

import datasets

ds = datasets.load_dataset("autogluon/chronos_datasets_extra", "ETTh", split="train", trust_remote_code=True)
ds.set_format("numpy")  # sequences returned as numpy arrays

For more information about the data format and usage please refer to autogluon/chronos_datasets.

License

Different datasets available in this collection are distributed under different open source licenses. Please see ds.info.license and ds.info.homepage for each individual dataset.

The dataset script provided in this repository (chronos_datasets_extra.py) is available under the Apache 2.0 License.