Home Knowledge Base Time Machine

Time Machine

No mentions found

This entity hasn't been tracked yet, or Iris is still building its knowledge base.

Related Articles from SNS

Pantries can be time machines. An expired tin of lychees moved house with us – twice

As a child, I didn’t understand the ancient food decaying in my grandmother’s cupboard. Now I’m beginning to“This oregano is best before 1985!” my sister cries, adding it to the pile on the laminate bench.

The Guardian UK 11d ago

Geometric Bounds on the Finite-Time Performance of Active Machines

Announce Type: cross Abstract: Optimizing energy conversion in active matter remains a central challenge in nonequilibrium physics. Here, we develop a unified thermodynamic framework that characterizes the finite-time performance of interacting active machines.

arXiv Physics 7d ago

'It's time Elon Musk stopped using our outrage as a cash-machine'

'It's time Elon Musk stopped using our outrage as a cash-machine' Precious pictures of Henry Nowak are being used to whip up hatred, spread lies and cause division, writes Ros Wynne-Jones. It's time to fight back against the grifters hoping to whip up another summer of discontent His smiling photographs – at a family wedding, with 18th birthday balloons in the background – should have just been for his parents’ mantelpiece. But Henry Nowak’s family photographs are known to all of us now.

Daily Mirror 5d ago

Real-Time Threat Detection from Surveillance Cameras using Machine Learning

arXiv:2606.05708v1 Announce Type: new Abstract: Ensuring public safety in densely populated urban environments remains a critical challenge, necessitating the deployment of intelligent and automated video surveillance systems. Traditional surveillance approaches rely heavily on manual monitoring, which is inefficient and susceptible to human fatigue, delayed response, and observational errors. To overcome these limitations, this work presents a real-time object detection-based surveillance...

arXiv CS 5d ago

A Grammar of Machine Learning Workflows: Rejecting Data Leakage at Call Time

arXiv:2603.10742v4 Announce Type: replace Abstract: Data leakage has been identified in 648 published papers across 30 scientific fields. The knowledge to prevent it has existed for over a decade; the problem persists because the tools do not enforce what the textbooks teach. This paper presents a grammar (eight typed primitives connected by a directed acyclic graph with four hard constraints) that makes the most damaging leakage types structurally unrepresentable within the grammar's scope.

arXiv CS 8d ago

Machine-Learning Emulation of Satellite Greenhouse Gas Retrievals: Stability over Time

arXiv:2606.09313v1 Announce Type: new Abstract: Retrieval algorithms are used to estimate atmospheric concentrations of greenhouse gases (GHGs), such as carbon dioxide (CO2) and methane (CH4), by solving inverse problems from high-spectral-resolution satellite radiance measurements. However, these algorithms are computationally expensive, which makes real-time estimation at scale difficult. Machine-learning models have therefore been proposed as fast emulators of retrieval algorithms.

arXiv CS 1d ago

Beyond Gradient Descent: Adam for Analog Ising Machines

Announce Type: cross Abstract: As Moore's law reaches its limits, Ising machines offer a promising alternative computing approach for difficult optimization problems. However, many analog, time-continuous Ising machines rely on gradient-descent-like dynamics to find solutions, which can limit speed and robustness.

arXiv CS 7d ago

Beyond Gradient Descent: Adam for Analog Ising Machines

Announce Type: new Abstract: As Moore's law reaches its limits, Ising machines offer a promising alternative computing approach for difficult optimization problems. However, many analog, time-continuous Ising machines rely on gradient-descent-like dynamics to find solutions, which can limit speed and robustness.

arXiv Physics 7d ago

GPT-Micro: A large language paradigm for accelerated, inexpensive, and thermodynamics-consistent discovery of constitutive models in manufacturing

arXiv:2606.08238v1 Announce Type: new Abstract: Constitutive modeling of the relationship between process-imposed material states and fundamental material properties is critical to control of material microstructure in manufacturing processes. The limited accuracy resulting from the typical reliance on fallible human expertise and intuition for postulation and revision of the models functional form results in incremental and time consuming model discovery. Conventional Machine Learning (ML)...

arXiv CS 1d ago