SlideShare ist ein Scribd-Unternehmen logo
1 von 1
Ease & Speed of Integration - Coding
Raw Affinitomics: 4 or 5 lines
{ "archetype_id":”thing", "archetype_data”:
{"descriptors":[”thing"],
"draws”:[“this”, “that”, “the other”],
"distances”: [them ones] },}
Raw Affinitomics: 4 or 5 lines
{ "archetype_id":”thing", "archetype_data”:
{"descriptors":[”thing"],
"draws”:[“this”, “that”, “the other”],
"distances”: [them ones] },}
Processed Archetype: 1 line
afid=ab4h5b29v94md9t45m3s9082h45r
Processed Archetype: 1 line
afid=ab4h5b29v94md9t45m3s9082h45r
Micro-data, RDFa: 16 to 40+ lines
<…itemscope itemtype=http://schema.org/Product>
<… itemprop="name">Kenmore White 17" Microwave</span>
<… itemprop="aggregateRating” itemscope itemtype=http://schema.org/…>
Rated <span itemprop="ratingValue">3.5</span>/5 based on <span
itemprop="reviewCount">11</span> customer reviews</div>
<…itemprop="offers" itemscope itemtype=http://schema.org/Offer>
<…itemprop="priceCurrency" content="USD">$</span><span itemprop="price"
content="1000.00">1,000.00</span>
<link itemprop="availability" href="http://schema.org/InStock" />In stock
<…itemprop="description">0.7 cubic feet countertop microwave.
<…itemprop="review" itemscope itemtype=http://schema.org/Review>
<…itemprop="name">Not a happy camper</span> -
<…itemprop="author">Ellie</span>,
<…itemprop="datePublished" content="2011-04-01">April 1, 2011
<…itemprop="reviewRating" itemscope itemtype="http://schema.org/Rating">
<meta itemprop="worstRating" content = "1">
<…itemprop="ratingValue">1</span>/
<…itemprop="bestRating">5</span>stars</div>
<…itemprop="description">The lamp burned out and now I have to replace it.
<…itemprop="review" itemscope itemtype=http://schema.org/Review>
<…itemprop="name">Value purchase</span> -
<…itemprop="author">Lucas</span>,
<meta itemprop="datePublished" content="2011-03-25">March 25, 2011
<…itemprop="reviewRating" itemscope itemtype=http://schema.org/Rating>
<meta itemprop="worstRating" content = "1"/
<…itemprop="ratingValue">4</span>/
...
...
...
Micro-data, RDFa: 16 to 40+ lines
<…itemscope itemtype=http://schema.org/Product>
<… itemprop="name">Kenmore White 17" Microwave</span>
<… itemprop="aggregateRating” itemscope itemtype=http://schema.org/…>
Rated <span itemprop="ratingValue">3.5</span>/5 based on <span
itemprop="reviewCount">11</span> customer reviews</div>
<…itemprop="offers" itemscope itemtype=http://schema.org/Offer>
<…itemprop="priceCurrency" content="USD">$</span><span itemprop="price"
content="1000.00">1,000.00</span>
<link itemprop="availability" href="http://schema.org/InStock" />In stock
<…itemprop="description">0.7 cubic feet countertop microwave.
<…itemprop="review" itemscope itemtype=http://schema.org/Review>
<…itemprop="name">Not a happy camper</span> -
<…itemprop="author">Ellie</span>,
<…itemprop="datePublished" content="2011-04-01">April 1, 2011
<…itemprop="reviewRating" itemscope itemtype="http://schema.org/Rating">
<meta itemprop="worstRating" content = "1">
<…itemprop="ratingValue">1</span>/
<…itemprop="bestRating">5</span>stars</div>
<…itemprop="description">The lamp burned out and now I have to replace it.
<…itemprop="review" itemscope itemtype=http://schema.org/Review>
<…itemprop="name">Value purchase</span> -
<…itemprop="author">Lucas</span>,
<meta itemprop="datePublished" content="2011-03-25">March 25, 2011
<…itemprop="reviewRating" itemscope itemtype=http://schema.org/Rating>
<meta itemprop="worstRating" content = "1"/
<…itemprop="ratingValue">4</span>/
...
...
...

Weitere ähnliche Inhalte

Was ist angesagt?

