Generative AI has caught the imagination of the world. The adoption of the technology has been unprecedented. From the looks of it, while the technology is still in its hype cycle, it shows promise. It is the next step in the evolution from Data Analytics to Machine Learning to AI to Gen AI for now. The ecosystem has been already in development for years now. There are a plethora of Gen AI tools already flooding the market. All major enterprises have been investing in the technology either for their use or to create Gen AI products and services.
The explosion of Gen AI is posing a “where do I start” dilemma”. With a buzz around Gen AI, the real understanding of how to build a Gen AI strategy and execute it is fuzzy. It took me a while to figure out where to start. Reading reports, talking, and attending seminars has not answered my questions. So, the next best alternative, talk to the experts in AI technology and understand what it can do to your own business. The logical steps that one can put in place are as follows:
Building Gen AI for your business: Once comfortable with using the technology the next step would be to assess building one for your business. The following steps are recommended to get going:
Brainstorm – Brainstorm with your team on some possible Use cases that could give an immediate edge in your business. Select one that can be done quickly.
Build a Proof of Concept – Data scientists create trained, tested, and iterated models to consistently improve results. This is where it becomes daunting for an organization with limited Data science capabilities. In today’s world, one organization can’t do everything. A good Partner ecosystem is essential. A good partner Data/ AI company could be a great partner. It could be a mutual win for both with you providing the data and the Partner building the model and executing it. In all likelihood, your Partner may also be looking for references. By working together, you may help each other, and commercials and risks may not be huge to start with.
Build a Minimum Viable Product – The next step would be to build a basic product without extensive features or bells and whistles. That would keep the efforts and investments low. Any enhanced features can always be added later in subsequent phases.
Finally put the model in Production and reap the benefits. The steps above may seem to be simple their execution can get complex, especially in larger organizations with multiple stakeholders. Like any transformational project the larger the scope the more complex it is to get off the ground. Early experiments could be short, simple, and easy Proof of concepts for larger projects subsequently. Organizations need to learn first.
Do you see it the same way I see it? Comments welcome.
References: