A tool to deploy mlops tooling at the click of a button.
Project description
Open source MLOps infrastructure deployment on Public Cloud providers
mlinfra
is the swiss army knife for deploying scalable MLOps infrastructure. It aims to make MLOps infrastructure deployment easy and accessible to all ML teams by liberating IaC logic for creating MLOps stacks which is usually tied to other frameworks.
Contribute to the project by opening a issue or joining project roadmap and design related discussion on discord. Complete roadmap will be released soon!
🚀 Installation
Requirements
mlinfra
requires the following to run perfectly:
terraform
>=1.4.0
should be installed on the system.
mlinfra
can be installed simply by creating a python virtual environment and installing mlinfra
pip package
python -m venv venv
source venv/bin/activate
pip install mlinfra
Copy a deployment config from the examples folder, change your AWS account in the config file, configure your AWS credentials and deploy the configuration using
mlinfra terraform --action apply --stack-config-path <path-to-your-config>
For more information, read the mlinfra user guide
Supported Providers
The core purpose is to build for all cloud and deployment platforms out there. Any user should be able to just change the cloud provider or runtime environment (whether it be linux or windows) and have the capability to deploy the same tools.
Currently a lot of work has been done around AWS
This project will be supporting the following providers:
- AWS
- GCP
- Azure
- Kubernetes
- DigitalOcean
- Bare metal (such as Hetzner)
- Openstack
- docker compose
- k3s
- kind
Supported MLOps Tools
mlinfra
intends to support as many MLOps tools deployable in a platform in their standalone as well as high availability across different layers of an MLOps stack:
- data_versioning
- experiment_tracker
- orchestrator
- artifact_tracker / model_registry
- model_inference
- monitoring
- alerting
Deployment Config
mlinfra
deploys infrastructure using declarative approach. It requires resources to be defined in ayaml
file with the following format
name: aws-mlops-stack
provider:
name: aws
account-id: xxxxxxxxx
region: eu-central-1
deployment:
type: cloud_vm # (this would create ec2 instances and then deploy applications on it)
stack:
data_versioning:
- lakefs # can also be pachyderm or lakefs or neptune and so on
secrets_manager:
- secrets_manager # can also be vault or any other
experiment_tracker:
- mlflow # can be weights and biases or determined, or neptune or clearml and so on...
orchestrator:
- zenml # can also be argo, or luigi, or airflow, or dagster, or prefect or flyte or kubeflow and so on...
orchestrator:
- aws-batch # can also be aws step functions or aws-fargate or aws-eks or azure-aks and so on...
runtime_engine:
- ray # can also be horovod or apache spark
artifact_tracker:
- mlflow # can also be neptune or clearml or lakefs or pachyderm or determined or wandb and so on...
# model registry and serving are quite close, need to think about them...
model_registry:
- bentoml # can also be mlflow or neptune or determined and so on...
model_serving:
- nvidia triton # can also be bentoml or fastapi or cog or ray or seldoncore or tf serving
monitoring:
- nannyML # can be grafana or alibi or evidently or neptune or mlflow or prometheus or weaveworks and so on...
alerting:
- mlflow # can be mlflow or neptune or determined or weaveworks or prometheus or grafana and so on...
- This was minimal spec for aws cloud as infra with custom applications. Other stacks such as feature_store, event streamers, loggers or cost dashboards can be added via community requests.
- For more information, please check out the docs for detailed documentation.
Vision
- I realised MLOps infrastructure deployment is not as easy and common over the years of creating and deploying ML platforms for multiple teams. A lot of the times, teams start on wrong foot, leading to months of planning and implementation of MLOps infrastructure. This project is an attempt to create a common MLOps infrastructure deployment framework that can be used by any ML team to deploy their MLOps stack in a single command.
Development
- This project relies on terraform for IaC code and python to glue it all together.
- To get started, install terraform and python.
- You can install the required python packages by running
pip install -r requirements-dev.txt
- You can run any of the available examples from the
examples
folder by runningcd src
andinvoke terraform --stack-config-path examples/<application>/<cloud>-<application>.yaml --action <action>
where<action>
corresponds to terraform actions such asplan
,apply
anddestroy
.
For more information, please refer to the Engineering Wiki of the project (https://mlinfra.io/user_guide/) regarding what are the different components of the project and how they work together.
Contributions
- Contributions are welcome! Help us onboard all of the available mlops tools on currently available cloud providers.
- For major changes, please open an issue first to discuss what you would like to change. A team member will get to you soon.
- For information on the general development workflow, see the contribution guide.
License
The mlinfra
library is distributed under the Apache-2 license.
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