* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download No Slide Title
Zero-configuration networking wikipedia , lookup
Wireless security wikipedia , lookup
Net neutrality wikipedia , lookup
Computer network wikipedia , lookup
Distributed firewall wikipedia , lookup
Recursive InterNetwork Architecture (RINA) wikipedia , lookup
Network tap wikipedia , lookup
Net neutrality law wikipedia , lookup
Cracking of wireless networks wikipedia , lookup
TV Everywhere wikipedia , lookup
Airborne Networking wikipedia , lookup
Deep packet inspection wikipedia , lookup
Piggybacking (Internet access) wikipedia , lookup
SAHARA: A Revolutionary Service Architecture for Future Telecommunications Systems Randy H. Katz, Anthony Joseph Computer Science Division Electrical Engineering and Computer Science Department University of California, Berkeley Berkeley, CA 94720-1776 Project Goals • Delivery of end-to-end services with desirable properties (e.g., performance, reliability, “qualities”), provided by multiple potentially distrusting service providers • Architectural framework for – – – – Economics-based resource allocation Third-party mediators, such as Clearinghouses Dynamic formation of service confederations Support for diverse business models Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions The Huge Expense of New Telecomms Infrastructures • European auctions for 3G spectrum: 50 billion ECU and counting • Capital outlays likely to match spectrum expenses, all before the first ECU of revenue! • Compelling motivation for collaborative deployment of wireless infrastructure Any Way to Build a Network? • Partitioning of frequencies independent of actual subscriber density – Successful operator oversubscribe resources, while less popular providers retain excess capacity – Different flavor of roaming: among collocated/competing service providing • Duplicate antenna sites – Serious problem given community resistance • Redundant backhaul networks – Limited economies of scale The Case for Horizontal Architectures “The new rules for success will be to provide one part of the puzzle and to cooperate with other suppliers to create the complete solutions that customers require. ... [V]ertical integration breaks down when innovation speeds up. The big telecoms firms that will win back investor confidence soonest will be those with the courage to rip apart their monolithic structure along functional layers, to swap size for speed and to embrace rather than fear disruptive technologies.” The Economist Magazine, 16 December 2000 Horizontal Internet Service Business Model Applications (Portals, E-Commerce, E-Tainment, Media) Appl Infrastructure Services (Distribution, Caching, Searching, Hosting) AIP ISV Application-specific Servers (Streaming Media, Transformation) ASP Internet Data Centers ISP CLEC Application-specific Overlay Networks (Multicast Tunnels, Mgmt Svrcs) Global Packet Network Internetworking (Connectivity) Feasible Alternative: Horizontal Competition vs. Vertical Integration • Service Operators “own” the customer, provide “brand”, issue/collect the bills • Independent Backhaul Operators • Independent Antenna Site Operators • Independent Owners of the Spectrum • Microscale auctions/leases of network resources • Emerging concept of Virtual Operators Virtual Operator • Local premise owner deploys own access infrastructure – Better coverage/more rapid build out of network – Deployments in airports, hotels, conference centers, office buildings, campuses, … • Overlay service provider (e.g., PBMS) vs. organizational service provider (e.g., UCB IS&T) – Single bill/settle with service participants • Support for confederated/virtual devices – Mini-BS for cellular/data + WLAN for high rate data Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions The “Sahara” Project • • • • • • Service Architecture for Heterogeneous Access, Resources, and Applications SAHARA Assumptions • Dynamic confederations to better share resources & deploy access/achieve regional coverage more rapidly • Scarce resources efficiently allocated using dynamic “market-driven” mechanisms • Trusted third partners manage resource marketplace in a fair, unbiased, audited and verifiable basis • Vertical stovepipe replaced by horizontally organized “multi-providers,” open to increased competition and more efficient allocation of resources Architectural Elements • “Open” service/resource allocation model – Independent service creation, establishment, placement, in overlapping domains – Resources, capabilities, status described/exchanged amongst