SlideShare uma empresa Scribd logo
1 de 25
Baixar para ler offline
Copyright IDC. Reproduction is forbidden unless authorized. All rights reserved.
Unified Information Access
Creating Information Synergy
Sue Feldman
Vice President, IDC
Search and Discovery Technologies
Apr-12© IDC 2
OutlineOutline
The information access quandary: for IT, for information
workers, for the enterprise
Unified information access defined
Unified information access in depth
Unified information access: Examples of uses, information
synergies
Source:/Notes:
Apr-12© IDC
The Digital Universe, 2009-2020The Digital Universe, 2009-2020
3
0.8
ZB
*Zettabyte: 1,000,000,000,000,000,000,000 bytes
( 1 trillion gigabytes)
2009
2020
35
Zettabytes*
www.emc.com/collateral/demos/microsites/idc-digital-universe/iview.htm
• Digital information will grow by a factor of 44, to 35 ZB in 2020
• 25 quintillion files or records
Source: IDC Digital Universe Study, 2010, Sponsored by EMC
Apr-12© IDC
Challenge for IT: Complex IT EnvironmentChallenge for IT: Complex IT Environment
4
Cloud
HR
CRM
Websites
Mobile
Devices
Personal
Computers
Server
Server
Server
Server
Server
Server
Server
Cloud
Social Media
File Systems,
CM, DAM
PLM
Apr-12© IDC
Challenges for Information WorkersChallenges for Information Workers
No integration
• Multiple applications
• Multiple repositories
• Multiple interfaces and protocols
• Terminologies and schemas that don’t match
• Expectations for ease of use from Web.
Time wasted
Risk
Information Overload
Misinformation,
Old Information
Missed information
Apr-12© IDC
Uses of Search and Discovery, 2011Uses of Search and Discovery, 2011
6
Top 4 reasons to invest in search and discovery technologies %
Lower the cost of managing and analyzing information 39.5
Unify access to all of our information sources—both structured and unstructured (Provide
a comprehensive view of our information across email, file servers, applications)
34
Provide faster, easier access for more users to structured data in our legacy systems
34
Decision support and management
25
Normalize information across repositories (ETL for content) to gather all the related
information from different sources
22.5
Understand our customers by mining email, call center interactions, etc.
18.5
Unweighted Valid N 200
100.0
Source: Unified Access to Information: Less Seeking, More Finding, IDC#227780, April, 2011
Apr-12© IDC
Requested Features: BI + SearchRequested Features: BI + Search
7
What features or user experience do your users most often request or demand on
a scale of 1 to 5?
Rating
Access to more information 4.08
Ability to make business intelligence more dynamic, to simplify BI queries and also the
business intelligence process
3.89
Monitor customers across multiple channels (call center, email, Internet forums, etc.)
3.88
Ability to monitor and visualize information for competitive intelligence or business
analysis
3.81
Browsing by categories or facets 3.80
Single access to multiple repositories 3.79
Automatic categorization and tagging of documents 3.75
Reporting features like charts and graphs 3.72
Unweighted Valid N
200
100.0
Source: Unified Access to Information: Less Seeking, More Finding, IDC#227780, April, 2011
Apr-12© IDC
Information Centered Computing:
Why Now?
Information Centered Computing:
Why Now?
Complexity: beyond LOB and IT to manage and understand with
traditional tools
Market demand for tools that manage information overload, provide
decision support, automate business processes
Technology advances: cloud, big data, new, scalable architectures,
robust, scalable software for information access and analysis of all types
of information, enhanced and less expensive storage
New delivery models (cloud, mobile, mixed platform)
New business models: subscription, ad supported, revenue sharing
Synergy of content and technology: e.g.., Factual, Watson, Wolfram
Alpha
8
Apr-12© IDC
•Integrate access to unstructured, semi-structured, and structured information.
•Combine features of database, business intelligence, and search technologies in a
single architecture
• Provide a modular, well-integrated set of tools and services to normalize, index,
search, query, present, visualize, analyze and report information
•Create a single platform for information gathering, analysis, and decision support.
•Accommodate quickly changing information through real-time or near-real-time
updating and analytics
•Are highly scalable
•Provide a platform for building search based applications that support specific
industries, tasks and workflows
The market is just beginning to evolve
Definition: Unified Information Access
Platforms
Definition: Unified Information Access
Platforms
9
Unified information access platforms provide a single point of access that
integrates and finds relationships in information across multiple heterogeneous
sources of information. These platforms:
