Last update: August 2025
Eclectic Learning & Inspiration List
A non-exhaustive but well-tested set of books, courses, blogs, and talks that have shaped my thinking in science, AI, and beyond
Core Reading & Viewing
Nobel Lectures
- Frances Arnold – 2018 Chemistry Nobel — How evolution can be engineered.
- Jennifer Doudna – 2020 Chemistry Nobel — The CRISPR story and why it matters.
Talks
- Andrew Ng – How AI Could Empower Any Business — AI as systematic application, not magic.
Books
- Three Hour Chef — A manual for learning anything fast, disguised as a cookbook
- Thinking, Fast and Slow
- Stumbling on to Happiness
- Loonshots
- Demon Haunted World
- Fooled by Randomness
- A Random Walk Down Wall Street
- The Way to Love
- Houston, We Have a Narrative - Great book on how to improve scientific communication
- Sapiens
Favorite Blogs
- Venture Capital for Life Scientists
- Studying the Studies — Nice overview for understanding statistical studies and how they are reported in peer-reviews, complement this by How to Lie with Statistics
- The AI Revolution – Wait But Why
- Biotech Platforms and Taste — Why “taste” matters in science.
Machine Learning & Data Science Essentials
80/20 rule: get the core idea, apply it, then fill gaps as you hit them.
Data science & ML
- Data Science from Scratch
- Introduction to Statistical Learning
- The 100 Page ML Book — Key ML concepts boiled to the essentials.
AI / ML
- Hands-On Machine Learning with Scikit-Learn & TensorFlow (GitHub) — Still the best structured ML intro.
- Practical Deep Learning for Coders – fast.ai
LLMs
- Hands-on LLMs - Actionable lessons with practical math and algorithm background
Seminal Papers
- Word2Vec — Words as vectors, meaning as geometry.
- Attention Is All You Need — The Transformer blueprint.
- BERT — Pretraining changes everything.
- ReACT — LLMs that think and act.
Perspectives, Reviews & Commentaries
Area Reviews
- A Survey of Deep Learning for Scientific Discovery — How deep learning is reshaping science.
- The Discipline of Machine Learning — ML’s core principles from one of its founders.
Best Practices & Pitfalls
- How to Avoid Machine Learning Pitfalls — The mistakes researchers keep making.
- Scikit-learn – Common Pitfalls — Debugging bad ML habits.
- Three Pitfalls to Avoid in Machine Learning — Shortlist of costly errors.
- A Few Useful Things to Know About Machine Learning — Timeless, hard-earned lessons.
Commentaries
- Statistical Modeling: The Two Cultures — Why stats and ML often talk past each other.
- The Hardware Lottery — How progress gets stuck on the wrong tools.
- Why Is AI Harder Than We Think? — The gap between perception and reality.
In Chemical Sciences
- Machine Learning for Materials Scientists – Best Practices — What works (and what doesn’t) in materials ML.
- Machine Learning in Synthetic Chemistry — Principles and promising directions.
Graph Networks
- Graph Networks: Relational Inductive Biases — The foundations of graph ML.
- How to Get Started with Graph Machine Learning — Beginner’s map to the field.
- Demystifying Graph Deep Learning — Making graphs intuitive.
Courses Worth Finishing
Machine Learning
- MIT Intro to Deep Learning
- Google ML Crash Course — Quick, pragmatic entry point
- Stanford CS231n — Computer vision’s modern foundation.
- NYU PyTorch Deep Learning — Great for PyTorch fluency
Data Science & Computation
Python code resources
Learning
- Automate the Boring Stuff — Coding utility from day one.
- Python Data Science Handbook — Essential Pandas, NumPy, Matplotlib.
- Visual Guide to NumPy — Arrays explained visually.
Projects & Practice
- Project Euler — Math puzzles that teach coding fluency.
- Calmcode — Bite-sized Python tips.
Writing Better Code
- Corey Schafer – Tips — Pragmatic code hygiene.
Data, Viz & Stats
Stats
- Think Stats — Stats for hackers.
- Telling Stories with Data — Numbers need a plot.
Visualization
- Fundamentals of Data Visualization — Clear thinking via clear charts.
- Python Graph Gallery — Examples by type.
Videos & Lecture Series
Science & AI
- Medicinal Chemistry Lecture Series
- MIT Deep Learning Series
- Andrej Karpathy’s Lectures — Deep learning taught by a leading industry expert
- 3Blue1Brown — Beautiful videos on foundational ML/DS concepts
Concept Explainers
- StatQuest — Stats explained like you’re five.
Blogs & Writing
- Paul Graham Essays — Thinking about thinking.
- Farnam Street — Tools for better decisions.
- Wait But Why — Long-form deep dives.
Good articles that focus on better writing
- Paul Graham – Writing Usefully
- Draft No. 4 — John McPhee on the architecture of writing
- This Is Your Mind on Plants — Michael Pollan very nicely written account of plants effect on altered states and culture
- Smart Words – Linking Words