Create a free account, or log in

Machine smarts: How advanced can we expect robotics to become?

Robotics is an ever-evolving field that has the potential to fundamentally transform business operations at all levels, and the push is well and truly on to develop increasingly responsive machine intelligence. While the boundaries are forever being pushed, the limits of robotic intelligence and where it will ultimately lead is the subject of wide-ranging speculation. […]
Martin Kovacs
Martin Kovacs
digital network

Robotics is an ever-evolving field that has the potential to fundamentally transform business operations at all levels, and the push is well and truly on to develop increasingly responsive machine intelligence.

While the boundaries are forever being pushed, the limits of robotic intelligence and where it will ultimately lead is the subject of wide-ranging speculation.

As it stands, the impact of new robotic technology is being seen across a range of sectors, from industry through to consumer applications.

As Tom Morrod, research and analysis executive director for the IHS Technology Group, outlined in a recentย blog post, robotics in the past few years โ€œhas gone through astonishingly rapid developmentโ€.

Morrod says this is due to an overlap of a number of factors, including high-powered computing, compact and mobile components, along with big data machine-learning and low-cost 3D manufacturing.

Morrod points primarily to two aspects in drawing a line between physical devices of similar form to current robotics.

โ€œThe first is that unlike other comparable devices, robots have the ability to provide feedback to their human controller, using sensors to create haptic โ€“ ie touch โ€“ or remote input,โ€ he writes.

โ€œThe second is that robots are able to process sensory data in order to make decisions on how to execute tasks, and in more advanced cases, be able to also define and elucidate the nature of the task to be performed.โ€

Robot smarts

How do you define intelligence? While there are a number of methods designed to measure human intelligence, however in broaching the subject it is easy to fall into the abstract.

Morrod notes that in robotics intelligence is โ€œconceptually complexโ€. Applying abstract definitions to machine codes presents the difficulty of being โ€œtoo aware of the processes involvedโ€.

โ€œSo it becomes very easy to understate or dismiss machine intelligence as distinct and distant from organic intelligence, simply because we already understand the details of the process,โ€ he writes.

โ€œIf a human codes for the behaviour, it cannot be truly intelligent.โ€

However, Morrod observes self-learning structures, in which intelligence is not programmed but learnt, are challenging this perception.

โ€œThis process of generating intelligence is analogous to the way that organic intelligence develops through trial-and-error and then repetition, ultimately leading to innovative decisionsย โ€” that is, decisions that are not predisposed,โ€ he writes.

Machines are learning

‘Machine learning’ and ‘deep learning’ are two terms that are now being thrown around more often in relation to artificial intelligence.

According to Morrod, it could be that the โ€œthe crucial change in recent machine intelligence is the development of machine learning โ€“ more specifically deep learningโ€.

โ€œThe current stage for most artificial intelligence is pattern recognition from large volumes of text or visual data, such as the facial recognition algorithms on Facebook, the contextual recommendations of Google Assistant, or the natural language processing of speech by Amazonโ€™s Alexa,โ€ he writes.

โ€œRecent machine learning systems use a process called deep learning, calling for algorithms to structure high-level abstractions in data via the processing of multiple layers of information. This occurs as machine learning tries to emulate the workings of a human brain.โ€

As with human intelligence, when it comes to AI it is difficult to pin down a definition. Moreover, as our collective expectations shift in concert with technology developments, definitions will likely also shift.

Morrod notes that recent achievements, such as the ability to recognise faces and objects, are โ€œpremised on a method that is still relatively explainableโ€.

โ€œThese achievements, while remarkable, also lack a higher order of intelligence demonstrable in abstract, non-material qualities like creativity, understanding or self-awareness,โ€ Morrod says.

โ€œIn all likelihood, it is only a matter of time before these triumphs are considered mere computer know-how and not really AI. At that point, our expectations will then move even closer toward abstraction, which we currently find harder to define.โ€

Never miss a story: sign up toย SmartCompanyโ€™sย free daily newsletterย and find our best stories onย Twitter,ย Facebook,ย LinkedInย andย Instagram.