Search results for: “Waggener”

  • Intelligence per watt

    My thinking on the concept of intelligence per watt started as bullets in my notebook. It was more of a timeline than anything else at first and provided a framework of sorts from which I could explore the concept of efficiency in terms of intelligence per watt. 

    TL;DR (too long, didn’t read)

    Our path to the current state of ‘artificial intelligence’ (AI) has been shaped by the interplay and developments of telecommunications, wireless communications, materials science, manufacturing processes, mathematics, information theory and software engineering. 

    Progress in one area spurred advances in others, creating a feedback loop that propelled innovation.  

    Over time, new use cases have become more personal and portable – necessitating a focus on intelligence per watt as a key parameter. Energy consumption directly affects industrial design and end-user benefits. Small low-power integrated circuits (ICs) facilitated fuzzy logic in portable consumer electronics like cameras and portable CD players. Low power ICs and power management techniques also helped feature phones evolve into smartphones.  

    A second-order effect of optimising for intelligence per watt is reducing power consumption across multiple applications. This spurs yet more new use cases in a virtuous innovation circle. This continues until the laws of physics impose limits. 

    Energy storage density and consumption are fundamental constraints, driving the need for a focus on intelligence per watt.  

    As intelligence per watt improves, there will be a point at which the question isn’t just what AI can do, but what should be done with AI? And where should it be processed? Trust becomes less about emotional reassurance and more about operational discipline. Just because it can handle a task doesn’t mean it should – particularly in cases where data sensitivity, latency, or transparency to humans is non-negotiable. A highly capable, off-device AI might be a fine at drafting everyday emails, but a questionable choice for handling your online banking. 

    Good ‘operational security’ outweighs trust. The design of AI systems must therefore account not just for energy efficiency, but user utility and deployment context. The cost of misplaced trust is asymmetric and potentially irreversible.

    Ironically the force multiplier in intelligence per watt is people and their use of ‘artificial intelligence’ as a tool or ‘co-pilot’. It promises to be an extension of the earlier memetic concept of a ‘bicycle for the mind’ that helped inspire early developments in the personal computer industry. The upside of an intelligence per watt focus is more personal, trusted services designed for everyday use. 

    Integration

    In 1926 or 27, Loewe (now better known for their high-end televisions) created the 3NF[i].

    While not a computer, but instead to integrate several radio parts in one glass envelope vacuum valve. This had three triodes (early electronic amplifiers), two capacitors and four resistors. Inside the valve the extra resistor and capacitor components went inside their own glass tubes. Normally each triode would be inside its own vacuum valve. At the time, German radio tax laws were based on the number of valve sockets in a device, making this integration financially advantageous. 

    Post-war scientific boom

    Between 1949 and 1957 engineers and scientists from the UK, Germany, Japan and the US proposed what we’d think of as the integrated circuit (IC). These ideas were made possible when breakthroughs in manufacturing happened. Shockley Semiconductor built on work by Bell Labs and Sprague Electric Company to connect different types of components on the one piece of silicon to create the IC. 

    Credit is often given to Jack Kilby of Texas Instruments as the inventor of the integrated circuit. But that depends how you define IC, with what is now called a monolithic IC being considered a ‘true’ one. Kilby’s version wasn’t a true monolithic IC. As with most inventions it is usually the child of several interconnected ideas that coalesce over a given part in time. In the case of ICs, it was happening in the midst of materials and technology developments including data storage and computational solutions such as the idea of virtual memory through to the first solar cells. 

    Kirby’s ICs went into an Air Force computer[ii] and an onboard guidance system for the Minuteman missile. He went on to help invent the first handheld calculator and thermal printer, both of which took advantage of progress in IC design to change our modern way of life[iii]

    TTL (transistor-to-transistor logic) circuitry was invented at TRW in 1961, they licensed it out for use in data processing and communications – propelling the development of modern computing. TTL circuits powered mainframes. Mainframes were housed in specialised temperature and humidity-controlled rooms and owned by large corporates and governments. Modern banking and payments systems rely on the mainframe as a concept. 

    AI’s early steps 

    Science Museum highlights

    What we now thing of as AI had been considered theoretically for as long as computers could be programmed. As semiconductors developed, a parallel track opened up to move AI beyond being a theoretical possibility. A pivotal moment was a workshop was held in 1956 at Dartmouth College. The workshop focused on a hypothesis ‘every aspect of learning or any other feature of intelligence can be so precisely described that a machine can be made to simulate it’. Later on, that year a meeting at MIT (Massachusetts Institute of Technology) brought together psychologists and linguists to discuss the possibility of simulating cognitive processes using a computer. This is the origin of what we’d now call cognitive science. 

    Out of the cognitive approach came some early successes in the move towards artificial intelligence[iv]. A number of approaches were taken based on what is now called symbolic or classical AI:

    • Reasoning as search – essentially step-wise trial and error approach to problem solving that was compared to wandering through a maze and back-tracking if a dead end was found. 
    • Natural language – where related phrases existed within a structured network. 
    • Micro-worlds – solving for artificially simple situations, similar to economic models relying on the concept of the rational consumer. 
    • Single layer neural networks – to do rudimentary image recognition. 

     By the time the early 1970s came around AI researchers ran into a number of problems, some of which still plague the field to this day:

    • Symbolic AI wasn’t fit for purpose solving many real-world tasks like crossing a crowded room. 
    • Trying to capture imprecise concepts with precise language.
    • Commonsense knowledge was vast and difficult to encode. 
    • Intractability – many problems require an exponential amount of computing time. 
    • Limited computing power available – there was insufficient intelligence per watt available for all but the simplest problems. 

    By 1966, US and UK funding bodies were frustrated with the lack of progress on the research undertaken. The axe fell first on a project to use computers on language translation. Around the time of the OPEC oil crisis, funding to major centres researching AI was reduced by both the US and UK governments respectively. Despite the reduction of funding to the major centres, work continued elsewhere. 

    Mini-computers and pocket calculators

    ICs allowed for mini-computers due to the increase in computing power per watt. As important as the relative computing power, ICs made mini-computers more robust, easier to manufacture and maintain. DEC (Digital Equipment Corporation) launched the first minicomputer, the PDP-8 in 1964. The cost of mini-computers allowed them to run manufacturing processes, control telephone network switching and control labouratory equipment. Mini-computers expanded computer access in academia facilitating more work in artificial life and what we’d think of as early artificial intelligence. This shift laid the groundwork for intelligence per watt as a guiding principle.

    A second development helped drive mass production of ICs – the pocket calculator, originally invented at Texas Instruments.  It demonstrated how ICs could dramatically improve efficiency in compact, low-power devices.

    LISP machines and PCs

    AI researchers required more computational power than mini-computers could provide, leading to the development of LISP machines—specialised workstations designed for AI applications. Despite improvements in intelligence per watt enabled by Moore’s Law, their specialised nature meant that they were expensive. AI researchers continued with these machines until personal computers (PCs) progressed to a point that they could run LISP quicker than LISP machines themselves. The continuous improvements in data storage, memory and processing that enabled LISP machines, continued on and surpassed them as the cost of computing dropped due to mass production. 

    The rise of LISP machines and their decline was not only due to Moore’s Law in effect, but also that of Makimoto’s Wave. While Gordon Moore outlined an observation that the number of transistors on a given area of silicon doubled every two years or so. Tsugio Makimoto originally observed 10-year pivots from standardised semiconductor processors to customised processors[v]. The rise of personal computing drove a pivot towards standardised architectures. 

    PCs and workstations extended computing beyond computer rooms and labouratories to offices and production lines. During the late 1970s and 1980s standardised processor designs like the Zilog Z80, MOS Technology 6502 and the Motorola 68000 series drove home and business computing alongside Intel’s X86 processors. 

