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INFORMATIONAL
Errata Exist
Internet Research Task Force (IRTF)                  K. Pentikousis, Ed.Request for Comments: 7945                                    TravelpingCategory: Informational                                        B. OhlmanISSN: 2070-1721                                                 Ericsson                                                               E. Davies                                                  Trinity College Dublin                                                               S. Spirou                                                        Intracom Telecom                                                               G. Boggia                                                     Politecnico di Bari                                                          September 2016Information-Centric Networking: Evaluation and Security ConsiderationsAbstract   This document presents a number of considerations regarding   evaluating Information-Centric Networking (ICN) and sheds some light   on the impact of ICN on network security.  It also surveys the   evaluation tools currently available to researchers in the ICN area   and provides suggestions regarding methodology and metrics.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 Research Task Force   (IRTF).  The IRTF publishes the results of Internet-related research   and development activities.  These results might not be suitable for   deployment.  This RFC represents the consensus of the <insert_name>   Research Group of the Internet Research Task Force (IRTF).  Documents   approved for publication by the IRSG are not a candidate for any   level of Internet Standard; seeSection 2 of RFC 7841.   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/rfc7945.Pentikousis, et al.           Informational                     [Page 1]

RFC 7945               ICN Evaluation and Security        September 2016Copyright Notice   Copyright (c) 2016 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.Table of Contents1.  Introduction . . . . . . . . . . . . . . . . . . . . . . . . .32.  Evaluation Considerations  . . . . . . . . . . . . . . . . . .42.1.  Topology Selection . . . . . . . . . . . . . . . . . . . .52.2.  Traffic Load . . . . . . . . . . . . . . . . . . . . . . .62.3.  Choosing Relevant Metrics  . . . . . . . . . . . . . . . .102.3.1.  Traffic Metrics  . . . . . . . . . . . . . . . . . . .132.3.2.  System Metrics . . . . . . . . . . . . . . . . . . . .142.4.  Resource Equivalence and Trade-Offs  . . . . . . . . . . .163.  ICN Security Aspects . . . . . . . . . . . . . . . . . . . . .163.1. Authentication  . . . . . . . . . . . . . . . . . . . . . .173.2. Authorization, Access Control, and Logging  . . . . . . . .183.3. Privacy . . . . . . . . . . . . . . . . . . . . . . . . . .193.4. Changes to the Network Security Threat Model  . . . . . . .204.  Evaluation Tools . . . . . . . . . . . . . . . . . . . . . . .214.1.  Open-Source Implementations  . . . . . . . . . . . . . . .214.2.  Simulators and Emulators . . . . . . . . . . . . . . . . .224.2.1.  ndnSIM . . . . . . . . . . . . . . . . . . . . . . . .224.2.2.  ccnSIM . . . . . . . . . . . . . . . . . . . . . . . .234.2.3.  Icarus Simulator . . . . . . . . . . . . . . . . . . .234.3.  Experimental Facilities  . . . . . . . . . . . . . . . . .244.3.1.  Open Network Lab (ONL) . . . . . . . . . . . . . . . .244.3.2.  POINT Testbed  . . . . . . . . . . . . . . . . . . . .254.3.3.  CUTEi: Container-Based ICN Testbed . . . . . . . . . .255.  Security Considerations  . . . . . . . . . . . . . . . . . . .256.  Informative References . . . . . . . . . . . . . . . . . . . .26   Acknowledgments  . . . . . . . . . . . . . . . . . . . . . . . . .37   Authors' Addresses . . . . . . . . . . . . . . . . . . . . . . . .38Pentikousis, et al.           Informational                     [Page 2]

RFC 7945               ICN Evaluation and Security        September 20161.  Introduction   Information-Centric Networking (ICN) is a networking concept that   arose from the desire to align the operation model of a network with   the model of its typical use.  For TCP/IP networks, this implies   changing the mechanisms of data access and transport from a host-to-   host model to a user-to-information model.  The premise is that the   effort invested in changing models will be offset, or even surpassed,   by the potential of a "better" network.  However, such a claim can be   validated only if it is quantified.   Different ICN approaches are evaluated in the peer-reviewed   literature using a mixture of theoretical analysis, simulation and   emulation techniques, and empirical (testbed) measurements.  The   specific methodology employed may depend on the experimentation goal,   e.g., whether one wants to evaluate scalability, quantify resource   utilization, or analyze economic incentives.  In addition, though, we   observe that ease and convenience of setting up and running   experiments can sometimes be a factor in published evaluations.  As   discussed in [RFC7476], the development phase that ICN is going   through and the plethora of approaches to tackle the hardest problems   make this a very active and growing research area but, on the   downside, it also makes it more difficult to compare different   proposals on an equal footing.   Performance evaluation using actual network deployments has the   advantage of realistic workloads and reflects the environment where   the service or protocol is to be deployed.  In the case of ICN,   however, it is not currently clear what qualifies as a "realistic   workload".  Trace-based analysis of ICN is in its infancy, and more   work is needed towards defining characteristic workloads for ICN   evaluation studies.  Accordingly, the experimental process and the   evaluation methodology per se are actively being researched for   different ICN architectures.  Numerous factors affect the   experimental results, including the topology selected; the background   traffic that an application is being subjected to; network conditions   such as available link capacities, link delays, and loss-rate   characteristics throughout the selected topology; failure and   disruption patterns; node mobility; and the diversity of devices   used.   The goal of this document is to summarize evaluation guidelines and   tools alongside suggested data sets and high-level approaches.  We   expect this to be of interest to the ICN community as a whole, as it   can assist researchers and practitioners alike to compare and   contrast different ICN designs, as well as with the state of the art   in host-centric solutions, and identify the respective strengths and   weaknesses.  We note that, apart from the technical evaluation of thePentikousis, et al.           Informational                     [Page 3]

RFC 7945               ICN Evaluation and Security        September 2016   functionality of an ICN architecture, the future success of ICN will   be largely driven by its deployability and economic viability.   Therefore, ICN evaluations should assess incremental deployability in   the existing network environment together with a view of how the   technical functions will incentivize deployers to invest in the   capabilities that allow the architecture to spread across the   network.   This document has been produced by the IRTF Information-Centric   Networking Research Group (ICNRG).  The main objective of the ICNRG   is to couple ongoing ICN research in the above areas with solutions   that are relevant for evolving the Internet at large.  The ICNRG   produces documents that provide guidelines for experimental   activities in the area of ICN so that different, alternative   solutions can be compared consistently, and information sharing can   be accomplished for experimental deployments.  This document   incorporates input from ICNRG participants and their corresponding   text contributions; it has been reviewed by several ICNRG active   participants (see the Acknowledgments), and represents the consensus   of the research group.  That said, note that this document does not   constitute an IETF standard; see also [RFC5743].   The remainder of this document is organized as follows.Section 2   presents various techniques and considerations for evaluating   different ICN architectures.Section 3 discusses the impact of ICN   on network security.Section 4 surveys the tools currently available   to ICN researchers.2.  Evaluation Considerations   It is clear that the way we evaluate IP networks will not be directly   applicable to evaluating ICN.  In IP, the focus is on the performance   and characteristics of end-to-end connections between a source and a   destination.  In ICN, the "source" responding to a request can be any   ICN node in the network and may change from request to request.  This   makes it difficult to use concepts like delay and throughput in a   traditional way.  In addition, evaluating resource usage in ICN is a   more complicated task, as memory used for caching affects delays and   use of transmission resources; see the discussion on resource   equivalents inSection 2.4.   There are two major types of evaluations of ICN that we see a need to   make.  One type is to compare ICN to traditional networking, and the   other type is to compare different ICN implementations and approaches   against each other.   In this section, we detail some of the functional components needed   when evaluating different ICN implementations and approaches.Pentikousis, et al.           Informational                     [Page 4]

RFC 7945               ICN Evaluation and Security        September 20162.1.  Topology Selection   There's a wealth of earlier work on topology selection for simulation   and performance evaluation of host-centric networks.  While the   classic dumbbell topology is regarded as inappropriate for ICN, most   ICN studies so far have been based on that earlier work for host-   centric networks [RFC7476].  However, there is no single topology   that can be used to easily evaluate all aspects of ICN.  Therefore,   one should choose from a range of topologies depending on the focus   of the evaluation.   For scalability and resilience studies, there is a wide range of   synthetic topologies, such as the Barabasi-Albert model [Barabasi99]   and the Watts-Strogatz small-world topology [Watts98].  These allow   experiments to be performed whilst controlling various key parameters   (e.g., node degree).  These synthetic topologies are appropriate in   the general case, as there are no practical assurances that a future   information-centric network will have the same topology as any of   today's networks.   When studies look at cost (e.g., transit cost) or migration to ICN,   realistic topologies should be used.  These can be inferred from   Internet traces, such as the CAIDA Macroscopic Internet Topology Data   Kit (http://www.caida.org/data/active/internet-topology-data-kit) and   Rocketfuel   (http://www.cs.washington.edu/research/networking/rocketfuel).  A   problem is the large size of the topology (approximately 45K   Autonomous Systems, close to 200K links), which may limit the   scalability of the employed evaluation tool.  Katsaros et al.   [Katsaros15] address this problem by using scaled down topologies   created following the methodology described in [Dimitropoulos09].   Studies that focus on node or content mobility can benefit from   topologies and their dynamic aspects as used in the Delay-Tolerant   Networking (DTN) community.  As mentioned in [RFC7476], DTN traces   are available to be used in such ICN evaluations.   As with host-centric topologies, defining just a node graph will not   be enough for most ICN studies.  The experimenter should also clearly   define and list the respective matrices that correspond to the   network, storage, and computation capacities available at each node   as well as the delay characteristics of each link [Montage].  Real   values for such parameters can be taken from existing platforms such   as iPlane (http://iplane.cs.washington.edu).  Synthetic values could   be produced with specific tools [Kaune09].Pentikousis, et al.           Informational                     [Page 5]

