
VL-JEPA: A New Direction in Vision-Language Deep Learning — Advancing Multimodal Representation Learning
VL-JEPA overview VL-JEPA rethinks how we learn joint image-text representations by predicting high-level targets in embedding space rather than forcing direct pixel- or token-level reconstruction. In practice this means we train a context encoder to produce a compact latent that predicts a target latent produced from another view or modality







