
What is Conversational AI?
Conversational AI helps businesses build stronger customer relationships through natural, human-like dialogue that can answer questions, solve problems, and increase efficiency.
Conversational AI helps businesses build stronger customer relationships through natural, human-like dialogue that can answer questions, solve problems, and increase efficiency.
Conversational AI is changing how businesses operate by analyzing and mimicking natural, human-like dialogue. Here's what it looks like in action.
In sales: After analyzing your team’s video calls with customers, conversational AI interprets customer sentiment and suggests next steps for your reps.
In service: Conversational AI responds to a customer service inquiry after hours, offering a solution based on past interactions, with a friendly tone.
In marketing: You ask conversational AI to create personalized landing pages for your customers, drawing from their preferences and history.
The way businesses and their customers interact with AI has evolved from traditional chatbots to sophisticated AI agents that can reason, learn, and take actions on their own with some human guidance and oversight. Here's a look at how conversational AI works and what it could do for your organization.
Conversational AI is a type of artificial intelligence (AI) technology that can understand and converse with people in a way that mimics natural dialogue. Unlike older chatbots, which just respond based on preprogrammed knowledge, autonomous agents that use conversational AI actually process and reply in a way that sounds natural and is trustworthy.
This technology has become essential across industries, from helping sales teams generate close plans to retail brands using it to provide personalized and relevant recommended products to healthcare professionals relying on it to manage patients’ complete medical history.
97% of executives say they feel an urgency to integrate AI tools, with conversational AI becoming essential across industries. By providing it with data and customer relationship management (CRM) systems, modern conversational AI can understand context, remember previous interactions, and take action autonomously.
Salesforce AI delivers trusted, extensible AI grounded in the fabric of our Salesforce Platform. Utilize our AI in your customer data to create customizable, predictive, and generative AI experiences to fit all your business needs safely. Bring conversational AI to any workflow, user, department, and industry with Einstein.
Conversational AI uses machine learning (ML) and natural language processing (NLP). Generative AI, which uses large language models (LLMs) capable of creating human-like text, has been a breakthrough technology that creates more sophisticated conversational AI systems.
When AI has been trained to recognize words and phrases, it can then try natural language generation and start talking back. Then, if you have any feedback on the AI response, you can share it, and it will use machine learning to provide improved answers to you and your colleagues in the future.
Here's a real example of how it works: When a customer asks to update their shipping address, their request is converted into machine-readable text, processed by NLP, and analyzed alongside customer data. The AI understands intent and responds back with a confirmation once the update has been made.
Early conversational AI systems were limited to rule-based responses and struggled with complex queries, but that’s changing. Powered by both LLMs and specialized small language models, these systems can now understand context, maintain conversational flow, and use take autonomous action.
NLP (natural language processing) is the foundation of conversational AI, using tokenization to break down text, sentiment analysis to understand emotion, and natural language generation to create human-like responses. NLP uses machine learning to help AI systems to understand and respond to human language. The system then analyzes these pieces to understand sentiment (emotions and attitudes), extract key information, and determine user intent.
Modern NLP systems can also understand context and nuance. For example, they can differentiate between "I need to return this order" and "When will my order return to stock?" NLP helps AI recognize that while both sentences contain "return" and "order," they require completely different responses. This context combined with language generation training helps the AI craft responses that sound natural and appropriate to the situation.
Machine learning (ML) is what makes conversational AI truly intelligent and adaptable. Rather than following static rules, AI algorithms analyze patterns in vast amounts of data to understand how humans communicate and what responses are most effective. This enables the system to improve continually with each interaction, learning from successful exchanges and adjusting its approach based on user feedback.
For example, when integrated with data platforms like Data Cloud, algorithms can analyze previous customer interactions to understand which responses led to positive outcomes. AI can then use these insights to personalize future conversations, predict user needs, and proactively offer relevant solutions. The algorithms also help the system recognize when a conversation should be escalated to a human service rep, ensuring seamless handoffs when needed.
