Crescando: Predictable Performance for Unpredictable Workloads

Size: px
Start display at page:

Download "Crescando: Predictable Performance for Unpredictable Workloads"

Transcription

1 Crescando: Predictable Performance for Unpredictable Workloads G. Alonso, D. Fauser, G. Giannikis, D. Kossmann, J. Meyer, P. Unterbrunner Amadeus S.A. ETH Zurich, Systems Group (Funded by Enterprise Computing Center)

2 Overview Background & Problem Statement Approach Experiments & Results

3 Amadeus Workload Passenger-Booking Database ~ 600 GB of raw data (two years of bookings) single table, denormalized ~ 50 attributes: flight-no, name, date,..., many flags Query Workload up to 4000 queries / second latency guarantees: 2 seconds today: only pre-canned queries allowed Update Workload avg. 600 updates per second (1 update per GB per sec) peak of updates per second data freshness guarantee: 2 seconds

4 Amadeus Query Examples Simple Queries Print passenger list of Flight LH 4711 Give me LH hon circle from Frankfurt to Delhi Complex Queries Give me all Heathrow passengers that need special assistance (e.g., after terror warning) Problems with State-of-the Art Simple queries work only because of mat. views multi-month project to implement new query / process Complex queries do not work at all

5 Why trad. DBMS are a pain? 20'000 MySQL Query 50th MySQL Query 90th MySQL Query 99th 9'000 8'000 Query Latency in msec 15'000 10'000 5'000 7'000 6'000 5'000 4'000 3'000 2'000 1'000 Query Latency in msec Update Load in Updates/sec Performance depends on workload parameters changes in update rate, queries,... -> huge variance impossible / expensive to predict and tune correctly Synthetic Workload Parameter s

6 Goals Predictable (= constant) Performance independent of updates, query types,... Meet SLAs latency, data freshness Affordable Cost ~ 1000 COTS machines are okay (compare to mainframe) Meet Consistency Requirements monotonic reads (ACID not needed) Respect Hardware Trends main-memory, NUMA, large data centers

7 Selected Related Work L. Qiao et. al. Main-memory scan sharing for multi-core CPUs. VLDB '08 Cooperative main-memory scans for ad-hoc OLAP queries (read-only) P. Boncz, M. Zukowski, and N. Nes. MonetDB/X100: Hyperpipelining query execution. CIDR 05 Cooperative scans over vertical partitions on disk K. A. Ross. Selection conditions in main memory. In ACM TODS, 29(1), S. Chandrasekaran and M. J. Franklin. Streaming queries over streaming data VLDB '02 Query-data join G. Candea, N. Polyzotis, R. Vingralek. A Scalable, Predictable Join Operator for Highly Concurrent Data Warehouses. VLDB 09 An always on join operator based on similar requirements and design principles

8 Overview Background & Problem Statement Approach Experiments & Results

9 What is Crescando? A distributed (relational) table: MM on NUMA horizontally partitioned distributed within and across machines Query / update interface SELECT * FROM table WHERE <any predicate> UPDATE table SET <anything> WHERE <any predicate> monotonic reads / writes (SI within a single partition) Some nice properties constant / predictable latency & data freshness solves the Amadeus use case

10 Design Operate MM like disk in shared-nothing architect. Core ~ Spindle (many cores per machine & data center) all data kept in main memory (log to disk for recovery) each core scans one partition of data all the time Batch queries and updates: shared scans do trivial MQO (at scan level on system with single table) control read/update pattern -> no data contention Index queries / not data just as in the stream processing world predictable+optimizable: rebuild indexes every second Updates are processed before reads

11 Crescando in Data Center (N Machines)

12 Crescando on 1 Machine (N Cores) Scan Thread Scan Thread Input Queue (Operations) Split Scan Thread Scan Thread Merge Output Queue (Result Tuples)... Input Queue (Operations) Scan Thread Output Queue (Result Tuples)

13 {record, {query-ids} } results is Predicate Indexes Queries + Upd. qs Unindexed Queries Active Queries Record 0 records Crescando on 1 Core Snapshot n Snapshot n+1 data partition Read Cursor Write Cursor

14 Scanning a Partition Record 0 Snapshot n+1 Snapshot n Read Cursor Write Cursor

15 Scanning a Partition Record 0 Snapshot n+1 Snapshot n Read Cursor Write Cursor Merge cursors

16 Scanning a Partition Record 0 Build indexes for next batch of queries and updates Snapshot n+1 Snapshot n Read Cursor Write Cursor Merge cursors

17 Amadeus Queries (Oper. BI) Transactions (OLTP) Aggregator Aggregator Aggregator Aggregator Aggregator Key / Value Mainframe Query / {Key} Update stream (queue) Store (e.g., S3) Store (e.g., S3) Crescando Nodes

18 Implementation Details Optimization decide for batch of queries which indexes to build runs once every second (must be fast) Query + update indexes different indexes for different kinds of predicates e.g., hash tables, R-trees, tries,... must fit in L2 cache (better L1 cache) Probe indexes Updates in right order, queries in any order Persistence & Recovery Log updates / inserts to disk (not a bottleneck)

19 Crescando in the Cloud Client HTTP XML, JSON, HTML Web Server FCGI,... XML, JSON, HTML App Server SQL records DB Server get/put block Store

20 Crescando in the Cloud Client Client Client Client HTTP FCGI,... SQL Web Server App Server DB Server XML, JSON, HTML XML, JSON, HTML records Web/App Aggregator Workload Splitter XML, JSON, HTML Web/App Aggregator queries/updates <-> records Store (e.g., S3) Store (e.g., S3) Crescando Nodes get/put block Store

