Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
Advanced ML Techniques: Hyperparameter Optimization, Feature Selection, Hands-on Python Practice Utilizing Key Libraries
The in-depth course "Mastering ML: Hyperparameter Tuning & Feature Selection" is designed to take your machine learning skills to new heights. It is immersive and comprehensive. Explore the complex worlds of feature selection and hyperparameter optimization, two essential methods that are the key to achieving the best possible model performance and effectiveness. You'll gain important skills in fine-tuning models and detecting the most salient features by unraveling the complexities of cutting-edge algorithms and approaches through a combination of theoretical insights, practical demonstrations, and hands-on activities.
With the help of practical examples and industry best practices, this enlightening journey is enhanced and gives you a strong foundation for confidently and accurately navigating large data landscapes. By the end of the course, you will have acquired the abilities and know-how required to create machine learning systems that are extremely precise, effective, and produce significant results. Boost your machine learning skills and take on an immersive learning journey that will push limits and ignite your potential for innovation and success in the ever-evolving field of machine learning.
This course covers fundamentals of machine learning through practical application with libraries such as scikit-learn, scikit-optimize, Keras, Optuna, and TensorFlow. You'll discover how to effectively construct, adjust, and optimize models, ranging from simple models to sophisticated neural nets. Regardless of experience level, this course equips you with useful techniques to advance your machine learning knowledge and foster creativity in your work and projects.
Course Content
- 10 section(s)
- 37 lecture(s)
- Section 1 Introduction
- Section 2 Hyperparameter Optimization
- Section 3 In-Depth Feature Selection
- Section 4 Evaluation Metrics
- Section 5 Advanced Applications for finances: Stock Market Prediction
- Section 6 Advanced Applications: Artificial Vision
- Section 7 Optimization with Python Optuna library
- Section 8 Additional content
- Section 9 Books and Resources
- Section 10 Conclusion and Next Steps
What You’ll Learn
- Master Hyperparameter Tuning: Enhance machine learning outcomes by optimizing model performance with hyperparameter fine-tuning
- Proficiency in Feature Selection: Choose relevant data attributes to build accurate and efficient machine learning models.
- Optimal Methodologies and Issue Resolution: Discover the best approaches for model optimization and address typical issues in ML projects.
- Advanced Application for finances: Real time Stock Market prediction with optimized ML models
- Use scikit-learn, scikit-optimize, Keras, Optuna, and TensorFlow for advanced machine learning techniques
- Advanced Application in Image recognition with optimized CNN
- Optimization Beyond ML: Neural Networks Optimization
- Learn both Cloud-Based and Desktop ML Optimization
- Python ML libraries: Scikit learn, Scikit optimize
- Python Deep Learning libraries: Keras, Tensorflow, Optuna
- Additional content: Optimization of Non-Supervised algorithms
Skills covered in this course
Reviews
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EEva Aurora Bautista Calderon
Excellent course, it is didactic and easy to understand.....
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SSantos Diaz Martinez
Excellent course. I recommend it
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VVeronica Ruiz
¡Good and useful!
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CCintia Resendiz
Great course, it is well explained. I think there should be more like this, with more advanced and specific topics beyond the introductory courses.