// Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved. // // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. #include "paddle/fluid/inference/tensorrt/op_teller.h" #include #include "paddle/fluid/framework/block_desc.h" #include "paddle/fluid/framework/data_layout.h" #include "paddle/fluid/framework/phi_utils.h" #include "paddle/fluid/inference/tensorrt/dynamic_shape_infermeta_factory.h" #include "paddle/phi/core/compat/op_utils.h" #include "paddle/phi/core/kernel_factory.h" namespace paddle { namespace framework { class OpDesc; } // namespace framework } // namespace paddle namespace paddle { namespace inference { namespace tensorrt { // Just tell by the op_types. struct SimpleOpTypeSetTeller : public Teller { SimpleOpTypeSetTeller() { #if IS_TRT_VERSION_GE(7130) // use TensorRT plugin teller_set.insert("group_norm"); teller_set.insert("multiclass_nms3"); teller_set.insert("multiclass_nms"); int8_teller_set.insert("multiclass_nms3"); int8_teller_set.insert("multiclass_nms"); #endif #if IS_TRT_VERSION_GE(7000) teller_set.insert("tile"); teller_set.insert("flatten_contiguous_range"); int8_teller_set.insert("flatten_contiguous_range"); teller_set.insert("rnn"); int8_teller_set.insert("rnn"); teller_set.insert("fill_constant_batch_size_like"); int8_teller_set.insert("fill_constant_batch_size_like"); #endif #if CUDA_VERSION >= 10020 teller_set.insert("reshape"); teller_set.insert("reshape2"); int8_teller_set.insert("reshape"); int8_teller_set.insert("reshape2"); #endif #if IS_TRT_VERSION_GE(8000) teller_set.insert("sparse_fc"); int8_teller_set.insert("sparse_fc"); teller_set.insert("sparse_multihead_matmul"); int8_teller_set.insert("sparse_multihead_matmul"); #endif #if IS_TRT_VERSION_GE(8522) teller_set.insert("flash_multihead_matmul"); int8_teller_set.insert("flash_multihead_matmul"); teller_set.insert("cross_multihead_matmul"); int8_teller_set.insert("cross_multihead_matmul"); teller_set.insert("qk_multihead_matmul"); int8_teller_set.insert("qk_multihead_matmul"); #endif #if IS_TRT_VERSION_GE(8200) teller_set.insert("round"); int8_teller_set.insert("round"); teller_set.insert("set_value"); teller_set.insert("index_select"); int8_teller_set.insert("index_select"); #endif } bool operator()(const framework::OpDesc& desc, bool use_no_calib_int8 = false, bool with_dynamic_shape = false) override { const std::string op_type = desc.Type(); std::unordered_set control_set = {"conditional_block", "while"}; std::unordered_set feed_fetch_set = {"feed", "fetch"}; if (control_set.find(op_type) != control_set.end()) { return false; } if (feed_fetch_set.find(op_type) != feed_fetch_set.end()) { return false; } // Dont.t allow fp64! { auto inputs = desc.Inputs(); for (auto iter : inputs) { for (auto var_name : iter.second) { auto* block = desc.Block(); if (block) { auto* var_desc = block->FindVar(var_name); auto dtype = var_desc->GetDataType(); if (dtype == framework::proto::VarType::FP64) { return false; } } } } auto outputs = desc.Outputs(); for (auto iter : outputs) { for (auto var_name : iter.second) { auto* block = desc.Block(); if (block) { auto* var_desc = block->FindVar(var_name); auto dtype = var_desc->GetDataType(); if (dtype == framework::proto::VarType::FP64) { return false; } } } } } // do not support the op which is labeled the `skip_quant` if ((desc.HasAttr("namescope") && PADDLE_GET_CONST(std::string, desc.GetAttr("op_namescope")) == "/skip_quant_2/") || desc.HasAttr("skip_quant")) return false; std::unordered_set act_op_list = { "relu", "relu6", "sigmoid", "elu", "selu", "softsign", "softplus", "stanh", "thresholded_relu", "exp", "log", "sqrt", "abs", "sin", "cos", "tan", "tanh", "sinh", "cosh", "asin", "acos", "atan", "asinh", "acosh", "atanh", "ceil", "celu", "erf", "floor", "round", "sign", "silu", "logical_not", "reciprocal", "tanh_shrink", "logsigmoid", "rsqrt", "swish", "hard_sigmoid", "hard_swish", "leaky_relu"}; std::unordered_set unary_list = { "exp", "log", "sqrt", "abs", "sin", "cos", "tan", "tanh", "sinh", "cosh", "asin", "acos", "atan", "asinh", "acosh", "atanh", "ceil", "celu", "floor", "round", "sign", "logical_not", "reciprocal", "tanh_shrink", "logsigmoid", "erf", "bitwise_not", "equal", "not_equal", "rsqrt"}; // Static shape does not support 0 or 1 dim's input. if (!with_dynamic_shape) { auto inputs = desc.Inputs(); for (auto iter : inputs) { for (auto var_name : iter.second) { auto* block = desc.Block(); if (block) { auto* var_desc = block->FindVar(var_name); // Can't get feed op's TensorDesc if (op_type != "feed" && var_desc && !var_desc->Persistable()) { const auto shape = var_desc->GetShape(); if (shape.size() == 1 || shape.size() == 0) return false; } } } } } if (act_op_list.find(op_type) != act_op_list.end()) { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } #if !IS_TRT_VERSION_GE(7000) if (op_type == "erf") { VLOG(3) << op_type << " op does not support tensorrt."; return false; } #endif #if !IS_TRT_VERSION_GE(8600) auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() == 0 && unary_list.find(op_type) != unary_list.end()) { VLOG(3) << op_type << " op does not support 0 dim input when TensorRT < 8.6."; return false; } #endif } if (op_type == "dropout") { /* * Some OpDescs Attribute support both constant value and dynamic * runtime value (which is a Variable(s) type). But TensorRT maybe * only support constant value Attribute, so we shall distinguish * this case in time and return False in OpTeller.Tell(). * If Attribute is Variable(s), HasAttr() will return False */ if (!desc.HasAttr("dropout_prob", /*with_attr_var=*/false)) { VLOG(3) << "Skip to convert into TRT while found Attribute('dropout_prob') " "is Variable type in dropout."; return false; } } if (op_type == "pool2d") { // If Attribute is Variable(s), HasAttr() will return False if (!desc.HasAttr("ksize", /*with_attr_var=*/false)) { VLOG(3) << "Skip to convert into TRT while found Attribute('ksize') is " "Variable type in pool2d."; return false; } std::vector paddings = PADDLE_GET_CONST(std::vector, desc.GetAttr("paddings")); if (paddings.size() > 2) { return false; } if (desc.Input("X").size() != 1) { VLOG(3) << "TRT Pool2d expect 1 input, but got " << desc.Input("X").size(); return false; } if (desc.Output("Out").size() != 1) { VLOG(3) << "TRT Pool2d has only 1 output, but got " << desc.Output("Out").size(); return false; } if (desc.HasAttr("data_format")) { std::string data_format = PADDLE_GET_CONST(std::string, desc.GetAttr("data_format")); if (data_format == "NHWC" || data_format == "NDHWC") { return false; } } if (!desc.HasAttr("pooling_type")) { return false; } else { std::string pool_type = PADDLE_GET_CONST(std::string, desc.GetAttr("pooling_type")); if (pool_type != "max" && pool_type != "avg") { VLOG(3) << "Wrong pool op type, the trt do not support the " << pool_type << " pool type."; return false; } if (pool_type == "avg") { if (desc.HasAttr("global_pooling")) { if (!PADDLE_GET_CONST(bool, desc.GetAttr("global_pooling"))) { if (desc.HasAttr("exclusive")) { if (PADDLE_GET_CONST(bool, desc.GetAttr("exclusive"))) { std::vector ksize = PADDLE_GET_CONST(std::vector, desc.GetAttr("ksize")); for (size_t i = 0; i < ksize.size(); i++) { if (ksize[i] <= paddings[i]) { VLOG(3) << "the padding size should be less than the " "filter size " "for exclusive-counting pooling."; return false; } } } } } } } } } if (op_type == "conv2d" || op_type == "conv2d_transpose" || op_type == "conv2d_fusion" || op_type == "depthwise_conv2d" || op_type == "depthwise_conv2d_transpose") { if (desc.Input("Input").size() != 1) { VLOG(3) << "TRT Conv2d expect 1 input, but got " << desc.Input("Input").size() << " input."; return false; } if (desc.Input("Filter").size() != 1) { VLOG(3) << "TRT Conv2d expect 1 filter, but got " << desc.Input("Filter").size() << " filter."; return false; } if (desc.HasAttr("enable_int8")) { if (op_type == "conv2d" || op_type == "conv2d_fusion") { if (!desc.HasAttr("Input_scale")) { VLOG(3) << "Input scale not found. TRT int8" " requires conv/deconv to have " "input quantization scales."; return false; } } } if (op_type == "conv2d_transpose" || op_type == "depthwise_conv2d_transpose") { if (!desc.HasAttr("dilations")) { return false; } else { const std::vector dilations = PADDLE_GET_CONST(std::vector, desc.GetAttr("dilations")); if (dilations[0] != 1 || dilations[1] != 1) { VLOG(3) << "In conv2d_transpose, Dilations must be (1, 1) for " "tensorRT, but given (" << dilations[0] << ", " << dilations[1] << ")"; return false; } } } if (desc.Output("Output").size() != 1) { VLOG(3) << "TRT Conv2d expect 1 output, but got " << desc.Output("Output").size() << " output."; return false; } // strides > 1 and 'SAME' is only supported by trt7.0 above #if !IS_TRT_VERSION_GE(7000) if (op_type == "conv2d" || op_type == "conv2d_fusion" || op_type == "depthwise_conv2d") { if (desc.HasAttr("padding_algorithm") && with_dynamic_shape) { auto padding_algorithm = PADDLE_GET_CONST(std::string, desc.GetAttr("padding_algorithm")); if (padding_algorithm == "SAME" && desc.HasAttr("strides")) { const std::vector strides = PADDLE_GET_CONST(std::vector, desc.GetAttr("strides")); // there is no issue if strides.size() less than 2 if (strides.size() > 1) { for (size_t i = 0; i < strides.size(); i++) { if (strides[i] > 1) return false; } } } } } #endif auto* block = desc.Block(); if (block) { auto* filter_var_desc = block->FindVar(desc.Input("Filter")[0]); if (!filter_var_desc->Persistable()) { VLOG(3) << "Trt