test_common.h 18.8 KB
Newer Older
Przemek Tredak's avatar
Przemek Tredak committed
1
/*************************************************************************
2
 * Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
Przemek Tredak's avatar
Przemek Tredak committed
3
4
5
6
7
8
9
 *
 * See LICENSE for license information.
 ************************************************************************/

#pragma once

#include <memory>
Tim Moon's avatar
Tim Moon committed
10
#include <vector>
11
12
#include <array>
#include <random>
Tim Moon's avatar
Tim Moon committed
13

yuguo's avatar
yuguo committed
14
#include <cuda_runtime_api.h>
Przemek Tredak's avatar
Przemek Tredak committed
15
16
#include <cuda_bf16.h>
#include <cuda_fp8.h>
yuguo's avatar
yuguo committed
17
#include <cuda_fp16.h>
Tim Moon's avatar
Tim Moon committed
18
19
20

#include <transformer_engine/transformer_engine.h>
#include "util/logging.h"
Przemek Tredak's avatar
Przemek Tredak committed
21
22
23
24

namespace test {
using namespace transformer_engine;

25
26
27
28
29
30
31
32
33
34
35
36
inline int blockwise_fp8_block_len() {
  const char *env = std::getenv("NVTE_BLOCKWISE_FP8_BLOCK_LEN");
  if (env == nullptr || env[0] == '\0') {
    return 128;
  }
  int value;
  std::istringstream iss(env);
  iss >> value;
  NVTE_CHECK(iss, "Invalid environment variable value");
  return value;
}

Przemek Tredak's avatar
Przemek Tredak committed
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
template <size_t i>
struct BytesToType {};

template <>
struct BytesToType<1> {
  using Type = uint8_t;
};

template <>
struct BytesToType<2> {
  using Type = uint16_t;
};

template <>
struct BytesToType<4> {
  using Type = uint32_t;
};

template <>
struct BytesToType<8> {
  using Type = uint64_t;
};

using byte = uint8_t;
61
using int16 = int16_t;
Przemek Tredak's avatar
Przemek Tredak committed
62
using int32 = int32_t;
cyanguwa's avatar
cyanguwa committed
63
using int64 = int64_t;
Przemek Tredak's avatar
Przemek Tredak committed
64
65
66
67
68
using fp32 = float;
using fp16 = half;
using bf16 = nv_bfloat16;
using fp8e4m3 = __nv_fp8_e4m3;
using fp8e5m2 = __nv_fp8_e5m2;
69
using fp8e8m0 = uint8_t;
wenjh's avatar
wenjh committed
70
using int8 = int8_t;
Przemek Tredak's avatar
Przemek Tredak committed
71
72
73
74

template <typename T>
struct TypeInfo{
    using types = std::tuple<byte,
75
                             int16,
Przemek Tredak's avatar
Przemek Tredak committed
76
                             int32,
cyanguwa's avatar
cyanguwa committed
77
                             int64,
Przemek Tredak's avatar
Przemek Tredak committed
78
79
80
81
                             fp32,
                             fp16,
                             bf16,
                             fp8e4m3,
82
                             fp8e5m2,
wenjh's avatar
wenjh committed
83
84
                             fp8e8m0,
                             int8>;
Przemek Tredak's avatar
Przemek Tredak committed
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115

    template <typename U, DType current>
    struct Helper {
        constexpr static DType getType() {
            constexpr int i = static_cast<int>(current);
            if (std::is_same<U, typename std::tuple_element<i, types>::type>::value) {
                return current;
            } else {
                return Helper<U, static_cast<DType>(i + 1)>::getType();
            }
        }
    };

    template <typename U>
    struct Helper<U, DType::kNumTypes> {
        constexpr static DType getType() {
            return DType::kNumTypes;
        }
    };

    template <typename U>
    constexpr static DType getType() {
        return Helper<U, DType::kByte>::getType();
    }

    constexpr static DType dtype = getType<T>();
    constexpr static size_t size = sizeof(T);
};

class Tensor {
 public:
116
117
118
119
120
121
122
123
124
125
126
127
  Tensor(const std::string& name,
         const NVTEShape &shape, const DType type,
         const bool rowwise = true,
         const bool columnwise = false,
         const NVTEScalingMode &mode = NVTE_DELAYED_TENSOR_SCALING);

