Enviar pesquisa
Carregar
Google Cluster Innards
•
Transferir como PPT, PDF
•
58 gostaram
•
17,941 visualizações
Martin Dvorak
Seguir
Anatomy of Google cluster & MapReduce programming ...
Leia menos
Leia mais
Tecnologia
Notícias e política
Denunciar
Compartilhar
Denunciar
Compartilhar
1 de 34
Baixar agora
Recomendados
On hardware and software used by SpaceX
Doom in SpaceX
Doom in SpaceX
Martin Dvorak
A challenge to Endeavour Discovery of Atlantis in Columbia.
On NASA Space Shuttle Program Hardware and Software
On NASA Space Shuttle Program Hardware and Software
Martin Dvorak
On SW and HW used by Apollo missions to land on the Moon.
Fly Me to the Moon
Fly Me to the Moon
Martin Dvorak
A presentation of MapReduced in hadoop. It shows the result of one experiment.
MapReduce with Hadoop
MapReduce with Hadoop
Vitalie Scurtu
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation platform for space applications (NASA Ames, May 5, 2009)
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation pl...
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation pl...
Bruce Damer
HDF AND HDF-EOS WORKSHOP II (1998) Source: http://hdfeos.org/workshops/ws02/presentations/ilg1/ilg1.ppt
An Overview of HDF-EOS (Part 1)
An Overview of HDF-EOS (Part 1)
The HDF-EOS Tools and Information Center
HDF4 and HDF-EOS format reading has recently been added to the NetCDF-Java 4.0 library, while HDF5 / NetCDF-4 format reading has been improved. This talk will summarize the status of reading the HDF family of formats through the NetCDF-Java library, with particular attention to the mapping between these formats and the Common Data Model.
Reading HDF family of formats via NetCDF-Java / CDM
Reading HDF family of formats via NetCDF-Java / CDM
The HDF-EOS Tools and Information Center
Cloud Computing Clusters for Dummies
Cloud Computing Clusters for Dummies
Cloud Computing Clusters for Dummies
Liberteks
Recomendados
On hardware and software used by SpaceX
Doom in SpaceX
Doom in SpaceX
Martin Dvorak
A challenge to Endeavour Discovery of Atlantis in Columbia.
On NASA Space Shuttle Program Hardware and Software
On NASA Space Shuttle Program Hardware and Software
Martin Dvorak
On SW and HW used by Apollo missions to land on the Moon.
Fly Me to the Moon
Fly Me to the Moon
Martin Dvorak
A presentation of MapReduced in hadoop. It shows the result of one experiment.
MapReduce with Hadoop
MapReduce with Hadoop
Vitalie Scurtu
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation platform for space applications (NASA Ames, May 5, 2009)
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation pl...
Bruce Damer's presentation of Digital Spaces, an open source 3D simulation pl...
Bruce Damer
HDF AND HDF-EOS WORKSHOP II (1998) Source: http://hdfeos.org/workshops/ws02/presentations/ilg1/ilg1.ppt
An Overview of HDF-EOS (Part 1)
An Overview of HDF-EOS (Part 1)
The HDF-EOS Tools and Information Center
HDF4 and HDF-EOS format reading has recently been added to the NetCDF-Java 4.0 library, while HDF5 / NetCDF-4 format reading has been improved. This talk will summarize the status of reading the HDF family of formats through the NetCDF-Java library, with particular attention to the mapping between these formats and the Common Data Model.
Reading HDF family of formats via NetCDF-Java / CDM
Reading HDF family of formats via NetCDF-Java / CDM
The HDF-EOS Tools and Information Center
Cloud Computing Clusters for Dummies
Cloud Computing Clusters for Dummies
Cloud Computing Clusters for Dummies
Liberteks
Grid
Grid
Fajar Zain
Clusters (Distributed computing)
Clusters (Distributed computing)
Sri Prasanna
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
EuroCloud
Slides from the thesis defence in Chicago by Vittorio Giovara.
