197 lines
8.2 KiB
Markdown
197 lines
8.2 KiB
Markdown
- [Extend tim-vx with customized operator](#extend-tim-vx-with-customized-operator)
|
|
- [User stories](#user-stories)
|
|
- [Design overview](#design-overview)
|
|
- [**Composed operator**](#composed-operator)
|
|
- [Layout Inference {todo}](#layout-inference-todo)
|
|
- [**Customized opencl operator**](#customized-opencl-operator)
|
|
- [How to determine parameter list in a tuple](#how-to-determine-parameter-list-in-a-tuple)
|
|
- [How to initialize](#how-to-determine-parameter-list-in-a-tuple) [custom operation](#extend-tim-vx-with-customized-operator)
|
|
- [How to complete custom operation functions](#how-to-determine-parameter-list-in-a-tuple)
|
|
- [Layout Inference {todo}](#layout-inference-todo-1)
|
|
|
|
# Extend tim-vx with customized operator
|
|
|
|
tim-vx will provide two different approches supporting extend AI operators besides built-in ops.
|
|
* Compose new operation with builtin ops. example: RNNCell
|
|
* Register opencl kernel as customized operator
|
|
|
|
# User stories
|
|
As **application developer**, I want to **be able to create new opeartor with built-in ops**, so that I can **simplify the lowing from high-level framework(tensorflow,pytorch) to tim-vx**, since I don't want to rewrite same pattern in different frameworks.
|
|
|
|
As **application developer**, I want to **be able to create my own opeartor with standard opencl kernel**, so that I can **support novel operators not presented in tim-vx**.
|
|
|
|
# Design overview
|
|

|
|
* Green components implemented as a public API of tim-vx.
|
|
* Red components could be implemented outside of tim-vx.
|
|
* Gray components implemented as a private code inside tim-vx.
|
|
|
|
## **Composed operator**
|
|
|
|
If some operator can be composed by built-in operators, such as RNNCell which actually built from FullyConnected, Tanh, and DataConvert Layers,
|
|
developer can add their own operator implementation before VSI introduce high-performance built-in ops.
|
|
|
|
[Implementation reference of RNNCell](https://github.com/VeriSilicon/TIM-VX/blob/main/src/tim/vx/ops/rnn_cell.cc)
|
|
|
|
**Keynotes for RNNCell**:
|
|
|
|
In the constructor of RNNCellImpl, internal operators - fc/tanh/dataconvert - will be created without inner connection.
|
|
The inner connection build up inside bindInput() and bindOutput();
|
|
|
|
### Layout Inference {todo}
|
|
|
|
Inside of composed operator, it actually is a subgraph of tim-vx's built-in operatos, it should be easy to extend the original layout inference for build-in operators to composed operator - just do layout inference inside the subgraph.
|
|
|
|
```c++
|
|
void ComposedOp::OnInputs(std::vector<std::shared_ptr<vx::Tensor> next_tensor) {
|
|
for(auto op: op_->OpsInSubgraph()) {
|
|
auto Cloned = handleLayoutInference(new_graph, op);
|
|
}
|
|
}
|
|
```
|
|
|
|
## **Customized opencl operator**
|
|
|
|
Customzied kernel should implemented with standard OpenCL 2.0; With tim-vx built-in infrastructure, user can inject their operator with :
|
|
|
|
1. OpenCL kernel stream as source code;
|
|
2. Kernel enqueue configuration for global_work_size and local_work_size;
|
|
3. Scalar parameter list defined as a std::tuple;
|
|
4. Readable operator name;
|
|
|
|
TIM-VX provide two different approach to integrate user's operator:
|
|
1. Build from source : build tim-vx source and user operators' implementation as single library;
|
|
2. Build from sdk: tim-vx prebuilt as a standalone library and a set of standard headers; user build operator implementation and link with tim-vx;
|
|
|
|
From tim-vx api view, the customized operator registed at graph-level, the registration automatically effected at the first time to create instance of the customized operator. With this approcah, user can override built-in operator or support new operator in a new model easily.
|
|
|
|
```c++
|
|
void CreateGraphWithCustomizedOperator() {
|
|
// create context/graph/tensor as before.
|
|
auto conv = graph->CreateOperation<tim::vx::Conv2d>(...);
|
|
auto post_detect = graph->CreateOperation<3rd_party::DetectionPostProcess>(...);
|
|
post_detect.BindInput(...);
|
|
post_detect.BindOutput(...);
|
|
|
|
graph->Compile();
|
|
}
|
|
```
|
|
|
|
### How to determine parameter list in a tuple
|
|
Usually, kernel take two different kinds of paramter: "tensor-like" and scalar; The tensor-like parameters usually is the output-tensor from other operators or input for other operator.
|
|
In the operator's paramter list, only scalar parameters should be defined. "tensor-like" operand should provied by bindInput/bindOutput.