  Tensor(const std::string& name,
         const std::vector<size_t> &shape,
         const DType type,
         const bool rowwise = true,
         const bool columnwise = false,
         const NVTEScalingMode &mode = NVTE_DELAYED_TENSOR_SCALING) :
128
    Tensor(name, nvte_make_shape(shape.data(), shape.size()), type, rowwise, columnwise, mode) {}
Przemek Tredak's avatar
Przemek Tredak committed
129
130
131
132
133
134
135
136
137
138

  Tensor() {}

  Tensor& operator=(const Tensor &other) = delete;
  Tensor(const Tensor &other) = delete;

  Tensor(Tensor &&other) = default;
  Tensor& operator=(Tensor &&other) = default;

  ~Tensor() {
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
    void *data_ptr = tensor_.dptr();
    void *scale_inv = tensor_.scale_inv();
    void *columnwise_data_ptr = tensor_.get_columnwise_data().data_ptr;
    void *columnwise_scale_inv = tensor_.get_columnwise_scale_inv().data_ptr;
    if (columnwise_data_ptr == data_ptr) {
      columnwise_data_ptr = nullptr;
    }
    if (columnwise_scale_inv == scale_inv) {
      columnwise_scale_inv = nullptr;
    }
    if (data_ptr != nullptr) {
      cudaFree(data_ptr);
    }
    if (scale_inv != nullptr) {
      cudaFree(scale_inv);
    }
155
    if (columnwise_data_ptr != nullptr) {
156
157
      cudaFree(columnwise_data_ptr);
    }
158
    if (columnwise_scale_inv != nullptr) {
159
      cudaFree(columnwise_scale_inv);
Przemek Tredak's avatar
Przemek Tredak committed
160
161
    }
  }
162

163
  NVTETensor data() const noexcept { return tensor_.data(); }
Przemek Tredak's avatar
Przemek Tredak committed
164

165
  NVTEShape rowwise_shape() const noexcept { return tensor_.get_rowwise_data().shape; }
166

167
  NVTEShape columnwise_shape() const noexcept { return tensor_.get_columnwise_data().shape; }
168
169
170
171
172
173
174
175
176
177
178
179
180

  NVTEShape rowwise_scale_inv_shape() const {
    NVTE_CHECK(rowwise_, "Tensor does not have rowwise data!");
    return tensor_.get_rowwise_scale_inv().shape;
  }

  NVTEShape columnwise_scale_inv_shape() const {
    NVTE_CHECK(columnwise_, "Tensor does not have columnwise data!");
    return tensor_.get_columnwise_scale_inv().shape;
  }

  NVTEScalingMode scaling_mode() const noexcept {
    return tensor_.scaling_mode();
Przemek Tredak's avatar
Przemek Tredak committed
181
182
183
184
185
186
  }

  DType dtype() const noexcept {
    return tensor_.dtype();
  }

187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
  void *rowwise_dptr() const {
    NVTE_CHECK(rowwise_, "Tensor does not have rowwise data!");
    return tensor_.get_rowwise_data().data_ptr;
  }

  void *columnwise_dptr() const {
    NVTE_CHECK(columnwise_, "Tensor does not have columnwise data!");
    return tensor_.get_columnwise_data().data_ptr;
  }

  template <typename T>
  T *rowwise_cpu_dptr() const {
    NVTE_CHECK(TypeInfo<T>::dtype == tensor_.dtype(), "Invalid type!");
    NVTE_CHECK(rowwise_, "Tensor does not have rowwise data!");
    return reinterpret_cast<T *>(cpu_data_rowwise_.get());
Przemek Tredak's avatar
Przemek Tredak committed
202
203
204
  }

  template <typename T>
205
  T *columnwise_cpu_dptr() const {
Przemek Tredak's avatar
Przemek Tredak committed
206
    NVTE_CHECK(TypeInfo<T>::dtype == tensor_.dtype(), "Invalid type!");
207
208
    NVTE_CHECK(columnwise_, "Tensor does not have columnwise data!");
    return reinterpret_cast<T *>(cpu_data_columnwise_.get());
Przemek Tredak's avatar
Przemek Tredak committed
209
210
  }