More businesses are turning to AI to enhance customer satisfaction and improve operations. The advantages of AI across a diverse range of industries and roles continue to grow. Here are some of the top benefits businesses are getting with conversational AI solutions:
Sales, service, commerce, and marketing teams can get work done faster and focus on what’s important, like spending more time with your customers. All with the help of a trusted advisor — meet your conversational AI for CRM.
Conversational AI is also transforming the way businesses function across departments, leading to more efficient workflows and improved customer experiences. Here are just some of the ways organizations are combining this technology with virtual agents to improve their operations.
AI for sales is fundamentally changing how teams prospect and close deals. Conversational AI, particularly through tools like Agentforce — the agentic layer of the Salesforce platform —autonomously engages with prospects, handles initial qualification, and books meetings for sales representatives. The technology also helps sales teams prioritize leads, prepare for meetings, and maintain consistent follow-up communication with:
In AI service operations, conversational AI provides omnichannel support that adapts to customer preferences. Advanced AI agents can handle complex queries across multiple channels while maintaining context and personalizing responses based on customer history. This allows employees to focus on cases that require more empathy and complex problem-solving while agents provide:
With marketing AI, teams can use conversational AI to create more engaging, personalized campaigns. The technology helps analyze customer data, optimize content, and automate campaign management while maintaining a consistent brand voice across all channels. The benefits to marketing teams include:
Conversational AI for commerce can help agents act as personal shopping assistants, helping customers find products and making tailored recommendations. This technology can boost conversion rates by providing immediate, tailored guidance for customers in their shopping journey, including:
For technical teams, combining conversational AI with your operations platform streamlines development processes and improves code quality. Developers can work more efficiently while maintaining best practices and security standards with skills like:
Conversational AI is transforming financial services by automating complex processes while maintaining security and compliance. The technology can handle everything from routine transactions to sophisticated financial analyses that include:
AI doesn't just handle support tickets - it builds relationships. Here's what that looks like in different industries:
Enterprise AI built directly into your CRM. Maximize productivity across your entire organization by bringing business AI to every app, user, and workflow. Empower users to deliver more impactful customer experiences in sales, service, commerce, and more with personalized AI assistance.
While conversational AI offers tremendous benefits, organizations must address some key challenges to ensure the successful implementation of AI agents. Here's how businesses are effectively managing these concerns, particularly through advanced technology like Agentforce.
Handling sensitive customer information in AI conversations requires robust security measures. AI agents address this through enterprise-grade security protocols, encryption, and strict data governance policies. For example, Agentforce's Atlas Reasoning Engine ensures every interaction is grounded in your trusted business data while maintaining security compliance.
AI systems can inadvertently perpetuate biases present in training data. To mitigate this, modern conversational AI platforms should employ regular monitoring and auditing of AI responses and diverse training datasets that represent all user groups. Clear guidelines for inclusive language are also essential, as are built-in safeguards against discriminatory outcomes.
Concerns about AI replacing jobs are common, but conversational AI serves to augment human capabilities rather than replace them. To successfully implement these changes — and promote adoption of the technology — put together a communication plan about AI's role in supporting, not replacing, employees.
Training programs will help staff work effectively alongside AI and show them the ways AI will free them up to focus on high-value tasks that require emotional intelligence and complex decision-making. Also, be sure to set up an ongoing motion to measure and share productivity gains from AI adoption.
Ensuring consistent, accurate responses is crucial for maintaining user trust. Agentic systems like Agentforce address this through continuous monitoring of AI performance, built-in escalation paths to human agents, regular updates that improve response accuracy, and testing capabilities to ensure reliable ongoing operation. Training programs will help staff work effectively alongside AI and show them the ways AI will free them up to focus on high-value tasks that require emotional intelligence and complex decision-making. Also, be sure to set up an ongoing motion to measure and share productivity gains from AI adoption.
If you're excited about conversational AI, the next step is exploring AI agents. You can even get hands-on and build your own. Powered by LLMs, agents integrate with CRMs and help teams manage tasks, analyze data, and connect workflows effortlessly.
Interest in adopting conversational AI is growing, along with the ROI potential. To take the next step, assess your business needs and explore how conversational AI can help your team be more productive while serving customers better. Have a look at how Agentforce can help.