
Sign up to save your podcasts
Or
Summary
Summary
In this conversation, Cyrus and Lauren discuss the intersection of Agile and data science, specifically focusing on the challenges of shipping AI-enabled products quickly. They emphasize the importance of democratizing AI within organizations and the need for product managers to understand AI and ML concepts. They also discuss the prioritization of AI ML feature sets per quarter and the balance between quick wins and long-term strategic initiatives. Lauren shares her recommendations for getting buy-in and support from leadership, including listening, scenario planning, and making informed decisions.
Takeaways
Chapters
00:00 Introduction and Background
03:25 Challenges of Delivering Business Value Quickly
06:52 Democratizing AI within Organizations
11:05 Scoping AI/ML Feature Sets for Revenue Outcomes
14:12 Staying Up-to-Date with New Technologies
27:40 Incorporating AI into Product Strategies
28:54 Aligning Organizational Expectations and Goals
30:09 Understanding Constraints and Goals
33:10 Planning and Execution
36:04 Balancing Quick Wins and Long-Term Strategic Initiatives
40:17 Gaining Buy-In from Leadership
43:10 Democratizing Knowledge about AI and ML
Keywords
Agile, data science, intersection, challenges, shipping, AI-enabled products, democratizing AI, product managers, prioritization, feature sets, quick wins, long-term strategic initiatives, buy-in, leadership
4.8
1313 ratings
Summary
Summary
In this conversation, Cyrus and Lauren discuss the intersection of Agile and data science, specifically focusing on the challenges of shipping AI-enabled products quickly. They emphasize the importance of democratizing AI within organizations and the need for product managers to understand AI and ML concepts. They also discuss the prioritization of AI ML feature sets per quarter and the balance between quick wins and long-term strategic initiatives. Lauren shares her recommendations for getting buy-in and support from leadership, including listening, scenario planning, and making informed decisions.
Takeaways
Chapters
00:00 Introduction and Background
03:25 Challenges of Delivering Business Value Quickly
06:52 Democratizing AI within Organizations
11:05 Scoping AI/ML Feature Sets for Revenue Outcomes
14:12 Staying Up-to-Date with New Technologies
27:40 Incorporating AI into Product Strategies
28:54 Aligning Organizational Expectations and Goals
30:09 Understanding Constraints and Goals
33:10 Planning and Execution
36:04 Balancing Quick Wins and Long-Term Strategic Initiatives
40:17 Gaining Buy-In from Leadership
43:10 Democratizing Knowledge about AI and ML
Keywords
Agile, data science, intersection, challenges, shipping, AI-enabled products, democratizing AI, product managers, prioritization, feature sets, quick wins, long-term strategic initiatives, buy-in, leadership
14,993 Listeners