Submit Search
Upload
Hbase_certificate
•
0 likes
•
104 views
Priyanka Pal
Follow
Report
Share
Report
Share
1 of 1
Download now
Download to read offline
Recommended
Hive_certificate
Hive_certificate
Priyanka Pal
sqoop_flume_certificate
sqoop_flume_certificate
Priyanka Pal
Print_your_certificate (2)
Print_your_certificate (2)
Priyanka Pal
The AWS Big Data services are inherently built to run at @scale. In this session, you will learn how to develop an enterprise scale big data application using AWS services such as Amazon EMR, Amazon Redshift & Redshift Spectrum, Amazon Athena, Amazon Elasticsearch Service, Amazon Kinesis, Amazon QuickSight and AWS Glue. This session will also cover different architectural patterns and customer use cases.
Big Data@Scale
Big Data@Scale
Amazon Web Services
This presentation from the AWS Lab at Cloud Expo Europe 2014 explores large scale data analysis on AWS. The cost of data generation is falling. Storing, analyzing and sharing data using the tools that AWS offers a low cost and easy to use solution for creating value from your data assets.
Large Scale Data Analysis with AWS
Large Scale Data Analysis with AWS
Amazon Web Services
Understanding Big Data with AWS Analytics, originally presented at AWS Vancouver Initiate on September 27, 2018.
Finding Meaning in the Noise: Understanding Big Data with AWS Analytics
Finding Meaning in the Noise: Understanding Big Data with AWS Analytics
Amazon Web Services
Building a Modern Data Platform on AWS
Building a Modern Data Platform on AWS
Amazon Web Services
Data Analytics Week at the San Francisco Loft How Amazon.com Uses AWS Analytics An inside look at how a global e-commerce firm uses AWS technologies to build a scalable environment for data and analytics. We'll look at how Amazon is evolving the world of data warehousing with a combination of a data lake and parallel scalable compute engines including Amazon EMR and Amazon Redshift. Speakers: Saurabh Shrivastava - Partner Solutions Architect, AWS Andre Hass - Specialist Technical Account Manager (Redshift), AWS
How Amazon.com Uses AWS Analytics: Data Analytics Week SF
How Amazon.com Uses AWS Analytics: Data Analytics Week SF
Amazon Web Services
Recommended
Hive_certificate
Hive_certificate
Priyanka Pal
sqoop_flume_certificate
sqoop_flume_certificate
Priyanka Pal
Print_your_certificate (2)
Print_your_certificate (2)
Priyanka Pal
The AWS Big Data services are inherently built to run at @scale. In this session, you will learn how to develop an enterprise scale big data application using AWS services such as Amazon EMR, Amazon Redshift & Redshift Spectrum, Amazon Athena, Amazon Elasticsearch Service, Amazon Kinesis, Amazon QuickSight and AWS Glue. This session will also cover different architectural patterns and customer use cases.
Big Data@Scale
Big Data@Scale
Amazon Web Services
This presentation from the AWS Lab at Cloud Expo Europe 2014 explores large scale data analysis on AWS. The cost of data generation is falling. Storing, analyzing and sharing data using the tools that AWS offers a low cost and easy to use solution for creating value from your data assets.
Large Scale Data Analysis with AWS
Large Scale Data Analysis with AWS
Amazon Web Services
Understanding Big Data with AWS Analytics, originally presented at AWS Vancouver Initiate on September 27, 2018.
