I have a placeholder variable that expects a batch of input images:

```
input_placeholder = tf.placeholder(tf.float32, [None] + image_shape, name='input_images')
```

Now I have 2 sources for the input data:

1) a tensor and

2) some numpy data.

For the numpy input data, I know how to feed data to the placeholder variable:

```
sess = tf.Session()
mLoss, = sess.run([loss], feed_dict = {input_placeholder: myNumpyData})
```

How can I feed a tensor to that placeholder variable?

```
mLoss, = sess.run([loss], feed_dict = {input_placeholder: myInputTensor})
```

gives me an error:

```
TypeError: The value of a feed cannot be a tf.Tensor object. Acceptable feed values include Python scalars, strings, lists, or numpy ndarrays.
```

I don't want to convert the tensor into a numpy array using `.eval()`

, since that would slow my program down, is there any other way?