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Etalon: Holistic Performance Evaluation Framework for LLM Inference Systems

A new performance evaluation framework called Etalon is introduced to better assess the fluidity and real-time user experience of large language model inference systems, complementing existing latency and throughput metrics.

Year
2024
Venue
arXiv 2024
Authors
8
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2407.07000v2ARXIV-DEFAULT
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Abstract

Serving large language models (LLMs) in production can incur substantial costs, which has prompted recent advances in inference system optimizations. Today, these systems are evaluated against conventional latency and throughput metrics (eg. TTFT, TBT, Normalised Latency and TPOT). However, these metrics fail to fully capture the nuances of LLM inference, leading to an incomplete assessment of user-facing performance crucial for real-time applications such as chat and translation. In this paper, we first identify the pitfalls of current performance metrics in evaluating LLM inference systems. We then propose Etalon, a comprehensive performance evaluation framework that includes fluidity-index -- a novel metric designed to reflect the intricacies of the LLM inference process and its impact on real-time user experience. Finally, we evaluate various existing open-source platforms and model-as-a-service offerings using Etalon, discussing their strengths and weaknesses. Etalon is available at https://github.com/project-etalon/etalon.

Authors

8