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  • September23rd

    It’s a big question, but one that is particularly pertinent to my interview today with Robotics and Artificial Intelligence researcher, Hod Lipson. Because Hod and his team build machines that find truths.

    The search for truth has a long history (one could argue it is history) which I’m not about to get into (and it’s not the book I’m writing) but if someone said to me ‘Go on then, history of truth in 5 minutes’ I’d probably reach for two key figures – Socrates (born Greece, 469 BC) and Francis Bacon (born England, 1561), not least because they both died in interesting ways (which is useful for storytelling).

    Socrates was put to death by the state of Athens for “refusing to recognise the gods recognised by the state” and “corrupting the youth” (explaining perhaps why Black Sabbath rarely toured in Greece). Despite clear chances to escape his fate, Socrates placidly took a drink containing poison hemlock prepared by the authorities. Francis Bacon, many believe, died as a result of trying to freeze a chicken. It might seem odd therefore to hold up both as key figures in the history of reason.

    Socrates natural hier?

    Socrates' natural heir?

    You may also wonder why I am suddenly diving into the past when I’m writing a book about the future. Bear with me, and blame Hod Lipson and his robots.

    Both Socrates and Bacon were very good at asking useful questions. In fact, Socrates is largely credited with coming up with a way of asking questions, ‘The Socratic Method’, which itself is at the core of the ‘Scientific Method’, popularised by Bacon during ‘The Enlightenment’ – a period of European history when ‘reason’ and ‘faith’ had an almighty bunfight and the balance of power between church, state and citizen was being questioned. Lots of philosophers and scientists challenged the prevailing orthodoxy of religious authority by saying ‘we need to make decisions based on critical thinking, evidence and reasoned debate, not on sacred texts and religious faith’ and the church replied with ‘yes, but we own most of the land, plus people really like the idea of God. Ask them’.

    I'm pretty popular, actually

    I'm pretty popular, actually

    The Socratic Method disproves arguments by finding exceptions to them, and can therefore lead your opponent to a point where they admit something that contradicts their original position. It’s powerful because it kind of gets people to admit to themselves that they’re wrong. It’s also pretty good at exposing your own (as well as others’) prejudices and gaps in reasoning. Lawyers use it a lot. Don’t let this influence you against it. Lawyers also use toilet paper and you’re not about to reject that idea.

    Used by lawyers

    Used by lawyers

    Here’s an example.

    During excessive bouts of hard and progressive rock emanating my older brothers’ bedrooms my dad used to say, “people only play electric guitars because they can’t play real ones” (by which he meant acoustic guitars played by nice chaps called Julian with sensible haircuts, as apposed to electric guitars played by long haired geezers called Dave and Jimmy).

    First step of Socratic method: assume your opponent’s statement is false and find an example to illustrate this. This You Tube clip of Pink Floyd’s David Gilmour playing acoustic guitar for instance. Clearly Dave Gilmour can play a ‘real’ guitar as well as an electric one and my dad must grudgingly accept the fact. At this point dad would assert that Dave Gilmour was ‘the exception that proved the rule’.

    Next step. Take your opponent’s original statement and restate it to fit their new modified position. “So, dad, you’re saying that people only play electric guitars because they can’t play acoustic ones, except for Dave Gilmour who can do both?”. Then return to step one.

    Ironically this led us to playing dad far more Black Sabbath, Pink Floyd, Aerosmith and Led Zeppelin than if he’d kept his theory to himself. (MTV’s ‘unplugged’ series would become his nemesis). Eventually dad would have to admit the truth – which was not that the rock musicians we listened to weren’t talented, but that he just didn’t like rock music.

    This example is trivial but you can use the method to demonstrate some pretty esoteric points, and expose fundamental new insights. A popular example that can really annoy your mates in the pub is proving that things don’t have a colour.

    Socratic argument, while undoubtedly one of the most useful things ever devised can also annoy the tits of people, as the man who lends it his name found out to his cost. The story is that Socrates used his technique to prove a lot of bigwigs in Athenian society were mistaken in their thinking – and they responded by having him killed. This proves that engaging people’s brains is never enough if you want change. You have to engage their emotions too. As Professor George Church said to me during our talk last week “Politicians know how effective emotion is in comparison to rational thought. You can really move mountains with emotion.  With rational thought you just end up getting people to change the channel”.