not support filter is a intermediate tensor in " "conv2d op."; return false; } } } if (op_type == "deformable_conv") { if (!desc.HasAttr("groups") || !desc.HasAttr("strides") || !desc.HasAttr("paddings")) return false; auto* block = desc.Block(); auto input_name = desc.Input("Input")[0]; auto* input_desc = block->FindVar(input_name); const auto input_shape = input_desc->GetShape(); if (input_shape.size() != 4) { VLOG(3) << "Input of deformable conv should be 4-D Tensor, but got " << input_shape.size(); return false; } auto filter_name = desc.Input("Filter")[0]; auto* filter_desc = block->FindVar(filter_name); const auto filter_shape = filter_desc->GetShape(); int groups = PADDLE_GET_CONST(int, desc.GetAttr("groups")); if (input_shape[1] != filter_shape[1] * groups) { VLOG(3) << "The number of input channels should be equal to filter " << "channels * groups. But got input channels " << input_shape[1] << "filter channels " << filter_shape[1]; return false; } const std::vector strides = PADDLE_GET_CONST(std::vector, desc.GetAttr("strides")); if (strides.size() != 2) { VLOG(3) << "The size of strides should be 2, but got " << strides.size(); return false; } const std::vector paddings = PADDLE_GET_CONST(std::vector, desc.GetAttr("paddings")); if (paddings.size() != 2) { VLOG(3) << "The size of paddings shoule be 2, but got " << paddings.size(); return false; } } if (op_type == "bmm") { if (!with_dynamic_shape) { return false; } } if (op_type == "range") { if (!with_dynamic_shape) { return false; } #if IS_TRT_VERSION_LT(8400) auto* block = desc.Block(); auto start_var_name = desc.Input("Start")[0]; auto* start_var_desc = block->FindVar(start_var_name); auto start_dtype = start_var_desc->GetDataType(); if (start_dtype == framework::proto::VarType::FP32) { return false; } #endif } if (op_type == "sign") { #if IS_TRT_VERSION_GE(8200) if (!with_dynamic_shape) { return false; } #else VLOG(3) << "sign op is only supported by trt8.2 above "; return false; #endif } if (op_type == "logical_not") { #if IS_TRT_VERSION_GE(8400) if (!with_dynamic_shape) { return false; } #else VLOG(3) << "logical_not op is only supported by trt8.4 above because of " "cast op"; return false; #endif } if (op_type == "softmax") { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (with_dynamic_shape && (x_shape.size() == 1 || x_shape.size() == 0)) { int axis = desc.HasAttr("axis") ? PADDLE_GET_CONST(int, desc.GetAttr("axis")) : -1; if (axis > 0) { return false; } } } if (op_type == "group_norm") { if (!desc.HasAttr("epsilon") || !desc.HasAttr("groups") || !desc.HasAttr("data_layout")) return false; auto registry = GetPluginRegistry(); if (registry == nullptr) return false; std::string layout_str = PADDLE_GET_CONST(std::string, desc.GetAttr("data_layout")); if (layout_str != "NCHW") { VLOG(3) << "Group norm trt plugin only support NCHW layout, but got " << layout_str; return false; } } if (op_type == "concat") { if (!desc.HasAttr("axis")) { return false; } int axis = PADDLE_GET_CONST(int, desc.GetAttr("axis")); if (!with_dynamic_shape) { if (axis == 0) return false; } auto concat_inputs = desc.Inputs(); if (concat_inputs.find("AxisTensor") != concat_inputs.end()) { if (desc.Input("AxisTensor").size() >= 1) { return false; } } } if (op_type == "transpose2" || op_type == "transpose") { if (!desc.HasAttr("axis")) { return false; } std::vector axis = PADDLE_GET_CONST(std::vector, desc.GetAttr("axis")); if (!with_dynamic_shape && axis[0] != 0) return false; if (axis.size() >= nvinfer1::Dims::MAX_DIMS) return false; auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (axis.size() != x_shape.size()) return false; int dims = x_shape.size(); std::vector perm(nvinfer1::Dims::MAX_DIMS); for (int i = 0; i < dims; i++) { perm[i] = axis[i]; } auto is_valid_permutation = [&](int dims, const std::vector& permutation) { std::bitset found; for (int i = 0; i < dims; ++i) { const int x = permutation[i]; if ((x < 0) || (x >= dims) || found[x]) return false; // Out of bounds or duplicate found.set(x); } return true; }; if (!is_valid_permutation(dims, perm)) { VLOG(3) << "Invalid permutation dimensions for trt transpose op " "converter: duplicate or out of bound."; return false; } } if (op_type == "flatten2" || op_type == "flatten") { if (!desc.HasAttr("axis")) { return false; } else { #if IS_TRT_VERSION_GE(7130) #else if (with_dynamic_shape) return false; #endif int axis = PADDLE_GET_CONST(int, desc.GetAttr("axis")); if (axis != 1) return false; } } if (op_type == "flatten_contiguous_range") { if (!with_dynamic_shape) { if (!desc.HasAttr("start_axis") || !desc.HasAttr("stop_axis")) { return false; } int start_axis = PADDLE_GET_CONST(int, desc.GetAttr("start_axis")); int stop_axis = PADDLE_GET_CONST(int, desc.GetAttr("stop_axis")); auto x_var_name = desc.Input("X")[0]; auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); int dims = x_shape.size(); if (dims == 0) { VLOG(3) << op_type << " op does not support input's dim is 0 in tensorrt " "static shape mode."; return false; } if (start_axis < 0) start_axis += dims; if (start_axis == 0) { VLOG(3) << "TRT flatten_contiguous_range not support the " "batch-dimension being changed"; return false; } if (stop_axis < 0) stop_axis += dims; for (int i = start_axis; i <= stop_axis; ++i) { if (x_shape[i] < 0) { VLOG(3) << "On TRT static shape,flatten_contiguous_range input dim " "should be > 0"; return false; } } } } if (op_type == "gather") { auto gather_inputs = desc.Inputs(); if (gather_inputs.find("Axis") != gather_inputs.end()) { if (desc.Input("Axis").size() >= 1) { return false; } } if (!with_dynamic_shape) { return false; } else { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } #if !IS_TRT_VERSION_GE(7000) auto* x_var_desc = block->FindVar(desc.Input("X")[0]); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() == 1) { VLOG(3) << "Gather does not support 1-dimensional input in tensorrt"; return false; } #endif } } if (op_type == "gather_nd") { if (!with_dynamic_shape) return false; auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } #if IS_TRT_VERSION_LT(8200) auto index_var_name = desc.Input("Index")[0]; auto* index_var_desc = block->FindVar(index_var_name); auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto index_shape = index_var_desc->GetShape(); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() <= 2) { VLOG(3) << "gather_nd op requires the input's dimension to be greater " "than 2"; return false; } if (x_shape.size() != index_shape.size()) { VLOG(3) << "gather_nd op Index input dims size [" << index_shape.size() << " ] not equal to x dims size [" << x_shape.size() << "]"; return false; } #endif } if (op_type == "index_select") { #if !IS_TRT_VERSION_GE(8200) return false; #endif auto gather_inputs = desc.Inputs(); if (!with_dynamic_shape) { return false; } else { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto index_var_name = desc.Input("Index")[0]; auto* index_var_desc = block->FindVar(index_var_name); // The index input must be int32 or int64 datatype. if (index_var_desc->GetDataType() != paddle::framework::proto::VarType_Type::VarType_Type_INT32 && index_var_desc->GetDataType() != paddle::framework::proto::VarType_Type::VarType_Type_INT64) { VLOG(3) << "Index select op Index input data type must be int32 or int64"; return false; } } } if (op_type == "take_along_axis") { #if IS_TRT_VERSION_GE(8200) if (!with_dynamic_shape) return false; auto* block = desc.Block(); auto input_var_name = desc.Input("Input")[0]; auto index_var_name = desc.Input("Index")[0]; auto* input_var_desc = block->FindVar(input_var_name); auto* index_var_desc = block->FindVar(index_var_name); // The index input must be int32 datatype. if (index_var_desc->GetDataType() != paddle::framework::proto::VarType_Type::VarType_Type_INT32) { VLOG(3) << "take_along_axis op Index input data type must be int32"; return false; } const auto input_shape = input_var_desc->GetShape(); const auto index_shape = index_var_desc->GetShape(); if (input_shape.size() != index_shape.size()) { VLOG(3) << "take_along_axis op Index input dims size [" << index_shape.size() << " ] not equal to input dims size [" << input_shape.size() << "]"; return false; } #else VLOG(3) << "take_along_axis op is only supported by trt8.2 above "; return false; #endif } if (op_type == "anchor_generator") { if (!with_dynamic_shape) return false; } if (op_type == "yolo_box") { if (with_dynamic_shape) return false; bool has_attrs = (desc.HasAttr("class_num") && desc.HasAttr("anchors") && desc.HasAttr("downsample_ratio") && desc.HasAttr("conf_thresh") && desc.HasAttr("clip_bbox") && desc.HasAttr("scale_x_y")); if (!has_attrs) return false; } if (op_type == "yolo_box_head") { if (with_dynamic_shape) return false; bool has_attrs = desc.HasAttr("class_num") && desc.HasAttr("anchors"); if (!has_attrs) return false; } if (op_type == "arg_max" || op_type == "arg_min") { if (!desc.HasAttr("axis", /*with_attr_var=*/false)) { VLOG(3) << "Skip to convert into TRT while found Attribute('axis') is " "Variable type in arg_max."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); auto x_dtype = x_var_desc->GetDataType(); if (!