SlideShare une entreprise Scribd logo
1  sur  53
Date Time Java 8
(JSR-310)
ilJUG – July 2014
By: Eyal Golan
Tech Lead at eBay
A word before starting…
The intent of this presentation is to be
basic source and starting point to the
new Java Date Time API (JSR-310)
2
Agenda
• Old vs. New
• JSR 310
• Examples by code
• Resources
3
Old Issues
• Date is not a date, nor time. It’s an
instant in time (by epoch)
• Calendar is Date and Time
• Month is 0 (zero) based
• Mutability
4
Example – Issues
5
Example – Issues
6
Example – Issues
7
First try=1274 , second try=0
Use (Calendar)start.clone();
Calendar
• YEAR, MONTH,
DAY_OF_MONTH…
• Fields start at 0
• Calendar is mutable
• Methods (set, add…) change the state of
Calendar
8
Example – The New Way
9
1274
Example – The New Way
10
1274
Example – The New Way
11
1274
Example – The New Way
12
Today 2014-07-29 and next year 2015-07-29
Modeling
• Different date/time scenarios
• Class starts at 12:30
• ilJUG is on 29th July
• The presentation is 1 hour long
• I’ve been working at eBay for 3 years and 6
months
13
Example – Issues
14
Example – The New Way
15
Example – The New Way
16
Amount of Time
• How many milliseconds it took
between request to response?
• Set time 10 seconds after now
• Calculate time that passed between
two events
17
Example – Old Calculation
18
now Tue Jul 29 01:48:56 IDT 2014 and later Thu Jan 01 04:20:00 IST 1970
Example – Old Calculation
19
119 days 6 hours 13 minutes 24 seconds 543 ms
Example taken from stackoverflow
Duration and Period
20
Duration – Machine Time
21
now 2014-07-28T23:17:40.898Z and later 2014-07-29T01:47:40.898Z
150
2014-07-28T23:17:53.898Z
9000000
Period – Human Time
22
Guidelines
• Clear
• Fluent
• DSL
• Immutability
• Amount of time, different
representations for different cases
• Human (year, month, day)
• Machine time
24
Packages
• java.time
• java.time.chrono
• java.time.format
• java.time.temporal
• java.time.zone
25
Some (not all) Classes
• Temporal – Basic interface for DateTime classes
• LocalDate / LocalTime / LocalDateTime …
• Instant
• Start of nanoseconds in timeline. Useful for timestamp
• Clock
• Allowing Temporal creation with alternate clock
• TemporalAmount – Basic interface for classes
that represent amount of time
• Duration
• Period
26
Methods Naming Conventions
of Static Creates an instance with validation
to Instance Converts to another type (truncate fields)
at Instance Combines this object with another
(expands)
from Static Converts input parameters to an instance
get Instance Part of the state of the object
27
Methods Naming Conventions
is Instance Queries state of an object
with Instance Returns a copy of an object with one
changed element
plus /
minus
instance Returns a copy of an object with amount of
added / subtracted time
parse Static Parses input string to an instance
format Instance Uses formatter to format the object’s values
to produce a string
28
Source Code
30
https://github.com/eyalgo/java8-datetime
General
31
SystemClock[Asia/Jerusalem]
2014-07-29T05:54:23.337
2014-07-29T08:54:23.338
SystemClock[Asia/Jerusalem]
SystemClock[Europe/Berlin]
2014-7-29
General
32
SystemClock[Asia/Jerusalem]
2014-07-29T05:54:23.337
2014-07-29T08:54:23.338
SystemClock[Asia/Jerusalem]
SystemClock[Europe/Berlin]
2014-7-29
General
33
SystemClock[Asia/Jerusalem]
2014-07-29T05:54:23.337
2014-07-29T08:54:23.338
SystemClock[Asia/Jerusalem]
SystemClock[Europe/Berlin]
2014-7-29
The Basics
34
Basic Date and Time
35
Partial Dates & Information
36
Information, Clear API
37
Fluent Operations
38
Time Zone
39
Using Zone
40
Instant
41
From Javadoc:
"This class models a single instantaneous point on the time-line.
This might be used to record event time-stamps in the application...
"...number of seconds that can be held in a long. This is greater than the current
estimated age of the universe...
"...The instant is stored to nanosecond resolution..."
Adjusters
• Take Temporal value and adjust it
• Pre defined
• firstDayOfMonth
• firstDayOfYear
• lastInMonth
• Look at TemoralAdjusters
• Custom adjusters
42
Adjusters
43
Custom Adjusters
44
2014-08-05
2009-09-01
Queries – Retrieve Information
45
Custom Queries
46
Custom Queries
47
Parsing and Formatting
• DateTimeFormatter
• Many pre defined formats
• http://docs.oracle.com/javase/8/docs/api/java/time/format/DateTimeFormatter.html#predefined
• Immutable
• DateTimeFormatterBuilder
• All classes use the same way
• DateTimeParseException (runtime)
48
Parsing and Formatting
49
07**2014--16
Legacy Date Time Integration
50
52
https://github.com/eyalgo/java8-datetime
http://docs.oracle.com/javase/tutorial/datetime/iso/index.html
http://docs.oracle.com/javase/tutorial/datetime/index.html
https://jcp.org/en/jsr/detail?id=310
http://www.oracle.com/technetwork/articles/java/jf14-date-time-2125367.html
http://www.mscharhag.com/2014/02/java-8-datetime-api.html
http://geekmonkey.org/articles/24-a-new-date-and-time-api-for-jdk-8
https://today.java.net/pub/a/today/2008/09/18/jsr-310-new-java-date-time-api.html
egolan74@gmail.com
https://www.linkedin.com/in/egolan74
http://eyalgo.com/
@eyalgo_egolan

