# Copyright (c) 2018 PaddlePaddle 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. import logging import os import multiprocessing import sys import warnings import numpy as np from .wrapped_decorator import signature_safe_contextmanager from .data_feeder import convert_dtype from .framework import Program, default_main_program, Variable, Operator from .framework import convert_np_dtype_to_dtype_, _apply_pass from . import core from . import unique_name from . import compiler from . import set_flags from .trainer_factory import TrainerFactory from .trainer_factory import FetchHandlerMonitor import copy from . import framework from .incubate.checkpoint import auto_checkpoint as acp from .compiler import _prune_feed_ops from functools import lru_cache __all__ = ['Executor', 'global_scope', 'scope_guard'] g_scope = core.Scope() InferNativeConfig = core.NativeConfig InferAnalysisConfig = core.AnalysisConfig def global_scope(): """ :api_attr: Static Graph Get the global/default scope instance. There are a lot of APIs use :code:`global_scope` as its default value, e.g., :code:`Executor.run` Returns: Scope: The global/default scope instance. Examples: .. code-block:: python import paddle import numpy paddle.static.global_scope().var("data").get_tensor().set(numpy.ones((2, 2)), paddle.CPUPlace()) numpy.array(paddle.static.global_scope().find_var("data").get_tensor()) """ return g_scope def _switch_scope(scope): global g_scope ex = g_scope g_scope = scope return ex @signature_safe_contextmanager def scope_guard(scope): """ This function switches scope through python `with` statement. Scope records the mapping between variable names and variables ( :ref:`api_guide_Variable` ), similar to brackets in programming languages. If this function is not invoked, all variables and variable names are recorded in the default global scope. When users need to create variables with the same name, they need to switch scopes through this function if they do not want the mapping of variables with the same name to be overwritten. After switching through the `with` statement, all variables created in the `with` block will be assigned to a new scope. Parameters: scope: The new scope. Returns: None Examples: .. code-block:: python import paddle import numpy paddle.enable_static() new_scope = paddle.static.Scope() with paddle.static.scope_guard(new_scope): paddle.static.global_scope().var("data").get_tensor().set(numpy.ones((2, 2)), paddle.CPUPlace()) numpy.array(new_scope.find_var("data").get_tensor()) """ ex = _switch_scope(scope) try: yield finally: _switch_scope(ex) def as_numpy(tensor, copy=False): """ Convert a Tensor to a numpy.ndarray, its only support Tensor without LoD information. For higher dimensional sequence data, please use LoDTensor directly. Examples: .. code-block:: python import paddle.fluid as fluid import numpy new_scope = fluid.Scope() with fluid.scope_guard(new_scope): fluid.global_scope().var("data").get_tensor().set(numpy.ones((2, 2)), fluid.CPUPlace()) tensor = new_scope.find_var("data").get_tensor() fluid.executor.as_numpy(tensor) # or numpy.array(new_scope.find_var("data").get_tensor()) Args: tensor(Variable): a instance of Tensor copy(bool, optional): Whether to use deep copy. Returns: numpy.ndarray """ if isinstance(tensor, core.LoDTensorArray): return [as_numpy(t, copy) for t in tensor] if isinstance(tensor, list): return [as_numpy(t, copy) for t in tensor] assert isinstance(tensor, core.LoDTensor) lod = tensor.lod() if len(lod) > 0: raise RuntimeError( "Some of your fetched tensors hold LoD information. \ They can not be completely cast to Python ndarray. \ Please set the parameter 'return_numpy' as 'False' to \ return LoDTensor itself directly." ) if tensor._is_initialized(): if copy: return np.array(tensor) else: return np.asarray(tensor) else: return None def dtype_is_compatible_with(first, second): """ Returns True if the first dtype can be compatible the second one. Currently, we require the two dtype's have to be same. Args: dtype (np.dtype|VarType|str): The type of data: float32, int64, etc. Returns: True if the two types are same. """ if not isinstance(first, core.VarDesc.VarType): first = convert_np_dtype_to_dtype_(first) if not isinstance(second, core.VarDesc.VarType): second = convert_np_dtype_to_dtype_(second) return first == second def dimension_is_compatible_with(first, second): """ Returns True if the two dimensions are compatible. A dimension is compatible with the other if: 1. The length of the dimensions are same. 2. Each non-negative number of the two dimensions are same. 3. For negative number or 'None' in a dimension, it means unknown so it is compatible with any number. Args: first (list/tuple): integers representing shape. "None" or negative number means unknown. second (list/tuple): integers representing shape. "None" or negative number means unknown. Returns: True if the two dimensions are compatible. """ dim_len = len(first) if dim_len != len(second): return False for i in range(dim_len): if first[i] is None or first[i] < 0: continue if second[i] is None or second[i] < 0: continue if first[i] != second[i]: return False return True def check_feed_shape_type(var, feed, num_places=1): """ Returns True if the variable doesn't require feed check or it is compatible with the shape and have same dtype as the fed value. A dimension is compatible with the other if: 1. The length of the dimensions are same. 2. Each non-negative number of the two dimensions are same. 3. For negative number or 'None' in a dimension, it means unknown so it is compatible with any number. Args: var (Variable): the Variable object feed (LoDTensor): the fed value, which must be a LoDTensor num_places: an integer value indicating the number of places. ParallelExecutor will divide data into devices (CPU/GPU) evenly. Returns: True if the shape and dtype of variable is compatible with the feed value Raises: ValueError: if the shape or dtype of the variable is not compatible with the feed value """ if var.desc.need_check_feed(): diff_shape = core.diff_tensor_shape(feed, var.desc, num_places) if diff_shape is not None: raise ValueError( 'The fed Variable %r should have dimensions = %d, shape = ' '%r, but received fed shape %r on each device' % (var.name, len(var.shape), var.shape, diff_shape) ) if not dtype_is_compatible_with(feed._dtype(), var.dtype): var_dtype_format = ( convert_dtype(var.dtype) if isinstance(var.dtype, core.VarDesc.VarType) else var.dtype ) feed_dtype_format = ( convert_dtype(feed._dtype()) if isinstance(feed._dtype(), core.VarDesc.VarType) else feed._dtype() ) raise ValueError( 'The data type of fed Variable %r must be %r, but received %r' % (var.name, var_dtype_format, feed_dtype_format) ) return True def has_feed_operators(block, feed_targets, feed_holder_name): """Check whether the block already has feed operators. Return false if the block does not have any feed operators. If some feed operators have been prepended to the block, check that the info contained in these feed operators matches the feed_targets and feed_holder_name. Raise exception when any mismatch is found. Return true when the block has feed operators with matching info. Args: block: a block instance (typically global block of a program) feed_targets: a dictionary of {feed_target_name: feed_target_data} feed_holder_name: the name of the variable that holds the data of all feed targets. The type of this feed_holder variable is FEED_MINIBATCH, which is essentially vector. Returns: A boolean value that indicates whether a block has feed operators that match the info contained in feed_targets and feed_holder_name. """ feed_count = 0 for op in block.ops: if op.desc.type() == 'feed': feed_count += 1 assert op.desc.input('X')[0] == feed_holder_name feed_target_name = op.desc.output('Out')[0] if feed_target_name not in feed_targets: raise Exception( "'feed_targets' does not have {} variable".format( feed_target_name ) ) else: break if feed_count > 0 and feed_count != len(feed_targets): raise Exception( "Feed operators in program desc do not match 'feed_targets'" ) return feed_count > 0 def has_fetch_operators( block, fetch_targets, fetch_holder_name, fetch_op='fetch' ): """Check whether the block already has fetch operators. Return false if the block does not have any fetch operators. If some fetch operators have been appended to the block, check that the info contained in these fetch operators matches the fetch_targets and fetch_holder_name. Raise exception when any mismatch is found. Return true when the block has fetch operators with matching info. Args: block: a block instance (typically global block of a program) fetch_targets: a dictionary of {fetch_target_name: fetch_target_data} fetch_holder_name: the name of the variable that holds the data of all fetch targets. The type of this fetch_holder variable is FETCH_LIST, which is essentially vector. fetch_op: the operator name of fetch Return: A boolean value that indicates whether a block has fetch operators that match the info contained in fetch_targets and fetch_holder_name. """ fetch_count = 0 for op in block.ops: if op.desc.type() == fetch_op: fetch_count += 1 assert op.desc.output('Out')[0] == fetch_holder_name fetch_target_name = op.desc.input('X')[0] if fetch_target_name not in [ var.desc.name() for var in fetch_targets ]: raise Exception( "'fetch_targets' does not have {} variable".format( fetch_target_name ) ) idx = op.desc.attr('col') assert fetch_target_name == fetch_targets[idx].desc.name() if fetch_count > 0 and fetch_count != len(fetch_targets): raise Exception( "Fetch operators in program desc do not match 'fetch_targets'" ) return fetch_count > 0 def _add_feed_fetch_ops( program, feed, fetch_list, feed_var_name, fetch_var_name, use_fetch_v2=False ): tmp_program = program.clone() global_block = tmp_program.global_block() if feed_var_name in global_block.vars: feed_var = global_block.var(feed_var_name) else: feed_var = global_block.create_var( name=feed_var_name, type=core.VarDesc.VarType.FEED_MINIBATCH, persistable=True, ) if fetch_var_name in global_block.vars: fetch_var = global_block.var(fetch_var_name) else: fetch_var = global_block.create_var( name=fetch_var_name, type=core.VarDesc.VarType.FETCH_LIST, persistable=True, ) # prepend feed operators if not has_feed_operators(global_block, feed, feed_var_name): for i, name in enumerate(feed): if global_block.has_var(name): out = global_block.var(name) global_block._prepend_op( type='feed', inputs={'X': [feed_var]}, outputs={'Out': [out]}, attrs={'col': i}, ) else: warnings.warn( "The variable %s is not found in program. It is not declared or is pruned." % name ) if use_fetch_v2: fetch_op = 'fetch_v2' else: fetch_op = 'fetch' # append fetch_operators if not has_fetch_operators( global_block, fetch_list, fetch_var_name, fetch_op ): for i, var in enumerate(fetch_list): assert isinstance(var, Variable) or isinstance( var, str ), "Wrong type for fetch_list[%s]: %s" % (i, type(var)) global_block.append_op( type=fetch_op, inputs={'X': [var]}, outputs={'Out': [fetch_var]}, attrs={'col': i}, ) return tmp_program def _apply_inplace_addto_pass( program, enable_inplace, enable_addto, skip_var_names ): use_cuda = True if core.is_compiled_with_cuda() else False attrs = {"use_cuda": use_cuda, "mem_opt_skip_vars": skip_var_names} attr_types = {"use_cuda": "bool", "mem_opt_skip_vars": "list[str]"} empty_startup_program = Program() if enable_inplace: pass_name = "buffer_shared_inplace_pass" _apply_pass( program, empty_startup_program, pass_name, attrs, attr_types ) if enable_addto and use_cuda: pass_name = "inplace_addto_op_pass" _apply_pass( program, empty_startup_program, pass_name, attrs, attr_types ) def _fetch_var(name, scope=None, return_numpy=True): """ Fetch the value of the variable with the given name from the given scope. Args: name(str): name of the variable. Typically, only persistable variables can be found in the scope used for running the program. scope(core.Scope|None): scope object. It should be the scope where you pass to Executor.run() when running your program. If None, global_scope() will be used. Default None. return_numpy(bool): whether convert the tensor to numpy.ndarray. Default True. Returns: LodTensor|numpy.ndarray """ assert isinstance(name, str) if scope is None: scope = global_scope() assert isinstance(scope, core._Scope) var = scope.find_var(_to_name_str(name)) assert var is not None, ( "Cannot find " + name + " in scope. Perhaps you need to make the" " variable persistable by using var.persistable = True in your" " program." ) tensor = var.get_tensor() if return_numpy: tensor = as_numpy(tensor, copy=True) return tensor def _to_name_str(var): def _to_str(var): if isinstance(var, Variable): return var.desc.name() elif isinstance(var, str): return var elif isinstance(var, str): return str(var) elif isinstance(var, Operator): return str(id(var)) else: raise TypeError(str(var) + " should be Variable, Operator or str") # NOTEz(zhiqiu): The item in fetch_list may be tuple returned by Optimizer.minimize(), # see comments in _split_optimize_ops_in_fetch_list for more details. if isinstance(var, tuple): var = var[0] if isinstance(var, list): s = [_to_str(item) for item in var] return ','.join(s) else: return _to_str(var) def _is_enable_standalone_executor(): return ( framework._enable_standalone_executor_ is None or framework._enable_standalone_executor_ in [1, '1', True, 'True', 'true'] ) def _is_dy2st_enable_standalone_executor(): return framework._dy2st_enable_standalone_executor_ in [ 1, '1', True, 'True', 'true', ] def _is_cuda_graph_enable_standalone_executor(): return framework._cuda_graph_enable_standalone_executor_ in [ 1, '1', True, 'True', 'true', ] def _prepare_fleet_executor(): from ..distributed.fleet.proto import fleet_executor_desc_pb2 trainer_endpoints_str = os.getenv("PADDLE_TRAINER_ENDPOINTS", "") trainer_endpoints = trainer_endpoints_str.split(',') fleet_exe_desc = fleet_executor_desc_pb2.FleetExecutorDesc() cur_rank = int(os.getenv("PADDLE_TRAINER_ID", 0)) fleet_exe_desc.cur_rank = cur_rank nrank = len(trainer_endpoints) for rank, endpoint in enumerate(trainer_endpoints): rank_info = fleet_executor_desc_pb2.RankInfo() rank_info.rank = rank rank_info.ip_port = endpoint fleet_exe_desc.cluster_info.append(rank_info) fleet_exe = core.FleetExecutor(fleet_exe_desc.SerializeToString()) return fleet_exe def _get_strong_program_cache_key_for_new_exe(program, feed, fetch_list): return program.desc.cached_hash_str() + _get_program_cache_key( feed, fetch_list ) def _get_strong_program_cache_key(program, feed, fetch_list): # TODO(zhiqiu): use hash_str to generate cache key as above def _get_varname_from_block(block): block_str = [] for var_name in list(block.vars.keys()): block_str.append(var_name) return "\n".join(block_str) inner_program = ( program._program if isinstance(program, compiler.CompiledProgram) else program ) return ( _get_varname_from_block(inner_program.blocks[0]) + str(id(program)) + _get_program_cache_key(feed, fetch_list) ) def _get_program_cache_key(feed, fetch_list): feed_var_names = [] if isinstance(feed, dict): feed_var_names = list(feed.keys()) elif isinstance(feed, list) or isinstance(feed, tuple): for i, each in enumerate(feed): feed_var_names += list(each.keys()) fetch_var_names = list(map(_to_name_str, fetch_list)) return str(feed_var_names + fetch_var_names) def _as_lodtensor(data, place, dtype=None): """ Convert numpy.ndarray to Tensor, its only support Tensor without LoD information. For higher dimensional sequence data, please use LoDTensor directly. Examples: >>> import paddle.fluid as fluid >>> place = fluid.CPUPlace() >>> exe = fluid.executor(place) >>> data = np.array(size=(100, 200, 300)) >>> np_outs = map(lambda x: fluid.executor._as_lodtensor(x, place), data) >>> ... Args: data(numpy.ndarray|list|tuple|scalar): a instance of array, scalar, list or tuple data(core.Place): the place of created tensor dtype(core.VarDesc.VarType|str): the expected data type of created tensor Returns: LoDTensor """ # NOTE(zhiqiu): convert python builtin, like float, int, and list, to numpy ndarray if not isinstance(data, np.ndarray): assert ( dtype is not None ), 'The dtype should be given when feed data is not np.ndarray' dtype = ( convert_dtype(dtype) if isinstance(dtype, core.VarDesc.VarType) else dtype ) if np.isscalar(data): data = np.array([data]).astype(dtype) elif isinstance(data, (list, tuple)): data = np.array(data) if data.dtype == np.object_: raise TypeError( "\n\tFaild to convert input data to a regular ndarray :\n\t* Usually " "this means the input data contains nested lists with different lengths. " "Please consider using 'fluid.create_lod_tensor' to convert it to a LoD-Tensor." ) data = data.astype(dtype) else: raise TypeError( "Convert data of type {} to Tensor is not supported".format( type(data) ) ) # convert numpy.ndarray to tensor tensor = core.LoDTensor() tensor.set(data, place) return tensor class FetchHandler: def __init__(self, var_dict=None, period_secs=60): assert var_dict is not None self.var_dict = var_dict self.period_secs = period_secs def handler(self, res_dict): for key in res_dict: if type(res_dict[key]) is np.ndarray: sys.stdout.write("{}[0]: {} ".format(key, res_dict[key][0])) sys.stdout.write("\n") @staticmethod def help(): print( """ class FetchHandlerExample(FetchHandler): def handler(self, res_dict): print(res_dict["auc"]) print("auc: {}, {}".format(res_dict["auc"], time.ctime())) auc = Variable() var_dict = {"auc": auc} handler = FetchHandlerExample(var_dict=var_dict) """ ) class _StandaloneExecutor: def __init__(self, place, main_program, scope): self._place = core.Place() self._place.set_place(place) self._main_program = main_program self._scope = scope self._new_exe = self._create_new_executor() def run(self, scope, feed_names, fetch_list, return_numpy=True): """ Args: feed_names(list): This parameter represents the input names of the model. fetch_list(list): This parameter represents the Tensors that need to be returned after the model runs. The default is None. return_numpy(bool): This parameter indicates whether convert the fetched Tensors (the Tensor specified in the fetch list) to numpy.ndarray. if it is False, the type of the return value is a list of :code:`LoDTensor`. The default is True. """ fetch_list = self._check_fetch(fetch_list) tensors = self._new_exe.run( scope, feed_names, fetch_list )._move_to_list() if return_numpy: return as_numpy(tensors, copy=True) else: return tensors def _create_new_executor(self): new_exe = core.StandaloneExecutor(self._place, self._main_program.desc) return new_exe def _update_feed(self, feed): """ Update the feed dict, remove the feed item which is pruned in program. Notes: This is a very low level API. Users should not use this API directly. Args: feed(list|dict): feed dict or list. Returns: feed:(list|dict) updated feed. """ if feed is None: feed = {} elif isinstance(feed, (list, tuple)): assert len(feed) == 1, "Not compiled with data parallel" feed = feed[0] if not isinstance(feed, dict): raise TypeError( "feed requires dict as its Parameter. But you passed in %s" % (type(feed)) ) global_block = self._main_program.global_block() for feed_name in list(feed.keys()): if not global_block.has_var(feed_name): feed.pop(feed_name) warnings.warn( "The variable %s is not found in program. It is not declared or is pruned." % feed_name ) return feed def _check_fetch(self, fetch_list): if fetch_list is None: fetch_list = [] res = [] for fetch_var in fetch_list: if isinstance(fetch_var, Variable): fetch_var = fetch_var.name elif not isinstance(fetch_var, str): raise TypeError( "Required fetch_var shall be str|Variable, but received {}".format( type(fetch_var).