Apr-12© IDC
Unified Information Access ArchitectureUnified Information Access Architecture
Unstructured Content Structured Data
Input Workflow: pre-processing
Data Store, Data Warehouse, Search Index, Content Repository, Rule Base, Model
Manager, Knowledge Base,
Query Converters
QueryText Mining Analytics
Browse/Navigation
Data Mining
Visualization
Smart Connectors
Applications
UI, Dialogue Manager
ETL for Text/Media
Tokenize, normalize, extract entities,
relationships, time, sentiment, categorize
ETL for Data
Cleanse, normalize,
extract, transform, load
Search
Real-time Streaming
Enterprise Service Bus,
Message oriented Middleware
BPMSRules
CEPMessage distribution
Semi-Structured Data
Output Workflow
Apr-12© IDC
Definition: Intelligent Workspaces
Search Based Applications
Definition: Intelligent Workspaces
Search Based Applications
Based on the task, not the technology
Combines multiple technologies and tools
Integrates information from multiple sources
Incorporates knowledge bases for specialized
workflows, terminology
Hides complexity below an easy, compelling UI
Intelligent workspace: an application that provides a
specialized, integrated information work environment that is
specific to a process or task
Apr-12© IDC
Hot areas for Unified Information AccessHot areas for Unified Information Access
Decision Support
Listening platforms: (Voice of
Customer, Reputation monitoring)
Early product warning
Churn prevention
Social business
Finance and investing
(Market trend analysis and trading)
Drug development
Master Data Management
Multilingual Discovery
Healthcare
Government intelligence
Fraud detection
Terrorist detection
Real time, targeted
recommendations, ads
Emergency services support
(information overload)
Question answering
R&D Innovation Platforms
12
Apr-12© IDC
Unified Access: Vertical UsesUnified Access: Vertical Uses
Publishing: Smart content
Manufacturing: Voice of the customer, social media monitoring
Marketing and politics: social media monitoring
Government: Fraud and terrorist detection; voice of the citizen,
emergency event monitoring
Healthcare: Diagnosis support, predict recurrence of hospital
visits, fraudulent claim detection
Finance: Fraud detection, voice of the customer, upsell and
cross sell with predictive analytics, trend spotting for investment
bankers
Pharmaceuticals: Drug discovery, cause and effect for
treatments, finding influencers
13
Apr-12© IDC
PREPARE
Knowing the norms for:
• The community
• Infrastructure and
transportation
• Resources and supplies
• Population and movements
• Blockages and impasses
• Weather access and planning
• Local news access
• Police, EMS, fire calls and
dispatch
• What hospitals are refusing?
Slides courtesy of FAST &
BULL Services
Unified Access for Command & Control AutomationUnified Access for Command & Control Automation
Apr-12© IDC
Bull Services: Unified Access for Command
& Control Automation
Bull Services: Unified Access for Command
& Control Automation
RESPONDING
FAST Data Search
Knowing:
WHO
WHAT
WHEN
WHERE
HOW
HOW MANY
Apr-12© IDC
Google Disease Alert Map: Presents
data for quick understanding
Google Disease Alert Map: Presents
data for quick understanding
Apr-12© IDC
Apr-12© IDC
Temis: Social graph for explorationTemis: Social graph for exploration
Apr-12© IDC
Endeca: Dynamic reportingEndeca: Dynamic reporting
Apr-12© IDC 20
Linguamatics - Safety/ToxicityLinguamatics - Safety/Toxicity
Compound
Potential safety
issues
In the liver At this dosage
Apr-12© IDC
Autonomy: Sentiment, browsing, clusteringAutonomy: Sentiment, browsing, clustering
21
Apr-12© IDC
Basis Technology: Multilingual DiscoveryBasis Technology: Multilingual Discovery
Apr-12© IDC
Trends in Information Access TodayTrends in Information Access Today
Aggregation
Filtering and personalization
Analytics on everything: content, users, actions, trends, events
• For navigation, browsing and discovery, question answering,
trending, location-based services, advertising, and marketing.
New technologies and automation techniques for:
– Information collection
– Data normalization and relationship mining
– Analysis across sources and data types
– Visualization
– Reporting and alerting
– Collaboration and social business tools
23
Apr-12© IDC
Unified Information AccessUnified Information Access
Foundation for new information management and access stack for
the enterprise
May replace data warehouses if application requires quick ad hoc
access to large collections of heterogeneous information
Will replace, through evolution, the traditional enterprise search
engine
Foundation for merging data plus content in big data applications
Center for emerging ecosystems of search based applications.
Platform vendors will gain adoption through search based
applications
24
Apr-12© IDC 25
Contact InformationContact Information
Susan Feldman
VP, Search and Discovery Technologies
sfeldman@idc.com

