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22949 results found for tag:"3d".
2601234348326
Nuevos Sistemas para Impresoras 3D de Resina, Metalicas y de Polimeros
01/23/2026
Santos Antonio Fraustro Solis
Nuevos Sistemas para Impresoras 3D de Resina, Metalicas y de Polimeros que aun no existen en el Mercado tengo Arte Previo desde 2023 y hoy es 23 de Enero del 2025
All rights reserved
Fourth Draft In this work, we present a Geometric Causal Model, a framework for the causal analysis of biological pathways through their systematic conversion into a combinatorial DAG and subsequent embedding in a three-dimensional geometric space. Within this framework, nodes are represented by coordinates defined by causal dependency, causal effect, and hierarchical causal depth, enabling causal relationships to be analyzed in terms of directions, angles, and magnitudes of causal flow. The proposed methodology starts from a signaling pathway and proceeds with a graph-theoretical decomposition of the resulting Directed Acyclic Graph (hereinafter DAG) into vertical (hierarchical) and retrolateral (cross-edge) subgraphs. These structures are then transformed into a three-dimensional topological representation and into a topoempirical geometric model by incorporating statistical information derived from empirical data through controlled geometric transformations. Causal validation is performed through direct comparison with the gold-standard study of Sachs et al. (2005), focusing on two competing structural scenarios: one in which a previously reported absent edge is enforced and another in which it remains excluded. The impact of this choice is assessed by analyzing changes in local conditional independence patterns and in the structural coherence of the inferred causal graph. The geometric embedding further enables a topological closure of causal directions through a toroidal representation (torification), which provides a criterion for evaluating global causal coherence. This closure is not a trivial property, but emerges from the joint configuration of the graph, particularly the organization of the retrolateral subgraph. The causal flow remains globally directed and confined within the modeled functional domain, without introducing external dependencies or causal loops.
Creative Commons Attribution-NonCommercial 4.0
2601074209085
Kiss me Licia (3D) locandina
01/07/2026
Stefano Ercolino
Locandina grafica creata da Stefano Ercolino. Data creazione: 7 Gennaio 2026. Formato risoluzione: 1280x720 pixel.
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2512063949144
La Alhambra Interactiva – Experiencias Educativas 3D y VR para Niños
12/06/2025
Miguel Gallardo Cortés
Documento descriptivo del concepto original del proyecto educativo interactivo basado en la Alhambra de Granada, incluyendo narrativa, mecánicas de juego, estética visual y estructura de experiencias.
Creative Commons Attribution-NonCommercial-NoDerivatives 4.0
2512043933088
Causal Geometric Inference - Version 3 (Third Draft)
12/04/2025
david Graupere Villà
Causal Geometric Inference is a computational method designed to evaluate causal consistency and geometric coherence within Directed Acyclic Graphs (DAGs). It integrates 3D regression (via SVD), local geometric testing (localGeomTest()), and information-theoretic coherence metrics. Developed as part of the methodological exploration of causal structure validation in bioinformatics and systems biology.
Creative Commons Attribution-NonCommercial 4.0
2511243810793
pantalla-android-citroen-berlingo
11/24/2025
An5ia
Modelo 3D diseñado por mí de un soporte que permite adaptar una radio con pantalla en el salpicadero de un Citröen Berlingo o Peugeot Partner.
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