How to get the dimensions of a tensor (in TensorFlow) at graph construction time?

后端 未结 6 884
你的背包
你的背包 2021-01-30 20:54

I am trying an Op that is not behaving as expected.

graph = tf.Graph()
with graph.as_default():
  train_dataset = tf.placeholder(tf.int32, shape=[128, 2])
  embe         


        
相关标签:
6条回答
  • 2021-01-30 21:31

    I see most people confused about tf.shape(tensor) and tensor.get_shape() Let's make it clear:

    1. tf.shape

    tf.shape is used for dynamic shape. If your tensor's shape is changable, use it. An example: a input is an image with changable width and height, we want resize it to half of its size, then we can write something like:
    new_height = tf.shape(image)[0] / 2

    1. tensor.get_shape

    tensor.get_shape is used for fixed shapes, which means the tensor's shape can be deduced in the graph.

    Conclusion: tf.shape can be used almost anywhere, but t.get_shape only for shapes can be deduced from graph.

    0 讨论(0)
  • 2021-01-30 21:32

    Just print out the embed after construction graph (ops) without running:

    import tensorflow as tf
    
    ...
    
    train_dataset = tf.placeholder(tf.int32, shape=[128, 2])
    embeddings = tf.Variable(
        tf.random_uniform([50000, 64], -1.0, 1.0))
    embed = tf.nn.embedding_lookup(embeddings, train_dataset)
    print (embed)
    

    This will show the shape of the embed tensor:

    Tensor("embedding_lookup:0", shape=(128, 2, 64), dtype=float32)
    

    Usually, it's good to check shapes of all tensors before training your models.

    0 讨论(0)
  • 2021-01-30 21:33

    Tensor.get_shape() from this post.

    From documentation:

    c = tf.constant([[1.0, 2.0, 3.0], [4.0, 5.0, 6.0]])
    print(c.get_shape())
    ==> TensorShape([Dimension(2), Dimension(3)])
    
    0 讨论(0)
  • 2021-01-30 21:33

    A function to access the values:

    def shape(tensor):
        s = tensor.get_shape()
        return tuple([s[i].value for i in range(0, len(s))])
    

    Example:

    batch_size, num_feats = shape(logits)
    
    0 讨论(0)
  • 2021-01-30 21:48

    Let's make it simple as hell. If you want a single number for the number of dimensions like 2, 3, 4, etc., then just use tf.rank(). But, if you want the exact shape of the tensor then use tensor.get_shape()

    with tf.Session() as sess:
       arr = tf.random_normal(shape=(10, 32, 32, 128))
       a = tf.random_gamma(shape=(3, 3, 1), alpha=0.1)
       print(sess.run([tf.rank(arr), tf.rank(a)]))
       print(arr.get_shape(), ", ", a.get_shape())     
    
    
    # for tf.rank()    
    [4, 3]
    
    # for tf.get_shape()
    Output: (10, 32, 32, 128) , (3, 3, 1)
    
    0 讨论(0)
  • 2021-01-30 21:55

    The method tf.shape is a TensorFlow static method. However, there is also the method get_shape for the Tensor class. See

    https://www.tensorflow.org/api_docs/python/tf/Tensor#get_shape

    0 讨论(0)
提交回复
热议问题