Following numerous discussions with IT leaders in organizations across EMEA and North America, we've drafted an imaginary CTO report to a board. The report reflects the optimism and concerns expressed to us by this group about Generative AI and the current state of organizations' data models. It is not exhaustive, but it reflects the desire of CTOs and IT leaders to rightly manage carefully the expectations of their stakeholders. As our CEO said at the recent Legal Geek London event "... go hug your CTO, they have a tough task on their hands ..." We've used Kim as an example of a no-regrets decision in this environment (of course, other tools may well fit this bill, but Kim is best!).
With the business environment shifting so quickly, I recognize why many want us to adopt Gen AI capabilities to enhance our productivity and margins. I share your enthusiasm for leveraging the potential of Gen AI technologies to enhance competitiveness and future-proof our operations.
As Chief Technology Officer, one of my responsibilities is to ensure that we are set up for success in securely using all technologies, including Gen AI. We need to address some critical challenges as we embark on this transformational journey. We need to be candid.
Our existing technology stack is stable and complex. Our business processes are mixed, and as a result, data models are incomplete, and data quality is inconsistent. Our integrations are patchy because we have too few standard operating procedures, and we are struggling to shut down ‘shadow IT’ solutions. These issues are compounded by the significant amount of data rekeying in our operations, leading to errors and inefficiencies. We have budget constraints that we need to navigate carefully.
To ensure the successful adoption of Gen AI, we need a parallel strategy that considers both our current state while introducing and testing Gen AI tools in selected use cases. This approach will help us demonstrate the value of Gen AI and avoid making expensive mistakes backing the wrong tech while addressing our fundamental structural challenges in data management and data structures that do not currently support Gen AI capabilities.
We all know that all roads lead to the data. We all also know that while we use this phrase internally, operationally, we are loose in enforcing data accuracy. This must change.
Proposed Vision for Our Gen AI Transformation
Our vision is to gradually integrate Gen AI tools while addressing the underlying structural challenges of poor data management and inadequate data structures. We aim to become more data-centric, agile, and competitive in the Gen AI era. To achieve this vision, we will adopt a multi-faceted strategy, as outlined below.
The above approach addresses both the urgency to adopt Gen AI and our structural challenges. By focusing on data improvement, making no-regrets decisions today, and gradually introducing Gen AI in selected use cases, we can navigate the Gen AI landscape effectively while minimizing risks. Our commitment to staying technology-agnostic ensures that we remain agile and adaptable in this rapidly changing environment.
A good example of this approach is the recent purchase and deployment of Kim Document. We see Kim as a ‘no-regret’ decision in the context of Generative AI. Tactically, Kim’s Applications solve real-world data capture, data management and document automation problems today. Strategically, because Kim is deterministic and provides certainty (i.e., it does not hallucinate), and because of its powerful API integration layer, Kim is a key part of any organization's future AI tech stack.