Sunday, March 15, 2026

Singularity Update: You Have No Idea How Crazy Humanoid Robots Have Gotten

   Yes, the future is coming. In some respects, faster than we believe. In others not so much. This is exactly the case for robots. Their mobility is advancing by leaps and bounds. Their brain functions, not so much. 

   Their intelligence will of course progress in parallel to AI so soon enough, we will have extremely intelligent machines able to talk to us and understand what we are saying. Unfortunately, this part is only half our brain: The logical, systematic, focused left hemisphere. But then, there is the other one: the holistic right hemisphere. The one which grasps the world without getting lost in details. And on this account, unfortunately, progress is extremely slow. 

   And this matters enormously. Without a general understanding of the world, robots cannot be unleashed around us. We would be swamped by a multitude of robot "rain-man", which would be brilliant intellectually and a catastrophe to live around since lacking a general understanding of their environment, they would be prone to catastrophic decisions, lacking the common sense which in humans prevents such misbehavior. 

   Will the obstacle be solved in two to three years. Maybe but if that's the case, nobody yet has a clue how. So you should read all the optimistic prophecies as the one below with a grain of salt. At the speed of light, the closest star to the solar system, Proxima Centauris, is a little more than 4 years away. But with current technologies, it is a little less than 40,000 years away" There is a similar discrepancy between what we can do and what is required for the future to materialize as fast as predicted below. Will new advanced, self improving AI software bridge the gap? Nobody knows.     

by Peter H. Diamandis via Metatrends,

I just spent the afternoon at Figure headquarters in San Jose with Brett Adcock and David Blundin, and I’m still processing what I saw.

We’re not talking about concept robots. We’re talking about fully autonomous humanoid robots running neural networks end-to-end, doing kitchen work, unloading dishwashers, organizing packages – for hours at a time, with no human intervention.

Today? Figure’s robots are doing 67 consecutive hours of autonomous work. One error in 67 hours. That’s not a demo. That’s a product.

And here’s what most people don’t understand: the gap between “doing one task really well” and “doing every task a human can do” is collapsing at exponential speeds.

Let me explain why…

NOTE: Brett has been a past Faculty Member at my Abundance Summit, where leaders like him share insights years before the mainstream catches on. In-person seats for the 2026 Summit next month are nearly sold out. Learn more and apply.

The Death of C++ and the Rise of the Neural Net

When I first visited Figure, they had several hundred thousand lines of C++ code controlling the robots. Handwritten. Expensive. Brittle.

Every new behavior required engineers to anticipate edge cases, write more code, test it, debug it. It was the software equivalent of teaching a toddler to walk by writing an instruction manual.

In the last year, Figure deleted 109,000 lines of C++ code.

All of it. Gone.

What replaced it? A single neural network that controls the entire robot: hands, arms, torso, legs, feet. Full-body coordination. Real-time planning. Dynamic response to unexpected situations.

This is Helix 2, their latest AI model, and it’s a fundamentally different approach to robotics.

Here’s why this matters: neural nets learn from experience, not instructions.

You don’t code a robot to “grab a cup.” You show it thousands of examples of grasping objects—different shapes, weights, materials—and the neural net extracts the underlying patterns. It learns what “grasping” is at a representational level.

And once it understands grasping? It can generalize to objects it’s never seen before.

Brett put it simply: “If you can teleoperate the robot to do a task, you can train the neural net to learn it.”

That’s the unlock. If the hardware is capable—if the motors, sensors, and joints can physically perform the movement—then the AI can learn it from data.

Compare that to traditional robotics, where you’d need to write thousands of lines of code for every single new task. That approach doesn’t scale. Neural nets do.

The implication: Every robot in the fleet learns from every other robot’s experience. When one Figure robot masters folding laundry, every Figure robot on the planet instantly knows how to fold laundry.

Humans don’t work like this. Robots do.

Hardware Built Around the Brain

Most people think you design the robot first, then figure out the AI.

Figure did the opposite.

Brett’s team looked at the neural network architecture they wanted to run and asked: “What hardware do we need to make this work?”

That’s why Figure 3 exists. It’s not an incremental upgrade. It’s a complete redesign built around Helix.

Here’s what changed from Figure 2 to Figure 3:

  • 90% cost reduction in manufacturing

  • ~20 pounds lighter (135 lbs total)

  • Palm cameras for occluded grasping

  • Tactile sensors in every fingertip

  • Passive toe joint for better range of motion

  • Soft-wrapped body to eliminate pinch points

  • Onboard inference compute (no cloud dependency)

And critically: designed for data collection at scale.

