**TL;DR:** You need to use `Session.run()`

to get a Python boolean, but there are other ways to achieve the same result that might be more efficient.

It looks like you've already figured out how to get a boolean tensor from your value, but for the benefit of other readers, it would look something like this:

```
computed_val = ...
constant_val = tf.constant(37.0)
pred = tf.less(computed_val, constant_val) # N.B. Types of the two args must match
```

The next part is how to use it as a conditional. The simplest thing to do is to use a Python `if`

statement, but to do that you must **evaluate** the tensor `pred`

using `Session.run()`

:

```
sess = tf.Session()
if sess.run(pred):
# Do something.
else:
# Do something else.
```

One caveat about using a Python `if`

statement is that you have to evaluate the whole expression up to `pred`

, which makes it tricky to reuse intermediate values that have already been computed. I'd like to draw your attention to two other ways you can compute conditional expressions using TensorFlow, which don't require you to evaluate the predicate and get a Python value back.

The first way uses the `tf.select()`

op to conditionally pass through values from two tensors passed as arguments:

```
pred = tf.placeholder(tf.bool) # Can be any computed boolean expression.
val_if_true = tf.constant(28.0)
val_if_false = tf.constant(12.0)
result = tf.select(pred, val_if_true, val_if_false)
sess = tf.Session()
sess.run(result, feed_dict={pred: True}) # ==> 28.0
sess.run(result, feed_dict={pred: False}) # ==> 12.0
```

The `tf.select()`

op works element-wise on all of its arguments, which allows you to combine values from the two input tensors. See its documentation for more details. The drawback of `tf.select()`

is that it evaluates both `val_if_true`

and `val_if_false`

before computing the result, which might be expensive if they are complicated expressions.

The second way uses the `tf.cond()`

op, which conditionally evaluates one of two expressions. This is particularly useful if the expressions are expensive, and it is essential if they have side effects. The basic pattern is to specify two Python functions (or lambda expressions) that build subgraphs that will execute on the true or false branches:

```
# Define some large matrices
a = ...
b = ...
c = ...
pred = tf.placeholder(tf.bool)
def if_true():
return tf.matmul(a, b)
def if_false():
return tf.matmul(b, c)
# Will be `tf.cond()` in the next release.
from tensorflow.python.ops import control_flow_ops
result = tf.cond(pred, if_true, if_false)
sess = tf.Session()
sess.run(result, feed_dict={pred: True}) # ==> executes only (a x b)
sess.run(result, feed_dict={pred: False}) # ==> executes only (b x c)
```

`Tensor`

objects from your`if_true`

and`if_false`

functions. These can simply be`tf.constant(True)`

and`tf.constant(False)`

respectively. If your actions on`x`

,`y`

, and`z`

have side effects, be sure to add a control dependency on them to the returned tensor, or they may not execute. – mrry Jan 25 '16 at 23:46`Tensor`

doesn't meet your needs, then I presume you aren't feeding the result to a further TensorFlow subgraph. In that case, it might be simplest to use`sess.run()`

and a straightforward Python`if`

statement. – mrry Jan 26 '16 at 0:46