quant.cpp 23.6 KB
Newer Older
1
2
3
4
5
6
7
#include "cpu_types.hpp"
#include "dnnl_helper.hpp"

namespace {
template <typename scalar_t>
struct KernelVecType {
  using load_vec_type = void;
8
  using azp_adj_load_vec_type = void;
9
10
11
12
13
14
  using cvt_vec_type = void;
};

template <>
struct KernelVecType<float> {
  using load_vec_type = vec_op::FP32Vec16;
15
  using azp_adj_load_vec_type = vec_op::INT32Vec16;
16
17
18
19
20
21
  using cvt_vec_type = vec_op::FP32Vec16;
};

template <>
struct KernelVecType<c10::BFloat16> {
  using load_vec_type = vec_op::BF16Vec16;
22
  using azp_adj_load_vec_type = vec_op::INT32Vec16;
23
24
25
  using cvt_vec_type = vec_op::FP32Vec16;
};

26
27
28
29
30
31
32
template <>
struct KernelVecType<c10::Half> {
  using load_vec_type = vec_op::FP16Vec16;
  using azp_adj_load_vec_type = vec_op::INT32Vec16;
  using cvt_vec_type = vec_op::FP32Vec16;
};

33
#ifdef __AVX512F__
34
template <bool AZP, typename scalar_t>
35
void static_scaled_int8_quant_impl(const scalar_t* input, int8_t* output,
36
37
                                   const float* scale, const int32_t* azp,
                                   const int num_tokens,
38
39
40
41
42
43
44
45
46
47
48
49
50
                                   const int hidden_size) {
  using load_vec_t = typename KernelVecType<scalar_t>::load_vec_type;
  using cvt_vec_t = typename KernelVecType<scalar_t>::cvt_vec_type;
  constexpr int vec_elem_num = load_vec_t::VEC_ELEM_NUM;

  constexpr float i8_min =
      static_cast<float>(std::numeric_limits<int8_t>::min());
  constexpr float i8_max =
      static_cast<float>(std::numeric_limits<int8_t>::max());
  const cvt_vec_t inv_scale(1.0 / *scale);
  const cvt_vec_t i8_min_vec(i8_min);
  const cvt_vec_t i8_max_vec(i8_max);

51
52
53
54
55
  cvt_vec_t zp_vec;
  if constexpr (AZP) {
    zp_vec = cvt_vec_t(static_cast<float>(*azp));
  }

56
57
58
59
60
61
  #pragma omp parallel for
  for (int i = 0; i < num_tokens; ++i) {
    int j = 0;
    for (; j < hidden_size - vec_elem_num; j += vec_elem_num) {
      load_vec_t elems(input + i * hidden_size + j);
      cvt_vec_t elems_fp32(elems);
62
63
64
65
66
67
68
      elems_fp32 = elems_fp32 * inv_scale;

      if constexpr (AZP) {
        elems_fp32 = elems_fp32 + zp_vec;
      }

      elems_fp32 = elems_fp32.clamp(i8_min_vec, i8_max_vec);
69
70
71
72
73
74
      vec_op::INT8Vec16 elems_int8(elems_fp32);
      elems_int8.save(output + i * hidden_size + j);
    }

    load_vec_t elems(input + i * hidden_size + j);
    cvt_vec_t elems_fp32(elems);
75
    elems_fp32 = elems_fp32 * inv_scale;
76

77
78
    if constexpr (AZP) {
      elems_fp32 = elems_fp32 + zp_vec;
79
    }
80
81
82
83

    elems_fp32 = elems_fp32.clamp(i8_min_vec, i8_max_vec);
    vec_op::INT8Vec16 elems_int8(elems_fp32);
    elems_int8.save(output + i * hidden_size + j, hidden_size - j);
84
85
86
  }
}

87
template <bool AZP, typename scalar_t>
88
void dynamic_scaled_int8_quant_impl(const scalar_t* input, int8_t* output,
89
90
                                    float* scale, int32_t* azp,
                                    const int num_tokens,
91
92
93
94
95
                                    const int hidden_size) {
  using load_vec_t = typename KernelVecType<scalar_t>::load_vec_type;
  using cvt_vec_t = typename KernelVecType<scalar_t>::cvt_vec_type;
  constexpr int vec_elem_num = load_vec_t::VEC_ELEM_NUM;

