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custom_all_reduce.cuh
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custom_all_reduce.cuh
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#pragma once
#include <cuda.h>
#include <cuda_bf16.h>
#include <cuda_fp16.h>
#include <cuda_runtime.h>
#include <iostream>
#include <array>
#include <limits>
#include <map>
#include <unordered_map>
#include <vector>
#define CUDACHECK(cmd) \
do { \
cudaError_t e = cmd; \
if (e != cudaSuccess) { \
printf("Failed: Cuda error %s:%d '%s'\n", __FILE__, __LINE__, \
cudaGetErrorString(e)); \
exit(EXIT_FAILURE); \
} \
} while (0)
namespace vllm {
constexpr int kMaxBlocks = 36;
// Counter may overflow, but it's fine since unsigned int overflow is
// well-defined behavior.
using FlagType = uint32_t;
struct Signal {
alignas(128) FlagType self_counter[kMaxBlocks][8];
// Two sets of peer counters are needed for two syncs. The reason is that
// it's possible for peer GPU block to arrive at the second sync point while
// the current GPU block haven't passed the first sync point. Thus, peer GPU
// may write counter+1 while current GPU is busy waiting for counter. We use
// alternating counter array to avoid this possibility.
alignas(128) FlagType peer_counter[2][kMaxBlocks][8];
};
struct __align__(16) RankData { const void* __restrict__ ptrs[8]; };
struct __align__(16) RankSignals { Signal* signals[8]; };
// like std::array, but aligned
template <typename T, int sz>
struct __align__(alignof(T) * sz) array_t {
T data[sz];
using type = T;
static constexpr int size = sz;
};
// use packed type to maximize memory efficiency
// goal: generate ld.128 and st.128 instructions
template <typename T>
struct packed_t {
// the (P)acked type for load/store
using P = array_t<T, 16 / sizeof(T)>;
// the (A)ccumulator type for reduction
using A = array_t<float, 16 / sizeof(T)>;
};
#define DINLINE __device__ __forceinline__
// scalar cast functions
DINLINE float upcast_s(half val) { return __half2float(val); }
template <typename T>
DINLINE T downcast_s(float val);
template <>
DINLINE half downcast_s(float val) {
return __float2half(val);
}
// scalar add functions
// for some reason when compiling with Pytorch, the + operator for half and
// bfloat is disabled so we call the intrinsics directly
DINLINE half& assign_add(half& a, half b) {
a = __hadd(a, b);
return a;
}
DINLINE float& assign_add(float& a, float b) { return a += b; }
#if (__CUDA_ARCH__ >= 800 || !defined(__CUDA_ARCH__))
DINLINE float upcast_s(nv_bfloat16 val) { return __bfloat162float(val); }
template <>
DINLINE nv_bfloat16 downcast_s(float val) {
return __float2bfloat16(val);
}
DINLINE nv_bfloat16& assign_add(nv_bfloat16& a, nv_bfloat16 b) {
a = __hadd(a, b);
return a;
}
#endif
template <typename T, int N>
DINLINE array_t<T, N>& packed_assign_add(array_t<T, N>& a, array_t<T, N> b) {
#pragma unroll
for (int i = 0; i < N; i++) {
assign_add(a.data[i], b.data[i]);
}
return a;
}
template <typename T, int N>
DINLINE array_t<float, N> upcast(array_t<T, N> val) {
if constexpr (std::is_same<T, float>::value) {
return val;
} else {
array_t<float, N> out;
#pragma unroll
for (int i = 0; i < N; i++) {
out.data[i] = upcast_s(val.data[i]);
}
return out;
}
}
template <typename O>
DINLINE O downcast(array_t<float, O::size> val) {
if constexpr (std::is_same<typename O::type, float>::value) {
return val;
} else {
O out;
#pragma unroll
for (int i = 0; i < O::size; i++) {
out.data[i] = downcast_s<typename O::type>(val.data[i]);
}
return out;
}
}
static DINLINE void st_flag_release(FlagType* flag_addr, FlagType flag) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
asm volatile("st.release.sys.global.u32 [%1], %0;" ::"r"(flag),
"l"(flag_addr));
#else
asm volatile("membar.sys; st.volatile.global.u32 [%1], %0;" ::"r"(flag),
"l"(flag_addr));
#endif
}
static DINLINE FlagType ld_flag_acquire(FlagType* flag_addr) {
FlagType flag;
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 700
asm volatile("ld.acquire.sys.global.u32 %0, [%1];"
: "=r"(flag)
: "l"(flag_addr));
#else
asm volatile("ld.volatile.global.u32 %0, [%1]; membar.gl;"
: "=r"(flag)
: "l"(flag_addr));
#endif
return flag;
}
static DINLINE void st_flag_volatile(FlagType* flag_addr, FlagType flag) {
asm volatile("st.volatile.global.u32 [%1], %0;" ::"r"(flag), "l"(flag_addr));
}
static DINLINE FlagType ld_flag_volatile(FlagType* flag_addr) {
FlagType flag;
asm volatile("ld.volatile.global.u32 %0, [%1];"
: "=r"(flag)
: "l"(flag_addr));
return flag;
}
// is_start: whether this is the very first synchronization barrier.
