Menu

Blog

Archive for the ‘information science’ category

May 17, 2024

Accurately monitoring tool wear in precision machining

Posted by in categories: information science, robotics/AI

An advanced new technique combines machine-learning algorithms with measurements of vibrations for monitoring tool wear.

May 16, 2024

Computer Scientists Invent an Efficient New Way to Count

Posted by in categories: computing, information science

By making use of randomness, a team has created a simple algorithm for estimating large numbers of distinct objects in a stream of data.

May 16, 2024

Sarcasm, notoriously difficult to interpret, demystified by multimodal approach

Posted by in categories: information science, robotics/AI

Oscar Wilde once said that sarcasm was the lowest form of wit, but the highest form of intelligence. Perhaps that is due to how difficult it is to use and understand. Sarcasm is notoriously tricky to convey through text—even in person, it can be easily misinterpreted. The subtle changes in tone that convey sarcasm often confuse computer algorithms as well, limiting virtual assistants and content analysis tools.

May 16, 2024

A longevity businessman says he gained 10 pounds of muscle in 1 year with a simple protein equation

Posted by in categories: business, information science, life extension, Peter Diamandis

Longevity businessman Peter Diamandis said he prioritized his body composition over everything else last year.

May 15, 2024

An AI Easily Beat Humans in the Moral Turing Test

Posted by in categories: ethics, information science, robotics/AI

Welcome to the era of ethical algorithms.

May 14, 2024

Optimizing Machine Learning Controllers with Digital Twins

Posted by in categories: information science, internet, mapping, robotics/AI

“Big machine learning models have to consume lots of power to crunch data and come out with the right parameters, whereas our model and training is so extremely simple that you could have systems learning on the fly,” said Robert Kent.


How can machine learning be improved to provide better efficiency in the future? This is what a recent study published in Nature Communications hopes to address as a team of researchers from The Ohio State University investigated the potential for controlling future machine learning products by creating digital twins (copies) that can be used to improve machine learning-based controllers that are currently being used in self-driving cars. However, these controllers require large amounts of computing power and are often challenging to use. This study holds the potential to help researchers better understand how future machine learning algorithms can exhibit better control and efficiency, thus improving their products.

“The problem with most machine learning-based controllers is that they use a lot of energy or power, and they take a long time to evaluate,” said Robert Kent, who is a graduate student in the Department of Physics at The Ohio State University and lead author of the study. “Developing traditional controllers for them has also been difficult because chaotic systems are extremely sensitive to small changes.”

Continue reading “Optimizing Machine Learning Controllers with Digital Twins” »

May 14, 2024

MIT’s new AI tech could make limbless, slimy, squishy robots a reality

Posted by in categories: information science, robotics/AI

A novel algorithm enables robots to flexibly squish, bend, or stretch for tasks such as obstacle avoidance or item retrieval.

May 13, 2024

Researchers publish largest-ever dataset of neural connections

Posted by in categories: biotech/medical, information science, robotics/AI

Scientists have published the most detailed data set to date on the neural connections of the brain, which was obtained from a cubic millimeter of tissue sample.


A cubic millimeter of brain tissue may not sound like much. But considering that that tiny square contains 57,000 cells, 230 millimeters of blood vessels, and 150 million synapses, all amounting to 1,400 terabytes of data, Harvard and Google researchers have just accomplished something stupendous.

Led by Jeff Lichtman, the Jeremy R. Knowles Professor of Molecular and Cellular Biology and newly appointed dean of science, the Harvard team helped create the largest 3D brain reconstruction to date, showing in vivid detail each cell and its web of connections in a piece of temporal cortex about half the size of a rice grain.

Continue reading “Researchers publish largest-ever dataset of neural connections” »

May 12, 2024

Meta Just Achieved Mind-Reading Using AI

Posted by in categories: biotech/medical, information science, robotics/AI

ALGORITHMS THAT DECODE IMAGES A PERSON SEES OR IMAGINES will enable visual representations of dreams a sleeper is having, and give deeper insights into emotionally disturbed or mentally ill patients.


Go to a href= https://brilliant.org/coldfusion

May 11, 2024

Simulating Open Quantum Systems Using Hamiltonian Simulations

Posted by in categories: computing, information science, quantum physics

Nice.

A novel quantum algorithm, which exploits the relation between the Lindblad master equation, stochastic differential equations, and Hamiltonian simulations, is proposed to simulate open quantum systems on a quantum computer.

Page 1 of 29912345678Last