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2023 1
2022 2
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Classe IPC
G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet 6
G06F 17/16 - Calcul de matrice ou de vecteur 2
G06F 9/50 - Allocation de ressources, p.ex. de l'unité centrale de traitement [UCT] 2
G06N 5/04 - Modèles d’inférence ou de raisonnement 2
E21B 44/00 - Systèmes de commande automatique spécialement adaptés aux opérations de forage, c. à d. systèmes à fonctionnement autonome ayant pour rôle d'exécuter ou de modifier une opération de forage sans l'intervention d'un opérateur humain, p.ex. systèmes de ; Systèmes spécialement adaptés à la surveillance de plusieurs variables ou conditions de forage 1
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1.

QUALITY PREDICTION USING PROCESS DATA

      
Numéro d'application US2022013319
Numéro de publication 2023/003595
Statut Délivré - en vigueur
Date de dépôt 2022-01-21
Date de publication 2023-01-26
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Kakde, Deovrat Vijay
  • Wang, Haoyu
  • Mcguirk, Anya Mary

Abrégé

A computing device (2002) accesses a machine learning model (2050) trained on training data (2032) of first bonding operations (1308, 2040A) (e.g., a ball and/or stitch bond). The first bonding operations comprise operations to bond a first set of wires (1504) to a first set of surfaces (1506, 1508). The machine learning model is trained by supervised learning. The device receives input data (2070) indicating process data (2074) generated from measurements of second bonding operations (2040B). The second bonding operations comprise operations to bond a second set of wires to a second set of surfaces. The device weights the input data according to the machine learning model. The device generates an anomaly predictor (2052) indicating a risk for an anomaly occurrence in the second bonding operations based on weighting the input data according to the machine learning model. The device outputs the anomaly predictor to control the second bonding operations.

Classes IPC  ?

  • G06E 1/00 - Dispositions pour traiter exclusivement des données numériques

2.

MACHINE-LEARNING TECHNIQUES FOR AUTOMATICALLY IDENTIFYING TOPS OF GEOLOGICAL LAYERS IN SUBTERRANEAN FORMATIONS

      
Numéro d'application US2021051596
Numéro de publication 2022/216311
Statut Délivré - en vigueur
Date de dépôt 2021-09-22
Date de publication 2022-10-13
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Peredriy, Sergiy
  • Holdaway, Keith Richard

Abrégé

Tops of geological layers can be automatically identified using machine-learning techniques as described herein. In one example, a system can receive well log records associated with wellbores drilled through geological layers. The system can generate well clusters by applying a clustering process to the well log records. The system can then obtain a respective set of training data associated with a well cluster, train a machine-learning model based on the respective set of training data, select a target well-log record associated with a target wellbore of the well cluster, and provide the target well-log record as input to the trained machine-learning model. Based on an output from the trained machine-learning model, the system can determine the geological tops of the geological layers in a region surrounding the target wellbore. The system may then transmit an electronic signal indicating the geological tops of the geological layers associated with the target wellbore.

Classes IPC  ?

  • G06F 16/587 - Recherche caractérisée par l’utilisation de métadonnées, p.ex. de métadonnées ne provenant pas du contenu ou de métadonnées générées manuellement utilisant des informations géographiques ou spatiales, p.ex. la localisation
  • G06F 16/909 - Recherche caractérisée par l’utilisation de métadonnées, p.ex. de métadonnées ne provenant pas du contenu ou de métadonnées générées manuellement utilisant des informations géographiques ou spatiales, p.ex. la localisation
  • G01V 1/40 - Séismologie; Prospection ou détection sismique ou acoustique spécialement adaptées au carottage
  • G06F 16/387 - Recherche caractérisée par l’utilisation de métadonnées, p.ex. de métadonnées ne provenant pas du contenu ou de métadonnées générées manuellement utilisant des informations géographiques ou spatiales, p.ex. la localisation

3.