Contenu connexe

Tendances

Short history of time - Confitura 2013
Short history of time - Confitura 2013Short history of time - Confitura 2013
Short history of time - Confitura 2013
nurkiewicz
 
Reactive programming using rx java & akka actors - pdx-scala - june 2014
Reactive programming   using rx java & akka actors - pdx-scala - june 2014Reactive programming   using rx java & akka actors - pdx-scala - june 2014
Reactive programming using rx java & akka actors - pdx-scala - june 2014
Thomas Lockney
 
Scala like distributed collections - dumping time-series data with apache spark
Scala like distributed collections - dumping time-series data with apache sparkScala like distributed collections - dumping time-series data with apache spark
Scala like distributed collections - dumping time-series data with apache spark
Demi Ben-Ari
 
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
Srinath Perera
 
Logical Clocks (Distributed computing)
Logical Clocks (Distributed computing)Logical Clocks (Distributed computing)
Logical Clocks (Distributed computing)
Sri Prasanna
 
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
Lucidworks
 

Tendances (20)

Short history of time - Confitura 2013
Short history of time - Confitura 2013Short history of time - Confitura 2013
Short history of time - Confitura 2013
 
Thinking Functionally with Clojure
Thinking Functionally with ClojureThinking Functionally with Clojure
Thinking Functionally with Clojure
 
Intro to Functional Programming with RxJava
Intro to Functional Programming with RxJavaIntro to Functional Programming with RxJava
Intro to Functional Programming with RxJava
 
Real-time driving score service using Flink
Real-time driving score service using FlinkReal-time driving score service using Flink
Real-time driving score service using Flink
 
Reactive programming using rx java & akka actors - pdx-scala - june 2014
Reactive programming   using rx java & akka actors - pdx-scala - june 2014Reactive programming   using rx java & akka actors - pdx-scala - june 2014
Reactive programming using rx java & akka actors - pdx-scala - june 2014
 
Scala like distributed collections - dumping time-series data with apache spark
Scala like distributed collections - dumping time-series data with apache sparkScala like distributed collections - dumping time-series data with apache spark
Scala like distributed collections - dumping time-series data with apache spark
 
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
Scalable Realtime Analytics with declarative SQL like Complex Event Processin...
 
Apache Storm
Apache StormApache Storm
Apache Storm
 
Predictive Maintenance with Deep Learning and Apache Flink
Predictive Maintenance with Deep Learning and Apache FlinkPredictive Maintenance with Deep Learning and Apache Flink
Predictive Maintenance with Deep Learning and Apache Flink
 
Reactive Programming and RxJS
Reactive Programming and RxJSReactive Programming and RxJS
Reactive Programming and RxJS
 
Logical Clocks (Distributed computing)
Logical Clocks (Distributed computing)Logical Clocks (Distributed computing)
Logical Clocks (Distributed computing)
 
Dive into spark2
Dive into spark2Dive into spark2
Dive into spark2
 
Akka-demy (a.k.a. How to build stateful distributed systems) I/II
 Akka-demy (a.k.a. How to build stateful distributed systems) I/II Akka-demy (a.k.a. How to build stateful distributed systems) I/II
Akka-demy (a.k.a. How to build stateful distributed systems) I/II
 
A More Scaleable Way of Making Recommendations with MLlib-(Xiangrui Meng, Dat...
A More Scaleable Way of Making Recommendations with MLlib-(Xiangrui Meng, Dat...A More Scaleable Way of Making Recommendations with MLlib-(Xiangrui Meng, Dat...
A More Scaleable Way of Making Recommendations with MLlib-(Xiangrui Meng, Dat...
 
