Patents by Inventor Marija Nikolic

Marija Nikolic 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: 20240126756
    Abstract: A method and one or more non-transitory storage media are provided to train and implement a one-hot encoder. During a training phase, computation of an encoder state is performed by executing a set of relational statements to extract unique categories in a first training data set, associate each unique category with a unique index, and generate a one-hot encoding for each unique category. The set of relational statements are executed by a query optimization engine. Execution of the set of relational statements is postponed until a result of each relational statement is needed, and the query optimization engine implements one or more optimizations when executing the set of relational statements. During an encoding phase, a set of categorical features in a second training data set are encoded based on the encoder state to form a set of encoded categorical features.
    Type: Application
    Filed: October 12, 2022
    Publication date: April 18, 2024
    Inventors: FELIX SCHMIDT, MATTEO CASSERINI, MILOS VASIC, MARIJA NIKOLIC
  • Publication number: 20240126798
    Abstract: In an embodiment, a computer stores, in memory or storage, many explanation profiles, many log entries, and definitions of many features that log entries contain. Some features may contain a logic statement such as a database query, and these are specially aggregated based on similarity. Based on the entity specified by an explanation profile, statistics are materialized for some or all features. Statistics calculation may be based on scheduled batches of log entries or a stream of live log entries. At runtime, an inference that is based on a new log entry is received. Based on an entity specified in the new log entry, a particular explanation profile is dynamically selected. Based on the new log entry and statistics of features for the selected explanation profile, a local explanation of the inference is generated. In an embodiment, an explanation text template is used to generate the local explanation.
    Type: Application
    Filed: May 30, 2023
    Publication date: April 18, 2024
    Inventors: Arno Schneuwly, Desislava Wagenknecht-Dimitrova, Felix Schmidt, Marija Nikolic, Matteo Casserini, Milos Vasic, Renata Khasanova
  • Publication number: 20230376743
    Abstract: The present invention avoids overfitting in deep neural network (DNN) training by using multitask learning (MTL) and self-supervised learning (SSL) techniques when training a multi-branch DNN to encode a sequence. In an embodiment, a computer first trains the DNN to perform a first task. The DNN contains: a first encoder in a first branch, a second encoder in a second branch, and an interpreter layer that combines data from the first branch and the second branch. The DNN second trains to perform a second task. After the first and second trainings, production encoding and inferencing occur. The first encoder encodes a sparse feature vector into a dense feature vector from which an inference is inferred. In an embodiment, a sequence of log messages is encoded into an encoded trace. An anomaly detector infers whether the sequence is anomalous. In an embodiment, the log messages are database commands.
    Type: Application
    Filed: May 19, 2022
    Publication date: November 23, 2023
    Inventors: Marija Nikolic, Nikola Milojkovic, Arno Schneuwly, Matteo Casserini, Milos Vasic, Renata Khasanova, Felix Schmidt
  • Publication number: 20230368054
    Abstract: The present invention relates to threshold estimation and calibration for anomaly detection. Herein are machine learning (ML) and extreme value theory (EVT) techniques for normalizing and thresholding anomaly scores without presuming a values distribution. In an embodiment, a computer receives many unnormalized anomaly scores and, according to peak over threshold (POT), selects a highest subset of the unnormalized anomaly scores that exceed a tail threshold. Based on the highest subset of the unnormalized anomaly scores, parameters of a probability density function are trained according to EVT. After training and in a production environment, a normalized anomaly score is generated based on an unnormalized anomaly score and the trained parameters of the probability density function. Anomaly detection compares the normalized anomaly score to an optimized anomaly threshold.
    Type: Application
    Filed: May 16, 2022
    Publication date: November 16, 2023
    Inventors: Marija Nikolic, Matteo Casserini, Arno Schneuwly, Nikola Milojkovic, Milos Vasic, Renata Khasanova, Felix Schmidt
  • Publication number: 20150090592
    Abstract: Embodiments of an improved sensor for dielectrophoretic cytometry are presented. In one embodiment, the sensor includes a plurality of sensor electrodes as well as an actuation electrode. Embodiments of microfluidic systems incorporating such sensor are also described. Additionally, embodiments of methods or performing cytometry analysis are also presented.
    Type: Application
    Filed: October 6, 2014
    Publication date: April 2, 2015
    Inventors: Douglas Thomson, Gregory Bridges, Michael Butler, Marija Nikolic-Jaric, Elham Salimi, Tim Cabel, Szymon Rzeszowski, Graham Ferrier, Katrin Braasch