Big Data - Some Words BIG DATA 8/31/2017. Introduction

Size: px
Start display at page:

Download "Big Data - Some Words BIG DATA 8/31/2017. Introduction"

Transcription

1 BIG DATA Introduction Big Data - Some Words Connectivity Social Medias Share information Interactivity People Business Data Data mining Text mining Business Intelligence 1

2 What is Big Data Big Data means different things to people with different backgrounds and interests. Traditionally? "Big Data" = massive volumes of data For example: CERN data volume, NASA, Google,... Where does the Big Data come from? All over! Web logs, RFID, GPS systems, sensor networks, social networks, text documents on the Internet, Internet search, index cards, call detail, astronomy, atmospheric science, biology, genomics, nuclear physics, biochemical experiments, records, medical research, military surveillance, archives, multimedia, etc. What is Big Data Records of each step of modern life on social networks and the sharing of information between people and businesses have changed the general culture of humanity and created an environment conducive to a wave of innovations like never before. The register about all activities, data, behaviours are creating a new way how people and companies are interacting. The amount of data that YOU generate is amazing and is rich of information. The move from analog yielded the digital age an era when people enabled with smart phones and sensors began uploading troves of searchable digital content. While data used to stack up in fairly linear fashion, digital content is now created by consumers and is multiplying at rates previously unheard of. The volume of data generated is duplicated every 2 years, soon, it will be in 18 months. 2

3 Big Data Digital Data Volume Big Data Bytes Chart 3

4 Big Data Bytes Size 0.5 ZB All internet data until ZB = 75 Millions of ipads Air (16Gb) which if stacked would give 1.5 times at a distance between Earth and moon. 42 ZB All words said by the humanity during the whole history, if it could be digitized Big Data Data Creation Data Creation does not slowing down Hadron Collider (the world's largest and most powerful particle accelerator) - 1 PB/sec Boeing jet - 20 TB/hr Facebook TB/day. YouTube 1 TB/4 min. The proposed Square Kilometer Array telescope (the world s proposed biggest telescope) 1 EB/day 4

5 Big Data - Numbers Facebook Worldwide, there are over 2.01 billion monthly active Facebook users for June 2017 which is a 17 percent increase year over year. There are 1.15 billion mobile daily active users for December 2016, an increase of 23 percent year-over-year. On average, the Like and Share Buttons are viewed across almost 10 million websites daily. Five new profiles are created every second. There are 83 million fake profiles. Photo uploads total 300 million per day. Every 60 seconds on Facebook: 510,000 comments are posted, 293,000 statuses are updated, and 136,000 photos are uploaded. One in five page views in the United States occurs on Facebook. 16 Million local business pages have been created as of May 2013 which is a 100 percent increase from 8 million in June Big Data - Numbers Google estimates that every two days about 5 exabytes of information is generated - this is what humanity has generated throughout its history up to Twitter Total Number of Monthly Active Twitter Users: 328 million Total Number of Tweets sent per Day: 500 million Walmart The world s biggest retailer with over 20,000 stores in 28 countries, is in the process of building the world biggest private cloud, to process 2.5 petabytes of data every hour. 5

6 Big Data - Numbers s The estimate number of users worldwide is 3.7 billion, and the amount of s sent per day (in 2017) to be around 269 billion. First system: 1971 Average office worker receives 121 s a day Percentage of that is spam: 49.7% Big Data - Definition There are several definitions of Big Data from leading authors in the market. The McKisney Global Institute defines Big Data as "the intense use of online social networks, mobile devices for Internet connection, transactions and digital content, as well as the increasing use of cloud computing, which has generated untold amounts of data. The term 'Big Data' refers to this data set whose growth is exponential and whose dimension is beyond the capabilities of the typical tools to capture, manage and analyze data. " Gartner defines Big Data as "the term adopted by the market to describe problems in managing and processing extreme information that exceed the capacity of traditional information technologies over one or several dimensions. Big Data is focused primarily on extremely large dataset volume issues generated from technological practices such as social media, operating technologies, Internet access, and distributed information sources. Big Data is essentially a practice that introduces new business opportunities. 6

7 Big Data - 3 V s or more Big Data is characterized by the three V's: Volume Variety Velocity Besides these dimensions there are others V s used by some very pertinent authors: Veracity (IBM) Variability (SAS) Value Big Data - Volume Volume is the most common trait of Big Data. Many factors contributed to the exponential increase in data volume, such as transaction-based fata storage through the years, text data constantly streaming form social media, increasing amount of sensor data being collected, automatically generated RFID and GPS data, and so on. In the past, excessive data volume created storage issues, both technical and financial. Today advanced technologies coupled with decreasing storage costs. Represents the increase in the amount of data we have. 7

8 Big Data - Volume Big Data - Variety Data today comes in all types of formats Database, xml files, text files, images, videos, sensor captures, s, 85 % of all organizations data is in some sort of unstructured or semi structured format (a format that is not suitable for traditional databases schemas). 8

9 Big Data - Variety Big Data Velocity Velocity mean how fast data is being produced and how fast the data must be processed. Reacting quickly enough to deal with velocity is a challenge to most organizations. Time sensitive environment. 9

10 Big Data - Velocity Others V s Veracity : It refers o conformity to facts: Accuracy, quality, truthfulness, or trustworthiness. Variability : Inconsistence of the data flow linked with events or periodic peaks. Value : By analyzing large and feature-rich data, organizations can gain greater business value. Big data means Big analytics. Big analytics means greater insight and better decisions, something that every organization needs. 10

