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CuFFTPlanCache.h
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CuFFTPlanCache.h
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#include <ATen/Config.h>
#include <ATen/core/DimVector.h>
#include <ATen/cuda/CUDAContext.h>
#include <ATen/native/cuda/CuFFTUtils.h>
#include <ATen/native/utils/ParamsHash.h>
#include <c10/util/accumulate.h>
#include <c10/util/irange.h>
#include <cufft.h>
#include <cufftXt.h>
#include <limits>
#include <list>
#include <sstream>
#include <stdexcept>
#include <string>
#include <unordered_map>
namespace at { namespace native { namespace detail {
// Enum representing the FFT type
enum class CuFFTTransformType : int8_t {
C2C, // Complex-to-complex
R2C, // Real-to-complex
C2R, // Complex-to-real
};
// This struct is used to let us easily compute hashes of the
// parameters.
// It will be the **key** to the plan cache.
struct CuFFTParams
{
int64_t signal_ndim_; // between 1 and max_rank, i.e., 1 <= signal_ndim <= 3
// These include additional batch dimension as well.
int64_t sizes_[max_rank + 1];
int64_t input_strides_[max_rank + 1];
int64_t output_strides_[max_rank + 1];
CuFFTTransformType fft_type_;
ScalarType value_type_;
CuFFTParams() = default;
CuFFTParams(IntArrayRef in_strides, IntArrayRef out_strides,
IntArrayRef signal_sizes, CuFFTTransformType fft_type, ScalarType value_type) {
// Padding bits must be zeroed for hashing
memset(this, 0, sizeof(*this));
signal_ndim_ = signal_sizes.size() - 1;
fft_type_ = fft_type;
value_type_ = value_type;
TORCH_INTERNAL_ASSERT(in_strides.size() == signal_sizes.size());
TORCH_INTERNAL_ASSERT(out_strides.size() == signal_sizes.size());
TORCH_INTERNAL_ASSERT(1 <= signal_ndim_ && signal_ndim_ <= max_rank);
std::copy(signal_sizes.cbegin(), signal_sizes.cend(), sizes_);
std::copy(in_strides.cbegin(), in_strides.cend(), input_strides_);
std::copy(out_strides.cbegin(), out_strides.cend(), output_strides_);
}
};
static_assert(std::is_trivial<CuFFTParams>::value, "");
// Returns true if the transform type has complex input
inline bool cufft_complex_input(CuFFTTransformType type) {
switch (type) {
case CuFFTTransformType::C2C:
case CuFFTTransformType::C2R:
return true;
case CuFFTTransformType::R2C:
return false;
}
TORCH_INTERNAL_ASSERT(false);
}
// Returns true if the transform type has complex output
inline bool cufft_complex_output(CuFFTTransformType type) {
switch (type) {
case CuFFTTransformType::C2C:
case CuFFTTransformType::R2C:
return true;
case CuFFTTransformType::C2R:
return false;
}
TORCH_INTERNAL_ASSERT(false);
}
// Create transform type enum from bools representing if input and output are complex
inline CuFFTTransformType GetCuFFTTransformType(bool complex_input, bool complex_output) {
if (complex_input && complex_output) {
return CuFFTTransformType::C2C;
} else if (complex_input && !complex_output) {
return CuFFTTransformType::C2R;
} else if (!complex_input && complex_output) {
return CuFFTTransformType::R2C;
}
TORCH_INTERNAL_ASSERT(false, "Real to real FFTs are not supported");
}
class CuFFTHandle {
::cufftHandle handle_;
public:
CuFFTHandle() {
CUFFT_CHECK(cufftCreate(&handle_));
}
::cufftHandle & get() { return handle_; }
const ::cufftHandle & get() const { return handle_; }
~CuFFTHandle() {
// Not using fftDestroy() for rocFFT to work around double freeing of handles
#if !defined(USE_ROCM)
cufftDestroy(handle_);
#endif
}
};
__forceinline__
static bool is_pow_of_two(int64_t x) {
return (x & (x - 1)) == 0;
}
#if defined(USE_ROCM)
using cufft_size_type = int;
#else
using cufft_size_type = long long int;
#endif
using CuFFTDimVector = c10::SmallVector<cufft_size_type, at::kDimVectorStaticSize>;
// Struct representing a tensor in CuFFT's data layout for planning transforms
// See NOTE [ cuFFT Embedded Strides ].
struct CuFFTDataLayout {
CuFFTDimVector embed;
cufft_size_type stride, dist;
bool must_clone, simple;
};
// Returns a cufft embedding for a contiguous signal of the given size.
