Home >Technology peripherals >AI >Chatbot Development with ChatGPT & LangChain: A Context-Aware Approach
This tutorial demonstrates how to build a chatbot in Python using Large Language Models (LLMs), specifically ChatGPT, and optimize it with the LangChain framework. It covers creating basic API calls to ChatGPT, implementing context awareness, and leveraging LangChain's memory features for efficient conversation history management.
The tutorial begins by showing how to make a simple API call to ChatGPT using the openai
library. A key point highlighted is that each initial API call is a standalone interaction; the model lacks memory of previous conversations.
To address this limitation, the tutorial introduces context awareness. It explains how to structure conversation history using system, assistant, and user message roles within the messages
list passed to the OpenAI API. This allows the chatbot to remember previous interactions. The tutorial then demonstrates how to automatically update this messages
list to maintain conversation history.
The tutorial then transitions to using the LangChain framework for improved memory management. LangChain offers a more efficient approach to handling conversation history, particularly when dealing with longer conversations. It introduces ConversationBufferMemory
for storing each interaction and ConversationChain
as a wrapper to manage the LLM and memory.
A significant advantage of LangChain is showcased through the use of ConversationSummaryBufferMemory
. This memory type summarizes previous interactions, reducing the number of tokens processed by ChatGPT for each response, resulting in cost savings and improved performance. The tutorial demonstrates how to use this advanced memory type to maintain context without overwhelming the model with excessive history.
The tutorial concludes by emphasizing the importance of context-aware chatbots and encourages readers to customize the provided building blocks to create their own chatbots. It also points to additional resources for further learning about LLMs, LangChain, and Natural Language Processing.
The above is the detailed content of Chatbot Development with ChatGPT & LangChain: A Context-Aware Approach. For more information, please follow other related articles on the PHP Chinese website!