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Tuesday, 28 January 2025

Open Agentic AI And True Personalisation

Sixteen years on from my own initial posts on the subject of a personal assistant that can privately find and buy stuff for you on the web, and we have 'open agentic AI'. But are you really any closer to the automated selection and purchase of your own personalised products without needlessly surrendering your privacy or otherwise becoming the victim? Should this latest iteration of open generative AI be autonomously making and executing decisions on your behalf? 

What is Agentic AI?

An 'agentic' AI is an evolution of generative AI beyond a chatbot. It receives your data and relies on pattern matching to generate, select and execute one of a number of potential pre-programmed actions without human guidance, then 'learns' from the result (as NVIDIA, the leading AI chip maker, explains). 

A 'virtual assistant' that can find, buy and play music, for example, is a form of agentic AI (since it uses AI in its processes), but the ambition involves a wider range of tasks and more process automation and autonomy (if not end-to-end). 

You'll see a sleight-of-hand in the marketing language (like NVIDA's) as developers start projecting 'perception', 'understanding' and 'reasoning' on their agentic AIs, but computers don't actually do any of those human things. 

It's certainly a compelling idea to apply this to automating various highly complex, tedious consumer 'workflows' that have lots of different parameters - like buying a car, perhaps (or booking a bloody rail ticket in the UK!). 

Wearing my legal hat, I also see myriad interesting challenges (which I'd be delighted to discuss, of course!), some of which are mentioned here, but not all...

Some challenges

The main problem with using an 'agentic AI' in a consumer context is the involvement of a large language model and generative AI where there is a significant (e.g. economic, medical and/or legal) consequence for the user (as opposed to a chatbot or information-only scenario (though that can also be problematic). Currently, the household or device based virtual assistants are carrying out fairly mundane tasks, and you could probably get a refund if it bought you the wrong song, for example, if that really bothered you. Buying the wrong car would likely be a different matter.

There may also be confusion about the concept of 'agency' here. The word 'agentic' is used to mean that the AI has 'agency' in the sense it can operate without human guidance. That AI is not necessarily anyone's legal 'agent' (more below) and is trained on generic training data (subject to privacy, copyright consents/licensing), which these days is itself synthetic - generated by an AI. So, agentic AIs are not hosted exclusively by or on behalf of the specific consumer and do not specifically cater to a single end-customer's personalised needs in terms of the data it holds/processes and how it deals with suppliers. It does not 'know' you or 'understand' anyone, let alone you.  

Of course, that is consistent with how consumer markets work: products have generally been developed to suit the supplier's requirements in terms of profitability and so on, rather than any individual customer's needs. Having assembled what the supplier believes to be a profitable product by reference to an ideal customer profile in a given context, the supplier's systems and marketing/advertising arrangements seek out customers for the product who are 'scored' on the extent to which they fit that 'profile' and context. This also preserves 'information asymmetry' in favour of the supplier, who knows far more about its product and customers than you know about the supplier or the product. In an insurance context, for example, that will mean an ideal customer will pay a high premium but find it unnecessary, too hard or impossible to make a claim on the policy. For a loan, the lender will be looking for a higher risk customer who will end up paying more in additional interest and default fees than lower risk customers. But all this is only probabilistic, since human physiology may be 'normally distributed' but human behaviour is not.

So using an agentic AI in this context would not improve your position or relationship with your suppliers, particularly if the supplier is the owner/operator of the agentic AI. The fact that Open AI has offered its 'Operator' agentic AI to its pro-customers (who already pay a subscription of $200 a month!) begs the question whether Open AI really intends rocking this boat, or whether it's really a platform for suppliers like Facebook or Google search in the online advertising world. 

It's also an open question - and a matter for contract or regulation - as to whether the AI is anyone's legal 'agent' (which it could be if the AI were deployed by an actual agent or fiduciary of the customer, such as a consumer credit broker). 

Generative AI also has a set of inherent risks. Not only do they fail to 'understand' data, but to a greater or lesser degree they are also inaccurate, biased and randomly hallucinate rubbish (not to mention the enormous costs in energy/water, capital and computing; the opportunity cost of diverting such resources from other service/infrastructure requirements; and other the 'externalities' or socioeconomic consequences that are being ignored and not factored into soaring Big Tech stock prices - a bubble likely to burst soon). It may also not be possible to explain how the AI arrives at its conclusions (or, in the case of an agentic AI, why it selected a particular product, or executed a specific task, rather than another). Simply overlaying a right to human intervention by either customer or supplier would not guarantee a better outcome on theses issues (due to lack of explainability, in particular). A human should be able to explain why and how the AI's decision was reached and be able to re-take the decision. And, unfortunately, we are seeing less and less improvement in each of these inherent risk areas with each version of generative AIs.

All this means that agentic AI should not be used to fully automate decisions or choices that have any significant impact on an individual consumer (such as buying a car or obtaining a loan or a pension product).  

