UX Researcher

East Kilbride
11 months ago
Applications closed

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Are you a UX Researcher looking for a collaborative environment where you can grow and enhance your skills?

Would you like to work for a leader in their field as a key figure in developing personas and user stories?

You have the opportunity to join a well established and extremely talented team, all with great tenure in UX.  You will work collaboratively with Agile delivery teams to assist in product design, advocate for their users and help create and enhance both quantitative and qualitative data to compliment sprint cycles.

This is a great opportunity for someone who has made a start in their career in the field with research methods and possesses the ability to identify trends and insights that they would like to test and a higher level.

In return you will receive fantastic career development opportunities,  great perks and benefits and the autonomy to truly make impact in your role#

This is based from the companies HQ in East Kilbride with flexibility in hours and hybrid working patterns

Curious?  Contact me for more details on (phone number removed), (url removed) or message me directly on LinkedIn

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