    By the time Francis Bacon went to university, teachings of one of Socrates’ students, Aristotle, had become entrenched as the way to conduct ‘scientific inquiry’. Aristotle had pioneered deductive reason, the practice of deriving new knowledge from foundational truths, or ‘axioms’. In short, it was generally believed that if you got enough boffins together to have a solid debate, scientific truth would be teased out over time. This worked well for mathematics where axioms had been long established (e.g. the basic mathematical operations – plus, minus, divide, multiply) but was less good for finding out new stuff about the physical world. Much to Francis’ dismay it seemed that science involved sitting around in armchairs. Nobody was getting off their arse and observing anything new or doing any experiments. Nobody was finding the ‘axioms of reality’ (which is arguably a good name for a progressive rock outfit).

    'Let's do it in 13/8!'

    'Let's do it in 13/8!'

    In common with Socrates Bacon stressed it was just as important to disprove a theory as to prove one – and observation and experimentation were key to achieving both aims. In a way he was Socrates 2.0 (which is another good name for a prog band). He also saw science as a collaborative affair, with scientists working together, challenging each other. All of this is hallmark of scientific good practice today – observe, experiment, theorise… and then try to prove yourself wrong – all in collaboration with peers who can give you a hard time. It’s important to note that Bacon himself wasn’t a distinguished scientist. His main contribution was the articulation and championing of an empirical scientific method. That said, he did do the odd experiment, including the one that killed him.

    While traveling from London to Highgate with the King’s personal physician, Bacon wondered whether snow might be used to preserve meat. The two got off their coach, bought a chicken and stuffed it with snow to test the theory. In his last letter Bacon is said to have written, “As for the experiment itself, it succeeded excellently well.” Some historians think the chicken story is made up, but the popular account is that the act of stuffing the chicken led to Bacon contracting fatal pneumonia. This is possibly the only instance of bacon being killed by eggs.

    Reason's nemesis?

    Reason's nemesis?

    Hod Lipson looks like a very friendly bear. He has a round, but not chunky frame, thick black hair and looks healthy and happy. His features are open and innocent. He’s almost childlike if it weren’t for his demeanour – a kind of solid confidence that only comes with age. You get the feeling Hod knows exactly what he wants to achieve. I suspect he was a mischievous child, curious, poking his nose into most things. And whilst most of the scientists I’ve met are driven by an almost insatiable curiosity, Lipson takes curiosity to a new level, literally. He’s curious about curiosity.

    “ ‘Artificial Intelligence’ is a moving target,” he says. “So, you can build machine that plays chess, then you build one that can drive through city streets and so on. People argue about whether it’s really intelligent or not – and usually it’s argued it isn’t. I want to create something where nobody can argue it isn’t intelligent. So, I was thinking about what’s an unmistakable, unequivocal hallmark of intelligence, and I think it’s creativity and particularly curiosity.”

    “Does a curious and creative machine mean a sentient machine?” I ask.

    “Well, what does that mean?” asks Hod. “I have to push you on what you mean by ‘sentient’.”

    Bollocks. I’ve just been asked by a leading researcher into intelligent machines to define sentience – one of the biggest pending questions in philosophy. This is worse than when Cynthia Breazeal asked me to come up with an alternative word for ‘robot’. Or if Andrew Lloyd Webber asked me to say something nice about one of his musicals. I feel out of my depth and we’re barely into our chat. I do the only thing I can.

    “Well, let me ask you,” I say. “What do you mean by it?”

    Hod pauses. I’m not sure he was expecting a return serve, especially one that in any decent rule book would be considered cheating.

    “I interpret it as deliberate versus reactive. Er… human-like…” He pauses again. “I don’t know.”

    A-ha! Well, like I said, it is one of the biggest pending questions in philosophy.

    “Alive?” I venture.

    “It’s difficult to identify what life is right?”

