The AI Industry Wants Congress to Create the Next 100-Year Radio Loophole

“Formal property’s contribution to mankind is not the protection of ownership… Property’s real breakthrough is that it radically improved the flow of communications about assets and their potential.”

Hernando de Soto, The Mystery of Capital.

Musicians and other creators are unfortunately familiar with many efforts by big business to extract the economic value of their authorship through expansive free-riding copyright loopholes that pretend property rights don’t exist. The current AI crisis did not originate with Big Tech—they learned it from Big Radio.  I distinctly recall having lunch with a Big Tech Washington lobbyist for XM radio (pre-merger) who had just found out that broadcast radio didn’t pay sound recording performances and wanted that same deal for satellite radio.  I had to put the quietus on that pronto.  And they didn’t even know how close they came to disaster. Sheesh.

In case you were wondering, Congress modernized copyright law in 1995 through the Digital Performance Right in Sound Recordings Act.  The 1995 law created the statutory framework that launched licensed webcasting while preserving the archaic terrestrial radio performance loophole—preserved due to lobbying by Big Radio.

For decades, terrestrial AM/FM broadcasters have relied on a statutory copyright exception that allows them to broadcast sound recordings without compensating the featured artists, session musicians, and backup singers whose performances attract listeners, or the record companies who bear the substantial costs of discovering, recording, marketing, and promoting those works. Despite years of bipartisan efforts to end that free ride through legislation like the American Music Fairness Act (AMFA) and its predecessor bills, broadcasters have vigorously defended the exemption with overwhelming money and utilization of the very broadcast license they abuse to feather their nests.  We have put excellent witnesses in front of Congress only to be outspent by smarmy swamp creatures from the National Association of Broadcasters.

AI disputes echo that familiar pattern. In the end, it all comes down to vast wealth accumulated through safe harbors of one kind or another.  Instead of relying on a terrestrial performance exemption, AI companies advance absurd interpretations of fair use and text-and-data-mining doctrines to justify the uncompensated use of stolen works for commercial model training “because China.” They use influence peddlers like White House AI Viceroy David Sacks to try to sneak retroactive safe harbors into the law through Congress in the form of groundless federal preemption of state and local regulation or executive orders that are clearly bought and paid for under the guise of “data center factories” which are not factories at all.   Although the legal theories differ between AI and broadcasting, the economic consequence is remarkably similar: sweeping commercial enterprises seek to build profitable businesses by lobbying or litigating (two sides of the same King’s shilling) to expand exceptions to the exclusive rights Congress granted creators, while forcing artists, musicians, writers, journalists, film makers and photographers to absorb the resulting loss in value.

That concern is no longer theoretical. In a recent Bloomberg podcast, SoundExchange President and CEO Michael Huppe—whose organization distributes more than $1 billion annually in digital performance royalties derived from rights created by that market-making 1995 legislation—described AI as “something that has a lot of danger, but also a lot of potential.” But he cautioned that “we need to make sure that human creators are protected” and that “there need to be guardrails so that [AI] doesn’t steamroll over the whole creative industry.” I couldn’t agree more. Rather than treating property rights as obstacles to AI, Congress should remember Hernando de Soto’s lesson that clearly defined ownership creates wealth—a principle it proved when licensing sound recordings gave birth to the webcasting industry largely thanks to SoundExchange and the infrastructure it brings to the table.

Huppe’s concerns are rooted in measurable economics rather than speculation. Streaming now accounts for approximately 85% of U.S. recorded music revenue, and streaming services distribute a finite, shared royalty pool among eligible recordings. Huppe noted that some services report receiving roughly 75,000 new recordings every day, with reports suggesting that more than 80% are AI-generated.

Whether those estimates ultimately prove higher or lower, the underlying economic principle is unavoidable: every AI-generated recording entering the marketplace competes for listener attention and, if streamed, competes for a share of the same finite, shared royalty pool. Huppe also warned that AI facilitates streaming fraud, allowing bad actors to generate AI recordings, deploy bots to inflate plays, and “siphon away payment from the pipeline that would otherwise go to real artists and real record labels.” His conclusion was unequivocal: “It’s fraud, basically. Straight-up fraud.”

Moreover, generative AI takes legitimate recorded performances to create competing works substituting for the originals themselves. This economic effect echoes Judge Vince Chhabria’s observations in the Kadrey v. Meta books litigation, where he suggested that flooding markets with AI-generated works competing against originals could constitute the type of market harm that would block a fair use defense to copyright infringement.

