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OverFill: Two-Stage Models for Efficient Language Model Decoding

11 August 2025
Woojeong Kim
Junxiong Wang
Jing Nathan Yan
Mohamed S. Abdelfattah
Alexander M Rush
ArXiv (abs)PDFHTMLGithub (3★)
Main:9 Pages
9 Figures
Bibliography:4 Pages
9 Tables
Appendix:3 Pages
Abstract

Large language models (LLMs) excel across diverse tasks but face significant deployment challenges due to high inference costs. LLM inference comprises prefill (compute-bound) and decode (memory-bound) stages, with decode dominating latency particularly for long sequences. Current decoder-only models handle both stages uniformly, despite their distinct computational profiles. We propose OverFill, which decouples these stages to optimize accuracy-efficiency tradeoffs. OverFill begins with a full model for prefill, processing system and user inputs in parallel. It then switches to a dense pruned model, while generating tokens sequentially. Leveraging more compute during prefill, OverFill improves generation quality with minimal latency overhead. Our 3B-to-1B OverFill configuration outperforms 1B pruned models by 83.2%, while the 8B-to-3B configuration improves over 3B pruned models by 79.2% on average across standard benchmarks. OverFill matches the performance of same-sized models trained from scratch, while using significantly less training data. Our code is available atthis https URL.

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