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Letters to the Editor Oct. 16, 2021 – New York Post

The Issue: Suppression of The Posts story on evidence of corrupt deals on Hunter Bidens laptop.

The true collusion that exists in our country is comprised of Democratic left-wingers, Big Tech, mainstream media, social media and well-to-do Hollywood and academic snobs, coupled with spineless politicians who remain silent for fear of cancellation (They got away with it, Oct. 13).

The Biden machine and all associated with it will always get away with it.

Its pathetically shameful that the so-called leader of the free world continues to insult the integrity of the American citizenry and always with an arrogant smile on his face.

Jerry Chiappetta

Monticello

And so the double standard continues.

The mainstream and social media are all complicit in the Biden scandals. Unfortunately theyre still at it.

That said, I hope theyre all happy now with where our country is because of it. I, for one, certainly am not.

One year after The Post exposed Hunters laptop, they still refuse to call it corruption.

B. Tonuzi

Wanaque, NJ

The Posts front page reminds us that the Democrats who currently run this country also control the media and Big Tech.

Objective news reporting went out with Walter Cronkite. New York Times editorials could well be written by Rep. Nancy Pelosi.

No, the Bidens will never be held accountable, just as Hillary Clinton shall never have to answer for Benghazi or the Russian collusion story, and former FBI Director James Comey will prosper as a talk-show guest and author.

The privileged few that are in charge of our government are not accountable to the people so long as the media covers for them.

Robert Mangi

Westbury

I think we can stop pretending the excuse that the laptop wasnt verified is the reason The Posts story was censored.

Believing and advancing that excuse is us playing the game they created. We cant win at their game.

We need to stick with facts. Theyre only pushing a certain narrative. We cannot call them out on hypocrisy and expect things to change. They will not suddenly play fair because we point out what they are doing.

Steve Preziosa

Deptford Township, NJ

The Issue: Katie Courics decision to suppress Ruth Bader Ginsburgs criticism of national-anthem protests.

Katie Couric was about 60 years old when she interviewed Justice Ruth Bader Ginsburg in 2016 (Couric buried truth on Ruth, Oct. 14).

Couric withheld Justice Ginsburgs response because she felt that Ginsburg, who was 83 at the time, may not have gotten what Couric was asking.

No doubt Ginsburg understood the question. Couric didnt like the answer. I guess it didntgo with the lefty philosophy.

Justice Ginsburg had a brilliant legal mind. It is an insult on Courics part to assume the justice didnt understand her because she was 83.

Barbara Brussell

Oceanside

Katie Courics selective editing of her interview with RBG is old news.

This sleazy Today Show presenter famously went out of her way to make conservatives like Sarah Palin and Ann Coulter look bad in her interviews with them.

While she helped RBG, she hurt Palin politically by trying to make this brilliant politician look stupid with gotcha questions and biased editing.

Americas Sweetheart is just that: not a journalist but a Hollywood personality selling her supposed good looks and fake persona.

Andrew Delaney

Jamaica Estates

Want to weigh in on todays stories? Send your thoughts (along with your full name and city of residence) to letters@nypost.com. Letters are subject to editing for clarity, length, accuracy and style.

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Letters to the Editor Oct. 16, 2021 - New York Post

Can’t Miss Episode of the Week: It’s Monica vs. the FBI on ‘Impeachment’ – FOX 28 Spokane

Welcome to our weekly column Cant Miss Episode of the Week! Every Saturday well be spotlighting a different episode of television from that week that we thought was exceptional and a must-see. Check back to see if your favorite show got the nod or to learn about a new one! Spoilers ahead.

American Crime Story: Impeachment opened with a flash-forward scene in which Monica Lewinsky (Beanie Feldstein) is confronted by the FBI and discovers that her friend Linda Tripp (Sarah Paulson) has sold her out. In this weeks episode, which aired on October 12 on FX, we finally catch up to that scene. What we werent prepared for? What came after it. The FBI escorts Monica to a hotel room to be interrogated, but when she makes things difficult for them, they end up holding her there for 11 hours. These federal agents, even after using every unethical intimidation tactic they can think of, are unable to break the 24-year-old terrified Monica, which makes for one highly entertaining hour of television.