Because here’s the thing — if you’re betting on neural nets, you’re betting on data. The more diverse, high-quality data you collect, the better the robot generalizes.

Figure built their robot to be a data-gathering machine. Every sensor, every camera, every interaction feeds back into the training loop.

And they’re not using off-the-shelf parts. They manufacture their own actuators, hands, battery systems, embedded compute—everything.

Why? Because the technology readiness of existing robotics components is too low. If a vendor’s motor fails in the field, you’re stuck waiting for them to fix it. If you built it yourself, you iterate overnight.

This is vertical integration at its finest. And it’s the only way to move fast enough to win.

The Manufacturing Ramp: From Thousands to Millions

Walking through Figure’s Baku (manufacturing facility) was surreal.

Four production lines. Capacity for 50,000 robots per year when fully ramped.

But Brett’s not stopping there. He’s already planning the next facility. Tens of thousands. Then hundreds of thousands. Then millions.

And here’s the kicker: Figure will use its own robots to build more robots.

They’re putting humanoids on the production lines this year. Robots assembling robots. Robots testing robots. Robots packaging robots.

Why? Because if you’re trying to scale to a billion units, you can’t rely on human labor. You need an exponential manufacturing curve, and the only way to get there is recursive self-improvement.

Think about it: every improvement Figure makes to the robot’s dexterity, speed, and reliability makes it better at building the next generation of robots.

It’s a flywheel. And once it starts spinning, it’s nearly impossible to stop.

Brett estimates they could ship a billion robots today if the AI were fully general-purpose. The demand is there. The capital markets (via leasing models) can finance it. The constraint is solving general robotics.

And that’s exactly what they’re working on.

General Robotics: The Only Milestone That Matters

 

Here’s the thing about humanoid robots that most people—and most companies—don’t get:

Teleoperation is not impressive. Open-loop behaviors are not impressive. One-minute demos are not impressive.

What’s impressive is closed-loop, autonomous work in unseen environments over long time horizons.

Let me break that down.

Closed-loop means the robot is continuously sensing its environment and adjusting in real-time. It’s not replaying a pre-programmed sequence. It’s thinking.

Autonomous means no human in the loop. No remote operator in Tennessee. The robot is making decisions on its own.

Unseen environments means you can drop the robot into a random Airbnb or factory floor it’s never visited, and it figures out how to navigate and work there.

Long time horizons means hours, days, weeks of continuous operation. Not 30-second clips stitched together in post-production.

This is what Brett calls “general robotics,” and it’s the only milestone that matters.

If you can’t do this, you don’t have a product. You have a very expensive remote-controlled toy.

Figure’s current benchmark: four to five hours of continuous neural network operation in logistics, kitchen work, and manufacturing tasks.

Their 2026 goal: Drop a robot into an unseen home and have it do useful work for days with minimal human intervention.

Once they hit that, the game is over. Because if the robot can generalize to any home, it can generalize to any environment. Factories. Warehouses. Hospitals. Senior care facilities. Mining operations. Space stations.

The hard part isn’t building a robot that can do one thing well. The hard part is building a robot that can do everything a human can do.

And Figure is closer than anyone else on the planet.

The Timeline: When Will You Have One?

Everyone wants to know: when can I buy a Figure robot for my home?

Brett’s answer: Not yet. And I’m not going to ship slop.

Here’s his roadmap:

2026: Alpha testing in homes. A small number of robots doing long-horizon work (cleaning, organizing, laundry, dishes) in real households. The goal is to measure human interventions – how often does someone need to step in and help?

Right now, industrial deployments see occasional errors. The target for home deployment is orders of magnitude better.

2027-2028: Scaled home pilots. Tens, then hundreds, then thousands of units. Iterative design based on real-world feedback. Safety validation. Privacy validation. Reliability validation.

2028-2029: Mass production and broad availability.

Why so cautious?

Because Brett learned this lesson at Archer (his eVTOL company): you don’t ship safety-critical systems until they’re ready.

A humanoid robot in your home is around your kids, your pets, your elderly parents. If it drops a pot of boiling water, that’s catastrophic. If it steps on your cat, that’s catastrophic. If it gets hacked and streams your private conversations to the internet, that’s catastrophic.

So Figure is taking the time to get it right.

And honestly? I respect the hell out of that.

Because when Figure does ship, they’ll have a decade head start on everyone else in terms of safety track record, reliability data, and customer trust.

