A structured review of simulation software tools: languages, integratedmodel development environments, model and algorithm libraries. Tools and softwares for different modelling and simulation paradigms (discrete-event, continuous, web-based, etc) are listed. Each hyperlink contains a brief description of the simulation software. Mathematica Codes. MNISTHOT.5.FULL: is a solution for the MNIST dataset in Mathematica, with 96.51% accuracy, based on difference of pixels. Mathematica - Artificial Intelligence Simulating Interactions in Social Networks: is a model that simulates human interactions in a social network using cellular automata and agent-based modeling. Each agent has 3 possible choices for interation and a.
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