Reimagining the Enterprise with AI

by Jim Snabe, Chairman Siemens and former co-CEO, SAP

Introduction

Clayton Christensen’s celebrated book, The Innovator’s Dilemma, describes how large, established enterprises struggle in adopting disruptive technologies. The oft-proven premise is that as companies grow, scale, and optimize existing products they must face a dilemma to either continue down the same beaten path of incremental improvements delivering steady returns, inexorably leading to a declining market position, or reinvent by preemptively replacing their existing product(s) with disruptive technologies. Netflix is a good example of a company that successfully resolved their Innovator’s Dilemma by transitioning entirely to a streaming service, while Kodak is an example of one that did not.

Most companies today are facing a similar dilemma as they grapple with the adoption of AI. Those who ignore it risk falling behind their peers as they rely on increasingly outdated and backward-looking systems, leaving them reacting to market disruptions. Those that adopt enterprise AI and its new companion, generative AI, can enable anticipatory decision-making for every employee from the frontline to the boardroom, driving responsiveness, efficiency, and agility across the business. The pace and alacrity with which companies adopt AI will determine their long-term competitiveness and survival.

Decision-Making Today: A Rear-Gazing High-Speed Chase

Today, leaders in most companies use data and metrics to assess performance, identify gaps, make course-correction decisions, and update plans. These could be financial metrics such as profit per customer or supply chain metrics such as On-Time-In-Full. In most companies, these metrics are assembled from data provided by enterprise applications such as ERP, CRM, SCM, and HRM.

This data is usually current for the most recent planning period. The more progressive companies may have data that is more current or even near real-time. But in almost all companies, this is historical data about what has already happened, the figurative equivalent of driving forward with your eyes fixed on the rearview mirror.

Leaders can get away with making decisions based on historical data when the world is stable, business conditions are certain, and the road ahead is straight, flat, and deserted. But today’s tumultuous post-pandemic world riven with macroeconomic, geopolitical, and technology disruptions, is anything but stable and certain.

What leaders and decision makers need today is not only data about the past, but reliable predictions about the future that they can trust and reference. Leaders today need the predictive capabilities of AI that can help them anticipate and shape the future.

Next

The Advent of AI