Research Scientist, Advanced Control

Meta Meta · Big Tech · Menlo Park, CA

Research Scientist role focused on developing advanced control strategies, particularly RL-based, for industrial data center operations to improve efficiency, reliability, and sustainability. The role involves defining roadmaps, leading cross-functional initiatives, and translating operational challenges into deployable solutions.

What you'd actually do

  1. Define and own the advanced control roadmap in IDC, building on the team's existing physical modeling capabilities
  2. Shape the vision for intelligent, autonomous data center operations from advisory recommendations to governed autonomy at fleet scale
  3. Lead projects from problem framing through validated, deployment-ready solutions, translating ambiguous operational challenges into well-scoped research with clear success criteria
  4. Develop RL-based control strategies that enable self-optimizing data center systems — improving thermal stability, energy efficiency, and operational reliability in transient conditions
  5. Shape advanced control strategies into deployable solutions that align with Meta's system architecture, operational constraints, and deployment requirements

Skills

Required

  • PhD in a science or engineering discipline
  • 8+ years of experience spanning advanced control (e.g., MPC, optimal control, adaptive control, etc.), applied reinforcement learning or AI-driven control, and critical infrastructure control systems
  • Technical leadership experience architecting and delivering research-to-production projects
  • Working knowledge of mechanical, electrical, and thermal systems in industrial or critical infrastructure environments
  • Demonstrated track record of leading interdisciplinary research and engineering initiatives across teams or organizations
  • Experience communicating technical strategy to both technical and non-technical audiences
  • Experience driving alignment in cross-functional, matrixed organizations

Nice to have

  • Experience in data centers or critical MEP (Mechanical, Electrical, Power) infrastructure
  • Experience with HVAC controls, Building Management Systems (BMS), or hardware-in-the-loop / software-in-the-loop validation
  • Familiarity with digital twins or physics-based simulation as training environments for control
  • Experience designing safety validation frameworks or advisory-to-autonomous control pipelines
  • Experience applying reinforcement learning to physical systems or industrial control problems
  • Familiarity with industrial control system architectures and the constraints they impose on control strategy design

What the JD emphasized

  • define and drive the roadmap
  • develop and deliver deployable, robust control strategies
  • develop RL-based control strategies
  • Shape advanced control strategies into deployable solutions
  • cross-functional initiatives
  • industrial control system vendors
  • fleet scale

Other signals

  • develops physics-based and ML models
  • define and drive the roadmap for intelligent control
  • develop and deliver deployable, robust control strategies
  • Develop RL-based control strategies that enable self-optimizing data center systems
  • Shape advanced control strategies into deployable solutions