__name__ ) ) res.append(fetch_var) return res class _ExecutorCache: class _CachedData: def __init__( self, program, feed, fetch_list, feed_var_name, fetch_var_name, place, scope, ): self.program = program self.feed = feed self.fetch_list = fetch_list self.feed_var_name = feed_var_name self.fetch_var_name = fetch_var_name self.place = place self.scope = scope # NOTE(Ruibiao): Not all changeable item is considered for key at present, # ONLY: program, feed, and fetch_list if isinstance(self.program, compiler.CompiledProgram): if not self.program._program: # The program holds no _program, maybe it is constructed by graph. # Convert graph to program in order to generate key. self.program._program = framework.IrGraph( self.program._graph ).to_program() self.key = hash( _get_strong_program_cache_key_for_new_exe( self.program._program, feed, fetch_list ) ) else: self.key = hash( _get_strong_program_cache_key_for_new_exe( self.program, feed, fetch_list ) ) def __eq__(self, other): return ( isinstance(other, _ExecutorCache._CachedData) and self.key == other.key ) def __hash__(self): return self.key def __init__(self): # NOTE(Ruibiao): Wrap the lru_cache in constructor so that the cache is local to # the _ExecutorCache instance, otherwise a global cache may not be released after # the Executor instance deleted self._get_cached_program_and_executor = lru_cache(maxsize=8)( self._get_program_and_executor ) def clear(self): self._get_cached_program_and_executor.cache_clear() def get_program_and_executor( self, program, feed, fetch_list, feed_var_name, fetch_var_name, place, scope, ): return self._get_cached_program_and_executor( self._CachedData( program, feed, fetch_list, feed_var_name, fetch_var_name, place, scope, ) ) def _get_program_and_executor(self, cached_data): program = cached_data.program inner_program = ( program._program if isinstance(program, compiler.CompiledProgram) else program ) feed = cached_data.feed fetch_list = cached_data.fetch_list feed_var_name = cached_data.feed_var_name fetch_var_name = cached_data.fetch_var_name place = cached_data.place scope = cached_data.scope # To apply IR pass, compile the Program to IrGraph and convert it back to Program if isinstance(program, compiler.CompiledProgram) or isinstance( program._graph, compiler.CompiledProgram ): compiled_program = ( program if isinstance(program, compiler.CompiledProgram) else program._graph ) build_strategy = compiled_program._build_strategy # print(f"Program before convert:\n {inner_program}", flush=True) use_cuda_graph = False # When using cuda graph, the cuda graph preparation logic in PE is not # executed, but it is processed in the constructor of new executor. if ( build_strategy is not None and build_strategy.allow_cuda_graph_capture ): use_cuda_graph = True build_strategy.allow_cuda_graph_capture = False set_flags({"FLAGS_new_executor_use_cuda_graph": True}) compiled_program._compile(scope, place) if use_cuda_graph: build_strategy.allow_cuda_graph_capture = True ir_graph = framework.IrGraph(compiled_program._graph) converted_program = ir_graph.to_program() if hasattr(inner_program, 'lr_sheduler'): converted_program.lr_sheduler = inner_program.lr_sheduler inner_program = converted_program # print(f"Program after convert:\n {inner_program}", flush=True) else: build_strategy = None from paddle.incubate.autograd import prim_enabled, prim2orig if prim_enabled() and program == default_main_program(): prim2orig() inner_program = program program = _add_feed_fetch_ops( program=inner_program, feed=feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, use_fetch_v2=True, ) # standalone executor will apply buffer_shared_inplace_pass and # inplace_addto_op_pass to program according to build_strategy enable_inplace = ( True if build_strategy is None or build_strategy.enable_inplace else False ) enable_addto = ( True if build_strategy is not None and build_strategy.enable_addto else False ) if enable_inplace or enable_addto: # inplace should skip feed and fetch var skip_var_names = eval(_get_program_cache_key(feed, fetch_list)) _apply_inplace_addto_pass( program, enable_inplace, enable_addto, skip_var_names ) new_program = program.clone() new_exe = _StandaloneExecutor(place, new_program, scope) return new_program, new_exe class Executor: """ :api_attr: Static Graph An Executor in Python, supports single/multiple-GPU running, and single/multiple-CPU running. Args: place(paddle.CPUPlace()|paddle.CUDAPlace(n)|str|None): This parameter represents which device the executor runs on. When this parameter is None, PaddlePaddle will set the default device according to its installation version. If Paddle is CPU version, the default device would be set to `CPUPlace()` . If Paddle is GPU version, the default device would be set to `CUDAPlace(0)` . Default is None. If ``place`` is string, it can be ``cpu``, and ``gpu:x``, where ``x`` is the index of the GPUs. Note: users only pass one Place or None to initialize Executor when using multiple-cards. Other APIs will override the cards. See `document for multiple-cards `_ Returns: Executor Examples: .. code-block:: python import paddle import numpy import os # Executor is only used in static graph mode paddle.enable_static() # Set place explicitly. # use_cuda = True # place = paddle.CUDAPlace(0) if use_cuda else paddle.CPUPlace() # exe = paddle.static.Executor(place) # If you don't set place, PaddlePaddle sets the default device. exe = paddle.static.Executor() train_program = paddle.static.Program() startup_program = paddle.static.Program() with paddle.static.program_guard(train_program, startup_program): data = paddle.static.data(name='X', shape=[None, 1], dtype='float32') hidden = paddle.static.nn.fc(data, 10) loss = paddle.mean(hidden) paddle.optimizer.SGD(learning_rate=0.01).minimize(loss) # Run the startup program once and only once. # Not need to optimize/compile the startup program. exe.run(startup_program) # Run the main program directly without compile. x = numpy.random.random(size=(10, 1)).astype('float32') loss_data, = exe.run(train_program, feed={"X": x}, fetch_list=[loss.name]) # Or, compiled the program and run. See `CompiledProgram` # for more details. compiled_prog = paddle.static.CompiledProgram( train_program) loss_data, = exe.run(compiled_prog, feed={"X": x}, fetch_list=[loss.name]) """ def __init__(self, place=None): if place is None: expected_place = framework._current_expected_place() self.place = expected_place else: self.place = framework._get_paddle_place(place) self.program_caches = dict() self.ctx_caches = dict() self.trainer_caches = dict() self.scope_caches = dict() self.var_caches = dict() self.pruned_program_caches = dict() p = core.Place() p.set_place(self.place) self._default_executor = core.Executor(p) self._closed = False self.pruned_program_scope_caches = dict() self._prepare_to_run_called = False self._auto_checkpoint_name = unique_name.generate( "__auto_checkpoint_executor__" ) # NOTE: Whether to use experimental executor `StandaloneExecutor`. self._enable_interpreter_core = _is_enable_standalone_executor() self._executor_cache = _ExecutorCache() self._fleet_executor = None # TODO(liyurui): This option will be removed and always true when the functionality # of fleet executor with standalone executor is ready. self._fleet_executor_with_standalone = False self.op_role_key = core.op_proto_and_checker_maker.kOpRoleAttrName() def _is_optimizer_op(self, op): return self.op_role_key in op.attr_names and int( op.all_attrs()[self.op_role_key] ) & int(core.op_proto_and_checker_maker.OpRole.Optimize) def __del__(self): # NOTE(Ruibiao): The manually call of clear is required. Because in Python, executor_cache # may not immediately destructed after Executor instance deleted (so does not the _StandaloneExecutor), # that brings errors to mkl-dnn unit tests (see ClearMKLDNNCache in interpretercore.cc for why). self._executor_cache.clear() def _get_scope_cache(self, program_cache_key): return self.scope_caches.get(program_cache_key, None) def _get_ctx_cache(self, program_cache_key): return self.ctx_caches.get(program_cache_key, None) def _get_trainer_cache(self, program_cache_key): return self.trainer_caches.get(program_cache_key, None) def _get_program_cache(self, program_cache_key): return self.program_caches.get(program_cache_key, None) def _add_program_cache(self, program_cache_key, program): self.program_caches[program_cache_key] = program def _get_pruned_program_cache(self, program_cache_key): return self.pruned_program_caches.get(program_cache_key, None) def _add_pruned_program_cache(self, program_cache_key, program): self.pruned_program_caches[program_cache_key] = program def _get_pruned_program_scope_cache(self, program_cache_key): return self.pruned_program_scope_caches.get(program_cache_key, None) def _add_pruned_program_scope_cache(self, program_cache_key, program): self.pruned_program_scope_caches[program_cache_key] = program def _add_ctx_cache(self, ctx_cache_key, ctx): self.ctx_caches[ctx_cache_key] = ctx def _add_trainer_cache(self, trainer_cache_key, ctx): self.trainer_caches[trainer_cache_key] = ctx def _add_scope_cache(self, scope_cache_key, scope): self.scope_caches[scope_cache_key] = scope # just for testing, will be removed later @lru_cache() def _log_force_set_program_cache(self, use_program_cache): logging.warning( f"use_program_cache is force set to {use_program_cache} by FLAGS_FORCE_USE_PROGRAM_CACHE" ) def _feed_data(self, program, feed, feed_var_name, scope): # feed var to framework global_block = program.global_block() for op in global_block.ops: if op.desc.type() == 'feed': feed_target_name = op.desc.output('Out')[0] cur_feed = feed[feed_target_name] var = global_block.var(feed_target_name) if var.dtype != core.VarDesc.VarType.STRINGS: if not isinstance(cur_feed, core.LoDTensor): cur_feed = _as_lodtensor( cur_feed, self.place, var.dtype ) check_feed_shape_type(var, cur_feed) idx = op.desc.attr('col') core.set_feed_variable(scope, cur_feed, feed_var_name, idx) else: break def _fetch_data(self, fetch_list, fetch_var_name, scope): outs = [ core.get_fetch_variable(scope, fetch_var_name, i) for i in range(len(fetch_list)) ] return outs @classmethod def _split_optimize_ops_in_fetch_list(cls, fetch_list): """ Split optimize_ops from fetch_list, which provided to specify program prunning. Args: fetch_list(list): The original fetch_list. Possible types of fetch_list are: fetch_list = ['loss'] fetch_list = [[sgd, sgd], 'loss'] fetch_list = [([sgd, sgd], [(param, grad)]), 'loss'] Returns: optimize_ops(list): The optimize operators splited from fetch_list. fetch_list(list): The updated fetch_list which does not contain optimize operators. """ _optimize_ops = [] _fetch_list = [] def _get_targets(_optimize_ops, _fetch_list, item): if isinstance(item, Operator): if item._is_optimize_op(): _optimize_ops.append(item) else: raise TypeError( "The operator in fetch_list is not an optimize_op" ) elif ( isinstance(item, Variable) or isinstance(item, str) or isinstance(item, str) ): _fetch_list.append(item) else: raise TypeError( "The item in fetch_list should be str, variable or optimize_op, but received %s.", type(item), ) for index, item in enumerate(fetch_list): # NOTE(zhiqiu): to support (optimizer_ops, param_and_grads) and optimizer_ops in fetch_list # we should handle tuple and list in fetch_list. # TODO(zhiqiu): find a better way to handle that. if isinstance(item, list): for i in item: _get_targets(_optimize_ops, _fetch_list, i) elif isinstance(item, tuple): if not isinstance(item[0], (list, tuple)): raise TypeError( "Requires fetch_list[{}][0] shall be one of (list, tuple) when type(fetch_list[{}]) is `tuple`, but received fetch_list[{}][0]'s type is `{}`.".format( index, index, index, type(item[0]).