* consoles: exclude iowait and steal from CPU Utilisation 'iowait' and 'steal' indicate specific idle/wait states, which shouldn't be counted into CPU Utilisation. Also see https://github.com/prometheus-operator/kube-prometheus/pull/796 and https://github.com/kubernetes-monitoring/kubernetes-mixin/pull/667. Per the iostat man page: %idle Show the percentage of time that the CPU or CPUs were idle and the system did not have an outstanding disk I/O request. %iowait Show the percentage of time that the CPU or CPUs were idle during which the system had an outstanding disk I/O request. %steal Show the percentage of time spent in involuntary wait by the virtual CPU or CPUs while the hypervisor was servicing another virtual processor. Signed-off-by: Julian Wiedmann <jwi@linux.ibm.com> * tsdb: shrink txRing with smaller integers 4 billion active transactions ought to be enough for anyone. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * tsdb: create isolation transaction slice on demand When Prometheus restarts it creates every series read in from the WAL, but many of those series will be finished, and never receive any more samples. By defering allocation of the txRing slice to when it is first needed, we save 32 bytes per stale series. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * add cluster variable to Overview dashboard Signed-off-by: Erik Sommer <ersotech@posteo.de> * promql: simplify Native Histogram arithmetics Signed-off-by: Linas Medziunas <linas.medziunas@gmail.com> * Cut 2.49.0-rc.0 (#13270) * Cut 2.49.0-rc.0 Signed-off-by: bwplotka <bwplotka@gmail.com> * Removed the duplicate. Signed-off-by: bwplotka <bwplotka@gmail.com> --------- Signed-off-by: bwplotka <bwplotka@gmail.com> * Add unit protobuf parser Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * Go on adding protobuf parsing for unit Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * ui: create a reproduction for https://github.com/prometheus/prometheus/issues/13292 Signed-off-by: machine424 <ayoubmrini424@gmail.com> * Get conditional right Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * Get VM Scale Set NIC (#13283) Calling `*armnetwork.InterfacesClient.Get()` doesn't work for Scale Set VM NIC, because these use a different Resource ID format. Use `*armnetwork.InterfacesClient.GetVirtualMachineScaleSetNetworkInterface()` instead. This needs both the scale set name and the instance ID, so add an `InstanceID` field to the `virtualMachine` struct. `InstanceID` is empty for a VM that isn't a ScaleSetVM. Signed-off-by: Daniel Nicholls <daniel.nicholls@resdiary.com> * Cut v2.49.0-rc.1 Signed-off-by: bwplotka <bwplotka@gmail.com> * Delete debugging lines, amend error message for unit Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * Correct order in error message Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * Consider storage.ErrTooOldSample as non-retryable Signed-off-by: Daniel Kerbel <nmdanny@gmail.com> * scrape_test.go: Increase scrape interval in TestScrapeLoopCache to reduce potential flakiness Signed-off-by: machine424 <ayoubmrini424@gmail.com> * Avoid creating string for suffix, consider counters without _total suffix Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> * build(deps): bump github.com/prometheus/client_golang Bumps [github.com/prometheus/client_golang](https://github.com/prometheus/client_golang) from 1.17.0 to 1.18.0. - [Release notes](https://github.com/prometheus/client_golang/releases) - [Changelog](https://github.com/prometheus/client_golang/blob/main/CHANGELOG.md) - [Commits](https://github.com/prometheus/client_golang/compare/v1.17.0...v1.18.0) --- updated-dependencies: - dependency-name: github.com/prometheus/client_golang dependency-type: direct:production update-type: version-update:semver-minor ... Signed-off-by: dependabot[bot] <support@github.com> * build(deps): bump actions/setup-node from 3.8.1 to 4.0.1 Bumps [actions/setup-node](https://github.com/actions/setup-node) from 3.8.1 to 4.0.1. - [Release notes](https://github.com/actions/setup-node/releases) - [Commits](5e21ff4d9b...b39b52d121
) --- updated-dependencies: - dependency-name: actions/setup-node dependency-type: direct:production update-type: version-update:semver-major ... Signed-off-by: dependabot[bot] <support@github.com> * scripts: sort file list in embed directive Otherwise the resulting string depends on find, which afaict depends on the underlying filesystem. A stable file list make it easier to detect UI changes in downstreams that need to track UI assets. Signed-off-by: Jan Fajerski <jfajersk@redhat.com> * Fix DataTableProps['data'] for resultType string Signed-off-by: Kevin Mingtarja <kevin.mingtarja@gmail.com> * Fix handling of scalar and string in isHeatmapData Signed-off-by: Kevin Mingtarja <kevin.mingtarja@gmail.com> * build(deps): bump github.com/influxdata/influxdb Bumps [github.com/influxdata/influxdb](https://github.com/influxdata/influxdb) from 1.11.2 to 1.11.4. - [Release notes](https://github.com/influxdata/influxdb/releases) - [Commits](https://github.com/influxdata/influxdb/compare/v1.11.2...v1.11.4) --- updated-dependencies: - dependency-name: github.com/influxdata/influxdb dependency-type: direct:production update-type: version-update:semver-patch ... Signed-off-by: dependabot[bot] <support@github.com> * build(deps): bump github.com/prometheus/prometheus Bumps [github.com/prometheus/prometheus](https://github.com/prometheus/prometheus) from 0.48.0 to 0.48.1. - [Release notes](https://github.com/prometheus/prometheus/releases) - [Changelog](https://github.com/prometheus/prometheus/blob/main/CHANGELOG.md) - [Commits](https://github.com/prometheus/prometheus/compare/v0.48.0...v0.48.1) --- updated-dependencies: - dependency-name: github.com/prometheus/prometheus dependency-type: direct:production update-type: version-update:semver-patch ... Signed-off-by: dependabot[bot] <support@github.com> * Bump client_golang to v1.18.0 (#13373) Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Drop old inmemory samples (#13002) * Drop old inmemory samples Co-authored-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Avoid copying timeseries when the feature is disabled Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Run gofmt Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Clarify docs Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Add more logging info Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Remove loggers Signed-off-by: Marc Tuduri <marctc@protonmail.com> * optimize function and add tests Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Simplify filter Signed-off-by: Marc Tuduri <marctc@protonmail.com> * rename var Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Update help info from metrics Signed-off-by: Marc Tuduri <marctc@protonmail.com> * use metrics to keep track of drop elements during buildWriteRequest Signed-off-by: Marc Tuduri <marctc@protonmail.com> * rename var in tests Signed-off-by: Marc Tuduri <marctc@protonmail.com> * pass time.Now as parameter Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Change buildwriterequest during retries Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Revert "Remove loggers" This reverts commit 54f91dfcae20488944162335ab4ad8be459df1ab. Signed-off-by: Marc Tuduri <marctc@protonmail.com> * use log level debug for loggers Signed-off-by: Marc Tuduri <marctc@protonmail.com> * Fix linter Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Remove