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TOTEM: Threat Observation, Tracking, and Evaluation Model

TOTEM: Threat Observation, Tracking, and Evaluation Model. National Laboratories Information Technology Summit Oak Ridge, TN June 1, 2009. TOTEM: Threat Observation, Tracking, and Evaluation Model.

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TOTEM: Threat Observation, Tracking, and Evaluation Model

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  1. TOTEM: Threat Observation, Tracking, and Evaluation Model National Laboratories Information Technology Summit Oak Ridge, TN June 1, 2009

  2. TOTEM: Threat Observation, Tracking, and Evaluation Model “A totem is any supposed entity that watches over or assists a group of people, such as a family, clan, or tribe.” -- Merriam-Webster John J. Gerber CISSP, GCFA, GCIH, GISP, GSNA Mark A Floyd CISSP, GCFA

  3. TOTEM: Basic Idea TOTEM? Who Are You Guys? Why Should Anyone Care?  How the ANL Federated IDS Data Sharing Model Can Help. Possible Problems. Existing Methodologies/Frameworks. Blended to Create TOTEM. TOTEM at ORNL. Screen Shots. Future Development.

  4. “Totemism : system of belief in which humans are said to have kinship or a mystical relationship with a spirit-being, such as an animal or plant. The entity, or totem, is thought to interact with a given kin group or an individual and to serve as their emblem or symbol.” --Encyclopædia Britannica What is TOTEM? The idea behind TOTEM is simple:  Pick up where the ANL model stops. Compare threat information from sources such as the federated model and other watchlists (DShield, Emerging Threats, SenderBase, etc.). As new threat information and activity sources are added, a better evaluation can be rendered. Use components from the individual site for evaluating risk. Information is gathered and visualization provided.

  5. Who Are You Guys? We are like dwarfs standing upon the shoulders of giants, and so able to see more and see farther than the ancients. – Bernard of Chartres Setting an example is not the main means of influencing another, it is the only means. –  Albert Einstein

  6. “Danger, Will Robinson!” According to a May 6th Wall Street Journal article, the Pentagon confirmed that it detected 360 million attempts to penetrate its networks in 2008, which is up from six million in 2006. The Department of Defense also disclosed that it had spent $100 million in the past six months repairing damage from these cyber attacks. (05/09/2009)FAA's Web Security Audit: 3,857 Vulnerabilities security audit of the Web applications found 763 high risk, 504 medium risk, and 2,590 low risk vulnerabilities.  (04/09/2009)Electricity Grid in U.S. Penetrated By Spies reported in The Wall Street Journal. Under the Bush administration, Congress approved $17 billion in secret funds to protect government networks. (04/21/2009) Computer Spies Breach Fighter-Jet Projectreported in The Wall Street Journal. Cyber spies have stolen tens of terabytes of design data on the US's most expensive costliest weapons system -- the $300 billion Joint Strike Fighter project. (05/2009) Inspector General report sent to the FAA - Last year, hackers took control of FAA critical network servers and could have shut them down, which would have seriously disrupted the agency's mission-support network. (05/20/2009) NARA suffers data breach reported in Federal Computer Week - the missing drive contains 1T of data with "more than 100,000 Social Security numbers (including Al Gore’s daughter), contact information (including addresses) for various Clinton administration officials, Secret Service and White House operating procedures, event logs, social gathering logs, political records and other highly sensitive information.

  7. "The worldwide wireless LAN (WLAN) intrusion prevention system (IPS) market is on pace to reach $168 million in 2008, a 41 percentincrease from 2007 revenue of $119 million, according to Gartner, Inc." -- Gartner Press Release, 09/18/2008 It is a Dangerous World “IDSs have failed to provide value relative to its costs and will be obsolete by 2005.”  -- Richard Stiennon, Gartner Analyst, 06/03 http://taosecurity.blogspot.com

  8. Detection • Key Points • 4 percent of incidents were detected through event monitoring and other forms of analytic technologies. • 82 percent of the cases, victim possessed the ability to discover the breach had they been more diligent in monitoring and analyzing.  • Organizations lack fully proceduralized regimen for collecting, analyzing, and reporting on anomalous log activity.

