Skip to content
forked from daxa-ai/pebblo

Pebblo enables developers to safely load data and promote their Gen AI app to deployment

License

Notifications You must be signed in to change notification settings

KumarNitin19/pebblo

 
 

Repository files navigation


GitHub MIT license Documentation

PyPI PyPI - Downloads PyPI - Python Version

Discord Twitter Follow

Pebblo enables developers to safely load data and promote their Gen AI app to deployment without worrying about the organization’s compliance and security requirements. The project identifies semantic topics and entities found in the loaded data and summarizes them on the UI or a PDF report.

Pebblo has two components.

  1. Pebblo Daemon - a REST api application with topic-classifier, entity-classifier and reporting features
  2. Pebblo Safe DataLoader - a thin wrapper to Gen-AI framework's data loaders

Pebblo Daemon

Installation

Pre-requisites

Mac OSX
brew install pango
Linux (debian/ubuntu)
sudo apt-get install libpango-1.0-0 libpangoft2-1.0-0

Install Pebblo Daemon

pip install pebblo

Run Pebblo daemon

pebblo

see troubleshooting guide for troubleshooting info.

Pebblo daemon now listens to localhost:8000 to accept Gen-AI application data snippets for inspection and reporting.

Pebblo Optional Flags

  • --config <file>: Specifies a custom configuration file in yaml format.
pebblo --config config.yaml

Pebblo Safe DataLoader

Langchain

Pebblo Safe DataLoader is natively supported in Langchain framework. It is available in Langchain versions >=0.1.7

Enable Pebblo in Langchain Application

Add PebbloSafeLoader wrapper to the existing Langchain document loader(s) used in the RAG application. PebbloSafeLoader is interface compatible with Langchain BaseLoader. The application can continue to use load() and lazy_load() methods as it would on an Langchain document loader.

Here is the snippet of Lanchain RAG application using CSVLoader before enabling PebbloSafeLoader.

    from langchain.document_loaders.csv_loader import CSVLoader

    loader = CSVLoader(file_path)
    documents = loader.load()
    vectordb = Chroma.from_documents(documents, OpenAIEmbeddings())

The Pebblo SafeLoader can be enabled with few lines of code change to the above snippet.

    from langchain.document_loaders.csv_loader import CSVLoader
    from langchain_community.document_loaders.pebblo import PebbloSafeLoader

    loader = PebbloSafeLoader(
                CSVLoader(file_path),
                name="acme-corp-rag-1", # App name (Mandatory)
                owner="Joe Smith", # Owner (Optional)
                description="Support productivity RAG application", # Description (Optional)
    )
    documents = loader.load()
    vectordb = Chroma.from_documents(documents, OpenAIEmbeddings())

See here for samples with Pebblo enabled RAG applications and this document for more details.

Contribution

Pebblo is a open-source community project. If you want to contribute see Contributor Guidelines for more details.

License

Pebblo is released under the MIT License

About

Pebblo enables developers to safely load data and promote their Gen AI app to deployment

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 56.7%
  • JavaScript 18.3%
  • HTML 14.8%
  • CSS 9.5%
  • Makefile 0.7%