Commit graph

47 commits

Author SHA1 Message Date
Changming Sun
f70215d4e6
Update C++ dependencies (#21410)
1. Update google benchmark from 1.8.3 to 1.8.5
2. Update google test from commit in main branch to tag 1.15.0 
3. Update pybind11 from 2.12.0 to 2.13.1
4. Update pytorch cpuinfo to include the support for Arm Neoverse V2,
Cortex X4, A720 and A520.
5. Update re2 from 2024-05-01 to 2024-07-02
6. Update cmake to 3.30.1
7. Update Linux docker images
8. Fix a warning in test/perftest/ort_test_session.cc:826:37: error:
implicit conversion loses integer precision: 'streamoff' (aka 'long
long') to 'const std::streamsize' (aka 'const long')
[-Werror,-Wshorten-64-to-32]
2024-07-23 10:00:36 -07:00
Yifan Li
bb76ead96c
[TensorRT EP] support TensorRT 10.2-GA (#21395)
### Description
<!-- Describe your changes. -->
* promote trt version to 10.2.0.19
* EP_Perf CI: clean config of legacy TRT<8.6, promote test env to
trt10.2-cu118/cu125
* skip two tests as Float8/BF16 are supported by TRT>10.0 but TRT CIs
are not hardware-compatible on these:
 ```
 1: [  FAILED  ] 2 tests, listed below:
 1: [  FAILED  ] IsInfTest.test_isinf_bfloat16
 1: [  FAILED  ] IsInfTest.test_Float8E4M3FN
 ```

### 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. -->
2024-07-18 12:11:52 -07:00
Changming Sun
d1ab94c2b0
Add compatibility for NumPy 2.0 (#21085)
### Description

As suggested by SciPy's doc, we will
`Build against NumPy 2.0.0, then it will work for all NumPy versions
with the same major version number (NumPy does maintain backwards ABI
compatibility), and as far back as NumPy 1.19 series at the time of
writing`

I think it works because in
[numpyconfig.h#L64](https://github.com/numpy/numpy/blob/main/numpy/_core/include/numpy/numpyconfig.h#L64)
there is a macro NPY_FEATURE_VERSION. By default it is set to
NPY_1_19_API_VERSION. And the NPY_FEATURE_VERSION macro controls ABI.

This PR only upgrade the build time dependency; When a user installs
ONNX Runtime, they still can use numpy 1.x.

### Motivation and Context
Recently numpy published a new version, 2.0.0, which is incompatible with the latest ONNX Runtime release.
2024-06-27 13:50:53 -07:00
Jian Chen
05032e5e5f
Updating cudnn from 8 to 9 on exsiting cuda 12 docker image (#20925)
### Description
Adding support of cudnn 9 


### Motivation and Context
Keep exsiting  cuda 12.2 with nvidia dirver 535
2024-06-11 09:37:16 -07:00
liqun Fu
51bc53580d
Update to onnx 1.16.1 (#20702) 2024-06-04 11:06:28 -07:00
Changming Sun
d13cabf7f9
Upgrade GCC and remove the dependency on GCC8's experimental std::filesystem implementation (#20893)
### Description
This PR upgrades CUDA 11 build pipelines' GCC version from 8 to 11. 

### Motivation and Context

GCC8 has an experimental std::filesystem implementation which is not ABI
compatible with the formal one in later GCC releases. It didn't cause
trouble for us, however, ONNX community has encountered this issue much.
For example, https://github.com/onnx/onnx/issues/6047 . So this PR
increases the minimum supported GCC version from 8 to 9, and removes the
references to GCC's "stdc++fs" library. Please note we compile our code
on RHEL8 and RHEL8's libstdc++ doesn't have the fs library, which means
the binaries in ONNX Runtime's official packages always static link to
the fs library. It is just a matter of which version of the library, an
experimental one or a more mature one. And it is an implementation
detail that is not visible from outside. Anyway, a newer GCC is better.
It will give us the chance to use many C++20 features.

