# 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 contextlib from .. import core from ..framework import convert_np_dtype_to_dtype_, default_main_program, default_startup_program, Program from ..unique_name import generate as unique_name from control_flow import BlockGuard from ..layer_helper import LayerHelper from ..executor import global_scope from layer_function_generator import generate_layer_fn, templatedoc __all__ = [ 'data', 'BlockGuardServ', 'ListenAndServ', 'Send', 'Recv', 'open_recordio_file', 'open_files', 'read_file', 'shuffle', 'batch', 'double_buffer', 'random_data_generator', 'py_reader', 'Preprocessor', 'load' ] def data(name, shape, append_batch_size=True, dtype='float32', lod_level=0, type=core.VarDesc.VarType.LOD_TENSOR, stop_gradient=True): """ **Data Layer** This function takes in the input and based on whether data has to be returned back as a minibatch, it creates the global variable by using the helper functions. The global variables can be accessed by all the following operators in the graph. All the input variables of this function are passed in as local variables to the LayerHelper constructor. Args: name(str): The name/alias of the function shape(list): Tuple declaring the shape. append_batch_size(bool): Whether or not to append the data as a batch. dtype(int|float): The type of data : float32, float_16, int etc type(VarType): The output type. By default it is LOD_TENSOR. lod_level(int): The LoD Level. 0 means the input data is not a sequence. stop_gradient(bool): A boolean that mentions whether gradient should flow. Returns: Variable: The global variable that gives access to the data. Examples: .. code-block:: python data = fluid.layers.data(name='x', shape=[784], dtype='float32') """ helper = LayerHelper('data', **locals()) shape = list(shape) for i in xrange(len(shape)): if shape[i] is None: shape[i] = -1 append_batch_size = False elif shape[i] < 0: append_batch_size = False if append_batch_size: shape = [-1] + shape # append batch size as -1 data_var = helper.create_global_variable( name=name, shape=shape, dtype=dtype, type=type, stop_gradient=stop_gradient, lod_level=lod_level, is_data=True) return data_var class BlockGuardServ(BlockGuard): """ BlockGuardServ class. BlockGuardServ class is used to create an op with a block in a program. """ def __init__(self, server): if not (isinstance(server, ListenAndServ)): raise TypeError("BlockGuardServ takes a ListenAndServ") super(BlockGuardServ, self).__init__(server.helper.main_program) self.server = server def __exit__(self, exc_type, exc_val, exc_tb): if exc_type is not None: return False self.server.complete_op() return super(BlockGuardServ, self).__exit__(exc_type, exc_val, exc_tb) class ListenAndServ(object): """ **ListenAndServ Layer** ListenAndServ is used to create a rpc server bind and listen on specific TCP port, this server will run the sub-block when received variables from clients. Args: endpoint(string): IP:port string which the server will listen on. inputs(list): a list of variables that the server will get from clients. fan_in(int): how many client are expected to report to this server, default: 1. optimizer_mode(bool): whether to run the server as a parameter server, default: True. Examples: .. code-block:: python with fluid.program_guard(main): serv = layers.ListenAndServ( "127.0.0.1:6170", ["X"], optimizer_mode=False) with serv.do(): x = layers.data( shape=[32, 32], dtype='float32', name="X", append_batch_size=False) fluid.initializer.Constant(value=1.0)(x, main.global_block()) layers.scale(x=x, scale=10.0, out=out_var) exe = fluid.Executor(place) exe.run(main) """ def __init__(self, endpoint, inputs, fan_in=1, optimizer_mode=True): self.helper = LayerHelper("listen_and_serv") self.inputs = inputs self.outputs = [] self.endpoint = endpoint self.fan_in = fan_in # FIXME(typhoonzero): add optimizer_mode is stupid, should make it more # general. self.optimizer_mode = optimizer_mode def do(self): return BlockGuardServ(self) def