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A Multi Colored YARN
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Near Real-Time Outlier Detection and Interpretation
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Improving Hadoop Resiliency and Operational Efficiency with EMC Isilon
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Event Stream Processing with Kafka and Samza, presented at Iowa Code Camp Fall 2014.
Event Stream Processing with Kafka and Samza
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Slide introducing Hivemall
Introduction to Hivemall
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Makoto Yui
Recommandé
A Multi Colored YARN
A Multi Colored YARN
A Multi Colored YARN
DataWorks Summit/Hadoop Summit
Near Real-Time Outlier Detection and Interpretation
Near Real-Time Outlier Detection and Interpretation
Near Real-Time Outlier Detection and Interpretation
DataWorks Summit/Hadoop Summit
Starting the Hadoop Journey at a Global Leader in Cancer Research
Starting the Hadoop Journey at a Global Leader in Cancer Research
Starting the Hadoop Journey at a Global Leader in Cancer Research
DataWorks Summit/Hadoop Summit
HDFS Tiered Storage
HDFS Tiered Storage
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DataWorks Summit/Hadoop Summit
What's new in SQL on Hadoop and Beyond
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DataWorks Summit/Hadoop Summit
Improving Hadoop Resiliency and Operational Efficiency with EMC Isilon
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Improving Hadoop Resiliency and Operational Efficiency with EMC Isilon
DataWorks Summit/Hadoop Summit
Event Stream Processing with Kafka and Samza, presented at Iowa Code Camp Fall 2014.
Event Stream Processing with Kafka and Samza
Event Stream Processing with Kafka and Samza
Zach Cox
Slide introducing Hivemall
Introduction to Hivemall
Introduction to Hivemall
Makoto Yui
Simplified Cluster Operation & Troubleshooting
Simplified Cluster Operation & Troubleshooting
Simplified Cluster Operation & Troubleshooting
DataWorks Summit/Hadoop Summit
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insights from Log Data
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
DataWorks Summit/Hadoop Summit
A talk given to JCConf 2015 on 2015/12/05. 在程式設計領域,“immutable objects” 是相當重要的設計模式。同樣的,在虛擬化及雲端時代,“immutable infrastructure” 也成為新一代的顯學。在資源及流程的充分配合下,這將會大大簡化系統的複雜度,穩定性也會大大提升。 本演講將會從觀念出發,並佐以部份實作建議,讓大家有足夠資訊來評估此架構的好處。 Video: https://youtu.be/9j008nd6-A4
Immutable infrastructure:觀念與實作 (建議)
Immutable infrastructure:觀念與實作 (建議)
William Yeh
Lambda-less Stream Processing @Scale in LinkedIn
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DataWorks Summit/Hadoop Summit
HDFS Analysis for Small Files
HDFS Analysis for Small Files
HDFS Analysis for Small Files
DataWorks Summit/Hadoop Summit
slides for MLDM Monday NeuralArt English Version https://www.youtube.com/watch?v=qzGuYuCpy1M
Neural Art (English Version)
Neural Art (English Version)
Mark Chang
Analysis of Major Trends in Big Data Analytics
Analysis of Major Trends in Big Data Analytics
Analysis of Major Trends in Big Data Analytics
DataWorks Summit/Hadoop Summit
End-to-End Security and Auditing in a Big Data as a Service Deployment
End-to-End Security and Auditing in a Big Data as a Service Deployment
End-to-End Security and Auditing in a Big Data as a Service Deployment
DataWorks Summit/Hadoop Summit
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
DataWorks Summit/Hadoop Summit
This talk explores deploying a series of small and large batch and streaming pipelines locally, to Spark and Flink clusters and to Google Cloud Dataflow services to give the audience a feel for the portability of Beam, a new portable Big Data processing framework recently submitted by Google to the Apache foundation. This talk will look at how the programming model handles late arriving data in a stream with event time, windows, and triggers.
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Data Con LA
Streaming in the Wild with Apache Flink
Streaming in the Wild with Apache Flink
Streaming in the Wild with Apache Flink
DataWorks Summit/Hadoop Summit
Producing Spark on YARN for ETL
Producing Spark on YARN for ETL
Producing Spark on YARN for ETL
DataWorks Summit/Hadoop Summit
Apache NiFi, Hortonworks Dataflow
Introduction to Apache NiFi - Seattle Scalability Meetup
Introduction to Apache NiFi - Seattle Scalability Meetup
Saptak Sen
Apache Beam (formerly Google Cloud Dataflow SDK) is an unified model and set of language-specific SDKs for defining and executing data processing workflows. You design pipelines, simplifying the mechanics of large-scale batch and streaming data processing and can run on a number of runtimes like Apache Flink, Apache Spark, and Google Cloud Dataflow (a cloud service). This presentation introduces the Beam programming model, and how you can use it to design your pipelines, transporting PCollection and applying some PTransforms. You will see how the same code will be "translated" to a target runtimes thanks to a specific runner. You will also have an overview of the current roadmap, with the new interesting features.
