Summary of 100 Instances Is All You Need: Predicting the Success Of a New Llm on Unseen Data by Testing on a Few Instances, By Lorenzo Pacchiardi et al.
100 instances is all you need: predicting the success of a new LLM on unseen…
100 instances is all you need: predicting the success of a new LLM on unseen…
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