What is ChatGPT? The world’s most popular AI chatbot explained

Generative AI vs conversational AI: What’s the difference?

generative vs conversational ai

In contrast, Generative AI focuses on generating original and creative content without direct user interaction. It exhibits a one-way content generation style and relies less on conversational data, considering a broader input range. Generative AI lacks contextual understanding, emphasizing statistical patterns.

generative vs conversational ai

Artificial intelligence (AI) changed the way humans interact with machines by offering benefits such as automating mundane tasks and generating content. AI has ushered in a new era of human-computer collaboration as businesses embrace this technology to improve processes and efficiency. Efforts to cast doubt on the integrity of the elections with decontextualized or false content ran rampant without AI-generated images, video, or audio added to the fray. But the subsequent addition of a new class of wholly fabricated “evidence” augments potential concerns.

As mentioned above, ChatGPT, like all language models, has limitations and can give nonsensical answers and incorrect information, so it’s important to double-check the answers it gives you. ChatGPT runs on a large language model (LLM) architecture created by OpenAI called the Generative Pre-trained Transformer (GPT). Since its launch, the free version of ChatGPT ran on a fine-tuned model in the GPT-3.5 series until May 2024, when OpenAI upgraded the model to GPT-4o. If your main concern is privacy, OpenAI has implemented several options to give users peace of mind that their data will not be used to train models.

The rise of generative AI also poses potential threats, including the spread of misinformation and the creation of deep fakes. As this technology becomes more sophisticated, ethicists warn that guidelines for its ethical use must be developed in parallel. There might be moments when you want more context into a topic that was identified in the summary. Good news is, everything is fully transcribed and linked to relevant parts of the recording. AI-generated keywords and topics also help you easily navigate to the point in the conversation so you can hear verbatim the full context of the conversation. There’s also time-stamped URLs that are generated that you can easily send to a colleague who has access to the recording to make sharing and viewing simpler for everyone.

Examples of Conversational AI

ChatGPT is a logical choice in this case due to its immense popularity as a generative AI app. As noted, an estimated one hundred million weekly active users are said to be utilizing ChatGPT. The customary means of achieving modern generative AI involves using a large language model or LLM as the key underpinning. Now that I’ve taken you through the fundamentals of life review therapy, we are ready to shift into AI mode.

Chatbots can effectively manage low to moderate volumes of straightforward queries. But when the volume increases, conversational AI becomes the superior choice. Its ability to learn and adapt means it can efficiently handle a large number of more complex interactions without compromising on quality or personalization.

Until recently, a dominant trend in generative AI has been scale, with larger models trained on ever-growing datasets achieving better and better results. You can now estimate how powerful a new, larger model will be based on how previous models, whether larger in size or trained on more data, have scaled. Scaling laws allow AI researchers to make reasoned guesses about how large models will perform before investing in the massive computing resources it takes to train them. Generative AI and large language models have been progressing at a dizzying pace, with new models, architectures, and innovations appearing almost daily. Autoencoders work by encoding unlabeled data into a compressed representation, and then decoding the data back into its original form.

For years, many businesses have relied on conversational AI in the form of chatbots to support their customer support teams and build stronger relationships with clients. But the technology is quickly developing beyond this use case and is set to take on an even greater presence in people’s everyday lives. NLU uses machine learning to discern context, differentiate between meanings, and understand human conversation. This is especially crucial when virtual agents have to escalate complex queries to a human agent.

By harnessing the power of generative AI, advanced analytics, and machine learning, Convin offers a comprehensive solution that transforms how businesses interact with their customers. Generative AI vs. conversational AI represents a pivotal shift in customer service and support, leveraging cutting-edge artificial intelligence to craft dynamic, context-specific consumer replies and solutions. Diverging from conventional AI that depends on pre-programmed answers, generative AI can generate original content, rendering it exceptionally suited for crafting personalized customer interactions.

Their work suggests that smaller, domain-specialized models may be the right choice when domain-specific performance is important. Zero- and few-shot learning dramatically lower the time it takes to build an AI solution, since minimal data gathering is required to get a result. But as powerful as zero- and few-shot learning are, they come with a few limitations. First, many generative models are sensitive to how their instructions are formatted, which has inspired a new AI discipline known as prompt-engineering. A good instruction prompt will deliver the desired results in one or two tries, but this often comes down to placing colons and carriage returns in the right place. A prompt that works beautifully on one model may not transfer to other models.

