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An artificial intelligence-based method for identifying patients who are at risk for atrial fibrillation has been developed by a team led by researchers at Harvard-affiliated Massachusetts General Hospital and the Broad Institute of MIT and Harvard.

Atrial fibrillation — an irregular and often rapid heart rate — is a common condition that often leads to the formation of clots in the heart that can travel to the brain to cause a stroke. The study was published in Circulation.

The investigators developed the artificial intelligence-based method to predict the risk of atrial fibrillation within the next five years based on results from electrocardiograms (noninvasive tests that record the electrical signals of the heart) in 45,770 patients receiving primary care at MGH.

https://www.youtube.com/watch?v=TGFKwxJ-v-0

Ad Astra School is the experimental school that Elon Musk started in one of SpaceX’s factories to give an education to his own children and selected children of SpaceX employees. The future of work will require a set of skills that are not taught in schools today. The future of work will involve robots and Artificial Intelligence collaborating with humans. The Astra Nova School’s pillars include caring about community, focusing on student experiences, and sharing the work they do with the world.
Here students learn about simulations, case studies, fabrication and design projects, labs, and corporate collaboration. In general, school systems are rigid. They are more system-centric than student-centric. Astra Nova is changing that by creating a philosophy of student centricity, a value for individual abilities, praising curiosity, and encouraging problem-solving and critical thinking.
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SVT Robotics, a provider of software that orchestrates robots in warehouses and factories, has raised $25 million in series A funding led by Tiger Global with participation from Prologis Ventures, the company announced this morning. SVT says that it’ll use the new capital to bolster its product R&D and expand its customer outreach efforts.

According to cofounder and CEO A.K. Schultz, SVT’s platform helps customers to solve the growing “interoperability problem” in industrial automation. The industry is severely limited by its capacity to execute, he says. Integrations are typically custom-coded, translating to long, complex development cycles. A recent piece in Industry Today finds that factors ranking among the top concerns of manufacturers adopting automation include a lack of experienced workers to operate the machines, high transition expenses, and safety concerns.

“It’s expensive, and companies wait as much as a year or more for new automation to go live,” Schultz said in a statement. “Solving that problem with [SVT’s platform] empowers the market to grow at its full potential.”

Machine learning (ML) models are powerful tools to study multivariate correlations that exist within large datasets but are hard for humans to identify16,23. Our aim is to build a model that captures the chemical interactions between the element combinations that afford reported crystalline inorganic materials, noting that the aim of such models is efficacy rather than interpretability, and that as such they can be complementary guides to human experts. The model should assist expert prioritization between the promising element combinations by ranking them quantitatively. Researchers have practically understood how to identify new chemistries based on element combinations for phase-field exploration, but not at significant scale. However, the prioritization of these attractive knowledge-based choices for experimental and computational investigation is critical as it determines substantial resource commitment. The collaborative ML workflow24,25 developed here includes a ML tool trained across all available data at a scale beyond that, which humans can assimilate simultaneously to provide numerical ranking of the likelihood of identifying new phases in the selected chemistries. We illustrate the predictive power of ML in this workflow in the discovery of a new solid-state Li-ion conductor from unexplored quaternary phase fields with two anions. To train a model to assist prioritization of these candidate phase fields, we extracted 2021 MxM yAzA t phases reported in ICSD (Fig. 1, Step 1), and associated each phase with the phase fields M-M ′-A-A′ where M, M ′ span all cations, A, A ′ are anions {N3−, P3−, As3−, O2−, S2−, Se2−, Te2−, F, Cl, Br, and I} and x, y, z, t denote concentrations (Fig. 1, Step 2). Data were augmented by 24-fold elemental permutations to enhance learning and prevent overfitting (Supplementary Fig. 2).

ML models rely on using appropriate features (often called descriptors)26 to describe the data presented, so feature selection is critical to the quality of the model. The challenge of selecting the best set of features among the multitude available for the chemical elements (e.g., atomic weight, valence, ionic radius, etc.)26 lies in balancing competing considerations: a small number of features usually makes learning more robust, while limiting the predictive power of resulting models, large numbers of features tend to make models more descriptive and discriminating while increasing the risk of overfitting. We evaluated 40 individual features26,27 (Supplementary Fig. 4, 5) that have reported values for all elements and identify a set of 37 elemental features that best balance these considerations. We thus describe each phase field of four elements as a vector in a 148-dimensional feature space (37 features × 4 elements = 148 dimensions).

To infer relationships between entries in such a high-dimensional feature space in which the training data are necessarily sparsely distributed28, we employ the variational autoencoder (VAE), an unsupervised neural network-based dimensionality reduction method (Fig. 1, Step 3), which quantifies nonlinear similarities in high-dimensional unlabelled data29 and, in addition to the conventional autoencoder, pays close attention to the distribution of the data features in multidimensional space. A VAE is a two-part neural network, where one part is used to compress (encode) the input vectors into a lower-dimensional (latent) space, and the other to decode vectors in latent space back into the original high-dimensional space. Here we choose to encode the 148-dimensional input feature space into a four-dimensional latent feature space (Supplementary Methods).