The episode smartly frames this as a David vs. Goliath story. As small, tearstained Monica stands surrounded by agents in suits, the camera is wielded to put us into her point of view. It zooms in on an agents finger hovering over the switch hook of the phone, threatening to hang up Monicas call to her mom in case she says something they dont like. When Monica convinces them to let her call her mom back from a payphone downstairs in the mall, the camera focuses on the elevator button as Monica frantically jams it, on the security camera perched in the corner of the elevator, at the various agents stationed around the mall surveilling her, all while the scores swells, intensifying the moment, and Monicas heavy breathing comes through. This is the federal government throwing its weight around to intimidate a young woman, and the episode does an excellent job of making us outraged on Monicas behalf, especially as they repeatedly dissuade her (making it even seem like shes not allowed) to call her lawyer, all while threatening her with decades in prison. What Monica hasnt figured out yet, is that if they havent arrested her, then they have no right to hold her, and she can leave anytime she wants.

And yet, somehow special prosecutor Ken Starrs (Dan Bakkedahl) team has bitten off more than they could chew with Monica. Theyve labeled this sting Operation Prom Night in a case of you-cant-make-this-stuff-up, and its named so, as prosecutor Mike Emmick (Colin Hanks) explains, to signify half hour with a girl in a hotel room. Of course, it doesnt take a half hour, it takes almost a half day. Part of the thrill of watching this episode is Monica making the prosecutors and agents run in circles. She has some amazing one-liners, and Feldstein delivers them with a perfect zing. Shell call the police, if she doesnt hear from me, Monica says with a smug smile to prosecutor Jackie Bennett (Darren Goldstein) to get him to let her call her mom. She follows it up with, You gonna arrest me if I walk out of the room? in the very next scene.

Built into this melodrama is the hilarious absurdity of the prosecutors and FBI just sitting around, going shopping, getting a burger with Monica, while they wait for hours for her mother to arrive, because Monica has refused to talk to them without her. Well, if Ken Starrs team wasnt prepared for Monica, then they really arent prepared for her mom, Marcia (Mira Sorvino), who goes full Jewish mother on them protecting her baby. Shes happy to push Monica into cooperating, that is if she can get it in writing that Monica will receive full immunity. But they cant get Starrs approval on the immunity, because its after 11 oclock at night. The fact that these men were so confident that they could get Monica to roll over on Clinton (Clive Owen) in no time, that they didnt even have a plan for whether they could offer her immunity if she asks for it, proves their immense hubris and incompetency.

Perhaps the most satisfying part of the whole episode? When they finally get Monicas dad, medical malpractice lawyer William H. Ginsberg (Fred Melamed), on the phone, and he curses Emmick out for detaining Monica, and calls out the poor excuses Emmick is giving for why they cant get Monicas immunity in writing (Its the Ritz Carlton. Of course they have a fax machine). When he tells Monica to leave and go home, it is a triumphant moment.

See AlsoRoush Review: Impeachment Is Mostly Monicas Tripp-y StoryThe newest American Crime Story installment is an all-star retelling of the Bill Clinton-Monica Lewinsky scandal from the womens point of view.

But, I have to admit, Ive been beating around the bush here. It doesnt matter if theyd gotten permission for immunity from the very beginning. Nor does it matter if Marcia had agreed to strong-arm her daughter into cooperating. Ken Starrs team ultimately underestimated Monica, because she was never going to betray Clinton like that. Maybe they and her mom could have convinced her to answer questions about the relationship, but she was never going to make recorded phone calls to entrap the President. In a show where everyone is out for themselves, Monica, even after everything, is extremely loyal to Clinton, and somehow, these prosecutors never considered that. If nothing else, you have to admire Monicas strength of character, and underneath all of the theatrics, its what gives the episode its heart.

