Asia
Robots will replace customer service agents – thank god for that
Just this week, American fast food chain Taco Bell announced the TacoBot, which you can text via the Slack messaging app. You can use the bot to order food for yourself or a group of friends or co-workers, ask for recommendations and pay for it through Slack. As an executive said at the launch: "TacoBot is the next best thing to having your own Taco Bell butler…and who wouldn't want that?" You can order Domino's pizza through Amazon's AI assistant Echo (which hasn't made its way to the UK yet), and multinationals like Unilever and BMW use a simple Q&A bot that can answer any question a customer services employee would. The Henn-na hotel, which opened in Nagasaki, Japan last summer, is the world's first hotel to be fully staffed by robots – from check-in staff, to porters and the concierge.
Facebook founder Mark Zuckerberg believes AI is a force for good
In June, Professor Stephen Hawking warned that AI, disguised as helpful digital assistants, could one day spell the end for mankind. But not everyone agrees – including Facebook founder, Mark Zuckerberg. In a recent interview, Zuckerberg made a bid to reassure the world that AI is a force for good, and will destroy humanity. Mark Zuckerberg recently spoke to The Macro, saying that we should not see AI as a technological development which will bring about out species' demise A team from the University of Texas have created a new software that integrates humanoid robots and web-based tele-operation to provide humanoid robotic learners more access to the hardware. The software, named'Cloud-based Advanced Robotics Laboratory' (CARL), detects the movements of a human controller's body, mimicking the actions in the robot.
Jordan Furlong: AI Should Be Helping Lawyers Move Up The Value Chain
Artificial Lawyer caught up with Canadian legal consultant and futurist Jordan Furlong of Law Twenty One and asked him about his perspective on what opportunities and challenges AI faced in the legal sector. Do you see a strategic advantage for the law firms that embrace AI? If yes, how would that advantage manifest itself? We should probably begin by creating a working definition of'AI', which is a term applied so broadly in the legal sphere that, as Ryan McClead has pointed out, it might as well just be written as'magic'. Michael Mills of Neota Logic has suggested instead the term'cognitive technologies', which encompasses a wide range of tech applications including machine learning, natural language processing, and expert systems.
Singapore seeks to turn labor crunch into a robot revolution
SINGAPORE – Sherine Toh says her best days at work are when none of the 600 or so staff members at Singapore's Tung Lok Restaurants quits, though such days are rare. The Chinese restaurant group is one of the thousands of businesses struggling with a labor crunch caused by curbs on foreign workers that threaten the city-state's already feeble growth rates. "It has gotten much tougher compared to the old days, five years back," said Toh, who has at least 20 vacancies to fill at any one time as head of human resources. The group closed some outlets because of the shortage. The city's restaurants, hotels and retailers have become the biggest casualties of the labor crunch since Singapore accelerated restrictions on foreign workers in 2011 as political disquiet about immigration grew.
Ford Buys Israel's SAIPS in Bid to Put Self-driving Cars on the Road by 2021 - Business - Haaretz
Detroit got its first toehold in Startup Nation on Tuesday, after Ford Motor Co. said it was buying SAIPS, an Israeli company that develops technologies that are key to self-driving vehicles. The acquisition was one of four deals the U.S. carmaker announced with the aim of having a high-volume, fully autonomous vehicle in commercial operation in 2021 in a ride-hailing or ride-sharing service. Ford said the investment/collaboration with the four startups is part of its strategy of enhancing its autonomous vehicle development, which includes more than doubling its staff at its Palo Alto, California, research and development center. Ford said SAIPS, a computer vision and machine-learning startup, would strengthen its expertise in artificial intelligence and enhanced computer vision. The company provided no financial details about its acquisition, but industry sources estimated it at tens of millions of dollars.
8 tips for designing a chatbot avatar – VentureBeat
Although Chatbot UI (CUI) may seem like a new phenomenon, the technology has long been popular in countries like Japan and China. When Didi Dache integrated with WeChat's CUI for taxi service in 2014, the company quickly got over 700,000 bookings a day through WeChat alone. Fast forward to 2016: Silicon Valley has finally discovered CUI and has invested heavily in the sector, with hundreds of chatbots soon to be released into the market. One of the earliest steps in developing a chatbot is deciding how to give it a personality. Some companies take the Siri approach and choose not to give their chatbot a visual avatar, while Slack, for example, created the slackbot to make things a little more fun.
The AI-First Cloud: Can artificial intelligence power the next generation of cloud computing?
Is there a next phase for cloud computing? During the past few years, cloud computing has become a mainstream element of modern software solutions just as common as websites or databases. The cloud computing market is a race vastly dominated by four companies: Amazon, Microsoft, Google and IBM with a few other platforms with traction in specific regional markets such as AliCloud in China. In such a consolidated market, it's hard to imagine a technology being disruptive enough to alter the existing dynamics. Artificial intelligence (AI) is the type of technology with the potential to not only improve the existing cloud platform incumbents but also power a new generation of cloud computing technologies.
A Tight Convex Upper Bound on the Likelihood of a Finite Mixture
The likelihood function of a finite mixture model is a non-convex function with multiple local maxima and commonly used iterative algorithms such as EM will converge to different solutions depending on initial conditions. In this paper we ask: is it possible to assess how far we are from the global maximum of the likelihood? Since the likelihood of a finite mixture model can grow unboundedly by centering a Gaussian on a single datapoint and shrinking the covariance, we constrain the problem by assuming that the parameters of the individual models are members of a large discrete set (e.g. estimating a mixture of two Gaussians where the means and variances of both Gaussians are members of a set of a million possible means and variances). For this setting we show that a simple upper bound on the likelihood can be computed using convex optimization and we analyze conditions under which the bound is guaranteed to be tight. This bound can then be used to assess the quality of solutions found by EM (where the final result is projected on the discrete set) or any other mixture estimation algorithm. For any dataset our method allows us to find a finite mixture model together with a dataset-specific bound on how far the likelihood of this mixture is from the global optimum of the likelihood