CS50's Introduction to AI with Python
Develop an in-depth understanding of artificial intelligence (AI) methodologies, including natural language processing, machine learning, and search algorithms.
Description for CS50's Introduction to AI with Python
Graph Search Algorithms: Discover the methods by which graph search algorithms are employed to identify solutions in a variety of AI applications.
Logical Inference and Knowledge Representation: Comprehend the methods by which logical inference is employed to make decisions in AI systems and the manner in which knowledge is represented.
Reinforcement Learning and Machine Learning: Develop a comprehensive understanding of reinforcement learning techniques and machine learning models when training AI systems.
Natural Language Processing (NLP): Investigate NLP techniques to facilitate the comprehension and interaction of human language by machines.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 12
Offered by: On edX provided by HarvardX
Duration: 10�30 hours per week approx 7 weeks
Schedule: Flexible
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