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Coronavirus puts artificial intelligence to the test – Los Angeles Times

Dr. Albert Hsiao and his colleagues at the UC San Diego health system had been working for 18 months on an artificial intelligence program designed to help doctors identify pneumonia on a chest X-ray. When the coronavirus hit the United States, they decided to see what it could do.

The researchers quickly deployed their program, which dots X-ray images with spots of color where there may be lung damage or other signs of pneumonia. It has now been applied to more than 6,000 chest X-rays, and its providing some value in diagnosis, said Hsiao, the director of UCSDs augmented imaging and artificial intelligence data analytics laboratory.

His team is one of several around the country that has pushed AI programs into the COVID-19 crisis to perform tasks like deciding which patients face the greatest risk of complications and which can be safely channeled into lower-intensity care.

The machine-learning programs scroll through millions of pieces of data to detect patterns that may be hard for clinicians to discern. Yet few of the algorithms have been rigorously tested against standard procedures. So while they often appear helpful, rolling out the programs in the midst of a pandemic could be confusing to doctors and dangerous for patients, some AI experts warn.

AI is being used for things that are questionable right now, said Dr. Eric Topol, director of the Scripps Research Translational Institute and author of several books on health IT.

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Topol singled out a system created by Epic, a major vendor of electronic health records software, that predicts which coronavirus patients may become critically ill. Using the tool before it has been validated is pandemic exceptionalism, he said.

Epic said the companys model had been validated with data from more 16,000 hospitalized COVID-19 patients in 21 healthcare organizations. No research on the tool has been published for independent researchers to assess, but in any case, it was developed to help clinicians make treatment decisions and is not a substitute for their judgment, said James Hickman, a software developer on Epics cognitive computing team.

Others see the COVID-19 crisis as an opportunity to learn about the value of AI tools.

My intuition is its a little bit of the good, bad and ugly, said Eric Perakslis, a data science fellow at Duke University and former chief information officer at the Food and Drug Administration. Research in this setting is important.

Nearly $2 billion poured into companies touting advancements in healthcare AI in 2019. Investments in the first quarter of 2020 totaled $635 million, up from $155 million in the first quarter of 2019, according to digital health technology funder Rock Health.

At least three healthcare AI technology companies have made funding deals specific to the COVID-19 crisis, including Vida Diagnostics, an AI-powered lung-imaging analysis company, according to Rock Health.

Overall, AIs implementation in everyday clinical care is less common than hype over the technology would suggest. Yet the coronavirus has inspired some hospital systems to accelerate promising applications.

UCSD sped up its AI imaging project, rolling it out in only two weeks.

Hsiaos project, with research funding from Amazon Web Services, the University of California and the National Science Foundation, runs every chest X-ray taken at its hospital through an AI algorithm. While no data on the implementation has been published yet, doctors report that the tool influences their clinical decision-making about a third of the time, said Dr. Christopher Longhurst, UCSD Healths chief information officer.

The results to date are very encouraging, and were not seeing any unintended consequences, he said. Anecdotally, were feeling like its helpful, not hurtful.

AI has advanced further in imaging than in other areas of clinical medicine because radiological images have tons of data for algorithms to process, and more data makes the programs more effective, Longhurst said.

But while AI specialists have tried to get AI to do things like predict sepsis and acute respiratory distress researchers at Johns Hopkins University recently won a National Science Foundation grant to use it to predict heart damage in COVID-19 patients it has been easier to plug it into less risky areas such as hospital logistics.

In New York City, two major hospital systems are using AI-enabled algorithms to help them decide when and how patients should move into another phase of care or be sent home.

At Mount Sinai Health System, an artificial intelligence algorithm pinpoints which patients might be ready to be discharged from the hospital within 72 hours, said Robbie Freeman, vice president of clinical innovation at Mount Sinai.

Freeman described the AIs suggestion as a conversation starter, meant to help assist clinicians working on patient cases decide what to do. AI isnt making the decisions.

NYU Langone Health has developed a similar AI model. It predicts whether a COVID-19 patient entering the hospital will suffer adverse events within the next four days, said Dr. Yindalon Aphinyanaphongs, who leads NYU Langones predictive analytics team.

The model will be run in a four- to six-week trial with patients randomized into two groups: one whose doctors will receive the alerts, and another whose doctors will not. The algorithm should help doctors generate a list of things that may predict whether patients are at risk for complications after theyre admitted to the hospital, Aphinyanaphongs said.

Some health systems are leery of rolling out a technology that requires clinical validation in the middle of a pandemic. Others say they didnt need AI to deal with the coronavirus.

