Documentation automation usually stops at text generation — but that’s where most tools fall short.
README files don’t just need to sound good; they need to reflect how a repository is structured, how components relate to each other, and what actually matters to users of the code.
That’s why I rebuilt Gitdocs AI around a new agentic AI workflow.
What changed
Instead of generating documentation from isolated inputs, the new workflow:
Analyzes the repository more holistically
Produces more consistent outputs
Handles regeneration and upgrades with near-zero downtime
This makes the results more predictable and usable in real projects.
Templates & standards
Another major addition is multiple documentation templates. Different projects need different structures, and enforcing a single format rarely works.
Templates now make it easier to generate:
Clean open-source READMEs
SaaS or product documentation
API-focused docs
All aligned with common industry standards.
Why I built this
Most developers don’t hate documentation — they hate context switching and repetitive work.
Gitdocs AI exists to remove that friction and let documentation evolve alongside the codebase instead of lagging behind it.
For this launch, the tool is completely free, and I’m actively looking for feedback from developers who care about clean repos and maintainable docs.
🚀 Gitdocs AI just launched on Product Hunt.
Product Hunt - https://www.producthunt.com/products/gitdocs-ai?utm_source=other&utm_medium=social
Website - https://www.gitdocs.space
Curious how others here handle README generation and maintenance today.


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