### Description
Adds the below C APIs to support custom ops that wrap an entire model to
be inferenced with an external runtime. The current SNPE EP is an
example of an EP that could be ported to use a custom op wrapper. Ex:
The custom op stores the serialized SNPE DLC binary as a string
attribute. The SNPE model is built when the kernel is created. The model
is inferenced with SNPE APIs on call to the kernel's compute method.
#### C APIs
| API | Description | Why |
| --- | --- | --- |
| `KernelInfo_GetInputCount` | Gets number of inputs from
`OrtKernelInfo`. | Query I/O characteristics during kernel
creation<sup>1</sup> |
| `KernelInfo_GetOutputCount` | Gets number of outputs from
`OrtKernelInfo`. | Query I/O characteristics during kernel
creation<sup>1</sup> |
| `KernelInfo_GetInputName` | Gets an input's name. | Query I/O
characteristics during kernel creation<sup>1</sup> |
| `KernelInfo_GetOutputName` | Gets an output's name. | Query I/O
characteristics during kernel creation<sup>1</sup> |
| `KernelInfo_GetInputTypeInfo` | Gets the type/shape information for an
input. | Query I/O characteristics during kernel creation<sup>1</sup> |
| `KernelInfo_GetOutputTypeInfo` | Gets the type/shape information for
an output. | Query I/O characteristics during kernel
creation<sup>1</sup> |
| `KernelInfoGetAttribute_tensor` | Get a OrtValue tensor stored as an
attribute in the graph node | Extract serialized models, weights, etc. |
| `GetSessionConfigEntry` | Get a session configuration value | Need to
be able to get session-time configurations from within custom op |
| `HasSessionConfigEntry` | Check if session configuration entry exists.
| Need to be able to get session-time configurations from within custom
op |
#### Why so many KernelInfo APIs?<sup>1</sup>
Similar APIs currently exist for `OrtKernelContext`, but not
`OrtKernelInfo`. Note that `OrtKernelContext` is passed to the custom op
on call to its kernel's compute() function. However, `OrtKernelInfo` is
available on kernel creation, which occurs when the session is created.
Having these APIs available from `OrtKernelInfo` allows an operator to
trade-off computation time for session-creation time, and vice versa.
Operators that must build expensive state may prefer to do it during
session creation time instead of compute-time.
SNPE is an example of an EP that needs to be able to query `KernelInfo`
for the name, type, and shape of inputs and outputs in order to build
the model from the serialized DLC data. This is an expensive operation.
Other providers (e.g., OpenVINO) are able to query i/o info from the
serialized model, so they do not strictly need these APIs. However, the
APIs can still be used to validate the expected I/O characteristics.
Additionally, several of our CPU contrib ops currently use the same
internal version of these KernelInfo APIs (Ex:
[qlinear_softmax](https://github.com/microsoft/onnxruntime/blob/main/onnxruntime/contrib_ops/cpu/quantization/qlinear_softmax.cc#L71)).
If custom ops are also meant to be a test bed for future ops, then all
custom ops (not just runtime wrappers) would benefit from the addition
of these public KernelInfo APIs (IMO).
#### Example of usage in a custom OP
From
`onnxruntime/test/testdata/custom_op_openvino_wrapper_library/openvino_wrapper.h`
```c++
struct CustomOpOpenVINO : Ort::CustomOpBase<CustomOpOpenVINO, KernelOpenVINO> {
explicit CustomOpOpenVINO(Ort::ConstSessionOptions session_options);
CustomOpOpenVINO(const CustomOpOpenVINO&) = delete;
CustomOpOpenVINO& operator=(const CustomOpOpenVINO&) = delete;
void* CreateKernel(const OrtApi& api, const OrtKernelInfo* info) const;
constexpr const char* GetName() const noexcept {
return "OpenVINO_Wrapper";
}
constexpr const char* GetExecutionProviderType() const noexcept {
return "CPUExecutionProvider";
}
// IMPORTANT: In order to wrap a generic runtime-specific model, the custom operator
// must have a non-homogeneous variadic input and output.
