Proxi vs Attio

Attio tracks your deals. Proxi ships your customers' issues.

Attio is an AI-native CRM for pre-sale pipeline, powerful but a blank canvas that stops at the closed deal. Proxi picks up after: it connects every post-sale signal into one revenue-weighted graph, drafts and dedupes issues in your customers' words, and syncs them two ways with Linear and Jira. Built for 4 to 30 person eng-led teams with no CS admin to spare.

Attio · pre-sale
Deal · $40k pipeline
Contact · Company
Closed won handoff ends here
Proxi · post-sale
Customer asks for a fix on a call
Deduped issue in their words
Shipped in Linear auto-closed
Short answer

Short answer: Attio and Proxi aren't the same category. Attio is where you track deals; Proxi is where post-sale customer signal becomes shipped engineering work. Attio is the better pick for managing a sales pipeline. If your goal is turning customer feedback, from calls, tickets, Slack, and GitHub, into deduped, tracked issues in Linear and Jira, that's a job Attio wasn't built for, and the one Proxi does.

Side by side

Proxi vs Attio, honestly.

AttioProxi
Primary jobAI-native CRM for pre-sale pipeline and dealsCustomer-intelligence layer that turns post-sale signal into shipped work
Built for post-sale / CS and supportNo, not suited to customer-service work; build it yourselfYes, this is the entire product
Setup / time-to-valueBlank canvas; teams spend weeks getting the workspace usableOpinionated; connect sources and the graph builds itself
Customer signal ingestionEmails and meetings into records; no support, ticket, or GitHub signal graphIngests calls, tickets, Slack, GitHub, and billing into one graph
Issue drafting and dedupeManual; you create records and notesAuto-drafts and dedupes issues in the customer's exact words
Routing to Linear / Jira with contextOne-way “log request” to Linear; no rich context loopRoutes to Linear and Jira with the linked customer evidence
Two-way tracker sync (Linear + Jira)No native two-way Linear and Jira syncTwo-way sync with both Linear and Jira
Auto-close when the ticket shipsNoYes
ReportingNo forecasting; board-ready dashboards need a BI exportRevenue-weighted graph focused on what to ship
Pricing modelPer seat plus AI and enrichment credits (climbs fast)Per workspace, not per seat
Who it's forOps-heavy technical GTM teams willing to configure4 to 30 person eng-led teams with no dedicated CS/ops admin
Where it falls short

Where Attio stops, after the deal closes.

Attio is a strong, modern CRM. These are the gaps that show up when you try to use it for post-sale customer work it was never designed for.

Attio isn't built for what happens after the deal closes.
Attio is a sales CRM at heart. Post-sale, support, and success workflows must typically be built from scratch, and Attio itself is largely an internal record with customer communication limited to email tracking. The moment a customer files a bug on a call or in Slack, Attio has no opinion about where it goes.
Attio community
The blank-canvas tax hits small teams hardest.
Attio's flexibility is its demo strength and its onboarding weakness: teams without technical chops can spend weeks just getting their workspace to a usable state. Small eng-led teams routinely report stalling while they figure out lists and data models, which is time a 4 to 30 person team doesn't have.
Reviewers report, via Coffee.ai
Reporting stops short of forecasting and board-ready output.
Reviews agree Attio lacks advanced forecasting, and that for complex revenue modeling, territory rollups, or board-ready dashboards you'll likely export to a warehouse or BI tool. You outgrow the reporting exactly when you need to show retention and churn.
Folk on Attio reporting
The credit system turns a cheap base price into a surprise bill.
Attio scales on seats plus credits. One analysis found a plan quietly climbing from about $290 to $410 a month once AI and enrichment workspace credits are added, with heavy AI usage exhausting the monthly budget in roughly two weeks. AI-heavy usage pushes you toward external tools or higher tiers.
Analyses report, via Lightfield
Native integrations are shallower than the API suggests.
Attio's API and webhooks are strong, but the native app catalog is thin, and integrations are a top review complaint, so teams get pushed to Zapier, n8n, or Make for gaps. Attio to Linear is a one-click “log request,” not a two-way Linear and Jira loop that closes itself when engineering ships.
Reviewers report, via Coffee.ai
The difference in practice

Same moment, two outcomes.

