TensorFlow doesn't have first-class Tensor objects, meaning that there are no notion of `Tensor`

in the underlying graph that's executed by the runtime. Instead the graph consists of op nodes connected to each other, representing operations. An operation allocates memory for its outputs, which are available on endpoints `:0`

, `:1`

, etc, and you can think of each of these endpoints as a `Tensor`

. If you have `tensor`

corresponding to `nodename:0`

you can fetch its value as `sess.run(tensor)`

or `sess.run('nodename:0')`

. Execution granularity happens at operation level, so the `run`

method will execute op which will compute all of the endpoints, not just the `:0`

endpoint. It's possible to have an Op node with no outputs (like `tf.group`

) in which case there are no tensors associated with it. It is not possible to have tensors without an underlying Op node.

You can examine what happens in underlying graph by doing something like this

```
tf.reset_default_graph()
value = tf.constant(1)
print(tf.get_default_graph().as_graph_def())
```

So with `tf.constant`

you get a single operation node, and you can fetch it using `sess.run("Const:0")`

or `sess.run(value)`

Similarly, `value=tf.placeholder(tf.int32)`

creates a regular node with name `Placeholder`

, and you could feed it as `feed_dict={"Placeholder:0":2}`

or `feed_dict={value:2}`

. You can not feed and fetch a placeholder in the same `session.run`

call, but you can see the result by attaching a `tf.identity`

node on top and fetching that.

For variable

```
tf.reset_default_graph()
value = tf.Variable(tf.ones_initializer()(()))
value2 = value+3
print(tf.get_default_graph().as_graph_def())
```

You'll see that it creates two nodes `Variable`

and `Variable/read`

, the `:0`

endpoint is a valid value to fetch on both of these nodes. However `Variable:0`

has a special `ref`

type meaning it can be used as an input to mutating operations. The result of Python call `tf.Variable`

is a Python `Variable`

object and there's some Python magic to substitute `Variable/read:0`

or `Variable:0`

depending on whether mutation is necessary. Since most ops have only 1 endpoint, `:0`

is dropped. Another example is `Queue`

-- `close()`

method will create a new `Close`

op node which connects to `Queue`

op. To summarize -- operations on python objects like `Variable`

and `Queue`

map to different underlying TensorFlow op nodes depending on usage.

For ops like `tf.split`

or `tf.nn.top_k`

which create nodes with multiple endpoints, Python's `session.run`

call automatically wraps output in `tuple`

or `collections.namedtuple`

of `Tensor`

objects which can be fetched individually.

dataandoperationsare in TensorFlow would be helpful for this question. – zhy Aug 1 '17 at 16:05