test_understand_sentiment.py 11.6 KB
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#   Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.
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#
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# 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
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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
# 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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from __future__ import print_function
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import unittest
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import paddle.v2.fluid as fluid
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import paddle.v2 as paddle
import contextlib
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import math
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import numpy as np
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import sys
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def convolution_net(data, label, input_dim, class_dim=2, emb_dim=32,
                    hid_dim=32):
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    emb = fluid.layers.embedding(
        input=data, size=[input_dim, emb_dim], is_sparse=True)
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    conv_3 = fluid.nets.sequence_conv_pool(
        input=emb,
        num_filters=hid_dim,
        filter_size=3,
        act="tanh",
        pool_type="sqrt")
    conv_4 = fluid.nets.sequence_conv_pool(
        input=emb,
        num_filters=hid_dim,
        filter_size=4,
        act="tanh",
        pool_type="sqrt")
    prediction = fluid.layers.fc(input=[conv_3, conv_4],
                                 size=class_dim,
                                 act="softmax")
    cost = fluid.layers.cross_entropy(input=prediction, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    accuracy = fluid.layers.accuracy(input=prediction, label=label)
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    return avg_cost, accuracy, prediction
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def dyn_rnn_lstm(data, label, input_dim, class_dim=2, emb_dim=32,
                 lstm_size=128):
    emb = fluid.layers.embedding(
        input=data, size=[input_dim, emb_dim], is_sparse=True)
    sentence = fluid.layers.fc(input=emb, size=lstm_size, act='tanh')

    rnn = fluid.layers.DynamicRNN()
    with rnn.block():
        word = rnn.step_input(sentence)
        prev_hidden = rnn.memory(value=0.0, shape=[lstm_size])
        prev_cell = rnn.memory(value=0.0, shape=[lstm_size])

        def gate_common(ipt, hidden, size):
            gate0 = fluid.layers.fc(input=ipt, size=size, bias_attr=True)
            gate1 = fluid.layers.fc(input=hidden, size=size, bias_attr=False)
            return gate0 + gate1

        forget_gate = fluid.layers.sigmoid(x=gate_common(word, prev_hidden,
                                                         lstm_size))
        input_gate = fluid.layers.sigmoid(x=gate_common(word, prev_hidden,
                                                        lstm_size))
        output_gate = fluid.layers.sigmoid(x=gate_common(word, prev_hidden,
                                                         lstm_size))
        cell_gate = fluid.layers.sigmoid(x=gate_common(word, prev_hidden,
                                                       lstm_size))

        cell = forget_gate * prev_cell + input_gate * cell_gate
        hidden = output_gate * fluid.layers.tanh(x=cell)
        rnn.update_memory(prev_cell, cell)
        rnn.update_memory(prev_hidden, hidden)
        rnn.output(hidden)

    last = fluid.layers.sequence_last_step(rnn())
    prediction = fluid.layers.fc(input=last, size=class_dim, act="softmax")
    cost = fluid.layers.cross_entropy(input=prediction, label=label)
    avg_cost = fluid.layers.mean(x=cost)
    accuracy = fluid.layers.accuracy(input=prediction, label=label)
    return avg_cost, accuracy, prediction


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def stacked_lstm_net(data,
                     label,
                     input_dim,
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                     class_dim=2,
                     emb_dim=128,
                     hid_dim=512,
                     stacked_num=3):
    assert stacked_num % 2 == 1

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    emb = fluid.layers.embedding(
        input=data, size=[input_dim, emb_dim], is_sparse=True)
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    # add bias attr

    # TODO(qijun) linear act
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    fc1 = fluid.layers.fc(input=emb, size=hid_dim)
    lstm1, cell1 = fluid.layers.dynamic_lstm(input=fc1, size=hid_dim)
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    inputs = [fc1, lstm1]

    for i in range(2, stacked_num + 1):
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        fc = fluid.layers.fc(input=inputs, size=hid_dim)
        lstm, cell = fluid.layers.dynamic_lstm(
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            input=fc, size=hid_dim, is_reverse=(i % 2) == 0)
        inputs = [fc, lstm]

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    fc_last = fluid.layers.sequence_pool(input=inputs[0], pool_type='max')
    lstm_last = fluid.layers.sequence_pool(input=inputs[1], pool_type='max')
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    prediction = fluid.layers.fc(input=[fc_last, lstm_last],
                                 size=class_dim,
                                 act='softmax')
    cost = fluid.layers.cross_entropy(input=prediction, label=label)
    avg_cost = fluid.layers.mean(x=cost)
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    accuracy = fluid.layers.accuracy(input=prediction, label=label)
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    return avg_cost, accuracy, prediction
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def create_random_lodtensor(lod, place, low, high):
    data = np.random.random_integers(low, high, [lod[-1], 1]).astype("int64")
    res = fluid.LoDTensor()
    res.set(data, place)
    res.set_lod([lod])
    return res
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def train(word_dict, net_method, use_cuda, parallel=False, save_dirname=None):
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    BATCH_SIZE = 128
    PASS_NUM = 5
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    dict_dim = len(word_dict)
    class_dim = 2

