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KLA Corporation Opens New Artificial Intelligence-Advanced Computing Lab at Indian Institute of Technology Madras Research Park – PR Newswire India

KLA, a Fortune 500 company with 12,000+ global employees, is a leading supplier of process control and process enabling solutions for the global semiconductor and electronics industry. At KLA India, engineers, data scientists and problem-solvers design solutions that improve the performance of KLA's process control products and facilitate customer success. KLA's new state-of-the-art, high-tech research and development center serves as a cultural and collaboration hub for the engineering teams.

"KLA is at the forefront of using AI technology in our process control systems to identify and isolate critical issues in chip manufacturing," stated Ahmad Khan, president, semiconductor process control at KLA. "To expand the reach of AI in our products and develop the next generation of AI innovations, we created our new AI-ACL research facility. Our researchers and engineers at AI-ACL join the AI experts at our AI Modeling and Center of Excellence in Michigan to form a global team committed to advancing the boundaries of AI, software, image processing and physics modeling."

Officiating over the opening of both facilities, Prof. Bhaskar Ramamurthy, Director of IIT Madras said, "KLA and IIT Madras have been collaborating for over 15 years. We look forward to an expanded collaboration with KLA in AI, advanced parallel computing, and quantum computing research for applications in the semiconductor inspection and metrology domain. The IIT Madras Research Park ecosystem is a perfect enabler for such an industry with academic collaboration that is bringing together our resident experts, top student researchers and industry's best minds. I also congratulate KLA on the grand opening of its new office in RMZ Millenia-II today."

Beyond expanding business in India, KLA prioritizes making a positive impact on the local community. In May, KLA created a $550,000 India pandemic relief fundto aid healthcare facilities in procuring critically-needed equipment in the fight against Covid-19. The donation also supports a long-term investment to expand ICU capacity in regional hospitals and better address the needs of under-privileged communities.

Those interested in careers with KLA India may find more information at http://www.kla.com/careers/locations/India.

About KLA:

KLA develops industry-leading equipment and services that enable innovation throughout the electronics industry. We provide advanced process control and process-enabling solutions for manufacturing wafers and reticles, integrated circuits, packaging, printed circuit boards and flat panel displays. In close collaboration with leading customers across the globe, our expert teams of physicists, engineers, data scientists and problem-solvers design solutions that move the world forward. Additional information may be found atwww.kla.com.

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Israel and Germany Kick Off Digital Cooperation to Boost Artificial Intelligence in Healthcare – Algemeiner

Israel and Germany have launched a joint forum to work on advancing the use of artificial intelligence and machine learning in healthcare, with the two nations keen to learn together from the lessons of the coronavirus pandemic.

As part of a three-year project, the German Israeli Health Forum for Artificial Intelligence will bring together stakeholders from the health ecosystem, startups and experts of both countries to discuss developments, regulations and applications of AI solutions in the health sector. The initiative is funded by the German Federal Ministry of Health and was established together with the European Leadership Network (Elnet).

The forum had its first conference in Berlin at the end of last week, which was attended by Israels Health Minister Nitzan Horowitz and his German counterpart Jens Spahn.

Today it is clearer than ever: countries with a strong public health system are more protected in times of crisis, said Horowitz. The public health system in Israel, which is built on the foundations of social democracy, has saved more lives than anything else in the struggle against corona, and we will continue to strengthen it.

The collaboration offers the opportunity to improve the health system in both countries in the long term, Horowitz remarked.

Germanys healthcare system is the midst of a digital transformation, faced with a growing shortage of skilled healthcare workers and pressing demographic changes.

We can learn a lot from each other, not only in matters of digitization, but also regarding successful vaccination campaigns, said Spahn. We should be guided by Israels example. Israel has shown the world how important booster vaccines shots are. Especially since many of those who didnt get vaccinated until now, wont be convinced anymore.

In recent years Israel has grown into one of the worlds leading nations in the digitalization of health care and the use of AI in fields like medical imaging analysis and data analytics of population groups.

