Open In App

Differences between Conversational AI and Generative AI

Last Updated : 17 Jan, 2024
Summarize
Comments
Improve
Suggest changes
Like Article
Like
Save
Share
Report
News Follow

Artificial intelligence has evolved significantly in the past few years, making day-to-day tasks easy and efficient. Conversational AI and Generative AI are the two subsets of artificial intelligence that rapidly advancing the field of AI and have become prominent and transformative. Both technologies make use of machine learning and natural language processing to serve distinct purposes and work on different principles. These technologies, though distinct in their applications and principles, both leverage the power of machine learning(ML) and natural language processing(NLP) to transform various industries.

In this article, let us explore what is Generative and conversational AI and how they work, and also let us compare generative AI and conversational AI by focusing on their respective abilities and features.

Conversational-AI-Vs-Generative-AI
Conversational AI and Generative AI

What is Conversational AI?

Conversational AI refers to technologies that enable machines to understand, process, and engage in human language naturally and intuitively. The primary goal of Conversational AI is to facilitate effective communication between humans and computers. This technology is often embodied in chatbots, virtual assistants (like Siri and Alexa), and customer service bots. It focuses on interpreting user inputs, understanding context, managing dialogue, and providing appropriate responses.

What is Generative AI?

Generative AI, on the other hand, is primarily concerned with creating new content. This AI subset can generate text, images, audio, and video that did not previously exist, drawing on learning from vast datasets. It is known for its ability to produce creative and original content, which can include writing poems, composing music, creating art, or even developing realistic simulations. Generative AI models, such as GPT (Generative Pre-trained Transformer) and DALL-E, are prime examples of this technology.

You can refer to our existing article - What is Generative AI?

How does Generative AI work?

The Generative AI works on complex algorithms and neural network architectures, like Generative Adversarial Networks (GANs) and Transformers. These models are trained on large datasets, from which they learn patterns, styles, and structures. The AI then uses this training to generate new content that mimics the learned material. For example, a Generative AI trained on cat images to generate new image of cat in a similar style. Let's understand working of Generative AI in detail.

  1. Learning of Data: In Generative AI the first step is to learn from large amount of datasets for which AI is designed to generate such as code, text, images, code or all of these. For Example, ChatGPT 3.5 that is trained to generate any type of text content, code, and many more but it cannot generate images whereas ChatGPT 4 is trained to generate images also according to the instruction given by user.
  2. Understanding Patterns: After the training of AI with the large sets of data. It became capable to understand the pattern and rules inherent in that data. The AI identifies these patterns using algorithms. For example, if we trained AI with the images of cat it will learn the pattern how their eyes, hairs, ears, nose, etc. look like or it can be anything we can train AI to recognize the text in the images, speech etc.
  3. Creating New Content: After understanding the patterns, Generative AI can able to start creating new content. The AI can generate new pieces that is similar to original data but unique using the patterns it got learned. For example, an AI trained on pop music can compose a new piece that sounds like it was written by a pop music composer, even though it is entirely original.
  4. Refinement and Variation: Refinement is also a part of Generative AI. It generate multiple variations, evaluate them, and then refine the generated data based on the feedback. For example, AI generated a music there is a need of pitch variation then AI refine it based on the goals and feedback.
  5. Generative Models: Generative Models are crucial part of Generative AI and It used specific types of machine learning models. One common type is the Generative Adversarial Network (GAN). In a GAN, two neural networks – a generator and a discriminator – work against each other. The generator creates new content, and the discriminator evaluates it. Over time, this adversarial process leads to increasingly sophisticated and convincing creations.

How does Conversational AI work?

Conversational AI works by making use of natural language processing (NLP) and machine learning. Firstly it trained to understanding human language through speech recognition and text interpretation. The system then analyzes the intent and context of the user's message, formulates an appropriate response, and delivers it in a conversational manner. Let's break down the working of Conversational AI.

