[] Please like, share, leave a review, and subscribe to our MLOps channels!
4
[] AI hype and humor
5
[] Defining project success
6
[] Effective data utilization
7
[] AI Hype vs Data Engineering
8
[] AI implementation challenges
9
[17:44 - ] Data Engineering for AI and ML Virtual Conference Ad
10
[] Managing AI Expectations
11
[] AI expectations vs reality
12
[] Balancing Engineering and AI
13
[] Highlighting engineer success
14
[] The real challenges
15
[] Embracing work challenges
16
[] Dealing with podcast disappointments
17
[] Creating content for visibility
18
[] Exploring niche interests
19
[] Relationship building
20
[] Strategic approach to success
21
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Grab it
Explore a thought-provoking podcast episode featuring Nikhil Suresh, Director at Hermit Tech, discussing the anti-AI hype trend and the importance of fundamental engineering discipline in AI operations. Delve into the challenges companies face when rushing to implement machine learning initiatives without proper technical expertise. Gain insights on bridging the gap between management and technology for effective AI implementation. Learn about the significance of data engineering, managing AI expectations, and balancing engineering with AI advancements. Discover strategies for highlighting engineer success, embracing work challenges, and building relationships in the tech industry. Benefit from Nik's expertise in data engineering, data science, and psychology as he shares his perspectives on the current state of AI and its impact on businesses.
AI Operations Without Fundamental Engineering Discipline - MLOps Podcast #250