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Job opportunities in the ChEMBL Group



We have two exciting opportunities for scientists to come and work with the ChEMBL team at the Wellcome Genome Campus in Hinxton near Cambridge.

If you've used ChEMBL in the past perhaps now is the chance to come and shape its future.  Even if you haven't this is a great place to work and in both positions you will collaborate with people developing the ChEMBL resources but also our collaborators here at Hinxton and around Europe.  These include the Open Targets project and EU funded toxicology projects such as EU-ToxRisk and eTRANSAFE.

We are looking for:

(1) A talented chemoinformatician to work on methods for the annotation, searching and visualization of toxicologically relevant data. You will develop pipelines and tools to enable the better prediction and assessment of the toxicity of pharmaceutical and environmental chemicals.

Closing Date 19th May 2019
More details here

(2) A protein computational scientist to  develop, assess and validate methods for quantifying target tractability with the goal of incorporating such methodologies into the Open Targets informatics platform www.targetvalidation.org.  This exciting work will focus on developing new methods based on protein structure and sequence.

Closing Date 26th May 2019
More details here

Don't delay, apply today.

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