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DTSTART:20240101T000000
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DTSTART;TZID=UTC:20251022T150000
DTEND;TZID=UTC:20251022T160000
DTSTAMP:20260412T204115
CREATED:20250829T132253Z
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UID:4956-1761145200-1761148800@aichemy.ac.uk
SUMMARY:AIchemy’s Monthly Webinar Series - Oct 25
DESCRIPTION:KEY DETAILS\n\n\n\n\nDATE22 October 2025 TIME15:00 – 16:00 COSTFree \n\n\n\n\n\n\nRECORDINGSClick the YouTube links below to watch each session. \n\n\n\n\nEnergy and forces are all you need Device-scale simulations of memory materials enabled by fast and accurate interatomic potentials \n\n\n\n\n\n\n\n\nWe are delighted to welcome you to our AIchemy Hub’s monthly webinar series. \n\n\n\nThis month’s talks:Prof. Bingqing Cheng – UC BerkeleyTalk Title: Energy and forces are all you need \n\n\n\nStandard machine learning interatomic potentials (MLIPs) often rely on short-range approximations\, limiting their applicability to systems with significant electrostatics. We recently introduced the Latent Ewald Summation (LES) method\, which learns long-range electrostatics from *just energy and force data*. We show that LES can effectively infer physical partial charges\, polarization and Born effective charge (BEC) tensors\, as well as achieve better accuracy compared to methods that explicitly learn charges. As demonstrations\, we predict the infrared spectra of bulk water under zero or finite external electric fields\, ionic conductivities of high-pressure superionic ice\, and the phase transition and hysteresis in ferroelectric PbTiO3 perovskite.  \n\n\n\nYuxing Zhou – University of OxfordTalk Title: Device-scale simulations of memory materials enabled by fast and accurate interatomic potentials \n\n\n\nAtomistic simulations play an important role in understand fundamental properties and working mechanisms of phase-change materials (PCM)-based devices. Our recent work has shown that machine-learning (ML)-driven molecular dynamics simulations enable accurate description of Ge–Sb–Te alloys\, particularly for compounds on the GeTe–Sb2Te3 tie-line (GST)1. Using an ML potential based on the Gaussian approximation potential (GAP) framework\, we demonstrate a device-scale RESET (“1→0”) simulation over 50 ps in a device-scale model of 532\,980 atoms (corresponding to a real device size of 40 × 20 × 20 nm3; Fig. 1). However\, realistic switching operations in GST devices usually take tens of nanoseconds. More importantly\, non-isothermal conditions are prominent in GST devices\, which can lead to distinct SET or RESET states as compared to isothermal conditions\, thus complicating accurate modelling of phase transitions in real devices.In this talk\, I will demonstrate full-cycle device-scale simulations of GST devices under realistic programming conditions. I will introduce a new ML potential based on the Atomic Cluster Expansion (ACE) framework2. The new ACE potential is more than 400 times faster than the GAP potential\, which enables full-loop simulations (multiple RESET to SET operations) of cross-point and mushroom-type devices at extensive length scales (involving sub-million atoms) and time scales (tens of nanoseconds). Next\, I will present a new simulation protocol that describes non-isothermal conditions and temperature gradients of any desired level of spatiotemporal complexity. Based on these ML-driven MD simulations\, we show temperature-dependent crystallisation behaviours of GST\, elucidating the interplay between nucleation and growth under non-isothermal crystallisation in GST memory devices. This talk presents a platform for the predictive modelling of PCM-based memory devices\, and more widely\, it highlights the power of highly scalable atomistic machine-learning models for modern materials science and engineering.Following the presentations\, there will be time for questions from the audienceWe are delighted to welcome you to the first talks in the AIchemy Hub’s monthly webinar series. \n\n\n\n\n\nSpeakers\n\n\n\n\n\nProf. Bingqing Cheng Professor of Chemistry\n\n\n\n\n\nYuxing Zhou Schmidt AI in Science Fellow at Oxford Chemistry\n\n\n\n\n\nDr. Adam ClaytonWebinar Host – Associate Professor
URL:https://aichemy.ac.uk/event/aichemys-monthly-webinar-series-oct-25/
CATEGORIES:Webinar
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