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SolarWinds後の世界における組織の保護

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09
May 2021
09
May 2021
学校やスタートアップ企業から街全体まで、あらゆる組織がサイバー攻撃にさらされています。このブログでは、テキサス州タイラー市のCIOが、サイバーAIがテキサス州の複数の自治体を攻撃から守り、明日の脅威に対してAIによる多層防御を実現している様子を紹介しています。

タイラー市のCIO、ベニー・ヤズダンパナシ氏は今日の急激に変化し予測不可能な脅威環境下でテキサス州の複数の都市を安全に守っています。

タイラー市はテキサス州北西部最大の都市であり、人口は10万人以上、いくつかの大手金融、医療、教育機関の拠点です。そのため、サイバー犯罪者達にとっては魅力的な標的です。

当市は完全なSolarWindsユーザーではありませんでしたが、最近の情報漏えいはルールやシグネチャベースのアプローチの抱える根本的欠陥を明らかにしました。サイバーセキュリティは常に存在し続けるリスクを緩和するために適応性がなくてはなりません。ITプロフェッショナルとして、私達はビジネスリーダーたちを教育する責任があると考えています。そして究極的にはSolarWinds攻撃は、どのプロバイダを使用していようとも、すべての組織にとってシグネチャベースのツールを超えたセキュリティを再評価し戦略を策定の警鐘となるべきであると思います。都市は限られた予算と人員で、予測が不可能な脅威から住民を守らなければなりません。私達がどうやったかを説明します。

組織のセキュリティの重要なレイヤーとしてのCyber AI

組織を保護するには、デジタルエステート全体を理解しなければなりません。インフラ内で何が起こっているのかを理解する必要があります。誰かがしょっちゅうビデオをアップロードしていてそれが正常ならば、使用中のセキュリティテクノロジーもそれを理解する必要があります。堅牢なテクノロジーは何かが特定のリソースから特定の方法で来たときに、そのコンテキストではOKなのだということを知らなければなりません。しかしこれらのパラメータがわずかにでも変化したら、それは活動中の脅威の兆候かもしれません。サイバーAIが重要となるのはこの点です。AIが人間とエンタープライズの行動を観測し、学習して組織とともに成長するのです。何かが異常であれば、脅威調査を行い自動的に対処します。そして重要なことは、白か黒かではないということです。

私達が最初にAIを導入したのは、ヒューリスティックなツールに限界が見えたからでした。ほとんどのセキュリティ脆弱性は人々の行動に起因しています。フィッシングやその他の脆弱性についてスタッフをトレーニングしてはいますが、インテリジェントなセキュリティツールを持つことが必要です。AIが普及してきましたが、Darktrace Cyber AI は私達のデジタルインフラの細かなところまで完全に自己学習してくれます。

Darktrace Cyber AIのPOV(Proof of Value)では、実際に私達の既存のツールでは見えなかった情報を見せてくれました。そしてこれがまだ見ぬ脅威に先手を打つために監視しておくことがきわめて重要な情報であることがわかったのです。Darktraceを装備することで、今ではすべての環境内で何が起こっているかを知っています。それはネットワーク上に私達のITの一部ではない新しいデバイスが出現すればすぐにわかるレベルまでです。もし何かが通常からの著しい逸脱と判断されれば、即座に警告が発生します。これがDarktraceの機械学習の力です。組織のDNAを学習し、何が最も関連性が高いかを見せてくれます。これはあらゆる組織において重要かつ必要な能力です。さまざまな製品があり選択は自由ですが、どの脅威に対して最も注意を払う必要かを知るためにはネットワークを理解しなければなりません。

事前対策:AIで脅威と戦う

タイラー市では、セキュリティは多層的であるべきと考えています。ファイアウォールがあるだけでは不十分です。事前の対策をし、複数のレイヤーを持たねばなりません。ソフトウェアにパッチを当てたりワークフォースを教育したりといった基本的なことも大事ですが、これらはセキュリティのレイヤーの1つにすぎません。Darktraceが傑出している点は、自律遮断技術によって反応し、応戦する能力を与えてくれることです。これはリスクを緩和する上できわめて重要な能力です。