96
97
98
99
100
101
102
  constexpr float i8_min =
      static_cast<float>(std::numeric_limits<int8_t>::min());
  constexpr float i8_max =
      static_cast<float>(std::numeric_limits<int8_t>::max());
  const cvt_vec_t i8_min_vec(i8_min);
  const cvt_vec_t i8_max_vec(i8_max);

103
104
  #pragma omp parallel for
  for (int i = 0; i < num_tokens; ++i) {
105
106
    cvt_vec_t max_value(std::numeric_limits<float>::lowest());
    cvt_vec_t min_value(std::numeric_limits<float>::max());
107
108
109
110
111
    {
      int j = 0;
      for (; j < hidden_size - vec_elem_num; j += vec_elem_num) {
        load_vec_t elems(input + i * hidden_size + j);
        cvt_vec_t elems_fp32(elems);
112
113
114
115
116
117
        if constexpr (AZP) {
          max_value = max_value.max(elems_fp32);
          min_value = min_value.min(elems_fp32);
        } else {
          max_value = max_value.max(elems_fp32.abs());
        }
118
119
120
121
122
123
      }

      load_vec_t elems(input + i * hidden_size + j);
      cvt_vec_t elems_fp32(elems);

      if (j + vec_elem_num == hidden_size) {
124
125
126
127
128
129
        if constexpr (AZP) {
          max_value = max_value.max(elems_fp32);
          min_value = min_value.min(elems_fp32);
        } else {
          max_value = max_value.max(elems_fp32.abs());
        }
130
      } else {
131
132
133
134
135
136
        if constexpr (AZP) {
          max_value = max_value.max(elems_fp32, hidden_size - j);
          min_value = min_value.min(elems_fp32, hidden_size - j);
        } else {
          max_value = max_value.max(elems_fp32.abs(), hidden_size - j);
        }
137
138
139
      }
    }

140
141
142
143
144
145
146
147
148
149
150
151
152
    float scale_val, azp_val;
    if constexpr (AZP) {
      float max_scalar = max_value.reduce_max();
      float min_scalar = min_value.reduce_min();
      scale_val = (max_scalar - min_scalar) / 255.0f;
      azp_val = std::nearbyint(-128.0f - min_scalar / scale_val);
      azp[i] = static_cast<int32_t>(azp_val);
      scale[i] = scale_val;
    } else {
      scale_val = max_value.reduce_max() / 127.0f;
      scale[i] = scale_val;
    }

153
    const cvt_vec_t inv_scale(1.0 / scale_val);
154
    const cvt_vec_t azp_vec(azp_val);
155
156
157
158
159
160
161

    {
      int j = 0;
      for (; j < hidden_size - vec_elem_num; j += vec_elem_num) {
        load_vec_t elems(input + i * hidden_size + j);
        cvt_vec_t elems_fp32(elems);
        elems_fp32 = (elems_fp32 * inv_scale);
162
163
164
165
166

        if constexpr (AZP) {
          elems_fp32 = elems_fp32 + azp_vec;
        }
        elems_fp32 = elems_fp32.clamp(i8_min_vec, i8_max_vec);
167
168
169
170
171
172
173
174
        vec_op::INT8Vec16 elems_int8(elems_fp32);
        elems_int8.save(output + i * hidden_size + j);
      }

      load_vec_t elems(input + i * hidden_size + j);
      cvt_vec_t elems_fp32(elems);
      elems_fp32 = (elems_fp32 * inv_scale);

175
176
      if constexpr (AZP) {
        elems_fp32 = elems_fp32 + azp_vec;
177
      }
178
179
180
      elems_fp32 = elems_fp32.clamp(i8_min_vec, i8_max_vec);
      vec_op::INT8Vec16 elems_int8(elems_fp32);
      elems_int8.save(output + i * hidden_size + j, hidden_size - j);
181
182
183
184
    }
  }
}

