How about doing a
ndb.get_multi() with your list, and then comparing the results with your original list to find what you need to retrieve from the other data source? Something like this perhaps...
list_of_ids = [1,2,3 ... ]
# You have to use the keys to query using get_multi() (this is assuming that
# your list of ids are also the key ids in NDB)
keys_list = [ndb.key('DB_Kind', x) for x in list_of_ids]
results = ndb.get_multi(keys_list)
results = [x for x in results if x is not None] # Get rid of any Nones
result_keys = [x.key.id() for x in results]
diff = list(set(list_of_ids) - set(result_keys)) # Get the difference in the lists
# Diff should now have a list of ids that weren't in NDB, and results should have
# a list of the entities that were in NDB.
I can't vouch for the performance of this, but it should be more efficient then querying for each entity one at a time. In my experience using
ndb.get_multi() is a huge performance booster, since it cuts down on a huge amount of RPCs. You could likely tweak the code that I posted above, but perhaps it will at least point you in the right direction.