At Databricks, we are passionate about enabling data teams to solve the world's toughest problems, from making the next mode of transportation a reality to accelerating the development of medical breakthroughs. We do this by building and running the world's best data and AI infrastructure platform so our customers can use deep data insights to improve their business
Databricks' AI Runtime (AIR) product provides enterprises with an API for training and fine-tuning deep learning and LLM models with on-demand GPUs. Whether it's a transformer model for drug discovery or a fine-tuned foundation model, customers use this team's training infrastructure to build state-of-the-art frontier models
As a Senior Engineering Manager, you will lead the team owning both the product experience and the foundational infrastructure of AIR. You'll shape customer-facing capabilities while designing for scalability, extensibility, and performance of GPU training and adjacent areas, collaborating closely across the platform, product, infrastructure, and research organizations
The impact you will have: 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
Define and own the product and technical roadmap for AIR, balancing customer experience, functionality, and foundational investments
Collaborate closely with product, research, platform, infrastructure teams, and customers to drive end-to-end delivery, from ideation and prioritization to launch and operation
Drive architectural decisions and product design for managed GPU training at scale
Advocate for customer needs through direct engagement, ensuring engineering decisions translate to clear product impact
Build observability and reliability practices for long-running, multi-node training jobs, including checkpoint strategies, failure recovery, and operational runbooks
Partner with recruiting to attract, hire, and develop top-tier engineering talent
What we look for: 8+ years of software engineering experience, with 3+ years in engineering management
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 b