The Emergence of AI in Enterprise IT

Size: px
Start display at page:

Download "The Emergence of AI in Enterprise IT"

Transcription

1 THE EMERGENCE OF AI IN ENTERPRISE IT The Emergence of AI in Enterprise IT K R Sanjiv K.R.Sanjiv, Senior Vice President and CTO, Wipro Ramaprasad K R Chief Technologist and Distinguished Member of Technical Staff, AI & Cognitive Computing, Wipro For centuries, one of the more ambitious goals of mankind has been the creation of machines that rigidly obey commands. Around 322 BC Greek philosopher Aristotle imagined robots when he wrote, If every tool, when ordered could do the work that befits it then there would be no need either of apprentices for the master workers or of slaves for the lords. Since then, inventors, scientists and innovators have refined the idea of robots from Leonardo Da Vinci s clockwork knight to the Stanford Research Center which developed Shakey, the first mobile robot, Sony s AIBO, Honda s ASIMO and Google with its driverless cars. The quest has slowly turned from pre-programmed machines that did repetitive tasks to those that can sense the environment learn and respond to it. But the future belongs to advanced information processing or cognitive systems. These will bring about an epic shift in society, business and governance. AI (Artificial Intelligence) falls into two broad categories. The first is Natural General Intelligence (strong AI). Here, the focus is on building machines that think like human beings. The second is Applied AI. Here, the focus is on the use of advanced machine learning and knowledge engineering techniques to build smart machines. In other words, Applied AI works at developing machines that act like people. The technologies that enable AI applications can be classified as Cognitive Computing technologies. Cognitive computing is a branch of computing that involves imparting cognitive capabilities to computers, so as to enable them to solve fluid problems. These problems are full of ambiguity; require contextual processing of a differing number of disparate sources which may not be known beforehand. Just like humans get better through practice and their goals change with their level of expertise in processing such problems, a cognitive computing system also improves itself through learning techniques. A traditional rules logic based computing approach will not be able to solve these problems. The central hypothesis of cognitive science is that thinking can best be understood in terms of representational structures in the mind and computational procedures that operate on those structures. Designing, building and experimenting with computational representational models is the Like humans get better through practice and their goals change with their level of expertise in processing such problems, a cognitive computing system also improves itself through learning techniques 21

2 WINSIGHTS Volume XXI central method of developing modern AI applications (see Figure 1: Cognitive Versus Traditional Systems ). Vectors that shape AI applications Among many aspects that differentiate cognitive systems from traditional systems, the major ones are the ability to continuously reprogram themselves thus remaining flexible and the ability to interact in ways that are natural to humans. Apple s Siri is one such example Siri lets you do everyday things by talking. We are witnessing the arrival of television sets and mobile phones that respond to gesture, a glance or even the way we hold the device (example: face down for a mobile = mute). The biggest thrust to cognitive computing has come from the availability of data. A significant corpus of historical information in a specific domain will enable an AI application to extract key concepts, entitiesrecognition, associations, and hierarchies and generate what we call smart data by merging domain knowledge with ontologies. The central hypothesis of cognitive science is that thinking can best be understood in terms of representational structures in the mind and computational procedures that operate on those structures. The emphasis has to be on access to a significant volume of associated data. AI 22

3 THE EMERGENCE OF AI IN ENTERPRISE IT systems can be developed only when we have a significant corpus of data. For example in the Application Management and Infrastructure Management corpus of problems, diagnosis and resolutions, ITSM ontology will be essential to hyper automate processes and auto remediate problems without human intervention. When we explore some of the key characteristics of an enterprise AI application we find that there are six characteristics that are actually computable and relevant. These characteristics will shape the AI applications: Naturally Interactivity: Improved humancomputer interaction, with mechanical middle layers such as a mouse being eliminated; these systems are conversational and have dialogue oriented natural language interfaces Knowledge Representation and Meaning: Ability to ingest and represent knowledge; use automated knowledge models; dynamically extend links to internal and external knowledge sources Algorithmic Intelligence and Hypothesis: Perform computations and pattern recognition leveraging historical data statistics, machine learning, NLP, optimization, ranking & scoring among others; generate evidence based hypothesis based on confidence scores. Continuous Learning: Learn and evolve with common sense logic, new information/ inputs, new analysis, new users, new interactions, scenario modeling and simulation Reasoning: Leverage language structure, probability, fuzzy logic, semantics and relationships to draw inferences Hybrid Data Handling: Capable of integrating multiple heterogeneous data sources (structured and unstructured, static and streaming) and facilitate synthesizing ideas or answers from them We have already witnessed the power of predictive systems in reducing down time in manufacturing and transport, improv- Cognitive Systems function differently, coming closer to ways that humans think and work Figure 1: Cognitive Versus Traditional Systems 23

4 WINSIGHTS Volume XXI ing healthcare and boosting efficiencies in industries as diverse as utilities, mining and retail. These predictive systems are ensuring that inventory is trimmed, maintenance is just-in-time and the right skill sets are available at the right place to minimize loss. AI applications will raise the bar by creating intelligent virtual assistants, rapid software releases, straight through processing, diagnostics and resolutions, process dissipation, digital experience sense-and-respond, etc. 24

