Compliance Engineer

London
1 week ago
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We are seeking a highly skilled Compliance Systems Engineer to join a global bank on a permanent basis in London. This critical role ensures the delivery and support of compliance and monitoring systems.

Role Purpose:

Deliver and support compliance systems.
Analyse requirements and translate them into IT solutions.
Build and enhance in-house and third-party applications.
Conduct testing and manage releases.Key Responsibilities:

Design and support compliance IT solutions for banking and regulatory requirements.
Enhance existing solutions in .NET, Java, Python, SQL, Oracle, etc.
Adapt to new technologies like Azure, Data Lakes, Analytics, Digital Workflows, AI, and Data Science.
Collaborate with various teams to enable and modify platforms.
Follow data modelling, IT standards, and best practices.
Gather requirements, build, test, implement, and support solutions.
Maintain detailed documentation and ensure software/data integrity.
Resolve data migration issues and optimise software performance.
Ensure compliance with banking regulations and standards.Essential Skills and Experience:

Experience with compliance and regulatory reporting tools.
Knowledge of BPMN and DMN standards, digital workflow, and intelligent automation.
Proficiency in Python or Java, ETL tools, and data transformation platforms.
Understanding of banking compliance and regulatory requirements.
Experience with in-house and cloud-based solutions, including SaaS.
System integration, data sourcing, processing, monitoring, reporting, and analytics experience.
Thorough understanding of IT controls and software development lifecycle.If you are looking for an opportunity to truly impact a business and bring new ideas to the table, then look no further!

Apply now to avoid disappointment.

To find out more about Huxley, please visit

Huxley, a trading division of SThree Partnership LLP is acting as an Employment Business in relation to this vacancy | Registered office | 8 Bishopsgate, London, EC2N 4BQ, United Kingdom | Partnership Number | OC(phone number removed) England and Wales

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