FedEx Services since Mar 1998
Technical Advisor
American Express Bank Feb 1997 - Feb 1998
Sr. Technical Analyst
TCS Hewlett Packard 1994 - 1997
Sr. Systems Analyst
Education:
Florida Institute of Technology
M.B.A., Finance, eBusiness
Indian Institute of Technology, Kharagpur
Master of Technology, Computer Science
Vidyasagar Viswavidyalaya
Master of Science, Mathematics, Computer Science
Skills:
Management Leadership Enterprise Architecture Weblogic Integration Requirements Analysis Vendor Management SDLC Oracle SOA IT Strategy
Honor & Awards:
* University Gold Medalist in Master of Science.
* Awards from FedEx Services
- Five Star Award by CEO
- Hall of Fame by CIO
- Worldwide Revenue and Collection Systems by VP (4 times)
- Leads by Example Eagle Award by Director
- Bravo Zulu by Managers & Directors (11 times)
- New York NY, US Song HE - Warren NJ, US Madhusudan RANA - Casselberry FL, US Pavithran RAJENDRAN - Tamil Nadu, IN
International Classification:
G06Q 40/02
Abstract:
In certain embodiments, transaction-subset-assignment of computer processing nodes may be facilitated to perform collateral allocation. In some embodiments, a query may be performed to obtain a set of transactions. Computer processing nodes may be selected from a set of available nodes for performing collateral allocations. Collateral allocation rules associated with a lender may be obtained, and each of the computer processing nodes may be caused to perform collateral allocations for one subset of the transaction set in accordance with the collateral allocation rules by assigning transactions of the transaction set respectively to the computer processing nodes such that the computer processing nodes collectively perform collateral allocations for the transaction set. In some embodiments, each of the computer processing nodes may be configured to transmit parameter updates to be provided to the other computer processing nodes and perform its respective collateral allocation based on the other computer processing nodes' parameter updates.
System And Method For Optimizing Data Processing In Cloud-Based, Machine Learning Environments Through The Use Of Self Organizing Map
- New York NY, US Song HE - Warren NJ, US Madhusudan RANA - Casselberry FL, US Pavithran RAJENDRAN - Tamil Nadu, IN Bryan CHAN - East Meadow NY, US
International Classification:
G06Q 40/06
Abstract:
Methods and system are described for optimizing data processing in cloud-based, machine learning environments. For example, through the use of a machine learning model utilizing a self organizing map and/or the use of specific processing nodes in a computer system to perform specific tasks the methods and system may more efficiently distribute tasks through a cloud computing environment and increase overall processing speeds despite increasing amounts of data. The methods and system described herein are particularly related to collateral allocation computer systems that automate the management of numerous collateral assets. For example, as the amount of collateral assets and the complexity of given transactions grow, typical allocation systems face frequent processing delays related to collateral allocations (e.g., allocations of collateral associated with Tri-Party Repos).
System And Method For Optimizing Data Processing In Cloud-Based, Machine Learning Environments Through The Use Of Self Organizing Map
- New York NY, US Song HE - Warren NJ, US Madhusudan RANA - Casselberry FL, US Pavithran RAJENDRAN - Tamil Nadu, IN Bryan CHAN - East Meadow NY, US
International Classification:
G06Q 40/06
Abstract:
Methods and system are described for optimizing data processing in cloud-based, machine learning environments. For example, through the use of a machine learning model utilizing a self organizing map and/or the use of specific processing nodes in a computer system to perform specific tasks the methods and system may more efficiently distribute tasks through a cloud computing environment and increase overall processing speeds despite increasing amounts of data. The methods and system described herein are particularly related to collateral allocation computer systems that automate the management of numerous collateral assets. For example, as the amount of collateral assets and the complexity of given transactions grow, typical allocation systems face frequent processing delays related to collateral allocations (e.g., allocations of collateral associated with Tri-Party Repos).
System And Method For Optimizing Collateral Management
- New York NY, US Song HE - Warren NJ, US Madhusudan RANA - Casselberry FL, US Pavithran RAJENDRAN - Tamil Nadu, IN
International Classification:
G06Q 40/02
Abstract:
In certain embodiments, transaction-subset-assignment of computer processing nodes may be facilitated to perform collateral allocation. In some embodiments, a query may be performed to obtain a set of transactions. Computer processing nodes may be selected from a set of available nodes for performing collateral allocations. Collateral allocation rules associated with a lender may be obtained, and each of the computer processing nodes may be caused to perform collateral allocations for one subset of the transaction set in accordance with the collateral allocation rules by assigning transactions of the transaction set respectively to the computer processing nodes such that the computer processing nodes collectively perform collateral allocations for the transaction set. In some embodiments, each of the computer processing nodes may be configured to transmit parameter updates to be provided to the other computer processing nodes and perform its respective collateral allocation based on the other computer processing nodes' parameter updates.
System And Method For Optimizing Collateral Management
- New York NY, US Song HE - Warren NJ, US Madhusudan RANA - Casselberry FL, US Pavithran RAJENDRAN - Tamil Nadu, IN
International Classification:
G06Q 40/02
US Classification:
705 38
Abstract:
A system for managing collateral allocations in Tri-Party repurchasing agreement(s) includes memory element(s) coupled to processor(s) and configured to store deal attributes including rule sets associated with a lender l, and collateral characteristic(s) for collateral provided by the borrower b that are associated with each of the Tri-Party repurchasing agreements. The system includes at least one collateral allocation module, configured through the processor(s) to optimize auto cash, an amount short, a cost of carry index, and optimize a collateralization index, associated with the Tri-Party repurchasing agreement(s). A similar system includes at least one collateral allocation module, configured through the processor(s) to optimize a settlement index, a collateralization index, and a cost of carry index, associated with the Tri-Party repurchasing agreement(s). Associated methods are also disclosed.