LfortranOfficial mirror of https://gitlab.com/lfortran/lfortran. Please submit pull requests (PR) there. Any PR sent here will be closed automatically.
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Vqa demoVisual Question Answering Demo on pretrained model
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DragonnA toolkit to learn how to model and interpret regulatory sequence data using deep learning.
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Scikit GeometryScientific Python Geometric Algorithms Library
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Poretoolsa toolkit for working with Oxford nanopore data
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NaviganNavigating the GAN Parameter Space for Semantic Image Editing
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Theano TutorialA collection of tutorials on neural networks, using Theano
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MelusineMelusine is a high-level library for emails classification and feature extraction "dédiée aux courriels français".
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Gan steerabilityOn the "steerability" of generative adversarial networks
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PaperboyA web frontend for scheduling Jupyter notebook reports
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Set transformerPytorch implementation of set transformer
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Gan TutorialSimple Implementation of many GAN models with PyTorch.
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Covid 19Ciência de Dados aplicada à pandemia do novo coronavírus.
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Ipython NotebooksA collection of IPython notebooks covering various topics.
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Zoom Learn Zoomcomputational zoom from raw sensor data
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Sklearn pycon2014Repository containing files for my PyCon 2014 scikit-learn tutorial.
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18s09618.S096 three-week course at MIT
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TutorialTutorial covering Open Source tools for Source Separation.
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Text summarization with tensorflowImplementation of a seq2seq model for summarization of textual data. Demonstrated on amazon reviews, github issues and news articles.
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Sohu competitionSohu's 2018 content recognition competition 1st solution(搜狐内容识别大赛第一名解决方案)
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SkyliftWi-Fi Geolocation Spoofing with the ESP8266
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Source separationDeep learning based speech source separation using Pytorch
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Video to bvhConvert human motion from video to .bvh
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Dat7General Assembly's Data Science course in Washington, DC
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Lrp toolboxThe LRP Toolbox provides simple and accessible stand-alone implementations of LRP for artificial neural networks supporting Matlab and Python. The Toolbox realizes LRP functionality for the Caffe Deep Learning Framework as an extension of Caffe source code published in 10/2015.
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Triplet AttentionOfficial PyTorch Implementation for "Rotate to Attend: Convolutional Triplet Attention Module." [WACV 2021]
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DatascienceprojectsThe code repository for projects and tutorials in R and Python that covers a variety of topics in data visualization, statistics sports analytics and general application of probability theory.
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OwnphotosSelf hosted alternative to Google Photos
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NemoNeMo: a toolkit for conversational AI
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SecSeed, Expand, Constrain: Three Principles for Weakly-Supervised Image Segmentation
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HtmresearchExperimental algorithms. Unsupported.
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Dl For ChatbotDeep Learning / NLP tutorial for Chatbot Developers
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Example ScriptsExample Machine Learning Scripts for Numerai's Tournament
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MachinelearningwithpythonStarter files for Pluralsight course: Understanding Machine Learning with Python
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Pytorch Handbookpytorch handbook是一本开源的书籍,目标是帮助那些希望和使用PyTorch进行深度学习开发和研究的朋友快速入门,其中包含的Pytorch教程全部通过测试保证可以成功运行
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Decaf ReleaseDecaf is DEPRECATED! Please visit http://caffe.berkeleyvision.org/ for Caffe, the new framework that has all the good things: GPU computation, full train/test scripts, native C++, and an active community!
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Image classification with 5 methodsCompared performance of KNN, SVM, BPNN, CNN, Transfer Learning (retrain on Inception v3) on image classification problem. CNN is implemented with TensorFlow
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Tf VqvaeTensorflow Implementation of the paper [Neural Discrete Representation Learning](https://arxiv.org/abs/1711.00937) (VQ-VAE).
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