Cloud Architect & Engineer · London · Hybrid Remote

CUBE Content Governance Global Limited
London
1 month ago
Applications closed

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Role:Cloud Architect & Engineer

Location:London, with the minimum expectation of one day per week in the office.

Recently listed as a "RegTech Top Performer" in Market Fintech's RegTech Supplier Performance Report, CUBE is pioneering the development of machine automated compliance.

We are a global RegTech business defining and implementing the gold standard of regulatory intelligence and change for the financial services industry. We deliver our services through a SaaS platform, powered by an innovative combination of AI and proprietary data ontology, to simplify the complex and everchanging world of compliance for our clients.

At CUBE, we are creating the future and are a company rooted in strong values, team spirit and commitment to our customers and wider communities. We serve some of the largest financial institutions globally and are expanding our footprint very fast. As we do so, we are keen for new talent to join us and realize their full potential to grow into leadership positions within the business.

Role mission:

As a Cloud Architect and Engineer, you will take on a dual role that encompasses designing, developing, and maintaining Azure-based cloud infrastructure. This role is essential to driving the implementation of best-in-class cloud solutions, ensuring that projects are architected with scalability, security, and performance in mind while also contributing hands-on to their engineering and deployment.

Responsibilities:

  1. Collaborate with the team to design and build scalable, secure, and high-performance Azure infrastructure and applications.
  2. Implement infrastructure as code (IaC) using tools such as Terraform, Bicep, or ARM templates.
  3. Lead and contribute to the development and deployment of cloud solutions through CI/CD pipelines.
  4. Integrate best practices for cloud architecture, automation, and monitoring.
  5. Assist with cost optimization efforts and efficient resource management across Azure services.
  6. Troubleshoot complex technical issues and provide practical, resilient solutions.
  7. Maintain a strong understanding of cloud security protocols and ensure all solutions meet compliance requirements.
  8. Work closely with cross-functional teams to align on project requirements and technical goals.
  9. Stay current with emerging Azure technologies and drive continuous improvement initiatives within the team.

What we’re looking for:

Qualifications:

  1. Proven experience in both cloud architecture and engineering roles, preferably with a focus on Microsoft Azure.
  2. Strong technical expertise in designing and implementing Azure services, including IaaS, PaaS, and SaaS.
  3. Hands-on experience with infrastructure as code tools (e.g., Terraform, ARM templates, Bicep) and automation of deployments.
  4. Familiarity with CI/CD processes and tools.
  5. Proficient understanding of cloud security best practices, resilience, and identity/access management.
  6. Excellent problem-solving skills and collaborative working style.
  7. Strong communication skills to engage effectively with technical and non-technical stakeholders.

Preferred Skills:

  1. Experience with containerization technologies such as Docker and Kubernetes.
  2. Knowledge of multi-cloud or hybrid cloud environments.
  3. Microsoft Azure certifications (e.g., Azure Solutions Architect Expert, Azure DevOps Engineer Expert).
  4. Familiarity with data engineering or MLOps practices.
  5. Exposure to Agile working methodologies and experience in fast-paced environments.
  6. Bachelor's degree in Computer Science, Engineering, or a related field (or equivalent experience).

Why Us?

Globally, we are one of a kind!

CUBE are a well-established market leader within Regtech (we were around before Regtech was even a thing!), and our category-defining product is used by leading financial institutions around the world (including Revolut, Citi, and HSBC).

Growth & progression

Last year we grew by more than 50% and our growth journey is just getting started! We are a dynamic, fast-paced workforce that is always seeking ways to accelerate our people, processes, services and products. We hire ambitious people that want to make a difference, share their ideas, “make it happen” and find better, smarter ways of working. Our future is shaped by our employees, so if you’re someone looking for an opportunity to make a real impact, and progress your career alongside the business, it couldn’t be a better time to join us!

Internationally collaborative culture

With more than 400 CUBERs across 11 locations in Europe, the Americas and APAC, collaboration is key to our success. We are a diverse workforce united by a shared desire to reshape the world of regulatory compliance and make an impact. We champion sharing knowledge with colleagues from all over the world, in order to deliver the best results.

Innovative breakthrough technology

CUBE is an innovator. We pioneered the use of AI in the field of regulatory change and our state-of-the-art, cutting edge technology is helping financial services firms from all over the world, solve complex compliance challenges. You will work alongside some of the brightest minds in AI research and engineering in developing impactful solutions that will reshape the world of regulatory compliance.

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