Anand Gupta is Senior Partner at Wipro, helping enterprises transform through AI-powered, ERP cloud-enabled Finance, Sales & Supply Chain.getty​Enterprise resource planning (ERP) transformations have long been among the most expensive and disruptive initiatives organizations undertake. But in an era of continuous cloud releases and rising expectations for speed, traditional implementation models are struggling to keep pace.​Such programs often stall not because of strategy or architecture but because of the operational workload surrounding them: testing, documentation, training and issue resolution. Leaders expect rapid deployment, clearer visibility and measurable value, all with minimal business interruption.​Yet ERP programs often move more slowly than expected—not due to a lack of expertise but because a large portion of the project timeline is consumed by manual, repetitive activities like testing, training, documentation and resolution.​These tasks continue to expand as cloud updates accelerate and multi-tenant systems evolve. The expectation for IT teams is no longer just to “keep up” but to adopt new capabilities quickly and confidently.​AI is delivering a clear impact to address this exact challenge; not in the futuristic, completely autonomous sense, but in the practical, day-to-day workflows that determine whether an ERP program stays on track. Boston Consulting Group estimates that AI can reduce the effort for an ERP implementation by 20% to 40%. This article explores how.​Changes In The Implementation LandscapeIT teams are facing a new reality when it comes to ERP programs. With platform releases and new audit requirements arriving more frequently, the operational load on project teams increases. At the same time, business leaders—especially those approving the investment—expect faster implementation cycles and more intuitive, user-friendly systems. This growing pressure is reshaping expectations for what an ERP transformation team must deliver.​For internal IT teams, this shift significantly expands their roles. CIOs, IT directors and project managers are expected to govern technical delivery and serve as educators and change enablers. Still, much of their time is consumed by manual, repetitive tasks ranging from building cases and writing test scripts to creating blueprints, MoSCoW lists and extensive planning documents. These administrative demands limit IT’s ability to provide the strategic guidance the organization depends on during an ERP program.​Externally, consultants are experiencing similar strain as they take on more documentation, status reporting and administrative work to support fast-moving programs. Their greatest value, however, comes from helping organizations adopt solutions responsibly and build confidence throughout the implementation. AI can now automate and streamline many of the manual activities that slow both IT teams and consultants, freeing them to dedicate more time to real business improvements and ultimately accelerating project outcomes.​How AI Can Fix Testing-Training BottlenecksFor most ERP teams, testing and training often consume the largest portion of overall ERP program time and costs. Traditionally, each required its own set of benchmarks and timelines throughout the process, operating alongside one another rather than in collaboration.​This creates a lot of manual work to update test cases, training content and end-user instructions along the way. And much of this effort is duplicated. What is documented for testing often has to be recreated for training. While the information may be similar, training materials must be rewritten in a clear, end-user-friendly format, and testing scripts aren’t designed for that.​Organizations can streamline this approach with AI. Rather than manually recapturing and re-documenting processes multiple times, AI can enable a unified capture-to-enablement pipeline, seamlessly generating:• Regression testing• Expected outcomes (making sure the new software and configurations are working as expected)• User training documentation (and continuous updates)• Comprehensive multilingual functionality to reduce the understanding gap​Extending beyond the initial implementation and deployment of the ERP, AI-driven monitoring can also detect configuration risks and regression issues before they impact live environments. With this approach, IT teams can move away from testing and monitoring to focus instead on oversight and validation. This allows for faster deployment of new solutions and updates into the production systems without the worry of business disruption.​AI As A Catalyst For ERP SuccessAI is reshaping the way ERP programs are delivered by removing the manual, repetitive tasks that have historically slowed progress. As cloud updates accelerate and systems evolve, IT teams and consultants gain the capacity to focus on what matters most: improving processes and guiding the business toward confident adoption. ​Specifically, this is being accomplished in two ways:1. Execution EnablementBy generating regression scripts, routing approvals contextually and guiding users through multistep processes, AI can streamline execution. Every action should remain auditable and human-approved, which helps preserve compliance and reduces manual work.2. User Experience, Training And User AdoptionAI-generated training and natural language system guidance can reduce the learning curve, especially during cloud releases. This further enables the IT team to serve as educators and guides, sharing their insights on top of the automatically generated trainings while being available to consult with end-users as needed.Key Challenges To Consider When Applying AI To ERP Programs​AI can help accelerate ERP implementation, but organizations should approach adoption with clear expectations and strong governance. People typically assume AI can replace process ownership or implementation oversight, but ERP programs still require experienced leaders to validate decisions and manage exceptions to guide organizational change.​Another challenge is process inconsistency. AI-generated testing, documentation and training outputs depend heavily on the quality and standardization of underlying ERP processes and data. Organizations with fragmented workflows, inconsistent configurations or acquisition-driven system variations may struggle to achieve reliable results without first addressing process alignment.​Further, speed without governance can introduce errors into testing, approvals or training at scale. For this reason, organizations should implement AI incrementally while maintaining human-in-the-loop validation and treating AI as part of a broader ERP transformation strategy.​When applied responsibly, AI can help ERP teams shift their focus from administrative execution to transformation leadership without compromising compliance or operational control.​Don’t Let Your ERP Fall BehindOrganizations that embrace AI as an integrated part of their ERP strategy instead of a one-time tool position themselves for continuous improvement and long-term agility. With the right approach and human-in-the-loop oversight, ERP teams can deliver transformations that deliver value for both users and stakeholders alike.​​Forbes Technology Council is an invitation-only community for world-class CIOs, CTOs and technology executives. Do I qualify?