Gerry McNicol Graph Databases
Gerry McNicol Graph DatabasesGerry McNicol Graph Databases
Gerry McNicol Graph DatabasesGerry McNicol
 
Graph Databases & OrientDB
Graph Databases & OrientDBGraph Databases & OrientDB
Graph Databases & OrientDBArpit Poladia
 
OrientDB & Node.js Overview - JS.Everywhere() KW
OrientDB & Node.js Overview - JS.Everywhere() KWOrientDB & Node.js Overview - JS.Everywhere() KW
OrientDB & Node.js Overview - JS.Everywhere() KWgmccarvell
 
Semantic Web Technologies in Health Care Analytics
Semantic Web Technologies in Health Care AnalyticsSemantic Web Technologies in Health Care Analytics
Semantic Web Technologies in Health Care AnalyticsRobert Piro
 
Graph databases & data integration v2
Graph databases & data integration v2Graph databases & data integration v2
Graph databases & data integration v2Dimitris Kontokostas
 
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj Talk
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj TalkSpark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj Talk
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj TalkZalando Technology
 
Challenges and applications of RDF shapes
Challenges and applications of RDF shapesChallenges and applications of RDF shapes
Challenges and applications of RDF shapesJose Emilio Labra Gayo
 
Validating RDF data: Challenges and perspectives
Validating RDF data: Challenges and perspectivesValidating RDF data: Challenges and perspectives
Validating RDF data: Challenges and perspectivesJose Emilio Labra Gayo
 
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ National Institute of Informatics (NII)
 
Evolution of the Graph Schema
Evolution of the Graph SchemaEvolution of the Graph Schema
Evolution of the Graph SchemaJoshua Shinavier
 
GramsciProject - technical presentation
GramsciProject - technical presentationGramsciProject - technical presentation
GramsciProject - technical presentationChristian Morbidoni
 
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)Kai Chan
 
Two graph data models : RDF and Property Graphs
Two graph data models : RDF and Property GraphsTwo graph data models : RDF and Property Graphs
Two graph data models : RDF and Property Graphsandyseaborne
 

Was ist angesagt? (19)

Gerry McNicol Graph Databases
Gerry McNicol Graph DatabasesGerry McNicol Graph Databases
Gerry McNicol Graph Databases
 
Python redis talk
Python redis talkPython redis talk
Python redis talk
 
Graph Databases & OrientDB
Graph Databases & OrientDBGraph Databases & OrientDB
Graph Databases & OrientDB
 
OrientDB & Node.js Overview - JS.Everywhere() KW
OrientDB & Node.js Overview - JS.Everywhere() KWOrientDB & Node.js Overview - JS.Everywhere() KW
OrientDB & Node.js Overview - JS.Everywhere() KW
 
Semantic Web Technologies in Health Care Analytics
Semantic Web Technologies in Health Care AnalyticsSemantic Web Technologies in Health Care Analytics
Semantic Web Technologies in Health Care Analytics
 
SPIN in Five Slides
SPIN in Five SlidesSPIN in Five Slides
SPIN in Five Slides
 
Introduction to SPARQL
Introduction to SPARQLIntroduction to SPARQL
Introduction to SPARQL
 
Graph databases & data integration v2
Graph databases & data integration v2Graph databases & data integration v2
Graph databases & data integration v2
 
ShEx by Example
ShEx by ExampleShEx by Example
ShEx by Example
 
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj Talk
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj TalkSpark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj Talk
Spark + Clojure for Topic Discovery - Zalando Tech Clojure/Conj Talk
 
Challenges and applications of RDF shapes
Challenges and applications of RDF shapesChallenges and applications of RDF shapes
Challenges and applications of RDF shapes
 
Validating RDF data: Challenges and perspectives
Validating RDF data: Challenges and perspectivesValidating RDF data: Challenges and perspectives
Validating RDF data: Challenges and perspectives
 
4 sw architectures and sparql
4 sw architectures and sparql4 sw architectures and sparql
4 sw architectures and sparql
 
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ
NII研究100連発 ウェブと人工知能の融合 -人間の創造性を刺激するコンピュータ
 
Evolution of the Graph Schema
Evolution of the Graph SchemaEvolution of the Graph Schema
Evolution of the Graph Schema
 
GramsciProject - technical presentation
GramsciProject - technical presentationGramsciProject - technical presentation
GramsciProject - technical presentation
 
RDF Data Model
RDF Data ModelRDF Data Model
RDF Data Model
 
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)
Search Engine-Building with Lucene and Solr, Part 2 (SoCal Code Camp LA 2013)
 