SPEECH-TO-ANALYTICS FRAMEWORK WITH SUPPORT FOR LARGE N-GRAM CORPORA

      
Numéro d'application CN2021082572
Numéro de publication 2022/198474
Statut Délivré - en vigueur
Date de dépôt 2021-03-24
Date de publication 2022-09-29
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Yang, Xu
  • Li, Xiaolong
  • Wilsey, Biljana Belamaric
  • Liu, Haipeng
  • Peterson, Jared

Abrégé

An apparatus includes processor (s) to: generate a set of candidate n-grams based on probability distributions from an acoustic model for candidate graphemes of a next word most likely spoken following at least one preceding word spoken within speech audio; provide the set of candidate n-grams to multiple devices; provide, to each node device, an indication of which candidate n-grams are to be searched for within the n-gram corpus by each node device to enable searches for multiple candidate n-grams to be performed, independently and at least partially in parallel, across the node devices; receive, from each node device, an indication of a probability of occurrence of at least one candidate n-gram within the speech audio; based on the received probabilities of occurrence, identify the next word most likely spoken within the speech audio; and add the next word most likely spoken to a transcript of the speech audio.

Classes IPC  ?

  • G10L 15/32 - Reconnaisseurs multiples utilisés en séquence ou en parallèle; Systèmes de combinaison de score à cet effet, p.ex. systèmes de vote
  • G10L 15/30 - Reconnaissance distribuée, p.ex. dans les systèmes client-serveur, pour les applications en téléphonie mobile ou réseaux
  • G10L 15/04 - Segmentation; Détection des limites de mots
  • G10L 15/16 - Classement ou recherche de la parole utilisant des réseaux neuronaux artificiels
  • G10L 15/187 - Contexte phonémique, p.ex. règles de prononciation, contraintes phonotactiques ou n-grammes de phonèmes
  • G10L 15/197 - Grammaires probabilistes, p.ex. n-grammes de mots

4.

DISTRIBUTED COLUMNAR DATA SET STORAGE AND RETRIEVAL

      
Numéro d'application US2020060379
Numéro de publication 2021/101798
Statut Délivré - en vigueur
Date de dépôt 2020-11-13
Date de publication 2021-05-27
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Bowman, Brian Payton
  • Keener, Gordon Lyle
  • Knight, Richard Todd

Abrégé

An apparatus includes a processor to: instantiate collection threads, data buffers of a queue, and aggregation threads: within each collection thread, assemble a row group from a subset of the multiple rows, reorganize the data values row-wise to columnar organization, and store the row group within a data buffer of the queue; operate the buffer queue as a FIFO buffer; within each aggregation thread, retrieve multiple row groups from multiple data buffers of the queue, assemble a data set part from the multiple row groups, transmit, to storage device(s) via a network, the data set part; and in response to each instance of retrieval of a row group from a data buffer of the buffer queue for use within an aggregation thread, analyze a level of availability of at least storage space within the node device to determine whether to dynamically adjust the quantity of data buffers of the buffer queue.

Classes IPC  ?

  • G06F 12/02 - Adressage ou affectation; Réadressage
  • G06F 16/22 - Indexation; Structures de données à cet effet; Structures de stockage
  • G06F 16/182 - Systèmes de fichiers distribués
  • G06F 16/13 - Structures d’accès aux fichiers, p.ex. indices distribués

5.

DISTRIBUTED DATA SET ENCRYPTION AND DECRYPTION

      
Numéro d'application US2017052486
Numéro de publication 2018/231266
Statut Délivré - en vigueur
Date de dépôt 2017-09-20
Date de publication 2018-12-20
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Bowman, Brian Payton
  • Gass, Mark Kuebler

Abrégé

An apparatus includes a processor component of a first node device caused to receive data block encryption data and an indication of size of an encrypted data block distributed to the first node device for decryption, and in response to the data set being of encryptd data: receive an indication of the quantity of sub-blocks within the encrypted data block, and a hashed identifier for each data sub-block; use the data block encryption data to decrypt the encrypted data block to regenerate data set portions from the data sub-blocks; analyze the hashed identifier of each data sub-block to determine whether all data set portions are distributed to the first node device for processing; and in response to a determination that at least one data set portion is to be distributed to a second node device for processing, transmit the at least one data set portion to the second node device.