Darktrace Emailは、Eメールを精査し、既存のツールや戦略をシームレスに補強してくれます。人々のEメールの書き方をAIが見て、スタイルが違っていればそれがわかるのです。Darktrace Emailはタイラー市のインフラ上のアカウントの背後に存在する人間を理解し、DarktraceのCyber AIを使って市のEメール通信の「自己」についての独自の認識を学習します。あらゆる内部ユーザー、外部送信者、そしてそれらの間の複雑な関係において何が「通常」であるかを理解することにより、Darktrace Emailは脅威が市のユーザーに到達する前に無害化します。受信箱の中の脅威に対してこのようにインテリジェントにアクションを取ることのできる唯一のツールです。

Darktrace RESPONDは、この積極的な保護を、環境を問わずインフラ全体に提供します。職員がリモートワークに移行するなか、さまざまなコンテキストにおいて何が正常かを理解することは私達のサイバー戦略において不可欠となりました。スタッフは24時間、交代制で勤務しており、私も実務をこなすCIOでありたいと思っていますが、すべての情報に基づいて実際にアクションを取るソリューションであるRESPONDは都市の日々の安全を守る上できわめて重要です。脅威に対して先回りすることが私達の継続的な目標ですが、RESPONDはこれを推進してくれます。

コラボレーションによるセキュリティ強化

一般に地方自治体はサイバーセキュリティに対して大きな予算を持っていません。小さい都市であればほんのいくつかの製品を導入する購買力しかないでしょう。AIは1つのソリューションで多くのことができるため、特定の既知のリスクを緩和するためのツールを多数積み重ねていくのではなく、単一のテクノロジーでさまざまな問題に対応できます。

私達は他の市とも連携し、ベストプラクティスを共有しています。私達は自分たちだけの島にいるわけではないからです。私達はコミュニティで生きているのであり、ITはしばしばコラボレーションのきっかけとなります。他のより小さい都市は当市ほどのリソースを持っていませんが、私達の事例と私達の考える解決策を共有することで、周囲の市の助けとなっています。コミュニティコラボレーションが私達の支援の方法です。これによって皆がより安全になります。

当市が幸運であったのは、パンデミック以前においても、スタッフのほとんどがリモートワークツールの使い方の教育を受けていたことです。私達はオフィスをいかにシームレスにするかについて常に考えてきましたが、今日の世界では、動的なコラボレーションを取り入れることは必須となりつつあります。多くの組織はリモートでの効率を上げるために急速にイノベーションを進め、これによって新たな脆弱性が短期間に発生しました。Cyber AIは根本的に適応型であるためこうした状況に対応するのに完璧です。バーチャルな展開からモバイルアプリを使ったエキスパートによるSOCの対応まで、Cyber AIは大きなインフラの変化をセキュアに保護するのに最適なソリューションです。Darktrace Mobile Appを使うことにより、私はどこにいても組織を監視し保護することができ、ボタンをタッチするだけで必要な情報を確認できます。

私はここで19年間、市のリーダーたちに新しいテクノロジーについて教育してきました。サイバーセキュリティのレジリエンスとは、人、プロセス、テクノロジーの3つで構成されると考えています。AIによりこれら3つを組み合わせて機能させることができます。完全な可視性により、人、プロセス、テクノロジーのどこからであろうとも、違反が発生する前に脆弱性をピンポイントで特定することができます。また、脅威に自律的に対処する能力により、インフラを保護するプロセスのレイヤーを、それが最も重要なポイントにおいて組み込むことができます。

Cyber AI Analystがさまざまな脅威から都市を保護する方法について詳しく知る

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The State of AI in Cybersecurity: How AI will impact the cyber threat landscape in 2024

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22
Apr 2024

About the AI Cybersecurity Report

We surveyed 1,800 CISOs, security leaders, administrators, and practitioners from industries around the globe. Our research was conducted to understand how the adoption of new AI-powered offensive and defensive cybersecurity technologies are being managed by organizations.

