Главная
Study mode:
on
1
[] Jake's preferred coffee
2
[] AI in Production Conference teaser
3
[] Takeaways
4
[] Please like, share, and subscribe to our MLOps channels!
5
[] Data Engineer's Crucial Role
6
[] Jake's background
7
[] Data Platform Foundations blog
8
[] Day-to-day common patterns in a platform
9
[] Data mesh organizational side of things
10
[] Data platform structural design patterns for recommendation
11
[] Importance of data modeling
12
[] Dealing with the sprawl
13
[] Data quality
14
[] Data hierarchy on building a platform
15
[] Bolstering AI ML on top of a platform
16
[] ML Platform Team Structure
17
[] Don't reinvent the wheel
18
[] Data pipelines synergy
19
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the critical role of data platforms in machine learning and artificial intelligence in this 39-minute podcast episode featuring Jake Watson, Principal Data Engineer at The Oakland Group. Gain insights into common patterns in data platforms, the organizational aspects of data mesh, recommended structural design patterns, and the importance of data modeling. Learn how to deal with data sprawl, ensure data quality, and understand the data hierarchy when building a platform. Discover strategies for integrating AI and ML into existing data platforms, structuring ML platform teams, and leveraging existing solutions. Delve into the synergy between data pipelines and AI/ML applications, and understand why solid data foundations are crucial for successful AI and ML implementations.

How Data Platforms Affect Machine Learning and Artificial Intelligence - MLOps Podcast

MLOps.community
Add to list