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Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford...

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Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1
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Page 1: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Measuring Large Traffic Aggregates on Commodity

Switches

Lavanya Jose, Minlan Yu, Jennifer RexfordPrinceton University, NJ

1

Page 2: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Motivation

•Large traffic aggregates?

- manage traffic efficiently

- understand traffic structure

- detect unusual activity

2

Page 3: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Aggregate at fixed prefix-length?

• Top 10 /24 prefixes (by how much traffic they send)

- could miss individual heavy users

• Top 10 IP addresses …

- could miss heavy subnets where each individual user is small

3

Page 4: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

19

12

11 1

7

5 2

21

12 9

9 3 5 4

00**

000*

0000 0001 0010 0011 0100 0101 0110 0111

01** 010*

011*

01**

400***

0

1***

40****• All the IP prefixes

• >= a fraction T of the link capacity

Aggregate at all prefix-lengths? (Heavy Hitters)

HH: sends more than T= 10% of link

cap. 100

4

Page 5: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Hierarchical Heavy Hitters• All the IP prefixes

• >= a fraction T of the link capacity

• after excluding any HHH descendants.

19

12

11 1

7

5 2

21

12 9

9 3 5 4

00**

000*

0000 0001 0010 0011 0100 0101 0110 0111

01** 010*

011*

01**

400***

0

1***

40****

HH: sends more than T= 10% of link

cap. 100HHH:

5

Page 6: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Related Work

•Offline analysis on raw packet trace [AutoFocus]

- accurate but slow and expensive

•Streaming algorithms on Custom Hardware [Cormode’08, Bandi’07, Zhang’04, Sketch-Based]

- accurate, fast but not commodityOur Work:

Commodity, fast and relatively accurate 6

Page 7: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

• Why commodity switches?

- cheap, easy to deploy

- let “network elements monitor themselves”

• Commodity OpenFlow switches

- available from multiple vendors (HP, NEC, and Quanta)

- deployed in campuses, backbone networks

- wildcard rules with counters to measure trafficPriority Prefix Rule Coun

t

1 0010 0*** ... 15

2 001* **** ... 5

HHH on Commodity- Using OpenFlow

7

Page 8: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

TCAM

Controller Software

FetchCounts

InstallRules

Constraints- <= N Prefix Rules

SRC I

P

0010 0100 increment

count

Priority Prefix Rule

Count

1 0010 0*** 15

2 001* **** 5

OpenFlow Measurement Framework

8

Switch

- Measuring Interval M- No pkts to Controller

Page 9: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Monitoring HHHes

19

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11 1

7

5 2

21

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9 3 5 4

00**

000*

0000 0001 0010 0011 0100 0101 0110 0111

01** 010*

011*

01**

400***

0

1***

40****Priority Prefix

Rule Count1 0000 112 010* 123 0*** 17

HHH: after excluding any descendant prefix rules

TCAM: priority matching

9

Page 10: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Detecting New HHHes

• Monitor children of HHHes

• Use at most 2/T rules

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7

5 2

21

12 9

9 3 5 4

00**

000*

0000 0001 0010 0011 0100 0101 0110 0111

01** 010*

011*

01**

400***

0

1***

40****

910 3 210

Page 11: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

• Iteratively adjust wildcard rules:- Expand

• If count > T, install rule for child instead.

- Collapse• If count < T, remove rule.

0***

****

00**

000*

001*

01**

010*

011*

1***

10** 11**

100*

101*

110*

111*

Priority

Prefix Rule

Count

1 0*** 80

2 **** 0

Priority

Prefix Rule

Count

1 001* 72

2 000* 5

3 **** 3

Priority

Prefix Rule

Count

1 00** 77

2 01** 3

3 **** 0

Identifying New HHHes

11

Page 12: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Using Leftover Rules

• Why left over rules?- May not be 1/T HHHes.- May still be discovering new HHHes

• How to use leftover rules?- To monitor HHHes close to threshold- Data shows 2-3 new HHHes/ interval (a few secs)

19

1

7

5 2

21

12 8

9 3 5 3

00**

000*

0000 0001 0010 0011 0100 0101 0110 0111

01** 010*

011*

01**

400***

0

1***

40****

11

12

11 9

12 10

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Page 13: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

• Real packet trace (400K pkts/ sec) from CAIDA- Measured HHHes for T=5% and T=10%- Measuring interval M from 1-60s

Evaluation- Method

13

Page 14: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Evaluation- Results

• 20 rules to identify 88-94% of the 10%- HHHes

• Accurate

- Gets ~9 out of 10 HHHes

- Uses left over TCAM space to quickly find HHHes

- Large traffic aggregates usually stable

• Fast

- Takes a few intervals for 1-2 new HHHes

- Meanwhile aggregates at coarse levels

12

11 1

000*0000

0001

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Page 15: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Stepping back… not just for HHHes

• Framework

- Adjusting <= N wildcard rules

- Every measuring interval M

- Only match and increment per packet

• Can solve problems that require

- Understanding a baseline of normal traffic

- Quickly pinpointing large traffic aggregates

15

Page 16: Measuring Large Traffic Aggregates on Commodity Switches Lavanya Jose, Minlan Yu, Jennifer Rexford Princeton University, NJ 1.

Conclusion• Solving HHH problem with OpenFlow

- Relatively accurate, Fast, Low overhead

- Algorithm with expanding /collapsing

• Future work

- multidimensional HHH

- Generic framework for measurement

• Explore algorithms for DoS, large traffic changes etc.

• Understand overhead

• Combine results from different switches 16


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