The explosion of AI-generated music that Mike Huppe cites therefore provides strong evidence of repeatable and measurable market harm identified by Judge Chhabria. Every AI-generated stream competes for listener attention while simultaneously reducing each human artist’s share of a finite, shared royalty pool. Unlike speculative claims of future injury, this dilution can be observed, quantified, and modeled using actual streaming and royalty distributions.

The economics become even more troubling when combined with large-scale scraping. As we have seen litigated in the cases against Udio, Anthropic and Meta (and I think will continue to see proven through all of the AI models including Suno),  AI has trained on enormous quantities of illegally acquired works without obtaining licenses or compensating the creators whose recordings, performances, writings, images, and other expressive works supplied the raw material that makes those models commercially valuable.  Sound familiar?

The same creative ecosystem that furnished the training corpus is then required to compete against a cascading and endless supply of AI-generated outputs while receiving no payment for either the training use or the resulting competition. Worse yet, because nothing says freedom like getting away with it, AI platforms connected to Google, Facebook and Amazon are so used to ignoring copyrights in their day jobs that they clearly planned to ignore our rights.

In music, the effect is especially stark: the recordings that taught music-generation systems how to produce theoretically commercially appealing songs also become the works displaced by those outputs in the marketplace. Creators are effectively asked to finance their own displacement. They suffer a double economic injury—first, uncompensated exploitation of their works to build commercial AI systems, and second, measurable erosion of their share of a finite, shared royalty pool as AI-generated recordings compete for the same listeners and revenues that streamers like Spotify seem unable to stop from invading the ecosystem.

Because of the insane pool allocation formula used for streaming mechanical royalties on interactive services like Spotify, Amazon, Apple and Deezer, songwriters are also subject to the same kind of dilution as artists.  Hopefully the Copyright Royalty Judges will address this new humiliation in the current statutory rate proceeding and clearly state that AI works are not eligible for the statutory license under Section 115.

This measurable dilution also helps illustrate the broader market-flooding concern identified by Judge Chhabria. If AI-generated outputs systematically occupy the same commercial markets as human-created works, reducing revenues through sheer volume rather than direct substitution alone, then streaming provides one of the first empirical laboratories for proving market harm for “the effect of the use upon the potential market for or value of the copyrighted work.”  Because streaming royalties are transparent, pooled, and data-driven, music offers unusually strong evidence that AI-generated competition can inflict repeatable, measurable, and scalable economic injury. If courts follow Judge Chhabria in recognizing this analysis, the same analytical framework could extend beyond music to books, journalism, visual art, film, software, and other creative industries in which AI-generated outputs compete for the same audiences, revenues, and licensing opportunities as human creators.

Against that backdrop, the American Music Fairness Act is no longer simply a current solution to a decades-old copyright reform proposal. If AI companies are correct that generative AI will place unprecedented pressure on the economics of human creativity, then Congress should strengthen—not further weaken—all of the economic foundations supporting human creators. AMFA would finally require terrestrial broadcasters to compensate featured artists, session musicians, and vocalists for the use of their sound recordings, just as streaming and satellite radio already do. It would also unlock reciprocal foreign performance royalties that American performers currently forfeit because the United States remains an international outlier. 

At a moment when AI is intensifying the struggle for creative labor to survive even while platforms seek broad legal exceptions for uncompensated training through lobbying and executive orders, eliminating one of copyright law’s oldest uncompensated uses would send an important signal: the future of artificial intelligence should not be financed by the continued erosion of the livelihoods of human creators.

The AI industry’s habit of predicting existential harm while aggressively commercializing the same technology presents a profound ethical contradiction that Professor Cal Newport calls “doom trolling” in a recent New York Times post.  This leads to a conclusion that AI companies cannot credibly claim their technology poses existential risks while continuing to accelerate its commercialization without meaningful restraint.

Newport gives this example reminiscent of my personal favorite, the exploding gas tank in Ford Pintos (not to pick on Ford):

Imagine if the Ford Motor Company put out a report saying that it feared its popular F-150 trucks might soon start bursting into flames, but that there was nothing the company could do about it because automotive technology was too inevitable and important to slow down. You’re probably struggling to picture this scenario because no reasonable consumer product company would ever act like this. 

The A.I. companies could start behaving the same way. To do so would require that they stop treating A.I. like some inevitable force that they’re struggling to steward. It’s not. It’s a collection of specific tools that these companies are choosing to design and sell according to specific business plans. Accordingly, they need to talk about their offerings like any other consumer product. This means explaining clearly whom these products are for, justifying their benefits and, critically, taking full responsibility for any harm they might cause. Just because A.I. currently enjoys a high-tech sheen doesn’t make it exceptional with respect to common-sense safety standards.

