SlideShare una empresa de Scribd logo
1 de 28
© 2015 IHS. ALL RIGHTS RESERVED.
KNOWLEDGE ARCHITECTURE:
GRAPHING YOUR KNOWLEDGE
Combining Strategy, Data Science and Informatics
to Transform Data to Actionable Knowledge
Government Graph Day
February 28, 2017
David Meza
Chief Knowledge Architect
NASA Johnson Space Center
AGENDA
• Challenges
• Knowledge
Architecture
• Graphing LLDB
• Questions?
2
“The most important contribution management needs to
make in the 21st Century is to increase the productivity
of knowledge work and the knowledge worker.”
PETER F. DRUCKER, 1999
30%of total R&D spend
is wasted
duplicating
research and work
previously done.
Source: National Board of
Patents and Registration (PRH),
WIPO, IFA
54%of decisions are
made with
incomplete,
inconsistent and
inadequate
information
Source: InfoCentric Research
46%
Workers can’t
find the
information they
need almost
half the time.
Source: IDC
Challenges
To convert data to knowledge a convergence of Knowledge
Management, Informatics and Data Science is necessary.
5
Knowledge
Management
Data ScienceInformatics
Knowledge Architecture
• The people, processes, and technology of designing, implementing, and applying the
intellectual infrastructure of organizations.
• What is an intellectual infrastructure?
• The set of activities to create, capture, organize, analyze, visualize, present, and utilize
the information part of the information age..
• Information + Contexts = Knowledge
• Knowledge Management + Informatics + Data Science = Knowledge Architecture
• KM without Informatics is empty (Strategy Only)
• Informatics without KM is blind (IT based KM)
• Data Science transforms your data to knowledge
6
“We have an opportunity for everyone in the world to have access to all
the world’s information. This has never before been possible. Why is
ubiquitous information so profound? It is a tremendous equalizer.
Information is power.”
ERIC SCHMIDT (FORMER CEO OF GOOGLE)
There was a inquisitive engineer…
LESSON LEARNED DATABASE
10
2031 lessons submitted across NASA. Filter by date and Center
only.
Useful information stored in database.
Document to Graph
11
PATTERNS
EMERGE
TOPIC MODELING
13
Topic models are based upon the idea that documents are mixtures of
topics, where a topic is a probability distribution over words.
LDA Model from Blei (2011)
David Blei homepage - http://www.cs.columbia.edu/~blei/topicmodeling.htmlBlei, David M. 2011. “Introduction to Probabilistic Topic Models.” Communications of the ACM.
CORRELATION BY CATEGORY
14
To find the per-document probabilities we extract theta from the fitted model’s
topic posteriors
TOPIC TRENDS
15
Using mean of theta by years to trend topics
TOPIC VISUALIZATION
16
GRAPH MODEL OF LESSON LEARNED
DATABASE
17
http://davidmeza1.github.io/2015/07/16/Graphing-a-lesson-learned-database.html
GRAPH MODEL OF LESSON LEARNED DATABASE
18
GRAPH MODEL OF LESSON LEARNED DATABASE
19
DATA DRIVEN VISUALIZATION
20
26
WHAT COULD YOU ACCOMPLISH IF YOU COULD:
• Empower faster and more informed decision-making
• Leverage lessons of the past to minimize waste, rework,
re-invention and redundancy
• Reduce the learning curve for new employees
• Enhance and extend existing content and document
management systems
Contact Information
David Meza – david.meza-1@nasa.gov
Twitter - @davidmeza1
Linkedin - https://www.linkedin.com/pub/david-meza/16/543/50b
Github – davidmeza1
Blog
davidmeza1.github.io
27
Contents
© 2015 IHS. ALL RIGHTS RESERVED. 28
Report Name / Month 2015
QUESTIONS?

Más contenido relacionado

La actualidad más candente

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
 
GDPR: Leverage the Power of Graphs
GDPR: Leverage the Power of GraphsGDPR: Leverage the Power of Graphs
GDPR: Leverage the Power of GraphsNeo4j
 
3. Relationships Matter: Using Connected Data for Better Machine Learning
3. Relationships Matter: Using Connected Data for Better Machine Learning3. Relationships Matter: Using Connected Data for Better Machine Learning
3. Relationships Matter: Using Connected Data for Better Machine LearningNeo4j
 
Using Graphs to Enable National-Scale Analytics
Using Graphs to Enable National-Scale AnalyticsUsing Graphs to Enable National-Scale Analytics
Using Graphs to Enable National-Scale AnalyticsNeo4j
 
GraphDay Stockholm - Fraud Prevention
GraphDay Stockholm - Fraud PreventionGraphDay Stockholm - Fraud Prevention
GraphDay Stockholm - Fraud PreventionNeo4j
 
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
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityDataconomy Media
 
Big MDM Part 2: Using a Graph Database for MDM and Relationship Management
Big MDM Part 2: Using a Graph Database for MDM and Relationship ManagementBig MDM Part 2: Using a Graph Database for MDM and Relationship Management
Big MDM Part 2: Using a Graph Database for MDM and Relationship ManagementCaserta
 
The Virtualization of Clouds - The New Enterprise Data Architecture Opportunity
The Virtualization of Clouds - The New Enterprise Data Architecture OpportunityThe Virtualization of Clouds - The New Enterprise Data Architecture Opportunity
The Virtualization of Clouds - The New Enterprise Data Architecture OpportunityDenodo
 
