

Making The Open Data Lakehouse Affordable Without The Overhead At Iomete
Oct 10, 2022
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18
Introduction
00:00 • 2min
IOMIT - The Most Affordable and Open Source Lakehouse Platform
01:59 • 4min
Is There a Modern Data Stack?
05:40 • 5min
The Lake House Architecture Is a Response to the Modern Data Stack
10:38 • 3min
Open Source Platforms Are Good, but Not Enterprise Ready
13:28 • 3min
AWS Kubernetes Platform - What Are the Hidden Difficulties and Incompatibilities?
16:46 • 3min
Prefect Power - The Data Flow Automation Platform for the Modern Data Stack
19:59 • 3min
IOMIT Platform - Build Versus Buy?
22:40 • 4min
IOME - Spark, Apache Houdi Delta, Data Catalog, Data Governance, SQL Editor?
26:21 • 4min
Spark as the Core?
30:42 • 3min
IOME - What's the Prioritization of the Integrations?
33:28 • 2min
EVO Data - Data Engineers' Choice for a Data Platform
35:17 • 4min
Data Lake and the Lakehouse Architecture
39:37 • 4min
Is Your Platform Designed for Analytics Use Cases?
43:59 • 2min
Building a Data Lake House
45:33 • 2min
What Are Some of the Things You're Looking Forward to in the Near to Medium Term
47:40 • 3min
Data Mesh Architecture for Data Sharing Platforms
50:17 • 3min
The Biggest Gap in Data Management
53:26 • 2min