Harness the Power of AI Agents
Expert Agentic AI Advisory Services for NZ & Australian Businesses
Contact Our Agentic AI Team
ABOUT OUR AGENTIC AI SERVICES
We Help Your Business Adopt AI Agents Properly
Our Agentic AI services help you:
- Assess AI Agent Opportunities – Identify where AI agents can add the most value.
- Develop a Clear Agentic AI Strategy – Align AI adoption with business goals.
- Help you select the best AI Agent for your requirements.
- Ensure Ethical & Compliant AI Use – Avoid risks and implement responsible AI.
- Optimise AI Agent Performance – Get the most from AI automation.
Unsure where to start? Request a consultation with Matrix AI today.
AI ADOPTION FRAMEWORK
Our Agentic AI Adoption Framework
Successfully adopting agentic AI requires more than just selecting the right tools—it demands a structured, strategic approach.
At Matrix AI, we guide clients through our proven AI ADOPT framework, ensuring every implementation is aligned with your business goals and built for long-term value.
- A – Assess Readiness: We audit your systems, people, and data to identify opportunities and barriers.
- I – Identify Tools: We help you choose the right agentic AI platform using a weighted evaluation process.
- A – Activate Learning: Tailored training ensures your team is confident and AI-literate from day one.
- D – Deliver Pilots: We launch quick-win use cases to build early momentum.
- O – Operationalise Governance: We embed ethical, legal, and risk management controls.
- P – Promote Change: Change management plans are implemented to drive adoption.
- T – Track & Iterate: We monitor performance and continuously refine your solution.
This approach helps you unlock the full potential of intelligent agents—strategically, responsibly, and at scale.
ABOUT AI AGENTS
What are AI Agents?
By 2028, Gartner predicts that 33% of enterprise software applications will include agentic AI, a sharp rise from less than 1% in 2024. Additionally, at least 15% of day-to-day work decisions will be made autonomously by AI agents.
This surge reflects a broader trend, with the AI agents market expected to grow from $5.1 billion in 2024 to $47.1 billion by 2030.
But what exactly are AI agents?
These intelligent systems perceive their environment, process data, and take action to achieve specific goals—continuously learning and adapting in real time. Unlike traditional
AI automation systems, AI agents range from simple rule-based models to complex multi-agent solutions.
ABOUT AI agents
Why AI Agents Matter?
AI intelligent agents bring powerful capabilities to your organisation:
- Autonomous Decision-Making – AI agents analyse data, predict outcomes, and take action without human intervention.
- Conversational AI & Virtual Agents – Improve customer interactions with intelligent AI-powered virtual agents that understand natural language and respond dynamically.
- Knowledge-Based AI Agents – Deploy AI that learns from structured and unstructured data to enhance decision-making.
- Multi-Agent AI Systems – Implement interconnected AI agents to manage complex processes in finance, healthcare, logistics, and more.
how AI AGENTS work
How AI Agents Work
AI agents operate through a cycle of perception, decision-making, and continuous improvement—driven by access to high-quality, reliable data. Here's how they deliver intelligent, adaptive support at scale:
1. Sensing the Environment:
AI agents begin by defining the objective and accessing data from the most
relevant, accurate, and current sources. Data quality and accessibility are critical—without it, even the most advanced models can produce poor outcomes.
2. Reasoning with Context:
Using advanced models like large language models (LLMs), agents interpret the data, understand context, and make intelligent decisions based on your goals and constraints.
3. Planning Actions:
With insights in hand, agents develop clear, step-by-step plans to achieve the task—whether that’s automating a workflow, generating content, or solving a business problem.
4. Coordinating with Systems and Teams:
Agents communicate their plans with users or other systems to ensure transparency, alignment, and collaboration before taking action.
5. Taking Action:
Once aligned, the agent executes the task autonomously—handling everything from simple tasks to complex, multi-step processes.
6. Learning and Improving:
After the action is completed, agents assess performance, learn from outcomes, and adjust their approach—becoming smarter and more effective with every cycle.
By combining real-time data access with intelligent decision-making, AI agents offer businesses a new level of operational autonomy, speed, and adaptability.