From asr32@cornell.edu Mon Apr 10 23:54:17 2006 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.1.0 (2005-09-13) on sundial.cs.cornell.edu X-Spam-Status: No, score=-2.1 required=5.0 tests=AWL,BAYES_00 autolearn=ham version=3.1.0 X-Spam-Level: Received: from authusersmtp.mail.cornell.edu (granite1.mail.cornell.edu [128.253.83.141]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3B3sH226049 for ; Mon, 10 Apr 2006 23:54:17 -0400 (EDT) Received: from dreadnought.cornell.edu (r253240123.resnet.cornell.edu [128.253.240.123]) (authenticated bits=0) by authusersmtp.mail.cornell.edu (8.13.1/8.12.10) with ESMTP id k3B3sG8M000435 (version=TLSv1/SSLv3 cipher=DHE-RSA-AES256-SHA bits=256 verify=NOT) for ; Mon, 10 Apr 2006 23:54:16 -0400 (EDT) Message-Id: <6.2.1.2.2.20060410214339.01e7ed70@postoffice8.mail.cornell.edu> X-Mailer: QUALCOMM Windows Eudora Version 6.2.1.2 Date: Mon, 10 Apr 2006 23:54:16 -0400 To: egs+summary@cs.cornell.edu From: Ari Rabkin Subject: PAPER 20 Mime-Version: 1.0 Content-Type: text/plain; charset="us-ascii"; format=flowed Scribe is an application-layer multicast system layered on top of pastry. A single node is chosen as the rendesvous point for a multicast group. Nodes build routes to the rendezvous; due to the structure of pastry, these routes will tend to converge well before the rendezvous point, keeping the outdegree of the rendezvous bounded. To multicast to the group, a message is sent directly to the rendezvous, which then broadcasts it down the tree. Scribe thus elegantly leverages the locality and routing properties of the underlying Pastry. Scribe comes with no guarantees about performance--the fact that Pastry works well is purely shown by empirical testing, and may not be true under all circumstances. The Scribe system is nearly useless for any application where Pastry is unsuitable. No provision is made for strong reliability guarantees--including tolerating failure of the rendezvous node and including global ordering guarantees. The rendezvous node cannot be easily chosen, and may be overloaded if a given group has high traffic. Siena is a broad outline for a peer-to-peer pub-sub system. The Siena architecture is applicable to both hierarchic and unstructured systems, though the authors give a convincing argument for why a peer-to-peer system would be expected to perform better under many circumstances: information about what requests are available is pushed closer to the message senders, rather than having the root be in the path for almost every notification. Siena is agnostic both to lower-level protocol and to details of topology: it is the outline of a system, rather than an actually-developed system. It does, however, include a fairly powerful language for describing events and filters for them. Siena is wrong to assume that the only options are a single hierarchy and an unstructured mesh--structuring the overlay might buy important dividends. Siena provides only best-effort, without any guarantees about delivery or ordering. The system does not include robust failure-handing mechanisms, nor does it actively load-balance. Ari Rabkin asr32@cornell.edu Risley Hall 454 3-2842 The resources of civilization are not yet exhausted. --William Gladstone From sh366@cornell.edu Tue Apr 11 01:51:14 2006 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.1.0 (2005-09-13) on sundial.cs.cornell.edu X-Spam-Status: No, score=-2.3 required=5.0 tests=AWL,BAYES_00 autolearn=ham version=3.1.0 X-Spam-Level: Received: from postoffice10.mail.cornell.edu (postoffice10.mail.cornell.edu [132.236.56.14]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3B5pD219775 for ; Tue, 11 Apr 2006 01:51:13 -0400 (EDT) Received: from orpheus3.dataserver.cornell.edu (orpheus3.dataserver.cornell.edu [128.253.161.167]) by postoffice10.mail.cornell.edu (8.12.10/8.12.6) with ESMTP id k3B5pDI5029363 for ; Tue, 11 Apr 2006 01:51:14 -0400 (EDT) Message-ID: <1497899405.1144734672438.JavaMail.webber@orpheus3.dataserver.cornell.edu> Date: Tue, 11 Apr 2006 01:51:12 -0400 (EDT) From: Huang Shiang-Jia To: egs+summary@cs.cornell.edu Subject: PAPER 20 Mime-Version: 1.0 Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit X-Mailer: uPortal WEB email client 3.0 Publisher/Subscriber Event Notification Service: (1) A large scale system is generally developed and designed by means of the integration of components while the interaction among components is modeled with events. (2) Two kinds of clients: 'publishers' of events and 'subscribers' for notifications, are involved in such an event notification system. (3) An event notification service complements multicast systems by offering a many-to-many communication and integration facility. * Siena (Scalable Internet Event Notification Architectures) is a scalable and distributed publish/subscribe event-notification