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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).

A great celestial event is coming for North America, but you’re going to have to get up early to see it.

Taking place on the night of November 18–19, 2021 is the longest partial eclipse of the Moon this century.

That in itself is not a huge claim. After all, a total lunar eclipse is the “best” kind of lunar eclipse. However, what happens later this week will be, and look, rather strange.

It’s set to be a very deep eclipse with about 97% of the Moon’s disk passing through the dark inner part of Earth’s shadow–its umbra–to leave “a tiny, silvery sliver of the Moon’s southern edge peeking out,” as Sky & Telescope magazine puts it.

Full Story:

This astronomical portrait from the NASA

Established in 1958, the National Aeronautics and Space Administration (NASA) is an independent agency of the United States Federal Government that succeeded the National Advisory Committee for Aeronautics (NACA). It is responsible for the civilian space program, as well as aeronautics and aerospace research. It’s vision is “To discover and expand knowledge for the benefit of humanity.”

If you think of very low temperatures, there’s a good chance you are picturing ice. Ice is a quintessential “cold” thing for us. But at extreme pressures, like in the core of large planets, something peculiar can happen. Ice can remain solid but have a temperature hotter than the surface of the Sun.

This type of water ice is called “superionic ice” and has been added to the list of around 20 phases water can structurally form, including ice, liquid, and vapor. Now, researchers report in Nature Physics the discovery and characterization of two superionic ice phases, having found a way of reliably and stably recreating the ice for longer than has previously been achieved to be able to study it.

One superionic phase extends between 200,000 and 60,000 times the atmospheric pressure at sea level and at a temperature of several hundred to over 1,000 ° C. The other phase extends to half the pressure experienced at the center of the Earth and with temperatures of thousands of degrees.

Although the colonization of Venus seems like a lost cause to many, it appears that the people at NASA are very optimistic about their plans to colonize it! Subscribe to Futurity for more space news.

#nasa #space #venus.

Here at Futurity, we scour the globe for all the latest tech releases, news and info just so you don’t have to! Covering everything from cryptocurrency to robotics, small startups to multinational corporations like Tesla and Jeff Bezos to Elon Musk and everything in between!

It’s more likely than you think.


When it comes to interstellar missions, however, there are no plans for crewed missions on the table. While there are proposals for sending robotic missions, sending astronauts to nearby stars and exoplanets simply isn’t feasible yet.

However, according to new research led by the University of California, interstellar missions could be conducted in the near future that would have tardigrades (aka. “Water Bears”) as their crew.

The study, titled “The First Interstellar Astronauts Will Not Be Human,” was conducted by researchers from UC Santa Barbara, the UCLA Health Center, the University of Florida, and Ruhr-University Bochum. It will be published in the January 2022 issue of Acta Astronautica.

27-Year-Old Woman To Become First Female Ever To Visit Every Country On Earth27-Year-Old Woman To Become First Female Ever To Visit Every Country On EarthScience, science nature articles, physics topics, space information, technolog services, view search history, astronomy articlessci-nature.