Senior Software Engineer, RL Post-Training Frameworks

Posted 6 Days Ago
Be an Early Applicant
2 Locations
Remote
Senior level
Artificial Intelligence • Computer Vision • Hardware • Robotics • Metaverse
The Role
Design and build scalable RL post-training infrastructure spanning single-GPU experimentation to multi-thousand-node production. Optimize training-inference-rollout loops across GPUs/CPUs/LPUs, improve open-source RL frameworks, ensure fault tolerance, elastic scaling, fast restarts, and collaborate with hardware, networking, and compiler teams to enable high-performance RL workloads.
Summary Generated by Built In

Reinforcement learning post-training is driving some of the most significant capability gains in AI today. It is the process that teaches a model to reason through hard problems, follow complex instructions, and act as an autonomous agent. It is also one of the hardest infrastructure challenges in the field. RL requires inference, rollout generation, and training running in a continuous loop. The rollout step is what makes it hard: the model must interact with environments, tools, and other models to produce the signal that drives learning. Coordinating actor, critic, and reward models across heterogeneous hardware at scale pushes the limits of what distributed systems can do.

NVIDIA is building an RL Frameworks engineering team to develop the open-source tools and infrastructure that AI researchers and post-training teams depend on. The team spans the full software stack, from collaborating closely with the researchers and labs pushing the frontier, to contributing to RL frameworks like VeRL, Miles, and TorchTitan, to improving the distributed runtimes they depend on, including Ray and Monarch. Whether your strength is working with researchers to understand and address their need optimizing deep learning frameworks, or building distributed infrastructure, we want to hear from you. Come join us to build the systems that enable the next generation of AI.

What you will be doing:

You will architect and build RL post-training infrastructure that scales efficiently from experimentation on a single GPU to production across thousands of nodes. This means tuning RL training-inference-rollout loops on GPUs, CPUs, and LPUs for performance where it matters, contributing to and improving the performance and usability of open-source RL frameworks, and partnering with the teams who own them. The role also spans fault tolerance, elastic scaling, and fast restarts so long-running distributed training jobs survive failures, stragglers, and resource contention.

Beyond GPU-accelerated training, this work includes partnering with teams building CPU-driven rollout workloads, including tool-use, code execution, and agentic environments, supplying the systems and framework engineering needed to run them efficiently alongside GPU- or LPU-accelerated generation and GPU-accelerated training. It also means advocating for researcher and partner needs with NVIDIA's networking, math library, and compiler teams so the capabilities RL workloads require get prioritized and delivered, and working with hardware teams to take advantage of next-generation hardware capabilities in post-training workloads.

What we need to see:

  • MS or PhD in Computer Science, Computer Engineering, or a related field (or equivalent experience)

  • 5+ years of professional experience in distributed systems, high-performance computing, deep learning infrastructure, or ML systems engineering

  • Strong proficiency in Python and C/C++

  • Demonstrated experience building or contributing to large-scale distributed systems or runtime frameworks in production at a frontier AI lab, hyperscaler, or major technology company

  • Strong verbal and written communication skills and the ability to collaborate across organizational and geographic boundaries

Depth in one or more of the following technical areas:

  • Reinforcement learning for LLM post-training (RLHF, PPO, GRPO, DPO, reward modeling), including how algorithms map to distributed execution and the systems challenges they create (heterogeneous placement, rollouts, environment execution, resharding between training and generation)

  • PyTorch internals, including distributed training primitives (FSDP, tensor parallelism, pipeline parallelism) and their composition

  • Kubernetes runtime internals (container lifecycle, pod scheduling, resource quotas, GPU allocation)

  • End-to-end distributed systems design (service boundaries, data flows, consistency models, failure modes, recovery approaches)

Experience in any of the following areas is a plus:

  • Deep expertise in networking (NCCL, NVLink, InfiniBand), advanced multi-dimensional parallelisms (Megatron-LM, FSDP2, TP/DP/PP, MoE), or memory optimizations (quantization-aware training, mixed precision)

  • Experience integrating high-performance inference engines (vLLM, SGLang, TensorRT-LLM) into RL training loops for GPU-accelerated rollout

