Загрузка страницы

Anomaly Detection 101 - Elizabeth (Betsy) Nichols Ph.D.

This presentation surveys a collection of techniques for detecting anomalies in a DevOps environment. Each of the techniques has strengths and weaknesses that are illustrated via real-world (anonymized) customer data. Techniques discussed include deterministic and statistical models as well as uni-variate and multi-variate analytics. Examples are given that show concrete evidence where each can succeed and each can fail. This presentation is about concepts and how to think about alternative anomaly detection techniques. This presentation is not an academic discourse in math, statistics or probability theory.

Elizabeth A. Nichols (Betsy) is Chief Data Scientist at Netuitive, Inc. In this role she is responsible for leading the company's vision and technologies for analytics, modeling, and algorithms.

Betsy has applied mathematics and computer technologies to create systems for war gaming, space craft mission optimization, industrial process control, supply chain logistics, electronic trading, advertising networks, IT security and risk models, and network and systems management. She has co-founded three companies, all of which delivered analytics to commercial and government enterprises. Betsy graduated with an A.B. from Vassar College and a Ph.D. in Mathematics from Duke University. Check her out on LinkedIn (https://www.linkedin.com/in/elizabethanichols) for more information.

Видео Anomaly Detection 101 - Elizabeth (Betsy) Nichols Ph.D. канала DevOpsDays Silicon Valley
Показать
Комментарии отсутствуют
Введите заголовок:

Введите адрес ссылки:

Введите адрес видео с YouTube:

Зарегистрируйтесь или войдите с
Информация о видео
15 ноября 2015 г. 4:40:19
00:29:38
Другие видео канала
Watch Everything, Watch Anything: Anomaly Detection By Nathaniel CookWatch Everything, Watch Anything: Anomaly Detection By Nathaniel CookAnomaly Detection: Algorithms, Explanations, ApplicationsAnomaly Detection: Algorithms, Explanations, ApplicationsShiny Object Syndrome ... Is OT Anomaly Detection Worth It?Shiny Object Syndrome ... Is OT Anomaly Detection Worth It?At Scale Anomaly Detection for Enterprise Security: Joshua Neil, MicrosoftAt Scale Anomaly Detection for Enterprise Security: Joshua Neil, MicrosoftAnomaly Detection - Nick RadcliffeAnomaly Detection - Nick RadcliffeAutomatically Find Patterns & Anomalies from Time Series or Sequential Data - Sean LawAutomatically Find Patterns & Anomalies from Time Series or Sequential Data - Sean LawRobust anomaly detection for real user monitoring data - Velocity 2016, Santa Clara, CARobust anomaly detection for real user monitoring data - Velocity 2016, Santa Clara, CADetecting outliers and anomalies in realtime at Datadog - Homin Lee (OSCON Austin 2016)Detecting outliers and anomalies in realtime at Datadog - Homin Lee (OSCON Austin 2016)Deep Learning for Time Series Data (O'Reilly Artificial Intelligence Conference)Deep Learning for Time Series Data (O'Reilly Artificial Intelligence Conference)Anomaly Detection In Power BI | November 2020 Power BI Desktop Update | Preview FeatureAnomaly Detection In Power BI | November 2020 Power BI Desktop Update | Preview FeatureLecture 15.1 — Anomaly Detection Problem | Motivation  — [ Machine Learning | Andrew Ng ]Lecture 15.1 — Anomaly Detection Problem | Motivation — [ Machine Learning | Andrew Ng ]Unsupervised Anomaly Detection with Isolation Forest - Elena SharovaUnsupervised Anomaly Detection with Isolation Forest - Elena SharovaAnomaly Detection for Data Quality and Metric Shifts at Netflix | NetflixAnomaly Detection for Data Quality and Metric Shifts at Netflix | NetflixNeedle in the Haystack—User Behavior Anomaly Detection for Information SecurityNeedle in the Haystack—User Behavior Anomaly Detection for Information SecurityUnsupervised Anomaly Detection With Advanced Analytics: Your Next Steps - Harizo RajaonaUnsupervised Anomaly Detection With Advanced Analytics: Your Next Steps - Harizo RajaonaAnomaly Detection using Neural Networks - Dean LangsamAnomaly Detection using Neural Networks - Dean LangsamAnomaly Detection with AutoEncoders using TensorflowAnomaly Detection with AutoEncoders using TensorflowAnomaly Detection on stationary time-series using auto-encoders and LSTMs #DeepLearning #ML #AIAnomaly Detection on stationary time-series using auto-encoders and LSTMs #DeepLearning #ML #AIAnomaly Detection in Telecommunications by Valentina DjordjevicAnomaly Detection in Telecommunications by Valentina DjordjevicAnomaly Detection With Time Series Data: How to Know if Something is Terribly WrongAnomaly Detection With Time Series Data: How to Know if Something is Terribly Wrong
Яндекс.Метрика