yadpf
Optimization toolkit
An implementation of dynamic programming algorithms and value iteration methods for optimization problems in various fields
A generic implementation of dynamic programming algorithm and value iteration algorithm.
6 stars
1 watching
4 forks
Language: MATLAB
last commit: 3 months ago dynamic-optimizationdynamic-programmingoctaveoptimal-controloptimizationsvalue-iteration
Related projects:
Repository | Description | Stars |
---|---|---|
| A toolkit for using dynamic programming in optimization tasks with adaptive modeling. | 47 |
| A MATLAB toolbox for creating and solving optimization models | 495 |
| An optimization framework for biomechanics and control problems using multiple algorithms and libraries. | 94 |
| An evolutionary optimization library that provides multiple algorithms and interfaces to solve complex optimization problems using genetic and other optimization techniques. | 890 |
| An implementation of the Particle Swarm Optimization algorithm in MATLAB, providing a tool for optimizing complex problems | 86 |
| An optimizer that automatically tunes momentum and learning rate using local quadratic approximation. | 287 |
| A toolset for solving dynamic programming problems in macroeconomic models using MATLAB | 83 |
| A library for solving large-scale optimization problems with flexible and scalable vector and operator definitions | 55 |
| A collection of unconstrained optimization algorithms implemented in MATLAB | 67 |
| A comprehensive collection of optimization algorithms implemented in MATLAB | 185 |
| A Matlab toolbox providing a generic solver for proximal gradient descent in convex and non-convex optimization problems with various regularization terms. | 49 |
| Software toolkit for solving complex power grid optimization problems | 70 |
| A collection of Matlab scripts and resources for learning digital image processing concepts | 43 |
| Provides tools and methods for learning to specify, compute, and estimate dynamic discrete choice models using MATLAB. | 44 |
| A MATLAB implementation of an optimization algorithm for mobile edge computing in IoT applications | 80 |