// e.g. if the input is cloned, this will be the resulting data layout
// See NOTE [ cuFFT Embedded Strides ].
inline CuFFTDataLayout cufft_simple_embed(IntArrayRef sizes, bool onesided) {
CuFFTDataLayout layout;
layout.simple = true;
layout.must_clone = false;
layout.embed.assign(sizes.cbegin() + 1, sizes.cend());
if (onesided) {
layout.embed.back() = sizes.back() / 2 + 1;
}
layout.stride = 1;
layout.dist = 1;
for (const auto& len : layout.embed) {
layout.dist *= len;
}
return layout;
}
// Convert strides to a CuFFT embedded representation.
// If strides cannot be embedded, returns a simple layout and sets must_clone flag
// See NOTE [ cuFFT Embedded Strides ].
inline CuFFTDataLayout as_cufft_embed(IntArrayRef strides, IntArrayRef sizes, bool onesided) {
const auto signal_ndim = strides.size() - 1;
CuFFTDataLayout layout;
auto last_stride = strides[signal_ndim];
layout.must_clone = (last_stride <= 0);
const auto last_dim_size = onesided ?
sizes[signal_ndim] / 2 + 1 : sizes[signal_ndim];
const auto signal_numel = c10::multiply_integers(sizes.slice(1, sizes.size() - 2)) * last_dim_size;
// Zero stides are not allowed, even if the batch size is one.
// If that happens just set a dummy case
if (sizes[0] == 1) {
layout.dist = signal_numel;
} else if (strides[0] == 0) {
layout.must_clone = true;
} else {
layout.dist = strides[0];
}
// Calculate the embedding shape, or set must_clone if the strides cannot be embedded
layout.embed.resize(signal_ndim);
for (auto i = signal_ndim - 1; !layout.must_clone && i > 0; i--) {
auto stride = strides[i];
if (sizes[i] == 1) {
layout.embed[i] = 1;
} else if (stride > 0 && stride % last_stride == 0) {
layout.embed[i] = stride / last_stride;
last_stride = stride;
} else {
layout.must_clone = true;
}
}
if (layout.must_clone) {
// If the input needs to be cloned, assume it will be contiguous
layout = cufft_simple_embed(sizes, onesided);
layout.must_clone = true;
} else {
layout.embed[0] = sizes[1];
layout.stride = strides[signal_ndim];
// Determine if layout represents a simple embedding (contiguous data)
layout.simple = [&] {
for (const auto i : c10::irange(1, signal_ndim - 1)) {
if (layout.embed[i] != sizes[i + 1]) {
return false;
}
}
return (layout.stride == 1 && layout.dist == signal_numel &&
layout.embed.back() == last_dim_size);
}();
}
return layout;
}
// This class contains all the information needed to execute a cuFFT plan:
// 1. the plan
// 2. whether to clone input before executing the plan
// 3. the workspace size needed
//
// This class will be the **value** in the plan cache.
// It **owns** the raw plan via a unique_ptr.
class CuFFTConfig {
public:
// Only move semantics is enought for this class. Although we already use
// unique_ptr for the plan, still remove copy constructor and assignment op so
// we don't accidentally copy and take perf hit.
