mindspore.communication
Collective communication interface.
Note that the APIs in the following list need to preset communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
- class mindspore.communication.GlobalComm[source]
World communication information. The GlobalComm is a global class. The members contain:
BACKEND
: The communication library used, using HCCL/NCCL.WORLD_COMM_GROUP
: Global communication domain.
- mindspore.communication.create_group(group, rank_ids)[source]
Create a user collective communication group.
Note
GPU version of MindSpore doesn’t support this method. The size of rank_ids should be larger than 1, rank_ids should not have duplicate data. This method should be used after init(). Only support global single communication group in PyNative mode if you do not start with mpirun.
- Parameters
- Raises
TypeError – If group is not a string or rank_ids is not a list.
ValueError – If rank_ids size is not larger than 1, or rank_ids has duplicate data, or backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore import set_context >>> import mindspore.ops as ops >>> from mindspore.communication.management import init, create_group >>> set_context(device_target="Ascend") >>> init() >>> group = "0-8" >>> rank_ids = [0,8] >>> create_group(group, rank_ids) >>> allreduce = ops.AllReduce(group)
- mindspore.communication.destroy_group(group)[source]
Destroy the user collective communication group.
Note
GPU version of MindSpore doesn’t support this method. The parameter group should not be “hccl_world_group”. This method should be used after init().
- Parameters
group (str) – The communication group to destroy, the group should be created by create_group.
- Raises
TypeError – If group is not a string.
ValueError – If group is “hccl_world_group” or backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
- mindspore.communication.get_group_rank_from_world_rank(world_rank_id, group)[source]
Get the rank ID in the specified user communication group corresponding to the rank ID in the world communication group.
Note
GPU version of MindSpore doesn’t support this method. The parameter group should not be “hccl_world_group”. This method should be used after init().
- Parameters
- Returns
int, the rank ID in the user communication group.
- Raises
TypeError – If world_rank_id is not an integer or the group is not a string.
ValueError – If group is ‘hccl_world_group’ or backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore import set_context >>> from mindspore.communication.management import init, create_group, get_group_rank_from_world_rank >>> set_context(device_target="Ascend") >>> init() >>> group = "0-4" >>> rank_ids = [0,4] >>> create_group(group, rank_ids) >>> group_rank_id = get_group_rank_from_world_rank(4, group) >>> print("group_rank_id is: ", group_rank_id) group_rank_id is: 1
- mindspore.communication.get_group_size(group=GlobalComm.WORLD_COMM_GROUP)[source]
Get the rank size of the specified collective communication group.
Note
This method should be used after init().
- Parameters
group (str) – The communication group to work on. Normally, the group should be created by create_group, otherwise, using the default group. Default:
GlobalComm.WORLD_COMM_GROUP
.- Returns
int, the rank size of the group.
- Raises
TypeError – If group is not a string.
ValueError – If backend is invalid.
RuntimeError – If HCCL/NCCL is not available.
- Supported Platforms:
Ascend
GPU
CPU
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> import mindspore as ms >>> from mindspore.communication.management import init, get_group_size >>> ms.set_auto_parallel_context(device_num=8) >>> init() >>> group_size = get_group_size() >>> print("group_size is: ", group_size) group_size is: 8
- mindspore.communication.get_local_rank(group=GlobalComm.WORLD_COMM_GROUP)[source]
Gets local rank ID for current device in specified collective communication group.
Note
GPU version of MindSpore doesn’t support this method. This method should be used after init().
- Parameters
group (str) – The communication group to work on. Normally, the group should be created by create_group, otherwise, using the default group. Default:
GlobalComm.WORLD_COMM_GROUP
.- Returns
int, the local rank ID of the calling process within the group.
- Raises
TypeError – If group is not a string.
ValueError – If backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> import mindspore as ms >>> from mindspore.communication.management import init, get_rank, get_local_rank >>> ms.set_context(device_target="Ascend") >>> ms.set_auto_parallel_context(device_num=16) # 2 server, each server with 8 NPU. >>> init() >>> world_rank = get_rank() >>> local_rank = get_local_rank() >>> print("local_rank is: {}, world_rank is {}".format(local_rank, world_rank)) local_rank is: 1, world_rank is 9
- mindspore.communication.get_local_rank_size(group=GlobalComm.WORLD_COMM_GROUP)[source]
Gets local rank size of the specified collective communication group.
