Full Stack Developer (TypeScript / React / Node.js)

Liverpool
9 months ago
Applications closed

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Full-Stack Developer – Financial Advisory Client

We are working with a growing, independent Financial Advisory firm that is currently expanding its internal technology capabilities. As part of this growth, they are looking to hire a Full-Stack Developer to support their Chief Investment Officer in developing and maintaining internal tools and applications that support investment decision-making and operational efficiency.

The Role

You will work across the full stack using TypeScript, React, Node.js, and PostgreSQL to build robust and scalable internal systems. You will also collaborate on Python-based research tools and contribute to the build and deployment of a locally hosted Large Language Model (LLM).

Key Responsibilities

Develop and maintain internal web applications and APIs

Collaborate with investment and operational stakeholders to understand requirements

Support Python-based research tools and automation

Assist in configuring and optimising locally hosted LLMs

Ensure code quality, maintainability, and performance

Ideal Candidate

Proven full-stack experience with React, Node.js, TypeScript, and PostgreSQL

Comfortable working with or alongside Python

Interest in AI technologies, particularly LLMs

Ability to communicate technical concepts to non-technical stakeholders

Experience in financial services or fintech is advantageous

What’s on Offer

The opportunity to make a real impact within a growing financial advisory firm

Flexible working arrangements

Exposure to investment technology, AI, and data tools

Competitive salary and long-term progression opportunities

Benefits:

Hybrid working - Liverpool office

Healthcare

Flexible working

Interested? Please Click Apply Now!

Full-Stack Developer – Financial Advisory Client

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