  1. Listening and Understanding: This is the first step in conversational AI. It recognize the human text and speech by using the natural language processing to grasp their meaning and intent.
  2. Analyzing Context: In this step conversational AI analyses the context which is like the background story which helps to figuring out what's being said. The AI analyze the current and past conversations to understand the context.
  3. Crafting a Response: After analysing the context now AI is ready to reply and give response to the human. It trained on large data set to give response and also learn from the past conversations using which it has to create new response.
  4. Dialogue Management: It refers to keeping the flow of conversation smoothly like two friends talking to each other and here is Conversational AI is different from a normal chatbot.
  5. Continuous Learning: As we know that AI is the technology that improve itself by learning continuously so, it also keep learning based on the interactions with humans. It learn the different ways of people speak, the kinds of questions they ask, and how to provide helpful answers.

Differences between Conversational AI and Generative AI

These both AI’s are two main components of artificial intelligence. While these both AI’s are part of artificial intelligence but have different properties and attributes and these both work differently. Both have very different approaches to work and are used to serve different purposes. Conversational AI and Generative AI varies in many ways and the major difference is that Conversational AI is used to make the interaction between machine and human as similar to communication between two humans where as Generative AI is used to generate the new content such as ideas, images and videos. Many application use both of these which includes Google Bard and ChatGPT.

Conversational AI

Generative AI

It aims to communicate with humans same as human communicate with each other.

It aims to generate new things like content, creative ideas, images and more using its past learning through a data set.

Conversational AI relies heavily on dialogue management and contextual understanding.

Generative AI is more about creative generation, often using complex models like GANs and transformers

Conversational AI typically trained on conversational datasets.

Generative AI is trained on a diverse array of content in the domain it aims to generate.

Conversational AI is predominantly used in customer service, personal assistants, and accessibility tools

Generative AI finds its use in creative fields, content creation, and even in simulations and predictive models.

This AI is mostly focused on the natural conversation and hence is trained like that.

This AI is mainly focused on creating new content whether it is in any form like image, audio, animation, or video format.

Conclusion

Conversational AI and Generative AI, while overlapping in their use of AI and NLP, serve distinct roles in the AI field. Conversational AI excels in simulating human-like conversations and improving interactions between machine and humans, making technology more accessible and user-friendly. Generative AI, meanwhile, pushes the boundaries of creativity and innovation, generating new content and ideas. Understanding these differences is crucial for leveraging their respective strengths in various applications.

FAQs on Conversational AI vs Generative AI

Q. What are the main uses of Conversational AI?

Conversational AI is mainly used in virtual assistants, customer service automation, and chatbots.

Q. Can Generative AI create entirely new content?

Yes, Generative AI can create entirely new content, whether it will be text, images, music, or other forms of media.

Q. Is Conversational AI limited to text-based interactions?

No, Conversational AI can also encompass voice-based interactions, as seen in smart speakers and voice-activated assistants.

Q. Can Generative AI be used in business applications?

Yes, businesses use Generative AI for a range of applications, including marketing content creation, product design, and data modeling.

Q. How does Conversational AI understand context?

Conversational AI uses natural language understanding and context tracking to maintain coherent and relevant dialogues.


