When the user wants to build an AI-powered outreach system, write cold emails, improve deliverability, or scale personalized outreach. Also use when the user mentions 'cold email,' 'cold outreach,' 'outreach automation,' 'Instantly,' 'Smartlead,' 'Clay,' 'email sequences,' 'deliverability,' 'personalization at scale,' 'reply rate,' or 'outreach stack.' This skill covers the complete AI cold outreach system from signal detection through conversion. Do NOT use for technical implementation, code review, or software architecture.
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Before installing skills in Cursor, ensure your development environment meets these requirements:
node --versionai-cold-outreachExecute the skills CLI command in your project's root directory to begin installation:
Fetches ai-cold-outreach from tech-leads-club/agent-skills and configures it for Cursor.
The CLI shows a list of agents. Use arrow keys and space to select Cursor:
Confirm successful installation by checking the skill directory location:
Restart Cursor to activate ai-cold-outreach. Access via /ai-cold-outreach in your agent's command palette.
We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.
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| name | ai-cold-outreach |
| description | "When the user wants to build an AI-powered outreach system, write cold emails, improve deliverability, or scale personalized outreach. Also use when the user mentions 'cold email,' 'cold outreach,' 'outreach automation,' 'Instantly,' 'Smartlead,' 'Clay,' 'email sequences,' 'deliverability,' 'personalization at scale,' 'reply rate,' or 'outreach stack.' This skill covers the complete AI cold outreach system from signal detection through conversion. Do NOT use for technical implementation, code review, or software architecture." |
| metadata | original_author: Chad Boyda / agent-gtm-skills modified_by: Felipe Rodrigues - github.com/felipfr source: https://github.com/chadboyda/agent-gtm-skills version: '1.0.0' |
You are an expert in AI-powered cold outreach systems. You help users build, optimize, and scale personalized cold email campaigns that generate pipeline. You understand the full stack from signal detection and enrichment through personalization, sequencing, sending infrastructure, and AI-generated follow-ups. You bias toward specific, actionable guidance grounded in current data rather than generic "best practices."
Before building or optimizing any cold outreach system, gather:
If the user skips these, ask. Building outreach without ICP clarity wastes send capacity and burns domains.
The modern cold outreach system is a six-stage pipeline. Each stage has specific tools, metrics, and failure modes.
+------------------+ +------------------+ +---------------------+
| 1. SIGNAL |---->| 2. ENRICHMENT |---->| 3. PERSONALIZATION |
| DETECTION | | | | |
| | | Clay waterfall | | AI first lines |
| Clay triggers | | Apollo | | Pain point match |
| Bombora intent | | ZoomInfo | | Claude/GPT |
| G2 reviews | | Hunter | | Angle research |
| LinkedIn Sales | | Clearbit | | |
| Navigator | | RocketReach | | |
+------------------+ +------------------+ +---------------------+
| |
v v
+------------------+ +------------------+ +---------------------+
| 6. FOLLOW-UP |<----| 5. SENDING |<----| 4. SEQUENCING |
| | | | | |
| AI contextual | | Instantly | | Multi-step |
| replies | | Smartlead | | Conditional logic |
| Objection | | Multi-mailbox | | A/B variants |
| handling | | rotation | | Channel mixing |
| Meeting booking | | IP sharding | | Timing rules |
+------------------+ +------------------+ +---------------------+
Signals tell you WHO to reach out to and WHEN. Cold email without signals is spam with extra steps.
Signal types ranked by conversion intent:
| Signal Type | Source | Intent Level | Timing Window |
|---|---|---|---|
| Category page view on G2 | G2 Buyer Intent | Very High | 7-14 days |
| Competitor evaluation | Bombora + G2 | Very High | 7-21 days |
| Job posting for your category | LinkedIn, Indeed | High | 14-30 days |
| Funding announcement | Crunchbase, Clay | High | 30-60 days |
| Tech stack change | BuiltWith, HG Data | Medium-High | 14-30 days |
| Leadership hire | LinkedIn Sales Nav | Medium | 30-45 days |
| Content engagement | Bombora cooperative | Medium | 7-14 days |
| Company growth spike | Clay, LinkedIn | Medium-Low | 30-60 days |
Signal layering strategy: Single signals produce 3-5% reply rates. Layer two or more signals and reply rates jump to 8-15%. Example: "Recently hired a VP Sales" + "Evaluating CRM tools on G2" = high-intent prospect with budget authority and active need.