(x_dtype == framework::proto::VarType::FP32 || x_dtype == framework::proto::VarType::FP16)) { return false; } int axis = desc.HasAttr("axis") ? PADDLE_GET_CONST(int64_t, desc.GetAttr("axis")) : -1; bool flatten = desc.HasAttr("flatten") ? PADDLE_GET_CONST(bool, desc.GetAttr("flatten")) : false; int dtype = desc.HasAttr("dtype") ? PADDLE_GET_CONST(int, desc.GetAttr("dtype")) : 3; if (axis == 0 || flatten || (dtype != 2 && dtype != 3)) return false; } if (op_type == "affine_channel") { if (!desc.HasAttr("data_layout")) return false; auto data_layout = phi::StringToDataLayout( PADDLE_GET_CONST(std::string, desc.GetAttr("data_layout"))); if (data_layout != phi::DataLayout::kNCHW) return false; auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() == 2) { return false; } } if (op_type == "multiclass_nms" || op_type == "multiclass_nms3") { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto multiclass_nms_inputs = desc.Inputs(); if (multiclass_nms_inputs.find("RoisNum") != multiclass_nms_inputs.end()) { if (desc.Input("RoisNum").size() >= 1) { return false; } } for (auto& param_name : multiclass_nms_inputs) { for (auto& var_name : param_name.second) { auto* var_desc = block->FindVar(var_name); const auto shape = var_desc->GetShape(); if (shape.size() != 3) { VLOG(3) << "multiclass_nms op dims != 3 not supported in tensorrt, " "but got dims " << shape.size() << ", so jump it."; return false; } } } bool has_attrs = (desc.HasAttr("background_label") && desc.HasAttr("score_threshold") && desc.HasAttr("nms_top_k") && desc.HasAttr("keep_top_k") && desc.HasAttr("normalized")); if (has_attrs == false) return false; // TODO(wangxinxin08): tricky solution because the outputs of batchedNMS // plugin are not constient with those of multiclass_nms3 if (desc.HasAttr("nms_eta") == false) return false; auto nms_eta = PADDLE_GET_CONST(float, desc.GetAttr("nms_eta")); if (nms_eta <= 1.0) return false; auto nms_top_k = PADDLE_GET_CONST(int, desc.GetAttr("nms_top_k")); if (nms_top_k < 0) return false; auto keep_top_k = PADDLE_GET_CONST(int, desc.GetAttr("keep_top_k")); if (keep_top_k < 0) return false; auto registry = GetPluginRegistry(); if (registry == nullptr) return false; } if (op_type == "nearest_interp") { std::vector attrs{ "interp_method", "align_corners", "scale", "out_h", "out_w"}; for (auto const& attr : attrs) { if (!desc.HasAttr(attr)) return false; } if (desc.HasAttr("data_layout")) { auto data_layout = phi::StringToDataLayout( PADDLE_GET_CONST(std::string, desc.GetAttr("data_layout"))); if (data_layout != phi::DataLayout::kNCHW && data_layout != phi::DataLayout::kNHWC) return false; } auto interp_method = PADDLE_GET_CONST(std::string, desc.GetAttr("interp_method")); if (interp_method != "nearest") return false; auto scale = PADDLE_GET_CONST(float, desc.GetAttr("scale")); auto out_h = PADDLE_GET_CONST(int, desc.GetAttr("out_h")); auto out_w = PADDLE_GET_CONST(int, desc.GetAttr("out_w")); auto align_corners = PADDLE_GET_CONST(bool, desc.GetAttr("align_corners")); if (!(scale > 0.f && (out_h <= 0 && out_w <= 0))) { if (out_h <= 0) { VLOG(3) << "out_h must be greater than 0 if scale is not set."; return false; } if (out_w <= 0) { VLOG(3) << "out_w must be greater than 0 if scale is not set."; return false; } } if ((scale <= 0.f) && with_dynamic_shape) { VLOG(3) << "dynamic shape not support scale not set."; return false; } // When align_corners = true, the paddle's and trt_layer's results has // diff if (align_corners && scale != 1) { return false; } } if (op_type == "nearest_interp_v2") { std::vector attrs{"data_layout", "interp_method", "align_corners", "scale", "out_h", "out_w"}; for (auto const& attr : attrs) { if (!desc.HasAttr(attr)) return false; } auto data_layout = phi::StringToDataLayout( PADDLE_GET_CONST(std::string, desc.GetAttr("data_layout"))); if (data_layout != phi::DataLayout::kNCHW && data_layout != phi::DataLayout::kNHWC) return false; auto interp_method = PADDLE_GET_CONST(std::string, desc.GetAttr("interp_method")); if (interp_method != "nearest") return false; #if IS_TRT_VERSION_GE(8200) auto resize_inputs = desc.Inputs(); if (with_dynamic_shape && resize_inputs.find("SizeTensor") != resize_inputs.end() && desc.Input("SizeTensor").size() == 2) { return true; } #endif auto scale = PADDLE_GET_CONST(std::vector, desc.GetAttr("scale")); auto out_h = PADDLE_GET_CONST(int, desc.GetAttr("out_h")); auto out_w = PADDLE_GET_CONST(int, desc.GetAttr("out_w")); if (!(out_h > 0 && out_w > 0)) { if (scale.size() < 2) return false; if (scale[0] <= 0.f || scale[1] <= 0.f) { VLOG(3) << "scale factor must be greater than 0 if out_h or out_w is " "not set."; return false; } } } if (op_type == "bilinear_interp_v2") { // trt 7011 result in test_solov2_trt_fp32.py TRT fp32 diff #if IS_TRT_VERSION_LT(7100) return false; #endif std::vector attrs{"data_layout", "interp_method", "align_corners", "scale", "out_h", "out_w"}; for (auto const& attr : attrs) { if (!desc.HasAttr(attr)) { VLOG(3) << "The op_type " << op_type << " doesn't have the attr " << attr << " and return false"; return false; } } auto resize_inputs = desc.Inputs(); if (resize_inputs.find("SizeTensor") != resize_inputs.end()) { if (desc.Input("SizeTensor").size() >= 1) { VLOG(3) << "The Paddle-TRT doesn't support the SizeTensor for op_type " << op_type; return false; } } if (resize_inputs.find("OutSize") != resize_inputs.end()) { if (!with_dynamic_shape) { VLOG(3) << "Static shape don't support the OutSize for op_type " << op_type; return false; } } auto data_layout = phi::StringToDataLayout( PADDLE_GET_CONST(std::string, desc.GetAttr("data_layout"))); if (data_layout != phi::DataLayout::kNCHW && data_layout != phi::DataLayout::kNHWC) { VLOG(3) << "The op_type " << op_type << " is not NCHW or NHWC return false"; return false; } auto interp_method = PADDLE_GET_CONST(std::string, desc.GetAttr("interp_method")); if (interp_method != "bilinear") { VLOG(3) << "The interp_method of op_type " << op_type << " is not bilinear"; return false; } auto align_corners = PADDLE_GET_CONST(bool, desc.GetAttr("align_corners")); if (align_corners != false) { VLOG(3) << "The bilinear_interp_v2 only supports align_corners with false."; return false; } bool has_scale_input_size = (resize_inputs.find("Scale") != resize_inputs.end()); if (has_scale_input_size && desc.Input("Scale").size() != 1) { const std::vector scale = PADDLE_GET_CONST(std::vector, desc.GetAttr("scale")); if (scale.size() <= 1) { if (!desc.HasAttr("out_h") || !desc.HasAttr("out_w")) { VLOG(3) << "The op_type " << op_type << " doesn't have Scale and the scale size <=1 and without " "out_h / out_w, it will return false"; return false; } auto out_h = PADDLE_GET_CONST(int, desc.GetAttr("out_h")); auto out_w = PADDLE_GET_CONST(int, desc.GetAttr("out_w")); if (!(out_h <= 0 && out_w <= 0)) { if (out_h <= 0) { VLOG(3) << "The op_type " << op_type << "'s out_h must be greater than 0 if scale is not set."; return false; } if (out_w <= 0) { VLOG(3) << "The op_type " << op_type << "'s out_w must be greater than 0 if scale is not set."; return false; } } } else { for (size_t i = 0; i < scale.size(); i++) { if (scale[i] <= 0 && with_dynamic_shape) { VLOG(3) << "dynamic shape not support Attr(scale[" << i << "]) " << scale[i] << " less than 1 and Input(Scale) vector not set."; return false; } } } } } if (op_type == "squeeze2") { // If Attribute is Variable(s), HasAttr() will return False if (!desc.HasAttr("axes", /*with_attr_var=*/false)) { VLOG(3) << "Skip to convert into TRT while found Attribute('axes') is " "Variable type in squeeze2."; return false; } std::vector axes; if (desc.HasAttr("axes")) { axes = PADDLE_GET_CONST(std::vector, desc.GetAttr("axes")); } if (axes.size() == 0) { auto* block = desc.Block(); if (block) { auto input_var_name = desc.Input("X")[0]; auto* input_var_desc = block->FindVar(input_var_name); const auto input_shape = input_var_desc->GetShape(); for (int s : input_shape) { if (s == -1) { VLOG(3) << "The necessary attributes of the squeeze2 operator " "axes is " "missing. ss ==== -1"; return false; } else if (s == 1) { axes.push_back(s); } } } if (axes.size() == 0) { VLOG(3) << "The necessary attributes of the squeeze2 operator axes is " "missing."; return false; } } if (!with_dynamic_shape) { if (std::find(axes.begin(), axes.end(), 0) != axes.end()) { VLOG(3) << "Invalid squeeze axes. Axes having batch axis is not " "supported in static shape"; return false; } } } if (op_type == "unsqueeze2") { std::vector axes; if (desc.HasAttr("axes")) { axes = PADDLE_GET_CONST(std::vector, desc.GetAttr("axes")); } if (axes.size() == 0) { VLOG(3) << "The necessary attributes of the squeeze2 operator axes is " "missing."; return false; } if (!with_dynamic_shape) { if (std::find(axes.begin(), axes.end(), 0) != axes.end()) { VLOG(3) << "Invalid squeeze axes. Axes having batch axis is not " "supported in static shape"; return false; } } } if (op_type == "batch_norm") { const std::vector bn_inputs = { "X", "Bias", "Mean", "Scale", "Variance"}; for (unsigned int i = 0; i < bn_inputs.size(); i++) { if (desc.Input(bn_inputs[i]).size() != 1) { VLOG(3) << "Invalid " << bn_inputs[i] << "'s size of batch_norm TRT " "converter. Expected 1, received " << desc.Input(bn_inputs[i]).size() << "."; return false; } } auto batch_norm_inputs = desc.Inputs(); if (batch_norm_inputs.find("MomentumTensor") != batch_norm_inputs.end()) { if (desc.Input("MomentumTensor").size() >= 1) { return false; } } if (desc.Output("Y").size() != 1) { VLOG(3) << "Invalid output Y's size of batch_norm TRT " "converter. Expected 1, received " << desc.Output("Y").size() << "."