Abstract: Systems, computer program products, and methods are described herein for implementing parametric optimization analysis for resource selection. The present invention is configured to determine a first set of requirements associated with a resource exchange agreement; identify one or more non-fungible tokens (NFTs) for one or more categories of past resource exchange agreements based on at least the first set of requirements; extract, from the one or more NFTs, one or more resource descriptors associated with one or more past resource exchange agreements in the one or more categories; predict, using a machine learning subsystem, an optimal resource valuation model for one or more resources that meet the first set of requirements using the one or more resource descriptors and the first set of requirements; and transmit control signals configured to cause a first end-point device to display the optimal resource valuation model.
Abstract: Systems, computer program products, and methods are described herein for resource transfer mode evaluation in distributed network using semi-dynamic tokenized graph node processing. The present disclosure is configured to receive resource data from one or more resource transfer channels; extract metadata from the resource data and determine one or more resource transfer processing requests; generate a dynamic hash value for the one or more resource transfer processing requests; tokenize the dynamic hash value to generate a semi-dynamic token; select a resource gateway and a resource mode for the one or more resource transfer processing requests; generate a key value pair for the selected resource gateway and the resource mode; tokenize the key value pair and store the tokenized key value pair on a distributed ledger; and flag one or more non-selected resource gateways and resource nodes.
Abstract: Systems, methods, and apparatus are provided for a dynamic contract payment term (“payterm”) generator. A machine learning algorithm may generate a replacement payment term for a contract based on market-based parameters and blockchain metadata for the contract. The blockchain metadata may encode hierarchical interdependencies between contracts using blockchain encryption. The blockchain metadata may be applied to auto-generate machine learning inputs for related contracts having interdependent payment terms. The machine learning inputs may include contract parameters that have been extracted and encrypted as blockchain metadata, as well as market-based parameters extracted from enterprise sources.
Type:
Grant
Filed:
May 10, 2021
Date of Patent:
February 7, 2023
Assignee:
Bank of America Corporation
Inventors:
Sakshi Bakshi, Siva Kumar Paini, Amod Jha, Amit Kumar Sati
Abstract: Systems, computer program products, and methods are described herein for implementing parametric optimization analysis for resource selection. The present invention is configured to determine a first set of requirements associated with a resource exchange agreement; identify one or more non-fungible tokens (NFTs) for one or more categories of past resource exchange agreements based on at least the first set of requirements; extract, from the one or more NFTs, one or more resource descriptors associated with one or more past resource exchange agreements in the one or more categories; predict, using a machine learning subsystem, an optimal resource valuation model for one or more resources that meet the first set of requirements using the one or more resource descriptors and the first set of requirements; and transmit control signals configured to cause a first end-point device to display the optimal resource valuation model.
Abstract: Systems, methods, and apparatus are provided for a dynamic contract payment term (“payterm”) generator. A machine learning algorithm may generate a replacement payment term for a contract based on market-based parameters and blockchain metadata for the contract. The blockchain metadata may encode hierarchical interdependencies between contracts using blockchain encryption. The blockchain metadata may be applied to auto-generate machine learning inputs for related contracts having interdependent payment terms. The machine learning inputs may include contract parameters that have been extracted and encrypted as blockchain metadata, as well as market-based parameters extracted from enterprise sources.
Type:
Application
Filed:
May 10, 2021
Publication date:
November 10, 2022
Inventors:
Sakshi Bakshi, Siva Kumar Paini, Amod Jha, Amit Kumar Sati