Basit bir burç modülü.

Overview

Bu modulu burclar hakkinda gundelik bir sekilde bilgi alin diye yaptim ve sizler icin kullanima sunuyorum. Modulun kullanimi asiri basit:

Ornek Kullanim V1:

from burclar import burclar

yay = burclar.yay('gunluk') & burclar.yay() #Buraya yay yerine burclarin adini yazarak istediginiz gundelik burc bilgisini alabilirsiniz.

yay = burclar.yay('haftalik') #Buraya yay yerine burclarin adini yazarak istediginiz haftalik burc bilgisini alabilirsiniz.


print(yay) # Konsola yorumun ciktisini verir.

"""
Gundelik olarak her gun kendini duzenler ve sadece burc yorum kismini size verir.

"""
Ornek Kullanim V2:

from burclar import burclarOz 

yay = burclarOz.yay() & burclarOz.yay('ozellikleri') #Buraya yay yerine burclarin adini yazarak istediginiz burcun ozellik bilgisini alabilirsiniz.

print(yay)

Bunun haricinde bir kullanimi yoktur. yay yazan yerlere farkli burclari yazarak bilgiler alabilirsiniz.

Burclar:

-terazi -boga -yay -akrep -kova -aslan -ikizler -balik -koc -yengec -basak -oglak

Modulu kullandiginiz icin tesekkur ederim , en kisa zamanda daha gelismisini sizlerin huzuruna sunacagim.

Owner
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designer&developer.
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