Digital health startups have also developed algorithms to help with the early detection of diseases and to generate more accurate medical diagnoses. Investments in Israeli digital health companies topped $1 billion in the first six months of the year surpassing the annual amounts raised by the sector in 2020 and 2019, according to a report by Start-up Nation Central.

During his stay in Berlin, Horowitz who is one of the few openly gay Knesset members visited a Holocaust memorial to remember the Nazi victims from the LGBT community.

I am proud to be the first foreign minister in the world to visit this important site in Berlin. My hands trembled as I placed this wreath, in the name of the State of Israel, at a monument dedicated to the memory of the victims of the Nazis from the LGBT community, tweeted Horowitz on Sunday.

Tens of thousands were sent to concentration camps, wore pink badges, underwent forced sterilization and horrific experiments. Many thousands were murdered because of who they are, he said.

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High-performance, low-cost machine learning infrastructure is accelerating innovation in the cloud – MIT Technology Review

Artificial intelligence and machine learning (AI and ML) are key technologies that help organizations develop new ways to increase sales, reduce costs, streamline business processes, and understand their customers better. AWS helps customers accelerate their AI/ML adoption by delivering powerful compute, high-speed networking, and scalable high-performance storage options on demand for any machine learning project. This lowers the barrier to entry for organizations looking to adopt the cloud to scale their ML applications.

Developers and data scientists are pushing the boundaries of technology and increasingly adopting deep learning, which is a type of machine learning based on neural network algorithms. These deep learning models are larger and more sophisticated resulting in rising costs to run underlying infrastructure to train and deploy these models.

To enable customers to accelerate their AI/ML transformation, AWS is building high-performance and low-cost machine learning chips. AWS Inferentia is the first machine learning chip built from the ground up by AWS for the lowest cost machine learning inference in the cloud. In fact, Amazon EC2 Inf1 instances powered by Inferentia, deliver 2.3x higher performance and up to 70% lower cost for machine learning inference than current generation GPU-based EC2 instances. AWS Trainium is the second machine learning chip by AWS that is purpose-built for training deep learning models and will be available in late 2021.

Customers across industries have deployed their ML applications in production on Inferentia and seen significant performance improvements and cost savings. For example, AirBnBs customer support platform enables intelligent, scalable, and exceptional service experiences to its community of millions of hosts and guests across the globe. It used Inferentia-based EC2 Inf1 instances to deploy natural language processing (NLP) models that supported its chatbots. This led to a 2x improvement in performance out of the box over GPU-based instances.

With these innovations in silicon, AWS is enabling customers to train and execute their deep learning models in production easily with high performance and throughput at significantly lower costs.

Machine learning is an iterative process that requires teams to build, train, and deploy applications quickly, as well as train, retrain, and experiment frequently to increase the prediction accuracy of the models. When deploying trained models into their business applications, organizations need to also scale their applications to serve new users across the globe. They need to be able to serve multiple requests coming in at the same time with near real-time latency to ensure a superior user experience.

Emerging use cases such as object detection, natural language processing (NLP), image classification, conversational AI, and time series data rely on deep learning technology. Deep learning models are exponentially increasing in size and complexity, going from having millions of parameters to billions in a matter of a couple of years.

Training and deploying these complex and sophisticated models translates to significant infrastructure costs. Costs can quickly snowball to become prohibitively large as organizations scale their applications to deliver near real-time experiences to their users and customers.

This is where cloud-based machine learning infrastructure services can help. The cloud provides on-demand access to compute, high-performance networking, and large data storage, seamlessly combined with ML operations and higher level AI services, to enable organizations to get started immediately and scale their AI/ML initiatives.

AWS Inferentia and AWS Trainium aim to democratize machine learning and make it accessible to developers irrespective of experience and organization size. Inferentias design is optimized for high performance, throughput, and low latency, which makes it ideal for deploying ML inference at scale.

EachAWS Inferentiachip contains four NeuronCores that implement a high-performancesystolic arraymatrix multiply engine, which massively speeds up typical deep learning operations, such as convolution and transformers. NeuronCores are also equipped with a large on-chip cache, which helps to cut down on external memory accesses, reducing latency, and increasing throughput.

