zhiics commented on a change in pull request #4741: [External codegen] Add test
cases for fused ops with manual annotation
URL: https://github.com/apache/incubator-tvm/pull/4741#discussion_r368308285
##########
File path: src/relay/backend/contrib/dnnl/codegen.cc
##########
@@ -50,82 +51,109 @@ class CodegenDNNL : public ExprVisitor, public
CodegenCBase {
out_.push_back({node->name_hint(), 0});
}
- void VisitExpr_(const TupleGetItemNode* op) final {
- // Do nothing
- }
-
void VisitExpr_(const CallNode* call) final {
- std::ostringstream decl_stream;
- std::ostringstream buf_stream;
- // Args: ID
- std::vector<std::string> args;
+ struct Output {
+ std::string decl, buf;
+ int out_size = 1;
+ std::string out;
+ };
+
+ auto generate_body = [=](const CallNode* root_call, const std::string&
func_name,
+ const std::vector<std::string>& args,
+ const std::vector<std::string>& fused_func_args) {
+ // Make function call with input buffers when visiting arguments
+ bool first = true;
+ std::ostringstream arg_stream;
+ arg_stream << "(";
+ for (size_t i = 0; i < root_call->args.size(); ++i) {
+ VisitExpr(root_call->args[i]);
+ for (auto out : out_) {
+ if (!first) {
+ arg_stream << ", ";
+ }
+ first = false;
+ arg_stream << out.first;
+ }
+ }
+
+ for (auto arg_name : fused_func_args) {
+ arg_stream << ", " << arg_name;
+ }
+
+ // Analyze the output buffer
+ auto type_node = root_call->checked_type().as<TensorTypeNode>();
+ CHECK(type_node != nullptr && runtime::TypeMatch(type_node->dtype,
kDLFloat, 32))
+ << "Only support single output tensor with float type";
+
+ auto out_shape = GetShape(root_call->checked_type());
+
+ Output ret;
+ ret.out = "buf_" + std::to_string(buf_idx_++);
+ ret.out_size = std::accumulate(out_shape.begin(), out_shape.end(), 1,
std::multiplies<int>());
+
+ this->PrintIndents();
+
+ std::ostringstream buf_stream;
+ buf_stream << "float* " << ret.out << " = (float*)std::malloc(4 * " <<
ret.out_size << ");";
+ ret.buf = buf_stream.str();
- // Get the arguments for various DNNL kernels.
- if (IsOp(call, "nn.conv2d")) {
- decl_stream << "dnnl_conv2d";
- args = Conv2d(call);
+ arg_stream << ", " << ret.out;
+ // Attach attribute arguments
+ for (size_t i = 0; i < args.size(); ++i) {
+ arg_stream << ", " << args[i];
+ }
+ arg_stream << ");";
+ ret.decl = func_name + arg_stream.str();
+
+ return ret;
+ };
+
+ Output ret;
+ if (auto conv_call = DetectFusedConv2DBiasReLU(call)) {
Review comment:
I am not sure if we really want to handle fused op from relay for external
codegen. This looks quite ad-hoc to me. You may have countless combinations.
----------------------------------------------------------------
This is an automated message from the Apache Git Service.
To respond to the message, please log on to GitHub and use the
URL above to go to the specific comment.
For queries about this service, please contact Infrastructure at:
[email protected]
With regards,
Apache Git Services