This is the workbook I created while I was studying for the Qiskit Associate Developer exam. I hope this becomes useful to others as it was for me :)

Overview

A Workbook for the Qiskit Developer Certification Exam

Hello everyone! This is Bartu, a fellow Qiskitter. I have recently taken the Certification exam and have followed the excellent study guide by James Weaver, which also goes over the sample exam, so make sure to check it out if you haven't already!

While following the guide, I wanted to re-create examples from all specified topics on my own in an organized way to make connections easier. After completing the exam and getting my badge, I thought, hey, why not make this public? Maybe someone else will also find it useful! So this is basically what this workbook is about and I do hope that you get something out of it.

I'd like to thank James Weaver and Saul Sarango for their valuable feedback on the workbook and their encouraging words for making this public! With that, I wish every disicple of Qiskit good luck on the exam!

Contact

Feel free to contact me for any feedback:

LinkedIn Qiskit Slack
Owner
Bartu Bisgin
B.Sc. of Physics who aspires to become a Quantum Information Scientist, Engineer and Entrepreneur; preparing to do my M.Sc. at Quantum Science and Technonogy
Bartu Bisgin
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