// Copyright (c) 2022 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/phi/kernels/adam_kernel.h" #include // for sqrt in CPU and CUDA #include #include "paddle/fluid/framework/tensor_util.h" #include "paddle/fluid/operators/math/selected_rows_functor.h" #include "paddle/phi/backends/gpu/gpu_context.h" #include "paddle/phi/common/amp_type_traits.h" #include "paddle/phi/common/float16.h" #include "paddle/phi/core/kernel_registry.h" #include "paddle/phi/core/tensor_utils.h" #include "paddle/phi/kernels/funcs/adam_functors.h" #include "paddle/phi/kernels/funcs/for_range.h" namespace phi { template __global__ void AdamKernelREG(MT beta1, MT beta2, MT epsilon, MT beta1_pow_, MT beta2_pow_, const MT* moment1, MT* moment1_out, const MT* moment2, MT* moment2_out, const MT* lr_, const T* grad, const T* param, T* param_out, const MT* master_param, MT* master_param_out, int ndim) { MT lr = *lr_; MT beta1_pow = beta1_pow_; MT beta2_pow = beta2_pow_; int id = blockIdx.x * blockDim.x + threadIdx.x; for (; id < ndim; id += gridDim.x * blockDim.x) { MT p = master_param ? master_param[id] : static_cast(param[id]); MT g = static_cast(grad[id]); MT mom1 = static_cast(moment1[id]); MT mom2 = static_cast(moment2[id]); mom1 = beta1 * mom1 + (static_cast(1.0) - beta1) * g; mom2 = beta2 * mom2 + (static_cast(1.0) - beta2) * g * g; MT denom = (sqrt(mom2) / sqrt(static_cast(1.0) - beta2_pow)) + epsilon; p += (mom1 / denom) * (-(lr / (static_cast(1.0) - beta1_pow))); moment1_out[id] = mom1; moment2_out[id] = mom2; param_out[id] = static_cast(p); if (master_param_out) { master_param_out[id] = p; } } } template __global__ void AdamKernelMEM(MT beta1, MT beta2, MT epsilon, const MT* beta1_pow_, const MT* beta2_pow_, const MT* moment1, MT* moment1_out, const MT* moment2, MT* moment2_out, const MT* lr_, const T* grad, const T* param, T* param_out, const MT* master_param, MT* master_param_out, int ndim) { MT lr = *lr_; MT beta1_pow = *beta1_pow_; MT beta2_pow = *beta2_pow_; int id = blockIdx.x * blockDim.x + threadIdx.x; for (; id < ndim; id += gridDim.x * blockDim.x) { MT p = master_param ? master_param[id] : static_cast(param[id]); MT g = static_cast(grad[id]); MT mom1 = static_cast(moment1[id]); MT mom2 = static_cast(moment2[id]); mom1 = beta1 * mom1 + (static_cast(1.0) - beta1) * g; mom2 = beta2 * mom2 + (static_cast(1.0) - beta2) * g * g; MT denom = (sqrt(mom2) / sqrt(static_cast(1.0) - beta2_pow)) + epsilon; p += (mom1 / denom) * (-(lr / (static_cast(1.0) - beta1_pow))); moment1_out[id] = mom1; moment2_out[id] = mom2; param_out[id] = static_cast(p); if (master_param_out) { master_param_out[id] = p; } } } template __global__ void UpdateBetaPow(T beta1, T beta2, const T* beta1_pow_, const T* beta2_pow_, T* beta1_pow_out, T* beta2_pow_out) { *beta1_pow_out = beta1 * beta1_pow_[0]; *beta2_pow_out = beta2 * beta2_pow_[0]; } template void AdamDenseKernel(const Context& dev_ctx, const DenseTensor& param, const DenseTensor& grad, const DenseTensor& learning_rate, const DenseTensor& moment1, const DenseTensor& moment2, const DenseTensor& beta1_pow, const DenseTensor& beta2_pow, const paddle::optional& master_param, const paddle::optional& skip_update, const Scalar& beta1, const Scalar& beta2, const Scalar& epsilon, bool lazy_mode, int64_t min_row_size_to_use_multithread, bool multi_precision, bool use_global_beta_pow, DenseTensor* param_out, DenseTensor* moment1_out, DenseTensor* moment2_out, DenseTensor* beta1_pow_out, DenseTensor* beta2_pow_out, DenseTensor* master_param_outs) { using