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Inferflow: an Efficient and Highly Configurable Inference Engine for Large Language Models

Inferflow is a flexible and efficient inference engine for large language models that supports modular frameworks, 3.5-bit quantization, and hybrid model partitioning for multi-GPU inference.

Year
2024
Venue
arXiv 2024
Authors
6
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arxiv.org/abs/2401.08294ARXIV-DEFAULT
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Abstract

We present Inferflow, an efficient and highly configurable inference engine for large language models (LLMs). With Inferflow, users can serve most of the common transformer models by simply modifying some lines in corresponding configuration files, without writing a single line of source code. Compared with most existing inference engines, Inferflow has some key features. First, by implementing a modular framework of atomic build-blocks and technologies, Inferflow is compositionally generalizable to new models. Second, 3.5-bit quantization is introduced in Inferflow as a tradeoff between 3-bit and 4-bit quantization. Third, hybrid model partitioning for multi-GPU inference is introduced in Inferflow to better balance inference speed and throughput than the existing partition-by-layer and partition-by-tensor strategies.

Authors

6