thoughts on aphorisms

Aphorism is the most concentrated form of wisdom. Always formulated in the present tense, with an eye on timelessness, it steers clear of ephemeral notions. Merely concerned with the unchanging generalities, it has absolutely no intention to change the world.

Unfortunately, despite its power, aphorism also happens to be the most ungrateful form of written expression, immediately assuming a life of its own. It fools its author by feigning authenticity during birth, and once born, it reveals its completely generic nature and longing for immediate anonymity. (Moreover, the closer the author hits the truth, the greater is the longing for anonymity.)

Contrast this with how science works. There is no such thing as a scientific aphorism because scientists are different creatures. They do not aim for universality, they aim for (and are less humble about) precision instead.

Also, aphorisms are great for destructing, not constructing. They are like stones that can be thrown at already existing systems of thought, not useful for building brand new systems from scratch.

Related posts: Thoughts on Abstraction, Deliberate Vagueness

thoughts on abstraction

Why is it always the case that formulation of deeper physics require more abstract mathematics? Why does understanding get better as it zooms out?

Side Note: Notice that there are two ways of zooming out. First, you can abstract by ignoring details. This is actually great for applications, but not good for understanding. It operates more like chunking, coarse-graining, forming equivalence classes etc. You end up sacrificing accuracy for the sake of practicality. Second, you can abstract in the sense of finding an underlying structure that allows you to see two phenomena as different manifestations of the same phenomenon. This is actually the meaning that we will be using throughout the blogpost. While coarse graining is easy, discovering an underlying structure is hard. You need to understand the specificity of a phenomenon which you normally consider to be general.

For instance, a lot of people are unsatisfied with the current formulation of quantum physics, blaming it for being too instrumental. Yes, the math is powerful. Yes, the predictions turn out to be correct. But the mathematical machinery (function spaces etc.) feels alien, even after one gets used to it over time. Or compare the down-to-earth Feynman diagrams with the amplituhedron theory... Again, you have a case where a stronger and more abstract beast is posited to dethrone a multitude of earthlings.

Is the alienness a price we have to pay for digging deeper? The answer is unfortunately yes. But this should not be surprising at all:

  • We should not expect to be able to explain deeper physics (which is so removed from our daily lives) using basic mathematics inspired from mundane physical phenomena. Abstraction gives us the necessary elbow room to explore realities that are far-removed from our daily lives.

  • You can use the abstract to can explain the specific but you can not proceed the other way around. Hence as you understand more, you inevitably need to go higher up in abstraction. For instance, you may hope that a concept as simple as the notion of division algebra will be powerful enough to explain all of physics, but you will sooner or later be gravely disappointed. There is probably a deeper truth lurking behind such a concrete pattern.



Abstraction as Compression

The simplicities of natural laws arise through the complexities of the languages we use for their expression.

- Eugene Wigner

That the simplest theory is best, means that we should pick the smallest program that explains a given set of data. Furthermore, if the theory is the same size as the data, then it is useless, because there is always a theory that is the same size as the data that it explains. In other words, a theory must be a compression of the data, and the greater the compression, the better the theory. Explanations are compressions, comprehension is compression!

Chaitin - Metaphysics, Metamathematics and Metabiology

We can not encode more without going more abstract. This is a fundamental feature of the human brain. Either you have complex patterns based on basic math or you have simple patterns based on abstract math. In other words, complexity is either apparent or hidden, never gotten rid of. (i.e. There is no loss of information.) By replacing one source of cognitive strain (complexity) with another source of cognitive strain (abstraction), we can lift our analysis to higher-level complexities.

In this sense, progress in physics is destined to be of an unsatisfactory nature. Our theories will keep getting more abstract (and difficult) at each successive information compression. 

Don't think of this as a human tragedy though! Even machines will need abstract mathematics to understand deeper physics, because they too will be working under resource constraints. No matter how much more energy and resources you summon, the task of simulating a faithful copy of the universe will always require more.

As Bransford points out, people rarely remember written or spoken material word for word. When asked to reproduce it, they resort to paraphrase, which suggests that they were able to store the meaning of the material rather than making a verbatim copy of each sentence in the mind. We forget the surface structure, but retain the abstract relationships contained in the deep structure.

