Monday, June 1, 2026

Motorola Solutions To Buy Anti-Drone Tech Co. For $1.5 Billion (MSI)

From Globes (Israeli business news), June 1:

Motorola Solutions to buy Israeli co D-Fend for $1.5b 

The Ra’anana-based startup, which has developed counter-drone technology, will become the most expensive-ever acquisition of an Israeli defense company.

Motorola Solutions (NYSE: MSI) today announced it has entered into a definitive agreement to acquire Israeli counter-drone technology company D-Fend Solutions for $1.5 billion cash. This is the biggest ever acquisition of an Israeli defense technology company.

Motorola Solutions has been active in Israel since the 1960s and has hundreds of employees in Israel developing communication and liaison systems for the police, the army and security organizations. The Israeli acquisition will bring Motorola Solutions into the drone market in an activity that will continue to operate from D-Fend’s headquarters in Raanana, with the startup's 250 employees to move to Motorola in exchange for tens of millions of dollars in bonuses and shares.

D-Fend has developed a drone interception system that swiftly locates drones, takes control of them remotely using radio waves, and lands them safely in a place where they will not cause collateral damage. Despite the variety of potential military applications on the battlefields of Lebanon and Ukraine, the company’s technology is mainly used for civilian facilities: airports, border stations, stadiums and strategic facilities that require special protection....

The company is not a startup so we changed the headline.

"Prediction market traders eye up to $260,000 salaries at hedge funds"

But if you are working at a hedge fund where are you going to get your material non-public information?

Maybe that's why the salary is as low as it is.

From FinancialNews, London, May 24:

AQR Capital Management is joining the rush of financial heavyweights into event-based markets 

Hedge funds and proprietary trading firms are floating salaries of up to $260,000 to build out prediction markets desks, as an event-betting craze sparks a battle for talent among institutional adopters.

Cliff Asness’ AQR Capital Management is the latest US trading giant to set up a prediction markets unit, with the hedge fund currently hiring for a vice-president to build quantitative models to trade around professional sports.

The role is expected to have a salary of between $235,000 to $260,000, alongside an annual discretionary bonus, according to AQR’s job listing. It is seeking candidates with skills in computer science as well as “familiarity with the basic rules of major sports”, including the top US leagues for baseball, basketball, American Football and hockey.

Asness, AQR’s billionaire co-founder and chief investment officer, has previously criticised the “gamification” of markets but said last year that recent developments in sports betting had thrown up opportunities for his $189bn money manager.

AQR’s job listing says the successful candidate will sit within a “quantitative research team focused on prediction markets”, with a supervising portfolio manager. The firm declined to comment further.

“The multi-manager platforms didn’t get to where they are by ignoring inefficiency,” said Sean Sweeney, managing director at hedge fund recruitment firm CW Talent Solutions.

“They built entire businesses on finding it before the market caught up. Prediction markets are the next frontier of that same logic.”

Alongside direct trading on prediction markets, the platforms offer rich data on real-world events with which hedge funds may look to bolster their bets in other markets.

Chicago-based DRW, one of the world’s largest proprietary trading firms, has also been hiring for a new desk focused on platforms such as Polymarket and Kalshi in recent months.

DRW is offering an annual base salary of between $175,000 and $200,000 for a prediction markets trader, according to one job listing currently on its website....

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Fifty grand a month and half the profits seems fair. 

"Ranking Venture Investors"

From the Social Science Research Network, May 27:

Abstract

We develop a new ranking algorithm of venture capital (VC) firms and individual VC investors. Our algorithm emphasizes the importance of valuation, dilution, net profits, value add, and human capital decay. For illustration, we apply the methodology to rank the top 100 US-based individual VCs and top 100 US-based VC firms for 2023, drawing on more than 230,000 investments by over 13,000 VCs. Our rankings differ sharply from the Midas list published by Forbes: only 42 of our top 100 individual VCs appear on the 2023 Midas list, and the correlation of rankings among investors ranked in the top-100 by both lists is approximately 0.27. We attempt to replicate the Midas methodology and find significant inconsistencies that cannot be explained by methodological differences alone. 

SSRN download page 

SEC Statement: By Commissioner Hester M. Peirce "Climate Change: Statement on Proposed Rescission of Climate-Related Disclosure Rules"

From the United States Securities and Exchange Commission, May 29:

Commissioner Hester M. Peirce
May 29, 2026

The Commission has struggled with the climate disclosure proposal for years. Today we are proposing to rescind the rule that the Commission adopted in 2024. I support the rescission proposal and look forward to hearing feedback from the public.

I understand why some people strongly support a climate disclosure rule from the SEC. Many people believe that climate change is an existential threat that justifies commandeering any tool to address the problem. Among the tools they eye is the corporate disclosure framework. Climate disclosure advocates point to other jurisdictions that have turned to their securities disclosure regimes for information about greenhouse gas emissions and other climate-related issues. They have watched as those coopted disclosure regimes have reshaped not just what companies disclose, but the products they make and the way they make them. Designing securities disclosure to be a lever of change, however, exceeds the authority Congress gave to the SEC. Congress directed us to establish a disclosure regime that helps investors understand the company’s fundamental business and financial characteristics. As I have explained elsewhere, the target audience of our disclosures is investors as a class.[1] Investors as individuals are not a uniform group, but as a class they share a common interest in financial returns. That defining characteristic of investors must focus our mandated disclosures.

While Congress has told us to consider whether additional disclosure is necessary or appropriate in the public interest the Supreme Court has clarified that we must view “public interest” through the lens of our mission. Unless Congress explicitly has directed otherwise, we do not have the authority to craft boundless disclosure rules to respond to stakeholder demands, investors’ idiosyncratic interests, or our own curiosity. When we proposed and adopted the climate rule, I was concerned that we were exceeding our statutory authority by crafting a highly prescriptive and expansive set of disclosures designed for a purpose other than informing investors. Today’s proposal sets forth these concerns and affords the public the opportunity to weigh in.

Adhering to a merit-neutral, materiality-centric disclosure framework is not only consistent with the SEC’s statutory authority, but also good for the health of our capital markets. An effective disclosure framework helps capital flow to its highest and best use. When money gets to the people who can put it to productive use, society benefits. Allocating capital into the right hands means more cures for disease, greener energy, technologies that make our lives easier and more enjoyable, cleaner water and air, better infrastructure, healthier and more abundant food, and educational tools that empower our children to become the next generation of problem-solvers. This proposal, if adopted, is a step toward restoring our disclosure framework to its intended purpose and thus to helping our capital markets better serve society.

[1] Commissioner Hester M. Peirce, The Art and Science of Materiality: Remarks at SEC Speaks (Mar. 19, 2026), available at: https://www.sec.gov/newsroom/speeches-statements/peirce-remarks-sec-speaks-031926. 

Who Will Buy These Giant IPOs After They Begin Trading? You Will (SpaceX; OpenAI; Anthropic et al.)

Or, more accurately, the index funds in your retirement account will.

First up, from Neue Zürcher Zeitung's TheMarket.ch, May 27: 

"These Monster IPOs Expose the Dark Side of Passive Investing"

SpaceX, OpenAI, and Anthropic are rushing to go public. Larry McDonald, founder of «The Bear Traps Report» and New York Times best-selling author, warns that their accelerated inclusion into indices like the S&P 500 amounts to market manipulation. He explains why he prefers to bet on commodities and traditional Old Economy companies. 

