
CurEvo: Curriculum-Guided Self-Evolution for Video Understanding
CurEvo introduces curriculum learning into self-supervised video understanding, addressing a core bottleneck in autonomous model training: uncontrolled difficulty scaling. By dynamically adjusting task complexity and evaluation criteria in lockstep with model competence, the framework sidesteps the weak optimization plaguing existing self-evolution approaches. This matters because video understanding remains computationally expensive and annotation-starved; structured self-improvement without human labels could reshape how foundation models scale to multimodal tasks, particularly for organizations building video AI without massive labeled datasets.58




























