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maroba
findiff

Python package for numerical derivatives and partial differential equations in any number of dimensions.

90K 507 68
simpeg
discretize

Discretization tools for finite volume and inverse problems.

34K 198 36
wesselb
fdm

Estimate derivatives with finite differences

8K 17 3
stfc
psyclone

PSyclone is a source-to-source Fortran compiler designed to programmatically optimise, parallelise and instrument HPC applications via user-provided transformation scripts.

7K 132 33
devitocodes
devito

DSL and compiler framework for automated finite-differences and stencil computation

7K 693 256
fancompute
fdfdpy

Electromagnetic Finite Difference Frequency Domain Solver

969 66 20
ipselium
nsfds2

Navier-stokes solver for acoustics

763 1 1
INTERA-Inc
pyvista-gridder

Mesh generation using PyVista

437 27 2
gpavanb1
splitfxm

1D Finite-Difference/Volume with AMR and steady-state solver using Newton and Split-Newton with sparse Jacobian

366 6 0
gpavanb1
splitfdm

1D Finite-Difference with AMR and steady-state solver using Newton and Split-Newton

311 2 0
olivertso
pdepy

Finite-difference methods for solving initial and boundary value problems of some linear partial differential equations.

243 10 1
larsgeb
psvwave

Forward code for the P-SV wave equation on a staggered grid, with full waveform inversion interfaces. Finite difference approach according to stress-velocity formulation.

127 85 11
stefanmeili
fastfd

A library for building finite difference simulations

127 36 6
carlobortolan
quantrs

Python bindings for a tiny library for quantitative finance (powered by Rust)

89 19 5
vyastreb
reynoldsflow

Efficient finite-difference solver for the Reynolds equation in thin fluid films

78 7 0
draktr
findi-descent

FinDi: Finite Difference Gradient Descent can optimize any function, including the ones without analytic form, by employing finite difference numerical differentiation within a gradient descent algorithm.

65 0 0
ghbrown
taylor

Generic derivative objects (gradients, Jacobians, Hessians, and more) by finite differences

65 0 0
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