Page 3,449«..1020..3,4483,4493,4503,451..3,4603,470..»

Artificial Intelligence and Machine Learning Path to Intelligent Automation – Embedded Computing Design

With evolving technologies, intelligent automation has become a top priority for many executives in 2020. Forrester predicts the industry will continue to grow from $250 million in 2016 to $12 billion in 2023. With more companies identifying and implementation the Artificial Intelligence (AI) and Machine Learning (ML), there is seen a gradual reshaping of the enterprise.

Industries across the globe integrate AI and ML with businesses to enable swift changes to key processes like marketing, customer relationships and management, product development, production and distribution, quality check, order fulfilment, resource management, and much more. AI includes a wide range of technologies such as machine learning, deep learning (DL), optical character recognition (OCR), natural language processing (NLP), voice recognition, and so on, which creates intelligent automation for organizations across multiple industrial domains when combined with robotics.

Let us see how some of these technologies help industries globally to implement automation.

Machine learning has recently been applied to detect anomalies in manufacturing processes. Using machine learning, health monitoring of the equipment can be automated where the specialties of the sensor devices data like vibrations, sound, temperature, etc. from the collected data can be learned through training.

This is useful to identify early wear and tear of equipment and avoid catastrophic damage. It can catch the smallest flaw that the human eye may miss. Techniques can be selected depending on the type of attributes required to extract the features and based on the features various machine learning algorithms can be applied to detect the anomalies.

One of the main tasks of any machine learning algorithm in the self-driving car is a continuous rendering of the surrounding environment and the prediction of possible changes to those surroundings. It is essential for autonomous cars to recognize objects or pedestrians on the road, irrespective whether it is day or night. For the success of autonomous cars, automobile companies integrate advanced driver assist systems (ADAS) with thermal imaging.

By executing deep learning algorithms on the image data set that are captured by thermal cameras, it is possible to identify pedestrians in any weather condition. It can cover a larger or small part of the image based on distance. There are few deep learning algorithms like Fast R-CNN or YOLO that can help achieve this automation making autonomous cars safer and efficient on roads.

OCR is another technology which uses deep learning to recognize characters. It is of great use in manufacturing to automate processes which are subject to human errors due to fatigue or casual behavior. These activities include verifications of lot code, batch code, expiry date etc. Various CNN architectures like LeNet, Alexnet etc. can be used for this automation and it can also be customized to achieve the desired accuracy.

Loaning money is a huge business for financial institutions. The value and approval of the loans is entirely based on how likely an individual or business will be able to repay. Determining creditworthiness is most important decision for this business to succeed. Along with credit score various other parameters are considered for making such decisions which makes the whole process very complex and time consuming.

To save on time and accelerate the process, trained machine learning algorithms can be used to predict and classify the creditworthiness of the applicant. This can simplify the classification of applicants and improve decision making for loan sanction.

AI and ML is creating a new vision of machine-human collaboration and taking businesses to new levels. Machine learning helps organizations across various industrial domains to develop intelligent solutions based on proprietary or open source algorithms/frameworks that processes data and runs sophisticated algorithms on cloud and edge. Machine Learning models can be built, trained, validated, optimized, deployed and tested using latest tools and technologies. This ensures faster decision making, increased productivity, business process automation, and faster anomaly detection for the businesses.

Kaumil Desai is associated withVOLANSYSas a Delivery Manager past 3 years. He has vast experience in product development, Machine Learning on edge, complex algorithms design & development for various industries including Industrial Automation, Electrical safety, Telecom, etc.

See original here:
Artificial Intelligence and Machine Learning Path to Intelligent Automation - Embedded Computing Design

Read More..

Blacklight Solutions Unveils Software to Simplify Business Analytics with AI and Machine Learning – PRNewswire

AUSTIN, Texas, Aug. 5, 2020 /PRNewswire/ -- Blacklight Solutions, an applied analytics company based in Texas, introduced today a simplified business analytics platform that allows small to mid-market businesses to implement artificial intelligence and machine learning with code free transformation, aggregation, blending and mixing of multiple data sources. Blacklight software empowers companies to increase efficiency by using machine learning and artificial intelligence for business processes with a team of experts guiding this metamorphosis.

