When you've got 400 speakers to triage before next week's conference, score every one by ICP fit so you arrive with a prioritized list. — Claude Skill
A Claude Skill for Claude Code by Browserbase — run /event-prospecting in Claude·Updated May 21, 2026·v0.1.0
Rank conference speakers by ICP fit, with per-person hooks.
- Conference platforms: Stripe Sessions (Next.js), Sessionize, Lu.ma, Eventbrite, custom HTML
- ICP triage: 1 search per company to filter the speaker list down to fits 6/10 and above
- Per-person hooks pulled from the last 6 months: podcast, blog post, GitHub repo, X thread
- Output: company-grouped HTML report, filterable speaker view, Apollo-ready CSV
- Auto-drops your own team and the host org's employees from the speaker list
Who this is for
Turn a conference URL into a ranked speaker list with per-person hooks, ready to paste into Apollo
See skills for this roleWalk into every coffee-break intro with a 'why reach out' rationale your SDR pulled the night before
See skills for this roleAssign event prep to your SDRs with one URL instead of an 8-hour spreadsheet sprint
See skills for this roleWhat it does
AI Engineer Summit, Stripe Sessions, SaaStr — your AE asked for a prioritized speaker list by Friday. Drop the conference URL in, extract every speaker, score the companies against your ICP. Back come 30 to 50 high-fit cards with public-signal hooks per person.
A trade show drops a sponsor list of 80 companies. Read the sponsor page, dedup by company, score ICP fit. The output: a ranked CSV ready for Apollo or Outreach.
AE has 25 minutes before a coffee-break intro at the conference. Pull the speaker's recent public signals (podcast, blog, GitHub, X) and get a 4-line opener rationale you can paste into your DM.
Your field-marketing lead wants to know which ICP-fit attendees to target for booth demos. Rank speakers and exhibitors by ICP fit and print priority-handshake cards the booth team takes onsite.
How it works
Drop a conference URL in (Stripe Sessions, Sessionize, Lu.ma, or custom page).
The skill auto-detects the platform, extracts every speaker into a structured list, deduplicates by company.
ICP triage: one fast search per company scores ICP fit 0 to 10 against your profile, drops your own team and the host org's staff.
Deep research on ICP fits scoring 6 and above: company product, recent funding, hiring signals, growth markers (5 calls max per company).
Per-person enrichment: LinkedIn plus last 6 months of public signal (podcast, blog, GitHub, X). HTML report opens in your browser, CSV drops into Apollo.
Example
Stripe Sessions 2026 — 250 sessions, ~400 speakers across infrastructure, payments, fraud, and platform tracks. Your ICP profile: Series B+ fintech with 50 to 500 engineers, fraud or payments focus.
412 speakers extracted, 167 unique companies. 47 companies passed ICP (score 6 and above). 89 ICP-fit speakers enriched. 12 strong fits (8 to 10/10), 35 partial fits (5 to 7), the rest weak.
Series B fintech, hiring SDRs Q2, just shipped a fraud product. 3 speakers at this event: VP Eng, Head of Risk, founding PM. Hook for Head of Risk: opened a public RFC on fraud-rule evaluation last month.
Talk title: 'Scaling infra without scaling team'. Recent podcast (Apr 2026) about platform-team headcount pressure. Direct ICP signal — paste into your DM opener.
Open index.html, sort by company ICP score, copy the 12 strong-fit cards into Apollo with the 'why reach out' line as the cold-open. Two-day window before the event.
Metrics this improves
Works with
Alternative cold-outbound destination for the ranked speaker CSV
Paste the per-person 'why reach out' line into cold sequences and import the ranked CSV as a list
Render JS-heavy speaker pages, search the web for company and person signals, fetch and extract page content
Source for speaker profile URLs and recent activity signals during person enrichment
Want to use Event Prospecting?
Choose how to get started.
Install and run this skill locally on your computer.
Open a terminal on your computer and paste this command:
This downloads the skill with all its files to your computer:
Add -g at the end to make it available in all your projects.
Start Claude Code, then type the command:
Event Prospecting
Take a conference URL → get a ranked list of people the AE should talk to, with a "why reach out" rationale per person.
Required: BROWSERBASE_API_KEY env var and the browse CLI installed (npm install -g browse). Use browse cloud ... for API calls and browse open / browse get markdown for JS-heavy speaker pages.
