Patents by Inventor Tanushyam Chattopadhyay

Tanushyam Chattopadhyay has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11906958
    Abstract: State-of-the-art approaches have concentrated on building solution(s) to match the amplitude of a time series with a user given one. However, these have failed to implement solution(s) which enables searching for pattern(s) that can depict human vision psychology. Embodiments of the present disclosure determine occurrence of pattern of interest in time series data for anomaly detection, wherein time series data is obtained, and first order derivative is computed. Further an angle of change in direction is derived based on a gradient of change in value of the time series data. This angle is further converted to a measurement unit. The time series data is quantized into bins and a weighted finite state transducers diagram (WFSTD) is obtained based on domain knowledge which is then converted to specific pattern. The specific pattern is searched in the bins to determine occurrence/count of the specific pattern for anomaly detection.
    Type: Grant
    Filed: July 2, 2021
    Date of Patent: February 20, 2024
    Assignee: Tata Consultancy Services Limited
    Inventors: Tanushyam Chattopadhyay, Abhisek Das, Suvra Dutta, Shubhrangshu Ghosh, Prateep Misra
  • Patent number: 11586928
    Abstract: A method and system for incorporating regression into a Stacked Auto Encoder utilizing deep learning based regression technique that enables joint learning of parameters for a regression model to train the SAE for a regression problem. The method comprises generating a regression model for the SAE for solving the regression problem, wherein regression model is formulated as a non-convex joint optimization function for an asymmetric SAE. The method further comprises reformulating the non-convex joint optimization function as an Augmented Lagrangian formulation in terms of a plurality of proxy variables and a plurality of hyper parameters. The method comprises splitting the Augmented Lagrangian formulation into sub-problems using Alternating Direction Method of Multipliers and jointly learning parameters for the regression model to train the SAE for the regression problem. The learned weights enable estimating the unknown target values.
    Type: Grant
    Filed: February 1, 2019
    Date of Patent: February 21, 2023
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Tulika Bose, Angshul Majumdar, Tanushyam Chattopadhyay
  • Patent number: 11586596
    Abstract: Data cataloging has become a necessity for empowering organizations with analytical ability. Conventional cataloging systems may fail to provide proper visualization of data to the different stakeholders of an organization. The present disclosure provides a hierarchical dynamic cataloging system so that visualization of data at different levels would be possible for different stake holders. In the present disclosure, a hierarchical structure of algorithms and multiple stake holders along with relevant metadata is generated. Further, a catalog is generated by performing a mapping across components comprised in the hierarchical structure and identifying relationship across the components based on mapping. The catalog gets dynamically updated and provides a dynamic view of the algorithms and associated metadata to the multiple stakeholders of an organization.
    Type: Grant
    Filed: October 9, 2019
    Date of Patent: February 21, 2023
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Satanik Panda, Dibyendu Biswas, Hemanta Dutta, Tanushyam Chattopadhyay, Prateep Misra
  • Patent number: 11475341
    Abstract: Systems and methods for obtaining optimal mother wavelets for facilitating machine learning tasks. The traditional systems and methods provide for selecting a mother wavelet and signal classification using some traditional techniques and methods but none them provide for selecting an optimal mother wavelet to facilitate machine learning tasks. Embodiments of the present disclosure provide for obtaining an optimal mother wavelet to facilitate machine learning tasks by computing values of energy and entropy based upon labelled datasets and a probable set of mother wavelets, computing values of centroids and standard deviations based upon the values of energy and entropy, computing a set of distance values and normalizing the set of distance values and obtaining the optimal mother wavelet based upon the set of distance values for performing a wavelet transform and further facilitating machine learning tasks by classifying or regressing, a new set of signal classes, corresponding to a new set of signals.
    Type: Grant
    Filed: November 2, 2018
    Date of Patent: October 18, 2022
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Ishan Sahu, Snehasis Banerjee, Tanushyam Chattopadhyay, Arpan Pal, Utpal Garain
  • Publication number: 20220327336
    Abstract: Industries deploy a plethora of sensors that are attached to a system or human being, respectively. Under multi-sensor environment scenarios, there is a need to detect which sensors are behaving similarly within a time span. Sensor values often vary in range of values yet depict similar time series characteristic and sometimes have a phase difference in operation, thus making it impossible to detect such sensor similarity in a large system where the number of input parameters/sensor observations. Systems and methods of the present disclosure determine similar behavioral pattern between time series data obtained from multiple sensors and cluster the sensors. The system implements a pattern recognition-based approach to find the similarity and then applies a Dynamic Programming-based approach to detect similarity in at least two time series data and cluster the sensors and corresponding time series data into specific cluster(s).