11 Big Data - Veracity Big Data - Value 11

12 The worst place to park in New York City using big data Structure Data The term structured data generally refers to data that has a defined length and format. Examples of structured data include numbers, dates, and groups of words and numbers called strings (for example, a customer s name, address, and so on). Structured data is the data that you re probably used to dealing with. It s usually stored in a database. You can query it using a language like structured query language (SQL). Traditional Sources includes Customer Relationship Management (CRM) data, operational Enterprise Resource Planning (ERP) data, and financial data. 12

13 Sources of structured data Computer- or machine-generated: Machine-generated data generally refers to data that is created by a machine without human intervention. Human-generated: This is data that humans, in interaction with computers, supply. Sensor data: Examples include radio frequency ID (RFID) tags, smart meters, medical devices, and Global Positioning System (GPS) data. For example, RFID is rapidly becoming a popular technology. It uses tiny computer chips to track items at a distance. Web log data: When servers, applications, networks, and so on operate, they capture all kinds of data about their activity. This can amount to huge volumes of data that can be useful, for example, to deal with service-level agreements or to predict security breaches. Point-of-sale data: When the cashier swipes the bar code of any product that you are purchasing, all that data associated with the product is generated. Just think of all the products across all the people who purchase them, and you can understand how big this data set can be. Sources of structured data Financial data: Lots of financial systems are now programmatic; they are operated based on predefined rules that automate processes. Stocktrading data is a good example of this. It contains structured data such as the company symbol and dollar value. Some of this data is machine generated, and some is human generated. Input data: This is any piece of data that a human might input into a computer, such as name, age, income, non-free-form survey responses, and so on. This data can be useful to understand basic customer behavior. Click-stream data: Data is generated every time you click a link on a website. This data can be analyzed to determine customer behavior and buying patterns. Gaming-related data: Every move you make in a game can be recorded. This can be useful in understanding how end users move through a gaming portfolio. 13

14 Unstructured Data Unstructured data is data that does not follow a specified format. If 15 % of the data available to enterprises is structured data, the other 85 % is unstructured. Unstructured data is really most of the data that you will encounter. Until recently, however, the technology didn t really support doing much with it except storing it or analyzing it manually. Unstructured data is everywhere. In fact, most individuals and organizations conduct their lives around unstructured data. Just as with structured data, unstructured data is either machine generated or human generated. Sources of unstructured data Satellite images: This includes weather data or the data that the government captures in its satellite surveillance imagery. Just think about Google Earth, and you get the picture (pun intended). Scientific data: This includes seismic imagery, atmospheric data, and high energy physics. Photographs and video: This includes security, surveillance, and traffic video. Radar or sonar data: This includes vehicular, meteorological, and oceanographic seismic profiles. Text internal to your company: Think of all the text within documents, logs, survey results, and s. Enterprise information actually represents a large percent of the text information in the world today. Social media data: This data is generated from the social media platforms such as YouTube, Facebook, Twitter, LinkedIn, and Flickr. Mobile data: This includes data such as text messages and locationinformation. Website content: This comes from any site delivering unstructured content, like YouTube, Flickr, or Instagram. 14

15 Structured Vs Unstructured Data Blockchain 15

Big data. Professor Dan Ariely, Duke University.

Big data. Professor Dan Ariely, Duke University. Big data BIG DATA is like teenage sex: everyone talks about it, nobody really knows how to do it, everyone thinks everyone else is doing it, so everyone claims they are doing it... Professor Dan Ariely,

More information

Based on Big Data: Hype or Hallelujah? by Elena Baralis

Based on Big Data: Hype or Hallelujah? by Elena Baralis Based on Big Data: Hype or Hallelujah? by Elena Baralis http://dbdmg.polito.it/wordpress/wp-content/uploads/2010/12/bigdata_2015_2x.pdf 1 3 February 2010 Google detected flu outbreak two weeks ahead of

More information

Big Data Analytics: What is Big Data? Stony Brook University CSE545, Fall 2016 the inaugural edition

Big Data Analytics: What is Big Data? Stony Brook University CSE545, Fall 2016 the inaugural edition Big Data Analytics: What is Big Data? Stony Brook University CSE545, Fall 2016 the inaugural edition What s the BIG deal?! 2011 2011 2008 2010 2012 What s the BIG deal?! (Gartner Hype Cycle) What s the

More information

Nowcasting. D B M G Data Base and Data Mining Group of Politecnico di Torino. Big Data: Hype or Hallelujah? Big data hype?

Nowcasting. D B M G Data Base and Data Mining Group of Politecnico di Torino. Big Data: Hype or Hallelujah? Big data hype? Big data hype? Big Data: Hype or Hallelujah? Data Base and Data Mining Group of 2 Google Flu trends On the Internet February 2010 detected flu outbreak two weeks ahead of CDC data Nowcasting http://www.internetlivestats.com/

More information

TCO REPORT. NAS File Tiering. Economic advantages of enterprise file management

TCO REPORT. NAS File Tiering. Economic advantages of enterprise file management TCO REPORT NAS File Tiering Economic advantages of enterprise file management Executive Summary Every organization is under pressure to meet the exponential growth in demand for file storage capacity.

More information

I am a Data Nerd and so are YOU!

