A bit of a delayed answer here. It's now possible in the latest Kafka version 0.10+ to consume from a delayed stream, using the new timestamp per message. I'm using this right now in order to implement a continuous aggregating dataset, without resorting to external dependencies.
These records come through, and may have updates/deletes coming through within the next 60 minutes after the first event, so I can't declare one as "final" until I have seen all the updates.
So, to handle this case, I'm consuming the topic with all CREATEs/UPDATEs/DELETEs twice, the first one in realtime (or as fast as possible), the second one delayed by 90 mins to ensure I don't miss anything. On the realtime consumer, I'm storing locally all the needed updates for the create. Then on the delayed consumer, when I receive a particular "CREATE", I'll go lookup my local storage for any updates/deletes, update the record so it knows it's final status, and produce it into a final topic into Kafka again.
To ensure I don't run out of disk space, I'm also continuously truncating the local storage so it holds at most two hours of updates/deletes.