Sr. Engineering Manager, AI Runtime

Databricks Databricks · Data AI · San Francisco, CA · Executive Engineering - Pipeline

Senior Engineering Manager for Databricks' AI Runtime (AIR) product, leading a team responsible for both the product experience and foundational infrastructure of AIR. The role involves shaping customer-facing capabilities, designing for scalability, extensibility, and performance of GPU training, and defining the technical roadmap. Requires experience in building and operating managed GPU training infrastructure at scale, familiarity with distributed training frameworks, and strong cross-functional leadership.

What you'd actually do

  1. Lead, mentor, and grow a high-performing engineering team responsible for the Custom Training product and its foundational infrastructure, including distributed training orchestration, cluster lifecycle, fault tolerance, and training efficiency.
  2. Define and own the product and technical roadmap for AIR, balancing customer experience, functionality, and foundational investments.
  3. Collaborate closely with product, research, platform, infrastructure teams, and customers to drive end-to-end delivery, from ideation and prioritization to launch and operation.
  4. Drive architectural decisions and product design for managed GPU training at scale.
  5. Build observability and reliability practices for long-running, multi-node training jobs, including checkpoint strategies, failure recovery, and operational runbooks.

Skills

Required

  • Software engineering experience
  • Engineering management experience
  • Building and operating managed GPU training infrastructure at scale
  • Distributed training frameworks (PyTorch, DeepSpeed, Composer, Megatron-LM)
  • Parallelism strategies (FSDP, tensor/pipeline parallelism)
  • Training resilience patterns (checkpointing, elastic training, automated failure recovery)
  • GPU performance fundamentals (NCCL, interconnect topologies, memory optimization)
  • Building platform products with clear SLAs
  • Cross-functional leadership
  • Collaboration and communication skills

Nice to have

  • BS/MS in Computer Science, Electrical Engineering, or related technical field

What the JD emphasized

  • Track record building and operating managed GPU training infrastructure at scale (100s/1000s GPUs)
  • Deep familiarity with distributed training frameworks (PyTorch, DeepSpeed, Composer, Megatron-LM) and parallelism strategies (FSDP, tensor/pipeline parallelism).
  • Experience with training resilience patterns: checkpointing, elastic training, and automated failure recovery for long-running jobs.
  • Understanding of GPU performance fundamentals including NCCL, interconnect topologies, and memory optimization.
  • Experience building platform products with clear SLAs where you've owned the customer experience, not just the backend.

Other signals

  • leading a team
  • owning product and technical roadmap
  • architectural decisions for managed GPU training at scale
  • building observability and reliability practices for long-running, multi-node training jobs
  • track record building and operating managed GPU training infrastructure at scale