Stanford Health Care is not using AI to manage hospitalized patients with COVID-19, said Ron Li, the centers medical informatics director for AI clinical integration. The San Francisco Bay Area hasnt seen the expected surge of patients who would have provided the mass of data needed to make sure AI works on a population, he said.

Outside the hospital, AI-enabled risk factor modeling is being used to help health systems track patients who arent infected with the coronavirus but might be susceptible to complications if they contract COVID-19.

At Scripps Health, clinicians are stratifying patients to assess their risk of getting COVID-19 and experiencing severe symptoms using a risk-scoring model that considers factors like age, chronic conditions and recent hospital visits. When a patient scores 7 or higher, a triage nurse reaches out with information about the coronavirus and may schedule an appointment.

Though emergencies provide unique opportunities to try out advanced tools, its essential for health systems to ensure doctors are comfortable with them, and to use the tools cautiously, with extensive testing and validation, Topol said.

When people are in the heat of battle and overstretched, it would be great to have an algorithm to support them, he said. We just have to make sure the algorithm and the AI tool isnt misleading, because lives are at stake here.

Gold writes for Kaiser Health News, an editorially independent program of the Kaiser Family Foundation. It is not affiliated with Kaiser Permanente.

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Coronavirus puts artificial intelligence to the test - Los Angeles Times

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Powering the Artificial Intelligence Revolution – HPCwire

It has been observed by many that we are at the dawn of the next industrial revolution: The Artificial Intelligence (AI) revolution. The benefits delivered by this intelligence revolution will be many: in medicine, improved diagnostics and precision treatment, better weather forecasting, and self-driving vehicles to name a few. However, one of the costs of this revolution is going to be increased electrical consumption by the data centers that will power it. Data center power usage is projected to double over the next 10 years and is on track to consume 11% of worldwide electricity by 2030. Beyond AI adoption, other drivers of this trend are the movement to the cloud and increased power usage of CPUs, GPUs and other server components, which are becoming more powerful and smart.

AIs two basic elements, training and inference, each consume power differently. Training involves computationally intensive matrix operations over very large data sets, often measured in terabytes to petabytes. Examples of these data sets can range from online sales data to captured video feeds to ultra-high-resolution images of tumors. AI inference is computationally much lighter in nature, but can run indefinitely as a service, which draws a lot of power when hit with a large number of requests. Think of a facial recognition application for security in an office building. It runs continuously but would stress the compute and storage resources at 8:00am and again at 5:00pm as people come and go to work.

However, getting a good handle on power usage in AI is difficult. Energy consumption is not part of standard metrics tracked by job schedulers and while it can be set up, it is complicated and vendor dependent. This means that most users are flying blind when it comes to energy usage.

To map out AI energy requirements, Dr. Miro Hodak led a team of Lenovo engineers and researchers, which looked at the energy cost of an often-used AI workload. The study, Towards Power Efficiency in Deep Learning on Data Center Hardware, (registration required) was recently presented at the 2019 IEEE International Conference on Big Data and was published in the conference proceedings. This work looks at the energy cost of training ResNet50 neural net with ImageNet dataset of more than 1.3 million images on a Lenovo ThinkSystem SR670 server equipped with 4 Nvidia V100 GPUs. AC data from the servers power supply, indicates that 6.3 kWh of energy, enough to power an average home for six hours, is needed to fully train this AI model. In practice, trainings like these are repeated multiple times to tune the resulting models, resulting in energy costs that are actually several times higher.

The study breaks down the total energy into its components as shown in Fig. 1. As expected, the bulk of the energy is consumed by the GPUs. However, given that the GPUs handle all of the computationally intensive parts, the 65% share of energy is lower than expected. This shows that simplistic estimates of AI energy costs using only GPU power are inaccurate and miss significant contributions from the rest of the system. Besides GPUs, CPU and memory account for almost quarter of the energy use and 9% of energy is spent on AC to DC power conversion (this is within line of 80 PLUS Platinum certification of SR670 PSUs).

The study also investigated ways to decrease energy cost by system tuning without changing the AI workload. We found that two types of system settings make most difference: UEFI settings and GPU OS-level settings. ThinkSystem servers provides four UEFI running modes: Favor Performance, Favor Energy, Maximum Performance and Minimum Power. As shown in Table 1, the last option is the best and provides up to 5% energy savings. On the GPU side, 16% of energy can be saved by capping V100 frequency to 1005 MHz as shown in Figure 2. Taking together, our study showed that system tunings can decrease energy usage by 22% while increasing runtime by 14%. Alternatively, if this runtime cost is unacceptable, a second set of tunings, which save 18% of energy while increasing time by only 4%, was also identified. This demonstrates that there is lot of space on system side for improvements in energy efficiency.

