Tag: Bjorn Lomborg

  • Can Machines Think?

    Can Machines Think?

    In 1950, the mathematician Alan Turing put forth this question.  Rather than attempt to answer it using conventional logic, he proposed a new disruptive model–the Imitation Game.

    The Problem

    One can look at Alan Turing (1912-1954) as the “father of theoretical computer science and artificial intelligence.”  His contributions to modern computer science cannot be understated.  He posited whether computers could one day have the cognitive capabilities of humans.  Some argue that day has arrived.  Yet, how do we know?

    The Turing Game

    The Imitation Game is played by three people (humans).

    (A) a Man,

    (B) a Woman, and

    (C) an Interrogator (of either gender)

    • The Interrogator, segregated into a separate room, is to determine which of the two players is the man and which is the woman.
    • The interrogator askes the two players (known only as “X and Y” or “Y and X”) a series of questions, the answers to which are written or passed through an intermediary so as not to expose the player’s gender.
    • The role of Player (B) is to assist (C) determine the gender of (A), while (A) is to deceive (C).

    However,

    • “What will happen when a machine takes the part of A in this game?  Will the interrogator decide wrongly as often when the game is played like this as he does when the game is played between a man and a woman?  These questions replace our original, Can Machines Think?

    In his paper, Turing goes to elaborate in detail but for our purposes, the bottom line.

    Will the error rate from a human only decision process be the same as when a machine (digital decision maker) become one of the players?

    Early AI and the Turing Test

    In 1955, McCarthy and Shannon, along with Marvin Minsky and Nathaniel Rochester, defined the AI problem as, “that of making a machine behave in ways that would be called intelligent if a human were so behaving.  In 2013, when asked about Turing’s test in a taped interview, Minsky said, ‘The Turing test is a joke, sort of, about saying a machine would be intelligent if it does things that an observer would say must be being done by a human.’”   This materially connects the early definition of the AI problem to Turing’s test.

    Our intent here is not to split academic hairs but to put forth this concept that predates most readers and is typically not a subject of serious discussion.  The point being that the problem was documented 75 years ago or earlier and this pioneering thinking is the basis of our contemporary definition and implementation of Artificial Intelligence.

    Before Turing

    In one sense, we all stand on the shoulders of giants who preceded us.  “When you think about the origins of computer science, the name Ada Lovelace might not come to mind immediately—but it should.  Born in 1815, Ada Lovelace was an English mathematician and writer whose visionary work laid the foundation for modern computing.  Collaborating with Charles Babbage (considered to be the father of computing), the inventor of the Analytical Engine, Lovelace wrote what is widely recognized as the first algorithm designed for a machine.”

    Ada was the first to explicitly articulate this notion and in this she appears to have seen further than Babbage.  She has been referred to as ‘prophet of the computer age‘.  Certainly, she was the first to express the potential for computers outside mathematics.”  In the computer Familia, we might also want to think of her as the grandmother of computing.

    Other women who played a major role in the evolution of Artificial Intelligence (after Turing) include Navy Rear Admiral Grace Hopper, the inventor of the first compiler for a programming language as well as other innovations.  Many others made significant contributions.  No doubt women will continue to play a vital role with this game changing technology.

    The Solution(s)

    Twelve years have passed since Minsky’s statement that the Turing test is a joke.  Today’s artificial intelligence capability has changed that landscape.

    The argument becomes, not can ‘we’ meet the Turing test, but how far and fast will it be eclipsed.  This suggests exciting times with associated challenges and risks.

    Contemporary Thinking about the Test

    “As AI systems are increasingly deployed in high-stakes scenarios, we may need to move beyond aggregate metrics and static benchmarks of input–output pairs, such as the Beyond the Imitation Game Benchmark (BIG-bench). We should be prepared to evaluate an AI’s cognitive abilities in a way that resembles the realistic settings in which it will be used.  This can be done with modern Turing-Like Tests.”  As shown in the following figure.

    Looking ahead, Turing-like AI testing that would introduce machine adversaries and statistical protocols to address emerging challenges such as data contamination and poisoning.  These more rigorous evaluation methods will ensure AI systems are tested in ways that reflect real-world complexities, aligning with Turing’s vision of sustainable and ethically guided machine intelligence.”

