Grok combines Machine Learning and the Human Brain to build smarter AIOps – Diginomica

A few weeks ago I wrote a piece here about Moogsoft which has been making waves in the service assurance space by applying artificial intelligence and machine learning to the arcane task of keeping on keeping critical IT up and running and lessening the business impact of service interruptions. Its a hot area for startups and Ive since gotten article pitches from several other AIops firms at varying levels of development.

The most intriguing of these is a company called Grok which was formed by a partnership between Numenta, a pioneering AI research firm co-founded by Jeff Hawkins and Donna Dubinsky, who are famous for having started two classic mobile computing companies, Palm and Handspring, and Avik Partners. Avik is a company formed by brothers Casey and Josh Kindiger, two veteran entrepreneurs who have successfully started and grown multiple technology companies in service assurance and automation over the past two decadesmost recently Resolve Systems.

Josh Kindiger told me in a telephone interview how the partnership came about:

Numenta is primarily a research entity started by Jeff and Donna about 15 years ago to support Jeffs ideas about the intersection of neuroscience and data science. About five years ago, they developed an algorithm called HTM and a product called Grok for AWS which monitors servers on a network for anomalies. They werent interested in developing a company around it but we came along and saw a way to link our deep domain experience in the service management and automation areas with their technology. So, we licensed the name and the technology and built part of our Grok AIOps platform around it.

Jeff Hawkins has spent most of his post-Palm and Handspring years trying to figure out how the human brain works and then reverse engineering that knowledge into structures that machines can replicate. His model or theory, called hierarchical temporal memory (HTM), was originally described in his 2004 book On Intelligence written with Sandra Blakeslee. HTM is based on neuroscience and the physiology and interaction of pyramidal neurons in the neocortex of the mammalian (in particular, human) brain. For a little light reading, I recommend a peer-reviewed paper called A Framework for Intelligence and Cortical Function Based on Grid Cells in the Neocortex.

Grok AIOps also uses traditional machine learning, alongside HTM. Said Kindiger:

When I came in, the focus was purely on anomaly detection and I immediately engaged with a lot of my old customers--large fortune 500 companies, very large service providers and quickly found out that while anomaly detection was extremely important, that first signal wasn't going to be enough. So, we transformed Grok into a platform. And essentially what we do is we apply the correct algorithm, whether it's HTM or something else, to the proper stream events, logs and performance metrics. Grok can enable predictive, self-healing operations within minutes.

The Grok AIOps platform uses multiple layers of intelligence to identify issues and support their resolution:

Anomaly detection

The HTM algorithm has proven exceptionally good at detecting and predicting anomalies and reducing noise, often up to 90%, by providing the critical context needed to identify incidents before they happen. It can detect anomalies in signals beyond low and high thresholds, such as signal frequency changes that reflect changes in the behavior of the underlying systems. Said Kindiger:

We believe HTM is the leading anomaly detection engine in the market. In fact, it has consistently been the best performing anomaly detection algorithm in the industry resulting in less noise, less false positives and more accurate detection. It is not only best at detecting an anomaly with the smallest amount of noise but it also scales, which is the biggest challenge.

Anomaly clustering

To help reduce noise, Grok clusters anomalies that belong together through the same event or cause.

Event and log clustering

Grok ingests all the events and logs from the integrated monitors and then applies to it to event and log clustering algorithms, including pattern recognition and dynamic time warping which also reduce noise.

IT operations have become almost impossible for humans alone to manage. Many companies struggle to meet the high demand due to increased cloud complexity. Distributed apps make it difficult to track where problems occur during an IT incident. Every minute of downtime directly impacts the bottom line.

In this environment, the relatively new solution to reduce this burden of IT management, dubbed AIOps, looks like a much needed lifeline to stay afloat. AIOps translates to "Algorithmic IT Operations" and its premise is that algorithms, not humans or traditional statistics, will help to make smarter IT decisions and help ensure application efficiency. AIOps platforms reduce the need for human intervention by using ML to set alerts and automation to resolve issues. Over time, AIOps platforms can learn patterns of behavior within distributed cloud systems and predict disasters before they happen.

Grok detects latent issues with cloud apps and services and triggers automations to troubleshoot these problems before requiring further human intervention. Its technology is solid, its owners have lots of experience in the service assurance and automation spaces, and who can resist the story of the first commercial use of an algorithm modeled on the human brain.

