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arxiv:2603.03383

Accelerating OpenPangu Inference on NPU via Speculative Decoding

Published on Mar 3
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Abstract

An end-to-end speculative inference acceleration scheme is presented for OpenPangu-7B to address memory constraints and lack of native support for speculative decoding on NPU hardware.

AI-generated summary

To mitigate the Memory Wall bottleneck encountered by Large Language Models (LLMs) during inference on NPU hardware, and addressing the scarcity of native support for mainstream speculative decoding algorithms on domestic infrastructure, this study presents an end-to-end speculative inference acceleration scheme for OpenPangu-7B.

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