Senior Full Stack Developer

X4 Technology
Buckinghamshire
1 year ago
Applications closed

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Job Opportunity: Permanent Senior Software Developer (Full Stack)

Location:Remote (required on site once a month in Buckinghamshire)

Job Type:Full time, Permanent

Salary:Up to £65,000 + benefits

Start Date:ASAP

Security Clearance:Live and active Security clearance desirable or at least eligibility to obtain it


Full Stack Developer Key Responsibilities:

  • Working as part of agile development sprints.
  • Developing existing solutions & already existing POC concept solutions
  • Advising and updating team members of progress of the project, including achievements met and blockers
  • Advising on new solutions based on your previous experience and industry knowledge.
  • Leading and mentoring others within the project/team (with proven experience)


Full Stack Developer Key Skills Required:

  • Eligibility for Security Clearance
  • Proficiency in Python & Flask
  • Machine Learning/AI knowledge
  • Proven experience of working with DVB standards and infrastructures
  • Proven experience of designing System/Technical architecture
  • streaming of media over IP experience
  • Experience of Docker


Desirable:

  • Understanding of IP Networks inc LTE experience
  • Video and audio streaming experience


Apply directly to learn more about this exciting opportunity or connect with me on LinkedIn to stay updated on other engaging roles in this space.

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