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DOID:0001816
hpo
HP:0200058
UMLS
C0018923
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DOID:0001816
hpo
HP:0200058
SNOMEDCT
39000009
doid
DOID:0002116
hpo
HP:0001059
UMLS
C0033999
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DOID:0050127
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HP:0000255
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C0149512
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DOID:0050152
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HP:0011951
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C0032290
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DOID:0050157
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HP:0011945
SNOMEDCT
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DOID:0050157
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HP:0011945
UMLS
C0242770
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DOID:0050158
hpo
HP:0005942
UMLS
C0238378
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DOID:0050158
hpo
HP:0005942
SNOMEDCT
8549006
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DOID:0050328
hpo
HP:0000851
SNOMEDCT
217710005
doid
DOID:0050328
hpo
HP:0000851
UMLS
C0010308
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DOID:0050335
hpo
HP:0030511
UMLS
C1842073
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DOID:0050335
hpo
HP:0030511
SNOMEDCT
711163009
doid
DOID:0050425
hpo
HP:0012452
UMLS
C0035258
doid
DOID:0050425
hpo
HP:0012452
SNOMEDCT
32914008
doid
DOID:0050428
hpo
HP:0007404
UMLS
C1833030
doid
DOID:0050453
hpo
HP:0001339
SNOMEDCT
204036008
doid
DOID:0050453
hpo
HP:0001302
UMLS
C0266483
doid
DOID:0050453
hpo
HP:0001302
SNOMEDCT
23024003
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DOID:0050453
hpo
HP:0001339
UMLS
C0266463
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DOID:0050458
hpo
HP:0012209
SNOMEDCT
445227008
doid
DOID:0050458
hpo
HP:0012209
UMLS
C0349639
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DOID:0050459
hpo
HP:0002905
UMLS
C0085681
doid
DOID:0050459
hpo
HP:0002905
SNOMEDCT
20165001
doid
DOID:0050461
hpo
HP:0012068
UMLS
C0268225
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DOID:0050461
hpo
HP:0012068
SNOMEDCT
54954004
doid
DOID:0050486
hpo
HP:0000988
UMLS
C0015230
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DOID:0050486
hpo
HP:0000988
SNOMEDCT
112625008
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DOID:0050589
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HP:0002037
UMLS
C0021390
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DOID:0050591
hpo
HP:0000674
UMLS
C0399352
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DOID:0050651
hpo
HP:0006695
UMLS
C0014116
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DOID:0050700
hpo
HP:0001638
UMLS
C0878544
doid
DOID:0050524
hpo
HP:0004904
UMLS
C0342276
doid
DOID:0050524
hpo
HP:0004904
SNOMEDCT
609561005
doid
DOID:0050534
hpo
HP:0007642
SNOMEDCT
193687000
doid
DOID:0050534
hpo
HP:0007642
UMLS
C1306122
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DOID:0050902
hpo
HP:0002885
NCIT
C3222
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DOID:0050902
hpo
HP:0002885
SNOMEDCT
443333004
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DOID:0050902
hpo
HP:0002885
UMLS
C0025149
doid
DOID:0050902
hpo
HP:0030065
UMLS
C0206663
doid
DOID:0060025
hpo
HP:0002720
UMLS
C0162538
doid
DOID:0060025
hpo
HP:0002720
SNOMEDCT
29260007
doid
DOID:0060058
hpo
HP:0002665
SNOMEDCT
118600007
doid
DOID:0060058
hpo
HP:0002665
UMLS
C0024299
doid
DOID:0060058
hpo
HP:0002665
NCIT
C7065
doid
DOID:0060060
hpo
HP:0012539
UMLS
C0024305
doid
DOID:0060060
hpo
HP:0012539
SNOMEDCT
118601006
doid
DOID:0060119
hpo
HP:0100638
SNOMEDCT
126685009
doid
DOID:0060119
hpo
HP:0100638
UMLS
C0031347
doid
DOID:0060135
hpo
HP:0002186
UMLS
C0003635
doid
DOID:0060180
hpo
HP:0002583
SNOMEDCT
64226004
doid
DOID:0060180
hpo
HP:0002583
UMLS
C0009319
doid
DOID:0050773
hpo
HP:0002668
SNOMEDCT
302833002
doid
DOID:0050773
hpo
HP:0002668
UMLS
C0030421
doid
DOID:0050773
hpo
HP:0006729
NCIT
C3308
doid
DOID:0050782
hpo
HP:0002044
UMLS
C0043515
doid
DOID:0050820
hpo
HP:0001678
UMLS
C0004245
doid
DOID:0050835
hpo
HP:0001304
UMLS
C0013423
doid
DOID:0050835
hpo
HP:0001304
SNOMEDCT
22451001
doid
DOID:0050841
hpo
HP:0002356
SNOMEDCT
52008007
doid
DOID:0050841
hpo
HP:0002356
UMLS
C0154676
doid
DOID:0050847
hpo
HP:0010535
UMLS
C0037315
doid
DOID:0050848
hpo
HP:0002870
UMLS
C0520679
doid
DOID:0050861
hpo
HP:0040275
UMLS
C1319315
doid
DOID:0050861
hpo
HP:0040275
SNOMEDCT
408645001
doid
DOID:0050865
hpo
HP:0030413
SNOMEDCT
276952000
doid
DOID:0050865
hpo
HP:0030413
UMLS
C0349566
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DOID:0060282
hpo
HP:0007968
SNOMEDCT
69927002
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DOID:0060282
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HP:0007968
UMLS
C0266568
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DOID:0060284
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HP:0004818
UMLS
C0024790
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DOID:0060285
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HP:0004423
SNOMEDCT
718099006
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DOID:0060285
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HP:0004423
UMLS
C1868598
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DOID:0050773
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HP:0002668
NCIT
C3308
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DOID:10456
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HP:0011110
UMLS
C0040425
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DOID:10480
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HP:0009110
SNOMEDCT
34168003
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DOID:10480
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HP:0009110
UMLS
C0011981
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DOID:10485
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HP:0002032
UMLS
C0014850
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DOID:10486
hpo
HP:0011100
UMLS
C0021828
doid
DOID:10488
hpo
HP:0002023
UMLS
C0003466
doid
DOID:10493
hpo
HP:0008207
UMLS
C0405580
doid
DOID:10534
hpo
HP:0006753
UMLS
C0038356
doid
DOID:10534
hpo
HP:0006753
SNOMEDCT
126824007
doid
DOID:10540
hpo
HP:0045038
SNOMEDCT
276811008
doid
DOID:10540
hpo
HP:0045038
UMLS
C0349532
doid
DOID:1088
hpo
HP:0002435
UMLS
C0025299
doid
DOID:10688
hpo
HP:0010313
UMLS
C0020565
doid
DOID:1070
hpo
HP:0012108
SNOMEDCT
77075001
doid
DOID:1070
hpo
HP:0012108
UMLS
C0339573
doid
DOID:1074
hpo
HP:0000083
SNOMEDCT
42399005
doid
DOID:1074
hpo
HP:0000083
UMLS
C0035078
doid
DOID:10754
hpo
HP:0000388
SNOMEDCT
65363002
doid
DOID:10754
hpo
HP:0000388
UMLS
C0029882
doid
DOID:10762
hpo
HP:0001409
UMLS
C0020541
doid
DOID:10763
hpo
HP:0000822
SNOMEDCT
38341003
doid
DOID:10763
hpo
HP:0000822
UMLS
C0020538
doid
DOID:10783
hpo
HP:0012119
UMLS
C0025637
doid
DOID:10787
hpo
HP:0008209
UMLS
C0025322
doid
DOID:10808
hpo
HP:0002592
UMLS
C0038358
doid
DOID:10816
hpo
HP:0006771
SNOMEDCT
408644002
doid
DOID:10816
hpo
HP:0006771
UMLS
C0278804
End of preview. Expand in Data Studio

