pruner.py 7.5 KB
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# Copyright (c) 2019  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.

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import logging
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import sys
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import numpy as np
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from functools import reduce
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import paddle.fluid as fluid
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import copy
from ..core import VarWrapper, OpWrapper, GraphWrapper
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from .group_param import collect_convs
from .criterion import CRITERION
from .idx_selector import IDX_SELECTOR
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from ..common import get_logger
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__all__ = ["Pruner"]
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_logger = get_logger(__name__, level=logging.INFO)

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class Pruner():
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    """The pruner used to prune channels of convolution.

    Args:
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        criterion(str|function): the criterion used to sort channels for pruning.
        idx_selector(str|function): 
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    """

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    def __init__(self,
                 criterion="l1_norm",
                 idx_selector="default_idx_selector"):
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        self.criterion = criterion
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        self.channel_sortor = channel_sortor
        if isinstance(criterion, str):
            self.criterion = CRITERION.get(criterion)
        else:
            self.criterion = criterion
        if isinstance(idx_selector, str):
            self.idx_selector = IDX_SELECTOR.get(idx_selector)
        else:
            self.idx_selector = idx_selector

        self.pruned_weights = False
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    def prune(self,
              program,
              scope,
              params,
              ratios,
              place=None,
              lazy=False,
              only_graph=False,
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              param_backup=False,
              param_shape_backup=False):
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        """Pruning the given parameters.

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        Args:
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            program(fluid.Program): The program to be pruned.
            scope(fluid.Scope): The scope storing paramaters to be pruned.
            params(list<str>): A list of parameter names to be pruned.
            ratios(list<float>): A list of ratios to be used to pruning parameters.
            place(fluid.Place): The device place of filter parameters. Defalut: None.
            lazy(bool): True means setting the pruned elements to zero.
                        False means cutting down the pruned elements. Default: False.
            only_graph(bool): True means only modifying the graph.
                              False means modifying graph and variables in scope. Default: False.
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            param_backup(bool): Whether to return a dict to backup the values of parameters. Default: False.
            param_shape_backup(bool): Whether to return a dict to backup the shapes of parameters. Default: False.
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        Returns:
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            tuple: ``(pruned_program, param_backup, param_shape_backup)``. ``pruned_program`` is the pruned program. ``param_backup`` is a dict to backup the values of parameters. ``param_shape_backup`` is a dict to backup the shapes of parameters.
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        """

        self.pruned_list = []
        graph = GraphWrapper(program.clone())
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        param_backup = {} if param_backup else None
        param_shape_backup = {} if param_shape_backup else None
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        visited = {}
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        pruned_params = []
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        for param, ratio in zip(params, ratios):
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            group = collect_convs([param], graph)[0]  # [(name, axis)]
            if only_graph and self.idx_selector.__name__ == "default_idx_selector":

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                param_v = graph.var(param)
                pruned_num = int(round(param_v.shape()[0] * ratio))
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                pruned_idx = [0] * pruned_num
                for name, aixs in group:
                    pruned_params.append((name, axis, pruned_idx))

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            else:
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                assert ((not self.pruned_weights),
                        "The weights have been pruned once.")
                group_values = []
                for name, axis in group:
                    values = np.array(scope.find_var(name).get_tensor())
                    group_values.append((name, values, axis))

                scores = self.criterion(group_with_values,
                                        graph)  # [(name, axis, score)]

                pruned_params = self.idx_selector(scores)
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        merge_pruned_params = {}
        for param, pruned_axis, pruned_idx in pruned_params:
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            if param not in merge_pruned_params:
                merge_pruned_params[param] = {}
            if pruned_axis not in merge_pruned_params[param]:
                merge_pruned_params[param][pruned_axis] = []
            merge_pruned_params[param][pruned_axis].append(pruned_idx)
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        for param_name in merge_pruned_params:
            for pruned_axis in merge_pruned_params[param_name]:
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                pruned_idx = np.concatenate(merge_pruned_params[param_name][
                    pruned_axis])
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                param = graph.var(param_name)
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                if not lazy:
                    _logger.debug("{}\t{}\t{}".format(param.name(
                    ), pruned_axis, len(pruned_idx)))
                    if param_shape_backup is not None:
                        origin_shape = copy.deepcopy(param.shape())
                        param_shape_backup[param.name()] = origin_shape
                    new_shape = list(param.shape())
                    new_shape[pruned_axis] -= len(pruned_idx)
                    param.set_shape(new_shape)
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                if not only_graph:
                    param_t = scope.find_var(param.name()).get_tensor()
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                    if param_backup is not None and (
                            param.name() not in param_backup):
                        param_backup[param.name()] = copy.deepcopy(
                            np.array(param_t))
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                    try:
                        pruned_param = self._prune_tensor(
                            np.array(param_t),
                            pruned_idx,
                            pruned_axis=pruned_axis,
                            lazy=lazy)
                    except IndexError as e:
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                        _logger.error("Pruning {}, but get [{}]".format(
                            param.name(), e))

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                    param_t.set(pruned_param, place)
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        graph.update_groups_of_conv()
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        graph.infer_shape()
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        self.pruned_weights = (not only_graph)
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        return graph.program, param_backup, param_shape_backup
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    def _prune_tensor(self, tensor, pruned_idx, pruned_axis, lazy=False):
        """
        Pruning a array by indexes on given axis.
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        Args:
            tensor(numpy.array): The target array to be pruned.
            pruned_idx(list<int>): The indexes to be pruned.
            pruned_axis(int): The axis of given array to be pruned on. 
            lazy(bool): True means setting the pruned elements to zero.
                        False means remove the pruned elements from memory.
                        default: False.
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        Returns:
            numpy.array: The pruned array.
        """
        mask = np.zeros(tensor.shape[pruned_axis], dtype=bool)
        mask[pruned_idx] = True

        def func(data):
            return data[~mask]

        def lazy_func(data):
            data[mask] = 0
            return data

        if lazy:
            return np.apply_along_axis(lazy_func, pruned_axis, tensor)
        else:
            return np.apply_along_axis(func, pruned_axis, tensor)