SAN FRANCISCO, Calif., June 20 — Databricks, the company founded by the team that created Apache Spark, today announced that its just-in-time platform is now available on Amazon Web Services (AWS) ...
Apache Spark is a project designed to accelerate Hadoop and other big data applications through the use of an in-memory, clustered data engine. The Apache Foundation describes the Spark project this ...
Apache Spark rose to prominence within the Hadoop world as a faster and easier to use alternative to MapReduce. But as fast as Spark is today, it won’t hold a candle to future versions of Spark that ...
Data and AI platform Databricks has announced its agreement to acquire data management company Tabular. This deal is particularly significant because of both what it means, and the people involved.
Today to kick off Spark Summit, Databricks announced a Serverless Platform for Apache Spark — welcome news for developers looking to reduce time spent on cluster management. The move to simplify ...
Unlock the full InfoQ experience by logging in! Stay updated with your favorite authors and topics, engage with content, and download exclusive resources. This article dives into the happens-before ...
Scott Guthrie, Microsoft EVP of Cloud & Enterprise. Microsoft Azure customers interested in parsing large amounts of data to improve their businesses will soon be able to use Azure Databricks, ...
Along with phenomena such as container technology Docker, Apache Spark has emerged as a new darling of the open-source world, with widespread take-up by data teams and developers, backed by a highly ...
Join our daily and weekly newsletters for the latest updates and exclusive content on industry-leading AI coverage. Learn More Databricks and Hugging Face have collaborated to introduce a new feature ...
New tools to help increase developer productivity and simplify app development for intelligent cloud and edge, across devices, platforms or data sources NEW YORK — Nov. 15, 2017 — Wednesday at Connect ...
Results that may be inaccessible to you are currently showing.
Hide inaccessible results