    Personal computing started in businesses when office workers brought a computer to use early computer programmes like the VisiCalc spreadsheet application. This allowed them to take a leap forward in not only tabulating data, but also seeing how changes to the business might affect financial performance. 

    Businesses then started to invest more in PCs for a wide range of uses. PCs could emulate the computer terminal of a mainframe or minicomputer, but also run applications of their own. 

    Typewriters were being placed by word processors that allowed the operator to edit a document in real time without resorting to using correction fluid

    A Bicycle for the Mind

    Steve Jobs at Apple was as famous for being a storyteller as he was for being a technologist in the broadest sense. Internally with the Mac team he shared stories and memetic concepts to get his ideas across in everything from briefing product teams to press interviews. As a concept, a 1990 filmed interview with Steve Jobs articulates the context of this saying particularly well. 

    In reality, Jobs had been telling the story for a long time through the development of the Apple II and right from the beginning of the Mac. There is a version of the talk that was recorded some time in 1980 when the personal computer was still a very new idea – the video was provided to the Computer History Museum by Regis McKenna[vi].

    The ‘bicycle for the mind’ concept was repeated in early Apple advertisements for the time[vii] and even informed the Macintosh project codename[viii]

    Jobs articulated a few key concepts. 

    • Buying a computer creates, rather than reduces problems. You needed software to start solving problems and making computing accessible. Back in 1980, you programmed a computer if you bought one. Which was the reason why early personal computer owners in the UK went on to birth a thriving games software industry including the likes of Codemasters[ix]. Done well, there should be no seem in the experience between hardware and software. 
    • The idea of a personal, individual computing device (rather than a shared resource).  My own computer builds on my years of how I have grown to adapt and use my Macs, from my first sit-up and beg Macintosh, to the MacBook Pro that I am writing this post on. This is even more true most people and their use of the smartphone. I am of an age, where my iPhone is still an appendage and emissary of my Mac. My Mac is still my primary creative tool. A personal computer is more powerful than a shared computer in terms of the real difference made. 
    • At the time Jobs originally did the speech, PCs were underpowered for anything but data processing (through spreadsheets and basic word processor applications). But that didn’t stop his idea for something greater. 

    Jobs idea of the computer as an adjunct to the human intellect and imagination still holds true, but it doesn’t neatly fit into the intelligence per watt paradigm. It is harder to measure the effort developing prompts, or that expended evaluating, refining and filtering generative AI results. Of course, Steve Jobs Apple owed a lot to the vision shown in Doug Engelbart’s ‘Mother of All Demos’[x].

    Networks

    Work took a leap forward with office networked computers pioneered by Macintosh office by Apple[xi]. This was soon overtaken by competitors. This facilitated work flow within an office and its impact can still be seen in offices today, even as components from print management to file storage have moved to cloud-based services. 

    At the same time, what we might think of as mobile was starting to gain momentum. Bell Labs and Motorola came up with much of the technology to create cellular communications. Martin Cooper of Motorola made the first phone call on a cellular phone to a rival researcher at Bell Labs. But Motorola didn’t sell the phone commercially until 1983, as a US-only product called the DynaTAC 8000x[xii].  This was four years after Japanese telecoms company NTT launched their first cellular network for car phones. Commercial cellular networks were running in Scandinavia by 1981[xiii]

    In the same way that the networked office radically changed white collar work, the cellular network did a similar thing for self-employed plumbers, electricians and photocopy repair men to travelling sales people. If they were technologically advanced, they may have had an answer machine, but it would likely have to be checked manually by playing back the tape. 

    Often it was a receptionist in their office if they had one. Or more likely, someone back home who took messages. The cell phone freed homemakers in a lot of self-employed households to go out into the workplace and helped raise household incomes. 

    Fuzzy logic 

    The first mainstream AI applications emerged from fuzzy logic, introduced by Lofti A. Zadeh in 1965 mathematical paper. Initial uses were for industrial controls in cement kilns and steel production[xiv]. The first prominent product to rely on fuzzy logic was the Zojirushi Micom Electric Rice Cooker (1983), which adjusted cooking time dynamically to ensure perfect rice. 

    Rice Cooker with Fuzzy Logic 3,000 yen avail end june

    Fuzzy logic reacted to changing conditions in a similar way to people. Through the 1980s and well into the 1990s, the power of fuzzy logic was under appreciated outside of Japanese product development teams. In a quote a spokesperson for the American Electronics Association’s Tokyo office said to the Washington Post[xv].

    “Some of the fuzzy concepts may be valid in the U.S.,”

    “The idea of better energy efficiency, or more precise heating and cooling, can be successful in the American market,”

    “But I don’t think most Americans want a vacuum cleaner that talks to you and says, ‘Hey, I sense that my dust bag will be full before we finish this room.’ “

    The end of the 1990s, fuzzy logic was embedded in various consumer devices: 

    • Air-conditioner units – understands the room, the temperature difference inside-and-out, humidity. It then switches on-and-off to balance cooling and energy efficiency.
    • CD players – enhanced error correction on playback dealing with imperfections on the disc surface.
    • Dishwashers – understood how many dishes were loaded, their type of dirt and then adjusts the wash programme.
    • Toasters – recognised different bread types, the preferable degree of toasting and performs accordingly.
    • TV sets – adjust the screen brightness to the ambient light of the room and the sound volume to how far away the viewer is sitting from the TV set. 
    • Vacuum cleaners – vacuum power that is adjusted as it moves from carpeted to hard floors. 
    • Video cameras – compensate for the movement of the camera to reduce blurred images. 

    Fuzzy logic sold on the benefits and concealed the technology from western consumers. Fuzzy logic embedded intelligence in the devices. Because it worked on relatively simple dedicated purposes it could rely on small lower power specialist chips[xvi] offering a reasonable amount of intelligence per watt, some three decades before generative AI. By the late 1990s, kitchen appliances like rice cookers and microwave ovens reached ‘peak intelligence’ for what they needed to do, based on the power of fuzzy logic[xvii].

    Fuzzy logic also helped in business automation. It helped to automatically read hand-written numbers on cheques in banking systems and the postcodes on letters and parcels for the Royal Mail. 

    Decision support systems & AI in business

    Decision support systems or Business Information Systems were being used in large corporates by the early 1990s. The techniques used were varied but some used rules-based systems. These were used in at least some capacity to reduce manual office work tasks. For instance, credit card approvals were processed based on rules that included various factors including credit scores. Only some credit card providers had an analyst manually review the decision made by system.  However, setting up each use case took a lot of effort involving highly-paid consultants and expensive software tools. Even then, vendors of business information systems such as Autonomy struggled with a high rate of projects that failed to deliver anything like the benefits promised. 

    Three decades on, IBM had a similar problem with its Watson offerings, with particularly high-profile failure in mission-critical healthcare applications[xviii]. Secondly, a lot of tasks were ad-hoc in nature, or might require transposing across disparate separate systems. 

    The rise of the web

    The web changed everything. The underlying technology allowed for dynamic data. 

    Software agents

    Examples of intelligence within the network included early software agents. A good example of this was PapriCom. PapriCom had a client on the user’s computer. The software client monitored price changes for products that the customer was interested in buying. The app then notified the user when the monitored price reached a price determined by the customer. The company became known as DealTime in the US and UK, or Evenbetter.com in Germany[xix].  

    The PapriCom client app was part of a wider set of technologies known as ‘push technology’ which brought content that the netizen would want directly to their computer. In a similar way to mobile app notifications now. 

    Web search

    The wealth of information quickly outstripped netizen’s ability to explore the content. Search engines became essential for navigating the new online world. Progress was made in clustering vast amounts of cheap Linux powered computers together and sharing the workload to power web search amongst them.  As search started to trying and make sense of an exponentially growing web, machine learning became part of the developer tool box. 

