A leadership role in battery research and development focused on electrolyte materials, combining experimental chemistry with AI-driven innovation to develop next-generation energy storage solutions.
Key Responsibilities
Lead complex electrolyte R&D programs focused on next-generation battery systems, ensuring alignment with safety, cyclability, and temperature performance requirements.
Manage multi-disciplinary teams of chemists, data scientists, and engineers to achieve innovation milestones.
Define the materials innovation roadmap related to electrolyte formulation and interfacial science.
Oversee experimental validation of battery components, including SEI engineering and additive optimization.
Generate high-quality, validated battery component data to guide AI model training.
Utilize molecular informatic tools to accelerate battery component optimization and integrate experimental data with AI-generated candidates.
Requirements
Ph.D. in Materials Science and Engineering, Chemical Engineering, Electrochemistry, or a closely related materials chemistry field.
Proven background as an electrochemical researcher and R D leader experienced in directing technical programs and managing multi-disciplinary research teams.
Deep expertise in fundamental materials chemistry, interfacial science, additive optimization, and Solid-Electrolyte Interphase (SEI) engineering.
Extensive experience in cell-level validation and advanced characterization techniques, demonstrating an ability to integrate new materials into prototype cells.
Demonstrated experience in data-driven experimentation and structuring chemistry data for AI model consumption.
Experience overseeing SEI Solid Electrolyte Interphase engineering and additive optimization programs, leveraging expertise in fundamental materials chemistry.
Experience leading cell-level validation and the integration of new electrolytes into prototype cells.
Ability to produce high-quality, experimentally validated battery component data, guiding AI model training by ensuring data quality, experimental reproducibility, and comprehensive parameter space coverage.
Experience utilizing molecular informatic tools to accelerate battery component optimization cycles, effectively bridging experimental data with AI-generated candidates.
Benefits & Perks
highly competitive salary
robust benefits package including comprehensive health coverage
attractive equity stock options program
opportunity to contribute to meaningful scientific projects with broad public impact
work in a dynamic, collaborative, and innovative environment
significant opportunities for professional growth and career development
access to state-of-the-art facilities and proprietary technologies