Senior GenAI Full-Stack Engineer
Listed on 2026-06-03
-
Software Development
AI Engineer, Cloud Engineer - Software, Machine Learning/ ML Engineer, Full Stack Developer
Description
Our client is seeking an AI Automation Engineer – SDLC & GenAI Platforms to support the continued expansion of its GenAI capabilities across Investment Technology. The written JD focuses on building and scaling AI-driven automation across the software delivery lifecycle, including requirements, design, development, testing, deployment, and auditability. The role also emphasizes Anthropic-based capabilities, agentic workflows, enterprise GenAI platforms, governance, and measurable business outcomes.
In practice, this is a full-stack AWS engineering role with a GenAI/LLM overlay. The ideal candidate is a hands-on engineer who can build cloud-native applications, integrate LLMs and agentic workflows, and work directly with investment professionals to deliver business-facing technology solutions.
The team is already operating in a mature GenAI environment, with production agents and workflows in place. This person will help build additional GenAI-enabled use cases across investment research, portfolio management, risk, SMA, onboarding, and related front-office investment workflows.
This is not a pure AI strategy, data science, MLOps, or prompt engineering role. Our client needs builders — engineers who can code, communicate, and deliver production-ready applications in a fast-moving, business-facing environment.
Key Responsibilities:
Full-Stack Application Development:
• Build and enhance cloud-native applications supporting the investment technology organization.
• Develop backend services, APIs, user interfaces, workflow tools, dashboards, and integrations using technologies such as Java, Python, React, Angular, and AWS.
• Own application functionality from business problem through design, development, testing, deployment, and support.
• Apply CI/CD, automated testing, and Test-Driven Development practices to deliver reliable production software.
GenAI / LLM Engineering:
• Design and build GenAI-enabled applications and workflows using LLMs, AI agents, RAG, prompt engineering, and model orchestration.
• Integrate AI capabilities into existing enterprise applications, SDLC tooling, CI/CD pipelines, cloud platforms, and business workflows.
• Work with AWS-based AI capabilities, including AWS Bedrock, and support model integration across multiple LLM providers.
• Leverage Anthropic / Claude capabilities where applicable, including prompt engineering standards, agent-based orchestration patterns, and secure model invocation.
Investment Technology Partnership:
• Partner directly with portfolio managers, research analysts, and investment professionals to understand business needs and build practical technology solutions.
• Translate ambiguous investment workflows into working software without relying on a traditional BA/QA-heavy handoff model.
• Support use cases across investment research, portfolio management, risk, SMA, client/sponsor onboarding, portfolio rebalancing, and investment oversight.
• Help improve the business’s ability to make investment decisions, expand research coverage, and generate measurable value.
Platform, Governance & Measurement:
• Build within a secure, governed, and auditable enterprise AI environment.
• Contribute to reusable architecture patterns, implementation standards, guardrails, and developer enablement.
• Help measure productivity, quality, cycle-time, developer experience, risk reduction, and business impact from GenAI-enabled solutions.
Skills:
LLM, GenAI, Java, Aws, python, AWS Bedrock, LLM observability, wealth management
Top Skills Details:
LLM,GenAI,Java,Aws,python
Additional Skills & Qualifications
• Ability to build full-stack applications using Java and/or Python with React and/or Angular.
• Strong AWS cloud-native development experience.
• Experience with CI/CD, automated testing, and Test-Driven Development.
• Hands-on experience building or integrating GenAI/LLM applications.
• Experience with AI agents, RAG, prompt engineering, model orchestration, or tool/function calling.
• Ability to work directly with business users and translate complex business problems into technical solutions.
• Strong written and verbal communication skills.
• Ability to explain complex technical…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).