Главная
Study mode:
on
1
[] Sophia & David's preferred coffee
2
[] Takeaways
3
[] Please like, share, leave a review, and subscribe to our MLOps channels!
4
[] Hands on MLOps and AI
5
[] Next-Gen MLOps Challenges
6
[] Data scientists adopting software
7
[] Taking a different approach
8
[] Zombie Model Management
9
[] Optimizing ML Revenue Allocation
10
[] Other use cases - Lockout - Tagout procedure
11
[] Vision Model Integration Challenges
12
[] Costly errors in predictive maintenance
13
[] Integration of Gen AI
14
[] Governance challenges in AI
15
[] Governance in Gen AI vs Governance with Traditional ML
16
[] Evaluation challenges in industries
17
[] Interface frustration with Chatbots
18
[] Implementing AI Agent's success
19
[] Usability challenges in interfaces
20
[] Themes in High-Performing AI Teams
21
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Dive into a comprehensive podcast episode featuring Sophia Rowland, Senior Product Manager, and David Weik, Senior Solutions Architect at SAS, as they explore the extension of AI from industry to innovation. Gain insights into optimizing the Data and AI lifecycle, implementing MLOps and LLMOPs across various industries, and leveraging analytical assets for better decision-making. Learn about best practices for deploying models in diverse scenarios, from IoT computer vision problems to composite flows with Large Language Models. Discover the challenges and solutions in next-generation MLOps, zombie model management, and the integration of generative AI. Explore governance issues in AI, evaluation challenges across industries, and the keys to success for high-performing AI teams. Benefit from expert discussions on usability challenges in interfaces, the frustrations with chatbots, and strategies for implementing successful AI agents.

Extending AI: From Industry to Innovation

MLOps.community
Add to list
0:00 / 0:00