Datalab Releases lift: A 9B Open-Weights Vision Model That Extracts Structured JSON From PDFs Using Schemas
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Datalab released lift, a 9B open-weights vision model that turns PDFs and images into schema-matching JSON. It uses schema-constrained decoding for valid structure and trained abstention to return null instead of hallucinating absent fields, scoring 90.2% field accuracy on a 225-document benchmark.
1Key Takeaways
- Datalab released lift, a 9B open-weights vision model that turns PDFs and images into schema-matching JSON.
- It uses schema-constrained decoding for valid structure and trained abstention to return null instead of hallucinating absent fields, scoring 90.2% field accuracy on a 225-document benchmark.
2AIWedia Score
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3Why it matters
Image AI moves creative production, marketing assets, and design pipelines at lower cost. MarkTechPost Vision reports that datalab released lift, a 9B open-weights vision model that turns PDFs and images into schema-matching JSON.
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