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Context.cpp
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Context.cpp
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#include <ATen/Config.h>
#include <ATen/Context.h>
#include <c10/core/CPUAllocator.h>
#include <algorithm>
#include <cctype>
#include <string>
#include <ATen/cpu/FlushDenormal.h>
#ifdef USE_FBGEMM
#include <fbgemm/Fbgemm.h>
#endif // USE_FBGEMM
namespace at {
Context::Context() = default;
// TODO: This could be bad juju if someone calls globalContext() in the
// destructor of an object with static lifetime.
Context& globalContext() {
static Context globalContext_;
return globalContext_;
}
// NB: This method is *purely* whether or not a user requested
// that CuDNN was enabled, it doesn't actually say anything about
// whether or not CuDNN is actually usable.
bool Context::userEnabledCuDNN() const {
return enabled_cudnn;
}
void Context::setUserEnabledCuDNN(bool e) {
enabled_cudnn = e;
}
bool Context::userEnabledMkldnn() const {
return enabled_mkldnn;
}
void Context::setUserEnabledMkldnn(bool e) {
enabled_mkldnn = e;
}
bool Context::deterministicCuDNN() const {
return deterministic_cudnn;
}
void Context::setDeterministicCuDNN(bool b) {
deterministic_cudnn = b;
}
bool Context::deterministicAlgorithms() const {
return _deterministic_algorithms;
}
bool Context::deterministicAlgorithmsWarnOnly() const {
return _deterministic_algorithms_warn_only;
}
void Context::setDeterministicAlgorithms(bool b, bool warn_only=false) {
_deterministic_algorithms = b;
_deterministic_algorithms_warn_only = warn_only;
}
void Context::alertNotDeterministic(c10::string_view const& caller) {
if (globalContext().deterministicAlgorithms()) {
if (globalContext().deterministicAlgorithmsWarnOnly()) {
TORCH_WARN(
caller, " does not have a deterministic implementation, but you set "
"'torch.use_deterministic_algorithms(True, warn_only=True)'. "
"You can file an issue at https://github.com/pytorch/pytorch/issues "
"to help us prioritize adding deterministic support for this operation.");
} else {
TORCH_CHECK(false,
caller, " does not have a deterministic implementation, but you set "
"'torch.use_deterministic_algorithms(True)'. You can turn off "
"determinism just for this operation, or you can use the "
"'warn_only=True' option, if that's acceptable for your application. "
"You can also file an issue at https://github.com/pytorch/pytorch/issues "
"to help us prioritize adding deterministic support for this operation.");
}
}
}
bool Context::allowTF32CuDNN() const {
return allow_tf32_cudnn;
}
void Context::setAllowTF32CuDNN(bool b) {
allow_tf32_cudnn = b;
}
bool Context::userEnabledFlashSDP() const {
return enabled_flashSDP;
}
void Context::setSDPUseFlash(bool e) {
enabled_flashSDP = e;
}
bool Context::userEnabledMemEfficientSDP() const {
return enabled_mem_efficientSDP;
}
void Context::setSDPUseMemEfficient(bool e) {
enabled_mem_efficientSDP = e;
}
bool Context::userEnabledMathSDP() const {
return enabled_mathSDP;
}
void Context::setSDPUseMath(bool e) {
enabled_mathSDP = e;
}
// NOLINTNEXTLINE(cppcoreguidelines-avoid-c-arrays,modernize-avoid-c-arrays)
static const char cublas_config_var_name[] = "CUBLAS_WORKSPACE_CONFIG";
// NOLINTNEXTLINE(cppcoreguidelines-avoid-c-arrays,modernize-avoid-c-arrays)
static const char* const cublas_deterministic_configs[] = { ":4096:8", ":16:8" };
bool Context::checkCuBLASConfigDeterministic() {
bool cublas_config_deterministic = true;
// If using CUDA 10.2 or greater, need to make sure CuBLAS workspace config
// is set to deterministic setting
if (hasCUDART() && (versionCUDART() >= 10020)) {
char* workspace_config = std::getenv(cublas_config_var_name);
cublas_config_deterministic = (workspace_config != nullptr) && (
(strcmp(workspace_config, cublas_deterministic_configs[0]) == 0)
|| (strcmp(workspace_config, cublas_deterministic_configs[1]) == 0)
);
}
return cublas_config_deterministic;
}
void Context::alertCuBLASConfigNotDeterministic() const {
static bool cublas_config_deterministic = checkCuBLASConfigDeterministic();
if (C10_LIKELY(!deterministicAlgorithms() || cublas_config_deterministic)) {
return;
}
auto msg = c10::str(
