Market Research - Data Analyst

MrWeb Ltd.
London
1 month ago
Applications closed

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Market Research - Data Analyst London GBP 35-42,000 plus benefits
The Company

Independently-owned, full service agency with an amazing client portfolio of some of the world's best known brands; and with a strong reputation as a great place to work.


The Opportunity

Looking for a Data Analyst to support on more complex quant projects, both ad hoc and tracking. This role is very much integral to broader business and you would contribute on more analytically-focused projects from commission to completion.


About you

The ideal person will love working with data and have prior experience in a market research agency environment. You'll have knowledge of programming languages such as 'R' as well as expertise with SPSS, and ideally some exposure to techniques such as regression and segmentation.



  • Are you a UK citizen? If 'no' please confirm your visa status.
  • We are committed to creating inclusive and diverse workplaces. We encourage applications from people of colour, LGBTQIA2+ communities, veterans, parents, and individuals with disabilities, neurodiversity, impairment, and mental or physical health conditions. Your CV will be considered purely on the potential that you'll bring to the role. Please let us know if there are any adjustments needed to make your interview/screening process as seamless and comfortable as possible.
  • Established in 2008, we are one of the UK's most successful and independent recruitment consultancies with industry recognition, becoming the first choice for permanent and interim Market Research and Insight recruitment for agency and client-side companies. Hasson Associates comprises seven dedicated experts with comprehensive knowledge, experience, and networks within market research, insight, and analysis. Providing a bespoke service to both clients and candidates, we pride ourselves on being a unique boutique consultancy focusing on service and delivery rather than volume.

Contact

Who to contact: Please send your CV to Catherine Vaughan or call her on . Please say you found the job advertised on MrWeb!


IMPORTANT -
PLEASE INCLUDE YOUR NAME AND EITHER YOUR RETURN E-MAIL ADDRESS OR TELEPHONE NUMBER IN THE MESSAGE. Please say that you found the vacancy on MrWeb! Thanks for your interest.


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