Mais conteúdo relacionado

Mais procurados

Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupCrowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupEdward Curry
 
A Pragmatic AI Maturity Model
A Pragmatic AI Maturity ModelA Pragmatic AI Maturity Model
A Pragmatic AI Maturity ModelDATAVERSITY
 
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every Field
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every FieldKick Off – Graphs: The Fuel Behind Innovation and Transformation in Every Field
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every FieldNeo4j
 
Smart Data Webinar: Machine Learning Update
Smart Data Webinar: Machine Learning UpdateSmart Data Webinar: Machine Learning Update
Smart Data Webinar: Machine Learning UpdateDATAVERSITY
 
ICIC 2013 Conference Proceedings Sumair Riyaz Dolcera
ICIC 2013 Conference Proceedings Sumair Riyaz DolceraICIC 2013 Conference Proceedings Sumair Riyaz Dolcera
ICIC 2013 Conference Proceedings Sumair Riyaz DolceraDr. Haxel Consult
 
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...Dr. Haxel Consult
 
Wikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data CurationWikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data CurationEdward Curry
 
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?Dr. Haxel Consult
 
Neo4j im Fianzsektor: DIVIZEND
Neo4j im Fianzsektor: DIVIZENDNeo4j im Fianzsektor: DIVIZEND
Neo4j im Fianzsektor: DIVIZENDNeo4j
 
Making connections matter: 2 use cases on graphs & analytics solutions
Making connections matter: 2 use cases on graphs & analytics solutionsMaking connections matter: 2 use cases on graphs & analytics solutions
Making connections matter: 2 use cases on graphs & analytics solutionsNeo4j
 
ICIC 2013 Conference Proceedings Krishna Molecular Connections
ICIC 2013 Conference Proceedings Krishna Molecular ConnectionsICIC 2013 Conference Proceedings Krishna Molecular Connections
ICIC 2013 Conference Proceedings Krishna Molecular ConnectionsDr. Haxel Consult
 
PROPEL . Austrian's Roadmap for Enterprise Linked Data
PROPEL . Austrian's Roadmap for Enterprise Linked DataPROPEL . Austrian's Roadmap for Enterprise Linked Data
PROPEL . Austrian's Roadmap for Enterprise Linked DataSemantic Web Company
 
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...AI-SDV 2020: Using Transformer technology to build an AI based personal News ...
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...Dr. Haxel Consult
 
A Connections-first Approach to Supply Chain Optimization
A Connections-first Approach to Supply Chain OptimizationA Connections-first Approach to Supply Chain Optimization
A Connections-first Approach to Supply Chain OptimizationNeo4j
 
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)Dr. Haxel Consult
 
The Total Economic ImpactTM (TEI) of Neo4j, Featuring Forrester
The Total Economic ImpactTM (TEI) of Neo4j, Featuring ForresterThe Total Economic ImpactTM (TEI) of Neo4j, Featuring Forrester
The Total Economic ImpactTM (TEI) of Neo4j, Featuring ForresterNeo4j
 
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...Dr. Haxel Consult
 
Translating the Human Analog to Digital with Graphs
Translating the Human Analog to Digital with GraphsTranslating the Human Analog to Digital with Graphs
Translating the Human Analog to Digital with GraphsNeo4j
 
Return on Investment for Research Computing and Data Support 2021-03-03
Return on Investment for Research Computing and Data Support 2021-03-03Return on Investment for Research Computing and Data Support 2021-03-03
Return on Investment for Research Computing and Data Support 2021-03-03Alan Sill
 

Mais procurados (20)

Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupCrowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
 
A Pragmatic AI Maturity Model
A Pragmatic AI Maturity ModelA Pragmatic AI Maturity Model
A Pragmatic AI Maturity Model
 
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every Field
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every FieldKick Off – Graphs: The Fuel Behind Innovation and Transformation in Every Field
Kick Off – Graphs: The Fuel Behind Innovation and Transformation in Every Field
 
Smart Data Webinar: Machine Learning Update
Smart Data Webinar: Machine Learning UpdateSmart Data Webinar: Machine Learning Update
Smart Data Webinar: Machine Learning Update
 
ICIC 2013 Conference Proceedings Sumair Riyaz Dolcera
ICIC 2013 Conference Proceedings Sumair Riyaz DolceraICIC 2013 Conference Proceedings Sumair Riyaz Dolcera
ICIC 2013 Conference Proceedings Sumair Riyaz Dolcera
 
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...
IC-SDV 2019: Down-to-earth machine learning: What you always wanted your data...
 
Wikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data CurationWikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data Curation
 
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?
AI-SDV 2021: Nils Newmann - AI – Who is in control and why is that important?
 
