skills/42-wanshuiyin-ARIS/skills/comm-lit-review/SKILL.md
Communications-domain literature review with Claude-style knowledge-base-first retrieval. Use when the task is about communications, wireless, networking, satellite/NTN, Wi-Fi, cellular, transport protocols, congestion control, routing, scheduling, MAC/PHY, rate adaptation, channel estimation, beamforming, or communication-system research and the user wants papers, related work, a survey, or a landscape summary. Search Zotero, Obsidian, and local paper folders first when available, then search IEEE Xplore, ScienceDirect, ACM Digital Library, and broader web in that order.
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research comm-lit-review-claude-singleInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Research topic: $ARGUMENTS
Use this skill for communications-domain literature review when the topic is about:
4G/5G/6G, NR, NTNLEO, GEO, integrated space-air-ground systemsACM, HARQ, CSI feedbackIf the center of gravity is generic ML architecture research, pure control theory without communications literature, or software/API documentation rather than papers, fall back to a general literature skill.
papers/ in the current projectliterature/ in the current projectCLAUDE.md under ## Paper LibraryParse $ARGUMENTS for a — sources: directive.
— sources: is specified, only search the listed sources.zoteroobsidianlocalieeesciencedirectacmwebValid source values:
zoteroobsidianlocalieeesciencedirectacmweballIf all is specified, interpret it as the full default source set.
This is a knowledge-base-first skill. Search in this order unless the user overrides it:
ZoteroObsidianpapers/ and literature/IEEE XploreScienceDirectACM Digital LibraryGraceful degradation rules:
For external search:
IEEE Xplore firstScienceDirectACMPublication policy:
workshoppreprintTime-window policy:
foundational: before 2022recent: 2022 to presentWithin each database tier, search venue tiers in this order.
Journals:
IEEE Journal on Selected Areas in Communications (JSAC)IEEE/ACM Transactions on Networking (ToN)IEEE Transactions on Wireless Communications (TWC)IEEE Transactions on Communications (TCOM)Conferences:
ACM SIGCOMMUSENIX NSDIACM MobiComACM CoNEXTIEEE INFOCOMJournals:
IEEE Transactions on Vehicular Technology (TVT)IEEE Wireless Communications Letters (WCL)IEEE Communications LettersComputer NetworksComputer CommunicationsAd Hoc NetworksPhysical CommunicationConferences:
IEEE ICCIEEE GLOBECOMIEEE WCNCIEEE PIMRCACM MobiHocUsage rules:
only top venues, top journals only, or top conferences only, treat Tier A as a hard filterSkip this step if Zotero MCP is not configured or zotero is not enabled.
If available:
Skip this step if Obsidian MCP is not configured or obsidian is not enabled.
If available:
Run this step if local is enabled.
papers/**/*.pdf and literature/**/*.pdfUse a layered search strategy. For communications topics, avoid random blog posts or tertiary summaries.
Database ladder:
ieeexplore.ieee.orgsciencedirect.comdl.acm.orgMove to the next database tier only when:
Within each database tier:
For each relevant paper, capture:
zotero, obsidian, local, ieee, sciencedirect, acm, or webFavor concrete numbers, assumptions, and problem definitions over generic paraphrases.
Do not collapse transport-layer rate control and PHY/MAC rate adaptation into one bucket without saying so explicitly.
Group papers by technical axis rather than by search order. Common groupings:
PHY/MAC adaptationNTN and satellite resource managementWhen useful, explicitly separate:
If evidence is weak, say so instead of smoothing it over.
Use a literature table with these columns:
| Paper | Venue | Year | Layer | Scenario | Method | Key Result | Limitation | Relevance | Source | |---|---|---:|---|---|---|---|---|---|---|
Source should indicate where the paper came from first:
zoteroobsidianlocalieeesciencedirectacmwebAfter the table, summarize in this order:
2-4 approachesEnd with Practical Takeaway:
IEEE and ScienceDirect first, ACM second, and only then broader web search unless the user asks otherwise.development
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