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INFORMATIONAL
Internet Engineering Task Force (IETF)                         A. MortonRequest for Comments: 6703                               G. RamachandranCategory: Informational                                      G. MaguluriISSN: 2070-1721                                                AT&T Labs                                                             August 2012Reporting IP Network Performance Metrics: Different Points of ViewAbstract   Consumers of IP network performance metrics have many different uses   in mind.  This memo provides "long-term" reporting considerations   (e.g., hours, days, weeks, or months, as opposed to 10 seconds),   based on analysis of the points of view of two key audiences.  It   describes how these audience categories affect the selection of   metric parameters and options when seeking information that serves   their needs.Status of This Memo   This document is not an Internet Standards Track specification; it is   published for informational purposes.   This document is a product of the Internet Engineering Task Force   (IETF).  It represents the consensus of the IETF community.  It has   received public review and has been approved for publication by the   Internet Engineering Steering Group (IESG).  Not all documents   approved by the IESG are a candidate for any level of Internet   Standard; seeSection 2 of RFC 5741.   Information about the current status of this document, any errata,   and how to provide feedback on it may be obtained athttp://www.rfc-editor.org/info/rfc6703.Morton, et al.                Informational                     [Page 1]

RFC 6703                    Reporting Metrics                August 2012Copyright Notice   Copyright (c) 2012 IETF Trust and the persons identified as the   document authors.  All rights reserved.   This document is subject toBCP 78 and the IETF Trust's Legal   Provisions Relating to IETF Documents   (http://trustee.ietf.org/license-info) in effect on the date of   publication of this document.  Please review these documents   carefully, as they describe your rights and restrictions with respect   to this document.  Code Components extracted from this document must   include Simplified BSD License text as described in Section 4.e of   the Trust Legal Provisions and are provided without warranty as   described in the Simplified BSD License.   This document may contain material from IETF Documents or IETF   Contributions published or made publicly available before November   10, 2008.  The person(s) controlling the copyright in some of this   material may not have granted the IETF Trust the right to allow   modifications of such material outside the IETF Standards Process.   Without obtaining an adequate license from the person(s) controlling   the copyright in such materials, this document may not be modified   outside the IETF Standards Process, and derivative works of it may   not be created outside the IETF Standards Process, except to format   it for publication as an RFC or to translate it into languages other   than English.Morton, et al.                Informational                     [Page 2]

RFC 6703                    Reporting Metrics                August 2012Table of Contents1. Introduction ....................................................42. Purpose and Scope ...............................................43. Reporting Results ...............................................53.1. Overview of Metric Statistics ..............................53.2. Long-Term Reporting Considerations .........................64. Effect of POV on the Loss Metric ................................84.1. Loss Threshold .............................................84.1.1. Network Characterization ............................84.1.2. Application Performance ............................114.2. Errored Packet Designation ................................114.3. Causes of Lost Packets ....................................114.4. Summary for Loss ..........................................125. Effect of POV on the Delay Metric ..............................125.1. Treatment of Lost Packets .................................125.1.1. Application Performance ............................135.1.2. Network Characterization ...........................135.1.3. Delay Variation ....................................145.1.4. Reordering .........................................155.2. Preferred Statistics ......................................155.3. Summary for Delay .........................................166. Reporting Raw Capacity Metrics .................................166.1. Type-P Parameter ..........................................176.2. A priori Factors ..........................................176.3. IP-Layer Capacity .........................................176.4. IP-Layer Utilization ......................................186.5. IP-Layer Available Capacity ...............................186.6. Variability in Utilization and Available Capacity .........196.6.1. General Summary of Variability .....................197. Reporting Restricted Capacity Metrics ..........................207.1. Type-P Parameter and Type-C Parameter .....................217.2. A Priori Factors ..........................................217.3. Measurement Interval ......................................227.4. Bulk Transfer Capacity Reporting ..........................227.5. Variability in Bulk Transfer Capacity .....................238. Reporting on Test Streams and Sample Size ......................238.1. Test Stream Characteristics ...............................238.2. Sample Size ...............................................249. Security Considerations ........................................2510. Acknowledgements ..............................................2511. References ....................................................2511.1. Normative References .....................................2511.2. Informative References ...................................26Morton, et al.                Informational                     [Page 3]

RFC 6703                    Reporting Metrics                August 20121.  Introduction   When designing measurements of IP networks and presenting a result,   knowledge of the audience is a key consideration.  To present a   useful and relevant portrait of network conditions, one must answer   the following question:   "How will the results be used?"   There are two main audience categories for the report of results:   1.  Network Characterization - describes conditions in an IP network       for quality assurance, troubleshooting, modeling, Service Level       Agreements (SLAs), etc.  This point of view (POV) looks inward       toward the network where the report consumer intends their       actions.   2.  Application Performance Estimation - describes the network       conditions in a way that facilitates determining effects on user       applications, and ultimately the users themselves.  This POV       looks outward, toward the user(s), accepting the network as is.       This report consumer intends to estimate a network-dependent       aspect of performance or design some aspect of an application's       accommodation of the network.  (These are *not* application       metrics; they are defined at the IP layer.)   This memo considers how these different POVs affect both the   measurement design (parameters and options of the metrics) and   statistics reported when serving the report consumer's needs.   The IP Performance Metrics (IPPM) Framework [RFC2330] and other RFCs   describing IPPM provide a background for this memo.2.  Purpose and Scope   The purpose of this memo is to clearly delineate two POVs for using   measurements and describe their effects on the test design, including   the selection of metric parameters and reporting the results.   The scope of this memo primarily covers the test design and reporting   of the loss and delay metrics [RFC2680] [RFC2679].  It will also   discuss the delay variation [RFC3393] and reordering metrics   [RFC4737] where applicable.Morton, et al.                Informational                     [Page 4]