Neo4j im Fianzsektor: DIVIZEND
Neo4j im Fianzsektor: DIVIZENDNeo4j im Fianzsektor: DIVIZEND
Neo4j im Fianzsektor: DIVIZEND
 
Thesis Defense MBI
Thesis Defense MBIThesis Defense MBI
Thesis Defense MBI
 
Making connections matter: 2 use cases on graphs & analytics solutions
Making connections matter: 2 use cases on graphs & analytics solutionsMaking connections matter: 2 use cases on graphs & analytics solutions
Making connections matter: 2 use cases on graphs & analytics solutions
 
ICIC 2013 Conference Proceedings Krishna Molecular Connections
ICIC 2013 Conference Proceedings Krishna Molecular ConnectionsICIC 2013 Conference Proceedings Krishna Molecular Connections
ICIC 2013 Conference Proceedings Krishna Molecular Connections
 
PROPEL . Austrian's Roadmap for Enterprise Linked Data
PROPEL . Austrian's Roadmap for Enterprise Linked DataPROPEL . Austrian's Roadmap for Enterprise Linked Data
PROPEL . Austrian's Roadmap for Enterprise Linked Data
 
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...AI-SDV 2020: Using Transformer technology to build an AI based personal News ...
AI-SDV 2020: Using Transformer technology to build an AI based personal News ...
 
A Connections-first Approach to Supply Chain Optimization
A Connections-first Approach to Supply Chain OptimizationA Connections-first Approach to Supply Chain Optimization
A Connections-first Approach to Supply Chain Optimization
 
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)
ICIC 2013 Conference Proceedings Richard Garner (LexisNexis)
 
The Total Economic ImpactTM (TEI) of Neo4j, Featuring Forrester
The Total Economic ImpactTM (TEI) of Neo4j, Featuring ForresterThe Total Economic ImpactTM (TEI) of Neo4j, Featuring Forrester
The Total Economic ImpactTM (TEI) of Neo4j, Featuring Forrester
 
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...
AI-SDV 2020: AI in bioinformatics: An analysis of the patent landscape Anna M...
 
Translating the Human Analog to Digital with Graphs
Translating the Human Analog to Digital with GraphsTranslating the Human Analog to Digital with Graphs
Translating the Human Analog to Digital with Graphs
 
Return on Investment for Research Computing and Data Support 2021-03-03
Return on Investment for Research Computing and Data Support 2021-03-03Return on Investment for Research Computing and Data Support 2021-03-03
Return on Investment for Research Computing and Data Support 2021-03-03
 

Destaque

II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...
II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...
II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...Dr. Haxel Consult
 
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...Dr. Haxel Consult
 
II-SDV 2012 Patent Overlay Mapping
II-SDV 2012 Patent Overlay MappingII-SDV 2012 Patent Overlay Mapping
II-SDV 2012 Patent Overlay MappingDr. Haxel Consult
 
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...Dr. Haxel Consult
 
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...Dr. Haxel Consult
 
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...Ly Nguyen
 

Destaque (7)

II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...
II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...
II-SDV 2012 Expert System Driven Insights into Patent Quality and Competitive...
 
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...
II-SDV 2012 From (Text) Mining to Models: Applying Large-Scale Text Mining on...
 
II-SDV 2012 Patent Overlay Mapping
II-SDV 2012 Patent Overlay MappingII-SDV 2012 Patent Overlay Mapping
II-SDV 2012 Patent Overlay Mapping
 
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...
II-SDV 2012 Automatic Query Re-Ranking in a Patent Database by Local Frequenc...
 
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...
I-SDV 2012 What Information Tools can you Imagine for the Future? - Conferenc...
 
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...
Query Enhancement for Patent Prior-Art-Search Based on Keyterm Dependency Rel...
 
International Patent Classification IPC for Performing Patent Infringement Se...
International Patent Classification IPC for Performing Patent Infringement Se...International Patent Classification IPC for Performing Patent Infringement Se...
International Patent Classification IPC for Performing Patent Infringement Se...
 

Semelhante a II-SDV 2012 Towards Unified Access Systems for Data Exploration

Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An IntroductionDenodo
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Denodo
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationDenodo
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)Denodo
 
Data Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroData Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroDenodo
 
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesData Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesDenodo
 
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...Denodo
 
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BIAugmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BIDenodo
 
Bridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItBridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItDenodo
 
Delivering Faster Insights with a Logical Data Fabric
Delivering Faster Insights with a Logical Data FabricDelivering Faster Insights with a Logical Data Fabric
Delivering Faster Insights with a Logical Data FabricDenodo
 
Modernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataModernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataPrecisely
 
Data And Three Types Of Data Centers
Data And Three Types Of Data CentersData And Three Types Of Data Centers
Data And Three Types Of Data CentersApril Davis
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationDenodo
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An IntroductionDenodo
 
Qo Introduction V2
Qo Introduction V2Qo Introduction V2
Qo Introduction V2Joe_F
 
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data VirtualizationKASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data VirtualizationDenodo
 
A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)Denodo
 
Advanced Analytics and Machine Learning with Data Virtualization
Advanced Analytics and Machine Learning with Data VirtualizationAdvanced Analytics and Machine Learning with Data Virtualization
Advanced Analytics and Machine Learning with Data VirtualizationDenodo
 
