writing-systems-papers
Writing Systems Papers: Paragraph-Level Structural Blueprint
Fine-grained structural guidance for writing 10–12 page systems papers targeting top systems venues: OSDI, SOSP, ASPLOS, NSDI, and EuroSys. This skill provides page allocation per section, paragraph-level blueprints, and writing patterns distilled from authoritative guides and best-paper analysis.
When to Use This Skill
| Scenario | Use This Skill | Use ml-paper-writing Instead |
|---|---|---|
| Structuring a 12-page OSDI/SOSP paper | ✅ | |
| Page budget and paragraph planning | ✅ | |
| Systems-specific evaluation structure | ✅ | |
| General ML paper writing philosophy | ✅ | |
| Citation verification workflow | ✅ | |
| LaTeX templates and formatting | ✅ | |
| NeurIPS/ICML/ICLR paper structure | ✅ |
Boundary: ml-paper-writing provides general writing philosophy, multi-venue templates, and citation verification. This skill focuses exclusively on paragraph-level structural blueprints for systems conferences.
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