← USPTO Patent Applications

Systems and Methods for Graph-Based AI Training

Application US20260077785A1 Kind: A1 Mar 19, 2026

Assignee

dRISK, Inc.

Inventors

Robert Chess Stetson, Kris Chaisanguanthum, Robert Ferguson, Boris Revechkis

Abstract

Graphs are powerful structures made of nodes and edges. Information can be encoded in the nodes and edges themselves, as well as the connections between them. Graphs can be used to create manifolds which in turn can be used to efficiently train more robust AI systems. Systems and methods for graph-based AI training in accordance with embodiments of the invention are illustrated. In one embodiment, a graph interface system including a processor, and a memory configured to store a graph interface application, where the graph interface application directs the processor to obtain a set of training data, where the set of training data describes a plurality of scenarios, encode the set of training data into a first knowledge graph, generate a manifold based on the first knowledge graph, and train an AI model by traversing the manifold.

CPC Classifications

B60W 60/001 G05D 1/249 G06F 18/22 G06F 18/23 G06N 3/08 G06N 5/02 G06N 5/04 G06V 10/774 G06V 10/84 G06V 20/56

Filing Date

2025-11-26

Application No.

19402666