625 lines
24 KiB
Plaintext
625 lines
24 KiB
Plaintext
[[ml-getting-started]]
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== Getting Started
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////
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{xpack} {ml} features automatically detect:
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* Anomalies in single or multiple time series
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* Outliers in a population (also known as _entity profiling_)
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* Rare events (also known as _log categorization_)
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This tutorial is focuses on an anomaly detection scenario in single time series.
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////
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Ready to get some hands-on experience with the {xpack} {ml} features? This
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tutorial shows you how to:
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* Load a sample data set into Elasticsearch
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* Create a {ml} job
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* Use the results to identify possible anomalies in the data
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{nbsp}
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At the end of this tutorial, you should have a good idea of what {ml} is and
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will hopefully be inspired to use it to detect anomalies in your own data.
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You might also be interested in these video tutorials:
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* Getting started with machine learning (single metric)
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* Getting started with machine learning (multiple metric)
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[float]
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[[ml-gs-sysoverview]]
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=== System Overview
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To follow the steps in this tutorial, you will need the following
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components of the Elastic Stack:
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* Elasticsearch {version}, which stores the data and the analysis results
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* {xpack} {version}, which provides the {ml} features
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* Kibana {version}, which provides a helpful user interface for creating and
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viewing jobs +
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See the https://www.elastic.co/support/matrix[Elastic Support Matrix] for
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information about supported operating systems.
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See {stack-ref}/installing-elastic-stack.html[Installing the Elastic Stack] for
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information about installing each of the components.
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NOTE: To get started, you can install Elasticsearch and Kibana on a
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single VM or even on your laptop. As you add more data and your traffic grows,
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you'll want to replace the single Elasticsearch instance with a cluster.
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When you install {xpack} into Elasticsearch and Kibana, the {ml} features are
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enabled by default. If you have multiple nodes in your cluster, you can
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optionally dedicate nodes to specific purposes. If you want to control which
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nodes are _machine learning nodes_ or limit which nodes run resource-intensive
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activity related to jobs, see <<ml-settings>>.
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[float]
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[[ml-gs-users]]
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==== Users, Roles, and Privileges
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The {xpack} {ml} features implement cluster privileges and built-in roles to
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make it easier to control which users have authority to view and manage the jobs,
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data feeds, and results.
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By default, you can perform all of the steps in this tutorial by using the
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built-in `elastic` user. If you are performing these steps in a production
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environment, take extra care because that user has the `superuser` role and you
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could inadvertently make significant changes to the system. You can
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alternatively assign the `machine_learning_admin` and `kibana_user` roles to a
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user ID of your choice.
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For more information, see <<built-in-roles>> and <<privileges-list-cluster>>.
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[[ml-gs-data]]
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=== Identifying Data for Analysis
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For the purposes of this tutorial, we provide sample data that you can play with.
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When you consider your own data, however, it's important to take a moment
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and consider where the {xpack} {ml} features will be most impactful.
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The first consideration is that it must be time series data.
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Generally, it's best to use data that is in chronological order. When the data
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feed occurs in ascending time order, the statistical models and calculations are
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very efficient and occur in real-time.
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//TBD: Talk about handling out of sequence data?
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The second consideration, especially when you are first learning to use {ml},
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is the importance of the data and how familiar you are with it. Ideally, it is
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information that contains key performance indicators (KPIs) for the health or
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success of your business or system. It is information that you need to act on
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when anomalous behavior occurs. You might even have Kibana dashboards that
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you're already using to watch this data. The better you know the data,
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the quicker you will be able to create {ml} jobs that generate useful insights.
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//TBD: Talk about layering additional jobs?
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////
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You can then create additional jobs to troubleshoot the situation and put it
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into context of what was going on in the system at the time.
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The troubleshooting job would not create alarms of its own, but rather would
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help explain the overall situation. It's usually a different job because it's
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operating on different indices. Layering jobs is an important concept.
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////
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////
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* Working with out of sequence data:
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** In the typical case where data arrives in ascending time order,
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each new record pushes the time forward. When a record is received that belongs
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to a new bucket, the current bucket is considered to be completed.
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At this point, the model is updated and final results are calculated for the
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completed bucket and the new bucket is created.
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** Expecting data to be in time sequence means that modeling and results
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calculations can be performed very efficiently and in real-time.
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As a direct consequence of this approach, out-of-sequence records are ignored.
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** When data is expected to arrive out-of-sequence, a latency window can be
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specified in the job configuration (does not apply to data feeds?). (If we're
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using a data feed in the sample, perhaps this discussion can be deferred for
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future more-advanced scenario.)
