Artificial Intelligence Price Emulator: A Study on Cryptocurrency

Authors

  • Apoorva Ganapathy Adobe Systems
  • Taposh Kumar Neogy IBA (National University), Rajshahi

DOI:

https://doi.org/10.18034/gdeb.v6i2.558

Keywords:

Cryptocurrency, Artificial Intelligence, Emulator, Machine Learning, Blockchain, Volatility, Coin, Algorithms

Abstract

The cryptocurrency Artificial intelligence price emulator is a software programmed to collect cryptocurrency market data, analyze the data and predict the market price using the collected data. Computer emulators are programmed to mimic and copy behaviors or other software/hardware. The reason for emulation is to get to a particular result as quickly as possible. Machine learning is the ability of computers to read and process data while learning from the data with human interference or influence. This work focused majorly on how cryptocurrency market prices can be emulated using Artificial Intelligence with machine learning abilities. It also looked into the advantages of using the software for crypto investors. Some of which is the reduced time of research, reduction of risk, among others.

 

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Author Biographies

  • Apoorva Ganapathy, Adobe Systems

    Senior Developer, Adobe Systems, San Jose, California, USA

  • Taposh Kumar Neogy, IBA (National University), Rajshahi

    Assistant Professor (Accounting), Institute of Business Administration (IBA), National University, Rajshahi, BANGLADESH

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Published

2017-12-31

How to Cite

Ganapathy, A., & Neogy, T. K. (2017). Artificial Intelligence Price Emulator: A Study on Cryptocurrency. Global Disclosure of Economics and Business, 6(2), 115-122. https://doi.org/10.18034/gdeb.v6i2.558

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