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Grok combines Machine Learning and the Human Brain to build smarter AIOps - Diginomica

Global machine learning as a service market is expected to grow with a CAGR of 38.5% over the forecast period from 2018-2024 – Yahoo Finance

The report on the global machine learning as a service market provides qualitative and quantitative analysis for the period from 2016 to 2024. The report predicts the global machine learning as a service market to grow with a CAGR of 38.

New York, Feb. 20, 2020 (GLOBE NEWSWIRE) -- Reportlinker.com announces the release of the report "Machine Learning as a Service Market: Global Industry Analysis, Trends, Market Size, and Forecasts up to 2024" - https://www.reportlinker.com/p05751673/?utm_source=GNW 5% over the forecast period from 2018-2024. The study on machine learning as a service market covers the analysis of the leading geographies such as North America, Europe, Asia-Pacific, and RoW for the period of 2016 to 2024.

The report on machine learning as a service market is a comprehensive study and presentation of drivers, restraints, opportunities, demand factors, market size, forecasts, and trends in the global machine learning as a service market over the period of 2016 to 2024. Moreover, the report is a collective presentation of primary and secondary research findings.

Porters five forces model in the report provides insights into the competitive rivalry, supplier and buyer positions in the market and opportunities for the new entrants in the global machine learning as a service market over the period of 2016 to 2024. Further, IGR- Growth Matrix gave in the report brings an insight into the investment areas that existing or new market players can consider.

Report Findings1) Drivers Increasing use in cloud technologies Provides statistical analysis along with reduce time and cost Growing adoption of cloud based systems2) Restraints Less skilled personnel3) Opportunities Technological advancement

Research Methodology

A) Primary ResearchOur primary research involves extensive interviews and analysis of the opinions provided by the primary respondents. The primary research starts with identifying and approaching the primary respondents, the primary respondents are approached include1. Key Opinion Leaders associated with Infinium Global Research2. Internal and External subject matter experts3. Professionals and participants from the industry

Our primary research respondents typically include1. Executives working with leading companies in the market under review2. Product/brand/marketing managers3. CXO level executives4. Regional/zonal/ country managers5. Vice President level executives.

B) Secondary ResearchSecondary research involves extensive exploring through the secondary sources of information available in both the public domain and paid sources. At Infinium Global Research, each research study is based on over 500 hours of secondary research accompanied by primary research. The information obtained through the secondary sources is validated through the crosscheck on various data sources.

The secondary sources of the data typically include1. Company reports and publications2. Government/institutional publications3. Trade and associations journals4. Databases such as WTO, OECD, World Bank, and among others.5. Websites and publications by research agencies

Segment CoveredThe global machine learning as a service market is segmented on the basis of component, application, and end user.

The Global Machine Learning As a Service Market by Component Software Services

The Global Machine Learning As a Service Market by Application Marketing & Advertising Fraud Detection & Risk Management Predictive Analytics Augmented & Virtual Reality Security & Surveillance Others

The Global Machine Learning As a Service Market by End User Retail Manufacturing BFSI Healthcare & Life Sciences Telecom Others

Company Profiles IBM PREDICTRON LABS H2O.ai. Google LLC Crunchbase Inc. Microsoft Yottamine Analytics, LLC Fair Isaac Corporation. BigML, Inc. Amazon Web Services, Inc.

What does this report deliver?1. Comprehensive analysis of the global as well as regional markets of the machine learning as a service market.2. Complete coverage of all the segments in the machine learning as a service market to analyze the trends, developments in the global market and forecast of market size up to 2024.3. Comprehensive analysis of the companies operating in the global machine learning as a service market. The company profile includes analysis of product portfolio, revenue, SWOT analysis and latest developments of the company.4. IGR- Growth Matrix presents an analysis of the product segments and geographies that market players should focus to invest, consolidate, expand and/or diversify.Read the full report: https://www.reportlinker.com/p05751673/?utm_source=GNW

About ReportlinkerReportLinker is an award-winning market research solution. Reportlinker finds and organizes the latest industry data so you get all the market research you need - instantly, in one place.

