Machine Learning Workflow With PythonThis is a comprehensive ML techniques with python: Define the Problem- Specify Inputs & Outputs- Data Collection- Exploratory data analysis -Data Preprocessing- Model Design- Training- Evaluation
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Tensorflow 101TensorFlow 101: Introduction to Deep Learning for Python Within TensorFlow
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Kaggle CompetitionsThere are plenty of courses and tutorials that can help you learn machine learning from scratch but here in GitHub, I want to solve some Kaggle competitions as a comprehensive workflow with python packages. After reading, you can use this workflow to solve other real problems and use it as a template.
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Teacher Student TrainingThis repository stores the files used for my summer internship's work on "teacher-student learning", an experimental method for training deep neural networks using a trained teacher model.
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SegmentationTensorflow implementation : U-net and FCN with global convolution
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Unet TgsApplying UNET Model on TGS Salt Identification Challenge hosted on Kaggle
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Tbd NetsPyTorch implementation of "Transparency by Design: Closing the Gap Between Performance and Interpretability in Visual Reasoning"
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Machine Learning And Data ScienceThis is a repository which contains all my work related Machine Learning, AI and Data Science. This includes my graduate projects, machine learning competition codes, algorithm implementations and reading material.
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Cikm 2019 Analyticup1st Solution for 2019-CIKM-Analyticup, Efficient and Novel Item Retrieval for Large-scale Online Shopping Recommendation
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DeltapyDeltaPy - Tabular Data Augmentation (by @firmai)
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argus-tgs-saltKaggle | 14th place solution for TGS Salt Identification Challenge
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Ner BertBERT-NER (nert-bert) with google bert https://github.com/google-research.
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StoreItemDemand(117th place - Top 26%) Deep learning using Keras and Spark for the "Store Item Demand Forecasting" Kaggle competition.
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Fast PytorchPytorch Tutorial, Pytorch with Google Colab, Pytorch Implementations: CNN, RNN, DCGAN, Transfer Learning, Chatbot, Pytorch Sample Codes
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HumanOrRobota solution for competition of kaggle `Human or Robot`
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kaggler🏁 API client for Kaggle
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Painters🎨 Winning solution for the Painter by Numbers competition on Kaggle.
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Data Science Bowl 2018DATA-SCIENCE-BOWL-2018 Find the nuclei in divergent images to advance medical discovery
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digit recognizerCNN digit recognizer implemented in Keras Notebook, Kaggle/MNIST (0.995).
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Deeplearning.ai NotesThese are my notes which I prepared during deep learning specialization taught by AI guru Andrew NG. I have used diagrams and code snippets from the code whenever needed but following The Honor Code.
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DrqDrQ: Data regularized Q
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mrnetBuilding an ACL tear detector to spot knee injuries from MRIs with PyTorch (MRNet)
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kaggleKaggle solutions
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MlpracticalMachine Learning Practical course repository
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Pytorch Nlp NotebooksLearn how to use PyTorch to solve some common NLP problems with deep learning.
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Cs231Complete Assignments for CS231n: Convolutional Neural Networks for Visual Recognition
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DabData Augmentation by Backtranslation (DAB) ヽ( •_-)ᕗ
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GdrlGrokking Deep Reinforcement Learning
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ProbabilityProbabilistic reasoning and statistical analysis in TensorFlow
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SuperviselyAI for everyone! 🎉 Neural networks, tools and a library we use in Supervisely
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Qh finsight国内首个迁移学习赛题 中国平安前海征信“好信杯”迁移学习大数据算法大赛 FInSight团队作品(算法方案排名第三)
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