Energy usage in HPC has been a visible challenge for over a decade, and Lenovo has long been a leader in energy efficient computing. Whether through our innovative Neptune liquid-cooled system designs, or through Energy-Aware Runtime (EAR) software, a technology developed in collaboration with Barcelona Supercomputing Center (BSC). EAR analyzes user applications to find optimum CPU frequencies to run them at. For now, EAR is CPU-only, but investigations into extending it to GPUs are ongoing. Results of our study show that that is a very promising way to bring energy savings to both HPC and AI.

Enterprises are not used to grappling with the large power profiles that AI requires, the way HPC users have become accustomed. Scaling out these AI solutions will only make that problem more acute. The industry is beginning to respond. MLPerf, currently the leading collaborative project for AI performance evaluation, is preparing new specifications for power efficiency. For now, it is limited to inference workloads and will most likely be voluntary, but it represents a step in the right direction.

So, in order to enjoy those precise weather forecasts and self-driven cars, well need to solve the power challenges they create. Today, as the power profile of CPUs and GPUs surges ever upward, enterprise customers face a choice between three factors: system density (the number of servers in a rack), performance and energy efficiency. Indeed, many enterprises are accustomed to filling up rack after rack with low cost, adequately performing systems that have limited to no impact on the electric bill. Unfortunately, until the power dilemma is solved, those users must be content with choosing only two of those three factors.

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BMW is using Artificial Intelligence to paint its cars for a perfect result – Hindustan Times

Artificial intelligence can bring even greater precision to controlling highly sensitive systems in automotive production, as a pilot project in the paint shop of the BMW Group's Munich plant has demonstrated.

Despite state-of-the-art filtration technology, the content of finest dust particles in paint lines varies depending on the ambient air drawn in. If the dust content exceeded the threshold, the still wet paint could trap particles, thus visually impairing the painted surface.

Artificial Intelligence (AI) specialists from central planning and the Munich plant have now found a way to avoid this situation altogether. Every freshly painted car body must undergo an automatic surface inspection in the paint shop. Data gathered in these inspections are used to develop a comprehensive database for dust particle analysis. The specialists are now applying AI algorithms to compare live data from dust particle sensors in the paint booths and dryers with this database.

"Data-based solutions help us secure and further extend our stringent quality requirements to the benefit of our customers. Smart data analytics and AI serve as key decision-making aids for our team when it comes to developing process improvements. We have filed for several patents relating to this innovative dust particle analysis technology," said Albin Dirndorfer, Senior Vice President Painted Body, Finish and Surface at the BMW Group.

(Also read: Ford is working on a car paint that can protect your vehicle from bird poop)

Two specific examples show the benefits of this new AI solution: Where dust levels are set to rise owing to the season or during prolonged dry periods, the algorithm can detect this trend in good time and is able to determine, for example, an earlier time for filter replacement.

Additional patterns can be detected where this algorithm is used alongside other analytical tools. For example, analysis could further show that the facility that uses ostrich feathers to remove dust particles from car bodies needs to be fine-tuned.

The BMW Group's AI specialists see enormous potential in dust particle analysis. Based on information from numerous sensors and data from surface inspections, the algorithm monitors over 160 features relating to the car body and is able to predict the quality of paint application very accurately.

This AI solution will be suitable for application in series production when an even broader database for the algorithm has been developed. In particular, this requires additional measuring points and even more precise sensor data for the car body cleaning stations. The AI experts are confident that once the pilot project at the parent plant in Munich has been completed, it will be possible to launch dust particle analysis also at other vehicle plants.

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BMW is using Artificial Intelligence to paint its cars for a perfect result - Hindustan Times

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UM partners with artificial intelligence leader Atomwise to pursue COVID-19 therapies – UM Today

May 22, 2020

Two University of Manitoba researchers have received support from Atomwise, the leader in using artificial intelligence (AI) for small molecule drug discovery, to explore broad-spectrum therapies for COVID-19 and other coronaviruses.

Jorg Stetefeld: It is crucial to gain a molecular understanding of how one particularly attractive protein target, nsp12, interacts with another key protein named nsp8. Once learned, this knowledge can be used to develop both new drugs and repurpose existing ones.