5 THE EMERGENCE OF AI IN ENTERPRISE IT The Coming Wave of Autonomous Computational Systems Not all of these systems will look the way we imagine them to be part human, part machine in design, closer to a vision straight from a sci-fi movie. Rather, when applied to enterprise, these would largely be systems that use vast amounts of data, but apply algorithms that are shaped by a changing environment. Simplistically put, cognitive systems can sense using a variety of inputs ranging from sensor data to machine scanning of s; they can learn through algorithms, statistical models, logic and probability; they can infer using analytics/computational intelligence/ artificial intelligence to mimic thinking and they can interact using natural language or gestures. If companies take full advantage of intelligent automation, says one Deloitte report, the overall impact on business could rival that of the enterprise resource planning wave of the The future is now The development and deployment of such systems requires enterprises to become conversant with new disciplines and methodologies. They will need to create a deep understanding and competencies centered on the following 6 application categories for AI systems: Anticipatory and Predictive Systems: These would allow organizations to be proactive rather than reactive systems Intelligent Virtual Agents: Graphical bots that can interact with humans and respond to words and gestures Phantom Robotic Process Automation: This allows process automation without human intervention Visual Computing & Human Computer Interface: These would include advanced models for data ) (images, video and text) representation (3D could be one example) and processing it using with new methods of interacting with machines such as language, gestures and glance to make the interaction more natural Knowledge Processing Systems: These would include logic and decision trees that enable agents to work more accurately by acquiring, retrieving and processing knowledge on their behalf Autonomous Robots & Drones: These would be intelligent machines that operate independently in environments that humans may find hazardous or impossible to access within limited budgets. Major productivity gains will be unlocked by the wave of autonomous computational systems that can sense, learn, infer and interact. Enterprises are now plugging in cognitive computing technologies to develop AI applications. The vast data that they have in their data warehouse and AI engine which learn from the data and helps them do predictive analytics, automated hypothesis, verification and generation are enabling them to deploy such systems. Enterprises can create bots for process and task automation, virtualize knowledge, build mobile 25

6 WINSIGHTS Volume XXI virtual agents for the digital customer that can enable enhanced interactions and user experience with the customers. The big shift will be at the intersection of business process that will be mapped to an AI engine to enable business efficiencies and productivity. AI applications developed using Cognitive computing technologies are among the most interesting recent developments in computational science. Several popular open source stacks are available using which IT service providers are creating loosely coupled services for a wide application across IT and business processes. Open source stacks, corpus of data and related domain specific ontologies can create killer applications. areas. The benefits of productivity, speed, quality and scalability are immense. They take practically every function and business process to a higher level of performance. Integrating these systems at every level within organizations will also call for changes in people and process practices. For the moment, organizations must ask themselves how deep they want to plunge into leveraging cognitive systems. Enterprises should start experimenting through pilots using innovation offerings from IT services and only after proven pilots decide on vendor specific propositions. Do they have relationships in place with the ecosystem of AI labs and service providers who are already in the data, analytics, machine learning and natural language processing space? If not, it is time to do so. They impact practically every business discipline and replace human beings in several tasks and enhance abilities in key process 26

Manjula Ambur NASA Langley Research Center April 2014

Manjula Ambur NASA Langley Research Center April 2014 Manjula Ambur NASA Langley Research Center April 2014 Outline What is Big Data Vision and Roadmap Key Capabilities Impetus for Watson Technologies Content Analytics Use Potential use cases What is Big

More information

From Big Data to Smart Data Thomas Hahn

From Big Data to Smart Data Thomas Hahn Siemens Future Forum @ HANNOVER MESSE 2014 From Big to Smart Hannover Messe 2014 The Evolution of Big Digital data ~ 1960 warehousing ~1986 ~1993 Big data analytics Mining ~2015 Stream processing Digital

More information

I D C A N A L Y S T C O N N E C T I O N. C o g n i t i ve C o m m e r c e i n B2B M a rketing a n d S a l e s

I D C A N A L Y S T C O N N E C T I O N. C o g n i t i ve C o m m e r c e i n B2B M a rketing a n d S a l e s I D C A N A L Y S T C O N N E C T I O N Dave Schubmehl Research Director, Cognitive Systems and Content Analytics Greg Girard Program Director, Omni-Channel Retail Analytics Strategies C o g n i t i ve

More information

Chapter 11. Managing Knowledge

Chapter 11. Managing Knowledge Chapter 11 Managing Knowledge VIDEO CASES Video Case 1: How IBM s Watson Became a Jeopardy Champion. Video Case 2: Tour: Alfresco: Open Source Document Management System Video Case 3: L'Oréal: Knowledge

More information

Improving Decision Making and Managing Knowledge

Improving Decision Making and Managing Knowledge Improving Decision Making and Managing Knowledge Decision Making and Information Systems Information Requirements of Key Decision-Making Groups in a Firm Senior managers, middle managers, operational managers,

More information

EL Program: Smart Manufacturing Systems Design and Analysis

EL Program: Smart Manufacturing Systems Design and Analysis EL Program: Smart Manufacturing Systems Design and Analysis Program Manager: Dr. Sudarsan Rachuri Associate Program Manager: K C Morris Strategic Goal: Smart Manufacturing, Construction, and Cyber-Physical

More information

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci 1 Artificial Intelligence and Robotics @ Politecnico di Milano Presented by Matteo Matteucci What is Artificial Intelligence «The field of theory & development of computer systems able to perform tasks

