ColossalAI/tests/test_tensor/test_op.py

106 lines
3.0 KiB
Python

from numpy import allclose
import torch
from colossalai.tensor import ColoTensor
from copy import deepcopy
from colossalai.utils import get_current_device
def test_layernorm():
ln_op = torch.nn.LayerNorm(2, 3, device=get_current_device())
ln_op_colo = deepcopy(ln_op)
input_t = torch.randn(3, 2, device=get_current_device())
input_t_colo = ColoTensor.init_from_torch_tensor(tensor=input_t.clone().detach())
# prepare colossalai LN
delattr(ln_op_colo, 'weight')
weight_clone = ln_op.weight.clone().detach()
weight_clone.requires_grad = True
setattr(ln_op_colo, 'weight', ColoTensor.init_from_torch_tensor(tensor=weight_clone))
output = ln_op(input_t)
output_colo = ln_op_colo(input_t_colo)
assert allclose(output_colo.torch_tensor().detach().cpu(), output.detach().cpu())
torch.mean(output).backward()
torch.mean(output_colo).backward()
assert allclose(ln_op.weight.grad.cpu(), ln_op_colo.weight.torch_tensor().grad.cpu())
def test_linear():
in_dim = 4
out_dim = 5
fc = torch.nn.Linear(in_dim, out_dim, bias=True)
fc_ref = deepcopy(fc)
input_ref = torch.randn(1, in_dim)
input_tensor = input_ref.clone()
sharded_weight = ColoTensor.init_from_torch_tensor(fc_ref.weight)
sharded_bias = ColoTensor.init_from_torch_tensor(fc_ref.bias)
# replace the torch nn.Parameters with ShardedTensor
delattr(fc, 'weight')
setattr(fc, 'weight', sharded_weight)
delattr(fc, 'bias')
setattr(fc, 'bias', sharded_bias)
fc.weight.requires_grad = True
fc.bias.requires_grad = True
# torch.nn.functional.linear(torch.randn(1, in_dim), sharded_weight, sharded_bias)
out = fc(input_tensor)
loss = out.sum()
loss.backward()
out_ref = fc_ref(input_ref)
loss_ref = out_ref.sum()
loss_ref.backward()
assert (loss_ref == loss)
assert allclose(fc_ref.weight.grad, fc.weight.torch_tensor().grad)
# The test case failed
# def test_uniform():
# t = ColoTensor(torch.zeros(3, 5))
# torch.nn.init.uniform_(t)
# print(t)
def test_element_wise():
t_ref = torch.randn(3, 5)
t = ColoTensor.init_from_torch_tensor(t_ref.clone())
assert torch.mean(t) == torch.mean(t_ref)
assert allclose(torch.nn.functional.gelu(t).torch_tensor(), torch.nn.functional.gelu(t_ref))
assert allclose(torch.nn.functional.relu(t).torch_tensor(), torch.nn.functional.relu(t_ref))
# Test a function not wrapped by
def test_no_wrap_op():
t_ref = torch.randn(3, 5)
t = ColoTensor.init_from_torch_tensor(t_ref.clone())
assert torch.sum(t) == torch.sum(t_ref)
assert torch.sum(input=t) == torch.sum(input=t_ref)
def test_lazy_init_tensor():
lazy_t = ColoTensor(2, 3, dtype=torch.float32, requires_grad=True)
assert lazy_t._torch_tensor.numel() == 0
assert lazy_t.numel() == 6 == lazy_t.torch_tensor().numel()
def check_all():
test_linear()
test_element_wise()
test_no_wrap_op()
test_lazy_init_tensor()
if __name__ == '__main__':
# test_lazy_init_ptensor()
test_layernorm()