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Forthcoming Conferences



There are a number of Conferences and meetings coming up in the next few weeks that might be of interest:


Firstly, it's not too late to register for the KNIME Spring Summit in Berlin 24th -26th February
More details here



The next SME Forum will be held on the Wellcome Genome Campus at Hinxton near Cambridge on 7th and 8th March.  Come and find out more about EMBL-EBI's  freely available data resources including ChEMBL and SureChEMBL. More details on the meeting and registration here



UKQSAR and Physchem Forum Joint Symposium
This is a two day meeting being held on 15th to 16th March at Stevenage in the UK.  There are a limited number of places still available and you must register (by 29th Feb) if you want to attend.  More details can be found here.
  


Last but not least consider going to the Spring ACS meeting in San Diego 13th to 17th March where there will be a couple of ChEMBL talks and if anyone would like to catch up with us please get in touch.  More details about the meeting here.

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