noisy debug-level logs; add 'reason' label to drop metrics Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Remove accidentally committed files Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Propagate logger to buildWriteRequest to log dropped data Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Fix docs comment Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Make drop reason more specific Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Remove unnecessary pass of logger Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Use snake_case for reason label Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> * Fix dropped samples metric Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> --------- Signed-off-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Signed-off-by: Marc Tuduri <marctc@protonmail.com> Signed-off-by: Paschalis Tsilias <tpaschalis@users.noreply.github.com> Co-authored-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Co-authored-by: Paschalis Tsilias <tpaschalis@users.noreply.github.com> * fix(discovery): allow requireUpdate util to timeout in discovery/file/file_test.go. The loop ran indefinitely if the condition isn't met. Before, each iteration created a new timer channel which was always outpaced by the other timer channel with smaller duration. minor detail: There was a memory leak: resources of the ~10 previous timers were constantly kept. With the fix, we may keep the resources of one timer around for defaultWait but this isn't worth the changes to make it right. Signed-off-by: machine424 <ayoubmrini424@gmail.com> * Merge pull request #13371 from kevinmingtarja/fix-isHeatmapData ui: fix handling of scalar and string in isHeatmapData * tsdb/{index,compact}: allow using custom postings encoding format (#13242) * tsdb/{index,compact}: allow using custom postings encoding format We would like to experiment with a different postings encoding format in Thanos so in this change I am proposing adding another argument to `NewWriter` which would allow users to change the format if needed. Also, wire the leveled compactor so that it would be possible to change the format there too. Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * tsdb/compact: use a struct for leveled compactor options As discussed on Slack, let's use a struct for the options in leveled compactor. Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * tsdb: make changes after Bryan's review - Make changes less intrusive - Turn the postings encoder type into a function - Add NewWriterWithEncoder() Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> --------- Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * Cut 2.49.0-rc.2 Signed-off-by: bwplotka <bwplotka@gmail.com> * build(deps): bump actions/setup-go from 3.5.0 to 5.0.0 in /scripts (#13362) Bumps [actions/setup-go](https://github.com/actions/setup-go) from 3.5.0 to 5.0.0. - [Release notes](https://github.com/actions/setup-go/releases) - [Commits](6edd4406fa...0c52d547c9
) --- updated-dependencies: - dependency-name: actions/setup-go dependency-type: direct:production update-type: version-update:semver-major ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * build(deps): bump github/codeql-action from 2.22.8 to 3.22.12 (#13358) Bumps [github/codeql-action](https://github.com/github/codeql-action) from 2.22.8 to 3.22.12. - [Release notes](https://github.com/github/codeql-action/releases) - [Changelog](https://github.com/github/codeql-action/blob/main/CHANGELOG.md) - [Commits](407ffafae6...012739e508
) --- updated-dependencies: - dependency-name: github/codeql-action dependency-type: direct:production update-type: version-update:semver-major ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * put @nexucis has a release shepherd (#13383) Signed-off-by: Augustin Husson <augustin.husson@amadeus.com> * Add analyze histograms command to promtool (#12331) Add `query analyze` command to promtool This command analyzes the buckets of classic and native histograms, based on data queried from the Prometheus query API, i.e. it doesn't require direct access to the TSDB files. Signed-off-by: Jeanette Tan <jeanette.tan@grafana.com> --------- Signed-off-by: Jeanette Tan <jeanette.tan@grafana.com> * included instance in all necessary descriptions Signed-off-by: Erik Sommer <ersotech@posteo.de> * tsdb/compact: fix passing merge func Fixing a very small logical problem I've introduced :(. Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * tsdb: add enable overlapping compaction This functionality is needed in downstream projects because they have a separate component that does compaction. Upstreaming7c8e9a2a76/tsdb/compact.go (L323-L325)
. Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * Cut 2.49.0 Signed-off-by: bwplotka <bwplotka@gmail.com> * promtool: allow setting multiple matchers to "promtool tsdb dump" command. (#13296) Conditions are ANDed inside the same matcher but matchers are ORed Including unit tests for "promtool tsdb dump". Refactor some matchers scraping utils. Signed-off-by: machine424 <ayoubmrini424@gmail.com> * Fixed changelog Signed-off-by: bwplotka <bwplotka@gmail.com> * tsdb/main: wire "EnableOverlappingCompaction" to tsdb.Options (#13398) This added the https://github.com/prometheus/prometheus/pull/13393 "EnableOverlappingCompaction" parameter to the compactor code but not to the tsdb.Options. I forgot about that. Add it to `tsdb.Options` too and set it to `true` in Prometheus. Copy/paste the description from https://github.com/prometheus/prometheus/pull/13393#issuecomment-1891787986 Signed-off-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> * Issue #13268: fix quality value in accept header Signed-off-by: Kumar Kalpadiptya Roy <kalpadiptya.roy@outlook.com> * Cut 2.49.1 with scrape q= bugfix. Signed-off-by: bwplotka <bwplotka@gmail.com> * Cut 2.49.1 web package. Signed-off-by: bwplotka <bwplotka@gmail.com> * Restore more efficient version of NewPossibleNonCounterInfo annotation (#13022) Restore more efficient version of NewPossibleNonCounterInfo annotation Signed-off-by: Jeanette Tan <jeanette.tan@grafana.com> --------- Signed-off-by: Jeanette Tan <jeanette.tan@grafana.com> * Fix regressions introduced by #13242 Signed-off-by: Marco Pracucci <marco@pracucci.com> * fix slice copy in 1.20 (#13389) The slices package is added to the standard library in Go 1.21; we need to import from the exp area to maintain compatibility with Go 1.20. Signed-off-by: tyltr <tylitianrui@126.com> * Docs: Query Basics: link to rate (#10538) Co-authored-by: Julien Pivotto <roidelapluie@o11y.eu> * chore(kubernetes): check preconditions earlier and avoid unnecessary checks or iterations Signed-off-by: machine424 <ayoubmrini424@gmail.com> * Examples: link to `rate` for new users (#10535) * Examples: link to `rate` for new users Signed-off-by: Ted Robertson 10043369+tredondo@users.noreply.github.com Co-authored-by: Bryan Boreham <bjboreham@gmail.com> * promql: use natural sort in sort_by_label and sort_by_label_desc (#13411) These functions are intended for humans, as robots can already sort the results however they please. Humans like things sorted "naturally": * https://blog.codinghorror.com/sorting-for-humans-natural-sort-order/ A similar thing has been done to Grafana, which is also used by humans: * https://github.com/grafana/grafana/pull/78024 * https://github.com/grafana/grafana/pull/78494 Signed-off-by: Ivan Babrou <github@ivan.computer> * TestLabelValuesWithMatchers: Add test case Signed-off-by: Arve Knudsen <arve.knudsen@gmail.com> * remove obsolete build tag Signed-off-by: tyltr <tylitianrui@126.com> * Upgrade some golang dependencies for resty 2.11 Signed-off-by: Israel Blancas <iblancasa@gmail.com> * Native Histograms: support `native_histogram_min_bucket_factor` in scrape_config (#13222) Native Histograms: support native_histogram_min_bucket_factor in scrape_config --------- Signed-off-by: Ziqi Zhao <zhaoziqi9146@gmail.com> Signed-off-by: Björn Rabenstein <github@rabenste.in> Co-authored-by: George Krajcsovits <krajorama@users.noreply.github.com> Co-authored-by: Björn Rabenstein <github@rabenste.in> * Add warnings for histogramRate applied with isCounter not matching counter/gauge histogram (#13392) Add warnings for histogramRate applied with isCounter not matching counter/gauge histogram --------- Signed-off-by: Jeanette Tan <jeanette.tan@grafana.com> * Minor fixes to otlp vendor update script Signed-off-by: Goutham <gouthamve@gmail.com> * build(deps): bump github.com/hetznercloud/hcloud-go/v2 Bumps [github.com/hetznercloud/hcloud-go/v2](https://github.com/hetznercloud/hcloud-go) from 2.4.0 to 2.6.0. - [Release notes](https://github.com/hetznercloud/hcloud-go/releases) - [Changelog](https://github.com/hetznercloud/hcloud-go/blob/main/CHANGELOG.md) - [Commits](https://github.com/hetznercloud/hcloud-go/compare/v2.4.0...v2.6.0) --- updated-dependencies: - dependency-name: github.com/hetznercloud/hcloud-go/v2 dependency-type: direct:production update-type: version-update:semver-minor ... Signed-off-by: dependabot[bot] <support@github.com> * Enhanced visibility for `promtool test rules` with JSON colored formatting (#13342) * Added diff flag for unit test to improvise readability & debugging Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Removed blank spaces Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Fixed linting error Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Added cli flags to documentation Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Revert unrrelated linting fixes Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Fixed review suggestions Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Cleanup Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Updated flag description Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * Updated flag description Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> --------- Signed-off-by: Rewanth Tammana <22347290+rewanthtammana@users.noreply.github.com> * storage: skip merging when no remote storage configured Prometheus is hard-coded to use a fanout storage between TSDB and a remote storage which by default is empty. This change detects the empty storage and skips merging between result sets, which would make `Select()` sort results. Bottom line: we skip a sort unless there really is some remote storage configured. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * Remove csmarchbanks from remote write owners (#13432) I have not had the time to keep up with remote write and have no plans to work on it in the near future so I am withdrawing my maintainership of that part of the codebase. I continue to focus on client_python. Signed-off-by: Chris Marchbanks <csmarchbanks@gmail.com> * add more context cancellation check at evaluation time Signed-off-by: Ben Ye <benye@amazon.com> * Optimize label values with matchers by taking shortcuts (#13426) Don't calculate postings beforehand: we may not need them. If all matchers are for the requested label, we can just filter its values. Also, if there are no values at all, no need to run any kind of logic. Also add more labelValuesWithMatchers benchmarks Signed-off-by: Oleg Zaytsev <mail@olegzaytsev.com> * Add automatic memory limit handling Enable automatic detection of memory limits and configure GOMEMLIMIT to match. * Also includes a flag to allow controlling the reserved ratio. Signed-off-by: SuperQ <superq@gmail.com> * Update OSSF badge link (#13433) Provide a more user friendly interface Signed-off-by: Matthieu MOREL <matthieu.morel35@gmail.com> * SD Managers taking over responsibility for registration of debug metrics (#13375) SD Managers take over responsibility for SD metrics registration --------- Signed-off-by: Paulin Todev <paulin.todev@gmail.com> Signed-off-by: Björn Rabenstein <github@rabenste.in> Co-authored-by: Björn Rabenstein <github@rabenste.in> * Optimize histogram iterators (#13340) Optimize histogram iterators Histogram iterators allocate new objects in the AtHistogram and AtFloatHistogram methods, which makes calculating rates over long ranges expensive. In #13215 we allowed an existing object to be reused when converting an integer histogram to a float histogram. This commit follows the same idea and allows injecting an existing object in the AtHistogram and AtFloatHistogram methods. When the injected value is nil, iterators allocate new histograms, otherwise they populate and return the injected object. The commit also adds a CopyTo method to Histogram and FloatHistogram which is used in the BufferedIterator to overwrite items in the ring instead of making new copies. Note that a specialized HPoint pool is needed for all of this to work (`matrixSelectorHPool`). --------- Signed-off-by: Filip Petkovski <filip.petkovsky@gmail.com> Co-authored-by: George Krajcsovits <krajorama@users.noreply.github.com> * doc: Mark `mad_over_time` as experimental (#13440) We forgot to do that in https://github.com/prometheus/prometheus/pull/13059 Signed-off-by: beorn7 <beorn@grafana.com> * Change metric label for Puppetdb from 'http' to 'puppetdb' Signed-off-by: Paulin Todev <paulin.todev@gmail.com> * mirror metrics.proto change & generate code Signed-off-by: Ziqi Zhao <zhaoziqi9146@gmail.com> * TestHeadLabelValuesWithMatchers: Add test case (#13414) Add test case to TestHeadLabelValuesWithMatchers, while fixing a couple of typos in other test cases. Also enclosing some implicit sub-tests in a `t.Run` call to make them explicitly sub-tests. Signed-off-by: Arve Knudsen <arve.knudsen@gmail.com> * update all go dependencies (#13438) Signed-off-by: Augustin Husson <husson.augustin@gmail.com> * build(deps): bump the k8s-io group with 2 updates (#13454) Bumps the k8s-io group with 2 updates: [k8s.io/api](https://github.com/kubernetes/api) and [k8s.io/client-go](https://github.com/kubernetes/client-go). Updates `k8s.io/api` from 0.28.4 to 0.29.1 - [Commits](https://github.com/kubernetes/api/compare/v0.28.4...v0.29.1) Updates `k8s.io/client-go` from 0.28.4 to 0.29.1 - [Changelog](https://github.com/kubernetes/client-go/blob/master/CHANGELOG.md) - [Commits](https://github.com/kubernetes/client-go/compare/v0.28.4...v0.29.1) --- updated-dependencies: - dependency-name: k8s.io/api dependency-type: direct:production update-type: version-update:semver-minor dependency-group: k8s-io - dependency-name: k8s.io/client-go dependency-type: direct:production update-type: version-update:semver-minor dependency-group: k8s-io ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * build(deps): bump the go-opentelemetry-io group with 1 update (#13453) Bumps the go-opentelemetry-io group with 1 update: [go.opentelemetry.io/collector/semconv](https://github.com/open-telemetry/opentelemetry-collector). Updates `go.opentelemetry.io/collector/semconv` from 0.92.0 to 0.93.0 - [Release notes](https://github.com/open-telemetry/opentelemetry-collector/releases) - [Changelog](https://github.com/open-telemetry/opentelemetry-collector/blob/main/CHANGELOG-API.md) - [Commits](https://github.com/open-telemetry/opentelemetry-collector/compare/v0.92.0...v0.93.0) --- updated-dependencies: - dependency-name: go.opentelemetry.io/collector/semconv dependency-type: direct:production update-type: version-update:semver-minor dependency-group: go-opentelemetry-io ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * build(deps): bump actions/upload-artifact from 3.1.3 to 4.0.0 (#13355) Bumps [actions/upload-artifact](https://github.com/actions/upload-artifact) from 3.1.3 to 4.0.0. - [Release notes](https://github.com/actions/upload-artifact/releases) - [Commits](a8a3f3ad30...c7d193f32e