This blog is continuing the conversation from our last blog post “The State of AI in Cybersecurity: Unveiling Global Insights from 1,800 Security Practitioners” which was an overview of the entire report. This blog will focus on one aspect of the overarching report, the impact of AI on the cyber threat landscape.

To access the full report click here.

Are organizations feeling the impact of AI-powered cyber threats?

Nearly three-quarters (74%) state AI-powered threats are now a significant issue. Almost nine in ten (89%) agree that AI-powered threats will remain a major challenge into the foreseeable future, not just for the next one to two years.

However, only a slight majority (56%) thought AI-powered threats were a separate issue from traditional/non AI-powered threats. This could be the case because there are few, if any, reliable methods to determine whether an attack is AI-powered.

Identifying exactly when and where AI is being applied may not ever be possible. However, it is possible for AI to affect every stage of the attack lifecycle. As such, defenders will likely need to focus on preparing for a world where threats are unique and are coming faster than ever before.

a hypothetical cyber attack augmented by AI at every stage

Are security stakeholders concerned about AI’s impact on cyber threats and risks?

The results from our survey showed that security practitioners are concerned that AI will impact organizations in a variety of ways. There was equal concern associated across the board – from volume and sophistication of malware to internal risks like leakage of proprietary information from employees using generative AI tools.

What this tells us is that defenders need to prepare for a greater volume of sophisticated attacks and balance this with a focus on cyber hygiene to manage internal risks.

One example of a growing internal risks is shadow AI. It takes little effort for employees to adopt publicly-available text-based generative AI systems to increase their productivity. This opens the door to “shadow AI”, which is the use of popular AI tools without organizational approval or oversight. Resulting security risks such as inadvertent exposure of sensitive information or intellectual property are an ever-growing concern.

Are organizations taking strides to reduce risks associated with adoption of AI in their application and computing environment?

71.2% of survey participants say their organization has taken steps specifically to reduce the risk of using AI within its application and computing environment.

16.3% of survey participants claim their organization has not taken these steps.

These findings are good news. Even as enterprises compete to get as much value from AI as they can, as quickly as possible, they’re tempering their eager embrace of new tools with sensible caution.

Still, responses varied across roles. Security analysts, operators, administrators, and incident responders are less likely to have said their organizations had taken AI risk mitigation steps than respondents in other roles. In fact, 79% of executives said steps had been taken, and only 54% of respondents in hands-on roles agreed. It seems that leaders believe their organizations are taking the needed steps, but practitioners are seeing a gap.

Do security professionals feel confident in their preparedness for the next generation of threats?

A majority of respondents (six out of every ten) believe their organizations are inadequately prepared to face the next generation of AI-powered threats.

The survey findings reveal contrasting perceptions of organizational preparedness for cybersecurity threats across different regions and job roles. Security administrators, due to their hands-on experience, express the highest level of skepticism, with 72% feeling their organizations are inadequately prepared. Notably, respondents in mid-sized organizations feel the least prepared, while those in the largest companies feel the most prepared.

Regionally, participants in Asia-Pacific are most likely to believe their organizations are unprepared, while those in Latin America feel the most prepared. This aligns with the observation that Asia-Pacific has been the most impacted region by cybersecurity threats in recent years, according to the IBM X-Force Threat Intelligence Index.

The optimism among Latin American respondents could be attributed to lower threat volumes experienced in the region, but it's cautioned that this could change suddenly (1).

What are biggest barriers to defending against AI-powered threats?

The top-ranked inhibitors center on knowledge and personnel. However, issues are alluded to almost equally across the board including concerns around budget, tool integration, lack of attention to AI-powered threats, and poor cyber hygiene.

The cybersecurity industry is facing a significant shortage of skilled professionals, with a global deficit of approximately 4 million experts (2). As organizations struggle to manage their security tools and alerts, the challenge intensifies with the increasing adoption of AI by attackers. This shift has altered the demands on security teams, requiring practitioners to possess broad and deep knowledge across rapidly evolving solution stacks.

