Parallel Colt
| Original author(s) | Piotr Wendykier | 
|---|---|
| Stable release | 0.9.4
   /    March 21, 2010 | 
| Operating system | Cross-platform | 
| Type | Library | 
| License | Various | 
| Website | sites | 
Parallel Colt is a set of multithreaded version of Colt. It is a collection of open Source libraries for High Performance Scientific and Technical Computing written in Java. It contains all the original capabilities of Colt and adds several new ones, with a focus on multi-threaded algorithms.
Capabilities
Parallel Colt has all the capabilities of the original Colt library, with the following additions.[1]
- Multithreading
- Specialized Matrix data structures
-  JPlasma
- Java port of PLASMA (Parallel Linear Algebra for Scalable Multi-core Architectures).
 
-  CSparseJ
- CSparseJ is a Java port of CSparse (a Concise Sparse matrix package).
 
-  Netlib-java
- Netlib is a collection of mission-critical software components for linear algebra systems (i.e. working with vectors or matrices).
 
-  Solvers and preconditioners
- Mostly adapted from Matrix Toolkit Java
 
-  Nonlinear Optimization
- Java translations of the 1-dimensional minimization routine from the MINPACK
 
- Matrix reader/writer
- All classes that use floating point arithmetic are implemented in single and double precision.
- Parallel quicksort algorithm
Usage Example
Example of Singular Value Decomposition (SVD):
DenseDoubleAlgebra alg = new DenseDoubleAlgebra();
DenseDoubleSingularValueDecomposition s = alg.svd(matA);
DoubleMatrix2D U = s.getU();
DoubleMatrix2D S = s.getS();
DoubleMatrix2D V = s.getV();
Example of matrix multiplication:
DenseDoubleAlgebra alg = new DenseDoubleAlgebra();
DoubleMatrix2D result = alg.mult(matA,matB);
References
- ↑  Official site "Parallel Colt Project Page" Check |url=value (help). Parallel Colt. Retrieved June 15, 2013.
This article is issued from Wikipedia - version of the 6/8/2016. The text is available under the Creative Commons Attribution/Share Alike but additional terms may apply for the media files.