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How Dosu Used LangSmith to Achieve a 30% Accuracy Improvement with No Prompt Engineering
May 2, 2024, 3:16 p.m. | LangChain
LangChain blog.langchain.dev
Editor's Note: the following is authored by Devin Stein, CEO of Dosu. In this blog we walk through how Dosu uses LangSmith to improve the performance of their application - with NO prompt engineering. Rather, they collected feedback from their users, transformed that into few shot examples,
accuracy application blog ceo devin editor engineering feedback improvement langsmith performance prompt through
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