Microsoft is a major investor in OpenAI thanks to multiyear, multi-billion dollar investments. Elon Musk was an investor when OpenAI was first founded in 2015 but has since completely severed ties with the startup and created his own AI chatbot, Grok. OpenAI has also developed DALL-E 2 and DALL-E 3, popular AI image generators, and Whisper, an automatic speech recognition system. With a subscription to ChatGPT Plus, you can access GPT-4, GPT-4o mini or GPT-4o. Plus, users also have priority access to GPT-4o, even at capacity, while free users get booted down to GPT-4o mini. Since OpenAI discontinued DALL-E 2 in February 2024, the only way to access its most advanced AI image generator, DALL-E 3, through OpenAI’s offerings is via its chatbot.

Whether enhancing the capabilities of a contact center or enriching the overall customer experience, the decision must align with the company’s strategic goals, technical capabilities, and consumer expectations. The personalized response generation characteristic of generative AI customer support is rooted in analyzing each customer’s unique data and past interactions. This approach facilitates more customized support experiences, thereby elevating customer satisfaction levels. Generative AI models can be trained on a variety of large sets of data, usually sourced from the internet. By learning patterns from these data sets, generative models create unique content.

Conversational AI is primarily designed to facilitate human-like interactions, often used in chatbots, virtual assistants, and customer service tools to understand and respond to user queries in real-time. Generative AI, on the other hand, focuses on creating new content, whether it’s text, images, music, or other forms of data, by learning from existing patterns. While their core purposes differ, they can be integrated to enhance applications like chatbots, making them more dynamic and responsive.

Voice bots can struggle with fluctuating tone, pause and modulation on the user side. The result is garbled responses, dead air, cold handovers or poor customer satisfaction (CSAT) scores. Using both generative AI technology and conversational AI design, a unique and user-friendly solution that meets the needs of insurance clients. It’s no surprise to see growing adoption of conversational commerce among businesses and even government organizations since conversational commerce can reduce customer service costs by upwards of 30%.

Large language model (LLM)

For instance, your users can ask customer service chatbots about the weather, product details, or step-by-step recipe instructions. Another example would be AI-driven virtual assistants, which answer user queries with real-time information ranging from world facts to news updates. By using Natural Language Processing (NLP), it equips machines with the ability to engage in natural, contextually rich conversations. Conversational AI and chatbots or virtual assistants have found their niche in various sectors, from customer support to healthcare.

Voice-enabled interfaces have also witnessed a surge in adoption, with over 90% of adults actively using voice assistants in 2022. Moreover, Conversational AI plays a crucial role in language translation, facilitating real-time communication between individuals speaking different languages. By combining natural language processing, machine learning, and intelligent dialogue management, Conversational AI systems generate meaningful responses and continuously improve customer experiences. AI chatbot enables businesses to provide 24/7 support, automate tasks, and scale effortlessly. With further advancements, we can expect even more seamless and intuitive interactions, transforming the way we engage with technology. Conversational AI offers businesses numerous benefits, including enhanced customer experiences through 24/7 support, personalized interactions, and automation.

Mihup LLM currently supports 8 languages and is actively expanding its language offerings. Please note that we at The Dispatch hold ourselves, our work, and our commenters to a higher standard than other places on the internet. Because U.S. elections are managed at the state and county levels, low-level actors in some swing precincts or counties are catapulted to the national spotlight every four years. Since these actors are not well known to the public, targeted and personal AI-generated content can cause significant harm. Before the election, this type of fabricated content could take the form of a last-minute phone call by someone claiming to be election worker alerting voters to an issue at their polling place. Generative AI will also continue to factor into the election interference playbooks of hostile nations, including Iran and Russia.

Importantly, while foreign actors have used generative AI tools in their efforts, they appear to have had limited reach thus far. When I compare generative AI to a therapist, I am not suggesting the AI is sentient or even on a computational basis akin to a therapist. You might find of interest my analysis of doing data training of generative AI on actual transcripts of therapist-client dialogues, see the link here. You can foun additiona information about ai customer service and artificial intelligence and NLP. The AI pattern matches and then can string together words in a manner that somewhat uncannily resembles human interaction. They will usually try to steer you but allow you to move in whatever direction you are comfortable with.

