contact-research
从 Common Room 检索联系人综合资料,支持邮箱、社交账号或姓名公司查找,自动整合活动历史、Spark 评分和 CRM 字段,快速完成客户背景调研
npx skills add anthropics/knowledge-work-plugins --skill contact-researchBefore / After 效果对比
1 组手动查询联系人信息需要打开多个平台(LinkedIn、公司官网、CRM 系统),逐一搜索和验证,一个潜在客户调研需要 1 小时,信息零散
输入邮箱或姓名,3 分钟内获取综合联系人档案,包含活动历史、参与评分、网站访问记录等 CRM 数据,一目了然
description SKILL.md
contact-research
Contact Research
Retrieve a comprehensive contact profile from Common Room. Supports lookup by email, social handle, or name + company. Returns enriched data including activity history, Spark, scores, website visits, and CRM fields.
Step 1: Locate the Contact
Common Room supports multiple lookup methods — use whichever the user has provided:
What the user gives Lookup method
Email address Look up by email (most reliable)
LinkedIn, Twitter/X, or GitHub handle Look up by social handle — specify handle type explicitly
Name + company Identity resolution by name + org domain; present matches if ambiguous
Name only Search by name; if multiple matches, show a brief list and ask the user to confirm
If no match is found, respond: "Common Room doesn't have a record for this person." Do not speculate or fabricate profile data.
Step 2: Fetch Contact Fields
Use the Common Room object catalog to see available field groups and their contents. For full profiles, request all groups. For targeted questions, request only what's relevant.
Key field groups to know about:
-
Scores — always return as raw values or percentiles, never labels
-
Recent activity — use
Contact Initiatedfilter (last 60 days) for their actions, not your team's -
Website visits — total count + specific pages (last 12 weeks)
-
Spark — retrieve all Sparks when tracking engagement evolution over time
Step 3: Run Spark Enrichment (If Available)
If Spark is available, use it. Spark provides:
-
Professional background and job history
-
Social presence and influence signals
-
Persona classification: Champion, Economic Buyer, Technical Evaluator, End User, or Gatekeeper
-
Inferred role in the buying process
If Spark is unavailable but real activity data exists (recent actions, website visits, community engagement), infer a persona from those signals. If neither Spark nor activity data is available, classify as Unknown — do not guess a persona from title alone.
Retrieve all Sparks (not just the most recent) when the user wants to understand how this contact's engagement has evolved over time.
Step 4: Assess Account Context
Pull an abbreviated account snapshot for this contact's parent company. Note:
-
Open opportunities, expansion signals, or churn risk at the account level
-
Whether other contacts at this company are also active
-
How this person's engagement compares to their colleagues
Step 5: Identify Conversation Angles
Based on activity and signals, surface the strongest 2–3 hooks:
-
A recent
Contact Initiatedactivity (community post, product event, support ticket) -
A specific web page they visited recently — especially if it signals evaluation intent
-
A job change, promotion, or company news
-
Their Spark persona and what that suggests about communication style
-
Their role in a known active deal
Output Format
Only include sections where data was actually returned. Omit sections with no data rather than filling them with guesses.
When data is rich:
## [Contact Name] — Profile
**Overview**
[2 sentences: who they are, their role, and relationship status]
**Details**
- Title: [title]
- Company: [company]
- Email: [email]
- LinkedIn: [URL]
- Other profiles: [Twitter/X, GitHub, CRM link if available]
**Scores** [If scores returned]
[All scores as raw values or percentiles]
**Recent Activity** (last 60 days) [If activity returned]
[3–5 bullets with dates]
**Website Visits** (last 12 weeks) [If visit data exists]
[Total visit count + list of pages visited]
**Spark Profile** [If Spark data is non-null]
[Persona type, background summary, influence signals]
**Segments** [If segments returned]
[List of segment names this contact belongs to]
**Account Context**
[1–2 sentences on their company's status]
**Conversation Starters**
[2–3 specific, signal-backed openers]
When data is sparse (e.g., only name, title, email, tags returned; sparkSummary is null):
## [Contact Name] — Profile (Limited Data)
**Data available:** [List exactly what Common Room returned]
[Present only the returned fields]
**Web Search**
[Any findings from searching their name + company]
**Note:** Common Room has limited data on this contact. No activity history, scores, or Spark profile available. I can run deeper web searches or look up their company for additional context.
Do not generate conversation starters, persona inferences, or engagement assessments from sparse data. These require real signals.
Quality Standards
-
Lookup must use the correct method for the input type — don't guess on email vs. handle
-
Scores as raw/percentile only — never labels
-
Contact Initiatedactivity (last 60 days) is the primary engagement signal — lead with it -
If Spark is unavailable, say so — don't fabricate a persona from title alone
-
Flag any contact where the most recent activity is older than 30 days
Reference Files
references/contact-signals-guide.md— full field descriptions, Spark persona guide, and conversation starter principles
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