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from
Talk to Fa
I love being me, but living with the kind of inner knowing I have can isolate me from the rest of the world. A couple of my girlfriends are experiencing heartbreak right now. Two very similar situations, actually. I won’t go into details, but to me, they seem like the same story.
We are all different. We all experience different things. At the same time, our experiences are astonishingly similar, especially within an energetic collective. I’ve always been a keen observer, and I recognize patterns in people’s healing journeys, including mine.
Friends and clients tell me about the issues they are going through. Their dilemmas with outdated roles in life. Their romantic interests, friends, and family taking them for granted. Their worth not being recognized at work. When they are angry, frustrated, disappointed, and heartbroken, they go out and seek distractions. That’s natural. We want to forget our pain, so we numb ourselves with sex, entertainment, food, and substances. I’ve been there, too.
At the tail end of my numb phase, I finally realized it wasn’t going to help me in the long run. I hated that I saw through my bullshit. I hated that I finally had to face what I was running away from, because that was exactly the cause of all my pain. ALL. Once I reached that point, there was no going back.
It’s difficult for me to hear my girlfriends talk about their heartbreak. What pains me even more is that I see why their male partners acted the way they did, but they don’t see it, even if they really want to understand it. Truth is, nothing is one-sided. In most human relationships, we tend to mirror each other. We attract who we are. But beyond all of my inner knowing, I’m also a human being, a friend who cares. I want to listen and ease their pain as much as I wish they saw what I see clearly.
I often say I am built differently. I mean it in the sense that both my feminine and masculine qualities are powerful. I can resonate with both. If anything, I’ve always felt like I belong to neither and am some hybrid, an original being. Someone universal.
Lately, I’ve been learning about numerology and life path numbers. My life path number 9 is said to embody all the qualities of life path numbers 1 to 8. An embodiment of everything. An old soul. Some say 9 is the final life cycle on earth. I feel like all of this explains my strange place in this world. I am given this gift of discernment because I am such a self-contained individual. All the wisdom and knowledge I need are already within me.
from
esbozkurt
PowerShell-based software deployment commands are increasingly used to distribute applications through short web links, bootstrap scripts, and copy-and-paste installation instructions. In many cases, users are encouraged to open a terminal with elevated privileges and execute a command that downloads and immediately runs remote code. Such procedures are often presented as convenient installation methods, activation tools, patching utilities, or simplified deployment mechanisms. However, when the source is unofficial, the licensing status is unclear, or the script is not independently verified, the command should be treated as untrusted code.
The objective of a responsible investigation is not to use the script to bypass licensing controls or obtain unauthorized access to commercial software. Instead, the purpose is to determine what the link delivers, which systems it contacts, what files it retrieves, which commands it executes, and how it modifies the operating system. These questions are best answered in a controlled laboratory environment that separates the test system from personal data, production networks, and trusted credentials.
A proper analysis combines several disciplines. Static analysis reveals the visible structure of the script before execution. Network analysis identifies external destinations, protocols, data transfers, and communication patterns. Endpoint monitoring records process creation, file system changes, registry activity, scheduled tasks, services, and persistence mechanisms. HTTPS interception may provide access to encrypted application-layer traffic when implemented carefully in a disposable environment. No single tool provides a complete picture, so the most reliable methodology uses several complementary tools and correlates their outputs.
The first principle is that a remote PowerShell command should never be executed directly from an unknown source. Commands that combine download and execution functions are particularly dangerous because the user may never see the code that runs. A common pattern retrieves remote content and immediately passes it to an interpreter. This creates an execution chain in which the operator loses the opportunity to inspect the script, verify its origin, calculate its cryptographic hash, or identify secondary payloads.
Static analysis should therefore be performed before any dynamic test. The remote content should be downloaded as a file without execution and stored in a dedicated analysis directory. A Linux workstation is well suited for this stage because it provides mature command-line tools for retrieving, hashing, searching, decoding, and cataloging suspicious content.
A working directory can be created as follows:
# mkdir -p powershell-link-analysis
# cd powershell-link-analysis
The remote script should then be downloaded to disk. The actual address should be substituted for the placeholder shown below.
# curl --proto '=https' --tlsv1.2 -fsSL https://example.invalid/bootstrap -o bootstrap.ps1
The downloaded file should immediately be assigned a cryptographic identifier. SHA-256 is appropriate for most laboratory workflows because it provides a stable fingerprint that can be included in reports and compared across multiple test sessions.
# sha256sum bootstrap.ps1
The file type, encoding, and general structure should also be examined.
# file bootstrap.ps1
The script can then be reviewed in a pager or text editor.
# less bootstrap.ps1
Static inspection should focus on several behavioral categories. The analyst should identify network functions, process execution, privilege escalation, archive extraction, file writes, registry changes, service manipulation, scheduled tasks, security configuration changes, and the creation of startup entries. The script may also include obfuscation, encoded commands, compressed strings, dynamic function construction, or indirect invocation techniques intended to make the code difficult to understand.
A broad search for commonly used execution and download keywords can accelerate the initial review.
# grep -Eni 'https?://|Invoke-RestMethod|Invoke-WebRequest|DownloadString|Start-Process|Set-Content|Remove-Item|Expand-Archive|schtasks|reg.exe|sc.exe|bitsadmin|certutil|cmd.exe|powershell.exe|pwsh.exe' bootstrap.ps1
Embedded URLs should be extracted and reviewed separately because a small bootstrap script often retrieves additional components from other locations.
# grep -Eo 'https?://[^"'"'"'") ]+' bootstrap.ps1 | sort -u
Every discovered resource should be treated as a separate artifact. A script may contact a code repository, a file-hosting platform, a temporary content delivery domain, or a server controlled by an unknown operator. It may retrieve a batch file, executable, archive, installer, configuration file, or second-stage PowerShell script. Each artifact should be downloaded independently, hashed, and stored without being executed.
The analyst should also check whether the script contains encoded PowerShell. Base64-encoded commands are common in both legitimate administrative automation and malicious activity. Their presence is not proof of harmful intent, but they require further inspection.
# grep -Eni 'EncodedCommand|FromBase64String|ConvertFrom-SecureString|IEX|Invoke-Expression' bootstrap.ps1
If an encoded string is identified, it can be decoded in an offline environment. The analyst should avoid copying unknown output into an active shell. The decoded content should be written to a file and reviewed as text.
Domain and certificate inspection should be performed before execution. DNS queries reveal the current address records and possible aliases associated with the host.
# dig example.invalid A
# dig example.invalid AAAA
# dig example.invalid CNAME
A verbose HTTPS request can reveal redirect chains, server headers, content types, and TLS negotiation details.
# curl -v -o /dev/null https://example.invalid/bootstrap
The remote certificate can be inspected with OpenSSL.
# openssl s_client -connect example.invalid:443 -servername example.invalid </dev/null 2>/dev/null | openssl x509 -noout -subject -issuer -dates -fingerprint -sha256
Certificate information should not be interpreted as proof that the content is trustworthy. HTTPS protects the connection between the client and the server, but it does not guarantee that the server is legitimate or that the delivered code is safe. A valid certificate only confirms that the connection was established to a host controlling the relevant domain.
Static analysis has important limitations. Scripts may generate commands dynamically, download different payloads according to location or operating system characteristics, or remain inactive until they detect administrative privileges. For these reasons, a controlled dynamic analysis is often necessary.
The dynamic test should be performed in a disposable virtual machine. The guest should contain no personal files, saved passwords, browser sessions, authentication tokens, email accounts, or access to organizational resources. Shared folders, clipboard synchronization, drag-and-drop integration, host file mounting, and USB passthrough should be disabled. The guest should be created specifically for the investigation and deleted after the analysis.
The virtual machine should not be bridged directly onto a trusted network. A dedicated NAT network is preferable because it permits controlled outbound access while reducing exposure to other devices. Additional firewall restrictions should prevent the test system from contacting internal address ranges. This is important because an untrusted script may perform network discovery, credential theft, lateral movement, or opportunistic access to nearby services.
On a Linux host using KVM and libvirt, available interfaces can be listed with the following command:
# ip -br link
The interface associated with the virtual machine can be identified as follows:
# virsh domiflist WINDOWS_LAB_VM
Before execution, a packet capture should be started on the Linux host. Assume that the guest address is 192.168.122.50 and that the relevant virtual bridge is virbr0.
# sudo tcpdump -i virbr0 -nn -s 0 -w powershell-test.pcap host 192.168.122.50
This command captures all traffic associated with the guest and writes the result to a PCAP file. The complete packet size is preserved, and automatic name resolution is disabled to reduce ambiguity. The capture should begin before the script is launched so that DNS lookups, TLS handshakes, redirects, and initial downloads are not missed.
After the test, the packet capture should be stopped cleanly.
# sudo pkill -INT tcpdump
The resulting file can be opened in Wireshark.
# wireshark powershell-test.pcap
Wireshark is particularly valuable for examining DNS requests, TCP connections, TLS handshakes, retransmissions, destination addresses, server names, and timing relationships. Display filters help isolate the relevant traffic.
# ip.addr == 192.168.122.50
# dns
# tls
# tcp.port == 443
# tls.handshake.extensions_server_name
These expressions are intended for the Wireshark display filter field. They are shown with a leading number sign to maintain consistent formatting.
The analyst should first identify all DNS queries generated during the test. Unknown or unrelated-looking domains may indicate secondary downloads, analytics services, redirect infrastructure, command-and-control systems, or third-party hosting. The sequence of queries is often as important as the individual names. A bootstrap domain may redirect the guest to a code repository, which may then lead to an archive host or an executable distribution server.
Command-line analysis with tshark can provide a quick summary of the capture.
# tshark -r powershell-test.pcap -q -z endpoints,ip -z conv,tcp
Unique DNS queries can be extracted as follows:
# tshark -r powershell-test.pcap -Y 'dns.flags.response == 0' -T fields -e dns.qry.name | sort -u
TLS server names can also be listed.
# tshark -r powershell-test.pcap -Y 'tls.handshake.extensions_server_name' -T fields -e ip.dst -e tls.handshake.extensions_server_name | sort -u
These results provide a high-level map of the infrastructure contacted by the script. However, they do not necessarily reveal the exact content transferred over encrypted HTTPS sessions.
Zeek provides an additional analytical layer by converting packet captures into structured logs. While Wireshark is optimized for packet-level inspection, Zeek is designed for behavioral summarization. It can generate logs for connections, DNS, HTTP, TLS, files, and other protocols.
A Zeek analysis directory can be created with the following commands:
# mkdir -p zeek-results
# cd zeek-results
# zeek -r ../powershell-test.pcap
# ls -lah
Connection data can then be reviewed.
# zeek-cut id.orig_h id.resp_h id.resp_p service duration orig_bytes resp_bytes < conn.log
DNS queries can be extracted from the corresponding log.
# zeek-cut query < dns.log | sort -u
TLS server names may be available in ssl.log or tls.log, depending on the installed version.
# zeek-cut server_name < ssl.log | sort -u
The value of Zeek lies in its ability to transform thousands of packets into concise, searchable records. It allows the investigator to determine which remote systems received the most data, which connections lasted longest, and whether the guest communicated with destinations that were not visible in the original script.
Encrypted HTTPS traffic presents a separate challenge. A standard packet capture usually reveals destination metadata but not the full request path, response body, or downloaded code. In a controlled laboratory, an interception proxy such as mitmproxy can be used to inspect plaintext HTTP transactions.
Mitmproxy can be launched on the Linux host as follows:
# mitmweb --listen-host 0.0.0.0 --listen-port 8080
The Windows guest should then be configured to use the Linux host as its HTTP and HTTPS proxy. The mitmproxy certificate authority should be installed only inside the disposable guest. It should never be trusted by a production machine because doing so would allow the proxy to decrypt protected traffic.
When interception is successful, the analyst can inspect full URLs, request headers, redirect chains, response types, scripts, archives, and executable content. The proxy can also save responses for later analysis. Some applications may ignore the system proxy, use certificate pinning, or establish connections through mechanisms that are not intercepted. For this reason, mitmproxy should be viewed as an optional enhancement rather than the sole source of evidence.
Network monitoring alone cannot reveal the full effect of a PowerShell command. Endpoint monitoring inside the guest is required to document system modifications. Process Monitor can record file system operations, registry access, process creation, and thread activity. Filters should focus on the PowerShell process and any children it creates.
