Welcome to my Time Series Data repository, where the past meets the future! ๐๐ฅ This collection showcases my experiments with time series data, implementing various forecasting models, and diving deep into techniques that help unlock hidden insights. If you're passionate about predicting the future from past trends, youโre in the right place! ๐ฎ
In this repository, I explore everything from data preprocessing to advanced machine learning models tailored for time series forecasting. Whether you are tackling stock price prediction, weather forecasting, or demand prediction, this space is designed to help you understand and experiment with real-world time series problems. ๐๐
In this repository, youโll find a range of experiments, projects, and mini-notebooks focused on time series data:
- ARIMA, Exponential Smoothing, Prophet: Explore classical forecasting methods and how they fit with time series data.
- LSTM & GRU Networks: Dive into deep learning techniques for sequential data and build neural networks that capture time dependencies.
- Handling missing data, outliers, and seasonal adjustments.
- Transforming time series data to make it suitable for machine learning models.
- Building and experimenting with AutoARIMA, SARIMA, and other custom forecasting methods.
- Implementing ensemble methods and hybrid models for better predictions.
- Apply time series forecasting to real datasets: financial data, weather patterns, and sales prediction.
- Experiment with model validation techniques and evaluate performance on multiple datasets.
- Hands-On Learning: Learn by building and experimenting with real time series models and datasets! ๐
- Practical Applications: Each notebook brings the theory to life with real-world data and forecasting challenges. ๐
- Exploring the Future: Time series is all about predicting what's coming nextโhere, we do that with AI-powered solutions! ๐ค
- Continuous Updates: Expect frequent updates as I experiment with new methods, improve models, and explore cutting-edge trends in time series analysis. ๐
This repository will be constantly updated with new experiments, techniques, and improvements in time series forecasting. Youโll always find fresh insights and approaches as I experiment with advanced models and data. ๐ฑ
This space is a place for learning and collaboration. Feel free to contribute by:
- Opening issues or pull requests to suggest improvements or share your own experiments.
- Sharing ideas for new forecasting techniques, projects, or models youโd like to see.
- Forking the repository, exploring the notebooks, and contributing to the journey!
Let's learn and grow together! ๐ฑ
This repository is licensed under the MIT License ๐. You are free to use, modify, and distribute the repository as long as you follow the terms outlined in the license file.
Make sure to give appropriate credit to the original author, and feel free to explore, experiment, and make it your own! ๐
๐ Let's Unlock the Power of Time Series Data Together! ๐
Thanks for exploring my repository! I hope it helps you dive into time series forecasting and bring new insights to your own work. Letโs continue experimenting and pushing the boundaries of data analysis together! ๐โจ