Theme: Incentives

  • can’t be done. that’s the problem. commons are necessary. not only for defense b

    can’t be done. that’s the problem. commons are necessary. not only for defense but to retain population and trade in competition with polities that invest in commons. Can’t be done. That’s why it hasn’t been.


    Source date (UTC): 2019-02-08 03:16:09 UTC

    Original post: https://twitter.com/i/web/status/1093710046838616065

    Reply addressees: @MisterWebb @TheOldOrder1 @PaddockSperg @laceyxcensored @SarinSquad @FashyxLacey @Jameswoods271

    Replying to: https://twitter.com/i/web/status/1093708105311907840


    IN REPLY TO:

    Original post on X

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    Original post: https://twitter.com/i/web/status/1093708105311907840

  • “The kind of people who need more government are often the kind of people incapa

    —“The kind of people who need more government are often the kind of people incapable of funding more government.”–Bearcaught48

    (priceless)


    Source date (UTC): 2019-02-06 01:50:48 UTC

    Original post: https://twitter.com/i/web/status/1092963788028932098

  • “The kind of people who need more government are often the kind of people incapa

    —“The kind of people who need more government are often the kind of people incapable of funding more government.”–Bearcaught48

    (priceless)


    Source date (UTC): 2019-02-05 20:50:00 UTC

  • IQ AND WHY SMART PEOPLE AREN’T OFTEN RICH (from elsewhere)(archive) (or “wealth

    IQ AND WHY SMART PEOPLE AREN’T OFTEN RICH

    (from elsewhere)(archive) (or “wealth is a middle class occupation”)

    I think Molyneux did a pretty good job.

    Here is what I said in response to Taleb:

    —(a) g measures what we attempt to measure (b) chance of success corresponds to a distribution of traits, (c) plus the utility of those traits, in service of the population under the bell curve within 1 SD.—

    Which is the only answer that matters, and is something we have known for decades – it’s covered in the Millionaire Mind books and related research.

    But to an economists it’s fairly obvious. Smart folk don’t amass money that often because we already HAVE an asset. Smart people don’t need anything else to compete. They don’t need anything else to signal with. (I mean, ask andy how easy it is to intimidate, humiliate, or shut down the average person (idiot)) In fact, if you are very intelligent the skill we must learn is now NOT to make people feel stupid, humiliated, or shut down.

    So a little more color on the subject:

    People most likely to gain wealth are in the middle and upper middle classes. People least likely to gain wealth are in the lower classes. Our ‘aristocracy’ today tends to consist of relatively invisible academic financial and political families, rather than wealth for this reason. We live in a middle class VISIBLE world but with an INVISIBLE aristocracy.

    Why? Because you need to (a) be interested in (and not bored by) something (b) there are some number of people interested in, and (c) most people that you can serve are in the middle 2/3 of the curve. So knowing those OPERATIONAL RULES we would expect shortage at the bottom, a steep climb to 2/3, and shortage at the top. Which is what Taleb’s chart shows us. I mean, smart people have MANY, MANY Possible ways of being ‘successful’ (subjectively).

    For example: I can tell fairly easily that Andy Curzon and Noam Chomsky, or that category of people who can read anything and speak nine or ten languages – all have higher IQ’s than I do. And I can enumerate what each can do that is superior.

    My particular thing is that I don’t make mistakes, at the cost of limited lateral associations. I remember pretty much everything at the cost of short term memory. And I have trouble with more than one project at a time. But I will absolutely figure out any problem period, … given time to figure it out on my terms. These are not positive academic traits (rate of learning unrelated things, making one an exceptional manager, executive in every field), they are very positive lifetime traits (getting comparative advantage ‘right’ in high risk propositions.)

    So, for example, as Higgs (Higgs boson) said “I would never get hired by a university today because I work slowly”. And we are creating a large number of ‘sufficiently successful’ college graduates that find safety in jobs that are extra market (which is why you used to go to college – to find income outside of market forces – particularly government, law, medicine, and teaching).

    ***So Taleb’s observation is statistically truth and operationally false.***

    Which is pretty much what I try to teach people: any claim that cannot be stated in operational language, is an act of fraud.

    So for example, no matter what I did,assuming we both invested in it, Andy would defeat me at chess (permutations of states), and Chomsky can give a long running detailed explanation of phenomenon without hesitation in search of words or phrasing (depth (or durability of short term memory) of ‘narrator, observer, searcher’ abilities – which is something that fascinates me).

    Because while I can undrestand it and imagine doing it I can’t do it – at least for any length of time – long enough time to complete with people like Andy, Chomsky, and say Stephen Fry is someone who comes to mind because of his lateral thinking ability.

    But here is the thing. Smart people (and I know very many of them) EXIT THE MARKET and live ‘normie lives’ because everything they can possibly want is obtainable under ‘normie’ conditions, an they can devote their spare time to their interests.


    Source date (UTC): 2019-01-31 10:20:00 UTC

  • Remove power and data reduces a polity to cash economy, and a cash economy drain

    Remove power and data reduces a polity to cash economy, and a cash economy drains the cash reserves, causes bank runs and in the end reduction to a barter economy. This time of year, ninety days without continuous data, power, cash is unsurvivable for many tens of millions. The fourth meal is all it takes. Bring about demand for the fourth meal.


    Source date (UTC): 2019-01-30 21:32:00 UTC

  • 3) This is an example of a common (infantlie) libertarian trope:that the consume

    3) This is an example of a common (infantlie) libertarian trope:that the consumer can possess sufficient information to avoid irreciprocity, and that the insurer of last resort should not force due diligence in the service of the market by those who might abuse asymmetry of info.


    Source date (UTC): 2019-01-30 18:22:54 UTC

    Original post: https://twitter.com/i/web/status/1090676745911570432

    Reply addressees: @LPNational

    Replying to: https://twitter.com/i/web/status/1090652224353644544


    IN REPLY TO:

    @LPNational

    Libertarians believe that healthcare prices would decrease and quality and availability of healthcare would increase if providers were freed from government meddling and control.

    Original post: https://twitter.com/i/web/status/1090652224353644544

  • 2) … so the problem is not law, and regulation, but the inability of the consu

    2) … so the problem is not law, and regulation, but the inability of the consumer to judge the product delivered to him, and the use of redistribution to compensate those who engage in fraud that takes advantage of that ignorance.


    Source date (UTC): 2019-01-30 18:20:27 UTC

    Original post: https://twitter.com/i/web/status/1090676130053611523

    Reply addressees: @LPNational

    Replying to: https://twitter.com/i/web/status/1090652224353644544


    IN REPLY TO:

    @LPNational

    Libertarians believe that healthcare prices would decrease and quality and availability of healthcare would increase if providers were freed from government meddling and control.

    Original post: https://twitter.com/i/web/status/1090652224353644544

  • Everything you subsidize will increase in consumption thereby increasing the ove

    Everything you subsidize will increase in consumption thereby increasing the overall proportion of productivity used to consume it. The only question is whether like engines of the animal, mechanical or digital categories, they produce higher returns for doing so – or not.


    Source date (UTC): 2019-01-30 18:17:05 UTC

    Original post: https://twitter.com/i/web/status/1090675282342830085

    Reply addressees: @LPNational

    Replying to: https://twitter.com/i/web/status/1090652224353644544


    IN REPLY TO:

    @LPNational

    Libertarians believe that healthcare prices would decrease and quality and availability of healthcare would increase if providers were freed from government meddling and control.

    Original post: https://twitter.com/i/web/status/1090652224353644544

  • NO. YOU HAVE FAITH IN A FRAUD. NOT REASON. —“….libertarians believe….”—

    NO. YOU HAVE FAITH IN A FRAUD. NOT REASON.

    —“….libertarians believe….”— Libertarian Party

    0) Everything you subsidize will increase in consumption thereby increasing the overall proportion of productivity used to consume it. The only question is whether like engines of the animal, mechanical or digital categories, they produce higher returns for doing so – or not.

    1) Libertarianism persists fallen angel version of man vs the risen beast, slowly domesticated by the violent imposition of demand for reciprocity under that law we call tort. Findings of Law, Legislation, and Regulation do in fact limit scams and frauds. … and ….

    2) … so the problem is not law, and regulation, but the inability of the consumer to judge the product delivered to him, and the use of redistribution to compensate those who engage in fraud that takes advantage of that ignorance.

    3) This is an example of a common (infantlie) libertarian trope:that the consumer can possess sufficient information to avoid irreciprocity, and that the insurer of last resort should not force due diligence in the service of the market by those who might abuse asymmetry of info.

    4) Jewish law, which is the source of left libertarianism, only enforces the demand for volition,and not warranty. European law, which is the source of liberalism, enforces reciprocity and warranty. There is a reason for the historical incompatibility, of the two ethical systems.

    5) We are faced today with not only the difference between Anglo classical liberal and reciprocal, germanic reciprocal proportional, french authoritarian socialist proportional, jewish voluntary unwarrantied, but now Islamic Authoritarian irreciprocal law of conquest.

    6) Libertarians are wrong. Whether they are wrong because they are infantile, or wrong because they have parasitic preferences is immaterial. There is only one source of liberty: sovereignty and reciprocity, truth and duty, the law of tort and jury, violence and defense.

