Data Engineer

Claranet
Wc2A1Aa, WC2A 1AA, United Kingdom
Today
Job Type
Permanent
Work Pattern
Full-time
Work Location
Hybrid
Seniority
Mid
Education
Degree
Visa Sponsorship
Available
Security Clearance
Required
Posted
30 Jun 2026 (Today)

Benefits

Pension scheme Private healthcare Life assurance Income protection On-call allowance Professional certification support Training and development budget

ESSENTIAL ROLES & RESPONSIBILITIES

  • Identify and understand customer data-centric use cases within regulated financial services environments
  • Design and implement data ingestion, processing, and transformation pipelines on Azure
  • Build and maintain data pipelines for cleaning, normalisation, enrichment, and preparation
  • Apply appropriate data modelling techniques and architecture patterns, with a strong focus on medallion architecture
  • Orchestrate, monitor, and optimise Azure Databricks jobs and Azure Data Factory pipelines across development, UAT, and production environments
  • Configure platforms, clusters, and compute resources to optimise performance, cost, and reliability
  • Use automated CI/CD pipelines to manage, deploy, and version data artefacts and pipelines
  • Operationalise workflows developed by analysts and data scientists
  • Support customers in adopting Azure data, analytics, and machine learning services
  • Ensure secure storage, processing, and quality of customer data
  • Ensure networking and security best practices are applied when designing and operating data solutions
  • Design solutions for processing large volumes of data using batch and streaming approaches
  • Collaborate with analytics teams on data visualisation best practices and reporting enablement
  • Ensure all solutions are well-documented, including pipelines, schemas, transformations, and operational runbooks

GOVERNANCE & REPORTING

  • Maintain accurate documentation of data pipelines, schemas, transformations, and deployment processes
  • Support data governance initiatives including lineage, metadata management, and access control
  • Contribute to service reporting, risk tracking, and continuous improvement actions
  • Ensure data environments are audit-ready and aligned with governance standards

TECHNOLOGY STACK (AZURE)

Cloud Platform:

  • Microsoft Azure

Data Engineering & Analytics:

  • Azure Databricks (development, UAT, and production)
  • Azure Data Factory
  • Azure Synapse Analytics (where applicable)

Machine Learning & AI:

  • Azure Machine Learning (limited non-production usage)
  • Azure Document Intelligence

Databases:

  • Microsoft SQL Server / Azure SQL Database (primary platforms)
  • PostgreSQL (limited use)
  • MySQL (limited use)

Data Processing:

  • Batch and streaming data pipelines

Security & Governance:

  • Role-based access control (RBAC)
  • Data encryption and key management
  • Audit logging and monitoring

DevOps:

  • CI/CD pipelines for data artefacts and infrastructure

BEHAVIOURAL COMPETENCIES – ORGANISATIONAL & BEHAVIOURAL FIT

  • Positive mindset and enthusiasm for learning new technologies
  • Collaborative and supportive team player
  • Strong sense of ownership and accountability
  • Methodical, analytical approach to problem-solving
  • Strong understanding of ethical data usage in regulated environments

CRITICAL COMPETENCIES – TECHNICAL FIT

Essential:

  • Strong SQL skills
  • Programming experience with Python and/or Scala
  • Hands-on experience with Azure-based data platforms
  • Experience designing, building, and maintaining data pipelines
  • Strong understanding of data modelling (relational and analytical), including medallion architecture
  • Experience orchestrating and optimising Databricks and Data Factory workloads
  • Experience using CI/CD pipelines for data and analytics solutions
  • Strong awareness of security, networking best practices, GDPR, and PII handling

Desirable:

  • Experience with Azure Databricks in production environments
  • Familiarity with Azure Machine Learning and AI services
  • Exposure to data visualisation tools (e.g. Power BI)
  • Experience with big data frameworks (Spark, Kafka)
  • Knowledge of data governance, lineage, and metadata tooling

SHIFT & WORKING PATTERN

  • Standard business hours, with participation in an on-call rota as required
  • Occasional weekend engineering coverage will be required, typically limited to a small number of planned weekends per year to support business continuity, resilience testing, or disaster recovery activities

Related Jobs

View all jobs
Spotlight

ML Runtime Engineer (Mid-Level and Senior)

Fractile London, United Kingdom
Hybrid
Spotlight

Senior Machine Learning Scientist

Chattermill London, United Kingdom
Remote

Data Engineer

Saffron housing Norwich, United Kingdom
£56,000 pa On-site

Data Engineer

Datatech Soho, London, United Kingdom

Data Engineer

Claranet Wc2A1Aa, WC2A 1AA, United Kingdom
Hybrid Clearance Required

Data Engineer

Tenth Revolution Group Newcastle upon Tyne, United Kingdom
£35,000 – £50,000 pa Hybrid

Data Engineer

SRG Wa36Xf, United Kingdom
£45,000 – £60,000 pa Hybrid

Data Engineer

Tenth Revolution Group Manchester, United Kingdom
£40,000 – £55,000 pa Hybrid Clearance Required

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.