The evolution of AI models has seen a shift towards the use of smaller, faster models for specific use cases, leading to a trend of model fragmentation. This trend is driven by the need to develop specialized models for different purposes, similar to how recommendation engines like YouTube and Spotify use many fine-tuned models for specific recommendations. This approach is also evident in the development of coding assistants, where Google underwent challenges when teams were tasked with training or fine-tuning their own models, leading to the release of coding assistants like code D and duet. This evolution signifies a move away from a single large language model (LLM) to a recommendation engine approach in the AI space.

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