__name__ ) ) for i in item[0]: _get_targets(_optimize_ops, _fetch_list, i) else: _get_targets(_optimize_ops, _fetch_list, item) return _fetch_list, _optimize_ops @classmethod def _prune_program( cls, program, feed=None, fetch_list=None, optimize_ops=None ): """ Prune operators and variables which are not needed to generate :code:`fetch_list` and optimize operators. Prune operators and variables which are needed to generate variables to be feeded. Notes: This is a very low level API. Users should not use this API directly. Args: program(Program): the origin program feed(list|dict): feed dict or list. fetch_list(list|Variable): A list of variables need to be fetched optimize_ops(list[Operator]): A list of optimizer operators Returns: Program: A new, pruned program. """ compiled = isinstance(program, compiler.CompiledProgram) if compiled: if program._program: origin_program = program._program else: warnings.warn( "The program holds no _program, maybe it is constructed by graph, which can't be pruned yet." ) return else: origin_program = program feed_names = [] if isinstance(feed, dict): feed_names = list(feed.keys()) elif isinstance(feed, list) or isinstance(feed, tuple): for i, each in enumerate(feed): feed_names += list(each.keys()) # if optimize_ops is [], all optimize ops in the program is used. if not optimize_ops: for block in origin_program.blocks: for op in block.ops: if op._is_optimize_op(): optimize_ops.append(op) targets = fetch_list + optimize_ops pruned_program = origin_program._prune_with_input(feed_names, targets) if compiled: # for compiled program, update the underlying program, re-generate graph, # and reset the flag so it can be compiled again. program._program = pruned_program program._graph = core.Graph(pruned_program.desc) program._compiled = False else: program = pruned_program return program @classmethod def _update_feed(cls, program, feed): """ Update the feed dict, remove the feed item which is pruned in program. Notes: This is a very low level API. Users should not use this API directly. Args: program(Program): the pruned program. feed(list|dict): feed dict or list. Returns: feed:(list|dict) updated feed. """ compiled = isinstance(program, compiler.CompiledProgram) if compiled: if program._program: global_block = program._program.global_block() else: warnings.warn( "The program holds no _program, maybe it is constructed by graph." ) return feed else: global_block = program.global_block() if isinstance(feed, dict): for feed_name in list(feed.keys()): if not global_block.has_var(feed_name): feed.pop(feed_name) warnings.warn( "The variable %s is not found in program. It is not declared or is pruned." % feed_name ) elif isinstance(feed, list) or isinstance(feed, tuple): for i, each in enumerate(feed): for feed_name in list(each.keys()): if not global_block.has_var(feed_name): each.pop(feed_name) warnings.warn( "The variable %s is not found in program. It is not declared or is pruned." % feed_name ) return feed ''' TODO(typhoonzero): Define "no longer use" meaning? Can user create a new Executor for the same program and run? TODO(panyx0718): Why ParallelExecutor doesn't have close? ''' def close(self): """ Close the executor. This interface is used for distributed training (PServers mode). This executor can not be used after calling the interface, because this interface releases resources associated with the current Trainer. Returns: None Examples: .. code-block:: python import paddle cpu = paddle.CPUPlace() exe = paddle.static.Executor(cpu) # execute training or testing exe.close() """ if not self._closed: self._closed = True for k, trainer_instance in self.trainer_caches.items(): self._default_executor.release_trainer(trainer_instance) del trainer_instance self._default_executor.close() def run( self, program=None, feed=None, fetch_list=None, feed_var_name='feed', fetch_var_name='fetch', scope=None, return_numpy=True, use_program_cache=False, use_prune=False, ): """ Run the specified :code:`Program` or :code:`CompiledProgram`. It should be noted that the executor will execute all the operators in :code:`Program` or :code:`CompiledProgram` without pruning some operators of the :code:`Program` or :code:`CompiledProgram` according to fetch_list. And you could specify the scope to store the :code:`Tensor` during the executor running if the scope is not set, the executor will use the global scope, i.e. :code:`paddle.static.global_scope()`. Args: program(Program|CompiledProgram): This parameter represents the :code:`Program` or :code:`CompiledProgram` to be executed. If this parameter is not provided, that parameter is None, the program will be set to :code:`paddle.static.default_main_program()`. The default is None. feed(list|dict): This parameter represents the input Tensors of the model. If it is single card training, the feed is dict type, and if it is multi-card training, the parameter feed can be dict or list of Tensors. If the parameter type is dict, the data in the feed will be split and sent to multiple devices (CPU/GPU), that is to say, the input data will be evenly sent to different devices, so you should make sure the number of samples of the current mini-batch must be greater than the number of places; if the parameter type is list, those data are copied directly to each device, so the length of this list should be equal to the number of places. The default is None. fetch_list(list): This parameter represents the Tensors that need to be returned after the model runs. The default is None. feed_var_name(str): This parameter represents the name of the input Tensor of the feed operator. The default is "feed". fetch_var_name(str): This parameter represents the name of the output Tensor of the fetch operator. The default is "fetch". scope(Scope): the scope used to run this program, you can switch it to different scope. default is :code:`paddle.static.global_scope()` return_numpy(bool): This parameter indicates whether convert the fetched Tensors (the Tensor specified in the fetch list) to numpy.ndarray. if it is False, the type of the return value is a list of :code:`LoDTensor`. The default is True. use_program_cache(bool): This parameter indicates whether the input :code:`Program` is cached. If the parameter is True, the model may run faster in the following cases: the input program is :code:`paddle.static.Program`, and the parameters(program, feed Tensor name and fetch_list Tensor) of this interface remains unchanged during running. The default is False. use_prune(bool): This parameter indicates whether the input :code:`Program` will be pruned. If the parameter is True, the program will be pruned accroding to the given feed and fetch_list, which means the operators and variables in program that generate :code:`feed` and are not needed to generate :code:`fetch_list` will be pruned. The default is False, which means the program will not pruned and all the operators and variables will be executed during running. Note that if the tuple returned from :code:`Optimizer.minimize()` is passed to :code:`fetch_list`, :code:`use_prune` will be overrided to True, and the program will be pruned. Returns: List: The fetched result list. Examples: .. code-block:: python :name: code-example-1 import paddle import numpy # First create the Executor. paddle.enable_static() place = paddle.CPUPlace() # paddle.CUDAPlace(0) exe = paddle.static.Executor(place) data = paddle.static.data(name='X', shape=[None, 1], dtype='float32') hidden = paddle.static.nn.fc(data, 10) loss = paddle.mean(hidden) adam = paddle.optimizer.Adam() adam.minimize(loss) i = paddle.zeros(shape=[1], dtype='int64') array = paddle.tensor.array_write(x=loss, i=i) # Run the startup program once and only once. exe.run(paddle.static.default_startup_program()) x = numpy.random.random(size=(10, 1)).astype('float32') loss_val, array_val = exe.run(feed={'X': x}, fetch_list=[loss.name, array.name]) print(array_val) # [array([0.02153828], dtype=float32)] .. code-block:: python :name: code-example-2 # required: gpu import paddle import numpy as np # First create the Executor. paddle.enable_static() place = paddle.CUDAPlace(0) exe = paddle.static.Executor(place) data = paddle.static.data(name='X', shape=[None, 1], dtype='float32') class_dim = 2 prediction = paddle.static.nn.fc(data, class_dim) loss = paddle.mean(prediction) adam = paddle.optimizer.Adam() adam.minimize(loss) # Run the startup program once and only once. exe.run(paddle.static.default_startup_program()) build_strategy = paddle.static.BuildStrategy() binary = paddle.static.CompiledProgram( paddle.static.default_main_program(), build_strategy=build_strategy) batch_size = 6 x = np.random.random(size=(batch_size, 1)).astype('float32') prediction, = exe.run(binary, feed={'X': x}, fetch_list=[prediction.name]) # If the user uses two GPU cards to run this python code, the printed result will be # (6, class_dim). The first dimension value of the printed result is the batch_size. print("The prediction shape: {}".format( np.array(prediction).shape)) print(prediction) # Out: # The prediction shape: (6, 2) # [[-0.37789783 -0.19921964] # [-0.3577645 -0.18863106] # [-0.24274671 -0.12814042] # [-0.24635398 -0.13003758] # [-0.49232286 -0.25939852] # [-0.44514108 -0.2345845 ]] """ # Temporary FLAGS, just for testing the performance of program cache force_use_program_cache = os.environ.get( 'FLAGS_FORCE_USE_PROGRAM_CACHE', None ) if force_use_program_cache is not None: use_program_cache = force_use_program_cache in [ 1, '1', True, 'True', 'true', ] self._log_force_set_program_cache(use_program_cache) res = self._run_impl( program=program, feed=feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, scope=scope, return_numpy=return_numpy, use_program_cache=use_program_cache, use_prune=use_prune, ) core.update_autotune_status() return res def _run_impl( self, program, feed, fetch_list, feed_var_name, fetch_var_name, scope, return_numpy, use_program_cache, use_prune, ): if self._closed: raise RuntimeError("Attempted to use a closed Executor") use_default_main_program = program is None if program is None: program = default_main_program() fetch_list = self._check_fetch_list(fetch_list) if isinstance(program, Program) and program._pipeline_opt: if "fleet_opt" in program._pipeline_opt: # Move prepare here for port conflict with nccl in startup program if self._fleet_executor is None: # Temporary manual enable standalone executor for fleet executor, # delete this code after the FLAGS is removed. if 'tasks' in program._pipeline_opt["fleet_opt"]: set_flags( {"FLAGS_fleet_executor_with_standalone": True} ) self._fleet_executor = _prepare_fleet_executor() return self._run_using_fleet_executor( program=program, feed=feed, fetch_list=fetch_list, with_standalone_executor=self._fleet_executor_with_standalone, ) if "startup_program" in program._pipeline_opt: program = program._pipeline_opt["startup_program"] else: return self._run_pipeline( program, fetch_list=fetch_list, use_program_cache=use_program_cache, ) if isinstance(program, Program) and program._heter_pipeline_opt: # print("program._heter_pipeline_opt: {}".format( # program._heter_pipeline_opt)) ## change default executor heter_place = program._heter_pipeline_opt["heter_place"] heter_place = framework._get_paddle_place(heter_place) p = core.Place() p.set_place(heter_place) self._default_executor = core.Executor(p) # TODO(zhangminxu): support heterps pipeline training using exe.run if "startup_program" in program._heter_pipeline_opt: # print("get startup_program from _pipeline_opt") program = program._heter_pipeline_opt["startup_program"] if ( isinstance(program, Program) and len(program.global_block().ops) == 0 ): if use_default_main_program: error_info = ( "Now you are using default_main_program, " "but there are no operators in the program to be executed. " "Please ensure you create model correctly or you can pass " "the Program or the CompiledProgram manually." ) else: error_info = ( "There are no operators in the program to be executed. " "If you pass Program manually, please use fluid.program_guard " "to ensure the current Program is being used." ) warnings.warn(error_info) if scope is None: scope = global_scope() # use_prune can be overrided by putting optimize_ops in fetch_list _origin_fetch_list = fetch_list _origin_program = program fetch_list, optimize_ops = self._split_optimize_ops_in_fetch_list( fetch_list ) if optimize_ops: use_prune = True if use_prune: cache_key = _get_strong_program_cache_key( program, feed, _origin_fetch_list ) cached_pruned_program = self._get_pruned_program_cache(cache_key) if cached_pruned_program is None: if isinstance(program, compiler.CompiledProgram): program_scope_cache = self._get_pruned_program_scope_cache( str(id(_origin_program)) ) # copy the original program, so it can be cached. program = copy.copy(program) # share the local scopes for same original CompiledProgram. program._share_vars_from = program_scope_cache if ( self._get_pruned_program_scope_cache( str(id(_origin_program)) ) is None ): self._add_pruned_program_scope_cache( str(id(_origin_program)), program ) pruned_program = self._prune_program( program, feed, fetch_list, optimize_ops ) self._add_pruned_program_cache(cache_key, pruned_program) else: pruned_program = cached_pruned_program feed = self._update_feed(pruned_program, feed) program = pruned_program def _can_use_interpreter_core(program, place): if core.is_compiled_with_mlu(): return False compiled = isinstance( program, compiler.CompiledProgram ) or isinstance(program._graph, compiler.CompiledProgram) if compiled: compiled_program = ( program if isinstance(program, compiler.CompiledProgram) else program._graph ) # Unsupported case 1: inference if compiled_program._is_inference: warnings.warn( "Standalone executor is not used for inference", UserWarning, ) return False # Unsupported case 2: async mode if ( compiled_program._build_strategy is not None and compiled_program._build_strategy.async_mode ): warnings.warn( "Standalone executor is not used for async mode", UserWarning, ) return False # Unsupported case 3: CUDA Graph if ( compiled_program._build_strategy is not None and compiled_program._build_strategy.allow_cuda_graph_capture and not _is_cuda_graph_enable_standalone_executor() ): warnings.warn( "Standalone executor is not used for CUDA Graph when FLAGS_CUDA_GRAPH_USE_STANDALONE_EXECUTOR=0", UserWarning, ) return False return True if self._enable_interpreter_core and _can_use_interpreter_core( program, self.place ): if feed is None: feed = {} elif isinstance(feed, (list, tuple)): assert len(feed) == 1, "Not compiled with data parallel" feed = feed[0] if not isinstance(feed, dict): raise TypeError( "feed requires dict as its Parameter. But you passed in %s" % (type(feed)) ) feed = self._update_feed(program, feed) program, new_exe = self._executor_cache.get_program_and_executor( program, feed, fetch_list, feed_var_name, fetch_var_name, self.place, scope, ) self._feed_data(program, feed, feed_var_name, scope) if hasattr(program, 'lr_sheduler'): from paddle.optimizer.lr import LRScheduler assert isinstance( program.lr_sheduler, LRScheduler ), "must be LRScheduler" lr_sheduler = program.lr_sheduler lr_value = lr_sheduler() lr_var = program.global_block().vars[lr_sheduler._var_name] data = np.array([lr_value]).astype(convert_dtype(lr_var.dtype)) tensor = core.get_variable_tensor(scope, lr_sheduler._var_name) # NOTE(dev): `tensor.set(data, self.place)` always call TensorCopySync that is a blocking behavior. So we use `_copy_from` to replace it. cpu_tensor = _as_lodtensor(data, core.CPUPlace()) if core.is_cuda_graph_capturing(): warnings.warn( "Caution!!! When capturing CUDA Graph, the learning rate scheduler would not " "take any effect! Please set the learning rate manually before each batch!" ) elif core.is_compiled_with_ipu(): # for ipu, tensor is allocated on cpu tensor._copy_from(cpu_tensor, tensor._place()) else: tensor._copy_from(cpu_tensor, self.place) return new_exe.run( scope, list(feed.keys()), fetch_list, return_numpy ) compiled = isinstance(program, compiler.CompiledProgram) # Check if paddle.static.data() variable no feed data if use_prune: if compiled: global_block = program._program.global_block() else: global_block = program.global_block() for varname in global_block.vars: vardesc = global_block.desc.find_var(varname.encode()) varobj = global_block.vars[varname] if ( vardesc.persistable() == False and vardesc.type() == core.VarDesc.VarType.LOD_TENSOR and vardesc.need_check_feed() == True and varobj.stop_gradient == True and varobj.is_data == True and varobj.belong_to_optimizer == False and varname not in feed ): raise ValueError('Need feed data for variable %s' % varname) acp._auto_checkpoint(self, program) # For backward compatibility, run directly. if not compiled: return self._run_program( program, feed=feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, scope=scope, return_numpy=return_numpy, use_program_cache=use_program_cache, ) program._compile(scope, self.place) assert ( program._is_inference ), f"Program must have _is_inference = True, but get {program._is_inference}" return self._run_inference(program._executor, feed) def _run_program( self, program, feed, fetch_list, feed_var_name, fetch_var_name, scope, return_numpy, use_program_cache, ): from paddle.optimizer.lr import LRScheduler if feed is None: feed = {} elif isinstance(feed, (list, tuple)): assert len(feed) == 1, "Not compiled with data parallel" feed = feed[0] if not isinstance(feed, dict): raise TypeError( "feed requires dict as its Parameter. But you passed in %s" % (type(feed)) ) assert program is not None, "The program should not be Empty" if not isinstance(program, Program): raise TypeError( "Executor requires Program as its Parameter. But you passed in %s" % (type(program)) ) if not isinstance(fetch_var_name, str): raise TypeError( "The name of fetch variable requires string as its Parameter. But you passed in %s" % (type(fetch_var_name)) ) if use_program_cache: cache_key = _get_strong_program_cache_key(program, feed, fetch_list) cached_program = self._get_program_cache(cache_key) cached_ctx = self._get_ctx_cache(cache_key) cached_scope = self._get_scope_cache(cache_key) if cached_program is None: cached_program = _add_feed_fetch_ops( program=program, feed=feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, ) self._add_program_cache(cache_key, cached_program) fetch_list_str = list(map(_to_name_str, fetch_list)) cached_ctx = self._default_executor.prepare( cached_program.desc, 0, fetch_list_str, False ) # currently, we cache program, vars, sub_scope here # we suppose that in a life cycle of training, a user # will not create many programs. So, here the basic # rule of caching is to cache all unseen (program, var, scope) # when a user use use_program_cache. cached_scope = scope.new_scope() self._default_executor.create_variables( cached_program.desc, cached_scope, 0 ) self._add_ctx_cache(cache_key, cached_ctx) self._add_scope_cache(cache_key, cached_scope) program = cached_program ctx = cached_ctx scope = cached_scope else: program = _add_feed_fetch_ops( program=program, feed=feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, ) self._feed_data(program, feed, feed_var_name, scope) if hasattr(program, 'lr_sheduler'): assert isinstance( program.lr_sheduler, LRScheduler ), "must be LRScheduler" lr_sheduler = program.lr_sheduler lr_value = lr_sheduler() lr_var = program.global_block().vars[lr_sheduler._var_name] data = np.array([lr_value]).astype(convert_dtype(lr_var.dtype)) tensor = core.get_variable_tensor(scope, lr_sheduler._var_name) tensor.set(data, self.place) if not use_program_cache: self._default_executor.run( program.desc, scope, 0, True, True, [fetch_var_name] ) else: self._default_executor.run_prepared_ctx( ctx, scope, False, False, False ) arr = scope.find_var(fetch_var_name).get_fetch_list() tensors = arr._move_to_list() if return_numpy: return as_numpy(tensors) else: return tensors def _run_inference(self, exe, feed): return exe.run(feed) def _check_fetch_list(self, fetch_list): is_fetch_var = lambda var: isinstance(var, (Variable, str)) is_tuple_list = lambda var: isinstance(var, (tuple, list)) if fetch_list is None: return [] if is_fetch_var(fetch_list): return [fetch_list] assert is_tuple_list(fetch_list), ( "Currently , The fetch_list type only should be list or tuple, \n" "but the input type is {}. For more information please refer to \n" "the executor.run(...).".format(type(fetch_list)) ) res = [] for i, var in enumerate(fetch_list): if is_fetch_var(var): res.append(var) # such as [x, 'mean_out', loss] elif is_tuple_list(var): if all(is_fetch_var(v) for v in var): res.extend(list(var)) else: res.append(var) else: raise TypeError( "Require fetch_list[{}] 's type shall be one of (Variable, str), but received {}.".format( i, type(var).