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    Anasayfa » Predict Bitcoin Prices with TensorFlow
    Tech

    Predict Bitcoin Prices with TensorFlow

    By mustafa efeEylül 22, 2024Yorum yapılmamış3 Mins Read
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    Train a Neural Network with TensorFlow.js to Predict Bitcoin Price Movements

    TensorFlow, known as the most popular machine learning platform, has a JavaScript version called TensorFlow.js, which allows you to use it directly within JavaScript applications. In this project, we’ll explore an exciting intersection of two modern technologies: AI and cryptocurrency. The goal is to train a neural network using historical Bitcoin prices to make predictions on future price movements.

    Starting the Project

    To begin, you’ll need to ensure that Node.js and NPM are installed on your machine. Once you’re set up, you can create a new directory for the project and initialize it. Then, you’ll bring in TensorFlow.js, which is the main tool we will use to build and train the neural network. This library allows JavaScript applications to run machine learning models directly in the browser or within a Node.js environment.

    Project Structure

    The project consists of three main components:

    1. predict.js: This file manages the command-line interactions with the user. It processes the input arguments provided when the script is run.
    2. fetchPriceData.js: This component handles retrieving historical Bitcoin price data from an external API, using the date range specified by the user.
    3. trainAndPredict.js: The most important part of the project, this file is responsible for training the neural network and generating predictions based on the historical data.

    These files work in tandem to pull in relevant data, train the model, and then provide a price prediction for Bitcoin.

    User Interaction

    The user interacts with the program through the command line. They are required to provide certain inputs to specify what the model should predict. Typically, the user will need to enter:

    • The symbol of the cryptocurrency they want to analyze (for example, Bitcoin).
    • The end date for the prediction.
    • The number of days to go back in history for training the model.

    If the user doesn’t provide any input, the program defaults to predicting Bitcoin prices based on the past 90 days, ending with today’s date.

    Fetching Historical Bitcoin Data

    The fetchPriceData.js file is in charge of obtaining the necessary data for training. It pulls historical price data for Bitcoin, or other specified cryptocurrencies, from an external source. This data, which includes daily closing prices, is then used as the basis for training the machine learning model.

    Training the Neural Network

    The heart of the project lies in the trainAndPredict.js file, where TensorFlow.js builds and trains a neural network. The model is designed to learn patterns from the historical Bitcoin price data. By identifying trends and fluctuations over time, the neural network is able to create a prediction for the future based on past behavior.

    The process involves training the model over multiple iterations, improving the prediction accuracy with each pass. After training, the model takes the input data and forecasts Bitcoin prices for the desired future time frame.

    Wrapping Up

    This project demonstrates how TensorFlow.js can be used to apply machine learning to cryptocurrency prediction. By analyzing historical price data, we train a neural network to predict future trends, offering insights into potential price movements. While this is a simplified demonstration, it can serve as a solid foundation for more advanced financial applications. Keep in mind that predicting market prices involves many complexities, and real-world trading systems would factor in a variety of additional influences beyond historical prices.

    Post Views: 87
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