Introduction to Apache Beam
Introduction to Apache Beam
Jean-Baptiste Onofré
Provisioning Big Data Platform using Cloudbreak & Ambari
Provisioning Big Data Platform using Cloudbreak & Ambari
Provisioning Big Data Platform using Cloudbreak & Ambari
DataWorks Summit/Hadoop Summit
Enterprises have been using both Big Data and Cloud Computing technologies for years. Until recently, the two have not been combined. Now the agility and efficiency benefits of self-service elastic infrastructure are being extended to Big Data initiatives – whether on-premises or in the public cloud. This session at Hadoop Summit in San Jose, California (June 2016) discusses the emerging category of Big-Data-as-a-Service (BDaaS) - representing the intersection of Big Data and Cloud Computing. In this session, Kris Applegate (Cloud and Big Data Solution Architect at Dell) and Thomas Phelan (Co-Founder and Chief Architect at BlueData) outlined the following: - Innovations that paved the way for Big-Data-as-a-Service - Definition and categories of Big-Data-as-a-Service - Key considerations for Big-Data-as-a-Service in the enterprise, including public cloud or on-premises deployment options A video replay can also be found here: https://youtu.be/_ucPoTKuj8Q
The Time Has Come for Big-Data-as-a-Service
The Time Has Come for Big-Data-as-a-Service
BlueData, Inc.
Apache Kylin (incubating) is a new project to bring OLAP cubes to Hadoop. I walk through the project and describe how it works and how users see the project.
Apache Kylin - OLAP Cubes for SQL on Hadoop
Apache Kylin - OLAP Cubes for SQL on Hadoop
Ted Dunning
A PyCon TW 2016 speech about Jupyter Kernels
Jupyter Kernel: How to Speak in Another Language
Jupyter Kernel: How to Speak in Another Language
Wey-Han Liaw
深度學習 ( Deep Learning ) 是機器學習 ( Machine Learning ) 中近年來備受重視的一支,深度學習根源於類神經網路 ( Artificial Neural Network ) 模型,但今日深度學習的技術和它的前身已截然不同,目前最好的語音辨識和影像辨識系統都是以深度學習技術來完成,你可能在很多不同的場合聽過各種用深度學習做出的驚人應用 ( 例如:最近紅遍大街小巷的 AlphaGo ),聽完以後覺得心癢癢的,想要趕快使用這項強大的技術,卻不知要從何下手學習,那這門課就是你所需要的。 這門課程將由台大電機系李宏毅教授利用短短的一天議程簡介深度學習。以下是課程大綱: 什麼是深度學習 深度學習的技術表面上看起來五花八門,但其實就是三個步驟:設定好類神經網路架構、訂出學習目標、開始學習,這堂課會簡介如何使用深度學習的工具 Keras,它可以幫助你在十分鐘內完成深度學習的程式。另外,有人說深度學習很厲害、有各種吹捧,也有人說深度學習只是個噱頭,到底深度學習和其他的機器學習方法有什麼不同呢?這堂課要剖析深度學習和其它機器學習方法相比潛在的優勢。 深度學習的各種小技巧 雖然現在深度學習的工具滿街都是,想要寫一個深度學習的程式只是舉手之勞,但要得到好的成果可不簡單,訓練過程中各種枝枝節節的小技巧才是成功的關鍵。本課程中將分享深度學習的實作技巧及實戰經驗。 有記憶力的深度學習模型 機器需要記憶力才能做更多事情,這段課程要講解遞迴式類神經網路 ( Recurrent Neural Network ),告訴大家深度學習模型如何可以有記憶力。 深度學習應用與展望 深度學習可以拿來做甚麼?怎麼用深度學習做語音辨識?怎麼用深度學習做問答系統?接下來深度學習的研究者們在意的是什麼樣的問題呢? 本課程希望幫助大家不只能了解深度學習,也可以有效率地上手深度學習,用在手邊的問題上。無論是從未嘗試過深度學習的新手,還是已經有一點經驗想更深入學習,都可以在這門課中有所收穫。
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
台灣資料科學年會
Running Apache Spark & Apache Zeppelin in Production
Running Apache Spark & Apache Zeppelin in Production
Running Apache Spark & Apache Zeppelin in Production
DataWorks Summit/Hadoop Summit
State of Security: Apache Spark & Apache Zeppelin
State of Security: Apache Spark & Apache Zeppelin
State of Security: Apache Spark & Apache Zeppelin
DataWorks Summit/Hadoop Summit
Unleashing the Power of Apache Atlas with Apache Ranger Slides
Unleashing the Power of Apache Atlas with Apache Ranger
Unleashing the Power of Apache Atlas with Apache Ranger
DataWorks Summit/Hadoop Summit
Contenu connexe
En vedette
Simplified Cluster Operation & Troubleshooting
Simplified Cluster Operation & Troubleshooting
Simplified Cluster Operation & Troubleshooting
DataWorks Summit/Hadoop Summit
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insights from Log Data
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
DataWorks Summit/Hadoop Summit
A talk given to JCConf 2015 on 2015/12/05. 在程式設計領域,“immutable objects” 是相當重要的設計模式。同樣的,在虛擬化及雲端時代,“immutable infrastructure” 也成為新一代的顯學。在資源及流程的充分配合下,這將會大大簡化系統的複雜度,穩定性也會大大提升。 本演講將會從觀念出發,並佐以部份實作建議,讓大家有足夠資訊來評估此架構的好處。 Video: https://youtu.be/9j008nd6-A4
Immutable infrastructure:觀念與實作 (建議)
Immutable infrastructure:觀念與實作 (建議)
William Yeh
Lambda-less Stream Processing @Scale in LinkedIn
Lambda-less Stream Processing @Scale in LinkedIn
Lambda-less Stream Processing @Scale in LinkedIn
DataWorks Summit/Hadoop Summit
HDFS Analysis for Small Files
HDFS Analysis for Small Files
HDFS Analysis for Small Files
DataWorks Summit/Hadoop Summit
slides for MLDM Monday NeuralArt English Version https://www.youtube.com/watch?v=qzGuYuCpy1M
Neural Art (English Version)
Neural Art (English Version)
Mark Chang
Analysis of Major Trends in Big Data Analytics
Analysis of Major Trends in Big Data Analytics
Analysis of Major Trends in Big Data Analytics
DataWorks Summit/Hadoop Summit
End-to-End Security and Auditing in a Big Data as a Service Deployment
End-to-End Security and Auditing in a Big Data as a Service Deployment
End-to-End Security and Auditing in a Big Data as a Service Deployment
DataWorks Summit/Hadoop Summit
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
DataWorks Summit/Hadoop Summit
This talk explores deploying a series of small and large batch and streaming pipelines locally, to Spark and Flink clusters and to Google Cloud Dataflow services to give the audience a feel for the portability of Beam, a new portable Big Data processing framework recently submitted by Google to the Apache foundation. This talk will look at how the programming model handles late arriving data in a stream with event time, windows, and triggers.