Other observations we thought made this episode stand out:

The revelation that Linda went shopping after betraying Monica when the two met in the mall is the final nail in Lindas coffin for any sympathy she might have left with viewers.Cobie Smulders cartoonish portrayal of Ann Coulter as she sweeps in with multiple bottles of wine, proclaiming to her colleagues that are listening to the tapes in celebration of their successful coup, is the high camp this series, and really any Ryan Murphy project, needs.Monica saying thank you to Emmick when she leaves the hotel, because hes been playing good cop this whole episode, is outrageous.

FOX28 Spokane

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Can't Miss Episode of the Week: It's Monica vs. the FBI on 'Impeachment' - FOX 28 Spokane

Art And Artificial Intelligence: An Odd Couple? – Science 2.0

This past Thursday I held a public lecture, together with my long-time friend Ivan Bianchi, on the topic of Art and Artificial Intelligence. The event was organized by the "Galileo Festival" in Padova, for the Week of Innovation.Ivan is a professor of Contemporary Art at the University of Padova. We have known each other since we were two year olds, as our mothers were friends. We took very different career paths but we both ended up in academic and research jobs in Padova, and we have been able to take part together in several events where art and science are at the focus. Giving a lecture together is twice as fun!

The event took place in the historic "Sala Rossini" of Caff Pedrocchi (see above), in the town center, and was streamed live for online participants. We were a bit surprised to see that the hall was full of attendees, but in retrospect I think the venue, the timing, and the general organization were all playing their part to maximize the attention that the event received.Given that people are usually more interested in Art than in scientific topics I left to Ivan the better part of the hour we had, and took upon myself the task of introducing the topic, and to walk the audience through a discussion of what really is it that we talk about when we discuss Artificial Intelligence. I helped myself a bit with some material I had used earlier this year when I was invited at the Accademia dei Lincei (by its vice-president Giorgio Parisi, who a week ago won the Nobel prize in Physics!) - I will not repeat a summary of the discussion here as I did it in this other post already(which, amazingly, has already collected over 134000 page views...)

At the end of my half hour, in order to throw a bridge to the following discussion centered on art, I showed and discussed a video which showed how deep learning techniques are used to complete unfinished symphonies and works by classical music giants (Beethoven, Mahler, Schubert) - you can find the relevant material and a video at this link.

Ivan discussed how artificial intelligence is used in contemporary art nowadays. He touched on how artificial intelligence-powered instruments can be used as artistic objects (the shown case was a robotic arm which took the center stage of the Biennale 2019 in Venice) creating a performance of which they are the authors, or as support tools to produce artwork (such as robots that can sculpt marble figures and leave the artist only the final touch), or as the true subjects of the artistic production, such as a robot that creates paintings with acrylic paint on canvas. I will not go into the details of his explanation of the various trends and ideas, but you can certainly listen to the lecture in the linked video below (however, it is in Italian, unfortunately):

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Tommaso Dorigo (see hispersonal web page here) is an experimental particle physicist who works for theINFNand the University of Padova, and collaborates with theCMS experimentat the CERN LHC. He coordinates theMODE Collaboration, a group of physicists and computer scientists from eight institutions in Europe and the US who aim to enable end-to-end optimization of detector design with differentiable programming. Dorigo is an editor of the journalsReviews in PhysicsandPhysics Open. In 2016 Dorigo published the book "Anomaly! Collider Physics and the Quest for New Phenomena at Fermilab", an insider view of the sociology of big particle physics experiments. You canget a copy of the book on Amazon, or contact him to get a free pdf copy if you have limited financial means.

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Art And Artificial Intelligence: An Odd Couple? - Science 2.0

Artificial intelligence is the topic of Oct. 21 Professional Women’s Connection program – Ripon Commonwealth Press

Brent Leland, founder and president of High G, will present Artificial Intelligence Fear or Opportunity Thursday, Oct. 21.

The program is being offered by the Professional Womens Connection Ripon/Green Lake chapter. Networking will begin at 5:30 p.m. and will be followed by dinner and presentation at 6.

The event will take place in the upstairs banquet area of Roadhouse Pizza, 102 Watson St.

