Electrical Flows and Laplacian Systems: A New Tool for Graph Algorithms
- Aleksander Madry | MIT
In recent years, the emergence of massive computing tasks that arise in context of web applications and networks has made the need for efficient graph algorithms more pressing than ever. In particular, it lead us to focus on reducing the running time of the algorithms to make them as fast as possible, even if it comes at a cost of reducing the quality of the returned solution. This motivates us to expand our algorithmic toolkit to include techniques capable of addressing this new challenge.
In this talk, I will describe how treating a graph as a network of resistors and relating the combinatorial properties of the graph to the electrical properties of the resulting circuit provides us with a powerful new set of tools for the above pursuit. As an illustration of their applicability, I will use these ideas to develop a new technique for approximating the maximum flow in capacitated, undirected graphs that yields the asymptotically fastest-known algorithm for this problem.
发言人详细信息
Aleksander is a PhD candidate in Computer Science at MIT, advised by Michel Goemans and Jonathan Kelner. His research focuses on algorithmic graph theory, i.e. design and analysis of very efficient (approximation) algorithms for fundamental graph problems. He also enjoys investigating topics in combinatorial optimization – especially the ones involving dealing with uncertainty.
-
-
Casey Anderson
-
-
接下来观看
-
-
-
-
VoluMe: Authentic 3D Video Calls from Live Gaussian Splat Prediction
- Antonio Criminisi,
- Charlie Hewitt,
- Marek Kowalski (HE/HIM)
-
GenAI for Supply Chain Management: Present and Future
- Georg Glantschnig,
- Beibin Li,
- Konstantina Mellou
-
Using Optimization and LLMs to Enhance Cloud Supply Chain Operations
- Beibin Li,
- Konstantina Mellou,
- Ishai Menache
-
-
-
-