"Small and mid-size firms need a simpler way to leverage these technologies for growth in the way large enterprises have." said Chance Coble, Blacklight Solutions CEO. "We are thrilled to bring an easy pay-as-you-go solution along with the expertise to guide them and help them succeed."

Blacklight Solutions believes that now more than ever companies need business analytics solutions that can increase sales, enhance productivity, and improve risk control. Blacklight software gives small to mid-market businesses an opportunity to implement the latest technology and create insightful digital products without requiring a dedicated team or familiarity with coding languages. Blacklight Solutions provides each client with a team of experts to help guide their journey in becoming evidence-based decision makers.

Capabilities and Benefits for Users

Blacklight is a cloud-based system that is built to scale with your business as it grows. It is the simplest way to create business analytics solutions that users can then sell to their customers. Users have the added ability to create dashboards and embed them in client facing portals. Additionally, users are enabled to grow and improve cash flow by creating data products that their customers can subscribe to resulting in generated revenue. Blacklight software also features an alerting system that notifies designated users when changes in data or anomalies occur.

"Blacklight brought the strategy, expertise and software that made analytics a solution for us to achieve new business objectives and grow sales," said Deren Koldwyn, CEO, Avannis, Blacklight Solutions client.

Blacklight software brings the full power of business analytics to companies that are looking for digital transformations and want to move fast. Blacklight Solutions is the only full-service solution that provides empowering software combined with the insight and strategy necessary for impactful analytics implementations. To learn more about Blacklight Solutions' offerings visit http://www.blacklightsolutions.com.

About Blacklight Solutions

Blacklight Solutions is an analytics firm focused on helping mid-market companies accelerate their growth. Founded in 2009, Blacklight Solutions has spent over a decade helping organizations solve business problems by putting their data to work to generate revenue, increase efficiency and improve customer relationships.

Media Contact:

Bailey Steinhauser979.966.8170[emailprotected]

SOURCE Blacklight Solutions

Home

More:
Blacklight Solutions Unveils Software to Simplify Business Analytics with AI and Machine Learning - PRNewswire

Read More..

AI is learning when it should and shouldnt defer to a human – MIT Technology Review

The context: Studies show that when people and AI systems work together, they can outperform either one acting alone. Medical diagnostic systems are often checked over by human doctors, and content moderation systems filter what they can before requiring human assistance. But algorithms are rarely designed to optimize for this AI-to-human handover. If they were, the AI system would only defer to its human counterpart if the person could actually make a better decision.

The research: Researchers at MITs Computer Science and AI Laboratory (CSAIL) have now developed an AI system to do this kind of optimization based on strengths and weaknesses of the human collaborator. It uses two separate machine-learning models; one makes the actual decision, whether thats diagnosing a patient or removing a social media post, and one predicts whether the AI or human is the better decision maker.

The latter model, which the researchers call the rejector, iteratively improves its predictions based on each decision makers track record over time. It can also take into account factors beyond performance, including a persons time constraints or a doctors access to sensitive patient information not available to the AI system.

Read the original here:
AI is learning when it should and shouldnt defer to a human - MIT Technology Review

Read More..

Moderna Announced Partnership With Amazon Web Services for Their Analytics and Machine Learning Services – Science Times

The $29 billion biotech company Modernahas announced on Wednesday, August 5, that they will be partnering with Amazon Web Servicesto become their preferred cloud partner.

Moderna is currently considered the lead COVID-19 vaccine developer as it is the first company to reach the third phase of vaccine development in late July.