#### Why we were using GCC 8?
It is because all our Linux packages were built on RHEL8 or its
equivalents. The default GCC version in RHEL8 is 8. RHEL also provides
additional GCC versions from RH devtoolset. UBI8 is the abbreviation of
Red Hat Universal Base Image 8, which is the containerized RHEL8. UBI8
is free, which means it doesn't require a subscription(while RHEL does).
The only devtoolset that UBI8 provides is GCC 12, which is too new for
being used with CUDA 11.8. And our CUDA 11.8's build env is a docker
image from Nvidia that is based on UBI8.
#### How the problem is solved
Almalinux is an alternative to RHEL. Almalinux 8 provides GCC 11. And
the CUDA 11.8 docker image from Nvidia is open source, which means we
can rebuild the image based on Almalinux 8 to get GCC 11. I've done
this, but I cannot republish the new image due to various complicated
license restrictions. Therefore I put them at an internal location in
onnxruntimebuildcache.azurecr.io.
2024-06-03 10:14:08 -07:00
Changming Sun
67bc9438d7
Update training packaging pipeline's docker files (#20853)
### Description
Similar to #20786 . The last PR was able to update all pipelines and all
docker files. This is a follow-up to that PR.

### Motivation and Context
1. To extract the common part as a reusable build infra among different
ONNX Runtime projects.
2. Avoid hitting docker hub's limit: 429 Too Many Requests - Server
message: toomanyrequests: You have reached your pull rate limit. You may
increase the limit by authenticating and upgrading:
https://www.docker.com/increase-rate-limit
2024-05-30 23:48:42 -07:00
Changming Sun
535a030b1e
Remove manylinux build scripts from python packaging pipeline (#20786)
### Description
Use a common set of prebuilt manylinux base images to build the
packages, to avoid building the manylinux part again and again. The base
images can be used in GenAI and other projects too.
This PR also updates the GCC version for inference python CUDA11/CUDA12
builds from 8 to 11. Later on I will update all other CUDA pipelines to
use GCC 11, to avoid the issue described in
https://github.com/onnx/onnx/issues/6047 and
https://github.com/microsoft/onnxruntime-genai/issues/257 .

### Motivation and Context
To extract the common part as a reusable build infra among different
ONNX Runtime projects.
2024-05-24 08:18:22 -07:00
liqun Fu
cd7112f800
Integration with ONNX 1.16.0 (#19745)
### Description
update with ONNX 1.16.0 branch according to
https://github.com/microsoft/onnxruntime/blob/main/docs/How_To_Update_ONNX_Dev_Notes.md

ONNX 1.16.0 release notes:
https://github.com/onnx/onnx/releases/tag/v1.16.0

#### Updated ops for CPU EP:
- DequantizeLinear(21)
  - Added int16 and uint16 support + various optimizer tests
  - Missing int4 and uint4 support
  - Missing block dequantization support
- QuantizeLinear(21)
  - Added int16 and uint16 support + various optimizer tests
  - Missing int4 and uint4 support
  - Missing block quantization support
- Cast(21)
  - Missing int4 and uint4 support
- CastLike(21)
  - Missing int4 and uint4 support
- ConstantOfShape(21)
  - Missing int4 and uint4 support
- Identity(21)
  - Missing int4 and uint4 support
- If(21)
  - Missing int4 and uint4 support
- Loop(21)
  - Missing int4 and uint4 support
- Reshape(21)
  - Missing int4 and uint4 support
- Scan(21)
  - Missing int4 and uint4 support
- Shape(21)
  - Missing int4 and uint4 support
- Size(21)
  - Missing int4 and uint4 support
- Flatten(21)
- Missing float8e4m3fnuz, float8e5m2, float8e5m2fnuz, int4, and uint4
support
- Pad(21)
- Missing float8e4m3fnuz, float8e5m2, float8e5m2fnuz, int4, and uint4
support
- Squeeze(21)
- Missing float8e4m3fnuz, float8e5m2, float8e5m2fnuz, int4, and uint4
support
- Transpose(21)
- Missing float8e4m3fnuz, float8e5m2, float8e5m2fnuz, int4, and uint4
support
- Unsqueeze(21)
- Missing float8e4m3fnuz, float8e5m2, float8e5m2fnuz, int4, and uint4
support

#### Unimplemented opset 21 features/ops
- int4 and uint4 data type
- QLinearMatMul(21)
- GroupNormalization(21)
- ai.onnx.ml.TreeEnsemble(5)

### 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. -->

### Disabled tests
#### ORT Training

orttraining/orttraining/test/python/orttraining_test_ort_apis_py_bindings.py
- test_ort_custom_ops: Potential shape inference bug for custom ops

