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Volatility-prediction

name.

Applying the Recurrent Neural Network LSTM method to analyze the bid / ask info from the exchange's order book data. The final product is a combination of a visual display depicting real-time future market volatility for Bitcoin. This project can help retail investors become more aware of market risk while assisting traders in making more deliberate hedging decisions.

This is a final project done after 9 weeks of Data Science Bootcamp at Le Wagon.

Presented by Students Howard Li (Product Manager), Jessica Chuh (Full Stack Developer), and Jack Wu (Model Architect).

Le Wagon Final Project.pdf