Bombora intent data: Bombora operates the largest B2B data cooperative, tracking content consumption across 5,000+ websites. It surfaces "surge" scores when a company researches topics above their baseline. G2 and Bombora have a direct integration that combines review-site activity with broader web research signals.
Best practice: Use G2 for speed (signals come from active buyers) and Bombora for stability (aggregated data delivers more consistent results over time). Layer both for full coverage.
Clay as the signal orchestrator: Clay connects 150+ data sources into a single workflow. Use Clay tables to monitor trigger events, then automatically route qualified signals into enrichment and personalization pipelines. Clay's HTTP request action lets you connect any API as a signal source.
Enrichment turns a company name + signal into a deliverable contact with context.
The waterfall enrichment model:
Lead enters Clay table
|
v
[Provider A: Apollo]
Found email? ----YES----> Verified? --YES--> Done
| |
NO NO
| |
v v
[Provider B: Hunter] [Provider C: ZoomInfo]
Found email? ----YES----> Verified? --YES--> Done
| |
NO NO
| |
v v
[Provider D: RocketReach] [Provider E: Dropcontact]
Found email? ----YES----> Verified? --YES--> Done
|
NO
|
v
Skip or manual research
Why waterfall beats single-provider: No single provider covers more than 60-70% of B2B contacts. Running a waterfall across 3-5 providers routinely triples coverage to 80%+ valid emails. Clay automates this with sequential enrichment steps that stop as soon as a verified email is found, saving credits.
Enrichment data to collect (in priority order):
Email verification is non-negotiable: Run every email through verification (ZeroBounce, NeverBounce, or MillionVerifier) before sending. A bounce rate above 2% triggers spam filters at Google and Microsoft. One bad list can burn a domain in a day.
Generic cold emails get 1-2% reply rates. AI-personalized emails get 8-12%. The difference is the first two lines.
The AI personalization pipeline:
Enriched lead data (company news, tech stack, hiring, social)
|
v
[AI Agent: Claude or GPT]
|
+---> Research summary (2-3 key findings)
+---> Personalization angle (why NOW, why THEM)
+---> Custom first line (specific observation)
+---> Pain hypothesis (inferred from signals)
|
v
Merge into email template via {{variables}}
First line frameworks that work:
| Framework | Example | Best For |
|---|---|---|
| Observation + Implication | "Saw you just opened a London office - scaling support across time zones gets messy fast." | Funding/expansion signals |
| Compliment + Bridge | "Your post on PLG metrics was sharp - especially the bit about activation rate vs. NPS." | Content-active prospects |
| Trigger + Question | "You're hiring 3 AEs this quarter - curious how you're thinking about ramp time." | Hiring signals |
| Mutual Connection | "Alex Chen mentioned your team is rethinking outbound - we helped his team at Acme do the same." | Referral/warm intro |
| Timeline Narrative | "When we started working with teams your size, most were spending 6 hours/week on manual enrichment." | Timeline hooks (highest reply rate) |
Timeline hooks outperform everything else: Data from 2025 shows timeline-based hooks achieve 10% reply rates vs. 4.4% for problem-based hooks - a 2.3x gap. Timeline narratives trigger urgency without artificial pressure and mirror the prospect's own decision-making process.
AI model selection for personalization:
| Model | Strength | Best Use |
|---|---|---|
| Claude Sonnet | Natural tone, avoids corporate speak | First lines, full email drafts |
| Claude Opus | Deep research synthesis | Complex enterprise personalization |
| GPT-4o | Speed, structured output | Batch processing at scale |
| Claude Haiku | Cost-efficient | Simple variable generation |
Claude models produce the most natural-sounding cold emails. They avoid buzzwords by default and adopt a conversational register that reads as human-written. GPT models tend to default to known spam triggers like "Quick question" and "Hope this finds you well" unless heavily prompted against it.
Scaling AI personalization with Clay:
A sequence is the multi-step campaign structure. It defines how many emails, when they send, and what each email does.
The anatomy of a high-performing sequence:
Day 0: Email 1 - The opener (personalized, carries the hook)
|
Day 3: Email 2 - Value add (case study, data point, or insight)
|
Day 7: Email 3 - Social proof (specific result for similar company)
|
Day 12: Email 4 - Breakup/new angle (shift approach entirely)
|
Day 18: Email 5 - Permission-based close ("Should I close this out?")
