
Sign up to save your podcasts
Or
In this episode of the Crazy Wisdom Podcast, host Stewart Alsop welcomes Chia Yang, co-founder of whyhow.ai, a company specializing in data infrastructure and AI-powered knowledge graphs. They discuss the pivotal role of knowledge graphs in AI, particularly in enhancing structured search and reasoning, contrasting them with more stochastic systems like large language models (LLMs). Chia explains how knowledge graphs allow for more structured, reliable connections between data, and how this impacts the development of production-grade AI systems. He also touches on the limitations of LLMs, the significance of neurosymbolic approaches, and the future of AI reasoning. For further resources, Chia encourages listeners to visit whyhow.ai, check out their Medium articles, and join the discussion on their Discord channel.
Check out this GPT we trained on the conversation!
Timestamps
00:00 Introduction to the Crazy Wisdom Podcast
00:26 Understanding Knowledge Graphs
02:32 The Role of Knowledge Graphs in AI
05:08 Challenges and Limitations of LLMs
09:51 Production Grade Systems and SOPs
13:17 Competency Crisis and Real-World Problems
18:11 The Future of Human and Machine Collaboration
21:03 Exploring Social Inequality and Learning Challenges
21:57 The Importance and Complexity of Data
22:44 Understanding Knowledge Graphs and LLMs
24:29 Building Practical Systems with LLMs
25:42 The Evolution of Knowledge Graphs
29:12 Technical Aspects of the Platform
31:52 Philosophical Insights on Language and AI
36:48 Future Milestones and Beta Program
38:24 Final Thoughts on Knowledge Graphs
Key Insights
4.9
6969 ratings
In this episode of the Crazy Wisdom Podcast, host Stewart Alsop welcomes Chia Yang, co-founder of whyhow.ai, a company specializing in data infrastructure and AI-powered knowledge graphs. They discuss the pivotal role of knowledge graphs in AI, particularly in enhancing structured search and reasoning, contrasting them with more stochastic systems like large language models (LLMs). Chia explains how knowledge graphs allow for more structured, reliable connections between data, and how this impacts the development of production-grade AI systems. He also touches on the limitations of LLMs, the significance of neurosymbolic approaches, and the future of AI reasoning. For further resources, Chia encourages listeners to visit whyhow.ai, check out their Medium articles, and join the discussion on their Discord channel.
Check out this GPT we trained on the conversation!
Timestamps
00:00 Introduction to the Crazy Wisdom Podcast
00:26 Understanding Knowledge Graphs
02:32 The Role of Knowledge Graphs in AI
05:08 Challenges and Limitations of LLMs
09:51 Production Grade Systems and SOPs
13:17 Competency Crisis and Real-World Problems
18:11 The Future of Human and Machine Collaboration
21:03 Exploring Social Inequality and Learning Challenges
21:57 The Importance and Complexity of Data
22:44 Understanding Knowledge Graphs and LLMs
24:29 Building Practical Systems with LLMs
25:42 The Evolution of Knowledge Graphs
29:12 Technical Aspects of the Platform
31:52 Philosophical Insights on Language and AI
36:48 Future Milestones and Beta Program
38:24 Final Thoughts on Knowledge Graphs
Key Insights
11,824 Listeners
10,176 Listeners
3,064 Listeners
382 Listeners
7,103 Listeners
1,301 Listeners
8 Listeners
0 Listeners
388 Listeners
0 Listeners
0 Listeners