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    Foundations Of A.I.: Actions Under Uncertainty

    Posted By: ELK1nG
    Foundations Of A.I.: Actions Under Uncertainty

    Foundations Of A.I.: Actions Under Uncertainty
    Published 12/2023
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1.85 GB | Duration: 3h 7m

    Bayesian Networks, Markov Chains, Hidden Markov Models

    What you'll learn

    Probability theorem

    Conditional Independence

    Bayesian Networks

    Probabilistic Graphical Models

    Markov Property

    Requirements

    Basic Understanding of Programming

    Python Fundamentals

    Probability Theorem

    Description

    "Real world often revolves around uncertainty. Humans have to consider a degree of uncertainty while taking decisions. The same principle applies to Artificial Intelligence too. Uncertainty in artificial intelligence refers to situations where the system lacks complete information or faces unpredictability in its environment. Dealing with uncertainty is a critical aspect of AI, as real-world scenarios are often complex, dynamic, and ambiguous. This course is a primer on designing programs and probabilistic graphical models for taking decisions under uncertainty. This course is all about Uncertainty, causes of uncertainty, representing and measuring Uncertainty and taking decisions in uncertain situations. Probability gives the measurement of uncertainty. We will go through a series of lectures in understanding the foundations of probability theorem. we will be visiting Bayes theorem, Bayesian networks that represent conditional independence. Bayesian Networks has found its place in some of the prominent areas like Aviation industry, Business Intelligence, Medical Diagnosis, public policy etc.In the second half of the course, we will look into the effects of time and uncertainty together on decision making. We will be working on Markov property and its applications. Representing uncertainty and developing computations models that solve uncertainty is a very important area in Artificial Intelligence"

    Overview

    Section 1: About the Program

    Lecture 1 Course Introduction

    Lecture 2 Course Outline

    Section 2: Actions Under Uncertainty

    Lecture 3 Actions Under Uncertainty

    Lecture 4 Probability Notation

    Lecture 5 Independence and Conditional Independence

    Section 3: Software Installation

    Lecture 6 Installing Anaconda Distribution

    Lecture 7 Handling Jupyter Notebooks 1

    Lecture 8 Handling Jupyter Notebooks 2

    Lecture 9 Handling Jupyter Notebooks 3

    Lecture 10 Handling Jupyter Notebooks 4

    Lecture 11 Handling Jupyter Notebooks 5

    Section 4: Bayesian Networks

    Lecture 12 Bayes Theorem

    Lecture 13 Bayesian Networks

    Lecture 14 Implementation of Bayesian Networks

    Lecture 15 Inference in Bayesian Networks

    Lecture 16 Applications of Bayesian Networks

    Section 5: Time and Uncertainty

    Lecture 17 Time and Uncertainty

    Lecture 18 Markov Chains

    Lecture 19 Implementation of Markov Chain

    Lecture 20 Hidden Markov models

    Lecture 21 Implementation of HMM in Python

    Section 6: About the Program

    Lecture 22 Course Conclusion

    Anyone interested in the field of Artificial Intelligence