torch_bindings.cpp 30.5 KB
Newer Older
1
2
3
#include "cache.h"
#include "cuda_utils.h"
#include "ops.h"
4
#include "core/registration.h"
5
6

#include <torch/library.h>
7
#include <torch/version.h>
8
9
10
11
12
13
14
15
16
17
18
19
20

// Note on op signatures:
// The X_meta signatures are for the meta functions corresponding to op X.
// They must be kept in sync with the signature for X. Generally, only
// functions that return Tensors require a meta function.
//
// See the following links for detailed docs on op registration and function
// schemas.
// https://docs.google.com/document/d/1_W62p8WJOQQUzPsJYa7s701JXt0qf2OfLub2sbkHOaU/edit#heading=h.ptttacy8y1u9
// https://github.com/pytorch/pytorch/blob/main/aten/src/ATen/native/README.md#annotations

TORCH_LIBRARY_EXPAND(TORCH_EXTENSION_NAME, ops) {
  // vLLM custom ops
21
22
23
24
25
26
27
28
29
  //

  // The default behavior in PyTorch 2.6 is "requires_contiguous", so we need
  // to override this for many GEMMs with the following tag. Otherwise,
  // torch.compile will force all input tensors to be contiguous(), which
  // will break many custom ops that require column-major weight matrices.
  // TODO: remove this for PyTorch 2.8, when the default is planned to switch
  // to match exact eager-mode strides.
  at::Tag stride_tag = at::Tag::needs_fixed_stride_order;
30

31
32
33
  ops.def("weak_ref_tensor(Tensor input) -> Tensor");
  ops.impl("weak_ref_tensor", torch::kCUDA, &weak_ref_tensor);

34
35
36
37
  ops.def("get_cuda_view_from_cpu_tensor(Tensor cpu_tensor) -> Tensor");
  ops.impl("get_cuda_view_from_cpu_tensor", torch::kCPU,
           &get_cuda_view_from_cpu_tensor);

38
39
40
41
42
43
44
45
46
  // Attention ops
  // Compute the attention between an input query and the cached
  // keys/values using PagedAttention.
  ops.def(
      "paged_attention_v1("
      "    Tensor! out, Tensor query, Tensor key_cache,"
      "    Tensor value_cache, int num_kv_heads, float scale,"
      "    Tensor block_tables, Tensor seq_lens, int block_size,"
      "    int max_seq_len, Tensor? alibi_slopes,"
47
      "    str kv_cache_dtype, Tensor k_scale, Tensor v_scale,"
48
      "    int tp_rank, int blocksparse_local_blocks,"
49
50
51
52
53
54
55
      "    int blocksparse_vert_stride, int blocksparse_block_size,"
      "    int blocksparse_head_sliding_step) -> ()");
  ops.impl("paged_attention_v1", torch::kCUDA, &paged_attention_v1);

  // PagedAttention V2.
  ops.def(
      "paged_attention_v2("
56
57
      "    Tensor! out, Tensor! exp_sums, Tensor! max_logits,"
      "    Tensor! tmp_out, Tensor query, Tensor key_cache,"
58
59
60
      "    Tensor value_cache, int num_kv_heads, float scale,"
      "    Tensor block_tables, Tensor seq_lens, int block_size,"
      "    int max_seq_len, Tensor? alibi_slopes,"
61
      "    str kv_cache_dtype, Tensor k_scale, Tensor v_scale,"
62
      "    int tp_rank, int blocksparse_local_blocks,"
63
64
65
66
      "    int blocksparse_vert_stride, int blocksparse_block_size,"
      "    int blocksparse_head_sliding_step) -> ()");
  ops.impl("paged_attention_v2", torch::kCUDA, &paged_attention_v2);

67
68
69
70
71
72
73
74
75
76
77
78
79
#ifndef USE_ROCM
  // Merge attn states
  // Implements section 2.2 of https://www.arxiv.org/pdf/2501.01005
  // can be used to combine partial attention results (in the split-KV case)
  ops.def(
      "merge_attn_states("
      "    Tensor! output,"
      "    Tensor!? output_lse,"
      "    Tensor prefix_output,"
      "    Tensor prefix_lse,"
      "    Tensor suffix_output,"
      "    Tensor suffix_lse) -> ()");
  ops.impl("merge_attn_states", torch::kCUDA, &merge_attn_states);
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102

  ops.def(
      "convert_vertical_slash_indexes("
      "   Tensor! block_count, Tensor! block_offset, "
      "   Tensor! column_count, Tensor! column_index, "
      "   Tensor q_seqlens, Tensor q_seqlens, "
      "   Tensor vertical_indexes, Tensor slash_indexes, "
      "   int context_size, int block_size_M, int block_size_N, "
      "   bool causal) -> ()");
  ops.impl("convert_vertical_slash_indexes", torch::kCUDA,
           &convert_vertical_slash_indexes);

  ops.def(
      "convert_vertical_slash_indexes_mergehead("
      "   Tensor! block_count, Tensor! block_offset, "
      "   Tensor! column_count, Tensor! column_index, "
      "   Tensor q_seqlens, Tensor q_seqlens, "
      "   Tensor vertical_indexes, Tensor slash_indexes, "
      "   Tensor vertical_indices_count, Tensor slash_indices_count, "
      "   int context_size, int block_size_M, int block_size_N, "
      "   bool causal) -> ()");
  ops.impl("convert_vertical_slash_indexes_mergehead", torch::kCUDA,
           &convert_vertical_slash_indexes_mergehead);
103
104
#endif