185
186
187
188
189
template <bool PerChannel, typename scalar_t>
void static_quant_epilogue(const float* input, scalar_t* output,
                           const float a_scale, const float* b_scale,
                           const int32_t* azp_with_adj, const int num_tokens,
                           const int hidden_size) {
190
191
  CPU_KERNEL_GUARD_IN(dynamic_output_scale_impl)
  using load_vec_t = typename KernelVecType<scalar_t>::load_vec_type;
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
  using azp_adj_load_vec_t =
      typename KernelVecType<scalar_t>::azp_adj_load_vec_type;
  using cvt_vec_t = typename KernelVecType<scalar_t>::cvt_vec_type;
  constexpr int vec_elem_num = load_vec_t::VEC_ELEM_NUM;

  #pragma omp parallel for
  for (int i = 0; i < num_tokens; ++i) {
    cvt_vec_t a_scale_vec(a_scale);
    cvt_vec_t b_scale_vec(*b_scale);
    cvt_vec_t scale_vec = a_scale_vec * b_scale_vec;

    int j = 0;
    for (; j < hidden_size - vec_elem_num; j += vec_elem_num) {
      cvt_vec_t elems_fp32(input + i * hidden_size + j);
      azp_adj_load_vec_t azp_adj_vec(azp_with_adj + j);
      cvt_vec_t azp_adj_fp32(azp_adj_vec);

      if constexpr (PerChannel) {
        b_scale_vec = cvt_vec_t(b_scale + j);
        scale_vec = b_scale_vec * a_scale_vec;
      }

      elems_fp32 = elems_fp32 - scale_vec * azp_adj_fp32;

      load_vec_t elems_out(elems_fp32);
      elems_out.save(output + i * hidden_size + j);
    }

    cvt_vec_t elems_fp32(input + i * hidden_size + j);
    azp_adj_load_vec_t azp_adj_vec(azp_with_adj + j);
    cvt_vec_t azp_adj_fp32(azp_adj_vec);

    if constexpr (PerChannel) {
      b_scale_vec = cvt_vec_t(b_scale + j);
      scale_vec = b_scale_vec * a_scale_vec;
    }

    elems_fp32 = elems_fp32 - scale_vec * azp_adj_fp32;

    load_vec_t elems_out(elems_fp32);
    elems_out.save(output + i * hidden_size + j, hidden_size - j);
  }
}

template <bool AZP, bool PerChannel, bool Bias, typename scalar_t>
void dynamic_quant_epilogue(const float* input, scalar_t* output,
                            const float* a_scale, const float* b_scale,
                            const int32_t* azp, const int32_t* azp_adj,
                            const scalar_t* bias, const int num_tokens,
                            const int hidden_size) {
  CPU_KERNEL_GUARD_IN(dynamic_quant_epilogue)
  using load_vec_t = typename KernelVecType<scalar_t>::load_vec_type;
  using azp_adj_load_vec_t =
      typename KernelVecType<scalar_t>::azp_adj_load_vec_type;
246
247
248
249
250
251
  using cvt_vec_t = typename KernelVecType<scalar_t>::cvt_vec_type;
  constexpr int vec_elem_num = load_vec_t::VEC_ELEM_NUM;

  #pragma omp parallel for
  for (int i = 0; i < num_tokens; ++i) {
    int j = 0;
252
253
254
255
256
257
258
259
260
261
    cvt_vec_t token_scale_vec(a_scale[i]);
    cvt_vec_t token_zp_scale_vec;
    if constexpr (AZP) {
      float zp_scale_val = a_scale[i] * static_cast<float>(azp[i]);
      if constexpr (!PerChannel) {
        zp_scale_val *= *b_scale;
      }
      token_zp_scale_vec = cvt_vec_t(zp_scale_val);
    }

262
263
264
265
    for (; j < hidden_size - vec_elem_num; j += vec_elem_num) {
      cvt_vec_t elems_fp32(input + i * hidden_size + j);
      elems_fp32 = elems_fp32 * token_scale_vec;