get_params_and_grads(self): main_program = self.helper.main_program current_block = main_program.current_block() parent_block = self.parent_block() # params and grads in the same order. params = list() grads = list() for op in current_block.ops: # FIXME(typhoonzero): op.inputs is None if it's cloned. if self.optimizer_mode: if "Grad" in op.inputs and "Param" in op.inputs: params.append(op.inputs["Param"].name) grads.append(op.inputs["Grad"].name) else: # simple recv mode, recv operators inputs. for iname in op.input_names: for in_var_name in op.input(iname): params.append(parent_block.var(in_var_name)) grads.append(parent_block.var(in_var_name)) return params, grads def parent_block(self): prog = self.helper.main_program parent_idx = prog.current_block().parent_idx assert parent_idx >= 0 parent_block = prog.block(parent_idx) return parent_block def complete_op(self): main_program = self.helper.main_program current_block = main_program.current_block() parent_block = self.parent_block() parent_block.append_op( type='listen_and_serv', inputs={"X": self.inputs}, outputs={}, attrs={ 'endpoint': self.endpoint, 'Fanin': self.fan_in, 'optimize_blocks': [ current_block ], # did not support multiple optimize blocks in layers 'sync_mode': True, # did not support async now in layers 'grad_to_block_id': [""] }) def Send(endpoints, send_vars, sync=True): """ Send variables to the server side, and get vars from server side when server have finished running server side program. Args: endpoints (str): comma seperated IP:PORT pairs in the order of send_vars to send send_vars (list): variables to send to server sync (bool): whether to wait the request finish """ assert (type(send_vars) == list) epmap = endpoints.split(",") endpoints = list(set(epmap)) helper = LayerHelper("Send", **locals()) rpc_op_role_name = core.op_proto_and_checker_maker.kOpRoleAttrName() helper.append_op( type="send", inputs={"X": send_vars}, attrs={ "endpoints": endpoints, "epmap": epmap, rpc_op_role_name: core.op_proto_and_checker_maker.OpRole.RPC }) if sync: helper.append_op(type="send_barrier", attrs={"endpoints": endpoints}) def Recv(endpoints, get_vars, sync=True): """ Receive variables from server side Args: endpoints (str): comma seperated IP:PORT pairs in the order of send_vars to send get_vars (list): vars to get from server after send completes. sync (bool): whether to wait the request finish Returns: list: list of received variables """ assert (type(get_vars) == list) epmap = endpoints.split(",") endpoints = list(set(epmap)) helper = LayerHelper("Recv", **locals()) helper.append_op( type="recv", inputs={"X": get_vars}, outputs={"Out": get_vars}, attrs={"endpoints": endpoints, "epmap": epmap}) if sync: helper.append_op(type="fetch_barrier", attrs={"endpoints": endpoints}) return get_vars def monkey_patch_reader_methods(reader): def __get_reader__(): scope = global_scope() var = scope.find_var(reader.name) return var.get_reader() def reset(): return __get_reader__().reset() reader.reset = reset reader.stop_gradient = True reader.persistable = True return reader def _copy_reader_var_(block, var): new_var = block.create_var(name=var.name, type=core.VarDesc.VarType.READER) new_var.desc.set_shapes(var.desc.shapes()) new_var.desc.set_dtypes(var.desc.dtypes()) new_var.persistable = True return new_var def _copy_reader_create_op_(block, op): input_param_names = op.input_names new_input_map = {} for param_name in input_param_names: new_input_map[param_name] = [] arg_names = op.input(param_name) for arg_name in arg_names: new_input_map[param_name].append(block.var(arg_name)) output_param_names = op.output_names new_output_map = {} for param_name in output_param_names: new_output_map[param_name] = [] arg_names = op.output(param_name) for arg_name in arg_names: new_output_map[param_name].append(block.var(arg_name)) new_op = block.append_op( type=op.type, inputs=new_input_map, outputs=new_output_map, attrs=op.all_attrs()) return new_op @templatedoc(op_type='create_recordio_file_reader') def