Faculty of Science professor Jrg Stetefeld (chemistry), Tier-1 Canada Research Chair in Structural Biology and Biophysics, and associate professor Mark Fry (biological sciences) received support through Atomwises Artificial Intelligence Molecular Screen (AIMS) awards program, which seeks to democratize access to AI for drug discovery and enable researchers to accelerate the translation of their research into novel therapies.

The current pandemic of COVID-19 is caused by a novel virus strain of SARS-CoV-2, says Stetefeld. To develop the most efficient therapeutic strategies to counteract the SARS-CoV-2 infection, it is crucial to gain a molecular understanding of how one particularly attractive protein target, nsp12, interacts with another key protein named nsp8. Once learned, this knowledge can be used to develop both new drugs and repurpose existing ones.

Professro Ben Bailey-Elkin, from the Stetefeld laboratory, will test compounds that Atomwises AI team sends him after they perform an in silico screen of millions of compounds, and carry out the subsequent biochemical and biophysical characterization, significantly reducing the time it would traditionally take to carry out this process. The Atomwise team will use their proprietary AI software to search for promising direct-acting antivirals, which interfere with the function of the viruss targeted proteins.

Professor Frys laboratory will take advantage of Atomwises cutting edge AI to screen a panel of small molecules predicted to interfere with the cellular signaling pathway that is central to the cytokine storm associated with the development of the COVID-19 acute respiratory distress syndrome.

Professor Frys laboratory will take advantage of Atomwises cutting edge AI to screen a panel of small molecules predicted to interfere with the cellular signaling pathway that is central to the cytokine storm.

Cytokines are a group of small proteins secreted by cells for the purpose of cell-to-cell communication, and in healthy individuals, these cytokines regulate key activities such as immunity, cell growth and tissue repair, for example, says Fry. A large number of patients with COVID-19 will develop life threatening pneumonia, accompanied by a so-called cytokine storm where the body experiences excessive or uncontrolled release of a number of these molecules.

Fry adds, The cytokine storm is thought to play a major role in the development of COVID-19, and there is some evidence that drugs which inhibit key cytokines such as interleukin-6 may reduce the severity of the disease. Its important to note that many of these inhibitors are part of a therapeutic class called biological drugs. These can be expensive to make and supply may be limited. My hope is that we can develop a small molecule inhibitor of the cytokine storm that will be easy to synthesize and available to all who need it.

Atomwises patented AI technology has been proven in hundreds of projects to discover drug leads for a wide variety of diseases said Dr. Stacie Calad-Thomson, vice president and head of Artificial Intelligence Molecular Screen (AIMS) Partnerships at Atomwise. Were hopeful that the therapies discovered will not only target this pandemic, but potential future pandemics.

Research at the University of Manitoba is partially supported by funding from the Government of Canada Research Support Fund.

UM Today Staff

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UM partners with artificial intelligence leader Atomwise to pursue COVID-19 therapies - UM Today

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Exploring Artificial Intelligence Variants and Their Uses – RTInsights

The common thread across all AI technologies is the ability to impart human-like decision-making capabilities into applications and systems.

Artificial intelligence (AI) refers to thesimulation of human intelligence in systems programmed to think like humans andmimic their actions. AI includes a broad range of technologies, including cognitive computing, deep learning, expert systems, machine learning, natural language processing, and IBM Watson.

The common thread across these areas, and allof AI, for that matter, is the ability to impart human-like decision-makingcapabilities into applications and systems. Experts predict AI will be rapidlyadopted because they believe it will be a disruptive technology acrossmany industries.

There already are many examples of the impactAI has in a variety of fields, including:

AI is a very broad field with manysubcategories. Each is aimed at particular application areas and uses specifictechnologies for those application areas. They include

Cognitive computing is the use of computerizedmodels to simulate the human thought process in complex situations where theanswers may be ambiguous and uncertain. It mimics how humans learn, think, and adapt,enabling a wide range of real-time insights and actions.

For example, cognitive computing is being usedto aid human resources with hiring decisions, help doctors make diagnoses and treatment decisionsby using the data relating to a patients case to make suggestions withconfidence levels assigned to them, and improve call center customer experience.

Cognitive computing enables such applicationsusing several technologies, including:

Deep learning is a subset of machine learningin artificial intelligence (AI) that has networks capable of learningunsupervised from unstructured or unlabeled data. Deep learning systems notonly think, but keep learning and self-directing as new data flows in.

Deep learning can play a role in a range ofreal-time, interactive applications, including speech recognition, visual recognition, and machine translation.It accomplishes this using several techniques and technologies including:

An expert system that uses artificialintelligence techniques and databases of expert knowledge to offer advice ormake decisions. In particular, expert systems emulate the decision-makingability of a human expert. Expert systems are designed to solve complexproblems by reasoning through bodies of knowledge, represented mainly asif-then rules rather than through conventional procedural code.

