mirror of
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This simplifies manual usage of the APIs. For example, the following query would return the results over the 2022 year. /api/v1/query_range?start=2022&end=2023&step=1d&query=... This is equivalent to: /api/v1/query_range?start=2022-01-01T00:00:00Z&end=2023-01-01T00:00:00Z&step=1d&query=...
882 lines
41 KiB
Markdown
882 lines
41 KiB
Markdown
---
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sort: 22
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---
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# Key concepts
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## Data model
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### What is a metric
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Simply put, `metric` is a numeric measure or observation of something.
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The most common use-cases for metrics are:
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- check how the system behaves at the particular time period;
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- correlate behavior changes to other measurements;
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- observe or forecast trends;
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- trigger events (alerts) if the metric exceeds a threshold.
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### Structure of a metric
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Let's start with an example. To track how many requests our application serves, we'll define a metric with the
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name `requests_total`.
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You can be more specific here by saying `requests_success_total` (for only successful requests)
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or `request_errors_total` (for requests which failed). Choosing a metric name is very important and supposed to clarify
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what is actually measured to every person who reads it, just like **variable names** in programming.
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Every metric can contain additional meta-information in the form of label-value pairs:
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```
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requests_total{path="/", code="200"}
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requests_total{path="/", code="403"}
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```
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The meta-information - a set of `labels` in curly braces - gives us a context for which `path` and with what `code`
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the `request` was served. Label-value pairs are always of a `string` type. VictoriaMetrics data model is schemaless,
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which means there is no need to define metric names or their labels in advance. User is free to add or change ingested
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metrics anytime.
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Actually, the metric's name is also a label with a special name `__name__`. So the following two series are identical:
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```
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requests_total{path="/", code="200"}
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{__name__="requests_total", path="/", code="200"}
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```
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#### Time series
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A combination of a metric name and its labels defines a `time series`. For example,
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`requests_total{path="/", code="200"}` and `requests_total{path="/", code="403"}`
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are two different time series because they have different values for `code` label.
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The number of unique time series has an impact on database resource usage.
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See [what is an active time series](https://docs.victoriametrics.com/FAQ.html#what-is-an-active-time-series) and
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[what is high churn rate](https://docs.victoriametrics.com/FAQ.html#what-is-high-churn-rate) docs for details.
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#### Cardinality
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The number of unique [time series](#time-series) is named `cardinality`. Too big number of unique time series is named `high cardinality`.
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High cardinality may result in increased resource usage at VictoriaMetrics.
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See [these docs](https://docs.victoriametrics.com/FAQ.html#what-is-high-cardinality) for more details.
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#### Raw samples
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Every unique time series may consist of an arbitrary number of `(value, timestamp)` data points (aka `raw samples`) sorted by `timestamp`.
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The `value` is a [double-precision floating-point number](https://en.wikipedia.org/wiki/Double-precision_floating-point_format).
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The `timestamp` is a [Unix timestamp](https://en.wikipedia.org/wiki/Unix_time) with millisecond precision.
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Below is an example of a single raw sample
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in [Prometheus text exposition format](https://github.com/prometheus/docs/blob/main/content/docs/instrumenting/exposition_formats.md#text-based-format):
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```
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requests_total{path="/", code="200"} 123 4567890
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```
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- The `requests_total{path="/", code="200"}` identifies the associated time series for the given sample.
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- The `123` is a sample value.
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- The `4567890` is an optional timestamp for the sample. If it is missing,
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then the current timestamp is used when storing the sample in VictoriaMetrics.
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### Types of metrics
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Internally, VictoriaMetrics does not have the notion of a metric type. The concept of a metric
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type exists specifically to help users to understand how the metric was measured. There are 4 common metric types.
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#### Counter
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Counter is a metric, which counts some events. Its value increases or stays the same over time.
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It cannot decrease in general case. The only exception is e.g. `counter reset`,
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when the metric resets to zero. The `counter reset` can occur when the service, which exposes the counter, restarts.
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So, the `counter` metric shows the number of observed events since the service start.
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In programming, `counter` is a variable that you **increment** each time something happens.
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<img src="keyConcepts_counter.png">
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`vm_http_requests_total` is a typical example of a counter. The interpretation of a graph
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above is that time series `vm_http_requests_total{instance="localhost:8428", job="victoriametrics", path="api/v1/query_range"}`
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was rapidly changing from 1:38 pm to 1:39 pm, then there were no changes until 1:41 pm.
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Counter is used for measuring the number of events, like the number of requests, errors, logs, messages, etc.
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The most common [MetricsQL](#metricsql) functions used with counters are:
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* [rate](https://docs.victoriametrics.com/MetricsQL.html#rate) - calculates the average per-second speed of metric's change.
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For example, `rate(requests_total)` shows how many requests are served per second on average;
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* [increase](https://docs.victoriametrics.com/MetricsQL.html#increase) - calculates the growth of a metric on the given
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time period specified in square brackets.
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For example, `increase(requests_total[1h])` shows the number of requests served over the last hour.
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It is OK to have fractional counters. For example, `request_duration_seconds_sum` counter may sum the durations of all the requests.
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Every duration may have a fractional value in seconds, e.g. `0.5` of a second. So the cumulative sum of all the request durations
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may be fractional too.
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It is recommended to put `_total`, `_sum` or `_count` suffix to `counter` metric names, so such metrics can be easily differentiated
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by humans from other metric types.
