Anti Unification
"Anti-unification," or the creation of unified models across diverse tasks, is a burgeoning research area aiming to improve efficiency and generalization in machine learning. Current efforts focus on developing unified frameworks for various tasks within specific domains (e.g., multimodal understanding, object detection, medical image analysis) often leveraging transformer architectures, contrastive learning, and diffusion models. This pursuit of unification promises to reduce the need for task-specific models, leading to more efficient and robust AI systems with broader applicability across numerous scientific and practical applications.
Papers
CAD-MLLM: Unifying Multimodality-Conditioned CAD Generation With MLLM
Jingwei Xu, Chenyu Wang, Zibo Zhao, Wen Liu, Yi Ma, Shenghua Gao
CUIfy the XR: An Open-Source Package to Embed LLM-powered Conversational Agents in XR
Kadir Burak Buldu, Süleyman Özdel, Ka Hei Carrie Lau, Mengdi Wang, Daniel Saad, Sofie Schönborn, Auxane Boch, Enkelejda Kasneci, Efe Bozkir