Artificial Intelligence (AI)
School Level:
- Intro to AI: Basic concepts, history of AI, types of AI (narrow vs. general).
- Python Programming Basics: Required for AI development.
- Machine Learning Fundamentals: Introduction to supervised and unsupervised learning, simple algorithms like linear regression.
- Project-Based Learning: Simple AI projects like chatbot development or image recognition.
College Level:
- Advanced Python and Libraries: NumPy, Pandas, TensorFlow, PyTorch.
- Deep Learning: Neural networks, CNNs, RNNs, NLP.
- AI Ethics and Society: Discussion on AI’s impact on society, ethics in AI development.
- Capstone Project: Develop an AI application or research project, like predictive analytics or autonomous systems.
Data Science
School Level:
- Data Analysis Basics: Introduction to data, types of data, basic statistics.
- Excel for Data Analysis: Pivot tables, basic data visualization.
- Introduction to Programming for Data: Python or R basics.
- Mini-Projects: Analyze datasets like sports statistics or weather data.
College Level:
- Statistical Methods: Probability, regression, hypothesis testing.
- Data Manipulation: Advanced SQL, data cleaning with Python/Pandas.
- Machine Learning for Data Science: More complex models, feature engineering.
- Data Visualization: Tools like Tableau, Matplotlib, or Seaborn.
- Big Data: Introduction to Hadoop, Spark, or cloud platforms like AWS for data processing.
- Capstone: Real-world data analysis project, possibly in collaboration with local businesses.
Digital Marketing
School Level:
- Fundamentals of Marketing: Marketing mix, consumer behavior.
- Digital Marketing Basics: SEO, SEM, content marketing.
- Social Media Marketing: Platforms, strategies, analytics.
- Practical Workshops: Create campaigns for school events.
College Level:
- Advanced Digital Marketing Strategies: PPC, email marketing, affiliate marketing.
- Marketing Analytics: Using Google Analytics, social media metrics.
- Content Strategy: SEO for content, storytelling in marketing.
- E-commerce: Basics of setting up and running an online store.
- Digital Strategy Development: Case studies, strategic planning.
- Internship/Project: Work with local businesses or manage a digital campaign.
Web Designing
School Level:
- HTML & CSS Basics: Structure and style of web pages.
- Introduction to User Experience (UX): Basic principles of design and user interaction.
- Web Design Tools: Use of platforms like Wix or WordPress for no-code solutions.
- Project: Design a simple personal or school project website.
College Level:
- Advanced HTML5, CSS3, JavaScript: Responsive design, animations.
- User Interface (UI) Design: Figma, Adobe XD, or Sketch for wireframing and prototyping.
- Front-End Frameworks: Introduction to React, Vue.js, or similar for dynamic web apps.
- Back-End Basics: Node.js or Python for server-side scripting.
- UX Research: User personas, journey mapping, usability testing.
- Portfolio Development: Students build a professional web design portfolio.
- Capstone: Design and develop a comprehensive website or web application.
Cross-Curricular Elements:
- Interdisciplinary Projects: Combining elements from AI, data science, digital marketing, and web design for holistic projects.
- Soft Skills: Communication, project management, teamwork, especially in group projects.
- Ethics and Responsibility: Discussions on privacy, data security, and ethical considerations in technology use.
