https://github.com/Microsoft/CNTK
Tip revision: e2d79d7da03e879bb89a9befcb685214a893f974 authored by Bowen Bao on 14 December 2018, 18:16:57 UTC
Submodule onnxruntime, and remove previous drop.
Submodule onnxruntime, and remove previous drop.
Tip revision: e2d79d7
GPUTensor.cu
//
// Copyright (c) Microsoft. All rights reserved.
// Copyright (c) 2016-2017, NVIDIA CORPORATION. All rights reserved
// Licensed under the MIT license. See LICENSE.md file in the project root for full license information.
//
#include "stdafx.h"
#include "Basics.h"
#include "BestGpu.h"
#ifndef CPUONLY
#include "GPUTensor.h"
#include "GPUMatrix.h"
#include "GPUMatrixCUDAKernels.cuh"
#include "CommonMatrix.h"
#define TENSOR_OPS_DECL __device__ __host__
#include "TensorOps.h"
#include "fast_divmod.h"
#include <cuda.h>
#include <cuda_runtime.h>
#include "cublas_v2.h"
#include <assert.h>
#include <limits.h>
// use fast divisor
#define USE_FAST_DIVMOD
#ifndef let
#define let const auto
#endif
#pragma comment(lib, "cudart.lib") // instruct linker to reference these libs
#pragma comment(lib, "cublas.lib")
#pragma warning(disable : 4267) // conversion from 'size_t' to 'unsigned int'; happens in CUDA <<<a,b>>> syntax if a and b are size_t
#pragma warning(disable : 4127) // conditional expression is constant; "if (sizeof(ElemType)==sizeof(float))" triggers this
#pragma warning(disable : 4702) // unreachable code; triggered for unknown reasons
#ifdef _WIN32
// thread local storage to access the current stream, initalize to default stream
__declspec(thread)
#endif
extern cudaStream_t t_stream;
namespace Microsoft { namespace MSR { namespace CNTK {
// =======================================================================
// TensorView support
// =======================================================================
// TensorView computes element-wise tensor operations.
// - supports general strides
// - input broadcasting is supported by stride=0
// - the operation is denoted by an opCode
// - reduction is supported, including summation, min, max (dual to broadcasting when computing gradients)
// - reduction operation is given by an opCode: opSum, opMin, opMax and opLogSum.
//
// This library makes extensive use of templates and macros.
// Specifically, templates are used recursively to recurse over tensor dimensions.
// For example, a tensor op of rank K is computed by looping over the last dimension
// and then calling the same function template recursively with K-1.
// Template specializations exist in order to:
// - terminate recursion
// - optimize for thread-parallel reduction where elements are consecutive in memory
//
// The general algorithm is very straight forward:
//
// for all output dimensions [###]: // TensorOp()
// output[###] *= beta
// for all reduction dimensions [***]: // TensorOpWithReduction()
// output[###] += op(input1[###,***], input1[###,***], ...) * alpha
//
// Indices and dimensions used throughout this code:
// - N = ariness; number of arguments *including output* (binary op: N=3)
// - K = rank of output elements, regularOpDims.size(). K=0 means scalar.
// - k = -1..K-1 = recursion index
// - M = reduction rank, reducingOpDims.size(). M=0 means no reduction.
// - m = -1..M-1 = recursion index
//
// Other frequently used variable names:
// - alpha, beta: BLAS-style weights: outVal = beta * outVal + alpha * f(inVals)
// where beta=0 is an assignment (0 * outVal := 0, even e.g. if outVal = NaN)
// - pointers[N]: pointer to first element, for each argument
// - regularOpDims[K]: tensor dimensions of output elements to produce
// - regularStrides[N,K]: strides; multiply index[k] with strides[n,k] to get element offset for this dimension
// Broadcasting of inputs is implemented by a stride being 0.
// - reducingOpDims[M]: tensor dimensions of input elements to reduce over
// - reducingStrides[N,M]: strides for input reduction. Always 0 for output argument.
//
// This code uses two custom structs, FixedArray<> and FixedMatrix<>, which
// are templated equivalents to vector<> and vector<vector<>> for CUDA code.
// -----------------------------------------------------------------------
// simple fixed-size arrays for passing dimension information by value
// since CUDA can't just take our std::array and std::vector
// -----------------------------------------------------------------------
template <typename T, size_t N>
struct FixedArray
{
T m_data[N];
__device__ __host__ size_t size() const
{
return N;
}
__device__ __host__ T& operator[](size_t n)
{
return m_data[n];
}
__device__ __host__ T operator[](size_t n) const
{
return m_data[n];
}
template <class VEC>
FixedArray(const VEC& data) // construct from CPU-side STL array or vector
{
assert(data.size() == N);
for (size_t n = 0; n < N; n++)
{
m_data[n] = (T) data[n];
if (m_data[n] != data[n]) // overflow check
InvalidArgument("FixedArray: Dimensions out of range, too few bits.");
}
}
};
template <typename T> // specialized version for 0 elements
struct FixedArray<T, 0>
{
__device__ __host__ size_t size() const
{
return 0;
}
template <class VEC>
FixedArray(const VEC& data)
{
assert(data.size() == 0);
UNUSED(data);
}
FixedArray()
{
}
};
template <typename T, size_t N, size_t K> // N = which input/output; K = index depth
struct FixedMatrix
{
T m_data[N][K];
__device__ __host__ size_t getNumRows() const
{
return N;
}
__device__ __host__ size_t getNumCols() const
{
return K;
}
__device__ __host__ T& operator()(size_t n, size_t k)
{
return m_data[n][k];
}
__device__ __host__ T operator()(size_t n, size_t k) const
{
return m_data[n][k];
}
template <typename U>
FixedMatrix(const array<SmallVector<U>, N>& data) // construct from CPU-side array of vectors
{
assert(data.size() == N);
for (size_t n = 0; n < N; n++)
{
assert(data[n].size() == K);
for (size_t k = 0; k < K; k++)
{
m_data[n][k] = (T) data[n][k];
if (m_data[n][k] != data[n][k]) // overflow check
InvalidArgument("FixedArray: Dimensions out of range, too few bits.");
}
}
}
};
template <typename T, size_t N> // specialized version for 0 elements
struct FixedMatrix<T, N, 0>
{
__device__ __host__ size_t getNumRows() const
{
return N;
}
__device__ __host__ size_t getNumCols() const
{
return 0;
}
template <typename U>
FixedMatrix(const array<SmallVector<U>, N>& data)
{
assert(data.size() == N);
