SNDBOX: AI-Powered Online Automated Malware Analysis Platform
Looking for an automated malware analysis software? Something like a 1-click solution that doesn't require any installation or configuration…a platform that can scale up your research time… technology that can provide data-driven explanations… well, your search is over!
Israeli cybersecurity and malware researchers today at Black Hat conference launch a revolutionary machine learning and artificial intelligence-powered malware researcher platform that aims to help users identify unknown malware samples before they strike.
Dubbed SNDBOX, the free online automated malware analysis system allows anyone to upload a file and access its static, dynamic and network analysis in an easy-to-understand graphical interface.
The loss due to malware attacks is reported to be more than $10 billion every year, and it's increasing. Despite the significant improvement of cyber security mechanisms, malware is still a powerful and effective tool used by hackers to compromise systems because of its considerably improved evasion ability.
In recent years, artificial intelligence and machine learning technologies have evolved tremendously and emerged as one of the most promising technique to detect never-seen-before malware by studying the behavior of various samples.
However, since analyzing malware behavior is a post-attack technique that requires the execution of the malicious code at first place, the approach cannot be used as a defense mechanism; instead, you always need an isolated and controlled environment to monitor and examine its behavior.
Developed by cybersecurity researchers Dr. Ran Dubin and Ariel Koren, SNDBOX makes the approach of behavior-based malware research more easier than ever before and accessible to everyone.
SNDBOX is a powerful, multi-vector, cloud-based AI technology platform that is not just capable of analyzing files against different attributes and vectors by monitoring their behavior, but it also converts dynamic behavioral inputs into searchable vectors, allowing users to search its vast online malware analysis database with excellent visibility.
For efficient monitoring, SNDBOX executes submitted binaries in a controlled environment using an invisible kernel-mode agent, which deceives malware into believing that it is being executed in a real system it wants to attack.
Located between the User mode and Kernel mode, SNDBOX's invisible kernel-mode agent tricks malware into executing its full range of intended functionality, revealing its true malicious nature and capabilities.
SNDBOX monitors executables behavior, ranging from simple modifications of system resources to advanced network activities, and then leverages machine learning algorithms to process a large amount of gathered data, which could be over 200MB for a small binary of 10KB, into easy-to-digest results.
You might be wondering, what about computer viruses that wait for remote commands before activating their malicious payloads?
The platform is designed in a way to automatically develop deeper knowledge and understanding on several aspects, behavioral patterns, vectors, attributes, classification, and signatures over time by investigating samples submitted to it.
SNDBOX can also be integrated with a wide variety of 3rd party security platforms.
Available at https://app.sndbox.com, the SNDBOX platform can be accessed by just creating a free online account.
After logging in, the dashboard offers users to either submit a sample for automated scanning or search the database for previously analyzed malware samples classified into different keywords and behavior tags.
The analysis result dashboard has been beautifully designed to provide high visibility and data-driven explanations to scale malware research capabilities and reduce research time.
As shown in the screenshots below that researchers shared exclusively with The Hacker News, which can also be accessed live at SNDBOX website, the dashboard has been split into four primary sections, with their clickable subsections, as shown below:
The static analysis tab focuses on a complete analysis of malware without executing the malware.
The Dynamic analysis tab displays the complete process tree that reveals the lateral movement happens on a target machine upon execution, for example, process hollowing, process creation, process injection, and so on.
"We support all newest forms of lateral movement signatures (Including AtomBombing and ProcessDoppelganging, which are relatively new methods of ways to create processes and avoid antivirus detection)," the researchers say.
Under the Behavioral Indicators tab, SNDBOX highlights if the malicious executable:
Besides this, the network section also reveals suspicious and strange activities based upon various signatures and vectors, like indicating if the malware uses Tor network for encrypted communication.
Every malware sample submitted to SNDBOX platform using a free account and their results are publicly accessible through its powerful search feature.
As I mentioned earlier, SNDBOX uses machine learning techniques to categorize and label analyzed malware samples based on extracted attributes, helping search feature to display relevant results more accurately.
Moreover, users can also view and download the full report for any submitted malware sample, its PCAP file (captured network traffic), as well as the sample file itself—even for files submitted by other free account users.
"Furthermore, with full access to our data, all levels of your team can leverage information necessary for complete malware remediation and new research possibilities, while sharing insights, public samples and IOC's through our community platform."
SNDBOX also offers premium accounts for private analysts and companies, allowing them to upload samples privately without sharing their results with anyone.
"We also provide an on-premises version of our platform, where you can analyze your file in a completely off the network environment, on your organization, connect anything you want to the solution," researchers said.
