Using LLMs To Build Custom Conversational Engines
3 Essential Steps to Success
Large Language Models (LLMs) show tremendous promise in accelerating the building of text-based applications such as chatbots and question-answering interfaces. Companies around the world are currently building their first LLM-powered apps. But evaluating, knowing when to fine-tune, and fine-tuning LLMs is no small feat.
🔍 In this webinar, you’ll learn about:
📌 We’ll also showcase a concrete example of how to evaluate & fine-tune an LLM.
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Edouard d'Archimbaud
CTO at Kili Technology
Michael Van Meurer
Solution Engineer at Kili Technology
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Labeling Platform for High-quality Data
One tool to label, find and fix issues, simplify DataOps,
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