Distributed Web Crawling over DHTs. Boon Thau Loo, Owen Cooper, Sailesh Krishnamurthy CS294-4

Size: px
Start display at page:

Download "Distributed Web Crawling over DHTs. Boon Thau Loo, Owen Cooper, Sailesh Krishnamurthy CS294-4"

Transcription

1 Distributed Web Crawling over DHTs Boon Thau Loo, Owen Cooper, Sailesh Krishnamurthy CS294-4

2 Search Today Search Index Crawl

3 What s Wrong? Users have a limited search interface Today s web is dynamic and growing: Timely re-crawls required. Not feasible for all web sites. Search engines control your search results: Decide which sites get crawled: 550 billion documents estimated in 2001 (BrightPlanet) Google indexes 3.3 billion documents. Decide which sites gets updated more frequently May censor or skew results rankings. Challenge: User customizable searches that scale.

4 Our Solution: A Distributed Crawler P2P users donate excess bandwidth and computation resources to crawl the web. Organized using Distributed Hash tables (DHTs) DHT and Query Processor agnostic crawler: Designed to work over any DHT Crawls can be expressed as declarative recursive queries Easy for user customization. Queries can be executed over PIER, a DHT-based relational P2P Query Processor Crawlees: Web Servers Crawlers: PIER nodes

5 Potential Infrastructure for crawl personalization: User-defined focused crawlers Collaborative crawling/filtering (special interest groups) Other possibilities: Bigger, better, faster web crawler Enables new search and indexing technologies P2P Web Search Web archival and storage (with OceanStore) Generalized crawler for querying distributed graph structures. Monitor file-sharing networks. E.g. Gnutella. P2P network maintenance: Routing information. OceanStore meta-data.

6 Challenges that We Investigated Scalability and Throughput DHT communication overheads. Balance network load on crawlers 2 components of network load: Download and DHT bandwidth. Network Proximity. Exploit network locality of crawlers. Limit download rates on web sites Prevents denial of service attacks. Main tradeoff: Tension between coordination and communication Balance load either on crawlers or on crawlees! Exploit network proximity at the cost of communication.

7 Crawl as a Recursive Query Publish WebPage(url) Publish Link (sourceurl, desturl) Π: Link.destUrl WebPage(url) Seed Urls Rate Throttle & Reorder Filters Dup Elim CrawlWrapper DupElim Crawler Thread Output Links Input Urls Redirect Extractor Downloader DHT Scan: WebPage(url)

8 Crawl Distribution Strategies Partition by URL Ensures even distribution of crawler workload. High DHT communication traffic. Partition by Hostname One crawler per hostname. Creates a control point for per-server rate throttling. May lead to uneven crawler load distribution Single point of failure: Bad choice of crawler affects per-site crawl throughput. Slight variation: X crawlers per hostname.

9 Redirection Simple technique that allows a crawler to redirect or pass on its assigned work to another crawler (and so on.) A second chance distribution mechanism orthogonal to the partitioning scheme. Example: Partition by hostname Node responsible for google.com (red) dispatches work (by URL) to grey nodes Load balancing benefits of partition by URL Control benefits of partition by hostname When? Policy-based Crawler load (queue size) Network proximity Why not? Cost of redirection Increased DHT control traffic Hence, put a limit number of redirections per URL.

10 Experiments Deployment WebCrawler over PIER, Bamboo DHT, up to 80 PlanetLab nodes 3 Crawl Threads per crawler, 15 min crawl duration Distribution (Partition) Schemes URL Hostname Hostname with 8 crawlers per unique host Hostname, one level redirection on overload. Crawl Workload Exhaustive crawl Seed URL: different web servers Crawl of fixed number of sites Seed URL: 45 web servers within google Crawl of single site within

11 Crawl of Multiple Sites I CDF of Per-crawler Downloads (80 nodes) Partition by Hostname shows poor imbalance (70% idle). Better off when more crawlers are busy Crawl Throughput Scaleup Hostname: Can only exploit at most 45 crawlers. Redirect (hybrid hostname/url) does the best.

12 Crawl of Multiple Sites II Per-URL DHT Overheads Redirect: The per-url DHT overheads hit their maximum around 70 nodes. Redirection incurs higher overheads only after queue size exceeds a threshold. Hostname incurs low overheads since crawl only looks at google.com which has lots of self-links.

13 Network Proximity Sampled 5100 crawl targets and measured ping times from each of 80 PlanetLab hosts Partition by hostname approximates random assignment Best-3 random is close enough to Best-5 random Sanity check: what if a single host crawls all targets?

14 Summary of Schemes Loadbalance download bandwidth Loadbalance DHT bandwidth Rate limit Crawlees Network proximity DHT Communication overheads URL Hostname - - +? + Redirect +?

15 Related Work Herodotus, at MIT (Chord-based) Partition by URL Batching with ring-based forwarding. Experimented on 4 local machines Apoidea, at GaTech (Chord-based) Partition by hostname. Forwards crawl to DHT neighbor closest to website. Experimented on 12 local machines.

16 Conclusion Our main contributions: Propose a DHT and QP agnostic Distributed Crawler. Express crawl as a query. Permits user-customizable refinement of crawls Discover important trade-offs in distributed crawling: Co-ordination comes with extra communication costs Deployment and experimentation on PlanetLab. Examine crawl distribution strategies under different workloads on live web sources Measure the potential benefits of network proximity.

