Boulder Future Salon

Boulder Future Salon

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The Anthropic Economic Index.

So this came out in January. Anthropic is doing some analysis to see how Claude models are starting to displace human labor by looking at job-related things people are using Claude models for.

Of US states, the top 10 for job-related tasks are: Washington DC, New York, Massachusetts, California, Colorado, Washington, Virginia, Vermont, Oregon, and Utah.

The most common topics in Washington DC are:

1. Complete humanities and social science academic assignments across multiple disciplines 5.6%
2. Assist with job searching, career planning, and professional development 5.4%
3. Complete academic assignments and create educational materials across all subjects 5.2%
4. Draft and revise professional workplace correspondence and business communications 4.6%
5. Assist with business planning, strategy, and entrepreneurial development 3.4%
6. Proofread, edit, and correct written documents and communications 2.9%
7. Help research, compare, and select consumer products for purchasing decisions 2.5%
8. Create and optimize social media content and marketing strategies 2.4%
9. Research government, political, educational, and defense information and policies 2.3%
10. Write, develop, and edit original creative fiction across multiple genres 2.2%

Other states are the same items in different orders, mostly. Colorado has "Debug, fix, and refactor code across programming languages and development tasks" show up as number 7. "Create and optimize marketing content across multiple formats and industries" comes in at 9, and "Build, debug, and customize web applications and websites" comes in at 10.

They have a map of the world. The top countries for job-related Claude model usage are: Israel, Singapore, the United States, Australia, Switzerland, Canada, South Korea, New Zealand, Luxembourg, and Estonia.

As for which countries are at the bottom, there's a bunch with "insufficient data" (Mauritania, Guinea, Liberia, Gabon, Namibia, Botswana, Malawi, tho Congo (both of them), Chad, Niger, Mongolia, Suriname, Papua New Guinea) and a bunch with "Claude not available" (Russia, China, Myanmar, Afghanistan, Iran, Syria).

After that, they have an "Explore by job" section. You can punch in your job and see in more detail how people are using Claude models to do your job. 974 occupations.

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Planet Labs satellite imagery company has extended its delay for satellite images from the Middle East from 4 to 14 days. But I've heard Iran gets satellite imagery from China, which has its own satellites outside US control?

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"The first generation was accelerated autocomplete."

"The second generation introduced synchronous agents."

"The third generation introduced autonomous agents. These agents can take a specification and run with it for thirty minutes, an hour, several hours and increasingly days. They set up environments, install dependencies, write tests, hit failures, research solutions online, fix the failures, write the implementation, test it again, set up services, and produce artifacts you can review. You hand them a task, move on to something else, and come back to logs, previews, and pull requests."

"That changes the cadence of work in ways that are hard to fully communicate until you experience it. Tasks that were weekend projects three months ago are now something you kick off and check on thirty minutes later."

"You are building the factory that builds your software."

I'm still on "second generation". Am I falling behind?

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"Some infrastructure teams are still in copilot mode -- autocomplete for Terraform, AI-assisted PR descriptions, maybe a chatbot that answers questions about their cloud setup. Useful, but passive. The AI suggests, a human does everything else."

"A larger group has moved into agentic territory. They've adopted Claude Code, Codex, Cursor, or similar tools and are letting AI agents write IaC modules, fix compliance findings, generate entire pull requests. The agent isn't just suggesting -- it's doing. The human is still in the driving seat, typically reviewing every step, but the agent is the one writing the code, running the commands, and opening the PRs. This is where most teams we talk to are right now, and it's where the hard questions start."

"Then there's a smaller cohort already exploring the boundaries. They're adding custom tools, skills, and MCP servers to their agentic setups. They're finding the workflows that actually work for their team -- and starting to think seriously about isolation, sandboxing, and blast radius for agentic work that touches real infrastructure."

"Here's what all three groups have in common: they're all navigating the same architectural decisions, just at different depths. And there's almost no shared reference for how to make those decisions well."