    Computer Game Bot Turing Test

    “The computer game bot Turing test is a variant of the Turing test, where a human judge viewing and interacting with a virtual world must distinguish between other humans and video game bots, both interacting with the same virtual world. This variant was first proposed in 2008 by Associate Professor Philip Hingston of Edith Cowan University, and implemented through a tournament called the 2K BotPrize.”

    This pundit believes that the Turning test dam has been broken, and greater things lie ahead.

    Today’s Father of AI – Geoffrey Hinton, The Nobel Prize in Physics 2024

    “When we talk about artificial intelligence, we often mean machine learning using artificial neural networks. This technology was originally inspired by the structure of the brain.  In an artificial neural network, the brain’s neurons are represented by nodes that have different values.  In 1983–1985, Geoffrey Hinton used tools from statistical physics to create the Boltzmann machine, which can learn to recognize characteristic elements in a set of data.  The invention became significant, for example, for classifying and creating images.”

    Together with John J. Hopfield, they used physics to find patterns in information.  Dr. Hinton has expressed some concerns regarding his (AI) child as he states in the following interview from October 9, 2023.

    Theoretical Basis of Tests

    In this pundit’s opinion, the Turing test used Game Theory as a fundamental underpinning.  A later theory, Relationships, Behaviors and Conditions enables newer derivatives of the original Turing Test as well as supports different approaches to the problem.  These theories are briefly described.

    Finally, it is not necessary to read this section, as these details are provided for completeness and to support the position taken.  We understand that this level of detail is not for every reader.

    Over the past few years, there has been an impassioned argument regarding ‘The Science.”  We addressed this issue in 2020, and the following paragraph is taken from that Blog, They Blinded Me with Science.

    “According to Scientific American, Scientific claims are falsifiable—that is, they are claims where you could set out what observable outcomes would be impossible if the claim were true—while pseudo-scientific claims fit with any imaginable set of observable outcomes.  What this means is that you could do a test that shows a scientific claim to be false, but no conceivable test could show a pseudo-scientific claim to be false.

    Sciences are testable, pseudo-sciences are not.”

    There is academic peer reviewed agreement that both Game Theory and RBC hypotheses are testable.

    Game Theory

    Concurrent with Turing’s Imitation Game development, game theory was being formalized as an approach towards economic behavior modeling among economic ‘rational’ actors.

    Game theory emerged as a distinct subdiscipline of applied mathematics, economics, and social science with the publication in 1944 of Theory of Games and Economic Behavior, a work of more than six hundred pages written in Princeton by two Continental European emigrés, John von Neumann, a Hungarian mathematician and physicist who was a pioneer in fields from quantum mechanics to computers, and Oskar Morgenstern, a former director of the Austrian Institute for Economic Research.  They built upon analyses of two-person, zero-sum games published in the 1920s.”  This treatise was developed from the works of other pioneers of the 1920s and 1930s.

    An interesting side note, “The software industry is a little over half a century old (in 2005), but its roots date back to the textile loom programming of the seventeenth century that powered the Charles Babbage Difference Engine. In 1946, ENIAC (Electronic Numerical Integrator and Computer), the first large-scale general-purpose electronic computer built at the University of Pennsylvania, ushered in the modern computing era.

    That same year (1946), John von Neumann coauthored a paper, Preliminary Discussion of the Logical Design of an Electronic Computing Instrument.  The von Neumann general purpose architecture defines the process of executing a continuous cycle of extracting an instruction from memory, processing it, and storing the results has been used by programmers ever since.“(1

    Perhaps, this is part of the collision of the two major breakthroughs: Game Theory and the modern Computer Architecture.

    In 1996, this author’s doctoral dissertation, Cross Cultural Negotiations between Japanese and American Businessmen: A Systems Analysis, (Exploratory Study) was “An exploratory test of this framework in the context of two-person zero-sum simulated negotiation between Japanese businessmen and American salesmen, both living and working in the United States.  The integration of structural (game theory) and process theories (RBC) into a dynamic systems model seeks to better understand the nature of complex international negotiations.  Advanced statistical techniques, such as structural equation modeling are useful tools providing insight into these negotiation dynamics.”

    This work is the basis for the Cloud based Serious Games used to train Cross Cultural Teams.

    Relationships, Behaviors and Conditions (RBC) Framework

    This model has been part of numerous this pundit’s writings since 1996.  A brief overview from a 2011 article follows.