for (size_t n = 0; n < N; n++)
assert(data[n].size() == 0);
UNUSED(data);
}
FixedMatrix()
{
}
};
// -----------------------------------------------------------------------
// function to actually compute a function of (N-1) inputs based on the opcode
// -----------------------------------------------------------------------
template <class ElemType>
struct TensorOps
{
typedef typename TypeSelector<ElemType>::comp_t comp_t;
static __device__ comp_t Compute(const FixedArray<ElemType*, 1>& pointers, ElementWiseOperator op)
{
#define CaseNullaryTensorOp(oper) \
case ElementWiseOperator::op##oper: \
return Op##oper<comp_t>()
switch (op)
{
ForAllNullaryOps(CaseNullaryTensorOp);
default:
return OpConstOne<comp_t>(); // (failure--we only have one nullary op, so use the same, maybe it will eliminate the switch altogether)
}
}
static __device__ comp_t Compute(const FixedArray<ElemType*, 2>& pointers, ElementWiseOperator op)
{
comp_t a = *(pointers[0]);
#define CaseUnaryTensorOp(oper) \
case ElementWiseOperator::op##oper: \
return Op##oper(a)
switch (op)
{
ForAllUnaryOps(CaseUnaryTensorOp);
default:
return 0; // (failure)
}
}
static __device__ comp_t Compute(const FixedArray<ElemType*, 3>& pointers, ElementWiseOperator op)
{
// const ElemType & a = *(pointers[0]); // const & for opIndex--costs quite some code bloat
comp_t a = *(pointers[0]);
comp_t b = *(pointers[1]);
#define CaseBinaryTensorOp(oper) \
case ElementWiseOperator::op##oper: \
return Op##oper(a, b)
switch (op)
{
ForAllBinaryOps(CaseBinaryTensorOp); // note: this costs about 6% compared to having only a single case
default:
return 0; // (failure)
}
}
static __device__ comp_t Compute(const FixedArray<ElemType*, 4>& pointers, ElementWiseOperator op)
{
#define CaseTernaryTensorOp(oper) \
case ElementWiseOperator::op##oper: \
return Op##oper((comp_t)*(pointers[0]), (comp_t)*(pointers[1]), (comp_t)*(pointers[2])) // reading each time, which saves mem accesses for OpCond
switch (op)
{
ForAllTernaryOps(CaseTernaryTensorOp);
default:
return 0; // (failure)
}
}
};
// ----------------------------------------------------------------------------
// Function to update an aggregate value for the specified reduction operation
// ----------------------------------------------------------------------------
template <typename ElemType> __device__ ElemType AggregateNeutralValue(ElementWiseOperator op)
{
return 0; // error, only the explicit instantiations below should be used.
};
template<> __device__ float AggregateNeutralValue<float>(ElementWiseOperator op)
{
switch (op)
{
case ElementWiseOperator::opSum: return 0;
case ElementWiseOperator::opLogSum: return -FLT_MAX; // note: do not use INFINITY anywhere here, as it causes NaNs
case ElementWiseOperator::opMin: return FLT_MAX;
case ElementWiseOperator::opMax: return -FLT_MAX;
case ElementWiseOperator::opElementwiseProduct: return 1.0f;
case ElementWiseOperator::opArgmin: return FLT_MAX;
case ElementWiseOperator::opArgmax: return -FLT_MAX;
default: return 0; // error
}
};
template<> __device__ double AggregateNeutralValue<double>(ElementWiseOperator op)
{
switch (op)
{
case ElementWiseOperator::opSum: return 0;
case ElementWiseOperator::opLogSum: return -DBL_MAX;
case ElementWiseOperator::opMin: return DBL_MAX;
case ElementWiseOperator::opMax: return -DBL_MAX;
case ElementWiseOperator::opElementwiseProduct: return 1.0;
case ElementWiseOperator::opArgmin: return DBL_MAX;
case ElementWiseOperator::opArgmax: return -DBL_MAX;
default: return 0; // error
}
};
template<typename ReductionType, class ElemType> __device__ void Aggregate(ReductionType& aggregate, ElemType val, ElementWiseOperator reductionOp)
{
switch (reductionOp)
{
case ElementWiseOperator::opSum:
aggregate += (ReductionType)val;
break;
case ElementWiseOperator::opLogSum:
aggregate = OpLogSum(aggregate, (ReductionType)val);
break;
case ElementWiseOperator::opMin:
if ((ReductionType)val < aggregate)
aggregate = (ReductionType)val;
break;
case ElementWiseOperator::opMax:
if ((ReductionType)val > aggregate)
aggregate = (ReductionType)val;
break;
case ElementWiseOperator::opElementwiseProduct:
aggregate *= (ReductionType)val;
break;
}
};
// -----------------------------------------------------------------------
// function to compute the value for a given output location (including reduction)
// -----------------------------------------------------------------------
// change to typeselector, use double for double, float for float, float for half
// #define ReduceElemType ElemType // (note: we could use 'double' here, but that would cause problems with CUDA cards that don't support double)
template <class ElemType, C_size_t N, C_int M, C_int m>
struct TensorOpReduce
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m >= 0
static __device__ ReduceElemType Compute(FixedArray<ElemType*, N> pointers, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides)
{
// start with index 0
// We may use 'double' since we are memory-bound anyway.
ReduceElemType aggregate = TensorOpReduce<ElemType, N, M, m - 1>::Compute(pointers, op, reductionOp, reducingOpDims, reducingStrides);
// apply this index to the pointers
C_size_t dim = reducingOpDims[m];
for (C_size_t k = 1 /*done with k=0 already*/; k < dim; k++)
{
// bump the pointers
#pragma unroll
for (C_size_t i = 0; i < N - 1; i++) // N-1 because output is not used here
{
pointers[i] += reducingStrides(i, (C_size_t) m);
}
ReduceElemType val = TensorOpReduce<ElemType, N, M, m - 1>::Compute(pointers, op, reductionOp, reducingOpDims, reducingStrides);
Aggregate<ReduceElemType, ElemType>(aggregate, val, reductionOp);
}
return aggregate;
}
};
// this one terminates the template recursion over reduction dimensions
// The pointers are pointing to the input element.
template <class ElemType, C_size_t N, C_int M>
struct TensorOpReduce<ElemType, N, M, /*m=*/-1>
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m = -1
// the pointers are pointing to the right location(s) to take the operation over
static __device__ ReduceElemType Compute(FixedArray<ElemType*, N> pointers, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, M>& /*reducingOpDims*/, const FixedMatrix<C_int, N, M>& /*reducingStrides*/)
{
return TensorOps<ElemType>::Compute(pointers, op); // finally computing something!
