We
are seeking a Technical Lead Developer with AI project experience Senior AI
Software to consult and contribute deep technical expertise across modern
software engineering and AI-assisted development inside a regulated banking
environment. You will set the engineering standard for how AI coding assistants
such as Claude Code and frameworks are used safely and effectively across
delivery teams.
This
organisation has a defined plan for how AI will be embedded into its software
delivery practice; the mandate is set, the priority use cases are agreed, and
executive sponsorship is in place. What is needed now is hands-on engineering
leadership to turn that plan into working, production-grade systems.
This
is a hands-on role. You will spend the majority of your time writing code,
reviewing code, and shaping technical implementation. You will be expected to
set the bar for quality, security, and operational readiness, and to lift the
engineers around you through direct technical mentorship rather than through
process or strategy.
RequirementsHands-On Software Engineering
• Design,
build, and ship production software across the AI delivery stack backend
services, APIs, and integration layers to a banking-grade standard of quality,
observability, and resilience.
• Set
the technical pattern through reference implementations that other engineers
can extend, including service scaffolding, integration adapters, and agent
orchestration components.
• Lead
code review across the team. Hold the line on testing discipline, secure coding
practice, error handling, performance, and maintainability and coach engineers through the reasoning
behind each call.
• Own
non-functional engineering: logging, tracing, metrics, secrets management,
dependency hygiene, and CI/CD pipeline quality. Make the path of least
resistance the correct path.
• Drive
technical refactoring and modernisation of existing services where AI-assisted
delivery exposes structural debt that limits velocity or safety.
• Use
Claude Code and equivalent AI coding assistants as a daily engineering tool.
Build the prompts, sub-agents, slash commands, hooks, and workflow conventions
that make them effective on real banking codebases.
• Pair
AI-assisted delivery with the engineering discipline a regulated environment
demands explicit human-in-the-loop
checkpoints, deterministic test gates, traceable change history, and clear
separation between AI-generated and human-authored code where audit requires
it.
• Build
internal tooling that wraps AI coding assistants for banking use:
codebase-scoped configurations, redaction layers for sensitive data, repo-aware
prompts, and review automation that enforces the team's quality bar.
• Work
directly inside existing engineering squads as a hands-on technical
contributor pairing on real stories,
writing code alongside their engineers, and integrating AI tools into their
actual development workflow rather than running it as a separate programme.
• Build
the reusable engineering assets that make adoption stick: repo templates, agent
configurations, prompt libraries
• Run
technical workshops and pairing sessions with squad engineers.
• Identify
the engineering tasks where AI assistance has the highest return code review, test generation, documentation,
refactoring, integration scaffolding, log analysis and build the tooling and prompts that make
those wins repeatable.
• Define
and implement the engineering controls that govern AI coding assistant usage:
which codebases and data are in scope, what AI-generated output requires human
review before merge, and how AI-assisted commits are recorded for traceability.
• Build
the technical enforcement of those controls repository configuration, branch protection, CI checks, prompt logging,
and telemetry rather than relying on
policy alone.
• Partner
with Security, Risk, and Compliance engineering counterparts to ensure AI
tooling integrates cleanly with existing controls around secrets, data
classification, change management, and SDLC evidence.
• Raise
the engineering capability of the team through direct technical mentorship pairing, code review, design review, and
worked examples not through abstract
guidance.
• Author
the internal technical playbooks, reference implementations, and engineering
standards for AI-assisted development inside the organisation, and keep them
current as the tooling evolves.
• Be
the engineer other engineers come to when something is genuinely hard. Hold the
bar on technical quality without becoming a bottleneck.
Your
expertise:
• 8+
years of hands-on software engineering experience, with a meaningful portion at
Lead or staff level shipping production systems that other engineers depend on.
• Deep
proficiency in at least one modern backend language Java on the backend and
Angular or React on the frontend. Other languages include Python,
TypeScript/Node.js, Go - ideally the ability to operate effectively in a
polyglot codebase.
• Strong
applied experience with API design, distributed systems, message-driven
architectures, and integration with enterprise systems of record.
• Demonstrable
experience designing for security, observability, and operational readiness in
production not as an afterthought.
• Solid
command of testing discipline across unit, integration, contract, and
end-to-end levels, and of CI/CD pipelines that enforce it.
• Experience
building software inside a regulated environment, or comparable evidence of
working under audit, change control, and data protection constraints.
• Able
to translate complex AI engineering decisions into clear, plain technical
writing for engineering leads, security partners, and audit-facing
stakeholders.
• Pragmatic
under ambiguity. Able to make defensible technical calls without waiting for
perfect information, and willing to revisit them when evidence changes.
• Holds
the engineering bar without becoming a blocker. Decisive in code review,
generous in technical mentorship.
Skills Required
- 8+ years of hands-on software engineering experience, with lead or staff level responsibilities
- Proficiency in Java for backend and Angular or React for frontend
- Strong experience with API design and distributed systems
- Experience with CI/CD pipelines and testing disciplines
- Background working in a regulated environment
What We Do
Blue Pearl is a market-leading CLOUD Solutions developer with extensive knowledge and insight into the latest technologies, standardised processes, advanced technical capabilities and consulting processes available, ensuring wholistic success for our clientele. We offer professional consulting to compliment your business strategy and overall management and make it our priority to add value to any business by listening, analysing and creating a conducive solution that will empower our client. We implement a Data Analysis Process that includes inspecting, cleansing, transforming, and modelling data with the end-goal of discovering useful information, informing conclusions, and relevant information to support your decision-making. Your business cannot afford not to engage with us, allowing our data analysis to play a role in making your business decisions more scientific and helping your business achieve effective operation. Blue Pearl’s team of experts include BI strategists, BI analysts, Data Warehouse Architects, Data Scientists, Implementation and Development experts. With the use of BI, Analytics and Big Data, we effectively partner with our customers on their mission to achieve a competitive business advantage and real ROI from the structured information we collect.







