666 lines
26 KiB
Plaintext
666 lines
26 KiB
Plaintext
[[ml-getting-started]]
|
|
== Getting Started
|
|
|
|
////
|
|
{xpackml} features automatically detect:
|
|
* Anomalies in single or multiple time series
|
|
* Outliers in a population (also known as _entity profiling_)
|
|
* Rare events (also known as _log categorization_)
|
|
|
|
This tutorial is focuses on an anomaly detection scenario in single time series.
|
|
////
|
|
Ready to get some hands-on experience with the {xpackml} features? This
|
|
tutorial shows you how to:
|
|
|
|
* Load a sample data set into {es}
|
|
* Create single and multi-metric {ml} jobs in {kib}
|
|
* Use the results to identify possible anomalies in the data
|
|
|
|
At the end of this tutorial, you should have a good idea of what {ml} is and
|
|
will hopefully be inspired to use it to detect anomalies in your own data.
|
|
|
|
You might also be interested in these video tutorials, which use the same sample
|
|
data:
|
|
|
|
* https://www.elastic.co/videos/machine-learning-tutorial-creating-a-single-metric-job[Machine Learning for the Elastic Stack: Creating a single metric job]
|
|
* https://www.elastic.co/videos/machine-learning-tutorial-creating-a-multi-metric-job[Machine Learning for the Elastic Stack: Creating a multi-metric job]
|
|
|
|
|
|
[float]
|
|
[[ml-gs-sysoverview]]
|
|
=== System Overview
|
|
|
|
To follow the steps in this tutorial, you will need the following
|
|
components of the Elastic Stack:
|
|
|
|
* {es} {version}, which stores the data and the analysis results
|
|
* {xpack} {version}, which includes the beta {ml} features for both {es} and {kib}
|
|
* {kib} {version}, which provides a helpful user interface for creating and
|
|
viewing jobs +
|
|
|
|
//ll {ml} features are available to use as an API, however this tutorial
|
|
//will focus on using the {ml} tab in the {kib} UI.
|
|
|
|
WARNING: The {xpackml} features are in beta and subject to change.
|
|
Beta features are not subject to the same support SLA as GA features,
|
|
and deployment in production is at your own risk.
|
|
|
|
See the https://www.elastic.co/support/matrix[Elastic Support Matrix] for
|
|
information about supported operating systems.
|
|
|
|
See {stack-ref}/installing-elastic-stack.html[Installing the Elastic Stack] for
|
|
information about installing each of the components.
|
|
|
|
NOTE: To get started, you can install {es} and {kib} on a
|
|
single VM or even on your laptop (requires 64-bit OS).
|
|
As you add more data and your traffic grows,
|
|
you'll want to replace the single {es} instance with a cluster.
|
|
|
|
When you install {xpack} into {es} and {kib}, the {ml} features are
|
|
enabled by default. If you have multiple nodes in your cluster, you can
|
|
optionally dedicate nodes to specific purposes. If you want to control which
|
|
nodes are _machine learning nodes_ or limit which nodes run resource-intensive
|
|
activity related to jobs, see <<xpack-settings>>.
|
|
|
|
|
|
[float]
|
|
[[ml-gs-users]]
|
|
==== Users, Roles, and Privileges
|
|
|
|
The {xpackml} features implement cluster privileges and built-in roles to
|
|
make it easier to control which users have authority to view and manage the jobs,
|
|
{dfeeds}, and results.
|
|
|
|
By default, you can perform all of the steps in this tutorial by using the
|
|
built-in `elastic` super user. However, the password must be set before the user
|
|
can do anything. For information about how to set that password, see
|
|
<<security-getting-started>>.
|
|
|
|
If you are performing these steps in a production environment, take extra care
|
|
because `elastic` has the `superuser` role and you could inadvertently make
|
|
significant changes to the system. You can alternatively assign the
|
|
`machine_learning_admin` and `kibana_user` roles to a user ID of your choice.
|
|
|
|
For more information, see <<built-in-roles>> and <<privileges-list-cluster>>.
