Distilling Step-by-Step : Paper Review
Last Updated on June 6, 2023 by Editorial Team
Author(s): Marcello Politi
Originally published on Towards AI.
Photo by Dan Cristian Pădureț on Unsplash
This blog post was written by Marcello Politi and Vijayasri Iyer.
Nowadays, large language models are quite prominent. Recent trends in AI Research have shown that larger LMs have zero-shot generalization capabilities and emergent/common sense reasoning abilities. Currently, one of the biggest language models is the 540B PaLM model. Companies want to use Large Language Models (LLMs) and customize them to their use cases. The problem is that deploying and serving these models independently is not always feasible in terms of costs and specialized hardware.
In the recent paper by Google AI, “Distilling Step by Step”,… Read the full blog for free on Medium.
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