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Data Con LA
Streaming in the Wild with Apache Flink
Streaming in the Wild with Apache Flink
Streaming in the Wild with Apache Flink
DataWorks Summit/Hadoop Summit
Producing Spark on YARN for ETL
Producing Spark on YARN for ETL
Producing Spark on YARN for ETL
DataWorks Summit/Hadoop Summit
Apache NiFi, Hortonworks Dataflow
Introduction to Apache NiFi - Seattle Scalability Meetup
Introduction to Apache NiFi - Seattle Scalability Meetup
Saptak Sen
Apache Beam (formerly Google Cloud Dataflow SDK) is an unified model and set of language-specific SDKs for defining and executing data processing workflows. You design pipelines, simplifying the mechanics of large-scale batch and streaming data processing and can run on a number of runtimes like Apache Flink, Apache Spark, and Google Cloud Dataflow (a cloud service). This presentation introduces the Beam programming model, and how you can use it to design your pipelines, transporting PCollection and applying some PTransforms. You will see how the same code will be "translated" to a target runtimes thanks to a specific runner. You will also have an overview of the current roadmap, with the new interesting features.
Introduction to Apache Beam
Introduction to Apache Beam
Jean-Baptiste Onofré
Provisioning Big Data Platform using Cloudbreak & Ambari
Provisioning Big Data Platform using Cloudbreak & Ambari
Provisioning Big Data Platform using Cloudbreak & Ambari
DataWorks Summit/Hadoop Summit
Enterprises have been using both Big Data and Cloud Computing technologies for years. Until recently, the two have not been combined. Now the agility and efficiency benefits of self-service elastic infrastructure are being extended to Big Data initiatives – whether on-premises or in the public cloud. This session at Hadoop Summit in San Jose, California (June 2016) discusses the emerging category of Big-Data-as-a-Service (BDaaS) - representing the intersection of Big Data and Cloud Computing. In this session, Kris Applegate (Cloud and Big Data Solution Architect at Dell) and Thomas Phelan (Co-Founder and Chief Architect at BlueData) outlined the following: - Innovations that paved the way for Big-Data-as-a-Service - Definition and categories of Big-Data-as-a-Service - Key considerations for Big-Data-as-a-Service in the enterprise, including public cloud or on-premises deployment options A video replay can also be found here: https://youtu.be/_ucPoTKuj8Q
The Time Has Come for Big-Data-as-a-Service
The Time Has Come for Big-Data-as-a-Service
BlueData, Inc.
Apache Kylin (incubating) is a new project to bring OLAP cubes to Hadoop. I walk through the project and describe how it works and how users see the project.