AWS Neuron, the software development kit for Inferentia, natively supports leading ML frameworks, likeTensorFlow andPyTorch. Developers can continue using the same frameworks and lifecycle developments tools they know and love. For many of their trained models, they can compile and deploy them on Inferentia by changing just a single line of code, with no additional application code changes.

The result is a high-performance inference deployment, that can easily scale while keeping costs under control.

Sprinklr, a software-as-a-service company, has an AI-driven unified customer experience management platform that enables companies to gather and translate real-time customer feedback across multiple channels into actionable insights. This results in proactive issue resolution, enhanced product development, improved content marketing, and better customer service. Sprinklr used Inferentia to deploy its NLP and some of its computer vision models and saw significant performance improvements.

Several Amazon services also deploy their machine learning models on Inferentia.

Amazon Prime Video uses computer vision ML models to analyze video quality of live events to ensure an optimal viewer experience for Prime Video members. It deployed its image classification ML models on EC2 Inf1 instances and saw a 4x improvement in performance and up to a 40% savings in cost as compared to GPU-based instances.

Another example is Amazon Alexas AI and ML-based intelligence, powered by Amazon Web Services, which is available on more than 100 million devices today. Alexas promise to customers is that it is always becoming smarter, more conversational, more proactive, and even more delightful. Delivering on that promise requires continuous improvements in response times and machine learning infrastructure costs. By deploying Alexas text-to-speech ML models on Inf1 instances, it was able to lower inference latency by 25% and cost-per-inference by 30% to enhance service experience for tens of millions of customers who use Alexa each month.

As companies race to future-proof their business by enabling the best digital products and services, no organization can fall behind on deploying sophisticated machine learning models to help innovate their customer experiences. Over the past few years, there has been an enormous increase in the applicability of machine learning for a variety of use cases, from personalization and churn prediction to fraud detection and supply chain forecasting.

Luckily, machine learning infrastructure in the cloud is unleashing new capabilities that were previously not possible, making it far more accessible to non-expert practitioners. Thats why AWS customers are already using Inferentia-powered Amazon EC2 Inf1 instances to provide the intelligence behind their recommendation engines and chatbots and to get actionable insights from customer feedback.

With AWS cloud-based machine learning infrastructure options suitable for various skill levels, its clear that any organization can accelerate innovation and embrace the entire machine learning lifecycle at scale. As machine learning continues to become more pervasive, organizations are now able to fundamentally transform the customer experienceand the way they do businesswith cost-effective, high-performance cloud-based machine learning infrastructure.

Learn more about how AWSs machine learning platform can help your company innovate here.

This content was produced by AWS. It was not written by MIT Technology Reviews editorial staff.

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AWS Announces Opening of the AWS Center for Quantum Computing – HPCwire

Oct. 28, 2021 What if by harnessing the properties of quantum mechanics we could model and simulate the behavior of matter at its most fundamental level, down to how molecules interact? The machine that would make that possible would be transformative, changing what we know about science and how we probe nature for answers.

Quantum computers have the potential to be this machine: The scientific community has known for some time now that certain computational tasks can be solved more efficiently when qubits (quantum bits) are used to perform the calculations, and that quantum computers promise to solve some problems that are currently beyond the reach of classical computers. But many unknowns remain: How should we build such a machine so that it can handle big problems, useful problems of practical importance? How can we scale it to thousands and millions of qubits while maintaining precise control over fragile quantum states and protecting them from their environment? And what customer problems should we design it to tackle first? These are some of the big questions that motivate us at the AWS Center for Quantum Computing.

The Home of AWS Quantum Technologies

In this post I am excited to announce the opening of the new home of the AWS Center for Quantum Computing, a state-of-the-art facility in Pasadena, California, where we are embarking on a journey to build a fault-tolerant quantum computer. This new building is dedicated to our quantum computing efforts, and includes office space to house our quantum research teams, and laboratories comprising the scientific equipment and specialized tools for designing and running quantum devices. Here our team of hardware engineers, quantum theorists, and software developers work side by side totackle the many challengesof building better quantum computers. Our new facility includes everything we need to push the boundaries of quantum R&D, from making, testing, and operating quantum processors, to innovating the processes for controlling quantum computers and scaling the technologies needed to support bigger quantum devices, like cryogenic cooling systems and wiring.