21 Overview Background & Problem Statement Approach Experiments & Results

22 Benchmark Environment Crescando Implementation Shared library for POSIX systems Heavily optimized C++ with some inline assembly Benchmark Machines 16 core Opteron machine with 32 GB DDR2 RAM 64-bit Linux SMP kernel, ver , NUMA enabled Benchmark Database The Amadeus Ticket view (one record per passenger per flight) ~350byte per record; 47 attributes, many of them flags Benchmarks use 15 GB of net data Query + Update Workload Current: Amadeus Workload (from Amadeus traces) Predicted: Synthetic workload with varying predicate selectivity

23 Multi-core Scale-up Q/s 10.5 Q/s 1.9 Q/s Round-robin partitioning, read-only Amadeus workload, vary number of threads

24 Latency vs. Query Volume thrashing, queue overflows L1 cache base latency of scan L2 cache Hash partitioning, read-only Amadeus workload, vary queries/sec

25 Latency vs. Concurrent Writes Hash partitioning, Amadeus workload, 2000 queries/sec, vary updates

26 Crescando vs. MySQL - Latency updates + big queries cause massive queuing s = 1.4: 1 / 3,000 queries do not hit an index s = 1.5: 1 / 10,000 queries do not hit an index 16s = time for full-table scan in MySQL Amadeus workload, 100 q/sec, vary updates Synthetic read-only workload, vary skew

27 Crescando vs. MySQL - Throughput read-only workload! Amadeus workload, vary updates Synthetic read-only workload, vary skew

28 Equivalent Annual Cost (2009) 1' EAC/GB of Crescando Storage EAC/GB Years of Ownership 8 x Opteron 8439 SE 4 x Opteron 8439 SE 4 x Opteron 8393 SE 4 x Xeon X x Xeon E7450

29 Summary of Experiments high concurrent query + update throughput Amadeus: ~4000 queries/sec + ~1000 updates/sec updates do not impact latency of queries predictable and guaranteed latency depends on size of partition: not optimal, good enough cost and energy effeciency depends on workload: great for hot data, heavy WL consistency: write monotonicity, can build SI on top works great on NUMA! controls read+write pattern linear scale-up with number of cores

30 Status & Outlook Status Fully operational system Extensive experiments at Amadeus Production: Summer 2011 (planned) Outlook Column store variant of Crescando Compression E-cast: flexible partitioning & replication Joins over normalized data, Aggregation,...

31 Conclusion A new way to process queries Massively parallel, simple, predictable Not always optimal, but always good enough Ideal for operational BI High query throughput Concurrent updates with freshness guarantees Great building block for many scenarios Rethink database and storage system architecture

DATABASES AND THE CLOUD. Gustavo Alonso Systems Group / ECC Dept. of Computer Science ETH Zürich, Switzerland

DATABASES AND THE CLOUD. Gustavo Alonso Systems Group / ECC Dept. of Computer Science ETH Zürich, Switzerland DATABASES AND THE CLOUD Gustavo Alonso Systems Group / ECC Dept. of Computer Science ETH Zürich, Switzerland AVALOQ Conference Zürich June 2011 Systems Group www.systems.ethz.ch Enterprise Computing Center

More information

Research Collection. Daedalus a distributed crescando system. Master Thesis. ETH Library. Author(s): Giannikis, Georgios. Publication Date: 2009

Research Collection. Daedalus a distributed crescando system. Master Thesis. ETH Library. Author(s): Giannikis, Georgios. Publication Date: 2009 Research Collection Master Thesis Daedalus a distributed crescando system Author(s): Giannikis, Georgios Publication Date: 2009 Permanent Link: https://doi.org/10.3929/ethz-a-005816890 Rights / License:

More information

Rack-scale Data Processing System

Rack-scale Data Processing System Rack-scale Data Processing System Jana Giceva, Darko Makreshanski, Claude Barthels, Alessandro Dovis, Gustavo Alonso Systems Group, Department of Computer Science, ETH Zurich Rack-scale Data Processing

More information

MULTICORE IN DATA APPLIANCES. Gustavo Alonso Systems Group Dept. of Computer Science ETH Zürich, Switzerland

MULTICORE IN DATA APPLIANCES. Gustavo Alonso Systems Group Dept. of Computer Science ETH Zürich, Switzerland MULTICORE IN DATA APPLIANCES Gustavo Alonso Systems Group Dept. of Computer Science ETH Zürich, Switzerland SwissBox CREST Workshop March 2012 Systems Group = www.systems.ethz.ch Enterprise Computing Center

More information

Data Modeling and Databases Ch 10: Query Processing - Algorithms. Gustavo Alonso Systems Group Department of Computer Science ETH Zürich

Data Modeling and Databases Ch 10: Query Processing - Algorithms. Gustavo Alonso Systems Group Department of Computer Science ETH Zürich Data Modeling and Databases Ch 10: Query Processing - Algorithms Gustavo Alonso Systems Group Department of Computer Science ETH Zürich Transactions (Locking, Logging) Metadata Mgmt (Schema, Stats) Application

More information

Data Modeling and Databases Ch 9: Query Processing - Algorithms. Gustavo Alonso Systems Group Department of Computer Science ETH Zürich

Data Modeling and Databases Ch 9: Query Processing - Algorithms. Gustavo Alonso Systems Group Department of Computer Science ETH Zürich Data Modeling and Databases Ch 9: Query Processing - Algorithms Gustavo Alonso Systems Group Department of Computer Science ETH Zürich Transactions (Locking, Logging) Metadata Mgmt (Schema, Stats) Application

More information

Performance in the Multicore Era

Performance in the Multicore Era Performance in the Multicore Era Gustavo Alonso Systems Group -- ETH Zurich, Switzerland Systems Group Enterprise Computing Center Performance in the multicore era 2 BACKGROUND - SWISSBOX SwissBox: An

More information

What is new in the cloud? Donald Kossmann ETH Zurich

What is new in the cloud? Donald Kossmann ETH Zurich What is new in the cloud? Donald Kossmann ETH Zurich http://systems.ethz.ch Acknowledgments Questions? Agenda Why? How? What? Simple Truths Power of data the more data the merrier (GB > TB > PB) data comes