Jeremy Campbell - Grammatical Man (Page 219)

Depending on context, category theoretical techniques can yield proofs shorter than set theoretical techniques can, and vice versa. Hence, a machine that can sense when to switch between these two languages can probe the vast space of all true theories faster. Of course, you will need human aide (enhanced with machine learning algorithms) to discern which theories are interesting and which are not.

Abstraction is probably used by our minds as well, allowing it to decrease the number of used neurons without sacrificing explanatory power.

Rolnick and Max Tegmark of the Massachusetts Institute of Technology proved that by increasing depth and decreasing width, you can perform the same functions with exponentially fewer neurons. They showed that if the situation you’re modeling has 100 input variables, you can get the same reliability using either 2100 neurons in one layer or just 210 neurons spread over two layers. They found that there is power in taking small pieces and combining them at greater levels of abstraction instead of attempting to capture all levels of abstraction at once.

“The notion of depth in a neural network is linked to the idea that you can express something complicated by doing many simple things in sequence,” Rolnick said. “It’s like an assembly line.”

- Foundations Built for a General Theory of Neural Networks (Kevin Hartnett)

In a way, the success of neural network models with increased depth reflect the hierarchical aspects of the phenomena themselves. We end up mirroring nature more closely as we try to economize our models.


Abstraction as Unlearning

Abstraction is not hard because of technical reasons. (On the contrary, abstract things are easier to manipulate due to their greater simplicities.) It is hard because it involves unlearning. (That is why people who are better at forgetting are also better at abstracting.)

Side Note: Originality of the generalist is artistic in nature and lies in the intuition of the right definitions. Originality of the specialist is technical in nature and lies in the invention of the right proof techniques.

Globally, unlearning can be viewed as the Herculean struggle to go back to the tabula rasa state of a beginner's mind. (In some sense, what takes a baby a few months to learn takes humanity hundreds of years to unlearn.) We discard one by one what has been useful in manipulating the world in favor of getting closer to the truth.

Here are some beautiful observations of a physicist about the cognitive development of his own child:

My 2-year old’s insight into quantum gravity. If relative realism is right then ‘physical reality’ is what we experience as a consequence of looking at the world in a certain way, probing deeper and deeper into more and more general theories of physics as we have done historically (arriving by now at two great theories, quantum and gravity) should be a matter of letting go of more and more assumptions about the physical world until we arrive at the most general theory possible. If so then we should also be able to study a single baby, born surely with very little by way of assumptions about physics, and see where and why each assumption is taken on. Although Piaget has itemized many key steps in child development, his analysis is surely not about the fundamental steps at the foundation of theoretical physics. Instead, I can only offer my own anecdotal observations.

Age 11 months: loves to empty a container, as soon as empty fills it, as soon as full empties it. This is the basic mechanism of waves (two competing urges out of phase leading to oscillation).

Age 12-17 months: puts something in drawer, closes it, opens it to see if it is still there. Does not assume it would still be there. This is a quantum way of thinking. It’s only after repeatedly finding it there that she eventually grows to accept classical logic as a useful shortcut (as it is in this situation).

Age 19 months: comes home every day with mother, waves up to dad cooking in the kitchen from the yard. One day dad is carrying her. Still points up to kitchen saying ‘daddy up there in the kitchen’. Dad says no, daddy is here. She says ‘another daddy’ and is quite content with that. Another occasion, her aunt Sarah sits in front of her and talks to her on my mobile. When asked, Juliette declares the person speaking to her ‘another auntie Sarah’. This means that at this age Juliette’s logic is still quantum logic in which someone can happily be in two places at the same time.

Age 15 months (until the present): completely unwilling to shortcut a lego construction by reusing a group of blocks, insists on taking the bits fully apart and then building from scratch. Likewise always insists to read a book from its very first page (including all the front matter). I see this as part of her taking a creative control over her world.

