What is AI? Symbolic vs Statistical
Description
In this episode, we explore one of the most important questions in the history of artificial intelligence: What is AI, really—and why has the field been shaped by two fundamentally different approaches?
We break down the long-standing tension between Symbolic AI and Statistical AI, tracing how early researchers tried to encode intelligence through logic and rules, why those systems ultimately hit hard limits, and how the rise of data-driven learning reshaped the field. Along the way, we explain concepts like rational agents, knowledge representation, Bayesian reasoning, bias–variance, and the curse of dimensionality—using clear analogies and real historical examples.
What We Cover in This Episode
- Technical definitions of Artificial Intelligence and rational action
- The origins of Symbolic AI and the Physical Symbol System Hypothesis
- Search algorithms, state spaces, and combinatorial explosion
- The rise of Statistical AI and machine learning
- Bias–variance, overfitting, and the curse of dimensionality
- Why deep learning dominated the last decade
- The modern push toward hybrid neuro-symbolic systems
- Why the future of safe, reliable AI will likely require both paradigms
Sources and Further Reading
Rather than listing individual books or papers here, you can find all referenced materials, recommended readings, foundational papers, and extended resources directly on our website:
We continuously update our reading lists, research summaries, and episode-related references, so check back frequently for new material.






