
Sign up to save your podcasts
Or


In this episode of Crazy Wisdom, Stewart Alsop chats with Ian Mason, who works on architecture and delivery of AI and ML solutions, including LLMs and retrieval-augmented generation (RAG). They explore topics like the evolution of knowledge graphs, how AI models like BERT and newer foundational models function, and the challenges of integrating deterministic systems with language models. Ian explains his process of creating solutions for clients, particularly using RAG and LLMs to support automated tasks, and discusses the future potential of AI, contrasting the hype with practical use cases. You can find more about Ian on his LinkedIn profile.
Check out this GPT we trained on the conversation!
Timestamps
00:00 Introduction and Guest Welcome
00:32 Understanding Knowledge Graphs
02:03 Hybrid Systems and AI Models
03:39 Philosophical Insights on AI
05:01 RAG and Knowledge Graph Integration
07:11 Challenges in AI and Knowledge Graphs
11:40 Multimodal AI and Future Prospects
13:44 Artificial Intelligence vs. Artificial Linear Algebra
17:50 Silicon Valley and AI Hype
30:44 Defining AGI and Embodied Intelligence
32:29 Potential Risks and Mistakes of AI Agents
35:04 The Role of Human Oversight in AI
38:00 Understanding Vector Databases
43:28 Building Solutions with Modern Tools
46:52 The Future of Solution Development
47:43 Personal Journey into Coding
57:25 The Importance of Practical Learning
59:44 Conclusion and Contact Information
Key Insights
By Stewart Alsop4.9
6969 ratings
In this episode of Crazy Wisdom, Stewart Alsop chats with Ian Mason, who works on architecture and delivery of AI and ML solutions, including LLMs and retrieval-augmented generation (RAG). They explore topics like the evolution of knowledge graphs, how AI models like BERT and newer foundational models function, and the challenges of integrating deterministic systems with language models. Ian explains his process of creating solutions for clients, particularly using RAG and LLMs to support automated tasks, and discusses the future potential of AI, contrasting the hype with practical use cases. You can find more about Ian on his LinkedIn profile.
Check out this GPT we trained on the conversation!
Timestamps
00:00 Introduction and Guest Welcome
00:32 Understanding Knowledge Graphs
02:03 Hybrid Systems and AI Models
03:39 Philosophical Insights on AI
05:01 RAG and Knowledge Graph Integration
07:11 Challenges in AI and Knowledge Graphs
11:40 Multimodal AI and Future Prospects
13:44 Artificial Intelligence vs. Artificial Linear Algebra
17:50 Silicon Valley and AI Hype
30:44 Defining AGI and Embodied Intelligence
32:29 Potential Risks and Mistakes of AI Agents
35:04 The Role of Human Oversight in AI
38:00 Understanding Vector Databases
43:28 Building Solutions with Modern Tools
46:52 The Future of Solution Development
47:43 Personal Journey into Coding
57:25 The Importance of Practical Learning
59:44 Conclusion and Contact Information
Key Insights

10,193 Listeners

395 Listeners

4,695 Listeners

8,267 Listeners

29,130 Listeners

534 Listeners

560 Listeners

0 Listeners

0 Listeners

0 Listeners