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How AI Is Expanding The Applications Of Robo Advisory – Forbes

For the last couple of years, Artificial Intelligence (AI) has been changing many fields and increasing efficiency by using improved datasets. One of those areas where AI has accelerated evolution is the robo-advisory, which is a field having extensive financial big data to analyze.

Robo-advisors are the systems that use algorithms to automatically perform investment decisions or tasks which are mostly done by human advisors. Robo advisors are a potential solution to the complexities of financial decision making, said Jill E. Fisch, a law professor at the University of Pennsylvania at a conference of Pension Research Council.

In the main scheme, robo-advisors are merging customers information such as their financial goals, risk tolerances, timeframes, with the right asset allocation that qualifies customers needs. While making this merge, they use many algorithms including machine learning models to create the best fit for the customer. In the process of timeframe, they take lots of actions as well such as rebalancing the portfolio or performing tax-loss harvesting. This automatically increases efficiency while taking decisions at the right time for the portfolio.

AI usage in enterprises

Numerous enterprises have started to use AI in the robo-advisory field. Betterment is one of these robo-advisor enterprises that uses AI to reduce taxes on transactions where machine learning algorithms select the specific tax consequences of the transactions.Similar to Betterment, SigFig also uses its AI engine automatically to allocate assets and determines which investments will result in minimum taxes.

Another enterprise that uses AI is Wealthfront. Former CEO Adam Nash says, Were firm believers that artificial intelligence applied to your actual behavior will provide far more powerful advice than what traditional advisors offer today.

Also, Fidelity has already started its robo-advisory service in 2016 as Fidelity Go and as the beginning of 2019, Fidelity Go took top ranking as the best overall robo-advisor in the 2019 winter edition of The Robo Ranking report from Backend Benchmarking.

Efficiency side

The biggest impact of AI might be the time-saving base for human advisors. With AIs deep learning capabilities which relieve advisors from having to perform much of the rote or mundane monitoring and administrative tasks that currently allocate a significant portion of their time. When allocations fall outside of certain parameters for the specific clients, an AI-based system can trigger it into the monitor of the human advisor.

To increase efficiency, AI requires vast amounts of data to give more accurate results. Analysis of vast quantities of historical and financial data will uncover alpha opportunities that traditional analysis would otherwise overlook and give robo-advisors an edge over passive strategies and AI can process big data swiftly, allowing robo-advisors to adapt to changing market conditions and consumer behaviors much quicker in order to make better investment decisions. Time saved is key here, says John Zhang, founder of a robo-advisory startup WealthGap which explores AI in hedge funds-like portfolios.

Enterprises that offer robo-advisory services may not abandon the human component completely, but it seems the adoption of artificial intelligence is enhancing the platforms and they will be more able to give clients the big picture in the course of time.

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For This High-Yield Stock, 5G and Artificial Intelligence Outweigh Coronavirus – The Motley Fool

The technology sector is in an interesting place today. On the one hand, technology has historically tended to be cyclical, with technology demand fluctuating with GDP growth. On the other hand, technology is achieving more extraordinary feats by the day, and is helping to solve a lot of the problems caused by coronavirus. That may actually lead to a surge in demand for some tech products and services due to the stay-at-home economy.

These cross-currents came into focus in the first quarter earnings release of technology bell-weather Taiwan Semiconductor Manufacturing (NYSE:TSM). Taiwan Semi is the world's largest and most advanced outsourced foundry, making chips for tech giants including Apple (NASDAQ:AAPL), Qualcomm (NASDAQ:QCOM), and AMD (NASDAQ:AMD), among many others. Notably, Taiwan Semi leaped ahead of others in its ability to make leading-edge semiconductor chips on the 7nm node, with an eye toward 5nm production later this year.

Apparently, demand for leading-edge chips isn't seeing any slowdown from the COVID-19 outbreak.

Image source: Getty Images.

In the first quarter, Taiwan Semi saw explosive growth over the prior year.

Taiwan Semiconductor Manufacturing (NYSE:TSM)

Q1 2020

Revenue growth

42%

Gross margin

51.8% (+10.5 percentage points)

Net income growth

90.6%

Return on Equity

28.4%

Data source: Taiwan Semiconductor Q1 presentation. Table by author. YOY=year-over-year.

These are eye-popping growth numbers for sure, but don't expect the company to keep growing at this rate for the rest of 2020. The first quarter was lapping the first quarter of 2019, a recessionary quarter for tech due to the U.S.-China trade war. For the second quarter, Taiwan Semi's management basically predicts flat growth quarter over quarter.

Taiwan Semi management also anticipates a slowdown in the second half of this year amid the economic fallout from COVID-19. Management expects the overall semiconductor industry (ex-memory) to be flat to down for the year -- and 2019 wasn't exactly a great year for semiconductors.

However, for Taiwan Semiconductor specifically, the picture is much brighter. Management anticipates foundry growth in the high single digits or low teens this year, and that Taiwan Semi should outgrow even that, in the mid to high teens. That's pretty impressive as the rest of the world goes into recession.