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//See http://www.prelert.com/docs/behavioral_analytics/latest/concepts/outofsequence.html
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////
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The final consideration is where the data is located. If the data that you want
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to analyze is stored in Elasticsearch, you can define a _data feed_ that
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provides data to the job in real time. When you have both the input data and the
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analytical results in Elasticsearch, this data gravity provides performance
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benefits.
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IMPORTANT: If you want to create {ml} jobs in Kibana, you must use data feeds.
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That is to say, you must store your input data in Elasticsearch. When you create
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a job, you select an existing index pattern and Kibana configures the data feed
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for you under the covers.
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If your data is not stored in Elasticsearch, you can create jobs by using
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the <<ml-put-job,create job API>> and upload batches of data to the job by
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using the <<ml-post-data,post data API>>. That scenario is not covered in
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this tutorial, however.
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//TBD: The data must be provided in JSON format?
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[float]
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[[ml-gs-sampledata]]
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==== Obtaining a Sample Data Set
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The sample data for this tutorial contains information about the requests that
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are received by various applications and services in a system. A system
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administrator might use this type of information to track the the total
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number of requests across all of the infrastructure. If the number of requests
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increases or decreases unexpectedly, for example, this might be an indication
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that there is a problem or that resources need to be redistributed. By using
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the {xpack} {ml} features to model the behavior of this data, it is easier to
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identify anomalies and take appropriate action.
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* TBD: Provide instructions for downloading the sample data after it's made
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available publicly on https://github.com/elastic/examples
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//Download this data set by clicking here:
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//See https://download.elastic.co/demos/kibana/gettingstarted/shakespeare.json[shakespeare.json].
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////
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Use the following commands to extract the files:
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[source,shell]
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gzip -d transactions.ndjson.gz
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////
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Each document in the server-metrics data set has the following schema:
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[source,json]
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----------------------------------
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{
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"index":
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{
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"_index":"server-metrics",
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"_type":"metric",
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"_id":"AVuQL1eekrHQ5a9V5qre"
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}
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}
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{
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"deny":1783,
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"service":"app_0",
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"@timestamp":"2017-03-26T06:47:28.684926",
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"accept":24465,
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"host":"server_1",
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"total":26248,
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"response":1.8242486553275024
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}
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----------------------------------
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Before you load the data set, you need to set up {ref}/mapping.html[_mappings_]
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for the fields. Mappings divide the documents in the index into logical groups
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and specify a field's characteristics, such as the field's searchability or
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whether or not it's _tokenized_, or broken up into separate words.
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The sample data includes an `upload_server-metrics.sh` script, which you can use
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to create the mappings and load the data set. The script runs a command similar
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to the following example, which sets up a mapping for the data set:
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[source,shell]
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----------------------------------
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curl -u elastic:elasticpassword -X PUT -H 'Content-Type: application/json'
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http://localhost:9200/server-metrics -d '{
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"settings": {
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"number_of_shards": 1,
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"number_of_replicas": 0
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},
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"mappings": {
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"metric": {
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"properties": {
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"@timestamp": {
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"type": "date"
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},
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"accept": {
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"type": "long"
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},
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"deny": {
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"type": "long"
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},
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"host": {
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"type": "text",
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"fields": {
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"keyword": {
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"type": "keyword",
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"ignore_above": 256
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}
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}
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},
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"response": {
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"type": "float"
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},
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"service": {
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"type": "text",
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"fields": {
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"keyword": {
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"type": "keyword",
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"ignore_above": 256
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}
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}
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},
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"total": {
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"type": "long"
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}
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}
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}
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}
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}
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}'
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----------------------------------
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NOTE: If you run this command, you must replace `elasticpassword` with your
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actual password. Likewise, if you use the `upload_server-metrics.sh` script,
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you must edit the USERNAME and PASSWORD variables before you run it.
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////
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This mapping specifies the following qualities for the data set:
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* The _@timestamp_ field is a date.
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//that uses the ISO format `epoch_second`,
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//which is the number of seconds since the epoch.
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* The _accept_, _deny_, and _total_ fields are long numbers.
