At the moment we’re saying AWS Parallel Computing Service (AWS PCS), a brand new managed service that helps clients arrange and handle excessive efficiency computing (HPC) clusters so that they seamlessly run their simulations at just about any scale on AWS. Utilizing the Slurm scheduler, they will work in a well-known HPC setting, accelerating their time to outcomes as a substitute of worrying about infrastructure.
In November 2018, we launched AWS ParallelCluster, an AWS supported open-source cluster administration software that lets you deploy and handle HPC clusters within the AWS Cloud. With AWS ParallelCluster, clients can even shortly construct and deploy proof of idea and manufacturing HPC compute environments. They’ll use AWS ParallelCluster Command-Line interface, API, Python library, and the consumer interface put in from open supply packages. They’re liable for updates, which might embrace tearing down and redeploying clusters. Many shoppers, although, have requested us for a completely managed AWS service to remove operational jobs in constructing and working HPC environments.
AWS PCS simplifies HPC environments managed by AWS and is accessible by the AWS Administration Console, AWS SDK, and AWS Command-Line Interface (AWS CLI). Your system directors can create managed Slurm clusters that use their compute and storage configurations, id, and job allocation preferences. AWS PCS makes use of Slurm, a extremely scalable, fault-tolerant job scheduler used throughout a variety of HPC clients, for scheduling and orchestrating simulations. Finish customers resembling scientists, researchers, and engineers can log in to AWS PCS clusters to run and handle HPC jobs, use interactive software program on digital desktops, and entry information. You possibly can carry their workloads to AWS PCS shortly, with out vital effort to port code.
You need to use absolutely managed NICE DCV distant desktops for distant visualization, and entry job telemetry or utility logs to allow specialists to handle your HPC workflows in a single place.
AWS PCS is designed for a variety of conventional and rising, compute or data-intensive, engineering and scientific workloads throughout areas resembling computational fluid dynamics, climate modeling, finite factor evaluation, digital design automation, and reservoir simulations utilizing acquainted methods of getting ready, executing, and analyzing simulations and computations.
Getting began with AWS Parallel Computing Service
To check out AWS PCS, you should use our tutorial for making a easy cluster within the AWS documentation. First, you create a digital non-public cloud (VPC) with an AWS CloudFormation template and shared storage in Amazon Elastic File System (Amazon EFS) inside your account for the AWS Area the place you’ll attempt AWS PCS. To study extra, go to Create a VPC and Create shared storage within the AWS documentation.
1. Create a cluster
Within the AWS PCS console, select Create cluster, a persistent useful resource for managing sources and working workloads.
Subsequent, enter your cluster title and select the controller measurement of your Slurm scheduler. You possibly can select Small (as much as 32 nodes and 256 jobs), Medium (as much as 512 nodes and eight,192 jobs), or Giant (as much as 2,048 nodes and 16,384 jobs) for the bounds of cluster workloads. Within the Networking part, select your created VPC, subnet to launch the cluster, and safety group utilized to your cluster.
Optionally, you possibly can set the Slurm configuration resembling an idle time earlier than compute nodes will scale down, a Prolog and Epilog scripts listing on launched compute nodes, and a useful resource choice algorithm parameter utilized by Slurm.
Select Create cluster. It takes a while for the cluster to be provisioned.
2. Create compute node teams
After creating your cluster, you possibly can create compute node teams, a digital assortment of Amazon Elastic Compute Cloud (Amazon EC2) situations that AWS PCS makes use of to offer interactive entry to a cluster or run jobs in a cluster. Once you outline a compute node group, you specify widespread traits resembling EC2 occasion varieties, minimal and most occasion rely, goal VPC subnets, Amazon Machine Picture (AMI), buy possibility, and customized launch configuration. Compute node teams require an occasion profile to cross an AWS Id and Entry Administration (IAM) position to an EC2 occasion and an EC2 launch template that AWS PCS makes use of to configure EC2 situations it launches. To study extra, go to Create a launch template And Create an occasion profile within the AWS documentation.
To create a compute node group within the console, go to your cluster and select the Compute node teams tab and the Create compute node group button.
You possibly can create two compute node teams: a login node group to be accessed by finish customers and a job node group to run HPC jobs.
