Developer sample written in Angular demonstrating how developers might ingest developer docs and make the content accessible to Gemini via RAG (Retrieval Augmented Generation). The ingested content is accessible in the sample through an Angular chatbot.
chat-demo.mov
This project was generated with Angular CLI and uses DocsAgent, to impliment RAG (Retrieval Augmented Generation) with Gemini and create a domain-specific expertise chatbot. This sample uses Googles Semantic Revtriever API and Generative Language APIs as well as an AQA (Attributed Questions and Answer) model with Gemini Pro.
For more information on Angular, visit angular.dev.
- Create a personal fork of the project on GitHub, then clone the fork on your local machine.
- Run
npm run i
to install the dependencies required to run the server. - [IMPORTANT!!] This demo needs a Gemini API to run. Go to Google AI Studio to get an API key then add it to the Firebase Function in
functions/.env
. This demo simulates how you might store and protect a private Gemini API key in a real world app. - [IMPORTANT!!] This demo relies on a
CORPUS_NAME
from Docs Agent, then authenticates with aservice_account_key.json
. See DocsAgent Set Up guide to set up your own corpus and authentication. You'll need to replacefunctions/service_account_key.json
with the one provided to you by Google Cloud, and then make sure to march theCORPUS_NAME
infunctions/
to your uploaded corpus id. - Run
ng run angular-chatbot:serve
to run the server. Since we're using Firebase Functions, you'll need to run our functions and the app in a Firebase Emulator, this command does this automatically! - Open a browser tab to http://localhost:4200. The app will automatically reload if you change any of the source files.