Simplify machine learning deployment for any environments.
Project description
OpenModelZ
What is OpenModelZ?
OpenModelZ ( mdz
) is tool to deploy your models to any cluster (GCP, AWS, Lambda labs, your home lab, or even a single machine).
Getting models into production is hard for data scientists and SREs. You need to configure the monitoring, logging, and scaling infrastructure, with the right security and permissions. And then setup the domain, SSL, and load balancer. This can take weeks or months of work even for a single model deployment.
You can now use mdz deploy to effortlessly deploy your models. OpenModelZ handles all the infrastructure setup for you. Each deployment gets a public subdomain, like http://jupyter-9pnxd.2.242.22.143.modelz.live
, making it easily accessible.
Benefits
OpenModelZ provides the following features out-of-the-box:
- ๐ Auto-scaling from 0: The number of inference servers could be scaled based on the workload. You could start from 0 and scale it up to 10+ replicas easily.
- ๐ฆ Support any machine learning framework: You could deploy any machine learning framework (e.g. vLLM/triton-inference-server/mosec etc.) with a single command. Besides, you could also deploy your own custom inference server.
- ๐ฌ Gradio/Streamlit/Jupyter support: We provide a robust prototyping environment with support for Gradio, Streamlit, jupyter and so on. You could visualize your model's performance and debug it easily in the notebook, or deploy a web app for your model with a single command.
- ๐ Start from a single machine to a cluster of machines: You could start from a single machine and scale it up to a cluster of machines without any hassle, with a single command
mdz server start
. - ๐ Public accessible subdomain for each deployment ( optional ) : We provision a separate subdomain for each deployment without any extra cost and effort, making each deployment easily accessible from the outside.
OpenModelZ is the foundational component of the ModelZ platform available at modelz.ai.
How it works
Get a server (could be a cloud VM, a home lab, or even a single machine) and run the mdz server start
command. OpenModelZ will bootstrap the server for you.
$ mdz server start
๐ง Creating the server...
๐ง Initializing the load balancer...
๐ง Initializing the GPU resource...
๐ง Initializing the server...
๐ง Waiting for the server to be ready...
๐ Checking if the server is running...
๐ณ The server is running at http://146.235.213.84.modelz.live
๐ You could set the environment variable to get started!
export MDZ_URL=http://146.235.213.84.modelz.live
$ export MDZ_URL=http://146.235.213.84.modelz.live
Then you could deploy your model with a single command mdz deploy
and get the endpoint:
$ mdz deploy --image modelzai/gradio-stable-diffusion:23.03 --name sdw --port 7860 --gpu 1
Inference sd is created
$ mdz list
NAME ENDPOINT STATUS INVOCATIONS REPLICAS
sdw http://sdw-qh2n0y28ybqc36oc.146.235.213.84.modelz.live Ready 174 1/1
http://146.235.213.84.modelz.live/inference/sdw.default
Quick Start ๐
Install mdz
You can install OpenModelZ using the following command:
pip install openmodelz
You could verify the installation by running the following command:
mdz
Once you've installed the mdz
you can start deploying models and experimenting with them.
Bootstrap mdz
It's super easy to bootstrap the mdz
server. You just need to find a server (could be a cloud VM, a home lab, or even a single machine) and run the mdz server start
command.
Notice: We may require the root permission to bootstrap the
mdz
server on port 80.
$ mdz server start
๐ง Creating the server...
๐ง Initializing the load balancer...
๐ง Initializing the GPU resource...
๐ง Initializing the server...
๐ง Waiting for the server to be ready...
๐ Checking if the server is running...
Agent:
Version: v0.0.13
Build Date: 2023-07-19T09:12:55Z
Git Commit: 84d0171640453e9272f78a63e621392e93ef6bbb
Git State: clean
Go Version: go1.19.10
Compiler: gc
Platform: linux/amd64
๐ณ The server is running at http://192.168.71.93.modelz.live
๐ You could set the environment variable to get started!
export MDZ_URL=http://192.168.71.93.modelz.live
The internal IP address will be used as the default endpoint of your deployments. You could provide the public IP address of your server to the mdz server start
command to make it accessible from the outside world.
# Provide the public IP as an argument
$ mdz server start 1.2.3.4
You could also specify the registry mirror to speed up the image pulling process. Here is an example:
$ mdz server start --mirror-endpoints https://docker.mirrors.sjtug.sjtu.edu.cn
Create your first UI-based deployment
Once you've bootstrapped the mdz
server, you can start deploying your first applications. We will use jupyter notebook as an example in this tutorial. You could use any docker image as your deployment.
$ mdz deploy --image jupyter/minimal-notebook:lab-4.0.3 --name jupyter --port 8888 --command "jupyter notebook --ip='*' --NotebookApp.token='' --NotebookApp.password=''"
Inference jupyter is created
$ mdz list
NAME ENDPOINT STATUS INVOCATIONS REPLICAS
jupyter http://jupyter-9pnxdkeb6jsfqkmq.192.168.71.93.modelz.live Ready 488 1/1
http://192.168.71.93/inference/jupyter.default
You could access the deployment by visiting the endpoint URL. The endpoint will be automatically generated for each deployment with the following format: <name>-<random-string>.<ip>.modelz.live
.
It is http://jupyter-9pnxdkeb6jsfqkmq.192.168.71.93.modelz.live
in this case. The endpoint could be accessed from the outside world as well if you've provided the public IP address of your server to the mdz server start
command.
