A Deep learning library for neutrino telescopes
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Updated
Feb 24, 2026 - Python
A Deep learning library for neutrino telescopes
Tree-level completions of LNV operators for neutrino-mass model building
Scalable Particle Imaging with Neural Embeddings
Application of ML for Neutrino Physics experiment LEGEND-200
Geometric Information Field Theory. 33 SM predictions from pure topology. 0.24% mean deviation. Zero free parameters. open source, Lean 4 verified, falsifiable.
Cosmological applications of the SymC framework. Applies χ ≈ 1 stability principles to universe-scale phenomena including cosmic acceleration onset, black hole thermodynamics, and cyclical cosmology. Demonstrates framework consistency from quantum boundaries to cosmic structure.Retry
An open source machine learning framework that provides predictions for all-energy neutrino structure functions.
Tensor based engine for calculating neutrino oscillation probabilities in a fast, flexible, and differentiable way
Convolutional networks (and CapsNET) for SuperNEMO tracker
Reconstruction library for a 3D LiquidO detector
Python-based charge propagation model for gaseous particle detectors
Fast & accurate three-flavor neutrino oscillation probabilities in Rust/Zig. Port of NuFast by Denton & Parke. ~60ns vacuum, ~95ns matter.
Empirical observation: Standard Model flavor mixing parameters (CKM, PMNS, Weinberg angle) expressed using simple fractions with 3, 11, and 13. Falsifiable predictions for JUNO/DUNE.
Monte Carlo based generator of neutrino induced dimuon events. Simulates muons from heavy quark (charm) production and Trident production. Container with all software dependencies provided for future developments.
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