CuFFTConfig(const CuFFTConfig&) = delete;
CuFFTConfig& operator=(CuFFTConfig const&) = delete;
explicit CuFFTConfig(const CuFFTParams& params):
CuFFTConfig(
IntArrayRef(params.input_strides_, params.signal_ndim_ + 1),
IntArrayRef(params.output_strides_, params.signal_ndim_ + 1),
IntArrayRef(params.sizes_, params.signal_ndim_ + 1),
params.fft_type_,
params.value_type_) {}
// For complex types, strides are in units of 2 * element_size(dtype)
// sizes are for the full signal, including batch size and always two-sided
CuFFTConfig(IntArrayRef in_strides, IntArrayRef out_strides,
IntArrayRef sizes, CuFFTTransformType fft_type, ScalarType dtype):
fft_type_(fft_type), value_type_(dtype) {
// signal sizes (excluding batch dim)
CuFFTDimVector signal_sizes(sizes.begin() + 1, sizes.end());
// input batch size
const int64_t batch = sizes[0];
const int64_t signal_ndim = sizes.size() - 1;
// Since cuFFT has limited non-unit stride support and various constraints, we
// use a flag to keep track throughout this function to see if we need to
// input = input.clone();
#if defined(USE_ROCM)
// clone input to avoid issues with hipfft clobering the input and failing tests
clone_input = true;
#else
clone_input = false;
#endif
// For half, base strides on the real part of real-to-complex and
// complex-to-real transforms are not supported. Since our output is always
// contiguous, only need to check real-to-complex case.
if (dtype == ScalarType::Half) {
// cuFFT on half requires compute capability of at least SM_53
auto dev_prop = at::cuda::getCurrentDeviceProperties();
TORCH_CHECK(dev_prop->major >= 5 && !(dev_prop->major == 5 && dev_prop->minor < 3),
"cuFFT doesn't support signals of half type with compute "
"capability less than SM_53, but the device containing input half "
"tensor only has SM_", dev_prop->major, dev_prop->minor);
for (const auto i : c10::irange(signal_ndim)) {
TORCH_CHECK(is_pow_of_two(sizes[i + 1]),
"cuFFT only supports dimensions whose sizes are powers of two when"
" computing in half precision, but got a signal size of",
sizes.slice(1));
}
clone_input |= in_strides.back() != 1;
}
CuFFTDataLayout in_layout;
if (clone_input) {
in_layout = cufft_simple_embed(sizes, fft_type == CuFFTTransformType::C2R);
} else {
in_layout = as_cufft_embed(in_strides, sizes, fft_type == CuFFTTransformType::C2R);
}
auto out_layout = as_cufft_embed(out_strides, sizes, fft_type == CuFFTTransformType::R2C);
TORCH_INTERNAL_ASSERT(!out_layout.must_clone, "Out strides cannot be represented as CuFFT embedding");
clone_input |= in_layout.must_clone;
// Check if we can take advantage of simple data layout.
//
// See NOTE [ cuFFT Embedded Strides ] in native/cuda/SpectralOps.cu.
const bool simple_layout = in_layout.simple && out_layout.simple;
#if defined(USE_ROCM)
hipfftType exec_type = [&]{
if (dtype == kFloat) {
switch (fft_type) {
case CuFFTTransformType::C2C: return HIPFFT_C2C;
case CuFFTTransformType::R2C: return HIPFFT_R2C;
case CuFFTTransformType::C2R: return HIPFFT_C2R;
}
} else if (dtype == kDouble) {
switch (fft_type) {
case CuFFTTransformType::C2C: return HIPFFT_Z2Z;
case CuFFTTransformType::R2C: return HIPFFT_D2Z;
case CuFFTTransformType::C2R: return HIPFFT_Z2D;
}
}
TORCH_CHECK(false, "hipFFT doesn't support transforms of type: ", dtype);
}();
#else
cudaDataType itype, otype, exec_type;
const auto complex_input = cufft_complex_input(fft_type);
const auto complex_output = cufft_complex_output(fft_type);
if (dtype == ScalarType::Float) {
itype = complex_input ? CUDA_C_32F : CUDA_R_32F;
otype = complex_output ? CUDA_C_32F : CUDA_R_32F;
exec_type = CUDA_C_32F;
} else if (dtype == ScalarType::Double) {
itype = complex_input ? CUDA_C_64F : CUDA_R_64F;
otype = complex_output ? CUDA_C_64F : CUDA_R_64F;
exec_type = CUDA_C_64F;
} else if (dtype == ScalarType::Half) {
itype = complex_input ? CUDA_C_16F : CUDA_R_16F;
otype = complex_output ? CUDA_C_16F : CUDA_R_16F;
exec_type = CUDA_C_16F;
} else {
TORCH_CHECK(false, "cuFFT doesn't support tensor of type: ", dtype);
}
#endif
// disable auto allocation of workspace to use THC allocator
CUFFT_CHECK(cufftSetAutoAllocation(plan(), /* autoAllocate */ 0));
size_t ws_size_t;
// make plan
if (simple_layout) {
// If with unit-stride, we tell cuFFT by setting inembed == onembed == NULL.
