# Copyright (c) 2018 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. import unittest import numpy as np import paddle import paddle.fluid as fluid import paddle.fluid.core as core import paddle.fluid.layers as layers from paddle.fluid import ParamAttr from paddle.fluid.backward import append_backward from paddle.fluid.executor import Executor from paddle.fluid.framework import Program, grad_var_name np.random.seed(123) class PyRNNBase: def __init__(self, input_shape, output_shape): self.x = np.ones(shape=input_shape).astype("float32") self.y = np.zeros(shape=output_shape).astype("float32") def step(self, step_id, x): raise NotImplementedError def forward(self): for step_id in range(self.x.shape[0]): self.step(step_id, self.x[step_id]) return np.array([np.mean(self.y)]) def segment_inputs(self): return [self.x[i] for i in range(self.x.shape[0])] class PySimpleRNN1(PyRNNBase): def __init__(self, input_shape, output_shape): super().__init__(input_shape, output_shape) seq_len, batch_size, input_dim = input_shape self.h_boot = np.random.normal(size=(batch_size, input_dim)).astype( "float32" ) self.scale = 1.0 / 2.0 men_dim = (seq_len, batch_size, input_dim) self.mems = np.zeros(shape=men_dim).astype("float32") def step(self, step_id, x): if step_id == 0: pre_mem = self.h_boot else: pre_mem = self.mems[step_id - 1] self.mems[step_id] = (pre_mem + x) * self.scale self.y[step_id] = self.mems[step_id] class PySimpleRNN2(PyRNNBase): def __init__(self, input_shape, output_shape): super().__init__(input_shape, output_shape) seq_len, batch_size, input_dim = input_shape self.W = np.ones(shape=(input_dim, input_dim)).astype("float32") self.U = np.zeros(shape=(input_dim, input_dim)).astype("float32") self.h_boot = np.ones(shape=(batch_size, input_dim)).astype("float32") men_dim = (seq_len, batch_size, input_dim) self.mems = np.zeros(shape=men_dim).astype("float32") def step(self, step_id, x): if step_id > 0: pre_mem = self.mems[step_id - 1] else: pre_mem = self.h_boot xW = np.matmul(x, self.W).astype("float32") hU = np.matmul(pre_mem, self.U).astype("float32") def py_sigmoid(x): return 1.0 / (1.0 + np.exp(-x)) self.mems[step_id] = py_sigmoid(xW + hU) self.y[step_id] = self.mems[step_id] def create_tensor(np_data, place): tensor = core.LoDTensor() tensor.set(np_data, place) return tensor class RecurrentOpTest1(unittest.TestCase): ''' Test RNNOp equation: h_t = ( x_t + h_{t-1} ) / scale vars: - x memories: - h outputs: - h ''' input_dim = 2 batch_size = 1 sent_len = 1 def setup_program(self): self.main_program = Program() self.startup_program = Program() self.place = core.CPUPlace() def setUp(self): self.setup_program() self.feed_data_field = {"x", "h_boot"} self.grad_data_field = self.feed_data_field self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = PySimpleRNN1(self.input_shape, self.output_shape) with fluid.program_guard(self.main_program, self.startup_program): self.output = paddle.mean(self.create_rnn_op()) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', name='x', append_batch_size=False, ) x.stop_gradient = False h_boot = layers.data( shape=[self.input_dim], dtype='float32', name='h_boot' ) h_boot.stop_gradient = False rnn = layers.StaticRNN() with rnn.step(): h_pre = rnn.memory(init=h_boot) x_t = rnn.step_input(x) h = paddle.scale( x=paddle.add(x=h_pre, y=x_t), scale=self.py_rnn.scale, ) rnn.update_memory(h_pre, h) rnn.output(h) return rnn() def forward(self): self.feed_map = { x: create_tensor(getattr(self.py_rnn, x), self.place) for x in self.feed_data_field } exe = Executor(self.place) out = exe.run( self.main_program, feed=self.feed_map, fetch_list=[self.output] ) return out[0] def backward(self): self.feed_map = { x: