Data Engineering Podcast

Building Data Pipelines That Run From Source To Analysis And Activation With Hevo Data

Sep 12, 2022
Ask episode
Chapters
Transcript
Episode notes
1
Introduction
00:00 • 2min
2
Hivo Data - How Did You Get Started in the Data Space?
01:59 • 2min
3
Hebo Data: Cloud Data Warehouse - What's the Story Behind the Product?
03:31 • 3min
4
Hevo Data - What Are Some of the Lessons That You Learned?
06:18 • 2min
5
What Are the Challenges of Having a Single Data Solution?
08:17 • 2min
6
HIVO - What Are the Differentiating Factors in HIVO?
10:08 • 3min
7
Kafka Platform - What Is the Core Principles of the Platform?
13:32 • 2min
8
Scaling Infrastructure for Enterprise Customers
15:33 • 2min
9
Automation in ETL and the Pipeline
17:49 • 4min
10
ETL Versus ELT?
21:27 • 3min
11
The Third Aspect Is Around the Sources
24:06 • 4min
12
ETL Platform Automation and Schema Evolution
27:40 • 2min
13
ETL Versus ETL - What's Best Practice?
29:25 • 3min
14
HIVO - How Does It Integrate Into the Workflow?
32:07 • 3min
15
Data Engineering Podcast - Data Automation Cloud
35:07 • 6min
16
Aspects of Product Development and Maintenance of Data Integration Platforms
40:59 • 4min
17
Hevo Data - What Are Some of the Ways That You're Using Hevo Analytics?
44:53 • 2min
18
Hevo Data Integration Platform - What Are Some of the Most Interesting or Unexpected Lessons That You've Learned?
47:16 • 3min
19
Is Hebo the Right Solution?
50:17 • 3min
20
The Biggest Gap in the Tooling for Data Integration and Data Pipelines
52:59 • 4min