constexpr size_t GetInputTypeCount() const noexcept {
return 1;
}
constexpr size_t GetOutputTypeCount() const noexcept {
return 1;
}
constexpr ONNXTensorElementDataType GetInputType(size_t /* index */) const noexcept {
return ONNX_TENSOR_ELEMENT_DATA_TYPE_UNDEFINED;
}
constexpr ONNXTensorElementDataType GetOutputType(size_t /* index */) const noexcept {
return ONNX_TENSOR_ELEMENT_DATA_TYPE_UNDEFINED;
}
constexpr OrtCustomOpInputOutputCharacteristic GetInputCharacteristic(size_t /* index */) const noexcept {
return INPUT_OUTPUT_VARIADIC;
}
constexpr OrtCustomOpInputOutputCharacteristic GetOutputCharacteristic(size_t /* index */) const noexcept {
return INPUT_OUTPUT_VARIADIC;
}
constexpr bool GetVariadicInputHomogeneity() const noexcept {
return false; // heterogenous
}
constexpr bool GetVariadicOutputHomogeneity() const noexcept {
return false; // heterogeneous
}
std::vector<std::string> GetSessionConfigKeys() const { return {"device_type"}; }
private:
std::unordered_map<std::string, std::string> session_configs_;
};
```
#### How to create a session:
```c++
Ort::Env env;
Ort::SessionOptions session_opts;
Ort::CustomOpConfigs custom_op_configs;
// Create local session config entries for the custom op.
custom_op_configs.AddConfig("OpenVINO_Wrapper", "device_type", "CPU");
// Register custom op library and pass in the custom op configs (optional).
session_opts.RegisterCustomOpsLibrary(lib_name, custom_op_configs);
Ort::Session session(env, model_path.data(), session_opts);
```
### Motivation and Context
Allows creation of simple "wrapper" EPs outside of the main ORT code
base.
### Description
<!-- Describe your changes. -->
If a user installs the debug libraries from Python on Windows the ORT
python project file attempts to use the debug python lib, which
conflicts with a pragma in pyconfig.h that wants the release lib (due to
pybind11 undefining _DEBUG).
Explicitly use the release lib instead of Python::Module so the build
doesn't break.
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
Fix obtuse build break.
### Description
Add FusedMatMul
### Motivation and Context
- Add the FusedMatMul fusion for DML
- Fix the FusedMatMul logic and tests when transposed batches are
involved
### Description
<!-- Describe your changes. -->
Use dlsym/GetProcAddress to lookup a custom ops registration function by
name and call it.
This will be better on mobile platforms where the custom ops library is
linked against, and there isn't necessarily a filesystem that a library
path can be loaded from.
Alternative is to wire up passing in the address of the function, but
that has multiple complications which differ by platform.
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
Enable using ort and ort-ext packages on mobile platforms.
Co-authored-by: Edward Chen <18449977+edgchen1@users.noreply.github.com>
### Description
Changes to incorporate OpenVINO EP 2022.3
### Motivation and Context
This change is required to incorportate OpenVINO EP 2022.3
- If it fixes an open issue, please link to the issue here. -->
Co-authored-by: mohsinmx <mohsinx.mohammad@intel.com>
Co-authored-by: Preetha Veeramalai <preetha.veeramalai@intel.com>
Co-authored-by: Aravind <aravindx.gunda@intel.com>
Co-authored-by: mayavijx <mayax.vijayan@intel.com>
Co-authored-by: flexci <mohsinmx>
Use json format to save and load partition config, previously it was
csv, which brought issues among windows and posix due to different line
breaks.
