Software Engineer, Systems ML Engineering

Meta Meta · Big Tech · Sunnyvale, CA

Staff Software Engineer on the Systems ML Engineering team, focused on building and scaling ML infrastructure and software systems for large-scale production AI workloads, including LLMs and generative AI. Responsibilities include architecting and owning components of the ML stack (training, serving, distributed computing, platform tooling), optimizing performance, defining SLOs, and collaborating with researchers and engineers. Requires 8+ years of experience in systems software, distributed computing, or ML infrastructure, with expertise in C++/Python, performance analysis, and ML frameworks like PyTorch. Experience with GPU computing and responsible AI practices is also required.

What you'd actually do

  1. Design and implement scalable ML systems infrastructure components, including distributed training frameworks, model serving pipelines, and ML platform tooling used across Meta's production AI workloads
  2. Lead technical design and architecture for major initiatives in the ML systems stack, evaluating trade-offs across performance, reliability, and engineering complexity
  3. Identify and resolve performance bottlenecks in distributed ML training and inference systems through instrumentation, profiling, and targeted optimization
  4. Define and drive service level objectives for ML infrastructure services, building dashboards, alerting, and runbooks to reduce mean time to mitigation during incidents
  5. Collaborate with machine learning researchers, product engineers, and infrastructure teams to translate model development requirements into robust, production-grade systems

Skills

Required

  • software engineering
  • systems software
  • distributed computing
  • ML infrastructure
  • large-scale distributed systems
  • training orchestration
  • model serving
  • data pipeline infrastructure
  • performance analysis
  • optimization
  • profiling
  • benchmarking
  • bottleneck identification
  • complex technical projects
  • cross-team coordination
  • milestone planning
  • risk mitigation
  • C++
  • Python
  • production ML systems
  • infrastructure systems
  • ML platform services
  • experiment tracking
  • model registries
  • feature stores
  • inference serving infrastructure
  • responsible, ethical AI practices
  • risk assessment
  • bias mitigation
  • quality and accuracy reviews
  • AI tools integration
  • workflow optimization
  • ML frameworks
  • PyTorch
  • distributed training paradigms
  • data parallelism
  • model parallelism
  • pipeline parallelism
  • GPU computing
  • CUDA programming
  • accelerator-aware systems optimization
  • large-scale AI workloads

Nice to have

  • open-source ML systems or distributed computing projects
  • prompt/context engineering
  • agent orchestration

What the JD emphasized

  • 8+ years of experience in software engineering with a focus on systems software, distributed computing, or ML infrastructure
  • Experience designing and implementing large-scale distributed systems, including components such as training orchestration, model serving, or data pipeline infrastructure
  • Experience with performance analysis and optimization of compute-intensive or distributed workloads, including profiling, benchmarking, and bottleneck identification
  • Experience leading end-to-end delivery of complex technical projects, including cross-team coordination, milestone planning, and risk mitigation
  • Experience with C++, Python, or equivalent systems programming languages applied to production ML or infrastructure systems
  • Experience building or operating ML platform services including experiment tracking, model registries, feature stores, or inference serving infrastructure
  • Experience adhering to and implementing responsible, ethical AI practices (e.g., risk assessment, bias mitigation, quality and accuracy reviews)
  • Demonstrated ability to integrate AI tools to optimize/redesign workflows and drive measurable impact (e.g., efficiency gains, quality improvements)
  • Experience with ML frameworks such as PyTorch, including distributed training paradigms such as data parallelism, model parallelism, or pipeline parallelism
  • Demonstrated ongoing AI skill development (e.g., prompt/context engineering, agent orchestration) and staying current with emerging AI technologies
  • Experience with GPU computing, CUDA programming, or accelerator-aware systems optimization for large-scale AI workloads

Other signals

  • building and scaling the infrastructure and software systems that power large-scale machine learning workloads
  • architect and own critical components of the ML systems stack, spanning training infrastructure, model serving, distributed computing frameworks, and ML platform tooling
  • work at the intersection of systems engineering and machine learning to drive reliability, performance, and efficiency for some of the world's most demanding AI workloads, including large language models and generative AI systems