More information

MEng, BSc Computer Science with Artificial Intelligence

MEng, BSc Computer Science with Artificial Intelligence School of Computing FACULTY OF ENGINEERING MEng, BSc Computer Science with Artificial Intelligence Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give

More information

Dr. John E. Kelly III Senior Vice President, Director of Research. Differentiating IBM: Research

Dr. John E. Kelly III Senior Vice President, Director of Research. Differentiating IBM: Research Dr. John E. Kelly III Senior Vice President, Director of Research Differentiating IBM: Research IBM Research Priorities Impact on IBM and the Marketplace Globalization and Leverage Balanced Research Agenda

More information

Artificial Intelligence and Testing. Kishore Durg AccentureTechnology June 2016

Artificial Intelligence and Testing. Kishore Durg AccentureTechnology June 2016 Artificial Intelligence and Testing Kishore Durg AccentureTechnology June 2016 Copyright 2016 Accenture Technology Lab (Bangalore). All rights reserved. 1 Intelligent automation: The essential co-worker

More information

CONNECTING DATA WITH BUSINESS

CONNECTING DATA WITH BUSINESS CONNECTING DATA WITH BUSINESS Big Data and Data Science consulting Business Value through Data Knowledge Synergic Partners is a specialized Big Data, Data Science and Data Engineering consultancy firm

More information

Turning Big Data into a Big Opportunity

Turning Big Data into a Big Opportunity Customer-Centricity in a World of Data: Turning Big Data into a Big Opportunity Richard Maraschi Business Analytics Solutions Leader IBM Global Media & Entertainment Joe Wikert General Manager & Publisher

More information

A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks

A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks A Systemic Artificial Intelligence (AI) Approach to Difficult Text Analytics Tasks Text Analytics World, Boston, 2013 Lars Hard, CTO Agenda Difficult text analytics tasks Feature extraction Bio-inspired

More information

UNDERSTAND YOUR CLIENTS BETTER WITH DATA How Data-Driven Decision Making Improves the Way Advisors Do Business

UNDERSTAND YOUR CLIENTS BETTER WITH DATA How Data-Driven Decision Making Improves the Way Advisors Do Business UNDERSTAND YOUR CLIENTS BETTER WITH DATA How Data-Driven Decision Making Improves the Way Advisors Do Business Executive Summary Financial advisors have long been charged with knowing the investors they

More information

Self-Improving Supply Chains

Self-Improving Supply Chains Self-Improving Supply Chains Cyrus Hadavi Ph.D. Adexa, Inc. All Rights Reserved January 4, 2016 Self-Improving Supply Chains Imagine a world where supply chain planning systems can mold themselves into

More information

Putting IBM Watson to Work In Healthcare

Putting IBM Watson to Work In Healthcare Martin S. Kohn, MD, MS, FACEP, FACPE Chief Medical Scientist, Care Delivery Systems IBM Research marty.kohn@us.ibm.com Putting IBM Watson to Work In Healthcare 2 SB 1275 Medical data in an electronic or

More information

The Big Data Paradigm Shift. Insight Through Automation

The Big Data Paradigm Shift. Insight Through Automation The Big Data Paradigm Shift Insight Through Automation Agenda The Problem Emcien s Solution: Algorithms solve data related business problems How Does the Technology Work? Case Studies 2013 Emcien, Inc.

More information

Center for Dynamic Data Analytics (CDDA) An NSF Supported Industry / University Cooperative Research Center (I/UCRC) Vision and Mission

Center for Dynamic Data Analytics (CDDA) An NSF Supported Industry / University Cooperative Research Center (I/UCRC) Vision and Mission Photo courtesy of Justin Reuter Center for Dynamic Data Analytics (CDDA) An NSF Supported Industry / University Cooperative Research Center (I/UCRC) Vision and Mission CDDA Mission Mission of our CDDA

More information

Hurwitz ValuePoint: Predixion

Hurwitz ValuePoint: Predixion Predixion VICTORY INDEX CHALLENGER Marcia Kaufman COO and Principal Analyst Daniel Kirsch Principal Analyst The Hurwitz Victory Index Report Predixion is one of 10 advanced analytics vendors included in

More information

SURVEY REPORT DATA SCIENCE SOCIETY 2014

SURVEY REPORT DATA SCIENCE SOCIETY 2014 SURVEY REPORT DATA SCIENCE SOCIETY 2014 TABLE OF CONTENTS Contents About the Initiative 1 Report Summary 2 Participants Info 3 Participants Expertise 6 Suggested Discussion Topics 7 Selected Responses

More information

Game Changer The Impact of Cognitive Technology on Business and Financial Reporting. May 23, 2016

Game Changer The Impact of Cognitive Technology on Business and Financial Reporting. May 23, 2016 Game Changer The Impact of Cognitive Technology on Business and Financial Reporting May 23, 2016 Today s presenter Marc Macaulay, Cognitive Technology Audit Leader, KPMG LLP Marc Macaulay is KPMG s Cognitive

More information

Mastering Big Data. Steve Hoskin, VP and Chief Architect INFORMATICA MDM. October 2015

Mastering Big Data. Steve Hoskin, VP and Chief Architect INFORMATICA MDM. October 2015 Mastering Big Data Steve Hoskin, VP and Chief Architect INFORMATICA MDM October 2015 Agenda About Big Data MDM and Big Data The Importance of Relationships Big Data Use Cases About Big Data Big Data is

