SlideShare a Scribd company logo
1 of 18
Download to read offline
Ontotext GraphDB Cloud	–
Enterprise	Ready	RDF	Database	
on	Demand
Live	Webinar	
July	2017
GraphDB Training:	Devops
↗Delivery:	end	of	September	(3	days	of	pre-
training	and	live	sessions)
↗Target	audience
↗ Developers	that	want	to	learn	semantic	technology
↗Administrators	 of	graph	and	semantic	databases
↗Technical	and	Information	architects	who	work	with	semantic	
technology
↗Syllabus
↗Product	editions	and	features
↗Administration	 &	Monitoring
↗GraphDB APIs	and	connections
↗SPARQL
↗Reasoning
↗Connectors
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
Ontotext Cognitive	Cloud
↗New	Cognitive	Cloud:	Secure	and	fully	
managed	service
↗ GraphDB Cloud
↗Text	Analytics	(vertical	&	dynamic)
↗Semantic	search	and	navigation
↗AI	driven	visual	and	predictive	analytics
↗Access	to	knowledge	 graphs	(integrated	and	on	demand)
↗Discontinue	S4
↗Stop	sign	up	next	week
↗Support	 for	two	months
↗Migration	plan	to	Ontotext Cognitive	Cloud
GraphDB Cloud	Database	as	a	Service	
↗Latest	GraphDB database	release
↗ Scales	with	your	data	needs	easily	and	on	demand
↗Single	click	provisioning
↗Available	in	the	cloud	24/7	(greater	than	99.0%)
↗Latest	GraphDB Workbench
↗Easy	monitoring	of	memory	and	CPU	load
↗Visual	analytics	over	semantic	graphs
↗SPARQL	syntax	highlighting,	autocompleting	and	result-set	
navigation
↗Automated	and	on-demand	backups
↗Access	GraphDB Cloud	using	industry	
standards
↗SPARQL	Endpoint	and	REST	APIs
↗SSL	secured	API	endpoints
↗OntoRefine for	easier	data	ingestion
GraphDB Cloud	Tiers	and	Pricing
↗Basic:	Evaluation	of	the	product	and	
prototypes.	
↗L1:	100k	triples;	1	repository
↗L2:	1	million	triples;	1	repository
↗Standard:	Small	production	where	
performance	is	not	critical.	
↗L1:	5	million	triples;	2	repositories
↗L2:	10	million	triples;	4	repositories
↗Enterprise:	Large	production	with	high	
traffic	and	predictable	performance.	
↗L1:	50 million	triples;	8 repositories
↗L2:	250 million	triples;	16 repositories
↗L1:	1 billion	triples;	16	repositories
↗L2:	10	billion	triples;	16	repositories
$9
$19
$69
$249
$499
$999
$1499
GraphDB Cloud	Help	and	Support
↗Basic
↗Online	documentation
↗Issue	tracking	(5	days	response	time)
↗Standard
↗Basic	+
↗Email	support	 (2	days	response	time)
↗Enterprise
↗Standard	+
↗Slack	channel	(24	hours	response	time)
↗Per	account	options	available	(L3	and	L4)
↗Custom
↗Per	account	SLA
GraphDB Cloud	Status	and	Roadmap
↗Status
↗Beta	version	with	early	access
↗Basic	and	Standard	functional
↗Automatic	and	manual	backups
↗Restore	from	5	backups
↗Clone	your	database	for	staging	and	production
↗Upgrade	your	database	to	higher	level
↗Roadmap
↗Feedback	from	community
↗Better	monitoring	 and	support
↗Better	synchronization	 of	Workbench	 and	Cloud	for	
Administration
↗Number	of	backups	depending	 on	the	Tier
↗Reserve	resources	for	Enterprise	Tier
↗Automatic	deployment	 of	Elastic	search	plug	in	for	Enterprise	
Tier
GraphDB
Free
GraphDB
Standard
GraphDB
Enterprise
GraphDB
Cloud
Basic
GraphDB
Cloud
Standard
GraphDB
Cloud
Enterprise
GraphDB
Cloud
Custom
RDF and SPARQL 1.1 support
RDFS, OWL2 RL and QL
reasoning
Efficient query execution
Workbench interface
Community support
CPU cores 2
connection
s
No limit No limit 4 virtual
shared
cores
4 virtual
shared
cores
2-8
virtual
reserved
cores
No limit
RAM No limit No limit No limit 1 GB 2.7–3.6
GB
5.5–31
GB
No limit
Disk space No limit No limit No limit 1 GB 2–4 GB 4–320
GB
No limit
Triples No limit No milit No limit 100k-1m 5m-10m 50m-10b No limit
Elasticsearch & SOLR Lucene Lucene Lucene Lucene Auto
GraphDB Portfolio
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
GraphDB Cloud	Architecture
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
↗Log	in	and	GraphDB provisioning
↗Create	repository
↗Load	data
↗Back	up	and	restore
↗Clone	and	Upgrade
↗Metrics	and	Resources	monitoring
↗Endpoint	and	Keys
↗Suspend	and	Delete
GraphDB Cloud	Features
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
Use	Case:	Distribution	of	the	top	50	
organisations by	revenue	across	the	top	50	
countries	by	GDP
•Import	data	for	countries	gross	domestic	
product	(Wikipedia	)
•Import	data	for	organisations and	their	
revenue	(Wikipedia)
•Interlink	both	datasets	using	knowledge	
from	GeoNames
•Explore	the	linked	resources
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
Outline
↗GraphDB	Cloud:	Vision	and	
Roadmap
↗GraphDB	Cloud:	Architecture,	
Workflow,	Tiers
↗Demo
↗GraphDB	Cloud:	Use	Case
↗Demo
↗Q&A
Start	Free	with	GraphDB Cloud	Today:	https://cloud.ontotext.com
Contact	us:	cloud-info@ontotext.com
Contact	Support:	graphdb-cloud-support@ontotext.com
Follow	us	on	Twitter:	https://twitter.com/cognitive_cloud
Ontotext Cognitive	Cloud:	https://ontotext.com/products/cognitive-cloud
Thank	you
for your	attention!

More Related Content

What's hot

Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
Supporting GDPR Compliance through effectively governing Data Lineage and Dat...Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
Connected Data World
 
Analytics and Access to the UK web archive
Analytics and Access to the UK web archiveAnalytics and Access to the UK web archive
Analytics and Access to the UK web archive
Lewis Crawford
 
Lightning Talk: Get Even More Value from MongoDB Applications
Lightning Talk: Get Even More Value from MongoDB ApplicationsLightning Talk: Get Even More Value from MongoDB Applications
Lightning Talk: Get Even More Value from MongoDB Applications
MongoDB
 

What's hot (20)

Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
Supporting GDPR Compliance through effectively governing Data Lineage and Dat...Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
Supporting GDPR Compliance through effectively governing Data Lineage and Dat...
 
SHACL-based data life cycle management
SHACL-based data life cycle managementSHACL-based data life cycle management
SHACL-based data life cycle management
 
Building materialised views for linked data systems using microservices
Building materialised views for linked data systems using microservicesBuilding materialised views for linked data systems using microservices
Building materialised views for linked data systems using microservices
 
Connected data meetup group - introduction & scope
Connected data meetup group - introduction & scopeConnected data meetup group - introduction & scope
Connected data meetup group - introduction & scope
 
GraphQL and its schema as a universal layer for database access
GraphQL and its schema as a universal layer for database accessGraphQL and its schema as a universal layer for database access
GraphQL and its schema as a universal layer for database access
 
It Don’t Mean a Thing If It Ain’t Got Semantics
It Don’t Mean a Thing If It Ain’t Got SemanticsIt Don’t Mean a Thing If It Ain’t Got Semantics
It Don’t Mean a Thing If It Ain’t Got Semantics
 
2017-01-08-scaling tribalknowledge
2017-01-08-scaling tribalknowledge2017-01-08-scaling tribalknowledge
2017-01-08-scaling tribalknowledge
 
How to Reveal Hidden Relationships in Data and Risk Analytics
How to Reveal Hidden Relationships in Data and Risk AnalyticsHow to Reveal Hidden Relationships in Data and Risk Analytics
How to Reveal Hidden Relationships in Data and Risk Analytics
 
Linked Data Experiences at Springer Nature
Linked Data Experiences at Springer NatureLinked Data Experiences at Springer Nature
Linked Data Experiences at Springer Nature
 
Sebastian Hellmann
Sebastian HellmannSebastian Hellmann
Sebastian Hellmann
 
Open Data and News Analytics Demo
Open Data and News Analytics DemoOpen Data and News Analytics Demo
Open Data and News Analytics Demo
 
Analytics and Access to the UK web archive
Analytics and Access to the UK web archiveAnalytics and Access to the UK web archive
Analytics and Access to the UK web archive
 
Connected datalondon metadata-driven apps
Connected datalondon metadata-driven appsConnected datalondon metadata-driven apps
Connected datalondon metadata-driven apps
 
The Power of Machine Learning and Graphs
The Power of Machine Learning and GraphsThe Power of Machine Learning and Graphs
The Power of Machine Learning and Graphs
 
Stephen Buxton | Data Integration - a Multi-Model Approach - Documents and Tr...
Stephen Buxton | Data Integration - a Multi-Model Approach - Documents and Tr...Stephen Buxton | Data Integration - a Multi-Model Approach - Documents and Tr...
Stephen Buxton | Data Integration - a Multi-Model Approach - Documents and Tr...
 