Age 20-22 months: very able to express herself in the third person ‘Juliette is holding a spoon’ but finds it very hard to learn about pronouns especially ‘I’. Masters ‘my’ first and but overuses it ‘my do it’. Takes a long time to master ‘I’ and ‘you’ correctly. This shows that an absolute coordinate-invariant world view is much more natural than a relative one based on coordinate system in which ‘I’ and ‘you’ change meaning depending on who is speaking. This is the key insight of General Relativity that coordinates depend on a coordinate system and carry no meaning of themselves, but they nevertheless refer to an absolute geometry independent of the coordinate system. Actually, once you get used to the absolute reference ‘Juliette is doing this, dad wants to do that etc’ it’s actually much more natural than the confusing ‘I’ and ‘you’ and as a parent I carried on using it far past the time that I needed to. In the same way it’s actually much easier to do and teach differential geometry in absolute coordinate-free terms than the way taught in most physics books.

Age 24 months: until this age she did not understand the concept of time. At least it was impossible to do a bargain with her like ‘if you do this now, we will go to the playground tomorrow’ (but you could bargain with something immediate). She understood ‘later’ as ‘now’.

Age 29 months: quite able to draw a minor squiggle on a bit of paper and say ‘look a face’ and then run with that in her game-play. In other words, very capable of abstract substitutions and accepting definitions as per pure mathematics. At the same time pedantic, does not accept metaphor (‘you are a lion’ elicits ‘no, I’m me’) but is fine with similie, ‘is like’, ‘is pretending to be’.

Age 31 months: understands letters and the concept of a word as a line of letters but sometimes refuses to read them from left to right, insisting on the other way. Also, for a time after one such occasion insisted on having her books read from last page back, turning back as the ‘next page’. I interpret this as her natural awareness of parity and her right to demand to do it her own way.

Age 33 months (current): Still totally blank on ‘why’ questions, does not understand this concept. ‘How’ and ‘what’ are no problem. Presumably this is because in childhood the focus is on building up a strong perception of reality, taking on assumptions without question and as quickly as possible, as it were drinking in the world.

... and just in the last few days: remarked ‘oh, going up’ for the deceleration at the end of going down in an elevator, ‘down and a little bit up’ as she explained. And pulling out of my parking spot insisted that ‘the other cars are going away’. Neither observation was prompted in any way. This tells me that relativity can be taught at preschool.

- Algebraic Approach to Quantum Gravity I: Relative Realism (S. Majid)


Abstraction for Survival

The idea, according to research in Psychology of Aesthetics, Creativity, and the Arts, is that thinking about the future encourages people to think more abstractly—presumably becoming more receptive to non-representational art.

- How to Choose Wisely (Tom Vanderbilt)

Why do some people (like me) get deeply attracted to abstract subjects (like Category Theory)?

One of the reasons could be related to the point made above. Abstract things have higher chances of survival and staying relevant because they are less likely to be affected by the changes unfolding through time. (Similarly, in the words of Morgan Housel, "the further back in history you look, the more general your takeaways should be.") Hence, if you have an hunger for timelessness or a worry about being outdated, then you will be naturally inclined to move up the abstraction chain. (No wonder why I am also obsessed with the notion of time.)

Side Note: The more abstract the subject, the less community around it is willing to let you attach your name to your new discoveries. Why? Because the half-life of discoveries at higher levels of abstraction is much longer and therefore your name will live on for a much longer period of time. (i.e. It makes sense to be prudent.) After being trained in mathematics for so many years, I was shocked to see how easily researchers in other fields could “arrogantly” attach their names to basic findings. Later I realized that this behavior was not out of arrogance. These fields were so far away from truth (i.e. operating at very low levels of abstraction) that half-life of discoveries were very short. If you wanted to attach your name to a discovery, mathematics had a high-risk-high-return pay-off structure while these other fields had a low-risk-low-return structure.

But the higher you move up in the abstraction chain, the harder it becomes for you to innovate usefully. There is less room to play around since the objects of study have much fewer properties. Most of the meaningful ideas have already been fleshed out by others who came before you.

In other words, in the realm of ideas, abstraction acts as a lever between probability of longevity and probability of success. If you aim for a higher probability of longevity, then you need to accept the lower probability of success.

