runner.py 16.9 KB
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# Copyright (c) 2020 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.

from __future__ import print_function

import os
import time
import warnings
import datetime

import paddle.fluid as fluid
from paddlerec.core.utils import envs

__all__ = [
    "RunnerBase", "SingleRunner", "PSRunner", "CollectiveRunner", "PslibRunner"
]


class RunnerBase(object):
    """R
    """

    def __init__(self, context):
        pass

    def exuctor(self, context):
        pass

    def _run(self, context, model_dict):
        reader_name = model_dict["dataset_name"]
        name = "dataset." + reader_name + "."
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        if envs.get_global_env(name + "type") == "DataLoader":
            self._executor_dataloader_train(model_dict, context)
        else:
            self._executor_dataset_train(model_dict, context)

    def _executor_dataset_train(self, model_dict, context):
        reader_name = model_dict["dataset_name"]
        model_name = model_dict["name"]
        model_class = context["model"][model_dict["name"]]["model"]
        fetch_vars = []
        fetch_alias = []
        fetch_period = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".print_interval", 20))
        scope = context["model"][model_name]["scope"]
        program = context["model"][model_name]["main_program"]
        reader = context["dataset"][reader_name]

        with fluid.scope_guard(scope):
            if context["is_infer"]:
                metrics = model_class.get_infer_results()
                if metrics:
                    fetch_vars = metrics.values()
                    fetch_alias = metrics.keys()
                context["exe"].infer_from_dataset(
                    program=program,
                    dataset=reader,
                    fetch_list=fetch_vars,
                    fetch_info=fetch_alias,
                    print_period=fetch_period)
            else:
                metrics = model_class.get_metrics()
                if metrics:
                    fetch_vars = metrics.values()
                    fetch_alias = metrics.keys()
                with fluid.scope_guard(scope):
                    context["exe"].train_from_dataset(
                        program=program,
                        dataset=reader,
                        fetch_list=fetch_vars,
                        fetch_info=fetch_alias,
                        print_period=fetch_period)

    def _executor_dataloader_train(self, model_dict, context):
        model_name = model_dict["name"]
        model_class = context["model"][model_dict["name"]]["model"]

        if context["is_infer"]:
            program = context["model"][model_name]["main_program"]
        elif context["is_fleet"]:
            if context["fleet_mode"].upper() == "PS":
                program = self._get_ps_program(model_dict, context)
            elif context["fleet_mode"].upper() == "COLLECTIVE":
                program = context["model"][model_name]["main_program"]
        elif not context["is_fleet"]:
            if context["device"].upper() == "CPU":
                program = self._get_single_cpu_program(model_dict, context)
            elif context["device"].upper() == "GPU":
                program = self._get_single_gpu_program(model_dict, context)

        reader_name = model_dict["dataset_name"]
        fetch_vars = []
        fetch_alias = []
        fetch_period = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".print_interval", 20))
        if context["is_infer"]:
            metrics = model_class.get_infer_results()
        else:
            metrics = model_class.get_metrics()

        if metrics:
            fetch_vars = metrics.values()
            fetch_alias = metrics.keys()
        metrics_varnames = []
        metrics_format = []
        metrics_format.append("{}: {{}}".format("batch"))
        for name, var in metrics.items():
            metrics_varnames.append(var.name)
            metrics_format.append("{}: {{}}".format(name))
        metrics_format = ", ".join(metrics_format)

        reader = context["model"][model_dict["name"]]["model"]._data_loader
        reader.start()
        batch_id = 0
        scope = context["model"][model_name]["scope"]
        with fluid.scope_guard(scope):
            try:
                while True:
                    metrics_rets = context["exe"].run(
                        program=program, fetch_list=metrics_varnames)
                    metrics = [batch_id]
                    metrics.extend(metrics_rets)

                    if batch_id % fetch_period == 0 and batch_id != 0:
                        print(metrics_format.format(*metrics))
                    batch_id += 1
            except fluid.core.EOFException:
                reader.reset()

    def _get_strategy(self, model_dict, context):
        _build_strategy = fluid.BuildStrategy()
        _exe_strategy = fluid.ExecutionStrategy()