|
|
|
|
The scalar paramters **MUST** provided at kernel registration.
|
|
|
|
Take following hswish as example:
|
|
CL kernel signature:
|
|
```cl
|
|
__kernel void hswish_F32toF32(
|
|
__read_only image2d_array_t input,
|
|
__write_only image2d_array_t output,
|
|
float inputScale,
|
|
float inputTail,
|
|
float outputScale,
|
|
float outputZP)
|
|
```
|
|
|
|
### How to initialize custom operation
|
|
The custom operation class can be defined as:
|
|
```c++
|
|
CustomOpClass(Graph*graph, ParamTuple tuple_list, uint32_t input_num,uint32_t output_num)
|
|
: CustomOpBase(graph, input_num, output_num, CustomOpClass::kernel_id_, CustomOpClass::kernel_name_,.../*any other parameter required by c++ code, not relevant to cl kernel**/){
|
|
tuple_list_.swap(tuple_list);
|
|
param_transform(tuple_list_, param_list_);
|
|
kernel_resource_="...";
|
|
protected:
|
|
ParamTuple tuple_list_;
|
|
static const char* kernel_name_;
|
|
static int32_t kernel_id_;
|
|
}
|
|
```
|
|
|
|
1.ParamTuple tuple_list_: scalar parameters tuple list in CL kernel signature, we provide param_transform() function to transform tuple_list_ to param_list_.
|
|
2.uint32_t input_num/output_num: the number of kernel operation inputs/outputs.
|
|
3.static const char* kernel_name_: OpenCL kernel name defined by users, which is unique.
|
|
4.static int32_t kernel_id_:OpenCL kernel id is defined as
|
|
|
|
```c++
|
|
int32_t CustomOpClass::kernel_id_ = -1 * (++gobal_kernel_id_).
|
|
```
|
|
|
|
5.const char* kernel_resource_: OpenCL kernel registration should be defined in custom op class initialization function. It can contain multi functions adaptd to servel situations. For example:
|
|
|
|
```c++
|
|
kernel_resource_ = "__kernel void hswish_BF16toBF16(\n\
|
|
__read_only image2d_array_t input,\n\
|
|
__write_only image2d_array_t output,\n\
|
|
float beta\n\
|
|
)\n\
|
|
{\n\
|
|
/*kernel funtion resource*/\n\
|
|
}\n\
|
|
\n\
|
|
__kernel void hswish_BF32toF32(\n\
|
|
__read_only image2d_array_t input,\n\
|
|
__write_only image2d_array_t output,\n\
|
|
float inputScale,\n\
|
|
float inputTail,\n\
|
|
float outputScale,\n\
|
|
float outputZP\n\
|
|
)\n\
|
|
{\n\
|
|
/*kernel funtion resource*/ \n\
|
|
}\n\";
|
|
```
|
|
|
|
### How to complete custom operation functions
|
|
|
|
1.SetupShapeInfor: the function for output tensor size.
|
|
```c++
|
|
void SetupShapeInfor() override {
|
|
outputs_size_[0].push_back(...);
|
|
...
|
|
}
|
|
```
|
|
|
|
2.SetupParams: the function for kernel select and build option. The func_name_ is the selected function name provided by kernel_resource_, is used to determine which kernel function to be applied. build_option is the compiler options when compile custom op resource.
|
|
```c++
|
|
void SetupParams(
|
|
std::vector<tim::vx::DataType> input_types,
|
|
std::string& build_option) override {
|
|
if(...){
|
|
func_name_ = "..."/*it MUST provided in kernel_source_ */;
|
|
build_option = "..."/*compile paramters*/;
|
|
}else{
|
|
...
|
|
}
|
|
}
|
|
```
|
|
|
|
3.SetupEnqueue: the function for kernel local size and gobal size.
|
|
```c++
|
|
void SetupEnqueue(uint32_t& dim, std::vector<size_t>& global_size,
|
|
std::vector<size_t>& local_size) {
|
|
dim = .../*kernel dim*/;
|
|
local_size[0] = .../*kernel local size*/;
|
|
global_size[0] = .../*kernel global size*/;
|
|
}
|
|
```
|
|
local_size and global_size are similar features as **clEnqueueNDRangeKernel** in standard OpenCL.
|
|
|
|
Some tips for work_size:
|
|
HWThreadCount = 4
|
|
|
|
4.Clone: the function for operation clone.
|
|
```c++
|
|
std::shared_ptr<tim::vx::Operation> Clone(
|
|
std::shared_ptr<tim::vx::Graph>& graph) const override{
|
|
return graph->CreateOperation<user::custom_operation>(graph,this->params/*others*/);
|
|
}
|
|
```
|
|
|
|
### Layout Inference
|
|
|
|
so far we don't support this feature. User should take care of the layout transform carefully.
|
|
TODO: vsi will rework the framework so that any customized op can work properly in layout transform.
|