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#### Gauge
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Gauge is used for measuring a value that can go up and down:
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<img src="keyConcepts_gauge.png">
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The metric `process_resident_memory_anon_bytes` on the graph shows the memory usage of the application at every given time.
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It is changing frequently, going up and down showing how the process allocates and frees the memory.
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In programming, `gauge` is a variable to which you **set** a specific value as it changes.
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Gauge is used in the following scenarios:
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* measuring temperature, memory usage, disk usage etc;
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* storing the state of some process. For example, gauge `config_reloaded_successful` can be set to `1` if everything is
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good, and to `0` if configuration failed to reload;
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* storing the timestamp when the event happened. For example, `config_last_reload_success_timestamp_seconds`
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can store the timestamp of the last successful configuration reload.
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The most common [MetricsQL](#metricsql) functions used with gauges are [aggregation functions](#aggregation-and-grouping-functions)
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and [rollup functions](https://docs.victoriametrics.com/MetricsQL.html#rollup-functions).
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#### Histogram
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Historgram is a set of [counter](#counter) metrics with different `vmrange` or `le` labels.
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The `vmrange` or `le` labels define measurement boundaries of a particular bucket.
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When the observed measurement hits a particular bucket, then the corresponding counter is incremented.
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Histogram buckets usually have `_bucket` suffix in their names.
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For example, VictoriaMetrics tracks the distribution of rows processed per query with the `vm_rows_read_per_query` histogram.
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The exposition format for this histogram has the following form:
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```
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vm_rows_read_per_query_bucket{vmrange="4.084e+02...4.642e+02"} 2
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vm_rows_read_per_query_bucket{vmrange="5.275e+02...5.995e+02"} 1
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vm_rows_read_per_query_bucket{vmrange="8.799e+02...1.000e+03"} 1
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vm_rows_read_per_query_bucket{vmrange="1.468e+03...1.668e+03"} 3
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vm_rows_read_per_query_bucket{vmrange="1.896e+03...2.154e+03"} 4
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vm_rows_read_per_query_sum 15582
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vm_rows_read_per_query_count 11
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```
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The `vm_rows_read_per_query_bucket{vmrange="4.084e+02...4.642e+02"} 2` line means
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that there were 2 queries with the number of rows in the range `(408.4 - 464.2]`
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since the last VictoriaMetrics start.
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The counters ending with `_bucket` suffix allow estimating arbitrary percentile
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for the observed measurement with the help of [histogram_quantile](https://docs.victoriametrics.com/MetricsQL.html#histogram_quantile)
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function. For example, the following query returns the estimated 99th percentile
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on the number of rows read per each query during the last hour (see `1h` in square brackets):
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```metricsql
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histogram_quantile(0.99, sum(increase(vm_rows_read_per_query_bucket[1h])) by (vmrange))
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```
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This query works in the following way:
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1. The `increase(vm_rows_read_per_query_bucket[1h])` calculates per-bucket per-instance
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number of events over the last hour.
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2. The `sum(...) by (vmrange)` calculates per-bucket events by summing per-instance buckets
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with the same `vmrange` values.
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3. The `histogram_quantile(0.99, ...)` calculates 99th percentile over `vmrange` buckets returned at step 2.
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Histogram metric type exposes two additional counters ending with `_sum` and `_count` suffixes:
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- the `vm_rows_read_per_query_sum` is a sum of all the observed measurements,
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e.g. the sum of rows served by all the queries since the last VictoriaMetrics start.
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- the `vm_rows_read_per_query_count` is the total number of observed events,
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e.g. the total number of observed queries since the last VictoriaMetrics start.
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These counters allow calculating the average measurement value on a particular lookbehind window.
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For example, the following query calculates the average number of rows read per query
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during the last 5 minutes (see `5m` in square brackets):
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```metricsql
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increase(vm_rows_read_per_query_sum[5m]) / increase(vm_rows_read_per_query_count[5m])
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```
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The `vm_rows_read_per_query` histogram may be used in Go application in the following way
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by using the [github.com/VictoriaMetrics/metrics](https://github.com/VictoriaMetrics/metrics) package:
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```go
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// define the histogram
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rowsReadPerQuery := metrics.NewHistogram(`vm_rows_read_per_query`)
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// use the histogram during processing
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for _, query := range queries {
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rowsReadPerQuery.Update(float64(len(query.Rows)))
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}
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```
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Now let's see what happens each time when `rowsReadPerQuery.Update` is called:
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* counter `vm_rows_read_per_query_sum` is incremented by value of `len(query.Rows)` expression;
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* counter `vm_rows_read_per_query_count` increments by 1;
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* counter `vm_rows_read_per_query_bucket` gets incremented only if observed value is within the
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range (`bucket`) defined in `vmrange`.
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Such a combination of `counter` metrics allows
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plotting [Heatmaps in Grafana](https://grafana.com/docs/grafana/latest/visualizations/heatmap/)
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and calculating [quantiles](https://prometheus.io/docs/practices/histograms/#quantiles):
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<img src="keyConcepts_histogram.png">
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Grafana doesn't understand buckets with `vmrange` labels, so the [prometheus_buckets](https://docs.victoriametrics.com/MetricsQL.html#prometheus_buckets)
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function must be used for converting buckets with `vmrange` labels to buckets with `le` labels before building heatmaps in Grafana.