Parallel and Distributed Computing on Low Latency Clusters
Parallel and Distributed Computing on Low Latency Clusters
Vittorio Giovara
Chapter16 new
Chapter16 new
vmummaneni
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
Wolfgang Gentzsch
Présentation d'Antoine Ginies lors du SUSE Expert Days Paris 2017
SLE12 SP2 : High Availability et Geo Cluster
SLE12 SP2 : High Availability et Geo Cluster
SUSE
Grid computing ppt 2003(done)
Grid computing ppt 2003(done)
TASNEEM88
Cluster Computing
Cluster computing
Cluster computing
Venkat Sai Sharath Mudhigonda
Chap8 basic cluster_analysis
Chap8 basic cluster_analysis
guru_prasadg
VTU 8th semester Grid computing notes
Grid computing notes
Grid computing notes
Syed Mustafa
Simple overview of open sources Data Mining Tools, Features, Successful stories
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Krishna Petrochemicals
Cluster analysis
Cluster analysis
Jewel Refran
Distributed computing deals with hardware and software systems containing more than one processing element or storage element, concurrent processes, or multiple programs, running under a loosely or tightly controlled regime. In distributed computing a program is split up into parts that run simultaneously on multiple computers communicating over a network. Distributed computing is a form of parallel computing, but parallel computing is most commonly used to describe program parts running simultaneously on multiple processors in the same computer. Both types of processing require dividing a program into parts that can run simultaneously, but distributed programs often must deal with heterogeneous environments, network links of varying latencies, and unpredictable failures in the network or the computers.
Distributed Computing
Distributed Computing
Prashant Tiwari
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Andrey Vykhodtsev
Big data
Big data
rajsandhu1989
Hadoop Online Training : kelly technologies is the bestHadoop online Training Institutes in Bangalore. ProvidingHadoop online Training by real time faculty in Bangalore.
Hadoop online-training
Hadoop online-training
Geohedrick
This presentation will give you Information about : 1.Configuring HDFS 2.Interacting With HDFS 3.HDFS Permissions and Security 4.Additional HDFS Tasks HDFS Overview and Architecture 5.HDFS Installation 6.Hadoop File System Shell 7.File System Java API
Hadoop - Introduction to HDFS
Hadoop - Introduction to HDFS
Vibrant Technologies & Computers
While early big data systems, such as MapReduce, focused on batch processing, the demands on these systems have quickly grown. Users quickly needed to run (1) more interactive ad-hoc queries, (2) sophisticated multi-pass algorithms (e.g. machine learning), and (3) real-time stream processing. The result has been an explosion of specialized systems to tackle these new workloads. Unfortunately, this means more systems to learn, manage, and stitch together into pipelines. Spark is unique in taking a step back and trying to provide a *unified* post-MapReduce programming model that tackles all these workloads. By generalizing MapReduce to support fast data sharing and low-latency jobs, we achieve best-in-class performance in a variety of workloads, while providing a simple programming model that lets users easily and efficiently combine them. Today, Spark is the most active open source project in big data, with high activity in both the core engine and a growing array of standard libraries built on top (e.g. machine learning, stream processing, SQL). I'm going to talk about the latest developments in Spark and show examples of how it can combine processing algorithms to build rich data pipelines in just a few lines of code. Talk by Databricks CTO and Apache Spark creator Matei Zaharia at QCON San Francisco 2014.