From Research to Reality

A bold goal like building a fault-tolerant quantum computer naturally means that there will be significant scientific and engineering challenges along the way, andsupportingfundamental research and making a commitment to the scientific community working on these problems is essential for accelerating progress. Our Center is located on the Caltech campus, which enables us to interact with students and faculty from leading research groups in physics and engineering just a few buildings away. We chose topartner with Caltechin part due to the universitys rich history of contributions to computing both classical and quantum from pioneers like Richard Feynman, whose vision 40 years ago can be credited with kick-starting the field of quantum computing, to the current technical leads of the AWS Center for Quantum Computing: Oskar Painter (John G Braun Professor of Applied Physics, Head of Quantum Hardware), and Fernando Brandao (Bren Professor of Theoretical Physics, Head of Quantum Algorithms). Through this partnership were also supporting the next generation of quantum scientists, by providing scholarships and training opportunities for students and young faculty members.

But our connections to the research community dont end here. Our relationships with a diverse group of researchers help us stay at the cutting edge of quantum information sciences research. For example, several experts in quantum related fields are contributing to our efforts asAmazon Scholarsand Amazon Visiting Academics, includingLiang Jiang(University of Chicago), Alexey Gorshkov (University of Maryland),John Preskill(Caltech), Gil Refael (Caltech), Amir Safavi-Naeimi (Stanford), Dave Schuster (University of Chicago), andJames Whitfield(Dartmouth). These experts help us innovate and overcome technical challenges even as they continue to teach and conduct research at their universities. I believe such collaborations at this early stage of the field will be critical to fully understand the potential applications and societal impact of quantum technologies.

Building a Better Qubit

There are many ways to physically realize a quantum computer: quantum information can, for example, be encoded in particles found in nature, such as photons or atoms, but at the AWS Center for Quantum Computing we are focusing on superconducting qubits electrical circuit elements constructed from superconducting materials. We chose this approach partly because the ability to manufacture these qubits using well-understood microelectronic fabrication techniques makes it possible to make many qubits in a repeatable way, and gives us more control as we start scaling up the number of qubits. There is more to building a useful quantum computer than increasing the number of qubits, however. Another important metric is the computers clock speed, or the time required to perform quantum gate operations. Faster clock speeds means solving problems faster, and here again superconducting qubits have an edge over other modalities, as they provide very fast quantum gates.

The ultimate measure of the quality of our qubits will be the error rate, or how accurately we can perform quantum gates. Quantum devices available today are noisy and are as a result limited in the size of circuits that they can handle (a few thousands of gates is the best we can hope for withNoisy Intermediate-Scale Quantum (NISQ) devices). This in turn severely limits their computational power. There are two ways that we are approaching making better qubits at the AWS Center for Quantum Computing: the first is by improving error rates at the physical level, for example by investing in material improvements that reduce noise. The second is through innovative qubit architectures, including using Quantum Error Correction (QEC) to reduce quantum gate errors by redundantly encoding information into a protected qubit, called a logical qubit. This allows for the detection and correction of gate errors, and for the implementation of gate operations on the encoded qubits in a fault-tolerant way.

Innovating Error Correction

Typical QEC requires a large number of physical qubits to encode every qubit of logical information. At the AWS Center for Quantum Computing, we have been researching ways toreduce this overheadthrough the use of qubit architectures that allow us to implement error correction more efficiently in quantum hardware. In particular, we are optimistic about approaches that make use of linear harmonic oscillators such asGottesman-Kitaev-Preskill (GKP) qubitsand Schrdinger cat qubits, and recently proposed atheoretical designfor a fault-tolerant quantum computer based on hardware-efficient architecture leveraging the latter.

