QHack—the quantum machine learning hackathon

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Deep LearningQHack
Overview

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Welcome to QHack, the quantum machine learning hackathon! We're thrilled to have the opportunity to meet and work with such a large and diverse group of participants, and we look forward to interacting with you all during the event.

This year's event consists of three main components:

The up-to-date event schedule can be found here.

Power Ups and Prizes

QHack has some amazing goodies and prizes available to be won, courtesy of our sponsors.

Credits for AWS

  • Earn $250 in AWS credits: At the conclusion of our Feb 19 live stream, the top 80 teams on the scoreboard will receive $250 credits to help them build their Open Hackathon solutions on AWS. Teams can apply credits to any AWS service, including Amazon Braket where they can showcase their ideas on Rigetti, IonQ, and D-Wave hardware or with high-performance simulators in the cloud.

  • Earn $4000 in AWS credits: Teams who open an issue by Feb 24 on this GitHub repository with a description of their (in progress) Open Hackathon project are eligible for $4000 in additional AWS credits to use towards their hackathon project.

Grand Prize

  • Win a summer internship at CERN: The top overall team (judged by QML Challenge scoreboard ranking and Open Hackathon project) will receive up to 3 summer internship positions at CERN.

Please read our terms and conditions for official eligibility and evaluation criteria. Entry void in Quebec.

Participants in the event agree to abide by the QHack Code of Conduct.

Owner
Xanadu
Quantum Computing Powered by Light
Xanadu
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