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Design Of Experiment PythonDesign-of-experiment (DOE) generator for science, engineering, and statistics
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Part2 Stars: ✭ 143 (-92.39%)
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Deep and machine learning projectsThis Repository contains the list of various Machine and Deep Learning related projects. Related code and data files are available inside this folder. One can go through these projects to implement them in real life for specific use cases.
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SelfconsistencyCode for the paper: Fighting Fake News: Image Splice Detection via Learned Self-Consistency
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Ml Forex PredictionPredicting Forex Future Price with Machine Learning
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Practicalai CnAI实战-practicalAI 中文版
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Machine learning for goodMachine learning fundamentals lesson in interactive notebooks
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Vmls CompanionsThese are companion notebooks written in Julia and Python for: "Introduction to Applied Linear Algebra" by Boyd and Vandenberghe.
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Dlfs codeCode for the book Deep Learning From Scratch, from O'Reilly September 2019
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Celeste.jlScalable inference for a generative model of astronomical images
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Pycaffe tutorialTutorial for pycaffe, the Python API to the Neural Network framework, Caffe
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Faster Rcnn tensorflowThis is a tensorflow re-implementation of Faster R-CNN: Towards Real-Time ObjectDetection with Region Proposal Networks.
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Visualizing cnnsUsing Keras and cats to visualize layers from CNNs
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AnimlReproduction of "Model-Agnostic Meta-Learning" (MAML) and "Reptile".
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