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LOOM-Scope: a comprehensive and efficient LOng-cOntext Model evaluation framework

LOOM-Scope: a comprehensive and efficient LOng-cOntext Model evaluation framework

来源:Arxiv_logoArxiv
英文摘要

Long-context processing has become a fundamental capability for large language models~(LLMs). To assess model's long-context performance, numerous long-context evaluation benchmarks have been proposed. However, variations in evaluation settings across these benchmarks lead to inconsistent results, making it difficult to draw reliable comparisons. Besides, the high computational cost of long-context evaluation poses a significant barrier for the community to conduct comprehensive assessments of long-context models. In this paper, we propose LOOM-Scope, a comprehensive and efficient framework for long-context evaluation. LOOM-Scope standardizes evaluation settings across diverse benchmarks, supports deployment of efficient long-context inference acceleration methods, and introduces a holistic yet lightweight benchmark suite to evaluate models comprehensively. Homepage: https://loomscope.github.io

Zecheng Tang、Haitian Wang、Quantong Qiu、Baibei Ji、Ruoxi Sun、Keyan Zhou、Juntao Li、Min Zhang

计算技术、计算机技术

Zecheng Tang,Haitian Wang,Quantong Qiu,Baibei Ji,Ruoxi Sun,Keyan Zhou,Juntao Li,Min Zhang.LOOM-Scope: a comprehensive and efficient LOng-cOntext Model evaluation framework[EB/OL].(2025-07-07)[2025-07-16].https://arxiv.org/abs/2507.04723.点此复制

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