ElasticDL: A Kubernetes-native Deep Learning Framework

ElasticDL is a Kubernetes-native deep learning framework built on top of
TensorFlow 2.0 that supports fault-tolerance and elastic scheduling.
Main Features
Elastic Scheduling and Fault-Tolerance
Through Kubernetes-native design, ElasticDL enables fault-tolerance and works
with the priority-based preemption of Kubernetes to achieve elastic scheduling
for deep learning tasks.
TensorFlow 2.0 Eager Execution
A distributed deep learning framework needs to know local gradients before the
model update. Eager Execution allows ElasticDL to do it without hacking into the
graph execution process.
Minimalism Interface
Given a model defined
with Keras API, train the model distributedly with a command line.
elasticdl train \
--image_name=elasticdl:mnist \
--model_zoo=model_zoo \
--model_def=mnist_functional_api.mnist_functional_api.custom_model \
--training_data=/data/mnist/train \
--job_name=test-mnist \
--volume="host_path=/data,mount_path=/data"
Integration with SQLFlow
ElasticDL will be integrated seamlessly with SQLFlow to connect SQL to
distributed deep learning tasks with ElasticDL.
SELECT * FROM employee LABEL income INTO my_elasticdl_model
Quick Start
Please check out our step-by-step tutorial for
running ElasticDL on local laptop, on-prem cluster, or on public cloud such as
Google Kubernetes Engine.
Background
TensorFlow has its native distributed computing feature that is
fault-recoverable. In the case that some processes fail, the distributed
computing job would fail; however, we can restart the job and recover its status
from the most recent checkpoint files.
ElasticDL, as an enhancement of TensorFlow's distributed training feature,
supports fault-tolerance. In the case that some processes fail, the job would
go on running. Therefore, ElasticDL doesn't need to save checkpoint nor recover
from checkpoints.
The feature of fault-tolerance makes ElasticDL works with the priority-based
preemption of Kubernetes to achieve elastic scheduling. When Kubernetes kills
some processes of a job to free resource for new-coming jobs with higher
priority, the current job doesn't fail but continues with less resource.
Elastic scheduling could significantly improve the overall utilization of a
cluster. Suppose that a cluster has N GPUs, and a job is using one of
them. Without elastic scheduling, a new job claiming N GPUs would have to wait
for the first job to complete before starting. This pending time could be hours,
days, or even weeks. During this very long time, the utilization of the cluster
is 1/N. With elastic scheduling, the new job could start running immediately
with N-1 GPUs, and Kubernetes might increase its GPU consumption by 1 after the
first job completes. In this case, the overall utilization is 100%.
The feature of elastic scheduling of ElasticDL comes from its Kubernetes-native
design -- it doesn't rely on Kubernetes extensions like Kubeflow to run
TensorFlow programs; instead, the master process of an ElasticDL job calls
Kubernetes API to start workers and parameter servers; it also watches events
like process/pod killing and reacts to such events to realize fault-tolerance.
In short, ElasticDL enhances TensorFlow with fault-tolerance and elastic
scheduling in the case that you have a Kubernetes cluster. We provide a tutorial
showing how to set up a Kubernetes cluster on Google Cloud and run ElasticDL
jobs there. We respect TensorFlow's native distributed computing feature, which
doesn't require specific computing platforms like Kubernetes and allows
TensorFlow running on any platform.
Development Guide
Please refer to this document for development guide.