# Copyright 2016 The TensorFlow Authors. All Rights Reserved. # # 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. # ============================================================================== """Utilities for building profiler options.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function import copy from tensorflow.python.profiler import tfprof_logger from tensorflow.python.util.tf_export import tf_export @tf_export('profiler.ProfileOptionBuilder') class ProfileOptionBuilder(object): # pylint: disable=line-too-long """Option Builder for Profiling API. For tutorial on the options, see https://github.com/tensorflow/tensorflow/tree/master/tensorflow/core/profiler/g3doc/options.md ```python # Users can use pre-built options: opts = ( tf.profiler.ProfileOptionBuilder.trainable_variables_parameter()) # Or, build your own options: opts = (tf.profiler.ProfileOptionBuilder() .with_max_depth(10) .with_min_micros(1000) .select(['accelerator_micros']) .with_stdout_output() .build() # Or customize the pre-built options: opts = (tf.profiler.ProfileOptionBuilder( tf.profiler.ProfileOptionBuilder.time_and_memory()) .with_displaying_options(show_name_regexes=['.*rnn.*']) .build()) # Finally, profiling with the options: _ = tf.profiler.profile(tf.get_default_graph(), run_meta=run_meta, cmd='scope', options=opts) ``` """ # pylint: enable=line-too-long def __init__(self, options=None): """Constructor. Args: options: Optional initial option dict to start with. """ if options is not None: self._options = copy.deepcopy(options) else: self._options = {'max_depth': 100, 'min_bytes': 0, 'min_micros': 0, 'min_params': 0, 'min_float_ops': 0, 'min_occurrence': 0, 'order_by': 'name', 'account_type_regexes': ['.*'], 'start_name_regexes': ['.*'], 'trim_name_regexes': [], 'show_name_regexes': ['.*'], 'hide_name_regexes': [], 'account_displayed_op_only': False, 'select': ['micros'], 'step': -1, 'output': 'stdout'} @staticmethod def trainable_variables_parameter(): """Options used to profile trainable variable parameters. Normally used together with 'scope' view. Returns: A dict of profiling options. """ return {'max_depth': 10000, 'min_bytes': 0, 'min_micros': 0, 'min_params': 0, 'min_float_ops': 0, 'min_occurrence': 0, 'order_by': 'name', 'account_type_regexes': [tfprof_logger.TRAINABLE_VARIABLES], 'start_name_regexes': ['.*'], 'trim_name_regexes': [], 'show_name_regexes': ['.*'], 'hide_name_regexes': [], 'account_displayed_op_only': True, 'select': ['params'], 'step': -1, 'output': 'stdout'} @staticmethod def float_operation(): # pylint: disable=line-too-long """Options used to profile float operations. Please see https://github.com/tensorflow/tensorflow/tree/master/tensorflow/core/profiler/g3doc/profile_model_architecture.md on the caveats of calculating float operations. Returns: A dict of profiling options. """ # pylint: enable=line-too-long return {'max_depth': 10000, 'min_bytes': 0, 'min_micros': 0, 'min_params': 0, 'min_float_ops': 1, 'min_occurrence': 0, 'order_by': 'float_ops', 'account_type_regexes': ['.*'], 'start_name_regexes': ['.*'], 'trim_name_regexes': [], 'show_name_regexes': ['.*'], 'hide_name_regexes': [], 'account_displayed_op_only': True, 'select': ['float_ops'], 'step': -1, 'output': 'stdout'} @staticmethod def time_and_memory(min_micros=1, min_bytes=1, min_accelerator_micros=0, min_cpu_micros=0, min_peak_bytes=0, min_residual_bytes=0, min_output_bytes=0): """Show operation time and memory consumptions. Args: min_micros: Only show profiler nodes with execution time no less than this. It sums accelerator and cpu times. min_bytes: Only show profiler nodes requested to allocate no less bytes than this. min_accelerator_micros: Only show profiler nodes spend no less than this time on accelerator (e.g. GPU). min_cpu_micros: Only show profiler nodes spend no less than this time on cpu. min_peak_bytes: Only show profiler nodes using no less than this bytes at peak (high watermark). For profiler nodes consist of multiple graph nodes, it sums the graph nodes' peak_bytes. min_residual_bytes: Only show profiler nodes have no less than this bytes not being de-allocated after Compute() ends. For profiler nodes consist of multiple graph nodes, it sums the graph nodes' residual_bytes. min_output_bytes: Only show profiler nodes have no less than this bytes output. The output are not necessarily allocated by this profiler nodes. Returns: A dict of profiling options. """ return {'max_depth': 10000, 'min_bytes': min_bytes, 'min_peak_bytes': min_peak_bytes, 'min_residual_bytes': min_residual_bytes, 'min_output_bytes': min_output_bytes, 'min_micros': min_micros, 'min_accelerator_micros': min_accelerator_micros, 'min_cpu_micros': min_cpu_micros, 'min_params': 0, 'min_float_ops': 0, 'min_occurrence': 0, 'order_by': 'micros', 'account_type_regexes': ['.