  9. Basic Idea:  an incident at one location can be a precursor to an attack on another similar location. • Current Members • Argonne National Laboratory (ANL) • National Center for Supercomputing Applications (NCSA) • Los Alamos National Laboratory (LANL) • Lawrence Berkeley National Laboratory (LBNL) • Oak Ridge National Laboratory (ORNL) • U.S. Computer Emergency Readiness Team/DHS (USCERT) • Thomas Jefferson National Accelerator Facility (JLAB) • Brookhaven National Laboratory (BNL) • Sandia National Laboratories (SNL) • Idaho National Laboratory (INL) • Fermi National Laboratory (FNAL) • National Energy Research Scientific Computing Center (NERSC) • Pacific Northwest National Laboratory (PNNL) ANL Federated IDS Data Sharing Model

  10. ANL Federated IDS Data Sharing Model (2)

  11. ANL Federated IDS Data Sharing Model (3)

  12. ANL Federated IDS Data Sharing Model (4)

  13. "Federated Defenses and Watching Each Others' Backs" by Scott Pinkerton, ANL.  Tuesday, 11:00-11:45am. ANL Federated IDS Data Sharing ModelAdditional Info

  14. Violent Felons in Large Urban Counties A majority (56%) of violent felons had a prior conviction record. Thirty-eight percent had a prior felony conviction and 15% had a previous conviction for a violent felony.

  15. DNS-DB Malware Domain Blocklist maintains a list of domains, pulled from various sources, that are known to be used to propagate malware and spyware. • Global Watchlist pulls the list of suspected malicious IPs/Net ranges from different sources such as SANS DShield, Arbor atlas and so forth, then putting all of them in one place. • Ninja Chimp Strike Forceprovides a compiled list of hosts associated with bruteforce attempts, spam, botnets, etc. The list is comprised of data from Arbor Networks, Project Honeypot, Shadowserver, and about 24+ hosts. It is sorted on an hourly basis to keep information current and is consistently changing. The More Sources the Better?

  16. Cooperative Protection Program (CPP) Purpose Define, integrate, deploy and operate sensors to collect high quality, information rich network data Data analysis targeted at cyber adversaries and their activities against DOE Detect and deter hostile activities directed at the Department’s information assets Generate summary and alert information about boundary-crossing Internet traffic at DOE sites

  17. Problems • An incident at one location can be a precursor to an attack on another similar location. • Limited ACLs.  • False positives. • All sites are not created equal. • Mistakes happen.  • Politics.

  18. Nicolas Luhman [1] defines trust management as:  a tool allowing our systems to keep working even if assumption of cooperation doesn't hold. Bernard Baber [2] formulates trust as an expectation about the future, citing three fundamental meanings of trust: • Expectation of the persistence and fulfillment of the natural and moral social order. • Expectation of technically competent role performance from those we interact with in social relationships and systems. • Expectation that partners in interaction will carry out their fiduciary obligations and responsibilities (place other's interests before their own). Trust Management

  19. Need: specialized knowledge structures used to predict the reliability of trusting agent's partners in the future interaction using the past experience of interactions with the trustees. • Examples • Feedback mechanisms used by online auction sites (ex: eBay). • User ranking systems used by social networking. Trust and Reputation Modeling Techniques

  20. Dilbert and Albert Einstein

  21. System developed by Martin Rehak. CAMNEP: System Architecture

  22. CAMNEP: Multi-Source Trustfulness Integration

  23. CAMNEP: Agent Specific Clusters

  24. CAMNEP: Reporting

  25. CAMNEP: Conclusions

  26. NIST publication SP 800-30: Risk Management Guide for Information Technology Systems. In the text we read: "Risk is a function of the likelihood of a given threat-source's exercising a particular potential vulnerability, and the resulting impact of that adverse event on the organization. To determine the likelihood of a future adverse event, threats to an IT system must be analyzed in conjunction with the potential vulnerabilities and the controls in place for the IT system.“ "Vulnerability: A flaw or weakness in system security procedures, design, implementation, or internal controls that could be exercised (accidentally triggered or intentionally exploited) and result in a security breach or a violation of the system's security policy." Risk

  27. Steven Noel, Matthew Elder, Sushil Jajodia, Pramod Kalapa, Scott O'Hare, Kenneth Prole Basic idea: analyze and visualize vulnerability dependencies and attack paths for understanding overall security posture. Populate through automated network discovery, asset management, and vulnerability reporting technology. Topological Vulnerability Analysis (TVA) Approach

  28. Seeing the forest through the trees. Operating with Limited Data

  29. Network Capture • Nessus/ISS - VSWeb • NAC • FRAMS • Device Exception System (DES) • Network Registration System • Proxy logs • Splunk/log aggregators • Flow logs • Time Machine • Vulnerability Database • National Vulnerability Database (NVD) • The Open Source Vulnerability Database (OSVDB) • Emerging Threat  • SANS Internet Storm Center (IC) • Exploit Conditions • IDS/IPS - Snort and Bro • Attack Scenario (Threat) • Federated Model IPs • DNS-DB Malware Domain Blocklist • Global Watchlist • Ninja Chimp Strike Force Creating TOTEM

  30. How does one effectively distinguish false positives from actual threats? TOTEM: What is the Point? The answer may only be visible by looking at multiple sources with different levels of trust and doing a little aggregation and anomaly detection.  Our goal is to create attack road maps with weights/prioritizations in order to manage the possible risks.