S3, Cassandra or Outer Space? Dumping Time Series Data using Spark - Demi Be...
S3, Cassandra or Outer Space? Dumping Time Series Data using Spark  - Demi Be...S3, Cassandra or Outer Space? Dumping Time Series Data using Spark  - Demi Be...
S3, Cassandra or Outer Space? Dumping Time Series Data using Spark - Demi Be...
 
An Introduction to RxJava
An Introduction to RxJavaAn Introduction to RxJava
An Introduction to RxJava
 
IRB Galaxy CloudMan radionica
IRB Galaxy CloudMan radionicaIRB Galaxy CloudMan radionica
IRB Galaxy CloudMan radionica
 
Slide #1:Introduction to Apache Storm
Slide #1:Introduction to Apache StormSlide #1:Introduction to Apache Storm
Slide #1:Introduction to Apache Storm
 
JEEConf 2016. Effectiveness and code optimization in Java applications
JEEConf 2016. Effectiveness and code optimization in  Java applicationsJEEConf 2016. Effectiveness and code optimization in  Java applications
JEEConf 2016. Effectiveness and code optimization in Java applications
 
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
Faceting Optimizations for Solr: Presented by Toke Eskildsen, State & Univers...
 

En vedette

Introduction To Apache Pig at WHUG
Introduction To Apache Pig at WHUGIntroduction To Apache Pig at WHUG
Introduction To Apache Pig at WHUG
Adam Kawa
 

En vedette (17)

Zombie Time - JSR 310 for the Undead
Zombie Time - JSR 310 for the UndeadZombie Time - JSR 310 for the Undead
Zombie Time - JSR 310 for the Undead
 
HBase Introduction
HBase IntroductionHBase Introduction
HBase Introduction
 
MetaScale Case Study: Hadoop Extends DataStage ETL Capacity
MetaScale Case Study: Hadoop Extends DataStage ETL CapacityMetaScale Case Study: Hadoop Extends DataStage ETL Capacity
MetaScale Case Study: Hadoop Extends DataStage ETL Capacity
 
Managing Social Content with MongoDB
Managing Social Content with MongoDBManaging Social Content with MongoDB
Managing Social Content with MongoDB
 
Using The Internet of Things for Population Health Management - StampedeCon 2016
Using The Internet of Things for Population Health Management - StampedeCon 2016Using The Internet of Things for Population Health Management - StampedeCon 2016
Using The Internet of Things for Population Health Management - StampedeCon 2016
 
Large Scale Health Telemetry and Analytics with MQTT, Hadoop and Machine Lear...
Large Scale Health Telemetry and Analytics with MQTT, Hadoop and Machine Lear...Large Scale Health Telemetry and Analytics with MQTT, Hadoop and Machine Lear...
Large Scale Health Telemetry and Analytics with MQTT, Hadoop and Machine Lear...
 
Hadoop and Hive in Enterprises
Hadoop and Hive in EnterprisesHadoop and Hive in Enterprises
Hadoop and Hive in Enterprises
 
HBase Lightning Talk
HBase Lightning TalkHBase Lightning Talk
HBase Lightning Talk
 
Internal Hive
Internal HiveInternal Hive
Internal Hive
 
Big data processing with apache spark
Big data processing with apache sparkBig data processing with apache spark
Big data processing with apache spark
 
Introduction To Apache Pig at WHUG
Introduction To Apache Pig at WHUGIntroduction To Apache Pig at WHUG
Introduction To Apache Pig at WHUG
 
Hadoop Interview Questions and Answers by rohit kapa
Hadoop Interview Questions and Answers by rohit kapaHadoop Interview Questions and Answers by rohit kapa
Hadoop Interview Questions and Answers by rohit kapa
 
IoT Open Source Integration Comparison (Kura, Node-RED, Flogo, Apache Nifi, S...
IoT Open Source Integration Comparison (Kura, Node-RED, Flogo, Apache Nifi, S...IoT Open Source Integration Comparison (Kura, Node-RED, Flogo, Apache Nifi, S...
IoT Open Source Integration Comparison (Kura, Node-RED, Flogo, Apache Nifi, S...
 
Fluentd vs. Logstash for OpenStack Log Management
Fluentd vs. Logstash for OpenStack Log ManagementFluentd vs. Logstash for OpenStack Log Management
Fluentd vs. Logstash for OpenStack Log Management
 
Compression Options in Hadoop - A Tale of Tradeoffs
Compression Options in Hadoop - A Tale of TradeoffsCompression Options in Hadoop - A Tale of Tradeoffs
Compression Options in Hadoop - A Tale of Tradeoffs
 
Big data ppt
Big data pptBig data ppt
Big data ppt
 
Big data ppt
Big  data pptBig  data ppt
Big data ppt
 

Similaire à Date time java 8 (jsr 310)

