Artificial Intelligence (AI), particularly Generative AI (GenAI), presents significant opportunities for medium-sized and larger enterprises. However, AI projects are notoriously difficult to implement successfully. Studies show that a substantial proportion of AI initiatives fail to achieve their objectives. For instance, according to McKinsey, a staggering 70% of digital and analytics transformations fail to meet their goals, largely due to lack of clear strategy, insufficient resources, and poor change management .
The challenge of successful AI implementation is further complicated by the broader context of IT projects. Historically, IT projects have a reputation for being expensive and often failing to deliver on their promises. This skepticism is well-founded: A survey by KPMG found the majority of US businesses say they have not seen an increase in performance or profitability from digital transformation investments in the last two years. This backdrop makes the case for a structured and balanced approach to AI adoption even more compelling.
A top down approach provides strategic alignment, central control, and ensures compliance and security. This method benefits from senior management backing, which helps in aligning AI projects with broader organisational goals and ensures necessary resources are allocated efficiently. However, it can also introduce bureaucracy, slow decision-making, and potential resistance from departments feeling dictated to by upper management.
Conversely, a bottom up approach fosters grassroots innovation and local engagement. This method empowers employees at all levels to identify and solve problems using AI, driving higher engagement and adoption rates. However, without central oversight, it can lead to fragmented efforts and inconsistency in AI implementation across the organisation.
By combining both approaches, organisations can leverage the strategic benefits of top down control while fostering the innovation and engagement driven by bottom up initiatives. This hybrid approach ensures a cohesive strategy aligned with organisational goals, while also harnessing the collective creativity and insights from employees across all levels.
For example, Holiday Extras successfully implemented ChatGPT across their organisation using this type of approach. Vendor engagement came from a central team, who ensured alignment to company strategy and responsible AI goals, tools were then rolled out to local teams. David Norris, Chief Growth Officer commented: "Early ChatGPT users in the organization were so proud of the work they were doing, they couldn’t help but tell colleagues. Employee word-of-mouth on the quality of work became an instant driver of ChatGPT adoption."
Senior Management Backing: For AI initiatives to succeed, they must have the support and endorsement of senior management. Leadership plays a crucial role in aligning AI projects with the broader strategic goals of the organisation and ensuring the necessary resources are allocated.
Steering Group: A dedicated steering group is essential for reviewing AI use cases, maintaining a central use case register, and setting the strategy for AI tools and products. This group ensures responsible AI adoption, focusing on ethical considerations, regulatory compliance, and data security.
Security and Compliance: Central control helps ensure that AI initiatives adhere to regulatory requirements and maintain high standards of data security. This is particularly important in industries with stringent compliance needs.
Training and Support: Providing comprehensive training and support to employees is vital. Centralised training programs help upskill the workforce, fostering a culture of continuous learning and enabling employees to effectively utilise AI tools.
User Groups: Local user groups are key to identifying and implementing AI solutions tailored to specific departmental needs. By empowering employees at all levels to suggest and develop AI use cases, organisations can drive innovation and ensure AI tools address practical, day-to-day challenges.
Training and Tools: Equipping local teams with the necessary training and tools to experiment with AI solutions fosters a sense of ownership and encourages widespread adoption. This grassroots approach ensures that AI initiatives are user-driven and relevant to specific business areas.
Feedback Loop: Establishing a robust feedback mechanism allows successful use cases and insights from local groups to be shared centrally. This facilitates the refinement of strategies and the replication of successful projects across the organisation. Moreover, once the first few use cases are implemented and knowledge shared, the flywheel effect sees users finding and solving an ever increasing number of use cases.
The “top down, bottom up” approach is particularly effective for leveraging both the big head and the long tail of AI, a key characteristic of successful AI adoption, which we describe here in this blog.
Large-scale AI projects, such as automating key production processes or integrating AI into strategic decision-making, are highly visible and impactful. These initiatives require substantial investment but can significantly enhance productivity and provide a competitive edge. For example, Moderna is successfully piloting a solution called "Dose ID", which can review and analyse clinical data and is able to integrate and visualise large datasets using OpenAI's ChatGPT.
Incremental improvements driven by numerous small AI projects collectively deliver significant value. This approach leverages GenAI for tasks like automating email sorting or expense tracking. While each use case might seem minor, the cumulative effect across the organisation can be substantial, leading to significant efficiency gains and cost savings. Research by Microsoft has found that 70% of Copilot users said it made them more productive.
A successful AI strategy requires integrating both major projects and incremental improvements. Big head projects showcase AI’s transformative potential, while long tail initiatives ensure continuous innovation and adaptability via numerous smaller use cases. The top down, bottom up approach ensures that all types of use cases are identified and implemented through engagement with the business via user groups, with the steering group ensuring that the larger projects are given the right level of funding and support.
Adopting a “top down, bottom up” approach helps enterprises leverage the full spectrum of AI benefits. Centralised control ensures strategic alignment, security, and compliance, while local engagement fosters innovation and user-driven solutions. This balanced strategy is particularly effective for uncovering and delivering value from long-tail use cases, driving significant cumulative impact across the organisation.
By combining strategic oversight with grassroots innovation, enterprises can navigate the complex landscape of AI adoption and achieve comprehensive business transformation. This approach not only maximises the potential of AI but also positions organisations for sustained success in an increasingly competitive market.
For those looking to explore how this strategy can be tailored to their specific needs, consider reaching out to our team at Pivotal Edge AI. We offer a complimentary 30-minute consultation to help you successfully implement AI into your organisation.