Separating Agreement from Execution for Byzantine Fault-Tolerant Services

Size: px
Start display at page:

Download "Separating Agreement from Execution for Byzantine Fault-Tolerant Services"

Transcription

1 Separating Agreement from Execution for Byzantine Fault-Tolerant Services Rethinking Replicated State Machines Jian Yin, Jean-Philippe Martin, Arun enkataramani, Lorenzo Alvisi and Mike Dahlin Laboratory for Advanced Systems Research (LASR) The University of Texas at Austin p.1/17

2 Problem: Tolerating Byzantine Faults request wrong reply no reply unauthorized reply Current solution: replicated state machine 3f + 1 versions of service Hurts confidentiality Our solution: rethinking replicated state machine Cheaper: 2f + 1 versions of service Helps confidentiality p.2/17

3 Outline Introduction Separating Agreement from Execution Enables Fewer service replica Confidentiality Prototype Conclusion p.3/17

4 Current Solution Client 1 Client 2 3f+1 replicas f=1 Client Send request and repeats Pick majority reply Correct replica must return same reply Start from same state All replicas process the same requests in the same order (replica coordination) How Replicated state machine protocol p.4/17

5 Separating Agreement from Execution Client Agreement 3g+1 Execution 2f+1 Split problem into independent concerns Agreement: All agree on sequence of requests Execution: Requests executed in order Note different requirements Agreement: 3g + 1 servers, g faults Execution: 2f + 1 servers, f faults p.5/17

6 Implementation Client request Reply certificate Agreement certificate Reply certificate Agreement Execution 1. Assign unique sequence number to request 2. request, sequence number A : unique, certified 3. Execute in sequence order 4. reply, sequence number E : unique, certified p.6/17

7 Cluster Implementation is Simple Client request Reply certificate Agreement certificate Reply certificate Agreement Execution Simple protocol Agreement using traditional protocol Send instead of executing Tricks in retransmission Execution internal retransmission Confidential inter retransmission p.7/17

8 Separation makes Replication Cheaper Client Agreement 3g+1 Execution 2f+1 Execution Fewer service replicas Expensive because different Agreement Simple nodes, reusable Can merge p.8/17

9 Separation makes Replication Cheaper Client Combined s 3f+1 Execution Fewer service replicas Expensive because different Agreement Simple nodes, reusable Can merge p.8/17

10 Confidentiality: The Problem Hostile Client Confidential information traditional replicated state machine f=1 Replication hurts confidentiality Privacy Firewall restores it p.9/17

11 Separation Enables Confidentiality Client Agreement 3g+1 Execution 2f+1 Separation enables confidentiality Agreement nodes as filters Key 1: Restrict communication Key 2: Separate choice from secrets Choice in reply contents Choice in who signs the reply certificate Choice in retransmission One choice remains: speed p.10/17

12 The Privacy Firewall Nodes check reply certificate Replicated for h Byzantine failures h+1 h+1 Restrict communication Only valid replies h + 1 rows one is correct Always reply h + 1 columns one is correct Minimal: (h + 1) 2 servers p.11/17

13 The Privacy Firewall Nodes check reply and order Replicated for h Byzantine failures h+1 h+1 Restrict communication Only valid replies h + 1 rows one is correct Always reply h + 1 columns one is correct Minimal: (h + 1) 2 servers p.11/17

14 The Privacy Firewall Nodes check reply and order Replicated for h Byzantine failures h+1 Restrict communication Only valid replies h+1 h + 1 rows one is correct Always reply h + 1 columns one is correct Minimal: (h + 1) 2 servers p.11/17

15 The Privacy Firewall Nodes check reply and order Replicated for h Byzantine failures h+1 h+1 Restrict communication Only valid replies h + 1 rows one is correct Always reply h + 1 columns one is correct Minimal: (h + 1) 2 servers p.11/17

16 Privacy Firewall Guarantees Client Client Agreement Privacy Firewall Execution Output set confidential Output of correct cut is a valid output for a correct node through unreliable link Only correct replies get through Replies that correct nodes send p.12/17

17 Timing Attacks Remain answer="yes" answer="no" Client Client One choice remains: execution speed Faulty execution server can influence when majority forms Information-theoretic confidentiality impossible without synchrony p.13/17

18 Prototype Built prototype from BASE [Rodrigues01] Implements BFT confidential network file system 10 machines: 1 client, 4 ag+pf, 2 PF, 3 exec. Tolerate 1 fault in each of agreement, PF, exec. 128MB RAM, 100Mbps switch Limitations of prototype No uninterruptible power supply Same code Communication not restricted p.14/17

19 Latency Micro-Benchmarks Micro-benchmark Latency (ms) BASE Separate Confidential Micro-benchmark latency Removed some BASE optimizations Only implemented one of six optimizations p.15/17

20 Good Performance 3.0 MAB 500 Run time (h) NFS BASE Separate Separation and PF perform well in benchmarks +16% for confidentiality p.16/17

21 Conclusion Take home message: Separate agreement from execution! Benefits Fewer service replicas Privacy Firewall Easy p.17/17

