Artwork

เนื้อหาจัดทำโดย Brian Bell เนื้อหาพอดแคสต์ทั้งหมด รวมถึงตอน กราฟิก และคำอธิบายพอดแคสต์ได้รับการอัปโหลดและจัดหาให้โดยตรงจาก Brian Bell หรือพันธมิตรแพลตฟอร์มพอดแคสต์ของพวกเขา หากคุณเชื่อว่ามีบุคคลอื่นใช้งานที่มีลิขสิทธิ์ของคุณโดยไม่ได้รับอนุญาต คุณสามารถปฏิบัติตามขั้นตอนที่แสดงไว้ที่นี่ https://th.player.fm/legal
Player FM - แอป Podcast
ออฟไลน์ด้วยแอป Player FM !

Ignite AI: Machine Learning Week Founder Eric Siegel on AI’s Limitations and Potential | Ep98

54:48
 
แบ่งปัน
 

Manage episode 440314751 series 3515266
เนื้อหาจัดทำโดย Brian Bell เนื้อหาพอดแคสต์ทั้งหมด รวมถึงตอน กราฟิก และคำอธิบายพอดแคสต์ได้รับการอัปโหลดและจัดหาให้โดยตรงจาก Brian Bell หรือพันธมิตรแพลตฟอร์มพอดแคสต์ของพวกเขา หากคุณเชื่อว่ามีบุคคลอื่นใช้งานที่มีลิขสิทธิ์ของคุณโดยไม่ได้รับอนุญาต คุณสามารถปฏิบัติตามขั้นตอนที่แสดงไว้ที่นี่ https://th.player.fm/legal

In this episode of the Ignite podcast, Brian Bell hosts Eric Siegel, a renowned expert in artificial intelligence (AI) and machine learning. Siegel, who has been involved in the field for over 30 years, shares insights from his extensive career, which spans from academia to consulting. He discusses the evolution of AI, highlighting his experiences as the founder of Machine Learning Week and CEO of Gooder AI. Siegel emphasizes that despite the hype surrounding AI, it remains a tool to be used with clear value propositions, cautioning against the exaggerated expectations often associated with AI autonomy. The conversation dives into the over-promising narratives surrounding generative AI and AGI (Artificial General Intelligence). Siegel tempers the enthusiasm, underscoring that while advancements in AI are impressive, humans still run the world, and technology should be seen as a tool for improving operations, not a replacement for human control. He uses generative AI as an example of current technology's potential and limitations, contrasting it with predictive AI, which he believes is more impactful in business settings for improving large-scale operations. Brian and Eric explore real-world applications, such as UPS’s use of predictive models to optimize deliveries, saving the company millions of dollars and cutting emissions. Siegel stresses the importance of deploying machine learning models effectively and getting business stakeholders involved early in the process to ensure models are integrated into operations successfully. He also introduces his concept of "BizML" (Business Practice for Machine Learning), which bridges the gap between technical AI expertise and business value. Toward the end of the episode, Siegel reflects on his journey from academia to entrepreneurship, sharing his passion for making technical concepts accessible to business audiences. His new book, focused on BizML, offers a practical framework for businesses to successfully implement AI projects. The discussion is a thought-provoking exploration of AI’s future, grounded in real-world application and tempered by a pragmatic view of its limitations. Chapters: 00:01 - 00:27 Introduction and Eric Siegel’s Background 00:28 - 01:06 Eric’s Journey into Machine Learning 01:07 - 02:28 AI Hype: Fact vs Fiction 02:29 - 03:50 Predictive vs Generative AI 03:51 - 06:07 Debunking AI Autonomy 06:08 - 08:07 Task-Based AI Workers 08:08 - 10:18 Skepticism Around Full Autonomy 10:19 - 12:05 AI’s Limitations in Complex Tasks 12:06 - 14:36 Predictive AI in Business 14:37 - 16:20 UPS Case Study: AI-Driven Optimization 16:21 - 18:44 Predictive AI’s Potential in Operations 18:45 - 20:58 Why Predictive AI Projects Fail 20:59 - 23:45 The BizML Framework 23:46 - 26:15 Why AI Models Don’t Get Deployed 26:16 - 29:00 Visualizing AI Value for Businesses 29:01 - 31:00 AI and Data Quality 31:01 - 33:37 Deep Learning Revolution 33:38 - 35:40 Predictive AI and Its Limitations 35:41 - 38:08 Neural Networks and Deep Learning 38:09 - 40:23 Founding Machine Learning Week 40:24 - 44:27 UPS Case Study Continued: AI in Real-World Deployment 44:28 - 46:22 Book Recommendations for AI Enthusiasts 46:23 - 47:35 Advice for Companies Starting with AI 47:36 - 49:38 Favorite AI Algorithms 49:39 - 52:04 Keeping Up with AI Advancements 52:05 - 53:26 Teaching and Making AI Accessible 53:27 - 54:49 Closing Remarks and How to Reach Eric Siegel