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Global machine learning as a service market is expected to grow with a CAGR of 38.5% over the forecast period from 2018-2024 - Yahoo Finance

Machine Learning Is No Place To Move Fast And Break Things – Forbes

It is much easier to apologize than it is to get permission.

jamesnoellert.com

The hacking culture has been the lifeblood of software engineering long before the move fast and break things mantra became ubiquitous of tech startups [1, 2]. Computer industry leaders from Chris Lattner [3] to Bill Gates recount breaking and reassembling radios and other gadgets in their youth, ultimately being drawn to computers for their hackability. Silicon Valley itself may have never become the worlds innovation hotbed if it were not for the hacker dojo started by Gordon French and Fred Moore, The Homebrew Club.

Computer programmers still strive to move fast and iterate things, developing and deploying reliable, robust software by following industry proven processes such as test-driven development and the Agile methodology. In a perfect world, programmers could follow these practices to the letter and ship pristine software. Yet time is money. Aggressive, business-driven deadlines pass before coders can properly finish developing software ahead of releases. Add to this the modern best practices of rapid-releases and hot-fixing (or updating features on the fly [4]), the bar for deployable software is even lower. A company like Apple even prides itself by releasing phone hardware with missing software features: the Deep Fusion image processing was part of an iOS update months after the newest iPhone was released [5].

Software delivery becoming faster is a sign of progress; software is still eating the world [6]. But its also subject to abuse: Rapid software processes are used to ship fixes and complete new features, but are also used to ship incomplete software that will be fixed later. Tesla has emerged as a poster child with over the air updates that can improve driving performance and battery capacity, or hinder them by mistake [7]. Naive consumers laud Tesla for the tech-savvy, software-first approach theyre bringing to the old-school automobile industry. Yet industry professionals criticize Tesla for their recklessness: A/B testing [8] an 1800kg vehicle on the road is slightly riskier than experimenting with a new feature on Facebook.

Add Tesla Autopilot and machine learning algorithms into the mix, and this becomes significantly more problematic. Machine learning systems are by definition probabilistic and stochastic predicting, reacting, and learning in a live environment not to mention riddled with corner cases to test and vulnerabilities to unforeseen scenarios.

Massive progress in software systems has enabled engineers to move fast and iterate, for better or for worse. Now with massive progress in machine learning systems (or Software 2.0 [9]), its seamless for engineers to build and deploy decision-making systems that involve humans, machines, and the environment.

A current danger is that the toolset of the engineer is being made widely available but the theoretical guarantees and the evolution of the right processes are not yet being deployed. So while deep learning has the appearance of an engineering profession it is missing some of the theoretical checks and practitioners run the risk of falling flat upon their faces.

In his recent book Reboot AI [10], Gary Marcus draws a thought provoking analogy between deep learning and pharmacology: Deep learning models are more like drugs than traditional software systems. Biological systems are so complex it is rare for the actions of medicine to be completely understood and predictable. Theories of how drugs work can be vague, and actionable results come from experimentation. While traditional software systems are deterministic and debuggable (and thus robust), drugs and deep learning models are developed via experimentation and deployed without fundamental understanding and guarantees. Too often the AI research process is first experiment, then justify results. It should be hypothesis-driven, with scientific rigor and thorough testing processes.

What were missing is an engineering discipline with principles of analysis and design.

Before there was civil engineering, there were buildings that fell to the ground in unforeseen ways. Without proven engineering practices for deep learning (and machine learning at large), we run the same risk.

Taking this to the extreme is not advised either. Consider the shift in spacecraft engineering the last decade: Operational efficiencies and the move fast culture has been essential to the success of SpaceX and other startups such as Astrobotic, Rocket Lab, Capella, and Planet.NASA cannot keep up with the pace of innovation rather, they collaborate with and support the space startup ecosystem. Nonetheless, machine learning engineers can learn a thing or two from an organization that has an incredible track record of deploying novel tech in massive coordination with human lives at stake.

Grace Hopper advocated for moving fast: That brings me to the most important piece of advice that I can give to all of you: if you've got a good idea, and it's a contribution, I want you to go ahead and DO IT. It is much easier to apologize than it is to get permission. Her motivations and intent hopefully have not been lost on engineers and scientists.

[1] Facebook Cofounder Mark Zuckerberg's "prime directive to his developers and team", from a 2009 interview with Business Insider, "Mark Zuckerberg On Innovation".