Data Virtualization – Gateway to a Digital Business - Barry Devlin
Data Virtualization – Gateway to a Digital Business - Barry DevlinData Virtualization – Gateway to a Digital Business - Barry Devlin
Data Virtualization – Gateway to a Digital Business - Barry DevlinDenodo
 

Semelhante a II-SDV 2012 Towards Unified Access Systems for Data Exploration (20)

Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An Introduction
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow Presentation
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)
 
Data Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroData Virtualization: From Zero to Hero
Data Virtualization: From Zero to Hero
 
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesData Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
 
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
 
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BIAugmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BI
 
Bridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItBridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need It
 
Delivering Faster Insights with a Logical Data Fabric
Delivering Faster Insights with a Logical Data FabricDelivering Faster Insights with a Logical Data Fabric
Delivering Faster Insights with a Logical Data Fabric
 
Modernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataModernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your Data
 
Data And Three Types Of Data Centers
Data And Three Types Of Data CentersData And Three Types Of Data Centers
Data And Three Types Of Data Centers
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal Modernization
 
Hybrid Cloud Strategy for Big Data and Analytics
Hybrid Cloud Strategy for Big Data and Analytics Hybrid Cloud Strategy for Big Data and Analytics
Hybrid Cloud Strategy for Big Data and Analytics
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An Introduction
 
Qo Introduction V2
Qo Introduction V2Qo Introduction V2
Qo Introduction V2
 
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data VirtualizationKASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
 
A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)
 
Advanced Analytics and Machine Learning with Data Virtualization
Advanced Analytics and Machine Learning with Data VirtualizationAdvanced Analytics and Machine Learning with Data Virtualization
Advanced Analytics and Machine Learning with Data Virtualization
 
Data Virtualization – Gateway to a Digital Business - Barry Devlin
Data Virtualization – Gateway to a Digital Business - Barry DevlinData Virtualization – Gateway to a Digital Business - Barry Devlin
Data Virtualization – Gateway to a Digital Business - Barry Devlin
 

Mais de Dr. Haxel Consult

AI-SDV 2022: Henry Chang Patent Intelligence and Engineering Management
AI-SDV 2022: Henry Chang Patent Intelligence and Engineering ManagementAI-SDV 2022: Henry Chang Patent Intelligence and Engineering Management
AI-SDV 2022: Henry Chang Patent Intelligence and Engineering ManagementDr. Haxel Consult
 
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...Dr. Haxel Consult
 
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...Dr. Haxel Consult
 
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...Dr. Haxel Consult
 
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...Dr. Haxel Consult
 
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...Dr. Haxel Consult
 
AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...Dr. Haxel Consult
 
AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...Dr. Haxel Consult
 
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...Dr. Haxel Consult
 
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...Dr. Haxel Consult
 
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...Dr. Haxel Consult
 
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...Dr. Haxel Consult
 
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...Dr. Haxel Consult
 
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...Dr. Haxel Consult
 
AI-SDV 2022: Copyright Clearance Center
AI-SDV 2022: Copyright Clearance CenterAI-SDV 2022: Copyright Clearance Center
AI-SDV 2022: Copyright Clearance CenterDr. Haxel Consult
 
AI-SDV 2022: New Product Introductions: CENTREDOC
AI-SDV 2022: New Product Introductions: CENTREDOCAI-SDV 2022: New Product Introductions: CENTREDOC
AI-SDV 2022: New Product Introductions: CENTREDOCDr. Haxel Consult
 
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...Dr. Haxel Consult
 
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...Dr. Haxel Consult
 
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...Dr. Haxel Consult
 

Mais de Dr. Haxel Consult (20)

AI-SDV 2022: Henry Chang Patent Intelligence and Engineering Management
AI-SDV 2022: Henry Chang Patent Intelligence and Engineering ManagementAI-SDV 2022: Henry Chang Patent Intelligence and Engineering Management
AI-SDV 2022: Henry Chang Patent Intelligence and Engineering Management
 
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...
AI-SDV 2022: Creation and updating of large Knowledge Graphs through NLP Anal...
 
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...
AI-SDV 2022: Accommodating the Deep Learning Revolution by a Development Proc...
 
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...
AI-SDV 2022: Domain Knowledge makes Artificial Intelligence Smart Linda Ander...
 
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...
AI-SDV 2022: Embedding-based Search Vs. Relevancy Search: comparing the new w...
 
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...
AI-SDV 2022: Rolling out web crawling at Boehringer Ingelheim - 10 years of e...
 
AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...
 
AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...AI-SDV 2022: Machine learning based patent categorization: A success story in...
AI-SDV 2022: Machine learning based patent categorization: A success story in...
 
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...
AI-SDV 2022: Finding the WHAT – Will AI help? Nils Newman (Search Technology,...
 
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...
AI-SDV 2022: New Insights from Trademarks with Natural Language Processing Al...
 
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...
AI-SDV 2022: Extracting information from tables in documents Holger Keibel (K...
 
