Synthesize multi-source search results into deduplicated answers with citations and confidence.
Copy the install command and let the AI configure it · recommended for beginners
Please install the "knowledge-synthesis" skill from askskill: 1. Download https://raw.githubusercontent.com/anthropics/knowledge-work-plugins/main/enterprise-search/skills/knowledge-synthesis/SKILL.md 2. Save it as ~/.claude/skills/knowledge-synthesis/SKILL.md 3. Reload skills and tell me it's ready
Please combine the competitor search results I provide, remove duplicates, summarize by features, pricing, and target users, and attach sources and confidence levels to each conclusion.
A structured competitor summary with categorized findings, cited sources, and confidence notes.
Using the following research results from multiple sources, create a unified overview: extract key findings, note agreements and conflicts, and assign confidence based on source authority and freshness.
A research synthesis showing consensus, disagreements, and confidence assessments.
I have a large set of search results on a topic. Compress them into a concise answer: merge duplicates, keep key information, list major sources, and explain which conclusions are most reliable.
A concise answer covering key conclusions, major sources, and reliability judgments.
The last mile of enterprise search. Takes raw results from multiple sources and produces a coherent, trustworthy answer.
Transform this:
~~chat result: "Sarah said in #eng: 'let's go with REST, GraphQL is overkill for our use case'"
~~email result: "Subject: API Decision — Sarah's email confirming REST approach with rationale"
~~cloud storage result: "API Design Doc v3 — updated section 2 to reflect REST decision"
~~project tracker result: "Task: Finalize API approach — marked complete by Sarah"
Into this:
The team decided to go with REST over GraphQL for the API redesign. Sarah made the
call, noting that GraphQL was overkill for the current use case. This was discussed
in #engineering on Tuesday, confirmed via email Wednesday, and the design doc has
been updated to reflect the decision. The related ~~project tracker task is marked complete.
Sources:
- ~~chat: #engineering thread (Jan 14)
- ~~email: "API Decision" from Sarah (Jan 15)
- ~~cloud storage: "API Design Doc v3" (updated Jan 15)
- ~~project tracker: "Finalize API approach" (completed Jan 15)
The same information often appears in multiple places. Identify and merge duplicates:
Signals that results are about the same thing:
How to merge:
When the same information exists in multiple sources, prefer:
1. The most complete version (fullest context)
2. The most authoritative source (official doc > chat)
3. The most recent version (latest update wins for evolving info)
Keep as separate items when:
Every claim in the synthesized answer must be attributable to a source.
Inline for direct references:
Sarah confirmed the REST approach in her email on Wednesday.
The design doc was updated to reflect this (~~cloud storage: "API Design Doc v3").
Source list at the end for completeness:
Sources:
- ~~chat: #engineering discussion (Jan 14) — initial decision thread
- ~~email: "API Decision" from Sarah Chen (Jan 15) — formal confirmation
- ~~cloud storage: "API Design Doc v3" last modified Jan 15 — updated specification
Not all results are equally trustworthy. Assess confidence based on:
| Recency | Confidence impact |
|---|---|
| Today / yesterday | High confidence for current state |
| This week | Good confidence |
| This month | Moderate — things may have changed |
| Older than a month | Lower confidence — flag as potentially outdated |
For status queries, heavily weight freshness. For policy/factual queries, freshness matters less.
| Source type | Authority level |
|---|---|
| Official wiki / knowledge base | Highest — curated, maintained |
…
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