Patents by Inventor Pankaj Malhotra

Pankaj Malhotra 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).

  • Publication number: 20230169569
    Abstract: Recommender Systems (RS) tend to recommend more popular items instead of the relevant long-tail items. Mitigating such popularity bias is crucial to ensure that less popular but relevant items are recommended. System described herein analyses popularity bias in session-based RS obtained via deep learning (DL) models. DL models trained on historical user-item interactions in session logs (having long-tailed item-click distributions) tend to amplify popularity bias. To understand source of this bias amplification, potential sources of bias at data-generation stage (user-item interactions captured as session logs) and model training stage are considered by the system for recommendation wherein popularity of item has causal effect on user-item interactions via conformity bias, and item ranking from models via biased training process due to class imbalance.
    Type: Application
    Filed: July 20, 2022
    Publication date: June 1, 2023
    Applicant: Tata Consultancy Services Limited
    Inventors: PRIYANKA GUPTA, PANKAJ MALHOTRA, ANKIT SHARMA, GAUTAM SHROFF, LOVEKESH VIG
  • Patent number: 11593651
    Abstract: Neural networks can be used for time series data classification. However, in a K-shot scenario in which sufficient training data is unavailable to train the neural network, the neural network may not produce desired results. Disclosed herein are a method and system for training a neural network for time series data classification. In this method, by processing a plurality of task specific data, a system generates a set of updated parameters, which is further used to train a neural network (network) till a triplet loss is below a threshold. The network is trained on a diverse set of few-shot tasks sampled from various domains (e.g. healthcare, activity recognition, and so on) such that it can solve a target task from another domain using only a small number of training samples from the target task.
    Type: Grant
    Filed: August 27, 2020
    Date of Patent: February 28, 2023
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Pankaj Malhotra, Jyoti Narwariya, Lovekesh Vig, Gautam Shroff
  • Patent number: 11568203
    Abstract: Estimating Remaining Useful Life (RUL) from multi-sensor time series data is difficult through manual inspection. Current machine learning and data analytics methods, for RUL estimation require large number of failed instances for training, which are rarely available in practice, and these methods cannot use information from currently operational censored instances since their failure time is unknown. Embodiments of the present disclosure provide systems and methods for estimating RUL using time series data by implementing an LSTM-RNN based ordinal regression technique, wherein during training RUL value of failed instance(s) is encoded into a vector which is given as a target to the model. Unlike a failed instance, the exact RUL for a censored instance is unknown. For using the censored instances, target vectors are generated and the objective function is modified for training wherein the trained LSTM-RNN based ordinal regression is applied on an input test time series for RUL estimation.
    Type: Grant
    Filed: March 13, 2019
    Date of Patent: January 31, 2023
    Assignee: Tata Consultancy Services Limited
    Inventors: Pankaj Malhotra, Vishnu Tv, Lovekesh Vig, Gautam Shroff
  • Publication number: 20220373171
    Abstract: This disclosure relates generally to a method and system for real time monitoring and forecasting of fouling of an air preheater (APH) in a thermal power plant. The system is deploying a digital replica or digital twin that works in tandem with the real APH of the thermal power plant. The system receives real-time data from one or more sources and provides real-time soft sensing of intrinsic parameters as well as that of health, fouling related parameters of APH. The system is also configured to diagnose the current class of fouling regime and the reasons behind a specific class of fouling regime of the APH. The system is also configured to be used as advisory system that alerts and recommends corrective actions in terms of either APH parameters or parameters controlled through other equipment such as selective catalytic reduction or boiler or changes in operation or design.