MPDType = typename phi::dtype::MPTypeTrait::Type; VLOG(4) << "use_global_beta_pow:" << use_global_beta_pow; bool skip_update_ = false; if (skip_update.is_initialized()) { PADDLE_ENFORCE_EQ( skip_update->numel(), 1, errors::InvalidArgument("Input(SkipUpdate) size must be 1, but get %d", skip_update->numel())); std::vector skip_update_vec; paddle::framework::TensorToVector(*skip_update, dev_ctx, &skip_update_vec); skip_update_ = skip_update_vec[0]; } // skip_update=true, just copy input to output, and TensorCopy will call // mutable_data if (skip_update_) { VLOG(4) << "Adam skip update"; phi::Copy(dev_ctx, param, dev_ctx.GetPlace(), false, param_out); phi::Copy(dev_ctx, moment1, dev_ctx.GetPlace(), false, moment1_out); phi::Copy(dev_ctx, moment2, dev_ctx.GetPlace(), false, moment2_out); phi::Copy(dev_ctx, beta1_pow, beta1_pow.place(), false, beta1_pow_out); phi::Copy(dev_ctx, beta2_pow, beta2_pow.place(), false, beta2_pow_out); return; } MPDType beta1_ = beta1.to(); MPDType beta2_ = beta2.to(); MPDType epsilon_ = epsilon.to(); VLOG(3) << "beta1_pow.numel() : " << beta1_pow.numel() << "beta2_pow.numel() : " << beta2_pow.numel(); VLOG(3) << "param.numel(): " << param.numel(); PADDLE_ENFORCE_EQ( beta1_pow_out->numel(), 1, errors::InvalidArgument("beta1 pow output size should be 1, but received " "value is:%d.", beta1_pow_out->numel())); PADDLE_ENFORCE_EQ( beta2_pow_out->numel(), 1, errors::InvalidArgument("beta2 pow output size should be 1, but received " "value is:%d.", beta2_pow_out->numel())); const MPDType* master_in_data = multi_precision ? master_param->data() : nullptr; MPDType* master_out_data = multi_precision ? dev_ctx.template Alloc(master_param_outs) : nullptr; // update param and moment int threads = 512; int blocks = (param.numel() + threads - 1) / threads; if (beta1_pow.place() == CPUPlace() && beta2_pow.place() == CPUPlace()) { // Compute with betapow in REG AdamKernelREG<<>>( beta1_, beta2_, epsilon_, *beta1_pow.data(), *beta2_pow.data(), moment1.data(), dev_ctx.template Alloc(moment1_out), moment2.data(), dev_ctx.template Alloc(moment2_out), learning_rate.data(), grad.data(), param.data(), dev_ctx.template Alloc(param_out), master_in_data, master_out_data, param.numel()); if (!use_global_beta_pow) { // Cpu update dev_ctx.template HostAlloc(beta1_pow_out)[0] = beta1_ * beta1_pow.data()[0]; dev_ctx.template HostAlloc(beta2_pow_out)[0] = beta2_ * beta2_pow.data()[0]; } } else { AdamKernelMEM<<>>( beta1_, beta2_, epsilon_, beta1_pow.data(), beta2_pow.data(), moment1.data(), dev_ctx.template Alloc(moment1_out), moment2.data(), dev_ctx.template Alloc(moment2_out), learning_rate.data(), grad.data(), param.data(), dev_ctx.template Alloc(param_out), master_in_data, master_out_data, param.numel()); if (!use_global_beta_pow) { // Update with gpu UpdateBetaPow<<<1, 32, 0, dev_ctx.stream()>>>( beta1_, beta2_, beta1_pow.data(), beta2_pow.data(), dev_ctx.template Alloc(beta1_pow_out), dev_ctx.template Alloc(beta2_pow_out)); } } } } // namespace phi PD_REGISTER_KERNEL(adam, GPU, ALL_LAYOUT, phi::AdamDenseKernel, float, double, phi::dtype::float16) { // Skip beta1_pow, beta2_pow, skip_update data transform kernel->InputAt(5).SetBackend(phi::Backend::ALL_BACKEND); kernel->InputAt(6).SetBackend(phi::Backend::ALL_BACKEND); kernel->InputAt(8).SetBackend(phi::Backend::ALL_BACKEND); }