(Photo : Getty Images)CAMBRIDGE, MASSACHUSETTS - MAY 08: A view of Moderna headquarters on May 08, 2020 in Cambridge, Massachusetts. Moderna was given FDA approval to continue to phase 2 of Coronavirus (COVID-19) vaccine trials with 600 participants. (Photo by Maddie Meyer/Getty Images)

Read Also: 'Very Low' Dose Moderna COVID-19 Vaccine Elicits Immune Response with No Side Effect, First Human Trial Show

Vaccine development could take years of research and lab testing before it can be administered to people. As one of the leading companies who joined the race for a COVID-19 vaccine, Moderna gave 30,000 peoplelast week their first vaccine candidate that reached phase 3 of testing the United States.

At present, Moderna has been using AWS to run its everyday operations in accounting and inventory management and also to power its production facility, robotic tools, and engineering systems. According to the press release by the biotech company, this allows them to achieve greater efficiency and visibility across its operations.

Moderna CEO Stphane Bancel said that with AWS, the company's researchers could have the ability to quickly design and perform experiments and, in no time, uncover novel insights to produce faster life-saving treatments.

Modernizing IT infrastructures through the use of artificial intelligenceis one of the things that biotech companies, such as Moderna, are looking into helping them in the race of developing new medicines and treatments.

The race for a COVID-19 vaccine has made the biotechnology sector a sought-after market these days. Like AWS, its rival Microsoft Azurehas recently inked a big cloud and artificial intelligence deal with drugmaker Novartis as well.

According to biotech analyst Michael Yee, the vaccine test results could be made public in October.

Read Next: Is Moderna Coronavirus Vaccine Leading the Race? Early Trials Show the Jab Gives Off Immunity

Moderna Therapeutics' co-founder and chairman, Dr. Noubar Afeyan, said that the biotech company is the first US firm to enter Phase 3 of a clinical trial for their candidate COVID-19 vaccine.

The blind trial will include 30,000 volunteers in which half of them will receive Moderna's drug, and the other half will receive a placebo of sodium and water. The volunteers are 18 years old and older who are interested in participating in the clinical trial.

Afeyan said that the Food and Drug Administration's authorization would be based on how fast some 150 cases of the infection occur. If the trial proves to be successful, those people who received the vaccine should have a disproportionately lower number of cases than those who received the placebo.

At the end of the day, the FDAmust ensure that the vaccine meets all the necessary safety and efficacy measures. The administration mandated at least 50% protection value for any vaccine before considering authorizing them.

Moreover, Moderna hopes to have authorization from the FDA by the last quarter of 2020. Afeyan said that they expect to have 500 million to 1 billion doses of their vaccine ready for distribution once they get the FDA authorization.

Read More: Moderna COVID-19 Vaccine Trial Volunteer Suffered 'Severe Adverse Reaction'

Read the original post:
Moderna Announced Partnership With Amazon Web Services for Their Analytics and Machine Learning Services - Science Times

Read More..

STMicroelectronics Releases STM32 Condition-Monitoring Function Pack Leveraging Tools from Cartesiam for Simplified Machine Learning – ELE Times

STMicroelectronicshas released a free STM32 software function pack that lets users quickly build, train, and deployintelligent edge devices for industrial condition monitoringusing a microcontroller Discovery kit.

Developed in conjunction with machine-learning expert and ST Authorized Partner Cartesiam, theFP-AI-NANOEDG1 software packcontains all the necessary drivers, middleware, documentation, and sample code to capture sensor data, integrate, and run Cartesiams NanoEdge libraries. Users without specialist AI skills can quickly create and export custom machine-learning libraries for their applications using Cartesiams NanoEdge AI Studio tool running on a Windows 10 or Ubuntu PC. The function pack simplifies complete prototyping and validation free of charge on STM32 development boards, before deploying on customer hardware where standard Cartesiam fees apply.

The straightforward methodology established with Cartesiam uses industrial-grade sensors on-board a Discovery kit such as theSTM32L562E-DKto capture vibration data from the monitored equipment both in normal operating modes and under induced abnormal conditions. Software to configure and acquire sensor data is included in the function pack. NanoEdge AI Studio analyzes the benchmark data and selects pre-compiled algorithms from over 500 million possible combinations to create optimized libraries for training and inference. The function-pack software provides stubs for the libraries that can be easily replaced for simple embedding in the application. Once deployed, the device can learn the normal pattern of the operating mode locally during the initial installation phase as well as during the lifetime of the equipment, as the function pack permits switching between learning and monitoring modes.