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* The _host
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////
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You can then use the Elasticsearch `bulk` API to load the data set. The
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`upload_server-metrics.sh` script runs commands similar to the following
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example, which loads the four JSON files:
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[source,shell]
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----------------------------------
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curl -u elastic:elasticpassword -X POST -H "Content-Type: application/json"
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http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_1.json"
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curl -u elastic:elasticpassword -X POST -H "Content-Type: application/json"
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http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_2.json"
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curl -u elastic:elasticpassword -X POST -H "Content-Type: application/json"
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http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_3.json"
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curl -u elastic:elasticpassword -X POST -H "Content-Type: application/json"
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http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_4.json"
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----------------------------------
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These commands might take some time to run, depending on the computing resources
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available.
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You can verify that the data was loaded successfully with the following command:
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[source,shell]
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----------------------------------
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curl 'http://localhost:9200/_cat/indices?v' -u elastic:elasticpassword
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----------------------------------
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You should see output similar to the following:
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[source,shell]
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----------------------------------
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health status index ... pri rep docs.count docs.deleted store.size ...
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green open server-metrics ... 1 0 907200 0 134.9mb ...
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----------------------------------
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Next, you must define an index pattern for this data set:
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. Open Kibana in your web browser and log in. If you are running Kibana
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locally, go to `http://localhost:5601/`.
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. Click the **Management** tab, then **Index Patterns**.
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. Click the plus sign (+) to define a new index pattern.
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. For this tutorial, any pattern that matches the name of the index you've
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loaded will work. For example, enter `server-metrics*` as the index pattern.
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. Verify that the **Index contains time-based events** is checked.
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. Select the `@timestamp` field from the **Time-field name** list.
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. Click **Create**.
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This data set can now be analyzed in {ml} jobs in Kibana.
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//Content based on https://www.elastic.co/guide/en/kibana/current/tutorial-load-dataset.html
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[[ml-gs-jobs]]
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=== Creating Jobs
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Machine learning jobs contain the configuration information and metadata
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necessary to perform an analytical task. They also contain the results of the
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analytical task.
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NOTE: This tutorial uses Kibana to create jobs and view results, but you can
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alternatively use APIs to accomplish most tasks.
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For API reference information, see <<ml-apis>>.
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To work with jobs in Kibana:
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. Open Kibana in your web browser and log in. If you are running Kibana
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locally, go to `http://localhost:5601/`.
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. Click **Machine Learning** in the side navigation:
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image::images/ml-kibana.jpg["Job Management"]
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You can choose to create single metric, multi-metric, or advanced jobs in
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Kibana. In this tutorial, the goal is to detect anomalies in the total requests
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received by your applications and services. The sample data contains a single
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key performance indicator to track this, which is the total requests over time.
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It is therefore logical to start by creating a single metric job for this KPI.
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[float]
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[[ml-gs-job1-create]]
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==== Creating a Single Metric Job
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A single metric job contains a single _detector_. A detector defines the type of
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analysis that will occur (for example, `max`, `average`, or `rare` analytical
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functions) and the fields that will be analyzed.
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To create a single metric job in Kibana:
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. Click **Machine Learning** in the side navigation,
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then click **Create new job**.
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. Click **Create single metric job**.
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image::images/ml-create-jobs.jpg["Create a new job"]
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. Click the `server-metrics` index. +
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+
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--
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image::images/ml-gs-index.jpg["Select an index"]
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--
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. Configure the job by providing the following information:
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image::images/ml-gs-single-job.jpg["Create a new job from the server-metrics index"]
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.. For the **Aggregation**, select `Sum`. This value specifies the analysis
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function that is used.
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+
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--
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Some of the analytical functions look for single anomalous data points. For
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example, `max` identifies the maximum value that is seen within a bucket.
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Others perform some aggregation over the length of the bucket. For example,
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`mean` calculates the mean of all the data points seen within the bucket.
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Similarly, `count` calculates the total number of data points within the bucket.
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In this tutorial, you are using the `sum` function, which calculates the sum of
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the specified field's values within the bucket.
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--
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.. For the **Field**, select `total`. This value specifies the field that
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the detector uses in the function.
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+
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--
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NOTE: Some functions such as `count` and `rare` do not require fields.
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--
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.. For the **Bucket span**, enter `600s`. This value specifies the size of the
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interval that the analysis is aggregated into.
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+
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--
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The {xpack} {ml} features use the concept of a bucket to divide up a continuous
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stream of data into batches for processing. For example, if you are monitoring
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the total number of requests in the system,
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//and receive a data point every 10 minutes
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using a bucket span of 1 hour would mean that at the end of each hour, it
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calculates the sum of the requests for the last hour and computes the
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anomalousness of that value compared to previous hours.
