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Unsupervised Learning, Recommenders, Reinforcement Learning

Introducing Unsupervised Learning, Recommenders, and Reinforcement Learning, the third course of the Machine Learning Specialization, a comprehensive online program designed to equip you with the skills and knowledge needed to excel in the field of artificial intelligence. Developed in collaboration between DeepLearning.AI and Stanford Online, this beginner-friendly program is taught by the renowned AI visionary, Andrew Ng. With a focus on practical applications, this specialization covers a wide range of machine learning concepts and techniques.

What will you learn?

In this particular course, you will delve into the world of unsupervised learning, exploring clustering and anomaly detection. You'll learn how to identify patterns and group similar data points together without labeled examples, enabling you to extract valuable insights from unstructured data. Additionally, you will discover how to build advanced recommender systems using both collaborative filtering and content-based deep learning approaches. These systems play a crucial role in personalized recommendations, enhancing user experiences across various industries.

Moreover, the course will guide you through the process of constructing a deep reinforcement learning model. This cutting-edge technique allows machines to learn and make decisions through interactions with their environment, paving the way for advancements in robotics, gaming, and autonomous systems.

Master machine learning

By the end of this specialization, you will have gained mastery over key machine learning concepts and acquired practical skills to tackle real-world challenges. Whether you are aspiring to break into the field of AI or looking to advance your career in machine learning, the Machine Learning Specialization offers an ideal starting point. Enroll now for free and embark on your journey to becoming an AI expert. The course begins on July 19.

Training Offer Details

Target audience
Digital skills for ICT professionals and other digital experts.
Digital technology / specialisation
Digital skill level
Geographic scope - Country
Austria
Belgium
Bulgaria
Cyprus
Industry - field of education and training
Inter-disciplinary programmes and qualifications involving education
Information and Communication Technologies (ICTs) not further defined
Target language
English
Geographical sphere
International initiative
Typology of training opportunties
Learning activity
e-learning coursework
Assessment type
Training duration
Organisation
Is this course free
No
Is the certificate / credential free
No
Effort
Part time light
Credential offered
Learning Entitlement
Self-paced course
No