Title: Optimizing Cost and Performance for Multihoming
1Optimizing Cost and Performance for Multihoming
Lili QiuMicrosoft Research liliq_at_microsoft.com
2Multihoming Smart Routing
- Multihoming
- A popular way of connecting to Internet
- Smart routing
- Intelligently distribute traffic among multiple
external links
3Potential Benefits
- Improve performance
- Potential improvement 25 Akella03
- Similar to overlay routing Akella04
- Improve reliability
- Two orders of magnitude improvement in fault
tolerance of end-to-end paths Akella04 - Reduce cost
Q How to realize the potential benefits?
4Our Goals
- Goal
- Design effective smart routing algorithms to
realize the potential benefits of multihoming - Questions
- How to assign traffic to multiple ISPs to
optimize cost? - How to assign traffic to multiple ISPs to
optimize both cost and performance? - What are the global effects of smart routing?
5Network Model
- Network performance metric
- Latency (also an indicator for reliability)
- Extend to alternative metrics
- log (1/(1-lossRate)), or latencywlog(1/(1-lossRa
te)) - ISP charging models
- Cost C0 C(x)
- C0 a fixed subscription cost
- C a piece-wise linear non-decreasing function
mapping x to cost - x charging volume
- Total volume based charging
- Percentile-based charging (95-th percentile)
6Percentile Based Charging
Sorted volume
Interval
N
95N
Charging volume traffic in the (95N)-th sorted
interval
7Why cost optimization?
- A simple example
- A user subscribes to 4 ISPs, whose latency is
uniformly distributed - In every interval, the user generates one unit of
traffic - To optimize performance
- ISP 1 1, 0, 0, 0,
- ISP 2 0, 1, 0, 0,
- ISP 3 0, 0, 1, 0,
- ISP 4 0, 0, 0, 1,
- 95th-percentile 1 for all 4 ISPs
- 95th-percentile 1 using one ISP
- Cost(4 ISPs) 4 cost(1 ISP)
Optimizing performance alone could result in high
cost!
8Cost Optimization Problem Specification (2 ISPs)
Sorted volume
Volume
P1
Sorted volume
Time
P2
Goal minimize total cost C1(P1)C2(P2)
9Issues Insights
- Challenge traditional optimization techniques do
not work with percentiles - Key determine each ISPs charging volume
- Results
- Let V0 denote the sum of all ISPs charging
volume - Theorem 1 Minimize cost ?? Minimize V0
- Theorem 2 V0 1- ?k1..N(1-qk) quantile of
original traffic, where qk is ISP ks charging
percentile
10Cost Optimization Problem Specification (2 ISPs)
Sorted volume
Volume
P1
Sorted volume
Time
P2
P1 P2 ? 90-th percentile of original traffic
11Intuition for 2-ISP Case
- ISP 1 has ? 5 intervals whose traffic exceeds P1
- ISP 2 has ? 5 intervals whose traffic exceeds
P2 - The original traffic (ISP 1 ISP 2 traffic) has
? 10 intervals whose traffic exceeds P1P2 - P1P2 ? 90-th percentile of original traffic
12Sketch of Our Algorithm
- Determine charging volume for each ISP
- Compute V0
- Find pk that minimize ?k ck(pk) subject to
?kpkV0 using dynamic programming - Assign traffic given charging volumes
- Non-peak assignment ISP k is assigned ? pk
- Peak assignment
- First let every ISP k serve its charging volume
pk - Dump all the remaining traffic to an ISP k that
has bursted for fewer than (1-qk)N intervals
13Additional Issues
- Deal with capacity constraints
- Perform integral assignment
- Similar to bin packing (greedy heuristic)
- Make it online
- Traffic prediction
- Exponential weighted moving average (EWMA)
- Accommodate prediction errors
- Update V0 conservatively
- Add margins when computing charging volumes
14Optimizing Cost Performance
- One possible approach design a metric that is a
weighted sum of cost and performance - How to determine relative weights?
- Our approach optimize performance under cost
constraints - Use cost optimization to derive upper bounds of
traffic that can be assigned to each ISP - Assign traffic to optimize performance subject to
the upper bounds
15Evaluation Methodology
- Traffic traces (Oct. 2003 Jan. 2004)
- Abilene traces (NetFlow data on Internet2)
- RedHat, NASA/GSFC, NOAA Silver Springs Lab, NSF,
National Library of Medicine - Univ. of Wisconsin, Univ. of Oregon, UCLA, MIT
- MSNBC Web access logs
- Realistic cost functions Feb. 2002 Blind RFP
- Delay traces
- NLANR traces 3 months RTT measurements between
pairs of 140 universities - Map delay traces to hosts in traffic traces
16Conclusions
- First paper on jointly optimizing cost and
performance for multihoming - Propose novel smart routing algorithms that
achieve both low cost and good performance - Under traffic equilibria, smart routing improves
performance without hurting other traffic