Outline. Clouds of Clouds lessons learned from n years of research Miguel Correia

Outline. Clouds of Clouds lessons learned from n years of research Miguel Correia Dependability and Security with Clouds of Clouds lessons learned from n years of research Miguel Correia WORKSHOP ON DEPENDABILITY AND INTEROPERABILITY IN HETEROGENEOUS CLOUDS (DIHC13) August 27 th 2013,

More information

Vbam - Byzantine Atomic Multicast in LAN Based on Virtualization Technology

Vbam - Byzantine Atomic Multicast in LAN Based on Virtualization Technology Vbam - Byzantine Atomic Multicast in LAN Based on Virtualization Technology Marcelo Ribeiro Xavier Silva, Lau Cheuk Lung, Leandro Quibem Magnabosco, Luciana de Oliveira Rech 1 Computer Science Federal

More information

Hadoop Architecture. Part 1

Hadoop Architecture. Part 1 Hadoop Architecture Part 1 Node, Rack and Cluster: A node is simply a computer, typically non-enterprise, commodity hardware for nodes that contain data. Consider we have Node 1.Then we can add more nodes,

More information

Distributed File System. MCSN N. Tonellotto Complements of Distributed Enabling Platforms

Distributed File System. MCSN N. Tonellotto Complements of Distributed Enabling Platforms Distributed File System 1 How do we get data to the workers? NAS Compute Nodes SAN 2 Distributed File System Don t move data to workers move workers to the data! Store data on the local disks of nodes

More information

Web Email DNS Peer-to-peer systems (file sharing, CDNs, cycle sharing)

Web Email DNS Peer-to-peer systems (file sharing, CDNs, cycle sharing) 1 1 Distributed Systems What are distributed systems? How would you characterize them? Components of the system are located at networked computers Cooperate to provide some service No shared memory Communication

More information

Efficient Middleware for Byzantine Fault Tolerant Database Replication

Efficient Middleware for Byzantine Fault Tolerant Database Replication Efficient Middleware for Byzantine Fault Tolerant Database Replication Rui Garcia CITI / Departamento de Informática, Faculdade de Ciências e Tecnologia, Universidade Nova de Lisboa Quinta da Torre, Caparica,

More information

Software Execution Protection in the Cloud

Software Execution Protection in the Cloud Software Execution Protection in the Cloud Miguel Correia 1st European Workshop on Dependable Cloud Computing Sibiu, Romania, May 8 th 2012 Motivation clouds fail 2 1 Motivation accidental arbitrary faults

More information

The Google File System

The Google File System The Google File System By Sanjay Ghemawat, Howard Gobioff, and Shun-Tak Leung (Presented at SOSP 2003) Introduction Google search engine. Applications process lots of data. Need good file system. Solution:

More information

Matrix Signatures: From MACs to Digital Signatures in Distributed Systems

Matrix Signatures: From MACs to Digital Signatures in Distributed Systems Matrix Signatures: From MACs to Digital Signatures in Distributed Systems Amitanand S. Aiyer 1, Lorenzo Alvisi 1,,RidaA.Bazzi 2, and Allen Clement 1 1 Department of Computer Sciences, University of Texas

More information

Sector vs. Hadoop. A Brief Comparison Between the Two Systems

Sector vs. Hadoop. A Brief Comparison Between the Two Systems Sector vs. Hadoop A Brief Comparison Between the Two Systems Background Sector is a relatively new system that is broadly comparable to Hadoop, and people want to know what are the differences. Is Sector

More information

Scalable Cloud Computing Solutions for Next Generation Sequencing Data

Scalable Cloud Computing Solutions for Next Generation Sequencing Data Scalable Cloud Computing Solutions for Next Generation Sequencing Data Matti Niemenmaa 1, Aleksi Kallio 2, André Schumacher 1, Petri Klemelä 2, Eija Korpelainen 2, and Keijo Heljanko 1 1 Department of

More information

Using Virtualization Technology for Fault- Tolerant Replication in LAN

Using Virtualization Technology for Fault- Tolerant Replication in LAN Using Virtualization Technology for Fault- Tolerant Replication in LAN 1 Fernando Dettoni 1, Lau Cheuk Lung 1, Aldelir Fernando Luiz 2 1 Departamento de Informática e Estatística, Universidade Federal

More information

CSE-E5430 Scalable Cloud Computing Lecture 2

CSE-E5430 Scalable Cloud Computing Lecture 2 CSE-E5430 Scalable Cloud Computing Lecture 2 Keijo Heljanko Department of Computer Science School of Science Aalto University keijo.heljanko@aalto.fi 14.9-2015 1/36 Google MapReduce A scalable batch processing

More information

The Pros and Cons of Erasure Coding & Replication vs. RAID in Next-Gen Storage Platforms. Abhijith Shenoy Engineer, Hedvig Inc.

