MLOps.community

Why is MLOps Hard in an Enterprise? // Maria Vechtomova & Basak Eskili // #159

May 30, 2023
Ask episode
Chapters
Transcript
Episode notes
1
Introduction
00:00 • 2min
2
The MLOps Community's Maturity Assessment Questionnaire
01:48 • 2min
3
The Challenges of Doing ML in the Enterprise
04:16 • 2min
4
The Evolution of Model Factory
06:30 • 2min
5
Standardization and the Evolution of Model Registry
08:15 • 3min
6
Databricks Serverless API Deployment for AI Products
11:11 • 3min
7
How to Choose the Right Tool for Your MLOps Solution
14:24 • 3min
8
ML Test Score for Microsoft Azure Native Solutions
17:07 • 2min
9
How to Share Data Science Methodology
18:38 • 2min
10
How to Deploy a Cross Cell Model
20:21 • 2min
11
How Our Team Helps the Brand Become More Professional in the Machine Learning and Data Science Field
22:11 • 2min
12
How to Choose the Right Tool for Your MLOps Platform
24:14 • 3min
13
How to Be as Mature as Possible in the Corporate Environment
26:45 • 2min
14
How to Protect Your Organizational Secrets in GitHub
28:26 • 2min
15
Breaking the Wall Between Data Scientists and DevOps Engineers
30:32 • 2min
16
The Differences Between MLOps and DevOps
32:23 • 2min
17
The Differences Between MLOps and DevOps
33:58 • 2min
18
How to Fix Critical Models
35:31 • 2min
19
The Cost of Not Working Data Science Product
37:07 • 2min
20
Databricks and the Process Around It
39:27 • 3min
21
The Importance of Unit Testing in Databricks
42:07 • 2min
22
How to Write Good Code for a Modern Look
44:08 • 2min
23
Azure Cost Management: What You Need to Know
45:47 • 3min
24
The Cost of a Data Science Model
48:31 • 3min
25
AI and Chat GPT: How to Prove Your Worth
51:22 • 2min
26
The Future of Machine Learning at HealthRhythms
53:08 • 2min