

Massively Parallel Data Processing In Python Without The Effort Using Bodo
Sep 25, 2021
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
Introduction
00:00 • 2min
Building a Platform for Parallelyzing Python Code for Massive Parallel Processing in Analytics
01:53 • 4min
Python - A Compiler Oriented Approach
05:53 • 2min
Python Scaling Compiler
07:37 • 5min
The Inferential Compiler, Python Compilers, and Sparks
12:40 • 3min
Python Compiler Intelligence
15:31 • 5min
High Performance Computing vs Scale Out Distributed Systems
20:30 • 5min
The Difference Between Inferential Compiler and Boodo Platform
25:56 • 4min
The Main Approach for Reliability Parl Compute
30:17 • 4min
Data Engineering - Data Observability Summit
33:52 • 5min
Scale to a Thousands of Cores in the Cloud
38:22 • 2min
Python - The Basics of Python Programming
40:36 • 5min
Taking Advantage of Parallel Competing Capabilities of Boodo
45:19 • 3min
The Biggest Educational Gap
48:32 • 2min
Boodo - What Are Some of the Most Interesting Applications?
50:51 • 2min
The Challenges of Developers in the Enterprise
52:54 • 2min
Bodo
55:16 • 2min
The Future of Python Development?
57:21 • 2min
Boodo - What's Next?
59:50 • 2min
Data Engineering Podcast
01:01:43 • 2min