I have a use case in which I utilize ScyllaDB to limit users' actions in the past 24h. Let's say the user is only allowed to make an order 3 times in the last 24h. I am using ScyllaDB's ttl and making a count on the number of records in the table to achieve this. I am also using https://github.com/spaolacci/murmur3 to get the hash for the partition key.

However, I would like to know what is the most efficient way to query the table. So I have a few queries in which I'd like to understand better and compare the behavior(please correct me if any of my statement is wrong):

  1. using count()

count() will implement a full-scan query, meaning that it may query more than necessary records into the table.

SELECT COUNT(1) FROM orders WHERE hash_id=? AND user_id=?;

  1. using limit

limit will only limit the number of records being returned to the client. Meaning it will still query all records that match its predicates but only limit the ones returned.

SELECT user_id FROM orders WHERE hash_id=? AND user_id=? LIMIT ?;

  1. using paging

I'm a bit new to this, but if I read the docs correctly it should only query the up until it received the first N records without having to query the whole table. So if I limit the page size to a number of records I want to fetch and only query the first page, would it work correctly? and will it have a consistent result?

docs: https://java-driver.docs.scylladb.com/stable/manual/core/paging/index.html

my query is still using limit, but utilizing the driver to achieve this with https://github.com/gocql/gocql

iter := conn.Query( "SELECT user_id FROM orders WHERE hash_id=? AND user_id=? LIMIT ?", hashID, userID,3 ).PageSize(3).PageState(nil).Iter()

Please let me know if my analysis was correct and which method would be best to choose

2 Answers 2


Your client should always use paging - otherwise you risk adding pressure to the query coordinator, which may introduce latency and memory fragmentation. If you use the Scylla Monitoring stack (and you should if you don't!), refer to the CQL Optimization dashboard and - more specifically - to the Paged Queries panel.

Now, to your question. It seems to be that your example is a bit minimalist for what you are actually wanting to achieve and - even then - should it not be, we have to consider such set-up at scale. Eg: There may be a tenant allowed which is allowed to place 3 orders within a day, but another tenant allowed to place 1 million orders within a week?

If the above assumption is correct - and with the options at hand you have given - you are better off using LIMIT with paging. The reason is because there are some particular problems with the description you've given at hand:

  • First, you want to retrieve N amount of records within a particular time-frame, but your queries don't specify such time-frame
  • Second, either COUNT or LIMIT will initiate a partition scan, and it is not clear how a hash_id + user_id combination can be done to determine the number of records within a time-frame.

Of course, it may be that I am wrong, but I'd like to suggest different some approaches which may be or not applicable for you and your use case.

  • Consider a timestamp component part of the clustering key. This will allow you to avoid full partition scans, with queries such as:

SELECT something FROM orders WHERE hash_id=? AND user_id=? AND ts >= ? AND ts < ?;

  • If the above is not applicable, then perhaps a Counter Table would suffice your needs? You could simply increment a counter after an order is placed, and - after - query the counter table as in:

SELECT count FROM counter_table WHERE hash_id=? AND user_id=? AND date=?;

I hope that helps!


I have a few points I want to add to what Felipe wrote already:

First, you don't need to hash the partition key yourself. You can use anything you want for the partition key, even consecutive numbers, the partition key doesn't need to be random-looking. Scylla will internally hash the partition key on its own to improve the load balancing. You don't need to know or care which hashing algorithm ScyllaDB uses, but interestingly, it's a variant of murmur3 too (which is not identical to the one you used - it's a modified algorithm originally picked by the Cassandra developers).

Second, you should know - and decide whether you care - that the limit you are trying to enforce is not a hard limit when faced with concurrent operations: Imagine that the given partition already has two records - and now two concurrent record addition requests come in. Both can check that there are just two records, decide it's fine to add the third - and then when both add their record - and you end up with four records. You'll need to decide whether this is fine for you that a user can get in 4 requests in a day if they are lucky, or it's a disaster. Note that theoretically you can get even more than 4 - if the user managest to send N requests at exactly the same time, they may be able to get 2+N records in the database (but in the usual case, they won't manage to get many superflous records). If you'll want 3 to be a hard limit, you'll probably needs to change your solution - perhaps to one based on LWT and not use TTL.

Third, I want to note that there is not an important performance difference between COUNT and LIMIT when you know a-priori that there will only be up to 3 (or perhaps, as explained above, 4 or some other similarly small number) results. If you assume that the SELECT only yields three or less results, and it can never be a thousand results, then it doesn't really matter if you just retrieve them or count them - you should just do whichever is convenient for you. In any case, I think that paging is not a good solution your need. For such short results and you can just use the default page size and you'll never reach it anyway, and also paging hints the server that you will likely continue reading on the next page - and it caches the buffers it needs to do that - while in this case you know that you'll never continue after the first three results. So in short, don't use any special paging setup here - just use the default page size (which is 1MB) and it will never be reached anyway.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.