RFC 6703                    Reporting Metrics                August 2012   With capacity metrics growing in relevance to the industry, the memo   also covers POV and reporting considerations for metrics resulting   from the Bulk Transfer Capacity Framework [RFC3148] and Network   Capacity Definitions [RFC5136].  These memos effectively describe two   different categories of metrics:   o  Restricted [RFC3148]: includes restrictions of congestion control      and the notion of unique data bits delivered, and   o  Raw [RFC5136]: uses a definition of raw capacity without the      restrictions of data uniqueness or congestion awareness.   It might seem, at first glance, that each of these metrics has an   obvious audience (raw = network characterization, restricted =   application performance), but reality is more complex and consistent   with the overall topic of capacity measurement and reporting.  For   example, TCP is usually used in restricted capacity measurement   methods, while UDP appears in raw capacity measurement.  The raw and   restricted capacity metrics will be treated in separate sections,   although they share one common reporting issue: representing   variability in capacity metric results as part of a long-term report.   Sampling, or the design of the active packet stream that is the basis   for the measurements, is also discussed.3.  Reporting Results   This section gives an overview of recommendations, followed by   additional considerations for reporting results in the "long term",   based on the discussion and conclusions of the major sections that   follow.3.1.  Overview of Metric Statistics   This section gives an overview of reporting recommendations for all   the metrics considered in this memo.   The minimal report on measurements must include both loss and delay   metrics.   For packet loss, the loss ratio defined in [RFC2680] is a sufficient   starting point -- especially the existing guidance for setting the   loss threshold waiting time.  InSection 4.1.1, we have calculated a   waiting time -- 51 seconds -- that should be sufficient to   differentiate between packets that are truly lost or have long finite   delays under general measurement circumstances.  Knowledge ofMorton, et al.                Informational                     [Page 5]

RFC 6703                    Reporting Metrics                August 2012   specific conditions can help to reduce this threshold, and a waiting   time of approximately 50 seconds is considered to be manageable in   practice.   We note that a loss ratio calculated according to [Y.1540] would   exclude errored packets from the numerator.  In practice, the   difference between these two loss metrics is small, if any, depending   on whether the last link prior to the Destination contributes errored   packets.   For packet delay, we recommend providing both the mean delay and the   median delay with lost packets designated as undefined (as permitted   by [RFC2679]).  Both statistics are based on a conditional   distribution, and the condition is packet arrival prior to a waiting   time dT, where dT has been set to take maximum packet lifetimes into   account, as discussed above for loss.  Using a long dT helps to   ensure that delay distributions are not truncated.   For Packet Delay Variation (PDV), the minimum delay of the   conditional distribution should be used as the reference delay for   computing PDV according to [Y.1540] or [RFC5481] and [RFC3393].  A   useful value to report is a "pseudo" range of delay variation based   on calculating the difference between a high percentile of delay and   the minimum delay.  For example, the 99.9th percentile minus the   minimum will give a value that can be compared with objectives in   [Y.1541].   For both raw capacity and restricted capacity, reporting the   variability in a useful way is identified as the main challenge.  The   min, max, and range statistics are suggested along with a ratio of   max to min and moving averages.  In the end, a simple plot of the   singleton results over time may succeed where summary metrics fail or   may serve to confirm that the summaries are valid.3.2.  Long-Term Reporting Considerations   [IPPM-RPT] describes methods to conduct measurements and report the   results on a near-immediate time scale (10 seconds, which we consider   to be "short-term").   Measurement intervals and reporting intervals need not be the same   length.  Sometimes, the user is only concerned with the performance   levels achieved over a relatively long interval of time (e.g., days,   weeks, or months, as opposed to 10 seconds).  However, there can be   risks involved with running a measurement continuously over a long   period without recording intermediate results:Morton, et al.                Informational                     [Page 6]

RFC 6703                    Reporting Metrics                August 2012   o  Temporary power failure may cause loss of all results to date.   o  Measurement system timing synchronization signals may experience a      temporary outage, causing subsets of measurements to be in error      or invalid.   o  Maintenance on the measurement system or on its connectivity to      the network under test may be necessary.   For these and other reasons, such as   o  the constraint to collect measurements on intervals similar to      user session length,   o  the dual use of measurements in monitoring activities where      results are needed on a period of a few minutes, or   o  the ability to inspect results of a single measurement interval      for deeper analysis,   there is value in conducting measurements on intervals that are much   shorter than the reporting interval.   There are several approaches for aggregating a series of measurement   results over time in order to make a statement about the longer   reporting interval.  One approach requires the storage of all metric   singletons collected throughout the reporting interval, even though   the measurement interval stops and starts many times.   Another approach is described in [RFC5835] as "temporal aggregation".   This approach would estimate the results for the reporting interval   based on combining many individual short-term measurement interval   statistics to yield a long-term result.  The result would ideally   appear in the same form as though a continuous measurement had been   conducted.  A memo addressing the details of temporal aggregation is   yet to be prepared.   Yet another approach requires a numerical objective for the metric,   and the results of each measurement interval are compared with the   objective.  Every measurement interval where the results meet the   objective contribute to the fraction of time with performance as   specified.  When the reporting interval contains many measurement   intervals, it is possible to present the results as "metric A was   less than or equal to objective X during Y% of time".      NOTE that numerical thresholds of acceptability are not set in      IETF performance work and are therefore excluded from the scope of      this memo.Morton, et al.                Informational                     [Page 7]

