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import copy
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import pytest
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import torch
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import torch.distributed as dist
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from torch import nn
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from torch.testing import assert_close
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import colossalai
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from colossalai.cluster import ProcessGroupMesh
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from colossalai.logging import disable_existing_loggers
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from colossalai.nn.optimizer.came import CAME
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from colossalai.nn.optimizer.distributed_came import DistributedCAME
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from colossalai.shardformer.layer import Linear1D_Col, Linear1D_Row
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from colossalai.shardformer.layer._operation import _gather
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from colossalai.shardformer.layer.utils import Randomizer
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from colossalai.tensor.d_tensor import get_layout, get_sharding_spec, is_distributed_tensor
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from colossalai.tensor.d_tensor.api import clear_layout_converter
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from colossalai.tensor.d_tensor.sharding_spec import DimSpec
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from colossalai.testing import parameterize, rerun_if_address_is_in_use, spawn
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from colossalai.testing.random import seed_all
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from colossalai.zero import LowLevelZeroOptimizer
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from tests.kit.model_zoo import model_zoo
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from tests.test_optimizer._utils import check_dist_grad, check_dist_optim_state, check_dist_param, check_optim_states
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from tests.test_shardformer.test_model._utils import (
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build_model_from_hybrid_plugin,
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build_model_from_low_level_zero_plugin,
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run_forward_backward_with_hybrid_plugin,
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run_forward_backward_with_low_level_zero_plugin,
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unwrap_model,
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)
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HEIGHT = 128
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WIDTH = 128
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_TP_SPEC = DimSpec([0])
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_SEED = 0
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def correctness_verify(tensor1: torch.Tensor, tensor2: torch.Tensor, dtype: torch.dtype = torch.float32):
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rtol = None
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atol = None
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if dtype is torch.float32:
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rtol = 5e-04
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atol = 5e-04
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elif dtype is torch.float16:
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rtol = 5e-2
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atol = 5e-4
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elif dtype is torch.bfloat16:
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rtol = 4e-3
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atol = 4e-3
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# return torch.all(tensor1.isclose(tensor2, rtol=rtol, atol=atol))
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assert_close(tensor1, tensor2, rtol=rtol, atol=atol)
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# setup param groups; (For zero test optim)
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def setup_param_groups_zero(model: nn.Module) -> list:
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no_decay = ["bias", "LayerNorm.weight"]
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optimizer_grouped_parameters = [
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{
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"params": [p for n, p in model.named_parameters() if not any(nd in n for nd in no_decay)],
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"weight_decay": 0.1,
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},
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{
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"params": [p for n, p in model.named_parameters() if any(nd in n for nd in no_decay)],
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"weight_decay": 0.0,
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},
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]
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return optimizer_grouped_parameters
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# setup param groups; (For base optim)
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def setup_param_groups(model: nn.Module) -> list:
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optimizer_grouped_parameters = [p for n, p in model.named_parameters()]
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return optimizer_grouped_parameters
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# setup flatten param groups, sharding spec and shape; (For dist optim)
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def setup_flatten_param_groups_sharding_spec_shape(model: nn.Module) -> dict:
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flatten_optimizer_grouped_parameters = []
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sharding_spec = {} # {id(flatten param): get_layout(p).global_shape}
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param_shape = {} # {id(flatten param): get_sharding_spec(p)}
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for n, p in model.named_parameters():
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flatten_p = nn.Parameter(p.clone().flatten().requires_grad_(True))
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flatten_optimizer_grouped_parameters.append(flatten_p)
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if is_distributed_tensor(p):
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sharding_spec[id(flatten_p)] = get_sharding_spec(p)
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param_shape[id(flatten_p)] = get_layout(p).global_shape
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else:
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sharding_spec[id(flatten_p)] = None
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param_shape[id(flatten_p)] = p.shape
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return flatten_optimizer_grouped_parameters, sharding_spec, param_shape
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def set_dist_grad(
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dist_module: nn.Module, torch_model: nn.Module, g_dtype: torch.dtype, group: dist.ProcessGroup
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) -> None:
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"""
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Set split grads for Tensor Parallel or ZeRO DP.
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We do not need a separate treatment for ZeRO,
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as the wrapper takes care of reduce-scattering grads.
