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Current Training Schedule: Summer 2024

Please note that we are transitioning to offering classes on Thursdays, when we have held classes on Wednesdays for many years.

Please note the location for your selected class. We are offering both in-person and virtual classes this year.

Important note: for virtual classes, you should receive an confirmation email from the Harvard Training Portal with a Zoom link. If you do not have your email address on file in the Training Portal, such messages cannot be sent to you. Please contact us for the Zoom meeting details if you do not get a confirmation email.

Class

Date

Time

Location

Training Materials

Registration

Intro to Parallel Computing

Thursday, June 27th, 2024

10am to 12pm

in person

User Training github

Registration link coming soon!

Intro to MATLAB

Thursday, July 11th, 2024

10am to 12pm

online

User Training github

Registration link coming soon!

O2 Portal - Simplifying the Interaction and Experience of Using an HPC Environment

Thursday, July 18th, 2024

10am to 12pm

online

User Training github

Registration link coming soon!

Intro to Python

Thursday, August 1, 2024

10am to 12pm

online

User Training github

Registration link coming soon!

Intro to O2

Thursday, August 8, 2024

10am to 12pm

online

User Training github

Registration link coming soon!

Additional classes will be added for the Fall semester.

Class Registration Process

Registrations are managed through the Harvard Training Portal, which requires a Harvard ID (HUID). Those members of the extensive HMS community who do not currently have HUIDs - such as employees at affiliate hospitals, or collaborators from other institutions - may self-register for one as a "Harvard Sponsored Role” with their faculty member's sponsorship. This form may take several days to process, please visit this page for details: https://it.hms.harvard.edu/our-services/accounts-and-user-access/person-interest-poi

Class Descriptions

Classes taught by HMS Research Computing Staff:

 Intermediate O2

Intermediate O2 is for current O2 users who would like to brush up on their bash skills, learn more advanced file transfer techniques, and unleash some of the powerful features of the SLURM scheduler.

 Intro to Git and GitHub

This course introduces Git and GitHub and covers topics including: Getting Started with Git for version control, Using GitHub Desktop effectively, Collaborating with others on GitHub, and Utilizing GitHub Flow for better workflow. No previous exposure is assumed. We hope attendees will leave the class with the knowledge and tools necessary to start integrating Git into their workflows and excited to begin collaborating on GitHub.

 Intro to MATLAB

Matlab has become the “language of science” in the past few decades. It is simple to use, yet powerful enough to be productive on large computing infrastructures. If you need: 1) Fast prototyping of research ideas; or 2) avoid spending too much time in coding instead of doing real science by taking advantage of Matlab’s built-in functions; 3) User friendly graphical interface and educational documentation; 4) Simplicity of code; 5) Easy access to GPU computing power; 6) Easy plotting and presentation of data; you will find this introduction course useful. This course will introduce the basics of the MATLAB coding language with O2-scalability and data presentation.

 Intro to O2

Intro to O2 addresses the needs of users who have very little linux experience, and are just getting started with the O2 high performance compute cluster. We will cover linux basics, and the concept of the Slurm scheduler and jobs, as well as data management best practices.

 Intro to Parallel Computing

This is a short introduction to Parallel Computing that will include an overview of the basic concepts of parallel programming: from running your job in an embarrassingly parallel way to writing simple shared and distributed memory parallelization codes in different languages. The seminar will cover several examples of actual parallel codes however it will not have any "hands on" components. A basic programming experience (of any language, no parallelization) is preferred in order to better follow the topics presented during the seminar.

 Intro to Python

Python is a popular scripting language for scientific computing and available across all computer platforms. The course will introduce you to some of the basics of the Python language as well as some of the nuances involved with its use specific to the O2 environment. The goal is to provide users with a foundational level of familiarity. Topics covered include basic data types and declaration, flow control (if/else), loops, a brief introduction to constructing a script, and a briefer introduction to modules. The course will be taught on O2, but general concepts are easily translatable to desktop and local installations.

 Intro to R/Bioconductor

Intro to using R and Bioconductor. R is a powerful, open-source, highly adaptable statistical language useful for crunching numbers to datasets like those produced by next-gen sequencing. This class covers R basics and learning to think like/understand R. Users will learn how to set up personal R libraries on O2, and use O2 R for its high memory allocations and parallelization. Topics include how to install packages, learn about variables, data types. data manipulation, flow control, and functions, perform simple statistical tests, and create a variety of plots. Laptops are encouraged.

 Introduction to Globus Data Transfer and Data Collaboration on O2

This course is designed to showcase the Globus specific data transfer and sharing functionality that is available to anyone with o2 access. We will be going over not only how to share data with collaborators outside of HMS, but also how to receive data from outside collaborators. The class will delve into the Globus features that are available via the Globus website at first and eventually transition into the functionality provided by the globus cli.

 O2 Portal - Simplifying the Interaction and Experience of Using an HPC Environment

Description:
O2 Portal is web-based access point to O2 powered by Open OnDemand. This short training teaches you the basic functions of O2 Portal, including file transfer, Slurm job submission and monitoring desktop activities and a few popular applications such as Matlab, Jupyter and Rstudio.
Audience:
Anyone interested in using the O2 resources for their projects.
Prerequisites:
Familiarity with the O2 cluster and the Slurm scheduler.

 Optimizing O2 Jobs

Description:
In this short seminar we cover some simple but essential rules to use the O2 cluster in the most efficient (and inexpensive ) way.
Audience:
Anyone running jobs in the O2 cluster
Prerequisites:
Familiarity with the O2 cluster and the Slurm scheduler.