Co-authored-by: Randy Shuai <rashuai@microsoft.com>
### Description
Enable creating dedicated build for on device training. With this PR we
can build a lean binary for on device training using flag
--enable_training_apis. This binary includes only the essentials like
training ops, optimizers etc and NOT features like Aten fallback,
strided tensors, gradient builders etc . This binary also removes all
the deprecated components like training::TrainingSession and OrtTrainer
etc
### Motivation and Context
This enables our partners to create a lean binary for on device
training.
### Description
<!-- Describe your changes. -->
rename the CrossAttention to MultiheadAttention since this op can also
be used as self attention
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
Co-authored-by: Ubuntu <wy@v100-2.0cdb2e52twzevn1i4fi45bylyg.jx.internal.cloudapp.net>
Move separated Q, K and V (without input projection) from Attention to a
new operator CrossAttention.
The Attention operator is hard to maintain when we need support with and
without input projection in one class. Add a new operator according to
feedback.
Some change might need in the future, but not in this PR:
(1) bias could be optional (We will not proceed that route unless
experiments show that fusing Add bias with MatMul instead of this op
could improve performance).
(2) support packed KV. There are two ways to support it: when key and
value are same Tensor, they are packed; or we can make value as
optional, and use packed mode when value is empty and the key has packed
K/V.
(3) support cached key and value, and other (like relative position
bias), or more attention mask format. They can be added easily without
breaking backward compatible.
(4) ROCm/CPU implementation of this op.
### Description
<!-- Describe your changes. -->
Add GemmFastGelu CK implementation.
TODO
1. The performance of CK GemmFastGelu in ORT is not good as using CK
directly, still need to investigate the reason and improve the CK in
ORT.
`GemmFastGeluUnfused float16 NN m=49152 n=3072 k=768 2298.8064 us 100.89
tflops`
`withbias DeviceGemmMultipleD_Xdl_CShuffle<256, 256, 128, 32, 8, 8,
Default> LoopScheduler: Default, PipelineVersion: v1 float16 NN m=49152
n=3072 k=768 2401.9799 us 96.56 tflops`
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
Co-authored-by: peixuanzuo <peixuanzuo@linmif39a000004.zvflicr54joexhdgnhvmxrxygg.phxx.internal.cloudapp.net>
### Description
- Adds a new C API `OrtApi::RegisterCustomOpsLibrary_V2` that manages
the lifetime of dynamic library handles (i.e., calls `dlclose` or
`FreeLibrary`).
- Deprecates C API `OrtApi::RegisterCustomOpsLibrary`.
- Adds C++ API wrapper for convenient registering of custom op
libraries.
- `PySessionOptions` is now an alias of `OrtSessionOptions`
### Motivation and Context
The current API for registering custom op libraries loads dynamic
libraries but requires users to handle the release of the corresponding
library handles. Additionally, the user has to make sure to release the
library handle _after_ the session has been destroyed (or the program
segfaults).
The new API automatically cleans up the library and allows the user to
write more straightforward code.
### Description
This PR is to address follow-up comments for the multi-stream pr
https://github.com/microsoft/onnxruntime/pull/13495
Changes including:
- Make StreamAwareArena transparent to minimal build
- Make DeviceStreamCollection transparent to minimal build
- Replace ORT_MUST_USE_RESULT with [[nodiscard]]
- Remove unnecessary shared_ptr
### Motivation and Context
This PR is to address follow-up comments for the multi-stream pr
https://github.com/microsoft/onnxruntime/pull/13495
Co-authored-by: Lei Cao <leca@microsoft.com>
### Description
1. Renames all references of on device training to training apis. This
is to keep the naming general. Nothing really prevents us from using the
same apis on servers\non-edge devices.
2. Update ENABLE_TRAINING option: With this PR when this option is
enabled, training apis and torch interop is also enabled.
3. Refactoring for onnxruntime_ENABLE_TRAINING_TORCH_INTEROP option:
- Removed user facing option
- Setting onnxruntime_ENABLE_TRAINING_TORCH_INTEROP to ON when
onnxruntime_ENABLE_TRAINING is ON as we always build with torch interop.
