Dascena Announces Publication of Prospective Study Evaluating Effect of its Machine Learning Algorithm on Severe Sepsis Prediction – Yahoo Finance

Data Published in the BMJ Health & Care Informatics of 75,147 Patient Encounters Demonstrated a Nearly 40% Reduction of Mortality Due to Severe Sepsis

Dascena, Inc., a machine learning diagnostic algorithm company that is targeting early disease intervention to improve patient care outcomes, announced today the publication of the companys prospective study evaluating its algorithm for the prediction of severe sepsis. The publication, "Effect of a Sepsis Prediction Algorithm on Patient Mortality, Length of Stay, and Readmission: a Prospective Multicenter Clinical Outcomes Evaluation of Real-world Patient Data from 9 US Hospitals," was published today in the peer-reviewed journal BMJ Health & Care Informatics.

"Sepsis is notoriously difficult to diagnose and treat, resulting in significant mortality and a high cost of treatment," said Ritankar Das, chief executive officer of Dascena. "Our algorithm helps clinicians identify sepsis at an earlier stage, thereby allowing for earlier intervention to improve patient outcomes, and in turn, reduces the costs associated with treatment."

Study Design

The study prospectively evaluated multiyear, multicenter real-world clinical data from 75,147 patient encounters that were monitored by the InSight machine learning algorithm for sepsis prediction at facilities ranging from community hospitals to large academic centers. Hospitalized patients, including patients in intensive care units (ICUs) and emergency department visits were included. Data was evaluated to determine the algorithms effect on outcomes including in-hospital mortality, hospital length of stay, and 30-day readmission. This study, which was conducted in both ICU and non-ICU patients, confirms the significant mortality benefit observed in a previous intensive care unit study (LINK).

During the InSight algorithm operation, patient data was captured from the hospitals electronic health records in real-time and hospital staff were informed when a patient was determined to be at high risk for sepsis.

Study Findings

Of the 75,147 patient encounters monitored by the InSight algorithm, 17,758 patient hospital stays met two or more Systemic Inflammatory Response Syndrome (SIRS) criteria and were therefore included in the analysis. The InSight algorithm implementation resulted in:

"We partnered with Dascena, starting in 2017, to bring the latest technology in the fight against sepsis to our hospital. We have found that the machine learning algorithm can pick up subtle factors in the patient that may not be obvious until much later in the illness," said Hoyt J. Burdick, M.D., senior vice president and chief medical officer of Cabell Huntington Hospital and lead author on the study. "We are excited to report data today from one of the largest studies of its kind, of improvements in both increased patient survival and reduced healthcare costs."

About Dascena

Dascena is developing machine learning diagnostic algorithms to enable early disease intervention and improve care outcomes for patients. For more information, visit Dascena.com.

View source version on businesswire.com: https://www.businesswire.com/news/home/20200430005192/en/

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Dan Budwick, 1ABdan@1abmedia.com

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Dascena Announces Publication of Prospective Study Evaluating Effect of its Machine Learning Algorithm on Severe Sepsis Prediction - Yahoo Finance

AI, machine learning and automation in cybersecurity: The time is now – GCN.com

INDUSTRY INSIGHT

The cybersecurity skills shortage continues to plague organizations across regions, markets and sectors, and the government sector is no exception.According to (ISC)2, there are only enough cybersecurity pros to fill about 60% of the jobs that are currently open -- which means the workforce will need to grow by roughly 145% to just meet the current global demand.

The Government Accountability Office states that the federal government needs a qualified, well-trained cybersecurity workforce to protect vital IT systems, and one senior cybersecurity official at the Department of Homeland Security has described the talent gap as a national security issue. The scarcity of such workers is one reason why securing federal systems is on GAOs High Risk list.Given this situation, chief information security officers who are looking for ways to make their existing resources more effective can make great use of automation and artificial intelligence to supplement and enhance their workforce.

The overall challenge landscape

Results of our survey, Making Tough Choices: How CISOs Manage Escalating Threats and Limited Resources show that CISOs currently devote 36% of their budgets to response and 33% to prevention.However, as security needs change, many CISOs are looking to shift budget away from prevention without reducing its effectiveness. An optimal budget would reduce spend on prevention and increase spending on detection and response to 33% and 40% of the security budget, respectively.This shift would give security teams the speed and flexibility they need to react quickly in the face of a threat from cybercriminals who are outpacing agencies defensive capabilities.When breaches are inevitable, it is important to stop as many as possible at the point of intrusion, but it is even more important to detect and respond to them before they can do serious damage.

One challenge to matching the speed of todays cyberattacks is that CISOs have limited personnel and budget resources. To overcome these obstacles and attain the detection and response speeds necessary for effective cybersecurity, CISOs must take advantage of AI, machine learning and automation.These technologies will help close gaps by correlating threat intelligence and coordinating responses at machine speed. Government agencies will be able to develop a self-defending security system capable of analyzing large volumes of data, detecting threats, reconfiguring devices and responding to threats without human intervention.

