ParaMonte C++ 2.0.0
Parallel Monte Carlo and Machine Learning Library
See the latest version documentation.
pm_sampling

This header file contains function interfaces to the ParaMonte library Monte Carlo samplers and integrators. More...

Collaboration diagram for pm_sampling:

Modules

 runParaDRAM
 Generate and return a non-zero value (1) if the procedure fails to fully accomplish the task of generating a Monte Carlo sample of the specified input mathematical objective function, otherwise, return 0.
 

Detailed Description

This header file contains function interfaces to the ParaMonte library Monte Carlo samplers and integrators.


Final Remarks


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Author:
Amir Shahmoradi, Monday 00:01 AM, January 1, 2018, Institute for Computational Engineering and Sciences, University of Texas Austin