211
212
213
214
215
216
217
218
219
220
221
  float amax() const {
    if(amax_cpu_data_) {
      to_cpu();
      return *amax_cpu_data_;
    } else {
      return 0;
    }
  }

  float scale() const {
    if(scale_cpu_data_) {
222
      NVTE_CHECK(tensor_.scaling_mode() == NVTE_DELAYED_TENSOR_SCALING, "Invalid scaling_mode!");
223
224
225
226
227
228
229
      to_cpu();
      return *scale_cpu_data_;
    } else {
      return 1;
    }
  }

230
231
232
233
  template <typename T>
  T *rowwise_cpu_scale_inv_ptr(){
    if (tensor_.scaling_mode() == NVTE_DELAYED_TENSOR_SCALING){
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kFloat32, "Invalid type!");
234
235
    } else if (tensor_.scaling_mode() == NVTE_BLOCK_SCALING_1D || tensor_.scaling_mode() == NVTE_BLOCK_SCALING_2D) {
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kFloat32, "Invalid type!");
236
237
238
239
240
241
242
243
244
245
246
    } else {
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kByte, "Invalid type!");
    }
    to_cpu();
    return reinterpret_cast<T*>(rowwise_scale_inv_cpu_data_.get());
  }

  template <typename T>
  T *columnwise_cpu_scale_inv_ptr(){
    if (tensor_.scaling_mode() == NVTE_DELAYED_TENSOR_SCALING){
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kFloat32, "Invalid type!");
247
248
    } else if (tensor_.scaling_mode() == NVTE_BLOCK_SCALING_1D || tensor_.scaling_mode() == NVTE_BLOCK_SCALING_2D) {
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kFloat32, "Invalid type!");
249
250
251
252
253
254
255
256
257
258
259
    } else {
      NVTE_CHECK(TypeInfo<T>::dtype == DType::kByte, "Invalid type!");
    }
    to_cpu();
    return reinterpret_cast<T*>(columnwise_scale_inv_cpu_data_.get());
  }

  float rowwise_scale_inv(){
    if(rowwise_scale_inv_cpu_data_) {
      float scale_inv = rowwise_cpu_scale_inv_ptr<float>()[0];
      return scale_inv;
260
261
262
263
264
    } else {
      return 1;
    }
  }

265
266
267
268
269
270
271
272
  bool rowwise() const {
    return rowwise_;
  }

  bool columnwise() const {
    return columnwise_;
  }

273
274
275
276
  void set_tensor_amax_nullptr(){
    tensor_.set_amax(nullptr, DType::kFloat32, tensor_.defaultShape);
  }

Przemek Tredak's avatar
Przemek Tredak committed
277
278
  void to_cpu() const;
  void from_cpu() const;
279
280
281
  void set_scale(float scale);
  void set_scale_inv(float scale_inv);
  void shareFP8Meta(const Tensor &other);
Przemek Tredak's avatar
Przemek Tredak committed
282

283
284
  std::mt19937& gen() { return gen_; }

Przemek Tredak's avatar
Przemek Tredak committed
285
286
 private:
  TensorWrapper tensor_;
287
288
  std::unique_ptr<unsigned char[]> cpu_data_rowwise_;
  std::unique_ptr<unsigned char[]> cpu_data_columnwise_;
289
290
  std::shared_ptr<float> amax_cpu_data_;
  std::shared_ptr<float> scale_cpu_data_;
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
  std::unique_ptr<unsigned char[]> rowwise_scale_inv_cpu_data_;
  std::unique_ptr<unsigned char[]> columnwise_scale_inv_cpu_data_;
  bool rowwise_;
  bool columnwise_;
  std::string name_;
  std::mt19937 gen_;
};

constexpr uint32_t FP32_EXPONENT_BIAS = 127;
constexpr uint32_t FP32_MANTISSA_BITS = 23;

