Best Practices and Technology in Software Delivery
15 Feb
I’ve found the multi-threaded capabilities of Mojo and Meister workflows to be very valuable for builds and deployment. The chief benefit I’ve received is in saving time as you might expect. I’ve been working with a workflow that deploys a Java application to up to 24 servers. Let’s ignore the sequential part of the workflow and examine the time difference of running parallel deployments versus one where each of the 24 machines is updated in sequence. The deployment process takes about 5 seconds per machine. Sequentially, that’s 24 x 5 seconds, or 2 minutes. In parallel, well it’s not quite 5 seconds, but closer to about 20 seconds because of limitations of the Linux machine it is running on. Still, that’s a tremendous 100 second savings.
In addition to using the parallel workflow to cater to impatience and improve productivity, I want the Java application to hit all of the servers in the cluster close to the same time. In this particular strategy, only 3 machines out of the 24 are in the cluster. The rest are to support dynamic resource allocation and disaster recovery. Running the deploys in parallel allows me to hit all machines, and therefore all the machines in a cluster at close to the same time without having to figure out some ordering so that the cluster servers are hit first and then the rest. This ends up saving a lot of coding, testing and possibly debugging. Great stuff.
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