We reached out to a few cybersecurity and malware researchers to learn what they think about SNDBOX platform after using it. Here's what they said:
Matthew Hickey, Co-founder of Hacker House
"As a platform, I think this brings a new useful capability for binary analysis that goes beyond the signature and simple heuristics typically seen in the cuckoo sandbox, categorizing samples through instrumentation both dynamically and statically is useful, and it also can provide a fast overview of a new sample to determine its behavior."
"It's a very useful new tool to add to the malware analysts toolkit and helps to categorize threats for which a signature might not yet exist. Simplifying this analysis process and providing a high-level overview of the samples behaviors is excellent. It is something I will be using going forward, much like cuckoo sandbox and VirusTotal it brings another rapid assessment capability to the hands of malware analysts."
Ido Naor - Researcher at Kaspersky Lab and Co-founder VirusBay
"SNDBOX is a game changer in how malware sandboxes operate today. It contains additional technical layers which cannot be found in other available services."
"In addition, the team behind the solution are nothing but top-notch experts who knows well how to detonate malicious samples and extract the most valuable parts without a hassle."
Tal Liberman, Security Researcher at Polarium, a consulting company that specializes in low level security research.
"It is evident that SNDBOX has been created by some of the best malware analysis experts. The platform has many advanced features, such as RPC visibility, accurately identifying the latest types of attacks, and advanced searching capabilities, which are not available on other competitive platforms. It would undoubtedly save valuable time and effort of malware researchers when analyzing malicious samples."
(Note: We update this article to add feedback from more researchers, as soon as we hear something back.)
Israeli cybersecurity and malware researchers today at Black Hat conference launch a revolutionary machine learning and artificial intelligence-powered malware researcher platform that aims to help users identify unknown malware samples before they strike.
Dubbed SNDBOX, the free online automated malware analysis system allows anyone to upload a file and access its static, dynamic and network analysis in an easy-to-understand graphical interface.
The loss due to malware attacks is reported to be more than $10 billion every year, and it's increasing. Despite the significant improvement of cyber security mechanisms, malware is still a powerful and effective tool used by hackers to compromise systems because of its considerably improved evasion ability.
In recent years, artificial intelligence and machine learning technologies have evolved tremendously and emerged as one of the most promising technique to detect never-seen-before malware by studying the behavior of various samples.
However, since analyzing malware behavior is a post-attack technique that requires the execution of the malicious code at first place, the approach cannot be used as a defense mechanism; instead, you always need an isolated and controlled environment to monitor and examine its behavior.
Developed by cybersecurity researchers Dr. Ran Dubin and Ariel Koren, SNDBOX makes the approach of behavior-based malware research more easier than ever before and accessible to everyone.
What is SNDBOX and How Does It Work?
SNDBOX is a powerful, multi-vector, cloud-based AI technology platform that is not just capable of analyzing files against different attributes and vectors by monitoring their behavior, but it also converts dynamic behavioral inputs into searchable vectors, allowing users to search its vast online malware analysis database with excellent visibility.
For efficient monitoring, SNDBOX executes submitted binaries in a controlled environment using an invisible kernel-mode agent, which deceives malware into believing that it is being executed in a real system it wants to attack.
Located between the User mode and Kernel mode, SNDBOX's invisible kernel-mode agent tricks malware into executing its full range of intended functionality, revealing its true malicious nature and capabilities.
SNDBOX monitors executables behavior, ranging from simple modifications of system resources to advanced network activities, and then leverages machine learning algorithms to process a large amount of gathered data, which could be over 200MB for a small binary of 10KB, into easy-to-digest results.
You might be wondering, what about computer viruses that wait for remote commands before activating their malicious payloads?
"Even if it is waiting for a long period, we know how to gracefully trigger long sleep or events, making the malware execute its full potential of malicious code immediately by altering its behavior to receive maximum information regarding its true nature," researchers told The Hacker News.
The platform is designed in a way to automatically develop deeper knowledge and understanding on several aspects, behavioral patterns, vectors, attributes, classification, and signatures over time by investigating samples submitted to it.
"Multi-vector AI detection mechanisms and behavioral indicators work together to detect malicious activity and aggregate data to provide decisive conclusions about the nature of the file," researchers told The Hacker News.
SNDBOX can also be integrated with a wide variety of 3rd party security platforms.
How to Use SNDBOX Malware Analysis Platform?
Available at https://app.sndbox.com, the SNDBOX platform can be accessed by just creating a free online account.
After logging in, the dashboard offers users to either submit a sample for automated scanning or search the database for previously analyzed malware samples classified into different keywords and behavior tags.
The analysis result dashboard has been beautifully designed to provide high visibility and data-driven explanations to scale malware research capabilities and reduce research time.
As shown in the screenshots below that researchers shared exclusively with The Hacker News, which can also be accessed live at SNDBOX website, the dashboard has been split into four primary sections, with their clickable subsections, as shown below:
- Scoring system
- Mutex
- Handle
- File exists
- Process Tree
- Static
- Static Analysis
- Metadata
- Import/Export tables
- Dynamic Analysis
- Process Tree
- Behavioral Indicators (WMI, Anti-VM, Abnormal Behavior, etc.)