|
|
|
|
[[ml-gs-data]]
|
|
=== Identifying Data for Analysis
|
|
|
|
For the purposes of this tutorial, we provide sample data that you can play with
|
|
and search in {es}. When you consider your own data, however, it's important to
|
|
take a moment and think about where the {xpackml} features will be most
|
|
impactful.
|
|
|
|
The first consideration is that it must be time series data. The {ml} features
|
|
are designed to model and detect anomalies in time series data.
|
|
|
|
The second consideration, especially when you are first learning to use {ml},
|
|
is the importance of the data and how familiar you are with it. Ideally, it is
|
|
information that contains key performance indicators (KPIs) for the health,
|
|
security, or success of your business or system. It is information that you need
|
|
to monitor and act on when anomalous behavior occurs. You might even have {kib}
|
|
dashboards that you're already using to watch this data. The better you know the
|
|
data, the quicker you will be able to create {ml} jobs that generate useful
|
|
insights.
|
|
|
|
The final consideration is where the data is located. This tutorial assumes that
|
|
your data is stored in {es}. It guides you through the steps required to create
|
|
a _{dfeed}_ that passes data to a job. If your own data is outside of {es},
|
|
analysis is still possible by using a post data API.
|
|
|
|
IMPORTANT: If you want to create {ml} jobs in {kib}, you must use {dfeeds}.
|
|
That is to say, you must store your input data in {es}. When you create
|
|
a job, you select an existing index pattern and {kib} configures the {dfeed}
|
|
for you under the covers.
|
|
|
|
|
|
[float]
|
|
[[ml-gs-sampledata]]
|
|
==== Obtaining a Sample Data Set
|
|
|
|
In this step we will upload some sample data to {es}. This is standard
|
|
{es} functionality, and is needed to set the stage for using {ml}.
|
|
|
|
The sample data for this tutorial contains information about the requests that
|
|
are received by various applications and services in a system. A system
|
|
administrator might use this type of information to track the total number of
|
|
requests across all of the infrastructure. If the number of requests increases
|
|
or decreases unexpectedly, for example, this might be an indication that there
|
|
is a problem or that resources need to be redistributed. By using the {xpack}
|
|
{ml} features to model the behavior of this data, it is easier to identify
|
|
anomalies and take appropriate action.
|
|
|
|
Download this sample data by clicking here:
|
|
https://download.elastic.co/demos/machine_learning/gettingstarted/server_metrics.tar.gz[server_metrics.tar.gz]
|
|
|
|
Use the following commands to extract the files:
|
|
|
|
[source,shell]
|
|
----------------------------------
|
|
tar -zxvf server_metrics.tar.gz
|
|
----------------------------------
|
|
|
|
Each document in the server-metrics data set has the following schema:
|
|
|
|
[source,js]
|
|
----------------------------------
|
|
{
|
|
"index":
|
|
{
|
|
"_index":"server-metrics",
|
|
"_type":"metric",
|
|
"_id":"1177"
|
|
}
|
|
}
|
|
{
|
|
"@timestamp":"2017-03-23T13:00:00",
|
|
"accept":36320,
|
|
"deny":4156,
|
|
"host":"server_2",
|
|
"response":2.4558210155,
|
|
"service":"app_3",
|
|
"total":40476
|
|
}
|
|
----------------------------------
|
|
|
|
TIP: The sample data sets include summarized data. For example, the `total`
|
|
value is a sum of the requests that were received by a specific service at a
|
|
particular time. If your data is stored in {es}, you can generate
|
|
this type of sum or average by using aggregations. One of the benefits of
|
|
summarizing data this way is that {es} automatically distributes
|
|
these calculations across your cluster. You can then feed this summarized data
|
|
into {xpackml} instead of raw results, which reduces the volume
|
|
of data that must be considered while detecting anomalies. For the purposes of
|
|
this tutorial, however, these summary values are stored in {es}. For more
|
|
information, see <<ml-configuring-aggregation>>.
