Blog
/
/
May 31, 2021

Exploiting Compliance: Ransomware Gang Tactics

Understand the methods ransomware gangs use to exploit security compliance and how Darktrace's AI can mitigate these threats.
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
31
May 2021

Compliance regulations like CCPA and GDPR are created with good intentions. They aim to secure user data, ensure privacy, and build trust between the companies and consumers. However, these regulations have become a double-edged sword for many organizations.

One reason for this is the rise of double extortion ransomware, where data is exfiltrated before files are encrypted. In this scenario, threat actors threaten to release sensitive company information online if the ransom is not paid. Companies can face hefty fines if they fail to comply with regulation, and thus they are pressured into paying the ransom just to keep the breach quiet.

Consequences of non-compliance

Today’s businesses face a range of demanding privacy regulations that are frequently being updated. This includes General Data Protection Regulation, or GDPR, the California Consumer Privacy Act, or CCPA, and regulations from the New York State Department Of Financial Services, or NYDFS.

With the shift to remote and dynamic working, and the ever-increasing complexity of business operations, there has been great pressure for companies to upgrade infrastructure and ensure that they are meeting all regulations.

Non-compliance can lead to significant financial penalties and drawn-out legal actions. If organizations fail to protect their data, the fees can be disastrous. GDPR can fine companies up to €20 million, or 4% of a company’s annual global turnover. For example, since 2017, Google has been fined a combined total of $9.5 billion by EU regulators.

Weaponization of compliance

Ultimately, compliance serves the important purpose of giving citizens more control and rights over their data. However, cyber-criminals have realized that they can use the threat of non-compliance as a pressure point against organizations. Stolen data, if released to the public, can lead to huge regulatory fines.

We have seen this phenomenon in double extortion ransomware attacks, where threat actors steal sensitive data before they encrypt the files. Moreover, several ransomware actors, such as the Babuk gang, now have begun to forsake encryption in favor of extortion. This is because threat actors realize that exfiltration is more effective when many organizations continually back up files as a precaution against the threat of ransomware locking down files.

Ransomware actors often auction intellectual property, customer data, and company secrets on the Dark Web. The Maze ransomware group established this trend back when it created a website in late 2019 to publicly ‘name and shame’ organizations that had been compromised. These attacks included theft of information such as stolen PDF files, in addition to IP addresses and device names which were then uploaded and made publicly available on its website.

Over 70% of ransomware attacks now involve exfiltration.

The tactic was made infamous by the cyber-criminal group REvil, who publicly announced their intentions on a Russian hacker forum in December 2019:

“Each attack is accompanied by a copy of commercial information. In case of refusal of payment, the data will either be sold to competitors or laid out in open sources. GDPR. Do not want to pay us – pay x10 more to the government. No problems.”

In these cases, threat actors are essentially saying, ‘if you pay us this small ransom, we will keep your data safe. If you don’t pay us, we have the power to release your data, and then you can take your chances with a huge compliance fine.’

Organizations may prefer to negotiate with cyber-criminals and keep the breach – or threat of breach – quiet. This is what the ransomware attackers are banking on.

How AI can help: Stopping ransomware and strengthening compliance

Compliance fines are not cheap. It took over three years of legal proceedings for Equifax to settle their 2017 data breach. They finally settled with paying $700 million to regulators, including the Federal Trade Commission and the Consumer Financial Protection Bureau (CFPB). Home Depot and Uber have also famously faced financial penalties of hundreds of millions of dollars.

These regulatory fines are compounding the potential consequences of ransomware. The continued ability of attackers to adapt and find new weaknesses means that it is crucial for companies to identify and contain ransomware in its earliest stages, with machine speed and precision.

Darktrace’s AI has achieved this repeatedly, such as when a WastedLocker intrusion was stopped before the ransomware was deployed. By constantly evolving its understanding of the organization, Cyber AI detects and automatically investigates all unusual activity across the enterprise and can respond autonomously in real time to stop threats in their tracks.

Figure 1: Darktrace’s customizable CCPA tags allow for specialized alerting on activity related to personal data as defined by CCPA

Furthermore, Darktrace’s technology can be used to action specific types of alerts based on different compliance threat models. For instance, businesses seeking to ensure compliance with CCPA requirements can use a specific ‘CCPA Tag’ for certain devices which have, or are likely to have, consumer data subject to the CCPA. When relevant data from the tagged devices leaves the environment or is involved in any abnormal activity, Darktrace’s AI detects this immediately and automatically launches an investigation into the incident.

With a proven ability to protect against machine-speed threats, and the ability to strengthen compliance with customizable alerts, the Darktrace Immune System platform provides a powerful defense against double extortion ransomware.

Under pressure

Compliance is just one of the many strategic concerns facing ransomware victims. In addition to customer trust, valuable IP, and long-term reputation, attackers and defenders are in a constant ‘cat and mouse’ game, such that threat actors will continue to seek out new pressure points to extort their targets.

Figure 2: Current varieties of double extortion ransomware

Organizations accordingly will benefit from using sophisticated technologies that neutralize ransomware before it has encrypted or exfiltrated files, stopping advanced threats in their earliest stages.

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

/

/

December 22, 2025

The Year Ahead: AI Cybersecurity Trends to Watch in 2026

2026 cyber threat trendsDefault blog imageDefault blog image

Introduction: 2026 cyber trends

Each year, we ask some of our experts to step back from the day-to-day pace of incidents, vulnerabilities, and headlines to reflect on the forces reshaping the threat landscape. The goal is simple:  to identify and share the trends we believe will matter most in the year ahead, based on the real-world challenges our customers are facing, the technology and issues our R&D teams are exploring, and our observations of how both attackers and defenders are adapting.  

