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arxiv:2408.04632

Arctic-TILT. Business Document Understanding at Sub-Billion Scale

Published on Aug 8, 2024
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Abstract

Arctic-TILT achieves high accuracy for document processing tasks using significantly fewer resources compared to larger models, excelling on multiple benchmarks with confidence scores and quick inference times.

The vast portion of workloads employing LLMs involves answering questions grounded on PDF or scan content. We introduce the Arctic-TILT achieving accuracy on par with models 1000times its size on these use cases. It can be fine-tuned and deployed on a single 24GB GPU, lowering operational costs while processing Visually Rich Documents with up to 400k tokens. The model establishes state-of-the-art results on seven diverse Document Understanding benchmarks, as well as provides reliable confidence scores and quick inference, which are essential for processing files in large-scale or time-sensitive enterprise environments.

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