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"""
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rank = dist.get_rank(group)
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world_size = dist.get_world_size(group)
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for p, torch_p in zip(dist_module.parameters(), torch_model.parameters()):
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if torch_p.grad is None:
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torch_p.grad = torch.zeros_like(torch_p)
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is_distributed = hasattr(p, "dist_layout")
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if is_distributed:
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sharding = p.dist_layout.sharding_spec.sharding_sequence
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split_dim = sharding.index(_TP_SPEC)
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shape = torch_p.split(world_size, dim=split_dim)[rank].shape
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indices = torch.arange(shape[split_dim] * rank, shape[split_dim] * (rank + 1))
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# Generate grads only for the correctly split chunk
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torch_p.grad.index_add_(split_dim, indices, torch.randn(shape, device=torch_p.device, dtype=g_dtype))
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else:
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shape = torch_p.shape
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torch_p.grad += torch.randn(shape, device=torch_p.device, dtype=g_dtype)
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# avoid inconsistent grad and param dtype error
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orig_p = p.data
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p.data = torch_p.grad.clone().to(g_dtype)
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p.grad = p.data
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p.data = orig_p
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def set_master_param_to_shard_param(master_param_list) -> dict:
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master_param_to_shard_param = {id(p): p for p in master_param_list}
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return master_param_to_shard_param
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class MlpModel(nn.Module):
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def __init__(self):
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super(MlpModel, self).__init__()
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self.linear1 = nn.Linear(HEIGHT, WIDTH)
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self.linear2 = nn.Linear(WIDTH, HEIGHT)
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def forward(self, x):
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x = self.linear1(x)
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x = self.linear2(x)
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return x
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class TPModel(nn.Module):
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def __init__(self, linear1, linear2, tp_group=None):
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super().__init__()
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self.linear1 = Linear1D_Col.from_native_module(
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linear1, process_group=tp_group, gather_output=False, overlap=True
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)
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self.linear2 = Linear1D_Row.from_native_module(linear2, process_group=tp_group, parallel_input=True)
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def forward(self, x):
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x = self.linear1(x)
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x = self.linear2(x)
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return x
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@parameterize("dtype", [torch.float32]) # torch.float32, torch.float16, torch.bfloat16
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@parameterize("tp_zero_size", [(2, 2), (4, 1), (1, 4)]) # (4, 1), (1, 4)
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def exam_dist_came_base(dtype: torch.dtype, tp_zero_size: tuple[int, int]):
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tp_size, zero_size = tp_zero_size
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use_zero = True if zero_size > 1 else False
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local_rank = dist.get_rank()
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clear_layout_converter()
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proc_mesh = ProcessGroupMesh(tp_size, zero_size)
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tp_group, dp_group = proc_mesh.get_group_along_axis(0), proc_mesh.get_group_along_axis(1)
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torch.set_default_dtype(dtype)
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# set_seed(42)
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# ==============================
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# Model Init
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# ==============================
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base_model = MlpModel().to(local_rank)
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tp_model = TPModel(copy.deepcopy(base_model.linear1), copy.deepcopy(base_model.linear2), tp_group).to(local_rank)
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base_param_group = setup_param_groups(base_model)
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tp_param_group = setup_param_groups(tp_model)
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tp_param_group_, tp_shard_spec, tp_param_shape = setup_flatten_param_groups_sharding_spec_shape(tp_model)
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# ==============================
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# Optimizer Init
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# ==============================
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base_optim = CAME(base_param_group, lr=1e-3)
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dist_optim = DistributedCAME(tp_param_group, lr=1e-3)
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# Setup distributed optimizer
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if zero_size > 1:
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dist_optim = LowLevelZeroOptimizer(
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dist_optim,
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overlap_communication=True,
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initial_scale=128,
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partition_grad=True,
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dp_process_group=dp_group,
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verbose=True,
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)
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shard_to_param = dist_optim._param_store.master_to_working_param # {id(): param tensor} but flattened
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dist_optim.optim.setup_distributed(
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tp_group=tp_group,
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dp_group=dp_group,
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shard_to_working_param=shard_to_param,
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use_zero=use_zero,
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)
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else:
