Data Analyst

Hyde Group
Dukinfield
1 day ago
Create job alert

Are you looking for a fresh challenge, with a forward-thinking organisation within the high-tech engineering sector? The Hyde Group are established Industry experts within Aerospace Engineering and have a new vacancy for a ERP Data Analyst working at our divisional head office in Dukinfield.


About us

We are one of the UK's largest and most trusted engineering companies, providing products and services to Aerospace, Defence, Nuclear, Energy and Scientific sectors.


We have successfully supplied to the Aerospace industry for over 50 years. We are currently on track to achieve our strong growth plans and we pride ourselves on delivering right first-time solutions and going the extra mile to delight our customers.


About the opportunity

This is a great opportunity to join a reputable business with a strong set of core values in a friendly supportive environment. We have a strong focus on developing our people with the potential to further your career. Our salaries are competitive and we also offer a generous holiday entitlement of 33 days inclusive of bank holidays along with a fantastic benefits package.


As an ERP Data Analyst, you’ll support reporting, analysis, and data quality initiatives across the business as we undertake a major ERP transformation. You’ll work closely with internal stakeholders and gain hands-on experience in a dynamic, data-heavy environment, with the potential to learn project delivery skills and the functional operation of IFS ERP solutions.


Main Duties

  • Data extraction & preparation: Collecting, cleaning, and transforming data from legacy SAP systems ready for migration to a new IFS ERP solution.
  • Reconciling data across multiple business streams and gaining sign off from senior stakeholders.
  • Reporting & visualisation: Building and maintaining dashboards and reports to show progress and data delivery management.
  • Data quality monitoring: Ensuring accuracy, consistency, and integrity across data sources.
  • Stakeholder collaboration: Turning business questions into clear, actionable insights.

Desired Skills

  • Experience with SQL, PLSQL, Python or other scripting languages.
  • Knowledge of ETL processes or data transformation concepts.
  • Familiarity with IFS or other ERP systems.
  • An interest in data-driven technology environments.

Desired Experience

  • Strong Excel skills and basic SQL knowledge.
  • Experience with data manipulation tools.
  • Excellent analytical and problem-solving skills.
  • Ability to communicate insights clearly to non-technical stakeholders.
  • An IT or consulting based degree or equivalent experience.

What we offer

  • Competitive salary.
  • Generous annual leave entitlement.
  • Exciting benefits package with access to discounts from leading retailers.
  • Purpose built sites with free parking.
  • Discounted gym membership.
  • Excellent career development opportunities available.
  • Cycle to work scheme.


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