Saturday, November 15, 2025

Mahatma Gandhi on "Seven Deadly Social Sins"


Gandhi wrote about his "Seven Deadly Social Sins" in 1925. He was not "postmodern," as philosophers might note that his principles are grounded in natural law, which the postmodern mind does not accept. 


To be clear, I am not a postmodernist. I’m more of an 18th-century liberal. 


“Natural law” is the idea that moral truths are grounded in human nature and knowable by reason. Among other things, though it no longer is fashionable, I do believe in universal truths; the usefulness of reason and intrinsic order. 


Category

Natural Law Assumptions

Postmodern Assumptions

Source of Moral Truth

Moral truths are objective and grounded in human nature; knowable through reason.

No universal moral truths; morality is constructed by cultures, groups, or power structures.

Human Nature

Human nature is real, stable, and has inherent purposes (telos).

Human nature is fluid or socially constructed; no fixed essence.

Rationality

Reason is capable of discovering truths about the good and the just.

Reason is limited, situated, and often a tool of power; skepticism toward “universal reason.”

Truth

Truth is objective, universal, and corresponds to reality.

Truth is relative, plural, and contingent on language, culture, and power dynamics.

Ethical Foundations

Ethics grounded in objective human goods (e.g., life, knowledge, community).

Ethics are negotiated within communities; no foundation outside discourse and context.

Meaning/Purpose

The universe has intrinsic order and purpose; humans flourish by aligning with it.

Meaning is created, not discovered; purpose is individual or culturally defined.

View of the Person

The person has inherent dignity derived from human nature and rationality.

The self is constructed through language, narrative, and social context.

Language

Language can reliably convey truth about reality.

Language constructs reality; words shape power relations; skepticism toward “transparent” language.

Power Dynamics

Power should be subordinated to objective moral norms.

Power shapes knowledge and norms; “objective norms” often mask domination.

Politics

Legitimate political authority must be grounded in justice and natural moral law.

Politics is an arena of competing narratives; legitimacy is contingent and unstable.

Moral Disagreement

Resolvable through reasoned argument appealing to shared human nature.

Moral claims are incommensurable across cultures; no neutral ground for resolution.

Social Order

Social institutions should reflect natural human goods and promote flourishing.

Social institutions are historically contingent and often expressions of power structures.

Freedom

Freedom is ordered to the good; choosing the good enhances flourishing.

Freedom is autonomy from imposed norms; emphasis on liberation from structures.

Religion/Metaphysics

Moral reality is grounded in metaphysical truths (even if knowable by reason alone).

Suspicion toward metaphysics; emphasis on pluralism and local narratives.


Gandhi’s approach is grounded in natural law. Bluntly, natural Law assumes:

  • There is a stable human nature

  • Reason can grasp moral truths

  • Ethics is grounded in universal goods

  • Societies flourish when they conform to objective moral order. 


  • Postmodernism assumes:

  • Reality and identity are constructed

  • Truth claims are power claims

  • Universal moral standards are illusions

  • Meaning and morality are contingent, plural, and negotiable.


So the reason many common discussions about “politics” flounder is because we no longer share common fundamental assumptions about “the nature of things.”


Thursday, November 13, 2025

Fear Versus Greed: Electricity Transformed into Value (Bitcoin) and Insights (Inferences)

“Fear and greed” notoriously are drivers of equity market sentiment and that is clear in the yo-yo behavior surrounding artificial intelligence equities recently. The fear is that AI investment levels are a bubble, overinvestment that will ultimately not pay off. 


The greed flows from the belief that AI is a transformative new technology that will create new winners and losers in the broader economy. 


A likely third position is that AI is not a bubble on the order of the do-com mania, but will produce excess investment that has to be rationalized, eventually, as all great new technology waves have done so. 


Optimists might agree with Mara Holdings CEO Frederick Thiel that “ electrons are the new oil,” referring to the idea that computational resources underlie the ability to wring value from AI, while the data centers that provide the computation now are dependent on access to large and affordable amounts of electricity. 


Mara believes future winners will be high-performance compute providers who have the lowest costs to produce insight per token; insight per kilowatt of power consumed, especially for enterprise private compute operations. 


As Thiel puts it, his firm, which originally ran bitcoin mining operations, now provides a high-performance computing infrastructure  that converts energy into both value (bitcoins) and intelligence (AI computing).


The broader vision for the company, as is true for many other former bitcoin miners, is "transforming energy into intelligence.” In other words, consuming electricity to power AI models and the inferences to be drawn from using those models. 


The analogy is not unlike that sometimes made to the export of alfalfa from the U.S. great plains to the Middle East. The production of the alfalfa consumes water, which becomes livestock food, which essentially also represents the value of the water consumed to grow the produce. So exporting alfalfa also is akin to exporting the water used to grow it. 


“We believe energy, not compute, really becomes the primary constraint on AI growth,” says Thiel. 


Pursuant to that belief, Mara has a venture with MPLX, formed by Marathon Petroleum Corporation, the largest petroleum refinery operator in the United States, to develop and operate multiple integrated power generation facilities and state-of-the-art data center campuses in West Texas. 


MPLX will provide long-term access to lower-cost natural gas at scale, while Mara will develop and operate on-site power generation and compute infrastructure. 


The initial capacity is expected to reach 400 megawatts with the option to expand to up to 1.5 gigawatts across three plant sites.