The applications for this technology are growing every day, and we’re just starting to explore the possibilities. At IBM Research, we’re working to help our customers use generative models to write high-quality software code faster, discover new molecules, and train trustworthy conversational chatbots grounded on enterprise data. We’re even using generative AI to create synthetic data to build more robust and trustworthy AI models and to stand-in for real data protected by privacy and copyright laws.

Through our training process and human quality assurance, we guarantee that our AI will not misinform your customers. Our advanced AI is purpose-built with extensive training and a layer of human quality assurance. Since generative AI is trained on human creation, and creates based off of that art, it raises the question of intellectual property. In a 2023 MITRE-Harris Poll survey, 85% of adults supported a nationwide effort across government, industry, and academia to make artificial intelligence safe. Implementing conversational or generative AI for business is very labor intensive and requires knowledge, pre-built models, customization, and testing.

Delight your customers with great conversational experiences via QnABot, a generative AI chatbot – AWS Blog

Delight your customers with great conversational experiences via QnABot, a generative AI chatbot.

Posted: Thu, 15 Aug 2024 07:00:00 GMT [source]

Conversational artificial intelligence (AI) is a technology that makes software capable of understanding and responding to voice-based or text-based human conversations. Traditionally, human chat with software has been limited to preprogrammed inputs where users enter or speak predetermined commands. It can recognize all types of speech and text input, mimic human interactions, and understand and respond to queries in various languages. Organizations use conversational AI for various customer support use cases, so the software responds to customer queries in a personalized manner.

In this scenario, the goal of misleading or downright fabricated information is not to change voters’ minds, but rather to mobilize a subset of the most ardent supporters. The idea of people using generative AI to do life reviews has controversy, particularly if doing so without a human therapist, as I’ve mentioned several times here. What we don’t know is how many people are opting to avoid using a therapist and directly using generative AI on their https://chat.openai.com/ own to do life reviews. I say that because, with well over 100 million weekly users of ChatGPT and many millions more using other generative AI apps, it would seem likely that some modest percentage are using generative AI in this fashion. Even a tiny percentage amounts to a big number when you are considering the size of the user base. Perhaps you’ve used a generative AI app, such as the popular ones of ChatGPT, GPT-4o, Gemini, Bard, Claude, etc.

Deep Learning in Conversational AI

Enterprises across all sizes and industries, from the United States military to Coca-Cola, are prodigiously

experimenting with generative AI. Here is a small set of examples that demonstrate the technology’s broad

potential and rapid adoption. Individual roles will change, sometimes

significantly, so workers will need to learn new skills. Historically, however, big

technology changes, such as generative AI, have always added more (and higher-value) jobs to the economy

than they eliminate. Bixby is a digital assistant that takes advantage of the benefits of IoT-connected devices, enabling users to access smart devices quickly and do things like dim the lights, turn on the AC and change the channel. For even more convenience, Bixby offers a Quick Commands feature that allows users to tie a single phrase to a predetermined set of actions that Bixby performs upon hearing the phrase.

As businesses recognize their potential, we can expect a surge in AI-driven solutions that cater to diverse needs, from customer support to creative content generation. At its core, Conversational AI is designed to facilitate interactions that mirror natural human conversations, primarily through understanding and processing human language. Generative AI, on the other hand, focuses on autonomously creating new content, such as text, images, or music, by learning patterns from existing data. The last three letters in ChatGPT’s namesake stand for Generative Pre-trained Transformer (GPT), a family of large language models created by OpenAI that uses deep learning to generate human-like, conversational text. ChatGPT is an AI chatbot with advanced natural language processing (NLP) that allows you to have human-like conversations to complete various tasks.

The upgrade gave users GPT-4 level intelligence, the ability to get responses from the web, analyze data, chat about photos and documents, use GPTs, and access the GPT Store and Voice Mode. ZDNET’s recommendations are based on many hours of testing, research, and comparison shopping. We gather data from the best available sources, including vendor and retailer listings as well as other relevant and independent reviews sites. And we pore over customer reviews to find out what matters to real people who already own and use the products and services we’re assessing. As technology develops over time, experts believe conversational AI will be able to host emotional interactions with humans and even understand hand gestures. Businesses are also moving towards building a multi-bot experience to improve customer service.

