Infrastructure template and Jupyter notebooks for running RoseTTAFold on AWS Batch.

Overview

AWS RoseTTAFold

Infrastructure template and Jupyter notebooks for running RoseTTAFold on AWS Batch.

Overview

Proteins are large biomolecules that play an important role in the body. Knowing the physical structure of proteins is key to understanding their function. However, it can be difficult and expensive to determine the structure of many proteins experimentally. One alternative is to predict these structures using machine learning algorithms. Several high-profile research teams have released such algorithms, including AlphaFold 2 (from DeepMind) and RoseTTAFold (From the Baker lab at the University of Washington). Their work was important enough for Science magazine to name it the "2021 Breakthrough of the Year".

Both AlphaFold 2 and RoseTTAFold use a multi-track transformer architecture trained on known protein templates to predict the structure of unknown peptide sequences. These predictions are heavily GPU-dependent and take anywhere from minutes to days to complete. The input features for these predictions include multiple sequence alignment (MSA) data. MSA algorithms are CPU-dependent and can themselves require several hours of processing time.

Running both the MSA and structure prediction steps in the same computing environment can be cost inefficient, because the expensive GPU resources required for the prediction sit unused while the MSA step runs. Instead, using a high performance computing (HPC) service like AWS Batch allows us to run each step as a containerized job with the best fit of CPU, memory, and GPU resources.

This project demonstrates how to provision and use AWS services for running the RoseTTAFold protein folding algorithm on AWS Batch.

Setup

  1. Log into the AWS Console.

  2. Click on Launch Stack:

    Launch Stack

  3. For Stack Name, enter a unique name.

  4. Select an availability zone from the dropdown menu.

  5. Acknowledge that AWS CloudFormation might create IAM resources and then click Create Stack.

  6. It will take 10 minutes for CloudFormation to create the stack and another 15 minutes for CodeBuild to build and publish the container (25 minutes total). Please wait for both of these tasks to finish before you submit any analysis jobs.

  7. Download and extract the RoseTTAFold network weights (under Rosetta-DL Software license), and sequence and structure databases to the newly-created FSx for Lustre file system. There are two ways to do this:

Option 1

In the AWS Console, navigate to EC2 > Launch Templates, select the template beginning with "aws-rosettafold-launch-template-", and then Actions > Launch instance from template. Select the Amazon Linux 2 AMI and launch the instance into the public subnet with a public IP. SSH into the instance and download/extract your network weights and reference data of interest to the attached volume at /fsx/aws-rosettafold-ref-data (i.e. Installation steps 3 and 5 from the RoseTTAFold public repository)

Option 2

Create a new S3 bucket in your region of interest. Spin up an EC2 instance in a public subnet in the same region and use this to download and extract the network weights and reference data. Once this is complete, copy the extracted data to S3. In the AWS Console, navigate to FSx > File Systems and select the FSx for Lustre file system created above. Link this file system to your new S3 bucket using these instructions. Specify /aws-rosettafold-ref-data as the file system path when creating the data repository association. This is a good option if you want to create multiple stacks without downloading and extracting the reference data multiple times. Note that the first job you submit using this data repository will cause the FSx file system to transfer and compress 3 TB of reference data from S3. This process may require as many as six hours to complete. Alternatively, you can preload files into the file system by following these instructions.

Once this is complete, your FSx for Lustre file system should look like this (file sizes are uncompressed):

/fsx
└── /aws-rosettafold-ref-data
    ├── /bfd
    │   ├── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_a3m.ffdata (1.4 TB)
    │   ├── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_a3m.ffindex (1.7 GB)
    │   ├── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_cs219.ffdata (15.7 GB)
    │   ├── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_cs219.ffindex (1.6 GB)
    │   ├── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_hhm.ffdata (304.4 GB)
    │   └── bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt_hhm.ffindex (123.6 MB)
    ├── /pdb100_2021Mar03
    │   ├── LICENSE (20.4 KB)
    │   ├── pdb100_2021Mar03_a3m.ffdata (633.9 GB)
    │   ├── pdb100_2021Mar03_a3m.ffindex (3.9 MB)
    │   ├── pdb100_2021Mar03_cs219.ffdata (41.8 MB)
    │   ├── pdb100_2021Mar03_cs219.ffindex (2.8 MB)
    │   ├── pdb100_2021Mar03_hhm.ffdata (6.8 GB)
    │   ├── pdb100_2021Mar03_hhm.ffindex (3.4 GB)
    │   ├── pdb100_2021Mar03_pdb.ffdata (26.2 GB)
    │   └── pdb100_2021Mar03_pdb.ffindex (3.7 MB)
    ├── /UniRef30_2020_06
    │   ├── UniRef30_2020_06_a3m.ffdata (139.6 GB)
    │   ├── UniRef30_2020_06_a3m.ffindex (671.0 MG)
    │   ├── UniRef30_2020_06_cs219.ffdata (6.0 GB)
    │   ├── UniRef30_2020_06_cs219.ffindex (605.0 MB)
    │   ├── UniRef30_2020_06_hhm.ffdata (34.1 GB)
    │   ├── UniRef30_2020_06_hhm.ffindex (19.4 MB)
    │   └── UniRef30_2020_06.md5sums (379.0 B)
    └── /weights
        ├── RF2t.pt (126 MB KB)
        ├── Rosetta-DL_LICENSE.txt (3.1 KB)
        ├── RoseTTAFold_e2e.pt (533 MB)
        └── RoseTTAFold_pyrosetta.pt (506 MB)