#### Python quantization unit tests
test/onnx/python/quantization (shape inference bug)
- test_op_conv_transpose.py: test_quantize_conv_transpose_u8u8_fp16
- test_op_conv_transpose.py: test_quantize_conv_transpose_s8s8_fp16
- test_op_gemm.py: test_quantize_qop_gemm_s8s8
- test_op_gemm.py: test_quantize_qop_gemm_e4m3fn_same
 - test_op_gemm.py: test_quantize_qop_gemm_e4m3fn_p3
- test_op_matmul.py: test_quantize_matmul_u8u8_f16
- test_op_matmul.py: test_quantize_matmul_s8s8_f16
- test_op_matmul.py: test_quantize_matmul_s8s8_f16_entropy
- test_op_matmul.py: test_quantize_matmul_s8s8_f16_percentile
- test_op_matmul.py: test_quantize_matmul_s8s8_f16_distribution
- test_op_relu.py: test_quantize_qop_relu_s8s8

#### ONNX tests
- test_maxpool_2d_ceil_output_size_reduce_by_one: ONNX 1.16.0 fixed a
maxpool output size bug and added this test. Enable this test when [ORT
PR](https://github.com/microsoft/onnxruntime/pull/18377) is merged.
Refer to original [ONNX PR](https://github.com/onnx/onnx/pull/5741).
- test_ai_onnx_ml_tree_ensemble_set_membership_cpu: new unimplemented op
ai.onnx.ml.TreeEnsemble
- test_ai_onnx_ml_tree_ensemble_single_tree_cpu: same
- test_ai_onnx_ml_tree_ensemble_set_membership_cuda: same
- test_ai_onnx_ml_tree_ensemble_single_tree_cuda: same
- test_cast_INT4_to_FLOAT_cpu: ORT Cast(21) impl doesn't support int4
yet
- test_cast_INT4_to_INT8_cpu: same
- test_cast_UINT4_to_FLOAT_cpu: same
- test_cast_UINT4_to_UINT8_cpu: same
- test_cast_INT4_to_FLOAT_cuda
- test_cast_INT4_to_INT8_cuda
- test_cast_UINT4_to_FLOAT_cuda
- test_cast_UINT4_to_UINT8_cuda
- test_constantofshape_float_ones_cuda: ConstantOfShape(21) not
implemented for cuda
- test_constantofshape_int_shape_zero_cuda: same
- test_constantofshape_int_zeros_cuda: same
- test_flatten_axis0_cuda: Flatten(21) not implemented for cuda
- test_flatten_axis1_cuda: same
- test_flatten_axis2_cuda: same
- test_flatten_axis3_cuda: same
- test_flatten_default_axis_cuda: same
- test_flatten_negative_axis1_cuda: same
- test_flatten_negative_axis2_cuda: same
- test_flatten_negative_axis3_cuda: same
- test_flatten_negative_axis4_cuda: same
- test_qlinearmatmul_2D_int8_float16_cpu: QLinearMatMul(21) for onnx not
implemented in ORT yet
- test_qlinearmatmul_2D_int8_float32_cpu: same
- test_qlinearmatmul_2D_uint8_float16_cpu: same
- test_qlinearmatmul_2D_uint8_float32_cpu: same
- test_qlinearmatmul_3D_int8_float16_cpu: same
- test_qlinearmatmul_3D_int8_float32_cpu: same
- test_qlinearmatmul_3D_uint8_float16_cpu: same
- test_qlinearmatmul_3D_uint8_float32_cpu: same
- test_qlinearmatmul_2D_int8_float16_cuda: same
- test_qlinearmatmul_2D_int8_float32_cuda: same
- test_qlinearmatmul_2D_uint8_float16_cuda: same
- test_qlinearmatmul_2D_uint8_float32_cuda: same
- test_qlinearmatmul_3D_int8_float16_cuda: same
- test_qlinearmatmul_3D_int8_float32_cuda: same
- test_qlinearmatmul_3D_uint8_float16_cuda: same
- test_qlinearmatmul_3D_uint8_float32_cuda: same
- test_size_cuda: Size(21) not implemented for cuda
- test_size_example_cuda: same
- test_dequantizelinear_blocked: Missing implementation for block
dequant for DequantizeLinear(21)
- test_quantizelinear_blocked_asymmetric: Missing implementation for
block quant for QuantizeLinear(21)
- test_quantizelinear_blocked_symmetric: Missing implementation for
block quant for QuantizeLinear(21)

