Source code for mindspore.profiler.profiling

# Copyright 2020-2023 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.
# ============================================================================
"""Profiling api file."""
import os
import stat
import time
import json
from json import JSONDecodeError
import glob
import socket
import multiprocessing
from enum import Enum
from typing import List
from sys import getsizeof
import numpy as np

from mindspore import log as logger, context
from mindspore.context import get_auto_parallel_context
from mindspore.communication.management import GlobalComm, get_rank, get_group_size, get_local_rank
import mindspore._c_expression as c_expression
import mindspore._c_dataengine as cde
from mindspore._c_expression import _framework_profiler_enable_mi
from mindspore.profiler.common.exceptions.exceptions import ProfilerFileNotFoundException, \
    ProfilerIOException, ProfilerException, ProfilerRawFileException, ProfilerParamTypeErrorException
from mindspore.profiler.common.exceptions.exceptions import ProfilerPathErrorException
from mindspore.profiler.common.exceptions.exceptions import ProfilerDirNotFoundException
from mindspore.profiler.common.util import get_file_path, ProfilerPathManager
from mindspore.profiler.common.process_pool import MultiProcessPool
from mindspore.profiler.common.validator.validate_path import validate_and_normalize_path
from mindspore.profiler.parser.framework_parser import GpuFrameWorkParser, DynamicFrameWorkParser
from mindspore.profiler.parser.integrator import Integrator, DeviceTarget
from mindspore.profiler.parser.ascend_analysis.function_event import CANNEvent
from mindspore.profiler.parser.cpu_gpu_timeline_generator import GpuTimelineGenerator, CpuTimelineGenerator
from mindspore.profiler.parser.ascend_timeline_generator import AscendTimelineGenerator
from mindspore.profiler.parser.minddata_parser import MinddataParser
from mindspore.profiler.parser.minddata_analyzer import MinddataProfilingAnalyzer
from mindspore.profiler.parser.minddata_pipeline_parser import \
    MinddataPipelineParser
from mindspore.profiler.parser.step_trace_parser import GpuStepTraceParser
from mindspore.profiler.parser.profiler_info import ProfilerInfo
from mindspore.common.api import _pynative_executor
from mindspore.profiler.parser.ascend_msprof_exporter import AscendMsprofExporter
from mindspore.profiler.parser.ascend_msprof_generator import AscendMsprofDataGenerator
from mindspore.profiler.parser.ascend_fpbp_generator import AscendFPBPGenerator
from mindspore.profiler.parser.ascend_op_generator import AscendOPGenerator
from mindspore.profiler.parser.ascend_steptrace_generator import AscendStepTraceGenerator
from mindspore.profiler.parser.ascend_flops_generator import AscendFlopsGenerator
from mindspore.profiler.parser.ascend_cluster_generator import AscendClusterGenerator
from mindspore.profiler.parser.ascend_hccl_generator import AscendHCCLGenerator
from mindspore.profiler.parser.ascend_communicate_generator import AscendCommunicationGenerator
from mindspore.profiler.parser.ascend_memory_generator import AscendMemoryGenerator
from mindspore.profiler.parser.ascend_integrate_generator import AscendIntegrateGenerator
from mindspore.profiler.parser.ascend_analysis.file_manager import FileManager
from mindspore.profiler.parser.ascend_analysis.path_manager import PathManager
from mindspore.profiler.parser.ascend_analysis.constant import Constant
from mindspore.profiler.common.util import timeit


INIT_OP_NAME = 'Default/InitDataSetQueue'

AICORE_METRICS_DICT = {
    0: "ArithmeticUtilization",
    1: "PipeUtilization",
    2: "Memory",
    3: "MemoryL0",
    4: "ResourceConflictRatio",
    5: "MemoryUB",
    6: "L2Cache",
    -1: "None"
}


class ModelTraingMode(Enum):
    PYNATIVE = 0
    GRAPH = 1
    KERNEL_BY_KERNEL = 2
    UNKNOWN = 3


class ProfilerLevel(Enum):
    Level0 = "Level0"
    Level1 = "Level1"
    Level2 = "Level2"


class DeviceSupportParam(Enum):
    """The device target enum."""
    CPU = ['start', 'start_profile', 'output_path', 'timeline_limit', 'profile_framework', 'op_time']
    GPU = [
        'start', 'start_profile', 'output_path', 'data_process', 'timeline_limit', 'sync_enable', 'op_time',
        'profile_framework'
    ]
    ASCEND = [
        'start', 'start_profile', 'output_path', 'data_process', 'timeline_limit', 'profile_memory',
        'parallel_strategy', 'profile_communication', 'aicore_metrics', 'l2_cache', 'hbm_ddr', 'pcie', 'op_time',
        'ascend_job_id', 'profile_framework', 'with_stack', 'profiler_level', 'data_simplification'
    ]


ALWAYS_VALID_PARAM = [
    'start', 'start_profile', 'output_path', 'data_process', 'parallel_strategy', 'l2_cache',
    'hbm_ddr', 'pcie', 'ascend_job_id', 'op_time', 'profile_framework', 'profiler_level'
]

ANALYSIS_ASYNC_MODE = 'async'
ANALYSIS_SYNC_MODE = 'sync'
DEFAULT_MODEL_ID = 4294967295


def _environment_check():
    if c_expression.security.enable_security():
        raise RuntimeError("Profiler is not supported when MindSpore is compiled with \'-s on\'.")


class ExecutionCalculator:
    """Calculate the average execution time and counts for each stage."""

    def __init__(self, event, stage, custom_info):
        self.event = event
        self.stage = stage
        self.custom_info = custom_info
        self.count = 0
        self.average_execution = 0


def _calculate_dataset_item(row, execution_time_map, ts_map):
    """Calculate dataset execution time for one row."""
    start_end = row['start_end']
    event = row['event']
    stage = row['stage']
    custom_info = row['custom_info']
    event_stage_tid_pid = event + '_' + stage + '_' + row['tid'] + '_' + row['pid']
    if start_end == '1' and event_stage_tid_pid in ts_map:
        title = event + '::' + stage + '::' + custom_info
        ts_end = int(row['time_stamp(us)'])
        ts = ts_map[event_stage_tid_pid]
        dur = ts_end - ts
        if title not in execution_time_map:
            execution_time_map[title] = ExecutionCalculator(event=event, stage=stage, custom_info=custom_info)
        execution_time_map[title].count += 1
        if execution_time_map[title].count != 0:
            execution_time_map[title].average_execution += \
                (dur - execution_time_map[title].average_execution) / execution_time_map[title].count
        del ts_map[event_stage_tid_pid]
    elif start_end == '0':
        ts = int(row['time_stamp(us)'])
        ts_map[event_stage_tid_pid] = ts
    elif start_end == '2':
        logger.info("It is a instant event, skip to calculate execution time. item: %s.", row)
    else:
        logger.warning("Can not map the start time for item: %s.", row)


def _ascend_graph_msprof_generator(mindstudio_profiler_output, model_iteration_dict):
    """Executing the msprof export mode."""
    try:
        ProfilerInfo.set_export_start_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime()))
        msprof_exporter = AscendMsprofExporter(mindstudio_profiler_output)
        flag = msprof_exporter.export(model_iteration_dict)
        ProfilerInfo.set_export_end_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime()))
        return flag
    except (ProfilerException, TimeoutError, FileNotFoundError, RuntimeError) as err:
        logger.warning(str(err))
        return False


def _ascend_graph_msprof_analyse(mindstudio_profiler_output):
    """
    Ascend graph model msprof data analyse.

    Returns:
        list[obj]: The list is : df_op_summary, df_op_statistic, df_step_trace, df_step_trace_model
    """
    res = ([], [], [], [])
    try:
        msprof_analyser = AscendMsprofDataGenerator(mindstudio_profiler_output)
        res = msprof_analyser.parse()
        return res
    except ProfilerException as err:
        logger.warning(err.message)
    finally:
        pass
    return res