With Attio
A customer files a bug in Slack
Attio has no opinion about where it goes; you build the workflow yourself.
With Proxi
Proxi drafts a deduped issue
in the customer's words and routes it to Linear or Jira.
With Attio
You want retention and churn reporting
you export Attio to a warehouse or BI tool for board-ready output.
With Proxi
Proxi surfaces churn risk
inside a revenue-weighted graph, with no BI project.
With Attio
You start with Attio
and spend weeks designing lists and a data model before it's useful.
With Proxi
You connect a source
and the customer graph builds itself in a day.
The honest take

Who should use which.

Use Attio if
  • You're managing a pre-sale sales pipeline and deals
  • You want a flexible, build-your-own AI-native CRM
  • You have the ops resources to design and maintain it
Use Proxi if
  • Your problem is post-sale: turning customer signal into shipped work
  • You want calls, tickets, Slack, GitHub, and billing in one graph
  • You're a 4 to 30 person eng team with no CS or ops admin to spare
FAQ

Questions people actually ask.

Straight answers about Attio, Proxi, and where each fits. Still unsure? Email us.

Proxi is built for exactly that job: it passively ingests your meeting calls, support tickets, Slack, GitHub, and billing into one revenue-weighted customer graph, then auto-drafts a real issue from any signal in the customer's own words and dedupes the same request across calls, tickets, and Slack into a single issue. It also syncs title, status, priority, and assignee two ways with both Linear and Jira, and auto-closes the issue when the linked ticket ships. Attio is a strong, modern CRM for managing a pre-sale pipeline, but it offers only a one-way Linear log-request integration with no native two-way loop and no auto-close. If your goal is customer signal to shipped engineering work, Proxi does that directly, while Attio is the better fit for running a sales pipeline.
Proxi can replace Attio if your real need is post-sale customer intelligence rather than pre-sale pipeline management, since Proxi is not a full CRM and does not try to be. Proxi is a customer-intelligence layer for engineer-founders on 4 to 30 person teams who own customer success themselves: it unifies the tools you already use into one revenue-weighted customer graph and turns signals into deduped, tracked engineering issues. Attio is genuinely better if you need to manage a sales pipeline and have the ops resources to configure it, because that is what it is built for. For a small engineering team that mostly needs feedback to become shipped work, Proxi is the more direct fit.
Use Proxi: it is designed for engineer-founders who own customer success themselves rather than running a seat-based CSM org, and it works passively so there are no customer channels to operate. Proxi ingests your Granola or meeting calls, support tickets, Slack, GitHub, and Stripe billing into one customer graph and auto-drafts issues in the customer's own words. Attio is a powerful, flexible CRM, but its post-sale, CS, and support workflows are something you build from scratch, and its blank-canvas setup can take weeks of configuration. Without an ops team to configure it, Proxi gives you customer intelligence on day one.
Many teams run both, because they solve different jobs: Proxi turns post-sale customer signals into tracked engineering work, while Attio is a strong CRM for managing your pre-sale pipeline and deals. Proxi ingests calls, tickets, Slack, GitHub, and billing into one revenue-weighted customer graph, dedupes requests into single issues, and syncs them two ways with Linear and Jira, none of which Attio does natively. Neither tool fully covers the other: Proxi is not a CRM, and Attio is largely an internal record whose customer communication is limited to email. If you have a sales pipeline to manage, keep Attio for that and add Proxi for the customer-signal-to-shipped-work loop.
Yes: Proxi offers two-way field sync for title, status, priority, and assignee with both Linear and Jira, is echo-loop safe, and auto-closes the issue when the linked ticket ships. Attio, by contrast, has only a one-way Linear log-request integration with no native two-way Attio to Linear to Jira loop and no auto-close. Attio remains a strong CRM for pre-sale pipeline management, so the tradeoff is pipeline flexibility versus a real engineering sync loop. If two-way tracker sync is your priority, Proxi is built for it and Attio is not.
Sources. Claims about Attio are drawn from public product docs and reviews: Attio community · Attio reporting (Folk) · Attio pricing (Lightfield) · Attio reviews (Coffee.ai) · Linear + Attio. Comparisons reflect our reading of these as of July 2026; check the vendor's site for current details.