I am trying to modify an existing tensorflow code. First, a 2d matrix of words is converted to a dataset
from a geneartor
and by map_strings_to_ints
function and converted into vocab index. Then the following function is called.
dataset = dataset.apply(tf.contrib.data.bucket_by_sequence_length(element_length_func=lambda d: tf.shape(d)[0],
bucket_boundaries=bucket_boundaries,
bucket_batch_sizes=bucket_batch_sizes,
padded_shapes=dataset.output_shapes,
padding_values=constants.PAD_VALUE))
where each of the dataset
elements was an array of size [None, None] (i.e., 2d mat).
Now for each element, I like to add another sequence of text. So each element is a tuple of previous 2d mat and the corresponding sentence/sequence that is each of the new dataset elements is a tuple of ([None, None],[None]), then how can I modify the above function?
I tried
dataset = dataset.apply(tf.contrib.data.bucket_by_sequence_length(element_length_func=lambda d,t: tf.shape(d)[0],
bucket_boundaries=bucket_boundaries,
bucket_batch_sizes=bucket_batch_sizes,
padded_shapes=dataset.output_shapes,
padding_values=constants.PAD_VALUE))
and few other tricks but got
TypeError: If shallow structure is a sequence, input must also be a sequence. Input has type: <class ‘int’>
Note that, the dataset
elements are words mapped into vocab index (i.e., int)