    Researchers at Carnegie-Mellon looked at using games to help teach machine learning algorithms based on human responses that provided rich metadata about the given item[xx]. This became known as the ESP game. In the early 2000s, Yahoo! turned to web 2.0 start-ups that used user-generated labels called tags[xxi] to help organise their data. Yahoo! bought Flickr[xxii] and deli.ico.us[xxiii]

    All the major search engines looked at how deep learning could help improve search results relevance. 

    Given that the business model for web search was an advertising-based model, reducing the cost per search, while maintaining search quality was key to Google’s success. Early on Google focused on energy consumption, with its (search) data centres becoming carbon neutral in 2007[xxiv]. This was achieved by a whole-system effort: carefully managing power management in the silicon, storage, networking equipment and air conditioning to maximise for intelligence per watt. All of which were made using optimised versions of open-source software and cheap general purpose PC components ganged together in racks and operating together in clusters. 

    General purpose ICs for personal computers and consumer electronics allowed easy access relatively low power computing. Much of this was down to process improvements that were being made at the time. You needed the volume of chips to drive innovation in mass-production at a chip foundry. While application-specific chips had their uses, commodity mass-volume products for uses for everything from embedded applications to early mobile / portable devices and computers drove progress in improving intelligence-per-watt.

    Makimoto’s tsunami back to specialised ICs

    When I talked about the decline of LISP machines, I mentioned the move towards standardised IC design predicted by Tsugio Makimoto. This led to a surge in IC production, alongside other components including flash and RAM memory.  From the mid-1990s to about 2010, Makimoto’s predicted phase was stuck in ‘standardisation’. It just worked. But several factors drove the swing back to specialised ICs. 

    • Lithography processes got harder: standardisation got its performance and intelligence per watt bump because there had been a steady step change in improvements in foundry lithography processes that allowed components to be made at ever-smaller dimensions. The dimensions are a function wavelength of light used. The semiconductor hit an impasse when it needed to move to EUV (extreme ultra violet) light sources. From the early 1990s on US government research projects championed development of key technologies that allow EUV photolithography[xxv]. During this time Japanese equipment vendors Nikon and Canon gave up on EUV. Sole US vendor SVG (Silicon Valley Group) was acquired by ASML, giving the Dutch company a global monopoly on cutting edge lithography equipment[xxvi]. ASML became the US Department of Energy research partner on EUV photo-lithography development[xxvii]. ASML spent over two decades trying to get EUV to work. Once they had it in client foundries further time was needed to get commercial levels of production up and running. All of which meant that production processes to improve IC intelligence per watt slowed down and IC manufacturers had to start about systems in a more holistic manner. As foundry development became harder, there was a rise in fabless chip businesses. Alongside the fabless firms, there were fewer foundries: Global Foundries, Samsung and TSMC (Taiwan Semiconductor Manufacturing Company Limited). TSMC is the worlds largest ‘pure-play’ foundry making ICs for companies including AMD, Apple, Nvidia and Qualcomm. 
    • Progress in EDA (electronic design automation). Production process improvements in IC manufacture allowed for an explosion in device complexity as the number of components on a given size of IC doubled every 18 months or so. In the mid-to-late 1970s this led to technologists thinking about the idea of very large-scale integration (VLSI) within IC designs[xxviii]. Through the 1980s, commercial EDA software businesses were formed. The EDA market grew because it facilitated the continual scaling of semiconductor technology[xxix]. Secondly, it facilitated new business models. Businesses like ARM Semiconductor and LSI Logic allowed their customers to build their own processors based on ‘blocs’ of proprietary designs like ARM’s cores. That allowed companies like Apple to focus on optimisation in their customer silicon and integration with software to help improve the intelligence per watt[xxx]
    • Increased focus on portable devices. A combination of digital networks, wireless connectivity, the web as a communications platform with universal standards, flat screen displays and improving battery technology led the way in moving towards more portable technologies. From personal digital assistants, MP3 players and smartphone, to laptop and tablet computers – disconnected mobile computing was the clear direction of travel. Cell phones offered days of battery life; the Palm Pilot PDA had a battery life allowing for couple of days of continuous use[xxxi]. In reality it would do a month or so of work. Laptops at the time could do half a day’s work when disconnected from a power supply. Manufacturers like Dell and HP provided spare batteries for travellers. Given changing behaviours Apple wanted laptops that were easy to carry and could last most of a day without a charge. This was partly driven by a move to a cleaner product design that wanted to move away from swapping batteries. In 2005, Apple moved from PowerPC to Intel processors. During the announcement at the company’s worldwide developer conference (WWDC), Steve Jobs talked about the focus on computing power per watt moving forwards[xxxii]

    Apple’s first in-house designed IC, the A4 processor was launched in 2010 and marked the pivot of Makimoto’s wave back to specialised processor design[xxxiii].  This marked a point of inflection in the growth of smartphones and specialised computing ICs[xxxiv]

    New devices also meant new use cases that melded data on the web, on device, and in the real world. I started to see this in action working at Yahoo! with location data integrated on to photos and social data like Yahoo! Research’s ZoneTag and Flickr. I had been the Yahoo! Europe marketing contact on adding Flickr support to Nokia N-series ‘multimedia computers’ (what we’d now call smartphones), starting with the Nokia N73[xxxv].  A year later the Nokia N95 was the first smartphone released with a built-in GPS receiver. William Gibson’s speculative fiction story Spook Country came out in 2007 and integrated locative art as a concept in the story[xxxvi]

    Real-world QRcodes helped connect online services with the real world, such as mobile payments or reading content online like a restaurant menu or a property listing[xxxvii].

    I labelled the web-world integration as a ‘web-of-no-web’[xxxviii] when I presented on it back in 2008 as part of an interactive media module, I taught to an executive MBA class at Universitat Ramon Llull in Barcelona[xxxix]. In China, wireless payment ideas would come to be labelled O2O (offline to online) and Kevin Kelly articulated a future vision for this fusion which he called Mirrorworld[xl]

    Deep learning boom

    Even as there was a post-LISP machine dip in funding of AI research, work on deep (multi-layered) neural networks continued through the 1980s. Other areas were explored in academia during the 1990s and early 2000s due to the large amount of computing power needed. Internet companies like Google gained experience in large clustered computing, AND, had a real need to explore deep learning. Use cases include image recognition to improve search and dynamically altered journeys to improve mapping and local search offerings. Deep learning is probabilistic in nature, which dovetailed nicely with prior work Microsoft Research had been doing since the 1980s on Bayesian approaches to problem-solving[xli].  

    A key factor in deep learning’s adoption was having access to powerful enough GPUs to handle the neural network compute[xlii]. This has allowed various vendors to build Large Language Models (LLMs). The perceived strategic importance of artificial intelligence has meant that considerations on intelligence per watt has become a tertiary consideration at best. Microsoft has shown interest in growing data centres with less thought has been given on the electrical infrastructure required[xliii].  

    Google’s conference paper on attention mechanisms[xliv] highlighted the development of the transformer model. As an architecture it got around problems in previous approaches, but is computationally intensive. Even before the paper was published, the Google transformer model had created fictional Wikipedia entries[xlv]. A year later OpenAI built on Google’s work with the generative pre-trained transformer model better known as GPT[xlvi]

    Since 2018 we’ve seen successive GPT-based models from Amazon, Anthropic, Google, Meta, Alibaba, Tencent, Manus and DeepSeek. All of these models were trained on vast amounts of information sources. One of the key limitations for building better models was access to training material, which is why Meta used pirated copies of e-books obtained using bit-torrent[xlvii]

    These models were so computationally intensive that the large-scale cloud service providers (CSPs) offering these generative AI services were looking at nuclear power access for their data centres[xlviii]

    The current direction of development in generative AI services is raw computing power, rather than having a more energy efficient focus of intelligence per watt. 

