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Tech Trends in Practice


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researchers have taught AI how to reverse engineer pizza. After looking at a picture of a pizza, the AI can identify its toppings, and then tell you how to make it.15 Why do this, you might be wondering? In theory, this technology could be used to analyze any photo of food and produce a suitable recipe. So if you want to recreate an amazing restaurant meal at home, in a few years’ time there might be an app for that!

      The Future of AI?

      In 2019, Microsoft announced it was plowing $1 billion into AI research lab OpenAI – which was founded by, among others, Elon Musk.16 What’s behind such a big investment? OpenAI is dedicated to creating something called artificial general intelligence (AGI), widely considered to be the “holy grail” of AI.

      Key Challenges

      I opened this chapter with a Stephen Hawking quote, “Success in creating AI would be the biggest event in human history.” Hawking immediately followed that up with, “Unfortunately, it might also be the last, unless we learn how to avoid the risks.”

      AI isn’t without its challenges and risks. For one thing, there are potentially huge risks for society and human life as we know it (particularly when you consider some countries are racing to develop AI-enabled autonomous weapons). But let’s focus on the key challenges that everyday businesses will have to overcome if they’re to deploy AI successfully.

      Regulation

      There will no doubt be regulatory hurdles to negotiate as regulators begin (quite rightly and belatedly) to take a greater interest in the application of AI. Until now, some of the early adopters of AI have played a bit fast and loose with the technology (Facebook, for example, is facing legal action over its use of facial recognition technology for auto-tagging photos, without gaining user consent).17 That sort of behavior can’t continue, and business leaders will have to take an ethical, responsible approach to AI.

      Privacy Concerns

      Lack of Explainability

      Remember I said that AI can now solve a Rubik’s Cube in just 1.2 seconds? Interestingly, the researchers who built the puzzle-solving AI can’t quite tell how the system did it. This is known as the “blackbox problem” – which means, to put it bluntly, we can’t always tell how very complex AI systems arrive at their decisions.

      This raises some serious questions around accountability and trust. For example, if a doctor alters a patient’s treatment plan based on an AI prediction – when he or she has no idea how the system arrived at that prediction – then who is responsible if the AI turns out to be wrong? What’s more, under GDPR (the General Data Protection Regulation legislation brought in by the European Union), individuals have the right to obtain an explanation of how automated systems make decisions that affect them.19 But, with many AIs, we simply can’t explain how the system makes decisions.

      New approaches and tools are currently being developed that help to better understand how AIs make decisions but many of these are still in their infancy.

      Data Issues

      The AI Skills Gap

      Finally, one area in which many companies will struggle is finding the right AI talent. There’s a shortage of people who can develop these complex AI systems – and what talent there is tends to be scooped up by the Googles and IBMs of this world. AI-as-a-service (AIaaS) could be part of the solution. AIaaS offerings from companies like IBM and Amazon allow companies to make use of AI tools, without having to invest in expensive infrastructure or new hires, which makes AI much more accessible to businesses of all shapes and sizes.

      How to Prepare for This Trend

      AI is going to revolutionize almost every facet of modern life, including business. Therefore, despite the challenges involved, businesses cannot afford to overlook the potential of AI. So how might you use AI in your business? Broadly speaking, companies are using AI to improve their business in three ways:

       Developing smarter products (see Trends 2 and 3 for great examples of this).

       Delivering smarter services (check out Trends 18 and 23 as examples of AI-driven services).

       Making business process more intelligent (Trends 12, 13, and 17 for just a few examples of AI-enhanced business processes).

      Notes

      1 1 7 Indicators Of The State-Of-Artificial Intelligence (AI), March 2019, Forbes: www.forbes.com/sites/gilpress/2019/04/03/7-indicators-of-the-state-of-artificial-intelligence-ai-march-2019/#5d371cbb435a

      2 2 White House Unveils a National Artificial Intelligence Initiative: www.nextgov.com/emerging-tech/2019/02/white-house-unveils-national-artificial-intelligence-initiative/154795/

      3 3 More Robots Mean 120 Million Workers Will Need to be Retrained, Bloomberg: www.bloomberg.com/news/articles/2019-09-06/robots-displacing-jobs-means-120-million-workers-need-retraining

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