// [128,4] rowwise and [4,128] colwise alignment requirement
constexpr size_t scale_tensor_alignment_X_rowwise = 4;
constexpr size_t scale_tensor_alignment_Y_rowwise = 128;
constexpr size_t scale_tensor_alignment_X_colwise = 128;
constexpr size_t scale_tensor_alignment_Y_colwise = 4;

inline size_t divide_round_up(const size_t N, const size_t M) {
    return (N - 1 + M) / M;
}

inline size_t round_up_to_nearest_multiple(const size_t N, const size_t M) {
    return divide_round_up(N, M) * M;
}

template <typename T>
struct Numeric_Traits {
    static constexpr double minSubnorm = 1.0;
    static constexpr double maxSubnorm = 1.0;
    static constexpr double minNorm    = 1.0;
    static constexpr double maxNorm    = 1.0;
    static constexpr double artifInf   = 1.0;
    static constexpr int maxBiasedExponent = 1;
};

template <>
struct Numeric_Traits<fp8e4m3> {
    static constexpr double minSubnorm = 1.0   / static_cast<double>(1 << 9);   // std::pow(2.0, -9.0);
    static constexpr double maxSubnorm = 0.875 / static_cast<double>(1 << 6);   // std::pow(2.0, -6.0);
    static constexpr double minNorm    = 1.0   / static_cast<double>(1 << 6);   // std::pow(2.0, -6.0);
    static constexpr double maxNorm    = 448.0;
    static constexpr double artifInf   = 10.0 * maxNorm;                        // artificial Infinity
    static constexpr int maxBiasedExponentAsFP32 = 8 + FP32_EXPONENT_BIAS;
    static constexpr int maxUnbiasedExponentAsFP32 = 8;
    static constexpr int maxExpNorm    = 1 << maxUnbiasedExponentAsFP32;
};

template <>
struct Numeric_Traits<fp8e5m2> {
    static constexpr double minSubnorm = 1.0  / static_cast<double>(1 << 16);   // std::pow(2.0, -16.0);
    static constexpr double maxSubnorm = 0.75 / static_cast<double>(1 << 14);   // std::pow(2.0, -14.0);
    static constexpr double minNorm    = 1.0  / static_cast<double>(1 << 14);   // std::pow(2.0, -14.0);
    static constexpr double maxNorm    = 57344.0;
    static constexpr double artifInf   = 10.0 * maxNorm;                        // artificial Infinity
    static constexpr int maxBiasedExponentAsFP32 = 15 + FP32_EXPONENT_BIAS;
    static constexpr int maxUnbiasedExponentAsFP32 = 15;
    static constexpr int maxExpNorm    = 1 << maxUnbiasedExponentAsFP32;
};

template <>
struct Numeric_Traits<fp32> {
    static constexpr double minSubnorm = std::numeric_limits<fp32>::denorm_min();   // std::pow(2.0, -149.0);
    static constexpr double maxSubnorm = std::numeric_limits<fp32>::min()
                                         - std::numeric_limits<fp32>::denorm_min(); // minNormalized - minDenormalized
    static constexpr double minNorm    = std::numeric_limits<fp32>::min();          // std::pow(2.0, -126.0);
    static constexpr double maxNorm    = std::numeric_limits<fp32>::max();          // (1 - pow(2, -24)) * pow(2, 128)
    static constexpr double artifInf   = std::numeric_limits<fp32>::infinity();
    static constexpr int maxBiasedExponentAsFP32 = 255;
    static constexpr int maxUnbiasedExponentAsFP32 = 128;
};

template <typename T>
struct Quantized_Limits {
    static constexpr double ranges[]  = {
        0.0,
        Numeric_Traits<T>::minNorm,
        Numeric_Traits<T>::maxNorm,
        Numeric_Traits<T>::artifInf
    };
    static constexpr inline fp32 max() { return static_cast<fp32>(Numeric_Traits<T>::maxNorm); }
    static constexpr inline fp32 max_reciprocal() { return static_cast<fp32>(1.0 / max()); }
    static constexpr inline fp32 emax() { return static_cast<fp32>(Numeric_Traits<T>::maxExpNorm); }
    static constexpr inline fp32 emax_reciprocal() { return static_cast<fp32>(1.0 / emax()); }
    static constexpr inline int max_norm_biased_exponent() { return Numeric_Traits<T>::maxBiasedExponentAsFP32; }
    static constexpr inline int max_norm_unbiased_exponent() { return Numeric_Traits<T>::maxUnbiasedExponentAsFP32; }
};