Unified Big Data Processing with Apache Spark (QCON 2014)
Unified Big Data Processing with Apache Spark (QCON 2014)
Databricks
An increasing number of popular applications become data-intensive in nature. In the past decade, the World Wide Web has been adopted as an ideal platform for developing data-intensive applications, since the communication paradigm of the Web is sufficiently open and powerful. Data-intensive applications like data mining and web indexing need to access ever-expanding data sets ranging from a few gigabytes to several terabytes or even petabytes. Google leverages the MapReduce model to process approximately twenty petabytes of data per day in a parallel fashion. In this talk, we introduce the Google’s MapReduce framework for processing huge datasets on large clusters. We first outline the motivations of the MapReduce framework. Then, we describe the dataflow of MapReduce. Next, we show a couple of example applications of MapReduce. Finally, we present our research project on the Hadoop Distributed File System. The current Hadoop implementation assumes that computing nodes in a cluster are homogeneous in nature. Data locality has not been taken into account for launching speculative map tasks, because it is assumed that most maps are data-local. Unfortunately, both the homogeneity and data locality assumptions are not satisfied in virtualized data centers. We show that ignoring the datalocality issue in heterogeneous environments can noticeably reduce the MapReduce performance. In this paper, we address the problem of how to place data across nodes in a way that each node has a balanced data processing load. Given a dataintensive application running on a Hadoop MapReduce cluster, our data placement scheme adaptively balances the amount of data stored in each node to achieve improved data-processing performance. Experimental results on two real data-intensive applications show that our data placement strategy can always improve the MapReduce performance by rebalancing data across nodes before performing a data-intensive application in a heterogeneous Hadoop cluster.
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
Xiao Qin
Introduction to Big data distributed processing and Apache Spark. Slides for the lecture in UCM.
Big data distributed processing: Spark introduction
Big data distributed processing: Spark introduction
Hektor Jacynycz García
Introduction to Hadoop, Mapreduce paradigm and HDFS system.
Hadoop and Mapreduce Introduction
Hadoop and Mapreduce Introduction
rajsandhu1989
Mais conteúdo relacionado
Destaque
Grid
Grid
Fajar Zain
Clusters (Distributed computing)
Clusters (Distributed computing)
Sri Prasanna
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
EuroCloud
Slides from the thesis defence in Chicago by Vittorio Giovara.
Parallel and Distributed Computing on Low Latency Clusters
Parallel and Distributed Computing on Low Latency Clusters
Vittorio Giovara
Chapter16 new
Chapter16 new
vmummaneni
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
Wolfgang Gentzsch
Présentation d'Antoine Ginies lors du SUSE Expert Days Paris 2017
SLE12 SP2 : High Availability et Geo Cluster
SLE12 SP2 : High Availability et Geo Cluster
SUSE
Grid computing ppt 2003(done)
Grid computing ppt 2003(done)
TASNEEM88
Cluster Computing
Cluster computing
Cluster computing
Venkat Sai Sharath Mudhigonda
Chap8 basic cluster_analysis
Chap8 basic cluster_analysis
guru_prasadg
VTU 8th semester Grid computing notes
Grid computing notes
Grid computing notes
Syed Mustafa
Simple overview of open sources Data Mining Tools, Features, Successful stories
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Krishna Petrochemicals
Cluster analysis
Cluster analysis
Jewel Refran
Distributed computing deals with hardware and software systems containing more than one processing element or storage element, concurrent processes, or multiple programs, running under a loosely or tightly controlled regime. In distributed computing a program is split up into parts that run simultaneously on multiple computers communicating over a network. Distributed computing is a form of parallel computing, but parallel computing is most commonly used to describe program parts running simultaneously on multiple processors in the same computer. Both types of processing require dividing a program into parts that can run simultaneously, but distributed programs often must deal with heterogeneous environments, network links of varying latencies, and unpredictable failures in the network or the computers.
Distributed Computing
Distributed Computing
Prashant Tiwari
Destaque
(14)
Grid
Grid
Clusters (Distributed computing)
Clusters (Distributed computing)
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
Evaluation of Virtual Clusters Performance on a Cloud Computing Infrastructure
Parallel and Distributed Computing on Low Latency Clusters
Parallel and Distributed Computing on Low Latency Clusters
Chapter16 new
Chapter16 new
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
Clusters, Grids & Clouds for Engineering Design, Simulation, and Collaboration
SLE12 SP2 : High Availability et Geo Cluster
SLE12 SP2 : High Availability et Geo Cluster
Grid computing ppt 2003(done)
Grid computing ppt 2003(done)
Cluster computing
Cluster computing
Chap8 basic cluster_analysis
Chap8 basic cluster_analysis
Grid computing notes
Grid computing notes
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Data mining tools (R , WEKA, RAPID MINER, ORANGE)
Cluster analysis
Cluster analysis
Distributed Computing
Distributed Computing
Semelhante a Google Cluster Innards
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Andrey Vykhodtsev
Big data
Big data
rajsandhu1989
Hadoop Online Training : kelly technologies is the bestHadoop online Training Institutes in Bangalore. ProvidingHadoop online Training by real time faculty in Bangalore.
