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EverythingYou NeedtoKnowAbout
ChatGPT
ChatGPT is an AI chatbot developed by
OpenAI that is designed to provide human-
like conversational interactions. It is built on
large language models (LLMs), which are
advanced machine learning models that
can understand and generate natural
language.
• The history of ChatGPT starts in 2018, when OpenAI first
introduced its GPT language model. This model was capable of
generating human-like responses to questions and
conversations, inspiring the creation of ChatGPT.
• OpenAI officially launched ChatGPT in November 2022 and it
was an instant hit. Building upon the success of GPT-3.5,
OpenAI introduced GPT-4, an iteration that brought notable
enhancements in ChatGPT’s performance, scalability, and
overall capabilities.
• It is the largest, most powerful language model ever created,
with 175 billion parameters and the ability to process billions of
words in a single second.
• As an AI-powered natural language processing tool, ChatGPT is
capable of understanding and generating text based on the
prompts you give it. It has a wide range of applications, from
answering your questions to helping you draft content,
translate languages, and more.
5
• However, on the flip side, some serious concerns are doing the
rounds over the potential misuse of ChatGPT. It can lead to
spreading misinformation or even creating content that is
convincing enough but still fake. OpenAI has already
implemented measures to limit such possibilities. For instance,
human moderators have been put in place to review potentially
sensitive content
6
The foundation of ChatGPT is the GPT (Generative Pre-trained
Transformer) architecture, and the acronym highlights the key
characteristics of this AI model
• Generative: GPT models are capable of generating new
content based on the patterns and context they have learned
from the training data.
• Pre-trained: The models are pre-trained on vast amounts of
text data from diverse sources, allowing them to learn a wide
range of linguistic patterns, grammar, facts, and context.
7
• Transformer: GPT models are built on the Transformer
architecture, a neural network model designed for natural
language processing tasks. The Transformer architecture
employs self-attention mechanisms and parallel processing to
efficiently handle large-scale language tasks and generate
contextually accurate text
8
ChatGPT uses a transformer-based neural network architecture to
generate consistent and contextually relevant responses
The model is typically trained on large amounts of text that allows
the bot to learn the statistical patterns of language, such as
grammar, syntax, and semantics, which are generally used by
humans while communicating.
How does ChatGPT work?
When the user interacts over the chat interface, text input is initially
tokenized into a series of numerical vectors that the model can
interpret. These vectors are then processed via multiple layers of
neurons to generate a probability distribution function, which
determines the next set of possible words. The word with the highest
probability is chosen and used as the starting point to generate the
next word. This process continues until a complete response is
generated.
9
LLM (Large Language Model)
A computer algorithm that processes natural
language inputs and predicts the next word
based on what it’s already seen. Then it predicts
the next word, and the next word, and so on
until its answer is complete.
10
A neural network is a software solution that leverages machine learning
(ML) algorithms to ‘mimic’ the operations of a human brain.
What Is a Neural Network?
11
• The architecture of a neural network comprises node layers that
are distributed across an input layer, single or multiple hidden
layers, and an output layer. Nodes are ‘artificial neurons’ linked to
each other and are associated with a particular weight and
threshold.
• Neural networks are capable of classifying and clustering data at
high speeds
• Additionally, traditional computers operate using logic functions
based on a specific set of calculations and rules. Conversely,
neural computers can process logic functions and raw inputs
such as images, videos, and voice.
12
Four critical steps that neural networks take to operate
effectively are:
1. Associating
2. Classification
3. Clustering
4. Prediction
13
1)Language
understanding
and generation
Characteristics of ChatGPT
2) Contextual
understanding
3) vocabulary 4) Multilingual features
5) Creative offerings
6) Self-improvement abilities
14
Generating Text: ChatGPT is capable of producing text that has a human-like
appearance. This can be put to use for a variety of tasks, including writing and
the production of information
Create A Virtual Assistant or a Chatbot: We can integrate ChatGPT with our
chatbot or VA and even customize it according to our needs.
Text Summarizing
Language Translation, Dialogue Generation
Generate Reports
Implement an Automated Customer Service System
How does the ChatGPT Tool accomplish its goals?
15
• Web scraping: Web scraping involves extracting data from
websites by using automated tools. The chatbot scans the web
for relevant information and stores it in its database.
• User feedback: ChatGPT also uses user feedback to improve its
responses. When a user interacts with the chatbot, they can rate
their responses.
• Knowledge databases: Knowledge databases are created by
experts in various fields and provide detailed information on
specific topics
Where Does ChatGPT Get it’s Data?
16
• Social media: This allows ChatGPT to provide users with real-
time information on trending topics.
• Open data sources: ChatGPT also uses open data sources to
gather information on various topics. Open data sources are
publicly available datasets that provide information on specific
topics.
17
• Clearly Define Your Goal
• Use Specific and Clear Language
• Provide Context
• Experiment with Different Inputs
• Provide Feedback
• Aware of what you feeding into the chat
How to use ChatGPT effectively?
18
Pros
• Improved natural language
understanding
• Faster response time
• Abiltiy to generate more natural-
sounding conversation
• Enhance work in various industries,
marketing, programming, research,
and more
Pros and Cons of using chat GPT
Cons
• Difficulty in training models to
respond appropriately to a wide
range of topics.
• Potential bias from data used to
train the models
• Lack of academic integrity and
potential for providing inaccurate
information
Let’s
Innovate
Together
www.expeed.com

