India-born scientist"s Robo Brain is a very fast online learner

August 25, 2014

Robo BrainMumbai, Aug 25: In July, scientists from Cornell University led by Ashutosh Saxena said they have developed Robo Brain—a large computational system that learns from publicly available Internet resources. The system, according to a 25 August statement by Cornell, is downloading and processing about 1 billion images, 120,000 YouTube videos and 100 million how-to documents and appliance manuals.

Information from the system, which Saxena had described at the 2014 Robotics: Science and Systems Conference in Berkeley, is being translated and stored in a robot-friendly format that robots will be able to draw on when needed.

The India-born, Indian Institute of Technology-Kanpur graduate, has now launched a website for the project at robobrain.me, which will display things the brain has learnt, and visitors will be able to make additions and corrections. Like a human learner, Robo Brain will have teachers, thanks to crowdsourcing. “Our laptops and cellphones have access to all the information we want.

If a robot encounters a situation it hasn"t seen before it can query Robo Brain in the cloud,” Saxena, assistant professor, Microsoft Faculty Fellow, and Sloan Fellow, at Cornell University, said in a statement.

Saxena and his colleagues at Cornell, Stanford and Brown universities and the University of California, Berkeley, say Robo Brain will process images to pick out the objects in them, and by connecting images and video with text, it will learn to recognize objects and how they are used, along with human language and behaviour.

His team includes Ashesh Jain, a third-year PhD computer science student at Cornell. Robo Brain employs what computer scientists call structured deep learning, where information is stored in many levels of abstraction.

Deep learning is a set of algorithms, or instruction steps for calculations, in machine learning. For instance, an easy chair is a member of a class of chairs, and going up another level, chairs are furniture.

Robo Brain knows that chairs are something you can sit on, but that a human can also sit on a stool, a bench or the lawn, the statement said.

A robot"s computer brain stores what it has learnt in a form that mathematicians call a Markov model, which can be represented graphically as a set of points connected by lines—called nodes and edges.

The nodes could represent objects, actions or parts of an image, and each one is assigned a probability—how much you can vary it and still be correct.

In searching for knowledge, a robot"s brain makes its own chain and looks for one in the knowledge base that matches within those limits.

“The Robo Brain will look like a gigantic, branching graph with abilities for multi-dimensional queries,” said Aditya Jami, a visiting researcher art Cornell, who designed the large database for the brain. Jami is also co-founder and chief technology officer at Predict Effect, Zoodig Inc. The basic skills of perception, planning and language understanding are critical for robots to perform tasks in the human environments. Robots need to perceive with sensors, and plan accordingly.

If a person wants to talk to a robot, for instance, the robot has to listen, get the context and knowledge of the environment, and plan its motion to execute the task accordingly.

For example, an industrial robot needs to detect objects to be manipulated, plan its motions and communicate with the human operator. A self-driving robot needs to detect objects on the road, plan where to drive and also communicate with the passenger.

Scientists at the lab at Cornell do not manually programme the robots. Instead, they take a machine learning approach by using variety of data and learning methods to train our robots.

“Our robots learn from watching (3D) images on the Internet, from observing people via cameras, from observing users playing video games, and from humans giving feedback to the robot,” the Cornell website reads.

There have been similar attempts to make computers understand context and learn from the Internet.

For instance, since January 2010, scientists at the Carnegie Mellon University (CMU) have been working to build a never-ending machine learning system that acquires the ability to extract structured information from unstructured Web pages.

If successful, the scientists say it will result in a knowledge base (or relational database) of structured information that mirrors the content of the Web. They call this system the never-ending language learner, or NELL.

NELL first attempts to read, or extract facts from text found in hundreds of millions of web pages (plays instrument). Second, it attempts to improve its reading competence, so that it can extract more facts from the Web, more accurately, the following day. So far, NELL has accumulated over 50 million candidate beliefs by reading the Web, and it is considering these at different levels of confidence, according to information on the CMU website.

“NELL has high confidence in 2,348,535 of these beliefs—these are displayed on this website. It is not perfect, but NELL is learning,” the website reads.

We also have IBM, or International Business Machines" Watson that beat Jeopardy players in 2011, and now has joined hands with the United Services Automobile Association (USAA) to help members of the military prepare for civilian life.

In January 2014, IBM said it will spend $1 billion to launch the Watson Group, including a $100 million venture fund to support start-ups and businesses that are building Watson-powered apps using the “Watson Developers Cloud”.

More than 2,500 developers and start-ups have reached out to the IBM Watson Group since the Watson Developers Cloud was launched in November 2013, according to a 22 August blog in the Harvard Business Review.

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News Network
January 17,2020

New Delhi, Jan 17: E-commerce major Amazon on Friday said it plans to create one million new jobs in India over the next five years through investments in technology, infrastructure and its logistics network.

These jobs are in addition to the seven lakh jobs Amazon's investments have enabled over the last six years in the country.

"Amazon plans to create one million new jobs in India by 2025," the company said in a statement, adding that the jobs - created both directly and indirectly - will be across industries, including information technology, skill development, content creation, retail, logistics, and manufacturing.

Amazon.com Inc chief Jeff Bezos had on Wednesday announced USD 1 billion (over Rs 7,000 crore) investment in India to help bring small and medium businesses online and committed to exporting USD 10 billion worth of India-made goods by 2025.

"We are investing to create a million new jobs here in India over the next five years," Bezos said.

"We’ve seen huge contributions from our employees, extraordinary creativity from the small businesses we've partnered with, and great enthusiasm from the customers who shop with us—and we’re excited about what lies ahead," Bezos added.