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Histograms are usually used for measuring the distribution of latency, sizes of elements (batch size, for example) etc. There are two
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implementations of a histogram supported by VictoriaMetrics:
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1. [Prometheus histogram](https://prometheus.io/docs/practices/histograms/). The canonical histogram implementation is
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supported by most of
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the [client libraries for metrics instrumentation](https://prometheus.io/docs/instrumenting/clientlibs/). Prometheus
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histogram requires a user to define ranges (`buckets`) statically.
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2. [VictoriaMetrics histogram](https://valyala.medium.com/improving-histogram-usability-for-prometheus-and-grafana-bc7e5df0e350)
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supported by [VictoriaMetrics/metrics](https://github.com/VictoriaMetrics/metrics) instrumentation library.
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Victoriametrics histogram automatically handles bucket boundaries, so users don't need to think about them.
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We recommend reading the following articles before you start using histograms:
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1. [Prometheus histogram](https://prometheus.io/docs/concepts/metric_types/#histogram)
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2. [Histograms and summaries](https://prometheus.io/docs/practices/histograms/)
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3. [How does a Prometheus Histogram work?](https://www.robustperception.io/how-does-a-prometheus-histogram-work)
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4. [Improving histogram usability for Prometheus and Grafana](https://valyala.medium.com/improving-histogram-usability-for-prometheus-and-grafana-bc7e5df0e350)
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#### Summary
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Summary metric type is quite similar to [histogram](#histogram) and is used for
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[quantiles](https://prometheus.io/docs/practices/histograms/#quantiles) calculations. The main difference
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is that calculations are made on the client-side, so metrics exposition format already contains pre-defined
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quantiles:
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```
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go_gc_duration_seconds{quantile="0"} 0
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go_gc_duration_seconds{quantile="0.25"} 0
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go_gc_duration_seconds{quantile="0.5"} 0
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go_gc_duration_seconds{quantile="0.75"} 8.0696e-05
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go_gc_duration_seconds{quantile="1"} 0.001222168
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go_gc_duration_seconds_sum 0.015077078
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go_gc_duration_seconds_count 83
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```
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The visualisation of summaries is pretty straightforward:
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<img src="keyConcepts_summary.png">
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Such an approach makes summaries easier to use but also puts significant limitations compared to [histograms](#histogram):
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- It is impossible to calculate quantile over multiple summary metrics, e.g. `sum(go_gc_duration_seconds{quantile="0.75"})`,
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`avg(go_gc_duration_seconds{quantile="0.75"})` or `max(go_gc_duration_seconds{quantile="0.75"})`
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won't return the expected 75th percentile over `go_gc_duration_seconds` metrics collected from multiple instances
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of the application. See [this article](https://latencytipoftheday.blogspot.de/2014/06/latencytipoftheday-you-cant-average.html) for details.
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- It is impossible to calculate quantiles other than the already pre-calculated quantiles.
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- It is impossible to calculate quantiles for measurements collected over an arbitrary time range. Usually, `summary`
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quantiles are calculated over a fixed time range such as the last 5 minutes.
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Summaries are usually used for tracking the pre-defined percentiles for latency, sizes of elements (batch size, for example) etc.
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### Instrumenting application with metrics
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As was said at the beginning of the [types of metrics](#types-of-metrics) section, metric type defines how it was
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measured. VictoriaMetrics TSDB doesn't know about metric types. All it sees are metric names, labels, values, and timestamps.
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What are these metrics, what do they measure, and how - all this depends on the application which emits them.
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To instrument your application with metrics compatible with VictoriaMetrics we recommend
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using [github.com/VictoriaMetrics/metrics](https://github.com/VictoriaMetrics/metrics) package.
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See more details on how to use it in [this article](https://victoriametrics.medium.com/how-to-monitor-go-applications-with-victoriametrics-c04703110870).
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VictoriaMetrics is also compatible with [Prometheus client libraries for metrics instrumentation](https://prometheus.io/docs/instrumenting/clientlibs/).
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#### Naming
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We recommend following [Prometheus naming convention for metrics](https://prometheus.io/docs/practices/naming/). There
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are no strict restrictions, so any metric name and labels are accepted by VictoriaMetrics.
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But the convention helps to keep names meaningful, descriptive, and clear to other people.
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Following convention is a good practice.
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#### Labels
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Every measurement can contain an arbitrary number of `key="value"` labels. The good practice is to keep this number limited.
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Otherwise, it would be difficult to deal with measurements containing a big number of labels.
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By default, VictoriaMetrics limits the number of labels per measurement to `30` and drops other labels.
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This limit can be changed via `-maxLabelsPerTimeseries` command-line flag if necessary (but this isn't recommended).
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Every label value can contain an arbitrary string value. The good practice is to use short and meaningful label values to
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describe the attribute of the metric, not to tell the story about it. For example, label-value pair
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`environment="prod"` is ok, but `log_message="long log message with a lot of details..."` is not ok. By default,
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VcitoriaMetrics limits label's value size with 16kB. This limit can be changed via `-maxLabelValueLen` command-line flag.
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It is very important to keep under control the number of unique label values, since every unique label value
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leads to a new [time series](#time-series). Try to avoid using volatile label values such as session ID or query ID in order to
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avoid excessive resource usage and database slowdown.
