Business Data Engineer

Oxford
1 year ago
Applications closed

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Job Title: Business Data Engineer

Location: Oxfordshire

Key Skills: Skywise, Google Looker, SQL, Python, PLSQL

About Us:

Are you ready to be part of a pioneering aerospace company that’s transforming the future of aviation? We are dedicated to creating cutting-edge aircraft and solutions that redefine air travel, making it safer, more efficient, and sustainable.

The Role:

So, what will you be doing as a Business Data Engineer?

  • Develop Solutions: Design efficient workflows, applications, and dashboards using the Skywise platform to empower data access and visibility across the business.

  • Enhance Data Quality: Implement validation processes and automation to ensure top-notch data integrity and streamline collection and analysis.

  • Support MIS Rollout: Facilitate smooth adoption of our Management Information System (MIS) across engineering teams and support functions, aligning each project phase with operational needs.

  • Drive Automation & Efficiency: Replace manual data processes with automated solutions that save time and reduce human error.

  • Collaborate Cross-Functionally: Work with both technical and non-technical teams to align data needs with business goals and uncover new opportunities for improvement.

    What are we looking for in our next Business Data Engineer?

  • Master tools like Contour, Code-Workbook, and Ontology definitions.

  • Proficiency in Skywise, relational databases, and programming languages (PL/SQL, Python, JavaScript).

  • Strong understanding of business metrics and KPIs, with the ability to translate complex data into actionable business solutions.

  • Proficient with Google products, app script, app sheet, google automations and google sheet functionality.

  • Develop dashboards using Google Looker and other comparable software for clear, actionable insights.

  • Expertise in data analysis methodologies and processes and their linkages to other processes.

  • Ability to understand and analyse existing business processes and suggest improvements based on data insights and areas for automation.

  • Ability to translate business needs into technical data solutions that align with company objective

    Education/Qualifications:

  • STEM HND or equivalent.

  • Desirable Experience: Familiarity with airline or MRO operations, machine learning integration, and business or industrial experience.

    This really is a fantastic opportunity for a Business Data Engineer to progress their career. If you are interested, please apply as soon as possible as this position will be filled quickly so don't miss out!

    If you are interested in applying for this position you must be eligible for UK security clearance up to SC level

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