Blog
/
/
March 9, 2021

How VPC Traffic Mirroring Boosts Darktrace Security

Find out how Amazon VPC Traffic Mirroring enhances Darktrace's cloud security. Learn about its impact on advanced threat detection and management.
No items found.
Inside the SOC
Darktrace cyber analysts are world-class experts in threat intelligence, threat hunting and incident response, and provide 24/7 SOC support to thousands of Darktrace customers around the globe. Inside the SOC is exclusively authored by these experts, providing analysis of cyber incidents and threat trends, based on real-world experience in the field.
No items found.
Default blog imageDefault blog imageDefault blog imageDefault blog imageDefault blog imageDefault blog image
09
Mar 2021

Darktrace's Cyber AI brings real-time visibility and adaptive, autonomous defense to your AWS cloud security strategy.

The platform continuously learns what normal behavior looks like for every user, device, and workload in your AWS environment. With this deep understanding of usual ‘patterns of life,’ Darktrace  can recognize the subtle deviations that point to a threat, from account takeovers to critical misconfigurations.

This bespoke, real-time knowledge of usual activity allows Darktrace to spot the unknown and unpredictable threats that get through policy-based defenses – all without relying on any rules, signatures, or prior assumptions.

With Amazon Virtual Private Cloud (Amazon VPC) Traffic Mirroring, Darktrace’s self-learning AI can seamlessly access granular packet data in AWS cloud environments, helping the platform build a rich understanding of context. AWS’s recent announcement of the extension of VPC Traffic Mirroring to non-Nitro instance types now allows our customers to gain agentless Cyber AI defense across these instances as well.

Expanding VPC traffic mirroring to non-Nitro instances

Amazon VPC Traffic Mirroring replicates the network traffic from EC2 instances within VPCs and allows customers to leverage this traffic for Darktrace’s AI-driven threat detection and investigation. Darktrace’s Cyber AI learns ‘on the job’ what normal activity looks like in customer AWS environments, in part using the real-time visibility provided by VPC Traffic Mirroring. The platform continuously adapts as each customer’s business evolves, a critical feature given the speed and scale of development in the cloud.

Previously, customers could only enable VPC Traffic Mirroring on their Nitro-based EC2 instances. Now, AWS has announced that this seamless access to hundreds of features from network traffic is extended to select non-Nitro instance types, supporting Darktrace’s ability to easily learn the bespoke behavioral patterns of our customers’ Amazon VPCs.

Customers can now enable VPC Traffic Mirroring on additional instances types such as C4, D2, G3, G3s, H1, I3, M4, P2, P3, R4, X1 and X1e that use the Xen-based hypervisor.* This feature is available in all 20 regions where VPC Traffic Mirroring is currently supported.

VPC Traffic Mirroring supports many of Darktrace’s extensive use cases across AWS, which include:

  • Data exfiltration and destruction: Detects anomalous device connections and user access, as well as unusual resource deletion, modification, and movement;
  • Critical misconfigurations: Catches open S3 buckets, anomalous permission changes, and unusual activity around compliance-related data and devices;
  • Compromised credentials: Spots unusual logins, including brute force attempts and unusual login source/time, as well as unusual user behavior, from rule changes to password resets;
  • Insider threat and admin abuse: Identifies the subtle signs of malicious insiders – including sensitive file access, resource modification, role changes, and adding/deleting users.

Figure 1: Darktrace illuminates activity in AWS

Autonomous investigation and response for AWS cloud environments

The Darktrace Security Module for AWS provides additional visibility across AWS environments via interaction with AWS CloudTrail, allowing for AI-powered monitoring of management and administration activity. With this deep knowledge of how your business operates in the cloud, Darktrace delivers total coverage across all your AWS services, including:

  • EC2
  • IAM
  • S3
  • VPC
  • Lambda
  • Athena
  • DynamoDB
  • Route 53
  • ACM
  • RDS

The recently announced Version 5 of the Darktrace, which focuses on protecting the cloud and the remote workforce, further augments Darktrace’s coverage of AWS environments. Among many other exciting new features, Version 5 extends the reach of Cyber AI Analyst and Darktrace RESPOND to cloud environments like AWS VPCs.

Cyber AI Analyst augments the work of security teams by autonomously reporting on the full scope of security incidents and reduces triage time by up to 92%. Cyber AI Analyst can now also conduct on-demand investigations into users and devices of interest, ingest third-party alerts to trigger new investigations, and automatically feed AI-generated Incident Reports to any SIEM, SOAR, or downstream ticketing system.