Deutsche Version

The impressive stock market rally seems virtually unstoppable. Higher energy prices, rising interest rates, and mounting signs of excess in sectors like the semiconductor industry leave investors unfazed. Fueled by the artificial intelligence boom, the benchmark S&P 500 index continues to hit one record high after another.

With the announcement of SpaceX’s IPO, tech stocks are moving even further into the spotlight. Elon Musk is reportedly planning to list his space company in New York within a matter of weeks. OpenAI and Anthropic, the two largest private AI firms, are likewise forging plans for an imminent debut. These three transactions are expected to break all Wall Street records.

Larry McDonald views this with a sense of unease. «I fear there’s a good chance the market gets overwhelmed,» says the founder of the research service «The Bear Traps Report» and author of the bestseller «How to Listen When Markets Speak». In every cycle, he notes, there is a spectacular deal or IPO that marks the peak. That could be the case now. Furthermore, he points out that AI stocks currently account for nearly 50% of the S&P 500’s market capitalization. 

«If these new heavyweights are added, everyone’s 401 (k) is almost certain to face a deathly overdose.»

The veteran investor and former Lehman trader is particularly troubled by the fact that SpaceX, OpenAI, and Anthropic are slated to be fast-tracked into major indices like the S&P 500 and the Nasdaq 100. In an in-depth interview with The Market NZZ, which has been lightly edited, he explains why he believes this amounts to a raid on the portfolios of many investors. He also outlines why he still anticipates a major rotation of capital into the energy, commodities, and industrials sectors.

The stock market continues to forge ahead undeterred, despite higher energy prices and rising interest rates. How do you explain this impressive rally?
Once again, the stock market is drunk on a narrative. Artificial intelligence is the new everything, and you see it everywhere: on newspaper front pages, at cocktail conversations, and on the balance sheets of Big Tech corporations, which are bloated by massive capital investments. Potential earnings of future years are being prematurely priced in. Investors are betting that AI will yield exponential returns, while the risks such as friction or competition are largely ignored.
 
The headlines currently revolve around the planned mega-IPOs of SpaceX, OpenAI, and Anthropic. What do these three transactions signify with regard to the broader environment?
I fear there’s a good chance the market gets overwhelmed. Every cycle features a marquee deal or IPO that defines its peak. In the credit boom of the 1980s, it was KKR’s takeover of consumer goods giant RJR Nabisco; in the tech, media, and telecom bubble of the late 1990s, it was the mega-merger of AOL and Time Warner; and during the excesses of the housing market, it was the record-breaking sum Sam Zell secured in early 2007 by selling his real estate empire.
 
And today’s counterpart could be these three IPOs?
It certainly wouldn’t surprise me. These monster IPOs amount to a coup of the century. If you do the math, the valuations of these three companies have exploded in a short period. A year ago, they were valued at roughly $760 billion combined: SpaceX at $400 billion, OpenAI at $300 billion, and Anthropic at $61 billion. Those were already hefty figures, but SpaceX’s valuation is now estimated at $1.5 trillion, while Anthropic and OpenAI stand at $1.1 trillion and $825 billion, respectively. That brings the total to around $3.5 trillion. Basically, they tripled in a year, which is pure madness.
 
Why?
Because a group of billionaires is attempting to seize the moment to dump their stakes onto the public at these bloated valuations. What is particularly scandalous is that these companies are to be admitted into major indices through an accelerated entry process. To be included in the flagship S&P 500, for instance, a company must typically be publicly traded for at least a year and report a cumulative profit over the previous four quarters. That these mandates, including standard free-float thresholds, are now being waved is almost criminal.
 
SpaceX just reported a $4.3 billion net loss for the first quarter alone according to its IPO prospectus. Is a company like this even fit for an IPO?
As usual, Wall Street analysts will brush aside such concerns with plenty of wishful thinking. SpaceX’s stated goal is to build a de facto monopoly on space-based data centers; essentially a modern rail system for the AI era. Such a dominant market position would imply immense pricing power, which is intended to make the entire enterprise highly profitable someday and justify the valuation. How realistic this business model is remains to be seen. But the timeline for its realization is quite grotesque.
 
SpaceX founder Elon Musk speaks of two to three years.
Exactly. Even Amazon founder Jeff Bezos, who runs his own aerospace company, concedes that it will likely take twice as long – and even that appears highly optimistic. The fundamental issue, however, is that potential delays will push expected profitability far out into the future. From my perspective, investing in SpaceX right now is akin to buying Amazon in the spring of 2000 at the peak of the dot-com bubble: back then, investors prematurely priced in enormous future earnings potential. Amazon ultimately did turn out to be a phenomenal success story, but its stock initially lost more than 90% during the dot-com crash.
 
According to index providers, however, the fast-tracked inclusion of mega-caps like SpaceX ensures that a widely followed benchmark like the S&P 500 accurately reflects the broader market. How valid is this argument?
That is a nice PR phrase, but my criticism targets a more vital aspect: the dark side of passive investing, as I call it. In my book, «How to Listen When Markets Speak», I devoted an entire chapter to this issue. Today, there are countless funds tracking the S&P 500 and other major indices. Passive investment strategies have reached such a massive volume that the market becomes gameable. If a company is included in a major index, it is practically guaranteed that the stock price will rise sharply ahead of time because passive funds are forced to buy the shares. A textbook example is sportswear manufacturer Lululemon. When its inclusion in the S&P 500 was announced in October 2023, the stock shot up over 10% the next trading day.
 
So you’re saying that an expedited inclusion process for SpaceX, OpenAI, and Anthropic would virtually guarantee sufficient demand?
Throughout my career in the markets, I have witnessed scandals time and again. If you pay close attention, you can usually spot that something is amiss beforehand. Yet, the scandal is only revealed after the fact, public outrage never occurs until it is already too late. A classic case is the Ponzi scheme of Bernie Madoff, one of the biggest scandals in financial history. It only unraveled in late 2008 in the turmoil of the banking crisis.
 
How would an accelerated index inclusion affect SpaceX stock?
Based on its current valuation, SpaceX would debut among the top ten largest constituents in the S&P 500. Projections suggest that under a fast-track framework passive funds tracking the index would have to buy roughly 19% of the publicly traded shares within six months. Furthermore, funds tracking the Russell 1000 and the Nasdaq 100 would likely absorb another 5.5% just weeks after the IPO. If you throw in active mutual funds benchmarked to these indices, passive strategies would have to hold nearly half of all SpaceX shares in public hands. It is mind-boggling, and yet hardly anyone loses a word over it.
 
Why do you fear this story will not end well?
With accelerated index inclusion, the retirement savings of broad swaths of the population – particularly in the U.S – are effectively being hijacked. A disturbingly large portion of American household wealth is already concentrated in AI stocks. This is a classic setup that will culminate in a major scandal during the next market downturn, as the public will be left holding the bag. Before the collapse of Lehman Brothers in the fall of 2008, the financial sector accounted for about a quarter of the S&P 500, which was already considered unhealthy at the time. Today, AI-related tech stocks account for nearly 50%. If these new heavyweights are added, everyone’s 401 (k) is almost certain to face a deathly overdose.
 
Is there even enough liquidity to absorb these three giants IPOs?
That’s precisely my point. Word is that some large sovereign wealth funds in the Middle East are wounded due to the war. In the U.S., various banks have overextended themselves with share buybacks and leveraged buyouts, with Citigroup and Bank of America being particularly heavily exposed. These IPOs could place the system under even greater stress. I therefore believe that this is going to be the story of the year: the ripple effects of these IPOs and LBOs on banking liquidity....