Once this PR is merged when --enable_training is selected we will do a
"FULL Build" for training (with all the training entry points and
features).
Training entry points include:
1. ORTModule
2. Training APIs
Features include:
1. ATen Fallback
2. All Training OPs includes communication and collectives
3. Strided Tensor Support
4. Python Op (torch interop)
5. ONNXBlock (Front end tools for training artifacts prep when using
trianing apis)
### Motivation and Context
Intention is to simply the options for building training enabled builds.
This is part of the larger work item to create dedicated build for
learning on the edge scenarios with just training apis enabled.
Implement CloudEP for hybrid inferencing.
The PR introduces zero new API, customers could configure session and
run options to do inferencing with Azure [triton
endpoint.](https://learn.microsoft.com/en-us/azure/machine-learning/how-to-deploy-with-triton?tabs=azure-cli%2Cendpoint)
Sample configuration in python be like:
```
sess_opt.add_session_config_entry('cloud.endpoint_type', 'triton');
sess_opt.add_session_config_entry('cloud.uri', 'https://cloud.com');
sess_opt.add_session_config_entry('cloud.model_name', 'detection2');
sess_opt.add_session_config_entry('cloud.model_version', '7'); // optional, default 1
sess_opt.add_session_config_entry('cloud.verbose', '1'); // optional, default '0', meaning no verbose
...
run_opt.add_run_config_entry('use_cloud', '1') # 0 for local inferencing, 1 for cloud endpoint.
run_opt.add_run_config_entry('cloud.auth_key', '...')
...
sess.run(None, {'input':input_}, run_opt)
```
Co-authored-by: Randy Shuai <rashuai@microsoft.com>
### Description
It's from the PR #14085
On multiple running msbuilds , it throws the exception of
```
22-12-30T16:35:34.2423207Z ##[error]C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\MSBuild\Microsoft\VC\v160\Microsoft.CppCommon.targets(155,5): Error MSB3073: The command "setlocal
"C:\Program Files\CMake\bin\cmake.exe" -E copy D:/a/_work/1/b/RelWithDebInfo/dnnl/install/bin/dnnl.dll D:/a/_work/1/b/RelWithDebInfo/RelWithDebInfo
if %errorlevel% neq 0 goto :cmEnd
:cmEnd
endlocal & call :cmErrorLevel %errorlevel% & goto :cmDone
:cmErrorLevel
exit /b %1
:cmDone
if %errorlevel% neq 0 goto :VCEnd
:VCEnd" exited with code 1.
```
https://dev.azure.com/onnxruntime/onnxruntime/_build/results?buildId=847423&view=logs&j=249e9d58-0012-5814-27cf-6a201adbd9cf&t=182b9780-832e-5dcb-3957-d6aa3ece582f
It should make sure that the onnxruntime_test_all project depends on
dnnl project.
### Description
Remove Abseil module placement specifications
### Motivation and Context
Allow Cmake defaults take place and possible redirection of all
submodules for sharing between the local builds.
### Description
<!-- Describe your changes. -->
Sampling op for cpu and cuda
support huggingface case and custom case
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
Co-authored-by: Ubuntu <wy@v100-2.0cdb2e52twzevn1i4fi45bylyg.jx.internal.cloudapp.net>
### Optimize computation orders
In `Roberta/Electra`, when `ClassificationHead` is used, there is
slicing operation on features on sequence_length dimensions, then loss
calculations only depend on this sliced data. This is a slicing at axis
1. Before slicing the shape is [batch, sequence_length, hidden], after
slicing, it becomes [batch , hidden_stage]
We had opportunities to bring this slicing earlier as much as possible,
by passing through simple elementwise ops (like Add/Div), or
Layernorm/Softmax(if their reduce axis is after the slicing axis), or
even MatMul's the left operand (if only it did not affect the last
dims).