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...
AI-SDV 2022: Scientific publishing in the age of data mining and artificial i...
 
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...
AI-SDV 2022: AI developments and usability Linus Wretblad (IPscreener / Uppdr...
 
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...
AI-SDV 2022: Where’s the one about…? Looney Tunes® Revisited Jay Ven Eman (CE...
 
AI-SDV 2022: Copyright Clearance Center
AI-SDV 2022: Copyright Clearance CenterAI-SDV 2022: Copyright Clearance Center
AI-SDV 2022: Copyright Clearance Center
 
AI-SDV 2022: Lighthouse IP
AI-SDV 2022: Lighthouse IPAI-SDV 2022: Lighthouse IP
AI-SDV 2022: Lighthouse IP
 
AI-SDV 2022: New Product Introductions: CENTREDOC
AI-SDV 2022: New Product Introductions: CENTREDOCAI-SDV 2022: New Product Introductions: CENTREDOC
AI-SDV 2022: New Product Introductions: CENTREDOC
 
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...
AI-SDV 2022: Possibilities and limitations of AI-boosted multi-categorization...
 
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...
AI-SDV 2022: Big data analytics platform at Bayer – Turning bits into insight...
 
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...
The Artificial Intelligence Conference on Search, Data and Text Mining, Analy...
 

Último

Introduction to ICANN and Fellowship program by Shreedeep Rayamajhi.pdf
Introduction to ICANN and Fellowship program  by Shreedeep Rayamajhi.pdfIntroduction to ICANN and Fellowship program  by Shreedeep Rayamajhi.pdf
Introduction to ICANN and Fellowship program by Shreedeep Rayamajhi.pdfShreedeep Rayamajhi
 
Zero-day Vulnerabilities
Zero-day VulnerabilitiesZero-day Vulnerabilities
Zero-day Vulnerabilitiesalihassaah1994
 
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASS
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASSLESSON 10/ GROUP 10/ ST. THOMAS AQUINASS
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASSlesteraporado16
 
Bio Medical Waste Management Guideliness 2023 ppt.pptx
Bio Medical Waste Management Guideliness 2023 ppt.pptxBio Medical Waste Management Guideliness 2023 ppt.pptx
Bio Medical Waste Management Guideliness 2023 ppt.pptxnaveenithkrishnan
 
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...Benefits of doing Internet peering and running an Internet Exchange (IX) pres...
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...APNIC
 
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced Horizons
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced HorizonsVision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced Horizons
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced HorizonsRoxana Stingu
 
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024Jan Löffler
 
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdf
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdfLESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdf
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdfmchristianalwyn
 
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDS
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDSTYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDS
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDSedrianrheine
 
Presentation2.pptx - JoyPress Wordpress
Presentation2.pptx -  JoyPress WordpressPresentation2.pptx -  JoyPress Wordpress
Presentation2.pptx - JoyPress Wordpressssuser166378
 
Computer 10 Lesson 8: Building a Website
Computer 10 Lesson 8: Building a WebsiteComputer 10 Lesson 8: Building a Website
Computer 10 Lesson 8: Building a WebsiteMavein
 
Check out the Free Landing Page Hosting in 2024
Check out the Free Landing Page Hosting in 2024Check out the Free Landing Page Hosting in 2024
Check out the Free Landing Page Hosting in 2024Shubham Pant
 

Último (12)

Introduction to ICANN and Fellowship program by Shreedeep Rayamajhi.pdf
Introduction to ICANN and Fellowship program  by Shreedeep Rayamajhi.pdfIntroduction to ICANN and Fellowship program  by Shreedeep Rayamajhi.pdf
Introduction to ICANN and Fellowship program by Shreedeep Rayamajhi.pdf
 
Zero-day Vulnerabilities
Zero-day VulnerabilitiesZero-day Vulnerabilities
Zero-day Vulnerabilities
 
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASS
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASSLESSON 10/ GROUP 10/ ST. THOMAS AQUINASS
LESSON 10/ GROUP 10/ ST. THOMAS AQUINASS
 
Bio Medical Waste Management Guideliness 2023 ppt.pptx
Bio Medical Waste Management Guideliness 2023 ppt.pptxBio Medical Waste Management Guideliness 2023 ppt.pptx
Bio Medical Waste Management Guideliness 2023 ppt.pptx
 
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...Benefits of doing Internet peering and running an Internet Exchange (IX) pres...
Benefits of doing Internet peering and running an Internet Exchange (IX) pres...
 