More information

Software Engineering of NLP-based Computer-assisted Coding Applications

Software Engineering of NLP-based Computer-assisted Coding Applications Software Engineering of NLP-based Computer-assisted Coding Applications 1 Software Engineering of NLP-based Computer-assisted Coding Applications by Mark Morsch, MS; Carol Stoyla, BS, CLA; Ronald Sheffer,

More information

Fight fire with fire when protecting sensitive data

Fight fire with fire when protecting sensitive data Fight fire with fire when protecting sensitive data White paper by Yaniv Avidan published: January 2016 In an era when both routine and non-routine tasks are automated such as having a diagnostic capsule

More information

Compliance. Technology. Process. Using Automated Decisioning and Business Rules to Improve Real-time Risk Management

Compliance. Technology. Process. Using Automated Decisioning and Business Rules to Improve Real-time Risk Management Technology Process Compliance Using Automated Decisioning and Business Rules to Improve Real-time Risk Management Sandeep Gupta, Equifax James Taylor, Smart (enough) Systems August 2008 Equifax is a registered

More information

Data Science & Big Data Practice

Data Science & Big Data Practice INSIGHTS ANALYTICS INNOVATIONS Data Science & Big Data Practice Manufacturing Internet of Things (IoT) Amplify Serviceability and Productivity by integrating machine /sensor data with Data Science What

More information

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON Overview * Introduction * Multiple faces of Big Data * Challenges of Big Data * Cloud Computing

More information

Chapter 13: Knowledge Management In Nutshell. Information Technology For Management Turban, McLean, Wetherbe John Wiley & Sons, Inc.

Chapter 13: Knowledge Management In Nutshell. Information Technology For Management Turban, McLean, Wetherbe John Wiley & Sons, Inc. Chapter 13: Knowledge Management In Nutshell Information Technology For Management Turban, McLean, Wetherbe John Wiley & Sons, Inc. Objectives Define knowledge and describe the different types of knowledge.

More information

Apache Hadoop Patterns of Use

Apache Hadoop Patterns of Use Community Driven Apache Hadoop Apache Hadoop Patterns of Use April 2013 2013 Hortonworks Inc. http://www.hortonworks.com Big Data: Apache Hadoop Use Distilled There certainly is no shortage of hype when

More information

Big Data Executive Survey

Big Data Executive Survey Big Data Executive Full Questionnaire Big Date Executive Full Questionnaire Appendix B Questionnaire Welcome The survey has been designed to provide a benchmark for enterprises seeking to understand the

More information

MEng, BSc Applied Computer Science

MEng, BSc Applied Computer Science School of Computing FACULTY OF ENGINEERING MEng, BSc Applied Computer Science Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give a machine instructions

More information

A Hurwitz white paper. Inventing the Future. Judith Hurwitz President and CEO. Sponsored by Hitachi

A Hurwitz white paper. Inventing the Future. Judith Hurwitz President and CEO. Sponsored by Hitachi Judith Hurwitz President and CEO Sponsored by Hitachi Introduction Only a few years ago, the greatest concern for businesses was being able to link traditional IT with the requirements of business units.

More information

Mike Maxey. Senior Director Product Marketing Greenplum A Division of EMC. Copyright 2011 EMC Corporation. All rights reserved.

Mike Maxey. Senior Director Product Marketing Greenplum A Division of EMC. Copyright 2011 EMC Corporation. All rights reserved. Mike Maxey Senior Director Product Marketing Greenplum A Division of EMC 1 Greenplum Becomes the Foundation of EMC s Big Data Analytics (July 2010) E M C A C Q U I R E S G R E E N P L U M For three years,

More information

Knowledge Management

Knowledge Management Knowledge Management Management Information Code: 164292-02 Course: Management Information Period: Autumn 2013 Professor: Sync Sangwon Lee, Ph. D D. of Information & Electronic Commerce 1 00. Contents

More information

Hybrid Cloud Architectures for Operational Performance Management

Hybrid Cloud Architectures for Operational Performance Management Hybrid Cloud Architectures for Operational Performance Management Delbert Murphy Solution Architect / Data Scientist Microsoft Corporation GPDIS_2014.ppt 1 Delbert Murphy and Microsoft s Data Insights

More information

Specialty Answering Service. All rights reserved.

Specialty Answering Service. All rights reserved. 0 Contents 1 Introduction... 2 1.1 Types of Dialog Systems... 2 2 Dialog Systems in Contact Centers... 4 2.1 Automated Call Centers... 4 3 History... 3 4 Designing Interactive Dialogs with Structured Data...

More information

New Broadband and Dynamic Infrastructures for the Internet of the Future

New Broadband and Dynamic Infrastructures for the Internet of the Future New Broadband and Dynamic Infrastructures for the Internet of the Future Margarete Donovang-Kuhlisch, Government Industry Technical Leader, Europe mdk@de.ibm.com Agenda Challenges for the Future Intelligent

More information

What is Artificial Intelligence?