---------

Signed-off-by: liqunfu <liqun.fu@microsoft.com>
Signed-off-by: Ganesan Ramalingam <grama@microsoft.com>
Co-authored-by: Ganesan Ramalingam <grama@microsoft.com>
Co-authored-by: George Wu <jywu@microsoft.com>
Co-authored-by: adrianlizarraga <adlizarraga@microsoft.com>
2024-04-12 09:46:49 -07:00
Changming Sun
0e8d4c3d21
Enable Address Sanitizer in CI (#19073)
### Description
1. Add two build jobs for enabling Address Sanitizer in CI. One for
Windows CPU, One for Linux CPU.
2. Set default compiler flags/linker flags in build.py for normal
Windows/Linux/MacOS build. This can help control compiler flags in a
more centralized way.
3. All Windows binaries in our official packages will be built with
"/PROFILE" flag. Symbols of onnxruntime.dll can be found at [Microsoft
public symbol
server](https://learn.microsoft.com/en-us/windows-hardware/drivers/debugger/microsoft-public-symbols).

Limitations:
1. On Linux Address Sanitizer ignores RPATH settings in ELF binaries.
Therefore once Address Sanitizer is enabled, before running tests we
need to manually set LD_LIBRARY_PATH properly otherwise
libonnxruntime.so may not be able to find custom ops and shared EPs.
4. On Linux we also need to set LD_PRELOAD before running some tests(if
the main executable, like python, is not built with address sanitizer.
On Windows we do not need to.
5. On Windows before running python tests we should manually copy
address sanitizer DLL to the onnxruntime/capi directory, because python
3.8 and above has enabled "Safe DLL Search Mode" that wouldn't use the
information provided by PATH env.
6. On Linux Address Sanitizer found a lot of memory leaks from our
python binding code. Therefore right now we cannot enable Address
Sanitizer when building ONNX Runtime with python binding.
7. Address Sanitizer itself uses a lot of memory address space and
delays memory deallocations, which is easy to cause OOM issues in 32-bit
applications. We cannot run all the tests in onnxruntime_test_all in
32-bit mode with Address Sanitizer due to this reason. However, we still
can run individual tests in such a way. We just cannot run all of them
in one process.

### Motivation and Context
To catch memory issues.
2024-01-12 07:24:40 -08:00
Jian Chen
2eb3db6bf0
Adding python3.12 support to ORT (#18814)
### Description
Adding python3.12 support to ORT



