This is an Introduction Unit on Artificial Intelligence.Β It will broadly cover AI topics:
AI - Introduction
AI - History
AI - LLMs, Like ChatGPT
AI - Machine Learning / Machine Vision
AI - Deep Learning
Let's get started... Its going to be a fun, awesome ride...
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Author: Jim Burnham - TopClown@STEAMClown.org. License: Distributed as Open Source.Β
I would like to thank NVIDIA for their generous support of my classroom and curriculum development.Β In 1999 sparked the growth of the PC gaming market, redefined modern computer graphics, and revolutionized parallel computing. More recently, GPU deep learning ignited modern AI β the next era of computing β with the GPU acting as the brain of computers, robots, and self-driving cars that can perceive and understand the world.Β Β
No explicit prerequisite course work or coding knowledge is required, but students are expected to have a good understanding of basic computer principles.
Primer: Β "Aaron, I can imagine no way in which this thing could be considered anywhere remotely close to safe. All I know is I spent six hours in there and I'm still alive... You still want to do it?"
As with any activity, please make sure you are using appropriate safety equipment. Β If you are coding, writing, reading, or working a lab, make sure you stand up and stretch every hour or so,Β Please consider any safety issues connecting to a Raspberry Pi, Arduino, computers and other electronic equipment.
How do machines learn from data, and how is this different from how humans learn?
Focus: Machine Learning
Why it matters: Helps students compare human and machine intelligence, and understand how data-driven systems evolve over time.
What are Large Language Models (like ChatGPT), and how do they process and generate human-like language?
Focus: LLMs and Natural Language Processing
Why it matters: Encourages exploration into the structure of LLMs, training methods, and real-world applications (and limitations) in communication, education, and media.
In what ways can machines βseeβ the world using Machine Vision, and how does this technology impact fields like medicine, security, and robotics?
Focus: Machine Vision
Why it matters: Connects visual processing by machines to authentic uses, while raising questions about ethics and reliability.
What are the potential risks and benefits of deep learning systems making decisions without human input?
Focus: Deep Learning and Ethics
Why it matters: Promotes reflection on AI decision-making, bias, fairness, and the role of humans in oversight.
GENERAL AI & MACHINE LEARNING TERMS
Artificial Intelligence (AI) - The science of making machines that can perform tasks that normally require human intelligence, such as learning, reasoning, or decision-making.
Machine Learning (ML) - A branch of AI where computers learn patterns from data and improve their performance without being explicitly programmed.
Training Data - The data used to teach a machine learning model how to make predictions or decisions.
Model - A computer program that has been trained to recognize patterns and make predictions or decisions.
Algorithm - A step-by-step procedure or set of rules a computer follows to solve a problem or perform a task.
Supervised Learning - A type of ML where the model is trained on labeled data (where the correct answer is known).
Unsupervised Learning - A type of ML where the model finds patterns in data without being told what to look for.
Bias - An error in a machine learning model that occurs when the training data is not representative of real-world scenarios, leading to unfair or incorrect outcomes.
LARGE LANGUAGE MODELS (LLMs) - Like ChatGPT
Large Language Model (LLM) - A type of AI model trained on massive amounts of text to generate human-like language, answer questions, or carry on a conversation (e.g., ChatGPT).
Token - A small chunk of text (like a word or piece of a word) used by language models to process and generate language.
Prompt - The input or question given to an LLM to generate a response.
Natural Language Processing (NLP) - A field of AI focused on enabling machines to understand, interpret, and generate human language.
MACHINE VISION
Computer Vision / Machine Vision - A field of AI that trains computers to interpret and understand images or video, similar to how humans use sight.
Image Recognition - When a computer identifies objects, people, or patterns in images.
Object Detection - An advanced form of image recognition that identifies specific objects and locates them within an image.
Sensor - A device that detects and responds to input from the environment, such as a camera capturing images for vision systems.
DEEP LEARNING
Neural Network - A computer system designed to simulate how the human brain processes information, used in deep learning.
Deep Learning - A type of machine learning that uses many layers of neural networks to model complex patterns in large amounts of data.
Layer - A group of connected nodes (neurons) in a neural network that processes data. More layers = "deeper" learning.
Backpropagation - A method used by neural networks to improve accuracy by adjusting weights based on errors made during training.
This Lesson Module is an introduction to Artificial IntelligenceΒ
Artificial Intelligence - Introduction - π οΈ LAB Activity
Artificial Intelligence -Β π° π½οΈ π οΈ
Artificial Intelligence - AI - Getting Started - π° Slide Presentation (Coming Soon)
Artificial Intelligence - AI Getting Started - LAB #1 - π οΈ LAB Activity (Coming Soon)
Artificial Intelligence - AI - How Some AI Models Are Trained - π° Slide Presentation (Coming Soon)
How AI Learn - "slaughterBots" - π½οΈ Video - YouTube
How AI Learn... Really - π½οΈ Video - YouTube
Artificial Intelligence - Bias? - LAB #1 - π οΈ LAB ActivityΒ
After watching the Videos, what questions do you have? How do we know how the AI learns?