I am a Data Nerd and so are YOU! I am a Data Nerd and so are YOU! Not This Type of Nerd Data Nerd Coffee Talk We saw Cloudera as the lone open source champion of Hadoop and the EMC/Greenplum/MapR initiative as a more closed and

More information

Hadoop محبوبه دادخواه کارگاه ساالنه آزمایشگاه فناوری وب زمستان 1391

Hadoop محبوبه دادخواه کارگاه ساالنه آزمایشگاه فناوری وب زمستان 1391 Hadoop محبوبه دادخواه کارگاه ساالنه آزمایشگاه فناوری وب زمستان 1391 Outline Big Data Big Data Examples Challenges with traditional storage NoSQL Hadoop HDFS MapReduce Architecture 2 Big Data In information

More information

Modern Database Concepts

Modern Database Concepts Modern Database Concepts Introduction to the world of Big Data Doc. RNDr. Irena Holubova, Ph.D. holubova@ksi.mff.cuni.cz What is Big Data? buzzword? bubble? gold rush? revolution? Big data is like teenage

More information

Unit 10 Databases. Computer Concepts Unit Contents. 10 Operational and Analytical Databases. 10 Section A: Database Basics

Unit 10 Databases. Computer Concepts Unit Contents. 10 Operational and Analytical Databases. 10 Section A: Database Basics Unit 10 Databases Computer Concepts 2016 ENHANCED EDITION 10 Unit Contents Section A: Database Basics Section B: Database Tools Section C: Database Design Section D: SQL Section E: Big Data Unit 10: Databases

More information

Introduction to the Mathematics of Big Data. Philippe B. Laval

Introduction to the Mathematics of Big Data. Philippe B. Laval Introduction to the Mathematics of Big Data Philippe B. Laval Fall 2017 Introduction In recent years, Big Data has become more than just a buzz word. Every major field of science, engineering, business,

More information

International Journal of Computer Trends and Technology (IJCTT) Volume 38 Number 1 - August 2016

International Journal of Computer Trends and Technology (IJCTT) Volume 38 Number 1 - August 2016 Unstructured Data: an overview of the data of Big Data Adanma Cecilia Eberendu Department of Computer Science, Madonna University, Nigeria Abstract With the emergence of new channels and technologies such

More information

From Internet Data Centers to Data Centers in the Cloud

From Internet Data Centers to Data Centers in the Cloud From Internet Data Centers to Data Centers in the Cloud This case study is a short extract from a keynote address given to the Doctoral Symposium at Middleware 2009 by Lucy Cherkasova of HP Research Labs

More information

Renovating your storage infrastructure for Cloud era

Renovating your storage infrastructure for Cloud era Renovating your storage infrastructure for Cloud era Nguyen Phuc Cuong Software Defined Storage Country Sales Leader Copyright IBM Corporation 2016 2 Business SLAs Challenging Traditional Storage Approaches

More information

27/04/2015 CC PROCESAMIENTO MASIVO DE DATOS OTOÑO Lecture 1: Introduction THE VALUE OF DATA. Aidan Hogan

27/04/2015 CC PROCESAMIENTO MASIVO DE DATOS OTOÑO Lecture 1: Introduction THE VALUE OF DATA. Aidan Hogan CC5212-1 PROCESAMIENTO MASIVO DE DATOS OTOÑO 2015 Lecture 1: Introduction Aidan Hogan aidhog@gmail.com THE VALUE OF DATA Soho, London, 1854 The mystery of cholera The Hunt for the invisible cholera Cholera:

More information

<Insert Picture Here> Introduction to Big Data Technology

<Insert Picture Here> Introduction to Big Data Technology Introduction to Big Data Technology The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into

More information

I D C C O U N T R Y B R I E F

I D C C O U N T R Y B R I E F I D C C O U N T R Y B R I E F THE DIGI T AL UNIVERSE IN 20 20: Big Da ta, Bigger Digi tal Shadow s, and Biggest Grow th in the Far Eas t China February 2013 By John Gantz, David Reinsel, and Richard Lee

More information

BIG DATA TESTING: A UNIFIED VIEW

BIG DATA TESTING: A UNIFIED VIEW http://core.ecu.edu/strg BIG DATA TESTING: A UNIFIED VIEW BY NAM THAI ECU, Computer Science Department, March 16, 2016 2/30 PRESENTATION CONTENT 1. Overview of Big Data A. 5 V s of Big Data B. Data generation

More information

Big Data Analytics. Izabela Moise, Evangelos Pournaras, Dirk Helbing

Big Data Analytics. Izabela Moise, Evangelos Pournaras, Dirk Helbing Big Data Analytics Izabela Moise, Evangelos Pournaras, Dirk Helbing Izabela Moise, Evangelos Pournaras, Dirk Helbing 1 Big Data "The world is crazy. But at least it s getting regular analysis." Izabela

More information

Deep Storage for Exponential Data. Nathan Thompson CEO, Spectra Logic

Deep Storage for Exponential Data. Nathan Thompson CEO, Spectra Logic Deep Storage for Exponential Data Nathan Thompson CEO, Spectra Logic HISTORY Partnered with Fujifilm on a variety of projects HQ in Boulder, 35 years of business Customers in 54 countries Spectra builds

More information

Cloud Computing 2. CSCI 4850/5850 High-Performance Computing Spring 2018

Cloud Computing 2. CSCI 4850/5850 High-Performance Computing Spring 2018 Cloud Computing 2 CSCI 4850/5850 High-Performance Computing Spring 2018 Tae-Hyuk (Ted) Ahn Department of Computer Science Program of Bioinformatics and Computational Biology Saint Louis University Learning

More information

3 Data, Data Mining. Chengkai Li

3 Data, Data Mining. Chengkai Li CSE4334/5334 Data Mining 3 Data, Data Mining Chengkai Li Department of Computer Science and Engineering University of Texas at Arlington Fall 2018 (Slides partly courtesy of Pang-Ning Tan, Michael Steinbach

