Description
The Battery Analytics team transforms data into actionable insights by combining deep battery domain expertise with statistical, quantitative, and AI/ML methodologies.
Minimum Qualifications
BS degree in Mechanical Engineering, Material Engineering, Electrical Engineering, Computer Science or relevant Experience with statistical analysis, data mining, or relevant
Preferred Qualifications
Master’s degree, PhD or equivalent job-related experience in Mechanical Engineering, Material Engineering, Electrical Engineering, Computer Science or relevant Proven experience in statistical analysis, data mining, and causal inference methodologies Advanced proficiency in big data processing, visualization, and automated workflow development using Python, R, or similar scripting languages Hands-on experience with machine learning algorithms including ensemble methods, probabilistic networks, association rules, clustering, regression, neural networks, and large language mode Strong analytical problem-solving abilities to address urgent ad-hoc requests by integrating engineering knowledge with advanced analytics and ML techniques across diverse data sources Demonstrated expertise in anomaly detection techniques for time series and multivariate dataset Self-motivated contributor who proactively collaborates across functions and develops innovative solutions beyond existing toolsets Excellent communication skills with ability to explain complex technical concepts (particularly causal inference) to diverse audiences including data scientists, design engineers, and business stakeholders Battery technology experience strongly preferred
Learn more about this Employer on their Career Site
