Senior Project Manager, Quantitative (Remote)

M3 USA
London
2 months ago
Applications closed

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Job Description

About M3: A Japanese global leader in the provision of ground-breaking and innovative technological and research solutions to the healthcare industry. The M3 Group operates in the US, Asia, and Europe with over 5.8 million physician members globally via its physician websites which include mdlinx.com, m3.com, research.m3.com, Doctors.net.uk, medigate.net, and medlive.cn. M3 Inc. is a publicly traded company on the Tokyo Stock Exchange (jp:2413, NIKKEI 225) with subsidiaries in major markets including the US, UK, Japan, South Korea, and China, and in 2020 was ranked in Forbes’ Global 2000 list. The M3 Group provides services to healthcare and the life science industry. In addition to market research, these services include medical education, ethical drug promotion, clinical development, job recruitment, and clinic appointment services. M3 has offices in Japan, UK, France, Germany, Brazil, Sweden, China, USA, and South Korea, as well as India.

About the Business Division:

This role is part of QQFS, a Gothenburg based fieldwork agency and a wholly owned subsidiary of M3 Inc. QQFS is a leading provider of data-collection services for the pharmaceutical and healthcare industry. We specialize in conducting both qualitative and quantitative market research in The Nordics and Benelux regions, in addition to Austria and Switzerland.

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