Making large AI models cheaper, faster and more accessible
You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.

76 lines
3.0 KiB

from functools import partial
import colossalai
import pytest
import torch
import torch.multiprocessing as mp
from colossalai.testing import parameterize, rerun_on_exception
from colossalai.utils import free_port
from colossalai.zero.init_ctx import ZeroInitContext
from colossalai.zero.shard_utils import (BucketTensorShardStrategy, TensorShardStrategy)
from colossalai.zero.sharded_model import ShardedModelV2
from colossalai.zero.sharded_model._utils import cast_tensor_to_fp16
from colossalai.zero.sharded_model.utils import col_model_deepcopy
from tests.components_to_test.registry import non_distributed_component_funcs
from colossalai.engine.gradient_handler import MoeGradientHandler
from colossalai.context import MOE_CONTEXT
from colossalai.testing import assert_equal_in_group
from tests.test_zero_data_parallel.common import CONFIG, check_grads_padding, run_fwd_bwd
from tests.test_moe.test_moe_zero_init import MoeModel
@parameterize("enable_autocast", [False])
@parameterize("shard_strategy_class", [TensorShardStrategy, BucketTensorShardStrategy])
def run_model_test(enable_autocast, shard_strategy_class):
shard_strategy = shard_strategy_class()
get_components_func = non_distributed_component_funcs.get_callable('no_leaf_module')
_, train_dataloader, _, _, criterion = get_components_func()
with ZeroInitContext(target_device=torch.device('cuda', torch.cuda.current_device()),
shard_strategy=shard_strategy,
shard_param=True):
zero_model = MoeModel()
zero_model = ShardedModelV2(zero_model, shard_strategy, use_memory_tracer=True)
# check whether parameters are identical in ddp
for name, p in zero_model.named_parameters():
if not p.colo_attr.param_is_sharded and p.is_replicated:
assert_equal_in_group(p.data)
model = MoeModel().half()
col_model_deepcopy(zero_model, model)
model = model.cuda()
grad_handler = MoeGradientHandler(model)
for i, (data, label) in enumerate(train_dataloader):
if i > 5:
break
data, label = cast_tensor_to_fp16(data).cuda(), label.cuda()
run_fwd_bwd(model, data, label, criterion, enable_autocast)
run_fwd_bwd(zero_model, data, label, criterion, enable_autocast)
grad_handler.handle_gradient()
check_grads_padding(model, zero_model, loose=True)
def run_dist(rank, world_size, port):
colossalai.launch(config=CONFIG, rank=rank, world_size=world_size, host='localhost', port=port, backend='nccl')
MOE_CONTEXT.setup(seed=42)
MOE_CONTEXT.reset_loss()
run_model_test()
@pytest.mark.dist
@pytest.mark.parametrize("world_size", [2])
@rerun_on_exception(exception_type=mp.ProcessRaisedException, pattern=".*Address already in use.*")
def test_moe_zero_model(world_size):
run_func = partial(run_dist, world_size=world_size, port=free_port())
mp.spawn(run_func, nprocs=world_size)
if __name__ == '__main__':
test_moe_zero_model(world_size=2)