    Type: Application
    Filed: October 9, 2020
    Publication date: November 24, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: ANIRUDH DEODHAR, VISHAL JADHAV, ASHIT GUPTA, MURALIKRISHNAN RAMANUJAM, VENKATARAMANA RUNKANA, MUKUL PATIL, CHARAN THEJA DHANDA, DHANDAPANI SUBRAMANIAM, LALITH ROSHANLAL JAIN, JOEL THOMSON DIRAVIAM ANDREW, PANKAJ MALHOTRA, SAI PRASAD PARAMESWRAN
  • Patent number: 11429837
    Abstract: Anomaly detection from time series is one of the key components in automated monitoring of one or more entities. Domain-driven sensor selection for anomaly detection is restricted by knowledge of important sensors to capture only a certain set of anomalies from the entire set of possible anomalies. Hence, existing anomaly detection approaches are not very effective for multi-dimensional time series. Embodiments of the present disclosure depict sparse neural network for anomaly detection in multi-dimensional time series (MDTS) corresponding to a plurality of parameters of entities. A reduced-dimensional time series is obtained from the MDTS via an at least one feedforward layer by using a dimensionality reduction model. The dimensionality reduction model and recurrent neural network (RNN) encoder-decoder model are simultaneously learned to obtain a multi-layered sparse neural network. A plurality of error vectors corresponding to at least one time instance of the MDTS is computed to obtain an anomaly score.
    Type: Grant
    Filed: March 14, 2019
    Date of Patent: August 30, 2022
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Pankaj Malhotra, Narendhar Gugulothu, Lovekesh Vig, Gautam Shroff
  • Patent number: 11379717
    Abstract: Traditional systems and methods have implemented hand-crafted feature extraction from varying length time series that results in complexity and requires domain knowledge. Building classification models requires large labeled data and is computationally expensive. Embodiments of the present disclosure implement learning models for classification tasks in multi-dimensional time series by performing feature extraction from entity's parameters via unsupervised encoder and build a non-temporal linear classifier model. A fixed-dimensional feature vector is outputted using a pre-trained unsupervised encoder, which acts as off-the shelf feature extractor. Extracted features are concatenated to learn a non-temporal linear classification model and weight is assigned to each extracted feature during learning which helps to determine relevant parameters for each class. Mapping from parameters to target class is considered while constraining the linear model to use only subset of large number of features.
    Type: Grant
    Filed: March 25, 2019
    Date of Patent: July 5, 2022
    Assignee: Tata Consultancy Services Limited
    Inventors: Pankaj Malhotra, Priyanka Gupta, Lovekesh Vig, Gautam Shroff
  • Publication number: 20220188899
    Abstract: This disclosure relates generally to method and system for handling popularity bias in item recommendations. In an embodiment the method includes initializing an item embedding look-up matrix corresponding to items in a sequence of item-clicks with respect to a training data. L2 norm is applied to the item embedding look-up matrix to learn a normalized item embeddings. Using a neural network, a session embeddings corresponding to the sequences of item-clicks is modeled and L2 norm is applied to the session embeddings to obtain a normalized session embeddings. Relevance scores corresponding to each of the plurality of items arc obtained based on similarity between the normalized item embeddings and the normalized session embeddings. A multi-dimensional probability vector corresponding to the relevance scores for the items to be clicked in the sequence is obtained. A list of the items ordered based on the multi-dimensional probability vector is provided as recommendation.
    Type: Application
    Filed: August 25, 2020
    Publication date: June 16, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: PANKAJ MALHOTRA, PRIYANKA GUPTA, DIKSHA GARG, LOVEKESH VIG, GAUTAM SHROFF
  • Publication number: 20220156607
    Abstract: Session-based Recommendation (SR) is the task of recommending the next item based on previously recorded user interactions. However, most existing approaches for SR either rely on costly online interactions with real users (model-free approaches) or rely on potentially biased rule-based or data-driven user-behavior models (model-based approaches) for learning. This disclosure relates to a system and method for selecting session-based recommendation policies using historical recommendations and user feedback. Herein, the learning of recommendation policies given offline or batch data from old recommendation policies based on a Distributional Reinforcement Learning (DRL) based recommender system in the offline or batch-constrained setting without requiring access to a user-behavior model or real-interactions with the users.