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shard_to_param = set_master_param_to_shard_param(tp_param_group)
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dist_optim.setup_distributed(
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tp_group=tp_group,
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dp_group=dp_group,
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shard_to_working_param=shard_to_param,
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use_zero=use_zero,
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)
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# ==============================
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# Correctness Verify
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# ==============================
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seed_all(1024)
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x = torch.randn(WIDTH, HEIGHT, device=local_rank)
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out = base_model(x)
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out_tp = tp_model(x)
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if zero_size > 1:
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dist_optim.backward(out_tp.sum())
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out.sum().backward()
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else:
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out_tp.sum().backward()
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out.sum().backward()
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base_optim.step()
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dist_optim.step()
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base_optim.zero_grad()
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dist_optim.zero_grad()
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for p, tp_p in zip(base_param_group, tp_param_group):
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param_is_distributed = is_distributed_tensor(tp_p)
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if param_is_distributed:
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shard_spec = get_sharding_spec(tp_p)
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if len(shard_spec.sharding_sequence) >= 2:
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# Col Parallel
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if shard_spec.sharding_sequence[0] == "R":
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tp_p = _gather(input_=tp_p, dim=-1, process_group=tp_group) # gather
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# ROW Parallel
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if shard_spec.sharding_sequence[-1] == "R":
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tp_p = _gather(input_=tp_p, dim=0, process_group=tp_group) # gather
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else:
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# TP bias
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tp_p = _gather(input_=tp_p, dim=-1, process_group=tp_group) # gather
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else:
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# No TP bias
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pass
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correctness_verify(p.data, tp_p.data, dtype)
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clear_layout_converter()
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Randomizer.reset_index()
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torch.cuda.empty_cache()
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print(f"Fwd/Bwd Test Passed")
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@parameterize(
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"test_config",
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[
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{
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"stage": 1,
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"precision": "bf16",
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},
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{
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"stage": 2,
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"precision": "bf16",
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},
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],
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)
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def exam_bert_test_on_lowlevelzero_plugin(test_config):
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sub_model_zoo = model_zoo.get_sub_registry("transformers_bert")
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test_config["use_lazy_init"] = False
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test_config["initial_scale"] = 2**10
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# check weights
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if test_config["precision"] == "bf16":
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atol, rtol = 5e-4, 5e-4
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else:
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atol, rtol = 5e-4, 5e-4
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# test_config["initial_scale"] = 1
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model_list = [
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"transformers_bert",
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]
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clear_layout_converter()
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torch.set_default_dtype(torch.bfloat16)
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seed_all(_SEED)
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for name, (model_fn, data_gen_fn, output_transform_fn, loss_fn, _) in sub_model_zoo.items():
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if name in model_list:
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(
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org_model,
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org_optimizer,
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sharded_model,
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sharded_optimizer,
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criterion,
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booster,
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) = build_model_from_low_level_zero_plugin(model_fn, loss_fn, test_config, CAME, DistributedCAME)
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org_loss, org_output, sharded_loss, sharded_output = run_forward_backward_with_low_level_zero_plugin(
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org_model, sharded_model, sharded_optimizer, data_gen_fn, output_transform_fn, criterion, booster
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)
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# assert same output
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# assert_close(org_output, org_output, atol=atol, rtol=rtol)
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weight_layer_for_check = [
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"bert.encoder.layer.1.intermediate.dense",
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# TODO: error in layer:
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# "bert.encoder.layer.0.output.dense",
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# "bert.encoder.layer.1.output.dense",
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]
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# assert same weight before step; pass
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check_dist_param(org_model, sharded_model, weight_layer_for_check, atol, rtol)
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# asserr loss; pass