    Technology consultancy / analyst Omdia estimated how many GPUs were bought by hyperscalers in 2024[xlix].

    CompanyNumber of Nvidia GPUs boughtNumber of AMD GPUs boughtNumber of self-designed custom processing chips bought
    Amazon196,0001,300,000
    Alphabet (Google)169,0001,500,000
    ByteDance230,000
    Meta224,000173,0001,500,000
    Microsoft485,00096,000200,000
    Tencent230,000

    These numbers provide an indication of the massive deployment on GPT-specific computing power. Despite the massive amount of computing power available, services still weren’t able to cope[l] mirroring some of the service problems experienced by early web users[li] and the Twitter ‘whale FAIL’[lii] phenomenon of the mid-2000s. The race to bigger, more powerful models is likely to continue for the foreseeable future[liii]

    There is a second class of players typified by Chinese companies DeepSeek[liv] and Manus[lv] that look to optimise the use of older GPT models to squeeze the most utility out of them in a more efficient manner. Both of these services still rely on large cloud computing facilities to answer queries and perform tasks. 

    Agentic AI

    Thinking on software agents went back to work being done in computer science in the mid-1970s[lvi]. Apple articulated a view[lvii]of a future system dubbed the ‘Knowledge Navigator’[lviii] in 1987 which hinted at autonomous software agents. What we’d now think of as agentic AI was discussed as a concept at least as far back as 1995[lix], this was mirrored in research labs around the world and was captured in a 1997 survey of research on intelligent software agents was published[lx]. These agents went beyond the vision that PapriCom implemented. 

    A classic example of this was Wildfire Communications, Inc. who created a voice enabled virtual personal assistant in 1994[lxi].  Wildfire as a service was eventually shut down in 2005 due to an apparent decline in subscribers using the service[lxii]. In terms of capability, Wildfire could do tasks that are currently beyond Apple’s Siri. Wildfire did have limitations due to it being an off-device service that used a phone call rather than an internet connection, which limited its use to Orange mobile service subscribers using early digital cellular mobile networks. 

    Almost a quarter century later we’re now seeing devices that are looking to go beyond Wildfire with varying degrees of success. For instance, the Rabbit R1 could order an Uber ride or groceries from DoorDash[lxiii]. Google Duplex tries to call restaurants on your behalf to make reservations[lxiv] and Amazon claims that it can shop across other websites on your behalf[lxv]. At the more extreme end is Boeing’s MQ-28[lxvi] and the Loyal Wingman programme[lxvii]. The MQ-28 is an autonomous drone that would accompany US combat aircraft into battle, once it’s been directed to follow a course of action by its human colleague in another plane. 

    The MQ-28 will likely operate in an electronic environment that could be jammed. Even if it wasn’t jammed the length of time taken to beam AI instructions to the aircraft would negatively impact aircraft performance. So, it is likely to have a large amount of on-board computing power. As with any aircraft, the size of computing resources and their power is a trade-off with the amount of fuel or payload it will carry. So, efficiency in terms of intelligence per watt becomes important to develop the smallest, lightest autonomous pilot. 

    As well as a more hostile world, we also exist in a more vulnerable time in terms of cyber security and privacy. It makes sense to have critical, more private AI tasks run on a local machine. At the moment models like DeepSeek can run natively on a top-of-the-range Mac workstation with enough memory[lxviii].  

    This is still a long way from the vision of completely local execution of ‘agentic AI’ on a mobile device because the intelligence per watt hasn’t scaled down to that level to useful given the vast amount of possible uses that would be asked of the Agentic AI model. 

    Maximising intelligence per watt

    There are three broad approaches to maximise the intelligence per watt of an AI model. 

    • Take advantage of the technium. The technium is an idea popularised by author Kevin Kelly[lxix]. Kelly argues that technology moves forward inexorably, each development building on the last. Current LLMs such as ChatGPT and Google Gemini take advantage of the ongoing technium in hardware development including high-speed computer memory and high-performance graphics processing units (GPU).  They have been building large data centres to run their models in. They build on past developments in distributed computing going all the way back to the 1962[lxx]
    • Optimise models to squeeze the most performance out of them. The approach taken by some of the Chinese models has been to optimise the technology just behind the leading-edge work done by the likes of Google, OpenAI and Anthropic. The optimisation may use both LLMs[lxxi] and quantum computing[lxxii] – I don’t know about the veracity of either claim. 
    • Specialised models. Developing models by use case can reduce the size of the model and improve the applied intelligence per watt. Classic examples of this would be fuzzy logic used for the past four decades in consumer electronics to Mistral AI[lxxiii] and Anduril’s Copperhead underwater drone family[lxxiv].  

    Even if an AI model can do something, should the model be asked to do so?

    AI use case appropriateness

    We have a clear direction of travel over the decades to more powerful, portable computing devices –which could function as an extension of their user once intelligence per watt allows it to be run locally. 

    Having an AI run on a cloud service makes sense where you are on a robust internet connection, such as using the wi-fi network at home. This makes sense for general everyday task with no information risk, for instance helping you complete a newspaper crossword if there is an answer you are stuck on and the intellectual struggle has gone nowhere. 

    A private cloud AI service would make sense when working, accessing or processing data held on the service. Examples of this would be Google’s Vertex AI offering[lxxv]

    On-device AI models make sense in working with one’s personal private details such as family photographs, health information or accessing apps within your device. Apps like Strava which share data, have been shown to have privacy[lxxvi] and security[lxxvii] implications. ***I am using Strava as an example because it is popular and widely-known, not because it is a bad app per se.***

    While businesses have the capability and resources to have a multi-layered security infrastructure to protect their data most[lxxviii]of[lxxix] the[lxxx] time[lxxxi], individuals don’t have the same security. As I write this there are privacy concerns[lxxxii] expressed about Waymo’s autonomous taxis. However, their mobile device is rarely out of physical reach and for many their laptop or tablet is similarly close. All of these devices tend to be used in concert with each other. So, for consumers having an on-device AI model makes the most sense. All of which results in a problem, how do technologists squeeze down their most complex models inside a laptop, tablet or smartphone? 


    [i] Radiomuseum – Loewe (Opta), Germany. Multi-system internal coupling 3NF

    [ii] (1961) Solid Circuit(tm) Semiconductor Network Computer, 6.3 Cubic inches in Size, is Demonstrated in Operation by U.S. Air Force and Texas Instruments (United States) Texas Instruments news release

    [iii] (2000) The Chip that Jack Built Changed the World (United States) Texas Instruments website

    [iv] Moravec H (1988), Mind Children (United States) Harvard University Press

    [v] (2010) Makimoto’s Wave | EDN (United States) AspenCore Inc.

    [vi] Jobs, S. (1980) Presentation on Apple Computer history and vision (United States) Computer History Museum via Regis McKenna

    [vii] Sinofsky, S. (2019) ‘Bicycle for the Mind’ (United States) Learning By Shipping

    [viii] Hertzfeld, A. (1981) Bicycle (United States) Folklore.org

    [ix] Jones, D. (2016) Codemasters (United Kingdom) Retro Gamer – Future Publishing

    [x] Engelbert, D. (1968) A Research Center For Augmenting Human Intellect (United States) Stanford Research Institute (SRI)

    [xi] Hormby, T. (2006) Apple’s Worst business Decisions (United States) OSnews

    [xii] Honam, M. (2009) From Brick to Slick: A History of Mobile Phones (United States) Wired

    [xiii] Ericsson History: The Nordics take charge (Sweden) LM Ericsson.

