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Lead Enrichment

作者 audsmith28 · GitHub ↗ · v1.1.0
cross-platform ⚠ suspicious
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在 OpenClaw 中安装
/install lead-enrichment
功能描述
Turn a name into a full dossier in seconds. Feed in a name + company (or email, or LinkedIn URL) and get back a rich profile with social links, bio, company intel, recent activity, and personalized talking points. Aggregates data from multiple public sources — LinkedIn, Twitter, GitHub, company websites, news — so you can skip the manual research and jump straight to personalized outreach. Your agent does the detective work while you close deals. Supports single enrichment, batch processing, and multiple output formats (JSON, Markdown, CRM-ready). Use when researching prospects, preparing for sales calls, personalizing cold outreach, or building lead lists. Pairs perfectly with trawl for autonomous lead gen → enrichment → outreach pipelines.
使用说明 (SKILL.md)

Lead Enrichment — Research Prospects in Seconds

Stop spending hours stalking LinkedIn. Let your agent do it.

Sales teams waste 6+ hours per week manually researching prospects. You Google their name, check LinkedIn, scroll their Twitter, hunt for their email, read their company's About page, search for recent news... and then do it all over again for the next lead.

Lead Enrichment automates all of it. Give your agent a name and company (or email, or LinkedIn URL), and get back a complete dossier: contact info, social profiles, bio, company intel, recent posts, news mentions, and AI-generated talking points.

The pain: Generic outreach gets ignored. Personalization takes forever. You're always behind quota.

The fix: Your agent researches 10 leads while you grab coffee. Rich profiles ready when you need them. Spend your time selling, not searching.

What You Get

For each lead, the enrichment pulls:

Personal Profile:

  • Full name, current title, company
  • Professional bio/summary
  • Profile photo URL
  • Location
  • Social media handles (LinkedIn, Twitter, GitHub, personal site)

Contact Discovery:

  • Likely email addresses (pattern-based + verification attempts)
  • Public phone numbers (if available)
  • Best channels for outreach

Company Context:

  • Company description, industry, size
  • Funding stage, recent news
  • Tech stack (for technical sales)
  • Key decision makers

Intelligence & Timing:

  • Recent posts/articles (last 30 days)
  • Job change signals
  • Company news mentions
  • Shared connections or interests
  • Conference/event participation

AI-Generated Talking Points:

  • 3-5 personalized hooks based on their recent activity
  • Common ground opportunities
  • Relevant pain points to address
  • Recommended opening lines

Setup

  1. Run scripts/setup.sh to initialize config
  2. Edit ~/.config/lead-enrichment/config.json with preferences
  3. No API keys required for basic enrichment (uses public sources)
  4. Optional: Add premium data sources (see config)

Scripts

Script Purpose
scripts/setup.sh Initialize config and data directories
scripts/enrich.sh Enrich a single lead (main script)
scripts/batch.sh Process multiple leads from CSV/JSON
scripts/export.sh Export enriched leads (JSON/MD/CSV)

Usage

Single Lead

# By name + company
./scripts/enrich.sh --name "Sarah Chen" --company "Acme Corp"

# By email
./scripts/enrich.sh --email "[email protected]"

# By LinkedIn URL
./scripts/enrich.sh --linkedin "https://linkedin.com/in/sarahchen"

# Output to file
./scripts/enrich.sh --name "Sarah Chen" --company "Acme Corp" --output sarah-chen.json

# With talking points
./scripts/enrich.sh --name "Sarah Chen" --company "Acme Corp" --talking-points

Batch Processing

# From CSV (columns: name, company, email, linkedin_url)
./scripts/batch.sh --input leads.csv --output enriched/

# From JSON array
./scripts/batch.sh --input leads.json --output enriched/

# Process with concurrency
./scripts/batch.sh --input leads.csv --parallel 3

Export Formats

# Export as JSON (default)
./scripts/export.sh --format json enriched/*.json > leads.json

# Export as Markdown (readable)
./scripts/export.sh --format markdown enriched/*.json > leads.md

# Export as CSV (CRM import)
./scripts/export.sh --format csv enriched/*.json > leads.csv

# Pipe to your CRM
./scripts/export.sh --format json enriched/*.json | \
  curl -X POST https://your-crm.com/api/leads -d @-

Config

Config lives at ~/.config/lead-enrichment/config.json. See config.example.json for full schema.