Science Data Lake

GitHub DOI LLM-Ready Follow on X Author website

Science Data Lake

A unified, portable science data lake integrating 6 scholarly datasets (~523 GB Parquet) with cross-dataset DOI normalization, 13 scientific ontologies (1.3M terms), and a reproducible ETL pipeline.

Note: Two additional sources (Semantic Scholar S2AG and Reliance on Science) are supported by the pipeline but are not redistributed here pending license clarification. See Not Included in This Upload below.

What's Unique

This dataset enables queries that are impossible with any single source:

-- "Top disruptive papers with open-source code, checking for retractions"
SELECT doi, title, year,
       sciscinet_disruption,      -- from SciSciNet
       oa_cited_by_count,         -- from OpenAlex
       has_pwc,                   -- from Papers With Code
       has_retraction             -- from Retraction Watch
FROM unified_papers
WHERE has_pwc AND sciscinet_disruption > 0.5
ORDER BY oa_cited_by_count DESC
LIMIT 20

Datasets Included

Dataset Papers/Records License Key Contribution
OpenAlex 479M works CC0 1.0 (public domain) Broadest coverage, topics, FWCI
SciSciNet v2 250M papers CC BY 4.0 Disruption index, atypicality, team size
Papers With Code 513K papers CC BY-SA 4.0 Method-task-dataset-code links
Retraction Watch 69K records Open (via Crossref) Retraction flags + reasons
Preprint-to-Paper 146K pairs CC BY 4.0 bioRxiv preprint to published paper
13 Ontologies 1.3M terms Various (see below) CSO, MeSH, GO, DOID, ChEBI, NCIT, HPO, EDAM, AGROVOC, UNESCO, STW, MSC2020, PhySH

Ontology Licenses

Ontology License
MeSH Public Domain (US government work)
GO, ChEBI, NCIT, EDAM, CSO, PhySH, STW CC BY 4.0
DOID CC0 1.0
AGROVOC CC BY 3.0 IGO
UNESCO Thesaurus CC BY-SA 3.0 IGO
HPO Custom (free for research use)
MSC2020 CC BY-NC-SA 4.0 (non-commercial)

Snapshot Dates

Each source was downloaded at a specific point in time:

Dataset Snapshot / Release Notes
OpenAlex 2026-02-03 S3 snapshot
SciSciNet v2 2024-11-01 GCS bucket
Papers With Code 2025-07 Archived JSON
Retraction Watch 2025-02 Crossref CSV
Preprint-to-Paper 2025-06 Zenodo record
13 Ontologies 2026-02 Official sources

All snapshots can be refreshed using the update pipeline — see below.