What is Artificial Intelligence? CSE 3401: Intro to Artificial Intelligence & Logic Programming Introduction Required Readings: Russell & Norvig Chapters 1 & 2. Lecture slides adapted from those of Fahiem Bacchus. 1 What is AI? What is

More information

Big Data and Healthcare Payers WHITE PAPER

Big Data and Healthcare Payers WHITE PAPER Knowledgent White Paper Series Big Data and Healthcare Payers WHITE PAPER Summary With the implementation of the Affordable Care Act, the transition to a more member-centric relationship model, and other

More information

SAP Solution Brief SAP HANA. Transform Your Future with Better Business Insight Using Predictive Analytics

SAP Solution Brief SAP HANA. Transform Your Future with Better Business Insight Using Predictive Analytics SAP Brief SAP HANA Objectives Transform Your Future with Better Business Insight Using Predictive Analytics Dealing with the new reality Dealing with the new reality Organizations like yours can identify

More information

Performance Engineering and Optimizations. Database Services and Data Quality Solutions

Performance Engineering and Optimizations. Database Services and Data Quality Solutions One Stop Shop for Cloud/In-Premise Infrastructure & Support Services Cloud&/Digitization & Support E-Commerce, CRM, and Context Bound UX Databases, Mobile Data Synchronization and Quality Performance and

More information

I D C T E C H N O L O G Y S P O T L I G H T

I D C T E C H N O L O G Y S P O T L I G H T I D C T E C H N O L O G Y S P O T L I G H T Capitalizing on the Future with Data Solutions December 2015 Adapted from IDC PeerScape: Practices for Ensuring a Successful Big Data and Analytics Project,

More information

Integrating a Big Data Platform into Government:

Integrating a Big Data Platform into Government: Integrating a Big Data Platform into Government: Drive Better Decisions for Policy and Program Outcomes John Haddad, Senior Director Product Marketing, Informatica Digital Government Institute s Government

More information

Big Data Challenges and Success Factors. Deloitte Analytics Your data, inside out

Big Data Challenges and Success Factors. Deloitte Analytics Your data, inside out Big Data Challenges and Success Factors Deloitte Analytics Your data, inside out Big Data refers to the set of problems and subsequent technologies developed to solve them that are hard or expensive to

More information

Find the signal in the noise

Find the signal in the noise Find the signal in the noise Electronic Health Records: The challenge The adoption of Electronic Health Records (EHRs) in the USA is rapidly increasing, due to the Health Information Technology and Clinical

More information

This Symposium brought to you by www.ttcus.com

This Symposium brought to you by www.ttcus.com This Symposium brought to you by www.ttcus.com Linkedin/Group: Technology Training Corporation @Techtrain Technology Training Corporation www.ttcus.com Big Data Analytics as a Service (BDAaaS) Big Data

More information

A Visualization is Worth a Thousand Tables: How IBM Business Analytics Lets Users See Big Data

A Visualization is Worth a Thousand Tables: How IBM Business Analytics Lets Users See Big Data White Paper A Visualization is Worth a Thousand Tables: How IBM Business Analytics Lets Users See Big Data Contents Executive Summary....2 Introduction....3 Too much data, not enough information....3 Only

More information

A LEADER IN BEHAVIORAL ANALYTICS AND PIONEER IN PERSONALITY-BASED SOFTWARE APPLICATIONS

A LEADER IN BEHAVIORAL ANALYTICS AND PIONEER IN PERSONALITY-BASED SOFTWARE APPLICATIONS A LEADER IN BEHAVIORAL ANALYTICS AND PIONEER IN PERSONALITY-BASED SOFTWARE APPLICATIONS The Chemistry of Conversation Updated June 2015 www. mattersight.com Driving Significant Business Value Every time

More information

Big Data and Data Analytics

Big Data and Data Analytics 2.0 Big Data and Data Analytics (Volume 18, Number 3) By Heather A. Smith James D. McKeen Sponsored by: Introduction At a time when organizations are just beginning to do the hard work of standardizing

More information

HOW TO DO A SMART DATA PROJECT

HOW TO DO A SMART DATA PROJECT April 2014 Smart Data Strategies HOW TO DO A SMART DATA PROJECT Guideline www.altiliagroup.com Summary ALTILIA s approach to Smart Data PROJECTS 3 1. BUSINESS USE CASE DEFINITION 4 2. PROJECT PLANNING

More information

Big Data 101: Harvest Real Value & Avoid Hollow Hype

Big Data 101: Harvest Real Value & Avoid Hollow Hype Big Data 101: Harvest Real Value & Avoid Hollow Hype 2 Executive Summary Odds are you are hearing the growing hype around the potential for big data to revolutionize our ability to assimilate and act on

More information

Industrial Automation. A Manufacturing Revolution in Automotive and Industrial Equipment

Industrial Automation. A Manufacturing Revolution in Automotive and Industrial Equipment Industrial Automation A Manufacturing Revolution in Automotive and Industrial Equipment 1 Automated production, integrated end-to-end: transparent, reliable, predictable and efficient. That s the promise

More information

How To Get A Computer Engineering Degree

How To Get A Computer Engineering Degree COMPUTER ENGINEERING GRADUTE PROGRAM FOR MASTER S DEGREE (With Thesis) PREPARATORY PROGRAM* COME 27 Advanced Object Oriented Programming 5 COME 21 Data Structures and Algorithms COME 22 COME 1 COME 1 COME

More information

Big Data and Your Data Warehouse Philip Russom

Big Data and Your Data Warehouse Philip Russom Big Data and Your Data Warehouse Philip Russom TDWI Research Director for Data Management April 5, 2012 Sponsor Speakers Philip Russom Research Director, Data Management, TDWI Peter Jeffcock Director,