Relationships Matter: Using Connected Data for Better Machine Learning
Relationships Matter: Using Connected Data for Better Machine LearningRelationships Matter: Using Connected Data for Better Machine Learning
Relationships Matter: Using Connected Data for Better Machine LearningNeo4j
 
Digital Graph tour Rome: "Connect the Dots, Lorenzo Speranzoni
Digital Graph tour Rome:  "Connect the Dots, Lorenzo SperanzoniDigital Graph tour Rome:  "Connect the Dots, Lorenzo Speranzoni
Digital Graph tour Rome: "Connect the Dots, Lorenzo SperanzoniNeo4j
 
Applying Graph DB to Enterprise MDM
Applying Graph DB to Enterprise MDMApplying Graph DB to Enterprise MDM
Applying Graph DB to Enterprise MDMBrant Boehmann
 
PASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureMLPASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureMLJen Stirrup
 
The Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseThe Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseCaserta
 
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...Dataconomy Media
 
RDBMS to Graphs
RDBMS to GraphsRDBMS to Graphs
RDBMS to GraphsNeo4j
 
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York City
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York CityEnterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York City
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York CityNeo4j
 
Big Data Analytics on the Cloud
Big Data Analytics on the CloudBig Data Analytics on the Cloud
Big Data Analytics on the CloudCaserta
 
Introduction to the graph technologies landscape
Introduction to the graph technologies landscapeIntroduction to the graph technologies landscape
Introduction to the graph technologies landscapeLinkurious
 
GraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenGraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenNeo4j
 

La actualidad más candente (20)

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
 
GDPR: Leverage the Power of Graphs
GDPR: Leverage the Power of GraphsGDPR: Leverage the Power of Graphs
GDPR: Leverage the Power of Graphs
 
3. Relationships Matter: Using Connected Data for Better Machine Learning
3. Relationships Matter: Using Connected Data for Better Machine Learning3. Relationships Matter: Using Connected Data for Better Machine Learning
3. Relationships Matter: Using Connected Data for Better Machine Learning
 
Using Graphs to Enable National-Scale Analytics
Using Graphs to Enable National-Scale AnalyticsUsing Graphs to Enable National-Scale Analytics
Using Graphs to Enable National-Scale Analytics
 
GraphDay Stockholm - Fraud Prevention
GraphDay Stockholm - Fraud PreventionGraphDay Stockholm - Fraud Prevention
GraphDay Stockholm - Fraud Prevention
 
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
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
 
Big MDM Part 2: Using a Graph Database for MDM and Relationship Management
Big MDM Part 2: Using a Graph Database for MDM and Relationship ManagementBig MDM Part 2: Using a Graph Database for MDM and Relationship Management
Big MDM Part 2: Using a Graph Database for MDM and Relationship Management
 
The Virtualization of Clouds - The New Enterprise Data Architecture Opportunity
The Virtualization of Clouds - The New Enterprise Data Architecture OpportunityThe Virtualization of Clouds - The New Enterprise Data Architecture Opportunity
The Virtualization of Clouds - The New Enterprise Data Architecture Opportunity
 
Relationships Matter: Using Connected Data for Better Machine Learning
Relationships Matter: Using Connected Data for Better Machine LearningRelationships Matter: Using Connected Data for Better Machine Learning
Relationships Matter: Using Connected Data for Better Machine Learning
 
Digital Graph tour Rome: "Connect the Dots, Lorenzo Speranzoni
Digital Graph tour Rome:  "Connect the Dots, Lorenzo SperanzoniDigital Graph tour Rome:  "Connect the Dots, Lorenzo Speranzoni
Digital Graph tour Rome: "Connect the Dots, Lorenzo Speranzoni
 
Applying Graph DB to Enterprise MDM
Applying Graph DB to Enterprise MDMApplying Graph DB to Enterprise MDM
Applying Graph DB to Enterprise MDM
 
PASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureMLPASS Summit Data Storytelling with R Power BI and AzureML
PASS Summit Data Storytelling with R Power BI and AzureML
 
The Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's EnterpriseThe Rise of the CDO in Today's Enterprise
The Rise of the CDO in Today's Enterprise
 
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...
Uwe Seiler, Data Architect and Trainer at codecentric AG - "Hadoop & Germany ...
 
RDBMS to Graphs
RDBMS to GraphsRDBMS to Graphs
RDBMS to Graphs
 
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York City
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York CityEnterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York City
Enterprise Ready: A Look at Neo4j in Production at Neo4j GraphDay New York City
 
Big Data Analytics on the Cloud
Big Data Analytics on the CloudBig Data Analytics on the Cloud
Big Data Analytics on the Cloud
 
Introduction to the graph technologies landscape
Introduction to the graph technologies landscapeIntroduction to the graph technologies landscape
Introduction to the graph technologies landscape
 
GraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in GraphdatenbankenGraphTalk Berlin - Einführung in Graphdatenbanken
GraphTalk Berlin - Einführung in Graphdatenbanken
 

Destacado

The Five Graphs of Government: How Federal Agencies can Utilize Graph Technology
The Five Graphs of Government: How Federal Agencies can Utilize Graph TechnologyThe Five Graphs of Government: How Federal Agencies can Utilize Graph Technology
The Five Graphs of Government: How Federal Agencies can Utilize Graph TechnologyNeo4j
 
How to Design Retail Recommendation Engines with Neo4j
How to Design Retail Recommendation Engines with Neo4jHow to Design Retail Recommendation Engines with Neo4j
How to Design Retail Recommendation Engines with Neo4jNeo4j
 