That’s a brand moat you can’t buy.

The Business Model: Leasing Humanoids Like Humans

Here’s the beautiful part of Figure’s go-to-market strategy:

They’re leasing robots the same way you lease humans — by the hour.

Think about it. You don’t “buy” an employee. You pay them a salary. You lease their time and capability.

Figure is doing the same thing. You don’t buy a $20,000 robot. You pay ~$300/month to lease one. That’s $10/day. Forty cents an hour.

Compare that to minimum wage ($15-20/hour in most US states). A Figure robot is 50x cheaper and works 24/7 with no breaks, no benefits, no turnover.

And because it’s a lease, Figure retains ownership. They can remotely update the software. They can recall and upgrade units. They can monitor performance and safety in real-time.

It’s the Apple model applied to robotics. And it’s going to print money.

Brett estimates the market for humanoid robots is half of global GDP: roughly $50 trillion annually. Because half of all economic activity is human labor.

And here’s the thing: the demand is already there.

Figure has signed multiple commercial clients. They’re deploying robots into factories, warehouses, and logistics operations this year. These aren’t pilots. These are revenue-generating contracts.

The bottleneck isn’t demand. It’s supply. It’s solving general robotics and scaling manufacturing fast enough to meet the orders.

When that happens? This becomes the largest economy in the world.

What Comes Next: The Age of Abundance

Let me paint the picture of where this is going.

2030: Every household in the developed world has access to a humanoid robot. You lease it for $300/month. It does your laundry, cleans your house, organizes your kitchen, runs errands.

You come home from work and your robot has already meal-prepped dinner based on your biometric data from your wearable. It knows you’re low on magnesium, so it adjusted the recipe.

2035: There are 10 billion humanoid robots on the planet. Five billion in homes. Five billion in commercial and industrial settings.

The cost of goods and services collapses. Why? Because labor is no longer a constraint. Robots mine the materials, manufacture the products, transport them, and deliver them to your door.

You want a custom piece of furniture? A robot designs it, fabricates it, and assembles it in your garage overnight. Cost: materials + energy. Labor: free.

2040: Robots are building robots. Robots are designing robots. Robots are optimizing supply chains, managing logistics, exploring asteroids, constructing orbital habitats.

Humans are freed from drudgery. We do what we’re best at: creating, exploring, connecting, imagining.

This is the age of Abundance.

And it starts in 2026.

Brett Adcock and his team at Figure are building it. Right now. In San Jose.

I’ve seen it. I’ve walked the floors. I’ve watched the robots work.

And I’m telling you: this is real.

The future doesn’t care if you believe in it. It’s coming anyway.

The only question is: are you ready?

To an Abundant future,

Peter

Saturday, March 14, 2026

56% Of Americans Now Suspect COVID-19 'Vaccines' Caused Mass-Deaths

   Let's stay away from Iran where Israel and the US out of desperation are now carpet bombing Tehran which we'll discuss later, and move back to Covid-19 where finally people are waking up as explained below, late, to what really happened as we warned it would for several years. Healthy people are still falling with sudden heart attacks but in manageable numbers. Cancers have exploded as well as other immunity related diseases but mostly doctors kept silent and those who didn't were silenced. 

   In context, what happened during Covid-19 was little more than a dry run on how to control the media and society. Lessons have been learned and are now being applied in this full scale exercise that the war with Iran represents. 

   It marks the end of the ideals of the enlightenment; freedom of the press and expression, the weak and lopsided "International Order", arms limitations and other agreements. All imperfect but which nevertheless had a positive effect just by existing. Democracy is now little more than empty words, propped by lies, propaganda and manipulations. 

   Governments have of course always lied but we are now entering a golden age where lying becomes the motus operendi according to the words of Goebbels: "If you tell a lie big enough and keep repeating it, people will eventually come to believe it."   which George Orwell beautifully paraphrased by:  

 'War Is Peace. Freedom Is Slavery. Ignorance Is Strength.'

Authored by Nicolas Hulscher, MPH,

Public opinion is shifting... and they want action.

A new Rasmussen survey of 1,158 likely U.S. voters - conducted September 7–9, 2025, with a ±3% margin of error - reveals that 56% believe side effects from the COVID-19 shots have likely caused a significant number of unexplained deaths. Nearly one-third (32%) say it’s very likely. Only 35% still dismiss the idea.

This shows that what was once called a “conspiracy theory” has become the mainstream view. The majority of Americans now believe vaccine harms are real and widespread.

