Upcoming SciNet Events

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August,2020
Fri 7th Aug
12:30 pm
2:00 pm
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Learn how to model the neural network in the brain using Python. Location: SciNet Online
Tue 11th Aug
12:30 pm
2:00 pm
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Learn parallel programming R, with a focus on parallel data analysis. Location: SciNet Online
Wed 12th Aug
12:30 pm
2:00 pm
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Learn parallel programming R, with a focus on parallel data analysis. Location: SciNet Online
Thu 13th Aug
12:30 pm
2:00 pm
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Learn parallel programming R, with a focus on parallel data analysis. Location: SciNet Online
Tue 18th Aug
12:30 pm
2:00 pm
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Learn how to perform data cleaning and statistical analysis of large scale genetic data using PLINK and R software. We will use SciNet to run the PLINK analytical workflow to perform markers and individuals quality control, including population stratification and ancestry followed by association analysis between genetic variation and trait of interest. R-software (basic R plotting and ggplot package) will be use to visualize the results. Location: SciNet Online
Wed 19th Aug
12:30 pm
2:00 pm
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Learn how to perform data cleaning and statistical analysis of large scale genetic data using PLINK and R software. We will use SciNet to run the PLINK analytical workflow to perform markers and individuals quality control, including population stratification and ancestry followed by association analysis between genetic variation and trait of interest. R-software (basic R plotting and ggplot package) will be use to visualize the results. Location: SciNet Online
Thu 20th Aug
12:30 pm
2:00 pm
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Learn how to perform data cleaning and statistical analysis of large scale genetic data using PLINK and R software. We will use SciNet to run the PLINK analytical workflow to perform markers and individuals quality control, including population stratification and ancestry followed by association analysis between genetic variation and trait of interest. R-software (basic R plotting and ggplot package) will be use to visualize the results. Location: SciNet Online