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The Fixers
AI tools, ops optimizers, and cynical SaaS ideas for cleaning up everyone else’s mess.
Let’s be honest: most companies are a mess. Bad onboarding. No documentation. 13 different spreadsheets no one updates. It’s chaos out there.
But chaos creates opportunity.
This edition is for the SaaS founders, indie hackers, and domain flippers who don’t mind cleaning up other people’s operational disasters—and getting paid for it. We’re talking AI cleanup crews, automation-as-a-service, and cynical-but-useful tools for fixing the broken workflows that quietly cost businesses billions.
#1: PROBLEM > IDEA > SOLUTION > WHO PAYS
Problem: HR teams are still manually tracking PTO, approvals, and compliance in spreadsheets.
Idea: AI assistant that auto-tracks time off, flags compliance risks, and syncs calendars.
Solution: Works inside Slack/Teams, auto-reports to HRIS, and even sends nudges for upcoming vacations.
Who Pays: Mid-sized companies, ops teams drowning in admin work.
Domain: Teamsto.com — Make teams less terrible.
#2: PROBLEM > IDEA > SOLUTION > WHO PAYS
Problem: Startups are launching faster than ever—but no one’s documenting how anything works.
Idea: AI-powered internal wiki builder that listens to meetings, Slack chats, and tickets to auto-create SOPs and onboarding guides.
Solution: Reduce ramp time and tech debt by turning chaos into clarity.
Who Pays: Scale-ups, remote-first teams, product managers tired of repeating themselves.
Domain: InfinityFind.com — Index everything.
#3: PROBLEM > IDEA > SOLUTION > WHO PAYS
Problem: Enterprise teams are still pasting data between 8 dashboards and 12 PDFs for executive reports.
Idea: AI agent that connects to internal tools and builds custom reports on demand.
Solution: Stop the madness of monthly Frankenstein reports. Just type: “Show Q3 churn by region.” Done.
Who Pays: BI teams, CFOs, and strategy heads who hate PowerPoint.
Domain: Zazag.com — AI that understands WTF you mean.
#4: PROBLEM > IDEA > SOLUTION > WHO PAYS
Problem: Most onboarding flows are designed by sadists. Dead links. 6-tab signup. No confirmation emails.
Idea: "Flow Sniper" AI audits UX flows and flags friction points.
Solution: Make it a plug-and-play script or browser extension for SaaS and ecomm.
Who Pays: Growth teams, UX leads, and founders wondering why conversion is trash.
Domain: BestMixed.com — Because your funnel sucks.
#5: CONSPIRACY CORNER
Why does every enterprise app make it harder to cancel than a gym membership in 1997?
Because friction = profit.
There’s a quiet army of consultants and account managers who depend on things staying broken. If you build a tool that removes the confusion? You’re a threat to the legacy upsell cartel.
Idea: Launch a transparency tracker SaaS that scans apps and shows users how to cancel, get refunds, or export data. Let users vote on most abusive flows.
Domain: ScanFakes.com — Call out the dark UX overlords.
#6: PROBLEM > IDEA > SOLUTION > WHO PAYS
Problem: B2B SaaS companies are leaking leads because no one follows up on demo requests instantly.
Idea: AI SDR bot that replies in 10 seconds, books the meeting, and logs the data in your CRM.
Solution: Outbound handled before your human wakes up.
Who Pays: Founders, marketers, and sales teams who are tired of missed MQLs.
Domain: Ledyou.com — The bot that books.
FINAL THOUGHTS:
Some founders chase hype. Others fix things.
If you want VC buzzwords, we can make some up. But the money is in unsexy fixes: forms that work, bots that reply, dashboards that don’t crash.
If you’re tired of chaos, build the tools that restore order—and take a cut while you’re at it.
And don’t forget to subscribe: disrupt.fyi/subscribe
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