[testenv="platinum"] //////////// Take us out of upgrade mode after running any snippets on this page. [source,js] -------------------------------------------------- POST _ml/set_upgrade_mode?enabled=false -------------------------------------------------- // CONSOLE // TEARDOWN //////////// If your {ml} indices were created earlier than the previous major version, they must be reindexed. In those circumstances, there must be no machine learning jobs running during the upgrade. In all other circumstances, there is no requirement to close your {ml} jobs. There are, however, advantages to doing so. If you choose to leave your jobs running during the upgrade, they are affected when you stop the {ml} nodes. The jobs move to another {ml} node and restore the model states. This scenario has the least disruption to the active {ml} jobs but incurs the highest load on the cluster. To close all {ml} jobs before you upgrade, see {stack-ov}/stopping-ml.html[Stopping {ml}]. This method persists the model state at the moment of closure, which means that when you open your jobs after the upgrade, they use the exact same model. This scenario takes the most time, however, especially if you have many jobs or jobs with large model states. To temporarily halt the tasks associated with your {ml} jobs and {dfeeds} and prevent new jobs from opening, use the <>: [source,js] -------------------------------------------------- POST _ml/set_upgrade_mode?enabled=true -------------------------------------------------- // CONSOLE This method does not persist the absolute latest model state, rather it uses the last model state that was automatically saved. By halting the tasks, you avoid incurring the cost of managing active jobs during the upgrade and it's quicker than stopping {dfeeds} and closing jobs.