266
267
268
269
270
271
272
273
274
275
276
277
278
      if constexpr (AZP) {
        azp_adj_load_vec_t azp_adj_vec(azp_adj + j);
        cvt_vec_t azp_adj_fp32(azp_adj_vec);
        azp_adj_fp32 = azp_adj_fp32 * token_zp_scale_vec;

        if constexpr (PerChannel) {
          cvt_vec_t b_scale_vec(b_scale + j);
          azp_adj_fp32 = azp_adj_fp32 * b_scale_vec;
        }

        elems_fp32 = elems_fp32 - azp_adj_fp32;
      }

279
280
281
282
283
284
285
286
287
288
289
290
291
      if constexpr (Bias) {
        load_vec_t bias_vec(bias + j);
        cvt_vec_t bias_vec_fp32(bias_vec);
        elems_fp32 = elems_fp32 + bias_vec_fp32;
      }

      load_vec_t elems_out(elems_fp32);
      elems_out.save(output + i * hidden_size + j);
    }

    cvt_vec_t elems_fp32(input + i * hidden_size + j);
    elems_fp32 = elems_fp32 * token_scale_vec;

292
293
294
295
296
297
298
299
300
301
302
303
304
    if constexpr (AZP) {
      azp_adj_load_vec_t azp_adj_vec(azp_adj + j);
      cvt_vec_t azp_adj_fp32(azp_adj_vec);
      azp_adj_fp32 = azp_adj_fp32 * token_zp_scale_vec;

      if constexpr (PerChannel) {
        cvt_vec_t b_scale_vec(b_scale + j);
        azp_adj_fp32 = azp_adj_fp32 * b_scale_vec;
      }

      elems_fp32 = elems_fp32 - azp_adj_fp32;
    }

305
306
307
308
309
310
311
    if constexpr (Bias) {
      load_vec_t bias_vec(bias + j);
      cvt_vec_t bias_vec_fp32(bias_vec);
      elems_fp32 = elems_fp32 + bias_vec_fp32;
    }

    load_vec_t elems_out(elems_fp32);
312
    elems_out.save(output + i * hidden_size + j, hidden_size - j);
313
314
315
316
317
  }
}
#else
template <typename scalar_t>
void static_scaled_int8_quant_impl(const scalar_t* input, int8_t* output,
318
319
                                   const float* scale, const int32_t* azp,
                                   const int num_tokens,
320
321
322
323
324
325
                                   const int hidden_size) {
  TORCH_CHECK(false, "static_scaled_int8_quant_impl requires AVX512 support.")
}

template <typename scalar_t>
void dynamic_scaled_int8_quant_impl(const scalar_t* input, int8_t* output,
326
327
                                    float* scale, int32_t* azp,
                                    const int num_tokens,
328
329
330
331
                                    const int hidden_size) {
  TORCH_CHECK(false, "dynamic_scaled_int8_quant_impl requires AVX512 support.")
}

332
333
334
335
336
337
338
339
template <bool PerChannel, typename scalar_t>
void static_quant_epilogue(const float* input, scalar_t* output,
                           const float a_scale, const float* b_scale,
                           const int32_t* azp_with_adj, const int num_tokens,
                           const int hidden_size) {
  TORCH_CHECK(false, "static_quant_epilogue requires AVX512 support.")
}

340
template <typename scalar_t>
341
342
343
344
345
346
void dynamic_quant_epilogue(const float* input, scalar_t* output,
                            const float* a_scale, const float* b_scale,
                            const int32_t* azp, const int32_t* azp_with_adj,
                            const scalar_t* bias, const int num_tokens,
                            const int hidden_size) {
  TORCH_CHECK(false, "dynamic_quant_epilogue requires AVX512 support.")
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
}
#endif
}  // namespace

void int8_scaled_mm(torch::Tensor& c,               // [M, OC], row-major
                    const torch::Tensor& a,         // [M, IC], row-major
                    const torch::Tensor& b,         // [IC, OC], column-major
                    const torch::Tensor& a_scales,  // [1] or [M]
                    const torch::Tensor& b_scales,  // [1] or [OC]
                    const c10::optional<torch::Tensor>& bias  // [OC]
) {
  CPU_KERNEL_GUARD_IN(cutlass_scaled_mm)
  // Checks for conformality
  TORCH_CHECK(a.dtype() == torch::kInt8 && b.dtype() == torch::kInt8,
              "int8_scaled_mm only supports INT8 inputs.")
  TORCH_CHECK(a.dim() == 2 && b.dim() == 2 && c.dim() == 2);
  TORCH_CHECK(c.size(0) == a.size(0) && a.size(1) == b.size(0) &&
              b.size(1) == c.size(1));
  TORCH_CHECK(a_scales.numel() == 1 || a_scales.numel() == a.size(0));
  TORCH_CHECK(b_scales.numel() == 1 || b_scales.numel() == b.size(1));