One thing that differentiatesthis approachis that we take advantage of a technique called error-biasing. There are two types of errors that can affect quantum computation: bit-flip (flips between the 0 and 1 state due to noise) and phase-flips (the reversal of parity in the superposition of 0 and 1). In error-biasing, we use physical qubits that allow us to suppress bit-flips exponentially, while only increasing phase-flips linearly. We then combine this error-biasing with an outer repetition code consisting of a linear chain of cat qubits to detect and correct for the remaining phase-flip errors. The result is a fault-tolerant logical qubit that has a lower error rate for storing and manipulating the encoded quantum information. Not having to correct for bit-flip errors is the reason this architecture is hardware efficient and shows tremendous potential for scaling.

Building the Future for Our Customers

The journey to an error-corrected quantum computer starts with a few logical qubits. A key milestone for our team and the quantum computing field will be demonstrating the breakeven point with a logical qubit, where the accuracy of the logical qubit surpasses the accuracy of the physical qubits that constitute its building blocks. Our ultimate goal is to deliver an error-corrected quantum computer that can perform reliable computations not just beyond what any classical computing technology is capable of, but at the scale needed to solve customer problems of practical importance.

Why set such an ambitious goal? The quantum algorithms that have the most potential for significant impact, for example in industries like manufacturing or pharmaceuticals, cant be solved by simply expanding todays quantum technologies. Pursuing breakthrough innovations rather than incremental improvements always takes longer, but I believe a bold approach that fundamentally reconsiders what makes a good qubit is the best way to deliver the ultimate computational tool: a machine that can execute algorithms requiring hundreds of thousands to billions of quantum gate operations on each qubit with at most one error over the total number of gates, a level of accuracy needed to solve the most complex computational problems that have societal and commercial value.

In talking to our AWS quantum customers over the last couple years Ive found that those that are most excited about the potential for quantum are also realistic about the challenges of realizing the full potential of this technology, and are eager tocollaboratewith us to make it a reality even as they build up their own internal expertise in quantum. At the AWS Center for Quantum computing, we have assembled a fantastic team that is committed to this exciting journey toward fault-tolerant quantum computing. Stay tuned, andjoin us.

Source: Nadia Carlsten, AWS

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IBM and Raytheon Collaborating on AI, Cryptography, and Quantum Computing – Datamation

ARMONK, N.Y. and WALTHAM, Mass. IBM and Raytheon Technologies are jointly developing advanced artificial intelligence (AI), cryptographic, and quantum computing solutions for several sectors.

The strategic collaboration agreement is focused on the aerospace, defense, and intelligence sectors, including the federal government, according to the companies this month.

They intend to combine IBMs commercial research with Raytheon Technologies research, plus aerospace and defense expertise, to crack once-unsolvable challenges.

Aerospace and government customers can use artificial intelligence and quantum computing technologies to design systems more quickly, better secure their communications networks, and improve decision-making processes, they said.

See more: Artificial Intelligence Market

The companies also plan to jointly research and develop advanced cryptographic technologies that lie at the heart of some of the toughest problems faced by the aerospace industry and government agencies.

IBM and Raytheon Technologies are building a technical collaboration team to quickly insert IBMs commercial technologies into active aerospace, defense, and intelligence programs. The team will identify promising technologies to investresearch dollars and talent in to jointly develop long-term system solutions.

The rapid advancement of quantum computing and its exponential capabilities has spawned one of the greatest technological races in recent history one that demands unprecedented agility and speed, said Dario Gil, SVP and director of research, IBM.

See more: IBM Partnering with University of Tokyo on Quantum Computer

IBMs collaboration with Raytheon Technologies will be a catalyst in advancing these state-of-the-art technologies to make discovery faster and the scope of that discovery larger than ever, Gil said.

Take something as fundamental as encrypted communications, said Mark E. Russell, CTO, Raytheon Technologies. As computing and quantum technologies advance, existing cybersecurity and cryptography methods are at risk of becoming vulnerable.