That is why abstract subjects are unsuitable for university environments. The pressure of "publish or perish" mentality pushes PhD students towards quick and riskless incremental research. Abstract subjects on the other hand require risky innovative research which may take a long time to unfold and result in nothing publishable.

Now you may be wondering whether the discussion in the previous section is in conflict with the discussion here. How can abstraction be both a process of unlearning and a means for survival? Is not the evolutionary purpose of learning to increase the probability of survival? I would say that it all depends on your time horizon. To survive the immediate future, you need to learn how your local environment operates and truth is not your primary concern. But as your time horizon expands into infinity, what is useful and what is true become indistinguishable, as your environment shuffles through all allowed possibilities.

biology as computation

If the 20th century was the century of physics, the 21st century will be the century of biology. While combustion, electricity and nuclear power defined scientific advance in the last century, the new biology of genome research - which will provide the complete genetic blueprint of a species, including the human species - will define the next.

Craig Venter & Daniel Cohen - The Century of Biology

It took 15 years for technology to catch up with this audacious vision that was articulated in 2004. Investors who followed the pioneers got severely burned by the first hype cycle, just like those who got wiped out by the dot-com bubble.

But now the real cycle is kicking in. Cost of sequencing, storing and analyzing genomes dropped dramatically. Nations are finally initiating population wide genetics studies to jump-start their local genomic research programs. Regulatory bodies are embracing the new paradigm, changing their standards, approving new gene therapies, curating large public datasets and breaking data silos. Pharmaceutical companies and new biotech startups are flocking in droves to grab a piece of the action. Terminal patients are finding new hope in precision medicine. Consumers are getting accustomed to clinical genomic diagnostics. Popular culture is picking up as well. Our imagination is being rekindled. Skepticism from the first bust is wearing off as more and more success stories pile up.

There is something much deeper going on too. It is difficult to articulate but let me give a try.

Mathematics did a tremendous job at explaining physical phenomena. It did so well that all other academic disciplines are still burning with physics envy. As the dust settled and our understanding of physics got increasingly more abstract, we realized something more, something that is downright crazy: Physics seems to be just mathematics and nothing else. (This merits further elaboration of course, but I will refrain from doing so.)

What about biology? Mathematics could not even scratch its surface. Computer science on the other hand proved to be wondrously useful, especially after our data storage and analytics capabilities passed a certain threshold.

Although currently a gigantic subject on its own, at its foundations, computer science is nothing but constructive mathematics with space and time constraints. Note that one can not even formulate a well-defined notion of complexity without such constraints. For physics, complexity is a bug, not a feature, but for biology it is the most fundamental feature. Hence it is not a surprise that mathematics is so useless at explaining biological phenomena. 

The fact that analogies between computer science and biology are piling up gives me the feeling that we will soon (within this century) realize that biology and computer science are really just the same subject.

This may sound outrageous today but that is primarily because computer science is still such a young subject. Just like physics converged to mathematics overtime, computer science will converge to biology. (Younger subject converges to the older subject. That is why you should always pay attention when a master of the older subject has something to say about the younger converging subject.)

The breakthrough moment will happen when computer scientists become capable of exploiting the physicality of information itself, just like biology does. After all hardware is just frozen software and information itself is something physical that can change shape and exhibit structural functionalities. Today we freeze because we do not have any other means of control. In the future, we will learn how to exert geometric control and thereby push evolution into a new phase that exhibits even more teleological tendencies.

A visualization of the AlexNet deep neural network by Graphcore

A visualization of the AlexNet deep neural network by Graphcore


If physics is mathematics and biology is computer science, what is chemistry then?

Chemistry seems to be an ugly chimera. It can be thought of as the study of either complicated physical states or failed biological states. (Hat tip to Deniz Kural for the latter suggestion.) In other words, it is the collection of all the degenerate in-between phenomena. Perhaps this is the reason why it does not offer any deep insights, while physics and biology are philosophically so rich.

a visual affair

We vastly overvalue visual input over other sources of sensual inputs since most of our bandwidth is devoted to vision:

Source: David McCandless - The Beauty of Data Visualization (The small white corner represents the total bandwidth that we can actually be aware of.)