  • Strong background in actor- and task-based distributed programming (Ray, Monarch, or comparable systems)

  • Familiarity with multi-turn training, multi-agent co-evolution, or VLM post-training

Ways to stand out from the crowd:

  • Open-source contributions to RL post-training or distributed training projects (e.g., VeRL, Miles, TorchTitan, OpenRLHF, NeMo-Aligner, DeepSpeed-Chat), including significant work on framework internals where applicable

  • Kubernetes work beyond routine operations (custom operators, GPU device plugins, or scheduling contributions)

  • Direct experience operating frontier-scale training (RL post-training at thousands of GPUs and/or large-scale LLM or multimodal pre-training)

  • Hands-on experience with production distributed failures at scale (stragglers, resource contention, hardware faults)

Widely considered to be one of the technology world’s most desirable employers, NVIDIA offers highly competitive salaries and a comprehensive benefits package. As you plan your future, see what we can offer to you and your family www.nvidiabenefits.com/

Skills Required

  • MS or PhD in Computer Science, Computer Engineering, or related field (or equivalent experience)
  • 5+ years professional experience in distributed systems, high-performance computing, deep learning infrastructure, or ML systems engineering
  • Strong proficiency in Python and C/C++
  • Experience building or contributing to large-scale distributed systems or runtime frameworks in production at a frontier AI lab, hyperscaler, or major technology company
  • Strong verbal and written communication skills and ability to collaborate across organizational and geographic boundaries
  • Depth in reinforcement learning for LLM post-training (RLHF, PPO, GRPO, DPO, reward modeling) and mapping algorithms to distributed execution
  • Depth in PyTorch internals, including distributed training primitives (FSDP, tensor parallelism, pipeline parallelism)
  • Depth in Kubernetes runtime internals (container lifecycle, pod scheduling, resource quotas, GPU allocation)
  • Depth in end-to-end distributed systems design (service boundaries, data flows, consistency models, failure modes, recovery)
  • Deep networking expertise (NCCL, NVLink, InfiniBand), advanced parallelisms (Megatron-LM, FSDP2, TP/DP/PP, MoE), or memory optimizations (quantization-aware training, mixed precision)
  • Experience integrating high-performance inference engines (vLLM, SGLang, TensorRT-LLM) into RL training loops
  • Background in actor- and task-based distributed programming (Ray, Monarch, or comparable systems)
  • Familiarity with multi-turn training, multi-agent co-evolution, or VLM post-training
  • Open-source contributions to RL post-training or distributed training projects (VeRL, Miles, TorchTitan, OpenRLHF, NeMo-Aligner, DeepSpeed-Chat)
  • Kubernetes contributions beyond routine operations (custom operators, GPU device plugins, scheduling)
  • Direct experience operating frontier-scale training (thousands of GPUs) and handling production distributed failures

NVIDIA Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about NVIDIA and has not been reviewed or approved by NVIDIA.

  • Equity Value & Accessibility Equity awards and a discounted ESPP are highlighted as core parts of total compensation, enabling employees to share in the company’s success. Stock-based compensation and the two-year lookback ESPP are consistently described as especially valuable.
  • Healthcare Strength Health coverage is portrayed as robust, with comprehensive medical, dental, and vision options alongside mental health support and on-site care resources. Employer HSA contributions and wellness perks reinforce the depth of the offering.
  • Retirement Support Retirement programs are depicted as strong, featuring a meaningful 401(k) match with Roth options and support for Mega Backdoor Roth contributions. These elements position long-term savings as a notable advantage of the total rewards package.

NVIDIA Insights

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The Company
HQ: Santa Clara, CA
21,960 Employees
Year Founded: 1993

What We Do

NVIDIA’s invention of the GPU in 1999 sparked the growth of the PC gaming market, redefined modern computer graphics, and revolutionized parallel computing. More recently, GPU deep learning ignited modern AI — the next era of computing — with the GPU acting as the brain of computers, robots, and self-driving cars that can perceive and understand the world. Today, NVIDIA is increasingly known as “the AI computing company.”

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