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# Initial Prediction of Course Changing Positions for Sailboats
# Predicting Course Change Positions for Sailboats
This project is a showcase of my skills in applied artificial intelligence (AI), developed as part of my coursework for my studies in [Applied AI](https://www.fh-swf.de/de/studienangebot/studiengaenge/angewandte_kuenstliche_intelligenz/index.php) at the FH-SWF.
This repository hosts a project developed as part of the coursework for the [Applied AI program at FH-SWF](https://www.fh-swf.de). It demonstrates the application of artificial intelligence (AI) in predicting course changing positions for sailboats.
The project includes a Jupyter Notebook coded in Python using TensorFlow, and markdown entries in German.
## Overview
## Jupyter Notebook
- **Technology Stack**: Python, TensorFlow, Jupyter Notebook
- **Notebook**: `SegelbootKurswechselpositionen.ipynb`
- **Data**: Located in the `data` folder
The Jupyter Notebook, titled `SegelbootKurswechselpositionen.ipynb`, contains experiments conducted for this project. The navigation algorithm used in the notebook is based on the course finder developed by the [Sailing Team Darmstadt e.V.](http://www.st-darmstadt.de). Please note that the course finder algorithm by the Sailing Team Darmstadt e.V. is proprietary and therefore could not be included in this project.
## Project Structure
## Data
- **Jupyter Notebook**: The notebook titled `SegelbootKurswechselpositionen.ipynb` contains experiments conducted for this project. The navigation algorithm utilized is based on the course finder developed by the [Sailing Team Darmstadt e.V.](https://www.st-darmstadt.de). Note: The course finder algorithm by the Sailing Team Darmstadt e.V. is proprietary and is not included in this project.
The training data used for this project can be found in the `data` folder.
- **Data**: The training data essential for this project is housed in the `data` folder.
## Getting Started
1. Clone the repository to your local machine.
2. Navigate to the project directory.
3. Open the Jupyter Notebook to view the experiments and analyses.