// In such case, cuFFT ignores istride, ostride, idist, and odist
// by assuming istride = ostride = 1.
//
// See NOTE [ cuFFT Embedded Strides ] in native/cuda/SpectralOps.cu.
#if defined(USE_ROCM)
CUFFT_CHECK(hipfftMakePlanMany(plan(), signal_ndim, signal_sizes.data(),
/* inembed */ nullptr, /* base_istride */ 1, /* idist */ 1,
/* onembed */ nullptr, /* base_ostride */ 1, /* odist */ 1,
exec_type, batch, &ws_size_t));
#else
CUFFT_CHECK(cufftXtMakePlanMany(plan(), signal_ndim, signal_sizes.data(),
/* inembed */ nullptr, /* base_istride */ 1, /* idist */ 1, itype,
/* onembed */ nullptr, /* base_ostride */ 1, /* odist */ 1, otype,
batch, &ws_size_t, exec_type));
#endif
} else {
#if defined(USE_ROCM)
CUFFT_CHECK(hipfftMakePlanMany(plan(), signal_ndim, signal_sizes.data(),
in_layout.embed.data(), in_layout.stride, in_layout.dist,
out_layout.embed.data(), out_layout.stride, out_layout.dist,
exec_type, batch, &ws_size_t));
#else
CUFFT_CHECK(cufftXtMakePlanMany(plan(), signal_ndim, signal_sizes.data(),
in_layout.embed.data(), in_layout.stride, in_layout.dist, itype,
out_layout.embed.data(), out_layout.stride, out_layout.dist, otype,
batch, &ws_size_t, exec_type));
#endif
}
ws_size = static_cast<int64_t>(ws_size_t);
}
const cufftHandle &plan() const { return plan_ptr.get(); }
CuFFTTransformType transform_type() const { return fft_type_; }
ScalarType data_type() const { return value_type_; }
bool should_clone_input() const { return clone_input; }
int64_t workspace_size() const { return ws_size; }
private:
CuFFTHandle plan_ptr;
bool clone_input;
int64_t ws_size;
CuFFTTransformType fft_type_;
ScalarType value_type_;
};
#if defined(USE_ROCM)
// Note that the max plan number for CUDA version < 10 has to be 1023
// due to a bug that fails on the 1024th plan
constexpr int64_t CUFFT_MAX_PLAN_NUM = 1023;
constexpr int64_t CUFFT_DEFAULT_CACHE_SIZE = CUFFT_MAX_PLAN_NUM;
#else
constexpr int64_t CUFFT_MAX_PLAN_NUM = std::numeric_limits<int64_t>::max();
// The default max cache size chosen for CUDA version > 10 is arbitrary.
// This number puts a limit on how big of a plan cache should we maintain by
// default. Users can always configure it via cufft_set_plan_cache_max_size.
constexpr int64_t CUFFT_DEFAULT_CACHE_SIZE = 4096;
#endif
static_assert(0 <= CUFFT_MAX_PLAN_NUM && CUFFT_MAX_PLAN_NUM <= std::numeric_limits<int64_t>::max(),
"CUFFT_MAX_PLAN_NUM not in size_t range");
static_assert(CUFFT_DEFAULT_CACHE_SIZE >= 0 && CUFFT_DEFAULT_CACHE_SIZE <= CUFFT_MAX_PLAN_NUM,
"CUFFT_DEFAULT_CACHE_SIZE not in [0, CUFFT_MAX_PLAN_NUM] range");
// This cache assumes that the mapping from key to value never changes.
// This is **NOT** thread-safe. Please use a mutex when using it **AND** the
// value returned from try_emplace_value.