The Pros and Cons of Erasure Coding & Replication vs. RAID in Next-Gen Storage Platforms. Abhijith Shenoy Engineer, Hedvig Inc. The Pros and Cons of Erasure Coding & Replication vs. RAID in Next-Gen Storage Platforms Abhijith Shenoy Engineer, Hedvig Inc. @hedviginc The need for new architectures Business innovation Time-to-market

More information

Data Management in the Cloud

Data Management in the Cloud Data Management in the Cloud Ryan Stern stern@cs.colostate.edu : Advanced Topics in Distributed Systems Department of Computer Science Colorado State University Outline Today Microsoft Cloud SQL Server

More information

Peer-to-peer Cooperative Backup System

Peer-to-peer Cooperative Backup System Peer-to-peer Cooperative Backup System Sameh Elnikety Mark Lillibridge Mike Burrows Rice University Compaq SRC Microsoft Research Abstract This paper presents the design and implementation of a novel backup

More information

Hadoop Distributed File System (HDFS) Overview

Hadoop Distributed File System (HDFS) Overview 2012 coreservlets.com and Dima May Hadoop Distributed File System (HDFS) Overview Originals of slides and source code for examples: http://www.coreservlets.com/hadoop-tutorial/ Also see the customized

More information

Middleware and Distributed Systems. System Models. Dr. Martin v. Löwis. Freitag, 14. Oktober 11

Middleware and Distributed Systems. System Models. Dr. Martin v. Löwis. Freitag, 14. Oktober 11 Middleware and Distributed Systems System Models Dr. Martin v. Löwis System Models (Coulouris et al.) Architectural models of distributed systems placement of parts and relationships between them e.g.

More information

Developing Scalable Java Applications with Cacheonix

Developing Scalable Java Applications with Cacheonix Developing Scalable Java Applications with Cacheonix Introduction Presenter: Slava Imeshev Founder and main committer, Cacheonix Frequent speaker on scalability simeshev@cacheonix.com www.cacheonix.com/blog/

More information

Dr Markus Hagenbuchner markus@uow.edu.au CSCI319. Distributed Systems

Dr Markus Hagenbuchner markus@uow.edu.au CSCI319. Distributed Systems Dr Markus Hagenbuchner markus@uow.edu.au CSCI319 Distributed Systems CSCI319 Chapter 8 Page: 1 of 61 Fault Tolerance Study objectives: Understand the role of fault tolerance in Distributed Systems. Know

More information

Active/Active HA Job Scheduler and Resource Management

Active/Active HA Job Scheduler and Resource Management Active/Active HA Job Scheduler and Resource Management a proof-of-concept implementation Kai Uhlemann Oak Ridge National Laboratory, USA University of Reading, UK University of Applied Sciences Berlin,

More information

Web Traffic Capture. 5401 Butler Street, Suite 200 Pittsburgh, PA 15201 +1 (412) 408 3167 www.metronomelabs.com

Web Traffic Capture. 5401 Butler Street, Suite 200 Pittsburgh, PA 15201 +1 (412) 408 3167 www.metronomelabs.com Web Traffic Capture Capture your web traffic, filtered and transformed, ready for your applications without web logs or page tags and keep all your data inside your firewall. 5401 Butler Street, Suite

More information

LARGE-SCALE DATA STORAGE APPLICATIONS

LARGE-SCALE DATA STORAGE APPLICATIONS BENCHMARKING AVAILABILITY AND FAILOVER PERFORMANCE OF LARGE-SCALE DATA STORAGE APPLICATIONS Wei Sun and Alexander Pokluda December 2, 2013 Outline Goal and Motivation Overview of Cassandra and Voldemort

More information

BME CLEARING s Business Continuity Policy

BME CLEARING s Business Continuity Policy BME CLEARING s Business Continuity Policy Contents 1. Introduction 1 2. General goals of the Continuity Policy 1 3. Scope of BME CLEARING s Business Continuity Policy 1 4. Recovery strategies 2 5. Distribution

More information

Web Analytics Understand your web visitors without web logs or page tags and keep all your data inside your firewall.

Web Analytics Understand your web visitors without web logs or page tags and keep all your data inside your firewall. Web Analytics Understand your web visitors without web logs or page tags and keep all your data inside your firewall. 5401 Butler Street, Suite 200 Pittsburgh, PA 15201 +1 (412) 408 3167 www.metronomelabs.com

More information

INTERNATIONAL JOURNAL OF COMPUTER ENGINEERING & TECHNOLOGY (IJCET) PERCEIVING AND RECOVERING DEGRADED DATA ON SECURE CLOUD

INTERNATIONAL JOURNAL OF COMPUTER ENGINEERING & TECHNOLOGY (IJCET) PERCEIVING AND RECOVERING DEGRADED DATA ON SECURE CLOUD INTERNATIONAL JOURNAL OF COMPUTER ENGINEERING & TECHNOLOGY (IJCET) International Journal of Computer Engineering and Technology (IJCET), ISSN 0976- ISSN 0976 6367(Print) ISSN 0976 6375(Online) Volume 4,