GraphTalks Rome - Selecting the right Technology
GraphTalks Rome - Selecting the right TechnologyGraphTalks Rome - Selecting the right Technology
GraphTalks Rome - Selecting the right TechnologyNeo4j
 
GraphTalks Rome - Identity and Access Management
GraphTalks Rome - Identity and Access ManagementGraphTalks Rome - Identity and Access Management
GraphTalks Rome - Identity and Access ManagementNeo4j
 
GraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphGraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphNeo4j
 
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial Fraud
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial FraudGraphDay Stockholm - Levaraging Graph-Technology to fight Financial Fraud
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial FraudNeo4j
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to GraphsNeo4j
 
GraphDay Stockholm - Telia Zone
GraphDay Stockholm - Telia Zone GraphDay Stockholm - Telia Zone
GraphDay Stockholm - Telia Zone Neo4j
 
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesGraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesNeo4j
 
Intro to Neo4j presentation
Intro to Neo4j presentationIntro to Neo4j presentation
Intro to Neo4j presentationjexp
 
Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017Neo4j
 
Neo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j
 
Webinar: Intro to Cypher
Webinar: Intro to CypherWebinar: Intro to Cypher
Webinar: Intro to CypherNeo4j
 
GraphDay Stockholm - Graphs in Action
GraphDay Stockholm - Graphs in ActionGraphDay Stockholm - Graphs in Action
GraphDay Stockholm - Graphs in ActionNeo4j
 
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...Neo4j
 
Identity and Access Management
Identity and Access ManagementIdentity and Access Management
Identity and Access ManagementNeo4j
 
Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph DatabasesMax De Marzi
 
Neo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama PapersNeo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama PapersNeo4j
 
Intro to Neo4j and Graph Databases
Intro to Neo4j and Graph DatabasesIntro to Neo4j and Graph Databases
Intro to Neo4j and Graph DatabasesNeo4j
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j InternalsTobias Lindaaker
 

Destacado (20)

The Five Graphs of Government: How Federal Agencies can Utilize Graph Technology
The Five Graphs of Government: How Federal Agencies can Utilize Graph TechnologyThe Five Graphs of Government: How Federal Agencies can Utilize Graph Technology
The Five Graphs of Government: How Federal Agencies can Utilize Graph Technology
 
How to Design Retail Recommendation Engines with Neo4j
How to Design Retail Recommendation Engines with Neo4jHow to Design Retail Recommendation Engines with Neo4j
How to Design Retail Recommendation Engines with Neo4j
 
GraphTalks Rome - Selecting the right Technology
GraphTalks Rome - Selecting the right TechnologyGraphTalks Rome - Selecting the right Technology
GraphTalks Rome - Selecting the right Technology
 
GraphTalks Rome - Identity and Access Management
GraphTalks Rome - Identity and Access ManagementGraphTalks Rome - Identity and Access Management
GraphTalks Rome - Identity and Access Management
 
GraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business GraphGraphTalks Rome - The Italian Business Graph
GraphTalks Rome - The Italian Business Graph
 
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial Fraud
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial FraudGraphDay Stockholm - Levaraging Graph-Technology to fight Financial Fraud
GraphDay Stockholm - Levaraging Graph-Technology to fight Financial Fraud
 
Webinar: RDBMS to Graphs
Webinar: RDBMS to GraphsWebinar: RDBMS to Graphs
Webinar: RDBMS to Graphs
 
GraphDay Stockholm - Telia Zone
GraphDay Stockholm - Telia Zone GraphDay Stockholm - Telia Zone
GraphDay Stockholm - Telia Zone
 
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph DatabasesGraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
GraphDay Stockholm - Graphs in the Real World: Top Use Cases for Graph Databases
 
Intro to Neo4j presentation
Intro to Neo4j presentationIntro to Neo4j presentation
Intro to Neo4j presentation
 
Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017Neo4j PartnerDay Amsterdam 2017
Neo4j PartnerDay Amsterdam 2017
 
Neo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in GraphdatenbankenNeo4j GraphTalks - Einführung in Graphdatenbanken
Neo4j GraphTalks - Einführung in Graphdatenbanken
 
Webinar: Intro to Cypher
Webinar: Intro to CypherWebinar: Intro to Cypher
Webinar: Intro to Cypher
 
GraphDay Stockholm - Graphs in Action
GraphDay Stockholm - Graphs in ActionGraphDay Stockholm - Graphs in Action
GraphDay Stockholm - Graphs in Action
 
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...
GraphDay Stockholm - iKnow Solutions - The Value Add of Graphs to Analytics a...
 
Identity and Access Management
Identity and Access ManagementIdentity and Access Management
Identity and Access Management
 
Introduction to Graph Databases
Introduction to Graph DatabasesIntroduction to Graph Databases
Introduction to Graph Databases
 
Neo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama PapersNeo4j GraphTalks Panama Papers
Neo4j GraphTalks Panama Papers
 
Intro to Neo4j and Graph Databases
Intro to Neo4j and Graph DatabasesIntro to Neo4j and Graph Databases
Intro to Neo4j and Graph Databases
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j Internals
 

Similar a Knowledge Architecture: Graphing Your Knowledge

Knowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your KnowledgeKnowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your KnowledgeNeo4j
 
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...Connected Data World
 
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATION
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATIONKNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATION
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATIONConnected Data World
 
