Patents by Inventor Vinay Kumar Shukla

Vinay Kumar Shukla 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: 11862157
    Abstract: In some examples, a software agent executing on a server receives a communication comprising a first utterance from a customer and predicts, using an intent classifier, a first intent of the first utterance. Based on determining that the first intent is order-related, the software agent predicts, using a dish classifier, a cart delta vector based at least in part on the first utterance and modifies a cart associated with the customer based on the cart delta vector. The software agent predicts, using a dialog model, a first dialog response based at least in part on the first utterance and provides the first dialog response to the customer using a text-to-speech converter.
    Type: Grant
    Filed: July 2, 2021
    Date of Patent: January 2, 2024
    Assignee: ConverseNow AI
    Inventors: Rahul Aggarwal, Vinay Kumar Shukla, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, German Kurt Grin, Fernando Ezequiel Gonzalez, Julia Milanese, Zubair Talib, Matias Grinberg
  • Patent number: 11810550
    Abstract: A computer system may connect to various customer-facing devices and manage or automate the order process between a retail store and the customer. The computer system may perform the dialogue and receive an order for items from the retail store and may perform quality control monitoring of the dialogue between customers and employees taking orders. The ordering system may utilize the ordered items in combination with various contextual cues to determine a customer identity which may then be linked to past orders and/or various order preferences. Based on the determined customer identity, the system may provide recommendations of additional order items or order alterations to the customer before personally identifying information has been collected from the customer. The determination of the customer identity and the determination of recommendations may be performed by machine learning algorithms that were trained on customer data and the retail store products.
    Type: Grant
    Filed: February 24, 2021
    Date of Patent: November 7, 2023
    Inventors: Vinay Kumar Shukla, Rahul Aggarwal, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J
  • Patent number: 11704753
    Abstract: In some aspects, a computing device receives a scan of a code displayed on an order post located near a restaurant, determines that the code is associated with the restaurant, and automatically opens a software application and navigates the software application to an ordering page associated with the restaurant. The computing device initiates receiving, via the software application, input associated with an order, sends the input to a machine learning based software agent executing on a server, receives a predicted response to the input, provides the predicted response as audio output and/or displays the predicted response on the touchscreen display device. After the order is complete, the computing device sends order data associated with the order to the restaurant. After receiving an indication from the restaurant that the order is ready, the computing device indicates that the order is ready to be picked up.
    Type: Grant
    Filed: June 3, 2022
    Date of Patent: July 18, 2023
    Assignee: ConverseNowAI
    Inventors: Jon Dorch, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, Ruchi Bafna, T M Vinayak, Vinay Kumar Shukla, Rahul Aggarwal
  • Patent number: 11574345
    Abstract: In some aspects, an edge appliance is placed in an active mode and causes a software agent that is based on a machine learning algorithm to engage in a conversation to take an order from a customer that is located at an order post. The edge appliance provides, using a communication interface, audio data that includes the conversation, to a communications system of a restaurant. The edge appliance provides, using the communication interface, a content of a cart associated with the order to a point-of-sale terminal of the restaurant. If the edge appliance determines, using the communication interface, that a microphone of the communication system is receiving audio input from an employee, the edge appliance automatically transitions the edge appliance from the active mode to an override mode, enabling the employee to receive a remainder of the order from the customer.
    Type: Grant
    Filed: June 3, 2022
    Date of Patent: February 7, 2023
    Assignee: ConverseNowAI
    Inventors: Jon Dorch, Zubair Talib, Akshay Labh Kayastha, Vinay Kumar Shukla, Rahul Aggarwal
  • Patent number: 11514894
    Abstract: In some examples, a server may receive an utterance from a customer. The utterance may be included in a conversation between the artificial intelligence engine and the customer. The server may convert the utterance to text and determine a customer intent based on the text and a user history. The server may determine a user model of the customer based on the text and the customer intent. The server may update a conversation state associated with the conversation based on the customer intent and the user model. The server may determine a user state based on the user model and the conversation state. The server may select, using a reinforcement learning based module, a particular action from a set of actions, the particular action including a response and provide the response to the customer.