) --- updated-dependencies: - dependency-name: actions/upload-artifact dependency-type: direct:production update-type: version-update:semver-major ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * build(deps): bump bufbuild/buf-push-action (#13357) Bumps [bufbuild/buf-push-action](https://github.com/bufbuild/buf-push-action) from 342fc4cdcf29115a01cf12a2c6dd6aac68dc51e1 to a654ff18effe4641ebea4a4ce242c49800728459. - [Release notes](https://github.com/bufbuild/buf-push-action/releases) - [Commits](342fc4cdcf...a654ff18ef
) --- updated-dependencies: - dependency-name: bufbuild/buf-push-action dependency-type: direct:production ... Signed-off-by: dependabot[bot] <support@github.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> * Labels: Add DropMetricName function, used in PromQL (#13446) This function is called very frequently when executing PromQL functions, and we can do it much more efficiently inside Labels. In the common case that `__name__` comes first in the labels, we simply re-point to start at the next label, which is nearly free. `DropMetricName` is now so cheap I removed the cache - benchmarks show everything still goes faster. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * tsdb: simplify internal series delete function (#13261) Lifting an optimisation from Agent code, `seriesHashmap.del` can use the unique series reference, doesn't need to check Labels. Also streamline the logic for deleting from `unique` and `conflicts` maps, and add some comments to help the next person. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * otlptranslator/update-copy.sh: Fix sed command lines Signed-off-by: Arve Knudsen <arve.knudsen@gmail.com> * Rollback k8s.io requirements (#13462) Rollback k8s.io Go modules to v0.28.6 to avoid forcing upgrade of Go to 1.21. This allows us to keep compatibility with the currently supported upstream Go releases. Signed-off-by: SuperQ <superq@gmail.com> * Make update-copy.sh work for both OSX and GNU sed Signed-off-by: Arve Knudsen <arve.knudsen@gmail.com> * Name @beorn7 and @krajorama as maintainers for native histograms I have been the de-facto maintainer for native histograms from the beginning. So let's put this into MAINTAINERS.md. In addition, I hereby proposose George Krajcsovits AKA Krajo as a co-maintainer. He has contributed a lot of native histogram code, but more importantly, he has contributed substantially to reviewing other contributors' native histogram code, up to a point where I was merely rubberstamping the PRs he had already reviewed. I'm confident that he is ready to to be granted commit rights as outlined in the "Maintainers" section of the governance: https://prometheus.io/governance/#maintainers According to the same section of the governance, I will announce the proposed change on the developers mailing list and will give some time for lazy consensus before merging this PR. Signed-off-by: beorn7 <beorn@grafana.com> * ui/fix: correct url handling for stacked graphs (#13460) Signed-off-by: Yury Moladau <yurymolodov@gmail.com> * tsdb: use cheaper Mutex on series Mutex is 8 bytes; RWMutex is 24 bytes and much more complicated. Since `RLock` is only used in two places, `UpdateMetadata` and `Delete`, neither of which are hotspots, we should use the cheaper one. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * Fix last_over_time for native histograms The last_over_time retains a histogram sample without making a copy. This sample is now coming from the buffered iterator used for windowing functions, and can be reused for reading subsequent samples as the iterator progresses. I would propose copying the sample in the last_over_time function, similar to how it is done for rate, sum_over_time and others. Signed-off-by: Filip Petkovski <filip.petkovsky@gmail.com> * Implementation NOTE: Rebased from main after refactor in #13014 Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Add feature flag Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Refactor concurrency control Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Optimising dependencies/dependents funcs to not produce new slices each request Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Refactoring Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Rename flag Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Refactoring for performance, and to allow controller to be overridden Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Block until all rules, both sync & async, have completed evaluating Updated & added tests Review feedback nits Return empty map if not indeterminate Use highWatermark to track inflight requests counter Appease the linter Clarify feature flag Signed-off-by: Danny Kopping <danny.kopping@grafana.com> * Fix typo in CLI flag description Signed-off-by: Marco Pracucci <marco@pracucci.com> * Fixed auto-generated doc Signed-off-by: Marco Pracucci <marco@pracucci.com> * Improve doc Signed-off-by: Marco Pracucci <marco@pracucci.com> * Simplify the design to update concurrency controller once the rule evaluation has done Signed-off-by: Marco Pracucci <marco@pracucci.com> * Add more test cases to TestDependenciesEdgeCases Signed-off-by: Marco Pracucci <marco@pracucci.com> * Added more test cases to TestDependenciesEdgeCases Signed-off-by: Marco Pracucci <marco@pracucci.com> * Improved RuleConcurrencyController interface doc Signed-off-by: Marco Pracucci <marco@pracucci.com> * Introduced sequentialRuleEvalController Signed-off-by: Marco Pracucci <marco@pracucci.com> * Remove superfluous nil check in Group.metrics Signed-off-by: Marco Pracucci <marco@pracucci.com> * api: Serialize discovered and target labels into JSON directly (#13469) Converted maps into labels.Labels to avoid a lot of copying of data which leads to very high memory consumption while opening the /service-discovery endpoint in the Prometheus UI Signed-off-by: Leegin <114397475+Leegin-darknight@users.noreply.github.com> * api: Serialize discovered labels into JSON directly in dropped targets (#13484) Converted maps into labels.Labels to avoid a lot of copying of data which leads to very high memory consumption while opening the /service-discovery endpoint in the Prometheus UI Signed-off-by: Leegin <114397475+Leegin-darknight@users.noreply.github.com> * Add ShardedPostings() support to TSDB (#10421) This PR is a reference implementation of the proposal described in #10420. In addition to what described in #10420, in this PR I've introduced labels.StableHash(). The idea is to offer an hashing function which doesn't change over time, and that's used by query sharding in order to get a stable behaviour over time. The implementation of labels.StableHash() is the hashing function used by Prometheus before stringlabels, and