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ML Lab enables teams to be more productive in delivering machine learning solutions for their products and datasets.

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SAP/machine-learning-lab

End-to-end collaborative development platform to build and run machine learning solutions.

ArchitectureGetting StartedDevelopment

ML Lab is a centralized hub for development teams to seamlessly build, deploy, and operate machine learning solutions at scale. It is designed to cover the end-to-end machine learning lifecycle from data processing and experimentation to model training and deployment. It combines the libraries, languages, and tools data scientists love, with the infrastructure, services and workflows they need to deliver machine learning solutions into production.

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This branch contains a new experimental version of ML Lab rewritten in python. The original java version can be found in the branch ml-lab-java.

Highlights

  • 🔐 Secure multi-user development platform for machine learning solutions.
  • 🛠 Workspace with integrated tooling (Jupyter, VS Code, SSH, VNC, Hardware Monitoring, ...)
  • 🗃️ Upload, manage, version, and share datasets & models.
  • 🎛 Deploy and operate machine learning solutions for productive usage.
  • 🐳 Deployable on a single-server via Docker or a server-cluster via Kubernetes.

Architecture

Machine Learning Lab (ML Lab) builds on the contaxy server which provides a generic API for managing users and projects, storing files, deploying services and database access. Using the extension mechanism of contaxy, ML Lab builds machine learning specific functionality on top. These extensions are called ML Lab components and each have their own backend, frontend and docker image. The ML Lab backend image leverages the contaxy library to combine all ML Lab components and adds a React frontend application. The different parts of an ML Lab installation are shown in this diagram: Lab Architecture

Getting Started

Local Docker Installation

The latest ML Lab docker image are pushed in the GitHub container registry. ML Lab can be run locally using docker compose which will start the ML Lab backend, the Postgres and Minio Database and the ML Lab Components (Workspace Manager, etc.)

cd deployment/mllab-docker
docker pull ghcr.io/sap/machine-learning-lab/lab-backend
docker tag ghcr.io/sap/machine-learning-lab/lab-backend lab-backend
docker pull ghcr.io/sap/machine-learning-lab/lab-workspace-manager
docker tag ghcr.io/sap/machine-learning-lab/lab-workspace-manager lab-workspace-manager
docker pull mltooling/ml-workspace-minimal
docker-compose up
# Visit http://localhost:30010/ and login with username and password "admin"
# Run docker-compose up -d to start the application in the background

Important: The configurations in the docker-compose.yaml are not meant to be used for production as the JWT secret is the default one and the ports of all services are published, instead of only the ML Lab backend service. For a list of all configurable environment variables, have a look at the contaxy config file. All fields of the Settings class represent an environment variable that can be set.

Kubernetes Installation

To install ML Lab on Kubernetes, the helm chart can be used. Again, the provided default values are not production ready and can be changed in the values.yaml file.

Development

The build pipeline

Each folder in this repository that contains a buildable part of ML Lab contains a build.py python script. This script allows to lint (--check), build (--make) and test (--test) the contents of that folder:

python build.py --check --make --test

The build.py script in the root folder calls the build.py scripts of all sub folders and thereby builds the entire ML Lab project. It is possible to exclude specific folders from the build pipeline:

python build.py --skip-path webapp --skip-path components/lab-workspace-manager

The build.py script always performs a full rebuild which leads to a long build time. This is great for a reproducible build in the CI/CD pipeline build but slows down development. Therefore, it makes sense to use the options below during developing ML Lab.

Build ML Lab docker image manually

This paragraph describes the steps required for building the ML Lab backend image. These steps are basically the same as the ones executed automatically by the build.py script. However, during development only some steps need to be rerun depending on what files are changed.

Build the webapp bundle (only required when changing the webapp):

cd webapp
yarn install        # Only rerun if dependencies changed 
yarn run build
cd ..

Build the ML Lab backend image: docker build -t lab-backend .

The same commands can be used for building any of the components.

Developing the ML Lab Web Application

The ML Lab web app is build with JavaScript and React. It communicates with the ML Lab backend (via the contaxy API) and provides the overall UI structure of ML Lab. The ML Lab components are integrated into this UI via iframes. During the build process, the web app is compiled into a minified JavaScript bundle and is then later served by the ML Lab backend. For development, the web app can be started locally and connect to any other local or remote ML Lab instance. For more information, see the webapp folder.

Developing Contaxy Core Features

Sometimes it is necessary to add new features to the contaxy library directly instead of building a contaxy extension (ML Lab component). Detailed information on how to develop contaxy can be found in the contaxy repository. To make the development of contaxy features in conjunction with ML Lab development easier, the contaxy repo is included as a git submodule. Run the following command to download the contaxy source into the contaxy folder

git submodule update --init

To use this local contaxy code in the ML Lab backend image instead of the version released on PyPi, uncomment the Dockerfile lines 95-98. The following .env file can be used to connect a locally started contaxy server with the Postgres and Minio DB started by the docker compose script in this repository:

POSTGRES_CONNECTION_URI=postgresql://postgres:postgres-password-change-me@127.0.0.1:30011/postgres
S3_ENDPOINT=127.0.0.1:30013
S3_ACCESS_KEY=minioadmin
S3_SECRET_KEY=minio-password-change-me
BACKEND_CORS_ORIGINS=http://localhost:3000
SYSTEM_NAMESPACE=pylab

Developing an ML Lab Component

An ML Lab component is its own separate application with a frontend and backend packaged into a docker image. It is started alongside the ML Lab Backend container which discovers the component via labels set on the container. The component can extend the ML Lab API and its UI is integrated in the main ML Lab UI with an iframe. For an example of such an ML Lab component, refer to the ML Lab Workspace Manager. It contains further information on how the extension is structured and how to develop it locally. If you want to develop a new ML Lab component, you can copy the template component and follow the instruction in that folder.

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