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RAG Demo using Couchbase, Streamlit, Langchain, and OpenAI

This is a demo app built to chat with your custom PDFs using the vector search capabilities of Couchbase to augment the OpenAI results in a Retrieval-Augmented-Generation (RAG) model.

How does it work?

You can upload your PDFs with custom data & ask questions about the data in the chat box.

For each question, you will get two answers:

  • one using RAG (Couchbase logo)
  • one using pure LLM - OpenAI (🤖).

For RAG, we are using Langchain, Couchbase Vector Search & OpenAI. We fetch parts of the PDF relevant to the question using Vector search & add it as the context to the LLM. The LLM is instructed to answer based on the context from the Vector Store.

How to Run

  • Install dependencies

    pip install -r requirements.txt

  • Set the environment secrets

    Copy the secrets.example.toml file in .streamlit folder and rename it to secrets.toml and replace the placeholders with the actual values for your environment

    OPENAI_API_KEY = "<open_ai_api_key>"
    DB_CONN_STR = "<connection_string_for_couchbase_cluster>"
    DB_USERNAME = "<username_for_couchbase_cluster>"
    DB_PASSWORD = "<password_for_couchbase_cluster>"
    DB_BUCKET = "<name_of_bucket_to_store_documents>"
    DB_SCOPE = "<name_of_scope_to_store_documents>"
    DB_COLLECTION = "<name_of_collection_to_store_documents>"
    INDEX_NAME = "<name_of_fts_index_with_vector_support>"
    LOGIN_PASSWORD = "<password to access the streamlit app>"
    
  • Create the Search Index on Full Text Service

    We need to create the Search Index on the Full Text Service in Couchbase. For this demo, you can import the following index using the instructions.

    • Couchbase Capella

      • Copy the index definition to a new file index.json
      • Import the file in Capella using the instructions in the documentation.
      • Click on Create Index to create the index.
    • Couchbase Server

      • Click on Search -> Add Index -> Import
      • Copy the following Index definition in the Import screen
      • Click on Create Index to create the index.

    Index Definition

    Here, we are creating the index pdf_search on the documents in the docs collection within the shared scope in the bucket pdf-docs. The Vector field is set to embeddings with 1536 dimensions and the text field set to text. We are also indexing and storing all the fields under metadata in the document as a dynamic mapping to account for varying document structures. The similarity metric is set to dot_product. If there is a change in these parameters, please adapt the index accordingly.

    {
      "name": "pdf_search",
      "type": "fulltext-index",
      "params": {
          "doc_config": {
              "docid_prefix_delim": "",
              "docid_regexp": "",
              "mode": "scope.collection.type_field",
              "type_field": "type"
          },
          "mapping": {
              "default_analyzer": "standard",
              "default_datetime_parser": "dateTimeOptional",
              "default_field": "_all",
              "default_mapping": {
                  "dynamic": true,
                  "enabled": false
              },
              "default_type": "_default",
              "docvalues_dynamic": false,
              "index_dynamic": true,
              "store_dynamic": false,
              "type_field": "_type",
              "types": {
                  "shared.docs": {
                      "dynamic": true,
                      "enabled": true,
                      "properties": {
                          "embedding": {
                              "enabled": true,
                              "dynamic": false,
                              "fields": [
                                  {
                                      "dims": 1536,
                                      "index": true,
                                      "name": "embedding",
                                      "similarity": "dot_product",
                                      "type": "vector",
                                      "vector_index_optimized_for": "recall"
                                  }
                              ]
                          },
                          "text": {
                              "enabled": true,
                              "dynamic": false,
                              "fields": [
                                  {
                                      "index": true,
                                      "name": "text",
                                      "store": true,
                                      "type": "text"
                                  }
                              ]
                          }
                      }
                  }
              }
          },
          "store": {
              "indexType": "scorch",
              "segmentVersion": 16
          }
      },
      "sourceType": "gocbcore",
      "sourceName": "pdf-docs",
      "sourceParams": {},
      "planParams": {
          "maxPartitionsPerPIndex": 64,
          "indexPartitions": 16,
          "numReplicas": 0
      }
    }
    
  • Run the application

    streamlit run chat_with_pdf.py

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