    “The Relationships, Behaviors, and Conditions (RBC) model was originally developed to address issues around cross cultural (international) negotiation processes.   Relationships are the focal point of this perspective, reflecting commonality of interest, balance of power and trust as well as intensity of expressed conflict.

    Behavior in this model is defined as a broad term including multidimensions – intentional as well as unintentional.  Finally, Conditions are defined as active and including circumstances, capabilities and skills of the parties, culture, and the environment.  Of course, time is a variable in this model as well.

    One key feature of the R B C Framework is its emphasis on interactive relationships while providing an environment for multiple levels of behavioral analysis. This makes it a useful tool to better understand the new regulatory processes currently unfolding.  As we will see later, the number of constituents now engaged belays the use of simplistic linear decision models.”(2)

    Operational Excellence

    The following excerpt from our 2017 Blog, Excellent Behaviors: Assessing Relationships in the Operational Excellence Ecosystem addresses the role of the RBC Framework in organizational excellence.

    “One of the hot business buzzwords of 2017 is “Operational Excellence.” It has been the subject for many pundits, including this one.

    In October and November we published a two-part series, Assuring Operational Excellence from Contractors and Their Subcontractors through BTOES Insights.  Each part included a link to additional information.

    The October edition featured an excerpt of our Implementing a Culture of Safety book. In the November edition we released our new Best Practice solution, Attaining & Sustaining Operational Excellence: A Best Practice Implementation Model. We are proud to make it available herein and in general.

    One of the basic tenets of the RBC Framework is the general construct that Relationships cannot be determined a priori.  The well-used example is a man and a woman sitting on a bench at a bus stop.  Are they married, siblings, coworkers, friends or simply two people waiting to catch the same/different bus?

    Their relationship cannot be known directly. However, their Behaviors will provide insight into how they relate to each other.  Romantic behavior may indicate marriage, dating, an affair etc.  They may still be coworkers but most likely are not strangers.

    The third dimension, Conditions (environment) can be considered the stage upon which behaviors play.  So, what does this have to do with Operational Excellence?

    Another component of our digital environment is Human Systems Integration (HSI). In our forthcoming book, we have defined HSI as, “Human Systems Integration (HSI) considers the following seven domains: Manpower, Personnel, Training, Human Factors Engineering, Personnel Survivability, Habitability, and Environment, Safety and Occupational Health (ESOH).  In simple terms, HSI focuses on human beings and their interaction with hardware, software, and the environment.”

    We have crossed the Turing Rubicon.  How will your organization capitalize on these Opportunities?

    Hardcopy References

    1. Shemwell, Scott M. (2005). Disruptive Technologies—Out of the Box. Essays on Business and Information Technology Alignment Issues of the Early 21st Century. New York: Xlibris. p. 127.
    2. _______ (2011, January). The Blast Heard Around the World. Petroleum Africa Magazine. pp. 32-35.

    Pre order our new book

    Navigating the Data Minefields:

    Management’s Guide to Better Decision-Making

    We are living in an era of data and software exponential growth.  A substantive flood hitting us every day.  Geek heaven!  But what if information technology is not your cup of tea and you may even have your kids help with your smart devices?  This may not be a problem at home; however, what if you job depends on Big Data and Artificial Intelligence (AI)?

    Available April 2025

    For More Information

    Please note, RRI does not endorse or advocate the links to any third-party materials herein.  They are provided for education and entertainment only.

    See our Economic Value Proposition Matrix® (EVPM) for additional information and a free version to build your own EVPM.

    The author’s credentials in this field are available on his LinkedIn page.  Moreover, Dr. Shemwell is the coauthor of the 2023 book, “Smart Manufacturing: Integrating Transformational Technologies for Competitiveness and Sustainability.”  His focus is on Operational Technologies.

    We are also pleased to announce our forthcoming book to be released by CRC Press in April 2025, Navigating the Data Minefields: Management’s Guide to Better Decision-Making.  This is a book for the non-IT executive who is faced with making major technology decisions as firms acquire advanced technologies such as Artificial Intelligence (AI).

    “People fail to get along because they fear each other; they fear each other because they don’t know each other; they don’t know each other because they have not communicated with each other.” (Martin Luther King speech at Cornell College, 1962).  For more information on Cross Cultural Engagement, check out our Cross-Cultural Serious Game.  You can contact this author as well.

