|
- # Copyright 2021 Huawei Technologies Co., Ltd
- #
- # Licensed under the Apache License, Version 2.0 (the "License");
- # you may not use this file except in compliance with the License.
- # You may obtain a copy of the License at
- #
- # http://www.apache.org/licenses/LICENSE-2.0
- #
- # Unless required by applicable law or agreed to in writing, software
- # distributed under the License is distributed on an "AS IS" BASIS,
- # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- # See the License for the specific language governing permissions and
- # limitations under the License.
- # ==============================================================================
- """
- Test MindData Profiling Start and Stop Support
- """
- import json
- import os
- import numpy as np
- import pytest
- import mindspore.common.dtype as mstype
- import mindspore.dataset as ds
- import mindspore._c_dataengine as cde
- import mindspore.dataset.transforms.c_transforms as C
-
- FILES = ["../data/dataset/testTFTestAllTypes/test.data"]
- DATASET_ROOT = "../data/dataset/testTFTestAllTypes/"
- SCHEMA_FILE = "../data/dataset/testTFTestAllTypes/datasetSchema.json"
-
-
- @pytest.mark.forked
- class TestMindDataProfilingStartStop:
- """
- Test MindData Profiling Manager Start-Stop Support
- Note: Use pytest fixture tmp_path to create files within this temporary directory,
- which is automatically created for each test and deleted at the end of the test.
- """
-
- def setup_class(self):
- """
- Run once for the class
- """
- # Get instance pointer for MindData profiling manager
- self.md_profiler = cde.GlobalContext.profiling_manager()
-
- def setup_method(self):
- """
- Run before each test function.
- """
-
- # Set the MindData Profiling related environment variables
- os.environ['RANK_ID'] = "0"
- os.environ['DEVICE_ID'] = "0"
-
- def teardown_method(self):
- """
- Run after each test function.
- """
-
- # Disable MindData Profiling related environment variables
- del os.environ['RANK_ID']
- del os.environ['DEVICE_ID']
-
- def confirm_pipeline_file(self, pipeline_file, num_ops, op_list=None):
- """
- Confirm pipeline JSON file with <num_ops> in the pipeline and the given optional list of ops
- """
- with open(pipeline_file) as file1:
- data = json.load(file1)
- op_info = data["op_info"]
- # Confirm ops in pipeline file
- assert len(op_info) == num_ops
- if op_list:
- for i in range(num_ops):
- assert op_info[i]["op_type"] in op_list
-
- def confirm_cpuutil_file(self, cpu_util_file, num_pipeline_ops):
- """
- Confirm CPU utilization JSON file with <num_pipeline_ops> in the pipeline
- """
- with open(cpu_util_file) as file1:
- data = json.load(file1)
- op_info = data["op_info"]
- assert len(op_info) == num_pipeline_ops
-
- def confirm_dataset_iterator_file(self, dataset_iterator_file, num_batches):
- """
- Confirm dataset iterator file exists with the correct number of rows in the file
- """
- assert os.path.exists(dataset_iterator_file)
- actual_num_lines = sum(1 for _ in open(dataset_iterator_file))
- # Confirm there are 4 lines for each batch in the dataset iterator file
- assert actual_num_lines == 4 * num_batches
-
- def test_profiling_early_stop(self, tmp_path):
- """
- Test MindData Profiling with Early Stop; profile for some iterations and then stop profiling
- """
- def source1():
- for i in range(8000):
- yield (np.array([i]),)
-
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- # Start MindData Profiling
- self.md_profiler.start()
-
- # Create this basic and common pipeline
- # Leaf/Source-Op -> Map -> Batch
- data1 = ds.GeneratorDataset(source1, ["col1"])
-
- type_cast_op = C.TypeCast(mstype.int32)
- data1 = data1.map(operations=type_cast_op, input_columns="col1")
- data1 = data1.batch(16)
-
- num_iter = 0
- # Note: If create_dict_iterator() is called with num_epochs>1, then EpochCtrlOp is added to the pipeline
- for _ in data1.create_dict_iterator(num_epochs=2):
- if num_iter == 400:
- # Stop MindData Profiling and Save MindData Profiling Output
- self.md_profiler.stop()
- self.md_profiler.save(str(tmp_path))
-
- num_iter += 1
-
- assert num_iter == 500
-
- pipeline_file = str(tmp_path) + "/pipeline_profiling_0.json"
- cpu_util_file = str(tmp_path) + "/minddata_cpu_utilization_0.json"
- dataset_iterator_file = str(tmp_path) + "/dataset_iterator_profiling_0.txt"
-
- # Confirm the content of the profiling files, including 4 ops in the pipeline JSON file
- self.confirm_pipeline_file(pipeline_file, 4, ["GeneratorOp", "BatchOp", "MapOp", "EpochCtrlOp"])
- self.confirm_cpuutil_file(cpu_util_file, 4)
- self.confirm_dataset_iterator_file(dataset_iterator_file, 401)
-
- def test_profiling_delayed_start(self, tmp_path):