create_tensor(getattr(self.py_rnn, x), self.place) for x in self.feed_data_field } fetch_list = [ self.main_program.global_block().var(grad_var_name(x)) for x in self.grad_data_field ] exe = Executor(self.place) return exe.run( self.main_program, feed=self.feed_map, fetch_list=fetch_list, return_numpy=False, ) def test_backward(self, rtol=0.01): self.check_forward() with fluid.program_guard(self.main_program, self.startup_program): append_backward(self.output) ana_grad = [np.array(x) for x in self.backward()] num_grad = self.get_numerical_gradient() for idx, name in enumerate(self.grad_data_field): self.assertEqual(num_grad[idx].shape, ana_grad[idx].shape) np.testing.assert_allclose( num_grad[idx], ana_grad[idx], rtol=rtol, atol=1e-8, err_msg='num_grad (' + name + ') has diff at ' + str(self.place) + '\nExpect ' + str(num_grad[idx]) + '\n' + 'But Got' + str(ana_grad[idx]) + ' in class ' + self.__class__.__name__, ) def check_forward(self): pd_output = self.forward() py_output = self.py_rnn.forward() self.assertEqual(pd_output.shape, py_output.shape) np.testing.assert_allclose(pd_output, py_output, rtol=0.01) def get_numerical_gradient(self, delta=0.005): dloss_dout = 1.0 feed_list = [getattr(self.py_rnn, x) for x in self.grad_data_field] grad_list = [np.zeros_like(x) for x in feed_list] for feed, grad in zip(feed_list, grad_list): for f, g in np.nditer([feed, grad], op_flags=['readwrite']): o = float(f) f[...] = o + delta y_pos = self.forward() f[...] = o - delta y_neg = self.forward() f[...] = o dout_dfeed = (y_pos - y_neg) / (delta * 2) g[...] = dout_dfeed[0] return grad_list class RecurrentOpTest2(RecurrentOpTest1): r''' Test RNNOp equation: h_t = \sigma (W x_t + U h_{t-1}) weights: - W - U vars: - x memories: - h outputs: - h ''' input_dim = 2 batch_size = 10 sent_len = 2 def setUp(self): self.setup_program() self.feed_data_field = {"x", "h_boot", "W", "U"} self.grad_data_field = self.feed_data_field self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = PySimpleRNN2(self.input_shape, self.output_shape) with fluid.program_guard(self.main_program, self.startup_program): self.output = paddle.mean(self.create_rnn_op()) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', name='x', append_batch_size=False, ) x.stop_gradient = False h_boot = layers.data( shape=[self.input_dim], dtype='float32', name='h_boot' ) h_boot.stop_gradient = False rnn = layers.StaticRNN() with rnn.step(): h_pre = rnn.memory(init=h_boot) x_t = rnn.step_input(x) temp_l = layers.fc( input=x_t, size=self.input_dim, param_attr=ParamAttr( name='W', initializer=fluid.initializer.ConstantInitializer(1.0), ), bias_attr=False, ) temp_r = layers.fc( input=h_pre, size=self.input_dim, param_attr=ParamAttr( name='U', initializer=fluid.initializer.ConstantInitializer(0.0), ), bias_attr=False, ) h = paddle.nn.functional.sigmoid(x=paddle.add(x=temp_l, y=temp_r)) rnn.update_memory(h_pre, h) rnn.output(h) return rnn() def test_backward(self): super().test_backward(rtol=0.01) class RecurrentOpMultipleMemoryTest(RecurrentOpTest1): ''' Test RNNOp with two memories equation: h_1 = h_pre_1 h_2 = h_pre_2 y = h_1 + h_2 vars: - x memories: - h_1, h_2 outputs: - y ''' class PySimpleRNN3(PyRNNBase): def __init__(self, input_shape, output_shape): super().__init__(input_shape, output_shape) seq_len, batch_size, input_dim = input_shape self.h_boot1 = np.random.normal( size=(batch_size, input_dim) ).astype("float32") self.h_boot2 = np.random.normal( size=(batch_size, input_dim) ).astype("float32") men_dim = (seq_len, batch_size, input_dim) self.mems1 = np.zeros(shape=men_dim).astype("float32") self.mems2 = np.zeros(shape=men_dim).astype("float32") def step(self, step_id, x): if step_id == 0: pre_mem1 = self.h_boot1 pre_mem2 = self.h_boot2 else: pre_mem1 = self.mems1[step_id - 1] pre_mem2 = self.mems2[step_id - 1] self.mems1[step_id] = pre_mem1 self.mems2[step_id] = pre_mem2 self.y[step_id] = self.mems1[step_id] + self.mems2[step_id] + x input_dim = 1 batch_size = 1 sent_len = 2 def setUp(self): self.setup_program() self.feed_data_field = {"x", "h_boot1", "h_boot2"} self.grad_data_field = self.feed_data_field self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = RecurrentOpMultipleMemoryTest.PySimpleRNN3( self.input_shape, self.output_shape ) with fluid.program_guard(self.main_program, self.startup_program): self.output = paddle.mean(self.create_rnn_op()) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', name='x', append_batch_size=False, ) x.stop_gradient = False h_boot1 = layers.data( shape=[self.batch_size, self.input_dim], dtype='float32', name='h_boot1', append_batch_size=False, ) h_boot1.stop_gradient = False h_boot2 = layers.data( shape=[self.batch_size, self.input_dim], dtype='float32', name='h_boot2', append_batch_size=False, ) h_boot2.stop_gradient = False rnn = layers.StaticRNN() with rnn.step(): h_pre1 = rnn.memory(init=h_boot1) h_pre2 = rnn.memory(init=h_boot2) x_t = rnn.step_input(x) mem1 = paddle.scale(x=h_pre1, scale=1.0) mem2 = paddle.scale(x=h_pre2, scale=1.0) out = layers.sums(input=[mem1, x_t, mem2]) rnn.update_memory(h_pre1, mem1) rnn.update_memory(h_pre2, mem2) rnn.output(out) return rnn() class RecurrentOpNoMemBootTest(RecurrentOpTest1): ''' Test RNNOp with two memories equation: mem = x + mem_pre y = mem vars: - x memories: - mem outputs: - y ''' class PySimpleRNN4(PyRNNBase): def __init__(self, input_shape, output_shape): super().__init__(input_shape, output_shape) men_dim = input_shape self.mems = np.zeros(shape=men_dim).astype("float32") def step(self, step_id, x): if step_id == 0: pre_mem = np.zeros_like(x) else: pre_mem = self.mems[step_id - 1] self.mems[step_id] = pre_mem + x self.y[step_id] = self.mems[step_id] input_dim = 1 batch_size = 1 sent_len = 2 def setUp(self): self.setup_program() self.feed_data_field = {"x"} self.grad_data_field = self.feed_data_field self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = RecurrentOpNoMemBootTest.PySimpleRNN4( self.input_shape, self.output_shape ) with fluid.program_guard(self.main_program, self.startup_program): self.output = paddle.mean(self.create_rnn_op()) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', name='x', append_batch_size=False, ) x.stop_gradient = False rnn = layers.StaticRNN() with rnn.step(): mem_pre = rnn.memory(shape=[-1, self.input_dim], batch_ref=x) x_t = rnn.step_input(x) mem = paddle.add(x=mem_pre, y=x_t) rnn.update_memory(mem_pre, mem) rnn.output(mem) return rnn() class RecurrentOpSubBlockTest(RecurrentOpTest1): r''' Test RNNOp with subblock variable equation: y_ = emb * w1 h_t = \concat([x, h_{t-1}]) h_t = h_t * w2 h_t = \\unsqueeze(h_t, 1) h_t = \dot_attention(h_t, y_) h_t = \squeeze(h_t, 1) y = h_t vars: - x - w1 - w2 memories: - h outputs: - y ''' class PySimpleRNN5(PyRNNBase): def __init__(self, input_shape, output_shape): super().__init__(input_shape, output_shape) seq_len, batch_size, input_dim = input_shape self.w1 = np.random.uniform( -0.1, 0.1, size=(input_dim, input_dim) ).astype("float32") self.w2 = np.random.uniform( -0.1, 0.1, size=(input_dim * 2, input_dim) ).astype("float32") self.emb = np.random.uniform( -0.1, 0.1, size=(seq_len, batch_size, input_dim) ).astype("float32") men_dim = (seq_len, batch_size, input_dim) self.mems = np.zeros(shape=men_dim).astype("float32") self.oy = np.matmul(self.emb, self.w1) def step(self, step_id, x): def dot_attention(query, memory): attn = np.matmul(query, memory.transpose((0, 2, 