Calendar of Events
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Basudeb Dasgupta: Probing Dark Matter with Low-Mass Black Holes
Basudeb Dasgupta: Probing Dark Matter with Low-Mass Black Holes
Heavy non-annihilating dark matter captured by neutron stars can trigger collapse into low-mass black holes, producing subsolar-mass mergers detectable by gravitational wave observatories. These events probe dark matter-nucleon interactions at cross-sections below the neutrino floor and dark matter masses from … Read More
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Damir Bečirević: Why the radiative decays of quarkonia are important
Damir Bečirević: Why the radiative decays of quarkonia are important
TBA https://indico.ijs.si/event/3046/
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Ryan Plestid: Detecting dark matter with a picogram detector
Ryan Plestid: Detecting dark matter with a picogram detector
Dark matter direct detection is dominated by a landscape of macroscopic detectors. How then can quantum sensors, such as an atom interferometer compete? In this talk I will outline recent work on how large coherent enhancements amplify dark matter signals … Read More
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Jose Espinosa: Surprises in Vacuum Decay
Jose Espinosa: Surprises in Vacuum Decay
In the standard lore the decay of the false vacuum of a single-field potential is described by a semi-classical Euclidean bounce configuration that can be found using overshoot/undershoot algorithms, and whose action suppresses exponentially the decay rate. While this is generically correct, the … Read More
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Santiago Tanco: Bayesian tools for the LHC: a proof of concept in di-Higgs searches
Santiago Tanco: Bayesian tools for the LHC: a proof of concept in di-Higgs searches
Extracting reliable physical information from collider data requires a combination of mathematical, computational and statistical tools to model observed distributions, often with the help of powerful simulations. But when simulations cannot be fully trusted, data-driven approaches become indispensable. In this … Read More