Finding Meaning in the Noise: Understanding Big Data with AWS Analytics
Finding Meaning in the Noise: Understanding Big Data with AWS Analytics
Amazon Web Services
Building a Modern Data Platform on AWS
Building a Modern Data Platform on AWS
Amazon Web Services
Data Analytics Week at the San Francisco Loft How Amazon.com Uses AWS Analytics An inside look at how a global e-commerce firm uses AWS technologies to build a scalable environment for data and analytics. We'll look at how Amazon is evolving the world of data warehousing with a combination of a data lake and parallel scalable compute engines including Amazon EMR and Amazon Redshift. Speakers: Saurabh Shrivastava - Partner Solutions Architect, AWS Andre Hass - Specialist Technical Account Manager (Redshift), AWS
How Amazon.com Uses AWS Analytics: Data Analytics Week SF
How Amazon.com Uses AWS Analytics: Data Analytics Week SF
Amazon Web Services
Build a simple Data Lake on AWS using a combination of services, including Amazon Managed Workflows for Apache Airflow (Amazon MWAA), AWS Glue, AWS Glue Studio, Amazon Athena, and Amazon S3. Blog post and link to the video: https://garystafford.medium.com/building-a-data-lake-with-apache-airflow-b48bd953c2b
Building Data Lakes with Apache Airflow
Building Data Lakes with Apache Airflow
Gary Stafford
AWS-powered services for analytics can handle the scale, agility, and flexibility required to combine different types of data and analytics approaches that will allow you to transform your data into a valuable corporate asset. In this session, AWS will provide an overview of the different AWS services available for your data analytics needs. You can combine these blocks to build data flows that will extend your organization’s agility, ability to derive more insights and value from its data, and capability to adopt more sophisticated analytics tools and processes as your needs evolve. In the second part of the session, Paddy Power Betfair’s Data team will discuss the adoption and large scale operation of a broad range of AWS services that make up PPB’s scalable, mixed workload, multi-brand data platform. The data capabilities developed by PPB and powered by AWS were implemented to enable low-latency, high-volume and near real-time advanced analytics use cases, in the highly regulated and fast-paced betting industry. This was only possible through a focus on automation, innovation and continuous improvement.
Building a modern data platform in AWS
Building a modern data platform in AWS
Amazon Web Services
Speaker: Dean Samuels, Head of Solutions Architect, Hong Kong and Taiwan, AWS
Welcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution Overview
Amazon Web Services
Modern data is massive, quickly evolving, unstructured, and increasingly hard to catalog and understand from multiple consumers and applications. This session will guide you though the best practices for designing a robust data architecture, highlightning the benefits and typical challenges of data lakes and data warehouses. We will build a scalable solution based on managed services such as Amazon Athena, AWS Glue, and AWS Lake Formation.
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Amazon Web Services
Talk at Apache BigData 2017, Miami
Apache Hivemall @ Apache BigData '17, Miami
Apache Hivemall @ Apache BigData '17, Miami
Makoto Yui
Large companies see an opportunity to replace expensive legacy data warehouse applications with Big Data technologies. But how realistic is the notion of switching from tried and true data warehouse implementations to something that's still maturing, and what are the pitfalls? What will a business user need to learn in order to adapt to the new platform?
Big Data at Pinterest - Presented by Qubole
Big Data at Pinterest - Presented by Qubole
Qubole
Modern data is massive, quickly evolving, unstructured, and increasingly hard to catalog and understand from multiple consumers and applications. This session will guide you though the best practices for designing a robust data architecture, highlightning the benefits and typical challenges of data lakes and data warehouses. We will build a scalable solution based on managed services such as Amazon Athena, AWS Glue, and AWS Lake Formation.
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Amazon Web Services
To be presented @ RootConf, 2018
Growing with elastic search
Growing with elastic search
Devi A S L
From the Amazon Web Services Singapore & Malaysia Summits 2015 Track 2 Breakout, 'Big Data and Analytics' Presented by Russell Nash – AWS Solutions Architect
Big Data and Analytics
Big Data and Analytics
Amazon Web Services
Speaker: Ted Orme
Big Data LDN 2016: When Big Data Meets Fast Data
Big Data LDN 2016: When Big Data Meets Fast Data
Matt Stubbs
Lightning Talk at #cwt2016 http://www.clouderaworldtokyo.com/
Podling Hivemall in the Apache Incubator
Podling Hivemall in the Apache Incubator
Makoto Yui
Overview of ActiveSTAK's Cloud AI feature
ActiveSTAK Cloud AI
ActiveSTAK Cloud AI
Zunaid Khan
Data Platform Architecture
Data platform architecture
Data platform architecture
Sudheer Kondla
Building a Hadoop Powered Commerce Data Pipeline
Building a Hadoop Powered Commerce Data Pipeline
DataWorks Summit
Today, Big Data is everywhere, but the key problem is – it is too big to tackle and, too complex to evaluate and draw insights from. Also, Big Data Analytics relatively being a state-of-the-art concept, there is a lack of copious knowledge and expertise in the field of Big Data, which is often leading most organizations to misuse their data.