Relevant process names may include the following:
# powershell.exe
# pwsh.exe
# cmd.exe
# cscript.exe
# wscript.exe
# msiexec.exe
# rundll32.exe
# reg.exe
# schtasks.exe
The analyst should pay particular attention to temporary directories, startup folders, system directories, scheduled tasks, services, user profile locations, security exclusions, and configuration areas used for application licensing or activation. A script may delete its temporary files after execution, so endpoint monitoring should be active before the command is launched.
Sysmon can provide persistent event records for process creation, network activity, file creation, registry modifications, and executable loading. The command-line arguments of child processes are especially important because they may reveal actions that are not visible in the original PowerShell script. PowerShell Script Block Logging should also be enabled when possible. It can record code after parsing and may expose dynamically generated or partially obfuscated commands.
All evidence should be preserved in a structured case directory. The original link, retrieval time, script hash, secondary file hashes, packet captures, Zeek logs, proxy exports, endpoint logs, screenshots, and virtual machine configuration should be recorded. Test conditions should also be documented, including whether administrative privileges were used, whether HTTPS interception was enabled, and which network restrictions were applied.
The final analysis should distinguish observed facts from interpretation. For example, a report may state that the script created a scheduled task, downloaded an executable, or modified a registry key. These are direct observations. The conclusion that a particular action represents persistence, evasion, or licensing circumvention is an analytical interpretation and should be supported by the collected evidence.
The safest methodological conclusion is that PowerShell installation links should be treated as executable software rather than as ordinary web addresses. Their apparent simplicity hides a potentially complex chain of downloads, redirects, process launches, and system modifications. A reliable investigation therefore requires a layered laboratory approach that combines static script review, packet capture, structured network analysis, controlled HTTPS inspection, and endpoint telemetry.
Wireshark is an essential component of this workflow, but it is not sufficient by itself. Tcpdump provides dependable capture, tshark supports automated extraction, Zeek produces behavioral logs, mitmproxy reveals application-layer content when interception is possible, and Windows monitoring tools record local changes. When these sources are correlated, the analyst can reconstruct the full execution chain and determine whether the link behaves as advertised, installs unauthorized software, introduces persistence, weakens security controls, or performs additional undisclosed actions.
The central principle is containment. Untrusted PowerShell commands should never be tested on personal computers, production systems, or networks containing valuable data. They should be examined only in isolated, disposable environments designed to preserve evidence and limit harm. This approach supports technical understanding without facilitating unauthorized software use and provides a defensible foundation for cybersecurity research, incident analysis, and user-awareness training.
from Nerd for Hire
The Q are one of my favorite Star Trek civilizations—specifically, as they're presented in Voyager. Don't get me wrong, I love the Q episodes in Next Generation and DS9, too, but in my opinion Voyager is where they get really interesting. For any non-Trekkies out there, the Q are god-like extra-dimensional beings capable of altering reality on a whim. They are immortal and have seemingly complete control over time and space. Despite this extensive power, they take an interest in humans during Picard's term at the helm of the Enterprise—or one Q in particular, played by John de Lancie, who pops up now and then to pester his pet humans. We learn a bit about the culture of the Q Continuum in the course of these interactions, but the focus mostly stays on the impact Q's actions have on the Enterprise, and is less about the Q themselves.
In Voyager, we learn more about why an all-powerful being like the Q would take an interest in puny humans in the first place. In the episode “Death Wish”, a renegade Q comes to Captain Janeway seeking asylum. He wants to leave the Continuum and become human so that he can die. Being immortal, he feels, has made the Q go stagnant. The viewer gets a tour of the Continuum rendered in a format our inferior human minds can understand: a highway through the desert, next to which stands a run-down house where bored-looking people are lounging around, some reading, some playing games. No one is talking; the Q seeking asylum explains that they've run out of things to talk about. Everything has already been said, and all the Q have already seen all there is to see in the universe. The Q feels his life has become futile. He finds it intolerable to keep on living, but he can't stop.
This episode is, for me, one of the best depictions of immortal beings in fiction because of how it recognizes the full implications of immortality. I've seen or read other stories that do this well, too, like the movie “He Never Died” or the novel The Minotaur Takes a Cigarette Break. In both of those, the protagonist is a mythological figure that has persisted into the present day, and living for thousands of years has taken its toll. Their brains are wired for a different time; they find themselves out of sync with modern society, living at its fringes. Both characters live alone and rarely socialize. Theirs isn't the opulent immortality of the Greek gods or the elegant long lives of Tolkien's elves.
Granted, none of us really know what it would be like to be immortal, so I suppose it's not entirely fair to criticize any depiction of immortality as inauthentic. Maybe the better critique is to say this isn't the most interesting way a writer can treat it. If you have a character who's lived for hundreds or thousands of years, you're missing an opportunity to give them a worldview that's very different from the average reader's.
My current work in progress involves a lot of very long-lived characters, so the question of how to capture this kind of extensive lifespan on the page has been front and center in my mind of late. These are some of the main things I’ve been thinking about as I’ve been working to build these characters in a way that will read as real and interesting on the page.
Mortality gives any life an inherent sense of urgency. Time becomes a limited resource that can't be wasted. But the more time a being expects to have, the less true that will be. And if time isn't quite as precious, that will have a few likely impacts on their behavior. They're likely to be more patient, less reckless, and more thoughtful before they act. Think of long-lived cultures from fiction, like the Ents in Lord of the Rings or the Ogier in Wheel of Time.
Long-lived characters are also likely to take more of a long-view. The math of short-term gains versus long-term consequences balances out differently for someone who's still going to be around in a few centuries. Immortal characters can absolutely still do things that are self-serving, but they're much less likely to make decisions that would sacrifice the long-term stability or health of their environment. After all, they're going to need to keep living here for a very, very long time.
For characters like vampires, that start out mortal then gain immortality later on, their relationship to time is likely to shift the longer they're alive. A vampire that was just turned 20 years ago might still have that inherent urgency of a human, but if your character has been around since ancient Egypt, their outlook is likely to fall more on the Ent side of the spectrum. This can be useful if you have a cast of immortals with a broad age range, helping you to give them traits that differentiate each other.
This is especially true for any immortal beings that live among mortals. Any mortal that they form a friendship—or more—with, they do so knowing that they're going to lose them. And this isn't just true of relationships. They've likely seen landmarks crumble and civlizations topple. The town where they were born might no longer exist, or maybe now it goes by a different name; depending on how long it's been, their culture of birth could have been completely forgotten.
Some of this is likely to be true even if your characters live in a society where everyone is very long-lived. Loss doesn't always need to mean death, for one thing. Even in a world where everybody is immortal, the relationships between those individuals can shift over time just like they do for people. A certain number of tragedies are going to accrue in the course of a long life, however charmed. Think of the narratives around the various Greek gods. Yes, they are immortal and powerful, but they still experience grief, betrayal, and heartbreak.
This is naturally going to influence how an immortal character interacts with their world. They may be less willing to form friendships with mortals, for example, to spare themselves the inevitable pain of losing another person they've grown close to. Or maybe they've developed a thick shell in general as a defense mechanism, or are particularly skeptical or pessimistic in their outlook. They might also become less inclined to take risks, an effect that can stack with their shifted relationship to time mentioned above to make them very cautious characters that are difficult to put into motion toward a goal.
People in general develop a lot of their habits, preferences, tastes, and other core aspects of their worldview and identity during their formative years. For a character that's hundreds or thousands of years old, that formative period happened during a very different time setting than the present of your story. Whatever world your story is set in, it's very likely that a lot of things have changed in the interrim. Think about how many cultural changes someone who was born in 1800 would've seen between their childhood and the present, and that's just a couple hundred years ago. Music, fashion, food, transportation, communication—just about every aspect of the character's everyday life will have changed, likely many times over, in the course of their life.
Different immortal characters are going to deal with this in different ways, of course. But, for most, there are going to be some ways they've adapted, and some old-fashioned habits or tastes that are going to stick around as core tenets of their identity even through all the changes around them. Part of this comes down to practicality. If your character lives intermingled with a broader society, they'd want to keep up with the times enough to live their life, which probably means updating their wardrobe every few decades and staying on top of technological developments. But they might not bother staying with the times in other aspects of the culture—maybe they still listen to the same music that they've used to relax for hundreds of years, for instance, and don't bother listening to any of that new-fangled stuff.
Now, if you're writing about a society of long-lived beings that are cut off from other cultures, then that culture is likely to stay more consistent and evolve less over time. In this case, their old-fashioned-ness would likely be more immediately visible once they're brought out of that isolation. I mentioned the Ogier from the Wheel of Time before, and they're a good example here, too. They live in self-contained communities and have rarely engaged with humans for decades, when the story starts. Because of that, they still hold to old traditions that other, faster-moving cultures have abandoned, and a lot of their dress and speech seems old-fashioned to the people who interact with them.
This is less of a factor if you're writing about characters that are both immortal and invulnerable. If it's a being that can't die—like, say, someone that's been cursed to live forever—then there's still a reason that they're still alive, it just doesn't have a whole lot to do with their behavior.
In most cases, though, you're going to be writing about characters that can die, even if not from natural causes. This is true even of gods in many mythological traditions, and most long-lived fictional creatures can be killed in the right conditions, even if it's not quite as easy as it is for we delicate mortals. Because of this, a certain amount of self-selection happens in their populations. Just because an individual is given the option of immortality doesn't mean that they're going to make the right choices to hang on to it. Individuals inclined to make dangerous enemies, seek out violence, or put themselves in very risky situations are, statistically, less likely to be the ones who are still alive to celebrate their 900th birthday.
There's a second point to this, too: the character has something that they're continuing to live for. This is the antidote to the kind of existential boredom that is at the heart of that Q storyline I mentioned earlier. Just because a character can live forever doesn't mean they'll always want to. That takes some kind of driving purpose that keeps them pushing through all of the losses they've accumulated, and all of the changes they've had to adapt to.
This is another point where the type of being you're dealing with is going to make a difference. If your immortal beings are Data-style androids, then it is feasible they could maintain an exact record of memories stretching back across hundreds of years—it's just a question of storage capacity, at that point. But for most characters, memories are naturally going to fade with time. Exactly how much of their very long past they can recall with any detail is something that it's smart to figure out from the start when you're working with an immortal character.
Granted, these characters are superhuman by default. Even so, think about your own memories. More recent ones are likely to be the most complete and vivid on average. The ones that you hang on to the strongest from earlier in your life are probably major moments connected to strong emotions. So maybe you have a lot of great memories of your favorite family vacation when you were five, but just have a few spotty memories of first grade. The everyday stuff tends to fade away pretty quickly, and once you get a few decades away from the memory, only the most intense ones are likely to stick around.
I think this is one of those places where writing a long-lived character that feels real means finding the right balance. On the one hand, it's likely they would have a wide variety of experiences and accrue a lot of skills and knowledge. But unless they're a machine, or an actual god, then they still need to practice skills to keep them, and knowledge can fade over time if it's not accessed. So if you want to have a character read Egyptian hieroglyphics, it's helpful to show the reader that they still use the language, at least occasionally—it's going to strain some readers' suspension of disbelief if the character hasn't seen hieroglyphics for 2,000 years but can still read them fluently.
I think if there's one connecting thread to all of these points, it's that a long-lived character still needs to feel fully developed and consistent. Immortality isn't just a superpower. It's the kind of character trait that's likely to dramatically influence the character's entire identity and worldview in ways that go much deeper than how hard they are to kill in a fight. And it's also not only a good thing. There are potential downsides that would come along with a very long life, and those are things you can use to add more complexity and depth to a character that might otherwise end up being too perfect or powerful.
See similar posts:
#WritingAdvice #Fiction #Worldbuilding #SciFi #Fantasy
from
SmarterArticles

There is a particular kind of promise that technology likes to make, and it goes like this: the thing that was once scarce and expensive will now be abundant and cheap, and so the people who never had it will finally get it, and the world will tilt a little closer to fair. It is a seductive story. It has been told about the printing press, about radio, about the personal computer, about the internet, and now it is being told, loudly and everywhere, about artificial intelligence in the classroom. A patient, infinitely available tutor for every child on earth. The end of the postcode lottery. The democratisation of quality education, finally, at scale.
