AI Infrastructure Software Engineer — CosmosLab
Indexed description
Are you excited to explore new frontiers in AI? Join NVIDIA’s Cosmos Lab Infra team and take part in the innovation building the training infrastructure that supports our Physical AI world foundation models. Here is your opportunity to design, assemble, and improve the infrastructure for large-scale AI training, spanning pre-training, supervised fine-tuning (SFT), and reinforcement learning (RL) post-training. Embark on a journey where your work will be essential to influencing the future of AI!
What You'll Be Doing
- Create and implement the training infrastructure spanning pre-training, SFT, and RL post-training for Physical AI world foundation models. The work involves the framework and a comprehensive control plane across clusters to coordinate workloads efficiently.
- Develop and improve the pre-training and SFT pipelines — large-scale data loading, distributed training, and checkpointing — to achieve high throughput and scalability.
- Develop and improve the inference and evaluation stack, including the inference engine, inference/generation pipelines (which also support RL rollout), and evaluation pipelines. Use methods like continuous batching and KV-cache management to achieve high throughput and low latency.
- Build and improve the effective interaction and data flow among the RL system's roles (policy, rollout, reward, simulation) while investigating system-level optimization opportunities.
- Integrate and orchestrate simulation and robotics environments as RL environments — driving the simulation↔rollout↔training loop at scale.
- Build and refine the distributed training backend — sharding/parallelism, mixed precision, activation checkpointing, and memory/throughput optimization across many GPUs.
- Improve the efficiency, scalability, and resiliency of training and RL workloads — focusing on fault tolerance, fast/elastic restart, and throughput optimization under preemption and hardware failure.
- Define meaningful, actionable reliability and efficiency metrics to track and improve system reliability.
- Root cause, triage, and resolve failures from the application level down to the framework, GPU, and network/hardware level.
- 5+ years developing software infrastructure for large-scale AI or distributed systems.
- Bachelor's degree or higher in Computer Science or a related technical field (or equivalent experience).
- Strong debugging and triage skills across the stack — from AI application down to GPU/hardware behavior.
- Proven track record building and scaling large-scale distributed systems, ideally distributed training or inference.
- Hands-on experience with AI training and/or inference infrastructure — RL/post-training, training frameworks, or inference serving.
- Proficiency in Python (plus scripting), and solid software engineering practices: testing, defensive programming, version control, and CI.
- Excellent communication and collaboration skills; intellectual curiosity, problem-solving, and willingness.
- Experience building RL / post-training infrastructure — PPO/GRPO/DPO pipelines, rollout engines, and asynchronous RL.
- Background with building large-scale, production-grade pre-training / SFT infrastructure.
- Experience integrating simulation / robotics environments into training or RL loops — including vectorized environments and sim-to-real workflows.
- Comprehensive knowledge of DL framework internals — PyTorch (FSDP/DTensor) and Megatron or equivalent experience, distributed training, and related optimization techniques.
- Proficiency in C/C++/CUDA for performance-critical components and custom kernels.
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