TensorFlow2.0:张量的合并与分割实例

TensorFlow2.0:张量的合并与分割实例,第1张

TensorFlow2.0:张量的合并与分割实例

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一 tf.concat( ) 函数–合并
**

In [2]: a = tf.ones([4,35,8])     

In [3]: b = tf.ones([2,35,8])     

In [4]: c = tf.concat([a,b],axis=0)  

In [5]: c.shape     
Out[5]: TensorShape([6, 35, 8])

In [6]: a = tf.ones([4,32,8])     

In [7]: b = tf.ones([4,3,8])     

In [8]: c = tf.concat([a,b],axis=1)  

In [9]: c.shape     
Out[9]: TensorShape([4, 35, 8])

**

二 tf.stack( ) 函数–数据的堆叠,创建新的维度
**

In [2]: a = tf.ones([4,35,8])     

In [3]: a.shape     
Out[3]: TensorShape([4, 35, 8])

In [4]: b = tf.ones([4,35,8])     

In [5]: b.shape     
Out[5]: TensorShape([4, 35, 8])

In [6]: tf.concat([a,b],axis=-1).shape
Out[6]: TensorShape([4, 35, 16])

In [7]: tf.stack([a,b],axis=0).shape 
Out[7]: TensorShape([2, 4, 35, 8])

In [8]: tf.stack([a,b],axis=3).shape 
Out[8]: TensorShape([4, 35, 8, 2])

**

三 tf.unstack( )函数–解堆叠
**

In [16]: a = tf.ones([4,35,8])   

In [17]: b = tf.ones([4,35,8])   

In [18]: c = tf.stack([a,b],axis=0) 

In [19]: a.shape,b.shape,c.shape  
Out[19]: (TensorShape([4, 35, 8]), TensorShape([4, 35, 8]), TensorShape([2, 4, 35, 8]))

In [20]: aa,bb = tf.unstack(c,axis=0)

In [21]: aa.shape,bb.shape     
Out[21]: (TensorShape([4, 35, 8]), TensorShape([4, 35, 8]))

In [22]: res = tf.unstack(c,axis=1) 

In [23]: len(res)   
Out[23]: 4

**

四 tf.split( ) 函数
**

In [16]: a = tf.ones([4,35,8])   

In [17]: b = tf.ones([4,35,8])   

In [18]: c = tf.stack([a,b],axis=0) 

In [19]: a.shape,b.shape,c.shape  
Out[19]: (TensorShape([4, 35, 8]), TensorShape([4, 35, 8]), TensorShape([2, 4, 35, 8]))

In [20]: aa,bb = tf.unstack(c,axis=0)

In [21]: aa.shape,bb.shape     
Out[21]: (TensorShape([4, 35, 8]), TensorShape([4, 35, 8]))

In [22]: res = tf.unstack(c,axis=1) 

In [23]: len(res)   
Out[23]: 4

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