More information

All about Eve: Execute-Verify Replication for Multi-Core Servers

All about Eve: Execute-Verify Replication for Multi-Core Servers All about Eve: Execute-Verify Replication for Multi-Core Servers Manos Kapritsos, Yang Wang, Vivien Quema, Allen Clement, Lorenzo Alvisi, Mike Dahlin The University of Texas at Austin Grenoble INP MPI-SWS

More information

Towards Low Latency State Machine Replication for Uncivil Wide-area Networks

Towards Low Latency State Machine Replication for Uncivil Wide-area Networks Towards Low Latency State Machine tion for Uncivil Wide-area Networks Yanhua Mao CSE, UC San Diego San Diego, CA - USA maoyanhua@cs.ucsd.edu Flavio P. Junqueira Yahoo! Research Barcelona, Spain fpj@yahoo-inc.com

More information

High Availability Storage

High Availability Storage High Availability Storage High Availability Extensions Goldwyn Rodrigues High Availability Storage Engineer SUSE High Availability Extensions Highly available services for mission critical systems Integrated

More information

DepSky Dependable and Secure Storage in a Cloud-of-Clouds Alysson Bessani, Miguel Correia, Bruno Quaresma, Fernando André, Paulo Sousa

DepSky Dependable and Secure Storage in a Cloud-of-Clouds Alysson Bessani, Miguel Correia, Bruno Quaresma, Fernando André, Paulo Sousa epsky ependable and Secure Storage in a Cloud-of-Clouds Alysson Bessani, Miguel Correia, Bruno Quaresma, Fernando André, Paulo Sousa University of Lisbon, Faculty of Sciences 1 Moving to Clouds ata is

More information

Dependability in Web Services

Dependability in Web Services Dependability in Web Services Christian Mikalsen chrismi@ifi.uio.no INF5360, Spring 2008 1 Agenda Introduction to Web Services. Extensible Web Services Architecture for Notification in Large- Scale Systems.

More information

Cloud Computing using MapReduce, Hadoop, Spark

Cloud Computing using MapReduce, Hadoop, Spark Cloud Computing using MapReduce, Hadoop, Spark Benjamin Hindman benh@cs.berkeley.edu Why this talk? At some point, you ll have enough data to run your parallel algorithms on multiple computers SPMD (e.g.,

More information

Non-Stop for Apache HBase: Active-active region server clusters TECHNICAL BRIEF

Non-Stop for Apache HBase: Active-active region server clusters TECHNICAL BRIEF Non-Stop for Apache HBase: -active region server clusters TECHNICAL BRIEF Technical Brief: -active region server clusters -active region server clusters HBase is a non-relational database that provides

More information

Hadoop Distributed File System. Jordan Prosch, Matt Kipps

Hadoop Distributed File System. Jordan Prosch, Matt Kipps Hadoop Distributed File System Jordan Prosch, Matt Kipps Outline - Background - Architecture - Comments & Suggestions Background What is HDFS? Part of Apache Hadoop - distributed storage What is Hadoop?

More information

Direct NFS - Design considerations for next-gen NAS appliances optimized for database workloads Akshay Shah Gurmeet Goindi Oracle

Direct NFS - Design considerations for next-gen NAS appliances optimized for database workloads Akshay Shah Gurmeet Goindi Oracle Direct NFS - Design considerations for next-gen NAS appliances optimized for database workloads Akshay Shah Gurmeet Goindi Oracle Agenda Introduction Database Architecture Direct NFS Client NFS Server

More information

MS 70-412 Exam Objectives Configuring Advanced Windows Server 2012 Services

MS 70-412 Exam Objectives Configuring Advanced Windows Server 2012 Services MS 70-412 Exam Objectives Configuring Advanced Windows Server 2012 Services Below are the exam objectives for Configuring Advanced Windows Server 2012 Services R2 Exam 70-412 Tasks measured as per latest

More information

Data Consistency on Private Cloud Storage System

Data Consistency on Private Cloud Storage System Volume, Issue, May-June 202 ISS 2278-6856 Data Consistency on Private Cloud Storage System Yin yein Aye University of Computer Studies,Yangon yinnyeinaye.ptn@email.com Abstract: Cloud computing paradigm

More information

Hadoop: A Framework for Data- Intensive Distributed Computing. CS561-Spring 2012 WPI, Mohamed Y. Eltabakh

Hadoop: A Framework for Data- Intensive Distributed Computing. CS561-Spring 2012 WPI, Mohamed Y. Eltabakh 1 Hadoop: A Framework for Data- Intensive Distributed Computing CS561-Spring 2012 WPI, Mohamed Y. Eltabakh 2 What is Hadoop? Hadoop is a software framework for distributed processing of large datasets

More information

Byzantium: Byzantine-Fault-Tolerant Database Replication

Byzantium: Byzantine-Fault-Tolerant Database Replication Byzantium: Byzantine-Fault-Tolerant Database Replication Cristóvão Tavares Honorato INESC-ID and Instituto Superior Técnico cristovao.honorato@gmail.com Abstract. Database systems are a key component behind

