Projekt_AI-Automatyczny_saper/venv/Lib/site-packages/caffe2/python/numa_test.py
2021-06-01 17:38:31 +02:00

54 lines
1.6 KiB
Python

from caffe2.python import core, workspace
from caffe2.proto import caffe2_pb2
from caffe2.python.test_util import TestCase
import unittest
core.GlobalInit(["caffe2", "--caffe2_cpu_numa_enabled=1"])
def build_test_net(net_name):
net = core.Net(net_name)
net.Proto().type = "async_scheduling"
numa_device_option = caffe2_pb2.DeviceOption()
numa_device_option.device_type = caffe2_pb2.CPU
numa_device_option.numa_node_id = 0
net.ConstantFill([], "output_blob_0", shape=[1], value=3.14,
device_option=numa_device_option)
numa_device_option.numa_node_id = 1
net.ConstantFill([], "output_blob_1", shape=[1], value=3.14,
device_option=numa_device_option)
gpu_device_option = caffe2_pb2.DeviceOption()
gpu_device_option.device_type = caffe2_pb2.CUDA
gpu_device_option.device_id = 0
net.CopyCPUToGPU("output_blob_0", "output_blob_0_gpu",
device_option=gpu_device_option)
net.CopyCPUToGPU("output_blob_1", "output_blob_1_gpu",
device_option=gpu_device_option)
return net
@unittest.skipIf(not workspace.IsNUMAEnabled(), "NUMA is not enabled")
@unittest.skipIf(workspace.GetNumNUMANodes() < 2, "Not enough NUMA nodes")
@unittest.skipIf(not workspace.has_gpu_support, "No GPU support")
class NUMATest(TestCase):
def test_numa(self):
net = build_test_net("test_numa")
workspace.RunNetOnce(net)
self.assertEqual(workspace.GetBlobNUMANode("output_blob_0"), 0)
self.assertEqual(workspace.GetBlobNUMANode("output_blob_1"), 1)
if __name__ == '__main__':
unittest.main()