  continue reading

98 ตอน

Artwork
iconแบ่งปัน
 
Manage episode 440314751 series 3515266
เนื้อหาจัดทำโดย Brian Bell เนื้อหาพอดแคสต์ทั้งหมด รวมถึงตอน กราฟิก และคำอธิบายพอดแคสต์ได้รับการอัปโหลดและจัดหาให้โดยตรงจาก Brian Bell หรือพันธมิตรแพลตฟอร์มพอดแคสต์ของพวกเขา หากคุณเชื่อว่ามีบุคคลอื่นใช้งานที่มีลิขสิทธิ์ของคุณโดยไม่ได้รับอนุญาต คุณสามารถปฏิบัติตามขั้นตอนที่แสดงไว้ที่นี่ https://th.player.fm/legal

In this episode of the Ignite podcast, Brian Bell hosts Eric Siegel, a renowned expert in artificial intelligence (AI) and machine learning. Siegel, who has been involved in the field for over 30 years, shares insights from his extensive career, which spans from academia to consulting. He discusses the evolution of AI, highlighting his experiences as the founder of Machine Learning Week and CEO of Gooder AI. Siegel emphasizes that despite the hype surrounding AI, it remains a tool to be used with clear value propositions, cautioning against the exaggerated expectations often associated with AI autonomy. The conversation dives into the over-promising narratives surrounding generative AI and AGI (Artificial General Intelligence). Siegel tempers the enthusiasm, underscoring that while advancements in AI are impressive, humans still run the world, and technology should be seen as a tool for improving operations, not a replacement for human control. He uses generative AI as an example of current technology's potential and limitations, contrasting it with predictive AI, which he believes is more impactful in business settings for improving large-scale operations. Brian and Eric explore real-world applications, such as UPS’s use of predictive models to optimize deliveries, saving the company millions of dollars and cutting emissions. Siegel stresses the importance of deploying machine learning models effectively and getting business stakeholders involved early in the process to ensure models are integrated into operations successfully. He also introduces his concept of "BizML" (Business Practice for Machine Learning), which bridges the gap between technical AI expertise and business value. Toward the end of the episode, Siegel reflects on his journey from academia to entrepreneurship, sharing his passion for making technical concepts accessible to business audiences. His new book, focused on BizML, offers a practical framework for businesses to successfully implement AI projects. The discussion is a thought-provoking exploration of AI’s future, grounded in real-world application and tempered by a pragmatic view of its limitations. Chapters: 00:01 - 00:27 Introduction and Eric Siegel’s Background 00:28 - 01:06 Eric’s Journey into Machine Learning 01:07 - 02:28 AI Hype: Fact vs Fiction 02:29 - 03:50 Predictive vs Generative AI 03:51 - 06:07 Debunking AI Autonomy 06:08 - 08:07 Task-Based AI Workers 08:08 - 10:18 Skepticism Around Full Autonomy 10:19 - 12:05 AI’s Limitations in Complex Tasks 12:06 - 14:36 Predictive AI in Business 14:37 - 16:20 UPS Case Study: AI-Driven Optimization 16:21 - 18:44 Predictive AI’s Potential in Operations 18:45 - 20:58 Why Predictive AI Projects Fail 20:59 - 23:45 The BizML Framework 23:46 - 26:15 Why AI Models Don’t Get Deployed 26:16 - 29:00 Visualizing AI Value for Businesses 29:01 - 31:00 AI and Data Quality 31:01 - 33:37 Deep Learning Revolution 33:38 - 35:40 Predictive AI and Its Limitations 35:41 - 38:08 Neural Networks and Deep Learning 38:09 - 40:23 Founding Machine Learning Week 40:24 - 44:27 UPS Case Study Continued: AI in Real-World Deployment 44:28 - 46:22 Book Recommendations for AI Enthusiasts 46:23 - 47:35 Advice for Companies Starting with AI 47:36 - 49:38 Favorite AI Algorithms 49:39 - 52:04 Keeping Up with AI Advancements 52:05 - 53:26 Teaching and Making AI Accessible 53:27 - 54:49 Closing Remarks and How to Reach Eric Siegel

  continue reading

98 ตอน

すべてのエピソード

×
 
Loading …

ขอต้อนรับสู่ Player FM!

Player FM กำลังหาเว็บ

 

คู่มืออ้างอิงด่วน