article thumbnail

Discover 2022 DevOps trends with CircleCI data report

CircleCI

Focusing on testing, whether it’s practices like test-driven development (TDD), or integrating validation into your normal development process at all phases of the SDLC, will give you confidence, even when headcount is low. No matter your industry or the stage of your company, software delivery is the foundation of modern business.

Report 98
article thumbnail

How DevOps Can Optimize Continuous Delivery with Value Stream Mapping

Gorilla Logic

As DevOps teams optimize their continuous integration and continuous delivery (CI/CD) pipeline, they may struggle to identify and prioritize improvements that add value to the end customer. Applied to a service industry like healthcare, VSM can pinpoint how treatment protocols impact patient care quality. .

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

QA Engineering Roles: Skills, Tools, and Responsibilities in a Testing Team

Altexsoft

domain: Healthcare QA. These new solutions often appear to be continuous integration (CI) and continuous delivery (CD) tools, especially when it comes to regression testing. In the Waterfall environment, QA engineers are limited to their domain and separated from other areas of SDLC. Automation QA Engineer tools.

article thumbnail

DevOps as a Service – All you need to know about DaaS

Openxcell

DevOps as a Service( DaaS) An emerging concept in application development, DevOps as a service refers to the migration of tools and processes for continuous delivery to a hosted virtual platform. Since Continuous Delivery demands continuous integration and iterations, one gets an improved, more reliable process in the SDLC cycle.

DevOps 52
article thumbnail

Kubernetes and Artificial Intelligence/Machine Learning (AI/ML) — Four Things to Understand Today

Blue Sentry

consumer goods, energy, healthcare, logistics, automotive, etc.) Even if they do, many projects get stuck in the ever-so-fragile SDLC. Advanced manufacturers see 5 percent reductions in inventory costs and revenue increases of 2 to 3 percent when using ML and AI in forecasting. Companies in producing industries (e.g.,