How Fablabs Revolutionize Personal Manufacturing

I found this interesting article via waag.org, How to make (almost) everything, by MIT professor Neil Gershenfeld. Gershenfeld invented the concept of a Fablab.

Fablabs are global network maker labs that give individuals access to tools for digital fabrication. They Are also a learning and innovation platform based on open-source principles.
In the article, Gershenfeld explains how manufacturing technology changed in a few decades. New technologies became available that allowed for ‘additive manufacturing.’ That means that instead of making things by cutting away material, like in milling processing and wood carving, 3D printing tools could build things by adding material.

These new tools became available to the public at affordable prices. Gershenfeld uses the analogy with personal computing. At first, large and expensive computers were only affordable for large organizations. In the 1980s, personal computers became more and more accessible to individuals at home.

Similarly, 3D printing technology, laser cutters, and other technology have become affordable for individuals.
These developments changed manufacturing principles. In the past things were made for the masses to keep things affordable, but now, products can be created for the market of one.

Fablab at Waag, Amsterdam

Fablabs further lower the bar for access to such tools by making them available as a shared platform.
Now, you can make things you can buy, customize them to your own needs and tastes, and have them produced locally.

According to Gershenfeld, the next phase would be the creation of digital assemblers, which are Lego-like structures on a much smaller scale (nano-level) that allow the building and recreation of structures. Ultimo assemblers could build assemblers.

In the article, Gershenfeld discusses the potential dangers of this technology (I would generalize this to any technology): it could produce weapons and jeopardize intellectual property.

So, do we need to regulate these technologies? Very difficult. And how would it help against bad actors?
Regarding intellectual Property rights, Gershenfeld promotes the idea of open source. In Fablabs, like in the software industry, open source has become the norm. Communities have sprung up, helped by digital communication. Fablabs allow communities to address local demands and create what is locally needed.
Gershenfeld emphasizes the key innovation potential of this movement. Innovative people question assumptions, and communities drive innovation. This development provides an open innovation space to many more people outside known situations, and it can potentially change the culture.

The article (paywalled).

https://www.foreignaffairs.com/articles/2012-09-27/how-make-almost-anything

The article (non-paywalled)

http://www.cba.mit.edu/docs/papers/12.09.FA.pdf

Analog restoration: SONY WM EX112 walkman repaired

Cassettes are back on the scene. Analog is in. I want to make mixtapes again, after Austin Kleon’s example.
My brother and I used to spend hours crafting mixtapes of our favorite radio pop shows. We would painstakingly hit record and pause to avoid the DJ’s chatter, creating our own uninterrupted music experience.

I stumbled upon a Sony Walkman WM EX112 for a bargain. I couldn’t wait to use it again.

Sony Walkman WM EX112

The spindle didn’t run. That meant the drive belt was probably stretched or decayed. So I looked for a replacement belt on the Internet. To my surprise, you can find a belt for almost any old cassette player. I found mine on fixyouraudio.com. I believe they are based in the Czech Republic; anyway, the belt will arrive within 2 days.

Not sure if it was luck as well to very quickly find a real service manual for this Sony Walkman. This was a rare gem in a world where everything is designed to be replaced, not repaired. By the way, if you ever retrieved such an old manual, save it immediately in your archive, an archive folder, or a tool like Evernote. You never know if this website will still exist the next time you need the manual.

Sony Walkman WM EX112 belt from fixyouraudio

Opening the walkman for repair is a small challenge. There are no screws, unfortunately, but you have to open some clips. That could be more convenient. This video explains how to do it. In the service manual are more details. First, press the clips under the lid with a screwdriver so that the top of the plastic case comes loose. Then, carefully follow the numbering and open the other clips in circles. Carefully, although it requires a fair amount of force.

Sony Walkman WM EX112 opened up for repair

Once you have it open, replacing the string is a straightforward process. You’ll notice the string wrapped around the spindle. Carefully remove the old string. Then, take the new string and wrap it around the spindle in the same way as the old one. If the string has popped off, cleaning the wheels from the rubber cake is a good idea. In my case, they were still clean, and the problem was just that the string had become very limp.

Fixyouraudio includes a nice checklist for cassette-repair enthusiasts.

cassette player repair checklist

EU state of tech and tech legislation

David Heinemeier Hansson writes about the EU law on technology legislation. He is right that the cookie banner laws have led to this awful way where we must wrestle through consent forms while browsing the web. And yes, he is right:

Europe is in desperate need for a radical rethink on how it legislates tech. The amount of squandered potential from smart, capable entrepreneurs on the old continent is tragic. It needn’t be like this. But if you want different outcomes, you have to start doing different things.