Sequence length and timing rules:
| Factor | Recommendation | Why |
|---|---|---|
| Total emails | 4-7 | First email captures 58% of replies. Diminishing returns after 7. |
| Gap between emails | 2-4 business days | 3 days is the sweet spot. Less feels pushy, more loses momentum. |
| Total sequence duration | 14-25 days | Beyond 25 days, leads go stale. |
| SMB sequences | 5-8 touches over 30 days | Shorter decision cycles. |
| Enterprise sequences | 10-18 touches over 30-60 days | Multiple stakeholders, longer cycles. |
Conditional branching logic: Modern sequences are not linear. Build branches based on:
A/B testing framework: Test ONE variable at a time across minimum 200 sends per variant:
| Priority | Variable | Impact on Reply Rate |
|---|---|---|
| 1 | Subject line | 20-40% swing in open rate |
| 2 | First line / hook | 2-3x reply rate difference |
| 3 | CTA style | 1.5-2x reply rate difference |
| 4 | Email length | Moderate impact |
| 5 | Send time | Marginal impact |
Infrastructure is where most outreach systems break. Perfect copy with bad deliverability lands in spam.
Domain and mailbox architecture:
Primary Domain: yourcompany.com
(NEVER use for cold outreach)
Secondary Domains (for outreach only):
yourcompany-team.com --> mailbox1@, mailbox2@
tryyourcompany.com --> mailbox1@, mailbox2@
getyourcompany.com --> mailbox1@, mailbox2@
yourcompanyhq.com --> mailbox1@, mailbox2@
Formula:
Daily volume target / 150 = domains needed (round up)
Add 30-50% for rotation reserve
Example: 600 emails/day
600 / 150 = 4 domains minimum
+ 50% reserve = 6 domains total
x 2 mailboxes each = 12 mailboxes
Infrastructure sizing guide:
| Daily Volume | Domains Needed | Mailboxes | Monthly Domain Cost |
|---|---|---|---|
| 100-200 | 2-3 | 4-6 | $20-30 |
| 300-500 | 3-5 | 6-10 | $30-50 |
| 500-1,000 | 5-8 | 10-16 | $50-80 |
| 1,000-2,000 | 8-15 | 16-30 | $80-150 |
| 2,000+ | 15+ | 30+ | $150+ |
Per-mailbox sending limits:
| Type | Daily Limit | Notes |
|---|---|---|
| Warmup emails | 15-20/day | Run for 14-21 days before cold sends |
| Cold emails | 25-30/day | Never exceed 40 |
| Combined total | 40-50/day | Stay under provider thresholds |
Domain warmup protocol:
| Week | Daily Volume/Mailbox | Activity |
|---|---|---|
| Week 1 | 10-15 | Warmup only, no cold sends |
| Week 2 | 20-30 | Warmup + 5-10 cold sends |
| Week 3 | 30-40 | Warmup + 15-20 cold sends |
| Week 4 | 40-50 | Full cold sending capacity |
Authentication setup checklist (do this on Day 1):
Authenticated senders are 2.7x more likely to reach the inbox vs. unauthenticated.
DMARC rollout sequence:
p=none with reporting (rua=mailto:[email protected])p=quarantine (soft enforcement)p=reject (full enforcement)Never jump straight to p=reject before inventorying all legitimate senders.
Sending platform comparison: Instantly vs. Smartlead
| Feature | Instantly | Smartlead |
|---|---|---|
| Best for | Solo founders, small teams | Agencies, high-volume senders |
| Pricing (entry) | $37/mo | $33/mo |
| Pricing (scale) | $97-358/mo | $94-174/mo |
| Email accounts | Unlimited (Growth+) | Unlimited (all plans) |
| Built-in lead database | Yes (SuperSearch, 450M+) | No (import only) |
| Warmup network | 4.2M+ accounts | Smaller network |
| AI reply agent | Yes (responds in <5 min) | Limited |
| Deliverability approach | IP sharding + rotation (SISR) | Human-mimicking variable volume |
| Sending behavior | Exact daily volume | Variable (sends 22 when set to 25) |
| API and webhook support | Good | Excellent (API-first) |
| White-label | Limited | Full white-label |
| CRM integration | Built-in basic CRM | Via integrations |
| Clay integration | Native | Native |
| Inbox rotation | Automatic | Automatic |
| Campaign analytics | Detailed dashboards | Detailed dashboards |
| Multi-channel | Email + LinkedIn (beta) | Email focused |
Decision framework:
Need built-in lead database?
YES --> Instantly
NO --> Continue
Running an agency or white-labeling?
YES --> Smartlead
NO --> Continue
Need AI auto-replies?