The Trouble With User Surveys

It enables creative content generation, producing unique and customized outputs that enhance brand identity. With data analysis and simulation capabilities, Generative AI provides valuable insights for data-driven decision-making and accelerates prototyping and innovation. Its natural language processing and communication features enhance customer interactions, break language barriers, and improve customer support efficiency. Furthermore, a survey conducted in February 2023 revealed that Generative AI, specifically ChatGPT, has proven instrumental in achieving cost savings. By incorporating Generative AI models into chatbots and virtual assistants, businesses can offer more human-like and intelligent interactions.

According to the above study, they found that the adverse effects were of seemingly less significance. The conventional life review tends to encompass not only simple reflections about the past but also assessing what happened and looking toward the future as well. They are to contemplate mindfully the nature of their life and seek to learn lessons for moving ahead.

Generative AI vs. predictive AI: What’s the difference? – IBM

Generative AI vs. predictive AI: What’s the difference?.

Posted: Fri, 09 Aug 2024 07:00:00 GMT [source]

The marketing world was forever changed on November 30, 2022, when OpenAI released its conversational chatbot. By January 2023, it received about 13 million unique visitors daily, making it the fastest-growing consumer application. This development triggered the generative artificial intelligence boom, a seismic shift significantly impacting industries.

“Plain” autoencoders were used for a variety of purposes, including reconstructing corrupted or blurry images. Variational autoencoders added the critical ability to not just reconstruct data, but to output variations on the original data. The generative AI story started 80 years ago with the math of a teenage runaway and became a viral sensation

late last year with the release of ChatGPT. Innovation in generative AI is accelerating rapidly, as

businesses across all sizes and industries experiment with and invest in its capabilities. But along with

its abilities to greatly enhance work and life, generative AI brings great risks, ranging from job loss to,

if you believe the doomsayers, the potential for human extinction. What we know for sure is that the genie

is out of the bottle—and it’s not going back in.

Machine learning (ML) is a foundational approach within artificial intelligence that enables computers to automatically learn, make decisions, and adapt. Machine learning typically requires human intervention (supervised learning) to curate its training datasets and refine its models. When comparing generative AI vs conversational AI, assessing their distinct use cases, strengths, and limitations is essential, especially if you have specific areas you want to integrate them into.

Artificial intelligence is primed to make work a lot easier, from how you connect with customers to how you interact with team members in meetings. And while these two terms look similar, they have very little in common beyond the AI that powers them. Several research groups have shown that smaller models trained on more domain-specific data can often outperform larger, general-purpose models. Researchers at Stanford, for example, trained a relatively small model, PubMedGPT 2.75B, on biomedical abstracts and found that it could answer medical questions significantly better than a generalist model the same size.

This style of training results in an AI system that can output what humans deem as high-quality conversational text. They are built out of blocks of encoders and decoders, an architecture that also underpins today’s large language models. Encoders compress a dataset into a dense representation, arranging similar data points closer together in an abstract space. Decoders sample from this space to create something new while preserving the dataset’s most important features. The best-known example of generative AI today is ChatGPT, which is capable of human-like conversations and

writing on a vast array of topics. Other examples include Midjourney and Dall-E, which create images, and a

multitude of other tools that can generate text, images, video, and sound.

What is ChatGPT used for?

In conclusion, there are transformative changes happening in software development with conversational AI vs generative AI. With their ability to enhance creativity, engagement, personalization, and prototyping, these technologies are shaping the future of AI copilots. The core objective of this methodology is to expedite the coding process, thereby streamlining project completion timelines and workload demands.

You can easily add new data sources through the Enterprise Bot UI, which accepts everything from a single web page, an entire website, or specific formats via Confluence, Topdesk, and Sharepoint. In many cases, we’re dealing with sensitive data and personally identifiable information (PII) at every stage in the pipe. You’ll want to ensure you have the tools to monitor and audit access to this data. The right side of the image demonstrates poor chunking, because actions are separated from their “Do” or “Don’t” context. This level of detail not only enhances the accuracy of the information provided but also increases the transparency and credibility of AI-generated responses. For content scraped from web pages, this usually means at least removing extra CSS and JavaScript code, but also identifying repeated uninteresting elements like headers, footers, sidebars, and adverts.

generative vs conversational ai

Conversational AI models undergo training with extensive sets of human dialogues to comprehend and produce patterns of conversational language. The application of conversational AI extends to information gathering, expediting responses, and enhancing the capabilities of agents. Conversational AI is an advanced AI that enables natural two-way communication between humans and software applications like chatbots, voice bots and virtual agents. It leverages natural language processing (NLP) to interpret human input (text and voice), sentiment analysis to detect the underlying sentiment and natural language generation (NLG) to generate a human-sounding output. Conversational AI is a type of artificial intelligence (AI) that can mimic natural human language.

