Take a look at artificial intelligence through philosophical and science fiction lenses, and review Python basics. Then explore AI algorithms through studying rational agents and common search algorithms like A* search. Complete short coding assignments in Python.

Artificial Intelligence Essentials
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您将学到什么
Understand the history and context of artificial intelligence through the lenses of philosophy and science fiction.
Explore different kinds of common search algorithms like A* Search, depth first search, breadth first search and more.
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12 项作业
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该课程共有4个模块
In the first module of the course, we will introduce AI by delving into the philosophical underpinnings of artificial intelligence, integrating the work of important thinkers from Descartes to Alan Turing. We’ll also look at how Science Fiction often foretells the future of artificial intelligence, including examples of AI from hit 1970s and 1980s films that, decades later, have become a reality. We will also start refreshing our Python knowledge to prepare for our coding assignments later in the course.
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9个视频1篇阅读材料3个作业1个讨论话题
This module, we will set us up for some key considerations we’ll make when designing our own AI systems and how they should behave. Should they act like humans do, or think like humans do, or act and think rationally? We'll define what rational agents are and explore task environments before completing our Python review. At the end of the module, you will work on your first of three programming assignments.
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9个视频3个作业1个编程作业
In artificial intelligence, a surprising number of tasks that we want to solve can be cast as search problems. This module, we will introduce the formal definition of search problems, and examine some classic algorithms for solving search problems called shortest path algorithms. These are sometimes referred to as “uninformed” search algorithms or “blind” search algorithms, because they are run without any additional knowledge of where our goal lies. We’ll also look at some variants of these algorithms that have computational complexity guarantees.
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10个视频3个作业1个编程作业
We can often find a solution to a search problem more quickly if we have some knowledge about how close we are to a goal state. This module, we’ll look at the process of incorporating such knowledge into search algorithms, which, when used optimally, can help focus our search efforts so that we avoid exploring actions that move us further away from the goal. We’ll examine the most famous informed search algorithm, A* search, which is guaranteed to find an optimal solution first.
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7个视频1篇阅读材料3个作业1个编程作业
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已于 Oct 28, 2024审阅
This course is deep and offers a great start to artificial intelligence
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