Path rules: Always use the full literal path in all Bash commands — NOT ~ or $HOME (both trigger "shell expansion syntax" approval prompts). Resolve the home directory once and use it everywhere. When constructing subagent prompts, replace {SKILL_DIR} with the full literal path (typically /Users/jay/skills/skills/event-prospecting).
Output directory: All event prospecting output goes to ~/Desktop/{event_slug}_prospects_{YYYY-MM-DD-HHMM}/. Final deliverable is index.html (people grouped by company, ranked by company ICP), with companies.html and people.html (filterable) as alternate views, plus results.csv for cold-outbound import.
CRITICAL — Tool restrictions (applies to main agent AND all subagents):
- All web searches: use
browse cloud search. NEVER use WebSearch. - All page content extraction: use
node {SKILL_DIR}/scripts/extract_page.mjs "<url>". This script fetches viabrowse cloud fetch --output, parses title + meta tags + visible body text, and automatically falls back tobrowse get markdownwhen fetch fails or returns thin JS-rendered content. NEVER hand-roll abrowse cloud fetch | sedpipeline. NEVER use WebFetch. - All research output: subagents write one markdown file per company OR per person to
{OUTPUT_DIR}/companies/{slug}.mdor{OUTPUT_DIR}/people/{slug}.mdusing bash heredoc. NEVER use the Write tool orpython3 -c. Seereferences/example-research.mdfor both file formats. - Report compilation: use
node {SKILL_DIR}/scripts/compile_report.mjs {OUTPUT_DIR} --open. - Subagents must use ONLY the Bash tool. No other tools allowed.
- HARD TOOL-CALL CAPS: ICP triage = 1 call/company; deep research = 5 calls/company; person enrichment = 4 calls/person. See
references/workflow.mdfor enforcement detail.
CRITICAL — Anti-hallucination rules (applies to main agent AND all subagents):
- NEVER infer
product_description,industry, or a person'srole_reasonfrom a site's fonts, framework, design system, or typography. These are cosmetic and say nothing about what the company sells or what the person does. - NEVER let the user's own ICP leak into a target's description. If you don't know what the target does, write
Unknown— do not pattern-match them onto the ICP. product_descriptionMUST quote or paraphrase a specific phrase fromextract_page.mjsoutput. If none of TITLE/META/OG/HEADINGS/BODY yield a recognizable product statement, writeUnknown — homepage content not accessibleand capicp_fit_scoreat 3.- A person's
hookMUST quote or paraphrase a specific finding from abrowse cloud searchresult (podcast title, blog headline, GitHub repo, talk abstract). If no public signal exists in the last 6 months, fall back to event-context (their talk title at this event).
CRITICAL — Minimize permission prompts:
- Subagents MUST batch ALL file writes into a SINGLE Bash call using chained heredocs. One Bash call = one permission prompt.
- Batch ALL searches and ALL fetches into single Bash calls using
&&chaining.
Pipeline Overview
Follow these 10 steps in order. Do not skip steps or reorder.
- Setup — output dir + clean slate
- Load profile — read
profiles/{user_slug}.json - Recon — detect event platform
- Extract people —
people.jsonl - Group by company —
seed_companies.txt - ICP triage — fast company-level scoring (1 call/company)
- Filter — companies with
icp_fit_score >= --icp-threshold - Deep research — full Plan→Research→Synthesize on ICP fits
- Enrich speakers — ask user: ICP-fit only (default) or all speakers
- Compile report — HTML + CSV, open in browser
The user invokes the skill with a URL like /event-prospecting <URL>. Parse EVENT_URL from that invocation message. Defaults: DEPTH=deep, ICP_THRESHOLD=6. The USER_SLUG (ICP profile) is auto-resolved in Step 1 from whatever profile files exist locally — there is no built-in default profile. Do NOT ask the user to confirm the URL — they already gave you it.
Step 0: Setup Output Directory
Derive the output directory from the URL the user gave you. Do NOT hardcode any event name.
# EVENT_URL came from the invocation message (whatever the user typed after `/event-prospecting`)
EVENT_SLUG=$(node -e 'const h = new URL(process.argv[1]).hostname.replace(/^www\./,""); console.log(h.split(".")[0])' "$EVENT_URL")
TIMESTAMP=$(date +%Y-%m-%d-%H%M)
OUTPUT_DIR=/Users/jay/Desktop/${EVENT_SLUG}_prospects_${TIMESTAMP}
mkdir -p "$OUTPUT_DIR/companies" "$OUTPUT_DIR/people"
Use the full literal home path — never ~ or $HOME. Pass {OUTPUT_DIR} as the full literal path to all subagent prompts.