Source: David McCandless - The Beauty of Data Visualization (The small white corner represents the total bandwidth that we can actually be aware of.)

This bias infiltrates both aesthetics and science:

  • The set of people you find beautiful will change drastically if you lose your eyesight. (Get a full body massage and you will see what I mean.)

  • We explain auditory phenomenon in terms of mathematical metaphors that burgeoned out of visual inputs. There are no mathematical metaphors with auditory origin, and therefore no scientific explanations of visual phenomenon in terms of auditory expressions. Rationality is a strictly visual affair. In fact, the word "idea" has etymological roots going back to the Greek word "Edeo" - "to see". (No wonder why deep neural networks mimicking the structure of our visual system has become so successful in machine learning challenges.)

success as abnormality

Normality does not breed success, extremity does. This is essentially due to the fact that every activity favors certain character traits and the people who have extreme doses of these traits end up being extraordinarily successful. Of course, not all mentally sick people gain crazy amounts of fame, power or wealth, but those who do are often mentally sick.

Here are some traits I have noticed over the years:
 

Autism

As brain science unravels the roots of investors’ underlying behaviors, it may well find new evidence that the conception of Homo economicus is fundamentally flawed. The rational investor should not care whether she has $10 million and then loses $8 million or, alternatively, whether she has nothing and ends up with $2 million. In either case, the end result is the same.

But behavioral economics experiments routinely show that despite similar outcomes, people (and other primates) hate a loss more than they desire a gain, an evolutionary hand-me-down that encourages organisms to preserve food supplies or to weigh a situation carefully before risking encounters with predators.

One group that does not value perceived losses differently than gains are individuals with autism, a disorder characterized by problems with social interaction. When tested, autistics often demonstrate strict logic when balancing gains and losses, but this seeming rationality may itself denote abnormal behavior. “Adhering to logical, rational principles of ideal economic choice may be biologically unnatural,” says Colin F. Camerer, a professor of behavioral economics at Caltech. Better insight into human psychology gleaned by neuroscientists holds the promise of changing forever our fundamental assumptions about the way entire economies function—and our understanding of the motivations of the individual participants therein, who buy homes or stocks and who have trouble judging whether a dollar is worth as much today as it was yesterday.

Gary Stix - The Science of Economic Bubbles and Busts

Assuming that rational investors always beat the irrational ones in the long run, we can conclude that fortune favors the autistic. On a related note, being successful in business also requires a lack of empathy to the degree of being autistic.
 

Obsessive Compulsiveness

This disorder can fake passion when it is absent and fuel grit when it is low, and thereby tremendously help a budding entrepreneur. Obsessing over details can sometimes cause dead-locks but can also act as a pillar for the kind of perfectionism that distinguishes the best entrepreneurs and designers.
 

Narcissism

"Appear as you are. Be as you appear." said Rumi. Good advice for humans, but horrible for corporations. There is an entire department called brand management, dedicated to make sure that this does not happen. Same goes for modesty etc. In fact, ideal corporations are expected to display all the defining features of narcissism. (e.g. an inflated sense of self-importance, a lack of empathy for others, a fiercely independent attitude)

According to object relations theory, narcissistic people find the experience of need and dependency to be unbearable; as a result, they develop a set of psychological defences that embody an extreme form of anti-dependency. I don't need anyone. I can take care of myself because I already have what I need.
The Narcissist You Know - Joseph Burgo (Page 106)

That is why narcissist CEOs are the best. They envisage the whole company as an extension of themselves and do their best to minimize their dependency on employees so that no one can exert independent political power. To achieve this, such CEOs employ all sorts of operational software to suck any remnants of unique and valuable information the moment they are generated, meanwhile using all sorts of tricks to ease employees' existential anxieties and fool them into thinking that they are unique and valuable.
 

Bipolarity

It is no surprise that bipolar disorder is very common among successful entrepreneurs. It is the biological embodiment of the following two best-practices in business: 

  • Growth periods (manias) should be followed by pruning periods (depressions).
  • Every important decision should be evaluated from both a best-case (manic) and a worst-case (depressive) perspective.

