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Around 95% of enterprise AI projects fail to deliver measurable ROI. But the issue is rarely the technology itself.
In most cases, the real problem lies in two areas:
In this article, we break down why AI initiatives fail, what separates the top-performing 5%, and how companies can build a more ROI-driven approach to AI adoption.
We also share key insights from the webinar featuring Beate Thomsen and Deepak Hooda, where they explored real-world examples, common pitfalls, and practical steps to improve AI outcomes.
Four patterns explain the majority of failed AI initiatives:
No clear use case. Tools were purchased before the problem was defined. Only 15% of US employees say their company has communicated a clear AI strategy (Source: Gallup).
The wrong use cases. Most AI budgets go to sales and marketing, which delivers lower ROI. Back-office automation, error handling, reconciliation and data entry generates faster, more measurable returns.
Bad data. AI model performance drops significantly with even 20% data pollution (Source: IBM). Disconnected CRM and ERP systems don't slow AI down; they let it scale your errors faster.
Building instead of buying. External partnerships achieve 66% deployment success versus 33% for internal builds (Source: MIT).
The companies that succeed take a very different approach:
“Pick the data, pick one problem and measure right away”
Beate Thomsen
Watch the recording to discover more insights and tips from the hosts.
AI reads data from your CRM, ERP, and other systems. If those systems are out of sync, AI outputs are unreliable, no matter how advanced the model.
Three common examples:
The solution is not more AI, but better data infrastructure: real-time synchronization, consistent field mapping, and robust error handling.
The AI ROI Playbook was created to help CFOs and business leaders understand how to build the right foundation for AI success through better data integration.
As AI continues to drive demand in the data integration market, many companies are investing heavily in new technologies, yet 95% of enterprise AI projects still fail to show measurable return on investment.
One of the most common reasons is disconnected and unreliable data across siloed CRM and ERP systems.
The playbook provides a structured and practical framework for integrating these systems in a way that supports measurable commercial outcomes, rather than simply improving technical connectivity.
A practical framework to improve AI outcomes:
1. Audit AI spending
What tools are you using, what are they meant to do, and can you measure their impact?
2. Fix the data foundation
Ensure CRM and ERP systems are properly aligned and AI-ready. Use the AI-Ready Data Checklist to evaluate key gaps.
3. Start with one problem
Focus on a specific use case, ideally in back-office automation. Define success metrics before implementation and work with experts where needed.
In this 30-minute session, Beate Thomsen and Deepak Hooda share practical insights on:
Here are all the resources from the AI & ROI webinar:
If you could share your feedback on the webinar and the resources through this survey, it would greatly help us improve and deliver even more valuable sessions in the future.
What is considered “bad data” between CRM and ERP systems?
Bad data includes mismatched customer records, outdated billing or shipping addresses, duplicate records, inconsistent product pricing, and weak data governance that allows errors to propagate unchecked.
What ROI can we expect from using RAPIDI?
While results vary, businesses typically see ROI through reduced manual work, faster reporting, improved decision-making, and lower dependency on external consultants.
How does AI amplify data problems?
AI assumes your data is clean and connected. If CRM and ERP systems are out of sync, AI builds models on incomplete information, speeding up decision-making, but also spreading errors faster than manual processes would.
What are the real business costs of bad data in an AI context?
Disconnected data can result in excess inventory costs, higher delivery costs, customer complaints, inaccurate revenue forecasting, and ultimately loss of trust from leadership teams.
Can AI fix data integration issues on its own?
No. AI can help with error detection, field mapping suggestions, and anomaly detection. However, it can not replace human expertise in business logic, complex transformations, or company-specific system setups.
What is CRM and ERP integration?
CRM and ERP integration connects customer-facing systems with operational and financial systems, allowing data to flow automatically between departments and improving business visibility.
What is the AI ROI Playbook?
The AI ROI Playbook is a practical framework created by Rapidi and Deepak Hooda to help business leaders improve AI outcomes by building strong data foundations and integrating CRM and ERP systems effectively.
Why do most AI projects fail to deliver ROI?
Most AI projects fail due to unclear use cases, poor data quality, disconnected systems, and lack of measurable success criteria before implementation.
Beate Thomsen, Co-founder & Product Design
Salesforce - Microsoft Dynamics 365 Integration Salesforce - Microsoft Dynamics 365 Business Central Integration Salesforce - Microsoft Dynamics 365 Finance Integration Microsoft Dynamics 365 Business Central - Dynamics 365 Sales Integration Salesforce - Salesforce Integration & Migration HubSpot - Microsoft Dynamics 365 Integration
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