onnxruntime/docs/tutorials/api-basics.md
Cassie a0f3e30de6
Docs update: updated nav, get started sections, home page, apis (#9060)
* 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
2021-09-15 16:23:42 -05:00

39 lines
1.2 KiB
Markdown

---
title: API Basics
parent: Tutorials
nav_order: 1
---
# ONNX Runtime Inferencing: API Basics
{: .no_toc }
These tutorials demonstrate basic inferencing with ONNX Runtime with each language API.
## Contents
{: .no_toc }
* TOC placeholder
{:toc}
## Python
* [Scikit-learn Logistic Regression](https://microsoft.github.io/onnxruntime/python/tutorial.html)
* [Image recognition (Resnet50)](https://github.com/onnx/onnx-docker/blob/master/onnx-ecosystem/inference_demos/resnet50_modelzoo_onnxruntime_inference.ipynb)
## C++
* [Number recognition (MNIST)](../tutorials/mnist_cpp.html)
* [Image classification (Squeezenet)](https://github.com/microsoft/onnxruntime/blob/master/csharp/test/Microsoft.ML.OnnxRuntime.EndToEndTests.Capi/CXX_Api_Sample.cpp)
## C
* [Image classification (Squeezenet)](https://github.com/microsoft/onnxruntime/blob/master/csharp/test/Microsoft.ML.OnnxRuntime.EndToEndTests.Capi/C_Api_Sample.cpp)
## C#
* [Object detection (Faster RCNN)](../tutorials/fasterrcnn_csharp.html)
* [Image recognition (ResNet50 v2)](../tutorials/resnet50_csharp.html)
## Java
* [Number recognition (MNIST)](../tutorials/mnist_java.html)
## JavaScript
* [ONNX Runtime JavaScript examples](https://github.com/microsoft/onnxruntime-inference-examples/tree/main/js)