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guideWhat is conversational AI? Your complete guide

This guide is here to cut through the jargon and break down everything you need to know about conversational artificial intelligence (conversational AI) — where it came from, how it’s built, what it’s used for, and how you can leverage it to supercharge your business. Keep reading below.

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lightbulb illustration to answer the question "what is conversational ai"

Imagine your ideal customer support — they’re available 24/7 and always equipped with the perfect response. This isn’t a distant fantasy — conversational artificial intelligence is here and ready to empower your team to deliver the best service possible. From GPS to Alexa, you’ve probably encountered some form of conversational AI without even realizing it. However, like most technology, it can be easy to adopt without really digging in to how it works.

Use this guide for a deeper understanding of how this technology can transform the customer experience.

History and trends

Conversational AI may feel like a relatively new technology — but there have been decades of development that have led us to where we are now. The evolution of conversational AI is signposted by significant advancements in technology and natural language processing. Here’s a look at how conversational AI has developed over time:

1960s – 1990s

Early chatbots

The roots of conversational AI can be traced back to the 1960s when ELIZA, a simple chatbot, was created at MIT. ELIZA used pattern matching to simulate human-like conversations. In the 1990s, more chatbots like ALICE and Jabberwacky emerged — although they had limited capabilities and relied on predefined scripts.

More about early chatbots

2000s

Rule-based systems

Conversational AI systems in the early 2000s were primarily rule-based, where developers manually programmed specific rules and responses. These systems lacked true understanding of language and struggled with handling complex conversations.

2010s

Machine learning & NLP

The 2010s saw a significant shift towards machine learning and natural language processing (NLP) in conversational AI. Companies like Apple (Siri), Google (Google Assistant), and Amazon (Alexa) introduced voice-activated virtual assistants that leveraged NLP to understand and respond to user queries. Chatbots evolved with the use of machine learning models, such as recurrent neural networks (RNNs) and later, transformer-based models like GPT (Generative Pre-trained Transformer).

2010s

Rise of chatbots

Businesses started using chatbots for customer support, lead generation, and more. These chatbots got smarter over time by learning from user interactions. Facebook Messenger, Slack, and other messaging platforms integrated chatbots for business and personal use, bringing conversational AI further into the mainstream.

2020s

OpenAI’s GPT-3 and beyond

In 2020, OpenAI released GPT-3, a massive transformer-based language model that demonstrated remarkable conversational abilities and the potential to generate human-like text. GPT-3 and similar models opened up new possibilities for chatbots and virtual assistants, enabling more natural and context-aware interactions. The use of generative models like GPT-3 expanded to various applications, including content generation, language translation, and more.

present

Multimodal AI

In the present day, conversational AI has evolved beyond text-based interactions to include voice, images, and videos. Multimodal models can process and generate content across multiple modalities. Technologies like chatbots, virtual assistants, and AI-driven customer support just keep getting better — they are now more capable of handling complex, human-like conversations.

What is conversational AI?

Conversational AI refers to a set of technologies and systems that allow humans and computers to interact with each other using natural language. It leverages artificial intelligence (AI), machine learning (ML), and natural language processing (NLP) to understand and generate human-like responses in text or speech. Conversational AI includes chatbots, virtual assistants, and other AI-driven systems capable of engaging in meaningful and context-aware conversations with people. See below for definitions of key terms:

Artificial intelligence (AI) is a field of computer science that aims to create computer systems capable of performing tasks that typically require human intelligence. These tasks include learning from data, making decisions, natural language understanding, and solving complex problems.

Machine learning is a subset of AI that enables computers to learn from data and improve its performance on specific tasks without being explicitly programmed. It involves algorithms that identify patterns and make predictions or decisions based on the information they’ve learned. Machine learning is used in a wide range of applications, from predicting customer behavior to recognizing speech and images.

Natural Language Processing (NLP) is a branch of AI that focuses on teaching computers to understand, interpret, and generate human language in a way that’s both meaningful and contextually relevant. In other words, this is the part that makes it feel human. It enables machines to read, listen to, and interact with text or human speech, making it possible for them to comprehend and respond to human conversation. NLP is what powers chatbots, virtual assistants, and language translation services, helping computers bridge the gap between human language and the digital world.

example of conversational AI tools using natural language understanding and processing to identify what consumers ask

Conversational AI vs. chatbots at a glance

Scope

Conversational AI: Broader term encompassing various AI-driven systems capable of natural language interactions across multiple modalities.