More information

Architecture-Conscious Database Systems

Architecture-Conscious Database Systems Architecture-Conscious Database Systems 2009 VLDB Summer School Shanghai Peter Boncz (CWI) Sources Thank You! l l l l Database Architectures for New Hardware VLDB 2004 tutorial, Anastassia Ailamaki Query

More information

Big and Fast. Anti-Caching in OLTP Systems. Justin DeBrabant

Big and Fast. Anti-Caching in OLTP Systems. Justin DeBrabant Big and Fast Anti-Caching in OLTP Systems Justin DeBrabant Online Transaction Processing transaction-oriented small footprint write-intensive 2 A bit of history 3 OLTP Through the Years relational model

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

VOLTDB + HP VERTICA. page

VOLTDB + HP VERTICA. page VOLTDB + HP VERTICA ARCHITECTURE FOR FAST AND BIG DATA ARCHITECTURE FOR FAST + BIG DATA FAST DATA Fast Serve Analytics BIG DATA BI Reporting Fast Operational Database Streaming Analytics Columnar Analytics

More information

Advanced Databases: Parallel Databases A.Poulovassilis

Advanced Databases: Parallel Databases A.Poulovassilis 1 Advanced Databases: Parallel Databases A.Poulovassilis 1 Parallel Database Architectures Parallel database systems use parallel processing techniques to achieve faster DBMS performance and handle larger

More information

Data Processing on Emerging Hardware

Data Processing on Emerging Hardware Data Processing on Emerging Hardware Gustavo Alonso Systems Group Department of Computer Science ETH Zurich, Switzerland 3 rd International Summer School on Big Data, Munich, Germany, 2017 www.systems.ethz.ch

More information

A Comparison of Memory Usage and CPU Utilization in Column-Based Database Architecture vs. Row-Based Database Architecture

A Comparison of Memory Usage and CPU Utilization in Column-Based Database Architecture vs. Row-Based Database Architecture A Comparison of Memory Usage and CPU Utilization in Column-Based Database Architecture vs. Row-Based Database Architecture By Gaurav Sheoran 9-Dec-08 Abstract Most of the current enterprise data-warehouses

More information

Crazy little thing called hardware GUSTAVO ALONSO SYSTEMS GROUP DEPT. OF COMPUTER SCIENCE ETH ZURICH

Crazy little thing called hardware GUSTAVO ALONSO SYSTEMS GROUP DEPT. OF COMPUTER SCIENCE ETH ZURICH Crazy little thing called hardware GUSTAVO ALONSO SYSTEMS GROUP DEPT. OF COMPUTER SCIENCE ETH ZURICH HTDC 2014 Systems Group = www.systems.ethz.ch Enterprise Computing Center = www.ecc.ethz.ch Hardware

More information

HyPer-sonic Combined Transaction AND Query Processing

HyPer-sonic Combined Transaction AND Query Processing HyPer-sonic Combined Transaction AND Query Processing Thomas Neumann Technische Universität München December 2, 2011 Motivation There are different scenarios for database usage: OLTP: Online Transaction

More information

Sandor Heman, Niels Nes, Peter Boncz. Dynamic Bandwidth Sharing. Cooperative Scans: Marcin Zukowski. CWI, Amsterdam VLDB 2007.

Sandor Heman, Niels Nes, Peter Boncz. Dynamic Bandwidth Sharing. Cooperative Scans: Marcin Zukowski. CWI, Amsterdam VLDB 2007. Cooperative Scans: Dynamic Bandwidth Sharing in a DBMS Marcin Zukowski Sandor Heman, Niels Nes, Peter Boncz CWI, Amsterdam VLDB 2007 Outline Scans in a DBMS Cooperative Scans Benchmarks DSM version VLDB,

More information

Architecture of a Real-Time Operational DBMS

Architecture of a Real-Time Operational DBMS Architecture of a Real-Time Operational DBMS Srini V. Srinivasan Founder, Chief Development Officer Aerospike CMG India Keynote Thane December 3, 2016 [ CMGI Keynote, Thane, India. 2016 Aerospike Inc.

More information

MySQL Performance Optimization and Troubleshooting with PMM. Peter Zaitsev, CEO, Percona

MySQL Performance Optimization and Troubleshooting with PMM. Peter Zaitsev, CEO, Percona MySQL Performance Optimization and Troubleshooting with PMM Peter Zaitsev, CEO, Percona In the Presentation Practical approach to deal with some of the common MySQL Issues 2 Assumptions You re looking

More information

HyPer-sonic Combined Transaction AND Query Processing

HyPer-sonic Combined Transaction AND Query Processing HyPer-sonic Combined Transaction AND Query Processing Thomas Neumann Technische Universität München October 26, 2011 Motivation - OLTP vs. OLAP OLTP and OLAP have very different requirements OLTP high

More information

CIS 601 Graduate Seminar. Dr. Sunnie S. Chung Dhruv Patel ( ) Kalpesh Sharma ( )

CIS 601 Graduate Seminar. Dr. Sunnie S. Chung Dhruv Patel ( ) Kalpesh Sharma ( ) Guide: CIS 601 Graduate Seminar Presented By: Dr. Sunnie S. Chung Dhruv Patel (2652790) Kalpesh Sharma (2660576) Introduction Background Parallel Data Warehouse (PDW) Hive MongoDB Client-side Shared SQL

More information

NVMFS: A New File System Designed Specifically to Take Advantage of Nonvolatile Memory

NVMFS: A New File System Designed Specifically to Take Advantage of Nonvolatile Memory NVMFS: A New File System Designed Specifically to Take Advantage of Nonvolatile Memory Dhananjoy Das, Sr. Systems Architect SanDisk Corp. 1 Agenda: Applications are KING! Storage landscape (Flash / NVM)