  // Check for strides and alignment
  TORCH_CHECK(a.stride(1) == 1 && c.stride(1) == 1);  // Row-major
  TORCH_CHECK(b.stride(0) == 1);                      // Column-major
  TORCH_CHECK(c.stride(0) % 16 == 0 &&
              b.stride(1) % 16 == 0);  // 16 Byte Alignment
  TORCH_CHECK(a_scales.is_contiguous() && b_scales.is_contiguous());

  if (bias) {
    TORCH_CHECK(bias->numel() == b.size(1) && bias->is_contiguous() &&
                bias->dim() == 1);
  }

380
  VLLM_DISPATCH_FLOATING_TYPES(c.scalar_type(), "int8_scaled_mm", [&] {
381
382
383
    if (a_scales.numel() != 1) {
      // per-token
      // Note: oneDNN doesn't support per-token activation quantization
384
385
386
387
388
389
390
391
      // Ideally we want to fuse the GEMM and the scale procedure with oneDNN
      // JIT, the intermediate data is cached in registers or L1. But for now
      // the oneDNN GEMM code generation only supports two quantization
      // patterns: per-tensor or per-output-channel of weight.
      // So we have to apply the per-token scale with a 'epilogue'. In C=s_a *
      // s_b * (A@B) + bias, the C_inter = s_b * (A@B) is computed by oneDNN
      // GEMM, then the per-token scale (and bias) is applied with the epilogue
      // C=s_a * C_inter + bias.
392
393
      torch::Tensor tmp_fp32_out =
          torch::empty_like(c, ::at::ScalarType::Float);
394
395
      // Compute C_inter=s_b * (A@B)
      DNNLPrimitiveHelper<true>::gemm_s8s8_jit<float, void>(
396
          a.data_ptr<int8_t>(), b.data_ptr<int8_t>(),
397
398
          tmp_fp32_out.data_ptr<float>(), nullptr, a.size(0), b.size(1),
          a.size(1), nullptr, b_scales.data_ptr<float>(), 0, b_scales.numel());
399
      if (bias.has_value()) {
400
401
        // Compute C=s_a * C_inter + bias
        dynamic_quant_epilogue<false, true, true>(
402
            tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
403
404
            a_scales.data_ptr<float>(), nullptr, nullptr, nullptr,
            bias->data_ptr<scalar_t>(), c.size(0), c.size(1));
405
      } else {
406
407
        // Compute C=s_a * C_inter
        dynamic_quant_epilogue<false, true, false, scalar_t>(
408
            tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
409
410
            a_scales.data_ptr<float>(), nullptr, nullptr, nullptr, nullptr,
            c.size(0), c.size(1));
411
412
413
414
      }
    } else {
      // per-tensor
      if (bias.has_value()) {
415
        // Compute C=s_a * s_b * (A@B) + bias
416
417
418
419
420
421
        DNNLPrimitiveHelper<false>::gemm_s8s8_jit(
            a.data_ptr<int8_t>(), b.data_ptr<int8_t>(), c.data_ptr<scalar_t>(),
            bias->data_ptr<scalar_t>(), a.size(0), b.size(1), a.size(1),
            a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
            a_scales.numel(), b_scales.numel());
      } else {
422
423
        // Compute C=s_a * s_b * (A@B)
        DNNLPrimitiveHelper<false>::gemm_s8s8_jit<scalar_t, void>(
424
            a.data_ptr<int8_t>(), b.data_ptr<int8_t>(), c.data_ptr<scalar_t>(),
425
            nullptr, a.size(0), b.size(1), a.size(1),
426
427
428
429
430
431
432
            a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
            a_scales.numel(), b_scales.numel());
      }
    }
  });
}

