Agent skill
x-rfc
RFC (Request for Comments) document query tool providing access to Internet protocol standards. Use this skill whenever the user needs to look up, search, read, or learn about RFC documents. Covers: list RFCs (x rfc ls), view by number (x rfc 791), search (x rfc : http), and AI summary (x rfc :: tls). Triggered by queries like "RFC 791", "TCP standard", "HTTP protocol", "TLS specs", "SMTP RFC", "what is RFC 1918?", or any Internet protocol standard lookup.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/x-rfc
Metadata
Additional technical details for this skill
- tags
-
shell cli tools rfc network protocol
- author
- X-CMD
- version
- 1.0.3
- category
- core
- repository
- https://github.com/x-cmd/skill
- install doc
- data/install.md
- display name
- RFC Document Assistant
SKILL.md
x rfc - RFC Document Assistant
Prerequisites
-
Load x-cmd before use:
bash. ~/.x-cmd.root/X -
x-cmd not installed? → data/install.md
Core Functions
- List RFC documents:
x rfc ls - View RFC document:
x rfc <number> - Search RFC:
x rfc : <keyword> - AI summary search:
x rfc :: <keyword>
Usage Examples
List all RFC documents
x rfc ls
x rfc ls --csv
x rfc ls --tsv
View specific RFC document
x rfc 1003
x rfc 791
Search RFC website
x rfc : csv
x rfc : http protocol
AI summary search results
x rfc :: tcp
x rfc :: tls ssl
Common Scenarios
- List all RFCs:
x rfc ls - Read RFC 791 (TCP):
x rfc 791 - Search for HTTP protocol:
x rfc : http - Get AI summary of TLS RFCs:
x rfc :: tls
Get Help
Run x rfc --help for full help documentation.
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