What is artificial intelligience? The dictionary defines it as the theory and development of computer systems able to perform tasks that normally require human intelligence, such as visual perception, speech recognition, decision-making, and translation between languages.

Learn how when combined with other emerging technologies, AI can deliver innovative solutions that transform businesses, disrupt markets and leapfrog the competition.

Leland will introduce the topic and begin to answer the questions that many companies are starting to ask: What is all the hype around AI? Is it relevant yet? What are the fundamentals we need to understand? How can we leverage AI with other disruptive technologies (IoT, Automation, AR/VR, etc.) to create new business models or to optimize our internal processes and capabilities? Where do we start?

Leland is the founder of High G, a boutique consulting firm focused on innovative and technology-enabled growth strategies and chaired the advisory board of Advancing AI Wisconsin.

Prior to his consulting career, Leland was the CIO of Trek Bicycle and earlier in his career held various finance, supply chain, engineering and IT roles for Spectrum Brands (formerly Rayovac), Hewlett-Packard, Loral and General Dynamics.

He holds an master of business arts degree from Stanford and a bachelor of science degree in aerospace engineering from the University of Florida.

Hes also an avid home-brewer and serves on the advisory board of Insight Brewing in Minneapolis.

Reservations must be made by Tuesday, Oct. 19 at noon and may be done by registering at https://pwcwi.clubexpress.com.

The dinner will consist of a soup, salad and assorted sandwich buffet with a cash bar.

Dietary requests should be sent to cbornick@vizance.com.

Member price is $15, while non-member cost is $20. Payment may be made online or upon arrival. Reservations made, but not honored, will be invoiced the cost of dinner selection.

Professional Womens Connection is a networking group that provides educational opportunities for area business and professional women, focusing on professional growth, personal development and the enhancement of leadership skills.

It is not a fundraising organization. The money for the annual scholarship comes from member dues, enabling current members to give back to the next generation of professional women.

Those interested in joining Professional Womens Connection may attend as a guest prior to joining the organization. Applications to join Professional Womens Connection are available through membership chair Cassie Bornick at pwc.ripon.greenlake@gmail.com and also will be available at the meeting.

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Artificial intelligence is the topic of Oct. 21 Professional Women's Connection program - Ripon Commonwealth Press

The Fundamental Flaw in Artificial Intelligence & Who Is Leading the AI Race? Artificial Human Intelligence vs. Real Machine Intelligence – BBN…

The Fundamental Flaw in Artificial Intelligence & Who Is Leading the AI Race? Artificial Human Intelligence vs. Real Machine Intelligence

Artificial intelligence is impacting every single aspect of our future, but it has a fundamental flaw that needs to be addressed.

The fundamental flaw of artificial intelligence is that it requires a skilled workforce. Apple is currently leading the race of artificial intelligence by acquiring 29 AI startups since 2010.

Success in creating effective AI, could be the biggest event in the history of our civilization. Or the worst. We just don't know. So we cannot know if we will be infinitely helped by AI, or ignored by it and side-lined, or conceivably destroyed by it.

Stephen Hawking

Source: Reuters

Artificial intelligence is reduced to the following definitions:

1:a branch of computer science dealing with the simulation of intelligent behavior in computers; the capability of a machine to imitate intelligent human behavior;

2: an area of computer science that deals with giving machines the ability to seem like they have human intelligence;

3:the ability of a digitalcomputeror computer-controlledrobotto perform tasks commonly associated with intelligent beings; systems endowed with theintellectualprocesses characteristic of humans, such as the ability to reason, discover meaning, generalize, or learn from past experience;

4: system that perceives its environment and takes actions that maximize its chance of achieving its goals;

5: machines that mimic cognitive functions that humans associate with thehuman mind, such as learning and problem solving.

Source: Deloitte

The purpose of artificial intelligence isto enable computers and machines to perform intellectual taskssuch as problem solving, decision making, perception, and understanding human communication.

