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Posts tagged ‘Google’

8
Jul

Action Launcher 3.5 puts your beloved Android apps in the search bar


The ubiquitous search box widget at the top of your Android mobile device is getting some new tricks. Chris Lacy, creator of the Action Launcher app, announced the release of Action Launcher 3.5 on Tuesday. The new version builds on AL 3.0, which allowed users to match the widget’s color to their background theme (as well as the app drawer) or scroll through an alphabetical app list accessible from the home screen. The app also features slick shortcuts for both folders and widgets called covers and shutters, respectively. And with the release of AL 3.5, users can fully customize the search box by incorporating apps, shortcuts and even menu groups directly into the bar itself.

“I’m very happy with how the Quickbar has turned out,” Lacy wrote on a Google+ post. “It may not look like it, but this feature was an absolutely mammoth design and engineering undertaking.” And from the looks of this update, why stick with Google’s stock launcher?

Filed under: Internet, Google

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Source: Google Plus

7
Jul

Google trials Uber-like service in Israel


Android_Auto_Sign_Google_IO_01_TA

Uber is not the only one trying to change the way we can commute, Google is also trying to get in on the action as well. In Tel Aviv, Google is set to trial a service called RideWith that is meant to help commuters during heavy traffic hours.

Essentially, the RideWith app will use Waze data to help commuters organize pickups and drop offs to locations they were already heading anyways, like work or a scheduled grocery trip. It is not meant to be a taxi service, but more so a carpooling service. Riders are limited to two rides per day, and can only join rides that originate from their neighborhoods, or for when they need to take a return trip, the area they are in. Think of it functioning similarly to a bus route.

Payment for each ride can be made from via credit card linked from the app. The key difference between Uber and this service will be how the payment will be used. With Uber, it’s a service fee with profit covering the drivers needs and Uber’s cut of the transaction. RideWith uses the money to cover wear and tear and gas. Google is set to get a cut of the RideWith fee, but there isn’t any information on the percentage just yet.

For now, the trial is limited to Tel Aviv, which makes sense, if you want to rival a big giant, even though Google is a giant itself, you have to fine tune your direction early on. This is all good news for consumers, more diversity and competition is always welcome.

Source: WSJ

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7
Jul

Google begins testing its self-driving cars in Austin, Texas


google_self_driving_car_prototype

Google today posted on Google+, announcing that it will be taking its self-driving car project to the thriving city of Austin, Texas. Google says this expansion is to test its self-driving software in different driving environments, such as unique driving patterns and road conditions.

This expansion makes a lot of sense, considering that Austin, Texas is known to be one of the worst city’s in North America for traffic. In fact, according to TomTom’s latest Traffic Index, Austin is ranked 13 for the worst traffic in the United States, and ranked 18 in all of North America. It’s an excellent location for Google to really put its self-driving software through some rigorous testing.

Google earlier revealed that they were launching the project in Mountain View, California not long after reporting that its self-driving cars had only gotten in 11 minor accidents during six years of testing.

What’d really be interesting is if Google begins testing in Boston or New York City during winter months. That’ll definitely ensure Google knows how to put together some solid self-driving software.

Has anyone seen Google’s self-driving Lexus SUV in Austin, yet?

source: Google Self-Driving Car Project (Google+), TomTom

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7
Jul

FBI director says he’s ‘not a maniac’ about backdoor cellphone access


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FBI director James Comey is making a final push for backdoor cellphone access for law enforcement ahead of key Senate committee meetings. In national security site Lawfare, he first admitted that “universal strong (cellphone) encryption will protect all of us — our innovation, our private thoughts, and so many other things of value — from thieves all kind.” However, he quickly added that “there are many costs to this,” citing terrorist organizations like ISIS. He said that the group recruits members “through mobile messaging apps that are end-to-end encrypted… (and) may not be intercepted, despite judicial orders under the Fourth Amendment.”

However, as critics have pointed out, he again failed to mention the downsides of backdoor access. One of the biggest is that it opens new security holes that make everyone more vulnerable, including the government itself. For instance, a company that supplied tools used by the NSA to spy on US citizens and government was itself hacked recently, which could result in a security nightmare if its apps fall into the wrong hands. Another problem is trusting law enforcement not to overreach. Comey said that access would only happen “in appropriate circumstances and with appropriate oversight.” However, as the Snowden revelations proved, the FBI and NSA operate without much oversight and virtually no public transparency.

