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Continuous delivery in DevOps – A brief inside!

Openxcell

Whether it’s talking with friends on social media, ordering movie tickets on your phone, or planning a business trip using an airline app. What is continuous delivery. What is continuous delivery in DevOps? Successive environments support Longer-running integration, load, and user acceptability testing activities.

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Ensuring Business Benefit from DevOps

Coforge

* field--node--title--blog-post.html.twig x field--node--title.html.twig * field--node--blog-post.html.twig * field--title.html.twig * field--string.html.twig * field.html.twig --> Ensuring Business Benefit from DevOps. DevOps is expected to be a solution to many problems ranging from IT responsiveness to customer satisfaction.

DevOps 52
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Building a digital manufacturing foundation in the cloud

Capgemini

Less obvious is the role aerospace companies play as major parts suppliers to airlines around the world. Airlines cannot afford to have planes out of service, which means they cannot have parts out of stock. We also learned it was better to coach individuals instead of simply implementing the DevOps model across the technical teams.

Cloud 52
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GitHub vs GitLab vs Bitbucket: Key Version Control Systems Compared

Altexsoft

CI/CD and automation on GitHub consist of continuous integration and continuous deployment automation, and such services as GitHub Pages along with GitHub Marketplace. The first one allows the creation of simple web pages, the second one provides integrations and applications for GitHub users. Integrated CI/CD and DevOps.

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AutoML: How to Automate Machine Learning With Google Vertex AI, Amazon SageMaker, H20.ai, and Other Providers

Altexsoft

Also called DevOps for machine learning, MLOps is a mix of philosophy and practices that facilitates mutual understanding between a data science team and operations specialists. Similar to DevOps, it exploits methods of continuous integration and delivery ( CI/CD ) to get ML models live in the fastest possible, automated way.