Files
openvino/samples/python/model_creation_sample
Ilya Lavrenov a883dc0b85 DOCS: ported changes from 2022.1 release branch (#11206)
* Extensibility guide with FE extensions and remove OV_FRAMEWORK_MAP from docs

* Rework of Extensibility Intro, adopted examples to missing OPENVINO_FRAMEWORK_MAP

* Removed OPENVINO_FRAMEWORK_MAP reference

* Frontend extension detailed documentation

* Fixed distributed snippets

* Fixed snippet inclusion in FE extension document and chapter headers

* Fixed wrong name in a snippet reference

* Fixed test for template extension due to changed number of loaded extensions

* Update docs/Extensibility_UG/frontend_extensions.md

Co-authored-by: Ivan Tikhonov <ivan.tikhonov@intel.com>

* Minor fixes in extension snippets

* Small grammar fix

Co-authored-by: Ivan Tikhonov <ivan.tikhonov@intel.com>

Co-authored-by: Ivan Tikhonov <ivan.tikhonov@intel.com>

* DOCS: transition banner (#10973)

* transition banner

* minor fix

* update transition banner

* updates

* update custom.js

* updates

* updates

* Documentation fixes (#11044)

* Benchmark app usage

* Fixed link to the devices

* More fixes

* Update docs/OV_Runtime_UG/multi_device.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Removed several hardcoded links

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Updated documentation for compile_tool (#11049)

* Added deployment guide (#11060)

* Added deployment guide

* Added local distribution

* Updates

* Fixed more indentations

* Removed obsolete code snippets (#11061)

* Removed obsolete code snippets

* NCC style

* Fixed NCC for BA

* Add a troubleshooting issue for PRC installation (#11074)

* updates

* adding gna to linux

* add missing reference

* update

* Update docs/install_guides/installing-model-dev-tools.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Update docs/install_guides/installing-model-dev-tools.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Update docs/install_guides/installing-model-dev-tools.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Update docs/install_guides/installing-model-dev-tools.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* Update docs/install_guides/installing-model-dev-tools.md

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* update

* minor updates

* add gna item to yum and apt

* add gna to get started page

* update reference formatting

* merge commit

* add a troubleshooting issue

* update

* update

* fix CVS-71846

Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>

* DOCS: fixed hardcoded links  (#11100)

* Fixes

* Use links

* applying reviewers comments to the Opt Guide (#11093)

* applying reviewrs comments

* fixed refs, more structuring (bold, bullets, etc)

* refactoring tput/latency sections

* next iteration (mostly latency), also brushed the auto-batching and other sections

* updates sync/async images

* common opts brushed

* WIP tput redesigned

* minor brushing of common and auto-batching

* Tput fully refactored

* fixed doc name in the link

* moved int8 perf counters to the right section

* fixed links

* fixed broken quotes

* fixed more links

* add ref to the internals to the TOC

* Added a note on the batch size

Co-authored-by: Andrey Zaytsev <andrey.zaytsev@intel.com>

* [80085] New images for docs (#11114)

* change doc structure

* fix manager tools

* fix manager tools 3 step

* fix manager tools 3 step

* new img

* new img for OV Runtime

* fix steps

* steps

* fix intendents

* change list

* fix space

* fix space

* code snippets fix

* change display

* Benchmarks 2022 1 (#11130)

* Minor fixes

* Updates for 2022.1

* Edits according to the review

* Edits according to review comments

* Edits according to review comments

* Edits according to review comments

* Fixed table

* Edits according to review comments

* Removed config for Intel® Core™ i7-11850HE

* Removed forward-tacotron-duration-prediction-241 graph

* Added resnet-18-pytorch

* Add info about Docker images in Deployment guide (#11136)

* Renamed user guides (#11137)

* fix screenshot (#11140)

* More conservative recommendations on dynamic shapes usage in docs (#11161)

* More conservative recommendations about using dynamic shapes

* Duplicated statement from C++ part to Python part of reshape doc (no semantical changes)

* Update ShapeInference.md (#11168)

* Benchmarks 2022 1 updates (#11180)

* Updated graphs

* Quick fix for TODO in Dynamic Shapes article

* Anchor link fixes

* Fixed DM config (#11199)

* DOCS: doxy sphinxtabs (#11027)

