27cc3576a6f149e95cf68afc3e25cd6c.zip -

Reviewers highlighted that the paper's design choices, specifically "feature sharing," were well-motivated and helped the model stay expressive despite the simplifications. Critical Perspectives

It addresses the high query requirements of existing methods by reducing problem dimensionality and using "intrinsic-dimensional gradient clipping."

The community recognized the extensive evaluations showcasing superior accuracy and query efficiency over 13+ tasks. 27cc3576a6f149e95cf68afc3e25cd6c.zip

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This paper introduces a method called designed to improve how we tune large "black-box" models (like CLIP) when we don't have access to their internal code or gradients. Performance and Efficiency Try asking something else

Evaluators noted superior accuracy across 13+ different tasks and strong performance in "few-shot" settings (learning from very little data).

The primary consensus among reviewers is that ZIP significantly reduces the "query cost"—the number of times you have to ask the model for a result—while maintaining or improving accuracy. The primary consensus among reviewers is that ZIP

The string corresponds to a specific research paper titled "ZIP: An Efficient Zeroth-order Prompt Tuning for Black-box Vision-Language Models."