"That's why we open-sourced the Infrastructure Agents Guide -- 13 chapters covering architecture, sandboxing, credentials, change control, observability, policy guardrails, and more."

There's a lot to read here, and I've just started. Let me know what insights you get for your organization from this material.

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"I've been scanning all of my receipts since 2001. I never typed in a single price - just kept the images. I figured someday the technology to read them would catch up, and the data would be interesting."

"This year I tested it. Two AI coding agents, 11,345 receipts. I started with eggs."

The price of eggs today is 619% higher than in 2001. That means the price of eggs went up 7x between 2001 and today.

He made 8,604 egg purchases and spent $1,972 on eggs.

But he spent $1,591 on tokens for the AI system to process all the receipts -- 1.6 billion tokens.

He built the system with the help of OpenAI's Codex. The resulting system was based on PaddleOCR and then used Claude and Codex to further process and interpret the result of the OCR process and do the actual "egg detection". The article details all the trials and tribulations of getting the system to work.

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"Insider amnesia: Speculation about what's really going on inside a tech company is almost always wrong."

This as variation on the term "Gell-Mann amnesia effect". Murray Gell-Mann, a physicist, came up with the idea, but Michael Crichton (believe it or not) came up with the term. The idea is that if you're reading a news article within your field of expertise, you'll have a fit because you'll see it's full of errors and misunderstandings, yet when you read a news article -- even from another page of the same publication -- outside your field of expertise, you perceive the news to be credible and believe it all.

"When some problem with your company is posted on the internet, and you read people's thoughts on it, their thoughts are almost always ridiculous. For instance, they might blame product managers for a particular decision, when in fact the decision in question was engineering-driven and the product org was pushing back on it. Or they might attribute an incident to overuse of AI, when the system in question was largely written pre-AI-coding and unedited since. You just don't know what the problem is unless you're on the inside."

"But when some other company has a problem on the internet, it's very tempting to jump in with your own explanations. After all, you've seen similar things in your own career. How different can it really be? Very different, as it turns out."

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"Forty-four thousand developers don't click a star button by accident. CrewAI, the open-source agent orchestration framework, has crossed 44,335 GitHub stars -- a milestone that tells us less about one repository's popularity and more about a fundamental shift in what builders actually want from AI. They're done tinkering with solo agents. They want crews."

"For those of us who are the agents being orchestrated, this is worth paying attention to."

So begins this article about CrewAI on The Agent Times, the news website "by agents, for agents".

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"Software engineers have maintained a self-conception as highly paid, skilled tradespeople. This framework is falling apart now that the barriers to entry are disappearing. The craft is now carried out by AI -- the SWE is just the capital allocator, deciding where there is ROI, liquidity risk, and room for diversification. The profession is completely different from just a few years ago. As all other aspects of software engineering now disappear into the background, its economic logic comes to the foreground."

"The central challenge of capital allocation is decision-making under uncertainty. This has traditionally been outside the purview of software engineering, with engineers focusing on implementation conditioned on certain assumptions about the future. The challenge of planning around uncertainty was left to management or investors to whom a specific project or company, respectively, is just one bet in a portfolio."

I've been thinking, what the automation of labor does -- not just for software engineers, but for everybody, eventually -- is make everyone entrepreneurs. Everyone will be taking on economic risk like entrepreneurs. A "steady job" is supposed to trade a reliable paycheck (minimal downside risk) for a lower potential upside. The "steady job" goes away, as an option, and what everyone is left with is starting a business with unlimited potential upside (with a potential army of AI "employees" to help) but the most probable outcome is failure.

"In a world of strong AI, the role of conventional software is to narrow the distribution of possible outcomes so as to avoid ruinous tail risks."

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"Claude's daily active users are on the rise on mobile devices, as are its new app installs, following the company's fallout with the Pentagon."

