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mlprodict

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27d6da4ecdd76e18292f265fde61d19b66937a5c

Second numpy API (#480)

xxadupre committed 2 years ago
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71dadc71dfc8f4e7262fd1f4502b7a0867edf0f3

Implements OnnxSplitApi18 (xop) (#482)

ssdpython committed 2 years ago
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8614279b69795ad8bac135b8419f4acb2dc0389d

simplify configuration of ast

ssdpython committed 2 years ago
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ee9970670e5bc41abe19506a22cb770e33da4cf6

Adds function to replace initializer by ConstantOfShape (#481)

xxadupre committed 2 years ago
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490a119e362ee9d63c584f2a6f6b386b6d5e1c37

documentation

ssdpython committed 2 years ago
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documentation

ssdpython committed 2 years ago

README

The README file for this repository.

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.. _l-README:

mlprodict

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mlprodict was initially started to help implementing converters to ONNX. The main features is a python runtime for ONNX (class OnnxInference <http://www.xavierdupre.fr/app/mlprodict/helpsphinx/mlprodict/onnxrt/onnx_inference.html>), visualization tools (see Visualization <http://www.xavierdupre.fr/app/mlprodict/helpsphinx/api/tools.html#visualization>), and a numpy API for ONNX <http://www.xavierdupre.fr/app/mlprodict/helpsphinx/tutorial/numpy_api_onnx.html>). The package also provides tools to compare predictions, to benchmark models converted with sklearn-onnx <https://github.com/onnx/sklearn-onnx/tree/master/skl2onnx>.

::

import numpy
from sklearn.linear_model import LinearRegression
from sklearn.datasets import load_iris
from mlprodict.onnxrt import OnnxInference
from mlprodict.onnxrt.validate.validate_difference import measure_relative_difference
from mlprodict import __max_supported_opset__, get_ir_version

iris = load_iris()
X = iris.data[:, :2]
y = iris.target
lr = LinearRegression()
lr.fit(X, y)

# Predictions with scikit-learn.
expected = lr.predict(X[:5])
print(expected)

# Conversion into ONNX.
from mlprodict.onnx_conv import to_onnx
model_onnx = to_onnx(lr, X.astype(numpy.float32),
                     black_op={'LinearRegressor'},
                     target_opset=__max_supported_opset__)
print("ONNX:", str(model_onnx)[:200] + "\n...")

# Predictions with onnxruntime
model_onnx.ir_version = get_ir_version(__max_supported_opset__)
oinf = OnnxInference(model_onnx, runtime='onnxruntime1')
ypred = oinf.run({'X': X[:5].astype(numpy.float32)})
print("ONNX output:", ypred)

# Measuring the maximum difference.
print("max abs diff:", measure_relative_difference(expected, ypred['variable']))

# And the python runtime
oinf = OnnxInference(model_onnx, runtime='python')
ypred = oinf.run({'X': X[:5].astype(numpy.float32)},
                 verbose=1, fLOG=print)
print("ONNX output:", ypred)

Installation

Installation from pip should work unless you need the latest development features.

::

pip install mlprodict

The package includes a runtime for ONNX. That's why there is a limited number of dependencies. However, some features relies on sklearn-onnx, onnxruntime, scikit-learn. They can be installed with the following instructions:

::

pip install mlprodict[all]

The code is available at GitHub/mlprodict <https://github.com/sdpython/mlprodict/>_ and has online documentation <http://www.xavierdupre.fr/app/ mlprodict/helpsphinx/index.html>_.