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assert_close(org_loss, sharded_loss)
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# assert same grad before step
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# TODO: err here; backward diff gard; Only transformers_bert pass;
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check_dist_grad(sharded_optimizer, org_model, sharded_model, weight_layer_for_check, atol, rtol)
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org_optimizer.step()
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sharded_optimizer.step()
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# assert same weight after step
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check_dist_param(org_model, sharded_model, weight_layer_for_check, atol, rtol)
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check_optim_states(org_optimizer, sharded_optimizer.optim)
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Randomizer.reset_index()
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torch.cuda.empty_cache()
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print(f"LowLevelZeroPlugin + Bert Model Zoo Test Passed")
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@parameterize(
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"test_config",
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[
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{
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"tp_size": 1,
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"num_microbatches": 4,
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"zero_stage": 2,
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"precision": "bf16",
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},
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{
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"tp_size": 2,
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"num_microbatches": 4,
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"zero_stage": 2,
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"precision": "bf16",
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},
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{
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"tp_size": 4,
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"num_microbatches": 4,
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"zero_stage": 2,
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"precision": "bf16",
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},
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{
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"tp_size": 2,
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"num_microbatches": 4,
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"zero_stage": 1,
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"precision": "bf16",
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},
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{
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"tp_size": 4,
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"num_microbatches": 4,
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"zero_stage": 0,
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"precision": "bf16",
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},
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],
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)
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def exam_bert_test_on_hybrid_plugin(test_config):
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sub_model_zoo = model_zoo.get_sub_registry("transformers_bert")
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test_config["use_lazy_init"] = False
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test_config["pp_size"] = 1 # Do NOT test Pipeline Parallel
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test_config["initial_scale"] = 2**16 # avoid overflow
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model_list = [
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"transformers_bert",
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]
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# pass "transformers_bert",
|
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clear_layout_converter()
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torch.set_default_dtype(torch.bfloat16)
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|
# check weights
|
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|
if test_config["precision"] == "bf16":
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|
atol, rtol = 5e-3, 5e-3
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|
else:
|
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|
atol, rtol = 5e-3, 5e-3
|
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|
|
for name, (model_fn, data_gen_fn, output_transform_fn, loss_fn, _) in sub_model_zoo.items():
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|
if name in model_list:
|
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|
|
(
|
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|
org_model,
|
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|
org_optimizer,
|
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|
|
sharded_model,
|
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|
sharded_optimizer,
|
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|
|
criterion,
|
|
|
|
booster,
|
|
|
|
) = build_model_from_hybrid_plugin(model_fn, loss_fn, test_config, CAME, CAME)
|
|
|
|
|
|
|
|
org_loss, org_output, sharded_loss, sharded_output = run_forward_backward_with_hybrid_plugin(
|
|
|
|
org_model, sharded_model, sharded_optimizer, data_gen_fn, output_transform_fn, criterion, booster
|
|
|
|
)
|
|
|
|
|
|
|
|
stage_manager = booster.plugin.stage_manager
|
|
|
|
booster.plugin.tp_group
|
|
|
|
|
|
|
|
bert = unwrap_model(org_model, "BertModel", "bert")
|
|
|
|
sharded_bert = unwrap_model(sharded_model, "BertModel", "bert")
|
|
|
|
|
|
|
|
# TODO: model
|
|
|
|
# "encoder.layer.0.output.dense.weight", "encoder.layer.1.output.dense.weight" not match
|
|
|
|
# "encoder.layer[0].output.dense", "encoder.layer[1].output.dense" not match
|
|
|
|
weight_layer_for_check = ["embeddings.word_embeddings"] # [30522, 128]
|
|
|
|
|
|
|
|
# # assert same weight before step; all pass
|
|
|
|
# check_dist_param(org_model, sharded_model, weight_layer_for_check, atol, rtol)
|
|
|
|
|
|
|
|
# # assert loss; all pass
|
|
|
|
# assert_close(org_loss, sharded_loss)
|
|
|
|
|
|
|
|
# # assert same grad before step; all pass
|
|
|
|
# check_dist_grad(org_model, sharded_model, weight_layer_for_check, atol, rtol)
|
|
|
|
|
|
|
|
org_optimizer.step()
|
|
|
|
sharded_optimizer.step()
|
|
|
|
|
|
|
|
if stage_manager is None or stage_manager.is_first_stage(ignore_chunk=True):
|
|
|
|
check_dist_param(bert, sharded_bert, weight_layer_for_check, atol, rtol)
|
|
|
|
# check_weight(bert, sharded_bert, weight_layer_for_check, tp_group, atol=atol, rtol=rtol, dim=1)
|
|
|
|
|
|
|
|
# check optim states
|
|
|
|
check_dist_optim_state(org_optimizer, sharded_optimizer.optim)
|
|
|
|
|
|
|
|
Randomizer.reset_index()
|
|
|
|
torch.cuda.empty_cache()
|
|
|
|
print(f"HybridParallelPlugin + Bert Model Zoo Test Passed")
|
|
|
|
|
|
|
|
|
|
|
|
def run_dist(rank, world_size, port):
|
|
|
|
disable_existing_loggers()
|
|
|
|
colossalai.launch(rank=rank, world_size=world_size, host="localhost", port=port, backend="nccl")
|
|
|
|
exam_bert_test_on_lowlevelzero_plugin() # err in TODO layer
|
|
|
|
exam_bert_test_on_hybrid_plugin() # pass
|
|
|
|
exam_dist_came_base() # pass
|
|
|
|
|
|
|
|
|
|
|
|
@pytest.mark.dist
|
|
|
|
@rerun_if_address_is_in_use()
|
|
|
|
def test_dist_came():
|
|
|
|
spawn(run_dist, nprocs=4)
|
|
|
|
|
|
|
|
|
|
|
|
if __name__ == "__main__":
|
|
|
|
test_dist_came()
|