Issue #246
May 29, 2024
This week's book is "Co-Intelligence" by Ethan Mollick. This book provides an essential and balanced guide to navigating the age of artificial intelligence (AI). Author Ethan Mollick offers a pragmatic perspective on AI's capabilities and limitations, showing how it can effectively augment human abilities. The book's key strength is Mollick's "Four Rules of Co-Intelligence" framework for seamlessly integrating AI into work and life. He demystifies complex AI concepts through engaging examples and practical advice. Mollick paints an optimistic yet grounded vision where humans and AI collaborate harmoniously, complementing each other's strengths to drive innovation. His book equips readers to confidently leverage AI's power while preserving human ingenuity and ethics. In the rapidly changing AI landscape, "Co-Intelligence" is an invaluable resource for business leaders, educators, students, and anyone seeking to thrive by harnessing the benefits of human-AI co-intelligence. Mollick's work provides a roadmap for gaining a competitive edge through co-intelligent collaboration.
- 1. What We Learned from a Year of Building with LLMs (Part I) [oreilly.com]
- 2. An Introduction to Reinforcement Learning [towardsdatascience.com]
- 3. Computer Scientists Invent an Efficient New Way to Count [quantamagazine.org]
- 4. Big Data Is Dead [motherduck.com]
- 5. Welcome to Microsoft Phi-3 Cookbook [github.com/microsoft]
- 6. Diffusion Models [andrewkchan.dev]
- 7. Hypothesis Testing Explained [towardsdatascience.com]
- 8. These crows may count in a way similar to human toddlers [science.org]
- • Novel embeddings improve the prediction of risk perception (Z. Hussain, R. Mata, D. U. Wulff)
- • Scaling Monosemanticity: Extracting Interpretable Features from Claude 3 Sonnet (A. Templeton, T. Conerly, J. Marcus, J. Lindsey, T. Bricken, B. Chen, A. Pearce, C. Citro, E. Ameisen, A. Jones, H. Cunningham, N. L. Turner, C. McDougall, M. MacDiarmid, A. Tamkin, E. Durmus, T. Hume, F. Mosconi, C. D. Freeman, T. R. Sumers, E. Rees, J. Batson, A. Jermyn, S. Carter, C. Olah, T. Henighan)
- • Link Prediction in Complex Networks Using Average Centrality-Based Similarity Score (Y. V. Nandini, T. J. Lakshmi, M. K. Enduri, H. Sharma)
- • A generative model for community types in directed networks (C. X. Liu, T. J. Alexander, E. G. Altmann)
- • Is artificial consciousness achievable? Lessons from the human brain (M. Farisco, K. Evers, J.-P. Changeux)
- • Thermodynamic Natural Gradient Descent (K. Donatella, S. Duffield, M. Aifer, D. Melanson, G. Crooks, P. J. Coles)
- • AnyLoss: Transforming Classification Metrics into Loss Functions (D. Han, N. Moniz, N. V. Chawla)
Mapping GPT revealed something strange...
All our videos are also available in our YouTube playlist.
Enjoy the newsletter?
Forward it to a friend, or subscribe to get it straight to your inbox.
Subscribe Free