Exploring the Impact of Large Language Models (LLMs) in Work
By
tarasglek
Pure flour-power. Hearty enough to carry you through lunch.
Summary
The article discusses the author's experience with adopting Large Language Models (LLMs) into their work, specifically highlighting the efficiency in generating SQL statements using GPT-3. It mentions the author's use of LLMs in various projects and the challenges faced with tool calling.
Key quotes
· 3 pulledI adopted LLMs into my work in Aug 2020.
Something that used to take 4-8 hours of RTFMing, now took 15min.
LLMs Can Complete Hard Software Engineering Tasks.
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