Educating end users about AI-driven defenses becomes paramount as organizations grapple with the shortage of professionals proficient in managing AI-powered security tools. Operationalizing machine learning models for effectiveness and accuracy emerges as a crucial skill set in high demand. However, our survey highlights a concerning lack of understanding among cybersecurity professionals regarding AI-driven threats and the use of AI-driven countermeasures indicating a gap in keeping pace with evolving attacker tactics.

The integration of security solutions remains a notable problem, hindering effective defense strategies. While budget constraints are not a primary inhibitor, organizations must prioritize addressing these challenges to bolster their cybersecurity posture. It's imperative for stakeholders to recognize the importance of investing in skilled professionals and integrated security solutions to mitigate emerging threats effectively.

To access the full report click here.

参考文献

1. IBM, X-Force Threat Intelligence Index 2024, Available at: https://www.ibm.com/downloads/cas/L0GKXDWJ

2. ISC2, Cybersecurity Workforce Study 2023, Available at: https://media.isc2.org/-/media/Project/ISC2/Main/Media/ documents/research/ISC2_Cybersecurity_Workforce_Study_2023.pdf?rev=28b46de71ce24e6ab7705f6e3da8637e

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Sliver C2: How Darktrace Provided a Sliver of Hope in the Face of an Emerging C2 Framework

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17
Apr 2024

Offensive Security Tools

As organizations globally seek to for ways to bolster their digital defenses and safeguard their networks against ever-changing cyber threats, security teams are increasingly adopting offensive security tools to simulate cyber-attacks and assess the security posture of their networks. These legitimate tools, however, can sometimes be exploited by real threat actors and used as genuine actor vectors.

What is Sliver C2?

Sliver C2 is a legitimate open-source command-and-control (C2) framework that was released in 2020 by the security organization Bishop Fox. Silver C2 was originally intended for security teams and penetration testers to perform security tests on their digital environments [1] [2] [5]. In recent years, however, the Sliver C2 framework has become a popular alternative to Cobalt Strike and Metasploit for many attackers and Advanced Persistence Threat (APT) groups who adopt this C2 framework for unsolicited and ill-intentioned activities.

The use of Sliver C2 has been observed in conjunction with various strains of Rust-based malware, such as KrustyLoader, to provide backdoors enabling lines of communication between attackers and their malicious C2 severs [6]. It is unsurprising, then, that it has also been leveraged to exploit zero-day vulnerabilities, including critical vulnerabilities in the Ivanti Connect Secure and Policy Secure services.

In early 2024, Darktrace observed the malicious use of Sliver C2 during an investigation into post-exploitation activity on customer networks affected by the Ivanti vulnerabilities. Fortunately for affected customers, Darktrace DETECT™ was able to recognize the suspicious network-based connectivity that emerged alongside Sliver C2 usage and promptly brought it to the attention of customer security teams for remediation.

How does Silver C2 work?

Given its open-source nature, the Sliver C2 framework is extremely easy to access and download and is designed to support multiple operating systems (OS), including MacOS, Windows, and Linux [4].

Sliver C2 generates implants (aptly referred to as ‘slivers’) that operate on a client-server architecture [1]. An implant contains malicious code used to remotely control a targeted device [5]. Once a ‘sliver’ is deployed on a compromised device, a line of communication is established between the target device and the central C2 server. These connections can then be managed over Mutual TLS (mTLS), WireGuard, HTTP(S), or DNS [1] [4]. Sliver C2 has a wide-range of features, which include dynamic code generation, compile-time obfuscation, multiplayer-mode, staged and stageless payloads, procedurally generated C2 over HTTP(S) and DNS canary blue team detection [4].

Why Do Attackers Use Sliver C2?

Amidst the multitude of reasons why malicious actors opt for Sliver C2 over its counterparts, one stands out: its relative obscurity. This lack of widespread recognition means that security teams may overlook the threat, failing to actively search for it within their networks [3] [5].

Although the presence of Sliver C2 activity could be representative of authorized and expected penetration testing behavior, it could also be indicative of a threat actor attempting to communicate with its malicious infrastructure, so it is crucial for organizations and their security teams to identify such activity at the earliest possible stage.