RFC 7945               ICN Evaluation and Security        September 20162.2.  Traffic Load   In this subsection, we provide a set of common guidelines, in the   form of what we will refer to as a content catalog for different   scenarios.  This catalog, which is based on previously published   work, can be used to evaluate different ICN proposals, for instance,   on routing, congestion control, and performance, and can be   considered as other kinds of ICN contributions emerge.  As we are   still lacking ICN-specific traffic workloads, we can currently only   extrapolate from today's workloads.  A significant challenge then   relates to the identification of the applications contributing to the   observed traffic (e.g., Web or peer-to-peer), as well as to the exact   amount of traffic they contribute to the overall traffic mixture.   Efforts in this direction can take heed of today's traffic mix   comprising Web, peer-to-peer file sharing, and User-Generated Content   (UGC) platforms (e.g., YouTube), as well as Video on Demand (VoD)   services.  Publicly available traces for these include those from web   sites such as the MultiProbe Framework   <http://multiprobe.ewi.tudelft.nl/multiprobe.html>,   <http://an.kaist.ac.kr/traces/IMC2007.html> (see also [Cha07]), and   the UMass Trace Repository   <http://traces.cs.umass.edu/index.php/Network/Network>.   Taking a more systematic approach, and with the purpose of modeling   the traffic load, we can resort to measurement studies that   investigate the composition of Internet traffic, such as [Labovitz10]   and [Maier09].  In [Labovitz10], a large-scale measurement study was   performed, with the purpose of studying the traffic crossing inter-   domain links.  The results indicate the dominance of Web traffic,   amounting to 52% over all measured traffic.  However, Deep Packet   Inspection (DPI) techniques reveal that 25-40% of all HTTP traffic   actually carries video traffic.  Results from DPI techniques also   reveal the difficulty in correctly identifying the application type   in the case of P2P traffic: mapping observed port numbers to well-   known applications shows P2P traffic constituting only 0.85% of   overall traffic, while DPI raises this percentage to 18.32%   [Labovitz10].  Relevant studies on a large ISP show that the   percentage of P2P traffic ranges from 17% to 19% of overall traffic   [Maier09].  Table 1 provides an overview of these figures.  The   "other" traffic type denotes traffic that cannot be classified in any   of the first three application categories, and it consists of   unclassified traffic and traffic heavily fragmented into several   applications (e.g., 0.17% DNS traffic).Pentikousis, et al.           Informational                     [Page 6]

RFC 7945               ICN Evaluation and Security        September 2016                   Traffic Type | Ratio                   =====================                   Web          | 31-39%                   ---------------------                   P2P          | 17-19%                   ---------------------                   Video        | 13-21%                   ---------------------                   Other        | 29-31%                   =====================   Table 1: Traffic Type Ratios of Total Traffic [Labovitz10] [Maier09]   The content catalog for each type of traffic can be characterized by   a specific set of parameters:   a) the cardinality of the estimated content catalog   b) the size of the exchanged contents (either chunks or entire named      information objects)   c) the popularity of objects (expressed in their request frequency)   In most application types, the popularity distribution follows some   power law, indicating that a small number of information items   trigger a large proportion of the entire set of requests.  The exact   shape of the power law popularity distribution directly impacts the   performance of the underlying protocols.  For instance, highly skewed   popularity distributions (e.g., a Zipf-like distribution with a high   slope value) favor the deployment of caching schemes, since caching a   very small set of information items can dramatically increase the   cache hit ratio.   Several studies in the past few years have stated that Zipf's law is   the discrete distribution that best represents the request frequency   in a number of application scenarios, ranging from the Web to VoD   services.  The key aspect of this distribution is that the frequency   of a content request is inversely proportional to the rank of the   content itself, i.e., the smaller the rank, the higher the request   frequency.  If M denotes the content catalog cardinality and 1 <= i   <= M denotes the rank of the i-th most popular content, we can   express the probability of requesting the content with rank "i" as:   P(X=i) = (1 / i^(alpha)) / C, with C = SUM(1 / j^(alpha)), alpha > 0   where the sum is obtained considering all values of j, 1 <= j <= M.Pentikousis, et al.           Informational                     [Page 7]

RFC 7945               ICN Evaluation and Security        September 2016   A recent analysis of HTTP traffic showed that content popularity is   better reflected by a trimodal distribution model in which the head   and tail of a Zipf distribution (with slope value 0.84) are replaced   by two discrete Weibull distributions with shape parameter values 0.5   and 0.24, respectively [IMB2014].   A variation of the Zipf distribution, termed the Mandelbrot-Zipf   distribution was suggested [Saleh06] to better model environments   where nodes can locally store previously requested content.  For   example, it was observed that peer-to-peer file-sharing applications   typically exhibited a 'fetch-at-most-once' style of behavior.  This   is because peers tend to persistently store the files they download,   a behavior that may also be prevalent in ICN.   Popularity can also be characterized in terms of:   a) The temporal dynamics of popularity, i.e., how requests are      distributed in time.  The popularity distribution expresses the      number of requests submitted for each information item      participating into a certain workload.  However, they do not      describe how these requests are distributed in time.  This aspect      is of primary importance when considering the performance of      caching schemes since the ordering of the requests obviously      affects the contents of a cache.  For example, with a Least      Frequently Used (LFU) cache replacement policy, if all requests      for a certain item are submitted close in time, the item is      unlikely to be evicted from the cache, even by a (globally) more      popular item whose requests are more evenly distributed in time.      The temporal ordering of requests gains even more importance when      considering workloads consisting of various applications, all      competing for the same cache space.   b) The spatial locality of popularity i.e., how requests are      distributed throughout a network.  The importance of spatial      locality relates to the ability to avoid redundant traffic in the      network.  If requests are highly localized in some area of the      entire network, then similar requests can be more efficiently      served with mechanisms such as caching and/or multicast, i.e., the      concentration of similar requests in a limited area of the network      allows increasing the perceived cache hit ratios at caches in the      area and/or the traffic savings from the use of multicast.      Table 2 provides an overview of distributions that can be used to      model each of the identified traffic types i.e., Web, Video (based      on YouTube measurements), and P2P (based on BitTorrent      measurements).  These distributions are the outcome of a series of      modeling efforts based on measurements of real traffic workloads      ([Breslau99] [Mahanti00] [Busari02] [Arlitt97] [Barford98]      [Barford99] [Hefeeda08] [Guo07] [Bellissimo04] [Cheng08]Pentikousis, et al.           Informational                     [Page 8]

RFC 7945               ICN Evaluation and Security        September 2016      [Cheng13]).  A tool for the creation of synthetic workloads      following these models, and also allowing the generation of      different traffic mixes, is described in [Katsaros12].       |  Object Size   |  Temporal Locality   | Popularity Distribution   =====================================================================   Web | Concatenation  | Ordering via the     | Zipf: p(i)=K/i^a       | of Lognormal   | Least Recently Used  | i: popularity rank       | (body) and     | (LRU) stack model    | N: total items       | Pareto (tail)  | [Busari02]           | K: 1/Sum(1/i^a)       | [Barford98]    |                      | a: distribution slope       | [Barford99]    | Exact timing via     | values 0.64-0.84       |                | exponential          | [Breslau99] [Mahanti00]       |                | distribution         |       |                | [Arlitt97]           |   ---------------------------------------------------------------------   VoD | Duration/size: | No analytical models | Weibull: k=0.513,       | Concatenated   |                      | lambda=6010       | normal; most   | Random distribution  |       | videos         | across total         | Gamma: k=0.372,       | ~330 kbit/s    | duration             | theta=23910       | [Cheng13]      |                      | [Cheng08]   ---------------------------------------------------------------------   P2P | Wide variation | Mean arrival rate of | Mandelbrot-Zipf       | on torrent     | 0.9454 torrents/hour | [Hefeeda08]:       | sizes          | Peers in a swarm     | p(i)=K/((i+q)/a)       | [Hefeeda08].   | arrive as            | q: plateau factor,       | No analytical  | l(t)= l0*e^(-t/tau)  | 5 to 100.       | models exist:  | l0: initial arrival  | Flatter head than in       | Sample a real  | rate (87.74 average) | Zipf-like distribution       | BitTorrent     | tau: object          | (where q=0)       | distribution   | popularity           |       | [Bellissimo04] | (1.16 average)*      |       | or use fixed   | [Guo07]              |       | value          |                      |   =====================================================================   * Random ordering of swarm births (first request).  For each swarm,     calculate a different tau.  Based on average tau and object     popularity.  Exponential decay rule for subsequent requests.                 Table 2: Overview of Traffic Type Models   Table 3 summarizes the content catalog.  With this shared point of   reference, the use of the same set of parameters (depending on the   scenario of interest) among researchers will be eased, and different   proposals could be compared on a common base.Pentikousis, et al.           Informational                     [Page 9]