    Type: Grant
    Filed: November 18, 2021
    Date of Patent: November 29, 2022
    Assignee: ConverseNowAI
    Inventors: Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, Pranav Nirmal Mehra, Rahul Aggarwal, Vinay Kumar Shukla, Zubair Talib
  • Publication number: 20220318860
    Abstract: In some aspects, an edge appliance is placed in an active mode and causes a software agent that is based on a machine learning algorithm to engage in a conversation to take an order from a customer that is located at an order post. The edge appliance provides, using a communication interface, audio data that includes the conversation, to a communications system of a restaurant. The edge appliance provides, using the communication interface, a content of a cart associated with the order to a point-of-sale terminal of the restaurant. If the edge appliance determines, using the communication interface, that a microphone of the communication system is receiving audio input from an employee, the edge appliance automatically transitions the edge appliance from the active mode to an override mode, enabling the employee to receive a remainder of the order from the customer.
    Type: Application
    Filed: June 3, 2022
    Publication date: October 6, 2022
    Inventors: Jon Dorch, Zubair Talib, Akshay Labh Kayastha, Vinay Kumar Shukla, Rahul Aggarwal
  • Publication number: 20220301082
    Abstract: In some aspects, a computing device receives a scan of a code displayed on an order post located near a restaurant, determines that the code is associated with the restaurant, and automatically opens a software application and navigates the software application to an ordering page associated with the restaurant. The computing device initiates receiving, via the software application, input associated with an order, sends the input to a machine learning based software agent executing on a server, receives a predicted response to the input, provides the predicted response as audio output and/or displays the predicted response on the touchscreen display device. After the order is complete, the computing device sends order data associated with the order to the restaurant. After receiving an indication from the restaurant that the order is ready, the computing device indicates that the order is ready to be picked up.
    Type: Application
    Filed: June 3, 2022
    Publication date: September 22, 2022
    Inventors: Jon Dorch, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, Ruchi Bafna, TM Vinayak, Vinay Kumar Shukla, Rahul Aggarwal
  • Publication number: 20220277282
    Abstract: A software agent, comprising a machine learning algorithm trained to engage in a conversation with a customer to take an order, receives an utterance from a customer. The utterance is converted to text and an analysis of the text performed. If the software agent determines, based on the analysis, that the software agent is untrained to respond to the text, the software agent establishes a connection to a point-of-sale device associated with a human agent. The human agent may perform a modification (e.g., an edit to the text, a modification to a cart, or provide input) to a modifiable portion displayed by the point-of-sale device. The software agent, based at least in part on the modification, resumes the conversation with the customer. The human agent does not directly interact with the customer during the conversation between the software agent and the customer.
    Type: Application
    Filed: May 17, 2022
    Publication date: September 1, 2022
    Inventors: Jon Dorch, Zubair Talib, Ruchi Bafna, Akshaya Labh Kayastha, Yuganeshan AJ, Vinay Kumar Shukla, Rahul Aggarwal
  • Publication number: 20220270591
    Abstract: A computer system may connect to various customer-facing devices and manage or automate the order process between a retail store and the customer. The computer system may perform the dialogue and receive an order for items from the retail store and may perform quality control monitoring of the dialogue between customers and employees taking orders. The ordering system may utilize the ordered items in combination with various contextual cues to determine a customer identity which may then be linked to past orders and/or various order preferences. Based on the determined customer identity, the system may provide recommendations of additional order items or order alterations to the customer before personally identifying information has been collected from the customer. The determination of the customer identity and the determination of recommendations may be performed by machine learning algorithms that were trained on customer data and the retail store products.
