1.6 KiB
1.6 KiB
timescaledb
https://github.com/timescale/timescaledb
Test
Récup datas
ssh grab-4
docker exec -t client-demo-postgres-1 pg_dump -Fc -U postgres -d postgres -f /tmp/backup_postgres.dump
docker cp client-demo-postgres-1:/tmp/backup_postgres.dump /tmp/backup_postgres.dump
exit
cd /tmp
scp grab-4:/tmp/backup_postgres.dump .
pg_restore -c -x -t mesure -d postgres -h localhost -U postgres -W backup_postgres.dump
pg_restore -c -x -I mesure_idx1 -d postgres -h localhost -U postgres -W backup_postgres.dump
pg_restore -c -x -I mesure_idx2 -d postgres -h localhost -U postgres -W backup_postgres.dump
Création d'une hypertable
CREATE TABLE mesure_ng (
"date" TIMESTAMPTZ,
id_captation INT NOT NULL,
valeur float4 NOT NULL,
) WITH (
tsdb.hypertable,
timescaledb.segmentby = 'id_captation',
timescaledb.orderby='time DESC'
)
INSERT INTO mesure_ng ("date", id_captation, valeur)
SELECT "date", id_captation, valeur
FROM mesure
Ex. de requête
SELECT
time_bucket('1 hour', "date") AS heure,
round(
average(
time_weight('linear', "date", valeur)
)
) AS moyenne_conso,
COUNT(*) AS nombre_de_mesures
FROM
mesure_ng
WHERE
"date" BETWEEN '2026-03-01 00:00:00' AND '2026-03-31 23:59:59'
and id_captation = 59 -- puissance PAC
GROUP BY
heure
ORDER BY
heure;
Continuous aggregates (WIP)
- CREATE MATERIALIZED VIEW
- SELECT add_continuous_aggregate_policy
- supprimer les "vieilles" données de mesure_ng