Designing a Customer Support Chatbot Using Flowise

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Designing a Customer Support Chatbot Using Flowise

Coursera · Intermediate ·🧠 Large Language Models ·3mo ago

Key Takeaways

Builds a customer support chatbot using Flowise without writing code

Original Description

Did you know you can create a code-free chatbot, similar to ChatGPT, without writing a single line of code? This one-hour course is for those interested in building fully functional chatbots that are trained on specific website data without coding. Learn to use flowise.ai to build a chatbot without a single line of code. The hands-on experience includes setting up a flowise.ai account, interacting with the platform, and building the chatbot. This unique project allows you to the power of advanced AI models to build chatbots. Just make sure that you have Flowise.ai installed on your system. To make the most of this course, it is best, but not mandatory, to have a background in CRM.
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