It is a beautiful idea. The trouble is that the evidence, as it accumulates through the early months of 2026, keeps pointing in the opposite direction. Not subtly, either. A run of peer-reviewed studies and institutional research published between December 2025 and February 2026 tells a remarkably consistent story, and it is not the story on the marketing deck. The story the research tells is that AI in education, deployed the way it is currently being deployed, is far more likely to widen the gap between advantaged and disadvantaged children than to close it. The leveller, on closer inspection, looks a lot like a multiplier.
This matters enormously, and not only because education is the mechanism through which societies decide who gets to be what. It matters because the gap between the promise and the evidence has become a chasm, and into that chasm governments are pouring public money, vendors are pouring product, and children, millions of them, are being enrolled in an experiment whose results nobody has bothered to wait for. The question is no longer whether AI can help some students learn. It plainly can. The question is who it helps, who it leaves behind, and who is supposed to answer for the difference.
Begin with the most direct rebuttal to the democratisation narrative, because it is admirably blunt. In February 2026, the journal Frontiers in Computer Science published a paper titled, with no particular diplomacy, “AI and the digital divide in education.” Its authors, Mokgata Alleen Matjie, Andani Nethavhani and Mary Matlakala, set out to examine what actually happens when AI tools enter educational systems that contain, as nearly all educational systems do, both well-resourced and under-resourced learners.
Their conclusion is the sort of sentence that does not appear in a vendor's promotional video. AI, they write, “might bring more harm than benefits with its biased algorithms, cultural, and language insensitiveness.” The benefits, they found, concentrate among privileged learners in wealthy regions, which happen to be precisely the regions where the tools were designed in the first place. This is not an accident of distribution. It is a feature of how the technology was built and for whom.
Consider the mechanics, because they are where the unfairness lives. A large language model is, at root, a machine that has learned patterns from an enormous corpus of text. The corpus is overwhelmingly English, overwhelmingly Western, and overwhelmingly produced by and for people who already had reliable internet access and the leisure to write things down. When a child whose first language is Tshivenda, or Tamil, or any of the thousands of languages thinly represented in that corpus, sits down with such a tool, they are not meeting a neutral tutor. They are meeting a system that performs best for someone unlike them. The Frontiers authors put it plainly: when “AI tools are developed in a language unfamiliar to the learners, they are bound to struggle” relative to those whose languages shaped the design.
Then there is the algorithmic bias, which is quieter and arguably nastier, because it hides inside the appearance of personalised help. The study found that students from lower-income communities are “more likely to receive less accurate or less supportive guidance, reinforcing disadvantage.” Sit with that for a moment. The tool sold as a personal tutor delivers a worse tutorial to the children who can least afford a worse one, and it does so invisibly, wrapped in the same friendly interface that serves a richer child something better. There is no obvious moment of denial, no locked door, no sign reading “not for you.” There is just a steady, frictionless drip of slightly inferior help, accumulating over years.
The researchers also surfaced something subtler than infrastructure, drawing on a case study from rural China. The problem there was not only that rural schools lacked devices and bandwidth. It was that rural teachers lacked professional development in digital pedagogy, a gap the authors describe through the framework of technological pedagogical knowledge, a TPACK divide. In other words, even where you hand the hardware to a rural school, you have not handed it the capacity to teach with it well. The kit arrives. The knowledge of how to wield the kit does not.
If the Frontiers paper is the prosecution's opening statement, the Brookings Institution's January 2026 work is the forensic accountant quietly noting that the evidence everyone keeps citing was collected in suspiciously favourable conditions.
Brookings published two relevant pieces of work in that month. The first, a research review by Mary Burns on what the evidence actually shows about generative AI in tutoring, is genuinely encouraging in places, and it would be dishonest to pretend otherwise. Burns walks through randomised controlled trials in which AI tutoring systems performed core functions traditionally handled by human tutors and produced real learning gains. One trial saw an AI tutor more than double learning gains over a conventional classroom model. Another found a language-model assistant lifting middle-school mathematics achievement, with the largest benefit accruing to novice human tutors who used it as support. This is not nothing. The promise is not pure vapour.
But Burns is careful, and her care is the point. She acknowledges that “many claims about the educational benefits of generative AI have outpaced high-quality evidence,” and she stresses, repeatedly, that design matters, that the gains depend on pedagogically sound implementation rather than on the mere presence of the tool. Read the studies she cites and a pattern emerges that should give any policymaker pause. The trials that produced the good headlines were largely run in well-funded, technologically equipped settings, in environments built and staffed and connected in ways that bear almost no resemblance to the conditions in which the majority of the world's children are actually educated. The evidence base, in short, is drawn disproportionately from the kind of school that least needs the help.
This is the methodological version of testing a flood barrier exclusively on dry land and pronouncing it excellent. The places where AI tutoring has been shown to work are the places already rich in the things, reliable connectivity, trained staff, functioning devices, ambient digital literacy, that make almost any educational intervention work. To take those results and generalise them to an under-resourced school in the global majority is not science. It is wishful extrapolation dressed in the borrowed authority of a randomised trial.
The second Brookings output that month made the institution's broader judgement unambiguous. “A New Direction for Students in an AI World: Prosper, Prepare, Protect,” authored by Mary Burns, Rebecca Winthrop, Natasha Luther, Emma Venetis and Rida Karim, drew on a yearlong global study spanning more than 500 stakeholders across 50 countries and a review of over 400 academic studies. Its central finding lands like a cold flannel on the foreheads of the more excitable advocates. “At this point in its trajectory,” the report concludes, “the risks of utilizing generative AI in children's education overshadow its benefits.”
The asymmetry the Brookings team identifies is the crux of the whole problem, and it deserves to be spelled out. The risks of AI in education, they argue, tend to undermine foundational child development directly, regardless of how carefully you deploy. The benefits, by contrast, are conditional. They only materialise when the deployment is good, when the pedagogy is sound, when the surrounding system is competent. Poor deployment does not merely fail to deliver benefits. It can actively prevent positive outcomes from materialising at all, and it can inflict harm that lands hardest on the children with the least capacity to absorb it. The report's framework, the three pillars of prosper, prepare and protect, is in essence an argument that you cannot bolt AI onto a fragile system and expect anything other than amplified fragility.
Abstractions about distribution and asymmetry are easy to nod along to and easy to forget. So consider a more granular picture, the one assembled in a study of large language models in K-12 education in rural India, the work of Harshita Goyal, Garima Garg, Prisha Mordia, Veena Ramachandran, Dhruv Kumar and Jagat Sesh Challa at the Birla Institute of Technology and Science, Pilani. The peer-reviewed examination of LLM use among rural Indian students that surfaced in the December 2025 research conversation makes the gap between promise and practice almost tactile.
The researchers conducted semi-structured interviews with 23 student volunteer teachers working in rural schools across Rajasthan and Delhi, young educators with an average age of 22.5 and around three years of teaching behind them, people close enough to the chalkface to know what is actually happening in the room. What they reported is a catalogue of the barriers that the democratisation narrative tends to wave away.
Start with the internet, that quiet precondition for everything else. Fifteen of the 23 volunteers identified inadequate infrastructure as a serious obstacle, describing connectivity as a huge issue. As one put it, most schools simply do not have reliable internet and tech access is limited. An AI tutor is a remarkable thing when it loads. It is a blank screen and a wasted lesson when it does not.
Then teacher training, or rather its absence. Thirteen of the 23 flagged the lack of access to any AI training. One volunteer offered an observation that should be printed and pinned above every ministerial desk currently authorising a national rollout: “I don't think most government school teachers are aware of GenAI yet.” You cannot deploy your way around that sentence. A tool that requires pedagogical skill to use well, handed to a workforce that has had no opportunity to acquire that skill, does not become a tutor. It becomes, at best, a distraction, and at worst a substitute for teaching that the system was already struggling to provide.
Language surfaced again, exactly as the Frontiers authors predicted it would. Participants described English-language design as a real barrier, noting that students struggle with English while the very textbooks, the NCERT materials at the centre of Indian schooling, are themselves in English. A tool optimised for English-speaking users meets a child wrestling with English as a second or third language, and the gap between the tool's confident fluency and the child's actual comprehension becomes one more place to fall. It is worth dwelling on how this compounds. A child who already finds the textbook a linguistic obstacle is now handed a digital tutor that speaks the same foreign language even more fluently and even more confidently, and the apparent authority of the machine can paper over a comprehension gap rather than close it. The tool sounds certain. The child nods along. Nobody, least of all an overstretched teacher with thirty other pupils in front of them, is positioned to notice that the understanding never actually arrived. A poorer child in a wealthier child's classroom would at least share the same baseline of language and infrastructure. Here the deficits stack: weaker connectivity, weaker device access, a language barrier and an untrained teacher, each multiplying the others rather than merely adding to them.
And affordability, the most stubborn barrier of all. Eleven of the 23 cited cost. Many families, they reported, cannot afford consistent data or even a single device per child. The personalised tutor is not personalised if four siblings are sharing one cracked phone on a patchy connection in the hour before the battery dies.
The volunteers were not technophobes. They saw the potential, the capacity for personalisation, the possibility of lightening an overstretched teacher's load. But they were clear, eight of them explicitly so, that AI should be a complementary tool and not a replacement for teaching, and they worried about students becoming over-reliant on it at the expense of learning to think for themselves. The practical benefit they observed, in other words, fell far short of the promotional claims. The brochure described a revolution. The classroom described a series of obstacles, each of which fell hardest on the children who already had the least.
You might reasonably expect that a body of evidence this consistent, arriving this quickly, would induce caution in the people responsible for spending public money on AI in schools. You would be disappointed.
The New York Times reported in January 2026 that governments rolling out AI tools across their school systems were doing so faster than the research on educational impact warranted. Some experts quoted in that reporting issued a warning that ought to function as an emergency brake: poorly deployed AI could actively harm learning outcomes, and it would do the most harm to the students least able to absorb it. That is not a caveat. That is a fire alarm.
The pattern the Times identified is corroborated from other quarters. The Center for Democracy and Technology has warned that the momentum to deploy AI in K-12 schools is outpacing the guardrails needed to protect students. Survey work from the RAND Corporation has found AI becoming a default study tool across K-12 education, frequently without school guidance or parental knowledge, even as a growing majority of students themselves believe it harms their critical thinking. When the kids using the tool are more worried about its effects than the officials deploying it, something has gone wrong with the chain of accountability.
The temptation here is enormous, and it is worth naming honestly because it is not stupid. Education systems are chronically short of teachers, chronically short of money, and chronically short of time. A technology that promises a tutor for every child, at marginal cost approaching zero, is exactly the kind of miracle a finance ministry dreams about. The democratisation narrative is not merely marketing. It is also a genuine hope, held sincerely by people trying to solve real and painful problems. That is precisely what makes it dangerous. The most seductive false promises are the ones that answer a real need.
But hope is not a deployment strategy, and the speed of these rollouts has a specific, corrosive logic. The research takes years. The procurement cycle takes months. The political incentive to announce a bold modernising initiative takes about a week. So the announcements race ahead of the evidence, the contracts get signed, the tools get pushed into classrooms, and by the time anyone has rigorously measured the effect on actual learning in actual under-resourced schools, the next initiative is already being announced. The evidence, when it finally arrives, lands in a world that has stopped waiting for it.
It is worth being precise about the mechanism, because “AI widens inequality” can sound like a vague incantation if you do not show the gears turning. The reason a tool can be sold as a leveller and behave as a multiplier is not mysterious. It is structural, and it repeats across every study cited here.
A new educational resource is never absorbed into a vacuum. It is absorbed into an existing system, and that system already has a distribution of advantage. The well-resourced school receives the AI tutor along with the reliable fibre connection, the device for every pupil, the teacher who has been trained to integrate the tool into a coherent lesson, the parents who can troubleshoot at home, and the ambient digital fluency that makes the whole thing feel natural. In that environment, the tool does roughly what the brochure said. It personalises, it supplements, it extends a good teacher's reach. The Brookings trials caught exactly this, and there is no reason to doubt them.
The under-resourced school receives the same tool and almost none of the surrounding infrastructure. The connection drops. The device is shared or absent. The teacher, through no fault of their own, has had no training. The tool, designed in a distant language for a distant context, performs worse for these particular children, and it does so quietly. So the same technology, dropped into two different systems, does not equalise them. It tracks the inequality that was already there and, because the affluent system can extract far more value from it, it widens the distance between the two. This is the TPACK divide from the China case study, the language barrier from rural Rajasthan, and the algorithmic bias from the Frontiers paper, all describing the same underlying physics from different angles.
