Full Stack Engineer

Impellam Group
London
4 weeks ago
Applications closed

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Job Description

Fullstack Node Developer - Perm £75k - Economic Marketing Analytics


A global marketing agency utilising AI's power is looking for a Fullstack Node Developer to take ownership of building a self-service platform to allow customers to utilise their econometric marketing tools.


As a Full-Stack developer, your focus is on bringing this prototype into production and being responsible for the design, build, and implementation of this platform using the latest technologies.


Working closely with data scientists and economist modellers, you will influence how best to integrate these models to ensure the platform is secure, sleek and robust.


This role will not have direct-line/managerial responsibilities, but the plan is to grow the team around this individual over time.


Salary: £60,000-£75,000

Location: 1-2x per week in the City of London


Requirements:

  • Senior full-stack experience and knowledge using Node.JS & React
  • Extensive experience working with AWS (Security tools, containers, infrastructure)
  • Experience with databases such as MySQL and No-SQL (MongoDB or Big Query)
  • Preferable prior experience working with core data libraries in R or Python
  • Must have experience owning or leading a product development.
  • Desirable background in Marketing Analytics
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