The unique challenges

Federal agencies deal with a number of challenges unique to the public sector, including the age and complexity of IT systems as well as the challenges of the government budget cycle.IT teams for government agencies arent just protecting intellectual property or credit card numbers; they are also tasked with protecting citizens sensitive data and national security secrets.

Charged with this duty but constrained by limited resources, IT leaders must weigh the risks of cyber threats against the daily demands of keeping networks up and running. This balancing act becomes more difficult as agencies migrate to the cloud, adopt internet-of-things devices and transition to software-defined networks that have no perimeter. These changes mean government networks are expanding their attack surface with no additional -- or even fewerdefensive resources. Its part of the reason why the Verizon Data Breach Investigations Report found that government agencies were subjected to more security incidents and more breaches than any other sector last year.

To change that dynamic, the typical government set-up of siloed systems must be replaced with a unified platform that can provide wider and more granular network visibility and more rapid and automated response.

How AI and automation can help

The keys to making a unified platform work are AI and automation technologies. Because organizations cannot keep pace with the growing volume of threats by manual detection and response, they need to leverage AI/ML and automation to fill these gaps. AI-driven solutions can learn what normal behavior looks like in order to detect anomalous behavior.For instance, many employees typically access a specific kind of data or only log on at certain times. If an employees account starts to show activity outside of these normal parameters, an AI/ML-based solution can detect these anomalies and can inspect or quarantine the affected device or user account until it is determined to be safe or mitigating action can be taken.

If the device is infected with malware or is otherwise acting maliciously, that AI-based tool can also issue automated responses. Making these tactical tasks the responsibility of AI-driven solutions frees security teams to work on more strategic problems, develop threat intelligence or focus on more difficult tasks such as detecting unknown threats.

IT teams at government agencies that want to implement AI and automation must be sure the solution they choose can scale and operate at machine speeds to keep up with the growing complexity and speed of the threat. In selecting a solution, IT managers must take time to ensure solutions have been developed using AI best practices and training techniques and that they are powered by best-in-class threat intelligence, security research and analytics technology. Data should be collected from a variety of nodes -- both globally and within the local IT environment -- to glean the most accurate and actionable information for supporting a security strategy.

Time is of the essence

Government agencies are experiencing more cyberattacks than ever before, at a time when the nation is facing a 40% cybersecurity skills talent shortage. Time is of the essence in defending a network, but time is what under-resourced and over-tasked government IT teams typically lack. As attacks come more rapidly and adapt to the evolving IT environment and new vulnerabilities, AI/ML and automation are rapidly becoming necessities.Solutions built from the ground up with these technologies will help government CISOs counter and potentially get ahead of todays sophisticated attacks.

About the Author

Jim Richberg is a Fortinet field CISO focused on the U.S. public sector.

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AI, machine learning and automation in cybersecurity: The time is now - GCN.com

Machine Learning in Medicine Market 2020-2024 Review and Outlook – Latest Herald

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Machine Learning in Medicine Market 2020-2024 Review and Outlook - Latest Herald

Could Machine Learning Replace the Entire Weather Forecast System? – HPCwire

Just a few months ago, a series of major new weather and climate supercomputing investments were announced, including a 1.2 billion order for the worlds most powerful weather and climate supercomputer and a tripling of the U.S. operational supercomputing capacity for weather forecasting. Weather and climate modeling are among the most power-hungry use cases for supercomputers, and research and forecasting agencies often struggle to keep up with the computing needs of models that are, in many cases, simulating the atmosphere of the entire planet as granularly and as regularly as possible.

What if that all changed?

In a virtual keynote for the HPC-AI Advisory Councils 2020 Stanford Conference, Peter Dueben outlined how machine learning might (or might not) begin to augment and even, eventually, compete with heavy-duty, supercomputer-powered climate models. Dueben is the coordinator for machine learning and AI activities at the European Centre for Medium-Range Weather Forecasts (ECMWF), a UK-based intergovernmental organization that houses two supercomputers and provides 24/7 operational weather services at several timescales. ECMWF is also the home of the Integrated Forecast System (IFS), which Dueben says is probably one of the best forecast models in the world.

Why machine learning at all?

The Earth, Dueben explained, is big. So big, in fact, that apart from being laborious, developing a representational model of the Earths weather and climate systems brick-by-brick isnt achieving the accuracy that you might imagine. Despite the computing firepower behind weather forecasting, most models remain at a 10 kilometer resolution that doesnt represent clouds, and the chaotic atmospheric dynamics and occasionally opaque interactions further complicate model outputs.

However, on the other side, we have a huge number of observations, Dueben said. Just to give you an impression, ECMWF is getting hundreds of millions of observations onto the site every day. Some observations come from satellites, planes, ships, ground measurements, balloons This data collected over the last several decades constituted hundreds of petabytes if simulations and climate modeling results were included.

