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arxiv: 2310.02654 · v1 · pith:CAZW5IMR · submitted 2023-10-04 · cs.LG · cs.AI· cs.AR

A Study of Quantisation-aware Training on Time Series Transformer Models for Resource-constrained FPGAs

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classification cs.LG cs.AIcs.AR
keywords quantisationapproachdatamodelsquantisation-awareschemeseriestime
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This study explores the quantisation-aware training (QAT) on time series Transformer models. We propose a novel adaptive quantisation scheme that dynamically selects between symmetric and asymmetric schemes during the QAT phase. Our approach demonstrates that matching the quantisation scheme to the real data distribution can reduce computational overhead while maintaining acceptable precision. Moreover, our approach is robust when applied to real-world data and mixed-precision quantisation, where most objects are quantised to 4 bits. Our findings inform model quantisation and deployment decisions while providing a foundation for advancing quantisation techniques.

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  1. Integer-only Quantized Transformers for Embedded FPGA-based Time-series Forecasting in AIoT

    cs.LG 2024-07 unverdicted novelty 4.0

    4-bit and 6-bit integer-only quantized Transformers implemented on Spartan-7 FPGA for AIoT time-series forecasting achieve 0.63% higher test loss than 8-bit baselines but up to 132x speedup and 48x lower energy.