Graph-based Decomposition Approaches through Plasmo.jl
Offered By: The Julia Programming Language via YouTube
Course Description
Overview
Explore graph-based decomposition approaches using Plasmo.jl in this 12-minute conference talk from The Julia Programming Language. Learn how Plasmo.jl extends JuMP.jl to build structured optimization problems using graph partitioning for variables, constraints, and objective functions. Discover how to leverage the software's capabilities to create hierarchical problem structures that can be exploited by decomposition schemes like Dual Dynamic Programming. Examine the impact of modeling decisions, such as node count and aggregation level, on applying decomposition techniques. Gain insights into practical applications of graph-based decomposition in power systems, demonstrating the potential of Plasmo.jl for tackling complex optimization challenges.
Syllabus
Graph-based Decomposition Approaches through Plasmo.jl
Taught by
The Julia Programming Language
Related Courses
Julia Scientific ProgrammingUniversity of Cape Town via Coursera Julia for Beginners in Data Science
Coursera Project Network via Coursera Linear Regression and Multiple Linear Regression in Julia
Coursera Project Network via Coursera Decision Tree and Random Forest Classification using Julia
Coursera Project Network via Coursera Logistic Regression for Classification using Julia
Coursera Project Network via Coursera