AI Research Scientist — Agentic AI for Materials Discovery

Meta Meta · Big Tech · Redmond, WA +1

Research Scientist role focused on designing and building LLM-orchestrated multi-agent systems for autonomous materials discovery pipelines. This involves integrating agentic AI with computational tools, developing RAG systems, and collaborating with domain experts to accelerate discovery timelines. The role contributes to both production systems and published research.

What you'd actually do

  1. Design, implement, and optimize LLM-orchestrated multi-agent systems for autonomous materials discovery pipelines
  2. Build specialized AI sub-agents that operate within a closed-loop discovery framework
  3. Integrate agentic AI workflows with computational chemistry tools (DFT, MD, Monte Carlo) and HPC infrastructure
  4. Develop and fine-tune retrieval-augmented generation (RAG) systems over scientific literature corpora for real-time knowledge synthesis
  5. Evaluate and benchmark agent performance on materials discovery tasks — measuring accuracy, throughput, and synthetic viability of generated candidates

Skills

Required

  • LLM-orchestrated multi-agent systems
  • Python
  • ML frameworks (PyTorch, JAX)
  • Integrating external tools and APIs
  • Scientific applications
  • Retrieval-augmented generation
  • HPC job orchestration

Nice to have

  • Computational chemistry
  • Molecular simulation
  • Materials informatics
  • Atomistic simulation tools (VASP, Gaussian, LAMMPS, ASE)
  • Cheminformatics libraries
  • Crystal structure prediction
  • Molecular dynamics
  • Quantum chemistry workflows

What the JD emphasized

  • PhD in AI, Computer Science, Computational Chemistry, Materials Science, or related field
  • 2+ years of experience with large language models, prompt engineering, or agentic AI frameworks (e.g., React, tool-use agents, multi-agent orchestration)
  • Demonstrated programming skills in Python and experience with ML frameworks (PyTorch, JAX, or similar)
  • Demonstrated experience in building end-to-end AI systems that integrate external tools and APIs
  • Experience building multi-agent or LLM-orchestrated systems for scientific applications
  • Publications at peer-reviewed ML or domain conferences

Other signals

  • LLM-orchestrated multi-agent systems
  • autonomous materials discovery pipelines
  • compress discovery timelines from years to weeks
  • production systems and published research