[docs]class Profiler: r""" This class to enable the profiling of MindSpore neural networks. MindSpore users can import the mindspore.Profiler, initialize the Profiler object to start profiling, and use Profiler.analyse() to stop profiling and analyse the results. Users can visualize the results using the `MindSpore Insight <https://www.mindspore.cn/mindinsight/docs/en/master/index.html>`_ tool. Now, Profiler supports AICORE operator, AICPU operator, HostCPU operator, memory, correspondence, cluster, etc data analysis. Args: output_path (str, optional): Output data path. Default: ``"./data"`` . profiler_level (ProfilerLevel, optional): (Ascend only) The level of profiling. Default: ``None``. - ProfilerLevel.Level0: Leanest level of profiling data collection, collects information about the elapsed time of the computational operators on the NPU and communication large operator information. - ProfilerLevel.Level1: Collect more CANN layer AscendCL data and AICore performance metrics and communication mini operator information based on Level0. - ProfilerLevel.Level2: Collect GE and Runtime information in CANN layer on top of Level1 op_time (bool, optional): (Ascend/GPU) Whether to collect operators performance data. Default value: ``True``. profile_communication (bool, optional): (Ascend only) Whether to collect communication performance data in a multi devices training,collect when True. Setting this parameter has no effect during single card training. When using this parameter, `op_time` must be set to ``True`` . Default: ``False`` . profile_memory (bool, optional): (Ascend only) Whether to collect tensor memory data, collect when ``True`` . When using this parameter, `op_time` must be set to True. Collecting operator memory data when the graph compilation level is O2 requires collecting from the first step. Default: ``False`` . parallel_strategy (bool, optional): (Ascend only) Whether to collect parallel policy performance data. Default value: ``False`` . start_profile (bool, optional): The start_profile parameter controls whether to enable or disable performance data collection based on conditions. Default: ``True`` . aicore_metrics (int, optional): (Ascend only) Types of AICORE performance data collected, when using this parameter, `op_time` must be set to ``True`` , and the value must be in [-1, 0, 1, 2, 3, 4, 5, 6], Default: ``0`` , the data items contained in each metric are as follows: - -1: Does not collect AICORE data. - 0: ArithmeticUtilization contains mac_fp16/int8_ratio, vec_fp32/fp16/int32_ratio, vec_misc_ratio etc. - 1: PipeUtilization contains vec_ratio, mac_ratio, scalar_ratio, mte1/mte2/mte3_ratio, icache_miss_rate etc. - 2: Memory contains ub_read/write_bw, l1_read/write_bw, l2_read/write_bw, main_mem_read/write_bw etc. - 3: MemoryL0 contains l0a_read/write_bw, l0b_read/write_bw, l0c_read/write_bw etc. - 4: ResourceConflictRatio contains vec_bankgroup/bank/resc_cflt_ratio etc. - 5: MemoryUB contains ub_read/write_bw_mte, ub_read/write_bw_vector, ub\_/write_bw_scalar etc. - 6: L2Cache contains write_cache_hit, write_cache_miss_allocate, r0_read_cache_hit, r1_read_cache_hit etc. This function only support Atlas A2 training series products. l2_cache (bool, optional): (Ascend only) Whether to collect l2 cache data, collect when True. Default: ``False`` . hbm_ddr (bool, optional): (Ascend only) Whether to collect On-Chip Memory/DDR read and write rate data, collect when True. Default: ``False`` . pcie (bool, optional): (Ascend only) Whether to collect PCIe bandwidth data, collect when True. Default: ``False`` . sync_enable (bool, optional): (GPU only) Whether the profiler collects operators in a synchronous way. Default: ``True`` . - True: The synchronous way. Before sending the operator to the GPU, the CPU records the start timestamp. Then the operator is returned to the CPU after execution, and the end timestamp is recorded, The duration of the operator is the difference between the two timestamps. - False: The asynchronous way. The duration of the operator is that of sending from the CPU to the GPU. This method can reduce the impact of adding profiler on overall training time. data_process (bool, optional): (Ascend/GPU) Whether to collect data to prepare performance data. Default value: ``False`` . timeline_limit (int, optional): (Ascend/GPU) Set the maximum storage size of the timeline file (unit M). When using this parameter, `op_time` must be set to True. Default value: ``500`` . profile_framework (str, optional): (Ascend/GPU) The host information to collect, it must be one of ["all", "time", None], When is not set to None, it would collect the host profiler data. When using this parameter, the op_time parameter must be enabled. Default: None. - "all": Record host timestamp. - "time": The same as "all". - None: Not record host information. data_simplification (bool, optional): (Ascend only) Whether to remove FRAMEWORK data and other redundant data. If set to True, only the delivery of profiler and the original performance data in the PROF_XXX directory are retained to save disk space. Default value: ``True`` . with_stack (bool, optional): (Ascend) Whether to collect frame host call stack data on the Python side. This data is presented in the form of a flame graph in the timeline. When using this parameter, the op_time and profile_framework parameters must be enabled. Default value: ``False`` . analyse_only (bool, optional): (Ascend/GPU) Whether to parse only performance data and not collect performance data. This parameter is experimental parameter and does not need to be set by the user. Default value: ``False`` . rank_id (int, optional): (Ascend/GPU) Set the rank id during parsing. This parameter is experimental parameter and does not need to be set by the user. Default value: ``0`` . env_enable (bool, optional): (Ascend/GPU) Whether to enable the collection of environment variables. This parameter is experimental parameter and does not need to be set by the user. Default value: ``False`` . Raises: RuntimeError: When the version of CANN does not match the version of MindSpore, MindSpore cannot parse the generated ascend_job_id directory structure. Supported Platforms: ``Ascend`` ``GPU`` Examples: >>> import numpy as np >>> import mindspore as ms >>> from mindspore import nn >>> import mindspore.dataset as ds >>> from mindspore import Profiler >>> from mindspore.profiler import ProfilerLevel >>> >>> class Net(nn.Cell): ... def __init__(self): ... super(Net, self).__init__() ... self.fc = nn.Dense(2,2) ... def construct(self, x): ... return self.fc(x) >>> >>> def generator(): ... for i in range(2): ... yield (np.ones([2, 2]).astype(np.float32), np.ones([2]).astype(np.int32)) >>> >>> def train(net): ... optimizer = nn.Momentum(net.trainable_params(), 1, 0.9) ... loss = nn.SoftmaxCrossEntropyWithLogits(sparse=True) ... data = ds.GeneratorDataset(generator, ["data", "label"]) ... model = ms.train.Model(net, loss, optimizer) ... model.train(1, data) >>> >>> if __name__ == '__main__': ... # If the device_target is GPU, set the device_target to "GPU" ... ms.set_context(mode=ms.GRAPH_MODE, device_target="Ascend") ... ... # Init Profiler ... # Note that the Profiler should be initialized before model.train ... profiler = Profiler(profiler_level=ProfilerLevel.Level0) ... ... # Train Model ... net = Net() ... train(net) ... ... # Profiler end ... profiler.analyse() """ _has_initialized = False _ascend_profiling_options = "" _ascend_job_id = "" ENABLE_STATUS = "on" DISABLE_STATUS = "off" def __init__(self, **kwargs): if os.getenv("PROFILING_MODE"): raise RuntimeError("Profiling is already enabled by PROFILING_MODE env.") self._dev_id = None self._cpu_profiler = None self._gpu_profiler = None self._md_profiler = None self._is_heterogeneous = False self._profiler_manager = None self._timeline_meta = [] self._init_time = None self._ascend_job_id = '' self._job_id_env = None self._filt_optype_names = '' self._output_path = '' self._rank_size = 1 self._rank_id = 0 self._ascend_profiler = None self.metadata = {} self.max_str_len = 4096 self.max_meta_size = 50 * 1024 self._timeline_size_limit_byte = 500 * 1024 * 1024 # 500MB self._parallel_strategy = True self._model_iteration_dict = None self._analyse_mode = ANALYSIS_SYNC_MODE _environment_check() # default aicore_metrics type is ArithmeticUtilization self._aicore_metrics_id = 0 self._l2_cache = self.DISABLE_STATUS self._hbm_ddr = self.DISABLE_STATUS self._pcie = self.DISABLE_STATUS self._data_process = True self._op_time = True self._profile_communication = False self._has_started = False self._has_started_twice = False self.start_profile = True self._profile_memory = False self._sync_enable = True self._stop_time = 0 self._dynamic_status = False self._profile_framework = None self._msprof_enable = os.getenv("PROFILER_SAMPLECONFIG") self.profiler_level = None self._pretty_json = False self._analyse_only = kwargs.get("analyse_only", False) self._data_simplification = kwargs.get("data_simplification", True) self._with_stack = False if self._msprof_enable: return self._start_time = int(time.time() * 1e6) # us self._monotonic_time = int(time.monotonic() * 1e6) # us logger.info("Profiling: start time: %d", self._start_time) if kwargs.get("env_enable"): self._profiler_init(kwargs) return Profiler._has_initialized = True # get device_id and device_target if self._analyse_only: self._device_target = DeviceTarget.ASCEND.value self._rank_id = kwargs.get("rank_id", 0) else: self._get_devid_rankid_and_devtarget() self._parser_kwargs(kwargs) self._get_output_path(kwargs) self._decide_device_target(kwargs) if self.start_profile: self.start() @staticmethod def _check_output_path(output_path): """Checking path validity.""" try: output_path = validate_and_normalize_path(output_path) except RuntimeError as err: raise ProfilerPathErrorException(f'profiling data output path {output_path} is invalid.') from err finally: pass if not os.path.isdir(output_path): raise ProfilerDirNotFoundException(output_path) return output_path @staticmethod def _parse_job_start_time(prof_dir): """ Get the start time of the job. Args: input_file (str): The file path of the host start log file. Returns: str, job start time. """ try: AscendMsprofExporter.check_msprof_env() script_path = AscendMsprofExporter.get_msprof_info_path() if not script_path: logger.warning("Can`t find get_msprof_info.py path, use single-export mode instead.") return None logger.info("get_msprof_info.py path is : %s", script_path) host_dir = os.path.join(prof_dir, 'host') cmd = ['python', script_path, '-dir', host_dir] outs, _ = AscendMsprofExporter.run_cmd(cmd) if not outs: logger.warning('Can`t find the msprof info result') return None result = json.loads(outs) if result.get('status', 1) == 1: return None jor_start_time = result.get('data', {}).get('collection_info', {}).get('Collection start time', None) if jor_start_time is not None: return float(jor_start_time.strip()) return None except (RuntimeError, JSONDecodeError, AttributeError, TimeoutError, FileNotFoundError) as err: logger.warning('Get the drvVersion error, use single-export mode instead. detail : %s', err) return None
