Production Data Analyst

Armstrong Fluid Technology
Droitwich
3 weeks ago
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Job Title

Production Data Analyst


Contract

6 Months FTC


Competitive Salary plus benefits

Competitive salary plus benefits


Company Overview

Imagine working at the forefront of innovation in fluid‑flow technology, with over 1400 colleagues across the globe, and contributing to a legacy of excellence that spans eight manufacturing facilities on four continents. Armstrong Fluid Technology is more than just a leader in our industry; we are a community of the brightest and most creative minds, driven by a shared mission to engineer the future and safeguard our planet.


Role Overview

The Production Data Analyst plays a critical role in supporting Armstrong’s manufacturing and project delivery operations. This role focuses on ensuring the accuracy, integrity, and usability of data across Armstrong’s ERP and workforce management systems. You will work closely with the Planning Lead, Finance, HR, and Production teams to validate workforce and contractor information, monitor project performance, and ensure that data systems provide reliable insights for business decisions. This position demands a high level of accuracy, problem‑solving skills, and the ability to collaborate with system users at all levels.


Key Responsibilities

  • Validation of Full Time Employee (FTE) & Contractor booking via ERP system LN and attendance system Tensor for both direct employees and Project Engineering Group (PEG) resources.
  • Validation of purchasing invoices for contractors against submitted timesheets and Tensor attendance data.
  • Monitoring of booked labour hours versus budget on a project‑by‑project basis.
  • Reporting, monitoring, and correcting LN, Factory Track, and Tensor data.
  • Resolving issues and supporting the usage of LN, Factory Track, and Tensor for personnel booking hours against projects and systems.
  • Monitoring and assisting with works order close‑out for factory and site‑based projects.
  • Tracking and reporting usability and efficiency of Tensor, LN, and Factory Track to ensure accurate reporting of workforce numbers and that all users are inducted, trained, and efficient in system usage.

Role Requirements

  • High level of numeracy and accuracy in data entry.
  • Strong systems knowledge within ERP and related IT systems.
  • Proven ability in practical problem‑solving, data analysis, and resolving queries.
  • Ability to work at pace to resolve issues while ensuring accuracy and diligence in reporting.
  • Strong teamworking attributes, able to work collaboratively with system users to ensure accuracy is maintained.

Soft Skills

  • Effective communicator with a collaborative mindset.
  • Self‑motivated, action‑oriented, and capable of working independently or in teams.
  • Comfortable working in a global matrix structure.

What We Offer

  • An opportunity to play a pivotal role in ensuring data accuracy and operational performance in a growing, dynamic business.
  • A collaborative environment with a focus on accuracy, continuous improvement, and professional growth.
  • Competitive salary and benefits package.
  • The chance to contribute to the success of Armstrong Fluid Technology’s manufacturing and project delivery excellence.

Why Armstrong Fluid Technology?

By joining us, you’ll become part of a global community dedicated to pushing the boundaries of fluid‑flow technology. You’ll have endless opportunities to learn, grow, and make a significant impact on the world. Together, we’ll build tomorrow’s solutions today.


Disclaimer

PLEASE NOTE THAT WE DO NOT OFFER SPONSORSHIPS


Seniority Level

Associate


Employment Type

Contract


Job Function

Production and Analyst


Industries

HVAC and Refrigeration Equipment Manufacturing


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