105
106
  // Activation ops
  // Activation function used in SwiGLU.
107
  ops.def("silu_and_mul(Tensor! result, Tensor input) -> ()");
108
109
  ops.impl("silu_and_mul", torch::kCUDA, &silu_and_mul);

110
111
112
113
  ops.def(
      "silu_and_mul_quant(Tensor! result, Tensor input, Tensor scale) -> ()");
  ops.impl("silu_and_mul_quant", torch::kCUDA, &silu_and_mul_quant);

114
115
116
  ops.def("mul_and_silu(Tensor! out, Tensor input) -> ()");
  ops.impl("mul_and_silu", torch::kCUDA, &mul_and_silu);

117
118
119
120
121
122
123
124
  // Activation function used in GeGLU with `none` approximation.
  ops.def("gelu_and_mul(Tensor! out, Tensor input) -> ()");
  ops.impl("gelu_and_mul", torch::kCUDA, &gelu_and_mul);

  // Activation function used in GeGLU with `tanh` approximation.
  ops.def("gelu_tanh_and_mul(Tensor! out, Tensor input) -> ()");
  ops.impl("gelu_tanh_and_mul", torch::kCUDA, &gelu_tanh_and_mul);

125
126
127
128
  // FATReLU implementation.
  ops.def("fatrelu_and_mul(Tensor! out, Tensor input, float threshold) -> ()");
  ops.impl("fatrelu_and_mul", torch::kCUDA, &fatrelu_and_mul);

129
130
131
132
133
134
135
136
  // GELU implementation used in GPT-2.
  ops.def("gelu_new(Tensor! out, Tensor input) -> ()");
  ops.impl("gelu_new", torch::kCUDA, &gelu_new);

  // Approximate GELU implementation.
  ops.def("gelu_fast(Tensor! out, Tensor input) -> ()");
  ops.impl("gelu_fast", torch::kCUDA, &gelu_fast);

137
138
139
140
  // Quick GELU implementation.
  ops.def("gelu_quick(Tensor! out, Tensor input) -> ()");
  ops.impl("gelu_quick", torch::kCUDA, &gelu_quick);

141
  // prepare_inputs advance_step
142
  ops.def(
143
      "advance_step_flashattn(int num_seqs, int num_queries, int block_size, "
144
145
146
      "Tensor! input_tokens, Tensor sampled_token_ids, "
      "Tensor! input_positions, Tensor! seq_lens, Tensor! slot_mapping, "
      "Tensor block_tables) -> ()");
147
148
149
150
151
152
153
154
155
156
157
158
  ops.impl("advance_step_flashattn", torch::kCUDA, &advance_step_flashattn);

  ops.def(
      "advance_step_flashinfer("
      "    int num_seqs, int num_queries, int block_size,"
      "    Tensor! input_tokens, Tensor sampled_token_ids,"
      "    Tensor! input_positions, Tensor! seq_lens, Tensor! slot_mapping,"
      "    Tensor block_tables, Tensor! paged_kv_indices,"
      "    Tensor! paged_kv_indptr, Tensor! paged_kv_last_page_len,"
      "    Tensor! block_table_bounds"
      ") -> ()");
  ops.impl("advance_step_flashinfer", torch::kCUDA, &advance_step_flashinfer);
159

160
161
162
  // Layernorm
  // Apply Root Mean Square (RMS) Normalization to the input tensor.
  ops.def(
163
      "rms_norm(Tensor! result, Tensor input, Tensor weight, float epsilon) -> "
164
165
166
167
168
169
170
171
172
      "()");
  ops.impl("rms_norm", torch::kCUDA, &rms_norm);

  // In-place fused Add and RMS Normalization.
  ops.def(
      "fused_add_rms_norm(Tensor! input, Tensor! residual, Tensor weight, "
      "float epsilon) -> ()");
  ops.impl("fused_add_rms_norm", torch::kCUDA, &fused_add_rms_norm);

173
174
175
176
177
178
179
  // Apply repetition penalties to logits in-place
  ops.def(
      "apply_repetition_penalties_(Tensor! logits, Tensor prompt_mask, "
      "Tensor output_mask, Tensor repetition_penalties) -> ()");
  ops.impl("apply_repetition_penalties_", torch::kCUDA,
           &apply_repetition_penalties_);

180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
  // Layernorm-quant
  // Apply Root Mean Square (RMS) Normalization to the input tensor.
  ops.def(
      "rms_norm_static_fp8_quant(Tensor! result, Tensor input, Tensor weight, "
      "Tensor scale, float epsilon) -> "
      "()");
  ops.impl("rms_norm_static_fp8_quant", torch::kCUDA,
           &rms_norm_static_fp8_quant);