Classes IPC  ?

  • H04L 9/00 - Dispositions pour les communications secrètes ou protégées; Protocoles réseaux de sécurité
  • G06F 12/14 - Protection contre l'utilisation non autorisée de mémoire

6.

DISTRIBUTED DATA SET INDEXING

      
Numéro d'application US2018015919
Numéro de publication 2018/148059
Statut Délivré - en vigueur
Date de dépôt 2018-01-30
Date de publication 2018-08-16
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Bowman, Brian Payton
  • Keener, Gordon Lyle
  • Krueger, Steven E.

Abrégé

An apparatus including a processor to receive search criteria including a data value for a search within a data field; in response to the receipt of the query instructions, and for each data cell within a super cell, perform the specified search by comparing the data value to ranges of values indicated in a corresponding cell index to determine whether the data cell includes a data record meeting the search criteria, and in response to a determination that the data cell includes such a data record, use a unique values index in the cell index to search the data records of the data cell to identify one or more data records meeting the search criteria; and in response to identifying at least one data record meeting the search criteria, provide an indication that at least the data cell includes at least one data record meeting the search criteria.

Classes IPC  ?

  • G06F 7/00 - Procédés ou dispositions pour le traitement de données en agissant sur l'ordre ou le contenu des données maniées
  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet

7.

EVENT STREAM PROCESSING CLUSTER MANAGER

      
Numéro d'application US2017062046
Numéro de publication 2018/106426
Statut Délivré - en vigueur
Date de dépôt 2017-11-16
Date de publication 2018-06-14
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Kolodzieski, Scott J.
  • Deters, Vincent L.
  • Huang, Shu
  • Levey, Robert A.

Abrégé

A first computing device manages a cluster of event stream processing (ESP) engines (ESPEs). A local ESP model is created based on information read from a manager configuration file that includes first connection information to connect to the second computing device and second connection information to connect the third computing device. An ESPE is instantiated on the first computing device based on the created local ESP model. The event block object is received from the second computing device in a first source window of the instantiated ESPE. A remote ESP model is deployed to a remote third computing device. The manager configuration file includes an indicator of the remote ESP model. The third computing device to receive the processed event block object is selected. The processed event block object is published to a second source window defined by the remote ESP model deployed to the third computing device.

Classes IPC  ?

  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet
  • G06F 9/54 - Communication interprogramme
  • H04L 29/08 - Procédure de commande de la transmission, p.ex. procédure de commande du niveau de la liaison

8.

ADVANCED CONTROL SYSTEMS FOR MACHINES

      
Numéro d'application US2017056777
Numéro de publication 2018/075400
Statut Délivré - en vigueur
Date de dépôt 2017-10-16
Date de publication 2018-04-26
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Leonard, Michael James
  • Elsheimer, David Bruce

Abrégé

Machines can be controlled using advanced control systems. Such control systems may use an automated version of singular spectrum analysis to control a machine. For example, a control system can perform singular spectrum analysis on a time series by: generating a trajectory matrix from the time series, performing singular value decomposition on the trajectory matrix to determine elementary matrices and corresponding eigenvalues, and automatically categorizing the elementary matrices into groups. The elementary matrices can be automatically categorized into the groups by: generating a matrix of w-correlation values based on the eigenvalues, categorizing the w-correlation values into a predefined number of w-correlation sets, and forming the groups based on the predefined number of w-correlation sets. The control system can then determine component time-series based on the groups, and generate a predictive forecast using the component time-series. The control system can use the predictive forecast to control operation of the machine.

Classes IPC  ?

  • G06F 17/00 - TRAITEMENT ÉLECTRIQUE DE DONNÉES NUMÉRIQUES Équipement ou méthodes de traitement de données ou de calcul numérique, spécialement adaptés à des fonctions spécifiques
  • G06F 17/16 - Calcul de matrice ou de vecteur
  • G06F 17/18 - Opérations mathématiques complexes pour l'évaluation de données statistiques
  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet
  • G06N 99/00 - Matière non prévue dans les autres groupes de la présente sous-classe

9.