Applying large scale text analytics with graph databases
Applying large scale text analytics with graph databasesApplying large scale text analytics with graph databases
Applying large scale text analytics with graph databases
 
Sigma EE: Reaping low-hanging fruits in RDF-based data integration
Sigma EE: Reaping low-hanging fruits in RDF-based data integrationSigma EE: Reaping low-hanging fruits in RDF-based data integration
Sigma EE: Reaping low-hanging fruits in RDF-based data integration
 
Integration of data ninja services with oracle spatial and graph
Integration of data ninja services with oracle spatial and graphIntegration of data ninja services with oracle spatial and graph
Integration of data ninja services with oracle spatial and graph
 
Lightning Talk: Get Even More Value from MongoDB Applications
Lightning Talk: Get Even More Value from MongoDB ApplicationsLightning Talk: Get Even More Value from MongoDB Applications
Lightning Talk: Get Even More Value from MongoDB Applications
 
LD4KD 2015 - Demos and tools
LD4KD 2015 - Demos and toolsLD4KD 2015 - Demos and tools
LD4KD 2015 - Demos and tools
 

Similar to GraphDB Cloud: Enterprise Ready RDF Database on Demand

Similar to GraphDB Cloud: Enterprise Ready RDF Database on Demand (20)

apidays LIVE Paris - The Rise of GraphQL for database APIs by Karthic Rao
apidays LIVE Paris - The Rise of GraphQL for database APIs by Karthic Raoapidays LIVE Paris - The Rise of GraphQL for database APIs by Karthic Rao
apidays LIVE Paris - The Rise of GraphQL for database APIs by Karthic Rao
 
Building powerful apps with ArangoDB & KeyLines
Building powerful apps with ArangoDB & KeyLinesBuilding powerful apps with ArangoDB & KeyLines
Building powerful apps with ArangoDB & KeyLines
 
Graph Analytics on Data from Meetup.com
Graph Analytics on Data from Meetup.comGraph Analytics on Data from Meetup.com
Graph Analytics on Data from Meetup.com
 
GraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph DatabasesGraphTech Ecosystem - part 1: Graph Databases
GraphTech Ecosystem - part 1: Graph Databases
 
GCP for Apache Kafka® Users: Stream Ingestion and Processing
GCP for Apache Kafka® Users: Stream Ingestion and ProcessingGCP for Apache Kafka® Users: Stream Ingestion and Processing
GCP for Apache Kafka® Users: Stream Ingestion and Processing
 
Better Together: How Graph database enables easy data integration with Spark ...
Better Together: How Graph database enables easy data integration with Spark ...Better Together: How Graph database enables easy data integration with Spark ...
Better Together: How Graph database enables easy data integration with Spark ...
 
Knowledge Graph for Machine Learning and Data Science
Knowledge Graph for Machine Learning and Data ScienceKnowledge Graph for Machine Learning and Data Science
Knowledge Graph for Machine Learning and Data Science
 
Resume
ResumeResume
Resume
 
Introduction to Property Graph Features (AskTOM Office Hours part 1)
Introduction to Property Graph Features (AskTOM Office Hours part 1) Introduction to Property Graph Features (AskTOM Office Hours part 1)
Introduction to Property Graph Features (AskTOM Office Hours part 1)
 
Neo4j GraphSummit London - The Path To Success With Graph Database and Data S...
Neo4j GraphSummit London - The Path To Success With Graph Database and Data S...Neo4j GraphSummit London - The Path To Success With Graph Database and Data S...
Neo4j GraphSummit London - The Path To Success With Graph Database and Data S...
 
Multiplaform Solution for Graph Datasources
Multiplaform Solution for Graph DatasourcesMultiplaform Solution for Graph Datasources
Multiplaform Solution for Graph Datasources
 
Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...
Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...
Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...
 
