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ChEMBLdb schema walkthrough - 3pm GMT, Tuesday 30th March 2010

We will host another web-meeting walkthrough of the chembldb core database schema on Tuesday 30th March at 3pm GMT. If you are interested in joining, please email us on this link for dial-in details. We will be using the webhuddle software for the demo so it may be worth trying it out on your machine beforehand.

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