}
};
// Similar to TensorOpReduce but count the number of elements seen so far and keep track
// of the index of the last element assigned to the aggregate. It assume that reduction is done
// in a single thread.
template <class ElemType, C_size_t N, C_int M, C_int m>
struct TensorArgOpReduce
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m >= 0
static __device__ ReduceElemType Compute(FixedArray<ElemType*, N> pointers, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides,
C_unsigned_int& count, C_unsigned_int& index)
{
// start with index 0
ReduceElemType aggregate = TensorArgOpReduce<ElemType, N, M, m - 1>::Compute(pointers, reductionOp, reducingOpDims, reducingStrides, count, index);
// apply this index to the pointers
C_size_t dim = reducingOpDims[m];
for (C_size_t k = 1 /*done with k=0 already*/; k < dim; k++)
{
// bump the pointers
#pragma unroll
for (C_size_t i = 0; i < N - 1; i++) // N-1 because output is not used here
{
pointers[i] += reducingStrides(i, (C_size_t)m);
}
ReduceElemType val = TensorArgOpReduce<ElemType, N, M, m - 1>::Compute(pointers, reductionOp, reducingOpDims, reducingStrides, count, index);
bool update = false;
switch (reductionOp)
{
case ElementWiseOperator::opArgmin:
update = (aggregate > val);
break;
case ElementWiseOperator::opArgmax:
update = (aggregate < val);
break;
}
if (update)
{
aggregate = val;
index = count - 1;
}
}
return aggregate;
}
};
// this one terminates the template recursion over reduction dimensions
// The pointers are pointing to the input element.
template <class ElemType, C_size_t N, C_int M>
struct TensorArgOpReduce<ElemType, N, M, /*m=*/-1>
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m = -1
// the pointers are pointing to the right location(s) to take the operation over
static __device__ ReduceElemType Compute(FixedArray<ElemType*, N> pointers, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, M>& /*reducingOpDims*/, const FixedMatrix<C_int, N, M>& /*reducingStrides*/,
C_unsigned_int& count, C_unsigned_int& index)
{
count++;
return (ReduceElemType)*(pointers[0]);
}
};
// -----------------------------------------------------------------------
// function to compute one constituent of the value for a given output location
// (reduction is not done here, but by calling into here multiple times)
// -----------------------------------------------------------------------
template <class ElemType, C_size_t N, C_int M, C_int m>
struct TensorOpParallelReduce
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m >= 0
static __device__ ReduceElemType Compute(CUDA_LONG id, FixedArray<ElemType*, N> pointers, ElementWiseOperator op,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides,
FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// map id (location on grid) to index[k]
C_size_t stride = 1; // compute the stride. This seems expensive, but since we we only currently support M <= 2, this is just compile-time selection between 1 and reducingOpDims[0].
#pragma unroll
for (int i = 0; i < m; i++)
{
stride *= reducingOpDims[(C_size_t) i];
}
C_size_t index;
#ifndef USE_FAST_DIVMOD
index = id / stride; // this dimension. For m=0, the stride is 1 and hence the division will be removed at compile time.
// id = id % stride; // remaining dimensions inside this. For m=0 this value is ignored and hence not even computed.
id = id - stride*index; // remaining dimensions inside this. For m=0 this value is ignored and hence not even computed.
#else
if (m == 0)
{
index = id;
id = 0;
}
else
{
reducingOpDimDivmod[m].divmod(id, index, id);
}
#endif
// apply this index to the pointers
#pragma unroll
for (C_size_t i = 0; i < N - 1; i++)
{
pointers[i] += index * reducingStrides(i, (C_size_t) m); // now this dimension is taken care of
}
return TensorOpParallelReduce<ElemType, N, M, m - 1>::Compute(id, pointers, op, reducingOpDims, reducingStrides, reducingOpDimDivmod);
}
};
// this one terminates the template recursion over reduction dimensions
// The pointers are pointing to the input element.
template <class ElemType, C_size_t N, C_int M>
struct TensorOpParallelReduce<ElemType, N, M, /*m=*/-1>
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// this version for m = -1
// the pointers are pointing to the right location(s) to take the operation over
static __device__ ReduceElemType Compute(CUDA_LONG /*id*/, FixedArray<ElemType*, N> pointers, ElementWiseOperator op,
const FixedArray<C_unsigned_int, M>& /*reducingOpDims*/, const FixedMatrix<C_int, N, M>& /*reducingStrides*/,
FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
return TensorOps<ElemType>::Compute(pointers, op); // finally computing something!
}
};
// -----------------------------------------------------------------------
// perform loop over regular index k for N-nary operations (N counting the output)
// -----------------------------------------------------------------------
// The 'pointers' only refer to a single element, so we will bump them in-place to perform indexing.
template <class ElemType, C_size_t N, C_int M, C_int K, bool parallelReduce, C_int k>
struct TensorOpElement
{
// template-recursive version loops over indices
static __device__ void Compute(CUDA_LONG id, ElemType beta, FixedArray<ElemType*, N>& pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& regularOpStrides, const FixedMatrix<C_int, N, K>& regularStrides,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides,
CUDA_LONG reductionBegin, CUDA_LONG reductionChunkSize,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// map id (location on grid) to index[k]
#ifndef USE_FAST_DIVMOD
C_size_t stride = regularOpStrides[(C_size_t) k];
C_size_t index = id / stride; // this dimension
// id = id % stride; // remaining dimensions inside this
id = id - stride*index; // remaining dimensions inside this
#else
C_size_t index;
regularOpStrideDivmod[k].divmod(id, index, id);
#endif
// apply this index to the pointers
#pragma unroll
for (C_size_t i = 0; i < N; i++) {
pointers[i] += index * regularStrides(i, (C_size_t) k); // now this dimension is taken care of
}
// process the previous index
TensorOpElement<ElemType, N, M, K, parallelReduce, k - 1>::Compute(id, beta, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, reductionBegin, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
};
// specialization for k=0 where op stride is guaranteed to be 1
template <class ElemType, C_size_t N, C_int M, C_int K, bool parallelReduce>
struct TensorOpElement<ElemType, N, M, K, parallelReduce, /*k=*/0>
{
// template-recursive version loops over indices
static __device__ void Compute(CUDA_LONG id, ElemType beta, FixedArray<ElemType*, N>& pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& regularOpStrides, const FixedMatrix<C_int, N, K>& regularStrides,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides,
CUDA_LONG reductionBegin, CUDA_LONG reductionChunkSize,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// map id (location on grid) to index[k]
C_size_t index = id; // this dimension
// apply this index to the pointers
#pragma unroll
for (C_size_t i = 0; i < N; i++)
{
pointers[i] += index * regularStrides(i, 0); // now this dimension is taken care of
}
// process the previous index
TensorOpElement<ElemType, N, M, K, parallelReduce, -1>::Compute(/*id*/ 0, beta, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, reductionBegin, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
};
// specialization for k = -1 terminates the template recursion, and computes reductions in a for loop
template <class ElemType, C_size_t N, C_int M, C_int K>
struct TensorOpElement<ElemType, N, M, K, /*parallelReduce=*/false, /*k=*/-1>
{
typedef typename TypeSelector<ElemType>::comp_t comp_t;
// template-recursion-teminating version computes the actual value for this output location
// now the output pointers point to the right element (input pointers may still iterate for reduction)
static __device__ void Compute(CUDA_LONG /*id*/, ElemType beta, FixedArray<ElemType*, N>& pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& /*regularOpStrides*/, const FixedMatrix<C_int, N, K>& /*regularStrides*/,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides, CUDA_LONG /*reductionBegin*/, CUDA_LONG /*reductionChunkSize*/,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// compute the operation for this output coordinate
// This may still involve a reduction over inverse-broadcasting dimensions.
