The package provides the mat4py module with the functions loadmat
and
savemat
that allows for reading resp. writing data in the Matlab (TM)
MAT-file format.
Matlab data is loaded into basic Python data types. Matrices are stored row-major using lists of lists. Matlab structs and cells are represented using Python dicts.
The package can be run from the command line, in which case, it provides a routine for converting Matlab MAT-files to/from JSON files.
The function loadmat
loads all variables stored in the MAT-file into
a simple Python data structure, using only Python's dict and list
objects. Numeric and cell arrays are converted to row-ordered nested lists. Arrays are squeezed to eliminate arrays with only one element.
The resulting data structure is composed of simple types that are compatible
with the JSON format.
Example: Load a MAT-file into a Python data structure:
data = loadmat('datafile.mat')
The variable data
is a dict with the variables and values contained in the MAT-file.
Python data can be saved to a MAT-file, with the function savemat
. Data has
to be structured in the same way as for loadmat
, i.e. it should be composed
of simple data types, like dict, list, str, int and float.
Example: Save a Python data structure to a MAT-file:
savemat('datafile.mat', data)
The parameter data
shall be a dict with the variables.
The package can be run from the command line, in which case, it provides a routine for converting Matlab MAT-files to/from JSON files.
Call:
python -m mat4py.cmd -h
to get help with command line usage.
The following Matlab data structures/types are not supported:
- Arrays with more than 2 dimensions
- Arrays with complex numbers
- Sparse arrays
- Function arrays
- Object classes
- Anonymous function classes
The MIT License (MIT) Copyright (c) 2011-2023 Nephics AB
See the LICENSE.txt
file.