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Starred repositories
Papers from the computer science community to read and discuss.
Run macOS VM in a Docker! Run near native OSX-KVM in Docker! X11 Forwarding! CI/CD for OS X Security Research! Docker mac Containers.
📙 Amazon Web Services — a practical guide
Git extensions to provide high-level repository operations for Vincent Driessen's branching model.
🚀✨ Minimalistic, powerful and extremely customizable Zsh prompt
A curated list for awesome kubernetes sources 🚢🎉
kaldi-asr/kaldi is the official location of the Kaldi project.
Caffe2 is a lightweight, modular, and scalable deep learning framework.
Curated list of resources about Apache Airflow
Unofficial FAQ and everything you've been wondering about Google Cloud Run.
TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision
Microservice native message and event store for Postgres
ETL best practices with airflow, with examples
Easier React Native upgrades by clearly exposing changes from a version to another. 🚀 And what better way than to purge, init, then diff? Spoiler: there's no better way. 😎
Easier React Native upgrades by clearly expose changes from a version to another. 🚀
Central place for the engineering/scaling WG: documentation, SLURM scripts and logs, compute environment and data.
Cross Stage Partial Networks
The official homepage of the COCO-Stuff dataset.
Dataset with 5 million images depicting human-made and natural landmarks spanning 200 thousand classes.
This guide should help fellow researchers and hobbyists to easily automate and accelerate there deep leaning training with their own Kubernetes GPU cluster.
Conceptual Captions is a dataset containing (image-URL, caption) pairs designed for the training and evaluation of machine learned image captioning systems.
Files to create the figures in the paper "Super-Convergence: Very Fast Training of Residual Networks Using Large Learning Rates"