Note
GPU version of MindSpore doesn’t support this method. This method should be used after init().
- Parameters
group (str) – The communication group to work on. The group is created by create_group or the default world communication group. Default:
GlobalComm.WORLD_COMM_GROUP
.- Returns
int, the local rank size where the calling process is within the group.
- Raises
TypeError – If group is not a string.
ValueError – If backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> import mindspore as ms >>> from mindspore.communication.management import init, get_local_rank_size >>> ms.set_context(device_target="Ascend") >>> ms.set_auto_parallel_context(device_num=16) # 2 server, each server with 8 NPU. >>> init() >>> local_rank_size = get_local_rank_size() >>> print("local_rank_size is: ", local_rank_size) local_rank_size is: 8
- mindspore.communication.get_rank(group=GlobalComm.WORLD_COMM_GROUP)[source]
Get the rank ID for the current device in the specified collective communication group.
Note
This method should be used after init().
- Parameters
group (str) – The communication group to work on. Normally, the group should be created by create_group, otherwise, using the default group. Default:
GlobalComm.WORLD_COMM_GROUP
.- Returns
int, the rank ID of the calling process within the group.
- Raises
TypeError – If group is not a string.
ValueError – If backend is invalid.
RuntimeError – If HCCL/NCCL is not available.
- Supported Platforms:
Ascend
GPU
CPU
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore.communication import init, get_rank >>> init() >>> rank_id = get_rank() >>> print(rank_id) >>> # the result is the rank_id in world_group
- mindspore.communication.get_world_rank_from_group_rank(group, group_rank_id)[source]
Get the rank ID in the world communication group corresponding to the rank ID in the specified user communication group.
Note
GPU version of MindSpore doesn’t support this method. The parameter group should not be “hccl_world_group”. This method should be used after init().
- Parameters
- Returns
int, the rank ID in world communication group.
- Raises
TypeError – If group_rank_id is not an integer or the group is not a string.
ValueError – If group is ‘hccl_world_group’ or backend is invalid.
RuntimeError – If HCCL is not available or MindSpore is GPU version.
- Supported Platforms:
Ascend
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore import set_context >>> from mindspore.communication.management import init, create_group, get_world_rank_from_group_rank >>> set_context(device_target="Ascend") >>> init() >>> group = "0-4" >>> rank_ids = [0,4] >>> create_group(group, rank_ids) >>> world_rank_id = get_world_rank_from_group_rank(group, 1) >>> print("world_rank_id is: ", world_rank_id) world_rank_id is: 4
- mindspore.communication.init(backend_name=None)[source]
Initialize distributed backends required by communication services, e.g. HCCL/NCCL. It is usually used in distributed parallel scenarios and set before using communication services.
Note
The full name of HCCL is Huawei Collective Communication Library.
The full name of NCCL is NVIDIA Collective Communication Library.
The full name of MCCL is MindSpore Collective Communication Library.
- Parameters
backend_name (str) – Backend, using HCCL/NCCL/MCCL. HCCL should be used for Ascend hardware platforms and NCCL for GPU hardware platforms. If not set, inference is automatically made based on the hardware platform type (device_target). Default:
None
.- Raises
TypeError – If backend_name is not a string.
RuntimeError – If device target is invalid, or backend is invalid, or distributed initialization fails, or the environment variables RANK_ID/MINDSPORE_HCCL_CONFIG_PATH have not been exported when backend is HCCL.
- Supported Platforms:
Ascend
GPU
CPU
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore.communication import init >>> init()
- mindspore.communication.release()[source]
Release distributed resource. e.g. HCCL/NCCL.
Note
This method should be used after init().
- Raises
RuntimeError – If failed to release distributed resource.
- Supported Platforms:
Ascend
GPU
Examples
Note
Before running the following examples, you need to configure the communication environment variables.
For the Ascend devices, users need to prepare the rank table, set rank_id and device_id. Please see the Ascend tutorial for more details.
For the GPU devices, users need to prepare the host file and mpi, please see the GPU tutorial .
>>> from mindspore.communication import init, release >>> init() >>> release()
- mindspore.communication.HCCL_WORLD_COMM_GROUP
The string of “hccl_world_group” referring to the default communication group created by HCCL.
- mindspore.communication.NCCL_WORLD_COMM_GROUP
The string of “nccl_world_group” referring to the default communication group created by NCCL.