Machine Learning Essential Training: Value Estimations
Machine Learning Essential Training: Value Estimations
Machine Learning Fundamentals: Learning to Make Recommendations
Machine Learning Fundamentals: Learning to Make Recommendations
Building and Deploying Applications with TensorFlow
Building and Deploying Applications with TensorFlow
Building Deep Learning Applications with Keras 2.0
Building Deep Learning Applications with Keras 2.0
Machine Learning Essential Training: Value Estimations
Machine Learning Essential Training: Value EstimationsIn this project-based course, discover how to use machine learning to build a value estimation system that can deduce the value of a home. Follow Adam Geitgey as he walks through how to use sample data to build a machine learning model, and then use that model in your own programs.                    
Machine Learning Fundamentals: Learning to Make Recommendations
Machine Learning Fundamentals: Learning to Make RecommendationsRecommendation systems are a key part of almost every modern consumer website. The systems help drive customer interaction and sales by helping customers discover products and services they might not ever find themselves. By the end of the course, you'll be equipped to use machine learning yourself to solve recommendation problems.
Building and Deploying Applications with TensorFlow
Building and Deploying Applications with TensorFlowTensorFlow is one of the most popular deep learning frameworks available. It's used for everything from cutting-edge machine learning research to building new features for start-ups in Silicon Valley. Discover how to install and use TensorFlow to create, train, and deploy machine learning models.
Building Deep Learning Applications with Keras 2.0
Building Deep Learning Applications with Keras 2.0Keras is a popular programming framework for deep learning that simplifies the process of building deep learning applications. In this course, learn how to install and use Keras to build and deploy deep learning models. 
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