Russell said IBM and Raytheon Technologies will collaboratively help customers in the sectors maintain secure communications and defend their networks better than previously possible.

See more: Top Cloud Security Companies & Solutions

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China makes a quantum computer streets ahead of the US – Fudzilla

We have more cats

Physicists in China claim they've constructed two quantum computers with performance speeds that outrival competitors in the US, debuting a superconducting machine, in addition to an even speedier one that uses light photons to obtain unprecedented results.

According to a recent study published in the peer-reviewed journals Physical Review Letters and Science Bulletin. Interesting Engineering reports that the supercomputer, called Jiuzhang 2, can calculate in a single millisecond a task that the fastest conventional computer in the world would take a mind-numbing 30 trillion years.

The breakthrough was revealed during an interview with the research team, which was broadcast on China's state-owned CCTV on Tuesday, which could make the news suspect. But with two peer-reviewed papers, it's important to take this seriously.

Pan Jianwei, lead researcher of the studies, said that Zuchongzhi 2, which is a 66-qubit programmable superconducting quantum computer is an incredible 10 million times faster than Google's 55-qubit Sycamore, making China's new machine the fastest in the world, and the first to beat Google's in two years.

The Zuchongzhi 2 is an improved version of a previous machine, completed three months ago. The Jiuzhang 2, a different quantum computer that runs on light, has fewer applications but can run at blinding speeds of 100 sextillion times faster than the biggest conventional computers of today. In case you missed it, that's a one with 23 zeroes behind it.

But while the features of these new machines hint at a computing revolution, they won't hit the marketplace anytime soon. As things stand, the two machines can only operate in pristine environments, and only for hyper-specific tasks. And even with special care, they still make lots of errors.

Professor Pan of the University of Science and Technology of China said that the next step involved quantum error correction with four to five years of hard work.

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CyberHive’s Gareth Lockwood on how quantum computing changes the rules of threat protection – TechCentral.ie

Source: Stockfresh

The changing landscape of cyber security and Facebook experiences more pushback

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On this weeks show we look at the cyber security landscape and the emerging technologies like quantum computing that will reshape it with CyberHive head of product Gareth Lockwood.

In other news Cisco brings holograms to conference calls, Facebook is in the bad books, again, and its competitors try to convince US lawmakers to leave them alone.

To never miss an episode of TechRadio subscribe, comment and rate us on iTunes, Soundcloud, Spotify or find us on pod.link.

For more on CyberHive visit https://cyberhive.com/

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Amazon partners with UCLA on science hub focusing on AI and its social impact – Yahoo Finance

Amazons Pietro Perona and Prem Natarajan join UCLAs Leonard Kleinrock, Jayathi Murthy, Andrea Ghez, Jens Palsberg and Stefano Soatto in flashing thumbs-up signs during an Amazon Science Day at UCLA kickoff event. (UCLA Photo)

Amazon and UCLA are launching a research hub that will draw upon industry and academic research to address the social issues raised by the rapid rise of artificial intelligence.

The Science Hub for Humanity and Artificial Intelligence will be based at the UCLA Samueli School of Engineering in Los Angeles, with Amazon providing $1 million in funding for the initial year of the partnership. The two parties may renew the agreement for up to four additional years.

In a news release, UCLA said faculty from across its campus will collaborate with Amazons AI specialists to identify and solve research challenges in the field of artificial intelligence, with particular attention to issues such as algorithmic bias, fairness, accountability and responsible AI. The collaboration will support doctoral fellowships and research projects as well as community outreach programs.

We are delighted to collaborate with Amazon on this effort to examine the future of artificial intelligence and its implications for our world, UCLA Chancellor Gene Block said. The Science Hub for Humanity and Artificial Intelligence will advance AI-related discoveries and deepen our understanding of a discipline that is revolutionizing the way we use and understand modern technology.

The hub will support AI research under the guidance of an advisory group headed by UCLA computer science professor Jens Palsberg. The group, which includes representatives from Amazon and UCLA, will develop, solicit and select research proposals and review nominations for fellowship recipients.