  • It generates valuable data-driven insights, enabling businesses to understand customer preferences and optimize their offerings.
  • Rosemin Anderson has extensive experience in the luxury sector, with her skills ranging across PR, copywriting, marketing, social media management, and journalism.
  • Organizations use conversational AI for various customer support use cases, so the software responds to customer queries in a personalized manner.
  • For businesses, conversational AI is often a chatbot or a virtual assistant.
  • Moreover, the global market for Conversational AI is projected to witness remarkable growth, with estimates indicating that it will soar to a staggering $32.62 billion by the year 2030.
  • Businesses must invest resources, time, labor, and expertise in order to implement an AI model successfully—or risk disastrous results.

It aims to provide a more human experience to users through chatbots or voice bots that can not only understand human speech and language but can also produce natural responses. Conversational AI and Generative AI differ across various aspects, including their purpose, interaction style, evaluation metrics, and other characteristics. Conversational AI is designed for interactive, human-like conversations, mimicking dialogue-based interactions. It heavily relies on conversational data and aims to maintain context over conversations. Its evaluation metrics include relevance, satisfaction, and conversation flow. Conversational AI offers flexibility in accommodating language, style, and user preferences, generating contextually relevant text-based responses.

Previously, people gathered and labeled data to train one model on a specific task. With transformers, you could train one model on a massive amount of data and then adapt it to multiple tasks by fine-tuning it on a small amount of labeled task-specific data. Generative models have been used for years in statistics to analyze numerical data. The rise of deep learning, however, made it possible to extend them to images, speech, and other complex data types.

In transactional scenarios, conversational AI facilitates tasks that involve any transaction. For instance, customers can use AI chatbots to place orders on ecommerce platforms, book tickets, or make reservations. Some financial institutions employ AI-powered chatbots to allow users to check account balances, transfer money, or pay bills. You can use conversational AI tools to collect essential user details or feedback. For instance, you can create more humanlike interactions during an onboarding process.

It’s a useful triage tool for giving quick-win customers what they need, and passing along more complex queries or complaints to a human counterpart. Artificial intelligence (AI) is a digital technology that allows computer systems to mimic human intelligence. It is able to complete reasoning, decision-making and problem-solving tasks, using information it has learned from deep data troves. Powered by algorithms, AI is able to Chat GPT take on many of the everyday, common tasks humans are able to do naturally, potentially with greater accuracy and speed. We get a conversational AI chatbot with generative AI capabilities, trained on trillions of data and topics, understands your questions and generates responses as text, video, music, or picture. While conversational AI and generative AI may work together, they have distinct differences and capabilities.

Conversational AI takes customer interaction to the next level by using advanced technologies such as natural language processing (NLP) and machine learning (ML). These systems can understand, process, and respond generative vs conversational ai to a wide range of human inputs. Many businesses use chatbots to improve customer service and the overall customer experience. These bots are trained on company data, policy documents, and terms of service.

Conversational AI is characterized by its ability to think, comprehend, process, and answer human language in a natural manner like human conversation. At the other end, generative AI is defined as the ability to create content autonomously such as crafting original content for art, music, and texts. This fully digital insurance brand launched a GenAI powered conversational chatbot to assist customers with FAQs and insurance claims. The chatbot character, Pavle, conveyed the brand’s unique style, tone of voice, and humor that made the chatbot not only helpful but humanly engaging for users.

Dialogflow helps companies build their own enterprise chatbots for web, social media and voice assistants. The platform’s machine learning system implements natural language understanding in order to recognize a user’s intent and extract important information such as times, dates and numbers. Conversational AI has emerged as a groundbreaking technology that enables machines to engage in natural language conversations with humans. By leveraging advancements in natural language processing (NLP), machine learning, and speech recognition, Conversational AI systems have revolutionized the way we interact with technology.

Like ChatGPT, Claude can generate text in response to prompts and questions, holding conversations with users. If the prompt is text-based, the AI will use natural language understanding, a subset of natural language processing, to analyze the meaning of the prompt and derive its intention. If the prompt is speech-based, it will use a combination of automated speech recognition and natural language understanding to analyze the input. The AWS Solutions Library make it easy to set up chatbots and virtual assistants.

