Home Software Engineering Iceberg at Netflix and Past with Ryan Blue

Iceberg at Netflix and Past with Ryan Blue

0
Iceberg at Netflix and Past with Ryan Blue

[ad_1]

Apache Iceberg is an open supply high-performance format for large knowledge tables. Iceberg allows using SQL tables for giant knowledge, whereas making it attainable for engines like Spark and Hive to securely work with the identical tables, on the similar time.

Iceberg was began at Netflix by Ryan Blue and Dan Weeks, and was open-sourced and donated to the Apache Software program Basis in November 2018. It has now been adopted at many different corporations together with Airbnb, Apple, and Lyft.

Ryan Blue joins the podcast to explain the origins of Iceberg, the way it works, the issues it solves, collaborating with Apple and others to open-source it, and extra.

This episode is hosted by Lee Atchison. Lee Atchison is a software program architect, creator, and thought chief on cloud computing and software modernization. His best-selling ebook, Architecting for Scale (O’Reilly Media), is a vital useful resource for technical groups trying to preserve excessive availability and handle threat of their cloud environments.

Lee is the host of his podcast, Fashionable Digital Enterprise, an attractive and informative podcast produced for folks trying to construct and develop their digital enterprise with the assistance of contemporary purposes and processes developed for immediately’s fast-moving enterprise setting. Pay attention at mdb.fm. Comply with Lee at softwarearchitectureinsights.com, and see all his content material at leeatchison.com.

Sponsors

This episode of Software program Engineering Day by day is delivered to you by Starburst. Struggling to ship analytics on the velocity your customers need with out your prices snowballing?

For knowledge engineers who battle to construct and scale top quality knowledge pipelines, Starburst’s knowledge lakehouse platform helps you ship distinctive person experiences at peta-byte scale, with out compromising on efficiency or price.

Trusted by the groups at Comcast, Doordash, and MIT, Starburst delivers the adaptability and adaptability a lakehouse ecosystem guarantees on an open structure that helps – Apache Iceberg, Delta Lake and Hudi, so that you at all times preserve possession of your knowledge. Need to see Starburst in motion? Get began immediately with a free trial at starburst.io/sed.

You’ve tried each Kanban and collaboration device to maintain your workforce in sync love you discover the one which’s United everybody to propel your tasks ahead. Whereas being intuitive to make use of and graphically pleasing. You may both strategy Miro from the sort of workforce you’re on engineering or product administration, for instance, or by use case possibly technical diagramming or scale product planning. I significantly just like the in-built help for product improvement like estimation and retrospectives, check out what 60 million customers already know that Miro is a safe and visible workspace for innovation. Discover simplicity in your most complicated tasks with Miro. Your first three mural boards are FREE while you enroll immediately at miro.com/podcast.

WorkOS is a contemporary identification platform constructed for B2B SaaS. It gives seamless APIs for authentication, person identification, and sophisticated enterprise options like SSO and SCIM provisioning. It’s a drop-in alternative for Auth0 (auth-zero) and helps as much as 1 million month-to-month energetic customers without spending a dime.

It’s good for B2B SaaS corporations annoyed with excessive prices, opaque pricing, and lack of enterprise capabilities supported by legacy auth distributors. The APIs are versatile and straightforward to make use of, designed to offer an easy expertise out of your first person all the best way to your largest enterprise buyer.

At this time, a whole bunch of high-growth scale-ups are already powered by WorkOS, together with ones you most likely know, like Vercel, Webflow, and Loom. Take a look at workos.com/SED to be taught extra.



[ad_2]