17 Backup slides

18 Existing Crawlers Cluster-based crawlers Google: Centralized dispatcher sends urls to be crawled. Hash-based parallel crawlers. Focused Crawlers BINGO! Crawls the web given basic training set. Peer-to-Peer Grub infrastructure members.

19 Exhaustive Crawl Partition by Hostname shows imbalance. Some crawlers are over-utilized for downloads. Little difference in throughput. Most crawler threads are kept busy.

20 Single Site URL is best, followed by redirect and hostname.

21 Future Work Fault Tolerance Security Single-Node Throughput Work-Sharing between Crawl Queries Essential for overlapping users. Crawl Global Prioritization A requirement of personalized crawls. Online relevance feedback. Deep web retrieval.

Enhancement to PeerCrawl: A Decentralized P2P Architecture for Web Crawling

Enhancement to PeerCrawl: A Decentralized P2P Architecture for Web Crawling CS8803 Project Enhancement to PeerCrawl: A Decentralized P2P Architecture for Web Crawling Mahesh Palekar, Joseph Patrao. Abstract: Search Engines like Google have become an Integral part of our life.

More information

Peer-to-Peer Systems. Chapter General Characteristics

Peer-to-Peer Systems. Chapter General Characteristics Chapter 2 Peer-to-Peer Systems Abstract In this chapter, a basic overview is given of P2P systems, architectures, and search strategies in P2P systems. More specific concepts that are outlined include

More information

CS 347 Parallel and Distributed Data Processing

CS 347 Parallel and Distributed Data Processing CS 347 Parallel and Distributed Data Processing Spring 2016 Notes 12: Distributed Information Retrieval CS 347 Notes 12 2 CS 347 Notes 12 3 CS 347 Notes 12 4 CS 347 Notes 12 5 Web Search Engine Crawling

More information

PeerCrawl A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web

PeerCrawl A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web PeerCrawl A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web VAIBHAV J. PADLIYA MS CS Project (Fall 2005 Spring 2006) 1 PROJECT GOAL Most of the current web crawlers use a centralized

More information

CS 347 Parallel and Distributed Data Processing

CS 347 Parallel and Distributed Data Processing CS 347 Parallel and Distributed Data Processing Spring 2016 Notes 12: Distributed Information Retrieval CS 347 Notes 12 2 CS 347 Notes 12 3 CS 347 Notes 12 4 Web Search Engine Crawling Indexing Computing

More information

The Design and Implementation of a Next Generation Name Service for the Internet (CoDoNS) Presented By: Kamalakar Kambhatla

The Design and Implementation of a Next Generation Name Service for the Internet (CoDoNS) Presented By: Kamalakar Kambhatla The Design and Implementation of a Next Generation Name Service for the Internet (CoDoNS) Venugopalan Ramasubramanian Emin Gün Sirer Presented By: Kamalakar Kambhatla * Slides adapted from the paper -

More information

CIS 700/005 Networking Meets Databases

CIS 700/005 Networking Meets Databases Announcements CIS / Networking Meets Databases Boon Thau Loo Spring Lecture Paper summaries due at noon today. Office hours: Wed - pm ( Levine) Project proposal: due Feb. Student presenter: rd Jan: A Scalable

More information

CHAPTER 7 CONCLUSION AND FUTURE SCOPE

CHAPTER 7 CONCLUSION AND FUTURE SCOPE 121 CHAPTER 7 CONCLUSION AND FUTURE SCOPE This research has addressed the issues of grid scheduling, load balancing and fault tolerance for large scale computational grids. To investigate the solution

More information

Peer-to-Peer Systems and Distributed Hash Tables

Peer-to-Peer Systems and Distributed Hash Tables Peer-to-Peer Systems and Distributed Hash Tables CS 240: Computing Systems and Concurrency Lecture 8 Marco Canini Credits: Michael Freedman and Kyle Jamieson developed much of the original material. Selected

More information

Overview Computer Networking Lecture 16: Delivering Content: Peer to Peer and CDNs Peter Steenkiste

Overview Computer Networking Lecture 16: Delivering Content: Peer to Peer and CDNs Peter Steenkiste Overview 5-44 5-44 Computer Networking 5-64 Lecture 6: Delivering Content: Peer to Peer and CDNs Peter Steenkiste Web Consistent hashing Peer-to-peer Motivation Architectures Discussion CDN Video Fall

More information

Assignment 5. Georgia Koloniari

Assignment 5. Georgia Koloniari Assignment 5 Georgia Koloniari 2. "Peer-to-Peer Computing" 1. What is the definition of a p2p system given by the authors in sec 1? Compare it with at least one of the definitions surveyed in the last

More information

Architectures for Distributed Systems

Architectures for Distributed Systems Distributed Systems and Middleware 2013 2: Architectures Architectures for Distributed Systems Components A distributed system consists of components Each component has well-defined interface, can be replaced

More information

CompSci 356: Computer Network Architectures Lecture 21: Overlay Networks Chap 9.4. Xiaowei Yang

CompSci 356: Computer Network Architectures Lecture 21: Overlay Networks Chap 9.4. Xiaowei Yang CompSci 356: Computer Network Architectures Lecture 21: Overlay Networks Chap 9.4 Xiaowei Yang xwy@cs.duke.edu Overview Problem Evolving solutions IP multicast Proxy caching Content distribution networks

More information

Efficient Resource Management for the P2P Web Caching

Efficient Resource Management for the P2P Web Caching Efficient Resource Management for the P2P Web Caching Kyungbaek Kim and Daeyeon Park Department of Electrical Engineering & Computer Science, Division of Electrical Engineering, Korea Advanced Institute

