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import argparse
import torch
import torch.distributed as dist
from rich.console import Console
from rich.table import Table
from tqdm import tqdm
from transformers.models.qwen3_moe.modeling_qwen3_moe import Qwen3MoeRotaryEmbedding
from abbie.device_mesh_manager import DMM, init_distributed_env
from abbie.gargantua.config import GenericTransformerConfig
from abbie.gargantua.functional import GargantuaLayerFunc
from abbie.gargantua.layer import GenericTransformerLayer
from abbie.gargantua.overlapper import get_overlapper
from abbie.utils.deterministic_utils import set_deterministic
from abbie.utils.flash_attn_utils import gather_cu_seqlens_from_position_ids
from dualpipe.module.config import GargantuaConfig
MODEL_TYPE_TO_CONFIG_KWARGS = {
"qwen2_7b": {
"num_hidden_layers": 28,
"hidden_size": 3584,
"num_attention_heads": 28,
"num_key_value_heads": 4,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": False,
"intermediate_size": 18944,
"use_mlp_gate_up_bias": False,
"use_mlp_down_bias": False,
},
"qwen3_4b": {
"num_hidden_layers": 36,
"hidden_size": 2560,
"head_size": 128,
"num_attention_heads": 32,
"num_key_value_heads": 8,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": True,
"intermediate_size": 9728,
"use_mlp_gate_up_bias": False,
"use_mlp_down_bias": False,
},
"qwen3_8b": {
"num_hidden_layers": 36,
"hidden_size": 4096,
"head_size": 128,
"num_attention_heads": 32,
"num_key_value_heads": 8,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": True,
"intermediate_size": 12288,
"use_mlp_gate_up_bias": False,
"use_mlp_down_bias": False,
},
"qwen3_moe_30b": {
"num_hidden_layers": 48,
"hidden_size": 2048,
"head_size": 128,
"num_attention_heads": 32,
"num_key_value_heads": 4,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": True,
"num_experts_per_tok": 8,
"num_routed_experts": 128,
"moe_intermediate_size": 768,
},
"qwen3_moe_235b": {
"num_hidden_layers": 94,
"hidden_size": 4096,
"head_size": 128,
"num_attention_heads": 64,
"num_key_value_heads": 4,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": True,
"num_experts_per_tok": 8,
"num_routed_experts": 128,
"moe_intermediate_size": 1536,
},
# We don't have sink attention or expert bias yet
"gpt_oss_20b": {
"num_hidden_layers": 24,
"hidden_size": 2880,
"head_size": 64,
"num_attention_heads": 64,
"num_key_value_heads": 8,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": False,
"num_experts_per_tok": 4,
"num_routed_experts": 32,
"moe_intermediate_size": 2880,
},
# We don't have sink attention or expert bias yet
"gpt_oss_120b": {
"num_hidden_layers": 36,
"hidden_size": 2880,
"head_size": 64,
"num_attention_heads": 64,
"num_key_value_heads": 8,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": False,
"num_experts_per_tok": 4,
"num_routed_experts": 128,
"moe_intermediate_size": 2880,
},
# We don't have MLA or shared experts yet
"deepseek_v3": {
"num_hidden_layers": 61,
"hidden_size": 7168,
"head_size": 128,
"num_attention_heads": 128,
"num_key_value_heads": 128,
"use_qkv_bias": False,
"use_o_bias": False,
"use_qk_norm": True,
"num_experts_per_tok": 9,
"num_routed_experts": 256,
"moe_intermediate_size": 2048,
},
}
def get_gg_config(model_type: str, **extra_kwargs) -> GenericTransformerConfig:
kwargs = dict(MODEL_TYPE_TO_CONFIG_KWARGS[model_type])
kwargs.update(extra_kwargs)
return GenericTransformerConfig(
dp_group=DMM.dp_group,
pp_group=DMM.pp_group,
ep_group=DMM.ep_group,
norm_topk_prob=True,
use_moe_gate_up_bias=False,
use_moe_down_bias=False,
dtype=torch.bfloat16,
rope_theta=1e6,
rope_scaling={"type": "default"},
aux_loss_coef=None,