RFC 7945               ICN Evaluation and Security        September 2016   Traffic | Catalog  |  Mean Object Size  |  Popularity Distribution   Load    | Size     |  [Zhou11] [Fri12]  |  [Cha07] [Fri12] [Yu06]           |[Goog08]  |  [Marciniak08]     |  [Breslau99] [Mahanti00]           |[Zhang10a]|  [Bellissimo04]    |           |[Cha07]   |  [Psaras11]        |           |[Fri12]   |  [Carofiglio11]    |           |          |                    |           |          |                    |           |          |                    |   ===================================================================   Web     |  10^12   | Chunk: 1-10 KB     | Zipf with           |          |                    | 0.64 <= alpha <= 0.83   -------------------------------------------------------------------   File    | 5x10^6   | Chunk: 250-4096 KB | Zipf with   sharing |          | Object: ~800 MB    | 0.75 <= alpha <= 0.82   -------------------------------------------------------------------   UGC     |  10^8    | Object: ~10 MB     | Zipf, alpha >= 2   -------------------------------------------------------------------   VoD     |  10^4    | Object: ~100 MB    | Zipf, 0.65 <= alpha <= 1   (+HLS)  |          |    ~1 KB (*)       |   (+DASH) |          |    ~5.6 KB (*)     |   ===================================================================    UGC = User-Generated Content    VoD = Video on Demand    HLS  = HTTP Live Streaming    DASH = Dynamic Adaptive Streaming over HTTP   (*) Using adaptive video streaming (e.g., HLS and DASH), with an       optimal segment length (10 s for HLS and 2 s for DASH) and a       bitrate of 4500 kbit/s [RFC7933] [Led12]                         Table 3: Content Catalog2.3.  Choosing Relevant Metrics   Quantification of network performance requires a set of standard   metrics.  These metrics should be broad enough so they can be applied   equally to host-centric and information-centric (or other) networks.   This will allow reasoning about a certain ICN approach in relation to   an earlier version of the same approach, to another ICN approach, or   to the incumbent host-centric approach.  It will therefore be less   difficult to gauge optimization and research direction.  On the other   hand, the metrics should be targeted to network performance only and   should avoid unnecessary expansion into the physical and application   layers.  Similarly, at this point, it is more important to capture as   metrics only the main figures of merit and to leave more esoteric and   less frequent cases for the future.Pentikousis, et al.           Informational                    [Page 10]

RFC 7945               ICN Evaluation and Security        September 2016   To arrive at a set of relevant metrics, it would be beneficial to   look at the metrics used in existing ICN approaches, such as Content-   Centric Networking (CCN) [Jacobson09] [VoCCN] [Zhang10b], NetInf   [4WARD6.1] [4WARD6.3] [SAIL-B2] [SAIL-B3], PURSUIT [PRST4.5], COMET   [CMT-D5.2] [CMT-D6.2], Connect [Muscariello11] [Perino11], and   CONVERGENCE [Detti12] [Blefari-Melazzi12] [Salsano12].  The metrics   used in these approaches fall into two categories: metrics for the   approach as a whole, and metrics for individual components (name   resolution, routing, and so on).  Metrics for the entire approach are   further subdivided into traffic and system metrics.  It is important   to note that the various approaches do not name or define metrics   consistently.  This is a major problem when trying to find metrics   that allow comparison between approaches.  For the purposes of   exposition, we have tried to smooth over differences by classifying   similarly defined metrics under the same name.  Also, due to space   constraints, we have chosen to report here only the most common   metrics between approaches.  For more details, the reader should   consult the references for each approach.   Traffic metrics in existing ICN approaches are summarized in Table 4.   These are metrics for evaluating an approach mainly from the   perspective of the end user, i.e., the consumer, provider, or owner   of the content or service.  Depending on the level where these   metrics are measured, we have made the distinction into user,   application, and network-level traffic metrics.  So, for example,   network-level metrics are mostly focused on packet characteristics,   whereas user-level metrics can cover elements of human perception.   The approaches do not make this distinction explicitly, but we can   see from the table that CCN and NetInf have used metrics from all   levels, PURSUIT and COMET have focused on lower-level metrics, and   Connect and CONVERGENCE opted for higher-level metrics.  Throughput   and download time seem to be the most popular metrics altogether.Pentikousis, et al.           Informational                    [Page 11]

RFC 7945               ICN Evaluation and Security        September 2016                   User   |    Application    |        Network               ======================================================                 Download | Goodput | Startup | Throughput |  Packet                   time   |         | latency |            |  delay   ==================================================================   CCN         |    x     |    x    |         |      x     |    x   ------------------------------------------------------------------   NetInf      |    x     |         |    x    |      x     |    x   ------------------------------------------------------------------   PURSUIT     |          |         |    x    |      x     |    x   ------------------------------------------------------------------   COMET       |          |         |    x    |      x     |   ------------------------------------------------------------------   Connect     |    x     |         |         |            |   ------------------------------------------------------------------   CONVERGENCE |    x     |    x    |         |            |   ==================================================================            Table 4: Traffic Metrics Used in ICN Evaluations   While traffic metrics are more important for the end user, the owner   or operator of the networking infrastructure is normally more   interested in system metrics, which can reveal the efficiency of an   approach.  The most common system metrics used are: protocol   overhead, total traffic, transit traffic, cost savings, router cost,   and router energy consumption.   Besides the traffic and systems metrics that aim to evaluate an   approach as a whole, all surveyed approaches also evaluate the   performance of individual components.  Name resolution, request/data   routing, and data caching are the most typical components, as   summarized in Table 5.  Forwarding Information Base (FIB) size and   path length, i.e., the routing component metrics, are almost   ubiquitous among approaches, perhaps due to the networking background   of the involved researchers.  That might be also the reason for the   sometimes decreased focus on traffic and system metrics, in favor of   component metrics.  It can certainly be argued that traffic and   system metrics are affected by component metrics; however, no   approach has made the relationship clear.  With this in mind and   taking into account that traffic and system metrics are readily   useful to end users and network operators, we will restrict ourselves   to those in the following subsections.Pentikousis, et al.           Informational                    [Page 12]

RFC 7945               ICN Evaluation and Security        September 2016                      Resolution      |    Routing    |    Cache               ======================================================                 Resolution | Request | FIB  |  Path  | Size |  Hit                    time    |  rate   | size | length |      | ratio   ==================================================================   CCN         |     x      |         |  x   |   x    |   x  |   x   ------------------------------------------------------------------   NetInf      |     x      |    x    |      |   x    |      |   x   ------------------------------------------------------------------   PURSUIT     |            |         |  x   |   x    |      |   ------------------------------------------------------------------   COMET       |     x      |    x    |  x   |   x    |      |   x   ------------------------------------------------------------------   CONVERGENCE |            |    x    |  x   |        |   x  |   ==================================================================        Table 5: Component Metrics in Existing ICN Approaches   Before proceeding, we should note that we would like our metrics to   be applicable to host-centric networks as well.  Standard metrics   already exist for IP networks, and it would certainly be beneficial   to take them into account.  It is encouraging that many of the   metrics used by existing ICN approaches can also be used on IP   networks and that all of the approaches have tried on occasion to   draw the parallels.2.3.1.  Traffic Metrics   The IETF has been working for more than a decade on devising metrics   and methods for measuring the performance of IP networks.  The work   has been carried out largely within the IP Performance Metrics (IPPM)   working group, guided by a relevant framework [RFC2330].  IPPM   metrics include delay, delay variation, loss, reordering, and   duplication.  While the IPPM work is certainly based on packet-   switched IP networks, it is conceivable that it can be modified and   extended to cover ICN networks as well.  However, more study is   necessary to turn this claim into a certainty.  Many experts have   toiled for a long time on devising and refining the IPPM metrics and   methods, so it would be an advantage to use them for measuring ICN   performance.  In addition, said metrics and methods work already for   host-centric networks, so comparison with information-centric   networks would entail only the ICN extension of the IPPM framework.   Finally, an important benefit of measuring the transport performance   of a network at its output, using Quality of Service (QoS) metrics   such as IPPM, is that it can be done mostly without any dependence to   applications.Pentikousis, et al.           Informational                    [Page 13]

RFC 7945               ICN Evaluation and Security        September 2016   Another option for measuring transport performance would be to use   QoS metrics, not at the output of the network like with IPPM, but at   the input to the application.  For a live video-streaming application   the relevant metrics would be startup latency, playout lag, and   playout continuity.  The benefit of this approach is that it   abstracts away all details of the underlying transport network, so it   can be readily applied to compare between networks of different   concepts (host-centric, information-centric, or other).  As implied   earlier, the drawback of the approach is its dependence on the   application, so it is likely that different types of applications   will require different metrics.  It might be possible to identify   standard metrics for each type of application, but the situation is   not as clear as with IPPM metrics, and further investigation is   necessary.   At a higher level of abstraction, we could measure the network's   transport performance at the application output.  This entails   measuring the quality of the transported and reconstructed   information as perceived by the user during consumption.  In such an   instance we would use Quality of Experience (QoE) metrics, which are   by definition dependent on the application.  For example, the   standardized methods for obtaining a Mean Opinion Score (MOS) for   VoIP (e.g., ITU-T Recommendation P.800) is quite different from those   for IPTV (e.g., Perceptual Evaluation of Video Quality (PEVQ)).   These methods are notoriously hard to implement, as they involve real   users in a controlled environment.  Such constraints can be relaxed   or dropped by using methods that model human perception under certain   environments, but these methods are typically intrusive.  The most   important drawback of measuring network performance at the output of   the application is that only one part of each measurement is related   to network performance.  The rest is related to application   performance, e.g., video coding, or even device capabilities, both of   which are irrelevant to our purposes here and are generally hard to   separate.  We therefore see the use of QoE metrics in measuring ICN   performance as a poor choice at this stage.2.3.2.  System Metrics   Overall system metrics that need to be considered include   reliability, scalability, energy efficiency, and delay/disconnection   tolerance.  In deployments where ICN is addressing specific   scenarios, relevant system metrics could be derived from current   experience.  For example, in Internet of Things (IoT) scenarios,   which are discussed in [RFC7476], it is reasonable to consider the   current generation of sensor nodes, sources of information, and even   measurement gateways (e.g., for smart metering at homes) or   smartphones.  In this case, ICN operation ought to be evaluated with   respect not only to overall scalability and network efficiency, butPentikousis, et al.           Informational                    [Page 14]