FAIR data_ Superior data visibility and reuse without warehousing.pdf
FAIR data_ Superior data visibility and reuse without warehousing.pdfFAIR data_ Superior data visibility and reuse without warehousing.pdf
FAIR data_ Superior data visibility and reuse without warehousing.pdfAlan Morrison
 
Blended learning and flipped classrooms for data science at Dallas Startup Week
Blended learning and flipped classrooms for data science at Dallas Startup WeekBlended learning and flipped classrooms for data science at Dallas Startup Week
Blended learning and flipped classrooms for data science at Dallas Startup WeekStartupWeekDallas
 
The importance of FAIR and the Community of Data Driven Insights - the road t...
The importance of FAIR and the Community of Data Driven Insights - the road t...The importance of FAIR and the Community of Data Driven Insights - the road t...
The importance of FAIR and the Community of Data Driven Insights - the road t...Carlos Utrilla Guerrero
 
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...NOVA DATASCIENCE
 
Data centric business and knowledge graph trends
Data centric business and knowledge graph trendsData centric business and knowledge graph trends
Data centric business and knowledge graph trendsAlan Morrison
 
Mapping (big) data science (15 dec2014)대학(원)생
Mapping (big) data science (15 dec2014)대학(원)생Mapping (big) data science (15 dec2014)대학(원)생
Mapping (big) data science (15 dec2014)대학(원)생Han Woo PARK
 
Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.Alexandru Iosup
 
International Collaboration Networks in the Emerging (Big) Data Science
International Collaboration Networks in the Emerging (Big) Data ScienceInternational Collaboration Networks in the Emerging (Big) Data Science
International Collaboration Networks in the Emerging (Big) Data Sciencedatasciencekorea
 
Data Science in 2016: Moving Up
Data Science in 2016: Moving UpData Science in 2016: Moving Up
Data Science in 2016: Moving UpPaco Nathan
 
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015Big Data Spain
 
One View of Data Science
One View of Data ScienceOne View of Data Science
One View of Data SciencePhilip Bourne
 
LiDIA: An integration architecture to query Linked Open Data from multiple da...
LiDIA: An integration architecture to query Linked Open Data from multiple da...LiDIA: An integration architecture to query Linked Open Data from multiple da...
LiDIA: An integration architecture to query Linked Open Data from multiple da...Cristian Rodríguez Enríquez
 
Data driven innovation for education
Data driven innovation for education Data driven innovation for education
Data driven innovation for education EduSkills OECD
 
Data Science
Data ScienceData Science
Data ScienceRabin BK
 

Similar a Knowledge Architecture: Graphing Your Knowledge (20)

Knowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your KnowledgeKnowledge Architecture: Graphing Your Knowledge
Knowledge Architecture: Graphing Your Knowledge
 
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...
Κnowledge Architecture: Combining Strategy, Data Science and Information Arch...
 
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATION
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATIONKNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATION
KNOWLEDGE ARCHITECTURE: IT’S IMPORTANCE TO AN ORGANIZATION
 
FAIR data_ Superior data visibility and reuse without warehousing.pdf
FAIR data_ Superior data visibility and reuse without warehousing.pdfFAIR data_ Superior data visibility and reuse without warehousing.pdf
FAIR data_ Superior data visibility and reuse without warehousing.pdf
 
Blended learning and flipped classrooms for data science at Dallas Startup Week
Blended learning and flipped classrooms for data science at Dallas Startup WeekBlended learning and flipped classrooms for data science at Dallas Startup Week
Blended learning and flipped classrooms for data science at Dallas Startup Week
 
The importance of FAIR and the Community of Data Driven Insights - the road t...
The importance of FAIR and the Community of Data Driven Insights - the road t...The importance of FAIR and the Community of Data Driven Insights - the road t...
The importance of FAIR and the Community of Data Driven Insights - the road t...
 
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...
NOVA Data Science Meetup 8-10-2017 Presentation - State of Data Science Educa...
 
Data centric business and knowledge graph trends
Data centric business and knowledge graph trendsData centric business and knowledge graph trends
Data centric business and knowledge graph trends
 
Mapping (big) data science (15 dec2014)대학(원)생
Mapping (big) data science (15 dec2014)대학(원)생Mapping (big) data science (15 dec2014)대학(원)생
Mapping (big) data science (15 dec2014)대학(원)생
 
Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.Cloud Programming Models: eScience, Big Data, etc.
Cloud Programming Models: eScience, Big Data, etc.
 
Rdaeu russia_fg_1_july2014_final
Rdaeu  russia_fg_1_july2014_finalRdaeu  russia_fg_1_july2014_final
Rdaeu russia_fg_1_july2014_final
 
International Collaboration Networks in the Emerging (Big) Data Science
International Collaboration Networks in the Emerging (Big) Data ScienceInternational Collaboration Networks in the Emerging (Big) Data Science
International Collaboration Networks in the Emerging (Big) Data Science
 
Data Science in 2016: Moving Up
Data Science in 2016: Moving UpData Science in 2016: Moving Up
Data Science in 2016: Moving Up
 
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015
Data Science in 2016: Moving up by Paco Nathan at Big Data Spain 2015
 
Lecture_1_Intro_toDS&AI.pptx
Lecture_1_Intro_toDS&AI.pptxLecture_1_Intro_toDS&AI.pptx
Lecture_1_Intro_toDS&AI.pptx
 
One View of Data Science
One View of Data ScienceOne View of Data Science
One View of Data Science
 
LiDIA: An integration architecture to query Linked Open Data from multiple da...
LiDIA: An integration architecture to query Linked Open Data from multiple da...LiDIA: An integration architecture to query Linked Open Data from multiple da...
LiDIA: An integration architecture to query Linked Open Data from multiple da...
 