"Deterministic behavior was enabled with either `torch.use_deterministic_algorithms(True)` or ",
"`at::Context::setDeterministicAlgorithms(true)`, but this operation is not deterministic because ",
"it uses CuBLAS and you have CUDA >= 10.2. To enable deterministic behavior in this ",
"case, you must set an environment variable before running your PyTorch application: ",
cublas_config_var_name, "=", cublas_deterministic_configs[0], " or ",
cublas_config_var_name, "=", cublas_deterministic_configs[1], ". For more information, go to ",
"https://docs.nvidia.com/cuda/cublas/index.html#cublasApi_reproducibility"
);
if (deterministicAlgorithmsWarnOnly()) {
TORCH_WARN(msg);
} else {
TORCH_CHECK(false, msg);
}
}
bool Context::benchmarkCuDNN() const {
return benchmark_cudnn;
}
void Context::setBenchmarkCuDNN(bool b) {
benchmark_cudnn = b;
}
int Context::benchmarkLimitCuDNN() const {
return benchmark_limit_cudnn;
}
void Context::setBenchmarkLimitCuDNN(int b) {
benchmark_limit_cudnn = b;
}
bool Context::allowTF32CuBLAS() const {
return float32_matmul_precision != at::Float32MatmulPrecision::HIGHEST;
}
void Context::setAllowTF32CuBLAS(bool b) {
float32_matmul_precision = b ? at::Float32MatmulPrecision::HIGH : at::Float32MatmulPrecision::HIGHEST;
}
Float32MatmulPrecision Context::float32MatmulPrecision() const {
return float32_matmul_precision;
}
void Context::setFloat32MatmulPrecision(Float32MatmulPrecision p) {
float32_matmul_precision = p;
}
void Context::setFloat32MatmulPrecision(const std::string &s) {
auto match = [this](const std::string & s_) {
// TODO: consider if CuDNN field needs to also be set for potential future CuDNN ops like multi-headed attention
if (s_ == "highest") {
float32_matmul_precision = at::Float32MatmulPrecision::HIGHEST;
return true;
} else if (s_ == "high") {
float32_matmul_precision = at::Float32MatmulPrecision::HIGH;
return true;
} else if (s_ == "medium") {
float32_matmul_precision = at::Float32MatmulPrecision::MEDIUM;
return true;
}
return false;
};
if (match(s)) { return; }
std::string sl;
std::transform(s.begin(), s.end(), sl.begin(),
[](unsigned char c) -> unsigned char { return std::tolower(c); });
if (match(sl)) { return; }
TORCH_WARN(s, " is not one of 'highest', 'high', or 'medium'; the current"
"setFloat32MatmulPrecision call has no effect.");
}
at::LinalgBackend Context::linalgPreferredBackend() const {
return linalg_preferred_backend;
}
void Context::setLinalgPreferredBackend(at::LinalgBackend b) {
linalg_preferred_backend = b;
TORCH_CHECK((b != at::LinalgBackend::Cusolver) || hasCuSOLVER(),
"Cannot set preferred backend to cuSOLVER if PyTorch has not been compiled with cuSOLVER.");
TORCH_CHECK((b != at::LinalgBackend::Magma) || hasMAGMA(),
"Cannot set preferred backend to MAGMA if PyTorch has not been compiled with MAGMA.");
if (b != at::LinalgBackend::Default) {
TORCH_WARN_ONCE(
"torch.backends.cuda.preferred_linalg_library is an experimental feature. "
"If you see any error or unexpected behavior when this flag is set "
"please file an issue on GitHub."
);
}
}
bool Context::allowFP16ReductionCuBLAS() const {
return allow_fp16_reduction_cublas;
}
void Context::setAllowFP16ReductionCuBLAS(bool b) {
allow_fp16_reduction_cublas = b;
}
bool Context::allowBF16ReductionCuBLAS() const {
return allow_bf16_reduction_cublas;
}
void Context::setAllowBF16ReductionCuBLAS(bool b) {
allow_bf16_reduction_cublas = b;
}
bool Context::hasMKL() {
#if AT_MKL_ENABLED()
return true;
#else
return false;
#endif
}
bool Context::hasMKLDNN() {
#if AT_MKLDNN_ENABLED()
return true;
#else
return false;
#endif
}
bool Context::hasOpenMP() {
#ifdef _OPENMP
return true;
#else
return false;
#endif
}
bool Context::hasLAPACK() {
#if AT_BUILD_WITH_LAPACK()
return true;
#else
return false;
#endif
}
at::QEngine Context::qEngine() const {
static auto _quantized_engine = []() {
at::QEngine qengine = at::kNoQEngine;
#if defined(C10_MOBILE) && defined(USE_PYTORCH_QNNPACK)
qengine = at::kQNNPACK;
#endif
#if AT_MKLDNN_ENABLED()
qengine = at::kONEDNN;
#endif
#ifdef USE_FBGEMM
if (fbgemm::fbgemmSupportedCPU()) {
/* X86 is enabled if and only if fbgemm is available.
* It combines goodness of fbgemm and onednn by dispatching.
