article thumbnail

Ensuring Business Benefit from DevOps

Coforge

Process Level: Being able to do feature based releases where change to a specific supplier integration or its addition/deletion can be released independent of others. Team Level: Enable the development teams who are doing the actual code changes, deliver integrations that are production ready. Infrastructure-as-a-code.

DevOps 52
article thumbnail

GitHub vs GitLab vs Bitbucket: Key Version Control Systems Compared

Altexsoft

A version control system is a remote mediator that provides an updated source code to developers and records all the changes made in the project. To understand a version control system better, let’s review its flow and some key terms. How to work on the very same files in a synchronized way and get constant updates of new code changes?

Insiders

Sign Up for our Newsletter

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

article thumbnail

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. Additionally, the inclusion of security checks and reviews means a better software pipeline.

Cloud 52
article thumbnail

Best App Development Tools For Cross-Platform Solutions in 2021

Xicom

Mobile marketing plays a crucial role in the decision-making process, as 69% of users check for customer review on the product or service on a mobile app before making a purchase. The cross-platform frameworks provide the ability to write the code once and run them anywhere for other platforms. In 2019, 1.92 from 2019 to 2026.

Tools 52
article thumbnail

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

Altexsoft

Automated machine learning or AutoML is the process of reducing manual work in the machine learning pipeline with the help of special software tools. Similar to DevOps, it exploits methods of continuous integration and delivery ( CI/CD ) to get ML models live in the fastest possible, automated way. MLOps cycle.