More information

KEY KNOWLEDGE MANAGEMENT TECHNOLOGIES IN THE INTELLIGENCE ENTERPRISE

KEY KNOWLEDGE MANAGEMENT TECHNOLOGIES IN THE INTELLIGENCE ENTERPRISE KEY KNOWLEDGE MANAGEMENT TECHNOLOGIES IN THE INTELLIGENCE ENTERPRISE RAMONA-MIHAELA MATEI Ph.D. student, Academy of Economic Studies, Bucharest, Romania ramona.matei1982@gmail.com Abstract In this rapidly

More information

Autonomic computing system for selfmanagement of Machine-to-Machine networks

Autonomic computing system for selfmanagement of Machine-to-Machine networks Self-IoT 2012, September 17th 2012, San Jose, California, USA in conjunction with ICAC 2012 Autonomic computing system for selfmanagement of Machine-to-Machine networks Mahdi BEN ALAYA, Salma MATOUSSI,Thierry

More information

A Strategic Approach to Unlock the Opportunities from Big Data

A Strategic Approach to Unlock the Opportunities from Big Data A Strategic Approach to Unlock the Opportunities from Big Data Yue Pan, Chief Scientist for Information Management and Healthcare IBM Research - China [contacts: panyue@cn.ibm.com ] Big Data or Big Illusion?

More information

Big Data and Semantic Web in Manufacturing. Nitesh Khilwani, PhD Chief Engineer, Samsung Research Institute Noida, India

Big Data and Semantic Web in Manufacturing. Nitesh Khilwani, PhD Chief Engineer, Samsung Research Institute Noida, India Big Data and Semantic Web in Manufacturing Nitesh Khilwani, PhD Chief Engineer, Samsung Research Institute Noida, India Outline Big data in Manufacturing Big data Analytics Semantic web technologies Case

More information

Predictive Analytics Certificate Program

Predictive Analytics Certificate Program Information Technologies Programs Predictive Analytics Certificate Program Accelerate Your Career Offered in partnership with: University of California, Irvine Extension s professional certificate and

More information

Important dimensions of knowledge Knowledge is a firm asset: Knowledge has different forms Knowledge has a location Knowledge is situational Wisdom:

Important dimensions of knowledge Knowledge is a firm asset: Knowledge has different forms Knowledge has a location Knowledge is situational Wisdom: Southern Company Electricity Generators uses Content Management System (CMS). Important dimensions of knowledge: Knowledge is a firm asset: Intangible. Creation of knowledge from data, information, requires

More information

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia As of today, the issue of Big Data processing is still of high importance. Data flow is increasingly growing. Processing methods

More information

Internet of Things. Point of View. Turn your data into accessible, actionable insights for maximum business value.

Internet of Things. Point of View. Turn your data into accessible, actionable insights for maximum business value. Internet of Things Turn your data into accessible, actionable insights for maximum business value Executive Summary Use a connected ecosystem to create new levels of business value The Internet of Things

More information

Chapter Managing Knowledge in the Digital Firm

Chapter Managing Knowledge in the Digital Firm Chapter Managing Knowledge in the Digital Firm Essay Questions: 1. What is knowledge management? Briefly outline the knowledge management chain. 2. Identify the three major types of knowledge management

More information

The Future of Business Analytics is Now! 2013 IBM Corporation

The Future of Business Analytics is Now! 2013 IBM Corporation The Future of Business Analytics is Now! 1 The pressures on organizations are at a point where analytics has evolved from a business initiative to a BUSINESS IMPERATIVE More organization are using analytics

More information

The future of Big Data A United Hitachi View

The future of Big Data A United Hitachi View The future of Big Data A United Hitachi View Alex van Die Pre-Sales Consultant 1 Oktober 2014 1 Agenda Evolutie van Data en Analytics Internet of Things Hitachi Social Innovation Vision and Solutions 2

More information

HiTech. White Paper. A Next Generation Search System for Today's Digital Enterprises

HiTech. White Paper. A Next Generation Search System for Today's Digital Enterprises HiTech White Paper A Next Generation Search System for Today's Digital Enterprises About the Author Ajay Parashar Ajay Parashar is a Solution Architect with the HiTech business unit at Tata Consultancy

More information

2011 Cyber Security and the Advanced Persistent Threat A Holistic View

2011 Cyber Security and the Advanced Persistent Threat A Holistic View 2011 Cyber and the Advanced Persistent Threat A Holistic View Thomas Varney Cybersecurity & Privacy BM Global Business Services 1 31/10/11 Agenda The Threat We Face A View to Addressing the Four Big Problem

More information

Big Data, Physics, and the Industrial Internet! How Modeling & Analytics are Making the World Work Better."