RFC 7945               ICN Evaluation and Security        September 2016   also the impact on the nodes themselves.  Karnouskos et al.   [SensReqs] provide a comprehensive set of sensor and IoT-related   requirements, for example, which include aspects such as resource   utilization, service life-cycle management, and device management.   Additionally, various specific metrics are also critical in   constrained environments, such as processing requirements, signaling   overhead, and memory allocation for caching procedures, in addition   to power consumption and battery lifetime.  For gateways (which   typically act as a point of service to a large number of nodes and   have to satisfy the information requests from remote entities), we   need to consider scalability-related metrics, such as frequency and   processing of successfully satisfied information requests.   Finally, given the in-network caching functionality of ICNs,   efficiency and performance metrics of in-network caching have to be   defined.  Such metrics will need to guide researchers and operators   regarding the performance of in-network caching algorithms.  A first   step on this direction has been made in [Psaras11].  The paper   proposes a formula that approximates the proportion of time that a   piece of content stays in a network cache.  The model takes as input   the rate of requests for a given piece of content (the Content of   Interest (CoI)) and the rate of requests for all other contents that   go through the given network element (router) and move the CoI down   in the (LRU) cache.  The formula takes also into account the size of   the cache of this router.   The output of the model essentially reflects the probability that the   CoI will be found in a given cache.  An initial study [Psaras11] is   applied to the CCN / Named Data Networking (NDN) framework, where   contents get cached at every node they traverse.  The formula   according to which the probability or proportion is calculated is   given by:   pi = [mu / (mu + lambda)]^N   where lambda is the request rate for the CoI, mu is the request rate   for contents that move the CoI down the cache, and N is the size of   the cache (in slots).   The formula can be used to assess the caching performance of the   system and can also potentially be used to identify the gain of the   system due to caching.  This can then be used to compare against   gains by other factors, e.g., addition of extra bandwidth in the   network.Pentikousis, et al.           Informational                    [Page 15]

RFC 7945               ICN Evaluation and Security        September 20162.4.  Resource Equivalence and Trade-Offs   As we have seen above, every ICN network is built from a set of   resources, which include link capacities, and different types of   memory structures and repositories used for storing named data   objects and chunks temporarily (i.e., caching) or persistently, as   well as name resolution and other lookup services.  A range of   engineering trade-offs arise from the complexity and processing   requirements of forwarding decisions, management needs (e.g., manual   configuration, explicit garbage collection), and routing needs (e.g.,   amount of state, manual configuration of routing tables, support for   mobility).   In order to be able to compare different ICN approaches, it would be   beneficial to be able to define equivalence in terms of different   resources that today are considered incomparable.  For example, would   provisioning an additional 5 Mbit/s link capacity lead to better   performance than adding 100 GB of in-network storage?  Within this   context, one would consider resource equivalence (and the associated   trade-offs) -- for example, for cache hit ratios per GB of cache,   forwarding decision times, CPU cycles per forwarding decision, and so   on.3.  ICN Security Aspects   The introduction of an information-centric networking architecture   and the corresponding communication paradigm results in changes to   many aspects of network security.  These will affect all scenarios   described in [RFC7476].  Additional evaluation will be required to   ensure relevant security requirements are appropriately met by the   implementation of the chosen architecture in the various scenarios.   The ICN security aspects described in this document reflect the ICN   security challenges outlined in [RFC7927].   The ICN architectures currently proposed have concentrated on   authentication of delivered content to ensure its integrity.  Even   though the approaches are primarily applicable to freely accessible   content that does not require access authorization, they will   generally support delivery of encrypted content.   The introduction of widespread caching mechanisms may also provide   additional attack surfaces.  The caching architecture to be used also   needs to be evaluated to ensure that it meets the requirements of the   usage scenarios.Pentikousis, et al.           Informational                    [Page 16]

RFC 7945               ICN Evaluation and Security        September 2016   In practice, the work on security in the various ICN research   projects has been heavily concentrated on authentication of content.   Work on authorization, access control, and privacy and security   threats due to the expanded role of in-network caches has been quite   limited.  For example, a roadmap for improving the security model in   NetInf can be found in [Renault09].  As secure communications on the   Internet are becoming the norm, major gaps in ICN security aspects   are bound to undermine the adoption of ICN.  A comprehensive overview   of ICN security is also provided in [Tourani16].   In the following subsections, we briefly consider the issues and   provide pointers to the work that has been done on the security   aspects of the architectures proposed.3.1.  Authentication   For fully secure content distribution, content access requires that   the receiver be able to reliably assess:      validity:   Is it a complete, uncorrupted copy of what was                  originally published?      provenance: Can the receiver identify the publisher? If so, can it                  and the source of any cached version of the document                  be adequately trusted?      relevance:  Is the content an answer to the question that the                  receiver asked?   All ICN architectures considered in this document primarily target   the validity requirement using strong cryptographic means to tie the   content request name to the content.  Provenance and relevance are   directly targeted to varying extents:  There is a tussle or trade-off   between simplicity and efficiency of access and level of assurance of   all these traits.  For example, maintaining provenance information   can become extremely costly, particularly when considering (historic)   relationships between multiple objects.  Architectural decisions have   therefore been made in each case as to whether the assessment is   carried out by the information-centric network or left to the   application.   An additional consideration for authentication is whether a name   should be irrevocably and immutably tied to a static piece of   preexisting content or whether the name can be used to refer to   dynamically or subsequently generated content.  Schemes that only   target immutable content can be less resource-hungry as they can use   digest functions rather than public key cryptography for generating   and checking signatures.  However, this can increase the load onPentikousis, et al.           Informational                    [Page 17]

RFC 7945               ICN Evaluation and Security        September 2016   applications because they are required to manage many names, rather   than use a single name for an item of evolving content that changes   over time (e.g., a piece of data containing an age reference).   Data-Oriented Network Architecture (DONA) [DONA] and CCN [Jacobson09]   [Smetters09] integrate most of the data needed to verify provenance   into all content retrievals but need to be able to retrieve   additional information (typically a security certificate) in order to   complete the provenance authentication.  Whether the application has   any control of this extra retrieval will depend on the   implementation.  CCN is explicitly designed to handle dynamic content   allowing names to be pre-allocated and attached to subsequently   generated content.  DONA offers variants for dynamic and immutable   content.   Publish-Subscribe Internet Technology (PURSUIT) [Tagger12] appears to   allow implementers to choose the authentication mechanism so that it   can, in theory, emulate the authentication strategy of any of the   other architectures.  It is not clear whether different choices would   lead to lack of interoperability.   NetInf uses the Named Information (ni) URI scheme [RFC6920] to   identify content.  This allows NetInf to assure validity without any   additional information but gives no assurance on provenance or   relevance.  A "search" request allows an application to identify   relevant content, and applications may choose to structure content to   allow provenance assurance, but this will typically require   additional network access.  NetInf validity authentication is   consequently efficient in a network environment with intermittent   connectivity as it does not force additional network accesses and   allows the application to decide on provenance validation if   required.  For dynamic content, NetInf can use, e.g., signed   manifests.  For more details on NetInf security, see [Dannewitz10].3.2.  Authorization, Access Control, and Logging   A potentially major concern for all ICN architectures considered here   is that they do not provide any inbuilt support for an authorization   framework or for logging.  Once content has been published and cached   in servers, routers, or endpoints not controlled by the publisher,   the publisher has no way to enforce access control, determine which   users have accessed the content, or revoke its publication.  In fact,   in some cases (where requests do not necessarily contain host/user   identifier information), it is difficult for the publishers   themselves to perform access control.Pentikousis, et al.           Informational                    [Page 18]

RFC 7945               ICN Evaluation and Security        September 2016   Access could be limited by encrypting the content, but the necessity   of distributing keys out-of-band appears to negate the advantages of   in-network caching.  This also creates significant challenges when   attempting to manage and restrict key access.  An authorization   delegation scheme has been proposed [Fotiou12].  This scheme allows   semi-trusted entities (such as caches or CDN nodes) to delegate   access control decisions to third-party access control providers that   are trusted by the content publisher.  The former entities have no   access to subscriber-related information and should respect the   decisions of the access control providers.   A recent proposal for an extra layer in the protocol stack [LIRA]   gives control of the name resolution infrastructure to the publisher.    This enables access logging as well some degree of active cache   management, e.g., purging of stale content.   One possible technique that could allow for providing access control   to heterogeneous groups and still allow for a single encrypted object   representation that remains cacheable is Attribute-Based Encryption   (ABE).  A first proposal for this is presented in [Ion13].  To   support heterogeneous groups and avoid having a single authority that   has a master key multi-authority, ABE can be used [Lewko11].   Evaluating the impact of the absence of these features will be   essential for any scenario where an ICN architecture might be   deployed.  It may have a seriously negative impact on the   applicability of ICN in commercial environments unless a solution can   be found.3.3.  Privacy   Another area where the architectures have not been significantly   analyzed is privacy.  Caching implies a trade-off between network   efficiency and privacy.  The activity of users is significantly more   exposed to the scrutiny of cache owners with whom they may not have   any relationship.  However, it should be noted that it is only the   first-hop router/cache that can see who requests what, as requests   are aggregated and only the previous-hop router is visible when a   request is forwarded.   Although in many ICN architectures the source of a request is not   explicitly identified, an attacker may be able to obtain considerable   information if he or she can monitor transactions on the cache and   obtain details of the objects accessed, the topological direction of   requests, and information about the timing of transactions.  The   persistence of data in the cache can make life easier for an attacker   by giving a longer timescale for analysis.Pentikousis, et al.           Informational                    [Page 19]

