©2013 Primal Fusion Inc. Data Synthesis The Big Problem with Small Data.

Slides:



Advertisements
Similar presentations
Dr. Leo Obrst Information Semantics Command & Control Center July 17, 2007 Ontologies Can't Help Records Management Or Can They?
Advertisements

Taxonomy & Ontology Impact on Search Infrastructure John R. McGrath Sr. Director, Fast Search & Transfer.
Opportunistic Reasoning for the Semantic Web: Adapting Reasoning to the Environment Carlos Pedrinaci Tim Smithers and Amaia Bernaras.
By : Anu Singh 12BM60004 Kamya Sharma 12BM Tata Steel Tata Steel Limited (formerly Tata Iron and Steel Company Limited, abbreviated as TISCO) is.
(c) DJP Information Consulting Services, LLC1 1 Automatic Concept Identification: Extracting Problem Solved Concepts From Patent Documents IRFS.
The 20th International Conference on Software Engineering and Knowledge Engineering (SEKE2008) Department of Electrical and Computer Engineering
We Pump More Blood Healthcare Marketing Solutions 1/11.
Bounded Conjunctive Queries Yang Cao 1,2, Wenfei Fan 1,2, Tianyu Wo 2, Wenyuan Yu 3 1 University of Edinburgh, 2 Beihang University, 3 Facebook Inc.
IT Doesn’t Matter By Alex Cheong Germaine Wong Julie Laffy.
Nokia Technology Institute Natural Partner for Innovation.
SEVENPRO – STREP KEG seminar, Prague, 8/November/2007 © SEVENPRO Consortium SEVENPRO – Semantic Virtual Engineering Environment for Product.
Internet Marketing The Digital World. Topics Being digital Digital environments Digital convergence Making marketing processes digital.
Retail Analytics Market Analysis, Market Size, Analysis 2015 To 2022
Ontologies, Web 2.0 and Beyond Tom Gruber TagCommons.org tomgruber.org.
Speech Analytics Market Analysis, Market Size, Analysis 2014 To 2020 Grand View Research has announced the addition of " Global Speech Analytics Market.
IN THE MOBILE BUSINESS VALUE CHAIN MODERATOR: STEVE BEAUREGARD PRESIDENT & FOUNDER:
Semantics For the Semantic Web: The Implicit, the Formal and The Powerful Amit Sheth, Cartic Ramakrishnan, Christopher Thomas CS751 Spring 2005 Presenter:
The Semantic Web Prof. Enrico Motta Knowledge Media Institute The Open University.
OIL: An Ontology Infrastructure for the Semantic Web D. Fensel, F. van Harmelen, I. Horrocks, D. L. McGuinness, P. F. Patel-Schneider Presenter: Cristina.
Web 3.0 or The Semantic Web By: Konrad Sit CCT355 November 21 st 2011.
Knowledge Process Outsourcing1 Turning Information into Knowledge... for YOU The Gyaan Team.
Web-based Portal for Discovery, Retrieval and Visualization of Earth Science Datasets in Grid Environment Zhenping (Jane) Liu.
B IOMEDICAL T EXT M INING AND ITS A PPLICATION IN C ANCER R ESEARCH Henry Ikediego
ANSWERING CONTROLLED NATURAL LANGUAGE QUERIES USING ANSWER SET PROGRAMMING Syeed Ibn Faiz.
ASIDIC Spring Conference ‘Smart Content’ Uncovering the Value and Benefits of Semantic Technology Richard C. Fusco Director, Content Strategy – McGraw-Hill.
Semantic Web Technologies Lecture # 2 Faculty of Computer Science, IBA.
Semantic Web outlook and trends May The Past 24 Odd Years 1984 Lenat’s Cyc vision 1989 TBL’s Web vision 1991 DARPA Knowledge Sharing Effort 1996.
April 9,  Employers  IS Careers  Business Support  Key Trends  Manage your career  Questions 2.
Knowledge Management Systems Agnes Bui MIS /01/2004.
+. Background Design & Structure Motives & FitsPerformance Problems & Success Factors Microsoft: leading software companies – developing, manufacturing.
EXCS Sept Knowledge Engineering Meets Software Engineering Hele-Mai Haav Institute of Cybernetics at TUT Software department.
The Yellow Group Design Informatics (Regli, Stone, Kusiak, Leifer, Gupta, Chung, Fenves, Law, Kopena)
Automating the production of CDA R2 artefacts using openEHR Archetypes and Templates. Making Health Compute December 5 th, 2007.
WelcomeTo Knowledge Matrix, Inc.
1 26 October 2013 Observation and Reflection on Official Statistics against Big Data Challenge Yuan Pengfei Research Institute of Statistical Sciences.
Bibster AIFB Bibster A Semantics-Based Bibliographic Peer-to-Peer System Peter Haase, Steffen Staab, Rudi Studer, Frank van Harmelen, Michal Plechawski.
Text Mining In InQuery Vasant Kumar, Peter Richards August 25th, 1999.
Chapter 16:Managing Information and Technology. Basic element of computer technology  Hardware: input, store, and organize data  System software: performs.
Copyright © 2003 by Release Engineering Inc. All Rights Reserved. Software Manufacturing: Leveraging Release Management Sandy Currier CTO.
Knowledge Representation of Statistic Domain For CBR Application Supervisor : Dr. Aslina Saad Dr. Mashitoh Hashim PM Dr. Nor Hasbiah Ubaidullah.
© copyright 2014 Semantic Insights™ “A New Natural Language Understanding Technology for Research of Large Information Corpora." By Chuck Rehberg, CTO.
Mark Kvamme Sequoia Capital Content Happens!. Remember These Guys?
Dr. Bhavani Thuraisingham The University of Texas at Dallas Trustworthy Semantic Webs March 25, 2011 Data and Applications Security Developments and Directions.
Majid Sazvar Knowledge Engineering Research Group Ferdowsi University of Mashhad Semantic Web Reasoning.
Review Exam 2 Chapters 6 – 10. Chapter 6 – Systems Development Systems Development Concepts Challenges in Systems Development Types of System Development.
Trustworthy Semantic Webs Dr. Bhavani Thuraisingham The University of Texas at Dallas Lecture #4 Vision for Semantic Web.
Web Review The Web Web 1.0 Web 2.0 Future of the Web Internet Programming - Chapter 01:XHTML1.
The Unreasonable Effectiveness of Data
CHAPTER 1 Introduction to Information Systems. CHAPTER OUTLINE 1.1 Why Should I Study Information Systems? 1.2 Overview of Computer-Based Information.
Natural Language Processing Group Computer Sc. & Engg. Department JADAVPUR UNIVERSITY KOLKATA – , INDIA. Professor Sivaji Bandyopadhyay
CHAPTER 9 Social Computing. CHAPTER OUTLINE 9.1 Web Fundamentals of Social Computing in Business 9.3 Social Computing in Business: Shopping 9.4.
High throughput biology data management and data intensive computing drivers George Michaels.
COMPUTER SYSTEM FUNDAMENTAL Genetic Computer School INTRODUCTION TO ARTIFICIAL INTELLIGENCE LESSON 11.
Big Data Quality Panel Norman Paton University of Manchester.
An Ontology-based Automatic Semantic Annotation Approach for Patent Document Retrieval in Product Innovation Design Feng Wang, Lanfen Lin, Zhou Yang College.
1 Intel Information Technology Labs Big Data: Into the Deep John David Miller, Principal Engineer Intel Information Technology Labs.
Information Technology Part 2. Part2-2 Next Three Chapters Copyright © 2016 Pearson Education, Inc. Chapter 4 discusses hardware, software, and mobile.
Informatics for Scientific Data Bio-informatics and Medical Informatics Week 9 Lecture notes INF 380E: Perspectives on Information.
Password Management Market Analysis, Market Size, Analysis 2014 To 2020 Grand View Research has announced the addition of " Global Password Management.
Big-Data Fundamentals
External Services & Frameworks
StYLiD: Structured Information Sharing with User-defined Concepts
Published: Aug 2017 Single User PDF: US$ 2500 No. of Pages: 499
The Bing Search APIs in the Azure Marketplace Enable Primal to Deliver Personalized Content “Primal's patented AI provides a comprehensive understanding.
Global Enterprise Search
Jovan Petkovic AET 562 Megan Bird July 9, 2015
Your Company Info Logo Startup Name.
Best Social Media Marketing Company
© 2016 Global Market Insights, Inc. USA. All Rights Reserved Data Warehousing Market to exceed $30bn by 2025 growing at CAGR of 12%
Presentation transcript:

©2013 Primal Fusion Inc. Data Synthesis The Big Problem with Small Data

Treat your customers as individuals. MASS MARKETS OF INDIVIDUALS Media and advertising Healthcare and medicine Education Ecommerce and marketing Etc.

Implicit Semantics Statistical Approaches Explicit Semantics Ontological Approaches The Long Tail of Big Data EXPRESSIVENESS DATA COMPLEX SCHEMASIMPLE SCHEMA SMALL BIG Cost-Performance Barrier MASS MARKETS OF INDIVIDUALS Statistical methods lose significance Ontological methods prohibitively expensive Hybrid Approaches

Example: Expertise Search Source: James CridlandJames Cridland

Statistical Approaches

Manual Approaches

Primals approach: Modeling knowledge generation, not modeling knowledge Natural LanguagePrimal Semantics Words + Grammatical rules = Statements and queries Atomic semantics + Constructive rules = Semantic representations

Treat your customers as individuals. Massive opportunities in truly individualized services, but... …huge challenges in the long tail of big data. The cost-performance barrier requires solutions with fundamentally different cost structures. Primals semantic synthesis technology is one such solution.

About Primal Primal powers the rapid development of personalized and intelligent systems. Cloud-based data service (DaaS). Software and IP licensing opportunities are available for larger companies. Professional services available, with expertise in knowledge representation, statistical computing, information retrieval and extraction, database, and cloud computing. More info: primal.comprimal.com

Contact Info Peter Sweeney, Founder & President @petersweeney Further reading: blog.primal.com/tag/datablog.primal.com/tag/data