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Intrusion Detection & Network Forensics

Intrusion Detection & Network Forensics. Marcus J. Ranum mjr@nfr.net Chief Technology Officer Network Flight Recorder, Inc. An ounce of prevention is worth a pound of detection. Why Talk about IDS?. Emerging new technology Very interesting ...but... About to be over-hyped

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Intrusion Detection & Network Forensics

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  1. Intrusion Detection&Network Forensics Marcus J. Ranum mjr@nfr.net Chief Technology Officer Network Flight Recorder, Inc.

  2. An ounce of prevention is worth a pound of detection

  3. Why Talk about IDS? • Emerging new technology • Very interesting ...but... • About to be over-hyped • Being informed is the best weapon in the security analyst’s arsenal • It also helps keep vendors honest!

  4. What is an Intrusion?! • Difficult to define • Not everyone agrees • This is a big problem • How about someone telnetting your system? • And trying to log in as “root”? • What about a ping sweep? • What about them running an ISS scan? • What about them trying phf on your webserver? • What about succeeding with phf and logging in?

  5. What is IDS? • The ideal Intrusion Detection System will notify the system/network manager of a successful attack in progress: • With 100% accuracy • Promptly (in under a minute) • With complete diagnosis of the attack • With recommendations on how to block it …Too bad it doesn’t exist!!

  6. Objectives: 100% Accuracy and 0% False Positives • A False Positive is when a system raises an incorrect alert • “The boy who cried ‘wolf!’” syndrome • 0% false positives is the goal • It’s easy to achieve this: simply detect nothing • 0% false negatives is another goal: don’t let an attack pass undetected

  7. Objectives: Prompt Notification • To be maximally accurate the system may need to “sit on” information for a while until all the details come in • e.g.: Slow-scan attacks may not be detected for hours • This has important implications for how “real-time” IDS can be! • IDS should notify user as to detection lag

  8. Objectives: Prompt Notification (cont) • Notification channel must be protected • What if attacker is able to sever/block notification mechanism? • An IDS that uses E-mail to notify you is going to have problems notifying you that your E-mail server is under a denial of service attack!

  9. Objectives: Diagnosis • Ideally, an IDS will categorize/identify the attack • Few network managers have the time to know intimately how many network attacks are performed • This is a difficult thing to do • Especially with things that “look weird” and don’t match well-known attacks

  10. Objectives: Recommendation • The ultimate IDS would not only identify an attack, it would: • Assess the target’s vulnerability • If the target is vulnerable it would notify the administrator • If the vulnerability has a known “fix” it would include directions for applying the fix • This requires huge, detailed knowledge

  11. IDS: Pros • A reasonably effective IDS can identify • Internal hacking • External hacking attempts • Allows the system administrator to quantify the level of attack the site is under • May act as a backstop if a firewall or other security measures fail

  12. IDS: Cons • IDS’ don’t typically act to prevent or block attacks • They don’t replace firewalls, routers, etc. • If the IDS detects trouble on your interior network what are you going to do? • By definition it is already too late

  13. Paradigms for Deploying IDS • Attack Detection • Intrusion Detection

  14. Desktop IDS WWW Server Firewall Attack Detection DMZ Network Internal Network Internet Router w/some screening IDS detects (and counts) attacks against the Web Server and firewall

  15. Attack Detection • Placing an IDS outside of the security perimeter records attack level • Presumably if the perimeter is well designed the attacks should not affect it! • Still useful information for management (“we have been attacked 3,201 times this month…) • Prediction: AD Will generate a lot of noise and be ignored quickly

  16. Desktop IDS WWW Server Firewall Intrusion Detection DMZ Network Internal Network Internet Router w/some screening IDS detects hacking activity WITHIN the protected network, incoming or outgoing

  17. Intrusion Detection • Placing an IDS within the perimeter will detect instances of clearly improper behavior • Hacks via backdoors • Hacks from staff against other sites • Hacks that got through the firewall • When the IDS alarm goes off, it’s a red alert

  18. Attack vs Intrusion Detection • Ideally do both • Realistically, do ID first then AD • Or, deploy AD to justify security effort to management, then deploy ID (more of a political problem than a technical one) • The real question here is one of staffing costs to deal with alerts generated by AD systems

  19. IDS Data Source Paradigms • Host Based • Network Based

  20. Host Based IDS • Collect data usually from within the operating system • C2 audit logs • System logs • Application logs • Data collected in very compact form • But application / system specific

  21. Host Based: Pro • Quality of information is very high • Software can “tune” what information it needs (e.g.: C2 logs are configurable) • Kernel logs “know” who user is • Density of information is very high • Often logs contain pre-processed information (e.g.: “badsu” in syslog)

  22. Host Based: Con • Capture is often highly system specific • Usually only 1, 2 or 3 platforms are supported (“you can detect intrusions on any platform you like as long as it’s Solaris or NT!”) • Performance is a wild-card • To unload computation from host logs are usually sent to an external processor system

  23. Host Based: Con (cont) • Hosts are often the target of attack • If they are compromised their logs may be subverted • Data sent to the IDS may be corrupted • If the IDS runs on the host itself it may be subverted

  24. Network Based IDS • Collect data from the network or a hub / switch • Reassemble packets • Look at headers • Try to determine what is happening from the contents of the network traffic • User identities, etc inferred from actions

  25. Network Based: Pro • No performance impact • More tamper resistant • No management impact on platforms • Works across O/S’ • Can derive information that host based logs might not provide (packet fragmenting, port scanning, etc.)

