An Analysis of Chaining Protocols for Video-on-Demand - PowerPoint PPT Presentation

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An Analysis of Chaining Protocols for Video-on-Demand

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An Analysis of Chaining Protocols for Video-on-Demand J.-F. P ris University of Houston Thomas Schwarz, S. J. Universidad Cat lica del Uruguay – PowerPoint PPT presentation

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Title: An Analysis of Chaining Protocols for Video-on-Demand


1
An Analysis of Chaining Protocols for
Video-on-Demand
  • J.-F. PârisUniversity of Houston
  • Thomas Schwarz, S. J.Universidad Católica del
    Uruguay

2
Introduction
  • Video-on-demand lets
  • Different customers watch
  • Different videos at
  • Different times
  • Very high bandwidth requirements

3
Solutions (I)
  • Distributing server workload among several sites
  • Content-delivery networks
  • Local caches,
  • Letting the server broadcast same video data to
    all customers watching the same video
  • Not possible on today's Internet

4
Solutions (II)
  • Let customers participate in the video
    distribution
  • P2P solution
  • Available distribution bandwidth grows linearly
    with the demand
  • Cheap and easy to deploy
  • Requires everyone to cooperate
  • Must penalize selfish customers

5
Chaining
  • One of the oldest VOD solutions
  • S. Sheu, K. A. Hua, and W. Tavanapong. Chaining
    A Generalized Batching Technique for
    Video-on-Demand Systems. Proc. ICMS Conference,
    June 1997.
  • Involves clients in video distribution process

6
Assumptions
  • Customers have enough upstream bandwidth to
    forward the video to the next client
  • Customer buffer sizes do not allow them to store
    entire videos
  • Can only store last ß minutes
  • A reasonable assumption in 1997

7
Basic chaining
  • Customer requests form a chain
  • First customer in the chain receives its data
    from the server
  • Subsequent customers receive their data from
    their immediate predecessor
  • Chain is broken each time two consecutive
    requests are more than ß minutes apart

8
An example
Stream from server
Customer A
Stream from customer A
Customer B
Customer C
Stream from server
9
Expanded chaining
  • Assumes that
  • Customers have enough buffer space to cache the
    whole contents of the video
  • Helps with rewind command
  • Customers will disconnect once they have finished
    playing the video
  • A realistic assumption

10
How it works
From server
11
Server bandwidth requirements (2-hour video)
12
Accelerated chaining
  • Has clients forward their video data to the next
    client in the chain at a slightly higher rate
    than the video consumption
  • Acceleration factor will vary between 1.01 and 1.1

13
How it works
From server
Customer A
From server
Customer B
From A
From server
Dt
From B
Customer C
Dt
SERVER
To A
ToB
To C
14
Server bandwidth requirements (2-hour video)
15
Motivation for further work
  • All these results were obtained through discrete
    simulation
  • Mere numerical values
  • Could we not use analytical methods?
  • Would get algebraic solutions
  • Could derive maxima/minima

16
Our assumptions
  • D is video duration
  • ß is buffer size
  • ? is customer arrival rate
  • f is video acceleration rate
  • Time between arrivals is governed by the
    exponential distribution with probability density
    function
  • p(t) ? e-?t

17
Basic chaining (I)
  • Two cases to consider
  • Interarrival time is less than ß
  • Previous customer forwards the video
  • No server workload
  • Interarrival time is more than ß
  • Server transmits whole video

18
Basic chaining (II)
  • Average server workload per video is
  • Average server bandwidth is

19
Expanded chaining (I)
  • Two cases to consider
  • Interarrival time ?t is less than D
  • Previous customer forwards part of the video (D
    ?t)
  • Server transmits remaining part (?t)
  • Interarrival time ?t is more than D
  • Server transmits whole video

20
Expanded chaining (II)
Customer A
Customer A
First case Customer B
From A
Dt
Second caseCustomer C
From server
21
Expanded chaining (III)
  • Average server workload per video is
  • Average server bandwidth is

22
Accelerated chaining (I)
  • Two cases to consider
  • Interarrival time ?t is less than D
  • Previous customer forwards part of the video
  • min(D, f (D ?t))
  • Server transmits remaining part
  • Interarrival time ?t is more than D
  • Server transmits whole video

23
Accelerated chaining (II)
  • Result is a fairly complicated expression
  • with ? 1/f

24
Comparing analytical results with simulation
results (I)
25
Comparing analytical results with simulation
results (II)
26
Conclusion
  • Very good agreement between analytical and
    simulation results
  • Two techniques validate each other
  • Analytical results provide a better investigation
    tool than simulation results
  • Can compute bandwidth maxima,

27
Future work
  • Add an incentive mechanism
  • To penalize freeloaders
  • Investigate how mechanism interacts with protocol
  • Implement fast forward/jump
  • Develop a test bed implementation

28
Handling early terminationOriginal schedule
29
Handling early terminationAfter customer B
leaves
From server
Customer A
Already played
Customer B
From server
Dt


Customer C
Dt
SERVER
To A
To C
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