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MUX-PLMs: Data Multiplexing for High-throughput Language Models

Authors :
Murahari, Vishvak
Deshpande, Ameet
Jimenez, Carlos E.
Shafran, Izhak
Wang, Mingqiu
Cao, Yuan
Narasimhan, Karthik
Murahari, Vishvak
Deshpande, Ameet
Jimenez, Carlos E.
Shafran, Izhak
Wang, Mingqiu
Cao, Yuan
Narasimhan, Karthik
Publication Year :
2023

Abstract

The widespread adoption of large language models such as ChatGPT and Bard has led to unprecedented demand for these technologies. The burgeoning cost of inference for ever-increasing model sizes coupled with hardware shortages has limited affordable access and poses a pressing need for efficiency approaches geared towards high throughput and performance. Multi-input multi-output (MIMO) algorithms such as data multiplexing, offer a promising solution with a many-fold increase in throughput by performing inference for multiple inputs at the cost of a single input. Yet these approaches are not currently performant enough to be deployed in modern systems. We change that by developing MUX-PLMs, a class of high throughput pre-trained language models (PLMs) trained with data multiplexing, that can be fine-tuned for any downstream task to yield high-throughput high-performance. Our novel multiplexing and demultiplexing modules proficiently entangle and disentangle inputs, and enable high-performance high throughput \muxplms{} that are competitive with vanilla PLMs while achieving 2x/5x inference speedup with only a $1-4\%$ drop on a broad suite of tasks.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381604768
Document Type :
Electronic Resource