In a project I am currently working on, I have a collection of raw metrics, these metrics are about signal tracking as:
Table: metrics
{timestamp: 1535875518111, project_id: 1, type: 'A', strength: 100},
{timestamp: 1535875528111, project_id: 2, type: 'B', strength: 80},
{timestamp: 1535875528101, project_id: 1, type: 'B', strength: 50}
As there are literally millions of records for the metrics table per day it seems inefficient to query and aggregate the records for results extraction.
I have read a lot about data rollups per day/week/month but I am still confused about how I can roll my schema. I want to extract data as:
From October to November and for project with id 1, what's the overall hit range and what are the top 10 types? For type A of project with id 1, how many occurrences have been made and what's the highest range?
My first thought was rolling the data as:
{
day: 21,
month: 10,
year: 2018,
project_id: 1,
types: {
'A': {
hits: 100,
strengths: {
'100': 1,
'200': 2
}
},
'B': {
hits: 20,
strengths: {
'2': 1,
'5': 3
}
}
}
}
The above structure looks OK but, as the range of types is growing, I think it would be hard to query the nested results. Also, I am not quite sure how I should add indexes in order to improve my queries' performance.
I am really seeking for any caveats or tips in order to design a schema about rollups. The database I am currently using is RethinkDB but I think the same principles apply to generic schema design.