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And at Hedgeye, May 29: 

When Passive Money Meets Mega IPOs | Protect the Pile Episode 13 

In this episode of Protect the Pile, the team covers liquidity-driven market strength, record S&P levels, resilient global equities, and oil’s strange weakness despite tightening inventories. Patrick Kent, Sam Rahman, David Salem, and new HAM portfolio manager Brooks Cutwright discuss index mechanics, free-float rules, profitability tests, and how massive IPOs could reshape passive buying. Sam shares takeaways from Bernstein’s conference, including AI data-center delays, power constraints, and semiconductor momentum. The panel also debates whether energy markets are mispricing crude shortages, potential demand destruction, and late-summer fuel risks. Brooks introduces his index-rebalance background and explains why index inclusion matters....

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Capital Markets: "Oil Gains on Apparent Lack of Middle East Progress"

From Marc Chandler at Bannockburn Global Forex:

The war in the Middle East continues to hang over risk-taking appetites the sword of Damocles. There appears to have been little progress over the weekend, even though a US decision was expected after the meeting in the White House Situation Room at the end of last week. Reports suggest there have been a series of skirmishes over the weekend, and Israel intensified its assault on Lebanon. The US and Iran reportedly are proposing amendments to a draft deal. Both the Washington and Tehran apparently think they have the superior hand. Oil prices are 3-4% higher today. 

The dollar is consolidating mostly within the ranges seen at the end of last week. The market continues to test the resolve of Japanese officials. The greenback is holding above JPY159 and has not settled below there since last Monday. Most emerging market currencies are beginning the week softer, but the Mexican peso is a notable exception and the PBOC set the dollar’s fix at a new multiyear low though the offshore yuan consolidated its recent gains. The first round of the Colombian presidential election saw the outsider De La Espriella finish ahead. Although a run-off will be held later this month, the results will likely be seen as market friendly....

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Based on that first sentence it appears Mr. Chandler thinks faster than he types.

Been there, done that, sayeth [the] typo guy. 

Sunday, May 31, 2026

Taipei's "Computex 2026 Will Be NVIDIA’s Biggest Event Of The Year. Here’s What To Expect" (NVDA)

From WCCFTech May 30:

Although CES 2026 was a massive disappointment for consumers, Computex 2026 looks to inject some much-needed excitement back into the beleaguered tech space.

In what is arguably the biggest consumer hardware launch of the year, Nvidia and ARM have already started teasing their highly anticipated N1X laptop chip, an APU based on the same GB10 chip used in the DGX Spark. Now, as Jensen prepares to take the stage at Computex next week, let's take a look at what Nvidia has planned for the show.

Nvidia's Laptop Chip Finally Launches, Packing 20 CPU Cores With An RTX 5070 Equivalent GPU 

Nvidia, Arm, and Microsoft have taken Twitter by storm recently, with a series of cryptic X posts declaring "A new era of PC", accompanied by coordinates pointing to Taipei Music Center. This obviously refers to the much-anticipated N1X laptop APU, packing 20 ARM cores and 6,144 CUDA cores into a single package, all sharing a unified memory pool over a 256-bit LPPDR5X bus. 

In theory, this should put N1X ahead of AMD's strongest APU, but as we've seen with Qualcomm's laptop chips, real-world gaming performance is still hit-or-miss on ARM-based CPUs, not to mention the significant memory bandwidth deficit with LPDDR5X. Another important note is that although the GPU has the same core count as a desktop RTX 5070, power consumption will be significantly lower, so expectations should be kept in check.

Obviously, the real draw with N1X will be the ability to allocate massive amounts of VRAM to the GPU from the shared memory pool. This will allow users to run intelligent, 100B+ parameter LLMs locally, just as we've seen with Strix Halo in its 128GB config. Nvidia's advantage here will be more robust, day-one support for various AI applications, as despite AMD's massive leaps with ROCm recently, CUDA remains king for crucial consumer use cases such as image and video generation.

In terms of partners for this launch, Dell, Lenovo, and ASUS have each either accidentally leaked confirmation of N1X models or hinted at such. HP hasn't teased (or leaked) anything yet, but they'll likely have models available too. Prices are still up in the air, but given that Strix Halo laptops with 128 GB of RAM retail for close to $3k nowadays, I'd expect a figure north of that for equivalently spec'd N1X laptops.

Vera Rubin, Nvidia's Complete "AI Factory" Platform, Rolls Out....  

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Counterpoint Research also has an overview, May 29:

Computex 2026: Agentic AI & Physical AI Reshaping the Computing Landscape

NVIDIA Remains in Spotlight:

AI is no longer confined to research. From energy and infrastructure to chips, models, and applications, the entire AI industry is rapidly developing. Vera Rubin, the successor to Blackwell, scales from rack-level to cell-level systems and is designed specifically for the era of agent-based AI. NVIDIA also stated that major hyperscale data center operators and system manufacturers are already deploying the platform. NVIDIA is building a complete AI platform, not just selling GPUs. With CUDA-X, MGX, and DSX, NVIDIA is building a complete AI infrastructure platform. NVIDIA also describes AI data centers as "token factories."

Agent-based AI will drive a new wave of computing demand. AI agents are rapidly entering personal computers, enterprise software, and work systems, creating enormous computing demand. This not only presents opportunities for GPUs but also provides new growth opportunities for CPUs in reinforcement learning and AI orchestration. NVIDIA will likely showcase the development of physical AI, including driverless taxis, autonomous vehicles, and humanoid robots.

Taiwan is becoming a key hub for the global AI industry. NVIDIA believes that AI will spawn a completely new industry, just like steam power, electricity, and the internet. Leveraging its semiconductor and supply chain advantages, Taiwan now holds a significant position. (GTC Taipei 2026 Highlights Expectations)

CPU to Become the Backbone of Agentic AI Infrastructure:
Last year, the focus was on core counts, node transitions, and ASICs. This year, we expect the focus to shift toward the CPU, as it is now the backbone of agentic AI infrastructure....
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"Climate tech companies are going public. What’s next?"

From MIT Technology Review, May 28:

Fervo Energy, X-energy, and Solv Energy are all racing to supply more electricity for rising demand. 

This year, there’s been a wave of notable energy companies going public via IPO in the US.

The solar and battery company Solv Energy went public in February, to the tune of $6 billion. X-energy, which is building small modular nuclear reactors, did the same in April, and its stocks surged on its first day of trading to hit a $11.5 billion market cap. Most recently, the geothermal company Fervo Energy went public in mid-May, and its market cap is now about $12.4 billion.

Those are all success stories in the IPO world. And it certainly doesn’t feel like a coincidence that all these companies are racing to provide electricity in an era of rising demand (partly due to data centers). Let’s take a look at how these firms are doing, what this moment says about the grid, and what’s coming next. 

Let’s start with Fervo Energy, a company we’ve covered a lot over the years that’s working to develop enhanced geothermal energy. (We included it on our 2025 list of Climate Tech Companies to Watch.) While conventional geothermal requires finding specific spots with hot rock, water, and fractures to support a power plant, Fervo essentially uses fracking techniques to create the necessary conditions.

The company was founded in 2017, and it raised about $1.5 billion from investors over the years before its IPO.

