AI Research Scientist —generative AI for Materials Discovery

Meta Meta · Big Tech · Redmond, WA +1

Research Scientist role focused on applying generative AI, including diffusion models and flow matching, to materials discovery for AR/VR devices and robotics. The role involves developing and deploying models for molecular and crystal structure generation, integrating with AI-driven discovery platforms and collaborating with AI agent scientists. Requires expertise in deep generative models, Python, PyTorch/JAX, and a strong publication record in ML or computational chemistry.

What you'd actually do

  1. Develop, train, and deploy generative models (diffusion models, flow matching, variational autoencoders, transformer-based architectures) for molecular and crystal structure generation, property-conditioned design, and crystal structure prediction (CSP)
  2. Design and implement reinforcement learning and alignment strategies (e.g., physics-informed reward signals from machine-learned interatomic potentials) to steer generative models toward physically stable and synthesizable candidates
  3. Build foundational models and scalable pretraining pipelines that unify generative and predictive learning across molecules and crystalline materials, handling both discrete atom types and continuous 3D geometries
  4. Collaborate closely with computational chemists to integrate first-principles calculations (DFT, force fields), molecular dynamics simulations, and domain-specific constraints into generative workflows
  5. Partner with AI agent scientists to embed generative molecular design capabilities into LLM-based multi-agent systems, enabling closed-loop autonomous experiment planning, candidate generation, and decision making

Skills

Required

  • Python
  • PyTorch or JAX
  • deep generative models
  • diffusion models
  • flow matching
  • variational autoencoders
  • transformer-based architectures
  • molecular and crystal structure generation
  • reinforcement learning
  • alignment strategies
  • computational chemistry
  • first-principles calculations
  • molecular dynamics simulations
  • LLM-based multi-agent systems
  • autonomous scientific discovery
  • generative modeling
  • materials science
  • large-scale molecular and crystal databases
  • data processing pipelines for chemical data
  • crystallography fundamentals
  • molecular representations
  • computational chemistry tools
  • simulation frameworks
  • crystal structure prediction (CSP) pipelines
  • machine-learned interatomic potentials
  • ML research
  • experimental chemistry
  • materials science
  • software engineering
  • foundation models
  • multimodal architectures
  • geometric deep learning
  • equivariant neural networks
  • graph neural networks

Nice to have

  • RLHF-style alignment techniques

What the JD emphasized

  • pioneer the application of generative AI
  • Working at the frontier of deep generative modeling, computational chemistry, and agentic AI
  • develop and deploy state-of-the-art models
  • tightly integrated into our AI-driven autonomous discovery platform
  • collaborating with computational chemists and AI agent scientists
  • build advanced prototypes, technologies, and toolsets
  • Develop, train, and deploy generative models
  • Design and implement reinforcement learning and alignment strategies
  • Build foundational models and scalable pretraining pipelines
  • Collaborate closely with computational chemists
  • Partner with AI agent scientists
  • Establish rigorous evaluation frameworks
  • Contribute to the architecture and roadmap of the autonomous materials-discovery platform
  • Ph.D. degree in Machine Learning, Computational Chemistry, Materials Science, Chemical Engineering, Physics, or a closely related technical field
  • 3+ years of research experience in generative modeling applied to molecular systems, crystal structures, or materials science (academic or industry)
  • Demonstrated expertise in deep generative models
  • Track record of first-author publications in top-tier ML or computational chemistry venues
  • Experience integrating ML models into agentic AI frameworks or LLM-based multi-agent systems for autonomous scientific discovery
  • Demonstrated ability to collaborate across disciplines

Other signals

  • generative AI
  • deep generative modeling
  • agentic AI
  • autonomous discovery pipelines
  • foundation models