    [xiv] Singh, H., Gupta, M.M., Meitzler, T., Hou, Z., Garg, K., Solo, A.M.G & Zadeh, L.A. (2013) Real-Life Applications of Fuzzy Logic – Advances in Fuzzy Systems (Egypt) Hindawi Publishing Corporation

    [xv] Reid, T.R. (1990) The Future of Electronics Looks ‘Fuzzy’. (United States) Washington Post

    [xvi] Kushairi, A. (1993). “Omron showcases latest in fuzzy logic”. (Malaysia) New Straits Times

    [xvii] Watson, A. (2021) The Antique Microwave Oven that’s Better than Yours (United States) Technology Connections

    [xviii] Durbhakula, S. (2022) IBM dumping Watson Health is an opportunity to reevaluate artificial intelligence (United States) MedCity News

    [xix] (1998) PapriCom Technologies Wins CommerceNet Award (Israel) Globes

    [xx] Von Ahn, L., Dabbish, L. (2004) Labeling Images with a Computer Game (United States) School of Computing, Carnegie-Mellon University

    [xxi] Butterfield, D., Fake, C., Henderson-Begg, C., Mourachov, S., (2006) Interestingness ranking of media objects (United States) US Patent Office

    [xxii] Delaney, K.J., (2005) Yahoo acquires Flickr creator (United States) Wall Street Journal

    [xxiii] Hood, S., (2008) Delicious is 5 (United States) Delicious blog

    [xxiv] (2017) 10 years of Carbon Neutrality (United States) Google

    [xxv] Bakshi, V. (2018) EUV Lithography (United States) SPIE Press

    [xxvi] Wade, W. (2000) ASML acquires SVG, becomes largest litho supplier (United States) EE Times

    [xxvii] Lammers, D. (1999) U.S. gives ok to ASML on EUV effort (United States) EE Times

    [xxviii] Meade, C., Conway, L. (1979) Introduction to VLSI Systems (United States) Addison-Wesley

    [xxix] Lavagno, L., Martin, G., Scheffer, L., et al (2006) Electronic Design Automation for Integrated Circuits Handbook (United States) Taylor & Francis

    [xxx] (2010) Apple Launches iPad (United States) Apple Inc. website

    [xxxi] (1997) PalmPilot Professional (United Kingdom) Centre for Computing History

    [xxxii] Jobs, S. (2005) Apple WWDC 2005 keynote speech (United States) Apple Inc.

    [xxxiii] (2014) Makimoto’s Wave Revisited for Multicore SoC Design (United States) EE Times

    [xxxiv] Makimoto, T. (2014) Implications of Makimoto’s Wave (United States) IEEE Computer Society

    [xxxv] (2006) Nokia and Yahoo! add Flickr support in Nokia Nseries Multimedia Computers (Germany) Cision PR Newswire

    [xxxvi] Gibson, W. (2007) Spook Country (United States) Putnam Publishing Group

    [xxxvii] The O2O Business In China (China) GAB China

    [xxxviii] Carroll, G. (2008) Web Centric Business Model (United States) Waggener Edstrom Worldwide for LaSalle School of Business, Universitat Ramon Llull, Barcelona

    [xxxix] Carroll, G. (2008) Web of no web (United Kingdom) renaissance chambara

    [xl] Kelly, K. (2018) AR Will Spark the Next Big Tech Platform – Call It Mirrorworld (United States) Wired

    [xli] Heckerman, D. (1988) An Empirical Comparison of Three Inference Methods (United States) Microsoft Research

    [xlii] Sze, V., Chen, Y.H., Yang, T.J., Emer, J. (2017) Efficient Processing of Deep Neural Networks: A Tutorial and Survey (United States) Cornell University

    [xliii] Webber, M. E. (2024) Energy Blog: Is AI Too Power-Hungry for Our Own Good? (United States) American Society of Mechanical Engineers

    [xliv] Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N., Kaiser, L., Polosukhin, I. (2017) Attention Is All You Need (United States) 31st Conference on Neural Information Processing Systems (NIPS 2017)

    [xlv] Marche, S. (2024) Was Linguistic A.I. Created By Accident? (United States) The New Yorker.

    [xlvi] Radford, A. (2018) Improving language understanding with unsupervised learning (United States) OpenAI

    [xlvii] Heath, N. (2025) Authors outraged to discover Meta used their pirated work to train its AI systems (Australia) ABC (Australian Broadcast Corporation)

    [xlviii] Morey, M., O’Sullivan, J. (2024) In-brief analysis: Data center owners turn to nuclear as potential energy source (United States) Today in Energy published by U.S. Energy Information Administration

    [xlix] Bradshaw, T., Morris, S. (2024) Microsoft acquires twice as many Nvidia AI chips as tech rivals (United Kingdom) Financial Times

    [l] Smith, C. (2025) ChatGPT’s viral image-generation upgrade is ruining the chatbot for everyone (United States) BGR (Boy Genius Report)

    [li] Wayner, P. (1997) Human Error Cripples the Internet (United States) The New York Times

    [lii] Honan, M. (2013) Killing the Fail Whale with Twitter’s Christopher Fry (United States) Wired

    [liii] Mazarr, M. (2025) The Coming Strategic Revolution of Artificial Intelligence (United States) MIT (Massachusetts Institute of Technology)

    [liv] Knight, W. (2025) DeepSeek’s New AI Model Sparks Shock, Awe, and Questions from US Competitors (United States) Wired

    [lv] Sharwood, S. (2025) Manus mania is here: Chinese ‘general agent’ is this week’s ‘future of AI’ and OpenAI-killer (United Kingdom) The Register

    [lvi] Hewitt, C., Bishop, P., Steiger, R. (1973). A Universal Modular Actor Formalism for Artificial Intelligence. (United States) IJCAI (International Joint Conference on Artificial Intelligence).

    [lvii] Sculley, J. (1987) Keynote Address On The Knowledge Navigator at Educom (United States) Apple Computer Inc.

    [lviii] (1987) Apple’s Future Computer: The Knowledge Navigator (United States) Apple Computer Inc.

    [lix] Kelly, K. (1995) Out of Control: The New Biology of Machines (United States) Fourth Estate

    [lx] Nwana, H.S., Azarmi, N. (1997) Software Agents and Soft Computing: Towards Enhancing Machine Intelligence Concepts and Applications (Germany) Springer

    [lxi] Rifkin, G. (1994) Interface; A Phone That Plays Secretary for Travelers (United States) The New York Times

    [lxii] Richardson, T. (2005) Orange kills Wildfire – finally (United Kingdom) The Register

    [lxiii] Spoonauer, M. (2024) The Truth about the Rabbit R1 – your questions answered about the AI gadget (United States) Tom’s Guide

    [lxiv] Garun, N. (2019) One year later, restaurants are still confused by Google Duplex (United States) The Verge

    [lxv] Roth, E. (2025) Amazon can now buy products from other websites for you (United States) The Verge

    [lxvi] MQ-28 microsite (United States) Boeing Inc.