  1. Clone the CodeCommit repository created by CloudFormation to a Jupyter Notebook environment of your choice.
  2. Use the AWS-RoseTTAFold.ipynb and CASP14-Analysis.ipynb notebooks to submit protein sequences for analysis.

Architecture

AWS-RoseTTAFold Architecture

This project creates two computing environments in AWS Batch to run the "end-to-end" protein folding workflow in RoseTTAFold. The first of these uses the optimal mix of c4, m4, and r4 spot instance types based on the vCPU and memory requirements specified in the Batch job. The second environment uses g4dn on-demand instances to balance performance, availability, and cost.

A scientist can create structure prediction jobs using one of the two included Jupyter notebooks. AWS-RoseTTAFold.ipynb demonstrates how to submit a single analysis job and view the results. CASP14-Analysis.ipynb demonstrates how to submit multiple jobs at once using the CASP14 target list. In both of these cases, submitting a sequence for analysis creates two Batch jobs, one for data preparation (using the CPU computing environment) and a second, dependent job for structure prediction (using the GPU computing environment).

Both the data preparation and structure prediction use the same Docker image for execution. This image, based on the public Nvidia CUDA image for Ubuntu 20, includes the v1.1 release of the public RoseTTAFold repository, as well as additional scripts for integrating with AWS services. CodeBuild will automatically download this container definition and build the required image during stack creation. However, end users can make changes to this image by pushing to the CodeCommit repository included in the stack. For example, users could replace the included MSA algorithm (hhblits) with an alternative like MMseqs2 or replace the RoseTTAFold network with an alternative like AlphaFold 2 or Uni-Fold.

Costs

This workload costs approximately $217 per month to maintain, plus another $2.56 per job.

Deployment

AWS-RoseTTAFold Dewployment

Running the CloudFormation template at config/cfn.yaml creates the following resources in the specified availability zone:

  1. A new VPC with a private subnet, public subnet, NAT gateway, internet gateway, elastic IP, route tables, and S3 gateway endpoint.
  2. A FSx Lustre file system with 1.2 TiB of storage and 120 MB/s throughput capacity. This file system can be linked to an S3 bucket for loading the required reference data when the first job executes.
  3. An EC2 launch template for mounting the FSX file system to Batch compute instances.
  4. A set of AWS Batch compute environments, job queues, and job definitions for running the CPU-dependent data prep job and a second for the GPU-dependent prediction job.
  5. CodeCommit, CodeBuild, CodePipeline, and ECR resources for building and publishing the Batch container image. When CloudFormation creates the CodeCommit repository, it populates it with a zipped version of this repository stored in a public S3 bucket. CodeBuild uses this repository as its source and adds additional code from release 1.1 of the public RoseTTAFold repository. CodeBuild then publishes the resulting container image to ECR, where Batch jobs can use it as needed.

Licensing

This library is licensed under the MIT-0 License. See the LICENSE file for more information.

The University of Washington has made the code and data in the RoseTTAFold public repository available under an MIT license. However, the model weights used for prediction are only available for internal, non-profit, non-commercial research use. For information, please see the full license agreement and contact the University of Washington for details.

Security

See CONTRIBUTING for more information.

