Enterprise AI Platform for Australian Organisations

Your AI strategy starts here.

Most organisations have experimented with AI. Fewer have put it into production in a way that’s secure, adopted by intended users, and genuinely connected to how the organisation operates. QBot is Antares Solutions’ enterprise AI platform, built to close that gap. Deployed inside your own Azure environment. Connected to your real data. Governed from day one.

QBot case study — watch how it works in production

In production across Australian organisations

Capabilities & Features

Pre-built agents you can deploy in weeks.
Custom-built AI for unique challenges and processes.

QBot is not a general AI chatbot. It’s an enterprise AI platform — a suite of production-ready AI agents covering the use cases most organisations need first, combined with the capability to design and build custom agents and multi-agent workflows from scratch to suit specific organisational needs. Everything runs inside your own Azure environment. Connected to your data. Subject to your governance. Auditable from day one.

Accuracy

QBot is grounded in your data — your policies, your systems, your knowledge base. It answers using information you’ve given it access to, not the internet.

Reliability

Every user gets the same quality answer or output, every time. No inconsistency based on who’s asking, what device they’re on, or when they submit the query.

Observability

You can see exactly what was asked and exactly what the AI provided, across your whole organisation. Not just an individual’s chat history. This is the audit and governance capability that most AI tools don’t offer.

Style

AI that outputs and responds in your organisation’s brand, style, tone and voice — not like a generic AI assistant — from your colours and fonts to the language used.

Integrated beyond M365

QBot connects to systems outside the Microsoft ecosystem. No matter your ERP or CRM solution, any sector-specific platforms, or a mix of legacy tools, QBot works in your ecosystem.

AI for your whole organisation. Not just the people at desks.

Most AI tools are designed for knowledge workers. QBot is built to serve staff at every level – including frontline workers, volunteers, and non-permanent staff – as well as partners and customers. Different audiences, different agents, different access levels. All managed from a single platform.

Our Microsoft credentials

Antares is an enterprise AI specialist partner with four advanced specialisations.

These aren’t self-certified designations. Advanced Specialisations are awarded following an independent audit of technical methodology and real production customer outcomes — the highest tier of Microsoft recognition, across AI, analytics, modern work, and cloud application development.

Microsoft Solutions Partner Specialist — Adoption and Change Management Microsoft Solutions Partner Specialist — Copilot Microsoft Solutions Partner Specialist — Analytics on Microsoft Azure Microsoft Solutions Partner Specialist — AI Platform on Microsoft Azure

AI is easy to experiment with.
Harder to get right, especially as an organisation.

Every technology leader we speak to is thinking about AI, and most have already started somewhere. The challenge isn’t generating interest. It’s moving from an impressive proof of concept to something that actually works in production, respects your data governance, and gets used by your people. Here’s where things typically go wrong.

The failed proof of concept

Building an AI demo with ChatGPT or Claude is accessible to most organisations. However, getting it into production, like connecting it to live data, within your security perimeter, with proper access controls, is a significantly harder problem. Many organisations are stuck between a working prototype and a platform they can actually deploy that will be accurate and reliable in its performance.

Data sovereignty concerns

General-purpose AI tools process queries on shared infrastructure. For organisations handling sensitive data — student records, case notes, financial information, internal policy — this creates a genuine problem. Your data should stay in your environment, full stop.

No clear strategy or starting point

There is no shortage of AI use cases. The problem is knowing which ones to prioritise, in what order, and how to make the case internally. Without a structured approach, organisations spend months debating rather than building — or build the wrong thing first.

Individual tools, not organisational intelligence

Giving everyone a ChatGPT licence improves individual productivity. It does not create organisational intelligence. If your AI doesn’t know your policies, your processes, your data, or who is asking — you’re not realising anywhere near the full opportunity.

Governance gaps and hallucination risk

AI answers need to be accurate, auditable, and consistent — especially when staff are relying on them for policy, compliance, or customer-facing responses. Without proper grounding in your own data and content, AI systems will hallucinate. That is not a risk most organisations can accept in production.

Deployment without adoption

Technology that people don’t use delivers no value. AI tools need to be accessible where your staff already work — inside Microsoft Teams, your SharePoint intranet, your CRM, or whatever platform they use day to day. Deploying a standalone AI portal and expecting adoption rarely works.

What makes QBot different

An enterprise AI platform built for how real organisations operate.

QBot is built on Microsoft Azure AI Foundry, the same stack Microsoft invests in and deployed entirely inside your Azure tenancy. It connects to the data and systems your organisation actually runs on, and it’s designed to be governed, audited, and trusted.

Deployed inside your tenancy

Your prompts, outputs, and interaction logs never leave your Azure environment. QBot applies to your data sovereignty policy the same way everything else in your tenancy does. This is a design principle, not an afterthought.

Grounded in your actual data

QBot connects to your SharePoint, your CRM, your ERP, your policies, and your proprietary knowledge base. It answers questions using your information — not generic internet content. No hallucinations from data it doesn’t know.