    Type: Application
    Filed: February 24, 2021
    Publication date: August 25, 2022
    Inventors: Vinay Kumar SHUKLA, Rahul Aggarwal, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J
  • Publication number: 20220270600
    Abstract: In some examples, a software agent executing on a server receives a communication comprising a first utterance from a customer and predicts, using an intent classifier, a first intent of the first utterance. Based on determining that the first intent is order-related, the software agent predicts, using a dish classifier, a cart delta vector based at least in part on the first utterance and modifies a cart associated with the customer based on the cart delta vector. The software agent predicts, using a dialog model, a first dialog response based at least in part on the first utterance and provides the first dialog response to the customer using a text-to-speech converter.
    Type: Application
    Filed: July 2, 2021
    Publication date: August 25, 2022
    Inventors: Rahul Aggarwal, Vinay Kumar Shukla, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, German Kurt Grin, Fernando Ezequiel Gonzalez, Julia Milanese, Zubair Talib, Matias Grinberg
  • Publication number: 20220270594
    Abstract: In some examples, a server may receive an utterance from a customer. The utterance may be included in a conversation between the artificial intelligence engine and the customer. The server may convert the utterance to text and determine a customer intent based on the text and a user history. The server may determine a user model of the customer based on the text and the customer intent. The server may update a conversation state associated with the conversation based on the customer intent and the user model. The server may determine a user state based on the user model and the conversation state. The server may select, using a reinforcement learning based module, a particular action from a set of actions, the particular action including a response and provide the response to the customer.
    Type: Application
    Filed: November 18, 2021
    Publication date: August 25, 2022
    Inventors: Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, Pranav Nirmal Mehra, Rahul Aggarwal, Vinay Kumar Shukla, Zubair Talib
  • Patent number: 11355120
    Abstract: In some examples, a software agent executing on a server receives a communication comprising a first utterance from a customer and predicts, using an intent classifier, a first intent of the first utterance. Based on determining that the first intent is order-related, the software agent predicts, using a dish classifier, a cart delta vector based at least in part on the first utterance and modifies a cart associated with the customer based on the cart delta vector. The software agent predicts, using a dialog model, a first dialog response based at least in part on the first utterance and provides the first dialog response to the customer using a text-to-speech converter.
    Type: Grant
    Filed: October 1, 2021
    Date of Patent: June 7, 2022
    Assignee: ConverseNowAI
    Inventors: Zubair Talib, Rahul Aggarwal, Vinay Kumar Shukla, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, German Kurt Grin, Fernando Ezequiel Gonzalez, Julia Milanese, Matias Grinberg
  • Patent number: 11355122
    Abstract: In some examples, a software agent executing on a server an utterance from a customer. The software agent converts the utterance to text. The software agent creates an audio representation of the text and performs a comparison of the audio representation and the utterance. The software agent creates edited text based on the comparison. For example, the software agent may determine, based on the comparison, audio differences between the audio representation and the utterance, create a sequence of edit actions based on the audio differences, and apply the sequence of edit actions to the text to create the edited text. The software agent outputs the edited text as a dialog response to the utterance.
    Type: Grant
    Filed: September 1, 2021
    Date of Patent: June 7, 2022
    Assignee: ConverseNowAI
    Inventors: Fernando Ezequiel Gonzalez, Vinay Kumar Shukla, Rahul Aggarwal, Vrajesh Navinchandra Sejpal, Leonardo Cordoba, Julia Milanese, Zubair Talib, Matias Grinberg
  • Patent number: 11354760
    Abstract: In some aspects, an order post detects, using one or more sensors, a presence of a customer, determines an identity of the customer, retrieves previous orders of the customer, indicates at least one item in the previous orders, receives an order comprising input that includes an utterance of the customer, modifies the utterance to create a modified utterance, sends the modified utterance to a software agent comprising a natural language processor and one or more classifiers, receives a predicted response to the modified utterance from the software agent, plays back the predicted response via the speaker, determines that the order is complete, receives payment information for the order from the customer, sends order data associated with the order to a restaurant, receives an indication from the restaurant that the order is ready for pickup, and instructs the customer to pick up the order.