Hadoop online-training
Hadoop online-training
Geohedrick
This presentation will give you Information about : 1.Configuring HDFS 2.Interacting With HDFS 3.HDFS Permissions and Security 4.Additional HDFS Tasks HDFS Overview and Architecture 5.HDFS Installation 6.Hadoop File System Shell 7.File System Java API
Hadoop - Introduction to HDFS
Hadoop - Introduction to HDFS
Vibrant Technologies & Computers
While early big data systems, such as MapReduce, focused on batch processing, the demands on these systems have quickly grown. Users quickly needed to run (1) more interactive ad-hoc queries, (2) sophisticated multi-pass algorithms (e.g. machine learning), and (3) real-time stream processing. The result has been an explosion of specialized systems to tackle these new workloads. Unfortunately, this means more systems to learn, manage, and stitch together into pipelines. Spark is unique in taking a step back and trying to provide a *unified* post-MapReduce programming model that tackles all these workloads. By generalizing MapReduce to support fast data sharing and low-latency jobs, we achieve best-in-class performance in a variety of workloads, while providing a simple programming model that lets users easily and efficiently combine them. Today, Spark is the most active open source project in big data, with high activity in both the core engine and a growing array of standard libraries built on top (e.g. machine learning, stream processing, SQL). I'm going to talk about the latest developments in Spark and show examples of how it can combine processing algorithms to build rich data pipelines in just a few lines of code. Talk by Databricks CTO and Apache Spark creator Matei Zaharia at QCON San Francisco 2014.
Unified Big Data Processing with Apache Spark (QCON 2014)
Unified Big Data Processing with Apache Spark (QCON 2014)
Databricks
An increasing number of popular applications become data-intensive in nature. In the past decade, the World Wide Web has been adopted as an ideal platform for developing data-intensive applications, since the communication paradigm of the Web is sufficiently open and powerful. Data-intensive applications like data mining and web indexing need to access ever-expanding data sets ranging from a few gigabytes to several terabytes or even petabytes. Google leverages the MapReduce model to process approximately twenty petabytes of data per day in a parallel fashion. In this talk, we introduce the Google’s MapReduce framework for processing huge datasets on large clusters. We first outline the motivations of the MapReduce framework. Then, we describe the dataflow of MapReduce. Next, we show a couple of example applications of MapReduce. Finally, we present our research project on the Hadoop Distributed File System. The current Hadoop implementation assumes that computing nodes in a cluster are homogeneous in nature. Data locality has not been taken into account for launching speculative map tasks, because it is assumed that most maps are data-local. Unfortunately, both the homogeneity and data locality assumptions are not satisfied in virtualized data centers. We show that ignoring the datalocality issue in heterogeneous environments can noticeably reduce the MapReduce performance. In this paper, we address the problem of how to place data across nodes in a way that each node has a balanced data processing load. Given a dataintensive application running on a Hadoop MapReduce cluster, our data placement scheme adaptively balances the amount of data stored in each node to achieve improved data-processing performance. Experimental results on two real data-intensive applications show that our data placement strategy can always improve the MapReduce performance by rebalancing data across nodes before performing a data-intensive application in a heterogeneous Hadoop cluster.
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
Xiao Qin
Introduction to Big data distributed processing and Apache Spark. Slides for the lecture in UCM.
Big data distributed processing: Spark introduction
Big data distributed processing: Spark introduction
Hektor Jacynycz García
Introduction to Hadoop, Mapreduce paradigm and HDFS system.