CYBERSECURITY SYSTEM

      
Numéro d'application US2017019337
Numéro de publication 2017/147411
Statut Délivré - en vigueur
Date de dépôt 2017-02-24
Date de publication 2017-08-31
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Harris, Bryan C.
  • Goodwin, Glen R.
  • Dyer, Sean Riley
  • Boakye, Jr., Alexius Kofi Ameyaw
  • Smith, Christopher Francis
  • Telang, Pankaj Ramesh
  • Herrick, Damian Tane

Abrégé

A computing device resolves a prioritized list of Internet protocol (IP) address to domain names. Each request of a plurality of requests is added to a request list using a priority value. A lookup request packet is created from a first request selected from the request list and then removed from the request list. The lookup request packet is sent to a third computing device, and includes an IP address for which to resolve the domain name. A response is received from the third computing device that includes the IP address and the domain name of the IP address. The IP address is added to keystore data in association with the domain name. When the request list includes a next request, the next request is selected from the request list, and processing continues with creating the lookup request packet with the next request.

Classes IPC  ?

  • H04L 29/06 - Commande de la communication; Traitement de la communication caractérisés par un protocole
  • G06F 15/16 - Associations de plusieurs calculateurs numériques comportant chacun au moins une unité arithmétique, une unité programme et un registre, p.ex. pour le traitement simultané de plusieurs programmes
  • H04L 12/26 - Dispositions de surveillance; Dispositions de test

10.

DISTRIBUTED DATA SET STORAGE AND RETRIEVAL

      
Numéro d'application US2016044309
Numéro de publication 2017/019794
Statut Délivré - en vigueur
Date de dépôt 2016-07-27
Date de publication 2017-02-02
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Bowman, Brian Payton
  • Krueger, Steven E.
  • Knight, Richard Todd
  • Ho, Chih-Wei

Abrégé

An apparatus includes a processor component caused to: retrieve metadata of organization of data within a data set, and map data of organization of data blocks within a data file; receive indications of which node devices are available to perform a processing task with a data set portion; and in response to the data set including partitioned data, compare the quantities of available node devices and of the node devices last involved in storing the data set. In response to a match, for cacti map data map entry: retrieve a hashed identifier for a data sub-block, and a size for each of the data sub-blocks within the corresponding data block; divide the hashed identifier by the quantity of available node devices; compare the modulo value to a designation assigned to each of the available node devices; and provide a pointer to the available node device assigned the matching designation.

Classes IPC  ?

  • G06F 12/00 - Accès à, adressage ou affectation dans des systèmes ou des architectures de mémoires
  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet
  • G06N 5/02 - Représentation de la connaissance; Représentation symbolique
  • G06N 5/04 - Modèles d’inférence ou de raisonnement

11.

GENERATING ACCURATE REASON CODES WITH COMPLEX NON-LINEAR MODELING AND NEURAL NETWORKS

      
Numéro d'application US2015058403
Numéro de publication 2016/070096
Statut Délivré - en vigueur
Date de dépôt 2015-10-30
Date de publication 2016-05-06
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Diev, Vesselin
  • Duke, Brian Lee

Abrégé

A computer system computes a score for a received data exchange and, in accordance with a neural network and input variables determined by received current exchange and history data, the computed score indicates a condition suitable for a denial. A set of attribution scores are computed using an Alternating Decision Tree model in response to a computed score that is greater than a predetermined score threshold value for the denial. The computed score is provided to an assessment unit and, if the computed score indicates a condition suitable for the denial and if attribution scores are computed, then a predetermined number of input variable categories from a rank-ordered list of input variable categories is also provided to the assessment unit of the computer system.

Classes IPC  ?

  • G06N 5/04 - Modèles d’inférence ou de raisonnement

12.