More information

Agenda. AWS Database Services Traditional vs AWS Data services model Amazon RDS Redshift DynamoDB ElastiCache

Agenda. AWS Database Services Traditional vs AWS Data services model Amazon RDS Redshift DynamoDB ElastiCache Databases on AWS 2017 Amazon Web Services, Inc. and its affiliates. All rights served. May not be copied, modified, or distributed in whole or in part without the express consent of Amazon Web Services,

More information

What We Have Already Learned. DBMS Deployment: Local. Where We Are Headed Next. DBMS Deployment: 3 Tiers. DBMS Deployment: Client/Server

What We Have Already Learned. DBMS Deployment: Local. Where We Are Headed Next. DBMS Deployment: 3 Tiers. DBMS Deployment: Client/Server What We Have Already Learned CSE 444: Database Internals Lectures 19-20 Parallel DBMSs Overall architecture of a DBMS Internals of query execution: Data storage and indexing Buffer management Query evaluation

More information

SCYLLA: NoSQL at Ludicrous Speed. 主讲人 :ScyllaDB 软件工程师贺俊

SCYLLA: NoSQL at Ludicrous Speed. 主讲人 :ScyllaDB 软件工程师贺俊 SCYLLA: NoSQL at Ludicrous Speed 主讲人 :ScyllaDB 软件工程师贺俊 Today we will cover: + Intro: Who we are, what we do, who uses it + Why we started ScyllaDB + Why should you care + How we made design decisions to

More information

Main-Memory Databases 1 / 25

Main-Memory Databases 1 / 25 1 / 25 Motivation Hardware trends Huge main memory capacity with complex access characteristics (Caches, NUMA) Many-core CPUs SIMD support in CPUs New CPU features (HTM) Also: Graphic cards, FPGAs, low

More information

Architecture and Implementation of Database Systems (Winter 2014/15)

Architecture and Implementation of Database Systems (Winter 2014/15) Jens Teubner Architecture & Implementation of DBMS Winter 2014/15 1 Architecture and Implementation of Database Systems (Winter 2014/15) Jens Teubner, DBIS Group jens.teubner@cs.tu-dortmund.de Winter 2014/15

More information

HYRISE In-Memory Storage Engine

HYRISE In-Memory Storage Engine HYRISE In-Memory Storage Engine Martin Grund 1, Jens Krueger 1, Philippe Cudre-Mauroux 3, Samuel Madden 2 Alexander Zeier 1, Hasso Plattner 1 1 Hasso-Plattner-Institute, Germany 2 MIT CSAIL, USA 3 University

More information

CompSci 516: Database Systems. Lecture 20. Parallel DBMS. Instructor: Sudeepa Roy

CompSci 516: Database Systems. Lecture 20. Parallel DBMS. Instructor: Sudeepa Roy CompSci 516 Database Systems Lecture 20 Parallel DBMS Instructor: Sudeepa Roy Duke CS, Fall 2017 CompSci 516: Database Systems 1 Announcements HW3 due on Monday, Nov 20, 11:55 pm (in 2 weeks) See some

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

CompSci 516 Database Systems

CompSci 516 Database Systems CompSci 516 Database Systems Lecture 20 NoSQL and Column Store Instructor: Sudeepa Roy Duke CS, Fall 2018 CompSci 516: Database Systems 1 Reading Material NOSQL: Scalable SQL and NoSQL Data Stores Rick

More information

What is new in the cloud? - A Database Perspective. Donald Kossmann Systems Group, ETH Zurich

What is new in the cloud? - A Database Perspective. Donald Kossmann Systems Group, ETH Zurich What is new in the cloud? - A Database Perspective Donald Kossmann Systems Group, ETH Zurich http://systems.ethz.ch Acknowledgments Reference Kossmann, Kraska: Data Management in the Cloud: Promises, State-of-the-art,

More information

In-Memory Data Management Jens Krueger

In-Memory Data Management Jens Krueger In-Memory Data Management Jens Krueger Enterprise Platform and Integration Concepts Hasso Plattner Intitute OLTP vs. OLAP 2 Online Transaction Processing (OLTP) Organized in rows Online Analytical Processing

More information

Greenplum Architecture Class Outline

Greenplum Architecture Class Outline Greenplum Architecture Class Outline Introduction to the Greenplum Architecture What is Parallel Processing? The Basics of a Single Computer Data in Memory is Fast as Lightning Parallel Processing Of Data

More information

NEC Express5800 A2040b 22TB Data Warehouse Fast Track. Reference Architecture with SW mirrored HGST FlashMAX III

NEC Express5800 A2040b 22TB Data Warehouse Fast Track. Reference Architecture with SW mirrored HGST FlashMAX III NEC Express5800 A2040b 22TB Data Warehouse Fast Track Reference Architecture with SW mirrored HGST FlashMAX III Based on Microsoft SQL Server 2014 Data Warehouse Fast Track (DWFT) Reference Architecture

More information

Announcements. Database Systems CSE 414. Why compute in parallel? Big Data 10/11/2017. Two Kinds of Parallel Data Processing

Announcements. Database Systems CSE 414. Why compute in parallel? Big Data 10/11/2017. Two Kinds of Parallel Data Processing Announcements Database Systems CSE 414 HW4 is due tomorrow 11pm Lectures 18: Parallel Databases (Ch. 20.1) 1 2 Why compute in parallel? Multi-cores: Most processors have multiple cores This trend will

More information

Scaling up analytical queries with column-stores

Scaling up analytical queries with column-stores Scaling up analytical queries with column-stores Ioannis Alagiannis, Manos Athanassoulis, Anastasia Ailamaki Ecole Polytechnique Fédérale de Lausanne Lausanne, VD, Switzerland {ioannis.alagiannis, manos.athanassoulis,

