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Job Description
A Battery Algorithm Engineer responsible for developing physics-based models, machine learning algorithms, and digital twin systems to predict and optimize battery safety and performance in innovative AI-driven energy storage solutions.
Key Responsibilities
- Design and develop physics-based battery models and multi-physics simulations to represent cell behavior.
- Engineer and apply machine learning and deep learning algorithms for predictive modeling, safety assessment, and performance optimization.
- Build and integrate digital twin battery systems using real-time data to monitor and predict battery safety and performance.
- Ensure scalability and robustness of predictive models within big-data systems and infrastructure.
- Utilize computational tools like COMSOL Multiphysics and finite element analysis for complex modeling and simulation tasks.
Requirements
- Ph.D. in Materials Engineering or a closely related computational engineering field.
- Deep foundational knowledge and practical experience with physics-based battery modeling and computational battery modeling.
- Experience in applying Machine Learning (ML) and Deep Learning algorithms for predictive modeling and optimization, specifically using libraries such as TensorFlow and other neural network architectures.
- Proficiency in core programming languages Python and MATLAB.
- Experience designing and developing core physics-based battery models and multi-physics simulations that accurately represent cell behavior.
- Experience in engineering and applying ML/Deep Learning algorithms for predictive modeling, safety assessment, and performance optimization.
- Experience with algorithm infrastructure and architecting digital twin systems.
- Experience utilizing computational tools like COMSOL Multiphysics and finite element analysis (FEA) for complex modeling and simulation tasks.
- Ability to develop AI4Science algorithms that merge materials physics and computational science to solve complex battery challenges.
- Ability to design and develop the full lifecycle of predictive models that power digital twin battery systems.
- Experience integrating algorithms into big-data systems and infrastructure, ensuring models are scalable and robust.
- Knowledge of data science, materials physics, algorithm infrastructure, and AI models to ensure model validity and utility.
- Familiarity with professional software development practices, including version control using GitHub.
Benefits & Perks
A 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
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