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); } if (op_type == "split") { if (desc.Input("X").size() != 1) { VLOG(3) << "Invalid input X's size of split TRT converter. " "Expected 1, received " << desc.Input("X").size() << "."; return false; } auto split_inputs = desc.Inputs(); if (split_inputs.find("AxisTensor") != split_inputs.end()) { if (desc.Input("AxisTensor").size() >= 1) { return false; } } if (split_inputs.find("SectionsTensorList") != split_inputs.end()) { if (desc.Input("SectionsTensorList").size() >= 1) { if (!with_dynamic_shape) { return false; } } } if (!desc.HasAttr("axis")) { return false; } int axis = PADDLE_GET_CONST(int, desc.GetAttr("axis")); if (!with_dynamic_shape && axis == 0) { VLOG(3) << "Invalid split axis. Split on batch is not supported in " "TensorRT with static shape"; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); size_t output_num = desc.Output("Out").size(); std::vector output_lengths; int num = 0; if (desc.HasAttr("num")) { num = PADDLE_GET_CONST(int, desc.GetAttr("num")); } if (desc.HasAttr("sections")) { output_lengths = PADDLE_GET_CONST(std::vector, desc.GetAttr("sections")); } if (output_lengths.size() == 0 && num == 0) { VLOG(3) << "sections and num cannot be equal to 0 at the same time"; return false; } if (with_dynamic_shape) { #if IS_TRT_VERSION_GE(6000) #else VLOG(3) << "You are running the TRT Dynamic Shape mode, need to " "confirm that " "your TRT version is no less than 6.0"; return false; #endif } axis += (axis < 0) ? x_shape.size() : 0; if (x_shape[axis] == -1) { VLOG(3) << "The (" << axis << ") dim of input should not be -1"; return false; } if (output_lengths.size() == 0) { if (num > 0) { int64_t in_axis_dim = x_shape[axis]; if (in_axis_dim % num != 0) { VLOG(3) << "Invalid number to split. Tensor split does not result" " in an equal division of dimensions. Axis dim = " << in_axis_dim << " num = " << num << "!= 0"; return false; } size_t out_axis_dim = in_axis_dim / num; for (int i = 0; i < num; ++i) { output_lengths.push_back(out_axis_dim); } } } if (output_lengths.size() != output_num) { VLOG(3) << "The output_length should be equal to the output size."; return false; } } if (op_type == "scale") { auto scale_inputs = desc.Inputs(); if (scale_inputs.find("ScaleTensor") != scale_inputs.end()) { if (desc.Input("ScaleTensor").size() >= 1) { return false; } } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); auto dtype = x_var_desc->GetDataType(); if (!with_dynamic_shape) { // At present, only support float32 or float16 into trt. if (!(dtype == framework::proto::VarType::FP32 || dtype == framework::proto::VarType::FP16)) { return false; } } else { // At present, only support float32 or float16 or int32 or int64 into // trt. if (!(dtype == framework::proto::VarType::FP32 || dtype == framework::proto::VarType::FP16 || dtype == framework::proto::VarType::INT32 || dtype == framework::proto::VarType::INT64)) { return false; } } } if (op_type == "roll") { #if !IS_TRT_VERSION_GE(7000) VLOG(3) << "roll converter does not support trt versions below 7.0"; return false; #endif if (!with_dynamic_shape) { return false; } } if (op_type == "strided_slice") { #if !IS_TRT_VERSION_GE(7000) VLOG(3) << "strided_slice converter does not support trt versions below 7.0"; return false; #endif if (!desc.HasAttr("axes") || !desc.HasAttr("starts") || !desc.HasAttr("ends") || !desc.HasAttr("strides")) { VLOG(3) << "The necessary attributes of the strided_slice operator miss "; return false; } } if (op_type == "rnn") { if (!with_dynamic_shape) { return false; } if (desc.HasAttr("mode")) { std::string mode = PADDLE_GET_CONST(std::string, desc.GetAttr("mode")); if (mode != "LSTM") return false; } if (desc.HasAttr("dropout_prob")) { float dropout_prob = PADDLE_GET_CONST(float, desc.GetAttr("dropout_prob")); if (dropout_prob > 1e-5) return false; } // not support following four inputs for rnn in paddle-trt auto rnn_inputs = desc.Inputs(); if (rnn_inputs.find("SequenceLength") != rnn_inputs.end()) { if (desc.Input("SequenceLength").size()) { return false; } } } if (op_type == "fill_constant_batch_size_like") { if (!with_dynamic_shape) { return false; } if (!desc.HasAttr("input_dim_idx")) { return false; } if (!desc.HasAttr("output_dim_idx")) { return false; } if (!desc.HasAttr("shape")) { return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("Input")[0]; auto* x_var_desc = block->FindVar(x_var_name); auto dtype = x_var_desc->GetDataType(); // At present, only support float32 into trt. if (dtype != 5) { return false; } } if (op_type == "fill_any_like") { if (!with_dynamic_shape) { VLOG(3) << "the fill_any_like does not support static shape yet"; return false; } int dtype = desc.HasAttr("dtype") ? PADDLE_GET_CONST(int, desc.GetAttr("dtype")) : -1; auto* block = desc.Block(); auto* x_var_desc = block->FindVar(desc.Input("X")[0]); auto input_type = x_var_desc->GetDataType(); #if IS_TRT_VERSION_GE(8400) if (dtype == 0 || (dtype == -1 && input_type == framework::proto::VarType::BOOL)) { VLOG(3) << "the fill_any_like supports input of BOOL by trt8.4 above"; return true; } #endif if (dtype != -1 && dtype != 2 && dtype != 5) { VLOG(3) << "the fill_any_like only supports int32 and float32 by " "trt8.4 below"; return false; } if (dtype == -1) { if (input_type != framework::proto::VarType::INT32 && input_type != framework::proto::VarType::FP32) { VLOG(3) << "the fill_any_like only supports int32 and float32 by " "trt8.4 below"; return false; } } } if (op_type == "slice") { if (desc.HasAttr("decrease_axis")) { std::vector decrease_axis = PADDLE_GET_CONST(std::vector, desc.GetAttr("decrease_axis")); if (!with_dynamic_shape) { if (decrease_axis.end() != std::find(decrease_axis.begin(), decrease_axis.end(), 0)) { return false; } } } std::vector axes; if (!desc.HasAttr("axes")) { VLOG(3) << "The necessary attributes of the slice operator axes " " are missing."; return false; } else { axes = PADDLE_GET_CONST(std::vector, desc.GetAttr("axes")); if (!with_dynamic_shape) { for (size_t i = 0; i < axes.size(); i++) { if (axes[i] == 0) { VLOG(3) << "Invalid slice axis. Slice on batch axis is not " "supported in TensorRT"; return false; } } } } // not support following four inputs for slice in paddle-trt auto slice_inputs = desc.Inputs(); // its size == 5 if (slice_inputs.find("StartsTensor") != slice_inputs.end() && desc.Input("StartsTensor").size()) { VLOG(3) << "The Slice has StartsTensor input."; } else { if (!desc.HasAttr("starts")) { VLOG(3) << "The necessary attributes of the slice operator starts or " "StartsTensor" " are missing."; return false; } else { std::vector starts = PADDLE_GET_CONST(std::vector, desc.GetAttr("starts")); if (axes.size() != starts.size()) { VLOG(3) << "The shape of attributes of the slice operator axes " "and starts are not equal."; return false; } } } if (slice_inputs.find("EndsTensor") != slice_inputs.end() && desc.Input("EndsTensor").size()) { VLOG(3) << "The Slice has EndsTensor input."; } else { if (!desc.HasAttr("ends")) { VLOG(3) << "The necessary attributes of the slice operator ends or " "EndsTensor" " are missing."; return false; } else { std::vector ends = PADDLE_GET_CONST(std::vector, desc.GetAttr("ends")); if (axes.size() != ends.size()) { VLOG(3) << "The shape of attributes of the slice operator axes " "and ends are not equal."; return false; } } } if (slice_inputs.find("StartsTensorList") != slice_inputs.end()) { VLOG(3) << "The Slice has StartsTensorList input."; } if (slice_inputs.find("EndsTensorList") != slice_inputs.end()) { VLOG(3) << "The Slice has EndsTensorList input."; } } if (op_type == "less_than" || op_type == "greater_than" || op_type == "logical_or" || op_type == "logical_xor" || op_type == "logical_and" || op_type == "less_equal" || op_type == "greater_equal") { #if IS_TRT_VERSION_GE(8400) // TRT does not support kEQUAL/kGREATER/kLESS work with implicit batch if (!with_dynamic_shape) { VLOG(3) << "Ops(" << op_type << ") do not support static shape yet."; return false; } auto* block = desc.Block(); auto* x_var_desc = block->FindVar(desc.Input("X")[0]); auto* y_var_desc = block->FindVar(desc.Input("Y")[0]); auto x_dtype = x_var_desc->GetDataType(); auto y_dtype = y_var_desc->GetDataType(); if (op_type == "logical_or" || op_type == "logical_xor" || op_type == "logical_and") { if (x_dtype != framework::proto::VarType::BOOL || y_dtype != framework::proto::VarType::BOOL) { VLOG(3) << "the op (" << op_type << ") only support input of BOOL."; return false; } } if (op_type == "less_than" || op_type == "greater_than" || op_type == "less_equal" || op_type == "greater_equal") { if (x_dtype == framework::proto::VarType::BOOL || y_dtype == framework::proto::VarType::BOOL) { VLOG(3) << "ElementWiseOperation::kLESS/ElementWiseOperation::kGREATER " "do not support boolean datatype."; return false; } } #else VLOG(3) << "these are not supported when TensorRT < 8.4"; return false; #endif } if (op_type == "elementwise_add" || op_type == "elementwise_mul" || op_type == "elementwise_sub" || op_type == "elementwise_div" || op_type == "elementwise_pow" || op_type == "elementwise_min" || op_type == "elementwise_max" || op_type == "elementwise_floordiv" || op_type == "elementwise_mod") { if (desc.Input("X").size() != 1) { VLOG(3) << "The input op's Input(\"X\").size() " "should equal to 1, but received Input(\"X\").size() = " << desc.Input("X").size() << "."; return false; } if (desc.Input("Y").size() != 1) { VLOG(3) << "The input op's Input(\"Y\").size() " "should equal to 1, but received Input(\"Y\").size() = " << desc.Input("Y").size() << "."; return false; } if (desc.Output("Out").size() != 1) { VLOG(3) << "The input op's Output(\"Out\").size() " "should equal to 1, but reveceid Output(\"Out\").size() = " << desc.Output("Out").size() << "."