Data driven innovation for education
Data driven innovation for education Data driven innovation for education
Data driven innovation for education
 
Data Science
Data ScienceData Science
Data Science
 
Data science for everyone
Data science for everyoneData science for everyone
Data science for everyone
 

Más de Neo4j

Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...Neo4j
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansQIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansNeo4j
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityNeo4j
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphNeo4j
 
Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Neo4j
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfNeo4j
 
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...Neo4j
 
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosBBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosNeo4j
 
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Neo4j
 
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jGraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jNeo4j
 
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j
 
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfRabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j
 
Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Neo4j
 
IA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeIA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeNeo4j
 
Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j
 
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j
 
Enabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsEnabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsNeo4j
 
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j
 
Neo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j
 

Más de Neo4j (20)

Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and BioinformaticiansQIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
QIAGEN: Biomedical Knowledge Graphs for Data Scientists and Bioinformaticians
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered Sustainability
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
 
Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024Build your next Gen AI Breakthrough - April 2024
Build your next Gen AI Breakthrough - April 2024
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdf
 
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
ISDEFE - GraphSummit Madrid - ARETA: Aviation Real-Time Emissions Token Accre...
 
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafosBBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
BBVA - GraphSummit Madrid - Caso de éxito en BBVA: Optimizando con grafos
 
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
Graph Everywhere - Josep Taruella - Por qué Graph Data Science en tus modelos...
 
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4jGraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
GraphSummit Madrid - Product Vision and Roadmap - Luis Salvador Neo4j
 
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdfNeo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
Neo4j_Exploring the Impact of Graph Technology on Financial Services.pdf
 
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdfRabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
Rabobank_Exploring the Impact of Graph Technology on Financial Services.pdf
 
Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!Webinar - IA generativa e grafi Neo4j: RAG time!
Webinar - IA generativa e grafi Neo4j: RAG time!
 
IA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG timeIA Generativa y Grafos de Neo4j: RAG time
IA Generativa y Grafos de Neo4j: RAG time
 
Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)Neo4j: Data Engineering for RAG (retrieval augmented generation)
Neo4j: Data Engineering for RAG (retrieval augmented generation)
 
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdfNeo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
Neo4j Graph Summit 2024 Workshop - EMEA - Breda_and_Munchen.pdf
 
Enabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge GraphsEnabling GenAI Breakthroughs with Knowledge Graphs
Enabling GenAI Breakthroughs with Knowledge Graphs
 
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdfNeo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
Neo4j_Anurag Tandon_Product Vision and Roadmap.Benelux.pptx.pdf
 
Neo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with GraphNeo4j Jesus Barrasa The Art of the Possible with Graph
Neo4j Jesus Barrasa The Art of the Possible with Graph
 

Último

Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...MOHANI PANDEY
 
Call On 6297143586 Viman Nagar Call Girls In All Pune 24/7 Provide Call With...
Call On 6297143586  Viman Nagar Call Girls In All Pune 24/7 Provide Call With...Call On 6297143586  Viman Nagar Call Girls In All Pune 24/7 Provide Call With...
Call On 6297143586 Viman Nagar Call Girls In All Pune 24/7 Provide Call With...tanu pandey
 
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...Artificial Intelligence in Philippine Local Governance: Challenges and Opport...
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...CedZabala
 
Global debate on climate change and occupational safety and health.
Global debate on climate change and occupational safety and health.Global debate on climate change and occupational safety and health.
Global debate on climate change and occupational safety and health.Christina Parmionova
 
EDUROOT SME_ Performance upto March-2024.pptx
EDUROOT SME_ Performance upto March-2024.pptxEDUROOT SME_ Performance upto March-2024.pptx
EDUROOT SME_ Performance upto March-2024.pptxaaryamanorathofficia
 
2024: The FAR, Federal Acquisition Regulations - Part 29
2024: The FAR, Federal Acquisition Regulations - Part 292024: The FAR, Federal Acquisition Regulations - Part 29
2024: The FAR, Federal Acquisition Regulations - Part 29JSchaus & Associates
 
2024 Zoom Reinstein Legacy Asbestos Webinar
2024 Zoom Reinstein Legacy Asbestos Webinar2024 Zoom Reinstein Legacy Asbestos Webinar
2024 Zoom Reinstein Legacy Asbestos WebinarLinda Reinstein
 
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...MOHANI PANDEY
 
Item # 4 - 231 Encino Ave (Significance Only).pdf
Item # 4 - 231 Encino Ave (Significance Only).pdfItem # 4 - 231 Encino Ave (Significance Only).pdf
Item # 4 - 231 Encino Ave (Significance Only).pdfahcitycouncil
 
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'Israël
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'IsraëlAntisemitism Awareness Act: pénaliser la critique de l'Etat d'Israël
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'IsraëlEdouardHusson
 
PPT Item # 4 - 231 Encino Ave (Significance Only)
PPT Item # 4 - 231 Encino Ave (Significance Only)PPT Item # 4 - 231 Encino Ave (Significance Only)
PPT Item # 4 - 231 Encino Ave (Significance Only)ahcitycouncil
 
Akurdi ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...
Akurdi ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...Akurdi ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...
Akurdi ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...tanu pandey
 
Expressive clarity oral presentation.pptx
Expressive clarity oral presentation.pptxExpressive clarity oral presentation.pptx
Expressive clarity oral presentation.pptxtsionhagos36
 