  // In-place fused Add and RMS Normalization.
  ops.def(
      "fused_add_rms_norm_static_fp8_quant(Tensor! result, Tensor input, "
      "Tensor! residual, Tensor weight, "
      "Tensor scale, float epsilon) -> ()");
  ops.impl("fused_add_rms_norm_static_fp8_quant", torch::kCUDA,
           &fused_add_rms_norm_static_fp8_quant);

197
198
199
200
201
202
203
204
  // Fused Layernorm + Quant kernels
  ops.def(
      "rms_norm_dynamic_per_token_quant(Tensor! result, Tensor input, "
      "Tensor weight, Tensor! scale, float epsilon, "
      "Tensor? scale_ub, Tensor!? residual) -> ()");
  ops.impl("rms_norm_dynamic_per_token_quant", torch::kCUDA,
           &rms_norm_dynamic_per_token_quant);

205
206
207
208
  // Rotary embedding
  // Apply GPT-NeoX or GPT-J style rotary embedding to query and key.
  ops.def(
      "rotary_embedding(Tensor positions, Tensor! query,"
209
      "                 Tensor!? key, int head_size,"
210
211
212
213
214
215
216
      "                 Tensor cos_sin_cache, bool is_neox) -> ()");
  ops.impl("rotary_embedding", torch::kCUDA, &rotary_embedding);

  // Apply GPT-NeoX or GPT-J style rotary embedding to query and key
  // (supports multiple loras).
  ops.def(
      "batched_rotary_embedding(Tensor positions, Tensor! query,"
217
      "                         Tensor!? key, int head_size,"
218
219
220
221
222
223
224
225
      "                         Tensor cos_sin_cache, bool is_neox,"
      "                         int rot_dim,"
      "                         Tensor cos_sin_cache_offsets) -> ()");
  ops.impl("batched_rotary_embedding", torch::kCUDA, &batched_rotary_embedding);

  // Quantization ops
#ifndef USE_ROCM
  // Quantized GEMM for AQLM.
226
227
228
  ops.def(
      "aqlm_gemm(Tensor input, Tensor codes, Tensor codebooks, "
      "Tensor scales, int[] codebook_partition_sizes, Tensor? bias) "
229
230
      "-> Tensor",
      {stride_tag});
231
232
233
  ops.impl("aqlm_gemm", torch::kCUDA, &aqlm_gemm);

  // Decompression method for AQLM.
234
235
  ops.def(
      "aqlm_dequant(Tensor codes, Tensor codebooks, "
236
237
      "int[] codebook_partition_sizes) -> Tensor",
      {stride_tag});
238
239
240
  ops.impl("aqlm_dequant", torch::kCUDA, &aqlm_dequant);

  // Quantized GEMM for AWQ.
241
242
  ops.def(
      "awq_gemm(Tensor _in_feats, Tensor _kernel, Tensor _scaling_factors, "
243
244
      "Tensor _zeros, SymInt split_k_iters) -> Tensor",
      {stride_tag});
245
246
247
  ops.impl("awq_gemm", torch::kCUDA, &awq_gemm);

  // Dequantization for AWQ.
248
249
  ops.def(
      "awq_dequantize(Tensor _kernel, Tensor _scaling_factors, "
250
251
      "Tensor _zeros, SymInt split_k_iters, int thx, int thy) -> Tensor",
      {stride_tag});
252
253
  ops.impl("awq_dequantize", torch::kCUDA, &awq_dequantize);

254
255
256
257
258
259
260
261
262
263
264
265
266
267
  // Note about marlin kernel 'workspace' arguments:
  // Technically these should be mutable since they are modified by the kernel.
  // But since they are set back to zero once the kernel is finished we can
  // hand wave and say that they have no net effect.
  //
  // The reason to mark 'workspace' as immutable is so that they don't interfere
  // with using ScalarType arguments in the ops. If they are marked as mutable,
  // pytorch throws an assert in
  // 'torch._higher_order_ops._register_effectful_op' that prevents these
  // kernels from being torch.compile'd.
  // See the following document for more info on custom types and ops that use
  // custom types:
  // https://docs.google.com/document/d/18fBMPuOJ0fY5ZQ6YyrHUppw9FA332CpNtgB6SOIgyuA

268
  // Marlin (Dense) Optimized Quantized GEMM for GPTQ.
269
270
  ops.def(
      "marlin_gemm(Tensor a, Tensor b_q_weight, Tensor b_scales, "
271
      "Tensor! workspace, SymInt size_m, SymInt size_n, SymInt size_k) -> "
272
273
      "Tensor",
      {stride_tag});
274
  // conditionally compiled so impl in source file
275
276

  // Marlin_24 (Sparse) Optimized Quantized GEMM for GPTQ.
277
278
279
  ops.def(
      "gptq_marlin_24_gemm(Tensor a, Tensor b_q_weight, Tensor b_meta, "
      "Tensor b_scales, Tensor workspace, "
280
      "int b_q_type, "
281
282
      "SymInt size_m, SymInt size_n, SymInt size_k) -> Tensor",
      {stride_tag});
283
  //  conditionally compiled so impl in source file
284

