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Analyzing Network Traffic in the Presence of Adversaries Vern Paxson International Computer Science Institute / Lawrence Berkeley National Laboratory vern@icsi.berkeley.edu / vern@ee.lbl.gov October 18, 2004
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Roadmap In today’s Internet, attacks are the norm –Adversaries can create fundamental problems for network traffic analysis #1 problem: evasion by ambiguity “Active mapping” to resolve ambiguities “Normalization” to eliminate ambiguities #2: flooding directed at network devices How to design robust analysis hardware
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Data courtesy of Rick Adams = 80% growth/year
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= 60% growth/year
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= 596% growth/year
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Courtesy Mark Dedlow
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In Today’s Internet Attacks are the Norm Great interest in watching network traffic and analyzing what it’s doing Watching: monitor traffic at chokepoints, capture copy or perhaps intercept Analyzing: reconstruct protocol layers as seen by endpoints, interpret semantics How hard can it be? Attackers are adversaries: they don’t want to be caught and they want to make it painful for us to operate
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The Problem of Evasion Evasion raises fundamental problems Network traffic seen from within a network is inherently ambiguous. Analyzing network traffic at a high semantic level requires extensive state … … which an adversary can target. Consider a network intrusion detection system (IDS; “Bro”) detecting occurrences of the string “root” inside a network connection (Let’s disregard the wholly separate issue of false positives: whether this is a good “signature”)
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Detecting “root”: Attempt #1 Method: scan each packet for ‘r’, ‘o’, ‘o’, ‘t’ –Perhaps using Boyer-Moore, Aho-Corasick, Bloom filters … …….….root………..………… 1 But: TCP protocol doesn’t preserve text boundaries …….….ro 1 ot………..………… 2
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Detecting “root”: Attempt #2 Method: remember match from end of previous packet …….….ro 1 ot………..………… 2 + But: TCP protocol doesn’t guarantee in-order arrival …….….ro 1 ot………..………… 2 ? - Now we’re managing state
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Detecting “root”: Attempt #3 Method: reassemble entire byte stream –Keep track of full TCP connection state –So much for “simple” –What happens if we run out of memory? And: –Still evadable …
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Evading Detection Via Ambiguous TCP Retransmission
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It’s Not Just TTL Expiration Systematic study (w/ M. Handley & C. Kreibich) to analyze ambiguous protocol fields: –73 exploitable ambiguities IP/TCP/UDP/ICMP –E.g: control flags, flow control window, “don’t fragment”, old timestamps, service class, redundant length field, filtering on unused bits –Internet protocols not designed for analysis –Attacker toolkits already exist for exploiting these Answer: alert upon seeing ambiguous traffic?
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The Problem of “Crud” Unfortunately, ambiguities occur in benign traffic, too: –Legitimate tiny fragments, overlapping fragments –Receivers that acknowledge data they did not receive –Senders that retransmit different data than originally In a diverse traffic stream, you will see these : –What is the intent? Loss of alert precision “Maybe there’s an attack”
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Countering Evasion-by-Ambiguity: Active Mapping Idea (w/ Umesh Shankar, UCB): Probe end-host in advance to resolve vantage- point ambiguities –E.g., how many hops to it? –E.g., how does it resolve ambiguous retransmissions? –Gray-box testing
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Mapping Setup
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Grey-box Inference of Reassembly Policy
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A Plethora of Inferred Policies
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Issues for Active Mapping Probing for most ambiguities requires eliciting a response –Some hosts won’t respond when not actively engaged –For some responses, need to trick host into echoing back what it saw Have to take churn into account –At a large site, something’s always changing –Lack of identity due to NAT, DHCP –Our implementation takes ≈ 5 sec/host
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Countering Evasion-by-Ambiguity: Normalization Idea (w/ Mark Handley, Christian Kreibich): Introduce network element to rewrite traffic passing through it to eliminate ambiguities –E.g., regenerate low TTLs (dicey!) –E.g., regularize flags, unused fields –E.g., trim out-of-window data –E.g., reassemble streams & remove inconsistent retransmissions
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Issues for Normalization Effect on end-to-end semantics? –Some normalizations harmless (e.g., inconsistent streams) –Some actually improve protocol (e.g., reliable RSTs) –Some degrade performance in the presence of cold start (e.g., stripping TCP window scaling) Performance: element is in-line –Prototype (1.1 GHz): 400 Mbps –Would like to use custom hardware …
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Robust Hardware for Analyzing Traffic in the Presence of Adversaries Ongoing work w/ Sarang Dharmapurikar (WUSTL) Basic building-block for boosting network analysis: in-line TCP stream reassembly –If data arrives in-sequence, hand it to analyzer module –If data arrives out-of-sequence, it creates a “hole” Buffer for later delivery How hard can it be?
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How Much Buffer for Holes Do We Need? Most previous work says: “Zero” –Skip out-of-sequence packets Commercial work says: “Yes” –Claim out-of-sequence packets buffered, but with no details Answer for sound operation depends critically on whether we consider adversaries …
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Measured Buffer Required Per-Hole
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Measured Duration of Holes
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Instantaneous Aggregate Hole Buffer
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How Much Buffer for Holes Do We Need?, con’t Trace analysis says: a few hundred KB suffices even for a large site’s access link... … But: an adversary can maliciously create holes, overflowing the buffer. On overflow, we can either: –Stop analyzing evicted connection, allowing adversary to evade –Kill unanalyzable connection, allowing adversary to inflict collateral damage
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Adversary-Resistant Stream Reassembly Trace analysis also says: –Very few connections have concurrent holes Can limit adversary to one hole per connection –No hosts have concurrent connections w/ holes Can limit adversary to one hole per Zombie Consider randomized eviction: –If buffer size >> requirements of legit connections, then most evictions evict the attacker’s own holes
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Zombie Equations Let: –M, P = total memory (pages) available for holes –M l, P l = memory (pages) for legitimate holes –e = tolerable eviction rate for legit. connections –r = rate at which a zombie can transmit (bytes/sec) –g = page size (granularity) for hole buffer –Z = # of zombies required to achieve eviction rate Then for attacker creating small/large holes:
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Zombie Implications If we only terminate connections with > 2 packets buffered; allow each connection 10KB of buffer; and use 512MB DRAM … … then collateral damage rate X of legitimate connections terminated per second is: By throwing memory at the problem, we can weather a large attack
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Summary The lay of the land has changed –Ecosystem of endemic hostility Adversaries can exploit ambiguity and pressures of holding state to evade detection or inflict collateral damage Internet protocols not designed with “wire analysis” in mind … … But it is possible to design to address these issues if they are properly considered
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Summary, con’t Network analysis amidst adversaries is a new area: –Did not talk about: application-level evasion, polymorphism, tunneling, compromising passive monitors –In many ways, reminiscent of Internet measurement a decade ago: Low-hanging fruit Daunting problems Fun!
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