    For more details regarding climate change models, check out Bjorn Lomborg and his book, False Alarm: How Climate Change Panic Costs Us Trillions, Hurts the Poor, and Fails to Fix the Planet.

    Regarding the economics of Climate Change, check out our blog, Crippling Green.

    For those start-up firms addressing energy (including renewables) challenges, the author can put you in touch with Global Energy Mentors which provide no-cost mentoring services from energy experts.  If interested, check it out and give me a shout.

  • Who Owns the Intellectual Property Generated by AI?

    Who Owns the Intellectual Property Generated by AI?

    Disclaimer:  The author is not an attorney, and this document is not meant to be a legal opinion in any sense.  Interested readers should contact their legal counsel for any Intellectual Property (IP) determination.  This blog simply raises a question that is generally not addressed regarding ownership rights of the content and products developed using artificial intelligence emerging technologies.  One suspects that going forward, this issue will become more forefront.

    Moreover, this is a fast-moving environment with new local laws and promulgated regulations continuously updated.  Readers are cautioned that some of the materials herein may be quickly dated.  Appropriate legal counsel and other experts should be consulted.

    Like most new software technologies, there is a period of the Wild West where anything seems to go.  Artificial Intelligence (AI) has been no different, but now these horses are beginning to be reined in.

    It is generally accepted that the ownership of content developed using third party software belongs to the generator of said content.  Data, the results of analytics and their interpretation, computer generated audio video materials, etc. are generally covered by this convention and codified by law.  The spreadsheet vendor does not own the financial analysis that leads to major value add to the firm.  Conversely, if the financial model is flawed, the software developer is generally not liable.

    However, Artificial Intelligence is a different technology model.  It dictates that organizational AI policies recognize the disruptive change caused.  For example, the publisher of my new book, Navigating the Data Minefields: Management’s Guide to Better Decision-Making has issued its author, AI Policy.

    An AI engine searches for data and information from a wide variety of sources.  It then amalgamates and analyzes and/or develops what some consider a new product or solution–document, image, or new approach/model, e.g. medical technique.  However, did the AI secure permission from the data owner(s) or even cite its source(s)?  The most likely answer is no.  A follow-on statement might be, “why do we need that?”

    Copyright

    According to the U.S. Copyright Office, Copyright is a type of intellectual property that protects original works of authorship as soon as an author fixes the work in a tangible form of expression.  In copyright law, there are a lot of different types of works, including paintings, photographs, illustrations, musical compositions, sound recordings, computer programs, books, poems, blog posts, movies, architectural works, plays, and so much more!”  The Copyright Office goes on to state, “Works are original when they are independently created by a human author and have a minimal degree of creativity.”
     
    In the UK, “Two conflicting views emerged.  The tech sector believes the copyright to AI-generated content should belong to users, whereas the creative sector wants this content to be excluded from ownership completely.”
     
    From a 2022 Reuters article about a lawsuit over, Gen AI generated content.
    “Accordingly, unless a generative AI is used in such a manner that its output would be recognizably linked to some person or entity who is likely to actively police the use of their works and whose works are likely to be registered, the risk of the generative AI’s users being sued for infringement seems low.
     
    In practice, the legal issues surrounding generative AI mean that its outputs should be handled in a manner similar to materials covered by open source or creative commons licenses — i.e., with policies and procedures which ensure use only in appropriate manners and cases.  This includes determining if a project where generative AI would be used is something whose results would need to be protected and, if so, determining whether tools are available for that protection other than copyright.
     
    It also includes avoiding high risk uses, such as using generative AI to attempt to replicate the work of a particular artist whose materials were used as training data. However, with intentionality and forethought, the risks associated with generative AI can be managed, and this new technology can bring tremendous benefits to those who deploy it intelligently.
     
    Later, we will address two other types of Intellectual Property, Patents and Trademarks.  Both have a lengthy pedigree as well that must be considered in our new AI era.
     

    Data Privacy

    Data privacy and security are major issues organizations must deal with, and the regulatory burden is onerous.  Most readers have heard of HIPPA; the need to keep individual medical records confidential.  HIPPA is symptomatic of the need to treat ALL data in secure and private.