        # 0: kCoeffNumDevice; 1: One; 2: Customized
        _gradient_scale_strategy = model_dict.get("gradient_scale_strategy", 0)
        if _gradient_scale_strategy == 0:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.CoeffNumDevice
        elif _gradient_scale_strategy == 1:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.One
        elif _gradient_scale_strategy == 2:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.Customized
        else:
            raise ValueError(
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                "Unsupported config. gradient_scale_strategy must be one of [0, 1, 2]."
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            )
        _build_strategy.gradient_scale_strategy = gradient_scale_strategy

        if "thread_num" in model_dict and model_dict["thread_num"] > 1:
            _build_strategy.reduce_strategy = fluid.BuildStrategy.ReduceStrategy.Reduce
            _exe_strategy.num_threads = model_dict["thread_num"]
            os.environ['CPU_NUM'] = str(_exe_strategy.num_threads)

        return _exe_strategy, _build_strategy

    def _get_single_gpu_program(self, model_dict, context):
        model_name = model_dict["name"]
        return context["model"][model_name]["main_program"].clone()

    def _get_single_cpu_program(self, model_dict, context):
        model_name = model_dict["name"]
        model_class = context["model"][model_dict["name"]]["model"]
        program = context["model"][model_name]["main_program"].clone()
        _exe_strategy, _build_strategy = self._get_strategy(model_dict,
                                                            context)
        program = fluid.compiler.CompiledProgram(program).with_data_parallel(
            loss_name=model_class.get_avg_cost().name,
            build_strategy=_build_strategy,
            exec_strategy=_exe_strategy)
        return program

    def _get_ps_program(self, model_dict, context):
        model_name = model_dict["name"]
        model_class = context["model"][model_dict["name"]]["model"]
        program = context["model"][model_name]["main_program"].clone()

        _build_strategy = context["strategy"].get_build_strategy()
        _exe_strategy = context["strategy"].get_execute_strategy()

        if "thread_num" in model_dict and model_dict["thread_num"] > 1:
            _build_strategy.reduce_strategy = fluid.BuildStrategy.ReduceStrategy.Reduce
            _exe_strategy.num_threads = model_dict["thread_num"]
            os.environ['CPU_NUM'] = str(_exe_strategy.num_threads)

        _gradient_scale_strategy = model_dict.get("gradient_scale_strategy", 0)
        if _gradient_scale_strategy == 0:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.CoeffNumDevice
        elif _gradient_scale_strategy == 1:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.One
        elif _gradient_scale_strategy == 2:
            gradient_scale_strategy = fluid.BuildStrategy.GradientScaleStrategy.Customized
        else:
            raise ValueError(
                "Unsurpported config. gradient_scale_strategy must be one of [0, 1, 2]."
            )
        _build_strategy.gradient_scale_strategy = gradient_scale_strategy

        program = fluid.compiler.CompiledProgram(program).with_data_parallel(
            loss_name=model_class.get_avg_cost().name,
            build_strategy=_build_strategy,
            exec_strategy=_exe_strategy)
        return program

    def save(self, epoch_id, context, is_fleet=False):
        def need_save(epoch_id, epoch_interval, is_last=False):
            if is_last:
                return True
            if epoch_id == -1:
                return False

            return epoch_id % epoch_interval == 0

        def save_inference_model():
            name = "runner." + context["runner_name"] + "."
            save_interval = int(
                envs.get_global_env(name + "save_inference_interval", -1))
            if not need_save(epoch_id, save_interval, False):
                return
            feed_varnames = envs.get_global_env(
                name + "save_inference_feed_varnames", [])
            fetch_varnames = envs.get_global_env(
                name + "save_inference_fetch_varnames", [])
            if feed_varnames is None or fetch_varnames is None or feed_varnames == "" or fetch_varnames == "" or \
               len(feed_varnames) == 0 or len(fetch_varnames) == 0:
                return
            fetch_vars = [
                fluid.default_main_program().global_block().vars[varname]
                for varname in fetch_varnames
            ]
            dirname = envs.get_global_env(name + "save_inference_path", None)

            assert dirname is not None
            dirname = os.path.join(dirname, str(epoch_id))

            if is_fleet:
                context["fleet"].save_inference_model(
                    context["exe"], dirname, feed_varnames, fetch_vars)
            else:
                fluid.io.save_inference_model(dirname, feed_varnames,
                                              fetch_vars, context["exe"])

        def save_persistables():
            name = "runner." + context["runner_name"] + "."
            save_interval = int(
                envs.get_global_env(name + "save_checkpoint_interval", -1))
            if not need_save(epoch_id, save_interval, False):
                return
            dirname = envs.get_global_env(name + "save_checkpoint_path", None)
            if dirname is None or dirname == "":
                return
            dirname = os.path.join(dirname, str(epoch_id))
            if is_fleet:
                context["fleet"].save_persistables(context["exe"], dirname)
            else:
                fluid.io.save_persistables(context["exe"], dirname)

        save_persistables()
        save_inference_model()


