This repository contains materials and information for a comprehensive Python and Machine Learning course. The course is divided into four sessions, each covering essential topics and tools in Python programming, data manipulation, visualization, and machine learning.
- Speaker: Anneu Tsabita
- Topics Covered:
- Python installation
- Python interpreter usage
- Introduction to basic Python concepts
- Introduction to Python libraries for data manipulation and analysis such as NumPy, Pandas, Matplotlib, and Seaborn.
- Speaker: Rule Lulu
- Topics Covered:
- Basic introduction to Machine Learning
- Techniques for data cleaning
- Data preprocessing
- Data visualization
- Exploratory Data Analysis (EDA)
- Direct implementation of the concepts taught
- Speaker: Darren Prasetya
- Topics Covered:
- Utilization of Python libraries for Machine Learning such as Scikit-learn
- Introduction to various Machine Learning algorithms
- Application of supervised regression and classification using Scikit-learn
- Speaker: Andrian
- Topics Covered:
- Model tuning in Machine Learning
- Model validation
- Introduction to Kaggle competitions and related practical exercises
- Python 3.x
- Jupyter Notebook or any Python IDE
For any questions or inquiries regarding the course, please contact:
- KCV: [email protected]
Feel free to reach out to the respective speakers or administrators for assistance or further information.