Congestion Control Outline Queuing Discipline Reacting to Congestion

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Congestion Control Outline Queuing Discipline Reacting to Congestion Avoiding Congestion Quality of Service Fall 2006 CS 561 1

Issues Two sides of the same coin – pre-allocate resources so at to avoid congestion – control congestion if (and when) is occurs Source 10-M 1 bp s Ethe rnet Sourceof Two points 2 Router 1.5-Mbps T1 link Destination I FD D s p -Mb implementation 100 – hosts at the edges of the network (transport protocol) – routers inside the network (queuing discipline) Underlying service model – best-effort – multiple qualities of service (QoS) Fall 2006 CS 561 2

Framework Connectionless flows – sequence of packets sent between source/destination pair – maintain soft state at the routers Source 1 Router Destination 1 Router Source 2 Router Destination 2 TaxonomySource 3 versus host-centric – router-centric – reservation-based versus feedback-based – window-based versus rate-based Fall 2006 CS 561 3

Evaluation Throughput/delay Fairness Power (ratio of throughput to delay) Optimal load Fall 2006 CS 561 Load 4

Queuing Discipline First-In-First-Out (FIFO) – does not discriminate between traffic sources – drop policy (tail-drop, random early drop) Fair Queuing (FQ) – explicitly segregates traffic based on flows – ensures no flow captures more than its share of capacity – variation: weighted fair queuing (WFQ) Problem? Flow 1 Flow 2 Round-robin service Flow 3 Flow 4 Fall 2006 CS 561 5

FQ Algorithm Suppose clock ticks each time a bit is transmitted Let Pi denote the length of packet i Let Si denote the time when start to transmit packet i Let Fi denote the time when finish transmitting packet i Fi Si Pi When does router start transmitting packet i? – if before router finished packet i - 1 from this flow, then immediately after last bit of i - 1 (Fi-1) – if no current packets for this flow, then start transmitting when arrives (call this Ai) Thus: Fi MAX (Fi - 1, Ai) Pi Fall 2006 CS 561 6

FQ Algorithm (cont) For multiple flows – calculate Fi for each packet that arrives on each flow – treat all Fi’s as timestamps – next packet to transmit is one with lowest timestamp Not perfect: can’t preempt current packet Example Flow 1 F 8 F 5 Flow 2 Flow 1 (arriving) Output F 10 Output F 10 F 2 (a) Fall 2006 Flow 2 (transmitting) (b) CS 561 7

TCP Congestion Control Idea – assumes best-effort network (FIFO or FQ routers) each source determines network capacity for itself – uses implicit feedback – ACKs pace transmission (self-clocking) Challenge – determining the available capacity in the first place – adjusting to changes in the available capacity Fall 2006 CS 561 8

Additive Increase/Multiplicative Decrease Objective: adjust to changes in the available capacity New state variable per connection: CongestionWindow – limits how much data source has in transit MaxWin MIN(CongestionWindow, AdvertisedWindow) EffWin MaxWin - (LastByteSent LastByteAcked) Idea: – increase CongestionWindow when congestion goes down – decrease CongestionWindow when congestion goes up Fall 2006 CS 561 9

AIMD (cont) Question: how does the source determine whether or not the network is congested? Answer: a timeout occurs – timeout signals that a packet was lost – packets are seldom lost due to transmission error – lost packet implies congestion Fall 2006 CS 561 10

AIMD (cont) Source Destination Algorithm – increment CongestionWindow by one packet per RTT (linear increase) – divide CongestionWindow by two whenever a timeout occurs (multiplicative decrease) In practice: increment a little for each ACK Increment (MSS * MSS)/CongestionWindow CongestionWindow Increment Fall 2006 CS 561 11

AIMD (cont) KB Trace: sawtooth behavior 70 60 50 40 30 20 10 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 Time (seconds) Fall 2006 CS 561 12

Slow Start Source Destination Objective: determine the available capacity in the first place Idea: – begin with CongestionWindow 1 packet – double CongestionWindow each RTT (increment by 1 packet for each ACK) Fall 2006 CS 561 13

Slow Start (cont) Exponential growth, but slower than all at once Used – when first starting connection – when connection goes dead waiting for timeout KB Trace 70 60 50 40 30 20 10 Problem: lose up to half a CongestionWindow’s worth of data 1.0 Fall 2006 2.0 3.0 4.0 5.0 CS 561 6.0 7.0 8.0 9.0 14

Fast Retransmit and Fast Recovery Problem: coarse-grain TCP timeouts lead to idle periods Fast retransmit: use duplicate ACKs to trigger retransmission Sender Receiver Packet 1 Packet 2 Packet 3 ACK 1 Packet 4 ACK 2 Packet 5 ACK 2 Packet 6 ACK 2 ACK 2 Retransmit packet 3 ACK 6 Fall 2006 CS 561 15

KB Results 70 60 50 40 30 20 10 1.0 2.0 3.0 4.0 5.0 6.0 7.0 Fast recovery – skip the slow start phase – go directly to half the last successful CongestionWindow (ssthresh) Fall 2006 CS 561 16

Congestion Avoidance TCP’s strategy – control congestion once it happens – repeatedly increase load in an effort to find the point at which congestion occurs, and then back off Alternative strategy – predict when congestion is about to happen – reduce rate before packets start being discarded – call this congestion avoidance, instead of congestion control Two possibilities – router-centric: DECbit and RED Gateways – host-centric: TCP Vegas Fall 2006 CS 561 17

DECbit Add binary congestion bit to each packet header Router – monitors average queue length over last busy idle cycle Queue length Current time – – Previous Current cycle cycle 1 set congestion bit if average queue length Averaging attempts to balance throughout against delay interval Fall 2006 CS 561 Time 18

