Senior Solutions Architect

Entrust Resource Solutions
Manchester
10 months ago
Applications closed

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UK, Switzerland, Germany - Remote


*Scientific background is required - you will be working closely with Research and Development Teams to design solutions fordrug discoverydata, working with pharmaceutical companies. Please do not apply if you do not have a scientific background.*


I am pleased to be partnered with a fast growth, leading scientific data management business, who are recruiting for an EU based Solutions Architect.


They are a fast scaling business who have developed a commercially successful, cutting edge data and AI cloud based solution for the pharmaceuticals industry. After an amazing 2024, including the onboarding of several global partnerships and further enterprise clients, they are seeing more demand in the EU markets than ever, with pharmaceutical companies' demand for their platform growing.


As a Senior Solutions Architect, you will work closely with client R&D Teams in a pre-sales role, to create and demonstrate tailored solutions. You'll define solutions alongside data architects and engineers cross collaboratively. Detailed knowledge and experience of data architecture and client management in a scientific domain is essential, as you'll be working closely with client accounts.


  • You must come from a scientific background as a Bench Scientist or similar (EG Bioinformatician or Computational Scientist). Knowledge of scientific instrumentation such as HPLC/MS is required.
  • Experience integrating LIMS systems (or similar) is required (Benchling, Dotmatics etc.).


Key Requirements:

  • Scientific background and/or 3+ years professional experience in Life Sciences R&D
  • Deep understanding of Life Sciences lab information systems such as ELN, CDS, MS, NGS software, LIMS, Registration, LES, analytics
  • Deep understanding of drug discovery, development, and manufacturing processes
  • Proficient in enterprise sales within the pharmaceutical sector


Apply now for more information or email for a confidential chat!

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