More information

HANA Performance. Efficient Speed and Scale-out for Real-time BI

HANA Performance. Efficient Speed and Scale-out for Real-time BI HANA Performance Efficient Speed and Scale-out for Real-time BI 1 HANA Performance: Efficient Speed and Scale-out for Real-time BI Introduction SAP HANA enables organizations to optimize their business

More information

Achieving Horizontal Scalability. Alain Houf Sales Engineer

Achieving Horizontal Scalability. Alain Houf Sales Engineer Achieving Horizontal Scalability Alain Houf Sales Engineer Scale Matters InterSystems IRIS Database Platform lets you: Scale up and scale out Scale users and scale data Mix and match a variety of approaches

More information

SCHISM: A WORKLOAD-DRIVEN APPROACH TO DATABASE REPLICATION AND PARTITIONING

SCHISM: A WORKLOAD-DRIVEN APPROACH TO DATABASE REPLICATION AND PARTITIONING SCHISM: A WORKLOAD-DRIVEN APPROACH TO DATABASE REPLICATION AND PARTITIONING ZEYNEP KORKMAZ CS742 - PARALLEL AND DISTRIBUTED DATABASE SYSTEMS UNIVERSITY OF WATERLOO OUTLINE. Background 2. What is Schism?

More information

Evolution of Database Systems

Evolution of Database Systems Evolution of Database Systems Krzysztof Dembczyński Intelligent Decision Support Systems Laboratory (IDSS) Poznań University of Technology, Poland Intelligent Decision Support Systems Master studies, second

More information

Oracle Exadata: Strategy and Roadmap

Oracle Exadata: Strategy and Roadmap Oracle Exadata: Strategy and Roadmap - New Technologies, Cloud, and On-Premises Juan Loaiza Senior Vice President, Database Systems Technologies, Oracle Safe Harbor Statement The following is intended

More information

Jignesh M. Patel. Blog:

Jignesh M. Patel. Blog: Jignesh M. Patel Blog: http://bigfastdata.blogspot.com Go back to the design Query Cache from Processing for Conscious 98s Modern (at Algorithms Hardware least for Hash Joins) 995 24 2 Processor Processor

More information

Memory-Based Cloud Architectures

Memory-Based Cloud Architectures Memory-Based Cloud Architectures ( Or: Technical Challenges for OnDemand Business Software) Jan Schaffner Enterprise Platform and Integration Concepts Group Example: Enterprise Benchmarking -) *%'+,#$)

More information

CSE 544: Principles of Database Systems

CSE 544: Principles of Database Systems CSE 544: Principles of Database Systems Anatomy of a DBMS, Parallel Databases 1 Announcements Lecture on Thursday, May 2nd: Moved to 9am-10:30am, CSE 403 Paper reviews: Anatomy paper was due yesterday;

More information

PARALLEL & DISTRIBUTED DATABASES CS561-SPRING 2012 WPI, MOHAMED ELTABAKH

PARALLEL & DISTRIBUTED DATABASES CS561-SPRING 2012 WPI, MOHAMED ELTABAKH PARALLEL & DISTRIBUTED DATABASES CS561-SPRING 2012 WPI, MOHAMED ELTABAKH 1 INTRODUCTION In centralized database: Data is located in one place (one server) All DBMS functionalities are done by that server

More information

Safe Harbor Statement

Safe Harbor Statement Safe Harbor Statement The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment

More information

SAP HANA Scalability. SAP HANA Development Team

SAP HANA Scalability. SAP HANA Development Team SAP HANA Scalability Design for scalability is a core SAP HANA principle. This paper explores the principles of SAP HANA s scalability, and its support for the increasing demands of data-intensive workloads.

More information

Introduction to Data Management CSE 344

Introduction to Data Management CSE 344 Introduction to Data Management CSE 344 Lectures 23 and 24 Parallel Databases 1 Why compute in parallel? Most processors have multiple cores Can run multiple jobs simultaneously Natural extension of txn

More information

Multi-threaded Queries. Intra-Query Parallelism in LLVM

Multi-threaded Queries. Intra-Query Parallelism in LLVM Multi-threaded Queries Intra-Query Parallelism in LLVM Multithreaded Queries Intra-Query Parallelism in LLVM Yang Liu Tianqi Wu Hao Li Interpreted vs Compiled (LLVM) Interpreted vs Compiled (LLVM) Interpreted

More information

Datenbanksysteme II: Modern Hardware. Stefan Sprenger November 23, 2016

Datenbanksysteme II: Modern Hardware. Stefan Sprenger November 23, 2016 Datenbanksysteme II: Modern Hardware Stefan Sprenger November 23, 2016 Content of this Lecture Introduction to Modern Hardware CPUs, Cache Hierarchy Branch Prediction SIMD NUMA Cache-Sensitive Skip List

More information

Exadata X3 in action: Measuring Smart Scan efficiency with AWR. Franck Pachot Senior Consultant

Exadata X3 in action: Measuring Smart Scan efficiency with AWR. Franck Pachot Senior Consultant Exadata X3 in action: Measuring Smart Scan efficiency with AWR Franck Pachot Senior Consultant 16 March 2013 1 Exadata X3 in action: Measuring Smart Scan efficiency with AWR Exadata comes with new statistics

More information

Oracle Performance on M5000 with F20 Flash Cache. Benchmark Report September 2011

Oracle Performance on M5000 with F20 Flash Cache. Benchmark Report September 2011 Oracle Performance on M5000 with F20 Flash Cache Benchmark Report September 2011 Contents 1 About Benchware 2 Flash Cache Technology 3 Storage Performance Tests 4 Conclusion copyright 2011 by benchware.ch

More information

NOSQL DATABASE SYSTEMS: DECISION GUIDANCE AND TRENDS. Big Data Technologies: NoSQL DBMS (Decision Guidance) - SoSe

