Lead generation, built for RevOps Teams.
BeReach reads the public signals your accounts leave, like funding, hiring and launches, qualifies each against your ICP, and returns verified named contacts. Clean, signal-based supply your team can trust instead of a stale list to dedupe.
| # | Name | Conn | Signal |
|---|---|---|---|
| 1 | Simone Ferrari VP Sales · Aegis | 2nd | Raised Series B |
| 2 | Noah Bergman Head of GTM · Corel | 2nd | Headcount up 30% |
| 3 | Amara Diallo RevOps · Boreal | 3rd | Raised Series B |
| 4 | Viktor Petrov CRO · Marlow | 2nd | New region |
| 5 | Chloe Barnes Sales Ops · Juno | 3rd | Already owned |
To a qualified list
clean, ICP-scored supply
Typical acceptance rate
when data quality holds up
Typical reply rate
vs generic cold outreach
Accounts scored to ICP
consistent, defined criteria
Your agent scans where these accounts actually show up: funding and launch data, reviews and traction, tech stacks, hiring posts, and the people behind them.
Every account is scored against your ideal profile on size, stage, traction and buying signals, so noise is filtered out before it ever reaches you.
For each qualified account, the agent finds the right decision-maker and helps you send a contextual message that references a real signal, not a generic template.
Define the ideal profile once and every account is scored against the same criteria. Routing, prioritization and reporting all run on a consistent, defensible definition instead of gut-feel list-building by rep.
Accounts arrive with verified named contacts, cross-referenced across public sources, so you feed the stack fresh supply instead of deduping and re-enriching a stale list that reps have already stopped trusting.
Because it reads the open web in real time, you can source accounts the moment a signal fires, like a raise or a hiring surge. Fresh triggers keep sequences and plays firing on accounts that are in-market now.
Surface accounts that fit your ICP but are missing from your database, and identify the economic buyer on records that only have a generic contact. You close coverage gaps instead of recycling the same tired list.
BeReach reads the public web in real time, across funding, hiring, firmographics, tech stacks and public profiles, then cross-references them to return accounts scored against your ICP with verified named contacts. You feed your stack clean, signal-based supply instead of a stale list that needs deduping and re-enriching.
You define the ICP once and every account is scored against the same criteria, so routing, prioritization and reporting run on a consistent, defensible definition rather than each rep building lists their own way.
Yes. Every account is built from public signals across the open web, cross-referenced and verified. There is no scraping behind a login and no private database, which is why records land fresh and trigger-based instead of on a slow quarterly refresh.
Yes. It surfaces accounts that fit your ICP but are missing from your database, and identifies the economic buyer on records that only carry a generic contact, so you close coverage gaps instead of recycling the same list.
Yes. Accounts arrive scored and with verified contacts, so they drop cleanly into routing and sequencing. And when a fresh signal fires, the Reacher can help teams open a warm, contextual first touch on that trigger.
Yes. Just describe it in plain language, like accounts in our segment that raised recently with a verified buyer, and the agent handles the combination of stage, size and buying signals. No filters or boolean syntax to maintain.
Usually under two minutes. Describe the accounts you want, the agent scans the public sources, scores them against your ICP, and returns clean records with verified named contacts ready for the stack.

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Define your ICP once and let your agents return scored accounts with verified contacts your whole team can trust.
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