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ColossalAI/csrc/multi_tensor_l2norm_kernel.cu

455 lines
14 KiB

3 years ago
// modified from https://github.com/NVIDIA/apex/blob/master/csrc/multi_tensor_l2norm_kernel.cu
#include <ATen/ATen.h>
#include <ATen/AccumulateType.h>
#include <ATen/cuda/CUDAContext.h>
#include <ATen/cuda/Exceptions.h>
#include <c10/cuda/CUDAGuard.h>
// Another possibility:
// #include <torch/all.h>
#include <assert.h>
#include "type_shim.h"
#include "multi_tensor_apply.cuh"
#define BLOCK_SIZE 512
#define ILP 4
template <typename T>
__device__ __forceinline__ bool is_aligned(T *p)
{
return ((uint64_t)p) % (ILP * sizeof(T)) == 0;
}
template <typename T>
__device__ __forceinline__ void load_store(T *dst, T *src, int dst_offset, int src_offset)
{
typedef typename std::aligned_storage<ILP * sizeof(T), ILP * alignof(T)>::type LT;
((LT *)dst)[dst_offset] = ((LT *)src)[src_offset];
}
template <typename x_t>
struct L2NormFunctor
{
__device__ __forceinline__ void operator()(
int chunk_size,
volatile int *noop_gmem,
TensorListMetadata<1> &tl,
float *output,
float *output_per_tensor,
bool per_tensor,
int max_chunks_per_tensor)
{
// I'd like this kernel to propagate infs/nans.
// if(*noop_gmem == 1)
// return;
int tensor_loc = tl.block_to_tensor[blockIdx.x];
int chunk_idx = tl.block_to_chunk[blockIdx.x];
int n = tl.sizes[tensor_loc];
x_t *x = (x_t *)tl.addresses[0][tensor_loc];
x += chunk_idx * chunk_size;
n -= chunk_idx * chunk_size;
__shared__ float s_vals[512];
float vals[ILP]; // = {0}; // this probably works too but I want to be sure...
x_t r_x[ILP];
for (int i = 0; i < ILP; i++)
{
vals[i] = 0.f;
r_x[i] = 0;
}
// to make things simple, we put aligned case in a different code path
if (n % ILP == 0 && chunk_size % ILP == 0 && is_aligned(x))
{
for (int i_start = threadIdx.x; i_start * ILP < n && i_start * ILP < chunk_size; i_start += blockDim.x)
{
// load
load_store(r_x, x, 0, i_start);
#pragma unroll
for (int ii = 0; ii < ILP; ii++)
{
float next = static_cast<float>(r_x[ii]);
vals[ii] += next * next;
}
}
}
else
{
for (int i_start = 0; i_start < n && i_start < chunk_size; i_start += blockDim.x * ILP)
{
#pragma unroll
for (int ii = 0; ii < ILP; ii++)
{
int i = i_start + threadIdx.x + ii * blockDim.x;
if (i < n && i < chunk_size)
{
float next = static_cast<float>(x[i]);
vals[ii] += next * next;
}
}
}
}
float val = 0.f;
for (int i = 0; i < ILP; i++)
val += vals[i];
float final = reduce_block_into_lanes(s_vals, val);
if (threadIdx.x == 0)
{
if (!isfinite(final))
*noop_gmem = 1; // Blindly fire off a write. These will race but that's ok.
output[blockIdx.x] += final;
if (per_tensor)
output_per_tensor[(tl.start_tensor_this_launch + tensor_loc) * max_chunks_per_tensor + chunk_idx] = final;
}
}
};
// Probably better to template, but since we are not likely to support other norm
template <typename x_t>
struct MaxNormFunctor
{
__device__ __forceinline__ void operator()(
int chunk_size,
volatile int *noop_gmem,
TensorListMetadata<1> &tl,
float *output,
float *output_per_tensor,
bool per_tensor,
int max_chunks_per_tensor)
{
// I'd like this kernel to propagate infs/nans.
// if(*noop_gmem == 1)
// return;
int tensor_loc = tl.block_to_tensor[blockIdx.x];
int chunk_idx = tl.block_to_chunk[blockIdx.x];
int n = tl.sizes[tensor_loc];
x_t *x = (x_t *)tl.addresses[0][tensor_loc];
x += chunk_idx * chunk_size;
n -= chunk_idx * chunk_size;
__shared__ float s_vals[512];
float vals[ILP]; // = {0}; // this probably works too but I want to be sure...