In fact, today's AI is not copying human brains, mind, intelligence, cognition, or behavior. It is all about advanced hardware, software and dataware, information processing technology, big data collection, big computing power. As it is rightly noted at the Financial Times Future Forum The Impact of Artificial Intelligence on Business and Society:Machines will outperform us not by copying us but by harnessing the combination of colossal quantities of data, massive processing power and remarkable algorithms.

They are advanced data-processing systems: weak or narrow AI applications, neural networks, machine learning, deep learning, multiple linear regression, RFM modeling, cognitive computing, predictive intelligence/analytics, language models, or knowledge graphs. Be it cognitive APIs (face, speech, text etc.),the Microsoft Azure AI platform, web searches or self-driving transportation, GPT-3-4-5 or BERT, Microsoft' KG, Google's KG orDiffbot, training their knowledge graph on the entire internet, encoding entities like people, places and objects into nodes, connected to other entities via edges.

Source: DZone

Today's"AI is meaningless" and "often just a fancy name for a computer program", software patches, like bug fixes, to legacy software or big databases to improve their functionality,security, usability, orperformance.

Such machines are not yet self-aware and they cannot understand context, especially in language. Operationally, too, they are limited by the historical data from which they learn, and restricted to functioning within set parameters.

Lucy Colback

Todays artificial intelligence (AI) is limited. It still hasa long way to go.

Artificial intelligence can be duped by scenarios it has never seen before.

With AI playing an increasingly major role in modern software and services, each major tech firm is battling to develop robust machine-learning technology for use in-house and to sell to the public via cloud services.

However most of the tech companies are still struggling to unlock the real power of artificial intelligence.

Today's artificial intelligence is at best narrow.Narrow artificial intelligence is what we see all around us in computers today -- intelligent systems that have been taught or have learned how to carry out specific tasks without being explicitly programmed how to do so.

Acording to CB Insights, artificial intelligence companies are a prime acquisition target for companies looking to leverage AI tech without building it from scratch. In the race for AI, this is who's leading the charge.

The usual suspects are leading the race for AI: tech giants like Facebook, Amazon, Microsoft, Google, and Apple (FAMGA) have all been aggressively acquiring AI startups for the last decade.

Among FAMGA, Apple leads the way. With 29 total AI acquisitions since 2010, the company has made nearly twice as many acquisitions as second-place Google (the frontrunner from 2012 to 2016), with 15 acquisitions.

Apple and Google are followed by Microsoft with 13 acquisitions, Facebook with 12, and Amazon with 7.

Source: CB Insights

Apples AI acquisition spree, which has helped it overtake Google in recent years, has been essential to the development of new iPhone features. For example, FaceID, the technology that allows users to unlock their iPhones by looking at them, stems from Apples M&A movesin chips and computer vision, including the acquisition of AI companyRealFace.

In fact, many of FAMGAs prominent products and services such as Apples Siri or Googles contributions to healthcare through DeepMind came out ofacquisitions of AI companies.

Other top acquirers include major tech players like Intel, Salesforce, Twitter, and IBM.

Source: Analytics Steps

Artificial Intelligence with robotics is poised to change our world from top to bottom, promising to help solve some of the worlds most pressing problems, from healthcare to economics to global crisis predictions and timely responses.

But while adopting and integrating and implementing AI technologies, as aDeloitte reportsays, around 94% of the enterprises face potential problems.

This article is not about the AI problems, such as the lack of technical know-how, data acquisition and storage, transfer learning, expensive workforce, ethical or legal challenges, big data addiction, computation speed, black box, narrow specialization, myths & expectations and risks, cognitive biases, or price factor. It is not our subject to discuss why small and mid-sized organizations struggle to adopt costly AI technologies, while big firms like Facebook, Apple, Microsoft, Google, Amazon, IBM allocate a separate budget for acquiring AI startups.

Instead, we focus on the AI itself, as the biggest issue, with its three fundamental problems looking for fundamental solutions in terms of Real Human-Machine Intelligence, as briefed below.

First, it is about AI philosophy, or rather lack of any philosophy, and blindly relying on observations and empirical data or statistics, its processes, algorithms, and inductive inferences, needing a large volume of big data as the fuel to train the model for the special tasks of the classifications and the predictions in very specific cases.