If you combine those two points, we have a very complex nonlinear system and we also have a lot of data, he said. Theres obviously lots of potential applications for machine learning in weather modeling.

Potential applications of machine learning

Machine learning applications are really spread all over the entire workflow of weather prediction, Dueben said, breaking that workflow down into observations, data assimilation, numerical weather forecasting, and post-processing and dissemination. Across those areas, he explained, machine learning could be used for anything from weather data monitoring to learning the underlying equations of atmospheric motions.

By way of example, Dueben highlighted a handful of current, real-world applications. In one case, researchers had applied machine learning to detecting wildfires caused by lightning. Using observations for 15 variables (such as temperature, soil moisture and vegetation cover), the researchers constructed a machine learning-based decision tree to assess whether or not satellite observations included wildfires. The team achieved an accuracy of 77 percent which, Deuben said, doesnt sound too great in principle, but was actually quite good.

Elsewhere, another team explored the use of machine learning to correct persistent biases in forecast model results. Dueben explained that researchers were examining the use of a weak constraint machine learning algorithm (in this case, 4D-Var), which is a kind of algorithm that would be able to learn this kind of forecast error and correct it in the data assimilation process.

We learn, basically, the bias, he said, and then once we have learned the bias, we can correct the bias of the forecast model by just adding forcing terms to the system. Once 4D-Var was implemented on a sample of forecast model results, the biases were ameliorated. Though Dueben cautioned that the process is still fairly simplistic, a new collaboration with Nvidia is looking into more sophisticated ways of correcting those forecast errors with machine learning.

Dueben also outlined applications in post-processing. Much of modern weather forecasting focuses on ensemble methods, where a model is run many times to obtain a spread of possible scenarios and as a result, probabilities of various outcomes. We investigate whether we can correct the ensemble spread calculated from a small number of ensemble members via deep learning, Dueben said. Once again, machine learning when applied to a ten-member ensemble looking at temperatures in Europe improved the results, reducing error in temperature spreads.

Can machine learning replace core functionality or even the entire forecast system?

One of the things that were looking into is the emulation of different permutation schemes, Dueben said. Chief among those, at least initially, have been the radiation component of forecast models, which account for the fluxes of solar radiation between the ground, the clouds and the upper atmosphere. As a trial run, Dueben and his colleagues are using extensive radiation output data from a forecast model to train a neural network. First of all, its very, very light, Dueben said. Second of all, its also going to be much more portable. Once we represent radiation with a deep neural network, you can basically port it to whatever hardware you want.

Showing a pair of output images, one from the machine learning model and one from the forecast model, Dueben pointed out that it was hard to notice significant differences and even refused to tell the audience which was which. Furthermore, he said, the model had achieved around a tenfold speedup. (Im quite confident that it will actually be much better than a factor of ten, Dueben said.)

Dueben and his colleagues have also scaled their tests up to more ambitious realms. They pulled hourly data on geopotential height (Z500) which is related to air pressure and trained a deep learning model to predict future changes in Z500 across the globe using only that historical data. For this, no physical understanding is really required, Dueben said, and it turns out that its actually working quite well.

Still, Dueben forced himself to face the crucial question.

Is this the future? he asked. I have to say its probably not.

There were several reasons for this. First, Dueben said, the simulations were unstable, eventually blowing up if they were stretched too far. Second of all, he said, its also unknown how to increase complexity at this stage. We only have one field here. Finally, he explained, there were only forty years of sufficiently detailed data with which to work.

Still, it wasnt all pessimism. Its kind of unlikely that its going to fly and basically feed operational forecasting at one point, he said. However, having said this, there are now a number of papers coming out where people are looking into this in a much, much more complicated way than we have done with really sophisticated convolutional networks and they get, actually, quite good results. So who knows!

The path forward

The main challenge for machine learning in the community that were facing at the moment, Dueben said, is basically that we need to prove now that machine learning solutions can really be better than conventional tools and we need to do this in the next couple of years.

There are, of course, many roadblocks to that goal. Forecasting models are extraordinarily complicated; iterations on deep learning models require significant HPC resources to test and validate; and metrics of comparison among models are unclear. Dueben also outlined a series of major unknowns in machine learning for weather forecasting: could our explicit knowledge of atmospheric mechanisms be used to improve a machine learning forecast? Could researchers guarantee reproducibility? Could the tools be scaled effectively to HPC? The list went on.

Many scientists are working on these dilemmas as we speak, Dueben said, and Im sure we will have an enormous amount of progress in the next couple of years. Outlining a path forward, Dueben emphasized a mixture of a top-down and a bottom-up approach to link machine learning with weather and climate models. Per his diagram, this would combine neutral networks based on human knowledge of earth systems with reliable benchmarks, scalability and better uncertainty quantification.

As far as where he sees machine learning for weather prediction in ten years?

It could be that machine learning will have no long-term effect whatsoever that its just a wave going through, Dueben mused. But on the other hand, it could well be that machine learning tools will actually replace almost all conventional models that were working with.