For operators like Reshape/Transpose, it is special since they have
either data specified (after slicing we need update), or they have perm
specified, which requires the input rank remain unchanged. So for those
kinds of operators, we can remain the original rank, but just leave the
sliced dim to be 1, after the compute completed, we do a Squeeze.
```
class RobertaClassificationHead(nn.Module):
"""Head for sentence-level classification tasks."""
def __init__(self, config):
super().__init__()
self.dense = nn.Linear(config.hidden_size, config.hidden_size)
classifier_dropout = (
config.classifier_dropout if config.classifier_dropout is not None else config.hidden_dropout_prob
)
self.dropout = nn.Dropout(classifier_dropout)
self.out_proj = nn.Linear(config.hidden_size, config.num_labels)
def forward(self, features, **kwargs):
x = features[:, 0, :] # take <s> token (equiv. to [CLS])
x = self.dropout(x)
x = self.dense(x)
x = torch.tanh(x)
x = self.dropout(x)
x = self.out_proj(x)
return x
```
src\transformers\models\roberta\modeling_roberta.py
src\transformers\models\electra\modeling_electra.py
#### Benchmark
A simple benchmark shows Robeta training latency dropped from 208ms ~
199ms. 4.5+% reduction.
More comprehensive tests are on the way.
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
### Description
Use target name for flatbuffers.
Add version range for flatbuffers. It is similar to #13870
### Motivation and Context
To fix a build error:
```
CMake Error at onnxruntime_graph.cmake:88 (add_dependencies):
The dependency target "flatbuffers" of target "onnxruntime_graph" does not
exist.
Call Stack (most recent call first):
CMakeLists.txt:1490 (include)
```
It happens when flatbuffers library is already installed. For example,
on Ubuntu people may get it from apt-get. But, the one provided by
Ubuntu 20.04 is not compatible with our code. The one in Ubuntu 22.04
works fine.
### Description
Update absl to a new version
### Motivation and Context
The new version contains fixes that are needed for Nvidia GPU build.
Once we update it to that version, we don't need to maintain our private
patches for Nvidia GPU build.
Fix error: builtin __has_trivial_destructor is deprecated; use __is_trivially_destructible instead [-Werror,-Wdeprecated-builtins]
This is not a clean fix as in 13783, users will need to manually set `CMAKE_HIP_FLAGS="-Wno-deprecated-builtins"` if they want to use self-built hipclang combining with ROCm 5.3.* or older.
### Description
Add the ability to run graph
### Motivation and Context
A brief description is as follows:
1) If the whole graph is supported, then will be processed by the graph
engine, directly.
2) If the whole graph is not supported, the whole graph will be divided
into subgraphs and single operators; The sub-graphs will be run on graph
engine, and the single operators will fallback to the traditional mode.
**Description**: This PR including following works:
1. provide stream and related synchronization abstractions in
onnxruntime.
2. enhance onnxruntime's execution planner / executor / memory arena to
support execute multiple streams in parallel.
3. deprecate the parallel executor for cpu.
4. deprecate the Fence mechanism.
5. update the cuda / tensorrt EP to support the stream mechanism,
support running different request in different cuda stream.
**Motivation and Context**
- Why is this change required?
currently, the execution plan is just a linear list of those primitives,
ort will execute them step by step. For any given graph, ORT will
serialize it to a fixed execution order. This sequential execution
design simplifies most scenarios, but it has the following limitations:
1. it is difficult to enable inter-node parallelization, we have a
half-baked parallel executor but it is very difficult to make it work
with GPU.
2. The fence mechanism can work with single gpu stream + cpu thread
case, but when extend to multiple stream, it is difficult to manage the
cross GPU stream synchronizations.
3. our cuda EP rely on the BFCArena to make the memory management work
with the GPU async kernels, but current BFCArena is not aware of the
streams, so it doesn't behavior correctly when run with multiple
streams.
This PR enhance our existing execution plan and executor to support
multiple stream execution. we use an unified algorithm to mange both
single stream and multiple stream scenarios.
