paper_id stringlengths 10 10 | announce_date date32 | title stringlengths 14 233 | abstract stringlengths 162 2.14k | author_names listlengths 1 105 | authors_json stringlengths 10 1.64k | categories listlengths 0 6 | primary_category stringclasses 109
values | pages int32 2 341 | ocr_tokens int32 2.64k 323k | ocr_tps float64 123 177 | ocr_duration_s float64 22.2 2.33k | ocr_precision stringclasses 1
value | ocr_model stringclasses 1
value | md_chars int32 9.48k 895k | n_layout_blocks int32 41 5.07k | ocr_finished_at stringlengths 26 29 | ocr_markdown stringlengths 9.48k 895k | ocr_layout stringlengths 13.1k 1.4M |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
2606.29657 | 2026-06-30 | Safety from Honesty in a Disinterested AI Predictor | "As AI systems become more capable, training procedures that optimize for downstream outcomes risk i(...TRUNCATED) | ["Bengio, Yoshua","Richardson, Oliver","Gavenčiak, Tomáš","Cohen, Michael","Svarc, Rory","Fornasi(...TRUNCATED) | "[\"Bengio, Yoshua\",\"Richardson, Oliver\",\"Gavenčiak, Tomáš\",\"Cohen, Michael\",\"Svarc, Rory(...TRUNCATED) | [
"cs.AI",
"cs.LG"
] | Artificial Intelligence (cs.AI) | 40 | 56,919 | 135 | 536.5 | 4bit | docOCR:4bit | 192,526 | 552 | 2026-07-07 03:58:01.077763+00 | "\\( \\alpha_{2} \\) \\( \\beta_{1} \\) \n\n \\( ^{a)} \\) \n\n \\( ^{b)} \\) \n\n \\( ^{c)} \\) \(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"\\\\( \\\\alpha_{2} \\\\) \(...TRUNCATED) |
2606.29658 | 2026-06-30 | Multi-Source Transfer Learning of Sparse Single-Index Models | "Transfer learning leverages knowledge from related source domains to improve learning in a target d(...TRUNCATED) | [
"Tian, Ye"
] | ["Tian, Ye"] | [
"stat.ML"
] | Methodology (stat.ME) | 37 | 37,846 | 147.6 | 372 | 4bit | docOCR:4bit | 102,400 | 358 | 2026-07-07 03:49:03.726551+00 | "28 Jun 2026\n\n## Multi-Source Transfer Learning of Sparse Single-Index Models\n\nYe Tian*\n\nJune (...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"28 Jun 2026\",\"reading_order(...TRUNCATED) |
2606.29661 | 2026-06-30 | Diversity is the Strength of the AI Crowd | "Top AI forecasting systems are approaching superforecaster-level accuracy on future world events, b(...TRUNCATED) | [
"Aitchison, Matthew",
"Jeen, Scott",
"Shevlane, Toby",
"Day, Ben"
] | ["Aitchison, Matthew","Jeen, Scott","Shevlane, Toby","Day, Ben"] | [
"cs.AI"
] | Artificial Intelligence (cs.AI) | 6 | 6,849 | 138.9 | 66.7 | 4bit | docOCR:4bit | 21,761 | 105 | 2026-07-07 03:42:50.709117+00 | "29 jun 2026 [cs.AI] - arXiv:2606.29661v1\n\n## Diversity is the Strength of the AI Crowd\n\nMatthew(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"29 jun 2026 [cs.AI] - arXiv:2(...TRUNCATED) |
2606.29664 | 2026-06-30 | Benchmarking Geospatial Foundation Models for Agriculture Applications | "Geospatial foundation models pretrained on satellite imagery promise broad generalization across re(...TRUNCATED) | [
"Shang, Zhuocheng",
"Das, Sanmay",
"Eldawy, Ahmed"
] | ["Shang, Zhuocheng","Das, Sanmay","Eldawy, Ahmed"] | [
"cs.CV",
"cs.LG"
] | Computer Vision and Pattern Recognition (cs.CV) | 5 | 8,800 | 134.4 | 86.5 | 4bit | docOCR:4bit | 29,153 | 106 | 2026-07-07 03:37:12.254252+00 | "2026, vol., pp.- p.m.: https://doi.org/10.1016/j.camod.2020.04.001\n\n## Benchmarking Geospatial Fo(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"2026, vol., pp.- p.m.: https:(...TRUNCATED) |
2606.29665 | 2026-06-30 | "Adjusted Wasserstein distances for bridging empirical and true distributions with applications to M(...TRUNCATED) | "This paper examines how metric adjustments to Multidimensional Scaling (MDS) can enhance its effect(...TRUNCATED) | [
