Sr. Staff AI Research Tlm - AI Systems

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

Lead a research team focused on advancing the state of the art in large-scale machine learning, specifically in LLM training and inference efficiency, post-training techniques, RL, and optimization. The role involves defining and executing a research roadmap, driving algorithmic innovations, optimizing ML systems, and translating research breakthroughs into customer-impacting capabilities on the Databricks AI platform. Emphasis on scaling, efficiency, and systems performance for foundation models.

What you'd actually do

  1. Define and lead independent research programs on foundation model efficiency, covering topics such as optimizer design, low-precision training/inference, scalable model architectures, and efficient adaptation methods.
  2. Oversee the design and execution of large-scale experiments, including benchmarking against state-of-the-art methods and evaluating trade-offs in quality, latency, throughput, and cost.
  3. Work hands-on with your team on high-quality, efficient code in Python and PyTorch for research implementation, rapid prototyping, and integration with Databricks’ production systems.
  4. Collaborate with distributed systems and infra teams to push the limits of distributed training, parallelism strategies, memory management, and hardware utilization for LLMs and other large models.
  5. Establish metrics, evaluation protocols, and best practices for scaling-focused research (e.g., training efficiency, inference cost, energy usage) and drive their adoption across Databricks AI.

Skills

Required

  • Leadership of a research team
  • Novel techniques for foundation model efficiency
  • Industry impact
  • Deep expertise in generative AI, LLMs, distributed ML systems, model optimization, or responsible AI
  • Scaling and efficiency for large-scale neural networks
  • Python programming
  • PyTorch programming
  • Research implementation
  • Experimentation
  • Translating research innovation into scalable product capabilities
  • Communication skills
  • Leadership skills
  • Stakeholder management skills
  • Influencing cross-functional roadmaps
  • Aligning research with business impact

Nice to have

  • Intersection of systems and ML
  • Distributed training frameworks
  • Compiler and kernel optimization for deep learning workloads
  • Memory-/compute-efficient model design
  • Industry and academic network in large-scale ML
  • Ongoing collaborations or service at top conferences in ML and systems
  • First-author publications at top ML/systems conferences (e.g., ICLR, ICML, NeurIPS, OSDI, SOSP, VLDB)

What the JD emphasized

  • strong track record of industry impact
  • strong emphasis on scaling and efficiency for large-scale neural networks
  • strong programming skills
  • high-quality, efficient code
  • push the limits of distributed training

Other signals

  • LLM training and inference efficiency
  • post-training, RL and inference efficiency, optimization, and scaling
  • algorithmic innovations for large-scale neural network training and inference
  • distributed training and RL, memory efficiency, and compute efficiency
  • foundation model efficiency