[role="xpack"] [[ml-configuring]] == Configuring machine learning If you want to use {ml-features}, there must be at least one {ml} node in your cluster and all master-eligible nodes must have {ml} enabled. By default, all nodes are {ml} nodes. For more information about these settings, see {ref}/modules-node.html#ml-node[{ml} nodes]. To use the {ml-features} to analyze your data, you can create an {anomaly-job} and send your data to that job. * If your data is stored in {es}: ** You can create a {dfeed}, which retrieves data from {es} for analysis. ** You can use {kib} to expedite the creation of jobs and {dfeeds}. * If your data is not stored in {es}, you can {ref}/ml-post-data.html[POST data] from any source directly to an API. The results of {ml} analysis are stored in {es} and you can use {kib} to help you visualize and explore the results. //For a tutorial that walks you through these configuration steps, //see <>. Though it is quite simple to analyze your data and provide quick {ml} results, gaining deep insights might require some additional planning and configuration. The scenarios in this section describe some best practices for generating useful {ml} results and insights from your data. * <> * <> * <> * <> * <> * <> * <> include::customurl.asciidoc[] include::aggregations.asciidoc[] include::detector-custom-rules.asciidoc[] include::categories.asciidoc[] include::populations.asciidoc[] include::transforms.asciidoc[] include::delayed-data-detection.asciidoc[]