I'm playing around with tensorflow and ran into a problem with the following code:

```
def _init_parameters(self, input_data, labels):
# the input shape is (batch_size, input_size)
input_size = tf.shape(input_data)[1]
# labels in one-hot format have shape (batch_size, num_classes)
num_classes = tf.shape(labels)[1]
stddev = 1.0 / tf.cast(input_size, tf.float32)
w_shape = tf.pack([input_size, num_classes], 'w-shape')
normal_dist = tf.truncated_normal(w_shape, stddev=stddev, name='normaldist')
self.w = tf.Variable(normal_dist, name='weights')
```

(I'm using `tf.pack`

as suggested in this question, since I was getting the same error)

When I run it (from a larger script that invokes this one), I get this error:

```
ValueError: initial_value must have a shape specified: Tensor("normaldist:0", shape=TensorShape([Dimension(None), Dimension(None)]), dtype=float32)
```

I tried to replicate the process in the interactive shell. Indeed, the dimensions of `normal_dist`

are unspecified, although the supplied values do exist:

```
In [70]: input_size.eval()
Out[70]: 4
In [71]: num_classes.eval()
Out[71]: 3
In [72]: w_shape.eval()
Out[72]: array([4, 3], dtype=int32)
In [73]: normal_dist.eval()
Out[73]:
array([[-0.27035281, -0.223277 , 0.14694688],
[-0.16527176, 0.02180306, 0.00807841],
[ 0.22624688, 0.36425814, -0.03099642],
[ 0.25575709, -0.02765726, -0.26169327]], dtype=float32)
In [78]: normal_dist.get_shape()
Out[78]: TensorShape([Dimension(None), Dimension(None)])
```

This is weird. Tensorflow generates the vector but can't say its shape. Am I doing something wrong?