test_dynrnn_gradient_check.py 11.3 KB
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import numpy
import random
import collections
import paddle.v2.fluid as fluid
import unittest
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from decorators import *
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class Memory(object):
    def __init__(self, shape, dtype='float32'):
        self.ex = numpy.zeros(shape=shape, dtype=dtype)
        self.cur = None

    def update(self, val):
        assert val.shape == self.ex.shape
        assert val.dtype == self.ex.dtype
        self.cur = val

    def ex(self):
        return self.ex

    def next(self):
        self.ex = self.cur
        self.cur = None

    def __next__(self):
        self.next()

    def reset(self):
        self.ex = numpy.zeros(shape=self.ex.shape, dtype=self.ex.dtype)
        self.cur = None


class Output(object):
    def __init__(self):
        self.outs = []

    def next_sequence(self):
        self.outs.append([])

    def out(self, val):
        self.outs[-1].append(val)

    def last(self):
        return self.outs[-1][-1]


class BaseRNN(object):
    def __init__(self, ins, mems, params, outs, num_seq=5, max_seq_len=15):
        self.num_seq = num_seq
        self.inputs = collections.defaultdict(list)

        for _ in xrange(num_seq):
            seq_len = random.randint(1, max_seq_len - 1)
            for iname in ins:
                ishape = ins[iname].get('shape', None)
                idtype = ins[iname].get('dtype', 'float32')
                lst = []
                for _ in xrange(seq_len):
                    lst.append(numpy.random.random(size=ishape).astype(idtype))
                self.inputs[iname].append(lst)

        self.mems = dict()
        for mname in mems:
            mshape = mems[mname].get('shape', None)
            mdtype = mems[mname].get('dtype', 'float32')
            self.mems[mname] = Memory(shape=mshape, dtype=mdtype)

        self.params = dict()
        for pname in params:
            pshape = params[pname].get('shape', None)
            pdtype = params[pname].get('dtype', 'float32')
            self.params[pname] = numpy.random.random(size=pshape).astype(pdtype)

        self.outputs = dict()

        for oname in outs:
            self.outputs[oname] = Output()

    def step(self, **kwargs):
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        raise NotImplementedError()
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    def exe(self):
        retv = dict()
        for out in self.outputs:
            retv[out] = []

        for seq_id in xrange(self.num_seq):
            for mname in self.mems:
                self.mems[mname].reset()
            for out in self.outputs:
                self.outputs[out].next_sequence()

            iname0 = self.inputs.keys()[0]
            seq_len = len(self.inputs[iname0][seq_id])

            for step_id in xrange(seq_len):
                xargs = dict()

                for iname in self.inputs:
                    xargs[iname] = self.inputs[iname][seq_id][step_id]

                for mname in self.mems:
                    xargs[mname] = self.mems[mname]

                for pname in self.params:
                    xargs[pname] = self.params[pname]

                for out in self.outputs:
                    xargs[out] = self.outputs[out]

                self.step(**xargs)

                for mname in self.mems:
                    next(self.mems[mname])

            for out in self.outputs:
                retv[out].append(self.outputs[out].last())

        for out in retv:
            retv[out] = numpy.array(retv[out])
        return retv

    def to_feed(self, place):
        feed_dict = dict()

        for iname in self.inputs:
            lod = [0]
            np_flatten = []
            for seq_id in xrange(len(self.inputs[iname])):
                seq_len = len(self.inputs[iname][seq_id])
                lod.append(lod[-1] + seq_len)
                np_flatten.extend(self.inputs[iname][seq_id])

            t = fluid.Tensor()
            t.set(numpy.array(np_flatten), place)
            t.set_lod([lod])
            feed_dict[iname] = t

        for pname in self.params:
            feed_dict[pname] = self.params[pname]
        return feed_dict