Chatbots: A subset of conversational AI, typically referring to rule-based or scripted systems designed for specific tasks.

Capabilities

Conversational AI: Includes advanced natural language processing (NLP), ML, context awareness, intent recognition, personalization, and more, providing human-like interactions.

Chatbots: Includes advanced NLP, ML, context awareness, intent recognition, personalization, and more, providing human-like interactions.

Learning & adaptation

Conversational AI: Learns and improves over time, adapting to user behavior and evolving language patterns.

Chatbots: Limited learning capabilities, primarily following predefined rules and scripts.

Complexity of conversations

Conversational AI: Handles complex, context-aware conversations with fluid interactions, suitable for various applications and domains.

Chatbots: Suitable for relatively simple and routine interactions, less suitable for nuanced or multifaceted conversations.

User experience

Conversational AI: Offers a more natural and engaging user experience with personalized responses.

Chatbots: Offers basic interactions and may struggle with understanding nuanced user inputs.

Use cases

Conversational AI: Versatile and applicable to a wide range of industries.

Chatbots: Suited for specific use cases like customer support, FAQs, and task automation.

How does conversational AI work?

You ask a question and the robot responds — simple, right? While it looks like a breeze on the surface, there are processes at play making sure you get the most accurate and natural-sounding answers possible. Below is a step-by-step breakdown of how conversational AI works.

When you interact with a conversational AI system, your input — which can be in the form of text or speech —  is analyzed by the AI. This analysis involves breaking down your prompt into meaningful components like words, phrases, and context.

Next, the AI needs to use this information to figure out what you actually want — the intent, purpose, or goal behind your prompt. This customer intent recognition involves identifying the specific task or query you want to accomplish.

Conversational AI systems are smart — they maintain context throughout the conversation, remembering previous interactions and your preferences. This context is vital for providing relevant and coherent responses.

Based on the recognized intent and context, the AI generates a response for you. This response can be in the form of text, speech, or even actions (e.g., sending an email, setting a reminder).

The response is presented to you, and the conversation continues. At this stage, you can provide feedback, ask follow-up questions, or make new requests, and the AI adapts its responses accordingly.

Much like an eager student thirsty for knowledge, conversational AI tools always take the opportunity to grow. These AI systems often incorporate machine learning algorithms that learn from user interactions. Over time, they improve their understanding, response quality, and adaptability to user behavior and language patterns.

example of LivePerson intent recognition, highlighting phrases that are processed for conversational AI

Benefits of conversational AI solutions

Conversational AI has changed the game for a wide range of industries, offering boundless benefits for both businesses and users. Here’s a non-exhausted list of some of the main advantages of implementing conversational AI into your business:

Improved customer service

Enhanced 24/7 support: Conversational AI can provide round-the-clock customer assistance, improving availability and responsiveness.

Fast resolution: AI chatbots and virtual assistants can address common customer queries and issues efficiently, reducing wait times.

Scalability

Conversation volume: Conversational AI systems can manage a high volume of concurrent interactions without a proportional increase in resources.

Consistency: AI maintains consistent quality of service, ensuring that all customers receive the same level of assistance.

Cost efficiency

Reduced labor costs: Automation of routine tasks and customer interactions can lead to significant savings in labor expenses.

Resource allocation: Businesses can allocate human agents to handle more complex and valuable tasks while AI handles repetitive inquiries.

Enhanced user experience

Personalization: Conversational AI can analyze user data to provide personalized recommendations and responses.

Convenience: Users can engage in natural language conversations, making interactions more user-friendly and intuitive.

Increased engagement

Marketing and sales: Chatbots can engage potential customers, answer product-related questions, and guide users through the sales funnel.

Interactive content: Conversational AI can be used to create interactive and engaging content for websites and apps.

Data collection & analysis

Customer insights: Conversational AI systems can gather valuable data on user preferences, behaviors, and pain points, aiding in decision-making and product/service improvement.

Real-time feedback: Businesses can receive immediate feedback and adapt their strategies based on user interactions.

