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"AI will be disruptive, but will ultimately provide opportunities."
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Daniel J. HulmeDaniel J. Hulme
Daniel J. Hulme
Daniel Hulme is a British businessman, investor, academic and commentator, working in the field of Artificial Intelligence (AI), applied technology and ethics. He is the CEO and founder of Satalia that exited to WPP plc in 2021 for a rumoured $100M where he is also Chief AI Officer. Hulme is also an angel investor in emerging technology companies. In 2024 Hulme co-founded Conscium, an AI Safety co
"AI will be disruptive, but will ultimately provide opportunities."
"Hierarchies are not structured for good decision making"
"We all have an innate desire to do something for humanity"
"We can build AI to represent every corner of society… we can use it to ensure we build a less biased experience"
"I’ve always been interested in what it means to be human, and in the nature of the universe. I did my undergraduate [degree] in AI and my master’s in AI, and my Ph.D. in AI, so I guess I’ve been doing 19 years’ worth of activity in AI."
"The best definition of intelligence — artificial or human — that I’ve found is goal-directed adaptive behavior. I use goal-directed in the sense of trying to achieve an objective, which in business might be to roster your staff more effectively, or to allocate marketing spend to sell as [much] ice cream as possible. It might be whatever goal you’re seeking."
"Next is recruiting data scientists who have the machine learning and statistics skills to find insights from the data. Then, the third is [finding] what I call the decision scientists: people who can understand how to make decisions or solve optimization problems that leverage those insights."
"And fourth, crucially, for true AI, you need to have an AI architect who understands how to glue these three components together: the data, the machine learning, and the optimization to build adaptive systems. And at the moment, it’s the CIO who is trying to step into that role of overseeing this. But I don’t know of many companies out there that have true AI architects. For now, companies are managing maybe part of this, but not all four categories."
"There is a bit of a bubble in AI. I don’t think that it’s going to go to waste. I think that all this investment will be additive, but there’s an over-expectation of what machine learning can bring right now, because of a lack of appreciation of the fact that machine learning is only part of the journey. And the next part of the journey for most big companies is optimization and decision making."
"The world is changing so quickly, it’s very difficult to actually have all the necessary data points to be able to help you forecast accurately. At the moment, that’s still in the realm of human beings."
"There are two definitions of AI, and the more popular one is the weakest. This first definition [concerns] machines that can do tasks that were traditionally in the realm of human beings. Over the past decade, due to advances in technologies like deep learning, we have started to build machines that can do things like recognize objects in images, and understand and respond to natural language. Humans are the most intelligent things we know in the universe, so when we start to see machines do tasks once constrained to the human domain, then we assume that is intelligence.But I would argue that humans are not that intelligent. Humans are good at finding patterns in, at most, four dimensions, and we’re terrible at solving problems that involve more than seven things. Machines can find patterns in thousands of dimensions and can solve problems that involve millions of things. Even these technologies aren’t AI — they’re just algorithms. They do the same thing over and over again. In fact, my definition of stupidity is doing the same thing over again and expecting a different result."
"There are four categories of AI skills. The first category is the data. Companies should ask: Are we getting our data into the shape where people can consume it? There are lots of companies out there that are throwing money at building data lakes — that’s all the raw data that a company holds from code generation to sales information — because they think at some point in the future data lakes will be useful. That’s not a bad investment, but I would also suggest that you need to be building applications straight away on top of that data lake that drive value into your business. Companies…should be thinking about building digital twins of their organizations, i.e., a perfect digital representation of their physical assets, like their infrastructure and employees."