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Class | Date | Time | Location | Training Materials | Registration |
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Intro to MATLAB | Thursday, September 19, 2024 | 10am to 12pm | online | Coming soonRegister here! | |
Intro to Parallel Computing | Thursday, September 26, 2024 | 10am to 12pm | online | Coming soonRegister here! | |
Optimizing O2 Jobs | Thursday, October 3, 2024 | 10am to 12pm | in person | Coming soonRegister here! | |
Intro to Python | Thursday, October 10, 2024 | 10am to 12pm | online | Coming soonRegister here! | |
Class in collaboration with MathWorks, subject TBAParallel Computing with MATLAB | Thursday, October 17, 2024 | 10am to 12pm | in person | Coming soonRegister here! | |
Data Management: Computing Strategies and Resources (in collaboration with Countway Library and FAS Research Computing) | Thursday, October 24, 2024 | 10am to 11am | online | ||
O2 Portal - Simplifying the Interaction and Experience of Using an HPC Environment | Thursday, October 31, 2024 | 10am to 12pm | online | ||
Intro to Python | Thursday, November 14, 2024 | 10am to 12pm | online | Coming soonRegister here! | |
Intro to O2 | Thursday, November 21, 2024 | 10am to 12pm | in person | Coming soonRegister here! | |
RCBio: easy and quick HPC pipeline builder & runner | Thursday, December 5, 2024 | 10am to 12pm | online | User Training githubComing soon | |
Shell Tips and Tricks on O2: HBC Current Topics in Bioinformatics | Wednesday, December 11, 2024 | 1pm to 4pm | online |
Additional classes will be added for the Spring semester.
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Classes sponsored by HMS Research Computing but taught by our partner organizations:
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Overview We will introduce parallel and distributed computing with a focus on speeding up application codes. By working through common scenarios and workflows using hands-on demos, you will gain a detailed understanding of the parallel constructs in MATLAB, their capabilities, and some of the common hurdles that you'll encounter when using them. Highlights
Who Should Attend Researchers, scientists, and students interested in advancing the pace of their research by using parallel computing strategies. |
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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:
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