Agentic AI isn’t just another advanced chatbot or a smarter version of generative AI with a few plugins. It represents a fundamentally different way of structuring workflows—one built around systems that can initiate actions, plan intelligently, adapt to changes, and execute multi-step processes without constant human guidance.
Think of it like the difference between using a checklist with an intern and delegating an outcome to a trusted team lead. The intern needs precise, step-by-step instructions. The team lead knows how to interpret the objective, resolve issues along the way, and deliver the result without needing constant oversight. Agentic AI behaves more like the team lead—it understands the goal, manages the process, and only loops you in when it really needs to.
This shift isn’t about bigger or faster AI models. It’s about autonomy, goal orientation, and intelligent workflow execution.
To understand agentic AI clearly, it helps to think about it on a spectrum of capability:
Task agents perform single, clear-cut actions triggered by specific events. They’re fast, accurate, and cost-effective.
Autonomous agents handle more complex tasks that involve multiple steps or ambiguity, adjusting their approach as they go.
Orchestrator agents coordinate several task and autonomous agents, sequencing actions efficiently and reliably.
Interacting agents communicate across different systems and even across different organisations. Initially, this might start with simpler interactions, like:
Over time, we should expect these interactions to evolve into more sophisticated negotiations and collaborations, streamlining processes further.
Task agents and autonomous agents are already automating specific, repeatable actions inside enterprise platforms. Salesforce Agentforce, for example, includes service agents that can handle billing inquiries by retrieving customer data, reviewing billing history, and drafting a summary response. These agents go beyond simple chatbots. They operate within well-defined parameters, but when used smartly, they can eliminate the need for manual case review—delivering real productivity gains with minimal disruption.
Google is setting the pace with its recently announced Agent Builder, which gives developers the tools to build and orchestrate multi-agent systems within enterprise environments. Its Agent Development Kit (ADK) allows organisations to coordinate agents through defined workflows—assigning tasks, tracking outcomes, adapting in real-time, and escalating where needed.
This architecture is built on two critical open standards:
Together, MCP and A2A form the infrastructure backbone for interoperable agent ecosystems. This open approach means developers can plug agents into any system—whether it's an ERP, a CRM, or a custom internal application—and have them work together seamlessly.
This matters because it opens the door to assembling your own ecosystem of agents, selecting the best-performing option for each task, and enabling them to collaborate across systems. And if adoption of open protocols like MCP and A2A continues, it’s realistic to expect agents to begin interacting directly with agents from customers, vendors and other stakeholders.
Google has already launched an AI Agent Marketplace featuring ready-to-deploy agents from partners like Deloitte (initially focused on marketing and data use cases). The purchasing experience will feel familiar, as it’s part of Google’s broader marketplace, and the software itself will likely resemble traditional tools—just more adaptive and intelligent. Most initial agents are expected to complement—rather than replace—existing platforms, helping teams automate targeted workflows with greater flexibility and precision.
We’re still early—but the infrastructure is here, and the shift is underway.
To prepare your finance team without overinvesting, focus on low-risk foundational moves:
You won’t need to deploy a dozen agents tomorrow—but you may interact with them sooner than you expect. The best thing finance teams can do now is to stay informed, stay modular, and stay ready to act when the opportunity fits.
The shift is already underway—and the teams that move steadily, not suddenly, will be best placed to benefit.
If you haven’t read our foundational article yet, start here: Finance and Agentic AI.
In our upcoming piece, we’ll share a practical roundup of AI agents already available to finance teams—from Salesforce Agentforce and Google’s Agentspace to Accurate Digits and n8n. Subscribe for updates, and keep an eye out for that guide.