Search results
Apr 12, 2024 · With Presto, how it works is you can query data where it lives across many different data sources such as HDFS, MySQL, Cassandra, or Hive. Presto is built on Java and can also integrate with other third-party data sources or infrastructure components.
Jan 24, 2023 · What is Presto? Presto (or PrestoDB) is a distributed, fast, reliable SQL Query Engine that fetches data from heterogeneous data sources querying large sets((TB, PB) of data and processes in memory. It originated in Facebook as a result of Hive taking a long time to execute queries of TB, and PB magnitude.
Nov 5, 2023 · Is blue a good countertop color to use in the kitchen? All shades of blue can be used in a kitchen depending on if the space has natural light/is in an open concept home, and what is used to compliment the blue and give your space opulence.
Presto is an open source, distributed SQL query engine designed for fast, interactive queries on data in HDFS, and others. Unlike Hadoop/HDFS, it does not have its own storage system. Thus, Presto is complimentary to Hadoop, with organizations adopting both to solve a broader business challenge.
Jan 14, 2023 · Presto (or PrestoDB) is a distributed, fast, reliable SQL Query Engine that fetches data from heterogeneous data sources querying large sets((TB, PB) of data and processes in memory. it...
Sep 26, 2023 · In this article, I provide a complete and unbiased rundown of the pros and cons of quartz countertops. I explain each advantage and disadvantage in detail, so you have all the facts necessary to decide if quartz is the right material for your kitchen.
People also ask
What is Presto (PrestoDB)?
How does Presto work?
What data sources does Presto support?
Where is Presto used?
Does Presto cache data?
What is Presto's power and value proposition?
Dec 3, 2020 · “Presto (or PrestoDB) is an open source, distributed SQL query engine, designed from the ground up for fast analytic queries against data of any size.” It interfaces both non-relational data sources like Amazon S3 and Hadoop HDFS, MongoDB, and HBase, as well as relational databases like MySQL, PostgreSQL, and MS SQL Server.