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Could Machine Learning Replace the Entire Weather Forecast System? - HPCwire

Harnessing the power of GaN and machine learning – News – Compound Semiconductor

Military installations, especially on ships and aircraft, require robust power electronics systems to operate radar and other equipment, but there is limited space onboard. Researchers from the University of Houston will use a $2.5 million grant from the US Department of Defense to develop compact electronic power systems to address the issue.

Harish Krishnamoorthy, assistant professor of electrical and computer engineering and principal investigator for the project, said he will focus on developing power converters using GaN (GaN) devices, capable of quickly storing and discharging energy to operate the radar systems.

He is working with co-PI Kaushik Rajashekara, professor of electrical and computer engineering, and Tagore Technology, a semiconductor company based in Arlington Heights, Ill. The work has potential commercial applications, in addition to military use, he said.

Currently, radar systems require large capacitors, which store energy and provide bursts of power to operate the systems. The electrolytic capacitors also have relatively short lifespans, Krishnamoorthy said.

GaN devices can be turned on and off far more quickly - over ten times as quickly as silicon devices. The resulting higher operating frequency allows passive components in the circuit - including capacitors and inductors - to be designed at much smaller dimensions.

But there are still drawbacks to GaN devices. Noise - electromagnetic interference, or EMI - can affect the precision of radar systems, since the devices work at such high speeds. Part of Krishnamoorthy's project involves designing a system where converters can contain the noise, allowing the radar system to operate unimpeded.

He also will use machine learning to predict the lifespan of GaN devices, as well as of circuits employing these devices. The use of GaN technology in power applications is relatively new, and assessing how long they will continue to operate in a circuit remains a challenge.

"We don't know how long these GaN devices will last in practical applications, because they've only been used for a few years," Krishnamoorthy said. "That's a concern for industry."

The health and well-being of AngelTech speakers, partners, employees and the overall community is our top priority. Due to the growing concern around the coronavirus (COVID-19), and in alignment with the best practices laid out by the CDC, WHO and other relevant entities, AngelTech decided to postpone the live Brussels event to 16th - 18th November 2020.

In the interim, we believe it is still important to connect the community and we want to do this via an online summit, taking place live on Tuesday May 19th at 12:00 GMT and content available for 12 months on demand. This will not replace the live event (we believe live face to face interaction, learning and networking can never be fully replaced by a virtual summit), it will supplement the event, add value for key players and bring the community together digitally.

The event will involve 4 breakout sessions for CS International, PIC International, Sensors International and PIC Pilot Lines.

Key elements of the online summit:

Register to attend

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Harnessing the power of GaN and machine learning - News - Compound Semiconductor

Microsoft: This is how to protect your machine-learning applications – TechRepublic

Understanding failures and attacks can help us build safer AI applications.

Modern machine learning (ML) has become an important tool in a very short time. We're using ML models across our organisations, either rolling our own in R and Python, using tools like TensorFlow to learn and explore our data, or building on cloud- and container-hosted services like Azure's Cognitive Services. It's a technology that helps predict maintenance schedules, spots fraud and damaged parts, and parses our speech, responding in a flexible way.

SEE:Prescriptive analytics: An insider's guide (free PDF)(TechRepublic)

The models that drive our ML applications are incredibly complex, training neural networks on large data sets. But there's a big problem: they're hard to explain or understand. Why does a model parse a red blob with white text as a stop sign and not a soft drink advert? It's that complexity which hides the underlying risks that are baked into our models, and the possible attacks that can severely disrupt the business processes and services we're building using those very models.

It's easy to imagine an attack on a self-driving car that could make it ignore stop signs, simply by changing a few details on the sign, or a facial recognition system that would detect a pixelated bandanna as Brad Pitt. These adversarial attacks take advantage of the ML models, guiding them to respond in a way that's not how they're intended to operate, distorting the input data by changing the physical inputs.

Microsoft is thinking a lot about how to protect machine learning systems. They're key to its future -- from tools being built into Office, to its Azure cloud-scale services, and managing its own and your networks, even delivering security services through ML-powered tools like Azure Sentinel. With so much investment riding on its machine-learning services, it's no wonder that many of Microsoft's presentations at the RSA security conference focused on understanding the security issues with ML and on how to protect machine-learning systems.

Attacks on machine-learning systems need access to the models used, so you need to keep your models private. That goes for small models that might be helping run your production lines as much as the massive models that drive the likes of Google, Bing and Facebook. If I get access to your model, I can work out how to affect it, either looking for the right data to feed it that will poison the results, or finding a way past the model to get the results I want.

Much of this work has been published in a paper in conjunction with the Berkman Klein Center, on failure modes in machine learning. As the paper points out, a lot of work has been done in finding ways to attack machine learning, but not much on how to defend it. We need to build a credible set of defences around machine learning's neural networks, in much the same way as we protect our physical and virtual network infrastructures.