    Type: Application
    Filed: March 8, 2021
    Publication date: May 19, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Diksha Garg, Pankaj Malhotra, Priyanka Gupta, Lovekesh Vig, Gautam Shroff
  • Publication number: 20220036166
    Abstract: This disclosure relates to optimizing an operation of an equipment by a neural network based optimizer is provided. The method include receiving, information associated with at least one equipment instance (j) as an input at a predefined sequence of timestamps; training, a plurality of simulation models for each equipment instance to obtain a function (fj); processing, the external input parameters (et) to obtain a fixed-dimensional vector and passed as an input to obtain an vector (it); generating, a modified (it) from the output vector (it) based on a domain constraint value; computing, a reward (rt) based on (i) the function (fj), (ii) the modified (it), (iii) the external input parameters (et), and (iv) a reward function (Rj); and iteratively performing the steps of processing, generating, and computing reward (rt) for a series of subsequent equipment instances after expiry of the predefined sequence of timestamps associated with a first equipment instance.
    Type: Application
    Filed: November 28, 2019
    Publication date: February 3, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Vishnu TANKASALA VEPARALA, Solomon Pushparaj MANUELRAJ, Ankit BANSAL, Pankaj MALHOTRA, Lovekesh VIG, Gautam SHROFF, Venkataramana RUNKANA, Sivakumar SUBRAMANIAN, Aditya PAREEK, Vishnu Swaroopji MASAMPALLY, Nishit RAJ
  • Publication number: 20210406603
    Abstract: Several applications capture data from sensors resulting in multi-sensor time series. Existing neural networks-based approaches for such multi-sensor/multivariate time series modeling assume fixed input-dimension/number of sensors. Such approaches can struggle in practical setting where different instances of same device/equipment come with different combinations of installed sensors. In the present disclosure, neural network models are trained from such multi-sensor time series having varying input dimensionality, owing to availability/installation of different sensors subset at each source of time series. Neural network (NN) architecture is provided for zero-shot transfer learning allowing robust inference for multivariate time series with previously unseen combination of available dimensions/sensors at test time.
    Type: Application
    Filed: February 22, 2021
    Publication date: December 30, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Jyoti NARWARIYA, Pankaj Malhotra, Vibhor Gupta, Vishnu Tankasala Veparala, Lovekesh Vig, Gautam Shroff
  • Publication number: 20210232971
    Abstract: This disclosure relates generally to data meta model and meta file generation for feature engineering and training of machine learning models thereof. Conventional methods do not facilitate appropriate relevant data identification for feature engineering and also do not implement standardization for use of solution across domains. Embodiments of the present disclosure provide systems and methods wherein datasets from various sources/domains are utilized for meta file generation that is based on mapping of the dataset with a data meta model based on the domains, the meta file comprises meta data and information pertaining to action(s) being performed. Further functions are generated using the meta file and the functions are assigned to corresponding data characterized in the meta file. Further functions are invoked to generate feature vector set and machine learning model(s) are trained using the features vector set. Implementation of the generated data meta-model enables re-using of feature engineering code.
    Type: Application
    Filed: January 27, 2021
    Publication date: July 29, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Mayank MISHRA, Shruti KUNDE, Sharod ROY CHOUDHURY, Amey PANDIT, Manoj Karunakaran NAMBIAR, Siddharth VERMA, Gautam SHROFF, Pankaj MALHOTRA, Rekha SINGHAL
  • Publication number: 20210103812
    Abstract: Neural networks can be used for time series data classification. However, in a K-shot scenario in which sufficient training data is unavailable to train the neural network, the neural network may not produce desired results. Disclosed herein are a method and system for training a neural network for time series data classification. In this method, by processing a plurality of task specific data, a system generates a set of updated parameters, which is further used to train a neural network (network) till a triplet loss is below a threshold. The network is trained on a diverse set of few-shot tasks sampled from various domains (e.g. healthcare, activity recognition, and so on) such that it can solve a target task from another domain using only a small number of training samples from the target task.
