Spaces:
Runtime error
Runtime error
## Functionality Breakdown | |
### Internal Knowledge Exploration | |
- **memory_search**: Searches a Chroma vector store containing past findings, utilizing sentence embeddings to identify relevant information. | |
- **knowledgeBase_search**: Similar to `memory_search`, but specifically explores a collection within Chroma potentially holding research papers or relevant information chunks. | |
### External Information Retrieval | |
- **arxiv_search**: Retrieves scientific research papers from the Arxiv database based on user queries, stores metadata, and formats papers for display. | |
- **get_arxiv_paper**: Downloads full PDF content of a specific Arxiv paper based on its ID and saves it to a designated directory. | |
- **wikipedia_search**: Queries Wikipedia for relevant summaries based on user input, formats and stores retrieved summaries. | |
- **google_search**: Performs a Google Search using user queries, retrieves relevant results, and stores them for later use. | |
### Data Storage and Management | |
- **Chroma Vector Store**: Stores text content embeddings for similarity search (`memory_search`) and Arxiv paper embeddings (`embed_arvix_paper`). | |
- **Global `all_sources` Variable**: Accumulates retrieved information from various sources (Arxiv, Wikipedia, Google Search). | |
## Additional Notes | |
- These tools are integrated with a larger LangChain framework, as indicated by the `@tool` decorator. | |
- Configuration files (`config.ini`) define details like vector store location and collection names. | |
## Getting Started | |
1. Install the LangChain framework and required libraries. | |
2. Configure access to the Chroma vector store (likely involves environment variables or configuration files). | |
3. Refer to the InnovationPathfinderAI project documentation for detailed integration instructions. | |
## Disclaimer | |
This documentation provides an overview of the tools' functionalities. | |