Cryptocurrency Prediction with Artificial Intelligence (Deep Learning via LSTM Neural Networks)

Overview

Cryptocurrency-Prediction-with-Artificial-Intelligence

I developed Cryptocurrency Prediction (Deep Learning with LSTM Neural Networks) software with Artificial Intelligence. I predicted the fall on December 28, 2021 with 98.5% accuracy in the XRP/USDT pair. '0.009179626158151918' MAE Score, '0.0002120391943355104' MSE Score, 98.35% Accuracy Question software has been completed.

The XRP/USDT pair forecast for December 28, 2021 was correctly forecasted based on data from Binance.

Software codes and information are shared with you as open source code free of charge on GitHub and My Personal Web Address.

Happy learning!

Emirhan BULUT

Senior Artificial Intelligence Engineer and Inventor

###The coding language used:

Python 3.9.8

###Libraries Used:

Tensorflow - Keras

NumPy

Matplotlib

Pandas

Scikit-learn (SKLEARN)

Cryptocurrency Prediction with Artificial Intelligence (Deep Learning via LSTM Neural Networks)- Emirhan BULUT

Developer Information:

Name-Surname: Emirhan BULUT

Contact (Email) : [email protected]

LinkedIn : https://www.linkedin.com/in/artificialintelligencebulut/

Kaggle: https://www.kaggle.com/emirhanai

Official Website: https://www.emirhanbulut.com.tr

Owner
Emirhan BULUT
Artificial Intelligence Engineer • Machine Learning and Deep Learning Inventor
Emirhan BULUT
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