Published in Henry Rzepa's Blog

Nowadays, data supporting most publications relating to the synthesis of organic compounds is more likely than not to be found in associated “supporting information “ rather than the (often page limited) article itself. For example, this article[cite]10.1021/jacs.6b13229[/cite] has an SI which is paginated at 907;

References

Colloid and Surface ChemistryBiochemistryGeneral ChemistryCatalysis

Strain-Release Heteroatom Functionalization: Development, Scope, and Stereospecificity

Published in Journal of the American Chemical Society
Authors Justin M. Lopchuk, Kasper Fjelbye, Yu Kawamata, Lara R. Malins, Chung-Mao Pan, Ryan Gianatassio, Jie Wang, Liher Prieto, James Bradow, Thomas A. Brandt, Michael R. Collins, Jeff Elleraas, Jason Ewanicki, William Farrell, Olugbeminiyi O. Fadeyi, Gary M. Gallego, James J. Mousseau, Robert Oliver, Neal W. Sach, Jason K. Smith, Jillian E. Spangler, Huichin Zhu, Jinjiang Zhu, Phil S. Baran
Library and Information SciencesStatistics, Probability and UncertaintyComputer Science ApplicationsEducationInformation Systems

The FAIR Guiding Principles for scientific data management and stewardship

AbstractThere is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A diverse set of stakeholders—representing academia, industry, funding agencies, and scholarly publishers—have come together to design and jointly endorse a concise and measureable set of principles that we refer to as the FAIR Data Principles. The intent is that these may act as a guideline for those wishing to enhance the reusability of their data holdings. Distinct from peer initiatives that focus on the human scholar, the FAIR Principles put specific emphasis on enhancing the ability of machines to automatically find and use the data, in addition to supporting its reuse by individuals. This Comment is the first formal publication of the FAIR Principles, and includes the rationale behind them, and some exemplar implementations in the community.