285
  // Machete (Dense) Optimized Mixed Precision GEMM for Hopper.
286
  ops.def(
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
      "machete_supported_schedules("
      "   ScalarType a_type,"
      "   int b_type,"
      "   ScalarType? maybe_group_scales_type,"
      "   ScalarType? maybe_group_zeros_type,"
      "   ScalarType? maybe_channel_scales_type,"
      "   ScalarType? maybe_token_scales_type,"
      "   ScalarType? maybe_out_type"
      ") -> str[]");
  ops.def(
      "machete_mm("
      "   Tensor A,"
      "   Tensor B,"
      "   int b_type,"
      "   ScalarType? out_type,"
      "   Tensor? group_scales,"
      "   Tensor? group_zeros,"
      "   int?    group_size,"
      "   Tensor? channel_scales,"
      "   Tensor? token_scales,"
      "   str?    schedule"
308
309
      ") -> Tensor",
      {stride_tag});
310
311
312
313
314
315
316
  ops.def(
      "machete_prepack_B("
      "   Tensor B,"
      "   ScalarType a_type,"
      "   int b_type,"
      "   ScalarType? group_scales_type"
      ") -> Tensor");
317
  // conditionally compiled so impl registration is in source file
318

319
320
321
  ops.def("permute_cols(Tensor A, Tensor perm) -> Tensor");
  ops.impl("permute_cols", torch::kCUDA, &permute_cols);

322
  // gptq_marlin Optimized Quantized GEMM for GPTQ.
323
  ops.def(
324
      "gptq_marlin_gemm(Tensor a, Tensor? c_or_none, Tensor b_q_weight, "
325
326
      "Tensor b_scales, Tensor? global_scale, Tensor? b_zeros_or_none, Tensor? "
      "g_idx_or_none, Tensor? perm_or_none, Tensor workspace, int b_q_type, "
327
      "SymInt size_m, SymInt size_n, SymInt size_k, bool is_k_full, "
328
      "bool use_atomic_add, bool use_fp32_reduce, bool is_zp_float) -> Tensor",
329
      {stride_tag});
330
  // conditionally compiled so impl registration is in source file
331
332

  // gptq_marlin repack from GPTQ.
333
334
335
  ops.def(
      "gptq_marlin_repack(Tensor b_q_weight, Tensor perm, "
      "SymInt size_k, SymInt size_n, int num_bits) -> Tensor");
336
  // conditionally compiled so impl registrations are in source file
337

338
  // awq_marlin repack from AWQ.
339
340
341
  ops.def(
      "awq_marlin_repack(Tensor b_q_weight, SymInt size_k, "
      "SymInt size_n, int num_bits) -> Tensor");
342
  // conditionally compiled so impl registrations are in source file
343
#endif
344

345
  // Dequantization for GGML.
346
347
348
  ops.def(
      "ggml_dequantize(Tensor W, int type, SymInt m, SymInt n, ScalarType? "
      "dtype) -> Tensor");
349
350
351
  ops.impl("ggml_dequantize", torch::kCUDA, &ggml_dequantize);

  // mmvq kernel for GGML.
352
  ops.def(
353
      "ggml_mul_mat_vec_a8(Tensor W, Tensor X, int type, SymInt row) "
354
      "-> Tensor");
355
356
357
  ops.impl("ggml_mul_mat_vec_a8", torch::kCUDA, &ggml_mul_mat_vec_a8);

  // mmq kernel for GGML.
358
359
  ops.def(
      "ggml_mul_mat_a8(Tensor W, Tensor X, int type, SymInt row) -> Tensor");
360
361
  ops.impl("ggml_mul_mat_a8", torch::kCUDA, &ggml_mul_mat_a8);

362
363
364
365
366
367
368
369
  // moe kernel for GGML.
  ops.def(
      "ggml_moe_a8(Tensor X, Tensor W, "
      "Tensor sorted_token_ids, Tensor expert_ids, Tensor "
      "num_tokens_post_padded, "
      "int type, SymInt row, SymInt top_k, SymInt tokens) -> Tensor");
  ops.impl("ggml_moe_a8", torch::kCUDA, &ggml_moe_a8);

370
371
372
373
374
375
  ops.def(
      "ggml_moe_a8_vec(Tensor X, Tensor W, "
      "Tensor topk_ids, int top_k, "
      "int type, SymInt row, SymInt tokens) -> Tensor");
  ops.impl("ggml_moe_a8_vec", torch::kCUDA, &ggml_moe_a8_vec);

376
377
  ops.def("ggml_moe_get_block_size", &ggml_moe_get_block_size);

378
#ifndef USE_ROCM
379
  // marlin_qqq_gemm for QQQ.
380
381
382
  ops.def(
      "marlin_qqq_gemm(Tensor a, Tensor b_q_weight, "
      "Tensor s_tok, Tensor s_ch, Tensor s_group, "
383
      "Tensor! workspace, SymInt size_m, SymInt size_n, "
384
385
      "SymInt size_k) -> Tensor",
      {stride_tag});
386
  // conditionally compiled so impl registration is in source file
387

