MindSpore Operator
PyTorch Operator and TF Operator. Right now MindSpore supports running LeNet with MNIST dataset on a single node, while distributed training examples are conducted using Volcano.
Experimental notice: This project is still experimental and only serves as a proof of concept for running MindSpore on Kubernetes. The current version of ms-operator is based on an early version ofIntroduction of MindSpore and ms-operator
MindSpore is a new open source deep learning training/inference framework that could be used for mobile, edge and cloud scenarios. MindSpore is designed to provide development experience with friendly design and efficient execution for the data scientists and algorithmic engineers, native support for Ascend AI processor, and software hardware co-optimization.
This project contains the specification and implementation of MSJob custom resource definition. We will demonstrate running a walkthrough of creating ms-operator, as well as MNIST training job on Kubernetes with MindSpore-cpu image (x86 CPU build version) on a single node. More completed features will be developed in the coming days.
This project defines the following:
- The ms-operator
- A way to deploy the operator
- MindSpore LeNet MNIST training example
- MindSpore distributed GPU example using Volcano
- etc.
MindSpore docker image
Please refer to MindSpore docker image introduction for details.
Design
The yaml file we used to create our MNIST training job is defined as follows:
apiVersion: v1
kind: Pod
metadata:
name: msjob-mnist
spec:
containers:
- image: mindspore/mindspore-cpu:0.1.0-alpha
imagePullPolicy: IfNotPresent
name: msjob-mnist
command: ["/bin/bash", "-c", "python /tmp/test/MNIST/lenet.py"]
volumeMounts:
- name: training-result
mountPath: /tmp/result
- name: ms-mnist
mountPath: /tmp/test
restartPolicy: OnFailure
volumes:
- name: training-result
emptyDir: {}
- name: ms-mnist
hostPath:
path: /root/gopath/src/gitee.com/mindspore/ms-operator/examples/
Overview of MindSpore in Kubeflow ecosystem
The high-level view of how MindSpore fits in the ecosystem of Kubeflow and its components.
MindSpore CPU example
Prerequisites
-
Ubuntu:
16.04.6 LTS
-
Helm and Tiller:
v2.9.0
-
go:
go1.12.1
-
docker:
v18.06.1-ce
-
Kubernetes:
v1.14.0
Steps
First, pull the ms-operator image from Docker Hub:
docker pull mindspore/ms-operator:latest
Or you can build the ms-operator image on local machine:
go build -ldflags '-w -s' -o ms-operator cmd/ms-operator.v1/main.go
docker build -t mindspore/ms-operator .
After the installation, check the image status using docker images
command:
REPOSITORY TAG IMAGE ID CREATED SIZE
mindspore/ms-operator latest 4a17028de3d3 5 minutes ago 97.8MB
The MindSpore image we download from docker hub is 0.1.0-alpha
version:
REPOSITORY TAG IMAGE ID CREATED SIZE
mindspore/mindspore-cpu 0.1.0-alpha ef443be923bc 3 hours ago 1.05GB
MindSpore supports heterogeneous computing including multiple hardware and
backends (CPU
, GPU
, Ascend
), the device_target of MindSpore is
Ascend
by default but we will use the CPU version here.
Install the msjob crd, ms-operator deployment and pod:
RBAC=true # set false if you do not have an RBAC cluster
helm install ms-operator-chart/ -n ms-operator --set rbac.install=${RBAC} --wait --replace
Using helm status ms-operator
command to check generated resources:
LAST DEPLOYED: Tue Mar 24 11:36:51 2020
NAMESPACE: default
STATUS: DEPLOYED
RESOURCES:
==> v1beta1/CustomResourceDefinition
NAME AGE
msjobs.kubeflow.org 1d
==> v1beta1/Deployment
NAME DESIRED CURRENT UP-TO-DATE AVAILABLE AGE
ms-operator 1 1 1 1 1d
==> v1/Pod(related)
NAME READY STATUS RESTARTS AGE
ms-operator-7b5b457d69-dpd2b 1/1 Running 0 1d
We will do a MNIST training to check the eligibility of MindSpore running on Kubernetes:
cd examples/ && kubectl apply -f ms-mnist.yaml
The job is simply importing MindSpore packages, the dataset is already included in the MNIST_Data
folder, executing only one epoch and printing result which should only consume little time. After the job completed, you should be able to check the job status and see the result logs. You can check the source training code in examples/
folder.
kubectl get pod msjob-mnist && kubectl logs msjob-mnist
The expected output is:
NAME READY STATUS RESTARTS AGE
msjob-mnist 0/1 Completed 0 3h53m
============== Starting Training ==============
epoch: 1 step: 1, loss is 2.3005836
epoch: 1 step: 2, loss is 2.2978227
epoch: 1 step: 3, loss is 2.3004227
epoch: 1 step: 4, loss is 2.3054247
epoch: 1 step: 5, loss is 2.3068798
epoch: 1 step: 6, loss is 2.298408
epoch: 1 step: 7, loss is 2.3055573
epoch: 1 step: 8, loss is 2.2998955
epoch: 1 step: 9, loss is 2.3028255
epoch: 1 step: 10, loss is 2.2972553
Distributed GPU example using Volcano
The source code of the example can be found here.
Volcano Prerequisites
- Kubernetes:
v1.16.6
- NVIDIA Docker:
2.3.0
- NVIDIA/k8s-device-plugin:
1.0.0-beta6
- NVIDIA drivers:
418.39
- CUDA:
10.1
Install Volcano: kubectl apply -f https://raw.githubusercontent.com/volcano-sh/volcano/master/installer/volcano-development.yaml
MindSpore GPU example
Using a modified image which the openssh-server is installed from the official MindSpore GPU image. To check the eligibility of MindSpore GPU's ability to communicate with other processes, we leverage the mpimaster and mpiworker task spec of Volcano. In this example, we launch one mpimaster and two mpiworkers, the python script is taken from MindSpore Gitee README, which is also modified to be able to run parallelly.
cd to example/MindSpore-example/mindspore_gpu
folder, then:
pull image: docker pull lyd911/mindspore-gpu-example:0.2.0
to run: kubectl apply -f mindspore-gpu.yaml
to check result: kubectl logs mindspore-gpu-mpimster-0
The expected output should be (2*3) of multi-dimensional array.
Future Work
Kubeflow just announced its first major 1.0 release recently with the graduation of a core set of stable applications including:
- Kubeflow's UI
- Jupyter notebook controller and web app
- Tensorflow Operator(TFJob), and PyTorch Operator for distributed training
- kfctl for deployment and upgrade
- etc.
The MindSpore community is driving to collaborate with the Kubeflow community as well as making the ms-operator more complex, well-organized and its dependencies up-to-date. All these components make it easy for machine learning engineers and data scientists to leverage cloud assets (public or on-premise) for machine learning workloads.
MindSpore is also looking forward to enable users to use Jupyter to develop models. Users in the future can use Kubeflow tools like fairing (Kubeflow’s python SDK) to build containers and create Kubernetes resources to train their MindSpore models.
Once training completed, users can use KFServing to create and deploy a server for inference thus completing the life cycle of machine learning.
Community
- MindSpore Slack - Ask questions and find answers.
Contributing
Welcome contributions. See our Contributor Wiki for more details.