Two graph data models : RDF and Property Graphs
Two graph data models : RDF and Property GraphsTwo graph data models : RDF and Property Graphs
Two graph data models : RDF and Property Graphs
 

Ähnlich wie Ease and speed of implementation

Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017
Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017
Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017Codemotion
 
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...RootedCON
 
Data science at the command line
Data science at the command lineData science at the command line
Data science at the command lineSharat Chikkerur
 
Elasticsearch in 15 Minutes
Elasticsearch in 15 MinutesElasticsearch in 15 Minutes
Elasticsearch in 15 MinutesKarel Minarik
 
2016-02 Graphs - PG+RDF
2016-02 Graphs - PG+RDF2016-02 Graphs - PG+RDF
2016-02 Graphs - PG+RDFandyseaborne
 
Happy Go Programming
Happy Go ProgrammingHappy Go Programming
Happy Go ProgrammingLin Yo-An
 
How ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps lifeHow ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps life琛琳 饶
 
Alpine academy apache spark series #1 introduction to cluster computing wit...
Alpine academy apache spark series #1   introduction to cluster computing wit...Alpine academy apache spark series #1   introduction to cluster computing wit...
Alpine academy apache spark series #1 introduction to cluster computing wit...Holden Karau
 
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)Péter Király
 
Spark After Dark: Real time Advanced Analytics and Machine Learning with Spark
Spark After Dark:  Real time Advanced Analytics and Machine Learning with SparkSpark After Dark:  Real time Advanced Analytics and Machine Learning with Spark
Spark After Dark: Real time Advanced Analytics and Machine Learning with SparkChris Fregly
 
Peggy elasticsearch應用
Peggy elasticsearch應用Peggy elasticsearch應用
Peggy elasticsearch應用LearningTech
 
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...Algorithm and Programming (Introduction of dev pascal, data type, value, and ...
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...Adam Mukharil Bachtiar
 
How to use Parquet as a basis for ETL and analytics
How to use Parquet as a basis for ETL and analyticsHow to use Parquet as a basis for ETL and analytics
How to use Parquet as a basis for ETL and analyticsJulien Le Dem
 
CoffeeScript Design Patterns
CoffeeScript Design PatternsCoffeeScript Design Patterns
CoffeeScript Design PatternsTrevorBurnham
 
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15MLconf
 
A really really fast introduction to PySpark - lightning fast cluster computi...
A really really fast introduction to PySpark - lightning fast cluster computi...A really really fast introduction to PySpark - lightning fast cluster computi...
A really really fast introduction to PySpark - lightning fast cluster computi...Holden Karau
 
Automatic tool for static analysis
Automatic tool for static analysisAutomatic tool for static analysis
Automatic tool for static analysisChong-Kuan Chen
 
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...andimou
 

Ähnlich wie Ease and speed of implementation (20)

Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017
Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017
Full-Text Search Explained - Philipp Krenn - Codemotion Rome 2017
 
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...
José Miguel Esparza - Obfuscation and (non-)detection of malicious PDF files ...
 
Data science at the command line
Data science at the command lineData science at the command line
Data science at the command line
 
Elasticsearch in 15 Minutes
Elasticsearch in 15 MinutesElasticsearch in 15 Minutes
Elasticsearch in 15 Minutes
 
2016-02 Graphs - PG+RDF
2016-02 Graphs - PG+RDF2016-02 Graphs - PG+RDF
2016-02 Graphs - PG+RDF
 
Happy Go Programming
Happy Go ProgrammingHappy Go Programming
Happy Go Programming
 
How ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps lifeHow ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps life
 
Alpine academy apache spark series #1 introduction to cluster computing wit...
Alpine academy apache spark series #1   introduction to cluster computing wit...Alpine academy apache spark series #1   introduction to cluster computing wit...
Alpine academy apache spark series #1 introduction to cluster computing wit...
 
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)
Validating JSON, XML and CSV data with SHACL-like constraints (DINI-KIM 2022)
 
Spark After Dark: Real time Advanced Analytics and Machine Learning with Spark
Spark After Dark:  Real time Advanced Analytics and Machine Learning with SparkSpark After Dark:  Real time Advanced Analytics and Machine Learning with Spark
Spark After Dark: Real time Advanced Analytics and Machine Learning with Spark
 
Peggy elasticsearch應用
Peggy elasticsearch應用Peggy elasticsearch應用
Peggy elasticsearch應用
 
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...Algorithm and Programming (Introduction of dev pascal, data type, value, and ...
Algorithm and Programming (Introduction of dev pascal, data type, value, and ...
 
