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gw-odw / Odw 2019

Licence: gpl-3.0

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GW Open Data Workshop #2: Hands-on exercises

Material to support the GW Open Data Workshop #2, April 8-10, 2019

Software setup

Instructions for accessing the required software are available here

Hands-on Session Program

Day 1 hands-on session

Day 1 tutorials

Topics:

  • Discover, download, and read data
  • FFTs, PSDs, and whitening
  • Working with segments lists and Timelines
  • Plot spectrograms to identify glitches, signals, and hardware injections

Day 2 hands-on session

Day 2 tutorials

Topics:

  • GW signals from compact object mergers
  • Matched filtering to identify compact object mergers
  • Working with compact object merger parameters and waveforms
  • Working with skymaps to identify likely source locations

Day 3

Challenge

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