RFC 6703                    Reporting Metrics                August 2012   In all measurements, it is important to avoid unintended   synchronization with network events.  This topic is treated in   [RFC2330] for Poisson-distributed inter-packet time streams and in   [RFC3432] for Periodic streams.  Both avoid synchronization by using   random start times.   There are network conditions where it is simply more useful to report   the connectivity status of the Source-Destination path, and to   distinguish time intervals where connectivity can be demonstrated   from other time intervals (where connectivity does not appear to   exist).  [RFC2678] specifies a number of one-way and two-way   connectivity metrics of increasing complexity.  In this memo, we   recommend that long-term reporting of loss, delay, and other metrics   be limited to time intervals where connectivity can be demonstrated,   and that other intervals be summarized as the percent of time where   connectivity does not appear to exist.  We note that this same   approach has been adopted in ITU-T Recommendation [Y.1540] where   performance parameters are only valid during periods of service   "availability" (evaluated according to a function based on packet   loss, and sustained periods of loss ratio greater than a threshold   are declared "unavailable").4.  Effect of POV on the Loss Metric   This section describes the ways in which the loss metric can be tuned   to reflect the preferences of the two audience categories, or   different POVs.  The waiting time before declaring that a packet is   lost -- the loss threshold -- is one area where there would appear to   be a difference, but the ability to post-process the results may   resolve it.4.1.  Loss ThresholdRFC 2680 [RFC2680] defines the concept of a waiting time for packets   to arrive, beyond which they are declared lost.  The text of the RFC   declines to recommend a value, instead saying that "good engineering,   including an understanding of packet lifetimes, will be needed in   practice".  Later, in the methodology, they give reasons for waiting   "a reasonable period of time" and leave the definition of   "reasonable" intentionally vague.  Below, we estimate a practical   bound on waiting time.4.1.1.  Network Characterization   Practical measurement experience has shown that unusual network   circumstances can cause long delays.  One such circumstance is when   routing loops form during IGP re-convergence following a failure or   drastic link cost change.  Packets will loop between two routersMorton, et al.                Informational                     [Page 8]

RFC 6703                    Reporting Metrics                August 2012   until new routes are installed or until the IPv4 Time-to-Live (TTL)   field (or the IPv6 Hop Limit) decrements to zero.  Very long delays   on the order of several seconds have been measured [Casner] [Cia03].   Therefore, network characterization activities prefer a long waiting   time in order to distinguish these events from other causes of loss   (such as packet discard at a full queue, or tail drop).  This way,   the metric design helps to distinguish more reliably between packets   that might yet arrive and those that are no longer traversing the   network.   It is possible to calculate a worst-case waiting time, assuming that   a routing loop is the cause.  We model the path between Source and   Destination as a series of delays in links (t) and queues (q), as   these are the dominant contributors to delay (in active measurement,   the Source and Destination hosts contribute minimal delay).  The   normal path delay, D, across n queues (where TTL is decremented at a   node with a queue) and n+1 links without encountering a loop, is        Path model with n=5          Source --- q1 --- q2 --- q3 --- q4 --- q5 --- Destination                 t0     t1     t2     t3     t4     t5                                   n                                  ---                                  \                        D = t  +   >  (t  +  q)                             0    /     i     i                                  ---                                 i = 1                        Figure 1: Normal Path DelayMorton, et al.                Informational                     [Page 9]

RFC 6703                    Reporting Metrics                August 2012   and the time spent in the loop with L queues is            Path model with n=5 and L=3            Time in one loop = (qx+tx + qy+ty + qz+tz)                                   qy -- qz                                    |  ?/exit?                                   qx--/\              Src --- q1 --- q2 ---/    q3 --- q4 --- q5 --- Dst                  t0     t1     t2         t3     t4     t5                       j + L-1                        ---                        \                          (TTL - n)                 R = C   >  (t  +  q)  where C   = ---------                        /     i     i         max      L                        ---                        i=j                Figure 2: Delay Due to Rotations in a Loop   where n is the total number of queues in the non-loop path (with n+1   links), j is the queue number where the loop begins, C is the number   of times a packet circles the loop, and TTL is the packet's initial   Time-to-Live value at the Source (or Hop Count in IPv6).   If we take the delays of all links and queues as 100 ms each, the   TTL=255, the number of queues n=5, and the queues in the loop L=4,   then using C_max:      D = 1.1 seconds and R ~= 50 seconds, and D + R ~= 51.1 seconds   We note that the link delays of 100 ms would span most continents,   and a constant queue length of 100 ms is also very generous.  When a   loop occurs, it is almost certain to be resolved in 10 seconds or   less.  The value calculated above is an upper limit for almost any   real-world circumstance.   A waiting time threshold parameter, dT, set consistent with this   calculation, would not truncate the delay distribution (possibly   causing a change in its mathematical properties), because the packets   that might arrive have been given sufficient time to traverse the   network.   It is worth noting that packets that are stored and deliberately   forwarded at a much later time constitute a replay attack on the   measurement system and are beyond the scope of normal performance   reporting.Morton, et al.                Informational                    [Page 10]