India has prioritised job creation and skilling initiatives – including the training of more than 400 million people by 2022 – in rural and urban areas.

"Amazon’s job creation commitment and investment in traders and micro, small and medium enterprises (MSMEs) complement this social inclusion and social mobility efforts by creating more opportunities for people in India to find employment, build skills, and expand entrepreneurship opportunities," the statement said.

The new investments will help to hire talent to fill roles across Amazon in India, including software development engineering, cloud computing, content creation, and customer support.

Since 2014, Amazon has grown its employee base more than four times, and last year inaugurated its new campus building in Hyderabad – Amazon’s first fully-owned campus outside the United States and the largest building globally in terms of employees (15,000) and space (9.5 acres).

The investments will also help in expanding growth opportunities for the more than 5,50,000 traders and micro, small, and medium-sized businesses – including local shops – through programs like Saheli, Karigar, and “I Have Space”.

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Agencies
June 29,2020

New Delhi, Jun 29: Witnessing azure skies and breathable air for the last three months, Delhi on Monday recorded deterioration in its air quality, with particulate matter with diameter of 2.5 and 10 microns -- too small to be filtered out of the human body -- standing at 52 and 297 micrograms per cubic respectively.

Gufran Beig, Project Director of System of Air Quality Weather Forecasting and Research (SAFAR), said that the sudden spike in air pollution is due to a mild dust storm blowing from Rajasthan.

"Since the wind direction is changing and moist air is coming in, the air quality in Delhi will become better by tomorrow," Beig told IANS.

Central Pollution Control Board (CPCB) data showed that the overall air quality near Delhi Technical University (DTU) area stood at 326 micrograms per cubic, followed by 308 at Narela and 307 at Mundka.

Out of 36 stations, the AQI in as many as 30 stations was above 200 micrograms per cubic till 1 pm on Monday.

The System of Air Quality Weather Forecasting and Research categorises air quality in the 0-50 range as good, 51-100 as satisfactory, 101-200 as moderate, 201-300 as poor, 301-400 as very poor, and above 400 as severe.

According to SAFAR's website, "PM 10 (coarser dust particle) is the lead pollutant. AQI is likely to improve to moderate category by tomorrow, and further improvement is expected by July 1."

Researchers indicated that PM 10 and PM 2.5 will be 170 and 47 micrograms per cubic on Tuesday.

With no vehicles plying on the roads or industries shut due to the lockdown since March 25, Delhi's air quality had improved drastically.

According to a study conducted by the Indian Institute of Technology (IIT), Delhi, if the low levels of air pollution reached during the lockdown period are maintained, India's annual death toll could reduce by 6.5 lakh.

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Agencies
February 5,2020

San Francisco, Feb 5: After a German artist, Simon Weckert, demonstrated how he "hacked" Google Maps with 99 smartphones and a wagon to create "virtual traffic jams" on the streets of Berlin, Google responded to the incident saying it "appreciates" creative use of maps.

Admitting that it has not quite cracked travelling by wagon, the tech giant also hinted that it might use cases like this to improve how its maps work.

"We appreciate seeing creative uses of Google Maps like this as it helps us make maps work better over time," 9to5Google quoted a Google spokesperson as saying.

In a YouTube video, Weckert showed that he put 99 smartphones with Google Maps onto a small wagon cart and then wheeled that cart around various streets in Berlin, including outside the Google office, Android Authority reported on Monday.

The smartphones "apparently fooled Google Maps" into thinking that there was a high concentration of users on those streets.

Because the second-hand phones were in a cart, Maps was further tricked into believing that the traffic was slow-moving.

As a result, the navigation app started showing virtual traffic jams by turning green streets to red in the online navigational tool, showcasing how digital technology can have a real impact on the real world.

"Traffic data in Google Maps is refreshed continuously thanks to information from a variety of sources, including aggregated anonymised data from people who have location services turned on and contributions from the Google Maps community," the Google spokesperson said.

"We've launched the ability to distinguish between cars and motorcycles in several countries including India, Indonesia and Egypt, though we haven't quite cracked travelling by wagon," the statement added. After a German artist, Simon Weckert, demonstrated how he "hacked" Google Maps with 99 smartphones and a wagon to create "virtual traffic jams" on the streets of Berlin, Google responded to the incident saying it "appreciates" creative use of maps.

Admitting that it has not quite cracked travelling by wagon, the tech giant also hinted that it might use cases like this to improve how its maps work.

"We appreciate seeing creative uses of Google Maps like this as it helps us make maps work better over time," 9to5Google quoted a Google spokesperson as saying.

In a YouTube video, Weckert showed that he put 99 smartphones with Google Maps onto a small wagon cart and then wheeled that cart around various streets in Berlin, including outside the Google office, Android Authority reported on Monday.

The smartphones "apparently fooled Google Maps" into thinking that there was a high concentration of users on those streets.

Because the second-hand phones were in a cart, Maps was further tricked into believing that the traffic was slow-moving.

As a result, the navigation app started showing virtual traffic jams by turning green streets to red in the online navigational tool, showcasing how digital technology can have a real impact on the real world.

"Traffic data in Google Maps is refreshed continuously thanks to information from a variety of sources, including aggregated anonymised data from people who have location services turned on and contributions from the Google Maps community," the Google spokesperson said.

"We've launched the ability to distinguish between cars and motorcycles in several countries including India, Indonesia and Egypt, though we haven't quite cracked travelling by wagon," the statement added.

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