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Opportunistic Traffic Scheduling Over Multiple Network Path

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Title: RNG Overview Author: Coskun Cetinkaya Last modified by: knightly Created Date: 9/10/1998 1:07:08 AM Document presentation format: On-screen Show – PowerPoint PPT presentation

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Title: Opportunistic Traffic Scheduling Over Multiple Network Path


1
Opportunistic Traffic Scheduling Over Multiple
Network Path
  • Coskun Cetinkaya and Edward Knightly

2
Multi-Path Routing
  • Establishes and simultaneously uses multiple
    parallel paths
  • Key advantage is efficiency
  • Routing protocol assigns weights to paths
  • OSPF, QoS routing, traffic engineering

3
Existing Splitting Techniques
  • Per packet round robin forwarding
  • Simplest and most frequently used
  • Degrades TCP throughput due to re-ordering
  • Per flow hashing
  • Fine splitting granularity and no TCP re-ordering
  • Per-TCP-flow lookup limits implementation
    feasibility
  • Destination prefix based forwarding
  • Coarse-granularity splitting and no TCP
    re-ordering
  • Unpredictable load splitting that may not match
    desired weights

All ignore path quality in splitting decision
4
Our Thesis
  • Observe
  • Routing weights change slowly (from traffic
    engineering)
  • Quality of paths changes continuously
  • Opportunistic Multipath Scheduling
  • Exploits short-term capacity variations on
    different paths via scheduling packets to
    opportunistically favor low-delay paths
  • Obey weights at long time scales to ensure
    global objectives
  • Hypothesis
  • Improve throughput/delay, no per-flow lookup,
    satisfy weights
  • TCP throughput improvements due to RTT reduction
    will overwhelm re-ordering effects

5
System Model
  • Design scheduling/traffic splitting policy
  • Objective minimize mean delay of multipath
    traffic
  • Decrease RTT and loss rate ? increase TCP
    throughput
  • Subject to mean traffic on path i Fi (path
    weight)

6
Mathematical Formulation
  • Xk size of packet k
  • I(sk,i) 1 of packet k is scheduled on path i, 0
    otherwise
  • For equal capacity paths minimizing delay is
    equivalent to minimizing the expected queue
    length

7
Optimal Scheduler
  • Assumptions
  • Cross-traffic and multi-path traffic are
    stationary processes ? queue length is stationary
  • Multi-path traffic does not change path
    conditions
  • Using a wireless scheduling analogy LCS02, we
    can show that the optimal scheduler is threshold
    based
  • Contrast to join the shortest queue policy
    which ignores weights

8
Performance of the Optimal Policy
  • Evaluate the performance under self-similar cross
    traffic
  • Queue size distribution is Weibull
  • Expected queue size (and delay)
  • Round Robin Optimal Scheduler

9
On-Line Computation of v
  • In practice, we do not know the queue length or
    its distribution
  • Threshold update
  • stochastic approximation technique KC78,LCS02
  • Scheduling decision
  • Qik estimated via probes

10
Evaluation Scenario
  • Two paths with capacity 10 Mb/sec
  • Cross-traffic self-similar with mean rate
    m?0.3, 0.9, variance coefficient a?0.5,4, and
    Hurst Parameter H?0.5,0.9
  • Multi-path traffic is constant-rate or TCP
  • Gain defined as

11
Homogeneous Paths Model
  • Model gain depends only on H and paths and is
    ? 50
  • Higher N ? more path diversity ? higher gain
  • Large H ? long-time scale path correlation ?
    higher gain

12
Homogeneous Paths Simulation
  • Simulated gains higher than predicted by model
  • Model serves as lower bound
  • Queue distribution is asymptotic lower bound,
    tighter for larger queues
  • Delay increases with increasing mean (m) and
    variance coefficient (a)
  • Gain (relative) is highest under higher H, lower
    m, lower a

13
Heterogeneous Paths Impact of Variance
Coefficient Ratio
  • Gain increases with path diversity (increasing
    ratio of variance coefficient)
  • OMS exploits different path properties subject to
    weights

H0.6 m0.7
14
Effect of Information Delay
  • So far, assumed path information is immediately
    available at scheduler/splitter
  • RTT-scale delay to obtain buffer state (via
    probes or ECN)
  • Gain decreases as information delay increases
  • High gain for measured values of traffic (0.7 lt H
    lt 0.85) and delay (1 lt RTT lt 100 msec)

m0.9 a0.5
15
Limits of OMS
  • When can OMS do worse than RR? Three combined
    factors
  • iid traffic having no long-time-scale bursts
  • High information delay
  • High ratio of multi-path traffic to cross-traffic
    (scheduled traffic itself determines conditions)

16
TCP Multi-Path Traffic
  • With RR, multipath traffic achieves only 20 to
    38 of fair share
  • High cost of mis-ordering and delay
  • TCP/OMS significantly outperforms TCP/RR
  • TCP/OMS requires an aggregate level of only 10
    cross-traffic flows to achieve maximum
    performance
  • OMS impact overwhelms effect of TCP variants

10 msec probing interval 32 kb/s probing
overhead (0.32 of capacity)
17
Probing Interval and TCP Traffic
  • Base case probing interval 10 msec interval and
    32 kb/sec
  • Faster 1 msec probing yields higher-than-fair
    share for multi-path flows
  • Slower probing (e.g., 3.2 kb/sec) reduces
    performance

18
Summary
  • Multipath routing promises increased efficiency
    and performance
  • Todays traffic splitting ignores path dynamics
    and
  • inhibits TCP throughput via reordering,
  • requires expensive per-TCP flow lookups, or
  • cannot achieve weights via prefix splitting
  • Opportunistic Multipath Scheduling
  • Improves throughput/delay via a measurement based
    opportunistic policy that satisfies routing
    weights
  • Gains overwhelm occasional misordering

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