SlideChat (CVPR 2025)
github.com/uni-medical/slidechatFirst large vision-language assistant for gigapixel whole-slide pathology image understanding, released with the SlideInstruction dataset and SlideBench benchmark (uni-medical, Apache 2.0, 2025)
Sourced from
- Awesome AI for Science — github.com/uni-medical/slidechat
- GitHub — github.com/uni-medical/slidechat
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