what's used by Grafana Mimir for query sharding (because built before stringlabels was a thing). Follow up work As mentioned in #10420, if this PR is accepted I'm also open to upload another foundamental piece used by Grafana Mimir query sharding to accelerate the query execution: an optional, configurable and fast in-memory cache for the series hashes. Signed-off-by: Marco Pracucci <marco@pracucci.com> * storage/remote: document why two benchmarks are skipped One was silently doing nothing; one was doing something but the work didn't go up linearly with iteration count. Signed-off-by: Bryan Boreham <bjboreham@gmail.com> * Pod status changes not discovered by Kube Endpoints SD (#13337) * fix(discovery/kubernetes/endpoints): react to changes on Pods because some modifications can occur on them without triggering an update on the related Endpoints (The Pod phase changing from Pending to Running e.g.). --------- Signed-off-by: machine424 <ayoubmrini424@gmail.com> Co-authored-by: Guillermo Sanchez Gavier <gsanchez@newrelic.com> * Small improvements, add const, remove copypasta (#8106) Signed-off-by: Mikhail Fesenko <proggga@gmail.com> Signed-off-by: Jesus Vazquez <jesusvzpg@gmail.com> * Proposal to improve FPointSlice and HPointSlice allocation. (#13448) * Reusing points slice from previous series when the slice is under utilized * Adding comments on the bench test Signed-off-by: Alan Protasio <alanprot@gmail.com> * lint Signed-off-by: Nicolás Pazos <npazosmendez@gmail.com> * go mod tidy Signed-off-by: Nicolás Pazos <npazosmendez@gmail.com> --------- Signed-off-by: Julian Wiedmann <jwi@linux.ibm.com> Signed-off-by: Bryan Boreham <bjboreham@gmail.com> Signed-off-by: Erik Sommer <ersotech@posteo.de> Signed-off-by: Linas Medziunas <linas.medziunas@gmail.com> Signed-off-by: bwplotka <bwplotka@gmail.com> Signed-off-by: Arianna Vespri <arianna.vespri@yahoo.it> Signed-off-by: machine424 <ayoubmrini424@gmail.com> Signed-off-by: Daniel Nicholls <daniel.nicholls@resdiary.com> Signed-off-by: Daniel Kerbel <nmdanny@gmail.com> Signed-off-by: dependabot[bot] <support@github.com> Signed-off-by: Jan Fajerski <jfajersk@redhat.com> Signed-off-by: Kevin Mingtarja <kevin.mingtarja@gmail.com> Signed-off-by: Paschalis Tsilias 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Co-authored-by: Bryan Boreham <bjboreham@gmail.com> Co-authored-by: Erik Sommer <ersotech@posteo.de> Co-authored-by: Linas Medziunas <linas.medziunas@gmail.com> Co-authored-by: Bartlomiej Plotka <bwplotka@gmail.com> Co-authored-by: Arianna Vespri <arianna.vespri@yahoo.it> Co-authored-by: machine424 <ayoubmrini424@gmail.com> Co-authored-by: daniel-resdiary <109083091+daniel-resdiary@users.noreply.github.com> Co-authored-by: Daniel Kerbel <nmdanny@gmail.com> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> Co-authored-by: Jan Fajerski <jfajersk@redhat.com> Co-authored-by: Kevin Mingtarja <kevin.mingtarja@gmail.com> Co-authored-by: Paschalis Tsilias <tpaschalis@users.noreply.github.com> Co-authored-by: Marc Tudurí <marctc@protonmail.com> Co-authored-by: Paschalis Tsilias <paschalis.tsilias@grafana.com> Co-authored-by: Giedrius Statkevičius <giedrius.statkevicius@vinted.com> Co-authored-by: Augustin Husson <husson.augustin@gmail.com> Co-authored-by: Björn 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title | nav_title | sort_rank |
---|---|---|
Query functions | Functions | 3 |
Functions
Some functions have default arguments, e.g. year(v=vector(time()) instant-vector)
. This means that there is one argument v
which is an instant
vector, which if not provided it will default to the value of the expression
vector(time())
.
Notes about the experimental native histograms:
- Ingesting native histograms has to be enabled via a feature flag. As long as no native histograms have been ingested into the TSDB, all functions will behave as usual.
- Functions that do not explicitly mention native histograms in their documentation (see below) will ignore histogram samples.
- Functions that do already act on native histograms might still change their behavior in the future.
- If a function requires the same bucket layout between multiple native histograms it acts on, it will automatically convert them appropriately. (With the currently supported bucket schemas, that's always possible.)
abs()
abs(v instant-vector)
returns the input vector with all sample values converted to
their absolute value.
absent()
absent(v instant-vector)
returns an empty vector if the vector passed to it
has any elements (floats or native histograms) and a 1-element vector with the
value 1 if the vector passed to it has no elements.
This is useful for alerting on when no time series exist for a given metric name and label combination.
absent(nonexistent{job="myjob"})
# => {job="myjob"}
absent(nonexistent{job="myjob",instance=~".*"})
# => {job="myjob"}
absent(sum(nonexistent{job="myjob"}))
# => {}
In the first two examples, absent()
tries to be smart about deriving labels
of the 1-element output vector from the input vector.
absent_over_time()
absent_over_time(v range-vector)
returns an empty vector if the range vector
passed to it has any elements (floats or native histograms) and a 1-element
vector with the value 1 if the range vector passed to it has no elements.
This is useful for alerting on when no time series exist for a given metric name and label combination for a certain amount of time.
absent_over_time(nonexistent{job="myjob"}[1h])
# => {job="myjob"}
absent_over_time(nonexistent{job="myjob",instance=~".*"}[1h])
# => {job="myjob"}
absent_over_time(sum(nonexistent{job="myjob"})[1h:])
# => {}
In the first two examples, absent_over_time()
tries to be smart about deriving
labels of the 1-element output vector from the input vector.
ceil()
ceil(v instant-vector)
rounds the sample values of all elements in v
up to
the nearest integer.
changes()
For each input time series, changes(v range-vector)
returns the number of
times its value has changed within the provided time range as an instant
vector.
clamp()
clamp(v instant-vector, min scalar, max scalar)
clamps the sample values of all elements in v
to have a lower limit of min
and an upper limit of max
.
Special cases:
- Return an empty vector if
min > max
- Return
NaN
ifmin
ormax
isNaN
clamp_max()
clamp_max(v instant-vector, max scalar)
clamps the sample values of all
elements in v
to have an upper limit of max
.
clamp_min()
clamp_min(v instant-vector, min scalar)
clamps the sample values of all
elements in v
to have a lower limit of min
.
day_of_month()
day_of_month(v=vector(time()) instant-vector)
returns the day of the month
for each of the given times in UTC. Returned values are from 1 to 31.
day_of_week()
day_of_week(v=vector(time()) instant-vector)
returns the day of the week for
each of the given times in UTC. Returned values are from 0 to 6, where 0 means
Sunday etc.
day_of_year()
day_of_year(v=vector(time()) instant-vector)
returns the day of the year for
each of the given times in UTC. Returned values are from 1 to 365 for non-leap years,
and 1 to 366 in leap years.
days_in_month()
days_in_month(v=vector(time()) instant-vector)
returns number of days in the
month for each of the given times in UTC. Returned values are from 28 to 31.
delta()
delta(v range-vector)
calculates the difference between the
first and last value of each time series element in a range vector v
,
returning an instant vector with the given deltas and equivalent labels.