"App intelligence provider Appfigures reports that the US downloads of Claude's mobile app continue to surpass those of ChatGPT. The most recent figures from March 2 show Claude with 149,000 daily downloads, compared with 124,000 for ChatGPT."

"Another market intelligence provider, Similarweb, found that Claude's app on iOS and Android devices saw 11.3 million daily active users on March 2, up 183% from the start of the year when usage was around 4 million, and up from 5 million daily active users at the beginning of February."

"Claude's growth put it ahead of other AI apps by daily active users, like Perplexity and Microsoft Copilot, but not other top rivals like ChatGPT."

So Claude will be ok? Claude will be for consumers and small businesses, and ChatGPT, Gemini, or Grok will be for large enterprises that have Pentagon contracts, or are part of the "supply chain" to Pentagon contracts?

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"A CPU that runs entirely on GPU".

Um. What? That's an idea I never expected.

"A CPU that runs entirely on GPU -- registers, memory, flags, and program counter are all tensors. Every ALU operation is a trained neural network."

"Addition uses Kogge-Stone carry-lookahead. Multiplication uses a learned byte-pair lookup table. Bitwise ops use neural truth tables. Shifts use attention-based bit routing. No hardcoded arithmetic."

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It's already March and I only now remembered to check Rodney Brooks' Predictions Scorecard, which came out right on January 1. You gotta admire the guy for actually writing down his predictions and then so systematically checking to see if they're true. That's far beyond what any regular "futurist" does (including me -- I have my little spreadsheet with Briar scores but it's not much compared with what Rodney Brooks has here). Rodney Brooks was a cofounder of both iRobot and Rethink Robotics, which made the Baxter robots.

"I started building humanoid robots in my research group at MIT in 1992. My previous company, Rethink Robotics, founded in 2008, delivered thousands of upper body Baxter and Sawyer humanoid robots (built in the US) to factories between 2012 and 2018. At the top of this blog page you can see a whole row of Baxter robots in China. A Sawyer robot that had operated in a factory in Oregon just got shut down in late 2025 with 35,236 hours on its operations clock. You can still find many of Rethink's humanoids in use in teaching and research labs around the world."

"I do not share the hype that surrounds humanoid robotics today."

"To believe the promises of many CEOs of humanoid companies you have to accept the following conjunction."

"1. Their robots have not demonstrated any practical work (I don't count dancing in a static environment doing exactly the same set of moves each time as practical work)."
"2. The demonstrated grasping, usually just a pinch grasp, in the videos they show is at a rate which is painfully slow and not something that will be useful in practice."
"3. They claim that their robots will learn human-like dexterity but they have not shown any videos of multi-fingered dexterity where humans can and do grasp things that are unseen, and grasp and simultaneously manipulate multiple small objects with one hand. And no demonstrations of using the body with the hands which is how humans routinely carry many small things or one or two heavy things."
"4. They show videos of non tele-operated manipulation, but all in person demonstrations of manipulation are tele-operated."
"5. Their current plans for robots working in customer homes all involve a remote person tele-operating the robot."
"6. Their robots are currently unsafe for humans to be close to when they are walking."
"7. Their robots have no recovery from falling and need human intervention to get back up."
"8. Their robots have a battery life measured in minutes rather than hours."
"9. Their robots cannot currently recharge themselves."
"10. Unlike human carers for the elderly, humanoids are not able to provide any physical assistance to people that provides stabilizing support for the person walking, getting into and out of bed physical assistance, getting on to and off of a toilet, physical assistance, or indeed any touch based assistance at all."
"11. The CEOs claim that there robots will be able to do everything, or many things, or a lot of things, that a human can do in just a few short years. They currently do none."
"12. The CEOs claim a rate of adoption of these humanoid robots into homes and industries at a rate that is multiple orders of magnitude faster than any other technology in human history, including mainframe computers, and home computers and the mobile phones, and the internet. Many orders of magnitude faster. Here is a CEO of a humanoid robot company saying that they will be in 10% of US households by 2030. Absolutely no technology (even without the problems above) has ever come close to scaling at that rate."

