We are exploring using Bigquery to store and analyze 100s of million of log entries representing user sessions. The source raw log entries contain a "connect" log type and "disconnect" log type.
We have the option of processing the logs before they are ingested to bigquery so that we have one entry per session, containing the session start TIMESTAMP and a "duration" value, or to insert each log entry individually and calculate session times at the analysis stage. Let's imagine our table schema is of the form:
sessionStartTime: TIMESTAMP, clientId: STRING, duration: INTEGER
or (in the case we store two log entries per session: one connect and one disconnect):
time: TIMESTAMP, type: INTEGER, //enum, 0 for connect, 1 for disconnect clientId: STRING
Our problem is we cannot find a way to get concurrent users using bigquery: ideally we would be able to write a query that partitions the sessions table by timestamp "buckets" (let's say every minute) and perform a query which would give us concurrents per minute over a certain time range.
The simple way to think about concurrents with respect to log entries is that at any moment in time they are calculated using the function f(t) = x0 + connects(t) - disconnects(t), where x0 is the initial concurrent users count (at time t0), and t is the "timestamp" bucket (in minutes in this example).
Can anybody recommend a way to do this?