More information

Crawling CE-324: Modern Information Retrieval Sharif University of Technology

Crawling CE-324: Modern Information Retrieval Sharif University of Technology Crawling CE-324: Modern Information Retrieval Sharif University of Technology M. Soleymani Fall 2017 Most slides have been adapted from: Profs. Manning, Nayak & Raghavan (CS-276, Stanford) Sec. 20.2 Basic

More information

Distributed Meta-data Servers: Architecture and Design. Sarah Sharafkandi David H.C. Du DISC

Distributed Meta-data Servers: Architecture and Design. Sarah Sharafkandi David H.C. Du DISC Distributed Meta-data Servers: Architecture and Design Sarah Sharafkandi David H.C. Du DISC 5/22/07 1 Outline Meta-Data Server (MDS) functions Why a distributed and global Architecture? Problem description

More information

Collection Building on the Web. Basic Algorithm

Collection Building on the Web. Basic Algorithm Collection Building on the Web CS 510 Spring 2010 1 Basic Algorithm Initialize URL queue While more If URL is not a duplicate Get document with URL [Add to database] Extract, add to queue CS 510 Spring

More information

Turbo King: Framework for Large- Scale Internet Delay Measurements

Turbo King: Framework for Large- Scale Internet Delay Measurements Turbo King: Framework for Large- Scale Internet Delay Measurements Derek Leonard Joint work with Dmitri Loguinov Internet Research Lab Department of Computer Science Texas A&M University, College Station,

More information

Today. Why might P2P be a win? What is a Peer-to-Peer (P2P) system? Peer-to-Peer Systems and Distributed Hash Tables

Today. Why might P2P be a win? What is a Peer-to-Peer (P2P) system? Peer-to-Peer Systems and Distributed Hash Tables Peer-to-Peer Systems and Distributed Hash Tables COS 418: Distributed Systems Lecture 7 Today 1. Peer-to-Peer Systems Napster, Gnutella, BitTorrent, challenges 2. Distributed Hash Tables 3. The Chord Lookup

More information

Distributed Knowledge Organization and Peer-to-Peer Networks

Distributed Knowledge Organization and Peer-to-Peer Networks Knowledge Organization and Peer-to-Peer Networks Klaus Wehrle Group Chair of Computer Science IV RWTH Aachen University http://ds.cs.rwth-aachen.de 1 Organization of Information Essential challenge in?

More information

CS47300: Web Information Search and Management

CS47300: Web Information Search and Management CS47300: Web Information Search and Management Web Search Prof. Chris Clifton 18 October 2017 Some slides courtesy Croft et al. Web Crawler Finds and downloads web pages automatically provides the collection

More information

Goals. Facebook s Scaling Problem. Scaling Strategy. Facebook Three Layer Architecture. Workload. Memcache as a Service.

Goals. Facebook s Scaling Problem. Scaling Strategy. Facebook Three Layer Architecture. Workload. Memcache as a Service. Goals Memcache as a Service Tom Anderson Rapid application development - Speed of adding new features is paramount Scale Billions of users Every user on FB all the time Performance Low latency for every

More information

Peer-to-peer computing research a fad?

Peer-to-peer computing research a fad? Peer-to-peer computing research a fad? Frans Kaashoek kaashoek@lcs.mit.edu NSF Project IRIS http://www.project-iris.net Berkeley, ICSI, MIT, NYU, Rice What is a P2P system? Node Node Node Internet Node

More information

Information Retrieval. Lecture 10 - Web crawling

Information Retrieval. Lecture 10 - Web crawling Information Retrieval Lecture 10 - Web crawling Seminar für Sprachwissenschaft International Studies in Computational Linguistics Wintersemester 2007 1/ 30 Introduction Crawling: gathering pages from the

More information

Building an Internet-Scale Publish/Subscribe System

Building an Internet-Scale Publish/Subscribe System Building an Internet-Scale Publish/Subscribe System Ian Rose Mema Roussopoulos Peter Pietzuch Rohan Murty Matt Welsh Jonathan Ledlie Imperial College London Peter R. Pietzuch prp@doc.ic.ac.uk Harvard University

More information

Ultrapeer-Leaf Degree 10. Number of Ultrapeers. % nodes. Ultrapeer-Ultrapeer Degree Leaf-Ultrapeer Degree TTL

Ultrapeer-Leaf Degree 10. Number of Ultrapeers. % nodes. Ultrapeer-Ultrapeer Degree Leaf-Ultrapeer Degree TTL Measurement and Analysis of Ultrapeer-based P2P Search Networks Λ Boon Thau Loo Λ Joseph Hellerstein Λy Ryan Huebsch Λ Scott Shenker Λz Ion Stoica Λ Λ UC Berkeley y Intel Berkeley Research z International

More information

On Smart Query Routing: For Distributed Graph Querying with Decoupled Storage

On Smart Query Routing: For Distributed Graph Querying with Decoupled Storage On Smart Query Routing: For Distributed Graph Querying with Decoupled Storage Arijit Khan Nanyang Technological University (NTU), Singapore Gustavo Segovia ETH Zurich, Switzerland Donald Kossmann Microsoft

More information

Today s lecture. Information Retrieval. Basic crawler operation. Crawling picture. What any crawler must do. Simple picture complications

Today s lecture. Information Retrieval. Basic crawler operation. Crawling picture. What any crawler must do. Simple picture complications Today s lecture Introduction to Information Retrieval Web Crawling (Near) duplicate detection CS276 Information Retrieval and Web Search Chris Manning, Pandu Nayak and Prabhakar Raghavan Crawling and Duplicates

