In the realm of artificial intelligence (AI), Paul Moxon, VP of Data Architecture & Chief Evangelist at Denodo, emphasizes the crucial role of data in achieving AI success. He warns that neglecting the foundation of data could result in wasted AI investments.
The AI industry is on a trajectory of exponential growth, with estimates projecting it to reach $407 billion by 2027. The sector is expected to see a yearly growth rate of over 37% up to 2030. By 2023, AI software revenue had already reached $70 billion, signaling a booming market. McKinsey’s research indicates a rising demand for software and data engineers to support AI initiatives.
While AI’s potential is undeniable, many discussions around AI may miss the mark if they fail to prioritize data. In essence, conversations about the next generation of AI (Gen AI) are fundamentally conversations about data. Therefore, any approach to AI implementation, maximizing its capabilities, and assessing its impact must start with a solid data foundation.
As Warren Buffet famously stated, “price is what you pay; value is what you get.” Too often, AI initiatives focus on financial aspects rather than the essential groundwork necessary for Gen AI to deliver tangible value.
The true value of Gen AI lies in its ability to enhance data quality, accessibility, and comprehension for non-technical users. However, harnessing its potential requires a robust data architecture. Gen AI’s primary obstacle is data and the challenge of interpreting and utilizing it effectively.
Ensuring that AI chatbots deliver secure, accurate, and contextually relevant information within the broader business context is vital. Organizations must prepare their data to be AI-ready to fully leverage the benefits of Gen AI. McKinsey’s Global Annual Survey 2024 revealed that a significant number of organizations are already using Gen AI, with many experiencing revenue growth and cost reductions. However, successful AI investments demand a well-defined strategy to realize desired outcomes.
Implementing Gen AI effectively involves leveraging Large Language Models (LLMs) to provide employees with accessible insights into corporate data. Retrieval Augmented Generation (RAG) enhances LLMs by incorporating vetted contextual data, improving the accuracy and relevance of generated outputs.
To enable Gen AI’s access to timely and accurate information, organizations should unify disparate data sources through a data fabric. This abstraction layer connects data sources via metadata, enabling Gen AI to leverage relevant information shared through LLMs.
By bridging data through a data fabric, supported by data virtualization and RAG, organizations can enhance LLMs’ capabilities, facilitating efficient knowledge access and removing barriers for non-specialist users. Strategic data management is crucial for leveraging the potential of Generative AI, requiring long-term planning, data optimization, and algorithm refinement.
Investing in not only the Gen AI tool but also aligning the broader business, its data, and operations is essential for Gen AI success. Similar to chess, AI implementation demands strategic foresight, leading to significant innovation, efficiency, and competitive advantage over time.