// Input data filling cases
// Considering normal and subnormal magnitudes of E4M3 and E5M2 formats
// with nearest to even rounding per OFP8 specification
enum InputsFillCase {
    zero_to_minNorm             = 0,    // [0, min_normal)
    minNorm_to_maxNorm          = 1,    // [min_normal, max_normal)
    maxNorm_to_inf              = 2,    // [max_normal, inf)
    zeros                       = 3,    // {0}
    uniform                     = 4,    // std::uniform_real_distribution<> dis(-2.0, 1.0)
Przemek Tredak's avatar
Przemek Tredak committed
387
388
};

389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
inline fp8e8m0 float_to_e8m0(float val) {
  // TODO: nan/inf needs to be set for any value
  // of nan/inf in input not just amax.
  if (std::isnan(val)) {
    return 0xFF;
  }
  if (std::isinf(val)) {
    return 0xFE;
  }
  if (val == 0.0f) {
    return 0x00;
  }
  uint32_t val_u32 = *reinterpret_cast<uint32_t*>(&val);
  fp8e8m0 exponent = (val_u32 >> FP32_MANTISSA_BITS);
  uint32_t mantissa = val_u32 & 0x7FFFFF;
  // Round up exponent and deal with satfinite.
  if ((mantissa > 0 && exponent != 0xFE) && !(exponent == 0 && mantissa <= 0x400000)) {
    ++exponent;
  }
  return exponent;
}

inline float exp2f_rcp(fp8e8m0 biased_exp) {
  return (biased_exp == 0) ? 1 : exp2f(FP32_EXPONENT_BIAS - static_cast<float>(biased_exp));
}

inline float identity(const float x) { return x; }
inline float gelu(const float x)     { return x * (0.5f + 0.5f * tanhf(x * (0.79788456f + 0.03567741f * x * x))); }
inline float dgelu(const float x) {
    const float tanh_out = tanhf(0.79788456f * x * (1 + 0.044715f * x * x));
    return 0.5f * x * ((1 - tanh_out * tanh_out) * (0.79788456f + 0.1070322243f * x * x))
           + 0.5f * (1 + tanh_out);
}
inline float sigmoid(const float x)  { return 1 / (1 + expf(-x)); }
inline float dsigmoid(const float x) { return sigmoid(x) * (1 - sigmoid(x)); }
inline float qgelu(const float x)    { return x * sigmoid(1.702f * x); }
inline float dqgelu(const float x)   { return 1.702f * x * dsigmoid(1.702f * x) + sigmoid(1.702f * x); }
inline float relu(const float x)     { return fmaxf(0, x); }
inline float drelu(const float x)    { return x > 0 ? 1 : 0; }
inline float silu(const float x)     { return x * sigmoid(x); }
inline float dsilu(const float x)    { return x * dsigmoid(x) + sigmoid(x); }
inline float srelu(const float x)    { return x > 0 ? x * x : 0; }
inline float dsrelu(const float x)   { return fmaxf(0, 2 * x); }