Also bipolarity gives one an ability to freely trade energy across time. One can enjoy additional bouts of positive energy today by creating equal amounts of negative energy in the future. (Imagine an asynchronous version of the matter-antimatter creation process in physics.) Bipolar entrepreneurs can better navigate the highs and lows of the business landscape because they can gear up during the low periods and gear down during the high ones. (Entrepreneurs absorb external variations to create internal constancy for their team members who can then build the necessary functionalities.)
 

Psychotism

Apparently there exists some studies backing the common belief that insanity and creativity are closely associated. If so, why are so few of the successful scientists psychotic? After all science is a very creative discipline, isn't it? Here is a possible explanation:

Why are so many leading modern scientists so dull and lacking in scientific ambition? Answer: because the science selection process ruthlessly weeds-out interesting and imaginative people. At each level in education, training and career progression there is a tendency to exclude smart and creative people by preferring Conscientious and Agreeable people. The progressive lengthening of scientific training and the reduced independence of career scientists have tended to deter vocational ‘revolutionary’ scientists in favour of industrious and socially adept individuals better suited to incremental ‘normal’ science. High general intelligence (IQ) is required for revolutionary science. But educational attainment depends on a combination of intelligence and the personality trait of Conscientiousness; and these attributes do not correlate closely. Therefore elite scientific institutions seeking potential revolutionary scientists need to use IQ tests as well as examination results to pick out high IQ ‘under-achievers’. As well as high IQ, revolutionary science requires high creativity. Creativity is probably associated with moderately high levels of Eysenck’s personality trait of ‘Psychoticism’. Psychoticism combines qualities such as selfishness, independence from group norms, impulsivity and sensation-seeking; with a style of cognition that involves fluent, associative and rapid production of many ideas. But modern science selects for high Conscientiousness and high Agreeableness; therefore it enforces low Psychoticism and low creativity.

Bruce G. Charlton - Why are Modern Scientists so Dull?

divergence in top talent

Being a sloppy mathematician is a precondition for being a superb physicist. All the greatest ideas in physics involved huge discreet intuitive leaps. Mathematics always came later to bridge and formalise the gaps. 

Einstein doggedly went ahead with his gut feelings. It took him and his mathematician friends years to formalise his intuitional ideas about gravity. Feynman did the same thing in quantum mechanics. He went ahead with his path integrals which mathematicians have still not been able to make rigorous despite continuous attempts during the last seventy years. (Einstein and Feynman are not some random physicists. They are the best humanity could come up with in the twentieth century!)

What seems like a positive correlation in the middle talent range becomes negative at the top. Good math and physics skills go hand in hand until you reach the top echelon of each discipline. Best physicists are not mediocre but horrible mathematicians, and vice versa.

There are similar examples from other domains as well. I will provide you with two. I am sure you can come up with more.

  • Good business and political skills often go hand in hand. This leads most people to mistakenly conclude that top businessmen can become top politicians and vice versa.
  • Best performers on stage are timid and awkward in social contexts off stage.

rediscovery as a byproduct

Nietzsche understood something that I did not find explicitly stated in his work: that growth in knowledge - or in anything - cannot proceed without the Dionysian. It reveals matters that we can select at some point, given that we have optionality. In other words, it can be the source of stochastic tinkering, and the Apollonian can be part of the rationality in the selection process.
Antifragile - Nicholas Nassim Taleb (Page 256)
Freud understood much better than Münsterberg did the immense power of the unconscious, but he thought that repression, rather than a dynamic act of creation on the part of the unconscious, was the reason for the gaps and inaccuracies in our memory; while Münsterberg understood much better than Freud did the mechanics and the reasons for memory distortion and loss - but had no sense at all of the unconscious processes that created them.
Subliminal - Leonard Mlodinow (Page 62-63)

We kept rediscovering the same dichotomy throughout the history:

  • Apollonian vs. Dionysian (Literature)
  • Rational vs. Irrational (Philosophy)
  • Conscious vs. Unconscious (Psychology)

Rediscovery is a byproduct of containerisation and can be avoided by greater multi-disciplinarianness.

originality and friction

Ideas are amazingly overvalued in the startup world.

