Customer support has been shifting in a pretty noticeable way. Not dramatically, not all at once, but enough that many teams now rely on AI agents as part of their day-to-day workflow. They handle repetitive questions, help draft replies, and sometimes take care of entire conversations before a human even steps in.
This article is going to be a list of how AI agents are actually used in customer service today. Not just the ideal scenarios you usually hear about, but the more practical side – where they save time, where they need supervision, and how different teams are fitting them into real support processes.
Build AI Agents That Actually Work In Your Support

If AI agents are moving from idea to implementation, it usually comes down to one thing – getting them to work inside your existing support setup without breaking it.
Програмне забезпечення списку А can be involved at that stage. The company works as a development partner, helping set up custom solutions where AI agents connect to support platforms, internal data, and backend systems. This is the part that turns a concept into something that can handle real customer interactions.
Instead of relying on a generic chatbot, this approach focuses on fitting AI into how support already operates – including scaling, consistency, and ongoing adjustments once usage grows.
If there’s already a direction for how AI agents should be used, it’s worth bringing in a team that can help implement it properly and keep it running as part of the support process.

1. Fin
Fin is an AI agent designed to handle customer service conversations across multiple channels, with a clear focus on resolving more complex queries without constant human input. It works by learning from a company’s internal knowledge – procedures, policies, and past support content – and then applying that context during real interactions. One thing that stands out is how much emphasis is placed on testing before launch, where teams can simulate conversations and see how the agent behaves before it goes live.
Once deployed, Fin runs across channels like chat, email, and voice, and continues to improve through ongoing analysis. It tracks how conversations are handled, surfaces insights, and adjusts performance over time. There’s also a built-in process for deciding when a query should be passed to a human, which makes it less rigid compared to older automation setups.
Основні моменти:
- trained on internal procedures, policies, and knowledge bases
- supports chat, email, voice, and social channels
- simulation testing before going live
- continuous improvement through performance analysis
- integrates with existing helpdesks and workflows
- includes escalation to human agents when needed
Who It’s Best For:
- teams dealing with complex or layered support queries
- companies that already have structured knowledge bases
- support teams that want more control before deployment
- businesses using multiple support channels
Контактні дані:
- Website: fin.ai

2. Ada
Ada is built around the idea of running AI agents as part of a broader customer experience system rather than a standalone tool. It focuses on handling large volumes of conversations across different channels and languages, while keeping responses consistent. The platform includes tools to deploy, monitor, and adjust AI agents over time, which makes it more of an ongoing system than a one-time setup.
It also leans into automation at scale. The agent can resolve a significant portion of incoming requests on its own, while freeing up human agents to focus on more complex or sensitive cases. At the same time, there’s a strong focus on control – accuracy checks, safety layers, and performance tracking are built in, so teams can adjust how the agent behaves as needs change.
Основні моменти:
- handles conversations across channels and languages
- supports continuous optimization and performance tracking
- built-in safety and accuracy controls
- integrates into existing customer service workflows
- designed for high-volume support environments
Who It’s Best For:
- larger teams managing high volumes of customer requests
- companies operating in multiple regions or languages
- businesses looking to automate a large share of support
- teams that need ongoing control over AI performance
Контактні дані:
- Website: www.ada.cx
- Twitter: x.com/ada_cx
- LinkedIn: www.linkedin.com/company/ada-cx

3. Forethought
Forethought takes a slightly different approach by using multiple AI agents working together across the support process. Instead of focusing only on answering questions, it covers several steps – understanding the issue, classifying tickets, surfacing insights, and assisting human agents when needed. It learns from past tickets and help center content, which helps it stay aligned with how support has been handled before.
There’s also a strong focus on internal support workflows. The platform can automatically route tickets, tag them, and provide suggestions to agents in real time. At the same time, it analyzes conversations to find gaps in knowledge or recurring issues, which can then be used to improve both the AI and the support process overall.
Основні моменти:
- multi-agent system handling different parts of support
- trained on past tickets and help center content
- automated ticket classification and routing
- real-time assistance for human agents
- insights to identify gaps and improve workflows
Who It’s Best For:
- teams with large volumes of incoming tickets
- support operations that need better routing and organization
- companies looking to combine automation with human support
- teams that want insights from support data, not just automation
Контактні дані:
- Website: forethought.ai
- E-mail: info@forethought.ai
- Facebook: www.facebook.com/forethought.tech
- Twitter: x.com/forethought_ai
- LinkedIn: www.linkedin.com/company/forethought-ai

