Remove Design Remove Handbook Remove Metrics Remove Software
article thumbnail

9 key DevOps metrics for success

Dynatrace

Now, with the hard work done, you can sit back, relax, and witness the collaboration between your Dev and Ops teams as they deliver better quality software faster. The emerging concepts of working with DevOps metrics and DevOps KPIs have really come a long way. DevOps metrics to help you meet your DevOps goals.

DevOps 189
article thumbnail

Data Mining Problems in Retail

Highly Scalable

Although these problems are very different, we are trying to establish a common framework that helps to design optimization and data mining tasks required for solutions. The design of the model heavily depends on the problem. Moreover, gross margin is not the only performance metric that is important for retailers.

Retail 152
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

Smashing Podcast Episode 42 With Jeff Smith: What Is DevOps?

Smashing Magazine

Bridging The Gap Between Designers And Developers written by Matthew Talebi. Tips And Tricks For Evaluating UX/UI Designers written by Nataliya Sambir. But the other thing is to be able to take operational concerns into account during your design development and implementation of any technology. Attainable DevOps. Weekly Update.

DevOps 86
article thumbnail

What Is Hyperautomation?

O'Reilly

meme originated in IT’s transformation from manual system administration to automated configuration management and software deployment. You analyze what your staff does to process an invoice, and then design a system to perform that process. They’re inefficient, poorly designed, and perhaps even wholly inappropriate for the task.

Games 120
article thumbnail

What We Learned Auditing Sophisticated AI for Bias

O'Reilly

System designs can be wrong. The internal control questionnaire in the Office of the Comptroller of the Currency’s MRM Handbook (starting pg. In this context, bias is often about system design and not about data or models. Despite flaws, start with simple metrics and clear thresholds. Data can be wrong.