[2] xkcd

[3] Chris Lattner is the inventor of LLVM and Swift. Recently on the AI podcast, he and Lex Fridman had a phenomenal discussion:

[4] Hotfix: A software patch that is applied to a "hot" system; i.e., a fix to a deployed system already in use. These are typically issues that cannot wait for the next release cycle, so a hotfix is made quickly and outside normal development and testing processes.

[5]

[6]

[7]

[8] A/B testing is an experimental processes to compare two or more variants of a product, intervention, etc. This is very common in software products when considering e.g. colors of a button in an app.

[9] Software 2.0 was coined by renowned AI research engineer Andrej Karpathy, who is now the Director of AI at Tesla.

[10]

[11]

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Machine Learning Is No Place To Move Fast And Break Things - Forbes

DataRobot Named a Visionary in the 2020 Gartner Magic Quadrant – AiThority

Company Named Visionary for Second Consecutive Year, Recognized for Its Ability to Execute

DataRobot, the leader in enterprise AI, announced that it was named a Visionary in Gartners 2020 Magic Quadrant for Data Science and Machine Learning Platforms for the second year in a row. The report recognized DataRobot for its completeness of vision and ability to execute.

DataRobot has been a game changer for us. It provides our experienced data scientists with an efficient framework to develop and deploy superior models, and it empowers our less experienced practitioners with a short learning curve to advance capabilities

Over the past year, weve been focused on expanding our enterprise AI platform to include far more than just automated machine learninga technology and product category that we invented and have been leading since 2012, said Phil Gurbacki, SVP of Product and Customer Experience, DataRobot. Our vision for delivering the industrys first end-to-end AI platformwhich includes the significant new investments weve made to our platform such as the AI Catalog, Automated Feature Engineering, MLOps, Data Prep, and moreis game-changing for customers. Our platform, delivered in conjunction with our unique AI Success program, has enabled thousands of users worldwide to achieve more success with AI.

Recommended AI News: Evolve IP Launches The Unified Workspace Integrates Identify And Access Management, Hosted And SaaS Application Delivery, And Cloud Desktops

2019 was a momentous year for DataRobot, marked by exponential growth as well as the acquisition of three companies to expand its end-to-end AI platform capabilities: Cursor, a data collaboration platform, ParallelM, an MLOps platform, and Paxata, a data preparation provider. The company also raised $206 million in Series E financingbringing its total funding to $431 millionto support the continued innovation of the platform and expand DataRobots reach both globally and across vertical markets. Today, DataRobots global team of more than 1,200 employees includes more than 400 engineers and data scientists and has supported AI projects in more than 35 countries.

DataRobot has been a game changer for us. It provides our experienced data scientists with an efficient framework to develop and deploy superior models, and it empowers our less experienced practitioners with a short learning curve to advance capabilities, said Scott Crawford, Head of Data Science Enablement at 84.51, the technology business at Kroger. DataRobot consistently impresses us with not only its outstanding partnership and support, but also with the evolution of its platform.

Recommended AI News: Hyperledger Fabric 2.0 Arrives to Boost Enterprise Blockchain Adoption

Added Gurbacki, The combination of our easy-to-use platform and our AI Success program enables customers to overcome the existing obstacles that slow or prevent AI from reaching production, from data prep to deployment. And with an incredibly robust product roadmap for 2020 (and beyond), we cant wait to show customers what else we have in store.

Recommended AI News: Rockset Gains Momentum as the Industrys Leading Real-Time Database in the Cloud

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DataRobot Named a Visionary in the 2020 Gartner Magic Quadrant - AiThority

Buzzwords ahoy as Microsoft tears the wraps off machine-learning enhancements, new application for Dynamics 365 – The Register

Microsoft has announced a new application, Dynamics 365 Project Operations, as well as additional AI-driven features for its Dynamics 365 range.

If you are averse to buzzwords, look away now. Microsoft Business Applications President James Phillips announced the new features in a post which promises AI-driven insights, a holistic 360-degree view of a customer, personalized customer experiences across every touchpoint, and real-time actionable insights.

Dynamics 365 is Microsofts cloud-based suite of business applications covering sales, marketing, customer service, field service, human resources, finance, supply chain management and more. There are even mixed reality offerings for product visualisation and remote assistance.