- """
- Test MindData Profiling with Delayed Start; profile for subset of iterations
- """
-
- def source1():
- for i in range(8000):
- yield (np.array([i]),)
-
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- # Create this basic and common pipeline
- # Leaf/Source-Op -> Map -> Batch
- data1 = ds.GeneratorDataset(source1, ["col1"])
-
- type_cast_op = C.TypeCast(mstype.int32)
- data1 = data1.map(operations=type_cast_op, input_columns="col1")
- data1 = data1.batch(16)
-
- num_iter = 0
- # Note: If create_dict_iterator() is called with num_epochs=1, then EpochCtrlOp is not added to the pipeline
- for _ in data1.create_dict_iterator(num_epochs=1):
- if num_iter == 5:
- # Start MindData Profiling
- self.md_profiler.start()
- elif num_iter == 400:
- # Stop MindData Profiling and Save MindData Profiling Output
- self.md_profiler.stop()
- self.md_profiler.save(str(tmp_path))
-
- num_iter += 1
-
- assert num_iter == 500
-
- pipeline_file = str(tmp_path) + "/pipeline_profiling_0.json"
- cpu_util_file = str(tmp_path) + "/minddata_cpu_utilization_0.json"
- dataset_iterator_file = str(tmp_path) + "/dataset_iterator_profiling_0.txt"
- # Confirm the content of the profiling files, including 3 ops in the pipeline JSON file
- self.confirm_pipeline_file(pipeline_file, 3, ["GeneratorOp", "BatchOp", "MapOp"])
- self.confirm_cpuutil_file(cpu_util_file, 3)
- self.confirm_dataset_iterator_file(dataset_iterator_file, 395)
-
- def test_profiling_multiple_start_stop(self, tmp_path):
- """
- Test MindData Profiling with Delayed Start and Multiple Start-Stop Sequences
- """
-
- def source1():
- for i in range(8000):
- yield (np.array([i]),)
-
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- # Create this basic and common pipeline
- # Leaf/Source-Op -> Map -> Batch
- data1 = ds.GeneratorDataset(source1, ["col1"])
-
- type_cast_op = C.TypeCast(mstype.int32)
- data1 = data1.map(operations=type_cast_op, input_columns="col1")
- data1 = data1.batch(16)
-
- num_iter = 0
- # Note: If create_dict_iterator() is called with num_epochs=1, then EpochCtrlOp is not added to the pipeline
- for _ in data1.create_dict_iterator(num_epochs=1):
- if num_iter == 5:
- # Start MindData Profiling
- self.md_profiler.start()
- elif num_iter == 40:
- # Stop MindData Profiling
- self.md_profiler.stop()
- if num_iter == 200:
- # Start MindData Profiling
- self.md_profiler.start()
- elif num_iter == 400:
- # Stop MindData Profiling
- self.md_profiler.stop()
-
- num_iter += 1
-
- # Save MindData Profiling Output
- self.md_profiler.save(str(tmp_path))
-
- assert num_iter == 500
-
- pipeline_file = str(tmp_path) + "/pipeline_profiling_0.json"
- cpu_util_file = str(tmp_path) + "/minddata_cpu_utilization_0.json"
- dataset_iterator_file = str(tmp_path) + "/dataset_iterator_profiling_0.txt"
- # Confirm the content of the profiling files, including 3 ops in the pipeline JSON file
- self.confirm_pipeline_file(pipeline_file, 3, ["GeneratorOp", "BatchOp", "MapOp"])
- self.confirm_cpuutil_file(cpu_util_file, 3)
- # Note: The dataset iterator file should only contain data for batches 200 to 400
- self.confirm_dataset_iterator_file(dataset_iterator_file, 200)
-
- def test_profiling_start_start(self):
- """
- Test MindData Profiling with Start followed by Start - user error scenario
- """
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- # Start MindData Profiling
- self.md_profiler.start()
-
- with pytest.raises(RuntimeError) as info:
- # Reissue Start MindData Profiling
- self.md_profiler.start()
-
- assert "MD ProfilingManager is already running." in str(info)
-
- # Stop MindData Profiling
- self.md_profiler.stop()
-
- def test_profiling_stop_stop(self, tmp_path):
- """
- Test MindData Profiling with Stop followed by Stop - user warning scenario
- """
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- # Start MindData Profiling
- self.md_profiler.start()
-
- # Stop MindData Profiling and Save MindData Profiling Output
- self.md_profiler.stop()
- self.md_profiler.save(str(tmp_path))
-
- # Reissue Stop MindData Profiling
- # A warning "MD ProfilingManager had already stopped" is produced.
- self.md_profiler.stop()
-
- def test_profiling_stop_nostart(self):
- """
- Test MindData Profiling with Stop not without prior Start - user error scenario
- """
- # Initialize MindData profiling manager
- self.md_profiler.init()
-
- with pytest.raises(RuntimeError) as info:
- # Stop MindData Profiling - without prior Start()
- self.md_profiler.stop()
-
- assert "MD ProfilingManager has not started yet." in str(info)
-
- # Start MindData Profiling
- self.md_profiler.start()
- # Stop MindData Profiling - to return profiler to a healthy state
- self.md_profiler.stop()
|