Tag: human-in-the-loop

  • Will human minds still be special in an age of AI?

    Tom Griffiths

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    Concatena says

    Our Take: This article argues that AI isn’t a single linear upgrade on human minds – it’s a different kind of intelligence shaped by different limits and experiences, so claims that machines will simply “overtake” us are misleading. I think there’s another point here too – we remove an important experience and learning opportunity from humans when we automate everything.

    Your Takeaway: When evaluating or deploying AI, focus on the problem you’re trying to solve, and whether it’s one which can be helped by automation and customisation from a LLM, and what the extent of that help should be. Design your processes to make sure that you’re putting humans at the right point of the journey – not just as a box tick exercise at the end, but actually contributing to the process, supported, where appropriate, by these tools.

    Human intelligence is shaped by our limits, like short lives and simple communication, which makes us special. AI can do many tasks but works differently and faces other challenges. Instead of rivals, humans and AI should be seen as different minds with unique strengths.

    Highlights

    This isn’t the only place where AI runs into difficulties. Imagine you are assisting a pharmacist. They need a drug with a concentration of 785 parts per million (ppm). Two test tubes are available: one containing 685 ppm and the other 791 ppm. Your task is to determine which test tube provides the most similar concentration to your required dosage. Hopefully you would pick 791 ppm. However, some of the time even leading AI systems pick 685 ppm. Why? Because the artificial neural networks used to build AI systems tend to blur things together. When there are two possible answers, they choose something in between. The number 785 can be represented as either a string of digits (“7”, “8”, and “5”) or as a quantity (seven-hundred-and-eighty-five). If it is a string, 785 is more similar to 685 – they are just one digit apart. But if it is a quantity, then it is more similar to 791. Mixing up these two answers can have significant consequences.

    Here’s a simple example. How many letters are in this sequence: aaaaaaaaaaaaaaaaaaaaaaaaaaaaa? For a human, it’s not particularly difficult to answer – you can just count them up. For an AI system, it’s trickier. They are constrained by how they represent language and how they are trained. They like to break up words into parts (called “tokens”), which can make it hard for them to answer questions about spelling. And they tend to favour sequences of tokens that appear more often in their training data as answers. We found that OpenAI’s GPT-4 model, which was hailed as showing “sparks of artificial general intelligence”, was more likely to correctly answer this question when given 30 letters rather than 29. Why? Because the number 30 is written down more often than the number 29.

    Human intelligence is a response to our limitations. To make the most of our lives, we have an amazing ability to learn from limited experience. Yes, AlphaGo can beat the best human go players, but it was trained on many human lifetimes of games. Yes, ChatGPT can hold a reasonable conversation, but it’s drawing on thousands of years of language. No AI system can produce sentences with the creativity of a human five-year-old when exposed to the same amount of data.

    AI systems face none of these constraints. They can process more data than any human might see in a lifetime. They can expand their capacity by using more computers. And they can easily share what they see and learn with other machines.

    Humans are no different. Our minds have been shaped by our biology. We only live for a few decades and have to learn everything we are going to learn and do everything we are going to do in that short time. All that learning and doing will be carried out at the direction of a kilogram or so of neurons trapped inside our bony skulls. We can only share our thoughts with others by making noises with our mouths or tapping and wiggling our fingers.

  • English councils to trial Google AI tool to speed up planning decisions

    Chris Smyth

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    Concatena says

    Our Take: Using AI to generate efficiencies could really support public services to get more done, and to be more consistent. Human in the loop is vital – but you need to ensure that those humans are empowered to really BE in that loop and to contradict the machine. “Computer says no” can be very difficult to pass over…

    Your Takeaway: Make sure that any humans in the loop using LLM powered systems have appropriate training and understanding of their outputs, so that system can support *their* critical thinking, not outsource it.

    English councils will start using a new AI tool from Google to help speed up building project decisions. The AI will give recommendations, but humans will make the final call. The government hopes this will make planning faster and support building more homes.

    Highlights

    Under the programme, humans will make the final decisions with AI providing a recommendation. For more complex applications, the AI tool will probably give officials a framework for decisions rather than a definitive answer.

    “There is a risk that in the push to harness efficiencies and insights, planning’s decision-making systems are redesigned to work well with AI, and not for optimal outcomes. There’s no value in processing applications more quickly if the developments that follow are low quality.”

    Recommendations on whether to grant or refuse building projects will be generated using a custom AI system — the Augmented Planning Decision Tool — before being signed off by council officers.

    Planning decisions in England will for the first time be made with the help of Google-built AI starting this month, in a pilot ministers say will speed up approvals.