Operations | Monitoring | ITSM | DevOps | Cloud

Anomaly Detection

EventSentry v5.1: Anomaly Detection / Permission Inventory / Training Courses & More!

We’re extremely excited to announce the availability of the EventSentry v5.1, which will detect threats and suspicious behavior more effectively – while also providing users with additional reports and dashboards for CMMC and TISAX compliance. The usability of EventSentry was also improved across the board, making it easier to use, manage and maintain EventSentry on a day-by-day basis. We also released 60+ training videos to help you get started and take EventSentry to the next level.

Anomaly Detection for Time Series Data: Anomaly Types

Welcome to the second chapter of the handbook on Anomaly Detection for Time Series Data! This series of blog posts aims to provide an in-depth look into the fundamentals of anomaly detection and root cause analysis. It will also address the challenges posed by the time-series characteristics of the data and demystify technical jargon by breaking it down into easily understandable language. This blog post (Chapter 2) is focused on different types of anomalies.

Anomaly Detection for Time Series Data: An Introduction

Welcome to the handbook on Anomaly Detection for Time Series Data! This series of blog posts aims to provide an in-depth look into the fundamentals of anomaly detection and root cause analysis. It will also address the challenges posed by the time-series characteristics of the data and demystify technical jargon by breaking it down into easily understandable language. This blog post (Chapter 1) is focused on.

Anomaly Detection in 2024: Opportunities & Challenges

Anomaly detection is the practice of identifying data points and patterns that may deviate significantly from an established hypothesis. As a concept, anomaly detection has been around forever. Today, detecting anomalies today is a critical practice. That’s because anomalies can indicate important information, such as: Let’s talk a look at the wide world of anomaly detection.

The Quirky World of Anomaly Detection

Hey there, data detectives and server sleuths! Ever find yourself staring at a screen full of numbers and graphs, only to have one data point wave at you like a tourist lost in Times Square? Yup, you’ve stumbled upon the cheeky world of Anomaly Detection—where data points act more mysterious than your cat when it suddenly decides to sprint around the house at 2 AM. So buckle up!

Developing the Splunk App for Anomaly Detection

Anomaly detection is one of the most common problems that Splunk users are interested in solving via machine learning. This is highly intuitive, as one of the main reasons our Splunk customers are ingesting, indexing, and searching their systems’ logs and metrics is to find problems in their systems, either before, during, or after the problem takes place. In particular, one of the types of anomaly detection that our customers are interested in is time series anomaly detection.

Fastest Time-to-Value Anomaly Detection in Splunk: The Splunk App for Anomaly Detection 1.1.0

Anomaly detection in metrics or time series data is the most used machine learning use case among Splunk Security and Observability customers. Customers are looking for easy-to-use ML-powered high-fidelity anomaly detection, so that they can be alerted at the first sign of a failure point or security incident.

Stop Overspending and Optimize Your Cloud Costs with Advanced Anomaly Detection

“Time is money” couldn’t be truer than in managing cloud costs. By way of proactive anomaly detection, a chance is given to save time that could have been spent on issue recognition and resolution. Anomaly detection for the Cloud can be tricky since there can be changes in prices & data on billing history anytime. Not to mention, seasonality can mess things up as well.