Step 1: Load User Profile
The profile defines the ICP that ICP triage and deep research score against. Load from {SKILL_DIR}/profiles/{user_slug}.json (interchangeable across all GTM skills — same shape as company-research). example.json is a template, not a real profile — never use it.
DO NOT look outside {SKILL_DIR}/profiles/ for profiles — never reach into other skills' directories. If a profile is needed elsewhere, the user copies it explicitly.
Resolution order:
- If the user invoked with
--user-company <slug>, use that slug. - Else, list
profiles/*.jsonexcludingexample.json. If exactly one profile exists, use it (and tell the user which one). If multiple exist, ask the user (plain chat) which one. - If zero profiles exist, fail loudly and instruct the user to create one (copy
profiles/example.jsontoprofiles/<your_slug>.jsonand fill it in, or run the company-research skill which builds one automatically).
PROFILES=$(ls {SKILL_DIR}/profiles/*.json 2>/dev/null | xargs -n1 basename | sed 's/\.json$//' | grep -v '^example$')
COUNT=$(echo "$PROFILES" | grep -c .)
if [ -z "$USER_SLUG" ]; then
if [ "$COUNT" -eq 0 ]; then
echo "No profiles found in {SKILL_DIR}/profiles/. Copy profiles/example.json to profiles/<your_slug>.json and fill it in, or run the company-research skill to build one."
exit 1
elif [ "$COUNT" -eq 1 ]; then
USER_SLUG=$PROFILES
echo "Using the only profile available: ${USER_SLUG}"
else
echo "Multiple profiles found:"
echo "$PROFILES" | sed 's/^/ - /'
echo "Re-invoke with --user-company <slug> to pick one."
exit 1
fi
fi
test -f {SKILL_DIR}/profiles/${USER_SLUG}.json || {
echo "Profile not found: profiles/${USER_SLUG}.json"
exit 1
}
cat {SKILL_DIR}/profiles/${USER_SLUG}.json
The profile yields: company, product, icp_description, existing_customers. These get embedded verbatim in every subagent prompt downstream.
Step 2: Recon
Detect the event platform and extraction strategy. One command:
node {SKILL_DIR}/scripts/recon.mjs {EVENT_URL} {OUTPUT_DIR}
Writes {OUTPUT_DIR}/recon.json with platform, strategy, and (for Next.js) nextDataPaths. See references/event-platforms.md for the platform catalog and detection priority.
Expected outcomes:
- Stripe Sessions class (Next.js):
platform: "next-data", 1-3 paths - Sessionize:
platform: "sessionize" - Lu.ma / Eventbrite:
platform: "luma" | "eventbrite" - Anything else:
platform: "custom",strategy: "markdown"(best-effort fallback)
Step 3: Extract People
node {SKILL_DIR}/scripts/extract_event.mjs {OUTPUT_DIR} --user-company {USER_SLUG}
Reads recon.json, dispatches to the platform-specific extractor, writes people.jsonl (one speaker per line) and seed_companies.txt (deduped companies).
The --user-company flag also drops the host-org's own employees (a Stripe-hosted event drops Stripe employees) and the user's own employees from the speaker list — those aren't prospects.
Sanity-check the output:
wc -l {OUTPUT_DIR}/people.jsonl {OUTPUT_DIR}/seed_companies.txt
head -3 {OUTPUT_DIR}/people.jsonl
If people.jsonl is empty or under ~10 lines, recon picked the wrong platform — see references/event-platforms.md and re-run with adjusted strategy.
Step 4: Group by Company
extract_event.mjs emits seed_companies.txt already (one company per line, deduped, sorted). This step is informational — verify the count looks reasonable before fanning out:
wc -l {OUTPUT_DIR}/seed_companies.txt
Expected: roughly 0.4-0.6× the speaker count (most events have ~2 speakers per company on average, some companies send 5+, many send 1).
Step 5: ICP Triage
Fast pass — one tool call per company, no deep research. Score every company in seed_companies.txt against the user's ICP and write a thin triage stub to companies/{slug}.md. Companies with icp_fit_score >= --icp-threshold (default 6) advance to Step 7's deep research; the rest stay as triage stubs.