comp_t val = TensorOpReduce<ElemType, N, M, M - 1>::Compute(pointers, op, reductionOp, reducingOpDims, reducingStrides);
// scale
val *= (comp_t)alpha;
// combine with previous value in target matrix, then write it out
if (N < 4 || val != 0 || beta != 1) // (skip memory access if not needed) (N<4: skip this test)
{
auto* pout = pointers[pointers.size() - 1];
if (beta != 0) // (skip memory access if not needed, and allow for ignoring NaNs)
val += (comp_t)beta * (comp_t)*pout;
// save
*pout = val;
}
}
};
#undef ALLOW_ATOMIC_REDUCTION // undefine to disable use of atomicAdd() below, for testing it
// specialization for k = -1 terminates the template recursion, and computes reductions in parallel
template <class ElemType, C_size_t N, C_int M, C_int K>
struct TensorOpElement<ElemType, N, M, K, /*parallelReduce=*/true, /*k=*/-1>
{
// template-recursion-teminating version computes the actual value for this output location
// now the output pointers point to the right element (input pointers may still iterate for reduction)
static __device__ void Compute(CUDA_LONG /*id*/, ElemType beta, FixedArray<ElemType*, N>& pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& /*regularOpStrides*/, const FixedMatrix<C_int, N, K>& /*regularStrides*/,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides, CUDA_LONG reductionBegin, CUDA_LONG reductionChunkSize,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
CUDA_LONG reductionBlock = blockIdx.z; // reduction-block index --larger reductions are split into blocks
CUDA_LONG tid = threadIdx.x; // thread index
CUDA_LONG tids = blockDim.x; // out of how many threads --note: last block is partial
// determine our range --this is a single int mul, we can stomach it (we could alternatively pass in yet another parameter)
CUDA_LONG reductionDim = (CUDA_LONG) reducingOpDims[0];
for (C_size_t i = 1; i < reducingOpDims.size(); i++)
reductionDim *= reducingOpDims[i];
// determine the redId range that we operate on
// Each thread takes a stride tid + (multiples of tids) within this range.
reductionBegin += reductionChunkSize * reductionBlock;
CUDA_LONG reductionEnd = min(reductionBegin + reductionChunkSize, reductionDim);
// compute the operation for this input coordinate
ReduceElemType aggregate = AggregateNeutralValue<ReduceElemType>(reductionOp);
for (CUDA_LONG redId = reductionBegin + tid; redId < reductionEnd; redId += tids)
{
auto val = TensorOpParallelReduce<ElemType, N, M, M - 1>::Compute(redId, pointers, op, reducingOpDims, reducingStrides, reducingOpDimDivmod);
Aggregate<ReduceElemType, ElemType>(aggregate, val, reductionOp);
}
// reduce --cf https://docs.nvidia.com/cuda/samples/6_Advanced/reduction/doc/reduction.pdf
__shared__ ReduceElemType accumulators[GridDim::maxThreadsPerBlock /*tids == blockDim.x, as specified at launch*/];
accumulators[tid] = aggregate;
__syncthreads();
static_assert(GridDim::maxThreadsPerBlock <= 1024, "GridDim::maxThreadsPerBlock too large, need to add manually unrolled steps");
for (CUDA_LONG i = 512; i; i >>= 1)
{
if (tid < i && tid + i < tids)
Aggregate<ReduceElemType, ReduceElemType>(accumulators[tid], accumulators[tid + i], reductionOp);
if (0 + i < tids)
__syncthreads(); // sync if condition true for at least one thread
// TODO: use volatile* and then we can skip the __syncthreads() for the last 32 values. See Amit's allreduce() function implementation in MatrixQuantizer_kernel.cu.
}
// now set final value to output coordinate
if (tid == 0)
{
ReduceElemType val = accumulators[0];
// scale
val *= (ReduceElemType)alpha;
// combine with previous value in target matrix, then write it out
if (N < 4 || val != 0 || beta != 1) // (skip memory access if not needed) (N<4: skip this test)
{
auto* pout = pointers[pointers.size() - 1];
#ifdef ALLOW_ATOMIC_REDUCTION
CUDA_LONG reductionBlocks = gridDim.z; // number of reduction blocks. If >1 we need atomicAdd
if (reductionBlocks > 1) // multiple blocks: need to use atomicAdd()
{
// in this case, outer calling code must pass beta = 1
atomicAdd(pout, (ElemType)val);
}
else
#endif
{
if (beta != 0)
val += (ReduceElemType)beta * (ReduceElemType)*pout;
// save
*pout = val;
}
}
}
}
};
// -----------------------------------------------------------------------
// perform loop over regular index k for N-nary operations (N counting the output)
// keep track of the indices.
// -----------------------------------------------------------------------
// The 'pointers' only refer to a single element, so we will bump them in-place to perform indexing.
template <class ElemType, C_size_t N, C_int M, C_int K, C_int k>
struct TensorArgOpElement
{
// template-recursive version loops over indices
static __device__ void Compute(CUDA_LONG id, FixedArray<ElemType*, N>& pointers, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& regularOpStrides, const FixedMatrix<C_int, N, K>& regularStrides,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides,
CUDA_LONG reductionBegin, CUDA_LONG reductionChunkSize,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// map id (location on grid) to index[k]
#ifndef USE_FAST_DIVMOD
C_size_t stride = regularOpStrides[(C_size_t)k];
C_size_t index = id / stride; // this dimension
// id = id % stride; // remaining dimensions inside this
id = id - stride*index; // remaining dimensions inside this
#else
C_size_t index;
regularOpStrideDivmod[k].divmod(id, index, id);
#endif
// apply this index to the pointers
#pragma unroll
for (C_size_t i = 0; i < N; i++) {
pointers[i] += index * regularStrides(i, (C_size_t)k); // now this dimension is taken care of
}
// process the previous index
TensorArgOpElement<ElemType, N, M, K, k - 1>::Compute(id, pointers, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, reductionBegin, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
};
// specialization for k = -1 terminates the template recursion, and computes reductions in a for loop
template <class ElemType, C_size_t N, C_int M, C_int K>
struct TensorArgOpElement<ElemType, N, M, K, /*k=*/-1>
{
// template-recursion-teminating version computes the actual value for this output location
// now the output pointers point to the right element (input pointers may still iterate for reduction)
static __device__ void Compute(CUDA_LONG /*id*/, FixedArray<ElemType*, N>& pointers, ElementWiseOperator reductionOp,
const FixedArray<C_unsigned_int, K>& /*regularOpStrides*/, const FixedMatrix<C_int, N, K>& /*regularStrides*/,
const FixedArray<C_unsigned_int, M>& reducingOpDims, const FixedMatrix<C_int, N, M>& reducingStrides, CUDA_LONG /*reductionBegin*/, CUDA_LONG /*reductionChunkSize*/,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
// compute the operation for this output coordinate
// This may still involve a reduction over inverse-broadcasting dimensions.