__name__ ) ) return res def _dump_debug_info(self, program=None, trainer=None): with open(str(id(program)) + "_train_desc.prototxt", "w") as fout: fout.write(str(trainer)) if program._fleet_opt and "fleet_desc" in program._fleet_opt: with open("fleet_desc.prototxt", "w") as fout: fout.write(str(program._fleet_opt["fleet_desc"])) def _adjust_pipeline_resource(self, pipeline_opt, dataset, pipeline_num): filelist_length = len(dataset.dataset.get_filelist()) if filelist_length < pipeline_num: pipeline_num = filelist_length print( "Pipeline training: setting the pipeline num to %d is enough because there are only %d files" % (filelist_length, filelist_length) ) if filelist_length < pipeline_num * pipeline_opt["concurrency_list"][0]: print( "Pipeline training: setting the 1st element in concurrency_list to %d is enough because there are only %d files" % (filelist_length // pipeline_num, filelist_length) ) pipeline_opt["concurrency_list"][0] = ( filelist_length // pipeline_num ) dataset.set_thread(pipeline_opt["concurrency_list"][0] * pipeline_num) return pipeline_num def split_program_by_device(self, program): ops_list = [] type_list = [] pre = None type_cpu = "cpu" for op in program.global_block().ops: if self._is_optimizer_op(op): break if op.has_attr("op_device"): cur_attr = ( op.attr("op_device") if op.attr("op_device") != "" else type_cpu ) if pre is None or pre != cur_attr: ops_list.append([]) type_list.append(cur_attr) ops_list[-1].append(op) pre = cur_attr l = len(type_list) i = 0 type_heter = None while i < l: while i < l and type_list[i] == type_cpu: i += 1 if i == l: break type_heter = type_list[i] i += 1 start = i valid = True while i < l and type_list[i] != type_heter: if type_list[i] != type_cpu: valid = False break i += 1 if i == l: break elif not valid: continue for j in range(start, i): for op in ops_list[j]: op._set_attr("op_device", type_heter) type_list[j] = type_heter j += 1 pre = None merged_ops_list = [] merged_type_list = [] for i in range(l): if pre is None or pre != type_list[i]: merged_ops_list.append([]) merged_type_list.append(type_list[i]) merged_ops_list[-1].extend(ops_list[i]) pre = type_list[i] data_vars = set() for k in program.global_block().vars: var = program.global_block().var(k) if not var.persistable: data_vars.add(var.name) l = len(merged_ops_list) inputs_pre = set() outputs_pre = set() in_from_pre = [[] for i in range(l)] for i in range(l): inputs = set() outputs = set() for op in merged_ops_list[i]: for input in op.input_names: for tmp in op.input(input): if tmp not in outputs: inputs.add(tmp) for output in op.output_names: for tmp in op.output(output): outputs.add(tmp) if i == 0: in_from_pre[i] = [] elif i == 1: in_from_pre[i] = (outputs_pre | data_vars) & inputs else: in_from_pre[i] = outputs_pre & inputs inputs_pre = copy.deepcopy(inputs) outputs_pre = copy.deepcopy(outputs) l = len(in_from_pre) start_list = [] end_list = [] send_list = [[] for i in range(l)] sum = 0 program_list = [] for i in range(l): start_list.append(sum) end_list.append(sum + len(merged_ops_list[i]) - 1) sum += len(merged_ops_list[i]) if i < l - 1: send_list[i].extend(list(in_from_pre[i + 1])) prog = program.clone() if merged_type_list[i] != type_cpu: prog = prog._prune_with_input( list(in_from_pre[i]), list(send_list[i]) ) program_list.append(prog) else: program_list.append(prog) recv_list = [list(i) for i in in_from_pre] found = False heter_index = None for i in range(len(merged_type_list)): t = merged_type_list[i] if t != type_cpu: if found: print("only one region of program can be heter") found = True heter_index = i if heter_index is None: print("warning: non heter program") return None else: return [ start_list[heter_index], end_list[heter_index], send_list[heter_index], recv_list[heter_index], program_list[heter_index], ] def _prepare_trainer( self, program=None, dataset=None, scope=None, thread=0, debug=False, fetch_list=None, fetch_info=None, print_period=100, ): is_heter = 0 use_ps_gpu = 0 if not program._fleet_opt is None: if program._fleet_opt.get("worker_class", "") == "HeterCpuWorker": is_heter = 1 if program._fleet_opt.get("trainer", "") == "HeterXpuTrainer": is_heter = 1 if program._fleet_opt.get("use_ps_gpu", False): use_ps_gpu = True if scope is None: scope = global_scope() if fetch_list is None: fetch_list = [] if fetch_info is None: fetch_info = [] assert len(fetch_list) == len(fetch_info) compiled = isinstance(program, compiler.CompiledProgram) if is_heter: ret = self.split_program_by_device(program) if not compiled: # TODO: Need a better way to distinguish and specify different execution mode if program._pipeline_opt: trainer = TrainerFactory()._create_trainer( program._pipeline_opt ) elif program._heter_pipeline_opt: trainer = TrainerFactory()._create_trainer( program._heter_pipeline_opt ) else: trainer = TrainerFactory()._create_trainer(program._fleet_opt) trainer._set_thread_barrier(program._is_distributed) trainer._set_program(program) if is_heter: trainer._set_heter_info(ret) else: if program._pipeline_opt: trainer = TrainerFactory()._create_trainer( program.program._pipeline_opt ) elif program._heter_pipeline_opt: trainer = TrainerFactory()._create_trainer( program.program._heter_pipeline_opt ) else: trainer = TrainerFactory()._create_trainer( program.program._fleet_opt ) trainer._set_program(program.program) if thread <= 0: if use_ps_gpu: trainer._set_thread(len(program._fleet_opt["worker_places"])) elif dataset.thread_num <= 0: raise RuntimeError( "You should set thread num first, either in Dataset" "or in Executor.train_from_dataset" ) else: trainer._set_thread(dataset.thread_num) else: trainer._set_thread(thread) trainer._set_debug(debug) trainer._set_fetch_var_and_info(fetch_list, fetch_info, print_period) return scope, trainer def _run_from_dataset( self, program=None, dataset=None, scope=None, thread=0, is_infer=False, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, ): if program._pipeline_opt is not None: import paddle if dataset is not None: raise RuntimeError("dataset should be None for pipeline mode") # The following fake dataset is created to call # the _prepare_trainer api, and it is meaningless. data_vars = [] for var in program.global_block().vars.values(): if var.is_data: data_vars.append(var) if core.is_compiled_with_npu(): dataset = paddle.fluid.DatasetFactory().create_dataset( 'InMemoryDataset' ) else: dataset = paddle.fluid.DatasetFactory().create_dataset( 'FileInstantDataset' ) dataset.set_batch_size(1) dataset.set_thread(1) dataset.set_filelist(['None']) dataset.set_use_var(data_vars) elif program._heter_pipeline_opt is not None: stage_id = program._heter_pipeline_opt["pipeline_stage"] # print("test_fl_stage_id: {}".format(stage_id)) heter_place = program._heter_pipeline_opt["heter_place"] if stage_id != 0: if "is_fl_mode" not in program._heter_pipeline_opt: import paddle if dataset is not None: raise RuntimeError( "dataset should be None for heter pipeline mode" ) # The following fake dataset is created to call # the _prepare_trainer api, and it is meaningless. data_vars = [] for var in program.global_block().vars.values(): if var.is_data: data_vars.append(var) dataset = paddle.fluid.DatasetFactory().create_dataset( 'InMemoryDataset' ) dataset.set_batch_size(1) dataset.set_thread(1) dataset.set_filelist(['None']) dataset.set_use_var(data_vars) else: if dataset is None: raise RuntimeError( "dataset is need and should be initialized" ) ## change default executor heter_place = framework._get_paddle_place(heter_place) p = core.Place() p.set_place(heter_place) self._default_executor = core.Executor(p) else: if dataset is None: raise RuntimeError("dataset is need and should be initialized") dataset._prepare_to_run() real_fetch_list = [] if program._pipeline_opt: real_program = program._pipeline_opt["section_program"] for fetch_var in fetch_list: if isinstance(fetch_var, Variable): fetch_var_name = fetch_var.name else: fetch_var_name = fetch_var if fetch_var_name in real_program.global_block().vars: real_fetch_list.append(fetch_var) program._pipeline_opt["section_program"] = _add_feed_fetch_ops( program=program._pipeline_opt["section_program"], feed=[], fetch_list=real_fetch_list, feed_var_name='feed', fetch_var_name='fetch', ) main_block = program._pipeline_opt["section_program"].block(0) for op in main_block.ops: # set the op_role of fetch op to Optimize to avoid # erase the fetched vars by gc for pipeline if op.type == 'fetch': op._set_attr( 'op_role', core.op_proto_and_checker_maker.OpRole.Optimize, ) fetch_list = None scope, trainer = self._prepare_trainer( program=program, dataset=dataset, scope=scope, thread=thread, debug=debug, fetch_list=fetch_list, fetch_info=fetch_info, print_period=print_period, ) trainer._set_infer(is_infer) trainer._gen_trainer_desc() if program._pipeline_opt is None: if program._heter_pipeline_opt is None: self._dump_debug_info(program=program, trainer=trainer) # warning