service. * Due to the asynchrony and heterogeneity properties of applications in a wide-area network, the event notification service is advantageous to remote invocation mechanisms because it increases the degree of de-coupling among components, hence eliminating static dependencies and improving interoperability. * Siena is implemented as a set of servers that provide access points to clients. Clients use them (a) to advertise information about their events and publish related notifications and (b) to subscribe for notifications of interest. The service uses them to deliver notifications. * Two primary services are provided by Siena. The first is "notification selection": matching of the published events to the subscriptions. The second is "notification delivery": routing matching notifications from publishers to subscribers. * The challenge is 'expressiveness' in the selection mechanism: the ability to provide a data model with which to capture information about events, to express filters and patterns on notifications of interest, and to optimize the delivery of event notification based on that data model. The efficiency of the service is affected by the power of the language used to construct events and to express filters and patterns. * The experimental results show that the peer-to-peer architecture is superior to hierarchical architecture in the scenarios where the total cost is dominated by notifications, especially when the total number of notifications exceeds the number of consumed notifications. It is worse when there are low densities of clients that subscribe frequently. * Future work of the publish/subscribe service includes security and reliability of the system as well as mobility of clients, etc. * Scribe is an application-level multicast infrastructure layered on top of Pastry. In Scribe, multicast messages are delivered within a 'group'. A multicast tree is built per group, based on the self-organization, locality and fault tolerance properties of Pastry. * Each Scribe group had a groupId. The Scribe node whose nodeId is numerically closest to the groupId acts as a rendezvous point for that group. As the groupId is a hash and supposed to be uniformly distributed over the nodes, this scheme balances the load of multicast roots among all participants. * The message forwarder of a Scribe group may or may not be a member of the group. When a node issues a Join message to the rendezvous point of a Scribe group, the nodes along the routing path that is not a forwarder of that group now becomes a forwarder of it. Multicast messages are delivered to the rendezvous point and then disseminated by the forwarders to all members in this group. Pastry's randomization properties ensure that the forwarding load is evenly balanced across all nodes. From lackhand@gmail.com Tue Apr 11 02:20:10 2006 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.1.0 (2005-09-13) on sundial.cs.cornell.edu X-Spam-Status: No, score=-1.2 required=5.0 tests=AWL,BAYES_00,HTML_00_10, HTML_MESSAGE autolearn=no version=3.1.0 X-Spam-Level: Received: from penguin.cs.cornell.edu (penguin.cs.cornell.edu [128.84.96.11]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3B6K9226584 for ; Tue, 11 Apr 2006 02:20:09 -0400 (EDT) Received: from pproxy.gmail.com ([64.233.166.181]) by penguin.cs.cornell.edu with Microsoft SMTPSVC(6.0.3790.1830); Tue, 11 Apr 2006 02:12:18 -0400 Received: by pproxy.gmail.com with SMTP id c30so1202117pyc for ; Mon, 10 Apr 2006 23:12:18 -0700 (PDT) DomainKey-Signature: a=rsa-sha1; q=dns; c=nofws; s=beta; d=gmail.com; h=received:message-id:date:from:to:subject:mime-version:content-type; b=Ng8pjNlMqm8GyZ42oULqInbqxPQo5gIwzJV9BYXCKSSv1gXFQFOCnHQW5G2ZZ/7zC0ef5Lco6tX34V25xyu91kitBKtijy9/X9NA20v1cCZmp6pFKypdAdFdm3fynhfHnmvKuvoUHST4ZcimRnWmBf0X5OxXsf1VQh2joE4i1/4= Received: by 10.35.82.15 with SMTP id j15mr25526pyl; Mon, 10 Apr 2006 22:45:56 -0700 (PDT) Received: by 10.35.125.16 with HTTP; Mon, 10 Apr 2006 22:45:56 -0700 (PDT) Message-ID: <9aa7a97d0604102245w38264508y4d668c2d116de536@mail.gmail.com> Date: Tue, 11 Apr 2006 01:45:56 -0400 From: "Andrew Cunningham" To: egs+summary@cs.cornell.edu Subject: PAPER 20 MIME-Version: 1.0 X-Security: message sanitized on sundial.cs.cornell.edu See http://www.impsec.org/email-tools/sanitizer-intro.html for details. $Revision: 1.148 $Date: 2004-12-19 11:59:17-08 X-Security: The postmaster has not enabled quarantine of poisoned messages. Content-Type: multipart/alternative; boundary="----=_Part_933_5062188.1144734356301" X-OriginalArrivalTime: 11 Apr 2006 06:12:19.0029 (UTC) FILETIME=[E3519050:01C65D2E] ------=_Part_933_5062188.1144734356301 Content-Type: text/plain; charset=ISO-8859-1 Content-Disposition: inline Content-Transfer-Encoding: quoted-printable Andrew Cunningham arc39 SCRIBE: A large-scale and decentralized application-level