x_t r_x[ILP];
for (int i = 0; i < ILP; i++)
{
vals[i] = 0.f;
r_x[i] = 0;
}
// to make things simple, we put aligned case in a different code path
if (n % ILP == 0 && chunk_size % ILP == 0 && is_aligned(x))
{
for (int i_start = threadIdx.x; i_start * ILP < n && i_start * ILP < chunk_size; i_start += blockDim.x)
{
// load
load_store(r_x, x, 0, i_start);
#pragma unroll
for (int ii = 0; ii < ILP; ii++)
{
float next = static_cast<float>(r_x[ii]);
vals[ii] = fmaxf(fabsf(vals[ii]), fabsf(next));
}
}
}
else
{
for (int i_start = 0; i_start < n && i_start < chunk_size; i_start += blockDim.x * ILP)
{
#pragma unroll
for (int ii = 0; ii < ILP; ii++)
{
int i = i_start + threadIdx.x + ii * blockDim.x;
if (i < n && i < chunk_size)
{
float next = static_cast<float>(x[i]);
vals[ii] = fmaxf(fabsf(vals[ii]), fabsf(next));
}
}
}
}
float val = 0.f;
for (int i = 0; i < ILP; i++)
val = fmaxf(fabsf(val), fabsf(vals[i]));
float final = reduce_block_into_lanes_max_op(s_vals, val);
if (threadIdx.x == 0)
{
if (!isfinite(final))
*noop_gmem = 1; // Blindly fire off a write. These will race but that's ok.
output[blockIdx.x] = fmaxf(fabsf(output[blockIdx.x]), fabsf(final));
if (per_tensor)
output_per_tensor[(tl.start_tensor_this_launch + tensor_loc) * max_chunks_per_tensor + chunk_idx] = final;
}
}
};
__global__ void cleanup(
float *output,
float *output_per_tensor,
float *ret,
float *ret_per_tensor,
bool per_tensor,
int max_chunks_per_tensor)
{
__shared__ float vals[512];
if (blockIdx.x == 0)
{
float val = 0;
if (threadIdx.x < 320)
val = output[threadIdx.x];
float final = reduce_block_into_lanes(vals, val);
if (threadIdx.x == 0)
*ret = sqrt(final);
}
if (per_tensor)
{
float *output_this_tensor = output_per_tensor + blockIdx.x * max_chunks_per_tensor;
float val = 0;
for (int i = threadIdx.x; i < max_chunks_per_tensor; i += blockDim.x)
val += output_this_tensor[i];
float final = reduce_block_into_lanes(vals, val);
if (threadIdx.x == 0)
ret_per_tensor[blockIdx.x] = sqrt(final);
}
}
__global__ void cleanup_v2(
float *output,
float *output_per_tensor,
float *ret,
float *ret_per_tensor,
bool per_tensor,
int max_chunks_per_tensor,
int norm_type,
float alpha,
float beta)
{
__shared__ float vals[512];
if (blockIdx.x == 0)
{
float val = 0;
if (threadIdx.x < 320)
val = output[threadIdx.x];
if (norm_type == 0)
{
float final = reduce_block_into_lanes_max_op(vals, val);
if (threadIdx.x == 0)
*ret = alpha * (*ret) + beta * final;
}
else
{
float final = reduce_block_into_lanes(vals, val);
if (threadIdx.x == 0)
*ret = sqrt(alpha * (*ret) * (*ret) + beta * final);
}
}
if (per_tensor)
{
float *output_this_tensor = output_per_tensor + blockIdx.x * max_chunks_per_tensor;
if (norm_type == 0)
{
float val = 0;
for (int i = threadIdx.x; i < max_chunks_per_tensor; i += blockDim.x)
val = fmaxf(fabsf(val), fabsf(output_this_tensor[i]));
float final = reduce_block_into_lanes_max_op(vals, val);
if (threadIdx.x == 0)
ret_per_tensor[blockIdx.x] = alpha * ret_per_tensor[blockIdx.x] + beta * final;
}
else
{
float val = 0;
for (int i = threadIdx.x; i < max_chunks_per_tensor; i += blockDim.x)
val += output_this_tensor[i];
float final = reduce_block_into_lanes(vals, val);
if (threadIdx.x == 0)
ret_per_tensor[blockIdx.x] = sqrt(alpha * ret_per_tensor[blockIdx.x] * ret_per_tensor[blockIdx.x] + beta * final);
}
}
}
std::tuple<at::Tensor, at::Tensor> multi_tensor_l2norm_cuda(
int chunk_size,
at::Tensor noop_flag,
std::vector<std::vector<at::Tensor>> tensor_lists,
at::optional<bool> per_tensor_python)
{
bool per_tensor = per_tensor_python.has_value() ? per_tensor_python.value() : false;
auto float_options = tensor_lists[0][0].options().dtype(at::kFloat);
auto output = at::zeros({320}, float_options);
at::Tensor output_per_tensor;
at::Tensor ret_per_tensor;
int ntensors = tensor_lists[0].size();
int max_chunks_per_tensor = -1;
if (per_tensor)
{
for (int t = 0; t < ntensors; t++)
{
int max_chunks_this_tensor = (tensor_lists[0][t].numel() + chunk_size - 1) / chunk_size;
if (max_chunks_this_tensor > max_chunks_per_tensor)
max_chunks_per_tensor = max_chunks_this_tensor;
}
output_per_tensor = at::zeros({ntensors * max_chunks_per_tensor}, float_options);
ret_per_tensor = at::empty({ntensors}, float_options);
}
else
{
ret_per_tensor = at::empty({0}, float_options);
}
DISPATCH_FLOAT_AND_HALF(tensor_lists[0][0].scalar_type(), 0, "multi_tensor_l2norm_cuda",
multi_tensor_apply<1>(
BLOCK_SIZE,
chunk_size,
noop_flag,
tensor_lists,
L2NormFunctor<scalar_t_0>(),
output.DATA_PTR<float>(),
per_tensor ? output_per_tensor.DATA_PTR<float>() : nullptr,
per_tensor,
max_chunks_per_tensor);)
AT_CUDA_CHECK(cudaGetLastError());
// AT_CUDA_CHECK(cudaDeviceSynchronize());
// This involves one more small kernel launches, but will be negligible end to end.
