"vscode:/vscode.git/clone" did not exist on "9883a1885970f53f88fd962c85dd406ade0966cd"
layernorm_utils.cuh 10.8 KB
Newer Older
1
2
3
4
5
6
7
#pragma once

/**
 * __device__ layernorm utilities.
 */

#include "quantization/vectorization.cuh"
8
#include "quantization/utils.cuh"
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
#include "quant_conversions.cuh"

#ifndef USE_ROCM
  #include <cub/cub.cuh>
#else
  #include <hipcub/hipcub.hpp>
#endif

namespace vllm {

// has_residual must be true, if residual is not a nullptr
template <typename scalar_t, bool has_residual = false>
__device__ void compute_rms(float* rms, scalar_t const* __restrict__ input,
                            int32_t const hidden_size, float const epsilon,
                            scalar_t const* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
  // sum of squares
  float ss = 0.0f;

28
  for (auto i = threadIdx.x; i < hidden_size; i += blockDim.x) {
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
    float x = static_cast<float>(input[token_offset + i]);
    if constexpr (has_residual) {
      x += static_cast<float>(residual[token_offset + i]);
    }

    ss += x * x;
  }

  using BlockReduce = cub::BlockReduce<float, 1024>;
  __shared__ typename BlockReduce::TempStorage reduceStore;
  ss = BlockReduce(reduceStore).Reduce(ss, cub::Sum{}, blockDim.x);

  __shared__ float s_rms;
  if (threadIdx.x == 0) {
    s_rms = rsqrtf(ss / hidden_size + epsilon);
  }
  __syncthreads();

  *rms = s_rms;
}

template <typename scalar_t, typename scalar_out_t, bool has_residual = false>
__device__ void compute_dynamic_per_token_scales(
    float* __restrict__ token_scale, float* __restrict__ all_token_scales,
    scalar_t const* __restrict__ input, scalar_t const* __restrict__ weight,
    float const rms, float const* __restrict__ scale_ub,
55
    int32_t const hidden_size,
56
57
58
    scalar_t const* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
  ;
59
  constexpr scalar_out_t qmax{quant_type_max_v<scalar_out_t>};
60
61

  float block_absmax_val_maybe = 0.0f;
62
  for (auto i = threadIdx.x; i < hidden_size; i += blockDim.x) {
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
    float x = static_cast<float>(input[token_offset + i]);
    if constexpr (has_residual) {
      x += static_cast<float>(residual[token_offset + i]);
    }

    x = static_cast<float>(static_cast<scalar_t>(x * rms) * weight[i]);
    block_absmax_val_maybe = fmaxf(block_absmax_val_maybe, fabsf(x));
  }

  using BlockReduce = cub::BlockReduce<float, 1024>;
  __shared__ typename BlockReduce::TempStorage reduceStore;
  block_absmax_val_maybe =
      BlockReduce(reduceStore)
          .Reduce(block_absmax_val_maybe, cub::Max{}, blockDim.x);

  __shared__ float s_token_scale;
  if (threadIdx.x == 0) {
    float scale = 0.0f;
    if (scale_ub) {
      scale = min(block_absmax_val_maybe, *scale_ub);
    } else {
      scale = block_absmax_val_maybe;
    }
    // token scale computation
87
    scale = max(scale / qmax, min_scaling_factor<scalar_out_t>::val());
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
    s_token_scale = scale;                 // Shared memory store
    all_token_scales[blockIdx.x] = scale;  // Global output store
  }
  __syncthreads();

  *token_scale = s_token_scale;
}

template <typename scalar_t, typename scalar_out_t, bool is_scale_inverted,
          bool has_residual = false>
__device__ void norm_and_quant(scalar_out_t* __restrict__ output,
                               scalar_t const* __restrict__ input,
                               scalar_t const* __restrict__ weight,
                               float const rms, float const scale,
                               int32_t const hidden_size,
                               scalar_t* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
  ;