  26. Network Based: Con • May lose packets on flooded networks • May mis-reassemble packets • May not understand O/S specific application protocols (e.g.: SMB) • May not understand obsolete network protocols (e.g.: anything non-IP) • Does not handle encrypted data

  27. IDS Paradigms • Anomaly Detection - the AI approach • Misuse Detection - simple and easy • Burglar Alarms - policy based detection • Honey Pots - lure the hackers in • Hybrids - a bit of this and that

  28. Anomaly Detection • Goals: • Analyse the network or system and infer what is normal • Apply statistical or heuristic measures to subsequent events and determine if they match the model/statistic of “normal” • If events are outside of a probability window of “normal” generate an alert (tuneable control of false positives)

  29. Anomaly Detection (cont) • Typical anomaly detection approaches: • Neural networks - probability-based pattern recognition • Statistical analysis - modelling behavior of users and looking for deviations from the norm • State change analysis - modelling system’s state and looking for deviations from the norm

  30. Anomaly Detection: Pro • If it works it could conceivably catch any possible attack • If it works it could conceivably catch attacks that we haven’t seen before • Or close variants to previously-known attacks • Best of all it won’t require constantly keeping up on hacking technique

  31. Anomaly Detection: Con • Current implementations don’t work very well • Too many false positives/negatives • Cannot categorize attacks very well • “Something looks abnormal” • Requires expertise to figure out what triggered the alert • Ex: Neural nets can’t say why they trigger

  32. Anomaly Detection: Examples • Most of the research is in anomaly detection • Because it’s a harder problem • Because it’s a more interesting problem • There are many examples, these are just a few • Most are at the proof of concept stage

  33. Misuse Detection • Goals: • Know what constitutes an attack • Detect it

  34. Misuse Detection (cont) • Typical misuse detection approaches: • “Network grep” - look for strings in network connections which might indicate an attack in progress • Pattern matching - encode series of states that are passed through during the course of an attack • e.g.: “change ownership of /etc/passwd” -> “open /etc/passwd for write” -> alert

  35. Misuse Detection: Pro • Easy to implement • Easy to deploy • Easy to update • Easy to understand • Low false positives • Fast

  36. Misuse Detection: Con • Cannot detect something previously unknown • Constantly needs to be updated with new rules • Easier to fool

  37. Burglar Alarms • A burglar alarm is a misuse detection system that is carefully targeted • You may not care about people port-scanning your firewall from the outside • You may care profoundly about people port-scanning your mainframe from the inside • Set up a misuse detector to watch for misuses violating site policy

  38. Burglar Alarms (cont) • Goals: • Based on site policy alert administrator to policy violations • Detect events that may not be “security” events which may indicate a policy violation • New routers • New subnets • New web servers

  39. Burglar Alarms (cont) • Trivial burglar alarms can be built with tcpdump and perl • Netlog and NFR are useful event recorders which may be used to trigger alarms http://www.nswc.navy.mil/ISSEC/Docs/loggingproject.html ftp://coast.cs.purdue.edu/pub/tools/unix/netlog/ http://www.nfr.net/download

  40. Burglar Alarms (cont) • The ideal burglar alarm will be situated so that it fires when an attacker performs an action that they normally would try once they have successfully broken in • Adding a userid • Zapping a log file • Making a program setuid root

  41. Burglar Alarms (cont) • Burglar alarms are a big win for the network manager: • Leverage local knowledge of the local network layout • Leverage knowledge of commonly used hacker tricks

  42. Burglar Alarms: Pro • Reliable • Predictable • Easy to implement • Easy to understand • Generate next to no false positives • Can (sometimes) detect previously unknown attacks

  43. Burglar Alarms: Con • Policy-directed • Requires knowledge about your network • Requires a certain amount of stability within your network • Requires care not to trigger them yourself

  44. Honey Pots • A honey pot is a system that is deliberately named and configured so as to invite attack • swift-terminal.bigbank.com • www-transact.site.com • source-r-us.company.com • admincenter.noc.company.net

  45. Honey Pots (cont) • Goals: • Make it look inviting • Make it look weak and easy to crack • Instrument every piece of the system • Monitor all traffic going in or out • Alert administrator whenever someone accesses the system

  46. Honey Pots (cont) • Trivial honey pots can be built using tools like: • tcpwrapper • Burglar alarm tools (see “burglar alarms”) • restricted/logging shells (sudo, adminshell) • C2 security features (ugh!) • See Cheswick’s paper “An evening with Berferd” for examples

  47. Honey Pots: Pro • Easy to implement • Easy to understand • Reliable • No performance cost

  48. Honey Pots: Con • Assumes hackers are really stupid • They aren’t

  49. Hybrid IDS • The current crop of commercial IDS are mostly hybrids • Misuse detection (signatures or simple patterns) • Expert logic (network-based inference of common attacks) • Statistical anomaly detection (values that are out of bounds)

  50. Hybrid IDS (cont) • At present, the hybrids’ main strength appears to be the misuse detection capability • Statistical anomaly detection is useful more as backfill information in the case of something going wrong • Too many false positives - many sites turn anomaly detection off

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