Apache Kylin - OLAP Cubes for SQL on Hadoop
Apache Kylin - OLAP Cubes for SQL on Hadoop
Ted Dunning
A PyCon TW 2016 speech about Jupyter Kernels
Jupyter Kernel: How to Speak in Another Language
Jupyter Kernel: How to Speak in Another Language
Wey-Han Liaw
深度學習 ( Deep Learning ) 是機器學習 ( Machine Learning ) 中近年來備受重視的一支,深度學習根源於類神經網路 ( Artificial Neural Network ) 模型,但今日深度學習的技術和它的前身已截然不同,目前最好的語音辨識和影像辨識系統都是以深度學習技術來完成,你可能在很多不同的場合聽過各種用深度學習做出的驚人應用 ( 例如:最近紅遍大街小巷的 AlphaGo ),聽完以後覺得心癢癢的,想要趕快使用這項強大的技術,卻不知要從何下手學習,那這門課就是你所需要的。 這門課程將由台大電機系李宏毅教授利用短短的一天議程簡介深度學習。以下是課程大綱: 什麼是深度學習 深度學習的技術表面上看起來五花八門,但其實就是三個步驟:設定好類神經網路架構、訂出學習目標、開始學習,這堂課會簡介如何使用深度學習的工具 Keras,它可以幫助你在十分鐘內完成深度學習的程式。另外,有人說深度學習很厲害、有各種吹捧,也有人說深度學習只是個噱頭,到底深度學習和其他的機器學習方法有什麼不同呢?這堂課要剖析深度學習和其它機器學習方法相比潛在的優勢。 深度學習的各種小技巧 雖然現在深度學習的工具滿街都是,想要寫一個深度學習的程式只是舉手之勞,但要得到好的成果可不簡單,訓練過程中各種枝枝節節的小技巧才是成功的關鍵。本課程中將分享深度學習的實作技巧及實戰經驗。 有記憶力的深度學習模型 機器需要記憶力才能做更多事情,這段課程要講解遞迴式類神經網路 ( Recurrent Neural Network ),告訴大家深度學習模型如何可以有記憶力。 深度學習應用與展望 深度學習可以拿來做甚麼?怎麼用深度學習做語音辨識?怎麼用深度學習做問答系統?接下來深度學習的研究者們在意的是什麼樣的問題呢? 本課程希望幫助大家不只能了解深度學習,也可以有效率地上手深度學習,用在手邊的問題上。無論是從未嘗試過深度學習的新手,還是已經有一點經驗想更深入學習,都可以在這門課中有所收穫。
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
台灣資料科學年會
En vedette
(19)
Simplified Cluster Operation & Troubleshooting
Simplified Cluster Operation & Troubleshooting
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
Building a Graph Database in Neo4j with Spark & Spark SQL to gain new insight...
Immutable infrastructure:觀念與實作 (建議)
Immutable infrastructure:觀念與實作 (建議)
Lambda-less Stream Processing @Scale in LinkedIn
Lambda-less Stream Processing @Scale in LinkedIn
HDFS Analysis for Small Files
HDFS Analysis for Small Files
Neural Art (English Version)
Neural Art (English Version)
Analysis of Major Trends in Big Data Analytics
Analysis of Major Trends in Big Data Analytics
End-to-End Security and Auditing in a Big Data as a Service Deployment
End-to-End Security and Auditing in a Big Data as a Service Deployment
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Bridging the gap of Relational to Hadoop using Sqoop @ Expedia
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Streaming in the Wild with Apache Flink
Streaming in the Wild with Apache Flink
Producing Spark on YARN for ETL
Producing Spark on YARN for ETL
Introduction to Apache NiFi - Seattle Scalability Meetup
Introduction to Apache NiFi - Seattle Scalability Meetup
Introduction to Apache Beam
Introduction to Apache Beam
Provisioning Big Data Platform using Cloudbreak & Ambari
Provisioning Big Data Platform using Cloudbreak & Ambari
The Time Has Come for Big-Data-as-a-Service
The Time Has Come for Big-Data-as-a-Service
Apache Kylin - OLAP Cubes for SQL on Hadoop
Apache Kylin - OLAP Cubes for SQL on Hadoop
Jupyter Kernel: How to Speak in Another Language
Jupyter Kernel: How to Speak in Another Language
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
Plus de DataWorks Summit/Hadoop Summit
Running Apache Spark & Apache Zeppelin in Production
Running Apache Spark & Apache Zeppelin in Production
Running Apache Spark & Apache Zeppelin in Production
DataWorks Summit/Hadoop Summit
State of Security: Apache Spark & Apache Zeppelin
State of Security: Apache Spark & Apache Zeppelin
State of Security: Apache Spark & Apache Zeppelin
DataWorks Summit/Hadoop Summit
Unleashing the Power of Apache Atlas with Apache Ranger Slides
Unleashing the Power of Apache Atlas with Apache Ranger
Unleashing the Power of Apache Atlas with Apache Ranger
DataWorks Summit/Hadoop Summit
Enabling Digital Diagnostics with a Data Science Platform Slides
Enabling Digital Diagnostics with a Data Science Platform
Enabling Digital Diagnostics with a Data Science Platform
DataWorks Summit/Hadoop Summit
Revolutionize Text Mining with Spark and Zeppelin Slides
Revolutionize Text Mining with Spark and Zeppelin
Revolutionize Text Mining with Spark and Zeppelin
DataWorks Summit/Hadoop Summit
Double Your Hadoop Performance with Hortonworks SmartSense Slides
Double Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSense
DataWorks Summit/Hadoop Summit
Slides from the Hadoop Crash Course at DataWorks Summit Munich 2017
Hadoop Crash Course
Hadoop Crash Course
DataWorks Summit/Hadoop Summit
Slides from the Data Science Crash Course at DataWorks Summit Munich 2017
Data Science Crash Course
Data Science Crash Course
DataWorks Summit/Hadoop Summit
Slides from the Apache Spark Crash Course at DataWorks Summit Munich 2017
Apache Spark Crash Course
Apache Spark Crash Course
DataWorks Summit/Hadoop Summit
Slides from the Apache NiFi CrashCourse at DataWorks Summit Munich 2017
Dataflow with Apache NiFi
Dataflow with Apache NiFi
DataWorks Summit/Hadoop Summit
Many Organizations are currently processing various types of data and in different formats. Most often this data will be in free form, As the consumers of this data growing it’s imperative that this free-flowing data needs to adhere to a schema. It will help data consumers to have an expectation of about the type of data they are getting and also they will be able to avoid immediate impact if the upstream source changes its format. Having a uniform schema representation also gives the Data Pipeline a really easy way to integrate and support various systems that use different data formats. SchemaRegistry is a central repository for storing, evolving schemas. It provides an API & tooling to help developers and users to register a schema and consume that schema without having any impact if the schema changed. Users can tag different schemas and versions, register for notifications of schema changes with versions etc. In this talk, we will go through the need for a schema registry and schema evolution and showcase the integration with Apache NiFi, Apache Kafka, Apache Storm.