Chalk up Taiwan Semiconductor's success to its lead in manufacturing chips on leading-edge nodes. Leading nodes are the smallest, densest, most advanced chips, with higher power and better battery efficiency. More powerful chips are needed in all the big megatrends today, from 5G communications to artificial intelligence applications in the data center.

For instance, Taiwan Semiconductor gets almost half of its revenue from smartphone chips. You might think this would cause Taiwan Semi's revenue to fall, since it expects smartphone units to decline in the "high single-digits" this year. However, because more and more 5G phones need leading-edge chips, TSM's content growth per smartphone will be over 20%, according to management, meaning overall smartphone revenue for Taiwan Semi should grow in the mid to high teens, even as units decline.

Meanwhile, high-performance computing, Taiwan Semi's other big sector, not only needs leading-edge chips, but is actually seeing a demand surge due to increased cloud use amid work-from-home streaming applications.

Last quarter, smartphones were 49% of TSM sales and high-performance computing was 30%. Leading-edge 7nm nodes made up 35% of revenue, the largest node segment for the company.

Basically, since Taiwan Semi has a lead on other foundries at the leading edge, it won't be nearly as affected as the rest of the semiconductor industry.

When asked about the company's 3.2%dividend on the conference call with analysts, management reiterated that the company will pay its current quarterly divided, with the intention of raising it in the future, and the dividend would not go below the current payout going forward. That's certainly refreshing in an environment when many companies are cutting their dividends instead.

When looking for dividend stocks in the midst of the coronavirus, it's probably best to stick with companies that:

Today, Taiwan Semiconductors fits all three criteria. That's why it's one of the safest dividendsout there, not only in tech, but also the entire market.

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For This High-Yield Stock, 5G and Artificial Intelligence Outweigh Coronavirus - The Motley Fool

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Pentagon Needs Tools to Test the Limits of Its Artificial Intelligence Projects – Nextgov

The Pentagon is shopping around for ideas from industry regarding how it might better test and evaluate future artificial intelligence products to ensure they are safe and effective.

In a request for information this week, the Pentagons Joint Artificial Intelligence Center, or JAIC, seeks input on cutting-edge testing and evaluation capabilities to support the full spectrum of the Defense Departments emerging AI technologies, including machine learning, deep learning and neural networks.

According to the solicitation, the Pentagon wants to augment the JAICs Test and Evaluation office, which develops standards and conducts algorithm testing, system testing and operational testing on the militarys many AI initiatives.

The Pentagon stood up the JAIC in 2018 to centralize coordination and accelerate the adoption of AI and has been building out its ranks in recent months, hiring an official to implement its new AI ethical principles for warfare.

The JAIC is requesting testing tools and expertise in planning, data management, and analysis of inputs and outputs associated with those tools. The introduction of AI-enabled systems is bringing changes to the process, metrics, data, and skills necessary to produce the level of testing the military needs, and that is why the JAIC is requesting information, Dr. Jane Pinelis, Chief, Test, Evaluation and Assessment at the JAIC, said in a statement. Testing and Evaluation provides knowledge of system capabilities and limitations to the acquisition community and to the warfighter. The JAIC's T&E team will make rigorous and objective assessments of systems under operational conditions and against realistic threats, so that our warfighters ultimately trust the systems they are operating and that the risks associated with operating these systems are well-known to military acquisition decision-makers."

The solicitation indicates it plans to use feedback from the solicitation to guide how it further builds out its capabilities. Specifically, the Pentagon is interested in tech testing tools that focus on:

In addition, the Pentagon wants feedback regarding evaluation services in five mission areas: dataset curation, test harness development, model output analysis, test reporting and testing services. Lastly, it seeks other technologies it may not be aware of that may be beneficial to testing and evaluation efforts.

Responses to the RFI are due May 10.

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How Artificial Intelligence Is Influencing the Banking Sector – G2

The banking industry has always seemed to be one of the most developed and willing to invest in new technologies.

It's no wonder that artificial intelligence has quickly become one of the technical pillars on which the entire modern financial market is built.

Not everyone is aware that AI is not only leading analytical solution, but also a way to change the way customers interact with services provided by the financial industry. Let's take a closer look at this extraordinary relationship, its impact on the way we use banks, and on issues such as fraud detection and compliance regulations.

Artificial Intelligence is used in many FinTech solutions. Its a cure for the daily challenges faced by many businesses like customer experience personalization and loyalty building, to strictly technical financial features such as anomaly detection or fraud prevention.

The beginnings of AI in the industry, however, were not so simple. The first attempts to improve the operation of banks using computers were made in the 1950s. The story started with the simplest and most obvious solutions: accountants wanted to use computers to make calculations much faster and more accurately than real people could.

However, it turned out that their use might not be so easy since the machines themselves were not as powerful as they are now. Despite this fact, Bayesian statistics, which is used in machine learning even today, was implemented to expand algorithms enabling processing actions such as stock market predictions, loan repayments or calculation of probabilities regarding auditing.

In the early 90s, AI and machine learning appeared on Wall Street along with the first hedge funds - but there was still no significant breakthrough. It appeared only with the increased availability of data, generally with the spread of the internet. Since then, there has been an extremely rapid evolution of operating systems, taking advantage of the increasing capabilities of machines.