NOSQL DATABASE SYSTEMS: DECISION GUIDANCE AND TRENDS. Big Data Technologies: NoSQL DBMS (Decision Guidance) - SoSe NOSQL DATABASE SYSTEMS: DECISION GUIDANCE AND TRENDS h_da Prof. Dr. Uta Störl Big Data Technologies: NoSQL DBMS (Decision Guidance) - SoSe 2017 163 Performance / Benchmarks Traditional database benchmarks

More information

Sub-Second Response Times with New In-Memory Analytics in MicroStrategy 10. Onur Kahraman

Sub-Second Response Times with New In-Memory Analytics in MicroStrategy 10. Onur Kahraman Sub-Second Response Times with New In-Memory Analytics in MicroStrategy 10 Onur Kahraman High Performance Is No Longer A Nice To Have In Analytical Applications Users expect Google Like performance from

More information

Column-Stores vs. Row-Stores. How Different are they Really? Arul Bharathi

Column-Stores vs. Row-Stores. How Different are they Really? Arul Bharathi Column-Stores vs. Row-Stores How Different are they Really? Arul Bharathi Authors Daniel J.Abadi Samuel R. Madden Nabil Hachem 2 Contents Introduction Row Oriented Execution Column Oriented Execution Column-Store

More information

A Fast and High Throughput SQL Query System for Big Data

A Fast and High Throughput SQL Query System for Big Data A Fast and High Throughput SQL Query System for Big Data Feng Zhu, Jie Liu, and Lijie Xu Technology Center of Software Engineering, Institute of Software, Chinese Academy of Sciences, Beijing, China 100190

More information

Best Practices. Deploying Optim Performance Manager in large scale environments. IBM Optim Performance Manager Extended Edition V4.1.0.

Best Practices. Deploying Optim Performance Manager in large scale environments. IBM Optim Performance Manager Extended Edition V4.1.0. IBM Optim Performance Manager Extended Edition V4.1.0.1 Best Practices Deploying Optim Performance Manager in large scale environments Ute Baumbach (bmb@de.ibm.com) Optim Performance Manager Development

More information

A Brief Introduction of TiDB. Dongxu (Edward) Huang CTO, PingCAP

A Brief Introduction of TiDB. Dongxu (Edward) Huang CTO, PingCAP A Brief Introduction of TiDB Dongxu (Edward) Huang CTO, PingCAP About me Dongxu (Edward) Huang, Cofounder & CTO of PingCAP PingCAP, based in Beijing, China. Infrastructure software engineer, open source

More information

Systems Infrastructure for Data Science. Web Science Group Uni Freiburg WS 2014/15

Systems Infrastructure for Data Science. Web Science Group Uni Freiburg WS 2014/15 Systems Infrastructure for Data Science Web Science Group Uni Freiburg WS 2014/15 Lecture X: Parallel Databases Topics Motivation and Goals Architectures Data placement Query processing Load balancing

More information

Parallel DBMS. Chapter 22, Part A

Parallel DBMS. Chapter 22, Part A Parallel DBMS Chapter 22, Part A Slides by Joe Hellerstein, UCB, with some material from Jim Gray, Microsoft Research. See also: http://www.research.microsoft.com/research/barc/gray/pdb95.ppt Database

More information

Anti-Caching: A New Approach to Database Management System Architecture. Guide: Helly Patel ( ) Dr. Sunnie Chung Kush Patel ( )

Anti-Caching: A New Approach to Database Management System Architecture. Guide: Helly Patel ( ) Dr. Sunnie Chung Kush Patel ( ) Anti-Caching: A New Approach to Database Management System Architecture Guide: Helly Patel (2655077) Dr. Sunnie Chung Kush Patel (2641883) Abstract Earlier DBMS blocks stored on disk, with a main memory

More information

Parallel DBMS. Lecture 20. Reading Material. Instructor: Sudeepa Roy. Reading Material. Parallel vs. Distributed DBMS. Parallel DBMS 11/15/18

Parallel DBMS. Lecture 20. Reading Material. Instructor: Sudeepa Roy. Reading Material. Parallel vs. Distributed DBMS. Parallel DBMS 11/15/18 Reading aterial CompSci 516 atabase Systems Lecture 20 Parallel BS Instructor: Sudeepa Roy [RG] Parallel BS: Chapter 22.1-22.5 [GUW] Parallel BS and map-reduce: Chapter 20.1-20.2 Acknowledgement: The following

More information

Oracle: From Client Server to the Grid and beyond

Oracle: From Client Server to the Grid and beyond Oracle: From Client Server to the Grid and beyond Graham Wood Architect, RDBMS Development Oracle Corporation Continuous Innovation Oracle 6 Oracle 5 Oracle 2 Oracle 7 Data Warehousing Optimizations Parallel

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

CMU SCS CMU SCS Who: What: When: Where: Why: CMU SCS

CMU SCS CMU SCS Who: What: When: Where: Why: CMU SCS Carnegie Mellon Univ. Dept. of Computer Science 15-415/615 - DB s C. Faloutsos A. Pavlo Lecture#23: Distributed Database Systems (R&G ch. 22) Administrivia Final Exam Who: You What: R&G Chapters 15-22

More information

MySQL Performance Optimization and Troubleshooting with PMM. Peter Zaitsev, CEO, Percona Percona Technical Webinars 9 May 2018

MySQL Performance Optimization and Troubleshooting with PMM. Peter Zaitsev, CEO, Percona Percona Technical Webinars 9 May 2018 MySQL Performance Optimization and Troubleshooting with PMM Peter Zaitsev, CEO, Percona Percona Technical Webinars 9 May 2018 Few words about Percona Monitoring and Management (PMM) 100% Free, Open Source

More information

COURSE 12. Parallel DBMS

COURSE 12. Parallel DBMS COURSE 12 Parallel DBMS 1 Parallel DBMS Most DB research focused on specialized hardware CCD Memory: Non-volatile memory like, but slower than flash memory Bubble Memory: Non-volatile memory like, but

More information

Architectural challenges for building a low latency, scalable multi-tenant data warehouse

Architectural challenges for building a low latency, scalable multi-tenant data warehouse Architectural challenges for building a low latency, scalable multi-tenant data warehouse Mataprasad Agrawal Solutions Architect, Services CTO 2017 Persistent Systems Ltd. All rights reserved. Our analytics

More information

What s New in MySQL 5.7 Geir Høydalsvik, Sr. Director, MySQL Engineering. Copyright 2015, Oracle and/or its affiliates. All rights reserved.