C_unsigned_int count = 0;
C_unsigned_int index = 0;
ElemType val = TensorArgOpReduce<ElemType, N, M, M - 1>::Compute(pointers, reductionOp, reducingOpDims, reducingStrides, count, index);
// combine with previous value in target matrix, then write it out
if (N < 4 || val != 0) // (skip memory access if not needed) (N<4: skip this test)
{
auto* pout = pointers[pointers.size() - 1];
// save
*pout = (ElemType) index;
}
}
};
// -----------------------------------------------------------------------
// kernel and launch --no reduction
// -----------------------------------------------------------------------
// launch tensor op with CUDA
template <class ElemType, C_size_t N, C_int M, C_int K>
__global__ void _launchTensorOp(ElemType beta, FixedArray<ElemType*, N> pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
FixedArray<C_unsigned_int, K> regularOpStrides, FixedMatrix<C_int, N, K> regularStrides, CUDA_LONG numElements,
FixedArray<C_unsigned_int, M> reducingOpDims, FixedMatrix<C_int, N, M> reducingStrides,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
CUDA_LONG id = GridDim::GetLinearThreadId();
if (id < numElements) // note: there are no __syncthread() calls inside
TensorOpElement<ElemType, N, M, K, false, K - 1>::Compute(id, beta, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, 0, 0,
regularOpStrideDivmod, reducingOpDimDivmod);
}
template <class ElemType, C_size_t N, C_int M, C_int K>
__global__ void _launchTensorArgOp(FixedArray<ElemType*, N> pointers, ElementWiseOperator reductionOp,
FixedArray<C_unsigned_int, K> regularOpStrides, FixedMatrix<C_int, N, K> regularStrides, CUDA_LONG numElements,
FixedArray<C_unsigned_int, M> reducingOpDims, FixedMatrix<C_int, N, M> reducingStrides,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
CUDA_LONG id = GridDim::GetLinearThreadId();
if (id < numElements) // note: there are no __syncthread() calls inside
TensorArgOpElement<ElemType, N, M, K, K - 1>::Compute(id, pointers, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, 0, 0,
regularOpStrideDivmod, reducingOpDimDivmod);
}
template <class ElemType, C_size_t N, C_int K>
static void LaunchTensorOp(ElemType beta, array<ElemType*, N> pointerVector, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, N>& regularStrideVectors)
{
// copy all parameters to CUDA-compatible data structures
FixedArray<ElemType*, N> pointers(pointerVector);
SmallVector<C_size_t> regularOpStrideVector; // kernel needs the strides for converting thread index back to multi-dimensional tensor index
C_size_t numElements = 1;
// input divisors
SmallVector<fast_divmod> regularOpStrideDivmodVector;
for (C_size_t k = 0; k < regularOpDims.size(); k++)
{
regularOpStrideVector.push_back(numElements);
// create fast division objects
regularOpStrideDivmodVector.push_back(fast_divmod(numElements));
numElements *= (C_size_t) regularOpDims[k];
}
SmallVector<fast_divmod> reducingOpDimDivmodVector;
FixedArray<C_unsigned_int, K> regularOpStrides(regularOpStrideVector);
FixedMatrix<C_int, N, K> regularStrides(regularStrideVectors);
FixedArray<C_unsigned_int, /*M=*/0> reducingOpDims; // empty reduction dimensions
FixedMatrix<C_int, N, /*M=*/0> reducingStrides;
// reduced divisors
FixedArray<fast_divmod, K> regularOpStrideDivmod(regularOpStrideDivmodVector);
FixedArray<fast_divmod, /*M=*/0> reducingOpDimDivmod;
// launch the kernel
CUDA_LONG NN = (CUDA_LONG) numElements; // linear space identifying each individual input element
SyncGuard syncGuard;
GridDim grid(NN);
if ((reductionOp == ElementWiseOperator::opArgmax) ||
(reductionOp == ElementWiseOperator::opArgmin))
{
_launchTensorArgOp<ElemType, N, /*M=*/0, K> << <grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream >> > (pointers, reductionOp,
regularOpStrides, regularStrides, grid.m_N,
reducingOpDims, reducingStrides,
regularOpStrideDivmod, reducingOpDimDivmod);
}
else
{
_launchTensorOp<ElemType, N, /*M=*/0, K> << <grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream >> > (beta, pointers, alpha, op, (ElementWiseOperator)(-1) /* dummy reductionOp */, regularOpStrides, regularStrides,
grid.m_N, reducingOpDims, reducingStrides,
regularOpStrideDivmod, reducingOpDimDivmod);
}
}
// -----------------------------------------------------------------------
// kernel and launch --with reduction
// -----------------------------------------------------------------------
template <class ElemType, C_size_t N, C_int M, C_int K>
__global__ void _launchTensorOpWithReduction(ElemType beta, FixedArray<ElemType*, N> pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
FixedArray<C_unsigned_int, K> regularOpStrides, FixedMatrix<C_int, N, K> regularStrides, CUDA_LONG numElements,
FixedArray<C_unsigned_int, M> reducingOpDims, FixedMatrix<C_int, N, M> reducingStrides,
CUDA_LONG reductionBegin, CUDA_LONG reductionChunkSize,
FixedArray<fast_divmod, K> regularOpStrideDivmod, FixedArray<fast_divmod, M> reducingOpDimDivmod)
{
CUDA_LONG id = gridDim.x * blockIdx.y + blockIdx.x; // input dimensions are Y dimension of blocks in this case, so we can use thread dim for shared-memory/parallelization
#ifndef ALLOW_ATOMIC_REDUCTION
CUDA_LONG reductionBlock = blockIdx.z; // reduction-block index --larger reductions are split into blocks
pointers[pointers.size() - 1] += numElements * reductionBlock; // the output tensor is dense (no gaps); and there is one copy for each reduction block (those get further reduced into one later)
#endif
if (id < numElements) // note: we have __syncthread() calls but only entire blocks in sync, so this is OK
TensorOpElement<ElemType, N, M, K, true, K - 1>::Compute(id, beta, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, reducingOpDims, reducingStrides, reductionBegin, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
// helper function to provide a reduction buffer
template <class ElemType>
static shared_ptr<ElemType> AllocateReductionBuffer(size_t N)
{
ElemType* deviceBufferPtr;
CUDA_CALL(cudaMalloc((void**)&deviceBufferPtr, sizeof(ElemType) * N));
return shared_ptr<ElemType>(deviceBufferPtr, [](ElemType* deviceBufferPtr){ cudaFree((void*)deviceBufferPtr); });
}
template <class ElemType>
static shared_ptr<ElemType> GetReductionBuffer(size_t N)
{
bool dontCache = false; // (for debugging only)
if (t_stream != 0 || dontCache) // we cache for the NULL stream but don't bother for others, since we only ever use the NULL stream currently
return AllocateReductionBuffer<ElemType>(N);
static shared_ptr<ElemType> reductionBuffersCache[32]; // cache of objects --TODO: Do we have a #define the max somewhere? Then also use it in CPUMatrix.cu GetOnesTensor()
static size_t reductionBuffersCacheSize[_countof(reductionBuffersCache)] = { 0 };
let deviceId = GridDim::GetCurrentDeviceId();
if (deviceId >= _countof(reductionBuffersCache)) // index check w.r.t. our hard-coded dimensions
return AllocateReductionBuffer<ElemType>(N); // out of bounds: don't cache
static std::once_flag initializedFlag[_countof(reductionBuffersCache)];
std::call_once(initializedFlag[deviceId], [deviceId, N]
{
reductionBuffersCache[deviceId] = AllocateReductionBuffer<ElemType>(N);
reductionBuffersCacheSize[deviceId] = N;
});
if (N > reductionBuffersCacheSize[deviceId]) // buffer size check
LogicError("GetReductionBuffer: Must be called with the number of multiprocs, which may not change.");
return reductionBuffersCache[deviceId];
}
// All dimensions (N-ariness, number of input dimensions K and number of reduction dimensions M) are bound to template parameters now.