Nowadays AI basically affects every area of a bank's operations as well as the work of departments that we often forget about in the context of using technology in the financial sector, such as corporate core aspects, including even human resource team work.

All the aspects in which AI is involved are perfectly summarized in the heat map below:

Source

Considering the multitude of AI applications in the industry, you could basically write a book about each of them. Let's focus on the most common solutions that are already (or are about to be) popularly used in FinTech and which, as consumers, we should be well aware of.

According to Accenture, there are some key trends in the industry which should be followed:

To simplify matters even more, the above-mentioned aspects can be divided into four groups:sales optimization, growth revenue driving, operational process improving, and credit risk management.

But its not only about the possibilities in the field of topics to cover. The scale of use of artificial intelligence across whole companies operating in the industry is enormous. The AI in Financial Services global study shows that 85% of all respondents currently use some form of AI. As a reason for implementing such solutions, respondents indicated the need to boost both speed and efficiency, and the demand for broader data-driven insights.

What's more, the declarative statistics contained in the report are even more optimistic: 77% of respondents said that AI will become the most important or one of the most important investment areas for their businesses by the end of 2020.

But what exactly do FinTech representatives want to invest in? Contrary to appearances, most of them (64%) primarily plan to invest in reaching mass users, thanks to the implementation of AI in aspects such as revenue generation, process automation, risk management, customer service, and client acquisition. This is an extremely significant increase. At present, only 16% of respondents declare the intention to invest in these areas.

Let's stop for a moment at the division placed at the end of the last paragraph and take a closer look at each of the areas mentioned:

Benefits resulting from the use of AI in FinTech, Synerise

They benefit with advantages valued by managers responsible for financial institutions strategies i.e. cost reduction, sales, and revenue improvement or business risk mitigation. However, its also worth mentioning that the AI options used by banks do not end there. The possibilities can go far behind typical expected features.

Theres a saying in the financial market thats very timely: people don't really need banks, they need banking.

In the age of smartphones and simplified login methods, theres a special way of entering a bank's mobile application: taking a selfie. This solution is relatively easy to deploy and implement. The identification procedure is speedy and does not require too many actions from the end user, which in itself is an encouraging way to drive adoption of the process.

The OCBC Bank from Singapore enabled clients to use such an AI-driven option; the only requirement needed to be logged in this way is to have an iPhone X.

Citing the bank's official statement, its users, thanks to facial recognition solution, can now: dispense with passwords or even fingerprints when doing their everyday banking on mobile apps.

But how does this technology actually work? As the name suggests, the success of the login process depends on the identifying or verifying the identity of a given bank user. AI captures, analyzes, and compares specific patterns that each of us has on our face.

Let's look at the instructions prepared by another bank using this technology, Polish bank PEKAO:

Instructions on how to take a selfie are needed to set up an account: gesture blink eyes, gesture turn head left, gesture turn head right

As the bank's CEO, Micha Krupiski, said, the company is very pleased with the results of the introduction of face recognition technology, and about 25% of the account entries were made outside the bank's business hours.

He emphasized that:

"We believe in our banking, our advantage is the strength of the mobile application, we've been growing by 50-60 percent year on year here. We will invest even more in the mobile app.

The results turned out to be so satisfying that selfie-verification functionality will probably also be adapted to the needs of micro-companies.

Maybe you associate virtual assistants with robots that look like people and will one day take over the world.

The accuracy about how reality looks, however, is completely different. It is true that chat assistants have come a long way from their humble beginnings, but in fact we are still developing machine learning and natural language processing, so assistants are just learning our human-like manner, and are really far from mastering the world.

One example is the twins created by Hang Seng Bank (China), Haro and Dori. They have extraordinary language skills; they communicate in Chinese, English, Cantonese, and a mixture of Chinese and English.

However, chat assistants shared their tasks. Haro focuses on general queries, such as products, services (with special emphasis on mortgage, personal loan, credit card and insurance services).

Dori, in turn, is a typical type of Facebook Messenger, using the opportunities offered by personalized recommendations based on customer preferences.

Of course, this is just one of many interesting examples. Another is Erica, a Bank of America employee and AI-driven chatbot who deals with card security updates and credit card debt reduction. In 2019, this virtual assistant processed over 50 million clients requests, regardless of their needs and age: 15% from Gen Z, 49% millennials, 20% Gen X and 16% percent from seniors, who are typically not the target group for such solutions.

Voice search is becoming more and more popular. In a recent report on this subject, Microsoft emphasizes that 69% of respondents by 2020 will regularly use voice assistants. Of course, such trends have not escaped the notice of banks, like Lloyds Bank, the Bank of Scotland, or Halifax UK.

These financial institutions have decided to simplify the lives of their customers by using "voice biometrics," i.e. confirmation of identity through AI-driven advanced analysis of the user's voice characteristics.

Of course it's hard to disagree that using an account through voice commands is easier and faster than traditional logging methods but is it completely safe? Some industry analysts point out that if there are recordings on the web that contain our voice (e.g. in the form of podcasts) - they can be used to log into our account by unauthorized persons.

Such solutions will likely blossom in the near future, although they already exist in limited forms in the industry. Current versions, especially in European and American markets, are somewhat more mundane and familiar solutions, focusing on mobile banking, fraud detection, and regulatory compliance.

