Remove Microservices Remove Security Remove Systems Administration Remove Weak Development Team
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Continuous deployment without downtime

CircleCI

As engineering teams increasingly adopt DevOps as their software development strategy, they are becoming faster and more efficient. Unfortunately, this speed and efficiency can expose cracks in the delivery system as well as other bottlenecks to productivity. You can automate the entire development process from commit to deploy.

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The Good and the Bad of Kubernetes Container Orchestration

Altexsoft

Containers have become the preferred way to run microservices — independent, portable software components, each responsible for a specific business task (say, adding new items to a shopping cart). Modern apps include dozens to hundreds of individual modules running across multiple machines— for example, eBay uses nearly 1,000 microservices.

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Microservices Adoption in 2020

O'Reilly Media - Ideas

Microservices seem to be everywhere. Scratch that: talk about microservices seems to be everywhere. So we wanted to determine to what extent, and how, O’Reilly subscribers are empirically using microservices. Here’s a summary of our key findings: Most adopters are successful with microservices. And that’s the problem.

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Technology Trends for 2024

O'Reilly Media - Ideas

While we like to talk about how fast technology moves, internet time, and all that, in reality the last major new idea in software architecture was microservices, which dates to roughly 2015. Remember that these “units” are “viewed” by our users, who are largely professional software developers and programmers. What does this mean?

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Where Programming, Ops, AI, and the Cloud are Headed in 2021

O'Reilly Media - Ideas

Usage data shows what content our members actually use, though we admit it has its own problems: usage is biased by the content that’s available, and there’s no data for topics that are so new that content hasn’t been developed. Concurrency has always been one of Python’s weaknesses. We haven’t combined data from multiple terms.