### 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. -->
2024-01-11 08:34:28 -08:00
Jian Chen
3ea27c2925
Create a new Nuget Package pipeline for CUDA 12 (#18135) 2023-11-28 09:03:46 -08:00
Changming Sun
398ef677ba
Update protobuf python package's version (#18203)
1. Now we use a released version of ONNX, so we can directly download a
prebuilt package from pypi.org. We do not need to build one from source.
2. Update protobuf python package's version to match the C/C++ version
we are using.
3. Update tensorboard python python because the current one is
incompatible with the newer protobuf version.
2023-11-06 09:22:54 -08:00
liqun Fu
20f2dd8b6b
use onnx rel-1.15.0, update cgman, cmake/external and requirement hash (#18177) 2023-10-31 14:58:21 -07:00
Changming Sun
276e8733bd
Update onnx python package and setuptools (#17709)
### Description
A follow-up for #17125
2023-09-27 07:54:48 -07:00
Changming Sun
57dfd15d7b
Remove dnf update from docker build scripts (#17551)
### Description
1. Remove 'dnf update' from docker build scripts, because it upgrades TRT
packages from CUDA 11.x to CUDA 12.x.
To reproduce it, you can run the following commands in a CentOS CUDA
11.x docker image such as nvidia/cuda:11.8.0-cudnn8-devel-ubi8.
```
export v=8.6.1.6-1.cuda11.8
dnf  install -y libnvinfer8-${v} libnvparsers8-${v} libnvonnxparsers8-${v} libnvinfer-plugin8-${v} libnvinfer-vc-plugin8-${v}        libnvinfer-devel-${v} libnvparsers-devel-${v} libnvonnxparsers-devel-${v} libnvinfer-plugin-devel-${v} libnvinfer-vc-plugin-devel-${v} libnvinfer-headers-devel-${v}  libnvinfer-headers-plugin-devel-${v} 
dnf update -y
```
The last command will generate the following outputs:
```
========================================================================================================================
 Package                                     Architecture       Version                          Repository        Size
========================================================================================================================
Upgrading:
 libnvinfer-devel                            x86_64             8.6.1.6-1.cuda12.0               cuda             542 M
 libnvinfer-headers-devel                    x86_64             8.6.1.6-1.cuda12.0               cuda             118 k
 libnvinfer-headers-plugin-devel             x86_64             8.6.1.6-1.cuda12.0               cuda              14 k
 libnvinfer-plugin-devel                     x86_64             8.6.1.6-1.cuda12.0               cuda              13 M
 libnvinfer-plugin8                          x86_64             8.6.1.6-1.cuda12.0               cuda              13 M
 libnvinfer-vc-plugin-devel                  x86_64             8.6.1.6-1.cuda12.0               cuda             107 k
 libnvinfer-vc-plugin8                       x86_64             8.6.1.6-1.cuda12.0               cuda             251 k
 libnvinfer8                                 x86_64             8.6.1.6-1.cuda12.0               cuda             543 M
 libnvonnxparsers-devel                      x86_64             8.6.1.6-1.cuda12.0               cuda             467 k
 libnvonnxparsers8                           x86_64             8.6.1.6-1.cuda12.0               cuda             757 k
 libnvparsers-devel                          x86_64             8.6.1.6-1.cuda12.0               cuda             2.0 M
 libnvparsers8                               x86_64             8.6.1.6-1.cuda12.0               cuda             854 k
Installing dependencies:
 cuda-toolkit-12-0-config-common             noarch             12.0.146-1                       cuda             7.7 k
 cuda-toolkit-12-config-common               noarch             12.2.140-1                       cuda             7.9 k
 libcublas-12-0                              x86_64             12.0.2.224-1                     cuda             361 M
 libcublas-devel-12-0                        x86_64             12.0.2.224-1                     cuda             397 M

Transaction Summary
========================================================================================================================

```
As you can see from the output,  they are CUDA 12 packages. 

The problem can also be solved by lock the packages' versions by using
"dnf versionlock" command right after installing the CUDA/TRT packages.
However, going forward, to get the better reproducibility, I suggest
manually fix dnf package versions in the installation scripts like we do
for TRT now.

```bash
v="8.6.1.6-1.cuda11.8" &&\
    yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel8/x86_64/cuda-rhel8.repo &&\
    yum -y install libnvinfer8-${v} libnvparsers8-${v} libnvonnxparsers8-${v} libnvinfer-plugin8-${v} libnvinfer-vc-plugin8-${v}\
        libnvinfer-devel-${v} libnvparsers-devel-${v} libnvonnxparsers-devel-${v} libnvinfer-plugin-devel-${v} libnvinfer-vc-plugin-devel-${v} libnvinfer-headers-devel-${v}  libnvinfer-headers-plugin-devel-${v}
```
When we have a need to upgrade a package due to security alert or some
other reasons, we manually change the version string instead of relying
on "dnf update". Though this approach increases efforts, it can make our
pipeines more stable.

2. Move python test to docker
### Motivation and Context
Right now the nightly gpu package mixes using CUDA 11.x and CUDA 12.x
and the result package is totally not usable(crashes every time)
2023-09-21 07:33:29 -07:00
Changming Sun
dd561f2015
Upgrade sympy (#17639)
AB#17015
2023-09-20 18:44:23 -07:00
Changming Sun
c6b0d185b4
Update cmake to 3.27 and upgrade Linux CUDA docker files from CentOS7 to UBI8 (#16856)
### Description
1. Update docker files and their build instructions.
ARM64 and x86_64 can use the same docker file.

