Highlights
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Repository for sample controller. Complements sample-apiserver
Golang package for generating API documentation from httptest. See example output
a web application performance improvement training
Dapr is a portable, event-driven, runtime for building distributed applications across cloud and edge.
Production-Grade Container Scheduling and Management
Easy and Repeatable Kubernetes Development
Serve, optimize and scale PyTorch models in production
The largest collection of PyTorch image encoders / backbones. Including train, eval, inference, export scripts, and pretrained weights -- ResNet, ResNeXT, EfficientNet, NFNet, Vision Transformer (V…
Pure bash script to test and wait on the availability of a TCP host and port
Build Better Websites. Create modern, resilient user experiences with web fundamentals.
Super simple build framework with fast, repeatable builds and an instantly familiar syntax – like Dockerfile and Makefile had a baby.
Natural Gradient Boosting for Probabilistic Prediction
GoMock is a mocking framework for the Go programming language.
Probabilistic reasoning and statistical analysis in TensorFlow
Fast, testable, Scala services built on TwitterServer and Finagle
The Go language implementation of gRPC. HTTP/2 based RPC
Sample apps and code written for Google Cloud in the Go programming language.
Package gorilla/mux is a powerful HTTP router and URL matcher for building Go web servers with 🦍
Bayesian Deep Learning Benchmarks
High-quality implementations of standard and SOTA methods on a variety of tasks.
Gin is a HTTP web framework written in Go (Golang). It features a Martini-like API with much better performance -- up to 40 times faster. If you need smashing performance, get yourself some Gin.
Posterior Network: Uncertainty Estimation without OOD Samples via Density-Based Pseudo-Counts (Neurips 2020)
Code to accompany the paper Radial Bayesian Neural Networks: Beyond Discrete Support In Large-Scale Bayesian Deep Learning
Code to accompany the paper 'Improving model calibration with accuracy versus uncertainty optimization'.