Jobs · Management · California

Research Engineer, Materials Science

Google DeepMind · Mountain View, CA · 3 wk ago
HybridManagementFull-time

The role

To succeed in this role you will need to be passionate about advancing material science using machine learning and other computational techniques. As an embedded Research Engineer you will collaborate with other researchers and engineers to develop infrastructure for running experiments and help researchers explore new applications of AI and LLMs to materials science. The team is pioneering in many different domains so you will take part in exploratory work that enables validating early ideas, and work in a maturing area to deepen and build infrastructure to exploit a promising line of research. You will also contribute to the scientific knowledge and experience of the team with your own scientific domain knowledge.

  • Plan and perform rapid prototyping of machine learning techniques applied to problems in science.
  • Undertake exploratory analysis to inform experimentation and research directions.
  • Make improvements to model architectures and training procedures of machine learning models.
  • Implement tools, libraries and frameworks to speed up and enable new research.
  • Report and present software developments, experimental results and data analysis clearly and efficiently.
  • Collaborate with internal and external scientific domain experts.

About you

  • Research Engineers come from a diverse set of backgrounds, sometimes with degrees in Computer Science and sometimes with extensive experience with real problems, or both. In order to set you up for success as a Research Engineer at Google DeepMind, we look for the following skills and experience:
  • • Degree in computer science, electrical engineering, science, mathematics or equivalent experience.
  • • Experience applying software engineering principles in a scientific research environment.
  • • Knowledge of linear algebra, calculus and statistics equivalent to at least first-year university coursework.
  • • Experience exploring, analysing, and visualising large and noisy datasets.
  • • Experience using Jax, PyTorch, TensorFlow, NumPy, Pandas or similar ML/scientific libraries.
  • In addition, we also look for at least one of the following:
  • • Specific domain expertise in areas like inorganic chemistry, solid-state physics, or materials synthesis.
  • • Experience applying modern deep learning architectures (e.g., transformers, diffusion models) to chemistry or material science challenges (e.g. ML force fields).
  • • Experience running large-scale scientific simulations (e.g. molecular dynamics, computational chemistry simulations, etc.) on Cloud or HPC clusters.
  • • Experience developing custom LLM agents or tool-using systems.
  • • Experience with concurrent and distributed software algorithms and architectures.
  • • Masters or PhD in computer science, electrical engineering, science, mathematics or equivalent experience.

Pay

The US base salary range for this full-time position is between $141,000 - $202,000 + bonus + equity + benefits. Your recruiter can share more about the specific salary range for your targeted location during the hiring process. Note: In the event your application is successful and an offer of employment is made to you, any offer of employment will be conditional on the results of a background check, performed by a third party acting on our behalf. For more information on how we handle your data, please see our Applicant and Candidate Privacy Policy.

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