Applied Machine Learning With Python

Why take this course?
🤖 Applied Machine Learning With Python and MS Excel 🚀
Course Headline: Dive into the world of Machine Learning with Python and leverage the power of MS Excel to transform data into actionable insights!
Course Description:
Are you ready to embark on a journey through the fascinating landscape of Machine Learning? Our comprehensive course, meticulously crafted by two seasoned Data Scientists, is your gateway to mastering the art and science of Machine Learning. 🎓✨
Why This Course?
- Expert-Designed Content: Tailored by professional Data Scientists to simplify complex concepts.
- Step-by-Step Learning: From novice to proficient, every step is designed to enhance your understanding and skillset.
- Interactive and Engaging: Combines theoretical knowledge with practical exercises for a dynamic learning experience.
Course Structure:
This course is a deep dive into the intricacies of Machine Learning. It's not just about learning; it's about doing. Here's what you can expect:
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Part 1 - Data Preprocessing
- Understand the importance and methods for cleaning data.
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Part 2 - Regression Techniques
- Explore a variety of regression techniques including Linear, Multiple, Polynomial, SVR, Decision Tree, and Random Forest Regression.
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Part 3 - Classification Methods
- Learn about Logistic Regression, K-NN, SVM, Kernel SVM, Naive Bayes, Decision Tree, and Random Forest Classification.
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Part 4 - Clustering Algorithms
- Understand how to group data using K-Means and Hierarchical Clustering.
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Part 5 - Association Rule Learning
- Discover how to identify patterns with Apriori and Eclat algorithms.
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Part 6 - Reinforcement Learning
- Dive into Reinforcement Learning strategies like Upper Confidence Bound and Thompson Sampling.
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Part 7 - Natural Language Processing (NLP)
- Get to grips with NLP techniques such as the Bag-of-words model.
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Part 8 - Deep Learning Basics
- Learn about Artificial Neural Networks and Convolutional Neural Networks.
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Part 9 - Dimensionality Reduction Techniques
- Master PCA, LDA, and Kernel PCA to optimize data efficiency.
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Part 10 - Model Selection & Boosting
- Grasp the nuances of k-fold Cross Validation, Parameter Tuning, Grid Search, and XGBoost.
Hands-On Practice:
This course is packed with practical exercises that mimic real-life scenarios, allowing you to apply your newfound knowledge in a tangible way. 🛠️💻
Bonus Features:
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Up-to-Date Code: Our code examples are all current, ensuring you're learning with the latest tools and techniques.
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Deep Learning with TensorFlow 2.0: Explore state-of-the-art deep learning models using the latest version of TensorFlow.
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Top Gradient Boosting Models: Learn about cutting-edge gradient boosting algorithms, including XGBoost and CatBoost.
Additional Updates (June 2020):
- Python and R Code Templates: Download ready-to-use code templates to apply directly to your personal projects.
By the end of this course, you will not only understand Machine Learning theories but also possess the skills to build robust models. Enroll now and transform your data into insights with Python and MS Excel! 📊🎯
Enroll Now and Unlock Your Data Science Potential! 🚀
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