"Эффективность и оптимизация кода в Java 8" Сергей Моренец
"Эффективность и оптимизация кода в Java 8" Сергей Моренец"Эффективность и оптимизация кода в Java 8" Сергей Моренец
"Эффективность и оптимизация кода в Java 8" Сергей Моренец
Fwdays
 
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
Lucidworks
 
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
MaruMengesha
 

Similaire à Date time java 8 (jsr 310) (20)

Java 8
Java 8Java 8
Java 8
 
Java dates
Java datesJava dates
Java dates
 
MODELS 2019: Querying and annotating model histories with time-aware patterns
MODELS 2019: Querying and annotating model histories with time-aware patternsMODELS 2019: Querying and annotating model histories with time-aware patterns
MODELS 2019: Querying and annotating model histories with time-aware patterns
 
Pi j2.3 objects
Pi j2.3 objectsPi j2.3 objects
Pi j2.3 objects
 
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
 
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
2_1_Fundamentals_Event_Mechanism_Chapter_2.pdf
 
Time Series Analytics with Spark: Spark Summit East talk by Simon Ouellette
Time Series Analytics with Spark: Spark Summit East talk by Simon OuelletteTime Series Analytics with Spark: Spark Summit East talk by Simon Ouellette
Time Series Analytics with Spark: Spark Summit East talk by Simon Ouellette
 
"Эффективность и оптимизация кода в Java 8" Сергей Моренец
"Эффективность и оптимизация кода в Java 8" Сергей Моренец"Эффективность и оптимизация кода в Java 8" Сергей Моренец
"Эффективность и оптимизация кода в Java 8" Сергей Моренец
 
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
Enriching Solr with Deep Learning for a Question Answering System - Sanket Sh...
 
Dates and Times in Java 7 and Java 8
Dates and Times in Java 7 and Java 8Dates and Times in Java 7 and Java 8
Dates and Times in Java 7 and Java 8
 
Best Practices for SharePoint Timer Jobs
Best Practices for SharePoint Timer JobsBest Practices for SharePoint Timer Jobs
Best Practices for SharePoint Timer Jobs
 
Update of time-invalid information in knowledge bases through mobile agents
Update of time-invalid information in knowledge bases through mobile agentsUpdate of time-invalid information in knowledge bases through mobile agents
Update of time-invalid information in knowledge bases through mobile agents
 
Effectiveness and code optimization in Java
Effectiveness and code optimization in JavaEffectiveness and code optimization in Java
Effectiveness and code optimization in Java
 
Design Patterns - GOF
Design Patterns - GOFDesign Patterns - GOF
Design Patterns - GOF
 
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
WINSEM2020-21_STS3105_SS_VL2020210500169_Reference_Material_I_03-Feb-2021_L1_...
 
Java 8 date & time javaday2014
Java 8 date & time javaday2014Java 8 date & time javaday2014
Java 8 date & time javaday2014
 
Ifi7184 lesson6
Ifi7184 lesson6Ifi7184 lesson6
Ifi7184 lesson6
 
Design Patterns
Design PatternsDesign Patterns
Design Patterns
 
Dev112 let's calendar that
Dev112   let's calendar thatDev112   let's calendar that
Dev112 let's calendar that
 
Get Testing with tSQLt - SQL In The City Workshop 2014
Get Testing with tSQLt - SQL In The City Workshop 2014Get Testing with tSQLt - SQL In The City Workshop 2014
Get Testing with tSQLt - SQL In The City Workshop 2014
 

Dernier

CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online ☂️
CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online  ☂️CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online  ☂️
CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online ☂️
anilsa9823
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
mohitmore19
 
+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
 
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female serviceCALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
anilsa9823
 

Dernier (20)

CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online ☂️
CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online  ☂️CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online  ☂️
CALL ON ➥8923113531 🔝Call Girls Kakori Lucknow best sexual service Online ☂️
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
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
 
Steps To Getting Up And Running Quickly With MyTimeClock Employee Scheduling ...
Steps To Getting Up And Running Quickly With MyTimeClock Employee Scheduling ...Steps To Getting Up And Running Quickly With MyTimeClock Employee Scheduling ...
Steps To Getting Up And Running Quickly With MyTimeClock Employee Scheduling ...
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
 
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
 
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AISyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.js
 
5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf
 
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 ...
 
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-...
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with Precision
 
Hand gesture recognition PROJECT PPT.pptx
Hand gesture recognition PROJECT PPT.pptxHand gesture recognition PROJECT PPT.pptx
Hand gesture recognition PROJECT PPT.pptx
 
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
 
+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...
 
Microsoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdfMicrosoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdf
 
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
 
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsUnveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
 
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female serviceCALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
CALL ON ➥8923113531 🔝Call Girls Badshah Nagar Lucknow best Female service
 

Date time java 8 (jsr 310)