Meanwhile, Darktrace RESPOND brings Autonomous Response to the critical infrastructure which AWS VPCs provide. Darktrace's responses are surgically precise and intelligently maintain normal business operations while stopping emerging threats in real time.**

“Darktrace's innovations are outstanding and have really meshed with our current needs as a security team, from the flexibility of our new cloud-delivered deployment to the extended visibility of the Darktrace Client Sensors.”

– CISO, Real Estate

We have also launched a dedicated user interface for visualization and intuitive analysis of cloud-based threats identified across AWS via the Darktrace Security Module.

Self-Learning AI defense across the enterprise

Darktrace offers AI-driven defense of cloud infrastructure in AWS, as well as across SaaS applications, email, corporate networks, industrial systems, and remote endpoints. Taking a fundamentally unique approach, Darktrace provides the industry’s only self-learning platform that gives complete coverage and visibility across the organization.

This is a critical benefit, as businesses and workforces today are increasingly complex and dynamic. Darktrace can connect the dots between unusual behavior in disparate infrastructure areas and ensure cloud security is not siloed from the monitoring of the rest of the organization.

Darktrace’s adaptive and unified approach allows the solution to detect, investigate, and respond to the full range of threats facing the enterprise – even those unpredictable threats that move across dynamic and diverse environments.

Learn more about Darktrace and AWS

* VPC Traffic Mirroring is not supported on the T2, R3 and I2 instance types and previous generation instances.
** This product is only available in AWS for customers who leverage Darktrace osSensors.

No items found.
Inside the SOC
Darktrace cyber analysts are world-class experts in threat intelligence, threat hunting and incident response, and provide 24/7 SOC support to thousands of Darktrace customers around the globe. Inside the SOC is exclusively authored by these experts, providing analysis of cyber incidents and threat trends, based on real-world experience in the field.
No items found.

More in this series

No items found.

Blog

/

Email

/

December 18, 2025

Why organizations are moving to label-free, behavioral DLP for outbound email

Man at laptopDefault blog imageDefault blog image

Why outbound email DLP needs reinventing

In 2025, the global average cost of a data breach fell slightly — but remains substantial at USD 4.44 million (IBM Cost of a Data Breach Report 2025). The headline figure hides a painful reality: many of these breaches stem not from sophisticated hacks, but from simple human error: mis-sent emails, accidental forwarding, or replying with the wrong attachment. Because outbound email is a common channel for sensitive data leaving an organization, the risk posed by everyday mistakes is enormous.

In 2025, 53% of data breaches involved customer PII, making it the most commonly compromised asset (IBM Cost of a Data Breach Report 2025). This makes “protection at the moment of send” essential. A single unintended disclosure can trigger compliance violations, regulatory scrutiny, and erosion of customer trust –consequences that are disproportionate to the marginal human errors that cause them.

Traditional DLP has long attempted to mitigate these impacts, but it relies heavily on perfect labelling and rigid pattern-matching. In reality, data loss rarely presents itself as a neat, well-structured pattern waiting to be caught – it looks like everyday communication, just slightly out of context.

How data loss actually happens

Most data loss comes from frustratingly familiar scenarios. A mistyped name in auto-complete sends sensitive data to the wrong “Alex.” A user forwards a document to a personal Gmail account “just this once.” Someone shares an attachment with a new or unknown correspondent without realizing how sensitive it is.

Traditional, content-centric DLP rarely catches these moments. Labels are missing or wrong. Regexes break the moment the data shifts formats. And static rules can’t interpret the context that actually matters – the sender-recipient relationship, the communication history, or whether this behavior is typical for the user.

It’s the everyday mistakes that hurt the most. The classic example: the Friday 5:58 p.m. mis-send, when auto-complete selects Martin, a former contractor, instead of Marta in Finance.

What traditional DLP approaches offer (and where gaps remain)

Most email DLP today follows two patterns, each useful but incomplete.

  • Policy- and label-centric DLP works when labels are correct — but content is often unlabeled or mislabeled, and maintaining classification adds friction. Gaps appear exactly where users move fastest
  • Rule and signature-based approaches catch known patterns but miss nuance: human error, new workflows, and “unknown unknowns” that don’t match a rule

The takeaway: Protection must combine content + behavior + explainability at send time, without depending on perfect labels.

Your technology primer: The three pillars that make outbound DLP effective

1) Label-free (vs. data classification)

Protects all content, not just what’s labeled. Label-free analysis removes classification overhead and closes gaps from missing or incorrect tags. By evaluating content and context at send time, it also catches misdelivery and other payload-free errors.