More information

BENCHMARKING CLOUD DATABASES CASE STUDY on HBASE, HADOOP and CASSANDRA USING YCSB

BENCHMARKING CLOUD DATABASES CASE STUDY on HBASE, HADOOP and CASSANDRA USING YCSB BENCHMARKING CLOUD DATABASES CASE STUDY on HBASE, HADOOP and CASSANDRA USING YCSB Planet Size Data!? Gartner s 10 key IT trends for 2012 unstructured data will grow some 80% over the course of the next

More information

Secure Framework for Data Storage from Single to Multi clouds in Cloud Networking

Secure Framework for Data Storage from Single to Multi clouds in Cloud Networking Secure Framework for Data Storage from Single to Multi clouds in Cloud Networking B.Sujana 1, P.Tejaswini 2, G.Srinivasulu 3, Sk.Karimulla 4 1,2,3,4 QUBA COLLEGE OF ENGINEERING & TECH, NELLORE Abstract:

More information

Distributed Systems (5DV147) What is Replication? Replication. Replication requirements. Problems that you may find. Replication.

Distributed Systems (5DV147) What is Replication? Replication. Replication requirements. Problems that you may find. Replication. Distributed Systems (DV47) Replication Fall 20 Replication What is Replication? Make multiple copies of a data object and ensure that all copies are identical Two Types of access; reads, and writes (updates)

More information

A Trustworthy and Resilient Event Broker for Monitoring Cloud Infrastructures

A Trustworthy and Resilient Event Broker for Monitoring Cloud Infrastructures A Trustworthy and Resilient Event Broker for Monitoring Cloud Infrastructures Diego Kreutz, António Casimiro, Marcelo Pasin LaSIGE, Faculty of Sciences, University of Lisbon, Portugal kreutz@lasige.di.fc.ul.pt,

More information

Applications of Passive Message Logging and TCP Stream Reconstruction to Provide Application-Level Fault Tolerance. Sunny Gleason COM S 717

Applications of Passive Message Logging and TCP Stream Reconstruction to Provide Application-Level Fault Tolerance. Sunny Gleason COM S 717 Applications of Passive Message Logging and TCP Stream Reconstruction to Provide Application-Level Fault Tolerance Sunny Gleason COM S 717 December 17, 2001 0.1 Introduction The proliferation of large-scale

More information

Critical SQL Server Databases:

Critical SQL Server Databases: Webinar Critical SQL Server Databases: Provide HA with SQL Server Failover Clustering and Cluster Shared Volumes Edwin Sarmiento Microsoft MVP/Microsoft Certified Master: http://www.edwinmsarmiento.com

More information

SQL Server Administrator Introduction - 3 Days Objectives

SQL Server Administrator Introduction - 3 Days Objectives SQL Server Administrator Introduction - 3 Days INTRODUCTION TO MICROSOFT SQL SERVER Exploring the components of SQL Server Identifying SQL Server administration tasks INSTALLING SQL SERVER Identifying

More information

Epimorphics Linked Data Publishing Platform

Epimorphics Linked Data Publishing Platform Epimorphics Linked Data Publishing Platform Epimorphics Services for G-Cloud Version 1.2 15 th December 2014 Authors: Contributors: Review: Andy Seaborne, Martin Merry Dave Reynolds Epimorphics Ltd, 2013

More information

Near Real Time Indexing Kafka Message to Apache Blur using Spark Streaming. by Dibyendu Bhattacharya

Near Real Time Indexing Kafka Message to Apache Blur using Spark Streaming. by Dibyendu Bhattacharya Near Real Time Indexing Kafka Message to Apache Blur using Spark Streaming by Dibyendu Bhattacharya Pearson : What We Do? We are building a scalable, reliable cloud-based learning platform providing services

More information

A programming model in Cloud: MapReduce

A programming model in Cloud: MapReduce A programming model in Cloud: MapReduce Programming model and implementation developed by Google for processing large data sets Users specify a map function to generate a set of intermediate key/value

More information

Distributed File Systems

Distributed File Systems Distributed File Systems Mauro Fruet University of Trento - Italy 2011/12/19 Mauro Fruet (UniTN) Distributed File Systems 2011/12/19 1 / 39 Outline 1 Distributed File Systems 2 The Google File System (GFS)

More information

Welcome to the unit of Hadoop Fundamentals on Hadoop architecture. I will begin with a terminology review and then cover the major components

Welcome to the unit of Hadoop Fundamentals on Hadoop architecture. I will begin with a terminology review and then cover the major components Welcome to the unit of Hadoop Fundamentals on Hadoop architecture. I will begin with a terminology review and then cover the major components of Hadoop. We will see what types of nodes can exist in a Hadoop

More information

Cloud Hosting for PostgreSQL

Cloud Hosting for PostgreSQL Cloud Hosting for PostgreSQL Database Hosting Options Colocation Dedicated Server Virtual Machine Database as a Service Finding Your Just Right Hosting Pssh, that's easy! Just use EC2! $COOL_NEW_STARTUP

More information

State Transfer and Network Marketing

State Transfer and Network Marketing Highly Available Trading System: Experiments with CORBA Xavier Défago, Karim R. Mazouni, André Schiper Département d Informatique, École Polytechnique Fédérale CH-1015 Lausanne, Switzerland. Tel +41 21

