Fundamentals of Stringology II: Probability and Statistics for Sequence Alignment

Published on ● Video Link: https://www.youtube.com/watch?v=0MGtlcNMLs0



Duration: 51:41
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Mike Waterman, University of Southern California
Algorithmic Challenges in Genomics Boot Camp
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Simons Institute
UC Berkeley
computer science
theory of computing
Algorithmic Challenges in Genomics
Mike Waterman