Hadoop and Mapreduce Introduction
Hadoop and Mapreduce Introduction
rajsandhu1989
Handout3o
Handout3o
Shahbaz Sidhu
Amsterdam Spark user meetup Feb 8, 2017
A look under the hood at Apache Spark's API and engine evolutions
A look under the hood at Apache Spark's API and engine evolutions
Databricks
Big data & Hadoop
Big data & Hadoop
Big data & Hadoop
Ahmed Gamil
kelly technologies is the best Hadoop Training Institutes in Hyderabad. Providing Hadoop training by real time faculty in Hyderaba www.kellytechno.com
Hadoop trainting in hyderabad@kelly technologies
Hadoop trainting in hyderabad@kelly technologies
Kelly Technologies
Google Cloud Computing on Google Developer 2008 Day
Google Cloud Computing on Google Developer 2008 Day
programmermag
洪智傑教授
AI與大數據數據處理 Spark實戰(20171216)
AI與大數據數據處理 Spark實戰(20171216)
Paul Chao
Video and slides synchronized, mp3 and slide download available at URL http://bit.ly/1yNuLGF. Matei Zaharia talks about the latest developments in Spark and shows examples of how it can combine processing algorithms to build rich data pipelines in just a few lines of code. Filmed at qconsf.com. Matei Zaharia is an assistant professor of computer science at MIT, and CTO of Databricks, the company commercializing Apache Spark.
Unified Big Data Processing with Apache Spark
Unified Big Data Processing with Apache Spark
C4Media
From An Introduction to Data Intensive Computing. Processing Big Data Using Utility and Data Clouds
Processing Big Data: An Introduction to Data Intensive Computing
Processing Big Data: An Introduction to Data Intensive Computing
Collin Bennett
Hadoop Institutes: kelly technologies are the best Hadoop Training Institutes in Hyderabad. Providing Hadoop training by real time faculty in Hyderabad. http://www.kellytechno.com/Hyderabad/Course/Hadoop-Training
Hadoop trainting-in-hyderabad@kelly technologies
Hadoop trainting-in-hyderabad@kelly technologies
Kelly Technologies
Presentation from Owen O'Malley about Hadoop
Hadoop basics
Hadoop basics
Antonio Silveira
Hadoop and Bigdata basics
Hadoop bigdata overview
Hadoop bigdata overview
harithakannan
Matei Zaharia (CTO Databricks, creator of Apache Spark) shares new developments in the open source project.
New Developments in Spark
New Developments in Spark
Databricks
Semelhante a Google Cluster Innards
(20)
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Big Data Essentials meetup @ IBM Ljubljana 23.06.2015
Big data
Big data
Hadoop online-training
Hadoop online-training
Hadoop - Introduction to HDFS
Hadoop - Introduction to HDFS
Unified Big Data Processing with Apache Spark (QCON 2014)
Unified Big Data Processing with Apache Spark (QCON 2014)
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
HDFS-HC: A Data Placement Module for Heterogeneous Hadoop Clusters
Big data distributed processing: Spark introduction
Big data distributed processing: Spark introduction
Hadoop and Mapreduce Introduction
Hadoop and Mapreduce Introduction
Handout3o
Handout3o
A look under the hood at Apache Spark's API and engine evolutions
A look under the hood at Apache Spark's API and engine evolutions
Big data & Hadoop
Big data & Hadoop
Hadoop trainting in hyderabad@kelly technologies
Hadoop trainting in hyderabad@kelly technologies
Google Cloud Computing on Google Developer 2008 Day
Google Cloud Computing on Google Developer 2008 Day
AI與大數據數據處理 Spark實戰(20171216)
AI與大數據數據處理 Spark實戰(20171216)
Unified Big Data Processing with Apache Spark
Unified Big Data Processing with Apache Spark
Processing Big Data: An Introduction to Data Intensive Computing
Processing Big Data: An Introduction to Data Intensive Computing
Hadoop trainting-in-hyderabad@kelly technologies
Hadoop trainting-in-hyderabad@kelly technologies
Hadoop basics
Hadoop basics
Hadoop bigdata overview
Hadoop bigdata overview
New Developments in Spark
New Developments in Spark
Último
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
The Digital Insurer