Rich dynamics in a living neuronal system can be considered as a computational resource for physical reservoir computing (PRC). However, PRC that generates a coherent signal output from a spontaneously active neuronal system is still challenging. To overcome this difficulty, we here constructed a closed-loop experimental setup for PRC of a living neuronal culture, where neural activities were recorded with a microelectrode array and stimulated optically using caged compounds. The system was equipped with first-order reduced and controlled error learning to generate a coherent signal output from a living neuronal culture. Our embodiment experiments with a vehicle robot demonstrated that the coherent output served as a homeostasis-like property of the embodied system from which a maze-solving ability could be generated. Such a homeostatic property generated from the internal feedback loop in a system can play an important role in task solving in biological systems and enable the use of computational resources without any additional learning.

Google is secretly working on some of the most advanced and crazy-sounding Artificial Intelligence Systems in the world. Some of them they’ve announced and released to the public, while others are being worked on behind closed curtains.
What these secret AI Projects are, what evil, bad or good things they’ll accomplish and how Googles motto of “Don’t be evil” doesn’t apply anymore, all in this one video. One thing is for sure, this might be the dawn of super intelligent AI robots owned by a single company in the hopes of reaching AI Supremacy.

If you enjoyed this video, please consider rating this video and subscribing to our channel for more frequent uploads. Thank you! smile

TIMESTAMPS:
00:00 Don’t be evil.
01:32 Google and Deepmind.
03:26 Google’s Connections with the Military.
04:39 What is Googles plan?
07:21 Last Words.

#robots #ai #google

Honda and the engineering and construction firm Black & Veatch have tested a prototype of Honda’s autonomous work vehicle at a construction site in New Mexico.

During a month of tests, the AWV performed such tasks as towing, moving construction materials and other supplies to specific locations within the work site.

Honda’s AWV was first shown as a concept at the 2018 Consumer Electronics Show. It combines a durable off-road side-by-side platform with advanced autonomous technology. The vehicle uses a collection of sensors to maneuver without a driver, using GPS, radar and lidar for obstacle detection, as well as 3D cameras. Together, these features enable the AWV to be operated by remote control.

This is why researchers trained computers to predict what designer drugs will emerge onto the scene before they hit the market, according to a recent study published in the journal Nature Machine Intelligence.

With highly-addictive drugs flooding regions throughout the U.S., this program could save countless lives. But it could also unlock an entire “dark matter” world of unknown psychoactive possibilities.

Unity, the San Francisco-based platform for creating and operating games and other 3D content, on November 10 announced the launch of Unity Simulation Pro and Unity SystemGraph to improve modeling, testing, and training complex systems through AI.

With robotics usage in supply chains and manufacturing increasing, such software is critical to ensuring efficient and safe operations.

Danny Lange, senior vice president of artificial intelligence for Unity, told VentureBeat via email that the Unity SystemGraph uses a node-based approach to model the complex logic typically found in electrical and mechanical systems. “This makes it easier for roboticists and engineers to model small systems, and allows grouping those into larger, more complex ones — enabling them to prototype systems, test and analyze their behavior, and make optimal design decisions without requiring access to the actual hardware,” said Lange.

Artificial Superintelligence or ASI, sometimes referred to as digital superintelligence is the advent of a hypothetical agent that possesses intelligence far surpassing that of the smartest and most gifted human minds. AI is a rapidly growing field of technology with the potential to make huge improvements in human wellbeing. However, the development of machines with intelligence vastly superior to humans will pose special, perhaps even unique risks.

Most surveyed AI researchers expect machines to eventually be able to rival humans in intelligence, though there is little consensus on when or how this will happen.

One only needs to accept three basic assumptions to recognize the inevitability of superintelligent AI:
- Intelligence is a product of information processing in physical systems.
- We will continue to improve our intelligent machines.
- We do not stand on the peak of intelligence or anywhere near it.

Philosopher Nick Bostrom expressed concern about what values a superintelligence should be designed to have.
Any type of AI superintelligence could proceed rapidly to its programmed goals, with little or no distribution of power to others. It may not take its designers into account at all. The logic of its goals may not be reconcilable with human ideals. The AI’s power might lie in making humans its servants rather than vice versa. If it were to succeed in this, it would “rule without competition under a dictatorship of one”.

Elon Musk has also warned that the global race toward AI could result in a third world war.
To avoid the ‘worst mistake in history’, it is necessary to understand the nature of an AI race, as well as escape the development that could lead to unfriendly Artificial Superintelligence.

To ensure the friendly nature of artificial superintelligence, world leaders should work to ensure that this ASI is beneficial to the entire human race.