    Type: Application
    Filed: July 6, 2021
    Publication date: October 13, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam Chattopadhyay, ABHISEK DAS, PRATEEP MISRA, SHUBHRANGSHU GHOSH, SUVRA DUTTA
  • Patent number: 11449522
    Abstract: Sensor data (or IoT) analytics plays a critical role in taking business decisions for various entities (e.g., organizations, project owners, and the like). However, scaling of such analytical solutions beyond certain point requires adopting to various computing environments which seems to be challenging with the constrained resources available. Embodiments of the present disclosure provide system and method for analysing and executing sensor observational data in computing environments, wherein extract, transform, load (ETL) workflow pipeline created by users in the cloud, can be seamlessly deployed to job execution service available in cloud/edge without any changes in the code/config by end user. The configuration changes are internally handled by the system based on the selected computing environment and queries are executed either in distributed or non-distributed environments to output data frames.
    Type: Grant
    Filed: June 28, 2021
    Date of Patent: September 20, 2022
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Tanushyam Chattopadhyay, Arindam Halder, Sangram Dasharath Gaikwad, Tania Ghosh, Abhisek Das, Shubhrangshu Ghosh, Suvra Dutta, Prateep Misra
  • Publication number: 20220269689
    Abstract: Sensor data (or IoT) analytics plays a critical role in taking business decisions for various entities (e.g., organizations, project owners, and the like). However, scaling of such analytical solutions beyond certain point requires adopting to various computing environments which seems to be challenging with the constrained resources available. Embodiments of the present disclosure provide system and method for analysing and executing sensor observational data in computing environments, wherein extract, transform, load (ETL) workflow pipeline created by users in the cloud, can be seamlessly deployed to job execution service available in cloud/edge without any changes in the code/config by end user. The configuration changes are internally handled by the system based on the selected computing environment and queries are executed either in distributed or non-distributed environments to output data frames.
    Type: Application
    Filed: June 28, 2021
    Publication date: August 25, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam CHATTOPADHYAY, Arindam HALDER, Sangram Dasharath GAIKWAD, Tania GHOSH, Abhisek DAS, Shubhrangshu GHOSH, Suvra DUTTA, Prateep MISRA
  • Patent number: 11405459
    Abstract: Machine Learning (ML) models are deployed in digital platforms for data analytics. However, it is realized that there is growing trends of recognition that machine learning models expose new vulnerabilities in software systems, for instance training data poisoning, adversarial responses, model extraction, and the like. Embodiments of the present disclosure provide systems and methods for safeguarding training dataset by exploiting immutability feature and generating immutable machine learning models for data analytics. More specifically, immutable records of events are governed by smart contracts within highly secure permissioned distributed ledger. This dataset is used for training multiple machine learning models which are immutable in nature and further utilized for triggering actions for incoming request(s) from IoT platforms.
    Type: Grant
    Filed: August 16, 2019
    Date of Patent: August 2, 2022
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Satanik Panda, Abhishek Roy Choudhury, Prateep Misra, Tanushyam Chattopadhyay
  • Publication number: 20220221847
    Abstract: State-of-the-art approaches have concentrated on building solution(s) to match the amplitude of a time series with a user given one. However, these have failed to implement solution(s) which enables searching for pattern(s) that can depict human vision psychology. Embodiments of the present disclosure determine occurrence of pattern of interest in time series data for anomaly detection, wherein time series data is obtained, and first order derivative is computed. Further an angle of change in direction is derived based on a gradient of change in value of the time series data. This angle is further converted to a measurement unit. The time series data is quantized into bins and a weighted finite state transducers diagram (WFSTD) is obtained based on domain knowledge which is then converted to specific pattern. The specific pattern is searched in the bins to determine occurrence/count of the specific pattern for anomaly detection.
    Type: Application
    Filed: July 2, 2021
    Publication date: July 14, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam CHATTOPADHYAY, Abhisek DAS, Suvra DUTTA, Shubhrangshu GHOSH, Prateep MISRA
  • Publication number: 20220092474
    Abstract: Conventionally, applying analytics on dataset is the scarcity of labelled data. With increase of data there is cost fact effecting nature of servicing required for data (e.g., cost in terms of resource and time and effort is high for data annotation). Though data is analysed, it may be prone to error. Present disclosure provides systems/methods for reducing volume of data to be annotated for time series data thereby reducing time and effort of resources, thus resulting in effective utilization of system's resources (e.g., memory, processor, etc.). More specifically, the method of the present disclosure adaptively modifies the volume of the data to be annotated based on the performance of the unsupervised learning method applied in the system. Moreover, in the absence of an annotation mechanism for clusters of time series data, meta data associated with the time series data is utilized for annotation and validation of dataset.