What s New in MySQL 5.7 Geir Høydalsvik, Sr. Director, MySQL Engineering. Copyright 2015, Oracle and/or its affiliates. All rights reserved. What s New in MySQL 5.7 Geir Høydalsvik, Sr. Director, MySQL Engineering Safe Harbor Statement The following is intended to outline our general product direction. It is intended for information purposes

More information

Copyright 2018, Oracle and/or its affiliates. All rights reserved.

Copyright 2018, Oracle and/or its affiliates. All rights reserved. Beyond SQL Tuning: Insider's Guide to Maximizing SQL Performance Monday, Oct 22 10:30 a.m. - 11:15 a.m. Marriott Marquis (Golden Gate Level) - Golden Gate A Ashish Agrawal Group Product Manager Oracle

More information

5 Fundamental Strategies for Building a Data-centered Data Center

5 Fundamental Strategies for Building a Data-centered Data Center 5 Fundamental Strategies for Building a Data-centered Data Center June 3, 2014 Ken Krupa, Chief Field Architect Gary Vidal, Solutions Specialist Last generation Reference Data Unstructured OLTP Warehouse

More information

Beyond Relational Databases: MongoDB, Redis & ClickHouse. Marcos Albe - Principal Support Percona

Beyond Relational Databases: MongoDB, Redis & ClickHouse. Marcos Albe - Principal Support Percona Beyond Relational Databases: MongoDB, Redis & ClickHouse Marcos Albe - Principal Support Engineer @ Percona Introduction MySQL everyone? Introduction Redis? OLAP -vs- OLTP Image credits: 451 Research (https://451research.com/state-of-the-database-landscape)

More information

davidklee.net gplus.to/kleegeek linked.com/a/davidaklee

davidklee.net gplus.to/kleegeek linked.com/a/davidaklee @kleegeek davidklee.net gplus.to/kleegeek linked.com/a/davidaklee Specialties / Focus Areas / Passions: Performance Tuning & Troubleshooting Virtualization Cloud Enablement Infrastructure Architecture

More information

Data Analytics at Logitech Snowflake + Tableau = #Winning

Data Analytics at Logitech Snowflake + Tableau = #Winning Welcome # T C 1 8 Data Analytics at Logitech Snowflake + Tableau = #Winning Avinash Deshpande I am a futurist, scientist, engineer, designer, data evangelist at heart Find me at Avinash Deshpande Chief

More information

Shen PingCAP 2017

Shen PingCAP 2017 Shen Li @ PingCAP About me Shen Li ( 申砾 ) Tech Lead of TiDB, VP of Engineering Netease / 360 / PingCAP Infrastructure software engineer WHY DO WE NEED A NEW DATABASE? Brief History Standalone RDBMS NoSQL

More information

Jargons, Concepts, Scope and Systems. Key Value Stores, Document Stores, Extensible Record Stores. Overview of different scalable relational systems

Jargons, Concepts, Scope and Systems. Key Value Stores, Document Stores, Extensible Record Stores. Overview of different scalable relational systems Jargons, Concepts, Scope and Systems Key Value Stores, Document Stores, Extensible Record Stores Overview of different scalable relational systems Examples of different Data stores Predictions, Comparisons

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

Top Trends in DBMS & DW

Top Trends in DBMS & DW Oracle Top Trends in DBMS & DW Noel Yuhanna Principal Analyst Forrester Research Trend #1: Proliferation of data Data doubles every 18-24 months for critical Apps, for some its every 6 months Terabyte

More information

Microsoft SQL Server 2012 Fast Track Reference Configuration Using PowerEdge R720 and EqualLogic PS6110XV Arrays

Microsoft SQL Server 2012 Fast Track Reference Configuration Using PowerEdge R720 and EqualLogic PS6110XV Arrays Microsoft SQL Server 2012 Fast Track Reference Configuration Using PowerEdge R720 and EqualLogic PS6110XV Arrays This whitepaper describes Dell Microsoft SQL Server Fast Track reference architecture configurations

More information

Scaling Without Sharding. Baron Schwartz Percona Inc Surge 2010

Scaling Without Sharding. Baron Schwartz Percona Inc Surge 2010 Scaling Without Sharding Baron Schwartz Percona Inc Surge 2010 Web Scale!!!! http://www.xtranormal.com/watch/6995033/ A Sharding Thought Experiment 64 shards per proxy [1] 1 TB of data storage per node

More information

Module 4. Implementation of XQuery. Part 0: Background on relational query processing

Module 4. Implementation of XQuery. Part 0: Background on relational query processing Module 4 Implementation of XQuery Part 0: Background on relational query processing The Data Management Universe Lecture Part I Lecture Part 2 2 What does a Database System do? Input: SQL statement Output:

More information

STORAGE SYSTEMS. Operating Systems 2015 Spring by Euiseong Seo

STORAGE SYSTEMS. Operating Systems 2015 Spring by Euiseong Seo STORAGE SYSTEMS Operating Systems 2015 Spring by Euiseong Seo Today s Topics HDDs (Hard Disk Drives) Disk scheduling policies Linux I/O schedulers Secondary Storage Anything that is outside of primary

More information

Next-Generation Cloud Platform

Next-Generation Cloud Platform Next-Generation Cloud Platform Jangwoo Kim Jun 24, 2013 E-mail: jangwoo@postech.ac.kr High Performance Computing Lab Department of Computer Science & Engineering Pohang University of Science and Technology

