Operations | Monitoring | ITSM | DevOps | Cloud

Machine Learning

Splunk Machine Learning Toolkit Overview

You no longer have to be a data scientist to bring intelligence to your Splunk data. The Machine Learning Toolkit (MLTK) availble for free on Splunkbase, is a purpose built tool that extends Splunk Processing Language (SPL) with machine learning algorithms, new commands, and powerful visualizations. This video provides a high-level overview of MLTK and preview the use-cases that it supports.

Detecting unusual network activity with Elastic Security and machine learning

As we’ve shown in a previous blog, search-based detection rules and Elastic’s machine learning-based anomaly detection can be a powerful way to identify rare and unusual activity in cloud API logs. Now, as of Elastic Security 7.13, we’ve introduced a new set of unsupervised machine learning jobs for network data, and accompanying alert rules, several of which look for geographic anomalies.

Accelerating Machine Learning with MLOps and FuseML: Part One

Building successful machine learning (ML) production systems requires a specialized re-interpretation of the traditional DevOps culture and methodologies. MLOps, short for machine learning operations, is a relatively new engineering discipline and a set of practices meant to improve the collaboration and communication between the various roles and teams that together manage the end-to-end lifecycle of machine learning projects.

Deep Learning Toolkit 3.6 - Automated Machine Learning, Random Cut Forests, Time Series Decomposition, and Sentiment Analysis

We’re excited to share that the Deep Learning Toolkit App for Splunk (DLTK) is now available in version 3.6 for Splunk Enterprise and Splunk Cloud. The latest release includes: Let’s get started with the new operational overview dashboard which was built using Splunk’s brand new dashboard studio functionality which I highly recommend checking out. You can learn more about it in this recent tech talk which you can watch on demand.

Cerner depends on Elastic machine learning for a healthy infrastructure

Cerner Corp. is a supplier of healthcare information technology systems, services, and devices. The company, with $5.7 billion in annual revenue, empowers people and communities to engage in their own care. A key aspect of the business is surfacing data to enable their clients to make informed decisions about their healthcare. The 29,000 Cerner employees in 30 countries are on a mission to shape the healthcare of tomorrow.

Transforming IT Ops with Machine Learning? Apply Context

A new approach to IT operations is needed - one that works at machine speed. But to transform operations, IT leaders must commit not only to collecting data, but to also putting automated practices in place that ensure data quality and enrich that data with context to make it actionable.

Ways AI is Driving More Efficient Application Performance Monitoring

In the digital age, the speed and performance of apps and websites have a huge impact on the customer experience. To ensure a high level of quality, Application Performance Monitoring (APM) refers to the process of tracking the performance and availability of software systems. Let’s look at what Application Performance Monitoring is, how AI and machine learning are being applied to stay ahead of the competition, and several real-world use cases.

Anomaly Detection with Machine Learning

Unsupervised machine learning can help you detect anomalies in your data and forecast trends. The Elastic Observability and Security solutions have preconfigured machine learning models right out of the box. In this video you will see how you can get started with creating your own machine learning jobs.