Using the Discovery kit to acquire data, generate, train, and monitor the solution, leveraging free tools and software, and the support of theSTM32 ecosystem, developers can quickly create a proof-of-concept model at low cost and easily port the application to other STM32 microcontrollers. As an intelligent edge device, unlike alternatives that rely on AI in the cloud, the solution allows equipment owners greater control over potentially sensitive information by processing machine data on the local device.

The FP-AI-NANOEDG1 function pack is available now atwww.st.com, free of charge.

The STM32L562E-DK Discovery kit contains anSTM32L562QEI6QUultra-low-power microcontroller, an iNEMO 3D accelerometer and 3D gyroscope, as well as two MEMS microphones, a 240240 color TFT-LCD module, and on-board STLINK-V3E debugger/programmer. The budgetary price for the Discovery kit is $76.00, and it is available fromwww.st.comor distributors.

For further information, visitwww.st.com

Visit link:
STMicroelectronics Releases STM32 Condition-Monitoring Function Pack Leveraging Tools from Cartesiam for Simplified Machine Learning - ELE Times

Read More..

Surprisingly Recent Galaxy Discovered Using Machine Learning May Be the Last Generation Galaxy in the Long Cosmic History – SciTechDaily

HSC J1631+4426 broke the record for the lowest oxygen abundance. Credit: NAOJ/Kojima et al.

Breaking the lowest oxygen abundance record.

New results achieved by combining big data captured by the Subaru Telescope and the power of machine learning have discovered a galaxy with an extremely low oxygen abundance of 1.6% solar abundance, breaking the previous record of the lowest oxygen abundance. The measured oxygen abundance suggests that most of the stars in this galaxy formed very recently.

To understand galaxy evolution, astronomers need to study galaxies in various stages of formation and evolution. Most of the galaxies in the modern Universe are mature galaxies, but standard cosmology predicts that there may still be a few galaxies in the early formation stage in the modern Universe. Because these early-stage galaxies are rare, an international research team searched for them in wide-field imaging data taken with the Subaru Telescope. To find the very faint, rare galaxies, deep, wide-field data taken with the Subaru Telescope was indispensable, emphasizes Dr. Takashi Kojima, the leader of the team.

However, it was difficult to find galaxies in the early stage of galaxy formation from the data because the wide-field data includes as many as 40 million objects. So the research team developed a new machine learning method to find such galaxies from the vast amount of data. They had a computer repeatedly learn the galaxy colors expected from theoretical models, and then let the computer select only galaxies in the early stage of galaxy formation.

The research team then performed follow-up observations to determine the elemental abundance ratios of 4 of the 27 candidates selected by the computer. They have found that one galaxy (HSC J1631+4426), located 430 million light-years away in the constellation Hercules, has an oxygen abundance only 1.6 percent of that of the Sun. This is the lowest values ever reported for a galaxy. The measured oxygen abundance suggests that most of the stars in this galaxy formed very recently. In other words, this galaxy is undergoing an early stage of the galaxy evolution.

What is surprising is that the stellar mass of the HSC J1631+4426 galaxy is very small, 0.8 million solar masses. This stellar mass is only about 1/100,000 of our Milky Way galaxy, and comparable to the mass of a star cluster in our Milky Way, said Prof. Ouchi of the National Astronomical Observatory of Japan and the University of Tokyo. This small mass also supports the primordial nature of the HSC J1631+4426 galaxy.

The research team thinks that there are two interesting indications from this discovery. First, this is the evidence about a galaxy at such an early stage of galaxy evolution existing today. In the framework of the standard cosmology, new galaxies are thought to be born in the present universe. The discovery of the HSC J1631+4426 galaxy backs up the picture of the standard cosmology. Second, we may witness a new-born galaxy at the latest epoch of the cosmic history. The standard cosmology suggests that the matter density of the universe rapidly drops in our universe whose expansion accelerates. In the future universe with the rapid expansion, matter does not assemble by gravity, and new galaxies wont be born. The HSC J1631+4426 galaxy may be the last generation galaxy in the long cosmic history.