class SingleRunner(RunnerBase):
    """R
    """

    def __init__(self, context):
        print("Running SingleRunner.")
        pass

    def run(self, context):
        epochs = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".epochs"))
        for epoch in range(epochs):
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            for model_dict in context["phases"]:
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                begin_time = time.time()
                self._run(context, model_dict)
                end_time = time.time()
                seconds = end_time - begin_time
                print("epoch {} done, use time: {}".format(epoch, seconds))
                with fluid.scope_guard(context["model"][model_dict["name"]][
                        "scope"]):
                    train_prog = context["model"][model_dict["name"]][
                        "default_main_program"]
                    startup_prog = context["model"][model_dict["name"]][
                        "startup_program"]
                    with fluid.program_guard(train_prog, startup_prog):
                        self.save(epoch, context)
        context["status"] = "terminal_pass"


class PSRunner(RunnerBase):
    def __init__(self, context):
        print("Running PSRunner.")
        pass

    def run(self, context):
        epochs = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".epochs"))
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        model_dict = context["env"]["phase"][0]
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        for epoch in range(epochs):
            begin_time = time.time()
            self._run(context, model_dict)
            end_time = time.time()
            seconds = end_time - begin_time
            print("epoch {} done, use time: {}".format(epoch, seconds))
            with fluid.scope_guard(context["model"][model_dict["name"]][
                    "scope"]):
                train_prog = context["model"][model_dict["name"]][
                    "main_program"]
                startup_prog = context["model"][model_dict["name"]][
                    "startup_program"]
                with fluid.program_guard(train_prog, startup_prog):
                    self.save(epoch, context, True)
        context["status"] = "terminal_pass"


class CollectiveRunner(RunnerBase):
    def __init__(self, context):
        print("Running CollectiveRunner.")
        pass

    def run(self, context):
        epochs = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".epochs"))
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        model_dict = context["env"]["phase"][0]
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        for epoch in range(epochs):
            begin_time = time.time()
            self._run(context, model_dict)
            end_time = time.time()
            seconds = end_time - begin_time
            print("epoch {} done, use time: {}".format(epoch, seconds))
            with fluid.scope_guard(context["model"][model_dict["name"]][
                    "scope"]):
                train_prog = context["model"][model_dict["name"]][
                    "default_main_program"]
                startup_prog = context["model"][model_dict["name"]][
                    "startup_program"]
                with fluid.program_guard(train_prog, startup_prog):
                    self.save(epoch, context, True)
        context["status"] = "terminal_pass"


class PslibRunner(RunnerBase):
    def __init__(self, context):
        print("Running PSRunner.")
        pass

    def run(self, context):
        context["fleet"].init_worker()
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        model_dict = context["env"]["phase"][0]
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        epochs = int(
            envs.get_global_env("runner." + context["runner_name"] +
                                ".epochs"))
        for epoch in range(epochs):
            begin_time = time.time()
            self._run(context, model_dict)
            end_time = time.time()
            seconds = end_time - begin_time
            print("epoch {} done, use time: {}".format(epoch, seconds))
        """
        # online Training Can do more, As shown below:

        begin_day = datetime.datetime.strptime("begin_day_d", '%Y%m%d')
        days = int(
            envs.get_global_env("runner." + context["runner_name"] + ".days"))
        for day in range(days):
            for hour in range(24):
                day = begin_day + datetime.timedelta(days=day, hours=hour)
                day_s = day.strftime('%Y%m%d/%H')

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                for dataset in envs.get_global_env("dataset"):
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                    if dataset["type"] != "DataLoader":
                        name = dataset["name"]
                        train_data_path = envs.get_global_env(name +
                                                              "data_path")
                        train_data_path = os.path.join(train_data_path, day_s)

                        file_list = [
                            os.path.join(train_data_path, x)
                            for x in os.listdir(train_data_path)
                        ]
                        context["dataset"][name].set_filelist(file_list)

                for epoch in range(epochs):
                    begin_time = time.time()
                    self._run(context, model_dict)
                    end_time = time.time()
                    seconds = end_time - begin_time
                    print("epoch {} done, use time: {}".format(epoch, seconds))
                    with fluid.scope_guard(context["model"][model_dict["name"]]
                                           ["scope"]):
                        train_prog = context["model"][model_dict["name"]][
                            "default_main_program"]
                        startup_prog = context["model"][model_dict["name"]][
                            "startup_program"]
                        with fluid.program_guard(train_prog, startup_prog):
                            self.save(epoch, context, True)

        """
        context["status"] = "terminal_pass"