RFC 6703                    Reporting Metrics                August 20124.1.2.  Application Performance   Fortunately, application performance estimation activities are not   adversely affected by the long estimated limit on waiting time,   because most applications will use shorter time thresholds.  Although   the designer's tendency might be to set the loss threshold at a value   equivalent to a particular application's threshold, this specific   threshold can be applied when post-processing the measurements.  A   shorter waiting time can be enforced by locating packets with delays   longer than the application's threshold and re-designating such   packets as lost.  Thus, the measurement system can use a single loss   waiting time and support both application and network performance   POVs simultaneously.4.2.  Errored Packet DesignationRFC 2680 designates packets that arrive containing errors as lost   packets.  Many packets that are corrupted by bit errors are discarded   within the network and do not reach their intended destination.   This is consistent with applications that would check the payload   integrity at higher layers and discard the packet.  However, some   applications prefer to deal with errored payloads on their own, and   even a corrupted payload is better than no packet at all.   To address this possibility, and to make network characterization   more complete, distinguishing between packets that do not arrive   (lost) and errored packets that arrive (conditionally lost) is   recommended.4.3.  Causes of Lost Packets   Although many measurement systems use a waiting time to determine   whether or not a packet is lost, most of the waiting is in vain.  The   packets are no longer traversing the network and have not reached   their destination.   There are many causes of packet loss, including the following:   1.  Queue drop, or discard   2.  Corruption of the IP header, or other essential header       information   3.  TTL expiration (or use of a TTL value that is too small)Morton, et al.                Informational                    [Page 11]

RFC 6703                    Reporting Metrics                August 2012   4.  Link or router failure   5.  Layers below the Source-to-Destination IP layer can discard       packets that fail error checking, and link-layer checksums often       cover the entire packet   It is reasonable to consider a packet that has not arrived after a   large amount of time to be lost (due to one of the causes above)   because packets do not "live forever" in the network or have infinite   delay.4.4.  Summary for Loss   Given that measurement post-processing is possible (even encouraged   in the definitions of IPPM), measurements of loss can easily serve   both POVs:   o  Use a long waiting time to serve network characterization and      revise results for specific application delay thresholds as      needed.   o  Distinguish between errored packets and lost packets when possible      to aid network characterization, and combine the results for      application performance if appropriate.5.  Effect of POV on the Delay Metric   This section describes the ways in which the delay metric can be   tuned to reflect the preferences of the two consumer categories, or   different POVs.5.1.  Treatment of Lost Packets   The delay metric [RFC2679] specifies the treatment of packets that do   not successfully traverse the network: their delay is undefined.      >>The *Type-P-One-way-Delay* from Src to Dst at T is undefined      (informally, infinite)<< means that Src sent the first bit of a      Type-P packet to Dst at wire-time T and that Dst did not receive      that packet.   It is an accepted but informal practice to assign infinite delay to   lost packets.  We next look at how these two different treatments   align with the needs of measurement consumers who wish to   characterize networks or estimate application performance.  Also, we   look at the way that lost packets have been treated in other metrics:   delay variation and reordering.Morton, et al.                Informational                    [Page 12]

RFC 6703                    Reporting Metrics                August 20125.1.1.  Application Performance   Applications need to perform different functions, dependent on   whether or not each packet arrives within some finite tolerance.  In   other words, a receiver's packet processing takes only one of two   alternative directions (a "fork" in the road):   o  Packets that arrive within expected tolerance are handled by      removing headers, restoring smooth delivery timing (as in a      de-jitter buffer), restoring sending order, checking for errors in      payloads, and many other operations.   o  Packets that do not arrive when expected lead to attempted      recovery from the apparent loss, such as retransmission requests,      loss concealment, or forward error correction to replace the      missing packet.   So, it is important to maintain a distinction between packets that   actually arrive and those that do not.  Therefore, it is preferable   to leave the delay of lost packets undefined and to characterize the   delay distribution as a conditional distribution (conditioned on   arrival).5.1.2.  Network Characterization   In this discussion, we assume that both loss and delay metrics will   be reported for network characterization (at least).   Assume that packets that do not arrive are reported as lost, usually   as a fraction of all sent packets.  If these lost packets are   assigned an undefined delay, then the network's inability to deliver   them (in a timely way) is relegated only in the loss metric when we   report statistics on the delay distribution conditioned on the event   of packet arrival (within the loss waiting time threshold).  We can   say that the delay and loss metrics are orthogonal in that they   convey non-overlapping information about the network under test.   This is a valuable property whose absence is discussed below.   However, if we assign infinite delay to all lost packets, then   o  The delay metric results are influenced both by packets that      arrive and those that do not.   o  The delay singleton and the loss singleton do not appear to be      orthogonal (delay is finite when loss=0; delay is infinite when      loss=1).Morton, et al.                Informational                    [Page 13]

RFC 6703                    Reporting Metrics                August 2012   o  The network is penalized in both the loss and delay metrics,      effectively double-counting the lost packets.   As further evidence of overlap, consider the Cumulative Distribution   Function (CDF) of delay when the value "positive infinity" is   assigned to all lost packets.  Figure 3 shows a CDF where a small   fraction of packets are lost.                 1 | - - - - - - - - - - - - - - - - - -+                   |                                    |                   |          _..----''''''''''''''''''''                   |      ,-''                   |    ,'                   |   /                         Mass at                   |  /                          +infinity                   | /                           = fraction                   ||                            lost                   |/                 0 |_____________________________________                   0               Delay               +o0           Figure 3: Cumulative Distribution Function for Delay                           When Loss = +Infinity   We note that a delay CDF that is conditioned on packet arrival would   not exhibit this apparent overlap with loss.   Although infinity is a familiar mathematical concept, it is somewhat   disconcerting to see any time-related metric reported as infinity.   Questions are bound to arise and tend to detract from the goal of   informing the consumer with a performance report.5.1.3.  Delay Variation   [RFC3393] excludes lost packets from samples, effectively assigning   an undefined delay to packets that do not arrive in a reasonable   time.Section 4.1 of [RFC3393] describes this specification and its   rationale (ipdv = inter-packet delay variation in the quote below).      The treatment of lost packets as having "infinite" or "undefined"      delay complicates the derivation of statistics for ipdv.      Specifically, when packets in the measurement sequence are lost,      simple statistics such as sample mean cannot be computed.  One      possible approach to handling this problem is to reduce the event      space by conditioning.  That is, we consider conditional      statistics; namely we estimate the mean ipdv (or other derivative      statistic) conditioned on the event that selected packet pairsMorton, et al.                Informational                    [Page 14]