Second, today's AI is not a scientific AI that agrees with the rules, principles, and method of science. Todays AI is failing to deal with reality and its causality and mentality strictly following a scientific method of inquiry depending upon the reciprocal interaction of generalizations (hypothesis, laws, theories, and models) and observable/experimental data. Most ML models tuned and tweaked to best perform in labs fail to work in real settings of the real world at a wide range of different AI applications, from image recognition to natural language processing (NLP) to disease prediction due to data shift, under-specification or something else. The process used to build most ML models today cannot tell which models will work in the real world and which ones wont.

Third, extremeanthropomorphism in today's AI/ML/DL, "attributing distinctively human-like feelings, mental states, and behavioral characteristics to inanimate objects, animals, religious figures, the environment, and technological artifacts (from computational artifacts to robots)". Anthropomorphism permeates AI R & TD & D & D, making the very language of computer scientists, designers, and programmers, as "machine learning", which is not any human-like learning, "neural networks", which are not any biological neural networks, or "artificial intelligence", which is not any human-like intelligence. What entails the whole gamut of humanitarian issues, like AI ethics and morality, responsibility and trust, etc.

As a result, its trends are chaotic, sporadic and unsystematic, as theGartner Hype Cycle for Artificial Intelligence 2021demonstrates.

Source: Gartner

In consequence, there is no common definition of AI, and each one sees AI in its own way, mostly marked by an extreme anthropomorphism replacing real machine intelligence (RMI) with artificial human intelligence (AHI).

Source: Econolytics

Generally, there are two groups of ML/AI researchers, AI specialists and ML generalists.

Most AI folks are narrow specialists, 99.999%, involved with different aspects of the Artificial Human Intelligence (AHI), where AI is about programming human brains/mind/intelligence/behavior in computing machines or robots.

Artificial Human Intelligence (AHI) is sometimes defined as the ability of a machine to perform cognitive functions we associate with human minds, such as perceiving, reasoning, learning, interacting with the environment, problem solving, and even exercising creativity.

The EC High-Level Expert Group on artificial intelligence has formulated its own specific behaviorist definition.

Artificial intelligence (AI) refers to systems that display intelligent behaviour by analysing their environment and taking actions with some degree of autonomy to achieve specific goals

Artificial intelligence (AI) refers to systems designed by humans that, given a complex goal, act in the physical or digital world by perceiving their environment, interpreting the collected structured or unstructured data, reasoning on the knowledge derived from this data and deciding the best action(s) to take (according to predefined parameters) to achieve the given goal. AI systems can also be designed to learn to adapt their behaviour by analysing how the environment is affected by their previous actions''.

In all, the AHI is fragmented as in:

Very few of MI/AI researchers (or generalists), 00.0001%, know that Real MI is about programming reality models and causal algorithms in computing machines or robots.

The first group lives on the anthropomorphic idea of AHI of ML, DL and NNs, dubbed as a narrow, weak, strong or general, superhuman or superintelligent AI, or Fake AI simply. Its machine learning models are built on the principle of statisticalinduction: inferring patterns from specific observations, doing statistical generalization from observations or acquiring knowledge from experience.

This inductive approach is useful for building tools for specific tasks on well-defined inputs; analyzing satellite imagery, recommending movies, and detecting cancerous cells, for example. But induction is incapable of the general-purpose knowledge creation exemplified by the human mind. Humans develop general theories about the world, often about things of which weve had no direct experience.

Whereas induction implies that you can only know what you observe, many of our best ideas dont come from experience. Indeed, if they did, we could never solve novel problems, or create novel things. Instead, we explain the inside of stars, bacteria, and electric fields; we create computers, build cities, and change nature feats of human creativity and explanation, not mere statistical correlation and prediction.

The second advances a true and real AI, which is programming general theories about the world, instead of cognitive functions and human actions, dubbed as the real-world AI, or Transdisciplinary AI, the Trans-AI simply.

To summarize the hardest ever problem, the philosophical and scientific definitions of AI are of two polar types, subjective, human-dependent, and anthropomorphic vs. objective, scientific and reality-related.