To create a compute node group working HPC jobs, enter a compute node title and choose a previously-created EC2 launch template, IAM occasion profile, and subnets to launch compute nodes in your cluster VPC.
Subsequent, select your most well-liked EC2 occasion varieties to make use of when launching compute nodes and the minimal and most occasion rely for scaling. I selected the hpc6a.48xlarge
occasion kind and scale restrict as much as eight situations. For a login node, you possibly can select a smaller occasion, resembling one c6i.xlarge
occasion. You can even select both the On-demand or Spot EC2 buy possibility if the occasion kind helps. Optionally, you possibly can select a selected AMI.
Select Create. It takes a while for the compute node group to be provisioned. To study extra, go to Create a compute node group to run jobs and Create a compute node group for login nodes within the AWS documentation.
3. Create and run your HPC jobs
After creating your compute node teams, you submit a job to a queue to run it. The job stays within the queue till AWS PCS schedules it to run on a compute node group, primarily based on obtainable provisioned capability. Every queue is related to a number of compute node teams, which give the required EC2 situations to do the processing.
To create a queue within the console, go to your cluster and select the Queues tab and the Create queue button.
Enter your queue title and select your compute node teams assigned to your queue.
Select Create and wait whereas the queue is being created.
When the login compute node group is lively, you should use AWS Methods Supervisor to connect with the EC2 occasion it created. Go to the Amazon EC2 console and select your EC2 occasion of the login compute node group. To study extra, go to Create a queue to submit and handle jobs and Hook up with your cluster within the AWS documentation.
To run a job utilizing Slurm, you put together a submission script that specifies the job necessities and submit it to a queue with the sbatch
command. Usually, that is carried out from a shared listing so the login and compute nodes have a standard area for accessing information.
You can even run a message passing interface (MPI) job in AWS PCS utilizing Slurm. To study extra, go to Run a single node job with Slurm or Run a multi-node MPI job with Slurm within the AWS documentation.
You possibly can join a fully-managed NICE DCV distant desktop for visualization. To get began, use the CloudFormation template from HPC Recipes for AWS GitHub repository.
On this instance, I used the OpenFOAM motorBike simulation to calculate the regular move round a bike and rider. This simulation was run with 288 cores of three hpc6a situations. The output might be visualized within the ParaView session after logging in to the net interface of DCV occasion.
Lastly, after you might be carried out HPC jobs with the cluster and node teams that you simply created, you must delete the sources that you simply created to keep away from pointless expenses. To study extra, go to Delete your AWS sources within the AWS documentation.
Issues to know
Listed here are a few issues that you must find out about this characteristic:
- Slurm variations – AWS PCS initially helps Slurm 23.11 and offers mechanisms designed to allow clients to improve their Slurm main variations as soon as new variations are added. Moreover, AWS PCS is designed to robotically replace the Slurm controller with patch variations. To study extra, go to Slurm variations within the AWS documentation.
- Capability Reservations – You possibly can reserve EC2 capability in a selected Availability Zone and for a selected length utilizing On-Demand Capability Reservations to just be sure you have the required compute capability obtainable while you want it. To study extra, go to Capability Reservations within the AWS documentation.
- Community file programs – You possibly can connect community storage volumes the place information and information might be written and accessed, together with Amazon FSx for NetApp ONTAP, Amazon FSx for OpenZFS, and Amazon File Cache in addition to Amazon EFS and Amazon FSx for Lustre. You can even use self-managed volumes, resembling NFS servers. To study extra, go to Community file programs within the AWS documentation.
Now obtainable
AWS Parallel Computing Service is now obtainable within the US East (N. Virginia), AWS US East (Ohio), US West (Oregon), Asia Pacific (Singapore), Asia Pacific (Sydney), Asia Pacific (Tokyo), Europe (Frankfurt), Europe (Eire), Europe (Stockholm) Areas.
AWS PCS launches all sources in your AWS account. You can be billed appropriately for these sources. For extra data, see the AWS PCS Pricing web page.
Give it a try to ship suggestions to AWS re:Publish or by your regular AWS Help contacts.
— Channy
P.S. Particular because of Matthew Vaughn, a principal developer advocate at AWS for his contribution in making a HPC testing setting.