    From the GDPR, “The General Data Protection Regulation (GDPR) is the toughest privacy and security law in the world.  Though it was drafted and passed by the European Union (EU), it imposes obligations onto organizations anywhere, so long as they target or collect data related to people in the EU.  The regulation was put into effect on May 25, 2018.   The GDPR will levy harsh fines against those who violate its privacy and security standards, with penalties reaching into the tens of millions of euros.”

    The EU regulations are viewed as the ‘gold standard’ and others worldwide are in the process of emulating them.  Increased date management regulations are a given, as is their impact on AI learning.

    IP Guardrails

    Individuals and organizations jealously guard their intellectual properties, as they should.  Just think of the significant value Disney has built over 100 years from a cartoon mouse.

    Some may see AI as an assault on the organization’s core and take legal action they believe appropriate.  Others will try to capitalize on loopholes.  This is not different behavior from the IP current practice.

    AI advocates will find themselves in the midst of what could be a significant number of legal challenges as the technology and its regulation matures.  The current long-standing legal battles over social media platforms is but one example of this process.

    IP Ownership of AI Generated Content: The Movie

    Summary of the Video

    Briefly, in the video dated January 7, 2024, the attorney makes the following key points:

    • Copyright extends only to humans and AI content generated by products such as ChatGPT do not meet the ‘human’ authorship test.  However, if a human is actively engaged in the development of (and change) said content, things get less clear.
    •  Regarding AI generated inventions, Patent law becomes more relevant.  The speaker argues that ‘at least today’ patent laws mirror copyright because human creativity is key.
    • As far as AI generated Trademarks are concerned, these products such as logos, tag lines, etc. do not enjoy original authorship protection, but their ‘first use’ has precedence.  For more information he references the U.S. Patent and Trademark Office (USPTO).
    • Finally, he states that this area of the law is unfolding, and change is likely.

    These points were transcribed by this pundit.  As such, they are only his perception and must be viewed skeptically when addressing a specific ‘real’ question regarding this subject matter.  The attorney’s fifth bullet is probably the most important one.

    Final Thoughts

    Intellectual Property ownership is an area that technologists and software developers are generally not involved with.  Additionally, many have historically treated the content found online as if it is in the public domain.  We now know that authorship should be attributed.

    For most of the things individuals and organizations do with online content this is not an issue.  Blogs, political opinion and technology critique among others come to mind.

    However, AI has the potential to change fortunes (wealth, reputation and other) of individuals and organizations.  Finally, the regulatory environment is evolving, and dramatic changes are most likely forthcoming.

    Individual creators, management and others have a responsibility to assure AI developed content meets, and not just the regulations (in each jurisdiction the firm operates in).  Moreover, governance enforcement models must add AI technologies and assure that others are not infringing on the firm’s IP with potential risks of capital and reputational loss.

    One Last Thing

    With the need to protect data as well as assure all key intellectual property is protected, will this negatively impact on the output of AI models?  What will be the basis of gen AI training if it cannot gain access to the universe of data they require?  And yes, I know we often sign away certain rights when we engage with some organizations, but we can ‘opt out’ of allowing access to our data.

    Another Blog for a later time but in the meantime, just a question.

    How is your organization addressing these and other Intellectual Property issues emerging from Gen AI and other content developers?

    Pre order our new book

    Navigating the Data Minefields:

    Management’s Guide to Better Decision-Making

    We are living in an era of data and software exponential growth.  A substantive flood hitting us every day.  Geek heaven!  But what if information technology is not your cup of tea and you may even have your kids help with your smart devices?  This may not be a problem at home; however, what if you job depends on Big Data and Artificial Intelligence (AI)?

    Available April 2025

    For More Information

    Please note, RRI does not endorse or advocate the links to any third-party materials herein.  They are provided for education and entertainment only.

    See our Economic Value Proposition Matrix® (EVPM) for additional information and a free version to build your own EVPM.

    The author’s credentials in this field are available on his LinkedIn page.  Moreover, Dr. Shemwell is the coauthor of the recently published book, “Smart Manufacturing: Integrating Transformational Technologies for Competitiveness and Sustainability.”  His focus is on Operational Technologies.

