TL;DR

Using SFT teaches models how to write code, but it is RL that is necessary to teach them what works. On the other hand, introducing RL in software engineering brings its own specific challenges: data availability, signal sparsity, and state tracking. In this post, we’ll break down how recent works address these challenges.

![Reinforcement Learning is Changing AI Coding Cover Image](color:transparent;background-size:cover;background-position:50% 50%;background-repeat:no-repeat;background-image:url(“/nextImageExportOptimizer/rl-blog-cover-image.ac318676-opt-10.WEBP”))

So far, the focus of RL driven improvements had been based on competitive coding. For example, in LeetCode-style tasks, the model works in a closed loop. It generally receives a clear problem statemen…

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