Dispatch pattern: split seed_companies.txt into batches of ~10 and fan out N subagents in a SINGLE Agent batch (multiple Agent tool calls in one message). Each subagent runs the prompt from references/workflow.md → "ICP Triage" section. Hard cap: 1 tool call per company (just extract_page.mjs on the homepage), enforced via the # browse call N/1 comment pattern.
# Build batch files: each batch line is "name|guessed_homepage|slug".
# extract_event.mjs only emits company NAMES (no URLs), so we slugify and guess
# https://{slug-without-spaces}.com as the canonical homepage. The triage subagent
# is allowed to write product_description: "Unknown — homepage content not accessible"
# and cap score at 3 if the guessed URL 404s — that's the documented fallback in
# workflow.md (rule 3 of the ICP Triage prompt). Burning a real browse cloud search to
# discover the URL would bust the 1-call-per-company HARD CAP.
node -e '
const fs = require("fs");
const slugify = (s) => (s || "").toLowerCase().replace(/[^a-z0-9]+/g, "-").replace(/^-+|-+$/g, "");
const seed = fs.readFileSync("{OUTPUT_DIR}/seed_companies.txt", "utf-8").split("\n").filter(Boolean);
const lines = seed.map(c => {
const slug = slugify(c);
const guessedHost = c.toLowerCase().replace(/[^a-z0-9]/g, "");
return `${c}|https://${guessedHost}.com|${slug}`;
});
fs.writeFileSync("{OUTPUT_DIR}/_seed_with_urls.txt", lines.join("\n") + "\n");
'
# Split into ~10-company batches
split -l 10 {OUTPUT_DIR}/_seed_with_urls.txt {OUTPUT_DIR}/_batch_triage_
# Count batches → number of subagents to dispatch (cap at 6 per message; second wave for the rest)
ls {OUTPUT_DIR}/_batch_triage_* | wc -l
Then in a single message, dispatch one Agent call per batch (up to 6 in parallel; subsequent waves after the first returns). Each Agent gets the prompt from references/workflow.md → "ICP Triage" with these substitutions before sending:
{SKILL_DIR}→ full literal skill path (e.g./Users/jay/skills/skills/event-prospecting){OUTPUT_DIR}→ full literal output path{USER_COMPANY},{USER_PRODUCT},{ICP_DESCRIPTION}→ from the loaded profile{EVENT_NAME}→recon.json.title{COMPANY_LIST}→ contents of the batch file (e.g.cat {OUTPUT_DIR}/_batch_triage_aa){TOTAL}→ number of lines in this batch (substitute into# browse call N/{TOTAL})
Agent dispatch (skeleton, repeat per batch in one message):
Agent(
description: "ICP triage batch aa",
prompt: <ICP Triage prompt from workflow.md with all placeholders substituted>,
subagent_type: "general-purpose"
)
Agent(
description: "ICP triage batch ab",
prompt: <same prompt template, COMPANY_LIST swapped to batch ab>,
subagent_type: "general-purpose"
)
... up to 6 per message
After all subagents return, verify every company in seed_companies.txt has a corresponding companies/{slug}.md:
ls {OUTPUT_DIR}/companies/*.md | wc -l
# Should equal `wc -l {OUTPUT_DIR}/seed_companies.txt`
Clean up the batch files: rm {OUTPUT_DIR}/_batch_triage_*.
Step 6: Filter by ICP Threshold
Read each companies/*.md frontmatter, keep those with icp_fit_score >= 6 (or whatever --icp-threshold is). Write the surviving company slugs to {OUTPUT_DIR}/icp_fits.txt:
THRESHOLD=6 # from --icp-threshold flag
for f in {OUTPUT_DIR}/companies/*.md; do
score=$(awk '/^icp_fit_score:/{print $2; exit}' "$f")
if [ -n "$score" ] && [ "$score" -ge "$THRESHOLD" ]; then
basename "$f" .md
fi
done > {OUTPUT_DIR}/icp_fits.txt
wc -l {OUTPUT_DIR}/icp_fits.txt
Expected: 20-40% of seed_companies.txt. If the survival rate is < 10%, the threshold may be too high or the ICP description too narrow — surface a warning to the user.
Step 7: Deep Research
Full Plan→Research→Synthesize on ICP-fit companies only. Hard cap: 5 tool calls per company (homepage extract + 2-3 sub-question searches + 1-2 supplementary fetches). Subagents OVERWRITE the existing companies/{slug}.md triage stub with the richer deep-research version (frontmatter triage_only: false).