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The bucket span has two purposes: it dictates over what time span to look for
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anomalous features in data, and also determines how quickly anomalies can be
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detected. Choosing a shorter bucket span allows anomalies to be detected more
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quickly. However, there is a risk of being too sensitive to natural variations
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or noise in the input data. Choosing too long a bucket span can mean that
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interesting anomalies are averaged away. There is also the possibility that the
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aggregation might smooth out some anomalies based on when the bucket starts
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in time.
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The bucket span has a significant impact on the analysis. When you're trying to
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determine what value to use, take into account the granularity at which you
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want to perform the analysis, the frequency of the input data, and the frequency
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at which alerting is required.
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//TBD: Talk about overlapping buckets? "To avoid this, you can use overlapping
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//buckets (how/where?). We analyze the data points in two buckets simultaneously,
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//one starting half a bucket span later than the other. Overlapping buckets are
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//only beneficial for aggregating functions, and should not be used for
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//non-aggregating functions.
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--
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. Click **Use full transaction_counts data**.
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+
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--
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A graph is generated, which represents the total number of requests over time.
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//TBD: What happens if you click the play button instead?
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--
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. Provide a name for the job, for example `total-requests`. The job name must
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be unique in your cluster. You can also optionally provide a description of the
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job.
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. Click **Create Job**.
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image::images/ml-gs-job1.jpg["A graph of the total number of requests over time"]
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As the job is created, the graph is updated to give a visual representation of
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the {ml} that occurs as the data is processed.
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//To explore the results, click **View Results**.
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//TBD: image::images/ml-gs-job1-results.jpg["The total-requests job is created"]
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[[ml-gs-job1-managa]]
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=== Managing Jobs
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After you create a job, you can see its status in the **Job Management** tab:
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image::images/ml-gs-job1-manage.jpg["Status information for the total-requests job"]
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The following information is provided for each job:
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Job ID::
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The unique identifier for the job.
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Description::
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The optional description of the job.
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Processed records::
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The number of records that have been processed by the job.
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+
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--
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NOTE: Depending on how you send data to the job, the number of processed
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records is not always equal to the number of input records. For more information,
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see the `processed_record_count` description in <<ml-datacounts,Data Counts Objects>>.
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--
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Memory status::
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The status of the mathematical models. When you create jobs by using the APIs or
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by using the advanced options in Kibana, you can specify a `model_memory_limit`.
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That value is the maximum amount of memory, in MiB, that the mathematical models
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can use. Once that limit is approached, data pruning becomes more aggressive.
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Upon exceeding that limit, new entities are not modeled.
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The default value is `4096`. The memory status field reflects whether you have
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reached or exceeded the model memory limit. It can have one of the following
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values: +
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`ok`::: The models stayed below the configured value.
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`soft_limit`::: The models used more than 60% of the configured memory limit
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and older unused models will be pruned to free up space.
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`hard_limit`::: The models used more space than the configured memory limit.
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As a result, not all incoming data was processed.
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Job state::
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The status of the job, which can be one of the following values: +
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`open`::: The job is available to receive and process data.
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`closed`::: The job finished successfully with its model state persisted.
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The job must be opened before it can accept further data.
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`closing`::: The job close action is in progress and has not yet completed.
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A closing job cannot accept further data.
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`failed`::: The job did not finish successfully due to an error.
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This situation can occur due to invalid input data.
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If the job had irrevocably failed, it must be force closed and then deleted.
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If the data feed can be corrected, the job can be closed and then re-opened.
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Datafeed state::
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The status of the data feed, which can be one of the following values: +
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started::: The data feed is actively receiving data.
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stopped::: The data feed is stopped and will not receive data until it is re-started.
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|
//TBD: How to restart data feeds in Kibana?
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|
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|
Latest timestamp::
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|
The timestamp of the last processed record.
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|
//TBD: Is that right?
|
|
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|
If you click the arrow beside the name of job, you can show or hide additional
|
|
information, such as the settings, configuration information, or messages for
|
|
the job.