This PR mainly focus on the infrastructure support for multiple stream
execution, that is said, given a valid stream assignment, onnxruntime
can execute it correctly. How to generate a good stream assignment for a
given model will be in the future PR.
Co-authored-by: Cheng Tang <chenta@microsoft.com@orttrainingdev9.d32nl1ml4oruzj4qz3bqlggovf.px.internal.cloudapp.net>
Co-authored-by: Cheng Tang <chenta@microsoft.com>
Co-authored-by: RandySheriffH <48490400+RandySheriffH@users.noreply.github.com>
Co-authored-by: Randy Shuai <rashuai@microsoft.com>
Co-authored-by: cao lei <jslhcl@gmail.com>
Co-authored-by: Lei Cao <leca@microsoft.com>
Integrate TensorRT 8.5
- Update TensorRT EP to support TensorRT 8.5
- Update relevant CI pipelines
- Disable known non-supported ops for TensorRT
- Make timeout configurable.
We observe more than [20
hours](https://aiinfra.visualstudio.com/Lotus/_build/results?buildId=256729&view=logs&j=71ce39d8-054f-502a-dcd0-e89fa9931f40)
of running unit tests with TensorRT 8.5 in package pipelines. Because we
can't use placeholder to significantly reduce testing time (c-api
application test will deadlock) in package pipelines, we only run
subsets of model tests and unit tests that are related to TRT (add new
build flag--test_all_timeout and set it to 72000 seconds by package
pipelines). Just to remember, we still run all the tests in TensorRT CI
pipelines to have full test coverage.
- include https://github.com/microsoft/onnxruntime/pull/13918 to fix
onnx-tensorrt compile error.
Co-authored-by: George Wu <jywu@microsoft.com>
### Description
Fix usage of enable_training_ops and reduce ifdef complexity for
training builds.
### Motivation and Context
This is the second refactoring PR towards creating a dedicated build for
on device training. This PR aims to reduce some complexity. We can set
ENABLE_TRAINING_OPS in cmake when either ENABLE_TRAINING or
ENABLE_TRAINING_ON_DEVICE is selected, this way we dont have to use if
defined(ENABLE_TRAINING) || defined(ENABLE_TRAINING_ON_DEVICE )
everywhere in the code.
- If it fixes an open issue, please link to the issue here. -->
### Description
Use onnxruntime_fetchcontent_makeavailable cmake function for TRT. See
the comment for the reason.
### Motivation and Context
To support a newer TRT version. Previously they have a "BUILD_EXE" build
option to allow us to exclude such things from build. But in
https://github.com/onnx/onnx-tensorrt/pull/879 they deleted the build
option. It wouldn't be a problem if we continue to use git submodules as
before, because cmake's add_subdirectories function has an
"EXCLUDE_FROM_ALL" keyword. However, cmake's FetchContent module
doesn't. That's why I needed to create our own version of the macro.
### Description
The existing CUDA profiler is neither session-aware, nor thread-safe.
This PR ensures both.
### Motivation and Context
[PR 13549](https://github.com/microsoft/onnxruntime/pull/13549) brought
thread-safety and session-awareness to the ROCm profiler. This PR brings
the same goodness to the CUDA profiler as well.
Sample outputs of a profiling run from the StableDiffusion model (this
model was chosen because it requires orchestration of multiple sessions,
and verifies that the profilers are now indeed session-aware) on both
CUDA and ROCm EPs are attached, along with a script that checks that the
trace files generated by the profile are well-formed.
Update 11/29: Updated the profile outputs. The older profile outputs
exhibited an issue where some timestamps were wildly out of range,
leading to problems visualizing the traces. The bug has been fixed and
the profile outputs have been updated, along with an update to the check
script to ensure that timestamps are monotonically increasing.
