onnxruntime/csharp/tools/MauiModelTester/create_test_data.py
Ashrit Shetty 4b5b5f7101
Update win-ort-main to tip main 250123 (#23473)
### Description
This PR is to update the win-ort-main branch to the tip main branch as
of 2025-01-23.

### PR List
ddf0d377a7 [QNN EP] Add LoggingManager::HasDefaultLogger() to provider
bridge API (#23467)
05fbbdf91f [QNN EP] Make QNN EP a shared library (#23120)
1336566d7f Add custom vcpkg ports (#23456)
2e1173c411 Update the compile flags for vcpkg packages (#23455)
1f628a9858 [Mobile] Add BrowserStack Android MAUI Test (#23383)
009cae0ec8 [js/webgpu] Optimize ConvTranspose (Continue) (#23429)
04a4a694cb Use onnx_protobuf.h to suppress some GCC warnings (#23453)
2e3b62b4b0 Suppress some strict-aliasing related warnings in WebGPU EP
(#23454)
b708f9b1dc Bump ruff from 0.9.1 to 0.9.2 (#23427)
c0afc66b2a [WebNN] Remove workarounds for TFLite backend (#23406)
8a821ff7f9 Bump vite from 6.0.7 to 6.0.11 in
/js/web/test/e2e/exports/testcases/vite-default (#23446)
220c1a203e Make ORT and Dawn use the same protobuf/abseil source code
(#23447)
b7b5792147 Change MacOS-13 to ubuntu on for
android-java-api-aar-test.yml. (#23444)
19d0d2a30f WIP: Dp4MatMulNBits accuracy level 4 matmul for WebGPU EP
(#23365)
95b8effbc4 [QNN EP]: Clean up QNN logging resources if an error occurs
during initialization (#23435)
626134c5b5 Bump clang-format from 19.1.6 to 19.1.7 (#23428)
0cf975301f Fix eigen external deps (#23439)
f9440aedce Moving RN_CI Android Testing to Linux (#23422)
1aa5902ff4 [QNN EP] workaround for QNN validation bug for Tanh with
uint16 quantized output (#23432)
7f5582a0e2 Seperate RN andriod and IOS into 2 separated Stages. (#23400)
73deac2e7f Implement some missing element wise Add/Sub/Mul/Div/Neg
operations for CPU and CUDA EPs (#23090)
949fe42af4 Upgrade Java version from react-native/android to Java 17
(#23066)
0892c23463 Update Qnn SDK default version to 2.30 (#23411)
94c099bcec Fix type cast build error (#23423)
d633e571d1 [WebNN EP] Fix AddInitializersToSkip issues (#23354)
e988ef00e2 [QNN EP] Fix regression for MatMul with two quantized/dynamic
uint16 inputs (#23419)
7538795f6b Update onnxruntime binary size checks ci pipeline's docker
image (#23405)
6c5ea41cad Revert "[QNN EP] Clean up correctly from a partial setup
(#23320)" (#23420)
e866804bbe Enable comprehension simplification in ruff rules (#23414)
0a5f1f392c bugfix: string_view of invalid memory (#23417)
4cc38e0277 fix crash when first input of BatchNormalization is 1-D
(#23387)
033441487f Target py310 and modernize codebase with ruff (#23401)
87341ac010 [QNN EP] Fix segfault when unregistering HTP shared memory
handles (#23402)

### Motivation and Context
This update includes the change to make QNN-EP a shared library.

---------

Signed-off-by: dependabot[bot] <support@github.com>
Co-authored-by: Adrian Lizarraga <adlizarraga@microsoft.com>
Co-authored-by: Justin Chu <justinchuby@users.noreply.github.com>
Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com>
Co-authored-by: Edward Chen <18449977+edgchen1@users.noreply.github.com>
Co-authored-by: Changming Sun <chasun@microsoft.com>
Co-authored-by: Peishen Yan <peishen.yan@intel.com>
Co-authored-by: Tianlei Wu <tlwu@microsoft.com>
Co-authored-by: Hector Li <hecli@microsoft.com>
Co-authored-by: Jian Chen <cjian@microsoft.com>
Co-authored-by: Alexis Tsogias <1114095+Zyrin@users.noreply.github.com>
Co-authored-by: junchao-zhao <68935141+junchao-loongson@users.noreply.github.com>
Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com>
Co-authored-by: sushraja-msft <44513542+sushraja-msft@users.noreply.github.com>
Co-authored-by: Wanming Lin <wanming.lin@intel.com>
Co-authored-by: Jiajia Qin <jiajiaqin@microsoft.com>
Co-authored-by: Caroline Zhu <wolfivyaura@gmail.com>
2025-01-23 09:12:03 -08:00