Fervo’s first commercial project, Cape Station in Utah, is expected to have a capacity of about 500 megawatts. The first unit is set to start generating power for customers by October and the next two units by January 2027.

The new funding from the IPO could help the company scale. Fervo currently has over 600 megawatts’ worth of binding power purchase agreements. And it has leases for land that could together generate more than 40 gigawatts of electricity. (As of 2024, the entire US geothermal fleet had a capacity of just 4 gigawatts.)

The company also has an eye on cutting construction and drilling costs—its Cape Station plant is expected to cost about $7 per kilowatt, which is cheaper than new nuclear power plants but over twice the expense of building a new natural-gas plant in the US. 

X-energy also aims to provide reliable clean power: it’s part of the wave of next-generation nuclear companies working on small modular reactors. The company is building high-temperature gas-cooled reactors, which flow helium over self-contained pebbles of nuclear fuel. These reactors will each generate 80 megawatts of electricity, less than one-tenth the output of larger ones like Unit 4 at Plant Vogtle in Georgia, the most recent addition to the commercial nuclear fleet in the US....

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"Jerry Seinfeld's Agent"

People matter.

From the internet's tiny treasure, Delancey Place, May 22:

Today's encore selection -- from Seinfeldia by Jennifer Keishin Armstrong. 
Jerry Seinfeld's career moved from standup to sitcom due to a wise choice in agents and the persistence of that agent:

"[Jerry] Seinfeld had already made several smart choices in his fledgling career, and among them was to sign with manager George Shapiro.

"Shapiro was inspired to go into show business like his uncle, Dick Van Dyke Show creator Carl Reiner. Shapiro's charm -- kind eyes, a warm smile, and a hint of a New York accent -- made him particularly suited to being a talent manager, endearing himself to both performers and executives. He had spent the early years of his career at the Wil­liam Morris talent agency in New York. There, he'd helped put together TV comedies such as The Steve Allen Show, That Girl, and Gomer Pyle. Now, as a talent manager for young comedian Jerry Seinfeld, he may have been simply doing his job when he told NBC executives that his client belonged on their network. But he was also speaking from de­cades of experience during TV's formative years.

The Tonight Show or Late Night. In 1988, he made his strongest epistolary plea as Seinfeld prepared for his first concert broadcast at Town Hall in New York City. 'Call me a crazy guy,' Shapiro wrote to Tartikoff, 'but I feel that Jerry Seinfeld will soon be doing a series on NBC.' He closed by inviting Tartikoff to attend the Town Hall event. No one from the network came, but Tartikoff invited Seinfeld and Shapiro in for a meeting.

"Seinfeld didn't know his manager had badgered NBC about him. He was still unaware when he and Shapiro headed to NBC's Los An­geles offices on November 2, 1988, to discuss the possibility of a network project with Tartikoff, Littlefield, and the head of late-night programming and specials, Rick Ludwin. Seinfeld hadn't the first idea what he'd do on television -- his main career plan was to be a stand­up comedian for as long as he could....

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"Nvidia, Microsoft preparing AI PCs, source says" (NVDA; MSFT; DELL)

Via Tech in Asia, May 31:

Nvidia and Microsoft are expected next week to debut the first Windows PCs that use Nvidia chips as the main processor at Computex in Taipei and Microsoft Build in San Francisco, according to sources.

The lineup is expected to include Microsoft Surface devices, systems from Dell, a US-based computer maker, and other PC companies.

Microsoft is also expected to show Windows software that would let AI agents carry out tasks locally on PCs.

Nvidia was reportedly developing Arm-based central processing units (CPUs) for Windows in 2023.

The expected debut would follow a period in which Qualcomm was the only supplier of Arm-based CPUs for Windows laptops under its arrangement with Microsoft, which Arm chief executive Rene Haas said was set to expire in 2024....

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"The last day of Constantinople" (May 29, 1453)

From the British Library, May 29, 2023:

Discover how the fall of Constantinople in 1453 ended the Byzantine Empire and transformed the great city into Ottoman Istanbul.

Blog series Medieval Manuscripts

Author Peter Toth

This year marks the 570th anniversary of the fall of Constantinople to the Ottoman Empire, on 29 May 1453. The city at the Bosporus, on the border between the Mediterranean and the Black Sea, bridging Europe, Asia Minor and the Balkans, was originally called Byzantium. The exact date of its foundation is unknown, but according to legend it was founded in 667 BC.

https://www.bl.uk/images/v5dwkion/production/8f39b10b003e5eb5431c5e5eb100549068a790b4-676x1090.jpg/constantine-the-great.jpg?w=1440&auto=format 

Constantine the Great from the Synopsis of Histories (Eastern Mediterranean, 1574):
Harley MS 5632, f. 2v.

The city was already an important trading and military centre, but its significance rose when, on 11 May, AD 324, Emperor Constantine the Great selected it to be the new capital of the reunited Roman Empire, and called it the New Rome. Six years later, to honour the emperor, it was renamed Constantinople after him. From the 5th century onwards, Constantinople was enriched with enormous fortifications, churches and monasteries, and the world-renowned imperial library.... 

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"AI And The End Of Recessions As We Know Them"

From Forbes, May 28:

Stagflation sounded impossible until it happened. AI could create another economic contradiction economists don’t yet have a name for 

Artificial intelligence can propel the economy forward even if unemployment soars. If that happens, economists will need to rethink the idea that a growing economy is a healthy one. 

Ken Griffin wasn’t buying the AI panic. At Davos in January, the billionaire founder of Citadel, the Miami hedge fund giant with $68 billion in investment capital, dismissed artificial intelligence’s output as “garbage.”

Then this month, Griffin did a 180. He watched AI agents do complex work in hours that once took Citadel employees weeks or even months. Citadel’s entire business is built around hiring brainiacs. More than 40% of its employees hold advanced degrees, including about 270 Ph.D.s across 40 fields. These are some of the highest-paid workers in America –the median annual compensation for software engineers at Citadel is more than $500,000– and software that can replace even part of that labor could save firms like Citadel enormous amounts of money. Griffin still said he went home depressed because machines were starting to do work that once only those people could do.

Economists may soon face a strange problem. Businesses grow. GDP rises. Profits stay strong. But the jobs don’t come along for the ride. If AI allows companies to produce more with fewer workers, America could end up looking richer on paper while millions of households feel poorer in real life. An economy with rising GDP and 8% unemployment would have sounded implausible a few years ago. With each passing day, it sounds a little less so. If that’s where the economy is heading, economists may have to rethink whether growth alone still tells us the economy is healthy.

Since the Great Depression, GDP has been the main measure of economic health. Economist Simon Kuznets, who would receive a Nobel Prize for his work in 1971, developed the metric in the 1930s while working with the U.S. government to track the collapse. When GDP rises, the economy is considered to be growing. When it shrinks for long enough, the thinking goes, the economy is probably in a recession or close to one. It’s not quite that black and white because the official call is made by the National Bureau of Economic Research and includes other factors, but the basic framework has remained intact for decades. Growth and recession aren’t supposed to happen at the same time.

Throughout modern American history, recessions have arrived with brutal regularity. From 1950 through 2010, the U.S. endured 10 recessions, or roughly one every six years. The economy contracted in 1953, 1958, 1960, 1969, twice during the inflation and oil shock of the 1970s, again in the early 1980s when the Paul Volcker Federal Reserve crushed inflation with punishing interest rates, then during the savings-and-loan crisis, the dot-com bust and finally the housing collapse in 2008. The details changed, but the broad pattern stayed the same. Corporate profits fell and with them so did GDP. Americans lost jobs and businesses failed. The economy looked sick because the economy was sick.