He goes on

So little of the core tech innovation that’s driving the future, in AI or otherwise, is happening in Europe. And when it does happen there, it’s usually just incubation, which then heads for America or elsewhere as soon as its ready to make a real impact on the world.

I’m not sure where elsewhere would be. More importantly, there is more nuance to this state of affairs.

America is leading in technology but also in creating technological waste or the enshittification of technology. At least there is a body on this planet that puts boundaries on what monopolistic tech companies can do to citizens. That body is not the US government; it is the EU government. Yes, there is a lot to say about it, but you can state that the EU is protecting its citizens.

Furthermore, DHH could adopt a more critical stance towards the IT industry. While IT became a consumer product, companies like Microsoft, Google, Amazon and Facebook have shown that they do not always act in the best interests of their customers, to say the least. Legislation is not just a socialist or communist necessity, but a fundamental requirement for the proper functioning of capitalism. This is particularly true in the US, where the excessive focus on stockholder value has led to a decline in company ethics.

PS Just this morning, I read that US antitrust laws are working against Google’s anticompetitive behavior.

Quantum

The University of Delft has a great introduction to Quantum Computing at Qutech Academy. (Buckle up if you want to follow, get your linear algebra skills dusted of and some physics.) Quantum computing is slowly becoming a reality. Today, It is somewhere between research and reality. Like the state of classical computing in the 1950s / 1960s, the difference is that today, we are better able to assess the potential of such technology than we could imagine what computing would mean in the 1950s.

And it will be big. It’s more impactful and real than the current AI hype.

I dug into the Qutech Academy after attending the Qiskit Summer School by IBM, which was somewhat over my head. But it’s an extremely interesting space well worth digging into.

AI considered not so harmful

Computer Science professor, writer, and podcaster Cal Newport debunks hysterical reactions to the latest AI developments. Much of this hysteria originates from the media’s search for attention rather than research executed with scientific rigor. “We have summoned an alien intelligence,” writes Harari, who is slowly but surely turning into a Luddite and occupational technology pessimist.

Cal Newport does what Harari and others should have done. In his Deep Questions podcast Defusing AI panic, he takes the subject apart.

Only by taking the time to investigate how this technology actually works—from its high-level concepts down to its basic digital wiring—can we understand what we’re dealing with.

Cal Newport tells us what ChatGPT does and how intelligent it is. We will see that it is pretty limited.

The result of these efforts might very well be jaw-dropping in its nuance and accuracy, but behind the scenes, its generation lacks majesty. The system’s brilliance turns out to be the result less of a ghost in the machine than of the relentless churning of endless multiplications.

A system like ChatGPT doesn’t create, it imitates.

Consciousness depends on a brain’s ability to maintain a constantly updated conception of itself as a distinct entity interacting with a model of the external world. The layers of neural networks that make up systems like ChatGPT, however, are static…

It’s hard to predict exactly how these large language models will end up integrated into our lives going forward, but we can be assured that they’re incapable of hatching diabolical plans, and are unlikely to undermine our economy.

In the podcast, Cal Newport is more technical in his explanations. From the transcript (with light editing for punctuation by me):

What a large language model does is it takes an input. This information moves forward through layers. It’s fully feed forward and out of the other end comes a token which is a part of a word in reality. It’s a probability distribution over tokens but whatever a part of a word comes out the other end that’s all a language model can do. Now, how it generates what token to spit out next can have a huge amount of sophistication …

When I talk to people is when you begin to combine this really really sophisticated word generator with control layers. Something that sits outside of and works with the language model that’s really where everything interesting happens . Okay this is what I want to better understand: the control logic that we place outside of the language models that we get a better understanding of the possible capabilities of artificial intelligence because it’s the combined system language model plus control logic that becomes more interesting. Because what can control logic do?

It can do two things: it chooses what to activate the model with, what input to give it and it can then second: actuate in the real world or the world based on what the model says. So it’s the control logic that can put input into the model and then take the output of the model and actuate that, like take action, do something on the Internet, move a physical thing.”

Something I’ve been doing recently is sort of thinking about the evolution of control logic that can be appended to generative AI systems like large language models…

If you look at the picture I created after Cal Newport’s talk, you can see the different control layers. As Cal Newport points out, that is where the actual work is done. The LLM is static; it gives a word, and that’s it. That control logic knows what to do with the work.

