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Published byJohnathan Ramsey Modified over 9 years ago
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1 Enterprise Networks under Stress
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2 = 60% growth/year Vern Paxson, ICIR, “Measuring Adversaries”
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3 = 596% growth/year Vern Paxson, ICIR, “Measuring Adversaries” “Background” Radiation -- Dominates traffic in many of today’s networks
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4 Some Observations Internet reasonably robust to point problems like link and router failures (“fail stop”) Successfully operates under a wide range of loading conditions and over diverse technologies During 9/11/01, Internet worked well, under heavy traffic conditions and with some major facilities failures in Lower Manhattan
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5 The Problem Networks awash in illegitimate traffic: port scans, propagating worms, p2p file swapping –Legitimate traffic starved for bandwidth –Essential network services (e.g., DNS, NFS) compromised Needed: better network management of services/applications to achieve good performance and resilience even in the face of network stress –Self-aware network environment –Observing and responding to traffic changes –While sustaining the ability to control the network
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6 From the Frontlines Berkeley Campus Network –Unanticipated traffic surges render the network unmanageable (and may cause routers to fail) –Denial of service attacks, latest worm, or the newest file sharing protocol largely indistinguishable –In-band control channel is starved, making it difficult to manage and recover the network Berkeley EECS Department Network (12/04) –Suspected denial-of-service attack against DNS –Poorly implemented/configured spam appliance adds to DNS overload –Traffic surges render it impossible to access Web or mount file systems Network problems contribute to brittleness of distributed systems
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7 Why and How Networks Fail Complex phenomenology of failure Traffic surges break enterprise networks “Unexpected” traffic as deadly as high net utilization –Cisco Express Forwarding: random IP addresses --> flood route cache --> force traffic thru slow path --> high CPU utilization --> dropped router table updates –Route Summarization: powerful misconfigured peer overwhelms weaker peer with too many router table entries –SNMP DoS attack: overwhelm SNMP ports on routers –DNS attack: response-response loops in DNS queries generate traffic overload
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8 Technology Trends Integration of servers, storage, switching, and routing –Blade Servers, Stateful Routers, Inspection-and-Action Boxes (iBoxes) Packet flow manipulations at L4-L7 –Inspection/segregation/accounting of traffic –Packet marking/annotating Building blocks for network protection –Pervasive observation and statistics collection –Analysis, model extraction, statistical correlation and causality testing –Actions for load balancing and traffic shaping Load Balancing Traffic Shaping
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9 R R Distribution Tier E E E S S I R IAIA E Internet Edge Access Edge Server Edge Spam Appliance Primary & Secondary DNS Servers ISIS S Mail Server S Scenario: Traffic Surge Inhibiting Network Services DNS Server swamped by excessive request traffic –Observe: DNS time outs, Web access traffic slowed, but also higher than normal mail delivery latency implying busy server edge (correlation between Mail Server and DNS Server utilization?) –Root Cause: High DNS request rates generated by Spam Appliance triggered by mail surge
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10 Scenario Continued How Diagnosed? –I-S detects high link utilization but abnormally high DNS traffic –Stats from I-I: high mail traffic, low outgoing web traffic, in traffic high but link utilization not high –Stats from I-A: lower web traffic, no unusual mail origination –Problem localized to Server edge, but visibility limited R R Distribution Tier E E E S S I R IAIA E Internet Edge Access Edge Server Edge Spam Appliance Primary & Secondary DNS Servers ISIS S Mail Server S
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11 Scenario Continued Possible Action Responses –Experiment: Redirect local DNS requests to Secondary DNS server: if these complete, can infer the server is the problem, not the network –Throttle: Due to MS-DNS correlation, block/slow email traffic at Server Edge: should expect reduced DNS server utilization R R Distribution Tier E E E S S I R IAIA E Internet Edge Access Edge Server Edge Spam Appliance Primary & Secondary DNS Servers ISIS S Mail Server S
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12 Internet Edge PC Access Edge MS FS Spam Filter DNS Server Edge Scenario Distribution Tier
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13 Observed Operational Problems User visible services: –NFS mount operations time out –Web access also fails intermittently due to time outs Failure causes: –Independent or correlated failures? –Problem in access, server, or Internet edge? –File server failure? –Internet denial of service attack?
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14 Network Dashboard b/w consumed time Gentle rise in ingress b/w FS CPU utilization time No unusual pattern MS CPU utilization time Mail traffic growing DNS CPU utilization time Unusual step jump/ DNS xact rates Access Edge b/w consumed time Decline in access edge b/w In Web Out Web Email
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15 Network Dashboard b/w consumed time FS CPU utilization time MS CPU utilization time DNS CPU utilization time Access Edge b/w consumed time Gentle rise in ingress b/w No unusual pattern Mail traffic growing Unusual step jump/ DNS xact rates Decline in access edge b/w In Web Out Web Email CERT Advisory! DNS Attack!
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16 Observed Correlations Mail traffic up MS CPU utilization up –Service time up, service load up, service queue longer, latency longer DNS CPU utilization up –Service time up, request rate up, latency up Access edge b/w down Causality no surprise! How does mail traffic cause DNS load?
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17 Run Experiment Shape Mail Traffic MS CPU utilization time Mail traffic limited DNS CPU utilization time DNS down Access Edge b/w consumed time Access edge b/w returns Root cause: Spam appliance --> DNS lookups to verify sender domains; Spam attack hammers internal DNS, degrading other services: NFS, Web In Web Out Web Email
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18 Policies and Actions Restore the Network Shape mail traffic –Mail delay acceptable to users? –Can’t do this forever unless mail is filtered at the Internet edge Load balance DNS services –Increase resources faster than incoming mail rate –Actually done: dedicated DNS server for Spam appliance Other actions? Traffic priority, QoS knobs
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19 Analysis Root causes difficult to diagnose –Transitive and hidden causes Key is pervasive observation –iBoxes provide the needed infrastructure –Observations to identify correlations –Perform active experiments to “suggest” causality
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20 Many Challenges Policy specification: how to express? Service Level Objectives? Experimental plan –Distributed vs. centralized development –Controlling the experiments … when the network is stressed –Sequencing matters, to reveal “hidden” causes Active experiments –Making things worse before they get better –Stability, convergence issues Actions –Beyond shaping of classified flows, load balancing, server scaling?
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21 Implications for Network Operations and Management Processing-in-the-Network is real Enables pervasive monitoring and actions Statistical models to discover correlations and to detect anomalies Automated experiments to reveal causality Policies drive actions to reduce network stress
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22 Datacenter Networks
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23 Networks Under Stress
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