MCPcopy Index your code
hub / github.com/onnxsim/onnxsim

github.com/onnxsim/onnxsim @v0.6.5

Chat with this repo
repository ↗ · DeepWiki ↗ · release v0.6.5 ↗ · + Follow
292 symbols 644 edges 19 files 8 documented · 3% updated 9d agov0.6.5 · 2026-06-08★ 4,36793 open issues
What it actually does AI analysis from the code graph — generated when you open this
loading…
README

ONNX Simplifier

PyPI version PyPI pyversions PyPI license PRs Welcome Discord

ONNX is great, but sometimes too complicated.

Background

One day I wanted to export the following simple reshape operation to ONNX:

import torch


class JustReshape(torch.nn.Module):
    def __init__(self):
        super(JustReshape, self).__init__()

    def forward(self, x):
        return x.view((x.shape[0], x.shape[1], x.shape[3], x.shape[2]))


net = JustReshape()
model_name = 'just_reshape.onnx'
dummy_input = torch.randn(2, 3, 4, 5)
torch.onnx.export(net, dummy_input, model_name, input_names=['input'], output_names=['output'])

The input shape in this model is static, so what I expected is

simple_reshape

However, I got the following complicated model instead:

complicated_reshape

Our solution

ONNX Simplifier is presented to simplify the ONNX model. It infers the whole computation graph and then replaces the redundant operators with their constant outputs (a.k.a. constant folding).

Web version

We have published ONNX Simplifier on GitHub pages. It works out of the box and doesn't need any installation. Note that it runs in the browser locally and your model is completely safe.

Python version

pip3 install -U pip && pip3 install onnxsim

Then

onnxsim input_onnx_model output_onnx_model

For more advanced features, try the following command for help message

onnxsim -h

Demonstration

An overall comparison between a complicated model and its simplified version:

Comparison between old model and new model

In-script workflow

If you would like to embed ONNX simplifier python package in another script, it is just that simple.

import onnx
from onnxsim import simplify

# load your predefined ONNX model
model = onnx.load(filename)

# convert model
model_simp, check = simplify(model)

assert check, "Simplified ONNX model could not be validated"

# use model_simp as a standard ONNX model object

You can see more details of the API in onnxsim/onnx_simplifier.py

Projects Using ONNX Simplifier

Chat

We created a Chinese QQ group for ONNX!

ONNX QQ Group (Chinese): 1021964010, verification code: nndab. Welcome to join!

For English users, I'm active on the ONNX Slack. You can find and chat with me (daquexian) there.

Core symbols most depended-on inside this repo

Shape

Method 127
Function 102
Class 63

Languages

C++63%
Python37%

Modules by API surface

onnxsim/cxxopts.hpp138 symbols
tests/test_python_api.py33 symbols
onnxsim/onnxsim.cpp26 symbols
tests/test_simple.py25 symbols
setup.py17 symbols
onnxsim/onnx_simplifier.py15 symbols
onnxsim/model_checking.py9 symbols
scripts/convertmodel/interface.cpp6 symbols
onnxsim/model_info.py6 symbols
onnxsim/cpp2py_export.cc5 symbols
onnxsim/onnxsim.h4 symbols
onnxsim/bin/onnxsim_option.h4 symbols

For agents

$ claude mcp add onnxsim \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact

Ask about this repo answers extend the page