VictoriaMetrics/docs/anomaly-detection/CHANGELOG.md
Fred Navruzov 6278c6ddf2
docs/vmanomaly - v1.13.2 updates (#6646)
### Describe Your Changes

Doc updates after v1.13.2 release of `vmanomaly`

### Checklist

The following checks are **mandatory**:

- [ ] My change adheres [VictoriaMetrics contributing
guidelines](https://docs.victoriametrics.com/contributing/).
2024-07-15 20:25:14 +02:00

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CHANGELOG

Please find the changelog for VictoriaMetrics Anomaly Detection below.

Important note: Users are strongly encouraged to upgrade to vmanomaly v1.9.2 or newer for optimal performance and accuracy.

This recommendation is crucial for configurations with a low infer_every parameter in your scheduler, and in scenarios where data exhibits significant high-order seasonality patterns (such as hourly or daily cycles). Previous versions from v1.5.1 to v1.8.0 were identified to contain a critical issue impacting model training, where models were inadvertently trained on limited data subsets, leading to suboptimal fits, affecting the accuracy of anomaly detection.

Upgrading to v1.9.2 addresses this issue, ensuring proper model training and enhanced reliability. For users utilizing Helm charts, it is recommended to upgrade to version 1.0.0 or newer.

v1.13.2

Released: 2024-07-15

v1.13.0

Released: 2024-06-11

  • FEATURE: Introduced preset mode to run vmanomaly service with minimal user input and on widely-known metrics, like those produced by node_exporter.
  • FEATURE: Introduced min_dev_from_expected model common arg, aimed at reducing false positives in scenarios where deviations between the real value y and the expected value yhat are relatively high and may cause models to generate high anomaly scores. However, these deviations are not significant enough in absolute values to be considered anomalies based on domain knowledge.
  • FEATURE: Introduced detection_direction model common arg, enabling domain-driven anomaly detection strategies. Configure models to identify anomalies occurring above, below, or in both directions relative to the expected values.
  • FEATURE: add n_jobs arg to BacktestingScheduler to allow proportionally faster (yet more resource-intensive) evaluations of a config on historical data. Default value is 1, that implies sequential execution.
  • FEATURE: allow anomaly detection models to be dumped to a host filesystem after fit stage (instead of in-memory). Resource-intensive setups (many models, many metrics, bigger fit_window arg) and/or 3rd-party models that store fit data (like ProphetModel or HoltWinters) will have RAM consumption greatly reduced at a cost of slightly slower infer stage. Please find how to enable it here
  • IMPROVEMENT: Reduced the resource used for each fitted ProphetModel by up to 6 times. This includes both RAM for in-memory models and disk space for on-disk models storage. For more details, refer to this discussion on Facebook's Prophet.
  • IMPROVEMENT: now config components class can be referenced by a short alias instead of a full class path - i.e. model.zscore.ZscoreModel becomes zscore, reader.vm.VmReader becomes vm, scheduler.periodic.PeriodicScheduler becomes periodic, etc.
  • FIX: if using multi-scheduler setup (introduced in v1.11.0), prevent schedulers (and correspondent services) that are not attached to any model (so neither found in 'schedulers' arg nor left blank in model section) from being spawn, causing resource overhead and slight interference with existing ones.
  • FIX: set random seed for ProphetModel to assure uncertainty estimates (like yhat_lower, yhat_upper) and dependant series (like anomaly_score), produced during .infer() calls are always deterministic given the same input. See initial issue for the details.
  • FIX: prevent orphan queries (that are not attached to any model or scheduler) found in queries arg of Reader config section to be fetched from VictoriaMetrics TSDB, avoiding redundant data processing. A warning will be logged, if such queries exist in a parsed config.

v1.12.0

Released: 2024-03-31

  • FEATURE: Introduction of AutoTunedModel model class to optimize any built-in model on data during fit phase. Specify as little as anomaly_percentage param from (0, 0.5) interval and tuned_model_class (i.e. model.zscore.ZscoreModel) to get it working with best settings that match your data. See details here.
  • IMPROVEMENT: Better logging of model lifecycle (fit/infer stages).
  • IMPROVEMENT: Introduce provide_series arg to all the built-in models to define what output fields to generate for writing (i.e. provide_series: ['anomaly_score'] means only scores are being produced)
  • FIX: Self-monitoring metrics are now aggregated to queries aliases level (not to label sets of individual timeseries) and aligned with reader, writer and model sections description , so /metrics endpoint holds only necessary information for scraping.
  • FIX: Self-monitoring metric vmanomaly_models_active now has additional labels model_alias, scheduler_alias, preset to align with model-centric self-monitoring.
  • IMPROVEMENT: Add possibility to use temporal information in IsolationForest models via cyclical encoding. This is particularly helpful to detect multivariate seasonality-dependant anomalies.
  • BREAKING CHANGE: ARIMA model is removed from built-in models. For affected users, it is suggested to replace ARIMA by Prophet or Holt-Winters.