|
|
|
|
Before you load the data set, you need to set up {ref}/mapping.html[_mappings_]
|
|
for the fields. Mappings divide the documents in the index into logical groups
|
|
and specify a field's characteristics, such as the field's searchability or
|
|
whether or not it's _tokenized_, or broken up into separate words.
|
|
|
|
The sample data includes an `upload_server-metrics.sh` script, which you can use
|
|
to create the mappings and load the data set. You can download it by clicking
|
|
here: https://download.elastic.co/demos/machine_learning/gettingstarted/upload_server-metrics.sh[upload_server-metrics.sh]
|
|
Before you run it, however, you must edit the USERNAME and PASSWORD variables
|
|
with your actual user ID and password.
|
|
|
|
The script runs a command similar to the following example, which sets up a
|
|
mapping for the data set:
|
|
|
|
[source,shell]
|
|
----------------------------------
|
|
|
|
curl -u elastic:x-pack-test-password -X PUT -H 'Content-Type: application/json'
|
|
http://localhost:9200/server-metrics -d '{
|
|
"settings":{
|
|
"number_of_shards":1,
|
|
"number_of_replicas":0
|
|
},
|
|
"mappings":{
|
|
"metric":{
|
|
"properties":{
|
|
"@timestamp":{
|
|
"type":"date"
|
|
},
|
|
"accept":{
|
|
"type":"long"
|
|
},
|
|
"deny":{
|
|
"type":"long"
|
|
},
|
|
"host":{
|
|
"type":"keyword"
|
|
},
|
|
"response":{
|
|
"type":"float"
|
|
},
|
|
"service":{
|
|
"type":"keyword"
|
|
},
|
|
"total":{
|
|
"type":"long"
|
|
}
|
|
}
|
|
}
|
|
}
|
|
}'
|
|
----------------------------------
|
|
|
|
NOTE: If you run this command, you must replace `x-pack-test-password` with your
|
|
actual password.
|
|
|
|
////
|
|
This mapping specifies the following qualities for the data set:
|
|
|
|
* The _@timestamp_ field is a date.
|
|
//that uses the ISO format `epoch_second`,
|
|
//which is the number of seconds since the epoch.
|
|
* The _accept_, _deny_, and _total_ fields are long numbers.
|
|
* The _host
|
|
////
|
|
|
|
You can then use the {es} `bulk` API to load the data set. The
|
|
`upload_server-metrics.sh` script runs commands similar to the following
|
|
example, which loads the four JSON files:
|
|
|
|
[source,shell]
|
|
----------------------------------
|
|
|
|
curl -u elastic:x-pack-test-password -X POST -H "Content-Type: application/json"
|
|
http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_1.json"
|
|
|
|
curl -u elastic:x-pack-test-password -X POST -H "Content-Type: application/json"
|
|
http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_2.json"
|
|
|
|
curl -u elastic:x-pack-test-password -X POST -H "Content-Type: application/json"
|
|
http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_3.json"
|
|
|
|
curl -u elastic:x-pack-test-password -X POST -H "Content-Type: application/json"
|
|
http://localhost:9200/server-metrics/_bulk --data-binary "@server-metrics_4.json"
|
|
----------------------------------
|
|
|
|
TIP: This will upload 200MB of data. This is split into 4 files as there is a
|
|
maximum 100MB limit when using the `_bulk` API.
|
|
|
|
These commands might take some time to run, depending on the computing resources
|
|
available.
|
|
|
|
You can verify that the data was loaded successfully with the following command:
|
|
|
|
[source,shell]
|
|
----------------------------------
|
|
|
|
curl 'http://localhost:9200/_cat/indices?v' -u elastic:x-pack-test-password
|
|
----------------------------------
|
|
|
|
You should see output similar to the following:
|
|
|
|
[source,shell]
|
|
----------------------------------
|
|
|
|
health status index ... pri rep docs.count ...
|
|
green open server-metrics ... 1 0 905940 ...
|
|
----------------------------------
|
|
|
|
Next, you must define an index pattern for this data set:
|
|
|
|
. Open {kib} in your web browser and log in. If you are running {kib}
|
|
locally, go to `http://localhost:5601/`.