Attacks on ML systems are failures of the underlying models. They are responding in unexpected, and possibly detrimental ways. We need to understand what the failure modes of machine-learning systems are, and then understand how we can respond to those failures. The paper talks about two failure modes: intentional failures, where an attacker deliberately subverts a system, and unintentional failures, where there's an unsafe element in the ML model being used that appears correct but delivers bad outcomes.

By understanding the failure modes we can build threat models and apply them to our ML-based applications and services, and then respond to those threats and defend our new applications.

The paper suggests 11 different attack classifications, many of which get around our standard defence models. It's possible to compromise a machine-learning system without needing access to the underlying software and hardware, so standard authorisation techniques can't protect ML-based systems and we need to consider alternative approaches.

What are these attacks? The first, perturbation attacks, modify queries to change the response to one the attackers desire. That's matched by poisoning attacks, which achieve the same result by contaminating the training data. Machine-learning models often include important intellectual property, and some attacks like model inversion aim to extract that data. Similarly, a membership inference attack will try to determine whether specific data was in the initial training set. Closely related is the concept of model stealing, using queries to extract the model.

SEE:5G: What it means for IoT(free PDF)

Other attacks include reprogramming the system around the ML model, so that either results or inputs are changed. Closely related are adversarial attacks that change physical objects, adding duct tape to signs to confuse navigation or using specially printed bandanas to disrupt facial-recognition systems. Some attacks depend on the provider: a malicious provider can extract training data from customer systems. They can add backdoors to systems, or compromise models as they're downloaded.

While many of these attacks are new and targeted specifically at machine-learning systems, they are still computer systems and applications, and are vulnerable to existing exploits and techniques, allowing attackers to use familiar approaches to disrupt ML applications.

It's a long list of attack types, but understanding what's possible allows us to think about the threats our applications face. More importantly they provide an opportunity to think about defences and how we protect machine-learning systems: building better, more secure training sets, locking down ML platforms, and controlling access to inputs and outputs, working with trusted applications and services.

Attacks are not the only risk: we must be aware of unintended failures -- problems that come from the algorithms we use or from how we've designed and tested our ML systems. We need to understand how reinforcement learning systems behave, how systems respond in different environments, if there are natural adversarial effects, or how changing inputs can change results.

If we're to defend machine-learning applications, we need to ensure that they have been tested as fully as possible, in as many conditions as possible. The apocryphal stories of early machine-learning systems that identified trees instead of tanks, because all the training images were of tanks under trees, are a sign that these aren't new problems, and that we need to be careful about how we train, test, and deploy machine learning. We can only defend against intentional attacks if we know that we've protected ourselves and our systems from mistakes we've made. The old adage "test, test, and test again" is key to building secure and safe machine learning -- even when we're using pre-built models and service APIs.

Be your company's Microsoft insider by reading these Windows and Office tips, tricks, and cheat sheets. Delivered Mondays and Wednesdays

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Microsoft: This is how to protect your machine-learning applications - TechRepublic

Machine-learning is a boon, but it still needs a human hand – Business Day

Advances in computer power, machine-learning and predictive algorithms are creating paradigm shifts in many industries. For example, when analgorithm outperformed six radiologistsin reading mammograms and accurately diagnosing breast cancer, this raised questions around the role of machine-learning in medicine and whether it will replace, or enhance, the work being done by doctors.

Similarly, when Googles AI software AlphaGo beat the worlds top Go master in what is described as humankinds most complicated board game, The New York Timesdeclared it isnt looking good for humanity when an algorithm can outperform a human in a highly complex task.

Both these examples point to narrow uses of artificial intelligence, specific types of machine-learning that are hugely effective. The medical example illustrates supervised learning, where a computer is programmed to solve a particular problem by looking for patterns. It is given labelled data sets, in this case X-rays with the diagnosis of presence or absence of breast cancer. When given a new X-ray, the computer applies an algorithm based on what it has learnt from all the previous X-rays to make a diagnosis. Unsupervised learning is a sort of self-optimisation where a computer has a set of rules, such as how to play Go, and through playing millions of games learns how to apply these rules and improve.

What is machine-learning?

Machine-learning is a phenomenal tool. To fully harness its potential it is essential to understand what machine-learning is (and isnt) and to demystify some of the hype and the fear around what it can and cant be used for. We have anthropomorphised computers; we speak about them in terms of intelligence and learning. But in essence, a machine computes it does not learn. Its algorithms are designed to mimic learning. In essence, these algorithms minimise the errors of a complicated function that maps inputs to outcomes and we interpret that as solving a problem, but the machine doesnt know what problem it is solving or that it is playing a game. The intelligence rests with the humans who design the algorithms and configure them for specific tasks.

Now, more than ever, we need intelligent and well-educated people who can apply these techniques in the correct context and interpret the results. When an algorithm fails, the consequences can be catastrophic. An obvious example is a fatal accident caused by aself-driving car. We need to build in fault tolerance. Data integrity is also an important issue what we put in is going to affect what we get out. Education is critical in making sure we get these elements right. And, of course, there are broader ethical issues to consider surrounding data collection, such as what data can be used, where it is sourced, and whether different data sets can be combined.