2. Upgrade Linux CUDA pipeline's base docker image from CentOS7 to UBI8
AB#18990
2023-09-05 18:12:10 -07:00
Jian Chen
081c0692a4
Update to nodejs version from 16 to 18.17.1 (#17351)
### Description
Update to nodejs version from 16 to 18.17.1



### Motivation and Context
Nodejs will reach EOL in September 2023
2023-08-30 12:41:48 -07:00
Jian Chen
922629aad8
Upgrade Centos7 to Alamlinux8 (#16907)
### Description
<!-- Describe your changes. -->



### 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. -->
Get the latest gcc 12 by default

---------

Co-authored-by: Changming Sun <chasun@microsoft.com>
2023-08-29 21:05:36 -07:00
Bowen Bao
6986981482
Bump ONNX version (#16325)
### Description
Bump ONNX version to https://github.com/onnx/onnx/tree/rel-1.14.1 to
include a fix for segfault when shape inferencing nested onnx functions.



### Motivation and Context
Resolves #16170
2023-08-10 11:27:28 -07:00
Changming Sun
73ddba964f
Update the MacOS/Linux build scripts that build/install protobuf from source (#16906)
### Description
1. As a follow-up of #16761, this PR allows build ORT on iOS/Android
without the need to explicitly specify a protoc path. #16761 is for
WASM. This one is for iOS/Android
2. Update the MacOS/Linux build scripts that build/install protobuf from
source. Make them be more flexible. Add the support for
RedHatEnterprise(ubi), which will needed for upgrading the base image
from centos:7 to ubi:8.
3. Update tools/ci_build/github/pai/rocm-ci-pipeline-env.Dockerfile :
the docker file's base image has preinstalled protobuf in /usr/local, we
should uninstall them to avoid conflicts.
2023-07-31 10:51:48 -07:00
Edward Chen
df8843c4a7
Upgrade old Python version in packaging pipeline (#16667)
- Upgrade from Python 3.6 to 3.8 in packaging pipeline.
- Raise build.py minimum required Python version.
2023-07-17 08:24:47 -07:00
RandySheriffH
d35361bf9d
Fix python pipeline for AzureEP without using root (#16023)
Fix python pipeline for AzureEP without using root, this is for 1.15.

---------

Co-authored-by: Randy Shuai <rashuai@microsoft.com>
2023-05-22 16:38:47 -07:00
liqun Fu
ac9ae9f7c5
update onnx release 1.14 for docker files (#15680)
### Description
this is for ort 1.15 release to work with onnx 1.14
It shall be merged after onnx 1.14 release and before ort 1.15 release.


### Motivation and Context

---------

Signed-off-by: Liqun Fu <liqfu@microsoft.com>
2023-05-10 13:15:56 -07:00
Changming Sun
5b826b1bc3
Update cmake version in Linux build (#15707)
### Description
All our Windows build pipelines already uses cmake 3.26 except one
pipeline: QNN ARM64.
This PR does the same for Linux build pipelines.

### Motivation and Context
This change is related to #15704 .
2023-04-27 20:02:33 -07:00
Yi Zhang
4e1f75810c
Add compilation cache in 2 Linux CPU pipelines and refactor the Linux build step with cache (#15484)
### Description
1. Add compilation cache in Linux CPU ARM and Linux Minimal Build.
2. Integrate 4 Linux CPU build step with cache into one.
3. install ccache from source code in Linux ARM64 image.

### Motivation and Context
1. Enable more build steps with compilation cache.
2. Make it easier to add cache.

It could save 40 more minutes of compilation time in Linux ARM64.

https://dev.azure.com/onnxruntime/onnxruntime/_build/results?buildId=959619&view=logs&j=1e0830bb-fd74-5d0a-5029-1c63b4266d7b&t=75260ed7-7566-5947-2095-566660191920
2023-04-14 23:56:59 +08:00
Jian Chen
af28754e6f
Update python package pipeline to support 3.11 (#15311)
### Description
Update python package pipeline to support 3.11

### 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. -->
2023-04-04 10:55:32 -07:00
Changming Sun
15f7dca9fb
Update protobuf to 3.21.x (#15245)
### Description

Fixed
[AB#10092](https://aiinfra.visualstudio.com/6a833879-cd9b-44a4-a9de-adc2d818f13c/_workitems/edit/10092),
[AB#11753](https://aiinfra.visualstudio.com/6a833879-cd9b-44a4-a9de-adc2d818f13c/_workitems/edit/11753),
[AB#11759](https://aiinfra.visualstudio.com/6a833879-cd9b-44a4-a9de-adc2d818f13c/_workitems/edit/11759)

