Silicon ChipAI and robots – what could possibly go wrong? - July 2023 SILICON CHIP
  1. Outer Front Cover
  2. Contents
  3. Subscriptions: PE Subscription
  4. Subscriptions
  5. Back Issues: Hare & Forbes Machineryhouse
  6. Publisher's Letter: Check your meter
  7. Feature: AI and robots – what could possibly go wrong? by Max the Magnificent
  8. Feature: The Fox Report by Barry Fox
  9. Feature: Net Work by Alan Winstanley
  10. Project: MIDI SYNTHESISER by JEREMY LEACH
  11. Project: Multimeter -Checker -Calibrator by Tim Blythman
  12. Feature: MOS metal oxide semiconductor Air Quality Sensors by Jim Rowe
  13. Feature: KickStart by MIKE TOOLEY
  14. Feature: Circuit Surgery by Ian Bell
  15. Feature: Max’s Cool Beans by Max the Magnificent
  16. Feature: AUDIO OUT by Jake Rothman
  17. PCB Order Form
  18. Advertising Index

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  • Communing with nature (January 2022)
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  • From nano to bio (May 2022)
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  • Raudive Voices Revisited (January 2023)
  • A thousand words (February 2023)
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  • AI, Robots, Horticulture and Agriculture (April 2023)
  • Prophecy can be perplexing (May 2023)
  • Technology comes in different shapes and sizes (June 2023)
  • AI and robots – what could possibly go wrong? (July 2023)
  • How long until we’re all out of work? (August 2023)
  • We both have truths, are mine the same as yours? (September 2023)
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  • Good grief! (December 2023)
  • Cheeky chiplets (January 2024)
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  • Techno Talk - Wait! What? Really? (April 2024)
  • Techno Talk - One step closer to a dystopian abyss? (May 2024)
  • Techno Talk - Program that! (June 2024)
  • Techno Talk (July 2024)
  • Techno Talk - That makes so much sense! (August 2024)
  • Techno Talk - I don’t want to be a Norbert... (September 2024)
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Techno Talk AI and robots – what could possibly go wrong? Max the Magnificent We are currently making tremendous strides in the field of artificial intelligence. There are also a lot of interesting developments in the world of humanoid robots and cobots (collaborative robots) which work hand-in-hand with humans. Let’s hope we all stay friends. A s I pen these words, progress is accelerating dramatically on the artificial intelligence (AI) front. The first person to really contemplate the possibility of AI was the English mathematician and writer Lady Ada Lovelace (daughter of the English romantic poet Lord Byron). In her early 20s, Ada assisted the English polymath Charles Babbage when he started work on his proposed general-purpose mechanical computer, the Analytical Steam Engine, in the late 1830s. Babbage only viewed his Analytical Engine in the context of performing mathematical calculations. In her notes, Ada discussed how the numbers being processed could represent abstract symbols, such as musical notes, and that future versions of the engine ‘might compose elaborate and scientific pieces of music of any degree of complexity or extent.’ During WWII, the English mathematician and computer scientist Alan Turing started to ponder the possibilities of machine intelligence. He gave a lecture in 1947 that discussed how machines could learn from experience, and in 1948 he wrote a paper entitled Intelligent Machines, which introduced many of the concepts that are central to today’s AI. Unfortunately, he failed to publish this paper, which meant most of his ideas had to be reinvented by others later. The AI ball starts to roll In 1956, the Dartmouth Summer Research Project on Artificial Intelligence was held at Dartmouth College in New Hampshire, US. This seven-week brain-stem-storming session of mathematicians and scientists is widely considered to be the founding event that set the AI ball rolling – and it hasn’t stopped rolling since. Having said this, the ball did not roll very fast at first. Although expert systems, which use knowledge and rules-based approaches, were formally introduced in 1965, progress was painfully slow, largely because computers of the time were limited in memory and performance. Work on expert systems picked up pace in the 1970s and they really started to proliferate in the 1980s. By the 1990s, 8 however, a lot of us had a sinking feeling that they weren’t living up to their promise. Things were not helped when the marketing weenies hopped on the bandwagon and started to stamp ‘Artificial Intelligence Inside’ labels on everything, even things that had nothing to do with AI whatsoever (in much the same way we currently see ‘Gluten Free’ stamped on foods that never had a hint of a sniff of a whiff of gluten in the first place). Just when we least expected it To be honest, throughout the 2000s, I’d largely relegated thoughts about AI to the recesses of (what I laughingly call) my mind. I knew work was still ongoing in academic circles, but I really didn’t envisage any real-world applications for quite some time. All this started to change in the 2010 to 2015 timeframe when the combination of more powerful computing engines coupled with new AI architectures based on digital artificial neural networks (ANNs) and new AI algorithms such as convolutional neural networks (CNNs) sprang onto the scene. How big? How fast? In 2018, an AI research laboratory called OpenAI published a paper titled AI and Compute, which defined two eras of AI computation requirements. During the first era, which started with the Dartmouth Workshop and lasted until 2012, the requirements for AI computational capability doubled approximately every two years, which roughly mapped onto the well-known Moore’s law. A ‘perfect storm’ occurred in 2012 with the introduction of new AI architectures and algorithms. The result was an inflection point across multiple domains (speech, vision, language, games…) that heralded the second (current) era, in which AI computer ‘power’ started to double every 3.5 months. How do we do it? The first AI systems ran on some of the larger computers available at the time. Of course, processor technologies have improved dramatically. Also, AI algorithms, both big and small, have become more sophisticated and more varied. It’s now possible to get a humble microcontroller to perform some simple AI functionality. For example, the first AI app I created ran on an Arduino Nano 33 IoT, see: https://bit.ly/3pJ99Cz Until recently, heavy duty AI applications ran on general-purpose field-programmable gate arrays (FPGAs) or graphics processing units (GPUs). Over the past year or so, however, I’ve talked to a bunch of companies who are developing special analogue, digital and even optical-based devices capable of performing the billions-upon-billions of computations required to implement high-end AI models at extreme speed while consuming relatively little power. What about robots? I’m glad you asked. I’ve also been talking to several companies that are working on humanoid robots. For example, EVE robots from Halodi Robotics are already operate as nighttime security guards in factories. They are also employed in hospitals and supermarkets. I’m sure you’ve heard about ChatGPT, the AI chatbot introduced by OpenAI last November. A lot of people are worried about kids using chatbots like this to do their homework, but I don’t think we’ve fully wrapped our brains around all the potential applications (and problems). For example, I recently read about a non-invasive ChatGPT-based system that can translate activity in the human brain into a continuous stream of text: https://bit.ly/3MqgFKy One of my favorite science fiction books is Great Sky River by Gregory Benford. Set tens of thousands of years in the future, humans have spread across the Milky Way. When they approach the galactic center, they butt heads (or whatever) with mechanoid civilizations. The ‘Mechs’ regard biological lifeforms as an infestation to be eradicated. We never do learn what happened to the Mechs’ creators, the first of whom had to be biological in nature. I don’t know about you, but I can’t help thinking: ‘AI and robots – what could possibly go wrong?’ Practical Electronics | July | 2023