How to use Parquet as a basis for ETL and analytics
How to use Parquet as a basis for ETL and analyticsHow to use Parquet as a basis for ETL and analytics
How to use Parquet as a basis for ETL and analytics
 
CoffeeScript Design Patterns
CoffeeScript Design PatternsCoffeeScript Design Patterns
CoffeeScript Design Patterns
 
Hadoop london
Hadoop londonHadoop london
Hadoop london
 
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15
Joseph Bradley, Software Engineer, Databricks Inc. at MLconf SEA - 5/01/15
 
A really really fast introduction to PySpark - lightning fast cluster computi...
A really really fast introduction to PySpark - lightning fast cluster computi...A really really fast introduction to PySpark - lightning fast cluster computi...
A really really fast introduction to PySpark - lightning fast cluster computi...
 
Automatic tool for static analysis
Automatic tool for static analysisAutomatic tool for static analysis
Automatic tool for static analysis
 
CouchDB-Lucene
CouchDB-LuceneCouchDB-Lucene
CouchDB-Lucene
 
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...
Machine-Interpretable Dataset and Service Descriptions for Heterogeneous Data...
 

Kürzlich hochgeladen

Encryption Recap: A Refresher on Key Concepts
Encryption Recap: A Refresher on Key ConceptsEncryption Recap: A Refresher on Key Concepts
Encryption Recap: A Refresher on Key Conceptsthomashtkim
 
Weeding your micro service landscape.pdf
Weeding your micro service landscape.pdfWeeding your micro service landscape.pdf
Weeding your micro service landscape.pdftimtebeek1
 
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...naitiksharma1124
 
Effective Strategies for Wix's Scaling challenges - GeeCon
Effective Strategies for Wix's Scaling challenges - GeeConEffective Strategies for Wix's Scaling challenges - GeeCon
Effective Strategies for Wix's Scaling challenges - GeeConNatan Silnitsky
 
Community is Just as Important as Code by Andrea Goulet
Community is Just as Important as Code by Andrea GouletCommunity is Just as Important as Code by Andrea Goulet
Community is Just as Important as Code by Andrea GouletAndrea Goulet
 
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024SimonedeGijt
 
Lessons Learned from Building a Serverless Notifications System.pdf
Lessons Learned from Building a Serverless Notifications System.pdfLessons Learned from Building a Serverless Notifications System.pdf
Lessons Learned from Building a Serverless Notifications System.pdfSrushith Repakula
 
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...Neo4j
 
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdf
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdfThe Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdf
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdfkalichargn70th171
 
OpenChain Webinar: AboutCode and Beyond - End-to-End SCA
OpenChain Webinar: AboutCode and Beyond - End-to-End SCAOpenChain Webinar: AboutCode and Beyond - End-to-End SCA
OpenChain Webinar: AboutCode and Beyond - End-to-End SCAShane Coughlan
 
Software Engineering - Introduction + Process Models + Requirements Engineering
Software Engineering - Introduction + Process Models + Requirements EngineeringSoftware Engineering - Introduction + Process Models + Requirements Engineering
Software Engineering - Introduction + Process Models + Requirements EngineeringPrakhyath Rai
 
Evolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI EraEvolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI Eraconfluent
 
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-Cloud
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-CloudAlluxio Monthly Webinar | Simplify Data Access for AI in Multi-Cloud
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-CloudAlluxio, Inc.
 
Transformer Neural Network Use Cases with Links
Transformer Neural Network Use Cases with LinksTransformer Neural Network Use Cases with Links
Transformer Neural Network Use Cases with LinksJinanKordab
 
^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto
^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto
^Clinic ^%[+27788225528*Abortion Pills For Sale In sowetokasambamuno
 
A Deep Dive into Secure Product Development Frameworks.pdf
A Deep Dive into Secure Product Development Frameworks.pdfA Deep Dive into Secure Product Development Frameworks.pdf
A Deep Dive into Secure Product Development Frameworks.pdfICS
 
From Theory to Practice: Utilizing SpiraPlan's REST API
From Theory to Practice: Utilizing SpiraPlan's REST APIFrom Theory to Practice: Utilizing SpiraPlan's REST API
From Theory to Practice: Utilizing SpiraPlan's REST APIInflectra
 
