Skip to main content
IBM Quantum Platform

Overview

"Hero image"

Welcome to Fundamentals of Quantum Algorithms, the second course in the Understanding Quantum Information and Computation series comprising the following courses:

This course explores computational advantages of quantum information, including what we can do with quantum computers and their advantages over classical computers. It begins with quantum query algorithms, which offer simple proof-of-concept demonstrations for quantum algorithms, and then moves on to quantum algorithms for problems including integer factorization and unstructured search.

This course is intended for students, professionals, and hobbyists in fields such as computer science, physics, engineering, and mathematics who are eager to gain knowledge on the theoretical foundations of quantum information and computation.


Exam

To earn your badge for Fundamentals of quantum algorithms, take the exam at IBM® Training. This exam is intended to be taken after reading the lessons in this course. After you pass the exam, you will be notified by Credly that you have earned a badge.

Exam


Awarded Badge

"Image of the awarded badge"

Credly

NOTICE: IBM leverages the services of Credly, a third-party data processor authorized by IBM and located in the United States, to assist in the administration of the IBM Digital Badge program. In order to issue you an IBM Digital Badge, your personal information (name, email address, and badge earned) will be shared with Credly. You will receive an email notification from Credly with instructions for claiming the badge. Your personal information is used to issue your badge and for program reporting and operational purposes. IBM may share the personal information collected with IBM subsidiaries and third parties globally. It will be handled in a manner consistent with IBM privacy practices. The IBM Privacy Statement can be viewed here. IBM employees can view the IBM Internal Privacy Statement here.

Was this page helpful?
Report a bug, typo, or request content on GitHub.