Class 9 AI Glossary of Important Terms | Artificial Intelligence Dictionary

Class 9 AI Glossary of Important Terms

Understanding important terms is essential for learning Artificial Intelligence. This glossary provides simple explanations of important AI concepts covered in the CBSE Class 9 Artificial Intelligence syllabus.

Students can use this dictionary for:

  • Quick revision
  • Exam preparation
  • Understanding AI concepts
  • Learning technical vocabulary

A – Artificial Intelligence Terms

Artificial Intelligence (AI)

Artificial Intelligence is a technology that enables machines to perform tasks that normally require human intelligence.

Examples:

  • Voice assistants
  • Chatbots
  • Recommendation systems

Algorithm

An algorithm is a step-by-step set of instructions used to solve a problem or complete a task.

Example:

A recipe can be considered an algorithm because it contains steps to prepare food.


AI Bias

AI bias occurs when an AI system produces unfair results due to problems in data or system design.

Example:

A model giving unfair predictions because training data was incomplete.


AI Ethics

AI Ethics refers to principles that guide the responsible development and use of Artificial Intelligence.

Important principles:

  • Fairness
  • Privacy
  • Transparency
  • Accountability

AI Model

An AI model is a system trained using data to identify patterns and make predictions.


B – AI Terms

Bias

Bias means an unfair preference or judgement.

In AI, bias can affect the fairness of results.


Boolean

A data type that has two values:

  • True
  • False

Used in programming decisions.


C – AI Terms

Computer Vision

Computer Vision is an AI domain that enables computers to understand images and videos.

Applications:

  • Face recognition
  • Object detection
  • Medical image analysis

Code

A set of instructions written in a programming language to perform tasks.

Example:

Python code.


Classification

The process of placing data into different categories.

Example:

Classifying emails as spam or not spam.


D – AI Terms

Data

Data is a collection of facts and information used by AI systems.

Examples:

  • Numbers
  • Text
  • Images
  • Audio

Data Acquisition

The process of collecting data required for an AI project.

Sources:

  • Surveys
  • Sensors
  • Databases

Data Exploration

The process of analyzing collected data to understand patterns and information.


Dataset

A collection of related data used for analysis or training AI models.


Data Visualization

Representing data using charts, graphs, and tables.

Examples:

  • Bar graph
  • Line graph
  • Pie chart

E – AI Terms

Evaluation

The final stage of the AI Project Cycle where the performance of an AI model is checked.


Ethics

Principles that define what is right and responsible.


F – AI Terms

Fairness

An AI principle that ensures systems do not produce unfair or discriminatory results.


Feature

A measurable property or characteristic of data used by AI models.

Example:

Age or height in a dataset.


G – AI Terms

Generative AI

A type of AI that creates new content such as:

  • Text
  • Images
  • Audio
  • Code

Green Skills

Skills related to protecting the environment and promoting sustainable practices.


I – AI Terms

ICT

ICT stands for Information and Communication Technology.

It includes:

  • Computers
  • Internet
  • Digital tools

Input

Information provided to a computer or AI system for processing.

Example:

A user’s question given to a chatbot.


L – AI Terms

Loop

A programming structure used to repeat instructions.

Example:

Repeating a task multiple times.


M – AI Terms

Machine Learning

A branch of AI where computers learn patterns from data and improve performance.


Mean

A statistical value calculated by:

Sum of values ÷ Number of values


Median

The middle value of a data set arranged in order.


Mode

The value that occurs most frequently in a dataset.


Modelling

The stage of AI Project Cycle where an AI model is created.


N – AI Terms

Natural Language Processing (NLP)

An AI domain that helps computers understand and process human language.

Applications:

  • Translation
  • Chatbots
  • Voice assistants

O – AI Terms

Output

The result produced by a computer program or AI system.

Example:

A prediction generated by an AI model.


P – AI Terms

Probability

A measure of the possibility of an event occurring.

Formula:

Probability = Favorable outcomes ÷ Total outcomes


Problem Scoping

The first stage of AI Project Cycle where the problem is identified and defined.


Prompt

An instruction or question given to a Generative AI system.

Example:

“Write a summary about Artificial Intelligence.”


Python

A popular programming language used in:

  • Artificial Intelligence
  • Data Science
  • Software Development

R – AI Terms

Renewable Energy

Energy obtained from natural sources that can be renewed.

Examples:

  • Solar energy
  • Wind energy

S – AI Terms

Structured Data

Data organized in a fixed format, usually tables.

Example:

Student database.


Sustainable Development

Development that meets current needs while protecting resources for future generations.


T – AI Terms

Training Data

Data used to teach an AI model and help it learn patterns.


Transparency

An AI principle that means decisions made by AI should be understandable.


U – AI Terms

Unstructured Data

Data without a fixed format.

Examples:

  • Images
  • Videos
  • Audio files

V – AI Terms

Variable

A name used in programming to store a value.

Example:

name = "AI"

Quick Revision Table

TermMeaning
AIMachines performing intelligent tasks
AlgorithmStep-by-step instructions
DataInformation used by AI
ModelSystem trained using data
NLPUnderstanding human language
Computer VisionUnderstanding images/videos
PromptInstruction given to AI
PythonProgramming language
BiasUnfair AI result
EthicsResponsible AI use

How to Use This Glossary for Exams

Students should:

✓ Learn definitions in simple words
✓ Remember examples of each term
✓ Practice writing short answers
✓ Revise before examinations
✓ Use terms correctly in AI project explanations


Summary

The Class 9 AI glossary helps students understand important Artificial Intelligence vocabulary required for CBSE AI Code 417. Learning these terms makes it easier to understand AI concepts, write better answers, and prepare effectively for examinations.