388
389
390
391
  // CUTLASS nvfp4 block scaled GEMM
  ops.def(
      "cutlass_scaled_fp4_mm(Tensor! out, Tensor a, Tensor b,"
      "                      Tensor block_scale_a, Tensor block_scale_b,"
392
393
      "                      Tensor alpha) -> ()",
      {stride_tag});
394
395
  ops.impl("cutlass_scaled_fp4_mm", torch::kCUDA, &cutlass_scaled_fp4_mm);

396
397
398
399
400
401
  // cutlass blockwise scaledgroup GEMM
  ops.def(
      "cutlass_blockwise_scaled_grouped_mm(Tensor! output, Tensor a, Tensor b, "
      "Tensor scales_a, Tensor scales_b, "
      "Tensor problem_sizes, Tensor expert_offsets) -> ()",
      {stride_tag});
402
  // conditionally compiled so impl registration is in source file
403

404
405
406
407
408
409
410
411
  // cutlass nvfp4 block scaled group GEMM
  ops.def(
      "cutlass_fp4_group_mm(Tensor! out, Tensor a, Tensor b,"
      " Tensor a_blockscale, Tensor b_blockscales, Tensor alphas,"
      " Tensor problem_sizes, Tensor expert_offsets, Tensor sf_offsets) -> ()",
      {stride_tag});
  ops.impl("cutlass_fp4_group_mm", torch::kCUDA, &cutlass_fp4_group_mm);

412
  // CUTLASS w8a8 GEMM, supporting symmetric per-tensor or per-row/column
413
  // quantization, as well as bias
414
  ops.def(
415
416
      "cutlass_scaled_mm(Tensor! out, Tensor a,"
      "                  Tensor b, Tensor a_scales,"
417
418
      "                  Tensor b_scales, Tensor? bias) -> ()",
      {stride_tag});
419
  ops.impl("cutlass_scaled_mm", torch::kCUDA, &cutlass_scaled_mm);
420

421
422
423
424
425
426
  // CUTLASS w8a8 GEMM, supporting asymmetric per-tensor or per-row/column
  // quantization.
  ops.def(
      "cutlass_scaled_mm_azp(Tensor! out, Tensor a,"
      "                  Tensor b, Tensor a_scales,"
      "                  Tensor b_scales, Tensor azp_adj,"
427
428
      "                  Tensor? azp, Tensor? bias) -> ()",
      {stride_tag});
429
430
  ops.impl("cutlass_scaled_mm_azp", torch::kCUDA, &cutlass_scaled_mm_azp);

431
432
  // Check if cutlass scaled_mm is supported for CUDA devices of the given
  // capability
433
434
435
  ops.def("cutlass_scaled_mm_supports_fp8(int cuda_device_capability) -> bool");
  ops.impl("cutlass_scaled_mm_supports_fp8", &cutlass_scaled_mm_supports_fp8);

436
437
438
439
440
441
442
443
444
445
  // Check if cutlass grouped gemm is supported for CUDA devices of the given
  // capability
  ops.def("cutlass_group_gemm_supported(int cuda_device_capability) -> bool");
  ops.impl("cutlass_group_gemm_supported", &cutlass_group_gemm_supported);

  // CUTLASS w8a8 grouped GEMM
  ops.def(
      "cutlass_moe_mm(Tensor! out_tensors, Tensor a_tensors, Tensor b_tensors, "
      "               Tensor a_scales, Tensor b_scales, Tensor expert_offsets, "
      "               Tensor problem_sizes, Tensor a_strides, "
446
447
      "               Tensor b_strides, Tensor c_strides, bool per_act_token, "
      "               bool per_out_ch) -> ()",
448
449
450
451
452
453
454
455
456
457
458
459
460
461
      {stride_tag});
  ops.impl("cutlass_moe_mm", torch::kCUDA, &cutlass_moe_mm);

  // A function that computes data required to run fused MoE with w8a8 grouped
  // GEMM. It takes topk_ids as an input, and computes expert_offsets
  // (token start indices of each expert). In addition to this, it computes
  // problem sizes for each expert's multiplication used by the two mms called
  // from fused MoE operation, and arrays with permutations required to shuffle
  // and de-shuffle the input/output of the fused operation.
  ops.def(
      "get_cutlass_moe_mm_data(Tensor topk_ids, Tensor! expert_offsets, "
      "                        Tensor! problem_sizes1, Tensor! problem_sizes2, "
      "                        Tensor! input_permutation, "
      "                        Tensor! output_permutation, int num_experts, "
462
      "                        int n, int k, Tensor? blockscale_offsets) -> ()",
463
464
465
      {stride_tag});
  ops.impl("get_cutlass_moe_mm_data", torch::kCUDA, &get_cutlass_moe_mm_data);