More information

CS47300: Web Information Search and Management

CS47300: Web Information Search and Management CS47300: Web Information Search and Management Web Search Prof. Chris Clifton 17 September 2018 Some slides courtesy Manning, Raghavan, and Schütze Other characteristics Significant duplication Syntactic

More information

Today s lecture. Basic crawler operation. Crawling picture. What any crawler must do. Simple picture complications

Today s lecture. Basic crawler operation. Crawling picture. What any crawler must do. Simple picture complications Today s lecture Introduction to Information Retrieval Web Crawling (Near) duplicate detection CS276 Information Retrieval and Web Search Chris Manning and Pandu Nayak Crawling and Duplicates 2 Sec. 20.2

More information

Distributed Hash Tables

Distributed Hash Tables Distributed Hash Tables CS6450: Distributed Systems Lecture 11 Ryan Stutsman Material taken/derived from Princeton COS-418 materials created by Michael Freedman and Kyle Jamieson at Princeton University.

More information

Distributed Systems. 05r. Case study: Google Cluster Architecture. Paul Krzyzanowski. Rutgers University. Fall 2016

Distributed Systems. 05r. Case study: Google Cluster Architecture. Paul Krzyzanowski. Rutgers University. Fall 2016 Distributed Systems 05r. Case study: Google Cluster Architecture Paul Krzyzanowski Rutgers University Fall 2016 1 A note about relevancy This describes the Google search cluster architecture in the mid

More information

Exploiting Route Redundancy via Structured Peer to Peer Overlays

Exploiting Route Redundancy via Structured Peer to Peer Overlays Exploiting Route Redundancy ia Structured Peer to Peer Oerlays Ben Y. Zhao, Ling Huang, Jeremy Stribling, Anthony D. Joseph, and John D. Kubiatowicz Uniersity of California, Berkeley Challenges Facing

More information

A Framework for adaptive focused web crawling and information retrieval using genetic algorithms

A Framework for adaptive focused web crawling and information retrieval using genetic algorithms A Framework for adaptive focused web crawling and information retrieval using genetic algorithms Kevin Sebastian Dept of Computer Science, BITS Pilani kevseb1993@gmail.com 1 Abstract The web is undeniably

More information

Crawling the Web. Web Crawling. Main Issues I. Type of crawl

Crawling the Web. Web Crawling. Main Issues I. Type of crawl Web Crawling Crawling the Web v Retrieve (for indexing, storage, ) Web pages by using the links found on a page to locate more pages. Must have some starting point 1 2 Type of crawl Web crawl versus crawl

More information

SOURCERER: MINING AND SEARCHING INTERNET- SCALE SOFTWARE REPOSITORIES

SOURCERER: MINING AND SEARCHING INTERNET- SCALE SOFTWARE REPOSITORIES SOURCERER: MINING AND SEARCHING INTERNET- SCALE SOFTWARE REPOSITORIES Introduction to Information Retrieval CS 150 Donald J. Patterson This content based on the paper located here: http://dx.doi.org/10.1007/s10618-008-0118-x

More information

Venugopal Ramasubramanian Emin Gün Sirer SIGCOMM 04

Venugopal Ramasubramanian Emin Gün Sirer SIGCOMM 04 The Design and Implementation of a Next Generation Name Service for the Internet Venugopal Ramasubramanian Emin Gün Sirer SIGCOMM 04 Presenter: Saurabh Kadekodi Agenda DNS overview Current DNS Problems

More information

Telematics Chapter 9: Peer-to-Peer Networks

Telematics Chapter 9: Peer-to-Peer Networks Telematics Chapter 9: Peer-to-Peer Networks Beispielbild User watching video clip Server with video clips Application Layer Presentation Layer Application Layer Presentation Layer Session Layer Session

More information

Handling Churn in a DHT

Handling Churn in a DHT Handling Churn in a DHT Sean Rhea, Dennis Geels, Timothy Roscoe, and John Kubiatowicz UC Berkeley and Intel Research Berkeley What s a DHT? Distributed Hash Table Peer-to-peer algorithm to offering put/get

More information

CHAPTER 4 PROPOSED ARCHITECTURE FOR INCREMENTAL PARALLEL WEBCRAWLER

CHAPTER 4 PROPOSED ARCHITECTURE FOR INCREMENTAL PARALLEL WEBCRAWLER CHAPTER 4 PROPOSED ARCHITECTURE FOR INCREMENTAL PARALLEL WEBCRAWLER 4.1 INTRODUCTION In 1994, the World Wide Web Worm (WWWW), one of the first web search engines had an index of 110,000 web pages [2] but

More information

Distributed Hash Tables: Chord

Distributed Hash Tables: Chord Distributed Hash Tables: Chord Brad Karp (with many slides contributed by Robert Morris) UCL Computer Science CS M038 / GZ06 12 th February 2016 Today: DHTs, P2P Distributed Hash Tables: a building block

More information

An Overview of Search Engine. Hai-Yang Xu Dev Lead of Search Technology Center Microsoft Research Asia

An Overview of Search Engine. Hai-Yang Xu Dev Lead of Search Technology Center Microsoft Research Asia An Overview of Search Engine Hai-Yang Xu Dev Lead of Search Technology Center Microsoft Research Asia haixu@microsoft.com July 24, 2007 1 Outline History of Search Engine Difference Between Software and

More information

March 10, Distributed Hash-based Lookup. for Peer-to-Peer Systems. Sandeep Shelke Shrirang Shirodkar MTech I CSE

March 10, Distributed Hash-based Lookup. for Peer-to-Peer Systems. Sandeep Shelke Shrirang Shirodkar MTech I CSE for for March 10, 2006 Agenda for Peer-to-Peer Sytems Initial approaches to Their Limitations CAN - Applications of CAN Design Details Benefits for Distributed and a decentralized architecture No centralized

More information

CS 640 Introduction to Computer Networks. Today s lecture. What is P2P? Lecture30. Peer to peer applications

CS 640 Introduction to Computer Networks. Today s lecture. What is P2P? Lecture30. Peer to peer applications Introduction to Computer Networks Lecture30 Today s lecture Peer to peer applications Napster Gnutella KaZaA Chord What is P2P? Significant autonomy from central servers Exploits resources at the edges

More information

Summary Cache based Co-operative Proxies

Summary Cache based Co-operative Proxies Summary Cache based Co-operative Proxies Project No: 1 Group No: 21 Vijay Gabale (07305004) Sagar Bijwe (07305023) 12 th November, 2007 1 Abstract Summary Cache based proxies cooperate behind a bottleneck

More information

Real-time Scheduling of Skewed MapReduce Jobs in Heterogeneous Environments

Real-time Scheduling of Skewed MapReduce Jobs in Heterogeneous Environments Real-time Scheduling of Skewed MapReduce Jobs in Heterogeneous Environments Nikos Zacheilas, Vana Kalogeraki Department of Informatics Athens University of Economics and Business 1 Big Data era has arrived!

More information

1. Introduction. 2. Salient features of the design. * The manuscript is still under progress 1

1. Introduction. 2. Salient features of the design. * The manuscript is still under progress 1 A Scalable, Distributed Web-Crawler* Ankit Jain, Abhishek Singh, Ling Liu Technical Report GIT-CC-03-08 College of Computing Atlanta,Georgia {ankit,abhi,lingliu}@cc.gatech.edu In this paper we present

More information

Scaling Data Center Application Infrastructure. Gary Orenstein, Gear6

Scaling Data Center Application Infrastructure. Gary Orenstein, Gear6 Scaling Data Center Application Infrastructure Gary Orenstein, Gear6 SNIA Legal Notice The material contained in this tutorial is copyrighted by the SNIA. Member companies and individuals may use this

More information

Scalable overlay Networks

Scalable overlay Networks overlay Networks Dr. Samu Varjonen 1 Lectures MO 15.01. C122 Introduction. Exercises. Motivation. TH 18.01. DK117 Unstructured networks I MO 22.01. C122 Unstructured networks II TH 25.01. DK117 Bittorrent

More information

CSE 124 Finding objects in distributed systems: Distributed hash tables and consistent hashing. March 8, 2016 Prof. George Porter

CSE 124 Finding objects in distributed systems: Distributed hash tables and consistent hashing. March 8, 2016 Prof. George Porter CSE 124 Finding objects in distributed systems: Distributed hash tables and consistent hashing March 8, 2016 rof. George orter Outline Today: eer-to-peer networking Distributed hash tables Consistent hashing

More information

Content Overlays. Nick Feamster CS 7260 March 12, 2007

Content Overlays. Nick Feamster CS 7260 March 12, 2007 Content Overlays Nick Feamster CS 7260 March 12, 2007 Content Overlays Distributed content storage and retrieval Two primary approaches: Structured overlay Unstructured overlay Today s paper: Chord Not

More information

Administrative. Web crawlers. Web Crawlers and Link Analysis!

Administrative. Web crawlers. Web Crawlers and Link Analysis! Web Crawlers and Link Analysis! David Kauchak cs458 Fall 2011 adapted from: http://www.stanford.edu/class/cs276/handouts/lecture15-linkanalysis.ppt http://webcourse.cs.technion.ac.il/236522/spring2007/ho/wcfiles/tutorial05.ppt

More information

Path Optimization in Stream-Based Overlay Networks

Path Optimization in Stream-Based Overlay Networks Path Optimization in Stream-Based Overlay Networks Peter Pietzuch, prp@eecs.harvard.edu Jeff Shneidman, Jonathan Ledlie, Mema Roussopoulos, Margo Seltzer, Matt Welsh Systems Research Group Harvard University

More information

Introduction to Peer-to-Peer Systems

Introduction to Peer-to-Peer Systems Introduction Introduction to Peer-to-Peer Systems Peer-to-peer (PP) systems have become extremely popular and contribute to vast amounts of Internet traffic PP basic definition: A PP system is a distributed

More information

EARM: An Efficient and Adaptive File Replication with Consistency Maintenance in P2P Systems.

EARM: An Efficient and Adaptive File Replication with Consistency Maintenance in P2P Systems. : An Efficient and Adaptive File Replication with Consistency Maintenance in P2P Systems. 1 K.V.K.Chaitanya, 2 Smt. S.Vasundra, M,Tech., (Ph.D), 1 M.Tech (Computer Science), 2 Associate Professor, Department

More information

Distributed Systems. 16. Distributed Lookup. Paul Krzyzanowski. Rutgers University. Fall 2017

Distributed Systems. 16. Distributed Lookup. Paul Krzyzanowski. Rutgers University. Fall 2017 Distributed Systems 16. Distributed Lookup Paul Krzyzanowski Rutgers University Fall 2017 1 Distributed Lookup Look up (key, value) Cooperating set of nodes Ideally: No central coordinator Some nodes can

More information

Parallel Crawlers. Junghoo Cho University of California, Los Angeles. Hector Garcia-Molina Stanford University.

Parallel Crawlers. Junghoo Cho University of California, Los Angeles. Hector Garcia-Molina Stanford University. Parallel Crawlers Junghoo Cho University of California, Los Angeles cho@cs.ucla.edu Hector Garcia-Molina Stanford University cho@cs.stanford.edu ABSTRACT In this paper we study how we can design an effective

More information

Search Engines. Information Retrieval in Practice

Search Engines. Information Retrieval in Practice Search Engines Information Retrieval in Practice All slides Addison Wesley, 2008 Web Crawler Finds and downloads web pages automatically provides the collection for searching Web is huge and constantly

More information

ALTO Problem Statement

ALTO Problem Statement ALTO Problem Statement draft-marocco-alto-problem-statement-02 Enrico Marocco Vijay Gurbani 72 nd IETF Meeting Outline History The problem Main issues Use cases The cache location sub-problem Internet

More information

A Hybrid Architecture for Massively Multiplayer Online Games

A Hybrid Architecture for Massively Multiplayer Online Games A Hybrid Architecture for Massively Multiplayer Online Games Jared Jardine and Daniel Zappala Internet Research Lab Computer Science Department Brigham Young University The Seventh Annual Workshop on Network

More information

Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web

Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web Aameek Singh, Mudhakar Srivatsa, Ling Liu, and Todd Miller College of Computing, Georgia Institute of Technology, Atlanta,

More information

DATA MINING - 1DL105, 1DL111

DATA MINING - 1DL105, 1DL111 1 DATA MINING - 1DL105, 1DL111 Fall 2007 An introductory class in data mining http://user.it.uu.se/~udbl/dut-ht2007/ alt. http://www.it.uu.se/edu/course/homepage/infoutv/ht07 Kjell Orsborn Uppsala Database

More information

Chapter 6 PEER-TO-PEER COMPUTING

Chapter 6 PEER-TO-PEER COMPUTING Chapter 6 PEER-TO-PEER COMPUTING Distributed Computing Group Computer Networks Winter 23 / 24 Overview What is Peer-to-Peer? Dictionary Distributed Hashing Search Join & Leave Other systems Case study:

More information

Addressed Issue. P2P What are we looking at? What is Peer-to-Peer? What can databases do for P2P? What can databases do for P2P?

Addressed Issue. P2P What are we looking at? What is Peer-to-Peer? What can databases do for P2P? What can databases do for P2P? Peer-to-Peer Data Management - Part 1- Alex Coman acoman@cs.ualberta.ca Addressed Issue [1] Placement and retrieval of data [2] Server architectures for hybrid P2P [3] Improve search in pure P2P systems

More information

Overlay Networks. Behnam Momeni Computer Engineering Department Sharif University of Technology

Overlay Networks. Behnam Momeni Computer Engineering Department Sharif University of Technology CE443 Computer Networks Overlay Networks Behnam Momeni Computer Engineering Department Sharif University of Technology Acknowledgments: Lecture slides are from Computer networks course thought by Jennifer

More information

Distributed Systems. 17. Distributed Lookup. Paul Krzyzanowski. Rutgers University. Fall 2016

Distributed Systems. 17. Distributed Lookup. Paul Krzyzanowski. Rutgers University. Fall 2016 Distributed Systems 17. Distributed Lookup Paul Krzyzanowski Rutgers University Fall 2016 1 Distributed Lookup Look up (key, value) Cooperating set of nodes Ideally: No central coordinator Some nodes can

More information

Systems Infrastructure for Data Science. Web Science Group Uni Freiburg WS 2012/13

Systems Infrastructure for Data Science. Web Science Group Uni Freiburg WS 2012/13 Systems Infrastructure for Data Science Web Science Group Uni Freiburg WS 2012/13 Data Stream Processing Topics Model Issues System Issues Distributed Processing Web-Scale Streaming 3 System Issues Architecture

More information

A Hybrid Structured-Unstructured P2P Search Infrastructure

A Hybrid Structured-Unstructured P2P Search Infrastructure A Hybrid Structured-Unstructured P2P Search Infrastructure Abstract Popular P2P file-sharing systems like Gnutella and Kazaa use unstructured network designs. These networks typically adopt flooding-based

More information

Drafting Behind Akamai (Travelocity-Based Detouring)

Drafting Behind Akamai (Travelocity-Based Detouring) (Travelocity-Based Detouring) Ao-Jan Su, David R. Choffnes, Aleksandar Kuzmanovic and Fabián E. Bustamante Department of EECS Northwestern University ACM SIGCOMM 2006 Drafting Detour 2 Motivation Growing

More information

Veracity: Practical Secure Network Coordinates via Vote-Based Agreements

Veracity: Practical Secure Network Coordinates via Vote-Based Agreements Veracity: Practical Secure Network Coordinates via Vote-Based Agreements Micah Sherr, Matt Blaze, and Boon Thau Loo University of Pennsylvania USENIX Technical June 18th, 2009 1 Network Coordinate Systems

More information

Performing MapReduce on Data Centers with Hierarchical Structures

Performing MapReduce on Data Centers with Hierarchical Structures INT J COMPUT COMMUN, ISSN 1841-9836 Vol.7 (212), No. 3 (September), pp. 432-449 Performing MapReduce on Data Centers with Hierarchical Structures Z. Ding, D. Guo, X. Chen, X. Luo Zeliu Ding, Deke Guo,

