Value stream management involves people in the organization to examine workflows and other processes to ensure they are deriving the maximum value from their efforts while eliminating waste — of ...
Unlock the full InfoQ experience by logging in! Stay updated with your favorite authors and topics, engage with content, and download exclusive resources. This article dives into the happens-before ...
Platform thinking provides a sustainable path forward. It creates QE ecosystems that scale, empower teams and deliver ...
As online services become the lifeblood of just about every business, the health of these interconnected services becomes critical. Google’s decades of operating the most advanced and scalable ...
Unlock the full InfoQ experience by logging in! Stay updated with your favorite authors and topics, engage with content, and download exclusive resources. This article dives into the happens-before ...
Quality engineering comprises a range of operational, managerial, and engineering practices that are employed to ensure that a product meets the necessary quality standards. Reliability is often ...
Site reliability engineering brings agile methodology to operations. Clarify the responsibilities of the SRE and devops roles to keep things running smoothly Back in the days before cloud applications ...
The adoption of site reliability engineering (SRE) is growing in the Asia-Pacific (APAC) region, but organisations that succeed at it are few and far between, according to an industry expert. Michael ...
No single material parameter can ensure reliability. Adhesion, stress resistance, and thermal stability all must be balanced ...
Journal of Reliability Science and Engineering will be published by IOP Publishing and the Institute of Systems Engineering of China Academy of Engineering Physics Journal of Reliability Science and ...
Data Reliability Engineering (DRE) is the work done to keep data pipelines delivering fresh and high-quality input data to the users and applications that depend on them. The goal of DRE is to allow ...
The old "garbage in, garbage out" adage has never gone out of style. The ravenous appetite for data on the part of analytics and machine learning models has elevated the urgency to get the data right.