But Mara also is basing its business on “inference” rather than model training, as that allows it to use application specific integrated circuits (ASICs) rather than graphics processor units (GPUs), thus lowering its capital investment. 


That approach also enables use of smaller data centers and air cooling rather than the more-expensive liquid cooling. The strategy is not especially new, as others in the data center and connectivity spaces have chosen to become specialists in smaller markets (either in terms of geography or types of customers). 


But all that happens within the context of a market that is volatile. 


A positive development such as a new chip announcement, a major partnership like the AWS/OpenAI compute services deal, or strong earnings from an AI leader pushes the market into "extreme greed" territory, driving up prices quickly.


But then reports of high AI capital expenditure, delayed profitability for end-users, or a general sentiment survey warning of a "bubble" causes profit-taking and selling, plunging the market into "fear" sentiment, leading to sharp, temporary pullbacks.



Month

Major Event

Sentiment

Notable Impact

2025-01

DeepSeek Launch

Fear

Sharp drop, infrastructure risk flagged

2025-04

Trump Tariffs Threat

Fear

Market volatility spiked, quick rebound after walkback

2025-09

NVIDIA-OpenAI Chip Deal, Fed Rate Cut

Greed

Strong surge, positive sentiment returned

2025-10

Bubble Talk Surge

Fear

Renewed caution, market exhaustion warnings


The cycle resets because the fundamental belief in AI's future remains generally strong. Investors who sold out of fear often rush back in for fear of missing the next leg up (greed), making the dips short-lived and creating the current high-volatility, upward-trending cycle. 


But skepticism and hope continue to coexist and oscillate. 


Beyond the volatility, we might argue that “high-performance computing capability” has become a strategic commodity.


High-performance compute capacity arguably has become the single most critical, scarce, and expensive strategic resource in the AI industry. 


If so, long-term, multi-billion-dollar compute contracts are now a competitive necessity, resembling procurement models for essential commodities like energy or raw materials. But volatility will persist until some future time when there is much more predictability about AI investments and revenue gains. 


So nobody knows yet whether the investment boom in artificial intelligence we now see is a bubble, or not. Much conventional wisdom seems to suggest AI is a bubble, but there is disagreement. 


And if some argue it is a bubble, there remains an argument that there is a significant difference between a dot-com style bubble and an “ordinary” investment bubble associated with introduction of any major new technology


To be sure, for some of us, there are hints to parallels of excesses akin to the excessive dot-com investment at the turn of the century. As I was writing one startup business plan, I was told “there’s plenty of money, make it bigger.” 


As it turned out, “this time is different” and admonitions that some of us “did not get it” were wrong. Economics was not different and normal business logic was not suspended. 


But some might note that there are important differences between AI investment and dot-com startup investment. Back then, many bets were placed on small firms with no actual revenue. 


Today, it is the cash flow rich, profitable hyperscalers that dominate much of the activity. Investment burdens are real, but so are immense cash flows and profits to support that investment. 


And by some financial metrics, valuations do not seem as stretched as they were in the dot-com era, though everyone agrees equity market valuations are high, at the moment. 



We also can’t tell yet what impact artificial intelligence might have on productivity and economic growth, much less future revenues for industries and firms. 


And that might be crucial to the argument that there actually is not an investment bubble; that there are real financial and economic upsides to be reaped; new products and industries to be created. 


There is some thinking by economists that AI impact could be greater than electricity and at least as important and positive as information technology in general. 


General-Purpose Technology

Primary Timeframe of Peak Impact

Estimated Annual Productivity Boost (Peak Rate)

Macro-Level Impact Metric

Steam Engine

Mid-19th Century (Decades after invention)

0.2% - 0.3%

Contribution to annual TFP* or Labor Productivity Growth

Electrification

1920s - 1940s (30+ years after initial adoption)

~0.4% - 0.5%

Contribution to annual TFP or Labor Productivity Growth

Information Technology (IT) / Computers

Mid-1990s - Early 2000s

~1.0% - 1.5%

Acceleration in annual Labor Productivity Growth (U.S.)

Artificial Intelligence (AI) (Current Forecasts)

Early 2030s (7–15 years after GenAI breakthrough)

1.0% - 1.5%

Projected increase in annual Labor Productivity Growth over 10 years



Study/Source

Projection Focus

Estimated Gain (Over Baseline)

Caveats

Goldman Sachs (2023)

Macroeconomic Forecast (Global/U.S.)

7% increase in Global GDP over 10 years; 1.5 ppt annual U.S. labor productivity growth 

Highly optimistic, assuming rapid adoption and task automation.

McKinsey Global Institute (2023)

Economic Potential of Generative AI 

$2.6 to $4.4 Trillion added annually to the global economy.

Based on value from 63 specific use cases across business functions.

Acemoglu (MIT)

Conservative Macroeconomic Model

0.7% increase in TFP  over 10 years (U.S. economy).

More modest, based on historical adoption rates and cost-benefit analysis of task automation.

Brynjolfsson et al. (Micro Studies)

Firm/Task-Level Productivity

10% - 40% increase in productivity for tasks like coding, customer service, and professional writing.

These are early, firm-level gains, which historically take time to translate into aggregate macro statistics.


Each of us has to make a call: bubble or not; big bubble or only “normal” overinvestment?


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