Data Engineer

Australian Investors Association Limited
London
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

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Job ID:R0317577Full/Part-Time:Full-timeRegular/Temporary:RegularListed:2025-03-07Location:London

Position Overview

Job Title:Data Engineer

Corporate Title:Vice President

Our Compliance Technology teams are responsible for delivering solutions which will automate business workflows, improve data quality, and enhance reporting for the Compliance function. You'll be an integral part of the bank's technology infrastructure, guiding the Compliance Technology team and playing a vital role in protecting organizational data. By actively engaging with the team, you will enable the overall implementation of data architecture in the compliance division. You'll need to have a blend of data engineering, cloud skills, and a passion for overall data architecture. Deutsche Bank is investing heavily in technology, which means we are investing in you.

What We'll Offer You

A healthy, engaged and well-supported workforce are better equipped to do their best work and, more importantly, enjoy their lives inside and outside the workplace. That's why we are committed to providing an environment with your development and wellbeing at its centre.

Hybrid Working

We understand that employee expectations and preferences are changing. We have implemented a Hybrid Working Model that enables eligible employees to work remotely for a part of their working time and reach a working pattern.

You Can Expect

  • Competitive salary and non-contributory pension
  • 30 days holiday plus bank holidays, with the option to purchase additional days
  • Life Assurance and Private Healthcare for you and your family
  • A range of flexible benefits including Retail Discounts, a Bike4Work scheme and Gym benefits
  • The opportunity to support a wide-ranging CSR programme + 2 days volunteering leave per year

Your Key Responsibilities

  • Analyse the data pipelines and needs of cloud services that have been requested by the bank's application developer community
  • Collaborate with other architects and engineers to ensure specifications are implemented in policy-enforcing tools, and on improvements to cloud engineering tooling and agile ways of working
  • Act as an internal expert in the native services of the Cloud Service Providers to advise other teams on options for improving and maintaining data integrity and data governance
  • Implementing the best data governance practices defined by the enterprise architects
  • Contributing the best data standards and practices
  • Reviewing the implementation of data architecture and data pipelines for the applications within the division

Your Skills And Experience

  • Proficient in Java or Python programming languages, hands-on development experience on large ETL/Big Data system on public Cloud
  • Experience of Google Cloud Platform services mainly BigQuery, DataProc, DataFusion, Pub/Sub, Cloud Composer, CI/CD pipelines, Terraform and BigQuery optimisation techniques
  • Experience in regulated environments (Finance, Pharma, etc.) (Preferable)
  • Strong experience with relational and non-relational databases in Cloud with billions of records (structured & unstructured data)
  • Good exposure and hands-on knowledge on Data Warehouse / Data Lake solutions both on premise and in cloud
  • Google Cloud Certified Professional Cloud Architect & Cloud Data Engineer Certification (Preferable)

How We'll Support You

  • Training and development to help you excel in your career
  • Flexible working to assist you balance your personal priorities
  • Coaching and support from experts in the team
  • A culture of continuous learning to aid progression
  • A diverse and inclusive environment that embraces change, innovation, and collaboration.

About Us And Our Teams

Deutsche Bank is the leading German bank with strong European roots and a global network. Deutsche Bank in the UK is proud to have been named a The Times Top 50 Employers for Gender Equality 2024 for five consecutive years. Additionally, we have been awarded a Gold Award from Stonewall and named in their Top 100 Employers 2024 for our work supporting LGBTQ+ inclusion.

We strive for a culture in which we are empowered to excel together every day. This includes acting responsibly, thinking commercially, taking initiative and working collaboratively.

Together we share and celebrate the successes of our people. Together we are Deutsche Bank Group.

We welcome applications from all people and promote a positive, fair and inclusive work environment.

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