Nav apraksta

Lutz Roeder c970d2bc5c Update tf-metadata.json 7 gadi atpakaļ
.vscode 26ea890985 Exclude third_party in vscode 8 gadi atpakaļ
media c58cf0a220 Update screenshot 8 gadi atpakaļ
setup e4e4bc7743 Move electron-builder setup files to /setup 8 gadi atpakaļ
src c970d2bc5c Update tf-metadata.json 7 gadi atpakaļ
tools c970d2bc5c Update tf-metadata.json 7 gadi atpakaļ
.gitattributes 7f59d7662f Support variadic and control edges 8 gadi atpakaļ
.gitignore aef727bc5d Add src/coreml.js 8 gadi atpakaļ
DEVELOPMENT.md e1573deeb0 TensorFlow namespaces 8 gadi atpakaļ
LICENSE 0157c86a27 Update license 9 gadi atpakaļ
Makefile aec0efcf96 Update homebrew-cask location 7 gadi atpakaļ
README.md 761f75afe3 TensorFlow.js support 8 gadi atpakaļ
electron-builder.yml 1adca1c636 Remove .json from shell extensions (#113) 7 gadi atpakaļ
netron b0f89d2197 Update netron script to run from any pwd 7 gadi atpakaļ
package.json 4d977f6e87 Update to 1.8.5 7 gadi atpakaļ
setup.cfg 99c05aecbe Set build-lab path in setup.cfg 7 gadi atpakaļ
setup.py c6853e4a29 SVG spinner overlay 7 gadi atpakaļ

README.md

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

Netron supports ONNX (.onnx, .pb), Keras (.h5, .keras), CoreML (.mlmodel) and TensorFlow Lite (.tflite). Netron has experimental support for Caffe (.caffemodel), Caffe2 (predict_net.pb), MXNet (-symbol.json), TensorFlow.js (model.json, .pb) and TensorFlow (.pb, .meta).

Install

macOS

Download the .dmg file or with Homebrew 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 [MODEL_FILE].
Serve a model in Python using import netron; netron.serve_file('my_model.onnx').

Download Models

Sample model files you can download and open:

ONNX Models

Keras Models

CoreML Models

TensorFlow Lite Models

Caffe Models

Caffe2 Models

MXNet Models

TensorFlow models