RFC 7945               ICN Evaluation and Security        September 2016   The impact of CCN on privacy has been investigated in [Lauinger10],   and the analysis is applicable to all ICN architectures because it is   mostly focused on the common caching aspect.  The privacy risks of   Named Data Networking are also highlighted in [Lauinger12].  Further   work on privacy in ICNs can be found in [Chaabane13].  Finally,   Fotiou et al. define an ICN privacy evaluation framework in   [Fotiou14].3.4.  Changes to the Network Security Threat Model   The architectural differences of the various ICN models versus TCP/IP   have consequences for network security.  There is limited   consideration of the threat models and potential mitigation in the   various documents describing the architectures.  [Lauinger10] and   [Chaabane13] also consider the changed threat model.  Some of the key   aspects are:      o  Caching implies a trade-off between network efficiency and user         privacy as discussed inSection 3.3.      o  More-powerful routers upgraded to handle persistent caching         increase the network's attack surface.  This is particularly         the case in systems that may need to perform cryptographic         checks on content that is being cached.  For example, not doing         this could lead routers to disseminate invalid content.      o  ICNs makes it difficult to identify the origin of a request (as         mentioned inSection 3.3), slowing down the process of blocking         requests and requiring alternative mechanisms to differentiate         legitimate requests from inappropriate ones as access control         lists (ACLs) will probably be of little value for ICN requests.      o  Denial-of-service (DoS) attacks may require more effort on ICN         than on TCP/IP-based host-centric networks, but they are still         feasible.  One reason for this is that it is difficult for the         attacker to force repeated requests for the same content onto a         single node; ICNs naturally spread content so that after the         initial few requests, subsequent requests will generally be         satisfied by alternative sources, blunting the impact of a DoS         attack.  That said, there are many ways around this, e.g.,         generating random suffix identifiers that always result in         cache misses.      o  Per-request state in routers can be abused for DoS attacks.Pentikousis, et al.           Informational                    [Page 20]

RFC 7945               ICN Evaluation and Security        September 2016      o  Caches can be misused in the following ways:         +  Attackers can use caches as storage to make their own            content available.         +  The efficiency of caches can be decreased by attackers with            the goal of DoS attacks.         +  Content can be extracted by any attacker connected to the            cache, putting users' privacy at risk.   Appropriate mitigation of these threats will need to be considered in   each scenario.4.  Evaluation Tools   Since ICN is an emerging area, the community is in the process of   developing effective evaluation environments, including releasing   open-source implementations, simulators, emulators, and testbeds.  To   date, none of the available evaluation tools can be seen as the one   and only community reference evaluation tool.  Furthermore, no single   environment supports all well-known ICN approaches, as we describe   below, hindering the direct comparison of the results obtained for   different ICN approaches.  The subsections that follow review the   currently publicly available ICN implementations, simulators, and   experimental facilities.   An updated list of the available evaluation tools will be maintained   at the ICNRG Wiki page: <https://trac.tools.ietf.org/group/irtf/trac/wiki/IcnEvaluationAndTestbeds>4.1.  Open-Source Implementations   The Named Data Networking (NDN) project has open-sourced a software   reference implementation of the architecture and protocol called NDN   (http://named-data.net).  NDN is available for deployment on various   operating systems and includes C and Java libraries that can be used   to build applications.   CCN-lite (http://www.ccn-lite.net) is a lightweight implementation of   the CCN protocol that supports most of the key features of CCNx and   is interoperable with CCNx.  CCN-lite implements the core CCN logic   in about 1000 lines of code, so it is ideal for classroom work and   course projects as well as for quickly experimenting with CCN   extensions.  For example, Baccelli et al. use CCN-lite on top of the   RIOT operating system to conduct experiments over an IoT testbed   [Baccelli14].Pentikousis, et al.           Informational                    [Page 21]

RFC 7945               ICN Evaluation and Security        September 2016   PARC is offering CCN source code under various licensing schemes,   please see <http://www.ccnx.org> for details.   The PURSUIT project (http://www.fp7-pursuit.eu) has open-sourced its   Blackhawk publish-subscribe (Pub/Sub) implementation for Linux and   Android; more details are available at   <https://github.com/fp7-pursuit/blackadder>.  Blackadder uses the   Click modular router for ease of development.  The code distribution   features a set of tools, test applications, and scripts.  The POINT   project (http://www.point-h2020.eu) is currently maintaining   Blackadder.   The 4WARD and SAIL projects have open-sourced software that   implements different aspects of NetInf, e.g., the NetInf URI format   and HTTP and UDP convergence layer, using different programming   languages.  The Java implementation provides a local caching proxy   and client.  Further, an OpenNetInf prototype is available as well as   a hybrid host-centric and information-centric network architecture   called the Global Information Network (GIN), a browser plug-in and   video-streaming software.  See <http://www.netinf.org/open-source>   for more details.4.2.  Simulators and Emulators   Simulators and emulators should be able to capture faithfully all   features and operations of the respective ICN architecture(s) and any   limitations should be openly documented.  It is essential that these   tools and environments come with adequate logging facilities so that   one can use them for in-depth analysis as well as debugging.   Additional requirements include the ability to support medium- to   large-scale experiments, the ability to quickly and correctly set   various configurations and parameters, as well as to support the   playback of traffic traces captured on a real testbed or network.   Obviously, this does not even begin to touch upon the need for strong   validation of any evaluated implementations.4.2.1.  ndnSIM   The Named Data Networking (NDN) project (http://named-data.net) has   developed ndnSIM [ndnSIM] [ndnSIM2]; this is a module that can be   plugged into the ns-3 simulator (https://www.nsnam.org) and supports   the core features of NDN.  One can use ndnSIM to experiment with   various NDN applications and services as well as components developed   for NDN such as routing protocols and caching and forwarding   strategies, among others.  The code for ns-3 and ndnSIM is openly   available to the community and can be used as the basis for   implementing ICN protocols or applications.  For more details, see   <http://ndnsim.net/2.0/>.Pentikousis, et al.           Informational                    [Page 22]

RFC 7945               ICN Evaluation and Security        September 20164.2.2.  ccnSIM   ccnSim [ccnSim] is a CCN-specific simulator that was specially   designed to handle forwarding of a large number of CCN-chunks   (http://www.infres.enst.fr/~drossi/index.php?n=Software.ccnSim).   ccnSim is written in C++ for the OMNeT++ simulation framework   (https://omnetpp.org).  Other CCN-specific simulators include the CCN   Packet-Level Simulator [CCNPL] and CCN-Joker [Cianci12].  CCN-Joker   emulates in user space all basic aspects of a CCN node (e.g.,   handling of Interest and Data packets, cache sizing, replacement   policies), including both flow and congestion control.  The code is   open source and is suitable for both emulation-based analyses and   real experiments.  Finally, Cabral et al. [MiniCCNx] use container-   based emulation and resource isolation techniques to develop a   prototyping and emulation tool.4.2.3.  Icarus Simulator   The Icarus simulator [ICARUS] focuses on caching in ICN and is   agnostic with respect to any particular ICN implementation.  The   simulator is implemented in Python, uses the Fast Network Simulator   Setup tool [Saino13], and is available at   <http://icarus-sim.github.io>.  Icarus has several caching strategies   implemented, including among others ProbCache [Psaras12], node-   centrality-based caching [Chai12], and hash-route-based caching   [HASHROUT].   ProbCache [Psaras12] is taking a resource management view on caching   decisions and approximates the available cache capacity along the   path from source to destination.  Based on this approximation and in   order to reduce caching redundancy across the path, it caches content   probabilistically.  According to [Chai12], the node with the highest   "betweenness centrality" along the path from source to destination is   responsible for caching incoming content.  Finally, [HASHROUT]   calculates the hash function of a content's name and assigns contents   to caches of a domain according to that.  The hash space is split   according to the number of caches of the network.  Then, upon   subsequent requests, and based again on the hash of the name included   in the request, edge routers redirect requests to the cache assigned   with the corresponding hash space.  [HASHROUT] is an off-path caching   strategy; in contrast to [Psaras12] and [Chai12], it requires minimum   coordination and redirection overhead.  In its latest update, Icarus   also includes implementation of the "Satisfied Interest Table" (SIT)   [Sourlas15].  The SIT points in the direction where content has been   sent recently.  Among other benefits, this enables information   resilience in case of network fragmentation (i.e., content can stillPentikousis, et al.           Informational                    [Page 23]

RFC 7945               ICN Evaluation and Security        September 2016   be found in neighbor caches or in users' devices) and inherently   supports user-assisted caching (i.e., P2P-like content distribution).   Tortelli et al. [ICNSIMS] provide a comparison of ndnSIM, ccnSim, and   Icarus.4.3.  Experimental Facilities   An important consideration in the evaluation of any kind of future   Internet mechanism lies in the characteristics of that evaluation   itself.  Central to the assessment of the features provided by a   novel mechanism is the consideration of how it improves over already   existing technologies, and by "how much".  With the disruptive nature   of clean-slate approaches generating new and different technological   requirements, it is complex to provide meaningful results for a   network-layer framework, in comparison with what is deployed in the   current Internet.  Thus, despite the availability of ICN   implementations and simulators, the need for large-scale environments   supporting experimental evaluation of novel research is of prime   importance to the advancement of ICN deployment.   Different experimental facilities have different characteristics and   capabilities, e.g., having low cost of use, reproducible   configuration, easy-to-use tools, and available background traffic,   and being sharable.4.3.1.  Open Network Lab (ONL)   An example of an experimental facility that supports CCN is the Open   Network Lab [ONL] that currently comprises 18 extensible gigabit   routers and over a 100 computers representing clients and is freely   available to the public for running CCN experiments.  Nodes in ONL   are preloaded with CCNx software.  ONL provides a graphical user   interface for easy configuration and testbed setup as per the   experiment requirements, and also serves as a control mechanism,   allowing access to various control variables and traffic counters.   Further, it is also possible to run and evaluate CCN over popular   testbeds [PLANETLAB] [EMULAB] [DETERLAB] [OFELIA] by directly   running, for example, the CCNx open-source code [Salsano13]   [Carofiglio13] [Awiphan13] [Bernardini14].  Also, the Network   Experimentation Programming Interface (NEPI) [NEPI] is a tool   developed for controlling and managing large-scale network   experiments.  NEPI can be used to control and manage large-scale CCNx   experiments, e.g., on PlanetLab [Quereilhac14].Pentikousis, et al.           Informational                    [Page 24]

