SpeedLimit: Neural Architecture Search for Quantized Transformer Models

25 Sep 2022  ·  Yuji Chai, Luke Bailey, Yunho Jin, Matthew Karle, Glenn G. Ko, David Brooks, Gu-Yeon Wei, H. T. Kung ·

While research in the field of transformer models has primarily focused on enhancing performance metrics such as accuracy and perplexity, practical applications in industry often necessitate a rigorous consideration of inference latency constraints. Addressing this challenge, we introduce SpeedLimit, a novel Neural Architecture Search (NAS) technique that optimizes accuracy whilst adhering to an upper-bound latency constraint. Our method incorporates 8-bit integer quantization in the search process to outperform the current state-of-the-art technique. Our results underline the feasibility and efficacy of seeking an optimal balance between performance and latency, providing new avenues for deploying state-of-the-art transformer models in latency-sensitive environments.

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