ResourceFoundations · ML · deep learning · LLMs · agents · evals · MLOps · data

What serious practitioners actually study — not a credential mill.

Curated tracks from high-school-friendly stats through production agents. Each card is an outbound link (courses, docs, books, standards). Filter by proficiency; expand a track to browse. No pay-to-rank listings.

Proficiency
Foundations — math, code, probability Linear intuition, basic probability, and a real programming baseline before you chase transformers. 4 picks
Classical machine learning Supervised learning, generalization, and honest baselines — still how most tabular and “small data” wins happen. 4 picks
Deep learning & neural nets From tensors and autograd to architectures you will actually ship in vision and sequence models. 4 picks
LLMs, prompting & RAG Context windows, retrieval, embeddings, and the glue patterns behind most “AI products” in 2025–2026. 4 picks
Agents, tools & production glue Orchestration, APIs, and the reliability layer between “demo” and something finance or ops will tolerate. 4 picks
Evaluation, red teaming & governance When “vibes-based QA” stops scaling — benchmarks, adversarial testing, and procurement-friendly risk language. 4 picks
MLOps & delivery Versioning, CI/CD for models, observability, and the boring wins that keep GPUs from becoming expensive science projects. 4 picks
Data engineering & vector retrieval Chunking, freshness, metadata, and ANN indexes — where RAG quality is actually won or lost. 4 picks

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