umami/src/queries/analytics/eventData/getEventDataFields.ts

76 lines
2.1 KiB
TypeScript
Raw Normal View History

2023-07-11 08:16:17 +00:00
import prisma from 'lib/prisma';
2023-06-03 06:10:59 +00:00
import clickhouse from 'lib/clickhouse';
import { CLICKHOUSE, PRISMA, runQuery } from 'lib/db';
2023-08-16 15:49:22 +00:00
import { QueryFilters, WebsiteEventData } from 'lib/types';
2023-06-03 06:10:59 +00:00
export async function getEventDataFields(
2023-08-04 20:18:30 +00:00
...args: [websiteId: string, filters: QueryFilters & { field?: string }]
2023-08-16 15:49:22 +00:00
): Promise<WebsiteEventData[]> {
2023-06-03 06:10:59 +00:00
return runQuery({
[PRISMA]: () => relationalQuery(...args),
[CLICKHOUSE]: () => clickhouseQuery(...args),
});
}
2023-08-04 20:18:30 +00:00
async function relationalQuery(websiteId: string, filters: QueryFilters & { field?: string }) {
const { rawQuery, parseFilters } = prisma;
const { filterQuery, params } = await parseFilters(websiteId, filters, {
columns: { field: 'event_key' },
});
2023-06-03 06:10:59 +00:00
return rawQuery(
2023-07-25 06:06:16 +00:00
`
select
event_key as "fieldName",
data_type as "dataType",
string_value as "fieldValue",
count(*) as "total"
2023-07-25 06:06:16 +00:00
from event_data
where website_id = {{websiteId::uuid}}
and created_at between {{startDate}} and {{endDate}}
${filterQuery}
group by event_key, data_type, string_value
order by 3 desc, 2 desc, 1 asc
2023-07-25 06:06:16 +00:00
limit 100
2023-07-11 08:16:17 +00:00
`,
2023-08-04 20:18:30 +00:00
params,
2023-06-03 06:10:59 +00:00
);
}
2023-09-29 18:00:06 +00:00
async function clickhouseQuery(
websiteId: string,
filters: QueryFilters & { field?: string },
): Promise<{ fieldName: string; dataType: number; fieldValue: string; total: number }[]> {
2023-08-04 20:18:30 +00:00
const { rawQuery, parseFilters } = clickhouse;
const { filterQuery, params } = await parseFilters(websiteId, filters, {
columns: { field: 'event_key' },
});
2023-06-03 06:10:59 +00:00
return rawQuery(
2023-07-25 06:06:16 +00:00
`
select
event_key as fieldName,
data_type as dataType,
string_value as fieldValue,
2023-07-25 06:06:16 +00:00
count(*) as total
from event_data
where website_id = {websiteId:UUID}
2023-09-29 18:00:06 +00:00
and created_at between {startDate:DateTime64} and {endDate:DateTime64}
${filterQuery}
group by event_key, data_type, string_value
order by 3 desc, 2 desc, 1 asc
2023-07-25 06:06:16 +00:00
limit 100
2023-07-11 08:16:17 +00:00
`,
2023-08-04 20:18:30 +00:00
params,
2023-09-29 18:00:06 +00:00
).then(a => {
return Object.values(a).map(a => {
return {
fieldName: a.fieldName,
dataType: Number(a.dataType),
fieldValue: a.fieldValue,
total: Number(a.total),
};
});
});
2023-06-03 06:10:59 +00:00
}