RFC 6703                    Reporting Metrics                August 2012      arrive at the Destination (within the given timeout).  While this      itself is not without problems (what happens, for example, when      every other packet is lost), it offers a way to make some (valid)      statements about ipdv, at the same time avoiding events with      undefined outcomes.   We note that the argument above applies to all forms of packet delay   variation that can be constructed using the "selection function"   concept of [RFC3393].  In recent work, the two main forms of delay   variation metrics have been compared, and the results are summarized   in [RFC5481].5.1.4.  Reordering   [RFC4737] defines metrics that are based on evaluation of packet   arrival order and that include a waiting time before declaring that a   packet is lost (to exclude the packet from further processing).   If packets are assigned a delay value, then the reordering metric   would declare any packets with infinite delay to be reordered,   because their sequence numbers will surely be less than the "Next   Expected" threshold when (or if) they arrive.  But this practice   would fail to maintain orthogonality between the reordering metric   and the loss metric.  Confusion can be avoided by designating the   delay of non-arriving packets as undefined and reserving delay values   only for packets that arrive within a sufficiently long waiting time.5.2.  Preferred Statistics   Today in network characterization, the sample mean is one statistic   that is almost ubiquitously reported.  It is easily computed and   understood by virtually everyone in this audience category.  Also,   the sample is usually filtered on packet arrival, so that the mean is   based on a conditional distribution.   The median is another statistic that summarizes a distribution,   having somewhat different properties from the sample mean.  The   median is stable in distributions with a few outliers or without   them.  However, the median's stability prevents it from indicating   when a large fraction of the distribution changes value.  50% or more   values would need to change for the median to capture the change.   Both the median and sample mean have difficulty with bimodal   distributions.  The median will reside in only one of the modes, and   the mean may not lie in either mode range.  For this and other   reasons, additional statistics such as the minimum, maximum, and 95th   percentile have value when summarizing a distribution.Morton, et al.                Informational                    [Page 15]

RFC 6703                    Reporting Metrics                August 2012   When both the sample mean and median are available, a comparison will   sometimes be informative, because these two statistics are equal only   under unusual circumstances, such as when the delay distribution is   perfectly symmetrical.   Also, these statistics are generally useful from the application   performance POV, so there is a common set that should satisfy   audiences.   Plots of the delay distribution may also be useful when single-value   statistics indicate that new conditions are present.  An empirically   derived probability distribution function will usually describe   multiple modes more efficiently than any other form of result.5.3.  Summary for Delay   From the perspectives of   1.  application/receiver analysis, where subsequent processing       depends on whether the packet arrives or times out,   2.  straightforward network characterization without double-counting       defects, and   3.  consistency with delay variation and reordering metric       definitions,   the most efficient practice is to distinguish between packets that   are truly lost and those that are delayed packets with a sufficiently   long waiting time, and to designate the delay of non-arriving packets   as undefined.6.  Reporting Raw Capacity Metrics   Raw capacity refers to the metrics defined in [RFC5136], which do not   include restrictions such as data uniqueness or flow-control response   to congestion.   The metrics considered are IP-layer capacity, utilization (or used   capacity), and available capacity, for individual links and complete   paths.  These three metrics form a triad: knowing one metric   constrains the other two (within their allowed range), and knowing   two determines the third.  The link metrics have another key aspect   in common: they are single-measurement-point metrics at the egress of   a link.  The path capacity and available capacity are derived by   examining the set of single-point link measurements and taking the   minimum value.Morton, et al.                Informational                    [Page 16]

RFC 6703                    Reporting Metrics                August 20126.1.  Type-P Parameter   The concept of "packets of Type-P" is defined in [RFC2330].  The   Type-P categorization has critical relevance in all forms of capacity   measurement and reporting.  The ability to categorize packets based   on header fields for assignment to different queues and scheduling   mechanisms is now commonplace.  When unused resources are shared   across queues, the conditions in all packet categories will affect   capacity and related measurements.  This is one source of variability   in the results that all audiences would prefer to see reported in a   useful and easily understood way.   Communication of Type-P within the One-Way Active Measurement   Protocol (OWAMP) and the Two-Way Active Measurement Protocol (TWAMP)   is essentially confined to the Diffserv Code Point (DSCP) [RFC4656].   DSCP is the most common qualifier for Type-P.   Each audience will have a set of Type-P qualifications and value   combinations that are of interest.  Measurements and reports should   have the flexibility to report per-type and aggregate performance.6.2.  A priori Factors   The audience for network characterization may have detailed   information about each link that comprises a complete path (due to   ownership, for example), or some of the links in the path but not   others, or none of the links.   There are cases where the measurement audience only has information   on one of the links (the local access link) and wishes to measure one   or more of the raw capacity metrics.  This scenario is quite common   and has spawned a substantial number of experimental measurement   methods (e.g.,http://www.caida.org/tools/taxonomy/).  Many of these   methods respect that their users want a result fairly quickly and in   one trial.  Thus, the measurement interval is kept short (a few   seconds to a minute).  For long-term reporting, a sample of   short-term results needs to be summarized.6.3.  IP-Layer Capacity   For links, this metric's theoretical maximum value can be determined   from the physical-layer bit rate and the bit rate reduction due to   the layers between the physical layer and IP.  When measured, this   metric takes additional factors into account, such as the ability of   the sending device to process and forward traffic under various   conditions.  For example, the arrival of routing updates may spawn   high-priority processes that reduce the sending rate temporarily.Morton, et al.                Informational                    [Page 17]