Amazon big success using big data analytics
Amazon big success using big data analytics
Kovid Academy
A look at clouds and big data trends and history. While Big Data arrived first on the scene -looking at google file system, hadoop, dynamo- Cloud was first in the hyper cycle. Google trends show this clearly. Amazon AWS however has already deployed analytics services on the their cloud while open source IaaS solutions are still struggling to deliver a EC2 clone. Cloud and Big data has three common points: 1-use an EC2 clone and a S3 clone (riakCS, glusterfs etc) to build a cloud 2-Use a big data solutions as a backend to your cloud to provide EBS or large scale image catalogue 3-deploy big data solutions on your cloud with tools like apache whirr, pallet, and newer devops tool chains with vagrant and co.
Cloud and Big Data trends
Cloud and Big Data trends
Sebastien Goasguen
In this session we will demonstrate how non-experts in machine learning, can easily analyze their data with QuickSight and build scalable and production-ready predictive models with Amazon machine learning. After the session you will have a good understanding how to define problems from your business, in terms of data and predictive models, and you will be able to apply analytics and machine learning concepts as a competitive advantage.
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Amazon Web Services
A whitepaper is about Qubole on AWS provides end-to-end data lake services such as AWS infrastructure management, data management, continuous data engineering, analytics, & ML with zero administration https://www.qubole.com/resources/white-papers/qubole-on-aws
Qubole on AWS - White paper
Qubole on AWS - White paper
Vasu S
More Related Content
What's hot
Build a simple Data Lake on AWS using a combination of services, including Amazon Managed Workflows for Apache Airflow (Amazon MWAA), AWS Glue, AWS Glue Studio, Amazon Athena, and Amazon S3. Blog post and link to the video: https://garystafford.medium.com/building-a-data-lake-with-apache-airflow-b48bd953c2b
Building Data Lakes with Apache Airflow
Building Data Lakes with Apache Airflow
Gary Stafford
AWS-powered services for analytics can handle the scale, agility, and flexibility required to combine different types of data and analytics approaches that will allow you to transform your data into a valuable corporate asset. In this session, AWS will provide an overview of the different AWS services available for your data analytics needs. You can combine these blocks to build data flows that will extend your organization’s agility, ability to derive more insights and value from its data, and capability to adopt more sophisticated analytics tools and processes as your needs evolve. In the second part of the session, Paddy Power Betfair’s Data team will discuss the adoption and large scale operation of a broad range of AWS services that make up PPB’s scalable, mixed workload, multi-brand data platform. The data capabilities developed by PPB and powered by AWS were implemented to enable low-latency, high-volume and near real-time advanced analytics use cases, in the highly regulated and fast-paced betting industry. This was only possible through a focus on automation, innovation and continuous improvement.
Building a modern data platform in AWS
Building a modern data platform in AWS
Amazon Web Services
Speaker: Dean Samuels, Head of Solutions Architect, Hong Kong and Taiwan, AWS
Welcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution Overview
Amazon Web Services
Modern data is massive, quickly evolving, unstructured, and increasingly hard to catalog and understand from multiple consumers and applications. This session will guide you though the best practices for designing a robust data architecture, highlightning the benefits and typical challenges of data lakes and data warehouses. We will build a scalable solution based on managed services such as Amazon Athena, AWS Glue, and AWS Lake Formation.
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Amazon Web Services
Talk at Apache BigData 2017, Miami
Apache Hivemall @ Apache BigData '17, Miami
Apache Hivemall @ Apache BigData '17, Miami
Makoto Yui
Large companies see an opportunity to replace expensive legacy data warehouse applications with Big Data technologies. But how realistic is the notion of switching from tried and true data warehouse implementations to something that's still maturing, and what are the pitfalls? What will a business user need to learn in order to adapt to the new platform?
Big Data at Pinterest - Presented by Qubole
Big Data at Pinterest - Presented by Qubole
Qubole
Modern data is massive, quickly evolving, unstructured, and increasingly hard to catalog and understand from multiple consumers and applications. This session will guide you though the best practices for designing a robust data architecture, highlightning the benefits and typical challenges of data lakes and data warehouses. We will build a scalable solution based on managed services such as Amazon Athena, AWS Glue, and AWS Lake Formation.
