mirror of
https://github.com/saymrwulf/onnxruntime.git
synced 2026-07-14 18:12:05 +00:00
* initial setup and rename "how to" to "setup" * move API to main nav * move api to main nav * add get starated, rework nav order * rename to install move mds out of install section * update api nav and home page * add install docs and python qs updates * python get started work * remove c and obj c for now * move java, python, and obj-c docs under api folder * move java api html to iframe (ugh) * remove api docs w/o details, move api text getstar * remove api docs wo detail updates get started * remvoe iframes * move eco system to main nav * fix api buttons * added more examples moved intro to ORT * fix links * fix get started titles * fix get started titles * fix more links * fix more links * more link fixes * fix nav remove inferencing and training subnav * fix top nav remove inference and training nav * fix title * fix tutorials nav hierarchy * fix python api button * add tenorflow keras example * fix quickstart toc * add imports fix spacing * fix links * update nav and python get started page * move ort training example, add coming soon for iot * update C# get started * fix spacing on quantization * Add some js get started content * fix formatting * fix typo * removed onnx-pytorch and onnx-tf * updated pip install torch and added links iot page * added pytorch tutorial heirarchy * updated web to docs soon added release blog link * add web link
1 KiB
1 KiB
| title | parent | has_children | nav_order |
|---|---|---|---|
| Deploy traditional ML | Tutorials | false | 8 |
Deploy traditional ML models
{: .no_toc }
ONNX Runtime supports ONNX-ML and can run traditional machine models created from libraries such as Sciki-learn, LightGBM, XGBoost, LibSVM, etc.
Contents
{: .no_toc }
- TOC placeholder {:toc}
Convert model to ONNX
- Scikit-learn conversion
- Scikit-learn custom conversion
- XGBoost conversion
- LightGBM conversion
- ONNXMLTools samples
Deploy model
- [COMING SOON] Deploy a Python-trained model in a C# environment
- [COMING SOON] Deploy a scikit-learn model securely without pkl files