If these A.I. companies insist on continuing to pretend that they’re merely stoic observers of an unavoidable dystopian future, then perhaps it’s time to force the issue. As consumers, we can refuse to play the doom-trolling game. Next time Anthropic releases a dire report, or Sam Altman’s voice cracks as he imagines the disruption that OpenAI is unleashing, we can pivot back to the pragmatic: “OK, but what benefits am I getting by spending $1,000 a month on tokens?” If they continue to ratchet up the doom, then perhaps it’s time to transform dread into ridicule: The earnest pseudoscience of Anthropic’s white papers already borders on satire. The current zeitgeist surrounding A.I. encourages a fretful submission to these tech leaders, but this could rapidly change.

The AI industry cannot have it both ways. It cannot warn that generative AI will fundamentally transform—or even eliminate—millions of creative jobs while simultaneously insisting that the law should expand uncompensated access to the very works that make those systems possible. If AI companies genuinely believe their own predictions, then the appropriate public policy response is not to weaken copyright, broaden fair use, or create new exceptions for commercial training. It is to reinforce every remaining economic support for human creativity. 

The evidence emerging from music streaming already demonstrates why. AI-generated works are not merely theoretical substitutes; they compete for attention, streams, and revenue, measurably reducing each creator’s share of a finite, shared royalty pool. That provides some of the clearest real-world evidence yet of repeatable market harm from generative AI at commercial scale. Congress should take note. The question is no longer whether creators deserve compensation for their work. It is whether the United States will choose to finance the AI economy by systematically eroding the economic incentives that have sustained human creativity for generations—or whether it will insist that technological progress, like every other successful industry before it, pays its own way.

Perhaps the greatest lesson of the American Music Fairness Act is not about radio at all. It is about refusing to repeat yesterday’s policy mistakes in tomorrow’s technology. As Mike Huppe observed on Bloomberg, Congress should not be creating new copyright exceptions while it is still trying to fix old ones. That warning applies with even greater force to artificial intelligence. If policymakers know that generative AI is likely to place extraordinary pressure on the economics of human creativity—as many AI companies themselves readily acknowledge—then the answer cannot be to expand uncompensated uses of creative works in the name of innovation and unintended consequences be damned.

The webcasting revolution showed what Hernando de Soto long argued: respecting property rights doesn’t kill innovation—it gives innovators the legal foundation to build sustainable markets. AMFA is a cautionary tale: a narrow copyright exception adopted decades ago has deprived generations of American performers of compensation and remains difficult to unwind. Congress should learn from that history, not repeat it. The AI economy should be built by paying for the creative works that make it possible and respecting the rights of all creators—not by creating another exception that future generations will spend decades trying to reverse and an entrenched bureaucracy of the richest corporations in commercial history will oppose with all the resources they can muster.

Data Center Backlash: Eminent Domain and Stranded Asset Forecast Risk

The most important data center story today wasn’t a zoning hearing, a transmission line fight, or a new hyperscaler valuation announcement.

The most important story is a poll.  And that poll may not only capture the sentiment of the public, it may also indicate which way elected officials and financiers are leaning, too.



A new Reuters/Ipsos survey found that only one-third of Americans support the current pace of AI data center construction, while nearly two-thirds oppose it. More than half said they would oppose a data center in their own community, and a substantial majority expressed concern that AI-related electricity demand could increase their utility bills.

The six-day poll, which surveyed 4,531 people across the country and closed on Monday, showed just 33% of Americans agreed with a statement that it was mainly a good thing to build data centers at a rapid pace. Some 64% disagreed….Some 57% of people surveyed – including two-thirds of Democrats and half of ‌Republicans – also said they would oppose a data center ⁠being built in their community. Just 14% of survey takers said they were okay with a center being built near them, according to the Reuters/Ipsos poll.

The lopsided result should not be surprising.

For the past two years, the public conversation around data centers has focused on American AI leadership (“because China”), economic development, and technological competitiveness. But many communities are experiencing something very different: transmission line easements criss-crossing private property, industrial-scale facilities near homes, rising utility concerns, water consumption, noise, and tax incentives for some of the world’s largest companies.  It may be starting to dawn on the public why the White House AI Czar David Sacks was so obsessed with blocking any state laws that got in the way of AI.

