Data Engineer – PPI Digital Transformation (Multi-site)
Thermo Fisher Scientific Visualizza tutti gli annunci
- Monza
- Tempo indeterminato
- Full time
- Design, develop, and maintain scalable data pipelines and ETL processes integrating data from multiple sources and systems.
- Develop and manage data warehouses and data lakes, ensuring data quality, reliability, and performance.
- Design and optimize databases and data models to support business intelligence and analytics use cases.
- Implement data quality controls, monitoring, and automated validation procedures.
- Build and maintain cloud-based data infrastructure using modern data platforms and technologies.
- Collaborate with data scientists to deploy analytical and machine learning solutions into production environments.
- Enable secure and efficient data access for site users and digital applications.
- Support data governance, security, and compliance standards in collaboration with IT and corporate teams.
- Work closely with Digital Project Managers to support planning, prioritization, and delivery of data initiatives.
- Contribute to technical discussions, peer reviews, and continuous improvement activities within the Data Engineering sub-team.
- Bachelor’s degree in Computer Science, Data Science, Engineering, Mathematics, Statistics, or a related field.
- 3+ years of experience in Data Engineering, Business Intelligence or similar roles.
- Strong SQL expertise (complex queries, optimization, database design; MSSQL, Oracle).
- Experience with data warehousing, dimensional modeling, and business intelligence concepts.
- Experience with ETL tools and frameworks.
- Experience with data visualization and data modeling tools (Power BI).
- Experience with cloud platforms (Azure / Microsoft Fabric).
- Proficiency in Python for data processing.
- Fluency in English and Italian.
- Master’s degree in a relevant technical field.
- Industry certifications (cloud or data platforms).
- Experience with Git-based version control and CI/CD pipelines.
- Knowledge of data governance frameworks.
- Familiarity with IIoT data and industrial data integration.
- Experience in manufacturing, consulting, or enterprise digital environments.
- Proactivity to satisfy customer needs.
- Detail-oriented and analytical mindset.
- Strong ability to work within structured technical teams, contributing to shared standards and best practices.
- Collaborative mindset and openness to technical guidance, mentoring, and peer review.
- Ability to balance individual ownership with team-based delivery.
- Effective communication skills, with the ability to interact with stakeholders at different seniority levels.
- Proactive attitude and focus on continuous learning and technological discovery.
- Interest in digital technologies applied to manufacturing and operational excellence.
- Occasional travel may be required to support collaboration and site activities (estimated 0–20%).