RFC 7945               ICN Evaluation and Security        September 20164.3.2.  POINT Testbed   The POINT project is maintaining a testbed with 40 machines across   Europe, North America (Massachusetts Institute of Technology (MIT)),   and Japan (National Institute of Information and Communications   Technology (NICT)) interconnected in a topology containing one   Topology Manager and one rendezvous node that handle all   publish/subscribe and topology formation requests [Parisis13].  All   machines run Blackadder (seeSection 4.1).  New nodes can join, and   experiments can be run on request.4.3.3.  CUTEi: Container-Based ICN Testbed   NICT has also developed a testbed used for ICN experiments [Asaeda14]   comprising multiple servers located in Asia and other locations.   Each testbed server (or virtual machine) utilizes a Linux kernel-   based container (LXC) for node virtualization.  This testbed enables   users to run applications and protocols for ICN in two   experimentation modes using two different container designs:      1.  application-level experimentation using a "common container"          and      2.  network-level experimentation using a "user container."   A common container is shared by all testbed users, and a user   container is assigned to one testbed user.  A common container has a   global IP address to connect with other containers or external   networks, whereas each user container uses a private IP address and a   user space providing a closed networking environment.  A user can   login to his/her user containers using SSH with his/her certificate,   or access them from PCs connected to the Internet using SSH   tunneling.   This testbed also implements an "on-filesystem cache" to allocate   caching data on a UNIX filesystem.  The on-filesystem cache system   accommodates two kinds of caches: "individual cache" and "shared   cache."  Individual cache is accessible for one dedicated router for   the individual user, while shared cache is accessible for a set of   routers in the same group to avoid duplicated caching in the   neighborhood for cooperative caching.5.  Security Considerations   This document does not impact the security of the Internet, butSection 3 outlines security and privacy concerns that might affect a   deployment of a future ICN approach.Pentikousis, et al.           Informational                    [Page 25]

RFC 7945               ICN Evaluation and Security        September 20166.  Informative References   [4WARD6.1] Ohlman, B., et al., "First NetInf Architecture              Description", 4WARD Project Deliverable D-6.1, April 2009.   [4WARD6.3] Ahlgren, B., et al., "NetInf Evaluation", 4WARD Project              Deliverable D-6.3, June 2010.   [Arlitt97] Arlitt, M. and C. Williamson, "Internet web servers:              workload characterization and performance implications",              IEEE/ACM Transactions on Networking, vol. 5, pp. 631-645,              DOI 10.1109/90.649565, 1997.   [Asaeda14] Asaeda, H., Li, R., and N. Choi, "Container-Based Unified              Testbed for Information-Centric Networking", IEEE Network,              vol. 28, no. 6, pp. 60-66, DOI 10.1109/MNET.2014.6963806,              2014.   [Awiphan13]              Awiphan, S., et al., "Video streaming over content centric              networking: Experimental studies on PlanetLab", Proc.              Computing, Communications and IT Applications Conference              (ComComAp), IEEE, DOI 10.1109/ComComAp.2013.6533602, 2013.   [Baccelli14]              Baccelli, E., et al., "Information Centric Networking in              the IoT: Experiments with NDN in the Wild", Proceedings of              the 1st international conference on Information-centric              networking (ICN '14), ACM, DOI 10.1145/2660129.2660144,              2014.   [Barabasi99]              Barabasi, A. and R. Albert, "Emergence of Scaling in              Random Networks", Science, vol. 286, no. 5439, pp.              509-512, DOI 10.1126/science.286.5439.509, 1999.   [Barford98]              Barford, P. and M. Crovella, "Generating representative              web workloads for network and server performance              evaluation", in ACM SIGMETRICS '98 / PERFORMANCE '98, pp.              151-160, DOI 10.1145/277851.277897, 1998.   [Barford99]              Barford, P., Bestavros, A., Bradley, A., and M. Crovella,              "Changes in web client access patterns: Characteristics              and caching implications", World Wide Web, vol. 2, pp.              15-28, DOI 10.1023/A:1019236319752, 1999.Pentikousis, et al.           Informational                    [Page 26]

RFC 7945               ICN Evaluation and Security        September 2016   [Bellissimo04]              Bellissimo, A., Levine, B., and P. Shenoy, "Exploring the              Use of BitTorrent as the Basis for a Large Trace              Repository", University of Massachusetts Amherst, Tech.              Rep. 04-41, 2004.   [Bernardini14]              Bernardini, C., et al., "Socially-aware caching strategy              for content centric networking", Proc. IFIP Networking              Conference, DOI 10.1109/IFIPNetworking.2014.6857093, 2014.   [Blefari-Melazzi12]              Blefari Melazzi, N., et al., "Scalability Measurements in              an Information-Centric Network", Springer Lecture Notes in              Computer Science (LNCS), vol. 7586,              DOI 10.1007/978-3-642-41296-7_6, 2012.   [Breslau99]              Breslau, L., Cao, P., Fan, L., Phillips, G., and S.              Shenker, "Web caching and zipf-like distributions:              evidence and implications", Proc. of INFOCOM '99, New York              (NY), USA, DOI 10.1109/INFCOM.1999.749260, March 1999.   [Busari02] Busari, M. and C. Williamson, "ProWGen: a synthetic              workload generation tool for simulation evaluation of web              proxy caches", Computer Networks, vol. 38, no. 6, pp.              779-794, DOI 10.1016/S1389-1286(01)00285-7, 2002.   [Carofiglio11]              Carofiglio, G., Gallo, M., Muscariello, L., and D. Perino,              "Modeling Data Transfer in Content-Centric Networking",              Proceedings of the 23rd International Teletraffic Congress              (ITC '11), San Francisco, USA, September 2011.   [Carofiglio13]              Carofiglio, G., et al., "Optimal multipath congestion              control and request forwarding in Information-Centric              Networks", Proc. 2013 21st IEEE International Conference              on Network Protocols (ICNP),              DOI 10.1109/ICNP.2013.6733576, 2013.   [CCNPL]    Institut de Recherche Technologique (IRT) SystemX, "CCNPL-              SIM", <http://systemx.enst.fr/ccnpl-sim>.   [ccnSim]   Rossini, G. and D. Rossi, "Large scale simulation of CCN              networks", Proc. AlgoTel 2012, La Grande Motte, France,              May 2012.Pentikousis, et al.           Informational                    [Page 27]

RFC 7945               ICN Evaluation and Security        September 2016   [Cha07]    Cha, M., Kwak, H., Rodriguez, P., Ahn, Y.-Y., and S. Moon,              "I tube, you tube, everybody tubes: analyzing the world's              largest user generated content video system", Proceedings              of the 7th ACM SIGCOMM conference on Internet measurement              (IMC '07), San Diego (CA), USA,              DOI 10.1145/1298306.1298309, October 2007.   [Chaabane13]              Chaabane, A., De Cristofaro, E., Kaafar, M., and E. Uzun,              "Privacy in Content-Oriented Networking: Threats and              Countermeasures", ACM SIGCOMM Computer Communication              Review, Vol. 43, Issue 3, DOI 10.1145/2500098.2500102,              July 2013.   [Cheng08]  Cheng, X., Dale, C., and J. Liu, "Statistics and social              network of YouTube videos", 16th International Workshop on              Quality of Service (IWQoS 2008), IEEE, pp. 229-238,              DOI 10.1109/IWQOS.2008.32, 2008.   [Cheng13]  Cheng, X., Liu, J., and C. Dale, "Understanding the              Characteristics of Internet Short Video Sharing: YouTube              as a Case Study", IEEE Transactions on Multimedia, vol.              15, issue 5, DOI 10.1109/TMM.2013.2265531, 2013.   [Chai12]   Chai, W., He, D., Psaras, I., and G. Pavlou, "Cache 'Less              for More' in Information-centric Networks", Proceedings of              the 11th international IFIP TC 6 conference on Networking              (IFIP '12), DOI 10.1007/978-3-642-30045-5_3, 2012.   [Cianci12] Cianci, I. et al. "CCN - Java Opensource Kit EmulatoR for              Wireless Ad Hoc Networks", Proc. of the 7th International              Conference on Future Internet Technologies (CFI '12),              Seoul, Korea, DOI 10.1145/2377310.2377313, September 2012.   [CMT-D5.2] Beben, A., et al., "Scalability of COMET System", COMET              Project Deliverable D5.2, February 2013.   [CMT-D6.2] Georgiades, M., et al., "Prototype Experimentation and              Demonstration", COMET Project Deliverable D6.2, February              2013.   [Dannewitz10]              Dannewitz, C., Golic, J., Ohlman, B., B. Ahlgren, "Secure              Naming for A Network of Information", IEEE Conference on              Computer Communications Workshops (INFOCOM), San Diego,              CA, DOI 10.1109/INFCOMW.2010.5466661, March 2010.Pentikousis, et al.           Informational                    [Page 28]

