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Streaming Video Traffic: Characterization and Network Impact

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Most ASs generate more MMS than RealMedia Traffic. ASs contributing 80% requests or 80% traffic ... Most ASs generate more High Bandwidth traffic. Live: ... – PowerPoint PPT presentation

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Title: Streaming Video Traffic: Characterization and Network Impact


1
Streaming Video Traffic Characterization and
Network Impact
  • Kobus van der Merwe
  • Shubho Sen
  • Chuck Kalmanek
  • kobus,sen,crk_at_research.att.com

2
Streaming Media Study Why ?
  • Lot of streaming on the Internet
  • Quality is getting pretty good
  • Streaming is not well understood
  • User behavior
  • Factors that impact quality
  • Network impact distribution
  • Reasons
  • Proprietary protocols
  • WM, Real
  • Very commercial
  • logs files are sensitive and hard to get

3
The Data
On Demand prerecorded clips from current affairs
information site Live commerce oriented
continuous live stream
  • On Demand
  • Dates 12/2001-03/2002
  • Requests 3.5 million
  • Unique IPs 0.5 million
  • Unique ASs 6600
  • WM and Real
  • BW56 Kbps and 300 Kbps
  • Live
  • Dates 02/2002 03/2002
  • Requests 1 million
  • Unique IPs 0.28 million
  • Unique ASs 4000
  • WM only
  • BW 100 Kbps encoded

Traffic volume several terabytes
Routing data daily BGP table dumps from Tier-1
ISP
4
On Demand Traffic Composition
  • By Bandwidth (56 Kbps/300 Kbps)
  • High BW dominates 65 requests, 95 bytes
  • Low BW 35 of sessions account for just 5 of
    data

By protocol (WM/Real) Windows Media dominates
77 requests, 76 bytes
  • By transport
  • HTTP 37 requests, 27 bytes
  • TCP 29 requests, 45 bytes
  • UDP 34 requests, 28 bytes
  • Proprietary Streaming dominates 63 requests,
    73 bytes
  • Total TCP dominates 66 requests, 72 bytes
  • - probably because of firewalls

5
On Demand per-AS breakdown by protocol
ASs contributing 80 requests or 80 traffic
Traffic volume
Requests
Most ASs generate more MMS than RealMedia
Traffic
6
On Demand per-AS breakdown by stream bandwidth
Requests
Traffic volume
Most ASs generate more High Bandwidth traffic
7
Live Traffic Composition
  • By transport
  • HTTP 55 requests, 47 bytes
  • TCP 17 requests, 38 bytes
  • UDP 28 requests, 17 bytes
  • Proprietary Streaming (TCP UDP) 45
    requests, 55 bytes
  • Total TCP dominates 72 requests, 85 bytes
  • - probably because of firewalls
  • Proprietary Streaming, HTTP have similar shares

8
On Demand Network Traffic Distribution
Requests
Volume
Significant variability in traffic
contributions 10 ASes account for 82 requests,
85 data
9
Content Distribution Impact
  • Goal Evaluate different content distribution
    approaches
  • Centralized IP peering
  • Centralized content peering
  • Centralized replica placement
  • Assume traffic distributed from (originating
    from) Tier-1 ISP
  • Look at coverage achieved by different approaches
  • Traffic distribution using AS hop-count from
    Tier-1 ISP as a metric
  • Assumption for streams originating in Tier-1 ISP
    small AS-hop count will increase probability of
    acceptable quality

10
Content Distribution Impact
  • Selected ASes consistent contributors out of
    6600
  • Caveats
  • Hop count not good metric of anything
  • Limited data set
  • Data set might be self selecting

11
On Demand Traffic Time Series
Significant variability within/across days Peak
31 Mean
12
On Demand Rapid Increase in Load
Load increases 57 times in 10 minutes !
13
Live Traffic Time Series
Significant variability within/across days Peak
9 Mean
14
Object Popularities
Volume 320 clips
Sessions 320 clips
Few heavy-hitters account for bulk of traffic Dec
13 top 5 clips account for 85 of traffic
15
On Demand Session Characteristics
High Bw mms
Low Bw mms
Most sessions download a fraction of the
object. A larger proportion of high bw clip is
downloaded
16
Summary
  • Windows Media dominates
  • High encoding rates dominate
  • TCP transport dominate
  • Highly skewed request volume distributions
  • Tier-1 ISPs cover lt 2 AS hops
  • Significant coverage with small selective
    arrangements
  • High variability in daily traffic patterns
  • Ramp up in tens of minutes
  • Highly skewed object popularity
  • High bit-rate clips watched longer
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