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## Write data
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VictoriaMetrics supports both models used in modern monitoring applications: [push](#push-model) and [pull](#pull-model).
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### Push model
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Client regularly sends the collected metrics to the server in the push model:
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<img src="keyConcepts_push_model.png">
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The client (application) decides when and where to send its metrics. VictoriaMetrics supports the following protocols
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for data ingestion (aka `push protocols`):
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* [Prometheus remote write API](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#prometheus-setup).
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* [Prometheus text exposition format](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-import-data-in-prometheus-exposition-format).
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* [DataDog protocol](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-send-data-from-datadog-agent).
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* [InfluxDB line protocol](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-send-data-from-influxdb-compatible-agents-such-as-telegraf)
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over HTTP, TCP and UDP.
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* [Graphite plaintext protocol](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-send-data-from-graphite-compatible-agents-such-as-statsd)
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with [tags](https://graphite.readthedocs.io/en/latest/tags.html#carbon).
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* [OpenTSDB put message](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#sending-data-via-telnet-put-protocol).
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* [HTTP OpenTSDB /api/put requests](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#sending-opentsdb-data-via-http-apiput-requests).
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* [JSON line format](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-import-data-in-json-line-format).
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* [Arbitrary CSV data](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-import-csv-data).
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All the protocols are fully compatible with VictoriaMetrics [data model](#data-model) and can be used in production.
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We recommend using the [github.com/VictoriaMetrics/metrics](https://github.com/VictoriaMetrics/metrics) package
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for pushing application metrics to VictoriaMetrics.
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It is also possible to use already existing clients compatible with the protocols listed above
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like [Telegraf](https://github.com/influxdata/telegraf)
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for [InfluxDB line protocol](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-send-data-from-influxdb-compatible-agents-such-as-telegraf).
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Creating custom clients or instrumenting the application for metrics writing is as easy as sending a POST request:
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```console
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curl -d '{"metric":{"__name__":"foo","job":"node_exporter"},"values":[0,1,2],"timestamps":[1549891472010,1549891487724,1549891503438]}' -X POST 'http://localhost:8428/api/v1/import'
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```
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It is allowed to push/write metrics to [single-node VictoriaMetrics](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html),
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to [cluster component vminsert](https://docs.victoriametrics.com/Cluster-VictoriaMetrics.html#architecture-overview)
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and to [vmagent](https://docs.victoriametrics.com/vmagent.html).
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The pros of push model:
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* Simpler configuration at VictoriaMetrics side - there is no need to configure VictoriaMetrics with locations of the monitored applications.
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There is no need in complex [service discovery schemes](https://docs.victoriametrics.com/sd_configs.html).
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* Simpler security setup - there is no need to set up access from VictoriaMetrics to each monitored application.
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See [Foiled by the Firewall: A Tale of Transition From Prometheus to VictoriaMetrics](https://www.percona.com/blog/2020/12/01/foiled-by-the-firewall-a-tale-of-transition-from-prometheus-to-victoriametrics/)
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elaborating more on why Percona switched from pull to push model.
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The cons of push protocol:
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* Increased configuration complexity for monitored applications.
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Every application needs to be individually configured with the address of the monitoring system
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for metrics delivery. It also needs to be configured with the interval between metric pushes
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and the strategy in case of metric delivery failure.
|
|
* Non-trivial setup for metrics' delivery into multiple monitoring systems.
|
|
* It may be hard to tell whether the application went down or just stopped sending metrics for a different reason.
|
|
* Applications can overload the monitoring system by pushing metrics at too short intervals.
|
|
|
|
### Pull model
|
|
|
|
Pull model is an approach popularized by [Prometheus](https://prometheus.io/), where the monitoring system decides when
|
|
and where to pull metrics from:
|
|
|
|
<img src="keyConcepts_pull_model.png">
|
|
|
|
In pull model, the monitoring system needs to be aware of all the applications it needs to monitor. The metrics are
|
|
scraped (pulled) from the known applications (aka `scrape targets`) via HTTP protocol on a regular basis (aka `scrape_interval`).
|
|
|
|
VictoriaMetrics supports discovering Prometheus-compatible targets and scraping metrics from them in the same way as Prometheus does -
|
|
see [these docs](https://docs.victoriametrics.com/#how-to-scrape-prometheus-exporters-such-as-node-exporter).
|
|
|
|
Metrics scraping is supported by [single-node VictoriaMetrics](https://docs.victoriametrics.com/#how-to-scrape-prometheus-exporters-such-as-node-exporter)
|
|
and by [vmagent](https://docs.victoriametrics.com/vmagent.html).
|
|
|
|
The pros of the pull model:
|
|
|
|
* Easier to debug - VictoriaMetrics knows about all the monitored applications (aka `scrape targets`).
|
|
The `up == 0` query instantly shows unavailable scrape targets.
|
|
The actual information about scrape targets is available at `http://victoriametrics:8428/targets` and `http://vmagent:8429/targets`.
|
|
* Monitoring system controls the frequency of metrics' scrape, so it is easier to control its load.
|
|
* Applications aren't aware of the monitoring system and don't need to implement the logic for metrics delivery.
|
|
|
|
The cons of the pull model:
|
|
|
|
* Harder security setup - monitoring system needs to have access to applications it monitors.
|
|
* Pull model needs non-trivial [service discovery schemes](https://docs.victoriametrics.com/sd_configs.html).
