Главная
Study mode:
on
1
[] Waleed's preferred coffee
2
[] Takeaways
3
[] Waleed's background
4
[] Nvidia investment with Rey
5
[] Deep Learning use cases
6
[] Infrastructure challenges
7
[] MLOps level of maturity
8
[] Scale overloading
9
[] Large Language Models
10
[] Balance between fine-tuning forces prompts engineering
11
[] Deep Learning movement
12
[] Open-source models have enough resources
13
[] Ray
14
[] Value add for any scale from Ray
15
[] "Big data is dead" reconciliation
16
[] Causality in Deep Learning
17
[] AI-assisted Apps
18
[] Ray Summit is coming up in September!
19
[] Anyscale is hiring!
20
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the challenges of scalability in machine learning with Dr. Waleed Kadous, Head of Engineering at Anyscale, in this insightful podcast episode. Delve into topics such as large-scale computing power requirements, the significance of attention-based models, and the balance between big and small data. Learn about Anyscale's efforts to address these challenges through their open-source project Ray, a popular scalable AI platform. Gain valuable insights from Kadous' extensive experience at companies like Uber and Google, where he led system architecture and pioneered location and sensing technologies. Discover the latest trends in deep learning, infrastructure challenges in MLOps, and the potential of AI-assisted applications. The discussion also covers the upcoming Ray Summit and career opportunities at Anyscale, making it a must-listen for professionals and enthusiasts in the field of machine learning and AI scalability.

ML Scalability Challenges in Machine Learning - MLOps Coffee Session

MLOps.community
Add to list