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|
|
|
You can also click one of the **Actions** buttons to start the data feed, edit
|
|
the job or data feed, and clone or delete the job, for example.
|
|
|
|
* TBD: Demonstrate how to re-open the data feed and add additional data
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|
|
|
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|
[[ml-gs-jobresults]]
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|
=== Exploring Job Results
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|
|
|
After you create a job, you can use the **Anomaly Explorer** or the
|
|
**Single Metric Viewer** in Kibana to view the analysis results.
|
|
|
|
Anomaly Explorer::
|
|
TBD
|
|
|
|
Single Metric Viewer::
|
|
TBD
|
|
|
|
[float]
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|
[[ml-gs-job1-analyze]]
|
|
==== Exploring Single Metric Job Results
|
|
|
|
TBD.
|
|
|
|
* Walk through exploration of job results.
|
|
** Based on this job configuration we analyze the input stream of data.
|
|
We model the behavior of the data, perform analysis based upon the defined detectors
|
|
and for the time interval. When we see an event occurring outside of our model,
|
|
we identify this as an anomaly. For each anomaly detected, we store the
|
|
result records of our analysis, which includes the probability of
|
|
detecting that anomaly.
|
|
** With high volumes of real-life data, many anomalies may be found.
|
|
These vary in probability from very likely to highly unlikely i.e. from not
|
|
particularly anomalous to highly anomalous. There can be none, one or two or
|
|
tens, sometimes hundreds of anomalies found within each bucket.
|
|
There can be many thousands found per job.
|
|
In order to provide a sensible view of the results, we calculate an anomaly score
|
|
for each time interval. An interval with a high anomaly score is significant
|
|
and requires investigation.
|
|
** The anomaly score is a sophisticated aggregation of the anomaly records.
|
|
The calculation is optimized for high throughput, gracefully ages historical data,
|
|
and reduces the signal to noise levels.
|
|
It adjusts for variations in event rate, takes into account the frequency
|
|
and the level of anomalous activity and is adjusted relative to past anomalous behavior.
|
|
In addition, it is boosted if anomalous activity occurs for related entities,
|
|
for example if disk IO and CPU are both behaving unusually for a given host.
|
|
** Once an anomalous time interval has been identified, it can be expanded to
|
|
view the detailed anomaly records which are the significant causal factors.
|
|
* Provide brief overview of statistical models and/or link to more info.
|
|
* Possibly discuss effect of altering bucket span.
|
|
|
|
* Provide general overview of management of jobs (when/why to start or
|
|
stop them).
|
|
|
|
Integrate the following images:
|
|
|
|
. Single Metric Viewer: All
|
|
image::images/ml-gs-job1-analysis.jpg["Single Metric Viewer for total-requests job"]
|
|
|
|
. Single Metric Viewer: Anomalies
|
|
image::images/ml-gs-job1-anomalies.jpg["Single Metric Viewer Anomalies for total-requests job"]
|
|
|
|
. Anomaly Explorer: All
|
|
image::images/ml-gs-job1-explorer.jpg["Anomaly Explorer for total-requests job"]
|
|
|
|
. Anomaly Explorer: Selected a red area from the heatmap
|
|
image::images/ml-gs-job1-explorer-anomaly.jpg["Anomaly Explorer details for total-requests job"]
|
|
|
|
////
|
|
[float]
|
|
[[ml-gs-job2-create]]
|
|
==== Creating a Multi-Metric Job
|
|
|
|
TBD.
|
|
|
|
* Walk through creation of a simple multi-metric job.
|
|
* Provide overview of:
|
|
** partition fields,
|
|
** influencers
|
|
*** An influencer is someone or something that has influenced or contributed to the anomaly.
|
|
Results are aggregated for each influencer, for each bucket, across all detectors.
|
|
In this way, a combined anomaly score is calculated for each influencer,
|
|
which determines its relative anomalousness. You can specify one or many influencers.
|
|
Picking an influencer is strongly recommended for the following reasons:
|
|
**** It allow you to blame someone/something for the anomaly
|
|
**** It simplifies and aggregates results
|
|
*** The best influencer is the person or thing that you want to blame for the anomaly.
|
|
In many cases, users or client IP make excellent influencers.
|
|
*** By/over/partition fields are usually good candidates for influencers.
|
|
*** Influencers can be any field in the source data; they do not need to be fields
|
|
specified in detectors, although they often are.
|
|
** by/over fields,
|
|
*** detectors
|
|
**** You can have more than one detector in a job which is more efficient than
|
|
running multiple jobs against the same data stream.
|
|
|
|
//http://www.prelert.com/docs/behavioral_analytics/latest/concepts/multivariate.html
|
|
|
|
[float]
|
|
[[ml-gs-job2-analyze]]
|
|
===== Viewing Multi-Metric Job Results
|
|
|
|
TBD.
|
|
|
|
* Walk through exploration of job results.
|
|
* Describe how influencer detection accelerates root cause identification.
|
|
|
|
[[ml-gs-alerts]]
|
|
=== Creating Alerts for Job Results
|
|
|
|
TBD.
|
|
|
|
* Walk through creation of simple alert for anomalous data?
|
|
|
|
////
|