Llama Tutor: an AI tool that provides personalized tutoring, an open source AI personal tutor project built on Llama 3.1

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General Introduction

Llama Tutor is an open source AI personal tutor project built on Llama 3.1, designed to provide users with a personalized learning experience. By integrating multiple technology stacks such as Together AI, Next.js, and Tailwind CSS, Llama Tutor is capable of real-time interaction and can generate tailored tutoring content based on the user's input of learning topics and education level to help them master knowledge faster.

Llama Tutor:提供个性化辅导的AI工具,基于 Llama 3.1 构建的开源 AI 个人助教项目

Online experience: https://llamatutor.com/

 

Function List

  • Personalized Tutoring: Generate customized tutoring content based on user input on learning topics and education levels.
  • Multidisciplinary support: Covering a wide range of disciplines including basketball, machine learning, personal finance, American history, and more.
  • open source project: Completely open source, users can freely view and modify the code.
  • Real-time search: Integration with the Serper Search API to provide up-to-date learning resources.
  • data analysis: Use Helicone for observability analysis to help users understand learning progress.

 

Using Help

Installation process

  1. clone warehouse: fork or clone project repositories on GitHub.
  2. Create an account: Create accounts on Together AI, SERP API or Azure (Bing Search API) and Helicone.
  3. Configuration environment: Create the .env file (refer to .example.env) and replace the API key.
  4. Installation of dependencies: Run npm install Install project dependencies.
  5. Initiation of projects: Run npm run dev Start the local development server.

Function Operation Guide

  1. Personalized Learning Experience::
    • Users can enter learning requirements and the system will generate customized learning content based on the requirements.
    • Instant Q&A through AI to help users solve their learning queries.
  2. Real-time interactive teaching::
    • The system generates interactive content in real time based on user input, providing instant feedback.
    • Users can interact with the AI tutor through a dialog box to get instant help.
  3. open source project::
    • Developers can access GitHub repositories to view and contribute code.
    • The project is under the MIT license, which allows free use and modification.
  4. Multi-Technology Stack Support::
    • The project uses Llama 3.1 as the core AI model, providing powerful natural language processing capabilities.
    • Using Together AI for LLM inference, Next.js and Tailwind CSS to build the front-end interface.
    • Enhance your learning by getting search results through the Serper API or Bing Search API.
  5. data analysis::
    • Use Plausible for website analytics to collect data on user behavior and optimize the user experience.
    • Developers can view analytics reports to understand user usage and make targeted improvements.
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