Senior Pharmacometrician, PKPD, PopPK Modelling

Biopretium
Sheffield
1 year ago
Applications closed

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Job Title:Senior Pharmacometrician/Senior Modelling & Simulation Expert

Location:Remote anywhere in the UK


Biopretium have partnered with a small, well established consulting business who are looking to strengthen their team by appointing an experienced modeller with a PKPD and pop PK background to join their team.


The company is a a quantitative pharmacology and data science consultancy who support pharma and biotech companies in the development of new therapeutics. They work with businesses to support their development programs from discovery through to the clinic, accelerating the development timelines and de-risking drug development.


They are a well known brand with an established customer base of clients in the UK, Europe and North America ranging from small biotech through to Top 10 pharma companies.


This company have ambitious growth plans and are looking to scale the businesses and drive operational excellence. The primary area of focus will be the core Modelling & Simulation business as they continue expanding into new therapeutic areas, modalities and geographies. They have also recently launched an adjacent service arm in the biometrics space to expand the business into new areas.


  • We are seeking an experienced PhD with 3+ years of post PhD experience in industry, specifically working on PKPD modelling and pop PK.
  • Strong communication skills are critical here - this role will include working directly with clients to help scope out new projects and to communicate updates and summaries on existing projects.
  • An experienced modeller capable of helping mentor more junior modellers


To discuss this opportunity further, please contact Chris Gibson at Biopretium -

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