There is a grim elegance to it. You do not need anyone to act in bad faith. You do not need a conspiracy to disadvantage the poor. You need only to distribute an unequally usable tool across an already unequal landscape and let the existing gradient do the work. The democratisation narrative assumes the tool is the great equaliser. The evidence shows the tool is a faithful amplifier of whatever it is plugged into, and what it is plugged into is not equal. The history of educational technology is, depressingly, a series of variations on this theme. Each new medium arrives wrapped in the language of access and arrives in practice as an accelerant of existing advantage, because the families and schools best placed to exploit it exploit it first and hardest. What is genuinely new about AI is the quietness of the failure. A missing textbook is visible. A broken laptop is visible. A tutor that simply performs a little worse for poorer children, while smiling the same smile and offering the same interface, leaves no mark anyone can point to. The inequality it produces is real but evidence-free at the level of the individual classroom, which is exactly the kind of inequality that is hardest to argue against and easiest to deny.
So what would it take to make this technology behave like the leveller it is marketed as, rather than the multiplier the evidence reveals? The studies, read together, sketch an answer, and it is considerably more demanding than buying a licence and issuing a press release.
It would require, first, that the tools be built for the children who most need them rather than retrofitted from tools built for everyone else. The Frontiers authors are explicit on this. They call for multilingual, culturally responsive AI systems and for diverse, representative datasets to mitigate algorithmic bias. This is not a cosmetic localisation, not a translation layer bolted on at the end. It means including the languages and contexts of disadvantaged learners in the design and the training from the beginning, so that the tool performs as well for a child in rural Rajasthan as it does for a child in a wealthy suburb. That is expensive and unglamorous and commercially unattractive, which is precisely why it does not happen by default.
It would require, second, the pedagogical infrastructure without which the tools are inert or harmful. The rural India study and the China case study both hammer the same nail. Hardware is necessary and nowhere near sufficient. Teachers need genuine training, not a one-hour webinar, in how to integrate these tools into sound teaching. The Brookings prepare pillar is built entirely around this idea of capacity-building for educators and students, and it is the pillar most often skipped, because building human capacity is slow and undramatic in a way that announcing a technology partnership is not.
It would require, third, that deployment proceed at the speed of evidence rather than the speed of procurement. This is the direct rebuke to the pattern the New York Times documented. It means running the trials in the conditions that actually prevail in under-resourced schools before scaling, rather than generalising from results obtained in rich ones. It means the willingness to conclude, as Brookings did, that at this moment the risks may overshadow the benefits, and to act on that conclusion rather than to bury it beneath an announcement.
And it would require closing the equity gap deliberately, with money and design and political will, rather than hoping the technology will close it as a happy side effect. The Brookings report calls for innovative financing to close equity gaps and for tools co-created with educators, students, parents and communities. The common thread is intention. Equity does not emerge from the unsupervised diffusion of a clever tool. It has to be engineered, paid for, and protected against the gradient that is always trying to reassert itself.
Which brings us to the hardest part of the question, the part that the technology industry is structurally allergic to and that governments are politically reluctant to grasp. If a tool is sold to the public on a narrative of democratising quality education, and it turns out instead to widen the gap between the advantaged and the disadvantaged, who is accountable?
The honest answer is that, at present, almost nobody is, and that is itself the scandal. Responsibility in this system is diffused to the point of evaporation. The vendor builds a tool and markets its potential, then points out, accurately, that outcomes depend on how schools use it. The government procures the tool and announces the initiative, then points out, accurately, that it relied on the vendor's claims and the apparent weight of the research. The researchers produce the encouraging trials, then point out, accurately and often in the very same papers, that their results came from well-resourced settings and should not be over-generalised. Everyone has a defensible position. Everyone has someone else to point at. And the child in the under-resourced school, who was promised a tutor and received a barrier, has no one to point at at all, because the entire structure has been arranged so that the harm has no author.
This is not acceptable, and the way out of it is not more sophisticated blame-shifting but a clear allocation of duties. Vendors who sell a tool on an equity narrative should be held to that narrative, which means being required to demonstrate that their products do not perform systematically worse for disadvantaged learners, the precise failure the Frontiers study documented. The marketing claim and the measured outcome should be allowed to collide in public. Governments that deploy these tools at public expense are accountable for the conditions of deployment, for the connectivity, the teacher training, the linguistic fit, and for the basic discipline of not scaling faster than the evidence permits. A minister who rolls out a national programme on the back of trials conducted in conditions nothing like their own schools owns the gap between the two, however inconvenient that ownership may be at the next ribbon-cutting. And the research community, to its considerable credit already doing this in the studies discussed here, bears a continuing duty to keep saying loudly that the evidence comes from the wrong schools, and to resist the quiet pressure to let promising results be laundered into universal claims.
The deepest problem is that the democratisation narrative does a specific kind of damage entirely separate from any individual tool. By insisting in advance that AI is a leveller, it pre-emptively absolves everyone of the duty to check whether it is. If the technology is equalising by its very nature, then there is nothing to monitor, no distributional outcome to measure, no accountability to assign. The story does the work that scrutiny ought to do. That is what makes it so much more dangerous than ordinary marketing. It is not merely overselling a product. It is disabling the alarm system that would otherwise tell us the product is making things worse.
None of this is an argument that AI has no place in education, and it would be a betrayal of the evidence to pretend otherwise. The Brookings trials are real. The learning gains in well-designed deployments are real. The rural volunteers in Rajasthan saw real potential, and they were not naive to see it. Used well, with the right languages and the right training and the right humility about pace, these tools can genuinely help children learn. That truth and the harder truth can be held at once, and holding both is the entire discipline the moment demands.
The harder truth is that “used well” is doing enormous and largely unacknowledged work in that sentence. The conditions under which AI helps, reliable infrastructure, trained teachers, culturally and linguistically appropriate design, and a deployment pace governed by evidence, are exactly the conditions that under-resourced schools lack. Without those conditions, the same technology that lifts the advantaged child does little for the disadvantaged one and may quietly set them back, and the net effect across a system is to stretch the distance between them. That is the mechanism every study cited here describes from a slightly different vantage, and it does not stop operating because the marketing insists it should.
The democratisation of education is a goal worth wanting with everything we have. It is precisely because it is so worth wanting that it should not be handed over to a narrative that congratulates itself on the outcome before the outcome has been measured. The evidence from late 2025 and early 2026 is a gift, if anyone in a position of power is willing to receive it as one. It arrived early, while the rollouts are still young and the harms still reversible. It tells us, clearly and in time, that the leveller is behaving like a multiplier, and that whether it goes on doing so is not fixed by the technology but chosen by the people deploying it. The tools will do what we build them to do and put them where we put them. The accountability for that, finally, is ours, and it cannot be coded away.
Matjie, Mokgata Alleen; Nethavhani, Andani; Matlakala, Mary. “AI and the digital divide in education.” Frontiers in Computer Science, Volume 8, Section: Human-Media Interaction, 5 February 2026. https://www.frontiersin.org/journals/computer-science/articles/10.3389/fcomp.2026.1759027/full
Burns, Mary. “What the research shows about generative AI in tutoring.” Brookings Institution, January 2026. https://www.brookings.edu/articles/what-the-research-shows-about-generative-ai-in-tutoring/
Burns, Mary; Winthrop, Rebecca; Luther, Natasha; Venetis, Emma; Karim, Rida. “A new direction for students in an AI world: Prosper, prepare, protect.” Center for Universal Education, Brookings Institution, January 2026. https://www.brookings.edu/articles/a-new-direction-for-students-in-an-ai-world-prosper-prepare-protect/ (Full report: https://www.brookings.edu/wp-content/uploads/2026/01/A-New-Direction-for-Students-in-an-AI-World-FULL-REPORT.pdf)
Goyal, Harshita; Garg, Garima; Mordia, Prisha; Ramachandran, Veena; Kumar, Dhruv; Challa, Jagat Sesh. “Thematic insights into the impact of large language models on K-12 education in rural India from student volunteers' perspectives.” Scientific Reports, 2025. https://www.nature.com/articles/s41598-025-18047-1 (Preprint: https://arxiv.org/abs/2505.03163)
The New York Times. Reporting on government deployment of AI tools across school systems outpacing research on educational impact, January 2026.
Center for Democracy & Technology. “Advancing Responsible AI Adoption and Use in K-12 Education: Three Policy Priorities for State Legislation.” Center for Democracy & Technology, 2026. https://cdt.org/insights/advancing-responsible-ai-adoption-and-use-in-k-12-education-three-policy-priorities-for-state-legislation/
RAND Corporation. “More Students Use AI for Homework, and More Believe It Harms Critical Thinking: Selected Findings from the American Youth Panel.” Research Report RR-A4742-1, RAND Corporation, 2026. https://www.rand.org/pubs/research_reports/RRA4742-1.html
RAND Corporation. “Student Use of AI for Homework Rises as Concerns Grow About Critical Thinking Skills.” RAND Corporation, March 2026. https://www.rand.org/news/press/2026/03/student-use-of-ai-for-homework-rises-as-concerns-grow.html
Center for Democracy & Technology. “Hand in Hand: Schools' Embrace of AI Connected to Increased Risks to Students.” Center for Democracy & Technology, 2026. https://cdt.org/insights/hand-in-hand-schools-embrace-of-ai-connected-to-increased-risks-to-students/
Education Week. “Students Are Worried That AI Will Hurt Their Critical Thinking Skills.” Education Week, March 2026. https://www.edweek.org/technology/students-are-worried-that-ai-will-hurt-their-critical-thinking-skills/2026/03
National Education Policy Center. “Cautionary Brookings Report Attempts to Weigh Opportunities and Risks of Generative AI in Education.” National Education Policy Center, March 2026. https://nepc.colorado.edu/publication-announcement/2026/03/generative-ai

Tim Green UK-based Systems Theorist & Independent Technology Writer
Tim explores the intersections of artificial intelligence, decentralised cognition, and posthuman ethics. His work, published at smarterarticles.co.uk, challenges dominant narratives of technological progress while proposing interdisciplinary frameworks for collective intelligence and digital stewardship.
His writing has been featured on Ground News and shared by independent researchers across both academic and technological communities.
ORCID: 0009-0002-0156-9795 Email: tim@smarterarticles.co.uk
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from bone courage
In matter, the world is love.
In the absence of matter, nothingness, too, is entirely love.
How both entwine themselves in you is where we meet.
from
💚
Our Father Who art in Heaven Hallowed be Thy name Thy Kingdom come Thy will be done on Earth as it is in Heaven Give us this day our daily Bread And forgive us our trespasses As we forgive those who trespass against us And lead us not into temptation But deliver us from evil
Amen
Jesus is Lord! Come Lord Jesus!
Come Lord Jesus! Christ is Lord!
from
💚
The apiary be Scottish run to mute Late December this hugger And seeing simply rise What time in Hearst for Will Enough of oak And seeming simpler For five octet and lane And pasture by the law Economy forever- and nines to the Moon Giving ray to God And night shall let us be- the end of war.
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Rome
To Hearts by day In Sun and for the notch In covet done Thoughts for incarnation The soul and script Retribution Peter A day for then in rain Tiny then The night that had For Crosses to unfold Every name in Heaven For living Mass to know In Re to you Days for going in The one to bring Rod in daring be And in thought Prayers for distant men For God define No substance of our high Very existence The day is early then And no to matter To each becoming her The thought of why- Inter alia and through To common spikes of ground And in the focus why- of distant Rome To bear on global then And high to rain Watching fold and Eucharist The day is in And faces to keep within A soul to know Across to Paris then Offers to the poor And day at night’s rest Curely seen And up to Heaven loved And from this fountain be A clear of God’s own path To Him be glory Shades of Heaven here And only then suppose Christ within Basilica To duly bound Take forever honour And then the path be Holy The Victory of our Lord To global then Offer to the soul Of standing for detour And justice revealed Every second here To the capital of Rome God in His religion For Water then Torches bearing rain And when re-night to stone The glory of His keep Thank you Jesus, call In tithing for the night Engrained to Holy men For Crosses of Saint Peter Solace then be May And time for early reach In totem and our King The nights renewing here For goal to Rome The rise and thanking near Christ as resurrect Our pond is to this day The baptism See The Eucharist of Rome For all courses new And simply here To offer God The Victory of Rome And as our gift The Pentecost redeem For Holy yew The troubadours unveil And blessed thine For God to reach our Adam And duly be A prayer for every heart In Christ And true unveiling love The distance wept Our fold to Heaven home And mercy by the day Lifting into night The verse of here and poor Victory in the spaces To the Sun and stars Verses in afford And all be right The living, blessed Lord For all our lives And decency respect At atom’s call Christ the Lord is risen.
