Daniel Acuña is an Associate Professor in the Department of Computer Science at the University of Colorado at Boulder. He leads theÌý. He works in science of science, a subfield of computational social science, and A.I. for science. He writes papers and builds web-based software tools to accelerate knowledge discovery. He is looking for students to join his lab.
Research
​His current research aims to understand historical relationships, mechanismsÌýand optimization opportunities of knowledge production. Daniel harnesses vast datasets about publications and citations and applies Machine Learning and A.I. to uncover rules that make publication, collaborationÌýand funding decisions more successful. Recently, he has been interested in biases in artificial intelligence and developing methods for detecting them. In addition, he has created tools to improve literature search, peer reviewÌýand detect scientific fraud. He has been funded by NSF, DDHS, Sloan Foundation, and DARPA through the SCORE project, and his work has been featured in Nature News, Nature Podcast, The Chronicle of Higher Education, NPRÌýand the Scientist.
Ìý