AI/ML Engineer – (3-5 Years of experience in AI/ML, Automotive Data, DevOps)
Stellantis
- Location:
- Bengaluru
- Posted:
- 6 Jun 2026
- Listed on:
- en-in.whatjobs.com
More in Karnataka Private Sector
Job description
Job Title: AI/ML Engineer – Automotive Data, DevOps & Developer ProductivityWe are looking for an AI/ML Engineer with around 4 years of experience, preferably in the automotive domain, to support the design, development, deployment, and maintenance of AI/ML solutions for connected, embedded, or vehicle-related applications. The ideal candidate should have hands-on experience in machine learning, data pipelines, and DevOps/MLOps practices, along with exposure to AI-driven developer productivity tools and methods to improve engineering efficiency, code quality, and automation. Key ResponsibilitiesDesign, develop, and optimize AI/ML models for automotive use cases such as driver monitoring, predictive analytics, perception, diagnostics, or connected vehicle applications.Build and maintain data pipelines for data collection, preprocessing, transformation, validation, and feature engineering from structured and unstructured sources.Work on end-to-end model lifecycle activities including training, evaluation, deployment, versioning, and performance monitoring.Collaborate with software, data, validation, and platform teams to integrate AI/ML components into production systems.Support deployment of AI/ML workloads using DevOps/MLOps practices, including CI/CD, containerization, automated testing, and infrastructure management.Develop and maintain scripts, APIs, and services for scalable model serving and batch/stream processing.Contribute to developer productivity initiatives by leveraging AI tools for code review, code generation, documentation, test-case generation, defect analysis, and workflow automation.Evaluate and integrate AI-assisted engineering tools to improve software development speed, code quality, and release efficiency.Ensure data quality, reproducibility, and traceability across datasets, code, and model artifacts.Participate in troubleshooting, root-cause analysis, and continuous improvement of deployed AI/ML solutions.Contribute to technical documentation, code reviews, and process standardization. Required Skills and ExperienceAround 4 years of experience in AI/ML engineering, preferably in the automotive domain.Strong programming skills in Python.Good understanding of machine learning and deep learning concepts, including model training, validation, and inference workflows.Hands-on experience in building and maintaining data pipelines using tools/frameworks such as Spark, Airflow, Kafka, or similar.Exposure to DevOps/MLOps practices, including Docker, Kubernetes, CI/CD pipelines, Git, and cloud/on-prem deployment workflows.Experience with data preprocessing, feature engineering, model evaluation, and debugging.Familiarity with APIs, microservices, and deployment of AI/ML solutions into production environments.Good understanding of software engineering best practices, version control, testing, and documentation.Competencies RequiredStrong problem-solving and analytical skills.Ability to work across AI/ML, data engineering, and DevOps domains.Good collaboration skills to work with cross-functional engineering teams.Strong ownership and ability to independently drive technical tasks.Structured communication and documentation skills.Ability to learn and adapt to new tools, frameworks, and engineering methods.Additional Competencies for Improving Developer Productivity Using AI Tools and MethodsUnderstanding of AI-assisted software development workflows.Experience or exposure to tools for:AI-based code reviewcode generation / code completionunit test generationdocumentation generationbug triaging and defect analysisPR review automationAbility to identify engineering bottlenecks and propose AI-driven productivity improvements.Knowledge of integrating AI tools into CI/CD or developer workflows such as GitHub, GitLab, TeamCity, Jenkins, or similar ecosystems.Familiarity with using LLM-based tools for:improving code qualityreducing manual effortaccelerating debuggingimproving developer feedback loopsAwareness of limitations of AI tools, including:hallucination riskcontext limitationscode privacy and security concernsvalidation requirements before production useAbility to define metrics for developer productivity improvement, such as:reduced PR review timeimproved unit test coveragefaster root-cause analysisreduced manual documentation effortimproved code quality consistency Preferred SkillsExperience in automotive domains such as ADAS, autonomous driving, driver monitoring, cockpit AI, vehicle diagnostics, or connected vehicle systems.Exposure to frameworks such as PyTorch, TensorFlow, ONNX, or OpenCV.Knowledge of MLOps tools like MLflow, Databricks, or model registry solutions.Understanding of embedded or edge AI deployment is an added advantage.Familiarity with cloud platforms such as AWS, Azure, or GCP.Experience working in Agile teams and cross-functional product environments.Exposure to developer productivity tools such as Claude, GitHub Copilot, Codeium, Cursor, AI PR reviewers, or similar platforms. EducationBachelor’s or Master’s degree in Computer Science, Electronics, Data Science, Artificial Intelligence, Automotive Engineering, or related field. Please share your profiles to careers.swxindia@stellantis.com with below details:Total yrs. of exp:CCTC:ECTC:NP: Disclaimer - At Stellantis, we assess candidates based on qualifications, merit and business needs. We welcome applications from people of all gender identities, age, ethnicity, nationality,religion, sexual orientation and disability. Diverse teams will allow us tobetter meet the evolving needs of our customers and care for our future.By submitting your application, you are accepting our privacy notice:https://www.stellantis.com/en/privacy