    [lxvii] Warwick, G. (2019) Boeing Unveils ‘Loyal Wingman’ UAV Developed In Australia (United Kingdom) Aviation Week Network – part of Informa Markets

    [lxviii] Udinmwen, E. (2025) Apple Mac Studio M3 Ultra workstation can run Deepseek R1 671B AI model entirely in memory using less than 200W, reviewer finds (United Kingdom) TechRadar

    [lxix] Kelly, K. (2010) What Technology Wants (United States) Viking Books

    [lxx] Andrews, G.R. (2000) Foundations of Multithreaded, Parallel, and Distributed Programming (United States) Addison-Wesley

    [lxxi] Criddle, C., Olcott, E. (2025) OpenAI says it has evidence China’s DeepSeek used its model to train competitor (United Kingdom) Financial Times

    [lxxii] Russell, J. (2025) China Researchers Report Using Quantum Computer to Fine-Tune Billion Parameter AI Model (United States) HPC Wire

    [lxxiii] Mistral AI home page (France) Mistral AI

    [lxxiv] (2025) High-Speed Autonomous Underwater Effects. Copperhead (United States) Anduril Industries

    [lxxv] Vertex AI with Gemini 1.5 Pro and Gemini 1.5 Flash (United States) Google Cloud website

    [lxxvi] Untersinger, M. (2024) Strava, the exercise app filled with security holes (France) Le Monde

    [lxxvii] Nilsson-Julien, E. (2025) French submarine crew accidentally leak sensitive information through Strava app (France) Le Monde

    [lxxviii] Arsene, Liviu (2018) Hack of US Navy Contractor Nets China 614 Gigabytes of Classified Information (Romania) Bitdefender

    [lxxix] Wendling, M. (2024) What to know about string of US hacks blamed on China (United Kingdom) BBC News

    [lxxx] Kidwell, D. (2020) Cyber espionage for the Chinese government (United States) U.S. Air Force Office of Special Investigations

    [lxxxi] Gorman, S., Cole, A., Dreazen, Y. (2009) Computer Spies Breach Fighter-Jet Project (United States) The Wall Street Journal

    [lxxxii] Bellan, R. (2025) Waymo may use interior camera data to train generative AI models, but riders will be able to opt out (United States) TechCrunch

  • Synthesis + more things

    Synthesis

    Synclavier Regen Synthesizer Introduction – Synthtopia – the old New England Digital Synclavier was a floor to ceiling rack full of equipment paired with a monitor mouse, computer keyboard and musical keyboard. Synclavier was an early digital synthesiser and then evolved to create the first digital audio workstation, featuring digital tapeless recording, digital effects, sequencing of instruments, sampling and synthesis. By 1980, the Synclavier 2 was launched. Then you started to increased adoption including Michael Jackson for this Thriller album and across the US film industry for sound effects work.

    Michael Hoenig 1987
    Producer Michael Hoenig circa 1987

    The sampling and synthesis of Synclavier helped define the sound of 1980s record production for a wide range of groups from the era including

    At the time there was concern that the digital synthesis and sampling of the Synclavier would put live music out of the business, so many concert halls in the US banned the use of the Synclavier.

    Mirage FM: how patten created the first LP made entirely from AI sounds | Dazed – Pattern’s album brings synthesis forward to the present day. A mix of crude pads and textures hint at how machine learning can change synthesis over time. At the moment, record labels are looking to restrict the use of machine learning, which they view as a similar threat to the MP3 format of the early 2000s and digital sampling from the early 1990s. Like earlier technologies, they will eventually make their peace with machine learning based synthesis and use the opportunity to further gouge artists and creators

    Beauty

    Coty Group Global Chief Brands Officer Stefano Curti on plans to triple its China business through a strategic shake-up 

    China

    An in-depth look at China’s consumer electronics market | Daxue Consulting

    Outsourcing of internal security operations

    Ethics

    The Sustainable Fashion Communication Playbook | UNEP – UN Environment Programme – interesting that this doesn’t look at the quality of clothing: making better longer lasting items

    Hong Kong

    Three years of National Security Law in Hong Kong: Farewell “special status”? | Mericsthe NSL has severely reduced the rule of law in Hong Kong by granting the government powers to circumvent the courts and thereby deny defendants a fair trial. The case of media entrepreneur Jimmy Lai illustrates how this presents a risk to businesses and their property rights. The Hong Kong government froze Lai’s majority of shares in his company Next Media, which led to its liquidation and the end of the pro-democracy newspaper Apple Daily. The case is highly political and does not reflect the situation of most businesses, but it does show the power the Hong Kong government can wield over business.  – German think tank on the NSL

    ‘Happy Hong Kong’: free coffee, discounts and 1-minute shopping spree up for grabs in HK$150 million retail promotion to get people smiling | South China Morning Post – but what doe these promotions do to brand? Byron Sharp’s work indicates that price promotions likely damage brand over time

    Japan

    Facing skills gap, Japan to train teenagers in battery tech – Quartz 

    RESTAURANT OF MISTAKEN ORDERS

    Luxury

    Rolex and Patek Philippe Prices Drop Amid High-Interest Rates and More – Robb Report

    Marketing

    Edelman Cutting Roughly 240 Employees Amid Reorganization | Provoke Media – Edelman is just the canary in the coal mine. Beyond (part of Next Fifteen) is closing down its London office, smaller agencies have been going to the wall and another of my former agency alma mater WE are laying off just under 5 per cent of their headcount. I don’t remember this happening during the 2008 financial crisis. There are likely to be several factors blamed:

    Rising interest rates combined with already lean cashflow has driven some agencies to the wall

    • Declining economic conditions has resulted in declining marketing budgets
    • Some agencies (Edelman being a case in point) bulked up on talent, expecting a fast exit from COVID driven decline
    • Brands are getting shaky on the commitment to brand purpose which will hit a lot of below the line agencies particularly hard
    • More marketing spend is being spent on innovation with an expectation of cost savings down the line (particularly in production and across B2B marketing)

    Brand Salience, Brand Availability and Other Metrics — Purdie Pascoe 

    Materials

    Rheinmetall Presents Mobile Smart Factory for Mobile Production of Spare Parts for Battle Damage Repair – Soldier Systems Daily 

    Online

    Russia’s digital scramble to control the ‘coup’ narrative – Coda Story

    Security

    “Russian spies are blowing up one by one:” Russian hockey player arrested on spy charges in Poland – War Is Boring 

    Russian Spies, War Ministers Reliant on Cybercrime in Pariah State | Dark Reading – lacking on the ground options to attack critical infrastructure due to decline in human spy network

    Software

    AI in chip design: Where does Cadence stand? | DigiTimes

    Telecoms

    China approved 6 GHz band for cellular services – PingWest

    Hackers attack Russian satellite telecom provider, claim affiliation with Wagner Group | CyberScoop

    Web of no web

    Google reportedly gives up on making AR glasses—for the third time | Ars Technica

    Wireless

    MikroE welcomes back IrDA with Click board | EETimes – IrDA was first introduced in 1994 for consumer equipment but has since been used in areas such as power systems where a light-based system is safer or RF is problematic. It’s slow with data rates up to 115kbit/s at 1 metre. The reality is usually much slower. I used to use IrDA for transferring business cards of a few KB each which would take 30 seconds or more

  • Assembly process video + more stuff

    Porsche 911 GT3 assembly process video

    I am a sucker for a manufacturing assembly process video. Over time I have shared videos showcasing Nokia’s largely automated smartphone manufacturing lines that they had before the Microsoft disaster and old time metalworking archive footage as assembly process videos. So I had to share this timelapse assembly process video for the Porsche 911 GT3. This Porsche 911 GT3 I am reliably informed is the car that petrolheads most want to own out of the 911 range due to it being available with a manual gearbox. It is almost as fast as the top of the range 911 Turbo S, has worse fuel economy and emissions.

    Around the 23 second mark you can see the start of the chassis assembly using a manufacturing cell of four robotic assembly arms. Then an assembled floor pan is placed into a jig for welding to begin. The jig fits upside down to allow welding on both sides of the car. What’s less clear if these are seam or spot welds. In the assembly process video we can see the modular nature of the manufacturing line that would allow it to be restructured relatively easy to match different production requirements. The classic give away is modular protective partition walling around the robots.

