Investigate ONNX models
Project description
The main feature is about patches: it helps exporting pytorch models into ONNX, mostly designed for LLMs using dynamic caches. Patches can be enabled as follows:
from onnx_diagnostic.torch_export_patches import torch_export_patches
with torch_export_patches(patch_transformers=True) as f:
ep = torch.export.export(model, args, kwargs=kwargs, dynamic_shapes=dynamic_shapes)
# ...
Dynamic shapes are difficult to guess for caches, one function returns a structure defining all dimensions as dynamic. You need then to remove those which are not dynamic in your model.
from onnx_diagnostic.export.shape_helper import all_dynamic_shape_from_inputs
dynamic_shapes = all_dynamic_shape_from_inputs(cache)
It also implements tools to investigate, validate exported models (ExportedProgramm, ONNXProgram, …). See documentation of onnx-diagnostic and torch_export_patches.
Getting started
git clone https://github.com/sdpython/onnx-diagnostic.git cd onnx-diagnostic pip install -e .
or
pip install onnx-diagnostic
Enlightening Examples
Where to start to export a model
Torch Export
Use DYNAMIC or AUTO when exporting if dynamic shapes has constraints
Steel method forward to guess the dynamic shapes (with Tiny-LLM)
Investigate ONNX models
Snapshot of usefuls tools
torch_export_patches
from onnx_diagnostic.torch_export_patches import torch_export_patches
with torch_export_patches(patch_transformers=True) as f:
ep = torch.export.export(model, args, kwargs=kwargs, dynamic_shapes=dynamic_shapes)
# ...
all_dynamic_shape_from_inputs
from onnx_diagnostic.export.shape_helper import all_dynamic_shape_from_inputs
dynamic_shapes = all_dynamic_shape_from_inputs(cache)
torch_export_rewrite
from onnx_diagnostic.torch_export_patches import torch_export_rewrite
with torch_export_rewrite(rewrite=[Model.forward]) as f:
ep = torch.export.export(model, args, kwargs=kwargs, dynamic_shapes=dynamic_shapes)
# ...
string_type
import torch
from onnx_diagnostic.helpers import string_type
inputs = (
torch.rand((3, 4), dtype=torch.float16),
[torch.rand((5, 6), dtype=torch.float16), torch.rand((5, 6, 7), dtype=torch.float16)],
)
# with shapes
print(string_type(inputs, with_shape=True))
>>> (T10s3x4,#2[T10s5x6,T10s5x6x7])
onnx_dtype_name
import onnx
from onnx_diagnostic.helpers.onnx_helper import onnx_dtype_name
itype = onnx.TensorProto.BFLOAT16
print(onnx_dtype_name(itype))
print(onnx_dtype_name(7))
>>> BFLOAT16 >>> INT64
max_diff
import torch
from onnx_diagnostic.helpers import max_diff
print(
max_diff(
(torch.Tensor([1, 2]), (torch.Tensor([1, 2]),)),
(torch.Tensor([1, 2]), (torch.Tensor([1, 2]),)),
)
)
>>> {"abs": 0.0, "rel": 0.0, "sum": 0.0, "n": 4.0, "dnan": 0.0}s
guess_dynamic_shapes
inputs = [
(torch.randn((5, 6)), torch.randn((1, 6))),
(torch.randn((7, 8)), torch.randn((1, 8))),
]
ds = ModelInputs(model, inputs).guess_dynamic_shapes(auto="dim")
print(ds)
>>> (({0: 'dim_0I0', 1: 'dim_0I1'}, {1: 'dim_1I1'}), {})
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distributions
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file onnx_diagnostic-0.7.3-py3-none-any.whl.
File metadata
- Download URL: onnx_diagnostic-0.7.3-py3-none-any.whl
- Upload date:
- Size: 360.2 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.1.0 CPython/3.12.9
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
f8cfe8d20fda99f925e86ccb5edde55573991da8cb69f53d177abf75b83726b8
|
|
| MD5 |
080f633785fa7466ea7d0a9e3b74e3ab
|
|
| BLAKE2b-256 |
572eb48e3358c7e6bde3b9d1db391d75a177dbc72d89d9305664d7eed5ced500
|