Following the popularity of “Cloud Revolution: Exploring the New Wave of Serverless Spatial Data,” we’re thrilled to announce this much-anticipated encore webinar. In this sequel, we’ll dive deeper into the Cloud-Native realm by uncovering practical applications and FME support for these new formats, including COGs, COPC, FlatGeoBuf, GeoParquet, STAC, and ZARR. Building on the foundation laid by industry leaders Michelle Roby of Radiant Earth and Chris Holmes of Planet in the first webinar, this second part offers an in-depth look at the real-world application and behind-the-scenes dynamics of these cutting-edge formats. We will spotlight specific use-cases and workflows, showcasing their efficiency and relevance in practical scenarios. Discover the vast possibilities each format holds, highlighted through detailed discussions and demonstrations. Our expert speakers will dissect the key aspects and provide critical takeaways for effective use, ensuring attendees leave with a thorough understanding of how to apply these formats in their own projects. Elevate your understanding of how FME supports these cutting-edge technologies, enhancing your ability to manage, share, and analyze spatial data. Whether you’re building on knowledge from our initial session or are new to the serverless spatial data landscape, this webinar is your gateway to mastering cloud-native formats in your workflows.
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
Angeliki Cooney has spent over twenty years at the forefront of the life sciences industry, working out of Wynantskill, NY. She is highly regarded for her dedication to advancing the development and accessibility of innovative treatments for chronic diseases, rare disorders, and cancer. Her professional journey has centered on strategic consulting for biopharmaceutical companies, facilitating digital transformation, enhancing omnichannel engagement, and refining strategic commercial practices. Angeliki's innovative contributions include pioneering several software-as-a-service (SaaS) products for the life sciences sector, earning her three patents. As the Senior Vice President of Life Sciences at Avenga, Angeliki orchestrated the firm's strategic entry into the U.S. market. Avenga, a renowned digital engineering and consulting firm, partners with significant entities in the pharmaceutical and biotechnology fields. Her leadership was instrumental in expanding Avenga's client base and establishing its presence in the competitive U.S. market.
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Angeliki Cooney
Workshop Build With AI - Google Developers Group Rio Verde
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
Sandro Moreira
This reviewer is for the second quarter of Empowerment Technology / ICT in Grade 11
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
MadyBayot
Presented by Mike Hicks
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ThousandEyes
How to get Oracle DBA Job as fresher.
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
Remote DBA Services
💉💊+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHABI}}+971581248768 +971581248768 Mtp-Kit (500MG) Prices » Dubai [(+971581248768**)] Abortion Pills For Sale In Dubai, UAE, Mifepristone and Misoprostol Tablets Available In Dubai, UAE CONTACT DR.Maya Whatsapp +971581248768 We Have Abortion Pills / Cytotec Tablets /Mifegest Kit Available in Dubai, Sharjah, Abudhabi, Ajman, Alain, Fujairah, Ras Al Khaimah, Umm Al Quwain, UAE, Buy cytotec in Dubai +971581248768''''Abortion Pills near me DUBAI | ABU DHABI|UAE. Price of Misoprostol, Cytotec” +971581248768' Dr.DEEM ''BUY ABORTION PILLS MIFEGEST KIT, MISOPROTONE, CYTOTEC PILLS IN DUBAI, ABU DHABI,UAE'' Contact me now via What's App…… abortion Pills Cytotec also available Oman Qatar Doha Saudi Arabia Bahrain Above all, Cytotec Abortion Pills are Available In Dubai / UAE, you will be very happy to do abortion in Dubai we are providing cytotec 200mg abortion pill in Dubai, UAE. Medication abortion offers an alternative to Surgical Abortion for women in the early weeks of pregnancy. We only offer abortion pills from 1 week-6 Months. We then advise you to use surgery if its beyond 6 months. Our Abu Dhabi, Ajman, Al Ain, Dubai, Fujairah, Ras Al Khaimah (RAK), Sharjah, Umm Al Quwain (UAQ) United Arab Emirates Abortion Clinic provides the safest and most advanced techniques for providing non-surgical, medical and surgical abortion methods for early through late second trimester, including the Abortion By Pill Procedure (RU 486, Mifeprex, Mifepristone, early options French Abortion Pill), Tamoxifen, Methotrexate and Cytotec (Misoprostol). The Abu Dhabi, United Arab Emirates Abortion Clinic performs Same Day Abortion