About The Position

Join our physical sciences team to contribute to developing ML- and agent-driven infrastructure that enables Lila’s scientific superintelligence to autonomously construct, execute, and interpret complex physics simulations and apply these to real-world scientific problems in materials science and chemistry. You will work on projects involving one of these areas: enabling AI agents to reason over and orchestrate simulations, developing ML methods to accelerate atomistic simulations, and leveraging agentic simulations for applications in materials discovery.

Requirements

  • Currently enrolled in an MS or PhD program in CS, Materials Science, Chemistry, Chemical Engineering, Physics, or a related field (exceptional BS candidates with research experience considered)
  • Proficiency in Python, deep learning frameworks and end-to-end workflow deployment
  • Evidence of applied ML research work in physical sciences including method development, model training and evaluation, and sound code practices
  • Strong communication and presentation skills, capable of conveying technical information in a clear and thorough manner
  • Eager to work with highly skilled and dynamic teams in a fast-paced, entrepreneurial, and technical setting

Nice To Haves

  • Prior experience and publications in one or more of these areas: ML interatomic potential development, LLMs for materials science and chemistry, Generative models for materials, High-throughput computational materials discovery
  • Contributions to open-source simulation or ML infrastructure and software
  • Familiarity with materials science simulation codes and workflow orchestration frameworks

Responsibilities

  • Contribute to projects involving one of these areas: AI agents for simulations, ML models for atomistic simulations, and in silico materials discovery.
  • Develop methods and workflows for in silico materials discovery that connect physics-based simulations, generative models, and agentic AI systems.
  • Build intelligent pipelines where AI agents can design, launch, interpret, and refine simulations autonomously.
  • Design new methods to accelerate simulations with ML-based surrogate models.
  • Collaborate with computational scientists, machine learning experts, and platform engineers to integrate in silico discovery pipelines into Lila’s broader scientific superintelligence ecosystem.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service