* If onednn not available, always dispatch to fbgemm.
* Make it default qengine for X86 CPU platforms.
*/
qengine = at::kX86;
}
#endif
return qengine;
}();
return quantized_engine.value_or(_quantized_engine);
}
void Context::setQEngine(at::QEngine e) {
const auto& qengines = supportedQEngines();
if (std::find(qengines.begin(), qengines.end(), e) != qengines.end()) {
quantized_engine = e;
return;
}
TORCH_CHECK(false, "quantized engine ", toString(e), " is not supported");
}
const std::vector<at::QEngine>& Context::supportedQEngines() {
static auto supported_qengines = []() {
std::vector<at::QEngine> engines = {};
// Engines are listed in priority order: later one wins
// By default we prefer FBGEMM if we're running on server side
// QNNPACK on server side has some issue, so we disable it by default.
#ifdef C10_MOBILE
engines.push_back(at::kNoQEngine);
#ifdef USE_PYTORCH_QNNPACK
engines.push_back(at::kQNNPACK);
#endif
#else // C10_MOBILE
#ifdef USE_PYTORCH_QNNPACK
engines.push_back(at::kQNNPACK);
#endif
engines.push_back(at::kNoQEngine);
#endif // C10_MOBILE
#if AT_MKLDNN_ENABLED()
engines.push_back(at::kONEDNN);
#endif
#ifdef USE_FBGEMM
if (fbgemm::fbgemmSupportedCPU()) {
engines.push_back(at::kX86);
// The X86 qengine is available if and only if FBGEMM is available
engines.push_back(at::kFBGEMM);
}
#endif
return engines;
}();
return supported_qengines;
}
bool Context::isXNNPACKAvailable() {
#ifdef USE_XNNPACK
return true;
#else
return false;
#endif
}
void Context::setCheckSparseTensorInvariants(bool e) {
enable_sparse_tensor_invariant_checks = e;
}
bool Context::checkSparseTensorInvariants() const {
return enable_sparse_tensor_invariant_checks;
}
bool Context::releaseWeightsWhenPrepacking() const {
return release_original_weights;
}
void Context::setReleaseWeightsWhenPrepacking(bool e) {
release_original_weights = e;
}
bool Context::setFlushDenormal(bool on) {
return at::cpu::set_flush_denormal(on);
}
Allocator* getCPUAllocator() {
return c10::GetCPUAllocator();
}
// override_allow_tf32_flag = true
// means the allow_tf32 flags are overrided and tf32 is force disabled
// override_allow_tf32_flag = false
// means the original allow_tf32 flags are followed
thread_local bool override_allow_tf32_flag = false;
NoTF32Guard::NoTF32Guard() {
if (!override_allow_tf32_flag) {
changed = true;
override_allow_tf32_flag = true;
}
}
NoTF32Guard::~NoTF32Guard() {
if (changed) {
override_allow_tf32_flag = false;
}
}
bool NoTF32Guard::should_disable_tf32() {
return override_allow_tf32_flag;
}
#ifdef USE_ROCM
// Ops can query this flag to know they are in the backward pass.
// This information can be used, for example, to select implementations
// with different numerical or performance characteristics.
// See https://pytorch.org/docs/stable/notes/numerical_accuracy.html for details.
thread_local bool ROCmBackwardPassGuard::is_backward_pass_;
ROCmBackwardPassGuard::ROCmBackwardPassGuard() {
is_backward_pass_ = true;
}
ROCmBackwardPassGuard::~ROCmBackwardPassGuard() {
is_backward_pass_ = false;
}
bool ROCmBackwardPassGuard::is_backward_pass() {
return is_backward_pass_;
}
#endif
bool Context::areVmapFallbackWarningsEnabled() const {
return display_vmap_fallback_warnings_;
}
void Context::setDisplayVmapFallbackWarnings(bool enabled) {
display_vmap_fallback_warnings_ = enabled;
}
void Context::setDefaultMobileCPUAllocator() {
TORCH_CHECK(prev_allocator_ptr_ == nullptr,
"Already within the scope of another non-default cpu allocator."
"Cannot set another allocator.");
// Setting the priority high to make sure no other allocator gets used instead of this.
prev_allocator_ptr_ = c10::GetCPUAllocator();
c10::SetCPUAllocator(c10::GetDefaultMobileCPUAllocator(), /*priority*/ 100);
}
void Context::unsetDefaultMobileCPUAllocator() {
TORCH_CHECK(prev_allocator_ptr_ != nullptr,
"setDefaultMobileCPUAllocator must have been called "
"before unsetDefaultMobileCPUAllocator.");
// Setting the priority high to make sure no other allocator gets used instead of this.
c10::SetCPUAllocator(prev_allocator_ptr_ , /*priority*/ 100);
prev_allocator_ptr_ = nullptr;
}
} // namespace at