Understanding Algorithms for Reinforcement Learning

Reinforcement learning is a type of machine learning which allows decision makers to operate in an unknown environment. In the world of self-driving cars and exploring robots, RL is an important field of study for any student of machine learning.

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Learning Journey Context

This course serves as an entry point into Data Science, building foundational knowledge before moving on to advanced frameworks or specialized paths.

Career Relevance

Relevant for professionals pursuing roles within Data Science.

Quick Facts

2 hour 7 minutes
pluralsight
Beginner
Self-Paced Online
Core Courses
pluralsight
English
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What You’ll Learn

Traditional machine learning algorithms are used for predictions and classification. Reinforcement learning is about training agents to take decisions to maximize cumulative rewards. In this course, Understanding Algorithms for Reinforcement Learning, you'll learn basic principles of reinforcement learning algorithms, RL taxonomy, and specific policy search techniques such as Q-learning and SARSA. First, you'll discover the objective of reinforcement learning; to find an optimal policy which allows agents to make the right decisions to maximize long-term rewards. You'll study how to model the environment so that RL algorithms are computationally tractable. Next, you'll explore dynamic programming, an important technique used to cache intermediate results which simplify the computation of complex problems. You'll understand and implement policy search techniques such as temporal difference learning (Q-learning) and SARSA which help converge on to an optimal policy for your RL algorithm. Finally, you'll build reinforcement learning platforms which allow study, prototyping, and development of policies, as well as work with both Q-learning and SARSA techniques on OpenAI Gym. By the end of this course, you should have a solid understanding of reinforcement learning techniques, Q-learning and SARSA and be able to implement basic RL algorithms.

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Outcomes

  • Course Overview : 2mins.
  • Understanding the Reinforcement Learning Problem : 39mins.
  • Implementing Reinforcement Learning Algorithms : 55mins.
  • Using Reinforcement Learning Platforms : 29mins.
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Understanding Algorithms for Reinforcement Learning
4(56+ learners)
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Check Latest Price →
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🧠 Recommended for beginners
⚠ Not ideal for advanced users