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Weather Web App

*This is a Weather Web App build using HTML/CSS and JS


Note: Enter any city name of your choice to check the weather updates.

You can even try city names from different countries (like New York, London, Tokyo, Toronto, Paris) and it will give you the weather updates of that particular city.

#For Quote and Joke generator: click here

#For Number Guessing Game: click here


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Stock Market using Python

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