Senior UX Designer

Burns Sheehan
London
1 year ago
Applications closed

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Job Description

Senior UX Designer | Series A Start up | AI LegalTech

Role:Senior UX Designer

Salary:£85,000

Location:London Office but flexible with remote working

We are partnered with a fast-growing LegalTech whose innovative platform utilises Artificial Intelligence to improve accessibility and efficiency for legal professionals all across the world!

Having recently obtained their Series A, they are now looking for a Senior UX Designer to join their team. You will closely work with the Product Managers and Engineers to transform complex data into visually excellent user experiences.

Who are we looking for?

  • Exposure to AI of complex data-driven products
  • An expert in User Experience design
  • A familiarity with UI design practices and visual design
  • Problem-solving mindset

What you will be working on day to day?

  • Improve design based on continuous user feedback, data analysis and business goals
  • Designing AI interfaces which make complex data understandable for their users
  • Establish design guidelines and be at the forefront of design within this business!

If you think this sounds like you, and would like to learn more about the company and the role please get in touch!

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