Full Stack Engineer | up to £80k | Fully Remote

Pearson Carter
London
11 months ago
Applications closed

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Full Stack Engineer up to £80k Fully Remote

 

Pearson Carter are currently working with a data science and software company at the forefront of applying machine learning within Healthcare! They empower national healthcare providers to predict adverse health events in individual patients with astonishing accuracy! They are looking to hire a Full Stack Developer who has strong skills with NestJS, React and TypeScript.

 

Get in touch if you’re looking for your next opportunity!

 

Responsibilities:

  • Developing new and existing NestJS applications, both CLI and API
  • Developing new and existing ReactJS front-end applications and dashboards
  • Integrating our systems with third-party systems, including API’s and other systems hosted by the NHS
  • Leverage and Deploy our solution on Azure Cloud infrastructure

 

Experience:

  • Extensive experience working with TypeScript, React and NestJS
  • Strong experience deploying to Azure
  • Proficient in version control and the review process (Git &; Jira)
  • Good Tailwind CSS/UI experience
  • Any experience with AI/ML, DevOps would be beneficial
  •  

Salary

  • They offer an outstanding salary package: up to £80,000 with fully remote working
  • But able to travel to London for meetups 4-8 times a year.
  • Personal development
  • Career progression

 

Location

This role is fully remote so you will be working from home but need to be based in the UK and able to travel to London 4-8 times per year.

 

How to Apply

Please apply asap with your CV to be considered for this position. You can also get in touch with me on or .

 

Pearson Carter is the Global Leader in Microsoft Technology, Web, Mobile and Software Development Recruitment with specialist roles across the globe - www.pearsoncarter.com

 

Keywords:Microsoft,JavaScript, Typescript, Node, React, Nest, NestJS, Nest.js, Azure, Developer, Software engineer, Web,Software Engineer, Full Stack Software Engineer, South Yorkshire, Lincolnshire, Leicestershire, Derbyshire, Greater London, Greater Manchester, Tyne and Wear, Midlands, UK Wide, Remote, Fully Remote.

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