  • No labeling burden; no regex/rule maintenance
  • Works when tags are missing, wrong, or stale
  • Detects misdirected sends even when labels look right

2) Behavioral (vs. rules, signatures, threat intelligence)

Understands user behavior, not just static patterns. Behavioral analysis learns what’s normal for each person, surfacing human error and subtle exfiltration that rules can’t. It also incorporates account signals and inbound intel, extending across email and Teams.

  • Flags risk without predefined rules or IOCs
  • Catches misdelivery, unusual contacts, personal forwards, odd timing/volume
  • Blends identity and inbound context across channels

3) Proprietary DSLM (vs. generic LLM)

Optimized for precise, fast, explainable on-send decisions. A DSLM understands email/DLP semantics, avoids generative risks, and stays auditable and privacy-controlled, delivering intelligence reliably without slowing mail flow.

  • Low-latency, on-send enforcement
  • Non-generative for predictable, explainable outcomes
  • Governed model with strong privacy and auditability

The Darktrace approach to DLP

Darktrace / EMAIL – DLP stops misdelivery and sensitive data loss at send time using hold/notify/justify/release actions. It blends behavioral insight with content understanding across 35+ PII categories, protecting both labeled and unlabeled data. Every action is paired with clear explainability: AI narratives show exactly why an email was flagged, supporting analysts and helping end-users learn. Deployment aligns cleanly with existing SOC workflows through mail-flow connectors and optional Microsoft Purview label ingestion, without forcing duplicate policy-building.

Deployment is simple: Microsoft 365 routes outbound mail to Darktrace for real-time, inline decisions without regex or rule-heavy setup.

A buyer’s checklist for DLP solutions

When choosing your DLP solution, you want to be sure that it can deliver precise, explainable protection at the moment it matters – on send – without operational drag.  

To finish, we’ve compiled a handy list of questions you can ask before choosing an outbound DLP solution:

  • Can it operate label free when tags are missing or wrong? 
  • Does it truly learn per user behavior (no shortcuts)? 
  • Is there a domain specific model behind the content understanding (not a generic LLM)? 
  • Does it explain decisions to both analysts and end users? 
  • Will it integrate with your label program and SOC workflows rather than duplicate them? 

For a deep dive into Darktrace’s DLP solution, check out the full solution brief.

[related-resource]

Continue reading
About the author
Carlos Gray
Senior Product Marketing Manager, Email

Blog

/

Email

/

December 17, 2025

Beyond MFA: Detecting Adversary-in-the-Middle Attacks and Phishing with Darktrace

Beyond MFA: Detecting Adversary-in-the-Middle Attacks and Phishing with DarktraceDefault blog imageDefault blog image

What is an Adversary-in-the-middle (AiTM) attack?

Adversary-in-the-Middle (AiTM) attacks are a sophisticated technique often paired with phishing campaigns to steal user credentials. Unlike traditional phishing, which multi-factor authentication (MFA) increasingly mitigates, AiTM attacks leverage reverse proxy servers to intercept authentication tokens and session cookies. This allows attackers to bypass MFA entirely and hijack active sessions, stealthily maintaining access without repeated logins.

This blog examines a real-world incident detected during a Darktrace customer trial, highlighting how Darktrace / EMAILTM and Darktrace / IDENTITYTM identified the emerging compromise in a customer’s email and software-as-a-service (SaaS) environment, tracked its progression, and could have intervened at critical moments to contain the threat had Darktrace’s Autonomous Response capability been enabled.

What does an AiTM attack look like?

Inbound phishing email

Attacks typically begin with a phishing email, often originating from the compromised account of a known contact like a vendor or business partner. These emails will often contain malicious links or attachments leading to fake login pages designed to spoof legitimate login platforms, like Microsoft 365, designed to harvest user credentials.

Proxy-based credential theft and session hijacking

When a user clicks on a malicious link, they are redirected through an attacker-controlled proxy that impersonates legitimate services.  This proxy forwards login requests to Microsoft, making the login page appear legitimate. After the user successfully completes MFA, the attacker captures credentials and session tokens, enabling full account takeover without the need for reauthentication.

Follow-on attacks

Once inside, attackers will typically establish persistence through the creation of email rules or registering OAuth applications. From there, they often act on their objectives, exfiltrating sensitive data and launching additional business email compromise (BEC) campaigns. These campaigns can include fraudulent payment requests to external contacts or internal phishing designed to compromise more accounts and enable lateral movement across the organization.

Darktrace’s detection of an AiTM attack

At the end of September 2025, Darktrace detected one such example of an AiTM attack on the network of a customer trialling Darktrace / EMAIL and Darktrace / IDENTITY.

