Senior Software Engineer (JavaScript), FinTech, London / Hybrid

Future Talent Group
1 year ago
Applications closed

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▶Senior Software Engineer (JavaScript), FinTech, London / Hybrid◀


Location- London / SW6 (Hybrid)

Salary- £80,000 / £90,000


We are working with a company that is transforming the FinTech market with a new SaaS platform. Founded by industry professionals, the platform integrates SaaS, FinTech, and LegalTech, with an ambitious product roadmap. Since the first product launch, three products have been released, with a fourth in development. All products are built in-house and continuously updated, with future plans including AI-powered workflows.


As part of the development team, you’ll contribute to new features while collaborating on technical decisions in a meritocratic environment, tackling challenges like graph theory, machine learning, and data visualisation.


You will be working as part of the core development team, shipping new features while maintaining high standards in code quality. You will have a voice to work with other senior developers on technical choices. We run a meritocracy where all can be heard, and the best ideas win out.


Technical Stack:

  • Node.js / React.js / TypeScript
  • PostgreSQL or something similar
  • Jest or Playwright (Test Driven Development)
  • AWS Cloud Services
  • DevOps – Kubernetes or NX or GitHub


#SaaS / #FinTech / ScaleUp / #JavaScript

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