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ColossalAI/tests/test_pipeline/test_middleware_1f1b.py

118 lines
4.2 KiB

import torch
import pytest
import os
import torch.multiprocessing as mp
import torch.distributed.rpc as rpc
from torch import nn
from torch._C._distributed_rpc import _is_current_rpc_agent_set
from colossalai import launch
from colossalai.logging import disable_existing_loggers
from colossalai.pipeline.pipeline_process_group import ppg
from colossalai.pipeline.rpc._pipeline_schedule import OneFOneBPipelineEngine
from colossalai.fx.passes.adding_split_node_pass import split_with_split_nodes_pass, balanced_split_pass
from colossalai.fx import ColoTracer
from colossalai.pipeline.middleware.adaptor import get_fx_topology
from rpc_test_utils import MLP, DAG_MLP
from functools import partial
from colossalai.testing import parameterize, rerun_if_address_is_in_use
# global variable for model created
batch_size = 16
dim = 10
rpc_is_initialized = _is_current_rpc_agent_set
def create_partition_module(pp_rank: int, stage_num: int, model, data_kwargs):
model.eval()
tracer = ColoTracer()
meta_args = {k: v.to('meta') for k, v in data_kwargs.items()}
graph = tracer.trace(root=model, meta_args=meta_args)
gm = torch.fx.GraphModule(model, graph, model.__class__.__name__)
annotated_model = balanced_split_pass(gm, stage_num)
top_module, split_submodules = split_with_split_nodes_pass(annotated_model, merge_output=True)
topo = get_fx_topology(top_module)
for submodule in split_submodules:
if isinstance(submodule, torch.fx.GraphModule):
setattr(submodule, '_topo', topo)
return split_submodules[pp_rank+1]
def partition(model, data_kwargs: dict, pp_rank: int, chunk: int, stage_num: int):
torch.manual_seed(1024)
partition = create_partition_module(pp_rank, stage_num, model, data_kwargs)
return partition
def run_master(model_cls, world_size):
torch.manual_seed(100)
epoch = 10
device = 'cuda'
stage_num = world_size
chunk = 1
num_microbatches = 8
use_checkpoint = 'store_true'
if model_cls == MLP:
def data_gen():
x = torch.zeros((batch_size, dim))
kwargs = dict(x=x)
return kwargs
model = model_cls(dim, stage_num * 3)
elif model_cls == DAG_MLP:
def data_gen():
x = torch.zeros((batch_size, dim))
y = torch.zeros((batch_size, dim))
kwargs = dict(x=x, y=y)
return kwargs
model = model_cls(dim, stage_num * 3)
else:
pass
data_kwargs = data_gen()
engine = OneFOneBPipelineEngine(partition_fn=partial(partition, model, data_kwargs),
stage_num=stage_num,
num_microbatches=num_microbatches,
device=device,
chunk=chunk,
checkpoint=use_checkpoint,)
for _ in range(epoch):
input_x = torch.randn((batch_size, dim), device=device)
input_y = torch.randn((batch_size, dim), device=device)
logits = engine.forward_backward({'x': input_x, 'y': input_y}, forward_only=True)
def run_worker(rank, model_cls, world_size, master_func):
master_addr = 'localhost'
master_port = 29020
os.environ['MASTER_ADDR'] = master_addr
os.environ['MASTER_PORT'] = str(master_port)
disable_existing_loggers()
launch(dict(), rank, world_size, master_addr, master_port, 'nccl', verbose=False)
ppg.set_global_info(rank=rank,
world_size=world_size,
dp_degree=1,
tp_degree=1,
num_worker_threads=128,
device='cuda')
# in rpc mode, only rank 0 is needed to be coded
if rank == 0:
master_func(model_cls, world_size)
# barrier here
if rpc_is_initialized():
rpc.shutdown()
@pytest.mark.skip("skip due to CI torch version 1.11")
@parameterize('model_cls', [MLP, DAG_MLP])
@pytest.mark.dist
@rerun_if_address_is_in_use()
def test_pp_middleware_fwd(model_cls):
world_size = 4
master_func = run_master
mp.spawn(run_worker, args=(model_cls, world_size, master_func), nprocs=world_size)
if __name__ == "__main__":
test_pp_middleware_fwd()