Artificial Intelligence (AI) is revolutionizing sectors across the globe. For industrial executives, the promise of AI lies in enhancing efficiency, supporting decision-making, and facilitating innovative solutions. However, the challenge often lies in how to begin integrating AI into existing processes with minimal risk. Based on our experience deploying AI tools in consulting work, I outline key principles to implement AI, specifically large language models (LLM’s), against your capabilities balancing innovation with caution.
AI, as sophisticated as it can be, is not a substitute for human thinking but rather a supplement to it. Understanding the strengths and limitations of AI is crucial. While AI excels in language processing and structured information analysis, it doesn't replicate human-like thinking or innate understanding.
For instance, we recently observed a client who experimented with AI-driven “market strategy.” While the output provided plausible recommendations, analysis of the underlying analyses showed that the AI used a segmentation approach compatible with B2C markets and failed to account of key differences in an industrial B2B setting, (which are often not addressed in conventional marketing methods).
A helpful part of finding a role for AI lies conceptualizing the human roles that AI has shown to perform well.
A grassroots approach is ideal for integrating AI into your operations. This involves iterative exploration and building capabilities progressively.
This approach allows a granular assessment of work to identify tasks for AI and those where human thinking is still required, and an environment where AI performance can be analyzed by the people most knowledgeable in the standard of work. Rather than threatening replacement of individuals, the effort provides productivity gains immediately to the practicioners involved. The approach also avoids tasking AI with “grand analyses,” where output emerges as "plausible," but often hallucinated, and is difficult to quality check.
Example: Voice of Customer (VOC)
We often engage clients to do Voice of Customer work, generating insights about markets from interviews of market participants. This is an area that because of it’s unstructured language processing historically was done by experts trained in methodologies for analyzing customer data. We currently run VOC studies where AI supplements significant portions of the work.
- Past practice: VOC tasks were labor-intensive, involving manual transcription, data extraction, and analysis, given the unstructured nature of interview data.
- Today: AI can now record and transcribe interviews, draft tailored summaries, convert responses into structured data, propose ways to structure data, and highlight insightful behaviors.
- Work remaining for staff: Holding interviews - due to it’s social nature, and developing insights - given the need for contextual understanding and strategic thinking, both still require human activity.
Implementing AI is not just about technology but also about cultivating a culture that embraces change and innovation.
The VOC tasks listed above are comprehensive, yet were developed rapidly and incrementally with AI-proficient practitioners simply asking themselves if the AI could do this part of the work and then experimenting.
The integration of AI into industrial company capabilities offers substantial benefits, but it is essential to approach it thoughtfully. By understanding what AI can and cannot do, initiating a grassroots implementation strategy, and validating processes before full-scale automation, executives can leverage AI with low risk while maximizing its potential.
Kendall -
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