|
|
|
|
. Click the **Management** tab, then **Index Patterns**.
|
|
|
|
. If you already have index patterns, click the plus sign (+) to define a new
|
|
one. Otherwise, the **Configure an index pattern** wizard is already open.
|
|
|
|
. For this tutorial, any pattern that matches the name of the index you've
|
|
loaded will work. For example, enter `server-metrics*` as the index pattern.
|
|
|
|
. Verify that the **Index contains time-based events** is checked.
|
|
|
|
. Select the `@timestamp` field from the **Time-field name** list.
|
|
|
|
. Click **Create**.
|
|
|
|
This data set can now be analyzed in {ml} jobs in {kib}.
|
|
|
|
|
|
[[ml-gs-jobs]]
|
|
=== Creating Single Metric Jobs
|
|
|
|
Machine learning jobs contain the configuration information and metadata
|
|
necessary to perform an analytical task. They also contain the results of the
|
|
analytical task.
|
|
|
|
[NOTE]
|
|
--
|
|
This tutorial uses {kib} to create jobs and view results, but you can
|
|
alternatively use APIs to accomplish most tasks.
|
|
For API reference information, see {ref}/ml-apis.html[Machine Learning APIs].
|
|
|
|
The {xpackml} features in {kib} use pop-ups. You must configure your
|
|
web browser so that it does not block pop-up windows or create an
|
|
exception for your Kibana URL.
|
|
--
|
|
|
|
You can choose to create single metric, multi-metric, or advanced jobs in
|
|
{kib}. At this point in the tutorial, the goal is to detect anomalies in the
|
|
total requests received by your applications and services. The sample data
|
|
contains a single key performance indicator to track this, which is the total
|
|
requests over time. It is therefore logical to start by creating a single metric
|
|
job for this KPI.
|
|
|
|
TIP: If you are using aggregated data, you can create an advanced job
|
|
and configure it to use a `summary_count_field_name`. The {ml} algorithms will
|
|
make the best possible use of summarized data in this case. For simplicity, in
|
|
this tutorial we will not make use of that advanced functionality.
|
|
|
|
//TO-DO: Add link to aggregations.asciidoc: For more information, see <<>>.
|
|
|
|
A single metric job contains a single _detector_. A detector defines the type of
|
|
analysis that will occur (for example, `max`, `average`, or `rare` analytical
|
|
functions) and the fields that will be analyzed.
|
|
|
|
To create a single metric job in {kib}:
|
|
|
|
. Open {kib} in your web browser and log in. If you are running {kib} locally,
|
|
go to `http://localhost:5601/`.
|
|
|
|
. Click **Machine Learning** in the side navigation: +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-kibana.jpg[Job Management]
|
|
--
|
|
|
|
. Click **Create new job**.
|
|
|
|
. Click **Create single metric job**. +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-create-jobs.jpg["Create a new job"]
|
|
--
|
|
|
|
. Click the `server-metrics` index. +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-gs-index.jpg["Select an index"]
|
|
--
|
|
|
|
. Configure the job by providing the following information: +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-gs-single-job.jpg["Create a new job from the server-metrics index"]
|
|
--
|
|
|
|
.. For the **Aggregation**, select `Sum`. This value specifies the analysis
|
|
function that is used.
|
|
+
|
|
--
|
|
Some of the analytical functions look for single anomalous data points. For
|
|
example, `max` identifies the maximum value that is seen within a bucket.
|
|
Others perform some aggregation over the length of the bucket. For example,
|
|
`mean` calculates the mean of all the data points seen within the bucket.
|
|
Similarly, `count` calculates the total number of data points within the bucket.
|
|
In this tutorial, you are using the `sum` function, which calculates the sum of
|
|
the specified field's values within the bucket.
|
|
--
|
|
|
|
.. For the **Field**, select `total`. This value specifies the field that
|
|
the detector uses in the function.
|
|
+
|
|
--
|
|
NOTE: Some functions such as `count` and `rare` do not require fields.
|
|
--
|
|
|
|
.. For the **Bucket span**, enter `10m`. This value specifies the size of the
|
|
interval that the analysis is aggregated into.
|
|
+
|
|
--
|
|
The {xpackml} features use the concept of a bucket to divide up the time series
|
|
into batches for processing. For example, if you are monitoring
|
|
the total number of requests in the system,
|
|
//and receive a data point every 10 minutes
|
|
using a bucket span of 1 hour would mean that at the end of each hour, it
|
|
calculates the sum of the requests for the last hour and computes the
|
|
anomalousness of that value compared to previous hours.
|
|
|
|
The bucket span has two purposes: it dictates over what time span to look for
|
|
anomalous features in data, and also determines how quickly anomalies can be
|
|
detected. Choosing a shorter bucket span enables anomalies to be detected more
|
|
quickly. However, there is a risk of being too sensitive to natural variations
|
|
or noise in the input data. Choosing too long a bucket span can mean that
|
|
interesting anomalies are averaged away. There is also the possibility that the
|
|
aggregation might smooth out some anomalies based on when the bucket starts
|
|
in time.
|
|
|
|
The bucket span has a significant impact on the analysis. When you're trying to
|
|
determine what value to use, take into account the granularity at which you
|
|
want to perform the analysis, the frequency of the input data, the duration of
|
|
typical anomalies and the frequency at which alerting is required.
|
|
--
|
|
|
|
. Determine whether you want to process all of the data or only part of it. If
|
|
you want to analyze all of the existing data, click
|
|
**Use full server-metrics* data**. If you want to see what happens when you
|
|
stop and start {dfeeds} and process additional data over time, click the time
|
|
picker in the {kib} toolbar. Since the sample data spans a period of time
|
|
between March 23, 2017 and April 22, 2017, click **Absolute**. Set the start
|
|
time to March 23, 2017 and the end time to April 1, 2017, for example. Once
|
|
you've got the time range set up, click the **Go** button. +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-time.jpg["Setting the time range for the {dfeed}"]
|
|
--
|
|
+
|
|
--
|
|
A graph is generated, which represents the total number of requests over time.
|
|
--
|
|
|
|
. Provide a name for the job, for example `total-requests`. The job name must
|
|
be unique in your cluster. You can also optionally provide a description of the
|
|
job.
|
|
|
|
. Click **Create Job**. +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1.jpg["A graph of the total number of requests over time"]
|
|
--
|
|
|
|
As the job is created, the graph is updated to give a visual representation of
|
|
the progress of {ml} as the data is processed. This view is only available whilst the
|
|
job is running.
|
|
|
|
TIP: The `create_single_metic.sh` script creates a similar job and {dfeed} by
|
|
using the {ml} APIs. You can download that script by clicking
|
|
here: https://download.elastic.co/demos/machine_learning/gettingstarted/create_single_metric.sh[create_single_metric.sh]
|
|
For API reference information, see {ref}/ml-apis.html[Machine Learning APIs].
|
|
|
|
[[ml-gs-job1-manage]]
|
|
=== Managing Jobs
|
|
|
|
After you create a job, you can see its status in the **Job Management** tab: +
|
|
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-manage1.jpg["Status information for the total-requests job"]
|
|
|
|
The following information is provided for each job:
|
|
|
|
Job ID::
|
|
The unique identifier for the job.
|
|
|
|
Description::
|
|
The optional description of the job.
|
|
|
|
Processed records::
|
|
The number of records that have been processed by the job.
|
|
|
|
Memory status::
|
|
The status of the mathematical models. When you create jobs by using the APIs or
|
|
by using the advanced options in {kib}, you can specify a `model_memory_limit`.
|
|
That value is the maximum amount of memory resources that the mathematical
|
|
models can use. Once that limit is approached, data pruning becomes more
|
|
aggressive. Upon exceeding that limit, new entities are not modeled. For more
|
|
information about this setting, see
|
|
{ref}/ml-job-resource.html#ml-apilimits[Analysis Limits]. The memory status
|
|
field reflects whether you have reached or exceeded the model memory limit. It
|
|
can have one of the following values: +
|
|
`ok`::: The models stayed below the configured value.
