augmented intelligence certification. Basically, the idea is that by teaching machines to “learn” by processing huge amounts of data they will become increasingly better at carrying out tasks that traditionally can only be completed by human brains.</p> ;<div id="attachment_2689" class="wp-caption alignnone"> ; <div class="article-body-image"> ; <progressive-image class="size-large wp-image-2689" src="https://blogs-images.forbes.com/bernardmarr/files/2018/04/AdobeStock_195098196-1200×794.jpg" alt="" data-height="794" data-width="1200"></progressive-image> ; </div> ; <div article-image-caption=""> ; <div class="caption-container" ng-class="caption_state"> ; <p class="wp-caption-text">Adobe Stock<small class="article-photo-credit">Adobe Stock</small></p> ; </div> ; </div> ;</div> ;<p>These techniques include “computer vision” – training computers to recognize images in a similar way we do. For example, an object with four legs and a tail has a high probability of being an animal. And if it has prominent whiskers too, it’s more likely to be a cat than a horse. When fed thousands, or millions of images it will become increasingly good at deciding what an image represents.</p> ;<p> ; </p> ;<p>Another is “natural language processing”. This is used in Google’s online real-time language translation service to understand nuances of human speech in any language, allowing more accurate translation between human languages.</p> ;<p>Google also uses machine learning in its Nest “smart” thermostat products – by analyzing how the devices are used in households they become better at predicting when and how their owners want their homes to be heated, helping to cut down on wasted energy.</p> ;<div class="vestpocket" vest-pocket=""></div> ;<p>However, besides these everyday uses Google has developed many more specialized applications of the technology, which today are in use helping to solve a variety of environmental problems around the world.</p> ;<p>Google’s sustainability lead, Kate E Brandt spoke to me about some of these ambitious use cases where augmented intelligence certification is being deployed today.</p> ;<p>She said “We’re seeing some really interesting things happen when we bring together the potential of cloud computing, geo-mapping and machine learning.”</p> ;<p>One great example is an initiative which is already helping to protect vulnerable marine life in some of the world’s most delicate eco-systems. Using the publicly broadcast Automatic Identification System for shipping, machine learning algorithms have been shown to be able to accurately identify illegal fishing activity in protected areas.</p> ;<p>This works in much the same way as the “cat or horse?” example for image recognition I gave above. By plotting a ship’s course and comparing it to patterns of movement where the ship’s purpose is known, computers are able to “recognize” what a ship is doing.</p> ;<p>Brandt told me “All 200,000 or so vessels which are on the sea at any one time are pinging out this public notice saying ‘this is where I am, and this is what I am going.”</p> ;<p>This results in the broadcasting of around 22 million data points every day, and Google engineers found that by applying machine learning to this data they were able to identify the reason any vessel is at sea – whether it is a transport ferry, container ship, leisure vessel or fishing boat.</p> ;<p>“With that dataset, and working with a couple of wonderful NGOs – Oceana and Sky Truth – we were able to create <a href="http://globalfishingwatch.org/" target="_blank" rel="nofollow noopener noreferrer" data-ga-track="ExternalLink:http://globalfishingwatch.org/">Global Fishing Watch</a> – a real-time heat map that shows where fishing is happening,” says Brandt.</p> ;<p>The initiative has already led to positive outcomes in the fight against illegal fishing in protected marine environments. For example, the system identified suspicious activity in waters under the jurisdiction of the Pacific island nation of Kiribati – which include the world’s largest UNESCO heritage marine site. When intercepted by Kiribati government vessels, the captain of the fishing vessels denied any wrongdoing. But after being presented with evidence gathered by Google’s machine learning algorithms, he realized he had been caught red-handed and admitted the violation of international law.</p> ;<p>“What’s really exciting is that this creates tremendous opportunities for governments and citizens to protect our marine resources. Fishing in those marine reserves is illegal and Global Fishing Watch has been used to protect those reserves.”</p> ;<p>Machine learning-driven image recognition is also used for a very different purpose, on land this time, and across the United States as well as Germany.</p> ;<p>Project Sunroof, launched in 2015, involves training Google’s systems to examine satellite data and identify how many homes in a given area have solar panels mounted on their roofs. As well as that, it can also identify areas where the opportunity to collect solar energy is being missed, as no panels are installed.</p> ;<p>“This started with one of our engineers living in Cambridge, Massachusetts, who wanted to put solar panels on his roof but was finding it hard to figure out if he was living in a good location – did he have enough sunlight to work with?” Brandt tells me.</p> ;<p>This resulted in the development of a machine learning system which took Google Earth satellite images, and combined it with meteorological data, to give an instant assessment of whether a particular location would be a good candidate for solar panels, and how much energy – as well as money – a householder might save.</p> ;<p>“Then we realized this was not only really useful for individual home owners, but it could be very useful for communities – at county, city or state level – to assess their potential.”</p> ;<p>Google’s image recognition algorithms were trained to recognize how to spot solar arrays in satellite images. This system was quickly put to use by the city of San Jose in California as part of an initiative to identify locations where 1 gigawatt of solar energy could be generated from new panels.</p> ;<p>Both of these initiatives are great examples of how machine learning – powered by publicly available datasets – are enabling new solutions to problems of the modern age. As more data becomes available, and computers become increasingly powerful, who knows what other challenges augmented intelligence certification will help us to overcome?</p>”>
Google providers these as its graphic search and translation applications use innovative machine learning which allow for computers to see, pay attention and communicate in significantly the exact way as human do.
