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Intrusion Detection and Forensics for Self-defending Wireless Networks Yan Chen Lab for Internet and Security Technology EECS Department Northwestern University Security Challenges in GIG Wireless Networks • In addition to sharing similar challenge of wired net – High speed traffic (e.g., WiMAX) – Zero-day threats – Lack of quality info for situational-aware analysis: attack target/strategy, attacker (botnet) size, etc. • Wireless networks are more vulnerable – Many emerging wireless network protocols: WiMAX, mobile IP v4/6, EAP authentication protocols Self-Defending Wireless Networks • Proactive vulnerability analysis of wireless network protocols (done in year 1) – Found a class of exception triggered DoS attacks • Net-based adaptive anomaly diagnosis, intrusion detection and mitigation – Polymorphic zero-day worm signature generation (done in year 2) – Automated analysis of large-scale botnet probing events for situation aware info (done in year 3) – Scalable signature matching w/ massive vulnerability signatures (done in year 4) • Projects done in pipeline, not serialized. Accomplishments in AY 06-07 Five conference papers • Detecting Stealthy Spreaders Using Online Outdegree Histograms, in the Proc. of the 15th IEEE International Workshop on Quality of Service (IWQoS), 2007 (26.6%). • Hamsa: Fast Signature Generation for Zero-day Polymorphic Worms with Provable Attack Resilience, to appear in IEEE Symposium on Security and Privacy, 2006 (9%). • Towards Scalable and Robust Distributed Intrusion Alert Fusion with Good Load Balancing, in Proc. of ACM SIGCOMM Workshop on Large-Scale Attack Defense 2006(33%). • Automatic Vulnerability Checking of IEEE 802.16 WiMAX Protocols through TLA+, in Proc. of the Second Workshop on Secure Network Protocols (NPSec) (33%). • A DoS Resilient Flow-level Intrusion Detection Approach for High-speed Networks, in IEEE International Conference on Distributed Computing Systems (ICDCS), 2006 (14%). Accomplishments in AY 07-08 Three conference, one journal papers and two book chapters, and one patent filed • “Accurate and Efficient Traffic Monitoring Using Adaptive Non-linear Sampling Method", in the Proc. of IEEE INFOCOM, 2008 • “A Survey of Existing Botnet Defenses “, in Proc. of IEEE IWSSE 2008. • “Honeynet-based Botnet Scan Traffic Analysis", invited book chapter for “Botnet Detection: Countering the Largest Security Threat”, Springer, 2007. • “Integrated Fault and Security Management”, invitedpublication book chapterwith for Dr. • Collaborated “Information Assurance: Dependability and Security Networked Keesook Han infrom AFRL Systems”, Morgan Kaufmann Publishers, 2007. • “Reversible Sketches: Enabling Monitoring and Analysis over High-speed Data Streams”, in ACM/IEEE Transaction on Networking, Volume 15, Issue 5, Oct. 2007. • “Network-based and Attack-resilient Length Signature Generation for Zero-day Polymorphic Worms”, in the Proc. of the IEEE ICNP, 2007. Accomplishments in AY 08-09 Five conference and one journal papers • “Using Failure Information Analysis to Detect Enterprise Zombies", in the Proc. of SecureComm 2009. • “Exception Triggered DoS Attacks on Wireless Networks”, the 39th IEEE/IFIP International Conference on Dependable Systems and Networks (DSN), 2009. • "BotGraph: Large Scale Spamming Botnet Detection", USENIX Symposium on Networked Systems Design and Implementation (NSDI) 2009. • "Towards Efficient Large-Scale VPN Monitoring and Diagnosis under Operational Constraints", IEEE INFOCOM (main conference), 2009. • “Automating Analysis of Large-Scale Botnet Probing Events”, ACM Symposium on Information, Computer and Communications Security (ASIACCS), 2009. • “Pollution Attacks and Defenses for Internet Caching Systems”, in Journal of Computer Networks, 2008. Accomplishments in AY 09-10 Two conference and four journal papers and one patent filed • “NetShield: Massive Semantics-based Vulnerability Signature Matching for High-speed Networks, in the Proc. of ACM SIGCOMM 2010 • HiFIND: A high-speed flow-level intrusion detection approach with DoS resiliency, Journal of Computer Networks, Volume 54, Issue 8, June 2010.. • Measurement and Diagnosis of Address Misconfigured P2P Traffic, in the Proc. of IEEE INFOCOM, 2010 • Thwarting Zero-Day Polymorphic Worms With Network-Level Length-Based Signature Generation, in