brand-docs
BrandDocs is a set of agent skills that learn your existing Word, PowerPoint and Excel templates and generate new on-brand documents from them. Unlike generic AI document generators, it preserves brand, structure, styles and formulas by construction. Built for Claude Code, Codex and compatible AI agents.
- Generate new Word documents matching your company's existing brand templates and styles automatically.
- Create PowerPoint presentations that preserve your organization's formatting, colors, and layout standards.
- Produce Excel spreadsheets with formulas and structures copied from your established financial or data templates.
Eliminates manual document formatting and brand-compliance overhead by automating template-aware document generation, reducing time spent on style enforcement and structural consistency across teams.
Enterprise teams managing standardized documents (proposals, reports, presentations) who need consistent branding without custom development.
https://github.com/ferdinandobons/brand-docs
By ferdinandobons
How to Get It
claude plugins install ferdinandobons/brand-docs
Tip: Paste this into a Claude Code conversation. Verify command matches your Claude Code version.
Trust Signals Auto-scanned
Community Pulse Growing
Discussed on Hacker News
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- Ask HN: What happens when a major company does nothing with a major purchase? — Hacker News · 4 pts
10 mentions across 1 sources
Reviewer notes
Auto-scanned review. These are observations, not a security certification.
Scored from trust signals (evidence-eval-v1): 117 GitHub stars; contributors unknown; last commit -1d ago; license MIT.
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Data shown here comes from public APIs and automated scanning. Reviewer notes reflect one person's experience. This is not a security certification or legal recommendation. Always evaluate tools according to your own organization's policies.
Evaluation
Scored from trust signals (evidence-eval-v1): 117 GitHub stars; contributors unknown; last commit -1d ago; license MIT.