433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
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
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
void int8_scaled_mm_azp(torch::Tensor& c,        // [M, OC], row-major
                        const torch::Tensor& a,  // [M, IC], row-major
                        const torch::Tensor& b,  // [IC, OC], column-major
                        const torch::Tensor& a_scales,            // [1] or [M]
                        const torch::Tensor& b_scales,            // [1] or [OC]
                        const torch::Tensor& azp_adj,             // [OC]
                        const c10::optional<torch::Tensor>& azp,  // [1] or [M]
                        const c10::optional<torch::Tensor>& bias  // [OC]
) {
  CPU_KERNEL_GUARD_IN(cutlass_scaled_mm_azp)
  // Checks for conformality
  TORCH_CHECK(a.dtype() == torch::kInt8 && b.dtype() == torch::kInt8,
              "int8_scaled_mm_azp only supports INT8 inputs.")
  TORCH_CHECK(a.dim() == 2 && b.dim() == 2 && c.dim() == 2);
  TORCH_CHECK(c.size(0) == a.size(0) && a.size(1) == b.size(0) &&
              b.size(1) == c.size(1));
  TORCH_CHECK(a_scales.numel() == 1 || a_scales.numel() == a.size(0));
  TORCH_CHECK(b_scales.numel() == 1 || b_scales.numel() == b.size(1));

  // Check for strides and alignment
  TORCH_CHECK(a.stride(1) == 1 && c.stride(1) == 1);  // Row-major
  TORCH_CHECK(b.stride(0) == 1);                      // Column-major
  TORCH_CHECK(c.stride(0) % 16 == 0 &&
              b.stride(1) % 16 == 0);  // 16 Byte Alignment
  TORCH_CHECK(a_scales.is_contiguous() && b_scales.is_contiguous());

  if (bias) {
    TORCH_CHECK(bias->numel() == b.size(1) && bias->is_contiguous());
  }
  if (azp) {
    TORCH_CHECK(azp->numel() == a.size(0) && azp->is_contiguous());
  }
  TORCH_CHECK(azp_adj.numel() == b.size(1) && azp_adj.is_contiguous());

  // azp & bias types
  TORCH_CHECK(azp_adj.dtype() == torch::kInt32);
  TORCH_CHECK(!azp || azp->dtype() == torch::kInt32);
  TORCH_CHECK(!bias || bias->dtype() == c.dtype(),
              "currently bias dtype must match output dtype ", c.dtype());

  VLLM_DISPATCH_FLOATING_TYPES(c.scalar_type(), "int8_scaled_mm_azp", [&] {
    torch::Tensor tmp_fp32_out = torch::empty_like(c, ::at::ScalarType::Float);
    if (a_scales.numel() != 1) {
      // per-token
      // Note: oneDNN doesn't support per-token activation quantization
      // Compute C_inter=s_b * (A@B)
      DNNLPrimitiveHelper<true>::gemm_s8s8_jit<float, void>(
          a.data_ptr<int8_t>(), b.data_ptr<int8_t>(),
          tmp_fp32_out.data_ptr<float>(), nullptr, a.size(0), b.size(1),
          a.size(1), nullptr, b_scales.data_ptr<float>(), 0, b_scales.numel());
      if (bias.has_value()) {
        // Compute C=s_a * C_inter - s_a * s_b * azp * azp_adj + bias
        if (b_scales.numel() != 1) {
          // Per-Channel
          dynamic_quant_epilogue<true, true, true>(
              tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
              a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
              azp->data_ptr<int32_t>(), azp_adj.data_ptr<int32_t>(),
              bias->data_ptr<scalar_t>(), c.size(0), c.size(1));
        } else {
          // Per-Tensor
          dynamic_quant_epilogue<true, false, true>(
              tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
              a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
              azp->data_ptr<int32_t>(), azp_adj.data_ptr<int32_t>(),
              bias->data_ptr<scalar_t>(), c.size(0), c.size(1));
        }
      } else {
        // Compute C=s_a * C_inter - s_a * s_b * azp * azp_adj
        if (b_scales.numel() != 1) {
          // Per-Channel
          dynamic_quant_epilogue<true, true, false, scalar_t>(
              tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
              a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
              azp->data_ptr<int32_t>(), azp_adj.data_ptr<int32_t>(), nullptr,
              c.size(0), c.size(1));
        } else {
          // Per-Tensor
          dynamic_quant_epilogue<true, false, false, scalar_t>(
              tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
              a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
              azp->data_ptr<int32_t>(), azp_adj.data_ptr<int32_t>(), nullptr,
              c.size(0), c.size(1));
        }
      }
    } else {
      // per-tensor
      if (bias.has_value()) {
        // Compute C_inter=s_a * s_b * (A@B) + bias
        DNNLPrimitiveHelper<false>::gemm_s8s8_jit(
            a.data_ptr<int8_t>(), b.data_ptr<int8_t>(),
            tmp_fp32_out.data_ptr<float>(), bias->data_ptr<scalar_t>(),
            a.size(0), b.size(1), a.size(1), a_scales.data_ptr<float>(),
            b_scales.data_ptr<float>(), a_scales.numel(), b_scales.numel());
      } else {
        // Compute C_inter=s_a * s_b * (A@B)
        DNNLPrimitiveHelper<false>::gemm_s8s8_jit<float, void>(
            a.data_ptr<int8_t>(), b.data_ptr<int8_t>(),
            tmp_fp32_out.data_ptr<float>(), nullptr, a.size(0), b.size(1),
            a.size(1), a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
            a_scales.numel(), b_scales.numel());
      }