* initial implementation of doxy sphinxtabs

* fixes

* fixes

* fixes

* fixes

* fixes

* WA for ignored visibility attribute

* Fixes

Co-authored-by: Sergey Lyalin <sergey.lyalin@intel.com>
Co-authored-by: Ivan Tikhonov <ivan.tikhonov@intel.com>
Co-authored-by: Nikolay Tyukaev <nikolay.tyukaev@intel.com>
Co-authored-by: Sergey Lyubimtsev <sergey.lyubimtsev@intel.com>
Co-authored-by: Yuan Xu <yuan1.xu@intel.com>
Co-authored-by: Maxim Shevtsov <maxim.y.shevtsov@intel.com>
Co-authored-by: Andrey Zaytsev <andrey.zaytsev@intel.com>
Co-authored-by: Tatiana Savina <tatiana.savina@intel.com>
Co-authored-by: Ilya Naumov <ilya.naumov@intel.com>
Co-authored-by: Evgenya Stepyreva <evgenya.stepyreva@intel.com>
2022-03-24 22:27:29 +03:00
..

Model Creation Python* Sample

This sample demonstrates how to run inference using a model built on the fly that uses weights from the LeNet classification model, which is known to work well on digit classification tasks. You do not need an XML file, the model is created from the source code on the fly.

The following OpenVINO Python API is used in the application:

Feature API Description
Model Operations [openvino.runtime.Model], [openvino.runtime.set_batch], [openvino.runtime.Model.input] Managing of model
Opset operations [openvino.runtime.op.Parameter], [openvino.runtime.op.Constant], [openvino.runtime.opset8.convolution], [openvino.runtime.opset8.add], [openvino.runtime.opset1.max_pool], [openvino.runtime.opset8.reshape], [openvino.runtime.opset8.matmul], [openvino.runtime.opset8.relu], [openvino.runtime.opset8.softmax] Description of a model topology using OpenVINO Python API

Basic OpenVINO™ Runtime API is covered by Hello Classification Python* Sample.

Options Values
Validated Models LeNet
Model Format Model weights file (*.bin)
Supported devices All
Other language realization C++

How It Works

At startup, the sample application does the following:

  • Reads command line parameters
  • Build a Model and passed weights file
  • Loads the model and input data to the OpenVINO™ Runtime plugin
  • Performs synchronous inference and processes output data, logging each step in a standard output stream

You can see the explicit description of each sample step at Integration Steps section of "Integrate OpenVINO™ Runtime with Your Application" guide.

Running

To run the sample, you need to specify model weights and device.

python model_creation_sample.py <path_to_model> <device_name>

Note

:

  • This sample supports models with FP32 weights only.

  • The lenet.bin weights file was generated by the Model Optimizer tool from the public LeNet model with the --input_shape [64,1,28,28] parameter specified.

  • The original model is available in the Caffe* repository on GitHub*.

For example:

python model_creation_sample.py lenet.bin GPU

Sample Output

The sample application logs each step in a standard output stream and outputs 10 inference results.

[ INFO ] Creating OpenVINO Runtime Core
[ INFO ] Loading the model using ngraph function with weights from lenet.bin
[ INFO ] Loading the model to the plugin
[ INFO ] Starting inference in synchronous mode
[ INFO ] Top 1 results: 
[ INFO ] Image 0
[ INFO ]        
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 0       1.0000000   0
[ INFO ]
[ INFO ] Image 1
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 1       1.0000000   1
[ INFO ]
[ INFO ] Image 2
[ INFO ] 
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 2       1.0000000   2
[ INFO ]
[ INFO ] Image 3
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 3       1.0000000   3
[ INFO ]
[ INFO ] Image 4
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 4       1.0000000   4
[ INFO ]
[ INFO ] Image 5
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 5       1.0000000   5
[ INFO ]
[ INFO ] Image 6
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 6       1.0000000   6
[ INFO ]
[ INFO ] Image 7
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 7       1.0000000   7
[ INFO ]
[ INFO ] Image 8
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 8       1.0000000   8
[ INFO ]
[ INFO ] Image 9
[ INFO ]
[ INFO ] classid probability label
[ INFO ] -------------------------
[ INFO ] 9       1.0000000   9
[ INFO ]
[ INFO ] This sample is an API example, for any performance measurements please use the dedicated benchmark_app tool

See Also