BusinessGPT - Security and Governance for Generative AI
BusinessGPT  - Security and Governance for Generative AIBusinessGPT  - Security and Governance for Generative AI
BusinessGPT - Security and Governance for Generative AIAGATSoftware
 

Kürzlich hochgeladen (20)

Encryption Recap: A Refresher on Key Concepts
Encryption Recap: A Refresher on Key ConceptsEncryption Recap: A Refresher on Key Concepts
Encryption Recap: A Refresher on Key Concepts
 
Weeding your micro service landscape.pdf
Weeding your micro service landscape.pdfWeeding your micro service landscape.pdf
Weeding your micro service landscape.pdf
 
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...
COMPUTER AND ITS COMPONENTS PPT.by naitik sharma Class 9th A mittal internati...
 
Effective Strategies for Wix's Scaling challenges - GeeCon
Effective Strategies for Wix's Scaling challenges - GeeConEffective Strategies for Wix's Scaling challenges - GeeCon
Effective Strategies for Wix's Scaling challenges - GeeCon
 
Abortion Clinic In Johannesburg ](+27832195400*)[ 🏥 Safe Abortion Pills in Jo...
Abortion Clinic In Johannesburg ](+27832195400*)[ 🏥 Safe Abortion Pills in Jo...Abortion Clinic In Johannesburg ](+27832195400*)[ 🏥 Safe Abortion Pills in Jo...
Abortion Clinic In Johannesburg ](+27832195400*)[ 🏥 Safe Abortion Pills in Jo...
 
Community is Just as Important as Code by Andrea Goulet
Community is Just as Important as Code by Andrea GouletCommunity is Just as Important as Code by Andrea Goulet
Community is Just as Important as Code by Andrea Goulet
 
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024
Wired_2.0_CREATE YOUR ULTIMATE LEARNING ENVIRONMENT_JCON_16052024
 
Lessons Learned from Building a Serverless Notifications System.pdf
Lessons Learned from Building a Serverless Notifications System.pdfLessons Learned from Building a Serverless Notifications System.pdf
Lessons Learned from Building a Serverless Notifications System.pdf
 
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...
CERVED e Neo4j su una nuvola, migrazione ed evoluzione di un grafo mission cr...
 
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdf
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdfThe Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdf
The Evolution of Web App Testing_ An Ultimate Guide to Future Trends.pdf
 
OpenChain Webinar: AboutCode and Beyond - End-to-End SCA
OpenChain Webinar: AboutCode and Beyond - End-to-End SCAOpenChain Webinar: AboutCode and Beyond - End-to-End SCA
OpenChain Webinar: AboutCode and Beyond - End-to-End SCA
 
Software Engineering - Introduction + Process Models + Requirements Engineering
Software Engineering - Introduction + Process Models + Requirements EngineeringSoftware Engineering - Introduction + Process Models + Requirements Engineering
Software Engineering - Introduction + Process Models + Requirements Engineering
 
Evolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI EraEvolving Data Governance for the Real-time Streaming and AI Era
Evolving Data Governance for the Real-time Streaming and AI Era
 
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-Cloud
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-CloudAlluxio Monthly Webinar | Simplify Data Access for AI in Multi-Cloud
Alluxio Monthly Webinar | Simplify Data Access for AI in Multi-Cloud
 
Transformer Neural Network Use Cases with Links
Transformer Neural Network Use Cases with LinksTransformer Neural Network Use Cases with Links
Transformer Neural Network Use Cases with Links
 
^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto
^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto
^Clinic ^%[+27788225528*Abortion Pills For Sale In soweto
 
A Deep Dive into Secure Product Development Frameworks.pdf
A Deep Dive into Secure Product Development Frameworks.pdfA Deep Dive into Secure Product Development Frameworks.pdf
A Deep Dive into Secure Product Development Frameworks.pdf
 
From Theory to Practice: Utilizing SpiraPlan's REST API
From Theory to Practice: Utilizing SpiraPlan's REST APIFrom Theory to Practice: Utilizing SpiraPlan's REST API
From Theory to Practice: Utilizing SpiraPlan's REST API
 
Abortion Clinic Pretoria ](+27832195400*)[ Abortion Clinic Near Me ● Abortion...
Abortion Clinic Pretoria ](+27832195400*)[ Abortion Clinic Near Me ● Abortion...Abortion Clinic Pretoria ](+27832195400*)[ Abortion Clinic Near Me ● Abortion...
Abortion Clinic Pretoria ](+27832195400*)[ Abortion Clinic Near Me ● Abortion...
 