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced Horizons
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced HorizonsVision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced Horizons
Vision Forward: Tracing Image Search SEO From Its Roots To AI-Enhanced Horizons
 
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024
WordPress by the numbers - Jan Loeffler, CTO WebPros, CloudFest 2024
 
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdf
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdfLESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdf
LESSON 5 GROUP 10 ST. THOMAS AQUINAS.pdf
 
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDS
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDSTYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDS
TYPES AND DEFINITION OF ONLINE CRIMES AND HAZARDS
 
Presentation2.pptx - JoyPress Wordpress
Presentation2.pptx -  JoyPress WordpressPresentation2.pptx -  JoyPress Wordpress
Presentation2.pptx - JoyPress Wordpress
 
Computer 10 Lesson 8: Building a Website
Computer 10 Lesson 8: Building a WebsiteComputer 10 Lesson 8: Building a Website
Computer 10 Lesson 8: Building a Website
 
Check out the Free Landing Page Hosting in 2024
Check out the Free Landing Page Hosting in 2024Check out the Free Landing Page Hosting in 2024
Check out the Free Landing Page Hosting in 2024
 

II-SDV 2012 Towards Unified Access Systems for Data Exploration

  • 1. Copyright IDC. Reproduction is forbidden unless authorized. All rights reserved. Unified Information Access Creating Information Synergy Sue Feldman Vice President, IDC Search and Discovery Technologies
  • 2. Apr-12© IDC 2 OutlineOutline The information access quandary: for IT, for information workers, for the enterprise Unified information access defined Unified information access in depth Unified information access: Examples of uses, information synergies Source:/Notes:
  • 3. Apr-12© IDC The Digital Universe, 2009-2020The Digital Universe, 2009-2020 3 0.8 ZB *Zettabyte: 1,000,000,000,000,000,000,000 bytes ( 1 trillion gigabytes) 2009 2020 35 Zettabytes* www.emc.com/collateral/demos/microsites/idc-digital-universe/iview.htm • Digital information will grow by a factor of 44, to 35 ZB in 2020 • 25 quintillion files or records Source: IDC Digital Universe Study, 2010, Sponsored by EMC
  • 4. Apr-12© IDC Challenge for IT: Complex IT EnvironmentChallenge for IT: Complex IT Environment 4 Cloud HR CRM Websites Mobile Devices Personal Computers Server Server Server Server Server Server Server Cloud Social Media File Systems, CM, DAM PLM
  • 5. Apr-12© IDC Challenges for Information WorkersChallenges for Information Workers No integration • Multiple applications • Multiple repositories • Multiple interfaces and protocols • Terminologies and schemas that don’t match • Expectations for ease of use from Web. Time wasted Risk Information Overload Misinformation, Old Information Missed information
  • 6. Apr-12© IDC Uses of Search and Discovery, 2011Uses of Search and Discovery, 2011 6 Top 4 reasons to invest in search and discovery technologies % Lower the cost of managing and analyzing information 39.5 Unify access to all of our information sources—both structured and unstructured (Provide a comprehensive view of our information across email, file servers, applications) 34 Provide faster, easier access for more users to structured data in our legacy systems 34 Decision support and management 25 Normalize information across repositories (ETL for content) to gather all the related information from different sources 22.5 Understand our customers by mining email, call center interactions, etc. 18.5 Unweighted Valid N 200 100.0 Source: Unified Access to Information: Less Seeking, More Finding, IDC#227780, April, 2011
  • 7. Apr-12© IDC Requested Features: BI + SearchRequested Features: BI + Search 7 What features or user experience do your users most often request or demand on a scale of 1 to 5? Rating Access to more information 4.08 Ability to make business intelligence more dynamic, to simplify BI queries and also the business intelligence process 3.89 Monitor customers across multiple channels (call center, email, Internet forums, etc.) 3.88 Ability to monitor and visualize information for competitive intelligence or business analysis 3.81 Browsing by categories or facets 3.80 Single access to multiple repositories 3.79 Automatic categorization and tagging of documents 3.75 Reporting features like charts and graphs 3.72 Unweighted Valid N 200 100.0 Source: Unified Access to Information: Less Seeking, More Finding, IDC#227780, April, 2011
  • 8. Apr-12© IDC Information Centered Computing: Why Now? Information Centered Computing: Why Now? Complexity: beyond LOB and IT to manage and understand with traditional tools Market demand for tools that manage information overload, provide decision support, automate business processes Technology advances: cloud, big data, new, scalable architectures, robust, scalable software for information access and analysis of all types of information, enhanced and less expensive storage New delivery models (cloud, mobile, mixed platform) New business models: subscription, ad supported, revenue sharing Synergy of content and technology: e.g.., Factual, Watson, Wolfram Alpha 8