Create your first OpenAI compatible API server
You could also create API-based deployments. We will use OpenAI compatible API server with Bloomz 560M as an example in this tutorial.
$ mdz deploy --image modelzai/llm-bloomz-560m:23.07.4 --name simple-server
Inference simple-server is created
$ mdz list
NAME ENDPOINT STATUS INVOCATIONS REPLICAS
jupyter http://jupyter-9pnxdkeb6jsfqkmq.192.168.71.93.modelz.live Ready 488 1/1
http://192.168.71.93/inference/jupyter.default
simple-server http://simple-server-lagn8m9m8648q6kx.192.168.71.93.modelz.live Ready 0 1/1
http://192.168.71.93/inference/simple-server.default
You could use OpenAI python package and the endpoint http://simple-server-lagn8m9m8648q6kx.192.168.71.93.modelz.live
in this case, to interact with the deployment.
import openai
openai.api_base="http://simple-server-lagn8m9m8648q6kx.192.168.71.93.modelz.live"
openai.api_key="any"
# create a chat completion
chat_completion = openai.ChatCompletion.create(model="bloomz", messages=[
{"role": "user", "content": "Who are you?"},
{"role": "assistant", "content": "I am a student"},
{"role": "user", "content": "What do you learn?"},
], max_tokens=100)
Scale your deployment
You could scale your deployment by using the mdz scale
command.
$ mdz scale simple-server --replicas 3
The requests will be load balanced between the replicas of your deployment.
You could also tell the mdz
to autoscale your deployment based on the inflight requests. Please check out the Autoscaling documentation for more details.
Debug your deployment
Sometimes you may want to debug your deployment. You could use the mdz logs
command to get the logs of your deployment.
$ mdz logs simple-server
simple-server-6756dd67ff-4bf4g: 10.42.0.1 - - [27/Jul/2023 02:32:16] "GET / HTTP/1.1" 200 -
simple-server-6756dd67ff-4bf4g: 10.42.0.1 - - [27/Jul/2023 02:32:16] "GET / HTTP/1.1" 200 -
simple-server-6756dd67ff-4bf4g: 10.42.0.1 - - [27/Jul/2023 02:32:17] "GET / HTTP/1.1" 200 -
You could also use the mdz exec
command to execute a command in the container of your deployment. You do not need to ssh into the server to do that.
$ mdz exec simple-server ps
PID USER TIME COMMAND
1 root 0:00 /usr/bin/dumb-init /bin/sh -c python3 -m http.server 80
7 root 0:00 /bin/sh -c python3 -m http.server 80
8 root 0:00 python3 -m http.server 80
9 root 0:00 ps
$ mdz exec simple-server -ti bash
bash-4.4#
Or you could port-forward the deployment to your local machine and debug it locally.
$ mdz port-forward simple-server 7860
Forwarding inference simple-server to local port 7860
Add more servers
You could add more servers to your cluster by using the mdz server join
command. The mdz
server will be bootstrapped on the server and join the cluster automatically.
$ mdz server join <internal ip address of the previous server>
$ mdz server list
NAME PHASE ALLOCATABLE CAPACITY
node1 Ready cpu: 16 cpu: 16
mem: 32784748Ki mem: 32784748Ki
gpu: 1 gpu: 1
node2 Ready cpu: 16 cpu: 16
mem: 32784748Ki mem: 32784748Ki
gpu: 1 gpu: 1
Label your servers
You could label your servers to deploy your models to specific servers. For example, you could label your servers with gpu=true
and deploy your models to servers with GPUs.
$ mdz server label node3 gpu=true type=nvidia-a100
$ mdz deploy ... --node-labels gpu=true,type=nvidia-a100
Architecture
OpenModelZ is inspired by the k3s and OpenFaaS, but designed specifically for machine learning deployment. We keep the core of the system simple, and easy to extend.
You do not need to read this section if you just want to deploy your models. But if you want to understand how OpenModelZ works, this section is for you.
OpenModelZ is composed of two components:
- Data Plane: The data plane is responsible for the servers. You could use
mdz server
to manage the servers. The data plane is designed to be stateless and scalable. You could easily scale the data plane by adding more servers to the cluster. It uses k3s under the hood, to support VMs, bare-metal, and IoT devices (in the future). You could also deploy OpenModelZ on a existing kubernetes cluster. - Control Plane: The control plane is responsible for the deployments. It manages the deployments and the underlying resources.
A request will be routed to the inference servers by the load balancer. And the autoscaler will scale the number of inference servers based on the workload. We provide a domain *.modelz.live
by default, with the help of a wildcard DNS server to support the public accessible subdomain for each deployment. You could also use your own domain.
You could check out the architecture documentation for more details.
Roadmap ๐๏ธ
Please checkout ROADMAP.
Contribute ๐
We welcome all kinds of contributions from the open-source community, individuals, and partners.
- Join our discord community!
Contributors โจ
Ce Gao ๐ป ๐ โ |
Jinjing Zhou ๐ฌ ๐ ๐ค |
Keming ๐ป ๐จ ๐ |
Nadeshiko Manju ๐ ๐จ ๐ค |
Teddy Xinyuan Chen ๐ |
Wei Zhang ๐ป |
Xuanwo ๐ ๐จ ๐ค |
cutecutecat ๐ค |
xieydd ๐ค |
Acknowledgements ๐
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