Summary
This post details performance benchmarks for Qwen3.6-35B-A3B GGUF models, designed to help users choose the most efficient quantization. The results show that Unsloth quants consistently provide the best balance of KLD performance versus disk space. The authors also clarify that frequent GGUF updates are due to quick issue publicization rather than errors.
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