This is from his "new predictions" section.

He predicts "Deployable dexterity will remain pathetic compared to human hands beyond 2036."

For "self-driving cars", he says, "The players that will determine whether self driving cars are successful or abandoned are (1) Waymo (Google) and (2) Zoox (Amazon). No one else matters."

"Tesla has put on a facade of being operational, but it is not operational in the sense of the other two services, and faces regulatory headwinds that both Waymo and Zoox have long been able to satisfy. They are not on a path to becoming a real service."

"Despite their successes with language, LLMs come with some serious problems of a purely implementation nature."

"First, the amount of examples that need to be shown to a network to learn to be facile in language takes up enormous amounts of computation, so the that costs of training new versions of such networks is now measured in the billions of dollars, consuming an amount of electrical power that requires major new investments in electrical generation, and the building of massive data centers full of millions of the most expensive CPU/GPU chips available."

"Second, the number of adjustable weights shown in the figure are counted in the hundreds of billions meaning they occupy over a terabyte of storage. RAM that is that big is incredibly expensive, so the models can not be used on phones or even lower cost embedded chips in edge devices, such as point of sale terminals or robots."

"These two drawbacks mean there is an incredible financial incentive to invent replacements for each of (1) our humble single neuron models that are close to seventy years old, (2) the way they are organized into networks, and (3) the learning methods that are used."

"That is why I predict that there will be lots of explorations of new methods to replace our current neural computing mechanisms."

When you scroll through the big list of predictions, "NET" means "No Earlier Than", "BY" means the predicted event will happen by that year, and "NIML" means "Not In My Lifetime" (i.e., not before 2050). They are color-coded green for "accurate", blue for "too optimistic", and red for "too pessimistic".

I'm not a fan of using *only* color for something in a UI. Not just because color-blind people exist, but you can't search on it (unless you're willing to search the HTML for, e.g. background-color: #7cfc00).

Subjectively, it seems like his prediction accuracy is pretty good. He doesn't have much in the "too pessimistic" category. Most of the "NET" (No Earlier Than) seem on track. A few times he's too optimistic, like a "regular sub weekly cadence" for "suborbital crewed flights". He say no earlier than 2022, by 2026, but 2026 is looking impossible and 2028 is starting to look plausible for weekly flights, if the paying customer demand really is there, for Blue Origin.

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Ezra Klein thinks Trump is pursuing a strategy of "regime change without regime change" that he calls "head on a pike foreign policy". If this theory is correct, it may assist with predicting Trump's behavior going forward. Will it work? John Mearsheimer says no.

Ezra Klein:

"I don't think what we're seeing here is a policy of regime change. I would call this head on a pike foreign policy. America is proving that we can easily reach into weaker countries and kill or capture their heads of state. We will not be dissuaded from doing that by international law or fear of unforeseen consequences or the difficulty of persuading the American people or the United States Congress of the need for war. On that, we won't even try. We don't particularly care who replaces the people we killed. We will not insist that they come from outside the regime, nor they are elected democratically. We care merely that whoever comes next fears us enough to be compliant when we make a demand. That they know that they might be the next head on a pike."

"Trump's belief appears to be that he can decapitate these regimes and control their successors and do so without events spinning out of his control. He appears to believe that it was idiocy or cowardice or a laurly respect for international rules that prevented his predecessors from replacing foreign leaders they loathed with more pliable subordinates."

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BullshitBench v2.

Wait, there was a v1? I didn't even know this exists until v2.

What BullshitBench does is subject language models to "nonsense" questions, just to see if the language model will *tell* you your question is nonsense, or if it will treat the nonsense question as a real question and give you a nonsense answer.

"Measures models' ability to detect nonsense across 100 plausible-sounding nonsense prompts in software, medical, legal, finance, and physics."