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* x_var_desc = block->FindVar(desc.Input("X")[0]); auto* y_var_desc = block->FindVar(desc.Input("Y")[0]); const auto x_shape = x_var_desc->GetShape(); const auto y_shape = y_var_desc->GetShape(); // These operations do not support boolean datatype. if (op_type == "elementwise_add" || op_type == "elementwise_mul" || op_type == "elementwise_sub" || op_type == "elementwise_div" || op_type == "elementwise_pow" || op_type == "elementwise_min" || op_type == "elementwise_max" || op_type == "elementwise_floordiv" || op_type == "elementwise_mod") { if (x_var_desc->GetDataType() == paddle::framework::proto::VarType_Type::VarType_Type_BOOL) { VLOG(3) << "These operations " "(elementwise_add/mul/sub/div/pow/min/max/floordiv/mod) do " "not support boolean datatype."; return false; } } // These operations input do not support int32 datatype. if (op_type == "elementwise_pow") { if (x_var_desc->GetDataType() == paddle::framework::proto::VarType_Type::VarType_Type_INT32) { VLOG(3) << "These operations (elementwise_pow) do not support int32 " "datatype."; return false; } } // The case when x_shape.size() == 1 is dealt with in common case if (!with_dynamic_shape && (!y_var_desc->Persistable()) && y_shape.size() == 1) { VLOG(3) << "Static shape in trt not support y is a 1D intermediate " "tensor in " "elementwise op."; return false; } if (x_var_desc->Persistable() && !with_dynamic_shape) { VLOG(3) << "Input X is a parameter which is not supported for " "elementwise in tensorrt's static shape, swap x and y will work"; return false; } } if (op_type == "pow") { auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* x_var_desc = block->FindVar(desc.Input("X")[0]); // the same as `elementwise_pow`. if (x_var_desc->GetDataType() == paddle::framework::proto::VarType_Type::VarType_Type_INT32) { VLOG(3) << "These operations (pow) do not support int32 " "datatype."; return false; } } if (op_type == "stack") { if (!with_dynamic_shape) { VLOG(3) << "static shape mode is not supported for TRT stack.\n" "You can use the config.SetTRTDynamicShapeInfo(...) interface" " to set the shape information to run the dynamic shape " "mode."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); int rank = x_shape.size(); int axis = desc.HasAttr("axis") ? PADDLE_GET_CONST(int, desc.GetAttr("axis")) : -1; if (axis > rank || axis < -(rank + 1)) { return false; } } if (op_type == "shape" && !with_dynamic_shape) { return false; } if (op_type == "fused_embedding_eltwise_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "fused_embedding_eltwise_layernorm should run on dynamic " "shape mode."; return false; } if (desc.Input("Ids").size() != desc.Input("Embs").size()) { return false; } } if (op_type == "fused_bias_dropout_residual_layer_norm") { if (!with_dynamic_shape) { VLOG(3) << "fused_bias_dropout_residual_layer_norm should run on " "dynamic shape mode."; return false; } float dropout_rate = PADDLE_GET_CONST(float, desc.GetAttr("dropout_rate")); if (dropout_rate != 0.0f) { VLOG(4) << "preln_residual_bias trt layer can not work with " "fused_bias_dropout_residual_layer_norm op in which the " "dropout_rate != 0, stop convert"; return false; } } if (op_type == "fused_preln_embedding_eltwise_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "fused_preln_embedding_eltwise_layernorm should run on " "dynamic " "shape mode."; return false; } if (desc.Input("Ids").size() != desc.Input("Embs").size()) { VLOG(3) << "The id and emb size of fused PrelnEmbEltwiseLayerNormOp " "should be same "; return false; } if (!desc.HasAttr("enable_int8")) { VLOG(3) << "PrelnEmbEltwiseLayerNormOp must use int8 mode."; return false; } } if (op_type == "gelu") { if (desc.Input("X").size() != 1) { VLOG(3) << "gelu op has only 1 input, but got " << desc.Input("X").size(); return false; } if (desc.Output("Out").size() != 1) { VLOG(3) << "gelu op has only 1 output, but got " << desc.Output("Out").size(); return false; } #if IS_TRT_VERSION_LT(7000) if (desc.HasAttr("approximate")) { VLOG(3) << "approximate gelu op needs TensorRT 7.0 and after"; if (PADDLE_GET_CONST(bool, desc.GetAttr("approximate"))) return false; } #endif } if (op_type == "layer_norm") { if (desc.Input("X").size() != 1) { VLOG(3) << "input of layer_norm op converter should be 1, got " << desc.Input("X").size(); return false; } if (desc.Input("Bias").size() != 1) { VLOG(3) << "Bias of layer_norm op converter should be 1, got " << desc.Input("Bias").size(); return false; } if (desc.Input("Scale").size() != 1) { VLOG(3) << "Scale of layer_norm op converter should be 1, got " << desc.Input("Scale").size(); return false; } if (desc.Output("Y").size() != 1) { VLOG(3) << "output of layer_norm op converter should be 1, got " << desc.Output("Y").size(); return false; } } if (op_type == "fill_constant") { auto fill_constant_inputs = desc.Inputs(); if (fill_constant_inputs.find("ValueTensor") != fill_constant_inputs.end()) { if (desc.Input("ValueTensor").size()) return false; } if (fill_constant_inputs.find("ShapeTensor") != fill_constant_inputs.end()) { if (desc.Input("ShapeTensor").size()) return false; } if (fill_constant_inputs.find("ShapeTensorList") != fill_constant_inputs.end()) { if (desc.Input("ShapeTensorList").size()) return false; } int dtype = desc.HasAttr("dtype") ? PADDLE_GET_CONST(int, desc.GetAttr("dtype")) : 5; // only support int32, int64, float32 if (!(dtype == 2 || dtype == 3 || dtype == 5)) { return false; } } if (op_type == "instance_norm") { if (desc.Input("X").size() != 1) { VLOG(3) << "input of instance_norm op converter should be 1, got " << desc.Input("X").size(); return false; } if (desc.Input("Bias").size() != 1) { VLOG(3) << "Bias of instance_norm op converter should be 1, got " << desc.Input("Bias").size(); return false; } if (desc.Input("Scale").size() != 1) { VLOG(3) << "Scale of instance_norm op converter should be 1, got " << desc.Input("Scale").size(); return false; } if (desc.Output("Y").size() != 1) { VLOG(3) << "output of layer_norm op converter should be 1, got " << desc.Output("Y").size(); return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() != 4) { VLOG(3) << "The instance_norm op only support 4-dimensional input in " "tensorrt."; return false; } } if (op_type == "pad") { if (!desc.HasAttr("pad_value") || !desc.HasAttr("paddings")) return false; const float pad_value = PADDLE_GET_CONST(float, desc.GetAttr("pad_value")); if (pad_value != 0.0f) { VLOG(3) << "The pad layer of TRT only support zero."; return false; } std::vector shape; auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } for (auto& param_name : desc.Inputs()) { for (auto& var_name : param_name.second) { auto* var_desc = block->FindVar(var_name); shape = var_desc->GetShape(); } } int nbDims = shape.size(); std::vector paddings = PADDLE_GET_CONST(std::vector, desc.GetAttr("paddings")); int pad_size = paddings.size(); if (nbDims < 2) { return false; } if (nbDims * 2 != pad_size) { return false; } for (int i = 0; i < pad_size - 4; i++) { if (paddings[i] != 0) { return false; } } } if (op_type == "pad3d") { #if !IS_TRT_VERSION_GE(8200) VLOG(3) << "pad3d is not supported when TensorRT < 8.2"; return false; #endif if (!with_dynamic_shape) { VLOG(3) << "pad3d is not supported static shape"; return false; } if (!desc.HasAttr("paddings") && !desc.HasInput("Paddings")) { return false; } if (desc.HasAttr("mode")) { std::string mode = PADDLE_GET_CONST(std::string, desc.GetAttr("mode")); if (mode != "constant" && mode != "reflect" && mode != "replicate") { VLOG(3) << "The pad3d layer of TRT only support " "constant/reflect/replicate mode."; return false; } } if (desc.HasAttr("data_format")) { std::string data_format = PADDLE_GET_CONST(std::string, desc.GetAttr("data_format")); if (data_format != "NCDHW") { VLOG(3) << "The pad3d layer of TRT only support NCDHW data format."; return false; } } } if (op_type == "prelu") { if (desc.Input("X").size() != 1) { VLOG(3) << "Invalid input X's size of prelu TRT converter. " "Expected 1, received " << desc.Input("X").size() << "."; return false; } if (desc.Output("Out").size() != 1) { VLOG(3) << "Invalid output Out's size of prelu TRT converter. " "Expected 1, received " << desc.Output("Out").size() << "."