466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
  // A function that computes data required to run fused MoE with w8a8 grouped
  // GEMM and PPLX. It takes expert_num_tokens and non_zero_expert_idxs
  // as an input, and computes expert_offsets (token start indices of each
  // expert). In addition to this, it computes problem sizes for each expert's
  // multiplication used by the two mms called from fused MoE operation.
  ops.def(
      "get_cutlass_pplx_moe_mm_data(Tensor! expert_offsets, "
      "                             Tensor! problem_sizes1, "
      "                             Tensor! problem_sizes2, "
      "                             Tensor expert_num_tokens, "
      "                             int num_local_experts, int padded_m, "
      "                             int n, int k) -> ()",
      {stride_tag});
  ops.impl("get_cutlass_pplx_moe_mm_data", torch::kCUDA,
           &get_cutlass_pplx_moe_mm_data);

482
483
484
485
486
  // Check if cutlass scaled_mm supports block quantization (used by DeepSeekV3)
  ops.def(
      "cutlass_scaled_mm_supports_block_fp8(int cuda_device_capability) -> "
      "bool");
  ops.impl("cutlass_scaled_mm_supports_block_fp8",
487
           &cutlass_scaled_mm_supports_block_fp8);
488

489
490
491
492
493
494
495
  // Check if cutlass sparse scaled_mm is supported for CUDA devices of the
  // given capability
  ops.def(
      "cutlass_sparse_scaled_mm_supported(int cuda_device_capability) -> bool");
  ops.impl("cutlass_sparse_scaled_mm_supported",
           &cutlass_sparse_scaled_mm_supported);

496
497
498
499
500
501
  // CUTLASS sparse GEMM, supporting symmetric per-tensor or per-row/column
  // quantization, as well as bias
  ops.def(
      "cutlass_scaled_sparse_mm(Tensor! out, Tensor a,"
      "                         Tensor bt_nzs,"
      "                         Tensor bt_meta, Tensor a_scales,"
502
503
      "                         Tensor b_scales, Tensor? bias) -> ()",
      {stride_tag});
504
505
506
  ops.impl("cutlass_scaled_sparse_mm", torch::kCUDA, &cutlass_scaled_sparse_mm);

  // CUTLASS sparse matrix compressor
507
508
  ops.def("cutlass_sparse_compress(Tensor a) -> Tensor[]");
  ops.impl("cutlass_sparse_compress", &cutlass_sparse_compress);
509

510
511
512
513
514
515
516
  // CUTLASS MLA decode
  ops.def(
      "cutlass_mla_decode(Tensor! out, Tensor q_nope, Tensor q_pe,"
      "                   Tensor kv_c_and_k_pe_cache, Tensor seq_lens,"
      "                   Tensor page_table, float scale) -> ()");
  ops.impl("cutlass_mla_decode", torch::kCUDA, &cutlass_mla_decode);

517
518
519
520
521
522
  // Compute NVFP4 block quantized tensor.
  ops.def(
      "scaled_fp4_quant(Tensor! output, Tensor input,"
      "                 Tensor! output_scale, Tensor input_scale) -> ()");
  ops.impl("scaled_fp4_quant", torch::kCUDA, &scaled_fp4_quant);

523
524
525
526
527
528
529
  // Compute NVFP4 experts quantization.
  ops.def(
      "scaled_fp4_experts_quant(Tensor! output, Tensor! output_scale,"
      "Tensor input, Tensor input_global_scale, Tensor input_offset_by_experts,"
      "Tensor output_scale_offset_by_experts) -> ()");
  ops.impl("scaled_fp4_experts_quant", torch::kCUDA, &scaled_fp4_experts_quant);

530
531
532
533
  // Check if cutlass_scaled_mm_fp4 is supported for CUDA devices
  // of the given capability
  ops.def("cutlass_scaled_mm_supports_fp4(int cuda_device_capability) -> bool");
  ops.impl("cutlass_scaled_mm_supports_fp4", &cutlass_scaled_mm_supports_fp4);
534
535
536
#endif

  // Quantized GEMM for GPTQ.
537
538
539
540
541
  // Note: even though the C++ inferred schema is correct for this op, it seems
  // to prevent the meta function registry.
  ops.def(
      "gptq_gemm(Tensor a, Tensor b_q_weight, Tensor b_gptq_qzeros, "
      "Tensor b_gptq_scales, Tensor b_g_idx, bool use_exllama, int bit) "
542
543
      "-> Tensor",
      {stride_tag});
544
545
546
547
548
549
550
551
  ops.impl("gptq_gemm", torch::kCUDA, &gptq_gemm);

  // Post processing for GPTQ.
  ops.def("gptq_shuffle(Tensor! q_weight, Tensor q_perm, int bit) -> ()");
  ops.impl("gptq_shuffle", torch::kCUDA, &gptq_shuffle);

  // Compute FP8 quantized tensor for given scaling factor.
  ops.def(
552
553
      "static_scaled_fp8_quant(Tensor! result, Tensor input, Tensor scale) -> "
      "()");
554
555
  ops.impl("static_scaled_fp8_quant", torch::kCUDA, &static_scaled_fp8_quant);

