What is the equivalent of this query
select sum("count") from "measurement_name" where time<now() and time>now()-4d group by time(100s),"source"
in Flux? I have tried
from(bucket:"metrics/default_metrics")
|> range(start: -4d)
|> filter(fn: (r)=> r._measurement == "measurement_name")
|> group(columns: ["source"])
|> window(every: 100s)
|> drop(columns:["_start","_stop","_measurement","column_a","column_b"])
|> yield()
and
from(bucket:"metrics/default_metrics")
|> range(start: -4d)
|> filter(fn: (r)=> r._measurement == "measurement_name")
|> window(every: 100s)
|> group(columns: ["source"])
|> drop(columns:["_start","_stop","_measurement","column_a","column_b"])
|> yield()
but they all seem to yield different results
This is grouping by time_interval = 100s
and source
. Supposedly, the grouping by time (and the sum aggregation implicitly?) is done using the window
function from Flux but the result from the InfluxQL query (select...) are:
name: measurement_name
tags: source=source_name
time sum
---- ---
1601022500000000000 39
1601022600000000000 191
1601022700000000000 232
1601022800000000000 145
1601022900000000000 207
1601023000000000000 277
1601023100000000000 160
1601023200000000000 228
1601023300000000000 253
1601023400000000000 167
while the one coming from the Flux queries is
Table: keys: [source]
source:string _time:time _value:int _field:string
---------------------- ------------------------------ -------------------------- --------
source_name 2020-09-25T11:46:51.390000000Z 6 count
source_name 2020-09-25T11:46:54.124000000Z 5 count
source_name 2020-09-25T11:46:57.616000000Z 6 count
source_name 2020-09-25T11:46:57.999000000Z 9 count
source_name 2020-09-25T11:46:58.064000000Z 3 count
source_name 2020-09-25T11:46:58.307000000Z 6 count
source_name 2020-09-25T11:47:01.011000000Z 8 count
source_name 2020-09-25T11:47:03.634000000Z 6 count
source_name 2020-09-25T11:47:03.700000000Z 8 count
source_name 2020-09-25T11:47:04.144000000Z 8 count
The end goal is to plot this out in Grafana.
Is there also maybe a way to convert back and forth between these two paradigms? Whenever it's possible ofcourse