Главная
Study mode:
on
1
[] Ketan's preferred coffee
2
[] Takeaways
3
[] Please like, share, and subscribe to our MLOps channels!
4
[] Shout out to Ketan and UnionAI for sponsoring this episode!
5
[] Orchestration recent changes
6
[] Community with Flyte
7
[] ML orchestration
8
[] 50/50 is generous
9
[] Real-time ML
10
[] Over engineering without benefits
11
[] Balancing everything
12
[] Union verse Flyte
13
[] High value features of Union AI at the back of Flyte
14
[] Building LLM infrastructure
15
[] Traditional ML is the whole prompting
16
[] LLMs to evaluating prompts
17
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the intricacies of MLOps and ML Orchestration in this 50-minute podcast episode featuring Ketan Umare, CEO of Union.AI. Delve into the relationship between Union and Flyte, emphasizing community-driven development and the challenges of balancing feature requests with security considerations. Learn about the importance of real-time data and secure data handling in orchestrating machine learning models. Discover how the Flyte community's support for newcomers contributes to democratizing machine learning. Gain insights on recent changes in orchestration, the role of community in Flyte's development, and the distinctions between Union and Flyte. Explore high-value features of Union AI, the building of LLM infrastructure, and the evolving landscape of traditional ML and prompt engineering.

MLOps vs ML Orchestration - Exploring Challenges and Community-Driven Development

MLOps.community
Add to list