AI & Agentic Systems
Where AI Becomes ROI
Building an AI-Enabled Organization
AI only creates value when it is aligned to business objectives, built on a strong data foundation, governed responsibly, and designed to scale. alliant partners with leaders to build AI-enabled organizations, bringing strategy, engineering, and operational discipline together so intelligence delivers real returns.
Our AI Capabilities
Generative AI
AI that serves as a knowledge and productivity layer across the organization. It enables teams to access information faster, analyze data more efficiently, and produce consistent outputs within existing systems, while leadership retains full control over decisions and standards.
Agentic AI & Autonomous Workflows
Systems that operate as skilled digital co-workers within the business, supporting teams in achieving shared goals. They carry work forward by monitoring conditions, making routine decisions, and executing actions across applications, allowing critical workflows to run continuously with built-in oversight and accountability.
Predictive & Decision Intelligence
Intelligence that provides forward looking visibility into the business. It helps leadership anticipate outcomes, understand tradeoffs, and identify risks or opportunities earlier, supporting more confident planning and better timed decisions.
AI Discovery
Supporting Business through Every Stage of AI Maturity
5X Stevie® Award Winner for AI Innovation
Case Studies
What is Agentic AI?
Agentic AI refers to intelligent systems that can plan, decide, and act toward defined outcomes—rather than simply responding to prompts or executing predefined rules.
Unlike traditional automation or one-off AI tools, agentic systems:
In practice, this means AI that supports real work—monitoring processes, making decisions within guardrails, and helping teams operate more efficiently and consistently.
How does Agentic AI differ from Generative AI?
Generative AI is designed to create content. It responds to prompts by generating text, images, code, or summaries. It’s excellent for boosting productivity, but it does not act on its own or make decisions.
Agentic AI goes a step further. It is designed to take action. Agentic AI uses generative models together with rules, memory, and tools to pursue a goal—planning steps, making decisions, and executing tasks across systems.
In simple terms:
Generative AI answers questions
Agentic AI decides what to do next and does it
What problems should we solve first with AI?
Most organizations don’t need AI everywhere—they need it where work is slow, manual, or inconsistent. The best starting points are repeatable workflows, high-volume decisions, and areas tied to cost, speed, or risk.
Our teams often start with a focused discovery to identify where AI will create measurable operational or financial impact, not just incremental productivity. We prioritize initiatives based on ROI, feasibility, and alignment with business goals, so you know exactly where to start and why.
Is our data good enough to use AI effectively?
In most cases, data isn’t “perfect.” However, it’s usually usable with the right structure and governance. The real risk isn’t imperfect data; it’s not knowing what data can be trusted or where gaps exist.
Our teams assess data readiness early, identify what’s reliable today, and design AI solutions that work with your current environment while strengthening the foundation over time. AI readiness becomes a roadmap, not a blocker.
What security needs to be in place before deploying AI?
AI needs clear boundaries around decision authority, data access, security, and accountability. Without guardrails, risk increases faster than value.
We design AI with governance built in from day one—defining where humans stay in the loop, how decisions are monitored, and how systems comply with regulatory, security, and operational requirements. Control and transparency come first.
How much change management will this require?
AI changes how work gets done, which means adoption matters as much as the technology itself. Resistance usually comes when there is uncertainty.
alliant has a team of change management specialists. We design AI to fit existing workflows, involve stakeholders early, and roll out changes in manageable phases. The goal is adoption that feels practical and is supported.
What does AI really cost?
With the right approach, AI doesn’t have to become an unpredictable or open-ended investment.
alliant assesses AI initiatives with self-funding in mind from day one. That means we focus on high-impact use cases where efficiency gains, cost reduction, or revenue lift can help offset implementation costs. We make the full investment visible upfront, set clear expectations, and ensure AI is tied to measurable outcomes—so it feels like a smart business decision, not a leap of faith.


