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
Posted
30 Jun 2026 (Today)

Benefits

Pension Private healthcare 25 days holiday On-call allowance Remote working allowance Professional 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

Senior ML Compiler Engineer

Fractile Bristol, United Kingdom
Spotlight

Senior Machine Learning Scientist

Chattermill London, United Kingdom
Remote

Data Engineer

hireful Exeter, United Kingdom
£50,000 – £55,000 pa Hybrid

Data Engineer

hireful Bristol, United Kingdom
£50,000 – £55,000 pa Hybrid

Data Engineer

Reed Gu31Hg, GU3 1HG, United Kingdom
£35,000 – £60,000 pa Hybrid Clearance Required

Data Engineer

Tenth Revolution Group Ireland, Alba / Scotland, ZE2 9GA, United Kingdom
£32,000 – £38,000 pa Hybrid

Data Engineer

Noir Newcastle upon Tyne, United Kingdom
£45,000 – £80,000 pa On-site

Data Engineer

Claranet Wc2A1Aa, WC2A 1AA, United Kingdom
Hybrid

Industry Insights

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

What Is an AI Forward Deployed Engineer? The Fastest-Growing Job in AI for 2026

If you have been watching AI job boards over the past year, one title keeps surfacing again and again: the forward deployed engineer, or FDE. It has gone from a niche term known mainly to Palantir alumni to arguably the hottest role in the entire AI hiring market. Job postings for forward deployed engineers have exploded, salaries have climbed past levels most software engineers will ever see, and the biggest names in AI — OpenAI, Anthropic, Google, Salesforce, Databricks and Palantir — are all competing for the same small pool of talent. So what exactly is an AI forward deployed engineer, why has demand surged so dramatically, and how do you position yourself to land one of these roles? This guide breaks it all down for AI engineers, software engineers and data scientists looking at their next move.