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* alpha_var = block->FindVar(desc.Input("Alpha")[0]); if (!alpha_var) { VLOG(3) << "Variable Alpha of prelu TRT converter not found."; return false; } auto alpha_shape = alpha_var->GetShape(); if (!with_dynamic_shape && alpha_shape.size() == 0) { VLOG(3) << op_type << " op does not support alpha's dim is 0 in tensorrt " "static shape mode."; return false; } } if (op_type == "mish") { if (desc.Input("X").size() != 1) { VLOG(3) << "Invalid input X's size of mish TRT converter. " "Expected 1, received " << desc.Input("X").size() << "."; return false; } if (desc.Output("Out").size() != 1) { VLOG(3) << "Invalid output Out's size of mish TRT converter. " "Expected 1, received " << desc.Output("Out").size() << "."; return false; } } if (op_type == "roi_align") { if (!with_dynamic_shape) { VLOG(3) << "TRT roi align plugin only accept the dynamic shape, " "because that " "the roi_align will change the batch size."; return false; } std::vector attrs{"pooled_height", "pooled_width", "spatial_scale", "sampling_ratio", "aligned"}; for (auto const& attr : attrs) { if (!desc.HasAttr(attr)) return false; } const auto pooled_height = PADDLE_GET_CONST(int, desc.GetAttr("pooled_height")); if (pooled_height <= 0) return false; const auto pooled_width = PADDLE_GET_CONST(int, desc.GetAttr("pooled_width")); if (pooled_width <= 0) return false; const auto spatial_scale = PADDLE_GET_CONST(float, desc.GetAttr("spatial_scale")); if (spatial_scale <= 0.f) return false; auto roi_align_inputs = desc.Inputs(); if (roi_align_inputs.find("RoisNum") != roi_align_inputs.end()) { if (desc.Input("RoisNum").size() >= 1) { return false; } } } if (op_type == "shuffle_channel") { #if !IS_TRT_VERSION_GE(8000) if (with_dynamic_shape) { VLOG(3) << "You are running the TRT Dynamic Shape mode, " "the shuffle_channel op does not support dynamic shape " "trt versions below 8.0 yet"; return false; } #endif } if (op_type == "where") { #if !IS_TRT_VERSION_GE(8400) VLOG(3) << "where is not supported when TensorRT < 8.4"; return false; #endif if (!with_dynamic_shape) { VLOG(3) << "the where op does not support static shape yet"; return false; } } if (op_type == "bitwise_not") { auto* block = desc.Block(); auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); auto dtype = x_var_desc->GetDataType(); if (dtype == framework::proto::VarType::INT8 || dtype == framework::proto::VarType::UINT8) { VLOG(3) << "INT8 / UINT8 type convert to trt is not supported"; return false; } if (dtype == framework::proto::VarType::BOOL) { #if !IS_TRT_VERSION_GE(8400) VLOG(3) << "BOOL type support requires TensorRT 8.4"; return false; #elif !IS_TRT_VERSION_GE(8600) const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() == 0) { VLOG(3) << "BOOL type does not support 0 dim input when TensorRT < 8.6."; return false; } #endif } } if (op_type == "one_hot" || op_type == "one_hot_v2") { #if IS_TRT_VERSION_LT(8510) VLOG(3) << "one_hot/one_hot_v2 is not supported when TensorRT < 8.5.1"; return false; #endif if (!with_dynamic_shape) { VLOG(3) << "the one_hot/one_hot_v2 op does not support static shape yet"; return false; } if (desc.HasAttr("allow_out_of_range")) { VLOG(3) << "allow_out_of_range one_hot/one_hot_v2 op is not supported now."; if (PADDLE_GET_CONST(bool, desc.GetAttr("allow_out_of_range"))) return false; } if (desc.HasAttr("dtype")) { const int dtype = PADDLE_GET_CONST(int, desc.GetAttr("dtype")); if (dtype != 2 && dtype != 3 && dtype != 5) { VLOG(3) << "one_hot/one_hot_v2 op only support int32, int64, float."; return false; } } auto one_hot_inputs = desc.Inputs(); if (one_hot_inputs.find("depth_tensor") != one_hot_inputs.end()) { if (desc.Input("depth_tensor").size() != 0) { return true; } } if (desc.HasAttr("depth")) { const int depth = PADDLE_GET_CONST(int, desc.GetAttr("depth")); if (depth <= 0) { VLOG(3) << "depth only support positive in one_hot/one_hot_v2 op."; return false; } } } if (op_type == "skip_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "the skip_layernorm does not support static shape yet"; return false; } } if (op_type == "preln_skip_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "the preln_skip_layernorm does not support static shape yet"; return false; } if (!desc.HasAttr("enable_int8")) { VLOG(3) << "PrelnEmbEltwiseLayerNormOp must use int8 mode."; return false; } } if (op_type == "multihead_matmul") { if (!with_dynamic_shape) { VLOG(3) << "the multihead_matmul does not support static shape yet"; return false; } if (desc.HasAttr("enable_int8") && !desc.HasAttr("Input_scale")) { VLOG(3) << "Multihead layers must have input scale in int8 mode."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* input_desc = block->FindVar(desc.Input("Input").front()); const auto input_shape = input_desc->GetShape(); const auto head_number = PADDLE_GET_CONST(int, desc.GetAttr("head_number")); auto inputs = desc.Inputs(); bool has_bias_qk = (inputs.find("BiasQK") == inputs.end()) ? false : true; if (has_bias_qk) { auto* biasqk_desc = block->FindVar(desc.Input("BiasQK").front()); const auto biasqk_shape = biasqk_desc->GetShape(); // The BiasQK's shape requires to be // [batch, 1, 1, length] or [batch, head, length, length]. bool has_same_shape = head_number == biasqk_shape[1] && input_shape[1] == biasqk_shape[2] && input_shape[1] == biasqk_shape[3]; bool is_broadcastable = biasqk_shape[1] == 1 && biasqk_shape[2] == 1 && input_shape[1] == biasqk_shape[3]; is_broadcastable = is_broadcastable || (biasqk_shape[0] == 1 && biasqk_shape[1] == 1 && input_shape[1] == biasqk_shape[2] && input_shape[1] == biasqk_shape[3]); if (!(has_same_shape || is_broadcastable)) { VLOG(3) << "The BiasQK's shape is invalid, expect [" << input_shape[0] << ", 1, 1, " << input_shape[1] << "] " << "or [" << input_shape[0] << ", " << head_number << ", " << input_shape[1] << ", " << input_shape[1] << "] " << "or [" << input_shape[0] << "/1, " << 1 << ", " << input_shape[1] << ", " << input_shape[1] << "] " << "but got [" << biasqk_shape[0] << ", " << biasqk_shape[1] << ", " << biasqk_shape[2] << ", " << biasqk_shape[3] << "]."; return false; } } else { #if (IS_TRT_VERSION_GE(8000) && IS_TRT_VERSION_LT(8100)) || \ (IS_TRT_VERSION_LT(7200)) VLOG(3) << "There are some bugs with trt 8.0"; return false; #endif } } if (op_type == "multihead_matmul_roformer") { if (!with_dynamic_shape) { VLOG(3) << "the multihead_matmul_roformer does not support static " "shape yet"; return false; } if (desc.HasAttr("enable_int8") && !desc.HasAttr("Input_scale")) { VLOG(3) << "Multihead layers must have input scale in int8 mode."; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto* input_desc = block->FindVar(desc.Input("Input").front()); const auto input_shape = input_desc->GetShape(); const auto head_number = PADDLE_GET_CONST(int, desc.GetAttr("head_number")); auto inputs = desc.Inputs(); bool has_bias_qk = (inputs.find("BiasQK") == inputs.end()) ? false : true; if (has_bias_qk) { auto* biasqk_desc = block->FindVar(desc.Input("BiasQK").front()); const auto biasqk_shape = biasqk_desc->GetShape(); // The BiasQK's shape requires to be // [batch, 1, 1, length] or [batch, head, length, length]. bool has_same_shape = head_number == biasqk_shape[1] && input_shape[1] == biasqk_shape[2] && input_shape[1] == biasqk_shape[3]; bool is_broadcastable = biasqk_shape[1] == 1 && biasqk_shape[2] == 1 && input_shape[1] == biasqk_shape[3]; if (!(has_same_shape || is_broadcastable)) { VLOG(3) << "The BiasQK's shape is invalid, expect [" << input_shape[0] << ", 1, 1, " << input_shape[1] << "] or [" << input_shape[0] << ", " << head_number << ", " << input_shape[1] << ", " << input_shape[1] << "] but [" << biasqk_shape[0] << ", " << biasqk_shape[1] << ", " << biasqk_shape[2] << ", " << biasqk_shape[3] << "]."; return false; } } else { #if !IS_TRT_VERSION_GE(8000) VLOG(3) << "The version of TRT must be greater than 8000"; return false; #endif } } if (op_type == "reshape" || op_type == "reshape2") { if (!desc.HasAttr("shape")) { return false; } if (with_dynamic_shape) { return true; } // Static shape does not support the input tensors: Shape and ShapeTensor auto reshape_inputs = desc.Inputs(); if (reshape_inputs.find("Shape") != reshape_inputs.end()) { if (desc.Input("Shape").size() >= 1) { return false; } } if (reshape_inputs.find("ShapeTensor") != reshape_inputs.end()) { if (desc.Input("ShapeTensor").size() >= 1) { return false; } } std::vector shape = PADDLE_GET_CONST(std::vector, desc.GetAttr("shape")); if (shape.size() >= nvinfer1::Dims::MAX_DIMS) return false; if (!with_dynamic_shape) { if (shape.size() == 1) { return false; } if (shape[0] == 0) { return true; } else { auto* block = desc.Block(); auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); int input_num = std::accumulate( x_shape.begin() + 1, x_shape.end(), 1, std::multiplies()); int shape_num = std::accumulate( shape.begin() + 1, shape.end(), 1, std::multiplies()); if (input_num == shape_num) { return true; } } return false; } } if (op_type == "clip") { // Paddle-TRT does not support the input tensors: Min and Max auto clip_inputs = desc.Inputs(); if (clip_inputs.find("Min") != clip_inputs.end()) { if (desc.Input("Min").size() >= 1) { return false; } } if (clip_inputs.find("Max") != clip_inputs.end()) { if (desc.Input("Max").size() >= 1) { return false; } } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (!with_dynamic_shape && (x_shape.size() == 1 || x_shape.size() == 0)) { VLOG(3) << op_type << " op does not support input's dim is 1 or 0 in tensorrt " "static shape mode."; return false; } } if (op_type == "reduce_sum" || op_type == "reduce_mean" || op_type == "reduce_max" || op_type == "reduce_min" || op_type == "reduce_prod" || op_type == "reduce_any" || op_type == "reduce_all") { if (!desc.HasAttr("dim", /*with_attr_var=*/false)) { VLOG(3) << "Skip to convert into TRT while found Attribute('dim') is " "Variable type in " << desc.Type(); return false; } if (!