Scientific Patent & Business Analyst

Huntingdon
1 year ago
Applications closed

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Location: Huntingdon (PE29)
Duration: Permanent
Hours: 9am until 5:30pm (Monday to Friday)
Salary: £35,000 - £40,000
Job Reference: 35464

Polytec are looking for a Scientific Patent and Business Analyst for our client based just outside Huntingdon.

Responsibilities:

  • Analysis of competitor activities in fields of research of interest through developing comprehensive patent search strategies, analysing the output and using visualisation tools to communicate the analysis.
  • Obtain business intelligence through monitoring and analysis of competitor Intellectual Property (IP) developments and communicate findings as reports.
  • Maintain licenses for software search tools undertake primary liaison with providers
  • Ensure highest standards of compliance are maintained and supported

    Requirements:

  • PhD level qualification in Chemistry, Physics, or Biochemistry or degree plus relevant work experience in a research position
  • Interest in patents coupled with a desire to deliver business intelligence
  • Experience of performing reiterative searches to yield highly relevant but succinct datasets and interpreting and communicating the results
  • Curious, with a keen interest in becoming familiar with new technologies
  • Ability to quickly understand new technology areas

    The following would be beneficial:

  • Knowledge of patents (either gained through study or experience)
  • Experience in patent searching and analysis
  • Experience in finding and interpreting business intelligence
  • Experience with patent related databases

    Please contact us as soon as possible for more details or apply below

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