    We are also pleased to announce our forthcoming book to be published by CRC Press in 2025, Navigating the Data Minefields: Management’s Guide to Better Decision-Making.  This is a book for the non-IT executive who is faced with making major technology decisions as firms acquire advanced technologies such as Artificial Intelligence (AI).

    “People fail to get along because they fear each other; they fear each other because they don’t know each other; they don’t know each other because they have not communicated with each other.” (Martin Luther King speech at Cornell College, 1962).  For more information on Cross Cultural Engagement, check out our Cross-Cultural Serious Game.  You can contact this author as well.

    For more details regarding climate change models, check out Bjorn Lomborg and his book, False Alarm: How Climate Change Panic Costs Us Trillions, Hurts the Poor, and Fails to Fix the Planet.

    Regarding the economics of Climate Change, check out our blog, Crippling Green.

    For those start-up firms addressing energy (including renewables) challenges, the author can put you in touch with Global Energy Mentors which provide no-cost mentoring services from energy experts.  If interested, check it out and give me a shout.

  • Crippling Green

    Crippling Green

    “Yes, hope is a strange thing.  Peace at last.  But at what price?”

    Great Societies have been lost in the past–a number of times.  There is no reason to believe our current crop is immune!

    Ariel Durant, the co-author of the 11 volume tome, The Story of Civilization is credited with, “A great civilization is not conquered from without until it has destroyed itself from within.”

    The United States is currently engaged in a great climate civil war.  One one side there are those who advocate for expensive and expansive economic and social investment in so-called Climate Change.  Climate Change Skeptics, often derided by the aforementioned group as Climate Deniers are those who question the Scientific Consensus and the cost and return on the investment to become Net Carbon Zero.  By the way, science is never settled.

    From the observer’s perspective, there is a long term effort to shut down debate, as is typical in today’s society largely by name calling, shaming and even threats.  Dissenters seemingly risked their professional reputation, loss of grants, even safety, and more.

    And Now Questions

    Funny thing happened on the road to Net Zero.  Questions began to be raised about the efficacy of renewables, and their Total Lifecycle Cost.  Moreover, the heavy metal cost of ecological damages of mining were raised and are now under scrutiny.

    The Let Them Eat Cake Strategy

    Transitions, especially Transformations are painful.  Based on Joseph Schumpeter’s Creative Destruction, “The incessant product and process innovation mechanism by which new production units replace outdated ones,” transformation is a linchpin of Capitalism.  Now, some believe socialism is the future, history does not prove their point.  Are any to turn in the Smart Phones for the old black dial model tethered to a wall?

    However, when this natural process is driven by the ‘heavy hand’ of non-economic actors, perturbations in the process can cause warps in the economic space time continuum.  Some examples of overreach include:

    Agriculture

    Some argue that, “Agriculture accounts for 16 to 27% of human-caused climate-warming emissions.”  Nitrous oxide (N2O) is the named culprit (according to the Intergovernmental Panel on Climate Change this chemical accounts for 6% of greenhouse emissions).

    It is reported that in the Netherlands agricultural sector system manure is high in nitrous oxide.  Emotions are apparently running high between Dutch farmers who see a targeted 30% reduction in livestock heads and the government whose position seems to be this is an “unavoidable transition.”  Jobs are at risk!

    Gasoline

    It seems the President of the United States is celebrating high gasoline prices as part of “an incredible transition” to move away from fossil fuels.  As with the Dutch case, this seems to place the biggest burden on the so-called ‘little guy.”

    Truckers

    We all remember the trucker protests in Canada and the United States in early 2022, mostly regarding Covid-19 restrictions.  Around the world there was a strong level of solidarity.

    This sector is also not immune to Climate Change driven initiatives.  From one source there are two key considerations:

      • The proposed 2027 new emissions regulations for diesel-powered trucks, and
      • The 2030 goals from some states and their aggressive objectives for zero-emissions vehicle sales.

    One might project similar (Covid-19 driven) responses to these new mandates.  This might be another major negative impact to supply chains for all sectors.

    Electric Vehicles

    The US Secretary of Transportation has suggested that everyone would benefit from an EV.  At the time of his statement (October 2021), the average cost of an EV was $55,676 while a compact car was $25,240 and and SUV was $34,122.

