UX Design
About this Course
Brainstorm, brainstorm! UX Design is not just about having ideas! The user-centred approach fuels innovation in ways that support incremental, radical and disruptive innovations towards great user experience like no other. User experience design helps the team hone down on a new concept, on general interactions, on desired experiences, before jumping into user interface design (the next MOOC!). Learn divergent ideation methods to bring creativity to problem-solving, whether you are called upon for a simple redesign or a major change in a digital offering. Use convergent ideation methods to anchor a new concept within your business context, seeking win-win innovation for all parties involved, within the project team, across the organisation including external end-users. Thinking through innovation helps position even the smallest change into a long-term perspective. No wonder Design Thinking is a highly valued method. No previous knowledge needed. Join us in the journey to master the divergent and convergent ideation methods. Unlock their potential, through the UX Design and Evaluation MicroMasters, or as an individual course.Created by: HEC Montréal
Level: Intermediate

Related Online Courses
After successfully completing this course, you will be able to embrace the Agile concepts of adaptive planning, iterative development, and continuous improvement - resulting in early deliveries and... more
Hoy en día prácticamente cualquiera con algo de responsabilidad en una organización tiene que hacer en algún momento una presentación eficaz con la que comunicar sus ideas o los resultados de su t... more
Open source networking projects are transforming how service providers and enterprises develop, deploy, and scale their networks and next-generation services. The Open Network Automation Platform... more
In this course, you will examine the various areas of network security including intrusion detection, evidence collection and defense against cyber attacks. The issues and facilities available to... more
Most data science projects fail. There are various reasons why, but one of the primary reasons is the challenge of deployment. One piece to the deployment puzzle is understanding how to automate... more