Key sections:

enrichment.sources — Which data sources to check (all public by default):

  • linkedin — Public profiles via search
  • twitter — Social activity and bio
  • github — For technical leads
  • company_website — About pages, team directories
  • news — Recent mentions
  • crunchbase — Company funding (public data)

enrichment.depth — How thorough to be:

  • quick — Basic profile only (name, title, LinkedIn, company)
  • standard — Above + social profiles + recent activity (default)
  • deep — Above + news mentions + talking points + shared connections

output.format — Default output format (json/markdown/csv)

output.include — What to include in output:

  • contact_info — Email attempts, phone
  • social_profiles — All discovered links
  • recent_activity — Posts, articles (last 30 days)
  • company_intel — Company description, size, funding
  • talking_points — AI-generated personalization hooks
  • raw_sources — Source URLs for verification

talking_points.enabled — Generate AI talking points (requires Claude)

talking_points.style — Tone for suggestions (professional/friendly/bold)

privacy.respect_robots — Skip profiles with clear "no scraping" signals

privacy.store_locally — Cache enriched profiles (default: true)

Data Sources

All sources are public and free:

  1. LinkedIn — Public profiles via search (no API, respects robots.txt)
  2. Twitter/X — Bio, recent tweets, follower count
  3. GitHub — For technical roles (repos, activity, README)
  4. Company websites — Team pages, About sections
  5. Google News — Recent mentions
  6. Crunchbase — Public company data (no API key needed for basic info)
  7. Common email patterns[email protected], [email protected], etc.

Premium sources (optional, requires API keys):

  • Hunter.io — Email verification
  • Clearbit — Enhanced company data
  • Apollo — Direct contact info

Add API keys to ~/.clawdbot/secrets.env if you have them. Enrichment works fine without them.

Output Schema

Each enriched lead is saved as JSON:

{
  "lead_id": "sarah-chen-acme-corp",
  "enriched_at": "2025-01-29T10:30:00Z",
  "input": {
    "name": "Sarah Chen",
    "company": "Acme Corp"
  },
  "profile": {
    "full_name": "Sarah Chen",
    "title": "VP of Engineering",
    "company": "Acme Corp",
    "location": "San Francisco, CA",
    "bio": "Building the future of...",
    "photo_url": "https://...",
    "social_profiles": {
      "linkedin": "https://linkedin.com/in/sarahchen",
      "twitter": "https://twitter.com/sarahchen",
      "github": "https://github.com/sarahchen",
      "personal_site": "https://sarahchen.com"
    }
  },
  "contact": {
    "emails": [
      { "address": "[email protected]", "confidence": 0.85, "verified": false },
      { "address": "[email protected]", "confidence": 0.60, "verified": false }
    ],
    "phones": [],
    "preferred_channel": "email"
  },
  "company": {
    "name": "Acme Corp",
    "domain": "acmecorp.com",
    "industry": "SaaS",
    "size": "51-200 employees",
    "description": "AI-powered...",
    "funding": "Series B ($25M)",
    "tech_stack": ["React", "Node.js", "AWS"],
    "recent_news": [
      {
        "title": "Acme Corp raises $25M...",
        "url": "https://...",
        "date": "2025-01-15"
      }
    ]
  },
  "intelligence": {
    "recent_activity": [
      {
        "type": "twitter_post",
        "content": "Excited to announce...",
        "url": "https://...",
        "date": "2025-01-20"
      }
    ],
    "job_change_signal": false,
    "shared_connections": [],
    "interests": ["AI", "startups", "engineering leadership"]
  },
  "talking_points": [
    "Reference their recent Series B — congrats and ask about growth plans",
    "Mention mutual interest in AI/ML engineering",
    "Their tech stack (React/Node) aligns with your solution"
  ],
  "sources": [
    "https://linkedin.com/in/sarahchen",
    "https://twitter.com/sarahchen",
    "https://acmecorp.com/about"
  ],
  "confidence_score": 0.88
}

Integration with Trawl

Lead Enrichment pairs perfectly with Trawl (autonomous lead gen):