Schema Registry - Set you Data Free
Schema Registry - Set you Data Free
DataWorks Summit/Hadoop Summit
There is increasing need for large-scale recommendation systems. Typical solutions rely on periodically retrained batch algorithms, but for massive amounts of data, training a new model could take hours. This is a problem when the model needs to be more up-to-date. For example, when recommending TV programs while they are being transmitted the model should take into consideration users who watch a program at that time. The promise of online recommendation systems is fast adaptation to changes, but methods of online machine learning from streams is commonly believed to be more restricted and hence less accurate than batch trained models. Combining batch and online learning could lead to a quickly adapting recommendation system with increased accuracy. However, designing a scalable data system for uniting batch and online recommendation algorithms is a challenging task. In this talk we present our experiences in creating such a recommendation engine with Apache Flink and Apache Spark.
Building a Large-Scale, Adaptive Recommendation Engine with Apache Flink and ...
Building a Large-Scale, Adaptive Recommendation Engine with Apache Flink and ...
DataWorks Summit/Hadoop Summit
DeepLearning is not just a hype - it outperforms state-of-the-art ML algorithms. One by one. In this talk we will show how DeepLearning can be used for detecting anomalies on IoT sensor data streams at high speed using DeepLearning4J on top of different BigData engines like ApacheSpark and ApacheFlink. Key in this talk is the absence of any large training corpus since we are using unsupervised machine learning - a domain current DL research threats step-motherly. As we can see in this demo LSTM networks can learn very complex system behavior - in this case data coming from a physical model simulating bearing vibration data. Once draw back of DeepLearning is that normally a very large labaled training data set is required. This is particularly interesting since we can show how unsupervised machine learning can be used in conjunction with DeepLearning - no labeled data set is necessary. We are able to detect anomalies and predict braking bearings with 10 fold confidence. All examples and all code will be made publicly available and open sources. Only open source components are used.
Real-Time Anomaly Detection using LSTM Auto-Encoders with Deep Learning4J on ...
Real-Time Anomaly Detection using LSTM Auto-Encoders with Deep Learning4J on ...
DataWorks Summit/Hadoop Summit
QE automation for large systems is a great step forward in increasing system reliability. In the big-data world, multiple components have to come together to provide end-users with business outcomes. This means, that QE Automations scenarios need to be detailed around actual use cases, cross-cutting components. The system tests potentially generate large amounts of data on a recurring basis, verifying which is a tedious job. Given the multiple levels of indirection, the false positives of actual defects are higher, and are generally wasteful. At Hortonworks, we’ve designed and implemented Automated Log Analysis System - Mool, using Statistical Data Science and ML. Currently the work in progress has a batch data pipeline with a following ensemble ML pipeline which feeds into the recommendation engine. The system identifies the root cause of test failures, by correlating the failing test cases, with current and historical error records, to identify root cause of errors across multiple components. The system works in unsupervised mode with no perfect model/stable builds/source-code version to refer to. In addition the system provides limited recommendations to file/open past tickets and compares run-profiles with past runs.
Mool - Automated Log Analysis using Data Science and ML
Mool - Automated Log Analysis using Data Science and ML
DataWorks Summit/Hadoop Summit
Improving business performance is never easy! The Natixis Pack is like Rugby. Working together is key to scrum success. Our data journey would undoubtedly have been so much more difficult if we had not made the move together. This session is the story of how ‘The Natixis Pack’ has driven change in its current IT architecture so that legacy systems can leverage some of the many components in Hortonworks Data Platform in order to improve the performance of business applications. During this session, you will hear: • How and why the business and IT requirements originated • How we leverage the platform to fulfill security and production requirements • How we organize a community to: o Guard all the players, no one gets left on the ground! o Us the platform appropriately (Not every problem is eligible for Big Data and standard databases are not dead) • What are the most usable, the most interesting and the most promising technologies in the Apache Hadoop community We will finish the story of a successful rugby team with insight into the special skills needed from each player to win the match! DETAILS This session is part business, part technical. We will talk about infrastructure, security and project management as well as the industrial usage of Hive, HBase, Kafka, and Spark within an industrial Corporate and Investment Bank environment, framed by regulatory constraints.
