CUBE (cube.global) Logo

CUBE (cube.global)

Data Engineer

Posted 19 Days Ago
Be an Early Applicant
Hybrid
London, Greater London, England, GBR
Mid level
Hybrid
London, Greater London, England, GBR
Mid level
As a Data Engineer at CUBE, you'll build and optimize data pipelines, transform unstructured data into AI-ready assets, and work with cloud technologies while ensuring data quality and scalability.
The summary above was generated by AI

CUBE are a global RegTech business defining and implementing the gold standard of regulatory intelligence for the financial services industry. We deliver our services through intuitive SaaS solutions, powered by AI, to simplify the complex and everchanging world of compliance for our clients. 

 

Why us?

🌍 CUBE is a globally recognized brand at the forefront of Regulatory Technology. Our industry-leading SaaS solutions are trusted by the world’s top financial institutions globally.

🚀 In 2024, we achieved over 50% growth, both organically and through two strategic acquisitions. We’re a fast-paced, high-performing team that thrives on pushing boundaries—continuously evolving our products, services, and operations. At CUBE, we don’t just keep up we stay ahead.

🌱 We believe our future is built by bold, ambitious individuals who are driven to make a real difference. Our “make it happen” culture empowers you to take ownership of your career and accelerate your personal and professional development from day one.

🌐 With over 700 CUBERs across 19 countries spanning EMEA, the Americas, and APAC, we operate as one team with a shared mission to transform regulatory compliance. Diversity, collaboration, and purpose are the heartbeat of our success.

💡 We were among the first to harness the power of AI in regulatory intelligence, and we continue to lead with our cutting-edge technology. At CUBE, You will work alongside some of the brightest minds in AI research and engineering in developing impactful solutions that are reshaping the world of regulatory compliance.

Purpose of the job

We’re looking for a Data Engineer to join our Data and AI Engineering team and help build the pipelines, transformations, and infrastructure that power CUBE’s regulatory intelligence platform.

This is hands-on engineering work with real scope. You’ll be designing and building data pipelines that ingest, process, and serve complex regulatory content—turning unstructured source data into clean, governed, AI-ready assets. Your work will sit at the intersection of data infrastructure and product capability, directly enabling the analytical and AI workloads that define what CUBE does.

You’ll be working in an Azure-native environment, collaborating closely with data architects, platform engineers, and AI/ML teams. We’re building modern, scalable infrastructure—and we want engineers who care about doing it properly.

We’re a post-acquisition business integrating multiple platforms, which means there’s genuine complexity to work through—and genuine opportunity to shape how things get built. If you want greenfield work alongside legacy reality, this is it.

Responsibilities

  • Design and build data pipelines - Build, maintain, and optimise data pipelines that ingest, transform, and deliver structured and unstructured regulatory content across our platform estate.

  • Transform and model data - Apply transformation logic that converts raw source data into clean, reliable, semantically consistent assets ready for analytics and AI consumption.

  • Implement data quality and observability practices - Instrument pipelines with monitoring, alerting, and data quality checks that catch problems early and maintain platform trust.

  • Collaborate with architects and platform engineers - Work closely with the Principal Data Architect and Head of Data Platform to implement patterns that align with our architectural direction.

  • Support integration and migration work - Contribute to source-to-target mapping and pipeline development for ongoing platform consolidation.

  • Champion engineering best practices - Write code that others can maintain: version-controlled, tested, documented, and built for production.

  • Contribute to platform scalability and cost efficiency - Identify and resolve performance bottlenecks, redundancies, and inefficiencies in existing pipeline infrastructure.

  • Build for AI readiness - Understand how downstream AI/ML workloads consume data and design pipelines that support feature engineering, model training, and inference requirements.

What we’re looking for

Core

  • 3+ years of experience in data engineering or a closely related role.

  • Strong SQL and Python skills—you write production-quality code, not just scripts.

  • Hands-on experience building and maintaining data pipelines in cloud environments.

  • Familiarity with ETL/ELT patterns, orchestration tools (e.g. Apache Airflow, dbt, Azure Data Factory), and data transformation frameworks.

  • Experience working with both structured and unstructured or semi-structured data.

  • Understanding of data quality principles—you know what a bad pipeline looks like and how to fix it.

  • Comfort with version control, CI/CD practices, and engineering-grade delivery.

Preferred

  • Experience with Microsoft Azure data services - Azure Data Factory, Synapse Analytics, Data Lake Storage, Fabric.

  • Familiarity with Apache Spark for large-scale data processing.

  • Exposure to data modelling concepts - normalisation, dimensional design, entity-relationship patterns.

  • Background in platform integration, data migration, or M&A consolidation work.

  • Experience building pipelines that support AI/ML workloads, including feature stores or model training infrastructure.

  • Knowledge of data governance practices - lineage, cataloguing, access control, compliance.

  • Familiarity with infrastructure-as-code tooling (e.g. Terraform).

  • Exposure to regulatory, financial services, or compliance data domains.

Mindset

  • You care about the quality of your output - not just whether the pipeline runs, but whether it’s maintainable, observable, and trustworthy.

  • You’re comfortable working with ambiguity and systems that weren’t built the way you’d have built them.

  • You communicate clearly with both engineers and non-engineers.

  • You take ownership - when something breaks, you fix it; when something could be better, you say so.

Interested?

If you are passionate about leveraging technology to transform regulatory compliance and meet the qualifications outlined above, we invite you to apply. Please submit your resume detailing your relevant experience and interest in CUBE.​

CUBE is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.

HQ

CUBE (cube.global) London, England Office

Tower 42, 25 Old Broad Street, London, United Kingdom, EC2N 1HN

Similar Jobs

5 Days Ago
Easy Apply
Hybrid
London, England, GBR
Easy Apply
Senior level
Senior level
Artificial Intelligence • Machine Learning • Software
The Staff Implementations Data Engineer will build and maintain complex data pipelines, work collaboratively with teams to integrate products for clients, and provide technical expertise in client meetings.
Top Skills: AWSAzureDatabricksDockerGitKubernetesOpensearchPostgresPythonRest ApisSparkSQL
Yesterday
In-Office
Junior
Junior
Insurance • Business Intelligence • Consulting
The Associate Data Engineer is responsible for designing and building data pipelines, transforming datasets for business use, and collaborating with stakeholders to manage projects that enhance data services.
Top Skills: AWSDatabricksPythonSQL
2 Days Ago
Hybrid
Mid level
Mid level
Healthtech
The Data Engineer II will design and implement scalable data pipelines, collaborate with stakeholders, ensure data quality, and support analytics by utilizing cloud platforms and big data technologies.
Top Skills: AWSAzureDatabricksGCPMicrosoft Sql ServerPower BIPythonRestful ApisSparkSQLTerraform

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