More information

A Scalable Content- Addressable Network

A Scalable Content- Addressable Network A Scalable Content- Addressable Network In Proceedings of ACM SIGCOMM 2001 S. Ratnasamy, P. Francis, M. Handley, R. Karp, S. Shenker Presented by L.G. Alex Sung 9th March 2005 for CS856 1 Outline CAN basics

More information

Peer-to-Peer Systems. Network Science: Introduction. P2P History: P2P History: 1999 today

Peer-to-Peer Systems. Network Science: Introduction. P2P History: P2P History: 1999 today Network Science: Peer-to-Peer Systems Ozalp Babaoglu Dipartimento di Informatica Scienza e Ingegneria Università di Bologna www.cs.unibo.it/babaoglu/ Introduction Peer-to-peer (PP) systems have become

More information

PEER-TO-PEER (P2P) systems are now one of the most

PEER-TO-PEER (P2P) systems are now one of the most IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, VOL. 25, NO. 1, JANUARY 2007 15 Enhancing Peer-to-Peer Systems Through Redundancy Paola Flocchini, Amiya Nayak, Senior Member, IEEE, and Ming Xie Abstract

More information

A Software Tool for Network Intrusion Detection

A Software Tool for Network Intrusion Detection A Software Tool for Network Intrusion Detection 4th Biennial Conference Presented by: Christiaan van der Walt Date:October 2012 Presentation Outline Need for intrusion detection systems Overview of attacks

More information

Unit 8 Peer-to-Peer Networking

Unit 8 Peer-to-Peer Networking Unit 8 Peer-to-Peer Networking P2P Systems Use the vast resources of machines at the edge of the Internet to build a network that allows resource sharing without any central authority. Client/Server System

More information

CS514: Intermediate Course in Computer Systems

CS514: Intermediate Course in Computer Systems Distributed Hash Tables (DHT) Overview and Issues Paul Francis CS514: Intermediate Course in Computer Systems Lecture 26: Nov 19, 2003 Distributed Hash Tables (DHT): Overview and Issues What is a Distributed

More information

Optimizing Network Performance in Distributed Machine Learning. Luo Mai Chuntao Hong Paolo Costa

Optimizing Network Performance in Distributed Machine Learning. Luo Mai Chuntao Hong Paolo Costa Optimizing Network Performance in Distributed Machine Learning Luo Mai Chuntao Hong Paolo Costa Machine Learning Successful in many fields Online advertisement Spam filtering Fraud detection Image recognition

More information

Information Retrieval

Information Retrieval Introduction to Information Retrieval CS3245 12 Lecture 12: Crawling and Link Analysis Information Retrieval Last Time Chapter 11 1. Probabilistic Approach to Retrieval / Basic Probability Theory 2. Probability

More information

Replication, Load Balancing and Efficient Range Query Processing in DHTs

Replication, Load Balancing and Efficient Range Query Processing in DHTs Replication, Load Balancing and Efficient Range Query Processing in DHTs Theoni Pitoura, Nikos Ntarmos, and Peter Triantafillou R.A. Computer Technology Institute and Computer Engineering & Informatics

More information

Load Balancing Algorithm over a Distributed Cloud Network

Load Balancing Algorithm over a Distributed Cloud Network Load Balancing Algorithm over a Distributed Cloud Network Priyank Singhal Student, Computer Department Sumiran Shah Student, Computer Department Pranit Kalantri Student, Electronics Department Abstract

More information

Parallel DBMS. Parallel Database Systems. PDBS vs Distributed DBS. Types of Parallelism. Goals and Metrics Speedup. Types of Parallelism

Parallel DBMS. Parallel Database Systems. PDBS vs Distributed DBS. Types of Parallelism. Goals and Metrics Speedup. Types of Parallelism Parallel DBMS Parallel Database Systems CS5225 Parallel DB 1 Uniprocessor technology has reached its limit Difficult to build machines powerful enough to meet the CPU and I/O demands of DBMS serving large

More information

CS555: Distributed Systems [Fall 2017] Dept. Of Computer Science, Colorado State University

CS555: Distributed Systems [Fall 2017] Dept. Of Computer Science, Colorado State University CS 555: DISTRIBUTED SYSTEMS [P2P SYSTEMS] Shrideep Pallickara Computer Science Colorado State University Frequently asked questions from the previous class survey Byzantine failures vs malicious nodes

More information

DATA MINING II - 1DL460. Spring 2014"

DATA MINING II - 1DL460. Spring 2014 DATA MINING II - 1DL460 Spring 2014" A second course in data mining http://www.it.uu.se/edu/course/homepage/infoutv2/vt14 Kjell Orsborn Uppsala Database Laboratory Department of Information Technology,

More information

B.H.GARDI COLLEGE OF ENGINEERING & TECHNOLOGY (MCA Dept.) Parallel Database Database Management System - 2

B.H.GARDI COLLEGE OF ENGINEERING & TECHNOLOGY (MCA Dept.) Parallel Database Database Management System - 2 Introduction :- Today single CPU based architecture is not capable enough for the modern database that are required to handle more demanding and complex requirements of the users, for example, high performance,

More information

416 Distributed Systems. March 23, 2018 CDNs

416 Distributed Systems. March 23, 2018 CDNs 416 Distributed Systems March 23, 2018 CDNs Outline DNS Design (317) Content Distribution Networks 2 Typical Workload (Web Pages) Multiple (typically small) objects per page File sizes are heavy-tailed

More information

Goals. EECS 122: Introduction to Computer Networks Overlay Networks and P2P Networks. Solution. Overlay Networks: Motivations.