Efficient task automation

Streamlined processes: Conversational AI can automate various tasks, such as appointment scheduling, order tracking, and data entry.

Integration with existing systems: It can be seamlessly integrated with other software and systems, improving workflow efficiency.

multi-languages understood by voice AI technology and LLMs

Multilingual & multimodal capabilities

Language support: Many conversational AI systems are capable of interacting in multiple languages, broadening their reach.

Multimodal support: They can process text, voice, images, and videos, enabling versatile applications.

Cost-effective training & support

Employee training: Conversational AI can be used for onboarding, training, and providing information to employees.

IT support: It can assist employees with technical issues and troubleshooting.

Compliance & consistency

Regulatory compliance: Conversational AI technologies can be programmed to follow legal and industry-specific regulations consistently.

Brand consistency: These tools can also maintain a consistent tone and messaging in their interactions — reflecting the brand’s identity.

Reduced response time

Quick answers: Provide instant responses, reducing user frustration and improving customer satisfaction.

Automated follow-ups: Send reminders, notifications, or updates in real time with conversational AI tools.

AI learning & adaptation

Continuous improvement: Conversational AI solutions can learn from interactions and adapt to user preferences and evolving language patterns.

Flexibility: These tools can also be easily updated and fine-tuned to meet changing business needs.

Types of conversational AI technologies

There are two main types of conversational AI that dominate the landscape as we know it.

Conversational AI chatbot answering a text-based conversation on a messaging app

AI chatbots

Those little bubbles that pop up in the corner of websites to ask if you need help? Yep, it turns out you’ve probably already encountered a chatbot before. An AI chatbot is a computer program powered by artificial intelligence and natural language processing capabilities, designed to simulate human-like text or voice-based conversations. The underlying tech has gotten so good that you might not realize you’re talking to a robot.

These chatbots can interact with users, answer questions, provide information, and perform tasks — making them super useful for things like customer support inquiries and assisting with automated processes. They range from rule-based chatbots, which follow predefined scripts, to more advanced conversational AI chatbots that learn from user interactions, offering context-aware and personalized responses.

Example of mobile and voice AI assistants

Mobile and voice assistants

Voice and mobile assistants are categorized as AI-powered technologies that assist people through voice or text interactions, typically on mobile devices. This is the tech you’re probably familiar with — think Amazon’s Alexa, Apple’s Siri, and Google Assistant. These voice assistants respond to spoken commands, allowing you to control smart devices, ask questions, set reminders, and perform different tasks using natural language. 

Mobile assistants, like Siri and Google Assistant, are like a personal assistant that lives on your smartphone and tablet. They can provide information, help with tasks, send messages, and navigate your device’s functions. Both voice AI and mobile assistants rely on artificial intelligence and natural language processing to understand your input and respond. They are valuable tools for hands-free, convenient interactions in daily life.

Conversational AI in the real world

Since conversational AI has exploded in popularity, savvy companies and organizations have already implemented this technology into their internal processes and customer-facing services. Want to see how it’s done right? We’ve gathered a handful of real-world examples of companies successfully implementing conversational AI.

HSBC Bank

The move to conversational AI at HSBC has created an exciting new career path for some of its 19,000+ customer service agents. The new roles it has introduced to date include Conversation Designer and Chatbot Manager in both onshore and offshore contact center teams.

Read the case study
Example of Capitec conversational banking interaction, illustrating the future of banking business models and how it can potentially increase customer loyalty

Capitec

Conversational AI technology made it easy for Capitec to adopt a 24/7 service model. Using a messaging-first approach, service agents can meet customers when and where it’s convenient for them. Additionally, agent-facing generative AI tools have helped them to double their efficiency leading to a 79% CSAT. 

Read their story

buddybank

Buddybank, a subsidiary of Unicredit, launched in 2018 as a fully conversational bank, using LivePerson’s in-app messaging to engage with customers through an iPhone app-based bank, providing a 24/7 concierge-service to assist with customer requests.

Read the case study

How to implement conversational AI

So you’ve decided you like the idea of bringing conversational AI into your business — but where do you start? With so many options available, taking the first step can feel overwhelming. Not to worry! We’ve whipped up a step-by-step guide to help you successfully choose, set up, and optimize conversational AI for your business.

