🐗 🐻 Deep Learning based Python Library for Stock Market Prediction and Modelling
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Updated
Jan 17, 2021 - Python
🐗 🐻 Deep Learning based Python Library for Stock Market Prediction and Modelling
Web app to predict closing stock prices in real time using Facebook's Prophet time series algorithm with a multi-variate, single-step time series forecasting strategy.
Astock
Beginner-friendly collection of Python notebooks for various use cases of machine learning, deep learning, and analytics. For each notebook there is a separate tutorial on the relataly.com blog.
Reinforcement Learning for Stock Market Prediction
Repository for Going Deeper with Convolutional Neural Network for Stock Market Prediction
Reproduce research from paper "Predicting the direction of stock market prices using random forest"
Stock Prediction System is a ML based website designed using Django's Framework and CSS's BootStrap Framework (NOTE: ALL THE DEPLOYMENTS ARE CURRENTLY DOWN)
This repository hosts a stock market prediction model for Tesla and Apple using Liquid Neural Networks. It showcases data-driven forecasting techniques, feature engineering, and machine learning to enhance the accuracy of financial predictions.
Code implementation of "SENN: Stock Ensemble-based Neural Network for Stock Market Prediction using Historical Stock Data and Sentiment Analysis"
In this repository i created many data scince - machine learning projects like(Deep dream,weather prediction,Movie recommender system etc) with code & datasets
A collection of notebooks and different prediction models that can predict the stock prices. Also a comparison of how all these models performed.
Deep Trading using Convolutional Neural Network
Developed ML/DL based a web application for stock price prediction based on real-time data.
Stock market data can be interesting to analyze and as a further incentive, strong predictive models can have large financial payoff. The amount of financial data on the web is seemingly endless. A large and well structured dataset on a wide array of companies can be hard to come by. Here I provide a dataset with historical stock prices (last 5 …
Stock Market Prediction on High-Frequency Data Using soft computing based AI models
Model news data in short, medium and long term for stock price trend prediction
In this work, the application of the Triple-Barrier Method and Meta-Labeling techniques are explored using XGBoost to develop a sentiment-based trading signal for the S&P 500 stock market index. The results indicate that sentiment data possess predictive power; however, substantial work remains before a fully implementable strategy can be realized.
Stock prediction via sentiment analysis of financial news. Winner of VITHack 2020 in FinTech Domain
This repository began as a 7th-semester minor project and evolved into our 8th-semester major project, "Advanced Stock Price Forecasting Using a Hybrid Model of Numerical and Textual Analysis." It utilizes Python, NLP (NLTK, spaCy), ML models, Grafana, InfluxDB, and Streamlit for data analysis and visualization.
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