    A good deal of the movement that the robot arms are doing is checking and measuring the existing parts before additional assembly happens. At 50 seconds in the assembly process video, the car starts to look like a Porsche as the floorpan and front chassis are connected to the roof and rear quarter chassis. You can see only spot welds happening at this stage. It was interesting to see the doors go on before painting. Just before the first minute in the assembly process video we start to see the first human welders doing hard to get joints on the interior front bulkheads and where the roof pillars join the body. The door set up is resolved before the front wings are fitted to the car.

    The whole front end of the chassis isn’t shown being attached to the car and suddenly appears as the front wings are fitted to the car. The assembly line seems to move from station-to-station every four minutes or so. We don’t see the chassis being galvanised, but we do see the chassis being dipped in primer paint as part to the assembly process video. Automated spray booths are no common in car manufacturing. It was interesting to see how important inspectors running their hands over the paint work were to the process. I presume if there was a problem the car would be taken off the line and paint problems fixed manually. The front of the the chassis is not painted beyond primer by the robots in the assembly process video, yet suddenly seems to be painted when we get to 2:16 in the assembly process video.

    The engine, transmission drive train and suspension come on a jig and are mounted to the chassis in one operation. The assembly process video shows the wheels being put on manually. I suspect this is about industrial safety, not mixing up human and robot workstations. The doors are re-hung on the car during final assembly.

    Air Max Day

    Digital outdoor advertising that wraps itself around the corner of a building lends itself to fantastic 3D ad campaigns. The build of these boards seem to be in Asia. I know of ones in Malaysia, Japan, Korea and China. This advert for Nike Japan on Air Max day makes really good use of the format.

    A word of thanks

    Cathay Pacific has seen its brand battered by the Hong Kong government, so it did a nice bit of content showcasing the important work that its staff have been doing during the COVID-19 crisis in Hong Kong. I suspect that this is aimed at both internal as well as external audiences.

    Yuen Long

    To an external observer, one would believe that the triads only really exist in movies now rather than on the street in Hong Kong. Up until the 1970s criminality and corruption were a part of daily life. The Peter Godber scandal forced the British government to act, cleaning up the government and business and then launching anti-triad operations with the OCT department of what was then the Royal Hong Kong Police.

    By the 1990s and 1990s Hong Kong was less corrupt but criminals were connected with business life such as the Carrian Group financial scandal which saw a visiting Malaysian bank auditor killed and buried in a banana tree field and lawyer John Wimbush who apparently committed suicide by tying himself to the grate at the bottom of a full swimming pool.

    Criminals like Big Spender were robbing jewellery stores with AK assault rifles and you saw scenes like something out of the movie Heat playing out on Hong Kong streets. Kidnappings by the likes of Big Spender encouraged Hong Kong oligarchs to get closer to the Chinese government and invest in the pre-WTO China.

    In recent years Hong Kong criminals tended to only appear at times convenient to the government to intimidate and assault critics. This was escalated in 2019, when they came out in force in Yuen Long to beat commuters returning from college, work and democracy protests. This became known as the 721 incident.

    Its interesting to see Vice News covering this story three years later, I guess later is better than never.

    Rumination

    I am a bit late with this due to the Moviedrome taking so long to put together. Producer and analogue synth maker put together this 60 minute piece of music that reminded me a bit of Autechre and Phillip Glass.

    60 minutes of Ambient Drone at 60 BPM with all oscillators tuned to multiples of 60Hz. 

    This piece was recorded to celebrate the 60th anniversary of the National Autistic Society in the UK and World Autism Acceptance Week 2022. 

    Bandcamp page

    Find out more here.

    Heinz Australia

    Amazing animated video telling of the love for Heinz Baked Beans. Animation is ideal for FMCG brands like Heinz because if a different voiceover it can transcend cultures. This is something that we looked to do when I was involved with the plant based relaunch of Flora margarine prior to its sale by Unilever.

    Windows 95 launch

    I watched this and was reminded of my old employers Waggener Edstrom, whose claim to fame was orchestrating this launch, but this was way before my time with them. This was way before my time. At the time Jay Leno was a big time TV host rather than that car guy. The internet wasn’t really on Microsoft’s radar either, though you could get Internet Explorer 1 with a ‘Plus’ pack of more powerful multimedia features. This was peak Microsoft. What people tend to remember less was that Windows 95 was less stable than what had gone before until at least the first service pack launched a year later. We are starting to see echoes of this old Microsoft coming back with the bundling of Microsoft Teams with Office 365 to combat Slack and bundling of security products.

  • Pam Edstrom

    PR Week and The Holmes Report carried an obituary for Pam Edstrom who passed away last night. I worked at her agency for a few years and came across her a few times.

    Pam had an intensity and an energy to her. She was also a true believer; you could break her open like a stick of rock and there would be the Windows squares running through her. For many years Pam Edstrom was the media voice of Microsoft. She had a tremendous belief in the ability of IT to deliver tremendous things. If you’ve read this blog you’d realise that I’m not a true believer in the same way that Pam Edstrom was; we were on opposite sides of the Windows | Mac (and Unix) religious divide.

    Pam had an absolute focus on controlling the message and organisational process (optimised for alignment to Microsoft) and championed ‘gold standard’ delivery. Over time Microsoft came to represent more than half the agency billings.

    My Pam Edstrom story

    When I worked at the agency building digital capability, I also was assigned to keeping the company name in the usual industry debates. I found it handy to do as it kept my PR skills warm as I did the nascent digital work at the time. I managed to keep a constant drip feed of coverage in the industry media.

    At the last minute I was asked to arrange a profile of Pam. Clare O’Connor who worked at PR Week at the time agreed to write a profile – Pam Edstrom, the doyenne of tech PR.  Give it a read as it captures Pam quite well.

    The article was taking ages to come out as it was ‘evergreen’ appearing some six months after the interview had taken place. Clare asked Pam for the name of a journalist who she interview for colour about Pam Edstrom. 

    The article threw a bit of a curveball when a longtime journalist contact was asked about Pam Edstrom and referred to her daughter Jennifer’s book Barbarians led by Bill Gates. The initial reaction from Pam Edstrom was to tell PR Week that if they ran a story mentioning ‘the book’, they would never get a Waggener Edstrom story again. I pointed out that we  didn’t have that outsize an impact in the marketing press, that Microsoft had in the enterprise tech press and PR Week wouldn’t care.

    I never did  hear if Pam got to thank the New York Times’ Steve Lohr for bringing up that book. More information here.

  • Media diary of a gen X man

    Stephen Waddington’s daughter Ellie posted a media diary with a guest post on his blog, go and have a read of it. This snowballed into what is likely to be a series of media diary posts by different people. My contribution was published on his blog this morning. I penned the original version of my media diary as a stream of consciousness whilst laid up. I’ve tried to clear up any typing and comment on the reactions to date here which I have bundled together as the directors cut.

    The directors cut

    So why the media diary directors cut? I have cleaned up a few typos and expanded on a few bits for clarity, hence the directors cut comment.

    I wouldn’t say my media diary is that of a typical consumer, I have lived inside the technology-media industrial complex since the late 1990s and worked in the scientific side of the UK’s now largely defunct industry prior to that. I am steeped in counter-culture since the mid-1980s and spent a fair bit of time in Hong Kong – which changed my outlook somewhat. I am also unencumbered by family life at the moment.

