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Android Developer

Android Developer

  • Location

    London

  • Sector:

    Technology & Digital

  • Job type:

    Contract

  • Salary:

    £400 - £450 per day

  • Contact:

    Jake Appleton

  • Email:

    jappleton@yolkrecruitment.com

  • Contact phone:

    2929 220078

  • Job ref:

    BH-26482

  • Published:

    about 1 month ago

  • Duration:

    6 Months

  • Expiry date:

    2021-10-23

  • Start date:

    2021-09-22

  • Consultant:

    ConsultantDrop

Native Android Developer - OUTSIDE IR35 - Up to £450 per day - 6 Months - Immediate Start - Fully Remote

We are looking for a Native Android Developer to work on an exciting product suite within national security. The contractor will be working on a flagship product for an innovative new start up! We are particularly looking for someone who is passionate about the product suite and who love new, Android based technologies.

You will largely be working on greenfield projects and have the awesome opportunity to contribute to major decisions on where the brand moves, from design all the way through to architecture, development and release!

What you will be working on:
  • You will be taking over ownership of their current mobile application offering (there will be more apps in the future!)
  • Be involved in the Architecture and Implementation of cross app synergy and whilst expanding feature sets and improving on existing ones
  • Write unit tests, optimize performance, ensure stability, scalability and code quality
  • Investigate new technologies - in particular, our client is looking upskill in Android Camera / ML capability
Successful candidate MUST have:
  • 5-7 years in mobile software development 
  • Strong experience with Java and/or Kotlin
  • Strong experience of React-native
  • Strong experience in C++
Desirable Skills:
  • Experience with Android camera control / customised UI animation
  • Experience in mobile games beneficial
  • WebRTC / WebSockets / Real time applications
  • Knowledge of on device processing using machine learning models