    Type: Grant
    Filed: October 1, 2021
    Date of Patent: June 7, 2022
    Assignee: ConverseNowAI
    Inventors: Jon Dorch, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J, Ruchi Bafna, T M Vinayak, Vinay Kumar Shukla, Rahul Aggarwal
  • Patent number: 11348160
    Abstract: A computer system may connect to various customer-facing devices and manage or automate the order process between a retail store and the customer. The computer system may perform the dialogue and receive an order for items from the retail store and may perform quality control monitoring of the dialogue between customers and employees taking orders. The ordering system may utilize the ordered items in combination with various contextual cues to determine a customer identity which may then be linked to past orders and/or various order preferences. Based on the determined customer identity, the system may provide recommendations of additional order items or order alterations to the customer before personally identifying information has been collected from the customer. The determination of the customer identity and the determination of recommendations may be performed by machine learning algorithms that were trained on customer data and the retail store products.
    Type: Grant
    Filed: October 1, 2021
    Date of Patent: May 31, 2022
    Assignee: ConverseNowAI
    Inventors: Vinay Kumar Shukla, Rahul Aggarwal, Pranav Nirmal Mehra, Vrajesh Navinchandra Sejpal, Akshay Labh Kayastha, Yuganeshan A J
  • Publication number: 20180362580
    Abstract: The present disclosure provides crystalline carfilzomib form M1 and a process for the preparation thereof. Further disclosed are processes for the preparation of amorphous carfilzomib using crystalline form M1 as a starting material. The present disclosure also relates to an improved process for the preparation of carfilzomib.
    Type: Application
    Filed: December 10, 2016
    Publication date: December 20, 2018
    Applicant: Mylan Laboratories Limited
    Inventors: Vinayak Gore, Vinay Kumar Shukla, Yogesh Sangvikar, Dattatrey Kokane, Sushant Gharat
  • Publication number: 20180064714
    Abstract: Processes for the preparation of amorphous idelalisib are provided. Processes for the preparation of a premix of amorphous idelalisib are also provided.
    Type: Application
    Filed: March 12, 2016
    Publication date: March 8, 2018
    Inventors: Vinayak GORE, Vinay Kumar SHUKLA, Dattatraya KANKRALE, Shardul BHARATI, Murali BODUPALLI
  • Publication number: 20160362391
    Abstract: Methods of synthesizing pomalidomide are disclosed. Further, methods of purifying pomalidomide from a reaction mixture are also disclosed.
    Type: Application
    Filed: November 14, 2014
    Publication date: December 15, 2016
    Inventors: Vinayak Gore, Vinay Kumar Shukla, Dhananjay Shinde, Bansode Prakash
  • Patent number: 9150524
    Abstract: The present invention relates to an improved process for the preparation of Letrozole (I) and its synthetic intermediate 4-[(1-(1,2,4-triazoly)methyl]benzonitrile (III). In particular, it relates to a process to prepare Letrozole and its intermediate (III) substantially free from regioisomeric impurities. The present invention further relates to acid addition salts of 4-[(1-(1,2,4-triazoly)methyl]benzonitrile (III) such as the oxalate salt, and also to Letrozole (I), the intermediate (III) and salts thereof preparable by the processes of the present invention.
    Type: Grant
    Filed: August 26, 2011
    Date of Patent: October 6, 2015
    Assignee: Generics [UK] Limited
    Inventors: Vinayak Govind Gore, Vinay Kumar Shukla, Sandeep Mekde, Suresh Hasbe, Shreyas Bhandari, Dhananjay Shinde, Madhukar Shaligram Patil
  • Publication number: 20150218126
    Abstract: The present invention related to crystalline forms of thalidomide having a high polymorphic purity and to processes for their preparation. The present invention also relates to pharmaceutical preparations comprising the crystalline forms for the treatment of patients suffering from autoimmune, inflammatory or angiogenic disorders.
    Type: Application
    Filed: February 12, 2015
    Publication date: August 6, 2015
    Applicant: GENERICS [UK] LIMITED
    Inventors: Vinayak Govind Gore, Vinay Kumar Shukla, Madhukar Patil, Sandeep Mekde