An Alternative... Your Own Personal Agent

What feels like a century ago, in 2009, I wondered whether the 'semantic web' would spell the end of price comparison websites. I was tired of seeing their expensive TV ads - paid for out of the intermediary's huge share of the gross price of the product. I thought: "If suppliers would only publish their product data in semantic format, a 'widget' on my own computer could scan their datafeeds and identify the product that's right for me, based on my personal profile and other parameters I specify". 

By 2013, I was calling that 'widget' an Open Data Spider and attempted to explain it further in an article for SCL on the wider tech themes of Midata, Open Data and Big Data tools (and elsewhere with the concept of 'monetising you'). I thought then - and still think now - that: 

"a combination of Midata, Open Data and Big Data tools seems likely to liberate us from the tyranny of the 'customer profile' and reputational 'scores', and allow us instead to establish direct connections with trusted products and suppliers based on much deeper knowledge of our own circumstances."

Personalised assistants are evolving to some degree, in the form of 'personal [online] data stores' (like MyDex or Solid); as well as 'digital wallets' or payment apps that sit on smartphones and other digital devices and can be used to store transaction data, tickets, boarding passes and other evidence of actual purchases. The former are being integrated in specific scenarios like recruitment and healthcare; while the latter tend to be usable only within checkout processes. None seems to be playing a more extensive role in pre-evaluating your personal requirements, then seeking, selecting and purchasing a suitable product for you from a range of potential suppliers (as opposed to a product that a supplier has created for its version of an 'ideal' customer that you seem to fit to some degree). 

Whether the providers of existing personal data stores and digital wallets will be prepared to extend their functionality to include more process automation for consumers may also depend on the willingness of suppliers to surrender some of their information advantage and adapt their systems (or AIs) to respond to and adapt products according to actual consumer requests/demand.

Equally, the digital 'gatekeepers' such as search providers and social media platforms will want to protect their own advertising revenue and other fees currently paid by suppliers who rely on them for targeting 'ideal' customers. Whether they can 'switch sides' to act for consumers and preserve/grow this revenue flow remains to be seen.

Overall, if I were a betting man, I'd wager that open agentic AI won't really change the fundamental relationship between suppliers, intermediaries and consumers, and that consumers will remain the targets (victims) for whatever suppliers and intermediaries dream up for them next...

I'd love to be corrected!



Monday, 20 January 2025

$TRUMP: A ShiteCoin Fit For Dangerously Weird Times... "Doom Is The Operative Ethic"

Source

Just when you thought the world couldn't get any weirder, the "anti-woke" US President-elect decided to celebrate "Winning!" the leadership of the Free World by dancing at his own personal rally to the tune of a gay anthem and bleeding his fans of their cash with the launch of a dodgy cryptocurrency (slamming the campaign cryptocurrency they'd already bought). 

But, hey, this is just the start. Wait til you see how it ends...

While teams of lawyers pore over Trump's latest droppings like big game hunters tracking their prey on safari, most pundits will probably consider these brazen acts as simply 'Trump being Trump'. 

But Machiavelli will be pounding at the lid of his coffin. He advised that a good ruler should strive to appear wholly compassionate, loyal, humane, honest and religious, yet know how to occasionally act otherwise when required. A good ruler must not seize or steal their subjects' property or be seen as "changeable, superficial...." A good ruler's choice of ministers will immediately demonstrate to the country either "good sense or lack of it" - they must be intelligent people with permission to tell the ruler the truth, rather than flatterers. Above all, he wrote:

"...a ruler must avoid any behaviour that will lead to being hated or held in contempt."

...because Machiavelli had witnessed firsthand not even an army or castle can save a ruler who becomes generally loathed by the people (as the intervening centuries have demonstrated time and again).

Trump will not buck this trend. It's one thing to flip two fingers at prosecutors and blather about the 'swamp' and the 'deep state'. But it's quite another to flip from anti-crypto in 2021 to rabidly pro-crypto, hire a bunch of flatterers to your cabinet and then openly grab money from the people who voted you into office.

The Orange One's legion of followers are what Hunter S. Thompson christened 'the New Dumb'. Aside from the 'marks' or unwitting victims who actually believe all the nonsense, Trump's fans are drawn from among fauxpro-wrestling fans, conspiracy theorists and other keepers of the Trump's special brand of Covfefe 'kayfabe'. Moths to a populist flame fanned by fake news, behavioural targeting, bizarre fundraising schemes, meme coins and tacky souvenirs, televised rallies, criminal trials, and fat donations from self-interested vulture capitalists. These people are not "dumb" in the sense of being necessarily stupid or lacking in intelligence, but in the sense that they believe themselves to lack a voice in a complex world they see as run by, and for, a mysterious group of 'others' who are known only by epithets like the "deep state", the "new world order", "liberals", "libtards"...

But now these people can see that their Dear Leader is simply mistaking them for idiots and lining his pockets at their expense [update via CoinDesk here].