"Martinez-Sermeno, Flor",
"Jaramillo, Arturo",
"Van Horebeek, Johan"
] | ["Martinez-Sermeno, Flor","Jaramillo, Arturo","Van Horebeek, Johan"] | [
"cs.LG",
"stat.ML"
] | Machine Learning (stat.ML) | 21 | 20,175 | 144.2 | 202.1 | 4bit | docOCR:4bit | 61,750 | 286 | 2026-07-07 03:35:40.025297+00 | "29 Jun 2026\n\narXiv:2606.29665v1 [stat.ML] 29 Jun 2026\n\n## ADJUSTED WASSERSTEIN DISTANCES FOR BR(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"29 Jun 2026\",\"reading_order(...TRUNCATED) |
2606.29667 | 2026-06-30 | "Unlocking the Visual Record of Materials Science: A Large-Scale Multimodal Dataset from Scientific (...TRUNCATED) | "The materials science literature encodes decades of experimental knowledge in figures, yet this vis(...TRUNCATED) | [
"Ghosh, Subham",
"Tiwari, Shubham",
"Ibrahim, Mohammad",
"Tewari, Abhishek"
] | ["Ghosh, Subham","Tiwari, Shubham","Ibrahim, Mohammad","Tewari, Abhishek"] | [
"cs.AI",
"cs.CV"
] | Computer Vision and Pattern Recognition (cs.CV) | 30 | 24,522 | 159.6 | 209.3 | 4bit | docOCR:4bit | 80,681 | 307 | 2026-07-07 03:32:14.865242+00 | "2016年1月\n\narXiv:2606.29667v1 [cs.CV] 29 Jun 2016\n\n## Unlocking the Visual Record of Material(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"2016年1月\",\"reading_order(...TRUNCATED) |
2606.29672 | 2026-06-30 | How LLMs See Creativity: Zero-Shot Scoring of Visual Creativity with Interpretable Reasoning | "Evaluating the originality of visual images poses enduring challenges for creativity assessment. Au(...TRUNCATED) | [
"Orwig, William",
"Beaty, Roger E."
] | ["Orwig, William","Beaty, Roger E."] | [
"cs.CL"
] | Computation and Language (cs.CL) | 21 | 17,535 | 146.2 | 181.4 | 4bit | docOCR:4bit | 65,468 | 203 | 2026-07-07 03:28:41.974567+00 | "30 Jun 2026\n\n## How LLMs See Creativity: Zero-Shot Scoring of Visual Creativity with Interpretabl(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"30 Jun 2026\",\"reading_order(...TRUNCATED) |
2606.29673 | 2026-06-30 | "Privacy-Preserving Decentralized Cooperative Localization with Range-Only Measurements: A Convex Op(...TRUNCATED) | "Cooperative localization using range-based measurements is critical for multi-robot systems operati(...TRUNCATED) | [
"Kumar, Nitesh",
"Ganeshan, Reyshwanth",
"Li, Sixu",
"Rathinam, Sivakumar",
"Darbha, Swaroop"
] | "[\"Kumar, Nitesh\",\"Ganeshan, Reyshwanth\",\"Li, Sixu\",\"Rathinam, Sivakumar\",\"Darbha, Swaroop\(...TRUNCATED) | [
"cs.RO"
] | Robotics (cs.RO) | 8 | 14,638 | 129.6 | 136.5 | 4bit | docOCR:4bit | 45,828 | 214 | 2026-07-07 03:25:36.594528+00 | "\\( \\frac{1}{2} \\) \n\n \\( \\therefore m = -\\frac{3\\sqrt{5}}{11} \\)\n\n## Privacy-Preserving (...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"\\\\( \\\\frac{1}{2} \\\\) \\(...TRUNCATED) |
2606.29675 | 2026-06-30 | I-BBS: Coordinate-Free Inference of Latent Sub-Manifolds Using Random Distance Matrix Theory | "Bogomolny, Bohigas and Schmit (BBS) found that the spectrum of the pairwise distance matrix on N po(...TRUNCATED) | [
"Halperin, Igor"
] | ["Halperin, Igor"] | [
"cs.LG",
"stat.ML"
] | Machine Learning (cs.LG) | 53 | 62,862 | 138.3 | 608.8 | 4bit | docOCR:4bit | 195,150 | 597 | 2026-07-07 03:23:15.318249+00 | "29 Jun 2026\n\narXiv:2606.29675v1 [cs.LG] 29 Jun 2026\n\n## I-BBS: Coordinate-Free Inference of Lat(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"29 Jun 2026\",\"reading_order(...TRUNCATED) |
2606.29677 | 2026-06-30 | Lateral String Stability for Vehicle Platoons | "Connected and automated vehicle (CAV) platooning promises gains in energy efficiency and traffic th(...TRUNCATED) | [
"Li, Sixu",
"Darbha, Swaroop",
"Zhou, Yang"