    Type: Application
    Filed: August 27, 2020
    Publication date: April 8, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Pankaj MALHOTRA, Jyoti NARWARIYA, Lovekesh VIG, Gautam SHROFF
  • Patent number: 10719774
    Abstract: This disclosure relates generally to health monitoring of systems, and more particularly to monitor health of a system for fault signature identification. The system estimates Health Index (HI) of the system as time series data. By analyzing data corresponding to the estimated HI, the system identifies one or more time windows in which majority of the estimated HI values are low as a low HI window, and one or more time windows in which majority of the estimated HI values are high as a high HI window. Upon identifying a low HI window, which indicates an abnormal behavior of the system being monitored, based on a local Bayesian Network generated for the system being monitored, an Explainability Index (EI) for each sensor is generated, wherein the EI quantifies contribution of the sensor to the low HI. Further, associated component(s) is identified as contributing to abnormal/faulty behavior of the system.
    Type: Grant
    Filed: February 20, 2018
    Date of Patent: July 21, 2020
    Assignee: Tata Consultancy Services Limited
    Inventors: Pankaj Malhotra, Vishnu T V, Narendhar Gugulothu, Lovekesh Vig, Puneet Agarwal, Gautam Shroff
  • Patent number: 10623331
    Abstract: A hybrid unified communications (UC) cloud system includes a global UC virtual data center and a plurality of regional UC virtual data centers (VDCs). Each regional VDC includes a regional system manager that manages a set of regional UC resources. Associated endpoint devices operate in at least one respective multi-tenant regional cloud and to employ corresponding regional UC resources thereof, operating in at least one service cluster of the respective multi-tenant regional cloud, to communicate real-time media traffic with respect to the associated endpoint devices. A regional resource manager provides status information to the regional system manager, based on utilization of resources, to control scaling of the regional UC resources responsive to the status information. The global UC virtual data center includes a global system manager to manage the regional UC VDCs and coordinates orchestration of UC resources between and/or among the regional UC VDCs.
    Type: Grant
    Filed: January 29, 2019
    Date of Patent: April 14, 2020
    Assignee: Mitel Networks, Inc.
    Inventors: Bingjun Li, Pankaj Malhotra, Deepak M. Bhimasena
  • Publication number: 20200012941
    Abstract: The disclosure herein describes a method and a system for generating hybrid learning techniques. The hybrid learning technique refers to learning techniques that are a combination a plurality of techniques that include of deep learning, machine learning and signal processing to enable a rich feature space representation and classifier construction. The generation of the hybrid learning techniques also considers influence/impact of domain constraints that include business requirements and computational constraints, while generating hybrid learning techniques. Further from the plurality hybrid learning techniques a single hybrid learning technique is chosen based on performance matrix based on optimization techniques.
    Type: Application
    Filed: July 9, 2019
    Publication date: January 9, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Arijit UKIL, Soma BANDYOPADHYAY, Pankaj MALHOTRA, Arpan PAL, Lovekesh VIG, Gautam SHROFF, Tulika BOSE, Ishan SAHU, Ayan MUKHERJEE
  • Publication number: 20200012921
    Abstract: Estimating Remaining Useful Life (RUL) from multi-sensor time series data is difficult through manual inspection. Current machine learning and data analytics methods, for RUL estimation require large number of failed instances for training, which are rarely available in practice, and these methods cannot use information from currently operational censored instances since their failure time is unknown. Embodiments of the present disclosure provide systems and methods for estimating RUL using time series data by implementing an LSTM-RNN based ordinal regression technique, wherein during training RUL value of failed instance(s) is encoded into a vector which is given as a target to the model. Unlike a failed instance, the exact RUL for a censored instance is unknown. For using the censored instances, target vectors are generated and the objective function is modified for training wherein the trained LSTM-RNN based ordinal regression is applied on an input test time series for RUL estimation.
