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对话阶跃星辰段楠:“我们可能正触及 Diffusion 能力上限”
AI科技大本营· 2025-05-20 01:02
Core Viewpoint - The article discusses the advancements and future potential of video generation models, emphasizing the need for deeper understanding capabilities in visual AI, moving beyond mere generation to true comprehension [1][5][4]. Group 1: Video Generation Models - The team at Jumpscale has open-sourced two significant video generation models: Step-Video-T2V and Step-Video-TI2V, both with 30 billion parameters, which have garnered considerable attention in the AI video generation field [1][12]. - Current diffusion video models, even at 30 billion parameters, show limited generalization capabilities compared to language models, but possess strong memory capabilities [5][26]. - The future of video generation models may involve a shift from mere generation to models that possess deep visual understanding, requiring a change in learning paradigms from mapping learning to causal prediction learning [5][20]. Group 2: Challenges and Innovations - The article outlines six major challenges in AI-generated content (AIGC), focusing on data quality, efficiency, controllability, and the need for high-quality data [39][32]. - The integration of autoregressive and diffusion models is seen as a promising direction for enhancing video generation and understanding capabilities [21][20]. - The importance of high-quality, diverse natural data is highlighted as a critical factor in building robust foundational models, rather than relying heavily on synthetic data [14][16]. Group 3: Future Predictions - Predictions indicate that foundational visual models with deeper understanding capabilities may emerge within the next 1-2 years, potentially leading to a "GPT-3 moment" in the visual domain [4][36]. - The convergence of video generation with embodied intelligence and robotics is anticipated, providing essential visual understanding capabilities for future AI applications [37][42]. - The article suggests that the future of AIGC will enable individuals to easily create high-quality content, democratizing content creation [38][48].