Yesterday's announcement of Azure Machine Learning offers the latest sign of Microsoft's
At the Strata big data conference yesterday, Microsoft let the world know its Azure Machine Learning
offering was generally available to developers. This may come as a
surprise. Microsoft? Isn't machine learning the province of Google or
Facebook or innumerable hot startups?
In truth, Microsoft has quietly built up its machine learning expertise
over decades, transforming academic discoveries into product
functionality along the way. Not many businesses can match Microsoft's
deep bench of talent.
Machine learning -- getting a system to teach itself from lots of data
rather than simply following preset rules -- actually powers the
Microsoft software you use everyday. Machine learning has infiltrated
Microsoft products from Bing to Office to Windows 8 to Xbox games. Its
flashiest vehicle may be the futuristic Skype Translator, which handles
two-way voice conversations in different languages.
Now, with machine learning available on the Azure cloud, developers can
build learning capabilities into their own applications:
recommendations, sentiment analysis, fraud detection, fault prediction,
and more.
The idea of the new Azure offering is to democratize machine learning,
so you no longer need to hire someone with a doctorate to use a machine
learning algorithm. That could “pull big data out of the trough of
disillusionment,” suggests Joseph Sirosh, Microsoft’s corporate vice
president for information management and machine learning, who heads up
the new Azure service, “taking it from looking in the rearview mirror
with business intelligence to really being able to predict and generate
forecasts you can act on.”
Sirosh dreams big, suggesting that the potential goes far beyond
forecasting and predictions, to the point where “every mobile app can
now be intelligent and every IoT sensor can now send data to the cloud
and call on APIs that provide it with intelligence.” If that seems
overly optimistic, it’s worth looking at how important machine learning
already is for Microsoft’s own products.
Machine learning everywhere
Machine learning enables Clutter in Office 365
to determine with uncanny accuracy which email you'll want to read and
which messages you're likely to ignore and delete. It's how you can open
customer data from Salesforce or code from GitHub in the new Microsoft
Power BI portal and immediately ask natural-language questions like
“customer sales last quarter,” to get not only numbers, but a chart in
the style that highlights what’s important in the data.
It's how Office 365 and Azure spot hackers trying to break into
accounts, how Cortana can recognize what you’re saying, how Kinect can
detect the position of your fingers or the joints of your skeleton from
an infrared image. It's also why the keyboard on Windows Phone is so
accurate: Data derived from thousands of people correcting mistakes on
their phones enables the software to guess which letter you're going to
type next and make that key (invisibly) bigger.
The same machine learning technique makes it easier to touch the right
menu on a Windows tablet with your finger and helps OneNote figure out
your handwriting. Launch an app in Windows 8, and three-quarters of the
time it opens almost instantly, thanks to machine learning that tells
the system which apps to preload into memory because you’re going to
need them.
Machine learning takes enormous amounts of data -- whether it’s a server
log, a stream of information from sensors or a huge collection of
images, videos, or audio recordings -- and merges it into a system
that’s better at handling complex situations than any algorithm. The
idea has been around for 50 years, but as more and more data becomes
available, machine learning has become increasingly useful, going from
academic research to powering breakthroughs like usable voice
recognition.
“I honestly can't think of any recent product development that Microsoft
has been involved in that hasn't involved machine learning,” says
Microsoft’s director of research, Peter Lee, who left DARPA to run
Microsoft’s research arm. “Everything we do now is influenced, one way
or another, by machine learning.”
Take the recent Microsoft Band, the flagship device for Microsoft’s new
Health platform. “We wanted to get the blood flow sensor to provide
accurate readings even under extreme athletic duress like rowing,” Lee
explains (the vice president who approved the project is an avid rower).
“It’s a very low-cost sensor; just to interpret the reading from the
sensor, we've found machine learning is the only practical approach to
doing that.”
Decades in the lab
How did Microsoft get this good at machine learning? Thank the often
underestimated Microsoft Research (MSR) division. “Some of the earliest
roots [of this success] go back more than 20 years, with the arrival of
people like Eric Horvitz who really brought the whole vision of machine
learning to the company,” says Lee. “They very quickly came up with the
idea of applying this to Microsoft products.”
Horvitz, now managing director of MSR’s Redmond Lab, has won awards from
the Association for the Advancement of Artificial Intelligence to the
American Academy of Arts and Sciences, and he recently funded a
hundred-year study of artificial intelligence. Having someone that
influential at MSR helped attract other pioneers as machine learning
became relevant to one field of research after another.