[docs] @classmethod def offline_analyse(cls, path: str, pretty=False, step_list=None, data_simplification=True): """ Analyze training performance data offline, which is invoked after performance data collection is completed. Args: path (str): The profiling data path which need to be analyzed offline. There needs to be a profiler directory in this path. pretty (bool, optional): Whether to pretty json files. Default: ``False``. step_list (list, optional): A list of steps that need to be analyzed, the steps must be consecutive integers. Default: ``None``. By default, all steps will be analyzed. data_simplification (bool, optional): Whether to enable data simplification. Default: ``True``. Examples: >>> from mindspore import Profiler >>> Profiler.offline_analyse("./profiling_path") """ real_path = os.path.realpath(path) PathManager.check_input_directory_path(real_path) profiler_parent_path_list = PathManager.get_profiler_parent_path_list(real_path) if not isinstance(data_simplification, bool): logger.warning(f"For offline_analyse, the parameter data_simplification must be bool, " f"but got type {type(data_simplification)}, it will be set to True.") data_simplification = True if not profiler_parent_path_list: raise ProfilerPathErrorException(f'The provided path "{path}" must have a "profiler" directory for ' f'single-device profiler data, or multiple subdirectories each containing ' f'a "profiler" directory for multi-device profiler data. ') # get rank id rank_list = [] for parent_path in profiler_parent_path_list: profiler_path = os.path.join(parent_path, Constant.PROFILER_DIR) rank_id = ProfilerInfo.get_rank_id(profiler_path) if int(rank_id) < 0: logger.error(f"Unable to get a valid rank ID in the profiler directory: {profiler_path}") rank_list.append(rank_id) # start offline analyse if len(profiler_parent_path_list) == 1: PathManager.check_directory_path_writeable(profiler_parent_path_list[0]) profiler = cls(analyse_only=True, rank_id=rank_list[0], data_simplification=data_simplification) profiler.analyse(profiler_parent_path_list[0], pretty, step_list) else: # Multiprocess Parsing multiprocessing.set_start_method("fork", force=True) process_number = min(Constant.DEFAULT_PROCESS_NUMBER, len(profiler_parent_path_list)) pool = multiprocessing.Pool(processes=process_number) for idx, profiler_parent_path in enumerate(profiler_parent_path_list): PathManager.check_directory_path_writeable(profiler_parent_path) profiling_parser = cls(analyse_only=True, rank_id=rank_list[idx], data_simplification=data_simplification) pool.apply_async(profiling_parser.analyse, args=(profiler_parent_path, pretty, step_list)) pool.close() pool.join()
[docs] def op_analyse(self, op_name, device_id=None): """ Profiler users can use this interface to obtain operator performance data. Args: op_name (str or list): The primitive operator name to query. device_id (int, optional): ID of the target device. This parameter is optional during network training or inference, and users can use device_id parameter to specify which card operator performance data to parse. If this interface is used for offline data parsing, Default: ``0`` . Raises: TypeError: If the `op_name` parameter type is incorrect. TypeError: If the `device_id` parameter type is incorrect. RuntimeError: If MindSpore runs on Ascend, this interface cannot be used. Supported Platforms: ``GPU`` ``CPU`` Examples: >>> from mindspore import Profiler >>> from mindspore import nn >>> from mindspore import Model >>> # Profiler init. >>> profiler = Profiler() >>> # Train Model or eval Model, taking LeNet5 as an example. >>> # Refer to https://gitee.com/mindspore/docs/blob/r2.4.0/docs/mindspore/code/lenet.py >>> net = LeNet5() >>> optimizer = nn.Momentum(net.trainable_params(), learning_rate=0.1, momentum=0.9) >>> loss = nn.SoftmaxCrossEntropyWithLogits(sparse=True) >>> # Create the dataset taking MNIST as an example. >>> # Refer to https://gitee.com/mindspore/docs/blob/r2.4.0/docs/mindspore/code/mnist.py >>> dataloader = create_dataset() >>> model = Model(net, loss, optimizer) >>> model.train(5, dataloader, dataset_sink_mode=False) >>> >>> # Profiler end >>> profiler.analyse() >>> >>> profiler.op_analyse(op_name=["BiasAdd", "Conv2D"]) """ if self._device_target == 'ascend': raise RuntimeError("The Interface 'Profiler.op_analyse()' is not supported on Ascend currently.") if device_id and not isinstance(device_id, int): raise TypeError(f"For 'Profiler.op_analyse()', the parameter device_id must be int, " f"but got type {type(device_id)}") online_device_id = int(self._dev_id) self._dev_id = self._dev_id if device_id is None else device_id if self._dev_id is None: self._dev_id = 0 if not isinstance(op_name, str) and not isinstance(op_name, list): raise TypeError(f"For 'Profiler.op_analyse()', the parameter op_name must be str or list, " f"but got type {type(op_name)}") if not op_name: raise TypeError(f"For 'Profiler.op_analyse()', the parameter op_name cannot be "", '' or [].") parser = GpuFrameWorkParser(self._output_path, self._dev_id, op_name) op_info = parser.parse() if self._rank_size > 1: if online_device_id == int(self._dev_id): return op_info if online_device_id != int(self._dev_id): message = f"For 'Profiler.op_analyse()', the parameter device_id is equal to {self._dev_id}, but the " \ f"current device id is {online_device_id}, so no operator performance information is queried." return message return op_info
[docs] def analyse(self, offline_path=None, pretty=False, step_list=None, mode="sync"): """ Collect and analyze training performance data, support calls during and after training. The example shows above. Args: offline_path (Union[str, None], optional): The data path which need to be analyzed with offline mode. Offline mode isused in abnormal exit scenario. This parameter should be set to ``None`` for online mode. Default: ``None``. pretty (bool, optional): Whether to pretty json files. Default: ``False``. step_list (list, optional): A list of steps that need to be analyzed, the steps must be consecutive integers. Default: ``None``. By default, all steps will be analyzed. mode (str, optional): Analysis mode, it must be one of ["sync", "async"]. Default: ``sync``. - sync: analyse data in current process, it will block the current process. - async: analyse data in subprocess, it will not block the current process. Since the parsing process will take up extra CPU resources, please enable this mode according to the actual resource situation. Examples: >>> from mindspore.train import Callback >>> from mindspore import Profiler >>> class StopAtStep(Callback): ... def __init__(self, start_step=1, stop_step=5): ... super(StopAtStep, self).__init__() ... self.start_step = start_step ... self.stop_step = stop_step ... self.profiler = Profiler(start_profile=False) ... ... def step_begin(self, run_context): ... cb_params = run_context.original_args() ... step_num = cb_params.cur_step_num ... if step_num == self.start_step: ... self.profiler.start() ... ... def step_end(self, run_context): ... cb_params = run_context.original_args() ... step_num = cb_params.cur_step_num ... if step_num == self.stop_step: ... self.profiler.stop() ... ... def end(self, run_context): ... self.profiler.analyse(step_list=[2,3,4], mode="sync") """ try: if isinstance(pretty, bool): self._pretty_json = pretty if mode not in [ANALYSIS_SYNC_MODE, ANALYSIS_ASYNC_MODE]: logger.warning("For analyse, the parameter mode must be one of ['sync', 'async'], " "it will be set to 'sync'.") mode = ANALYSIS_SYNC_MODE model_iteration_dict = {} if step_list is not None and not isinstance(step_list, list): raise ProfilerParamTypeErrorException("Parameter step_list must be a list.") if step_list: if not all(isinstance(step_id, int) for step_id in step_list): raise ProfilerParamTypeErrorException("The elements of the parameter step_list must be integers.") step_list.sort() if step_list[-1] - step_list[0] != len(step_list) - 1: err_msg = "The elements of the parameter step_list must be continuous integers." raise ProfilerParamTypeErrorException(err_msg) model_iteration_dict[DEFAULT_MODEL_ID] = step_list if offline_path is not None and not isinstance(offline_path, str): raise ProfilerParamTypeErrorException("For analyse, the type of parameter offline_path must be str.") self._analyse(offline_path=offline_path, model_iteration_dict=model_iteration_dict, mode=mode) except (ProfilerException, RuntimeError, OSError, TypeError, NameError) as err: logger.error("Profiler analyse failed: %s", str(err))
