Chatbot Using Natural Language Processing (NLP)
Keywords:
NLP, Artificial Intelligence (AI)Abstract
Chatbots are becoming increasingly common in various sectors, helping organizations interact with users through automated conversations. By combining Artificial Intelligence (AI) and Natural Language Processing (NLP), chatbots have advanced beyond simple rule-based systems. In this project, we focused on developing a chatbot that uses modern NLP techniques and deep learning models like GPT to understand user inputs and reply with relevant, human- like responses. Our system is designed to grasp the context of conversations, identify user intent, and generate replies that make the interaction more natural. This kind of chatbot can be useful in customer service, education, healthcare, and virtual assistance. Our study highlights how NLP can make chatbots smarter, more user-friendly, and capable of handling real-world interactions.
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