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    data = fluid.layers.data(
        name="words", shape=[1], dtype="int64", lod_level=1)
    label = fluid.layers.data(name="label", shape=[1], dtype="int64")
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    if not parallel:
        cost, acc_out, prediction = net_method(
            data, label, input_dim=dict_dim, class_dim=class_dim)
    else:
        places = fluid.layers.get_places()
        pd = fluid.layers.ParallelDo(places)
        with pd.do():
            cost, acc, _ = net_method(
                pd.read_input(data),
                pd.read_input(label),
                input_dim=dict_dim,
                class_dim=class_dim)
            pd.write_output(cost)
            pd.write_output(acc)

        cost, acc = pd()
        cost = fluid.layers.mean(x=cost)
        acc_out = fluid.layers.mean(x=acc)
        prediction = None
        assert save_dirname is None

    adagrad = fluid.optimizer.Adagrad(learning_rate=0.002)
    adagrad.minimize(cost)
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    train_data = paddle.batch(
        paddle.reader.shuffle(
            paddle.dataset.imdb.train(word_dict), buf_size=1000),
        batch_size=BATCH_SIZE)
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    place = fluid.CUDAPlace(0) if use_cuda else fluid.CPUPlace()
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    exe = fluid.Executor(place)
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    feeder = fluid.DataFeeder(feed_list=[data, label], place=place)
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    exe.run(fluid.default_startup_program())
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    for pass_id in xrange(PASS_NUM):
        for data in train_data():
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            cost_val, acc_val = exe.run(fluid.default_main_program(),
                                        feed=feeder.feed(data),
                                        fetch_list=[cost, acc_out])
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            print("cost=" + str(cost_val) + " acc=" + str(acc_val))
            if cost_val < 0.4 and acc_val > 0.8:
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                if save_dirname is not None:
                    fluid.io.save_inference_model(save_dirname, ["words"],
                                                  prediction, exe)
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                return
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            if math.isnan(float(cost_val)):
                sys.exit("got NaN loss, training failed.")
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    raise AssertionError("Cost is too large for {0}".format(
        net_method.__name__))


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def infer(use_cuda, save_dirname=None):
    if save_dirname is None:
        return

    place = fluid.CUDAPlace(0) if use_cuda else fluid.CPUPlace()
    exe = fluid.Executor(place)

    # Use fluid.io.load_inference_model to obtain the inference program desc,
    # the feed_target_names (the names of variables that will be feeded 
    # data using feed operators), and the fetch_targets (variables that 
    # we want to obtain data from using fetch operators).
    [inference_program, feed_target_names,
     fetch_targets] = fluid.io.load_inference_model(save_dirname, exe)

    lod = [0, 4, 10]
    word_dict = paddle.dataset.imdb.word_dict()
    tensor_words = create_random_lodtensor(
        lod, place, low=0, high=len(word_dict) - 1)

    # Construct feed as a dictionary of {feed_target_name: feed_target_data}
    # and results will contain a list of data corresponding to fetch_targets.
    assert feed_target_names[0] == "words"
    results = exe.run(inference_program,
                      feed={feed_target_names[0]: tensor_words},
                      fetch_list=fetch_targets,
                      return_numpy=False)
    print(results[0].lod())
    np_data = np.array(results[0])
    print("Inference Shape: ", np_data.shape)
    print("Inference results: ", np_data)


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def main(word_dict, net_method, use_cuda, parallel=False, save_dirname=None):
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    if use_cuda and not fluid.core.is_compiled_with_cuda():
        return

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    train(
        word_dict,
        net_method,
        use_cuda,
        parallel=parallel,
        save_dirname=save_dirname)
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    infer(use_cuda, save_dirname)


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class TestUnderstandSentiment(unittest.TestCase):
    @classmethod
    def setUpClass(cls):
        cls.word_dict = paddle.dataset.imdb.word_dict()

    @contextlib.contextmanager
    def new_program_scope(self):
        prog = fluid.Program()
        startup_prog = fluid.Program()
        scope = fluid.core.Scope()
        with fluid.scope_guard(scope):
            with fluid.program_guard(prog, startup_prog):
                yield

    def test_conv_cpu(self):
        with self.new_program_scope():
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            main(
                self.word_dict,
                net_method=convolution_net,
                use_cuda=False,
                save_dirname="understand_sentiment.inference.model")
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    def test_conv_cpu_parallel(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=convolution_net,
                use_cuda=False,
                parallel=True)

    @unittest.skip(reason="make CI faster")
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    def test_stacked_lstm_cpu(self):
        with self.new_program_scope():
            main(self.word_dict, net_method=stacked_lstm_net, use_cuda=False)

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    def test_stacked_lstm_cpu_parallel(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=stacked_lstm_net,
                use_cuda=False,
                parallel=True)

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    def test_conv_gpu(self):
        with self.new_program_scope():
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            main(
                self.word_dict,
                net_method=convolution_net,
                use_cuda=True,
                save_dirname="understand_sentiment.inference.model")

    def test_conv_gpu_parallel(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=convolution_net,
                use_cuda=True,
                parallel=True)
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    @unittest.skip(reason="make CI faster")
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    def test_stacked_lstm_gpu(self):
        with self.new_program_scope():
            main(self.word_dict, net_method=stacked_lstm_net, use_cuda=True)
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    def test_stacked_lstm_gpu_parallel(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=stacked_lstm_net,
                use_cuda=True,
                parallel=True)

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    @unittest.skip(reason='make CI faster')
    def test_dynrnn_lstm_gpu(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=dyn_rnn_lstm,
                use_cuda=True,
                parallel=False)

    def test_dynrnn_lstm_gpu_parallel(self):
        with self.new_program_scope():
            main(
                self.word_dict,
                net_method=dyn_rnn_lstm,
                use_cuda=True,
                parallel=True)

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if __name__ == '__main__':
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    unittest.main()