4. Schaman
Schaman works with AI agents that are built to handle customer service tasks as structured resolution systems rather than simple chat interfaces. Their setup focuses on combining different layers – generative AI, orchestration, and analytics – to guide conversations toward an actual outcome, not just an answer. The agents can diagnose issues, trigger actions, or respond more openly depending on how they are configured.
They also separate agents by function, which changes how support is handled. Some agents focus on troubleshooting and identifying root causes, others execute specific actions like account changes, and some operate in a more flexible way for general questions. All of this is coordinated through a central controller that manages how agents behave across different channels and use cases.
Основні моменти:
- different agent types for troubleshooting, execution, and open queries
- built to resolve issues, not just respond to questions
- coordination system to manage multiple agents
- supports web, messaging, email, and call center environments
- includes analytics and continuous learning
Who It’s Best For:
- teams handling technical or multi-step customer issues
- companies that need structured resolution flows
- support operations using multiple channels
- businesses that want control over how agents behave
Контактні дані:
- Website: www.schaman.com

5. CoSupport AI
CoSupport AI provides an AI agent that focuses on handling routine customer service requests with minimal human involvement. It is trained on internal company data such as documentation, product details, and past tickets, which allows it to respond in a way that matches how the business already communicates. The system also uses live data, so it can answer questions about orders, accounts, or updates without relying on static information.
Another part of the setup is how it handles volume. The agent is built to process large numbers of requests at the same time while keeping responses consistent. It can resolve common issues, route more complex ones, and integrate with a wide range of tools and platforms. This makes it easier to plug into existing support workflows rather than replacing them entirely.
Основні моменти:
- trained on internal data and historical support tickets
- uses live data for real-time responses
- handles high volumes of routine inquiries
- integrates with helpdesks and business tools
- supports multiple channels and languages
Who It’s Best For:
- teams dealing with repetitive customer questions
- companies with strong internal documentation
- businesses that need real-time data in support replies
- support teams managing large ticket volumes
Контактні дані:
- Website: cosupport.ai
- Facebook: www.facebook.com/CoSupportAI
- Twitter: x.com/cosupportai
- LinkedIn: www.linkedin.com/company/cosupportai
- Instagram: www.instagram.com/cosupport.ai

6. Sierra
Sierra focuses on building AI agents that operate across the entire customer experience, not just isolated support conversations. The platform allows teams to create agents that can interact with users, access data, and take actions based on defined goals and rules. These agents can be deployed across different channels, including chat, email, messaging, and voice, while maintaining a consistent experience.
There is also a strong focus on how agents are built and improved over time. Teams can test different versions, monitor performance, and adjust how the agent behaves using built-in tools. The system keeps track of conversations and customer data, which helps the agent respond in a more context-aware way and trigger actions when needed.
Основні моменти:
- supports deployment across multiple communication channels
- allows building agents with or without deep engineering work
- includes tools for testing and improving agent behavior
- uses customer data and conversation history for context
- supports proactive actions based on user signals
Who It’s Best For:
- teams building AI across the full customer journey
- companies needing flexible agent customization
- businesses that rely on customer data for decisions
- support teams that want ongoing optimization tools
Контактні дані:
- Website: sierra.ai
- E-mail: security@sierra.ai
- Twitter: x.com/sierraplatform
- LinkedIn: www.linkedin.com/company/sierra