    And there’s the rub. Life has avoided a definitive definition for as long as we’ve tried to make one – as has ‘intelligence’. So if you’re trying to create ‘artifical intelligent life’ you’re already in a quagmire of semantic lobbying. I’m reminded of my chat last week with George Church (Professor of Genetics, Harvard Medical School). “I think life is actually quantitative measure,” said George, by which he means something that can be defined not with either a ‘yes’ or ‘no’ but on a scale. “It’s not something where either you either have it or your don’t. So I would say that there are some things that are more alive than others.” And  I don’t think it’s overstating things to say that Hod certainly has made machines that are ‘more alive’ than many others.

    Then he says an interesting thing. “I think men have this hubris of wanting to create life. We try to create life out of matter.”

    ‘Hubris’ is one of those words like ‘semiotics’ and ‘insurance’ that I’ve heard a lot but didn’t really know what it meant for a long time (I’m still struggling with ‘insurance’). I look up ‘hubris’ when I get to back to my hotel. It means excessive pride or arrogance. In classical literature it’s usually a precursor to, and the cause of, a character’s downfall. The legend of Icarus is a good example. With that one word Hod has encapsulated the two defining criticisms aimed at Artificial Intelligence research. On one end there are those who say we’ll never create a truly artificial intelligence and that we’re arrogant to believe we can. On the other there those who worry we will build smart machines and in our arrogance be blind to the danger that they will one day do away with or enslave us. (There are more measured positions in between the two such as Hubert Dreyfus’s and Hod’s own – both of who suggest that a lot of AI research has been in the wrong direction).

    Hod doesn’t believe in the latter James Cameron-esque scenario, but sees a confederacy of man and machine. He has some sympathy for the ‘singularity hypothesis’ of Ray Kurzweil (who I’m interviewing early next year) which talks of a ‘merger of our biological thinking and the existence of our technology’ but doesn’t see a machine-human hybrid (Juan Enriquez’s Homo Evolutis) as the only scenario. “Merging could also mean intellectually merging, meaning that they explain stuff to us.”

    Lipson became famous (in robotic circles) for his work building robots that are arguably self aware. His Starfish robot, which I see sitting forlornly on a shelf in his lab, is iconic for learning to walk from first principles. It wasn’t given a program that told it how to move its various motors and joints to achieve locomotion. Instead Lipson gave it a program that enabled it to learn about itself – and use this knowledge to subsequently work out how to move.

    “The essential thing was it created a self image,” Lipson tells me. “It created that self image through physical experimentation. So it moved its motors, it sensed its motion and then it created various models of what it thought it might look like – ‘maybe I’m a snake? maybe I’m a spider?’ We told it to create models – multiple different explanations that might explain what it knows so far.”

    The robot then stress-tested those models by sending them into competition with each other. “It creates an experiment for itself that focuses on the area where there’s the most disagreement between what the models predict. We put in the code to look for disagreements,” explains Hod.

    For example, let’s say the robot is wondering which move to do next in order to learn about itself more. It could try a movement that, when completed, the models all predict it will be sitting at an angle of about 20 degrees. One model might predict 19 degrees, another 21 degrees, a third 21.2 degrees. However, if it tries another move the models have very different ideas about the result. One says the robot will be at an angle of 12 degrees, another predicts 25 degrees, a third says 45. This latter movement is more likely to be the one the robot chooses next, because it will learn the most from it, and get an idea of which model is closer to the truth. It’s where there’s most disagreement that there’s most to learn. “We tell it ‘you create models – multiple different explanations for what you see – and then look for what new experiment creates disagreement between predictions of these candidate hypotheses,” says Lipson “That’s the bottom line of curiosity”.

    The models that do best ‘survive’ and the program kills off the others. The remaining models ‘give birth’ to a generation of slightly mutated tweaked versions of themselves and another round of ‘survival of the fittest’ ensues. Or to put it another way, over many iterations the program hones in on a model that describes reality. The predictions get closer and closer to what actually happens until one model is deemed sufficient for the robot to say ‘this is what I look like’.

