skills/research-ops/SKILL.md
Evidence-first current-state research workflow for ECC. Use when the user wants fresh facts, comparisons, enrichment, or a recommendation built from current public evidence and any supplied local context.
npx skillsauth add affaan-m/everything-claude-code research-opsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Use this when the user asks to research something current, compare options, enrich people or companies, or turn repeated lookups into a monitored workflow.
This is the operator wrapper around the repo's research stack. It is not a replacement for deep-research, exa-search, or market-research; it tells you when and how to use them together.
Pull these ECC-native skills into the workflow when relevant:
exa-search for fast current-web discoverydeep-research for multi-source synthesis with citationsmarket-research when the end result should be a recommendation or ranked decisionlead-intelligence when the task is people/company targeting instead of generic researchknowledge-ops when the result should be stored in durable context afterwardNormalize any supplied material into:
Do not restart the analysis from zero if the user already built part of the model.
Choose the right lane before searching:
exa-search for fast discoverydeep-research when synthesis or multiple sources mattermarket-research when the outcome should end in a recommendationlead-intelligence when the real ask is target ranking or warm-path discoveryFor important claims, say whether they are:
Freshness-sensitive answers should include concrete dates.
If the user is likely to ask the same research question repeatedly, say so explicitly and recommend a monitoring or workflow layer instead of repeating the same manual search forever.
QUESTION TYPE
- factual / comparison / enrichment / monitoring
EVIDENCE
- sourced facts
- user-provided context
INFERENCE
- what follows from the evidence
RECOMMENDATION
- answer or next move
- whether this should become a monitor
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