Then something changed. Outside of the brief Covid collapse, the United States hasn’t experienced a traditional recession since 2008. The longest expansion in modern U.S. history stretched from June 2009 until the pandemic shutdowns 11 years later. Since then, the economy has repeatedly bucked recession models. Massive government stimulus, years of near-zero interest rates, globalization and the growing dominance of technology firms helped keep growth alive. But even as GDP and stock prices climbed, wealth inequality widened as housing, healthcare and education costs rose faster than most paychecks. The old signals stopped lining up the way they once did. AI could widen that disconnect even further by allowing companies to grow without needing nearly as many workers.

Technology has always destroyed some jobs. Farm equipment reduced the need for manual labor. ATMs reduced the number of bank tellers. Telephone operators disappeared. But there was usually somewhere else for workers to go. New industries appeared. New jobs came with them.

AI could be different because it is moving into so many kinds of work at once. It’s already writing code, reviewing contracts, handling customer service and analyzing spreadsheets. Many of those jobs were long considered difficult to automate.

Companies are already starting to test what an AI-heavy workplace might look like. Meta is cutting 8,000 positions while Mark Zuckerberg pours billions into AI. Block, the parent company of Square and Cash App, eliminated more than 4,000 jobs after Jack Dorsey said the technology had changed what the company needed from humans. Standard Chartered, the British bank, expects AI and automation to help cut more than 7,000 “lower-value human capital” roles by 2030.

Not every “AI layoff” is really about AI. Companies overhired, investors want lower expenses, and executives now have a convenient scapegoat for job cuts. Still, more companies are starting to realize they may need fewer workers than they once thought.

Michael Madowitz, principal economist at the Roosevelt Institute, a Washington think tank focused on economic policy, says economists don’t have enough catchphrases for every strange state the economy can reach. The term “stagflation” only became common after the 1970s proved inflation and unemployment could rise together. AI could create its own mismatch of strong growth and high unemployment at the same time.

Madowitz isn’t predicting a jobless future. He’s saying its time to throw out your Econ 101 textbooks because the old way of judging the economy may stop making sense. Roughly two-thirds of national income has historically gone to workers through paychecks, with owners taking much of the rest through profits. Many economic models simply assume that split because it has stayed fairly stable for so long. But that balance comes from history, not a law of nature. If AI allows companies to produce more with fewer workers, a larger share of the gains could flow to owners and a smaller share to employees.

A strong economy with a weak labor market would be hard to ignore. Unemployment above roughly 5% already makes economists queasy. Add strong GDP growth driven mostly by profits and rising inequality, and the picture changes. That’s not to mention the greater societal implications. “You could be looking at healthy GDP growth here,” Madowitz says, “but this is not a healthy economy.”....

....MUCH MORE 

As noted a year ago:

"Can the Developed World Grow Its Way Out of Stagnation?"

I sure hope so because that appears to be the only option left.

And it also appears that debt-fueled growth is the path that both the U.S. and Germany have chosen.

Past is not prologue but it is the only guide we have. And unfortunately we only have one time and price series. Someday it will all end, it may be tomorrow, it may be in a couple hundred years as stasis and/or entropy and/or civilizational catastrophe makes its mark.

Here's our boilerplate intro to extrapolating the past into the future:
"Industrial Revolution Comparisons Aren't Comforting"
Partly because of Eddington's Arrow of Time, at least in the mundane everyday experience, we only have one economic history dataset to work with. Because of this I used to argue with people who said this time will be like the last time but found that approach neither satisfying nor enlightening. I don't argue anymore, I just observe, like a kid watching a bug and wonder where the almost metaphysical certitude would be coming from, because, truth be told, nobody knows how this all works out....

....Again, we only have one dataset. We can say that U.S. stocks have returned 'X' over 'Y' time period, and for long periods we've been able to extrapolate those variables, but no one knows what tomorrow brings.  

Don't let your kids grow up to be risk managers.....

And a month ago:

"If AI Makes Every Moat Temporary, What Will Happen To The Value Of Everything" ("The Collapse of Terminal Value")

Entropy. Stasis. Death.

But tonight, we dance!

SoftBank Says It Will Invest Up To €75 Billion To Build Data Centers In France

From Fortune, May 30:

SoftBank plans up to €75 billion investment in French AI centers

SoftBank Group Corp. plans to invest as much as €75 billion ($87 billion) to build 5 gigawatts of artificial intelligence data center capacity in France, saying the country is poised to become a top European hub for AI infrastructure.   

The first phase comprises an initial €45 billion investment to deliver 3.1 gigawatts of AI data center capacity in the Hauts-de-France region by 2031, SoftBank said Saturday in a statement. 

The commitment, which SoftBank called its biggest AI infrastructure investments in Europe, reflect personal diplomacy between Emmanuel Macron and SoftBank founder Masayoshi Son, who met during the French president’s visit to Japan this year.

Bloomberg has reported that Son floated the idea of SoftBank investing as much as $100 billion in France. The Japanese investor, who was used to fielding similar inquiries from company leaders, was intrigued by an approach made directly by a head of state and started reviewing the matter in earnest.

Read More: SoftBank in Talks for Major Data Center Project in France

“I was very impressed by the fact that Emmanuel Macron is so personally committed to ensuring France’s economic success, even though our investments have so far been concentrated mainly in the US, as well as in Japan and Asia,” French outlet La Tribune cited Son as saying in an interview.

SoftBank’s initial investment plans to deliver data centers in Dunkirk, Bosquel and Bouchain. SoftBank also plans to develop additional sites across France, “reinforcing the country’s role as a leading European hub for next-generation digital infrastructure,” according to the company statement....

....MUCH MORE 

Saturday, May 30, 2026

"Hush Money: The Asset Class: How Private Equity Turned Capitalism Against Itself"

From Literary Review, May 27, reviewed by Simon Nixon:

Some of the most disagreeable people I have encountered in three decades of financial journalism work in private equity. A university acquaintance I had not seen for years once invited me for drinks on the terrace of his vast Thames-side apartment, only to demand that I lean on a colleague to kill an inconvenient story. The husband of another acquaintance, who also worked in private equity, once tried to pull the same stunt. That time I didn’t even get a beer.

This is an industry that takes the private part of its name with deadly seriousness. It usually exercises total control over its operations, deploying financial muscle rather than charm to enforce submission and cloaking almost every aspect of its business – the provenance of its money, the performance of its companies – in secrecy. Yet over recent decades, private equity has quietly captured vast swathes of the economy and accumulated political power for which it is rarely held publicly accountable.

In The Asset Class, Hettie O’Brien, a Guardian journalist, goes some way towards redressing the balance. She traces the industry’s origins to the 1970s, when William E Simon, President Nixon’s former Treasury secretary, became convinced after a visit to the Soviet Union that a bureaucratic corporate managerial class was leading the United States towards communism. His solution – to reinvigorate capitalism by buying underperforming companies and breaking them up or exposing managers to the incentivising effects of high debt – was enthusiastically adopted by a generation of asset strippers, men such as Sir James Goldsmith and Jim Slater, who styled themselves as buccaneering apex predators, culling the corporate lame to strengthen the herd.