More information

CANARIE: Providing Essential Digital Infrastructure for Canada

CANARIE: Providing Essential Digital Infrastructure for Canada CANARIE: Providing Essential Digital Infrastructure for Canada Mark Wolff; CTO April 16, 2014 A Transformation of the Science Paradigm thousands of years ago last few hundred years last few decades today

More information

Nielsen List of Top 10 ios Mobile Apps

Nielsen List of Top 10 ios Mobile Apps Nielsen List of Top 10 ios Mobile Apps Nielsen's list of the most popular 10 mobile apps for ios in 2016 was dominated by just four technology giants: Google, Facebook, Apple and Amazon. The Nielsen organization

More information

Embedded Technosolutions

Embedded Technosolutions Hadoop Big Data An Important technology in IT Sector Hadoop - Big Data Oerie 90% of the worlds data was generated in the last few years. Due to the advent of new technologies, devices, and communication

More information

A Survey on Comparative Analysis of Big Data Tools

A Survey on Comparative Analysis of Big Data Tools Available Online at www.ijcsmc.com International Journal of Computer Science and Mobile Computing A Monthly Journal of Computer Science and Information Technology ISSN 2320 088X IMPACT FACTOR: 5.258 IJCSMC,

More information

Massive Scalability With InterSystems IRIS Data Platform

Massive Scalability With InterSystems IRIS Data Platform Massive Scalability With InterSystems IRIS Data Platform Introduction Faced with the enormous and ever-growing amounts of data being generated in the world today, software architects need to pay special

More information

CC PROCESAMIENTO MASIVO DE DATOS OTOÑO 2018

CC PROCESAMIENTO MASIVO DE DATOS OTOÑO 2018 CC5212-1 PROCESAMIENTO MASIVO DE DATOS OTOÑO 2018 Lecture 1: Introduction Aidan Hogan aidhog@gmail.com THE VALUE OF DATA Soho, London, 1854 Cholera: What we know now Cholera: What we knew in 1854 1854:

More information

2014 年 3 月 13 日星期四. From Big Data to Big Value Infrastructure Needs and Huawei Best Practice

2014 年 3 月 13 日星期四. From Big Data to Big Value Infrastructure Needs and Huawei Best Practice 2014 年 3 月 13 日星期四 From Big Data to Big Value Infrastructure Needs and Huawei Best Practice Data-driven insight Making better, more informed decisions, faster Raw Data Capture Store Process Insight 1 Data

More information

Introduction to Data Mining and Data Analytics

Introduction to Data Mining and Data Analytics 1/28/2016 MIST.7060 Data Analytics 1 Introduction to Data Mining and Data Analytics What Are Data Mining and Data Analytics? Data mining is the process of discovering hidden patterns in data, where Patterns

More information

Big Data The end of Data Warehousing?

Big Data The end of Data Warehousing? Big Data The end of Data Warehousing? Hermann Bär Oracle USA Redwood Shores, CA Schlüsselworte Big data, data warehousing, advanced analytics, Hadoop, unstructured data Introduction If there was an Unwort

More information

INDIA DIGITAL STATSHOT KEY STATISTICAL INDICATORS FOR INTERNET, MOBILE, AND SOCIAL MEDIA USAGE IN INDIA IN AUGUST 2015 SIMON KEMP WE ARE SOCIAL

INDIA DIGITAL STATSHOT KEY STATISTICAL INDICATORS FOR INTERNET, MOBILE, AND SOCIAL MEDIA USAGE IN INDIA IN AUGUST 2015 SIMON KEMP WE ARE SOCIAL we are social DIGITAL STATSHOT INDIA KEY STATISTICAL INDICATORS FOR INTERNET, MOBILE, AND SOCIAL MEDIA USAGE IN INDIA IN AUGUST 2015 SIMON KEMP WE ARE SOCIAL We Are Social We Are Social 2015 DIGITAL IN

More information

Chapter 6. Foundations of Business Intelligence: Databases and Information Management VIDEO CASES

Chapter 6. Foundations of Business Intelligence: Databases and Information Management VIDEO CASES Chapter 6 Foundations of Business Intelligence: Databases and Information Management VIDEO CASES Case 1a: City of Dubuque Uses Cloud Computing and Sensors to Build a Smarter, Sustainable City Case 1b:

More information

Finding a needle in Haystack: Facebook's photo storage

Finding a needle in Haystack: Facebook's photo storage Finding a needle in Haystack: Facebook's photo storage The paper is written at facebook and describes a object storage system called Haystack. Since facebook processes a lot of photos (20 petabytes total,

More information

Improving Network Infrastructure to Enable Large Scale Scientific Data Flows and Collaboration (Award # ) Klara Jelinkova Joseph Ghobrial

Improving Network Infrastructure to Enable Large Scale Scientific Data Flows and Collaboration (Award # ) Klara Jelinkova Joseph Ghobrial Improving Network Infrastructure to Enable Large Scale Scientific Data Flows and Collaboration (Award # 1659348) Klara Jelinkova Joseph Ghobrial NSF Campus Cyberinfrastructure PI and Cybersecurity Innovation

More information

REVIEW ON BIG DATA ANALYTICS AND HADOOP FRAMEWORK

REVIEW ON BIG DATA ANALYTICS AND HADOOP FRAMEWORK REVIEW ON BIG DATA ANALYTICS AND HADOOP FRAMEWORK 1 Dr.R.Kousalya, 2 T.Sindhupriya 1 Research Supervisor, Professor & Head, Department of Computer Applications, Dr.N.G.P Arts and Science College, Coimbatore

