Coratrex Technologies : Learning HUB

Coratrex Technologies : Learning HUB Most awaiting platform where you can learn BIG-DATA and other technologies from very basics and let

CoraTrex Technologies offers you various platforms where you can broadcast yourself by availing the opportunities like:

- BIG DATA ANALYTICS
- CLOUD COMPUTING
- MOBILE APP DEVELOPMENT
- C/C++ & DATA STRUCTURES
- AUTOMATION TESTING
- SOLID WORKS, CATIA V5, CREO, AUTO-CAD

We take special classes for the Interview Preparations.

It’s ok to have a big picture overview of data science and AI, but it’s even better as a company to understand what’s ha...
19/11/2021

It’s ok to have a big picture overview of data science and AI, but it’s even better as a company to understand what’s happening under the hood.

Check the course content. And register today. Call 9897075881
02/07/2017

Check the course content.
And register today.
Call 9897075881

Get Trained by Industries Experts. And become a certified professional.Seats are filling fast.Batches starting soon..So ...
06/06/2017

Get Trained by Industries Experts. And become a certified professional.

Seats are filling fast.
Batches starting soon..
So just register yourself. And get your seat book.

Few more courses are added soon.
i.e. : IOT, Cloud Computing (AWS).

For more details Contact : 9897075881
or mail us : [email protected]

17/03/2017
17/03/2017

How Machine Learning is Transforming Healthcare

Machine learning and big data in the healthcare field have tremendous potential. Not only are these new technologies improving diagnosis and treatment options, they also have the potential to empower individuals to take control of their own health.

Some of the most exciting advances in healthcare today are coming about with the help of machine learning, artificial intelligence, and advanced analytics. Advances in diagnostics, predictive healthcare, personalized medicine and AI interfaces to help patients access healthcare all come down to the application of machine learning.

One team of doctors used advanced machine learning to analyze search queries online and discovered that they could identify people with pancreatic cancer—even before they received a diagnosis. The study focused on search queries that indicated someone had been diagnosed with pancreatic cancer, and then worked backwards to see if earlier queries could predict the diagnosis. While the study did not result in a practical application yet, there is the possibility that, in the future, systems could be set up to warn a user to go get tested if search queries suggest a particular disease—especially one in which early detection is vital, like pancreatic cancer.

A Brazilian hospital, Estadual Getúlio Vargas, has only 22 ICU beds for a nearly unending stream of the city’s poorest of the poor. The hospital is using analytics’ insights to shorten the length of stays for ICU patients to just over three days, and reduce mortality rates for them by 21 percent. This means that the hospital can free up beds more quickly and serve nearly two more patients per ICU bed each month, improving efficiency and outcomes. Another hospital in São João is using a program called HVITAL, combining advanced analytics and machine learning to predict (and potentially prevent) up to 30 percent of ICU admissions, as much as seven days in advance.

One problem doctors face, especially with cancer patients looking at long-treatment protocols, is keeping patients motivated and proactive during recovery. A new app called RehApp Coach has recently been developed to help solve that problem. The bot offers a conversational approach through machine learning and AI to engage patients during their rehab and, hopefully, keep them more motivated to continue treatment.

Another important advancement is being made in matching children in the foster care system with the best potential foster families. The ECAP system (which stands for Every Child A Priority) uses a sophisticated matching algorithm to predict the best match between a child and a foster family, reducing the number of moves a child has to make and improving the potential for permanent placement. I include this under the healthcare banner, because the system must adhere to the strict privacy regulations involved with health and other personal records. It’s saved government agencies millions of dollars, but more importantly, improved outcomes for the most vulnerable children in their care.

Other companies are using machine learning to help predict and expose fraudulent healthcare claims, which costs providers millions of dollars a year and drives up the cost of healthcare for everyone. A company called KenSci was able to use machine learning to immediately identify more than a million dollars in fraudulent claims in a single dataset that had already been analyzed and reviewed by 20 human claims specialists.

These are just a few of the most exciting advances I’ve seen reported recently using machine learning in the healthcare field, but I’d love to hear of other examples if you’re familiar with any. Please share them in the comments below.

09/03/2017

.mejs-container { max-width: 10em; } Baidu Research presents Deep Voice, a production-quality text-to-speech system constructed entirely from deep neural networks. The biggest obstacle to building such a system thus far has been the speed of audio synthesis – previous approaches have taken minutes o...

The future of AI is neuromorphic. Meet the scientists building digital 'brains' for your phone.Neuromorphic chips are be...
09/03/2017

The future of AI is neuromorphic. Meet the scientists building digital 'brains' for your phone.
Neuromorphic chips are being designed to specifically mimic the human brain – and they could soon replace CPUs.

AI services like Apple’s Siri and others operate by sending your queries to faraway data centers, which send back responses. The reason they rely on cloud-based computing is that today’s electronics don’t come with enough computing power to run the processing-heavy algorithms needed for machine learning. The typical CPUs most smartphones use could never handle a system like Siri on the device. But Dr. Chris Eliasmith, a theoretical neuroscientist and co-CEO of Canadian AI startup Applied Brain Research, is confident that a new type of chip is about to change that.

