LGAIPFSYMLJun 3, 2023

On Optimal Caching and Model Multiplexing for Large Model Inference

arXiv:2306.02003v230 citationsh-index: 187
AI Analysis

This work addresses resource efficiency for deploying large models, but it is incremental as it builds on existing caching and multiplexing techniques.

The paper tackles the problem of high resource consumption and latency in large model inference by proposing an optimal algorithm that jointly optimizes caching and model multiplexing, achieving up to 50x improvement in simulations and 4.3x improvement in FLOPs on real datasets.

Large Language Models (LLMs) and other large foundation models have achieved noteworthy success, but their size exacerbates existing resource consumption and latency challenges. In particular, the large-scale deployment of these models is hindered by the significant resource requirements during inference. In this paper, we study two approaches for mitigating these challenges: employing a cache to store previous queries and learning a model multiplexer to choose from an ensemble of models for query processing. Theoretically, we provide an optimal algorithm for jointly optimizing both approaches to reduce the inference cost in both offline and online tabular settings. By combining a caching algorithm, namely Greedy Dual Size with Frequency (GDSF) or Least Expected Cost (LEC), with a model multiplexer, we achieve optimal rates in both offline and online settings. Empirically, simulations show that the combination of our caching and model multiplexing algorithms greatly improves over the baselines, with up to $50\times$ improvement over the baseline when the ratio between the maximum cost and minimum cost is $100$. Experiments on real datasets show a $4.3\times$ improvement in FLOPs over the baseline when the ratio for FLOPs is $10$, and a $1.8\times$ improvement in latency when the ratio for average latency is $1.85$.

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