Revolutionizing Mental Health Care through LangChain: A Journey with a Large Language Model
February 21, 2024 Β· Declared Dead Β· π Computing and Communication Workshop and Conference
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Authors
Aditi Singh, Abul Ehtesham, Saifuddin Mahmud, Jong-Hoon Kim
arXiv ID
2403.05568
Category
cs.HC: Human-Computer Interaction
Citations
22
Venue
Computing and Communication Workshop and Conference
Last Checked
4 months ago
Abstract
Mental health challenges are on the rise in our modern society, and the imperative to address mental disorders, especially regarding anxiety, depression, and suicidal thoughts, underscores the need for effective interventions. This paper delves into the application of recent advancements in pretrained contextualized language models to introduce MindGuide, an innovative chatbot serving as a mental health assistant for individuals seeking guidance and support in these critical areas. MindGuide leverages the capabilities of LangChain and its ChatModels, specifically ChatOpenAI, as the bedrock of its reasoning engine. The system incorporates key features such as LangChain's ChatPrompt Template, HumanMessage Prompt Template, ConversationBufferMemory, and LLMChain, creating an advanced solution for early detection and comprehensive support within the field of mental health. Additionally, the paper discusses the implementation of Streamlit to enhance the user experience and interaction with the chatbot. This novel approach holds great promise for proactive mental health intervention and assistance.
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