Nonetheless, the odds are relatively high that you will get roughly similar responses from all the major generative AI apps such as GPT-4, Gemini, Bard, Claude, etc. I suppose that we all from time to time think about how our life is coming along. It can be both a happy face and a sad face to contemplate where you’ve been.

Convin is an AI-backed contact center software that uses conversation intelligence to record, transcribe, and analyze customer conversations. Generative AI is transforming contact centers by enhancing customer service and support through key advancements. For businesses looking to streamline customer engagement with AI, Verse offers all of the benefits of conversational AI while overcoming common challenges.

Since its introduction on the iPhone, Siri has become available on other Apple devices, including the iPad, Apple Watch, AirPods, Mac and AppleTV. Users can also command Siri to regulate home devices with HomePod and have it complete tasks while on the go with Apple CarPlay. Once they are built, these chatbots and voice assistants can be implemented anywhere, from contact centers to websites. Code generators may use code that is copyrighted and publicly available by mixing a few lines to generate a code snippet. Most of the time, code generated by ChatGPT may look perfect but not able to pass test cases and increase debugging time for developers. Code generation tools are a culmination of years of technological evolution.

In essence, deep learning is a method, while generative AI is an application of that method among others. Organizations can create foundation models as a base for the AI systems to perform multiple tasks. Foundation models are AI neural networks or machine learning models that have been trained on large quantities of data. They can perform many tasks, such as text translation, content creation and image analysis because of their generality and adaptability. Our technology enables you to craft chatbots with ease using Telnyx API tools, allowing you to automate customer service while maintaining quality. For businesses looking to provide seamless, real-time interactions, Telnyx Voice AI leverages conversational AI to reduce response times, improve customer satisfaction, and boost operational efficiency.

You see, many are not aware that there is an official form of psychological therapy known as life review. Some refer to it as life review therapy, others just shorten the phrase to life review. If your business wants to boost the level of engagement and enhance customer communication, one good solution is the use of a chatbot. If you want to delight your customers with high-quality conversational automation without having to worry about any of the challenges of building your own, book your demo to find out how we can help you achieve your goals. Once you’re scraped and pre-processed all of your data, it’s time to index it.

In this manner, it enables AI to create content that looks so real that the discriminator does not catch it, leading to high-quality, very realistic outputs. Generative adversarial networks (GANs) are used in generative AI to help create content that looks as real as possible. While both are highly useful and popular subsets of artificial intelligence (AI), they employ very different techniques, have differentiated use cases, and pose unique challenges. Artificial Intelligence (AI) has two (2) types that change how we interact with machines and the world around us. Generative AI and conversational AI have garnered immense attention and have found their indelible presence across various industries.

AI cheapfakes and deepfakes have also been deployed to create the appearance of support from high-profile public figures, such as pop icon Taylor Swift. Yet many of these fakes have been rapidly debunked by journalists and a civil society on high alert. Since a life review includes assessment and evaluation, you might find those words of value if you proceed to undertake a life review. People can sometimes get stuck during a life review and feel as though this day or that day wasn’t accomplishing what they had hoped. In addition, the therapist could flip the script, a prompting technique that I describe at the link here. In that manner, the therapist could experience what it is like to undertake a life review.

A major debate is going on in society about the possible risks of generative AI. Extremists on opposite sides

of the debate have said that the technology may ultimately lead to human extinction, on one side, or save

the world, on the other. But it took a decade longer than the first generation of enthusiasts anticipated,

during which time necessary infrastructure was built or invented and people adapted their behavior to the

new medium’s possibilities. ChatGPT is the tool that became a viral sensation, but a multitude of generative AI tools are available for

each modality. For example, just for writing there is Jasper, Lex, AI-Writer, Writer, and many others. In

image generation, Midjourney, Stable Diffusion, and Dall-E appear to be the most popular today.

How it works – in one sentenceGenerative AI uses algorithms trained on large datasets to learn patterns to create new content that mimics the style and characteristics of the original data. Brands all over the world are looking for ways to include AI in their day-to-day and in customer interactions. Generative AI and conversational AI have specifically dominated the conversation for B2C interactions – but we should dive a bit deeper into what they are, how brands can leverage them, and when. Let’s breakdown the differences between conversational AI and generative AI, and how they can work together to create better experiences for your customers. Don’t miss out on the opportunity to see how Generative AI chatbots can revolutionize your customer support and boost your company’s efficiency.