Dev PortalThe SingularityNET Developer Portal where you can find all our documentation, tutorials, and developer resources!
Stars: ✭ 81 (-11.96%)
PythonfordesignersAn introductory manual to Python3 and DrawBot built with Lektor
Stars: ✭ 81 (-11.96%)
Ml Audio StartSuggestions for those interested in developing audio applications of machine learning
Stars: ✭ 87 (-5.43%)
Pascal Voc PythonRepository for reading Pascal VOC data in Python, rather than requiring MATLAB to read the XML files.
Stars: ✭ 86 (-6.52%)
Learn Ml BasicsA collection of resources that should help and guide your first steps as you learn ML and DL. I am a beginner as well, and these are the resources I found most useful.
Stars: ✭ 93 (+1.09%)
FnnEmbed strange attractors using a regularizer for autoencoders
Stars: ✭ 81 (-11.96%)
CaffeonsparkDistributed deep learning on Hadoop and Spark clusters.
Stars: ✭ 1,272 (+1282.61%)
Style SemanticsCode for the paper "Controlling Style and Semantics in Weakly-Supervised Image Generation", ECCV 2020
Stars: ✭ 81 (-11.96%)
Deep Dream In PytorchPytorch implementation of the DeepDream computer vision algorithm
Stars: ✭ 90 (-2.17%)
Awesome Tech Talks🎓 🎬 An opinionated list of awesome videos related to IT / development topics, with a focus on training and gaining hands-on experience.
Stars: ✭ 80 (-13.04%)
Mimic CodeMIMIC Code Repository: Code shared by the research community for the MIMIC-III database
Stars: ✭ 1,225 (+1231.52%)
Attention TransferImproving Convolutional Networks via Attention Transfer (ICLR 2017)
Stars: ✭ 1,231 (+1238.04%)
LogohunterDeep learning tool to find brand logos in everyday pictures
Stars: ✭ 90 (-2.17%)
Machine LearningCode & Data for Introduction to Machine Learning with Scikit-Learn
Stars: ✭ 80 (-13.04%)
Python For Data ScientistsDeliverable: This Jupyter notebook will help aspiring data scientists learn and practice the necessary python code needed for many data science projects.
Stars: ✭ 86 (-6.52%)
Gold feverA Treasure Hunt for Erlangers
Stars: ✭ 80 (-13.04%)
Book Code《深度学习之PyTorch实战计算机视觉》全书代码
Stars: ✭ 92 (+0%)
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.
Stars: ✭ 86 (-6.52%)
WotanAutomagically remove trends from time-series data
Stars: ✭ 86 (-6.52%)
IntrodatasciCourse materials for: Introduction to Data Science and Programming
Stars: ✭ 86 (-6.52%)
100 page python intro🐍 Short, introductory guide for the Python programming language 📗 ⚡️
Stars: ✭ 90 (-2.17%)
ExportifyExport Spotify playlists using the Web API. Analyze them in the Jupyter notebook.
Stars: ✭ 80 (-13.04%)
Sphinx Book ThemeA lightweight book theme built off of the pydata sphinx theme
Stars: ✭ 86 (-6.52%)
Alexandria Library📝 My method to capture, study, and recall interesting knowledge
Stars: ✭ 80 (-13.04%)
VulcanRISC-V Instruction Set Simulator (Built for education).
Stars: ✭ 80 (-13.04%)
Training MaterialA collection of code examples as well as presentations for training purposes
Stars: ✭ 85 (-7.61%)
Python3 Cookbook《Python Cookbook》 3rd Edition Translation
Stars: ✭ 9,689 (+10431.52%)
PysheafPython Cellular Sheaf Library
Stars: ✭ 89 (-3.26%)
IntrostatlearnExercises from 'Introduction to Statistical Learning with Applications in R' written in Python.
Stars: ✭ 79 (-14.13%)
ChecklistBeyond Accuracy: Behavioral Testing of NLP models with CheckList
Stars: ✭ 1,290 (+1302.17%)