|
|
`soft_limit`::: The models used more than 60% of the configured memory limit
|
|
and older unused models will be pruned to free up space.
|
|
`hard_limit`::: The models used more space than the configured memory limit.
|
|
As a result, not all incoming data was processed.
|
|
|
|
Job state::
|
|
The status of the job, which can be one of the following values: +
|
|
`open`::: The job is available to receive and process data.
|
|
`closed`::: The job finished successfully with its model state persisted.
|
|
The job must be opened before it can accept further data.
|
|
`closing`::: The job close action is in progress and has not yet completed.
|
|
A closing job cannot accept further data.
|
|
`failed`::: The job did not finish successfully due to an error.
|
|
This situation can occur due to invalid input data.
|
|
If the job had irrevocably failed, it must be force closed and then deleted.
|
|
If the {dfeed} can be corrected, the job can be closed and then re-opened.
|
|
|
|
{dfeed-cap} state::
|
|
The status of the {dfeed}, which can be one of the following values: +
|
|
started::: The {dfeed} is actively receiving data.
|
|
stopped::: The {dfeed} is stopped and will not receive data until it is
|
|
re-started.
|
|
|
|
Latest timestamp::
|
|
The timestamp of the last processed record.
|
|
|
|
|
|
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.
|
|
|
|
You can also click one of the **Actions** buttons to start the {dfeed}, edit
|
|
the job or {dfeed}, and clone or delete the job, for example.
|
|
|
|
[float]
|
|
[[ml-gs-job1-datafeed]]
|
|
==== Managing {dfeeds-cap}
|
|
|
|
A {dfeed} can be started and stopped multiple times throughout its lifecycle.
|
|
If you want to retrieve more data from {es} and the {dfeed} is stopped, you must
|
|
restart it.
|
|
|
|
For example, if you did not use the full data when you created the job, you can
|
|
now process the remaining data by restarting the {dfeed}:
|
|
|
|
. In the **Machine Learning** / **Job Management** tab, click the following
|
|
button to start the {dfeed}: image:images/ml-start-feed.jpg["Start {dfeed}"]
|
|
|
|
|
|
. Choose a start time and end time. For example,
|
|
click **Continue from 2017-04-01 23:59:00** and select **2017-04-30** as the
|
|
search end time. Then click **Start**. The date picker defaults to the latest
|
|
timestamp of processed data. Be careful not to leave any gaps in the analysis,
|
|
otherwise you might miss anomalies. +
|
|
+
|
|
--
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-datafeed.jpg["Restarting a {dfeed}"]
|
|
--
|
|
|
|
The {dfeed} state changes to `started`, the job state changes to `opened`,
|
|
and the number of processed records increases as the new data is analyzed. The
|
|
latest timestamp information also increases. For example:
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-manage2.jpg["Job opened and {dfeed} started"]
|
|
|
|
TIP: If your data is being loaded continuously, you can continue running the job
|
|
in real time. For this, start your {dfeed} and select **No end time**.
|
|
|
|
If you want to stop the {dfeed} at this point, you can click the following
|
|
button: image:images/ml-stop-feed.jpg["Stop {dfeed}"]
|
|
|
|
Now that you have processed all the data, let's start exploring the job results.
|
|
|
|
[[ml-gs-job1-analyze]]
|
|
=== Exploring Single Metric Job Results
|
|
|
|
The {xpackml} features analyze the input stream of data, model its behavior,
|
|
and perform analysis based on the detectors you defined in your job. When an
|
|
event occurs outside of the model, that event is identified as an anomaly.
|
|
|
|
Result records for each anomaly are stored in `.ml-anomalies-*` indices in {es}.
|
|
By default, the name of the index where {ml} results are stored is labelled
|
|
`shared`, which corresponds to the `.ml-anomalies-shared` index.