By the 1990s, however, the industry was awash with more money than could sensibly be deployed, channelled through the secretive family offices of the burgeoning global super-rich. Since fund managers earned 2 per cent of every dollar invested and 20 per cent of profits above a certain threshold, the incentive to put capital to work at almost any cost was irresistible. The solution was to acquire public companies and load them with debt levels that would never be permitted in public markets – in effect, compelling the target to finance its own takeover. If the business subsequently buckled under the weight, the private equity house had already got its money back. The model worked best, as O’Brien observes, where customers had no alternative but to keep paying: essential services, which were conveniently reframed as a public benefit, bringing much-needed capital to a cash-strapped state....

....MUCH MORE 

Although it is difficult to top that declarative first sentence: "Some of the most disagreeable people I have encountered in three decades of financial journalism work in private equity" Literary Review has on offer:

Read more by
Simon Nixon
  

"How Will Data Centers Pay for Power?"

From American Affairs Journal, Summer 2026 / Volume X, Number 2:

The American electric power sector has not grown appreciably for twenty years. To be sure, consumers pay plenty to replace infrastructure, to “transition” the sector away from the most carbon-intensive sources of energy, and to find ways to allow utilities to cram a wide variety of underutilized capital spending (think “smart meters”) into their regulated “rate base.” But demand has been stable or declining.

To the degree that profits in the sector have grown, it is because the economic regulation of the utility industry provides for a “spend more, make more” ecosystem whose profits are a function of its capital investment. The sector is still one of the few that is actively regulated through government price-setting, even in places sometimes mistakenly termed “deregulated.” So, even when demand is not rising, the business must find ways to grow earnings by spending more to serve the same level of demand. This has meant that rates, which otherwise might be declining, have been at best steady, even without increasing grid capacity, and in fact, much utility spending has been undertaken to retire reliable capacity.

This was the uninspiring landscape of American electric utilities on the eve of the boom in data centers needed to fuel the technological revolution in AI. Electricity demand forecasts are now sharply up for the balance of this decade, and a majority of this growth is concentrated in data center power needs, with growth in manufacturing a distant runner-up.1 For a power system that serves as a basis for Americans’ everyday lives and the economy writ large, it is unusual to see such a concentration amid one particular sector for its growth.

The rising power demand of the data center industry almost appears like an industry running within the integrated grid but outside the usual paradigm of the traditional electric utility sector. Indeed, it should be treated as such. Doing so calls for a variety of policy solutions that accurately price grid capacity in order to facilitate efficient usage of that scarce asset, impose regulatory requirements to furnish power generation to the system, and in the alternative, allow power demand that is more flexible to better use residual capacity. Such reforms can accomplish two important policy aims simultaneously. First, they would insulate legacy customers who have already paid their fair share and then some for the grid. Second, they would allow power industry growth in support of data centers to be unchained from traditional utility practices, which often do not reward speed or innovation.

Both of these aims, customer protection and growth, are embodied in the Ratepayer Protection Pledge, a March 2026 declaration at the White House undertaken jointly by the Trump administration and seven major hyperscaler AI companies. The 485-word document begins with an endorsement of data center infrastructure as “the foundation of the internet, cloud computing, and artificial intelligence (AI),” noting the national security implications of this. But it qualifies that “the American people should not be footing the bill for the benefit of private companies.”2

The central proposals of the Pledge are that AI companies “will pay for all new power delivery infrastructure upgrades required to service their data centers” and “will bring, build, or buy the new power generation resources and electricity needed to satisfy their new energy demands.” By directly incurring these costs, the “companies agree to protect American consumers from price hikes due to data center energy and infrastructure requirements, and lower electricity costs for consumers in the long term.” These ambitions are easier to proclaim than accomplish.

Power grids are characterized by joint costs: poles and wires, transformers, and substations that together form a network. Both the typical practice and the financial incentives of most local utility monopolies militate toward a broad socialization of costs to consumers. They do this by having rates set by utility commissions on the utility’s average, embedded costs, rather than pricing based on marginal costs or on a new customer’s willingness to pay. The Pledge wisely points the way toward value-based pricing for grid access that recovers at least the incremental cost of serving customers. This seemingly mundane change, if well implemented in an open season where data centers vie for grid access, is capable of not just protecting legacy ratepayers, but producing massive investment in the American power grid.

Meanwhile, for the power plants that generate electricity for data center consumption, the proposition that the AI industry furnish its own supply is both straightforward and, sadly, unlawful in a majority of states, which maintain local monopolies that prevent this. In these places, many proposals purporting to fulfill the Pledge fall well short of the mark. But this is not to say it is an easy story of letting the market go to work. Even in those regions where competition has been introduced to the sector, investment has been slow to materialize. The Pledge suggests clearing away barriers to new power generation, but with a corresponding regulatory mandate to match the Pledge’s ambition that AI companies bring their own generation to the grid.

The purpose of this essay is threefold: to examine the broader economic and institutional context that the Pledge must address; to put some meat on the bones of its spare but purposeful declarations; and also to take aim at some bad ideas masquerading as fulfillments of the Pledge’s ambitions. Since the two sides of the industry—price-regulated grid costs and more commoditized power generation—operate on so different a basis today, it is best to consider them in turn, but with reforms that ultimately come together, like the grid itself, in sound operation.

The Economics of Regulation

Amid a framework of economic regulation that exists for the electric power industry and very few others, utility commissioners at the state and federal levels fix prices based on a utility’s “cost of service.” This form of price regulation allows the utility to recover both its invested capital and a regulated return on that capital, while generally passing operating expenses through to customers without any markup.

The math that results from cost-of-service regulation is, at its core, one big division problem. The numerator is a sum of the utility’s costs; the denominator, the volume of services the utility sells; the quotient is the rate you pay. Pricing in competitive markets settles around the cost to serve marginal demand, at least according to the basic principles of microeconomic theory. Utility pricing, however, is principally concerned with recovering the sunk costs of infrastructure, which usually serve to flatten and socialize the volatile tendencies that would be expressed in a competitive, commoditized market. “Notice how, at once, the traditional practices of public utility price regulation diverge from economic principles,” the economist and utility regulator Alfred Kahn once dryly observed of the difference between marginal-cost and average-embedded-cost pricing.3

Kahn’s ironic observation has great import today. This divergence between competitive and utility pricing has substantial implications. Consider what happens when incremental demand manifests in price-regulated utility service. In the division problem, if the numerator (costs) rises more slowly than the denominator (demand), then all other customers’ rates would decline as a result of adding a new customer to the grid when utility commissioners next reset utility rates.

There are many examples of this happy phenomenon in the utility sector, beginning in its 1920s heyday, where investment and sales volumes soared, even while rates fell.4 More recently, unassuming North Dakota emerges as the winner of the demand growth Olympics in a magisterial study conducted by Lawrence Berkeley National Laboratory and Brattle Group that evaluated retail electricity rates from 2019 to 2024; the state simultaneously notched the highest percentage demand growth and the steepest percentage reduction in retail electricity prices.5 New Mexico and Nebraska are in much the same situation.

Some have taken these historical occurrences to stand for a general principle that a rising tide of demand lifts all boats. Would that were so. The early industry’s victories on economies of scale have long been priced in. Indeed, for decades now, the sector’s new classes of capital assets have been trending smaller, predicated on diversifying risk and modular, nimble deployment. When studied closely, these recent successes are idiosyncratic demonstrations of the ingredients one would need to make a return to those halcyon days a reality. North Dakota, for example, had residual grid capacity remaindered from previous oil booms, and on the commodity side, cheap fuels and a surplus of power generation stimulated by federal tax incentives pointed at renewables. In both situations, the marginal cost to serve was lower than the average, embedded cost rate, and this supported what was, in effect, a subsidy from newcomers to legacy customers: the type of subsidy everyone cheers.

