What's included
8 pre-recorded lessons
average 27 mins per video8 weeks
of teacher support3 hrs 33 mins
total video learning hours1 year access
to the contentAssignments
1-2 hours per week. includedProjects
7 or more throughout the classGrading
includedClass Experience
US Grade 7 - 12
Beginner Level
This introduction to artificial intelligence, machine learning, and data science allows learners to start exploring the foundations of these exciting fields. Learners will complete 3 projects using Python code and the same tools used by professionals in the field. Learners will start learning about the types of machine learning including supervised learning, unsupervised learning, and reinforcement learning. Then we will learn about the steps of successful machine learning projects. These steps include data collection, data preparation, model training, accuracy determination, and model improvement. ****This is a coding-class using real code and the same tools used by professional AI and Machine Learning engineers. Please, review the coding requirements listed at the end of this description or the parental guidance section.**** Class Syllabus Week 1 What is Intelligence? What is AI? AI in Our World The History of AI What is Machine Learning? Artificial Intelligence vs. Machine Learning vs. Data Science Google Colab Introduction Python Review - Conditional Statements, Functions, Lists Week 2 3 Types of Machine Learning Jupyter Notebook Introduction Machine Learning Model - Decision Trees Machine Learning Project #1 - Favorite Music Prediction What Problems can AI Solve? Python Review - Loops, Advanced Lists Week 3 Introduction to Matplotlib Data Sciene Project #2 - Matplotlib Graphs NumPy Introduction Pandas Introduction Pandas DataFrames Matplotlib Graphing Projects and Challenges Week 4 Data Science Project #2 - Height/ Weight Comparison Why use NumPy Working with Data Python Data Science and People Six Steps of Every Machine Learning Project Numpy Practice Questions Week 5 Data and AI Supervised vs. Unsupervised Learning Supervised Learning Algorithm- Linear Regression Machine Learning Project #2 - Hours Studied Introduction to Mean Absolute Error, Mean Squared Error Potential problems with AI Data Coding Skills: A Good Coder is a Good Searcher Week 6 What is Scikit-learn? Supervised Learning Algorithm - Nearest Neighbor Machine Learning Project #3 - Iris Data Set Supervised Learning Algorithm - Decision Trees Test and Training Data Review Week 7 Introduction to Neural Networks MNIST Handwriting Data Set Review Machine Learning Concepts Start Neural Network Project Introduction to Seaborn Visualization Library Week 8 Supervised Learning Project #4 - Neural Network Scaling Data Loss and Determining Accuracy Test and Training Data Careers in Machine Learning and AI Next Steps Interactive Groups Build the Foundation of Code Skills Every learner is strongly encouraged to post questions, sample code, and their projects every step of the way. This gives students the chance to learn from each other and start practicing reading code. The instructor will also be providing feedback and guidance regularly throughout the course. ***Required Coding Knowledge**** Learners should have an excellent understanding of the foundations of coding, including conditional statements, functions, loops, arrays/lists. Learners should have completed comprehensive beginner level coding classes before starting this course. Any programming language is fine, such as Python, Java, JavaScript, C / C++, or Swift. There will be a brief review during the first few classes using Python.
Syllabus
8 Units
8 Lessons
over 8 WeeksUnit 1: Introduction to AI And Machine Learning
Lesson 1:
Introduction to AI and Machine Learning
This week introduces students to the core concepts of Artificial Intelligence and its impact on our world. Students will explore the history of AI and learn the distinction between AI, Machine Learning, and Data Science. The week concludes with a review of essential Python programming concepts.
1 assignment
31 mins of video lessons
Unit 2: Machine Learning Introduction and Music Perdiction Project
Lesson 2:
Music Prediction Project
Students will dive into the three main types of Machine Learning and get hands-on experience with decision trees. They'll work on their first Machine Learning project to predict favorite music.
1 assignment
38 mins of video lessons
Unit 3: Python Data Science Libraries
Lesson 3:
Data Visualization and Python Libraries
This week focuses on essential data science libraries: Matplotlib, NumPy, and Pandas. Students will learn to create various types of graphs and charts to visualize data effectively. They'll also gain experience working with structured data using Pandas DataFrames.
1 assignment
34 mins of video lessons
Unit 4: Graphing and Six Steps of Every Machine Learning Project
Lesson 4:
Numpy, Pandas, and Six Steps of Every Machine Learning Library
Students will deepen their understanding of NumPy and explore its advantages in data manipulation. They'll learn about the ethical considerations of data science and AI, and understand the six key steps in every Machine Learning project. The week includes a practical data science project comparing height and weight data.
1 assignment
42 mins of video lessons
Other Details
Parental Guidance
Learners will use Google Colab during this class and will need a Google Account to access Colab. Students will also utilize the following Python libraries, including Scikit-learn, NumPy, Matplotlib, and Pandas throughout the class. The documentation (instructions) for these libraries will be used as a reference throughout the course. UC Irvine ML Repository will be used for practice datasets throughout the class. Python.org will be used a Python reference sources throughout the class.
***Intro to AI and ML Class Prerequisites ****
To succeed in this class, learners should have a strong grasp of coding fundamentals
including conditional statements, functions, loops, and arrays/lists. Learners should have completed comprehensive multi-week beginner level coding classes before starting this course. Any programming language is fine, such as Python, Java, JavaScript, C / C++, or Swift. There will be a brief review during the first few classes using Python. There are many excellent beginner Python courses available through Outschool.
Pre-Requisites
Learners should have an excellent understanding of the foundations of coding, including conditional statements, functions, loops, arrays/lists.
Supply List
Learners will use Google Colab during this class and will need a Google Account to access Colab. Students will also utilize the following Python libraries, including Scikit-learn, NumPy, Matplotlib, and Pandas throughout the class. The documentation (instructions) for these libraries will be used as a reference throughout the course. UC Irvine ML Repository will be used for practice datasets throughout the class. Python.org will be used a Python reference sources throughout the class. ***Intro to AI and ML Class Prerequisites **** To succeed in this class, learners should have a strong grasp of coding fundamentals including conditional statements, functions, loops, and arrays/lists. Learners should have completed comprehensive multi-week beginner level coding classes before starting this course. Any programming language is fine, such as Python, Java, JavaScript, C / C++, or Swift. There will be a brief review during the first few classes using Python. There are many excellent beginner Python courses available through Outschool.
Teacher expertise and credentials
Bachelor's Degree from Mount St. Mary's University
Over 5,000 students from nearly 100 countries across a variety of platforms have started coding in one of my classes. I offer classes covering the foundations of Python and AI. I am the author of the soon-to-be released book All About Python for Kids. Before teaching, I worked as a software developer for nearly 10 years. I've worked for organizations including Apple, Dell, and Best Buy. I believe the best way to learn is by doing and all my classes are based around hands-on projects that progressively build in difficulty. I'm a graduate of Mount St. Mary's University in Emmitsburg, Maryland. I can't wait to meet your learner in the class and get started soon.
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Self-Paced Course
$16
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8 weeks of teacher support
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Ages: 12-18