AI Engineering Development Process

Motivation for AI Engineering Development Process

Artificial intelligence (AI) applications often involve not only classical application engineering but also elements of research. Sometimes it is not clear from the start which approach will be better and one needs to conduct experiments to evaluate multiple approaches. For example, if we are building a machine learning model we would need to evaluate and experiment with different features until we find an optimal feature set. 

Furthermore, if we are building machine learning models, usually debugging is not an easy task. Also in many cases, it is not trivial to evaluate the performance of statistical models and how this performance will translate to business value. All these factors can add an additional layer of complexity that the engineering teams need to cope with.

Artificial Intelligence Explained to a Student, Professional, and a Scientist

Rapid advancement in artificial intelligence (AI) has drastically changed the way things are moving today. Today, we will speak about this topic by approaching it from three different perspectives.

AI is defined as the science and engineering of developing intelligent machines and intelligent computer programs. Moreso, it is relevant to similar tasks such as utilizing computers to understand the human brain.

7 Things You Probably Didn’t Know About AI Engineering

As we all know, the business world is changing at a rate faster than you can imagine. To cope up with it, we need to adopt dynamic technologies and engineering practices so our businesses keep running seamlessly. Out of the numerous emerging technologies, one of the most important and significant ones is Artificial Intelligence Engineering or AI Engineering. If you are new to this field, do not worry, as everything that you need to know about AI Engineering will be discussed in this blog. 

Let us start with the basics: What is AI Engineering?