Senior Data Engineer - AWS

The Capital Markets Company GmbH
Edinburgh
3 days ago
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Location: Edinburgh (Hybrid) | Practice Area: Technology & Engineering | Type: Permanent


Engineer future-ready data platforms that power financial transformation.
The Role

We’re looking for a Senior Data Engineer with AWS to join our growing team of engineering experts driving next‑gen transformation for Tier 1 financial services clients. You’ll play a pivotal role in designing, building, and deploying cloud‑based data pipelines. Working across greenfield projects and enterprise‑scale platforms, your work will directly impact how data is ingested, transformed, and served at scale across the financial services industry.


This role will be located in our Scotland office, with a need to potentially work in either Edinburgh or Glasgow depending on client expectations.


What You’ll Do

  • Design and build end‑to‑end data pipelines leveraging AWS‑native tools and modern data architectures.
  • Collaborate with clients to gather requirements, define solutions, and deliver production‑grade systems.
  • Apply AWS Well‑Architected Principles to ensure scalability, security, and resilience.
  • Lead in the development of robust, tested, and fault‑tolerant data engineering solutions.
  • Support and mentor junior engineers, contributing to knowledge sharing across the team.

What We’re Looking For

Proficient in one of Python, Scala or Java with strong experience in Big Data technologies such as Spark, Hadoop, etc.



  • Practical knowledge of building real‑time event streaming pipelines (e.g., Kafka, Spark Streaming, Kinesis).
  • Proficiency in AWS cloud environments.
  • Proven experience developing modern data architectures including Data Lakehouse and Data Warehousing.

A solid understanding of CI/CD practices, DevOps tooling, and data governance including GDPR.


Bonus Points For

  • Expertise in Data Modelling, schema design, and handling both structured and semi‑structured data.
  • Familiarity with distributed systems such as Hadoop, Spark, HDFS, Hive, Databricks.
  • Exposure to AWS Lake Formation and automation of ingestion and transformation layers.
  • Background in delivering solutions for highly regulated industries.
  • Passion for mentoring and enabling data engineering best practices across teams.

Why Join Capco

  • Deliver high‑impact technology solutions for Tier 1 financial institutions.
  • Work in a collaborative, flat, and entrepreneurial consulting culture.
  • Access continuous learning, training, and industry certifications.
  • Be part of a team shaping the future of digital financial services.
  • Help shape the future of digital transformation across FS & Energy.

Benefits

  • Core Benefits: Discretionary bonus, competitive pension, health insurance, life insurance and critical illness cover.
  • Mental Health: Easy access to CareFirst, Unmind, Aviva consultations, and in‑house first aiders.
  • Family‑Friendly: Maternity, adoption, shared parental leave, plus paid leave for sickness, pregnancy loss, fertility treatment, menopause, and bereavement.
  • Family Care: 8 complimentary backup care sessions for emergency childcare or elder care.
  • Holiday Flexibility: 5 weeks of annual leave with the option to buy or sell holiday days based on your needs.
  • Continuous Learning: Minimum 40 hours of training annually. Take your pick—workshops, certifications, e‑learning—your growth, your way. Also, Business Coach assigned from Day One: Get one‑on‑one guidance to fast‑track your goals and accelerate your development.
  • Extra Perks: Gympass (Wellhub), travel insurance, Tastecard, season ticket loans, Cycle to Work, and dental insurance.

Inclusion at Capco

We’re committed to a barrier‑free, inclusive recruitment process. If you need any adjustments at any stage, just let us know – we’ll be happy to help. We welcome applicants from all backgrounds. At Capco, we value the difference you make, and the differences that make you. Our #BeYourselfAtWork culture champions diversity, equity and inclusivity, and we bring a collaborative mindset to our partnerships with clients and colleagues. #BeYourselfAtWork is the cornerstone of our success and a value that our employees live and breathe every day.


Capco does not and shall not discriminate on the basis of race, colour, religion (creed), gender, gender expression, age, national origin (ancestry), disability, marital status, sexual orientation, or military status, in any of its activities or operations. In order to track the effectiveness of our recruiting efforts, please consider participating in the optional questionnaire.


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