Writing in 2000 after years of successfully deriding Richard Nixon, Hunter S. Thompson never bothered to comment directly on Trump, presumably because he viewed Trump as just a symptom, if not a portent, of doom. Remember that Trump first openly talked of running for President in 1988 and actually tried in 2000. Thompson would merely have seen it as another confirmation of his thesis if he'd stuck around to see Trump eventually conspire his way into office twice - to Make America Groan Again - rising to power like a slow-festering boil during what Hunter Thompson described in his article on The New Dumb as "dangerously weird times". For that reason it's best to simply leave you with his words:

"We have seen Weird Times in this country before, but the year 2000 is beginning to look super weird. This time, there really is nobody flying the plane. ... We are living in dangerously weird times now. Smart people just shrug and admit they're dazed and confused.
The only ones left with any confidence at all are the New Dumb. It is the beginning of the end of our world as we knew it. Doom is the operative ethic...
Look around you. There is an eerie sense of Panic in the air, a silent Fear and Uncertainty that comes with once-reliable faiths and truths and solid Institutions that are no longer safe to believe in. ... There is a Presidential Election, right on schedule, but somehow there is no President. A new Congress is elected, like always, but somehow there is no real Congress at all -- not as we knew it, anyway, and whatever passes for Congress will be as helpless and weak as Whoever has to pass for the "New President."
If this were the world of sports, it would be like playing a Super Bowl that goes into 19 scoreless Overtimes and never actually Ends..."


Tuesday, 14 January 2025

The Bubble With Bitcoin

Followers via LinkedIn will have seen a string of my recent posts focused on the fact that bitcoin miners are borrowing to buy bitcoin, aping the "very novel strategy" of MicroStrategy, the loss-making former software company whose boss, Michael Saylor, continuously hypes the cryptocurrency. We've been here before, in 2022 when several miners collapsed, ruining many amateur investors, but the stakes are gradually rising each time...

In November '24, Allianz, the German insurer, bought 24% of MicroStrategy's $2.6bn convertible bond issue that was used to purchase bitcoin (raising the price by 4.3% to $98k). It seems that Allianz wants to gain exposure to bitcoin without actually going to the trouble of buying and holding it, even though it could have got that exposure more cheaply through ETFs. After all, the convertible feature of the bond only gets Allianz shares in a company that consistently loses money and whose share price is tied to bitcoin volatility and price: 

On November 21, 2024, MicroStrategy issued $3 billion of 0% convertible notes maturing on December 1, 2029... Its stock was trading at $430 at issuance, and the conversion price was $672. Investors were willing to accept call options instead of interest payments. The equity options have value if MicroStrategy shares rise by more than 50% over the next five years. If the stock does not get above $672, investors will earn a 0% return on their investment. MicroStrategy And Its Convertible Debt Scheme

By purchasing the bonds with cash that it knows will be used to buy bitcoin, an investor like Allianz is effectively boosting the price of bitcoin - and by direct correlation MicroStrategy's share price - to the conversion price. As Michael Lebowitz explains, MicroStrategy's share price began correlating with the price of bitcoin the more the company borrowed to buy the cryptocurrency - a total of $7.27bn since 2020.

So it was interesting to see the USD price of bitcoin subsequently hit $106k for two days in December (for which Donald Trump weirdly congratulated everyone, so presumably he's in on the trade).

But why did the price stick so firmly at $106k (before sliding ominously below $100k)? 

Well, on 7 Jan 2025, the FT reported the estimate by CoinShares, the investment group, that:

“Including depreciation and stock-based compensation charges, the average cost to produce a bitcoin was $106,000.”

This is somewhat new, as previous cost estimates at the time of the bitcoin mining bankruptcies in 2022 only seemed to factor in the (very significant) energy/computing costs, not those wider costs.

Meanwhile, the FT reports, not satisfied with mining rewards that halved in April, miners are continuing to borrow more and more to buy and hold bitcoin in a bid to support the price (and eventually ‘profit’ from sales to ‘greater fools’). For instance, at the latest peakRiot Platforms borrowed $595m, maturing in 2030, using it mainly to buy bitcoin. Others have also concluded that bitcoin miners aremimicking MicroStrategy by borrowing to buy bitcoin.

But all this capital is clearly failing to support the price of bitcoin at the cost price, as the slide below $100k from the recent peak has demonstrated. This suggests that the miners (and MicroStrategy) will need to borrow again and buy more bitcoin as the overall mining costs rise, hoping that the price of bitcoin at the time of bond maturity is enough to repay the principal owed.

Some miners are looking to diversify into supporting AI and to cut mining costs by producing their own electricity from smaller, remote landfill sites (though surely the power generated should still be accounted for as a cost at market value?). But both of these moves highlight miners' - and bitcoin's - vulnerability to competition for resources from businesses pursuing more profitable ventures, or actual energy producers. Note that crypto mining is responsible for up to 2.3% of US annual electricity consumption

All of which suggests that it is not sustainable to endlessly borrow to buy your own product without being able to sell it.



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