Aws Lambda WorkshopSome incremental examples suitable to host an AWS Lambda Functions workshop
Stars: ✭ 18 (-99.95%)
Tensorflow TutorialTensorflow tutorial from basic to hard, 莫烦Python 中文AI教学
Stars: ✭ 4,122 (-87.75%)
Tns Restful Json ApiThis is the code repository that goes along with the "TheNewStack" article for RESTful JSON API post
Stars: ✭ 846 (-97.49%)
Deno Tutorial:sauropod: 长期更新的《Deno 钻研之术》!循序渐进学 Deno & 先易后难补 Node & 面向未来的 Deno Web 应用开发
Stars: ✭ 667 (-98.02%)
TutorialJava全栈知识架构体系总结
Stars: ✭ 407 (-98.79%)
MoaMOA is an open source framework for Big Data stream mining. It includes a collection of machine learning algorithms (classification, regression, clustering, outlier detection, concept drift detection and recommender systems) and tools for evaluation.
Stars: ✭ 409 (-98.78%)
Actionaicustom human activity recognition modules by pose estimation and cascaded inference using sklearn API
Stars: ✭ 404 (-98.8%)
HelpersHandy helper classes, tutorials, etc. for developers
Stars: ✭ 400 (-98.81%)
Wtte RnnWTTE-RNN a framework for churn and time to event prediction
Stars: ✭ 654 (-98.06%)
Nlp TutorialsSimple implementations of NLP models. Tutorials are written in Chinese on my website https://mofanpy.com
Stars: ✭ 394 (-98.83%)
How2exploit binaryAn in depth tutorial on how to do binary exploitation
Stars: ✭ 398 (-98.82%)
Python TutorialA Python 3 programming tutorial for beginners.
Stars: ✭ 647 (-98.08%)
Awesome NuxtA curated list of awesome things related to Nuxt.js
Stars: ✭ 4,285 (-87.26%)
Nginx Tutorial这是一个 Nginx 极简教程,目的在于帮助新手快速入门 Nginx。
Stars: ✭ 845 (-97.49%)
KymatioWavelet scattering transforms in Python with GPU acceleration
Stars: ✭ 396 (-98.82%)
FeaturetoolsAn open source python library for automated feature engineering
Stars: ✭ 5,891 (-82.49%)
FoxcrossAsyncIO serving for data science models
Stars: ✭ 18 (-99.95%)
Dl topicsList of DL topics and resources essential for cracking interviews
Stars: ✭ 392 (-98.83%)
Node Blog🚀《Node.js从入门到上线》A blog build with Koa2.
Stars: ✭ 640 (-98.1%)
Pattern classificationA collection of tutorials and examples for solving and understanding machine learning and pattern classification tasks
Stars: ✭ 3,880 (-88.47%)
BootstrapRepository for my tutorial course: Bootstrap 3 Essential Training on LinkedIn Learning and Lynda.com.
Stars: ✭ 14 (-99.96%)
Machine Learning Octave🤖 MatLab/Octave examples of popular machine learning algorithms with code examples and mathematics being explained
Stars: ✭ 637 (-98.11%)
JuliabasicsThe open source version of book `Julia Programming Basics`
Stars: ✭ 387 (-98.85%)
Machine Learning CollectionA resource for learning about ML, DL, PyTorch and TensorFlow. Feedback always appreciated :)
Stars: ✭ 883 (-97.38%)
The holy book of x86A simple guide to x86 architecture, assembly, memory management, paging, segmentation, SMM, BIOS....
Stars: ✭ 577 (-98.28%)
OpenvimInteractive tutorial for Vim.
Stars: ✭ 383 (-98.86%)
MarksheetFree tutorial to learn HTML and CSS
Stars: ✭ 893 (-97.35%)
SktimeA unified framework for machine learning with time series
Stars: ✭ 4,741 (-85.91%)
BlcmodsThis is a repository for Community Mods made for the Borderlands series
Stars: ✭ 615 (-98.17%)
OnedaloneAPI Data Analytics Library (oneDAL)
Stars: ✭ 382 (-98.86%)
VectoriousLinear algebra in TypeScript.
Stars: ✭ 616 (-98.17%)
PacgoTutorial do Women Who Go POA
Stars: ✭ 17 (-99.95%)
TinyraytracerA brief computer graphics / rendering course
Stars: ✭ 3,971 (-88.2%)
Auto SklearnAutomated Machine Learning with scikit-learn
Stars: ✭ 5,916 (-82.41%)
NolearnCombines the ease of use of scikit-learn with the power of Theano/Lasagne
Stars: ✭ 940 (-97.21%)
Tdbn Stars: ✭ 5 (-99.99%)
Notecalc3NoteCalc is a handy calculator trying to bring the advantages of Soulver to the web.
Stars: ✭ 879 (-97.39%)
Osgi For Mere MortalsSample code for my "OSGi for mere mortals" presentation at ApacheCon NA 2011
Stars: ✭ 25 (-99.93%)
BaikalA graph-based functional API for building complex scikit-learn pipelines.
Stars: ✭ 573 (-98.3%)
FmatvecA fast vector/matrix library
Stars: ✭ 5 (-99.99%)
AlphapyAutomated Machine Learning [AutoML] with Python, scikit-learn, Keras, XGBoost, LightGBM, and CatBoost
Stars: ✭ 564 (-98.32%)