Inferoxy is a service for quick deploying and using dockerized Computer Vision models.

Overview

Inferoxy

codecov

What is it?

Inferoxy is a service for quick deploying and using dockerized Computer Vision models. It's a core of EORA's Computer Vision platform Vision Hub that runs on top of AWS EKS.

Why use it?

You should use it if:

  • You want to simplify deploying Computer Vision models with an appropriate Data Science stack to production: all you need to do is to build a Docker image with your model including any pre- and post-processing steps and push it into an accessible registry
  • You have only one machine or cluster for inference (CPU/GPU)
  • You want automatic batching for multi-GPU/multi-node setup
  • Model versioning

Architecture

Overall architecture

Inferoxy is built using message broker pattern.

  • Roughly speaking, it accepts user requests through different interfaces which we call "bridges". Multiple bridges can run simultaneously. Current supported bridges are REST API, gRPC and ZeroMQ
  • The requests are carefully split into batches and processed on a single multi-GPU machine or a multi-node cluster
  • The models to be deployed are managed through Model Manager that communicates with Redis to store/retrieve models information such as Docker image URL, maximum batch size value, etc.

Batching

Batching

One of the core Inferoxy's features is the batching mechanism.

  • For batch processing it's taken into consideration that different models can utilize different batch sizes and that some models can process a series of batches from a specific user, e.g. for video processing tasks. The latter models are called "stateful" models while models which don't depend on user state are called "stateless"
  • Multiple copies of the same model can run on different machines while only one copy can run on the same GPU device. So, to increase models efficiency it's recommended to set batch size for models to be as high as possible
  • A user of the stateful model reserves the whole copy of the model and releases it when his task is finished.
  • Users of the stateless models can use the same copy of the model simultaneously
  • Numpy tensors of RGB images with metadata are all going through ZeroMQ to the models and the results are also read from ZeroMQ socket

Cluster management

Cluster

The cluster management consists of keeping track of the running copies of the models, load analysis, health checking and alerting.

Requirements

You can run Inferoxy locally on a single machine or k8s cluster. To run Inferoxy, you should have a minimum of 4GB RAM and CPU or GPU device depending on your speed/cost trade-off.

Basic commands

Local run

To run locally you should use Inferoxy Docker image. The last version you can find here.

docker pull public.registry.visionhub.ru/inferoxy:v1.0.4

After image is pulled we need to make basic configuration using .env file

# .env
CLOUD_CLIENT=docker
TASK_MANAGER_DOCKER_CONFIG_NETWORK=inferoxy
TASK_MANAGER_DOCKER_CONFIG_REGISTRY=
TASK_MANAGER_DOCKER_CONFIG_LOGIN=
TASK_MANAGER_DOCKER_CONFIG_PASSWORD=
MODEL_STORAGE_DATABASE_HOST=redis
MODEL_STORAGE_DATABASE_PORT=6379
MODEL_STORAGE_DATABASE_NUMBER=0
LOGGING_LEVEL=INFO

The next step is to create inferoxy Docker network.

docker network create inferoxy

Now we should run Redis in this network. Redis is needed to store information about your models.

docker run --network inferoxy --name redis redis:latest 

Create models.yaml file with simple set of models. You can read about models.yaml in documentation

stub:
  address: public.registry.visionhub.ru/models/stub:v5
  batch_size: 256
  run_on_gpu: False
  stateless: True

Now we can start Inferoxy:

docker run --env-file .env 
	-v /var/run/docker.sock:/var/run/docker.sock \
	-p 7787:7787 -p 7788:7788 -p 8000:8000 -p 8698:8698\
	--name inferoxy --rm \
	--network inferoxy \
	-v $(pwd)/models.yaml:/etc/inferoxy/models.yaml \
	public.registry.visionhub.ru/inferoxy:${INFEROXY_VERSION}

Documentation

You can find the full documentation here

Discord

Join our community in Discord server to discuss stuff related to Inferoxy usage and development

Flexible and scalable monitoring framework

Presentation of the Shinken project Welcome to the Shinken project. Shinken is a modern, Nagios compatible monitoring framework, written in Python. It

Gabès Jean 1.1k Dec 18, 2022
ZeroMQ bindings for Twisted

Twisted bindings for 0MQ Introduction txZMQ allows to integrate easily ØMQ sockets into Twisted event loop (reactor). txZMQ supports both CPython and