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Roscoe's Story
In Summary: * If I had to describe my Sunday in one word it would be: balanced. And that's a very good thing, especially compared to my yesterday, which I would described as being very unbalanced; uncomfortably so.
An hour and a half of yard work this morning was very productive. I cleared out a strip of overgrown grass and weeds turned jungle that was poking through a neighbor's fence from my side. There is much more clearing out of that jungle that needs to be done, and I intend to do it as weather and my health allow. But for now her fence is clear.
Remember the big winds of a few months ago that brought down some big branches from my front yard tree? I'd moved them to a staging area in the back yard where I proceeded to cut the smaller of them into pieces that would fit in the green organics bin for weekly pickup. The city has one day each year designated for large brush pickup. That day is tomorrow. So today I dragged / carried the really big branches remaining in the back yard staging area to the front yard, positioned for the city collection.
Yes! All that work completed and my sweaty old self showered and cleaned up before Noon.
Bet I'll sleep better tonight! Ha Ha!
Prayers, etc.: * I have a daily prayer regimen I try to follow throughout the day from early morning, as soon as I roll out of bed, until head hits pillow at night.
Health Metrics: * bw= 232.59 lbs. * bp= 138/79 (70)
Exercise: * morning stretches, balance exercises, kegel pelvic floor exercises, half squats, calf raises, wall push-ups, BP breathing exercises, pilates
Diet: * 05:30 – 1 banana, 3 little cookies * 09:30 – 2 little cookies * 10:45 – 1 peanut butter sandwich * 13:20 – scrambled eggs, bacon, sausage, rice * 16:20 – 1 fresh apple * 19:30 – dish of ice cream
Activities, Chores, etc.: * 04:30 – bank accounts activity monitored. * 04:40 – read, write, pray, follow news reports from various sources, surf the socials, nap * 07:45 to 09:15 – yard work, cutting back yard bushes, hauling branches * 10:30 – watching The Matrix until the movie froze up on me. * 13:20 – listening to Texas Rangers pregame show, the game starts at 13:35, I'll listen to the radio call of the game on 105.3 The Fan, DFW's #1 Sports Radio Station. * 16:38 – and the Rangers beat the Astros, 6 to 5. * 18:30 – slowly working through the evening's meditations and prayers.
Chess: * 15:20 – moved in all pending CC games
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Notes I Won’t Reread
The bruises got worse. i didnt die, that would’ve been easier to explain. every time i lie down, it feels like someone’s hands close around my neck. not enough to stop me from breathing but enough to remind me they’re there. then the pressure disappears the moment i sit up, but the bruises dont. i looked in the mirror today.. they’re shaped like hands. several of them. as if multiple people decided i shouldnt wake up, yet changed their minds halfway through, maybe i sohuldnt write any of this. but if i end up dead, at least someone can read this and know i wasnt imagining the marks on my neck. or maybe they’ll decide i was. either way, it wont make much of a difference to me. people die every day. you dont stop for every stranger. you dont grieve for every name in a newspaper. death is ordinary until it belongs to someone you know, i know that feeling. my mother died when i was little, maybe thats why i started paying attention to grief. not my own, everyone else’s. sometimes, after a job was done, i’d go to the funeral. No one questioned why i was there. i’d stand in the back, listen to people tell stories, watch them cry, watch them search for someone to blame. They’d curse whoever did it. they’d swear the person responsible would pay for it. I’d hear every word. and then leave, it never changed anything. the dead stayed dead. the people left behind kept searching for answers they were never going to find. I wasn’t there because i cared about the person in the coffin. i was there because i wanted to understand the people standing around it. blaming god. blaming themselves. Blaming others. just to feel better. i wanted to understand why one person’s death could hollow out an entire room, while another became nothing more than tomorrow’s headline. Maybe thats the part ive never understood. I’ve spent years being the last thing some people ever knew. now it keeps coming back to me. strange, enough. it never seems interested in taking me with it.
Whatever, I’ll figure it out.
Sincerely, The man death rejected
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laxmena
My book club is reading Abundance by Ezra Klein and Derek Thompson this month. The core idea fits on a napkin, so before the meeting I decided to actually check it against real data. Here's what I found, and where it fell apart.
The idea, in one picture
Housing, clean energy, cures for disease. The inputs to all three haven't really moved. Money's there. Technology got cheaper, not more expensive. Roughly the same number of people know how to build this stuff as always did.
What changed is the pipe between the inputs and the output.
Over the decades, every time something went wrong, somebody added a valve. A highway almost bulldozed a neighborhood in the '70s, so now there's a checkpoint for that. An environmental study got added in the '90s. By the 2000s you needed a public comment period too, sometimes more than one. None of these were dumb decisions in isolation. Each solved something real. But stack enough of them and the pipe might as well be shut, even though nothing on the input side changed at all.
Klein and Thompson call this chosen scarcity. Anyone who's inherited a legacy codebase already knows the pattern under a different name: unaddressed technical debt. A pile of individually-reasonable shortcuts, left unrefactored for so long that the system's throughput has almost nothing to do with its actual capacity anymore.
I liked the idea. I also didn't fully trust it. So before the meeting, I ran the numbers.
Test one: does the throughput number actually check out?
I compared two U.S. cities that get cited constantly in this debate: Austin, which started clearing its own valves out around 2015, and San Francisco, which mostly didn't.
The gap is not small. Austin permits roughly 18 new homes per 1,000 residents every year. San Francisco permits about 2. Eight times the throughput. Same country. Same everything, really, except the rules.
I ran the actual arithmetic using an elasticity number borrowed from a housing study out of Auckland, New Zealand, where a comparable policy change happened and got carefully measured.
Extrapolated ten years out, Austin's predicted price effect blew past -100 percent, which is obviously impossible. That's useful, actually — it means you can't stretch a small, well-measured experiment out to ten years and still trust the exact number it spits out. Markets saturate. Construction costs and demand put a floor under how far prices can fall, and Austin landed on that curve instead of the dashed line.
San Francisco's model predicted something like an 11 to 19 percent rent decline. Instead, rent there is rising faster than almost anywhere else in the country right now, up nearly 19 percent over the past year. Turns out an AI hiring boom rolled through right when the small supply gains were supposed to show up, and a model that only tracks supply has no way of seeing that coming.
Test two: the case that broke my model completely
Then I checked a pair I expected to tell the same story: Vienna versus London.
Here's where it got weird. Vienna and London build housing at almost the same rate, barely a 20 percent difference. If clearing the pipe were the whole mechanism, their prices should look almost identical.
They don't. Vienna's rent is roughly a third of London's, and has stayed flat for two decades.
The reason has nothing to do with permitting speed. Forty-three percent of Vienna's housing stock is public or nonprofit housing, running alongside the private market instead of depending on it to eventually get fixed. It's the housing-policy version of the strangler-fig pattern: instead of refactoring a legacy system riddled with a decade of shortcuts, you stand up a clean system next to it and let it carry the traffic that matters most. Combined with old rent-control rules on the pre-1945 stock, that parallel system is what actually holds prices down. London never built a second pipe. It just kept adding valves to the one it already had.
This matters more than it looks. The book's whole argument is: clear the pipe, let the existing system move faster. Vienna barely touches that lever. It built a second system that doesn't need the first one fixed to work at all. Both approaches raise total output, but only one of them shows up in the book.
What I'm actually taking into the meeting
So what's the actual takeaway here?
Mostly this: the mechanism is real, but only when you can isolate it cleanly. Austin shows that. So does the documented policy change in Auckland and Minneapolis. Clear the pipe, throughput goes up, and prices come down in a way you can actually measure.
But Vienna is the one that's going to stick with me, because it's proof this isn't the only lever available. Anyone telling you a genuinely messy problem has exactly one fix is skipping a step, even when the fix they're describing is real.
And honestly, the habit I want to keep out of all this has less to do with housing than with how I plan to evaluate the next big claim somebody hands me. Profile before you optimize. Don't assume you already know which function is slow, check. Before a compelling story gets to explain what you're seeing, spend two minutes running rough numbers on it yourself. You won't always get proof out of that. But you'll see fast which parts of the argument are load-bearing and which ones just sound right.
Less “was the book correct” and more “what's the cheapest way to check whether a claim is even the right order of magnitude.” Most of the time, that's enough to tell you which parts to trust.
This is meant to be a place for me to write. Mostly for me to flesh out my own ideas, but also just to keep at writing, which is a perishable skill. Generally, I want to write about civics, tackling questions about what it means to be a good citizen, why you ought to be a good citizen, and how otherwise good people fail to become good citizens. Broadly, I think of good citizens aa people who are committed to maintaining and improving the institutions that make a society worth living in.
There is no fleshed out theory of citizenship motivating any of this, but my musings on the issue are organized around one important idea: That to be a good citizen, you have to understand how the institutions in your society work, and you have to be committed to maintaining and improving them. I think this is actually quite difficult in complex society, with lots of specialization. We live in a society where few people understand at a deep level how things work, and no one understands how every thing works. That makes it hard to be a good citizen. Consequently, I think most Americans are bad citizens. That is not to say that most Americans are bad people, rather, that most Americans really do not understand how the institutions that impact their lives work, and generally do not bother to improve or maintain them. What I'd like to do is highlight this as a central problem facing American life today, to explore why this gets to be the case and to, perhaps, offer suggestions for improvement.
The idea of citizenship is often associated with voting. We hear the word and think of the political things the average American is supposed to do on election day. Vote, be informed about politicians, form justifiable preferences for different policies, etc. While those things are a part of civic life in the US, there is so much more about civics than just politics. How you integrate with your local community, how groups of people collectively develop and maintain a sense of belonging or identity, how individuals relate themselves to larger groups, in terms of rights and responsibilities.
These things are all part of civic life, but often overlooked in discussions of citizenship. Not littering in you local community is an act of citizenship, just as much as voting. Ensuring the collective decisions made in your community don't harm future generations is an act of citizenship, even if those decisions seem small and very local. Thinking of local governments as something you participate in and are a part of, rather than a discrete organization that provides you services is an act of citizenship.
All of these ideas tie individuals to institutions. By institution, I just mean major features of organization in social life. The legal system, financial system, the family, technology, and the education system are all examples of institutions. So a better way of thinking about civics is to say that civics is the knowledge of how institutions are supposed to work. That is, civics is the information a person needs in order to be a good citizen. Civic knowledge includes all the information an informed and responsible citizen would need in order to understand how the institutions that impact their life are supposed to work, and what they need to do to maintain them. I say supposed to work because it is not always the case that institutions work how they are supposed to. Sometimes institutions are dysfunctional, sometimes they are harnessed by bad actors to do things they should not. But if you don't know how they are supposed to work, you will not be able to recognize when they are broken.
Failing to understand how an institution is supposed to work will lead to different forms of bad citizenship, the two most common of which are jersey voters and lazy cynics. Jersey voters vote because it is their team. They don't pay attention to anything other than the identity of a politician and support or oppose them on the basis of their identity. This leads to tolerance for corruption and incompetence, as well as a willingness to sacrifice principles. Lazy cynics substitute knowledge for cynicism and generally don't participate in the maintenance of institutions at all because they take the view that to do so would be useless. I want to explore both of these forms of bad citizenship in later posts, but for now all I want to do is point out that if you don't know how things are supposed to work, then you are destined to be a bad citizen, even if you vote.
That is why civics is so important. Civics tells you how things work, equipping you with the information you need to recognize problems and fix them when they arise. A strong knowledge in civics prevents you from being passive or cynical. If you don't understand how things are supposed to work, how could you possibly fix them when they break? And rest assured, if you want to be a citizen, you are obligated to fix institutions when they break. That is your job. You are responsible for that.
So all of this implies a minimum amount of information one would need to be a good citizen. Hence, the blog title. One of the things I want to do here is explore what information someone needs to know in order to be a good citizen. In a society with extreme degrees of specialization, it is not possible to be knowledgeable in every subject. Expertise in our society is extremely narrow, one can only be a true expert in a small band of subjects because there is so much to know. So the question naturally arises, if you want to be a good citizen, how much do you need to know? What is the minimum amount of information one needs to understand the institutions in their life, recognize when they go bad, and correct them?
