🔵 CHAPTER 1: UNDERSTANDING ARTIFICIAL INTELLIGENCE
👉 What is Artificial Intelligence?
The term Artificial Intelligence (AI) was given by John McCarthy in 1956.
According to him:
“AI is the science and engineering of making intelligent machines.”
📌 Simple meaning:
AI is a technology that allows machines to:
- Think
- Learn
- Analyse
- Make decisions
similar to human beings.
Examples around you:
- Google Assistant answering questions
- Amazon recommending products
- Cars warning about obstacles
- Face recognition in phones
🔵 Why is AI so popular today?
Earlier computers were slow, expensive, and stored small amounts of data.
But today we have:
✔ Ultra-fast processors
✔ Very large storage (Exabytes)
✔ High-speed data transfer (5G/6G, fibre optics)
✔ Ability to collect and store huge data
These advancements allow machines to learn effectively.
🔵 AI IN DAILY LIFE – DETAILED APPLICATIONS
AI is used in almost every industry.
1️⃣ Education & Training
AI is revolutionising teaching-learning.
Uses include:
- Predicting student performance
- Smart assessments
- Identifying weak students
- Robot-assisted teaching
- Adaptive learning content (changes as per learner level)
- Voice-enabled learning using NLP
2️⃣ E-Commerce (Amazon, Flipkart, Walmart)
AI uses huge customer data to:
- Recommend products
- Analyse user interests
- Detect fraud orders
- Track deliveries
- Manage advertisements
- Improve customer service
Example:
When you see shoes online, the site shows similar products → This is AI.
3️⃣ Social Media & Entertainment
AI is used for:
- Automatic subtitles
- Language translation
- Editing videos
- Detecting hate speech
- Tracking content trends
4️⃣ Smart Emails
Gmail uses AI to:
- Sort emails into categories (Primary, Social, Promotions)
- Block spam
- Suggest quick replies
- Auto-complete sentences (“Smart Compose”)
5️⃣ Smart Chatbots & Voice Assistants
Examples: Alexa, Siri, Google Assistant
They use NLP to:
- Understand your voice
- Convert it into machine-readable data
- Produce human-like responses
6️⃣ Futuristic AI
- AI Nanobots for detecting hidden diseases
- Intelligent prosthetics for disabled persons
- Self-driving cars
- Fraud detection systems
🔵 CHAPTER 2: DOMAINS OF ARTIFICIAL INTELLIGENCE
AI works mainly in three domains:
1️⃣ DATA DOMAIN (Brain of AI)
Data is the foundation of AI.
More data → Better predictions.
Example:
To predict sales of a mobile phone → AI uses previous years’ sale data, reviews, ratings, returns, etc.
Data helps AI identify patterns, trends, and relationships.
2️⃣ COMPUTER VISION (CV)
CV helps machines understand images & videos.
Uses:
- Face recognition
- CCTV surveillance
- Barcode/QR code scanning
- Photo-based search
How CV works:
Machine is trained with thousands of images → learns patterns → detects them in future.
3️⃣ NATURAL LANGUAGE PROCESSING (NLP)
NLP enables computers to understand human language (speech or text).
It involves:
- Natural Language Understanding (NLU)
→ Understanding meaning - Natural Language Generation (NLG)
→ Machine generates human-like speech/text
Uses:
- Google Translate
- IVR systems
- Chatbots
- Voice typing
🔵 CHAPTER 3: AI PROJECT CYCLE (VERY IMPORTANT)
There are 5 major stages of the AI project cycle.
1️⃣ Problem Scoping
Identify and define the problem clearly.
Use the “4W Framework”:
- Who → Stakeholders
- What → Problem
- Where → Context
- Why → Purpose
Example (Library Problem from PDF):
Students take too long to find books → Create AI-based recommendation system.
2️⃣ Data Acquisition
Collecting relevant, useful, and quality data.
Features of good data:
✔ Relevant
✔ Accurate
✔ Up-to-date
✔ Large Volume
✔ Rich (variety)
Sources of Data:
- Databases
- Webpages
- Sensors
- CCTV
- Forms & surveys
- Web scraping
Methods to acquire data:
- Export from databases
- Scanning using OCR
- Direct live feed (CCTV, sensors)
- API
3️⃣ Data Exploration
Cleaning, organising, and understanding data.
Activities include:
- Handling missing values
- Removing duplicates
- Formatting data
- Feature engineering (extracting useful info)
- Data visualisation (graphs)
Charts Used:
- Bar chart (comparison)
- Line chart (trends)
- Pie chart (distribution)
- Histogram (ranges)
4️⃣ Modelling
Building/choosing a model to make predictions.
Two approaches:
A. Rule-based Approach
- Uses IF–ELSE statements
- Does not learn
- Limited intelligence
B. Learning-based Approach (ML & DL)
- Learns from data
- Handles complex tasks
Decision Tree (Important Model)
Structure contains:
- Root Node (starting question)
- Decision Node (yes/no branches)
- Leaf Node (final result)
5️⃣ Evaluation
Evaluates how well the model performs using Confusion Matrix.
Confusion Matrix Terms
✔ True Positive (TP) – Predicted Yes & Actually Yes
✔ True Negative (TN) – Predicted No & Actually No
✔ False Positive (FP) – Predicted Yes but Actually No
✔ False Negative (FN) – Predicted No but Actually Yes
After successful evaluation → Model can be deployed as:
- Software application
- Web service
- Mobile app
- Robotics system
🔵 CHAPTER 4: DATA (TYPES, FORMATS, FEATURES)
👉 What is Data?
Data = raw facts that have no meaning unless arranged.
Example: “Raj, 16, 9, A”
Meaningful only when arranged → Raj is 16 years old, Class 9A.
Data Types:
- Character (A, #, @)
- String/Text (“India”)
- Numbers (10, 20, -1)
Complex Data Types:
- Audio
- Video
- Images (JPG/PNG)
- 3D models
Data Formats:
- Dates
- Decimals
- Uppercase/lowercase
🔵 CHAPTER 5: EVALUATION & MODEL DEPLOYMENT
After modelling, testing is done using testing data.
If the model performs well → deploy it.
Forms of Deployment:
- Mobile app
- Full software
- Web service
- Part of robotics system
🔵 CHAPTER 6: AI ETHICS
Ethics = moral principles.
Why ethical AI?
AI is powerful → can cause harm if misused.
Challenges:
1. Accountability:
Who is responsible if AI harms someone?
2. Bias & Transparency:
AI may show discrimination if training data was biased.
3. Pre-existing Bias:
Data collected from society already contains bias.
4. Technical Bias:
Errors due to incorrect algorithms or insufficient data.
5. Emergent Bias:
Bias occurs during real usage (e.g., app difficult for elderly).
6. Security & Privacy:
AI systems may be hacked; data may be stolen.