logo
episode-header-image
Sep 2023
29m 22s

The Legend Of Hadoop

Red Hat
About this episode
In 2002, Hadoop hit the scene, and quickly became a media darling. Twenty years later, typing the term into a search engine will return questions about its continued relevance—or possible lack thereof. Is Hadoop still important? Where is it most visible today? The Compiler team dives hard into the project, and how it forever changed the way we look at data. 
Up next
Jul 2
Untangling Networks
At home, connecting your devices to the internet is a pretty simple process. But setting up and running an enterprise network is an exercise in extreme organization and constant vigilance. Elle Universal, Senior Product Marketing Manager at Red Hat, outlines all the consideration ... Show More
29m 49s
Jun 18
Infrastructure At The Edge
Edge computing has existed far longer than many realize. However, the proliferation of 5G networks and the mass adoption of Internet of Things (IoT) devices have made it a cornerstone of modern infrastructure. John Harris, who manages technology strategy at Panasonic Connect, exp ... Show More
23m 54s
Jun 4
Operating System Management
The operating system is the foundation of IT infrastructure. It affects everything built on top of it. Take good care of it, and you're on your way to a smooth platform for your application. Neglect to maintain it? Well, you might run into some problems. Scott McBrien, Technical ... Show More
45m 19s
Recommended Episodes
Dec 2012
Hadoop
This show covers Hadoop, a set of several languages and libraries for working with big data. Tools of the show: Emacs and Chrome Browser Sync. Books of the show: Hadoop: The Definitive Guide http://tinyurl.com/cp3mw32 and Anathem http://tinyurl.com/cas8bux. 
1h 7m
Feb 2024
A Small Episode About Big Data
What does Big Data actually mean? How has the science of Big Data changed recently? What are the potential benefits and pitfalls of Big Data? See omnystudio.com/listener for privacy information. 
39m 9s
Sep 2013
Big in Japan (Data)
Jim and Devin discuss the industry's latest buzzword trend "big data", and whether any middle market company really has a big data problem. 
50m 25s
Jul 2025
D2DO278: The Future of HashiCorp Inside IBM
On today’s show, we talk to Armon Dadgar, co-founder and CTO of HashiCorp regarding HashiCorp’s future within IBM. We start with a quick recap of IBM’s acquisition of HashiCorp and then move on to the challenges of bringing a small, young tech company into a huge corporation that ... Show More
40m 10s
Oct 2020
The Ghost in the Codec
At the dawn of the digital era, a group of engineers tasked with audio compression had to decide what information to keep, and what to leave behind. What was signal, and what was noise? Fast forward two decades, to our much noisier world. Hari finds a writer and a musician who’ve ... Show More
39m 17s
Aug 2022
An Exploration Of The Expectations, Ecosystem, and Realities Of Real-Time Data Applications
<div class="wp-block-jetpack-markdown"><h2>Summary</h2> <p>Data has permeated every aspect of our lives and the products that we interact with. As a result, end users and customers have come to expect interactions and updates with services and analytics to be fast and up to date ... Show More
1h 6m
Sep 2023
Exploring SQL and ETL
<p>The evolution of SQL and the ease of access to ever larger sizes of computational power has made SQL and ETL a useful pairing for practitioners in the data space. But how do they work together exactly? And what challenges can it pose?</p> <p>Bharani Subramaniam and Madhu Podil ... Show More
31m 57s
Aug 2022
Data Dazed and Confused?
Rishad talks to Timandra Harkness, Fellow of the Royal Statistical Society, broadcaster, and author of Big Data: Does Size Matter? about the uses and abuses of data during Covid and what we might expect in our personalised century. 
25m 42s
Jun 2022
Bringing The Modern Data Stack To Everyone With Y42
<div class="wp-block-jetpack-markdown"><h2>Summary</h2> <p>Cloud services have made highly scalable and performant data platforms economical and manageable for data teams. However, they are still challenging to work with and manage for anyone who isn&#8217;t in a technical role. ... Show More
59m 2s