SYSTEMS AND METHODS FOR FAULT TOLERANT COMMUNICATIONS

      
Numéro d'application US2015037192
Numéro de publication 2016/003708
Statut Délivré - en vigueur
Date de dépôt 2015-06-23
Date de publication 2016-01-07
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s) Knight, Richard

Abrégé

Apparatuses, systems and methods are disclosed for tolerating fault in a communications grid. Specifically, various techniques and systems are provided for detecting a fault or failure by a node in a network of computer nodes in a communications grid, adjusting the grid to avoid grid failure, and taking action based on the failure. In an example, a system may include receiving grid status information at a backup control node, the grid status information including a project status, storing the grid status information within the backup control node, receiving a failure communication including an indication that a primary control node has failed, designating the backup control node as a new primary control node, receiving updated grid status information based on the indication that the primary control node has failed, and transmitting a set of instructions based on the updated grid status information.

Classes IPC  ?

  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet

13.

COMPUTER SYSTEM TO SUPPORT FAILOVER IN AN EVENT STREAM PROCESSING SYSTEM

      
Numéro d'application US2015032370
Numéro de publication 2015/187400
Statut Délivré - en vigueur
Date de dépôt 2015-05-26
Date de publication 2015-12-10
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Baulier, Gerald Donald
  • Deters, Vincent L.
  • Kolodzieski, Scott J.

Abrégé

In a computing device supporting a failover in an event stream processing (ESP) system, an event block object is received. A first status of the computing device as active or standby is determined. When the first status is active, a second status of the computing device as newly active or not newly active is determined. Newly active is determined when the computing device is switched from a standby to an active status. When the second status is newly active, a last published event block object identifier that uniquely identifies a last published event block object is determined. A next event block object is selected from a non-transitory computer-readable medium accessible by the computing device. The next event block object has an event block object identifier that is greater than the determined last published event block object identifier. The selected next event block object is published to an out-messaging network device.

Classes IPC  ?

  • H04L 29/14 - Contre-mesures pour remédier à un défaut

14.

FLUID FLOW BACK PREDICTION

      
Numéro d'application US2014061479
Numéro de publication 2015/061255
Statut Délivré - en vigueur
Date de dépôt 2014-10-21
Date de publication 2015-04-30
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Laing, Moray
  • Holdaway, Keith R.

Abrégé

A computing device configured to determine when an alarm is triggered for a drilling operation is provided. Measured drilling data that includes a value measured for an input variable during a previous connection event of a drilling operation is received. A predicted value for a fluid flow back measure is determined by executing a predictive model with the measured drilling data as an input. The predictive model is determined using previous drilling data that includes a plurality of values measured for the input variable during a second drilling operation. The second drilling operation is a previous drilling operation at a different geographic wellbore location than the drilling operation. A fluid flow back measurement datum determined from sensor data is compared to the determined predicted value for the fluid flow back measure. An alarm is triggered on the drilling operation based on the comparison.

Classes IPC  ?

  • G06G 7/48 - Calculateurs analogiques pour des procédés, des systèmes ou des dispositifs spécifiques, p.ex. simulateurs

15.

CONTROL VARIABLE DETERMINATION TO MAXIMIZE A DRILLING RATE OF PENETRATION

      
Numéro d'application US2014056455
Numéro de publication 2015/042347
Statut Délivré - en vigueur
Date de dépôt 2014-09-19
Date de publication 2015-03-26
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Laing, Moray
  • Pope, David
  • Holdaway, Keith R.
  • Duarte, James

Abrégé

A method of determining an optimal value for a control of a drilling operation is provided. Drilling data from a drilling operation is received. The drilling data includes a plurality of values measured for each of a plurality of drilling control variables during the drilling operation. An objective function model is determined using the received drilling data. The objective function model maximizes a rate of penetration for the drilling operation. Measured drilling data is received that includes current drilling data values for a different drilling operation. An optimal value for a control of the different drilling operation is determined by executing the determined objective function model with the measured drilling data that includes the current drilling data values for the different drilling operation as an input. The determined optimal value for the control of the different drilling operation is output.

