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Large language models are costly. In the paper we’re about to review, a few guys from Stanford present their idea of how to make them cheaper. …
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Zygmunt Z.
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2025-12-31 10:44:37
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FastML FastML Machine learning made easy RSS Home Contents Popular Links Backgrounds About Paper review: FrugalGPT 2023-06-30 Large language models are costly. In the paper we’re about to review, a few guys from Stanford present their idea of how to make them cheaper. Specifically, they talk about calling APIs from providers like OpenAI and others. They offer a few general strategies like prompt adaptation and results caching, but the main thing they go into is using a cascade of models. The idea is simple: you arrange the models to call from the cheapest to the most expensive, and start with the cheapest. If the answer is acceptable, you stop, if not, you continue with the next. Read on → How to train your own ChatGPT Alpaca style, part two 2023-05-16 In the first part of this article we looked at the goals and the data for finetuning language models Alpaca-style. In the second part, we finetune a model and talk to it. Read on → How to train your ...
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