    Reactions

    The reaction so far to the posting has been interesting:

    • Stephen described me in his intro to my post as having ‘iconoclastic tendencies’. I guess so, though this is coming less from wanting to tear systems down, than finding tools that work for me. This is done in the ethos behind Kevin Kelly’s Cool Tools and the earlier Whole Earth Catalog. Despite being a long time Apple user, I don’t have all my data in the Apple ecosystem and I felt a similar way about the likes of Google and Facebook. I also like the idea of services that do one thing well. And like to support services like Newsblur or Pinboard that are made by one person or a small team. I guess this explanation of my framework allows the directors cut view to provide a little more context. And I guess iconoclastic works as shorthand in the meantime, Stephen has known me on and off for over 20 years.
    • I was amused at being called a mature hipster, although in this day and age it might be a way of saying metropolitan elite. This I guess would be accurate. The sunny side of this viewpoint would be that it goes to prove that geeks are the new cool. I always thought of myself closer to the comic store owner in The Simpsons. I have never considered myself an elite; which I hope comes across in the directors cut.
    • The last part of the article was called out by a few people who got in touch, my comments on privacy seemed to touch a nerve in a way that my concerns about innovation didn’t. The UK economy is not going to get saved from going into decline like Greece during the last financial crisis with just a few blockchain start-ups

    Messenger for keeping in touch and on track

    Over a decade ago I used to use Adium X, a multi-service instant messaging client for the Mac to keep in touch with a wide range of friends, colleagues, suppliers and clients. Each client was like hitting a different layer of clay in an archeological dig, indicating when I knew them.

    People on ICQ where the longest held contacts, then Yahoo! Messenger (I even ended up working at Yahoo!), Windows Live messenger was purely about my time at Waggener Edstrom and GoogleTalk became de-rigeur when the bots on Yahoo! Messenger came too much.

    Now I use WeChat, LINE, Signal, Skype and Telegram. Like IM platforms before it each messenger platform fits a segment of friends, colleagues and clients.

    Flickr is an archive

    I have friends that are talented photographers and you can’t convince me that some nice filters and a square picture adds up to the pretentions of photographic art that many people seem to feel it has. I have been on Flickr for 11 years and 18,345 photographs later, it would have to be a really compelling service that would get me to move. Flickr is my stock image library,it is my visual diary, image hosting for my blog and my mood board for when I am looking for inspiration at work.

    I think it has a better community than Instagram because it isn’t ubiquitous, it still has that early web 2.0 smell to it, though my heart is in my mouth every time Yahoo!’s finances take a wobble.

    Facebook is utilitarian

    I use Facebook in a similar way to developer friends using Stack Overflow or other forums for professional social discourse on a couple of private groups. I don’t even bother with cognitive dissonance type of posts of it always being sunny on Facebook. I know it’s crap; in your heart-of-hearts you probably know it too. Facebook events are often used, alongside meetup.com and Eventbrite. For loose network contacts, Facebook acts like a poorly designed phone book.

    Twitter: I have a bot for that

    Twitter is used as a messaging service for some of my friends, but mostly I use it to passively consume content like breaking news in lists and syndicate content that I find interesting. I do this syndication through various ‘recipes’ set up in IFTTT.

    Media content

    Steve Jobs talked about the only way to fight music piracy was to have a better idea. So for a number of years I have bought my music on iTunes, Bleep and Beatport alongside my love of vinyl records. I don’t have a lot of sympathy for the record labels as they have consistently focused on short term blockbuster hits at the expense of slow and steady selling artists – which is especially retarded when you think about the long tail model of media consumption. They need to evolve their business model to become cheaper and more efficient in their A&R processes in order to do this. I have recently started ripping CDs into my music library again as an arbitrage play (these are often cheaper than digital downloads) or offer back catalogue content that digital services don’t.

    I use a late model iPod Classic because of its 160GB storage. For streaming music I listen to mixes, mash ups, edits and remixes on Soundcloud and deephousepage.com. My current favourite remixer is Luxxury. I use the online radio channels (not Beats 1) in iTunes to have as relaxing background music prior to turning in at home.

    I watch live news on television as the broadcast network is better for supporting big audience numbers in comparison to the infrastructure of the internet. We have more bandwidth at the edges, but still the same bottlenecks I experienced some ten years previously during the July 7 bombings in London.

    I have an Apple TV box that I use for Netflix, internet radio and iTunes store content. Out of the terrestrial channels I tend to only use iPlayer as it is so much better designed than 4oD, ITV Player or Channel 5’s offering. I stream RTE News, Bloomberg TV and the BBC World Service. My favourite news content comes from Vice – it feels like the channel that CNN should have been and is less shaped to meet the norms of the establishment, though this will undoubtedly change in the near future.

    News is apps and RSS.

    My RSS reader of choice is Newsblur.com. I was a minority amongst my peers in that I never trusted my bookmarks and OPML data to Google’s Reader, instead using Bloglines and then Fastladder.com. Both of which where driven out of business by Google prior to them closing Reader.

    Instead bookmarking is done with pinboard.in. I also get news from the RTE News app, a breaking news list I built in Twitter, stratfor.com, vice.com and the South China Morning Post mobile app. If you’d asked me this ten years ago then The Economist would have been on here, but its been replaced by vice.com and Monocle magazine.

    When I get to read a newspaper; it is the FT and the Wall Street Journal on the way home from work as a way to decompress, or the weekend FT for a mellow Saturday morning. I still read the US edition of Wired magazine in a print copy as the accompanying digital subscription has somehow become borked on my iPad. My media indulgence would be occasionally rifling through the pages of Japanese style magazine Free & Easy.

    I subscribe to a number of email newsletters for specialist analysis.

    Brands that cut through

    The brands that cut through for me are ones that cut their own path. I don’t wake up in the morning and think:

    hell yeah I want to engage with a brand on a social channel

    With people like Carhartt, Gregory Mountain Products, Canon, Nikon, Mystery Ranch, Barebones Software, Apple, S-Double Studios, Porter Tokyo and IWC Schaffhausen the product is the marketing – the online marketing efforts of these brands are coincidental. I do know that many of these brands do spend a good deal of effort to influence the kind of publications that I read. Monocle magazine does a really good job of integrating marketing and content.

    I buy much more online now, the high street has become quite bland, especially after having lived in Asia. I use trans shipment company buyee.jp to buy items in Japan and lightinthebox.com has replaced many of the none-impulse purchases that I would have made at Argos.

    Challenge for brands, media and life itself

    The internet has come to mirror the wonders, banalities and horror of everyday life. As I write this Ellen Pao had resigned as CEO at Reddit. Reddit is a poster child for all of these categories from organising gifts for the poor to water cooler chatter, racism and death threats against Ms Pao.

    Culture has now been made massively parallel by the internet. As an 18 year old, I remember having to get a train down to London to go trawling through specialist shops from Camden to Soho  looking for Stussy clothing and records on the Japanese Major Force label. Now everything is up on YouTube or Soundcloud for you to enjoy.

    Making a difference is a work in progress

    Like Ellie, I am not that optimistic about aspects of the world. In many respects the concerns of gen-y&z mirrored concerns of a young gen-x. I held McJobs and had a constant fear of unemployment over my head, was concerned about nuclear holocaust, economic meltdown and an environmental dystopian future – concerns that I still have today. There is an anti-science bias and a lack of hard innovation coming through that will fuel the next forty years of innovation. The current outlook reminds me a bit of the film Interstellar where the lack of willingness to focus on anything but on our own small plot was killing humans as a species. The current political climate with regards to privacy and digital services indicates a luddite and megalomaniac political tinge, where freedom is being sacrificed for the illusion of safety from extremism. The only thing that actually offers that freedom is a better idea, not an Orwellesque vision of privacy.

    About Ged Carroll

    Ged currently works heading up digital services at Racepoint Global in London. He lives in the East End and spends a lot of time in Hong Kong. You’ll find him online at renaissance chambara.

    So that’s the directors cut of this not so secret internet diary.

    More information

    WeChat
    LINE
    Signal
    Telegram
    Flickr
    Pinboard
    Newsblur
    Bleep
    Beatport
    Luxxury on Soundcloud
    deephousepage
    RTE News Now
    South China Morning Post
    Monocle
    Buyee
    lightinthebox