This document discusses using Treasure Data and FluentD for data warehousing. It provides a common architecture for this solution and how to set it up on Heroku using their Treasure Data add-on. Finally, it asks if there are any questions.
An short introduction on Big Query. With this presentation you'll quickly discover :
How load data in BigQuery
How to build dashboard using BigQuery
How to work with BigQuery
and, at last but not least, we've added some best practices
We hope you'll enjoy this presentation and that it will help you to start exploring this wonderful solution. Don't hesitate to send us your feedbacks or questions
Learn from Case Study; How do people run query on Trino? / Trino japan virtua...Toru Takahashi
As part of Treasure Data CDP, We use Trino for the following two purposes:
・As a query engine for direct access to data stored by custom SQL
・As a query engine to execute auto-generated SQL based on the logic from GUI
Although some restrictions are placed on the functionality of Trino as our service, the former enables customers to execute queries freely, similar to Trino as a Service or Amazon Athena.
By introducing the usage of Trino at Treasure Data, I will show what you should expect when you open Trino to your users.
Intro to new Google cloud technologies: Google Storage, Prediction API, BigQueryChris Schalk
This is an introductory presentation given at DevFest Madrid 2010 by Google Developer Advocate Chris Schalk. It introduces new Google cloud technologies: Google Storage, Google Prediction API and BigQuery.
BigQuery is Google's columnar, massively parallel data querying solution. This talk explores using it as an ad-hoc reporting solution and the limitations present in May 2013.
An short introduction on Big Query. With this presentation you'll quickly discover :
How load data in BigQuery
How to build dashboard using BigQuery
How to work with BigQuery
and, at last but not least, we've added some best practices
We hope you'll enjoy this presentation and that it will help you to start exploring this wonderful solution. Don't hesitate to send us your feedbacks or questions
Learn from Case Study; How do people run query on Trino? / Trino japan virtua...Toru Takahashi
As part of Treasure Data CDP, We use Trino for the following two purposes:
・As a query engine for direct access to data stored by custom SQL
・As a query engine to execute auto-generated SQL based on the logic from GUI
Although some restrictions are placed on the functionality of Trino as our service, the former enables customers to execute queries freely, similar to Trino as a Service or Amazon Athena.
By introducing the usage of Trino at Treasure Data, I will show what you should expect when you open Trino to your users.
Intro to new Google cloud technologies: Google Storage, Prediction API, BigQueryChris Schalk
This is an introductory presentation given at DevFest Madrid 2010 by Google Developer Advocate Chris Schalk. It introduces new Google cloud technologies: Google Storage, Google Prediction API and BigQuery.
BigQuery is Google's columnar, massively parallel data querying solution. This talk explores using it as an ad-hoc reporting solution and the limitations present in May 2013.
Crunching Data with Google BigQuery. JORDAN TIGANI at Big Data Spain 2012Big Data Spain
Session presented at Big Data Spain 2012 Conference
16th Nov 2012
ETSI Telecomunicacion UPM Madrid
www.bigdataspain.org
More info: http://www.bigdataspain.org/es-2012/conference/crunching-data-with-google-bigquery/jordan-tigani
Vadim Solovey is a CTO of DoiT International has helped to implement Google BigQuery as a cloud data warehouse for many medium and large sized data and analytics initiatives. BigQuery’s serverless architecture had redefined what it means to be fully managed for hundreds of Israeli's startups.
Recently, Google announced an update to BigQuery that dramatically advances cloud data analytics for large-scale businesses such as BigQuery now support Standard SQL, implementing the SQL 2011 standard as well as new ODBC drivers making it possible to use BigQuery with a number of tools ranging from Microsoft Excel to traditional business intelligence systems such as Microstrategy and Qlik.
Agenda:
• Partitioned tables
• The ability to update, delete rows and columns using SQL
• Integration with IAM for fine-grained security policies
• Monitoring w/ StackDriver to track performance and usage
• Query sharing via links, to foster knowledge within orgs
• Cost optimisation strategies
Introduction to Google BigQuery. Slides used at the first GDG Cloud meetup in Brussels, about big data on Google Cloud Platform. (http://www.meetup.com/GDG-Cloud-Belgium/events/228206131)
in this presentation we go through the differences and similarities between Redshift and BigQuery. It was presented during the Athens Big Data meetup May 2017.
Google BigQuery is the future of Analytics! (Google Developer Conference)Rasel Rana
Google Developer Group (GDG) Sonargaon is a community based focused group for developers on Google and related technologies. I tried to cover a topic on Big Data & BigQuery which is the future of analytics.
Complex realtime event analytics using BigQuery @Crunch WarmupMárton Kodok
Complex event analytics solutions require massive architecture, and Know-How to build a fast real-time computing system. Google BigQuery solves this problem by enabling super-fast, SQL-like queries against append-only tables, using the processing power of Google’s infrastructure.In this presentation we will see how Bigquery solves our ultimate goal: Store everything accessible by SQL immediately at petabyte-scale. We will discuss some common use cases: funnels, user retention, affiliate metrics.