Read this article:
Surprisingly Recent Galaxy Discovered Using Machine Learning May Be the Last Generation Galaxy in the Long Cosmic History - SciTechDaily

Read More..

This 13-year-old from Bengaluru is crowd funding to set up refrigerators for the poor – EdexLive

Shelves set up by Mishant to store and help the needy

Don't waste food and share it with the ones who need it. Isn't this taught at our home? The left over or excess food can save people from going to bed hungry every night. And this is what 13-year-old Mishant Jain believes. Recently, he started crowd funding to set up refrigerators and shelves at places like bakeries, hotels, restaurants etc so that excess food can be stored and the poor people take them away without any hesitation.

Mishant who is in class 8 at National Academy for Learning in Bengaluru, says, "I am inspired by my grandfather to do this work. He has been into social work for many years and helps people from different states. One day, he got a call from one of the government schools in Rajasthan asking for a refrigerator. The reason was while the government gave fresh milk to children, there was no place to store it. Since the state experiences hot climate, the milk would often get spoilt and children were not able to drink it. Hence, my grand father along with his friends gifted a refrigerator to this school so that they can store milk for a day or so and children can drink it when ever they want."

Now, Mishant wants to implement the same in Bengaluru but for the poor people. He says, "I have started raising funds on a website called Impact Guru and the project's name is poorti (Sampoorti). While my target is to raise Rs 5 lakh, I have been able to raise Rs 56,320 till now. I have planned to put up these fridges and shelves in 25 locations. I have already a mini shelf nearmy father's office to check how it works. Then, I will implement the same in different locations. Even 1M1B Foundation also supported my intiative in all the ways they can."

Mishant is currently attending online classes and dedicating his free time to this project. "In times of pandemic like this, if poor are benefitted from my project, then there is nothing like it," he concludes.

If you want to support Mishant's initiative, click on this link- http://www.impactguru.com/fundraiser/help-initiative-sampoorti

Read the original here:
This 13-year-old from Bengaluru is crowd funding to set up refrigerators for the poor - EdexLive

Read More..

ASX set to move into industry-wide testing of blockchain-based settelement system – Finextra

Over 90% of CHESS users can meet the proposed go-live date of April 2022; ASX now reviewing consultation feedback.

ASX is now carefully reviewing the consultation feedback and following up with some CHESS users on points of detail they raised in order to meet the proposed implementation timetable.

Early results show an overwhelming majority of CHESS users can meet the proposed timetable for implementing CHESS. Despite the high number of positive responses, no final decision on the revised schedule has been made. It remains subject to a detailed review of all submissions and any other relevant considerations before being finalised by ASX.

As at Tuesday, 4 August: * 88 submissions have been received, representing 92% of the 96 CHESS users*91% of CHESS users who made submissions can meet the revised go-live date for CHESS replacement of April 2022 *The few exceptions not yet able to confirm readiness have asked for more information on particular issues, which ASX will assist with in the near-term.

CHESS users are those organisations that plan to connect to the new system, including clearing and settlement participants, product issuer settlement participants, approved market operators, back office software developers, payment providers and share registries.

ASX is currently following up with CHESS users that havent responded to ensure as much input as possible is received from those organisations that must accredit their systems and/or attest to their operational readiness prior to go-live. Their feedback is important for the safe and timely transition to the new system.

ASX will publish its response and a summary of the feedback once all submissions have been reviewed. We will also engage with the regulatory agencies on the revised project timetable prior to its public release.

Dominic Stevens, ASX Managing Director and CEO said: We appreciate the input and responses weve received from the market - not just for this consultation but for the CHESS replacement project overall. The project has taken on even greater significance in recent months, with the accelerating need for more innovation, digitisation and straight-through processing of transactions and corporate actions.