Climate change and safety and health at work
Climate change and safety and health at workClimate change and safety and health at work
Climate change and safety and health at workChristina Parmionova
 
Climate change and occupational safety and health.
Climate change and occupational safety and health.Climate change and occupational safety and health.
Climate change and occupational safety and health.Christina Parmionova
 
Call On 6297143586 Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...
Call On 6297143586  Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...Call On 6297143586  Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...
Call On 6297143586 Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...tanu pandey
 
Night 7k to 12k Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...
Night 7k to 12k  Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...Night 7k to 12k  Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...
Night 7k to 12k Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...aartirawatdelhi
 
Zechariah Boodey Farmstead Collaborative presentation - Humble Beginnings
Zechariah Boodey Farmstead Collaborative presentation -  Humble BeginningsZechariah Boodey Farmstead Collaborative presentation -  Humble Beginnings
Zechariah Boodey Farmstead Collaborative presentation - Humble Beginningsinfo695895
 
Booking open Available Pune Call Girls Shukrawar Peth 6297143586 Call Hot In...
Booking open Available Pune Call Girls Shukrawar Peth  6297143586 Call Hot In...Booking open Available Pune Call Girls Shukrawar Peth  6297143586 Call Hot In...
Booking open Available Pune Call Girls Shukrawar Peth 6297143586 Call Hot In...tanu pandey
 

Último (20)

Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Budhwar Peth Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
 
Call On 6297143586 Viman Nagar Call Girls In All Pune 24/7 Provide Call With...
Call On 6297143586  Viman Nagar Call Girls In All Pune 24/7 Provide Call With...Call On 6297143586  Viman Nagar Call Girls In All Pune 24/7 Provide Call With...
Call On 6297143586 Viman Nagar Call Girls In All Pune 24/7 Provide Call With...
 
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...Artificial Intelligence in Philippine Local Governance: Challenges and Opport...
Artificial Intelligence in Philippine Local Governance: Challenges and Opport...
 
Global debate on climate change and occupational safety and health.
Global debate on climate change and occupational safety and health.Global debate on climate change and occupational safety and health.
Global debate on climate change and occupational safety and health.
 
EDUROOT SME_ Performance upto March-2024.pptx
EDUROOT SME_ Performance upto March-2024.pptxEDUROOT SME_ Performance upto March-2024.pptx
EDUROOT SME_ Performance upto March-2024.pptx
 
2024: The FAR, Federal Acquisition Regulations - Part 29
2024: The FAR, Federal Acquisition Regulations - Part 292024: The FAR, Federal Acquisition Regulations - Part 29
2024: The FAR, Federal Acquisition Regulations - Part 29
 
2024 Zoom Reinstein Legacy Asbestos Webinar
2024 Zoom Reinstein Legacy Asbestos Webinar2024 Zoom Reinstein Legacy Asbestos Webinar
2024 Zoom Reinstein Legacy Asbestos Webinar
 
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
Get Premium Balaji Nagar Call Girls (8005736733) 24x7 Rate 15999 with A/c Roo...
 
Item # 4 - 231 Encino Ave (Significance Only).pdf
Item # 4 - 231 Encino Ave (Significance Only).pdfItem # 4 - 231 Encino Ave (Significance Only).pdf
Item # 4 - 231 Encino Ave (Significance Only).pdf
 
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'Israël
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'IsraëlAntisemitism Awareness Act: pénaliser la critique de l'Etat d'Israël
Antisemitism Awareness Act: pénaliser la critique de l'Etat d'Israël
 
PPT Item # 4 - 231 Encino Ave (Significance Only)
PPT Item # 4 - 231 Encino Ave (Significance Only)PPT Item # 4 - 231 Encino Ave (Significance Only)
PPT Item # 4 - 231 Encino Ave (Significance Only)
 
Akurdi ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...
Akurdi ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...Akurdi ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...
Akurdi ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...
 
Expressive clarity oral presentation.pptx
Expressive clarity oral presentation.pptxExpressive clarity oral presentation.pptx
Expressive clarity oral presentation.pptx
 
Climate change and safety and health at work
Climate change and safety and health at workClimate change and safety and health at work
Climate change and safety and health at work
 
Rohini Sector 37 Call Girls Delhi 9999965857 @Sabina Saikh No Advance
Rohini Sector 37 Call Girls Delhi 9999965857 @Sabina Saikh No AdvanceRohini Sector 37 Call Girls Delhi 9999965857 @Sabina Saikh No Advance
Rohini Sector 37 Call Girls Delhi 9999965857 @Sabina Saikh No Advance
 
Climate change and occupational safety and health.
Climate change and occupational safety and health.Climate change and occupational safety and health.
Climate change and occupational safety and health.
 
Call On 6297143586 Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...
Call On 6297143586  Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...Call On 6297143586  Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...
Call On 6297143586 Yerwada Call Girls In All Pune 24/7 Provide Call With Bes...
 
Night 7k to 12k Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...
Night 7k to 12k  Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...Night 7k to 12k  Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...
Night 7k to 12k Call Girls Service In Navi Mumbai 👉 BOOK NOW 9833363713 👈 ♀️...
 
Zechariah Boodey Farmstead Collaborative presentation - Humble Beginnings
Zechariah Boodey Farmstead Collaborative presentation -  Humble BeginningsZechariah Boodey Farmstead Collaborative presentation -  Humble Beginnings
Zechariah Boodey Farmstead Collaborative presentation - Humble Beginnings
 
Booking open Available Pune Call Girls Shukrawar Peth 6297143586 Call Hot In...
Booking open Available Pune Call Girls Shukrawar Peth  6297143586 Call Hot In...Booking open Available Pune Call Girls Shukrawar Peth  6297143586 Call Hot In...
Booking open Available Pune Call Girls Shukrawar Peth 6297143586 Call Hot In...
 

