The Jenkins project that operates under the auspices of The Continuous Delivery Foundation (CDF) reported this week that over a two-year period, usage of pipelines grew 79%, with total workloads defined in the continuous integration/continuous delivery (CI/CD) platform growing 45% over the same period.
Based on analysis conducted from June 2021 to June 2023, the report found the number of jobs defined increased from 27,105,176 jobs to 48,625,398 jobs per month. The number of all jobs defined on Jenkins increased from 50,785,205 to 73,746,418 jobs per month (45%).
Sacha Labourey, a member of the governing board for the CDF and chief strategy officer at CloudBees, a provider of commercially supported instances of the open source Jenkins CI/CD platform, said it’s clear that more applications are being constructed by more organizations than ever using DevOps workflows.
At present, the CDF reported there are now more than 600 active contributors to the Jenkins project. That level of support has made it possible for Jenkins to become a standard CI/CD platform. DevOps teams know there is a substantial open source community they can count on for support, said Labourey.
The challenge now is how to centrally observe DevOps workflows to accelerate application development while at the same time giving developers more freedom to innovate. Platform engineering principles represent an opportunity to achieve that goal, as long as developers still have an opportunity to innovate and collaboratively address bottlenecks in DevOps workflows as they occur.
The platform engineering team should be observing processes and proactively making recommendations and define a set of guardrails that ensure DevSecOps best practices are followed, he added.
Otherwise, application developers are likely to view platform engineering as another effort by centralized IT teams to take power away from the developer, noted Labourey.
Striking that balance is especially critical as the number of cloud-native applications being built and deployed alongside classic monolithic applications has significantly increased, he added. DevOps teams need to be able to centralize observability of what are two distinct styles of application development that tend to occur at a significantly different pace from one another, Labourey said.
Hopefully, advances in artificial intelligence (AI) will make it easier for DevOps teams to strike the right balance between management and innovation. In the meantime, however, as the pace of application development continues to accelerate, each DevOps team will need to determine how best to evolve their existing workflows. That’s especially critical at a time when economic headwinds are requiring organizations to find ways to increase existing developer productivity rather than hire or contract additional developers.
In the meantime, it’s apparent that DevOps, as a methodology for building and deploying applications faster, is here to stay. The next major challenge is finding a way to achieve that goal at levels of scale that require automation everywhere from the network edge to the cloud.