As the pandemic starts to fade, it can be easy to fall into a false sense of security. While there’s finally an end to COVID-19 insight, the cybersecurity pandemic rages on. 2020 was a record year for cybercrime, and the same threats will plague 2021. Amid the disruptions of 2020, many businesses embraced remote work, cloud services, and IoT technologies. These changes, in turn, led to a shifting cybersecurity landscape as cybercriminals adapted and new threats emerged.
Threat modelling is a process for identifying potential threats to an organization's network security and all the vulnerabilities that could be exploited by those threats. Most security protocols are reactive - threats are isolated and patched after they've been injected into a system. Threat modelling, on the other hand, is a proactive approach to cybersecurity, whereby potential threats are identified and anticipated.
Cloud misconfigurations continue to be a serious concern for organizations, and the list of security incidents caused by the exposure of data from Saas and IaaS applications only continues to grow.
There’s a common misconception that cloud providers handle security, a relic leftover from hosting providers of previous decades. The truth is, cloud providers use a shared responsibility model, leaving a lot of security up to the customer. Stories of AWS compromise are widespread, with attackers often costing organizations many thousands of dollars in damages.
The Splunk Attack Range project has officially reached the v1.0 release. By achieving this milestone, we wanted to reflect on how we got here, what features we’ve built for v1.0 and what the future looks like for Splunk Attack Range. What is the Splunk Attack Range? 🧐
Implementing effective threat detection for AWS requires visibility into all of your cloud services and containers. An application is composed of a number of elements: hosts, virtual machines, containers, clusters, stored information, and input/output data streams. When you add configuration and user management to the mix, it’s clear that there is a lot to secure!
At Elastic Security, we approach the challenge of threat detection with various methods. Traditionally, we have focused on machine learning models and behaviors. These two methods are powerful because they can detect never-before-seen malware. Historically, we’ve felt that signatures are too easily evaded, but we also recognize that ease of evasion is only one of many factors to consider.