Agentic AI Case Studies
This isn’t all theory. Agentic AI is already out in the wild, embedded in tools many of us use every day
This article is a reference article for my main article: Is AI the death of UI?
Microsoft 365 Copilot: Your new (sometimes clumsy) colleague
Microsoft’s Copilot is baked into Word, Excel, Outlook, and Teams. It offers help via a side panel where you can ask it to draft, summarise, analyse, or create. Want a first draft of a presentation? Ask Copilot. Need an email summarised? Ask Copilot. It’s like having a junior analyst always ready to jump in.
The upside? It’s fast and helpful, especially when you’re staring at a blank slide or drowning in unread emails.
The catch? It still has a learning curve. For example, in Excel, Copilot struggled with basic table formatting at launch and required oddly specific setups to work smoothly. Some users were confused by the interface changes. Others didn’t trust the AI’s suggestions. And when it’s wrong, it’s wrong with confidence, which adds a layer of risk.
Microsoft Dynamics 365 and the Rise of AI-First Business Applications
While tools like Microsoft 365 Copilot have grabbed headlines, some of the most interesting use cases for agentic AI are playing out a little further behind the scenes inside Dynamics 365.
This is Microsoft’s line-of-business platform, covering everything from sales and customer service to finance and supply chain. It’s not flashy like ChatGPT, but for many organisations, it’s where the real work happens. And now, that work is being reshaped by embedded AI agents.
AI in the Flow of Work
Microsoft has steadily woven Copilot functionality into key Dynamics 365 modules. These agents aren’t just bolted on, they’re context-aware and task-specific. For example:
In Sales, Copilot can summarise meeting transcripts, suggest follow-up emails, or pull in relevant CRM data mid-conversation.
In Customer Service, agents can suggest case resolutions, surface knowledge base articles, or even draft full responses based on ticket context.
In Contact Centre, live sentiment analysis means that the agent can automatically call a supervisor into calls that turn hostile. As well as summarise call transcripts and automate next steps.
In Finance and Supply Chain, Copilot can explain anomalies in financial reports, summarise forecast variances, or identify potential risks before they snowball.
In Business Central, Copilot can summarise and search for information, give the user insights without them having to navigate and filter data and are in the process of releasing two AI agents focussed on processing sales and purchase transactions autonomously.
The goal is to reduce the cognitive load. Instead of navigating multiple records, screens, and reports, users ask the system direct questions and get actionable responses in plain language.
Why it matters
This is where agentic AI becomes more than a novelty. In Dynamics 365, these capabilities are aimed squarely at improving productivity in high-stakes, data-heavy environments. Salespeople get their time back. Support teams respond faster and more accurately. Finance users spot issues without trawling through five spreadsheets.
It also hints at Microsoft’s broader play: making natural language the common thread across the entire Microsoft ecosystem. You could start a sales email in Outlook, summarise the last meeting in Teams, and update the CRM—all via Copilot. It’s a unified layer that cuts across apps, without users needing to jump between tabs or retrain their muscle memory.
What It Means for the Future of Business Applications
Dynamics 365 is a good bellwether for where business systems are heading. Agentic AI is moving from standalone chatbot to integrated assistant. It’s not just answering questions; it’s participating in workflows, suggesting actions, and learning from context.
This marks a shift in how we think about enterprise software. It’s no longer just a database with a nice UI, it’s a co-pilot that interprets, supports, and sometimes even decides.
For many organisations, that’s a big adjustment. But it’s also an opportunity to rethink how work gets done, and who (or what) does it.
Salesforce Einstein Copilot – Conversational AI for the Enterprise
If Microsoft is embedding AI across productivity and ERP tools, Salesforce is doing the same for customer-facing teams. Their take on agentic AI comes in the form of Einstein Copilot, a conversational assistant built directly into the Salesforce platform.
This isn't Salesforce’s first crack at AI. Einstein has been around since 2016, quietly powering predictions and insights behind the scenes. But with the launch of Einstein Copilot, the AI has stepped forward and started talking.
AI, But with Context
Einstein Copilot isn’t just a chatbot. It’s deeply tied to Salesforce records, business rules, and user roles. That context makes all the difference.
For example:
A sales rep can ask, “Show me my top accounts from last quarter,” and Einstein will not only pull the data, but also suggest actions like “Create follow-up tasks” or “Send personalised emails.”
A service agent can request a case summary, then ask the assistant to generate a response, referencing internal knowledge articles and the customer’s history.
The interaction is fluid, but grounded. The AI operates within known boundaries, with access to structured company data and pre-defined workflows. That tight integration reduces the risk of hallucination and helps build trust.
Prompting Action, Not Just Answers
What sets Einstein apart is its ability to recommend and execute next steps. It’s not just there to answer questions, it’s designed to guide users through tasks.
This shows up in small ways, like suggesting follow-ups after displaying a lead list, or more complex flows, such as automating ticket routing or generating proposal drafts. Salesforce refers to this as “breadcrumbing,” gently nudging users through a task without overwhelming them.
Admins can configure Copilot Actions, essentially pre-scripted, prompt-driven workflows that Einstein can trigger. That means companies can tailor the AI to match their processes and policies, blending automation with human oversight.
Guardrails by Design
Salesforce has taken a relatively cautious approach. Unlike open-ended models, Einstein Copilot requires a specific Salesforce context to function. You can’t ask it general knowledge questions or drift off-topic. That narrow scope is by design. It keeps the AI focused, predictable, and safe within regulated industries like finance, healthcare, and government.
Privacy is also baked in. Salesforce is clear that Einstein respects existing permission sets and data boundaries. It doesn’t train on customer data, and users can audit what data was used in each interaction. This emphasis on transparency and control makes it more palatable to IT teams and compliance officers alike.
From CRM to AI-Powered Workflow Hub
Salesforce isn’t just layering AI on top of CRM, it’s using it to rethink the entire workflow. With Einstein Copilot embedded across Sales Cloud, Service Cloud, Tableau, and Slack, users don’t have to context-switch to get things done. The AI sits across those touchpoints, ready to assist.
And with the growing integration of Salesforce Data Cloud (formerly Customer 360), the assistant gets smarter by pulling from unified profiles, behaviours, and real-time data streams. It’s a move toward true orchestration, where the AI connects dots humans might miss.
Where It’s Headed
Salesforce has signalled that Einstein is becoming more than just a Copilot, it’s becoming the foundation of a new agent-first application layer. They're even branding this broader vision as Agentforce.
The ambition is clear: move from reactive CRM to proactive AI-powered engagement. That includes everything from automatically prioritising leads to pre-empting churn or surfacing next-best actions in customer conversations.
Like Microsoft with Dynamics 365, Salesforce is showing how agentic AI can transform business software, not by replacing users, but by amplifying them. The tools are still maturing, but the trajectory is hard to ignore.
ChatGPT: The interface is the conversation
OpenAI took a different tack. ChatGPT doesn’t look like much, just a prompt box and a log, but that’s the point. There’s no need to learn a new app. You just ask questions, and it responds.
With the release of “custom GPTs” and plugins, users can now build their own agents that connect to real tools. It’s powerful, but the UX hasn’t quite caught up. At DevDay, OpenAI essentially said, “We built the engine. You figure out the car.” A bit of a mixed message for business users trying to wrap real workflows around it.
Still, ChatGPT is probably the best example of an agent-first experience in the wild. It’s fast, flexible, and rapidly becoming a universal tool for everything from writing to planning to support.