template <class ElemType, C_size_t N, C_int M, C_int K>
static void LaunchTensorOpWithReduction(ElemType beta, array<ElemType*, N> pointerVector, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, N>& regularStrideVectors,
const SmallVector<size_t>& reducingOpDimVector, const array<SmallVector<ptrdiff_t>, N>& reducingStrideVectors)
{
typedef typename TypeSelector<ElemType>::comp_t ReduceElemType;
// copy all parameters to CUDA-compatible data structures
FixedArray<ElemType*, N> pointers(pointerVector);
SmallVector<C_size_t> regularOpStrideVector; // kernel needs the strides for converting thread index back to multi-dimensional tensor index
C_size_t numElements = 1;
// input divisors
SmallVector<fast_divmod> regularOpStrideDivmodVector;
for (C_size_t k = 0; k < regularOpDims.size(); k++)
{
regularOpStrideVector.push_back(numElements); // stride for dense representation of our output elements (if they were flattened)
regularOpStrideDivmodVector.push_back(fast_divmod((unsigned int)numElements));
numElements *= (C_size_t) regularOpDims[k];
}
// output divisors
SmallVector<fast_divmod> reducingOpDimDivmodVector;
C_size_t stride = 1;
for (C_size_t k = 0; k < reducingOpDimVector.size(); ++k)
{
reducingOpDimDivmodVector.push_back(fast_divmod(stride));
stride *= (C_size_t)reducingOpDimVector[k];
}
FixedArray<C_unsigned_int, K> regularOpStrides(regularOpStrideVector);
FixedMatrix<C_int, N, K> regularStrides(regularStrideVectors);
FixedArray<C_unsigned_int, M> reducingOpDims(reducingOpDimVector);
FixedMatrix<C_int, N, M> reducingStrides(reducingStrideVectors);
// reduced divisors
FixedArray<fast_divmod, K> regularOpStrideDivmod(regularOpStrideDivmodVector);
FixedArray<fast_divmod, M> reducingOpDimDivmod(reducingOpDimDivmodVector);
// launch the kernel
CUDA_LONG NN = (CUDA_LONG) numElements; // linear space identifying each individual output element
SyncGuard syncGuard;
// do some optimization for reductions
// - example: 30 GPU procs, warp size 32 --> 960 GPU cores
// - NN elements must be computed, each involving a reduction over reductionDim elements
// Cases:
// - #output elements NN >= GPU cores --> use one proc per element, do reduction in inner loop
// E.g. if >=960 elements are computed, each gets its own GPU thread.
// - reduction dimension would benefit from multiple blocks --> multiple blocks work on a single output element
// E.g.
// - gradient of adding a bias: reducing to a bias, e.g. 512-dim
// - gradient of scalar multiplication: big elementwise product reduced to a scalar (big dot product, e.g. [1024 x 1024] = 1M elements)
// - softmax in seq-2-seq attention model: reduce over length of attention window (e.g. 20)
// - summation of criterion value: scalar reduction over a few hundred or thousand samples in the minibatch
C_size_t reductionDim = 1; // number of elements to reduce over
for (C_size_t k = 0; k < reducingOpDimVector.size(); k++)
reductionDim *= (C_size_t) reducingOpDimVector[k];
GridDim grid(NN);
let& props = GridDim::GetDeviceProps();
bool disableParallelReduction = false; // (for debugging)
// === arg based reduction, one thread per output element
if ((reductionOp == ElementWiseOperator::opArgmax) ||
(reductionOp == ElementWiseOperator::opArgmin))
{
_launchTensorArgOp<ElemType, N, M, K> << <grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream >> > (
pointers, reductionOp,
regularOpStrides, regularStrides, grid.m_N,
reducingOpDims, reducingStrides,
regularOpStrideDivmod, reducingOpDimDivmod);
}
// === simple case: NN large, one thread per output element
else if (reductionDim == 1 || // no reduction
grid.m_blocksPerGrid >= props.multiProcessorCount || // enough output elements to fill all multiprocs
reductionDim * numElements <= 2 * props.warpSize || // trivial operation not worth the trouble (2* because the more complex one also needs 2 kernel launches)
disableParallelReduction || // (for debugging)
reductionDim * numElements <= props.multiProcessorCount) // recursive call from reduction below
{
// we got enough elements to generate: do one element per thread, and reduction inside
_launchTensorOp<ElemType, N, M, K><<<grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream>>>(
beta, pointers, alpha, op, reductionOp,
regularOpStrides, regularStrides, grid.m_N,
reducingOpDims, reducingStrides,
regularOpStrideDivmod, reducingOpDimDivmod);
}
// === optimization: simple case would not use all multiprocs
else
{
// m_blocksPerGrid can be thought of NN / 512, with appropriate rounding
// we are reducing and are underutilizing the multiprocs we have: get more parallelism by doing reduction in parallel
// If we get here, then
// - the total number of outputs to produce is < #multiprocs * warpSize, e.g. < 960
// - each output has at least two inputs, but possibly millions
// Examples:
// (a1) NN=900
// - each multiproc processes multiple elements concurrently, each reducing over its inputs inside
// - use one block per output element
// (a2) NN=30
// - same as (a1) except 30 multiprocs run only a single block each
// (a3) NN=16
// - same as (a1) except only 16 multiproc run one block
// (b1) NN=15
// - 2 blocks work together on a single output element
// (b2) NN=1 (NN < #multiprocs, e.g. NN < 30)
// - multiple blocks work together on a single output element
// - only this case requires memory, and only K * NN
// where K = blocks that work together,
// both K and NN < #multiprocs,
// and K * NN = on the order of NN, but generally a bit larger due to rounding.
// By how much do we underutilize?