confederates, via enhanced capability negotiation – Allocation based on economic methods, such as congestion pricing, dynamic marketplaces/auctions – Trust management among participants, based on trusted third party monitors Architectural Elements • Forming dynamic confederations – Discovering potential confederates – Establishing trust relationships – Managing transitive trust relationships & levels of transparency – Not all confederates need be competitors-heterogeneous, collocated access networks to better support applications Architectural Elements • Alternative View: Service Brokering – Dynamically construct overlays on component services provided by underlying service providers • E.g., overlay network segments with desirable performance attributes • E.g., construct end-to-end multicast trees from subtrees in different service provider clouds – Redirect to alternative service instances • E.g., choose instance based on distance, network load, server load, trust relationships, resilience to network failure, … Deliverables • Architecture and Mechanisms for – Fine grain market-driven resource allocation – Application awareness in decision making • Confederations and Trust Management – Dynamic marshalling, observation/verification of participant behaviors, dissolution of confederations – Mechanisms to “audit” third party resource allocations, insuring fairness and freedom from bias in operation • New Handoff Concepts Based on Redirection – Not just network handoff for lower cost access – Also alternative service provider to balance loads Research Methodology Analyze & Design Evaluate Prototype • Evaluate existing system to discover bottlenecks • Analyze alternatives to select among approaches • Prototype selected alternatives to understand implementation complexities • Repeat Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions Initial Investigations • Congestion-Based Pricing – Economics-based resource allocation • Clearinghouse Architecture – Trusted Resource Mediators – Measurement-based Admission Control with traffic policing • Service Composition – Achieving performance, reliability from multiple placed service instances Congestion-Based Pricing • Hypothesis: Dynamic pricing influences user behavior – E.g., shorten/defer call sessions; accept lower audio/video QoS • Critical resource reaches congestion levels, modify prices to drive utilization back to “acceptable” levels – E.g., available bandwidth, time slots, number of simultaneous sessions Computer Telephony Services (CTS) Testbed Internet Internet-toPSTN Gateways PSTN • E.g., Dialpad.com & Net-to-Phone • Gateways as bottlenecks (limited PSTN access lines) • Use congestion pricing (CP) to entice users to – Talk shorter – Talk later – Accept lower quality Berkeley User Study • Goal: determine effectiveness of CP • Figure of merits – Maximize utilization (service not idling) – Reduce provisioning – Reduce congestion (reduced blocking probability) • Users acceptance/reactions to CP – – – – – Talk shorter Wait Defer talk at another time Use alternative access device Use reduced connection qualities Experiments • Vary Price, Quality, Interval of Price Changes • Experiments – – – – – Congestion pricing: rate depends on current load Flat rate pricing: same rate all the time Time-of-day pricing: higher rate during peak-hours Call-duration pricing: higher rate for long duration calls Access-device pricing: higher rate for using a phone instead of a computer Experimental Setup & Limitations • Computers vs. phones to make/receive free phone calls • Different pricing policies: 1000 tokens/week • RT pricing, connection quality & accounting information Flat Rate Versus Time-of-day Peak hours from 7-11pm Number of Minutes Flat Rate Pricing: Calling Pattern in Minutes 160 140 120 100 80 60 40 20 0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 Time of Day (Hour) Peak shifted! Number of Minutes High bursts right before & right after peak hours Time of Day Pricing: Calling Pattern in Minutes 160 140 120 100 80 60 40 20 0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 Time of Day (Hour) Initial Results • Call-duration pricing – Hypothesis: Less long duration calls & more short duration calls – Result: fewer long duration calls, but no increase in short duration calls • Congestion pricing – Congestion: two or more simultaneous users – Hypothesis: Talk less when encounter CP – Result: Each user used service for 8.44 minutes (standard error 11.3) more. Observed reduction in call session when CP encountered: 2.31 minutes (2.68) less. – Not statistically