peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/sparse
/__init__.py
""" | |
===================================== | |
Sparse matrices (:mod:`scipy.sparse`) | |
===================================== | |
.. currentmodule:: scipy.sparse | |
.. toctree:: | |
:hidden: | |
sparse.csgraph | |
sparse.linalg | |
SciPy 2-D sparse array package for numeric data. | |
.. note:: | |
This package is switching to an array interface, compatible with | |
NumPy arrays, from the older matrix interface. We recommend that | |
you use the array objects (`bsr_array`, `coo_array`, etc.) for | |
all new work. | |
When using the array interface, please note that: | |
- ``x * y`` no longer performs matrix multiplication, but | |
element-wise multiplication (just like with NumPy arrays). To | |
make code work with both arrays and matrices, use ``x @ y`` for | |
matrix multiplication. | |
- Operations such as `sum`, that used to produce dense matrices, now | |
produce arrays, whose multiplication behavior differs similarly. | |
- Sparse arrays currently must be two-dimensional. This also means | |
that all *slicing* operations on these objects must produce | |
two-dimensional results, or they will result in an error. This | |
will be addressed in a future version. | |
The construction utilities (`eye`, `kron`, `random`, `diags`, etc.) | |
have not yet been ported, but their results can be wrapped into arrays:: | |
A = csr_array(eye(3)) | |
Contents | |
======== | |
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 | |
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 | |
Functions | |
--------- | |
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 | |
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) | |
Building larger structures from smaller (array or matrix) | |
.. autosummary:: | |
:toctree: generated/ | |
kron - kronecker product of two sparse matrices | |
kronsum - kronecker sum of sparse matrices | |
block_diag - Build a block diagonal sparse matrix | |
tril - Lower triangular portion of a matrix in sparse format | |
triu - Upper triangular portion of a matrix in sparse format | |
hstack - Stack sparse matrices horizontally (column wise) | |
vstack - Stack sparse matrices vertically (row wise) | |
Save and load sparse matrices: | |
.. autosummary:: | |
:toctree: generated/ | |
save_npz - Save a sparse matrix/array to a file using ``.npz`` format. | |
load_npz - Load a sparse matrix/array from a file using ``.npz`` format. | |
Sparse tools: | |
.. autosummary:: | |
:toctree: generated/ | |
find | |
Identifying sparse arrays: | |
- use `isinstance(A, sp.sparse.sparray)` to check whether an array or matrix. | |
- use `A.format == 'csr'` to check the sparse format | |
Identifying sparse matrices: | |
.. autosummary:: | |
:toctree: generated/ | |
issparse | |
isspmatrix | |
isspmatrix_csc | |
isspmatrix_csr | |
isspmatrix_bsr | |
isspmatrix_lil | |
isspmatrix_dok | |
isspmatrix_coo | |
isspmatrix_dia | |
Submodules | |
---------- | |
.. autosummary:: | |
csgraph - Compressed sparse graph routines | |
linalg - sparse linear algebra routines | |
Exceptions | |
---------- | |
.. autosummary:: | |
:toctree: generated/ | |
SparseEfficiencyWarning | |
SparseWarning | |
Usage information | |
================= | |
There are seven available sparse array types: | |
1. `csc_array`: Compressed Sparse Column format | |
2. `csr_array`: Compressed Sparse Row format | |
3. `bsr_array`: Block Sparse Row format | |
4. `lil_array`: List of Lists format | |
5. `dok_array`: Dictionary of Keys format | |
6. `coo_array`: COOrdinate format (aka IJV, triplet format) | |
7. `dia_array`: DIAgonal format | |
To construct an array efficiently, use either `dok_array` or `lil_array`. | |
The `lil_array` class supports basic slicing and fancy indexing with a | |
similar syntax to NumPy arrays. As illustrated below, the COO format | |
may also be used to efficiently construct arrays. Despite their | |
similarity to NumPy arrays, it is **strongly discouraged** to use NumPy | |
functions directly on these arrays because NumPy may not properly convert | |
them for computations, 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) first before applying the method. | |
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. | |
All conversions among the CSR, CSC, and COO formats are efficient, | |
linear-time operations. | |
Matrix vector product | |
--------------------- | |
To do a vector product between a sparse array and a vector simply use | |
the array ``dot`` method, as described in its docstring: | |
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.dot(v) | |
array([ 1, -3, -1], dtype=int64) | |
.. warning:: As of NumPy 1.7, ``np.dot`` is not aware of sparse arrays, | |
therefore using it will result on unexpected results or errors. | |
The corresponding dense array should be obtained first instead: | |
>>> np.dot(A.toarray(), v) | |
array([ 1, -3, -1], dtype=int64) | |
but then all the performance advantages would be lost. | |
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[1, 100:200] = A[0, :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-10 | |
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). | |
""" | |
# Original code by Travis Oliphant. | |
# Modified and extended by Ed Schofield, Robert Cimrman, | |
# Nathan Bell, and Jake Vanderplas. | |
import warnings as _warnings | |
from ._base import * | |
from ._csr import * | |
from ._csc import * | |
from ._lil import * | |
from ._dok import * | |
from ._coo import * | |
from ._dia import * | |
from ._bsr import * | |
from ._construct import * | |
from ._extract import * | |
from ._matrix import spmatrix | |
from ._matrix_io import * | |
# For backward compatibility with v0.19. | |
from . import csgraph | |
# Deprecated namespaces, to be removed in v2.0.0 | |
from . import ( | |
base, bsr, compressed, construct, coo, csc, csr, data, dia, dok, extract, | |
lil, sparsetools, sputils | |
) | |
__all__ = [s for s in dir() if not s.startswith('_')] | |
# Filter PendingDeprecationWarning for np.matrix introduced with numpy 1.15 | |
msg = 'the matrix subclass is not the recommended way' | |
_warnings.filterwarnings('ignore', message=msg) | |
from scipy._lib._testutils import PytestTester | |
test = PytestTester(__name__) | |
del PytestTester | |