Skip to content

OVALChat is a customizable Web app aimed at conducting user studies with chatbots

Notifications You must be signed in to change notification settings

stanford-oval/ovalchat

Repository files navigation

OVALChat

Quick and easy way to conduct user studies with chatbots

Stanford University

Powered by Vercel


About

This repository contains researcher-friendly code to quickly bring up a web-based chatbot to conduct user studies. Features include:

  • Support for multiple users at the same time
  • Easily customizable UI
  • Ready to deploy to Vercel
  • Support for user studies: You can easily ask users to select the best system configuration per turn, by showing them side-by-side replies via the "Contribute" page. They will receive a code after finishing a predetermined number of turns, which can be used to link their response to other platforms like Amazon Mechanical Turk.

This project built with Next.js, Tailwind CSS, OpenAI's GPT-3, and Microsoft Azure's Speech Services.

Customize the UI


This is what the default chat interface looks like.

You can customize this and the full page, by simply changing the following files:

  • src/components/global/branding.tsx: Contains "branding" information for the website. Update all functions to match your brand.
  • src/data/socials.ts: Update social media and website links.
  • tailwind.config.js: Update the theme colors under ovalchat.

Developer Setup

Create a .env.local file for the following environment variables.

For the chatbot to talk to the back-end, you should set NEXT_PUBLIC_CHAT_BACKEND=https://[your back-end domain]:[port number] (without / at the end).

For the speech-to-text and text-to-speech functionality, create an Azure speech resource (and a corresponding resource group).

SPEECH_KEY=[your API key]
SPEECH_REGION=[your API key]

To do crowdsourcing in the "Contribute" page, set the following variables to your desired values in the same file.

NEXT_PUBLIC_CROWDSOURCE_MAX_TURNS=8     # Users will be prompted to stop after this many turns

Run in Development Mode

Implement a custom back-end

A mock back-end implementation is available in test_backend.py. Install the python packages in requirements.txt.

This mock implementation only echoes back the inputs it receives. To make your chatbot actually work, you need to implement a custom back-end in this file. Read through test_backend.py and implement your own logic there. Most applications need to read and write user inputs to/from a database like MongoDB. If you only have a single user, e.g. when testing the application on your local system, you can use a Python data structure for this purpose instaed of a database, but note that these data structures are not thread-safe and therefore not suitable for applications that have concurrent users.

Run the back-end

Run

python test_backend.py

This will bring up a local web server on port 5001. Meaning that requests to http://localhost:5001 will be handled by this server. You can set NEXT_PUBLIC_CHAT_BACKEND to http://localhost:5001 to develop and test the application on your local system.

Run the front-end

To run the front-end locally for development, install the dependencies from your package manager and start the Next.js app.

yarn install
yarn run dev

You will see a message like ready - started server on 0.0.0.0:3000, url: http://localhost:3000. This means that you can access the website via a web browser by visiting http://localhost:3000.

Deploy the front-end

So far, we have been running the server in "development" mode, where changes to the code automatically refreshes any open webpage, and provides extensive debugging information when an error happens. This is not needed when deploying the front-end, and just slows down the website. To run the server in deployment mode, run:

yarn build
yarn start

If you want to deploy the front-end on port 80 (so that you can visit the front-end without the need to type in a port number in the browser), you need to first give node permission to use ports below 1024. Run:

sudo apt-get install libcap2-bin
sudo setcap cap_net_bind_service=+ep `readlink -f \`which node\``

Then add -p 80 option to the above yarn start command.

Deploy the front-end to Vercel

This website can be easily deployed to vercel.com If you want to deploy from a branch other than main, you need to change the vercel-deploy-branch.sh script to allow your branch to be deployed.

Citation

If you have used this repository, please cite the following paper:

@inproceedings{semnani-etal-2023-wikichat,
    title = "{W}iki{C}hat: Stopping the Hallucination of Large Language Model Chatbots by Few-Shot Grounding on {W}ikipedia",
    author = "Semnani, Sina  and
      Yao, Violet  and
      Zhang, Heidi  and
      Lam, Monica",
    booktitle = "Findings of the Association for Computational Linguistics: EMNLP 2023",
    month = dec,
    year = "2023",
    address = "Singapore",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2023.findings-emnlp.157",
    pages = "2387--2413",
}