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Wundernut vol. 12 coding challenge

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This autumn, the Wunderdog Wundernut programming puzzle includes figuring out why the repository has a sand-colored PNG and which Harry Potter character to submit on a form.

My submission to the previous puzzle was not very high-brow. I'm not saying my solution to the new one is more elegant, but at least I think I used a proper (read boring) tool. On the upside, I got to learn a new cipher type (affine) and use an OCR library for the first time ever!

https://github.com/jjylik/wd-notrot13

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