We may be leaving out information or disregarding it because it doesn't …
We may be leaving out information or disregarding it because it doesn't conform with our own beliefs. Students will learn about confirmation bias, different perspectives and how to avoid confirmation bias. This lesson is part of a media unit curated at our Digital Citizenship website, "Who Am I Online?".
The projects in this guide use a student-driven approach to learning. Instead …
The projects in this guide use a student-driven approach to learning. Instead of simply learning about AI through videos or lectures, the students completing these projects are active participants in their AI exploration. In the process, students work directly with innovative AI technologies, participate in “unplugged” activities that further their understanding of how AI technologies work, and create various authentic products—from machine learning models to video games—to demonstrate their learning.
Project 1: Programming with Machine Learning Project 2: AI-Powered Players in Video Games Project 3: Using AI for Robotic Motion Planning Project 4: Machine Learning as a Service
Visit the ISTE website with all the free practical guides for engaging students in AI creation: https://www.iste.org/areas-of-focus/AI-in-education
This guide provides student-driven projects that can directly teach subject area standards …
This guide provides student-driven projects that can directly teach subject area standards in tandem with foundational understandings of what AI is, how it works, and how it impacts society. Several key approaches were taken into consideration in the design of these projects. Understanding these approaches will support both your understanding and implementation of the projects in this guide, as well as your own work to design further activities that integrate AI education into your curriculum.
Project 1: AI Chatbots Project 2: Developing a Critical Eye Project 3: Using AI to Solve Environmental Problems Project 4: Laws for AI
Visit the ISTE website with all the free practical guides for engaging students in AI creation: https://www.iste.org/areas-of-focus/AI-in-education
In this guide, students’ exploration of AI is framed within the context …
In this guide, students’ exploration of AI is framed within the context of ethical considerations and aligned with standards and concepts, and depths of understanding that would be appropriate across various subject areas and grade levels in K–12. Depending on the level of your students and the amount of time you have available, you might complete an entire project, pick and choose from the listed activities, or you might take students’ learning further by taking advantage of the additional extensions and resources provided for you. For students with no previous experience with AI education, exposure to the guided learning activities alone will create an understanding of their world that they likely did not previously have. And for those with some background in computer science or AI, the complete projects and resources will still challenge their thinking and expose them to new AI technologies and applications across various fields of study.
Project 1: Fair's Fair Project 2: Who is in Control? Project 3: The Trade-offs of AI Technology Project 4: AI and the 21st Century Worker
Visit the ISTE website with all the free practical guides for engaging students in AI creation: https://www.iste.org/areas-of-focus/AI-in-education.
This interactive lesson helps students understand how companies use algorithms to sort …
This interactive lesson helps students understand how companies use algorithms to sort job applicants. It also encourages students to reflect on how digital data mining also can contribute to the hiring process. Students examine resumes and digital data to consider the ways in which our data may open or close opportunities in an increasingly digitized hiring market.
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