significant (t-test) – Not enough users to cause much congestion Preliminary Findings • Feasible to implement/use CP in real system • Pricing better utilizes existing resources, reduces congestion • CP is better than other pricing policies • Based on surveys, users prefer CP to flat rate pricing if its average rate is lower – Service providers can better utilize existing resources by providing users with incentives to use CP • Limitations – Too few users – Only apply to telecommunication services Clearinghouse H.323 Gateway PSTN IP Based Core GSM Wireless Phones Video conferencing, Distance learning Web surfing, emails, TCP connections VoIP (e.g. Netmeeting) Vision: data, multimedia (video, voice, etc.) and mobile applications over one IP-network Question: How to regulate resource allocation within and across multiple domains in a scalable manner to achieve end-to-end QoS? Clearinghouse Goals • Design/build distributed control architecture for scalable resource provisioning – Predictive reservations across multiple domains – Admission control & traffic policing at edge • Demonstrate architecture’s properties and performance – Achieve adequate performance w/o edge per-flow state – Robust against traffic fluctuations and misbehaving flows • Prototype proposed mechanisms – Min edge router overhead for scalability/ease of deployment Clearinghouse Architecture • Clearinghouse distributed architecture-each CH-node serves as a resource manager • Functionalities – Monitors network performance on ingress & egress links – Estimates traffic demand distributions – Adapts trunk/aggregate reservations within & across domains based on traffic statistics – Performs admission control based on estimated traffic matrix – Coordinates traffic policing at ingress & egress points for detecting misbehaving flows Multiple-ISP Scenario Host ISP m Ingress Router ER Host ER IR ISP 1 ISP n ISP 2 Egress Router IR • Hybrid of flat and hierarchical structures – Local hierarchy within large ISPs • Distribute network state to various CH-nodes and reduces the amount of state information maintained – Flat structure for peer-to-peer relationships across independent ISPs Illustration Host CHo ISP1 LD1 Edge CH o Router LD0 LD0 CH1 • A hierarchy of Logical domains (LDs) – e.g., LD0 can be a POP or a group of neighboring POPs • A CH-node is associated with each LD – Maintains resource allocations between ingress-egress pairs – Estimates traffic demand distributions & updates parent CH-nodes Illustration Host Host LD1 ISP n CHo ISP1 Edge CH o Router ISP m LD0 LD0 CH1 CH1 CH1 Peer-Peer • Parent CH-node – Adapt trunk reservations across LDs for aggregate traffic within ISP • Appears flat at the top level – Coordinate peer-to-peer trunk reservations across multiple ISPs Key Design Decisions • Service model: ingress/egress routers as endpoints – IE-Pipe(s,d) = aggregate traffic entering an ISP domain at IR-s, and exits at ER-d • Reservations set-up for aggregated flows on intraand inter-domain links – Adapt dynamically to track traffic fluctuation – Core routers stateless; edge maintain aggregate states • Traffic monitoring, admission control, traffic policing for individual flows performed at the edge – Access routers have smaller routing tables; experience lower aggregation of traffic relative to backbone routers – Most congestion (packet loss/delay) happens at edges Traffic-Matrix Admission Control Host Network Rnew • Mods to edge routers A IR-s Accept or Reject POP 1 CH POP 2 – Traffic monitors passively measure aggregate rate of existing flows, M(s,d) – IR-s forwards control messages (Request/Accept/Reject) between CH and host/proxy – Estimate traffic demand distributions, D(s,:), and report to the CH • CH B ER-d Host Network Traffic Monitor – Leverages knowledge of topology and traffic matrix to make admission decisions Group Policing for Malicious Flow Detection Request IR-s A Accept (with Fid) POP 1 CH Update TBFs POP 2 B Host Network ER-d TBF Traffic Policer • CH assigns Fid if the flow is admitted – Let FidIn = x, FidEg = y x y x a x b TBF for group-x Traffic Policer at IR-s aggregate flows based on FidIn for group policing x y t y w y TBF for group-y Traffic Policer at ER-d aggregate flows based on FidEg for group policing * Traffic Policer at IR or ER only maintains total allocated bandwidth to the group (aggregate state) and not per-flow reservation status Service Composition • Assumptions – Providers deploy services throughout network – Portals constructed via service composition • Quickly enable new functionality on new devices • Possibly through SLAs – Code is initially non-mobile • Service placement managed: fixed locations, evolves slowly – New services created via composition • Across service providers in wide-area: service-level path Service Composition Provider A Cellular Phone Video-on-demand server Provider A Provider B Transcoder Thin Client Provider B Replicated instances Text to speech Provider R Email repository Provider Q Architecture for Service Composition and Management Application plane Logical platform Composed services Peering relations, Overlay network Service-level path creation Handling failures Hardware platform Service clusters Service location Network performance Detection Recovery Architecture Internet Source Destination Peering: monitoring & cascading Application plane Composed services Logical platform Peering relations, Overlay network Hardware platform Service clusters Service cluster: compute cluster capable of running services • Overlay nodes are clusters – Compute platform – Hierarchical monitoring – Overlay network provides context for service-level path creation & failure handling Service-Level Path Creation • Connection-oriented network – Explicit session setup plus state at intermediate nodes – Connection-less protocol for connection setup • Three levels of information exchange – Network path liveness • Low overhead, but very frequent – Performance Metrics: latency/bandwidth • Higher overhead, not so frequent • Bandwidth changes only once in several minutes • Latency changes appreciably only once an hour – Information about service location in clusters • Bulky, but does not change very often • Also use independent service location mechanism Service-Level Path Creation • Link-state algorithm for info exchange – – – – Reduced measurement overhead: finer time-scales Service-level path created at entry node Allows all-pair-shortest-path calculation in the graph Path caching • Remember what previous clients used • Another use of clusters – Dynamic path optimization • Since session-transfer is a first-order feature • First path created need not be optimal Session Recovery: Design Tradeoffs • End-to-end: – Pre-establishment possible – But, failure information has to propagate – Performance of alternate path could have changed • Local-link: Finding entry/exit Overlay n/w Service-level path creation Handling failures Service location Network performance Detection Recovery – No need for information to propagate – But, additional overhead The Overlay Topology: Design Factors • How many nodes? – Large number of nodes implies reduced latency overhead – But scaling concerns • Where to place nodes? – Close to edges so that hosts have points of entry and exit close to them – Close to backbone to take advantage of good connectivity • Who to peer with? – Nature of connectivity – Least sharing of physical links among overlay links Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions Testbeds at Different Scale • Room-scale – Bluetooth devices working as ensembles, cooperatively sharing bandwidth within microcell – Inherent trust, but finer grained intelligent and active allocation as opposed to etiquette rules – How lightweight? Too heavyweight for Bluetooth? • Building-scale – Multiple wireless LAN “operators” in building – Experiment with “evil operators”; third party audit mechanisms to determine offender – GoN offers alternative telephony, dynamic allocation of frequencies/time slots to competing/confederating providers Testbeds at Different Scale • Campus-scale – Departmental WLAN service providers with overlapping coverage out of doors • Regional-scale – Possible collaborations with AT&T Wireless (NTTDoCoMo), PBMS, Sprint? Presentation Outline • • • • • Motivation Project SAHARA Initial Investigations Testbeds Summary and Conclusions Summary • Congestion Pricing, Clearinghouse, Service Composition first attempts at service architecture components • Next steps – Generalization to multiple service providers – Introduction of market-based mechanisms: congestion pricing, auctions – Composition across confederated service providers – Trust management infrastructure – Understand peer-to-peer confederation formation vs. hierarchical overlay brokering Conclusions • Support for multiple service providers needed to be retrofitted to original Internet architecture • Telephony architecture better developed model of multiple service providers & peering, but with longer-lived agreements, fewer providers • Need for support in a more dynamic environment, with larger numbers of service providers and/or service instances