DECbit (cont) Destination echoes bit back to source Source records how many packets resulted in set bit If less than 50% of last window’s worth had bit set – increase CongestionWindow by 1 packet If 50% or more of last window’s worth had bit set – decrease CongestionWindow by 0.875 times Fall 2006 CS 561 19

Random Early Detection (RED) Notification is implicit – just drop the packet (TCP will timeout) – could make explicit by marking the packet Early random drop – rather than wait for queue to become full, drop each arriving packet with some drop probability whenever the queue length exceeds some drop level Fall 2006 CS 561 20

RED Details Compute average queue length AvgLen (1 - Weight) * AvgLen Weight * SampleLen 0 Weight 1 (usually 0.002) SampleLen is queue length each time a packet arrives MaxThreshold MinThreshold AvgLen Fall 2006 CS 561 21

RED Details (cont) Two queue length thresholds if AvgLen MinThreshold then enqueue the packet if MinThreshold AvgLen MaxThreshold then calculate probability P drop arriving packet with probability P if MaxThreshold AvgLen then drop arriving packet Fall 2006 CS 561 22

RED Details (cont) Computing probability P TempP MaxP * (AvgLen - MinThreshold)/ (MaxThreshold - MinThreshold) P TempP/(1 - count * TempP) Drop Probability Curve P(drop) 1.0 MaxP AvgLen MinThresh Fall 2006 MaxThresh CS 561 23

Tuning RED Probability of dropping a particular flow’s packet(s) is roughly proportional to the share of the bandwidth that flow is currently getting MaxP is typically set to 0.02, meaning that when the average queue size is halfway between the two thresholds, the gateway drops roughly one out of 50 packets. If traffic id bursty, then MinThreshold should be sufficiently large to allow link utilization to be maintained at an acceptably high level Difference between two thresholds should be larger than the typical increase in the calculated average queue length in one RTT; setting MaxThreshold to twice MinThreshold is reasonable for traffic on today’s Internet Penalty Box for Offenders Fall 2006 CS 561 24

TCP Vegas – RTT grows – sending rate flattens KB Idea: source watches for some sign that router’s queue is building up and congestion will happen too; e.g., 70 60 50 40 30 20 10 0.5 1.0 1.5 2.0 2.5 3.0 3.5 4.0 4.5 Time (seconds) 5.0 5.5 6.0 6.5 7.0 7.5 8.0 8.5 0.5 1.0 1.5 2.0 2.5 3.0 3.5 4.0 4.5 Time (seconds) 5.0 5.5 6.0 6.5 7.0 7.5 8.0 8.5 0.5 1.0 1.5 2.0 2.5 3.0 3.5 4.0 4.5 Time (seconds) 5.0 5.5 6.0 6.5 7.0 7.5 8.0 8.5 Queue size in router Sending KBps 1100 900 700 500 300 100 Fall 2006 10 5 CS 561 25

Algorithm Let BaseRTT be the minimum of all measured RTTs (commonly the RTT of the first packet) If not overflowing the connection, then ExpectRate CongestionWindow/BaseRTT Source calculates sending rate (ActualRate) once per RTT Source compares ActualRate with ExpectRate Diff ExpectedRate - ActualRate if Diff increase CongestionWindow linearly else if Diff decrease CongestionWindow linearly else leave CongestionWindow unchanged Fall 2006 CS 561 26

Algorithm (cont) 1 packet 3 packets KB Parameters 70 60 50 40 30 20 10 0.5 1.0 1.5 2.0 2.5 3.0 3.5 4.0 4.5 5.0 5.5 6.0 6.5 7.0 7.5 8.0 5.0 5.5 6.0 6.5 7.0 7.5 8.0 CAM KBps Time (seconds) 240 200 160 120 80 40 0.5 1.0 1.5 2.0 Even faster retransmit 2.5 3.0 3.5 4.0 4.5 Time (seconds) – keep fine-grained timestamps for each packet – check for timeout on first duplicate ACK Fall 2006 CS 561 27

Realtime Applications Require “deliver on time” assurances – must come from inside the network Microphone Sampler, A D converter Buffer, D A Speaker Example application (audio) – – – – sample voice once every 125us each sample has a playback time packets experience variable delay in network add constant factor to playback time: playback point Fall 2006 CS 561 28

Playback Buffer Sequence number Packet arrival Packet generation Playback Network delay Buffer Time Fall 2006 CS 561 29

Example Distribution of Delays 90% 97% 98% Packets (%) 3 99% 2 1 50 100 150 200 Delay (milliseconds) Fall 2006 CS 561 30

Integrated Services Service Classes – guaranteed – controlled-load Mechanisms – – – – Fall 2006 signalling protocol admission control policing packet scheduling CS 561 31

Flowspec Rspec: describes service requested from network – controlled-load: none – guaranteed: delay target Tspec: describes flow’s traffic characteristics – – – – – – – – average bandwidth burstiness: token bucket filter token rate r bucket depth B must have a token to send a byte must have n tokens to send n bytes start with no tokens accumulate tokens at rate of r per second can accumulate no more than B tokens Fall 2006 CS 561 32

Differentiated Services Problem with IntServ: scalability Idea: segregate packets into a small number of classes – e.g., premium vs best-effort Packets marked according to class at edge of network Core routers implement some per-hop-behavior (PHB) Example: Expedited Forwarding (EF) – rate-limit EF packets at the edges – PHB implemented with class-based priority queues or WFQ Fall 2006 CS 561 33

DiffServ (cont) Assured Forwarding (AF) – customers sign service agreements with ISPs – edge routers mark packets as being “in” or “out” of profile – core routers run RIO: RED with in/out Fall 2006 P(drop) 1.0 MaxP AvgLen Min out CS 561 Min in Max out Maxin 34

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