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Planned and Unplanned Node Downtime


Nodes (Machines) that are part of the cluster are susceptible to occasional downtime. This can be either as part of planned maintenance where we bring down the node for a specified time in an orderly fashion or an unplanned downtime where the machine abruptly stops due to a software or hardware issue.

The purpose of this document is to provide a process for retaining the Run:ai service and Researcher workloads during and after the downtime.

Self-hosted installation

The self-hosted installation differs from the Classic (SaaS) installation of Run:ai in that it includes the Run:ai control-plane. The control plane contains data that must be preserved during downtime. As such, you must first follow the disaster recovery planning process.

Node Types

The document differentiates between Run:ai System Worker Nodes and GPU Worker Nodes:

  • Worker Nodes - are where Machine Learning workloads run.
  • Run:ai System Nodes - In a production installation Run:ai software runs on one or more Run:ai System Nodes on which the Run:ai software runs.

Worker Nodes

Worker Nodes are where machine learning workloads run. Ideally, when a node is down, whether for planned maintenance or due to an abrupt downtime, these workloads should migrate to other available nodes or wait in the queue to be started when possible.

Training vs. Interactive

Run:ai differentiates between Training and Interactive workloads. The key difference at node downtime is that Training workloads will automatically move to a new node while Interactive workloads require a manual process. The manual process is recommended for Training workloads as well, as it hastens the process -- it takes time for Kubernetes to identify that a node is down.

Planned Maintenance

Before stopping a Worker node, perform the following:

  • Stop the Kubernetes scheduler from starting new workloads on the node and drain node from all existing workloads. Workloads will move to other nodes or await on queue for renewed execution:
kubectl taint nodes <node-name> runai=drain:NoExecute
  • Shut down the node and perform the required maintenance.

  • When done, start the node and then run:

kubectl taint nodes <node-name> runai=drain:NoExecute-

Unplanned Downtime

  • If a node has failed and has immediately restarted, all services will automatically start.

  • If a node is to remain down for some time, you will want to drain the node so that workloads will migrate to another node:

kubectl taint nodes <node-name> runai=drain:NoExecute

When the node is up again, run:

kubectl taint nodes <node-name> runai=drain:NoExecute-
  • If the node is to be permanently shut down, you can remove it completely from Kubernetes. Run:
kubectl delete node <node-name>

However, if you plan to bring back the node, you will need to rejoin the node into the cluster. See Rejoin.

Run:ai System Nodes

In a production installation, Run:ai software runs on one or more Run:ai system nodes. As a best practice, it's best to have more than one such node so that during planned maintenance or unplanned downtime of a single node, the other node will take over. If a second node does not exist, you will have to designate an arbitrary node on the cluster as a Run:ai system node to complete the process below.

Protocols for planned maintenance and unplanned downtime are identical to Worker Nodes. See the section above.

Rejoin a Node into the Kubernetes Cluster

To rejoin a node to the cluster follow the following steps:

  • On the master node, run:

kubeadm token create --print-join-command
* This would output a kubeadm join command. Run the command on the worker node for it to re-join the Kubernetes cluster. * Verify that the node is joined by running:

kubectl get nodes