課程目錄: 人工智能原理培訓

        4401 人關注
        (78637/99817)
        課程大綱:

        人工智能原理培訓

         

         

         

        Part I. Basics: Chapter 1. Introduction

        1.1 Overview of Artificial Intelligence

        1.2 Foundations of Artificial Intelligence

        1.3 History of Artificial Intelligence

        1.4 The State of The Art

        1.5 Summary

        Quizzes for Chapter 1

        Part I. Basics: Chapter 2. Intelligent Agent

        2.1 Approaches for Artificial Intelligence

        2.2 Rational Agents

        2.3 Task Environments

        2.4 Intelligent Agent Structure

        2.5 Category of Intelligent Agents

        2.6 Summary

        Quizzes for Chapter 2

        Part II. Searching: Chapter 3. Solving Problems by Search

        3.1 Problem Solving Agents

        3.2 Example Problems

        3.3 Searching for Solutions

        3.4 Uninformed Search Strategies

        3.5 Informed Search Strategies

        3.6 Heuristic Functions

        3.7 Summary

        Quizzes for Chapter 3

        Part II. Searching: Chapter 4. Local Search and Swarm Intelligence

        4.1 Overview

        4.2 Local Search Algorithms

        4.3 Optimization and Evolutionary Algorithms

        4.4 Swarm Intelligence and Optimization

        4.5 Summary

        Quizzes for Chapter 4

        Part II. Searching: Chapter 5. Adversarial Search

        5.1 Games

        5.2 Optimal Decisions in Games

        5.3 Alpha-Beta Pruning

        5.4 Imperfect Real-time Decisions

        5.5 Stochastic Games

        5.6 Monte-Carlo Methods

        5.7 Summary

        Quizzes for Chapter 5

        Part II. Searching: Chapter 6. Constraint Satisfaction Problem

        6.1 Constraint Satisfaction Problems (CSPs)

        6.2 Constraint Propagation: Inference in CSPs

        6.3 Backtracking Search for CSPs

        6.4 Local Search for CSPs

        6.5 The Structure of Problems

        6.6 Summary

        Quizzes for Chapter 6

        Part III. Reasoning: Chapter 7. Reasoning by Knowledge

        7.1 Overview

        7.2 Knowledge Representation

        7.3 Representation using Logic

        7.4 Ontological Engineering

        7.5 Bayesian Networks

        7.6 Summary

        Quizzes for Chapter 7

        Part IV. Planning: Chapter 8. Classic and Real-world Planning

        8.1 Planning Problems

        8.2 Classic Planning

        8.3 Planning and Scheduling

        8.4 Real-World Planning

        8.5 Decision-theoretic Planning

        8.6 Summary

        Quizzes for Chapter 8

        Part V. Learning: Chapter 9. Perspectives about Machine Leaning

        9.1 What is Machine Learning

        9.2 History of Machine Learning

        9.3 Why Different Perspectives

        9.4 Three Perspectives on Machine Learning

        9.5 Applications and Terminologies

        9.6 Summary

        Quizzes for Chapter 9

        Part V. Learning: Chapter 10. Tasks in Machine Learning

        10.1 Classification

        10.2 Regression

        10.3 Clustering

        10.4 Ranking

        10.5 Dimensionality Reduction

        10.6 Summary

        Quizzes for Chapter 10

        Part V. Learning: Chapter 11. Paradigms in Machine Learning

        11.1 Supervised Learning Paradigm

        11.2 Unsupervised Learning Paradigm

        11.3 Reinforcement Learning Paradigm

        11.4 Other Learning Paradigms

        11.5 Summary

        Quizzes for Chapter 11

        Part V. Learning: Chapter 12. Models in Machine Learning

        12.1 Probabilistic Models

        12.2 Geometric Models

        12.3 Logical Models

        12.4 Networked Models

        12.5 Summary

        Quizzes for Chapter 12