### Description
1. Enable VCPKG flag in Windows CPU CI build pipelines.
2. Increased the min supported cmake version from 3.26 to 3.28. Because
of it, drop the support for the old way of finding python by
"find_package(PythonLibs)". Therefore, in build.py we no longer set
"PYTHON_EXECUTABLE" cmake var when doing cmake configure.
3. Added "xnnpack-ep" as a feature for ORT's vcpkg config.
4. Added asset cache support for ORT's vcpkg build
5. Added VCPKG triplet files for Android build.
6. Set VCPKG triplet to "universal2-osx" if CMAKE_OSX_ARCHITECTURES was
found in cmake extra defines.
7. Removed a small piece of code in build.py, which was for support CUDA
version < 11.8.
8. Fixed an issue that CMAKE_OSX_ARCHITECTURES sometimes got specified
twice when build.py invoked cmake.
9. Added more model tests to Android build. After this change, we will
test all ONNX versions instead of just the latest one.
10. Fixed issues that are related to build.py's "--build_nuget"
parameter. Also, enable the flag in most Windows CPU CI build jobs.
11. Removed a restriction in build.py that disallowed cross-compiling
Windows ARM64 nuget package on Windows x86.
### Motivation and Context
Adopt vcpkg.
1. Update onnxruntime binary size checks ci pipeline's docker image. Use
a different docker image that is not manylinux based. The new one is
smaller.
2. Add flatbuffers tools/ci_build/requirements/pybind/requirements.txt
3. Delete
tools/ci_build/github/azure-pipelines/py-package-build-pipeline.yml. The
pipeline was for generating packages for Olive, but it went unused. And
the content is highly duplicated with our official python packaging
pipeline.
4. A lot of YAML files reference pypa/manylinux git repo but do not use
it. This PR removes the references.
### Description
* Install PyTorch for transformers tests. The installation is before
python tests so that it can use torch if needed.
* Update protobuf and numpy versions used in transformers test.
### Motivation and Context
Currently, transformers tests are enabled in the following CI pipelines:
* Linux CPU CI Pipeline (torch for cpu-only)
* Linux GPU CI Pipeline (torch for cuda 12)
* Windows GPU CUDA CI Pipeline (torch for cpu-only right now, note that
we might change it to torch for cuda 12 in the future).
For ROCm CI Pipeline, transformer tests are enabled but skipped since
onnx package is not installed in CI.
Previously, torch was not installed before python tests, so some tests
depending on torch were skipped like
[test_bind_onnx_types_not_supported_by_numpy](f6e1d44829/onnxruntime/test/python/onnxruntime_test_python_iobinding.py (L199))
or [test
user_compute_stream](https://github.com/microsoft/onnxruntime/blob/main/onnxruntime/test/python/onnxruntime_test_python.py#L465-L476).
In this PR, we changed build.py to install torch before running python
tests.
### Description
Match new SDPA pattern for huggingface BERT model that exported from
latest transformers package.
Some changes of transformers tests in CI pipeline:
(1) Enable tests for bert, distilbert and roberta models in CI.
(2) Remove out-of-date tests for huggingface models that were marked as
slow and not enabled in CI pipeline.
(3) Upgrade transformers package version to the latest.
### Motivation and Context
Recent huggingface transformers use torch SDPA in bert modeling. The
graph pattern change causes attention fusion not working anymore. Update
the fusion script to match the new pattern.
### Description
Replace inline pip install with pip install from requirements*.txt
### Motivation and Context
so that CG can recognize
### Dependency
- [x] https://github.com/microsoft/onnxruntime/pull/21085