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Knowledge Graph Builder App

This application is designed to convert PDF documents into a knowledge graph stored in Neo4j. It utilizes the power of OpenAI's GPT/Diffbot LLM(Large language model) to extract nodes, relationships and properties from the text content of the PDF and then organizes them into a structured knowledge graph using Langchain framework. Files can be uploaded from local machine or S3 bucket and then LLM model can be chosen to create the knowledge graph.

Getting started

⚠️ For the backend, if you want to run the LLM KG Builder locally, and don't need the GCP/VertexAI integration, make sure to have the following set in your ENV file :

GEMINI_ENABLED = False
GCP_LOG_METRICS_ENABLED = False

And for the frontend, make sure to export your local backend URL before running docker-compose by having the BACKEND_API_URL set in your ENV file :

BACKEND_API_URL="http://localhost:8000"
  1. Run Docker Compose to build and start all components:

    docker-compose up --build
  2. Alternatively, you can run specific directories separately:

    • For the frontend:

      cd frontend
      yarn
      yarn run dev
    • For the backend:

      cd backend
      python -m venv envName
      source envName/bin/activate 
      pip install -r requirements.txt
      uvicorn score:app --reload

To deploy the app and packages on Google Cloud Platform, run the following command on google cloud run:

# Frontend deploy 
gcloud run deploy 
source location current directory > Frontend
region : 32 [us-central 1]
Allow unauthenticated request : Yes
# Backend deploy 
gcloud run deploy --set-env-vars "OPENAI_API_KEY = " --set-env-vars "DIFFBOT_API_KEY = " --set-env-vars "NEO4J_URI = " --set-env-vars "NEO4J_PASSWORD = " --set-env-vars "NEO4J_USERNAME = "
source location current directory > Backend
region : 32 [us-central 1]
Allow unauthenticated request : Yes

Features

  • PDF Upload: Users can upload PDF documents using the Drop Zone.
  • S3 Bucket Integration: Users can also specify PDF documents stored in an S3 bucket for processing.
  • Knowledge Graph Generation: The application employs OpenAI/Diffbot's LLM to extract relevant information from the PDFs and construct a knowledge graph.
  • Neo4j Integration: The extracted nodes and relationships are stored in a Neo4j database for easy visualization and querying.
  • Grid View of source node files with : Name,Type,Size,Nodes,Relations,Duration,Status,Source,Model

Setting up Environment Variables

Create .env file and update the following env variables.
OPENAI_API_KEY = ""
DIFFBOT_API_KEY = ""
NEO4J_URI = ""
NEO4J_USERNAME = ""
NEO4J_PASSWORD = ""
AWS_ACCESS_KEY_ID = ""
AWS_SECRET_ACCESS_KEY = ""
EMBEDDING_MODEL = ""
IS_EMBEDDING = "TRUE"
KNN_MIN_SCORE = ""

Setting up Enviournment Variables For Frontend Configuration

Create .env file in the frontend root folder and update the following env variables.
BACKEND_API_URL=""
BLOOM_URL=""
REACT_APP_SOURCES=""
LLM_MODELS=""
ENV=""
TIME_PER_CHUNK=

Functions/Modules

extract_graph_from_file(uri, userName, password, file_path, model):

Extracts nodes , relationships and properties from a PDF file leveraging LLM models.

Args:
 uri: URI of the graph to extract
 userName: Username to use for graph creation ( if None will use username from config file )
 password: Password to use for graph creation ( if None will use password from config file )
 file: File object containing the PDF file path to be used
 model: Type of model to use ('Gemini Pro' or 'Diffbot')

 Returns: 
 Json response to API with fileName, nodeCount, relationshipCount, processingTime, 
 status and model as attributes.
neoooo

create_source_node_graph(uri, userName, password, file):

Creates a source node in Neo4jGraph and sets properties.

Args:
 uri: URI of Graph Service to connect to
 userName: Username to connect to Graph Service with ( default : None )
 password: Password to connect to Graph Service with ( default : None )
 file: File object with information about file to be added

Returns: 
 Success or Failure message of node creation
neo_workspace

get_source_list_from_graph():

 Returns a list of file sources in the database by querying the graph and 
 sorting the list by the last updated date. 
get_source

Chunk nodes and embeddings creation in Neo4j

chunking

Application Walkthrough

KGB.mp4

Links

The Public Google cloud Run URL. Workspace URL

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Neo4j graph construction from unstructured data

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