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2013-08-12 13:40:00
2013-08-12 13:40:00
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2013-09-06 13:35:00
2013-09-09 01:35:00
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7.92k
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2013-09-06 13:40:00
2013-09-09 01:40:00
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2013-09-09 01:35:00
2013-09-11 13:35:00
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720
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1 value
fastStorage_860_dim0_window0/2013-09-06 13:40:00
5T
2013-08-12 13:40:00
2013-09-06 13:35:00
[ 708.9331665039062, 703.733154296875, 695.0664672851562, 727.9998168945312, 701.9998168945312, 700.2664794921875, 708.9331665039062, 710.66650390625, 703.733154296875, 705.4664916992188, 708.9331665039062, 698.5331420898438, 703.733154296875, 710.66650390625, 707.1998291015625, 700.2664...
2013-09-06 13:40:00
2013-09-09 01:35:00
[ 703.733154296875, 696.7998046875, 695.0664672851562, 693.3331298828125, 700.2664794921875, 696.7998046875, 707.1998291015625, 755.733154296875, 695.0664672851562, 700.2664794921875, 708.9331665039062, 698.5331420898438, 717.5997924804688, 701.9998168945312, 698.5331420898438, 695.06646...
bitbrains_fast_storage/5T/long
fastStorage_860_dim0_window1/2013-09-09 01:40:00
5T
2013-08-12 13:40:00
2013-09-09 01:35:00
[708.9331665039062,703.733154296875,695.0664672851562,727.9998168945312,701.9998168945312,700.266479(...TRUNCATED)
2013-09-09 01:40:00
2013-09-11 13:35:00
[721.0665893554688,721.0665893554688,721.0665893554688,721.0665893554688,721.0665893554688,717.59991(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_860_dim1_window0/2013-09-06 13:40:00
5T
2013-08-12 13:40:00
2013-09-06 13:35:00
[13.633333206176758,13.533333778381348,13.366666793823242,14.0,13.5,13.466666221618652,13.6333332061(...TRUNCATED)
2013-09-06 13:40:00
2013-09-09 01:35:00
[13.533333778381348,13.399999618530273,13.366666793823242,13.333333015441895,13.466666221618652,13.3(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_860_dim1_window1/2013-09-09 01:40:00
5T
2013-08-12 13:40:00
2013-09-09 01:35:00
[13.633333206176758,13.533333778381348,13.366666793823242,14.0,13.5,13.466666221618652,13.6333332061(...TRUNCATED)
2013-09-09 01:40:00
2013-09-11 13:35:00
[13.866666793823242,13.866666793823242,13.866666793823242,13.866666793823242,13.866666793823242,13.8(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_142_dim0_window0/2013-09-06 13:40:00
5T
2013-08-12 13:40:00
2013-09-06 13:35:00
[1445.5994873046875,1241.066162109375,1206.3995361328125,1355.4661865234375,1298.26611328125,1267.06(...TRUNCATED)
2013-09-06 13:40:00
2013-09-09 01:35:00
[1142.2662353515625,2767.141845703125,161.19993591308594,176.7999267578125,1788.79931640625,174.5713(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_142_dim0_window1/2013-09-09 01:40:00
5T
2013-08-12 13:40:00
2013-09-09 01:35:00
[1445.5994873046875,1241.066162109375,1206.3995361328125,1355.4661865234375,1298.26611328125,1267.06(...TRUNCATED)
2013-09-09 01:40:00
2013-09-11 13:35:00
[140.3999481201172,147.33328247070312,140.3999481201172,149.0666046142578,150.79994201660156,162.933(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_142_dim1_window0/2013-09-06 13:40:00
5T
2013-08-12 13:40:00
2013-09-06 13:35:00
[27.799999237060547,23.866666793823242,23.200000762939453,26.066667556762695,24.96666717529297,24.36(...TRUNCATED)
2013-09-06 13:40:00
2013-09-09 01:35:00
[21.96666717529297,53.21428680419922,3.0999999046325684,3.4000000953674316,34.400001525878906,3.3571(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_142_dim1_window1/2013-09-09 01:40:00
5T
2013-08-12 13:40:00
2013-09-09 01:35:00
[27.799999237060547,23.866666793823242,23.200000762939453,26.066667556762695,24.96666717529297,24.36(...TRUNCATED)
2013-09-09 01:40:00
2013-09-11 13:35:00
[2.700000047683716,2.8333332538604736,2.700000047683716,2.866666555404663,2.9000000953674316,3.13333(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_347_dim0_window0/2013-09-06 13:40:00
5T
2013-08-12 13:40:00
2013-09-06 13:35:00
[3.9013328552246094,5.851999282836914,0.0,5.851999282836914,0.0,11.703998565673828,0.0,5.85199928283(...TRUNCATED)
2013-09-06 13:40:00
2013-09-09 01:35:00
[2.0899996757507324,3.9013328552246094,1.9506664276123047,3.9013328552246094,7.802665710449219,3.901(...TRUNCATED)
bitbrains_fast_storage/5T/long
fastStorage_347_dim0_window1/2013-09-09 01:40:00
5T
2013-08-12 13:40:00
2013-09-09 01:35:00
[3.9013328552246094,5.851999282836914,0.0,5.851999282836914,0.0,11.703998565673828,0.0,5.85199928283(...TRUNCATED)
2013-09-09 01:40:00
2013-09-11 13:35:00
[0.0,0.0,0.0,1.9506664276123047,5.851999282836914,3.9013328552246094,0.0,3.9013328552246094,0.0,5.85(...TRUNCATED)
bitbrains_fast_storage/5T/long
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GiftEval Parquet Collection

This repository hosts the parquet formatted GiftEval test data for ease of evaluating with LLM backboned models. Each dataset in the original GiftEval dataset can be loaded separately using the config names: datasetName_freq_term. Each row is a sample window from the test split of data, generated using the original GiftEval proressing script.

Each entry contains the following fields:

  • item_id (string): e.g. "item_0_dim0_window0/2018-04-12 20:00:00"
  • frequency (string): e.g. "15T"
  • history_start (string): e.g. "2016-07-01 00:00:00"
  • history_end (string): e.g. "2018-04-12 19:45:00"
  • history_value (list): e.g. [1,3,3,4,5,6,7,...]
  • future_start (string): e.g. "2018-04-12 20:00:00"
  • future_end (string): e.g. "2018-04-20 07:45:00"
  • future_value (list): e.g. [8,9,10,...]
  • config (string): e.g. "ett1/15T/long"

Note: that multivariate datasets are split into univariate form so each row is a univariate sample. The dimension information is saved within item_id.

Example usage

  from datasets import load_dataset

  ds = load_dataset(
      "Salesforce/GiftEvalParquet",
      "bitbrains_fast_storage_5T_long",
      split="train"
  )
  print(len(ds))
  print(ds[0].keys())

Citation

If you find this benchmark useful, please consider citing:

@article{aksu2024giftevalbenchmarkgeneraltime,
      title={GIFT-Eval: A Benchmark For General Time Series Forecasting Model Evaluation}, 
      author={Taha Aksu and Gerald Woo and Juncheng Liu and Xu Liu and Chenghao Liu and Silvio Savarese and Caiming Xiong and Doyen Sahoo},
      journal = {arxiv preprint arxiv:2410.10393},
      year={2024},
}
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