*'], 'start_name_regexes': ['.*'], 'trim_name_regexes': [], 'show_name_regexes': ['.*'], 'hide_name_regexes': [], 'account_displayed_op_only': True, 'select': ['micros', 'bytes'], 'step': -1, 'output': 'stdout'} def build(self): """Build a profiling option. Returns: A dict of profiling options. """ return copy.deepcopy(self._options) def with_max_depth(self, max_depth): """Set the maximum depth of display. The depth depends on profiling view. For 'scope' view, it's the depth of name scope hierarchy (tree), for 'op' view, it's the number of operation types (list), etc. Args: max_depth: Maximum depth of the data structure to display. Returns: self """ self._options['max_depth'] = max_depth return self def with_min_memory(self, min_bytes=0, min_peak_bytes=0, min_residual_bytes=0, min_output_bytes=0): """Only show profiler nodes consuming no less than 'min_bytes'. Args: min_bytes: Only show profiler nodes requested to allocate no less bytes than this. min_peak_bytes: Only show profiler nodes using no less than this bytes at peak (high watermark). For profiler nodes consist of multiple graph nodes, it sums the graph nodes' peak_bytes. min_residual_bytes: Only show profiler nodes have no less than this bytes not being de-allocated after Compute() ends. For profiler nodes consist of multiple graph nodes, it sums the graph nodes' residual_bytes. min_output_bytes: Only show profiler nodes have no less than this bytes output. The output are not necessarily allocated by this profiler nodes. Returns: self """ self._options['min_bytes'] = min_bytes self._options['min_peak_bytes'] = min_peak_bytes self._options['min_residual_bytes'] = min_residual_bytes self._options['min_output_bytes'] = min_output_bytes return self def with_min_execution_time(self, min_micros=0, min_accelerator_micros=0, min_cpu_micros=0): """Only show profiler nodes consuming no less than 'min_micros'. Args: min_micros: Only show profiler nodes with execution time no less than this. It sums accelerator and cpu times. min_accelerator_micros: Only show profiler nodes spend no less than this time on accelerator (e.g. GPU). min_cpu_micros: Only show profiler nodes spend no less than this time on cpu. Returns: self """ self._options['min_micros'] = min_micros self._options['min_accelerator_micros'] = min_accelerator_micros self._options['min_cpu_micros'] = min_cpu_micros return self def with_min_parameters(self, min_params): """Only show profiler nodes holding no less than 'min_params' parameters. 'Parameters' normally refers the weights of in TensorFlow variables. It reflects the 'capacity' of models. Args: min_params: Only show profiler nodes holding number parameters no less than this. Returns: self """ self._options['min_params'] = min_params return self def with_min_occurrence(self, min_occurrence): # pylint: disable=line-too-long """Only show profiler nodes including no less than 'min_occurrence' graph nodes. A "node" means a profiler output node, which can be a python line (code view), an operation type (op view), or a graph node (graph/scope view). A python line includes all graph nodes created by that line, while an operation type includes all graph nodes of that type. Args: min_occurrence: Only show nodes including no less than this. Returns: self """ # pylint: enable=line-too-long self._options['min_occurrence'] = min_occurrence return self def with_min_float_operations(self, min_float_ops): # pylint: disable=line-too-long """Only show profiler nodes consuming no less than 'min_float_ops'. Please see https://github.com/tensorflow/tensorflow/tree/master/tensorflow/core/profiler/g3doc/profile_model_architecture.md on the caveats of calculating float operations. Args: min_float_ops: Only show profiler nodes with float operations no less than this. Returns: self """ # pylint: enable=line-too-long self._options['min_float_ops'] = min_float_ops return self def with_accounted_types(self, account_type_regexes): """Selectively counting statistics based on node types. Here, 'types' means the profiler nodes' properties. Profiler by default consider device name (e.g. /job:xx/.../device:GPU:0) and operation type (e.g. MatMul) as profiler nodes' properties. User can also associate customized 'types' to profiler nodes through OpLogProto proto. For example, user can select profiler nodes placed on gpu:0 with: `account_type_regexes=['.