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GenAI/RAG Sandbox for experimentation using Oracle Database AI Vector Search

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Oracle AI Microservices Sandbox

🚧 Developer Preview

Description

The Oracle AI Microservices Sandbox provides a streamlined environment where developers and data scientists can explore the potential of Generative Artificial Intelligence (GenAI) combined with Retrieval-Augmented Generation (RAG) capabilities. By integrating Oracle Database 23ai AI Vector Search, the Sandbox enables users to enhance existing Large Language Models (LLMs) through RAG.

Sandbox Features

Getting Started

The Oracle AI Microservices Sandbox is available to install in your own environment, which may be a developer's desktop, on-premises data center environment, or a cloud provider. It can be run either on bare-metal, within a container, or in a Kubernetes Cluster.

For more information, including more details on Setup and Configuration please visit the documentation.

Prerequisites

  • Oracle Database 23ai incl. Oracle Database 23ai Free
  • Python 3.11 (for running Bare-Metal)
  • Container Runtime e.g. docker/podman (for running in a Container)
  • Access to an Embedding and Chat Model:
    • API Keys for Third-Party Models
    • On-Premises Models*

*Oracle recommends running On-Premises Models on hardware with GPUs. For more information, please review the Infrastructure documentation.

Bare-Metal Installation

To run the application on bare-metal; download the source and from the top-level directory:

  1. Create and activate a Python Virtual Environment:

    python3.11 -m venv .venv
    source .venv/bin/activate
    pip3 install --upgrade pip wheel
  2. Install the Python modules:

    pip3 install -r app/requirements.txt
  3. Exit from your shell and run again:

    source .venv/bin/activate
  4. Start Streamlit:

    cd app/src
    streamlit run oaim-sandbox.py --server.port 8501
  5. Navigate to http://localhost:8501.

  6. Configure the Sandbox.

Container Installation

To run the application in a container; download the source and from the top-level directory:

  1. Build the image.

    From the app/ directory, build Image:

    podman build -t oaim-sandbox .
  2. Start the Container:

    podman run -p 8501:8501 -it --rm oaim-sandbox
  3. Navigate to http://localhost:8501.

  4. Configure the Sandbox.

Contributing

This project welcomes contributions from the community. Before submitting a pull request, please review our contribution guide.

Security

Please consult the security guide for our responsible security vulnerability disclosure process.

License

Copyright (c) 2024 Oracle and/or its affiliates. Released under the Universal Permissive License v1.0 as shown at https://oss.oracle.com/licenses/upl/

See LICENSE for more details.