What needs to happen?
This function should accept a rank 2 SparseTensor, and a default value, and return a rank 1 Tensor. It will assume the input is from a VarLenFeature and has dimensions [batch_size, 0] or [batch_size, 1] depending on the max size of the feature over the batch. It's assumed each feature has 0 or 1 values (0 for missing, 1 for present).
It will emit a Tensor which is constructed using the code
feature = tf.sparse_to_dense(
feature.indices, [feature.dense_shape[0], 1], feature.values,
default_value=-1)
feature = tf.squeeze(feature, axis=1)
Issue Priority
Priority: 3 (nice-to-have improvement)
Issue Components
What needs to happen?
This function should accept a rank 2 SparseTensor, and a default value, and return a rank 1 Tensor. It will assume the input is from a VarLenFeature and has dimensions [batch_size, 0] or [batch_size, 1] depending on the max size of the feature over the batch. It's assumed each feature has 0 or 1 values (0 for missing, 1 for present).
It will emit a Tensor which is constructed using the code
Issue Priority
Priority: 3 (nice-to-have improvement)
Issue Components