I am looking for an efficient way to iterate over the full data of a influxDB table with ~250 million entries.
I am currently paginating the data by using the
LIMIT clauses, however this takes takes a lot of time for higher offsets.
SELECT * FROM diff ORDER BY time LIMIT 1000000 OFFSET 0
takes 21 seconds, whereas
SELECT * FROM diff ORDER BY time LIMIT 1000000 OFFSET 40000000
takes 221 seconds.
I am using the Python influxdb wrapper to send the requests.
Is there a way to optimize this or stream the whole table?
UPDATE : Rembering the timestamp of the last received data, and then using a WHERE time >= last_timestamp on the next query, reduces the query time for higher offsets drastically (query time is always ~25 secs). This is rather cumbersome however, because if two data points share the same timestamp, some results might be present on two pages of data, which has to be detected somehow.