Big Data, Physics, and the Industrial Internet! How Modeling & Analytics are Making the World Work Better. Big Data, Physics, and the Industrial Internet! How Modeling & Analytics are Making the World Work Better." Matt Denesuk! Chief Data Science Officer! GE Software! October 2014! Imagination at work. Contact:

More information

Cognitive z. Mathew Thoennes IBM Research System z Research June 13, 2016

Cognitive z. Mathew Thoennes IBM Research System z Research June 13, 2016 Cognitive z Mathew Thoennes IBM Research System z Research June 13, 2016 Agenda What is Cognitive? Watson Explorer Overview Demo What is cognitive? Cognitive analytics - A set of technologies and processes

More information

Uncovering Value in Healthcare Data with Cognitive Analytics. Christine Livingston, Perficient Ken Dugan, IBM

Uncovering Value in Healthcare Data with Cognitive Analytics. Christine Livingston, Perficient Ken Dugan, IBM Uncovering Value in Healthcare Data with Cognitive Analytics Christine Livingston, Perficient Ken Dugan, IBM Conflict of Interest Christine Livingston Ken Dugan Has no real or apparent conflicts of interest

More information

BIG Data Analytics Move to Competitive Advantage

BIG Data Analytics Move to Competitive Advantage BIG Data Analytics Move to Competitive Advantage where is technology heading today Standardization Open Source Automation Scalability Cloud Computing Mobility Smartphones/ tablets Internet of Things Wireless

More information

CoolaData Predictive Analytics

CoolaData Predictive Analytics CoolaData Predictive Analytics 9 3 6 About CoolaData CoolaData empowers online companies to become proactive and predictive without having to develop, store, manage or monitor data themselves. It is an

More information

Introduction to Data Mining

Introduction to Data Mining Introduction to Data Mining Jay Urbain Credits: Nazli Goharian & David Grossman @ IIT Outline Introduction Data Pre-processing Data Mining Algorithms Naïve Bayes Decision Tree Neural Network Association

More information

Site monitoring Transformed forever?

Site monitoring Transformed forever? Site monitoring Transformed forever? June 2015 www.algorics.com Introduction: As the industry implementation of Risk Based Monitoring (RBM) progresses, one area to receive less focus than most has been

More information

Solve your toughest challenges with data mining

Solve your toughest challenges with data mining IBM Software IBM SPSS Modeler Solve your toughest challenges with data mining Use predictive intelligence to make good decisions faster Solve your toughest challenges with data mining Imagine if you could

More information

TABLE OF CONTENTS. Introduction: 3. Finding #1: Organizations are currently using a wide variety of contact channels to interact with customers 5

TABLE OF CONTENTS. Introduction: 3. Finding #1: Organizations are currently using a wide variety of contact channels to interact with customers 5 TABLE OF CONTENTS Introduction: 3 Finding #1: Organizations are currently using a wide variety of contact channels to interact with customers 5 Finding #2: Most organizations do not believe their current

More information

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008 Professional Organization Checklist for the Computer Science Curriculum Updates Association of Computing Machinery Computing Curricula 2008 The curriculum guidelines can be found in Appendix C of the report

More information

Certificate Program in Applied Big Data Analytics in Dubai. A Collaborative Program offered by INSOFE and Synergy-BI

Certificate Program in Applied Big Data Analytics in Dubai. A Collaborative Program offered by INSOFE and Synergy-BI Certificate Program in Applied Big Data Analytics in Dubai A Collaborative Program offered by INSOFE and Synergy-BI Program Overview Today s manager needs to be extremely data savvy. They need to work

More information

Contents. Dedication List of Figures List of Tables. Acknowledgments

Contents. Dedication List of Figures List of Tables. Acknowledgments Contents Dedication List of Figures List of Tables Foreword Preface Acknowledgments v xiii xvii xix xxi xxv Part I Concepts and Techniques 1. INTRODUCTION 3 1 The Quest for Knowledge 3 2 Problem Description

More information

ANALYTICS IN BIG DATA ERA

ANALYTICS IN BIG DATA ERA ANALYTICS IN BIG DATA ERA ANALYTICS TECHNOLOGY AND ARCHITECTURE TO MANAGE VELOCITY AND VARIETY, DISCOVER RELATIONSHIPS AND CLASSIFY HUGE AMOUNT OF DATA MAURIZIO SALUSTI SAS Copyr i g ht 2012, SAS Ins titut

More information

Driving Insurance World through Science - 1 - Murli D. Buluswar Chief Science Officer

Driving Insurance World through Science - 1 - Murli D. Buluswar Chief Science Officer Driving Insurance World through Science - 1 - Murli D. Buluswar Chief Science Officer What is The Science Team s Mission? 2 What Gap Do We Aspire to Address? ü The insurance industry is data rich but ü

More information

Advanced Analytics. The Way Forward for Businesses. Dr. Sujatha R Upadhyaya

Advanced Analytics. The Way Forward for Businesses. Dr. Sujatha R Upadhyaya Advanced Analytics The Way Forward for Businesses Dr. Sujatha R Upadhyaya Nov 2009 Advanced Analytics Adding Value to Every Business In this tough and competitive market, businesses are fighting to gain

More information

Navigating Big Data business analytics

Navigating Big Data business analytics mwd a d v i s o r s Navigating Big Data business analytics Helena Schwenk A special report prepared for Actuate May 2013 This report is the third in a series and focuses principally on explaining what

More information

Managing Knowledge. Chapter 11 8/12/2015

Managing Knowledge. Chapter 11 8/12/2015 Chapter 11 Managing Knowledge VIDEO CASES Video Case 1: How IBM s Watson Became a Jeopardy Champion Video Case 2: Tour: Alfresco: Open Source Document Management System Instructional Video 1: Analyzing

More information

The Internet on Wheels and Hitachi, Ltd. By Hitachi Data Systems

The Internet on Wheels and Hitachi, Ltd. By Hitachi Data Systems The Internet on Wheels and Hitachi, Ltd. By Hitachi Data Systems November 2014 1 Contents Executive Summary... 2 Introduction... 3 The Undeniable Value of Data... 3 The Smart Car as a Communications Hub...

