What is augmented intelligence and how does it differ from “traditional” artificial intelligence?
Humans are not perfect. We have gaps in our knowledge, limited time, limited resources, and biases that we are, or are not, aware of. The concept behind augmented intelligence is to shape machine intellect in a way that allows us to compensate for those gaps in human knowledge and complement our existing skills. A good way to illustrate how this works is to consider our senses – such as sight, touch or hearing – that help us to navigate the world around us. With augmented intelligence, we can amplify a human’s senses or abilities a thousandfold; it is like having a thousand pairs of eyes to read through vast company reports or to take a deep-dive into social media sentiment about a specific firm. As such, the concept of augmented intelligence is not different to traditional artificial intelligence or “AI” but it goes one step further by focusing on the philosophy of how to design, implement and utilise those AI systems.
How can AI be designed to complement and enhance human skills rather than replace them – particularly in the workplace?
When most people ask that question, what they really want to know is: “Will AI take my job?” I therefore want to state unequivocally that the answer to that question is “no” for multiple reasons. Firstly, every job consists of a number of individual tasks. To date, AI – including generative AI – can help with and, in some cases, even complete entire tasks − but never the job as a whole. And let’s not forget that many tasks tend to be repetitive and mundane. Secondly and more generally, it is not AI that could replace you in the workplace but rather someone who deploys AI effectively to help complete their tasks – especially if you are unwilling to embrace the technology yourself. The same applies to companies: those firms that make better use of AI to offer the same products or services as you will be more competitive.
When it comes to AI complementing human skills, there are plenty of examples of how this works. AI is already used extensively to combat financial crime, enabling vast quantities of information to be processed at high speed, often in milliseconds. Transaction monitoring is one such area; humans alone would be overwhelmed by the scale of the task but AI can help compliance teams to scan huge amounts of data in real time, freeing up human analysts to focus on investigating complex cases.Market research is another good example: analysts who want to find out about a specific company need to navigate huge volumes of news, social media posts and other data sources to gain key insights into the business and its management team. AI can help them to sift through this material and swiftly identify new and relevant insights, allowing them to produce meaningful analysis and gain an edge for their house view.