Skip to main content

Structured matrices

Project description

Structured Matrices

CI Coverage Status Latest Docs Code style: black

Structured matrices

Requirements and Installation

See the instructions here. Then simply

pip install backends-matrix

Example

>>> import lab as B

>>> from matrix import Diagonal

>>> d = Diagonal(B.ones(3))

>>> d
<diagonal matrix: shape=3x3, data type=float64,
 diag=[1. 1. 1.]>
  
>>> 2 * d
<diagonal matrix: shape=3x3, data type=float64
 diag=[2. 2. 2.]>

>>> 2 * d + 1
<Woodbury matrix: shape=3x3, dtype=int64
 diag=<diagonal matrix: shape=3x3, dtype=float64
       diag=[2. 2. 2.]>
 lr=<low-rank matrix: shape=3x3, dtype=int64, rank=1
     left=[[1]
           [1]
           [1]]
     middle=<diagonal matrix: shape=1x1, dtype=int64
             diag=[1]>>>
  
>>> B.inv(2 * d + 1)
<Woodbury matrix: shape=3x3, dtype=float64
 diag=<diagonal matrix: shape=3x3, dtype=float64
       diag=[0.5 0.5 0.5]>
 lr=<low-rank matrix: shape=3x3, dtype=float64, rank=1
     left=<dense matrix: shape=3x1, dtype=float64
           mat=[[0.5]
                [0.5]
                [0.5]]>
     middle=<dense matrix: shape=1x1, dtype=float64
             mat=[[-0.4]]>
     right=<dense matrix: shape=3x1, dtype=float64
            mat=[[0.5]
                 [0.5]
                 [0.5]]>>>

>>> B.inv(B.inv(2 * d + 1))
<Woodbury matrix: shape=3x3, dtype=float64
 diag=<diagonal matrix: shape=3x3, dtype=float64
       diag=[2. 2. 2.]>
 lr=<low-rank matrix: shape=3x3, dtype=float64, rank=1
     left=<dense matrix: shape=3x1, dtype=float64
           mat=[[1.]
                [1.]
                [1.]]>
     middle=<dense matrix: shape=1x1, dtype=float64
             mat=[[1.]]>
     right=<dense matrix: shape=3x1, dtype=float64
            mat=[[1.]
                 [1.]
                 [1.]]>>>

>>> B.inv(B.inv(2 * d + 1)) + 3
<Woodbury matrix: shape=3x3, dtype=float64
 diag=<diagonal matrix: shape=3x3, dtype=float64
       diag=[2. 2. 2.]>
 lr=<low-rank matrix: shape=3x3, dtype=float64, rank=1
     left=[[1.]
           [1.]
           [1.]]
     middle=[[4.]]
     right=[[1.]
            [1.]
            [1.]]>>

>>> B.kron(d, 2 * d)
<Kronecker product: shape=9x9, dtype=float64
 left=<diagonal matrix: shape=3x3, dtype=float64
       diag=[1. 1. 1.]>
 right=<diagonal matrix: shape=3x3, dtype=float64
        diag=[2. 2. 2.]>>

>>> B.inv(B.kron(d, 2 * d))
<Kronecker product: shape=9x9, dtype=float64
 left=<diagonal matrix: shape=3x3, dtype=float64
       diag=[1. 1. 1.]>
 right=<diagonal matrix: shape=3x3, dtype=float64
        diag=[0.5 0.5 0.5]>>

Matrix Types

All matrix types are subclasses of AbstractMatrix.

The following base types are provided:

Zero
Dense
Diagonal
Constant
LowerTriangular
UpperTriangular

The following composite types are provided:

LowRank
Woodbury
Kronecker
TiledBlocks

Functions

The following functions are added to LAB. They can be accessed with B.<function> where import lab as B.

dense(a)
fill_diag(a, diag_len)
block(*rows)

matmul_diag(a, b, tr_a=False, tr_b=False)

pd_inv(a)
schur(a)
pd_schur(a)
iqf(a, b, c)
iqf_diag(a, b, c)

ratio(a, c)
root(a)

sample(a, num=1)

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

backends-matrix-1.1.3.tar.gz (46.0 kB view details)

Uploaded Source

File details

Details for the file backends-matrix-1.1.3.tar.gz.

File metadata

  • Download URL: backends-matrix-1.1.3.tar.gz
  • Upload date:
  • Size: 46.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.4.1 importlib_metadata/4.5.0 pkginfo/1.7.0 requests/2.25.1 requests-toolbelt/0.9.1 tqdm/4.61.1 CPython/3.6.13

File hashes

Hashes for backends-matrix-1.1.3.tar.gz
Algorithm Hash digest
SHA256 ec12cead49a918ff1915ffb4a62d1a0d32048bebc8f65d50dea031546de4410d
MD5 da4ec5bd18718406f7a4ad7d5907aeab
BLAKE2b-256 047af9ed0e987c7076c275c35b144a85e74227d23d61c52dd8cca187cf5de237

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page