
{
pioneering cognitive engineering
in business digitalization
}
As more and more business processes are digitalized around the globe, there is an increasing need for intuitive interfaces. Cognitive engineering is a discipline with the primary goal of reducing cognitive effort of using digital products by uniting user experience design, engineering and a scientific approach.

neucorti strives to be the pioneer of this approach by researching and formalizing processes and developing tools, making them available for the community, while providing engineering and training services for product teams.
basic principles
Cognitive engineering follows a different paradigm from traditional product design methodologies, which result in an easier integration into the software engineering lifecycle.

scientific

defined

documented

measurable
If you are interested in further information about how to integrate cognitive engineering into your team, you can read our guide here:
need some assistance?
If you have a project that would benefit from a cognitive engineering approach, or you are interested in training your team, take a look at our services offered and don’t hesitate to drop us a line!
Our team offers:
- cognitive engineering and UX design services
- usability and accessibility audits
- training for UX designers and frontend engineers
articles
-
What is the European Accessibility Act?
The European Commission defined the European Accessibility Act in 2019 which came into effect in 2022, with a 3 years grace period for compliance. This means that from 2025, businesses in the European Union need to reach certain accessibility standards.
-
A practical guide to remote workshops
Working across remote teams has become standard practice, and facilitating effective online workshops is now an essential skill. This guide distills lessons we’ve learned, sometimes the hard way, from years of remote facilitation.
-
The importance of example data
During the process of designing digital products, the importance of believable example data is is often overlooked. This article wishes to outline the problem and possible solutions the product team can use to avoid pitfalls associated with using low-quality example data.