multicast infrastructure Miguel Castro, Peter Druschel, Anne-Marie Kermarrec and Antony Rowstron Built atop Pastry, Scribe permits large number of multicast groups, wit= h potentially giant membership sizes. It inherits directly Pastry's reliability, self-organization, and locality properties, and uses the consistent hashing scheme to create and manage groups, and Pastry's message routing to build efficient multicast trees for the dissemination of message= s to each group. Scribe provides best-effort reliability, though could be extended to provide better reliability. It uses a traditional Pastry model, but with the addition of several message types to facilitate broadcast. To join a broadcast group, a message is routed to the node whose nodeID lies closest to the group identifier, and the hops taken are cached so that responses may flow back along the channel thus created. The group identifie= r could be created in a variety of ways, the easiest of which would be to tak= e the ID of the creating node and concatenate some group identifier (making the tree efficient for the publisher), or to reverse the order of concatenation, to remove load. Scribe also handles tree repair (in a heartbeat-based failure detection system) and root repair (though precise algorithm is left unspecified). Scribe has the advantage of being an incredibly simple algorithm. It is in many ways merely an application built on Pastry -- merely being the operative word here, because much of its good behavior can be simply inherited. The real places that it surpasses its substrate are in specific application -- whose design seems obvious, due to the limited number of way= s of acheiving it, and the order in which the papers were read -- and in the tree maintenance and repair steps, which are not ground breaking, but are better documented in this paper than elsewhere and seem entirely sufficient= . One of the major findings of Scribe's experimental data was that it did not behave well in the presence of a large number of small-sized groups. This i= s perfectly acceptable, once this information is known, but seems somewhat counterintuitive, as smaller groups (in theory!) involve fewer nodes and links, and thus lesser load. Their special case solution to this problem is somewhat worrisome, as it is underspecified and seems to indicate growing a node's outdegree to match membership in the group (under the collapsed system). This would seem to indicate that a sudden spike in popularity migh= t cause instability at some nodes as their outdegree grows; this might cause them to crash, creating a cascading effect. While I'm sure that this is taken into account, the paper does not mention this, but it may be a flaw specifically introduced by an otherwise benign fix. Design and Evaluation of a Wide Area Event Notification Service Antonio Carzaniga, David S. Rosenblum, Alexander L. Wolf Much more expansive than strictly necessary, this paper delves into the minutiae of its logical model for providing a publish/subscribe framework. It does this by providing agreed upon datatypes, which permit fields to be generated for messages, which permit filters (and compositions of filters) to be applied, thus representing a sort of search on desired terms and data= . It uses a relatively unstructured network, in that subscriptions are pushed as far towards the publisher as possible -- as are filters, thus saving bandwidth -- and advertisements are sent as far down, towards consumers, as possible. This push and pull guarantees both coverage and reasonable performance. Much of the paper is devoted to the semantics of the query language and the concepts of a publish/subscribe system, which was unfortunate as this space could perhaps have been better allocated several different ways. Also, the paper establishes the performance models of hierarchical systems vis-a-vis peer to peer ones, resulting in the finding that hierarchical systems perform well for modest numbers of clients who experience thrash, subscribing and unsubscribing quickly, while peer to pee= r systems scale better with number of clients and modest rates of subscription-thrash, thus relatively high volume of messages. The conclusion section paints doubts on how much of this product truly exists, and how much is merely theoretical; in an overwhelmingly theoretica= l paper, that seems dangerous. The paper is also relatively old -- merely the age of BitTorrent, though it seems older -- and while BitTorrent has truly 'taken off', it seems that Siena has not. It is also unclear whether or not this protocol has in fact been run whatsoever in the real world, versus simulations -- since it aims to supplant CORBA and other such protocols, such a lack of real exposure is telling. In terms of the acutal algorithms presented, it is hard to say much, other than that they seem fine on paper, and are easy to motivate, and therefore likely correct. They are also uninspiring, though this is perhaps again a sign of age: the solution is to do as much work as close to the publisher as possible so to prevent extra messages from being sent, and to remark that this system may be symmetric, either via filters or via advertisements. ------=_Part_933_5062188.1144734356301 Content-Type: text/html; charset=ISO-8859-1 Content-Disposition: inline Content-Transfer-Encoding: quoted-printable Andrew Cunningham