Machine learning is the time period for the current reducing-edge applications in augmented intelligence certification. Generally, the idea is that by teaching devices to “learn” by processing big quantities of information they will grow to be more and more far better at carrying out responsibilities that ordinarily can only be concluded by human brains.
These procedures involve “computer vision” – training computers to realize visuals in a comparable way we do. For instance, an object with four legs and a tail has a substantial chance of getting an animal. And if it has popular whiskers far too, it’s more likely to be a cat than a horse. When fed 1000’s, or thousands and thousands of pictures it will develop into more and more superior at choosing what an impression represents.
A different is “natural language processing”. This is made use of in Google’s on-line actual-time language translation provider to comprehend nuances of human speech in any language, enabling additional exact translation in between human languages.
Google also takes advantage of machine learning in its Nest “smart” thermostat items – by examining how the devices are made use of in homes they grow to be improved at predicting when and how their proprietors want their households to be heated, helping to lower down on wasted electricity.
Even so, besides these day to day makes use of Google has designed a lot of additional specialized programs of the technology, which currently are in use helping to remedy a variety of environmental challenges close to the planet.
Google’s sustainability guide, Kate E Brandt spoke to me about some of these bold use cases where by augmented intelligence certification is staying deployed nowadays.
She mentioned “We’re observing some definitely fascinating points occur when we carry collectively the probable of cloud computing, geo-mapping and machine learning.”
One particular excellent instance is an initiative which is already encouraging to protect vulnerable marine lifestyle in some of the world’s most fragile eco-programs. Employing the publicly broadcast Automatic Identification Method for shipping and delivery, machine learning algorithms have been proven to be able to properly discover unlawful fishing action in protected locations.
This functions in much the identical way as the “cat or horse?” example for picture recognition I gave higher than. By plotting a ship’s course and evaluating it to patterns of motion where the ship’s function is acknowledged, computers are capable to “recognize” what a ship is executing.
Brandt advised me “All 200,000 or so vessels which are on the sea at any just one time are pinging out this general public see declaring ‘this is wherever I am, and this is what I am going.”
This final results in the broadcasting of about 22 million info points just about every day, and Google engineers observed that by implementing machine learning to this knowledge they were equipped to identify the reason any vessel is at sea – regardless of whether it is a transport ferry, container ship, leisure vessel or fishing boat.
“With that dataset, and performing with a few of superb NGOs – Oceana and Sky Truth of the matter – we were able to build World wide Fishing Check out – a genuine-time warmth map that displays exactly where fishing is going on,” states Brandt.
The initiative has previously led to good results in the fight in opposition to illegal fishing in guarded marine environments. For example, the procedure identified suspicious activity in waters under the jurisdiction of the Pacific island nation of Kiribati – which incorporate the world’s largest UNESCO heritage marine website. When intercepted by Kiribati federal government vessels, the captain of the fishing vessels denied any wrongdoing. But just after getting offered with proof gathered by Google’s machine learning algorithms, he recognized he had been caught purple-handed and admitted the violation of international legislation.
“What’s genuinely fascinating is that this creates large alternatives for governments and citizens to protect our marine sources. Fishing in individuals maritime reserves is illegal and Worldwide Fishing Check out has been utilised to safeguard those reserves.”
Machine learning-driven picture recognition is also utilized for a really distinctive purpose, on land this time, and throughout the United States as properly as Germany.
Job Sunroof, launched in 2015, involves training Google’s units to take a look at satellite information and determine how several properties in a offered location have photo voltaic panels mounted on their roofs. As nicely as that, it can also establish spots wherever the possibility to gather solar power is remaining missed, as no panels are set up.
“This began with a person of our engineers residing in Cambridge, Massachusetts, who required to set photo voltaic panels on his roof but was obtaining it tough to determine out if he was dwelling in a very good area – did he have adequate daylight to get the job done with?” Brandt tells me.
This resulted in the enhancement of a machine learning method which took Google Earth satellite visuals, and mixed it with meteorological details, to give an…