Senior User Experience Designer

Strativ Group
Bristol
1 month ago
Applications closed

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We're seeking a Senior UX Designer to join the innovative team, a leading Cyber Asset Attack Surface Management (CAASM) platform. This solution provides unparalleled visibility and security across the entire cyber asset universe, empowering organizations to discover, monitor, and act on changes in their digital environments.


As our Senior UX Designer, you'll:

  • Design intuitive user journeys for complex data platforms
  • Optimize existing features and create new ones that delight users
  • Conduct user research and testing to refine the vendor experience
  • Collaborate with product management and engineering teams
  • Simplify complex concepts through innovative UI/UX design


Ideal candidates have:

  • Experience designing for big data or complex data platforms
  • Strong UI skills for making large datasets actionable
  • Data-driven approach to design decisions
  • Ability to balance in-depth feature design with rapid prototyping


Bonus skills:

  • Component library maintenance
  • AI integration into user interfaces


Also offering competitive benefits, including flexible PTO, wellness programs, 401(k), and more.

Join us in shaping the future of cyber asset management!

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