The CHESS replacement project has involved the most interaction ASX has ever undertaken with the market. Were grateful that so many CHESS users have responded constructively to this consultation. This provides us with a sound starting point as we now carefully consider all submissions.

Mr Stevens continued: While recognising there is still much for everyone to do, we are excited by the fact we are close to 100% complete on customer functionality and set to move into industry-wide testing in the coming months.

Background

ASX and a broad stakeholder community have been working together since 2016 to successfully deliver the system to replace CHESS. This has involved significant collaboration on business requirements, adoption and mapping of ISO 20022 messaging, solution design for new features, and connectivity to the new system.

At its core, the new system will deliver existing services; new functionality; high availability, reliability and performance; and underpin Australias financial markets for the next decade and beyond.

In developing the consultation paper published on 30 June that set out a proposed 12-month extension, ASX considered several factors. These included the ongoing impact of COVID-19, functionality changes requested by users, and additional time for ASX and CHESS users to complete development and readiness activities.

The project is progressing well, with 90% of the core clearing and settlement functionality used by customers already deployed in the Customer Development Environment.

Follow this link:
ASX set to move into industry-wide testing of blockchain-based settelement system - Finextra

Read More..

Machine Learning Reveals What Makes People Happy In A Relationship – Forbes

Who you are together is more important than who you are alone.

What makes us happy in a romantic relationship? The question might seem too complex to answer, too varied couple to couple. But a new study in the Proceedings of the National Academy of Sciences attempts to answer just that - using machine learning.

Previous studies on romantic satisfaction were limited in size. By using machine learning, however, researchers were able to analyze a massive amount of data, which included over 11,000 different couples from 43 data sets. Individual studies are many times limited - it is difficult and expensive to recruit couples for the studies. Its also exhausting for the participants. Using machine learning to analyze a large amount of data from pre-existing studies bypasses these problems.

The researchers looked at variables that could predict happiness within a relationship. Some of these, such as neuroticism, political orientation, conscientiousness or family history were qualities of the individuals involved. Others, such as appreciation, affection and perceived partner commitment were qualities of the relationship.

Of these, qualities of the relationship, rather than the individuals involved, contributed more to overall satisfaction. The five most important were how much they believed their partner was committed to the relationship, how much they appreciated their partner, sexual satisfaction, how much they believed their partner was happy in the relationship, and not fighting often.

Appreciation and commitment are key for a fulfilling relationship.

Qualities of the individuals contribute too - but not as much. In fact, 45% of the variability in a relationship is due to the qualities of the relationship. 21% were due to the individuals themselves. In addition, once qualities of the relationship were taken into account, the differences due to the individuals were not as important.

Experiencing negative affect, depression, or insecure attachment are surely relationship risk factors. But if people nevertheless manage to establish a relationship characterized by appreciation, sexual satisfaction, and a lack of conflictand they perceive their partner to be committed and responsivethose individual risk factors may matter little, say the authors.

In other words, for a happy relationship, its more important who you are together than who you are apart.

Originally posted here:
Machine Learning Reveals What Makes People Happy In A Relationship - Forbes

Read More..

Benefits Of AI And Machine Learning | Expert Panel | Security News – SecurityInformed

The real possibility of advancing intelligence through deep learning and other AI-driven technology applied to video is that, in the long term, were not going to be looking at the video until after something has happened. The goal of gathering this high level of intelligence through video has the potential to be automated to the point that security operators will not be required to make the decisions necessary for response. Instead, the intelligence-driven next steps will be automatically communicated to various stakeholders from on-site guards to local police/fire departments. Instead, when security leaders access the video that corresponds to an incident, it will be because they want to see the incident for themselves. And isnt the automation, the ability to streamline response, and the instantaneous response the goal of an overall, data-rich surveillance strategy? For almost any enterprise, the answer is yes.

More:
Benefits Of AI And Machine Learning | Expert Panel | Security News - SecurityInformed

Read More..