Java Software Engineer

Inspire Talent Ltd
Birmingham
1 month ago
Applications closed

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Java Developer – Core Engineering Audit Team

Location:Birmingham

Employment Type:Full-time, Consultancy (with the option to join the client after 12 months)

Industry:Financial Services / Technology

Salary:Competitive

About the Role

We are seeking a highly skilledJava Developerto join ourCore Engineering Audit Teamwithin adynamic and complex financial technology environment. This role is ideal for professionals with astrong background in technology engineeringandproven expertise in software development and technology audits. The team is responsible for reviewingtechnology risks, controls, and complianceacross a variety of critical platforms.

You will work onhigh-impact projects, focusing oncloud computing, big data, end-user platforms, and enterprise technologies. This is a12-month consultancy role, with the opportunity to transition into apermanent positionwith our client thereafter.

Key Responsibilities

  • Develop, maintain, and enhanceJava-based applicationsthat support technology audit and risk management functions.
  • Collaborate withinfrastructure, security, and audit teamsto identify and mitigatetechnology risksacross multiple platforms.
  • Work withCloud Computing, Big Data, and Enterprise Platformsto design scalable, secure, and resilient applications.
  • Contribute tosoftware development lifecycle (SDLC) best practices, including CI/CD pipelines, code reviews, and automated testing.
  • Support the implementation ofworkflow automation and job scheduling technologiesto improve operational efficiency.
  • Ensure compliance withindustry security standards and regulatory requirementsin all development efforts.
  • Debug, troubleshoot, and optimize code for performance and scalability in ahigh-demand financial environment.

Key RequirementsTechnical Skills:

  • Proven experience with Java (Java 8+ / 11)and associated frameworks (Spring Boot, Hibernate, or similar).
  • Strong knowledge of cloud technologies(AWS, Azure, or Google Cloud) and microservices architecture.
  • Experience withbig data technologies(Hadoop, Spark, Kafka) is a plus.
  • Familiarity withend-user platforms, including collaboration tools, messaging systems, and web technologies.
  • Experience withenterprise platforms, includingworkflow automation, job scheduling, and security protocols.
  • Knowledge ofdatabases (SQL, NoSQL, PostgreSQL, MongoDB, or similar).
  • Hands-on experience withDevOps and CI/CD tools(Jenkins, Docker, Kubernetes, Terraform).
  • Proficiency inunit testing, integration testing, and test automationframeworks.

Soft Skills & Experience:

  • Minimum 3-5 years of experiencein Java development within a complex, regulated environment (preferably financial services).
  • Strong understanding oftechnology risk management, security principles, and compliance standards.
  • Experience intechnology audits or risk assessment frameworksis highly desirable.
  • Ability towork collaborativelywith cross-functional teams, including security, infrastructure, and compliance.
  • Strongproblem-solving skillswith the ability to analyze complex systems and processes.
  • Excellentcommunication and stakeholder managementskills.

Why Join Us?

  • Work oncutting-edge financial technology projectsin a highly regulated industry.
  • Gain exposure tocloud, big data, and security technologiesin a real-world setting.
  • Be part of ahigh-performing consultancy team, with the opportunity to transition into apermanent roleafter 12 months.
  • Competitive salary, professional growth, and access to training programs.


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