More information

Avoid a single point of failure by replicating the server Increase scalability by sharing the load among replicas

Avoid a single point of failure by replicating the server Increase scalability by sharing the load among replicas 3. Replication Replication Goal: Avoid a single point of failure by replicating the server Increase scalability by sharing the load among replicas Problems: Partial failures of replicas and messages No

More information

IT Architecture Review. ISACA Conference Fall 2003

IT Architecture Review. ISACA Conference Fall 2003 IT Architecture Review ISACA Conference Fall 2003 Table of Contents Introduction Business Drivers Overview of Tiered Architecture IT Architecture Review Why review IT architecture How to conduct IT architecture

More information

Facebook: Cassandra. Smruti R. Sarangi. Department of Computer Science Indian Institute of Technology New Delhi, India. Overview Design Evaluation

Facebook: Cassandra. Smruti R. Sarangi. Department of Computer Science Indian Institute of Technology New Delhi, India. Overview Design Evaluation Facebook: Cassandra Smruti R. Sarangi Department of Computer Science Indian Institute of Technology New Delhi, India Smruti R. Sarangi Leader Election 1/24 Outline 1 2 3 Smruti R. Sarangi Leader Election

More information

Big Data Testbed for Research and Education Networks Analysis. SomkiatDontongdang, PanjaiTantatsanawong, andajchariyasaeung

Big Data Testbed for Research and Education Networks Analysis. SomkiatDontongdang, PanjaiTantatsanawong, andajchariyasaeung Big Data Testbed for Research and Education Networks Analysis SomkiatDontongdang, PanjaiTantatsanawong, andajchariyasaeung Research and Education Networks ThaiREN is a specialized Internet Service Provider

More information

Efficient Fault-Tolerant Infrastructure for Cloud Computing

Efficient Fault-Tolerant Infrastructure for Cloud Computing Efficient Fault-Tolerant Infrastructure for Cloud Computing Xueyuan Su Candidate for Ph.D. in Computer Science, Yale University December 2013 Committee Michael J. Fischer (advisor) Dana Angluin James Aspnes

More information

SNAP WEBHOST SECURITY POLICY

SNAP WEBHOST SECURITY POLICY SNAP WEBHOST SECURITY POLICY Should you require any technical support for the Snap survey software or any assistance with software licenses, training and Snap research services please contact us at one

More information

Distributed Filesystems

Distributed Filesystems Distributed Filesystems Amir H. Payberah Swedish Institute of Computer Science amir@sics.se April 8, 2014 Amir H. Payberah (SICS) Distributed Filesystems April 8, 2014 1 / 32 What is Filesystem? Controls

More information

Distributed Data Stores

Distributed Data Stores Distributed Data Stores 1 Distributed Persistent State MapReduce addresses distributed processing of aggregation-based queries Persistent state across a large number of machines? Distributed DBMS High

More information

Optimized Database Design for Software-as-a-Service (SaaS)

Optimized Database Design for Software-as-a-Service (SaaS) Optimized base Design for Software-as-a-Service (SaaS) Noel Vega Senior base Administrator TOMOS Software, LLC page 1 Software-as-a-Service In today s economic climate, many firms large and small have

More information

Chapter 7. Using Hadoop Cluster and MapReduce

Chapter 7. Using Hadoop Cluster and MapReduce Chapter 7 Using Hadoop Cluster and MapReduce Modeling and Prototyping of RMS for QoS Oriented Grid Page 152 7. Using Hadoop Cluster and MapReduce for Big Data Problems The size of the databases used in

More information

CA ARCserve and CA XOsoft r12.5 Best Practices for protecting Microsoft SQL Server

CA ARCserve and CA XOsoft r12.5 Best Practices for protecting Microsoft SQL Server CA RECOVERY MANAGEMENT R12.5 BEST PRACTICE CA ARCserve and CA XOsoft r12.5 Best Practices for protecting Microsoft SQL Server Overview Benefits The CA Advantage The CA ARCserve Backup Support and Engineering

More information

Service Level Agreement

Service Level Agreement Exhibit No. 1 to Agreement No. H/ of 201_ 1. Terms and Definitions Service Level Agreement 1.1. Services (see description of tariff plans at Provider s web site at: http://www.inoventica-services.ru) 1.1.1.