An indepth look at Google BigQuery Architecture by Felipe Hoffa of GoogleData Con LA
Abstract:- Come learn about Google BigQuery and its underlying architecture. Felipe will go over the evolution of BigQuery and explain some of the underlying principles of BigQuery and Dremel. Felipe will also go over some of the latest use cases and will demo a use case of Google BigQuery
Bio:-
Felipe Hoffa moved from Chile to San Francisco to join Google as a Software Engineer. Since 2013 he's been a Developer Advocate on big data - to inspire developers around the world to leverage the Google Cloud Platform tools to analyze and understand their data in ways they could never before. You can find him in several YouTube videos, blog posts, and conferences around the world.
Follow Felipe at https://twitter.com/felipehoffa.
Big Data Analytics: Finding diamonds in the rough with AzureChristos Charmatzis
In this session it will presented main workflows and technologies of getting value from Big Data stored in our Enterprise using Azure.
- When we have a Big Data problem
- Finding the best solution for our Big Data
- Working inside the Data Team
- Extract the true value of our data.
Ten things to consider for interactive analytics on write once workloadsAbinasha Karana
CONTEXT – Write once data load - Ex. Time-series data.Which Database?
SSD is Good
MPP is Good
Columnar is Good
Logical Partition is Good
Data Skew Partition is Good
Search Engine Index could lead to Index Explosion
Concurrent Users First, Single Query Performance Next
High Throughput File level Snapshot Loading
Calculate cost upfront
Data Structure makes a Big Difference
How to get the best of both: MongoDB is great for low latency quick access of recent data; Treasure Data is great for infinitely growing store of historical data. In the latter case, one need not worry about scaling.
GDD Brazil 2010 - Google Storage, Bigquery and Prediction APIsPatrick Chanezon
Google is expanding our storage products by introducing Google Storage for Developers. It offers a RESTful API for storing and accessing data at Google. Developers can take advantage of the performance and reliability of Google's storage infrastructure, as well as the advanced security and sharing capabilities. We will demonstrate key functionality of the product as well as customer use cases. Google relies heavily on data analysis and has developed many tools to understand large datasets. Two of these tools are now available on a limited sign-up basis to developers: (1) BigQuery: interactive analysis of very large data sets and (2) Prediction API: make informed predictions from your data. We will demonstrate their use and give instructions on how to get access.
A Data Ecosystem to Support Machine Learning in Materials ScienceGlobus
This presentation was given at the 2019 GlobusWorld Conference in Chicago, IL by Ben Blaiszik from University of Chicago and Argonne National Laboratory Data Science and Learning Division.
Crunching Data with Google BigQuery. JORDAN TIGANI at Big Data Spain 2012Big Data Spain
Session presented at Big Data Spain 2012 Conference
16th Nov 2012
ETSI Telecomunicacion UPM Madrid
www.bigdataspain.org
More info: http://www.bigdataspain.org/es-2012/conference/crunching-data-with-google-bigquery/jordan-tigani
Vadim Solovey is a CTO of DoiT International has helped to implement Google BigQuery as a cloud data warehouse for many medium and large sized data and analytics initiatives. BigQuery’s serverless architecture had redefined what it means to be fully managed for hundreds of Israeli's startups.
Recently, Google announced an update to BigQuery that dramatically advances cloud data analytics for large-scale businesses such as BigQuery now support Standard SQL, implementing the SQL 2011 standard as well as new ODBC drivers making it possible to use BigQuery with a number of tools ranging from Microsoft Excel to traditional business intelligence systems such as Microstrategy and Qlik.
Agenda:
• Partitioned tables
• The ability to update, delete rows and columns using SQL
• Integration with IAM for fine-grained security policies
• Monitoring w/ StackDriver to track performance and usage
• Query sharing via links, to foster knowledge within orgs
• Cost optimisation strategies
Introduction to Google BigQuery. Slides used at the first GDG Cloud meetup in Brussels, about big data on Google Cloud Platform. (http://www.meetup.com/GDG-Cloud-Belgium/events/228206131)
in this presentation we go through the differences and similarities between Redshift and BigQuery. It was presented during the Athens Big Data meetup May 2017.
Google BigQuery is the future of Analytics! (Google Developer Conference)Rasel Rana
Google Developer Group (GDG) Sonargaon is a community based focused group for developers on Google and related technologies. I tried to cover a topic on Big Data & BigQuery which is the future of analytics.
Complex realtime event analytics using BigQuery @Crunch WarmupMárton Kodok
Complex event analytics solutions require massive architecture, and Know-How to build a fast real-time computing system. Google BigQuery solves this problem by enabling super-fast, SQL-like queries against append-only tables, using the processing power of Google’s infrastructure.In this presentation we will see how Bigquery solves our ultimate goal: Store everything accessible by SQL immediately at petabyte-scale. We will discuss some common use cases: funnels, user retention, affiliate metrics.
