Digital Optimus is the software counterpart to our physical humanoid, designed to interact with computer interfaces and perform long-horizon agentic behaviors. Our approach is modeled after real-time control policies rather than screenshot-based VLM agents, with the larger goal of integrating with Tesla's broader AI ecosystem. We're seeking an ML/RL Infra Engineer to build scalable, reliable infrastructure that powers these agents and enables seamless, high-volume rollouts for model evaluation & RL training. Top candidates will have deep experience in large-scale ML systems, high-performance training, and edge deployment, though evidence of exceptional ability matters more than relevance alone.
Design & implement scalable distributed training infrastructure for large agentic models, supporting imitation learning, reinforcement learning (online & offline), and long-horizon training workflows
Build high-fidelity, ultra-realistic training & simulation environments capable of handling complex, interruptible, long-context agent trajectories at massive scale
Optimize ML and RL training pipelines for throughput, cost-efficiency, and reliability across multi-node GPU clusters
Implement advanced model serving, quantization, distillation, and deployment strategies tailored for Tesla's hardware platforms
Collaborate with research, AI engineering, and production teams to productionize agent systems and integrate them with Tesla's autonomy (FSD) and robotics (Optimus) platforms
Design systems for efficient context management, checkpointing, and orchestration of long-horizon agentic workloads
Continuously improve developer velocity through better tooling, CI/CD for ML, experiment tracking, and reproducible training environments
Experience in ML infrastructure, large-scale distributed systems, or high-performance computing for deep learning/reinforcement learning
Strong expertise with training frameworks (PyTorch, JAX, DeepSpeed, FSDP, Megatron, etc.) and distributed training at scale
Deep knowledge of GPU/accelerator optimization, model parallelism, quantization, and edge deployment
Proficiency in Python, Kubernetes, cloud infrastructure (or on-prem clusters), and modern MLOps practices
Experience building data pipelines and simulation environments for reinforcement learning or robotics applications is highly valued
Strong software engineering fundamentals, system design skills, and a passion for building reliable, observable, and high-performance ML platforms
Ability to work effectively in a fast-paced, cross-functional environment with researchers and engineers
Benefits
Along with competitive pay, as a full-time Tesla employee, you are eligible for the following benefits at day 1 of hire:
Expected Compensation
$140,000 - $252,000/annual salary + cash and stock awards + benefits
Pay offered may vary depending on multiple individualized factors, including market location, job-related knowledge, skills, and experience. The total compensation package for this position may also include other elements dependent on the position offered. Details of participation in these benefit plans will be provided if an employee receives an offer of employment.