Funding for the hub will support annual fellowships of $70,000 each for students in the second, third or fourth year of a UCLA Engineering doctoral program. Fellows will also be invited to take part in paid summer internships at Amazon.

The hub is designed to foster the educational mission of the university, so it can best educate the diverse talent needed to sustain the AI revolution in the years to come, in a way that benefits all sectors of society, said Stefano Soatto, vice president of applied sciences for Amazon Web Services AI. Soatto, who is currently on leave from his position as a UCLA computer science professor, was instrumental in helping Amazon and the university establish the science hub.

Story continues

UCLA organized an Amazon Science Day event today to celebrate the unveiling of the hub as well as the 52nd anniversary of the birth of the internet. On Oct. 29, 1969, UCLA computer scientist Leonard Kleinrock directed the transmission of the first internet message from his lab to Stanford Research Institute. (The network crashed after Kleinrocks team sent the first two characters: the LO in LOGIN.)

The science hub is the latest example of Amazons collaboration with universities across the country to advance research in AI and other fields. Just this week, for example, Amazon Web Services spotlighted the debut of its quantum computing research center on Caltechs campus.

In Seattle, Amazons hometown, the University of Washington has received a healthy share of support: In 2012, Amazon established two $1 million endowed professorships in machine learning at the Paul G. Allen School of Computer Science and Engineering. And in 2016, Amazon provided $10 million in funding for a new computer science building.at UW.

At least six UW faculty members have been designated Amazon Scholars, which means they spend between 20% and 90% of their time at Amazon. One of those scholars is economics professor Pat Bajari, who is Amazons chief economist.

UW computer scientist Ed Lazowska said the university benefits from having Amazons headquarters in the same neck of the woods. Because Amazon is a 20-minute bicycle ride from campus, we have had no need to formalize a broad agreement with them, in contrast to universities located thousands of miles away, Lazowska told GeekWire in an email.

This report has been updated with further information about Amazons ties with UW.

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Crowd Funding Market is Thriving Worldwide with Crowd Cube Capital , Seedrs , Kickstarter , Indiegogo , GoFundMe , Fundable , CircleUp Network The…

Global Crowd Funding Market is a latest research study released by QY Reports evaluating the market risk side analysis, highlighting opportunities and leveraged with strategic and tactical decision-making support. The report provides crucial statistics on the market status of the leading Crowd Funding market players and offers information on market trends and development, growth drivers, technologies, and the changing investment structure of the Global Crowd Funding Market. The report uses effective graphical presentation techniques, such as graphs, charts, tables as well as pictures for better understanding.

Request a Sample Copy of the Report @ https://www.qyreports.com/request-sample/?report-id=339107

Prominent Players: Crowd Cube Capital , Seedrs , Kickstarter , Indiegogo , GoFundMe , Fundable , CircleUp Network , MicroVentures Marketplace

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This report features ongoing turns of events, significant occasions forming the market, emanant markets, hindrances that should be defeated to understand the full advantages and capability of the market. Moreover, the report offers two separate market estimates one for the creative side and one more for the utilization side of the worldwide Crowd Funding market. The most recent investigation of the Video Event Data Recorder market loans to organizations exhaustive experiences by uncovering the development example of this industry space after fundamentally examining authentic information and the latest things.

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EXPLAINED: Why End-To-End Encryption May Not Mean That Nobody Can Read Your WhatsApp Chats – News18

Its one thing for WhatsApp chats to be end-to-end encrypted, as the Facebook-owned company says they are, but it is another matter entirely how messages shared via the service regularly end up getting leaked". Notwithstanding the impenetrable shield that the company says it uses to keep the chats of its more than 2 billion users private, there are backdoors and hacks that allow people other than the sender and the recipient to access WhatsApp messages. Heres what you need to know.

WhatsApp says it ensures that any content shared via the service messages, photos, videos, voice messages, documents, and calls are secured from falling into the wrong hands using end-to-end encryption.

In a white paper on the subject, WhatsApp says it defines end-to-end encryption as communications that remain encrypted from a device controlled by the sender to one controlled by the recipient". That means, the Facebook-owned company says, that no third parties, not even WhatsApp or our parent company Facebook, can access the content in between".