z_loss_coef=None,
**kwargs,
)
def make_gg_layer(config: GenericTransformerConfig):
if config.token_dispatch_method == "deep-ep":
from abbie.ops.deep_ep import setup_deep_ep_buffer
setup_deep_ep_buffer(
group=DMM.ep_group,
hidden_bytes=config.hidden_size * 2,
num_sms=20,
)
layer = GenericTransformerLayer(config, layer_idx=0)
layer.train().cuda()
for param in layer.parameters():
param.data.normal_(0, std=1e-3)
return layer
def make_dummy_inputs(
config: GenericTransformerConfig,
num_tokens: int = 4096,
max_seqlen: int = 4096,
):
input_tensor = torch.randn(
num_tokens,
config.hidden_size,
dtype=torch.bfloat16,
).cuda()
position_ids = []
while len(position_ids) < num_tokens:
position_ids.extend(range(max_seqlen))
position_ids = position_ids[:num_tokens]
position_ids = torch.tensor(position_ids, dtype=torch.long, device="cuda")
rotary_emb = Qwen3MoeRotaryEmbedding(config, device="cuda")
position_embeddings = rotary_emb(input_tensor[None], position_ids[None])
cos, sin = position_embeddings[0][0], position_embeddings[1][0]
cu_seqlens, max_seqlen = gather_cu_seqlens_from_position_ids(position_ids)
d_output_tensor = torch.randn_like(input_tensor)
input_tensor.requires_grad_(True)
return {
"input_tensor": input_tensor,
"d_output_tensor": d_output_tensor,
"cos": cos,
"sin": sin,
"cu_seqlens": cu_seqlens,
"max_seqlen": max_seqlen,
}
def calc_fwd_tflop(config: GargantuaConfig, seqlens: torch.Tensor):
n_attn_params = (config.num_attention_heads + config.num_key_value_heads) * 2
n_attn_params *= config.hidden_size * config.head_size
if config.num_experts_per_tok > 0:
n_expert_params = config.num_experts_per_tok * config.hidden_size * config.moe_intermediate_size * 3
n_act_params = n_attn_params + n_expert_params
else:
n_dense_params = config.hidden_size * config.intermediate_size * 3
n_act_params = n_attn_params + n_dense_params
attn_tflop = (seqlens**2).sum().item() * config.hidden_size * 4 / 1e12
fwd_tflop = n_act_params * seqlens.sum().item() * 2 / 1e12
fwd_tflop += attn_tflop
return fwd_tflop
def bench_layer(
model_type: str,
num_tokens: int = 4096,
max_seqlen: int = 4096,
num_layers: int = 4,
warmup: int = 3,
rep: int = 20,
**extra_kwargs,
):
config = get_gg_config(model_type, **extra_kwargs)
DMM.print_rank0(config)
layer = make_gg_layer(config)
overlapper = get_overlapper()
dummy_inputs = make_dummy_inputs(
config,
num_tokens=num_tokens,
max_seqlen=max_seqlen,
)
event0 = torch.cuda.Event(enable_timing=True)
event1 = torch.cuda.Event(enable_timing=True)
event2 = torch.cuda.Event(enable_timing=True)
event3 = torch.cuda.Event(enable_timing=True)
def run_once(return_ctx_size: bool = False):
event0.record()
# Forward
x0 = dummy_inputs["input_tensor"]
for _ in range(num_layers):
ctx0, x0 = GargantuaLayerFunc.apply_module(
layer=layer,
x=x0,
cos=dummy_inputs["cos"],
sin=dummy_inputs["sin"],
cu_seqlens=dummy_inputs["cu_seqlens"],
max_seqlen=dummy_inputs["max_seqlen"],
global_num_tokens=num_tokens,
)
torch.cuda.synchronize()
event1.record()
ctx_size = None
if return_ctx_size:
ctx_size = ctx0.calc_tensors_size()
# Overlap
overlapper.on()
x1 = dummy_inputs["input_tensor"]
for _ in range(num_layers):
ctx1, x1 = GargantuaLayerFunc.apply_module(
layer=layer,
x=x1,
cos=dummy_inputs["cos"],
sin=dummy_inputs["sin"],
cu_seqlens=dummy_inputs["cu_seqlens"],
max_seqlen=dummy_inputs["max_seqlen"],
global_num_tokens=num_tokens,
)
torch.autograd.backward(x0, dummy_inputs["d_output_tensor"])
overlapper.off()
torch.cuda.synchronize()
event2.record()
torch.autograd.backward(x1, dummy_inputs["d_output_tensor"])
event3.record()
torch.cuda.synchronize()
return {
"fwd_time_ms": event0.elapsed_time(event1),