// I could get rid of these by hacking the functor + multi tensor harness with persistence
// logic, but keeping it simple for now
auto ret = at::empty({1}, output.options());
const at::cuda::OptionalCUDAGuard device_guard(device_of(output));
auto stream = at::cuda::getCurrentCUDAStream();
cleanup<<<per_tensor ? ntensors : 1, 512, 0, stream>>>(
output.DATA_PTR<float>(),
per_tensor ? output_per_tensor.DATA_PTR<float>() : nullptr,
ret.DATA_PTR<float>(),
per_tensor ? ret_per_tensor.DATA_PTR<float>() : nullptr,
per_tensor,
max_chunks_per_tensor);
return std::tuple<at::Tensor, at::Tensor>(ret, ret_per_tensor);
}
// Compute and update grad norm
// Here use a per tensor norm, and blend new norm(n) and old norm(gn) by
// L-2: gn = sqrt(a * gn^2 + b * n^2)
// L-inf: gn = a * gn + b * n
void multi_tensor_norm_out_cuda(
int chunk_size,
at::Tensor noop_flag,
std::vector<std::vector<at::Tensor>> tensor_lists,
at::Tensor out,
const float alpha,
const float beta,
const int norm_type)
{
auto float_options = tensor_lists[0][0].options().dtype(at::kFloat);
TORCH_CHECK(tensor_lists[0][0].device() == noop_flag.device(), "noop flag should be on the same device as tensors");
// we don't need global thus uses empty here
auto output = at::empty({320}, float_options);
at::Tensor output_per_tensor;
at::Tensor ret_per_tensor;
int ntensors = tensor_lists[0].size();
int max_chunks_per_tensor = -1;
for (int t = 0; t < ntensors; t++)
{
int max_chunks_this_tensor = (tensor_lists[0][t].numel() + chunk_size - 1) / chunk_size;
if (max_chunks_this_tensor > max_chunks_per_tensor)
max_chunks_per_tensor = max_chunks_this_tensor;
}
// Although it is single write then read, still need to be zero
// Since tailing element also participate cleanup
output_per_tensor = at::zeros({ntensors * max_chunks_per_tensor}, float_options);
if (norm_type == 0)
{
DISPATCH_FLOAT_AND_HALF(
tensor_lists[0][0].scalar_type(), 0, "multi_tensor_maxnorm_cuda",
multi_tensor_apply<1>(
BLOCK_SIZE,
chunk_size,
noop_flag,
tensor_lists,
MaxNormFunctor<scalar_t_0>(),
output.DATA_PTR<float>(),
output_per_tensor.DATA_PTR<float>(),
true,
max_chunks_per_tensor);)
}
else
{
DISPATCH_FLOAT_AND_HALF(
tensor_lists[0][0].scalar_type(), 0, "multi_tensor_l2norm_cuda",
multi_tensor_apply<1>(
BLOCK_SIZE,
chunk_size,
noop_flag,
tensor_lists,
L2NormFunctor<scalar_t_0>(),
output.DATA_PTR<float>(),
output_per_tensor.DATA_PTR<float>(),
true,
max_chunks_per_tensor);)
}
AT_CUDA_CHECK(cudaGetLastError());
// AT_CUDA_CHECK(cudaDeviceSynchronize());
// This involves one more small kernel launches, but will be negligible end to end.
// I could get rid of these by hacking the functor + multi tensor harness with persistence
// logic, but keeping it simple for now
auto ret = at::empty({1}, output.options());
// Adding the following device guard since it happens sometimes that the
// tensors are on one device and the cuda stream is on another device which
// results in ILLEGAL MEM ACCESS error.
const at::cuda::OptionalCUDAGuard device_guard(device_of(output));
auto stream = at::cuda::getCurrentCUDAStream();
cleanup_v2<<<ntensors, 512, 0, stream>>>(
output.DATA_PTR<float>(),
output_per_tensor.DATA_PTR<float>(),
ret.DATA_PTR<float>(),
out.DATA_PTR<float>(),
true,
max_chunks_per_tensor,
norm_type,
alpha,
beta);
return;
}