How Hadoop Makes the Natixis Pack More Efficient
How Hadoop Makes the Natixis Pack More Efficient
DataWorks Summit/Hadoop Summit
HBase hast established itself as the backend for many operational and interactive use-cases, powering well-known services that support millions of users and thousands of concurrent requests. In terms of features HBase has come a long way, overing advanced options such as multi-level caching on- and off-heap, pluggable request handling, fast recovery options such as region replicas, table snapshots for data governance, tuneable write-ahead logging and so on. This talk is based on the research for the an upcoming second release of the speakers HBase book, correlated with the practical experience in medium to large HBase projects around the world. You will learn how to plan for HBase, starting with the selection of the matching use-cases, to determining the number of servers needed, leading into performance tuning options. There is no reason to be afraid of using HBase, but knowing its basic premises and technical choices will make using it much more successful. You will also learn about many of the new features of HBase up to version 1.3, and where they are applicable.
HBase in Practice
HBase in Practice
DataWorks Summit/Hadoop Summit
There has been an explosion of data digitising our physical world – from cameras, environmental sensors and embedded devices, right down to the phones in our pockets. Which means that, now, companies have new ways to transform their businesses – both operationally, and through their products and services – by leveraging this data and applying fresh analytical techniques to make sense of it. But are they ready? The answer is “no” in most cases. In this session, we’ll be discussing the challenges facing companies trying to embrace the Analytics of Things, and how Teradata has helped customers work through and turn those challenges to their advantage.
The Challenge of Driving Business Value from the Analytics of Things (AOT)
The Challenge of Driving Business Value from the Analytics of Things (AOT)
DataWorks Summit/Hadoop Summit
In this talk, we will present a new distribution of Hadoop, Hops, that can scale the Hadoop Filesystem (HDFS) by 16X, from 70K ops/s to 1.2 million ops/s on Spotiy's industrial Hadoop workload. Hops is an open-source distribution of Apache Hadoop that supports distributed metadata for HSFS (HopsFS) and the ResourceManager in Apache YARN. HopsFS is the first production-grade distributed hierarchical filesystem to store its metadata normalized in an in-memory, shared nothing database. For YARN, we will discuss optimizations that enable 2X throughput increases for the Capacity scheduler, enabling scalability to clusters with >20K nodes. We will discuss the journey of how we reached this milestone, discussing some of the challenges involved in efficiently and safely mapping hierarchical filesystem metadata state and operations onto a shared-nothing, in-memory database. We will also discuss the key database features needed for extreme scaling, such as multi-partition transactions, partition-pruned index scans, distribution-aware transactions, and the streaming changelog API. Hops (www.hops.io) is Apache-licensed open-source and supports a pluggable database backend for distributed metadata, although it currently only support MySQL Cluster as a backend. Hops opens up the potential for new directions for Hadoop when metadata is available for tinkering in a mature relational database.
Breaking the 1 Million OPS/SEC Barrier in HOPS Hadoop
Breaking the 1 Million OPS/SEC Barrier in HOPS Hadoop
DataWorks Summit/Hadoop Summit
In high-risk manufacturing industries, regulatory bodies stipulate continuous monitoring and documentation of critical product attributes and process parameters. On the other hand, sensor data coming from production processes can be used to gain deeper insights into optimization potentials. By establishing a central production data lake based on Hadoop and using Talend Data Fabric as a basis for a unified architecture, the German pharmaceutical company HERMES Arzneimittel was able to cater to compliance requirements as well as unlock new business opportunities, enabling use cases like predictive maintenance, predictive quality assurance or open world analytics. Learn how the Talend Data Fabric enabled HERMES Arzneimittel to become data-driven and transform Big Data projects from challenging, hard to maintain hand-coding jobs to repeatable, future-proof integration designs. Talend Data Fabric combines Talend products into a common set of powerful, easy-to-use tools for any integration style: real-time or batch, big data or master data management, on-premises or in the cloud.
From Regulatory Process Verification to Predictive Maintenance and Beyond wit...
From Regulatory Process Verification to Predictive Maintenance and Beyond wit...
DataWorks Summit/Hadoop Summit
While you could be tempted assuming data is already safe in a single Hadoop cluster, in practice you have to plan for more. Questions like: "What happens if the entire datacenter fails?, or "How do I recover into a consistent state of data, so that applications can continue to run?" are not a all trivial to answer for Hadoop. Did you know that HDFS snapshots are handling open files not as immutable? Or that HBase snapshots are executed asynchronously across servers and therefore cannot guarantee atomicity for cross region updates (which includes tables)? There is no unified and coherent data backup strategy, nor is there tooling available for many of the included components to build such a strategy. The Hadoop distributions largely avoid this topic as most customers are still in the "single use-case" or PoC phase, where data governance as far as backup and disaster recovery (BDR) is concerned are not (yet) important. This talk first is introducing you to the overarching issue and difficulties of backup and data safety, looking at each of the many components in Hadoop, including HDFS, HBase, YARN, Oozie, the management components and so on, to finally show you a viable approach using built-in tools. You will also learn not to take this topic lightheartedly and what is needed to implement and guarantee a continuous operation of Hadoop cluster based solutions.
