So, I've been using Cassandra for a while and the architecture of the database is designed in a way that is fairly unusual to me. The fact is I just don't have enough knowledge to decide if that's a good design or not as I'm new to this whole Big Data thing.
Here's a simplification:
- We have vendors
- Each vendor have clients
- For each vendor, we create their own keyspace in Cassandra.
- For each client of the vendor, we create approximately 12-15 tables in its vendor's keyspace. Something like
clientid_TableName
. - Tables are created dynamically when a client is created. This is slow and I'm afraid Cassandra will fail to propagate schema when is under load of all other operations.
- All the table have the same schema, there is no special modelling for any given client.
- Due to the nature of our data, around 5 of these tables can potentially have millions, if not billions, of rows.
Because of the distributed nature of Cassandra, I would never think that such "manual" division of data would be needed or even beneficial.
This single application will have dozens of keyspaces and potentially thousands of tables per keyspace. Won't this impact performance negatively?
The impression I was given is that this design allows to spread data more evenly, causing less performance impact when searching within a single table. It didn't make much sense to me, but I didn't have any arguments to counter it as my experience with Cassandra and so-called design for big data is, at best, very limited. The only benefit I can really think of is to have different keyspace settings per vendor. But I don't think that trumps any of the added complexity.
In short, was this a good idea?