Keine Beschreibung

Lutz Roeder 796bfec29d Fix TensorFlow Lite install script vor 7 Jahren
.vscode 9c5d5ff93a Exclude node_modules and build in vscode vor 7 Jahren
media c58cf0a220 Update screenshot vor 8 Jahren
setup 7c4932220a Icon converter script vor 7 Jahren
src d6c8a8c1b3 Update tf-metadata.json vor 7 Jahren
test dc84a556cd Short grapt input and output names vor 7 Jahren
tools 796bfec29d Fix TensorFlow Lite install script vor 7 Jahren
.gitattributes 7f59d7662f Support variadic and control edges vor 8 Jahren
.gitignore 67f817f0bf Add test/data to .gitignore vor 7 Jahren
DEVELOPMENT.md 81fedddfd1 Add npm run server -- <args> shortcut vor 7 Jahren
LICENSE 0157c86a27 Update license vor 9 Jahren
Makefile 3fc1ffaf56 Fix Python package version vor 7 Jahren
README.md efb38fb29b Update README.md vor 7 Jahren
electron-builder.yml 52fa83adc5 Add CNTK .cmf and .dnn extensions vor 7 Jahren
package.json 2b1ac06985 Update to 2.8.4 vor 7 Jahren
setup.cfg 2018518292 Move to setup.py console_scripts (#146) vor 7 Jahren
setup.py 040f89bb2a Transition to long package vor 7 Jahren

README.md

Netron is a viewer for neural network, deep learning and machine learning models.

Netron supports ONNX (.onnx, .pb, .pbtxt), Keras (.h5, .keras), CoreML (.mlmodel), Caffe2 (predict_net.pb, predict_net.pbtxt), MXNet (.model, -symbol.json) and TensorFlow Lite (.tflite). Netron has experimental support for Caffe (.caffemodel, .prototxt), PyTorch (.pth), Torch (.t7), CNTK (.model, .cntk), PaddlePaddle (__model__), Darknet (.cfg), scikit-learn (.pkl), TensorFlow.js (model.json, .pb) and TensorFlow (.pb, .meta, .pbtxt).

Install

macOS: Download the .dmg file or run brew cask install netron

Linux: Download the .AppImage or .deb file.

Windows: Download the .exe installer.

Browser: Start the browser version.

Python Server: Run pip install netron and netron -b [MODEL_FILE]. In Python run import netron and netron.start('model.onnx').

Download Models

Sample model files you can download and open:

ONNX Models: Inception v1, Inception v2, ResNet-50, SqueezeNet

Keras Models: resnet, tiny-yolo-voc

CoreML Models: MobileNet, Places205-GoogLeNet, Inception v3

TensorFlow Lite Models: Smart Reply 1.0 , Inception v3 2016

Caffe Models: BVLC AlexNet, BVLC CaffeNet, BVLC GoogleNet

Caffe2 Models: BVLC GoogleNet, Inception v2

MXNet Models: CaffeNet, SqueezeNet v1.1

TensorFlow models: Inception v3, Inception v4, Inception 5h