What way could Bias be introduced into this training process?
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Mechatronics - <topic> - LAB #1 - π οΈ LAB Activity
Mechatronics - <topic> - LAB #2 - π οΈ LAB Activity
Mechatronics - <topic> - LAB #3 - π οΈ LAB Activity
This Lesson is coming soon - click here to be notified when it's available - Professional Development Newsletter
Mechatronics - <topic> - π Lesson Tutorial
Mechatronics - <topic> - π½οΈ Video / Podcast
Mechatronics - <topic> - π° Slide Presentation (Coming Soon)
Mechatronics - <topic> - LAB #1 - π οΈ LAB Activity
Mechatronics - <topic> - LAB #2 - π οΈ LAB Activity
Mechatronics - <topic> - LAB #3 - π οΈ LAB Activity
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Iβll work on getting these in, but itβs the last thing I want to work on :-) When I have them updated, Iβll move to the top of the Lesson Plan.Β
NGSS: <list standard numbers>
California CTE Standards: <list standard numbers>
Related Instructional Objectives (SWBAT):Β <list standard numbers>
CCSS: nnn, RSIT: nnn, RLST: nnn, WS: nnn, WHSST: nnn, A-CED: nnn, ETS: nnnΒ <list standard numbers>
Main Standard:
Priority standards:
National Standards:
Reference Text Book - Basic College Mathematics with Early Integers 4th edition - Elayn Martin-Gay - University of New Orleans - Pearson
Reference Sites -Β
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Key: π° Slides / Audio π§ / π½οΈβΆοΈ Video/YouTube / π§βΆοΈπ½οΈ Audio/Video / β¨ Resources /Β πΌοΈ Tutorial / π Reading Activity / π Writing Activity / π π Reading/Writing / π Coding / π οΈ LAB Activity / π Quiz /Β π Review /Β βοΈ Mastery Check / βοΈ Sign Up /π Extra Credit / πΈοΈ Web Links / π©π½βππ§π½βππ§πΏβππ©βπ« Class / π΅οΈππ Certificate / ποΈ π Collecting Survey Data
/π§ Review / π¦Ύ Practice / πLevel Up /
ποΈπ¦π€π―Β π§
- π¦ Special Project -
Assignment Type: β Establishing (Minimum Standard) / βοΈ Developing (Digging Deeper) / π Aspiring (Putting It Together)
This is an β Establishing Assignment (Minimum Standard)Β - "Everyone Do" Assignment
This is an βοΈ Developing (Digging Deeper) - "Everyone Should Do, To Stretch" Assignment
This is an π Aspiring (Putting It Together)Β - "When you have done the β Establishing andβοΈ Developing" Assignment
π Formative Quiz - π Review
π Quiz -π Mastery Path
π Summative Quiz -βοΈ Skills Mastery Check
Quiz - verify that they are all listed as a "Formative", "Mastery Path", or "Summative"Β
π Formative Quiz - These are quizzes that the students can take a few times. I have them either set for unlimited times, or 3-5 times, where the final score is their average. The idea is that these Formative Quizzes are designed for students to learn and master a skill.Β while I want them to ger 100%, and when it's set to unlimited tries, the student should get 100% eventually.Β When the quiz is set to 3-5 tries with an average, then they should be prepared and should take the quiz seriously. I set the quiz to not show the right answer, but I do let them see their wrong answer.Β I also put the explanation of the right and wrong answer in the right and wrong answer prompt for each question.Β That way they can see why they got the answer wrong and learn from that experience.Β Β
8.1.0.3.2.4 - Python - Ch 3 - Functions - Quiz #2 -Built-In Functions - π Formative Quiz
π Quiz -π Mastery Path - These Mastery path quizzes are to be presented after the student has had a chance to do some labs and some Formative quizzes. Β The goal is to let students have 2 chances to take this quiz, and take the average of the 2 attempts.Β Based on the average, they will be presented with a Canvas Mastery Path, where they will have an option for take additional quiz and assignments to help with remediation.Β This will get them ready to take the Summative Quizzes.
8.1.0.3.3.1 -Β Python - Ch 3 - Functions - Mastery Quiz #1 - π Quiz -π Mastery Path
π Summative Quiz -βοΈ Skills Mastery Check - These Mastery path quizzes are to be presented after the student has had a chance to do some labs and some Formative quizzes. Β The goal is to let students have 2 chances to take this quiz, and take the average of the 2 attempts. That will be their final module/subject topic grade.
8.1.0.3.3.1 -Β Python - Ch 3 - Functions - Skills Mastery Check Quiz #1 - π Summative Quiz -βοΈ Skills Mastery Check