Dynamics is a growing business for Microsoft, thanks in part to integration with Office 365, even though some of the applications are quirky and awkward to use in places. Licensing is complex too and can be expensive.

Keeping up with what is new is a challenge. If you have a few hours to spare, you could read the 546-page 2019 Release Wave 2 [PDF] document, for features which have mostly been delivered, or the 405-page 2020 Release Wave 1 [PDF], about what is coming from April to September this year.

Many of the new features are small tweaks, but the company is also putting its energy into connecting data, both from internal business sources and from third parties, to drive AI analytics.

The updated Dynamics 365 Customer Insights includes data sources such as demographics and interests, firmographics, market trends, and product and service usage data, says Phillips. AI is also used in new forecasting features in Dynamics 365 Sales and in Dynamics 365 Finance Insights, coming in preview in May.

Dynamics 365 Project Operations ... Click to enlarge

The company is also introducing a new application, Dynamics 365 Business Operations, with general availability promised for October 1 2020. This looks like a business-oriented take on project management, with the ability to generate quotes, track progress, allocate resources, and generate invoices.

Microsoft already offers project management through its Project products, though this is part of Office rather than Dynamics. What can you do with Project Operations that you could not do before with a combination of Project and Dynamics 365?

There is not a lot of detail in the overview, but rest assured that it has AI-powered business insights and seamless interoperability with Microsoft Teams, so it must be great, right? More will no doubt be revealed at the May Business Applications Summit in Dallas, Texas.

Sponsored: Detecting cyber attacks as a small to medium business

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Buzzwords ahoy as Microsoft tears the wraps off machine-learning enhancements, new application for Dynamics 365 - The Register

How Will Machine Learning Serve the Hotel Industry in 2020 and Beyond? – CIOReview

Machine learning will help the hotel industry to remain tech-savvy and also help them to save money, improve service, and grow more efficient.

Fremont, CA: Artificial intelligence (AI) implementation grew tremendously last year alone such that any business that does not consider the implications of machine learning (ML) will find itself in multiple binds. It has become mandatory that companies should question themselves how they will utilize machine learning to reap its benefits while staying in business. Similarly, hotels should interrogate themselves about how they will use ML. However, trying to catch-up with this technology is potentially dangerous when companies realize that their competition is outperforming them. When hotels believe that robotic housekeepers and facial recognition kiosks are the effective applications of ML, they can do much more. Here is how ML serves the hotel industry while helping save money, improve service, and grow more efficient.

For successfully running the hotel industry, energy and water are the two most important factors. Will there be a no if there is a technology that controls the use of the two critical factors without affecting the guest's comfort zone. Every dollar saved on energy and water can impact the bottom line of the business in a big way. Hotels can track the actual consumption of energy against predictive models allowing them to manage performance against competitors. Hotel brands can link-in room energy to the PMS so that when the room is empty, the heater or any other electrical appliances, automatically turns off.

ML helps brands hire suitable candidates and also highly qualified candidates who might have been overlooked for not fulfilling traditional expectations. ML algorithms were used to create assessments to test candidates for recruiting against the personas using gamification-based tools. Further, ML maximizes the value of premium inventory and increases guest satisfaction by offering guests personalized upgrades based on their previous stay at a price that the guest is ready to pay at booking and pre-arrival period. Using ML technology, hotel brands can create offers at any point during the guest stay, including the front desk. Thus, the future of sustainability in the hospitality industry relies on ML.

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How Will Machine Learning Serve the Hotel Industry in 2020 and Beyond? - CIOReview

LinkShadow to Showcase Machine Learning Based Threat Analytics Technology at RSA Conference 2020 – PRNewswire

ATHENS, Ga., Feb. 7, 2020 /PRNewswire/ -- LinkShadow,Next-Generation Cybersecurity Analytics, announces its presence at the prestigious RSA Conference 2020 in San Francisco from February 24-28.

LinkShadow offers a wide spectrum of cybersecurity solutions that focuses on how to overcome the critical challenges in this smart cyberattacks era.These products include ThreatScore Quadrant, Identity Intelligence, Asset AutoDiscovery, TrafficScene Visualizer & AttackScape Viewer, CXO Dashboards and Threat Shadow. When combined with state-of-art machine-learning capabilities, LinkShadow delivers supreme solutions which include Behavioral Analytics, Threat Intelligence, Insider Threat Management, Privileged Users Analytics, Network Security Optimization, Application Security Visibility, Risk Scoring and Prioritization, Machine Learning and Statistical Analysis and, finally, Anomaly Detection and Predictive Analytics.