158 lines
4.9 KiB
Python

import argparse
import shutil
import sys
from pathlib import Path
import numpy as np
# set to the directory the ONNX Runtime repo is in
# `git checkout https://github.com/microsoft/onnxruntime.git` if needed.
ORT_ROOT_DIR = Path(__file__).parents[3]
SOLUTION_DIR = Path(__file__).parent
# add path for test data/dir generation utils
sys.path.append(str(ORT_ROOT_DIR / "tools" / "python"))
def parse_args():
parser = argparse.ArgumentParser(
description="""Setup the model and test data for usage with the MAUI model tester app.
Input data will be randomly generated as needed.
The model will be run locally and the output saved as expected output.
Explicit input data or expected output data can be specified by providing .pb files with the input/output name
and tensor. These can be created with /tools/python/onnx_test_data_utils.py.
See https://github.com/microsoft/onnxruntime/blob/main/tools/python/PythonTools.md#creating-a-test-directory-for-a-model # noqa
for info on creating specific input or expected output""",
formatter_class=argparse.ArgumentDefaultsHelpFormatter,
)
parser.add_argument(
"--symbolic_dims",
"-s",
help="Symbolic dimension values if the model inputs have symbolic dimensions and the input data is being "
"generated. Format is `name=value {name2=value2 ...}.",
type=str,
nargs="+",
required=False,
)
parser.add_argument(
"--input_data",
"-i",
help="Input data pb files created with onnx_test_data_utils.py. Multiple can be specified.",
type=Path,
nargs="+",
required=False,
)
parser.add_argument(
"--output_data",
"-o",
help="Expected output data pb files created with onnx_test_data_utils.py. Multiple can be specified.",
type=Path,
nargs="+",
required=False,
)
parser.add_argument(
"--model_path",
"-m",
help="Path to ONNX model to use. Model will be copied into the test app",
type=Path,
required=True,
)
args = parser.parse_args()
args.model_path.resolve(strict=True)
# convert symbolic dims to dictionary
symbolic_dims = None
if args.symbolic_dims:
symbolic_dims = {}
for value in args.symbolic_dims:
pieces = value.split("=")
assert len(pieces) == 2
name = pieces[0].strip()
dim_value = int(pieces[1].strip())
symbolic_dims[name] = dim_value
args.symbolic_dims = symbolic_dims
return args
def create_existing_data_map(pb_files: list[Path]):
import onnx_test_data_utils as data_utils
data_map = {}
for file in pb_files:
file.resolve(strict=True)
name, data = data_utils.read_tensorproto_pb_file(str(file))
data_map[name] = data
return data_map
def add_model_and_test_data_to_app(
model_path: Path,
symbolic_dims: dict[str, int] | None = None,
input_map: dict[str, np.ndarray] | None = None,
output_map: dict[str, np.ndarray] | None = None,
):
import ort_test_dir_utils as utils
output_path = SOLUTION_DIR / "Resources" / "Raw"
test_name = "test_data"
test_path = output_path / test_name
# remove existing data
if test_path.exists():
shutil.rmtree(test_path)
# If you want to directly create input data without using onnx_test_data_utils you can edit the input map here
# if not input_map:
# input_map = {}
#
# input_map['Input3'] = np.random.rand(1, 1, 28, 28).astype(np.float32)
utils.create_test_dir(
str(model_path),
str(output_path),
test_name,
# Explicit input data. Any missing required inputs will have data generated for them.
name_input_map=input_map,
# Optional map for any symbolic values.
symbolic_dim_values_map=symbolic_dims,
# Expected output can be provided if you want to validate model output against this.
name_output_map=output_map,
)
# create_test_dir will copy the model to the output directory.
# rename the copied model to the generic name the app expects.
copied_model = output_path / test_name / model_path.name
copied_model.rename(copied_model.with_name("model.onnx"))
# add a text file with the original model path just so there's some info on where it came from
with open(test_path / "model_info.txt", "w") as model_info_file:
model_info_file.write(str(model_path))
def create_test_data():
args = parse_args()
input_map = None
output_map = None
if args.input_data:
input_map = create_existing_data_map(args.input_data)
if args.output_data:
output_map = create_existing_data_map(args.output_data)
add_model_and_test_data_to_app(args.model_path, args.symbolic_dims, input_map, output_map)
if __name__ == "__main__":
create_test_data()