// The contract of using this cache is that try_emplace_value should only be
// used when the max_size is positive.
class CuFFTParamsLRUCache {
public:
using kv_t = typename std::pair<CuFFTParams, CuFFTConfig>;
using map_t = typename std::unordered_map<std::reference_wrapper<CuFFTParams>,
typename std::list<kv_t>::iterator,
ParamsHash<CuFFTParams>,
ParamsEqual<CuFFTParams>>;
using map_kkv_iter_t = typename map_t::iterator;
CuFFTParamsLRUCache() : CuFFTParamsLRUCache(CUFFT_DEFAULT_CACHE_SIZE) {}
CuFFTParamsLRUCache(int64_t max_size) {
_set_max_size(max_size);
}
CuFFTParamsLRUCache(CuFFTParamsLRUCache&& other) noexcept :
_usage_list(std::move(other._usage_list)),
_cache_map(std::move(other._cache_map)),
_max_size(other._max_size) {}
CuFFTParamsLRUCache& operator=(CuFFTParamsLRUCache&& other) noexcept {
_usage_list = std::move(other._usage_list);
_cache_map = std::move(other._cache_map);
_max_size = other._max_size;
return *this;
}
// If key is in this cache, return the cached config. Otherwise, emplace the
// config in this cache and return it.
// Return const reference because CuFFTConfig shouldn't be tampered with once
// created.
const CuFFTConfig &lookup(CuFFTParams params) {
AT_ASSERT(_max_size > 0);
map_kkv_iter_t map_it = _cache_map.find(params);
// Hit, put to list front
if (map_it != _cache_map.end()) {
_usage_list.splice(_usage_list.begin(), _usage_list, map_it->second);
return map_it->second->second;
}
// Miss
// remove if needed
if (_usage_list.size() >= _max_size) {
auto last = _usage_list.end();
last--;
_cache_map.erase(last->first);
_usage_list.pop_back();
}
// construct new plan at list front, then insert into _cache_map
_usage_list.emplace_front(std::piecewise_construct,
std::forward_as_tuple(params),
std::forward_as_tuple(params));
auto kv_it = _usage_list.begin();
_cache_map.emplace(std::piecewise_construct,
std::forward_as_tuple(kv_it->first),
std::forward_as_tuple(kv_it));
return kv_it->second;
}
void clear() {
_cache_map.clear();
_usage_list.clear();
}
void resize(int64_t new_size) {
_set_max_size(new_size);
auto cur_size = _usage_list.size();
if (cur_size > _max_size) {
auto delete_it = _usage_list.end();
for (size_t i = 0; i < cur_size - _max_size; i++) {
delete_it--;
_cache_map.erase(delete_it->first);
}
_usage_list.erase(delete_it, _usage_list.end());
}
}
size_t size() const { return _cache_map.size(); }
size_t max_size() const noexcept { return _max_size; }
std::mutex mutex;
private:
// Only sets size and does value check. Does not resize the data structures.
void _set_max_size(int64_t new_size) {
// We check that 0 <= new_size <= CUFFT_MAX_PLAN_NUM here. Since
// CUFFT_MAX_PLAN_NUM is of type size_t, we need to do non-negativity check
// first.
TORCH_CHECK(new_size >= 0,
"cuFFT plan cache size must be non-negative, but got ", new_size);
TORCH_CHECK(new_size <= CUFFT_MAX_PLAN_NUM,
"cuFFT plan cache size can not be larger than ", CUFFT_MAX_PLAN_NUM, ", but got ", new_size);
_max_size = static_cast<size_t>(new_size);
}
std::list<kv_t> _usage_list;
map_t _cache_map;
size_t _max_size;
};
// Since ATen is separated into CPU build and CUDA build, we need a way to call
// these functions only when CUDA is loaded. We use CUDA hooks for this purpose
// (at cuda/detail/CUDAHooks.cpp), and call the hooked functions from the actual
// native function counterparts (at native/SpectralOps.cpp), i.e.,
// _cufft_get_plan_cache_max_size, _cufft_set_plan_cache_max_size
// _cufft_get_plan_cache_size, and _cufft_clear_plan_cache.
int64_t cufft_get_plan_cache_max_size_impl(DeviceIndex device_index);
void cufft_set_plan_cache_max_size_impl(DeviceIndex device_index, int64_t max_size);
int64_t cufft_get_plan_cache_size_impl(DeviceIndex device_index);
void cufft_clear_plan_cache_impl(DeviceIndex device_index);
}}} // namespace at::native::detail