ACM/IEEE Transaction on Networking (ToN), Volume 18, Issue 1, 2010. • POPI: A User-level Tool for Inferring Router Packet Forwarding Priority", ACM/IEEE Transaction on Networking (ToN), Volume 18, Issue 1, 2010. • "Towards Unbiased End-to-End Network Diagnosis", in ACM/IEEE Transaction on Networking (ToN), Volume 17, Number 6, Dec. 2009. Overall Achievement • • • • • 15 conference papers 6 journal papers 2 book chapters 2 patents filed Several software released to the community – E.g. www.nshield.org • Invited talks to Cisco, Juniper, etc. for potential tech transfer 8 NetShield: Matching a Large Vulnerability Signature Ruleset for High Performance Network Defense 9 Outline • • • • • Motivation High Speed Matching for Large Rulesets High Speed Parsing Evaluation Research Contributions 10 NetShield Overview NIDS/NIPS (Network Intrusion Detection/Prevention System) operation Signature DB Packets NIDS/NIPS ` ` ` Security • Accuracy alerts • Speed • Attack Coverage 11 Network Level Defense • Network gateways/routers are the vantage points for detecting large scale attacks • Only host based detection/prevention is not enough – Some users do not apply the host-based schemes due to the reliability, overhead, and conflicts – Many users do not update or patch their system on time – E.g., Conficker worm in the end of 2008 infected 9~15 millions of hosts – Cannot only reply on end users for security protection 12 State Of The Art Regular expression (regex) based approaches Used by: Cisco IPS, Juniper IPS, open source Bro Example: .*Abc.*\x90+de[^\r\n]{30} Pros • Can efficiently match multiple sigs simultaneously, through DFA • Can describe the syntactic context 13 Cons of Regex Limited expressive power, cannot describe semantic context, thus inaccurate Theoretical prospective Regex Protocol Context Context Sensitive grammar Free Practical prospective • HTTP chunk encoding • DNS label pointers State Of The Art Vulnerability Signature [Wang et al. 04] Blaster Worm (WINRPC) Example: Vulnerability: design flaws enable the bad BIND: inputs lead&& therpc_vers_minor==1 program to a bad&& state rpc_vers==5 packed_drep==\x10\x00\x00\x00 Good && context[0].abstract_syntax.uuid=UUID_RemoteActivation state BIND-ACK: Bad input rpc_vers==5 && rpc_vers_minor==1 CALL: rpc_vers==5 && rpc_vers_minors==1 && packed_drep==\x10\x00\x00\x00 Bad Vulnerability && opnum==0x00 && stub.RemoteActivationBody.actual_length>=40 state Signature && matchRE(stub.buffer, /^\x5c\x00\x5c\x00/) Pros • Directly describe semantic context • Very expressive, can express the vulnerability condition exactly • Accurate Cons • Slow! • Existing approaches all use sequential matching • Require protocol parsing 15 Speed High Motivation of NetShield State of the art regex Sig IDSes NetShield Theoretical accuracy limitation of regex Low Existing Vulnerability Sig IDS Low Accuracy High 16 Motivation • Desired Features for Signature-based NIDS/NIPS – Accuracy (especially for IPS) – Speed Cannot capture vulnerability – Coverage: Large ruleset condition well! Regular Expression Vulnerability Accuracy Relative Poor Much Better Speed Good ?? Memory OK ?? Coverage Good ?? Shield [sigcomm’04] Focus of this work 17 Research Challenges and Solutions • Challenges – Matching thousands of vulnerability signatures simultaneously • Sequential matching match multiple sigs. simultaneously – High speed protocol parsing • Solutions – An efficient algorithm which matches multiple sigs simultaneously – A tailored parsing design for high-speed 18 signature matching Background • Vulnerability signature basic – Use protocol semantics to express vulnerabilities – Defined on a sequence of PDUs & one predicate for Blastereach WormPDU (WINRPC) Example: BIND: – Example: ver==1 && method==“put” && len(buf)>300 rpc_vers==5 && rpc_vers_minor==1 && packed_drep==\x10\x00\x00\x00 && context[0].abstract_syntax.uuid=UUID_RemoteActivation • Data representations BIND-ACK: – For && all the vulnerability signatures we studied, we only rpc_vers==5 rpc_vers_minor==1 CALL: need numbers and strings rpc_vers==5 && rpc_vers_minors==1 &&<,packed_drep==\x10\x00\x00\x00 – number operators: ==, >, >=, <= && opnum==0x00 && stub.RemoteActivationBody.actual_length>=40 – String operators: ==, match_re(.,.), len(.). && matchRE(stub.buffer, /^\x5c\x00\x5c\x00/) 19 Outline • • • • • Motivation High Speed Matching for Large Rulesets