Control layer in contemporary artificial intelligence

Now, the control logic has increased in complexity. We know better what to do with the answers AI gives us.

Newport fantasizes about a third control layer that can interact with several AI models, keep track of intention, have visual recognition, and execute complex logic. That is where we are approaching Artificial General Intelligence.

But, as Newport points out, Nobody is working on this.

Just as important, this control logic is entirely programmed by humans. We are not even close to AI-generated control logic and self-learning control logic. What Newport calls intentional AI (iAI). It is not clear whether this is possible with our current AI technology.

It’s the control logic where the exciting things happen.

It’s still people doing the control logic.

In 1990, a friend of mine graduated from Fuzzy Logic. This period was probably at the height of the Fuzzy Logic hype. Fuzzy Logic was one of the technologies that would turn societies upside down. Nowadays, Fuzzy Logic is just one technology applied, like others, for the proper purpose and problem space.

What looks like science fiction today is the mainstream technology of tomorrow. Today’s AI is tomorrow’s plumbing. That is my take on Cal Newports’ explanation of today’s state of AI art.

RSS update

Earlier I wrote that today there are excellent search engines as an alternative to Google search. To repeat the argument against Google search use: with Google search, in addition to being an Internet user, you are also part of the commercial product a product of Google, with all the consequences for reliability of results.

newsblur image

Another way to consume content from the Internet is through RSS feeds. Google doesn’t like that either, because with that, they can’t show you ads either. I switched to Newsblur after using locally installed QuietRSS for a while. I was missing the shared nature of the web, so I switched back to a tool with a web interface. Newsblur is good and has a fair price, but there are excellent other alternatives out there.

The cost of AI

I stumbled upon this fascinating article by Stuart Mills looking at the challenges that further development and operations of AI models face.

The costs of model development and operation are increasing. Efficiencies in development and operation are challenging but may be addressed in the future. However, model quality remains a significant challenge that is more difficult to solve.

Data is running out. Solutions such as synthetic data also have their limitations.

There is also a severe challenge around chips. There is a supply shortage in the context of geopolitical tensions between China, the US, and the EU. Also, the environmental costs of running large AI models are significant.

The costs of model development and operation are increasing. Efficiencies in development and operation are challenging but may be addressed in the future. However, model quality remains a significant challenge that is more difficult to solve.

Data is running out. Solutions such as synthetic data also have their limitations.

There is also a severe challenge around chips. There is a supply shortage in the context of geopolitical tensions between China, the US, and the EU. Also, the environmental costs of running large AI models are significant.

Two revenue models may emerge in the AI industry. Each with their own take on the cost aspects highlighted above. The first is the ‘foundation model as a platform’ (OpenAI, Microsoft, Google), which demands increasing generality and functionality of foundation models.

The second is the ‘bespoke model’ (IBM), which focuses on developing specific models for corporate clients.

Government action can support and undermine the AI industry. Investment in semiconductor manufacturing in the US and China may increase the supply of chips, and strategic passivity from governments around regulations such as copyrights is suitable for the industry. Government interventions should regulate the AI industry in areas related to the socially and environmentally damaging effects of data centers, copyright infringement, exploitation of laborers, discriminatory practices, and market competition.

Exploring Ethical Search Engines Beyond Google

There is no good reason why you should still rely on Google search for your search engine. Read this excellent article on Google’s practices, and Big Tech chills run down your spine. There are ample good alternative search engines these days that do have integrity:

DuckDuckGo

Ecosia

Bing (though also Big Tech and historically suspect)

Brave

StartPage

And there are more.

Lately, I’ve been using Ecosia and DuckDuckGo side by side. I don’t feel like I’m missing anything about Google.

AI, duh

When Artificial Intelligence-generated images win photo contests, should we oppose that?

I just think the developments of AI are telling us to do things differently, to stand out. AI has become the competition (and maybe just a tool), just like all other photographers are. So, we have to treat AI as competition, too. You can try to deny this reality, but you can also look at how you, as a photographer or artist, can differentiate yourself from this new collegue/competition.

Ideas:

  • Stories instead of single images. Combine with text.
  • An analog version of your work: a print, a book, wallpaper, toilet paper, t-shirts, quilt covers, printed bags, whatever.
  • Combine your photos into a video.
  • Handmade books.
  • Collages.

Personal and analog distinguish you from the aggregated, statistically generated products of AI.

ai photographer
The competition