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About

Seldon V2 APIs provide a state of the art solution for machine learning inference which can be run locally on a laptop as well as on Kubernetes for production.

Features

  • A single platform for inference of wide range of standard and custom artifacts.
  • Deploy locally in Docker during development and testing of models.
  • Deploy at scale on Kubernetes for production.
  • Deploy single models to multi-step pipelines.
  • Save infrastructure costs by deploying multiple models transparently in inference servers.
  • Overcommit on resources to deploy more models than available memory.
  • Dynamically extended models with pipelines with a data-centric perspective backed by Kafka.
  • Explain individual models and pipelines with state of the art explanation techniques.
  • Deploy drift and outlier detectors alongside models.
  • Kubernetes Service mesh agnostic - use the service mesh of your choice.

Publication

These features are influenced by our position paper on the next generation of ML model serving frameworks:

Title: Desiderata for next generation of ML model serving

Workshop: Challenges in deploying and monitoring ML systems workshop - NeurIPS 2022

Getting started

Local quick-start via docker-compose

Deploy via Docker Compose

make deploy-local

Run local-examples.ipynb

Undeploy

make undeploy-local

Kubernetes quick-start via KinD

Install Seldon ansible collection

pip install ansible openshift docker passlib
ansible-galaxy collection install git+https://github.com/SeldonIO/ansible-k8s-collection.git

Create a KinD cluster and install dependencies:

cd ansible
ansible-playbook playbooks/kind-cluster.yaml
ansible-playbook playbooks/setup-ecosystem.yaml

Deploy Seldon Core v2

cd ..
make deploy-k8s

Run k8s-examples.ipynb

Undeploy Seldon Core v2

make undeploy-k8s

Documentation

Seldon Core v2 docs

License

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Seldon-core v2 for local docker deployment

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