More information

BIG DATA TECHNOLOGIES: WHAT EVERY MANAGER NEEDS TO KNOW ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29,

BIG DATA TECHNOLOGIES: WHAT EVERY MANAGER NEEDS TO KNOW ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29, BIG DATA TECHNOLOGIES: WHAT EVERY MANAGER NEEDS TO KNOW ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29, 2016 1 OBJECTIVES ANALYTICS AND FINANCIAL INNOVATION CONFERENCE JUNE 26-29, 2016 2 WHAT

More information

High Performance Computing on MapReduce Programming Framework

High Performance Computing on MapReduce Programming Framework International Journal of Private Cloud Computing Environment and Management Vol. 2, No. 1, (2015), pp. 27-32 http://dx.doi.org/10.21742/ijpccem.2015.2.1.04 High Performance Computing on MapReduce Programming

More information

Accelerate your SAS analytics to take the gold

Accelerate your SAS analytics to take the gold Accelerate your SAS analytics to take the gold A White Paper by Fuzzy Logix Whatever the nature of your business s analytics environment we are sure you are under increasing pressure to deliver more: more

More information

Consumer Opinions and Habits A XIRRUS STUDY

Consumer Opinions and Habits A XIRRUS STUDY Consumer Opinions and Habits A XIRRUS STUDY Executive Summary With more devices on the planet than people, it goes without saying that wireless is no longer a bonus - it s a necessity. By the end of 2015,

More information

Optimized Data Integration for the MSO Market

Optimized Data Integration for the MSO Market Optimized Data Integration for the MSO Market Actions at the speed of data For Real-time Decisioning and Big Data Problems VelociData for FinTech and the Enterprise VelociData s technology has been providing

More information

Investing in a Better Storage Environment:

Investing in a Better Storage Environment: Investing in a Better Storage Environment: Best Practices for the Public Sector Investing in a Better Storage Environment 2 EXECUTIVE SUMMARY The public sector faces numerous and known challenges that

More information

CO-OP Mobile: Mobile App for ipads. April 18, 2013

CO-OP Mobile: Mobile App for ipads. April 18, 2013 CO-OP Mobile: Mobile App for ipads April 18, 2013 1 Today s Presenters DIANEZABLIT Product Marketing Manager RANDYTHOMPSON Senior Product Manager 2 Agenda Marketplace Mobile Trends CO-OP Mobile Overview

More information

When, Where & Why to Use NoSQL?

When, Where & Why to Use NoSQL? When, Where & Why to Use NoSQL? 1 Big data is becoming a big challenge for enterprises. Many organizations have built environments for transactional data with Relational Database Management Systems (RDBMS),

More information

What is the maximum file size you have dealt so far? Movies/Files/Streaming video that you have used? What have you observed?

What is the maximum file size you have dealt so far? Movies/Files/Streaming video that you have used? What have you observed? Simple to start What is the maximum file size you have dealt so far? Movies/Files/Streaming video that you have used? What have you observed? What is the maximum download speed you get? Simple computation

More information

The Amazing Internet!

The Amazing Internet! The Amazing Internet! Like mobile phones, the internet is a way for you to instantly communicate to anyone almost anywhere and is an amazing way to learn and share information in words, pictures or videos

More information

CIO Forum Maximize the value of IT in today s economy

CIO Forum Maximize the value of IT in today s economy CIO Forum Maximize the value of IT in today s economy Laura Scott, Vice President Service Product Line Sales Global Technology Services IT infrastructure is reaching a breaking point. 85% idle In distributed

More information

Strategic Briefing Paper Big Data

Strategic Briefing Paper Big Data Strategic Briefing Paper Big Data The promise of Big Data is improved competitiveness, reduced cost and minimized risk by taking better decisions. This requires affordable solution architectures which

More information

A Review Paper on Big data & Hadoop

A Review Paper on Big data & Hadoop A Review Paper on Big data & Hadoop Rupali Jagadale MCA Department, Modern College of Engg. Modern College of Engginering Pune,India rupalijagadale02@gmail.com Pratibha Adkar MCA Department, Modern College

More information

An overview of. Mobile Testing. By André Jacobs. A Jacobs

An overview of. Mobile Testing. By André Jacobs. A Jacobs An overview of Mobile Testing By André Jacobs THE RISE AND RISE OF MOBILE 3 The Apple Story A look at the company that arguably has sparked the explosive growth in smart devices and mobile applications

More information

745: Advanced Database Systems

745: Advanced Database Systems 745: Advanced Database Systems Yanlei Diao University of Massachusetts Amherst Outline Overview of course topics Course requirements Database Management Systems 1. Online Analytical Processing (OLAP) vs.

More information

DIGITALGLOBE ENHANCES PRODUCTIVITY

DIGITALGLOBE ENHANCES PRODUCTIVITY DIGITALGLOBE ENHANCES PRODUCTIVITY WITH NVIDIA GRID High-performance virtualized desktops transform daily tasks and drastically improve staff efficiency. ABOUT DIGITALGLOBE FIVE REASONS FOR NVIDIA GRID

More information

An Introductionto Big Data

An Introductionto Big Data Data Management for Data Science Corso di laurea magistrale in Data Science Sapienza Università di Roma 2016/2017 An Introductionto Big Data Domenico Lembo Dipartimento di Ingegneria Informatica Automatica

More information

DDN Annual High Performance Computing Trends Survey Reveals Rising Deployment of Flash Tiers & Private/Hybrid Clouds vs.