7. Decagon
Decagon focuses on building AI agents that act more like a coordinated system than a single chatbot. Their approach is centered around defining how an agent behaves using natural language workflows, which makes it easier to adjust logic without rewriting complex rules. This changes how teams interact with the system, since updates can be made quickly as customer needs shift.
They also put a lot of weight on the full lifecycle of an agent. It’s not just about launching something and leaving it there. The platform includes testing, monitoring, and ongoing optimization, so the agent can evolve alongside the business. Conversations across voice, chat, and email are handled within the same layer, which helps keep interactions consistent.
Основні моменти:
- workflows defined in natural language
- lifecycle approach with build, test, and optimization stages
- unified handling of voice, chat, and email
- analytics to understand customer interactions
- supports continuous updates without heavy rework
Who It’s Best For:
- teams that need flexible workflow control
- companies iterating quickly on support processes
- businesses running support across multiple channels
- teams that want visibility into agent performance
Контактні дані:
- Website: decagon.ai
- E-mail: support@decagon.ai
- Twitter: x.com/DecagonAI
- LinkedIn: www.linkedin.com/company/decagon-ai

8. Zendesk
Zendesk integrates AI agents directly into its broader customer service platform, rather than treating them as a separate tool. The AI is built into everyday workflows, helping resolve customer requests while also supporting human agents with suggestions and context. This creates a mix where automation and human support work side by side instead of replacing each other.
Another part of the setup is how quickly it can be used. The system is designed to start handling interactions without much initial setup, and then improve over time through usage and insights. Alongside AI agents, there are tools for admins and support teams to monitor performance, adjust workflows, and understand where automation is helping or falling short.
Основні моменти:
- AI integrated into existing support workflows
- supports both automation and human agent assistance
- handles customer interactions across channels
- includes tools for monitoring and improving performance
- provides context and suggested actions for agents
Who It’s Best For:
- teams already using Zendesk ecosystem
- companies combining automation with human support
- support teams that need quick setup
- businesses that want centralized control and reporting
Контактні дані:
- Веб-сайт: www.zendesk.com
- App Store: apps.apple.com/ua/app/zendesk-support/id1174276185
- Google Play: play.google.com/store/apps/details?id=com.zendesk.android&pcampaignid=web_share
- E-mail: ask.philippines@zendesk.com
- Facebook: www.facebook.com/ZendeskEMEA
- Twitter: x.com/zendesk
- LinkedIn: www.linkedin.com/company/zendesk
- Instagram: www.instagram.com/zendesk
- Address: 181 Fremont St., San Francisco, CA 94105
- Телефон: 1-888-851-9456

9. Gorgias
Gorgias is built around ecommerce support, where customer service and sales often overlap. Their AI agent handles typical support requests while also interacting with shoppers during the buying process. Instead of treating support as a separate function, it connects conversations with order data, product details, and store activity.
The platform brings multiple channels and tools into one place, which helps teams manage conversations without switching between systems. It also allows actions to be taken directly within the conversation, like editing orders or checking product information. This makes the interaction more practical, especially in fast-moving ecommerce environments.
Основні моменти:
- designed for ecommerce-focused customer service
- combines support and sales interactions
- access to order and product data within conversations
- unified view of customer interactions across channels
- integration with ecommerce tools and platforms
Who It’s Best For:
- ecommerce businesses with active customer support
- teams handling orders, returns, and product questions
- companies combining support and sales in one flow
- businesses using Shopify or similar platforms
Контактні дані:
- Website: www.gorgias.com
- App Store: apps.apple.com/ua/app/gorgias-helpdesk/id1397660619
- Google Play: play.google.com/store/apps/details?id=com.gorgias.main&pcampaignid=web_share

10. Tidio
Tidio offers an AI agent called Lyro that is built to handle customer questions using a company’s own support content. It relies on the information provided by the business, which keeps responses aligned with how the team already communicates. Instead of pulling answers from general sources, it stays within defined knowledge and guidelines, which helps keep conversations consistent.
They also structure the tool as something that grows over time. Teams can start with basic setup, monitor conversations, and gradually expand what the agent handles. There’s a clear option to step in when needed, so it doesn’t fully replace human support but works alongside it, taking care of routine questions while leaving more sensitive cases to people.
Основні моменти:
- trained on company-provided support content
- responds based on predefined knowledge and guidelines
- allows human takeover during conversations
- improves through ongoing conversation review
- connects with existing tools without migration
Who It’s Best For:
- small to mid-sized support teams
- businesses starting with AI in customer service
- teams that want control over responses
- companies handling mostly routine inquiries
Контактні дані:
- Website: www.tidio.com
- App Store: apps.apple.com/ua/app/tidio/id916822567
- Google Play: play.google.com/store/apps/details?id=com.tidiochat.app&pcampaignid=web_share
- E-mail: support@tidio.net
- Facebook: www.facebook.com/TidioCX
- Twitter: x.com/tidiocx
- LinkedIn: www.linkedin.com/company/tidio-ltd
- Instagram: www.instagram.com/tidiocx