Support for HHS Secretary Robert F. Kennedy Jr. reflects this shift. Half of voters (50%) say government health officials deserve criticism for their handling of the pandemic, while 42% even think CDC employees should be fired for their role in misleading the public.

Among those who strongly believe the shots caused deaths, over 70% want CDC firings.

Partisan divides remain—70% of Republicans, 46% of Democrats, and 54% of independents think the vaccines likely caused deaths—but the skepticism crosses party lines and racial groups.

In fact, black (64%) and Hispanic (57%) voters are even more likely than white voters (54%) to suspect deadly vaccine effects.

According to the survey, RFK Jr. is viewed favorably by 45% of voters, with strong support among Republicans and independents, even as Democrats turn sharply against him.

The takeaway: A credible, nationally representative poll now confirms most Americans believe COVID-19 shots have killed many people, and they want accountability from the CDC and government health leaders.

Tuesday, March 10, 2026

Humanity Crossed A Threshold, And Most Of Us Scrolled Past It

  I have not updated this blog since last week on purpose. My objective here is to give food for thoughts, not to comment on current events. 

 For all I can see, the Iran war may be one of the greatest blunders in recent history. The Trump Administration, pushed by Israel, believed that after decapitation, Iran would fall and become an easy pray. The opposite happened. Senseless murder of a religious leader and true terrorism with the willful mass slaughter of little girls had the exact opposite effect of galvanizing a country around its government. But how on earth could even the most delusional people not understand that this would be the case? 

  The result now is that Trump is in a bind. Announce "Mission accomplished", end the war and he risks a fatal blow to the credibility of the US, plus of course the wrath of Netanyahu and the consequential blow-back of being compromised. Continue the war, and the relentless rise of the price of oil will plunge the world in a deep recession and compromise his chance in November. What to do? 

  He certainly would like to negotiate a ceasefire but how can you do that with people you kill as they sit as the table? The Iranians rightfully said: Enough!    

  So instead of focusing on these miserable events which are entirely due to arrogance and hubris, let's take a step back and look at what's really happening in the background.

  If the Ukraine war was the first war of the drones, the Iran war will be the first war of AI. Together, drones and AI are de-multiplying lethality but also the cost of waging war. Slowly, war is becoming almost exclusively economic. And if that's the case, then obviously the US cannot be left in charge of the world's currency. Changes are coming!

Authored by Kay Rubacek via The Epoch Times,

Something happened last week that most people scrolled past.

Two Amazon data centers in the United Arab Emirates were struck during Iran’s retaliation for U.S. military action. Another facility in Bahrain was reportedly damaged after a drone landed nearby. The earlier strikes that triggered the retaliation were said to have used AI-assisted targeting systems.

It was a brief moment in the news cycle, quickly overtaken by the next political story. But the implications are difficult to ignore.

Artificial intelligence has now crossed into active geopolitical conflict.

The infrastructure that powers the digital world—the same systems that store family photos, run businesses, and answer questions on our phones—has become strategic wartime infrastructure. Algorithms woven quietly into civilian technology are now helping guide decisions about where weapons land.

Humanity crossed a threshold, and most of us scrolled past it.

But we know from history that major technological shifts rarely announce themselves with a single dramatic moment. They appear first as signals in small news items, policy disputes, unexplained departures by insiders.

Another signal appeared almost at the same time.

The federal government recently removed the artificial intelligence systems developed by Anthropic from its networks. Shortly afterward, OpenAI stepped in with a defense agreement of its own.

The public does not know the full story behind the change. We do not know exactly what demands were made behind closed doors, what ethical guardrails were contested, or why one of the world’s leading AI companies was suddenly pushed out of federal systems.

But the episode itself is another signal.

And yet another signal has been appearing quietly inside the AI industry itself: the departure of safety researchers.

Over the past several years, numerous high-profile researchers tasked with studying the risks and safety of advanced AI systems have left their posts at leading companies and research labs. Many of these departures have come with little public explanation.

Those researchers rarely describe the internal debates they witnessed. Few are in a position to do so.

But patterns like this matter. When the people closest to a powerful technology begin stepping away quietly, it often means they have seen tensions the public has not yet been invited to examine.

History has seen moments like this before.

In the early 1940s, scientists working on what became the Manhattan Project realized they were building something unprecedented. Some raised concerns about what the technology might mean once it left the laboratory. But those debates happened largely behind closed doors. The public understood the stakes only after the technology had already been used.

