In the B³D-HPV paradigm, matrix inversion is no longer a high-complexity silicon computation, but a physical collapse of the Hermitian Adjoint operator. By leveraging the geometric nature of polarization, we achieve near-zero latency inversion through optical conjugation. In the B³D-HPV (Physics-based Volumetric Logic) paradigm, we move away from the high-complexity iterative processes of silicon-based logic. Instead, we treat mathematical operations as geometric projections and physical state collapses. 1. Matrix Inversion: The "Physical Collapse" In traditional computing, inverting a matrix M requires O (n³) complexity (e. g. , Gaussian elimination). In our photonic architecture, we leverage the Unitary nature of polarized optical flow. The Logic: If a transformation matrix M is represented by a series of lossless polarization rotations (Unitary transformations), then its inverse M⁻¹ is simply its Hermitian Adjoint M† (the conjugate transpose). The Implementation: In B³D-HPV, "calculating" the inverse is not an arithmetic operation, but a Symmetry Transformation. By reversing the polarization state or utilizing the geometric reciprocity of the quartz lattice, the inversion occurs as a near-zero latency physical collapse. 6 The Advantage: We achieve O (1) complexity. The answer is not "computed"; it is "revealed" by the physical symmetry of the optical field. 2. The Polarization Adder (POLADD) Photonic addition is naturally handled by the Principle of Superposition. Principle: When two incoherent light fields I₁ and I₂ are combined into the same spatial mode (e. g. , through a Beam Combiner), the resulting intensity is a direct summation. Vector Mapping: By mapping data values to the intensity or the amplitude of polarized wave-fronts, the hardware performs massive parallel addition simply by letting the light paths merge within the 3D quartz structure. 3. The Polarization Subtractor (POLSUB) Subtraction is the historical "Achilles' heel" of incoherent optical computing, as light intensity cannot be negative. B³D-HPV solves this via Geometric Projection Mapping. The Mechanism: Instead of trying to "cancel" photons (which requires unstable phase interference), we use Polarization Orthogonality. Process: Encoding: Map the minuend (A) to the Horizontal axis (0°) and the subtrahend (B) to the Vertical axis (90°). Rotation: The SLM executes a POLTRANS instruction, rotating the composite polarization vector by a specific angle θ. Projection: We use a Polarization Sensitive Detector (or a PBS) to extract the projected components. By measuring the difference in intensity between the two orthogonal projections, we physically extract the value A − B. Result: This is a Robust Subtraction. Unlike phase-based destructive interference, it is immune to thermal phase drift because it relies on the rigid geometric orientation of the polarization states. Summary: Geometry vs. Arithmetic Addition — Silicon (Digital): Gates B³D-HPV (Geometric): Superposition (O (1) ) Subtraction — Silicon (Digital): Two's Complement; B³D-HPV (Geometric): Orthogonal Projection Inversion — Silicon (Digital): Iterative Loops (O (n³) ) ; B³D-HPV (Geometric): Hermitian Collapse (O (1) ) By defining these as Physical Mapping Instructions (PDMM), we turn the quartz lattice into a high-dimensional geometric computer where the "logic" is simply the evolution of the light field's geometry. Key Updates the front-end high-speed comparators are equipped with software-programmable Vref to support dynamic AGI sensitivity adjustment. 2. Polarization Incoherent Computing Paradigm Abandons phase interference for high robustness, with the core advantage of spatial topology replacing temporal phase: - Logic states are mapped to Poincaré sphere coordinates, and polarization evolution follows unitary matrix rules with inverse computation via physical conjugate transposition. - Computation is realized via UV/IR-induced local anisotropy instead of phase superposition, doubling the initial parallelism compared with single-phase schemes. - Maintains high SNR even with thermal drift through 5-channel differential PD noise suppression and programmable Vref threshold calibration, eliminating the need for precision environmental control and expensive anti-vibration platforms. 3. Multi-Method Virtual Waveguide Writing Multiple refractive index gradient induction strategies are supported, selectable or combinable, all compatible with unitary polarization manifold computing: 4. UV/IR cross-modulation (native core method) 5. Photothermal-assisted writing 6. Photo-induced refractive index (PRI) enhancement 7. Multi-wavelength IR cooperative confinement 8. Voxel-level array superposition 9. Software-Defined Layer: Topology Equivalence & Self-Healing Control The core paradigm of "flexible logical topology" is formalized with three key algorithms, supporting real-time calibration for polarization evolution stability and software-controlled AGI sensitivity adjustment: - Optical Homing: SLM-to-voxel dynamic mapping via blind scanning and trilateration. - Self-Organizing Routing: Reinforcement learning-based path formation via PD feedback with programmable Vref threshold. - Vector Lock-loop: Real-time polarization correction via Stokes parameter monitoring, synchronously calibrating the comparator Vref to match AGI task requirements. 5. Photonics HLS: From High-Level Language to Physical Collapse Defines the complete compilation flow, directly mapping PDMM unitary polarization operators to Optical ISA, and integrating AGI sensitivity adjustment into the optical instruction set: 6. Human layer: Logical abstraction and Optical ISA definition (compatible with POL/TM series operators, adding sensitivity adjustment instructions). 7. Silicon layer: Topological sketching and linear mapping, converting sensitivity requirements into comparator Vref calibration parameters. 8. SLM layer: Parallel execution and runtime verification, synchronizing Vref adjustment with polarization operator implantation. - Supports both static curing (photonics FPGA) and streaming trigger (dynamic processor) modes, with a recommended "static skeleton + dynamic fine-tuning" hybrid, and dynamic Vref adjustment is compatible with both operating modes. 6. Core Value & Future Directions - Simplified, robust, software-defined, and mass-production-ready, with O (1) time complexity for unitary matrix inverse computation and software-programmable AGI computing sensitivity via comparator Vref adjustment. - Future work includes ISA development with complete sensitivity adjustment instruction sets, millisecond rerouting, prototype integration, waveguide writing method optimization for polarization computing, and dynamic sensitivity matching algorithm optimization for complex AGI tasks.
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Xiangning Chen
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Xiangning Chen (Tue,) studied this question.
synapsesocial.com/papers/69f6e5618071d4f1bdfc6071 — DOI: https://doi.org/10.5281/zenodo.19952091
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