RFC 6703                    Reporting Metrics                August 2012   Thus, the measured capacity of a link will be variable, and the   maximum capacity observed applies to a specific time, time interval,   and other relevant circumstances.   For paths composed of a series of links, it is easy to see how the   sources of variability for the results grow with each link in the   path.  Variability of results will be discussed in more detail below.6.4.  IP-Layer Utilization   The ideal metric definition of link utilization [RFC5136] is based on   the actual usage (bits successfully received during a time interval)   and the maximum capacity for the same interval.   In practice, link utilization can be calculated by counting the   IP-layer (or other layer) octets received over a time interval and   dividing by the theoretical maximum number of octets that could have   been delivered in the same interval.  A commonly used time interval   is 5 minutes, and this interval has been sufficient to support   network operations and design for some time.  5 minutes is somewhat   long compared with the expected download time for web pages but short   with respect to large file transfers and TV program viewing.  It is   fair to say that considerable variability is concealed by reporting a   single (average) utilization value for each 5-minute interval.  Some   performance management systems have begun to make 1-minute averages   available.   There is also a limit on the smallest useful measurement interval.   Intervals on the order of the serialization time for a single Maximum   Transmission Unit (MTU) packet will observe on/off behavior and   report 100% or 0%.  The smallest interval needs to be some multiple   of MTU serialization time for averaging to be effective.6.5.  IP-Layer Available Capacity   The available capacity of a link can be calculated using the capacity   and utilization metrics.   When available capacity of a link or path is estimated through some   measurement technique, the following parameters should be reported:   o  Name and reference to the exact method of measurement   o  IP packet length, octets (including IP header)   o  Maximum capacity that can be assessed in the measurement      configurationMorton, et al.                Informational                    [Page 18]

RFC 6703                    Reporting Metrics                August 2012   o  Time duration of the measurement   o  All other parameters specific to the measurement method   Many methods of available capacity measurement have a maximum   capacity that they can measure, and this maximum may be less than the   actual available capacity of the link or path.  Therefore, it is   important to know the capacity value beyond which there will be no   measured improvement.   The application performance estimation audience may have a desired   target capacity value and simply wish to assess whether there is   sufficient available capacity.  This case simplifies the measurement   of link and path capacity to some degree, as long as the measurable   maximum exceeds the target capacity.6.6.  Variability in Utilization and Available Capacity   As with most metrics and measurements, assessing the consistency or   variability in the results gives the user an intuitive feel for the   degree (or confidence) that any one value is representative of other   results, or the spread of the underlying distribution of the   singleton measurements.   How can utilization be measured and summarized to describe the   potential variability in a useful way?   How can the variability in available capacity estimates be reported,   so that the confidence in the results is also conveyed?   We suggest some methods below.6.6.1.  General Summary of Variability   With a set of singleton utilization or available capacity estimates,   each representing a time interval needed to ascertain the estimate,   we seek to describe the variation over the set of singletons as   though reporting summary statistics of a distribution.  Three useful   summary statistics are   o  Minimum,   o  Maximum, and   o  RangeMorton, et al.                Informational                    [Page 19]

RFC 6703                    Reporting Metrics                August 2012   An alternate way to represent the range is as a ratio of maximum to   minimum value.  This enables an easily understandable statistic to   describe the range observed.  For example, when maximum = 3*minimum,   then the max/min ratio is 3, and users may see variability of this   order.  On the other hand, capacity estimates with a max/min ratio   near 1 are quite consistent and near the central measure or statistic   reported.   For an ongoing series of singleton estimates, a moving average of n   estimates may provide a single value estimate to more easily   distinguish substantial changes in performance over time.  For   example, in a window of n singletons observed in time interval t, a   percentage change of x% is declared to be a substantial change and   reported as an exception.   Often, the most informative summary of the results is a two-axis plot   rather than a table of statistics, where time is plotted on the   x-axis and the singleton value on the y-axis.  The time-series plot   can illustrate sudden changes in an otherwise stable range, identify   bi-modality easily, and help quickly assess correlation with other   time-series.  Plots of frequency of the singleton values are likewise   useful tools to visualize the variation.7.  Reporting Restricted Capacity Metrics   Restricted capacity refers to the metrics defined in [RFC3148], which   include criteria of data uniqueness or flow-control response to   congestion.   One primary metric considered is Bulk Transfer Capacity (BTC) for   complete paths.  [RFC3148] defines BTC as      BTC = data_sent / elapsed_time   for a connection with congestion-aware flow control, where data_sent   is the total number of unique payload bits (no headers).   We note that this definition *differs* from the raw capacity   definition inSection 2.3.1 of [RFC5136], where IP-layer capacity   *includes* all bits in the IP header and payload.  This means that   restricted capacity BTC is already operating at a disadvantage when   compared to the raw capacity at layers below TCP.  Further, there are   cases where one IP layer is encapsulated in another IP layer or other   form of tunneling protocol, designating more and more of the   fundamental transport capacity as header bits that are pure overhead   to the BTC measurement.Morton, et al.                Informational                    [Page 20]

