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At General Motors, our product teams are redefining mobility. Through a human-centered design process, we create vehicles and experiences that are designed not just to be seen, but to be felt. We’re turning today’s impossible into tomorrow’s standard —from breakthrough hardware and battery systems to intuitive design, intelligent software, and next-generation safety and entertainment features. Every day, our products move millions of people as we aim to make driving safer, smarter, and more connected, shaping the future of transportation on a global scale. Are you passionate about accelerating the future of autonomous driving? Join the Embodied AI team at General Motors. Our team is developing and deploying machine learning solutions that support safe and reliable autonomous vehicle behavior across real-world scenarios. As a Senior ML Infra Engineer, you will work on the core systems that enable rapid dataset generation, training, evaluation and iteration of our most advanced Autonomous Driving models. From enabling large foundational driving models to distilling multi-stage production deployed models, your goal will be to dramatically accelerate the machine learning development cycle from one modeling hypothesis to next. You will develop model training pipelines that are performant, easy to use, and exceptionally reliable. Your success will be measured by the velocity and impact of the ML models that rely on the scalable, intuitive, and high‑performance training platforms you help create.
Job Responsibility:
Design, implement, and deploy scalable platforms and tools supporting machine learning training and evaluation workflows across GM
Drive complex technical projects with strong ownership of implementation, code quality, and system reliability
Contribute to technical design discussions and architectural decisions while collaborating with senior engineers and technical leads
Work closely with partner teams to ensure platforms meet real-world ML development needs and maximize adoption
Identify technical improvements and help prioritize platform investments to improve performance, reliability, and developer productivity
Contribute to a strong engineering culture through high-quality code reviews, documentation, and operational excellence
Support onboarding and mentoring of junior engineers and interns
Requirements:
3+ years of experience working on large-scale distributed systems, applications, or ML infrastructure
Experience designing robust services or frameworks with durable, well-designed APIs
Solid understanding of machine learning workflows and hands-on experience applying ML systems in production environments
Experience building reliable, high-performance, and cost-efficient systems on modern cloud infrastructure
Practical experience across the ML development lifecycle, including model training, deployment, and MLOps practices
Strong cross-functional collaboration skills across teams and organizations
Strong coding skills in Python or C++
Interest in autonomous driving and large-scale ML systems
BS, MS, or PhD in Computer Science, Mathematics, or equivalent practical experience
Nice to have:
Experience with distributed training methodologies
Experience scaling ML training across large GPU/CPU clusters or specialized accelerators
Familiarity with deep learning frameworks such as PyTorch or TensorFlow
Experience with performance profiling and training optimization techniques and their impact on model convergence and performance
Experience with advanced build systems such as Bazel, Buck, Blaze, or CMake
Proficiency with containerization and orchestration technologies (e.g., Docker, Kubernetes)