Issue #292
September 18, 2025
Mark Carrigan’s "Generative AI for Academics" is a brisk, sensible map for using LLMs in scholarly life. It avoids both hype and doom, treating generative AI as a set of tools that demand judgment, not blind adoption. The tone is practical and reflective—ideal for faculty, PIs, and grad students who need shared language and guardrails.
The book shines in how it organizes academic work (Thinking, Collaborating, Communicating, Engaging), then pairs each with concrete practices (rubber-ducking, draft refinement, critical oversight). It isn’t a prompt cookbook or a windy manifesto; it’s a clear framework for responsible use, culture-setting, and policy discussions in departments and labs.
Data scientists and ML engineers will find valuable takeaways for literature synthesis, design reviews, code docs, and stakeholder comms. But if you want model internals, rigorous eval protocols, threat modeling, or MLOps patterns, the book skims the surface. Bottom line: keep it close for norms, ethics, and mentoring; pair it with technical playbooks when you need depth.
- 1. Cities Obey the Laws of Living Things [nautil.us]
- 2. Product Requirements Prompts [abvijaykumar.medium.com]
- 3. Experimenting with local LLMs on macOS [blog.6nok.org]
- 4. Why I'm lukewarm on graph neural networks [singlelunch.com]
- 5. How the Math of Shuffling Cards Almost Brought Down an Online Poker Empire [scientificamerican.com]
- 6. Some thoughts on personal git hosting [shkspr.mobi]
- 7. What Is the Fourier Transform? [quantamagazine.org]
- • How large language models encode theory-of-mind: a study on sparse parameter patterns (Y. Wu, W. Guo, Z. Liu, H. Ji, Z. Xu, D. Zhang)
- • A causal framework for the drivers of animal social network structure (B. Kawam, J. Ostner, R. McElreath, O. Schülke, D. Redhead)
- • Why Language Models Hallucinate (A. T. Kalai, O. Nachum, S. S. Vempala, E. Zhang)
- • A Comprehensive Survey on Trustworthiness in Reasoning with Large Language Models (Y. Wang, Y. Yu, J. Liang, R. He)
- • The wall confronting large language models (P. V. Coveney, S. Succi)
- • R-Zero: Self-Evolving Reasoning LLM from Zero Data (C. Huang, W. Yu, X. Wang, H. Zhang, Z. Li, R. Li, J. Huang, H. Mi, D. Yu)
- • Bootstrapping Task Spaces for Self-Improvement (M. Jiang, A. Lupu, Y. Bachrach)
Python: The Documentary
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