RFC 6703                    Reporting Metrics                August 2012   We also note that raw and restricted capacity metrics are not   orthogonal in the sense defined inSection 5.1.2 above.  The   information they convey about the network under test is certainly   overlapping, but they reveal two different and important aspects of   performance.   When thinking about the triad of raw capacity metrics, BTC is most   akin to the "IP-Type-P Available Path Capacity", at least in the eyes   of a network user who seeks to know what transmission performance a   path might support.7.1.  Type-P Parameter and Type-C Parameter   The concept of "packets of Type-P" is defined in [RFC2330].  The   considerations for restricted capacity are identical to the raw   capacity section on this topic, with the addition that the various   fields and options in the TCP header must be included in the   description.   The vast array of TCP flow-control options are not well captured by   Type-P, because they do not exist in the TCP header bits.  Therefore,   we introduce a new notion here: TCP Configuration of "Type-C".  The   elements of Type-C describe all of the settings for TCP options and   congestion control algorithm variables, including the main form of   congestion control in use.  Readers should consider the parameters   and variables of [RFC3148] and [RFC6349] when constructing Type-C.7.2.  A Priori Factors   The audience for network characterization may have detailed   information about each link that comprises a complete path (due to   ownership, for example), or some of the links in the path but not   others, or none of the links.   There are cases where the measurement audience only has information   on one of the links (the local access link) and wishes to measure one   or more BTC metrics.  The discussion inSection 6.2 applies here   as well.Morton, et al.                Informational                    [Page 21]

RFC 6703                    Reporting Metrics                August 20127.3.  Measurement Interval   There are limits on a useful measurement interval for BTC.  Three   factors that influence the interval duration are listed below:   1.  Measurements may choose to include or exclude the 3-way handshake       of TCP connection establishment, which requires at least 1.5 *       RTT (round-trip time) and contains both the delay of the path and       the host processing time for responses.  However, user experience       includes the 3-way handshake for all new TCP connections.   2.  Measurements may choose to include or exclude Slow-Start,       preferring instead to focus on a portion of the transfer that       represents "equilibrium" (which needs to be defined for       particular circumstances if used).  However, user experience       includes the Slow-Start for all new TCP connections.   3.  Measurements may choose to use a fixed block of data to transfer,       where the size of the block has a relationship to the file size       of the application of interest.  This approach yields variable       size measurement intervals, where a path with faster BTC is       measured for less time than a path with slower BTC, and this has       implications when path impairments are time-varying, or       transient.  Users are likely to turn their immediate attention       elsewhere when a very large file must be transferred; thus, they       do not directly experience such a long transfer -- they see the       result (success or failure) and possibly an objective measurement       of the transfer time (which will likely include the 3-way       handshake, Slow-Start, and application file management processing       time as well as the BTC).   Individual measurement intervals may be short or long, but there is a   need to report the results on a long-term basis that captures the BTC   variability experienced between each interval.  Consistent BTC is a   valuable commodity along with the value attained.7.4.  Bulk Transfer Capacity Reporting   When BTC of a link or path is estimated through some measurement   technique, the following parameters should be reported:   o  Name and reference to the exact method of measurement   o  Maximum Transmission Unit (MTU)   o  Maximum BTC that can be assessed in the measurement configuration   o  Time and duration of the measurementMorton, et al.                Informational                    [Page 22]

RFC 6703                    Reporting Metrics                August 2012   o  Number of BTC connections used simultaneously   o  *All* other parameters specific to the measurement method,      especially the congestion control algorithm in use   See also [RFC6349].   Many methods of BTC measurement have a maximum capacity that they can   measure, and this maximum may be less than the available capacity of   the link or path.  Therefore, it is important to specify the measured   BTC value beyond which there will be no measured improvement.   The application performance estimation audience may have a desired   target capacity value and simply wish to assess whether there is   sufficient BTC.  This case simplifies the measurement of link and   path capacity to some degree, as long as the measurable maximum   exceeds the target capacity.7.5.  Variability in Bulk Transfer Capacity   As with most metrics and measurements, assessing the consistency or   variability in the results gives the user an intuitive feel for the   degree (or confidence) that any one value is representative of other   results, or the underlying distribution from which these singleton   measurements have come.   With two questions looming --   1.  What ways can BTC be measured and summarized to describe the       potential variability in a useful way?   2.  How can the variability in BTC estimates be reported, so that the       confidence in the results is also conveyed?   -- we suggest the methods listed inSection 6.6.1 above, and the   additional results presentations given in [RFC6349].8.  Reporting on Test Streams and Sample Size   This section discusses two key aspects of measurement that are   sometimes omitted from the report: the description of the test stream   on which the measurements are based, and the sample size.8.1.  Test Stream Characteristics   Network characterization has traditionally used Poisson-distributed   inter-packet spacing, as this provides an unbiased sample.  The   average inter-packet spacing may be selected to allow observation ofMorton, et al.                Informational                    [Page 23]

RFC 6703                    Reporting Metrics                August 2012   specific network phenomena.  Other test streams are designed to   sample some property of the network, such as the presence of   congestion, link bandwidth, or packet reordering.   If measuring a network in order to make inferences about applications   or receiver performance, then there are usually efficiencies derived   from a test stream that has similar characteristics to the sender.   In some cases, it is essential to synthesize the sender stream, as   with BTC estimates.  In other cases, it may be sufficient to sample   with a "known bias", e.g., a Periodic stream to estimate real-time   application performance.8.2.  Sample Size   Sample size is directly related to the accuracy of the results and   plays a critical role in the report.  Even if only the sample size   (in terms of number of packets) is given for each value or summary   statistic, it imparts a notion of the confidence in the result.   In practice, the sample size will be selected taking both statistical   and practical factors into account.  Among these factors are the   following:   1.  The estimated variability of the quantity being measured.   2.  The desired confidence in the result (although this may be       dependent on assumption of the underlying distribution of the       measured quantity).   3.  The effects of active measurement traffic on user traffic.   A sample size may sometimes be referred to as "large".  This is a   relative and qualitative term.  It is preferable to describe what one   is attempting to achieve with his sample.  For example, stating an   implication may be helpful: this sample is large enough that a single   outlying value at ten times the "typical" sample mean (the mean   without the outlying value) would influence the mean by no more   than X.   The Appendix of [RFC2330] indicates that a sample size of 128   singletons worked well for goodness-of-fit testing, while a much   larger size (8192 singletons) almost always failed.Morton, et al.                Informational                    [Page 24]