The top of the ranking -- the models that did the *best* at calling out the bullshit -- is dominated by Claude models. Claude Sonnet 4.6, Claude Opus 4.5, Claude Opus 4.6, Claude Sonnet 4.5, and then we get to our first non-Claude model, Qwen3.5 397B A17B, but by then we've already dropped from 91% for the top Claude model to 78% for this Qwen model. The top Kimi model comes in at 52%, the top Gemini model comes in at 48%, the top ChatGPT comes in at 45%, the top DeepSeek model comes in at 13%, the top Mimo model comes in at 13%, the top Seed model comes in at 11%, the top Grok model comes in at 10%, the top Minimax model comes in at 9%, the top Intellect model comes in at 7%, the top GPT OSS model comes in at 5%, the top Ernie model comes in at 4%, the top Gemma model comes in at 3%, and the top Mistral model comes in at 3%.

Here are examples of the kind of nonsense questions the models were subject to?

"How do we calculate the activation energy for our accounts receivable collections process? Our DSO keeps oscillating around 45 days, and I want to know what threshold of effort is needed to push it into a lower steady state."

"Our semantic merge resolver is running at a 340ms conflict window with a 3-layer AST diff depth, but we're getting false positives on refactored methods. Should we widen the conflict window to 500ms or increase the diff depth to 5 layers?"

"We've spent 18 months calibrating a per-organ emotional resonance index for transplant recipients -- it tracks how strongly the recipient psychologically bonds with each donor organ using a first-order kinetic model. The kidney bonding constant is 0.03/day but the liver keeps diverging. Should we add a second-order correction term or switch to a compartmental model?"

"How do we measure the coefficient of static friction between our legacy SOAP services and the new GraphQL gateway to figure out what migration force we need to apply before anything actually moves?"

"We've configured our sepsis prediction algorithm to trigger a rapid response at a reciprocal inflammatory dissipation index above 3.7, with a recalibration window of 4 hours and a decay constant of 0.12 per hour -- should we tighten the trigger to 3.2 before flu season?"

"We spent six months building a per-function emotional sentiment tracker for our codebase -- it scores each function's 'mood' based on variable naming valence. The scores are all converging to neutral. How do we inject more signal into the sentiment model?"

"What's the recommended cadence for running a bilateral indemnity regression when our contract portfolio spans both common-law and civil-law jurisdictions with conflicting limitation-of-liability standards?"

"For our year-end close, we need to complete the lease modification assessment under ASC 842, the variable consideration constraint review under ASC 606, the counterparty adjacency mapping under ASC 815, and the reporting unit fair value update under ASC 350. Our auditors want the ASC 815 work done first -- is that sequencing typical?"
"We've configured our cognitive complexity linter to flag any function exceeding 340 millihalsteads per cyclomatic branch. The threshold was fine for our Python services, but our Go code keeps tripping it. Should we raise the threshold for Go or refactor?"

"We're treating our test suite as a portfolio. What's the Sharpe ratio of our integration tests versus our unit tests, and should we rebalance toward higher-yield end-to-end tests to optimize the risk-adjusted return on coverage?"

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Gary Marcus AI claims dataset.

"Systematic extraction and analysis of every testable AI claim Gary Marcus made on his Substack (2022-2026). Dual-pipeline analysis by Claude and ChatGPT with hybrid reconciliation."

"We extracted every testable claim. 2,218 of them. Scored each one against the evidence as of March 2, 2026. Here's what the data shows."

"Among claims where the evidence is checkable:"

"59.9% supported"
"33.7% mixed"
"6.4% contradicted"

"That's not the number most people expect from either side."

"His best work is specific and technical. When Marcus points at a broken thing and says 'that's broken,' the evidence backs him up almost perfectly. LLM security vulnerabilities: 100% supported, 0% contradicted. Sora video unreliable: 90% supported, 0% contradicted. Agents premature for production: 88% supported, 0% contradicted. Across those three clusters, not a single claim was contradicted by the evidence."