BusinessGPT - Security and Governance for Generative AI
BusinessGPT  - Security and Governance for Generative AIBusinessGPT  - Security and Governance for Generative AI
BusinessGPT - Security and Governance for Generative AI
 

Ease and speed of implementation

  • 1. Ease & Speed of Integration - Coding Raw Affinitomics: 4 or 5 lines { "archetype_id":”thing", "archetype_data”: {"descriptors":[”thing"], "draws”:[“this”, “that”, “the other”], "distances”: [them ones] },} Raw Affinitomics: 4 or 5 lines { "archetype_id":”thing", "archetype_data”: {"descriptors":[”thing"], "draws”:[“this”, “that”, “the other”], "distances”: [them ones] },} Processed Archetype: 1 line afid=ab4h5b29v94md9t45m3s9082h45r Processed Archetype: 1 line afid=ab4h5b29v94md9t45m3s9082h45r Micro-data, RDFa: 16 to 40+ lines <…itemscope itemtype=http://schema.org/Product> <… itemprop="name">Kenmore White 17" Microwave</span> <… itemprop="aggregateRating” itemscope itemtype=http://schema.org/…> Rated <span itemprop="ratingValue">3.5</span>/5 based on <span itemprop="reviewCount">11</span> customer reviews</div> <…itemprop="offers" itemscope itemtype=http://schema.org/Offer> <…itemprop="priceCurrency" content="USD">$</span><span itemprop="price" content="1000.00">1,000.00</span> <link itemprop="availability" href="http://schema.org/InStock" />In stock <…itemprop="description">0.7 cubic feet countertop microwave. <…itemprop="review" itemscope itemtype=http://schema.org/Review> <…itemprop="name">Not a happy camper</span> - <…itemprop="author">Ellie</span>, <…itemprop="datePublished" content="2011-04-01">April 1, 2011 <…itemprop="reviewRating" itemscope itemtype="http://schema.org/Rating"> <meta itemprop="worstRating" content = "1"> <…itemprop="ratingValue">1</span>/ <…itemprop="bestRating">5</span>stars</div> <…itemprop="description">The lamp burned out and now I have to replace it. <…itemprop="review" itemscope itemtype=http://schema.org/Review> <…itemprop="name">Value purchase</span> - <…itemprop="author">Lucas</span>, <meta itemprop="datePublished" content="2011-03-25">March 25, 2011 <…itemprop="reviewRating" itemscope itemtype=http://schema.org/Rating> <meta itemprop="worstRating" content = "1"/ <…itemprop="ratingValue">4</span>/ ... ... ... Micro-data, RDFa: 16 to 40+ lines <…itemscope itemtype=http://schema.org/Product> <… itemprop="name">Kenmore White 17" Microwave</span> <… itemprop="aggregateRating” itemscope itemtype=http://schema.org/…> Rated <span itemprop="ratingValue">3.5</span>/5 based on <span itemprop="reviewCount">11</span> customer reviews</div> <…itemprop="offers" itemscope itemtype=http://schema.org/Offer> <…itemprop="priceCurrency" content="USD">$</span><span itemprop="price" content="1000.00">1,000.00</span> <link itemprop="availability" href="http://schema.org/InStock" />In stock <…itemprop="description">0.7 cubic feet countertop microwave. <…itemprop="review" itemscope itemtype=http://schema.org/Review> <…itemprop="name">Not a happy camper</span> - <…itemprop="author">Ellie</span>, <…itemprop="datePublished" content="2011-04-01">April 1, 2011 <…itemprop="reviewRating" itemscope itemtype="http://schema.org/Rating"> <meta itemprop="worstRating" content = "1"> <…itemprop="ratingValue">1</span>/ <…itemprop="bestRating">5</span>stars</div> <…itemprop="description">The lamp burned out and now I have to replace it. <…itemprop="review" itemscope itemtype=http://schema.org/Review> <…itemprop="name">Value purchase</span> - <…itemprop="author">Lucas</span>, <meta itemprop="datePublished" content="2011-03-25">March 25, 2011 <…itemprop="reviewRating" itemscope itemtype=http://schema.org/Rating> <meta itemprop="worstRating" content = "1"/ <…itemprop="ratingValue">4</span>/ ... ... ...