Introduzido em: v25.6.0
Função de agregação para reamostragem de séries temporais para o cálculo de irate e idelta no estilo do PromQL.
Função de agregação que recebe séries temporais como pares de timestamps e valores e armazena no máximo 2 amostras mais recentes. Esta função de agregação foi projetada para ser usada com uma visão materializada e uma tabela agregada que armazena séries temporais reamostradas para timestamps alinhados à grade.
A tabela agregada armazena apenas os 2 últimos valores de cada timestamp alinhado. Isso permite calcular irate e idelta no estilo do PromQL lendo muito menos dados do que os armazenados na tabela bruta.
Esta função é experimental; habilite-a definindo allow_experimental_ts_to_grid_aggregate_function=true.
Sintaxe
timeSeriesLastTwoSamples(timestamp, value)
Argumentos
Valor retornado
Retorna um par de arrays de mesmo comprimento, de 0 a 2. O primeiro array contém os timestamps da série temporal amostrada; o segundo contém os valores correspondentes da série temporal. Tuple(Array(DateTime), Array(Float64))
Exemplos
Tabela de exemplo para dados brutos e uma tabela para armazenar dados reamostrados
-- Tabela para dados brutos
CREATE TABLE t_raw_timeseries
(
metric_id UInt64,
timestamp DateTime64(3, 'UTC') CODEC(DoubleDelta, ZSTD),
value Float64 CODEC(DoubleDelta)
)
ENGINE = MergeTree()
ORDER BY (metric_id, timestamp);
-- Tabela com dados reamostrados para passos de tempo maiores (15 seg)
CREATE TABLE t_resampled_timeseries_15_sec
(
metric_id UInt64,
grid_timestamp DateTime('UTC') CODEC(DoubleDelta, ZSTD), -- Timestamp alinhado a 15 seg
samples AggregateFunction(timeSeriesLastTwoSamples, DateTime64(3, 'UTC'), Float64)
)
ENGINE = AggregatingMergeTree()
ORDER BY (metric_id, grid_timestamp);
-- MV para popular a tabela reamostrada
CREATE MATERIALIZED VIEW mv_resampled_timeseries TO t_resampled_timeseries_15_sec
(
metric_id UInt64,
grid_timestamp DateTime('UTC') CODEC(DoubleDelta, ZSTD),
samples AggregateFunction(timeSeriesLastTwoSamples, DateTime64(3, 'UTC'), Float64)
)
AS SELECT
metric_id,
ceil(toUnixTimestamp(timestamp + interval 999 millisecond) / 15, 0) * 15 AS grid_timestamp, -- Arredonda o timestamp para cima até o próximo ponto da grade
initializeAggregation('timeSeriesLastTwoSamplesState', timestamp, value) AS samples
FROM t_raw_timeseries
ORDER BY metric_id, grid_timestamp;
-- Inserir alguns dados
INSERT INTO t_raw_timeseries(metric_id, timestamp, value) SELECT number%10 AS metric_id, '2024-12-12 12:00:00'::DateTime64(3, 'UTC') + interval ((number/10)%100)*900 millisecond as timestamp, number%3+number%29 AS value FROM numbers(1000);
-- Verificar dados brutos
SELECT *
FROM t_raw_timeseries
WHERE metric_id = 3 AND timestamp BETWEEN '2024-12-12 12:00:12' AND '2024-12-12 12:00:31'
ORDER BY metric_id, timestamp;
3 2024-12-12 12:00:12.870 29
3 2024-12-12 12:00:13.770 8
3 2024-12-12 12:00:14.670 19
3 2024-12-12 12:00:15.570 30
3 2024-12-12 12:00:16.470 9
3 2024-12-12 12:00:17.370 20
3 2024-12-12 12:00:18.270 2
3 2024-12-12 12:00:19.170 10
3 2024-12-12 12:00:20.070 21
3 2024-12-12 12:00:20.970 3
3 2024-12-12 12:00:21.870 11
3 2024-12-12 12:00:22.770 22
3 2024-12-12 12:00:23.670 4
3 2024-12-12 12:00:24.570 12
3 2024-12-12 12:00:25.470 23
3 2024-12-12 12:00:26.370 5
3 2024-12-12 12:00:27.270 13
3 2024-12-12 12:00:28.170 24
3 2024-12-12 12:00:29.069 6
3 2024-12-12 12:00:29.969 14
3 2024-12-12 12:00:30.869 25
Consulte as 2 últimas amostras para os timestamps ‘2024-12-12 12:00:15’ e ‘2024-12-12 12:00:30’
-- Verificar dados reamostrados
SELECT metric_id, grid_timestamp, (finalizeAggregation(samples).1 as timestamp, finalizeAggregation(samples).2 as value)
FROM t_resampled_timeseries_15_sec
WHERE metric_id = 3 AND grid_timestamp BETWEEN '2024-12-12 12:00:15' AND '2024-12-12 12:00:30'
ORDER BY metric_id, grid_timestamp;
3 2024-12-12 12:00:15 (['2024-12-12 12:00:14.670','2024-12-12 12:00:13.770'],[19,8])
3 2024-12-12 12:00:30 (['2024-12-12 12:00:29.969','2024-12-12 12:00:29.069'],[14,6])
Calcular idelta e irate com base nos dados brutos
-- A tabela agregada armazena apenas os 2 últimos valores para cada timestamp alinhado de 15 segundos.
-- Isso permite calcular irate e idelta no estilo do PromQL lendo muito menos dados do que os armazenados na tabela bruta.
WITH
'2024-12-12 12:00:15'::DateTime64(3,'UTC') AS start_ts, -- início da grade de timestamps
start_ts + INTERVAL 60 SECOND AS end_ts, -- fim da grade de timestamps
15 AS step_seconds, -- passo da grade de timestamps
45 AS window_seconds -- janela de "staleness"
SELECT
metric_id,
timeSeriesInstantDeltaToGrid(start_ts, end_ts, step_seconds, window_seconds)(timestamp, value),
timeSeriesInstantRateToGrid(start_ts, end_ts, step_seconds, window_seconds)(timestamp, value)
FROM t_raw_timeseries
WHERE metric_id = 3 AND timestamp BETWEEN start_ts - interval window_seconds seconds AND end_ts
GROUP BY metric_id;
3 [11,8,-18,8,11] [12.222222222222221,8.88888888888889,1.1111111111111112,8.88888888888889,12.222222222222221]
Calcule idelta e irate com base nos dados reamostrados
WITH
'2024-12-12 12:00:15'::DateTime64(3,'UTC') AS start_ts, -- início da grade de timestamps
start_ts + INTERVAL 60 SECOND AS end_ts, -- fim da grade de timestamps
15 AS step_seconds, -- passo da grade de timestamps
45 AS window_seconds -- janela de "staleness"
SELECT
metric_id,
timeSeriesInstantDeltaToGrid(start_ts, end_ts, step_seconds, window_seconds)(timestamps, values),
timeSeriesInstantRateToGrid(start_ts, end_ts, step_seconds, window_seconds)(timestamps, values)
FROM (
SELECT
metric_id,
finalizeAggregation(samples).1 AS timestamps,
finalizeAggregation(samples).2 AS values
FROM t_resampled_timeseries_15_sec
WHERE metric_id = 3 AND grid_timestamp BETWEEN start_ts - interval window_seconds seconds AND end_ts
)
GROUP BY metric_id;
3 [11,8,-18,8,11] [12.222222222222221,8.88888888888889,1.1111111111111112,8.88888888888889,12.222222222222221]