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DegreeGuru

Build a RAG Chatbot using Vercel AI SDK, Langchain, Upstash Vector and OpenAI

Deploy with Vercel

overview

Note

This project is a Community Project.

The project is maintained and supported by the community. Upstash may contribute but does not officially support or assume responsibility for it.

DegreeGuru is a project designed to teach you making your own AI RAG chatbot on any custom data. Some of our favorite features:

  • 🕷️ Built-in crawler that scrapes the website you point it to, automatically making this data available for the AI
  • ⚡ Fast answers using Upstash Vector and real-time data streaming
  • 🛡️ Includes rate limiting to prevent API abuse

This chatbot is trained on data from Stanford University as an example, but is totally domain agnostic. We've created this project so you can turn it into a chatbot with your very own data by simply modifying the crawler.yaml file.

Overview

  1. Stack
  2. Quickstart
    1. Crawler
    2. ChatBot
  3. Conclusion
  4. Shortcomings

Stack

Note

This project was updated to use the RAG-Chat SDK in #12.

The rest of the README explains how it used to work before RAG-Chat. You can find the state of the project before RAG-Chat here.

Quickstart

For local development, we recommend forking this project and cloning the forked repository to your local machine by running the following command:

git clone git@github.com:[YOUR_GITHUB_ACCOUNT]/DegreeGuru.git

This project contains two primary components: the crawler and the chatbot. First, we'll take a look at how the crawler extracts information from any website you point it to. This data is automatically stored in an Upstash Vector database. If you already have a vector database available, the crawling stage can be skipped.

Step 1: Crawler

crawler-diagram

The crawler is developed using Python, by initializing a Scrapy project and implementing a custom spider. The spider is equipped with the parse_page function, invoked each time the spider visits a webpage. This callback function splits the text on the webpage into chunks, generates vector embeddings for each chunk, and upserts those vectors into your Upstash Vector Database. Each vector stored in our database includes the original text and website URL as metadata.


To run the crawler, follow these steps:

Tip

If you have docker installed, you can skip the "Configure Environment Variables" and "Install Required Python Libraries" sections. Instead you can simply update the environment variables in docker-compose.yml and run docker-compose up. This will create a container running our crawler. Don't forget to configure the crawler as explained in the following sections!

Configure Environment Variables Before we can run our crawler, we need to configure environment variables. They let us securely store sensitive information, such as the API keys we need to communicate with OpenAI or Upstash Vector.

If you don't already have an Upstash Vector Database, create one here and set 1536 as the vector dimensions. We set 1536 here because that is the amount needed by the embedding model we will use.

vector-db-create

The following environment variables should be set:

# Upstash Vector credentials retrieved here: https://console.upstash.com/vector
UPSTASH_VECTOR_REST_URL=****
UPSTASH_VECTOR_REST_TOKEN=****

# OpenAI key retrieved here: https://platform.openai.com/api-keys
OPENAI_API_KEY=****
Install Required Python Libraries

To install the libraries, we suggest setting up a virtual Python environment. Before starting the installation, navigate to the degreegurucrawler directory.

To setup a virtual environment, first install virtualenv package:

pip install virtualenv

Then, create a new virtual environment and activate it:

# create environment
python3 -m venv venv

# activate environment
source venv/bin/activate

Finally, use the requirements.txt to install the required libraries:

pip install -r requirements.txt

After setting these environment variables, we are almost ready to run the crawler. The subsequent step involves configuring the crawler itself, primarily accomplished through the crawler.yaml file located in the degreegurucrawler/utils directory. Additionally, it is imperative to address a crucial setting within the settings.py file.

Configuring the crawler in `crawler.yaml`

The crawler.yaml has two main sections: crawler and index:

crawler:
  start_urls:
    - https://www.some.domain.com
  link_extractor:
    allow: '.*some\.domain.*'
    deny:
      - "#"
      - '\?'
      - about
index:
  openAI_embedding_model: text-embedding-ada-002
  text_splitter:
    chunk_size: 1000
    chunk_overlap: 100

In the crawler section, there are two subsections:

  • start_urls: the entrypoints our crawler will start searching from
  • link_extractor: a dictionary passed as arguments to scrapy.linkextractors.LinkExtractor. Some important parameters are:
    • allow: Only extracts links matching the given regex(s)
    • allow_domains: Only extract links matching the given domain(s)
    • deny: Deny links matching the given regex(s)

In the index section, there are two subsections:

Configuring crawl depth via `settings.py`

settings.py file has an important setting called DEPTH_LIMIT which determines how many consecutive links our spider can crawl. A high value lets our crawler visit the deepest corners of a website, taking longer to finish with possibly diminishing returns. A low value could end the crawl before extracting relevant information.

