Data & AI Scientist

StellantisAuburn Hills, MI

About The Position

The Data Scientist designs, develops, and deploys data-driven and AI-powered solutions that create measurable business value. This role translates complex business challenges into analytical frameworks, builds scalable models (statistical, machine learning, and generative AI), and partners with cross-functional teams to drive impactful outcomes.

Requirements

  • Bachelor’s degree in Business, Information Systems, Computer Science, or a related field.
  • Minimum 5 years of working experience in IT Systems
  • Proven experience as a Business Analyst within ICT / IT‑driven environments.
  • Strong requirements gathering, documentation, and stakeholder management skills.
  • Experience working with cross‑functional teams and agile or hybrid delivery models.
  • Excellent communication, analytical, and problem‑solving abilities.

Responsibilities

  • Partner with business stakeholders to define objectives, KPIs, constraints, and success criteria.
  • Frame problems into analytical and AI use cases (e.g., descriptive analytics, forecasting, optimization, NLP/GenAI, computer vision).
  • Develop hypotheses and recommend the most effective analytical approach.
  • Communicate insights, findings, and recommendations clearly to both technical and non-technical audiences.
  • Explore, profile, and assess data quality; identify gaps and collaborate with Data Engineers on remediation.
  • Design and implement feature engineering pipelines and reusable data transformations.
  • Ensure proper documentation, data lineage, and governance standards are followed.
  • Select appropriate algorithms, baselines, and evaluation metrics.
  • Design and execute experiments (A/B testing, back testing, offline validation).
  • Train, tune, and validate models while assessing robustness, bias, drift, and explainability.
  • Develop and evaluate Generative AI solutions (prompt engineering, RAG architectures, fine-tuning where applicable) with appropriate safety and quality controls.
  • Partner with Tech Leads and Data Engineers to productionize solutions (pipelines, CI/CD, model registry, monitoring).
  • Define and track model performance KPIs (accuracy, business impact, latency, cost).
  • Monitor models in production, including data quality, drift, and system performance.
  • Continuously improve models through iteration and retraining strategies.
  • Ensure adherence to Responsible AI standards, including documentation, traceability, privacy, and security.
  • Work closely with Data Engineers, Data Analysts, Product Owners, Tech Leads, and business stakeholders.
  • Coordinate with ICT, infrastructure, and security teams for data access, environments, deployment, and compliance.
  • Contribute to both Build (data ingestion, transformation, ML/AI/GenAI development) and Run (monitoring, incident management, continuous improvement) activities.
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