Not Included in This Upload

The following sources are supported by the full pipeline (GitHub) but are not redistributed here due to license restrictions or pending clarification:

Dataset Reason How to obtain
S2AG (Semantic Scholar, 231M papers) License requires individual agreement with Semantic Scholar Semantic Scholar Datasets API
Reliance on Science (548K patent-paper pairs) CC BY-NC 4.0 — non-commercial restriction Zenodo record

After downloading these sources locally, run the full pipeline to integrate them.

Key Tables

unified_papers (293M rows)

The headline table: one row per unique DOI, joining all sources.

Column Type Description
doi VARCHAR Normalized DOI (lowercase, no prefix)
title VARCHAR Best available title (OpenAlex > S2AG)
year BIGINT Publication year
openalex_id VARCHAR OpenAlex work ID
sciscinet_paperid VARCHAR SciSciNet paper ID
has_openalex BOOLEAN Present in OpenAlex
has_sciscinet BOOLEAN Present in SciSciNet
has_pwc BOOLEAN Has code on Papers With Code
has_retraction BOOLEAN Flagged in Retraction Watch
oa_cited_by_count BIGINT OpenAlex citation count
sciscinet_disruption DOUBLE Disruption index (CD index)
sciscinet_atypicality DOUBLE Atypicality score
oa_fwci DOUBLE Field-Weighted Citation Impact

Note: The locally-built version of unified_papers includes additional columns from S2AG and RoS (s2ag_corpusid, s2ag_citationcount, has_s2ag, has_patent). These columns are present in the uploaded file but will contain NULL values for users who have not integrated those sources locally.

topic_ontology_map

Maps OpenAlex's 4,516 topics to terms in 13 scientific ontologies via embedding-based semantic similarity (BGE-large-en-v1.5, 1024-dim) + exact matching for large ontologies (MeSH, ChEBI, NCIT). 16,150 mappings covering 99.8% of topics. Columns include similarity (cosine, 0-1) and match_type (label/synonym/exact) for quality filtering.

ontology_bridges

Cross-ontology links discovered via shared external IDs (UMLS, Wikidata, MESH, etc.).

Usage with DuckDB

import duckdb

# Query directly from HuggingFace
con = duckdb.connect()
con.execute("INSTALL httpfs; LOAD httpfs;")

df = con.execute("""
    SELECT doi, title, year, sciscinet_disruption, oa_cited_by_count
    FROM 'hf://datasets/J0nasW/science-datalake/xref/unified_papers/*.parquet'
    WHERE sciscinet_disruption IS NOT NULL
    ORDER BY sciscinet_disruption DESC
    LIMIT 100
""").df()

Keeping the Data Current

The full pipeline supports incremental updates. When upstream sources release new snapshots:

# Update a single dataset
python scripts/datalake_cli.py update openalex

# Update all datasets and rebuild cross-reference tables
python scripts/datalake_cli.py update
python scripts/materialize_unified_papers.py

See the GitHub repository for full pipeline documentation.

LLM & AI Agent Integration

This data lake ships with SCHEMA.md — a structured reference file optimized for LLM-based coding agents (Claude Code, Cursor, Copilot, etc.). It contains every table, column, type, join strategy, and performance tier in a format that AI agents can use to write correct DuckDB SQL without prior schema knowledge.

Point your AI assistant at SCHEMA.md and ask it to query across all 6+ datasets and 13 ontologies using natural language.

Building the Full Instance (All 8 Sources)

Clone the GitHub repository and run the pipeline to integrate all sources including S2AG and RoS:

git clone https://github.com/J0nasW/science-datalake
cd science-datalake
python scripts/datalake_cli.py download --all
python scripts/datalake_cli.py convert --all
python scripts/create_unified_db.py
python scripts/materialize_unified_papers.py

Citation

@dataset{wilinski2026sciencedatalake,
  title={Science Data Lake: A Unified, Portable Data Lake for Full-Lifecycle Scholarly Analysis},
  author={Wilinski, Jonas},
  year={2026},
  publisher={HuggingFace},
  url={https://huggingface.co/datasets/J0nasW/science-datalake},
  doi={10.57967/hf/7850}
}

License

This dataset aggregates multiple sources, each with its own license. Users must comply with the most restrictive license applicable to the sources they use.

Component License
Integration code (scripts, pipeline) MIT
OpenAlex data CC0 1.0 (public domain)
SciSciNet v2 data CC BY 4.0
Papers With Code data CC BY-SA 4.0
Retraction Watch data Open (via Crossref)
Preprint-to-Paper data CC BY 4.0
Cross-reference tables (unified_papers, topic_ontology_map) Derived work — most restrictive source license applies
Ontologies Various — see table above; note MSC2020 is CC BY-NC-SA 4.0
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