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    def get_numeric_gradient_of_param(self, param_name, delta=0.001):
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        p = self.params[param_name]
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        if len(p.shape) != 2:
            raise ValueError("Not support get numeric gradient of an parameter,"
                             " which is not matrix")
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        g = numpy.zeros(shape=p.shape, dtype=p.dtype)

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        for i in xrange(p.shape[0]):
            for j in xrange(p.shape[1]):
                o = p[i][j]
                p[i][j] += delta
                pos = self._exe_mean_out_()
                p[i][j] -= 2 * delta
                neg = self._exe_mean_out_()
                p[i][j] = o
                g[i][j] = (pos - neg) / (delta * 2)
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        return g

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    def get_numeric_gradient_of_input(self,
                                      input_name,
                                      delta=0.001,
                                      return_one_tensor=True):
        ipt = self.inputs[input_name]
        grad = []

        for seq in ipt:
            seq_grad = []
            for item in seq:
                item_grad = numpy.zeros(shape=item.shape, dtype=item.dtype)
                if len(item.shape) != 1:
                    raise ValueError("Not support")

                for i in xrange(len(item)):
                    o = item[i]
                    item[i] += delta
                    pos = self._exe_mean_out_()
                    item[i] -= 2 * delta
                    neg = self._exe_mean_out_()
                    item[i] = o
                    item_grad[i] = (pos - neg) / (delta * 2)
                seq_grad.append(item_grad)
            grad.append(seq_grad)

        if not return_one_tensor:
            return grad

        for i in xrange(len(grad)):
            grad[i] = numpy.concatenate(grad[i])
        grad = numpy.concatenate(grad)
        return grad

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    def _exe_mean_out_(self):
        outs = self.exe()
        return numpy.array([o.mean() for o in outs.itervalues()]).mean()


class TestSimpleMul(unittest.TestCase):
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    DATA_NAME = 'X'
    DATA_WIDTH = 32
    PARAM_NAME = 'W'
    HIDDEN_WIDTH = 10
    OUT_NAME = 'Out'

    class SimpleMul(BaseRNN):
        def __init__(self):
            base = TestSimpleMul
            super(base.SimpleMul, self).__init__({
                base.DATA_NAME: {
                    'shape': [base.DATA_WIDTH]
                }
            }, {}, {
                base.PARAM_NAME: {
                    'shape': [base.DATA_WIDTH, base.HIDDEN_WIDTH]
                }
            }, [base.OUT_NAME])

        def step(self, X, W, Out):
            Out.out(numpy.matmul(X, W))

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    # Test many times in local to ensure the random seed cannot breaks CI
    # @many_times(10)
    @prog_scope()
    def test_forward_backward(self):
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        py_rnn = TestSimpleMul.SimpleMul()
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        dat = fluid.layers.data(
            name=self.DATA_NAME, shape=[self.DATA_WIDTH], lod_level=1)
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        dat.stop_gradient = False
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        rnn = fluid.layers.DynamicRNN()
        with rnn.block():
            d = rnn.step_input(dat)
            o = fluid.layers.fc(input=d,
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                                param_attr=self.PARAM_NAME,
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                                bias_attr=False,
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                                size=self.HIDDEN_WIDTH,
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                                act=None)
            rnn.output(o)

        out = rnn()
        out = fluid.layers.sequence_pool(out, pool_type='last')
        loss = fluid.layers.mean(x=out)
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        fluid.backward.append_backward(loss)
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        cpu = fluid.CPUPlace()
        exe = fluid.Executor(cpu)
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        out, w_g, i_g = map(numpy.array,
                            exe.run(feed=py_rnn.to_feed(cpu),
                                    fetch_list=[
                                        out, self.PARAM_NAME + "@GRAD",
                                        self.DATA_NAME + "@GRAD"
                                    ],
                                    return_numpy=False))
        out_by_python = py_rnn.exe()[self.OUT_NAME]
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        self.assertTrue(numpy.allclose(out, out_by_python))
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        w_g_num = py_rnn.get_numeric_gradient_of_param(self.PARAM_NAME)
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        self.assertTrue(numpy.allclose(w_g_num, w_g, rtol=0.05))
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        i_g_num = py_rnn.get_numeric_gradient_of_input(
            input_name=self.DATA_NAME)
        i_g_num = i_g_num.reshape(i_g.shape)
        self.assertTrue(numpy.allclose(i_g_num, i_g, rtol=0.05))
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class TestSimpleMulWithMemory(unittest.TestCase):
    DATA_WIDTH = 32
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    HIDDEN_WIDTH = 20
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    DATA_NAME = 'X'
    PARAM_NAME = 'W'

