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The Discovery of an Amino C-H Arylation Reaction

March 7, 2012

The MacMillan group, at the University of Princeton USA, recently reported in Science, the “Discovery of an a-Amino C–H Arylation Reaction Using the Strategy of Accelerated Serendipity” with Chemspeed’s SYNTHESIZER technology. Learn from their success story! (DOI: 10.1126/science.1213920 or Science, 2011, 334, 6059, 1114 – 1117 About Princeton University Princeton University is a vibrant community of scholarship and learning that stands in the nation's service and in the service of all nations. Chartered in 1746, Princeton is the fourth-oldest college in the United States. Princeton is an independent, coeducational, nondenominational institution that provides undergraduate and graduate instruction in the humanities, social sciences, natural sciences and engineering. As a world-renowned research university, Princeton seeks to achieve the highest levels of distinction in the discovery and transmission of knowledge and understanding. At the same time, Princeton is distinctive among research universities in its commitment to undergraduate teaching. Additional information

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