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How I Study AI - Learn AI Papers & Lectures the Easy Way

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MUSE: A Run-Centric Platform for Multimodal Unified Safety Evaluation of Large Language Models

Beginner
Zhongxi Wang, Yueqian Lin et al.Mar 3arXiv

MUSE is a new open-source platform that tests how safely AI models behave when you talk to them with text, sound, pictures, and video, not just text.

#MUSE#multimodal safety evaluation#red-teaming

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Synthetic Visual Genome 2: Extracting Large-scale Spatio-Temporal Scene Graphs from Videos

Beginner
Ziqi Gao, Jieyu Zhang et al.Feb 26arXiv

This paper builds a giant, automatically made video library called SVG2 that tells who is in a video, what they look like, and how they interact over time.

#video scene graph#spatio-temporal reasoning#panoptic segmentation

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WildGraphBench: Benchmarking GraphRAG with Wild-Source Corpora

Beginner
Pengyu Wang, Benfeng Xu et al.Feb 2arXiv

WildGraphBench is a new test that checks how well GraphRAG systems find and combine facts from messy, real-world web pages.

#GraphRAG#Retrieval-Augmented Generation#Wikipedia references

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