# Trawl finds leads, enrichment researches them
trawl sweep.sh                    # Discover leads
trawl leads.sh list --json |      # Export qualified leads
  jq -r '.[] | "\(.name)|\(.company)"' |
  while IFS='|' read name company; do
    ./enrich.sh --name "$name" --company "$company"
  done

# Or automate it via config:
# trawl config: "post_qualify_action": "enrich"

Tips

Email Discovery:

  • Works best when you provide company domain
  • Tries common patterns (first@company, f.last@company, etc.)
  • Marks confidence level (high/medium/low)
  • Does NOT spam or verify via email sends (respects privacy)

Talking Points:

  • Most valuable when enrichment depth = "deep"
  • Requires recent activity data (posts, news)
  • AI analyzes content for personalization hooks
  • Style can be professional, friendly, or bold

Batch Processing:

  • Use --parallel for speed (3-5 concurrent recommended)
  • Progress saved (resume if interrupted)
  • Failed leads logged to batch-errors.json

Data Freshness:

  • Cached profiles expire after 30 days
  • Force refresh with --refresh flag
  • Social activity always fetched fresh

Use Cases

Sales Reps:

  • Research prospects before calls
  • Personalize cold email sequences
  • Find mutual connections or interests

Recruiters:

  • Assess candidate backgrounds
  • Find contact info for passive candidates
  • Check GitHub activity for technical roles

Partnerships:

  • Research potential partners
  • Understand company context
  • Find the right contact person

Investors:

  • Quick founder background checks
  • Company traction signals
  • Network mapping

Privacy & Ethics

This skill only uses publicly available data. It:

  • Respects robots.txt and rate limits
  • Does NOT scrape private profiles or paywalled content
  • Does NOT send verification emails (won't spam your leads)
  • Does NOT store data if privacy.store_locally = false
  • Provides source URLs for transparency

Be a human: Just because you CAN enrich someone doesn't mean you should spam them. Use this for genuine, personalized outreach.

Data Storage

Enriched leads are stored at ~/.config/lead-enrichment/data/leads/:

~/.config/lead-enrichment/
├── config.json                 # User configuration
├── data/
│   ├── leads/                  # Enriched profiles (one file per lead)
│   │   ├── sarah-chen-acme.json
│   │   └── john-smith-techco.json
│   ├── cache/                  # Temporary data (30-day expiry)
│   └── batch-runs/             # Batch processing logs
└── exports/                    # Generated exports

FAQ

Q: Is this legal? A: Yes. All data is publicly available. We respect robots.txt and rate limits.

Q: How accurate are the emails? A: Pattern-based = 60-80% accuracy. Verified (if you add Hunter.io key) = 95%+.

Q: Can I enrich 1000 leads? A: Yes via batch.sh. Expect ~30 sec per lead (deep mode). That's 8 hours for 1000. Run overnight.

Q: Does this work for non-US leads? A: Yes. LinkedIn and Twitter are global. Some data sources are US-biased.

Q: Will this get me blocked by LinkedIn? A: No. We use search (public), not scraping. Rate-limited and respectful.

What's Next

Ideas for future versions:

  • Chrome extension (enrich while browsing LinkedIn)
  • CRM integrations (auto-enrich on lead create)
  • Slack bot (enrich on-demand from Slack)
  • Email warmup integration (find + verify + warm sequence)
  • Mutual connection finder (via agent networks)
  • Real-time alerts (when a lead changes jobs)

Stop researching. Start selling.

Feed your agent a list of names. Get back a stack of dossiers. Personalize every message. Close more deals.

That's Lead Enrichment.

