ColossalAI/tests/test_utils/test_lazy_init/utils.py

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import random
from typing import Any, Callable, Optional, Tuple
import numpy as np
import torch
from colossalai.tensor.d_tensor.layout_converter import to_global
from colossalai.utils.model.experimental import LazyInitContext, LazyTensor, _MyTensor
from tests.kit.model_zoo.registry import ModelAttribute
# model_fn, data_gen_fn, output_transform_fn, model_attr
TestingEntry = Tuple[Callable[[], torch.nn.Module], Callable[[], dict], Callable[[], dict], Optional[ModelAttribute]]
def set_seed(seed: int) -> None:
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
def assert_model_eqaual(m1: torch.nn.Module, m2: torch.nn.Module) -> None:
s1 = m1.state_dict()
s2 = m2.state_dict()
assert len(s1) == len(s2), f'len {len(s1)} vs {len(s2)}'
for (n1, t1), (n2, t2) in zip(s1.items(), s2.items()):
assert n1 == n2
assert torch.equal(t1, t2), f'{n1} {t1} vs {t2}'
def assert_forward_equal(m1: torch.nn.Module, m2: torch.nn.Module, data_gen_fn: Callable[[], dict],
output_transform_fn: Callable[[Any], dict]) -> None:
data = data_gen_fn()
m1.eval()
m2.eval()
# run forward
with torch.no_grad():
outputs1 = m1(**data)
outputs2 = m2(**data)
# compare output
transformed_out1 = output_transform_fn(outputs1)
transformed_out2 = output_transform_fn(outputs2)
assert len(transformed_out1) == len(transformed_out2)
for key, out1 in transformed_out1.items():
out2 = transformed_out2[key]
assert torch.allclose(out1, out2, atol=1e-5), \
f'{m1.__class__.__name__} has inconsistent outputs, {out1} vs {out2}'
def check_lazy_init(entry: TestingEntry, seed: int = 42, verbose: bool = False, check_forward: bool = False) -> None:
model_fn, data_gen_fn, output_transform_fn, model_attr = entry
_MyTensor._pre_op_fn = lambda *args: set_seed(seed)
LazyTensor._pre_op_fn = lambda *args: set_seed(seed)
ctx = LazyInitContext(tensor_cls=_MyTensor)
with ctx:
model = model_fn()
ctx = LazyInitContext()
with ctx:
deferred_model = model_fn()
deferred_model = ctx.materialize(deferred_model, verbose=verbose)
assert_model_eqaual(model, deferred_model)
if check_forward:
assert_forward_equal(model, deferred_model, data_gen_fn, output_transform_fn)
if verbose:
print(f'{model.__class__.__name__} pass')
def assert_dist_model_equal(model: torch.nn.Module, distributed_model: torch.nn.Module, layout_dict: dict) -> None:
state = model.state_dict()
distributed_state = distributed_model.state_dict()
assert len(state) == len(distributed_state), f'len {len(state)} vs {len(distributed_state)}'
for (n1, t1), (n2, t2) in zip(state.items(), distributed_state.items()):
assert n1 == n2
t1 = t1.cuda()
t2 = t2.cuda()
if n2 in layout_dict:
t2 = to_global(t2, layout_dict[n2])
assert torch.equal(t1, t2), f'{n1} {t1} vs {t2}'