As businesses around the world ramp up their artificial intelligence (AI) adoption, a strategic approach is proving essential for success. According to the BCG AI Radar 2025, one in three companies plans to invest more than $25 million in AI technologies this year—highlighting the growing urgency for IT leaders to implement AI with precision and purpose.
This urgency is echoed in SAP Concur’s CFO Insights 2025 survey, where 58% of finance leaders, especially those managing travel and expense (T&E) functions, confirmed plans to invest in AI. Yet, for these investments to translate into meaningful outcomes, a disciplined approach to deployment is key. Here are five proven steps IT teams can take to ensure effective AI implementation.
1. Set Clear Objectives from the Start
Jumping into AI without clear goals often results in underwhelming returns. Instead, IT leaders must collaborate with departments across the business to define specific use cases and align them with strategic priorities. Whether targeting cost savings, process automation, or compliance improvements, AI initiatives should be anchored in measurable KPIs—like time reduction, accuracy gains, or risk mitigation.
Selecting the right tools also involves ensuring regulatory compliance, seamless integration, and data security.
2. Adopt a Phased Implementation Approach
AI rollouts are rarely “plug-and-play.” Starting small—with a targeted pilot in a high-impact area such as auditing or reporting—can help teams assess value, iterate quickly, and resolve technical hurdles before wider adoption.
A phased rollout also gives employees time to adapt, minimizing disruption while promoting confidence in the system’s capabilities.
3. Centralise and Optimise Data Resources
AI’s performance depends on accessible, high-quality data. Many organisations struggle with siloed information, which limits AI’s learning potential and weakens output accuracy.
To overcome this, IT leaders must invest in data integration and management strategies. Whether using data lakes, warehouses, or virtualisation tools, a unified data environment enables consistent analytics and reliable automation. Governance, security, and access protocols must also be clearly defined.
4. Support and Upskill Employees
Despite its promise, AI still triggers concern among employees. Research by Deloitte indicates that 28% of workers fear job displacement due to automation.
To counter this, leadership must foster a culture of transparency and empowerment. Position AI as a tool for enhancement, not replacement, and provide ample opportunities for upskilling. Training programs and AI “champions” within teams can bridge gaps and accelerate adoption.
5. Lead Through Cross-Functional Collaboration
AI is not solely the domain of IT. According to SAP Concur, 54% of IT leaders are eager to work more closely with finance, operations, and other departments to drive transformation.
Effective AI strategy requires cross-functional ownership, ensuring that new tools support wider business goals and ease pressures across teams. For instance, AI-powered T&E systems can reduce manual processing, freeing IT to focus on more strategic initiatives.
Conclusion
AI has moved from the periphery to the core of digital transformation strategies. To unlock its full potential, IT teams must focus on goal alignment, phased execution, strong data infrastructure, workforce enablement, and collaborative governance. With this approach, businesses can navigate complexity, enhance decision-making, and realise long-term value from AI investments in 2025 and beyond.