At RSA Conference, LinkShadow expert teams will be sharing valuable insights on how this dynamic platform can empower organizations and help improve their defenses against advanced cyberattacks.

Duncan Hume, Vice President USA, LinkShadow, commented that "Undoubtedly RSA Conference is the perfect platform to showcase this unique technology, and we plan to make the best of this opportunity.While you are there, meet the technical teams for a demo session and learn how LinkShadow's best-in-class threat hunting capabilities powered by intense and extensive machine learning algorithms can help organizations become cyber-resilient."

To schedule a personalized demo or fix a meeting at LinkShadow - Booth No. 5487, North Hall, register now:https://www.linkshadow.com/events/RSA-Conference

About LinkShadow

LinkShadow is a U.S.-registered company with regional offices in the Middle East.It is pioneered by a team of highly skilled solution architects, product specialists and programmers with a vision to formulate a next-generation cybersecurity solution that provides unparalleled detection of even the most sophisticated threats. LinkShadow was built with the vision of enhancing organizations' defenses against advanced cyberattacks, zero-day malware and ransomware, while simultaneously gaining rapid insight into the effectiveness of their existing security investments.For more information, visit http://www.linkshadow.com.

Raji John | Head of Client ServiceseMediaLinkT: +971 4 279 4091E: raji@emedialinkme.net

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LinkShadow to Showcase Machine Learning Based Threat Analytics Technology at RSA Conference 2020 - PRNewswire

European Central Bank Partners with Digital Innovation Platform Reply to Offer AI and Machine Learning Coding Marathon – Crowdfund Insider

The European Central Bank (ECB) has partnered with Reply, a platform focused on digital innovation, in order to offer a 48-hour coding marathon, which will focus on teaching participants how to apply the latest artificial intelligence (AI) and machine learning (ML) algorithms.

The marathon is scheduled to take place during the final days of February 2020 at the ECB in Frankfurt, Germany. The supervisory data hackathon will have over 80 participants from the ECB, Reply and various other organizations.

Participants will be using AI and ML techniques to gain a better understanding and quicker insights into the large amounts of supervisory data gathered by the ECB from various banks and other financial institutions via regular reporting methods for risk analysis purposes.

Program participants will have to turn in projects in the areas of data quality, interlinkages in supervisory reporting and risk indicators, before the event takes place. The best submissions will be worked on for a 48-hour period by multidisciplinary teams.

Last month, the Bank of England (BoE) and UKs financial regulator, the Financial Conduct Authority (FCA), announced that they would be running a public/private forum that would cover the relevant technical and public policy issues related to bank adoption of artificial intelligence (AI) and machine learning (ML) technologies and software.

A survey conducted by the BoE last year revealed that ML tools are being used in around two-thirds, or 66%, of UKs financial institutions, with the technology expected to enter a new stage of development and maturity that could lead to more advanced deployments in the future.

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European Central Bank Partners with Digital Innovation Platform Reply to Offer AI and Machine Learning Coding Marathon - Crowdfund Insider

New cybersecurity system protects networks with LIDAR, no not that LiDAR – C4ISRNet

When it comes to identifying early cyber threats, its important to have laser-like precision. Mapping out a threat environment can be done with a range of approaches, and a team of researchers from Purdue University created a new system for just such applications. They are calling that approach LIDAR, or lifelong, intelligent, diverse, agile and robust.

This is not to be confused with LiDAR, for Light Detection and Ranging, a kind of remote sensing system that uses laser pulses to measure distances from the sensor. The light-specific LiDAR, sometimes also written LIDAR, is a valuable tool for remote sensing and mapping, and features prominently in the awareness tools of self-driving vehicles.

Purdues LIDAR, instead, is a kind of architecture for network security. It can adapt to threats, thanks in part to its ability to learn three ways. These include supervised machine learning, where an algorithm looks at unusual features in the system and compares them to known attacks. An unsupervised machine learning component looks through the whole system for anything unusual, not just unusual features that resemble attacks. These two machine-learning components are mediated by a rules-based supervisor.

