Marcura Logo

Marcura

Senior Data Engineer

Reposted 7 Days Ago
Be an Early Applicant
In-Office
London, Greater London, England, GBR
Senior level
In-Office
London, Greater London, England, GBR
Senior level
Own and develop end-to-end data pipelines, core data models, and cloud data warehouse transformations (dbt). Partner with non-technical stakeholders to deliver BI-ready datasets and leverage LLMs/AI agents to accelerate engineering and automation.
The summary above was generated by AI

Marcura's data team is an AI-first data engineering organisation with significant ownership and opportunity to drive impact across the organisation and for our customers.

We work across finance, commerial, and engineering to make sure everyone has access to accurate, timely and complete data within the constraints of their role.

The data team own the data pipelines, modelling and warehousing required to support our stakeholders in the tools they use, be it AI models, dashboards, spreadsheets, or CRM tools.

We are looking for a data engineer to own and devloping the data pipelines and core data models for Marcura. If you're passionate about working as an AI-first data engineer and are eager to create solutions with significant impact, we'd love to hear from you.

Job Responsibilities

1.      Model Development: Build and maintain dbt models in a complex multi-product data environment.

2.      Source System Integration: Integrate new source systems into the warehouse using Fivetran or Apache Airflow. Define tests, manage source freshness, and coordinate with upstream engineering teams on schema changes and breakages.

3.      Data quality, testing, and reliability: Write dbt tests on the right grains. Set up monitoring and alerting on critical models so issues are caught before stakeholders notice. Own incident response for owned models.

4.      BigQuery Performance and Cost Optimisation: Keep warehouse cost and query performance under control. Use partitioning, clustering, and incremental materialisations where appropriate. Investigate and refactor slow or expensive queries. Make conscious build-versus-rebuild trade-offs for incremental models.

5.      PII, RBAC, and Compliance: Implement PII hashing. Support the role-based access control work for both internal users and external customer-facing views. Ensure new models comply with the data governance and compliance standards expected at Marcura.

6.      End-user access: Make sure modelled data lands in BI tools, CRMs and MCPs servers in a usable shape. Partner with the tool owners on metric definitions, dimension/measure design, and dashboard reliability. Syncing model changes downstream is part of the job.

7.      Stakeholder Partnership: Work directly with Commercial, Customer Success, Finance, Compliance, and Product teams to understand what they need from the data platform. Translate fuzzy business questions into concrete datasets and metrics. Push back when a request is the wrong shape; commit fully when it is the right shape.

8.      AI-Augmented Engineering: Use AI tooling (Claude Code or Codex and Github Actions) as a daily part of the engineering workflow — for code generation, code review, model documentation, and debugging. Help raise the AI fluency of the wider Data team and contribute reusable agent skills.

9.      Data dictionary: Document every model, source, and macro you own. Keep the dbt dictionary clean and searchable so other engineers and analysts can self-serve. Write commit messages, PR descriptions, and incident post-mortems that explain the why, not just the what.

10. Operational Reliability and On-Call: Share responsibility for the platform being up and trusted. Respond to data incidents, take part in the on-call rotation as it evolves, and contribute to runbooks and post-mortems.


Requirements
  • Bachelor degree in Computer Science, Engineering, Mathematics, Data Science, or related discipline. 
  • 3 to 5 years experience in a hands-on data engineering or analytics engineering role, ideally in a B2B SaaS or B2B data product environment.
  • Demonstrated experience shipping production dbt models on a cloud data warehouse (BigQuery, Snowflake, Redshift, or similar).
  • Track record of owning data pipelines end-to-end — from source ingestion through transformations to BI/consumption layer — and partnering directly with non-technical stakeholders to deliver useful datasets.
  • You have spent the past six months using LLMs to write code and know how to direct an AI agent to get work done efficiently, and what work requires your judgement

Skills and Knowledge 

  • Advanced SQL and dimensional modelling skills (Kimball-style star schemas).  
  • Strong hands-on dbt experience: tests, documentation, macros, sources, snapshots, and CI workflows.  
  • Working knowledge of BigQuery (or another cloud data warehouse) including performance tuning, partitioning, clustering, and cost awareness.  
  • Comfortable with tools like Fivetran and Apache Airflow for orchestration, ingestion scripts, and tooling.  
  • Git, code review, and CI/CD discipline.  
  • Understanding of PII handling, data privacy, and role-based access control as applied to analytics data.  
  • Familiarity with at least one BI tool in the Marcura stack (PowerBI, Metabase, Lightdash) and how data models surface to end users.  
  • Strong written communication; able to write documentation, dbt model descriptions, and change rationales that the next engineer can read in five minutes. 
  • Hands on experience using Claude Code or Codex for data engineering. 

Benefits
  • Competitive Salary and Bonus: We reward your expertise and contributions.
  • Inclusive Onboarding Experience: Our onboarding program is designed to set you up for success right from day one.
  • Marcura Wellness Zone: We value your work-life balance and well-being.
  • Global Opportunities: Be part of an ambitious, expanding company with a local touch.
  • Diverse, Supportive Work Culture: We’re committed to inclusion, diversity, and a sense of belonging for all team members.

Marcura London, England Office

92 Albert Embankment, Office 7.09, Tintagel House, London, United Kingdom, SE1 7TY

Similar Jobs

Yesterday
Hybrid
London, Greater London, England, GBR
Senior level
Senior level
Fintech • Mobile • Payments • Software • Financial Services
Design and deliver a real-time liquidity observability stack and core treasury functions. Build scalable, event-driven systems, implement monitoring and control mechanisms, automate cash investment and risk tooling, and collaborate with product, data scientists and stakeholders to forecast cash flows and optimize liquidity.
Top Skills: Distributed SystemsEvent-Driven SystemsMachine LearningMonitoring SystemsReal-Time Observability
20 Days Ago
Remote or Hybrid
Senior level
Senior level
Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Lead data engineering efforts within Technology Consulting: design data architecture and pipelines, implement AWS/Redshift and ETL solutions, support BI (QlikView/Oracle BI), coach teams, manage client relationships and SLAs, apply systems thinking to optimize outcomes and validate solutions with stakeholders.
Top Skills: AWSDatastageDb2ETLJavaManaged ServicesOracle BiPythonQlikviewRedshiftSlasSQL ServerWorkload Orchestration And Scheduling
21 Days Ago
Remote or Hybrid
Senior level
Senior level
Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Lead data engineering engagements to design, build, and maintain ETL/ELT pipelines and cloud data architectures. Manage client accounts and mentor teams, leverage tools like DataStage, AWS/Redshift, DB2/SQL Server, GoldenGate, and BI/visualization platforms to deliver analytics, performance tuning, and scalable reporting solutions.
Top Skills: AWSBirtCdcDatastageDb2Etl/EltGlueGoldengateJavaPythonQlikviewRedshiftS3SpotfireSQL Server

What you need to know about the London Tech Scene

London isn't just a hub for established businesses; it's also a nursery for innovation. Boasting one of the most recognized fintech ecosystems in Europe, attracting billions in investments each year, London's success has made it a go-to destination for startups looking to make their mark. Top U.K. companies like Hoptin, Moneybox and Marshmallow have already made the city their base — yet fintech is just the beginning. From healthtech to renewable energy to cybersecurity and beyond, the city's startups are breaking new ground across a range of industries.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account