Knowledge Architecture: Graphing Your Knowledge

  • 1. © 2015 IHS. ALL RIGHTS RESERVED. KNOWLEDGE ARCHITECTURE: GRAPHING YOUR KNOWLEDGE Combining Strategy, Data Science and Informatics to Transform Data to Actionable Knowledge Government Graph Day February 28, 2017 David Meza Chief Knowledge Architect NASA Johnson Space Center
  • 3. “The most important contribution management needs to make in the 21st Century is to increase the productivity of knowledge work and the knowledge worker.” PETER F. DRUCKER, 1999
  • 4. 30%of total R&D spend is wasted duplicating research and work previously done. Source: National Board of Patents and Registration (PRH), WIPO, IFA 54%of decisions are made with incomplete, inconsistent and inadequate information Source: InfoCentric Research 46% Workers can’t find the information they need almost half the time. Source: IDC Challenges
  • 5. To convert data to knowledge a convergence of Knowledge Management, Informatics and Data Science is necessary. 5 Knowledge Management Data ScienceInformatics
  • 6. Knowledge Architecture • The people, processes, and technology of designing, implementing, and applying the intellectual infrastructure of organizations. • What is an intellectual infrastructure? • The set of activities to create, capture, organize, analyze, visualize, present, and utilize the information part of the information age.. • Information + Contexts = Knowledge • Knowledge Management + Informatics + Data Science = Knowledge Architecture • KM without Informatics is empty (Strategy Only) • Informatics without KM is blind (IT based KM) • Data Science transforms your data to knowledge 6
  • 7. “We have an opportunity for everyone in the world to have access to all the world’s information. This has never before been possible. Why is ubiquitous information so profound? It is a tremendous equalizer. Information is power.” ERIC SCHMIDT (FORMER CEO OF GOOGLE)
  • 8.
  • 9. There was a inquisitive engineer…
  • 10. LESSON LEARNED DATABASE 10 2031 lessons submitted across NASA. Filter by date and Center only. Useful information stored in database.
  • 13. TOPIC MODELING 13 Topic models are based upon the idea that documents are mixtures of topics, where a topic is a probability distribution over words. LDA Model from Blei (2011) David Blei homepage - http://www.cs.columbia.edu/~blei/topicmodeling.htmlBlei, David M. 2011. “Introduction to Probabilistic Topic Models.” Communications of the ACM.
  • 14. CORRELATION BY CATEGORY 14 To find the per-document probabilities we extract theta from the fitted model’s topic posteriors
  • 15. TOPIC TRENDS 15 Using mean of theta by years to trend topics
  • 17. GRAPH MODEL OF LESSON LEARNED DATABASE 17 http://davidmeza1.github.io/2015/07/16/Graphing-a-lesson-learned-database.html
  • 18. GRAPH MODEL OF LESSON LEARNED DATABASE 18
  • 19. GRAPH MODEL OF LESSON LEARNED DATABASE 19
  • 21.
  • 22.
  • 23.
  • 24.
  • 25.
  • 26. 26 WHAT COULD YOU ACCOMPLISH IF YOU COULD: • Empower faster and more informed decision-making • Leverage lessons of the past to minimize waste, rework, re-invention and redundancy • Reduce the learning curve for new employees • Enhance and extend existing content and document management systems
  • 27. Contact Information David Meza – david.meza-1@nasa.gov Twitter - @davidmeza1 Linkedin - https://www.linkedin.com/pub/david-meza/16/543/50b Github – davidmeza1 Blog davidmeza1.github.io 27
  • 28. Contents © 2015 IHS. ALL RIGHTS RESERVED. 28 Report Name / Month 2015 QUESTIONS?

