* Test re-using page layout from current ONNX Runtime website for docs * Add content for documentation on website * Fixed most broken links * Copy just-the-docs theme sources into repo * Remove local theme files as this did not work with GitHub * Remove nojekyll file * Move image assets into single location * Add Contents to markdown files and ensure only one h1 * Update after review * Fix img links * Add trailing slash to main nav links * Fix broken links on main docs page * Re-fix broken links on main docs page * Fix broken links #3 * Fix broken links #4 * Fix broken links #5 * Fix broken links #6 * Fix paths to global assets * Add updates since fork * Update custom op docs * Fix link
2.3 KiB
| title | parent | grand_parent | nav_order |
|---|---|---|---|
| AMD MI GraphX | Execution Providers | Reference | 5 |
MIGraphX Execution Provider
{: .no_toc }
ONNX Runtime's MIGraphX execution provider uses AMD's Deep Learning graph optimization engine to accelerate ONNX model on AMD GPUs.
Contents
{: .no_toc }
- TOC placeholder {:toc}
Build
For build instructions, please see the BUILD page.
Using the MIGraphX execution provider
C/C++
The MIGraphX execution provider needs to be registered with ONNX Runtime to enable in the inference session.
string log_id = "Foo";
auto logging_manager = std::make_unique<LoggingManager>
(std::unique_ptr<ISink>{new CLogSink{}},
static_cast<Severity>(lm_info.default_warning_level),
false,
LoggingManager::InstanceType::Default,
&log_id)
Environment::Create(std::move(logging_manager), env)
InferenceSession session_object{so,env};
session_object.RegisterExecutionProvider(std::make_unique<::onnxruntime::MIGraphXExecutionProvider>());
status = session_object.Load(model_file_name);
You can check here for a specific c/c++ program.
The C API details are here.
Python
When using the Python wheel from the ONNX Runtime build with MIGraphX execution provider, it will be automatically prioritized over the default GPU or CPU execution providers. There is no need to separately register the execution provider. Python APIs details are here.
You can check here for a python script to run an model on either the CPU or MIGraphX Execution Provider.
Performance Tuning
For performance tuning, please see guidance on this page: ONNX Runtime Perf Tuning
When/if using onnxruntime_perf_test, use the flag -e migraphx
Configuring environment variables
MIGraphX providers an environment variable ORT_MIGRAPHX_FP16_ENABLE to enable the FP16 mode.