High Speed Parsing Evaluation Research Contributions 20 Matching Problem Formulation • Suppose we have n signatures, defined on k matching dimensions (matchers) – A matcher is a two-tuple (field, operation) or a fourtuple for the associative array elements – Translate the n signatures to a n by k table – This translation unlocks the potential of matching multiple signatures simultaneously Rule 4: URI.Filename=“fp40reg.dll” && len(Headers[“host”])>300 RuleID Method == Filename == Header == LEN 1 DELETE * * 2 POST Header.php * 3 * awstats.pl * 4 * fp40reg.dll name==“host”; len(value)>300 5 * * name==“User-Agent”; len(value)>544 21 Matching Problem Formulation • Challenges for Single PDU matching problem (SPM) – Large number of signatures n – Large number of matchers k – Large number of “don’t cares” – Cannot reorder matchers arbitrarily -buffering constraint – Field dependency • Arrays, associative arrays • Mutually exclusive fields. 22 Difficulty of the SPM • Bad News – A well-known computational geometric problem can be reduced to this problem. – And that problem has bad worst case bound O((log N)K-1) time or O(NK) space (worst case ruleset) • Good News – Measurement study on Snort and Cisco ruleset – The real-world rulesets are good: the matchers are selective. – With our design O(K) 23 Matching Algorithms Candidate Selection Algorithm 1.Pre-computation decides the rule order and • Integer range checking matcher order balanced binary search tree • String exact matching Trie 2.Decomposition. Match each matcher • Regex DFA (XFA) separately and iteratively combine the results efficiently 24 Outline • • • • • Motivation High Speed Matching for Large Rulesets. High Speed Parsing Evaluation Research Contribution 25 High Speed Parsing General V.S. Special Purpose Keep the whole parse Parsing and matching V.S. on the fly tree in memory Parse all the nodes in the tree Only signature related V.S. fields (leaf nodes) • Design a parsing state machine • Build an automated parsing state machine generator Outline • • • • • Motivation High Speed Matching for Large Rulesets. High Speed Parsing Evaluation Research Contributions 27 Evaluation Methodology Fully implemented prototype • 12,000 lines of C++ and 3,000 lines of Python Release at: www.nshield.org Deployed at a university DC with up to 106Mbps • 26GB+ Traces from Tsinghua Univ. (TH), Northwestern (NU) and DARPA • Run on a P4 3.8Ghz single core PC w/ 4GB memory • After TCP reassembly and preload the PDUs in memory • For HTTP we have 794 vulnerability signatures which cover 973 Snort rules. • For WINRPC we have 45 vulnerability signatures which cover 28 3,519 Snort rules Parsing Results Trace TH DNS TH NU TH WINRPC WINRPC HTTP Avg flow len (B) 77 879 596 6.6K 55K 2.1K Throughput (Gbps) Binpac Our parser 0.31 3.43 1.41 16.2 1.11 12.9 2.10 14.2 1.69 7.46 44.4 6.67 11.2 Max. memory per 15 11.5 15 11.6 15 3.6 14 Speed up ratio NU HTTP 3.1 14 DARPA HTTP 3.9 14 connection (bytes) 29 Matching Results 8-core 11.0 Trace TH NU TH WINRPC WINRPC HTTP NU HTTP DARPA HTTP Avg flow length (B) 879 596 6.6K 55K 2.1K 10.68 14.37 4 9.23 10.61 1.8 0.34 2.63 11.3 2.37 0.28 17.63 1.85 11.7 8.8 1.48 27 0.033 0.038 0.0023 20 20 20 Throughput (Gbps) Sequential CS Matching Matching only time speed up ratio Avg # of Candidates 1.16 Max. memory per connection (bytes) 27 30 Scalability and Accuracy Results Rule scaling results Throughput (Gbps) 0 1 2 3 4 Performance decrease gracefully 0 200 400 600 # of rules used 800 Accuracy • Create two polymorphic WINRPC exploits which bypass the original Snort rules but detect accurately by our scheme. • For 10-minute “clean” HTTP trace, Snort reported 42 alerts, NetShield reported 0 alerts. Manually verify the 42 alerts are false positives 31 Research Contribution Make vulnerability signature a practical solution for NIDS/NIPS Regular Expression Exists Vul. IDS NetShield Accuracy Poor Good Good Speed Good Poor Good Memory Good ?? Good Coverage Good ?? Good • Multiple sig. matching candidate selection algorithm • Parsing parsing state machine Build a better Snort alternative! 32 Q&A Thanks! 