556
  // Compute dynamic-per-tensor FP8 quantized tensor and scaling factor.
557
  ops.def(
558
559
      "dynamic_scaled_fp8_quant(Tensor! result, Tensor input, Tensor! scale) "
      "-> "
560
561
562
      "()");
  ops.impl("dynamic_scaled_fp8_quant", torch::kCUDA, &dynamic_scaled_fp8_quant);

563
564
  // Compute dynamic-per-token FP8 quantized tensor and scaling factor.
  ops.def(
565
      "dynamic_per_token_scaled_fp8_quant(Tensor! result, Tensor input, "
566
      "Tensor! scale, Tensor? scale_ub) -> "
567
568
569
570
      "()");
  ops.impl("dynamic_per_token_scaled_fp8_quant", torch::kCUDA,
           &dynamic_per_token_scaled_fp8_quant);

571
572
  // Compute int8 quantized tensor for given scaling factor.
  ops.def(
573
      "static_scaled_int8_quant(Tensor! result, Tensor input, Tensor scale,"
574
      "Tensor? azp) -> ()");
575
576
577
578
  ops.impl("static_scaled_int8_quant", torch::kCUDA, &static_scaled_int8_quant);

  // Compute int8 quantized tensor and scaling factor
  ops.def(
579
      "dynamic_scaled_int8_quant(Tensor! result, Tensor input, Tensor! scale, "
580
      "Tensor!? azp) -> ()");
581
582
  ops.impl("dynamic_scaled_int8_quant", torch::kCUDA,
           &dynamic_scaled_int8_quant);
583

584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
  // Mamba selective scan kernel
  ops.def(
      "selective_scan_fwd(Tensor! u, Tensor! delta,"
      "Tensor! A, Tensor! B, Tensor! C,"
      "Tensor? D_, Tensor!? z_, Tensor? delta_bias_,"
      "bool delta_softplus,"
      "Tensor? query_start_loc,"
      "Tensor? cache_indices,"
      "Tensor? has_initial_state,"
      "Tensor! ssm_states,"
      "int pad_slot_id) -> ()");
  ops.impl("selective_scan_fwd", torch::kCUDA, &selective_scan_fwd);

  ops.def(
      "causal_conv1d_update(Tensor! x,"
      "Tensor! conv_state,"
      "Tensor! weight,"
      "Tensor? bias_,"
      "bool silu_activation,"
      "Tensor? cache_seqlens_,"
      "Tensor? conv_state_indices,"
      "int pad_slot_id) -> ()");
  ops.impl("causal_conv1d_update", torch::kCUDA, &causal_conv1d_update);

  ops.def(
      "causal_conv1d_fwd(Tensor! x, Tensor! weight,"
      "Tensor? bias_,"
      "Tensor!? conv_states,"
      "Tensor? query_start_loc,"
      "Tensor? cache_indices,"
      "Tensor? has_initial_state,"
      "bool silu_activation,"
      "int pad_slot_id) -> ()");
  ops.impl("causal_conv1d_fwd", torch::kCUDA, &causal_conv1d_fwd);

619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
#ifndef USE_ROCM
  // reorder weight for AllSpark Ampere W8A16 Fused Gemm kernel
  ops.def(
      "rearrange_kn_weight_as_n32k16_order(Tensor b_qweight, Tensor b_scales, "
      "Tensor? b_zeros, "
      "bool has_zp, Tensor! b_qweight_reorder, Tensor! b_scales_reorder, "
      "Tensor!? b_zeros_reorder, "
      "int K, int N, int N_32align) -> ()");
  //  conditionally compiled so impl in source file

  // AllSpark quantization ops
  ops.def(
      "allspark_w8a16_gemm(Tensor a, Tensor b_qweight, Tensor b_scales, "
      "Tensor? b_qzeros, "
      "SymInt n, SymInt group_size, SymInt sm_count, SymInt sm_version, SymInt "
      "CUBLAS_M_THRESHOLD, bool has_zp, bool n32k16_reorder) -> Tensor");
  //  conditionally compiled so impl in source file
#endif
637
638
639
640
641
642
643
644
645
646
647
}

TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _cache_ops), cache_ops) {
  // Cache ops
  // Swap in (out) the cache blocks from src to dst.
  cache_ops.def(
      "swap_blocks(Tensor src, Tensor! dst, Tensor block_mapping) -> ()");
  cache_ops.impl("swap_blocks", torch::kCUDA, &swap_blocks);

  // Copy the cache blocks from src to dst.
  cache_ops.def(
648
649
      "copy_blocks(Tensor(a!)[] key_caches, Tensor[](b!) value_caches, "
      "Tensor block_mapping) -> ()");
650
651
  cache_ops.impl("copy_blocks", torch::kCUDA, &copy_blocks);

652
653
654
655
  cache_ops.def(
      "copy_blocks_mla(Tensor(a!)[] kv_caches, Tensor block_mapping) -> ()");
  cache_ops.impl("copy_blocks_mla", torch::kCUDA, &copy_blocks_mla);

