Тёмный

Presto 101: An Introduction to Open Source Presto 

Databricks
Подписаться 113 тыс.
Просмотров 9 тыс.
50% 1

Presto is a widely adopted distributed SQL engine for data lake analytics. With Presto, you can perform ad hoc querying of data in place, which helps solve challenges around time to discover and the amount of time it takes to do ad hoc analysis. Additionally, new features like the disaggregated coordinator, Presto-on-Spark, scan optimizations, a reusable native engine, and a Pinot connector enable added benefits around performance, scale, and ecosystem.
In this session, Philip and Rohan will introduce the Presto technology and share why it’s becoming so popular - in fact, companies like Facebook, Uber, Twitter, Alibaba, and much more use Presto for interactive ad hoc queries, reporting & dashboarding data lake analytics, and much more. We’ll also show a quick demo on getting Presto running in AWS.
Connect with us:
Website: databricks.com
Facebook: / databricksinc
Twitter: / databricks
LinkedIn: / data. .
Instagram: / databricksinc

Наука

Опубликовано:

 

5 авг 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 3   
@naidu9441
@naidu9441 Год назад
Thanks very good
@johndurrett3573
@johndurrett3573 Год назад
Appreciate the overview. It would have been more complete when talking about dashboard to actually show one.
@swapnanildas
@swapnanildas 2 месяца назад
the guy from meta was real hard to listen to.. i would rather listen to a chatbot
Далее
Presto: Fast SQL-on-Anything |  Starburst
42:01
Просмотров 16 тыс.
Presto: Fast SQL on Everything (Facebook)
40:50
Просмотров 12 тыс.
Китайка Шрек поймал Зайца😂😆
00:20
ELA NÃO ESPERAVA POR ISSO 🥶 ATTITUDE #shorts
00:20
Data Mesh Implementation Patterns
34:50
Просмотров 10 тыс.
Getting started with Trino and SQL
1:17:59
Просмотров 7 тыс.
Delta Lake 2.0 Overview
37:56
Просмотров 11 тыс.
Why You Shouldn’t Care About Iceberg | Tabular
20:26
Presto On Spark: A Unified SQL Experience
35:24
Просмотров 3,3 тыс.
Apache Druid 101
44:11
Просмотров 18 тыс.
PySpark Tutorial
1:49:02
Просмотров 1,2 млн