Mobile is our future: it is predicted that by 2023 this device will be used over 7.33 billion people worldwide. By the same year, the mobile app market will generate revenue of 935.2 billion dollars, which of course also includes mobile banking applications. What makes us so willing to invest in them?

First off, mobile banking means improved security, which is often at a higher level than typical online counterparts. What's more, applications are eagerly used by banks for more prosaic reasons since they allow banks to cut operational costs. Thanks to mobile, expenditures on typical offline banking operations and human resources can be reduced and they are also cheaper than ATMs. What's more, they actually save not only money, but also time and paper commonly used to supplement "necessary" paperwork.

Also, mobile apps are always available. Its easy to analyze the data collected through this channel. Plus, mobile facilitates communication with the client thanks to the option of sending push notifications.

But what does AI have to do with this? At first glance, biometrics in mobile banking available thanks to the artificial intelligence solutions may look a bit like a part of a science fiction movie, especially aspects such as fingerprint scanning, facial recognition, iris scanning, and voice biometrics.

Lets stop for a minute and wonder if our smartphones are at all able to support such advanced technology. According to Juniper Research data, the availability of dedicated hardware will not be an obstacle to be used for these biometric purposes. The company predicts that by 2024, about 90% of phones will cope with these modern solutions.

The real question we should ask ourselves in this context is a bit different. Will people in the era of contactless cards really want to use this kind of mobile feature to be used to authenticate contactless payments? The forecasts mentioned above are not very promising - only 30% of respondents declared that they would gladly use this option.

The first seeds of AI fraud detection were implemented over 10 years ago, based on anomaly detection, a technique for identifying deviations from a norm, covering issues related to cybersecurity and anti-money laundering processes.

Nowadays, common fraud types in the financial sector include identity theft and extortion of loans using stolen documents or login details. As this McAfee report indicates, (which also includes data concerning financial fraud), cybercrime costs FinTech globally around $600 billion, equal to 0.8% of global GDP.

These events not only cause real financial losses, but also add to the problem of debt collection which in many legal systems is an extremely long-term process, but unfortunately not in all cases one hundred percent effective. Financial institutions are also harmed and as a consequence, they can lose their reputation in the market. This kind of damage can be fatal in financial markets.

Fortunately, AI, and solutions that automatically prevent financial fraud, also known as fraud detection/prevention systems (FDS), can help.

Detection and prevention systems differ primarily in the way they are implemented. Prevention is slightly more complicated and requires the bank to be authorized to intervene in the banking platform and transaction system; meanwhile, detection only requires access to data, without the need for direct intervention into the platform.

Regardless of which FDS system you choose, it should be able to detect and monitor all actions taken by the user, regardless of the channel he uses to complete the transaction. This means not only investments in caring for the web channel, but also protection of ATMs, some call center services, "offline" operations at the bank's branch or mobile payment orders.

According to the chart below, the size of the fraud prevention and detection market is constantly increasing. By 2022, it will be worth $41.50 billion, compared to $14.37 billion in 2016 a massive increase.

Regulations play a key role in the banking sector and this is another field where AI can help, facilitating (and accelerating) complex analyzes in the modern data-centric world. Lets take a look how it simplifies the whole process and makes it much more effective.

Let's start with the fact that AI can automate repetitive manual tasks. Regulatory compliance processes are based on collecting data from various source systems. Before these data can be forwarded for further decisions, they must be organized and carefully checked.

Without AI, all the work is labor-intensive and requires several manual interventions. Moreover, the whole procedure is time-consuming and prone to mistakes. Such a solution can be to some extent also be called robotic process automation (RPA). It can be done via automation, with webhooks, or APO integrations.

Thanks to the ability to process quickly and accurately, AI is definitely a better decision-maker. Algorithms will analyze all risks, including those related to financial crimes, money laundering and potential fraud (AML, MiFID II, FinCEN).

AI implemented in banking undoubtedly affects the optimization of sales and the operations of B2B and B2C sales. This is due to, among other things, improved customer service.

Artificial intelligence allows you to accurately reach the selected target group and personalize the message. Segmentation significantly shortens the entire purchasing process, and well-used knowledge of customer preferences affects the number of users of financial products.

AI is also able to carry out a detailed analysis of client decisions, and offer only those products that a given person really needs. It is worth emphasizing that recommendation models created for banks are much more complicated than those used in typical e-commerce.

Perhaps the extraordinary power of personalization provided by AI in the context of the above mentioned biometric examples seems quite "ordinary" - so let me show you specific numbers.

The Boston Consulting Group has estimated that only by personalizing customer interactions, a bank can garner up to $300 million in revenue growth for every $100 billion it has in assets.

Why is this happening? Consumers expect that, by definition, complex banking systems will be as accessible and easy to use as other services they use on a daily basis:

We are entering a completely new digitized era in which the possibilities of AI in FinTech are still developing. We don't know with what kind of new features artificial intelligence will surprise us in time but one thing is certain: brands need to take advantage of the power that it offers.

As you can see, banks are in possession of so many types data:

Some of them come in the real time, yet some are really scarce.