Artificial intelligence may be unfolding along a similar pattern. We are seeing the signals now—researchers leaving, governments disputing ethical guardrails, and AI systems appearing inside real geopolitical conflict.

Yet the public conversation about artificial intelligence is still shaped by a set of assumptions that make these signals harder to recognize.

Misconception #1: AI Is ‘Just a Tool’

This analogy is comforting. We imagine AI the way we imagine a calculator or a word processor—machines that perform tasks efficiently while remaining firmly under human control.

Tools can become strategic assets in war. But they do not generate their own outputs in ways their creators sometimes struggle to explain, nor do they require constant negotiation over the ethical boundaries of their behavior.

Modern AI systems are not programmed line by line in the traditional sense. They are trained on vast datasets and learn patterns within that data. Their behavior emerges from statistical relationships rather than explicit instructions. AI researchers describe these systems as “grown,” not built. And that makes them fundamentally different from the tools we are used to controlling.

Misconception #2: AI Is Neutral

AI systems are trained on human-generated information. That information reflects human biases, historical conflicts, and uneven representation.

When an AI system generates an answer, it synthesizes patterns it absorbed from that material.

AI has developed fluent language skills that can create the illusion of objectivity. But confident language is not the same as truth.

The recent disputes between governments and AI companies illustrate this clearly. Debates over surveillance limits or autonomous weapons are not simply technical questions. They are moral ones. Guardrails exist precisely because the systems themselves are not neutral.

Misconception #3: Humans Fully Control AI

Traditional software behaves according to explicit instructions written by programmers.

Modern AI systems operate differently. Their outputs are probabilistic, generated through layers of learned relationships inside the model.

Developers are now using AI systems to build AI systems and to manage other AI systems. They are using AI to write code that in the past they would have written themselves, and it’s happening so fast that they cannot monitor or even understand every line of code being generated by systems that do not sleep.

Control, in this environment, is not a switch. It is more like a moving boundary that no one has ever seen before, and the language to even define it is still in its infancy.

Misconception #4: The Experts Know Where This Is Going

In most scientific fields, experts disagree within a fairly narrow range. In artificial intelligence, the range of opinion is unusually wide.

Some researchers believe AI will revolutionize medicine and scientific discovery. Others warn the technology could produce serious societal disruption if development outruns human wisdom.

Among those raising such concerns is Geoffrey Hinton, a Nobel Prize winner and one of the foundational figures of modern AI research.

That range of opinion does not prove disaster is coming. But it does reveal that even the people building these systems do not fully agree on where they lead.

Artificial intelligence is integrating rapidly into the systems that shape modern life—communication, commerce, national security, and governance.

We are seeing signals across all of these domains. We can see clearly that AI is shaping our future whether we like it or not. The question is whether we will recognize the signals in time to understand what is unfolding, or whether we will wait, as societies often do, until the consequences make the signals impossible to ignore.

Tuesday, March 3, 2026

Monday, March 2, 2026

Daniel Davis: U.S. Miscalculation - War Not Going as Planned (Video - 33mn)

   Day 3 of the war in Iran and the direction is already clear: The US is going to lose the war. As all the strategists warned, there was no snowball chance in hell that a air power only, bombing kind of war would bend a land country such as Iran. The killing of the Ayatollah, who was 86 and not hiding, conversely galvanized the country, with even the opponents now mostly supporting their country.

   On the war front, Iran is being battered. But it is a big country which has been preparing for years and which can therefore absorb the shock and fight another day. When the war started, the Trump administration announced that the war would last a few days. Now they say that it will last 4 to 5 weeks. Can the US sustain 5 weeks of intense combat with planes being shot down and boats being sunk? 

   And even if it can, the Iranians did change their strategy this time, and not only attacked Israel but also the treacherous monarchies who officially were neutral but in the background pushed the US towards war.

   Trump was consequently convinced by Israel, the Neocons and the same Monarchies that it would be an easy fight. It looks more and more like, as we predicted, this won't be the case. This time, the market didn't over-react, but this may change as the conflict spreads and expands. 

   In the end, the one who will want a deal is Trump. The Iranians, tired of the treachery of his administration will not cave in so easily this time and the final price could be much higher. This is how big wars start.      

 https://www.youtube.com/watch?v=w3F5HY8K5vM

 

 

 

 

Singularity Update: You Have No Idea How Crazy Humanoid Robots Have Gotten

   Yes, the future is coming. In some respects, faster than we believe. In others not so much. This is exactly the case for robots. Their mo...