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Rise of the machines: Robot umpires moving up to Triple-A baseball for 2022

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Robot umpires have been given a promotion and will be just one step from the major leagues this season. Major League Baseball is expanding its automated strike zone experiment to Triple-A, the highest level of the minor leagues. MLB's website posted a hiring notice seeking seasonal employees to operate the Automated Ball and Strike system. MLB said it is recruiting employees to operate the system for the Albuquerque Isotopes, Charlotte Knights, El Paso Chihuahuas, Las Vegas Aviators, Oklahoma City Dodgers, Reno Aces, Round Rock Express, Sacramento River Cats, Salt Lake Bees, Sugar Land Skeeters and Tacoma Rainiers. The independent Atlantic League became the first American professional league to let a computer call balls and strikes at its All-Star Game in July 2019 and experimented with ABS during the second half of that season. It also was used in the Arizona Fall League for top prospects in 2019, drawing complaints of its calls on breaking balls.


Harnessing Noise In Optical Computing For AI - AI Summary

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In the near future, it's predicted that these technologies will have an even larger impact on society through activities such as driving fully autonomous vehicles, enabling complex scientific research and facilitating medical discoveries. And cloud computing data centers used by AI and machine learning applications worldwide are already devouring more electrical power per year than some small countries. A research team led by the University of Washington has developed new optical computing hardware for AI and machine learning that is faster and much more energy efficient than conventional electronics. Optical computing noise essentially comes from stray light particles, or photons, that originate from the operation of lasers within the device and background thermal radiation. Of course the optical computer didn't have a human hand for writing, so its form of "handwriting" was to generate digital images that had a style similar to the samples it had studied, but were not identical to them.


Deepmind Researchers Propose 'ReLICv2': Pushing The Limits of Self-Supervised ResNets

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The supervised learning architectures generally require a massive amount of labeled data. Acquiring this vast amount of high-quality labeled data can turn out to be a very costly and time-consuming task. The main idea behind self-supervised methods in deep learning is to learn the patterns from a given set of unlabelled data and fine-tune the model with few labeled data. Self-supervised learning using residual networks has recently progressed, but they still underperform by a large margin corresponding to supervised residual network models on ImageNet classification benchmarks. This poor performance has rendered the use of self-supervised models in performance-critical scenarios till this point.


Real-time Analytics News for Week Ending January 22 – RTInsights

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… an AI/Machine Learning (ML) platform designed to address the needs of … gap between the quantum computing and machine learning communities.


Machine-learned, light-field camera detects 3D facial expressions – News Medical

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The facial expressions in the acquired 3D images were distinguished through machine learning with an average of 85% accuracy – a statistically …


how-artificial-intelligence-will-power-the-next-wave-of-healthcare-innovation-in-future

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Data is certain to revolutionize healthcare in the same way it transformed other industries. But it will need help. Today, healthcare providers are collecting exabytes of patient data from hospitals, clinics, imaging and pathology labs, and more. These data provide a wealth of information about human health but are difficult to understand due to their lack of structure and sheer volume. Fortunately, sophisticated AI and machine learning solutions can carry the torch of innovation.


COVID-19 detection in CT and CXR images using deep learning models

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Infectious diseases pose a threat to human life and could affect the whole world in a very short time. Corona-2019 virus disease (COVID-19) is an example of such harmful diseases. COVID-19 is a pandemic of an emerging infectious disease, called coronavirus disease 2019 or COVID-19, caused by the coronavirus SARS-CoV-2, which first appeared in December 2019 in Wuhan, China, before spreading around the world on a very large scale. The continued rise in the number of positive COVID-19 cases has disrupted the health care system in many countries, creating a lot of stress for governing bodies around the world, hence the need for a rapid way to identify cases of this disease. Medical imaging is a widely accepted technique for early detection and diagnosis of the disease which includes different techniques such as Chest X-ray (CXR), Computed Tomography (CT) scan, etc.


Senior Data Engineer, Data Partnerships

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Life360 is a Remote First company, which means a remote work environment will be the primary experience for all employees. All positions, unless otherwise specified, can be performed remotely (within the US) regardless of any specified location above. Life360 is on a mission to bring families closer-- and that starts with ensuring that loved ones are safe and secure. That's why millions of families across 140 countries trust Life360 to keep them connected each day, and in life's unpredictable moments. From real-time location sharing and notifications, to driving safety features like Crash Detection and Roadside Assistance, we create tools that remove uncertainty from modern life -- so families can feel free, together.



How Can Using AI Services Improve Your Business – TechBullion

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With the help of artificial intelligence, this process can be automated and sped up significantly.