Przemek Tredak's avatar
Przemek Tredak committed
433
434
size_t typeToSize(DType type);
size_t product(const NVTEShape &shape);
435
436
437
438
size_t product(const std::vector<size_t> &shape);

size_t first_dimension(const std::vector<size_t> &shape);
size_t last_dimension(const std::vector<size_t> &shape);
Przemek Tredak's avatar
Przemek Tredak committed
439
440
441
442

bool areShapesEqual(const NVTEShape &s1, const NVTEShape &s2);

void compareResults(const std::string &name, const Tensor &test, const void *ref,
443
                    bool rowwise, double atol = 1e-5, double rtol = 1e-8, bool if_on_gpus = true);
444
445
void compareResults(const std::string &name, const float test, const float ref,
                    double atol = 1e-5, double rtol = 1e-8);
446
447
448
449
450
451
452
453
454
void compareResults(const std::string &name, const uint8_t *test, const uint8_t *ref,
                    size_t N, float mismatch_rate_tol = 0.);
void compare_e8m0_scaling_factors(const std::string &name, const uint8_t *test, const uint8_t *ref,
                                  const size_t row_blocks, const size_t col_blocks, const size_t stride);
void compare_e8m0_scaling_factors(const std::string &name, const uint8_t *test, const uint8_t *ref,
                                  const size_t N);

std::array<size_t, 4> get_scale_tensor_dims(const size_t rows, const size_t cols,
                                            const size_t block_size_rows, const size_t block_size_cols);
Przemek Tredak's avatar
Przemek Tredak committed
455
456
457

std::pair<double, double> getTolerances(const DType type);

458
void fillUniform(Tensor *t);
459
460
461
462

template <typename InputEncoding>
void fillCase(Tensor *t, const InputsFillCase fill_case);

463
void setRandomScale(Tensor *t);
464
void setRandomScaleInv(Tensor *t);
Przemek Tredak's avatar
Przemek Tredak committed
465
466
467
468

constexpr int THREADS_PER_WARP = 32;

const std::string &typeName(DType type);
469
const std::string& caseName(InputsFillCase type);
Przemek Tredak's avatar
Przemek Tredak committed
470
471
472

extern std::vector<DType> all_fp_types;

473
474
bool isFp8Type(DType type);

475
int32_t getDeviceComputeCapability();
476
constexpr int32_t hopperComputeCapability = 90;
477
478
constexpr int32_t blackwellComputeCapability = 100;

Przemek Tredak's avatar
Przemek Tredak committed
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
}  // namespace test

#define TRANSFORMER_ENGINE_TYPE_SWITCH_ALL(dtype, type, ...) \
    switch (dtype) { \
        using namespace transformer_engine; \
        case DType::kByte: \
            { \
                using type = byte; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kInt32: \
            { \
                using type = int32; \
                {__VA_ARGS__} \
            } \
        break; \
cyanguwa's avatar
cyanguwa committed
496
497
498
499
500
501
        case DType::kInt64: \
            { \
                using type = int64; \
                {__VA_ARGS__} \
            } \
        break; \
Przemek Tredak's avatar
Przemek Tredak committed
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
        case DType::kFloat32: \
            { \
                using type = float; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kFloat16: \
            { \
                using type = fp16; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kBFloat16: \
            { \
                using type = bf16; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kFloat8E4M3: \
            { \
                using type = fp8e4m3; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kFloat8E5M2: \
            { \
                using type = fp8e5m2; \
                {__VA_ARGS__} \
            } \
        break; \
        default: \
            NVTE_ERROR("Invalid type."); \
    }
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578

#define TRANSFORMER_ENGINE_TYPE_SWITCH_FP8_ONLY(dtype, type, ...) \
    switch (dtype) { \
        using namespace transformer_engine; \
        case DType::kFloat8E4M3: \
            { \
                using type = fp8e4m3; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kFloat8E5M2: \
            { \
                using type = fp8e5m2; \
                {__VA_ARGS__} \
            } \
        break; \
        default: \
            NVTE_ERROR("Invalid type."); \
    }

#define TRANSFORMER_ENGINE_TYPE_SWITCH_FP16_FP32_ONLY(dtype, type, ...) \
    switch (dtype) { \
        using namespace transformer_engine; \
        case DType::kFloat32: \
            { \
                using type = float; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kFloat16: \
            { \
                using type = fp16; \
                {__VA_ARGS__} \
            } \
        break; \
        case DType::kBFloat16: \
            { \
                using type = bf16; \
                {__VA_ARGS__} \
            } \
        break; \
        default: \
            NVTE_ERROR("Invalid type."); \
    }