What do you think of higgsfield supercomputer and Invideo agent one,the conversational ai copilot approach for video?
Summary
Discusses the conversational AI copilot approach for video creation, using Higgsfield supercomputer and Invideo Agent One as examples, and questions whether this orchestrated workflow is more valuable than using underlying models directly.
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