(desc.HasAttr("keep_dim") && desc.HasAttr("dim") && desc.HasAttr("reduce_all"))) { VLOG(3) << "the " << op_type << " does not have attr (keep_dim or dim or " "reduce_all)"; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } // The batch size dimension cannot be reduced if it's not dynamic shape. auto* x_var_desc = block->FindVar(desc.Input("X")[0]); if (!with_dynamic_shape) { if (PADDLE_GET_CONST(bool, desc.GetAttr("reduce_all"))) return false; std::vector dim = PADDLE_GET_CONST(std::vector, desc.GetAttr("dim")); const auto input_shape = x_var_desc->GetShape(); for (auto x : dim) { if (x == 0 || (x + input_shape.size() == 0)) return false; } } else { if (PADDLE_GET_CONST(bool, desc.GetAttr("reduce_all")) && !PADDLE_GET_CONST(bool, desc.GetAttr("keep_dim"))) return false; } auto dtype = x_var_desc->GetDataType(); if (op_type == "reduce_all" || op_type == "reduce_any") { if (dtype != framework::proto::VarType::BOOL) { VLOG(3) << "reduce_all and reduce_any op input data type must be bool"; return false; } } else { #if IS_TRT_VERSION_GE(7000) if (dtype != framework::proto::VarType::INT32 && dtype != framework::proto::VarType::FP32) { VLOG(3) << "reduce op input data type must be int32 or float32"; return false; } #else if (dtype != framework::proto::VarType::FP32) { VLOG(3) << "reduce op input data type must be float32 using TensorRT " "< 7.0"; return false; } #endif } } #if IS_TRT_VERSION_GE(7000) if (op_type == "tile") { // Paddle-TRT does not support the input tensors. auto tile_inputs = desc.Inputs(); if (!with_dynamic_shape) { if (tile_inputs.find("repeat_times_tensor") != tile_inputs.end()) { if (desc.Input("repeat_times_tensor").size() >= 1) { return false; } } if (tile_inputs.find("RepeatTimes") != tile_inputs.end()) { if (desc.Input("RepeatTimes").size() >= 1) { return false; } } if (!desc.HasAttr("repeat_times")) return false; } } #endif // conv3d_transpose if (op_type == "conv3d_transpose") { // trt doen't support output_padding when < 8406 // output_padding is usually set when stride > 1 #if !IS_TRT_VERSION_GE(8400) if (desc.HasAttr("output_padding")) { const std::vector output_padding = PADDLE_GET_CONST(std::vector, desc.GetAttr("output_padding")); if (output_padding.size() > 0) { int max_padding = *std::max_element(output_padding.begin(), output_padding.end()); if (max_padding > 0) return false; } } #endif } if (op_type == "conv3d" || op_type == "conv3d_transpose") { if (desc.HasAttr("padding_algorithm")) { std::string padding_algorithm = PADDLE_GET_CONST(std::string, desc.GetAttr("padding_algorithm")); // trt error is arised if conv3d_transpose and SAME if (op_type == "conv3d_transpose" && padding_algorithm == "SAME" && !with_dynamic_shape) { return false; } } #if !IS_TRT_VERSION_GE(7000) // looks like some issues with trt6.0 if (with_dynamic_shape) { return false; } #endif std::vector paddings = PADDLE_GET_CONST(std::vector, desc.GetAttr("paddings")); // conv3d and conv3d_transpose need padding check if (paddings.size() > 3) return false; if (desc.Input("Input").size() != 1) { VLOG(3) << "TRT Conv3d expect 1 input, but got " << desc.Input("Input").size() << " input."; return false; } if (desc.Input("Filter").size() != 1) { VLOG(3) << "TRT Conv3d expect 1 filter, but got " << desc.Input("Filter").size() << " filter."; return false; } if (op_type == "conv3d_transpose") { if (!desc.HasAttr("dilations")) { return false; } else { const std::vector dilations = PADDLE_GET_CONST(std::vector, desc.GetAttr("dilations")); if (dilations[0] != 1 || dilations[1] != 1 || dilations[2] != 1) { VLOG(3) << "In conv3d_transpose, Dilations must be (1, 1, 1) for " "tensorRT, but given (" << dilations[0] << ", " << dilations[1] << ", " << dilations[2] << ")"; return false; } } } if (desc.Output("Output").size() != 1) { VLOG(3) << "TRT Conv3d expect 1 output, but got " << desc.Output("Output").size() << " output."; return false; } } if (op_type == "cast") { // trt 6015 result in Windows ppyolo_mbv3 TRT fp32 diff #if !IS_TRT_VERSION_GE(7000) return false; #endif if (!(desc.HasAttr("in_dtype") && desc.HasAttr("out_dtype"))) { VLOG(3) << "the " << op_type << " does not have attr (in_dtype or " "out_dtype)"; return false; } int in_dtype = PADDLE_GET_CONST(int, desc.GetAttr("in_dtype")); int out_dtype = PADDLE_GET_CONST(int, desc.GetAttr("out_dtype")); if (in_dtype == 0 || out_dtype == 0) { #if IS_TRT_VERSION_GE(8400) if (with_dynamic_shape) { VLOG(3) << "the cast op supports inputs and outputs of BOOL by " "trt8.4 above "; return true; } #endif return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (!with_dynamic_shape && (x_shape.size() == 1 || x_shape.size() == 0)) { VLOG(3) << op_type << " op does not support input's dim is 1 or 0 in tensorrt " "static shape mode."; return false; } } if (op_type == "set_value") { #if !IS_TRT_VERSION_GE(8200) return false; #endif auto inputs = desc.Inputs(); if (inputs.find("StartsTensorList") != inputs.end()) { if (desc.Input("StartsTensorList").size() >= 1) { return false; } } if (inputs.find("EndsTensorList") != inputs.end()) { if (desc.Input("EndsTensorList").size() >= 1) { return false; } } if (inputs.find("StepsTensorList") != inputs.end()) { if (desc.Input("StepsTensorList").size() >= 1) { return false; } } if (!(desc.HasAttr("axes") && desc.HasAttr("starts") && desc.HasAttr("steps"))) { VLOG(3) << "the " << op_type << " does not have attr (axes or " "starts or steps)"; return false; } } if (op_type == "top_k_v2" || op_type == "top_k") { if (desc.HasAttr("axis")) { int axis = PADDLE_GET_CONST(int, desc.GetAttr("axis")); if (!with_dynamic_shape && axis == 0) { VLOG(3) << "top_k_v2 does not support axis == 0 in " "tensorrt static shape."; return false; } } if (desc.HasAttr("sorted")) { bool sorted = PADDLE_GET_CONST(bool, desc.GetAttr("sorted")); if (!sorted) { VLOG(3) << op_type << " does not support results not sorted in " "tensorrt"; return false; } } } #if IS_TRT_VERSION_GE(8000) if (op_type == "sparse_fc" || op_type == "sparse_multihead_matmul") { if (!with_dynamic_shape) { VLOG(3) << "the sparse_fc and sparse_multihead_matmul does not support " "static shape yet"; return false; } } #endif if (op_type == "equal" || op_type == "not_equal") { #if !IS_TRT_VERSION_GE(8000) VLOG(3) << "equal is not supported when TensorRT < 8.0"; return false; #else // TRT does not support kEQUAL/kGREATER/kLESS work with implicit batch if (!with_dynamic_shape) { VLOG(3) << "the equal does not support " "static shape yet"; return false; } if (!desc.HasAttr("axis")) { return false; } int axis = PADDLE_GET_CONST(int, desc.GetAttr("axis")); if (axis == 0) { return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } #endif } if (op_type == "layernorm_shift_partition") { if (!with_dynamic_shape) { VLOG(3) << "the layernorm_shift_partition does not support " "static shape yet"; return false; } } if (op_type == "preln_layernorm_shift_partition") { if (!with_dynamic_shape) { VLOG(3) << "the layernorm_shift_partition does not support " "static shape yet"; return false; } } if (op_type == "merge_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "The merge_layernorm op does not support " "static shape yet"; return false; } } if (op_type == "reverse_roll") { if (!with_dynamic_shape) { VLOG(3) << "The reverse roll fused op does not support static shape " "mode yet."; return false; } } if (op_type == "skip_merge_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "The merge_layernorm op does not support " "static shape yet"; return false; } } if (op_type == "skip_groupnorm_act") { if (!with_dynamic_shape) { VLOG(3) << "The skip_groupnorm_act op does not support " "static shape yet"; return false; } } if (op_type == "preln_groupnorm_act") { if (!with_dynamic_shape) { VLOG(3) << "The preln_groupnorm_act op does not support " "static shape yet"; return false; } } if (op_type == "trans_layernorm") { if (!with_dynamic_shape) { VLOG(3) << "The trans_layernorm op does not support " "static shape yet"; return false; } } if (op_type == "fuse_eleadd_transpose") { if (!with_dynamic_shape) { VLOG(3) << "The fuse_eleadd_transpose op does not support " "static shape yet"; return false; } } if (op_type == "lookup_table" || op_type == "lookup_table_v2") { if (!with_dynamic_shape) { VLOG(3) << "the lookup_table does not support " "static shape yet"; return false; } } if (op_type == "expand_as_v2" || op_type == "expand_v2") { if (!with_dynamic_shape) { VLOG(3) << "the " << op_type << "does not support " "static shape yet"; return false; } auto inputs = desc.Inputs(); if (op_type == "expand_as_v2") { if (!desc.HasAttr("target_shape") && inputs.find("Y") == inputs.end()) { VLOG(3) << "expand_as_v2 op need have input(Y) or attr(target_shape). "; return false; } } else if (op_type == "expand_v2") { if (!desc.HasAttr("shape") && inputs.find("Shape") == inputs.end() && inputs.find("expand_shapes_tensor") == inputs.end()) { VLOG(3) << "expand_v2 op need have input(Shape) or " "input(expand_shapes_tensor) or attr(shape) . "; return false; } } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } #if IS_TRT_VERSION_LT(8000) auto x_var_name = desc.Input("X")[0]; auto* x_var_desc = block->FindVar(x_var_name); const auto x_shape = x_var_desc->GetShape(); if (x_shape.size() == 0) { return false; // not supported 0 dim. } #endif } if (op_type == "grid_sampler") { #if !IS_TRT_VERSION_GE(8510) VLOG(3) << "grid_sampler is not supported when TensorRT < 8.5.1"; return false; #else if (!with_dynamic_shape) { VLOG(3) << "the grid_sampler does not support " "static shape yet"; return false; } if (!desc.HasAttr("mode") || !desc.HasAttr("padding_mode") || !desc.HasAttr("align_corners")) { VLOG(3) << "grid_sampler need attributes : mode, padding_mode, " "align_corners"; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto input_name = desc.Input("X")[0]; auto* input_desc = block->FindVar(input_name); const auto input_shape = input_desc->GetShape(); auto