Watch the tutorial here for a detailed guide on setting up and running this project.
This repository contains the code and instructions needed to build a sophisticated answer engine that leverages the capabilities of Groq, Mistral AI's Mixtral, Langchain.JS, Brave Search, Serper API, and OpenAI. Designed to efficiently return sources, answers, images, videos, and follow-up questions based on user queries, this project is an ideal starting point for developers interested in natural language processing and search technologies.
- Next.js: A React framework for building server-side rendered and static web applications.
- Tailwind CSS: A utility-first CSS framework for rapidly building custom user interfaces.
- Vercel AI SDK: The Vercel AI SDK is a library for building AI-powered streaming text and chat UIs.
- Groq & Mixtral: Technologies for processing and understanding user queries.
- Langchain.JS: A JavaScript library focused on text operations, such as text splitting and embeddings.
- Brave Search: A privacy-focused search engine used for sourcing relevant content and images.
- Serper API: Used for fetching relevant video and image results based on the user's query.
- OpenAI Embeddings: Used for creating vector representations of text chunks.
- Cheerio: Utilized for HTML parsing, allowing the extraction of content from web pages.
- Ollama (Optional): Used for streaming inference and embeddings.
- Ensure Node.js and npm are installed on your machine.
- Obtain API keys from OpenAI, Groq, Brave Search, and Serper.
- OpenAI API Key: Generate your OpenAI API key here.
- Groq API Key: Get your Groq API key here.
- Brave Search API Key: Obtain your Brave Search API key here.
- Serper API Key: Get your Serper API key here.
- Clone the repository:
git clone https://github.com/developersdigest/llm-answer-engine.git
- Install the required dependencies:
or
npm install
bun install
- Create a
.env
file in the root of your project and add your API keys:OPENAI_API_KEY=your_openai_api_key GROQ_API_KEY=your_groq_api_key BRAVE_SEARCH_API_KEY=your_brave_search_api_key SERPER_API=your_serper_api_key
To start the server, execute:
npm run dev
or
bun run dev
the server will be listening on the specified port.
The configuration file is located in the app/config.tsx
file. You can modify the following values
- useOllamaInference: false,
- useOllamaEmbeddings: false,
- inferenceModel: 'mixtral-8x7b-32768',
- inferenceAPIKey: process.env.GROQ_API_KEY,
- embeddingsModel: 'text-embedding-3-small',
- textChunkSize: 800,
- textChunkOverlap: 200,
- numberOfSimilarityResults: 2,
- numberOfPagesToScan: 10,
- nonOllamaBaseURL: 'https://api.groq.com/openai/v1'
Currently, streaming text responses are supported for Ollama, but follow-up questions are not yet supported.
Embeddings are supported, however, time-to-first-token can be quite long when using both a local embedding model as well as a local model for the streaming inference. I recommended decreasing a number of the RAG values specified in the app/config.tsx
file to decrease the time-to-first-token when using Ollama.
To get started, make sure you have the Ollama running model on your local machine and set within the config the model you would like to use and set use OllamaInference and/or useOllamaEmbeddings to true.
Note: When 'useOllamaInference' is set to true, the model will be used for both text generation, but it will skip the follow-up questions inference step when using Ollama.
More info: https://ollama.com/blog/openai-compatibility
- [In progress] Add support for dynamic and conditionally rendered UI components based on the user's query
- [] Add a settings component to allow users to select the model, embeddings model, and other parameters from the UI
- [] Add support for follow-up questions when using Ollama
- [Completed] Add dark mode support based on the user's system preference
In addition to the Next.JS version of the project, there is a backend only version that uses Node.js and Express. Which is located in the 'original-express-api' directory. This is a standalone version of the project that can be used as a reference for building a similar API. There is also a readme file in the 'original-express-api' directory that explains how to run the backend version.
Watch the express tutorial here for a detailed guide on setting up and running this project.
Contributions to the project are welcome. Feel free to fork the repository, make your changes, and submit a pull request. You can also open issues to suggest improvements or report bugs.
This project is licensed under the MIT License.
I'm the developer behind Developers Digest. If you find my work helpful or enjoy what I do, consider supporting me. Here are a few ways you can do that:
- Patreon: Support me on Patreon at patreon.com/DevelopersDigest
- Buy Me A Coffee: You can buy me a coffee at buymeacoffee.com/developersdigest
- Website: Check out my website at developersdigest.tech
- Github: Follow me on GitHub at github.com/developersdigest
- Twitter: Follow me on Twitter at twitter.com/dev__digest