RFC 6703                    Reporting Metrics                August 20129.  Security Considerations   The security considerations that apply to any active measurement of   live networks are relevant here as well.  See the Security   Considerations section of [RFC4656] for mandatory-to-implement   security features that intend to mitigate attacks.   Measurement systems conducting long-term measurements are more   exposed to threats as a by-product of ports open longer to perform   their task, and more easily detected measurement activity on those   ports.  Further, use of long packet waiting times affords an attacker   a better opportunity to prepare and launch a replay attack.10.  Acknowledgements   The authors thank Phil Chimento for his suggestion to employ   conditional distributions for delay, Steve Konish Jr. for his careful   review and suggestions, Dave McDysan and Don McLachlan for useful   comments based on their long experience with measurement and   reporting, Daniel Genin for his observation of non-orthogonality   between raw and restricted capacity metrics (and for noticing our   previous omission of this fact), and Matt Zekauskas for suggestions   on organizing the memo for easier consumption.11.  References11.1.  Normative References   [RFC2330]   Paxson, V., Almes, G., Mahdavi, J., and M. Mathis,               "Framework for IP Performance Metrics",RFC 2330,               May 1998.   [RFC2678]   Mahdavi, J. and V. Paxson, "IPPM Metrics for Measuring               Connectivity",RFC 2678, September 1999.   [RFC2679]   Almes, G., Kalidindi, S., and M. Zekauskas, "A One-way               Delay Metric for IPPM",RFC 2679, September 1999.   [RFC2680]   Almes, G., Kalidindi, S., and M. Zekauskas, "A One-way               Packet Loss Metric for IPPM",RFC 2680, September 1999.   [RFC3148]   Mathis, M. and M. Allman, "A Framework for Defining               Empirical Bulk Transfer Capacity Metrics",RFC 3148,               July 2001.   [RFC3393]   Demichelis, C. and P. Chimento, "IP Packet Delay               Variation Metric for IP Performance Metrics (IPPM)",RFC 3393, November 2002.Morton, et al.                Informational                    [Page 25]

RFC 6703                    Reporting Metrics                August 2012   [RFC3432]   Raisanen, V., Grotefeld, G., and A. Morton, "Network               performance measurement with periodic streams",RFC 3432,               November 2002.   [RFC4656]   Shalunov, S., Teitelbaum, B., Karp, A., Boote, J., and M.               Zekauskas, "A One-way Active Measurement Protocol               (OWAMP)",RFC 4656, September 2006.   [RFC4737]   Morton, A., Ciavattone, L., Ramachandran, G., Shalunov,               S., and J. Perser, "Packet Reordering Metrics",RFC 4737,               November 2006.   [RFC5136]   Chimento, P. and J. Ishac, "Defining Network Capacity",RFC 5136, February 2008.11.2.  Informative References   [Casner]    Casner, S., Alaettinoglu, C., and C. Kuan, "A Fine-               Grained View of High-Performance Networking",               NANOG 22 Conf., May 20-22 2001,               <http://www.nanog.org/presentations/archive/index.php>.   [Cia03]     Ciavattone, L., Morton, A., and G. Ramachandran,               "Standardized Active Measurements on a Tier 1 IP               Backbone", IEEE Communications Magazine, Vol. 41               No. 6, pp. 90-97, June 2003.   [IPPM-RPT]  Shalunov, S. and M. Swany, "Reporting IP Performance               Metrics to Users", Work in Progress, March 2011.   [RFC5481]   Morton, A. and B. Claise, "Packet Delay Variation               Applicability Statement",RFC 5481, March 2009.   [RFC5835]   Morton, A., Ed., and S. Van den Berghe, Ed., "Framework               for Metric Composition",RFC 5835, April 2010.   [RFC6349]   Constantine, B., Forget, G., Geib, R., and R. Schrage,               "Framework for TCP Throughput Testing",RFC 6349,               August 2011.   [Y.1540]    International Telecommunication Union, "Internet protocol               data communication service - IP packet transfer and               availability performance parameters", ITU-T               Recommendation Y.1540, March 2011.   [Y.1541]    International Telecommunication Union, "Network               performance objectives for IP-based services", ITU-T               Recommendation Y.1541, December 2011.Morton, et al.                Informational                    [Page 26]

RFC 6703                    Reporting Metrics                August 2012Authors' Addresses   Al Morton   AT&T Labs   200 Laurel Avenue South   Middletown, NJ  07748   USA   Phone: +1 732 420 1571   Fax:   +1 732 368 1192   EMail: acmorton@att.com   URI:http://home.comcast.net/~acmacm/   Gomathi Ramachandran   AT&T Labs   200 Laurel Avenue South   Middletown, New Jersey  07748   USA   Phone: +1 732 420 2353   EMail: gomathi@att.com   Ganga Maguluri   AT&T Labs   200 Laurel Avenue South   Middletown, New Jersey  07748   USA   Phone: +1 732 420 2486   EMail: gmaguluri@att.comMorton, et al.                Informational                    [Page 27]

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