If pages are skipped due to the DEPTH_LIMIT, Scrapy logs those skipped URLs for us. Because this usually causes a lot of logs, we've disabled this option in our project. If you'd like to keep it enabled, remove the "scrapy.spidermiddlewares.depth" from the disable_loggers in degreegurucrawler/spider/configurable.py file.


That's it! 🎉 We've configured our crawler and are ready to run it using the following command:

scrapy crawl configurable --logfile degreegurucrawl.log

Note that running this might take time. You can monitor the progress by looking at the log file degreegurucrawl.log or the metrics of your Upstash Vector Database dashboard as shown below.

vector-db

Tip

If you want to do a dry run (without creating embeddings or a vector database), simply comment out the line where we pass the callback parameter to the Rule object in ConfigurableSpider

Step 2: Chatbot

In this section, we'll explore how to chat with the data we've just crawled and stored in our vector database. Here's an overview of what this will look like architecturally:

chatbot-diagram

Before we can run the chatbot locally, we need to set the environment variables as shown in the .env.local.example file. Rename this file and remove the .example ending, leaving us with .env.local.

Your .env.local file should look like this:

# Redis tokens retrieved here: https://console.upstash.com/
UPSTASH_REDIS_REST_URL=
UPSTASH_REDIS_REST_TOKEN=

# Vector database tokens retrieved here: https://console.upstash.com/vector
UPSTASH_VECTOR_REST_URL=
UPSTASH_VECTOR_REST_TOKEN=

# OpenAI key retrieved here: https://platform.openai.com/api-keys
OPENAI_API_KEY=

The first four variables are provided by Upstash, you can visit the commented links for the place to retrieve these tokens. You can find the vector database tokens here:

vector-db-read-only

The UPSTASH_REDIS_REST_URL and UPSTASH_REDIS_REST_TOKEN are needed for rate-limiting based on IP address. In order to get these secrets, go to Upstash dashboard and create a Redis database.

redis-create

Finally, set the OPENAI_API_KEY environment variable you can get here which allows us to vectorize user queries and generate responses.

That's the setup done! 🎉 We've configured our crawler, set up all neccessary environment variables are after running npm install to install all local packages needed to run the app, we can start our chatbot using the command:

npm run dev

Visit http://localhost:3000 to see your chatbot live in action!

Step 3: Optional tweaking

You can use this chatbot in two different modes:

  • Streaming Mode: model responses are streamed to the web application in real-time as the model generates them. Interaction with the app is more fluid.
  • Non-Streaming Mode: Model responses are shown to the user once entirely generated. In this mode, DegreeGuru can explicitly provide the URLs of the web pages it uses as context.
Changing streaming mode

To turn streaming on/off, navigate to src/app/route/guru and open the route.tsx file. Setting returnIntermediateSteps to true disables streaming, setting it to false enables streaming.

To customize the chatbot further, you can update the AGENT_SYSTEM_TEMPLATE in your route.tsx file to better match your specific use case.


Conclusion

Congratulations on setting up your own AI chatbot! We hope you learned a lot by following along and seeing how the different parts of this app, namely the crawler, vector database, and LLM, play together. A major focus in developing this project was on its user-friendly design and adaptable settings to make this project perfect for your use case.

Limitations

The above implementation works great for a variety of use cases. There are a few limitations I'd like to mention:

  • Because the Upstash LangChain integration is a work-in-progress, the UpstashVectorStore used with LangChain currently only implements the similaritySearchVectorWithScore method needed for our agent. Once we're done developing our native LangChain integration, we'll update this project accordingly.
  • When the non-streaming mode is enabled, the message history can cause an error after the user enters another query.
  • Our sources are available as URLs in the Upstash Vector Database, but we cannot show the sources explicitly when streaming. Instead, we provide the links to the chatbot as context and expect the bot to include the links in the response.