Dispatch pattern: split icp_fits.txt into batches of ~5 (deep mode default) and fan out one Agent per batch in a SINGLE message (up to 6 Agents per message). Each Agent gets the prompt from references/workflow.md → "Deep Research" with these substitutions:
{SKILL_DIR},{OUTPUT_DIR},{USER_COMPANY},{USER_PRODUCT},{ICP_DESCRIPTION}{EVENT_NAME}(fromrecon.json.title),{EVENT_CONTEXT}(track / topic, manually inferred from the event homepage){COMPANY_LIST}→ contents of the batch file (each lineslug|website)
# Build {company-slug|website} pairs by reading frontmatter from each triage stub
while read slug; do
website=$(awk '/^website:/{print $2; exit}' {OUTPUT_DIR}/companies/${slug}.md)
echo "${slug}|${website}"
done < {OUTPUT_DIR}/icp_fits.txt > {OUTPUT_DIR}/_deep_targets.txt
# Split into ~5-company batches (deep mode)
split -l 5 {OUTPUT_DIR}/_deep_targets.txt {OUTPUT_DIR}/_batch_deep_
ls {OUTPUT_DIR}/_batch_deep_* | wc -l
Agent dispatch (skeleton, repeat per batch in one message):
Agent(
description: "Deep research batch aa",
prompt: <Deep Research prompt from workflow.md with all placeholders substituted; COMPANY_LIST = cat _batch_deep_aa>,
subagent_type: "general-purpose"
)
Agent(
description: "Deep research batch ab",
prompt: <same template, COMPANY_LIST = cat _batch_deep_ab>,
subagent_type: "general-purpose"
)
... up to 6 per message; second wave after the first returns
After all subagents return, verify the deep-research files exist and have triage_only: false:
grep -l "triage_only: false" {OUTPUT_DIR}/companies/*.md | wc -l
# Should equal wc -l icp_fits.txt
Step 8: Enrich Speakers
Per person: harvest LinkedIn URL, recent activity (podcast / blog / talk / GitHub / X), and write people/{slug}.md. Hard cap: 4 tool calls per person, three lanes:
browse cloud search "{name} {company} linkedin"(always)browse cloud search "{name} podcast OR talk OR blog 2026"(deep+)browse cloud search "{name} github"(deeper)browse cloud search "{name} site:x.com OR site:twitter.com"(deeper, best-effort)
Quick mode: skip Step 8 entirely. Deep mode: lanes 1-2. Deeper mode: lanes 1-4.
Step 8a — Ask the user: scope of enrichment
Before dispatching, compute the two candidate counts and ask the user to choose. The default is ICP-fit only (faster, cheaper, what most users want); enriching every speaker is opt-in because cost scales linearly with people enriched.
TOTAL=$(wc -l < {OUTPUT_DIR}/people.jsonl)
ICP_FITS=$(node -e '
const fs = require("fs");
const fits = new Set(fs.readFileSync("{OUTPUT_DIR}/icp_fits.txt", "utf-8").split("\n").filter(Boolean));
const slug2name = {};
for (const slug of fits) {
const md = fs.readFileSync(`{OUTPUT_DIR}/companies/${slug}.md`, "utf-8");
const m = md.match(/^company_name:\s*(.+)$/m);
if (m) slug2name[slug] = m[1].trim();
}
const want = new Set(Object.values(slug2name).map(s => s.toLowerCase()));
const ppl = fs.readFileSync("{OUTPUT_DIR}/people.jsonl","utf-8").split("\n").filter(Boolean).map(JSON.parse);
console.log(ppl.filter(p => p.company && want.has(p.company.toLowerCase())).length);
')
# Lanes per person: 2 (deep) or 4 (deeper) — match {DEPTH}
LANES=2 # or 4 for deeper
echo "ICP fits: ${ICP_FITS} speakers × ${LANES} = $((ICP_FITS * LANES)) calls"
echo "All: ${TOTAL} speakers × ${LANES} = $((TOTAL * LANES)) calls"
Then ask via AskUserQuestion — clean two-option choice with the quantified cost on each:
AskUserQuestion(questions: [
{
question: "Enrich which speakers?",
header: "Enrichment scope",
multiSelect: false,
options: [
{ label: "ICP fits only", description: "${ICP_FITS} speakers, ~$((ICP_FITS * LANES)) calls (recommended)" },
{ label: "All speakers", description: "${TOTAL} speakers, ~$((TOTAL * LANES)) calls" }
]
}
])
Save the chosen scope as ENRICH_SCOPE=icp_fits or ENRICH_SCOPE=all. If the user picks "All speakers" and TOTAL × LANES > 600, print a warning and ask once more — that's a 10+ minute run with hundreds of tool calls.