open_recordio_file(filename, shapes, lod_levels, dtypes, pass_num=1, for_parallel=True): """ ${comment} Args: filename(${filename_type}): ${filename_comment}. shapes(list): List of tuples which declaring data shapes. lod_levels(${lod_levels_type}): ${lod_levels_comment}. dtypes(list): List of strs which declaring data type. pass_num(int): Number of passes to run. for_parallel(Bool): Set it as True if you are going to run subsequent operators in parallel. Returns: ${out_comment}. Examples: >>> import paddle.fluid as fluid >>> reader = fluid.layers.io.open_recordio_file( >>> filename='./data.recordio', >>> shapes=[(3,224,224), (1)], >>> lod_levels=[0, 0], >>> dtypes=['float32', 'int64']) >>> # Via the reader, we can use 'read_file' layer to get data: >>> image, label = fluid.layers.io.read_file(reader) """ dtypes = [convert_np_dtype_to_dtype_(dt) for dt in dtypes] shape_concat = [] ranks = [] for shape in shapes: shape_concat.extend(shape) ranks.append(len(shape)) var_name = unique_name('open_recordio_file') startup_blk = default_startup_program().current_block() startup_var = startup_blk.create_var(name=var_name) startup_blk.append_op( type='create_recordio_file_reader', outputs={'Out': [startup_var]}, attrs={ 'shape_concat': shape_concat, 'lod_levels': lod_levels, 'filename': filename, 'ranks': ranks }) startup_var.desc.set_dtypes(dtypes) startup_var.persistable = True main_prog_var = _copy_reader_var_(default_main_program().current_block(), startup_var) if pass_num > 1: main_prog_var = multi_pass(reader=main_prog_var, pass_num=pass_num) return monkey_patch_reader_methods(main_prog_var) def random_data_generator(low, high, shapes, lod_levels, for_parallel=True): """ Create a uniform random data generator This layer returns a Reader Variable. Instead of opening a file and reading data from it, this Reader Variable generates float uniform random data by itself. It can be used as a dummy reader to test a network without opening a real file. Args: low(float): The lower bound of data's uniform distribution. high(float): The upper bound of data's uniform distribution. shapes(list): List of tuples which declaring data shapes. lod_levels(list): List of ints which declaring data lod_level. for_parallel(Bool): Set it as True if you are going to run subsequent operators in parallel. Returns: Variable: A Reader Variable from which we can get random data. Examples: .. code-block:: python reader = fluid.layers.random_data_generator( low=0.0, high=1.0, shapes=[[3,224,224], [1]], lod_levels=[0, 0]) # Via the reader, we can use 'read_file' layer to get data: image, label = fluid.layers.read_file(reader) """ dtypes = [core.VarDesc.VarType.FP32] * len(shapes) shape_concat = [] ranks = [] for shape in shapes: shape_concat.extend(shape) ranks.append(len(shape)) var_name = unique_name('random_data_generator') startup_blk = default_startup_program().current_block() startup_var = startup_blk.create_var(name=var_name) startup_blk.append_op( type='create_random_data_generator', outputs={'Out': [startup_var]}, attrs={ 'low': low, 'high': high, 'shape_concat': shape_concat, 'lod_levels': lod_levels, 'ranks': ranks }) startup_var.desc.set_dtypes(dtypes) startup_var.persistable = True main_prog_var = _copy_reader_var_(default_main_program().current_block(), startup_var) if for_parallel: main_prog_var = parallel(reader=main_prog_var) return monkey_patch_reader_methods(main_prog_var) def py_reader(capacity, shapes, lod_levels, dtypes): """ Create a reader and blocking queue for data feeding in Python This layer returns a Reader Variable and a BlockingQueue. The BlockingQueue provides `push()` method to push a `LoDTensorArray` object into the queue in Python side. In C++ side, the Reader Variable would invoke `pop()` method of the queue to retrieve the feeding data. The process of feeding data in Python side and fetching data in C++ side can run in parallel. The BlockingQueue should be closed using `close()` method when unused. Args: capacity(int): The maximum capacity of the BlockingQueue. shapes(list): List of tuples which declaring data shapes. lod_levels(list): List of ints which declaring data lod_level. dtypes(list): List of strs which declaring data type. Returns: tuple(Variable, BlockingQueue): A Reader Variable from which we can get feeding data. A BlockingQueue object for data feeding. Examples: .. code-block:: python reader, queue = fluid.layers.py_reader( capacity=10, shapes=[[-1,3,224,224], [-1,1]], lod_levels=[0, 0], dtypes=['float32', 'int64']) # Via the reader, we can use 'read_file' layer to get data: image, label = fluid.layers.read_file(reader) # Via the blocking queue, we can feed data using threads def feed_data(queue, feed_images, feed_labels): for feed_image, feed_label in zip(feed_images, feed_labels): data = core.LoDTensorArray() data.append(feed_image) data.append(feed_label) queue.push(data) thread = threading.Thread(target=feed_data, args=(queue, feed_images, feed_labels)) thread.start() """ dtypes = [convert_np_dtype_to_dtype_(dt) for dt in dtypes] shape_concat = [] ranks = [] for shape in shapes: shape_concat.extend(shape) ranks.append(len(shape)) queue_name = unique_name('lod_tensor_blocking_queue') var = global_scope().var(queue_name) feed_queue = core.init_lod_tensor_blocking_queue(var, capacity, shapes) startup_blk = default_startup_program().current_block() startup_var = startup_blk.create_var(name=unique_name('create_py_reader')) startup_blk.append_op( type='create_py_reader', inputs={'blocking_queue': queue_name}, outputs={'Out': [startup_var]}, attrs={ 'shape_concat': shape_concat, 'lod_levels': lod_levels, 'ranks': ranks }) startup_var.desc.set_dtypes(dtypes) startup_var.persistable = True main_prog_var = _copy_reader_var_(default_main_program().current_block(), startup_var) return monkey_patch_reader_methods(main_prog_var), feed_queue def open_files(filenames, shapes, lod_levels, dtypes, thread_num=1, buffer_size=None, pass_num=1, for_parallel=True): """ Open files This layer takes a list of files to read from and returns a Reader Variable. Via the Reader Variable, we can get data from given files. All files must have name suffixs to indicate their formats, e.g., '*.recordio'. Args: filenames(list): The list of file names. shapes(list): List of tuples which declaring data shapes. lod_levels(list): List of ints which declaring data lod_level. dtypes(list): List of strs which declaring data type. thread_num(int): The maximal concurrent prefetch thread number. buffer_size(int|None): The size of prefetch buffer. If it is setted None, buffer size will be thread_num * 3. Default: None pass_num(int): Number of passes to run. for_parallel(Bool): Set it as True if you are going to run subsequent operators in parallel. Default: True Returns: Variable: A Reader Variable via which we can get file data. Examples: .. code-block:: python reader = fluid.layers.io.open_files(filenames=['./data1.recordio', './data2.recordio'], shapes=[(3,224,224), (1)], lod_levels=[0, 0], dtypes=['float32', 'int64'], thread_num=2, buffer_size=2) # Via the reader, we can use 'read_file' layer to get data: image, label = fluid.layers.io.read_file(reader) """ if buffer_size is None: buffer_size = thread_num * 3 if isinstance(filenames, basestring): filenames = [filenames] dtypes = [convert_np_dtype_to_dtype_(dt) for dt in dtypes] shape_concat = [] ranks = [] for shape in shapes: shape_concat.extend(shape) ranks.append(len(shape)) multi_file_reader_name = unique_name('multi_file_reader') startup_blk = default_startup_program().current_block() startup_reader = startup_blk.create_var(name=multi_file_reader_name) startup_blk.append_op( type='open_files', outputs={'Out': [startup_reader]}, attrs={ 'shape_concat': shape_concat, 'lod_levels': lod_levels, 'ranks': ranks, 'file_names': filenames, 'thread_num': thread_num, 'buffer_size': buffer_size }) startup_reader.desc.set_dtypes(dtypes) startup_reader.persistable = True main_prog_reader = _copy_reader_var_(default_main_program().current_block(), startup_reader) if pass_num > 1: main_prog_reader = multi_pass( reader=main_prog_reader, pass_num=pass_num) return monkey_patch_reader_methods(main_prog_reader) def __create_shared_decorated_reader__(op_type, reader, attrs): var_name = unique_name(op_type) startup_blk = default_startup_program().current_block() startup_var = startup_blk.create_var(name=var_name) startop_op = startup_blk.append_op( type=op_type, inputs={'UnderlyingReader': reader}, outputs={'Out': [startup_var]}, attrs=attrs) startup_var.persistable = True main_prog_block = default_main_program().current_block() main_prog_var = _copy_reader_var_(main_prog_block, startup_var) _copy_reader_create_op_(main_prog_block, startop_op) return monkey_patch_reader_methods(main_prog_var) def __create_unshared_decorated_reader__(op_type, reader, attrs, name=None): new_reader_name = name if name is not None else unique_name(op_type) main_blk = default_main_program().current_block() new_reader = main_blk.create_var(name=new_reader_name) main_blk.append_op( type=op_type, inputs={'UnderlyingReader': reader}, outputs={'Out': [new_reader]}, attrs=attrs) return monkey_patch_reader_methods(new_reader) def shuffle(reader, buffer_size): """ Shuffle the reader. """ return __create_unshared_decorated_reader__( 'create_shuffle_reader', reader, {'buffer_size': int(buffer_size)}) def batch(reader, batch_size): """ This layer is a reader decorator. It takes a reader and adds 'batching' decoration on it. When reading with the result decorated reader, output data will be automatically organized to the form of batches. Args: reader(Variable): The reader to be decorated with 'batching'. batch_size(int): The batch size. Returns: Variable: The reader which has been decorated with 'batching'. Examples: .. code-block:: python raw_reader = fluid.layers.io.open_files(filenames=['./data1.recordio', './data2.recordio'], shapes=[(3,224,224), (1)], lod_levels=[0, 0], dtypes=['float32', 'int64'], thread_num=2, buffer_size=2) batch_reader = fluid.layers.batch(reader=raw_reader, batch_size=5) # If we read data with the raw_reader: # data = fluid.layers.read_file(raw_reader) # We can only get data instance by instance. # # However, if we read data with the batch_reader: # data = fluid.layers.read_file(batch_reader) # Each 5 adjacent instances will be automatically combined together # to become a batch. So what we get('data') is a batch data instead # of an instance. """ return __create_unshared_decorated_reader__( 'create_batch_reader', reader, {'batch_size': int(batch_size)}) def double_buffer(reader, place=None, name=None): """ Wrap a double buffer reader. The data will copy to target place with a double buffer queue. If the target place is None, the place that executor perform on will be used. Args: reader(Variable): the reader variable need to be wrapped. place(Place): the place of target data. Default is the sample place of executor perform. name(str): Variable name. None if the user does not care. Returns: wrapped reader with double buffer. Examples: >>> reader = fluid.layers.open_files(filenames=['somefile'], >>> shapes=[[-1, 784], [-1, 1]], >>> dtypes=['float32', 'int64']) >>> reader = fluid.layers.double_buffer(reader) >>> img, label = fluid.layers.read_file(reader) """ attrs = dict() if place is not None: attrs['place'] = str(place).upper() return __create_unshared_decorated_reader__( 'create_double_buffer_reader', reader, attrs, name=name) def multi_pass(reader, pass_num): return __create_shared_decorated_reader__( 'create_multi_pass_reader', reader, {'pass_num': int(pass_num)}) def read_file(reader): """ Execute the given reader and get data via it. A reader is also a Variable. It can be a raw reader generated by `fluid.layers.open_files()` or a decorated one generated by `fluid.layers.double_buffer()` and so on. Args: reader(Variable): The reader to execute. Returns: Tuple[Variable]: Data read via the given reader. Examples: .. code-block:: python data_file = fluid.layers.open_files( filenames=['mnist.recordio'], shapes=[(-1, 748), (-1, 1)], lod_levels=[0, 0], dtypes=["float32", "int64"]) data_file = fluid.layers.double_buffer( fluid.layers.batch(data_file, batch_size=64)) input, label = fluid.layers.read_file(data_file) """ helper = LayerHelper('read_file') out = [ helper.create_tmp_variable( stop_gradient=True, dtype='float32') for _ in range(len(reader.desc.shapes())) ] helper.append_op( type='read', inputs={'Reader': [reader]}, outputs={'Out': out}) if len(out) == 1: return out[0] else: return out class Preprocessor(object): """ A block for data pre-processing in reader. Args: reader (Variable): A reader variable. name (str, default None): The name of the reader. Examples: .. code-block:: python preprocessor = fluid.layers.io.Preprocessor(reader=reader) with preprocessor.block(): img, lbl = preprocessor.inputs() img_out = img / 2 lbl_out = lbl + 1 preprocessor.outputs(img_out, lbl_out) data_file = fluid.layers.io.double_buffer(preprocessor()) """ BEFORE_SUB_BLOCK = 0 IN_SUB_BLOCK = 1 AFTER_SUB_BLOCK = 2 def __init__(self, reader, name=None): self.underlying_reader = reader new_reader_name = name if name is not None else unique_name( "create_custom_reader") self.main_prog = default_main_program() self.reader = self.main_prog.current_block().create_var( name=new_reader_name) self.sub_block = None self.source_var_names = None self.sink_var_names = None self.status = Preprocessor.BEFORE_SUB_BLOCK def is_completed(self): return self.sub_block and self.source_var_names and self.sink_var_names @contextlib.contextmanager def block(self): self.status = Preprocessor.IN_SUB_BLOCK self.sub_block = self.main_prog.create_block() yield self.main_prog.rollback() self.status = Preprocessor.AFTER_SUB_BLOCK if not self.is_completed(): raise RuntimeError( "The definition of preprocessor is incompleted! " "Please make sure that you have set input and output " "variables by invoking 'inputs' and 'outputs' in " "Preprocessor's sub-block.") def inputs(self): if self.status != Preprocessor.IN_SUB_BLOCK: raise RuntimeError( "Preprocessor.inputs() can only be invoked inside the sub-block." ) source_shapes = self.underlying_reader.desc.shapes() source_dtypes = self.underlying_reader.desc.dtypes() source_lod_levels = self.underlying_reader.desc.lod_levels() self.source_var_names = [ unique_name("preprocessor_source") for _ in xrange(len(source_shapes)) ] source_vars = [] for var_name, shape, dtype, lod_level in zip( self.source_var_names, source_shapes, source_dtypes, source_lod_levels): source_vars.append(self.main_prog.current_block().create_var( name=var_name, shape=shape, dtype=dtype, lod_level=lod_level)) return source_vars def outputs(self, *outs): if self.status != Preprocessor.IN_SUB_BLOCK: raise RuntimeError( "Preprocessor.outputs() can only be invoked inside the sub-block." ) self.sink_var_names = [var.name for var in outs] def __call__(self, *args, **kwargs): if self.status != Preprocessor.AFTER_SUB_BLOCK: raise RuntimeError( "Preprocessor output can only be retrieved after rnn block.") self.main_prog.current_block().append_op( type="create_custom_reader", inputs={'UnderlyingReader': self.underlying_reader}, outputs={'Out': [self.reader]}, attrs={ "sub_block": self.sub_block, "source_var_names": self.source_var_names, "sink_var_names": self.sink_var_names }) return monkey_patch_reader_methods(self.reader) @templatedoc() def load(out, file_path, load_as_fp16=None): """ ${comment} >>> import paddle.fluid as fluid >>> tmp_tensor = fluid.layers.create_tensor(dtype='float32') >>> fluid.layers.load(tmp_tensor, "./tmp_tensor.bin") Args: out(${out_type}): ${out_comment}. file_path(${file_path_type}): ${file_path_comment}. load_as_fp16(${load_as_fp16_type}): ${load_as_fp16_comment}. Returns: None """ helper = LayerHelper("load", **locals()) attrs = {"file_path": file_path} if load_as_fp16 is not None: attrs['load_as_fp16'] = load_as_fp16 helper.append_op(type="load", inputs={}, output={"Out": out}, args=attrs)