arc39

    SCRIBE: A large-scale and decentralized application-leve= l multicast infrastructure
    Miguel Castro, Peter Druschel, Anne-Marie Kermarrec and = Antony Rowstron
    
    Built atop Pastry, Scribe permits large number of multicast groups, with potentially giant membership sizes. It inherits directly Pastry's reliability, self-organization, and locality properties, and uses the consistent hashing scheme to create and manage groups, and Pastry's message routing to build efficient multicast trees for the dissemination of messages to each group. Scribe provides best-effort reliability, though could be extended to provide better reliability. It uses a traditional Pastry model, but with the addition of several message types to facilitate broadcast. To join a broadcast group, a message is routed to the node whose nodeID lies closest to the group identifier, and the hops taken are cached so that responses may flow back along the channel thus created. The group identifier could be created in a variety of ways, the easiest of which would be to take the ID of the creating node and concatenate some group identifier (making the tree efficient for the publisher), or to reverse the order of concatenation, to remove load. Scribe also handles tree repair (in a heartbeat-based failure detection system) and root repair (though precise algorithm is left unspecified).
    Scribe has the advantage of being an incredibly simple algorithm. It is in many ways merely an application built on Pastry -- merely being the operative word here, because much of its good behavior can be simply inherited. The real places that it surpasses its substrate are in specific application -- whose design seems obvious, due to the limited number of ways of acheiving it, and the order in which the papers were read -- and in the tree maintenance and repair steps, which are not ground breaking, but are better documented in this paper than elsewhere and seem entirely sufficient. One of the major findings of Scribe's experimental data was that it did not behave well in the presence of a large number of small-sized groups. This is perfectly acceptable, once this information is known, but seems somewhat counterintuitive, as smaller groups (in theory!) involve fewer nodes and links, and thus lesser load. Their special case solution to this problem is somewhat worrisome, as it is underspecified and seems to indicate growing a node's outdegree to match membership in the group (under the collapsed system). This would seem to indicate that a sudden spike in popularity might cause instability at some nodes as their outdegree grows; this might cause them to crash, creating a cascading effect. While I'm sure that this is taken into account, the paper does not mention this, but it may be a flaw specifically introduced by an otherwise benign fix.
    
    Design and Evaluation of a Wide Area Event Notification = Service
    Antonio Carzaniga, David S. Rosenblum, Alexander L. Wolf=
    
    Much more expansive than strictly necessary, this paper delves into the minutiae of its logical model for providing a publish/subscribe framework. It does this by providing agreed upon datatypes, which permit fields to be generated for messages, which permit filters (and compositions of filters) to be applied, thus representing a sort of search on desired terms and data. It uses a relatively unstructured network, in that subscriptions are pushed as far towards the publisher as possible -- as are filters, thus saving bandwidth -- and advertisements are sent as far down, towards consumers, as possible. This push and pull guarantees both coverage and reasonable performance. Much of the paper is devoted to the semantics of the query language and the concepts of a publish/subscribe system, which was unfortunate as this space could perhaps have been better allocated several different ways. Also, the paper establishes the performance models of hierarchical systems vis-a-vis peer to peer ones, resulting in the finding that hierarchical systems perform well for modest numbers of clients who experience thrash, subscribing and unsubscribing quickly, while peer to peer systems scale better with number of clients and modest rates of subscription-thrash, thus relatively high volume of messages.