 RCBio: easy and quick HPC pipeline builder & runner

RCBio is a HPC pipeline runner and workflow tool supported by HMS RC consultants. It was first designed for a Neubiology lab and later opened to all O2 users. RCBio helps users to quickly build and run multiple steps data analysis pipeline on a computer cluster. RCBio automatically keeps logs on all job status and use email to notify user. When re-run the same pipeline, RCBio automatically submit failed jobs and ask user if she/he want to re-run the successful jobs. Here is our wiki page about the RCBio project: RC workflows

 Troubleshooting O2 jobs

The “Troubleshooting O2 Jobs” class will teach you how to debug problems when running analyses on the O2 High Performance Compute Cluster. We will examine faulty job submissions to give you hands-on problem solving experience. You will learn how to request appropriate resources and set up your environment to successfully execute your jobs.

Prerequisites:

We recommend taking the “Intro to O2” class prior to “Troubleshooting O2 Jobs”.

 Where Should I Put My Data? Understanding Data Storage at HMS

Description:
As research grows increasingly more complex, arrangements for data storage and transmission of research data require continuous review and modification. Data storage encompasses not only the specific location where data will be kept and managed, but also aspects of data privacy, data security, data organization, and eventual sharing or reuse.

During this short training seminar, we will discuss:

  • How to incorporate storage management into your research workflows

  • Where to properly store data based on how the data will be generated and utilized

  • Highlight the available storage options at Harvard Medical School

  • Learn how to protect your data from unauthorized access or data loss

  • Understand how to incorporate your storage selections into your NIH Data Management and Sharing Plans for grants 

Audience:

Primarily focused on HMS related tools and materials. Open to members of the Longwood Medical Area community, including researchers, faculty and staff.

Prerequisites:

None

Classes sponsored by HMS Research Computing but taught by our partner organizations:

 Medical Image Processing and Machine Learning Workflow

Overview

Medical images are obtained from various sources including MRI, CT, X-ray, ultrasound, and PET scans. Analyzing these images necessitates a comprehensive environment for data access, visualization, processing, and algorithm development. A key challenge involves extracting quantitative features to generate clinically relevant information using advanced techniques like machine learning algorithms.  This presentation will explore radiomics, which captures characteristics not typically visible. Radiomics features can be employed across various medical imaging modalities and applications, enabling the study of associations between imaging features and patient biology, as well as the prediction of clinical outcomes, making radiomics a versatile technique in medical imaging. These features quantify shape, intensity, and texture characteristics within medical images, reducing reliance on subjective interpretation for clinical workflows.

Highlights

In this session, you will learn how to:

  • Import and manage large sets of images without loading them into memory,

  • Extract shape, intensity, and texture radiomics features,

  • Reduce the number of extracted features for classification,  

  • Build a deep learning network to classify images, and

  • Review and analyze the results.

Class Materials

Link to class materials

 BioGrids Academic Software Platform: No Installation Required

Academic Software Platform (ASP) integrates two major stacks of scientific software: BioGrids stack of ~400 biomedical applications (https://biogrids.org/software/) as well as SBGrid stack of ~500 structural biology applications. Multiple versions of applications are maintained, and users can also easily install the same stack of software on laptops, research workstations or cloud resources, under Linux or Mac OS X operating systems. More information about this resource is available on O2 wiki: https://harvardmed.atlassian.net/wiki/spaces/O2/pages/1630994700/Using+Software+Provided+by+BioGrids

 Parallel Computing with MATLAB Part 1

Overview:

 During this hands-on workshop, you will be introduced to parallel and GPU computing in MATLAB for speeding up your applications and offloading computations.  By working through common scenarios and workflows, you will gain an understanding of the parallel constructs in MATLAB, their capabilities, and some of the issues that may arise when using them.

Highlights:

  • Speeding up programs with parallel computing

  • Working with large data sets

  • GPU computing

  • Scaling to your HPC cluster

Requirements:

 Parallel Computing with MATLAB - Part 2

MATLAB Parallel Server™ lets you scale MATLAB® programs and Simulink® simulations to clusters and clouds. This two-part, hands-on workshop is designed to introduce users to parallel computing constructs in MATLAB and to show them how they can scale their jobs to the HPC clusters on campus.

  • Scaling MATLAB to the BigPurple cluster – users will follow along as instructors demonstrate how to configure MATLAB to submit to the   cluster

  • Running single- and multi-node MATLAB jobs

  • Differences between parpool and batch job submission

  • Non-interactive submission via Slurm

 HBC Current Topics in Bioinformatics: Shell Tips and Tricks on O2

In this workshop we invite users of the HMS Research Computing Cluster O2 and members of the Harvard community who are interested in using a compute cluster to join us as we demonstrate some very helpful tips and best practices. We will introduce participants to various commands and approaches to help effectively navigate use the cluster and complete tasks in an efficient manner. We encourage participants to log on to the cluster and follow along interactively, however attendees can also watch the demonstration. This workshop is being held in collaboration with HMS Research Computing, and is an advanced workshop requiring knowledge of the command-line and/or the basic shell skills learned in The Foundation - Basic Shell.

Additional computational trainings available through other groups

Please reach out directly to the above groups if you are interested in attending their trainings.

Contact us

Please reach out to HMS Research Computing at rchelp@hms.harvard.edu with any questions about training. We are here to assist if you are having difficulty registering for a class, or if you are wondering when a topic will be offered next!

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