|
|
|
|
### Common approaches for data collection
|
|
|
|
VictoriaMetrics supports both [push](#push-model) and [pull](#pull-model)
|
|
models for data collection. Many installations use exclusively one of these models, or both at once.
|
|
|
|
The most common approach for data collection is using both models:
|
|
|
|
<img src="keyConcepts_data_collection.png">
|
|
|
|
In this approach the additional component is used - [vmagent](https://docs.victoriametrics.com/vmagent.html). Vmagent is
|
|
a lightweight agent whose main purpose is to collect, filter, relabel and deliver metrics to VictoriaMetrics.
|
|
It supports all [push](#push-model) and [pull](#pull-model) protocols mentioned above.
|
|
|
|
The basic monitoring setup of VictoriaMetrics and vmagent is described
|
|
in the [example docker-compose manifest](https://github.com/VictoriaMetrics/VictoriaMetrics/tree/master/deployment/docker).
|
|
In this example vmagent [scrapes a list of targets](https://github.com/VictoriaMetrics/VictoriaMetrics/blob/master/deployment/docker/prometheus.yml)
|
|
and [forwards collected data to VictoriaMetrics](https://github.com/VictoriaMetrics/VictoriaMetrics/blob/9d7da130b5a873be334b38c8d8dec702c9e8fac5/deployment/docker/docker-compose.yml#L15).
|
|
VictoriaMetrics is then used as a [datasource for Grafana](https://github.com/VictoriaMetrics/VictoriaMetrics/blob/master/deployment/docker/provisioning/datasources/datasource.yml)
|
|
installation for querying collected data.
|
|
|
|
VictoriaMetrics components allow building more advanced topologies. For example, vmagents can push metrics from separate datacenters to the central VictoriaMetrics:
|
|
|
|
<img src="keyConcepts_two_dcs.png">
|
|
|
|
VictoriaMetrics in this example may be either [single-node VictoriaMetrics](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html)
|
|
or [VictoriaMetrics Cluster](https://docs.victoriametrics.com/Cluster-VictoriaMetrics.html). Vmagent also allows
|
|
[replicating the same data to multiple destinations](https://docs.victoriametrics.com/vmagent.html#replication-and-high-availability).
|
|
|
|
## Query data
|
|
|
|
VictoriaMetrics provides
|
|
an [HTTP API](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#prometheus-querying-api-usage)
|
|
for serving read queries. The API is used in various integrations such as
|
|
[Grafana](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#grafana-setup). The same API is also used by
|
|
[VMUI](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#vmui) - a graphical User Interface for querying
|
|
and visualizing metrics.
|
|
|
|
The API consists of two main handlers for serving [instant queries](#instant-query) and [range queries](#range-query).
|
|
|
|
### Instant query
|
|
|
|
Instant query executes the query expression at the given timestamp:
|
|
|
|
```
|
|
GET | POST /api/v1/query?query=...&time=...&step=...
|
|
```
|
|
|
|
Params:
|
|
|
|
* `query` - [MetricsQL](https://docs.victoriametrics.com/MetricsQL.html) expression.
|
|
* `time` - optional timestamp when to evaluate the `query`. If `time` is skipped, then the current timestamp is used.
|
|
The `time` param can be specified in [multiple allowed formats](https://docs.victoriametrics.com/#timestamp-formats).
|
|
* `step` - optional max lookback window for searching for raw samples when executing the `query`.
|
|
If `step` is skipped, then it is set to `5m` (5 minutes) by default.
|
|
|
|
To understand how instant queries work, let's begin with a data sample:
|
|
|
|
```
|
|
foo_bar 1.00 1652169600000 # 2022-05-10 10:00:00
|
|
foo_bar 2.00 1652169660000 # 2022-05-10 10:01:00
|
|
foo_bar 3.00 1652169720000 # 2022-05-10 10:02:00
|
|
foo_bar 5.00 1652169840000 # 2022-05-10 10:04:00, one point missed
|
|
foo_bar 5.50 1652169960000 # 2022-05-10 10:06:00, one point missed
|
|
foo_bar 5.50 1652170020000 # 2022-05-10 10:07:00
|
|
foo_bar 4.00 1652170080000 # 2022-05-10 10:08:00
|
|
foo_bar 3.50 1652170260000 # 2022-05-10 10:11:00, two points missed
|
|
foo_bar 3.25 1652170320000 # 2022-05-10 10:12:00
|
|
foo_bar 3.00 1652170380000 # 2022-05-10 10:13:00
|
|
foo_bar 2.00 1652170440000 # 2022-05-10 10:14:00
|
|
foo_bar 1.00 1652170500000 # 2022-05-10 10:15:00
|
|
foo_bar 4.00 1652170560000 # 2022-05-10 10:16:00
|
|
```
|
|
|
|
The data sample contains a list of samples for `foo_bar` time series with time intervals between samples from 1m to 3m. If we
|
|
plot this data sample on the graph, it will have the following form:
|
|
|
|
<p style="text-align: center">
|
|
<a href="keyConcepts_data_samples.png" target="_blank">
|
|
<img src="keyConcepts_data_samples.png" width="500">
|
|
</a>
|
|
</p>
|
|
|
|
To get the value of `foo_bar` metric at some specific moment of time, for example `2022-05-10 10:03:00`, in
|
|
VictoriaMetrics we need to issue an **instant query**:
|
|
|
|
```console
|
|
curl "http://<victoria-metrics-addr>/api/v1/query?query=foo_bar&time=2022-05-10T10:03:00.000Z"
|
|
```
|
|
|
|
```json
|
|
{
|
|
"status": "success",
|
|
"data": {
|
|
"resultType": "vector",
|
|
"result": [
|
|
{
|
|
"metric": {
|
|
"__name__": "foo_bar"
|
|
},
|
|
"value": [
|
|
1652169780,
|
|
"3"
|
|
]
|
|
}
|
|
]
|
|
}
|
|
}
|
|
```
|
|
|
|
In response, VictoriaMetrics returns a single sample-timestamp pair with a value of `3` for the series
|
|
`foo_bar` at the given moment of time `2022-05-10 10:03`. But, if we take a look at the original data sample again,
|
|
we'll see that there is no raw sample at `2022-05-10 10:03`. What happens here if there is no raw sample at the
|
|
requested timestamp - VictoriaMetrics will try to locate the closest sample on the left to the requested timestamp:
|
|
|
|
<p style="text-align: center">
|
|
<a href="keyConcepts_instant_query.png" target="_blank">
|
|
<img src="keyConcepts_instant_query.png" width="500">
|
|
</a>
|
|
</p>
|
|
|
|
|
|
The time range at which VictoriaMetrics will try to locate a missing data sample is equal to `5m`
|
|
by default and can be overridden via `step` parameter.