    If all this talk of ‘mutation’, successive ‘generations’ and ‘survival of the fittest’ sounds slightly familiar that’s because this kind of mathematics takes its inspiration from Darwin’s theories of evolution. Mathematicians might call it ‘reductive symbology’ or say Lipson’s work is a good example of ‘genetic algorithms’ – and it’s a technique that’s been around for decades. What’s different about Lipson’s work is the implementation, something he calls ‘co-evolution’.

    “We set off two lines of enquiry. So one of them is the thing that creates models and the other is the thing asks questions, and they have a predator/ prey kind of relationship. Because the questions basically try to break the models.” The questions try to find something the models disagree about so they can kill off the weaker ones. It’s like Anne Robinson in code.

    It has to be said that if you see the Starfish robot ‘walking’ you wouldn’t immediately think it had a future career as a dancer. It doesn’t so much walk as stagger and flop forward. It’s less Ginger Rogers and more gin and tonic. Still the achievement is not to be sniffed at. It had no parents and no role models. This was a robot actively learning to do something no one had taught it to. And robots that learn this way have all sort of interesting possibilities – as Lipson was about to find out.

    You can see Hod’s demonstrating his starfish robot in this TED talk.

    With colleague Michael Schmidt he wondered if the same computer program he’d placed at the core of his Starfish robot could go beyond working out merely what its host body looked like and begin to reach useful conclusions about the wider world.

    “We said ‘let’s take it out of this particular body and let it control motors of any experiment’ ”.  Their first idea was to give the robot brain control of motors that set up the starting position for a ‘double pendulum’ before letting it fall. The robot was also able to record the results of each experiment using motion capture technology – allowing it to accurately record the pendulum’s motion.

    A double pendulum is a bonkers little contraption. It consists of two solid sticks jointed together in the middle by a free moving hinge. Double pendulums do wacky things (You can see one in action here). Whilst the top pendulum swings from left to right the bottom one likes to mix it up. Because it’s not attached to a stationary point (like the top pendulum) but something moving (the bottom end of that swinging top pendulum) it will swing left, swing right, spin round clockwise, or counter clockwise, seemingly at random. Lipson and Schmidt chose the double pendulum because it’s a good example of a system that’s simple to set up but which can quickly exhibit chaotic behaviour – and therefore would be a good test of the technology’s ability to build a useful conceptual model of what was going on. The results were startling. In fact, the program went a long way to deriving the laws of motion. In 3 hours.

    It followed the same process as it had when it sat in the robot – guessing at equations that might explain what it had seen so far, then setting up new experiments (in this case new starting positions for the pendulum) that targeted areas of most disagreement between the equations. “With the double pendulum it very quickly puts it up exactly upright, because some models say it’s going to fall left and some models say it’s going to fall right. There’s disagreement. It’s not a passive algorithm that sits back, watching,” says Hod smiling. “It asks questions. That’s curiosity.”

    Just like humans, it seems machines learn best when they ask their own questions and find their own answers, rather than being given huge amounts of data to absorb. “Most algorithms you see are passive. They’re data intensive. You feed in terabytes of data and these algorithms just sit back and watch. But in the real world you can’t sit back and watch. You have to probe, because collecting data is expensive, it takes time, it’s risky.” By constrast Lipson’s machine brain “only ever sees what it asks for. It does not see all the data.” In fact Lipson decided to compare the efficiency of this ‘active’ method of enquiry against a more traditional passive ‘here’s all the data, what can you tell me?’ method. “It doesn’t work. It has go through a reasoning.”

    Remind you of anyone? I see the hemlock taker and the chicken freezer partially re-incarnated in machine form. The programming consigns inaccurate models to the dustbin by getting the robot to admit there are others that offer a better explanation of the real world  (hello Socrates) and does this with evidence won via experimentation (hello Bacon). What Lipson has done is create a computational methodology for asking good questions. And asking good questions is what it is all about when it comes to understanding anything.

    “Physicists like Newton and Kepler could have used a computer running this algorithm to figure out the laws that explain a falling apple or the motion of the planets with just a few hours of computation,” said Schmidt in an interview with the US National Science Foundation (who helped fund the research).

