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How much am I expressed through the data
Beer Classification (In Progress) 본문
While seating in my room, out of all sudden, I wanted the hoppy taste of IPA beers.
I went straight up to the Beer Store in my town near campus and bought 3 kinds of beers.
1.
2.
3.
Opening the first can of the beer, tasted the hoppiness, I wanted to check the alcoholic percentage of it.
--- % .
'Wait, this number represents the alcoholic percentage of the beer which we typically say as strong or weak beer'.