AI Skills Readiness Checklist for Accounting Firms

Purpose: To help firms assess their current state of AI readiness, not just in terms of skills, but mindset, leadership, process, and change management.

ai skills readiness

đź’ˇ Use this checklist to:

  • Identify where you are on your AI journey (Awareness → Pilot → Scale → Maturity).

  • Create an actionable roadmap for your next 90 days.

  • Engage your team, make AI adoption something everyone helps shape, not something “done to” them.

AI Skills Readiness Checklist

For Modern Accounting Firms – Powered by Bots For That

Category

What “Good” Looks Like

Questions to Ask

Action: Continue/Start/Stop

1. Vision & Leadership

Clear vision for how AI supports firm goals (efficiency, client value, profitability). Leadership understands why AI matters and communicates it.

• Do we have a defined AI strategy?

• Are partners aligned on the “why”?

âś… Continue communicating progress

🚀 Start defining a shared vision statement

⛔ Stop treating AI as an “IT project”

2. Culture & Change Management

Open, curious culture where staff experiment safely. Change isn’t feared, it’s managed.

• How does our team react to new tools?

• Do we celebrate early adopters?

• Are we honest about resistance?

âś… Continue promoting small wins

🚀 Start a change champions group

â›” Stop forcing change without communication

3. Skills & Training

Staff trained in both AI tools andinterpretation (knowing what AI is telling them). Learning embedded in CPD.

• Do our people have time for  AI learning?

• Is AI literacy part of onboarding?

• Do we know what “AI skills” actually mean for each role?

âś… Continue targeted upskilling

🚀 Start a quarterly “AI in Practice” learning hour

⛔ Stop assuming younger staff “just get it”

4. Process &   Automation  Readiness

Key workflows documented and standardised, ready for automation. Manual chaos minimised.

• Are our core processes mapped and consistent?

• Do we have automation priorities ranked by ROI/time saved?

âś… Continue measuring process health

🚀 Start documenting 3 critical workflows for automation

â›” Stop automating broken or inconsistent processes

5. Data Quality & Governance

Data sources are accurate, accessible, and governed responsibly.

• Is our client data centralised and clean?

• Do we understand data privacy and AI compliance (GDPR, confidentiality)?

âś… Continue auditing data quality

🚀 Start defining a “data owner” per system

â›” Stop feeding dirty data into bots or agents

6. Tools & Technology Stack

Modern, API-ready systems; experimentation encouraged.

• Are our systems  cloud- based and connected?

• Do we know where AI can safely plug in?

âś… Continue exploring integrations

🚀 Start using AI tools for one repetitive task

â›” Stop relying on outdated on-prem software

7. Client Communication & Value

Clients informed about how AI benefits them — faster service, fewer errors, more insight.

• Have we shared how AI enhances their experience?

• Are we transparent about data use?

âś… Continue using AI to enhance client delivery

🚀 Start including “AI value” in proposals

â›” Stop hiding AI behind jargon

8. Continuous Improvement & Measurement

Success tracked via KPIs: time saved, quality improved, client satisfaction, team satisfaction.

• Do we measure and share outcomes?

• Do we review what’s working quarterly?

âś… Continue using data to improve

🚀 Start benchmarking Time to Value (TTV) per automation

â›” Stop assuming once implemented = done