"ovl_time_ms": event1.elapsed_time(event2),
"bwd_time_ms": event2.elapsed_time(event3),
"ctx_size": ctx_size,
}
DMM.print_rank0("Warming up")
for _ in range(warmup):
res = run_once(return_ctx_size=True)
ctx_size = res["ctx_size"]
DMM.print_rank0(f"ctx_size: {ctx_size / 1e9:.5f} GB")
torch.cuda.synchronize()
fwd_time_ms = ovl_time_ms = bwd_time_ms = 0
for _ in tqdm(range(rep), disable=not DMM.is_global_rank0):
timings = run_once()
fwd_time_ms += timings["fwd_time_ms"] / rep
ovl_time_ms += timings["ovl_time_ms"] / rep
bwd_time_ms += timings["bwd_time_ms"] / rep
if DMM.is_global_rank0:
table = Table(
title="Gargantua Layer Benchmark Results",
show_header=True,
header_style="bold magenta",
)
table.add_column("Operation", style="cyan")
table.add_column("Time", style="blue")
table.add_column("TFLOPS", style="green")
table.add_column("MFU", style="yellow")
fwd_tflop = calc_fwd_tflop(config, seqlens=dummy_inputs["cu_seqlens"].diff())
fwd_tflop *= num_layers
fwd_tflops = fwd_tflop / fwd_time_ms * 1e3
ovl_tflops = fwd_tflop * 3 / ovl_time_ms * 1e3
bwd_tflops = fwd_tflop * 2 / bwd_time_ms * 1e3
gpu_tflops = 989.5
table.add_row(
"Forward",
f"{fwd_time_ms:.1f}",
f"{fwd_tflops:.1f}",
f"{fwd_tflops / gpu_tflops:.3f}",
)
table.add_row(
"Backward",
f"{bwd_time_ms:.1f}",
f"{bwd_tflops:.1f}",
f"{bwd_tflops / gpu_tflops:.3f}",
)
table.add_row(
"Overlap",
f"{ovl_time_ms:.1f}",
f"{ovl_tflops:.1f}",
f"{ovl_tflops / gpu_tflops:.3f}",
)
console = Console()
console.print(table)
token_per_sec = num_tokens / ovl_time_ms * 1e3
token_per_sec *= num_layers / config.num_hidden_layers
console.print(f"Overlap token/s: {token_per_sec:.1f}")
with torch.profiler.profile(
activities=[
torch.profiler.ProfilerActivity.CPU,
torch.profiler.ProfilerActivity.CUDA,
],
# with_stack=True,
) as profiler:
run_once()
if DMM.is_global_rank0:
profiler.export_chrome_trace("trace.json")
def main():
parser = argparse.ArgumentParser()
parser.add_argument("--model_type", default="qwen3_moe_30b", choices=MODEL_TYPE_TO_CONFIG_KWARGS.keys())
parser.add_argument("--ep", type=int, default=1)
parser.add_argument("--num_tokens", type=int, default=4096)
parser.add_argument("--max_seqlen", type=int, default=4096)
parser.add_argument("--num_layers", type=int, default=4)
parser.add_argument("--warmup", type=int, default=3)
parser.add_argument("--rep", type=int, default=20)
parser.add_argument("--recompute_norm", action="store_true")
parser.add_argument("--recompute_attn_up_proj", action="store_true")
parser.add_argument("--recompute_attn", action="store_true")
parser.add_argument("--recompute_attn_down_proj", action="store_true")
parser.add_argument("--recompute_mlp", action="store_true")
parser.add_argument("--recompute_mlp_act", action="store_true")
parser.add_argument("--recompute_dispatch", action="store_true")
parser.add_argument("--token_dispatch_method", type=str, default="deep-ep")
parser.add_argument("--deterministic_fwd", action="store_true")
args = parser.parse_args()
init_distributed_env(ep_size=args.ep)
if args.deterministic_fwd:
set_deterministic()
try:
bench_layer(
model_type=args.model_type,
num_tokens=args.num_tokens,
max_seqlen=args.max_seqlen,
num_layers=args.num_layers,
warmup=args.warmup,
rep=args.rep,
recompute_norm=args.recompute_norm,
recompute_attn_up_proj=args.recompute_attn_up_proj,
recompute_attn=args.recompute_attn,
recompute_attn_down_proj=args.recompute_attn_down_proj,
recompute_mlp=args.recompute_mlp,
recompute_mlp_act=args.recompute_mlp_act,
recompute_dispatch=args.recompute_dispatch,
token_dispatch_method=args.token_dispatch_method,
)
finally:
dist.destroy_process_group()
if __name__ == "__main__":
main()