Intuit brings agentic AI to the mid-market saving organizations 17 to 20 hours a month


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One of the fastest-growing segments of the business market faces a technology paradox. They’ve outgrown small business tools but sometimes remain too small for many types of traditional enterprise solutions.

That’s the domain of the mid-market, which Intuit defines as companies that generate anywhere from $2.5 million to $100 million in annual revenue. Mid-market organizations tend to operate differently from both small businesses and large enterprises. Small businesses might run on seven applications. Mid-market companies typically juggle 25 or more disconnected software tools as they scale. Unlike enterprises with dedicated IT teams and consolidated platforms, mid-market organizations often lack resources for complex system integration projects.

This creates a unique AI deployment challenge. How do you deliver intelligent automation across fragmented, multi-entity business structures without requiring expensive platform consolidation? It’s a challenge that Intuit, the company behind popular small business services including QuickBooks, Credit Karma, Turbotax and Mailchimp, is aiming to solve.

In June, Intuit announced the debut of a series of AI agents designed to help small businesses get paid faster and operate more efficiently. An expanded set of AI agents is now being introduced to the Intuit Enterprise Suite, which is designed to help meet the needs of mid-market organizations.


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The enterprise suite introduces four key AI agents – finance, payments, accounting and project management – each designed to streamline specific business processes. The finance agent, for instance, can generate monthly performance summaries, potentially saving finance teams up to 17-20 hours per month.

The deployment provides a case study in addressing the needs of the mid-market segment. It reveals why mid-market AI requires fundamentally different technical approaches than those for either small businesses or enterprise solutions.

 “These agents are really about AI combined with human intelligence,” Ashley Still, executive vice president and general manager, mid-market at Intuit told VentureBeat. “It’s not about replacing humans, but making them more productive and enabling better decision-making.”

Mid-market multi-entity AI requirements build on existing AI foundation

Intuit’s AI platform has been in development over the last several years at the company under the platform name GenOS.  

The core foundation includes large language models (LLMs), prompt optimization and a data cognition layer that understands different data types. The company has been building out agentic AI to automate complex business processes since 2024.

The mid-market agents build on this foundation to address the specific needs of mid-market organizations. As opposed to small businesses, which might only have one line of operations, a mid-market organization could have several lines of business. Rather than requiring platform consolidation or operating as disconnected point solutions, these agents function across multi-entity business structures while integrating deeply with existing workflows.

The Finance Agent exemplifies this approach. It doesn’t just automate financial reporting. It creates consolidated monthly summaries that understand entity relationships, learns business-specific metrics and identifies performance variances across different parts of the organization.

The Project Management Agent addresses another mid-market-specific need: real-time profitability analysis for project-based businesses operating across multiple entities. Still explained that, for example, construction companies need to understand the profitability on a project basis and see that as early in the project life cycle as possible. This requires AI that correlates project data with entity-specific cost structures and revenue recognition patterns.

Implementation without disruption accelerates AI adoption 

The reality for many mid-market companies is that they want to utilize AI, but they don’t want to deal with the complexity.

“As businesses grow, they’re adding more applications, fragmenting data and increasing complexity,” Still said. “Our goal is to simplify that journey.”

What’s critical to success and adoption is the experience. Still explained that the AI capabilities of the mid-market are not part of an external tool, but rather an integrated experience. It’s not about using AI just because it’s a hot technology; it’s about making complex processes faster and easier to complete.

While the agentic AI experiences are the exciting new capabilities, the AI-powered ease of use starts at the beginning, when users set up Intuit Enterprise Suite, migrating from QuickBooks or even just spreadsheets.

“When you’ve been managing everything in spreadsheets or different versions of QuickBooks, the first time, where you actually create your multi-entity structure, can be a lot of work, because you’ve been managing things all over the place,” Still said. “We have a done-for-you experience, it basically does that for you, and creates the chart of accounts”

Still emphasized that the onboarding experience is a great example of something where it’s not even necessarily important that people know that it’s AI-powered. For the user, the only thing that really matters is that it’s a simple experience that works.

What it means for enterprise IT 

Technology decision-makers evaluating AI strategies in complex business environments can use Intuit’s approach as a framework for thinking beyond traditional enterprise AI deployment:

  1. Prioritize solutions that work within existing operational complexity rather than requiring business restructuring around AI capabilities.
  2. Focus on AI that understands business entity relationships, not just data processing.
  3. Seek workflow integration over platform replacement to minimize implementation risk and disruption.
  4. Evaluate AI ROI based on strategic enablement, not just task automation metrics.

The mid-market segment’s unique needs suggest the most successful AI deployments will deliver enterprise-grade intelligence through small-business-grade implementation complexity.

For enterprises looking to lead in AI adoption, this development means recognizing that operational complexity is a feature, not a bug. Seek AI solutions that work within that complexity rather than demanding simplification. The fastest AI ROI will come from solutions that understand and enhance existing business processes rather than replacing them.

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