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Manufacturing Analytics Engineer

Job in Coos Bay, Coos County, Oregon, 97458, USA
Listing for: Prysmian Group
Full Time position
Listed on 2026-01-15
Job specializations:
  • IT/Tech
    Data Engineer, Data Science Manager
Salary/Wage Range or Industry Benchmark: 80000 - 100000 USD Yearly USD 80000.00 100000.00 YEAR
Job Description & How to Apply Below

Prysmian is the world leader in the energy and telecom cable systems industry. Each year Prysmian manufactures thousands of miles of underground and submarine cables and systems for power transmission and distribution
, as well as medium low voltage cables for the construction and infrastructure sectors. We also produce a comprehensive range of optical fibers, copper cables and connectivity for voice, video, and data transmission for the telecommunication sector
.

We are 30,000 employees, across 50+ countries. Everyone at Prysmian has the potential to make their mark; because whatever you do, wherever you are based, you will be part of a company that is helping transform the world around us. Make Your Mark at Prysmian!

Role Purpose

The Manufacturing Analytics Engineer will serve as the technical and analytical bridge between Operations Technology (OT) and enterprise analytics. This role owns the end-to-end flow of operational data—from historians and SCADA systems through to cloud storage and business intelligence—transforming raw plant data into trusted, actionable insights that power operational excellence and future AI initiatives across the organization.

Qualifications
  • 5+ years in a manufacturing analytics role.
  • Bachelor’s degree in computer science, data science, or engineering
  • Experience with AVEVA, Ignition, PLC tags strongly preferred
Scope & Ownership

The Manufacturing Analytics Engineer will manage the entire analytics pipeline—from data collection at the historian layer to visualization and reporting—while plant engineering teams continue to own PLC-to-server connections. This role includes administrator-level control across data platforms, ensuring reliability, governance, and scalability.

  • Own end-to-end data flow from OT historians (PI, Aveva, Ignition) to analytics and reporting environments.
  • Design, script, and maintain ETL/ELT pipelines for historian-to-cloud data movement using Python, SQL, and AWS services.
  • Develop reusable data models, APIs, and standardized data structures for use across plants and digital platforms.
  • Troubleshoot and resolve data flow disruptions, historian tag failures, and dashboard refresh issues.
  • Collaborate with plant engineers, OT, and IT teams to maintain secure, standardized, and reliable data pipelines.
Tools, Tech Stack & Standards

This role operates across a comprehensive industrial analytics ecosystem, connecting OT data systems with enterprise analytics and cloud platforms. The engineer will begin by stabilizing existing infrastructure and progress into modernizing and evaluating new tools and integrations.

  • OT & Historian Layer: AVEVA PI System / AF, Aveva Insight, Ignition (Vision, Perspective, Tag Historian).
  • Visualization & BI:
    Qlik Sense enterprise dashboards.
  • Data Transformation: SQL and Python for modeling, scripting, and automation.
  • Cloud Integration: AWS services (S3, Glue, Lambda, IoT Core) for data storage, transformation, and orchestration.
  • Governance:
    Implement and enforce data naming conventions, lineage documentation, and retention policies.
  • Automation:
    Develop and maintain automated ETL pipelines and data orchestration workflows.
Expected Outcomes & Deliverables

The Manufacturing Analytics Engineer delivers a unified, reliable, and scalable data ecosystem that connects OT systems to analytics, reporting, and AI readiness layers. The role transforms raw industrial data into structured insights, enables standardized reporting, and prepares the organization for advanced digital initiatives.

  • Deliver automated, validated, and standardized dashboards and reports for OEE, downtime, scrap, and energy KPIs.
  • Develop APIs and data connectors to share information across MES, CMMS, and other digital platforms.
  • Ensure data models and structures are AI-ready for future machine-learning applications.
  • Standardize KPI definitions and data models across plants, allowing variation only where process differences require.
  • Integrate analytics and insights into operational processes and decision-making workflows.
  • Mentor junior analysts and plant associates, building local data literacy and self-service analytics capabilities.
Organizational Fit & Growth

This role is positioned…

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