These happy conditions no longer obtain. In the circumstances that have coalesced lately, a grid with little residual capacity during peak demand conditions means that a lot of new, uninterruptible demand for power placed upon it necessitates capital spending to expand the grid. The materials on which such an expansion is predicated have inflated in price rapidly. Wires and cables, transformers, switchgear, and wood poles have inflated 152 percent, 89 percent, 77 percent, and 50 percent, respectively, since the beginning of 2019, while the overall consumer price index recorded only 29 percent cumulative inflation in the same period.6

The cost of financing these capital assets has also become more expensive. Although utilities have earned generous returns on their equity investment, their debt costs have only captured a modest premium over Treasuries, with many utility customers paying rates that reflect historical debt costs in the 3–4 percent range. With Treasuries well above that today, electric utility issuances of ten- and thirty-year debt so far in 2026 have approached 5 percent and 6 percent, respectively. This double whammy of materials’ price inflation and higher capital costs means that nearly every megawatt of demand added to an American utility will incur costs that exceed the embedded, average cost to serve the same unit. Under such circumstances, if new customers are brought online paying the same rates as legacy customers pay, it will axiomatically result in a cost shift from legacy customers to new customers: the type of subsidy no one can stomach.

In the normal operations of utility regulation, that is usually what would happen. Utilities typically have a legal obligation, in exchange for their monopoly, to serve new customers under their prevailing rates. New data center customers would be classified into existing “rate classes” and begin paying the same rates as, say, a paper mill or chemicals refiner.7

For much of the past several years, the data center industry’s hill to die on at public utility commissions was an insistence that they should not be treated in fundamentally different ways than other customers. It is hard to think of a more arcane subject for outsiders to the craft of utility regulation than the procedures by which customers are separated into rate classes. But to long-time practitioners, this debate raised the question of whether regulators were going to labor under the premise that data centers were just another category of customer that fit within the extant practices of utility ratemaking.....

....MUCH MORE 

FrenchTech: "Mistral launches Industrial Engineering AI with Airbus, BMW and EDF as headline customers" (plus rebutting the Pope)

From The Next Web, May 28:

At its first annual conference in Paris, Mistral formally rolled out the physics-aware AI stack it built around the Emmi acquisition, with Airbus, BMW and EDF as launch customers.


Mistral AI used its first annual conference in Paris on Thursday to formally launch “Mistral for Industrial Engineering,” a physics-aware AI stack pitched directly at heavy-industry customers, with Airbus, BMW, EDF and the shipping group CMA CGM named as launch deployments.

The product is the commercial layer Mistral has been visibly building toward since its acquisition of Vienna’s Emmi AI earlier this month, and represents the French firm’s clearest articulated alternative to the consumer-and-enterprise-software focus that has defined the largest US foundation-model labs.

The technical core of the offering is what the industry calls simulation surrogate modelling, neural networks trained on the outputs of expensive physics simulators that can subsequently produce comparable answers in seconds rather than hours.

Emmi’s models, originally spun out of Johannes Kepler University Linz and the Austrian AI company NXAI in December 2024, simulate airflow, thermodynamics, fluid dynamics and material deformation in real time.

The category sits cleanly inside what European industrial firms actually need from AI: engineering tools tied to production data, robotics workflows, defect detection and factory operations, rather than another chatbot or code-assistant product.

The customer roster is the most concrete part of the launch. Airbus, the European aerospace heavyweight, joins as a launch customer for the engineering-simulation tier.

BMW, which separately announced earlier this year that it is running humanoid-robot pilots in its Leipzig plant, is using the Mistral stack as part of its industrial-AI competence centre.

EDF, the French state-owned electricity utility, is the third anchor customer named publicly. CMA CGM, the Marseille-based container-shipping group, has been a Mistral customer for over a year and is being positioned inside the new industrial offering.

The named customers reflect the segments Mistral is targeting: aerospace, automotive, energy and logistics.

The strategic positioning is worth pausing on. OpenAI, Anthropic and Google’s frontier labs have spent the past two years competing on consumer-facing chatbots and enterprise-software automation.

The industrial-engineering market has been left visibly under-served. Google’s Fanuc partnership for industrial-robot AI, announced earlier this year, is the closest US analogue....

....MUCH MORE 

For some reason my keyboard is starting to smoke so I'll quick paste this next bit and hit publish:

Mistral’s Arthur Mensch directly rebuts Pope Leo on AI in warfare

"The Experienced Investors Who Think They Can Beat the Scam"

Not only beat the scam but also beat the scammers.

Crush them, without their realizing what happened.

Everybody needs a hobby.

From Harvard Business School's Working Knowledge, May 28: 

Pump-and-dump schemes hurt people who buy into them and can rattle markets. And yet, some speculative investors purposely seek out them out, says research by Eugene Soltes. What can regulators do? 

Many investors think they can outsmart the wolves of Wall Street, betting they can outmaneuver “pump-and-dump” schemes and bring home a windfall.

Rather than being lured into fraudulent trades, some investors seek out such schemes, according to research by Harvard Business School Professor Eugene Soltes and his coauthors. Their analysis of 470 pump-and-dump schemes finds that participants lose one-third of their investment, on average.

There’s a subset of people who are actually looking for pump-and-dumps.

“There’s a subset of people who are actually looking for pump-and-dumps,” says Soltes, the McLean Family Professor of Business Administration. “That was fairly provocative and surprising.”

Pump-and-dumps conjure images of inexperienced investors duped out of their life savings. On the contrary, Soltes’ research shows that many speculative traders seek out shady penny stocks—with some viewing warnings as buy signals—in search of a quick buck in a hot market.

“These investors appear to be quite similar to the risk-seeking traders that were fueling the recent surge in trading in speculative meme stocks,” write the authors of “Who Falls Prey to the Wolf of Wall Street Investor Participation in Market Manipulation,” published in the journal Management Science in November.

Soltes cowrote the paper with Christian Leuz and Maximilian Muhn of the University of Chicago’s Booth School of Business, Steffen Meyer of Denmark’s Aarhus University, and Andreas Hackethal of Goethe University in Frankfurt.

A tale as old as the Great Depression
Pump-and-dump promoters buy large amounts of inexpensive and often illiquid shares, and then distribute false information about the company unrelated to their fundamentals. The “tout”—often through email, newsletters, and online forums—sparks a buying spree.

However, because these stocks often have a limited number of shares to trade, prices spike. At some point, the promoters sell, reaping big profits, and other investors are left with losses.

The strategy, immortalized in films such as “The Wolf of Wall Street,” has been around since 1929, when such a scam helped set off the market crash that would spark the Great Depression.

Who are ‘tout’ investors?
Soltes and fellow researchers examined 470 allegedly illegal “tout” campaigns in Germany from 2002 to 2015, including those identified by the German Federal Financial Supervisory Authority (Bafin). They also analyzed 178 billion euros ($208 billion) of stock trades by 113,000 retail investors during that time as well as their demographics, data provided by a major German bank...

....MUCH MORE 

Also at HBS Working Knowledge

May 20 - If AI Knows Your Next Trade, What Happens to Money Managers?

