Daveturner (talk | contribs) |
Daveturner (talk | contribs) |
||
Line 1: | Line 1: | ||
= Big Data course on Beocat = | |||
The Pittsburgh Supercomputing Center hosts 2-day remote Big Data workshops | The Pittsburgh Supercomputing Center hosts 2-day remote Big Data workshops |
Revision as of 13:50, 24 March 2020
Big Data course on Beocat
The Pittsburgh Supercomputing Center hosts 2-day remote Big Data workshops several times each year. The information provided here will allow individual users to go through the videos at their own pace and perform the exercises on our local Beocat supercomputer. Each exercise will have data and results tailored to each individual to allow instructors to measure the progress of students assigned to take this course interactively.
Use the Agenda website below to access the slides starting with the Welcome slides that don't have an associated video. The '>' sign at the start of lines below represents the command line prompt on Beocat, and '>>>' represents the prompt you'll get when you start pyspark or python.
Agenda: https://www.psc.edu/hpc-workshop-series/big-data
Videos: https://www.youtube.com/watch?v=NpapUmGHXyw&list=PLdkRteUOw2X-YKqommnuGWqNfEEUG6P2E
Welcome
ssh into Beocat from your computer and copy the workshop data to your home directory.
> cp -rp ~daveturner/workshops/bigdata_workshop . > cd bigdata_workshop
PDF versions of the slides are available for each section as are directories containing the data for each set of exercises. You'll need to copy the PDF files to your local computer for viewing.
Go through the Welcome slides from the Agenda website link or PDF file Big_Data_Welcome.pdf. Much of this information is specific to the Bridges supercomputer at PSC so just scan over these slides.
Intro to Big Data
[web link is bad] Watch the video 'Intro to Big Data - Big Data Video 1' (slides are A_Brief_History_of_Big_Data.pdf)
Hadoop
==
Watch the video 'Hadoop - Big Data Video 2' (slides are Hadoop2019.pdf) We do not have Hadoop on Beocat so the commands they cover will not work locally