    Type: Application
    Filed: July 2, 2021
    Publication date: March 24, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam Chattopadhyay, Arijit Ukil, Avijit Sur, Prateep Misra, Arpan Pal, Soma Bandyopadhyay
  • Publication number: 20220092432
    Abstract: Conventionally, detecting time when a device is going to fail in real time has been a real challenge given the associated constraints and requirements. Due to absence in any supporting information or annotated data, traditional approaches have failed to detection abnormality in devices. Present disclosure provide systems and methods for detecting abnormal behaviour of a device from associated unlabeled sensor observations wherein KPIs are computed based on unlabeled sensor observations of at least two sensor parameters and windowing technique is applied on modified dataset to obtain windowed dataset based on which hyper-parameters of deep learning-based auto-encoder are optimized to obtain set of embeddings. Dimensionality reduction technique is applied on the embeddings to obtain embeddings with reduced dimension. Density based clustering technique with hyper-parameters is applied on embeddings with reduced dimension and cluster(s) for unlabeled sensor observations are obtained.
    Type: Application
    Filed: June 29, 2021
    Publication date: March 24, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam CHATTOPADHYAY, Suvra DUTTA, Abhisek DAS, Shubhrangshu GHOSH, Prateep KISRA
  • Patent number: 10909462
    Abstract: A multi-dimensional sensor data analysis system and method is provided. The multi-dimensional sensor data analysis system receives indoor and outdoor location, online and physical activity, online and physical proximity and additional a plurality of inputs (specific to a user), for example, surrounding of the subject, physiological parameters of the subject and recent social status of the subject, both online and offline. The multi-dimensional sensor data analysis system processes these inputs along with the knowledge of past behavior and traditional parameters of location, proximity and activity by performing a multi-dimensional sensor data analysis fusion technique, producing one or more outputs, for example, predicting or determining a human behaviour to a given stimuli.
    Type: Grant
    Filed: May 20, 2016
    Date of Patent: February 2, 2021
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Avik Ghose, Arpan Pal, Arindam Pal, Tanushyam Chattopadhyay, Santa Maiti
  • Publication number: 20200285991
    Abstract: Machine Learning (ML) models are deployed in digital platforms for data analytics. However, it is realized that there is growing trends of recognition that machine learning models expose new vulnerabilities in software systems, for instance training data poisoning, adversarial responses, model extraction, and the like. Embodiments of the present disclosure provide systems and methods for safeguarding training dataset by exploiting immutability feature and generating immutable machine learning models for data analytics. More specifically, immutable records of events are governed by smart contracts within highly secure permissioned distributed ledger. This dataset is used for training multiple machine learning models which are immutable in nature and further utilized for triggering actions for incoming request(s) from IoT platforms.
    Type: Application
    Filed: August 16, 2019
    Publication date: September 10, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Satanik PANDA, Abhishek ROY CHOUDHURY, Prateep MISRA, Tanushyam CHATTOPADHYAY
  • Patent number: 10664698
    Abstract: Development of sensor data based descriptive and prescriptive system involves machine learning tasks like classification and regression. Any such system development requires the involvement of different stake-holders for obtaining features. Such features typically obtained are not interpretable for 1-D sensor signals. Embodiments of the present disclosure provide systems and methods that perform signal analysis for features extraction and interpretation thereof wherein input is raw signal data where origin of a feature is traced to signal data, and mapped to domain/application knowledge. Feature(s) are extracted using deep learning network(s) and machine learning (ML) model(s) are implemented for sensor data analysis to perform causality analysis for prognostics. Layer(s) (say last layer) of Deep Network(s) contains the automatically derived features that can be used for ML tasks.
    Type: Grant
    Filed: February 21, 2018
    Date of Patent: May 26, 2020
    Assignee: Tata Consultancy Services Limited
    Inventors: Snehasis Banerjee, Tanushyam Chattopadhyay, Ayan Mukherjee
  • Publication number: 20200151153
    Abstract: Data cataloging has become a necessity for empowering organizations with analytical ability. Conventional cataloging systems may fail to provide proper visualization of data to the different stakeholders of an organization. The present disclosure provides a hierarchical dynamic cataloging system so that visualization of data at different levels would be possible for different stake holders. In the present disclosure, a hierarchical structure of algorithms and multiple stake holders along with relevant metadata is generated. Further, a catalog is generated by performing a mapping across components comprised in the hierarchical structure and identifying relationship across the components based on mapping. The catalog gets dynamically updated and provides a dynamic view of the algorithms and associated metadata to the multiple stakeholders of an organization.
