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Cryptocurrency Analysis Using Python

Dhruv Rathod, Shubham Naik, Hemalata gosavi

Abstract


Investing in cryptocurrency is more popular these days than it has been in the previous few years. Since there are so many cryptocurrencies available, investing in them may be quite difficult. However, bitcoin is crucial and will not disappear or be limited to 100 years as some have prophesied. Transactions are quick, digital, secure, and international, enabling the maintenance of records without worrying about data theft. In fact, fraud is decreased. What is more challenging is keeping track of cryptocurrency investments because market values change on a daily basis, and most investors have no idea what the cryptocurrency market is like, how it works, how many coins are available, or what their current value is. So, to assist them in navigating these unfamiliar sectors, we are building a platform that will act as a one-stop source for all of their questions. It will not only assist them in learning more about cryptocurrencies, but it will also assist them in keeping track of the cryptocurrency that they have purchased.


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References


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