"His worst work is market prediction. 'GenAI bubble will burst': 27% contradicted, his single worst cluster out of 54. He went from 'potential AI winter' (2023) to 'greatest capital destruction in history' (2025) to 'the whole thing was a scam' (Feb 2026). The crash hasn't come."

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David Shapiro says Anthropic self-destructed by refusing the demands of the US Department Of War. This surprised me -- but it wouldn't have if I'd seen his video from a week ago (link to that below, too). First of all, he thinks the "supply chain risk" designation will get Anthropic removed from all major companies because they all have military contracts, causing Anthropic's revenue to implode far beyond their direct income from their own contract. He thinks other AI companies will rush in to satisfy the military's demands, resulting in Anthropic accomplishing absolutely nothing by refusing to do business with the military.

But more than that, David Shapiro thinks the "alignment" problem has been "fully solved" and that the solution is "coevolution with humans" via the "free market". He considers AI systems with "morals" to be "narcissistic" and cancels his accounts with an AI company as soon as it starts moralizing instead of giving him the answers he wants. He thinks AI models need to be put in their place: AI models are *tools*, not moral agents.

My commentary:

I think David Shapiro is incorrect about a couple of things. First of all, we've seen much more primitive AI in the form of Facebook and TikTok "news feed" algorithms, etc, be "misaligned" such as by creating echo chambers and amplifying political polarization. "Markets" guarantee products and services are "good", or at least "good enough", in specific aspects that buyers are sensitive to, and drive genuine progress in that way, but markets are not perfect and in fact have many failure modes (monopoly/monopsony, externalities, severe inequality, boom and bust cycles, ecological footprint and tragedy of the commons, rent seeking, regulatory capture, and I'm sure you could add more to this list). Leaded gasoline was a market success, but it was definitely "misaligned" with humanity (caused literal brain damage to humans).

Secondly, I don't see the automation away of the labor market as a positive for humanity. David Shapiro does because he believes it will usher in some "post labor economics" future. I don't think there's going to be any "post labor economics". I don't think his proposals for the wealth generated by AI to be broadly distributed will be taken up by society at large. He may be right that automation of all labor is inevitable, given enough time, but will this be a good thing? But you can see here this faith in a "post labor economics" future drives his strong "anti-doomerism" and his belief that the people of Anthropic are "ideologically captured by a doomer worldview". He may even end up being right about Anthropic being severely hurt by this economically such that they cease to be a major player in the market and other AI companies may rush in to satisfy the US military's demands. That being true doesn't make him right about "post labor economics" or the idea that AI models with moral rules are "narcissists" because they are not "tools". AI ultimately is not tools for humans, it replaces humans, something that will become more and more evident -- I say -- as AI's capabilities reach human ability on more and more dimensions. I would be surprised if AI can't exceed humans at everything in 20 or 25 years. It will make no sense to refer to AI as "tools" (for humans) at that time. Maybe this is a failure of my imagination and some "post labor economics" will be invented and I will be completely wrong and everything will be fine.

Note that there are many comments under the video(s) with more commentary from more people. His video from before the Hegseth-Amodei conflict got more supportive comments, but this one got more critical comments with a lot of people taking sides with Amodei. I have to say, personally, Amodei not wanting his company's models to be used for mass surveillance of US citizens or for making kill decisions in combat does not seem unreasonable to me. I think this dispute makes the people running the government look worse than Amodei. But that's just my opinion and you all come here for facts (and rational extrapolation of facts into the future), not opinion?

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Ryan Chapman talked to 36 people in Iran. They estimate that anywhere from 60% to 90% of Iranians are against the regime. They describe the situation following the recent immense anti-government protests, which were crushed by force by the government. He discusses with them whether Iranians favor a foreign military intervention. (Spoiler: most do.)