    7) Sovereignty exists in fact. Liberty by the permission of the sovereign. Freedom by the utility of the sovereign. And sovereignty has but one source, and that is the organized application of violence to deny all other alternatives.

    8) Welcome to the revolution. Those who fight will have sovereignty not liberty or freedom. Those who do not fight will have none.


    Source date (UTC): 2019-01-30 13:34:00 UTC

  • more… —“In order to understand why silicon engines have had such astounding

    more…

    —“In order to understand why silicon engines have had such astounding energy-efficiency gains compared to combustion engines — and why Jevons Paradox has a long way to go yet — one has to look to the difference in the nature of the tasks the two kinds of engines perform. One produces information that consumes power, and the other produces power.

    All engines convert energy – effectively ‘refine’ it — from a chaotic form into a more highly ordered form. Combustion engines (and mechanical ones) are designed to effect a physical action. Efficiency is constrained by the immutable laws of thermodynamics, and things like friction, inertia and gravity. Logic engines, on the other hand, don’t produce physical action but are designed to manipulate the idea of the numbers zero and one.

    A logic engine’s purpose is rooted in simply knowing and storing the fact of the binary state of a switch; i.e., whether it is on or off. There is no useful information in the ‘size’ of the on or off state. It was obvious from early days that more and faster logic would require shrinking the size of the switch representing the binary state, chasing the physics that allows faster flips using less energy per flip. To be simplistic, it’s like choosing to use a grain of sand instead of a bowling ball to represent the number one.

    And, unlike other engines, logic engines can be accelerated through the clever applications of mathematics, i.e.,“software.” It’s no coincidence that this year also marks the 60th anniversary of the creation of that new term, coined by an American statistician.

    With software one can, for example, employ a trick equivalent to ignoring how much space lies between the grains of sand. This is what a compression algorithm does to digitally represent a picture using far less data, and thus energy. No such options exist in the world of normal engines.

    Tracing progress from 1971 when the first widely used integrated circuit was introduced by Intel, its vaunted 4004 with 2,300 transistors, we’ve seen the size of the transistor drop so much that a Central Processing Unit (CPU) today has billions of transistors, each able to operate 10,000-fold faster. That combination has yielded the billion-fold gains in computing power we’ve witnessed per chip.

    If combustion engines had achieved that kind of scaling efficiency, a car engine today would generate a thousand-fold more horsepower and have shrunk to the size of an ant: with such an engine, a car could actually fly, very fast. But only in comic books does the physics of propulsion scale that way. In our universe, power scales the other way. An ant-sized engine – which can be built — produces roughly a million times less power than a Prius.

    One consequence of the trajectory of making logic engines both cheaper and more powerful is that overall spending on such engines has soared (a related variant of Jevons Paradox). Each year the world’s manufacturers now purchase some $300 billion worth of semiconductor engines in order to build and sell computing machines. That total is some 20% to 50% more than global spending on the piston engines used to build all the world’s wheeled transportation machines. And the former is growing faster than the latter.

    The scaling ‘law’ of transistor-based engines was first codified by Intel co-founder Gordon Moore in an April 1965 article. There he wrote that advances in the techniques of silicon etching allowed transistor dimensions to shrink so fast that the number of them per integrated circuit doubled every two years. That also constituted a doubling in energy efficiency. And while Moore’s observation has been enshrined as a “law,” it’s not a law of nature but a consequence of the nature of logic engines.

    Thus, back to Jevons and his paradox. Quite obviously the market’s appetite for logic engines – data – has grown far faster than the efficiency improvements of those engines, so far. What next for Moore’s Law? If logic engines continue the trajectory of recent decades, we should expect to see a lot more surprises in both economic and business domains, never mind energy.

    Much scholarship has been devoted to the question of the future of Moore’s Law. Some pundits have been claiming that more efficient logic engines are now needed in order to constrain potential runaway energy use by the digital infrastructure. (That’s a constituency that has clearly not accepted the reality of the Jevons Paradox.) Meanwhile, other pundits have declared that the end of Moore’s Law is in sight.

    Because of Moore’s Law, CPUs now run so hot – a direct consequence of speed — that heat removal is an existential challenge. Inside the CPU itself, chip designers now build heat management software that can even throttle speed back to cool things down. Some datacenter operators have tackled the challenge, for example, by turning to water-cooled logic engines – a solution combustion engineers have long been familiar with. Even more challenging, logic switches have become so fast that moving the data around on the CPU’s silicon surface is actually constrained by the speed of light. And the logic switches are so small that conventional materials and tools are indeed maxing out. (For a lucid summary of all this, see this recent essay by Rodney Brooks, emeritus professor at MIT.)

