This library aims to enable Metrics-Driven Development for C++ services. It implements the Prometheus Data Model, a powerful abstraction on which to collect and expose metrics. We offer the possibility for metrics to be collected by Prometheus, but other push/pull collections can be added as plugins.
#include <chrono>
#include <map>
#include <memory>
#include <string>
#include <thread>
#include <prometheus/exposer.h>
#include <prometheus/registry.h>
int main(int argc, char** argv) {
using namespace prometheus;
// create an http server running on port 8080
Exposer exposer{"127.0.0.1:8080"};
// create a metrics registry with component=main labels applied to all its
// metrics
auto registry = std::make_shared<Registry>();
// add a new counter family to the registry (families combine values with the
// same name, but distinct label dimenstions)
auto& counter_family = BuildCounter()
.Name("time_running_seconds")
.Help("How many seconds is this server running?")
.Labels({{"label", "value"}})
.Register(*registry);
// add a counter to the metric family
auto& second_counter = counter_family.Add(
{{"another_label", "value"}, {"yet_another_label", "value"}});
// ask the exposer to scrape the registry on incoming scrapes
exposer.RegisterCollectable(registry);
for (;;) {
std::this_thread::sleep_for(std::chrono::seconds(1));
// increment the counter by one (second)
second_counter.Increment();
}
return 0;
}
There are two supported ways to build
prometheus-cpp
- CMake
and bazel. Both are tested in CI and should work
on master and for all releases.
In case these instructions don't work for you, looking at the travis build script might help.
One prerequisite for performing the build using CMake is having Protocol Buffers >= 3.0 installed. See the travis build script for how to build it from source, or use your operating systems package manager to install it.
# fetch third-party dependencies
git submodule init
git submodule update
mkdir _build
cd _build
# run cmake
cmake ..
# build
make -j 4
# run tests
ctest -V
# install the libraries and headers
mkdir -p deploy
make DESTDIR=`pwd`/deploy install
Install bazel. Bazel makes it easy to add
this repo to your project as a dependency. Just add the following
to your WORKSPACE
:
git_repository(
name = "prometheus_cpp",
remote = https://github.com/jupp0r/prometheus-cpp.git",
)
load("@prometheus_cpp//:repositories.bzl", "prometheus_cpp_repositories")
prometheus_cpp_repositories()
Then, you can reference this library in your own BUILD
file, as
demonstrated with the sample server included in this repository:
cc_binary(
name = "sample_server",
srcs = ["sample_server.cc"],
deps = ["@prometheus_cpp//:prometheus_cpp"],
)
When you call prometheus_cpp_repositories()
in your WORKSPACE
file,
you introduce the following dependencies to your project:
load_com_google_protobuf()
for Google protobufload_prometheus_client_model()
for Prometheus data model artifactsload_civetweb()
for Civetwebload_com_google_googletest()
for Google gtestload_com_google_googlebenchmark()
for Googlebenchmark
You may load them individually and replace some of them with your custom dependency version.
The list of dependencies is also available from file repositories.bzl
.
You can check out this repo and build the library using
bazel build //:prometheus_cpp
Run the unit tests using
bazel test //tests:prometheus-test
There is also an integration test that uses telegraf to scrape a sample server. With telegraf installed, it can be run using
bazel test //tests/integration:scrape-test
There's a benchmark suite you can run:
bazel run -c opt tests/benchmark/benchmarks
INFO: Found 1 target...
Target //tests/benchmark:benchmarks up-to-date:
bazel-bin/tests/benchmark/benchmarks
INFO: Elapsed time: 1.682s, Critical Path: 1.56s
INFO: Running command line: bazel-bin/tests/benchmark/benchmarks
Run on (8 X 2300 MHz CPU s)
2016-10-17 15:56:49
Benchmark Time CPU Iterations
--------------------------------------------------------------------
BM_Counter_Increment 11 ns 11 ns 62947942
BM_Counter_Collect 84 ns 84 ns 8221752
BM_Gauge_Increment 11 ns 11 ns 61384663
BM_Gauge_Decrement 11 ns 11 ns 62148197
BM_Gauge_SetToCurrentTime 199 ns 198 ns 3589670
BM_Gauge_Collect 86 ns 85 ns 7469136
BM_Histogram_Observe/0 122 ns 122 ns 5839855
BM_Histogram_Observe/1 116 ns 115 ns 5806623
BM_Histogram_Observe/8 126 ns 126 ns 5781588
BM_Histogram_Observe/64 138 ns 138 ns 4895550
BM_Histogram_Observe/512 228 ns 228 ns 2992898
BM_Histogram_Observe/4k 959 ns 958 ns 642231
BM_Histogram_Collect/0 328 ns 327 ns 2002792
BM_Histogram_Collect/1 356 ns 354 ns 1819032
BM_Histogram_Collect/8 1553 ns 1544 ns 454921
BM_Histogram_Collect/64 10389 ns 10287 ns 66759
BM_Histogram_Collect/512 75795 ns 75093 ns 9075
BM_Histogram_Collect/4k 615853 ns 610277 ns 1222
BM_Registry_CreateFamily 195 ns 182 ns 3843894
BM_Registry_CreateCounter/0 319 ns 317 ns 1914132
BM_Registry_CreateCounter/1 2146 ns 2131 ns 408432
BM_Registry_CreateCounter/8 8936 ns 8837 ns 82439
BM_Registry_CreateCounter/64 72589 ns 72010 ns 9248
BM_Registry_CreateCounter/512 694323 ns 686655 ns 1056
BM_Registry_CreateCounter/4k 18246638 ns 18150525 ns 40
Alpha
- parts of the library are instrumented by itself (bytes scraped, number of scrapes, scrape request latencies)
- there is a working example that prometheus successfully scrapes
- gauge, counter and histogram metrics are implemented, summaries aren't
We opted against the submodule solution for protobuf, because
otherwise ABI compatibiliy issues would force all consumers of
prometheus-cpp
to use exactly the same protobuf version as the one
inside the submodule if they were using protobuf on its own.
To phrase it differently, this library should not control the exact version, but the executable linking against it should determine a version that other libraries also link against.
MIT