    Type: Application
    Filed: March 13, 2019
    Publication date: January 9, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Pankaj MALHOTRA, Vishnu TV, Lovekesh VIG, Gautam SHROFF
  • Publication number: 20200012938
    Abstract: Traditional systems and methods have implemented hand-crafted feature extraction from varying length time series that results in complexity and requires domain knowledge. Building classification models requires large labeled data and is computationally expensive. Embodiments of the present disclosure implement learning models for classification tasks in multi-dimensional time series by performing feature extraction from entity's parameters via unsupervised encoder and build a non-temporal linear classifier model. A fixed-dimensional feature vector is outputted using a pre-trained unsupervised encoder, which acts as off-the shelf feature extractor. Extracted features are concatenated to learn a non-temporal linear classification model and weight is assigned to each extracted feature during learning which helps to determine relevant parameters for each class. Mapping from parameters to target class is considered while constraining the linear model to use only subset of large number of features.
    Type: Application
    Filed: March 25, 2019
    Publication date: January 9, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Pankaj MALHOTRA, Priyanka GUPTA, Lovekesh VIG, Gautam SHROFF
  • Publication number: 20200012918
    Abstract: Anomaly detection from time series is one of the key components in automated monitoring of one or more entities. Domain-driven sensor selection for anomaly detection is restricted by knowledge of important sensors to capture only a certain set of anomalies from the entire set of possible anomalies. Hence, existing anomaly detection approaches are not very effective for multi-dimensional time series. Embodiments of the present disclosure depict sparse neural network for anomaly detection in multi-dimensional time series (MDTS) corresponding to a plurality of parameters of entities. A reduced-dimensional time series is obtained from the MDTS via an at least one feedforward layer by using a dimensionality reduction model. The dimensionality reduction model and recurrent neural network (RNN) encoder-decoder model are simultaneously learned to obtain a multi-layered sparse neural network. A plurality of error vectors corresponding to at least one time instance of the MDTS is computed to obtain an anomaly score.
    Type: Application
    Filed: March 14, 2019
    Publication date: January 9, 2020
    Applicant: Tata Consultancy Services Limited
    Inventors: Pankaj MALHOTRA, Narendhar GUGULOTHU, Lovekesh VIG, Gautam SHROFF
  • Patent number: 10346439
    Abstract: The present subject matter relates to entity resolution, and in particular, relates to providing an entity resolution from documents. The method comprises obtaining a plurality of documents corresponding to a plurality of entities, from at least one data source. Upon receiving the plurality of documents, the plurality of documents is blocked into at least one bucket based on textual similarity. Further, a graph including a plurality of record vertices and at least one bucket vertex is created. The plurality of record vertices and the at least one bucket vertex are indicative of the plurality of documents and the at least one bucket, respectively. Subsequently, a notification is provided to a user for selecting one of a Bucket-Centric Parallelization (BCP) technique and a Record-Centric Parallelization (RCP) technique for resolving entities from the plurality of documents. Based on the selection, a resolved entity-document for each entity is created.
    Type: Grant
    Filed: March 2, 2015
    Date of Patent: July 9, 2019
    Assignee: Tata Consultancy Services Limited
    Inventors: Puneet Agarwal, Gautam Shroff, Pankaj Malhotra
  • Patent number: 10311093
    Abstract: The present subject matter relates to entity resolution, and in particular, relates to providing an entity resolution from documents. The method comprises obtaining the plurality of documents from at least one data source. The plurality of documents is blocked into at least one bucket based on textual similarity and inter-document references among the plurality of documents. Further, within each bucket, a merged document for each entity may be created based on an iterative match-merge technique. The iterative match-merge technique identifies, from the plurality of documents, at least one matching pair of documents and merges the at least one matching pair of documents to create the merged document for each entity. The merged documents may be merged to generate a resolved entity-document for each entity based on a graph clustering technique.
    Type: Grant
    Filed: November 5, 2014
    Date of Patent: June 4, 2019
    Assignee: Tata Consultancy Services Limited
    Inventors: Puneet Agarwal, Gautam Shroff, Pankaj Malhotra