- API Windows
- Info and Insight Tabs
- Network Analysis
- Network and DNS traffic with its payload information
The static analysis tab focuses on a complete analysis of malware without executing the malware.
The Dynamic analysis tab displays the complete process tree that reveals the lateral movement happens on a target machine upon execution, for example, process hollowing, process creation, process injection, and so on.
"We support all newest forms of lateral movement signatures (Including AtomBombing and ProcessDoppelganging, which are relatively new methods of ways to create processes and avoid antivirus detection)," the researchers say.
Under the Behavioral Indicators tab, SNDBOX highlights if the malicious executable:
- uses any process injection or hollowing techniques,
- drops files,
- checks for installed processes,
- uses any anti-VM technique,
- modifies any Windows firewall or registry rule,
- steals sensitive information, like browser data,
- encrypts files as ransomware does,
- gains persistence,
- performs any abnormal behavioral on the system,
- and much more indicator.
"For each behavior indicator we find, we provide the full pseudo code triggered this behavior. This is one way we provide huge visibility on what happened on the machine," researchers told The Hacker News.For our readers, researchers have also shared SNDBOX analysis for some infamous malware, listed below:
- Spora Ransomware, SNDBOX shows how it abuses Windows Management Instrumentation (WMI).
- Zeus Banking Malware, SNDBOX shows exciting information, such as visibility for "Hollowing," and "Injection" lateral movement on the system.
- WannaCry Ransomware, highlighting its behavior of changing registry settings, using file encryption and creating files with different extensions.
Besides this, the network section also reveals suspicious and strange activities based upon various signatures and vectors, like indicating if the malware uses Tor network for encrypted communication.
SNDBOX's Malware Analysis Database Is Searchable
Every malware sample submitted to SNDBOX platform using a free account and their results are publicly accessible through its powerful search feature.
As I mentioned earlier, SNDBOX uses machine learning techniques to categorize and label analyzed malware samples based on extracted attributes, helping search feature to display relevant results more accurately.
"Our reputation engine works alongside AI search to reduce false positives. Highly similar results are returned and scored based on their relevance," the researchers said.
"All research data, conclusions, and corresponding expert explanations are available in our open research platform, supporting the community's ability to scale efforts to combat evasive malware collectively."
It's Publicly Available and Downloadable!
Moreover, users can also view and download the full report for any submitted malware sample, its PCAP file (captured network traffic), as well as the sample file itself—even for files submitted by other free account users.
"Furthermore, with full access to our data, all levels of your team can leverage information necessary for complete malware remediation and new research possibilities, while sharing insights, public samples and IOC's through our community platform."
SNDBOX also offers premium accounts for private analysts and companies, allowing them to upload samples privately without sharing their results with anyone.
"We also provide an on-premises version of our platform, where you can analyze your file in a completely off the network environment, on your organization, connect anything you want to the solution," researchers said.
What Security Researchers Have to Say About SNDBOX?
SNDBOX Founders, Dr. Ran Dubin and Ariel Koren, at Black Hat 2018 |
Matthew Hickey, Co-founder of Hacker House
"As a platform, I think this brings a new useful capability for binary analysis that goes beyond the signature and simple heuristics typically seen in the cuckoo sandbox, categorizing samples through instrumentation both dynamically and statically is useful, and it also can provide a fast overview of a new sample to determine its behavior."
"It's a very useful new tool to add to the malware analysts toolkit and helps to categorize threats for which a signature might not yet exist. Simplifying this analysis process and providing a high-level overview of the samples behaviors is excellent. It is something I will be using going forward, much like cuckoo sandbox and VirusTotal it brings another rapid assessment capability to the hands of malware analysts."
Ido Naor - Researcher at Kaspersky Lab and Co-founder VirusBay
"SNDBOX is a game changer in how malware sandboxes operate today. It contains additional technical layers which cannot be found in other available services."
"In addition, the team behind the solution are nothing but top-notch experts who knows well how to detonate malicious samples and extract the most valuable parts without a hassle."
Tal Liberman, Security Researcher at Polarium, a consulting company that specializes in low level security research.
"It is evident that SNDBOX has been created by some of the best malware analysis experts. The platform has many advanced features, such as RPC visibility, accurately identifying the latest types of attacks, and advanced searching capabilities, which are not available on other competitive platforms. It would undoubtedly save valuable time and effort of malware researchers when analyzing malicious samples."
(Note: We update this article to add feedback from more researchers, as soon as we hear something back.)
Have something to say about this article? Comment below or share it with us on Facebook, Twitter or our LinkedIn Group.