Lead generation, built for Sales Teams.
BeReach reads the public signals your accounts leave, like funding, hiring, launches and reviews. It qualifies each one against your ICP, then helps every rep open a warm, contextual conversation with the right decision-maker.
| # | Name | Conn | Signal |
|---|---|---|---|
| 1 | Grace Okonkwo VP Sales · Halden | 2nd | Raised Series B |
| 2 | Daniel Roth RevOps Lead · Corva | 2nd | Hiring 6 AEs |
| 3 | Ingrid Soto Head of Sales · Pallas | 3rd | Raised Series B |
| 4 | Marcus Feld CRO · Wexler | 2nd | Opened SDR roles |
| 5 | Nadia Kaur Sales Director · Onda | 3rd | New office |
To a qualified list
any territory, any segment
Typical acceptance rate
warm, contextual first touch
Typical reply rate
vs generic cold outreach
Accounts scored to ICP
reps skip the manual qualifying
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.
Funding, hiring and launch signals tell your reps which accounts are moving right now. They spend their time on companies that are actively scaling and buying, not on names that went stale months ago.
Every account is scored against your ICP before it reaches a rep, so noise is filtered out up front. Your team stops burning hours qualifying manually and starts every day with accounts that fit.
Each qualified account comes with the signal behind it, like a recent raise or a competitor review. Reps lead with context the buyer recognizes instead of a template that gets ignored.
Describe the segment, region and size you own and the agent scans the public web for accounts that match. No filters or boolean syntax, just consistent coverage across the patch your team is responsible for.
BeReach reads the public web in real time, across funding data, hiring, reviews, tech stacks and public profiles, then cross-references them to surface accounts that fit your ICP along with the economic buyer and why now. Your reps start with warm, pre-qualified accounts instead of a raw list to grind through.
A database dumps thousands of names with no timing and no context. BeReach surfaces accounts showing live buying signals, scores each one against your ICP, and attaches the reason to reach out, so reps spend their time selling to in-market accounts instead of qualifying dead ones.
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 the timing on fast-moving accounts is so much better.
Yes. Each rep can describe the territory or segment they own and get a qualified, ICP-scored list for their patch, so coverage stays consistent across the team instead of depending on who prospects hardest.
Yes, and that is the difference from a list tool. After the Finder surfaces accounts and the Qualifier scores them, the Reacher helps each rep open a warm, multichannel conversation with the buyer, referencing a real signal instead of a generic template.
Yes. Just describe what you own, like mid-market SaaS in the Northeast with 100+ employees that raised recently, and the agent handles the combination of region, size, stage and buying signals. No filters or boolean syntax to learn.
Usually under two minutes. Describe the accounts you want, the agent scans the public sources, qualifies them against your ICP, and returns a list with named buyers ready to reach out to.

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Describe your ideal account and let your agents find, qualify, and warm up the buyers behind them across your whole territory.
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