Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
Introduction
00:00 • 2min
How Did You Get Your Start Working in Search?
02:26 • 2min
The Secret Powers of Pandas in Data Engineering
04:04 • 2min
Python - What Are the Main Workflows That You Can Do With Python?
06:06 • 2min
Is There a Difference Between a Sequence and a Data Base?
08:20 • 2min
What Are Some Mistakes When Doing Data Manipulations?
10:41 • 2min
Scaling Out in Pandas
12:45 • 5min
Is There a Way to Reduce Processing Overhead in Python?
17:28 • 3min
Data Engineering Podcast - Prophecy Dot I O
20:57 • 5min
The Most Important Skill of a Data Scientist
26:21 • 4min
The Chaining of Pandas Data Frames
30:11 • 4min
Using Soper Engineering Best Practices
34:22 • 3min
Data Engineering - I'm a Data Engineer, and I'd Like to See a Difts Tool in the Future
37:30 • 3min
Scaling Scale Out, Multicore Architectures?
40:07 • 3min
Scaling Out to Multiple Machines of Pandas Operations
42:44 • 5min
Can Panda Become a Part of the Data Processing Engine?
48:10 • 4min
Leveraging a Computer for Data Processing?
51:47 • 3min
Is Pandas the Right Choice for Deep Learning?
54:17 • 2min
What's the Biggest Gap in Data Management?
56:07 • 4min