Files
pytorch/test/cpp/tensorexpr/padded_buffer.h
PyTorch MergeBot e288c258f7 Revert "Remove tensorexpr tests (#158928)"
This reverts commit d742a2896c571a535003d5928fe80397325575a5.

Reverted https://github.com/pytorch/pytorch/pull/158928 on behalf of https://github.com/yangw-dev due to this breaks bunch of internal dependency since some tests are still using the deleted test files from this pr, the internal reviewer please help fix this using codev ([comment](https://github.com/pytorch/pytorch/pull/158928#issuecomment-3134378616))
2025-07-29 23:32:07 +00:00

243 lines
6.9 KiB
C++

#pragma once
#include <string>
#include <vector>
#include <c10/util/irange.h>
#include "torch/csrc/jit/tensorexpr/eval.h"
namespace torch {
namespace jit {
namespace tensorexpr {
template <typename T>
struct DefaultPaddedValue;
template <>
struct DefaultPaddedValue<int> {
static const int kValue = static_cast<int>(0xDEADBEEF);
};
template <>
struct DefaultPaddedValue<int8_t> {
static const int8_t kValue = static_cast<int8_t>(0xBE);
};
template <>
struct DefaultPaddedValue<uint8_t> {
static const uint8_t kValue = static_cast<uint8_t>(0xBE);
};
template <>
struct DefaultPaddedValue<int16_t> {
static const int16_t kValue = static_cast<int16_t>(0xBEEF);
};
template <>
struct DefaultPaddedValue<int64_t> {
static const int64_t kValue = static_cast<int64_t>(0xDEADBEEF);
};
template <>
struct DefaultPaddedValue<float> {
static constexpr float kValue = 0.1357;
};
template <>
struct DefaultPaddedValue<at::Half> {
// at::Half ctor isn't constexpr, so just fill it with bits.
static constexpr uint16_t kValue = 1357;
};
template <>
struct DefaultPaddedValue<double> {
static constexpr double kValue = 0.1357;
};
// A concrete base to be used in PaddedBase.
class PaddedBufferBase {
public:
const std::string& name() const {
return name_;
}
int size() const {
return total_size_;
}
int raw_size() const {
return total_size_ + 2 * kPaddingSize;
}
virtual ~PaddedBufferBase() {}
protected:
explicit PaddedBufferBase(
const std::vector<int>& dims,
const std::string& name);
int Index(const std::vector<int>& indices) const;
std::vector<int> dims_;
std::string name_;
std::vector<int> strides_;
int total_size_; // total number of useful element, does not include the
// paddings
static constexpr int kPaddingSize = 64;
};
// A padded buffer with wartermarks for testing.
// The buffer carries padded watermarks on both sides to catch potential
// out-of-bounds writes. For read-only data that are not supposed to change, it
// can also make a backup and be compared later.
template <typename T>
class PaddedBuffer : public PaddedBufferBase {
public:
PaddedBuffer(int d0, const std::string& name = "")
: PaddedBuffer(std::vector<int>({d0}), name) {}
PaddedBuffer(int d0, int d1, const std::string& name = "")
: PaddedBuffer(std::vector<int>({d0, d1}), name) {}
PaddedBuffer(int d0, int d1, int d2, const std::string& name = "")
: PaddedBuffer(std::vector<int>({d0, d1, d2}), name) {}
PaddedBuffer(int d0, int d1, int d2, int d3, const std::string& name = "")
: PaddedBuffer(std::vector<int>({d0, d1, d2, d3}), name) {}
PaddedBuffer(const std::vector<int>& dims, const std::string& name = "")
: PaddedBufferBase(dims, name) {
data_.resize(total_size_ + 2 * kPaddingSize, kPaddingValue);
}
PaddedBuffer(const PaddedBuffer& other, const std::string& name)
: PaddedBuffer(other) {
this->name_ = name;
}
T* data() {
return data_.data() + kPaddingSize;
}
const T* data() const {
return const_cast<PaddedBuffer*>(this)->data();
}
T* raw_data() {
return data_.data();
}