] | ["Li, Sixu","Darbha, Swaroop","Zhou, Yang"] | [
"cs.RO"
] | Robotics (cs.RO) | 6 | 18,180 | 127.7 | 159.8 | 4bit | docOCR:4bit | 45,915 | 185 | 2026-07-07 03:13:01.816642+00 | "\\( \\frac{1}{2} \\) \n\n \\( \\therefore m = -\\frac{3\\sqrt{5}}{11} \\)\n\n## Lateral String Stab(...TRUNCATED) | "{\"items\":[{\"page\":1,\"type\":\"text\",\"bbox\":null,\"content\":\"\\\\( \\\\frac{1}{2} \\\\) \\(...TRUNCATED) |
ArXivSignals FullText — arXiv Papers OCR'd to Markdown + Layout
A continuously-updated, day-partitioned dataset of arXiv papers converted to
clean full text by a vision OCR pipeline: each paper's PDF is rendered to
Markdown (headings, paragraphs, tables as HTML, math as LaTeX) plus a structured
layout JSON (typed, bounding-boxed blocks). It is the full-text companion to
taesiri/ArXivSignals
(metadata + LLM signal & summaries) and joins it on paper_id.
How it's made
- Source: arXiv PDFs (publicly available).
- OCR: a document vision-language model (Baidu-family "Unlimited-OCR" via MLX), run at 4-bit precision, page-by-page, producing Markdown + a raw tagged form + a typed layout tree. No LLM rewriting — this is transcription, not summarization.
- Scope: papers that are also in the public ArXivSignals catalog. The corpus fills in continuously (newest-first); coverage grows daily.
Schema (papers config, partitioned by announce_date)
| Column | Type | Notes |
|---|---|---|
paper_id |
string | arXiv id (joins taesiri/ArXivSignals) |
announce_date |
date | arXiv announcement date (partition key) |
title, abstract |
string | arXiv metadata |
author_names |
list | display names |
authors_json |
string | full author structure (JSON) |
categories |
list | arXiv categories |
primary_category |
string | |
ocr_markdown |
string | the OCR'd full text (Markdown; HTML tables; LaTeX math) |
ocr_layout |
string | typed + bbox'd layout blocks (JSON: {items:[{page,type,bbox,content}]}) |
pages |
int | page count |
md_chars, n_layout_blocks |
int | content stats |
ocr_tokens, ocr_tps, ocr_duration_s |
numeric | OCR throughput stats |
ocr_precision, ocr_model |
string | OCR configuration |
ocr_finished_at |
string | when this paper was OCR'd |
from datasets import load_dataset
ds = load_dataset("taesiri/ArXivSignals-FullText", "papers", split="corpus")
print(ds[0]["ocr_markdown"][:500])
Licensing, attribution & takedown
This is important — read before redistributing. The ocr_markdown /
ocr_layout fields are a machine-generated transcription of arXiv PDFs. arXiv
papers are licensed individually by their authors (arXiv's default non-exclusive
license, or CC-BY / CC-BY-SA / CC0 / other, per submission), and that license
governs the underlying content of the OCR text. This dataset does not grant
any rights beyond those of each source paper.
- Metadata (title, abstract, authors, categories) is provided under CC-BY-4.0, consistent with the companion catalog dataset.
- OCR full text is provided for research and text/data-mining purposes, as a derived representation of publicly available papers. Redistribution or reuse of any paper's text is subject to that paper's own license — check it before reusing.
- Attribution: always cite the original arXiv paper (
paper_id), not this dataset, as the source of the content. - OCR is imperfect: expect errors in math, tables, multi-column, and scanned pages. Treat the text as machine-transcribed, not authoritative.
- Takedown / opt-out: if you are an author (or rights holder) and want a paper removed, open an issue / discussion on this dataset repo — it will be removed promptly.
Maintained by @taesiri · powers arxivsignals.io.
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