ECHO: A Hybrid RL Objective That Uses Terminal Feedback as Dense Supervision for CLI Agents
CLI agents are the closest thing language models have to an embodied setting: the model emits commands, the terminal executes them, and the returned stream -- stdout, errors, files, logs, and traces…
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