The "RL repair loop" is iterative LLM prompting with stderr feedback, not reinforcement learning. There is no training code, no reward function, and no environment in the repo. The loop also freezes the scene spec and only regenerates code, so if the planner specified 12 objects that geometrically do not fit on screen, three repair attempts will not help.
The idea is apparently that a model that is bad at fixing its own mistakes might become better if you train it on this task using reinforcement learning.
Entire article reads as output from a well structured prompt. It's almost point for point style-wise when I ask for a summary for current repo changes before deciding to do the commit.
The idea is apparently that a model that is bad at fixing its own mistakes might become better if you train it on this task using reinforcement learning.