IT engineer Machine Learning

AI overview

Develop and deliver innovative machine learning solutions while collaborating with cross-functional teams to drive business impact using Azure Databricks.
  • Develop and deliver robust machine learning solutions addressing diverse business challenges (forecasting, classification, optimization, automation) on the Azure Databricks platform.
  • Own the full ML lifecycle: model development, deployment, monitoring, and retraining — supported by standardized infrastructure and DevOps practices.
  • Apply strong mathematical and problem-solving skills to translate complex business requirements into effective ML models.
  • Collaborate with Product Owners, data engineers, DevOps, and architecture teams to build scalable, maintainable, and governed ML pipelines.
  • Demonstrate curiosity and an iterative mindset, exploring alternative modeling approaches to achieve satisfactory business outcomes.

 

  • Reports to: Head of Data & Analytics IT Competence Center
  • Collaborates with: Product Owners, data engineers, DevOps engineers, architecture/governance teams
  • Location scope: Global business and IT teams
  • Platform scope: Databricks (MLflow, notebooks, jobs, model registry), Azure services (Blob Storage, Key Vault, Event Hub, API Management)

Main Tasks

- Design, build, and evaluate ML models primarily in Python using libraries such as scikit-learn, XGBoost, Prophet, PyTorch, TensorFlow
- Perform feature engineering using pandas and PySpark where needed
- Collaborate with data engineers on data acquisition and pipeline integration

- Package and deploy models to production using MLflow’s Python API and CI/CD pipelines
- Manage model versioning, monitoring, and lifecycle workflows
- Build retraining pipelines and schedule model refreshes

- Integrate ML workflows with Azure-native services (Functions, Event Grid, API Management)
- Collaborate with DevOps engineers to automate deployments and enable observability
- Align with architecture and governance teams on standards compliance

- Advise Product Owners and business teams on feasibility, complexity, and architectural implications of ML solutions
- Translate business problems into viable ML models and workflows
- Support backlog prioritization and iterative development

- Write clean, reusable, testable code for ML pipelines using software engineering best practices
- Contribute to shared libraries and reusable components
- Apply version control, testing, and documentation standards

  • Education / Certification:
    Degree in Computer Science, Data Science, Engineering, Mathematics, or related field
    Preferred certifications in Azure Data & AI, Databricks, or MLflow
  • Professional Experience:
    3–5+ years of hands-on experience in applied machine learning, developing production-grade models for business use cases
  • Project or Process Experience:
    Proven ability to translate business challenges into effective ML models, conduct experimentation, and iterate toward impact
    Experience working with large-scale structured data and integrating models into data pipelines
  • Leadership Experience:
    No direct management responsibilities; expected to act as technical lead for ML within product teams
  • Intercultural / International Experience:
    Experience collaborating with globally distributed and cross-functional teams

The well-being of our employees is important to us. That's why we offer exciting career prospects and support you in achieving a good work-life balance with additional benefits such as:

  • Training opportunities
  • Mobile and flexible working models
  • Sabbaticals

and much more...

Sounds interesting for you? Click here to find out more.

 

Diversity, Inclusion & Belonging are important to us and make our company strong and successful. We offer equal opportunities to everyone - regardless of age, gender, nationality, cultural background, disability, religion, ideology or sexual orientation.

Ready to drive with Continental? Take the first step and fill in the online application.

Perks & Benefits Extracted with AI

  • Other Benefit: Sabbaticals

Continental desarrolla tecnologías y servicios vanguardistas para la movilidad sostenible e interconectada de personas y bienes. Fundada en 1871, la empresa de tecnología ofrece soluciones seguras, eficientes, inteligentes y asequibles para vehículos, máquinas, tráfico y transporte. En 2021, Continental generó ventas por 33 800 millones de euros y actualmente emplea a más de 190 000 personas en 58 países y mercados. El 8 de octubre de 2021, la empresa celebró su 150 aniversario.El sector del grupo Automotive incluye tecnologías para sistemas de seguridad pasiva, frenos, chasis, movimiento y control de movimiento. La cartera también cuenta con soluciones innovadoras para la conducción asistida y automatizada, tecnologías de visualización y operación, soluciones de audio y cámara para el interior del vehículo, así como con tecnología inteligente de información y comunicación para los servicios de movilidad de operadores de flotas y fabricantes de vehículos comerciales. La gama de productos y servicios se completa con actividades integrales relacionadas con tecnologías de conectividad, electrónica de vehículos y computadoras de alto rendimiento.

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