Even in precise and theoretical disciplines (e.g. math, physics), a tremendous amount of propaganda is required to get an original idea accepted. Some of the greatest ideas get pushed into the fringes and stay there for decades, either to be rediscovered later by someone with more social capital or to be entirely erased from the collective memory.

In the imprecise and pragmatic world of startups, it should be even tougher for an original idea to propagate since there are additional executional hurdles on top of the already existing social frictions. (If an entrepreneur encounters only executional hurdles, then he should question the originality of his ideas.)

Hence there is no need to panic about a truly original startup idea to be stolen etc. 

invention and genius

Invention depends on two processes. The first generates a collection of alternatives, the other chooses, recognising what is desirable and appears important among that produced by the first. What one calls “genius” is much less the contribution of the first, the one that collects the alternatives, than the facility of the second in recognising the value in what has been presented, and seizing upon it.
Paul Valery as translated by Bill Buxton

I could not agree more.

People say we live in an age of data, but data deluge has been with us since the inception of life. Reality constantly bombards us with incalculably large amounts of data. Success of a species is directly determined by how well its members can filter this bombardment for the purpose of survival. Put in the words of Paul Valery, genius is built into life.


Similarly, there are two sources of creativity: Cross-fertilisation and isolation.

Our current super-social, impatient generation is utilizing more of the former. Locations where different cultures and ethnicities interact have become hot spots. Co-working spaces, meet-ups, conferences have multiplied. But, as Paul Valery remarks, cross-fertilisation represents the inferior part of the creative process. It exposes people to others' ideas and lets them see what other variations are composed on the same themes. The real genius lies in isolation where most of the selection and synthesis processes occur.

Sooner or later we will cross-fertilize ourselves to homogeneity. Then we will need to turn to isolation as our source of creativity. Groups and individuals will severe ties with each other and continue their explorations independently. Being a loner will again be back in fashion.

Of course this cycle will repeat itself... But without a sustained period of isolation, cross-fertilization can never work out its magic. Today we need another Galapagos Island, not another merging of continents via tectonic movements.

uluslararası sidik yarışları

Birleşik Arap Emirlikleri yüz yıl içerisinde Mars'ta ilk şehri kurmayı hedefliyormuş. Konuyla ilgili araştırmalar için deli gibi para akıtacaklarmış.

Dünyanın en yaşanılmaz yerlerinde, dünyanın en yüksek kulelerini diken, devasa yapay adalar yapan, saçma sapan şehirler kuran BAE, eminim Mars gibi yaşanmaz bir yerde de parayı basarak iyi bir iş çıkaracaktır. 


Adamlardaki sidik yarışı hassasiyetine bakar mısınız? Amerika'dan Elon Musk "Biz Mars'a gidiyoruz kardeşim." dediğinden beri tüm ezik ülkeler ardı ardına "Biz daha önce gideceğiz." gibi demeçler vermeye başladı. Yahu Mars yıllardır orada duruyor, Musk konuşana kadar neredeydiniz?

Ayrıca neden bilimsel araştırmalara kayıtsız şartsız para yağdıramıyorsunuz? İllahi bir dünya savaşı, soğuk savaş veya kolonizasyon furyası mı gerekiyor? İllahi bir dominasyon hikayesi mi gerekiyor?

Dünyanın en ulvi işlerine dünyanın en sikimsonik sebeplerinden dolayı para akıtılıyor olması midemi bulandırıyor gerçekten. Adamlar "en yüksek kule bizde" diyebilmek için inşaat teknolojilerine çığır atlattırdılar ya... Küçük penis sendromu başka bir şey değil.

Bilime destek mi olmak istiyorsunuz? Musk gibi yeni bir uluslararası sidik yarışı çıkartın. Diğer bütün fon toplama çabalarınız, bu tarz bir yarışın yaratacağı etkinin yanında devede kulak kalacaktır.