“When we established the lab in Cambridge 15 years ago it added to the
momentum, with people who worked on probabilistic modelling, like Chris
Bishop, being attracted to MSR.”
Bishop literally wrote the book on neural networks and pattern
recognition; his textbook made statistical methods common in machine
learning. He’s now the chief research scientist at MSR Cambridge, where
he runs the Machine Learning and Perception group behind skeletal
tracking in Kinect, the AI in Forza Motorsport, the TrueSkill ranking
system on Xbox, as well as some of the search features in Bing and
SharePoint.
The team is also working on Infer.Net, a probabilistic programming
toolkit that uses machine-language descriptions of the world to handle
uncertainty, instead of needing every question to have the usual yes/no
answer of computers. That’s what Clutter uses to triage your inbox.
Researcher John Winn and his colleagues worked with the Exchange team
for four years on different ideas until they found something that could
“really add value and not be in some way creepy or attract the
negativity you can sometimes get when you start applying machine
learning to personal email.”
”Then as computer vision started to become more influenced by machine
learning, [we attracted] a large number of very significant luminaries
in that field who had one foot in machine learning and one in vision,
and people like Andrew Blake became very relevant,” Lee explains.
(Blake, who now runs the Cambridge lab, pioneered key probabilistic
computer vision algorithms at Edinburgh and Oxford University.)
A few years later, when AT&T closed down Bell Labs, many of the
researchers joined Microsoft. “People who were really thinking about
neural networks and more statistical methods started to arrive on the
scene,” says Lee. “That was timed with the emergence of the relevance of
big data; that whole wave has been tremendously influential, not only
inside Microsoft but in the whole industry.”
Then in 2009, shortly before Lee himself joined Microsoft, a project
that he jokes he might easily have rejected as “an unwise attempt to use
layered neural networks for speech processing” helped take machine
learning out of the lab and into mainstream computing.
“I would have said it was completely ridiculous, and I would have been
backed by all the top researchers,” Lee admits. Instead, that work
became the foundation for the multilayered "deep" neural networks that
have transformed voice and image recognition across the industry.
Diving deeper
Voice recognition used to mean training your computer to learn your
voice, or sticking to a few simple commands; now it means you can buy a
new phone and start talking to it -- and Windows 10 will bring that to
your PC.
Image recognition has gone from spotting when there’s a face in a
photograph to coping with everything from text to traffic signals. The
ImageNet benchmark tests identifying photos of a thousand objects, like
recognizing not only pictures of 150 different dogs but also their
breeds. ”You have to distinguish Pembroke Welsh corgis and Cardigan
Welsh corgis, one of which has a longer tail,” explains John Platt of
MSR.
This month, a team of Microsoft researchers in the Beijing lab announced
that their deep learning system was the first to beat untrained humans
on the benchmark (narrowly beating Google to the achievement).
That’s all thanks to deep learning. It’s one of the fastest-moving areas
in AI today; the pioneers of deep learning work at Google, at Facebook,
at Baidu -- and at Microsoft.
In 2009, when Geoff Hinton of the University of Toronto proposed
creating a neural network that would recognize speech by gradually
building up its understanding of more and more words (a vastly
simplified version of one of the techniques the human brain uses to
recognize patterns in images sounds), most researchers weren’t
interested. In a testament to MSR’s willingness to experiment, an intern
and a graduate student of Hinton got approval to work with his
researchers and try out this deep network with real data.
Their results weren’t only a little bit better; they were 25 percent
more accurate. Once they were published, Lee points out, “not only
Microsoft but most of the industry transitioned to using them.”
Bringing machine learning to the masses
As Microsoft offers its own machine learning tools to developers, the
company may enjoy greater recognition for its pioneering work. “We have a
treasure trove of knowledge and algorithms and code across a vast array
of machine problems that would be incredibly powerful and satisfying to
get into wider use,” says Lee.
Azure Machine Learnig is how Microsoft is trying to do that. Joseph
Sirosh calls it "the fastest way to build predictive models and deploy
them. All you need is a Web browser to start machine learning. It allows
simple, one-click creation of APIs in the cloud and that makes the
deployment easy. It’s easy to hook up a Web page, it’s easy to hook up a
mobile app. That’s why I think it’s transforming how development is
done.”
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