How Continuous Delivery Works in Devops
Continuous delivery may be a methodology for software development that, through the application of automation, races the method of deploying new code.
Continuous delivery creates an automatic procedure through which a developer’s changes to an application may be uploaded to a code repository or container registry. This procedure is established by continuous delivery.
What exactly is the Connection between CI/CD and Continuous Delivery?
Continuous delivery may be a subset of continuous integration and continuous delivery (CI/CD), which may be a method of delivering software, frequently through the automation of assorted stages of application development.
Continuous integration is observed by its abbreviation, CI, within the CI/CD framework. Continuous integration may be a process that routinely produces new code changes for an application, has those changes tested, and so merges them into a shared repository. It’s an answer to the problem of getting too many app branches in development at the identical time, all of which have the potential to conflict with each other.
Continuous deployment (CD) and continuous delivery (CD) are both terms that describe methods for automating stages of the pipeline. The ‘CD’ in continuous integration and continuous delivery can discuss with either of those terms.
Where Do Continuous Delivery and Continuous Deployment Differ from Each Other, and What Exactly Are Those Differences?
While the ideas of continuous delivery and continuous deployment are inextricably linked, it’s not uncommon for either of those phrases to be used independently when defining the extent of automation. Continuous delivery typically denotes that any changes made to an application by a development team are automatically subjected to quality assurance testing and so delivered to a repository. After that, the operations teams are able to implement them during a live production environment. It provides an answer to the matter of limited visibility and communication between the business teams and also the development teams. To the present end, the target of continuous delivery is to simplify the method of releasing new code to the maximum amount as humanly possible.
The process of releasing new software also includes some additional steps because continuous deployment incorporates those steps. It frequently includes the method of automatically pushing the modifications made by a developer from the repository to production, where end users can make use of them. It solves the matter of operations staff being overworked with manual processes that cause delays in the delivery of apps.
What precisely is supposed by the Term “CI/CD Pipeline”?
Continuous integration and continuous delivery pipeline may be a series of steps that are allotted so as to deploy a brand new version of the software. A CI/CD pipeline is established whenever an organization puts the CI/CD methodology into practice. By integrating monitoring and automation into the application development process, a CI/CD pipeline makes the workflow more efficient. Both of those things are helpful throughout the whole process, including the phases of integration and testing, delivery, and deployment.
The actual good thing about continuous integration and continuous delivery pipelines is realized through the automation of the applying lifecycle, despite the very fact that individual stages of the pipeline are often run manually.
What Reasonably Connection Does the Practice of Continuous Delivery have with the Devops Methodology?
An approach referred to as “DevOps,” which may be a combination of the terms “development” and “operations,” aims to accomplish the subsequent goals:
- Culture
- Automation
- Platform design
By delivering services in a timely and high-quality manner, the goal of DevOps is to extend the worth of the corporate and its responsiveness.
Continuous delivery could be a strategy for the event of software that’s often employed in conjunction with the DevOps methodology. A never-ending delivery pipeline will almost certainly have to be founded so as for a DevOps strategy to achieve success.
The term “DevOps” refers to methods that speed up the processes that go from the conception of a plan to its actual implementation. The method of putting code into a production environment in order that it can potentially provide benefits to users.
Developers, who typically write their programs in a much-standardized development environment, work closely with testing teams and IT operations teams to ensure the subsequent outcomes:
- Increase the speed, at which software is made,
- Code committed
- Unit tested
- Released
How Does the Automation of Pipelines Contribute to the Flexibility to Produce Continuous Delivery?
Automation is employed in continuous integration and continuous delivery to hurry up the operations of:
- Development
- Deployment
- Testing
Automation helps improve quality while simultaneously reducing the number of errors caused by humans. Automation can also be of assistance with security when utilized in conjunction with a DevSecOps methodology. Some tools are optimized for integration (CI), while others are optimized for development and deployment (CD), and still, others are optimized for continuous testing or other related services.
Conclusion
Businesses now require continuous delivery of their products and services. So as to deliver value to their customers, they have to release on the same basis and be freed from errors. Modern release pipelines make it possible for development teams to launch new features in a very timely and risk-free manner. When problems are found in production, a speedy resolution is feasible by immediately beginning a replacement deployment. During this strategy, the CD is chargeable for the continual generation important for purchasers.
About Enteros
Enteros offers a patented database performance management SaaS platform. It proactively identifies root causes of complex business-impacting database scalability and performance issues across a growing number of clouds, RDBMS, NoSQL, and machine learning database platforms.
The views expressed on this blog are those of the author and do not necessarily reflect the opinions of Enteros Inc. This blog may contain links to the content of third-party sites. By providing such links, Enteros Inc. does not adopt, guarantee, approve, or endorse the information, views, or products available on such sites.
Are you interested in writing for Enteros’ Blog? Please send us a pitch!
RELATED POSTS
Transforming Healthcare and E-commerce Efficiency: How Enteros Leverages Generative AI to Optimize SaaS Database Performance and Drive Digital Innovation
- 10 November 2025
- Database Performance Management
Introduction In an era defined by data-driven transformation, both the healthcare and e-commerce sectors stand as two of the most dynamic and fast-evolving industries. While their missions differ — one saves lives and the other shapes consumer experiences — both share a common foundation: data.Every patient interaction, online purchase, diagnostic scan, or personalized recommendation depends … Continue reading “Transforming Healthcare and E-commerce Efficiency: How Enteros Leverages Generative AI to Optimize SaaS Database Performance and Drive Digital Innovation”
Driving RevOps Excellence in the Technology Sector: How Enteros Combines AIOps Intelligence and Database Performance Management for Superior Operational Efficiency
Introduction The technology sector thrives on innovation, speed, and precision. As organizations accelerate digital transformation, the pressure to maintain database performance, system reliability, and cost efficiency intensifies. With expanding workloads, hybrid cloud infrastructures, and distributed databases, achieving seamless performance management across platforms becomes increasingly complex. This complexity directly impacts Revenue Operations (RevOps) — the strategic … Continue reading “Driving RevOps Excellence in the Technology Sector: How Enteros Combines AIOps Intelligence and Database Performance Management for Superior Operational Efficiency”
Why AI Projects Fail Before They Start — Data Quality First
Insight for CIOs, FinOps and IT Leaders in 2025 Introduction AI is everywhere in boardroom conversations: promises of automation, predictive insights, and competitive advantage. Yet behind the hype lies a sobering reality — most AI projects stall before they deliver measurable value. The paradox is striking: the algorithms are powerful, but the data feeding them … Continue reading “Why AI Projects Fail Before They Start — Data Quality First”
Revolutionizing the BFSI Sector: How Enteros Harnesses Generative AI and AIOps for Next-Generation Performance Management
- 9 November 2025
- Database Performance Management
Introduction In the fast-evolving Banking, Financial Services, and Insurance (BFSI) sector, digital transformation is not just a competitive advantage—it’s an operational necessity. Every second of downtime, lagging transaction, or database bottleneck can translate into millions in lost revenue, compliance risks, and diminished customer trust. The BFSI industry depends on robust, scalable, and intelligent systems that … Continue reading “Revolutionizing the BFSI Sector: How Enteros Harnesses Generative AI and AIOps for Next-Generation Performance Management”