A key attribute of expert systems is that theyautomate many tasks and work interactively with external information (e.g., atext message, an event log, a verbal question or answer, and more). Applicationareas for expert systems include use as:

Machine learning is an application ofartificial intelligence that provides systems the ability to automaticallylearn and improve from experience without being explicitly programmed. Machinelearning uses structured data that has a single, direct input for each fieldused. In general, machine learning makes use of clean data, that is easy towork with, and for which there are no nuances to it. (In contrast, deeplearning uses unstructured data.)

Machine learning is best when there aremassive volumes of structured data that would take years for a human operatorto process. It can efficiently classify information, predicting outcomes basedon previous behavior and performance, and organizing information together basedon key variables. General applications areas include:

Natural language processing (NLP) makes use oflinguistics and artificial intelligence to improve interactions betweencomputers and humans. In many applications, NLP is used to helpsolve a problem, answer a question, or direct a person to an appropriateresource based on the spoken word.

To achieve such results, NLP-bases systemsmake use of some core technologies and deliver essential capabilities,including:

IBM Watson is an artificial intelligence platform that helps businessespredict and shape future outcomes, automate complex processes, and optimizeemployee productivity. It is widely known from its first use case as a questionand answer computer system used in a series of matches against humans on the TVshow Jeopardy!

Today, IBM Watson technology delivers acompetitive advantage to businesses by using AI to unlock the value of data innew, profound ways, giving every member of a business the power of AI. IBMWatson consists of a suite of pre-built applications and tools to givebusinesses insights to predict and shape outcomes and infuse intelligence intoyour workflows. Implementations of IBM Watson include:

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Harness artificial intelligence and take control your health – Newswise

Newswise Sedentary behaviours, poor sleep and questionable food choices are major contributors of chronic disease, including diabetes, anxiety, heart disease and many cancers. But what if we could prevent these through the power of smart technologies?

In a new University of South Australia research project announced today and funded by $1,118,593 from the Medical Research Future Fund (MRFF), researchers will help Australians tackle chronic disease through a range of digital technologies to improve their health.

Using apps, wearables, social media and artificial intelligence, the research will show whether technology can modify and improve peoples behaviours to create meaningful and lasting lifestyle changes that can ward off chronic disease.

Chronic disease is the leading cause of illness, disability and death in Australia with about half of Australians having a least one of eight major conditions including CVD, cancer, arthritis, asthma, back pain, diabetes, pulmonary disease and mental health conditions.

Nearly 40 per cent of chronic disease is preventable through modifiable lifestyle and diet factors.

The research will assess the ability of digital technologies to improve the health and wellbeing across a range of populations, health behaviours and outcomes, with a specific focus on how they can negate poor health outcomes associated high-risk events such as school holidays or Christmas (when people are more likely to indulge and less likely to exercise); where technology could better track the activity among hospital inpatients, outpatients and home-patients (to help recovery from illness and surgery, leading to improved patient outcomes); and how new artificial intelligence-driven virtual health assistants can improve boost health among high-risk groups, such as older adults.

Lead researcher, UniSAs Associate Professor Carol Maher says the research aims to deliver accessible and affordable health solutions for all Australians.

Poor lifestyle patterns a lack of exercise, excess sedentary behaviour, a lack of sleep and poor diets are leading modifiable causes of death and disease in Australia, Assoc Prof Maher says.

Technology has a huge amount to offer in terms of improving lifestyle and health, especially in terms of personalisation and accessibility, but it has to be done thoroughly and it has to be done well.

Research plays an important role in helping understand the products that are most effective, which will see us working with existing commercial technologies and applying and testing them in a new way, as well as developing bespoke software for specific, unmet needs.

The great advantage of technology-delivered programs is that with careful design, once they are developed and evaluated, they can be delivered very affordably and on a massive scale.

If we are to make any change in the prevalence of chronic disease in Australia, we must plan to do it en masse.

The research aims to bridge the gap between academic rigour and commercial offerings so ensure that every Australian has access to the health supports they need.

One of the challenges we face is that many people who could benefit from digital health technologies are intimidated by them for example, older adults who are not that comfortable with technology, or health professionals who are just used to doing things a certain way, Assoc Prof Maher says.

Change can be hard, but when were making leaps in the right direction to improve lifestyle and health of the Australian community, these changes are worth considering.