“Many have suggested Moore's law is ending and that means we won't get 'more compute' cheaper using the same methods,” Eliasmith says. He’s betting on the proliferation of ‘neuromorphics’ — a type of computer chip that is not yet widely known but already being developed by several major chip makers.
Traditional CPUs process instructions based on “clocked time” – information is transmitted at regular intervals, as if managed by a metronome. By packing in digital equivalents of neurons, neuromorphics communicate in parallel (and without the rigidity of clocked time) using “spikes” – bursts of electric current that can be sent whenever needed. Just like our own brains, the chip’s neurons communicate by processing incoming flows of electricity - each neuron able to determine from the incoming spike whether to send current out to the next neuron.

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What makes this a big deal is that these chips require far less power to process AI algorithms. For example, one neuromorphic chip made by IBM contains five times as many transistors as a standard Intel processor, yet consumes only 70 milliwatts of power. An Intel processor would use anywhere from 35 to 140 watts, or up to 2000 times more power.

Eliasmith points out that neuromorphics aren’t new and that their designs have been around since the 80s. Back then, however, the designs required specific algorithms be baked directly into the chip. That meant you’d need one chip for detecting motion, and a different one for detecting sound. None of the chips acted as a general processor in the way that our own cortex does.

This was partly because there hasn’t been any way for programmers to design algorithms that can do much with a general purpose chip. So even as these brain-like chips were being developed, building algorithms for them has remained a challenge.

Eliasmith and his team are keenly focused on building tools that would allow a community of programmers to deploy AI algorithms on these new cortical chips.

Central to these efforts is Nengo, a compiler that developers can use to build their own algorithms for AI applications that will operate on general purpose neuromorphic hardware. Compilers are a software tool that programmers use to write code, and that translate that code into the complex instructions that get hardware to actually do something. What makes Nengo useful is its use of the familiar Python programming language – known for it’s intuitive syntax – and its ability to put the algorithms on many different hardware platforms, including neuromorphic chips. Pretty soon, anyone with an understanding of Python could be building sophisticated neural nets made for neuromorphic hardware.

https://youtu.be/P_WRCyNQ9KY

“Things like vision systems, speech systems, motion control, and adaptive robotic controllers have already been built with Nengo,” Peter Suma, a trained computer scientist and the other CEO of Applied Brain Research, tells me.

Perhaps the most impressive system built using the compiler is Spaun, a project that in 2012 earned international praise for being the most complex brain model ever simulated on a computer. Spaun demonstrated that computers could be made to interact fluidly with the environment, and perform human-like cognitive tasks like recognizing images and controlling a robot arm that writes down what it’s sees. The machine wasn’t perfect, but it was a stunning demonstration that computers could one day blur the line between human and machine cognition. Recently, by using neuromorphics, most of Spaun has been run 9000x faster, using less energy than it would on conventional CPUs – and by the end of 2017, all of Spaun will be running on Neuromorphic hardware.

Eliasmith won NSERC’s John C. Polyani award for that project — Canada’s highest recognition for a breakthrough scientific achievement – and once Suma came across the research, the pair joined forces to commercialize these tools.

“While Spaun shows us a way towards one day building fluidly intelligent reasoning systems, in the nearer term neuromorphics will enable many types of context aware AIs,” says Suma. Suma points out that while today’s AIs like Siri remain offline until explicitly called into action, we’ll soon have artificial agents that are ‘always on’ and ever-present in our lives.

“Imagine a SIRI that listens and sees all of your conversations and interactions. You’ll be able to ask it for things like - "Who did I have that conversation about doing the launch for our new product in Tokyo?" or "What was that idea for my wife's birthday gift that Melissa suggested?,” he says.

When I raised concerns that some company might then have an uninterrupted window into even the most intimate parts of my life, I’m reminded that because the AI would be processed locally on the device, there’s no need for that information to touch a server owned by a big company. And for Eliasmith, this ‘always on’ component is a necessary step towards true machine cognition. “The most fundamental difference between most available AI systems of today and the biological intelligent systems we are used to, is the fact that the latter always operate in real-time. Bodies and brains are built to work with the physics of the world,” he says.

Already, major efforts across the IT industry are heating up to get their AI services into the hands of users. Companies like Apple, Facebook, Amazon, and even Samsung, are developing conversational assistants they hope will one day become digital helpers.

With the rise of neuromorphics, and tools like Nengo, we could soon have AI’s capable of exhibiting a stunning level of natural intelligence – right on our phones.

28/02/2017

Power of linux.

22 years ago today, Linus Torvalds released Linux 0.02.
Did you know
> 550,000 devices Android devices activated each day
which are based on linux
> Yep, every time a train leaves and arrives from a
Japanese station, Linux is behind it
> CERN, the world's largest particle physics laboratory,
relies upon Linux to power its huge particle accelerator.
> Google, Amazon, and Facebook all use Linux for their
web services

26/02/2017

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