Multi-persona, multi-channel

Different AI assistants for different audiences — staff, students, or customers — each with their own knowledge base, tone, and permissions. Deployed where people already work: Teams, your intranet, mobile, or your own applications.

Governance and audit built in

Full audit logging, role-based access via Entra ID, content filtering, and responsible AI controls from day one. You can see who asked what, what answer was given, and which data sources were used. Compliance is not an add-on.

Works with your existing stack

Pre-built connectors for SharePoint, Microsoft Graph, CRM, ERP, and third-party platforms. QBot can also integrate with systems outside Microsoft entirely — giving you AI that works across your whole technology landscape, not just inside M365.

Bring your own model

Choose the LLM that fits your requirements — ChatGPT (OpenAI), Claude (Anthropic), or any model available in Azure AI Foundry. You are not locked to one vendor’s model choices. Swap or upgrade models without rebuilding your platform.

Understanding your options

Copilot vs Copilot Studio vs QBot.
Which one, and when?

One of the most common questions we hear is: “We’re already looking at Copilot — how does QBot fit in?” These tools are not competitors. They solve different problems at different levels of complexity. Here’s an honest breakdown.

Microsoft Copilot vs Copilot Studio vs QBot — comparison assessed
Microsoft Copilot Copilot Studio QBot (by Antares)
Primary purpose Individual productivity within M365 apps Low-code agent building inside M365 ecosystem Enterprise-grade AI platform for complex, multi-persona deployments
Best suited for Helping individuals draft, summarise, and manage tasks in Teams, Word, Outlook Building simple internal chatbots and workflow agents without code Complex use cases, regulated environments, multi-audience deployments
Data sovereignty Microsoft cloud — within M365 tenancy Within M365 tenancy — limited control over data flows Fully inside your Azure tenancy — complete data sovereignty
Integrations Microsoft 365 apps only M365 and basic third-party connectors SharePoint, CRM, ERP, LMS, case management, custom systems, and more
Multiple AI personas Single assistant per user Limited to simple single-topic agents Multiple agents for staff, students, customers — each with own knowledge base
Audit and compliance Standard M365 audit logs Basic logging — limited compliance depth Full audit logging, content filtering, Entra ID RBAC, responsible AI controls
External system access Microsoft 365 only Limited — requires significant custom work for complex integrations Pre-built connectors for CRM, ERP, case management, and custom APIs
Model flexibility OpenAI’s latest models, including GPT-5 OpenAI and Anthropic’s latest models including GPT-5, Claude 4.0 Sonnet, and Claude 4.1 Opus. Any model in Azure AI Foundry — OpenAI, Anthropic Claude, Meta Llama, Mistral, DeepSeek, and more. Over 11,000 models in the catalogue.
When to use it Improving individual productivity across Teams, Word, Outlook, Excel Simple internal bots — FAQ agents, basic HR queries — where M365 data is sufficient Complex, multi-system, regulated, or customer-facing AI deployments

QBot and Copilot are complementary. Many of our clients run both — Copilot for individual productivity inside M365, and QBot for the organisation-wide AI use cases that need deeper integration, stronger governance, and multi-persona deployment.

Real-world use cases

What can an AI agent actually
do in your organisation?

These are the use cases we see working in production across Australian organisations right now — not experiments, not demos. Filter by function or sector to find the ones most relevant to you.

Ready to move from AI experiments to AI that works?

Start with a 20-minute live demo to see QBot in action — or book a Discovery Workshop and leave with a concrete AI deployment roadmap for your organisation. Both are low-commitment ways to understand what’s possible for your specific situation.

No obligation. No sales pitch. An honest conversation about what AI can do in your organisation.

How we get you to production

A clear path forward. No guesswork.

The most common reason AI initiatives stall is not the technology — it’s the absence of a clear, sequenced approach. We’ve structured our AI consulting services to take the uncertainty out of the first decision and move you from strategy to production in a way that’s measurable and low-risk.

Discovery

2 weeks

We map your AI use cases, assess your data readiness, and produce an Agentic AI deployment roadmap. Concrete, prioritised, and scoped — so you know exactly what you’re committing to before you commit.

Deploy QBot

Typically 3–6 weeks

We deploy the core QBot platform inside your Azure tenancy, connect it to your priority data sources, and configure your first AI agent. You have something working in production — not a demo, the real thing.

Expand and Integrate

Ongoing sprints

Additional AI personas, deeper system integrations, agentic workflows that take action rather than just answer questions. We work in prioritised sprints aligned to your roadmap — expanding capability as your confidence grows.

Managed AI Service

AI as a Service (AIaaS)

Ongoing monitoring, optimisation, model updates, and new capability development — delivered in fortnightly sprints by a dedicated team that knows your platform. Your AI needs will keep evolving; the managed service is built around that.

Sectors we work with

QBot is in production across
a wide range of Australian organisations.