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Importance and Benefits of Artificial intelligence for Patent Searching – Express Computer

Authored by Amit Aggarwal, co-founder and Director, Effectual Services

Every year with the growth in new technologies and inventions there have been an astounding growth in volume of intellectual property literature. Internationally, this data has to be gathered, stored, and classified in multiple formats and languages so that it can be used as and when required. However, data alone does not create a competitive advantage, extracting significant and actionable information from this data deluge represents a major challenge and an opportunity at the same time. Analysing patent documents from the pile of data manually is getting out of question day by day as it demands extensive time and resources. So, the examiners and patent analyst need all available tools at their disposal to perform this tedious task. One of the tools with a tremendous potential is Artificial Intelligence (AI). At its core, artificial intelligence is a computer that has been programmed to mimic the natural intelligence of human beings by learning, reasoning and making decisions.

From the days of fully constructed Boolean searches, search and analytics have evolved, thanks to AI-based semantic search algorithms to provide more efficient and accurate search result than ever before. A major advantage of artificial intelligence is its ability to provide repeated results as these systems are not hindered by inexperience or fatigue. Artificial intelligence tools have potential to significantly streamline and automate the patent search process and the increase the quality and speed of theobtaining results by reducing the amount of time examiners and analyst spend researching, for example,a prior art research project that can runs into days and weeks, can be performed by an AI tool in a matter of hours. Some existing tools, that are really advanced, also incorporate natural language based input that permitsa searcher to include natural language terms that can be comprehended by the backend artificial intelligence engine, which recovers comparable documents available in different languages.

The European Patent Office (EPO) uses Intelligent machine translation tool Patent Translate to allow for translation of patent publications from 32 languages into the EPO official languages of English, French and German. The US patent office (USPTO)uses artificial intelligence to help examiners to review pending patent applications by augmenting classification and searches currently a high priority with it. The UK patent office (UKIPO) also uses artificial intelligence solutions for prior art searching. IBM is offering Watson, an IP advisor that leverages artificial intelligence for fast patent ingestion, better insights, and analytics. Turbopatent, a company that develops applications to automate and streamline the patent protection process, has introduced two artificial intelligence products for patent lawyers. Roboreview, a cloud-based product that analyses drafted patent applications and rapid response, a product that assists lawyers in writing responses to office actions.

Many key players in the industry like PatSeer, Questel, have been using artificial intelligence in combination with machine learning & semantic-based algorithms to provide patent analytics tools and software.With the help of these tools and software we can now:

There are some opposing views relating to the implementation and benefit of artificial intelligence tools and techniques there are people who are concerned about the peculiarities of language used within patent documents, and doubt that how these tools can deal with the inherent ambiguities i.e.its lack of human reasoning as it is unable to carry out a sanity check of results or inventions and lacks the experience that leads to a persons intuitive response to situations.There have been some recorded incidents where the AI based tools failed to perform what it was intended to do.

All in all, its difficult to say whether the AI based tools will be able to completely mimic the human beings and perform same level of analysis or whether they will only reach to the extent of an additional help to a patent searcher we will see in coming times.

If you have an interesting article / experience / case study to share, please get in touch with us at [emailprotected]

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SUSE infuses portfolio with artificial intelligence and edge technology – SiliconANGLE

Now independent from previous owner Micro Focus International PLC, SUSE is out to make its presence more deeply felt with developers and innovators. Its biggest competitors, Red Hat Inc. and Microsoft Corp., have developed impressively broad, varied portfolios. Can SUSEpull any tricks from its Linux-distro hat interesting enough to compete for the attention of leading-edge, developer-driven IT departments?

Even amid the COVID-19 pandemic, SUSEis busily engaging with its community, according toMelissa Di Donato, chief executive officer of SUSE.Open source is developing a community that often times does not sit together. And now were really trying to engage with that community as much as possible to keep innovation alive, to keep collaboration alive, Di Donato said.

SUSE will collaborate and integrate with its developer community in 2020, as well as sharpen its focus on Linux use cases at the edge, such as autonomous driving, Di Donato added.

Di Donatospoke withStu Miniman, host of theCUBE, SiliconANGLE Medias livestreaming studio, during the SUSECON Digital event. They discussed how to drive engagement in open-source communities and how SUSEis infusing its portfolio with artificial intelligence, edge technology and more. (* Disclosure below.)

SUSEhas recently opened up a community to developers with content around Linux, DevOps, containers, Kubernetes, microservices and more. It has also introduced the SUSECloud Application Platform Developer Sandbox.

We wanted to make it easy for these developers to benefit from the best practicesthat evolved from the cloud-native application deliverythat we offer every day to customers and now for free to our developers, Di Donato said.You can expect SUSE to enter new markets like powering autonomous vehicles with safety-certified Linux and other really innovative technologies.

For example, SUSEiscarving out fresh terrain through its partnership with ElectrobitWireless Communications Oy, aleading providerof embedded software solutions for automotive. The two companies will be working on the use of safety-certified Linux in self-driving cars. Also, next quarter the company will announce a solution for simplifying the integration of AI building blocks into software.

Heres the complete video interview, part of SiliconANGLEs and theCUBEs coverage of the SUSECON Digital event. (* Disclosure: TheCUBE is a paid media partner for SUSECON Digital. Neither SUSE, the sponsor for theCUBEs event coverage, nor other sponsors have editorial control over content on theCUBE or SiliconANGLE.)

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As Bitcoin Flounders, This Tiny Cryptocurrency Has Soared Over 200%Heres Why – Forbes

Bitcoin and cryptocurrency watchers are nervously waiting for bitcoin to make another move after a sudden sell-off this week.

The bitcoin price, the main driver of the cryptocurrency market, had been more-or-less trading sideways after rallying hard through April.

Now, one small cryptocurrency that isn't even in the top 30 most valuable tokens has suddenly soaredclimbing a staggering 230% over the last month.

Many bitcoin and crypto analysts are worried the bitcoin price could be heading lower before it ... [+] rallies again--but some small cryptocurrencies, such as omiseGO, have outperformed the wider market.

OmiseGO, an ethereum token that powers a smart contract platform and trades as OMG, was sent sharply higher after San Francisco-based bitcoin and cryptocurrency exchange Coinbase revealed it would list the token.

"The good ol' Coinbase listing pump is back," Larry Cermak, director of research at bitcoin and crypto news and analysis outlet The Block, said via Twitter, pointing to OmiseGO's sharp rally since "it was announced that it's listing on Coinbase."

OmiseGO's smart contract platform, based in Bangkok, is designed facilitate the movement of funds between traditional payment systems and decentralized blockchains like ethereum.

The omiseGO price began climbing earlier this month after Coinbase, the largest U.S. bitcoin and crypto exchange, said it would allow Coinbase Pro users to make inbound OmiseGo transfers.

OmiseGO, which has a market value of just $257 million compared to bitcoin's $170 billion, jumped again this week after Coinbase said it would fully list the minor cryptocurrency everywhere but in New York State.

"Coinbase customers can now buy, sell, convert, send, receive, or store OMG," Coinbase said in a blog post on Thursday announcing the listing.

The OMG price is still heavily down on its all-time high of almost $30 per token set in late 2017 as bitcoin and cryptocurrency mania was sweeping the globe.

The omiseGo price has soared by 234% in just a month as investors cheer its new Coinbase listing.

The likes of bitcoin and other major cryptocurrencies have also failed to return to their all-time highs, with the bitcoin price now trading around half its December 2017 high.

Some smaller cryptocurrencies, such as chainlink and tezos, have rallied hard in recent months, however, pushed higher by demand for decentralized finance platforms.

Meanwhile, the broader bitcoin and cryptocurrency market is closely-watching for price swings after bitcoin went through a supply squeeze earlier this month.

The number of bitcoin rewarded to those that maintain the bitcoin network, called miners, was cut by half, dropping from 12.5 bitcoin to 6.25 on May 11.

Some had warned the bitcoin price could crash in the aftermath of the third halving but most analysts seem confident the bitcoin price will climb eventually.

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As Bitcoin Flounders, This Tiny Cryptocurrency Has Soared Over 200%Heres Why - Forbes

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What to Know About Billions’ Cryptocurrency Drama If You Know Nothing About Cryptocurrency – Vulture

Photo: Jeff Neumann/SHOWTIME

If youre a fan of the Showtime drama Billions but having a tough time following the current seasons cryptocurrency story lines, youre not alone. Not only do the actors have trouble keeping up with the series twists and turns, even those who work in the financial sector dont necessarily understand crypto mining, a subject that pops up several times in season five. Half the people in finance couldnt explain what mining is to you, says New York Times best-selling author Ben Mezrich, who joined the Billions writers room this season as a consulting producer. A large percentage of them have no idea, because its complex.

