text string | prompt string | completion string |
|---|---|---|
"Chapter: _5 May._--I must have been asleep, for certainly if I had been fully\nawake I must have no(...TRUNCATED) | "Chapter: _5 May._--I must have been asleep, for certainly if I had been fully\nawake I must have no(...TRUNCATED) | " Dracula's castle is described, like almost everything else, in precise detail. Harker notes the ca(...TRUNCATED) |
"Chapter: _12 September._--How good they all are to me. I quite love that dear Dr.\nVan Helsing. I w(...TRUNCATED) | "Chapter: _12 September._--How good they all are to me. I quite love that dear Dr.\nVan Helsing. I w(...TRUNCATED) | " On the 12th of September, Lucy is perplexed by the presence of the garlic flowers, but she has suc(...TRUNCATED) |
"Chapter: _23 September_.--Jonathan is better after a bad night. I am so glad that\nhe has plenty of(...TRUNCATED) | "Chapter: _23 September_.--Jonathan is better after a bad night. I am so glad that\nhe has plenty of(...TRUNCATED) | " Mina decides to transcribe the journal which Jonathan kept at the Castle Dracula in Transylvania. (...TRUNCATED) |
"Chapter: When we arrived at the Berkeley Hotel, Van Helsing found a telegram\nwaiting for him:--\n\(...TRUNCATED) | "Chapter: When we arrived at the Berkeley Hotel, Van Helsing found a telegram\nwaiting for him:--\n\(...TRUNCATED) | " Dr. Seward's diary continues sometime later, and he details for us his first meeting with Mina Har(...TRUNCATED) |
"Chapter: _1 October, evening._--I found Thomas Snelling in his house at Bethnal\nGreen, but unhappi(...TRUNCATED) | "Chapter: _1 October, evening._--I found Thomas Snelling in his house at Bethnal\nGreen, but unhappi(...TRUNCATED) | " Jonathan, through his persistent investigations, discovers the whereabouts of twelve more of the b(...TRUNCATED) |
"Chapter: This to Jonathan Harker.\n\nYou are to stay with your dear Madam Mina. We shall go to make(...TRUNCATED) | "Chapter: This to Jonathan Harker.\n\nYou are to stay with your dear Madam Mina. We shall go to make(...TRUNCATED) | " Van Helsing thinks that Jonathan Harker should stay in England with his wife, since he now knows t(...TRUNCATED) |
"Chapter: _29 October._--This is written in the train from Varna to Galatz. Last\nnight we all assem(...TRUNCATED) | "Chapter: _29 October._--This is written in the train from Varna to Galatz. Last\nnight we all assem(...TRUNCATED) | " On the 29th day of October, Dr. Seward records that Mina, under hypnosis, can hear and distinguish(...TRUNCATED) |
"Chapter: As I rose and dressed, I thought over what had happened, and wondered if\nit were a dream.(...TRUNCATED) | "Chapter: As I rose and dressed, I thought over what had happened, and wondered if\nit were a dream.(...TRUNCATED) | " The next morning, Jane wakes, wondering if the previous night was just a dream. She feels transfor(...TRUNCATED) |
"Chapter: A week passed, and no news arrived of Mr. Rochester: ten days, and still\nhe did not come.(...TRUNCATED) | "Chapter: A week passed, and no news arrived of Mr. Rochester: ten days, and still\nhe did not come.(...TRUNCATED) | " Jane cannot help missing Rochester and she longs for his return. A letter is received giving the s(...TRUNCATED) |
"Chapter: Some time in the afternoon I raised my head, and looking round and seeing\nthe western sun(...TRUNCATED) | "Chapter: Some time in the afternoon I raised my head, and looking round and seeing\nthe western sun(...TRUNCATED) | " It is nearly the end of the day before Jane emerges from her room, but she is already resolved to (...TRUNCATED) |
DHSA_Long-Data-Collections
A length-bucketed release of togethercomputer/Long-Data-Collections, used in Long-Context Modeling with Dynamic Hierarchical Sparse Attention for Memory-Constrained LLM Inference (ICML 2026 Spotlight).
Each example is assigned to exactly one length bucket based on token count with meta-llama/Llama-3.1-8B-Instruct (add_special_tokens=True):
| Bucket | Token range |
|---|---|
lt_8k |
[0, 8K) |
8k_16k |
[8K, 16K) |
16k_32k |
[16K, 32K) |
32k_64k |
[32K, 64K) |
64k_128k |
[64K, 128K) |
gt_128k |
β₯ 128K |
- Pretrain examples are bucketed by the
textfield. - Fine-tune examples are bucketed by the
promptfield.