v1.11.0

Released: 2024-02-22

  • FEATURE: Multi-scheduler support. Now users can use multiple model specs in a single config (via aliasing), each spec can be run with its own (even multiple) schedulers.
    • Introduction of schedulers arg in model spec:
      • It allows each model to be managed by 1 (or more) schedulers, so overall resource usage is optimized and flexibility is preserved.
      • Passing an empty list or not specifying this param implies that each model is run in all the schedulers, which is a backward-compatible behavior.
      • Please find more details in docs on Model section
  • DEPRECATION: slight refactor of a scheduler config section
    • Now schedulers are passed as a mapping of scheduler_alias: scheduler_spec under scheduler sections. Using old format (< 1.11.0) will produce warnings for now and will be removed in future versions.
  • DEPRECATION: The --watch CLI option for config file reloads is deprecated and will be ignored in the future.

v1.10.0

Released: 2024-02-15

  • FEATURE: Multi-model support. Now users can specify multiple model specs in a single config (via aliasing), as well as to reference what queries from VmReader it should be run on.

    • Introduction of queries arg in model spec:
      • It allows the model to be executed only on a particular query subset from reader section.
      • Passing an empty list or not specifying this param implies that each model is run on results from all queries, which is a backward-compatible behavior.
      • Please find more details in docs on Model section
  • DEPRECATION: slight refactor of a model config section

    • Now models are passed as a mapping of model_alias: model_spec under model sections. Using old format (<= 1.9.2) will produce warnings for now and will be removed in future versions.
    • Please find more details in docs on Model section
  • IMPROVEMENT: now logs from monitoring.pull GET requests to /metrics endpoint are shown only in DEBUG mode

  • IMPROVEMENT: labelset for multivariate models is deduplicated and cleaned, resulting in better UX

Note

: These updates support more flexible setup and effective resource management in service, as now it's not longer needed to spawn several instances of vmanomaly to split queries/models context across.

v1.9.2

Released: 2024-01-29

v1.9.1

Released: 2024-01-27

  • IMPROVEMENT: Updated the offline license verification backbone to mitigate a critical vulnerability identified in the ecdsa library, ensuring enhanced security despite initial non-impact.
  • IMPROVEMENT: bump 3rd-party dependencies for Python 3.12.1

v1.9.0

Released: 2024-01-26

  • BUGFIX: The query_from_last_seen_timestamp internal logic in VmReader, first introduced in v1.5.1, now functions correctly. This fix ensures that the input data shape remains consistent for subsequent fit-based model calls in the service.
  • BREAKING CHANGE: The sampling_period parameter is now mandatory in VmReader. This change aims to clarify and standardize the frequency of input/output in vmanomaly, thereby reducing uncertainty and aligning with user expectations.

Note

: The majority of users, who have been proactively specifying the sampling_period parameter in their configurations, will experience no disruption from this update. This transition formalizes a practice that was already prevalent and expected among our user base.

v1.8.0

Released: 2024-01-15

  • FEATURE: Added Univariate MAD (median absolute deviation) model support.
  • IMPROVEMENT: Update Python to 3.12.1 and all the dependencies.
  • IMPROVEMENT: Don't check /health endpoint, check the real /query_range or /import endpoints directly. Users kept getting problems with /health.
  • DEPRECATION: "health_path" param is deprecated and doesn't do anything in config (reader, writer, monitoring.push).

v1.7.2

Released: 2023-12-21

  • FIX: fit/infer calls are now skipped if we have insufficient valid data to run on.
  • FIX: proper handling of inf and NaN in fit/infer calls.
  • FEATURE: add counter of skipped model runs vmanomaly_model_runs_skipped to healthcheck metrics.
  • FEATURE: add exponential retries wrapper to VmReader's read_metrics().
  • FEATURE: add BacktestingScheduler for consecutive retrospective fit/infer calls.
  • FEATURE: add improved & numerically stable anomaly scores.
  • IMPROVEMENT: add full config validation. The probability of getting errors in later stages (say, model fit) is greatly reduced now. All the config validation errors that needs to be fixed are now a part of logging.

    note: this is an backward-incompatible change, as model config section now expects key-value args for internal model defined in nested args.

