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DataExpert-io/data-engineer-handbook

This is a repo with links to everything you'd ever want to learn about data engineering

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What it does

The Data Engineering Handbook is a free, community-built collection of learning resources — books, communities, tools, and company directories — for anyone looking to build careers or products around moving and managing large amounts of data. Think of it as a curated 'getting started' guide for the people who build the pipelines that keep modern apps and businesses running on clean, reliable data.

Why it matters

With over 40,000 stars and nearly 8,000 forks, this repo signals just how large and hungry the data engineering talent market is — a strong indicator for founders building tools, platforms, or infrastructure in the data space that there is a massive, engaged audience actively looking for solutions. For investors and product teams, the curated company list reads like a map of the competitive landscape, revealing which categories — orchestration, data lakes, warehouses, and quality tools — are crowded with well-funded players and where gaps might still exist.

21Active

On the radar — signal detected

Stars
42.0k
Forks
7.9k
Contributors
142
Language
Jupyter Notebook

Score updated Jun 17, 2026

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