mirror of https://github.com/hpcaitech/ColossalAI
144 lines
4.8 KiB
Python
144 lines
4.8 KiB
Python
import colossalai
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import colossalai.nn as col_nn
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import torch
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import torch.distributed as dist
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import torch.multiprocessing as mp
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import pytest
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from colossalai.core import global_context as gpc
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from colossalai.context import ParallelMode
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from colossalai.testing import rerun_if_address_is_in_use
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from functools import partial
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CONFIG = dict(parallel=dict(tensor=dict(size=4, mode='sequence')))
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def check_ring_qk(rank, world_size):
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# params
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batch_size = 4
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num_heads = 4
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seq_length = 32
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attention_head_size = 32
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sub_seq_length = seq_length // world_size
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# create master tensors
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q = torch.rand(batch_size * num_heads, seq_length, attention_head_size).cuda()
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k = torch.rand(batch_size * num_heads, seq_length, attention_head_size).cuda()
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dist.broadcast(q, src=0, group=gpc.get_group(ParallelMode.SEQUENCE))
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dist.broadcast(k, src=0, group=gpc.get_group(ParallelMode.SEQUENCE))
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# create distributed tensors
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sub_q = q.clone()[:, rank * sub_seq_length:(rank + 1) * sub_seq_length].contiguous()
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sub_k = k.clone()[:, rank * sub_seq_length:(rank + 1) * sub_seq_length].contiguous()
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# set autograd attributes
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q.requires_grad = True
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k.requires_grad = True
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q.retain_grad()
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k.retain_grad()
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sub_q.requires_grad = True
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sub_k.requires_grad = True
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sub_q.retain_grad()
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sub_k.retain_grad()
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# compute master attention scores
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a = torch.matmul(q, k.transpose(2, 1))
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# compute distributed attention scores
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ring_qk = colossalai.nn.layer.parallel_sequence.RingQK.apply
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sub_a = ring_qk(sub_q, sub_k, batch_size, num_heads, sub_seq_length)
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# check master and distributed attetion scores
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sub_master_a = a[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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assert torch.allclose(sub_a, sub_master_a, rtol=1e-5, atol=1e-2)
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# run master backward
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a.retain_grad()
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a.mean().backward()
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# run distributed backward
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partial_master_a_grad = a.grad[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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torch.autograd.backward(sub_a, partial_master_a_grad)
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# check master and distributed grads
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partial_master_q_grad = q.grad[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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assert torch.allclose(sub_q.grad, partial_master_q_grad, rtol=1e-5, atol=1e-2), \
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'attention score cannot match'
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def check_ring_av(rank, world_size):
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# params
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batch_size = 4
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num_heads = 4
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seq_length = 16
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attention_head_size = 32
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sub_seq_length = seq_length // world_size
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# create master tensors
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a = torch.rand(batch_size * num_heads, seq_length, seq_length).cuda()
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v = torch.rand(batch_size * num_heads, seq_length, attention_head_size).cuda()
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dist.broadcast(a, src=0, group=gpc.get_group(ParallelMode.SEQUENCE))
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dist.broadcast(v, src=0, group=gpc.get_group(ParallelMode.SEQUENCE))
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# create distributed tensors
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sub_a = a.clone()[:, rank * sub_seq_length:(rank + 1) * sub_seq_length].contiguous()
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sub_v = v.clone()[:, rank * sub_seq_length:(rank + 1) * sub_seq_length].contiguous()
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# set autograd attributes
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a.requires_grad = True
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v.requires_grad = True
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a.retain_grad()
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v.retain_grad()
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sub_a.requires_grad = True
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sub_v.requires_grad = True
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sub_a.retain_grad()
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sub_v.retain_grad()
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# compute master attention scores
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out = torch.matmul(a, v)
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# compute distributed attention scores
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ring_av = colossalai.nn.layer.parallel_sequence.RingAV.apply
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sub_out = ring_av(sub_a, sub_v, batch_size, num_heads, attention_head_size, sub_seq_length)
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# print(f'master output shape: {out.shape}, partial output shape: {sub_out.shape}')
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# check master and distributed output
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sub_master_out = out[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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assert torch.allclose(sub_out, sub_master_out, rtol=1e-5, atol=1e-2)
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# # run master backward
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out.retain_grad()
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out.mean().backward()
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# # run distributed backward
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partial_master_out_grad = out.grad[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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torch.autograd.backward(sub_out, partial_master_out_grad)
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# # check master and distributed grads
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partial_master_a_grad = a.grad[:, rank * sub_seq_length:(rank + 1) * sub_seq_length]
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assert torch.allclose(sub_a.grad, partial_master_a_grad, rtol=1e-5, atol=1e-2), \
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'attention output cannot match'
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def run_test(rank, world_size):
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colossalai.launch(rank=rank, world_size=world_size, config=CONFIG, host='localhost', port=29500)
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# check_ring_qk(rank, world_size)
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check_ring_av(rank, world_size)
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gpc.destroy()
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torch.cuda.empty_cache()
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@pytest.mark.dist
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@rerun_if_address_is_in_use()
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def test_sequence():
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world_size = 4
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run_func = partial(run_test, world_size=world_size)
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mp.spawn(run_func, nprocs=world_size)
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if __name__ == '__main__':
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test_sequence()
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