So, we have a critical distinction, AHI vs. Real AI, and should choose and follow the true way.

Todays narrow AI advances are due to the computing brute force: the rise of big data combined with the emergence of powerful graphics processing units (GPUs) for complex computations and the re-emergence of a decades-old AI computation modelthe compute-hungry machine deep learning. Its proponents are now looking for a new equation for future AI innovation, that includes the advent of small data, more efficient deep learning models, deep reasoning, new AI hardware, such as neuromorphic chips or quantum computers, and progress toward unsupervised self-learning and transfer learning.

Ultimately, researchers hope to create future AI systems that do more than mimic human thought patterns like reasoning and perceptionthey see it performing an entirely new type of thinking. While this might not happen in the very next wave of AI innovation, its in the sights of AI thought leaders.

Considering the existential value of AI Science and Technology, we must be absolutely honest and perfectly fair here.

Todays AI is hardly any real and true AI, if you automate the statistical generalization from observations, with data pattern matching, statistical correlations, and interpolations (predictions), as the AI4EU is promoting.

Todays AI is narrow. Applying trained models to new challenges requires an immense amount of new data training, and time. We need AI that combines different forms of knowledge, unpacks causal relationships, and learns new things on its own.

Such a defective AI can only compute what it observes being fed with its training data, for very special tasks on well-defined inputs: blindly text translating, analyzing satellite imagery, recommending movies, or detecting cancerous cells, for example. By the very design it is incapable of general-purpose knowledge creation, where the beauty of intelligence is sitting.

Their machine learning models are built on the principle ofinduction: inferring patterns from specific observations or acquiring knowledge from experience, focused on big-data the more observations, the better the model. They have to feed their statistical algorithm millions of labelled pictures of cats, or millions of games of chess to reach the best prediction accuracy.

As the article,The False Philosophy Plaguing AI,wisely noted:

In fact, most of science involves the search for theories which explain the observed by the unobserved. We explain apples falling with gravitational fields, mountains with continental drift, disease transmission with germs. Meanwhile, current AI systems are constrained by what they observe, entirely unable to theorize about the unknown.

Again, no big data can lead you to a general principle, law, theory, or fundamental knowledge. That is the damnation of induction, be it mathematical or logical or experimental.

Due to lack of a deep conceptual foundation, todays AI is closely associated with its logical consequences,AI will automate entirety and remove people out of work,AI is totally a science-fiction based technology, orRobots will command the world?It is misrepresented as thetop five myths about Artificial Intelligence:

That means we need the true, real and scientific AI, not AHI, as the Real-World Machine Intelligence and Learning, or the Trans-AI, simulating and modeling reality, physically, mental or virtual, with its causality and mentality, as reflected in the real superintelligence (RSI).

Last not last, the transdisciplinary technology is S. Hawkings called effective and human-friendly AI and what the Googles founder is dreaming aboutAI would be the ultimate version of Google. The ultimate search engine would understand everything on the web. It would understand exactly what you wanted, and it would give you the right thing. Larry Page

Our approach to artificial intelligence is fundamentally wrong by not training and developing a skilled workforce capable of handling AI. Weve thought about AI the wrong way by focusing on algorithms instead of finding solutions to make AI better and unbiased.

Artificial intelligence has to be optimized based on human preferences so that it solves real problems. Apple is currently leading the race but it's a very competitive battle. American and Chinese tech companies are ahead of European tech companies when it comes to artificial intelligence.

A lot of work will need to be done to avoid the negative consequences of artificial intelligence especially with the adventof artificial superintelligence. The sooner we begin regulating artificial intelligence, the better equipped we will be to mitigate and manage the dark side of artificial intelligence.

Transdisciplinary artificial intelligence as a responsible global man-machine intelligence has all potential to help solve several problems related to AI and consequently improve the lives of billions.

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The Fundamental Flaw in Artificial Intelligence & Who Is Leading the AI Race? Artificial Human Intelligence vs. Real Machine Intelligence - BBN...