Files
xc-llm-ascend/csrc/torch_binding_meta.cpp
Wang Yixuan d412565ec9 [Cherry-pick]bmm_transpose to v011dev (#3995)
### What this PR does / why we need it?
Add a custom op to acclerater the deepseek model. The fusion ops combine
the bmm and transpose together, which is applied to mla module.
Cherry-pick from this commtid c68ddc11ce53334fc9a17bad58342148cbf14e86

### Does this PR introduce _any_ user-facing change?
No

---------

Signed-off-by: hust17yixuan <303660421@qq.com>
2025-12-08 19:22:14 +08:00

147 lines
5.4 KiB
C++

#include <torch/extension.h>
#include <torch/library.h>
#include <torch/version.h>
#include <torch_npu/csrc/core/npu/NPUStream.h>
#include <torch_npu/csrc/framework/OpCommand.h>
#include <torch_npu/csrc/npu/Module.h>
#include "utils.h"
/*
* How to write a meta implementation for a custom operator (meta kernel):
*
* Meta implementations are used for shape and dtype inference, tracing, and export.
* They do NOT perform any real computation or allocate device memory.
* Instead, they return empty tensors with the correct shapes, dtypes, and device types.
*
* Steps to write a meta implementation:
* 1. The function signature should match the operator's schema, but only use the arguments
* necessary to infer output shapes and dtypes.
* 2. Use input tensor shapes, dtypes, and any relevant arguments to compute the output shapes.
* 3. Return empty tensors (e.g., at::empty_symint, at::empty_like) with the correct shape and dtype.
* 4. Do NOT perform any real computation or data movement.
* 5. Register the meta implementation with the "Meta" dispatch key using TORCH_LIBRARY_IMPL or similar.
*
* Example:
* std::tuple<at::Tensor, at::Tensor> my_op_meta(
* at::Tensor &input, int64_t some_param) {
* // Infer output shape based on input and parameters
* auto out_shape = ...;
* at::Tensor out = at::empty_symint(out_shape, input.options());
* // Return empty tensor(s) with correct shape/dtype
* return {out, ...};
* }
*
* See below for real examples.
*/
namespace vllm_ascend {
namespace meta {
std::tuple<at::Tensor, at::Tensor> rotary_embedding_meta(
at::Tensor &positions,
at::Tensor &query,
at::Tensor &key,
int64_t head_size,
at::Tensor &cos_sin_cache,
bool is_neox) {
auto num_tokens = positions.sym_numel();
auto query_hidden_size = query.sym_numel() / num_tokens;
auto key_hidden_size = key.sym_numel() / num_tokens;
auto num_heads = query_hidden_size / head_size;
auto num_kv_heads = key_hidden_size / head_size;
at::Tensor query_dst = at::empty_symint({num_tokens, num_heads, head_size}, query.options());
at::Tensor key_dst = at::empty_symint({num_tokens, num_kv_heads, head_size}, key.options());
return {query_dst, key_dst};
}
std::tuple<at::Tensor, at::Tensor> get_masked_input_and_mask_meta(
at::Tensor &input,
const int64_t org_vocab_start_index,
const int64_t org_vocab_end_index,
const int64_t num_org_vocab_padding,
const int64_t added_vocab_start_index,
const int64_t added_vocab_end_index) {
at::Tensor masked_input = at::empty_like(input);
at::Tensor mask = at::empty_like(input, input.options().dtype(at::kBool));
return {masked_input, mask};
}
at::Tensor bgmv_expand_meta(at::Tensor &x, at::Tensor &weight, at::Tensor &indices, at::Tensor &y,
int64_t slice_offset, int64_t slice_size) {
at::Tensor y_out = at::empty_like(y);
return y_out;
}
at::Tensor sgmv_expand_meta(at::Tensor &x, at::Tensor &weight, at::Tensor &lora_indices, at::Tensor &seq_len,
at::Tensor &y, int64_t slice_offset, int64_t slice_size) {
at::Tensor y_out = at::empty_like(y);
return y_out;
}
std::tuple<at::Tensor &, at::Tensor &, at::Tensor &, at::Tensor &> mla_preprocess(
const at::Tensor &hiddenState,
const at::Tensor &wdqkv,
const at::Tensor &descale0,
const at::Tensor &gamma1,
const at::Tensor &beta1,
const at::Tensor &wuq,
const at::Tensor &descale1,
const at::Tensor &gamma2,
const at::Tensor &cos,
const at::Tensor &sin,
const at::Tensor &wuk,
const at::Tensor &kv_cache,
const at::Tensor &kv_cache_rope,
const at::Tensor &slotmapping,
const at::Tensor &quant_scale0,
const at::Tensor &quant_offset0,
const at::Tensor &bias0,
const at::Tensor &quant_scale1,
const at::Tensor &quant_offset1,
const at::Tensor &bias1,
const c10::optional<at::Tensor> &ctkv_scale,
const c10::optional<at::Tensor> &q_nope_scale,
c10::optional<c10::string_view> cache_mode,
c10::optional<c10::string_view> quant_mode,
at::Tensor &q_out0,
at::Tensor &kv_cache_out0,
at::Tensor &q_out1,
at::Tensor &kv_cache_out1)
{
return {q_out0, kv_cache_out0, q_out1, kv_cache_out1};
}
void batch_matmul_transpose(const at::Tensor &tensor_a, const at::Tensor &tensor_b, at::Tensor &tensor_c,
c10::optional<c10::string_view> format_mode,
c10::optional<c10::string_view> quant_mode)
{
return;
}
} // namespace meta
} // namespace vllm_ascend
namespace {
// Register the meta implementations of the custom kernels for symbolic tracing, this will also
// the custom kernel been captured into aclgraph
TORCH_LIBRARY_IMPL_EXPAND(CONCAT(_C, _ascend), Meta, ops) {
// Rotary embedding meta implementation
ops.impl("rotary_embedding", &vllm_ascend::meta::rotary_embedding_meta);
// Masked input and mask meta implementation
ops.impl("get_masked_input_and_mask", &vllm_ascend::meta::get_masked_input_and_mask_meta);
// Bgmv expand
ops.impl("bgmv_expand", &vllm_ascend::meta::bgmv_expand_meta);
// Sgmv expand
ops.impl("sgmv_expand", &vllm_ascend::meta::sgmv_expand_meta);
// MLA preprocess
ops.impl("mla_preprocess", &vllm_ascend::meta::mla_preprocess);
// batch_matmul_transpose
ops.impl("batch_matmul_transpose", &vllm_ascend::meta::batch_matmul_transpose);
}
}