Similar Reads

Generative AI vs. Discriminative AI: Understanding the Key Differences
Generative AI and Discriminative AI are two basic frameworks in machine learning where the main aims and procedures are significantly different. Generative AI models are designed to produce new instances that were never seen during training but belong to the same distribution as the training data. There are such applications as image generation and
7 min read
AI Conversational System - Attack Surface Areas and Effective Defense Techniques
Communication is the most critical thing in the world which ties the whole world together. There are various mediums of communication: voice, video, and text. Each medium brings its own benefits based on the context. Technology has made significant progress in providing interfaces using these mediums. These mediums are used for human-to-machine, hu
15 min read
Meet EVI: First Conversational AI With Emotional Intelligence
The world of artificial intelligence (AI) is constantly growing, pushing the boundaries of what machines can do. In a new development, Hume AI has introduced EVI (Empathic Voice Interface), the first conversational AI designed with emotional intelligence. This new technology means a major step forward in human-computer interaction, paving the way f
6 min read
ChatGPT vs Grok AI – The War of Conversational AI Titans
The world of artificial intelligence is witnessing a fascinating duel. In one corner stands ChatGPT, the veteran champion powered by OpenAI's GPT-3 technology. Conversely, the challenger, Grok AI, boasts a unique approach and promises to redefine how we interact with machines. Both are titans in conversational AI, and this blog gets into their figh
9 min read
10 Best Chatbot Development Platforms for Conversational AI
Chatbots have become integral to enhancing customer interaction and automating routine tasks across various industries. With advancements in artificial intelligence and natural language processing, chatbot development platforms have evolved, offering robust features and tools. This article explores the 10 Best Chatbot Development Platforms for Conv
9 min read
What is Conversational AI?
Conversational AI is artificial intelligence that enables computers to understand, process, and produce human understandable language. In this article, we will learn about Conversational AI and its working. We will also understand the advantages and challenges associated with it. What is Conversational AI?Conversational AI is often used in the form
4 min read
Building Conversational AI Agents with LLMs
Conversational agents, or chatbots, have become integral to various applications, from customer service to virtual assistants. The advent of advanced language models (LLMs) like GPT-4 has significantly enhanced the capabilities of these agents, making them more intuitive, context-aware, and engaging. In this article, we'll explore how to build effe
5 min read
The Future of Conversational AI: Beyond Chatbots
Conversational AI has evolved significantly from its early iterations of rule-based chatbots to sophisticated systems capable of nuanced, human-like interactions. The future of conversational AI is poised to go beyond these foundational chatbots, leveraging advanced generative AI to create more natural and intelligent virtual assistants. Table of C
6 min read
The Difference Between Generative and Discriminative Machine Learning Algorithms
Machine learning algorithms allow computers to learn from data and make predictions or judgments, machine learning algorithms have revolutionized a number of sectors. Generic and discriminative algorithms are two essential strategies with various applications in the field of machine learning. We will examine the core distinctions between generative
6 min read
What is the difference between Generative and Discriminative algorithm?
Answer: Generative algorithms model the joint probability distribution of input features and target labels, while discriminative algorithms directly learn the decision boundary between classes.Generative algorithms focus on modeling the joint probability distribution of both input features and target labels. By capturing statistical dependencies wi
2 min read
Difference Between Generative AI and Traditional AI
In the fast-paced world of technology, artificial intelligence (AI) remains at the forefront of transformative innovations. While AI is often presented as a singular concept, it encompasses a variety of branches, each with distinct methodologies and implications. Among these, traditional AI and generative AI stand out as fundamentally divergent pat
5 min read
Wasserstein Generative Adversarial Networks (WGANs) Convergence and Optimization
Wasserstein Generative Adversarial Network (WGANs) is a modification of Deep Learning GAN with few changes in the algorithm. GAN, or Generative Adversarial Network, is a way to build an accurate generative model. This network was introduced by Martin Arjovsky, Soumith Chintala, and Léon Bottou in 2017. It is widely used to generate realistic images
9 min read
Exploring Generative Models: Applications, Examples, and Key Concepts
A generative model is a type of machine learning model that aims to learn underlying patterns or distributions of data to generate new, similar data. This is used in unsupervised machine learning to describe phenomena in data, enabling computers to understand the real world. In this article, we will discuss some applications and examples of generat
9 min read
Generative Models in AI: A Comprehensive Comparison of GANs and VAEs
The world of artificial intelligence has witnessed a significant surge in the development of generative models, which have revolutionized the way we approach tasks like image and video generation, data augmentation, and more. Among the most popular and widely used generative models are Generative Adversarial Networks (GANs) and Variational Autoenco
11 min read
Roles of Generative AI in Drug is Discovery: Advantages, Case Studies and Examples
Drug discovery is a complex and costly process, often taking years and billions of dollars to bring a new drug to market. Traditional methods involve extensive experimentation and testing, which can be both time-consuming and inefficient. Enter generative AI—a revolutionary technology that has the potential to transform the landscape of drug discov
