Data Architect / Sr Data Engineer London

Keyrus
London
1 month ago
Applications closed

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Keyrus Group is a trusted leader in Data Intelligence with 27 years’ worth of experience, over 3,000 consultants and offices across the globe in 26 countries. Our expert teams provide strategic data engineering, data analytics, and data science solutions for our clients, primarily in the financial services, utilities and energy industries.

The Keyrus UK team is expanding rapidly. We are seeking an experienced Data Architect / Senior Data Engineer to lead the design, development, and optimization of our data architecture and engineering practices. The ideal candidate will have a proven track record in designing and building scalable data solutions, ensuring robust data pipelines, and managing complex ETL processes across cloud platforms. Leveraging their expertise, the Data Architect / Senior Data Engineer will play a pivotal role in advancing our data-driven initiatives and enabling effective decision-making through high-quality data solutions.

Responsibilities:

  • Data Solution Architecture: Design and maintain comprehensive data architectures, including data warehouses, lakes, and meshes, ensuring alignment with organizational goals and data governance.
  • Data Pipeline Management: Build scalable ETL/ELT processes with tools like Talend and Snowflake; ensure real-time data processing using CDC and advanced data integration techniques.
  • Cloud Data Management: Use cloud platforms such as AWS and Azure to support data warehousing and analytics. Integrate and synchronize data from diverse sources for cross-functional accessibility.
  • Enhance operational efficiency by optimizing data models, storage, and processing speeds across all data solutions.
  • Engage with cross-functional teams to identify data requirements, resolve issues, and improve data accessibility.
  • Uphold high standards of data privacy, security, and compliance with regulatory requirements throughout the data lifecycle.

What were looking for in our applicants:

  • 10+ years inData Engineering and Architecturewith a focus ondata platforms,pipelines, and integration processes in enterprise settings.
  • Track record of successful project delivery in ETL, real-time data processing, and cloud data management (especially using AWS, Snowflake, and Talend).
  • Strong consultative background with responsibility for end-to-end data solution delivery.
  • Data warehousing (e.g., Snowflake, Microsoft SQL Server) and ETL/ELT expertise.
  • Proficiency in Python for data processing and automation.
  • In-depth knowledge of AWS and Azure for data engineering and analytics.
  • Experience with data mesh and modern architectural frameworks.
  • Any of the following certifications: Snowcore Pro, Microsoft Certified: Azure Data Engineer Associate, Talend Data Integration v7 Certified Developer.

Good to have:

  • Experience designing data solutions specifically for finance, accounting, or operational reporting.
  • Familiarity with key performance metrics and experience managing large-scale data projects in a consultative capacity.
  • Skills in decision-making, performance management, operational efficiency, and supporting data-driven business insights.

Why Keyrus?

Joining Keyrus means joining a market leader in the Data Intelligence field and an (inter)national player in Management Consultancy and Digital Experience.

You will be part of a young and ever learning enterprise with an established international network of thought-leading professionals driven by bridging the gap between innovation and business. You get the opportunity to meet specialised and professional consultants in a multicultural ecosystem.

Keyrus gives you the opportunity to showcase your talents and potential, to build up experience through working with our clients, with the opportunity to grow depending on your capabilities and affinities, in a great working and dynamic atmosphere.

Keyrus UK Benefits:

  • Competitive holiday allowance
  • Very comprehensive Private Medical Plan
  • Flexible working patterns
  • Workplace Pension Scheme
  • Sodexo Lifestyle Benefits
  • Discretionary Bonus Scheme
  • Referral Bonus Scheme
  • Training & Development via KLX (Keyrus Learning Experience)

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