2026 has made one thing unmistakably clear: AI is no longer knocking on the door - it’s already running the building. Across industries, SAP leaders are discovering that true readiness is not about adopting new tools but about transforming the foundations that power them. AI, GenAI, and autonomous agents deliver real impact only when the core systems, data, and processes behind them are stable, clean, and intelligently designed.
This checklist was created as a practical guide for CIOs, IT managers, and SAP transformation leaders who want clarity - not hype. It helps you evaluate how well your SAP landscape is positioned for AI in 2026 and highlights what “ready” actually means in practice. Use it as a lens to examine your current state, uncover hidden gaps, and align your organization around a realistic, execution focused AI roadmap.
1. SAP Core & Transformation Readiness
☐ We have a clear ECC → S/4HANA roadmap aligned to business transformation, not just technical conversion
☐ Custom code has been rationalized (not blindly migrated)
☐ Business process variants across regions/entities have been reduced and standardized
☐ We treat S/4HANA as a digital and AI ready core, not a like for like replacement
☐ Post go live optimization is part of our roadmap (not “phase 2 someday”)
If 3 or fewer boxes are checked: AI value will be limited regardless of tools adopted.
2. Process Simplification & Automation Readiness
☐ Core processes (Finance, Supply Chain, HR, Procurement) are documented and measurable
☐ Exception heavy processes have been simplified before automation
☐ Automation strategy goes beyond SAP workflows
☐ We support event driven, cross system automation
☐ There is a clear ownership model for automation decisions
2026 reality check: AI automates decisions - not chaos.
3. Data Integrity & Master Data Readiness
☐ Master data (Customer, Vendor, Material, Employee) is cleansed and harmonized
☐ Duplicate and inconsistent records are actively monitored
☐ Data ownership and stewardship are clearly defined
☐ Data quality KPIs exist and are reviewed regularly
☐ Historical data is trusted for analytics and AI use cases
Key insight: AI does not fix bad data - it magnifies it.
4. Enterprise Data Layer Readiness
☐ We have a modern enterprise data layer (not just transactional reporting)
☐ SAP and non SAP data are unified for analytics and AI
☐ Real time and batch data pipelines are in place
☐ Platforms like SAP Business Data Cloud (BDC) are evaluated or implemented
☐ Data is easily consumable by AI/ML models and agents
If data lives only in reports: AI will never reach execution.
5. AI & GenAI Enablement Readiness
☐ AI initiatives are driven by business use cases, not tools
☐ Teams understand where GenAI fits into SAP processes
☐ Governance exists for AI security, compliance, and ethics
☐ We have run controlled pilots using enterprise data
☐ Success is measured in outcomes, not experiments
Important shift: Prompting ≠ AI enablement.
6. SAP AI & Joule Readiness
☐ We understand SAP’s AI roadmap and Joule capabilities
☐ Relevant Joule use cases are identified by function
☐ Pilots are running or planned within S/4HANA
☐ We know where standard Joule features suffice and where extensions are needed
☐ Partners are engaged to personalize and scale SAP AI
2026 advantage: Early adopters will compound value faster.
7. Autonomous Enterprise Readiness
☐ Processes are stable enough for decision automation
☐ Systems can trigger actions without human intervention
☐ Exception handling logic is clearly defined
☐ AI agents can operate across SAP and non SAP systems
☐ Governance exists for human in the loop oversight
Reality check: Autonomy is earned - through discipline and design.
8. Organization, Skills & Operating Model Readiness
☐ Business and IT jointly own AI outcomes
☐ SAP, data, and AI skills are actively upskilled
☐ Change management is built into AI initiatives
☐ Centers of Excellence (or federated models) are defined
☐ Partners are treated as strategic enablers - not staff augmentation
By 2026: AI ready organizations will outpace AI enabled ones.
How to Interpret Your Score
32 - 40 checked - AI Ready Leader
22 - 31 checked - AI Capable, Needs Acceleration
Below 22 - High Risk of Missed AI Value in 2026
AI readiness is far more than a set of checkboxes - it’s an organizational commitment to build systems, data, and operating models that can support autonomy at scale. Companies that invest in these foundations now won’t simply adopt AI; they’ll operationalize it, embedding intelligence into the core of how work gets done. As 2026 accelerates the shift toward AI driven enterprises, the difference between being AI curious and AI ready will define which organizations lead and which fall behind.
At Mygo, we partner with SAP customers to turn readiness into measurable results. Whether you’re modernizing ECC, optimizing S/4HANA, activating SAP Joule, or building the data layers AI needs to thrive, our approach ensures that every step works toward a unified, actionable roadmap. If you’re ready to elevate your SAP landscape into an AI powered engine for growth, now is the moment to start the conversation.