// need_fence: whether a memory fence is needed. If true, a release-acquire
// semantic is used to enforce memory access order before and after this
// barrier.
template <int ngpus, bool is_start, bool need_fence = false>
DINLINE void multi_gpu_barrier(const RankSignals& sg, Signal* self_sg,
int rank) {
if constexpr (!is_start) __syncthreads();
static_assert(
!(is_start && need_fence)); // Start barrier shouldn't need fence.
if (threadIdx.x < ngpus) {
// Increment the counter. Technically we only need one counter, but we use
// multiple per block to eliminate the need to share the counter via smem.
auto val = self_sg->self_counter[blockIdx.x][threadIdx.x] += 1;
// Write the expected counter value to peer and wait for correct value from
// peer.
auto peer_counter_ptr =
&sg.signals[threadIdx.x]->peer_counter[val % 2][blockIdx.x][rank];
auto self_counter_ptr =
&self_sg->peer_counter[val % 2][blockIdx.x][threadIdx.x];
if constexpr (need_fence) {
st_flag_release(peer_counter_ptr, val);
while (ld_flag_acquire(self_counter_ptr) != val);
} else {
st_flag_volatile(peer_counter_ptr, val);
while (ld_flag_volatile(self_counter_ptr) != val);
}
}
if constexpr (is_start || need_fence) __syncthreads();
}
template <typename P, int ngpus, typename A>
DINLINE P packed_reduce(const P* ptrs[], int idx) {
A tmp = upcast(ptrs[0][idx]);
#pragma unroll
for (int i = 1; i < ngpus; i++) {
packed_assign_add(tmp, upcast(ptrs[i][idx]));
}
return downcast<P>(tmp);
}
template <typename T, int ngpus>
__global__ void __launch_bounds__(512, 1)
cross_device_reduce_1stage(RankData* _dp, RankSignals sg, Signal* self_sg,
T* __restrict__ result, int rank, int size) {
using P = typename packed_t<T>::P;
using A = typename packed_t<T>::A;
// note: we don't reorder the address so the accumulation order is the same
// for all ranks, ensuring bitwise identical results
auto dp = *_dp;
multi_gpu_barrier<ngpus, true>(sg, self_sg, rank);
// do the actual reduction
for (int idx = blockIdx.x * blockDim.x + threadIdx.x; idx < size;
idx += gridDim.x * blockDim.x) {
((P*)result)[idx] = packed_reduce<P, ngpus, A>((const P**)&dp.ptrs[0], idx);
}
multi_gpu_barrier<ngpus, false>(sg, self_sg, rank);
}
template <typename P>
DINLINE P* get_tmp_buf(Signal* sg) {
return (P*)(((Signal*)sg) + 1);
}
template <typename T, int ngpus>
__global__ void __launch_bounds__(512, 1)
cross_device_reduce_2stage(RankData* _dp, RankSignals sg, Signal* self_sg,
T* __restrict__ result, int rank, int size) {
int tid = blockIdx.x * blockDim.x + threadIdx.x;
int stride = gridDim.x * blockDim.x;
using P = typename packed_t<T>::P;
using A = typename packed_t<T>::A;
int part = size / ngpus;
int start = rank * part;
int end = rank == ngpus - 1 ? size : start + part;
int largest_part = part + size % ngpus;
const P* ptrs[ngpus];
P* tmps[ngpus];
#pragma unroll
for (int i = 0; i < ngpus; i++) {
int target = (rank + i) % ngpus;
ptrs[i] = (const P*)_dp->ptrs[target];
tmps[i] = get_tmp_buf<P>(sg.signals[target]);
}
auto tmp_out = tmps[0];
multi_gpu_barrier<ngpus, true>(sg, self_sg, rank);
// stage 1: reduce scatter
for (int idx = start + tid; idx < end; idx += stride) {
tmp_out[idx - start] = packed_reduce<P, ngpus, A>(ptrs, idx);
}
multi_gpu_barrier<ngpus, false, true>(sg, self_sg, rank);
// stage 2: allgather. Note: it's important to match the tid between
// the two stages, because visibility across devices is only guaranteed
// between threads that have the same tid. If thread i computes the sum of
// start + i in the first stage, then thread i also gathers start + i from all
// ranks.
for (int idx = tid; idx < largest_part; idx += stride) {
#pragma unroll
for (int i = 0; i < ngpus; i++) {
int gather_from_rank = ((rank + i) % ngpus);
if (gather_from_rank == ngpus - 1 || idx < part) {
int dst_idx = gather_from_rank * part + idx;
((P*)result)[dst_idx] = tmps[i][idx];
}
}
}
}
using IPC_KEY = std::array<uint8_t, sizeof(cudaIpcMemHandle_t)>;
static_assert(sizeof(IPC_KEY) == sizeof(cudaIpcMemHandle_t));
static_assert(alignof(IPC_KEY) == alignof(cudaIpcMemHandle_t));
class CustomAllreduce {
public:
int rank_;
int world_size_;
bool full_nvlink_;
// below are device pointers
RankSignals sg_;
std::unordered_map<void*, RankData*> buffers_;
Signal* self_sg_;
// stores the registered device pointers from all ranks
RankData *d_rank_data_base_, *d_rank_data_end_;
std::vector<void*> graph_unreg_buffers_;
// a map from IPC handles to opened IPC pointers
std::map<IPC_KEY, char*> ipc_handles_;
/**
* meta is a pointer to device metadata and temporary buffer for allreduce.
*
* There's a total of sizeof(Signal) of prefix before the actual data,
* so meta + 1 points to actual temporary buffer.
*
* note: this class does not own any device memory. Any required buffers
* are passed in from the constructor
*/
CustomAllreduce(Signal* meta, void* rank_data, size_t rank_data_sz,
const cudaIpcMemHandle_t* handles,
const std::vector<int64_t>& offsets, int rank,
bool full_nvlink = true)
: rank_(rank),
world_size_(offsets.size()),
full_nvlink_(full_nvlink),
self_sg_(meta),
d_rank_data_base_(reinterpret_cast<RankData*>(rank_data)),
d_rank_data_end_(d_rank_data_base_ + rank_data_sz / sizeof(RankData)) {
for (int i = 0; i < world_size_; i++) {
Signal* rank_sg;
if (i != rank_) {
char* handle = open_ipc_handle(&handles[i]);
handle += offsets[i];
rank_sg = (Signal*)handle;
} else {
rank_sg = self_sg_;
}
sg_.signals[i] = rank_sg;
}
}
char* open_ipc_handle(const void* ipc_handle) {
auto [it, new_handle] =
ipc_handles_.insert({*((IPC_KEY*)ipc_handle), nullptr});
if (new_handle) {
char* ipc_ptr;
CUDACHECK(cudaIpcOpenMemHandle((void**)&ipc_ptr,
*((const cudaIpcMemHandle_t*)ipc_handle),
cudaIpcMemLazyEnablePeerAccess));
it->second = ipc_ptr;
}
return it->second;
}
std::pair<std::vector<uint8_t>, std::vector<int64_t>>
get_graph_buffer_ipc_meta() {
auto num_buffers = graph_unreg_buffers_.size();
auto handle_sz = sizeof(cudaIpcMemHandle_t);
std::vector<uint8_t> handles(handle_sz * num_buffers, 0);
std::vector<int64_t> offsets(num_buffers);
for (int i = 0; i < num_buffers; i++) {
auto ptr = graph_unreg_buffers_[i];
void* base_ptr;
// note: must share the base address of each allocation, or we get wrong
// address
if (cuPointerGetAttribute(&base_ptr,
CU_POINTER_ATTRIBUTE_RANGE_START_ADDR,
(CUdeviceptr)ptr) != CUDA_SUCCESS)
throw std::runtime_error("failed to get pointer attr");
CUDACHECK(cudaIpcGetMemHandle(
(cudaIpcMemHandle_t*)&handles[i * handle_sz], base_ptr));
offsets[i] = ((char*)ptr) - ((char*)base_ptr);
}
return std::make_pair(handles, offsets);
}
void check_rank_data_capacity(size_t num = 1) {
if (d_rank_data_base_ + num > d_rank_data_end_)
throw std::runtime_error(
"Rank data buffer is overflowed by " +
std::to_string(d_rank_data_base_ + num - d_rank_data_end_));
}
void register_buffer(const std::vector<std::string>& handles,
const std::vector<int64_t>& offsets, void* self) {
check_rank_data_capacity();
RankData data;
for (int i = 0; i < world_size_; i++) {
if (i != rank_) {
char* handle = open_ipc_handle(handles[i].data());
handle += offsets[i];
data.ptrs[i] = handle;
} else {
data.ptrs[i] = self;
}
}
auto d_data = d_rank_data_base_++;
CUDACHECK(
cudaMemcpy(d_data, &data, sizeof(RankData), cudaMemcpyHostToDevice));
buffers_[self] = d_data;
}
// note: when registering graph buffers, we intentionally choose to not
// deduplicate the addresses. That means if the allocator reuses some
// addresses, they will be registered again. This is to account for the remote
// possibility of different allocation patterns between ranks. For example,
// rank 1 may get the same input address for the second allreduce, but rank 2
// got a different address. IPC handles have internal reference counting
// mechanism so overhead should be small.