656
657
658
659
660
661
  // Reshape the key and value tensors and cache them.
  cache_ops.def(
      "reshape_and_cache(Tensor key, Tensor value,"
      "                  Tensor! key_cache, Tensor! value_cache,"
      "                  Tensor slot_mapping,"
      "                  str kv_cache_dtype,"
662
      "                  Tensor k_scale, Tensor v_scale) -> ()");
663
664
665
666
667
668
669
670
  cache_ops.impl("reshape_and_cache", torch::kCUDA, &reshape_and_cache);

  // Reshape the key and value tensors and cache them.
  cache_ops.def(
      "reshape_and_cache_flash(Tensor key, Tensor value,"
      "                        Tensor! key_cache,"
      "                        Tensor! value_cache,"
      "                        Tensor slot_mapping,"
671
      "                        str kv_cache_dtype,"
672
      "                        Tensor k_scale, Tensor v_scale) -> ()");
673
674
675
  cache_ops.impl("reshape_and_cache_flash", torch::kCUDA,
                 &reshape_and_cache_flash);

676
677
678
679
680
681
682
683
684
  // Concat kv_c and k_pe and cache them.
  cache_ops.def(
      "concat_and_cache_mla(Tensor kv_c, Tensor k_pe,"
      "                     Tensor! kv_cache,"
      "                     Tensor slot_mapping,"
      "                     str kv_cache_dtype,"
      "                     Tensor scale) -> ()");
  cache_ops.impl("concat_and_cache_mla", torch::kCUDA, &concat_and_cache_mla);

685
686
  // Convert the key and value cache to fp8 data type.
  cache_ops.def(
687
688
      "convert_fp8(Tensor! dst_cache, Tensor src_cache, float scale, "
      "str kv_cache_dtype) -> ()");
689
  cache_ops.impl("convert_fp8", torch::kCUDA, &convert_fp8);
690
691
692
693
694
695

  // Gather cache blocks from src_cache to dst.
  cache_ops.def(
      "gather_cache(Tensor src_cache, Tensor! dst, Tensor block_table, "
      "Tensor cu_seq_lens, int batch_size, Tensor? seq_starts) -> ()");
  cache_ops.impl("gather_cache", torch::kCUDA, &gather_cache);
696
697
698
699
700
701
}

TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _cuda_utils), cuda_utils) {
  // Cuda utils

  // Gets the specified device attribute.
702
703
  cuda_utils.def("get_device_attribute(int attribute, int device_id) -> int");
  cuda_utils.impl("get_device_attribute", &get_device_attribute);
704
705

  // Gets the maximum shared memory per block device attribute.
706
707
  cuda_utils.def(
      "get_max_shared_memory_per_block_device_attribute(int device_id) -> int");
708
709
710
711
712
713
  cuda_utils.impl("get_max_shared_memory_per_block_device_attribute",
                  &get_max_shared_memory_per_block_device_attribute);
}

TORCH_LIBRARY_EXPAND(CONCAT(TORCH_EXTENSION_NAME, _custom_ar), custom_ar) {
  // Custom all-reduce kernels
714
  custom_ar.def(
715
      "init_custom_ar(int[] ipc_tensors, Tensor rank_data, "
716
      "int rank, bool fully_connected) -> int");
717
718
  custom_ar.impl("init_custom_ar", torch::kCUDA, &init_custom_ar);
  custom_ar.def(
719
720
721
      "all_reduce(int fa, Tensor inp, Tensor! out, int reg_buffer, "
      "int reg_buffer_sz_bytes) -> ()");
  custom_ar.impl("all_reduce", torch::kCUDA, &all_reduce);
722
723
724
725

  custom_ar.def("dispose", &dispose);
  custom_ar.def("meta_size", &meta_size);

726
  custom_ar.def("register_buffer", &register_buffer);
727
728
  custom_ar.def("get_graph_buffer_ipc_meta", &get_graph_buffer_ipc_meta);
  custom_ar.def("register_graph_buffers", &register_graph_buffers);
729
730
731
732
733
734
735

  custom_ar.def("allocate_shared_buffer_and_handle",
                &allocate_shared_buffer_and_handle);
  custom_ar.def("open_mem_handle(Tensor mem_handle) -> int", &open_mem_handle);
  custom_ar.impl("open_mem_handle", torch::kCPU, &open_mem_handle);

  custom_ar.def("free_shared_buffer", &free_shared_buffer);
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
#ifdef USE_ROCM
  // Quick Reduce all-reduce kernels
  custom_ar.def(
      "qr_all_reduce(int fa, Tensor inp, Tensor out, int quant_level, bool "
      "cast_bf2half) -> ()");
  custom_ar.impl("qr_all_reduce", torch::kCUDA, &qr_all_reduce);

  custom_ar.def("init_custom_qr", &init_custom_qr);
  custom_ar.def("qr_destroy", &qr_destroy);

  custom_ar.def("qr_get_handle", &qr_get_handle);

  custom_ar.def("qr_open_handles(int _fa, Tensor[](b!) handles) -> ()");
  custom_ar.impl("qr_open_handles", torch::kCPU, &qr_open_handles);

  // Max input size in bytes
  custom_ar.def("qr_max_size", &qr_max_size);
#endif
754
755
756
}

REGISTER_EXTENSION(TORCH_EXTENSION_NAME)