|
|
|
|
Instant query can return multiple time series, but always only one data sample per series. Instant queries are used in
|
|
the following scenarios:
|
|
|
|
* Getting the last recorded value;
|
|
* For alerts and recording rules evaluation;
|
|
* Plotting Stat or Table panels in Grafana.
|
|
|
|
### Range query
|
|
|
|
Range query executes the query expression at the given time range with the given step:
|
|
|
|
```
|
|
GET | POST /api/v1/query_range?query=...&start=...&end=...&step=...
|
|
```
|
|
|
|
Params:
|
|
* `query` - [MetricsQL](https://docs.victoriametrics.com/MetricsQL.html) expression.
|
|
* `start` - the starting timestamp of the time range for `query` evaluation.
|
|
* `end` - the ending timestamp of the time range for `query` evaluation.
|
|
If the `end` isn't set, then the `end` is automatically set to the current time.
|
|
* `step` - the [interval](https://prometheus.io/docs/prometheus/latest/querying/basics/#time-durations) between datapoints,
|
|
which must be returned from the range query.
|
|
The `query` is executed at `start`, `start+step`, `start+2*step`, ..., `end` timestamps.
|
|
If the `step` isn't set, then it is automatically set to `5m` (5 minutes).
|
|
|
|
The `start` and `end` params can be specified in [multiple allowed formats](https://docs.victoriametrics.com/#timestamp-formats).
|
|
|
|
To get the values of `foo_bar` on the time range from `2022-05-10 09:59:00` to `2022-05-10 10:17:00`, in VictoriaMetrics we
|
|
need to issue a range query:
|
|
|
|
```console
|
|
curl "http://<victoria-metrics-addr>/api/v1/query_range?query=foo_bar&step=1m&start=2022-05-10T09:59:00.000Z&end=2022-05-10T10:17:00.000Z"
|
|
```
|
|
|
|
```json
|
|
{
|
|
"status": "success",
|
|
"data": {
|
|
"resultType": "matrix",
|
|
"result": [
|
|
{
|
|
"metric": {
|
|
"__name__": "foo_bar"
|
|
},
|
|
"values": [
|
|
[
|
|
1652169600,
|
|
"1"
|
|
],
|
|
[
|
|
1652169660,
|
|
"2"
|
|
],
|
|
[
|
|
1652169720,
|
|
"3"
|
|
],
|
|
[
|
|
1652169780,
|
|
"3"
|
|
],
|
|
[
|
|
1652169840,
|
|
"7"
|
|
],
|
|
[
|
|
1652169900,
|
|
"7"
|
|
],
|
|
[
|
|
1652169960,
|
|
"7.5"
|
|
],
|
|
[
|
|
1652170020,
|
|
"7.5"
|
|
],
|
|
[
|
|
1652170080,
|
|
"6"
|
|
],
|
|
[
|
|
1652170140,
|
|
"6"
|
|
],
|
|
[
|
|
1652170260,
|
|
"5.5"
|
|
],
|
|
[
|
|
1652170320,
|
|
"5.25"
|
|
],
|
|
[
|
|
1652170380,
|
|
"5"
|
|
],
|
|
[
|
|
1652170440,
|
|
"3"
|
|
],
|
|
[
|
|
1652170500,
|
|
"1"
|
|
],
|
|
[
|
|
1652170560,
|
|
"4"
|
|
],
|
|
[
|
|
1652170620,
|
|
"4"
|
|
]
|
|
]
|
|
}
|
|
]
|
|
}
|
|
}
|
|
```
|
|
|
|
In response, VictoriaMetrics returns `17` sample-timestamp pairs for the series `foo_bar` at the given time range
|
|
from `2022-05-10 09:59:00` to `2022-05-10 10:17:00`. But, if we take a look at the original data sample again, we'll
|
|
see that it contains only 13 raw samples. What happens here is that the range query is actually
|
|
an [instant query](#instant-query) executed `1 + (start-end)/step` times on the time range from `start` to `end`. If we plot
|
|
this request in VictoriaMetrics the graph will be shown as the following:
|
|
|
|
<p style="text-align: center">
|
|
<a href="keyConcepts_range_query.png" target="_blank">
|
|
<img src="keyConcepts_range_query.png" width="500">
|
|
</a>
|
|
</p>
|
|
|
|
The blue dotted lines on the pic are the moments when the instant query was executed. Since instant query retains the
|
|
ability to locate the missing point, the graph contains two types of points: `real` and `ephemeral` data
|
|
points. `ephemeral` data point always repeats the left closest raw sample (see red arrow on the pic above).
