Data Engineering Podcast

Move Your Database To The Data And Speed Up Your Analytics With DuckDB

Mar 5, 2022
Ask episode
Chapters
Transcript
Episode notes
1
Introduction
00:00 • 2min
2
Data Base Engine for Columner Analytics
01:53 • 2min
3
Data Management Systems - Doctor B
04:20 • 4min
4
The Duck Is a Data Management System, and It's a Great Idea
08:14 • 2min
5
Resilient to Broken Hardware and Data Base Systems?
10:30 • 2min
6
Sequelite vs Ollup - What's the Difference?
12:58 • 5min
7
Posceso Sequalipared With Dactivi?
17:40 • 2min
8
Do You Want to Use Duckt B Versus Dactive?
19:32 • 3min
9
Duc Db in Processes?
22:08 • 5min
10
The Unique Capabilities of Table Scanners in the Data Management System
27:36 • 2min
11
Ose Pecase
29:23 • 4min
12
Using a Vectorise Query Processor in Dactibe
32:54 • 2min
13
Using a Filter Operator in a Directorize System
35:19 • 5min
14
In Process Data Base Engines, What's the Difference?
40:41 • 3min
15
Ducty B in Data Pipelines
43:29 • 5min
16
Spark Runs in Cubernetties, Is It Really a Good Idea?
48:43 • 4min
17
Slash Rudder, Is There a Deductive Foundation in the Open Source Project?
52:43 • 4min
18
Doctorbik - What Makes Me Happy?
56:51 • 3min
19
What Have You Learned From the Duckty B Project?
59:50 • 4min
20
Why You Shouldn't Run a Thousand Node Cluster?
01:04:00 • 2min
21
The Hive Protocol Is Not a Good Idea, Maybe?
01:05:38 • 2min
22
Do You Have Any Areas of Contribution That You're Looking For?
01:07:18 • 6min
23
Dud B Labs - What's the Biggest Gap in Data Management?
01:13:16 • 3min