Master Classification and Feedforward Networks [2025]
Learn to Master Classification and Feedforward Networks for Data Science, Data Analysis, and Machine Learning [2025]
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Master Classification and Feedforward Networks [2025] free download
Learn to Master Classification and Feedforward Networks for Data Science, Data Analysis, and Machine Learning [2025]
Welcome to the course Master Classification and Feedforward Networks!
Classification and Supervised Learning are one of the most important and common tasks for Data Science, Machine Learning, modeling, and AI.
This video course will teach you to master Classification and Supervised Learning with a number of advanced Classification techniques such as the XGBoost Classifier. You will learn to use practical classification hands-on theory and learn to execute advanced Classification tasks with ease and confidence.
You will learn to use Classification models such as Logistic Regression, Linear Discriminant Analysis, Gaussian Naïve Bayes Classifier models, Decision Tree Classifiers, Random Forest Classifiers, and Voting Classifier models
You will learn to handle advanced model structures such as feedforward artificial neural networks for classification tasks and to use effective augmented decision surfaces graphs and other graphing tools to assist in judging Classifier performance
You will learn to:
Master Classification and Supervised Learning both in theory and practice
Master Classification models from Logistic Regression and Linear Discriminant Analysis to the XGBoost Classifier, and the Gaussian Naïve Bayes Classifier model
Use practical classification hands-on theory and learn to execute advanced Classification tasks with ease and confidence
Use advanced Decision Tree, Random Forest, and Voting Classifier models
Use Feedforward Multilayer Artificial Neural Networks and advanced Classifier model Structures
Use effective augmented decision surfaces graphs and other graphing tools to judge Classifier performance
Use the Scikit-learn library for Classification supported by Matplotlib, Seaborn, Pandas, and Python
Cloud computing: Use the Anaconda Cloud Notebook (Cloud-based Jupyter Notebook). Learn to use Cloud Computing resources.
Option: To use the Anaconda Distribution (for Windows, Mac, Linux)
Option: Use Python environment fundamentals with the Conda package management system and command line installing/updating of libraries and packages – golden nuggets to improve your quality of work life.
And much more…
This course is an excellent way to learn to master Classification, feedforward Networks, and Supervised Learning for Classification
This course is designed for everyone who wants to
learn to master Classification and Supervised Learning
learn to master Classification and Supervised Learning and knows Data Science or Machine Learning
learn advanced Classification skills
This course is a course we ourselves would want to be able to enroll in if we could time-travel and become new students. In our opinion, this course is the best course to learn to master Classification.
Course requirements:
Everyday experience using a computer with either Windows, MacOS, iOS, Android, ChromeOS, or Linux is recommended
Basic Python and Pandas skills
Access to a computer with an internet connection
The course only uses costless software
Walk-you-through installation and setup videos for Cloud computing and Windows 10/11 is included
Enroll now to receive 5+ hours of video tutorials with manually edited English captions, and a certificate of completion after completing the course!