Darktrace’s Coverage of Sliver C2 Activity

Darktrace’s anomaly-based approach to threat detection means that it does not explicitly attempt to attribute or distinguish between specific C2 infrastructures. Despite this, Darktrace was able to connect Sliver C2 usage to phases of an ongoing attack chain related to the exploitation of zero-day vulnerabilities in Ivanti Connect Secure VPN appliances in January 2024.

Around the time that the zero-day Ivanti vulnerabilities were disclosed, Darktrace detected an internal server on one customer network deviating from its expected pattern of activity. The device was observed making regular connections to endpoints associated with Pulse Secure Cloud Licensing, indicating it was an Ivanti server. It was observed connecting to a string of anomalous hostnames, including ‘cmjk3d071amc01fu9e10ae5rt9jaatj6b.oast[.]live’ and ‘cmjft14b13vpn5vf9i90xdu6akt5k3pnx.oast[.]pro’, via HTTP using the user agent ‘curl/7.19.7 (i686-redhat-linux-gnu) libcurl/7.63.0 OpenSSL/1.0.2n zlib/1.2.7’.

Darktrace further identified that the URI requested during these connections was ‘/’ and the top-level domains (TLDs) of the endpoints in question were known Out-of-band Application Security Testing (OAST) server provider domains, namely ‘oast[.]live’ and ‘oast[.]pro’. OAST is a testing method that is used to verify the security posture of an application by testing it for vulnerabilities from outside of the network [7]. This activity triggered the DETECT model ‘Compromise / Possible Tunnelling to Bin Services’, which breaches when a device is observed sending DNS requests for, or connecting to, ‘request bin’ services. Malicious actors often abuse such services to tunnel data via DNS or HTTP requests. In this specific incident, only two connections were observed, and the total volume of data transferred was relatively low (2,302 bytes transferred externally). It is likely that the connections to OAST servers represented malicious actors testing whether target devices were vulnerable to the Ivanti exploits.

The device proceeded to make several SSL connections to the IP address 103.13.28[.]40, using the destination port 53, which is typically reserved for DNS requests. Darktrace recognized that this activity was unusual as the offending device had never previously been observed using port 53 for SSL connections.

Model Breach Event Log displaying the ‘Application Protocol on Uncommon Port’ DETECT model breaching in response to the unusual use of port 53.
Figure 1: Model Breach Event Log displaying the ‘Application Protocol on Uncommon Port’ DETECT model breaching in response to the unusual use of port 53.

Figure 2: Model Breach Event Log displaying details pertaining to the ‘Application Protocol on Uncommon Port’ DETECT model breach, including the 100% rarity of the port usage.
Figure 2: Model Breach Event Log displaying details pertaining to the ‘Application Protocol on Uncommon Port’ DETECT model breach, including the 100% rarity of the port usage.

Further investigation into the suspicious IP address revealed that it had been flagged as malicious by multiple open-source intelligence (OSINT) vendors [8]. In addition, OSINT sources also identified that the JARM fingerprint of the service running on this IP and port (00000000000000000043d43d00043de2a97eabb398317329f027c66e4c1b01) was linked to the Sliver C2 framework and the mTLS protocol it is known to use [4] [5].

An Additional Example of Darktrace’s Detection of Sliver C2

However, it was not just during the January 2024 exploitation of Ivanti services that Darktrace observed cases of Sliver C2 usages across its customer base.  In March 2023, for example, Darktrace detected devices on multiple customer accounts making beaconing connections to malicious endpoints linked to Sliver C2 infrastructure, including 18.234.7[.]23 [10] [11] [12] [13].

Darktrace identified that the observed connections to this endpoint contained the unusual URI ‘/NIS-[REDACTED]’ which contained 125 characters, including numbers, lower and upper case letters, and special characters like “_”, “/”, and “-“, as well as various other URIs which suggested attempted data exfiltration:

‘/upload/api.html?c=[REDACTED] &fp=[REDACTED]’

  • ‘/samples.html?mx=[REDACTED] &s=[REDACTED]’
  • ‘/actions/samples.html?l=[REDACTED] &tc=[REDACTED]’
  • ‘/api.html?gf=[REDACTED] &x=[REDACTED]’
  • ‘/samples.html?c=[REDACTED] &zo=[REDACTED]’

This anomalous external connectivity was carried out through multiple destination ports, including the key ports 443 and 8888.