The delta is extrapolated to cover the full time range as specified in
the range vector selector, so that it is possible to get a non-integer
result even if the sample values are all integers.
The following example expression returns the difference in CPU temperature between now and 2 hours ago:
delta(cpu_temp_celsius{host="zeus"}[2h])
delta
acts on native histograms by calculating a new histogram where each
component (sum and count of observations, buckets) is the difference between
the respective component in the first and last native histogram in
v
. However, each element in v
that contains a mix of float and native
histogram samples within the range, will be missing from the result vector.
delta
should only be used with gauges and native histograms where the
components behave like gauges (so-called gauge histograms).
deriv()
deriv(v range-vector)
calculates the per-second derivative of the time series in a range
vector v
, using simple linear regression.
The range vector must have at least two samples in order to perform the calculation. When +Inf
or
-Inf
are found in the range vector, the slope and offset value calculated will be NaN
.
deriv
should only be used with gauges.
exp()
exp(v instant-vector)
calculates the exponential function for all elements in v
.
Special cases are:
Exp(+Inf) = +Inf
Exp(NaN) = NaN
floor()
floor(v instant-vector)
rounds the sample values of all elements in v
down
to the nearest integer.
histogram_count()
and histogram_sum()
Both functions only act on native histograms, which are an experimental feature. The behavior of these functions may change in future versions of Prometheus, including their removal from PromQL.
histogram_count(v instant-vector)
returns the count of observations stored in
a native histogram. Samples that are not native histograms are ignored and do
not show up in the returned vector.
Similarly, histogram_sum(v instant-vector)
returns the sum of observations
stored in a native histogram.
Use histogram_count
in the following way to calculate a rate of observations
(in this case corresponding to “requests per second”) from a native histogram:
histogram_count(rate(http_request_duration_seconds[10m]))
The additional use of histogram_sum
enables the calculation of the average of
observed values (in this case corresponding to “average request duration”):
histogram_sum(rate(http_request_duration_seconds[10m]))
/
histogram_count(rate(http_request_duration_seconds[10m]))
histogram_fraction()
This function only acts on native histograms, which are an experimental feature. The behavior of this function may change in future versions of Prometheus, including its removal from PromQL.
For a native histogram, histogram_fraction(lower scalar, upper scalar, v instant-vector)
returns the estimated fraction of observations between the
provided lower and upper values. Samples that are not native histograms are
ignored and do not show up in the returned vector.
For example, the following expression calculates the fraction of HTTP requests over the last hour that took 200ms or less:
histogram_fraction(0, 0.2, rate(http_request_duration_seconds[1h]))
The error of the estimation depends on the resolution of the underlying native histogram and how closely the provided boundaries are aligned with the bucket boundaries in the histogram.
+Inf
and -Inf
are valid boundary values. For example, if the histogram in
the expression above included negative observations (which shouldn't be the
case for request durations), the appropriate lower boundary to include all
observations less than or equal 0.2 would be -Inf
rather than 0
.
Whether the provided boundaries are inclusive or exclusive is only relevant if the provided boundaries are precisely aligned with bucket boundaries in the underlying native histogram. In this case, the behavior depends on the schema definition of the histogram. The currently supported schemas all feature inclusive upper boundaries and exclusive lower boundaries for positive values (and vice versa for negative values). Without a precise alignment of boundaries, the function uses linear interpolation to estimate the fraction. With the resulting uncertainty, it becomes irrelevant if the boundaries are inclusive or exclusive.
histogram_quantile()
histogram_quantile(φ scalar, b instant-vector)
calculates the φ-quantile (0 ≤
φ ≤ 1) from a classic
histogram or from
a native histogram. (See histograms and
summaries for a detailed
explanation of φ-quantiles and the usage of the (classic) histogram metric
type in general.)
Note that native histograms are an experimental feature. The behavior of this function when dealing with native histograms may change in future versions of Prometheus.
The float samples in b
are considered the counts of observations in each
bucket of one or more classic histograms. Each float sample must have a label
le
where the label value denotes the inclusive upper bound of the bucket.
(Float samples without such a label are silently ignored.) The other labels and
the metric name are used to identify the buckets belonging to each classic
histogram. The histogram metric
type
automatically provides time series with the _bucket
suffix and the
appropriate labels.
The native histogram samples in b
are treated each individually as a separate
histogram to calculate the quantile from.
As long as no naming collisions arise, b
may contain a mix of classic
and native histograms.
Use the rate()
function to specify the time window for the quantile
calculation.
Example: A histogram metric is called http_request_duration_seconds
(and
therefore the metric name for the buckets of a classic histogram is
http_request_duration_seconds_bucket
). To calculate the 90th percentile of request
durations over the last 10m, use the following expression in case
http_request_duration_seconds
is a classic histogram:
histogram_quantile(0.9, rate(http_request_duration_seconds_bucket[10m]))
For a native histogram, use the following expression instead:
histogram_quantile(0.9, rate(http_request_duration_seconds[10m]))
The quantile is calculated for each label combination in
http_request_duration_seconds
. To aggregate, use the sum()
aggregator
around the rate()
function. Since the le
label is required by
histogram_quantile()
to deal with classic histograms, it has to be
included in the by
clause. The following expression aggregates the 90th
percentile by job
for classic histograms:
histogram_quantile(0.9, sum by (job, le) (rate(http_request_duration_seconds_bucket[10m])))
When aggregating native histograms, the expression simplifies to:
histogram_quantile(0.9, sum by (job) (rate(http_request_duration_seconds[10m])))
To aggregate all classic histograms, specify only the le
label:
histogram_quantile(0.9, sum by (le) (rate(http_request_duration_seconds_bucket[10m])))
With native histograms, aggregating everything works as usual without any by
clause:
histogram_quantile(0.9, sum(rate(http_request_duration_seconds[10m])))
The histogram_quantile()
function interpolates quantile values by
assuming a linear distribution within a bucket.
If b
has 0 observations, NaN
is returned. For φ < 0, -Inf
is
returned. For φ > 1, +Inf
is returned. For φ = NaN
, NaN
is returned.
