@jerryjliu0: Our team is at CVPR 2026 if you want to come say hi :)
Summary
Jerry Liu's team is presenting ParseBench, a comprehensive document understanding benchmark for VLMs, at CVPR 2026. The benchmark includes 2,000 pages of real-world enterprise documents with evaluation metrics for tables, charts, and visual grounding.
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Our team is at CVPR 2026 if you want to come say hi :) https://t.co/exjQNEIALk
Jerry Liu (@jerryjliu0): We’re presenting ParseBench at CVPR 2026!
ParseBench is the most comprehensive document understanding benchmark for VLMs. ✅ It contains 2k pages of real-world enterprise documents ✅ It has comprehensive evaluation metrics around tables, charts, visual grounding, semantic
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