Multi-dimensional Hybrid Parallel Case Based on Double Recursive Search
Overview
Multi-dimensional hybrid parallel based on double recursive search means that the user can configure optimization methods such as recomputation, optimizer parallel, pipeline parallel. Based on the user configurations, the operator-level strategy is automatically searched by the double recursive strategy search algorithm, which generates the optimal parallel strategy.
Operation Practice
The following is a multi-dimensional hybrid parallel case based on double recursive search using Ascend or GPU single-machine 8-card as an example:
Example Code Description
Download the complete example code: multiple_mix.
The directory structure is as follows:
└─ sample_code
├─ multiple_mix
├── sapp_mix_train.py
└── run_sapp_mix_train.sh
...
sapp_mix_train.py
is the script that defines the network structure and the training process. run_sapp_mix_train.sh
is the execution script.
Configuring Distributed Environment
Specify the run mode, run device, run card number, etc. through the context interface. Unlike single-card scripts, parallel scripts also need to specify the parallel mode parallel_mode
as auto-parallel and the search mode search_mode
as double recursive strategy search mode recursive_programming
for auto-slicing of the data parallel and model parallel, and initialize HCCL or NCCL communication with init. pipeline_stages
is the number of stages in pipeline parallel, and optimizer parallel is enabled by enabling enable_parallel_optimizer
. device_target
is automatically specified as the backend hardware device corresponding to the MindSpore package.
import mindspore as ms
from mindspore.communication import init
ms.set_context(mode=ms.GRAPH_MODE, save_graphs=2)
ms.set_context(max_device_memory="25GB")
ms.set_auto_parallel_context(parallel_mode=ms.ParallelMode.AUTO_PARALLEL, search_mode="recursive_programming")
ms.set_auto_parallel_context(pipeline_stages=2, enable_parallel_optimizer=True)
init()
ms.set_seed(1)
Network Definition
The network definition adds recomputation, pipeline parallel to the data parallel and model parallel provided by the double recursive strategy search algorithm:
from mindspore import nn
class Network(nn.Cell):
def __init__(self):
super().__init__()
self.flatten = nn.Flatten()
self.layer1 = nn.Dense(28*28, 512)
self.relu1 = nn.ReLU()
self.layer2 = nn.Dense(512, 512)
self.relu2 = nn.ReLU()
self.layer3 = nn.Dense(512, 1)
def construct(self, x):
x = self.flatten(x)
x = self.layer1(x)
x = self.relu1(x)
x = self.layer2(x)
x = self.relu2(x)
logits = self.layer3(x)
return logits
net = Network()
# Configure the pipeline_stage number for each layer in pipeline parallel
net.layer1.pipeline_stage = 0
net.relu1.pipeline_stage = 0
net.layer2.pipeline_stage = 1
net.relu2.pipeline_stage = 1
net.layer3.pipeline_stage = 1
# Configure recomputation of relu operators
net.relu1.recompute()
net.relu2.recompute()
Loading the Datasets
The dataset is loaded in the same way as the single-card model, with the following code:
import os
import mindspore.dataset as ds
def create_dataset(batch_size):
dataset_path = os.getenv("DATA_PATH")
dataset = ds.MnistDataset(dataset_path)
image_transforms = [
ds.vision.Rescale(1.0 / 255.0, 0),
ds.vision.Normalize(mean=(0.1307,), std=(0.3081,)),
ds.vision.HWC2CHW()
]
label_transform = ds.transforms.TypeCast(ms.int32)
dataset = dataset.map(image_transforms, 'image')
dataset = dataset.map(label_transform, 'label')
dataset = dataset.batch(batch_size)
return dataset
data_set = create_dataset(32)
Training the Network
This part is consistent with the pipeline parallel training code. Two additional interfaces need to be called based on the stand-alone training code: nn.WithLossCell
for wrapping the network and loss function, and nn.PipelineCell
for wrapping the LossCell and configuring the MicroBatch size. The code is as follows:
import mindspore as ms
from mindspore import nn, train
optimizer = nn.SGD(net.trainable_params(), 1e-2)
loss_fn = nn.MAELoss()
loss_cb = train.LossMonitor()
net_with_grads = nn.PipelineCell(nn.WithLossCell(net, loss_fn), 4)
model = ms.Model(net_with_grads, optimizer=optimizer)
model.train(10, data_set, callbacks=[loss_cb], dataset_sink_mode=True)
Running a Stand-alone Eight-Card Script
Next, the corresponding scripts are invoked by commands, using the mpirun
startup method and the 8-card distributed training script as an example of distributed training:
bash run_sapp_mix_train.sh
The results are saved in log_output/1/rank.*/stdout
, and the example is as follows:
epoch: 1 step: 1875, loss is 11.6961808800697327
epoch: 2 step: 1875, loss is 10.2737872302532196
epoch: 3 step: 1875, loss is 8.87508840560913086
epoch: 4 step: 1875, loss is 8.1057268142700195