if dataset not set psgpu in psgpu mode if dataset.use_ps_gpu is False and trainer.proto_desc.use_ps_gpu: logging.warning("dataset should call set_use_ps_gpu in PsGpu mode") dataset._dynamic_adjust_before_train(trainer.proto_desc.thread_num) if program._heter_pipeline_opt is None: trainer_instance = ( self._default_executor.init_for_dataset( # -->InitForDataset program.desc, trainer._desc(), scope, dataset.dataset ) ) else: # cache trainer instance for heterps pipeline training if fetch_list is None: fetch_list = [] cache_key = _get_strong_program_cache_key(program, None, fetch_list) trainer_instance = self._get_trainer_cache(cache_key) if trainer_instance is None: trainer_instance = self._default_executor.init_for_dataset( program.desc, trainer._desc(), scope, dataset.dataset ) # print("test_fl_ps - trainer_desc: {}\n".format(trainer)) self._add_trainer_cache(cache_key, trainer_instance) else: trainer_instance.ResetDataset(dataset.dataset) if fetch_handler is not None: scope0 = trainer_instance.get_worker_scope(0) fetch_monitor = FetchHandlerMonitor(scope0, fetch_handler) fetch_monitor.start() self._default_executor.run_from_dataset(trainer_instance) fetch_monitor.stop() if program._heter_pipeline_opt is None: self._default_executor.release_trainer(trainer_instance) else: self._default_executor.run_from_dataset(trainer_instance) if program._heter_pipeline_opt is None: self._default_executor.release_trainer(trainer_instance) dataset._dynamic_adjust_after_train() dataset._finish_to_run() if real_fetch_list: arr = scope.find_var('fetch').get_fetch_list() tensors = arr._move_to_list() return as_numpy(tensors) return None def _prepare_pipeline_ctx( self, program=None, dataset=None, scope=None, thread=0, is_infer=False, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, use_program_cache=False, ): assert program._pipeline_opt is not None assert dataset is None, "dataset should be None for pipeline mode" cache_key = _get_strong_program_cache_key(program, None, fetch_list) ctx = self._get_ctx_cache(cache_key) if use_program_cache and ctx is not None: return ctx import paddle # The following fake dataset is created to call # the _prepare_trainer api, and it is meaningless. def _get_dataset(): data_vars = [] for var in program.global_block().vars.values(): if var.is_data: data_vars.append(var) if core.is_compiled_with_npu(): dataset = paddle.fluid.DatasetFactory().create_dataset( 'InMemoryDataset' ) else: dataset = paddle.fluid.DatasetFactory().create_dataset( 'FileInstantDataset' ) dataset.set_batch_size(1) dataset.set_thread(1) dataset.set_filelist(['None']) dataset.set_use_var(data_vars) dataset._prepare_to_run() return dataset dataset = _get_dataset() def _get_real_program_fetch_list(): real_program = program._pipeline_opt["section_program"] real_fetch_list = [] for fetch_var in fetch_list: if isinstance(fetch_var, Variable): fetch_var_name = fetch_var.name else: fetch_var_name = fetch_var if fetch_var_name in real_program.global_block().vars: real_fetch_list.append(fetch_var) real_program = _add_feed_fetch_ops( program=real_program, feed=[], fetch_list=real_fetch_list, feed_var_name='feed', fetch_var_name='fetch', ) main_block = real_program.block(0) for op in main_block.ops: # set the op_role of fetch op to Optimize to avoid # erase the fetched vars by gc for pipeline if op.type == 'fetch': op._set_attr( 'op_role', core.op_proto_and_checker_maker.OpRole.Optimize, ) return real_program, real_fetch_list real_program, real_fetch_list = _get_real_program_fetch_list() program._pipeline_opt["section_program"] = real_program fetch_list = None scope, trainer = self._prepare_trainer( program=program, dataset=dataset, scope=scope, thread=thread, debug=debug, fetch_list=fetch_list, fetch_info=fetch_info, print_period=print_period, ) trainer._set_infer(is_infer) trainer._gen_trainer_desc() # NOTE: only for debug, very slow # self._dump_debug_info(program=program, trainer=trainer) # warning if dataset not set psgpu in psgpu mode if dataset.use_ps_gpu is False and trainer.proto_desc.use_ps_gpu: logging.warning("dataset should call set_use_ps_gpu in PsGpu mode") dataset._dynamic_adjust_before_train(trainer.proto_desc.thread_num) trainer_desc = trainer._desc() # slow, cache trainer_instance = self._default_executor.init_for_dataset( program.desc, trainer_desc, scope, dataset.dataset ) ctx = [scope, real_fetch_list, trainer_instance] if use_program_cache: self._add_ctx_cache(cache_key, ctx) return ctx def _prepare_fleet_executor_carrier( self, carrier_id="", program=None, scope=None, fleet_opt=None, micro_scope_list=[], with_standalone_executor=False, ): num_micro_batches = ( fleet_opt["num_micro_batches"] if "num_micro_batches" in fleet_opt else 1 ) cur_rank = int(os.getenv("PADDLE_TRAINER_ID", 0)) trainer_endpoints = os.getenv("PADDLE_TRAINER_ENDPOINTS", "").split(',') nrank = len(trainer_endpoints) assert 'scheduler' in fleet_opt or 'tasks' in fleet_opt, ( "Fleet executor need configuration for scheduler, you can choose from 1F1B or Origin. " "Or you can provide a list of task nodes to init fleet executor directly." ) if 'tasks' in fleet_opt: assert 'task_id_to_rank' in fleet_opt, ( "If you provide tasks to init fleet executor," " task_id_to_rank should also be provided." ) print('fleet executor will use user defined task nodes') tasks = [task.task_node() for task in fleet_opt['tasks']] task_id_to_rank = fleet_opt['task_id_to_rank'] else: scheduler = fleet_opt['scheduler'] if scheduler == '1F1B': from paddle.distributed.fleet.fleet_executor_utils import ( run1f1b, ) if ( "dist_strategy" not in fleet_opt or "pp_degree" not in fleet_opt["dist_strategy"] or fleet_opt["dist_strategy"]["pp_degree"] == 1 ): warnings.warn("Using 1F1B scheduler with pp_degree == 1.") tasks, task_id_to_rank = run1f1b( program, cur_rank, fleet_opt.get('num_micro_batches', 1), fleet_opt.get('dist_strategy', {}), nrank, with_standalone_executor, ) elif scheduler == 'Origin': from paddle.distributed.fleet.fleet_executor_utils import origin if ( "dist_strategy" in fleet_opt and "pp_degree" in fleet_opt["dist_strategy"] ): assert ( fleet_opt["dist_strategy"]["pp_degree"] == 1 ), "For pipeline mode, the scheduler should be 1F1B instead of Origin." if "num_micro_batches" in fleet_opt: assert ( fleet_opt["num_micro_batches"] == 1 ), "For origin scheduler mode, the num micro batches should be 1." tasks, task_id_to_rank = origin(program, cur_rank) else: raise "Fleet_executor only supports 1F1B and Origin scheduler, " "but received " + str( scheduler ) + "." # NOTE: have to hold these vars, otherwise will be destructed fleet_opt['tasks'] = tasks fleet_opt['task_id_to_rank'] = task_id_to_rank place = core.Place() place.set_place(self.place) inference_root_scope_vars = ( fleet_opt["fetch_var"] if "fetch_var" in fleet_opt else [] ) self._fleet_executor.init( carrier_id, program.desc, scope, place, num_micro_batches, tasks, task_id_to_rank, inference_root_scope_vars, micro_scope_list, ) def _run_using_fleet_executor( self, program=None, feed=None, feed_var_name="feed", fetch_var_name="fetch", fetch_list=None, with_standalone_executor=False, ): cache_key = _get_strong_program_cache_key(program, feed, fetch_list) cached_program = self._get_program_cache(cache_key) cached_scope = self._get_scope_cache(cache_key) if cached_scope is None: cached_scope = global_scope() self._add_scope_cache(cache_key, cached_scope) if cached_program is None: assert ( program._pipeline_opt ), "program should have _pipeline_opt to start carrier" real_feed = [] if feed is None else feed real_program = program if "section_program" in program._pipeline_opt: real_program = program._pipeline_opt["section_program"] cached_program = _add_feed_fetch_ops( program=real_program, feed=real_feed, fetch_list=fetch_list, feed_var_name=feed_var_name, fetch_var_name=fetch_var_name, ) main_block = cached_program.block(0) for op in main_block.ops: # set the op_role of fetch op to Optimize to avoid # erase the fetched vars by gc for pipeline if op.type == 'fetch': op._set_attr( 'op_role', core.op_proto_and_checker_maker.OpRole.Optimize, ) self._add_program_cache(cache_key, cached_program) fleet_opt = program._pipeline_opt["fleet_opt"] if 'tasks' in fleet_opt: # Insert feed/fetch op for cloned program in each task node, # these ops has already been inserted into the origin program. # To avoid every task nodes all have feed/fetch ops, # only insert feed ops into the first task node, # then insert fetch ops into the last task node. # Insert feed ops feed_task = fleet_opt['tasks'][0] print("Inserting feed ops for task", feed_task.task_id()) feed_program = feed_task.get_program() feed_program = self._add_feed_ops( program=feed_program, feed=real_feed, feed_var_name=feed_var_name, ) feed_task.set_program(feed_program) # Insert fetch ops fetch_task = fleet_opt['tasks'][-1] print("Inserting fetch ops for task", fetch_task.task_id()) fetch_program = fetch_task.get_program() fetch_program = self._add_fetch_ops( program=fetch_program, fetch_list=fetch_list, fetch_var_name=fetch_var_name, ) main_block = fetch_program.block(0) for op in main_block.ops: # set the op_role of fetch op to Optimize to avoid # erase the fetched vars by gc for pipeline if op.type == 'fetch': op._set_attr( 'op_role', core.op_proto_and_checker_maker.OpRole.Optimize, ) fetch_task.set_program(fetch_program) micro_scope_list = [] if ( "inference_generation" in fleet_opt and fleet_opt["inference_generation"] ): for i in range(int(fleet_opt["num_micro_batches"])): micro_scope_list.append(cached_scope.new_scope()) self._prepare_fleet_executor_carrier( cache_key, program=cached_program, scope=cached_scope, fleet_opt=fleet_opt, micro_scope_list=micro_scope_list, with_standalone_executor=with_standalone_executor, ) if feed: # NOTE: don't have to traverse programs in task nodes, # since they all sub program of cached program and # cached program is also added feed fetch var self._feed_data(cached_program, feed, feed_var_name, cached_scope) from paddle.optimizer.lr import LRScheduler if hasattr(program, 'lr_sheduler'): lr_sheduler = program.lr_sheduler assert isinstance(lr_sheduler, LRScheduler), "must be LRScheduler" lr_value = lr_sheduler() lr_var = program.global_block().vars[lr_sheduler._var_name] data = np.array([lr_value]).astype(convert_dtype(lr_var.dtype)) tensor = core.get_variable_tensor( cached_scope, lr_sheduler._var_name ) tensor.set(data, self.place) self._fleet_executor.run(cache_key) if "fetch_var" in fleet_opt: # If we speed up the generation in evaluation, we need to generate # multiple queries at the same time. Each query will in separate scope in order # not mix up. It indicate that final result will in multiple scopes and need to # fetch each. result_list = [] for scope in micro_scope_list: for var in fleet_opt["fetch_var"]: tensor = core.get_variable_tensor(scope, var) result_list.append(as_numpy(tensor)) return result_list if fetch_list: arr = cached_scope.find_var(fetch_var_name).get_fetch_list() tensors = arr._move_to_list() return as_numpy(tensors) return None def _add_feed_ops(self, program, feed, feed_var_name): tmp_program = program.clone() global_block = tmp_program.global_block() if feed_var_name in global_block.vars: feed_var = global_block.var(feed_var_name) else: feed_var = global_block.create_var( name=feed_var_name, type=core.VarDesc.VarType.FEED_MINIBATCH, persistable=True, ) # prepend feed operators if not has_feed_operators(global_block, feed, feed_var_name): for i, name in enumerate(feed): if global_block.has_var(name): out = global_block.var(name) global_block._prepend_op( type='feed', inputs={'X': [feed_var]}, outputs={'Out': [out]}, attrs={'col': i}, ) else: warnings.warn( "The variable %s is not found in program. It is not declared or is pruned." % name ) return tmp_program @classmethod def _add_fetch_ops( cls, program, fetch_list, fetch_var_name, use_fetch_v2=False ): tmp_program = program.clone() global_block = tmp_program.global_block() if fetch_var_name in global_block.vars: fetch_var = global_block.var(fetch_var_name) else: fetch_var = global_block.create_var( name=fetch_var_name, type=core.VarDesc.VarType.FETCH_LIST, persistable=True, ) if use_fetch_v2: fetch_op = 'fetch_v2' else: fetch_op = 'fetch' # append fetch_operators if not has_fetch_operators( global_block, fetch_list, fetch_var_name, fetch_op ): for i, var in enumerate(fetch_list): assert isinstance(var, Variable) or isinstance( var, str ), "Wrong type for fetch_list[%s]: %s" % (i, type(var)) global_block.append_op( type=fetch_op, inputs={'X': [var]}, outputs={'Out': [fetch_var]}, attrs={'col': i}, ) return tmp_program @classmethod def _remove_fetch_ops(cls, program, fetch_op_name='fetch'): tmp_program = program.clone() global_block = tmp_program.global_block() op_num = len(global_block.ops) for idx in reversed(range(op_num)): if global_block.ops[idx].type == fetch_op_name: global_block._remove_op(idx) return tmp_program def _run_pipeline( self, program=None, dataset=None, scope=None, thread=0, is_infer=False, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, use_program_cache=False, ): scope, real_fetch_list, trainer_instance = self._prepare_pipeline_ctx( program, dataset, scope, thread, is_infer, debug, fetch_list, fetch_info, print_period, fetch_handler, use_program_cache, ) from paddle.optimizer.lr import LRScheduler if hasattr(program, 'lr_sheduler'): lr_sheduler = program.lr_sheduler assert isinstance(lr_sheduler, LRScheduler), "must be LRScheduler" lr_value = lr_sheduler() lr_var = program.global_block().vars[lr_sheduler._var_name] data = np.array([lr_value]).astype(convert_dtype(lr_var.dtype)) tensor = core.get_variable_tensor(scope, lr_sheduler._var_name) tensor.set(data, self.place) self._default_executor.run_from_dataset(trainer_instance) if not use_program_cache: self._default_executor.release_trainer(trainer_instance) if real_fetch_list: arr = scope.find_var('fetch').get_fetch_list() tensors = arr._move_to_list() return as_numpy(tensors) return None def infer_from_dataset( self, program=None, dataset=None, scope=None, thread=0, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, ): """ Infer from a pre-defined Dataset. Dataset is defined in paddle.fluid.dataset. Given a program, either a program or compiled program, infer_from_dataset will consume all data samples in dataset. Input scope can be given by users. By default, scope is global_scope(). The total number of thread run in training is `thread`. Thread number used in training will be minimum value of threadnum in Dataset and the value of thread in this interface. Debug can be set so that executor will display Run-Time for all operators and the throughputs of current infer task. The document of infer_from_dataset is almost the same as train_from_dataset, except that in distributed training, push gradients will be disabled in infer_from_dataset. infer_from_dataset() can be used for evaluation in multi-threadvery easily. Args: program(Program|CompiledProgram): the program that needs to be run, if not provided, then default_main_program (not compiled) will be used. dataset(paddle.fluid.Dataset): dataset created outside this function, a user should provide a well-defined dataset before calling this function. Please check the document of Dataset if needed. default is None scope(Scope): the scope used to run this program, you can switch it to different scope for each run. default is global_scope thread(int): number of thread a user wants to run in this function. Default is 0, which means using thread num of dataset debug(bool): whether a user wants to run infer_from_dataset, default is False fetch_list(Tensor List): fetch Tensor list, each Tensor will be printed during training, default is None fetch_info(String List): print information for each Tensor, default is None print_period(int): the number of mini-batches for each print, default is 100 fetch_handler(FetchHandler): a user define class for fetch output. Returns: None Examples: .. code-block:: python import paddle paddle.enable_static() place = paddle.CPUPlace() # you can set place = paddle.CUDAPlace(0) to use gpu exe = paddle.static.Executor(place) x = paddle.static.data(name="x", shape=[None, 10, 10], dtype="int64") y = paddle.static.data(name="y", shape=[None, 1], dtype="int64", lod_level=1) dataset = paddle.fluid.DatasetFactory().create_dataset() dataset.set_use_var([x, y]) dataset.set_thread(1) # you should set your own filelist, e.g. filelist = ["dataA.txt"] filelist = [] dataset.set_filelist(filelist) exe.run(paddle.static.default_startup_program()) exe.infer_from_dataset(program=paddle.static.default_main_program(), dataset=dataset) """ return self._run_from_dataset( program, dataset, scope, thread, True, debug, fetch_list, fetch_info, print_period, fetch_handler, ) def start_heter_trainer( self, program=None, scope=None, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, ): scope, trainer = self._prepare_trainer( program=program, dataset=None, scope=scope, thread=1, debug=debug, fetch_list=fetch_list, fetch_info=fetch_info, print_period=print_period, ) trainer._set_infer(False) trainer._gen_trainer_desc() self._dump_debug_info(program=program, trainer=trainer) trainer_instance = self._default_executor.init_for_dataset( program.desc, trainer._desc(), scope, None ) # if fetch_handler is not None: # scope0 = trainer_instance.get_worker_scope(0) # fetch_monitor = FetchHandlerMonitor(scope0, fetch_handler) # fetch_monitor.start() # self._default_executor.run_from_dataset(trainer_instance) # fetch_monitor.stop() # self._default_executor.release_trainer(trainer_instance) # else: self._default_executor.run_from_dataset(trainer_instance) # self._default_executor.release_trainer(trainer_instance) return trainer_instance def train_from_dataset( self, program=None, dataset=None, scope=None, thread=0, debug=False, fetch_list=None, fetch_info=None, print_period=100, fetch_handler=None, ): """ Train from a pre-defined Dataset. Dataset is defined in paddle.fluid.dataset. Given a program, either a program or compiled program, train_from_dataset will consume all data samples in dataset. Input scope can be given by users. By default, scope is global_scope(). The total number of thread run in training is `thread`. Thread number used in training will be minimum value of threadnum in Dataset and the value of thread in this interface. Debug can be set so that executor will display Run-Time for all operators and the throughputs of current training task. Note: train_from_dataset will destroy all resources created within executor for each run. Args: program(Program|CompiledProgram): the program that needs to be run, if not provided, then default_main_program (not compiled) will be used. dataset(paddle.fluid.Dataset): dataset created outside this function, a user should provide a well-defined dataset before calling this function. Please check the document of Dataset if needed. scope(Scope): the scope used to run this program, you can switch it to different scope for each run. default is global_scope thread(int): number of thread a user wants to run in this function. Default is 0, which means using thread num of dataset debug(bool): whether a user wants to run train_from_dataset fetch_list(Tensor List): fetch Tensor list, each variable will be printed during training fetch_info(String List): print information for each Tensor, its length should be equal to fetch_list print_period(int): the number of mini-batches for each print, default is 100 fetch_handler(FetchHandler): a user define class for fetch output. Returns: None Examples: .. code-block:: python import paddle paddle.enable_static() place = paddle.CPUPlace() # you can set place = paddle.CUDAPlace(0) to use gpu exe = paddle.static.Executor(place) x = paddle.static.data(name="x", shape=[None, 10, 10], dtype="int64") y = paddle.static.data(name="y", shape=[None, 1], dtype="int64", lod_level=1) dataset = paddle.fluid.DatasetFactory().create_dataset() dataset.set_use_var([x, y]) dataset.set_thread(1) # you should set your own filelist, e.g. filelist = ["dataA.txt"] filelist = [] dataset.set_filelist(filelist) exe.run(paddle.static.default_startup_program()) exe.train_from_dataset(program=paddle.static.default_main_program(), dataset=dataset) """ return self._run_from_dataset( program, dataset, scope, thread, False, debug, fetch_list, fetch_info, print_period, fetch_handler, )