Data Engineer

Cheltenham
3 days ago
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Data Engineer
Cheltenham (Hybrid - 2-3 days onsite)
£32,000 - £38,000 + Bonus + 35 Days Holiday + Hybrid Working + Share Plan + Up to 10 % Pension + Training + Progression

This is an excellent opportunity for someone with early experience in data engineering to build a long-term career supporting engineering systems and enterprise data platforms within a globally operating organisation.

You will join a collaborative data and engineering systems team where you will gain exposure to large-scale product and manufacturing datasets while contributing to key data improvement initiatives across the business.

The organisation is part of the FTSE 100 and operates within a highly technical engineering environment and is committed to improving the quality, consistency, and governance of its product and manufacturing data. As part of a wider digital transformation programme, the business is investing in improving how data is structured, managed, and used across its global platforms.

In this role, you will support the management, transformation, and quality improvement of engineering and product data across a range of enterprise systems, including PLM platforms. Working closely with engineers, data specialists, and global stakeholders, you will help extract, analyse, validate, and standardise datasets while contributing to projects that enhance data standards and workflows.

The Role:

  • Supporting the maintenance and improvement of product and manufacturing data across engineering systems and PLM platforms
  • Extracting, analysing, and transforming datasets using tools such as SQL and Excel
  • Identifying anomalies and validating data to ensure accuracy and consistency
  • Preparing and loading standardised data into enterprise databases and applications
  • Supporting data improvement initiatives and small-scale projects across the business

    The Person:
  • Hands on experience in a data-focused role such as data analyst, data coordinator, or similar
  • Experience using data tools such as SQL, Excel, Power BI, Python
  • A strong analytical approach with the ability to work with large datasets
  • Good communication skills and the ability to work with a range of stakeholders

    Reference Number: BBBH(phone number removed)

    Rise Technical Recruitment Ltd acts an employment agency for permanent roles and an employment business for temporary roles.

    The salary advertised is the bracket available for this position. The actual salary paid will be dependent on your level of experience, qualifications and skill set and will be decided by our client, the employer. Rise are not responsible or liable for any hiring decisions made by the end client.

    We are an equal opportunities company and welcome applications from all suitable candidates

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