[sd_profile_outputs_cuda.tar.gz](https://github.com/microsoft/onnxruntime/files/10118088/sd_profile_outputs_cuda.tar.gz)
[sd_profile_outputs_rocm.tar.gz](https://github.com/microsoft/onnxruntime/files/10118089/sd_profile_outputs_rocm.tar.gz)
[check_profile_output_well_formedness.zip](https://github.com/microsoft/onnxruntime/files/10118090/check_profile_output_well_formedness.zip)
Co-authored-by: Abhishek Udupa <abhishek.udupa@microsoft.com>
### Description
Improve the handling of "/external:I". The
"onnxruntime_external_lib_include_dir" variable may be:
1. A simple file path
2. A cmake generator expression like "$<INSTALL_INTERFACE:include>",
"$<TARGET_PROPERTY:onnx_proto,INTERFACE_INCLUDE_DIRECTORIES>",
"$<BUILD_INTERFACE:xxxx>". It seems that we can't simply put them in to
the "target_compile_options" line. So this PR tries to parse the
expression and extract the part we need out.
### Motivation and Context
Resolve the Github issue: https://github.com/microsoft/onnxruntime/issues/13893
To fix a build error:
/home/xxxxxxxxxxxxx/onnxruntime/build/Linux/Debug/tensorboard/compat/proto/cost_graph.pb.cc:17:8:
error:
‘PROTOBUF_INTERNAL_EXPORT_tensorboard_2fcompat_2fproto_2ftensor_5fshape_2eproto’
does not name a type
17 | extern
PROTOBUF_INTERNAL_EXPORT_tensorboard_2fcompat_2fproto_2ftensor_5fshape_2eproto
::PROTOBUF_NAMESPACE_ID::internal::SCCInfo<1>
scc_info_TensorShapeProto_tensorboard_2fcompat_2fproto_2ftensor_5fshape_2eproto;
### Description
Decouple strided tensor support from ENABLE_TRAINING
### Motivation and Context
This is step 1 for creating a dedicated build for on device training.
Intention is
1. We can set ENABLE_STRIDED_TENSORS in cmake when either
ENABLE_TRAINING or ENABLE_TRAINING_ON_DEVICE is selected, this way we
dont have to use if defined(ENABLE_TRAINING) ||
defined(ENABLE_TRAINING_ON_DEVICE ) everywhere in the code.
2. This also paves the way to easily enable strided tensor support for
inference in future (if required).
### Description
This PR enables building nuget packages locally for on device training
using --build_nuget arg.
This PR also enables the C# bindings by default in the managed package.
If a user triggers any training apis when the native binary is not built
for training, an exception with message "Training is disabled in the
current build. Please build ONNXRuntime from source with the build flags
enable_training and enable_training_on_device. " is thrown.
Build command for creating nuget packes for on device training:
build.bat --enable_training --enable_training_on_device --build_nuget
2 Nuget packages are built
1. Microsoft.ML.OnnxRuntime.Managed
2. Microsoft.ML.OnnxRuntime.Training OR
Microsoft.ML.OnnxRuntime.Training.Gpu
### Motivation and Context
<!-- - Why is this change required? What problem does it solve?
- If it fixes an open issue, please link to the issue here. -->
## Description
1. Convert some git submodules to cmake external projects
2. Update nsync from
[1.23.0](https://github.com/google/nsync/releases/tag/1.23.0) to
[1.25.0](https://github.com/google/nsync/releases/tag/1.25.0)
3. Update re2 from 2021-06-01 to 2022-06-01
4. Update wil from an old commit to 1.0.220914.1 tag
5. Update gtest to a newer commit so that it can optionally leverage
absl/re2 for parsing command line flags.
The following git submodules are deleted:
1. FP16
2. safeint
3. XNNPACK
4. cxxopts
5. dlpack
7. flatbuffers
8. googlebenchmark
9. json
10. mimalloc
11. mp11
12. pthreadpool
More will come.
## Motivation and Context
There are 3 ways of integrating 3rd party C/C++ libraries into ONNX
Runtime:
1. Install them to a system location, then use cmake's find_package
module to locate them.
