cs.AI updates on arXiv.org 09月16日
FlexBench:AI基准测试新框架
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本文提出FlexBench,作为MLPerf的模块化扩展,旨在通过跨数据集、软件和硬件的持续评估和优化,为AI系统提供相关且可操作的见解,以支持AI系统的部署、优化和协同设计。

arXiv:2509.11413v1 Announce Type: cross Abstract: Existing AI system benchmarks such as MLPerf often struggle to keep pace with the rapidly evolving AI landscape, making it difficult to support informed deployment, optimization, and co-design decisions for AI systems. We suggest that benchmarking itself can be framed as an AI task - one in which models are continuously evaluated and optimized across diverse datasets, software, and hardware, using key metrics such as accuracy, latency, throughput, energy consumption, and cost. To support this perspective, we present FlexBench: a modular extension of the MLPerf LLM inference benchmark, integrated with HuggingFace and designed to provide relevant and actionable insights. Benchmarking results and metadata are collected into an Open MLPerf Dataset, which can be collaboratively curated, extended, and leveraged for predictive modeling and feature engineering. We successfully validated the FlexBench concept through MLPerf Inference submissions, including evaluations of DeepSeek R1 and LLaMA 3.3 on commodity servers. The broader objective is to enable practitioners to make cost-effective AI deployment decisions that reflect their available resources, requirements, and constraints.

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AI基准测试 FlexBench MLPerf 数据集 模型评估
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