def _analyse(self, offline_path=None, model_iteration_dict=None, mode=ANALYSIS_SYNC_MODE): """ Collect and analyze training performance data, support calls during and after training. The example shows above. Args: offline_path (Union[str, None], optional): The data path which need to be analysed with offline mode. Offline mode isused in abnormal exit scenario. This parameter should be set to ``None`` for online mode. Default: ``None``. model_iteration_dict: Dictionary with model id as the key and iteration id as the value, Default: ``None``. mode (str, optional): Analysis mode. Whether to analyse data in subprocess. Default: ``sync``. By default, analyse data in current process. """ self._model_iteration_dict = model_iteration_dict self._init_profiler_info() self._is_support_step_info_collect() self._analyse_mode = mode parallel_mode = get_auto_parallel_context("parallel_mode") stage_num = get_auto_parallel_context("pipeline_stages") ProfilerInfo.set_parallel_info(parallel_mode, stage_num) if offline_path: # Loads the ProfilerInfo data, avoid overwriting the data collection prof_info_x.json. ProfilerInfo.load_profiler_info_dict(os.path.join(offline_path, "profiler")) ProfilerInfo.set_analyse_start_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) self._ascend_graph_analyse(offline_path=offline_path) ProfilerInfo.set_analyse_end_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) ProfilerInfo.save(self._output_path) return if self._msprof_enable: return # Stop data collection after all operators are executed. _pynative_executor.sync() Profiler._has_initialized = False self._dynamic_status = self._profiler_manager.dynamic_status() _environment_check() cpu_op_file = glob.glob(os.path.join(self._output_path, 'cpu_op_type_info_*')) if self._device_target and self._device_target != DeviceTarget.CPU.value and cpu_op_file: self._is_heterogeneous = True ProfilerInfo.set_heterogeneous(self._is_heterogeneous) ProfilerInfo.set_analyse_start_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) if self._device_target and self._device_target == DeviceTarget.CPU.value: self._cpu_analyse() if self._profile_framework: logger.warning("The parameter 'profile_framework' is not support for CPU, so there no host profiler " "data.") if self._device_target and self._device_target == DeviceTarget.GPU.value: self._gpu_analyse() elif self._device_target and self._device_target == DeviceTarget.ASCEND.value: self._ascend_analyse() logger.info("Profiling: all the data have been analyzed.") ProfilerInfo.set_analyse_end_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) ProfilerInfo.save(self._output_path)
[docs] def start(self): """ Used for Ascend, GPU, start profiling. Profiling can be turned on based on step and epoch. Raises: RuntimeError: If the profiler has already started. RuntimeError: If the `start_profile` parameter is not set or is set to ``True``. Examples: >>> from mindspore.train import Callback >>> from mindspore import Profiler >>> class StopAtStep(Callback): ... def __init__(self, start_step, stop_step): ... super(StopAtStep, self).__init__() ... self.start_step = start_step ... self.stop_step = stop_step ... self.profiler = Profiler(start_profile=False) ... ... def step_begin(self, run_context): ... cb_params = run_context.original_args() ... step_num = cb_params.cur_step_num ... if step_num == self.start_step: ... self.profiler.start() ... ... def step_end(self, run_context): ... cb_params = run_context.original_args() ... step_num = cb_params.cur_step_num ... if step_num == self.stop_step: ... self.profiler.stop() ... ... def end(self, run_context): ... self.profiler.analyse() """ if self._msprof_enable: return if not self._has_started: if not self._has_started_twice: self._has_started = True else: raise RuntimeError("The profiler has already started. Do not turn on again in the open state.") self._cpu_profiler.step_profiling_enable(True) if self._op_time: self._cpu_profiler.enable_op_time() if self._profile_memory: self._cpu_profiler.enable_profile_memory() if self._device_target and self._device_target == DeviceTarget.GPU.value: if self._data_process: self._md_profiler.start() self._gpu_profiler.data_process_enable(True) if self._profile_framework or self._op_time: self._gpu_profiler.step_profiling_enable(True) if self._op_time: self._gpu_profiler.enable_op_time() elif self._device_target and self._device_target == DeviceTarget.ASCEND.value: if self._data_process: self._md_profiler.start() self._ascend_graph_start() ProfilerInfo.set_profiling_start_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) ProfilerInfo.set_system_cnt(c_expression.get_clock_syscnt()) ProfilerInfo.set_system_time(int(c_expression.get_clock_time())) # ns if context.get_context("mode") == context.GRAPH_MODE: jit_config = context.get_jit_config() jit_level = jit_config.get("jit_level", "") ProfilerInfo.set_jit_level(jit_level) if self._profile_framework: _framework_profiler_enable_mi()
[docs] def stop(self): """ Used for Ascend, GPU, stop profiling. Profiling can be turned off based on step and epoch. Raises: RuntimeError: If the profiler has not started, this function is disabled. Examples: >>> from mindspore.train import Callback >>> from mindspore import Profiler >>> class StopAtEpoch(Callback): ... def __init__(self, start_epoch, stop_epoch): ... super(StopAtEpoch, self).__init__() ... self.start_epoch = start_epoch ... self.stop_epoch = stop_epoch ... self.profiler = Profiler(start_profile=False) ... ... def epoch_begin(self, run_context): ... cb_params = run_context.original_args() ... epoch_num = cb_params.cur_epoch_num ... if epoch_num == self.start_epoch: ... self.profiler.start() ... ... def epoch_end(self, run_context): ... cb_params = run_context.original_args() ... epoch_num = cb_params.cur_epoch_num ... if epoch_num == self.stop_epoch: ... self.profiler.stop() ... ... def end(self, run_context): ... self.profiler.analyse() """ if self._msprof_enable: return if self._has_started: self._has_started = False else: raise RuntimeError("The profiler has not started, so can not stop. Please call the start() method " "before calling the stop() method.") # Stop data collection after all operators are executed. _pynative_executor.sync() self._cpu_profiler.stop() if self._data_process and self._md_profiler is not None: self._md_profiler.stop() self._md_profiler.save(self._output_path) if self._device_target and self._device_target == DeviceTarget.GPU.value: self._gpu_profiler.stop() elif self._device_target and self._device_target == DeviceTarget.ASCEND.value: self._ascend_profiler.stop() self._stop_time = int(time.time() * 10000000) ProfilerInfo.set_profiling_stop_time(time.strftime("%Y-%m-%d %H:%M:%S", time.localtime())) self._init_profiler_info() ProfilerInfo.set_diff_time(self._start_time - self._monotonic_time) ProfilerInfo.save(self._output_path) self._dump_metadata() logger.info("Profiling: stop time: %d", self._stop_time)
[docs] def add_metadata(self, key: str, value: str): """ Report custom metadata key-value pair data. Args: key (str): The key to the metadata. value (str): The value to the metadata. Examples: >>> from mindspore import Profiler >>> # Profiler init. >>> profiler = Profiler() >>> # Call Profiler add_metadata >>> profiler.add_metadata("test_key", "test_value") >>> # Profiler end >>> profiler.analyse() """ if not isinstance(key, str) or not isinstance(value, str): logger.warning("The key and value of metadata must be string. Skip this metadata.") return if not self._check_str_valid(key) or not self._check_str_valid(value): logger.warning("Invalid input key or value. Skip this metadata.") return add_size = getsizeof(key) + getsizeof(value) if getsizeof(self.metadata) + add_size < self.max_meta_size: if key in self.metadata: logger.warning(f"{key} is already saved as metadata, override it.") self.metadata[key] = value else: logger.warning("Too many metadata added. Skip this metadata")
[docs] def add_metadata_json(self, key: str, value: str): """ Report custom metadata key-value pair data with the value as a JSON string data. Args: key (str): The key to the metadata. value (str): The json str format value to the metadata. Examples: >>> import json >>> from mindspore import Profiler >>> # Profiler init. >>> profiler = Profiler() >>> # Call Profiler add_metadata_json >>> profiler.add_metadata_json("test_key", json.dumps({"key1": 1, "key2": 2})) >>> # Profiler end, metadata will be saved in profiler_metadata.json >>> profiler.analyse() """ if not isinstance(key, str) or not isinstance(value, str): logger.warning("The key and value of metadata must be string. Skip this metadata.") return if not self._check_str_valid(key) or not self._check_str_valid(value): logger.warning("Invalid input key or value. Skip this metadata.") return add_size = getsizeof(key) + getsizeof(value) if getsizeof(self.metadata) + add_size < self.max_meta_size: try: if key in self.metadata: logger.warning(f"{key} is already saved as metadata, override it.") self.metadata[key] = json.loads(value) except ValueError: logger.warning("The metadata value must be json format string. Skip this metadata") else: logger.warning("Too many metadata added. Skip this metadata")