Machine-learning is particularly valuable in the financial sector. Many applications are already in use in banking, insurance and asset management. Financial institutions use pattern recognition successfully for fraud detection. It is also valuable for looking at trends in data sets and finding patterns that humans may not be able to identify directly, for example in profiling people who apply for credit. There are even robo-advisory applications for individual asset allocation. In financial modelling, machine-learning can be applied to pricing, calibration and hedging.

For example, valuing derivatives contracts depends on many complex factors and variables such as interest rates, exchange rates, equity values all of which fluctuate all the time. Financial mathematicians use models for this, but they are complicated and not easy to solve in a closed form. We may be able to build and apply a model to one contract, but banks have hundreds of contracts, and risk management and regulatory frameworks need to be updated all the time. Machine-learning, specifically deep learning and neural nets, provides a powerful shortcut. We can use classical numerical methods to produce financial models and then use them as labelled data sets as in the X-ray example. An algorithm can take this input to generate the output for multiple contracts.

Industries and organisations that are pulling ahead are figuring out where to replace standard methods and complex, time-consuming computations with machine-learning. They are also using it for more complex modelling approaches, adding further variables that cannot usually be factored into standard methodologies. The most obvious benefit is that it is faster machines can compute millions of times faster than humans. These techniques also have the potential to be far more accurate and allow us to make better-informed decisions.

But the human element is critical. The accuracy of potentially life-changing outcomes will depend on how we identify where we use these techniques, how we build the algorithms, how we choose and manage data and, finally, in how we interpret and act upon the results.

Prof McWalter is an applied mathematician who lectures computational finance at UCTs African Institute of Financial Markets and Risk Management. Prof Kienitz lectures at the University of Wuppertal and is an adjunct associate professor at UCT. His research interests include numerical methods in finance and machine-learning applied to financial problems and derivative instruments.

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Machine-learning is a boon, but it still needs a human hand - Business Day

Global Machine Learning As A Service (Mlaas) Market : Industry Analysis And Forecast (2020-2027) – MR Invasion

Global Machine Learning as a Service (MLaaS) Marketwas valued about US$ XX Bn in 2019 and is expected to grow at a CAGR of 41.7% over the forecast period, to reach US$ 11.3 Bn in 2027.

The report study has analyzed revenue impact of covid-19 pandemic on the sales revenue of market leaders, market followers and disrupters in the report and same is reflected in our analysis.

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Market Definition:

Machine learning as a service (MLaaS) is an array of services that offer ML tools as part of cloud computing services. MLaaS helps clients profit from machine learning without the cognate cost, time and risk of establishing an in-house internal machine learning team.The report study has analyzed revenue impact of covid-19 pandemic on the sales revenue of market leaders, market followers and disrupters in the report and same is reflected in our analysis.

Machine Learning Service Providers:

Global Machine Learning as a Service (MLaaS) Market

Market Dynamics:

The scope of the report includes a detailed study of global and regional markets for Global Machine Learning as a Service (MLaaS) Market with the analysis given with variations in the growth of the industry in each regions. Large and SMEs are focusing on customer experience management to keep a complete and robust relationship with their customers by using customer data. So, ML needs to be integrated into enterprise applications to control and make optimal use of this data. Retail enterprises are shifting their focus to customer buying patterns with the rising number of e-commerce websites and the digital revolution in the retail industry. This drives the need to track and manage the inventory movement of items, which can be done using MLaaS. The use of MLaaS by retail enterprises for inventory optimization and behavioral tracking is expected to have a positive impact on global market growth.Apart from this, the growing trend of digitization is driving the growth of the MLaaS market globally. Growth in adoption of cloud-based platforms is expected to positively impact the growth of the MLaaS market. However, a lack of qualified and skilled persons is believed to be the one of the challenges before the growth of the MLaaS market. Furthermore, increasing concern toward data privacy is anticipated to restrain the development of the global market.

Market Segmentation:

The report will provide an accurate prediction of the contribution of the various segments to the growth of the Machine Learning as a Service (MLaaS) Market size. Based on organization size, SMEs segment is expected to account for the largest XX% market share by 2027. SMEs businesses are also projected to adopt machine learning service. With the help of predictive analytics ML, algorithms not only give real-time data but also predict the future. Machine learning solutions are used by SME businesses for fine-tuning their supply chain by predicting the demand for a product and by suggesting the timing and quantity of supplies vital for satisfying the customers expectations.

Regional Analysis:

The report offers a brief analysis of the major regions in the MLaaS market, namely, Asia-Pacific, Europe, North America, South America, and the Middle East & Africa.North America play an important role in MLaaS market, with a market size of US$ XX Mn in 2019 and will be US$ XX Mn in 2027, with a CAGR of XX% followed by Europe. Most of the machine learning as service market companies are based in the U.S and are contributing significantly in the growth of the market. The Asia-Pacific has been growing with the highest growth rate because of rising investment, favorable government policies and growing awareness. In 2017, Google launched the Google Neural Machine Translation for 9 Indian languages which use ML and artificial neural network to upsurges the fluency as well as accuracy in their Google Translate.

