This technology marks the next evolution of AI, moving beyond current tools that simply respond to prompts or follow pre-programmed rules.
This jump beyond prompts is why agentic AI companies are transforming enterprise operations; they’ve moved past reactive actions only and are in the realm of proactive, goal-driven processes and automation.
What is Agentic AI?
The word “agentic” is derived from “agency,” which means the ability to act independently and with purpose. Agentic AI systems actively set new objectives, make strategic decisions and take concrete steps to achieve business goals.
When most people think of AI right now, they’re thinking about Large Language Model (LLM)-powered chatbots like ChatGPT and Claude. What sets an agentic AI system apart from these tools is that they don’t require a prompt to get to work. They can also connect to multiple line-of-business tools, such as enterprise resource planning (ERP) systems, warehouse management systems (WMSs) and manufacturing control systems. Agentic AI systems are more than rote automation tools; they’re advanced computer systems capable of intelligent action.
Key Characteristics
There are five key characteristics of agentic AI tools:
- Autonomous decision-making: Agentic AI can evaluate complex situations, weighing multiple options and possible courses of action without relying on constant input from your team. Its advanced reasoning capabilities allow it to interpret context and take the most appropriate course of action based on your business goals.
- Proactive behavior: Unlike LLM-powered AI, agentic systems don’t have to wait for instructions. They anticipate needs, identify emerging patterns and take the initiative to address issues before they escalate. And when escalation is necessary, they can be programmed to require human input before proceeding, so you’ll always have final say.
- Adaptability and learning: Because it continuously learns from interactions, agentic AI can refine its decision-making processes over time. It can become more effective with each interaction by combining the current set of conditions with what it has learned through previous experiences.
- Multi-step task execution: Unlike traditional AI, agentic AI can manage complex workflows involving multiple steps and sequences. It can then orchestrate end-to-end processes by coordinating actions that achieve larger objectives.
- Collaborative intelligence: Agentic AI is designed to work alongside humans and other AI agents. It can understand shared goals, interpret human intent and coordinate actions across systems to enhance team effectiveness.
How Does Agentic AI Work?
The Architecture of Agentic AI
The underlying agentic AI architecture is a series of interdependent layers that transform raw data into intelligent action. Think of it as a sophisticated decision-making computer brain that works similarly to a human executive in that it processes incoming information, considers its options and then delegates tasks as appropriate. This structured approach to operation aligns agentic AI with how your existing human teams operate.
The layers of this architecture include perception modules that serve as the system’s sensory interface, cognitive layers that handle reasoning and action components that execute real-world decisions. Most agentic AI can operate either as a single-agent or multi-agent configuration, depending on needs and existing infrastructure. GTT Managed SD-WAN service is an example of a multi-agent system that communicates across your network to orchestrate a more robust and reliable network for your organization.
Key Components and Processes
Five key components enable the shift from reactive to proactive that agentic AI embodies:
- Perception and data processing: The perception layer of agentic AI monitors and analyzes data from multiple sources, converting it from unstructured information into structured data that the cognitive layer can process effectively.
- Goal setting and planning: The cognitive layer then defines objectives and generates short and long-term action plans with strategic, adaptable objectives.
- Decision-making engine: Agentic AI’s advanced logical reasoning abilities allow the system to evaluate multiple possible scenarios, assess potential outcomes and select optimal actions based on context and predefined criteria.
- Action execution: The action layer of agentic AI’s architecture translates these decisions into concrete actions and continuously monitors outcomes. This monitoring includes safety checks, performance validation and adjustments to meet objectives.
- Learning to optimize: From there, the AI’s learning mechanisms analyze the results of each decision and action to update the system’s knowledge base and create the feedback loop that will improve future performance.
Advantages of Agentic AI for Enterprises
Increased Efficiency and Adaptability
Enhancing User Trust and Collaboration
Cost Reduction and Resource Optimization
Improved Decision-Making and Predictive Insights
24/7 Operational Capability
Seamless Integration with Existing Systems
Use Cases of Agentic AI
Unlike most line-of-business tools or SaaS offerings, agentic AI is a category rather than a single use or industry-specific solution. Agentic AI use cases run across industries, some examples include:
- Financial services: Agentic AI can automate the complex process of assessing creditworthiness by analyzing multiple data sources and generating comprehensive reports.
- Manufacturing: On the factory floor with the help of Internet of Things (IoT) sensors, agentic AI systems can proactively order replacement parts, adjust parameters for efficiency and coordinate maintenance to minimize downtime.
- Retail and ecommerce: Agentic AI streamlines retail and ecommerce operations through dynamic pricing strategies, personalized shopping experiences, and automated inventory management.
- Media and broadcasting: High-quality, low-latency content distribution is the backbone of modern media and broadcasting industries. Agentic AI can manage that distribution, optimize streaming quality based on real-time network conditions and route content through the most efficient delivery paths.
- Wholesale: AI systems can resolve issues or escalate complex cases to human agents while handling your complete customer service workflow, all in the name of streamlining wholesale operations.
Requirements for an Enterprise to Adopt Agentic AI
As with any technology deployment, rolling out an agentic AI system to assist your business operations has some foundational requirements, mostly revolving around your existing tech stack and available infrastructure.
Private Cloud
Private cloud environments are ideal for agentic AI deployments because they provide the high-powered CPUs and TPUs necessary for model training and the scalability to keep up with changing demands and future enterprise expansion. They are also ideally suited to the robust computing infrastructure needed to support continuous processing, decision-making and learning, which form the foundation of agentic AI.
Data Infrastructure and Integration
Skilled Workforce and AI Expertise
Regulatory Compliance and Security Measures
Prepare for Agentic AI with GTT
GTT Envision platform is ideally suited for agentic AI deployments by delivering the visibility, orchestration, and control capabilities essential to managing an autonomous AI system. Additionally, GTT provides:
- Secure cloud connectivity
- Scalable infrastructure
- Expert support
When you’re ready to explore how GTT can help you prepare your business for agentic AI, explore GTT cloud services or talk to our experts to discuss specific requirements.
FAQs ABOUT Agentic AI
What is the difference between generative and agentic AI?
Is agentic AI LLM?
What are some examples of agentic AI?
Agentic AI systems operate with a high level of autonomy, taking on tasks that traditionally require human oversight. Examples include:
- AI-driven customer service platforms that guide users through troubleshooting, process requests, and resolve issues without needing a live agent.
- Financial analysis agents that scan complex data sets, identify trends, and deliver reports with recommendations for decision-makers.
- Predictive systems in manufacturing that monitor equipment, detect potential failures, and coordinate maintenance to minimize disruption.
These systems are designed to act independently within defined parameters to improve efficiency and enable faster, data-informed decisions.
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