simpeg.meta.MultiprocessingMetaSimulation.Jvec#
- MultiprocessingMetaSimulation.Jvec(m, v, f=None)[source]#
- Compute the Jacobian times a vector for the model provided. - The Jacobian defines the derivative of the predicted data vector with respect to the model parameters. For a data vector \(\mathbf{d}\) predicted for a set of model parameters \(\mathbf{m}\), the Jacobian is an (n_data, n_param) matrix whose elements are given by: \[J_{ij} = \frac{\partial d_i}{\partial m_j}\]- For a model m and vector v, the - Jvecmethod computes the matrix-vector product\[\mathbf{u} = \mathbf{J \, v}\]- Parameters:
- m(n_param, )numpy.ndarray
- The model parameters. 
- v(n_param, )numpy.ndarray
- Vector we are multiplying. 
- fsimpeg.field.Fields,optional
- If provided, fields will not need to be recomputed for the current model to compute Jvec. 
 
- m(
- Returns:
- (n_data, )numpy.ndarray
- The Jacobian times a vector for the model and vector provided. 
 
- (
 