Goals. EECS 122: Introduction to Computer Networks Overlay Networks and P2P Networks. Solution. Overlay Networks: Motivations. Goals CS : Introduction to Computer Networks Overlay Networks and PP Networks Ion Stoica Computer Science Division Department of lectrical ngineering and Computer Sciences University of California, Berkeley

More information

TECHNISCHE UNIVERSITEIT EINDHOVEN Faculteit Wiskunde en Informatica

TECHNISCHE UNIVERSITEIT EINDHOVEN Faculteit Wiskunde en Informatica TECHNISCHE UNIVERSITEIT EINDHOVEN Faculteit Wiskunde en Informatica Examination Architecture of Distributed Systems (2IMN10 / 2II45), on Monday November 2, 2015, from 13.30 to 16.30 hours. Indicate on

More information

Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web

Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web Apoidea: A Decentralized Peer-to-Peer Architecture for Crawling the World Wide Web Aameek Singh, Mudhakar Srivatsa, Ling Liu, and Todd Miller College of Computing, Georgia Institute of Technology, Atlanta,

More information

Characterizing Gnutella Network Properties for Peer-to-Peer Network Simulation

Characterizing Gnutella Network Properties for Peer-to-Peer Network Simulation Characterizing Gnutella Network Properties for Peer-to-Peer Network Simulation Selim Ciraci, Ibrahim Korpeoglu, and Özgür Ulusoy Department of Computer Engineering, Bilkent University, TR-06800 Ankara,

More information

Chapter 6: Distributed Systems: The Web. Fall 2012 Sini Ruohomaa Slides joint work with Jussi Kangasharju et al.

Chapter 6: Distributed Systems: The Web. Fall 2012 Sini Ruohomaa Slides joint work with Jussi Kangasharju et al. Chapter 6: Distributed Systems: The Web Fall 2012 Sini Ruohomaa Slides joint work with Jussi Kangasharju et al. Chapter Outline Web as a distributed system Basic web architecture Content delivery networks

More information

CHAPTER 3 EFFECTIVE ADMISSION CONTROL MECHANISM IN WIRELESS MESH NETWORKS

CHAPTER 3 EFFECTIVE ADMISSION CONTROL MECHANISM IN WIRELESS MESH NETWORKS 28 CHAPTER 3 EFFECTIVE ADMISSION CONTROL MECHANISM IN WIRELESS MESH NETWORKS Introduction Measurement-based scheme, that constantly monitors the network, will incorporate the current network state in the

More information

CSE 124: Networked Services Lecture-17

CSE 124: Networked Services Lecture-17 Fall 2010 CSE 124: Networked Services Lecture-17 Instructor: B. S. Manoj, Ph.D http://cseweb.ucsd.edu/classes/fa10/cse124 11/30/2010 CSE 124 Networked Services Fall 2010 1 Updates PlanetLab experiments

More information

DIBS: Just-in-time congestion mitigation for Data Centers

DIBS: Just-in-time congestion mitigation for Data Centers DIBS: Just-in-time congestion mitigation for Data Centers Kyriakos Zarifis, Rui Miao, Matt Calder, Ethan Katz-Bassett, Minlan Yu, Jitendra Padhye University of Southern California Microsoft Research Summary

More information

CS 655 Advanced Topics in Distributed Systems

CS 655 Advanced Topics in Distributed Systems Presented by : Walid Budgaga CS 655 Advanced Topics in Distributed Systems Computer Science Department Colorado State University 1 Outline Problem Solution Approaches Comparison Conclusion 2 Problem 3

More information

Huge market -- essentially all high performance databases work this way

Huge market -- essentially all high performance databases work this way 11/5/2017 Lecture 16 -- Parallel & Distributed Databases Parallel/distributed databases: goal provide exactly the same API (SQL) and abstractions (relational tables), but partition data across a bunch

More information

Bigtable. A Distributed Storage System for Structured Data. Presenter: Yunming Zhang Conglong Li. Saturday, September 21, 13

Bigtable. A Distributed Storage System for Structured Data. Presenter: Yunming Zhang Conglong Li. Saturday, September 21, 13 Bigtable A Distributed Storage System for Structured Data Presenter: Yunming Zhang Conglong Li References SOCC 2010 Key Note Slides Jeff Dean Google Introduction to Distributed Computing, Winter 2008 University

More information

Outline. Parallel Database Systems. Information explosion. Parallelism in DBMSs. Relational DBMS parallelism. Relational DBMSs.

Outline. Parallel Database Systems. Information explosion. Parallelism in DBMSs. Relational DBMS parallelism. Relational DBMSs. Parallel Database Systems STAVROS HARIZOPOULOS stavros@cs.cmu.edu Outline Background Hardware architectures and performance metrics Parallel database techniques Gamma Bonus: NCR / Teradata Conclusions

More information

A Solution for Geographic Regions Load Balancing in Cloud Computing Environment

A Solution for Geographic Regions Load Balancing in Cloud Computing Environment Chapter 5 A Solution for Geographic Regions Load Balancing in Cloud Computing Environment 5.1 INTRODUCTION Cloud computing is one of the most interesting way of distributing the data as well as to get

More information

Topic 6: SDN in practice: Microsoft's SWAN. Student: Miladinovic Djordje Date:

Topic 6: SDN in practice: Microsoft's SWAN. Student: Miladinovic Djordje Date: Topic 6: SDN in practice: Microsoft's SWAN Student: Miladinovic Djordje Date: 17.04.2015 1 SWAN at a glance Goal: Boost the utilization of inter-dc networks Overcome the problems of current traffic engineering

More information