PromGleam
A Prometheus client library for Gleam, based on prometheus.erl
Installation
gleam add promgleam
Examples
Quick guide
Creating and incrementing a Counter
A counter is a cumulative metric that represents a single monotonically increasing counter whose value can only increase or be reset to zero on restart. For example, you can use a counter to represent the number of requests served, tasks completed, or errors. (Source)
import promgleam/metrics/counter.{create_counter, increment_counter}
create_counter(
registry: "default",
name: "http_requests_total",
help: "Total number of HTTP requests",
labels: [ "method", "route", "status" ],
)
increment_counter(
registry: "default",
name: "http_requests_total",
labels: [ "GET", "/", "200" ],
value: 1,
)
Creating and setting a Gauge
A gauge is a metric that represents a single numerical value that can arbitrarily go up and down. Gauges are typically used for measured values like temperatures or current memory usage, but also “counts” that can go up and down, like the number of concurrent requests. (Source)
import promgleam/metrics/gauge.{create_gauge, set_gauge}
create_gauge(
registry: "default",
name: "cache_size",
help: "Number of items in the cache",
labels: [ "cache_name" ],
)
set_gauge(
registry: "default",
name: "cache_size",
labels: [ "image_cache" ],
value: 123,
)
Creating and observing a Histogram
A histogram samples observations (usually things like request durations or response sizes) and counts them in configurable buckets. It also provides a sum of all observed values. (Source)
import promgleam/metrics/histogram.{create_histogram, observe_histogram}
create_histogram(
registry: "default",
name: "http_request_duration_seconds",
help: "Duration of HTTP requests in seconds",
labels: [ "method", "route", "status" ],
buckets: [ 0.1, 0.25, 0.5, 1.0, 1.5 ],
)
observe_histogram(
registry: "default",
name: "http_request_duration_seconds",
labels: [ "GET", "/", "200" ],
value: 0.23,
)
Both measure_histogram
and measure_histogram_seconds
can be used to wrap a function to
automatically observe the execution time whenever the function is invoked, rather than manually
measuring it and reporting it with observe_histogram
.
import promgleam/metrics/histogram.{measure_histogram}
fn my_function_to_measure() {
use <- measure_histogram(
registry: "default",
name: "function_execution_time",
labels: [ "my_function_to_measure" ],
)
// Do something slow here
}
Generating buckets
This library provides utility functions to create buckets
for a Histogram:
import promgleam/buckets.{exponential, linear}
exponential(start: 1.0, factor: 2, count: 5) // Ok([1.0, 2.0, 4.0, 8.0, 10.0])
linear(start: 1.0, step: 3.0, count: 4) // Ok([1.0, 4.0, 7.0, 10.0])
Printing the contents of a metric registry
This can be done by using one of the print_as
functions:
print_as_text
- Serialises the registry using the Prometheus text-based format into aString
print_as_prometheus
- Serialises the registry using the Prometheus Protobuf format into aBitArray
import promgleam/registry.{print_as_text, print_as_protobuf}
print_as_text(registry_name: "default")
print_as_protobuf(registry_name: "default")
Further documentation can be found at https://hexdocs.pm/promgleam.