Darktrace additionally observed devices on affected customer networks performing TLS beaconing to the IP address 44.202.135[.]229 with the JA3 hash 19e29534fd49dd27d09234e639c4057e. According to OSINT sources, this JA3 hash is associated with the Golang TLS cipher suites in which the Sliver framework is developed [14].

結論

Despite its relative novelty in the threat landscape and its lesser-known status compared to other C2 frameworks, Darktrace has demonstrated its ability effectively detect malicious use of Sliver C2 across numerous customer environments. This included instances where attackers exploited vulnerabilities in the Ivanti Connect Secure and Policy Secure services.

While human security teams may lack awareness of this framework, and traditional rules and signatured-based security tools might not be fully equipped and updated to detect Sliver C2 activity, Darktrace’s Self Learning AI understands its customer networks, users, and devices. As such, Darktrace is adept at identifying subtle deviations in device behavior that could indicate network compromise, including connections to new or unusual external locations, regardless of whether attackers use established or novel C2 frameworks, providing organizations with a sliver of hope in an ever-evolving threat landscape.

Credit to Natalia Sánchez Rocafort, Cyber Security Analyst, Paul Jennings, Principal Analyst Consultant

付録

DETECT Model Coverage

  • Compromise / Repeating Connections Over 4 Days
  • Anomalous Connection / Application Protocol on Uncommon Port
  • Anomalous Server Activity / Server Activity on New Non-Standard Port
  • Compromise / Sustained TCP Beaconing Activity To Rare Endpoint
  • Compromise / Quick and Regular Windows HTTP Beaconing
  • Compromise / High Volume of Connections with Beacon Score
  • Anomalous Connection / Multiple Failed Connections to Rare Endpoint
  • Compromise / Slow Beaconing Activity To External Rare
  • Compromise / HTTP Beaconing to Rare Destination
  • Compromise / Sustained SSL or HTTP Increase
  • Compromise / Large Number of Suspicious Failed Connections
  • Compromise / SSL or HTTP Beacon
  • Compromise / Possible Malware HTTP Comms
  • Compromise / Possible Tunnelling to Bin Services
  • Anomalous Connection / Low and Slow Exfiltration to IP
  • Device / New User Agent
  • Anomalous Connection / New User Agent to IP Without Hostname
  • Anomalous File / EXE from Rare External Location
  • Anomalous File / Numeric File Download
  • Anomalous Connection / Powershell to Rare External
  • Anomalous Server Activity / New Internet Facing System

侵害指標(IoC)一覧

18.234.7[.]23 - Destination IP - Likely C2 Server

103.13.28[.]40 - Destination IP - Likely C2 Server

44.202.135[.]229 - Destination IP - Likely C2 Server

参考文献

[1] https://bishopfox.com/tools/sliver

[2] https://vk9-sec.com/how-to-set-up-use-c2-sliver/

[3] https://www.scmagazine.com/brief/sliver-c2-framework-gaining-traction-among-threat-actors

[4] https://github[.]com/BishopFox/sliver

[5] https://www.cybereason.com/blog/sliver-c2-leveraged-by-many-threat-actors

[6] https://securityaffairs.com/158393/malware/ivanti-connect-secure-vpn-deliver-krustyloader.html

[7] https://www.xenonstack.com/insights/out-of-band-application-security-testing

[8] https://www.virustotal.com/gui/ip-address/103.13.28.40/detection

[9] https://threatfox.abuse.ch/browse.php?search=ioc%3A107.174.78.227

[10] https://threatfox.abuse.ch/ioc/1074576/

[11] https://threatfox.abuse.ch/ioc/1093887/

[12] https://threatfox.abuse.ch/ioc/846889/

[13] https://threatfox.abuse.ch/ioc/1093889/

[14] https://github.com/projectdiscovery/nuclei/issues/3330

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Natalia Sánchez Rocafort
Cyber Security Analyst
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