    However, we’re still a long way off what I (or Hod) would call an intelligent machine. It still takes a human to work out if anything the machine has found is useful. The machine didn’t know it had found laws of motion, it took Hod and his colleagues to recognise the equations that were produced. “A human still needs to give words and interpretation to laws found by the computer,” says Schmidt. So, we’re still some distance from Hod’s confederacy of man and machine, where they explain stuff to us.

    One of the areas Hod’s brains could turn out useful is cracking problems where there is lots of data, but we still have little idea what’s going on. Indeed plenty of people with acres of data have been beating a path to his door including heavyweight data generators like the Large Hadron Collider at CERN near Geneva. “The people as CERN said ‘there is this gap in a prediction of particle energy. Here’s data for 3,000 particles. Can you predict something?’ ” The result was a strange mix of elating and disappointing. “We let it run and it came up with a beautiful formula,” says Hod. “We were very excited but it was a famous formula they already knew. So for them it was a disappointment…. But for us… We rediscovered something that people are famous for.”

    Again, the crucial insight comes from humans who can tell if something means anything or not. It’s the crucial step – and without it the results are largely worthless (which is not to say the time saved is not incredibly useful). I’m reminded of a scene from Douglas Adams’ comedy The Hitchhikers Guide to the Galaxy in which a supercomputer called Deep Thought is built by a race of supersmart humanoids to answer the ultimate question. ‘What is the answer?’ ask the humanoids awaiting instant enlightenment. ‘To what?’ says the computer. ‘Life! The Universe! Everything!’ they respond. ‘The ultimate question!’ The computer announces there is an answer… but it will take several million years to compute. At the duly allotted time millennia later the humanoid’s descendants gather to hear the answer, which is announced to be ‘42’. The problem, suggests Deep Thought, is that they don’t really know what ‘the question’ is.

    "You're not going to like it"

    "You're not going to like it"

    No-one understands the irony in this story more than Hod Lipson. “In biology there are many systems where we do not know their dynamics or the rules that they obey”. So he set his machine looking at a process within a cell. True to form the program generated an equation in double quick time. But what did it mean?

    “We’re still looking at it,” says Hod with a smile. “We’re staring at it very intently. But we still don’t have an explanation. And we can’t publish until we don’t know what it is.”

    “You don’t understand what it’s saying?

    “No,” says Hod.

    “But in science you go from observations which produce data, to models which produce predictions, to underlying laws – and from there you go to meaning. What’s good is that we can go from data straight to laws, whereas previously people could only go from data to predictions. So now a scientist can throw it some data, go and have a cup of coffee, come back and see 15 different models that might explain what is going on. That saves a lot of time. Previously coming up with a predictive model could take a career. Now at least you can automate that so you can focus on meaning.” That’s a powerful enabling technology. More time to think. Hod is doing for thinking what dishwashers have done for after  dinner conversation. Although it may not always work out that way.

    Several months later I e-mail Hod to see if they’ve got anywhere with the equation his machine generated from the cell-observing experiment. “We’re still struggling,” he writes “We’ve been trying for months to get the AI to explain it to us through analogy. But we don’t get it.” It could be that Hod’s machine has discovered something our human brains are just not smart enough to see. “Maybe it’s hopeless,” he says “Like explaining Shakespeare to a dog.” This is why Hod is trying to convince his collaborators to publish the equation anyway – and see if anybody else out there can shed light on its meaning.

    "Shakespeare? It's above me."

    "Friends, Romans... Hey! Is that a biscuit?!"

    Because Hod is curious about what makes us curious I ask him if his program could come up with a model of how to learn.

    “Could we use your program to observe data about how machines learn, or how people learn, and come up with a model of learning?”

    We’re getting seriously abstract now.

    Hod laughs. “That’s what we’re working on now. We’re working on what we call self reflective systems. We want to make machines meta-cognitive – they are thinking about thinking.”

    This is something of a departure from a lot of AI research. “Almost all the AI systems program a way of thinking and they do that thinking for you – which is the extent of it. You could argue that’s about as smart as a lizard. But if you want to get to human-like intelligence, you need a brain that can think about thinking…”

    Sadly (for this blog) Hod’s work in this area is currently unpublished so out of courtesy I’m leaving a more detailed explanation of what we discussed until the book is published. In summary however, Hod is taking his model of ‘co-evolutionary AI’ to the next level. Instead of modeling robot physiology, the motion of pendulums or data from physicists in Switzerland he has one robot brain trying to model how another one learns – and then, in true Lipson style, he’s asking one to challenge the other – in order to find out more. In this way one brain builds a model of how the other learns, and can start to make helpful suggestions.

