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The ChEMBL Roadshow: Part II



After the very successful US East Coast ChEMBL Roadshow, we (Anne and George) will be on the road once again next week to spread the word on ChEMBL, myChEMBL and SureChEMBL. This time we will visit the US West Coast and specifically these venues:

  • Tuesday 27th Jan: University of New Mexico, Albuquerque.
  • Wednesday 28th: MolSoft/UCSD/Scripps, San Diego. See also here.
  • Thursday 29th: IBM Research Centre, San Jose.
  • Friday 30th: UCSF, San Francisco.


If you are nearby and would like to attend or meet us for a chat, please get in touch. 

We are grateful to SMSdrug.net for funding. 


George & Anne


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