10 min read
Generative AI and Virtual Reality: Creating Immersive Worlds
In recent years, the convergence of Generative AI and Virtual Reality (VR) has opened up unprecedented possibilities for creating immersive worlds. This synergy is not merely enhancing how we experience digital environments but is fundamentally transforming the way these environments are conceived, designed, and interacted with. Let’s explore how t
5 min read
How Generative AI is transforming Media and Journalism
Generative AI, a subset of artificial intelligence that can create content from patterns and data, is revolutionizing various industries. Traditional media and journalism are particularly affected by this technological advancement, as it influences how news is produced, distributed, and consumed. This article explores the multifaceted impact of gen
6 min read
How LearnLM and Generative AI are Transforming Education
In the realm of artificial intelligence, generative models have emerged as groundbreaking tools that reshape how we interact with information. Among these innovations, LearnLM stands out as a transformative application designed to harness the power of generative AI to expand curiosity and deepen understanding. This article delves into how LearnLM u
5 min read
Pandas AI: The Generative AI Python Library
In the age of AI, many of our tasks have been automated especially after the launch of ChatGPT. One such tool that uses the power of ChatGPT to ease data manipulation task in Python is PandasAI. It leverages the power of ChatGPT to generate Python code and executes it. The output of the generated code is returned. Pandas AI helps performing tasks i
9 min read
What is so special about Generative Adversarial Network (GAN)
Fans are ecstatic for a variety of reasons, including the fact that GANs were the first generative algorithms to produce convincingly good results, as well as the fact that they have opened up many new research directions. In the last several years, GANs are considered to be the most prominent machine learning research, and since then, GANs have re
5 min read
Meta debuts Generative AI features for Advertisers
Meta Platforms (META) which owns Instagram, Facebook, and WhatsApp is set to make its generative AI tools available to all advertisers on its platforms, enabling them to craft personalized ads by customizing both images and text to effectively reach their target audiences. This initiative comes as an effort to enhance the advertising experience for
3 min read
Google announces new generative AI search capabilities for doctors
Google announces new generative AI search capabilities for doctorsGoogle Cloud announced AI-powered search tools on Monday to quickly retrieve verified healthcare data from medical records. Leveling up to a more advanced level in the healthcare industry, Google Cloud is all set to launch its new feature in Vertex AI Search at HLTH'23. This new AI-g
5 min read
What Is Samsung Gauss? The Latest Generative AI Rival
Samsung's raid into the world of generative AI has raised the bar for smartphone intelligence. With Gauss, their groundbreaking AI model, Samsung aims to revolutionize the industry by prioritizing privacy and efficiency through on-device processing. Gauss, named after the esteemed mathematician Carl Friedrich Gauss, is Samsung's response to the inc
6 min read
Conditional Generative Adversarial Network
Imagine a situation where you can generate images of cats that match your ideal vision or a landscape that adheres to a specific artistic style. CGANs is a neural network that enables the generation of data that aligns with specific properties, which can be class labels, textual descriptions, or other traits, by harnessing the power of conditions.
13 min read
What is Language Revitalization in Generative AI?
Imagine a world where ancient tongues, on the brink of fading into silence, are reborn. Where stories whispered through generations find a digital echo and cultural knowledge carried in every syllable is amplified across the internet. This is the promise of language revitalization in generative AI, a revolutionary field that seeks to leverage the p
7 min read
10 Best Generative AI Tools to Refine Your Content Strategy
Many of us struggle with content creation and strategy. We're good at the creative, artful side, like writing compelling stories. But the analytical, strategic part is harder. Even when we do get strategic, we spend lots of time on keyword research, topic selection, and tracking performance. AI content tools can give you an advantage on the science
9 min read
5 Top Generative AI Design Tools in 2024 [Free & Paid]
Are you ready to level up your design game? Gone are the days when designers had to sit and design creatives from scratch. With the rise of artificial intelligence and its integration with different domains, you can save a lot of time and still come up with quality output. You can use these tools in generating base designs and even assist the whole
9 min read
What is Generative AI?
Nowadays as we all know the power of Artificial Intelligence is developing day by day, and after the introduction of Generative AI is taking creativity to the next level Generative AI is a subset of Deep learning that is again a part of Artificial Intelligence.  In this article, we will explore,  What is Generative AI? Examples, Definition, Models
12 min read
7 Best Generative AI Tools for Developers [2024]
In the rapidly evolving world of technology, generative Artificial intelligence (AI) tools for developers have become indispensable assets for innovation and efficiency. These cutting-edge tools harness the power of advanced algorithms and machine learning techniques to autonomously generate content, designs, and code, transforming the development
9 min read
Generative Modeling in TensorFlow
Generative modeling is the process of learning the underlying structure of a dataset to generate new samples that mimic the distribution of the original data. The article aims to provide a comprehensive overview of generative modelling along with the implementation leveraging the TensorFlow framework. Table of Content What are generative models and
14 min read
three90RightbarBannerImg