RFC 7945               ICN Evaluation and Security        September 2016   [DETERLAB] Benzel, T., "The Science of Cyber-Security              Experimentation: The DETER Project", Proceedings of the              27th Annual Computer Security Applications Conference              (ACSAC '11), DOI 10.1145/2076732.2076752, December 2011.   [Dimitropoulos09]              Dimitropoulos, X., et al., "Graph annotations in modeling              complex network topologies", ACM Transactions on Modeling              and Computer Simulation (TOMACS), vol. 19, no. 4,              DOI 10.1145/1596519.1596522, November 2009.   [DONA]     Koponen, T., et al., "A Data-Oriented (and Beyond) Network              Architecture", Proceedings of the 2007 conference on              Applications, technologies, architectures, and protocols              for computer communications (SIGCOMM '07), ACM,              DOI 10.1145/1282380.1282402, 2007.   [EMULAB]   Eide, E., et al., "An Experimentation Workbench for              Replayable Networking Research", Proceedings of the 4th              USENIX conference on Networked systems design &              implementation (NSDI '07), 2007.   [Fotiou12] Fotiou, N., et al., "Access control enforcement delegation              for information-centric networking architectures",              Proceedings of the second edition of the ICN workshop on              Information-centric networking (ICN '12), ACM,              DOI 10.1145/2342488.2342507, 2012.   [Fotiou14] Fotiou, N., et al., "A framework for privacy analysis of              ICN architectures", Proc. Second Annual Privacy Forum              (APF), Springer, DOI 10.1007/978-3-319-06749-0_8, 2014.   [Fri12]    Fricker, C., Robert,  P., Roberts, J. and N. Sbihi,              "Impact of traffic mix on caching performance in a              content-centric network", 2012 IEEE Conference on Computer              Communications Workshops (INFOCOM WKSHPS), Orlando, USA,              DOI 10.1109/INFCOMW.2012.6193511, March 2012.   [Goog08]   Google, "Official Google Blog: We knew the web was              big...", July 2008, <http://googleblog.blogspot.it/2008/07/we-knew-web-was-big.html>.   [Guo07]    Guo, L., Chen, S., Xiao, Z., Tan, E., Ding, X., and X.              Zhang, "A performance study of BitTorrent-like peer-to-              peer systems", IEEE Journal on Selected Areas in              Communication, vol. 25, no. 1, pp. 155-169,              DOI 10.1109/JSAC.2007.070116, 2007.Pentikousis, et al.           Informational                    [Page 29]

RFC 7945               ICN Evaluation and Security        September 2016   [HASHROUT] Saino, L., Psaras, I., and G. Pavlou, "Hash-routing              Schemes for Information-Centric Networking", Proceedings              of the 3rd ACM SIGCOMM workshop on Information-centric              networking (ICN '13), DOI 10.1145/2491224.2491232, 2013.   [Hefeeda08]              Hefeeda, M. and O. Saleh, "Traffic Modeling and              Proportional Partial Caching for Peer-to-Peer Systems",              IEEE/ACM Transactions on Networking, vol. 16, no. 6, pp.              1447-1460, DOI 10.1109/TNET.2008.918081, 2008.   [ICARUS]   Saino, L., Psaras, I., and G. Pavlou, "Icarus: a Caching              Simulator for Information Centric Networking (ICN)",              Proceedings of the 7th International ICST Conference on              Simulation Tools and Techniques (SimuTools '14),              DOI 10.4108/icst.simutools.2014.254630, 2014.   [Detti12]  Detti, A., et al., "Supporting the Web with an Information              Centric Network that Routes by Name", Elsevier Computer              Networks, vol. 56, no. 17,              DOI 10.1016/j.comnet.2012.08.006, November 2012.   [ICNSIMS]  Tortelli, M., et al., "CCN Simulators: Analysis and Cross-              Comparison", Proceedings of the 1st international              conference on Information-centric networking (ICN '14),              ACM, DOI 10.1145/2660129.2660133, 2014.   [IMB2014]  Imbrenda, C., Muscariello, L., and D. Rossi, "Analyzing              Cacheable Traffic in ISP Access Networks for Micro CDN              Applications via Content-Centric Networking", Proceedings              of the 1st international conference on Information-centric              networking (ICN '14), DOI 10.1145/2660129.2660146, 2014.   [Ion13]    Ion, M., Zhang, J., and E. Schooler, "Toward content-              centric privacy in ICN: attribute-based encryption and              routing", Proceedings of the ACM SIGCOMM 2013 conference              on SIGCOMM (SIGCOMM '13), ACM,              DOI 10.1145/2486001.2491717, 2013.   [Jacobson09]              Jacobson, V., et al., "Networking Named Content",              Proceedings of the 5th international conference on              Emerging networking experiments and technologies (CoNEXT              '09), DOI 10.1145/1658939.1658941, 2009.Pentikousis, et al.           Informational                    [Page 30]

RFC 7945               ICN Evaluation and Security        September 2016   [Katsaros12]              Katsaros, K., Xylomenos, G., and G. Polyzos, "GlobeTraff:              a traffic workload generator for the performance              evaluation of future Internet architectures", 2012 5th              International Conference on New Technologies, Mobility and              Security (NTMS), DOI 10.1109/NTMS.2012.6208742, 2012.   [Katsaros15]              Katsaros, K., et al., "On the Inter-domain Scalability of              Route-by-Name Information-Centric Network Architectures",              Proc. IFIP Networking Conference,              DOI 10.1109/IFIPNetworking.2015.7145308, 2015.   [Kaune09]  Kaune, S. et al., "Modelling the Internet Delay Space              Based on Geographical Locations", 17th Euromicro              International Conference on Parallel, Distributed and              Network-based Processing, Weimar, Germany,              DOI 10.1109/PDP.2009.44, 2009.   [Labovitz10]              Labovitz, C., Iekel-Johnson, S., McPherson, D., Oberheide,              J., and F. Jahanian, "Internet inter-domain traffic", In              Proceedings of the ACM SIGCOMM 2010 conference (SIGCOMM              DOI 10.1145/1851182.1851194, 2010.   [Lauinger10]              Lauinger, T., "Security and Scalability of Content-Centric              Networking", Masters Thesis, Technische Universitaet              Darmstadt and Eurecom, September 2010.   [Lauinger12]              Lauinger, Y., et al, "Privacy Risks in Named Data              Networking: What is the Cost of Performance?", ACM SIGCOMM              Computer Communication Review, Vol. 42, Issue 5,              DOI 10.1145/2378956.2378966, 2012.   [Led12]    Lederer, S., Muller, C., and C. Timmerer, "Dynamic              adaptive streaming over HTTP dataset", Proceedings of the              ACM Multimedia Systems Conference (MMSys '12), pp. 89-94,              DOI 10.1145/2155555.2155570, 2012.   [Lewko11]  Lewko, A. and B. Waters, "Decentralizing attribute-based              encryption", Proc. of EUROCRYPT 2011, Lecture Notes in              Computer Science (LNCS), vol. 6632, pp. 568-588,              DOI 10.1007/978-3-642-20465-4_31, 2011.Pentikousis, et al.           Informational                    [Page 31]

RFC 7945               ICN Evaluation and Security        September 2016   [LIRA]     Psaras, I., Katsaros, K., Saino, L., and G. Pavlou, "Lira:              A location independent routing layer based on source-              provided ephemeral names", Electronic and Electrical Eng.              Dept., UCL, London, UK, Tech. Rep. 2014,              <http://www.ee.ucl.ac.uk/comit-project/publications.html>.   [Mahanti00]              Mahanti, A., Williamson, C., and D. Eager., "Traffic              analysis of a web proxy caching hierarchy", IEEE Network,              Vol. 14, No. 3, pp. 16-23, DOI 10.1109/65.844496, May/June              2000.   [Maier09]  Maier, G., Feldmann, A., Paxson, V., and M. Allman, "On              dominant characteristics of residential broadband internet              traffic", In Proceedings of the 9th ACM SIGCOMM conference              on Internet measurement conference (IMC '09), New York,              NY, USA, 90-102. DOI 10.1145/1644893.1644904, 2009.   [Marciniak08]              Marciniak, P., Liogkas, N., Legout, A., and E. Kohler,              "Small is not always beautiful",  In Proc. of IPTPS,              International Workshop of Peer-to-Peer Systems, Tampa Bay,              Florida (FL), USA, February 2008.   [MiniCCNx] Cabral, C., et al., "High fidelity content-centric              experiments with Mini-CCNx", 2014 IEEE Symposium on              Computers and Communications (ISCC),              DOI 10.1109/ISCC.2014.6912537, 2014.   [Montage]  Hussain, A. and J. Chen, "Montage Topology Manager: Tools              for Constructing and Sharing Representative Internet              Topologies", DETER Technical Report, ISI-TR-684, August              2012.   [Muscariello11]              Muscariello, L., Carofiglio, G., and M. Gallo, "Bandwidth              and storage sharing performance in information centric              networking", Proceedings of the ACM SIGCOMM workshop on              Information-centric networking (ICN '11),              DOI 10.1145/2018584.2018593, 2011.   [ndnSIM]   Afanasyev, A., et al., "ndnSIM: NDN simulator for NS-3",              NDN Technical Report NDN-0005, Revision 2, October 2012.   [ndnSIM2]  Mastorakis, S., et al., "ndnSIM 2.0: A new version of the              NDN simulator for NS-3", NDN Technical Report NDN-0028,              Revision 1, January 2015.Pentikousis, et al.           Informational                    [Page 32]

RFC 7945               ICN Evaluation and Security        September 2016   [NEPI]     Quereilhac, A., et al., "NEPI: An integration framework              for Network Experimentation", 2011 19th International              Conference on Software, Telecommunications and Computer              Networks (SoftCOM), IEEE, 2011.   [OFELIA]   Sune, M., et al., "Design and implementation of the OFELIA              FP7 facility: The European OpenFlow testbed", Computer              Networks, vol. 61, pp. 132-150,              DOI 10.1016/j.bjp.2013.10.015, March 2014.   [ONL]      DeHart, J., et al., "The open network laboratory: a              resource for networking research and education", ACM              SIGCOMM Computer Communication Review (CCR), vol. 35, no.              5, pp. 75-78, DOI 10.1145/1096536.1096547, 2005.   [Parisis13]              Parisis, G., Trossen, D., and H. Asaeda, "A Node Design              and a Framework for Development and Experimentation for an              Information-Centric Network", IEICE Transactions on              Communications, vol. E96-B, no. 7, pp. 1650-1660, July              2013.   [Perino11] Perino, D. and M. Varvello, "A Reality Check for Content              Centric Networking", Proceedings of the ACM SIGCOMM              workshop on Information-centric networking (ICN '11),              DOI 10.1145/2018584.2018596, 2011.   [PLANETLAB]              Chun, B., et al., "Planetlab: an overlay testbed for              broad-coverage services", ACM SIGCOMM Computer              Communication Review (CCR), vol. 33, no. 3, pp. 3-12,              DOI 10.1145/956993.956995, 2003.   [PRST4.5]  Riihijarvi, J., et al., "Final Architecture Validation and              Performance Evaluation Report", PURSUIT Project              Deliverable D4.5, January 2013.   [Psaras11] Psaras, I., Clegg, R., Landa, R., Chai, W., Pavlou, G.,              "Modelling and Evaluation of CCN-Caching Trees",              Proceedings of the 10th international IFIP TC 6 conference              on Networking, Valencia, Spain, May 2011.   [Psaras12] Psaras, I., Chai, W., and G. Pavlou, "Probabilistic In-              Network Caching for Information-Centric Networks",              Proceedings of the second edition of the ICN workshop on              Information-centric networking (ICN '12),              DOI 10.1145/2342488.2342501, 2012.Pentikousis, et al.           Informational                    [Page 33]