Procedure using medications that are taken on the first day of the office visit and will cause the abortion to occur generally within 4 to 6 hours (as early as 30 minutes) for patients who are 3 to 12 weeks pregnant. When Mifepristone and Misoprostol are used, 50% of patients complete in 4 to 6 hours; 75% to 80% in 12 hours; and 90% in 24 hours. We use a regimen that allows for completion without the need for surgery 99% of the time. All advanced second trimester and late term pregnancies at our Tampa clinic (17 to 24 weeks or greater) can be completed within 24 hours or less 99% of the time without the need surgery. The procedure is completed with minimal to no complications. Our Women's Health Center located in Abu Dhabi, United Arab Emirates, uses the latest medications for medical abortions (RU-486, Mifeprex, Mifegyne, Mifepristone, early options French abortion pill), Methotrexate and Cytotec (Misoprostol). The safety standards of our Abu Dhabi, United Arab Emirates Abortion Doctors remain unparalleled. They consistently maintain the lowest complication rates throughout the nation. Our Physicians and staff are always available to answer questions and care for women in one of the most difficult times in their lives. The decision to have an abortion at the Abortion Cl
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
When you’re building (micro)services, you have lots of framework options. Spring Boot is no doubt a popular choice. But there’s more! Take Quarkus, a framework that’s considered the rising star for Kubernetes-native Java. It always depends on what's best for your situation, but how to choose the best solution if you're comparing 2 frameworks? Both Spring Boot and Quarkus have their positives and negatives. Let us compare the two by live coding a couple of common use cases in Spring Boot and Quarkus. After this talk, you’ll be ready to get started with Quarkus yourself, and know when to select Quarkus or Spring Boot.
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Jago de Vreede
JAM, the future of Polkadot.
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Juan lago vázquez
In the thrilling conclusion to 2023, ransomware groups had a banner year, really outdoing themselves in the "make everyone's life miserable" department. LockBit 3.0 took gold in the hacking olympics, followed by the plucky upstarts Clop and ALPHV/BlackCat. Apparently, 48% of organizations were feeling left out and decided to get in on the cyber attack action. Business services won the "most likely to get digitally mugged" award, with education and retail nipping at their heels. Hackers expanded their repertoire beyond boring old encryption to the much more exciting world of extortion. The US, UK and Canada took top honors in the "countries most likely to pay up" category. Bitcoins were the currency of choice for discerning hackers, because who doesn't love untraceable money?
Ransomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdf
Overkill Security
Join our latest Connector Corner webinar to discover how UiPath Integration Service revolutionizes API-centric automation in a 'Quote to Cash' process—and how that automation empowers businesses to accelerate revenue generation. A comprehensive demo will explore connecting systems, GenAI, and people, through powerful pre-built connectors designed to speed process cycle times. Speakers: James Dickson, Senior Software Engineer Charlie Greenberg, Host, Product Marketing Manager
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
DianaGray10
AXA XL - Insurer Innovation Award 2024
AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
The Digital Insurer
Dubai, often portrayed as a shimmering oasis in the desert, faces its own set of challenges, including the occasional threat of flooding. Despite its reputation for opulence and modernity, the emirate is not immune to the forces of nature. In recent years, Dubai has experienced sporadic but significant floods, testing the resilience of its infrastructure and communities. Among the critical lifelines in this bustling metropolis is the Dubai International Airport, a bustling hub that connects the city to the world. This article explores the intersection of Dubai flood events and the resilience demonstrated by the Dubai International Airport in the face of such challenges.
