article thumbnail

Quality Assurance Unleashed: A Comprehensive Guide for Editors

Kitaboo

It requires an unwavering commitment to quality assurance. In this comprehensive guide, we delve into the intricacies of quality assurance processes and techniques with the aim of elevating the educational content you provide. Unveiling the Core Principles of Quality Assurance II. Let’s get started!

article thumbnail

Embedded software development for IoT applications

Dataconomy

Whether you are an end-user wanting access or control over products and services, or a manufacturer wishing to build better technology systems faster than before – one key component remains essential: embedded software development. For up-to-date reference on embedded software development best practices, you can go for N-ix resources.

Insiders

Sign Up for our Newsletter

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

Trending Sources

article thumbnail

Ethical Publishing: Balancing Profit and Responsibility

Kitaboo

Quality and Accuracy of Content Another important thing to consider for K12 publishers when developing their content strategy is to ensure the quality and accuracy of the content. This essentially means ensuring to only publish content that is informative, relevant and accurate for the reader.

eBook 78
article thumbnail

How to Increase Test Coverage (And Confidence!) With Mayhem in 4 Easy Steps

ForAllSecure

As software development becomes increasingly complex, ensuring the quality of the software is essential. One critical aspect of quality assurance is test coverage, which refers to the percentage of the code covered by automated tests. It's essential to create test cases that cover both positive and negative scenarios.

How To 40
article thumbnail

20 issues shaping generative AI strategies today

CIO Business Intelligence

McKinsey has developed a propriety framework that describes the different use types as “taker,” “shaper” and “maker.” Accuracy concerns Similarly, Kashifuddin and others call out the need for CIOs to help their organizations and the workers themselves adopt quality assurance procedures that verify any AI-produced insights they receive.