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Congratulations to Ben Stauch PhD!


Ben Stauch in the group has just been examined on his these - 'Methods for the Investigation of Protein-Ligand Complexes'. This was a tour de force of many techniques - NMR, computational and X-ray crystallography. Ben will be around for a few more months, writing things up, and completing/starting some experimental work on Xe complex refinement and characterisation.

Congratulations to Ben from all the group!

In due course, the thesis will be downloadable from the EBI and EMBL websites, and I'll update this post when the files are there.

jpo

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