Senior Data Engineer

LHV Bank
Manchester
1 week ago
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LHV Bank Limited is a UK-licensed bank operating across three core business segments: Retail Banking, SME Lending, and Banking Services (BaaS). The bank is a wholly owned subsidiary of LHV Group, a listed financial services provider headquartered in Estonia. LHV Bank operates under a full UK banking licence granted in May 2023.


The Bank supports over 200 fintech clients with embedded financial infrastructure, provides retail savings products via digital channels, and offers SME credit solutions across the UK. In line with its regulatory responsibilities and growth ambitions, LHV Bank is committed to maintaining a robust and proportionate financial crime control environment.


Expanding our services, LHV Bank now provides personal banking solutions. Our offerings include current accounts with competitive interest rates, fixed‑rate bonds for long-term savings, and debit cards. Customers can conveniently access these services through the LHV App, enabling secure account opening and management.


We are looking for an experiencedSenior Data Engineer to help design, build, and evolve our modern data platform. You will shape our data warehousing, data products, and self service analytics, ensuring our data is trusted, well governed, and AI ready, working closely with the Head of Data & AI and the wider Data & AI team.‑service analytics‑governed, and AI‑ready


This is a hands on senior individual contributor role with clear technical leadership expectations. You will own complex data domains and pipelines, set and uphold engineering standards, and mentor other data engineers, while still spending a significant portion of your time building.


Key Responsibilities

Design & Evolve Scalable Data Warehousing Solutions:



  • Lead the design, build, and maintenance of robust, well tested ELT / ETL pipelines and transformation workflows‑tested ELT / ETL pipelines and transformation workflows
  • Model and maintain curated data layers to support reporting, analytics, and operational decision making‑making
  • Optimise the performance, reliability, and cost of our cloud data warehouse
  • Contribute to data architecture decisions, patterns, and standards in partnership with the Head of Data & AI

Enable Data Democratisation & Self Service‑Service:



  • Design intuitive, well structured data models that power self serve BI (e.g. AWS QuickSight, SQL export)‑structured data models that power self‑serve BI (e.g. AWS
  • Partner with analysts and domain teams to make data products genuinely usable and widely adopted
  • Contribute to data enablement initiatives such as training sessions, playbooks, and internal documentationHelp develop and maintain data dictionaries, business glossaries, and technical catalogues

Governance, Quality, and Compliance by Design:



  • Embed data quality checks, alerts, observability, and access controls into pipelines and data products from the outset
  • Support data governance capabilities (classification, lineage, audit, retention) using automated tooling where possible
  • Work closely with risk, security, and compliance stakeholders to ensure adherence to internal and external requirements (e.g. GDPR)
  • Ensure our core data assets are AI readyby enforcing high standards for data quality, provenance, and documentation, so they can safely power analytics, machine learning, and future AI use casesready

Technical Leadership & Collaboration:



  • Provide technical guidance and code review for other data engineers, helping to raise the bar on quality and reliability
  • Contribute to shared engineering practices (coding standards, testing strategy, CI/CD, observability)
  • Collaborate in an agile environment with product, analysts, and stakeholders to break down work and deliver iteratively
  • Help evaluate and introduce new tools, patterns, and approaches to improve our data platform over time

What We’re Looking For

  • Significant experience as a Data Engineer (or similar role), including significant experience in python, cloud data warehousing and data modelling (dbt)
  • Strong hands on experience with cloud native data technologies, preferably on AWS (e.g. Redshift, Glue, S3, Lambda, IAM)
  • Proficiency inSQL & Python for data processing, orchestration (e.g. Airflow MWAA), and automation
  • Experience with modern transformation and modelling approaches and tools (e.g.dbt, dimensional modelling, star/schema snowflake)‑on experience with ‑native data technologies
  • Practical experience withinfrastructure as codeandCI/CD(e.g. Terraform, GitHub Actions, Code Build/CodePipeline)‑as‑code
  • Solid understanding of data governance, metadata, lineage, and data quality frameworks, and how to implement them in practice
  • Demonstrated ability to lead the design and delivery of complex data solutions, working cross functionally in an agile environment‑functionally in an agile environment
  • Strong communication skills, with the ability to translate between technical details and business needs, and to mentor more junior team members
  • Experience designing and operating data products with clear SLAs, contracts, and ownership models
  • Hands‑on experience with orchestration and observability tooling (e.g. Airflow, Step Functions, dbt, Coralogix)
  • Exposure to real-time / streaming data pipelines (e.g. Kinesis, Kafka, MSK)
    Understanding of information security best practices in a regulated or risk conscious environment‑time / streaming‑conscious environment
  • Familiarity with BI and analytics tools (e.g. QuickSight) and how engineers can enable them effectively
  • Experience working with diverse data sources (APIs, CRMs, SFTP, relational/NoSQL databases) and formats (Parquet, JSON, XML, CSV)
  • Experience contributing to internal data communities, guilds, or enablement programmes
  • Experience with financial data or working in financial services / other regulated industries

Why Join Us

Play a key role in shaping our data platform and practices, working directly with the Head of Data & AI in a wider Data & AI team Work with a modern data stack and have real influence over the tools, patterns, and standards we adopt. Help build and scale a culture that treatsdata with importance, with strong focus ondata trust, quality, governance, and usability.


Make a visible impact by enabling self service analytics, data literacy, and better decision making across the organisation‑service analytics, data literacy, and better decision‑making across the organisation


Benefits

  • Competitive salary &lots of opportunities to learn, grow and progress professionally.
  • Open and inclusive culture.
  • Fantastic offices and great working environment.
  • Vitality Health Plan (includes private health insurance, travel insurance, gym discounts)
  • Life assurance – 4 x salary.
  • Income protection insurance – 75%
  • 28 days holiday plus 3 additional days, & further days for various key life events as well as the opportunity to sell up to 5 days per calendar year.
  • Swappublic/bank holidays each year for alternative days that align with your personal, cultural, or religious observances.
  • Enhanced family friendly and family forming policies.
  • Access to a wide range of retail discounts .
  • Team Socials.


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