Notas del editor

  1. IMAGE: Expedition 46 Soyuz Approaches Space Station for Docking Russian cosmonaut Yuri Malenchenko manually docked the Soyuz TMA-19M spacecraft on Dec. 15, 2015 to the International Space Station's Rassvet module after an initial automated attempt was aborted. Flight Engineer Tim Kopra of NASA and Flight Engineer Tim Peake of ESA flanked Malenchenko as he brought the Soyuz to the Rassvet port.
  2. In your time in engineering – what’s changed? Pace/complexity. Fundamentally, engineering is about problem solving. It hasn’t changed in 5-6 decades, what’s changed are the tools… but they don’t meet the needs of engineers,
  3. Peter Drucker made this statement in 1999, it is even more important today for organizations to increase knowledge workers productivity. Why? Data creation has increased significantly since 1999. In 2012, Gartner projected data to increase by 800% with 80% being unstructured. Combine the speed by which we can access information, the need to make quicker decisions to stay competitive in this market place and the time it takes to find information in the Enterprise, and we have an environment where knowledge workers are spending more time sifting through information than extracting and using that knowledge. 46% Workers can’t find the information they need almost half the time. (IDC) 30% of total R&D spend is wasted duplicating research and work previously done. Source: National Board of Patents and Registration (PRH), WIPO, IFA 54% of decisions are made with incomplete, inconsistent and inadequate information (InfoCentric Research)
  4. Here, Imagine this is all the information at your finger tips. How powerful are you if 46% of workers cannot find the information they need. Can you find the Earth? Or maybe we turn left at Alpha Centauri instead of right because we have incomplete information and end up Lost In Space. To help with our problem, let us apply some Knowledge Architecture First from Knowledge Management we apply a taxonomy and ontology to our information. Second through Data Science, we run analysis, maybe clustering and classification using our ontology Third, Information Architecture: Data management, meta data, well designed interactive UI Lead to Repository specific search In 2012 Gartner reported there will be an 800% increase in data by 2018 and 90% will be unstructured.
  5. The role of the Chief Data Officer – CIO is responsible for the pipes the data runs through, CDO is responsible for the data running through the pipes. Combination of Knowledge Management, Data Science and Information Architecture Information Architecture– Understanding your data, users and creation processes Analytics – Using data science techniques to extract knowledge from implicit data Knowledge Management– Utilizes the inputs from DM and Analytics to provide the tools and process to display the end results in a manner conducive to the user
  6. Knowledge Architecture is the application of informatics to knowledge management. That is, using the skills for defining and designing information spaces to establish an environment conducive to managing knowledge. Informatics is  the study and practice of creating, storing, finding, manipulating and sharing information. Informatics was designed to be conceptual and practical, academic and professional, and focused on the human and humanistic dimensions of the design and use of information systems   Borrowing a metaphor from physics, you can think of the difference between information architecture and knowledge architecture in terms of energy. Information architecture tends to focus on designing spaces for existing or predefined information. What might be called kinetic information. For example, one branch of information architecture focuses on findability, with little or no concern about how the content itself comes into being.   Knowledge architecture, on the other hand, deals with potential information. So, rather than determining the best way to use existing content, the knowledge architect is designing "spaces" that encourage knowledge to be created, captured, and shared. In this respect, the actual content doesn't matter as much as the life cycle -- how and when it gets created and how best to get it to the right people quickly. For example, collaboration strategies may focus on the structure and set up of team spaces or discussion forums -- how they get created, how they operate, how people find them and vice versa. But the actual tasks and topics discussed in those spaces are up to the teams that use them and may not be determined to long after the strategy is completed and in place.   That is not to say that knowledge architects don't have plenty of traditional information architecture/content management responsibilities as well -- such as taxonomies, web site structures, search interfaces, etc. But what sets them apart from other information architects is their focus on the design of spaces and the processes that support knowledge being exchanged, rather than on the knowledge itself.
  7. The database was not being used on a regular basis to extract lesson and when it was users complained on how difficult it was to find appropriate lessons. They had to read through too many lessons, wasting precious project time. Users could only filter by date or Center, even though the lesson contained other useful information, such as, category, safety related, program or project phase, directorate etc. Fortunately the data set contained substantial metadata, providing opportunities to enhance the exploration of the corpus through the generated topics models. Late we will demonstrate how to find documents quickly and their association to the metadata.
  8. Topic modeling provides an algorithmic solution to managing, organizing and annotating large archival text. The annotations aid you in tasks of information retrieval, classification and corpus exploration Topic models provide a simple way to analyze large volumes of unlabeled text. A "topic" consists of a cluster of words that frequently occur together. Using contextual clues, topic models can connect words with similar meanings and distinguish between uses of words with multiple meanings. For a general introduction to topic modeling, see for example Probabilistic Topic Models by Steyvers and Griffiths (2007). In machine learning and natural language processing topic models are generative models which provide a probabilistic framework for the term frequency occurrences in documents in a given corpus.
  9. I drew a rough outline showing the various connections of the proposed nodes in the graph. It is fairly simple, however I found it helps keep me focused on the model. http://davidmeza1.github.io/2015/07/16/Graphing-a-lesson-learned-database.html
  10. I drew a rough outline showing the various connections of the proposed nodes in the graph. It is fairly simple, however I found it helps keep me focused on the model. http://davidmeza1.github.io/2015/07/16/Graphing-a-lesson-learned-database.html
  11. I drew a rough outline showing the various connections of the proposed nodes in the graph. It is fairly simple, however I found it helps keep me focused on the model. http://davidmeza1.github.io/2015/07/16/Graphing-a-lesson-learned-database.html
  12. Now I have all the data in my graph database, yet I still need to make it easier for my end users to search and connect lessons based on their criteria. In Learning Neo4j”, several visualization options were mentioned. I evaluated several of the applications and for this demonstration I settled on Linkurious, a web based interface for users to search and visualize graph data. Linkurious was designed to connect to a neo4j database and requires the neo4j database to be running before you start it. Upon opening the application you are presented with this dashboard.
  13. I can begin exploring the topic and uncover relationships. Since the topic is related to four other nodes, I am given an option to select the nodes I want to display on the screen. Selecting the Lesson node, I am able to display all of the lessons contained in this topic. You can make adjustments to the visualization to add color and size. In this case, each node type is a different color and the node size is determined by the year the lesson was written. The newer the lesson the larger the node. Properties for each node are displayed to the left. In the image below, information on the highlighted node can be seen and if the user wants to visit the site where the lesson is stored, they can click on the url in the properties.
  14. Now I ask you, Is information power or is Knowledge power.
  15. NASA Astronaut Tim Kopra on Dec. 21 Spacewalk Expedition 46 Flight Engineer Tim Kopra on a Dec. 21, 2015 spacewalk, in which Kopra and Expedition 46 Commander Scott Kelly successfully moved the International Space Station's mobile transporter rail car ahead of Wednesday's docking of a Russian cargo supply spacecraft.