Data Engineering Podcast

Interactive Exploratory Data Analysis On Petabyte Scale Data Sets With Arkouda

Jul 31, 2022
Ask episode
Chapters
Transcript
Episode notes
1
Introduction
00:00 • 2min
2
Arcuta, a Horizontally Scalable Parallel Compute Library for Exploratory Data Analysis
01:47 • 3min
3
Python Is the Lingua De Franca of Data Scientists
04:42 • 1min
4
Exploratory Data Analysis - The Man of the Data Scientist
06:08 • 2min
5
Grap Analytics - A New Capabilities for Data Scientists
07:46 • 2min
6
Arcuta Scales Data Access Beyond the Limits of a Single Computer
09:41 • 2min
7
Arcuta - Data as a Grap With Relationships
11:47 • 2min
8
The Challenges of Partitioning Grafts in Arcuta
13:34 • 3min
9
Arcuta - What's Next?
16:39 • 2min
10
Data Engineering Podcast - Ascend Data Automation Cloud
18:49 • 2min
11
The Chapel Compiler
20:27 • 2min
12
Using Arcuta in a Team Environment?
22:07 • 2min
13
Arcuda Graph Analytics - What Are Some of the Specific Challenges That You've Been Addressing?
24:21 • 2min
14
Using Arcuda to Address Large Data Science Problems
26:15 • 2min
15
Data Engineering Podcast - Drop the Modern Data Stack and Use a Practical Data Engineering Framework
28:06 • 2min
16
Arcuta - The Future of Big Data Analytics
30:09 • 2min
17
Is Arcuta the Right Choice?
32:39 • 2min
18
Arcuta Framework - What Are Some of the Areas You're Excited About?
34:55 • 3min
19
The Biggest Gap in Data Science
37:37 • 3min