Prioritize Your Experiments


When you've accumulated a number of experiment ideas, it can be challenging to decide which to start with. Your first inclination might be to start with something small and easy to implement, but that may not always be the best route; there may be something on your list that would be better to try first. Knowing how to prioritize your experiments will help you create an efficient backlog or roadmap that will give you the best experience with optimization.

Key Questions

In this course, you'll answer the following three questions:

  • What are the deciding factors that influence which hypotheses should be tested first?
  • How can you reduce the guesswork for prioritizing experiments?
  • What resources can help or hinder your capacity to experiment on a particular hypothesis?

When all of the course elements are marked Completed, return to the learning path by clicking the path name in the breadcrumb at the top of the page.

New Courses


UPDATED! Information on the Results Page

In this course we'll introduce you to the information available on Optimizely's Results page.

web personalization

Personalization Overview and Strategy

In this course, you will learn various ways of personalizing a website, as well as review best practices for utilizing personalization strategies.


Building Adaptive Audiences in Optimizely Web

In this course, learn about Adaptive Audiences, how to use it, and how it allows you to deliver relevant experiences based on visitor interest.

full stack

Optimizely Full Stack: Technical - Build a Feature

In the first part of our series of how-to courses, you will learn the initial steps to implementing full stack, including installing the SDK and becoming familiar with the datafile, then learn how to build your first feature.