  • 9. Apr-12© IDC •Integrate access to unstructured, semi-structured, and structured information. •Combine features of database, business intelligence, and search technologies in a single architecture • Provide a modular, well-integrated set of tools and services to normalize, index, search, query, present, visualize, analyze and report information •Create a single platform for information gathering, analysis, and decision support. •Accommodate quickly changing information through real-time or near-real-time updating and analytics •Are highly scalable •Provide a platform for building search based applications that support specific industries, tasks and workflows The market is just beginning to evolve Definition: Unified Information Access Platforms Definition: Unified Information Access Platforms 9 Unified information access platforms provide a single point of access that integrates and finds relationships in information across multiple heterogeneous sources of information. These platforms:
  • 10. Apr-12© IDC Unified Information Access ArchitectureUnified Information Access Architecture Unstructured Content Structured Data Input Workflow: pre-processing Data Store, Data Warehouse, Search Index, Content Repository, Rule Base, Model Manager, Knowledge Base, Query Converters QueryText Mining Analytics Browse/Navigation Data Mining Visualization Smart Connectors Applications UI, Dialogue Manager ETL for Text/Media Tokenize, normalize, extract entities, relationships, time, sentiment, categorize ETL for Data Cleanse, normalize, extract, transform, load Search Real-time Streaming Enterprise Service Bus, Message oriented Middleware BPMSRules CEPMessage distribution Semi-Structured Data Output Workflow
  • 11. Apr-12© IDC Definition: Intelligent Workspaces Search Based Applications Definition: Intelligent Workspaces Search Based Applications Based on the task, not the technology Combines multiple technologies and tools Integrates information from multiple sources Incorporates knowledge bases for specialized workflows, terminology Hides complexity below an easy, compelling UI Intelligent workspace: an application that provides a specialized, integrated information work environment that is specific to a process or task
  • 12. Apr-12© IDC Hot areas for Unified Information AccessHot areas for Unified Information Access Decision Support Listening platforms: (Voice of Customer, Reputation monitoring) Early product warning Churn prevention Social business Finance and investing (Market trend analysis and trading) Drug development Master Data Management Multilingual Discovery Healthcare Government intelligence Fraud detection Terrorist detection Real time, targeted recommendations, ads Emergency services support (information overload) Question answering R&D Innovation Platforms 12
  • 13. Apr-12© IDC Unified Access: Vertical UsesUnified Access: Vertical Uses Publishing: Smart content Manufacturing: Voice of the customer, social media monitoring Marketing and politics: social media monitoring Government: Fraud and terrorist detection; voice of the citizen, emergency event monitoring Healthcare: Diagnosis support, predict recurrence of hospital visits, fraudulent claim detection Finance: Fraud detection, voice of the customer, upsell and cross sell with predictive analytics, trend spotting for investment bankers Pharmaceuticals: Drug discovery, cause and effect for treatments, finding influencers 13
  • 14. Apr-12© IDC PREPARE Knowing the norms for: • The community • Infrastructure and transportation • Resources and supplies • Population and movements • Blockages and impasses • Weather access and planning • Local news access • Police, EMS, fire calls and dispatch • What hospitals are refusing? Slides courtesy of FAST & BULL Services Unified Access for Command & Control AutomationUnified Access for Command & Control Automation
  • 15. Apr-12© IDC Bull Services: Unified Access for Command & Control Automation Bull Services: Unified Access for Command & Control Automation RESPONDING FAST Data Search Knowing: WHO WHAT WHEN WHERE HOW HOW MANY
  • 16. Apr-12© IDC Google Disease Alert Map: Presents data for quick understanding Google Disease Alert Map: Presents data for quick understanding
  • 18. Apr-12© IDC Temis: Social graph for explorationTemis: Social graph for exploration
  • 19. Apr-12© IDC Endeca: Dynamic reportingEndeca: Dynamic reporting
  • 20. Apr-12© IDC 20 Linguamatics - Safety/ToxicityLinguamatics - Safety/Toxicity Compound Potential safety issues In the liver At this dosage
  • 21. Apr-12© IDC Autonomy: Sentiment, browsing, clusteringAutonomy: Sentiment, browsing, clustering 21
  • 22. Apr-12© IDC Basis Technology: Multilingual DiscoveryBasis Technology: Multilingual Discovery
  • 23. Apr-12© IDC Trends in Information Access TodayTrends in Information Access Today Aggregation Filtering and personalization Analytics on everything: content, users, actions, trends, events • For navigation, browsing and discovery, question answering, trending, location-based services, advertising, and marketing. New technologies and automation techniques for: – Information collection – Data normalization and relationship mining – Analysis across sources and data types – Visualization – Reporting and alerting – Collaboration and social business tools 23
  • 24. Apr-12© IDC Unified Information AccessUnified Information Access Foundation for new information management and access stack for the enterprise May replace data warehouses if application requires quick ad hoc access to large collections of heterogeneous information Will replace, through evolution, the traditional enterprise search engine Foundation for merging data plus content in big data applications Center for emerging ecosystems of search based applications. Platform vendors will gain adoption through search based applications 24
  • 25. Apr-12© IDC 25 Contact InformationContact Information Susan Feldman VP, Search and Discovery Technologies sfeldman@idc.com