  • IMPROVEMENT: add explicit support of gzip-ed responses from vmselect in VmReader.

v1.6.0

Released: 2023-10-30

  • IMPROVEMENT:
    • now all the produced healthcheck metrics have vmanomaly_ prefix for easier accessing.
    • updated docs for monitoring.

    note: this is an backward-incompatible change, as metric names will be changed, resulting in new metrics creation, i.e. model_datapoints_produced will become vmanomaly_model_datapoints_produced

  • IMPROVEMENT: Set default value for --log_level from DEBUG to INFO to reduce logs verbosity.
  • IMPROVEMENT: Add alias --log-level to --log_level.
  • FEATURE: Added extra_filters parameter to reader. It allows to apply global filters to all queries.
  • FEATURE: Added verify_tls parameter to reader and writer. It allows to disable TLS verification for remote endpoint.
  • FEATURE: Added bearer_token parameter to reader and writer. It allows to pass bearer token for remote endpoint for authentication.
  • BUGFIX: Fixed passing workers parameter for reader. Previously it would throw a runtime error if workers was specified.

v1.5.1

Released: 2023-09-18

  • IMPROVEMENT: Infer from the latest seen datapoint for each query. Handles the case datapoints arrive late.

v1.5.0

Released: 2023-08-11

  • FEATURE: add --license and --license-file command-line flags for license code verification.
  • IMPROVEMENT: Updated Python to 3.11.4 and updated dependencies.
  • IMPROVEMENT: Guide documentation for Custom Model usage.

v1.4.2

Released: 2023-06-09

  • FIX: Fix case with received metric labels overriding generated.

v1.4.1

Released: 2023-06-09

  • IMPROVEMENT: Update dependencies.

v1.4.0

Released: 2023-05-06

  • FEATURE: Reworked self-monitoring grafana dashboard for vmanomaly.
  • IMPROVEMENT: Update python version and dependencies.

v1.3.0

Released: 2023-03-21

  • FEATURE: Parallelized queries. See reader.workers param to control parallelism. By default it's value is equal to number of queries (sends all the queries at once).
  • IMPROVEMENT: Updated self-monitoring dashboard.
  • IMPROVEMENT: Reverted back default bind address for /metrics server to 0.0.0.0, as vmanomaly is distributed in Docker images.
  • IMPROVEMENT: Silenced Prophet INFO logs about yearly seasonality.

v1.2.2

Released: 2023-03-19

  • FIX: Fix for metric label to pass QUERY_KEY.
  • FEATURE: Added timeout config param to reader, writer, monitoring.push.
  • FIX: Don't hang if scheduler-model thread exits.
  • FEATURE: Now reader, writer and monitoring.push will not halt the process if endpoint is inaccessible or times out, instead they will increment metrics *_response_count{code=~"timeout|connection_error"}.

v1.2.1

Released: 2023-02-18

  • FIX: Fixed scheduler thread starting.
  • FIX: Fix rolling model fit+infer.
  • BREAKING CHANGE: monitoring.pull server now binds by default on 127.0.0.1 instead of 0.0.0.0. Please specify explicitly in monitoring.pull.addr what IP address it should bind to for serving /metrics.

v1.2.0

Released: 2023-02-04

  • FEATURE: With arg --watch watches for config(s) changes and reloads the service automatically.
  • IMPROVEMENT: Remove "provide_series" from HoltWinters model. Only Prophet model now has it, because it may produce a lot of series if "holidays" is on.
  • IMPROVEMENT: if Prophet's "provide_series" is omitted, then all series are returned.
  • DEPRECATION: Config monitoring.endpoint_url is deprecated in favor of monitoring.url.
  • DEPRECATION: Remove 'enable' param from config monitoring.pull. Now /metrics server is started whenever monitoring.pull is present.
  • IMPROVEMENT: include example configs into the docker image at /vmanomaly/config/*
  • IMPROVEMENT: include self-monitoring grafana dashboard into the docker image under /vmanomaly/dashboard/vmanomaly_grafana_dashboard.json

v1.1.0

Released: 2023-01-23

  • IMPROVEMENT: update Python dependencies
  • FEATURE: Add multivariate IsolationForest model.

v1.0.1

Released: 2023-01-06

  • FIX: prophet model incorrectly predicted two points in case of only one

v1.0.0-beta

Released: 2022-12-08

  • First public release is available