DDN Annual High Performance Computing Trends Survey Reveals Rising Deployment of Flash Tiers & Private/Hybrid Clouds vs. DDN Annual High Performance Computing Trends Survey Reveals Rising Deployment of Flash Tiers & Private/Hybrid Clouds vs. Public for HPC HPC End Users Cite Mixed I/O as the Most Difficult Performance Challenge

More information

Indistinguishable from magic

Indistinguishable from magic Indistinguishable from magic Seth Eliot Principal Knowledge Engineer, Engineering Excellence September 11, 2014 How cloud services, big data, and mobile enable software success and customer delight Presentation

More information

Google GSuite Intro Demo of GSuite and GCP integration

Google GSuite Intro Demo of GSuite and GCP integration Google GSuite Intro Demo of GSuite and GCP integration May 2017 Sara Djelassi - Sales Steve Mansfield - PSO 7 Cloud products with 1 billion users ML is core to differentiating Google services Search Search

More information

A quick guide to. Getting Started

A quick guide to. Getting Started A quick guide to Getting Started In this guide... Learn how to build your list, create engaging email messages, and convert contacts into customers, using industry-leading GetResponse features. Table of

More information

ATA DRIVEN GLOBAL VISION CLOUD PLATFORM STRATEG N POWERFUL RELEVANT PERFORMANCE SOLUTION CLO IRTUAL BIG DATA SOLUTION ROI FLEXIBLE DATA DRIVEN V

ATA DRIVEN GLOBAL VISION CLOUD PLATFORM STRATEG N POWERFUL RELEVANT PERFORMANCE SOLUTION CLO IRTUAL BIG DATA SOLUTION ROI FLEXIBLE DATA DRIVEN V ATA DRIVEN GLOBAL VISION CLOUD PLATFORM STRATEG N POWERFUL RELEVANT PERFORMANCE SOLUTION CLO IRTUAL BIG DATA SOLUTION ROI FLEXIBLE DATA DRIVEN V WHITE PAPER Create the Data Center of the Future Accelerate

More information

FACTS & FIGURES FEBRUARY 2014

FACTS & FIGURES FEBRUARY 2014 FEBRUARY 2014 These figures will be updated regularly. - Layar B.V. FEBRUARY 2014 WHAT THE MARKET SAYS ABOUT AUGMENTED REALITY 1. INTRODUCTION At Layar we measure everything that we do and our customers

More information

Computing Yi Fang, PhD

Computing Yi Fang, PhD Computing Yi Fang, PhD Department of Computer Engineering Santa Clara University yfang@scu.edu http://www.cse.scu.edu/~yfang/ 1 This Talk Part I Computing Part II Computing at SCU Part III Data Science

More information

Massive Online Analysis - Storm,Spark

Massive Online Analysis - Storm,Spark Massive Online Analysis - Storm,Spark presentation by R. Kishore Kumar Research Scholar Department of Computer Science & Engineering Indian Institute of Technology, Kharagpur Kharagpur-721302, India (R

More information

Digital Layer Trends PostalVision 2020

Digital Layer Trends PostalVision 2020 Digital Layer Trends PostalVision 2020 Matt Swain Associate Director June 12, 2012 @SwainfoTrends @InfoTrends #PV2020 2012 InfoTrends www.infotrends.com 1 Comprehensive Research on Customer Communications

More information

Active Archive and the State of the Industry

Active Archive and the State of the Industry Active Archive and the State of the Industry Taking Data Archiving to the Next Level Abstract This report describes the state of the active archive market. New Applications Fuel Digital Archive Market

More information

UNLEASHING THE VALUE OF THE TERADATA UNIFIED DATA ARCHITECTURE WITH ALTERYX

UNLEASHING THE VALUE OF THE TERADATA UNIFIED DATA ARCHITECTURE WITH ALTERYX UNLEASHING THE VALUE OF THE TERADATA UNIFIED DATA ARCHITECTURE WITH ALTERYX 1 Successful companies know that analytics are key to winning customer loyalty, optimizing business processes and beating their

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

Copyright 2010 EMC Corporation. All rights reserved. CLOUD MEETS BIG DATA. Sujal Patel President, Isilon Storage Division EMC Corporation

Copyright 2010 EMC Corporation. All rights reserved. CLOUD MEETS BIG DATA. Sujal Patel President, Isilon Storage Division EMC Corporation CLOUD MEETS BIG DATA Sujal Patel President, Isilon Storage Division EMC Corporation EMC s Mission To Lead Customers On Their Journey To Cloud Computing And Transforming IT... By Enabling Them To Store,

More information

Introduction to Data Science

Introduction to Data Science UNIT I INTRODUCTION TO DATA SCIENCE Syllabus Introduction of Data Science Basic Data Analytics using R R Graphical User Interfaces Data Import and Export Attribute and Data Types Descriptive Statistics

More information

Big Data For Oil & Gas

Big Data For Oil & Gas Big Data For Oil & Gas Jay Hollingsworth - 郝灵杰 Industry Principal Oil & Gas Industry Business Unit 1 The following is intended to outline our general product direction. It is intended for information purposes

More information

Xactware User Conference 2011

Xactware User Conference 2011 Xactware User Conference 2011 Welcome Xactware Proprietary and Confiden2al 1986-2011 Changing the way customers Think.Work.Live.Interact. Changes may be subtle but profound Over 500 Million Ac/ve

More information

Checklist. ORB Education Quality Teaching Resources. ORB Education Visit for the full, editable versions.