11. Kore.ai
Kore.ai focuses on building AI agents that can handle full customer interactions, not just answer questions. Their agents are designed to understand context, manage conversations across channels, and complete tasks within the same interaction. This includes actions like updating accounts or scheduling requests without breaking the flow.
They also approach customer service as a coordinated system of agents rather than a single tool. Depending on the situation, different agents can be used for simple queries or more complex workflows. At the same time, there’s a strong focus on control and reliability, with built-in guardrails and tracking to make sure interactions stay aligned with business rules.
Основні моменти:
- supports task completion within conversations
- maintains context across channels and sessions
- uses multiple agents for different types of requests
- integrates with enterprise systems and workflows
- includes controls for security and compliance
Who It’s Best For:
- enterprise teams with complex workflows
- companies needing action-based support, not just answers
- businesses with strict compliance requirements
- support teams handling multi-step customer journeys
Контактні дані:
- Website: www.kore.ai
- App Store: apps.apple.com/ua/app/kore-ai-messaging-and-bots/id1035117318
- Twitter: x.com/koredotai
- LinkedIn: www.linkedin.com/company/kore-inc
- Address: 7380 West Sand Lake Road, Suite 390, Orlando, FL 32819
- Phone: +1 844 924 8973
![]()
12. eGain
eGain takes a knowledge-centered approach to AI agents, where the system is closely tied to a centralized knowledge hub. Instead of relying only on conversation patterns, it pulls from structured and unstructured content across the organization. This helps the agent provide answers that are consistent with internal documentation and support practices.
They also focus on simplifying how agents are set up and used in contact center environments. The AI agent works alongside existing systems and helps reduce the effort needed to find information or respond to common issues. It can handle a portion of customer requests directly while supporting human agents with access to relevant knowledge when needed.
Основні моменти:
- connected to a centralized knowledge hub
- uses enterprise content for consistent responses
- supports both self-service and agent-assisted workflows
- integrates with contact center platforms
- reduces effort in accessing support information
Who It’s Best For:
- contact centers with large knowledge bases
- teams struggling with fragmented information
- companies focused on consistency in answers
- support teams combining AI and human assistance
Контактні дані:
- Website: www.egain.com
- App Store: apps.apple.com/ua/app/egain-solve/id6747093222
- Google Play: play.google.com/store/apps/details?id=com.egain.solveagent&pcampaignid=web_share
- Facebook: www.facebook.com/eGain
- Twitter: x.com/eGain
- LinkedIn: www.linkedin.com/company/egain-corporation
- Instagram: www.instagram.com/egainhq
- Address: 1252 Borregas Avenue, Sunnyvale, CA 94089, USA
- Phone: +1 408-636-4500

13. Beam AI
Beam AI’s customer service agent focuses on handling support requests as part of a broader workflow, not just isolated conversations. It pulls data from different sources, cleans and standardizes it, and then uses that information to respond to customer inquiries across email and chat. This makes it useful in situations where support depends on accurate data handling as much as communication.
They also structure the agent as something that keeps improving through feedback and task outcomes. It can switch between different models depending on the task, which helps balance speed and accuracy without manual tuning. Another part of the setup is collaboration between multiple agents, where different systems handle billing, support, or data tasks together rather than in isolation.
Основні моменти:
- processes and standardizes data from multiple sources
- improves performance through feedback loops
- uses model switching based on task complexity
- supports collaboration between multiple AI agents
- integrates with CRM and support platforms
Who It’s Best For:
- teams dealing with data-heavy customer requests
- businesses with multiple systems and data sources
- support operations that include repetitive workflows
- companies looking to combine support and data handling
Контактні дані:
- Website: beam.ai
- E-mail: Marketing@beam.ai
- Twitter: x.com/join__beam
- LinkedIn: www.linkedin.com/company/beam-ai