There are, of course different opinions on how things are supposed to work. That is fine, in an open society there will always be debate about what the best form should be for an institution. The fact that institutions work at all is because they are filled with people who have values. Part of developing good civic knowledge is learning the history of these debates and learning how they shaped the nature of institutions. But in order to be a good citizen, you do need to know how institutions actually work right now. If you have no clue how, for example, the law, or the financial system works, you cannot possibly hope to understand the debates around these institutions! That will inevitably lead to mindless cynicism or passive acceptance of corruption— that is, bad citizenship.
from Mitchell Report

Me with my glasses for the last time full time pre-surgery.
I just shared good news about my heart journey, and now I can finally share another medical milestone for 2026: my cataract surgeries are done and my vision is back.
For the last couple of years, my sight kept slipping, no matter how many times I got new prescriptions from the ophthalmologist or optometrist. A new prescription might clear things up for a few months, then the blurriness would come back. I found myself contorting my face and doing all kinds of facial tricks just to see. It was soul-sapping. Anyone who knows me knows I don't get depressed easily. At 57, I've had low moments before, but nothing like this. The vision loss pushed me into a prolonged low spell. I stopped wanting to read and lost enthusiasm for work, except as a way to pay bills. Even blogging suffered. After my most prolific year in 2025, I barely posted because I literally couldn't see well enough.
My glaucoma doctor mostly saw senile cataracts and told me my eye pressures looked fine. Early this year, he said the cataract in my right eye had progressed from a 1 to a 2, which was probably causing the problems. He offered two options: try another prescription or remove the cataracts. I chose surgery.
On June 22, 2026, I had the right cataract removed. The surgeon did a great job, although the anesthesiologist's nerve block caused bruising and left me with a black eye for almost two weeks. Still, that eye improved noticeably. I had the left eye done on July 9, 2026, and it went much better. A different anesthesiologist gave a smooth block, and the same excellent surgeon operated. The day after the left surgery I was seeing 20/20; after the right surgery I was at 20/40. The team also placed iStents in both eyes for my glaucoma. Those seem to be doing fine so far, though time will tell and my glaucoma specialist, who is different from the surgeon, will follow up.
![]() Surgery day. 1st surgery of the right eye you can see the catarct. | ![]() Post surgery rigth eye |
![]() Pre-surgery no glasses left eye. | ![]() Post surger left eye and still blocked. |
Some expected trade-offs are already showing up. I need readers for near work and some help with intermediate tasks. My distance vision was corrected, and so was my astigmatism. They corrected the right eye's astigmatism with a laser, but the left needed a toric lens upgrade, which I paid for because insurance didn't cover it. My natural, God-given lenses are gone and replaced with implants, basically eyeglasses inside my eyes. It's been life-changing. I didn't realize how dulled colors and whites had become until the right eye was done and whites looked truly white again. Before the left eye was operated on, I could compare the operated and unoperated eyes and everything in the unoperated eye had a yellow tint. Now that both eyes are done, colors are clearer and whites really pop. The left eye is still a bit inflamed since it's only a few days post-op, but distance vision already feels nearly perfect, like the first time I put on glasses at 16.
I didn't expect to need cataract surgery until my 60s or 70s, but I'm relieved it's over and I can see clearly again. Now I have to heal and figure out what kind of readers I'll need and whether I'll need permanent glasses again though for distance at this point and time I don't. I was scared going in. The right-eye surgery felt strange because the nerve block didn't fully take, though I experienced no pain. The left-eye surgery was much calmer and less noticeable.
Being only 57 and needing cataract surgery before my parents, who are in their 70s, felt odd. But I simply could not function properly before the surgeries, and I'm very thankful that God gave me a skilled surgeon and the strength to get it done. I'm glad to be able to see clearly again.
from
Have A Good Day

The Brooklyn-based artist Carol Bove shapes massive steel as if it were clay. It looks so unbelievable that you want to touch it (don’t!) to see if it is real. There is much more to her art than that, and in fact, it was one of the most holistic exhibitions I have seen at the Guggenheim. It still runs through August 2.
See more photos here.
from
Roscoe's Quick Notes

This Sunday's MLB game of choice has the Houston Astros playing my Texas Rangers in a game scheduled to start at 1:35 PM CDT. As I usually do, I'll follow the game's score and stats in real time via MLB's Gameday Service where we can also find links to the radio-call of the game provided by announcers of either team we choose.
And the adventure continues.
For the English version please scroll down past the German version
July 12, 2026 — The Architecture of Inertia (/https://write.as/germany-a-winter-s-tale/die-architektur-der-tragheit)
July 6, 2026 — From Combatant to “Caregiver” Liberalism (/https://write.as/germany-a-winter-s-tale/vom-streitbaren-zum-verantwortungsvoll-betreuenden-liberalismus)
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July 12, 2026
Von Prof. em. Dr. Hans Joachim Scholl, MBA
Eine vergleichende institutionelle Analyse (1990–2036)
Eine Anmerkung vorab
Mehrere statistische Limitationen seien hiermit gleich zu Anfang summarisch erwähnt: Medaillenspiegel und Pro-Kopf-Quoten besitzen rein deskriptiven, keinen kausalen Charakter; sie hängen maßgeblich von der Auswahl der Vergleichsländer ab. Das hier gewählte Tableau – Deutschland im Vergleich mit Frankreich, Italien und Großbritannien – spart traditionell stärkere Wintersportnationen wie Norwegen, Österreich oder die Schweiz bewusst aus. Zudem taugen Pro-Kopf-Raten isoliert kaum als Indikator für institutionelle Effizienz, da sie lediglich die Bevölkerungszahl ins Verhältnis setzen, nicht aber Finanzströme, Athletenkader oder die tatsächliche Breite des Breitensports; kleinere, wohlhabende Staaten werden hierdurch strukturell begünstigt. Turnierergebnisse (Vorrunde, Viertelfinale, Turniersieg) wiederum stellen ordinale Kategorien dar. Wenn sie zur visuellen Verdeutlichung als kontinuierliche Linie gezeichnet werden, täuscht dies eine kardinale Präzision vor, die angesichts von Faktoren wie Verletzungspech, inkohärente Schiedsrichterentscheidungen und der inhärenten Volatilität kleiner Stichproben nicht gegeben ist. Schließlich beweist eine bloße Korrelation zwischen sportlichen und industriellen Verläufen noch keine gemeinsame Ursache. Zwar erlaubt sie Rückschlüsse auf parallele institutionelle Beharrungskräfte, nicht aber auf einen vermeintlichen Nationalcharakter oder die kollektive Psyche einer Vierundachtzig-Millionen-Population. Diese Limitationen entwerten den folgenden Vergleich keineswegs; sie stecken lediglich den analytischen Rahmen ab, in dem er zu lesen ist.
Die Verklärung der Nachwende-Trajektorie
Zur Sache: Deutschlands zeitgenössische Sport- und Industriestrukturen formierten sich nach 1990 im Zeichen eines tiefen institutionellen Optimismus. Die westdeutsche Nationalelf holte im Sommer 1990 in Rom den FIFA-Weltpokal, nur Monate vor der offiziellen staatlichen Wiedervereinigung. Die Fusion aus westlichem Kapital und industrieller Potenz einerseits und der zentralisierten, staatlich hochgradig durchorganisierten Sportmaschinerie der untergehenden DDR andererseits erzeugte eine perhorreszierende internationale Präsenz. Prompt folgte die scheinbare Bestätigung: Bei den Olympischen Sommerspielen 1992 in Barcelona räumte das gesamtdeutsche Team ein Rekordkontingent von zweiundachtzig Medaillen ab – bis heute, dreieinhalb Jahrzehnte später, der unerreichte Scheitelpunkt gesamtdeutscher Olympia-Historie. Den Zeitgenossen galt dies als verlässlicher Vorgeschmack auf eine dauerhafte Vorherrschaft. Ein Trugschluss.
Das System war auf Sand gebaut. Der Medaillensegen der frühen neunziger Jahre war kein Produkt eines zukunftsfähigen Modells, sondern eine einmalige Auszehrungs-Dividende aus dem Erbe zweier historisch gewachsener Pipelines: Athleten, Trainer, Kaderstrukturen und Kaderschmieden stammten noch aus der Konkursmasse des ostdeutschen Sportsystems. Diese Erbschaft freilich verlangt nach einem harten Dementi: Der DDR-Leistungssport basierte auf einem staatlich verordneten, systematischen Zwangsdoping, das bei den Betroffenen schwere, chronische Gesundheitsschäden hinterließ. Der unaufhaltsame Abstieg nach 1992 ist folglich nicht der Bericht über die Demontage eines funktionierenden Systems durch eine ordnungsliebende Demokratie; er dokumentiert das zwingende Ende einer kriminellen, medizinisch missbräuchlichen Apparatur. Als der Schwung dieser Übergangsgeneration verpuffte, ohne dass rechtzeitig eine adäquate, moderne und ethisch saubere Nachwuchs-Pipeline installiert worden war, traten die inhärenten Mängel des dezentralen bundesdeutschen Vereinsmodells offen zutage.
Die ungleichen Schwestern: Sommer- und Wintersport
Olympische Sommerspiele, 1992–2024

Abbildung 1: Die langfristige Erosion der deutschen Sommermedaillen (1992–2024) im direkten Vergleich zur gezielten Professionalisierung in Großbritannien und Frankreich.
Deutschlands absolute Sommermedaillen-Ausbeute sank von 82 (1992) über 65 (1996) auf 56 im Jahr 2000. Nach einer vorübergehenden Seitwärtsbewegung zwischen 2008 und 2016, als sich das Kontingent im Bereich von 41 bis 44 Medaillen einpendelte, sackte das Team bei den Spielen in Paris 2024 vollends ab: 33 Medaillen bedeuteten den historischen Tiefstand seit der Wende.

Abbildung 2: Die relative Medaillenausbeute pro Million Einwohner im Sommer (1992–2024).
Demographisch bereinigt entspricht dies einem Absturz von 1,02 Medaillen pro Million Einwohner (1992) auf magere 0,39 im Jahr 2024. Dass ein anderer Kurs machbar ist, demonstrieren die Nachbarn. Nach dem Debakel von Atlanta 1996—Großbritanniens schwächsten Sommerspielen seit 1952—unterwarf London den Spitzensport einem rigiden Steuerungsmodell. Die dem Innenministerium unterstellte Behörde UK Sport bündelte die sprudelnden Einnahmen der Nationalen Lotterie und knüpfte Fördergelder konsequent an messbare Medaillenchancen. Trotz ethischer Kritik an dieser rücksichtslosen Medaillenfixierung stabilisierte das Modell die britische Ausbeute ab London 2012 bei über sechzig Edelmetallen. Frankreich wiederum reformierte seine Strukturen im Vorfeld der Spiele von Paris durch die Gründung der Agence Nationale du Sport, straffte die Koordination zwischen Staat, Verbänden und Privatwirtschaft und stieß mit 64 Medaillen auf Platz fünf der Gold-Wertung vor—ein Erfolg freilich, der sich ohne den historisch verbrieften Heimvorteil kaum allein aus der Strukturreform erklären lässt.
Olympische Winterspiele, 1992–2022 (mit Kontext zu 2026)

Abbildung 3: Absolute Medaillentrends im Wintersport (1992–2022) im engen westeuropäischen Vergleich.
