This chapter explores the foundational papers of clip and vision transformers, emphasizing the importance of pre-training a vision encoder with a text objective for building multi-modal models. The speakers delve into integrating the backbones of the vision encoder and language model, discussing training strategies, parameter trade-offs, and the challenges of evaluating benchmarks. They also mention the emergence of the Hallucine model as a new benchmark and share insights on dataset creation and experimentation.

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