Artificial Intelligence (AI) is old news. It’s been a topic of constant discussion in the contact center world for some time. The latest buzzword going around is “agentic AI”. According to Google Cloud, agentic AI is “an advanced form of artificial intelligence focused on autonomous decision-making and action. Unlike traditional AI, which primarily responds to commands or analyzes data, agentic AI can set goals, plan, and execute tasks with minimal human intervention.”
I won’t elaborate on that definition in this post. Instead, I’m going to explore how AI, including agentic AI, is already part of the workforce management (WFM) landscape and the potential future applications of agentic AI in WFM. Our recent survey revealed that although planning professionals have a positive attitude toward AI, only about 40% of them have so far adopted it. Will agentic AI in WFM drive up adoption levels? And will it steal planners’ jobs?
The planner’s job is currently labor-intensive. Even with a WFM tool to handle the tedious, manual steps of the WFM process, a skilled user is still needed to deliver results. The best WFM tools are already leveraging AI to boost planner productivity, and some vendors are justified in claiming to already be deploying agentic AI.
Here are some examples of how AI is already part of the WFM landscape, and the potential future applications of the technology in WFM.
Spoiler alert: agentic AI has the potential to make a dramatic difference.
The best WFM systems already use predictive AI to autonomously build accurate forecasts. Working quietly around the clock, predictive AI recognizes patterns and trends in contact volume and average handling time (AHT) and constantly generates forecasts for over 12 months into the future, down to 15 or 30 minute interval levels.
Agentic AI in WFM forecasting has further potential:
The best WFM systems already use optimization AI to build highly efficient schedules, even in sophisticated multi-skill, multi-channel environments. AI has the potential to optimize schedules based on multiple goals or constraints, e.g., optimizing staffing coverage (minimizing the difference between required staffing levels and provided staffing levels), minimizing over-staffing (reducing cost), minimizing under-staffing (favoring customer experience and reducing agent stress), and maximizing agent schedule preference fulfilment (favoring agent experience).
Agentic AI in WFM has further potential:
Agentic AI could automatically detect intraday problems and quickly take autonomous corrective action.
Triggers for action could include:
Autonomous corrective action could include:
The corrective action should take the form of suggestions for human approval rather than autonomous execution until the AI has proven itself to be reliable.
AI-native WFM tools already take care of several agent engagement tasks autonomously using a form of agentic AI. For example:
Agentic AI has further potential to improve employee satisfaction, for example:
As we explored in this popular blog post, workforce optimization goes beyond schedule optimization. Workforce management is about making sure you have the right number of people working when you need them. Workforce optimization is about also ensuring that they are as effective as possible while they are at work.
Agentic AI in WFM has the potential for:
Currently, all of these tasks are performed manually.
Taken to its ultimate expression, agentic AI could effectively become a ‘robotic workforce planner’, performing many of the mechanistic tasks in the WFM cycle with minimal human intervention. It’s possible to imagine the agentic AI learning from the decisions that it takes, identifying what works and what doesn’t, so that each time around the WFM cycle, it gets better and better - just like a human planner. This concept begs the question: Will AI destroy WFM jobs?
Planning is a demanding profession, requiring its practitioners to combine strong numeracy with good interpersonal skills, as explored in this blog post. There’s no sign of AI, agentic or otherwise, replacing the human planner anytime soon. Integration of agentic AI with existing systems will not be a trivial task. More importantly, it would be unwise to consider ever completely replacing human planners with AI. WFM has a huge influence on customer experience, staff satisfaction, and business efficiency. A human, not a faceless robot, must be held accountable for WFM performance, so there will always need to be human experts in the loop from a governance perspective, at least.
What is for sure is that the role of the planner will change. Planners will continue to need an in-depth understanding of how the WFM process works, even if AI takes care of most of the details. It’s always dangerous to treat any system as a black box that nobody understands and nobody challenges. As mentioned in the eBook 7 Key WFM trends to watch out for in 2026, the planner’s role will become more about interpretation than calculation. The time saved by AI in WFM will free up planners to perform tasks that require human skills, such as anticipating change, observing human behavior, applying ethical and cultural judgment, and playing an active role in strategic management of the contact center.
To quote a LinkedIn post by the respected WFM expert Doug Casterton, ”WFM keeps being surprised. Not because the function is dispensable, but because it never learned to argue its case in the language the business actually uses: margin, risk, customer outcome, revenue per contact. The seat at the table was not withheld. It was never applied for.” Once WFM professionals are relieved of the burden of number-crunching, they will have time to become familiar with the language of the top table and join the conversation with insights that they are uniquely qualified to deliver.
Agentic AI is an advanced form of artificial intelligence focused on autonomous decision-making and action: setting goals, making plans, and executing tasks with minimal human intervention. It is already present in the best WFM tools, alongside predictive AI and optimization AI. It has the potential to transform the WFM process in several ways: