Ollama Agent Roll Cage (OARC) is a Python-based framework combining the power of ollama LLMs, Coqui-TTS, Keras classifiers, LLaVA Vision, Whisper Speech Recognition, and YOLOv8 Object Detection into a unified chatbot agent API for local, custom automation. OARC enables seamless management and creation of intelligent agents through features such as:
By leveraging DuckDB, external tools, and interaction spaces, OARC empowers users to structure a "base reality" for agents, enhancing control over outcomes and fostering reliable, secure automation.
OARC also offers advanced tools for creating secure agent systems. By limiting model outputs to specific training data, users can implement their own fine-tuned models while exploring logical and ontological AI frameworks.
Letβs redefine the possibilities of AI-driven agents and collaborative development! π
Apache License 2.0 |MADE WITH META LLAMA | Coqui Public Model License 1.0.0