We're making it easy to create graphs and memory of the data you care about. Just select your documents, and your questions, and turn them into enterprise memory that compounds.
To facilitate Multi-Document Extraction and Graph creation, WhyHow.AI is open-sourcing Knowledge Table, an internal table-based multi-document extraction and graph creation tool, which has an agent within each cell to facilitate the extraction process. Extraction & Memory is now as easy as selecting your documents, running the set of questions you want against the system, and automatically converting the output into a set of Triples that you can immediately save as memory and query in WhyHow (or in other systems). For developers, we have found that inserting a tabular intermediary step for graph construction in your backend RAG system dramatically improves the accuracy of the graphs created. Some unique features here include: - Vector chunks tied to each cell answer - Rules & Type-based extraction guardrails - Chained Extraction Logic through Cell-to-Cell references You should use this tool if you are interested in extracting, storing and querying information across a large set of documents, as a business user or a RAG developer. Between Knowledge Table & our Platform, we provide: - Multi-Document Accuracy Uplift: 2.5x accuracy over ChatGPT 4o (in web browser) for multi-document retrieval, outperforming Text2Cypher by 2x, and beating GraphRAG. - Rule-Based Extraction Guardrails: Granular control of an open-source multi-document extraction process through Extraction Rules & Types - Ontology-Based Query Engine: An intuitive query engine that allows the user to call on both specific tools and columns directly when querying, allowing a seamless combination of both structured and unstructured retrieval Thomas Smoker Chris Rec