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Applied AI Engineer, Codex Core Agent

OpenAI · San Francisco

$230k–385k/yr On-site
LatencyPythonOpenAI APIEval harnessesLLM-as-judgeObservabilityTool useMulti-agentOrchestrationThroughput

About the Team The Codex Core Agent team builds the kernel of Codex. We own making the agent better, accelerating research, and making those improvements real in production for our users. That means working across the systems that make Codex actually function as an agent in the real world: the production performance envelope around tokens, latency, reliability, cost, and capacity; the core execution loop and interfaces that turn models into useful behavior; the shared infrastructure that enables other teams to build on Codex; and the feedback loops that turn real-world usage into better models and better agent behavior over time. About the Role We’re looking for applied AI engineers to help bring Codex agents from impressive demos to dependable tools. This role is about improving agent performance on real software engineering tasks and closing the gap between research capability and real-world usefulness. You’ll work closely with research, infrastructure, and product to ensure agents are not just powerful, but useful, steerable, and reliable in practice. The job is not only to improve model behavior in isolation, but to turn those improvements into measurable gains in solve rate, usefulness, and economic value for users. What You’ll Do - Design and iterate on agent behaviors across real-world coding tasks and long-horizon workflows. - Work closely with research to develop and run evals to measure agent performance, regressions, failure modes, and edge cases. - Improve performance through prompting, tool-use strategies, context construction, and model-facing experimentation. - Analyze failures in production and systematically improve robustness and reliability. - Build feedback loops and data systems that get better real-task data into evaluation and research. - Work with product teams to shape user-facing agent experiences and the interfaces the agent depends on. - Help define what “good” looks like for agents completing complex tasks end-to-en

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