*gpu:0.*']` If none of a node's properties match the specified regexes, the node is not displayed nor accounted. Args: account_type_regexes: A list of regexes specifying the types. Returns: self. """ self._options['account_type_regexes'] = copy.copy(account_type_regexes) return self def with_node_names(self, start_name_regexes=None, show_name_regexes=None, hide_name_regexes=None, trim_name_regexes=None): """Regular expressions used to select profiler nodes to display. After 'with_accounted_types' is evaluated, 'with_node_names' are evaluated as follows: For a profile data structure, profiler first finds the profiler nodes matching 'start_name_regexes', and starts displaying profiler nodes from there. Then, if a node matches 'show_name_regexes' and doesn't match 'hide_name_regexes', it's displayed. If a node matches 'trim_name_regexes', profiler stops further searching that branch. Args: start_name_regexes: list of node name regexes to start displaying. show_name_regexes: list of node names regexes to display. hide_name_regexes: list of node_names regexes that should be hidden. trim_name_regexes: list of node name regexes from where to stop. Returns: self """ if start_name_regexes is not None: self._options['start_name_regexes'] = copy.copy(start_name_regexes) if show_name_regexes is not None: self._options['show_name_regexes'] = copy.copy(show_name_regexes) if hide_name_regexes is not None: self._options['hide_name_regexes'] = copy.copy(hide_name_regexes) if trim_name_regexes is not None: self._options['trim_name_regexes'] = copy.copy(trim_name_regexes) return self def account_displayed_op_only(self, is_true): """Whether only account the statistics of displayed profiler nodes. Args: is_true: If true, only account statistics of nodes eventually displayed by the outputs. Otherwise, a node's statistics are accounted by its parents as long as it's types match 'account_type_regexes', even if it is hidden from the output, say, by hide_name_regexes. Returns: self """ self._options['account_displayed_op_only'] = is_true return self def with_empty_output(self): """Do not generate side-effect outputs.""" self._options['output'] = 'none' return self def with_stdout_output(self): """Print the result to stdout.""" self._options['output'] = 'stdout' return self def with_file_output(self, outfile): """Print the result to a file.""" self._options['output'] = 'file:outfile=%s' % outfile return self def with_timeline_output(self, timeline_file): """Generate a timeline json file.""" self._options['output'] = 'timeline:outfile=%s' % timeline_file return self def with_pprof_output(self, pprof_file): """Generate a pprof profile gzip file. To use the pprof file: pprof -png --nodecount=100 --sample_index=1 Args: pprof_file: filename for output, usually suffixed with .pb.gz. Returns: self. """ self._options['output'] = 'pprof:outfile=%s' % pprof_file return self def order_by(self, attribute): # pylint: disable=line-too-long """Order the displayed profiler nodes based on a attribute. Supported attribute includes micros, bytes, occurrence, params, etc. https://github.com/tensorflow/tensorflow/tree/master/tensorflow/core/profiler/g3doc/options.md Args: attribute: An attribute the profiler node has. Returns: self """ # pylint: enable=line-too-long self._options['order_by'] = attribute return self def select(self, attributes): # pylint: disable=line-too-long """Select the attributes to display. See https://github.com/tensorflow/tensorflow/tree/master/tensorflow/core/profiler/g3doc/options.md for supported attributes. Args: attributes: A list of attribute the profiler node has. Returns: self """ # pylint: enable=line-too-long self._options['select'] = copy.copy(attributes) return self def with_step(self, step): """Which profile step to use for profiling. The 'step' here refers to the step defined by `Profiler.add_step()` API. Args: step: When multiple steps of profiles are available, select which step's profile to use. If -1, use average of all available steps. Returns: self """ self._options['step'] = step return self