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241 lines
8.3 KiB
241 lines
8.3 KiB
# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import collections
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import py_paddle.swig_paddle
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import numpy
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__all__ = ['DataConverter']
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class IDataConverter(object):
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def __init__(self, input_type, pos):
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"""
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:param input_type: data type
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:type input_type: dp2.InputType
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:param pos: which input, start from 0
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:type pos: int
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"""
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self.input_type = input_type
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assert isinstance(self.input_type, dp2.InputType)
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self.pos = pos
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def convert(self, data, argument):
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"""
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Conv data to paddle format.
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:param data: input data
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:param argument: paddle format
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"""
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pass
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class DenseConvert(IDataConverter):
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def __init__(self, input_type, pos):
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IDataConverter.__init__(self, input_type, pos)
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def convert(self, data, argument):
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"""
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:param data: input data
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:type data: list | numpy array
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:param argument: the type which paddle is acceptable
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:type argument: swig_paddle.Arguments
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"""
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assert isinstance(argument, swig_paddle.Arguments)
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if data.dtype != numpy.float32:
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data = data.astype(numpy.float32)
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m = swig_paddle.Matrix.createDenseFromNumpy(data, True, False)
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argument.setSlotValue(self.pos, m)
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class SparseBinaryConvert(IDataConverter):
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def __init__(self, input_type, pos):
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IDataConverter.__init__(self, input_type, pos)
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self.__rows__ = [0]
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self.__cols__ = []
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self.__height__ = 0
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self.__nnz__ = 0
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self.__value__ = []
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def fill_csr(self, data):
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self.__height__ = len(data)
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for x in data:
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self.__rows__.append(self.__rows__[-1] + len(x))
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self__cols__ = data.flatten()
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def convert(self, data, argument):
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assert isinstance(argument, swig_paddle.Arguments)
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fill_csr(data)
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m = swig_paddle.Matrix.createSparse(self.__height__,
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self.input_type.dim,
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len(self.__cols__),
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len(self.__value__) == 0)
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assert isinstance(m, swig_paddle.Matrix)
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m.sparseCopyFrom(self.__rows__, self.__cols__, self.__value__)
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argument.setSlotValue(self.pos, m)
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class SparseFloatConvert(SparseBinaryConvert):
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def __init__(self, input_type, pos):
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SparseBinaryConvert.__init__(self, input_type, pos)
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def fill_csr(self, data):
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self.__height__ = len(data)
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for x in data:
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self.__rows__.append(self.__rows__[-1] + len(x))
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self.__cols__.extend((x[0] for x in data))
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self.__value__.extend((x[1] for x in data))
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class IndexConvert(IDataConverter):
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def __init__(self, input_type, pos):
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IDataConverter.__init__(self, input_type, pos)
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self.__ids__ = []
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def convert(self, data, argument):
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assert isinstance(argument, swig_paddle.Arguments)
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self.__ids__ = data.flatten()
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ids = swig_paddle.IVector.create(self.__ids__)
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argument.setSlotIds(self.pos, ids)
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class SequenceConvert(IDataConverter):
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def __init__(self, input_type, pos, inner_convert, setter):
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"""
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:param input_type: the type of input data
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:type input_type: dp2.InputType
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:param pos: the position of this input
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:type pos: int
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:param inner_convert: DataConvert type
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:type inner_convert: DenseConvert|SparseBinaryConvert|
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SparseFloatConvert|IndexConvert
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:param setter:
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:type setter:
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"""
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IDataConverter.__init__(self, input_type, pos)
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self.__seq__ = [0]
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self.__inner_convert__ = inner_convert
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self.__setter__ = setter
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def fill_seq(self, data):
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for each in data:
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self.__seq__.append(self.__seq__[-1] + self.get_size(each))
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def convert(self, data, argument):
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fill_seq(data)
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seq = swig_paddle.IVector.create(self.__seq__, False)
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self.__setter__(argument, self.pos, seq)
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dat = []
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for each in data:
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dat.append(each)
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self.__inner_scanner__.convert(dat, argument)
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def get_size(self, data):
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if isinstance(self.__inner_scanner__, SequenceConvert):
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return sum(self.__inner_scanner__.get_size(item) for item in dat)
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else:
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return len(data)
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class DataConverter(object):
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def __init__(self, input_mapper):
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"""
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Usege:
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.. code-block:: python
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inputs = [('image', dense_vector), ('label', integer_value)]
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cvt = DataConverter(inputs)
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arg = cvt.convert(minibatch_data, {'image':0, 'label':1})
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:param input_mapper: list of (input_name, input_type)
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:type input_mapper: list
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"""
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assert isinstance(self.input_types, collections.Sequence)
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self.input_names = []
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self.input_types = []
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for each in self.input_types:
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self.input_names.append(each[0])
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self.input_types.append(each[1])
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assert isinstance(each[1], dp2.InputType)
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def convert(self, data, input_dict=None, argument=None):
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"""
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Convert minibatch data to Paddle's argument. The data is numpy array
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or list.
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:param data: input samples, for example, [column0, column1, ...] or
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(column0, column1, ...) each column is one minibatch
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feature. Note, if only one column featrue, data also
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shuld be a list or tupe, [column0] or (column0).
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:type data: list|tuple
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:param input_dict: a dictionary to specify the correspondence
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of data_layer and input data. If None,
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the feature order in argument and data is the same.
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:type input_dict: dict, like {string:integer, string, integer, ...}|None
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:param argument: converted data will be saved in this argument. If None,
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it will create a swig_paddle.Arguments firstly.
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:param type: swig_paddle.Arguments|None
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"""
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if argument is None:
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argument = swig_paddle.Arguments.createArguments(0)
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assert isinstance(argument, swig_paddle.Arguments)
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argument.resize(len(self.input_types))
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converts = [
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DataConverter.create_scanner(i, each_type)
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for i, each_type in enumerate(self.input_types)
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]
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for i, cvt in enumerate(converts):
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if input_dict is not None:
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dat = data[input_dict[self.input_names[i]]]
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else:
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dat = data[i]
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cvt.convert(dat, argument)
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return argument
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def __call__(self, dat, argument=None):
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return self.convert(dat, argument)
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@staticmethod
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def create_scanner(pos, each):
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assert isinstance(each, dp2.InputType)
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retv = None
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if each.type == dp2.DataType.Dense:
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retv = DenseConvert(each, pos)
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elif each.type == dp2.DataType.Index:
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retv = IndexConvert(each, pos)
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elif each.type == dp2.DataType.SparseNonValue:
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retv = SparseBinaryConvert(each, pos)
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elif each.type == dp2.DataType.SparseValue:
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retv = SparseFloatConvert(each, pos)
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assert retv is not None
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if each.seq_type == dp2.SequenceType.SUB_SEQUENCE:
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retv = SequenceConvert(
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each, pos, retv,
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lambda arg, pos, seq: arg.setSlotSubSequenceStartPositions(pos, seq)
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)
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if each.seq_type in [
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dp2.SequenceType.SUB_SEQUENCE, dp2.SequenceType.SEQUENCE
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]:
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retv = SequenceConvert(
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each, pos, retv,
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lambda arg, pos, seq: arg.setSlotSequenceStartPositions(pos, seq)
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)
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return retv
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