Use hodge decomposition for trajectory analysis
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Updated
May 11, 2026 - Python
Use hodge decomposition for trajectory analysis
Full spectrum sheaf neural network over arbitrary CW complexes.
Research-grade PyTorch math: differential geometry, spectral graph theory, discrete Ricci flow, simplicial topology, persistent homology, cellular sheaves, SO(3) Lie primitives, information geometry, tensor decompositions, content-addressable provenance. GPU-native, batched-first, audit-clean, cited.
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