Checklist. ORB Education Quality Teaching Resources. ORB Education Visit   for the full, editable versions. Checklist 1. Data in our Lives 2. Representing Data 3. Working with Data 4. Introducing Spreadsheets 5. Basic Excel Skills 6. Google Sheets 7. Sorting and Filtering 8. Formulas 9. Plots and Trendlines

More information

!!!!!! Digital Foundations

!!!!!! Digital Foundations Digital Foundations Digital Literacy Knowing which tools to use and how to use them. The goal of our workshop today is to improve your digital literacy so you strategically choose what to do online and

More information

Canadian ecommerce Monthly Trends Report

Canadian ecommerce Monthly Trends Report November 12 Canadian ecommerce Monthly Trends Report SPECIAL EDITION: Black Friday & Cyber Monday Demac Media 71 King St. East, Suite 301, Toronto, ON M5C 1G3 www.demacmedia.com 2 Canadian ecommerce Monthly

More information

Organizing Data The Power of Structure...

Organizing Data The Power of Structure... Organizing Data The Power of Structure... Notes for CSC 100 - The Beauty and Joy of Computing The University of North Carolina at Greensboro Reminders Lab this Friday: Lists! Remember Pre-lab work. Blown

More information

BroadGroup is an Information Media Technology and Professional Services company.

BroadGroup is an Information Media Technology and Professional Services company. BROADGROUP BroadGroup is an Information Media Technology and Professional Services company. It also owns the widely acclaimed Data Economy online and offline global news source and investor forums provider

More information

Crazy YouTube Stats. Seminar Topics. sales. According to Nielsen, YouTube reaches more US adults. YouTube is available on 350 million devices

Crazy YouTube Stats. Seminar Topics. sales. According to Nielsen, YouTube reaches more US adults. YouTube is available on 350 million devices Tom Gardocki Interstate Landscape Co., Inc Dirt Ninja on YouTube, Facebook and Instagram Seminar Topics 1. The power of YouTube 2. Gear to make videos 3. Video editing software 4. Time lapse videos 5.

More information

ONLINE EVALUATION FOR: Company Name

ONLINE EVALUATION FOR: Company Name ONLINE EVALUATION FOR: Company Name Address Phone URL media advertising design P.O. Box 2430 Issaquah, WA 98027 (800) 597-1686 platypuslocal.com SUMMARY A Thank You From Platypus: Thank you for purchasing

More information

Oracle #1 RDBMS Vendor

Oracle #1 RDBMS Vendor Oracle #1 RDBMS Vendor IBM 20.7% Microsoft 18.1% Other 12.6% Oracle 48.6% Source: Gartner DataQuest July 2008, based on Total Software Revenue Oracle 2 Continuous Innovation Oracle 11g Exadata Storage

More information

Cognitive-based Computation, Semantic Understanding, and Web Wisdom

Cognitive-based Computation, Semantic Understanding, and Web Wisdom Panel SEMAPRO/ADVCOMP/DATA ANALYTICS, Porto, 01.10.2013 Reutlingen University Cognitive-based Computation, Semantic Understanding, and Web Wisdom Moderation: Fritz Laux, Reutlingen University, Germany

More information

How To Guide. ADENION GmbH Merkatorstraße Grevenbroich Germany Fon: Fax:

How To Guide. ADENION GmbH Merkatorstraße Grevenbroich Germany Fon: Fax: How To Guide ADENION GmbH Merkatorstraße 2 41515 Grevenbroich Germany Fon: +49 2181 7569-140 Fax: +49 2181 7569-199 The! Complete Guide to Social Media Sharing The following social media sharing guide

More information

Marketing & Back Office Management

Marketing & Back Office Management Marketing & Back Office Management Menu Management Add, Edit, Delete Menu Gallery Management Add, Edit, Delete Images Banner Management Update the banner image/background image in web ordering Online Data

More information

https://www.youtube.com/watch?v=-gj93l2qa6c Topics: Foundation of Data Analytics and Data Mining Data Volume, Velocity, & Variety Harnessing Big Data Enabling technologies: Cloud Computing 2 No single

More information

What the is SEO? And how you can kick booty in the interwebs game

What the is SEO? And how you can kick booty in the interwebs game What the F^@& is SEO? And how you can kick booty in the interwebs game 1 WHAT THE F^$& is SEO?? SEO (SEARCH ENGINE OPTIMIZATION) is the process of improving your website so that it attracts more visitors

More information

Spatial Analytics Built for Big Data Platforms

Spatial Analytics Built for Big Data Platforms Spatial Analytics Built for Big Platforms Roberto Infante Software Development Manager, Spatial and Graph 1 Copyright 2011, Oracle and/or its affiliates. All rights Global Digital Growth The Internet of

More information

Understanding the SAP HANA Difference. Amit Satoor, SAP Data Management

Understanding the SAP HANA Difference. Amit Satoor, SAP Data Management Understanding the SAP HANA Difference Amit Satoor, SAP Data Management Webinar Logistics Got Flash? http://get.adobe.com/flashplayer to download. The future holds many transformational opportunities Capitalize

More information

Big Data Specialized Studies

Big Data Specialized Studies Information Technologies Programs Big Data Specialized Studies Accelerate Your Career extension.uci.edu/bigdata Offered in partnership with University of California, Irvine Extension s professional certificate

More information

Data Intensive Science Impact on Networks

Data Intensive Science Impact on Networks Data Intensive Science Impact on Networks Eli Dart, Network Engineer ESnet Network Engineering g Group IEEE Bandwidth Assessment Ad Hoc December 13, 2011 Outline Data intensive science examples Collaboration