In this instance, the first indicator of compromise observed by Darktrace was the creation of a malicious email rule on one of the customer’s Office 365 accounts, suggesting the account had likely already been compromised before Darktrace was deployed for the trial.

Darktrace / IDENTITY observed the account creating a new email rule with a randomly generated name, likely to hide its presence from the legitimate account owner. The rule marked all inbound emails as read and deleted them, while ignoring any existing mail rules on the account. This rule was likely intended to conceal any replies to malicious emails the attacker had sent from the legitimate account owner and to facilitate further phishing attempts.

Darktrace’s detection of the anomalous email rule creation.
Figure 1: Darktrace’s detection of the anomalous email rule creation.

Internal and external phishing

Following the creation of the email rule, Darktrace / EMAIL observed a surge of suspicious activity on the user’s account. The account sent emails with subject lines referencing payment information to over 9,000 different external recipients within just one hour. Darktrace also identified that these emails contained a link to an unusual Google Drive endpoint, embedded in the text “download order and invoice”.

Darkrace’s detection of an unusual surge in outbound emails containing suspicious content, shortly following the creation of a new email rule.
Figure 2: Darkrace’s detection of an unusual surge in outbound emails containing suspicious content, shortly following the creation of a new email rule.
Darktrace / EMAIL’s detection of the compromised account sending over 9,000 external phishing emails, containing an unusual Google Drive link.
Figure 3: Darktrace / EMAIL’s detection of the compromised account sending over 9,000 external phishing emails, containing an unusual Google Drive link.

As Darktrace / EMAIL flagged the message with the ‘Compromise Indicators’ tag (Figure 2), it would have been held automatically if the customer had enabled default Data Loss Prevention (DLP) Action Flows in their email environment, preventing any external phishing attempts.

Figure 4: Darktrace / EMAIL’s preview of the email sent by the offending account.
Figure 4: Darktrace / EMAIL’s preview of the email sent by the offending account.

Darktrace analysis revealed that, after clicking the malicious link in the email, recipients would be redirected to a convincing landing page that closely mimicked the customer’s legitimate branding, including authentic imagery and logos, where prompted to download with a PDF named “invoice”.

Figure 5: Download and login prompts presented to recipients after following the malicious email link, shown here in safe view.

After clicking the “Download” button, users would be prompted to enter their company credentials on a page that was likely a credential-harvesting tool, designed to steal corporate login details and enable further compromise of SaaS and email accounts.

Darktrace’s Response

In this case, Darktrace’s Autonomous Response was not fully enabled across the customer’s email or SaaS environments, allowing the compromise to progress,  as observed by Darktrace here.

Despite this, Darktrace / EMAIL’s successful detection of the malicious Google Drive link in the internal phishing emails prompted it to suggest ‘Lock Link’, as a recommended action for the customer’s security team to manually apply. This action would have automatically placed the malicious link behind a warning or screening page blocking users from visiting it.

Autonomous Response suggesting locking the malicious Google Drive link sent in internal phishing emails.
Figure 6: Autonomous Response suggesting locking the malicious Google Drive link sent in internal phishing emails.

Furthermore, if active in the customer’s SaaS environment, Darktrace would likely have been able to mitigate the threat even earlier, at the point of the first unusual activity: the creation of a new email rule. Mitigative actions would have included forcing the user to log out, terminating any active sessions, and disabling the account.

Conclusion

AiTM attacks represent a significant evolution in credential theft techniques, enabling attackers to bypass MFA and hijack active sessions through reverse proxy infrastructure. In the real-world case we explored, Darktrace’s AI-driven detection identified multiple stages of the attack, from anomalous email rule creation to suspicious internal email activity, demonstrating how Autonomous Response could have contained the threat before escalation.

MFA is a critical security measure, but it is no longer a silver bullet. Attackers are increasingly targeting session tokens rather than passwords, exploiting trusted SaaS environments and internal communications to remain undetected. Behavioral AI provides a vital layer of defense by spotting subtle anomalies that traditional tools often miss

Security teams must move beyond static defenses and embrace adaptive, AI-driven solutions that can detect and respond in real time. Regularly review SaaS configurations, enforce conditional access policies, and deploy technologies that understand “normal” behavior to stop attackers before they succeed.

Credit to David Ison (Cyber Analyst), Bertille Pierron (Solutions Engineer), Ryan Traill (Analyst Content Lead)

Appendices

Models

SaaS / Anomalous New Email Rule

Tactic – Technique – Sub-Technique  

Phishing - T1566

Adversary-in-the-Middle - T1557

Continue reading
About the author
Your data. Our AI.
Elevate your network security with Darktrace AI