    Type: Application
    Filed: October 9, 2019
    Publication date: May 14, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Satanik PANDA, Dibyendu BISWAS, Hemanta DUTTA, Tanushyam CHATTOPADHYAY, Prateep MISRA
  • Patent number: 10628136
    Abstract: An application development system for development of Internet of Things (IoT) application includes a cataloging module to obtain an input from an application developer. The input comprises data related to the IoT application to be developed. The cataloging module further retrieves a plurality of reusable artefacts from a knowledge database based on the input. A recommendation module in the application development system recommends, to the application developer, artefacts from amongst the plurality of reusable artefacts, based at least on one of a feedback associated with each of the plurality of reusable artefacts, an expert analysis, and a combination of the expert analysis and the feedback. An association module in the application development system associates artefacts selected by the application developer with each other for development of the IoT application.
    Type: Grant
    Filed: May 23, 2014
    Date of Patent: April 21, 2020
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Avik Ghose, Arpan Pal, Anirban Dutta Choudhury, Tanushyam Chattopadhyay, Plaban Kumar Bhowmick, Dhiman Chattopadhyay
  • Publication number: 20200111009
    Abstract: Advanced analytics refers to theories, technologies, tools, and processes that enable an in-depth understanding and discovery of actionable insights in big data, wherein conventional systems and methods may be prone to errors leading to inaccuracies.
    Type: Application
    Filed: March 12, 2019
    Publication date: April 9, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Tanushyam CHATTOPADHYAY, Satanik PANDA, Prateep MISRA, Arpan PAL, Indrajit BHATTACHYARYA, Puneet AGARWAL, Soma BANDYOPADHYAY, Arijit UKIL, Snehasis BANERJEE, Abhisek DAS
  • Publication number: 20190279090
    Abstract: A method and system for incorporating regression into a Stacked Auto Encoder utilizing deep learning based regression technique that enables joint learning of parameters for a regression model to train the SAE for a regression problem. The method comprises generating a regression model for the SAE for solving the regression problem, wherein regression model is formulated as a non-convex joint optimization function for an asymmetric SAE. The method further comprises reformulating the non-convex joint optimization function as an Augmented Lagrangian formulation in terms of a plurality of proxy variables and a plurality of hyper parameters. The method comprises splitting the Augmented Lagrangian formulation into sub-problems using Alternating Direction Method of Multipliers and jointly learning parameters for the regression model to train the SAE for the regression problem. The learned weights enable estimating the unknown target values.
    Type: Application
    Filed: February 1, 2019
    Publication date: September 12, 2019
    Applicant: Tata Consultancy Services Limited
    Inventors: Tulika BOSE, Angshul MAJUMDAR, Tanushyam CHATTOPADHYAY
  • Publication number: 20190205778
    Abstract: Systems and methods for obtaining optimal mother wavelets for facilitating machine learning tasks. The traditional systems and methods provide for selecting a mother wavelet and signal classification using some traditional techniques and methods but none them provide for selecting an optimal mother wavelet to facilitate machine learning tasks. Embodiments of the present disclosure provide for obtaining an optimal mother wavelet to facilitate machine learning tasks by computing values of energy and entropy based upon labelled datasets and a probable set of mother wavelets, computing values of centroids and standard deviations based upon the values of energy and entropy, computing a set of distance values and normalizing the set of distance values and obtaining the optimal mother wavelet based upon the set of distance values for performing a wavelet transform and further facilitating machine learning tasks by classifying or regressing, a new set of signal classes, corresponding to a new set of signals.
    Type: Application
    Filed: November 2, 2018
    Publication date: July 4, 2019
    Applicant: Tata Consultancy Services Limited
    Inventors: Ishan SAHU, Snehasis BANERJEE, Tanushyam CHATTOPADHYAY, Arpan PAL, Utpal GARAIN
  • Publication number: 20190138806
    Abstract: Development of sensor data based descriptive and prescriptive system involves machine learning tasks like classification and regression. Any such system development requires the involvement of different stake-holders for obtaining features. Such features typically obtained are not interpretable for 1-D sensor signals. Embodiments of the present disclosure provide systems and methods that perform signal analysis for features extraction and interpretation thereof wherein input is raw signal data where origin of a feature is traced to signal data, and mapped to domain/application knowledge. Feature(s) are extracted using deep learning network(s) and machine learning (ML) model(s) are implemented for sensor data analysis to perform causality analysis for prognostics. Layer(s) (say last layer) of Deep Network(s) contains the automatically derived features that can be used for ML tasks.
    Type: Application
    Filed: February 21, 2018
    Publication date: May 9, 2019
    Applicant: Tata Consultancy Services Limited
    Inventors: Snehasis BANERJEE, Tanushyam CHATTOPADHYAY, Ayan MUKHERJEE