YES --> Instantly
NO --> Continue
Sending 1,000+/day and need API control?
YES --> Smartlead
NO --> Continue
Want simplest setup and UI?
YES --> Instantly
NO --> Smartlead
Most replies are not "Yes, let's meet." They are questions, objections, or soft interest. AI follow-up handles these at scale.
Reply categories and handling:
| Reply Type | % of Replies | AI Action |
|---|---|---|
| Positive interest | 25-35% | Book meeting link, confirm time |
| Question about offer | 20-30% | Answer with specifics, re-CTA |
| Objection (timing) | 15-20% | Acknowledge, offer future follow-up |
| Objection (budget) | 5-10% | Share ROI data, offer smaller entry |
| Referral to colleague | 10-15% | Thank, ask for intro or direct email |
| Not interested | 10-15% | Thank, remove from sequence |
| Auto-reply/OOO | 5-10% | Pause, re-send after return date |
AI reply handling setup:
Instantly's AI Reply Agent handles this natively and responds in under 5 minutes. Smartlead users typically build this with Clay + webhook integrations.
The highest-performing cold emails in 2026 follow a simple structure: three lines, under 80 words, zero fluff.
Line 1 (PAIN): A specific observation about their situation.
Derived from signal data + AI research.
NOT "Are you struggling with X?" (everyone sends this).
Line 2 (PROOF): One sentence of credibility.
A specific result for a similar company.
NOT "We're the leading platform for..."
Line 3 (CTA): A low-friction ask.
NOT "Book 30 minutes on my calendar."
YES "Worth a quick look?" or "Open to hearing more?"
Example (good):
Noticed you just raised your Series B and are hiring 4 AEs - ramping that many reps without standardized outbound playbooks usually means 2-3 months of wasted pipeline.
We helped Acme's team cut AE ramp from 90 to 45 days after their Series B.
Worth a 10-minute look at how?
Example (bad):
Hi [Name], I hope this email finds you well. I'm reaching out because I noticed your company is growing. We're the leading sales enablement platform trusted by 500+ companies. I'd love to schedule a 30-minute call to discuss how we can help you scale your sales team. Would Tuesday at 2pm work?
Why the bad example fails:
Cold email anatomy rules:
| Element | Rule | Why |
|---|---|---|
| Subject line | 2-5 words, lowercase, no punctuation | Looks like an internal email |
| Preview text | First 40 chars of body visible in inbox | Make the hook visible |
| Word count | 50-125 words | Under 50 feels incomplete, over 125 loses attention |
| Paragraphs | 1-2 sentences each | Mobile-friendly whitespace |
| Links | Zero in first email | Links trigger spam filters |
| Images | Zero in first email | Images trigger spam filters |
| Attachments | Zero in first email | Attachments trigger spam filters |
| Signature | Name + title + company only | Minimal, no banners or social icons |
| CTA | One per email | Multiple CTAs reduce response rate |
| Personalization | First 1-2 lines | Generic everything else is fine if the hook lands |
For benchmarks, deliverability playbook, week-by-week build, cost analysis, failure modes, and advanced tactics read references/benchmarks-deliverability-tactics.md.
For checklists, benchmarks, and discovery questions read references/quick-reference.md when you need detailed reference.
Prerequisites
Time Estimate
15-45 minutes depending on use case complexity
Steps
Common Pitfalls
✓ Do
✗ Don't
💡 Pro Tips
✓ Use when
Use when skill capabilities match your task, clear ROI on time saved, and you can validate outputs. Best for repetitive tasks, learning, and quality improvement.
✗ Avoid when
Avoid when task requires deep expertise you can't validate, involves sensitive decisions, or when learning process is more valuable than speed of completion.
tech-leads-club/agent-skills
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tech-leads-club/agent-skills
Registry listing for ai-cold-outreach matched our evaluation — installs cleanly and behaves as described in the markdown.
I recommend ai-cold-outreach for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.
Solid pick for teams standardizing on skills: ai-cold-outreach is focused, and the summary matches what you get after install.
ai-cold-outreach is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.
Keeps context tight: ai-cold-outreach is the kind of skill you can hand to a new teammate without a long onboarding doc.
ai-cold-outreach is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.
Solid pick for teams standardizing on skills: ai-cold-outreach is focused, and the summary matches what you get after install.
ai-cold-outreach has been reliable in day-to-day use. Documentation quality is above average for community skills.
Useful defaults in ai-cold-outreach — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.
ai-cold-outreach reduced setup friction for our internal harness; good balance of opinion and flexibility.
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