According to WhatsApp, scrambling of chats using the Signal encryption protocol can be likened to messages being secured with a lock" when it leaves a device with only the sender and the recipient in possession of the special key needed to unlock and read them". The encryption feature, it is added, operates automatically and there is no need to turn on settings or set up special secret chats to secure your messages". The Signal encryption is a cryptographic protocol that was developed by Open Whisper Systems in 2013.

However, WhatsApp clarifies that while it considers all messages from a device controlled by the sender to one whose device is controlled by the recipient to be end-to-end encrypted", communications with a recipient who uses a vendor to manage their endpoint are not considered end-to-end encrypted".

Often, what is described as a leak" of WhatsApp messages is nothing more than screenshots of chats that a recipient or somebody with access to a recipients phone shares with others. WhatsApp even notes this is in its privacy policy under a subhead called Third-Party Information.

You should keep in mind that in general any user can capture screenshots of your chats or messages or make recordings of your calls with them and send them to WhatsApp or anyone else, or post them on another platform," it says.

The recent cases of Indian law enforcement officials going through chats of Bollywood celebrities like Rhea Chakraborty and Aryan Khan were enabled by actual access to their phones. The leak" here was actually a case of phones being handed over to investigators, who were then able to also access deleted chats stored on the device. But there are tech backdoors that exist through which private WhatsApp chats can be accessed. One such means being via the cloning of a phone which, as the name suggests, enables a copy to be made of all the contents of a particular phone, giving the cloner access to the data.

Then there are spyware that can be installed secretly in a phone, which then provides constant access to all actions performed on the device. The Pegasus spyware developed by an Israeli company managed to reveal all WhatsApp chats to the entity operating the spyware.

But a common mode of accessing WhatsApp chats has been through the backup of chats that WhatsApp stores on the cloud. Now, WhatsApp itself does not provide cloud storage and backs up messages with a third-party cloud provider, like say Google Drive or iCloud. Storage on the cloud is not encrypted and, if a users cloud storage is hacked, then access can be obtained to backed up chats. However, in September this year, Facebook founder Mark Zuckerberg said that WhatsApp was adding another layer of privacy and security" to provide an end-to-end encryption option for the backups people choose to store in Google Drive or iCloud".

There is a constant tussle between law enforcement agencies and WhatsApp over access to chats with the former saying its important for facilitating investigation into cases and preventing crimes even as the latter argues that doing so would compromise user privacy and security.

But it would not be entirely correct to say that WhatsApp has access to no data from users. While in the ordinary course WhatsApp does not store messages once they are delivered or transaction logs of such delivered messages", its privacy policy states that it may collect, use, preserve, and share user information if we have a good-faith belief that it is reasonably necessary". Circumstances in which it may do so may involve a need to (a) keep our users safe, (b) detect, investigate, and prevent illegal activity, (c) respond to legal process, or to government requests, (d) enforce our terms and policies", it adds. It notes that this may include information about how some users interact with others on our service".

A report by ProPublica in September this year questioned WhatsApp privacy claims by pointing to its ability to respond to complaints from users regarding messages shared using the service. The report said that the company has about 1,000 staff based in offices Texas, Singapore and Dublin whose job it is to review WhatsApp messages that have been flagged by users. In fact, the company also acknowledges this in its privacy policy, saying that when a report is made, we collect information on both the reporting user and reported user".

ProPublica said these reviewers have access to only a specific set of messages when a user reports any exchange, noting that deploying an army of content reviewers is just one of the ways that the companys actions have left WhatsApp far less private than its users likely understand or expect".

The report also mentions metadata that WhatsApp collects, which is not subject to encryption and yet can contain significant information about its users, like data related to location, phone numbers, etc. It also shares such metadata upon request with law enforcement agencies, the report said.

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Originally posted here:
EXPLAINED: Why End-To-End Encryption May Not Mean That Nobody Can Read Your WhatsApp Chats - News18

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