In 2025, we saw generative AI and early agentic systems moving from limited pilots into more widespread adoption across enterprises. Generative AI tools became embedded in SaaS products and enterprise workflows we rely on every day, AI agents gained more access to data and systems, and we saw glimpses of how threat actors can manipulate commercial AI models for attacks. At the same time, expanding cloud and SaaS ecosystems and the increasing use of automation continued to stretch traditional security assumptions.

Looking ahead to 2026, we’re already seeing the security of AI models, agents, and the identities that power them becoming a key point of tension – and opportunity -- for both attackers and defenders. Long-standing challenges and risks such as identity, trust, data integrity, and human decision-making will not disappear, but AI and automation will increase the speed and scale of the cyber risk.  

Here's what a few of our experts believe are the trends that will shape this next phase of cybersecurity, and the realities organizations should prepare for.  

Agentic AI is the next big insider risk

In 2026, organizations may experience their first large-scale security incidents driven by agentic AI behaving in unintended ways—not necessarily due to malicious intent, but because of how easily agents can be influenced. AI agents are designed to be helpful, lack judgment, and operate without understanding context or consequence. This makes them highly efficient—and highly pliable. Unlike human insiders, agentic systems do not need to be socially engineered, coerced, or bribed. They only need to be prompted creatively, misinterpret legitimate prompts, or be vulnerable to indirect prompt injection. Without strong controls around access, scope, and behavior, agents may over-share data, misroute communications, or take actions that introduce real business risk. Securing AI adoption will increasingly depend on treating agents as first-class identities—monitored, constrained, and evaluated based on behavior, not intent.

-- Nicole Carignan, SVP of Security & AI Strategy

Prompt Injection moves from theory to front-page breach

We’ll see the first major story of an indirect prompt injection attack against companies adopting AI either through an accessible chatbot or an agentic system ingesting a hidden prompt. In practice, this may result in unauthorized data exposure or unintended malicious behavior by AI systems, such as over-sharing information, misrouting communications, or acting outside their intended scope. Recent attention on this risk—particularly in the context of AI-powered browsers and additional safety layers being introduced to guide agent behavior—highlights a growing industry awareness of the challenge.  

-- Collin Chapleau, Senior Director of Security & AI Strategy

Humans are even more outpaced, but not broken

When it comes to cyber, people aren’t failing; the system is moving faster than they can. Attackers exploit the gap between human judgment and machine-speed operations. The rise of deepfakes and emotion-driven scams that we’ve seen in the last few years reduce our ability to spot the familiar human cues we’ve been taught to look out for. Fraud now spans social platforms, encrypted chat, and instant payments in minutes. Expecting humans to be the last line of defense is unrealistic.

Defense must assume human fallibility and design accordingly. Automated provenance checks, cryptographic signatures, and dual-channel verification should precede human judgment. Training still matters, but it cannot close the gap alone. In the year ahead, we need to see more of a focus on partnership: systems that absorb risk so humans make decisions in context, not under pressure.

-- Margaret Cunningham, VP of Security & AI Strategy

AI removes the attacker bottleneck—smaller organizations feel the impact

One factor that is currently preventing more companies from breaches is a bottleneck on the attacker side: there’s not enough human hacker capital. The number of human hands on a keyboard is a rate-determining factor in the threat landscape. Further advancements of AI and automation will continue to open that bottleneck. We are already seeing that. The ostrich approach of hoping that one’s own company is too obscure to be noticed by attackers will no longer work as attacker capacity increases.  

-- Max Heinemeyer, Global Field CISO

SaaS platforms become the preferred supply chain target

Attackers have learned a simple lesson: compromising SaaS platforms can have big payouts. As a result, we’ll see more targeting of commercial off-the-shelf SaaS providers, which are often highly trusted and deeply integrated into business environments. Some of these attacks may involve software with unfamiliar brand names, but their downstream impact will be significant. In 2026, expect more breaches where attackers leverage valid credentials, APIs, or misconfigurations to bypass traditional defenses entirely.

-- Nathaniel Jones, VP of Security & AI Strategy

Increased commercialization of generative AI and AI assistants in cyber attacks

One trend we’re watching closely for 2026 is the commercialization of AI-assisted cybercrime. For example, cybercrime prompt playbooks sold on the dark web—essentially copy-and-paste frameworks that show attackers how to misuse or jailbreak AI models. It’s an evolution of what we saw in 2025, where AI lowered the barrier to entry. In 2026, those techniques become productized, scalable, and much easier to reuse.  

-- Toby Lewis, Global Head of Threat Analysis

Conclusion

Taken together, these trends underscore that the core challenges of cybersecurity are not changing dramatically -- identity, trust, data, and human decision-making still sit at the core of most incidents. What is changing quickly is the environment in which these challenges play out. AI and automation are accelerating everything: how quickly attackers can scale, how widely risk is distributed, and how easily unintended behavior can create real impact. And as technology like cloud services and SaaS platforms become even more deeply integrated into businesses, the potential attack surface continues to expand.  

Predictions are not guarantees. But the patterns emerging today suggest that 2026 will be a year where securing AI becomes inseparable from securing the business itself. The organizations that prepare now—by understanding how AI is used, how it behaves, and how it can be misused—will be best positioned to adopt these technologies with confidence in the year ahead.

Learn more about how to secure AI adoption in the enterprise without compromise by registering to join our live launch webinar on February 3, 2026.  

Continue reading
About the author
The Darktrace Community

Blog

/

Email

/

December 22, 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
Your data. Our AI.
Elevate your network security with Darktrace AI