Step 1: Choose

Define your goals and objectives

Start by identifying the specific goals and objectives you want to achieve with conversational AI. Are you looking to improve customer support, automate sales processes, or enhance user engagement? Clear goals will set the foundation for your journey.

conversational cloud, liveperson's conversational ai platform

Identify use cases

Next, you need to determine the specific use cases where conversational AI can provide value to your business. This could include customer service chatbots, virtual assistants for website visitors, or internal HR support.

conversational cloud, liveperson's conversational ai platform

Choose the right platform or solution

LivePerson’s award winning conversational AI platform, Conversational Cloud®, is built using large language models fine-tuned by billions of real customer conversations. With safety and security guardrails designed for the world’s largest enterprises, you remain firmly in control of the conversation.

conversational cloud, liveperson's conversational ai platform

Step 2: Set up

Data collection & preparation

To make your conversational AI work optimally, you need to feed it the right diet of information. Gather relevant data that will be used to train and improve your chosen system — this could look like historical customer interactions, FAQs, product information, or other relevant content specific to your objectives.

KnowledgeAI dashboard housing training data and content for generative ai systems and machine learning models

Design conversational flows

Plan the conversational flows and dialogues for your AI. Map out the user journeys and anticipate different user intents and responses. Create a conversation design that aligns with your brand’s tone and style. LivePerson’s Conversation Builder makes designing and scaling your chatbot easy with our intuitive point-and-click chatbot builder.

LivePerson chatbot builder, call Conversation Builder

Develop & train your AI

Depending on how customizable and collaborative your chosen platform is, you may get access to tools that allow you to train your AI using the collected data and fine-tune it for accuracy and understanding.

LivePerson chatbot builder, call Conversation Builder

Integrate with existing systems

Make sure your conversational AI solution can integrate seamlessly with your existing systems and databases. This may involve APIs, webhooks, or middleware to connect with CRMs, ERPs, and other relevant software. The LivePerson Integration Hub gives you access to all of the data and content needed to provide personalized conversations and make agents more effective.

logos of liveperson and Deloitte Digital for their webinar on AI-powered external brand engagement

Test extensively

No matter how eager you are to adopt and launch this technology, you need to make sure it’s, well, actually good. Be sure to conduct thorough testing of your conversational AI to identify and resolve issues. Test for various user scenarios, edge cases, and potential bottlenecks. User acceptance testing (UAT) is also helpful from a UX perspective — after all, you want to make sure those using the tech are getting the most out of it.

LivePerson chatbot builder, call Conversation Builder

Deploy & monitor

It’s showtime! Deploy your conversational AI on the chosen platforms, such as your website, mobile app, or messaging channels like Facebook Messenger. Monitor its performance, collect user feedback, and track key performance indicators (KPIs).

Sample of messaging apps supported by our omnichannel messaging platform, enabling the connected customer experiences customers expect

Step 3: Optimize

Optimize & iterate

Continuously optimize your conversational AI based on user feedback and data insights. Make improvements to its responses, conversation flows, and understanding of user intent. It’s also crucial for you to stay on top of content and information updates.

AI annotator for optimizations and bot tuning

Ensure ethical & regulatory compliance

Pay attention to ethical considerations and ensure your conversational AI complies with relevant regulations, especially if you’re dealing with sensitive data or financial transactions.

conversational ai compliance, where a bot recognizes a topic it's not allowed to handle and connects with a human agent

Provide human backup

While conversational AI is pretty red-hot with its capabilities, it’s not perfect. In fact, be prepared to offer human assistance when needed, especially for complex or sensitive inquiries. Implement a seamless transition from AI to human agents when required.

conversational ai compliance, where a bot recognizes a topic it's not allowed to handle and connects with a human agent

Scale as needed

As your business grows, your conversational AI platforms should grow with it. Ensure that you can handle increased volumes of interactions and adapt to evolving user needs.

conversational cloud, liveperson's conversational ai platform

Gather user feedback

Getting feedback directly from the people using your tech is crucial if you want to grow and succeed. Listen to users — use their feedback to refine your conversational AI and ensure it aligns with user expectations.

conversational ai compliance, where a bot recognizes a topic it's not allowed to handle and connects with a human agent
clipboard illustration representing a checklist to building the best AI chatbots

Dos and don’ts: Best practices and pitfalls

We’ve given you a thorough run-down on how to implement conversational AI technology in your business, but there are also some common pitfalls to look out for during the process. By adhering to best practices, you can mitigate risks and challenges that pop up both during and after implementation. Here are our simple dos and don’ts that you should keep in mind as soon as you consider taking the leap.

