University of Colorado Boulder

Intelligent Agents and Search Algorithms

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University of Colorado Boulder

Intelligent Agents and Search Algorithms

Rhonda Hoenigman

位教师:Rhonda Hoenigman

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深入了解一个主题并学习基础知识。
初级 等级

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深入了解一个主题并学习基础知识。
初级 等级

推荐体验

1 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

您将学到什么

  • Explain rational agents, decision-making models, performance measures, and environment types (deterministic, stochastic, episodic, sequential).

  • Analyze search strategies using completeness, optimality, time complexity, and space complexity to evaluate performance trade-offs.

  • Formulate effective heuristics to guide informed search algorithms and improve efficiency and solution quality.

  • Implement search algorithms like A* and greedy best-first search to solve pathfinding and structured search problems.

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最近已更新!

March 2026

作业

8 项作业

授课语言:英语(English)

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该课程共有5个模块

Module 1 introduces the core concepts that form the foundation of intelligent systems in artificial intelligence. You will explore the historical development of AI and how early problem-solving approaches led to the development of intelligent agents and search-based reasoning. The module focuses on understanding rational agents, the environments in which they operate, and the different types of agents used to make decisions and solve problems. Through examples and activities, you will begin connecting these foundational ideas to how AI systems search, reason, and act in real-world environments.

涵盖的内容

6个视频1篇阅读材料4个作业

In this module, you will explore how complex problems can be represented and solved through search. You will learn how to define a search problem by identifying states, actions, goals, and costs, and examine how these components guide an algorithm’s ability to find solutions. Through toy examples and hands-on practice, you will see how problems are structured so that search algorithms can navigate possible paths toward a goal. You will also compare common uninformed search strategies—including breadth-first search (BFS), depth-first search (DFS), and uniform-cost search—to understand how different approaches affect efficiency and performance.

涵盖的内容

5个视频2个作业

In this module, you will explore informed search methods that improve problem-solving efficiency by guiding algorithms with heuristics. You will examine how objective functions help algorithms prioritize promising paths and learn how strategies such as greedy best-first search and A* search use heuristic information to find solutions more efficiently. You will also investigate conditions for optimality in A*, explore variations such as IDA* and weighted A*, and implement A* in a practical activity. You will also analyze how heuristic quality influences algorithm performance, including runtime complexity and branching behavior. By studying approaches for developing heuristics—such as relaxed problems, sub-problems, and experience-based learning—you will gain insight into how well-designed heuristics can dramatically improve search performance in complex problem spaces.

涵盖的内容

6个视频1篇阅读材料2个作业1个编程作业

In this module, you will explore search problems where the objective is to find an optimal state rather than a sequence of actions. Using the classic 8-queens problem, you will examine how local search algorithms such as hill climbing navigate solution spaces and learn key concepts including local and global optima. You will also study strategies that improve local search performance, such as random restarts, sideways moves, and allowing downhill steps to escape local optima. The module introduces broader optimization approaches including simulated annealing, genetic algorithms, beam search, and tabu search, along with nature-inspired algorithms like particle swarm optimization and ant colony optimization, helping you understand how these methods are applied to solve complex real-world optimization problems.

涵盖的内容

6个视频1个编程作业

In this module, you will explore how artificial intelligence approaches decision-making in competitive environments through game playing. You will examine the structure of games commonly studied in AI, focusing on two-player, turn-taking games with complete information. The module introduces the minimax algorithm as a method for evaluating possible game outcomes and selecting optimal moves, and explains how alpha-beta pruning improves efficiency by reducing the number of game states that must be evaluated. You will also explore the historical foundations of AI game playing, including early work on computer chess, and review examples of games where AI techniques are applied today.

涵盖的内容

3个视频3篇阅读材料

位教师

Rhonda Hoenigman
University of Colorado Boulder
1 门课程 30 名学生

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