Data Engineer

Derby
3 days ago
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Overview

Are you ready to make a real impact in the aerospace industry? At Expleo, we partner with world‑leading organisations to innovate, optimise and transform critical operations. As a Data Engineer, you'll play a key role in helping our clients move from reactive, fast‑response operations to data‑driven, predictive, and efficient service models. If you thrive in a technical environment where data, engineering, and problem‑solving intersect, this role is for you.

Responsibilities

Rapidly design, configure and deploy EHM solutions that improve service effectiveness
Maintain and ensure the continuity of data supply chains across EHM systems
Analyse operational issues and act quickly to support real‑time service continuity
Capture and refine EHM improvement requirements through forums such as Value Delivery Boards and Project Zero
Work directly with customers to enhance service value and identify future EHM opportunities
Identify valuable insights in engineering and performance data and deploy them into live production
Support testing, validation and implementation of the next‑generation EHM platform
Collaborate with internal and external stakeholders on data quality, modelling accuracy and performance reportingsQualifications

A degree in Engineering, Data Science, IT, or a closely related discipline
Equivalent practical experience in Engine Health Monitoring or service engineering also considered
Certifications in cloud platforms (Azure preferred) or data engineering are beneficial but not essential

Essential skills

Engineering, Data Science, IT or related experience in engine performance, EHM, or service engineering
Strong results focus, able to work under pressure and manage both immediate issues and long‑term projects#
Confident communicator with strong interpersonal skills
Self‑motivated, positive attitude and strong teamwork capability
Good technical problem‑solving skills and comfort working with large datasets
Strong IT user & configuration skills across tools such as:
SQL
Power BI
MATLAB
Python
MS Azure
Databricks
Desired skills

Experience in aerospace or turbomachinery data
Background in digital twins, predictive maintenance or performance modelling
Familiarity with service operations environments
Experience improving data pipelines or automating analytics workflows

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