107
  for (auto i = threadIdx.x; i < hidden_size; i += blockDim.x) {
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
    float x = static_cast<float>(input[token_offset + i]);
    if constexpr (has_residual) {
      x += static_cast<float>(residual[token_offset + i]);
      residual[token_offset + i] = static_cast<scalar_t>(x);
    }
    // Norm
    x = static_cast<float>(static_cast<scalar_t>(x * rms) * weight[i]);
    // Quant
    output[token_offset + i] =
        ScaledQuant<scalar_out_t, is_scale_inverted>::quant_fn(x, scale);
  }
}

namespace vectorized {

// Compute 1.0/rms(input)
// hidden_size must be a multiple of 4
template <typename scalar_t, bool has_residual = false>
__device__ void compute_rms(float* rms, scalar_t const* __restrict__ input,
                            int32_t const hidden_size, float const epsilon,
                            scalar_t const* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);

  // Vectorized input/output to better utilize memory bandwidth.
  vec4_t<scalar_t> const* vec_input =
      reinterpret_cast<vec4_t<scalar_t> const*>(&input[token_offset]);
  vec4_t<scalar_t> const* vec_residual = nullptr;
  if constexpr (has_residual) {
    vec_residual =
        reinterpret_cast<vec4_t<scalar_t> const*>(&residual[token_offset]);
  }

  // sum of squares
  float ss = 0.0f;

143
  const int VEC_SIZE = 4;
144
145
146
  int32_t const num_vec_elems = hidden_size >> 2;

#pragma unroll 4
147
  for (auto i = threadIdx.x; i < num_vec_elems; i += blockDim.x) {
148
149
150
    vec4_t<scalar_t> in = vec_input[i];

    vec4_t<float> x;
151
152
153
154
155
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      x.val[j] = static_cast<float>(in.val[j]);
    }

156
157
    if constexpr (has_residual) {
      vec4_t<scalar_t> r = vec_residual[i];
158
159
160
161
#pragma unroll
      for (int j = 0; j < VEC_SIZE; ++j) {
        x.val[j] += static_cast<float>(r.val[j]);
      }
162
163
    }

164
165
166
167
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      ss += x.val[j] * x.val[j];
    }
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
  }

  using BlockReduce = cub::BlockReduce<float, 1024>;
  __shared__ typename BlockReduce::TempStorage reduceStore;
  ss = BlockReduce(reduceStore).Reduce(ss, cub::Sum{}, blockDim.x);

  __shared__ float s_rms;
  if (threadIdx.x == 0) {
    s_rms = rsqrtf(ss / hidden_size + epsilon);
  }
  __syncthreads();

  *rms = s_rms;
}

// Vectorized version of vllm::compute_dynamic_per_token_scales
// hidden_size must be a multiple of 4
template <typename scalar_t, typename scalar_out_t, bool has_residual = false>
__device__ void compute_dynamic_per_token_scales(
    float* __restrict__ token_scale, float* __restrict__ all_token_scales,
    scalar_t const* __restrict__ input, scalar_t const* __restrict__ weight,
    float const rms, float const* __restrict__ scale_ub,
190
    int32_t const hidden_size,
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
    scalar_t const* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
  ;

  // Vectorized input/weight/residual to better utilize memory bandwidth.
  vec4_t<scalar_t> const* vec_input =
      reinterpret_cast<vec4_t<scalar_t> const*>(&input[token_offset]);
  vec4_t<scalar_t> const* vec_weight =
      reinterpret_cast<vec4_t<scalar_t> const*>(weight);
  vec4_t<scalar_t> const* vec_residual = nullptr;
  if constexpr (has_residual) {
    vec_residual =
        reinterpret_cast<vec4_t<scalar_t> const*>(&residual[token_offset]);
  }

206
  constexpr scalar_out_t qmax{quant_type_max_v<scalar_out_t>};
207

208
  const int VEC_SIZE = 4;
209
210
211
212
  int32_t const num_vec_elems = hidden_size >> 2;
  float block_absmax_val_maybe = 0.0f;

#pragma unroll 4
213
  for (auto i = threadIdx.x; i < num_vec_elems; i += blockDim.x) {
214
215
216
217
    vec4_t<scalar_t> in = vec_input[i];
    vec4_t<scalar_t> const w = vec_weight[i];

    vec4_t<float> x;
218
219
220
221
222
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      x.val[j] = static_cast<float>(in.val[j]);
    }