    class SimpleMulWithMemory(BaseRNN):
        def __init__(self):
            super(TestSimpleMulWithMemory.SimpleMulWithMemory, self).__init__({
                TestSimpleMulWithMemory.DATA_NAME: {
                    'shape': [TestSimpleMulWithMemory.DATA_WIDTH]
                }
            }, {'Mem': {
                'shape': [TestSimpleMulWithMemory.HIDDEN_WIDTH]
            }}, {
                TestSimpleMulWithMemory.PARAM_NAME: {
                    'shape': [
                        TestSimpleMulWithMemory.DATA_WIDTH,
                        TestSimpleMulWithMemory.HIDDEN_WIDTH
                    ]
                }
            }, ['Out'])

        def step(self, X, Mem, W, Out):
            o = numpy.matmul(X, W)
            assert isinstance(Mem, Memory)
            o += Mem.ex
            Mem.update(o)
            assert isinstance(Out, Output)
            Out.out(o)

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    # many_times used locally for debug. Make sure the calculation is stable.
    # @many_times(10)
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    @prog_scope()
    def test_forward_backward(self):
        py_rnn = TestSimpleMulWithMemory.SimpleMulWithMemory()
        data = fluid.layers.data(
            name=self.DATA_NAME, shape=[self.DATA_WIDTH], lod_level=1)
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        data.stop_gradient = False
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        rnn = fluid.layers.DynamicRNN()
        with rnn.block():
            d = rnn.step_input(data)
            mem = rnn.memory(value=0.0, shape=[self.HIDDEN_WIDTH])
            hidden = fluid.layers.fc(input=d,
                                     size=self.HIDDEN_WIDTH,
                                     param_attr=self.PARAM_NAME,
                                     bias_attr=False,
                                     act=None)
            o = fluid.layers.elementwise_add(x=hidden, y=mem)
            rnn.update_memory(mem, o)
            rnn.output(o)

        out = rnn()
        last = fluid.layers.sequence_pool(input=out, pool_type='last')
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        loss = fluid.layers.mean(x=last)
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        fluid.backward.append_backward(loss)
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        cpu = fluid.CPUPlace()
        exe = fluid.Executor(cpu)
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        feed = py_rnn.to_feed(cpu)
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        last_np, w_g, i_g = map(numpy.array,
                                exe.run(feed=feed,
                                        fetch_list=[
                                            last, self.PARAM_NAME + "@GRAD",
                                            self.DATA_NAME + "@GRAD"
                                        ],
                                        return_numpy=False))
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        last_by_py, = py_rnn.exe().values()
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        w_g_num = py_rnn.get_numeric_gradient_of_param(self.PARAM_NAME)
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        self.assertTrue(numpy.allclose(last_np, last_by_py))
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        self.assertTrue(numpy.allclose(w_g_num, w_g, rtol=0.1))
        i_g_num = py_rnn.get_numeric_gradient_of_input(self.DATA_NAME)
        i_g_num = i_g_num.reshape(i_g.shape)

        # Since this RNN has many float add. The number could be not stable.
        # rtol = 0.1
        self.assertTrue(numpy.allclose(i_g_num, i_g, rtol=0.1))
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if __name__ == '__main__':
    unittest.main()