Recent Development:

The MMR research study includes the profiles of leading companies operating in the Global Machine Learning as a Service (MLaas) Market. Companies in the global market are more focused on enhancing their product and service helps through various strategic approaches. The ML providers are competing by launching new product categories, with advanced subscription-based platforms. The companies have adopted the strategy of version up gradations, mergers and acquisitions, agreements, partnerships, and strategic collaborations with regional and global players to achieve high growth in the MLaaS market.

Such as, in April 2019, Microsoft developed a platform that uses machine teaching to help deep strengthening learning algorithms tackle real-world problems. Microsoft scientists and product inventors have pioneered a complementary approach called ML. This relies on people know how to break a problem into easier tasks and give ML models important clues about how to find a solution earlier.

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The objective of the report is to present a comprehensive analysis of the Global Machine Learning as a Service (MLaaS) Market including all the stakeholders of the industry. The past and current status of the industry with forecasted market size and trends are presented in the report with the analysis of complicated data in simple language. The report covers all the aspects of the industry with a dedicated study of key players that includes market leaders, followers and new entrants by region. PORTER, SVOR, PESTEL analysis with the potential impact of micro-economic factors by region on the market has been presented in the report. External as well as internal factors that are supposed to affect the business positively or negatively have been analyzed, which will give a clear futuristic view of the industry to the decision-makers.

The report also helps in understanding Global Machine Learning as a Service (MLaaS) Market dynamics, structure by analyzing the market segments and projects the Global Machine Learning as a Service (MLaaS) Market size. Clear representation of competitive analysis of key players by Application, price, financial position, Product portfolio, growth strategies, and regional presence in the Global Machine Learning as a Service (MLaaS) Market make the report investors guide.Scope of the Global Machine Learning as a Service (MLaaS) Market

Global Machine Learning as a Service (MLaaS) Market, By Component

Software ServicesGlobal Machine Learning as a Service (MLaaS) Market, By Organization Size

Large Enterprises SMEsGlobal Machine Learning as a Service (MLaaS) Market, By End-Use Industry

Aerospace & Defense IT & Telecom Energy & Utilities Public sector Manufacturing BFSI Healthcare Retail OthersGlobal Machine Learning as a Service (MLaaS) Market, By Application

Marketing & Advertising Fraud Detection & Risk Management Predictive analytics Augmented & Virtual reality Natural Language processing Computer vision Security & surveillance OthersGlobal Machine Learning as a Service (MLaaS) Market, By Region

Asia Pacific North America Europe Latin America Middle East AfricaKey players operating in Global Machine Learning as a Service (MLaaS) Market

Ersatz Labs, Inc. BigML Yottamine Analytics Hewlett Packard Amazon Web Services IBM Microsoft Sift Science, Inc. Google AT&T Fuzzy.ai SAS Institute Inc. FICO Predictron Labs Ltd.

MAJOR TOC OF THE REPORT

Chapter One: Machine Learning as a Service Market Overview

Chapter Two: Manufacturers Profiles

Chapter Three: Global Machine Learning as a Service Market Competition, by Players

Chapter Four: Global Machine Learning as a Service Market Size by Regions

Chapter Five: North America Machine Learning as a Service Revenue by Countries

Chapter Six: Europe Machine Learning as a Service Revenue by Countries

Chapter Seven: Asia-Pacific Machine Learning as a Service Revenue by Countries

Chapter Eight: South America Machine Learning as a Service Revenue by Countries

Chapter Nine: Middle East and Africa Revenue Machine Learning as a Service by Countries

Chapter Ten: Global Machine Learning as a Service Market Segment by Type

Chapter Eleven: Global Machine Learning as a Service Market Segment by Application

Chapter Twelve: Global Machine Learning as a Service Market Size Forecast (2019-2026)

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Global Machine Learning As A Service (Mlaas) Market : Industry Analysis And Forecast (2020-2027) - MR Invasion

Beghou Consulting hires senior executive to expand advanced analytics and machine learning capabilities – The Trentonian

PRINCETON, N.J., April 29, 2020 /PRNewswire/ --Life sciences consulting firm Beghou Consulting recently hired industry veteran Janardhan Vellore to strengthen the firm's advanced analytics capabilities and technology solutions. Vellore will join as a vice president.

"Janardhan is an standout leader in the life sciences industry, especially in his innovative use of advanced analytics to get in front of emerging commercial challenges," said Beth Beghou, founder and managing director of Beghou Consulting. "As a result, he has become a trusted adviser to life sciences companies of all sizes. He will supplement our already strong advanced analytics team and play a key role in our growth efforts."