More Related Content

Everything You Need To Know About ChatGPT

  • 2. ChatGPT is an AI chatbot developed by OpenAI that is designed to provide human- like conversational interactions. It is built on large language models (LLMs), which are advanced machine learning models that can understand and generate natural language.
  • 3. • The history of ChatGPT starts in 2018, when OpenAI first introduced its GPT language model. This model was capable of generating human-like responses to questions and conversations, inspiring the creation of ChatGPT. • OpenAI officially launched ChatGPT in November 2022 and it was an instant hit. Building upon the success of GPT-3.5, OpenAI introduced GPT-4, an iteration that brought notable enhancements in ChatGPT’s performance, scalability, and overall capabilities.
  • 4. • It is the largest, most powerful language model ever created, with 175 billion parameters and the ability to process billions of words in a single second. • As an AI-powered natural language processing tool, ChatGPT is capable of understanding and generating text based on the prompts you give it. It has a wide range of applications, from answering your questions to helping you draft content, translate languages, and more.
  • 5. 5 • However, on the flip side, some serious concerns are doing the rounds over the potential misuse of ChatGPT. It can lead to spreading misinformation or even creating content that is convincing enough but still fake. OpenAI has already implemented measures to limit such possibilities. For instance, human moderators have been put in place to review potentially sensitive content
  • 6. 6 The foundation of ChatGPT is the GPT (Generative Pre-trained Transformer) architecture, and the acronym highlights the key characteristics of this AI model • Generative: GPT models are capable of generating new content based on the patterns and context they have learned from the training data. • Pre-trained: The models are pre-trained on vast amounts of text data from diverse sources, allowing them to learn a wide range of linguistic patterns, grammar, facts, and context.
  • 7. 7 • Transformer: GPT models are built on the Transformer architecture, a neural network model designed for natural language processing tasks. The Transformer architecture employs self-attention mechanisms and parallel processing to efficiently handle large-scale language tasks and generate contextually accurate text
  • 8. 8 ChatGPT uses a transformer-based neural network architecture to generate consistent and contextually relevant responses The model is typically trained on large amounts of text that allows the bot to learn the statistical patterns of language, such as grammar, syntax, and semantics, which are generally used by humans while communicating. How does ChatGPT work? When the user interacts over the chat interface, text input is initially tokenized into a series of numerical vectors that the model can interpret. These vectors are then processed via multiple layers of neurons to generate a probability distribution function, which determines the next set of possible words. The word with the highest probability is chosen and used as the starting point to generate the next word. This process continues until a complete response is generated.
  • 9. 9 LLM (Large Language Model) A computer algorithm that processes natural language inputs and predicts the next word based on what it’s already seen. Then it predicts the next word, and the next word, and so on until its answer is complete.
  • 10. 10 A neural network is a software solution that leverages machine learning (ML) algorithms to ‘mimic’ the operations of a human brain. What Is a Neural Network?
  • 11. 11 • The architecture of a neural network comprises node layers that are distributed across an input layer, single or multiple hidden layers, and an output layer. Nodes are ‘artificial neurons’ linked to each other and are associated with a particular weight and threshold. • Neural networks are capable of classifying and clustering data at high speeds • Additionally, traditional computers operate using logic functions based on a specific set of calculations and rules. Conversely, neural computers can process logic functions and raw inputs such as images, videos, and voice.
  • 12. 12 Four critical steps that neural networks take to operate effectively are: 1. Associating 2. Classification 3. Clustering 4. Prediction
  • 13. 13 1)Language understanding and generation Characteristics of ChatGPT 2) Contextual understanding 3) vocabulary 4) Multilingual features 5) Creative offerings 6) Self-improvement abilities
  • 14. 14 Generating Text: ChatGPT is capable of producing text that has a human-like appearance. This can be put to use for a variety of tasks, including writing and the production of information Create A Virtual Assistant or a Chatbot: We can integrate ChatGPT with our chatbot or VA and even customize it according to our needs. Text Summarizing Language Translation, Dialogue Generation Generate Reports Implement an Automated Customer Service System How does the ChatGPT Tool accomplish its goals?
  • 15. 15 • Web scraping: Web scraping involves extracting data from websites by using automated tools. The chatbot scans the web for relevant information and stores it in its database. • User feedback: ChatGPT also uses user feedback to improve its responses. When a user interacts with the chatbot, they can rate their responses. • Knowledge databases: Knowledge databases are created by experts in various fields and provide detailed information on specific topics Where Does ChatGPT Get it’s Data?
  • 16. 16 • Social media: This allows ChatGPT to provide users with real- time information on trending topics. • Open data sources: ChatGPT also uses open data sources to gather information on various topics. Open data sources are publicly available datasets that provide information on specific topics.
  • 17. 17 • Clearly Define Your Goal • Use Specific and Clear Language • Provide Context • Experiment with Different Inputs • Provide Feedback • Aware of what you feeding into the chat How to use ChatGPT effectively?
  • 18. 18 Pros • Improved natural language understanding • Faster response time • Abiltiy to generate more natural- sounding conversation • Enhance work in various industries, marketing, programming, research, and more Pros and Cons of using chat GPT Cons • Difficulty in training models to respond appropriately to a wide range of topics. • Potential bias from data used to train the models • Lack of academic integrity and potential for providing inaccurate information