Enterprise AI is not sector-specific — the underlying challenges of data governance, adoption, and production-grade reliability are consistent. We have deployed QBot in the following sectors, and we understand the specific compliance, data, and user requirements each one brings.

Why Antares

AI consulting services from a team
that builds the real thing.

There is no shortage of vendors willing to talk about AI strategy. The distinction that matters in practice is whether the platform has actually been built, deployed, and is running in production at organisations like yours.

Microsoft & AI Expertise

With over 20 years of Microsoft partnership, three Solution Partner Designations, and four Advanced Specialisations – the highest tier of Microsoft recognition – Antares goes deep on the Microsoft stack. QBot is built on Azure AI Foundry – the same technology investment Microsoft is making. You benefit from that alignment.

In production, not just a PoC

QBot is live at a number of Australia’s most recognisable organisations. These are not just proof of concepts, pilot projects, or case studies in progress. They are production deployments handling real queries from real users every day.

We understand enterprise complexity

Most AI tools are built for simplicity. Enterprise organisations are not simple. They have multiple data sources, complex permission structures, varying audiences, and real compliance obligations. We build AI that works within that reality, not despite it.

Structured engagement — not open-ended

We start every engagement with a fixed-fee Discovery Workshop. You get a clear use case map, a data readiness assessment, and a sequenced deployment roadmap — before you commit to a full build. That’s how we take the risk out of the first decision.

We stay engaged after go-live

AI platforms need ongoing attention — model updates, new integrations, evolving use cases, and performance tuning. Our managed AI service means we are still actively improving your platform well beyond the initial deployment. We don’t walk away at the finish line.

We’ll tell you if it’s not the right fit

If your situation calls for Copilot Studio rather than QBot, or if your data isn’t ready for a production AI deployment yet, we’ll tell you — and we’ll help you figure out what needs to happen first. That’s how the Discovery Workshop is structured: scoped before quoted, honest about what’s possible.

Frequently Asked Questions

Common questions about enterprise AI platforms and QBot.

An enterprise AI platform is a governed, secure environment for deploying AI assistants and agents across an organisation — connected to your own data and systems, not general internet content. General-purpose AI tools like ChatGPT are built for breadth and individual use. They have no knowledge of your organisation, your data, or your policies, and they do not enforce your access controls. An enterprise AI platform like QBot is grounded in your SharePoint, your CRM, your ERP, and your knowledge base. It respects your Entra ID permissions, keeps all data within your Azure tenancy, and provides full audit logging for compliance purposes.

Copilot and QBot solve different problems, and many of our clients use both. Microsoft Copilot is excellent at improving individual productivity within Microsoft 365 — helping staff draft content, summarise meetings, and manage tasks in Teams, Word, and Outlook. QBot is designed for the organisation-wide use cases that Copilot cannot address: connecting to systems outside M365, deploying multiple AI personas for different audiences (staff, students, customers), enforcing role-based access to different knowledge bases, and providing the compliance and audit depth that regulated environments require. If your requirements go beyond individual productivity, QBot fills that gap.

Copilot Studio is a great low-code tool for building straightforward internal agents within the Microsoft 365 ecosystem — it works well for simple FAQ bots, basic HR queries, and single-topic agents where M365 data is sufficient. QBot is the right choice when the use case is more complex: multiple AI personas serving different audiences, deep integration with systems outside M365, regulated data environments, or customer-facing deployments where consistency and audit logging are critical. QBot and Copilot Studio are not competitors. We’d be happy to help you understand where each one fits in your specific situation.

No. QBot is deployed entirely inside your Microsoft Azure tenancy. Your prompts, your outputs, your interaction logs, and your source documents never touch a shared platform or leave your environment. Your data sovereignty policy applies to QBot in exactly the same way it applies to everything else running in your Azure environment. This is not a feature we added after the fact — it is a fundamental design principle that applies to every deployment we build.

A first production AI agent can typically be deployed in a matter of weeks. The limiting factor is rarely the technology, it’s having clarity on use cases and having your data sources in a state where they can be connected. We can typically deploy the use cases from initial idea to UAT and then production in 3 to 6 weeks.

Antares provides AI consulting services across the full deployment lifecycle for enterprise organisations: AI strategy and use case discovery workshops, data readiness assessments, enterprise AI platform deployment (QBot), AI persona design and knowledge base configuration, systems integration across Microsoft and third-party platforms, AI governance and compliance framework design, and ongoing managed AI services. We are a Microsoft Specialist Systems Integrator with over 20 years of experience, holding three Microsoft Solution Partner Designations and four Advanced Specialisations — the highest tier of Microsoft recognition.

QBot is in production across education, not-for-profit and community services, insurance, and a number of other organisations across financial services, legal, public sector, and healthcare. The underlying platform and architecture are consistent across sectors, what varies is the data sources, the AI personas, and the compliance requirements. We have experience navigating all of these.

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