### Motivation and Context
The one we use has a security issue in Java, though we don't use that
version's protobuf java package.
2023-03-29 14:08:18 -07:00
Jian Chen
792d411135
Update python 3.11 and remove 3.7 for Linux (#15214)
### Description
Update python 3.11 and remove 3.7



### Motivation and Context
Update python 3.11 and remove 3.7

---------

Co-authored-by: Ubuntu <chasun@chasunlinux.lw3b1xzoyrkuzm34swpscft0ff.dx.internal.cloudapp.net>
2023-03-27 14:46:30 -07:00
Changming Sun
ffcfb1ec98
Remove protobuf submodule (#15190)
### Description
Remove protobuf submodule as a follow-up of #13523

"Android CI Pipeline" and "Zip-Nuget-Java-Nodejs Packaging Pipeline"
need to be tested.


### Motivation and Context
It is related to
[AB#11753](https://aiinfra.visualstudio.com/6a833879-cd9b-44a4-a9de-adc2d818f13c/_workitems/edit/11753)

Fixed
[AB#14027](https://aiinfra.visualstudio.com/6a833879-cd9b-44a4-a9de-adc2d818f13c/_workitems/edit/14027)
2023-03-27 10:35:49 -07:00
Edward Chen
bd142bfb04
Gradle clean up (#14973)
- Use java/gradlew directly in .github/workflows/publish-java-apidocs.yml.
- Remove use of deleted step from tools/ci_build/github/azure-pipelines/android-arm64-v8a-QNN-crosscompile-ci-pipeline.yml.
- Remove Gradle installations and PATH updates from Dockerfiles and scripts. Now Gradle wrapper is used so a system Gradle installation is not needed.
2023-03-10 10:50:32 -08:00
Baiju Meswani
7954976e0a
Fix python packaging pipeline (#14533)
fix onnx and protobuf inconsistencies in python packaging pipeline.
2023-02-02 13:11:18 +08:00
Yi Zhang
80f807c03d
upgrade protobuf to 3.20.2 and onnx to 1.13 (#14279)
### Description
upgrade protobuf to 3.20.2, same as onnx 1.13.0

### Motivation and Context
Per component governance requirement and Fixes #14060

unused-parameter error occurs in 2 conditions.
1. compile protolbuf

`onnxruntime_src/cmake/external/protobuf/src/google/protobuf/repeated_ptr_field.h:752:66:
error: unused parameter ‘prototype’ [-Werror=unused-parameter]`
2. include onnx_pb.h
```
2023-01-28T10:20:15.0410853Z FAILED: CMakeFiles/onnxruntime_pybind11_state.dir/onnxruntime_src/onnxruntime/python/onnxruntime_pybind_iobinding.cc.o 
......
2023-01-28T10:20:15.0466024Z                  from /build/Debug/_deps/onnx-src/onnx/onnx_pb.h:51,
2023-01-28T10:20:15.0466958Z                  from /onnxruntime_src/include/onnxruntime/core/framework/to_tensor_proto_element_type.h:10,
....
2023-01-28T10:20:15.0609678Z /build/Debug/_deps/onnx-build/onnx/onnx-operators-ml.pb.h:1178:25:   required from here
2023-01-28T10:20:15.0610895Z /onnxruntime_src/cmake/external/protobuf/src/google/protobuf/repeated_ptr_field.h:752:66: error: unused parameter ‘prototype’ [-Werror=unused-parameter]
2023-01-28T10:20:15.0611707Z cc1plus: all warnings being treated as errors

```

https://dev.azure.com/onnxruntime/2a773b67-e88b-4c7f-9fc0-87d31fea8ef2/_apis/build/builds/874605/logs/22
2023-01-31 12:55:09 -08:00
Changming Sun
04900f96c1
Improve dependency management (#13523)
## 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.
2022-12-01 09:51:59 -08:00
Changming Sun
6201593f24
Remove the dependency on CentOS EPEL (#13567)
### Description

The yum repo is called: ["Extra Packages for Enterprise Linux
(EPEL)"](https://docs.fedoraproject.org/en-US/epel/#what_is_extra_packages_for_enterprise_linux_or_epel)
. It is provided by Fedora community for RHEL/CentOS/... Linux distros.
However, we do not really need it.

