Senior Data Engineer, Aveva PI System (f/m/d)

Lonza
Slough
2 weeks ago
Applications closed

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Today, Lonza is a global leader in life sciences operating across three continents. While we work in science, there’s no magic formula to how we do it. Our greatest scientific solution is dedicated people working together, devising ideas that help businesses to help people. In exchange, we let our people own their careers. Their ideas, big and small, genuinely improve the world. And that’s the kind of work we want to be part of.

We are seeking an experienced Senior Data Engineer with specialized knowledge in Aveva PI solutions. The role will focus on being responsible for the implementation of Aveva PI across various manufacturing sites, supervising ongoing operational support, and contributing as a key member of the Center of Excellence (CoE) for Aveva PI within the organization. The Senior Data Engineer will also play a pivotal role in establishing and maintaining governance structures and leading forums that promote standard processes, collaboration, and continuous improvement.

Key Accountabilities:

Lead the end-to-end implementation of Aveva PI solutions across multiple manufacturing sites.

Installation and configuration of AVEVA PI Server & connectivity (e.g. OPC, PI Cloud Connect, ADH, RDBMS, UFL, PI WEB API) in Data Historian / Data Intelligence.

Designing and creating the AF structure, EF, analysis, and notifications, while also developing concepts, layout, and design for data infrastructure (including data collection, aggregation, and visualization)

Support the development of the CoE’s strategic vision for Aveva PI and drive its adoption across the organization.

Establish and sustain governance frameworks for Aveva PI, ensuring internal standards are met and efficient procedures are followed.

Collaborate with multi-functional teams to gather requirements, design system architecture, and ensure seamless integration.

Develop and maintain user documentation, guidelines, and training materials for Aveva PI users.

Supervise day-to-day operations of the Aveva PI systems, ensuring high availability, performance, and reliability.

Lead multi-functional forums to foster collaboration, share insights, and drive continuous improvement in the use of Aveva PI across sites.

Key requirements:

Confirmed 7+ years hands-on systems experience in Aveva (formerly OSIsoft) PI System and with solid understanding in one or more of the Aveva PI System functional modules.

Proficient in industrial automation, process data management, and integration with ERP/MES systems.

Experience with at least two full life cycle implementations of Aveva PI System modules and experience in dynamic support environment.

Excellent knowledge and Experience installing, configuring, validating, and tuning PI Server and interfaces e.g. PI AF, PI Vision, PI analytics and PI interfaces.

Experience with data governance, compliance, and standard methodologies for operational technology (OT) systems.

Familiarity with SQL, Python, or similar programming languages for data integration and analysis.

Good communication skills, with the ability to influence and lead partners at all levels.

Experienced working in GMP environments and creating GMP qualification documentation.

Experience working in the pharmaceutical, biotech, or manufacturing industries.

Experience with cloud technologies and data lakes, particularly in integrating Aveva PI data.

Familiarity with Agile methodologies and experience working within a CoE or similar organizational model.

MA or BA in Computer Science, Information Technology, or a related field, or equivalent experience.

Every day, Lonza’s products and services have a positive impact on millions of people. For us, this is not only a great privilege, but also a great responsibility. How we achieve our business results is just as important as the achievements themselves. At Lonza, we respect and protect our people and our environment. Any success we achieve is no success at all if not achieved ethically.

People come to Lonza for the challenge and creativity of solving complex problems and developing new ideas in life sciences. In return, we offer the satisfaction that comes with improving lives all around the world. The satisfaction that comes with making a meaningful difference.

Reference: R63711

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