Super SQL Chatbot: Autogen, LangChain, SQLite, and Function Schema combined to create a powerful AI chatbot. With complete flexibility and customization, users can copy and paste the code and build their own super chatbots. The function calling schema allows for intelligent function execution and SQLite's simplicity and efficiency makes it a top choice. This method makes SQL handling from Autogen much easier. And it's all possible using the LangChain mechanism. ⚙️🔮🤖

Super SQL Chatbot: Building AI Chatbots Using AutoGen, Lang Chain, SQLite, and Schema Function

Introduction 🤖

Over the past year, I have built numerous AI chatbots, most of which were constructed using AutoGen and Lang Chain. In this video, I will share everything I have learned about creating a super AI chatbot using AutoGen, Lang Chain, SQLite, and Schema Function. This comprehensive guide will enable you to replicate my success in AI engineering and develop powerful chatbots for both commercial and personal use.

Leveraging New Technology

The use of AutoGen, Lang Chain, SQLite, and Schema Function offers complete flexibility and customization for creating AI chatbots. Stay tuned to unlock the full potential of this cutting-edge technology.

Principales conclusiones 🚀

The combination of AutoGen, Lang Chain, SQLite, and Schema Function allows for the seamless construction of AI chatbots with unmatched efficiency and adaptability.

Background on SQLite

SQLite is a widely-used database for embedded software development. It is renowned for its simplicity and efficiency, offering a relational database management system that does not require configuration. These unique features make SQLite a favorite among database administrators and software developers.

Understanding Function Calling Schema

In the context of GP4 APIs, the function calling schema enables users to describe functions and receive a JSON object containing arguments for function calls. This innovative schema allows for executing arbitrary function calls and potentially enhancing function attacks.

Building the Chatbot 🛠️

Steps in Building a System for Running SQL Commands

Creating a SQL-based system from AutoGen involves the following steps:

First, examine available tables. Then, create and run an SQL query. Finally, present the results in a suitable format such as text, graphs, or tables.

ProcessDescripción
Examine TablesAnalyze available tables for SQL commands
SQL QueryCreate and execute an SQL query
Data PresentationPresent results in user-friendly formats

Leveraging Lang Chain Mechanism

The Lang Chain mechanism simplifies the integration of SQL commands from AutoGen, making the process more efficient and manageable.

Installing Requirements ⚙️

Setting up a Virtual Environment

Assuming a new Python project has been created, setting up a virtual environment is the initial step.

StepDescripción
Import DependenciesImport the required dependencies
Create DatabaseDefine a simple database structure for the agent

Defining the Database Structure

The database structure consists of tables for books, authors, and publishers, establishing relevant fields and sample data.

Utilizing AI Agents with AutoGen 🧠

Applying Function Calling Schema

The function calling schema, in combination with Lang Chain's capabilities, provides a seamless integration for executing SQL commands through natural language.

Creating an AI Agent

Creating agents and initiating conversations between users and chatbots is made effortless through the open AI agent and user proxy.

Conclusión 🌟

In conclusion, the integration of AutoGen, Lang Chain, SQLite, and Schema Function in building AI chatbots presents a groundbreaking approach to AI engineering. This technology is set to revolutionize the development of chatbots, offering unprecedented levels of customization and efficiency.

Additional Resources

For additional resources and a detailed understanding of these innovative methods, the links in the description are provided for further exploration.


By incorporating AutoGen, Lang Chain, SQLite, and Schema Function, developers can unlock a new realm of possibilities in the field of AI chatbot engineering. The inherent flexibility and customization offered by this technology will undoubtedly play a pivotal role in the future of AI-powered applications.


🔗 Are you ready to build your own super AI chatbot using AutoGen, Lang Chain, SQLite, and Schema Function? Explore the provided resources and start your journey towards AI engineering excellence.

Puestos similares

Deja un comentario

Tu dirección de correo electrónico no será publicada. Los campos obligatorios están marcados con *