In some cases, the issue goes even further. Landowners are being asked to surrender property rights through eminent domain—or the threat of eminent domain—so that transmission infrastructure can be built to serve facilities whose ultimate beneficiaries are among the wealthiest technology companies in the world.

Imagine you were the man who fell to earth and you knew nothing about AI workflow.  Would you look at all these data centers, substations, behind the meter nuclear reactors and transmission lines and say “oh, that makes total sense”?  Or would you ask what are these people thinking building a supply chain this kludgy with myriad points of failure?  Data centers in space?  Really?  What could possibly go wrong?

That is where the national security narrative begins to collide with local reality. “We have to do this because China” is a powerful slogan in Washington. For many landowners outside the Imperial City, however, it begins to ring hollow when the immediate consequence is a transmission easement across family property that will never happen in an urban setting.  

This is particularly true when the economic justification depends on AI demand forecasts that may not even be tested—much less achieved—for years. Viewed from a kitchen window looking out at a new transmission corridor in what used to be your vegetable garden or a pasture for livestock, the sacrifice is immediate and personal, while the promised strategic benefits remain abstract and distant.

We’ve already seen an econometric study from Professor Michael Hicks at Ball State University showing that all the hundreds of data centers in Texas have led to pretty much a wash in job creation, a major selling point that few ever believed.  A University of Texas study shows that data centers could potentially account for 3% to 9% of Texas’ water use by 2040, according to a new white paper. In other words, Big Data has largely been talking about the benefits of AI while residents have been living with the costs of that infrastructure.

Chief Veterinary Officer for Greater Birmingham Humane Society Testifying against data center
Reverse Angle Showing City Council Left the building

The Reuters/Ipsos poll suggests the issue may be evolving from a collection of local land-use disputes into a national political movement. Historically, that is the point where elected officials begin to change their behavior. Local opposition can often be dismissed as isolated resistance. National polling is harder to ignore and could be the harbinger of somebody getting unelected.

The challenge for policymakers, utilities, and developers is that public concerns are becoming increasingly tangible while many projected benefits remain tied to forecasts extending years into the future with no current evidence. Voters tend to react more strongly to immediate and permanent impacts than to promised future gains that may never come to pass, particularly gains to other people who don’t have a transmission line in their garden or who were not forced to sell their family home to a power company.

That leads to a data center mobilization question that has received far less attention than corrupting farm land, water use, noise, or electricity rates: what happens if the forecasts are simply wrong?



Communities are being asked to accept transmission corridors, substations, power plants, and massive industrial facilities today based on projections of future AI demand that may extend a decade or more into the future. Yet the economics of AI remain highly uncertain as this week’s Google $85 billion equity round confirms.  When Google’s AI capital expenditures exceeded even Google’s free cash flow, the Leviathan of Mountain View turned to a Silicon Valley favorite:  Other people’s money. Revenue models are still evolving, competition is intense, and many of the assumptions underlying today’s infrastructure buildout have not yet been tested through a full business cycle.

Crucially, Investors are funding unprecedented AI capex on the assumption of durable competitive advantages, yet the underlying LLM asset increasingly exhibits commodity characteristics. Meaning the models are all very similar in the fundamental components. As hyperscalers converge on functionally similar models, infrastructure, and services at extraordinary cost, there is less and less that distinguishes one from the other.  When Google chooses to finance capex out of equity rather than continue financing from free cash flow and debt, that may also tell us something about the appetite of lenders getting a little skeptical.

It’s not just Google.  Consider the implications of the recent reports surrounding SoftBank’s OpenAI investment. SoftBank participated in OpenAI’s February 2026 funding round at a valuation of approximately $840 billion and emerged with roughly 13% ownership. On paper, SoftBank’s stake in OpenAI carried an implied value of approximately $109 billion. 

Yet when SoftBank reportedly sought to get a margin loan on those same shares a few weeks ago (three months after the $840 billion valuation was set) using that position as collateral, lenders appear to have viewed the value of the OpenAI shares very differently. The company initially sought a $10 billion loan secured by its OpenAI shares, later reducing the request to approximately $6 billion after lender interest reportedly proved limited. Even at the lower amount, loan negotiations have reportedly stalled.

The significance is not just  that SoftBank’s OpenAI position is worth only $6 billion (implied $46B valuation) or $10 billion as margin loan collateral, if that. Rather, it highlights the distinction between venture valuation, financing valuation, and realizable value. An $840 billion venture valuation reflects what investors were willing to pay in a private financing round under specific assumptions about future growth, profitability, and market structure.

