Reinforcement Learning: AI agents that learn through trial and error by interacting with an environment

Agent: The RL agent is the entity that learns and makes decisions. It observes the environment, takes actions, and receives feedback. Environment: The environment is the context in which the RL agent operates. It can be a virtual or physical world, and it provides feedback to the agent based on its actions. State: The state represents the current condition or configuration of the environment. It provides relevant information to the agent for decision-making. Actions: Actions are the choices made by the RL agent in response to the observed state.

The agent selects actions based on its policy, which is the strategy for decision-making. Rewards: Rewards are the signals the agent receives from the environment after taking actions. They indicate the desirability or quality of the agent’s behavior. Positive rewards reinforce good actions, while negative rewards (penalties) discourage undesired actions. Exploration and Exploitation: RL agents need to balance exploration and exploitation.

Exploration involves trying out different actions to discover optimal behavior, while exploitation involves maximizing rewards based on the agent’s current knowledge. Q-Learning and Policy Gradient: RL algorithms use various techniques to learn optimal behavior. Q-Learning is a popular model-free RL algorithm that estimates the value of taking an action in a specific state. Policy Gradient methods directly learn a policy, which is a mapping from states to actions, by optimizing the expected cumulative reward.

Applications: RL has been successfully applied in various domains, including robotics, game playing, recommendation systems, autonomous vehicles, and resource management. RL has achieved notable successes, such as AlphaGo, an RL-based program that defeated human champions in the game of Go. Reinforcement learning offers a powerful framework for training intelligent agents to learn and make decisions in complex and dynamic environments. It has the potential to drive advancements in autonomous systems, optimization, and adaptive decision-making.

Posted in

adm 2

Leave a Comment





Future Designers Unleash Creativity with AI

Future Designers Unleash Creativity with AI

Five Emerging Trends in Technology Support Services

Five Emerging Trends in Technology Support Services

A Parable: “The Blind GPUs and the Elephant”

A Parable: “The Blind GPUs and the Elephant”

A New Wave: Transforming Our Understanding of Ocean Health

A New Wave: Transforming Our Understanding of Ocean Health

UN Security Council to hold first talks on AI risks

UN Security Council to hold first talks on AI risks

The Problem With Suing Gen AI Companies for Copyright Infringement

The Problem With Suing Gen AI Companies for Copyright Infringement

SEC’s Gary Gensler Believes AI Can Strengthen Its Enforcement Regime

SEC’s Gary Gensler Believes AI Can Strengthen Its Enforcement Regime

Robotics: New skin-like sensors fit almost everywhere

Robotics: New skin-like sensors fit almost everywhere

Labour Outlines Law to Ban Training AI Chatbot to Spread Terror

Labour Outlines Law to Ban Training AI Chatbot to Spread Terror

Winning with AI

Winning with AI

Watson Anywhere: The Future

Watson Anywhere: The Future

DataFam Roundup

DataFam Roundup

AI is Not Magic: It’s Time to Demystify and Apply

AI is Not Magic: It’s Time to Demystify and Apply

AI in 2020: From Experimentation to Adoption

AI in 2020: From Experimentation to Adoption

A New Way to Accelerate Your AI Plans

A New Way to Accelerate Your AI Plans

https://www.acrolinx.com/resources/the-future-of-enterprise-content-in-the-era-of-ai/

The Future of Enterprise Content in the Era of AI

The Art of the Practical - Making AI Real

The Art of the Practical – Making AI Real

https://www.sas.com/en_gb/webinars/artificial-intelligence-ondemand.html

Practicalities of Artificial IntelligenceMaking AI Business-Smart 

https://www.sas.com/en_gb/webinars/turning-understanding-into-action.html

Making AI Business-Smart: Turning understanding into action

How Would you Provide Clarity to Your Image Data?

How Would you Provide Clarity to Your Image Data?

How AI-Augmented Threat Intelligence Solves Security Shortfalls

House Oversight Committee Advances Bills Affecting Cyber and AI for Federal Workforce

House Oversight Committee Advances Bills Affecting Cyber and AI for Federal Workforce

China AI Chip Firm Targeting Nvidia Seeks Hong Kong IPO in 2023

China AI Chip Firm Targeting Nvidia Seeks Hong Kong IPO in 2023

Interview with Mr. Robin Li

Interview with Mr. Robin Li

Interview with Mr.Nick Bostrom

Interview with Mr.Nick Bostrom

Interview with Mr.Dorian Selz

Interview with Mr.Dorian Selz

Ensure AI Applications are Ethical and Well Governed

Ensure AI Applications are Ethical and Well Governed

Data Management for Successful AI

Data Management for Successful AI

ChatGPT, Bard et al: Generative AI for Enterprise Growth and Engagement

ChatGPT, Bard et al: Generative AI for Enterprise Growth and Engagement

AI & Consumer Sentiment: The Future of Digital Storytelling

AI & Consumer Sentiment: The Future of Digital Storytelling