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* slow sql query for big items
@ 2026-03-28 07:07 Hua W Peng <[email protected]>
2026-03-28 13:21 ` Re: slow sql query for big items Ron Johnson <[email protected]>
0 siblings, 1 reply; 2+ messages in thread
From: Hua W Peng @ 2026-03-28 07:07 UTC (permalink / raw)
To: [email protected]
Hello,
I have a common table for telemetry data. the stru is:
Column | Type | Collation | Nullable |
Default
------------------------+--------------------------+-----------+----------+---------
record_time | timestamp with time zone | | not null |
station_name | text | | |
feeder_gis_id | text | | |
switch_name | text | | |
switch_oid | text | | not null |
switch_gis_id | text | | |
switch_status | integer | | |
switch_status_quality | integer | | |
active_power | numeric(18,6) | | |
active_power_quality | integer | | |
reactive_power | numeric(18,6) | | |
reactive_power_quality | integer | | |
current_a | numeric(18,6) | | |
current_a_quality | integer | | |
current_b | numeric(18,6) | | |
current_b_quality | integer | | |
current_c | numeric(18,6) | | |
current_c_quality | integer | | |
voltage_uab | numeric(18,6) | | |
voltage_uab_quality | integer | | |
voltage_ubc | numeric(18,6) | | |
voltage_ubc_quality | integer | | |
voltage_uca | numeric(18,6) | | |
voltage_uca_quality | integer | | |
created_at | timestamp with time zone | | |
now()
Indexes:
"dms_data_gzdy_pkey" PRIMARY KEY, btree (record_time, switch_oid)
"dms_data_gzdy_record_time_idx" btree (record_time DESC)
"idx_dms_feeder_gis_id" btree (feeder_gis_id, record_time)
"idx_dms_station_name" btree (station_name, record_time)
"idx_dms_switch_oid" btree (switch_oid, record_time)
Data records are growing by about *10 million* every day, reaching *300
million* per month. In this case, even a simple COUNT(*) query becomes
extremely slow, taking about 7-8 minutes to finish.
I am running PostgreSQL 14 on Ubuntu 22.04 with a 24GB shared buffer.
And, though in our test env we have timescaledb enabled:
Triggers:
ts_insert_blocker BEFORE INSERT ON dms_data_gzdy FOR EACH ROW EXECUTE
FUNCTION _timescaledb_functions.insert_blocker()
Number of child tables: 9 (Use \d+ to list them.)
But in production env there is no timescaledb which can't be installed as
well.
Can you help me?
Thanks.
^ permalink raw reply [nested|flat] 2+ messages in thread
* Re: slow sql query for big items
2026-03-28 07:07 slow sql query for big items Hua W Peng <[email protected]>
@ 2026-03-28 13:21 ` Ron Johnson <[email protected]>
0 siblings, 0 replies; 2+ messages in thread
From: Ron Johnson @ 2026-03-28 13:21 UTC (permalink / raw)
To: pgsql-general
On Sat, Mar 28, 2026 at 3:07 AM Hua W Peng <[email protected]> wrote:
> Hello,
>
> I have a common table for telemetry data. the stru is:
>
> Column | Type | Collation | Nullable
> | Default
>
>
> ------------------------+--------------------------+-----------+----------+---------
>
> record_time | timestamp with time zone | | not null
> |
>
> station_name | text | |
> |
>
> feeder_gis_id | text | |
> |
>
> switch_name | text | |
> |
>
> switch_oid | text | | not null
> |
>
> switch_gis_id | text | |
> |
>
> switch_status | integer | |
> |
>
> switch_status_quality | integer | |
> |
>
> active_power | numeric(18,6) | |
> |
>
> active_power_quality | integer | |
> |
>
> reactive_power | numeric(18,6) | |
> |
>
> reactive_power_quality | integer | |
> |
>
> current_a | numeric(18,6) | |
> |
>
> current_a_quality | integer | |
> |
>
> current_b | numeric(18,6) | |
> |
>
> current_b_quality | integer | |
> |
>
> current_c | numeric(18,6) | |
> |
>
> current_c_quality | integer | |
> |
>
> voltage_uab | numeric(18,6) | |
> |
>
> voltage_uab_quality | integer | |
> |
>
> voltage_ubc | numeric(18,6) | |
> |
>
> voltage_ubc_quality | integer | |
> |
>
> voltage_uca | numeric(18,6) | |
> |
>
> voltage_uca_quality | integer | |
> |
>
> created_at | timestamp with time zone | | |
> now()
>
> Indexes:
>
> "dms_data_gzdy_pkey" PRIMARY KEY, btree (record_time, switch_oid)
>
> "dms_data_gzdy_record_time_idx" btree (record_time DESC)
>
> "idx_dms_feeder_gis_id" btree (feeder_gis_id, record_time)
>
> "idx_dms_station_name" btree (station_name, record_time)
>
> "idx_dms_switch_oid" btree (switch_oid, record_time)
>
>
> Data records are growing by about *10 million* every day, reaching *300
> million* per month.
>
How many months of data?
Is the production table partitioned? If so, by what date range?
> In this case, even a simple COUNT(*) query becomes extremely slow, taking
> about 7-8 minutes to finish.
>
> I am running PostgreSQL 14
>
What minor version?
> on Ubuntu 22.04 with a 24GB shared buffer.
>
Is that 25% of total RAM?
What's the effective_cache_size?
And, though in our test env we have timescaledb enabled:
>
>
> Triggers:
>
> ts_insert_blocker BEFORE INSERT ON dms_data_gzdy FOR EACH ROW EXECUTE
> FUNCTION _timescaledb_functions.insert_blocker()
>
> Number of child tables: 9 (Use \d+ to list them.)
>
>
> But in production env there is no timescaledb which can't be installed as
> well.
>
Laurenz is right: installing and using timescale in your *test* system *tests
timescale*. Why are you testing timescale when you can't install it in prod?
--
Death to <Redacted>, and butter sauce.
Don't boil me, I'm still alive.
<Redacted> lobster!
^ permalink raw reply [nested|flat] 2+ messages in thread
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2026-03-28 07:07 slow sql query for big items Hua W Peng <[email protected]>
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