Manager (Quantexa) Snr Data Engineer

KPMG UK
Leeds
21 hours ago
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Overview

Join to apply for the Manager (Quantexa) Snr Data Engineer role at KPMG UK.

Job details include multiple UK locations with a focus on London and other offices. This is a senior data engineering role focused on Quantexa-based solutions within the Technology & Data service line.

Responsibilities
  • Develop and optimise data ingestion pipelines and transformations within the Quantexa platform using Spark and Scala.
  • Configure and implement Quantexa components such as Entity Resolution, Scoring, and Network Generation to support specific use cases.
  • Collaborate with Tech Leads and Solution Architects to design scalable and performant Quantexa solutions.
  • Translate business and technical requirements into efficient, production-ready data engineering solutions.
  • Support the integration of Quantexa into broader enterprise data architectures, working with cloud, security, and DevOps teams.
Qualifications
  • Quantexa Technical Certification is required.
  • Demonstrable experience in leading client data engineering and integration projects for major clients.
  • Hands-on experience designing and implementing Quantexa solutions for clients.
  • Technical excellence in Scala, Python and Databricks.
Skills and experience
  • Experience delivering Quantexa in Financial Services, Fraud Detection, AML, or KYC domains.
  • Exposure to DevOps and CI/CD pipelines (e.g., Jenkins, GitHub Actions, Azure DevOps).
  • Familiarity with Docker and Kubernetes.
  • Understanding of data governance, data quality frameworks, and enterprise data security standards.
  • Bachelor’s or master’s degree in computer science, Data Engineering, or related field.
Location and work arrangements

Base location: London with a network of 20 offices nationwide. Core tech hubs include Birmingham, Leeds, London Canary Wharf, and Manchester. The position will largely be based from London with potential for office work, remote work, flexible hours, and part-time options across the UK. Please discuss flexibility with the team.

Our approach

We are open to talking to talent across the country and emphasise delivering cutting-edge technical solutions that matter to clients and communities.

Additional information
  • 25+ offices nationwide; 20 referenced offices.
  • EEO statements and related recruitment information are part of the posting as applicable.


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