Where a small government should start on its AI journey

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COMMENTARY | The fastest path is towards better operations, and over the course of a 90-day period, even a small team can embrace the tech and make big improvements.
Small governments don’t fail at deploying and using artificial intelligence because they lack ambition. They fail because they start in the wrong place.
They start with a tool demo, a vendor pitch, or a well-intentioned “pilot” that quietly becomes shelfware. Then the organization concludes that AI is either too risky, too expensive, or too complicated for a team that’s already stretched thin. That conclusion is understandable, but it’s also avoidable.
For a smaller city, county, or special district, the fastest path to real AI value is not “more AI.” It’s better operations. AI is a force multiplier on whatever you already are — organized or chaotic, disciplined or ad hoc. If your processes are unclear and your data is messy, AI will simply automate confusion faster.
But if you can describe your work, measure it and govern the data behind it, even modest automation can relieve backlogs, reduce errors and free staff time for the judgment-heavy work that only humans should do.
Why it Feels Urgent — And Overwhelming
Small governments are being squeezed from both sides. Residents expect faster responses, clearer communication and better digital service. Regulators and auditors expect stronger controls and documentation.
Meanwhile, staffing shortages and turnover make it hard to keep up with routine work, let alone redesign workflows.
In that environment, AI shows up as both promise and threat: promise, because it could reduce administrative burden; threat, because it could introduce errors, bias, privacy exposure and reputational harm if it’s deployed without guardrails.
The Trap: Starting With the Flashiest Use Case
The most common first move is also the most dangerous: deploying a public-facing chatbot or asking staff to “use generative AI” broadly to draft letters, summarize documents, or answer policy questions — without clarity on what information is allowed, how outputs will be validated and who is accountable when the answer is wrong.
A small government doesn’t have the luxury of a headline mistake. And unlike private industry, you’re not only protecting an organization, you’re protecting public trust.
A Practical Starting Model: Three Lanes, Sequenced on Purpose
If you don’t know where to start, start by separating “AI” into three lanes, each with different risk and payoff.
- Lane 1: Staff productivity, which has the lowest risk, and fastest learning. Use AI to help employees write, summarize and organize — inside approved tools, with clear rules about sensitive information. The goal here is not to “transform government” in 30 days; it’s to build comfort, reduce fear and learn what good prompting and review actually look like in your environment.
- Lane 2: Process automation with controls, which has the highest return on investment per dollar. This is where small governments win. Focus on high-volume, rules-based workflows that already have clear internal controls: accounts payable, payroll adjustments, procurement routing, budget-to-actual reporting, records requests and routine communications. Start with robotic process automation for repeatable steps and add AI where it improves classification, summarization and exception handling, while keeping human approvals and audit logs.
- Lane 3: Citizen-facing and decision-support, which has the highest risk and can be done. Public chatbots, eligibility recommendations, enforcement prioritization, or anything that could be interpreted as a government “decision” needs the most governance: transparency, testing, bias review, security review and clear escalation paths. This lane should be earned after you have governance muscle memory from Lanes 1 and 2.
The Unsexy Prerequisite: Know Your Process and Trust Your Data
Before you buy anything new, your leadership team should be able to answer two basic questions: What does this process look like today, including exceptions and informal workarounds? What data does the process touch, and is that data accurate, classified and appropriately protected?
If you can’t answer those questions, AI won’t give you transformation, it will give you speed without steering. The good news is that the work to answer those questions pays off even without AI: it reduces rework, strengthens internal controls and makes training easier when you hire the next employee.
Governance Isn’t Bureaucracy, it’s How You Move Faster Safely
Small governments often hear “AI governance” and picture a committee that never finishes anything. That’s a misunderstanding. Governance is simply deciding, in advance, who can use which tools, for which purposes, with what data and with what review.
Without those decisions, you will still adopt AI, but it will happen through shadow usage, inconsistent quality and untracked risk.
Start small, by assigning an executive sponsor; name an operational owner; define an intake process for use cases; and publish a one-page rule set on data handling, approvals and required validation for any AI-assisted output that becomes part of the public record.
A 90-Day Starter Plan For a Small Team
- Days 1–30: Get honest about what’s happening already. Inventory where AI is already being used, even informally. Identify one or two “pain” processes with high volume and visible backlog, which for many entities is invoices, payroll changes, public records requests and permitting intake. Capture baseline measures: cycle time, error rate, number of handoffs and peak workload periods. If you only do one thing in month one, do this.
- Days 31–60: Put guardrails in writing and select one pilot. Publish clear rules on what data is prohibited in AI tools, what outputs require human review and where logs must be retained. Then choose one pilot that is narrow, measurable and mostly rules-based. A great pilot is often “AI-assisted document intake and routing” paired with existing approvals. For example, invoice intake and coding suggestions that still require AP review and supervisor approval.
- Days 61–90: Build, test and launch with controls — not hope. Create “golden test cases” that reflect messy reality: incomplete forms, ambiguous requests and edge-case exceptions. Define acceptance criteria up front, like accuracy thresholds, required citations to source documents and escalation triggers. Train users, capture a performance indicator baseline and establish a rollback plan. Then go live, and keep it small enough that you can monitor every outcome for the first month.
How to Pick the Right First Use Case
If every department brings you a “top priority” AI idea, you need a filter. Favor use cases that are high-volume, repetitive and already governed by policy; have a clear process owner; touch data you can classify and protect; and produce outcomes you can measure quickly.
Avoid anything where a wrong answer could create legal exposure or perceived unfairness. In practice, that usually means starting in finance and administration: invoice processing and routing, payroll validation, procurement compliance checks, budget monitoring and public records intake and tracking.
The Goal Isn’t an AI Program. It’s a Better Government
The organizations that build durable value from AI won’t be the ones that adopt the most tools. They’ll be the ones that connect automation to real operational priorities, improve data quality as a discipline and treat internal controls and transparency as accelerators — not obstacles.
For a smaller government, that’s good news: you don’t need a large budget to win. You need clarity, governance and one well-chosen pilot that proves you can deliver measurable improvement without compromising trust.
If your organization is unsure where to begin, start slowly. Begin with a workflow you can map on a whiteboard and a dataset you can defend in an audit. Put basic rules in place, measure your baseline and run one pilot to completion, from testing to training to monitoring.
That is what “starting your AI journey” looks like in a small government: disciplined, pragmatic and built to scale.
Jack Reagan is a partner at UHY.