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Orbitshub
ICT role in 21 century education. How to ICT help in education
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
jfdjdjcjdnsjd
The value of a flexible API Management solution for Open Banking Steve Melan, Manager for IT Innovation and Architecture - State's and Saving's Bank of Luxembourg Apidays New York 2024: The API Economy in the AI Era (April 30 & May 1, 2024) ------ Check out our conferences at https://www.apidays.global/ Do you want to sponsor or talk at one of our conferences? https://apidays.typeform.com/to/ILJeAaV8 Learn more on APIscene, the global media made by the community for the community: https://www.apiscene.io Explore the API ecosystem with the API Landscape: https://apilandscape.apiscene.io/
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
apidays
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
Nanddeep Nachan
The microservices honeymoon is over. When starting a new project or revamping a legacy monolith, teams started looking for alternatives to microservices. The Modular Monolith, or 'Modulith', is an architecture that reaps the benefits of (vertical) functional decoupling without the high costs associated with separate deployments. This talk will delve into the advantages and challenges of this progressive architecture, beginning with exploring the concept of a 'module', its internal structure, public API, and inter-module communication patterns. Supported by spring-modulith, the talk provides practical guidance on addressing the main challenges of a Modultith Architecture: finding and guarding module boundaries, data decoupling, and integration module-testing. You should not miss this talk if you are a software architect or tech lead seeking practical, scalable solutions. About the author With two decades of experience, Victor is a Java Champion working as a trainer for top companies in Europe. Five thousands developers in 120 companies attended his workshops, so he gets to debate every week the challenges that various projects struggle with. In return, Victor summarizes key points from these workshops in conference talks and online meetups for the European Software Crafters, the world’s largest developer community around architecture, refactoring, and testing. Discover how Victor can help you on victorrentea.ro : company training catalog, consultancy and YouTube playlists.
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
Terragrunt, Terraspace, Terramate, terra... whatever. What is wrong with Terraform so people keep on creating wrappers and solutions around it? How OpenTofu will affect this dynamic? In this presentation, we will look into the fundamental driving forces behind a zoo of wrappers. Moreover, we are going to put together a wrapper ourselves so you can make an educated decision if you need one.
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
Andrey Devyatkin
The action of the next cyber saga takes place in the mystical lands of the Asia-Pacific region, where the main characters began their digital activities in the middle of 2021 and qualitatively strengthened it in 2022. Corporate espionage, document theft, audio recordings, and data leaks from messaging platforms were all a matter of one day for Dark Pink. Their geographical focus may have started in the Asia-Pacific region, but their ambitions knew no bounds, targeting a European government ministry in a bold move to expand their portfolio. Their victim profile was as diverse as a UN meeting, targeting military organizations, government agencies, and even a religious organization. Because discrimination is not a fashionable agenda. In the world of cybercrime, they serve as a reminder that sometimes the most serious threats come in the most unassuming packages with a pink bow.
Cyberprint. Dark Pink Apt Group [EN].pdf
Cyberprint. Dark Pink Apt Group [EN].pdf
Overkill Security
Último
(20)
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Ransomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdf
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
Cyberprint. Dark Pink Apt Group [EN].pdf
Cyberprint. Dark Pink Apt Group [EN].pdf
Google Cluster Innards
1.
Google Cluster Innards
Martin Dvorak [email_address] http://www.e-mental.com/dvorka
2.
3.
Inventing Google
4.
5.
6.
7.
8.
Inventing Google: Anatomy
9.
10.
11.
12.
Cluster Innards
13.
14.
15.
16.
17.
Programming for Cluster
18.
19.
20.
21.
22.
23.
24.
Programming For Cluster
25.
26.
Putting Things Together
27.
28.
Bonus
29.
Stanford lab (around
1996)
30.
The Original Google
Storage: 10x4GB (1996)
31.
Google San Francisco
(2004)
32.
A cluster of
coolness Google History
33.
Google Results Page
Per Day
34.
Baixar agora