This article highlights how Spotify uses a context layer to bridge the gap between LLMs and complex internal data. It demonstrates a scalable way to encode domain expertise into AI assistants, significantly improving data discovery and reducing the manual burden on human experts.
At Spotify, data problems used to follow a specific pattern. You'd look for the relevant dashboard, there...
The post Encoding Your Domain Expert: The Context Layer Behind Spotify's Data Assistant appeared first on Spotify Engineering.
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