def _dump_metadata(self): """Dump metadata to file.""" if not self.metadata: return FileManager.create_json_file(self._output_path, self.metadata, "profiler_metadata.json", indent=4) self.metadata.clear() def _check_str_valid(self, input_str: str): """Check str length""" if len(input_str) > self.max_str_len: return False return True def _set_ascend_job_id(self, ascend_job_id): """Set output_path for offline parsing performance data.""" if not ascend_job_id: return self._ascend_job_id = validate_and_normalize_path(ascend_job_id) if not os.path.exists(self._ascend_job_id): msg = f"Invalid ascend_job_id: {self._ascend_job_id}, Please pass the absolute path of the JOB dir" logger.critical(msg) raise ValueError(msg) self._output_path, _ = os.path.split(self._ascend_job_id) def _profiler_init(self, kwargs): """Initialize variables when profiler is enabled by environment variables.""" options = kwargs.get("env_enable") self._has_started = True self._start_time = options.get("start_time") self._output_path = options.get('file_output_path') self._profile_memory = options.get('profile_memory') self._parallel_strategy = options.get('parallel_strategy') self._timeline_size_limit_byte = options.get('timeline_limit') * 1024 * 1024 self._data_process = options.get('data_process') self._profile_communication = options.get('profile_communication') self._op_time = options.get('op_time') self._device_target = context.get_context("device_target").lower() self._profile_framework = options.get('profile_framework', None) self._profiler_manager = c_expression.ProfilerManager.get_instance() self._cpu_profiler = c_expression.Profiler.get_instance("CPU") if self._data_process: self._md_profiler = cde.GlobalContext.profiling_manager() if self._device_target == DeviceTarget.GPU.value: self._gpu_profiler = c_expression.Profiler.get_instance("GPU") if self._device_target == DeviceTarget.ASCEND.value: self._ascend_profiler = c_expression.Profiler.get_instance("Ascend") self._get_devid_rankid_and_devtarget() def _init_profiler_info(self): """Init profiler info filer.""" mode = "graph" if context.get_context("mode") == context.PYNATIVE_MODE: mode = "pynative" store_id = self._dev_id if self._device_target == DeviceTarget.GPU.value else self._rank_id ProfilerInfo.init_info(mode, store_id) def _decide_device_target(self, kwargs): """Complete Profiler initialization according to device_target""" profiler_manager = c_expression.ProfilerManager self._profiler_manager = profiler_manager.get_instance() if self._profile_framework is None: self._profiler_manager.set_profile_framework("NULL") else: self._profiler_manager.set_profile_framework(self._profile_framework) if self._device_target: cpu_profiler = c_expression.Profiler self._cpu_profiler = cpu_profiler.get_instance("CPU") self._cpu_profiler.init(self._output_path) if self._device_target and self._device_target == DeviceTarget.CPU.value: self._cpu_profiler_init(kwargs) if self._device_target and self._device_target == DeviceTarget.GPU.value: self._gpu_profiler_init(kwargs) elif self._device_target and self._device_target == DeviceTarget.ASCEND.value: self._ascend_profiler_init(kwargs) def _cpu_profiler_init(self, kwargs): """Cpu profiler init.""" self.start_profile = kwargs.pop("start_profile", True) if not isinstance(self.start_profile, bool): raise TypeError(f"For '{self.__class__.__name__}', the parameter start_profile must be bool, " f"but got type {type(self.start_profile)}") def _gpu_profiler_init(self, kwargs): """Gpu profiler init.""" self._parse_parameter_for_gpu(kwargs) # Setup and start MindData Profiling if self._data_process: self._md_profiler = cde.GlobalContext.profiling_manager() self._md_profiler.init() gpu_profiler = c_expression.Profiler self._gpu_profiler = gpu_profiler.get_instance("GPU") if GlobalComm.WORLD_COMM_GROUP == "nccl_world_group": self._dev_id = str(get_rank()) os.environ['DEVICE_ID'] = self._dev_id self._rank_id = self._dev_id self._gpu_profiler.init(self._output_path, int(self._rank_id)) self._gpu_profiler.sync_enable(self._sync_enable) def _ascend_profiler_init(self, kwargs): """Ascend profiler init.""" self._parse_parameter_for_ascend(kwargs) # Setup and start MindData Profiling if self._data_process: self._md_profiler = cde.GlobalContext.profiling_manager() self._md_profiler.init() self._init_time = int(time.time() * 10000000) logger.info("Profiling: profiling init time: %d", self._init_time) os.environ['DEVICE_ID'] = self._dev_id self._ascend_profiling_options = json.dumps(self._construct_profiling_options()) # Characters longer than 2048 are ignored, resulting in profiling option resolution errors if len(self._ascend_profiling_options) > 2048: msg = f"For '{self.__class__.__name__}', the environment parameter length exceeds " \ f"the limit (2048), please input valid parameters." logger.critical(msg) raise ValueError(msg) # use context interface to open profiling, for the new mindspore version(after 2020.5.21) self._ascend_profiler = c_expression.Profiler.get_instance("Ascend") self._ascend_profiler.init(self._output_path, int(self._dev_id), self._ascend_profiling_options) base_profiling_container_path = os.path.join(self._output_path, "container") container_path = os.path.join(base_profiling_container_path, self._dev_id) data_path = os.path.join(container_path, "data") data_path = validate_and_normalize_path(data_path) if not os.path.exists(data_path): os.makedirs(data_path, exist_ok=True, mode=stat.S_IRUSR | stat.S_IWUSR | stat.S_IXUSR) def _construct_profiling_options(self): """ Construct profiling options to determine which profiling data should be collected. """ fp_point = os.environ.get("PROFILING_FP_START", "") bp_point = os.environ.get("PROFILING_BP_END", "") profiling_options = { "output": self._output_path, "fp_point": fp_point, "bp_point": bp_point, "training_trace": self.ENABLE_STATUS if self._op_time else self.DISABLE_STATUS, "task_trace": self.ENABLE_STATUS if self._op_time else self.DISABLE_STATUS, "aic_metrics": AICORE_METRICS_DICT.get(self._aicore_metrics_id, "ArithmeticUtilization"), "aicpu": self.ENABLE_STATUS if self._data_process or self._op_time else self.DISABLE_STATUS, "profile_memory": self.ENABLE_STATUS if self._op_time and self._profile_memory else self.DISABLE_STATUS, "hccl": self.ENABLE_STATUS if self._op_time and self._profile_communication else self.DISABLE_STATUS, "l2_cache": self._l2_cache, "hbm_ddr": self._hbm_ddr, "pcie": self._pcie, "parallel_strategy": self.ENABLE_STATUS if self._parallel_strategy else self.DISABLE_STATUS, "op_time": self.ENABLE_STATUS if self._op_time else self.DISABLE_STATUS, "profile_framework": self._profile_framework, "profiler_level": self.profiler_level.value if self.profiler_level else self.DISABLE_STATUS, "with_stack": "on" if self._with_stack else "off" } ProfilerInfo.set_profiling_options(profiling_options) return profiling_options def _parse_parameter_for_gpu(self, kwargs): """Parse parameter in Profiler when the device target is GPU.""" self.start_profile = kwargs.pop("start_profile", True) if not isinstance(self.start_profile, bool): raise TypeError(f"For '{self.__class__.__name__}', the parameter start_profile must be bool, " f"but got type {type(self.start_profile)}") self._sync_enable = kwargs.pop("sync_enable", True) if not isinstance(self._sync_enable, bool): logger.warning("The parameter sync_enable is an invalid value, it will be set to True.") self._sync_enable = True def _parse_parameter_for_ascend(self, kwargs): """Parse parameter in Profiler when the device target is Ascend.""" ascend_job_id = kwargs.pop("ascend_job_id", "") self._set_ascend_job_id(ascend_job_id) self.start_profile = kwargs.pop("start_profile", True) if not isinstance(self.start_profile, bool): raise TypeError(f"For '{self.__class__.__name__}', the parameter start_profile must be bool, " f"but got type {type(self.start_profile)}") self._profile_communication = kwargs.pop("profile_communication", False) if not isinstance(self._profile_communication, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter profile_communication must be bool, " f"but got type {type(self._profile_communication)}, it will be set to False.") self._profile_communication = False if self._profile_communication: hccl_option = {"output": self._output_path, "task_trace": self.ENABLE_STATUS} os.environ['PROFILING_OPTIONS'] = json.dumps(hccl_option) self._profile_memory = kwargs.pop("profile_memory", False) if not isinstance(self._profile_memory, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter profile_memory must be bool, " f"but got type {type(self._profile_memory)}, it will be set to False.") self._profile_memory = False self._aicore_metrics_id = kwargs.pop("aicore_metrics", 0) if not isinstance(self._aicore_metrics_id, int): logger.warning(f"For '{self.__class__.__name__}', the parameter aicore_metrics must be int, " f"but got type {type(self._aicore_metrics_id)}, it will be set to 0.") self._aicore_metrics_id = 0 if self._aicore_metrics_id not in AICORE_METRICS_DICT: logger.warning(f"For '{self.__class__.__name__}', the parameter aicore_metrics must be in " f"[-1, 0, 1, 2, 3, 4, 5, 6], but got {self._aicore_metrics_id}, it will be set to 0.") self._aicore_metrics_id = 0 l2_cache_enable = kwargs.pop("l2_cache", False) if not isinstance(l2_cache_enable, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter l2_cache must be bool, " f"but got type {type(l2_cache_enable)}, it will be set to False.") l2_cache_enable = False self._l2_cache = self.ENABLE_STATUS if l2_cache_enable else self.DISABLE_STATUS hbm_ddr_enable = kwargs.pop("hbm_ddr", False) if not isinstance(hbm_ddr_enable, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter hbm_ddr must be bool, " f"but got type {type(hbm_ddr_enable)}, it will be set to False.") hbm_ddr_enable = False self._hbm_ddr = self.ENABLE_STATUS if hbm_ddr_enable else self.DISABLE_STATUS pcie_enable = kwargs.pop("pcie", False) if not isinstance(pcie_enable, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter pcie must be bool, " f"but got type {type(pcie_enable)}, it will be set to False.") pcie_enable = False self._pcie = self.ENABLE_STATUS if pcie_enable else self.DISABLE_STATUS self._parallel_strategy = kwargs.pop("parallel_strategy", False) if not isinstance(self._parallel_strategy, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter parallel_strategy must be bool, " f"but got type {type(self._parallel_strategy)}, it will be set to False.") self._parallel_strategy = False self.profiler_level = kwargs.pop("profiler_level", None) if self.profiler_level and not isinstance(self.profiler_level, ProfilerLevel): logger.warning(f"For '{self.__class__.__name__}', the parameter profiler_level must be one of " f"[ProfilerLevel.Level0, ProfilerLevel.Level1, ProfilerLevel.Level2], but got type " f"{type(self.profiler_level)}, it will be set to ProfilerLevel.Level0.") self.profiler_level = ProfilerLevel.Level0 elif self.profiler_level == ProfilerLevel.Level0: self._data_process = False self._aicore_metrics_id = -1 logger.warning(f"For '{self.__class__.__name__}', when profiler_level set Level0, data_process will be set " f"to False and aicore_metrics set to -1.") elif self.profiler_level == ProfilerLevel.Level1: self._data_process = False logger.warning(f"For '{self.__class__.