Lets take an advantage of AI and machine learning advancements in order to combine the information coming from these multiple possibilities into the lowest possible dimension.

Many of the functionalities are related to the most desired applications enabling revenue generation, such as recommending actions and offers based on true 360 degree customer profile or enhancing currently used statistical models by adding features allowing brands to evaluate and compare neighborhood of any entity banks are working with (debtors, creditors, merchants, individuals, enterprises).

AI will allow us not only to save time and money, but also to better protect savings and more easily access our money. What more could we want?

Learn more about all things AI by checking out G2's artificial intelligence hub.

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Artificial Intelligence developed to monitor social distancing on construction sites – The Architect’s Newspaper

With most Americans complying with nationwide stay-at-home orders enacted to reduce the spread of the novel coronavirus, a handful of states have nonetheless permitted construction sites to continue operations on essential projects. Site safety inspectors have therefore been left with the difficult task of ensuring that the workers they oversee are practicing all safety protocols as advised by the Center for Disease Control (CDC) and the Occupational Safety and Health Administration (OSHA), that include maintaining a distance of six feet apart from one another, wearing face coverings over their noses and mouths during work hours, and minimizing interactions when picking up or delivering equipment or materials.

On April 6, the artificial intelligence (AI) company Smartvid.io unveiled Vinnie, a new feature for its interface that will be able to monitor construction workers level of compliance with the advised social distancing protocols as a virtual safety inspector. The big thing with construction continuing to go on, Josh Kanner, CEO and founder of Smartvid.io, told Engineering News Record, is weve got some projects where the client is paying for extra labor on site to monitor people [for social distancing] and separate them.While Smartvid.io has provided AI technology for construction sites for over three years, the pandemic presented an unexpected set of challenges that required quick advancements.According to the companys website, Vinnie has been trained to findand counta number of indicators of project risk in the areas of safety, productivity and quality that include worker proximity and their use of personal protective equipment. Safety inspectors can either watch the footage in real-time or from recorded photos and videos, allowing their surveillance to be carried out beyond typical working hours.

For construction workers who may be concerned about any potential breaches of privacy afforded by the updated surveillance technology, Smartvid.io has made clear that there is no facial recognition and never will be, and that Vinnie has been certified to be compliant with the strict privacy requirements specified by the European GDPR standard.

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Some countries in the Middle East are using artificial intelligence to fight the coronavirus pandemic – CNBC

View of an empty street amid the COVID-19 pandemic in Doha, capital of Qatar, on April 13, 2020.

Nikku | Xinhua News Agency via Getty

Countries in the Gulf Cooperation Council are stepping up their use of artificial intelligence tools to halt the spread of the coronavirus pandemic.

Governments throughout the GCC a group of countries in the Middle East that includesBahrain, Saudi Arabia, Qatar, Oman, Kuwait and the United Arab Emirates have enacted some of world's strictest measures, including suspending passenger flights and imposing curfews on citizens to put brakes on the number of new cases of Covid-19 that currently totalover 2 million (2,064,115)globally, according to Johns Hopkins University data.

But countries aren't restricting their efforts to simply imploring their residents to stay locked in and shutting down all but the most essential of businesses.

They are increasingly deploying sophisticated technology to ensure that movement is limited and social distancing is in place through the use of speed cameras, drones and robots.

By applying location-based contact tracing, governments can monitor those who have tested positive for coronavirus, and try to limit their exposure to the population.

AI's ability to crunch large amounts of data has allowed governments worldwide to collect information to try and stop the pandemic. Contact-tracing has allowedHong Kong, China and Singapore to monitor cases.

While governments and companies grapple with what could be a controversial violation ofprivacy issues, many countries have found it to be the key to lifting lockdown measures.

In Bahrain, an application called 'BeAware' allows residents to track proximity to someone with Covid-19. The application uses location data to alert individuals in the event they approach an active case.

"BeAware registration is mandatory for those in quarantine, while non-quarantined cases may choose to register," Mohammed Ali AlQaed, chief executive of Information & eGovernment Authority in Bahrain told CNBC.

Bahrain has reported1,671cases according to Hopkins data, and was one of the first to begin easing restrictions, allowing some stores and malls to reopen.

AI can also help businesses work more efficiently throughout the pandemic.

Majed M. Al Tahan, co-founder & MD of Danube Online told CNBC the Saudi-based hypermarket and supermarket chain is using AI to minimize delivery time.

Using 'aisle-mapping' technology, packers can locate items in an online customer's order, which are tracked around stores using an app.

Saudi Arabia extended its curfew indefinitely on Sunday and the country remains in total lockdown. Saudi Arabia has reported the highest number of cases in the GCC5,862 on Thursday,according to Hopkins data.

A Qatari Government communications spokesperson told CNBC the government is working with the Qatar Computing Research Institute on a diagnostic monitoring app,connected to a ministry of health database that uses computing and geolocation services to help diagnose and track Covid-19 cases. According to Hopkins data,Qatar has reported3,711cases of coronavirus to date.

In the United Arab Emirates, the government is using AI to limit the movement of Dubai residents, the UAE's most densely-populated emirate and home to 3.3 million people.

Dubai police are monitoring permits required by residents leaving their homes in the region's business hub.