Die Winterbilanz zeichnet ein völlig anderes Bild: Mit verlässlicher Konstanz holte die Bundesrepublik Deutschland von 1992 bis Peking 2022 stets zwischen 19 und 36 Medaillen. Auch bei den jüngsten Spielen in Milano Cortina 2026 behauptete sich Deutschland mit 26 Medaillen (davon 8 goldenen) in der Weltspitze. Doch die These von einer vermuteten deutschen „Hegemonie“ greift zu kurz. Die historische Realität zeigt: Norwegen bleibt die unangefochtene Großmacht des Wintersports und lässt Deutschland im Goldmedaillenspiegel regelmäßig hinter sich. Die scheinbare Dominanz im Diagramm resultiert primär aus einer selektiven Vergleichsgruppe, die sich auf Frankreich, Italien und Großbritannien beschränkt, während traditionelle Wintersport-Giganten wie Österreich, die Schweiz, Schweden, Kanada oder die USA ausgeblendet werden. In Milano Cortina 2026 rettete sich Deutschland zwar auf ein achtbares Niveau, rangierte im Goldspiegel jedoch hinter Norwegen, den USA, Italien und den Niederlanden. Deutschlands Winterstärke ist kein allumfassendes Phänomen, sondern das Resultat einer extremen Spezialisierung. Es verfügt über kein Monopol auf Kunsteisbahnen, wohl aber über ein hochkonzentriertes Ökosystem: Die enge Verzahnung aus traditionsreichen Bundesstützpunkten, technologischem Know-how des Instituts für Forschung und Entwicklung von Sportgeräten (FES) und der sozialen Absicherung der Athleten über Sportfördergruppen von Bundeswehr und Bundespolizei wirkt wie ein Schutzwall gegen den allgemeinen Niedergang—ein Muster, das sich in der Industrie wiederholen sollte.
Der unaufhaltsame Abstieg des deutschen Fußballs

Abbildung 4: Turnierergebnisse der deutschen Männer-Nationalmannschaft (1990–2026) auf einer ordinalen Skala.
Die Nationalmannschaft der Männer liefert das präziseste Sittenbild dieses institutionellen Verfalls. Dem Triumph von Rom 1990 und dem EM-Titel 1996 folgte zur Jahrtausendwende das totale Fiasko: Das Vorrundenaus bei den Europameisterschaften 2000 und 2004 erschütterte den DFB im Mark. Die Reaktion folgte prompt. Bereits im Februar 2001 verpflichtete der Verband die Erst- und Zweitligisten der Bundesliga zur Unterhaltung zertifizierter Nachwuchsleistungszentren. Rund 500 Millionen Euro flossen in die Jugend-Infrastruktur. Diese konzertierte Aktion trug Früchte: Zwischen 2006 und 2016 erlebte der deutsche Fußball eine goldene Ära beispielloser Konstanz, die in sechs Halbfinal- oder Finalteilnahmen in Serie während der Ära Löw und dem WM-Titel 2014 in Brasilien gipfelte. Gespeist wurde dieser Höhenflug aus einem demographisch erweiterten Talentpool und einer hochtalentierten Spielergeneration.
Das darauffolgende Jahrzehnt glich dagegen einem Offenbarungseid: Historische Vorrunden-Pleiten bei den Weltmeisterschaften 2018 und 2022, gepaart mit einem Achtelfinal-Aus bei der EM 2020. Das Viertelfinal-Aus bei der Heim-EM 2024 gegen den späteren Turniersieger Spanien (1:2 nach Verlängerung) wurde von der Öffentlichkeit zwar als Scheitern gebrandmarkt, gilt Fachanalysten dank verbesserter spielerischer Kohäsion jedoch als zarte Konsolidierung. Das böse Erwachen folgte bei der WM 2026: Das Aus in der Runde der letzten 32 gegen Paraguay (3:4 im Elfmeterschießen nach einem 1:1 in der regulären Spielzeit)—die erste Niederlage einer deutschen Auswahl in einem WM-Elfmeterschießen überhaupt—besiegelte das Bundestrainerschicksal von Julian Nagelsmann. Der DFB reagierte mit der Verpflichtung von Jürgen Klopp. Die Hoffnung auf das prompte „Klopp-Wunder“ ignoriert indessen das Wesen von K.-o.-Turnieren: Ein einzelnes Elfmeterschießen ist statistisches Rauschen. Es taugt nicht als Diagnose für ein strukturelles Versagen des Gesamtsystems.
Die Grenzen des Machbaren
Die sportlichen Krisensymptome verleiten zum Analogieschluss auf die deutsche Industrie, allen voran die Automobilwirtschaft. Doch Vorsicht vor vorschneller Kausalitäts-Huberei: Eine bloße zeitliche Koinzidenz beweist weder ein Nachlassen der kollektiven Leistungsbereitschaft noch eine plötzliche Risikoaversion der Deutschen. Sportliche Tabellenplätze taugen nicht als Fieberkurve für die Befindlichkeit einer Achtzig-Millionen-Nation. Was beide Welten indessen verbindet, ist ein spezifischer institutioneller Defekt: Die grandiose Fähigkeit zur inkrementellen Optimierung innerhalb eines bestehenden Paradigmas—und das totale Versagen, sobald sich das Paradigma radikal verschiebt. Die Personalie Klopp führt diesen Mechanismus vor Augen: Der Bundestrainer kann weder Talente zukaufen noch die verkrusteten Strukturen der Landesverbände aufbrechen. Er befehligt seine Auswahl an weniger als vierzig Tagen im Jahr in hastig zusammengeworfenen Länderspielfenstern. Wenn die Nachwuchsarbeit über zehn Jahre hinweg die Produktion moderner Außenverteidiger oder echter Mittelstürmer versäumt hat, bleibt dem Startrainer nur die Verwaltung des Mangels. Taktische Finessen heilen keine strukturellen Pipeline-Defekte.
Das industrielle Kernland: Automobilbau und Chemie
Jahrzehntelang thronte die deutsche Autoindustrie an der Weltspitze dank der Perfektionierung des Verbrennungsmotors und hochflexibler, modularer Fertigungsstraßen—ein Modell, das BMW bis heute erfolgreich praktiziert. Diese ingenieurtechnische Glanztat sicherte den Konzernen astronomische Renditen, solange die alte Weltordnung galt. Die Bastion begann zu wanken, als der Markt in Richtung software-definierter Architekturen, digitaler Cockpits und vertikal integrierter Elektro-Plattformen kippte. Zwischen 2017 und 2023 brach die deutsche Fahrzeug- und Komponentenproduktion um 15 Prozent ein, maßgeblich getrieben durch einen 50-prozentigen Einbruch bei reinen Verbrennern und ein Minus von 40 Prozent im Verbrenner-Export. Die Neuzulassungen auf den drei Kernmärkten—Europa, USA, China—sanken im selben Zeitraum um 9 Prozent; für Fahrzeuge deutscher Provenienz schrumpften die Neuzulassungen überproportional um 16 Prozent. Im wichtigsten Gegenwarts und Zukunftsmarkt China dümpeln die deutschen Marken im E-Segment bei kümmerlichen 5 Prozent Marktanteil herum, während der einheimische Riese BYD 34 Prozent kontrolliert. BMW meldete für 2024 einen Einbruch der China-Auslieferungen um 13,8 Prozent, Mercedes-Benz verlor 1,2 Prozent, und Volkswagen hinkte dem Marktwachstum um Längen hinterher. Der Umstand, dass Mercedes-Benz seine Elektrifizierungsziele (50 Prozent E-Anteil) klammheimlich von 2025 auf 2030 verschob, zeigt, dass die Krise kein exklusives Wolfsburger Problem darstellt.
Der Kahlschlag hat die Werkshallen erreicht: Volkswagen kündigte im Verbund mit der IG Metall den Abbau von 35.000 Stellen bis 2030 an, der Zulieferer Bosch streicht 13,000 Jobs in seiner Mobility-Sparte, ZF Friedrichshafen und Continental trennen sich von jeweils über 7,000 Mitarbeitern. Insgesamt vernichtete die Automobilkrise in Deutschland zwischen 2023 und 2025 schätzungsweise 55,000 Arbeitsplätze. Gleichzeitig leidet die Chemieindustrie als zweite tragende Säule unter hausgemachten Standortnachteilen: Industriestrom ist hierzulande dreimal so teuer wie für die amerikanische Konkurrenz. Die BASF schloss mehrere Produktionslinien am Stammwerk Ludwigshafen, strich europaweit 2.600 Stellen—zwei Drittel davon in Deutschland—und verlagert Neuinvestitionen massiv in die USA und nach China. Die deutsche Chemieproduktion schrumpfte 2025 um weitere 2,5 Prozent. Die gesamte industrielle Fertigung befindet sich im vierten Jahr der Rezession und verharrt ein Viertel unter dem Trend von 2013–2018. Rund 360,000 Industriejobs gingen seit 2019 verloren. Dieser strukturelle Aderlass verläuft zeitlich auffallend parallel zum Niedergang im Sommersport—mit dem feinen Unterschied, dass die Industriekurve, anders als die olympischen Bilanzen, bisher keinerlei Anzeichen einer Stabilisierung erkennen lässt.
Verteilte Kompetenzen versus radikale Zentralisierung
Während Großbritannien und Frankreich auf zentralisierte Steuerung setzen (lotteriefinanzierte Leistungskontrakte in London, eine staatliche Super-Agentur in Paris), verheddert sich die deutsche Sportförderung im bürokratischen Sumpf zwischen dem Deutschen Olympischen Sportbund (DOSB) und dem Bundesinnenministerium. Der DOSB fungiert als wachsweicher Dachverband von 103 Mitgliedsorganisationen—Landessportbünde, Fachverbände, Verbände mit Sonderaufgaben. Die Struktur ist auf basisdemokratische Legitimation und Föderalismus getrimmt, nicht auf die brutale Konzentration von Kapital auf medaillenträchtige Kader. Das Steuersystem ist gesetzlich verpflichtet, Steuergelder nach dem Gießkannenprinzip zu verteilen, um den Breitensport zu zu fördern. Für die gezielte Eliteförderung bleibt im internationalen Vergleich zu wenig übrig. Derselbe Strukturdefekt lähmt die Wirtschaft. Die hochgelobten modularen Fertigungslinien der Autobauer sind technologische Relikte einer untergehenden Epoche. Sie konkurrieren mit den vertikal integrierten, Tech-getriebenen Giganten im Silicon Valley und in Shenzhen, die den Automobilbau radikal als Software- und Batterieproblem begreifen—gestützt von einer fokussierten staatlichen Industriepolitik, die im Kern der radikalen Zweckorientierung von UK Sport gleicht.
Szenarien der Anpassung: 2026 bis 2036
Auf Basis gegenwärtiger Trends könnten folgende Szenarien entstehen, dies sind keine Prognosen: Verharren die Sportförderung und die Nachwuchsarbeit in ihrer gewohnten Zersplitterung, dürfte sich das deutsche Sommer-Kontingent bei den kommenden Spielen in Los Angeles 2028 und Brisbane 2032 im Bereich von 30 bis 35 Medaillen einpendeln. Deutschland bliebe eine Bank in kapitalintensiven Nischen wie dem Reitsport, Kanu oder Rudern, verlöre im prestigeträchtigen und medaillenreichen Kernbereich—Leichtathletik, Turnen, Schwimmen—jedoch endgültig den Anschluss. Das Winterprogramm hingegen dürfte seine Ausbeute bis 2034 dank der funktionierenden Schutzwälle der Sportfördergruppen und Spezialinstitute erfolgreich verteidigen.
Der Fußball steuert auf eine volatile Übergangsphase zu. Kurzfristige taktische Hebelwirkungen unter Klopp sind angesichts seines Charismas wahrscheinlich. Eine nachhaltige Rückkehr zur Dominanz der Jahre 2006 bis 2016 oder wie in den 70er und 80er Jahren steht und fällt indes mit der radikalen Reform der Nachwuchsarbeit des DFB. Greifbare Resultate dieser Umstellung wären ohnehin frühestens bei den Turnieren 2034 oder 2036 zu erwarten; bis dahin wird das Abschneiden der Auswahl ungemütlich zwischen Vorrundenschmach und Viertelfinal-Aus oszillieren.
Vor der härtesten Bewährungsprobe steht die Industrie. Ohne eine drastische Senkung der Energiekosten, den radikalen Abbau der lähmenden Bürokratie und den bedingungslosen Schwenk zur software-zentrierten Produktion wird sich der Niedergang von Chemie und Autoindustrie beschleunigen. Ein Turnaround ist hier keine Frage des nächsten Haushaltsjahres, sondern erfordert das Schließen einer technologischen Kluft, die sich seit 2017 tiefer und tiefer in den Standort hineingefressen hat. Für Sport und Industrie gilt gleichermaßen: Das historische Erbe zehrt sich schneller auf, als neue Fundamente betoniert werden können. Die Republik optimiert mit Vorliebe im sterbenden Paradigma, anstatt den Sprung in das neue zu wagen.
