Being-Creative-with-AI/C2/Introduction to Generative AI/English

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Visual Cue Narration
Title Slide: Introduction to Generative AI Welcome to this Spoken Tutorial on Introduction to Generative AI.
Slide 2

Learning Objective

Bulleted list

In this tutorial, you will learn about Generative AI and Predictive AI.

Differences between Predictive AI and Generative AI.

Some important Generative AI terms.

Disclaimer Content Slide As AI tools constantly evolve, if you are unable to locate any icon or encounter difficulty at any step, you may use any conversational AI Chatbot for guidance.
Slide 3

System Requirements

Graphic: Laptop, browser, internet icons

To practice this tutorial, you will need:

A computer, a laptop, or a smartphone.

A stable internet connection.

An updated web browser, such as Chrome, Edge, or Firefox.

No coding knowledge is needed.

Slide 4

Pre-requisite http://EduPyramids.org

For the Pre-requisites of this tutorial, visit the website shown on your screen.
In a previous tutorial, we saw how AI helps computers to think and act smart.

But have you ever wondered how AI makes all this happen?

Slide 5

Generative AI

Generative AI can do creative tasks that we thought only humans could do.
Text highlight: "Create new things" Generative AI, or GenAI, doesn't just analyze data but can also create new things.
Montage: AI-generated poem, painting, code snippet It can generate original content such as poems, images, music, code, and more.
Split screen: Spam filter vs AI painting Most AI we use daily is Predictive AI. Predictive AI classifies data and makes predictions.
Text on screen: "Predictive AI → What is this?" Predictive AI helps in understanding two things.

It can give answers to "What is this?" and "What may happen next?"

Predictive AI recognizes things and makes smart guesses about the future.

Spam filter animation For example, use of a spam filter in an email inbox.

Here, Predictive AI checks each email and decides whether it is spam or not.

Recommender system visual We use Predictive AI in many everyday apps.

Some of them are weather apps, movie apps, map apps, and photo apps.

Transition: Text "Generative AI → Create something new" On the other hand, Generative AI or GenAI, can create something new.

It creates them based on the knowledge it has learned earlier.

Astronaut riding horse (AI art) It can generate a unique image, like an astronaut riding a horse.
Poem generation example

Code snippet generation

It can also write a short poem or generate a working code.
Text highlight: "Predictive → classify / Generative → create" So remember this difference. Predictive AI classifies and predicts data, whereas GenAI creates examples.
Timeline animation → 2017 marker GenAI uses a model called Transformer.

Transformers process language in parallel, rather than word by word. This makes them faster, smarter, and more efficient.

Sentence visualization using a story analogy Transformers understand how words relate to each other, like we follow a story.
Side-by-side: before vs after Transformer This lets them generate well-structured, meaningful, human-like text. GenAI grew rapidly after Transformer architecture made a breakthrough in 2017.
Transition slide: "Core Terminology" Now, let's learn a few important GenAI terms.
Brain icon First, let's understand the term Model.

Think of the model as the "brain" of the AI system.

A model can be small and task-specific. It can also be large and for general purposes.

For example, ChatGPT is a model trained on large amounts of text.

Training animation Next term is Training. It means teaching the model to use a large amount of data.

The model is given numerous examples, including entire books and sample texts.

The model learns patterns from this data during training.

Prompt box + user typing Next term is Prompt. A prompt is the instruction you give to an AI model.

It tells the model what task it has to perform.

For example, "Write a story about a robot."

Text cum Visual tokens like puzzle pieces:

AI breaks your text into small pieces (tokens),

understands each piece,

and then puts the pieces together to form a meaningful response.

Next term is Tokens. AI models break the input into small pieces called tokens.

A token is a unit of data. It can be in any form, such as text, image, or audio.

The model reads, understands, and generates information token by token.

Think of tokens like puzzle pieces. AI first breaks the information into small pieces.

Next it understands each piece. Then it puts the pieces together to form a meaningful response.

LLM logo examples (GPT, Gemini, LLaMA) Next term is LLM. It stands for Large Language Model.

LLM is a powerful model trained on billions of text tokens.

For example: ChatGPT, Gemini, and LLaMA.

Model responding to prompt Next term is Inference. Inference is when the model takes a prompt and generates an output.

It's the stage where the model produces a response after it has been trained.

So, when you give a prompt, the model generates an output.

Summary Slide

Bulleted list

Let's summarize what we learnt:

Predictive AI is used to classify or predict.

Generative AI is used to create new content.

How to differentiate Predictive AI from Generative AI.

Some key terms used in Generative AI.

Assignment slide

Pick one Predictive AI example and one Generative AI example from your daily life.

Write down one line explaining why each fits its category.

Also, reflect on any risks or biases that may exist in your examples.

Here is an assignment.


Acknowledgement slides Thank you for watching!
Disclaimer slide


EduPyramids logo

This Spoken Tutorial is brought to you by

EduPyramids Educational Services Private Limited, SINE, IIT Bombay.

Contributors and Content Editors

Bellatony911, Madhulika, Madhurig, Misbah