|
|
|
|
This behavior of adding ephemeral data points comes from the specifics of the [pull model](#pull-model):
|
|
|
|
* Metrics are scraped at fixed intervals.
|
|
* Scrape may be skipped if the monitoring system is overloaded.
|
|
* Scrape may fail due to network issues.
|
|
|
|
According to these specifics, the range query assumes that if there is a missing raw sample then it is likely a missed
|
|
scrape, so it fills it with the previous raw sample. The same will work for cases when `step` is lower than the actual
|
|
interval between samples. In fact, if we set `step=1s` for the same request, we'll get about 1 thousand data points in
|
|
response, where most of them are `ephemeral`.
|
|
|
|
Sometimes, the lookbehind window for locating the datapoint isn't big enough and the graph will contain a gap. For range
|
|
queries, lookbehind window isn't equal to the `step` parameter. It is calculated as the median of the intervals between
|
|
the first 20 raw samples in the requested time range. In this way, VictoriaMetrics automatically adjusts the lookbehind
|
|
window to fill gaps and detect stale series at the same time.
|
|
|
|
Range queries are mostly used for plotting time series data over specified time ranges. These queries are extremely
|
|
useful in the following scenarios:
|
|
|
|
* Track the state of a metric on the time interval;
|
|
* Correlate changes between multiple metrics on the time interval;
|
|
* Observe trends and dynamics of the metric change.
|
|
|
|
If you need to export raw samples from VictoriaMetrics, then take a look at [export APIs](https://docs.victoriametrics.com/#how-to-export-time-series).
|
|
|
|
### MetricsQL
|
|
|
|
VictoriaMetrics provide a special query language for executing read queries - [MetricsQL](https://docs.victoriametrics.com/MetricsQL.html).
|
|
It is a [PromQL](https://prometheus.io/docs/prometheus/latest/querying/basics)-like query language with a powerful set of
|
|
functions and features for working specifically with time series data. MetricsQL is backward-compatible with PromQL,
|
|
so it shares most of the query concepts. The basic concepts for PromQL and MetricsQL are
|
|
described [here](https://valyala.medium.com/promql-tutorial-for-beginners-9ab455142085).
|
|
|
|
#### Filtering
|
|
|
|
In sections [instant query](#instant-query) and [range query](#range-query) we've already used MetricsQL to get data for
|
|
metric `foo_bar`. It is as simple as just writing a metric name in the query:
|
|
|
|
```metricsql
|
|
foo_bar
|
|
```
|
|
|
|
A single metric name may correspond to multiple time series with distinct label sets. For example:
|
|
|
|
```metricsql
|
|
requests_total{path="/", code="200"}
|
|
requests_total{path="/", code="403"}
|
|
```
|
|
|
|
To select only time series with specific label value specify the matching condition in curly braces:
|
|
|
|
```metricsql
|
|
requests_total{code="200"}
|
|
```
|
|
|
|
The query above will return all time series with the name `requests_total` and `code="200"`. We use the operator `=` to
|
|
match a label value. For negative match use `!=` operator. Filters also support regex matching `=~` for positive
|
|
and `!~` for negative matching:
|
|
|
|
```metricsql
|
|
requests_total{code=~"2.*"}
|
|
```
|
|
|
|
Filters can also be combined:
|
|
|
|
```metricsql
|
|
requests_total{code=~"200|204", path="/home"}
|
|
```
|
|
|
|
The query above will return all time series with a name `requests_total`, status `code` `200` or `204`and `path="/home"`
|
|
.
|
|
|
|
#### Filtering by name
|
|
|
|
Sometimes it is required to return all the time series for multiple metric names. As was mentioned in
|
|
the [data model section](#data-model), the metric name is just an ordinary label with a special name — `__name__`. So
|
|
filtering by multiple metric names may be performed by applying regexps on metric names:
|
|
|
|
```metricsql
|
|
{__name__=~"requests_(error|success)_total"}
|
|
```
|
|
|
|
The query above is supposed to return series for two metrics: `requests_error_total` and `requests_success_total`.
|
|
|
|
#### Arithmetic operations
|
|
|
|
MetricsQL supports all the basic arithmetic operations:
|
|
|
|
* addition - `+`
|
|
* subtraction - `-`
|
|
* multiplication - `*`
|
|
* division - `/`
|
|
* modulo - `%`
|
|
* power - `^`
|
|
|
|
This allows performing various calculations across multiple metrics.