223
224
    if constexpr (has_residual) {
      vec4_t<scalar_t> r = vec_residual[i];
225
226
227
228
#pragma unroll
      for (int j = 0; j < VEC_SIZE; ++j) {
        x.val[j] += static_cast<float>(r.val[j]);
      }
229
230
    }

231
232
233
234
235
236
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      block_absmax_val_maybe =
          fmaxf(block_absmax_val_maybe,
                fabs(static_cast<scalar_t>(x.val[j] * rms) * w.val[j]));
    }
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
  }

  using BlockReduce = cub::BlockReduce<float, 1024>;
  __shared__ typename BlockReduce::TempStorage reduceStore;
  block_absmax_val_maybe =
      BlockReduce(reduceStore)
          .Reduce(block_absmax_val_maybe, cub::Max{}, blockDim.x);

  __shared__ float s_token_scale;
  if (threadIdx.x == 0) {
    float scale = 0.0f;
    if (scale_ub) {
      scale = min(block_absmax_val_maybe, *scale_ub);
    } else {
      scale = block_absmax_val_maybe;
    }
    // token scale computation
254
    scale = max(scale / qmax, min_scaling_factor<scalar_out_t>::val());
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
    s_token_scale = scale;                 // shared memory store
    all_token_scales[blockIdx.x] = scale;  // global output store
  }
  __syncthreads();

  *token_scale = s_token_scale;
}

// hidden_size must be a multiple of 4
template <typename scalar_t, typename scalar_out_t, bool is_scale_inverted,
          bool has_residual = false>
__device__ void norm_and_quant(scalar_out_t* __restrict__ output,
                               scalar_t const* __restrict__ input,
                               scalar_t const* __restrict__ weight,
                               float const rms, float const scale,
                               int32_t const hidden_size,
                               scalar_t* __restrict__ residual = nullptr) {
  int64_t const token_offset = blockIdx.x * static_cast<int64_t>(hidden_size);
  ;

  // Vectorized input/output/weight/residual to better utilize memory bandwidth.
  vec4_t<scalar_t> const* vec_input =
      reinterpret_cast<vec4_t<scalar_t> const*>(&input[token_offset]);
  vec4_t<scalar_t> const* vec_weight =
      reinterpret_cast<vec4_t<scalar_t> const*>(weight);
  q8x4_t<scalar_out_t>* vec_output =
      reinterpret_cast<q8x4_t<scalar_out_t>*>(&output[token_offset]);
  vec4_t<scalar_t>* vec_residual = nullptr;
  if constexpr (has_residual) {
    vec_residual = reinterpret_cast<vec4_t<scalar_t>*>(&residual[token_offset]);
  }

287
  const int VEC_SIZE = 4;
288
289
290
291
292
  int32_t const num_vec_elems = hidden_size >> 2;

// TODO(luka/varun) extract into type-agnostic vectorized quant function to
//  replace scaled_fp8_conversion_vec
#pragma unroll 4
293
  for (auto i = threadIdx.x; i < num_vec_elems; i += blockDim.x) {
294
295
296
297
    vec4_t<scalar_t> const in = vec_input[i];
    vec4_t<scalar_t> const w = vec_weight[i];

    vec4_t<float> x;
298
299
300
301
302
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      x.val[j] = static_cast<float>(in.val[j]);
    }

303
304
    if constexpr (has_residual) {
      vec4_t<scalar_t> r = vec_residual[i];
305
306
307
308
309
310
311
312
313
#pragma unroll
      for (int j = 0; j < VEC_SIZE; ++j) {
        x.val[j] += static_cast<float>(r.val[j]);
      }
// Update residual
#pragma unroll
      for (int j = 0; j < VEC_SIZE; ++j) {
        r.val[j] = static_cast<scalar_t>(x.val[j]);
      }
314
315
316
317
      vec_residual[i] = r;
    }

    q8x4_t<scalar_out_t> out;
318
319
320
321
322
#pragma unroll
    for (int j = 0; j < VEC_SIZE; ++j) {
      out.val[j] = ScaledQuant<scalar_out_t, is_scale_inverted>::quant_fn(
          static_cast<scalar_t>(x.val[j] * rms) * w.val[j], scale);
    }
323
324
325
326
327
328
329
    vec_output[i] = out;
  }
}

}  // namespace vectorized

}  // namespace vllm