// We increase #blocks by that factor by breaking reduction into that many chunks.
int numReductionChunks = std::max<int>(props.multiProcessorCount / NN, 1); // only >1 for NN < multiProcessorCount
// distribute NN over block X and Y
int blockXOverBy = CeilDiv(NN, props.maxGridSize[0]);
int numBlocksX = CeilDiv(NN, blockXOverBy);
int numBlocksY = CeilDiv(NN, numBlocksX);
// while block Z is for multiple blocks working together on a single output element
int numBlocksZ = numReductionChunks;
// Block dim is now:
// - X, Y: such that X*Y covers NN
// - Z: reduction chunks
// reduction goes into thread dim X
int reductionChunkSize = CeilDiv(reductionDim, numReductionChunks);
int numThreadsX = std::min<int>(reductionChunkSize, GridDim::maxThreadsPerBlock); // any that's over will be done by looping inside the kernel
// --- cases (a1) and (a2)
// This involves no reduction across blocks.
if (numReductionChunks == 1)
{
_launchTensorOpWithReduction<ElemType, N, M, K><<<dim3(numBlocksX, numBlocksY, numBlocksZ), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream>>>(
beta, pointers, alpha, op, reductionOp,
regularOpStrides, regularStrides, NN,
reducingOpDims, reducingStrides, /*reductionBegin*/ 0, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
// --- case (b)
// Reduction across blocks. This is the difficult one.
#ifndef ALLOW_ATOMIC_REDUCTION // temporarily disabled to ensure it is not causing the non-reproducability
else
{
// we get here if NN <= #multiprocs
assert(NN <= props.multiProcessorCount && numBlocksX == NN && numBlocksY == 1);
// dims are:
// - numBlocksZ = numReductionChunks = how many multiprocs work together to produce one output element
// - numBlocksX = NN = number of output elements
// - numThreadsX = reductionChunkSize clipped to 512; reductionChunkSize > 512 is handled by an inner for loop inside of the kernel
// we need memory for block outputs of dimension [numBlocksX x numBlocksZ]
// - total elements = NN * Floor(#multiprocs / NN) = <= #multiprocs
let reductionBufferSize = props.multiProcessorCount;
assert(reductionBufferSize >= NN * numBlocksZ);
shared_ptr<ElemType> reductionBuffer = GetReductionBuffer<ElemType>(reductionBufferSize);
// 'pointers', 'regularOpStrides', and 'regularStrides' are set up to point to the target memory.
// We need to reroute them to point to our reductionBuffer.
// - pointer[N-1] -> replace by reductionBuffer
// - regularStrides -> replace [N-1] by regularOpStrides which already represent the NN elements for a dense memory layout
// - beta -> 0 since we write into temp memory
// - kernel must use block.z as second index into the output buffer; add (block.z * NN) to the pointer
FixedArray<ElemType*, N> pointers1 = pointers;
pointers1[N - 1] = reductionBuffer.get();
auto regularStrideVectors1 = regularStrideVectors;
for (size_t k = 0; k < regularOpStrides.size(); k++)
regularStrideVectors1[N - 1][k] = (ptrdiff_t)regularOpStrideVector[k];
FixedMatrix<C_int, N, K> regularStrides1(regularStrideVectors1);
ElemType beta1 = 0;
ElemType alpha1 = 1;
_launchTensorOpWithReduction<ElemType, N, M, K> << <dim3(numBlocksX, numBlocksY, numBlocksZ), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream >> >(
beta1, pointers1, alpha1, op, reductionOp,
regularOpStrides, regularStrides1, NN,
reducingOpDims, reducingStrides, /*reductionBegin*/0, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
#if 1
// now reduce and redistribute
// Create a new tensor task, and execute it recursively:
// - input = reductionBuffer
// - output = true output
// - op dims/strides = output elements
// - reduce dims/strides = numBlocksZ
// - op = opCopy
array<ElemType*, 2> pointerVector2{ reductionBuffer.get(), pointerVector[N - 1] };
const array<SmallVector<ptrdiff_t>, 2> regularStrideVectors2{ regularStrideVectors1[N - 1], regularStrideVectors[N - 1] };
const array<SmallVector<ptrdiff_t>, 2> reducingStrideVectors2{ SmallVector<ptrdiff_t>{ NN }, SmallVector<ptrdiff_t>{ 0 } };
const SmallVector<size_t> reducingOpDimVector2{ (size_t)numReductionChunks };
LaunchTensorOpWithReduction<ElemType, /*N=*/2, /*M=*/1, K>(
beta, pointerVector2, alpha, ElementWiseOperator::opCopy, reductionOp,
regularOpDims, regularStrideVectors2,
reducingOpDimVector2, reducingStrideVectors2);
// (note: ^^this will have a nested syncGuard, which is fine)
#else
_launchTensorOp<ElemType, N, M, K><<<grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream>>>(
beta, pointers, alpha, op, reductionOp,
regularOpStrides, regularStrides, grid.m_N,
reducingOpDims, reducingStrides);
//for (size_t z = 0; z < numBlocksZ; z++)
// _launchTensorOpWithReduction<ElemType, N, M, K><<<dim3(numBlocksX, numBlocksY, 1), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream>>>(z == 0 ? beta : 1, pointers, alpha, op,
// regularOpStrides, regularStrides, NN,
// reducingOpDims, reducingStrides, reductionChunkSize * z, reductionChunkSize);
vector<ElemType> peekPartial(NN * numBlocksZ, -42);
vector<ElemType> peekFinal(NN, -42);
CUDA_CALL(cudaMemcpy(peekPartial.data(), reductionBuffer, sizeof(ElemType) * peekPartial.size(), cudaMemcpyDeviceToHost));
CUDA_CALL(cudaMemcpy(peekFinal.data(), pointers[pointers.size()-1], sizeof(ElemType) * peekFinal.size(), cudaMemcpyDeviceToHost));
double s1 = 0, s2 = 0;
for (auto v : peekPartial)
s1 += v;
for (auto v : peekFinal)
s2 += v;
sin(1.0);
#endif
}
#else
else if (beta == 1)
{
// no need to pre-scale; just add (common for gradients)
_launchTensorOpWithReduction<ElemType, N, M, K><<<dim3(numBlocksX, numBlocksY, numBlocksZ), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream>>>(beta, pointers, alpha, op, reductionOp, regularOpStrides,
regularStrides, NN, reducingOpDims, reducingStrides, 0, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
return;
}
else
{
// We need more than one chunk, we will use atomicAdd().
// First reset/pre-multiply input; then do the remaining chunks using atomicAdd().
_launchTensorOpWithReduction<ElemType, N, M, K><<<dim3(numBlocksX, numBlocksY, 1), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream>>>(beta, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, NN, reducingOpDims, reducingStrides, 0, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
// We will leave it like this for a while, but eventually need to revisit using temporary memory.
