Summary
In this chapter, HuggingGPT concepts led to solving the classification problem of cars in the fog and night that arose in Chapter 18, Hugging Face AutoTrain: Training Vision Models without Coding. HuggingGPT’s innovative approach uses ChatGPT as a controller, managing the comprehensive library of Hugging Face models.
We first defined F-AGI as the ability to attain human-level functionality for a real-life task in a closed ecosystem. For example, a computer vision AI agent can replace a human fire-alert watcher 24/7 over vast territories. The chapter addressed practical computer vision abilities that enhance human activity without threatening jobs or getting involved in politics.
Then, the chapter notebook downloaded a validation set containing an easy, difficult, and very difficult image containing a car. The goal was to find a way to identify a vehicle in a very difficult image simulating a video frame of an assisted driving AI agent.
We ran HuggingGPT...