Effective collaboration among model developers is crucial to improve evaluations (evals) for AI, especially in function calling and structured outputs. Despite a lack of extensive partnerships, ongoing collaborations like those with BFCL and Gorilla are enhancing the quality of evals. The process of creating robust evaluation pipelines is complex and challenging for developers, as achieving high benchmarks is essential to accommodate rapid advancements in AI. It is vital to design evaluations that address various levels of difficulty to ensure reliability, as anything less than comprehensive will fall short amidst continuous improvements.

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