More Information

Owner
AWS Samples
AWS Samples
discord vc exploit to lightly lag vcs

discord-vc-reconnector discord vc exploit to lag vcs how to use open the py file, then open devtools on discord, go to network and join a vc, dont sta

Tesco 30 Aug 09, 2022
Python client for the Socrata Open Data API

sodapy sodapy is a python client for the Socrata Open Data API. Installation You can install with pip install sodapy. If you want to install from sour

Cristina 368 Dec 09, 2022
Create a roles overview page for all Ansible roles/playbooks in Gitlab

ansible-create-roles-overview Overview The script ./create_roles_overview.py queries a Gitlab API for Ansible roles and playbooks. It will iterate ove

2 Oct 11, 2021
Snipe fair coin launches. Contact @dannsniper on telegram for whitelist

Pancakeswap-sniper Pancakeswap Sniper bot Full version of Pancakeswap sniping bot used to snipe during fair coin launches. With advanced options and a

36 Nov 01, 2021
A discord bot to check if messages have the correct code formatting.

discord-code-formatter A discord bot to check if messages have the correct code formatting. This was a basic project to help me learn Python and learn

Nash Boisvert 1 Nov 23, 2021
Botto - A discord bot written in python that uses the hikari and lightbulb modules to make this bot

❓ About Botto Hi! This is botto, a discord bot written in python that uses the h

3 Sep 13, 2022
This is a simple code for discord bot !

Discord bot dice roller this is a simple code for discord bot it can roll 1d4, 1d6, 1d8, 1d10, 1d12, 1d20, 1d100 for you in your discord server. Actua

Mostafa Koolabadi 0 Jan 02, 2022
A script that writes automatic instagram comments under a post

Send automatic messages under a post on instagram Instagram will rate limit you after some time. From there on you can only post 1 comment every 40 se

Maximilian Freitag 3 Apr 28, 2022
Jackrabbit Relay is an API endpoint for stock, forex and cryptocurrency exchanges that accept REST webhooks.

JackrabbitRelay Jackrabbit Relay is an API endpoint for stock, forex and cryptocurrency exchanges that accept REST webhooks. Disclaimer Please note RA

Rose Heart 23 Jan 04, 2023
:globe_with_meridians: A Python wrapper for the Geocodio geolocation service API

Py-Geocodio Python wrapper for Geocodio geocoding API. Full documentation on Read the Docs. If you are upgrading from a version prior to 0.2.0 please

Ben Lopatin 84 Aug 02, 2022
Simple script to extract useful informations from the combo BloodHound + Neo4j

bloodhound-quickwin Simple script to extract useful informations from the combo BloodHound + Neo4j. Can help to choose a target. Prerequisites python3

140 Dec 21, 2022
A multipurpose Telegram Bot writen in Python for mirroring files

Deepak Clouds Mirror Deepak Clouds Torrent is a multipurpose Telegram Bot writen in Python for mirroring files on the Internet to our beloved Google D

MR.SHAGGY 0 Dec 19, 2021
Apex lets you build, deploy, and manage AWS Lambda functions with ease.

No longer maintained This software is no longer being maintainted and should not be chosen for new projects. See this issue for more information Apex

Apex 25 Dec 23, 2022
With this program you can work English & Turkish

1 - How Can I Work This? You must have Python compilers in order to run this program. First of all, download the compiler in the link. Compiler 2 - Do

Mustafa Bahadır Doğrusöz 3 Aug 07, 2021
TwitchAccountMaker - Twitch Account Maker with python

Twitch Account Creator A Twitch Account Creator, Requires Capmonster.cloud Verif

vanis / 1800 0 Jan 20, 2022
New developed moderation discord bot by archisha

Monitor42 New developed moderation discord bot by αrchιshα#5518. Details Prefix: 42! Commands: Moderation Use 42!help to get command list. Invite http

Kamilla Youver 0 Jun 29, 2022
Best DDoS Attack Script Python3, Cyber Attack With 40 Methods

MXDDoS - DDoS Attack Script With 40 Methods (Code Lang - Python 3) Please Don't Attack '.gov' and '.ir' Websites :) Features And Methods 💣 Layer7 GET

7 Mar 07, 2022
A discord bot wrapper for python have slash command

A discord bot wrapper for python have slash command

4 Dec 04, 2021
A EddieHub API python package.

EddieHub A EddieHub API python package. Made with Python3 (C) @FayasNoushad Copyright permission under MIT License License - https://github.com/Fayas

Fayas Noushad 5 Sep 22, 2021
Simple screen recorder

Kooha Simple screen recorder Description Kooha is a simple screen recorder built with GTK. It allows you to record your screen and also audio from you

Dave Patrick 1.2k Jan 03, 2023