    “That’s self reflection,” says Hod. He adds, “That’s important in life. You can learn things the hard way, or you can think about how you’ve been thinking.”

    It’s something you can imagine Socrates or Bacon saying.

  • September11th

    Boston13

    Today I meet George Church, professor of genetics at Harvard Medical School, a towering intellect and, as it turns out, a generous, warm and funny guy.

    I’m exhausted before I meet George. I’ve been cramming as much knowledge into my head as I can about the areas he works in. I don’t want to squander my opportunity with one of the fathers of the genetic age. I’m worried that my weariness will affect my concentration during the interview and as I approach 77 Avenue Louis Pasteur I’m almost dead on my feet. I have a splitting headache and feel deeply fatigued. Suddenly travelling, research, a couple of night’s fitful sleep and doing gigs in the evening has caught up with me. Pull it together Mark.

    Despite my tiredness I can’t help but be amused by a sign found all around the Harvard Medical School campus…

    Harvards smoking plan

    Some of the cleverest people on the planet work at Harvard Medical school – but it’s heartening to think that even they may sometimes need some help telling ‘inside’ from ‘outside’. 

    As soon as I sit down with George my tiredness vanishes. We’ve two hours allotted, which is generous given his standing. We talk in the end for four, and get on well. He likes the idea of the book and is a passionate advocate of communicating the implications of the genetic age to wider audiences. I’m a conduit. And really, when it comes to feeling tired, I can hardly complain. George is a narcoleptic.

    Perhaps one of the cornerstones of my book will be trying to convey just how deeply incredible and mind-blowing cells and the genetic apparatus they contain are. We are entering the genetic age where, within my lifetime, I am now convinced children in many nations will have their genome sequenced at birth. In the future you may well be given a user manual for you as your very first birthday present. Your genetic heritage and its implications will be accessible to you.

    If like me, you’ve heard the words ‘gene’, ‘genome’ and ‘DNA’ a lot, but not really understood the implications then you’re in for a shock. A good one I think. As I researched deeper into the subject I had numerous ‘Bugger me!’ moments.

    Imagine if you will that someone plonked a computer into the middle of a society that had never seen one. Imagine they start to examine it, first understanding and making sense of the different components parts, until after long years of study they discover that patterns of material they’ve found at various places throughout the computer are code. Sets of instructions. Then they learn to decipher the code. They can read it. Then they learn to alter it. Now the computer isn’t an impenetrable curio, now they can change it. It becomes a tool.

    Now replace the word ‘computer’ in the last paragraph with ‘human’ and you’ve got an idea of where biology has got to. You’re full of code. Code that we can now read, and potentially ‘fix’ and change. Stop for a second. Think about it. You’re full of code. In fact, every single one of your cells has code in it. Most cells have the entire code that describes you wrapped up inside. A trillion infinitesimal USB sticks of data that define how you are made.

    Some people call DNA a ‘blueprint’ but, as George and I discuss, it’s more a cookbook of recipes for all the different parts of you. Understanding not only the cookbook, but how particular cells choose which recipes to make, in what quantities, and how the external environment affects the chef is the challenge genetic medicine now faces.

    We’re just at the beginning of the genetic age. Juan Enriquez (who I’m seeing on Wednesday) makes the analogy that as explorers we have a genetic continent to discover, and so far we’ve mapped a part of the coast. Whilst the ‘code’ you are given at birth is important to understand, how that code is interpreted as we age, or affected by what we eat, drink and do (or ‘expressed’ in genetic parlance) is not fully understood. Or to put it another way, the interaction between us and our environment is yet to be made of sense of, genetically speaking.