安全使用建议
What to check before installing: - Inspect ~/.config/lead-enrichment/config.json after running setup; the skill will create that directory and files in your home directory. - The skill will optionally look for premium API keys in ~/.clawdbot/secrets.env (Hunter, Clearbit, Apollo) and uses an LLM (Claude) for talking points. These credentials are not declared in the registry metadata — only store keys you trust and expect to use. Consider storing them securely (not world-readable). - The included scripts are mock/demonstration stubs: they do not perform actual scraping, but the SKILL.md implies the real implementation would use a browser/web fetcher and an LLM. If you enable a production implementation, review what network endpoints it calls and whether it respects robots.txt and rate limits. - Batch mode will read user-provided input files and call the enrich script; be mindful of the data you feed it (PII) and where outputs are stored or exported (exports can be piped to arbitrary webhooks/CRMs). - If you plan to enable premium sources or automatic CRM posting, test in an isolated environment and audit outbound network calls and logs first. - If the provenance/source of this skill is unknown, prefer caution: either request a verifiable source or run it locally in a controlled environment before granting any secret keys or enabling automatic/autonomous pipelines.
功能分析
Type: OpenClaw Skill Name: lead-enrichment Version: 1.1.0 The skill bundle is classified as suspicious due to critical shell injection vulnerabilities found in `scripts/enrich.sh` and `scripts/batch.sh`. In `enrich.sh`, inferred name/company from an email address are unsafely used in shell commands, and in `batch.sh`, parsed CSV values for name/company are unsafely passed as arguments to `enrich.sh`. These flaws allow for potential Remote Code Execution if untrusted input containing shell metacharacters is processed by the agent. No evidence of intentional malicious behavior or data exfiltration was found, classifying these as vulnerabilities rather than outright malice.
能力评估
Purpose & Capability
The name/description match the delivered artifacts: scripts, config, and instructions for scraping public sources and producing CRM-ready outputs. The SKILL.md also declares a dependency on the browser skill (reasonable for web scraping). However, some capabilities (Claude LLM for talking points; premium data sources like Hunter/Clearbit/Apollo) are referenced in the config but not declared as required environment credentials in the registry metadata, which is a mild mismatch.
Instruction Scope
Runtime instructions stay within the stated purpose (load config, search public sources, aggregate profiles, generate talking points). The included scripts are mostly mock/demo implementations but do instruct reading/writing to ~/.config/lead-enrichment and optionally checking ~/.clawdbot/secrets.env for premium API keys. There are no hidden external endpoints in the delivered scripts, but the SKILL.md and config imply web fetch/browser activity and an LLM (Claude) that would perform network access if implemented.
Install Mechanism
No install spec is provided (instruction-only), so no remote code downloads occur during install. The bundle includes local scripts; setup.sh will create ~/.config/lead-enrichment and copy config.example.json there. This is expected for a CLI-style skill and not disproportionate.
Credentials
The registry lists no required env vars, but config.example.json and setup.sh reference premium API keys in ~/.clawdbot/secrets.env (HUNTER_API_KEY, CLEARBIT_API_KEY, APOLLO_API_KEY) and the talking_points feature notes it "requires Claude." Those credentials are optional, but the skill expects them to be present in a home-directory secrets file rather than declaring them as platform-provided env inputs. This is a transparency gap you should understand before enabling premium features.
Persistence & Privilege
The skill does not request always:true, does not modify other skills, and only writes its own config/data under ~/.config/lead-enrichment. Writing local config/cache is normal for this type of tool.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install lead-enrichment
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /lead-enrichment 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.1.0
v1.1.0: Full working implementation with web search and profile aggregation
v1.0.0
Initial release: Automated prospect research from name/company to full dossier
元数据
Slug lead-enrichment
版本 1.1.0
许可证
累计安装 2
当前安装数 2
历史版本数 2
常见问题

Lead Enrichment 是什么?

Turn a name into a full dossier in seconds. Feed in a name + company (or email, or LinkedIn URL) and get back a rich profile with social links, bio, company intel, recent activity, and personalized talking points. Aggregates data from multiple public sources — LinkedIn, Twitter, GitHub, company websites, news — so you can skip the manual research and jump straight to personalized outreach. Your agent does the detective work while you close deals. Supports single enrichment, batch processing, and multiple output formats (JSON, Markdown, CRM-ready). Use when researching prospects, preparing for sales calls, personalizing cold outreach, or building lead lists. Pairs perfectly with trawl for autonomous lead gen → enrichment → outreach pipelines. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 1381 次。

如何安装 Lead Enrichment?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install lead-enrichment」即可一键安装,无需额外配置。

Lead Enrichment 是免费的吗?

是的,Lead Enrichment 完全免费(开源免费),可自由下载、安装和使用。

Lead Enrichment 支持哪些平台?

Lead Enrichment 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Lead Enrichment?

由 audsmith28(@audsmith28)开发并维护,当前版本 v1.1.0。

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