The Agentic Enterprise
The term Agentic Enterprise refers to organizations using AI-driven agents to autonomously perform tasks, including decision-making, and, being context aware, adapting to complex workflows. These agents go beyond handling repetitive tasks—they can also be capable of managing heterogeneous processes with minimal employee involvement. The goal of an Agentic Enterprise is to enhance efficiency, streamline operations, and enable employees to focus on higher-value, creative tasks while leaving routine work to agents. The number one challenge companies face in deploying agents is data reliability and accuracy. But addressing that challenge alone will not ensure success.
Much of the work people do? takes place outside the primary system of record. For example, in updating a customer order, an account manager may need to refer to emails, texts, phone calls, not to mention PDFs, spreadsheets, and various documents–all of which exist outside their CRM tool. There are any number of applications and services required to support today’s work activities, so in order to create an effective agent, one capable of autonomy, you have to go beyond the “happy path” of your sales platform and really understand what people do to get the work done. This is especially true for business processes where multiple employees are working asynchronously to complete the task. This will require organizations, and their Agentic AI vendors, to expand their training data. ?
LLM’s capture the variances and patterns within a data set, enabling prediction and the successful generation of outputs. Currently organization’s LLMs are limited to the data within their enterprise and SaaS applications, but truly effective agents will require additional training data; data that reflects the sequence of activities humans perform with those systems and with each other, to complete their work.?
The activity stream of each employee, like a document, is unique. Which app do they open first? Do they click the link or copy and paste?? What was the sequence of actions they took between multiple applications; messaging apps, search tools, etc. When combined with hundreds or thousands of instances performed over time, it is possible to create predictive interaction models that represent optimal workflows and interactions to enable more compelling and more successful agents. And it will be Design’s responsibility to ensure those models are comprehensive and inclusive as well as respectful of users’ privacy.?
Decades ago this work was done by anthropologists like Julian Orr , carefully observing people at work, and building models of their activities and interactions to inform designs for office equipment. Today this information can be gathered by local digital sensors, log files, and clickstream analytics. In fact, I co-founded two start-ups that did exactly this, one focused on AI driven automation and the workforce automations. Modeling the activity stream is not the hard part, it was overcoming the collective skepticism both from employees (no one wants “big brother” looking over their shoulder), and designers over the invasiveness and ethical concerns. At both start-ups we invested heavily in designing in trust by providing transparency and end-user control over what data we collected and how it was used. We also provided control over the scope and level of autonomy for the resulting automations. Such assurances were necessary to gain admittance, adoption, and continued engagement. However once the users saw the results, their fears were quickly set aside, as they recognized the gains to be made by leveraging their newly minted agents.
Once users saw the benefits, their skepticism faded. Four key benefits today’s agents’ offer include:
As agents play a larger role, users may face challenges:
Trust the autonomy
As enterprises shift more decision-making to AI agents, users may feel disconnected from the process and start questioning the value of their own contributions. To address this, it's important to provide user-friendly, contextual explanations of how the agent reaches its decisions. This could include decision rationales, contributing factors, or data sources used by the agent. Additionally, employees should have the opportunity to give feedback on the outcomes. The goal is to refine both the agent’s rules and the employees' role in the process to ensure alignment and maintain trust while also fostering accountability and a sense of control.?
Data privacy
Agentic enterprises will depend heavily on behavioral data, capturing the tasks employees routinely perform. To ensure AI agents make informed decisions, organizations must gather data on both standard workflows and edge cases. However, employees may be wary, especially if they fear this data could be used punitively. To build trust, transparency is crucial. Employees should control what data is collected, with the option to review and edit their activities. And organizations must explain how workflows are anonymized, standardized, and included in the AI models
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Loss of satisfaction
Some users find satisfaction in handling certain tasks themselves, especially in creative or problem-solving areas. For instance, someone managing personal finances may prefer the hands-on approach to budgeting, while AI automation in these tasks might feel impersonal or even frustrating. Taking a human-centered approach engaging both employees and? business process experts to identify the most impactful tasks for automation will help ensure you're solving real problems and delivering genuine business value.?
Reduced transparency
When AI agents take actions without user input, it can create a sense of lost transparency. This disconnect may lead users to feel less ownership over outcomes. For example, if an agent automatically schedules meetings or manages emails, users might lose track of important details or decisions, affecting their sense of control. It's important to remember that even though agents handle tasks, users still want to stay informed and be accountable for what’s happening.
Control over agent behavior
To strengthen users' sense of control, they should have control over how AI agents operate—such as setting limits on the agents' autonomy or choosing which tasks they can handle. Consider allowing users to “dial up” or “dial down” an agent’s autonomy according to personal preferences (like setting budgets) while allowing agents free rein in low-impact areas (like adjusting calendar availability).
To address these issues, users may want flexibility in controlling how much autonomy an AI agent has over specific tasks. However, giving agents too much independence without oversight could lead to discomfort or distrust. While users may understand the efficiency benefits, they might feel disconnected or "disempowered." Consider the following approaches:
Finally, there are two additional factors that have to be addressed to ensure your success in transitioning to an agentic enterprise.?
The Agentic Enterprise promises to deliver greater customer value through customized experiences, faster and more flexible solutions, and greater agility in a rapidly changing market. However, maintaining trust, control, transparency, and fairness will be critical in balancing the benefits of autonomy with user empowerment.
Vice President of User and Kowledge Experience at Guidewire Software
1 周Matthew - interesting perspective and yes we are beginning to see all these perspectives in our enterprise design work. A whole new level of experience design.