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The AI Tech Lead Path
The path
267 min read · 100 XP

Learning resources

Depth over breadth — pair every concept with building something.

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Curated, not exhaustive. Pick ~1 book/month, but pair every concept with shipping an artifact — you learn this role by building, not just reading.

Key ideas

  1. 1

    Leadership: The Staff Engineer's Path (Reilly) first; Staff Engineer (Larson) + lethain.com; Influence Without Authority; Team Topologies; Switch / Made to Stick.

  2. 2

    AI engineering & evals: AI Engineering (Chip Huyen); Designing ML Systems; Anthropic's “Building effective agents”; Hamel Husain on evals; try promptfoo / Braintrust / LangSmith.

  3. 3

    Security & responsible AI: OWASP Top 10 for LLM apps; NIST AI RMF; ISO/IEC 42001.

  4. 4

    Governance: EU AI Act + insurance guidance; DORA overview; your own company's model-risk & privacy policies.

  5. 5

    Architecture: Designing Data-Intensive Applications (Kleppmann); Fundamentals of Software Architecture.

Read with intent

Consume ~1 book/month, but always pair a concept with building something — the eval harness, the gateway POC, a reference implementation.

Follow practitioners

  • Simon Willison (simonwillison.net), Latent Space, Eugene Yan, Chip Huyen, the Anthropic engineering blog.
  • Will Larson (lethain.com) for staff-level leadership and org design.
  • Hamel Husain for practical, opinionated LLM evals.

Watch

The Staff Engineer Mindset with Tanya ReillyO'Reilly

Do the work

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Test yourself

Question 1 / 2

What's the recommended way to actually consume these resources?

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