More information

WHITE PAPER. Five Steps to Better Application Monitoring and Troubleshooting

WHITE PAPER. Five Steps to Better Application Monitoring and Troubleshooting WHITE PAPER Five Steps to Better Application Monitoring and Troubleshooting There is no doubt that application monitoring and troubleshooting will evolve with the shift to modern applications. The only

More information

Meeting the challenges of today s oil and gas exploration and production industry.

Meeting the challenges of today s oil and gas exploration and production industry. Meeting the challenges of today s oil and gas exploration and production industry. Leveraging innovative technology to improve production and lower costs Executive Brief Executive overview The deep waters

More information

THE CONVENTIONALIZATION OF BIG DATA

THE CONVENTIONALIZATION OF BIG DATA THE CONVENTIONALIZATION OF BIG DATA November 2013 But far more numerous was the herd of such, who think too little, and who talk too much John Dryden 100 GOOGLE SEARCH INDEX: "BIG DATA" 80 60 40 20 0 Jan-04

More information

Visualization methods for patent data

Visualization methods for patent data Visualization methods for patent data Treparel 2013 Dr. Anton Heijs (CTO & Founder) Delft, The Netherlands Introduction Treparel can provide advanced visualizations for patent data. This document describes

More information

Overcoming the Technical and Policy Constraints That Limit Large-Scale Data Integration

Overcoming the Technical and Policy Constraints That Limit Large-Scale Data Integration Overcoming the Technical and Policy Constraints That Limit Large-Scale Data Integration Revised Proposal from The National Academies Summary An NRC-appointed committee will plan and organize a cross-disciplinary

More information

Business Information Systems. IT Enabled Services And Emerging Technologies. Chapter 4: Facilitated e-learning Part 1 of 2 CA M S Mehta, FCA

Business Information Systems. IT Enabled Services And Emerging Technologies. Chapter 4: Facilitated e-learning Part 1 of 2 CA M S Mehta, FCA Business Information Systems IT Enabled Services And Emerging Technologies Chapter 4: Facilitated e-learning Part 1 of 2 CA M S Mehta, FCA 1 Business Information Systems Task Statements 1.6 Consider the

More information

Sunnie Chung. Cleveland State University

Sunnie Chung. Cleveland State University Sunnie Chung Cleveland State University Data Scientist Big Data Processing Data Mining 2 INTERSECT of Computer Scientists and Statisticians with Knowledge of Data Mining AND Big data Processing Skills:

More information

BPM for Structural Integrity Management in Oil and Gas Industry

BPM for Structural Integrity Management in Oil and Gas Industry Whitepaper BPM for Structural Integrity Management in Oil and Gas Industry - Saurangshu Chakrabarty Abstract Structural Integrity Management (SIM) is an ongoing lifecycle process for ensuring the continued

More information

Watson to Gain Ability to See with Planned $1B Acquisition of Merge Healthcare Deal Brings Watson Technology Together with Leader in Medical Images

Watson to Gain Ability to See with Planned $1B Acquisition of Merge Healthcare Deal Brings Watson Technology Together with Leader in Medical Images Watson to Gain Ability to See with Planned $1B Acquisition of Merge Healthcare Deal Brings Watson Technology Together with Leader in Medical Images Armonk, NY and CHICAGO -- [August 6, 2015]: IBM (NYSE:

More information

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Oman College of Management and Technology Course 803401 DSS Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization CS/MIS Department Information Sharing

More information

A Vision for Operational Analytics as the Enabler for Business Focused Hybrid Cloud Operations

A Vision for Operational Analytics as the Enabler for Business Focused Hybrid Cloud Operations A Vision for Operational Analytics as the Enabler for Focused Hybrid Cloud Operations As infrastructure and applications have evolved from legacy to modern technologies with the evolution of Hybrid Cloud

More information

Information Access Platforms: The Evolution of Search Technologies

Information Access Platforms: The Evolution of Search Technologies Information Access Platforms: The Evolution of Search Technologies Managing Information in the Public Sphere: Shaping the New Information Space April 26, 2010 Purpose To provide an overview of current

More information

GE Healthcare. Proven revenue cycle management supporting profitability in an era of healthcare reform.

GE Healthcare. Proven revenue cycle management supporting profitability in an era of healthcare reform. GE Healthcare Proven revenue cycle management supporting profitability in an era of healthcare reform. Enterprise-ready Profitability, efficiency, and enhanced quality of care A proven, next-generation

More information

Improving The Retail Experience Through Fast Data

Improving The Retail Experience Through Fast Data A Forrester Consulting Thought Leadership Paper Commissioned By TIBCO Software February 2016 Improving The Retail Experience Through Fast Data Overview Customers expect better-individualized experiences

More information

Rethinking Data Discovery The new research and experimentation paradigm for analytics and discovery. www.wipro.com

Rethinking Data Discovery The new research and experimentation paradigm for analytics and discovery. www.wipro.com www.wipro.com Rethinking Data Discovery The new research and experimentation paradigm for analytics and discovery Nitesh Jain General Manager and Vertical Head CPG (Europe & Emerging Markets) Table of

More information