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Amazon Web Services
To be presented @ RootConf, 2018
Growing with elastic search
Growing with elastic search
Devi A S L
From the Amazon Web Services Singapore & Malaysia Summits 2015 Track 2 Breakout, 'Big Data and Analytics' Presented by Russell Nash – AWS Solutions Architect
Big Data and Analytics
Big Data and Analytics
Amazon Web Services
Speaker: Ted Orme
Big Data LDN 2016: When Big Data Meets Fast Data
Big Data LDN 2016: When Big Data Meets Fast Data
Matt Stubbs
Lightning Talk at #cwt2016 http://www.clouderaworldtokyo.com/
Podling Hivemall in the Apache Incubator
Podling Hivemall in the Apache Incubator
Makoto Yui
Overview of ActiveSTAK's Cloud AI feature
ActiveSTAK Cloud AI
ActiveSTAK Cloud AI
Zunaid Khan
Data Platform Architecture
Data platform architecture
Data platform architecture
Sudheer Kondla
Building a Hadoop Powered Commerce Data Pipeline
Building a Hadoop Powered Commerce Data Pipeline
DataWorks Summit
Today, Big Data is everywhere, but the key problem is – it is too big to tackle and, too complex to evaluate and draw insights from. Also, Big Data Analytics relatively being a state-of-the-art concept, there is a lack of copious knowledge and expertise in the field of Big Data, which is often leading most organizations to misuse their data.
Amazon big success using big data analytics
Amazon big success using big data analytics
Kovid Academy
A look at clouds and big data trends and history. While Big Data arrived first on the scene -looking at google file system, hadoop, dynamo- Cloud was first in the hyper cycle. Google trends show this clearly. Amazon AWS however has already deployed analytics services on the their cloud while open source IaaS solutions are still struggling to deliver a EC2 clone. Cloud and Big data has three common points: 1-use an EC2 clone and a S3 clone (riakCS, glusterfs etc) to build a cloud 2-Use a big data solutions as a backend to your cloud to provide EBS or large scale image catalogue 3-deploy big data solutions on your cloud with tools like apache whirr, pallet, and newer devops tool chains with vagrant and co.
Cloud and Big Data trends
Cloud and Big Data trends
Sebastien Goasguen
In this session we will demonstrate how non-experts in machine learning, can easily analyze their data with QuickSight and build scalable and production-ready predictive models with Amazon machine learning. After the session you will have a good understanding how to define problems from your business, in terms of data and predictive models, and you will be able to apply analytics and machine learning concepts as a competitive advantage.
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Amazon Web Services
A whitepaper is about Qubole on AWS provides end-to-end data lake services such as AWS infrastructure management, data management, continuous data engineering, analytics, & ML with zero administration https://www.qubole.com/resources/white-papers/qubole-on-aws
Qubole on AWS - White paper
Qubole on AWS - White paper
Vasu S
What's hot
(18)
Building Data Lakes with Apache Airflow
Building Data Lakes with Apache Airflow
Building a modern data platform in AWS
Building a modern data platform in AWS
Welcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution Overview
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Building_a_Modern_Data_Platform_in_the_Cloud.pdf
Apache Hivemall @ Apache BigData '17, Miami
Apache Hivemall @ Apache BigData '17, Miami
Big Data at Pinterest - Presented by Qubole
Big Data at Pinterest - Presented by Qubole
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Building-a-Modern-Data-Platform-in-the-Cloud.pdf
Growing with elastic search
Growing with elastic search
Big Data and Analytics
Big Data and Analytics
Big Data LDN 2016: When Big Data Meets Fast Data
Big Data LDN 2016: When Big Data Meets Fast Data
Podling Hivemall in the Apache Incubator
Podling Hivemall in the Apache Incubator
ActiveSTAK Cloud AI
ActiveSTAK Cloud AI
Data platform architecture
Data platform architecture
Building a Hadoop Powered Commerce Data Pipeline
Building a Hadoop Powered Commerce Data Pipeline
Amazon big success using big data analytics
Amazon big success using big data analytics
Cloud and Big Data trends
Cloud and Big Data trends
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Explore Your Data Using Amazon QuickSight and Build Your First Machine Learni...
Qubole on AWS - White paper
Qubole on AWS - White paper
Hbase_certificate
1.
Priyanka Pal Using HBase
for Real-time Access to your Big Data October 14, 2015
Download now