Agent RL Infra Engineer
Role details
Job location
Tech stack
Job description
The work splits between creating enterprise-ready RL capabilities and partnering with agent teams to put them into practice.
Building RL cookbooks and environments:
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Evaluate and adapt democratized RL approaches into reusable cookbooks and blueprints so agent developers can integrate self-improvement loops (GRPO, DPO, PPO, RLAIF) on their own
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Design verifiable reward environments building on NeMo Gym, extending to domain-specific environments for internal use cases
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Operationalize NVIDIA and third-party training backends as production services inside Sandbox
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Integrate with NeMo Microservices (Curator, Customizer, Evaluator, Guardrails) to enable end-to-end data flywheel workflows for RL
Infrastructure, reliability, and collaboration:
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Lead data curation and active learning strategies to continuously improve training data quality
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Design RL training loops for agent self-improvement: reward modeling, policy optimization, safety constraints
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Integrate with AI Factory GPU infrastructure for throughput, data locality, and multi-node training
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Build observability for training runs and ensure workloads meet security and governance requirements
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Collaborate with platform, security, agent infrastructure, and internal customer teams on safe deployment of training outputs
Requirements
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MS in CS, ML, or related field (or equivalent experience)
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10+ years of experience
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Experience operationalizing fine-tuning methods (LoRA, SFT) and especially RL techniques (DPO, GRPO, PPO, RLAIF) into reusable cookbooks and self-service workflows
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Familiarity with distributed training frameworks (e.g., Megatron, NeMo, DeepSpeed, FSDP, HF Accelerate) and ML ops skills covering pipeline automation, job orchestration, and GPU cluster management are important here
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Proficiency in Python, Go, Rust, or similar
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Background in CS, ML, or related field through formal education or equivalent experience
Ways to stand out from the crowd:
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Building RL environments or training recipes that other teams consumed as self-service capabilities
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Familiarity with NVIDIA infrastructure (DGX, AI Factory, NVLink/InfiniBand), NeMo Microservices, or the evolving RL-for-agents ecosystem (rLLM, Agent Lightning, HUD, OpenRLHF, SkyRL)
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Experience with data curation, active learning, continuous learning loops, or data flywheel architectures also valued
Benefits & conditions
Your base salary will be determined based on your location, experience, and the pay of employees in similar positions. The base salary range is 224,000 USD - 356,500 USD.