I'm designing a hashing algorithm that will generate partition keys for a azure table. I'm taking in account 2 scenarios:
- Generate key based on row count
- Generate key based on data size
Explaning: Imagine that i have 300 entities to insert (remember that this is a non relational stores so lets say that its, 10 costumers, 50 sales, 240 sales items)... to balance them, i will use 2 partitions keys: K1 and K2.
In the "row count mode" insert 1 will have K1, insert 2 will have k2, insert 3->K1, insert 4->k2 and so on... very straight forward and prob what most people do...
If I use "data size", lets say that the first 50kb will get K1,51-100kb K2, 101-150 K1, 151-200 K2, which can lead to: insert 1, 2 and 3 using K1, insert 4 using K2, insert 5 using K1, insert 6,7,8,9,10,11,12,13 and 14 using K2...
My question is: when searching, which "tatics" will enable the optimum throughput?
What I am most worried here is the unbalance between the partitions and raw performance. Let's further expand and imagine that this is a multi-tenant app. If I choose
Tenant Id as partition key i will have to work around the fact that as a tenant data becomes larger the query performance will drop more fast than if i had chosen a partition key such as
Tenant Id + Month of the Sale because in the second scenario i would be able to run parallel queries such as "tenant1January", "tenant1February", "Tenant1Marchar"...