Contact Us

Items in red are required

How Should Mid-Sized Architecture Firms Start Using AI?

For a 20–50 person architecture firm, artificial intelligence (AI) tools can significantly improve productivity by helping teams summarise project information, draft documentation, and retrieve knowledge stored across collaboration systems. However, most AI tools used within architecture firms rely on the organisation’s existing data environment — including SharePoint, email, project documentation, and internal knowledge bases.

For firms using Microsoft 365, Microsoft Copilot is one of the most practical ways to introduce AI into everyday workflows. Because Copilot pulls information directly from systems such as SharePoint, Teams, Outlook, and OneDrive, the quality of AI results depends heavily on how well project data is structured.

Before enabling AI tools across the firm, mid-sized architecture practices should first ensure their SharePoint environment, legacy server archives, and collaboration processes are properly aligned. Preparing the data environment ensures AI delivers useful insights rather than amplifying existing organisational challenges.

Why AI Readiness Matters for Architecture Firms

Architecture firms operate within complex digital environments that combine BIM design platforms, project collaboration tools, and long-term archives of drawings and documentation. Many practices maintain project information for years due to contractual requirements, client references, or regulatory obligations.

Because AI tools such as Microsoft Copilot retrieve information directly from systems like SharePoint and Microsoft 365, they will surface whatever information exists within the environment. This can include outdated project documentation, duplicate files, or inconsistently structured folders.

Without proper governance, AI responses may be less accurate or may expose sensitive project information. Preparing the underlying data environment before deploying AI tools helps ensure the technology enhances productivity while maintaining strong information governance.

Step 1 – Assess Your SharePoint Structure

For many mid-sized architecture firms, SharePoint has become the central platform for storing project documentation, managing collaboration, and maintaining internal knowledge resources. However, these environments often evolve organically as projects and teams grow.

An AI readiness review should begin with an assessment of how project libraries are structured. This includes examining folder hierarchies, naming conventions, version control practices, and how permissions are inherited across project teams.

If project documentation is inconsistent or poorly organised, Copilot may return incomplete or confusing responses. Establishing a clear and logical SharePoint structure helps ensure Copilot  can locate and summarise the most relevant information.

Step 2 – Separate Active Projects from Historical Archives

Most mid-sized architecture firms maintain extensive archives of completed projects, sometimes spanning a decade or more. These archives may include drawings, design documentation, tender materials, and client communications.

While this information can be valuable for reference, it should not always be treated the same as active project data. Copilot searches across available data sources, which means archived information may appear alongside current project documentation.

A structured archive strategy helps ensure Copilot prioritises active project information while preserving historical records appropriately. This often involves segmenting archived projects, defining retention policies, and aligning long-term storage and backup strategies.

Step 3 – Review Permissions and Data Governance

Within Microsoft 365, Copilot respects existing permission structures. This means that if users have access to specific files or folders, Copilot can surface that information when responding to prompts.

For architecture firms, permission governance is particularly important. Project documentation may contain commercially sensitive design work, client contracts, financial information, or intellectual property associated with design concepts.

Before deploying Copilot broadly, firms should review how permissions are applied across SharePoint libraries and Teams workspaces. Ensuring appropriate access controls protects confidentiality while allowing teams to collaborate effectively.

Step 4 – Identify High-Impact AI Use Cases

Rather than introducing AI across every workflow immediately, architecture firms often achieve better outcomes by starting with a few targeted productivity improvements

Common early use cases include:

  • Summarising project meeting notes
  • Drafting client communications or proposals
  • Extracting key actions from long email conversations
  • Reviewing internal policy documents
  • Generating project summaries from SharePoint documentation


By starting with focused use cases, teams can gradually incorporate AI into their workflows without disrupting established design and BIM processes.

Step 5 – Confirm Infrastructure and Performance Stability

Although AI tools such as Copilot operate within the Microsoft 365 cloud environment, architecture firms still rely heavily on reliable workstations, stable networks, and consistent file synchronisation.

Design workflows involving platforms such as Revit, Rhino, and Bluebeam require strong infrastructure performance to maintain productivity. If file synchronisation is unreliable or network performance is inconsistent, introducing additional AI tools may create complexity rather than efficiency.

Ensuring infrastructure stability and properly aligned storage systems helps ensure AI tools integrate smoothly into existing workflows.

Step 6 – Establish Ongoing Governance and Review Processes

Introducing AI into an architecture firm is not simply a technical deployment. It requires ongoing governance to ensure the technology continues to deliver useful and accurate insights.

Mid-sized architecture firms benefit from periodically reviewing their data environment, including SharePoint structure, archive lifecycle management, and permission governance. These reviews help ensure the information AI systems rely on remains accurate, secure, and aligned with operational needs.

With structured governance and well-aligned data systems, AI tools such as Microsoft Copilot can become valuable assistants that improve knowledge retrieval, reduce administrative workload, and support collaboration across project teams.