The following is only relevant for classic histograms: If b
contains
fewer than two buckets, NaN
is returned. The highest bucket must have an
upper bound of +Inf
. (Otherwise, NaN
is returned.) If a quantile is located
in the highest bucket, the upper bound of the second highest bucket is
returned. A lower limit of the lowest bucket is assumed to be 0 if the upper
bound of that bucket is greater than
0. In that case, the usual linear interpolation is applied within that
bucket. Otherwise, the upper bound of the lowest bucket is returned for
quantiles located in the lowest bucket.
You can use histogram_quantile(0, v instant-vector)
to get the estimated minimum value stored in
a histogram.
You can use histogram_quantile(1, v instant-vector)
to get the estimated maximum value stored in
a histogram.
Buckets of classic histograms are cumulative. Therefore, the following should always be the case:
- The counts in the buckets are monotonically increasing (strictly non-decreasing).
- A lack of observations between the upper limits of two consecutive buckets results in equal counts in those two buckets.
However, floating point precision issues (e.g. small discrepancies introduced by computing of buckets
with sum(rate(...))
) or invalid data might violate these assumptions. In that case,
histogram_quantile
would be unable to return meaningful results. To mitigate the issue,
histogram_quantile
assumes that tiny relative differences between consecutive buckets are happening
because of floating point precision errors and ignores them. (The threshold to ignore a difference
between two buckets is a trillionth (1e-12) of the sum of both buckets.) Furthermore, if there are
non-monotonic bucket counts even after this adjustment, they are increased to the value of the
previous buckets to enforce monotonicity. The latter is evidence for an actual issue with the input
data and is therefore flagged with an informational annotation reading input to histogram_quantile needed to be fixed for monotonicity
. If you encounter this annotation, you should find and remove
the source of the invalid data.
histogram_stddev()
and histogram_stdvar()
Both functions only act on native histograms, which are an experimental feature. The behavior of these functions may change in future versions of Prometheus, including their removal from PromQL.
histogram_stddev(v instant-vector)
returns the estimated standard deviation
of observations in a native histogram, based on the geometric mean of the buckets
where the observations lie. Samples that are not native histograms are ignored and
do not show up in the returned vector.
Similarly, histogram_stdvar(v instant-vector)
returns the estimated standard
variance of observations in a native histogram.
holt_winters()
holt_winters(v range-vector, sf scalar, tf scalar)
produces a smoothed value
for time series based on the range in v
. The lower the smoothing factor sf
,
the more importance is given to old data. The higher the trend factor tf
, the
more trends in the data is considered. Both sf
and tf
must be between 0 and
1.
holt_winters
should only be used with gauges.
hour()
hour(v=vector(time()) instant-vector)
returns the hour of the day
for each of the given times in UTC. Returned values are from 0 to 23.
idelta()
idelta(v range-vector)
calculates the difference between the last two samples
in the range vector v
, returning an instant vector with the given deltas and
equivalent labels.
idelta
should only be used with gauges.
increase()
increase(v range-vector)
calculates the increase in the
time series in the range vector. Breaks in monotonicity (such as counter
resets due to target restarts) are automatically adjusted for. The
increase is extrapolated to cover the full time range as specified
in the range vector selector, so that it is possible to get a
non-integer result even if a counter increases only by integer
increments.
The following example expression returns the number of HTTP requests as measured over the last 5 minutes, per time series in the range vector:
increase(http_requests_total{job="api-server"}[5m])
increase
acts on native histograms by calculating a new histogram where each
component (sum and count of observations, buckets) is the increase between
the respective component in the first and last native histogram in
v
. However, each element in v
that contains a mix of float and native
histogram samples within the range, will be missing from the result vector.
increase
should only be used with counters and native histograms where the
components behave like counters. It is syntactic sugar for rate(v)
multiplied
by the number of seconds under the specified time range window, and should be
used primarily for human readability. Use rate
in recording rules so that
increases are tracked consistently on a per-second basis.
irate()
irate(v range-vector)
calculates the per-second instant rate of increase of
the time series in the range vector. This is based on the last two data points.
Breaks in monotonicity (such as counter resets due to target restarts) are
automatically adjusted for.
The following example expression returns the per-second rate of HTTP requests looking up to 5 minutes back for the two most recent data points, per time series in the range vector:
irate(http_requests_total{job="api-server"}[5m])
irate
should only be used when graphing volatile, fast-moving counters.
Use rate
for alerts and slow-moving counters, as brief changes
in the rate can reset the FOR
clause and graphs consisting entirely of rare
spikes are hard to read.
Note that when combining irate()
with an
aggregation operator (e.g. sum()
)
or a function aggregating over time (any function ending in _over_time
),
always take a irate()
first, then aggregate. Otherwise irate()
cannot detect
counter resets when your target restarts.
label_join()
For each timeseries in v
, label_join(v instant-vector, dst_label string, separator string, src_label_1 string, src_label_2 string, ...)
joins all the values of all the src_labels
using separator
and returns the timeseries with the label dst_label
containing the joined value.
There can be any number of src_labels
in this function.
label_join
acts on float and histogram samples in the same way.
This example will return a vector with each time series having a foo
label with the value a,b,c
added to it:
label_join(up{job="api-server",src1="a",src2="b",src3="c"}, "foo", ",", "src1", "src2", "src3")
label_replace()
For each timeseries in v
, label_replace(v instant-vector, dst_label string, replacement string, src_label string, regex string)
matches the regular expression regex
against the value of the label src_label
. If it
matches, the value of the label dst_label
in the returned timeseries will be the expansion
of replacement
, together with the original labels in the input. Capturing groups in the
regular expression can be referenced with $1
, $2
, etc. Named capturing groups in the regular expression can be referenced with $name
(where name
is the capturing group name). If the regular expression doesn't match then the timeseries is returned unchanged.
label_replace
acts on float and histogram samples in the same way.
This example will return timeseries with the values a:c
at label service
and a
at label foo
:
label_replace(up{job="api-server",service="a:c"}, "foo", "$1", "service", "(.*):.*")
This second example has the same effect than the first example, and illustrates use of named capturing groups:
label_replace(up{job="api-server",service="a:c"}, "foo", "$name", "service", "(?P<name>.*):(?P<version>.*)")
ln()
ln(v instant-vector)
calculates the natural logarithm for all elements in v
.
Special cases are:
ln(+Inf) = +Inf
ln(0) = -Inf
ln(x < 0) = NaN
ln(NaN) = NaN
log2()
log2(v instant-vector)
calculates the binary logarithm for all elements in v
.
The special cases are equivalent to those in ln
.
log10()
log10(v instant-vector)
calculates the decimal logarithm for all elements in v
.
The special cases are equivalent to those in ln
.
minute()
minute(v=vector(time()) instant-vector)
returns the minute of the hour for each
of the given times in UTC. Returned values are from 0 to 59.
month()
month(v=vector(time()) instant-vector)
returns the month of the year for each
of the given times in UTC. Returned values are from 1 to 12, where 1 means
January etc.
predict_linear()
predict_linear(v range-vector, t scalar)
predicts the value of time series
t
seconds from now, based on the range vector v
, using simple linear
regression.
