Among those people were business leaders desperate to embrace the technology powering the ChatGPT revolution. Generative AI may have its origins in the 1960s3 but the incredible success of OpenAI’s application saw organisations rushing to invest in their own projects to speed up or improve their existing processes and keep one step ahead of competitors. For proof of the gold rush, look no further than an Axios report that showed funding for generative AI projects soared from $613 million in 2022 to $2.3 billion in 20234.
Given such hype, one cannot blame businesses for pursuing their own generative AI projects but it has never been more important for decision-makers to remember there is often a stark contrast between hype and reality. While the technology undoubtedly boasts huge potential, it is equally the case that there are very real limitations that may result in organisations wasting considerable time and money that would have been better invested elsewhere.
Generative AI refers to deep-learning models that use the data they are trained on to generate high-quality text, images and other content. Based on ‘models’ of statistical probability and machine learning algorithms, the technology is used to create content (as opposed to other forms of AI that are used for different purposes) and, by doing so, can speed up, scale or improve business processes.
Generative AI is a powerful tool but, like any technology, it has drawbacks that should be considered before investing in the development and deployment of such solutions.
This is not an article about avoiding generative AI. Rather, it is a warning to take care when deploying it. Before blindly throwing money at pilot projects, businesses need to research and understand its limitations and take appropriate steps to ensure any solutions or tools that are developed deliver what they are designed to do.
A key step is to tap into the knowledge and experience of people with a proven track record of generative AI innovation. This was the case for a leading Australian telecommunications and telecom agency that faced a daily battle to manually review, summarise and categorise up to 700 industry and competitor-relevant online articles. Knowing the power of generative AI, it envisaged a solution that would automatically scan those feeds, collate and send a finalised report to users.
However, rather than go it alone, the agency turned to Innovior, which has used a combination of intelligent automation and generative AI to deliver a fully automated report that can be sent out to more than 4,000 users. The partnership has delivered several outstanding results including a service that is two to three times more cost-effective than legacy insight software products, a boost in employee satisfaction and report insights that have been used to successfully identify market and competitor threats earlier than previously possible.
Like any major investment, the pursuit of generative AI requires a concerted effort to mitigate risks and maximise opportunities. Effective prompt engineering, consideration of ethics, ongoing reviews of training data and a healthy dose of professional scepticism are all advisable, not to forget working with a tech company that has previously trodden the generative AI path. Ultimately, it is all about doing everything one can to ensure their business is talked about as a generative AI success story rather than becoming a case study of what not to do.
Looking for more inspiration of what is possible when experts put their minds to generative AI solutions? Discover how the likes of healthcare providers, universities and insurance groups are using the power of technology to achieve business growth.