Dubai Police use a program called 'Oyoon' which, through a network of cameras in the city uses facial, voice and license plate recognition. The information is fed through a large database and the computer can cross-reference and analyze the data to determine, in this instance, if aresidentis employedin a vital sector or in possession of a valid permit.

The United Arab Emirates has reported5,365cases of coronavirus, according to Hopkins.

UAE-based healthcare startupNabta Healthwill use AI to provide risk and symptom assessments for Covid-19. Co-founder Sophie Smith told CNBC that advanced technologies such as AI, applied machine learning and blockchain could help alleviate the effects of future pandemics.

"When the dust settles, people will look at this pandemic and say 'we are only as strong as our lowest common denominator, and that's people with underlying health conditions,'"Smith said.Nabta Health uses AI to diagnose those very conditions.

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Zoom is cracking down on virtual sex parties with artificial intelligence – Dazed

Now that were a month into lockdown, youve probably spent a considerable amount of your social life (read: all) on video messaging platforms. While its admittedly a great way to stay connected with friends when youre most likely cooped up in a cramped London flatshare, or enjoying a second wave of teenage angst at your parents house, its also led to some pretty raunchy gatherings: introducing the virtual sex party.

According to Rolling Stone, Zoom the popular teleconferencing app has become an unlikely gathering place for COVID-19 era millennials wanting to partake in play parties (AKA virtual chats where you can jerk off in the company of other socially-distanced people).

In short, Zooms not happy about it, and its using machine learning to identify accounts in violation of its policies, which strictly prohibit displays of nudity, violence, pornography, sexuality explicit material, or criminal activity.

We encourage users to report suspected violations of our policies, and we use a mix of tools, including machine learning, to proactively identify accounts that may be in violation, a spokesperson for Zoom told Rolling Stone.

While the platform hasnt specified what sort of machine-learning tools its using, or how the technology alerts the platform to pornographic content, a spokesperson said that itll take a number of actions against those caught in the act.

Meanwhile, rival video platform Houseparty is offering $1 millionfor info on an alleged smear campaign, which claims users have been getting their accounts hacked and personal information stolen. Basically, the internets reverted into the Wild West, and we love it.

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The Evolution Of Cybersecurity And Data Storage (infographic) – Digital Information World

In the 1900s computer punch cards could store only 80 bits of data, most cellphones today store the equivalent of 400 million cards or more. From hard drives to networks, and data encryption to cloud data, the advancement of memory storage and security has been vast in the last 70 years. We are now living in a digital age, but how did we get here? 1950The first hard drives were developed in the 50s making storage of information easier. In 1956 IBM unveiled the RAMAC 305, a magnetic disk drive that could store 3.75 MB of data. It was the first storage device allowing random data access, eliminating the wait time of drums or tape to get to a data point.1960A little over 10 years later the floppy disk was invented, again by IBM. Floppies allowed people to buy, load, and share data, which sparked a new aftermarket software industry. The 8-inch disks could hold 80 KB of data and were first sold in 1971.

Also within that timespan, Semiconductor Random Access Memory (RAM) was developed. Over the next five years RAM storage capacity grew 32 times its size, going from 8 bits to 256 bits per chip. Semiconductors allowed memory devices to shrink in size and operate at higher speeds, paving the way for personal computers.

Viruses became more prevalent and in 1988 the Morris Worm infected 1 in 10 computers connected to the internet within 24 hours. This followed by Dr. Popp, the first known ransomware in 1989. Dr. Popp was spread through floppy disks and after lying dormant for 90 power cycles, the malware locked the infected computer and demanded payment to release it.

Soon after, in 1998, IBM and CISCO developed Internet Small Computer Systems Interface (ISCSI). ISCSI allowed access to stored data over an internet connection, making block storage cheaper and easier than SAN could.

In 2017 Generative Adversarial Networks (GAN), were used to superimpose celebrities faces in adult films. A few months later with the help of GAN, a video was forged of President Donald Trump speaking about climate change in Belgium. These fake videos were convincing enough to raise serious concerns over how to determine datas authenticity. Over half of companies have said they plan to continue increasing security

By 2025 175 Zettabytes of data will be stored worldwide, mostly through cloud-based data centers. As AI and machine learning increase the value of big data, so do the opportunities for data breaches. So now that were here in the digital age of data storage, consider protecting what was brought to you by annals of time.

Learn more about cybersecurityhere.

Read next: 24 Percent of Global Users Say They Just Don't Understand Computers and New Technology

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The Evolution Of Cybersecurity And Data Storage (infographic) - Digital Information World

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A silver lining in the cloud for AI startups – Livemint

Whether it is working from home or streaming videos from Netflix, these services are underpinned by software and hardware on the cloud. Although there may be a reduction of cloud usage as airlines and others see business dwindle, the dominant theme in these times is digitalization.

The best-known cloud infrastructure providers are Amazon, Google and Microsoft. But there are several others catering to specialized needs. California-headquartered Fortune 500 company NetApp, for example, provides cloud services for storage and management of enterprise data. It has been in the thick of coping with a surge in demand. Our leadership team is monitoring the situation daily to mitigate impact on services," says Ravi Chhabria, MD of NetApp India.

