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Certificate of Completion
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THIS ACKNOWLEDGES THAT
HAS COMPLETED THE SPRING 2022 DATA SCIENCE BOOT CAMP
Allison Londerée
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Roman Holowinsky, PhD
JUNE 08, 2022
DIRECTOR
DATE
TEAM
Da Vinci
Adam Kawash, Moeka Ono, Soumen Deb, Allison Londerée
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The DaVinci Team of the Erdős Institute has utilized advances in computer vision technology with the goal to train a machine learning model to classify species of birds. We then applied this model in a prototype app ChickID. In doing so our project addresses two primary goals:
1) Generate an algorithm that could take images of birds to identify the species.
2) Ensure our model could function even using amateur-level images with a high degree of accuracy, to ensure accessibility of identification.
Our product can be applied for both private and public settings to allow for fast and accurate identification.