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ColossalAI/colossalai/kernel/cuda_native/csrc/multihead_attention_1d.h

168 lines
4.6 KiB

#pragma once
#include <c10/util/intrusive_ptr.h>
#include <cuda.h>
#include <cuda_fp16.h>
#include <cuda_runtime_api.h>
#include <torch/torch.h>
#if TORCH_VERSION_MAJOR > 1 || \
(TORCH_VERSION_MAJOR == 1 && TORCH_VERSION_MINOR >= 13)
#include <torch/csrc/distributed/c10d/ProcessGroup.hpp>
#else
#include <c10d/ProcessGroup.hpp>
#endif
#include <string>
#include <type_traits>
#include "cuda_util.h"
#include "dropout.h"
#include "feed_forward.h"
#include "normalize_layer.h"
#include "softmax.h"
#include "strided_batch_gemm.h"
template <typename T>
class MultiHeadAttention {
public:
MultiHeadAttention(int layer_id, int max_batch_tokens, int _max_seq_len,
int hidden_size, int num_heads, float attn_dropout_ratio,
float hidden_output_dropout_ratio,
bool pre_or_postLayerNorm);
virtual ~MultiHeadAttention();
void Forward(const T *input_ptr, const T *input_mask_ptr, T *out_ptr);
void Backward(const T *grad_output_ptr, const T *input_ptr,
const T *output_ptr, const T *input_mask_ptr,
T *grad_input_ptr);
void attn_layer_fw(const T *input_ptr, const T *input_mask_ptr, T *output_ptr,
T *buffer);
void attn_layer_bw(const T *input_ptr, const T *input_mask_ptr,
const T *output_ptr, const T *grad_output_ptr,
T *grad_input_attn_layer_bwptr, T *buffer);
void set_cur_batch_shape(int batch_size, int seq_len) {
_batch_size = batch_size;
_seq_len = seq_len;
_batch_tokens = batch_size * seq_len;
_batch_heads = batch_size * _heads / pg_size;
_batch_dim = _batch_tokens * _hidden_size;
_attn_scores.SetConfig(_seq_len, _seq_len, _hidden_size / _heads);
_attn_context.SetConfig(_hidden_size / _heads, _seq_len, _seq_len);
}
void SetTrainingMode(bool training);
inline bool IsTrainingMode() const { return _training; }
void SetPG(c10::intrusive_ptr<c10d::ProcessGroup> pg_) {
pg = pg_;
pg_size = 1;
if (pg != c10::detail::UniqueVoidPtr()) {
pg_size = pg->getSize();
}
allocate_mem_buffer();
}
// weights ptr
const T *_attn_qkvw_ptr;
const T *_attn_qkvb_ptr;
const T *_attn_ow_ptr;
const T *_attn_ob_ptr;
const T *_attn_nw_ptr;
const T *_attn_nb_ptr;
// grads ptr
T *_grad_attn_qkvw_ptr;
T *_grad_attn_qkvb_ptr;
T *_grad_attn_ow_ptr;
T *_grad_attn_ob_ptr;
T *_grad_attn_nw_ptr;
T *_grad_attn_nb_ptr;
private:
void allocate_mem_buffer() {
// allocate local gpu memory
if (_pre_or_postLayerNorm) {
_gemmQKV_inp_ptr = cuda_malloc<T>(_max_batch_tokens * _hidden_size);
} else {
_gemmQKV_inp_ptr = nullptr;
}
_qkv_ptr = cuda_malloc<T>(_max_batch_tokens * _hidden_size * 3);
_soft_out_ptr =
cuda_malloc<T>(_max_batch_tokens * _heads / pg_size * _max_seq_len);
_ctx_bufB_ptr =
cuda_malloc<T>(_max_batch_tokens * _heads / pg_size * _max_seq_len);
_attn_o_inp_ptr = cuda_malloc<T>(_max_batch_tokens * _hidden_size);
// buffer size needed by attn bw
size_t smem_size =
4 * _max_batch_tokens * _hidden_size / pg_size +
std::max(3 * _max_batch_tokens * _hidden_size / pg_size,
_max_batch_tokens * _heads / pg_size * _max_seq_len);
if (!_shared_mem_ptr) {
cuda_free(_shared_mem_ptr);
_shared_mem_ptr = cuda_malloc<T>(smem_size);
}
}
void free_mem_buffer() {
// free local gpu memory
cuda_free(_gemmQKV_inp_ptr);
cuda_free(_qkv_ptr);
cuda_free(_soft_out_ptr);
cuda_free(_ctx_bufB_ptr);
cuda_free(_attn_o_inp_ptr);
// free shared gpu memory between layers
cuda_free(_shared_mem_ptr);
_shared_mem_ptr = nullptr;
}
// const parameter between batch
const size_t _layer_id;
const size_t _hidden_size;
const size_t _heads;
const size_t _max_batch_tokens;
const size_t _max_seq_len;
const bool _pre_or_postLayerNorm;
// dynamic parameter between batch
size_t _batch_size;
size_t _seq_len;
size_t _batch_tokens;
size_t _batch_heads;
size_t _batch_dim;
bool _training;
cublasHandle_t _cublasHandle;
cudaStream_t _stream;
// layers
FeedForward<T> _qkv_linear;
FeedForward<T> _attn_out_linear;
Normalize_Layer<T> _attn_ln;
Softmax<T> _softmax;
Dropout<T> _attn_prob_dropout;
Dropout<T> _attn_dropout;
StridedBatchGemm<T> _attn_scores;
StridedBatchGemm<T> _attn_context;
// local GPU memory
T *_gemmQKV_inp_ptr;
T *_qkv_ptr;
T *_soft_out_ptr;
T *_ctx_bufB_ptr;
T *_attn_o_inp_ptr;
// shared GPU memory between layer
static T *_shared_mem_ptr;
c10::intrusive_ptr<c10d::ProcessGroup> pg;
int pg_size;
};