bundles / scipy 1.17.1 / scipy / sparse
module
scipy.sparse
source: /scipy/sparse/__init__.py :0
Submodules
Summary
No Docstrings
Additional content
Sparse arrays (scipy.sparse)
SciPy 2-D sparse array package for numeric data.
Submodules
.. autosummary:: csgraph - Compressed sparse graph routines linalg - Sparse linear algebra routines
Sparse array classes
.. autosummary:: :toctree:generated/ bsr_array - Block Sparse Row array coo_array - A sparse array in COOrdinate format csc_array - Compressed Sparse Column array csr_array - Compressed Sparse Row array dia_array - Sparse array with DIAgonal storage dok_array - Dictionary Of Keys based sparse array lil_array - Row-based list of lists sparse array sparray - Sparse array base class
Building sparse arrays
.. autosummary:: :toctree:generated/ diags_array - Return a sparse array from diagonals eye_array - Sparse MxN array whose k-th diagonal is all ones random_array - Random values in a given shape array block_array - Build a sparse array from sub-blocks
Combining arrays
.. autosummary:: :toctree:generated/ kron - Kronecker product of two sparse arrays kronsum - Kronecker sum of sparse arrays block_diag - Build a block diagonal sparse array tril - Lower triangular portion of a sparse array triu - Upper triangular portion of a sparse array hstack - Stack sparse arrays horizontally (column wise) vstack - Stack sparse arrays vertically (row wise) swapaxes - swap two axes of a sparse array expand_dims - add a new (trivial) axis to a sparse array permute_dims - reorder the axes of a sparse array
Sparse tools
.. autosummary:: :toctree:generated/ save_npz - Save a sparse array to a file using ``.npz`` format. load_npz - Load a sparse array from a file using ``.npz`` format. find - Return the indices and values of the nonzero elements get_index_dtype - determine a good dtype for index arrays. safely_cast_index_arrays - cast index array dtype or raise if shape too big
Identifying sparse arrays
.. autosummary:: :toctree:generated/ issparse - Check if the argument is a sparse object (array or matrix).
Sparse matrix classes
.. autosummary:: :toctree:generated/ bsr_matrix - Block Sparse Row matrix coo_matrix - A sparse matrix in COOrdinate format csc_matrix - Compressed Sparse Column matrix csr_matrix - Compressed Sparse Row matrix dia_matrix - Sparse matrix with DIAgonal storage dok_matrix - Dictionary Of Keys based sparse matrix lil_matrix - Row-based list of lists sparse matrix spmatrix - Sparse matrix base class
Building sparse matrices
.. autosummary:: :toctree:generated/ eye - Sparse MxN matrix whose k-th diagonal is all ones identity - Identity matrix in sparse matrix format diags - Return a sparse matrix from diagonals spdiags - Return a sparse matrix from diagonals bmat - Build a sparse matrix from sparse sub-blocks random - Random values in a given shape matrix rand - Random values in a given shape matrix (old interface)
Combining matrices use the same functions as for combining-arrays.
Identifying sparse matrices
.. autosummary:: :toctree:generated/ issparse isspmatrix isspmatrix_csc isspmatrix_csr isspmatrix_bsr isspmatrix_lil isspmatrix_dok isspmatrix_coo isspmatrix_dia
Warnings
.. autosummary:: :toctree:generated/ SparseEfficiencyWarning SparseWarning
Usage information
There are seven available sparse array types:
csc_array: Compressed Sparse Column format
csr_array: Compressed Sparse Row format
bsr_array: Block Sparse Row format
lil_array: List of Lists format
dok_array: Dictionary of Keys format
coo_array: COOrdinate format (aka IJV, triplet format)
dia_array: DIAgonal format
To construct an array efficiently, use any of coo_array, dok_array or lil_array. dok_array and lil_array support basic slicing and fancy indexing with a similar syntax to NumPy arrays. The COO format does not support indexing (yet) but can also be used to efficiently construct arrays using coord and value info.
Despite their similarity to NumPy arrays, it is strongly discouraged to use NumPy functions directly on these arrays because NumPy typically treats them as generic Python objects rather than arrays, leading to unexpected (and incorrect) results. If you do want to apply a NumPy function to these arrays, first check if SciPy has its own implementation for the given sparse array class, or convert the sparse array to
a NumPy array (e.g., using the toarray method of the class) before applying the method.
All conversions among the CSR, CSC, and COO formats are efficient, linear-time operations.
To perform manipulations such as multiplication or inversion, first convert the array to either CSC or CSR format. The lil_array format is row-based, so conversion to CSR is efficient, whereas conversion to CSC is less so.
Matrix vector product
To do a vector product between a 2D sparse array and a vector use the matmul operator (i.e., @) which performs a dot product (like the dot method):
>>> import numpy as np >>> from scipy.sparse import csr_array >>> A = csr_array([[1, 2, 0], [0, 0, 3], [4, 0, 5]]) >>> v = np.array([1, 0, -1]) >>> A @ v array([ 1, -3, -1], dtype=int64)
The CSR format is especially suitable for fast matrix vector products.
Example 1
Construct a 1000x1000 lil_array and add some values to it:
>>> from scipy.sparse import lil_array >>> from scipy.sparse.linalg import spsolve >>> from numpy.linalg import solve, norm >>> from numpy.random import rand
>>> A = lil_array((1000, 1000)) >>> A[0, :100] = rand(100) >>> A.setdiag(rand(1000))
Now convert it to CSR format and solve A x = b for x:
>>> A = A.tocsr() >>> b = rand(1000) >>> x = spsolve(A, b)
Convert it to a dense array and solve, and check that the result is the same:
>>> x_ = solve(A.toarray(), b)Now we can compute norm of the error with:
>>> err = norm(x-x_) >>> err < 1e-9 True
It should be small :)
Example 2
Construct an array in COO format:
>>> from scipy import sparse >>> from numpy import array >>> I = array([0,3,1,0]) >>> J = array([0,3,1,2]) >>> V = array([4,5,7,9]) >>> A = sparse.coo_array((V,(I,J)),shape=(4,4))
Notice that the indices do not need to be sorted.
Duplicate (i,j) entries are summed when converting to CSR or CSC.
>>> I = array([0,0,1,3,1,0,0]) >>> J = array([0,2,1,3,1,0,0]) >>> V = array([1,1,1,1,1,1,1]) >>> B = sparse.coo_array((V,(I,J)),shape=(4,4)).tocsr()
This is useful for constructing finite-element stiffness and mass matrices.
Further details
CSR column indices are not necessarily sorted. Likewise for CSC row indices. Use the .sorted_indices() and .sort_indices() methods when sorted indices are required (e.g., when passing data to other libraries).
Aliases
-
scipy.sparse