Artificial Intelligence: Reinforcement Learning in Python

Original price was: ₹2,500.00.Current price is: ₹250.00.

🧠 Learn Reinforcement Learning – The Future of Artificial Intelligence

This comprehensive Udemy course titled “Artificial Intelligence: Reinforcement Learning in Python” is your gateway into the exciting field of Reinforcement Learning (RL) — a cutting-edge branch of AI where machines learn to make decisions through trial and error, just like humans.

Guided by expert instructor Lazy Programmer Inc., this course is packed with hands-on Python coding, real-world examples, and in-depth concepts including Q-learning, Temporal Difference (TD) Learning, Monte Carlo methods, and Deep Reinforcement Learning (DRL).


📚 What You’ll Learn:

  • The fundamentals of Reinforcement Learning (RL)

  • Implementing Markov Decision Processes (MDPs)

  • Dynamic Programming: Policy Iteration & Value Iteration

  • Tabular & Approximate Q-Learning

  • Deep Q-Networks (DQN) using TensorFlow

  • Building your own RL models in Python


🧑‍💻 Technologies & Libraries Used:

  • Python 3.x

  • Numpy, Matplotlib

  • TensorFlow (for Deep RL models)

  • Custom Gridworld simulations


👨‍🏫 About the Instructor:

Taught by Lazy Programmer Inc., a top-rated AI & data science instructor on Udemy with years of industry and teaching experience.


👥 Who Should Take This Course:

  • Students & professionals interested in AI & ML

  • Python developers looking to break into reinforcement learning

  • Data scientists & machine learning engineers

  • Game developers or robotics enthusiasts


🛠️ Product Features Table:

Feature Details
Course Format Online Video Course
Platform Udemy
Skill Level Intermediate to Advanced
Duration ~12 hours on-demand video
Tools Used Python, TensorFlow, Numpy
Certificate Yes (Udemy Certificate of Completion)
Category AI, Machine Learning, Python
Language English

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