More information

Introduction to HDFS. Prasanth Kothuri, CERN

Introduction to HDFS. Prasanth Kothuri, CERN Prasanth Kothuri, CERN 2 What s HDFS HDFS is a distributed file system that is fault tolerant, scalable and extremely easy to expand. HDFS is the primary distributed storage for Hadoop applications. Hadoop

More information

Distributed RAID Architectures for Cluster I/O Computing. Kai Hwang

Distributed RAID Architectures for Cluster I/O Computing. Kai Hwang Distributed RAID Architectures for Cluster I/O Computing Kai Hwang Internet and Cluster Computing Lab. University of Southern California 1 Presentation Outline : Scalable Cluster I/O The RAID-x Architecture

More information

Architectures for massive data management

Architectures for massive data management Architectures for massive data management Apache Kafka, Samza, Storm Albert Bifet albert.bifet@telecom-paristech.fr October 20, 2015 Stream Engine Motivation Digital Universe EMC Digital Universe with

More information

AdSec: A System for Adaptive Network Security

AdSec: A System for Adaptive Network Security AdSec: A System for Adaptive Network Security Kihong Park Network Systems Lab & CERIAS Dept. of Computer Sciences Purdue University park@cs.purdue.edu Joint: E. Spafford (co-pi), M. Tripunitara, G. Nalawade

More information

BBM467 Data Intensive ApplicaAons

BBM467 Data Intensive ApplicaAons Hace7epe Üniversitesi Bilgisayar Mühendisliği Bölümü BBM467 Data Intensive ApplicaAons Dr. Fuat Akal akal@hace7epe.edu.tr Problem How do you scale up applicaaons? Run jobs processing 100 s of terabytes

More information

Security for Ubiquitous and Adhoc Networks

Security for Ubiquitous and Adhoc Networks Security for Ubiquitous and Adhoc Networks Mobile Adhoc Networks Collection of nodes that do not rely on a predefined infrastructure Adhoc networks can be formed merged together partitioned to separate

More information

EECatalog SPECIAL FEATURE

EECatalog SPECIAL FEATURE Type Zero Hypervisor the New Frontier in Embedded Virtualization The hypervisor s full control over the hardware platform and ability to virtualize hardware platforms are beneficial in environments that

More information

Appendix A Core Concepts in SQL Server High Availability and Replication

Appendix A Core Concepts in SQL Server High Availability and Replication Appendix A Core Concepts in SQL Server High Availability and Replication Appendix Overview Core Concepts in High Availability Core Concepts in Replication 1 Lesson 1: Core Concepts in High Availability

More information

Benchmarking Data Replication Performance for The Defense Integrated Military Human Resources System

Benchmarking Data Replication Performance for The Defense Integrated Military Human Resources System Benchmarking Data Replication Performance for The Defense Integrated Military Human Resources System Venkata Mahadevan, Mahdi Abdelguerfi, Shengru Tu, Golden Richard Department of Computer Science University

More information

Highly Available Mobile Services Infrastructure Using Oracle Berkeley DB

Highly Available Mobile Services Infrastructure Using Oracle Berkeley DB Highly Available Mobile Services Infrastructure Using Oracle Berkeley DB Executive Summary Oracle Berkeley DB is used in a wide variety of carrier-grade mobile infrastructure systems. Berkeley DB provides

More information

Microsoft s Advantages and Goals for Hyper-V for Server 2016

Microsoft s Advantages and Goals for Hyper-V for Server 2016 Virtualization is a bedrock of modern cloud environments. Hypervisors manage the virtual machines in a cloud environments, providing six fundamental features, as shown in the table below. 1 Hypervisors

More information

Advanced Database Group Project - Distributed Database with SQL Server

Advanced Database Group Project - Distributed Database with SQL Server Advanced Database Group Project - Distributed Database with SQL Server Hung Chang, Qingyi Zhu Erasmus Mundus IT4BI 1. Introduction 1.1 Motivation Distributed database is vague for us. How to differentiate

More information

Veritas Cluster Server

Veritas Cluster Server APPENDIXE This module provides basic guidelines for the (VCS) configuration in a Subscriber Manager (SM) cluster installation. It assumes basic knowledge of the VCS environment; it does not replace the

More information

Best Practices for Monitoring Databases on VMware. Dean Richards Senior DBA, Confio Software

Best Practices for Monitoring Databases on VMware. Dean Richards Senior DBA, Confio Software Best Practices for Monitoring Databases on VMware Dean Richards Senior DBA, Confio Software 1 Who Am I? 20+ Years in Oracle & SQL Server DBA and Developer Worked for Oracle Consulting Specialize in Performance

More information

Data Replication in Privileged Credential Vaults

Data Replication in Privileged Credential Vaults Data Replication in Privileged Credential Vaults 2015 Hitachi ID Systems, Inc. All rights reserved. Contents 1 Background: Securing Privileged Accounts 2 2 The Business Challenge 3 3 Solution Approaches

More information

Achieving High Availability

Achieving High Availability Achieving High Availability What You Need to Know before You Start James Bottomley SteelEye Technology 21 January 2004 1 What Is Availability? Availability measures the ability of a given service to operate.

More information

SQL Server Replication Guide

SQL Server Replication Guide SQL Server Replication Guide Rev: 2013-08-08 Sitecore CMS 6.3 and Later SQL Server Replication Guide Table of Contents Chapter 1 SQL Server Replication Guide... 3 1.1 SQL Server Replication Overview...

