2022-11-15 13:50:47 +00:00
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---
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layout: post
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2022-11-15 15:58:07 +00:00
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title: "On Efficiency of Animals and Machines"
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2022-11-15 13:50:47 +00:00
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subtitle: "I find comparing animals and machines absurd"
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2022-11-30 20:45:24 +00:00
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date: 2022-11-15 00:00:00
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2022-11-15 13:50:47 +00:00
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permalink: animals-and-machines/
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categories: personal, science
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math: true
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---
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I find comparing animals and machines absurd, because of course, animals win!
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What am I talking about here, what am I comparing? I've had multiple occasions
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where I have had to defend the stance that animals, and in general, biological
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beings are much more efficient and intelligent than human-made
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machines and AI. Let's first set the stage.
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## Intelligence
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What do I mean when I talk about intelligence? I think the definition I find on
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Wikipedia is a fair one:
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> Intelligence has been defined in many ways: the capacity for abstraction,
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logic, understanding, self-awareness, learning, emotional knowledge, reasoning,
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planning, creativity, critical thinking, and problem-solving. More generally, it
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can be described as the ability to perceive or infer information, and to retain
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it as knowledge to be applied towards adaptive behaviors within an environment
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or context. {% cite enwiki:1120152608 %}
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## Efficiency
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This I define as the ratio of useful output from a system to the amount of
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energy it needs to do carry the action.
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# An Absurd Comparison
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"This AI is much more intelligent than dogs", or even in more extreme cases "This
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AI is better than humans!".
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Some AI achievements are _impressive_, for sure. Stable Diffusion or Dall-E
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achieve impressive results. GPT-3 can be impressive sometimes, self-driving cars
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are also sometimes impressive, but being impressive is not the same as being
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intelligent or efficient, let's dissect what goes on behind such impressive
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feats of AI, and then we can look at the factors in the open.
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## Stable Diffusion
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What does it take for Stable Diffusion to create an image given some text?
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The dataset used to train Stable Diffusion is the
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[LAION-5B](https://laion.ai/blog/laion-5b/) dataset with 5.85 billion image-text
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pairs. {% cite techcrunch-stability-ai %}
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This means, we first had to have 5.85 billion images made by humans, and then
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labelled by humans, that's a ton of energy and time spent on the training data
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of this model.
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To train the model, 100 Nvidia A100 GPUs were used, for a total of 150,000
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GPU-hours, at a cost of $600,000. {% cite techcrunch-stability-ai %}
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Let that number sink in, 150,000 GPU-hours were required to train this model
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with 5.85 billion images. Nvidia A100 GPU has a max thermal design power (TDP) of 300W, and
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while TDP is not the best measure of actual power consumption, it can serve as a
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ballpark. So this GPU uses 300W of power per GPU hour, which is 45000kW for
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150,000 GPU hours, this is discounting the energy consumption of all the other
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components of the computers training stable diffusion.
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## Human
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Now imagine I asked a human artist to draw the same image I asked of Stable
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Diffusion. I'm pretty sure this human has not seen 5.85 billion images with text
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prompts, and I'm also pretty sure they have not had to spend $600,000 for
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training (including surviving and feeding themselves), and they also did not
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have to use as much energy as 150,000 GPU-hours of Nvidia A100s. A human body
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consumes food to generate energy, and the basic amount of energy consumption of
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the human body is about 4kJ/kilogram of body weight and daily hour {% cite
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khan2012energy %}. To get watts per hour, we can use the formulas below:
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Power in watts $P_W$ is equal to the energy in joules $E_j$, divided by the time period in
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seconds $t_s$:
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$P_W = E_j / t_s$
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So given that I weigh 70kg, my body consumes around 280kJ per hour, plugging
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into the formula:
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$P_W = 280000 / 3600$
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$P_W = 77.7$
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So my body consumes somewhere around 77.7 watts per hour, that's only 680652 watts or
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680kW per year! With this consumption, I could live 66 years before I would
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consume the same amount of energy as the training procedure of Stable Diffusion.
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I hope we can agree that as impressive as Stable Diffusion is, it does not beat
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a good human artist, and it sure is not as efficient as a human. I think to say that any
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AI is smarter than humans in any subject, must take into account the efficiency
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of the system as well.
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2022-11-15 15:58:07 +00:00
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Moreover, Stable Diffusion is only capable of doing one thing, a very narrow and
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focused task: given text, output images. I'm not dismissing the complexity of
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this task, but it is still a narrow task. Every being's world lends it with
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innumerable affordances, and an animal surviving in the world has to be able to solve
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a lot more problems, and yet, the animal is an order of magnitude more efficient
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at using its faculties to survive. Stable Diffusion focuses on one task, and is
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extremely energy-inefficient at solving that.
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2022-11-15 13:50:47 +00:00
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## Hummingbird
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My favourite example when it comes to comparing animals and machines, is the
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tiny hummingbird, which I think is more impressive than any machine made by
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2022-11-15 15:58:07 +00:00
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humans.
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Hummingbirds can range from as small as 5 centimeters weighing 2 grams up to 23
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centimeters and weighing 18 - 24 grams. They can flap their wings 12 times per
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second in larger species and around 80 times per second in smaller species.
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Some hummingbirds can fly up to 54 kilometers per hour in wind tunnels!
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Now these tiny little birds are experts at hovering in the air, and keeping
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their long beaks stable while sucking nectar from flowers, and when I say
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expert, I mean it! Look at this video of a hummingbird keeping itself stable
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while being blown with a 32km/h wind, and I remind you, the
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bird itself weighs only a few grams, but can hold itself stable against such
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wind!
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<iframe class="centered" width="560" height="315" src="https://www.youtube-nocookie.com/embed/JyqY64ovjfY" title="YouTube video player" frameborder="0" allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture" allowfullscreen></iframe>
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How efficient are hummingbirds? In a sense, they actually have the highest
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metabolism of any warm-blooded animal, so they end up consuming their own body
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weight in nectar every single day {% cite hummingbird %}, but on the other hand,
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if we consider human-made machines, can we build any kind of machine with our
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current understanding and technology that weighs only a few grams, can hold
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itself stable in winds as fast as 32km/h, mates with its own species to produce
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offsprings, and only consumes a few grams of flower nectar per day? I'm still
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over-simplifying the hummingbird by naming a few actions it takes, but in
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reality of course, the animal is much more complex and does a lot more than
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this.
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# Conclusion
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I think comparing such marvels of efficiency with machines is
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absurd. We don't come close to making something as efficient and intelligent as
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animals with such complexity, and our _intelligent_ tools are only intelligent in a narrow manner, all the while
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consuming energy that could feed an animal for _years_ to do what they do.
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Our current approach of computation does not seem to lend itself
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to such order-of-magnitude efficiency contrast. Moore's Law does not apply
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anymore {% cite rotman2020we %} and I don't see us improving CPU efficiency in a
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significant manner that brings us closer to biological efficiency of animal
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cognition without a breakthrough in the underlying technology and model we use
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for computation and cognition.
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# References
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2022-11-15 13:50:47 +00:00
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{% bibliography --cited %}
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