The range vector must have at least two samples in order to perform the
calculation. When +Inf
or -Inf
are found in the range vector,
the slope and offset value calculated will be NaN
.
predict_linear
should only be used with gauges.
rate()
rate(v range-vector)
calculates the per-second average rate of increase of the
time series in the range vector. Breaks in monotonicity (such as counter
resets due to target restarts) are automatically adjusted for. Also, the
calculation extrapolates to the ends of the time range, allowing for missed
scrapes or imperfect alignment of scrape cycles with the range's time period.
The following example expression returns the per-second rate of HTTP requests as measured over the last 5 minutes, per time series in the range vector:
rate(http_requests_total{job="api-server"}[5m])
rate
acts on native histograms by calculating a new histogram where each
component (sum and count of observations, buckets) is the rate of increase
between the respective component in the first and last native histogram in
v
. However, each element in v
that contains a mix of float and native
histogram samples within the range, will be missing from the result vector.
rate
should only be used with counters and native histograms where the
components behave like counters. It is best suited for alerting, and for
graphing of slow-moving counters.
Note that when combining rate()
with an aggregation operator (e.g. sum()
)
or a function aggregating over time (any function ending in _over_time
),
always take a rate()
first, then aggregate. Otherwise rate()
cannot detect
counter resets when your target restarts.
resets()
For each input time series, resets(v range-vector)
returns the number of
counter resets within the provided time range as an instant vector. Any
decrease in the value between two consecutive float samples is interpreted as a
counter reset. A reset in a native histogram is detected in a more complex way:
Any decrease in any bucket, including the zero bucket, or in the count of
observation constitutes a counter reset, but also the disappearance of any
previously populated bucket, an increase in bucket resolution, or a decrease of
the zero-bucket width.
resets
should only be used with counters and counter-like native
histograms.
If the range vector contains a mix of float and histogram samples for the same series, counter resets are detected separately and their numbers added up. The change from a float to a histogram sample is not considered a counter reset. Each float sample is compared to the next float sample, and each histogram is comprared to the next histogram.
round()
round(v instant-vector, to_nearest=1 scalar)
rounds the sample values of all
elements in v
to the nearest integer. Ties are resolved by rounding up. The
optional to_nearest
argument allows specifying the nearest multiple to which
the sample values should be rounded. This multiple may also be a fraction.
scalar()
Given a single-element input vector, scalar(v instant-vector)
returns the
sample value of that single element as a scalar. If the input vector does not
have exactly one element, scalar
will return NaN
.
sgn()
sgn(v instant-vector)
returns a vector with all sample values converted to their sign, defined as this: 1 if v is positive, -1 if v is negative and 0 if v is equal to zero.
sort()
sort(v instant-vector)
returns vector elements sorted by their sample values,
in ascending order. Native histograms are sorted by their sum of observations.
sort_desc()
Same as sort
, but sorts in descending order.
sort_by_label()
This function has to be enabled via the feature flag --enable-feature=promql-experimental-functions
.
sort_by_label(v instant-vector, label string, ...)
returns vector elements sorted by their label values and sample value in case of label values being equal, in ascending order.
Please note that the sort by label functions only affect the results of instant queries, as range query results always have a fixed output ordering.
This function uses natural sort order.
sort_by_label_desc()
This function has to be enabled via the feature flag --enable-feature=promql-experimental-functions
.
Same as sort_by_label
, but sorts in descending order.
Please note that the sort by label functions only affect the results of instant queries, as range query results always have a fixed output ordering.
This function uses natural sort order.
sqrt()
sqrt(v instant-vector)
calculates the square root of all elements in v
.
time()
time()
returns the number of seconds since January 1, 1970 UTC. Note that
this does not actually return the current time, but the time at which the
expression is to be evaluated.
timestamp()
timestamp(v instant-vector)
returns the timestamp of each of the samples of
the given vector as the number of seconds since January 1, 1970 UTC. It also
works with histogram samples.
vector()
vector(s scalar)
returns the scalar s
as a vector with no labels.
year()
year(v=vector(time()) instant-vector)
returns the year
for each of the given times in UTC.
<aggregation>_over_time()
The following functions allow aggregating each series of a given range vector over time and return an instant vector with per-series aggregation results:
avg_over_time(range-vector)
: the average value of all points in the specified interval.min_over_time(range-vector)
: the minimum value of all points in the specified interval.max_over_time(range-vector)
: the maximum value of all points in the specified interval.sum_over_time(range-vector)
: the sum of all values in the specified interval.count_over_time(range-vector)
: the count of all values in the specified interval.quantile_over_time(scalar, range-vector)
: the φ-quantile (0 ≤ φ ≤ 1) of the values in the specified interval.stddev_over_time(range-vector)
: the population standard deviation of the values in the specified interval.stdvar_over_time(range-vector)
: the population standard variance of the values in the specified interval.last_over_time(range-vector)
: the most recent point value in the specified interval.present_over_time(range-vector)
: the value 1 for any series in the specified interval.
If the feature flag
--enable-feature=promql-experimental-functions
is set, the following
additional functions are available:
mad_over_time(range-vector)
: the median absolute deviation of all points in the specified interval.
Note that all values in the specified interval have the same weight in the aggregation even if the values are not equally spaced throughout the interval.
avg_over_time
, sum_over_time
, count_over_time
, last_over_time
, and
present_over_time
handle native histograms as expected. All other functions
ignore histogram samples.
Trigonometric Functions
The trigonometric functions work in radians:
acos(v instant-vector)
: calculates the arccosine of all elements inv
(special cases).acosh(v instant-vector)
: calculates the inverse hyperbolic cosine of all elements inv
(special cases).asin(v instant-vector)
: calculates the arcsine of all elements inv
(special cases).asinh(v instant-vector)
: calculates the inverse hyperbolic sine of all elements inv
(special cases).atan(v instant-vector)
: calculates the arctangent of all elements inv
(special cases).atanh(v instant-vector)
: calculates the inverse hyperbolic tangent of all elements inv
(special cases).cos(v instant-vector)
: calculates the cosine of all elements inv
(special cases).cosh(v instant-vector)
: calculates the hyperbolic cosine of all elements inv
(special cases).sin(v instant-vector)
: calculates the sine of all elements inv
(special cases).sinh(v instant-vector)
: calculates the hyperbolic sine of all elements inv
(special cases).tan(v instant-vector)
: calculates the tangent of all elements inv
(special cases).tanh(v instant-vector)
: calculates the hyperbolic tangent of all elements inv
(special cases).
The following are useful for converting between degrees and radians:
deg(v instant-vector)
: converts radians to degrees for all elements inv
.pi()
: returns pi.rad(v instant-vector)
: converts degrees to radians for all elements inv
.