__name__}', when profiler_level set Level1, data_process will be set " f"to False.") def _ascend_analyse(self): """Collect and analyse ascend performance data.""" self._rank_size = 1 if self._profile_communication and not GlobalComm.INITED: self._profile_communication = False if GlobalComm.INITED: self._rank_size = get_group_size() else: self._rank_size = int(os.getenv('RANK_SIZE', '1')) ProfilerInfo.set_rank_size(self._rank_size) if self._has_started: self.stop() else: logger.info("No need to stop profiler because profiler has been stopped.") self._ascend_profiler.finalize() # export op data before analyse self._ascend_graph_analyse() def _minddata_analyse(self): """Analyse mindadata for ascend graph model.""" if not self._data_process: return store_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id # parse minddata pipeline operator and queue try: MinddataPipelineParser(self._output_path, store_id, self._output_path).parse() except ProfilerException as err: logger.warning(err.message) finally: pass # Analyze minddata information logger.info("Profiling: analyzing the minddata information.") try: MinddataProfilingAnalyzer(self._output_path, store_id, self._output_path, pretty=self._pretty_json).analyze() except ProfilerException as err: logger.warning(err.message) finally: pass def _minddata_aicpu_analyse(self, source_path, job_id): """Analyse minddata aicpu after ascend.""" if not self._data_process: return store_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id # Parsing minddata AICPU profiling if self._device_target == DeviceTarget.ASCEND.value: logger.info("Profiling: analyzing the minddata AICPU data.") MinddataParser.execute(source_path, self._output_path, job_id, store_id) def _ascend_fpbp_analyse(self, op_summary, steptrace): """ Ascned graph model op analyse. Returns: dict[obj]: points: the fp bp information """ points = None try: dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id step_trace_point_info_path = os.path.join(self._output_path, f'step_trace_point_info_{dev_id}.json') step_trace_point_info_path = validate_and_normalize_path(step_trace_point_info_path) fpbp_analyse = AscendFPBPGenerator(op_summary, steptrace, pretty=self._pretty_json) points, _ = fpbp_analyse.parse() fpbp_analyse.write(step_trace_point_info_path) except ProfilerException as err: logger.warning(err.message) finally: pass return points def _ascend_op_analyse(self, op_summary, op_statistic, dynamic_status, launch_ops: List): """ Ascend graph model hwts analyse. Returns: list[obj]: The list is: framework_parser, aicpu_data_parser, optime_parser, op_task_dict """ try: dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id op_intermediate_detail_path = os.path.join(self._output_path, f'aicore_intermediate_{dev_id}_detail.csv') op_intermediate_type_path = os.path.join(self._output_path, f'aicore_intermediate_{dev_id}_type.csv') aicpu_intermediate_detail_path = os.path.join(self._output_path, f'aicpu_intermediate_{dev_id}.csv') framework_raw_path = os.path.join(self._output_path, f'framework_raw_{dev_id}.csv') op_intermediate_detail_path = validate_and_normalize_path(op_intermediate_detail_path) op_intermediate_type_path = validate_and_normalize_path(op_intermediate_type_path) aicpu_intermediate_detail_path = validate_and_normalize_path(aicpu_intermediate_detail_path) framework_raw_path = validate_and_normalize_path(framework_raw_path) if context.get_context("mode") == context.GRAPH_MODE: output_timeline_data_path = os.path.join(self._output_path, f'output_timeline_data_{dev_id}.txt') output_timeline_data_path = validate_and_normalize_path(output_timeline_data_path) else: output_timeline_data_path = None op_analyser = AscendOPGenerator(op_summary, op_statistic, dynamic_status, launch_ops) op_analyser.parse() op_analyser.write(op_intermediate_detail_path, op_intermediate_type_path, aicpu_intermediate_detail_path, framework_raw_path, output_timeline_data_path) except (ProfilerException, RuntimeError) as err: logger.warning(str(err)) finally: pass def _ascend_step_trace_analyse(self, steptrace): """Analyse step trace info.""" try: if not self._dynamic_status: dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id step_trace_intermediate_path = os.path.join(self._output_path, f'step_trace_raw_{dev_id}_detail_time.csv') step_trace_intermediate_path = validate_and_normalize_path(step_trace_intermediate_path) steptrace_analyser = AscendStepTraceGenerator(steptrace) steptrace_analyser.parse() steptrace_analyser.write(step_trace_intermediate_path) except ProfilerException as err: logger.warning(err.message) finally: pass def _ascend_timeline_analyse(self, op_summary, steptrace, source_path, mindstudio_profiler_output) -> List: """Analyse timeline info.""" try: logger.info("Profiling: analyzing the timeline data") timeline_analyser = AscendTimelineGenerator(self._output_path, source_path, mindstudio_profiler_output, self._rank_id, self._rank_size, context.get_context('mode'), self._model_iteration_dict.get(DEFAULT_MODEL_ID)) timeline_analyser.parse_cluster_data(op_summary, steptrace) timeline_analyser.parse_timeline_data(pretty=self._pretty_json) timeline_analyser.write_timeline_display() timeline_analyser.write_timeline_summary() except (ProfilerIOException, ProfilerFileNotFoundException, RuntimeError) as err: logger.warning('Fail to write timeline data: %s', err) finally: pass return timeline_analyser.get_kernel_event_list() def _ascend_dynamic_net_analyse(self, op_summary): """Analyse dynamic shape network info.""" if self._profile_communication: logger.warning( "The profile_communication parameter cannot be set on the dynamic shape network.") if self._profile_memory: logger.warning("The profile_memory parameter cannot be set on the dynamic shape network.") logger.warning( "[Profiler]Dynamic Shape network does not support collecting step trace performance data currently.") dynamic_parser = DynamicFrameWorkParser(self._output_path, self._rank_id, pretty=self._pretty_json) dynamic_parser.write_dynamic_shape_data(op_summary) def _ascend_flops_analyse(self, op_summary, launch_ops): """Get op FLOPs from op_summary, write output_op_flops_x.csv.""" if 'vector_fops' not in op_summary.dtype.names and 'cube_fops' not in op_summary.dtype.names: logger.warning("[Profiler] Can not found cube fops and vector fops data in the op summary.") return try: dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id flops_path = os.path.join(self._output_path, f'flops_{dev_id}.txt') flops_summary_path = os.path.join(self._output_path, f'flops_summary_{dev_id}.json') flops_path = validate_and_normalize_path(flops_path) flops_summary_path = validate_and_normalize_path(flops_summary_path) flops_analyser = AscendFlopsGenerator(op_summary, launch_ops, pretty=self._pretty_json) flops_analyser.parse() flops_analyser.write(flops_path, flops_summary_path) except (ProfilerException, RuntimeError) as err: logger.warning(str(err)) finally: pass def _ascend_graph_memory_analyse(self): """Analyse memory usage info.""" if not self._profile_memory: return if self._profile_memory and context.get_context("mode") == context.PYNATIVE_MODE: logger.warning("[Profiler]The parameter profile_memory is not supported on Ascend " "PyNative mode currently.") try: logger.info("Profiling: analyzing the memory usage info.") self._analyse_memory_usage() except (ProfilerIOException, ProfilerFileNotFoundException, ProfilerRawFileException) as err: logger.warning(err.message) finally: pass def _ascend_ms_analyze(self, source_path): """Ascend ms generate""" timestamp = time.strftime("%Y%m%d%H%M%S", time.localtime(time.time())) if self._rank_id: ascend_ms_path = f"rank-{self._rank_id}_{timestamp}_ascend_ms" else: ascend_ms_path = f"{socket.gethostname()}--{os.getpid()}_{timestamp}_ascend_ms" ascend_ms_path = os.path.join(self._output_path, ascend_ms_path) dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id ascend_profiler_output_path = os.path.join(ascend_ms_path, 'ASCEND_PROFILER_OUTPUT') PathManager.make_dir_safety(ascend_profiler_output_path) source_profiler_info_path = os.path.join(self._output_path, f"profiler_info_{dev_id}.json") target_profiler_info_path = os.path.join(ascend_ms_path, f"profiler_info_{dev_id}.json") PathManager.copy_file(source_profiler_info_path, target_profiler_info_path) source_profiler_metadata_path = os.path.join(self._output_path, f"profiler_metadata.json") target_profiler_metadata_path = os.path.join(ascend_ms_path, f"profiler_metadata.json") PathManager.copy_file(source_profiler_metadata_path, target_profiler_metadata_path) source_timeline_path = os.path.join(self._output_path, f"ascend_timeline_display_{dev_id}.json") target_timeline_path = os.path.join(ascend_profiler_output_path, f"trace_view.json") PathManager.copy_file(source_timeline_path, target_timeline_path) src_op_mem_file = os.path.join(self._output_path, f"operator_memory_{dev_id}.csv") dst_op_mem_file = os.path.join(ascend_profiler_output_path, f"operator_memory.csv") PathManager.copy_file(src_op_mem_file, dst_op_mem_file) ms_output_path = os.path.realpath( os.path.join(source_path, os.path.pardir, 'mindstudio_profiler_output')) static_op_mem_path = os.path.join(ms_output_path, f"static_op_mem_*.csv") src_static_op_mem_path = glob.glob(static_op_mem_path) if src_static_op_mem_path: dst_static_op_mem_file = os.path.join(ascend_profiler_output_path, f"static_op_mem.csv") PathManager.copy_file(src_static_op_mem_path[0], dst_static_op_mem_file) src_op_statistics_path = os.path.join(ms_output_path, "op_statistic_*.csv") src_op_statistics_path = glob.glob(src_op_statistics_path) if src_op_statistics_path: dst_op_statistics_path = os.path.join(ascend_profiler_output_path, f"op_statistic.csv") PathManager.copy_file(src_op_statistics_path[0], dst_op_statistics_path) self._ascend_graph_cluster_analyse(source_path, ascend_profiler_output_path) self._ascend_graph_communicate_analyse(source_path, ascend_profiler_output_path) AscendIntegrateGenerator(source_path, ascend_profiler_output_path).parse() AscendMemoryGenerator(self._output_path, self._rank_id, source_path, ascend_profiler_output_path).parse() def _ascend_graph_cluster_analyse(self, source_path, ascend_profiler_output_path): """Analyse step trace time info""" try: logger.info("Profiling: analyzing the step trace time profiler info.") step_trace_time_path = os.path.join(ascend_profiler_output_path, f'step_trace_time.csv') step_trace_time_path = validate_and_normalize_path(step_trace_time_path) cluster_analyse = AscendClusterGenerator(source_path) cluster_analyse.parse() cluster_analyse.write(step_trace_time_path) except (ProfilerIOException, ProfilerFileNotFoundException, ProfilerRawFileException) as err: logger.warning(err.message) finally: pass def _ascend_graph_communicate_analyse(self, source_path, ascend_profiler_output_path): """Analyse communicate info""" if not self._profile_communication: return try: logger.info("Profiling: analyzing the communicate and communicate_matrix profiler info.") communication_file_path = os.path.join(ascend_profiler_output_path, f'communication.json') communication_file_path = validate_and_normalize_path(communication_file_path) communication_matrix_file_path = os.path.join(ascend_profiler_output_path, f"communication_matrix.json") communication_matrix_file_path = validate_and_normalize_path(communication_matrix_file_path) analyze_path = os.path.realpath(os.path.join(source_path, os.path.pardir, 'analyze')) communicate_analyser = AscendCommunicationGenerator(analyze_path) communicate_analyser.parse() communicate_analyser.write(communication_file_path, communication_matrix_file_path) except (ProfilerIOException, ProfilerFileNotFoundException, ProfilerRawFileException) as err: logger.warning(err.message) finally: pass def _ascend_graph_hccl_analyse(self, mindstudio_profiler_output, steptrace): """Analyse hccl profiler info.""" if not self._profile_communication: return if self._profile_communication and context.get_context("mode") == context.PYNATIVE_MODE: logger.warning("[Profiler]The parameter profile_communication is not supported on Ascend " "PyNative mode currently.") return try: logger.info("Profiling: analyzing the hccl profiler info.") dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id hccl_raw_path = os.path.join(self._output_path, f'hccl_raw_{dev_id}.csv') hccl_raw_path = validate_and_normalize_path(hccl_raw_path) hccl_analyse = AscendHCCLGenerator(mindstudio_profiler_output, steptrace) hccl_analyse.parse() hccl_analyse.write(hccl_raw_path) except (ProfilerIOException, ProfilerFileNotFoundException, ProfilerRawFileException) as err: logger.warning(err.message) finally: pass def _get_kernel_op_map(self, op_summary, kernels: List[CANNEvent]) -> List: """Get the mapping between framework operator and device kernel.""" if not kernels: return [] kernel_map = {} for kernel in kernels: key = kernel.name if kernel.name.startswith('hcom_') else (kernel.name, str(kernel.ts)) kernel_map[key] = kernel.parent launch_ops = [None] * len(op_summary) for index, summary in enumerate(op_summary): ts = str(summary['Task Start Time(us)']).strip("\t") name = summary['Op Name'] key = name if name.startswith("hcom_") else (name, ts) launch_op = kernel_map.get(key) if not launch_op: continue launch_ops[index] = launch_op.name return launch_ops def _ascend_graph_analyse(self, offline_path=None): if offline_path or self._analyse_mode == ANALYSIS_SYNC_MODE: self._ascend_graph_analyse_inner(offline_path) else: MultiProcessPool().add_async_job(self._ascend_graph_analyse_inner) @timeit("Profiler analyse done") def _ascend_graph_analyse_inner(self, offline_path=None): """Ascend graph mode analyse.""" job_id = self._get_profiling_job_id(offline_path) if not job_id: return logger.info("Profiling: job id is %s ", job_id) self._check_output_path(output_path=self._output_path) source_path = os.path.join(self._output_path, job_id) self._minddata_analyse() if self._op_time: mindstudio_profiler_output = os.path.realpath( os.path.join(source_path, os.path.pardir, 'mindstudio_profiler_output')) flag = _ascend_graph_msprof_generator(mindstudio_profiler_output, self._model_iteration_dict) if not flag: logger.warning('Current driver package not support all export mode, use single export mode, ' 'this may lead to performance degradation. Suggest upgrading the driver package.') ProfilerInfo.set_export_flag(flag) op_summary, op_statistic, steptrace, steptrace_model \ = _ascend_graph_msprof_analyse(mindstudio_profiler_output) kernels = self._ascend_timeline_analyse(op_summary, steptrace, source_path, mindstudio_profiler_output) if isinstance(op_statistic, np.ndarray) and op_statistic.shape[0] == 0 or \ not isinstance(op_statistic, np.ndarray) and not op_statistic: logger.warning('Op statistic data is empty!') return launch_ops = self._get_kernel_op_map(op_summary, kernels) self._ascend_op_analyse(op_summary, op_statistic, self._dynamic_status, launch_ops) graph_ids = np.unique(op_summary['Model ID']).tolist() self._ascend_fpbp_analyse(op_summary, steptrace) if len(graph_ids) == 1: self._ascend_step_trace_analyse(steptrace) else: self._ascend_step_trace_analyse(steptrace_model) if self._dynamic_status: self._ascend_dynamic_net_analyse(op_summary) self._ascend_flops_analyse(op_summary, launch_ops) self._ascend_graph_memory_analyse() self._ascend_ms_analyze(mindstudio_profiler_output) self._ascend_graph_hccl_analyse(mindstudio_profiler_output, steptrace) self._minddata_aicpu_analyse(self._output_path, job_id) ProfilerInfo.set_graph_ids(graph_ids) try: ProfilerInfo.set_data_simplification(self._data_simplification) ProfilerPathManager.simplify_data(self._output_path, self._data_simplification) except RuntimeError as err: logger.error('Profilier simplify data failed, %s', str(err)) def _ascend_graph_start(self): """Ascend graph mode start profiling.""" op_range_file = os.path.join(self._framework_path, "op_range_" + str(self._rank_id)) if os.path.exists(op_range_file): os.remove(op_range_file) logger.info("Clear old op range filer.") self._ascend_profiler.start() def _gpu_analyse(self): """Collect and analyse gpu performance data.""" self._dev_id = context.get_context("device_id") self._rank_size = 1 if GlobalComm.WORLD_COMM_GROUP == "nccl_world_group": self._dev_id = str(get_rank()) if GlobalComm.INITED: self._rank_size = get_group_size() else: self._rank_size = int(os.getenv('RANK_SIZE', '1')) ProfilerInfo.set_rank_size(self._rank_size) if self._has_started: self.stop() else: logger.info("No need to stop profiler because profiler has been stopped.") self._minddata_analyse() try: self._analyse_step_relation_info() except ProfilerException as err: logger.warning(err.message) finally: pass def _is_support_step_info_collect(self, analyse_step_trace=True): """Whether iteration related information needs to be parsed.""" profiler_info = ProfilerInfo.get_profiler_info() graph_ids = profiler_info.get("graph_ids") if graph_ids and len(graph_ids) > 1: analyse_step_trace = False logger.warning( "[Profiler]Current model has multiple sub graphs, the segmentation of steps may be inaccurate.") if context.get_context("mode") == context.PYNATIVE_MODE: analyse_step_trace = False logger.warning( "[Profiler]Pynative mode does not support collecting step trace performance data currently.") if self._is_heterogeneous: analyse_step_trace = False logger.warning( "[Profiler]Profiler does not support collecting step trace performance data for heterogeneous " "scenarios currently.") return analyse_step_trace def _analyse_step_relation_info(self): """Parse iteration related information.""" if not self._op_time: return reduce_op_type = self._get_step_reduce_op_type() timeline_generator = self._generate_timeline(reduce_op_type) parser = GpuFrameWorkParser(self._output_path, self._dev_id) graph_ids = parser.get_graph_ids() ProfilerInfo.set_graph_ids(graph_ids) self._analyse_step_trace( is_training_mode_flag=timeline_generator.check_op_name('Gradients'), is_gpu_kernel_async_launch_flag=timeline_generator.is_gpu_kernel_async_launch() ) if self._dynamic_status: parser.analyse_dynamic_shape_data(self._timeline_meta) def _get_step_reduce_op_type(self): """Gets all communication operator names.""" step_trace_original_filename = f'step_trace_profiling_{self._dev_id}.txt' step_trace_file_path = os.path.join(self._output_path, step_trace_original_filename) step_trace_file_path = validate_and_normalize_path(step_trace_file_path) reduce_op_type = [] with open(step_trace_file_path, 'r') as f_obj: one_step_info = f_obj.readline().strip().split() # The communication operator starts at index 4. for reduce_item in one_step_info[4:]: reduce_op_type.append(reduce_item.split(',')[0].split('/')[-1]) return reduce_op_type def _cpu_analyse(self): """Collect and analyse cpu performance data.""" if self._has_started: self.stop() else: logger.info("No need to stop profiler because profiler has been stopped.") if not self._op_time: return try: timeline_generator = CpuTimelineGenerator(self._output_path, self._rank_id, context.get_context("mode")) timeline_generator.init_timeline(pretty=self._pretty_json) timeline_generator.write_timeline() timeline_generator.write_timeline_summary() except (ProfilerIOException, ProfilerFileNotFoundException, RuntimeError) as err: logger.warning('Fail to write timeline data: %s', err) raise RuntimeError('Fail to write timeline data.') from err if context.get_context("mode") == context.PYNATIVE_MODE: raise RuntimeError("Currently, the CPU platform does not support Pynative mode to collect performance " "data.") def _analyse_step_trace(self, is_training_mode_flag=True, is_gpu_kernel_async_launch_flag=False): """ Analyse step trace data and save the result. Args: is_training_mode_flag (bool): Whether in training mode or not. is_gpu_kernel_async_launch_flag (bool): Whether gpu kernel launches are asynchronous """ logger.info("Begin to parse step trace.") # construct output path dev_id = self._rank_id if self._device_target == DeviceTarget.ASCEND.value else self._dev_id step_trace_intermediate_file_path = os.path.join( self._output_path, f'step_trace_raw_{dev_id}_detail_time.csv' ) point_info_file_path = os.path.join( self._output_path, f'step_trace_point_info_{dev_id}.json' ) step_trace_intermediate_file_path = validate_and_normalize_path(step_trace_intermediate_file_path) point_info_file_path = validate_and_normalize_path(point_info_file_path) if self._device_target and self._device_target == DeviceTarget.GPU.value: if context.get_context("mode") != context.PYNATIVE_MODE: input_file_path = os.path.join(self._output_path, f'step_trace_profiling_{self._dev_id}.txt') input_file_path = validate_and_normalize_path(input_file_path) parser = GpuStepTraceParser(input_dir=input_file_path, output_file_path=step_trace_intermediate_file_path, is_training_mode=is_training_mode_flag, is_gpu_kernel_async_launch=is_gpu_kernel_async_launch_flag) parser.parse_and_save() point_info = parser.record_point_info(point_info_file_path) # print parser result parser.show() logger.info("Finish saving the intermediate result: %s", step_trace_intermediate_file_path) logger.info("The point info is: %s", point_info) def _generate_timeline(self, reduce_op_type): """Used for gpu, generate timeline info, write to json format file.""" try: timeline_generator = GpuTimelineGenerator(self._output_path, self._dev_id, self._rank_size, context.get_context("mode")) timeline_generator.init_timeline(reduce_op_type) self._timeline_meta = timeline_generator.write_timeline() timeline_generator.write_timeline_summary() timeline_generator.parse_fwk_data() timeline_generator.write_fwk_timeline() return timeline_generator except (ProfilerIOException, ProfilerFileNotFoundException, RuntimeError) as err: logger.warning('Fail to write timeline data: %s', err) raise RuntimeError('Fail to write timeline data.') from err def _analyse_memory_usage(self): """Analyse memory usage data.""" integrator = Integrator(self._output_path, self._rank_id) integrator.get_aicore_detail_data() def _get_profiling_job_id(self, offline_path): """Get profiling job id, which was generated by ada service. Returns: str, profiling job id, eg: PROF_XXX/device_*. """ if offline_path: self._output_path = os.path.join(offline_path, 'profiler') job_id = "" job_dirs = filter(lambda item: item.startswith('JOB') or item.startswith('PROF') and os.path.isdir( os.path.join(self._output_path, item)), os.listdir(self._output_path)) sorted_job_dirs = sorted( job_dirs, key=lambda x: os.path.getmtime(os.path.join(self._output_path, x)), reverse=True) for dir_name in sorted_job_dirs: prof_dir = os.path.join(self._output_path, dir_name) device_dir = [dir for dir in os.listdir(prof_dir) \ if dir.startswith('device') and os.path.isdir(os.path.join(prof_dir, dir))] job_dir = os.path.join(self._output_path, dir_name, device_dir[0]) if get_file_path(job_dir, "start_info") is None: logger.warning("Find profiling job path %s, but host_start.log not exist, " "profiler will ignore this job dir.", job_dir) continue info_file_path = get_file_path(job_dir, "info.json") if info_file_path is None: logger.warning("Find profiling job path %s, but info.json not exist, " "profiler will ignore this job dir.", job_dir) continue prof_rank_id = ProfilerInfo.get_rank_id(self._output_path) prof_device_id = ProfilerInfo.get_device_id(prof_dir) job_start_time = self._parse_job_start_time(prof_dir) if offline_path: self._start_time = int(job_start_time) else: if self._dev_id != prof_device_id and self._rank_id != prof_rank_id: logger.warning("Find profiling find job path %s, but not current training device id. " "Current training rank id %s, but job path rank id: %s, " "profiler will ignore this job dir.", job_dir, self._rank_id, prof_rank_id) continue if job_start_time < self._start_time: logger.warning("Find profiling job path %s, but start_time(%d) is earlier than this training " "start_time(%d), profiler will ignore this job dir.", job_dir, job_start_time, self._start_time) continue job_id = os.path.join(dir_name, device_dir[0]) break if not job_id: msg = "Fail to get profiling job, output path is {}, " \ "please check whether job dir or prof dir(name startswith JOB or PROF) in output path " \ "was generated, or may be the device id from job dir dismatch the " \ "device_id in current process.".format(self._output_path) logger.warning(msg) return job_id def _query_op_type_info(self): """ Query AICORE operator type information. Returns: list[list], the AICORE operator type and execution time information. """ integrator = Integrator(self._output_path, self._rank_id) return integrator.get_aicore_data() def _query_op_detail_info(self, op_type_order): """ Query AICORE operator detail information. Args: op_type_order(list): The name of the op type in order. Returns: dict, the AICORE operator detail information. """ op_type_condition = {} if self._filt_optype_names: op_type_condition['not_in'] = self._filt_optype_names filter_condition = { 'op_type': op_type_condition, 'is_display_detail': False, } integrator = Integrator(self._output_path, self._rank_id) return integrator.query_and_sort_by_op_type(filter_condition, op_type_order) def _get_devid_rankid_and_devtarget(self): """Get device id and rank id and target of this training.""" device_target = "" dev_id = "" rank_id = "" try: dev_id = str(context.get_context("device_id")) device_target = context.get_context("device_target").lower() except ValueError as err: logger.error("Profiling: fail to get context, %s", err) if not dev_id or not dev_id.isdigit(): dev_id = str(get_local_rank()) if GlobalComm.INITED and device_target == DeviceTarget.ASCEND.value \ else os.getenv('DEVICE_ID') if not dev_id or not dev_id.isdigit(): dev_id = "0" logger.warning("Fail to get DEVICE_ID, use 0 instead.") if device_target and device_target not in [DeviceTarget.ASCEND.value, DeviceTarget.GPU.value, DeviceTarget.CPU.value]: msg = "Profiling: unsupported backend: %s" % device_target raise RuntimeError(msg) rank_id = str(get_rank()) if GlobalComm.INITED and device_target == DeviceTarget.ASCEND.value \ else os.getenv("RANK_ID") if not rank_id or not rank_id.isdigit(): rank_id = "0" logger.warning(f"For '{self.__class__.__name__}', fail to get RANK_ID from environment, " f"use 0 instead.") self._dev_id = dev_id self._device_target = device_target.lower() if device_target == DeviceTarget.GPU.value: self._rank_id = dev_id else: self._rank_id = rank_id def _get_output_path(self, kwargs): """Get output path of profiling data.""" if os.getenv("MS_DIAGNOSTIC_DATA_PATH") and kwargs.get("output_path") is not None: logger.warning("Both parameter output_path and environment variable MS_DIAGNOSTIC_DATA_PATH" " have values set, and the profiling data saving path is the value set " "in parameter output_path") if kwargs.get("output_path") is None: if "output_path" in kwargs: kwargs.pop("output_path") # Environment variables are mainly set for the convenience of cloud profiler. output_path = os.getenv("MS_DIAGNOSTIC_DATA_PATH") if output_path: self._output_path = validate_and_normalize_path(output_path) else: output_path = "data" self._output_path = validate_and_normalize_path(output_path) else: output_path = kwargs.pop("output_path") if not isinstance(output_path, str): logger.warning( f"The output_path must be a string, but got type {type(output_path)}, it will be set to 'data'.") output_path = "data" self._output_path = validate_and_normalize_path(output_path) self._output_path = os.path.join(self._output_path, "profiler") if not os.path.exists(self._output_path): os.makedirs(self._output_path, exist_ok=True, mode=stat.S_IRUSR | stat.S_IWUSR | stat.S_IXUSR) else: logger.warning("The target dir already exists. " "There may be some old profiling data, and they will be rewritten in the end.") self._framework_path = os.path.join(self._output_path, "FRAMEWORK") if not os.path.exists(self._framework_path): os.makedirs(self._framework_path, exist_ok=True, mode=stat.S_IRUSR | stat.S_IWUSR | stat.S_IXUSR) def _parser_kwargs(self, kwargs): """Parse kwargs vale.""" self._op_time = kwargs.get("op_time", True) env_run_config = json.loads(os.getenv("MS_PROFILER_RUN_CONFIG", "{}")) params = list(kwargs.keys()) if not env_run_config.get("start"): for param in params: if param not in DeviceSupportParam.__getattr__(f'{self._device_target}'.upper()).value: logger.warning("%s is an invalid param which doesn't work.", param) kwargs.pop(param) elif not self._op_time and param not in ALWAYS_VALID_PARAM: logger.warning(f"When op_time is set to False, the parameter '{param}' setting is invalid.") if not isinstance(self._op_time, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter op_time must be bool, " f"but got type {type(self._op_time)}, it will be set to True.") self._op_time = True self._data_process = kwargs.pop("data_process", False) if not isinstance(self._data_process, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter data_process must be bool, " f"but got type {type(self._data_process)}, it will be set to False.") self._data_process = False timeline_limit = kwargs.pop("timeline_limit", 500) if isinstance(timeline_limit, bool) or not isinstance(timeline_limit, int): logger.warning(f"For '{self.__class__.__name__}', the parameter timeline_limit must be int, " f"but got type {type(timeline_limit)}, it will be set to 500.") timeline_limit = 500 if timeline_limit <= 0: logger.warning( "[Profiler]The 'timeline_limit' parameter must be greater than 0, it will be set to 500.") timeline_limit = 500 self._timeline_size_limit_byte = timeline_limit * 1024 * 1024 self._profile_framework = kwargs.pop("profile_framework", None) if self._profile_framework not in ["time", "all", None]: logger.warning(f"For '{self.__class__.__name__}', the parameter profile_framework must be one of [" f" 'time', 'all', None], but got {self._profile_framework}, it will be set to None.") self._profile_framework = None if not isinstance(self._data_simplification, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter data_simplification must be bool, " f"but got type {type(self._data_simplification)}, it will be set to True.") self._data_simplification = True self._with_stack = kwargs.pop("with_stack", False) if not isinstance(self._with_stack, bool): logger.warning(f"For '{self.__class__.__name__}', the parameter with_stack must be bool, but got " f"type {type(self._with_stack)}, it will be set to False.") self._with_stack = False if self._with_stack and self._profile_framework not in ["time", "all"]: logger.warning("When using the with_stack parameter, the profile_framework parameter must be enabled.") self._with_stack = False