I used Cassandra Set (no experience with map ), and one thing for sure is that with Cassandra collections you are limited to a few thousands entry per row (less than 10K for better performance)
Sent using https://www.zoho.com/mail/ ---- On Fri, 18 Sep 2020 20:33:21 +0430 Attila Wind <attilaw@swf.technology> wrote ---- Hey guys, I'm curious about your experiences regarding a data modeling question we are facing with. At the moment we see 2 major different approaches in terms of how to build the tables But I'm googling around already for days with no luck to find any useful material explaining to me how a Map (as collection datatype) works on the storage engine, and what could surprise us later if we . So decided to ask this question... (If someone has some nice pointers here maybe that is also much appreciated!) So To describe the problem in a simplified form Imagine you have users (everyone is identified with a UUID), and we want to answer a simple question: "have we seen this guy before?" we "just" want to be able to answer this question for a limited time - let's say for 3 months ....but... there are lots of lots of users we run into... many millions / each day... ....and ~15-20% of them are returning users only - so many guys we just might see once We are thinking about something like a big big Map, in a form of userId => lastSeenTimestamp Obviously if we would have something like that then answering the above question is simply: if(map.get(userId) != null) => TRUE - we have seen the guy before Regarding the 2 major modelling approaches I mentioned above Approach 1 Just simply use a table, something like this CREATE TABLE IF NOT EXISTS users ( user_id varchar, last_seen int, -- a UNIX timestamp is enough, thats why int PRIMARY KEY (user_id) ) .... AND default_time_to_live = <3 months of seconds>; Approach 2 to do not produce that much rows, "cluster" the guys a bit together (into 1 row) so introduce a hashing function over the userId, producing a value btw [0; 10000] and go with a table like CREATE TABLE IF NOT EXISTS users ( user_id_hash int, users_seen map<text, int>, -- this is a userId => last timestamp map PRIMARY KEY (user_id_hash) ) .... AND default_time_to_live = <3 months of seconds>; -- yes, its clearly not a good enough way ... In theory: on a WRITE path both representation gives us a way to do the write without the need of read even the READ path is pretty efficient in both cases Approach2 is worse definitely when we come to the cleanup - "remove info if older than 3 month" Approach2 might affect the balance of the cluster more - thats clear (however not that much due to the "law of large number" and really enough random factors) And what we are struggling around is: what do you think Which approach would be better over time? So will slow down the cluster less considering in compaction etc etc As far as we can see the real question is: which hurts more? much more rows, but very small rows (regarding data size), or much less rows, but much bigger rows (regarding data size) ? Any thoughts, comments, pointers to some related case studies, articles, etc is highly appreciated!! :-) thanks! -- Attila Wind http://www.linkedin.com/in/attilaw Mobile: +49 176 43556932