Artificial Intelligence (AI) is one of the fastest-growing technologies in the world. To prepare students for future careers, the Assam State School Education Board (ASSEB) has introduced Artificial Intelligence (AI Assistant) as a vocational skill subject for Class XI.
This syllabus helps students learn AI concepts from the basics to practical implementation using Python, Machine Learning, Data Analysis, AI Ethics, and real-world AI applications. The course follows the NSQF Level 4 framework and includes theory, practicals, projects, and case studies.
Course Overview
Board: Assam State School Education Board (ASSEB)
Class: XI
Subject: Artificial Intelligence
Job Role: AI Assistant
Course Level: NSQF Level 4
Academic Session: 2025–2026 Onwards
Total Marks: 100
Theory: 50 Marks
Practical: 50 Marks
Objectives of the Course
The main objective of this course is to provide students with a strong foundation in Artificial Intelligence.
Students will learn:
Introduction to Artificial Intelligence
History and evolution of AI
AI applications in different industries
AI paradigms
Programming using Python
Mathematics required for AI
Data Collection and Data Analysis
Machine Learning
Data Visualization
AI Ethics
Real-world AI projects and case studies
By the end of the course, students will be able to build simple AI models, analyze data, understand AI ethics, and solve real-life problems using Artificial Intelligence.
Learning Outcomes
After completing this syllabus, students will be able to:
Understand the basic concepts of Artificial Intelligence.
Explain AI applications in different industries.
Develop Python programming skills.
Apply mathematical concepts in AI.
Work with datasets and perform data analysis.
Build simple Machine Learning models.
Create data visualizations.
Understand ethical issues in AI.
Develop practical AI projects using Python.
Marks Distribution
Part A – Employability Skills (10 Marks)
Part B – Subject Specific Skills (40 Marks)
Part C – Practical Work (50 Marks)
Complete Unit-wise Syllabus
Unit 1: Introduction to Artificial Intelligence
Students will study:
What is Artificial Intelligence?
History of AI
Applications of AI
Career opportunities in AI
Practical
Research and present a real-life AI application such as Chatbots or Facial Recognition.
Unit 2: AI Paradigms
Topics include:
Evolution of AI
Symbolic AI
Neuro-Symbolic AI
Machine Learning
Practical
Compare rule-based systems with learning-based systems.
Unit 3: Mathematics for AI
Students will learn:
Linear Algebra
Statistics
Probability
Calculus
Practical
Solve AI-related mathematical problems.
Unit 4: Programming for AI
Topics covered:
Python Programming
Jupyter Notebook
Google Colab
Kaggle
Variables
Loops
Functions
File Handling
Python Libraries:
Random
Math
NumPy
Pandas
Matplotlib
Practical
Write Python programs using Jupyter Notebook.
Perform statistical analysis using Python libraries.
Unit 5: Machine Learning Paradigms
Students will study:
Introduction to Machine Learning
Supervised Learning
Unsupervised Learning
Reinforcement Learning
Machine Learning Workflow
Practical
Run Machine Learning programs using Scikit-Learn.
Unit 6: Data Collection and Exploration
Topics include:
Types of Data
Data Formats
Data Collection
Data Cleaning
Data Wrangling
Data Exploration
Practical
Clean datasets
Perform Exploratory Data Analysis
Create graphs using Matplotlib.
Unit 7: Supervised Learning Algorithms
Topics include:
Linear Regression
Support Vector Machine (SVM)
K-Nearest Neighbors (KNN)
Cross Validation
Overfitting
Regularization
Performance Metrics
Practical
Build Linear Regression models.
Perform KNN Classification.
Unit 8: Unsupervised Learning Algorithms
Topics include:
K-Means Clustering
Principal Component Analysis (PCA)
Practical
Perform K-Means Clustering.
Apply Principal Component Analysis on datasets.
Unit 9: Storytelling with Data
Students will learn:
Data Storytelling
Understanding Audience
Creating Data Narratives
Visualization Principles
Practical
Create dashboards using Python for data visualization.
Unit 10: AI Ethics
Topics include:
Introduction to AI Ethics
Ethical Principles
AI Regulations
AI Governance
Practical
Analyze AI systems and discuss ethical considerations.
Unit 11: Case Studies & Project
Case Studies
Students will explore AI applications in:
Computer Vision
Natural Language Processing (NLP)
Time Series Analysis
Future AI Trends
Final Project
Develop a complete AI project in Python based on the concepts learned throughout the course.
Why Students Should Choose Artificial Intelligence?
Artificial Intelligence is becoming an essential skill for future careers. This course introduces students to modern AI technologies while building practical programming and analytical skills. Students gain experience in Python, Machine Learning, Data Science, and AI Ethics, making them better prepared for higher education and future employment in the technology sector.
Final Words
The ASSEB Class 11 Artificial Intelligence Syllabus provides a perfect blend of theory and practical learning. From Python programming to Machine Learning, Data Analysis, AI Ethics, and real-world projects, the syllabus equips students with the knowledge and skills required to begin their journey in Artificial Intelligence.
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