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricUsing Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
 
New! Neo4j AuraDS: The Fastest Way to Get Started with Data Science in the Cloud
New! Neo4j AuraDS: The Fastest Way to Get Started with Data Science in the CloudNew! Neo4j AuraDS: The Fastest Way to Get Started with Data Science in the Cloud
New! Neo4j AuraDS: The Fastest Way to Get Started with Data Science in the Cloud
 
MongoDB .local Houston 2019: Wide Ranging Analytical Solutions on MongoDB
MongoDB .local Houston 2019: Wide Ranging Analytical Solutions on MongoDBMongoDB .local Houston 2019: Wide Ranging Analytical Solutions on MongoDB
MongoDB .local Houston 2019: Wide Ranging Analytical Solutions on MongoDB
 
Elevate MongoDB with ODBC/JDBC
Elevate MongoDB with ODBC/JDBCElevate MongoDB with ODBC/JDBC
Elevate MongoDB with ODBC/JDBC
 
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
TDWI Accelerate, Seattle, Oct 16, 2017: Distributed and In-Database Analytics...
 
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
TWDI Accelerate Seattle, Oct 16, 2017: Distributed and In-Database Analytics ...
 
How a distributed graph analytics platform uses Apache Kafka for data ingesti...
How a distributed graph analytics platform uses Apache Kafka for data ingesti...How a distributed graph analytics platform uses Apache Kafka for data ingesti...
How a distributed graph analytics platform uses Apache Kafka for data ingesti...
 
GraphQL @ Manc.JS (March 2018)
GraphQL @ Manc.JS (March 2018)GraphQL @ Manc.JS (March 2018)
GraphQL @ Manc.JS (March 2018)
 

More from Ontotext

Best Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining ProcessingBest Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining Processing
Ontotext
 

More from Ontotext (20)

Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven RecipesReasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
 
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data LinkingAnalytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
 
The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise
 
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
 
[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and News[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and News
 
Hercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake OnesHercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake Ones
 
How to migrate to GraphDB in 10 easy to follow steps
How to migrate to GraphDB in 10 easy to follow steps How to migrate to GraphDB in 10 easy to follow steps
How to migrate to GraphDB in 10 easy to follow steps
 
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
 
How is smart data cooked?
How is smart data cooked?How is smart data cooked?
How is smart data cooked?
 
Efficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining ProcessEfficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining Process
 
The Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open DataThe Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open Data
 
The Knowledge Discovery Quest
The Knowledge Discovery Quest The Knowledge Discovery Quest
The Knowledge Discovery Quest
 
Best Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining ProcessingBest Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining Processing
 
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural HeritageBuild Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
 
Semantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial ResearchSemantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial Research
 
Gain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public DataGain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public Data
 
Gaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive TechnologyGaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive Technology
 
Cooking up the Semantic Web
Cooking up the Semantic WebCooking up the Semantic Web
Cooking up the Semantic Web
 
Diving in Panama Papers and Open Data to Discover Emerging News
Diving in Panama Papers and Open Data to Discover Emerging NewsDiving in Panama Papers and Open Data to Discover Emerging News
Diving in Panama Papers and Open Data to Discover Emerging News
 
Why Semantics Matter? Adding the semantic edge to your content, right from au...
Why Semantics Matter? Adding the semantic edge to your content,right from au...Why Semantics Matter? Adding the semantic edge to your content,right from au...
Why Semantics Matter? Adding the semantic edge to your content, right from au...
 

Recently uploaded

TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
mohitmore19
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
VishalKumarJha10
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
Health
 
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM TechniquesAI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
VictorSzoltysek
 

Recently uploaded (20)

TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
VTU technical seminar 8Th Sem on Scikit-learn
VTU technical seminar 8Th Sem on Scikit-learnVTU technical seminar 8Th Sem on Scikit-learn
VTU technical seminar 8Th Sem on Scikit-learn
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docx
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdfAzure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
 
AI & Machine Learning Presentation Template
AI & Machine Learning Presentation TemplateAI & Machine Learning Presentation Template
AI & Machine Learning Presentation Template
 
How to Choose the Right Laravel Development Partner in New York City_compress...
How to Choose the Right Laravel Development Partner in New York City_compress...How to Choose the Right Laravel Development Partner in New York City_compress...
How to Choose the Right Laravel Development Partner in New York City_compress...
 
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
 
Microsoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdfMicrosoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdf
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
 
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM TechniquesAI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
 
HR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.comHR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.com
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
10 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 202410 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 2024
 
Exploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfExploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdf
 
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
Direct Style Effect Systems -The Print[A] Example- A Comprehension AidDirect Style Effect Systems -The Print[A] Example- A Comprehension Aid
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
 

GraphDB Cloud: Enterprise Ready RDF Database on Demand