pyranda VS paramonte

Compare pyranda vs paramonte and see what are their differences.

pyranda

A Python driven, Fortran powered Finite Difference solver for arbitrary hyperbolic PDE systems. This is the mini-app for the Miranda code. (by LLNL)
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pyranda paramonte
2 4
57 244
- 8.2%
4.4 9.2
about 2 months ago 3 days ago
Fortran Fortran
GNU General Public License v3.0 or later GNU General Public License v3.0 or later
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
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pyranda

Posts with mentions or reviews of pyranda. We have used some of these posts to build our list of alternatives and similar projects.

paramonte

Posts with mentions or reviews of paramonte. We have used some of these posts to build our list of alternatives and similar projects.
  • Is fortran used at all anymore, or is it like driving around a model T car? I've got some programs written in fortran.
    1 project | /r/linuxmasterrace | 8 Jul 2022
    The ParaMonte Machine Learning library is an actively developed package in Fortran 2018 standard. The next release of the package contains about a million lines of Fortran (along with other languages). There are many more Fortran libraries, mostly in the Aerospace, Geology, Astronomy, Civil Engineering, and Petroleum industry and academia. Many electronic structure, nuclear, and plasma physics packages have been and are still developed in Fortran. Ask this question on the Fortran Community Discourse to get a more comprehensive list of current Fortran packages.
  • Do any of you do modeling with pymc3 or other Bayesian-oriented packages?
    1 project | /r/datascience | 15 Mar 2021
    Bayesian modeling is at the heart of scientific inference and uncertainty quantification. Whether the industry uses it or not, does not devalue this important approach. If they do not then it is likely that they have not yet realized its significance. But I suspect many do, in collaboration with Academia and they typically use their own specialized high-performance tools for such inferences since their models are far more complex than things that could be implemented via such high-level probabilistic programming languages as pymc3. Incidentally, our lab has developed (and is still developing) a High-Performance serial/parallel package for sampling and integration of Bayesian posteriors which is available from multiple programming languages including C/C++/Fortran/Python/MATLAB/...: https://github.com/cdslaborg/paramonte
  • Can I use a function or procedure as input of a subroutine in fortran?
    1 project | /r/fortran | 25 Feb 2021
    https://github.com/cdslaborg/paramonte/blob/e3087ef9c9b13c53c5298e4abea2bcb5043ab8af/src/kernel/Integration_mod.f90#L108
  • Fit data as you like
    1 project | /r/fortran | 21 Dec 2020
    Can you provide more information about your data? How many dimensions? 1D? Also, could you elaborate on what you mean by fitting a Gaussian to the time series data? Do you mean a Gaussian process? My lab has written a fast generic Bayesian optimizer and sampler library, in pure modern Fortran, that can not only find the best-fit parameters of your time-series model (whether polynomial, sin, ...), but can also put constraints on the uncertainties associated with the parameters. Writing a generic likelihood function for polynomial or other types of fits is quite easy. Once you write it, you simply compile and link it with this library to find the best-fit parameters of each model. The prebuilt ready-to-use versions of the library are also available on the GitHub release page.I would be happy to help you further with writing the polynomial/sin models and fitting them to your data with this library. But some further information is needed from your side to write the objective functions for different models (poly, sin, ...).

What are some alternatives?

When comparing pyranda and paramonte you can also consider the following projects:

hipfort - Fortran interfaces for ROCm libraries

rstan - RStan, the R interface to Stan

ftl - The Fortran Template Library

MultiBUGS - Multi-core BUGS for fast Bayesian inference of large hierarchical models

modAL - A modular active learning framework for Python

climt - The official home of climt, a Python based climate modelling toolkit.

Nerve - This is a basic implementation of a neural network for use in C and C++ programs. It is intended for use in applications that just happen to need a simple neural network and do not want to use needlessly complex neural network libraries.

pretty-print-confusion-matrix - Confusion Matrix in Python: plot a pretty confusion matrix (like Matlab) in python using seaborn and matplotlib

SciFortran - A library of fortran modules and routines for scientific calculations (*in a way* just like scipy for python)

ent.hpp - A header-only library that applies various tests to sequences of bytes stored in files and reports the results of those tests. The class is useful for evaluating pseudorandom number generators for encryption and statistical sampling applications, compression algorithms, and other applications where the information density of a file is of interest.

prima - PRIMA is a package for solving general nonlinear optimization problems without using derivatives. It provides the reference implementation for Powell's derivative-free optimization methods, i.e., COBYLA, UOBYQA, NEWUOA, BOBYQA, and LINCOA. PRIMA means Reference Implementation for Powell's methods with Modernization and Amelioration, P for Powell.