To get a feel for the way it was done in one of the preeminent hives of scum and villainy (credit Obi-Wan Kenobi) we join our guide David Baines at The Vancouver Sun:

June 7, 2012 
Why We Love the Vancouver Business Scene (Frauds, Scams and Flim-flams)

February 4, 2013

Checking In On the Vancouver Business Scene
...That's it Dec. 5 to Feb. 4.
But, if one were to look at the November 2012 stories, you have the head of criminal investigations for the British Columbia Securities Commission getting fired, the former mutual fund salesman now selling bongs, the defrocked fund manager who, when ask about a Baines story on him responded...
June 21, 2014 
The Vancouver Sun's David Baines' Farewell to Readers

Leaving the life of frauds scams and flim-flams.
We missed it last year so I thought a one year anniversary adios to one of the best business journalists I've ever come across would be in order. He wrote about some of the scummiest denizens of one of the most wide-open markets in the world and despite the death threats and the lawyers and the diabolically ingenious corporate structures he got the story and as long-time readers of this blog know I have a weakness for tales of the knaves, varlets charlatans and outright frauds that populate the underbelly of the markets.
I think Baines does too.... 

"Ozempic may be reshaping the brain, scientists say"

From the Washington Post, May 28:

GLP-1 drugs may be rewiring circuits involved not only in appetite but in emotion, desire and beyond. 

Ozempic was supposed to be a gut story. Then Allison Shapiro looked at the brain scans.

An assistant professor at the University of Colorado Anschutz, she was part of a team studying 13 teens and young women with a hormonal disorder affecting the ovaries who were put on GLP-1 drugs. As part of testing to catalogue the effect of the medication on their bodies, Shapiro took snapshots of their brains before and after.

She was astonished to find extensive changes.

Within only a few months, the brain connections in the salience network, which helps target attention, had multiplied.

“We didn’t expect to see this effect, and we really don’t know what it means,” Shapiro said.

Ozempic and other GLP-1 drugs were initially understood as a metabolism breakthrough: medicines that act like hormones to control hunger, blood sugar and weight. But as researchers probe deeper into how the drugs work, early evidence suggests that GLP-1s may also be reshaping parts of the brain.

Tens of millions of people are now taking the medications worldwide, turning what began as an obesity and diabetes treatment into what could be modern medicine’s largest unplanned neuroscience experiments.

Scientists are studying GLP-1 drugs — medications that mimic the hormones involved in appetite, blood sugar and digestion — for how they affect not only eating behavior, but also addiction, cognition, neurodegeneration and even motivation and pleasure. The category includes older diabetes drugs that researchers have studied for decades; newer medications such as Ozempic and Wegovy, which contain semaglutide; and Mounjaro and Zepbound, which contain tirzepatide — a newer compound that targets both GLP-1 and a second metabolic hormone known as GIP, a distinction some scientists believe may matter neurologically.

The emerging research on GLP-1s is part of a larger scientific shift away from treating brain and physical health as separate domains. Increasingly, researchers see them as tightly intertwined.

Exercise is associated with sharper cognition, stronger memory and better executive function across a person’s lifespan, probably because it enhances neural activation and plasticity — the brain’s capacity to adapt and reorganize itself. Diet exerts its own influence; eating balanced, nutrient-dense foods has been linked to greater gray matter volume and improved mental well-being.

But not all of the reported mental effects of GLP-1 drugs have been positive. On social media and at doctor’s offices, some users have reported a type of brain fog and others something broader and harder to define: a strange emotional flattening. People describe less pleasure, less motivation, diminished interest in hobbies and even reduced sexual desire.

Those accounts are beginning to raise deeper questions about what, exactly, these drugs are changing. If GLP-1s alter the brain systems involved in reward, craving and motivation, researchers wonder, where is the line between quieting a person’s destructive impulses and reshaping personality itself?

The mystery of the mechanism
The hormones and receptors targeted by GLP-1 drugs form a vast communication network that stretches far beyond the stomach. Naturally activated after eating, the system helps regulate hunger, blood sugar and digestion — but its receptors are also scattered throughout the body, including in the heart and deep within the brain.

Scientists are still in the early stages of investigating how GLP-1 drugs affect neural networks. Because the medications are relatively large molecules, researchers remain uncertain how much of them can cross the blood-brain barrier, a protective membrane that shields the brain from the bloodstream.

That uncertainty has raised a larger question: Are the drugs acting directly on the brain, or are they reshaping the nervous system more indirectly by reducing inflammation, improving metabolism and easing stress on the body?

Researchers suspect that both may be true. Some studies suggest the drugs help reduce inflammation that can damage neurons over time, while other research indicates the medications may help brain cells survive and function more effectively.

More on GLP-1s

One leading theory is that GLP-1 drugs may reduce inflammation in the brain. Researchers think the medications could quiet overactive immune cells that, when repeatedly triggered, may contribute to damage and cognitive degeneration over time. Other scientists suspect the drugs may act more directly on brain cells themselves, helping them function more efficiently and resist stress. These two effects may be happening simultaneously.

Researchers are also investigating whether this process originates in the gut rather than the brain. Naturally occurring GLP-1 hormones communicate with the brain through the vagus nerve, the long signaling pathway connecting the digestive system and brain stem that guides sensations of hunger and fullness. Scientists suspect those same gut-brain circuits may also influence mood, craving and cognition.

Rewiring addiction and desire
Long before Oprah Winfrey and social media influencers helped popularize GLP-1 drugs, physician-scientist Lorenzo Leggio was studying them as a possible addiction treatment.

After seeing a 2013 study in Sweden showing that rodents given a GLP-1-like medication consumed less alcohol, Leggio — the clinical director and deputy scientific director at the National Institutes of Health’s National Institute on Drug Abuse — replicated the findings and has been investigating ever since.

Leggio and his team have built a mock bar where participants are exposed to alcohol-related cues — smells, sights and other triggers associated with craving — while their physiological and behavioral responses are measured in real time. Participants also move through virtual-reality environments, including a cafeteria simulation in which they are asked to choose foods, allowing scientists to study how desire and decision-making may shift under the drugs’ influence.

Researchers have long known that addiction is associated with hyperactivity in brain circuits connected to reward, craving and reinforcement. Scientists suspect GLP-1 drugs may dampen the brain’s dopamine-driven reward systems that determine what feels pleasurable and worth repeating — which could lessen these urges. They are also investigating whether the drugs affect the amygdala, which helps regulate fear, stress and emotional processing.

Eli Lilly, which manufactures tirzepatide under the brand names Mounjaro and Zepbound, has launched a large clinical trial expected to conclude by the end of this year or early next year examining whether the drug could help treat alcohol-use disorder.

Several major studies examining GLP-1 drugs on nicotine dependence, opioid- and cocaine-use disorders, gambling addiction and binge eating are also underway.

“It’s very exciting times, but we don’t fully understand how it works,” Leggio said.

Many patients have described a quieting of “food noise” — the constant mental pull toward eating that many had lived with for years. But the same mechanisms that curb destructive cravings could also suppress healthy desires, a shift some on the medication have reported.

“If you think about it from a survival standpoint, some of the foundational behavior such as eating and sex could be impacted,” Leggio said. Still, he noted, the Food and Drug Administration has repeatedly reviewed available safety data and has not concluded that this is a widespread problem....

....MUCH MORE 

 So we're running a giant, unplanned, neuroscience project.

Let's hope it all works out.