void register_graph_buffers(
const std::vector<std::string>& handles,
const std::vector<std::vector<int64_t>>& offsets) {
auto num_buffers = graph_unreg_buffers_.size();
check_rank_data_capacity(num_buffers);
std::vector<RankData> rank_data(num_buffers);
for (int i = 0; i < num_buffers; i++) {
auto self_ptr = graph_unreg_buffers_[i];
auto& rd = rank_data[i];
for (int j = 0; j < world_size_; j++) {
if (j != rank_) {
char* handle =
open_ipc_handle(&handles[j][i * sizeof(cudaIpcMemHandle_t)]);
handle += offsets[j][i];
rd.ptrs[j] = handle;
} else {
rd.ptrs[j] = self_ptr;
}
}
}
CUDACHECK(cudaMemcpy(d_rank_data_base_, rank_data.data(),
sizeof(RankData) * num_buffers,
cudaMemcpyHostToDevice));
d_rank_data_base_ += num_buffers;
graph_unreg_buffers_.clear();
}
/**
* This is the result after careful grid search. Using 36 blocks give the best
* or close to the best runtime on the devices I tried: A100, A10, A30, T4,
* V100. You'll notice that NCCL kernels also only take a small amount of SMs.
* Not quite sure the underlying reason, but my guess is that too many SMs
* will cause contention on NVLink bus.
*/
template <typename T>
void allreduce(cudaStream_t stream, T* input, T* output, int size,
int threads = 512, int block_limit = 36) {
auto d = packed_t<T>::P::size;
if (size % d != 0)
throw std::runtime_error(
"custom allreduce currently requires input length to be multiple "
"of " +
std::to_string(d));
if (block_limit > kMaxBlocks)
throw std::runtime_error("max supported block limit is " +
std::to_string(kMaxBlocks) + ". Got " +
std::to_string(block_limit));
RankData* ptrs;
cudaStreamCaptureStatus status;
CUDACHECK(cudaStreamIsCapturing(stream, &status));
if (status == cudaStreamCaptureStatusActive) {
ptrs = d_rank_data_base_ + graph_unreg_buffers_.size();
graph_unreg_buffers_.push_back(input);
} else {
auto it = buffers_.find(input);
if (it == buffers_.end())
throw std::runtime_error(
"buffer address " +
std::to_string(reinterpret_cast<uint64_t>(input)) +
" is not registered!");
ptrs = it->second;
}
size /= d;
auto bytes = size * sizeof(typename packed_t<T>::P);
int blocks = std::min(block_limit, (size + threads - 1) / threads);
#define KL(ngpus, name) \
name<T, ngpus><<<blocks, threads, 0, stream>>>(ptrs, sg_, self_sg_, output, \
rank_, size);
// TODO(hanzhi713): Threshold is different for A100 and H100.
// Add per device threshold.
#define REDUCE_CASE(ngpus) \
case ngpus: { \
if (world_size_ == 2) { \
KL(ngpus, cross_device_reduce_1stage); \
} else if (full_nvlink_) { \
if ((world_size_ <= 4 && bytes < 512 * 1024) || \
(world_size_ <= 8 && bytes < 256 * 1024)) { \
KL(ngpus, cross_device_reduce_1stage); \
} else { \
KL(ngpus, cross_device_reduce_2stage); \
} \
} \
break; \
}
switch (world_size_) {
REDUCE_CASE(2)
REDUCE_CASE(4)
REDUCE_CASE(6)
REDUCE_CASE(8)
default:
throw std::runtime_error(
"custom allreduce only supports num gpus in (2,4,6,8). Actual num "
"gpus = " +
std::to_string(world_size_));
}
#undef REDUCE_CASE
#undef KL
}
~CustomAllreduce() {
for (auto [_, ptr] : ipc_handles_) {
CUDACHECK(cudaIpcCloseMemHandle(ptr));
}
}
};
/**
* To inspect PTX/SASS, copy paste this header file to compiler explorer and add
a template instantiation:
* template void vllm::CustomAllreduce::allreduce<half>(cudaStream_t, half *,
half *, int, int, int);
*/
} // namespace vllm