Compare your current skills to what this opportunity needs—we'll show you what you already have and what could strengthen your application.
Job Description
Sr. Staff Data Scientist - Machine Learning & AI (Quality, Vehicle & Engineering Analytics) Stellantis United States, Michigan, Auburn Hills Jun 17, 2026
About the
Role:
We are looking for a Senior Staff Data Scientist (ML/AI) to serve as a technical leader, architect, and individual contributor within the Machine Learning & AI Engineering team at Stellantis. This role sits at the intersection of machine learning, advanced analytics, experimentation, and large-scale vehicle/IoT data systems. You will define and influence how ML and AI are used across vehicle quality, engineering systems, and customer experience outcomes. This is a high-impact, senior IC role (Staff/Principal level influence) responsible for shaping technical strategy, designing scalable ML systems, and driving measurable business outcomes such as quality improvement, warranty reduction, and customer experience enhancement.
What You Will Do:
Technical Leadership & ML Strategy (Staff-Level Ownership) Define and evolve the ML/AI architecture and framework supporting quality, engineering, and vehicle analytics across the organization
Set technical direction for: Machine learning systems
Experimentation platforms
Data science architecture Act as a trusted technical advisor to senior leadership on: Model feasibility
Trade-offs (accuracy, scalability, cost, interpretability)
Business impact of ML/AI initiatives Influence roadmap decisions across engineering and product organizations Advanced Machine Learning & Statistical Modeling Develop and deploy predictive, prescriptive, and causal models using: Vehicle data
IoT sensor data
Enterprise datasets Apply advanced techniques including: Statistical modeling
Machine learning algorithms
Deep learning / neural networks Lead root cause analysis for vehicle quality, performance, and system failures
Design and build LLM-based systems and agentic AI solutions for engineering and quality use cases Data Science Platform & Scalable Systems Architect and guide development of large-scale distributed data and ML systems
Build and scale analytics pipelines using Spark-based distributed processing frameworks
Lead ML model lifecycle management, including: Training
Validation
Deployment
Monitoring in production Ensure models and systems are: Explainable
Reliable
Production-ready
Compliant with automotive/regulatory standards Experimentation & Product Impact Own and evolve the experimentation framework/platform for safe, scalable testing of vehicle and software features
Design statistically sound experiments (A/B tests and beyond)
Translate experimental results into clear product and engineering decisions
Drive measurable business outcomes including: Warranty cost reduction
Improved product quality
Enhanced customer experience
Revenue-impacting insights Influence, Mentorship & Knowledge Sharing Mentor senior and mid-level data scientists, raising technical standards across the team
Help teams with: Problem formulation
Research design
Statistical interpretation Contribute to internal knowledge systems and external-facing technical content (e.g., blogs or papers)
Serve as a cross-functional leader bridging engineering, product, and executive teams What Success Looks Like (Top Performers) Strong candidates will demonstrate: Proven impact from deployed ML systems or production analytics products
Quantifiable improvements in: Vehicle quality
Warranty reduction
Customer experience metrics Ability to influence technical strategy beyond their immediate team
Strong communication skills with executive and non-technical stakeholders Demonstrated ability to turn complex analysis into business decisions and outcomes
Basic Qualifications:
Bachelor's degree in Computer Science, Computer Engineering, Electrical Engineering, or a related field
A minimum of 8 years of experience in data science, advanced analytics, or machine learning, including a minimum of 5 years of hands-on experience with Databricks, Palantir, Snowflake, or AWS SageMaker
Expert-level proficiency in: Python (or R)
SQL Strong foundation in: Machine learning algorithms
Statistical modeling
Neural networks / deep learning Experience building ML solutions on distributed systems (e.g., Spark)
Preferred Qualifications:
Master's degree in Computer Science, Computer Engineering, Electrical Engineering, or a related field
Experience with: Large Language Models (LLMs)
Fine-tuning foundation models
Agentic AI systems Experience building ML solutions in engineering, automotive, propulsion, or battery systems Strong understanding of vehicle quality (QA), reliability, or manufacturing analytics Experience working in high-scale enterprise or regulated environments About the
Role:
We are looking for a Senior Staff Data Scientist (ML/AI) to serve as a technical leader, architect, and individual contributor within the Machine Learning & AI Engineering team at Stellantis. This role sits at the intersection of machine learning, advanced analytics, experimentation, and large-scale vehicle/IoT data systems. You will define and influence how ML and AI are used across vehicle quality, engineering systems, and customer experience outcomes. This is a high-impact, senior IC role (Staff/Principal level influence) responsible for shaping technical strategy, designing scalable ML systems, and driving measurable business outcomes such as quality improvement, warranty reduction, and customer experience enhancement.
What You Will Do:
Technical Leadership & ML Strategy (Staff-Level Ownership) Define and evolve the ML/AI architecture and framework supporting quality, engineering, and vehicle analytics across the organization
Set technical direction for: Machine learning systems
Experimentation platforms
Data science architecture Act as a trusted technical advisor to senior leadership on: Model feasibility
Trade-offs (accuracy, scalability, cost, interpretability)
Business impact of ML/AI initiatives Influence roadmap decisions across engineering and product organizations Advanced Machine Learning & Statistical Modeling Develop and deploy predictive, prescriptive, and causal models using: Vehicle data
IoT sensor data
Enterprise datasets Apply advanced techniques including: Statistical modeling
Machine learning algorithms
Deep learning / neural networks Lead root cause analysis for vehicle quality, performance, and system failures
Design and build LLM-based systems and agentic AI solutions for engineering and quality use cases Data Science Platform & Scalable Systems Architect and guide development of large-scale distributed data and ML systems
Build and scale analytics pipelines using Spark-based distributed processing frameworks
Lead ML model lifecycle management, including: Training
Validation
Deployment
Monitoring in production Ensure models and systems are: Explainable
Reliable
Production-ready
Compliant with automotive/regulatory standards Experimentation & Product Impact Own and evolve the experimentation framework/platform for safe, scalable testing of vehicle and software features
Design statistically sound experiments (A/B tests and beyond)
Translate experimental results into clear product and engineering decisions
Drive measurable business outcomes including: Warranty cost reduction
Improved product quality
Enhanced customer experience
Revenue-impacting insights Influence, Mentorship & Knowledge Sharing Mentor senior and mid-level data scientists, raising technical standards across the team
Help teams with: Problem formulation
Research design
Statistical interpretation Contribute to internal knowledge systems and external-facing technical content (e.g., blogs or papers)
Serve as a cross-functional leader bridging engineering, product, and executive teams What Success Looks Like (Top Performers) Strong candidates will demonstrate: Proven impact from deployed ML systems or production analytics products
Quantifiable improvements in: Vehicle quality
Warranty reduction
Customer experience metrics Ability to influence technical strategy beyond their immediate team
Strong communication skills with executive and non-technical stakeholders Demonstrated ability to turn complex analysis into business decisions and outcomes At Stellantis, we assess candidates based on qualifications, merit, and business needs. We welcome applications from all people without regard to sex, age, ethnicity, nationality, religion, sexual orientation, disability, or any characteristic protected by law. We believe that diverse teams reflect our identity as a global company, enabling us to better address the evolving needs of our customers and care for our future.