One of the fascinating things about LIDAR is that the rule-based learning component really serves as the brain for the operation, said Aly El Gamal, an assistant professor of electrical and computer engineering in Purdues College of Engineering. That component takes the information from the other two parts and decides the validity of a potential attack and necessary steps to move forward.

By knowing existing attacks, matching to detected threats, and learning from experience, this LIDAR system can potentially offer a long-term solution based on how the machines themselves become more capable over time.

Aiding the security approach, said the researchers, is the use of a novel curiosity-driven honeypot, which can like a carnivorous pitcher plant lure attackers and then trap them where they will do no harm. Once attackers are trapped, it is possible the learning algorithm can incorporate new information about the threat, and adapt to prevent future attacks making it through.

The research team behind this LIDAR approach is looking to patent the technology for commercialization. In the process, they may also want to settle on a less-confusing moniker. Otherwise, we may stumble into a future where users securing a network of LiDAR sensors with LIDAR have to enact an entire Whos on First? routine every time they update their cybersecurity.

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New cybersecurity system protects networks with LIDAR, no not that LiDAR - C4ISRNet

How AI Is Tracking the Coronavirus Outbreak – WIRED

With the coronavirus growing more deadly in China, artificial intelligence researchers are applying machine-learning techniques to social media, web, and other data for subtle signs that the disease may be spreading elsewhere.

The new virus emerged in Wuhan, China, in December, triggering a global health emergency. It remains uncertain how deadly or contagious the virus is, and how widely it might have already spread. Infections and deaths continue to rise. More than 31,000 people have now contracted the disease in China, and 630 people have died, according to figures released by authorities there Friday.

John Brownstein, chief innovation officer at Harvard Medical School and an expert on mining social media information for health trends, is part of an international team using machine learning to comb through social media posts, news reports, data from official public health channels, and information supplied by doctors for warning signs the virus is taking hold in countries outside of China.

The program is looking for social media posts that mention specific symptoms, like respiratory problems and fever, from a geographic area where doctors have reported potential cases. Natural language processing is used to parse the text posted on social media, for example, to distinguish between someone discussing the news and someone complaining about how they feel. A company called BlueDot used a similar approachminus the social media sourcesto spot the coronavirus in late December, before Chinese authorities acknowledged the emergency.

We are moving to surveillance efforts in the US, Brownstein says. It is critical to determine where the virus may surface if the authorities are to allocate resources and block its spread effectively. Were trying to understand whats happening in the population at large, he says.

The rate of new infections has slowed slightly in recent days, from 3,900 new cases on Wednesday to 3,700 cases on Thursday to 3,200 cases on Friday, according to the World Health Organization. Yet it isnt clear if the spread is really slowing or if new infections are simply becoming more difficult to track.

So far, other countries have reported far fewer cases of coronavirus. But there is still widespread concern about the virus spreading. The US has imposed a travel ban on China even though experts question the effectiveness and ethics of such a move. Researchers at Johns Hopkins University have created a visualization of the viruss progress around the world based on official numbers and confirmed cases.

Health experts did not have access to such quantities of social, web, and mobile data when seeking to track previous outbreaks such as severe acute respiratory syndrome (SARS). But finding signs of the new virus in a vast soup of speculation, rumor, and posts about ordinary cold and flu symptoms is a formidable challenge. The models have to be retrained to think about the terms people will use and the slightly different symptom set, Brownstein says.

Even so, the approach has proven capable of spotting a coronavirus needle in a haystack of big data. Brownstein says colleagues tracking Chinese social media and news sources were alerted to a cluster of reports about a flu-like outbreak on December 30. This was shared with the WHO, but it took time to confirm the seriousness of the situation.

Beyond identifying new cases, Brownstein says the technique could help experts learn how the virus behaves. It may be possible to determine the age, gender, and location of those most at risk more quickly than using official medical sources.

Alessandro Vespignani, a professor at Northeastern University who specializes in modeling contagion in large populations, says it will be particularly challenging to identify new instances of the coronavirus from social media posts, even using the most advanced AI tools, because its characteristics still arent entirely clear. Its something new. We dont have historical data, Vespignani says. There are very few cases in the US, and most of the activity is driven by the media, by peoples curiosity.

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How AI Is Tracking the Coronavirus Outbreak - WIRED