scaling-frontier
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/scaling-frontierDetects scaling behavior shifts and identifies capacity limits
- Analyzes system behavior across different scales to detect qualitative changes
- Uses web and paper research to gather data on scaling patterns and regime changes
- Applies statistical methods to identify breakpoints and fit scaling laws within regimes
- Reports findings through structured state ledger updates and subagent coordination
SKILL.md
.github/skills/scaling-frontierView on GitHub ↗
--- name: scaling-frontier description: Analyze behavior across scales — detect regime changes, identify capacity limits, fit scaling laws within regimes. used-by: boundary-analysis --- # Scaling Frontier Detect where scaling behavior qualitatively shifts. ## Budget | Base SOP | Target | ±10% Range | |----------|--------|------------| | web-search | 30 | 27–33 | | web-research | 10 | 9–11 | | paper-overview | 30 | 27–33 | | paper-search | 20 | 18–22 | | paper-research | 15 | 13–17 | ## State Ledger ``` <HARD-GATE> | SOP | Done | Target | % | |-----|------|--------|---| | web-search | ? | 30 | ? | | web-research | ? | 10 | ? | | paper-overview | ? | 30 | ? | | paper-search | ? | 20 | ? | | paper-research | ? | 15 | ? | Budget Gate: OPEN/CLOSED (>=80% required to exit) </HARD-GATE> ``` ## Available SOPs **Import:** web-search, web-research, paper-overview, paper-search, paper-research **Subagent:** scaling-regime-detection, edge-case-generation ## Execution Guidance Analyze behavior across scales (data size, model size, compute, time), detect regime changes (breakpoints where behavior qualitatively shifts), identify capacity limits and their mechanisms.
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