    The conclusion section paints doubts on how much of this product truly exists, and how much is merely theoretical; in an overwhelmingly theoretical paper, that seems dangerous. The paper is also relatively old -- merely the age of BitTorrent, though it seems older -- and while BitTorrent has truly 'taken off', it seems that Siena has not. It is also unclear whether or not this protocol has in fact been run whatsoever in the real world, versus simulations -- since it aims to supplant CORBA and other such protocols, such a lack of real exposure is telling. In terms of the acutal algorithms presented, it is hard to say much, other than that they seem fine on paper, and are easy to motivate, and therefore likely correct. They are also uninspiring, though this is perhaps again a sign of age: the solution is to do as much work as close to the publisher as possible so to prevent extra messages from being sent, and to remark that this system may be symmetric, either via filters or via advertisements. ------=_Part_933_5062188.1144734356301-- From pjk25@cornell.edu Tue Apr 11 04:18:13 2006 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.1.0 (2005-09-13) on sundial.cs.cornell.edu X-Spam-Status: No, score=-2.6 required=5.0 tests=AWL,BAYES_00 autolearn=ham version=3.1.0 X-Spam-Level: Received: from authusersmtp.mail.cornell.edu (granite1.mail.cornell.edu [128.253.83.141]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3B8ID221882 for ; Tue, 11 Apr 2006 04:18:13 -0400 (EDT) Received: from [192.168.0.100] (user-10mt73g.cable.mindspring.com [65.110.156.112]) (authenticated bits=0) by authusersmtp.mail.cornell.edu (8.13.1/8.12.10) with ESMTP id k3B8IC8B015324 (version=TLSv1/SSLv3 cipher=RC4-SHA bits=128 verify=NOT) for ; Tue, 11 Apr 2006 04:18:12 -0400 (EDT) Mime-Version: 1.0 (Apple Message framework v749.3) Content-Transfer-Encoding: 7bit Message-Id: <0D420561-B74A-4FAD-B9B3-20CCAFD96241@cornell.edu> Content-Type: text/plain; charset=US-ASCII; delsp=yes; format=flowed To: egs+summary@cs.cornell.edu From: Philip Kuryloski Subject: PAPER 20 Date: Tue, 11 Apr 2006 04:18:18 -0400 X-Mailer: Apple Mail (2.749.3) SCRIBE: Scribe is a distributed multicast scheme built on top of a Pastry network. Any node can form a group, which can encompass any number of nodes in the network. A best effort multicast is provided by Scribe. Each scribe group has a group id in the same space as Pastry node ids. This allows the node closest to the group id in the identifier space to serve as the root of the multicast routing tree. Reverse routing is applied to generate a multicast tree, a node wishing to enter the group routes to the root, and nodes along the path to the route become forwarders. As the route to the root converges to a small set of nodes near the root, the tree is efficient. Heartbeat messages are periodically exchanged to maintain an unbroken tree. The authors simulated a 100,000 node scribe network. Scribe provides an average delay less than twice that of IP multicast. Several points at which the structure of the scribe network breaks down. SIENA: The goal which is to be achieved by a multicast overlay is essentially the same challenge as is prompted by the creation of an efficient multicast system: a message from a single source must reach a number of other subscribers. However, Siena and Scribe differ in that while Scribe multicasts using a tree topology, Siena uses a more general graph. The chief insight of Siena is that there is likely some commonality to distinct event subscriptions, realizing the overlap in these subscriptions. The authors give the example of a stock price as a notification, where users subscribe to some set of stock prices that they would like to subscribe to updates for. A basic set of filters can be described in a subscription if only certain data is desired. The subscription features of Siena are much richer than Scribe as well as many other P2P multicast systems. The authors mention a centralized, acyclic P2P, and general P2P as potential network architectures to implement their system. They also mention that data could be cached close to the poster or close to the subscriber. Although they describe these possibilities, they do not go so far as to select a certain scheme. Siena primarily describes the management of data or streams to support a rich publish/subscribe model. The authors do not, however, provide strong preference for different types of underlying P2P structures or many other aspects of the network. Thus, it is difficult to compare Scribe and Siena. Both address the fundamental multicast question, although both assume a very different type or class of data. From gp72@cornell.edu Tue Apr 11 11:07:37 2006 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.1.0 (2005-09-13) on sundial.cs.cornell.edu X-Spam-Status: No, score=-2.0 required=5.0 tests=AWL,BAYES_00 autolearn=ham version=3.1.0 X-Spam-Level: Received: from