    To this end George has set up the Personal Genome Project (PGP) – which is recruiting 100,000 volunteers who are “willing to share their genome sequence and many types of personal information with the research community” in order to “advance our understanding of genetic and environmental contributions to human traits and to improve our ability to diagnose, treat, and prevent illness”. Or, to put it another way to work out why some people who drink and smoke like crazy don’t get really ill, while most of us would. I’m one of the volunteers (for the PGP, not the drinking and smoking). George has put his money where his mouth is. Want to see his genome? Go here. See, I wasn’t joking about the narcolepsy.

    Anyway, if I started now on everything we discussed I’d have no time to prepare for my interviews next week. Suffice to say we covered ethics, engineering, gene therapy, synthetic biology, sociology and politics. And then he took me for a beer.

    I’ll return to the subject of genetics in future posts… for now, I need a brain rest.

  • September9th

    Boston7

    Cynthia Breazeal

    Met with Cynthia Breazeal today… and it was great. But, before I headed over to the MIT Personal Robotics Lab I headed to Harvard Square to buy the chocolates that were a condition of my interview. You see, Cynthia doesn’t talk to that many people. As her formidable PA, Polly Guggenheim keeps telling me every time we speak ‘Do you know how many people I turn down?’ reminding me of my special and precarious position… At one point during my negotiations with Polly she says, “I’m maybe of a mind to grant you an interview…” to which I reply, “So, what does it take?”. “Honestly?” she says. “Chocolate. Good dark chocolate”. 

    Therefore my first trip of the day is to L.A. Burdick, fine chocolatiers with a store in Harvard Square. On my walk there I pass an aggressively drunk tramp shouting vigourously to no-one in particular. As I draw closer to him I realise that, like most of the aggressive drunk tramps I’ve witnessed, he has a broad Scottish accent. Does Scotland export these globally then? I thought it was just a UK thing. Then a theory strikes me. Maybe most of them aren’t Scottish. Perhaps something about the itinerant alcoholic lifestyle alters the vocal chords to makes one sound Scottish, giving that proud nation an unfortunate cadre of fake ambassadors around the planet. I have a short fantasy about asking him where he’s from and receiving the reply ‘Rio de Janeiro, pal!’ Or maybe, after all, the Scots are just better at producing drunken tramps than other nations… I’d like to see a study.

    I deliver the chocolates to the Personal Robotics lab and they are received first with detailed inspection, then approval. I’ve done well, getting the interview off to a good start. In fact I’m invited to share the chocolates, being told that the antioxidants within will do me good. I decline. I want all that chocolate goodwill going into the interview.

    Cynthia is a generous interviewee, but clearly has no time for waffle. She speaks voluminously in response to my questions but with great efficiency. Our talk ranges from robot architectures, to machine intelligence, to the economic impacts of robotics, to the ethics of sociable machines – taking in learning and developmental psychology along the way. Early on in our conversation she says she’s driven by a vision of robots “as interesting personalities in their own right, robots crossing over into what we would consider living systems that relate to us” – not what robots are now, but what they could be. She’s very clear to draw a distinction between robot personalities and human personalities. A constant refrain in our talk is that she is not trying to, and indeed sees little value in creating artificial humans. She talks of human-robot relations as a new kind of relationship. She talks of robot emotions, not human emotions. “Robots aren’t humans, right?”

    Cynthia operates in a world that is both interdisciplanary (bringing together mechanics, computing, artificial intelligence, animation, cognitive and development psychology) and dogged by ‘definitional problems’. How for instance do you know if your robot is ‘alive’ or ‘conscious’ when no definition of what ‘life’ of ‘consciousness’ can be agreed on? Indeed, one of the contributions social robotics may make to our knowledge is helping us to define those terms, another driver behind Cynthia’s work. “We’re starting to see sociable robots as a very intriguing way to learn about people”.

    The full interview, of course, will be in the book, along with, I hope, a new term to replace ‘robot’ which Cynthia and I discussed as being a loaded term, and no longer representative of the sociable machines she imagines will share our future. She’s tasked me with coming up with that term… and I think I’ve got it, but will sit with it for a while…

    Following our interview I ‘meet’ the world’s most famous sociable robot, Leonardo, although he’s sadly, switched off. But I urge you to watch this video of Leo in action – and glimpse something of the future of sociable machines…