More information

Social Bookmarks. Blasting their site with them during the first month of creation Only sending them directly to their site

Social Bookmarks. Blasting their site with them during the first month of creation Only sending them directly to their site Hey guys, what's up? We have another, jammed packed and exciting bonus coming at you today. This one is all about the "Everyone knows Everybody" generation; where everyone is socially connected via the

More information

A REVIEW PAPER ON BIG DATA ANALYTICS

A REVIEW PAPER ON BIG DATA ANALYTICS A REVIEW PAPER ON BIG DATA ANALYTICS Kirti Bhatia 1, Lalit 2 1 HOD, Department of Computer Science, SKITM Bahadurgarh Haryana, India bhatia.kirti.it@gmail.com 2 M Tech 4th sem SKITM Bahadurgarh, Haryana,

More information

QLogic/Lenovo 16Gb Gen 5 Fibre Channel for Database and Business Analytics

QLogic/Lenovo 16Gb Gen 5 Fibre Channel for Database and Business Analytics QLogic/ Gen 5 Fibre Channel for Database Assessment for Database and Business Analytics Using the information from databases and business analytics helps business-line managers to understand their customer

More information

Topics. Big Data Analytics What is and Why Hadoop? Comparison to other technologies Hadoop architecture Hadoop ecosystem Hadoop usage examples

Topics. Big Data Analytics What is and Why Hadoop? Comparison to other technologies Hadoop architecture Hadoop ecosystem Hadoop usage examples Hadoop Introduction 1 Topics Big Data Analytics What is and Why Hadoop? Comparison to other technologies Hadoop architecture Hadoop ecosystem Hadoop usage examples 2 Big Data Analytics What is Big Data?

More information

Part I What are Databases?

Part I What are Databases? Part I 1 Overview & Motivation 2 Architectures 3 Areas of Application 4 History Saake Database Concepts Last Edited: April 2019 1 1 Educational Objective for Today... Motivation for using database systems

More information

CSE6331: Cloud Computing

CSE6331: Cloud Computing CSE6331: Cloud Computing Leonidas Fegaras University of Texas at Arlington c 2019 by Leonidas Fegaras Cloud Computing Fundamentals Based on: J. Freire s class notes on Big Data http://vgc.poly.edu/~juliana/courses/bigdata2016/

More information

360 View on M-Commerce. Presented by S. Baranikumar

360 View on M-Commerce. Presented by S. Baranikumar 360 View on M-Commerce Presented by S. Baranikumar Having multiple channels is important for the future 7 in 10 ecommerce consumers use their mobile phone or smartphone to research online and 1/10 use

More information

OUR TOP DATA SOURCES AND WHY THEY MATTER

OUR TOP DATA SOURCES AND WHY THEY MATTER OUR TOP DATA SOURCES AND WHY THEY MATTER TABLE OF CONTENTS INTRODUCTION 2 MAINSTREAM WEB 3 MAJOR SOCIAL NETWORKS 4 AUDIENCE DATA 5 VIDEO 6 FOREIGN SOCIAL NETWORKS 7 SYNTHESIO DATA COVERAGE 8 1 INTRODUCTION

More information

The Smartphone Consumer June 2012

The Smartphone Consumer June 2012 The Smartphone Consumer 2012 June 2012 Methodology In January/February 2012, Edison Research and Arbitron conducted a national telephone survey offered in both English and Spanish language (landline and

More information

Lecture 25 Overview. Last Lecture Query optimisation/query execution strategies

Lecture 25 Overview. Last Lecture Query optimisation/query execution strategies Lecture 25 Overview Last Lecture Query optimisation/query execution strategies This Lecture Non-relational data models Source: web pages, textbook chapters 20-22 Next Lecture Revision COSC344 Lecture 25

More information

The Mathematics of Big Data

The Mathematics of Big Data The Mathematics of Big Data Philippe B. Laval KSU Fall 2017 Philippe B. Laval (KSU) Math & Big Data Fall 2017 1 / 10 Introduction We briefly present Big Data and the issues associated with Big Data. Philippe

More information

Microsoft Developer Day

Microsoft Developer Day Microsoft Developer Day Pradeep Menon Microsoft Developer Day Solutions Architect Agenda Microsoft Developer Day Traditional Business Intelligence Architecture Structured Sources Extract Transform Structurize

More information

CS 6240: Parallel Data Processing in MapReduce: Module 1. Mirek Riedewald

CS 6240: Parallel Data Processing in MapReduce: Module 1. Mirek Riedewald CS 6240: Parallel Data Processing in MapReduce: Module 1 Mirek Riedewald Why Parallel Processing? Answer 1: Big Data 2 How Much Information? Source: http://www2.sims.berkeley.edu/research/projects/ho w-much-info-2003/execsum.htm

More information

Overview of Web Mining Techniques and its Application towards Web

Overview of Web Mining Techniques and its Application towards Web Overview of Web Mining Techniques and its Application towards Web *Prof.Pooja Mehta Abstract The World Wide Web (WWW) acts as an interactive and popular way to transfer information. Due to the enormous

More information

Internet of Things (IOT) What It Is and How It Will Impact State Pools

Internet of Things (IOT) What It Is and How It Will Impact State Pools NLC Mutual Insurance Company 660 Capitol Street NW Suite 450 Washington, DC 20001 Internet of Things (IOT) What It Is and How It Will Impact State Pools MAY 19, 2017 RYAN DRAUGHN, DIRECTOR OF INFORMATION

More information