【Hackathon 10th Spring No.45】FastDeploy 支持在 T4/V100 硬件的编译 -part (#6488)

* fix(custom_ops): gate unsupported ops for sm70/sm75 build

* fix(custom_ops): gate deepgemm exports to sm75+ only

* [BugFix][OP] deduplicate CUDA sources to avoid moe_deepgemm multiple definition

* revert two custom_ops files to 352f922f9
This commit is contained in:
Ding
2026-03-23 19:16:23 +08:00
committed by GitHub
parent c1f7991aec
commit defaffd5fb
2 changed files with 74 additions and 5 deletions
+26
View File
@@ -1244,6 +1244,7 @@ void PerTokenGroupQuantFp8(const paddle::Tensor& input,
bool scale_ue8m0);
PYBIND11_MODULE(fastdeploy_ops, m) {
#ifdef ENABLE_SM80_EXT_OPS
m.def("get_expert_token_num",
&GetExpertTokenNum,
py::arg("topk_ids"),
@@ -1266,6 +1267,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("enable_softmax_top_k_fused"),
py::arg("redundant_ep_rank_num_plus_one"),
"moe export RedundantTopKSelect function");
#endif
/**
* open_shm_and_get_meta_signal.cc
@@ -1291,9 +1293,11 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("wait_flag"),
"get_output_kv_signal function");
#ifdef ENABLE_SM75_EXT_OPS
m.def("moe_deepgemm_permute", &MoEDeepGEMMPermute, "MoEDeepGEMMPermute");
m.def(
"moe_deepgemm_depermute", &MoEDeepGEMMDePermute, "MoEDeepGEMMDePermute");
#endif
/**
* alloc_cache_pinned.cc
* cuda_host_alloc
@@ -1307,6 +1311,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def(
"cuda_host_free", &cuda_host_free, "Free pinned memory", py::arg("ptr"));
py::register_exception<CudaError>(m, "CudaError");
#ifdef ENABLE_SM80_EXT_OPS
/**
* append_attention.cu
* append_attention
@@ -1315,11 +1320,13 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def("append_attention_with_output",
&AppendAttentionWithOutput,
"append attention with output function");
#endif
#ifdef ENABLE_FLASH_MASK_ATTENTION
m.def("flash_mask_attention", &FlashAttentionMask, "flash_mask_attention");
#endif
#ifdef ENABLE_SM80_EXT_OPS
/**
* gqa_rope_write_cache.cu
* gqa_rope_write_cache
@@ -1334,6 +1341,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def("pre_cache_len_concat",
&PreCacheLenConcat,
"pre_cache len concat function");
/**
* moe/fused_moe/fused_moe.cu
* fused_moe
@@ -1389,6 +1397,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("norm_topk_prob"),
py::arg("routed_scaling_factor"),
"ep moe export combine function");
#endif
m.def("per_token_quant",
&PerTokenQuant,
@@ -1445,6 +1454,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
"machete supported schedules function");
#endif
#ifdef ENABLE_SM80_EXT_OPS
/**
* moe/fused_moe/moe_topk_select.cu
* moe_topk_select
@@ -1486,6 +1496,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("norm_topk_prob"),
py::arg("routed_scaling_factor"),
"moe export reduce function");
#endif
/**
* dequant_int8.cu
@@ -1509,6 +1520,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
&OpenShmAndGetMetaSignalFunc,
"open_shm_and_get_meta_signal function");
#ifdef ENABLE_SM80_EXT_OPS
/**
* append_attn/get_block_shape_and_split_kv_block.cu
* get_block_shape_and_split_kv_block
@@ -1516,6 +1528,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def("get_block_shape_and_split_kv_block",
&GetBlockShapeAndSplitKVBlock,
"get_block_shape_and_split_kv_block function");
#endif
/**
* get_padding_offset.cu
@@ -1567,9 +1580,11 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
