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Scale Loki

When scaling Loki, operators should consider running several Loki processes partitioned by role (ingester, distributor, querier) rather than a single Loki process. Grafana Labs’ production setup contains .libsonnet files that demonstrates configuring separate components and scaling for resource usage.

Separate Query Scheduler

The Query frontend has an in-memory queue that can be moved out into a separate process similar to the Grafana Mimir query-scheduler. This allows running multiple query frontends.

To run with the Query Scheduler, the frontend needs to be passed the scheduler’s address via -frontend.scheduler-address and the querier processes needs to be started with -querier.scheduler-address set to the same address. Both options can also be defined via the configuration file.

It is not valid to start the querier with both a configured frontend and a scheduler address.

The query scheduler process itself can be started via the -target=query-scheduler option of the Loki Docker image. For instance, docker run grafana/loki:latest -config.file=/etc/loki/config.yaml -target=query-scheduler -server.http-listen-port=8009 -server.grpc-listen-port=9009 starts the query scheduler listening on ports 8009 and 9009.

Memory ballast

In compute-constrained environments, garbage collection can become a significant performance factor. Frequently-run garbage collection interferes with running the application by using CPU resources. The use of memory ballast can mitigate the issue. Memory ballast allocates extra, but unused virtual memory in order to inflate the quantity of live heap space. Garbage collection is triggered by the growth of heap space usage. The inflated quantity of heap space reduces the perceived growth, so garbage collection occurs less frequently.

Configure memory ballast using the ballast_bytes configuration option.

Remote rule evaluation

This feature was first proposed in LID-0002; it contains the design decisions which informed the implementation.

By default, the ruler component embeds a query engine to evaluate rules. This generally works fine, except when rules are complex or have to process a large amount of data regularly. Poor performance of the ruler manifests as recording rules metrics with gaps or missed alerts. This situation can be detected by alerting on the loki_prometheus_rule_group_iterations_missed_total metric when it has a non-zero value.

A solution to this problem is to externalize rule evaluation from the ruler process. The ruler embedded query engine is single-threaded, meaning that rules are not split, sharded, or otherwise accelerated like regular Loki queries. The query-frontend component exists explicitly for this purpose and, when combined with a number of querier instances, can massively improve rule evaluation performance and lead to fewer missed iterations.

It is generally recommended to create a separate query-frontend deployment and querier pool from your existing one - which handles adhoc queries via Grafana, logcli, or the API. Rules should be given priority over adhoc queries because they are used to produce metrics or alerts which may be crucial to the reliable operation of your service; if you use the same query-frontend and querier pool for both, your rules will be executed with the same priority as adhoc queries which could lead to unpredictable performance.

To enable remote rule evaluation, set the following configuration options:

yaml
ruler:
  evaluation:
    mode: remote
    query_frontend:
      address: dns:///<query-frontend-service>:<grpc-port>

See here for further configuration options.

When you enable remote rule evaluation, the ruler component becomes a gRPC client to the query-frontend service; this will result in far lower ruler resource usage because the majority of the work has been externalized. The LogQL queries coming from the ruler will be executed against the given query-frontend service. Requests will be load-balanced across all query-frontend IPs if the dns:/// prefix is used.

Note

Queries that fail to execute are not retried.

Limits and Observability

Remote rule evaluation can be tuned with the following options:

  • ruler_remote_evaluation_timeout: maximum allowable execution time for rule evaluations
  • ruler_remote_evaluation_max_response_size: maximum allowable response size over gRPC connection from query-frontend to ruler

Both of these can be specified globally in the limits_config section or on a per-tenant basis.

Remote rule evaluation exposes a number of metrics:

  • loki_ruler_remote_eval_request_duration_seconds: time taken for rule evaluation (histogram)
  • loki_ruler_remote_eval_response_bytes: number of bytes in rule evaluation response (histogram)
  • loki_ruler_remote_eval_response_samples: number of samples in rule evaluation response (histogram)
  • loki_ruler_remote_eval_success_total: successful rule evaluations (counter)
  • loki_ruler_remote_eval_failure_total: unsuccessful rule evaluations with reasons (counter)

Each of these metrics are per-tenant, so cardinality must be taken into consideration.