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arxiv:2505.08620

Resource-Efficient Language Models: Quantization for Fast and Accessible Inference

Published on May 13, 2025

Abstract

Post-training quantization techniques are reviewed to optimize the inference efficiency of large language models without altering their training process.

Large language models have significantly advanced natural language processing, yet their heavy resource demands pose severe challenges regarding hardware accessibility and energy consumption. This paper presents a focused and high-level review of post-training quantization (PTQ) techniques designed to optimize the inference efficiency of LLMs by the end-user, including details on various quantization schemes, granularities, and trade-offs. The aim is to provide a balanced overview between the theory and applications of post-training quantization.

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