14. Zowie
Zowie is built around the idea of handling customer service through conversation instead of structured menus or forms. Their AI agents are designed to understand requests and carry out actions directly, such as managing orders or handling refunds, without requiring users to navigate through steps manually. The focus is on making interactions feel more direct and task-oriented.
They also provide tools to build, monitor, and improve agents over time. Teams can track conversations, adjust how agents behave, and manage multiple workflows from one platform. The system supports deployment across different channels, which helps keep the experience consistent whether a customer is using chat, email, or messaging apps.
Основні моменти:
- handles customer requests through conversational interactions
- supports execution of tasks like orders and refunds
- includes tools for monitoring and improving agents
- works across multiple communication channels
- integrates with enterprise systems and workflows
Who It’s Best For:
- teams that want to replace menu-based support flows
- ecommerce and service businesses with frequent transactions
- companies handling repetitive customer actions
- support teams looking for centralized control over interactions
Контактні дані:
- Website: getzowie.com
- E-mail: hello@zowie.ai
- Twitter: x.com/ZowieAI
- LinkedIn: www.linkedin.com/company/zowieai
- Instagram: www.instagram.com/zowie_ai
![]()
15. Crisp
Crisp approaches AI agents as an extension of the support team, trained directly on company content and past conversations. The system connects to multiple data sources such as knowledge bases, website content, and conversation history, which helps the agent respond in a way that matches how the business communicates. It’s less about automation alone and more about keeping responses consistent with the team’s voice.
They also make it easy to adjust and refine the agent over time. Teams can review conversations, add missing answers, and improve how the AI handles different cases. The setup supports different use cases, from answering basic questions to assisting with more detailed support tasks, while still allowing human agents to step in when needed.
Основні моменти:
- trained on internal content and conversation history
- uses multiple data sources for more accurate responses
- allows ongoing improvement through manual updates
- supports different types of support use cases
- integrates with existing helpdesk environments
Who It’s Best For:
- teams that want AI to match their tone and communication style
- businesses with strong existing knowledge bases
- support teams that prefer gradual AI adoption
- companies that want control over how AI evolves
Контактні дані:
- Website: crisp.chat
- E-mail: support@crisp.chat
- Facebook: www.facebook.com/crispchat
- Twitter: x.com/crisp_chat
- LinkedIn: www.linkedin.com/company/crisp-im
- Instagram: www.instagram.com/crisp.chat

16. Chatbase
Chatbase is built as a platform for creating AI agents that handle customer support conversations and related workflows. It focuses on giving teams a way to train agents on their own business data, connect them to existing systems, and let them take action during conversations. Instead of limiting the agent to answering questions, it can also update records, trigger workflows, or pull real-time information when needed.
They also make the setup fairly flexible. Teams can adjust how the agent behaves, test different models, and refine performance based on analytics and conversation history. When something goes beyond what the agent should handle, it can route the request to a human with clear context. So it ends up working as part of a broader support process rather than sitting on top of it.
Основні моменти:
- trained on business data and connected systems
- can perform actions within workflows, not just respond
- supports real-time data access from external tools
- includes analytics and performance tracking
- allows controlled escalation to human agents
Who It’s Best For:
- teams that want AI to handle both questions and actions
- businesses with connected systems like CRM or helpdesk tools
- support teams that need flexibility in setup and control
- companies looking to automate parts of their workflows without losing oversight
Контактні дані:
- Website: www.chatbase.co
- Twitter: x.com/chatbase
- LinkedIn: www.linkedin.com/company/chatbase-co
- Instagram: www.instagram.com/chatbase_co
Висновок
AI agents in customer service are no longer just an experiment sitting on the side. They’re already part of how many teams handle support, whether that’s answering routine questions, routing tickets, or quietly working in the background to keep things moving.
What stands out, though, is how different the approaches are. Some tools focus on resolving full conversations on their own, others act more like assistants to human agents, and a few try to combine both. There’s no single “right” setup here – it usually depends on how complex your support flow is and how much control you want to keep.
If anything, the shift is less about replacing people and more about changing where their time goes. Repetitive work gets handled faster, while edge cases and real conversations still need a human touch. And that balance is probably where most teams will stay, at least for now.