Backup and Disaster Recovery in Hadoop
Backup and Disaster Recovery in Hadoop
DataWorks Summit/Hadoop Summit
Plus de DataWorks Summit/Hadoop Summit
(20)
Running Apache Spark & Apache Zeppelin in Production
Running Apache Spark & Apache Zeppelin in Production
State of Security: Apache Spark & Apache Zeppelin
State of Security: Apache Spark & Apache Zeppelin
Unleashing the Power of Apache Atlas with Apache Ranger
Unleashing the Power of Apache Atlas with Apache Ranger
Enabling Digital Diagnostics with a Data Science Platform
Enabling Digital Diagnostics with a Data Science Platform
Revolutionize Text Mining with Spark and Zeppelin
Revolutionize Text Mining with Spark and Zeppelin
Double Your Hadoop Performance with Hortonworks SmartSense
Double Your Hadoop Performance with Hortonworks SmartSense
Hadoop Crash Course
Hadoop Crash Course
Data Science Crash Course
Data Science Crash Course
Apache Spark Crash Course
Apache Spark Crash Course
Dataflow with Apache NiFi
Dataflow with Apache NiFi
Schema Registry - Set you Data Free
Schema Registry - Set you Data Free
Building a Large-Scale, Adaptive Recommendation Engine with Apache Flink and ...
Building a Large-Scale, Adaptive Recommendation Engine with Apache Flink and ...
Real-Time Anomaly Detection using LSTM Auto-Encoders with Deep Learning4J on ...
Real-Time Anomaly Detection using LSTM Auto-Encoders with Deep Learning4J on ...
Mool - Automated Log Analysis using Data Science and ML
Mool - Automated Log Analysis using Data Science and ML
How Hadoop Makes the Natixis Pack More Efficient
How Hadoop Makes the Natixis Pack More Efficient
HBase in Practice
HBase in Practice
The Challenge of Driving Business Value from the Analytics of Things (AOT)
The Challenge of Driving Business Value from the Analytics of Things (AOT)
Breaking the 1 Million OPS/SEC Barrier in HOPS Hadoop
Breaking the 1 Million OPS/SEC Barrier in HOPS Hadoop
From Regulatory Process Verification to Predictive Maintenance and Beyond wit...
From Regulatory Process Verification to Predictive Maintenance and Beyond wit...
Backup and Disaster Recovery in Hadoop
Backup and Disaster Recovery in Hadoop
Dernier
Read about the journey the Adobe Experience Manager team has gone through in order to become and scale API-first throughout the organisation.
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
Radu Cotescu
Abhishek Deb(1), Mr Abdul Kalam(2) M. Des (UX) , School of Design, DIT University , Dehradun. This paper explores the future potential of AI-enabled smartphone processors, aiming to investigate the advancements, capabilities, and implications of integrating artificial intelligence (AI) into smartphone technology. The research study goals consist of evaluating the development of AI in mobile phone processors, analyzing the existing state as well as abilities of AI-enabled cpus determining future patterns as well as chances together with reviewing obstacles as well as factors to consider for more growth.
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
debabhi2
Details
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
Sara Mae O’Brien Scott and Tatiana Baquero Cakici, Senior Consultants at Enterprise Knowledge (EK), presented “AI Fast Track to Search-Focused AI Solutions” at the Information Architecture Conference (IAC24) that took place on April 11, 2024 in Seattle, WA. In their presentation, O’Brien-Scott and Cakici focused on what Enterprise AI is, why it is important, and what it takes to empower organizations to get started on a search-based AI journey and stay on track. The presentation explored the complexities of enterprise search challenges and how IA principles can be leveraged to provide AI solutions through the use of a semantic layer. O’Brien-Scott and Cakici showcased a case study where a taxonomy, an ontology, and a knowledge graph were used to structure content at a healthcare workforce solutions organization, providing personalized content recommendations and increasing content findability. In this session, participants gained insights about the following: Most common types of AI categories and use cases; Recommended steps to design and implement taxonomies and ontologies, ensuring they evolve effectively and support the organization’s search objectives; Taxonomy and ontology design considerations and best practices; Real-world AI applications that illustrated the value of taxonomies, ontologies, and knowledge graphs; and Tools, roles, and skills to design and implement AI-powered search solutions.
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
The presentation explores the development and application of artificial intelligence (AI) from its inception to its current status in the modern world. The term "artificial intelligence" was first coined by John McCarthy in 1956 to describe efforts to develop computer programs capable of performing tasks that typically require human intelligence. This concept was first introduced at a conference held at Dartmouth College, where programs demonstrated capabilities such as playing chess, proving theorems, and interpreting texts. In the early stages, Alan Turing contributed to the field by defining intelligence as the ability of a being to respond to certain questions intelligently, proposing what is now known as the Turing Test to evaluate the presence of intelligent behavior in machines. As the decades progressed, AI evolved significantly. The 1980s focused on machine learning, teaching computers to learn from data, leading to the development of models that could improve their performance based on their experiences. The 1990s and 2000s saw further advances in algorithms and computational power, which allowed for more sophisticated data analysis techniques, including data mining. By the 2010s, the proliferation of big data and the refinement of deep learning techniques enabled AI to become mainstream. Notable milestones included the success of Google's AlphaGo and advancements in autonomous vehicles by companies like Tesla and Waymo. A major theme of the presentation is the application of generative AI, which has been used for tasks such as natural language text generation, translation, and question answering. Generative AI uses large datasets to train models that can then produce new, coherent pieces of text or other media. The presentation also discusses the ethical implications and the need for regulation in AI, highlighting issues such as privacy, bias, and the potential for misuse. These concerns have prompted calls for comprehensive regulations to ensure the safe and equitable use of AI technologies. Artificial intelligence has also played a significant role in healthcare, particularly highlighted during the COVID-19 pandemic, where it was used in drug discovery, vaccine development, and analyzing the spread of the virus. The capabilities of AI in healthcare are vast, ranging from medical diagnostics to personalized medicine, demonstrating the technology's potential to revolutionize fields beyond just technical or consumer applications. In conclusion, AI continues to be a rapidly evolving field with significant implications for various aspects of society. The development from theoretical concepts to real-world applications illustrates both the potential benefits and the challenges that come with integrating advanced technologies into everyday life. The ongoing discussion about AI ethics and regulation underscores the importance of managing these technologies responsibly to maximize their their benefits while minimizing potential harms.
