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Concepts & Glossary

Crowdsec's main goal is to crunch logs to detect things (duh). You will find below an introduction to the concepts that are frequently used within the documentation.


Acquistion configuration defines which streams of information Crowdsec is going to process.

At the time of writing, it's mostly files, but it should be more or less any kind of stream, such as a kafka topic or a cloudtrail.

Acquisition configuration always contains a stream (ie. a file to tail) and a tag (ie. "these are in syslog format" "these are non-syslog nginx logs").

File acquisition configuration is defined as :

filenames: #a list of file or regexp to read from (supports regular expressions)
  - /var/log/nginx/http_access.log
  - /var/log/nginx/https_access.log
  - /var/log/nginx/error.log
  type: nginx
  - /var/log/auth.log
  type: syslog

The labels part is here to tag the incoming logs with a type. labels.type are used by the parsers to know which logs to process.

Parsers [reference]

For logs to be able to be exploited and analyzed, they need to be parsed and normalized, and this is where parsers are used.

A parser is a YAML configuration file that describes how a string is being parsed. Said string can be a log line, or a field extracted from a previous parser. While a lot of parsers rely on the GROK approach (a.k.a regular expression named capture groups), parsers can as well reference enrichment modules to allow specific data processing.

A parser usually has a specific scope. For example, if you are using nginx, you will probably want to use the crowdsecurity/nginx-logs which allows your Crowdsec setup to parse nginx's access and error logs.

Parsers are organized into stages to allow pipelines and branching in parsing.

See the Crowdsec Hub to explore parsers, or see below some examples :

You can as well write your own !


Parsers are organized into "stages" to allow pipelines and branching in parsing. Each parser belongs to a stage, and can trigger next stage when successful. At the time of writing, the parsers are organized around 3 stages :

  • s00-raw : low level parser, such as syslog
  • s01-parse : most of the services parsers (ssh, nginx etc.)
  • s02-enrich : enrichment that requires parsed events (ie. geoip-enrichment) or generic parsers that apply on parsed logs (ie. second stage http parser)

The number and structure of stages can be altered by the user, the directory structure and their alphabetical order dictates in which order stages and parsers are processed.

Every event starts in the first stage, and will move to the next stage once it has been successfully processed by a parser that has the onsuccess directive set to next_stage, and so on until it reaches the last stage, when it's going to start to be matched against scenarios. Thus a sshd log might follow this pipeline :

  • s00-raw : be parsed by crowdsecurity/syslog-logs (will move event to the next stage)
  • s01-raw : be parsed by crowdsecurity/sshd-logs (will move event to the next stage)
  • s02-enrich : will be parsed by crowdsecurity/geoip-enrich and crowdsecurity/dateparse-enrich


Enrichment is the action of adding extra context to an event based on the information we already have, so that better decision can later be taken. In most cases, you should be able to find the relevant enrichers on our Crowdsec Hub.

A common/simple type of enrichment would be geoip-enrich of an event (adding information such as : origin country, origin AS and origin IP range to an event).

Once again, you should be able to find the ones you're looking for on the Crowdsec Hub !

Scenarios [reference]

Scenarios is the expression of a heuristic that allows you to qualify a specific event (usually an attack).It is a YAML file that describes a set of events characterizing a scenario. Scenarios in Crowdsec gravitate around the leaky bucket principle.

A scenario description includes at least :

  • Event eligibility rules. (For example if we're writing a ssh bruteforce detection we only focus on logs of type ssh_failed_auth)
  • Bucket configuration such as the leak speed or its capacity (in our same ssh bruteforce example, we might allow 1 failed auth per 10s and no more than 5 in a short amount of time: leakspeed: 10s capacity: 5)
  • Aggregation rules : per source ip or per other criterias (in our ssh bruteforce example, we will group per source ip)

The description allows for many other rules to be specified (blackhole, distinct filters etc.), to allow rather complex scenarios.

See the Crowdsec Hub to explore scenarios and their capabilities, or see below some examples :

You can as well write your own !


To make user's life easier, "collections" are available, which are just a bundle of parsers and scenarios. In this way, if you want to cover basic use-cases of let's say "nginx", you can just install the crowdsecurity/nginx collection that is composed of crowdsecurity/nginx-logs parser, as well as generic http scenarios such as crowdsecurity/base-http-scenarios.

As usual, those can be found on the Crowdsec Hub !


The objects that are processed within Crowdsec are named "Events". An Event can be a log line, or an overflow result. This object layout evolves around a few important items :

  • Parsed is an associative array that will be used during parsing to store temporary variables or processing results.
  • Enriched, very similar to Parsed, is an associative array but is intended to be used for enrichment process.
  • Overflow is a SignalOccurence structure that represents information about a triggered scenario, when applicable.
  • Meta is an associative array that will be used to keep track of meta information about the event.

Other fields omitted for clarity, see pkg/types/event.go for detailed definition

Overflow or SignalOccurence

This object holds the relevant information about a scenario that happened : who / when / where / what etc. Its most relevant fields are :

  • Scenario : name of the scenario
  • Alert_message : a humanly readable message about what happened
  • Events_count : the number of individual events that lead to said overflow
  • Start_at + Stop_at : timestamp of the first and last events that triggered the scenario
  • Source : a binary representation of the source of the attack
  • Source_[ip,range,AutonomousSystemNumber,AutonomousSystemOrganization,Country] : string representation of source information
  • Labels : an associative array representing the scenario "labels" (see scenario definition)

Other fields omitted for clarity, see pkg/types/signal_occurence.go for detailed definition


A postoverflow is a parser that will be applied on overflows (scenario results) before the decision is written to local DB or pushed to API. Parsers in postoverflows are meant to be used for "expensive" enrichment/parsing process that you do not want to perform on all incoming events, but rather on decision that are about to be taken.

An example could be slack/mattermost enrichment plugin that requires human confirmation before applying the decision or reverse-dns lookup operations.