    By this pundits calculation (at $4 a gallon), break even for the SUV is 5,389 gallons of gasoline at 20 miles per gallon.  As mathematicians will say, it follows that break even is almost 108,000 miles of driving.  Years of driving for most of us and what shape will the battery be in at that point.  While some argue the maintenance costs are less for EV, most consumers are driven by out-of-pocket buying decisions.  Then there the disposal costs of EVs at end of life (see Other Blogs below for details).

    Fracing

    Perhaps one of the more emotional fossil fuel development process is Fracing (not Fracking by the way).  Some believe the damage to the environment from fracing is the greatest of any human endeavors.

    On the other hand, the value from fracing includes:

      • The shale revolution mad the United States self-sufficient in oil and gas for the first time since 1947
      • In 2022, the US is the largest exporter of LNG (liquified natural gas)

    Given the current geopolitical situation, easy access to low-cost traditional energy sources is at least near time high value.

    There are many other areas of controversy regarding this issue.  More than likely both sides will continue to make their points and emotions will continue to play a major role.  There will be Winners and Losers over the next few years as this debate plays out.  Honest scientific debate can mitigate the emotional and political agenda at play.

    Are Green Initiatives Making the Problem Worse?

    Per the NBC piece aired on September 20, 2022, illegal gold mining in Peru not only releases mercury into the ecosystem but adds to environmental carbon when the soil is disturbed.  This makes this pundit wonder if all the heavy metal strip mining to fuel EVs will do the same in addition to its other environmental problems (see Heavy Metal Rocks below)?

    Moreover, this issue about strip mining and carbon release has been known for a long time.  In 1977 the peer reviewed scholarly article, Soil fungal populations and soil respiration in habitats variously influenced by coal strip-mining addressed this issue.

    Likewise, NBC reported on illegal gold mining in Peru in 2019.   Point being, this information is not new nor is The Science newly discovered.

    Unintended Consequences run amok?  Are lithium batteries destroying the planet?

    And the Winner Is?

    No one!  If we do nothing, we are told the oceans will rise and temperatures will become unbearable causing all manner of weather driven catastrophes as well as increased intensity and frequency of forest fires.  On the other hand, spending the multiple trillions of dollar will enrich the (very) few at the cost of economic collapse for the many.

    Lose–Lose Deal.  Either way our world ends or our economies end.  Is there a difference?

    According to Merriam-Webster, “A pyrrhic victory is a victory that comes at a great cost, perhaps making the ordeal to win not worth it.  It relates to Pyrrhus, a king of Epirus who defeated the Romans in 279 BCE but lost many of his troops.”

    Decisions–Decisions

    So Global Society is faced with two choices.  The earth is in physical peril unless we spend malevolent amounts of money as fast as possible.  Or, as a result of economic destruction on a global scale if this level of spending adds little if any value.  Then we will all live in poverty or worse.  Either way, Human Extinction is one end game proclaimed by many.  The very definition of a Dilemma.

    According to Merriam Webster, one definition of Hobson’s Choice is, “The necessity of accepting one of two or more equally objectionable alternatives.”  Not a great place to find oneself.

    The ancient Romans apparently made poor decisions as a mature and wealthy society.  It cost them dearly.  Are we now?

    How are You and Your Organization Assessing the Risk of Investing in Climate Change (Conventional Wisdom) Scenarios or Alternative Approaches?

    Other Recent Relevant Blogs

    These blogs in this series address this particular issue in greater detailed.  Together, they form a more complete picture of the author’s position on relevant components discussed here as well aligned subjects.  In reverse chronological order:

    For More Information

    Please note, RRI does not endorse or advocate the links to any third-party materials herein.  They are provided for education and entertainment only.

    The author’s credentials in this field are available on his LinkedIn page.

    Disclaimer, the author has no personal or business relationship with Bjorn Lomborg or his publications other than reading and commenting on his latest book, False Alarm: How Climate Change Panic Costs Us Trillions, Hurts the Poor, and Fails to Fix the Planet.

    Second Disclaimer, Ali Daneshy was interviewed for the referenced Forbes article on Fracing.  This author knows Mr. Daneshy and worked with him for many years at Halliburton.

    For those start-up firms addressing energy challenges, the author is a member of Global Energy Mentors which provide no-cost mentoring services from energy experts.  If interested, check it out and give us a shout.

    For more information on Cross Cultural Engagement, check out our Cross Cultural Serious Game.  You can contact this author as well.