|
|
For example, the following query calculates the percentage of error requests:
|
|
|
|
```metricsql
|
|
(requests_error_total / (requests_error_total + requests_success_total)) * 100
|
|
```
|
|
|
|
#### Combining multiple series
|
|
|
|
Combining multiple time series with arithmetic operations requires an understanding of matching rules. Otherwise, the
|
|
query may break or may lead to incorrect results. The basics of the matching rules are simple:
|
|
|
|
* MetricsQL engine strips metric names from all the time series on the left and right side of the arithmetic operation
|
|
without touching labels.
|
|
* For each time series on the left side MetricsQL engine searches for the corresponding time series on the right side
|
|
with the same set of labels, applies the operation for each data point and returns the resulting time series with the
|
|
same set of labels. If there are no matches, then the time series is dropped from the result.
|
|
* The matching rules may be augmented with `ignoring`, `on`, `group_left` and `group_right` modifiers.
|
|
See [these docs](https://prometheus.io/docs/prometheus/latest/querying/operators/#vector-matching) for details.
|
|
|
|
#### Comparison operations
|
|
|
|
MetricsQL supports the following comparison operators:
|
|
|
|
* equal - `==`
|
|
* not equal - `!=`
|
|
* greater - `>`
|
|
* greater-or-equal - `>=`
|
|
* less - `<`
|
|
* less-or-equal - `<=`
|
|
|
|
These operators may be applied to arbitrary MetricsQL expressions as with arithmetic operators. The result of the
|
|
comparison operation is time series with only matching data points. For instance, the following query would return
|
|
series only for processes where memory usage exceeds `100MB`:
|
|
|
|
```metricsql
|
|
process_resident_memory_bytes > 100*1024*1024
|
|
```
|
|
|
|
#### Aggregation and grouping functions
|
|
|
|
MetricsQL allows aggregating and grouping of time series. Time series are grouped by the given set of labels and then the
|
|
given aggregation function is applied individually per each group. For instance, the following query returns
|
|
summary memory usage for each `job`:
|
|
|
|
```metricsql
|
|
sum(process_resident_memory_bytes) by (job)
|
|
```
|
|
|
|
See [docs for aggregate functions in MetricsQL](https://docs.victoriametrics.com/MetricsQL.html#aggregate-functions).
|
|
|
|
#### Calculating rates
|
|
|
|
One of the most widely used functions for [counters](#counter)
|
|
is [rate](https://docs.victoriametrics.com/MetricsQL.html#rate). It calculates the average per-second increase rate individually
|
|
per each matching time series. For example, the following query shows the average per-second data receive speed
|
|
per each monitored `node_exporter` instance, which exposes the `node_network_receive_bytes_total` metric:
|
|
|
|
```metricsql
|
|
rate(node_network_receive_bytes_total)
|
|
```
|
|
|
|
By default VictoriaMetrics calculates the `rate` over [raw samples](#raw-samples) on the lookbehind window specified in the `step` param
|
|
passed either to [instant query](#instant-query) or to [range query](#range-query).
|
|
The interval on which `rate` needs to be calculated can be specified explicitly
|
|
as [duration](https://prometheus.io/docs/prometheus/latest/querying/basics/#time-durations) in square brackets:
|
|
|
|
```metricsql
|
|
rate(node_network_receive_bytes_total[5m])
|
|
```
|
|
|
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In this case VictoriaMetrics uses the specified lookbehind window - `5m` (5 minutes) - for calculating the average per-second increase rate.
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Bigger lookbehind windows usually lead to smoother graphs.
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`rate` strips metric name while leaving all the labels for the inner time series. If you need to keep the metric name,
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then add [keep_metric_names](https://docs.victoriametrics.com/MetricsQL.html#keep_metric_names) modifier
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after the `rate(..)`. For example, the following query leaves metric names after calculating the `rate()`:
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```metricsql
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rate(node_network_receive_bytes_total) keep_metric_names
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```
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`rate()` must be applied only to [counters](#counter). The result of applying the `rate()` to [gauge](#gauge) is undefined.
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### Visualizing time series
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VictoriaMetrics has a built-in graphical User Interface for querying and visualizing metrics -
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[VMUI](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#vmui).
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Open `http://victoriametrics:8428/vmui` page, type the query and see the results:
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<img src="keyConcepts_vmui.png">
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VictoriaMetrics supports [Prometheus HTTP API](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#prometheus-querying-api-usage)
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which makes it possible to [query it with Grafana](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#grafana-setup)
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in the same way as Grafana queries Prometheus.
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## Modify data
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VictoriaMetrics stores time series data in [MergeTree](https://en.wikipedia.org/wiki/Log-structured_merge-tree)-like
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data structures. While this approach is very efficient for write-heavy databases, it applies some limitations on data
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updates. In short, modifying already written [time series](#time-series) requires re-writing the whole data block where
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it is stored. Due to this limitation, VictoriaMetrics does not support direct data modification.
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### Deletion
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See [How to delete time series](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#how-to-delete-time-series)
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.
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### Relabeling
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Relabeling is a powerful mechanism for modifying time series before they have been written to the database. Relabeling
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may be applied for both [push](#push-model) and [pull](#pull-model) models. See more
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|
details [here](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#relabeling).
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### Deduplication
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VictoriaMetrics supports data deduplication. See [these docs](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#deduplication).
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### Downsampling
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VictoriaMetrics supports data downsampling. See [these docs](https://docs.victoriametrics.com/Single-server-VictoriaMetrics.html#downsampling).
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