Do thisAvoid this

Best practices

Clear objectives

We put this as the first step in implementation, but it bears repeating — define clear goals and objectives for your conversational AI solutions. Understand what you want to achieve and how it aligns with your business strategy.

User-centric design

Prioritize user experience. Design conversational AI with the user’s needs and preferences in mind, ensuring that interactions are intuitive and user-friendly.

Personalization

You don’t want customers to feel like they’re talking to a machine. Make your AI conversational by offering personalized responses and recommendations based on user data and historical interactions.

Context awareness

Make sure your AI maintains context within conversations, remembering previous interactions and user preferences to provide coherent and meaningful responses.

Privacy, security & ethics

Implement strong security measures to protect user data. Comply with privacy regulations and ensure user information is handled responsibly. Address ethical concerns, such as bias and fairness in AI algorithms. Promote transparency and fairness in decision-making.

Regular updates

You’ve made it this far, so don’t fall behind! Keep your conversational AI model up to date by adding new content, features, and capabilities to meet changing user needs.

Pitfalls to avoid

Overpromising, underdelivering

Avoid making exaggerated claims about your AI’s capabilities. Manage user expectations and ensure the AI can deliver on its promises.

Lack of testing

Failing to thoroughly test your AI can lead to unintended issues. Test for various user scenarios and gather feedback to make improvements.

Neglecting privacy

Neglecting user data privacy and security can result in trust issues. Implement robust data protection measures and communicate your commitment to user privacy.

Ignoring user feedback

User feedback is valuable for refining your AI. Don’t ignore it; use it to make improvements and address user concerns.

Bias and fairness

Failing to address bias in AI models can lead to unfair or discriminatory outcomes. Regularly audit and address bias in your AI’s algorithms.

Lack of human backup

Don’t entirely replace human interaction when needed. Provide a seamless transition from AI to human agents for complex or sensitive inquiries.

Stagnation

Letting your conversational AI become stagnant can result in outdated responses and a declining user experience. Regularly update and improve your AI to keep it relevant.

Poor integration

Ensure that your conversational AI integrates seamlessly with your existing systems and provides value to your business. Inadequate integration can lead to inefficiencies and user frustration.

The future of conversational artificial intelligence

If there’s one thing we know for sure about conversational AI, it’s that the buzz around it is causing rapid advancements in its surrounding technologies. Here are some of the trends and advancements in AI that are poised to change (and improve) conversational AI in the future.

Machine learning is only going to get smarter, faster and more efficient, which will have a direct impact on conversational AI. Better funded and wider reaching ML research means we’ll have more powerful models capable of tasks more complex than ever before.

With an increased capability to analyze large amounts of data, our conversational AI models will become better at making fully informed decisions. This will be particularly important in industries like finance and healthcare, where there is no room for error.

This is a big one. As conversational AI becomes more prevalent, especially in fields where sensitive information is disclosed, there will be increased pressure to create robust security solutions and privacy policies to protect user data.

Virtual agent networks are quickly gaining popularity in the conversational AI space. A VAN allows users to access multiple virtual assistants through a single portal or window, which is a boon for larger businesses or multidisciplinary organizations. While the concept isn’t new, you can expect to see it become far more common in the near future.

brain visualization to illustrate the future of conversational ai

Taking the next step

Conversational AI capabilities are essential for businesses seeking to thrive in the digital age. This technology serves as the linchpin between companies and their customers, offering round-the-clock support, streamlined business processes, and personalized interactions — all without the resourcing headaches. By enhancing customer engagement, improving operational efficiency, and unlocking valuable insights, conversational AI brings a new level of digital experiences and satisfaction to the customer experience. 

LivePerson’s Conversational Cloud is the conversational AI platform for enterprise brands looking to set themselves apart in a dynamic marketplace. With 10x the customer interactions and 20% boost in customer satisfaction, the Conversational Cloud is the go to solution for facilitating better customer conversations at scale. 

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