|
|
|
|
You can use the **Anomaly Explorer** or the **Single Metric Viewer** in {kib} to
|
|
view the analysis results.
|
|
|
|
Anomaly Explorer::
|
|
This view contains swim lanes showing the maximum anomaly score over time.
|
|
There is an overall swim lane that shows the overall score for the job, and
|
|
also swim lanes for each influencer. By selecting a block in a swim lane, the
|
|
anomaly details are displayed alongside the original source data (where
|
|
applicable).
|
|
|
|
Single Metric Viewer::
|
|
This view contains a chart that represents the actual and expected values over
|
|
time. This is only available for jobs that analyze a single time series and
|
|
where `model_plot_config` is enabled. As in the **Anomaly Explorer**, anomalous
|
|
data points are shown in different colors depending on their score.
|
|
|
|
By default when you view the results for a single metric job, the
|
|
**Single Metric Viewer** opens:
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-analysis.jpg["Single Metric Viewer for total-requests job"]
|
|
|
|
|
|
The blue line in the chart represents the actual data values. The shaded blue
|
|
area represents the bounds for the expected values. The area between the upper
|
|
and lower bounds are the most likely values for the model. If a value is outside
|
|
of this area then it can be said to be anomalous.
|
|
|
|
If you slide the time selector from the beginning of the data to the end of the
|
|
data, you can see how the model improves as it processes more data. At the
|
|
beginning, the expected range of values is pretty broad and the model is not
|
|
capturing the periodicity in the data. But it quickly learns and begins to
|
|
reflect the daily variation.
|
|
|
|
Any data points outside the range that was predicted by the model are marked
|
|
as anomalies. When you have high volumes of real-life data, many anomalies
|
|
might be found. These vary in probability from very likely to highly unlikely,
|
|
that is to say, 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, an _anomaly score_ is calculated for each bucket
|
|
time interval. The anomaly score is a value from 0 to 100, which indicates
|
|
the significance of the observed anomaly compared to previously seen anomalies.
|
|
The highly anomalous values are shown in red and the low scored values are
|
|
indicated in blue. An interval with a high anomaly score is significant and
|
|
requires investigation.
|
|
|
|
Slide the time selector to a section of the time series that contains a red
|
|
anomaly data point. If you hover over the point, you can see more information
|
|
about that data point. You can also see details in the **Anomalies** section
|
|
of the viewer. For example:
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-anomalies.jpg["Single Metric Viewer Anomalies for total-requests job"]
|
|
|
|
For each anomaly you can see key details such as the time, the actual and
|
|
expected ("typical") values, and their probability.
|
|
|
|
By default, the table contains all anomalies that have a severity of "warning"
|
|
or higher in the selected section of the timeline. If you are only interested in
|
|
critical anomalies, for example, you can change the severity threshold for this
|
|
table.
|
|
|
|
The anomalies table also automatically calculates an interval for the data in
|
|
the table. If the time difference between the earliest and latest records in the
|
|
table is less than two days, the data is aggregated by hour to show the details
|
|
of the highest severity anomaly for each detector. Otherwise, it is
|
|
aggregated by day. You can change the interval for the table, for example, to
|
|
show all anomalies.
|
|
|
|
You can see the same information in a different format by using the
|
|
**Anomaly Explorer**:
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-explorer.jpg["Anomaly Explorer for total-requests job"]
|
|
|
|
|
|
Click one of the red sections in the swim lane to see details about the anomalies
|
|
that occurred in that time interval. For example:
|
|
[role="screenshot"]
|
|
image::images/ml-gs-job1-explorer-anomaly.jpg["Anomaly Explorer details for total-requests job"]
|
|
|
|
After you have identified anomalies, often the next step is to try to determine
|
|
the context of those situations. For example, are there other factors that are
|
|
contributing to the problem? Are the anomalies confined to particular
|
|
applications or servers? You can begin to troubleshoot these situations by
|
|
layering additional jobs or creating multi-metric jobs.
|
|
|
|
include::getting-started-multi.asciidoc[]
|
|
include::getting-started-next.asciidoc[]
|