SHRIGENIX

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Job Details

Mobile App Developer

Shrigenix Technologies Pvt. Ltd.

Positions

2 Openings

Experience

6 months - 1.5 Years

Job Type

Full-time

Location

Remote

Job Description

We are looking for a Mobile App Developer with experience in Flutter or React Native to create beautiful and highly performant mobile applications for Android and iOS platforms.

Skills Required

FlutterReact NativeFirebase

Roles & Responsibilities

  • Design and build advanced applications for the mobile platform.
  • Collaborate with cross-functional teams to define and ship new features.
  • Unit-test code for robustness and reliability.
  • Fix bugs and improve application performance.

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