Patents by Inventor Ergeta Muca

Ergeta Muca 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: 12620216
    Abstract: Described is a system for improving machine learning models. In some cases, the system improves such models by identifying an autoencoder for a latent diffusion machine learning model, the latent diffusion machine learning model is trained to receive text as input and output an image based on the received text. The system identifies a number of channels in a decoder of the autoencoder, the decoder being configured to receive latent features as input and output images. The system further identifies a performance characteristic of the decoder and changes the node topology of the decoder based on the performance characteristic to generate an updated decoder. The system retrains the latent diffusion machine learning model using the updated decoder by inputting latent features to the updated decoder, receiving an outputted image from the updated decoder, and updating one or more weights of the decoder based on an assessment of the outputted image.
    Type: Grant
    Filed: December 29, 2023
    Date of Patent: May 5, 2026
    Assignee: SNAP INC.
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang
  • Patent number: 12469273
    Abstract: Described is a system for improving machine learning models. In some cases, the system improves such models by identifying a performance characteristic for machine learning model blocks in an iterative denoising process of a machine learning model, connecting a prior machine learning model block with a subsequent machine learning model block of the machine learning model blocks within the machine learning model based on the identified performance characteristic, identifying a prompt of a user, the prompt indicative of an intent of the user for generative images, and analyzing data corresponding to the prompt using the machine learning model to generate one or more images, the machine learning model trained to generate images based on data corresponding to prompts.
    Type: Grant
    Filed: December 29, 2023
    Date of Patent: November 11, 2025
    Assignee: Snap Inc.
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang
  • Publication number: 20250104290
    Abstract: Examples described herein relate to automatic image generation. A plurality of inputs is accessed. The inputs include first input data and second input data. The first input data includes a text prompt describing a desired image and the second input data is indicative of one or more structural features of the desired image. One or more intermediate outputs are generated via a first generative machine learning model that uses the plurality of inputs as first control signals. An output image is generated via a second generative machine learning model that uses at least a subset of the plurality of inputs and at least a subset of the one or more intermediate outputs as second control signals. The output image is presented at a user device of a user.
    Type: Application
    Filed: January 31, 2024
    Publication date: March 27, 2025
    Inventors: Erli Ding, Colin Eles, Amir Fruchtman, Riza Alp Guler, Yanyu Li, Xian Liu, Ergeta Muca, Mohammad Rami Koujan, Jian Ren, Dhritiman Sagar, Aliaksandr Siarohin, Ivan Skorokhodov, Sergey Tulyakov
  • Publication number: 20240394933
    Abstract: Described is a system for improving machine learning models by accessing a first latent diffusion machine learning model, accessing a second latent diffusion machine learning model that was derived from the first latent diffusion machine learning model, the second latent diffusion machine learning model trained to perform a second number of denoising steps, generating noise data, processing the noise data via the first latent diffusion machine learning model to generate one or more first latent features, processing the noise data via the second latent diffusion machine learning model to generate one or more second latent features, and inputting the one or more first latent features and the one or more second latent features into a loss function. The system then modifies a parameter of the second latent diffusion machine learning model based on the output of the loss function.
    Type: Application
    Filed: March 5, 2024
    Publication date: November 28, 2024
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang
  • Publication number: 20240395028
    Abstract: Described is a system for improving machine learning models. In some cases, the system improves such models by identifying an autoencoder for a latent diffusion machine learning model, the latent diffusion machine learning model is trained to receive text as input and output an image based on the received text. The system identifies a number of channels in a decoder of the autoencoder, the decoder being configured to receive latent features as input and output images. The system further identifies a performance characteristic of the decoder and changes the node topology of the decoder based on the performance characteristic to generate an updated decoder. The system retrains the latent diffusion machine learning model using the updated decoder by inputting latent features to the updated decoder, receiving an outputted image from the updated decoder, and updating one or more weights of the decoder based on an assessment of the outputted image.
    Type: Application
    Filed: December 29, 2023
    Publication date: November 28, 2024
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang
  • Publication number: 20240394843
    Abstract: Described is a system for improving machine learning models by accessing a first latent diffusion machine learning model, the first latent diffusion machine learning model trained to perform a first number of denoising steps, accessing a second latent diffusion machine learning model that was derived from the first latent diffusion machine learning model, the second latent diffusion machine learning model trained to perform a second number of denoising steps, generating noise data, processing the noise data via the first latent diffusion machine learning model to generate one or more first images, processing the noise data via the second latent diffusion machine learning model to generate one or more second images, and modify a parameter of the second latent diffusion machine learning model based on a comparison of the one or more first images with the one or more second images.
    Type: Application
    Filed: February 6, 2024
    Publication date: November 28, 2024
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang
  • Publication number: 20240394932
    Abstract: Described is a system for improving machine learning models. In some cases, the system improves such models by identifying a performance characteristic for machine learning model blocks in an iterative denoising process of a machine learning model, connecting a prior machine learning model block with a subsequent machine learning model block of the machine learning model blocks within the machine learning model based on the identified performance characteristic, identifying a prompt of a user, the prompt indicative of an intent of the user for generative images, and analyzing data corresponding to the prompt using the machine learning model to generate one or more images, the machine learning model trained to generate images based on data corresponding to prompts.
    Type: Application
    Filed: December 29, 2023
    Publication date: November 28, 2024
    Inventors: Pavlo Chemerys, Colin Eles, Ju Hu, Qing Jin, Yanyu Li, Ergeta Muca, Jian Ren, Dhgritiman Sagar, Aleksei Stoliar, Sergey Tulyakov, Huan Wang