Tidak Ada Deskripsi

Lutz Roeder 8bea05f94e MediaPipe support (#423) 6 tahun lalu
.github 4700a234c3 Add .github folder 6 tahun lalu
.vscode 9c5d5ff93a Exclude node_modules and build in vscode 7 tahun lalu
setup 4bcc229dff Add macOS notarization 6 tahun lalu
src 8bea05f94e MediaPipe support (#423) 6 tahun lalu
test 8bea05f94e MediaPipe support (#423) 6 tahun lalu
tools 682212d0e5 Add MediaPipe prototype (#423) 6 tahun lalu
.eslintrc.json 22da3aaa07 Disable ESLint linebreak-style 6 tahun lalu
.gitattributes 7f59d7662f Support variadic and control edges 8 tahun lalu
.gitignore 27c05501d3 Build to dist folder 6 tahun lalu
DEVELOPMENT.md 27c05501d3 Build to dist folder 6 tahun lalu
LICENSE 0157c86a27 Update license 9 tahun lalu
Makefile a3ae247ebc Update view.js 6 tahun lalu
README.md 8bea05f94e MediaPipe support (#423) 6 tahun lalu
electron-builder.yml 27c05501d3 Build to dist folder 6 tahun lalu
package.json faddfeeb6b Update to electron 8.0.1 6 tahun lalu
setup.cfg 27c05501d3 Build to dist folder 6 tahun lalu
setup.py 8bea05f94e MediaPipe support (#423) 6 tahun lalu

README.md

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

Netron supports ONNX (.onnx, .pb, .pbtxt), Keras (.h5, .keras), Core ML (.mlmodel), Caffe (.caffemodel, .prototxt), Caffe2 (predict_net.pb, predict_net.pbtxt), Darknet (.cfg), MXNet (.model, -symbol.json), ncnn (.param) and TensorFlow Lite (.tflite).

Netron has experimental support for TorchScript (.pt, .pth), PyTorch (.pt, .pth), Torch (.t7), Arm NN (.armnn), BigDL (.bigdl, .model), Chainer (.npz, .h5), CNTK (.model, .cntk), Deeplearning4j (.zip), MediaPipe (.pbtxt), ML.NET (.zip), MNN (.mnn), OpenVINO (.xml), PaddlePaddle (.zip, __model__), scikit-learn (.pkl), TensorFlow.js (model.json, .pb) and TensorFlow (.pb, .meta, .pbtxt, .ckpt, .index).

Install

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

Linux: Download the .AppImage file or run snap install netron

Windows: Download the .exe installer.

Browser: Start the browser version.

Python Server: Run pip install netron and netron [FILE] or import netron; netron.start('[FILE]').

Download Models

Sample model files to download and open: