NO51、构建乘积数组(这题还可以)

本文介绍了一种构建乘积数组的高效算法,不使用除法实现。通过两次遍历数组,分别从前向后和从后向前计算累积乘积,得到最终结果。文中提供了两种实现方法并附带代码示例。
51、构建乘积数组 可以再刷一遍

给定一个数组A[0,1,…,n-1],请构建一个数组B[0,1,…,n-1],其中B中的元素B[i]=A[0]A[1]…*A[i-1]A[i+1]…*A[n-1]。不能使用除法。(注意:规定B[0] = A[1] * A[2] * … * A[n-1],B[n-1] = A[0] * A[1] * … * A[n-2];)

对于A长度为1的情况,B无意义,故而无法构建,因此该情况不会存在。

示例1
输入

[1,2,3,4,5]

返回值

[120,60,40,30,24]
1、暴力法
vector<int> multiply(const vector<int>& A) {
	vector<int> B;
	for (int i = 0; i < A.size(); ++i) {

		int temp = 1;
		for (int j = 0; j < A.size(); ++j) {
			if (j != i) temp *= A[j];
		}
		B.push_back(temp);
	}
	return B;
}
2、一种超级精妙的解法,吹爆了
vector<int> multiply(const vector<int>& A) {
	int len = A.size();
	vector<int> B(len,0);
	int temp = 1;
	for (int i = 0; i <len; temp*=A[i],++i) {

		B[i] = temp;
	}

	temp = 1;
	for (int i = len-1; i >= 0; temp *= A[i], --i) {

		B[i] = B[i]*temp;
	}
	return B;
}
二刷:
1、遇到一点问题,还没有很顺利的写出来

运行时间:2ms 占用内存:376k

    vector<int> multiply(const vector<int>& A) {
    
	if (A.size() <= 1) return vector<int>();
	int len = A.size();
	vector<int> B(len, 1);
	int left = A[0], right = A[len-1];
	for (int i = 1; i < len; ++i) {//而这里要从第二个开始
		B[i] = left;
		left = left * A[i];
	}

	for (int i = len - 2; i >= 0; --i) {//这里要从倒数第二个开始
		B[i] = B[i] * right;
		right = right * A[i];
	}

	return std::move(B);
    }

美女帅哥们如果觉得写的还行,有点用的话麻烦点个赞或者留个言支持一下阿秀~
如果觉得狗屁不通,直接留言开喷就完事了。

需要该笔记PDF版本的去个人公众号【拓跋阿秀】下回复“阿秀剑指offer笔记”即可。

NotImplementedError: Cannot convert a symbolic Tensor (lstm_1/strided_slice:0) to a numpy array. --------------------------------------------------------------------------- NotImplementedError Traceback (most recent call last) Cell In[20], line 51 48 start_time = time.time() 50 # 选择要训练的模型类型(rnn/lstm/gru) ---> 51 train_model(model_type='lstm') 53 # 计算总耗时 54 total_time = time.time() - start_time Cell In[20], line 13, in train_model(model_type) 11 model = build_gru_model() 12 else: # 默认使用LSTM ---> 13 model = build_lstm_model() 15 # 打印模型结构 16 model.summary() Cell In[16], line 2, in build_lstm_model() 1 def build_lstm_model(): ----> 2 model = keras.Sequential([ 3 layers.Embedding(total_words, embedding_len, input_length=max_review_len), 4 layers.LSTM(64, return_sequences=False), 5 layers.Dense(1, activation='sigmoid') 6 ]) 7 return model File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/training/tracking/base.py:457, in no_automatic_dependency_tracking.<locals>._method_wrapper(self, *args, **kwargs) 455 self._self_setattr_tracking = False # pylint: disable=protected-access 456 try: --> 457 result = method(self, *args, **kwargs) 458 finally: 459 self._self_setattr_tracking = previous_value # pylint: disable=protected-access File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/engine/sequential.py:113, in Sequential.__init__(self, layers, name) 111 tf_utils.assert_no_legacy_layers(layers) 112 for layer in layers: --> 113 self.add(layer) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/training/tracking/base.py:457, in no_automatic_dependency_tracking.<locals>._method_wrapper(self, *args, **kwargs) 455 self._self_setattr_tracking = False # pylint: disable=protected-access 456 try: --> 457 result = method(self, *args, **kwargs) 458 finally: 459 self._self_setattr_tracking = previous_value # pylint: disable=protected-access File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/engine/sequential.py:195, in Sequential.add(self, layer) 190 self.inputs = layer_utils.get_source_inputs(self.outputs[0]) 192 elif self.outputs: 193 # If the model is being built continuously on top of an input layer: 194 # refresh its output. --> 195 output_tensor = layer(self.outputs[0]) 196 if len(nest.flatten(output_tensor)) != 1: 197 raise TypeError('All layers in a Sequential model ' 198 'should have a single output tensor. ' 199 'For multi-output layers, ' 200 'use the functional API.') File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:623, in RNN.__call__(self, inputs, initial_state, constants, **kwargs) 617 inputs, initial_state, constants = _standardize_args(inputs, 618 initial_state, 619 constants, 620 self._num_constants) 622 if initial_state is None and constants is None: --> 623 return super(RNN, self).__call__(inputs, **kwargs) 625 # If any of `initial_state` or `constants` are specified and are Keras 626 # tensors, then add them to the inputs and temporarily modify the 627 # input_spec to include them. 629 additional_inputs = [] File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/engine/base_layer.py:854, in Layer.__call__(self, inputs, *args, **kwargs) 852 outputs = base_layer_utils.mark_as_return(outputs, acd) 853 else: --> 854 outputs = call_fn(cast_inputs, *args, **kwargs) 856 except errors.OperatorNotAllowedInGraphError as e: 857 raise TypeError('You are attempting to use Python control ' 858 'flow in a layer that was not declared to be ' 859 'dynamic. Pass `dynamic=True` to the class ' 860 'constructor.\nEncountered error:\n"""\n' + 861 str(e) + '\n"""') File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:2548, in LSTM.call(self, inputs, mask, training, initial_state) 2546 self.cell.reset_dropout_mask() 2547 self.cell.reset_recurrent_dropout_mask() -> 2548 return super(LSTM, self).call( 2549 inputs, mask=mask, training=training, initial_state=initial_state) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:681, in RNN.call(self, inputs, mask, training, initial_state, constants) 675 def call(self, 676 inputs, 677 mask=None, 678 training=None, 679 initial_state=None, 680 constants=None): --> 681 inputs, initial_state, constants = self._process_inputs( 682 inputs, initial_state, constants) 684 if mask is not None: 685 # Time step masks must be the same for each input. 686 # TODO(scottzhu): Should we accept multiple different masks? 687 mask = nest.flatten(mask)[0] File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:798, in RNN._process_inputs(self, inputs, initial_state, constants) 796 initial_state = self.states 797 else: --> 798 initial_state = self.get_initial_state(inputs) 800 if len(initial_state) != len(self.states): 801 raise ValueError('Layer has ' + str(len(self.states)) + 802 ' states but was passed ' + str(len(initial_state)) + 803 ' initial states.') File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:605, in RNN.get_initial_state(self, inputs) 603 dtype = inputs.dtype 604 if get_initial_state_fn: --> 605 init_state = get_initial_state_fn( 606 inputs=None, batch_size=batch_size, dtype=dtype) 607 else: 608 init_state = _generate_zero_filled_state(batch_size, self.cell.state_size, 609 dtype) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:2313, in LSTMCell.get_initial_state(self, inputs, batch_size, dtype) 2312 def get_initial_state(self, inputs=None, batch_size=None, dtype=None): -> 2313 return list(_generate_zero_filled_state_for_cell( 2314 self, inputs, batch_size, dtype)) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:2752, in _generate_zero_filled_state_for_cell(cell, inputs, batch_size, dtype) 2750 batch_size = array_ops.shape(inputs)[0] 2751 dtype = inputs.dtype -> 2752 return _generate_zero_filled_state(batch_size, cell.state_size, dtype) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:2768, in _generate_zero_filled_state(batch_size_tensor, state_size, dtype) 2765 return array_ops.zeros(init_state_size, dtype=dtype) 2767 if nest.is_sequence(state_size): -> 2768 return nest.map_structure(create_zeros, state_size) 2769 else: 2770 return create_zeros(state_size) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/util/nest.py:536, in map_structure(func, *structure, **kwargs) 532 flat_structure = [flatten(s, expand_composites) for s in structure] 533 entries = zip(*flat_structure) 535 return pack_sequence_as( --> 536 structure[0], [func(*x) for x in entries], 537 expand_composites=expand_composites) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/util/nest.py:536, in <listcomp>(.0) 532 flat_structure = [flatten(s, expand_composites) for s in structure] 533 entries = zip(*flat_structure) 535 return pack_sequence_as( --> 536 structure[0], [func(*x) for x in entries], 537 expand_composites=expand_composites) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/keras/layers/recurrent.py:2765, in _generate_zero_filled_state.<locals>.create_zeros(unnested_state_size) 2763 flat_dims = tensor_shape.as_shape(unnested_state_size).as_list() 2764 init_state_size = [batch_size_tensor] + flat_dims -> 2765 return array_ops.zeros(init_state_size, dtype=dtype) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/ops/array_ops.py:2338, in zeros(shape, dtype, name) 2334 if not isinstance(shape, ops.Tensor): 2335 try: 2336 # Create a constant if it won't be very big. Otherwise create a fill op 2337 # to prevent serialized GraphDefs from becoming too large. -> 2338 output = _constant_if_small(zero, shape, dtype, name) 2339 if output is not None: 2340 return output File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/ops/array_ops.py:2295, in _constant_if_small(value, shape, dtype, name) 2293 def _constant_if_small(value, shape, dtype, name): 2294 try: -> 2295 if np.prod(shape) < 1000: 2296 return constant(value, shape=shape, dtype=dtype, name=name) 2297 except TypeError: 2298 # Happens when shape is a Tensor, list with Tensor elements, etc. File <__array_function__ internals>:180, in prod(*args, **kwargs) File /opt/conda/lib/python3.8/site-packages/numpy/core/fromnumeric.py:3088, in prod(a, axis, dtype, out, keepdims, initial, where) 2970 @array_function_dispatch(_prod_dispatcher) 2971 def prod(a, axis=None, dtype=None, out=None, keepdims=np._NoValue, 2972 initial=np._NoValue, where=np._NoValue): 2973 """ 2974 Return the product of array elements over a given axis. 2975 (...) 3086 10 3087 """ -> 3088 return _wrapreduction(a, np.multiply, 'prod', axis, dtype, out, 3089 keepdims=keepdims, initial=initial, where=where) File /opt/conda/lib/python3.8/site-packages/numpy/core/fromnumeric.py:86, in _wrapreduction(obj, ufunc, method, axis, dtype, out, **kwargs) 83 else: 84 return reduction(axis=axis, out=out, **passkwargs) ---> 86 return ufunc.reduce(obj, axis, dtype, out, **passkwargs) File /opt/conda/lib/python3.8/site-packages/tensorflow_core/python/framework/ops.py:735, in Tensor.__array__(self) 734 def __array__(self): --> 735 raise NotImplementedError("Cannot convert a symbolic Tensor ({}) to a numpy" 736 " array.".format(self.name)) NotImplementedError: Cannot convert a symbolic Tensor (lstm_1/strided_slice:0) to a numpy array. + Code + Markdown ​ + Code + Markdown 4.使用训练好的模型预测文本类型 + Code + Markdown #选做 ​ + Code + Markdown keras关于fit方法中的参数定义如下 def fit(self, x=None, y=None, batch_size=None, epochs=1, verbose=‘auto’, callbacks=None, validation_split=0., validation_data=None, shuffle=True, class_weight=None, sample_weight=None, initial_epoch=0, steps_per_epoch=None, validation_steps=None, validation_batch_size=None, validation_freq=1, max_queue_size=10, workers=1, use_multiprocessing=False): + Code + Markdown
最新发布
06-22
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