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By Prof. em. Hans Joachim Scholl, PhD, MBA
A Comparative Institutional Analysis (1990–2036)
A Note on Method
Several statistical limitations apply throughout this analysis and are flagged once here rather than repeated in each section below. Medal counts and per-capita ratios are descriptive, not causal, and are sensitive to which countries are chosen for comparison: the charts below track Germany against France, Italy, and the United Kingdom, a set that excludes stronger winter powers such as Norway, Austria, and Switzerland. Per-capita ratios are also a weak proxy for institutional efficiency on their own, since they weigh population rather than funding, athlete numbers, or participation rates, and are structurally biased toward small, wealthy nations. Tournament outcomes (group stage, quarter-final, champion) are ordinal categories plotted as a continuous line for visual clarity, not a cardinal scale, and are vulnerable to small-sample variance, refereeing, and injuries. Finally, a correlation between sporting and industrial outcomes does not establish a shared cause; it can support claims about parallel institutional structures, not about a single national trait or the psychology of a population of eighty million. These limits do not invalidate the comparisons that follow; they set the terms on which the comparisons should be read.
The Reification of Post-Reunification Trajectories
Germany's contemporary sporting and industrial structures consolidated after 1990 under conditions of institutional optimism. West Germany won the 1990 FIFA World Cup in Rome months before political reunification; the merger of Western capital and industrial scale with East Germany's centralized, heavily state-supported sports infrastructure produced an immediate, formidable international presence, confirmed when the newly unified team won eighty-two medals at the 1992 Barcelona Olympics—still, three decades later, the highest total any German Olympic team has produced. To contemporaries, this looked like the durable baseline of a re-engineered sporting power.
It was not sustainable. The medal totals of the early 1990s were a one-time dividend from merging two pre-existing pipelines—East German athletes, coaches, facilities, and structured talent-development networks—not the product of a forward-looking system. That inheritance carries a serious caveat: the GDR's sports apparatus was built on a state-organized, systematic doping program that caused extensive, well-documented medical harm to its athletes. The decline after 1992 is therefore not a story of democratic Germany dismantling an efficient system; it reflects the necessary dissolution of a coercive, medically abusive one. As that merged generation's momentum faded without an equally scaled, modern, and ethically compliant replacement pipeline, the structural limits of Germany's decentralized sports model became visible.
The Divergent Trajectories of Summer and Winter Sports
Summer Olympic Games, 1992-2024

Figure 1. Germany's summer medal total, 1992-2024, against France, Italy, and the United Kingdom.
Germany's summer medal total fell from 82 in 1992 to 65 in 1996 and 56 in 2000, stabilized between 41 and 44 from 2008 through 2016, then dropped to a post-reunification low of 33 at Paris 2024.

Figure 2. Medals per million inhabitants, summer, 1992-2024.
Population-adjusted, this is a fall from roughly 1.02 medals per million inhabitants in 1992 to 0.39 in 2024—a useful timeline, though a weak measure of institutional efficiency taken alone, since it weighs only population, not the funding, athlete numbers, or participation rates that actually determine output. The United Kingdom and France illustrate an alternative path. After a fifteen-medal collapse at Atlanta 1996—Britain's worst Summer Games since 1952—the country rebuilt elite sport around UK Sport, National Lottery funding, and rigorous four-year, medal-contingent contracts, producing a stable plateau above sixty medals from London 2012 through Paris 2024. That model has also drawn ethical criticism for its narrow, medal-centered focus, and its gains partly reflect a large increase in overall funding rather than governance design alone. France took a parallel but distinct route, creating the Agence Nationale du Sport in 2019 to coordinate the state, sporting federations, local authorities, and corporate partners, and finished fifth in the official gold-first medal table with 64 medals at its home Games in 2024—a result that reform alone does not explain, given the well-documented performance boost host nations typically receive.
Winter Olympic Games, 1992-2022 (with 2026 Context)

Figure 3. Germany's winter medal total, 1992-2022, against France, Italy, and the United Kingdom.
Winter results tell a narrower, steadier story: Germany took between 19 and 36 medals per edition from 1992 through 2022, extending its strong presence to Milano Cortina 2026 where it secured 26 medals and 8 golds. The stability is a structural shield, not broad strength. Winter sport is geographically and financially exclusive: competitive programs require mountains, cold-weather infrastructure, and expensive, single-purpose facilities such as bobsleigh and luge tracks that few nations ever build—and Germany's success sits almost entirely within disciplines protected by exactly that moat. The shield is partial, though: Norway won 41 medals and 18 golds at the same 2026 Games, more than double Germany's gold count, from roughly a fifteenth of Germany's population. Germany holds a stable position within a shallow field, not dominance within it—the same asset-specific, technical-moat logic that, as the industrial section below suggests, may be shielding parts of German manufacturing as well.
Institutional Evolution within International Football

Figure 4. Germany men's national team tournament results, 1990-2026 (ordinal scale).
The men's national football team followed a similar arc. It won the 1990 World Cup and Euro 1996, then suffered group-stage exits at Euro 2000 and Euro 2004. Structural reform followed quickly rather than after a second shock: in February 2001, months after Euro 2000, the DFB made licensed youth academies mandatory for Bundesliga clubs, later extended to all 36 clubs across the top two divisions comprising the Bundesliga and 2. Bundesliga, each required to keep at least twelve nationally-eligible players in its academy ranks, backed by roughly €500 million in youth-infrastructure investment by 2002. That reform underwrote six consecutive major-tournament finishes of semi-final or better between 2006 and 2016, culminating in the 2014 World Cup title in Brazil. The decade since has been worse: group-stage exits at the 2018 and 2022 World Cups, a round-of-16 exit at Euro 2020, and a narrow 2-1 extra-time quarter-final loss to eventual champion Spain at Euro 2024 on home soil—a result some analysts read as partial recovery given the team's improved cohesion relative to 2018 or 2022. The pattern continued at the 2026 World Cup, where Germany lost to Paraguay 1-1 (4-3 on penalties) in the round of 32, its first-ever World Cup shootout defeat, prompting Julian Nagelsmann's exit and Jürgen Klopp's appointment as head coach. As with the ordinal tournament-result scale noted at the outset, a single shootout loss reflects match variance as much as systemic failure.
The Limits of Institutional Engineering
These sport-side patterns have invited comparison to German industry, especially the automotive sector—but a correlation between the two is not evidence of a single overarching national cause, such as declining competitiveness, material security, or risk appetite, nor can elite-team results diagnose the psychology of a population of eighty million. What the two domains plausibly share instead is a specific institutional failure mode: capable incremental optimization inside a stable paradigm, followed by a slow structural response once the paradigm itself shifts. Klopp's appointment illustrates the mechanism on the sporting side. It generated substantial public expectation of a rapid turnaround, but a national-team manager cannot buy talent or directly alter the domestic pipeline, and commands the squad for fewer than forty days a year in brief, interrupted windows. If the underlying development infrastructure has produced too few players of specific positional profiles over a ten-year cycle, an elite coach is left optimizing an existing shortfall rather than correcting it—tactics cannot substitute for a pipeline problem.
The Industrial Matrix: Automotive and Chemical Sectors
For decades the German auto industry led through incremental refinement of internal-combustion engineering and modular, flexible production—the kind of manufacturing framework BMW still deploys, and a genuine engineering achievement that generated real, sustained corporate value. That advantage eroded once the global market shifted toward software-defined architectures, integrated digital cockpits, and vertically integrated battery-electric platforms. Between 2017 and 2023, German vehicle-and-parts production fell 15%, driven by a roughly 50% drop in combustion-engine car production and a 40% drop in combustion-engine exports. From 2019 to 2024, vehicle registrations across Germany's three largest markets—Europe, the United States, and China—fell 9% overall, while registrations of German-made vehicles specifically fell 16%, a relative as well as absolute decline. In China, the world's largest EV market, German brands held roughly 5% of electric-vehicle sales in 2024 against BYD's 34%; BMW's China deliveries fell 13.8% and Mercedes-Benz's 1.2% that year, while Volkswagen's grew 17% slower than the underlying market. Globally, BYD alone sold roughly three times Tesla's electric-vehicle volume in 2025, a scale no German manufacturer approached. Mercedes-Benz has itself pushed back its target date for electric and electrified vehicles to reach half of sales from 2025 to 2030, evidence that the adjustment extends beyond Volkswagen's widely reported restructuring.
The consequences have reached payrolls. Volkswagen agreed to cut 35,000 jobs by 2030 in a deal reached with IG Metall in December 2024; Bosch announced 13,000 cuts in its mobility division in September 2025; ZF and Continental cut roughly 7,000 to 7,600 positions each. Across the sector, an estimated 55,000 automotive jobs were lost in Germany between 2023 and 2025, in an industry that still employs more than 700,000 people. The chemical industry, Germany's other traditional industrial pillar, shows a related but distinct pattern, driven less by a missed technology transition than by industrial electricity costs roughly three times those paid by American competitors. BASF closed several production lines at its Ludwigshafen complex and cut 2,600 jobs across Europe—about 65% of them in Germany—by the end of 2024, while shifting new investment toward China and the United States. National chemical output fell a further 2 to 2.5% in 2025. Across manufacturing broadly, industrial production has now declined for four consecutive years, output remains roughly a quarter below its 2013-2018 trend, and the sector shed an estimated 360,000 jobs between 2019 and 2025—a structural contraction running on a timeline that roughly parallels the sport-side declines described above, though it began later and, unlike a medal count, shows no sign yet of stabilizing. Whether Germany's more specialized industrial niches—precision machine tools, specialty chemicals, certain medical-technology segments—carry an asset-specific moat comparable to winter sport is a plausible hypothesis this analysis has not tested; the automotive and bulk-chemical data above describe the exposed, mass-market end of German industry, not the whole of it.
Comparative Structural Models and Adaptation Frameworks
The United Kingdom and France built centralized, contractual delivery systems: lottery-funded medal targets in Britain, a coordinating national agency in France. (The UK's Olympic model should not be conflated with England's separate professional-football youth system, the Elite Player Performance Plan, which operates under entirely different club-commercial funding and objectives.) Germany's sports funding instead runs through a diffuse, multi-layered relationship between the German Olympic Sports Confederation (DOSB) and the Federal Ministry of the Interior. The DOSB is itself a non-governmental umbrella of 103 member organizations—state sports federations, elite-sport associations, and bodies with special mandates—a structure built for grassroots legitimacy and broad representation rather than for concentrating capital on medal-ready programs. It is structurally bound to spread taxpayer money broadly across regional federations to preserve amateur participation and equity, leaving less capital concentrated on medal-capable programs than its centralized peers deploy. A similar diffusion pattern recurs in industry. Germany's flexible, modular production lines are an efficient mechanical solution, but they compete against hyper-centralized, vertically integrated rivals in the United States and China—firms that treat vehicle manufacturing primarily as a software and battery-chemistry problem, backed by concentrated state and capital support comparable in kind, if not in degree, to UK Sport's or France's centralized athletic targeting.
Institutional Scenarios and Pathways: 2026 to 2036
These are conditional pathways based on current funding, participation, and development patterns, not predictions. If funding fragmentation and decentralized talent pipelines persist, Germany's summer total will likely hold near 30-35 medals through the 2028 and 2032 Games, consistent with the 33-44 medal range seen since 2008—strong in capital-intensive disciplines such as equestrian, canoeing, and rowing, weak in high-yield disciplines such as swimming, gymnastics, and track and field. The winter program should hold its medal volume through 2030 and 2034, provided its regional technical institutes and military and police employment structures remain funded. Football's recovery will likely be volatile and non-linear: short-term tactical gains under Klopp are plausible given his managerial record, but a durable return to 2006-2016-level consistency depends on whether the DFB's renewed grassroots-scouting overhaul takes hold, an effect unlikely to be visible before the 2034 or 2036 tournaments. In the interim, results will likely continue to oscillate within the range already established since 2018—between group-stage exit and quarter-final—rather than settling at either extreme. Industry faces the steeper test. Absent lower energy costs, reduced bureaucratic compliance overhead, and a faster shift to software-first, vertically coordinated production, the automotive and chemical contractions already underway are more likely to continue than reverse. Recovery here is not simply a matter of the next funding cycle, as it may be in sport, but of closing a technological gap that has widened every year since 2017. Across both domains, the underlying pattern is the same: a strong institutional legacy is running down faster than it is being rebuilt, and the response so far has mostly optimized within the old paradigm rather than replaced it.