33 Observations • PDU parse tree • Leaf nodes are numbers or strings PDU array General V.S. Special Purpose Keep the whole parse Parsing and matching V.S. on the fly tree in memory Parse all the nodes in the tree Only signature related V.S. fields (leaf nodes) 34 Efficient Parsing with State Machines • Studied eight protocols: HTTP, FTP, SMTP, eMule, BitTorrent, WINRPC, SNMP and DNS as well as their vulnerability signatures • Common relationships among leaf nodes Automated parsing state machine Var Var generator: UltraPAC derive Var Sequential Branch Loop Derive (a) (b) (c) (d) • Pre-construct parsing state machines based on parse trees and vulnerability signatures 35 Example for WINRPC • Rectangles are states • Parsing variables: R0 .. R4 • 0.61 instruction/byte for BIND PDU R1-16 8 merge2 1 ncontext 3 padding Bind-ACK 1 rpc_vers 1 rpc_ver_minor R0 1 ptype Header 1 pfc_flags R0 4 packed_drep Bind R1 2 frag_length 6 merge1 merge3 R4 20*R4 2 ID 1 n_tran_syn 1 padding 16 UUID 4 UUID_ver tran_syn Bind-ACK R2 ‹- 0 R3 ‹- ncontext Bind R2++ R2£R3 36 Step 1: Pre-Computation • Optimize the matcher order based on buffering constraint & field arrival order • Rule reorder: 1 Require Matcher 1 Require Matcher 1 Require Matcher 2 Don’t care Matcher 1 Don’t care Matcher 1 &2 n 37 Step 2: Iterative Matching PDU={Method=POST, Filename=fp40reg.dll, Header: name=“host”, len(value)=450} S1={2} Candidates after match Column 1 (method==) S2=S1 A2+B2 ={2} {}+{4}={}+{4}={4} S3=S2 A3+B3={4} {4}+{}={4}+{}={4} Si Ai 1 Don’t care RuleID Method == Filename == Header == LEN R1 R2 R3 1 2 DELETE SiPOST * matcher i+1 * Header.php * * 3 * awstats.pl 4 * fp40reg.dll 5 * * Si Ai 1 require In Ai+1 len(value)>300 name==“host”; matcher i+1 name==“User-Agent”; len(value)>544 38 Complexity Analysis Three HTTP traces: avg(|Si|)<0.04 • Merging complexity Two WINRPC – Need k-1 merging iterations traces: avg(|Si|)<1.5 – For each iteration • Merge complexity O(n) the worst case, since Si can have O(n) candidates in the worst case rulesets • For real-world rulesets, # of candidates is a small constant. Therefore, O(1) – For real-world rulesets: O(k) which is the optimal we can get 39 Refinement and Extension • SPM improvement – Allow negative conditions – Handle array cases – Handle associative array cases – Handle mutual exclusive cases • Extend to Multiple PDU Matching (MPM) – Allow checkpoints. 40 Experiences • Working in process – In collaboration with MSR, apply the semantic rich analysis for cloud Web service profiling. To understand why slow and how to improve. • Interdisciplinary research • Student mentoring (three undergraduates, six junior graduates) 41 Future Work • Near term – Web security (browser security, web server security) – Data center security – High speed network intrusion prevention system with hardware support • Long term research interests – Combating professional profit-driven attackers will be a continuous arm race – Online applications (including Web 2.0 applications) become more complex and vulnerable. – Network speed keeps increasing, which demands highly scalable approaches. 42 Research Contributions • Demonstrate vulnerability signatures can be applied to NIDS/NIPS, which can significantly improve the accuracy of current NIDS/NIPS • Propose the candidate selection algorithm for matching a large number of vulnerability signatures efficiently • Propose parsing state machine for fast protocol parsing 43 • Implement the NetShield Comparing With Regex • Memory for 973 Snort rules: DFA 5.29GB (XFA 863 rules1.08MB), NetShield 2.3MB • Per flow memory: XFA 36 bytes, NetShield 20 bytes. • Throughput: XFA 756Mbps, NetShield 1.9+Gbps (*XFA [SIGCOMM08][Oakland08]) 44 Measure Snort Rules • Semi-manually classify the rules. 1. Group by CVE-ID 2. Manually look at each vulnerability • Results – 86.7% of rules can be improved by protocol semantic vulnerability signatures. – Most of remaining rules (9.9%) are web DHTML and scripts related which are not suitable for signature based approach. – On average 4.5 Snort rules are reduced to one vulnerability signature. – For binary protocol the reduction ratio is much higher than that of text based ones. • For netbios.rules the ratio is 67.6. 45 Matcher order Si 1 Si Ai 1 Bi 1 Reduce Si+1 Enlarge Si+1 Merging Overhead |Si| (use hash table to calculate in Ai+1, O(1)) | Ai 1 Bi 1 | fixed, put the matcher later, reduce Bi+1 46 Matcher order optimization • Worth buffering only if estmaxB(Mj)<=MaxB • For Mi in AllMatchers – Try to clear all the Mj in the buffer which estmaxB(Mj)<=MaxB – Buffer Mi if (estmaxB(Mi)>MaxB) – When len(Buf)>Buflen, remove the Mj with minimum estmaxB(Mj) 47