&RecoverDecodeTask,
"recover decode task for scheduler v1 function");
#ifdef ENABLE_SM80_EXT_OPS
m.def("group_swiglu_with_masked",
&GroupSwigluWithMasked,
"group_swiglu_with_masked function");
#endif
m.def("text_image_index_out",
&TextImageIndexOut,
@@ -1579,7 +1594,9 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
&TextImageGatherScatter,
"text_image_gather_scatter function");
#ifdef ENABLE_SM80_EXT_OPS
m.def("count_tokens_per_expert_func", &count_tokens_per_expert_func);
m.def("tritonmoe_preprocess_func", &tritonmoe_preprocess_kernel);
m.def("MoeWna16MarlinGemmApi",
@@ -1609,6 +1626,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("use_atomic_add"),
py::arg("use_fp32_reduce"),
py::arg("is_zp_float"));
#endif
m.def("get_position_ids_and_mask_encoder_batch",
&GetPositionIdsAndMaskEncoderBatch,
@@ -1651,6 +1669,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
py::arg("input"),
py::arg("scales"),
py::arg("scale_ub"));
#ifdef ENABLE_SM80_EXT_OPS
m.def("decode_mla_write_cache",
&DecodeMLAWriteCacheKernel,
"decode_mla_write_cache function");
@@ -1658,14 +1677,17 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def("prefill_mla_write_cache",
&PrefillMLAWriteCacheKernel,
"prefill_mla_write_cache function");
#endif
m.def("fused_rotary_position_encoding",
&FusedRotaryPositionEncoding,
"fused_rotary_position_encoding function");
#ifdef ENABLE_SM80_EXT_OPS
m.def("multi_head_latent_attention",
&MultiHeadLatentAttention,
"multi_head_latent_attention function");
#endif
m.def("noaux_tc", &NoauxTc, "noaux_tc for Deepseekv3 MoE compute");
@@ -1731,6 +1753,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
&get_graph_buffer_ipc_meta,
"get_graph_buffer_ipc_meta");
#ifdef ENABLE_SM80_EXT_OPS
m.def("speculate_get_seq_lens_output",
&SpeculateGetSeqLensOutput,
"speculate_get_seq_lens_output function");
@@ -1839,6 +1862,7 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
m.def("speculate_get_target_logits",
&SpeculateGetTargetLogits,
"speculate_get_target_logits function");
#endif
m.def("update_attn_mask_offsets",
&UpdateAttnMaskOffsets,
@@ -1848,7 +1872,9 @@ PYBIND11_MODULE(fastdeploy_ops, m) {
&FusedNeoxRopeEmbedding,
"fused_neox_rope_embedding function");
#ifndef DISABLE_GELU_TANH_OP
m.def("gelu_tanh", &GeluTanh, "gelu_tanh function");
#endif
m.def("reasoning_phase_token_constraint",
&ReasoningPhaseTokenConstraint,
+48 -5
View File
@@ -179,6 +179,32 @@ def get_gencode_flags(archs):
return flags
def get_compile_parallelism():
"""
Decide safe compile parallelism for both build workers and nvcc threads.
"""
cpu_count = os.cpu_count() or 1
max_jobs_env = os.getenv("MAX_JOBS")
if max_jobs_env is not None:
try:
max_jobs = int(max_jobs_env)
if max_jobs < 1:
raise ValueError
except ValueError as exc:
raise ValueError(f"Invalid MAX_JOBS={max_jobs_env!r}, expected a positive integer.") from exc
else:
# Cap default build workers to avoid OOM in high-core CI runners.
max_jobs = min(cpu_count, 32)
os.environ["MAX_JOBS"] = str(max_jobs)
# Limit nvcc internal threads to avoid resource exhaustion when Paddle's
# ThreadPoolExecutor also launches many parallel compilations.
# Total threads ~= (number of parallel compile jobs) * nvcc_threads.
nvcc_threads = min(max_jobs, 4)
return max_jobs, nvcc_threads
def find_end_files(directory, end_str):
"""
Find files with end str in directory.
