Find, qualify, and reach high-value leads with AI-driven outreach workflows.
Copy the install command and let the AI configure it · recommended for beginners
Please install the "lead-intelligence" skill from askskill: 1. Download https://raw.githubusercontent.com/affaan-m/ECC/main/skills/lead-intelligence/SKILL.md 2. Save it as ~/.claude/skills/lead-intelligence/SKILL.md 3. Reload skills and tell me it's ready
Help me find 50 high-value leads for a customer support automation SaaS targeting mid-sized ecommerce companies. Prioritize operations, customer support, or digital transformation leaders in North America, rank them by fit, and explain why they were selected.
A prioritized lead list with roles, companies, fit rationale, and recommended follow-up order.
Using the following lead details, generate first-touch outreach messages for email, LinkedIn, and X. Keep the tone professional, concise, and natural, and personalize each message using the prospect’s recent activity and company context without sounding overly salesy.
Personalized outreach copy for each channel, reflecting relevant signals and channel-appropriate tone.
Analyze possible warm introduction paths between me and this set of target prospects. Prioritize mutual connections, shared company history, investor relationships, or public interactions, and suggest the most practical entry point for each prospect.
A list of warm intro opportunities for each prospect, with the best recommended opening path and rationale.
Agent-powered lead intelligence pipeline that finds, scores, and reaches high-value contacts through social graph analysis and warm path discovery.
web_search_exa)X_BEARER_TOKEN, plus write-context credentials such as X_CONSUMER_KEY, X_CONSUMER_SECRET, X_ACCESS_TOKEN, X_ACCESS_TOKEN_SECRET)┌─────────────┐ ┌──────────────┐ ┌─────────────────┐ ┌──────────────┐ ┌─────────────────┐
│ 1. Signal │────>│ 2. Mutual │────>│ 3. Warm Path │────>│ 4. Enrich │────>│ 5. Outreach │
│ Scoring │ │ Ranking │ │ Discovery │ │ │ │ Draft │
└─────────────┘ └──────────────┘ └─────────────────┘ └──────────────┘ └─────────────────┘
Do not draft outbound from generic sales copy.
Run brand-voice first whenever the user's voice matters. Reuse its VOICE PROFILE instead of re-deriving style ad hoc inside this skill.
If live X access is available, pull recent original posts before drafting. If not, use supplied examples or the best repo/site material available.
Search for high-signal people in target verticals. Assign a weight to each based on:
| Signal | Weight | Source |
|---|---|---|
| Role/title alignment | 30% | Exa, LinkedIn |
| Industry match | 25% | Exa company search |
| Recent activity on topic | 20% | X API search, Exa |
| Follower count / influence | 10% | X API |
| Location proximity | 10% | Exa, LinkedIn |
| Engagement with your content | 5% | X API interactions |
# Step 1: Define target parameters
target_verticals = ["prediction markets", "AI tooling", "developer tools"]
target_roles = ["founder", "CEO", "CTO", "VP Engineering", "investor", "partner"]
target_locations = ["San Francisco", "New York", "London", "remote"]
# Step 2: Exa deep search for people
for vertical in target_verticals:
results = web_search_exa(
query=f"{vertical} {role} founder CEO",
category="company",
numResults=20
)
# Score each result
# Step 3: X API search for active voices
x_search = search_recent_tweets(
query="prediction markets OR AI tooling OR developer tools",
max_results=100
)
# Extract and score unique authors
For each scored target, analyze the user's social graph to find the warmest path.
social-graph-ranker model to score bridge value| Factor | Weight |
|---|---|
| Number of connections to targets | 40% — highest weight, most connections = highest rank |
| Mutual's current role/company | 20% — decision maker vs individual contributor |
…
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