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
These are the slides delivered in a workshop at Data Innovation Summit Stockholm April 2024, by Kristof Neys and Jonas El Reweny.
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Neo4j
Building Digital Trust in a Digital Economy Veronica Tan, Director - Cyber Security Agency of Singapore Apidays Singapore 2024: Connecting Customers, Business and Technology (April 17 & 18, 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 Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
apidays
Presented by Sergio Licea and John Hendershot
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ThousandEyes
Presentation from Melissa Klemke from her talk at Product Anonymous in April 2024
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
Product Anonymous
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08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Delhi Call girls
Presentation on the progress in the Domino Container community project as delivered at the Engage 2024 conference
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
Martijn de Jong
In this session, we will delve into strategic approaches for optimizing knowledge management within Microsoft 365, amidst the evolving landscape of Copilot. From leveraging automatic metadata classification and permission governance with SharePoint Premium, to unlocking Viva Engage for the cultivation of knowledge and communities, you will gain actionable insights to bolster your organization's knowledge-sharing initiatives. In this session, we will also explore how to facilitate solutions to enable your employees to find answers and expertise within Microsoft 365. You will leave equipped with practical techniques and a deeper understanding of how there is more to effective knowledge management than just enabling Copilot, but building actual solutions to prepare the knowledge that Copilot and your employees can use.
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Drew Madelung
MySQL Webinar, presented on the 25th of April, 2024. Summary: MySQL solutions enable the deployment of diverse Database Architectures tailored to specific needs, including High Availability, Disaster Recovery, and Read Scale-Out. With MySQL Shell's AdminAPI, administrators can seamlessly set up, manage, and monitor these solutions, ensuring efficiency and ease of use in their administration. MySQL Router, on the other hand, provides transparent routing from the application traffic to the backend servers in the architectures, requiring minimal configuration. Completely built in-house and supported by Oracle, these solutions have been adopted by enterprises of all sizes for their business-critical applications. In this presentation, we'll delve into various database architecture solutions to help you choose the right one based on your business requirements. Focusing on technical details and the latest features to maximize the potential of these solutions.
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Miguel Araújo
The Raspberry Pi 5 was announced on October 2023. This new version of the popular embedded device comes with a new iteration of Broadcom’s VideoCore GPU platform, and was released with a fully open source driver stack, developed by Igalia. The presentation will discuss some of the major changes required to support this new Video Core iteration, the challenges we faced in the process and the solutions we provided in order to deliver conformant OpenGL ES and Vulkan drivers. The talk will also cover the next steps for the open source Raspberry Pi 5 graphics stack. (c) Embedded Open Source Summit 2024 April 16-18, 2024 Seattle, Washington (US) https://events.linuxfoundation.org/embedded-open-source-summit/ https://eoss24.sched.com/event/1aBEx
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Igalia
My presentation at the Lehigh Carbon Community College (LCCC) NSA GenCyber Cyber Security Day event that is intended to foster an interest in the cyber security field amongst college students.
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
Michael W. Hawkins
If you are a Domino Administrator in any size company you already have a range of skills that make you an expert administrator across many platforms and technologies. In this session Gab explains how to apply those skills and that knowledge to take your career wherever you want to go.
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
Gabriella Davis
I've been in the field of "Cyber Security" in its many incarnations for about 25 years. In that time I've learned some lessons, some the hard way. Here are my slides presented at BSides New Orleans in April 2024.
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
Rafal Los
Explore the leading Large Language Models (LLMs) and their capabilities with a comprehensive evaluation. Dive into their performance, architecture, and applications to gain insights into the state-of-the-art in natural language processing. Discover which LLM best suits your needs and stay ahead in the world of AI-driven language understanding.
Evaluating the top large language models.pdf
Evaluating the top large language models.pdf
ChristopherTHyatt
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
What are drone anti-jamming systems? The drone anti-jamming systems and anti-spoof technology protect against interference, jamming, and spoofing of the UAVs. To protect their security, countries are beginning to research drone anti-jamming systems, also known as drone strike weapons. The anti-jam and anti-spoof technology protects against interference, jamming and spoofing. A drone strike weapon is a drone attack weapon that can attack and destroy enemy drones. So what is so unique about this amazing system?
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
Antenna Manufacturer Coco
Dernier
(20)
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
Evaluating the top large language models.pdf
Evaluating the top large language models.pdf
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
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