RFC 7945               ICN Evaluation and Security        September 2016   [Quereilhac14]              Quereilhac, A., et al., "Demonstrating a unified ICN              development and evaluation framework", Proceedings of the              1st international conference on Information-centric              networking (ICN '14), ACM, DOI 10.1145/2660129.2660132,              2014.   [Renault09]              Renault, E., Ahmad, A., and M. Abid, "Toward a Security              Model for the Future Network of Information", Proceedings              of the 4th International Conference on Ubiquitous              Information Technologies & Applications (ICUT '09), IEEE,              DOI 10.1109/ICUT.2009.5405676, 2009.   [RFC2330]  Paxson, V., Almes, G., Mahdavi, J., and M. Mathis,              "Framework for IP Performance Metrics",RFC 2330,              DOI 10.17487/RFC2330, May 1998,              <http://www.rfc-editor.org/info/rfc2330>.   [RFC5743]  Falk, A., "Definition of an Internet Research Task Force              (IRTF) Document Stream",RFC 5743, DOI 10.17487/RFC5743,              December 2009, <http://www.rfc-editor.org/info/rfc5743>.   [RFC6920]  Farrell, S., Kutscher, D., Dannewitz, C., Ohlman, B.,              Keranen, A., and P. Hallam-Baker, "Naming Things with              Hashes",RFC 6920, DOI 10.17487/RFC6920, April 2013,              <http://www.rfc-editor.org/info/rfc6920>.   [RFC7476]  Pentikousis, K., Ed., Ohlman, B., Corujo, D., Boggia, G.,              Tyson, G., Davies, E., Molinaro, A., and S. Eum,              "Information-Centric Networking: Baseline Scenarios",RFC 7476, DOI 10.17487/RFC7476, March 2015,              <http://www.rfc-editor.org/info/rfc7476>.   [RFC7927]  Kutscher, D., Ed., Eum, S., Pentikousis, K., Psaras, I.,              Corujo, D., Saucez, D., Schmidt, T., and M. Waehlisch,              "Information-Centric Networking (ICN) Research              Challenges",RFC 7927, DOI 10.17487/RFC7927, July 2016,              <http://www.rfc-editor.org/info/rfc7927>.   [RFC7933]  Westphal, C., Ed., Lederer, S., Posch, D., Timmerer, C.,              Azgin, A., Liu, W., Mueller, C., Detti, A., Corujo, D.,              Wang, J., Montpetit, M., and N. Murray, "Adaptive Video              Streaming over Information-Centric Networking (ICN)",RFC 7933, DOI 10.17487/RFC7933, August 2016,              <http://www.rfc-editor.org/info/rfc7933>.Pentikousis, et al.           Informational                    [Page 34]

RFC 7945               ICN Evaluation and Security        September 2016   [SAIL-B2]  SAIL, "NetInf Content Delivery and Operations", SAIL              Project Deliverable D-B.2, May 2012.   [SAIL-B3]  Kutscher, D., Ed., et al., "Final NetInf Architecture",              SAIL Project Deliverable D-B.3, January 2013,              <http://www.sail-project.eu/deliverables/>.   [Saino13]  Saino, L., Cocora, C., and G. Pavlou, "A Toolchain for              Simplifying Network Simulation Setup", Proceedings of the              6th International ICST Conference on Simulation Tools and              Techniques (SimuTools '13), 2013.   [Saleh06]  Saleh, O., and M. Hefeeda, "Modeling and caching of peer-              to-peer traffic", Proceedings of the 2006 IEEE              International Conference on Network Protocols (ICNP),              DOI 10.1109/ICNP.2006.320218, 2006.   [Salsano12]              Salsano, S., et al., "Transport-Layer Issues in              Information Centric Networks", Proceedings of the second              edition of the ICN workshop on Information-centric              networking (ICN '12), ACM, DOI 10.1145/2342488.2342493,              2012.   [Salsano13]              Salsano, S., et al., "Information Centric Networking over              SDN and OpenFlow: Architectural Aspects and Experiments on              the OFELIA Testbed", Computer Networks, vol. 57, no. 16,              pp. 3207-3221, DOI 10.1016/j.comnet.2013.07.031, November              2013.   [SensReqs] Karnouskos, S., et al., "Requirement considerations for              ubiquitous integration of cooperating objects", 2011 4th              IFIP International Conference on New Technologies,              Mobility and Security (NTMS),              DOI 10.1109/NTMS.2011.5720605, 2011.   [Smetters09]              Smetters, D., and V. Jacobson, "Securing network content",              Technical Report TR-2009-01, PARC, 2009.   [Sourlas15]              Sourlas, V., Tassiulas, L., Psaras, I., and G. Pavlou,              "Information Resilience through User-Assisted Caching in              Disruptive Content-Centric Networks", 14th IFIP Networking              Conference, Toulouse, France,              DOI 10.1109/IFIPNetworking.2015.7145301, May 2015.Pentikousis, et al.           Informational                    [Page 35]

RFC 7945               ICN Evaluation and Security        September 2016   [Tagger12] Tagger, B., et al., "Update on the Architecture and Report              on Security Analysis", Deliverable 2.4, PURSUIT EU FP7              project, April 2012.   [Tourani16]              Tourani, R., Mick, T., Misra, S., and G. Panwar,              "Security, Privacy, and Access Control in Information-              Centric Networking: A Survey", arXiv:1603.03409, March              2016.   [VoCCN]    Jacobson, V., et al., "VoCCN: Voice-over Content-Centric              Networks", Proceedings of the 2009 workshop on Re-              architecting the internet (ReArch '09),              DOI 10.1145/1658978.1658980, 2009.   [Watts98]  Watts, D. J. and S. H. Strogatz, "Collective dynamics of              'small-world' networks", Nature, vol. 393, no. 6684, pp.              440-442, DOI 10.1038/30918, April 1998.   [Yu06]     Yu, H., Zheng, D., Zhao, B., and W. Zheng, "Understanding              user behavior in large-scale video-on-demand systems", ACM              SIGOPS Operating Systems Review - Proceedings of the 2006              EuroSys conference, Vol. 40, Issue 4, pp. 333-344,              DOI 10.1145/1218063.1217968, April 2006.   [Zhang10a] Zhang, C., Dhungel, P., Wu, D., and K. Ross, "Unraveling              the BitTorrent Ecosystem", IEEE Transactions on Parallel              and Distributed Systems, vol. 22, issue 7, pp. 1164-1177,              DOI 10.1109/TPDS.2010.123, 2010.   [Zhang10b] Zhang, L., et al., "Named Data Networking (NDN) Project",              NDN Technical Report NDN-0001, October 2010,              <http://named-data.net/publications/techreports/>.   [Zhou11]   Zhou, J., Li,  Y., Adhikari, K., and Z.-L. Zhang,              "Counting YouTube videos via random prefix sampling",              Proceedings of the 2011 ACM SIGCOMM conference on Internet              measurement conference (IMC '11), Berlin, Germany,              DOI 10.1145/2068816.2068851, November 2011.Pentikousis, et al.           Informational                    [Page 36]

RFC 7945               ICN Evaluation and Security        September 2016Acknowledgments   Konstantinos Katsaros contributed the updated text ofSection 2.2   along with an extensive set of references.   Priya Mahadevan, Daniel Corujo, and Gareth Tyson contributed to a   draft version of this document.   This document has benefited from reviews, pointers to the growing ICN   literature, suggestions, comments, and proposed text provided by the   following members of the IRTF Information-Centric Networking Research   Group (ICNRG), listed in alphabetical order: Marica Amadeo, Hitoshi   Asaeda, E. Baccelli, Claudia Campolo, Christian Esteve Rothenberg,   Suyong Eum, Nikos Fotiou, Dorothy Gellert, Luigi Alfredo Grieco,   Myeong-Wuk Jang, Ren Jing, Will Liu, Antonella Molinaro, Luca   Muscariello, Ioannis Psaras, Dario Rossi, Stefano Salsano, Damien   Saucez, Dirk Trossen, Jianping Wang, Yuanzhe Xuan, and Xinwen Zhang.   The IRSG review was provided by Aaron Falk.Pentikousis, et al.           Informational                    [Page 37]

RFC 7945               ICN Evaluation and Security        September 2016Authors' Addresses   Kostas Pentikousis (editor)   Travelping   Koernerstr. 7-10   10785 Berlin   Germany   Email: k.pentikousis@travelping.com   Borje Ohlman   Ericsson Research   S-16480 Stockholm   Sweden   Email: Borje.Ohlman@ericsson.com   Elwyn Davies   Trinity College Dublin/Folly Consulting Ltd   Dublin, 2   Ireland   Email: davieseb@scss.tcd.ie   Spiros Spirou   Intracom Telecom   19.7 km Markopoulou Avenue   19002 Peania, Athens   Greece   Email: spis@intracom-telecom.com   Gennaro Boggia   Dept. of Electrical and Information Engineering   Politecnico di Bari   Via Orabona 4   70125 Bari   Italy   Email: g.boggia@poliba.itPentikousis, et al.           Informational                    [Page 38]

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