2. Use git submodules
6. Use cmake's external projects(externalproject_add).
At first when this project was just started, we considered both option 2
and option 3. We preferred option 2 because:
1. It's easier to handle authentication. At first this project was not
open source, and it had some other non-public dependencies. If we use
git submodule, ADO will handle authentication smoothly. Otherwise we
need to manually pass tokens around and be very careful on not exposing
them in build logs.
2. At that time, cmake fetched dependencies after "cmake" finished
generating vcprojects/makefiles. So it was very difficult to make cflags
consistent. Since cmake 3.11, it has a new command: FetchContent, which
fetches dependencies when it generates vcprojects/makefiles just before
add_subdirectories, so the parent project's variables/settings can be
easily passed to the child projects.
And when the project went on, we had some new concerns:
1. As we started to have more and more EPs and build configs, the number
of submodules grew quickly. For more developers, most ORT submodules are
not relevant to them. They shouldn't need to download all of them.
2. It is impossible to let two different build configs use two different
versions of the same dependency. For example, right now we have protobuf
3.18.3 in the submodules. Then every EP must use the same version.
Whenever we have a need to upgrade protobuf, we need to coordinate
across the whole team and many external developers. I can't manage it
anymore.
3. Some projects want to manage the dependencies in a different way,
either because of their preference or because of compliance
requirements. For example, some Microsoft teams want to use vcpkg, but
we don't want to force every user of onnxruntime using vcpkg.
7. Someone wants to dynamically link to protobuf, but our build script
only does static link.
8. Hard to handle security vulnerabilities. For example, whenever
protobuf has a security patch, we have a lot of things to do. But if we
allowed people to build ORT with a different version of protobuf without
changing ORT"s source code, the customer who build ORT from source will
be able to act on such things in a quicker way. They will not need to
wait ORT having a patch release.
9. Every time we do a release, github will also publish a source file
zip file and a source file tarball for us. But they are not usable,
because they miss submodules.
### New features
After this change, users will be able to:
1. Build the dependencies in the way they want, then install them to
somewhere(for example, /usr or a temp folder).
2. Or download the dependencies by using cmake commands from these
dependencies official website
3. Similar to the above, but use your private mirrors to migrate supply
chain risks.
4. Use different versions of the dependencies, as long as our source
code is compatible with them. For example, you may use you can't use
protobuf 3.20.x as they need code changes in ONNX Runtime.
6. Only download the things the current build needs.
10. Avoid building external dependencies again and again in every build.
### Breaking change
The onnxruntime_PREFER_SYSTEM_LIB build option is removed you could think from now
it is default ON. If you don't like the new behavior, you can set FETCHCONTENT_TRY_FIND_PACKAGE_MODE to NEVER.
Besides, for who relied on the onnxruntime_PREFER_SYSTEM_LIB build
option, please be aware that this PR will change find_package calls from
Module mode to Config mode. For example, in the past if you have
installed protobuf from apt-get from ubuntu 20.04's official repo,
find_package can find it and use it. But after this PR, it won't. This
is because that protobuf version provided by Ubuntu 20.04 is too old to
support the "config mode". It can be resolved by getting a newer version
of protobuf from somewhere.
### Description
1. Move C/C++ deps' URLs to deps.txt, and download the dependencies from
Azure Devops Artifacts instead of github.
2. Add "EXCLUDE_FROM_ALL" keyword to the cmake external projects, so
that we only build the parts we need and avoid installing the 3rd-party
dependencies when people run `make install` in ORT's build directory.
However, at this moment cmake itself doesn't have the feature. So I
copied their code to cmake/external/helper_functions.cmake and modified
it.
This PR is split from #13523, to make that one smaller.
### Motivation and Context
1. Secure the supply chain
2. Make it be possible to automatically detect if ORT has an old
dependency that hasn't been updated from a long time.