More information

Introduction to Database Services

Introduction to Database Services Introduction to Database Services Shaun Pearce AWS Solutions Architect 2015, Amazon Web Services, Inc. or its affiliates. All rights reserved Today s agenda Why managed database services? A non-relational

More information

Introduction to Data Management CSE 344

Introduction to Data Management CSE 344 Introduction to Data Management CSE 344 Lecture 25: Parallel Databases CSE 344 - Winter 2013 1 Announcements Webquiz due tonight last WQ! J HW7 due on Wednesday HW8 will be posted soon Will take more hours

More information

Oracle Database In-Memory What s New and What s Coming

Oracle Database In-Memory What s New and What s Coming Oracle Database In-Memory What s New and What s Coming Andy Rivenes Product Manager for Database In-Memory Oracle Database Systems DOAG - May 10, 2016 #DBIM12c Safe Harbor Statement The following is intended

More information

TPC-E testing of Microsoft SQL Server 2016 on Dell EMC PowerEdge R830 Server and Dell EMC SC9000 Storage

TPC-E testing of Microsoft SQL Server 2016 on Dell EMC PowerEdge R830 Server and Dell EMC SC9000 Storage TPC-E testing of Microsoft SQL Server 2016 on Dell EMC PowerEdge R830 Server and Dell EMC SC9000 Storage Performance Study of Microsoft SQL Server 2016 Dell Engineering February 2017 Table of contents

More information

HP ProLiant DL380 Gen8 and HP PCle LE Workload Accelerator 28TB/45TB Data Warehouse Fast Track Reference Architecture

HP ProLiant DL380 Gen8 and HP PCle LE Workload Accelerator 28TB/45TB Data Warehouse Fast Track Reference Architecture HP ProLiant DL380 Gen8 and HP PCle LE Workload Accelerator 28TB/45TB Data Warehouse Fast Track Reference Architecture Based on Microsoft SQL Server 2014 Data Warehouse Fast Track (DWFT) Reference Architecture

More information

To Shard or Not to Shard That is the question! Peter Zaitsev April 21, 2016

To Shard or Not to Shard That is the question! Peter Zaitsev April 21, 2016 To Shard or Not to Shard That is the question! Peter Zaitsev April 21, 2016 Story Let s start with the story 2 First things to decide Before you decide how to shard you d best understand whether or not

More information

Advanced Database Systems

Advanced Database Systems Lecture II Storage Layer Kyumars Sheykh Esmaili Course s Syllabus Core Topics Storage Layer Query Processing and Optimization Transaction Management and Recovery Advanced Topics Cloud Computing and Web

More information

HyPer on Cloud 9. Thomas Neumann. February 10, Technische Universität München

HyPer on Cloud 9. Thomas Neumann. February 10, Technische Universität München HyPer on Cloud 9 Thomas Neumann Technische Universität München February 10, 2016 HyPer HyPer is the main-memory database system developed in our group a very fast database system with ACID transactions

More information

Sybase Adaptive Server Enterprise on Linux

Sybase Adaptive Server Enterprise on Linux Sybase Adaptive Server Enterprise on Linux A Technical White Paper May 2003 Information Anywhere EXECUTIVE OVERVIEW ARCHITECTURE OF ASE Dynamic Performance Security Mission-Critical Computing Advanced

More information

Oracle Platform Performance Baseline Oracle 12c on Hitachi VSP G1000. Benchmark Report December 2014

Oracle Platform Performance Baseline Oracle 12c on Hitachi VSP G1000. Benchmark Report December 2014 Oracle Platform Performance Baseline Oracle 12c on Hitachi VSP G1000 Benchmark Report December 2014 Contents 1 System Configuration 2 Introduction into Oracle Platform Performance Tests 3 Storage Benchmark

More information

NewSQL. Database Landscape From: the 451 group. OLTP Focus. NewSQL: Flying on ACID. Cloud DB, Winter 2014, Lecture 14

NewSQL. Database Landscape From: the 451 group. OLTP Focus. NewSQL: Flying on ACID. Cloud DB, Winter 2014, Lecture 14 NewSQL: Flying on ACID David Maier NewSQL Keep SQL (some of it) and ACID But be speedy and scalable Thanks to H-Store folks, Mike Stonebraker, Fred Holahan 3/5/14 David Maier, Portland State University

More information

BIS Database Management Systems.

BIS Database Management Systems. BIS 512 - Database Management Systems http://www.mis.boun.edu.tr/durahim/ Ahmet Onur Durahim Learning Objectives Database systems concepts Designing and implementing a database application Life of a Query

More information

Scaling App Engine Applications. Justin Haugh, Guido van Rossum May 10, 2011

Scaling App Engine Applications. Justin Haugh, Guido van Rossum May 10, 2011 Scaling App Engine Applications Justin Haugh, Guido van Rossum May 10, 2011 First things first Justin Haugh Software Engineer Systems Infrastructure jhaugh@google.com Guido Van Rossum Software Engineer

More information

IT Best Practices Audit TCS offers a wide range of IT Best Practices Audit content covering 15 subjects and over 2200 topics, including:

IT Best Practices Audit TCS offers a wide range of IT Best Practices Audit content covering 15 subjects and over 2200 topics, including: IT Best Practices Audit TCS offers a wide range of IT Best Practices Audit content covering 15 subjects and over 2200 topics, including: 1. IT Cost Containment 84 topics 2. Cloud Computing Readiness 225

More information

Design of Flash-Based DBMS: An In-Page Logging Approach

Design of Flash-Based DBMS: An In-Page Logging Approach SIGMOD 07 Design of Flash-Based DBMS: An In-Page Logging Approach Sang-Won Lee School of Info & Comm Eng Sungkyunkwan University Suwon,, Korea 440-746 wonlee@ece.skku.ac.kr Bongki Moon Department of Computer

More information