FBI director James Comey testifies before a subcommittee

FBI Director James Comey

Comey thinks that the bad and good parts of strong encryption are “in tension,” but didn’t offer any evidence that the “bad parts” of encryption have thwarted law enforcement. Instead, he vaguely offered that “there is simply no doubt that bad people can communicate with impunity in a world of universal strong encryption.” By contrast, Apple’s new, strong encryption scheme has given thousands of iPhone users proven benefits by protecting their personal data from thieves, as one pundit pointed out.

Despite all that, Comey said that the US still needs to have a “robust debate” about encryption. Tech companies like Google and Apple have already made their feelings clear, though, telling President Obama that they were strongly opposed to special government access to devices. Both companies recently introduced strong encryption for apps like Gmail and iMessage, and Apple says it can’t read user’s messages itself, let alone share them with law enforcement. However, Comey’s message may be targeted more at politicians than the public. Later this week, he has crucial meetings with the Senate Intelligence Comittee and the Senate Judiciary Comittee, where he’ll try to convince them of the dangers of using encryption to “go dark.”

[Image credit: AFP/Getty Images]

Filed under: Cellphones, Internet, Apple, Google

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Via: Nextgov.com

Source: Lawfare

7
Jul

ICYMI: 3D-printed art, a Pac-Man satellite and more


ICYMI: 3D Printed Light Art, Pacman Style Satellite and More

Today on In Case You Missed It: The giant robot duel challenge response is in from a Japanese mecha-manufacturer (aimed at some lippy Americans with a super paintball gun) and it’s throwing hella shade y’all. Switzerland’s EPFL space agency realized its old cubesats were cluttering up space so it came up with a hungry hippo of a satellite that should start gobbling up its smaller kin by 2018. And an architect hacked a 3D printer with LEDs and is creating beautiful paintings with light.

Today’s happy bonus video is more like a night terror: Google’s Artificial Neural Network is being used to distort images like this scene from Fear and Loathing in Las Vegas. No thanks.

From the cutting room floor: I’m way into the idea of this stretchable mesh that conforms to your body and soothes sore muscles. It didn’t make the cut because there aren’t any videos of the thing, but if you stumble across any similarly interesting clips or stories, we’d love to see them! Just tweet us with the #ICYMI hashtag @engadget or @mskerryd.

Filed under: Cellphones, Misc, Robots, Science, Internet, Google

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7
Jul

What is machine learning?


One area of technology that is helping improve the services that we use on our smartphones, and on the web, is machine learning. Sometimes, the terms machine learning and artificial intelligence get used as synonyms, especially when a big name company wants to talk about its latest innovations, however AI and machine learning are two quite distinct, yet connected, areas of computing.

The goals of AI is to create a machine which can mimic a human mind and to do that it needs learning capabilities. However the goal of AI researchers are quite broad and include not only learning, but also knowledge representation, reasoning, and even things like abstract thinking. Machine learning on the other hand is solely focused on writing software which can learn from past experience.

What you might find most astonishing is that machine learning is actually more closely related to data mining and statistical analysis than AI. Why is that? Well, lets look at what we mean by machine learning.

machine_learning_robot

One of the standard definitions of machine learning, as given by Tom Mitchell – a Professor at the Carnegie Mellon University (CMU), is a computer program is said to learn from experience E with respect to some class of tasks T and performance measure P, if its performance at tasks in T, as measured by P, improves with experience E.

A computer program is said to learn from experience E with respect to some class of tasks T and performance measure P, if its performance at tasks in T, as measured by P, improves with experience E.

To put that a bit more simply, if a computer program can improve how it performs a task by using previous experience then you can say it has learned. This is quite different to a program which can perform a task because its programmers have already defined all the parameters and data needed to perform the task. For example, a computer program can play tic-tac-toe (noughts and crosses) because a programmer wrote the code with a built-in winning strategy. However a program that has no pre-defined strategy and only has a set of rules about the legal moves, and what is a winning scenario, will need to learn by repeatedly playing the game until it is able to win.

This doesn’t only apply to games, it also true of programs which perform classification and prediction. Classification is the process whereby a machine can recognize and categorize things from a dataset including from visual data and measurement data. Prediction (known as regression in statistics) is where a machine can guess (predict) the value of something based on previous values. For example, given a set of characteristics about a house, how much is it worth based on previous house sales.

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That leads us to another definition of machine learning, it is the extraction of knowledge from data. You have a question you are trying to answer and you think the answer is in the data. That is why machine learning is related to statistics and data mining.

Types of machine learning

Machine learning can be split into three broad categories: Supervised, unsupervised and reinforcement. Let’s look at what they mean:

Supervised learning is where you teach (train) the machine using data which is well labeled. That means that the data is already tagged with the correct answer (outcome). Here is a picture of the letter A. This is the flag for the UK, it has three colors, one of them is red, and so on. The greater the dataset the more the machine can learn about the subject matter. After the machine is trained, it is the given new, previously unseen data, and the learning algorithm then uses the past experience to give a result. That is the letter A, that is the UK flag, and so on.

Unsupervised learning is where the machine is trained using a dataset that doesn’t have any labeling. The learning algorithm is never told what the data represents. Here is a letter, but no other information is given about which letter. Here are the characteristics of a particular flag, but without naming the flag. Unsupervised learning is like listening to a podcast in a foreign language which you don’t understand. You don’t have a dictionary and you don’t have a supervisor (teacher) to tell you about what you are hearing. If you listen to just one podcast it won’t be of much benefit, but if you listen to hundreds of hours of these podcasts your brain will start to form a model about how the language works. You will start to recognize patterns and you will start to expect certain sounds. When you do get hold of a dictionary or a tutor then you will learn the language much quicker.

One of the buzzwords that we hear from companies like Google and Facebook is ‘Neural Net.’

The key thing about unsupervised learning is that once the unlabeled data has been processed it only takes one example of labeled data to make the learning algorithm fully effective. Having processed thousands of images of letters, processing one letter A will instantly label a whole section of the processed data. The advantage is that only a small set of labelled data is needed. Labeled data is harder to create than unlabeled data. In general we all have access to large amounts of unlabeled data, and only small amounts of labeled data.

Reinforcement learning is similar to unsupervised training in that the training data is unlabeled, however when asked a question about the data the outcome will be graded. A good example of this is playing games. If the machine wins the game then the result is trickled back down through the set of moves to reinforce the validity of those moves. Again, this isn’t much use if the computer plays just one or two games. But if it plays thousands, even millions of games then the cumulative effect of reinforcement will create a winning strategy.

How does it work

There are lots of different techniques used by engineers building machine learning systems. As I mentioned before, a large number of them are related to data mining and statistics. For example, if you have a dataset which describes the characteristics of different coins including their weight and diameter then you can employ statistical techniques like the ‘nearest neighbors’ algorithm to classify a previously unseen coin. What the ‘nearest neighbors’ algorithm does it look to see what classification was give to the nearest neighbors and then give the same classification to the new coin. The number of neighbors used to make that decision is referred to as ‘k’, and so the full title for the algorithm is ‘k-nearest neighbors.’

However there are lots of other algorithms that try to do the same thing, but using different methods. Take a look at the following diagram:

machine-learning-classifier-comparison2x5

The picture on the top left is the data set. The data is classified into two categories, red and blue. The data is hypothetical, however it could represent almost anything: coin weights and diameters, number of petals on a plant and their widths, etc. Clearly there is some definite grouping here. Everything in the upper left belongs to the red category, and the bottom right to blue. However in the middle there is some crossover. If you get a new, previously unseen, sample which fits somewhere in the middle, does it belong to the red category or to blue? The other images show different algorithms and how they attempt to categorize a new sample. If the new sample lands in a white area then it means it can’t be classified using that method. The number on the lower right shows the classification accuracy.

Neural Nets

One of the buzzwords that we hear from companies like Google and Facebook is “Neural Net.” A neural net is a machine learning technique modeled on the way neurons work in the human brain. The idea is that given a number of inputs the neuron will propagate a signal depending on how it interprets the inputs. In machine learning terms this is done with matrix multiplication along with an activation function.

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The use of neural networks has increased significantly in recent years and the current trend is to use deep neural networks with several layers of interconnected neurons. During Google I/O 2015, Senior Vice-President of Products, Sundar Pichai, explained how machine learning and deep neural networks are helping Google fulfill its core mission to “organize the world’s information and make it universally accessible and useful.” To that end you can ask Google Now things like, “How do you say Kermit the Frog in Spanish.” And because of DNNs, Google is able to do voice recognition, natural language processing, and translation.

Currently Google is using 30 layer neural nets, which is quite impressive. As a result of using DNNs, Google’s error rate for speech recognition has dropped from 23% in 2013 to just 8% in 2015.

Some examples of machine learning

So we know that companies like Google and Facebook use machine learning to help improve their services. So what can be achieved with machine learning? One interesting area is picture annotation. Here the machine is presented with a photograph and asked to describe it. Here are some examples of machine generated annotations:

machine-learning-image-annotation

The first two are quite accurate (although I am not sure there is a sink in the first picture), and the third is interesting in that the computer managed to detect the box of doughnuts, but it misinterpreted the other pastries as a cup of coffee. Of course the algorithm can also get it completely wrong:

machine-learning-image-annotation-errors

Another example is teaching a machine to write. Cleveland Amory, an American author, reporter and commentator, once wrote, “In my day the schools taught two things, love of country and penmanship — now they don’t teach either.” I wonder what he would think about this:

machine-learning-In my day the schools taught-840px

The above handwriting sample was produced by a Recurrent Neural Network. To train the machine its creators asked 221 different writers to use a ‘smart whiteboard’ and to copy out some text. During the writing the position of their pen was tracked using infra-red. This resulted in a set of x and y coordinates which were used for supervised training. As you can see the results are quite impressive. In fact, the machine can actually write in several different styles, and at different levels of untidiness!

Google recently published a paper about using neural networks as a way to model conversations. As part of the experiment the researchers trained the machine using 62 million sentences from movie subtitles. As you can imagine the results are interesting. At one point the machine declares that it isn’t “ashamed of being a philosopher!” While later when asked about discussing morality and ethics it said, “and how i’m not in the mood for a philosophical debate.” So it seems that if you feed a machine a steady diet of Hollywood movie scripts the result is a moody philosopher!

Wrap-up

Unlike many areas of AI research, machine learning isn’t an in tangible target, it is a reality that is already working to improve the services we use. In many ways it is the unsung hero, the uncelebrated star which works in the background trawling through all our data to try and find the answers we are looking for. And like “Deep Thought” from Douglas Adam’s Hitchhiker’s Guide to the Galaxy, sometimes it is the question we need to understand first, before we can understand the answer!

7
Jul

Nest’s home security camera comes to the UK


Last month, Nest unveiled two new products that could make your home a whole lot safer: a revamped Protect smoke alarm and a wireless Nest Cam security camera. Both quickly debuted in the US and now, they’re available in the UK too. The new £159 Nest Cam is clearly inspired by Dropcam — the startup that Nest acquired last year for $555 million. The hardware offers some useful improvements though, such as a magnetic base (with tripod mount) that can be easily attached to most home surfaces. It also shoots in 1080p and uses eight built-in infrared LEDs to record and detect motion after dark. You can check the camera’s live feed from your phone and “soon” Nest will be launching its Aware cloud backup service (£8 per month) so you can review anything from the last 30 days.

The second-gen Protect, meanwhile, is slightly smaller and curvier than its predecessor, with a new “split-spectrum sensor” that better detects both fast and slow-spreading fires. There’s also deeper integration with the Nest companion app, which lets you silence deafening alarms from your phone and test the device’s various speakers and sensors. Just like the previous model, all of this will set you back £89 online and in stores.

Filed under: Household, Google

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Source: Nest Cam, Protect (UK)

7
Jul

Google is testing self-driving cars in Austin, Texas


Driverless Cars-Accidents

Plenty of folks in Austin, Texas have spotted Google’s distinctive self-driving Lexus cars recently, and now we know why. The company revealed that it’s now rolling the vehicles in downtown Austin in order to “(test) our software in different driving environments, traffic patterns and road conditions.” While Google could also test its self-driving cars in Nevada and elsewhere, Austin is the first city outside of Mountain View where it’s actually done so. The reason? “We’ve loved how much Austin embraces innovation,” a Google spokesman told the Austin American-Statesmen. She added that with Google Fiber and several company offices in the city, it was a natural fit for self-driving cars.

As before, Google’s self-driving vehicle will have two safety drivers aboard, ready to take the controls. The company sought permission with Texas Governor Greg Abbott, the Texas Department of Transportation, police and other authorities before starting tests. However, it didn’t alert the public or press about the cars before they began rolling last month, apparently, causing many to wonder if the testing was even legal. Some experts question the safety of Google’s cars, pointing out that they’ve been involved in at least 11 accidents since testing started. However, Google recently released the details of those incidents and said all were minor and not the fault of its autonomous cars.

Filed under: Transportation, Google

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Source: Google

7
Jul

Paranoid Android finally releases Android 5.1 builds for Nexus devices


Paranoid Android Header

Paranoid Android fans with Nexus devices have been suffering for quite some time. Well, don’t you worry, as today is your lucky day! The team has announced via a blog post that the new version of the popular ROM is now available for a select list of Nexus devices.

Unfamiliar with Paranoid Android? Android geeks shouldn’t be, so let’s tell you a bit about them. Paranoid Android makes one of the most popular Android ROMs out there. In fact, they are the biggest ROM aside from CyanogenMod, which makes them an important part of the developer community. They have been forced to go through some major changes lately, though, as OnePlus has hired a large portion of the team’s talent.

oneplus oxygenos team

While we are not sure this is the direct cause of the delays to Paranoid Android’s Android 5.1 release, the team does state it’s because they “are missing the manpower they had in the past on their core team.” I would bet my money on this being about the people who left for OnePlus! Regardless, the team has brought most supported Nexus devices up to speed with the supported legacy devices.

There are a couple caveats, which we should go through before telling you more about the new build. The team has been working very hard to get this build done, but they haven’t been able to finish everything just yet. As a result you will be missing cool features like Theme Engine, Quick Settings Reordering, App Ops, Advanced Power Menu and Immersive Mode. Also, keep in mind you will have to flash Google Apps.

nexus 6 first impressions (17 of 21)

Without further ado, let’s talk about the newly supported Nexus devices! Today’s release adds Android 5.1 support to the shamu (Nexus 6), hammerhead (Nexus 5), mako (Nexus 4), flounder (Nexus 9), flo (Nexus 7 2013) and grouper (Nexus 7 2012). This leaves only cellular-capable tablets and the Nexus 10 out of the loop, but it’s only because they don’t have the devices in hand. They do suggest owners of these devices come test their builds if they are willing. You can contact Evan Anderson at evananderson@aospa.co if interested.

Paranoid Android is also announcing they are easing up on releases from now on, due to obvious reasons. Instead of offering weekly releases, they are switching to a “release when appropriate” schedule. Makes sense, even if it does sadden us. Hopefully they can get more team members on board soon! As for now, Nexus device owners can go ahead and download the necessary files from their official distribution site. Also, try to help them with coding through gerrit if you can, they need it now more than ever.

7
Jul

Ramboat: Hero Shooting Game hits the Google Play Store


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Finding a good game can be hard, especially considering how many options we get in the Google Play Store. It’s a sea of apps in there, and you can’t really go testing them one by one. Need some help? Here at Android Authority we do Android 24/7 and make the time to check these fun games out. A great new game we have our eyes on right now is Ramboat: Hero Shooting Game. Let’s take a quick look at it.

So you may have noticed the game’s title is very familiar. Did you ever watch Rambo movies? This game offers an uncanny, yet fun resemblance to the style and feeling the Stallone-featuring films portrayed. The main difference is that the game is caricatured and cute… but it sure is no less intense.

This action-packed game will keep you on your toes at all times. You will have one mission and one mission only – to escape. The only issue is that your enemies don’t make that an easy feat. They will be coming from above, below, behind you and in front of you. Your enemies are all over the place, so you will have to make sure you clear the way by taking them down.

The main character is Mambo (funny, right?), but he is not Stallone alone. You can also use 9 other characters as you progress in the game, and it’s even possible to upgrade your boats and weapons.

It’s a very fun game built by Genera Games, a very popular developer with ample experience and a good list of titles in the Google Play Store. Other games by Genera include RunBot, Zombie Hunter: Apocalypse and Death Race: The Game. You know this will be a quality game!

ramboat-1

Ramboat: Hero Shooting Game is now available from the Google Play Store and you can download it for free. They do make money via in-app purchases, though. You can buy in-game currency to speed up your progress, if you choose to support the developer. If you don’t, you should be able to have some great fun without paying cash. Might as well go try it and have some fun.

Who is playing Ramboat? Are you liking it? Come back and hit the comments to let us know how you feel about the game!