Vellore brings deep experience in end-to-end capabilities that shape and inform commercial strategy, including managed care and access, patient centricity, and marketing, digital and technology solutions. In addition, he'll bolster Beghou's offerings related to all aspects of commercial operations including forecasting, sales force design, segmentation, targeting and incentive compensation with particular expertise in launching new products.

Vellore previously held leadership roles at Bayer and Novartis Pharmaceuticals, where he led commercial analytics, market research and management science teams. He also served in a leadership role at Analytical Wizards, where he spearheaded growth of its advanced analytics practice area and commercialized cloud-based, big data platforms for the life sciences industry.

"Beghou consistently delivers premium value and top-notch results through subject matter expertise and seamless collaboration. Its superior client service and high-quality insights into commercial operations serve as key differentiators among its peers," said Vellore. "My experiences in-house at life sciences companies and working as a consultant have given me a unique perspective of a life sciences company's commercial challenges and opportunities. I'm excited to draw on those experiences to help more companies address their pressing commercial issues and drive greater success in the rapidly evolving marketplace."

Vellore earned an MBA from The Wharton School of the University of Pennsylvania, a master's degree in biomedical engineering from The University of Akron and a bachelor's degree from the Indian Institute of Technology, Madras. He is based in Princeton, New Jersey.

About Beghou ConsultingFounded in 1993, Beghou Consulting specializes in helping life sciences companies especially emerging pharma companies establish and manage commercial operations to better market and sell therapies. Deploying advanced analytics and proprietary technology, Beghou consultants have provided strategic counsel to the top pharmaceutical companies in the world, supporting some since infancy. Headquartered in Evanston, Ill., the firm has six offices and employs more than 150 professionals around the world. To learn more, visit http://www.beghouconsulting.com or follow us on Facebook and LinkedIn.

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Beghou Consulting hires senior executive to expand advanced analytics and machine learning capabilities - The Trentonian

Current research: Global Machine Learning Market is predicted to grow with demand and future opportunities – WhaTech Technology and Markets News

Machine learning the ability of computers to learn through experiences to improve their performance. Separate algorithms and human intervention are not required to train the computer. It merely learns from its past experiences and examples. In recent times, this market has gained utmost importance due to the increased availability of data and the need to process the data to obtain meaningful insights.

The Global Machine learning Market Report provides an extensive assessment of the global Machine learning market development, revenue, and profitability of the market. It also evaluates the scope, attractiveness, economy database, potential, and trends in the global Machine learning market.

The report mainly intends to assist market players, Machine learning business owners, researchers, students, and stakeholders with comprehensive market intelligence. The historic and current status of the global Machine learning market is deeply elucidated in the report.

The report offers authentic and reliable projections up to 2025 and predicts potential significant incidents to occur in the market in the near future. The report also describes changing market dynamics, contemporary trends, restraints, limitations, growth-boosting forces, technological advancements, uneven supply-demand proportions, unstable market structure, and uncertainties are analyzed in the market report as it could pose considerable impacts on the global Machine learning market structure and profitability.

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Rivalry scenario for the global Machine learning market, including business data of leading companies:

Google Inc., Microsoft, IBM Watson, Amazon, Baidu, Intel, Facebook, Apple Inc., and Uber.

The global Machine learning industry environment is heavily emphasized in the report as it holds the potential to impact the Machine learning market growth in a positive or negative manner.

The industry environment incorporates provincial trade regulations, international trade disputes, market entry barriers, as well as social, political, financial, and atmospheric circumstances, which could affect market growth momentum. The potential and current market opportunities, challenges, risks, obstacles, uncertainties, and threats are also highlighted in the report.

The report further elaborates on the key facets of the global Machine learning market which includes, competition, leading competitors, industry environment, and crucial segments in the market. An in-depth analysis of each facet has been exhaustively examined in the report to offer clients an inclusive conception of the global Machine learning market.

The report also provides thorough market analysis by investigating the market through adept analytical tools such as SWOT, Porter's Five Forces analysis that sheds light on the market threats, weaknesses, strengths, and various bargaining powers.

Expansive survey of Global Machine learning Market 2020

Insights into Machine learning market segments:

The global Machine learning market competition is also highlighted in the report with precise assessments based on the leading players in the global Machine learning market. The report analyses the manufacturing processes, production technologies, volume, plants, locations, effective production techniques, value chain, raw material, concentration rate, distribution networks, and global appearance.

Their strategic moves such as mergers, venture, amalgamations, partnerships, product launches, and brand promotions are also evaluated in the report.

Moreover, it offers profound analysis of efforts taken by leading market players to push their sales activities and capture maximum buyers. It explores their product research, innovations, and, technology adoptions, developments.

Their financial assessments are also illuminated in the global Machine learning market report with accurate evaluations of their revenue, gross margin, sales volume, production cost, cost structure, product prices, capital investments, market share, growth rates, and CAGR.

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Current research: Global Machine Learning Market is predicted to grow with demand and future opportunities - WhaTech Technology and Markets News