Senior Data Engineer

PRIMA Partners Global
City of London
1 day ago
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Data Engineering Senior Consultant to Principle Consultant - Data Platforms & Solutions

Location: London/ remote

Contract Type: Permanent

Salary: £50,000 - £80,000

Must be eligible to work in the UK without sponsorship


  • Build innovative data solutions across multiple platforms and technologies for leading clients
  • Lead technical project delivery whilst mentoring junior consultants and shaping their development
  • Work with cutting-edge tools including Azure Data Factory, Databricks, and cloud data platforms
  • Collaborate with clients on solution architecture, consulting on approach and technology strategy
  • Enjoy flexible remote working with a team recognised for successful, complex project delivery


Our client is a market-leading data consultancy delivering transformational projects that drive growth and profitability for clients across the globe. They're looking for an experienced Data Engineering Consultant to join their data and insights practice in London.


If you have 4+ years of hands-on data engineering experience, a track record of leading successful delivery projects, and the technical expertise to design and build data solutions, this is an opportunity to advance your career with a consultancy known for award-winning delivery.


Position Overview

As a Data Engineering Senior / Principle Consultant, you'll take a central role in designing and delivering complex data solutions for diverse clients. You'll combine technical expertise with consultancy skills, working across multiple data platforms and technologies to solve real-world business challenges. Your responsibilities span from architecting solutions and writing code to managing junior team members and ensuring information security. This varied role offers the chance to work on innovative projects, develop your technical leadership, and build lasting client relationships with organisations pushing for new technical solutions.


Responsibilities

  • Design and build data and insight solutions across various data platforms and cloud technologies
  • Implement technical solutions using tools such as Azure Data Factory, Databricks, SQL Server, and Oracle technologies
  • Lead technical project delivery, ensuring successful client outcomes and quality standards
  • Consult with clients on solution architecture, technology selection, and implementation approach
  • Develop machine learning and AI solutions that add value and drive business insight
  • Mentor and manage junior consultants, supporting their technical and professional development
  • Contribute to pre-sales activities, delivering product demonstrations and building client credibility
  • Ensure information security standards are maintained for the consultancy and its clients


Requirements

Essential Experience and Skills:

  • 4+ years of hands-on data engineering experience with several completed projects
  • Proven track record leading or playing a key role in technical project delivery
  • Strong experience designing data solutions, not just coding or development
  • Proficiency in SQL, data modelling, and database design
  • Knowledge of general IT architecture and systems design
  • Demonstrated ability to command credibility with clients and colleagues
  • Strong communication skills and ability to engage with stakeholders
  • Experience in a consultancy environment or similar client-facing technical role
  • BSc or equivalent tertiary qualification, ideally in a STEM subject


Technical Skills - One or More Required:

  • Systems integration and API development (REST, SOAP)
  • Informatica or Oracle Data Integrator
  • SQL Server Integration Services (SSIS)
  • Azure Data Factory or Azure Synapse
  • Databricks or Apache Spark
  • Amazon Redshift
  • SQL Server or Oracle Database
  • Oracle Integration Cloud or Business Objects Data Services


Desirable Skills:

  • Business intelligence tools such as Tableau, Power BI, Qlik, or MicroStrategy
  • Azure architecture experience
  • Previous experience building enterprise data platforms


Company Overview

This leading data consultancy has built a strong reputation for delivering complex, transformational projects across enterprise performance management, data and insights, and customer relationship management. Operating from six global offices, they've maintained a proven track record of successful delivery whilst continuously expanding their expertise across multiple technologies. The consultancy is recognised for award-winning projects and has earned client loyalty through consistent delivery of value, insight, and measurable business impact. Their success is built on a team of dedicated technical experts who combine deep technical knowledge with genuine consultancy skills and client focus.


Benefits

  • Competitive salary of £50,000 - £80,000
  • Flexible remote working arrangements
  • Comprehensive benefits package
  • Professional development and training opportunities
  • Mentorship and career progression pathways
  • Opportunity to work with cutting-edge data technologies
  • Exposure to diverse, complex client projects across multiple sectors


Alongside a generous benefits package, you'll be immersed in a fast-paced, intellectually stimulating environment collaborating with technical experts who are genuinely invested in your growth and success.


How to Apply

If you're looking to advance your career and have the skills and experience to succeed in this role, please send your latest CV to for further information.

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