More information

Ground up Introduction to In-Memory Data (Grids)

Ground up Introduction to In-Memory Data (Grids) Ground up Introduction to In-Memory Data (Grids) QCON 2015 NEW YORK, NY 2014 Hazelcast Inc. Why you here? 2014 Hazelcast Inc. Java Developer on a quest for scalability frameworks Architect on low-latency

More information

Distributed System Principles

Distributed System Principles Distributed System Principles 1 What is a Distributed System? Definition: A distributed system consists of a collection of autonomous computers, connected through a network and distribution middleware,

More information

Attunity RepliWeb Event Driven Jobs

Attunity RepliWeb Event Driven Jobs Attunity RepliWeb Event Driven Jobs Software Version 5.2 June 25, 2012 RepliWeb, Inc., 6441 Lyons Road, Coconut Creek, FL 33073 Tel: (954) 946-2274, Fax: (954) 337-6424 E-mail: info@repliweb.com, Support:

More information

Apache HBase. Crazy dances on the elephant back

Apache HBase. Crazy dances on the elephant back Apache HBase Crazy dances on the elephant back Roman Nikitchenko, 16.10.2014 YARN 2 FIRST EVER DATA OS 10.000 nodes computer Recent technology changes are focused on higher scale. Better resource usage

More information

Virtual Machine Synchronization for High Availability Clusters

Virtual Machine Synchronization for High Availability Clusters Virtual Machine Synchronization for High Availability Clusters Yoshiaki Tamura, Koji Sato, Seiji Kihara, Satoshi Moriai NTT Cyber Space Labs. 2007/4/17 Consolidating servers using VM Internet services

More information

Release Notes. LiveVault. Contents. Version 7.65. Revision 0

Release Notes. LiveVault. Contents. Version 7.65. Revision 0 R E L E A S E N O T E S LiveVault Version 7.65 Release Notes Revision 0 This document describes new features and resolved issues for LiveVault 7.65. You can retrieve the latest available product documentation

More information

Chapter 1 - Web Server Management and Cluster Topology

Chapter 1 - Web Server Management and Cluster Topology Objectives At the end of this chapter, participants will be able to understand: Web server management options provided by Network Deployment Clustered Application Servers Cluster creation and management

More information

Big Data Primer. 1 Why Big Data? Alex Sverdlov alex@theparticle.com

Big Data Primer. 1 Why Big Data? Alex Sverdlov alex@theparticle.com Big Data Primer Alex Sverdlov alex@theparticle.com 1 Why Big Data? Data has value. This immediately leads to: more data has more value, naturally causing datasets to grow rather large, even at small companies.

More information

MongoDB and Couchbase

MongoDB and Couchbase Benchmarking MongoDB and Couchbase No-SQL Databases Alex Voss Chris Choi University of St Andrews TOP 2 Questions Should a social scientist buy MORE or UPGRADE computers? Which DATABASE(s)? Document Oriented

More information

Data Center Network Topologies: FatTree

Data Center Network Topologies: FatTree Data Center Network Topologies: FatTree Hakim Weatherspoon Assistant Professor, Dept of Computer Science CS 5413: High Performance Systems and Networking September 22, 2014 Slides used and adapted judiciously

More information

5 SCS Deployment Infrastructure in Use

5 SCS Deployment Infrastructure in Use 5 SCS Deployment Infrastructure in Use Currently, an increasing adoption of cloud computing resources as the base to build IT infrastructures is enabling users to build flexible, scalable, and low-cost

More information

Optimizing Data Center Networks for Cloud Computing

Optimizing Data Center Networks for Cloud Computing PRAMAK 1 Optimizing Data Center Networks for Cloud Computing Data Center networks have evolved over time as the nature of computing changed. They evolved to handle the computing models based on main-frames,

More information

High Performance Cluster Support for NLB on Window

High Performance Cluster Support for NLB on Window High Performance Cluster Support for NLB on Window [1]Arvind Rathi, [2] Kirti, [3] Neelam [1]M.Tech Student, Department of CSE, GITM, Gurgaon Haryana (India) arvindrathi88@gmail.com [2]Asst. Professor,

More information

A Resilient Protection Device for SIEM Systems

A Resilient Protection Device for SIEM Systems A Resilient Protection Device for SIEM Systems Nuno Neves University of Lisboa, Portugal http://www.di.fc.ul.pt/~nuno Work with: Alysson Bessani, Miguel Garcia, Eric Vial, Ricardo Fonseca, Paulo Veríssimo

More information

Hadoop IST 734 SS CHUNG

Hadoop IST 734 SS CHUNG Hadoop IST 734 SS CHUNG Introduction What is Big Data?? Bulk Amount Unstructured Lots of Applications which need to handle huge amount of data (in terms of 500+ TB per day) If a regular machine need to

More information

Design and Implementation of a Storage Repository Using Commonality Factoring. IEEE/NASA MSST2003 April 7-10, 2003 Eric W. Olsen

Design and Implementation of a Storage Repository Using Commonality Factoring. IEEE/NASA MSST2003 April 7-10, 2003 Eric W. Olsen Design and Implementation of a Storage Repository Using Commonality Factoring IEEE/NASA MSST2003 April 7-10, 2003 Eric W. Olsen Axion Overview Potentially infinite historic versioning for rollback and

More information