Less Talking, More Learning - Avoiding Coordination in Parallel Machine Learning Algorithms
Offered By: Paul G. Allen School via YouTube
Course Description
Overview
Explore strategies for scaling machine learning algorithms on parallel computational platforms in this 58-minute colloquium talk by Dimitris Papailiopoulos from UT-Austin. Delve into the world of coordination-free parallel algorithms, where processors operate independently to maximize computation time. Examine the challenges of analyzing these algorithms, including race conditions and synchronization issues. Gain insights into the increasing demand for large-scale machine learning support in both scientific and industrial applications. Learn about the potential benefits and complexities of implementing parallel processing techniques to enhance the performance of machine learning algorithms.
Syllabus
UW CSE Colloquia: Dimitris Papailiopoulos (UT-Austin)
Taught by
Paul G. Allen School
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