An indepth look at Google BigQuery Architecture by Felipe Hoffa of GoogleData Con LA
Abstract:- Come learn about Google BigQuery and its underlying architecture. Felipe will go over the evolution of BigQuery and explain some of the underlying principles of BigQuery and Dremel. Felipe will also go over some of the latest use cases and will demo a use case of Google BigQuery
Bio:-
Felipe Hoffa moved from Chile to San Francisco to join Google as a Software Engineer. Since 2013 he's been a Developer Advocate on big data - to inspire developers around the world to leverage the Google Cloud Platform tools to analyze and understand their data in ways they could never before. You can find him in several YouTube videos, blog posts, and conferences around the world.
Follow Felipe at https://twitter.com/felipehoffa.
Big Data Analytics: Finding diamonds in the rough with AzureChristos Charmatzis
In this session it will presented main workflows and technologies of getting value from Big Data stored in our Enterprise using Azure.
- When we have a Big Data problem
- Finding the best solution for our Big Data
- Working inside the Data Team
- Extract the true value of our data.
Ten things to consider for interactive analytics on write once workloadsAbinasha Karana
CONTEXT – Write once data load - Ex. Time-series data.Which Database?
SSD is Good
MPP is Good
Columnar is Good
Logical Partition is Good
Data Skew Partition is Good
Search Engine Index could lead to Index Explosion
Concurrent Users First, Single Query Performance Next
High Throughput File level Snapshot Loading
Calculate cost upfront
Data Structure makes a Big Difference
How to get the best of both: MongoDB is great for low latency quick access of recent data; Treasure Data is great for infinitely growing store of historical data. In the latter case, one need not worry about scaling.
GDD Brazil 2010 - Google Storage, Bigquery and Prediction APIsPatrick Chanezon
Google is expanding our storage products by introducing Google Storage for Developers. It offers a RESTful API for storing and accessing data at Google. Developers can take advantage of the performance and reliability of Google's storage infrastructure, as well as the advanced security and sharing capabilities. We will demonstrate key functionality of the product as well as customer use cases. Google relies heavily on data analysis and has developed many tools to understand large datasets. Two of these tools are now available on a limited sign-up basis to developers: (1) BigQuery: interactive analysis of very large data sets and (2) Prediction API: make informed predictions from your data. We will demonstrate their use and give instructions on how to get access.
A Data Ecosystem to Support Machine Learning in Materials ScienceGlobus
This presentation was given at the 2019 GlobusWorld Conference in Chicago, IL by Ben Blaiszik from University of Chicago and Argonne National Laboratory Data Science and Learning Division.
This 7-second Brain Wave Ritual Attracts Money To You.!nirahealhty
Discover the power of a simple 7-second brain wave ritual that can attract wealth and abundance into your life. By tapping into specific brain frequencies, this technique helps you manifest financial success effortlessly. Ready to transform your financial future? Try this powerful ritual and start attracting money today!
Italy Agriculture Equipment Market Outlook to 2027harveenkaur52
Agriculture and Animal Care
Ken Research has an expertise in Agriculture and Animal Care sector and offer vast collection of information related to all major aspects such as Agriculture equipment, Crop Protection, Seed, Agriculture Chemical, Fertilizers, Protected Cultivators, Palm Oil, Hybrid Seed, Animal Feed additives and many more.
Our continuous study and findings in agriculture sector provide better insights to companies dealing with related product and services, government and agriculture associations, researchers and students to well understand the present and expected scenario.
Our Animal care category provides solutions on Animal Healthcare and related products and services, including, animal feed additives, vaccination
APNIC Foundation, presented by Ellisha Heppner at the PNG DNS Forum 2024APNIC
Ellisha Heppner, Grant Management Lead, presented an update on APNIC Foundation to the PNG DNS Forum held from 6 to 10 May, 2024 in Port Moresby, Papua New Guinea.
Meet up Milano 14 _ Axpo Italia_ Migration from Mule3 (On-prem) to.pdfFlorence Consulting
Quattordicesimo Meetup di Milano, tenutosi a Milano il 23 Maggio 2024 dalle ore 17:00 alle ore 18:30 in presenza e da remoto.
Abbiamo parlato di come Axpo Italia S.p.A. ha ridotto il technical debt migrando le proprie APIs da Mule 3.9 a Mule 4.4 passando anche da on-premises a CloudHub 1.0.
1.Wireless Communication System_Wireless communication is a broad term that i...JeyaPerumal1
Wireless communication involves the transmission of information over a distance without the help of wires, cables or any other forms of electrical conductors.
Wireless communication is a broad term that incorporates all procedures and forms of connecting and communicating between two or more devices using a wireless signal through wireless communication technologies and devices.
Features of Wireless Communication
The evolution of wireless technology has brought many advancements with its effective features.
The transmitted distance can be anywhere between a few meters (for example, a television's remote control) and thousands of kilometers (for example, radio communication).
Wireless communication can be used for cellular telephony, wireless access to the internet, wireless home networking, and so on.
Bridging the Digital Gap Brad Spiegel Macon, GA Initiative.pptxBrad Spiegel Macon GA
Brad Spiegel Macon GA’s journey exemplifies the profound impact that one individual can have on their community. Through his unwavering dedication to digital inclusion, he’s not only bridging the gap in Macon but also setting an example for others to follow.