1))) weight = softmax(attn) weight_memory = np.matmul(weight, memory) return weight_memory, weight def softmax(x): return np.exp(x) / sum(np.exp(x)) if step_id == 0: pre_mem = np.zeros_like(x) else: pre_mem = self.mems[step_id - 1] concat_in = np.concatenate([x, pre_mem], 1) new_mem = np.matmul(concat_in, self.w2) new_mem = np.expand_dims(new_mem, 1) new_mem, _ = dot_attention(new_mem, self.oy) new_mem = np.squeeze(new_mem, 1) self.mems[step_id] = new_mem self.y[step_id] = self.mems[step_id] input_dim = 2 batch_size = 3 sent_len = 3 def setUp(self): self.setup_program() self.feed_data_field = {"x", "emb", "w1", "w2"} self.grad_data_field = self.feed_data_field self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = RecurrentOpSubBlockTest.PySimpleRNN5( self.input_shape, self.output_shape ) with fluid.program_guard(self.main_program, self.startup_program): rnn_out = self.create_rnn_op() self.output = paddle.mean(rnn_out) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', name='x', append_batch_size=False, ) x.stop_gradient = False emb = layers.data( name='emb', shape=[self.sent_len, self.batch_size, self.input_dim], dtype='float32', append_batch_size=False, ) emb.stop_gradient = False w1 = layers.data( shape=[self.input_dim, self.input_dim], dtype='float32', name='w1', append_batch_size=False, ) w1.stop_gradient = False w2 = layers.data( shape=[self.input_dim * 2, self.input_dim], dtype='float32', name='w2', append_batch_size=False, ) w2.stop_gradient = False rnn = layers.StaticRNN() def dot_attention(query, memory): attn = layers.matmul(query, memory, transpose_y=True) weight = paddle.nn.functional.softmax(attn) weight_memory = layers.matmul(weight, memory) return weight_memory, weight y = layers.matmul(emb, w1) with rnn.step(): pre_h = rnn.memory( shape=(self.sent_len, self.input_dim), batch_ref=x, init_value=0.0, ) step_in = rnn.step_input(x) concat_in = layers.concat([step_in, pre_h], 1) new_h = layers.matmul(concat_in, w2) new_h = layers.unsqueeze(new_h, [1]) new_h, _ = dot_attention(new_h, y) new_h = paddle.squeeze(new_h, [1]) rnn.update_memory(pre_h, new_h) rnn.step_output(new_h) return rnn() class RecurrentOpStopGradientTest(RecurrentOpTest1): r""" Test RNNOp with stop_gradient = True equation: h_t = \sigma (W x_t + U h_{t-1}) weights: - W - U vars: - x memories: - h output: - h """ input_dim = 2 batch_size = 10 sent_len = 2 def setUp(self): self.setup_program() self.feed_data_field = {"x", "h_boot", "W", "U"} self.grad_data_field = {"x", "W", "U"} self.input_shape = (self.sent_len, self.batch_size, self.input_dim) self.output_shape = (self.sent_len, self.batch_size, self.input_dim) self.py_rnn = PySimpleRNN2(self.input_shape, self.output_shape) with fluid.program_guard(self.main_program, self.startup_program): self.output = paddle.mean(self.create_rnn_op()) def create_rnn_op(self): x = layers.data( shape=[self.sent_len, self.batch_size, self.input_dim], dtype="float32", name="x", append_batch_size=False, ) x.stop_gradient = False h_boot = layers.data( shape=[self.input_dim], dtype="float32", name="h_boot" ) h_boot.stop_gradient = True rnn = layers.StaticRNN() with rnn.step(): h_pre = rnn.memory(init=h_boot) # init doesn't have gradient x_t = rnn.step_input(x) temp_l = layers.fc( input=x_t, size=self.input_dim, param_attr=ParamAttr( name="W", initializer=fluid.initializer.ConstantInitializer(1.0), ), bias_attr=False, ) temp_r = layers.fc( input=h_pre, size=self.input_dim, param_attr=ParamAttr( name="U", initializer=fluid.initializer.ConstantInitializer(0.0), ), bias_attr=False, ) h = paddle.nn.functional.sigmoid(x=paddle.add(temp_l, temp_r)) rnn.update_memory(h_pre, h) rnn.output(h) return rnn() if __name__ == '__main__': unittest.main()