A margin lender asks a different question: if the collateral must be liquidated under adverse circumstances like a bubble burst or the recent semiconductor crash, what is it actually worth? The resulting margin discount can be substantial, even taking into account the usual 50%-ish haircut on marginable securities. For AI investors, this episode may be one of the first visible indications that sophisticated credit markets are assigning materially different risk assessments to AI assets than those implied by headline-grabbing private-market valuations fueled by cheerleading from the financial press and, it must be said, the Oval Office.

Similar valuation disconnects have appeared before other major public offerings, including Spotify’s direct listing, WeWork’s failed IPO, and several high-profile technology listings where private-market expectations ultimately confronted public-market price discovery. For AI investors, the significance is less about OpenAI itself than what the episode may reveal about the difference between AI forecasts and the willingness of sophisticated creditors to finance those assumptions with actual cash.



If those forecasts prove overly optimistic, the result may not simply be disappointed investors. The result could be stranded assets: transmission lines cutting across ranches and farms, substations occupying valuable land, and industrial facilities looming over communities long after the expected economic justification has faded. That burden may ultimately become the defining political challenge of the AI infrastructure era. People are not merely being asked to tolerate temporary construction. They are being asked to accept permanent changes both to their homes, to their property ownership, and to their communities in support of forecasts that may or may not materialize. If a ranch is involuntarily divided, a neighborhood industrialized, or a home taken for infrastructure justified by projected future AI demand, the consequences are real regardless of whether the forecast is ultimately correct.

The Reuters/Ipsos poll suggests that the next phase of the debate may be less about artificial intelligence itself and more about who bears the risks, costs, and consequences of the infrastructure being built to support it—and who bears the consequences for an unpopular mobilization if those forecasts turn out to be wrong.

That conversation—and the inevitable litigation—is only beginning.

Data Center Backlash SITREP: Birmingham / Oxmoor Valley


Birmingham’s data-center fight is now a full local legitimacy crisis. The City Council voted 6–3 to pass very unpopular hyperscale data-center regulations after a nearly five-hour meeting and nearly three hours of public hearing where every constituent spoke against the regulations. The ordinance creates 20 protective conditions, but also removes the special-exception requirement for hyperscale projects that meet those conditions.

Current Situation

The live Birmingham objections are not primarily about transmission lines. They are about data center buildout zoning, process, neighborhood impacts, animal welfare, and whether the planned Nebius hyperscale data center slipped through before the city caught up and caught on.

Residents have filed a class-action lawsuit seeking to stop construction. The lawsuit also disputes power-related infrastructure, including a proposed substation and switching station tied to the project.

Local reporters: Laura Harksen/WBRC News; Javacia Harris Brewster/Birmingham Times

Local organizations: Allison Black Cornelius, CEO of Greater Birmingham Humane Society, Dr. Russell Johnson, DVM, Chief Veterinary Officer, Greater Birmingham Humane Society

Allison Black Cornelius
Dr. Russell Johnson, DVM

Severity: High+ / Approaching Severe

Backlash Index

Top complaints:

1. Loss of public process and consultation over permanent change to city.
2. Grandfathering and moratorium evasion.
3. Animal welfare and affects on planned Greater Birmingham Humane Society medical campus
4. Noise, heat, water, traffic, and light pollution.
5. Public health, property values and quality-of-life concerns.

Public Opposition Meter

– Council vote: 6–3.
– Nearly three hours of public hearing.
– Litigation active.
– Organized opposition including Protect Oxmoor Coalition.
Greater Birmingham Humane Society petition and related community petition.
– Participation by community groups, environmental advocates, political candidates, and DSOC/DSA-type activists aligned with Sen. Sanders;Rep. AOC moratorium.

Government / Community Reaction

Moratorium → ordinance rewrite → packed hearing → split council vote → lawsuit → amended complaint → petition escalation.

Future Issues

1. Transmission and grid infrastructure.
2. Cost socialization and ratepayer exposure.
3. Stranded asset risk.
4. Public health and heat modeling.
5. Tax incentives and land-flip narratives.

Birmingham is not yet a transmission-line fight. It is a process, zoning, animal-welfare, neighborhood-impact, and legitimacy fight with power infrastructure beginning to surface through substations and switching stations.

Current status: zoning, process, GBHS, noise, heat, water, traffic, property values, litigation.

Future conflicts: substations, grid upgrades, cost socialization, ratepayer exposure, and stranded asset risk.