Metadata-Version: 2.1
Name: matrepr
Version: 0.5.2
Summary: Sparse matrix string, HTML, and LaTeX rendering with Jupyter integration.
Author: Adam Lugowski
Project-URL: homepage, https://github.com/alugowski/matrepr
Project-URL: repository, https://github.com/alugowski/matrepr
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: BSD License
Classifier: Programming Language :: Python :: 3 :: Only
Classifier: Topic :: Software Development :: Libraries
Classifier: Topic :: Scientific/Engineering
Requires-Python: >=3.7
Description-Content-Type: text/markdown
Provides-Extra: test

[![tests](https://github.com/alugowski/matrepr/actions/workflows/tests.yml/badge.svg)](https://github.com/alugowski/matrepr/actions/workflows/tests.yml)
[![codecov](https://codecov.io/gh/alugowski/matrepr/graph/badge.svg?token=e9QEAd57gz)](https://codecov.io/gh/alugowski/matrepr)
[![PyPI version](https://badge.fury.io/py/matrepr.svg)](https://pypi.org/project/matrepr/)

# MatRepr

Sparse matrix string, HTML, and LaTeX representation with Jupyter integration. For Spy plots see [MatSpy](https://github.com/alugowski/matspy).

Supports:
* `scipy.sparse` sparse matrices and arrays like `csr_matrix` and `coo_array`.
* `python-graphblas` sparse matrices and vectors
* `list`, `tuple`

```shell
pip install matrepr
```

## Purpose

Turn this opaque string:
```
<1000x1000 sparse matrix of type '<class 'numpy.float64'>'
	with 212345 stored elements in COOrdinate format>
```

To one of these:

### String

```
1000×1000, 212345 'float64' elements, coo
        0        1        2        3        4        5     
    ┌                                                           ┐
  0 │                                     0.3876            ... │
  1 │ 0.5801   0.5085            0.8927                     ... │
  2 │                                                       ... │
  3 │                   0.7142                              ... │
  4 │                                              0.8631   ... │
  5 │ 0.7863   0.1298   0.9918    0.71                      ... │
  6 │                   0.9481                              ... │
  7 │                                                       ... │
  8 │                                     0.4023            ... │
    │   :        :        :        :        :        :      ... │
    └                                                           ┘
```

`mprint(A)`, `to_str()` for the string, or simply `A` if using monkey patching as below.

### HTML
![HTML](https://raw.githubusercontent.com/alugowski/matrepr/main/doc/images/html.png)

`mdisplay(A)`, or simply `A` if Jupyter integration enabled. Use `to_html()` for raw HTML string.

### LaTeX
![LaTeX](https://raw.githubusercontent.com/alugowski/matrepr/main/doc/images/latex.png)

`mdisplay(A, 'latex')`, or simply `A` if LaTeX version of Jupyter integration enabled. Use `to_latex()` for raw LaTeX string.


## Quick Start

```shell
pip install matrepr
```

```python
from matrepr import mdisplay
```

* `to_str(A)`: Format `A` as string.
* `to_html(A)`: Format `A` as an HTML table. Returns a string.
* `to_latex(A)`: Format `A` as a LaTeX matrix. Returns a string.
* `mprint(A)`: print `A` as a string to stdout.
* `mdisplay(A)`: Displays the output of `to_html`, `to_latex`, or `to_str` in Jupyter.

## Jupyter Integration

MatRepr can integrate with [Jupyter's formatter](https://ipython.readthedocs.io/en/stable/config/integrating.html)
to automatically format supported sparse matrix types. Simply import `matrepr.jupyter` to register MatRepr's formatter
with Jupyter.

```python
import matrepr.jupyter
```

![Jupyter Integration](https://raw.githubusercontent.com/alugowski/matrepr/main/doc/images/jupyter_register.png)

If you prefer LaTeX:
```python
import matrepr.jupyter_latex
```

## Monkey Patching `__repr__`

Unlike Jupyter, the Python REPL does not have a nice way to register a formatter.

We can monkey patch a `__repl__` method into supported matrix classes for a similar effect.

This is implemented in the [matrepr.patch](matrepr/patch) module. Simply import the patch you want:

* `import matrepr.patch.scipy`
* `import matrepr.patch.graphblas`

Example:

```
>>> a = scipy.sparse.random(4, 4, density=0.5)
>>> a
<4x4 sparse matrix of type '<class 'numpy.float64'>'
	with 8 stored elements in COOrdinate format>
>>> import matrepr.patch.scipy
>>> a
4×4, 8 'float64' elements, coo
        0        1        2        3
    ┌                                   ┐
  0 │ 0.4016                     0.4412 │
  1 │ 0.309    0.8055                   │
  2 │                   0.1982          │
  3 │ 0.7438   0.6938            0.2215 │
    └                                   ┘
```

## Arguments

All methods take the same arguments. Apart from the matrix itself:

* `title`: string label. If `True`, then a matrix description is auto generated that contains matrix shape, number and type of nonzeros, etc.
* `indices`: Whether to show matrix indices.
* `max_rows`, `max_rows`: size of table. Matrices larger than this are truncated with ellipses.
* `precision`: floating-point precision
* `num_after_dots`: How many rows/columns to show from the end of the matrix if the entire matrix does not fit.

### Overriding defaults
`matrepr.params` contains the default values for all arguments.

For example, to always disable the title, disable indices, and only show the top-left part of the matrix:

```python
matrepr.params.title = False
matrepr.params.indices = False
matrepr.params.num_after_dots = 0
```

## Edge Cases

MatRepr gracefully handles:
 * multiple elements with the same coordinates (i.e. duplicates)
 * nested matrices
 * complex values
 * string values (including multiline)
 * LaTeX scientific notation as $`\times 10^{power}`$

See [demo-edgecases notebook](https://nbviewer.org/github/alugowski/matrepr/blob/main/doc/demo-edgecases.ipynb) for more.

## How does it work?

Each package that MatRepr supports implements two classes:

* `Driver`: Declares what types are supported and supplies an adapter.
  * `get_supported_types`: This declares what types are supported, as strings to avoid unnecessary imports.
  * `adapt(A)`: Returns a `MatrixAdapter` for a matrix that this driver supports.
* `MatrixAdapter`. A common interface for extracting relevant matrix data. MatRepr supports three kinds:
  * `MatrixAdapterRow`: is able to efficiently read a selected row.
  * `MatrixAdapterCol`: is able to efficiently read a selected column.
  * `MatrixAdapterCoo`: is able to extract a portion of the matrix as tuples.

See [matrepr/adapters](matrepr/adapters) for details.

You may use `matspy.register_driver` to register a Driver for your own matrix class.
