Solo MSP Cleans Up Hundreds of Endpoints Across a 1,290-Device Fleet

Our IT Guyz

Our IT Guyz

Managed IT Services

Jay Contor

Jay Contor

Senior Engineer at Our IT Guyz

1-50

Employees

1,290

Managed Seats

Solo MSP Cleans Up Hundreds of Endpoints Across a 1,290-Device Fleet

Summary

Jay Contor runs Our IT Guyz alone. 1,290 endpoints across Australia, one technician, no team behind him. The typical MSP ratio is 100 endpoints per tech. Jay is at nearly 13 times that, and he gets fewer than 20 tickets a day because he has systematized everything he can. What he can't systematize is the proactive work: the cleanups, the SSDs filling up, the users whose three-screen setups on four-year-old laptops are going slow. That work would require a road trip across Australia or another technician, and Jay isn't hiring. He started testing OpenFrame to find out whether AI could pick up the proactive work he never has time for. Within a few days, he'd deployed the agent across his entire fleet and run fleet-wide disk cleanups that his RMM couldn't touch.

Challenge

Jay moved to Ninja for RMM and Syncro for ticketing because both were simple enough to run without a team. He trained his clients to log tickets through a tray icon so he didn't have to. He evaluated Halo PSA for two years and walked away because it couldn't support the tray-icon workflow his clients already knew. What he couldn't cut was the proactive maintenance layer. Dozens of machines across his fleet were running out of disk space. Some of those clients were hours away, and the options were either a road trip of SSD swaps or waiting until the machines failed hard enough to justify a hardware replacement. Neither option scaled.

Solution

Jay started small. A handful of machines, just to see what OpenFrame's AI could do. The first cleanup freed more disk space than his existing tooling had been able to touch. That was enough to convince him to scale. He asked Mingo to run the same cleanup across every non-server device in his fleet, and Mingo worked through them one by one, asking for script approvals along the way. Hundreds of machines cleaned up without a plane ticket. The printer install was a separate test. A portable printer next to him, a laptop that had never seen the driver, and a plain-English request to Mingo. It took longer than installing it manually, but the driver went on. Beyond the one-off tests, what Jay saw in Mingo was a faster path to the information every RMM already has but makes you hunt for. Ask which processes are slowing a machine down, and Mingo answers directly instead of making a technician dig through three screens of telemetry.

Results

Fleet-wide cleanups Jay had been putting off, the kind that would have meant either a road trip of SSD swaps or waiting for machines to fail hard, got done without him touching each device. Ninja tells him which machines are running out of space. OpenFrame actually clears the space. On diagnostics, a slow-machine ticket that used to mean jumping into the RMM and digging through telemetry is now a plain-English question to Mingo. The answer comes back in seconds. The time savings are still early-stage, but the direction is clear: the proactive maintenance layer Jay never had hours for is now work the AI handles while he focuses on the tickets only a human can solve. At $5 per device per month, Jay has already said he'd pay, even if OpenFrame did nothing beyond this.

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Frequently Asked Questions

MSPs use AI to triage and route tickets, cut alert noise, schedule patches, assist L1 security work, and draft client reports. Kaseya's 2025 benchmark found 30% already use it to eliminate tedious tasks, with ticket triage the most common starting point.
Most MSPs start with AI features inside their existing PSA, RMM, and ticketing systems rather than standalone products. Common categories include AI ticket triage, alert correlation, scripting assistants, and AI-native all-in-one platforms like OpenFrame that run intelligence across the whole stack.
Start with a readiness assessment, not a tool purchase. Confirm your ticket history is clean and your RMM, PSA, and monitoring systems connect. Then pick one high-volume, low-risk workflow, usually ticket triage, and pilot it on internal tickets before any client sees it.
Automate high-volume, low-risk tasks first. Ticket triage and alert noise reduction top the list because they run constantly and a human still resolves the underlying issue. Save security approvals, billing changes, and client-facing actions for later, always with a human in the loop.
Set a baseline before rollout, then track tickets closed per technician, mean time to resolution, percentage of tickets resolved with no human touch, technician hours reclaimed, and cost per ticket. AI-driven automation commonly cuts operational cost per ticket by 25 to 40%.
No. AI automates routine tickets, patching, and monitoring, but trust, accountability, and complex business judgment still need people. The future of managed services moves technicians from closing tickets to advising clients, which makes the human role more valuable, not obsolete.
AI-powered infrastructure managed services apply machine learning to infrastructure telemetry so providers can predict failures, automatically remediate known issues, and forecast capacity needs. They replace static-threshold monitoring and manual firefighting with predictive, largely automated operations overseen by technicians.
Yes, for low-risk categories. MSPs report 10% to 25% of tickets closed without a tech opening them, covering password resets, MFA enrollment, and known installs. Anything needing judgment or touching production data still escalates to a human.
AI decouples revenue from headcount. When automation handles routine work, labor costs grow slower than revenue, so margins expand as you scale. The 2026 Kaseya report found 53% of MSPs already automate ticketing, patching, and monitoring to protect margin.
Common platforms include Thread for triage, Rewst and Power Automate for workflow automation, NeoAgent for L1 resolution, and ConnectWise zofiQ inside its PSA. OpenFrame runs agents natively inside an all-in-one platform rather than bolting them onto separate tools.

Try it. Break it.

Deploy it. Love it.

And finally, stop paying $14K/month for tools that fight each other.