_launchTensorOpWithReduction<ElemType, N, M, K><<<dim3(numBlocksX, numBlocksY, numBlocksZ - 1), numThreadsX, numThreadsX * sizeof(ReduceElemType), t_stream>>>(/*beta=*/1, pointers, alpha, op, reductionOp, regularOpStrides, regularStrides, NN, reducingOpDims, reducingStrides, reductionChunkSize, reductionChunkSize,
regularOpStrideDivmod, reducingOpDimDivmod);
}
#endif
}
}
// -----------------------------------------------------------------------
// kernel and launch --linear unary
// -----------------------------------------------------------------------
// for linear unary ops, we need to define a functor for every function for use as a template parameter (lambda syntax doesn't work in CUDA 7)
#define DefineUnaryTensorFunctor(oper) \
struct Functor##oper \
{ \
template <class ElemType> \
static __device__ ElemType f(ElemType a) \
{ \
return Op##oper(a); \
} \
};
ForAllUnaryOps(DefineUnaryTensorFunctor);
// the top-level kernel for linear unary ops
// Note: If we have a beta, we have 2 memory accesses, so this optimization may no longer be needed as we are memory-bound.
template <class ElemType, class FN>
__global__ void _launchUnaryTensorOp(ElemType beta, const ElemType* pa, ElemType* pb, ElemType alpha, CUDA_LONG numElements)
{
typedef typename TypeSelector<ElemType>::comp_t comp_t;
CUDA_LONG id = GridDim::GetLinearThreadId();
if (id >= numElements)
return;
comp_t a = pa[id];
comp_t val = FN::f(a);
val *= (comp_t)alpha;
if (beta != 0)
val += (comp_t)beta * (comp_t)pb[id];
pb[id] = val;
}
// version without beta and alpha
template <class ElemType, class FN>
__global__ void _launchUnaryTensorOp(const ElemType* pa, ElemType* pb, CUDA_LONG numElements)
{
typedef typename TypeSelector<ElemType>::comp_t comp_t;
CUDA_LONG id = GridDim::GetLinearThreadId();
if (id >= numElements)
return;
comp_t a = pa[id];
comp_t val = FN::f(a);
pb[id] = val;
}
// special case of linear unary operation
template <class ElemType>
void LaunchUnaryTensorOp(ElemType beta, const ElemType* pa, ElemType* pb, ElemType alpha, ElementWiseOperator op, size_t regularOpDim)
{
CUDA_LONG NN = (CUDA_LONG) regularOpDim;
#define CaseLaunchUnaryTensorOp(oper) \
case ElementWiseOperator::op##oper: \
if (beta == 0 && alpha == 1) \
_launchUnaryTensorOp<ElemType, Functor##oper><<<grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream>>>(pa, pb, NN); \
else \
_launchUnaryTensorOp<ElemType, Functor##oper><<<grid.m_blocksPerGrid, grid.m_threadsPerBlock, 0, t_stream>>>(beta, pa, pb, alpha, NN);\
break;
SyncGuard syncGuard;
GridDim grid(NN);
switch (op)
{
ForAllUnaryOps(CaseLaunchUnaryTensorOp);
default:
LogicError("LaunchTensorOp1: Unknown op code %d.", (int) op);
}
}
// -----------------------------------------------------------------------
// map runtime parameters N to template parameters
// -----------------------------------------------------------------------
// tensor operation with k+1 dimensions (-1 means scalar)
template <class ElemType, C_size_t N, C_int K>
static void TensorOpWithRegularLoop(ElemType beta, const array<ElemType*, N>& pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, N>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, N>& reducingStrides)
{
size_t dims = reducingOpDims.size();
switch (dims)
{
case 2:
return LaunchTensorOpWithReduction<ElemType, N, 2, K>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 1:
return LaunchTensorOpWithReduction<ElemType, N, 1, K>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 0:
return LaunchTensorOp<ElemType, N, K>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides);
default:
LogicError("TensorOp: %d non-flattened reduction dimensions are not supported.", (C_int) dims);
}
}
// tensor operation, generalized in number of arguments
// This function now expands into different k. It also eliminates the offsets by adding them to the pointers.
template <class ElemType, C_size_t N>
void TensorOpN(ElemType beta, array<ElemType*, N> pointers, ElemType alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, N>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, N>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, N>& reducingStrides)
{
for (C_size_t i = 0; i < N; i++) // N = a small constant, this will be unrolled
pointers[i] += offsets[i];
size_t dims = regularOpDims.size();
switch (dims)
{
// N.B. consider code size impact when adding more cases.
case 5:
return TensorOpWithRegularLoop<ElemType, N, 5>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 4:
return TensorOpWithRegularLoop<ElemType, N, 4>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 3:
return TensorOpWithRegularLoop<ElemType, N, 3>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 2:
return TensorOpWithRegularLoop<ElemType, N, 2>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 1:
return TensorOpWithRegularLoop<ElemType, N, 1>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
case 0:
return TensorOpWithRegularLoop<ElemType, N, 0>(beta, pointers, alpha, op, reductionOp, regularOpDims, regularStrides, reducingOpDims, reducingStrides);
default:
LogicError("TensorOp: %d non-flattened input dimensions are not supported.", (C_int) dims);
}
}
//------------------------------------------------------------------------
// explicit instantiations--these are being called from GPUMatrix.cu
//------------------------------------------------------------------------
template void TensorOpN<float, 2>(float beta, array<float*, 2> pointers, float alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 2>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 2>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 2>& reducingStrides);
template void TensorOpN<float, 3>(float beta, array<float*, 3> pointers, float alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 3>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 3>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 3>& reducingStrides);
template void TensorOpN<float, 4>(float beta, array<float*, 4> pointers, float alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 4>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 4>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 4>& reducingStrides);
template void TensorOpN<double, 2>(double beta, array<double*, 2> pointers, double alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 2>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 2>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 2>& reducingStrides);
template void TensorOpN<double, 3>(double beta, array<double*, 3> pointers, double alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 3>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 3>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 3>& reducingStrides);
template void TensorOpN<double, 4>(double beta, array<double*, 4> pointers, double alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 4>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 4>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 4>& reducingStrides);
template void TensorOpN<half, 2>(half beta, array<half*, 2> pointers, half alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 2>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 2>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 2>& reducingStrides);
template void TensorOpN<half, 3>(half beta, array<half*, 3> pointers, half alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 3>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 3>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 3>& reducingStrides);
template void TensorOpN<half, 4>(half beta, array<half*, 4> pointers, half alpha, ElementWiseOperator op, ElementWiseOperator reductionOp,
const array<size_t, 4>& offsets,
const SmallVector<size_t>& regularOpDims, const array<SmallVector<ptrdiff_t>, 4>& regularStrides,
const SmallVector<size_t>& reducingOpDims, const array<SmallVector<ptrdiff_t>, 4>& reducingStrides);
template void LaunchUnaryTensorOp(float beta, const float* pa, float* pb, float alpha, ElementWiseOperator op, size_t regularOpDim);
template void LaunchUnaryTensorOp(double beta, const double* pa, double* pb, double alpha, ElementWiseOperator op, size_t regularOpDim);
template void LaunchUnaryTensorOp(half beta, const half* pa, half* pb, half alpha, ElementWiseOperator op, size_t regularOpDim);
}}}
#endif // CPUONLY