@@ -313,6 +339,11 @@ elif paddle.is_compiled_with_cuda():
"gpu_ops/reasoning_phase_token_constraint.cu",
"gpu_ops/get_attn_mask_q.cu",
]
sm_versions = get_sm_version(archs)
# Some kernels in this file require SM75+ instructions. Exclude them when building SM70 (V100).
disable_gelu_tanh = 70 in sm_versions
if disable_gelu_tanh:
sources = [s for s in sources if s != "gpu_ops/gelu_tanh.cu"]
# pd_disaggregation
sources += [
@@ -352,6 +383,9 @@ elif paddle.is_compiled_with_cuda():
cc_compile_args = []
nvcc_compile_args = get_gencode_flags(archs)
if disable_gelu_tanh:
cc_compile_args += ["-DDISABLE_GELU_TANH_OP"]
nvcc_compile_args += ["-DDISABLE_GELU_TANH_OP"]
nvcc_compile_args += ["-DPADDLE_DEV"]
nvcc_compile_args += ["-DPADDLE_ON_INFERENCE"]
nvcc_compile_args += ["-DPy_LIMITED_API=0x03090000"]
@@ -363,10 +397,8 @@ elif paddle.is_compiled_with_cuda():
"-Igpu_ops",
"-Ithird_party/nlohmann_json/include",
]
# Limit nvcc internal threads to avoid resource exhaustion when Paddle's
# ThreadPoolExecutor also launches many parallel compilations.
# Total threads ≈ (number of parallel compile jobs) × nvcc_threads, so cap nvcc_threads at 4.
nvcc_threads = min(os.cpu_count() or 1, 4)
max_jobs, nvcc_threads = get_compile_parallelism()
print(f"MAX_JOBS = {max_jobs}, nvcc -t = {nvcc_threads}")
nvcc_compile_args += ["-t", str(nvcc_threads)]
nvcc_version = get_nvcc_version()
@@ -379,14 +411,16 @@ elif paddle.is_compiled_with_cuda():
if nvcc_version >= 12.0:
sources += ["gpu_ops/sample_kernels/air_top_p_sampling.cu"]
cc = max(get_sm_version(archs))
cc = max(sm_versions)
print(f"cc = {cc}")
fp8_auto_gen_directory = "gpu_ops/cutlass_kernels/fp8_gemm_fused/autogen"
if os.path.isdir(fp8_auto_gen_directory):
shutil.rmtree(fp8_auto_gen_directory)
if cc >= 75:
cc_compile_args += ["-DENABLE_SM75_EXT_OPS"]
nvcc_compile_args += [
"-DENABLE_SM75_EXT_OPS",
"-DENABLE_SCALED_MM_C2X=1",
"-Igpu_ops/cutlass_kernels/w8a8",
]
@@ -394,9 +428,14 @@ elif paddle.is_compiled_with_cuda():
"gpu_ops/cutlass_kernels/w8a8/scaled_mm_entry.cu",
"gpu_ops/cutlass_kernels/w8a8/scaled_mm_c2x.cu",
"gpu_ops/quantization/common.cu",
# cpp_extensions.cc always registers these two ops; include their kernels on SM75 as well.
"gpu_ops/moe/moe_deepgemm_permute.cu",
"gpu_ops/moe/moe_deepgemm_depermute.cu",
]
if cc >= 80:
cc_compile_args += ["-DENABLE_SM80_EXT_OPS"]
nvcc_compile_args += ["-DENABLE_SM80_EXT_OPS"]
# append_attention
os.system(
"python utils/auto_gen_template_instantiation.py --config gpu_ops/append_attn/template_config.json --output gpu_ops/append_attn/template_instantiation/autogen"
@@ -519,6 +558,10 @@ elif paddle.is_compiled_with_cuda():
sources += find_end_files("gpu_ops/machete", ".cu")
cc_compile_args += ["-DENABLE_MACHETE"]
# Deduplicate translation units while preserving order. Some files are
# appended explicitly for SM75 and also discovered by later directory globs.
sources = list(dict.fromkeys(sources))
setup(
name="fastdeploy_ops",
ext_modules=CUDAExtension(