Directory layout
Long-Data-Collections/
βββ README.md
βββ length_bucket_summary.json
βββ pretrain/
β βββ lt_8k/
β β βββ arxiv_doc_to_abs.jsonl.zst
β β βββ NI_decontaminated_materialized.jsonl.zst
β β βββ P3_decontaminated_materialized.jsonl.zst
β β βββ pile_sub.jsonl.zst
β β βββ rp_sub.jsonl.zst
β β βββ ul2_plus_oscar_en.jsonl.zst
β βββ 8k_16k/
β βββ 16k_32k/
β βββ 32k_64k/
β βββ 64k_128k/
β βββ gt_128k/
βββ fine-tune/
βββ lt_8k/
β βββ booksum.jsonl.zst
β βββ natural_questions_10_200_docs.jsonl.zst
βββ 8k_16k/
βββ 16k_32k/
βββ 32k_64k/
βββ 64k_128k/
βββ gt_128k/
All files are zstd-compressed JSONL (.jsonl.zst). Each line is a JSON object preserving the original fields (text, and optionally meta / metadata for pretrain; text, prompt, completion for fine-tune).
Example counts by bucket
Pretrain (bucketed by text length)
| Dataset | lt_8k | 8k_16k | 16k_32k | 32k_64k | 64k_128k | gt_128k | Total |
|---|---|---|---|---|---|---|---|
| arxiv_doc_to_abs | 377,854 | 559,745 | 436,259 | 150,632 | 28,557 | 5,258 | 1,558,305 |
| rp_sub | 913,818 | 11,265 | 3,893 | 1,019 | 368 | 151 | 930,514 |
| ul2_plus_oscar_en | 3,148,215 | 342,739 | 60,306 | 9,213 | 1,804 | 236 | 3,562,513 |
| pile_sub | 1,878,091 | 43,443 | 12,818 | 3,022 | 1,799 | 1,285 | 1,940,458 |
| NI_decontaminated_materialized | 460,066 | 117,188 | 567 | 210 | 12 | 0 | 578,043 |
| P3_decontaminated_materialized | 757,542 | 56,465 | 8 | 0 | 0 | 0 | 814,015 |
| All pretrain | 7,535,586 | 1,130,845 | 513,851 | 164,096 | 32,540 | 6,930 | 9,383,848 |
Fine-tune (bucketed by prompt length)
| Dataset | lt_8k | 8k_16k | 16k_32k | 32k_64k | 64k_128k | gt_128k | Total |
|---|---|---|---|---|---|---|---|
| booksum | 7,909 | 1,207 | 413 | 64 | 5 | 2 | 9,600 |
| natural_questions_10_200_docs | 21,370 | 25,879 | 41,639 | 69 | 0 | 0 | 88,957 |
| All fine-tune | 29,279 | 27,086 | 42,052 | 133 | 5 | 2 | 98,557 |
Full counts are also available in length_bucket_summary.json.
Dataset description
This collection compiles long-context datasets for training and evaluating models that require extensive comprehension over large text inputs. It is derived from the public Together AI release and reorganized into length buckets for long-context experiments.
Pretrain data (pretrain/)
| File | Description |
|---|---|
rp_sub |
RedPajama book subset β diverse literary text |
arxiv_doc_to_abs |
RedPajama ArXiv papers with abstract appended after the paper body |
ul2_plus_oscar_en |
UL2-style fill-in-the-blank completions (LAION Open-Instruction-Generalist) |
pile_sub |
Subsample of The Pile |
NI_decontaminated_materialized |
Natural Instructions, decontaminated against HELM core scenarios |
P3_decontaminated_materialized |
Public Pool of Prompts (P3), decontaminated against HELM core scenarios |
Fine-tune data (fine-tune/)
| File | Description |
|---|---|
natural_questions_10_200_docs |
Multi-passage QA from Natural Questions (10β200 Wiki passages per question) |
booksum |
Long-context book summarization |
Fine-tune records contain prompt (context + instruction), completion (target answer/summary), and text (prompt + completion).
Usage
Load a specific bucket and file with the Hugging Face datasets library:
from datasets import load_dataset
ds = load_dataset(
"json",
data_files="pretrain/16k_32k/arxiv_doc_to_abs.jsonl.zst",
split="train",
)
Or stream locally with zstd:
import json, zstandard as zstd
path = "pretrain/8k_16k/rp_sub.jsonl.zst"
with open(path, "rb") as f:
with zstd.ZstdDecompressor().stream_reader(f) as reader:
for line in reader:
row = json.loads(line)
...
Licensing
Please refer to the original sources of each sub-dataset for their respective licenses. This dataset is a length-bucketed release of togethercomputer/Long-Data-Collections; upstream licensing terms apply.
Citation
@article{xiong2025long,
title={Long-Context Modeling with Dynamic Hierarchical Sparse Attention for On-Device LLMs},
author={Xiong, Siheng and Zou, Joe and Fekri, Faramarz and Cho, Yae Jee},
journal={arXiv preprint arXiv:2510.24606},
year={2025}
}
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