      // Compute C=C_inter - s_a * s_b * azp_adj
      if (b_scales.numel() != 1) {
        // Per-Channel
        static_quant_epilogue<true>(
            tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
            *a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
            azp_adj.data_ptr<int32_t>(), a.size(0), b.size(1));
      } else {
        // Per-Tensor
        static_quant_epilogue<false>(
            tmp_fp32_out.data_ptr<float>(), c.data_ptr<scalar_t>(),
            *a_scales.data_ptr<float>(), b_scales.data_ptr<float>(),
            azp_adj.data_ptr<int32_t>(), a.size(0), b.size(1));
      }
    }
  });
}

554
555
556
// static-per-tensor quantization.
void static_scaled_int8_quant(torch::Tensor& out,          // [..., hidden_size]
                              const torch::Tensor& input,  // [..., hidden_size]
557
558
                              const torch::Tensor& scale,
                              c10::optional<torch::Tensor> const& azp) {
559
560
561
562
  CPU_KERNEL_GUARD_IN(static_scaled_int8_quant)
  TORCH_CHECK(input.is_contiguous());
  TORCH_CHECK(out.is_contiguous());
  TORCH_CHECK(scale.numel() == 1);
563
  TORCH_CHECK(!azp.has_value() || azp->numel() == 1);
564
565
566
567
568

  const int hidden_size = input.size(-1);
  const int num_tokens = input.numel() / hidden_size;
  VLLM_DISPATCH_FLOATING_TYPES(
      input.scalar_type(), "static_scaled_int8_quant_impl", [&] {
569
570
571
572
573
574
575
576
577
578
        if (azp.has_value()) {
          static_scaled_int8_quant_impl<true>(
              input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(),
              scale.data_ptr<float>(), azp->data_ptr<int32_t>(), num_tokens,
              hidden_size);
        } else {
          static_scaled_int8_quant_impl<false>(
              input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(),
              scale.data_ptr<float>(), nullptr, num_tokens, hidden_size);
        }
579
580
581
582
583
584
585
      });
}

// dynamic-per-token quantization.
void dynamic_scaled_int8_quant(
    torch::Tensor& out,          // [..., hidden_size]
    const torch::Tensor& input,  // [..., hidden_size]
586
587
    torch::Tensor& scale,        // [..., 1]
    c10::optional<torch::Tensor> const& azp) {
588
589
590
591
592
593
594
595
  CPU_KERNEL_GUARD_IN(dynamic_scaled_int8_quant)
  TORCH_CHECK(input.is_contiguous());
  TORCH_CHECK(out.is_contiguous());

  int const hidden_size = input.size(-1);
  int const num_tokens = input.numel() / hidden_size;
  VLLM_DISPATCH_FLOATING_TYPES(
      input.scalar_type(), "dynamic_scaled_int8_quant_impl", [&] {
596
597
598
599
600
601
602
603
604
605
        if (azp.has_value()) {
          dynamic_scaled_int8_quant_impl<true>(
              input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(),
              scale.data_ptr<float>(), azp->data_ptr<int32_t>(), num_tokens,
              hidden_size);
        } else {
          dynamic_scaled_int8_quant_impl<false>(
              input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(),
              scale.data_ptr<float>(), nullptr, num_tokens, hidden_size);
        }
606
607
      });
}