Andrey Smirnov 149 Dec 08, 2022
Bugbane - Application security tools for CI/CD pipeline

BugBane Набор утилит для аудита безопасности приложений. Основные принципы и осо

GardaTech 20 Dec 09, 2022
A collection of beginner-friendly DevOps content

mansion Mansion is just a testing repo for learners to commit into open source project. These are the steps you need to learn: Please do not edit thes

Bryan Lim 62 Nov 30, 2022
Coding For Entrepreneurs 100 Jan 01, 2023
HXVM - Check Host compatibility with the Virtual Machines

HXVM - Check Host compatibility with the Virtual Machines. Features | Installation | Usage Features Takes input from user to compare how many VMs they

Aman Srivastava 4 Oct 15, 2022
Create pinned requirements.txt inside a Docker image using pip-tools

Pin your Python dependencies! pin-requirements.py is a script that lets you pin your Python dependencies inside a Docker container. Pinning your depen

4 Aug 18, 2022
A colony of interacting processes

NColony Infrastructure for running "colonies" of processes. Hacking $ tox Should DTRT -- if it passes, it means unit tests are passing, and 100% cover

23 Apr 04, 2022
A simple python application for running a CI pipeline locally This app currently supports GitLab CI scripts

🏃 Simple Local CI Runner 🏃 A simple python application for running a CI pipeline locally This app currently supports GitLab CI scripts ⚙️ Setup Inst

Tom Stowe 0 Jan 11, 2022
Autoscaling volumes for Kubernetes (with the help of Prometheus)

Kubernetes Volume Autoscaler (with Prometheus) This repository contains a service that automatically increases the size of a Persistent Volume Claim i

DevOps Nirvana 142 Dec 28, 2022
Spinnaker is an open source, multi-cloud continuous delivery platform for releasing software changes with high velocity and confidence.

Welcome to the Spinnaker Project Spinnaker is an open-source continuous delivery platform for releasing software changes with high velocity and confid

8.8k Jan 07, 2023
This is a tool to develop, build and test PHP extensions in Docker containers.

Develop, Build and Test PHP Extensions This is a tool to develop, build and test PHP extensions in Docker containers. Installation Clone this reposito

Suora GmbH 10 Oct 22, 2022
Webinar oficial Zabbix Brasil. Uma série de 4 aulas sobre API do Zabbix.

Repositório de scripts do Webinar de API do Zabbix Webinar oficial Zabbix Brasil. Uma série de 4 aulas sobre API do Zabbix. Nossos encontros [x] 04/11

Robert Silva 7 Mar 31, 2022
Deploying a production-ready Django project using Nginx and Gunicorn

django-nginx-gunicorn This project is for deploying a production-ready Django project using Nginx and Gunicorn. Running a local server of Django is no

Arash Sayareh 8 Jul 03, 2022
Automatically capture your Ookla Speedtest metrics and display them in a Grafana dashboard

Speedtest All-In-One Automatically capture your Ookla Speedtest metrics and display them in a Grafana dashboard. Getting Started About This Code This

Aaron Melton 2 Feb 22, 2022
Inferoxy is a service for quick deploying and using dockerized Computer Vision models.

Inferoxy is a service for quick deploying and using dockerized Computer Vision models. It's a core of EORA's Computer Vision platform Vision Hub that runs on top of AWS EKS.

94 Oct 10, 2022
strava-offline is a tool to keep a local mirror of Strava activities for further analysis/processing:

strava-offline Overview strava-offline is a tool to keep a local mirror of Strava activities for further analysis/processing: synchronizes metadata ab

Tomáš Janoušek 29 Dec 14, 2022
A cpp project template that uses CMake to build and Google Test / Github Actions to provide a CI

A cpp project template that uses CMake to build and Google Test / Github Actions to provide a CI

Martin Olivier 6 Nov 17, 2022
Some automation scripts to setup a deployable development database server (with docker).

Postgres-Docker Database Initializer This is a simple automation script that will create a Docker Postgres database with a custom username, password,

Pysogge 1 Nov 11, 2021
Ganeti is a virtual machine cluster management tool built on top of existing virtualization technologies such as Xen or KVM and other open source software.

Ganeti 3.0 =========== For installation instructions, read the INSTALL and the doc/install.rst files. For a brief introduction, read the ganeti(7) m

395 Jan 04, 2023