Tech innovations play a key role in cloud-based services ranging from telehealth to ordering groceries. For example, AI can help ensure the supply of food to billions of people on lockdown around the globe," says Chhabria.

TAPPING INNOVATIONS

NetApp has been running a startup accelerator programme in Bengaluru since 2017 to tap innovations. These could enhance NetApps core technology. But the broader idea is to also take these innovations to NetApps customers.

Our programme offers to help B2B tech product startups tap into the NetApp customer base globally, because were also a B2B (business-to-business) company," says Madhurima Agarwal, who leads the NetApp Excellerator in Bengaluru.

This is more significant in the current environment where travelling to meet prospective clients or vendors is not possible. The presence of facilitators like the NetApp accelerator can help overcome trust barriers and make connections between startups and enterprises.

The programme has evolved from its first cohort in 2017, even as the deep tech startup ecosystem in Bengaluru has matured. So all startups in the fifth cohort that graduated this year did a paid proof of concept (PoC) for NetApp, unlike the first batch which had very early stage startups. Legal hassles and paperwork are taken care of at the PoC stage when startups are on-boarded as vendors. So the roadblocks from PoC to actual commercial engagement will be minimized," says Agarwal.

Bengaluru-based Lightwing, for example, automates the optimization of cloud services for enterprises, helping them cut cloud bills, which has become more vital in an economic slowdown. Lightwings PoC was to help business teams in NetApp optimize their cloud usage and measure savings.

Then it becomes a matter of our sales teams going to our customers with Lightwing and saying, This is how weve used it in NetApp. Were validating the product, and lending credibility and going to market," says Agarwal.

Eight startups from previous cohorts are in strategic alliances" with NetApp for a go-to-market programme. Bengaluru-based Zscore, which uses AI to sort the wheat from the chaff in data, has engaged with NetApp clients in Australia. AI-powered cybersecurity startup Anlyz, which graduated in 2018, tested its product in NetApp last year before deploying it with a security service provider.

Corporate accelerator programmes have been a mixed bag in Bengaluru. Microsofts accelerator programme, for instance, has morphed time and again as concepts that sounded good on paper couldnt be put into practice. Sales teams often have different agendas from those running accelerator programmes in large organizations.Its not easy," she admits. Sometimes its NetApp clients that move things along. A client comes and says, I saw this startup in your accelerator programme. What do you think of them? That motivates the sales team to come and talk to us," says Agarwal.

DRAWING ON CONNECTIONS

Were not humongous like an IBM or Microsoft, and were not small. Were at that sweet spot where we still have a lot of interpersonal connects, and cross-functional teams can bank on one another," says Agarwal.

The idea behind the programme was to collaborate with some of the best minds outside NetApp that were working on cutting-edge technologies in adjacent areas of NetApps data business. We look at them as partners and together we can create strong offerings for customers."

Bengaluru-based Curl Analytics, for example, is a global alliance partner" for NetApp. It has a suite of enterprise software products: Sara is for intelligent data extraction from documents, Yati is a decisioning system, and Paras is an automated machine learning engine.

Curl Analytics deployed Paras in the AI CoE (centre of excellence) in NetApps Bengaluru campus. The CoE is equipped with Nvidias DGX box which has petaflop-level speed and scale for complex AI challenges. NetApps Ontap software is installed in it as an operating system. Curl Analytics solution demonstrates what can be done with mammoth datasets in such an environment. That makes it a win-win-win where all three companies showcase their strengths to enterprises, which see a live demo and visualize their own use case.

For the PoC in the accelerator programme, Curl Analytics deployed Paras on the Nvidia DGX and NetApp Ontap. The use case was to analyze millions of medical slides to figure out which ones had pathogens. We showed how significantly the DGX machine, which is Nvidias supercomputer kind of thing for deep learning, can reduce time for training the AI engine," says Shivaram K R, co-founder and CEO of Curl Analytics. We showed how this can be transferred seamlessly to cloud with NetApps Ontap and our Paras, so that doctors can draw inferences."

The next steps were to work out a go-to-market strategy where NetApp and Curl Analytics sell their products together because thats when use cases become powerful, says Shivaram. We are one of NetApps AI partners," says Shivaram. For it to bear fruit takes time."

When the pandemic broke out, Curl Analytics and NetApp paused to take stock. The accelerator programme is slated to continue in virtual mode with everything from selection to mentoring and sales talks happening on video conferences.

We changed our business model and increased our services-play to get cash flows," says Shivaram. We asked large companies using our products if they want us to do services and theyre happy to offload their work. Normally we were downplaying our services, but now we are pushing it so that we have sustainable revenues. I believe we will come out strong once the dust settles down."

Malavika Velayanikal is a Consulting Editor with Mint. She tweets @vmalu

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A silver lining in the cloud for AI startups - Livemint

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8×8 Raises the Bar with New Secure Video Meeting Solution; Oracle Cloud to Power 8×8 Video Meetings and Jitsi Services – Business Wire

CAMPBELL, Calif.--(BUSINESS WIRE)--8x8, Inc. (NYSE: EGHT), a leading integrated cloud communications platform, today announced the launch of 8x8 Video MeetingsPro. The solution is powered by Jitsi, an open source community for secure video meetings technology sponsored by 8x8. The company also announced that Jitsi.org and 8x8 video meetings solutions will run on the Oracle Cloud Infrastructure, which offers optimized cloud security and performance, perfect for workloads like video meetings. In a separate event, the Jitsi community published a specification for true end-to-end encrypted WebRTC-based video meetings that is now open for public comment. Visit Jitsi.org for more information.

