CD Recruitment | Technical Lead

CD Recruitment
Leeds
2 months ago
Applications closed

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Technical Lead – Voice AI Innovation


Location:Remote, UK-based


Company


Are you ready to shape the future of voice technology for a leading Conversational AI company?


This role will allow you to work closely with the senior leadership team to really have an impact with an industry-transforming product.


Backed by top-tier VCs and recognised globally for their AI-driven solutions, they are now trusted by industry giants across EMEA and North America


Role


  • Shape strategic vision and technical architecture of the voice solutions
  • Enhance automation processes and mentor the team
  • Scope and lead new voice integrations
  • Be a voice technology subject matter expert, including leading risk assessments and reviews


What Success Looks Like:Delivering robust and innovative voice technology solutions that meet stakeholder and customer needs. This should be done utilising your effective leadership skills.


Your Experience:


  • Strong experience with Python, SQL, and API integrations
  • Proven experience with voice Bot technologies
  • Previous success with managing and mentoring technical teams
  • You are passionate about working and progressing in the AI and Machine Learning landscape
  • Ideally you will have a relevant degree.


Ready to be part of the future of Conversational AI, if so reach out to Luke now!

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