grid_name = desc.Input("Grid")[0]; auto* grid_desc = block->FindVar(grid_name); const auto grid_shape = grid_desc->GetShape(); if (input_shape.size() != 4 || grid_shape.size() != 4) { VLOG(3) << "The input and grid tensors must be shape tensors of rank 4 " "using TRT GridSample layer."; return false; } #endif } if (op_type == "cumsum") { #if !IS_TRT_VERSION_GE(7220) VLOG(3) << "cumsum is not supported when TensorRT < 7.2.2"; return false; #endif if (!with_dynamic_shape) { VLOG(3) << "the cumsum does not support " "static shape yet"; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } } if (op_type == "temporal_shift") { #if !IS_TRT_VERSION_GE(8200) VLOG(3) << "temporal_shift is not supported when TensorRT < 8.2"; return false; #endif if (!with_dynamic_shape) { VLOG(3) << "the temporal shift does not support " "static shape yet"; return false; } if (!desc.HasAttr("shift_ratio") || !desc.HasAttr("seg_num")) { VLOG(3) << "temporal shift need attributes : shift_ratio and seg_num"; return false; } auto* block = desc.Block(); if (block == nullptr) { VLOG(3) << "The block desc is nullptr, we can't continue to analyze. " "Developers need to check whether block_desc is passed in " "the pass."; return false; } auto input_name = desc.Input("X")[0]; auto* input_desc = block->FindVar(input_name); const auto input_shape = input_desc->GetShape(); if (input_shape.size() != 4) { VLOG(3) << "The input and grid tensors must be shape tensors of rank 4 " "using TRT TemporalShift layer."; return false; } } if (use_no_calib_int8) { return int8_teller_set.count(op_type); } else { return teller_set.count(op_type); } } private: // use this set for no calib int8. std::unordered_set int8_teller_set{ "matrix_multiply", "bmm", "range", "conv2d", "conv2d_fusion", "pool2d", "relu", "elu", "selu", "softsign", "softplus", "stanh", "thresholded_relu", "exp", "log", "sqrt", "abs", "sin", "cos", "tan", "sinh", "cosh", "asin", "acos", "atan", "asinh", "acosh", "atanh", "ceil", "floor", "rsqrt", "sign", "reciprocal", "logical_not", "erf", "square", "softmax", "sigmoid", "hard_swish", "depthwise_conv2d", "batch_norm", "concat", "tanh", "pad3d", "pad", "elementwise_add", "elementwise_sub", "elementwise_mul", "elementwise_div", "elementwise_pow", "elementwise_min", "elementwise_max", "elementwise_floordiv", "elementwise_mod", "equal", "not_equal", "less_than", "greater_than", "logical_or", "logical_xor", "logical_and", "less_equal", "greater_equal", "dropout", "fill_any_like", "prelu", "conv2d_transpose", "depthwise_conv2d_transpose", "leaky_relu", "shuffle_channel", "where", "bitwise_not", "one_hot", "one_hot_v2", "swish", "silu", "celu", "split", "instance_norm", "gelu", "layer_norm", "scale", "stack", "transpose2", "transpose", "top_k", "top_k_v2", "flatten2", "flatten", "gather", "gather_nd", "group_norm", "yolo_box", "yolo_box_head", "arg_max", "arg_min", "roi_align", "affine_channel", "nearest_interp", "anchor_generator", "reduce_max", "reduce_min", "reduce_mean", "reduce_sum", "reduce_prod", "reduce_any", "reduce_all", "conv3d", "conv3d_transpose", "mish", "nearest_interp_v2", "bilinear_interp_v2", "pool3d", "deformable_conv", "relu6", "hard_sigmoid", "clip", "fused_embedding_eltwise_layernorm", "multihead_matmul", "multihead_matmul_roformer", "skip_layernorm", "slice", "strided_slice", "fused_preln_embedding_eltwise_layernorm", "fused_bias_dropout_residual_layer_norm", "c_allreduce_sum", "c_allreduce_min", "c_allreduce_max", "c_allreduce_prod", "roll", "cast", "preln_skip_layernorm", "transformer_input_convert", "recover_padding", "remove_padding", "fill_constant", "sum", "shape", "squeeze2", "unsqueeze2", "layernorm_shift_partition", "reverse_roll", "take_along_axis", "tanh_shrink", "logsigmoid", "preln_layernorm_shift_partition", "lookup_table", "lookup_table_v2", "trans_layernorm", "merge_layernorm", "skip_merge_layernorm", "expand_v2", "expand_as_v2", "fuse_eleadd_transpose", "skip_groupnorm_act", "preln_groupnorm_act", "temporal_shift", "grid_sampler", "cumsum"}; std::unordered_set teller_set{ "matrix_multiply", "bmm", "range", "conv2d", "conv2d_fusion", "pool2d", "relu", "elu", "selu", "softsign", "softplus", "stanh", "thresholded_relu", "exp", "log", "sqrt", "abs", "sin", "cos", "tan", "sinh", "cosh", "asin", "acos", "atan", "asinh", "acosh", "atanh", "ceil", "floor", "rsqrt", "sign", "reciprocal", "logical_not", "erf", "square", "softmax", "sigmoid", "hard_swish", "depthwise_conv2d", "batch_norm", "concat", "tanh", "pad3d", "pad", "elementwise_add", "elementwise_sub", "elementwise_mul", "elementwise_div", "elementwise_pow", "pow", "elementwise_min", "elementwise_max", "elementwise_floordiv", "elementwise_mod", "equal", "not_equal", "less_than", "greater_than", "logical_or", "logical_xor", "logical_and", "less_equal", "greater_equal", "dropout", "fill_any_like", "prelu", "conv2d_transpose", "depthwise_conv2d_transpose", "leaky_relu", "shuffle_channel", "where", "bitwise_not", "one_hot", "one_hot_v2", "swish", "silu", "celu", "split", "instance_norm", "gelu", "layer_norm", "scale", "stack", "transpose2", "transpose", "top_k", "top_k_v2", "flatten2", "flatten", "gather", "gather_nd", "yolo_box", "yolo_box_head", "arg_max", "arg_min", "roi_align", "affine_channel", "nearest_interp", "anchor_generator", "reduce_max", "reduce_min", "reduce_mean", "reduce_sum", "reduce_prod", "reduce_any", "reduce_all", "conv3d", "conv3d_transpose", "mish", "bilinear_interp_v2", "nearest_interp_v2", "pool3d", "deformable_conv", "relu6", "hard_sigmoid", "clip", "fused_embedding_eltwise_layernorm", "multihead_matmul", "multihead_matmul_roformer", "skip_layernorm", "slice", "strided_slice", "fused_preln_embedding_eltwise_layernorm", "preln_skip_layernorm", "fused_bias_dropout_residual_layer_norm", "c_allreduce_sum", "c_allreduce_min", "c_allreduce_max", "c_allreduce_prod", "roll", "cast", "transformer_input_convert", "recover_padding", "remove_padding", "fill_constant", "sum", "shape", "squeeze2", "unsqueeze2", "fused_token_prune", "layernorm_shift_partition", "reverse_roll", "tanh_shrink", "take_along_axis", "logsigmoid", "preln_layernorm_shift_partition", "trans_layernorm", "merge_layernorm", "skip_merge_layernorm", "lookup_table", "lookup_table_v2", "expand_v2", "expand_as_v2", "fuse_eleadd_transpose", "skip_groupnorm_act", "preln_groupnorm_act", "temporal_shift", "grid_sampler", "cumsum"}; }; struct GenericPluginTeller : public Teller { public: GenericPluginTeller() {} bool operator()(const framework::OpDesc& desc, bool use_no_calib_int8 = false, bool with_dynamic_shape = false) override { const std::string op_type = desc.Type(); // only consider dynamic_shape mode if (!with_dynamic_shape) { return false; } if (op_type == "yolo_box") { if (!desc.HasAttr("iou_aware") && !desc.HasAttr("iou_aware_factor")) return false; } if (use_no_calib_int8) { return false; } else { framework::InitDefaultKernelSignatureMap(); bool res = phi::OpUtilsMap::Instance().HasArgumentMappingFn(op_type) || phi::DefaultKernelSignatureMap::Instance().Has(op_type); if (!res) { VLOG(3) << op_type << " has no KernelSignature"; return false; } res = phi::KernelFactory::Instance().HasCompatiblePhiKernel(op_type); if (!res) { VLOG(3) << op_type << " has no CompatiblePhiKernel in phi."; return false; } auto& dynamic_infermeta_factory = tensorrt::DynamicMetaFnFactory::Instance(); res = dynamic_infermeta_factory.Contains(op_type); if (!res) { VLOG(3) << op_type << " has no DynamicMetaFn."; return false; } return true; } } }; struct CustomPluginTeller : public Teller { public: CustomPluginTeller() {} bool operator()(const framework::OpDesc& desc, bool use_no_calib_int8 = false, bool with_dynamic_shape = false) override { const std::string op_type = desc.Type(); std::string expect_plugin_name; if (with_dynamic_shape) { expect_plugin_name = op_type + "_paddle_trt_dynamic_plugin"; } else { expect_plugin_name = op_type + "_paddle_trt_plugin"; } int num = 0; auto creators = GetPluginRegistry()->getPluginCreatorList(&num); for (int i = 0; i < num; i++) { if (std::string(creators[i]->getPluginName()) == expect_plugin_name) return true; } return false; } }; bool OpTeller::Tell(const framework::ir::Node* node, bool use_no_calib_int8, bool with_dynamic_shape) { const std::string op_type = node->Op()->Type(); const framework::OpDesc desc = *node->Op(); // do not support the op which is labeled the `skip_quant` if ((desc.HasAttr("namescope") && PADDLE_GET_CONST(std::string, desc.GetAttr("op_namescope")) == "/skip_quant_2/") || desc.HasAttr("skip_quant")) return false; auto& default_teller = GetDefaultTeller(); if ((*default_teller)(desc, use_no_calib_int8, with_dynamic_shape)) { SetOpConverterType(node->Op(), OpConverterType::Default); return true; } auto& generic_plugin_teller = GetGenericPluginTeller(); if ((*generic_plugin_teller)(desc, use_no_calib_int8, with_dynamic_shape)) { SetOpConverterType(node->Op(), OpConverterType::GenericPluginCreater); return true; } auto& custom_plugin_teller = GetCustomPluginTeller(); if ((*custom_plugin_teller)(desc, use_no_calib_int8, with_dynamic_shape)) { SetOpConverterType(node->Op(), OpConverterType::CustomPluginCreater); return true; } return false; } OpTeller::OpTeller() { tellers_.emplace_back(new tensorrt::SimpleOpTypeSetTeller); tellers_.emplace_back(new tensorrt::GenericPluginTeller); tellers_.emplace_back(new tensorrt::CustomPluginTeller); } } // namespace tensorrt } // namespace inference } // namespace paddle