Classes IPC  ?

  • E21B 44/00 - Systèmes de commande automatique spécialement adaptés aux opérations de forage, c. à d. systèmes à fonctionnement autonome ayant pour rôle d'exécuter ou de modifier une opération de forage sans l'intervention d'un opérateur humain, p.ex. systèmes de ; Systèmes spécialement adaptés à la surveillance de plusieurs variables ou conditions de forage

16.

SYSTEMS AND METHODS FOR GENERATING A CROSS-PRODUCT MATRIX IN A SINGLE PASS THROUGH DATA USING SINGLE PASS LEVELIZATION

      
Numéro d'application US2011064340
Numéro de publication 2012/087629
Statut Délivré - en vigueur
Date de dépôt 2011-12-12
Date de publication 2012-06-28
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Schabenberger, Oliver
  • Goodnight, James, Howard

Abrégé

Systems and methods are provided for a data processing system having multiple executable threads that is configured to generate a cross-product matrix in a single pass through data to be analyzed. An example system comprises memory for receiving the data to be analyzed, a processor having a plurality of executable threads for executing code to analyze data, and software code for generating a cross-product matrix in a single pass through data to be analyzed. The software code includes threaded variable levelization code for generating a plurality of thread specific binary trees for a plurality of classification variables, variable tree merge code for combining a plurality of the thread-specific trees into a plurality of overall trees for the plurality of classification variables, effect levelization code for generating a plurality of sub-matrices of the cross-product matrix using the plurality of the overall trees for the plurality of classification variables, and cross-product matrix generation code for generating the cross- product matrix by storing and ordering the elements of the sub-matrices in contiguous memory space.

Classes IPC  ?

  • G06F 17/16 - Calcul de matrice ou de vecteur
  • G06F 9/50 - Allocation de ressources, p.ex. de l'unité centrale de traitement [UCT]

17.

GRID COMPUTING SYSTEM ALONGSIDE A DISTRIBUTED DATABASE ARCHITECTURE

      
Numéro d'application US2011059700
Numéro de publication 2012/067890
Statut Délivré - en vigueur
Date de dépôt 2011-11-08
Date de publication 2012-05-24
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Schabenberger, Oliver
  • Krueger, Steve

Abrégé

Systems and methods are provided for a grid computing system that performs analytical calculations on data stored in a distributed database system. A grid-enabled software component at a control node is configured to invoke database management software (DBMS) at the control node to cause the DBMS at a plurality of the worker nodes to make available data to the grid- enabled software component local to its node; instruct the grid-enabled software components at the plurality of worker nodes to perform an analytical calculation on the received data and to send the results of the data analysis to the grid-enabled software component at the control node; and assemble the results of the data analysis performed by the grid-enabled software components at the plurality of worker nodes.

Classes IPC  ?

  • G06F 17/30 - Recherche documentaire; Structures de bases de données à cet effet

18.

SCENARIO STATE PROCESSING SYSTEMS AND METHODS FOR OPERATION WITHIN A GRID COMPUTING ENVIRONMENT

      
Numéro d'application US2011024540
Numéro de publication 2011/100557
Statut Délivré - en vigueur
Date de dépôt 2011-02-11
Date de publication 2011-08-18
Propriétaire SAS INSTITUTE INC. (USA)
Inventeur(s)
  • Goodnight, James, Howard
  • Krueger, Steve
  • Schabenberger, Oliver
  • Bailey, Christopher, D.

Abrégé

Systems and methods are provided for generating multiple system state projections for one or more scenarios using a grid computing environment. A central coordinator software component executes on a root data processor and provides commands and data to a plurality of node coordinator software components. A node coordinator software component manages threads which execute on its associated node data processor and which perform a set of matrix operations. Stochastic simulations use results of the matrix operations to generate multiple state projections. Additional processing can be performed by the grid computing environment based upon the generated state projections, such as to develop risk information for users.

Classes IPC  ?

  • G06F 9/50 - Allocation de ressources, p.ex. de l'unité centrale de traitement [UCT]