Secure video meetings are a critical part of the day-to-day work of everyone around the world, stated Vik Verma, CEO of 8x8, Inc. Our Video Meetings, powered by Jitsi open-source technology, are designed from the ground up with security and privacy in mind to give peace of mind so public and private organizations of every size can confidently use them to conduct confidential business meetings. This is true for all of our video meeting products, both paid and free. We collaborated with Oracle to further enhance our strong product and technology platform with Oracle Clouds top-tier security, performance and affordability. We are looking forward to further scaling our global reach with the Oracle go-to-market team.

8x8, a member of Oracle PartnerNetwork (OPN), also announced today that its 8x8 video meetings solutions, Powered by Oracle Cloud, will be available in the Oracle Cloud Marketplace. The Oracle Cloud Marketplace offers an intuitive user interface to browse and search for available applications and services, as well as user ratings and reviews to help customers determine the best business solutions for their organization.

Oracle Cloud delivers tremendous price-performance for resource-intensive applications like video meetings. As the world redefines working from home, video meetings are one of our fastest-growing workloads, and we are excited to have 8x8 and the Jitsi open-source community on our cloud infrastructure platform, said Vinay Kumar, Vice President, Product Management, Oracle.

New Product Fueling New Secure Video Meeting Experiences

Priced at $9.99 per user per month after a 30-day free trial, 8x8 Video MeetingsPro includes password-protected and randomly named meetings, real-time closed-captioning with post-call transcription, 60 days of cloud storage for meetings recordings, and the ability to easily secure authorized attendees through dial out features. More capabilities will be added, and 8x8 Video MeetingsPro is available today at 8x8.com via self-serve e-commerce.

The new solution is in addition to the currently available 8x8 Video MeetingsFree, which is at https://8x8.vc, and includes unlimited usage and international dial-in numbers in more than 55 countries.

Nearly 12 Million Video Meetings Monthly Active Users Worldwide1

8x8 is the main contributor to the Jitsi.org open-source solution, and the standalone and integrated versions of 8x8 Video Meetings are powered by Jitsi. The Jitsi.org code has been hardened with over a million downloads and is embedded in applications like banking video conferencing, education as a service platforms, and home security applications globally. 8x8 Video Meetings utilizes the WebRTC standard which enables attendees to instantly join meetings without any downloads or plugins.

8x8 Video Meetings is also packaged with 8x8 X Series meeting the needs of businesses with a mobile and remote workforce by providing a highly reliable and resilient solution across desktop and mobile devices for voice, video conferencing, chat, contact center, APIs and advanced analytics built on an open cloud technology platform. This allows companies to rapidly unify a distributed workforce and enable flexible workstyles. It is also offered with 8x8 Express, which is for small organizations and teams that require a complete, preconfigured business phone system with a dedicated business number, video meetings and messaging in a single desktop and mobile application.

8x8 Webcast

8x8 will host a webcast on Tuesday, April 14, 2020 at 10 am PT / 1 pm ET with Ray Wang, Principal Analyst, Founder and Chairman of Constellation Research, and Emil Ivov, Ph.D., Founder of the Jitsi.org open-source project and the head of 8x8 Video Collaboration, to discuss 8x8 video meetings solutions, the importance of open-source video security for all, and why todays encryption and upcoming advanced capabilities are critical for highly-sensitive information and meetings. Register for the webcast at Secure Video Meetings for All.

About Jitsi.org

Today the Jitsi.org open-source community, which is widely respected for its commitment to security, also announced a path to take things even further in the very near future. The Jitsi open-source technology, based on WebRTC standards, will soon be providing end-to-end encrypted meetings. The initiative and the first building blocks are now published in more detail at Jitsi.org, and open for comment by the open-source developer community. 8x8 announced its commitment to productize the technology in its video meetings solutions once available.

About 8x8, Inc.

8x8, Inc. (NYSE: EGHT) is transforming the future of business communications as a leading Software-as-a-Service provider of voice, video, chat, contact center, and enterprise-class API solutions powered by one global cloud communications platform. 8x8 empowers workforces worldwide to connect individuals and teams so they can collaborate faster and work smarter. Real-time business analytics and intelligence provide businesses unique insights across all interactions and channels so they can delight end-customers and accelerate their business. For additional information, visit http://www.8x8.com, or follow 8x8 on LinkedIn, Twitter and Facebook.

1 Includes 8x8 Video Meetings and Jitsi Meet usage. A Monthly Active User is defined as a unique user who attended at least one meeting, with at least one other attendee, in the last 30 days.

8x8 and 8x8 X Series are trademarks of 8x8, Inc.

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8x8 Raises the Bar with New Secure Video Meeting Solution; Oracle Cloud to Power 8x8 Video Meetings and Jitsi Services - Business Wire

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