Data Engineering Podcast

A Reflection On Data Observability As It Reaches Broader Adoption

Sep 5, 2022
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Episode notes
1
Introduction
00:00 • 2min
2
Monte Carlo - A New Relic for Data Engineers
01:50 • 2min
3
Are You a Data Engineer or a Machine Learning Architect?
03:54 • 2min
4
What Is Data Observability?
06:05 • 2min
5
Data Observability
07:43 • 3min
6
Data Observability - The Biggest Change Ever
10:18 • 5min
7
Reliability Goes Beyond Anomaly Detection, Right?
14:55 • 2min
8
Data Breaks, Here's Why, Here Is How to Think About It
17:11 • 6min
9
Data Engineering Podcast - Ascend Data Automation Cloud
22:46 • 4min
10
Is Your Data Quality Worse Than It Was a Year Ago?
26:59 • 4min
11
Data Is the Worst Thing to Do
30:50 • 2min
12
Data Quality, Data Observability - What's Changed?
32:54 • 3min
13
How Has Monte Carlo Enhanced Your Product?
35:33 • 5min
14
Observability Platforms and Data Architectures - How to Optimise Your Data Architecture
40:18 • 3min
15
Select Star Data Discovery Platform
42:51 • 3min
16
Data Observability - What's in It for You?
45:41 • 2min
17
Data Quality Observability - What Are Some of the Most Interesting or Innovative Ways That You've Been Using Data Quality?
47:56 • 3min
18
What Are Some of the Most Important Lessons You've Learned?
50:48 • 3min
19
What's Next for Data Resolve and Streaming?
54:07 • 1min
20
What's the Biggest Gap in Data Management?
55:35 • 3min