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Applied mathematics / Caliper Corporation / Computing / Route assignment / Frank–Wolfe algorithm / Multi-core processor / Rate of convergence / Algorithm / Traffic simulation / GIS software / Mathematics
Date: 2013-02-25 08:39:05
Applied mathematics
Caliper Corporation
Computing
Route assignment
Frank–Wolfe algorithm
Multi-core processor
Rate of convergence
Algorithm
Traffic simulation
GIS software
Mathematics

What TransCAD Users Should Know about New Traffic Assignment Methods

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