postoffice10.mail.cornell.edu (postoffice10.mail.cornell.edu [132.236.56.14]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3BF7b225841 for ; Tue, 11 Apr 2006 11:07:37 -0400 (EDT) Received: from orpheus3.dataserver.cornell.edu (orpheus3.dataserver.cornell.edu [128.253.161.167]) by postoffice10.mail.cornell.edu (8.12.10/8.12.6) with ESMTP id k3BF7Yvn010629; Tue, 11 Apr 2006 11:07:34 -0400 (EDT) Message-ID: <329091474.1144768053933.JavaMail.webber@orpheus3.dataserver.cornell.edu> Date: Tue, 11 Apr 2006 11:07:34 -0400 (EDT) From: Gopal Parameswaran To: egs+summary@cs.cornell.edu Subject: PAPER 20 Cc: Gopal Parameswaran Mime-Version: 1.0 Content-Type: text/plain; charset=UTF-8 X-Mailer: uPortal WEB email client 3.0 Content-Transfer-Encoding: 8bit X-MIME-Autoconverted: from quoted-printable to 8bit by sundial.cs.cornell.edu id k3BF7b225841 Siena Siena is an event notification service that the authors have designed to maximize both expressiveness and scalability where expressiveness refers to the ability of the event notification service to provide a powerful data model with which to capture information about events, to express filters and patterns on notifications of interest, and to use that data model as the basis for optimizing notification delivery. Siena is a wide-area, large-scale, decentralized service based on the publish/subscribe protocol and objects of interest advertises and publishes their content and clients subscribe to the services. Scribe Scribe is a scalable application-level multicast infrastructure that is built on Pastry, object location and routing substrate overlayed on the Internet and supports large numbers of groups and members per group. It uses and leverages Pastry’s reliability, self-organization, and locality properties and uses it to create and manage groups and to build efficient multicast trees for the dissemination of messages to each group. The authors claim that Scribe provides best-effort reliability guarantees and shows results based on a realistic network topology model that it can scale across a wide range of groups and group sizes. Scribe being based on pastry is a fully decentralized model and builds a multicast tree, formed by joining the Pastry routes from each group member to a rendezvous point associated with a group. In Scribe any Scribe node may create a group of nodes and then other nodes can join the groups that have been created after checking the credentials of the joining nodes. To create a group, a Scribe node asks Pastry to route a CREATE message using a unique groupId which is the hash of the group’s textual name concatenated with its creator’s name as the key. Pastry delivers this message to the node with the nodeId numerically closest to groupId. The Scribe deliver method then adds the group to the list of groups it already knows about and also checks the credentials to ensure that the group can be created, and stores the credentials and makes this node the rendezvous point for this group. It can also increase performance by making the groupId the concatenation of the nodeId of the creator and the hash of the textual name of the group. When a Scribe node wishes to join a group, it asks Pastry to route a JOIN message with the group’s groupId as the key and which is routed by Pastry towards the group’s rendezvous point. At each node along the route, Pastry invokes Scribe’s forward method. Forward checks its list of groups to see if it is currently a forwarder; if so, it accepts the node as a child o the children table. When a scribe node wishes to leave the group then it records locally that it has left the group and then sends a leave message to its parent in the multicast tree which recursively goes up the tree until it reaches a node that still has entries after removing the node that has left. From tc99@cornell.edu Tue Apr 11 11:08:51 2006 Return-Path: Received: from postoffice10.mail.cornell.edu (postoffice10.mail.cornell.edu [132.236.56.14]) by sundial.cs.cornell.edu (8.11.7-20031020/8.11.7/M-3.25) with ESMTP id k3BF8o226206 for ; Tue, 11 Apr 2006 11:08:50 -0400 (EDT) Received: from webmail.cornell.edu (hermes21.mail.cornell.edu [132.236.56.20]) by postoffice10.mail.cornell.edu (8.12.10/8.12.6) with ESMTP id k3BF8lwD011556 for ; Tue, 11 Apr 2006 11:08:48 -0400 (EDT) Received: from 128.84.152.225 by webmail.cornell.edu with HTTP; Tue, 11 Apr 2006 11:08:48 -0400 (EDT) Message-ID: <1064.128.84.152.225.1144768128.squirrel@webmail.cornell.edu> Date: Tue, 11 Apr 2006 11:08:48 -0400 (EDT) Subject: paper 20 slides From: "Theodore Ming Shiuan Chao" To: egs@cs.cornell.edu User-Agent: SquirrelMail/1.4.5 MIME-Version: 1.0 X-Security: message sanitized on sundial.cs.cornell.edu See http://www.impsec.org/email-tools/sanitizer-intro.html for details. $Revision: 1.148 $Date: 2004-12-19 11:59:17-08 X-Security: The postmaster has not enabled quarantine of poisoned messages. 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