const T* raw_data() const {
return const_cast<PaddedBuffer*>(this)->raw_data();
}
T& operator()(int i0) {
// There is a bit performance impact with forming a vector here. But this
// data structure is for testing only, and not performance critical.
return this->operator()(std::vector<int>({i0}));
}
const T& operator()(int i0) const {
return const_cast<PaddedBuffer*>(this)->operator()(i0);
}
T& operator()(int i0, int i1) {
return this->operator()(std::vector<int>({i0, i1}));
}
const T& operator()(int i0, int i1) const {
return const_cast<PaddedBuffer*>(this)->operator()(i0, i1);
}
T& operator()(int i0, int i1, int i2) {
return this->operator()(std::vector<int>({i0, i1, i2}));
}
const T& operator()(int i0, int i1, int i2) const {
return const_cast<PaddedBuffer*>(this)->operator()(i0, i1, i2);
}
T& operator()(int i0, int i1, int i2, int i3) {
return this->operator()(std::vector<int>({i0, i1, i2, i3}));
}
const T& operator()(int i0, int i1, int i2, int i3) const {
return const_cast<PaddedBuffer*>(this)->operator()(i0, i1, i2, i3);
}
T& operator()(const std::vector<int>& indices) {
return data_[kPaddingSize + Index(indices)];
}
const T& operator()(const std::vector<int>& indices) const {
return const_cast<PaddedBuffer*>(this)->operator()(indices);
}
template <typename U>
friend void ExpectAllNear(
const PaddedBuffer<U>& v1,
const PaddedBuffer<U>& v2,
float abs_error);
template <typename U>
friend void ExpectAllEqual(
const PaddedBuffer<U>& v1,
const PaddedBuffer<U>& v2);
void Backup() {
backup_data_ = data_;
}
// Verify the watermarks in the paddings are intact.
void ValidateWatermark() const {
for (const auto i : c10::irange(kPaddingSize)) {
ASSERT_EQ(data_[i], kPaddingValue);
ASSERT_EQ(data_[i + total_size_ + kPaddingSize], kPaddingValue);
}
}
void CheckBackup() const {
ValidateWatermark();
DCHECK(backup_data_.size() == data_.size())
<< "Please make sure you have call Backup() before calling CheckBackup()";
for (const auto i : c10::irange(total_size_)) {
ASSERT_EQ(data_[i + kPaddingSize], backup_data_[i + kPaddingSize]);
}
}
private:
std::vector<T> data_;
std::vector<T> backup_data_;
T kPaddingValue = DefaultPaddedValue<T>::kValue;
};
template <typename T>
inline CodeGen::CallArg::CallArg(const PaddedBuffer<T>& buffer)
: data_(const_cast<T*>(buffer.data())) {}
template <typename T>
std::string CompareErrorMsg(
const PaddedBuffer<T>& v1,
const PaddedBuffer<T>& v2,
int index) {
std::ostringstream oss;
oss << "index: " << index << ", v1: (" << v1.name() << ", " << v1(index)
<< ")"
<< ", v2: (" << v2.name() << ", " << v2(index) << ")";
return oss.str();
}
template <typename T>
void ExpectAllEqual(const PaddedBuffer<T>& f1, const PaddedBuffer<T>& f2) {
const std::vector<T>& v1 = f1.data_;
const std::vector<T>& v2 = f2.data_;
const int kPaddingSize = f1.kPaddingSize;
const int total_size = f1.total_size_;
ASSERT_EQ(v1.size(), v2.size());
f1.ValidateWatermark();
f2.ValidateWatermark();
for (const auto i : c10::irange(total_size)) {
ASSERT_EQ(v1[kPaddingSize + i], v2[kPaddingSize + i]);
}
}
template <typename T>
void ExpectAllNear(
const PaddedBuffer<T>& f1,
const PaddedBuffer<T>& f2,
float abs_error) {
const std::vector<T>& v1 = f1.data_;
const std::vector<T>& v2 = f2.data_;
const int kPaddingSize = f1.kPaddingSize;
const int total_size = f1.total_size_;
ASSERT_EQ(v1.size(), v2.size());
f1.ValidateWatermark();
f2.ValidateWatermark();
for (const auto i : c10::irange(total_size)) {
ASSERT_NEAR(v1[kPaddingSize + i], v2[kPaddingSize + i], abs_error);
}
}
} // namespace tensorexpr
} // namespace jit
} // namespace torch