    But it’s important to keep in mind that Moore’s Law is, as we’ve noted, fundamentally about finding ways to create ever tinier on-off states. In that regard, in the words of one the great physicists of the 20th century, Richard Feynman, “there’s plenty of room at the bottom” when it comes to logic engines. To appreciate how far away we still are from a “bottom,” consider the Holy Grail of computing, the human brain, which is at least 100 million times more energy efficient than the best silicon logic engine available.

    Engineers today are deploying a suite of techniques in the pursuit of ‘logic’ density and speed that can be grouped into three buckets: clever designs, embedding software, and using new materials to make transistors still smaller.

    The basic design of the transistor itself is no longer just the original planar, two-dimensional structures, but has gone 3D. The density from going vertical (think microscopic skyscrapers) buys another decade of Moore’s Law progress. Another design innovation is the “multi-core” microprocessor, which integrates dozens of CPUs onto a single silicon chip, each with billions of transistors. And now there are also entirely different engine types, much as aerospace engineers used to break the sound barrier, going from propellers to jet and then rocket engines. The equivalent with logic engines are Graphics Processing Units (GPUs) and Neural Processing Units (NPUs).

    For specialized tasks GPUs and NPUs outperform CPUs. GPUs were pioneered for gaming to render realistic video, i.e. “graphics,” (a subset of artificial reality) where the measure-of-merit is in imagines rather than logic operations processed per second. Then the NPUs don’t even use a CPU’s linear logic, but emulate instead a non-linear neural brain structure and offer “artificial intelligence” capabilities for such things as voice recognition, navigation and diagnostics. Computers that integrate CPUs, GPUs and NPUs are the equivalent of a vehicle with an SUV’s utility, a Ferrari’s speed, and a semitrailer’s carrying capacity.

    And, in no small irony, software is increasingly deployed within the CPU to manage traffic and power, and optimize the precious resources on the silicon “real estate.” Such software is the microscopic equivalent of blending AirBnB with Uber and Waze, at hyper-speed. Logic engines can, in effect, literally pull themselves up by their own bootstraps.

    Then there are new materials and the associated specialized machines for using them to fabricate even smaller transistors for all classes of digital engine. Here the automotive analog is in using better lubricants, or switching to aluminum and carbon-fiber bodies, or replacing carburetors with fuel injection. While there is an ultimate limit to a silicon transistor’s dimension – no smaller than the width of a half-dozen atoms – the distance to that limit represents as much progress as has occurred from 1998 to date.

    ‘Merely’ achieving, over the coming two decades, as much progress as has happened with Moore’s Law since 1998 will be world changing.

    Perhaps Moore’s Law, though, is no longer the best metric for the next 60 years of logic engine progress. Transistors have evolved from being viewed as components in isolated machines to become ubiquitous in markets, more common than grains of wheat. Logically, we should move beyond just counting them.

    Cost is the metric that matters in every market and application: in this case the cost of processing power. As we briefly illustrated above, in addition to size there are a variety of ways (e.g., designs, software) to advance the effect of Moore’s Law, which is the increase of processing power at declining costs. In fact, since the year 2000, the increase in logic operations purchasable per dollar has grown some 10-fold more than the increase in ‘raw’ logic operations generated per watt,

    Ray Kurzweil, widely known for his book The Singularity Is Near, may have been the first to document this cost reality. Kurzweil’s map shows that in the 1960s mainframe era, $1,000 dollars bought about one calculation per second. By the year 2000, a single dollar bought 10,000 calculations per second. Today a dollar buys one billion calculations per second. (All in constant dollar terms.)

    And that’s only half the story. The cloud, accelerating the cost declines of processing power through utility-class economies of scale (see Part 1 in this series), now combines with ever-cheaper ubiquitous high-speed wireless networks (Part 2 in this series). The integration of all these trends radically reduces costs and democratizes access to both data and the logic engines that process it. We don’t yet have a metric to quantify the effect of this economically incendiary combination.

    How much processing power might society ultimately consume? Data and information constitute a feature of our universe that is, like the universe itself, essentially infinite. There is no limit to our appetite to acquire data in order to gain greater knowledge and control of our world.

    So, finally, on this 60th anniversary of the logic engine, one more transportation analogy: the 60th anniversary of the invention of the internal combustion engine was 1936. We know now that 1936 was early days in the rise in consumption of road-miles. When it comes to consumption of processing power, it’s the equivalent of 1936.

    By now the energy implications of what we might call the Jevons digital Paradox should be obvious. But far more important are the implications of all the innovations yet to appear from the full flowering of the era of digital engines. “—


    Source date (UTC): 2019-01-30 00:28:00 UTC