SimPEG.meta.MultiprocessingSumMetaSimulation#
- class SimPEG.meta.MultiprocessingSumMetaSimulation(simulations, mappings, n_processes=None)[source]#
Bases:
MultiprocessingMetaSimulation
,SumMetaSimulation
A multiprocessing version of
SumMetaSimulation
.See the documentation of
MultiprocessingMetaSimulation
for details on how to use multiprocessing for you operating system.- Parameters:
- simulations(
n_sim
)list
of
SimPEG.simulation.BaseSimulation
The list of unique simulations that each handle a piece of the problem.
- mappings(
n_sim
)list
of
SimPEG.maps.IdentityMap
The map for every simulation. Every map should accept the same length model, and output a model appropriate for its paired simulation.
- n_processes
optional
The number of processes to spawn internally. This will default to multiprocessing.cpu_count(). The number of processes spawned will be the minimum of this number and the number of simulations.
- simulations(
Attributes
A list of solver objects to clean when the model is updated
SimPEG
Counter
object to store iterations and run-times.A list of properties stored on this object to delete when the model is updated
The mappings paired to each simulation.
Mesh for the simulation.
True if a model is necessary
Path to directory where sensitivity file is stored.
The list of simulations.
Numerical solver used in the forward simulation.
Solver-specific parameters.
The survey for the simulation.
Verbose progress printout.
model
Methods
Jtvec
(m, v[, f])Compute the Jacobian transpose times a vector for the model provided.
Jtvec_approx
(m, v[, f])Approximation of the Jacobian transpose times a vector for the model provided.
Jvec
(m, v[, f])Compute the Jacobian times a vector for the model provided.
Jvec_approx
(m, v[, f])Approximation of the Jacobian times a vector for the model provided.
dpred
([m, f])Predicted data for the model provided.
fields
(m)Create fields for every simulation.
getJtJdiag
(m[, W, f])Return the squared sum of columns of the Jacobian.
make_synthetic_data
(m[, relative_error, ...])Make synthetic data for the model and Gaussian noise provided.
residual
(m, dobs[, f])The data residual.
join