Save model object in file for code generation
To generate C/C++ code for the object functions
(predict
, random
,
knnsearch
, or rangesearch
)
of machine learning models, use saveLearnerForCoder
,
loadLearnerForCoder
, and
codegen
. After training
a machine learning model, save the model by using
saveLearnerForCoder
. Define an entry-point
function that loads the model by using
loadLearnerForCoder
and calls an object
function. Then use codegen
or the MATLAB®
Coder™ app to generate C/C++ code. Generating C/C++ code requires
MATLAB
Coder.
This flow chart shows the code generation workflow for the object functions of
machine learning models. Use saveLearnerForCoder
for the
highlighted step.
Fixed-point C/C++ code generation requires an additional step that defines the
fixed-point data types of the variables required for prediction. Create a
fixed-point data type structure by using the data type function generated by
generateLearnerDataTypeFcn
, and use the structure as an
input argument of loadLearnerForCoder
in an entry-point
function. Generating fixed-point C/C++ code requires MATLAB
Coder and Fixed-Point
Designer™.
This flow chart shows the fixed-point code generation workflow for the
predict
function of a machine learning model.
Use saveLearnerForCoder
for the highlighted step.
saveLearnerForCoder(
prepares a classification model, regression model, or nearest
neighbor searcher (Mdl
,filename
)Mdl
) for code generation and
saves it in the MATLAB formatted binary file (MAT-file) named
filename
. You can pass
filename
to loadLearnerForCoder
to reconstruct the model
object from the filename
file.
saveLearnerForCoder
prepares a machine
learning model (Mdl
) for code generation. The function removes some
properties that are not required for prediction.
For a model that has a corresponding compact model, the
saveLearnerForCoder
function applies the appropriate
compact
function to the model before saving it.
For a model that does not have a corresponding compact model, such as
ClassificationKNN
, ClassificationLinear
,
RegressionLinear
, ExhaustiveSearcher
, and
KDTreeSearcher
, the saveLearnerForCoder
function removes properties such as hyperparameter optimization properties, training
solver information, and others.
loadLearnerForCoder
loads the model saved by
saveLearnerForCoder
.
Use a coder configurer created by learnerCoderConfigurer
for the models listed in this table.
Model | Coder Configurer Object |
---|---|
Binary decision tree for multiclass classification | ClassificationTreeCoderConfigurer |
SVM for one-class and binary classification | ClassificationSVMCoderConfigurer |
Linear model for binary classification | ClassificationLinearCoderConfigurer |
Multiclass model for SVMs and linear models | ClassificationECOCCoderConfigurer |
Binary decision tree for regression | RegressionTreeCoderConfigurer |
Support vector machine (SVM) regression | RegressionSVMCoderConfigurer |
Linear regression | RegressionLinearCoderConfigurer |
After training a machine learning model, create a coder configurer of the model.
Use the object functions and properties of the configurer to configure code generation options
and to generate code for the predict
and update
functions of the model. If you generate code using a coder configurer, you can update model
parameters in the generated code without having to regenerate the code. For details, see Code Generation for Prediction and Update Using Coder Configurer.
codegen
| generateLearnerDataTypeFcn
| loadLearnerForCoder