As the writer of Bitcoin Billionaires and The Accidental Billionaires: The Founding of Facebook: A Tale of Sex, Money, Genius and Betrayal the latter of which was adapted into the movie The Social Network Mezrich is a natural fit for the Billions team. His expert knowledge of cryptocurrency has provided the series with an opportunity to further explore this once-dark, underground area of finance. He also wrote this seasons third episode, which has Gordie Axelrod (Jack Gore), son of billionaire Bobby Axe Axelrod (Damian Lewis), running his own crypto-mining operation.

From the safety of his home in Quechee, Vermont, where hes riding out the COVID-19 pandemic, Mezrich was kind enough to guide Vulture through the intricacies of these esoteric plotlines. The result is this useful explainer for those of us who love Billions, but are still lost when characters like Axe and Chuck Rhoades (Paul Giamatti) start talking Bitcoin and blockchain.

Its a form of electronic money that sparked interest in recent years due to its skyrocketing prices. Its money that goes instantly from one person to the other, and theres no middleman, says Mezrich. A can be sent from person-to-person via their phone, just like a text.

The most well-known example of cryptocurrency is Bitcoin, which was created in 2009. But theres almost an infinite amount of cryptos at this point, says Mezrich.

This is the process of how the money is transferred from person-to-person. Because cryptocurrency doesnt use banks, miners are the ones who verify each transaction. Say I send you a Bitcoin, says Mezrich. The way that transaction is verified is, miners are working on computers attached to the network, which are doing these mathematical equations. And these equations, when theyre solved, they verify our transaction, and as a reward, the miner gets a certain amount of Bitcoin.

The process is very much like a contest, because all these different miners are competing to solve the equation, with the winner getting the Bitcoin. Mezrich likens mining to the race for the golden ticket in Charlie and the Chocolate Factory: You open all these wrappers and one of them is gonna have a piece of gold in it. But you dont know which one, and so youre incentivized to get all the [chocolate bars] you can. This is what these miners are doing: Theyre just continually trying to solve these equations. Because whoever solves it first, gets the golden ticket the Bitcoin.

You probably remember this term being bandied about by Chuck last season regarding mobile voting. A blockchain is a digital database containing information that can be simultaneously used and shared within a large, decentralized, publicly accessible network, according to Merriam-Webster.

Because its where all crypto transactions are logged. If I send you one Bitcoin, says Mezrich, that transaction is logged onto the blockchain. And the way it becomes verified is by these miners. Theyre the ones who essentially put these equations onto the blockchain.

Those guys are miners, and they were dealing with the aforementioned mathematical equations, which are not only very complicated, but require enormous amounts of computing power, says Mezrich. If you walk into a crypto mine, its computer after computer after computernot unlike what was inside the sketchy warehouse that served as the miners base in the episode.

The miners were drawing power from a town in upstate New York, which is where the legal issue comes into play. The problem is, if youre mining Bitcoin and you need to draw tons and tons of power, eventually, that cost can be more than what youre earning, explains Mezrich. So miners are always trying to find cheaper electricity. Enter the small town in question: The town gave the miners priority over their electrical power. By doing that, the miners are saving a lot of money, and they make a kickback deal with the town to get cheap electricity, but the way they get the cheap electricity is its being routed to them rather than the rest of the town, causing brownouts.

Axe is involved because hes the leader of a consortium that combined its resources to fund this operation. In the general scheme of things, its not a bring-down-Axe crime, but its certainly a way in [for Chuck], says Mezrich. So for now, there isnt enough evidence connecting him to this venture for Chuck to take legal action yet.

Instead of just mining Bitcoin, Gordie was mining a lot of different cryptos at once out of his prep-school basement. The way Axe describes his sons scheme to Wags (David Costabile) Its the smart way to do the stupid thing he was doing isnt much different from how Mezrich explains it. With multi-mining, you have a better chance of making money and you have less of a chance of getting caught, because youre hacking electricity on a smaller scale.

He was trying to pull down enough electricity to power a whole bank of crypto mines a bunch of computers to run all these calculations, says Mezrich. In so doing, he ended up short-circuiting and causing a massive power-grid failure.

Mezrich admits that Billions took a bit of dramatic license here.

He absolutely committed a crime by tapping into his schools (and the towns) power grid. If he had had his own power source, if he was just working at home with that, it wouldnt be illegal, says Mezrich. As for the actual crypto mining, Mezrich used Gordies tradition-bound prep-school headmaster as a stand-in for those who still see Bitcoin and other cryptocurrencies as the dirty part of the finance world. The mainstream has still not accepted it, he says. The headmaster would be one of the types who sees [Gordies behavior] as an affront to the men of honor that these kids are supposed to become.

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What to Know About Billions' Cryptocurrency Drama If You Know Nothing About Cryptocurrency - Vulture

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