Senior Cheminformatician

Barrington James
London
11 months ago
Applications closed

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Job Description

I am supporting an incredibly well backed biotech company specializing in leveraging generative AI and quantum physics algorithms for rapid and innovative drug discovery.


Their mission is to design fast innovative drug candidates for dozens of critical diseases harshening artificial intelligence and machine learning.


They are currently looking for Senior Cheminformatics Scientists to join their team in London with a 3 days a week on site working in Central London.


In this role, you will play a key role in advancing and implementing cheminformatics techniques to drive drug discovery initiatives. Your work will directly influence the identification and refinement of groundbreaking small molecules.


Responsibilities:

  • Design and implementcomputational workflows forvirtual screening, molecular property prediction, and compound library design
  • Collaboratewith AI and medicinal chemistry teams to integratestate-of-the-art algorithmsinto drug discovery pipelines.
  • Enhance and maintaininternal chemoinformatics infrastructure, ensuring tools arerobust, scalable, and efficient.
  • Stay ahead of industry advancements, proactively adopting best practices to keep AQEMIA at thecutting edgeof c...

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