  31. Evaluation Engine • Traffic acquisition and data processing layer • Cooperative threat detection layer • Operator and analyst interface layer TOTEM Analysis • Data is processed in stages • Anomaly detection • Trust update • Collective trust estimation • Method integration • History integration • Trust model defined • Past and current traffic • Traffic patterns to hosts • Traffic volume to hosts

  32. Classic LAMP System • Linux • Apache • MySQL • Perl • Additional Software • GPG • GeoIP • Graphviz • Request Tracker • ModSecurity Creating TOTEM: Federated ModelThe devil is in the details

  33. Strictly unclassified information • Information on (usually external) IP addresses that was malicious enough to warrant a site response (blocking or other) • IP address:tcp/udp port # • Time of attack • Type of attack • Exploit attempted • Severity of attack • Previous history of offending IP at that site (corporate memory) • We could periodically share watch lists • Information presented in a standardized exchanged format • Small XML file • Using IETD standards for cyber data exchange Information Shared by the Federated IDS Data Sharing Model

  34. # watchlist.security.org.my, contact mel@hackinthebox.org# ip/net, source, comment, name, last update (GMT+8)202.99.11.99, http://www.dshield.org/ipsascii.html, Dshield: Top IPs, dshield-top-ips, 2009/05/13 95.215.76.0/22, www.spamhaus.org/drop/drop.lasso, Spamhaus Block List, spamhaus, 2009/05/13 114.80.67.30, www.emergingthreats.net/rules/bleeding-rbn.rules, ET RBN, rbn, 2009/05/13  122.1.21.148, www.emergingthreats.net/rules/bleeding-compromised.rules, ET, compromised, Other Blacklists Provide Information # domain type original_reference-why_it_was_listed note--pound sign=comment# notice notice duplication is not permitted 00.devoid.us malware www.cyber-ta.org/malware-analysis/DNS.Cumulative.Summary 20090321 scan4lux.info fake_antivirus www.malwaredomainlist.com/update.php 20090505 junglemix.in phishing isc.sans.org/diary.html?storyid=6328 20090505 Wed May 13 07:59:03 CDT 200999.254.50.13999.248.26.17799.245.29.3899.234.219.183

  35. Top 10 Blacklist ProvidersUsing 266 IPs from malware.Using 235 IPs from rbn.Using 172 IPs from coolwebsearch and spamhaus.Using 55 IPs from rogue.Using 23 IPs from malspam.Using 20 IPs from dshield-top-blocks.Using 15 IPs from exploit and sql_injection.Using 13 IPs from spyware and trojan.Using 11 IPs from rogue_antivirus.Using 10 IPs from botnet.Total Blacklisted IPs Downloaded: 1214Blacklisted IPs Added Today: 39 Other Blacklists Provide Information (2)

  36. Sample Reports: Blacklist • Denotes IPs that are blacklisted by the Internet community more recent than 2009-05-11 17:12:07. • Denotes IPs that was blocked by the DOE Federated Community more recent than 2009-05-11 17:12:07.  • Denotes IPs that was blocked by the DOE Federated Community prior to 2009-05-11 17:12:07.

  37. Sample Reports: Blacklist (2)

  38. In respect to Snort, we have been looking at trend information for awhile. Signature Based Information Can be Useful

  39. Sample Reports: Blacklist (3)

  40. Sample Reports: ORNL Shuns • Denotes IPs that are blacklisted by the Internet community more recent than 2009-05-11 18:02:07. • Denotes IPs that was blocked by the DOE Federated Community prior to 2009-05-11 18:02:07.

  41. Sample Reports: ORNL Shuns (2)

  42. Sample Reports: ORNL Shuns (3)

  43. Sample Reports: ORNL Shuns (4)

  44. There is a great deal of work yet to be done.  Some key areas to develop will be: • Additional work on the evaluation engine. • Improved visualization. • CPP. • ICSI Bro. • ICSI Time Machine. • Integration with Request Tracker (RT).

  45. Mark Floyd • floydma@ornl.gov • John Gerber • gerberjj@ornl.gov • Thank you for the opportunity to discuss TOTEM. Comments • Seriously, we would appreciate any comments.  After the presentation, please feel free to contact us. • Mark Floyd John Gerber • floydma@ornl.gov         gerberjj@ornl.gov

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