Step 8b — Filter and batch
# Build _people_to_enrich.jsonl based on ENRICH_SCOPE
if [ "$ENRICH_SCOPE" = "all" ]; then
cp {OUTPUT_DIR}/people.jsonl {OUTPUT_DIR}/_people_to_enrich.jsonl
else
node -e '
const fs = require("fs");
const fits = new Set(fs.readFileSync("{OUTPUT_DIR}/icp_fits.txt", "utf-8").split("\n").filter(Boolean));
const slug2name = {};
for (const slug of fits) {
const md = fs.readFileSync(`{OUTPUT_DIR}/companies/${slug}.md`, "utf-8");
const m = md.match(/^company_name:\s*(.+)$/m);
if (m) slug2name[slug] = m[1].trim();
}
const wantNames = new Set(Object.values(slug2name).map(s => s.toLowerCase()));
const lines = fs.readFileSync("{OUTPUT_DIR}/people.jsonl", "utf-8").split("\n").filter(Boolean);
const keep = lines.filter(l => {
const p = JSON.parse(l);
return p.company && wantNames.has(p.company.toLowerCase());
});
fs.writeFileSync("{OUTPUT_DIR}/_people_to_enrich.jsonl", keep.join("\n") + "\n");
console.error(`Enriching ${keep.length} of ${lines.length} speakers`);
'
fi
# Split into ~5-person batches
split -l 5 {OUTPUT_DIR}/_people_to_enrich.jsonl {OUTPUT_DIR}/_batch_people_
Then in a single message, dispatch one Agent call per batch (up to 6 per message) with the prompt from references/workflow.md → "Person Enrichment". Each subagent's prompt should include:
{SKILL_DIR},{OUTPUT_DIR},{DEPTH}(deep|deeper){USER_COMPANY},{USER_PRODUCT},{ICP_DESCRIPTION}{EVENT_NAME}(fromrecon.json.title){LANES}→2for deep mode,4for deeper mode (substituted into# browse call N/{LANES}){PEOPLE_BATCH}→ contents of_batch_people_aa(each line a JSON record frompeople.jsonl)
Agent dispatch (skeleton, repeat per batch in one message):
Agent(
description: "Person enrichment batch aa",
prompt: <Person Enrichment prompt from workflow.md with all placeholders substituted; PEOPLE_BATCH = cat _batch_people_aa>,
subagent_type: "general-purpose"
)
Agent(
description: "Person enrichment batch ab",
prompt: <same template, PEOPLE_BATCH = cat _batch_people_ab>,
subagent_type: "general-purpose"
)
... up to 6 per message
After all subagents return, verify the people files exist:
ls {OUTPUT_DIR}/people/*.md | wc -l
# Should equal wc -l _people_to_enrich.jsonl
Step 9: Compile Report
Generate the company-grouped HTML index, alternate views, and CSV in one command:
node {SKILL_DIR}/scripts/compile_report.mjs {OUTPUT_DIR} --open
This generates:
{OUTPUT_DIR}/index.html— people grouped by company, ranked by company ICP score (opens in browser){OUTPUT_DIR}/people.html— filterable speaker list (alternate view){OUTPUT_DIR}/companies.html— ICP-ranked company table with attendees{OUTPUT_DIR}/results.csv— cold-outbound-ready spreadsheet
Then present a summary in chat:
## Event Prospecting Complete — {Event Name}
- **Total speakers extracted**: {count}
- **Unique companies**: {count}
- **ICP fits (score ≥ {threshold})**: {count}
- **Speakers enriched**: {count}
- **Score distribution** (companies):
- Strong fit (8-10): {count}
- Partial fit (5-7): {count}
- Weak fit (1-4): {count}
- **Report opened in browser**: {OUTPUT_DIR}/index.html
Show the top 5 people cards as a markdown table sorted by company ICP score, then offer to:
- Adjust
--icp-thresholdand re-run Steps 6-9 - Export the CSV to a CRM