Welcome to the repository for the course "Full Stack Data Science Masters". This repository is designed to accompany the course and provide resources, exercises, and projects related to the study of data science techniques.
This course covers a comprehensive range of topics essential for mastering full stack data science. Below is an outline of the curriculum:
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Python
- Basics of Python programming language
- Python projects and applications
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Data Manipulation and Analysis
- Pandas for data manipulation
- NumPy for numerical computations
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Data Visualization
- Visualization libraries (e.g., Matplotlib, Seaborn)
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Databases
- SQL fundamentals
- NoSQL with MongoDB
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Statistics
- Basic statistics
- Advanced statistics
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Feature Engineering
- Techniques for feature extraction and selection
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Exploratory Data Analysis (EDA)
- Methods for data exploration and insights
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Machine Learning
- Introduction to machine learning concepts
- Supervised learning algorithms
- Unsupervised learning techniques
- Time series analysis
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Natural Language Processing (NLP)
- NLP fundamentals for machine learning applications
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End-to-End Machine Learning Projects
- Integration of data preprocessing, model building, and deployment
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Interview Preparation
- Tips and resources for preparing for data science and ML interviews
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Deep Learning
- Introduction to deep learning concepts
- Deep learning for computer vision
- Deep learning for NLP
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PowerBI
- Introduction to Power BI for data visualization and analytics
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Lectures: Contains lecture notes, slides, and supplementary materials.
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Exercises: Hands-on exercises and assignments to reinforce learning.
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Projects: Capstone projects and real-world applications using data science techniques.
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Resources: Additional resources, references, and links for further exploration.
To get started with the course, clone this repository to your local machine:
git clone https://github.com/Rahul-404/Full_Stack_Data_Science_Masters.git
Make sure to install any necessary dependencies outlined in the course materials and follow along with the provided exercises and projects.
Contributions are welcome! If you find any issues or have suggestions for improvement, please submit an issue or a pull request. For major changes, please open an issue first to discuss what you would like to change.
This project is licensed under the MIT License - see the LICENSE file for details.
- Mention any acknowledgments or credits to individuals or organizations whose work or tools you are using in this course.