Operations | Monitoring | ITSM | DevOps | Cloud

Using Elastic supervised machine learning for binary classification

The 7.6 release of the Elastic Stack delivered the last piece required for an end-to-end machine learning pipeline. Previously, machine learning focused on unsupervised techniques with anomaly detection. However, several features have been released over the 7.x releases. In 7.2 Elasticsearch released transforms for turning raw indices into a feature index. Then 7.3, 7.4, and 7.5 released outlier detection, regression, and classification, respectively.

Improve Manageability of NetApp Infrastructure with AIOps-Powered IT Operations

In this interactive webinar, we’ll review how Maple Networks and OpsRamp are bringing AI and machine learning to drive down the cost and complexity of monitoring and managing NetApp infrastructure stacks, such as Flexpod, FAS, and HCI.

Splunk and the WEF - Working Together to Unlock the Potential of AI

Use of AI can be critical when developing systems to support social good, with some inspiring examples using Splunk in healthcare and higher education organisations. According to our State of Dark Data report, however, only 15% of organisations admit they are utilising AI solutions today due to lack of skills. So how can we help organisations unlock the potential of AI?

How Artificial Intelligence is Shaping the Industry of VPN

Artificial intelligence refers to the machine's ability to learn and think. Given that it sort of mimics how humans think and reason, AI's application is virtually endless. AI reduces human error, do a task that is risky for humans to do, help humans solve complex, and so much more. With the emergence of artificial intelligence, concerns about data privacy have been brought into the light. Artificial intelligence relies on our personal information to learn.

Open source holds the key to autonomous vehicles

A growing number of car companies have made their autonomous vehicle (AV) datasets public in recent years. Daimler fueled the trend by making its Cityscapes dataset freely available in 2016. Baidu and Aptiv respectively shared the ApolloScapes and nuScenes datasets in 2018. Lyft, Waymo and Argo followed suit in 2019. And more recently, automotive juggernauts Ford and Audi released datasets from their AV research programs to the public.

Machine learning in cybersecurity: Training supervised models to detect DGA activity

How annoying is it when you get a telemarketing call from a random phone number? Even if you block it, it won’t make a difference because the next one will be from a brand new number. Cyber attackers employ the same dirty tricks. Using domain generated algorithms (DGAs), malware creators change the source of their command and control infrastructure, evading detection and frustrating security analysts trying to block their activity.

How to Introduce Yourself to Machine Learning

Most IT and business leaders know that despite the economic and human disruption of the COVID-19 pandemic, digital transformation will ultimately speed up, not slow down. The immediate challenges of the pandemic have led companies to find innovative ways to get things done, relying on data-driven decisions and technologies.

WTF is a Convolutional Neural Network?

If you are a software engineer, there's a good chance that deep learning will inevitably become part of your job in the future. Even if you're not building the models that directly use CNNs, you might have to collaborate with data scientists or help business partners better understand what is going on under the hood. In this article, Julie Kent dives into the world of convolutional neural networks and explains it all in a not-so-scary way.

What's New in the Splunk Machine Learning Toolkit 5.2?

We're excited to announce that the Splunk Machine Learning Toolkit (MLTK) version 5.2 is available for download today on Splunkbase! Earlier this month, I discussed how the release of version 5.2 will make machine learning more accessible to more users. Splunk’s MLTK lets our customers apply machine learning to the data they're already capturing in Splunk, develop models, and operationalize these algorithms to glean new insights and make more informed decisions.