### Motivation and Context

To minimize the number of dependencies. And the command "yum install -y
https://dl.fedoraproject.org/pub/epel/epel-release-latest-7.noarch.rpm"
often fails because the website is often not responding,
2022-11-06 21:28:16 -08:00
Changming Sun
23da468154
Upgrade cmake version to 3.24 (#13569)
### Description
Upgrade cmake version to 3.24 because I need to use a new feature that
is only provided in that version and later. Starting from cmake 3.24,
the
[FetchContent](https://cmake.org/cmake/help/latest/module/FetchContent.html#module:FetchContent)
module and the
[find_package()](https://cmake.org/cmake/help/latest/command/find_package.html#command:find_package)
command now support integration capabilities, which means calls to
"FetchContent" can be implicitly redirected to "find_package", and vice
versa. Users can use a cmake variable to control the behavior. So, we
don't need to provide such a build option. We can delete our
"onnxruntime_PREFER_SYSTEM_LIB" build option and let cmake handle it.
And it would be easier for who wants to use vcpkg.


### Motivation and Context

Provide a unified package management method, and get aligned with the
community. This change is split from #13523 for easier review.
2022-11-04 22:58:51 -07:00
dependabot[bot]
63c3b21902
Bump protobuf from 3.18.1 to 3.18.3 in /tools/ci_build/github/linux/docker/inference/x64/python/cpu/scripts (#13080) 2022-09-23 22:15:36 -07:00
Changming Sun
eafd67b8fd
Update CUDA version to 11.6 and refactor python packaging pipeline (#13002)
1. Update CUDA version from 11.4 to 11.6.
2. Update Manylinux version
3. Upgrade GCC version from 10 to 11 for most x86_64 pipelines. CentOS 7 ARM64 doesn't have GCC 11 yet.
4. Refactor python packaging pipeline: 
    a. Split Linux GPU build job to two parts, build and test, so that the
build part doesn't need to use a GPU machine
    b. Make the Linux GPU build job and Linux CPU build job more similar: share the same bash script and yaml file.
5. Temporarily disable Attention_Mask1D_Fp16_B2_FusedNoPadding because it is causing one of our packaging pipeline to fail. I have created an ADO task for this.
2022-09-23 00:29:27 -07:00
Changming Sun
626d94aa23
Refactor python packaging pipeline and nuget packaging pipeline (#12945)
1. Move the Linux ARM64 part of python packaging pipeline to a real ARM64 machine pool
2. Refactor the Linux CPU build jobs of python packaging pipeline to two parts: build and test. The test part will be exempted from Cyber EO compliance requirements as it won't affect the final bits we publish. This refactoring is to reduce dependencies in the build part. For example, this PR remove pytorch from the build dependencies.
3. Combine DML nuget packaging pipeline with "Zip-Nuget-Java-Nodejs Packaging Pipeline" as they all produce ORT nuget packages. Also, publish DML nuget packages and ORT GPU nuget packages to https://aiinfra.visualstudio.com/PublicPackages/_artifacts/feed/ORT-Nightly feed.
2022-09-13 14:50:31 -07:00
Changming Sun
d5e34acb82
Remove git and python packages from the docker images used by Zip-Nuget-Java-Nodejs Packaging Pipeline (#11651) 2022-06-03 20:00:54 -07:00
Changming Sun
fc7fe0012f
Fix: nodejs installer file name is wrong (#11097) 2022-04-04 16:24:08 -07:00
Yulong Wang
179406bd25
[JS] upgrade package-lock.json from v1 to v2 (#11039)
* upgrade package-lock.json from v1 to v2

* upgrade requirement of nodejs version to 16.x
2022-03-30 13:30:28 -07:00
Changming Sun
cc6bc34c8c
Update protobuf submodule (#10801) 2022-03-09 09:37:58 -08:00
Yulong Wang
c6fddb263f
Add Node.js binding support to packaging pipeline (#9577) 2021-11-05 15:29:40 -07:00
Hariharan Seshadri
b5f7bb7d10
Update ONNX (#9462) 2021-10-29 10:33:40 -07:00
Changming Sun
87b1fddd97
Add Linux/MacOS ARM64 support to nuget packaging pipeline (#9570) 2021-10-27 19:00:43 -07:00