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SUMMARY:AI against COVID-19: Screening X-ray Images for COVID-19 Infections
DESCRIPTION:Join the virtual competition on AI for COVID diagnosis\, thanks to Microsoft Canada\, the exclusive technology and cloud platform sponsor! \n\n\n\nThe coronavirus disease 2019 (COVID-19) pandemic\, caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) virus\, has generated an unprecedented global health crisis\, with more than 2.7 million deaths worldwide. Do you want to contribute to the fight against this pandemic? \nIEEE SIGHT (Special Interest Group on Humanitarian Technology) of Montreal Section\, Vision and Image Processing Research Group of the University of Waterloo and DarwinAI Corp. invite data scientists\, students and professionals working on Artificial Intelligence (AI) to participate in a virtual competition to help medical researchers diagnose COVID-19 with chest X-ray (CXR) images. The ultimate goal is to contribute to the development of highly accurate yet practical AI solutions for detecting COVID-19 cases and\, hopefully\, accelerating the treatment of those who need it the most. Moreover\, this AI for Good initiative will also allow us to take action on at least one of the United Nations Sustainable Development Goals (SDGs)\, Good Health and Well-being. \nIn the First Phase of the competition\, the challenge consists of designing robust machine learning algorithms to predict if the subjects of study are either COVID-19 positive or COVID-19 negative. The dataset for this competition is the dataset curated by COVID-Net\, a global open-source initiative launched by DarwinAI Corp.\, Canada\, and Vision and Image Processing Research Group\, University of Waterloo\, Canada\, for accelerating advancements in machine learning to aid healthcare workers around the world in the fight against the COVID-19 pandemic. More about the COVID-Net initiative and available open-source resources are available here. In the Second Phase\, the 10 top teams of the first phase will have the opportunity to refine their solution and submit a proposal for a follow-up project to positively impact society or the academic community. \nThis competition is organized in collaboration with the National Research Council Canada and is co-hosted by the IEEE Young Professionals Affinity Groups of Montreal\, Ottawa\, Toronto and Vancouver Sections\, Vancouver Circuit and Systems (CAS) Technical Chapter\, the Student Branches of INRS (Institut National de la Recherche Scientifique)\, University of Toronto and Vancouver Simon Fraser University\, WIE (Women In Engineering) Ottawa. It is largely sponsored by Microsoft\, and partially by the IEEE Canada Humanitarian Initiatives Committee and the IEEE Montreal Section. \nHow to participate \nNote: This competition only accepts participants living in Canada\, due to restrictions on funds transfer. \nNO PURCHASE NECESSARY TO ENTER OR WIN. \nThe competition is hosted on the Eval.ai online platform. To participate\, you or your team will need to perform the following steps: \n\nRegister individually at the link provided below in the current webpage (vTools).\nRegister yourself or your team at the link on Eval.ai: https://eval.ai/web/challenges/challenge-page/925/participate. Follow the instructions here: https://evalai.readthedocs.io/en/latest/participate.html#.\nDownload the dataset from https://www.kaggle.com/andyczhao/covidx-cxr2.\nDesign an AI algorithm that gets CXR images as inputs and predicts the labels of the images in the output (COVID or non-COVID).\nTrain your AI algorithm using the training dataset.\nSubmit your AI algorithm through Eval.ai for evaluation against the test dataset for the competition.\n\nPrizes \nFor the First Phase\, the first five best solutions will be awarded monetary prizes and Azure credits: \n\nFirst place: 1\,000 CAD + 500 CAD in Azure.\nSecond place: 800 CAD + 300 CAD in Azure.\nThird place: 600 CAD + 300 CAD in Azure.\nFourth place: 400 CAD + 300 CAD in Azure.\nFifth place: 300 CAD + 300 CAD in Azure.\n\nThe top 10 teams on the leaderboard will also have the following opportunities: \n\nParticipate in the 2nd phase to refine their solution and receive funding for a project.\nWrite a scientific paper with the Vision and Image Processing Research Group\, from the University of Waterloo\, to explain their approach.\n\nFor the Second Phase\, the best three projects can receive funds up to the following amounts: \n\nProject 1: 5\,000 CAD.\nProject 2: 5\,000 CAD.\nProject 3: 4\,000 CAD.\n\nTerm of funding: Up to 4 months following the announcement of the selected teams. The deadline is December 31st\, 2021. \n\nFor more information\, visit IEEE SIGHT Montreal website. \n 
URL:https://www.ieeetoronto.ca/event/ai-against-covid-19-screening-x-ray-images-for-covid-19-infections/
LOCATION:Virtual
CATEGORIES:SIGHT,Young Professionals
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