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      <title>All about running jobs on HTCondor</title>
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      <description>Disclaimer: Based on Google Gemini-Pro prompts!
If you are a PhD student or researcher working in gravitational-wave astronomy, machine learning, or high-performance data analysis, you will eventually find yourself submitting jobs to a massive compute cluster like the LIGO Data Grid (LDG) or a local university cluster. At the heart of these environments sits HTCondor—a workload management system designed for High-Throughput Computing (HTC).
HTCondor is incredibly powerful; it can manage hundreds of thousands of concurrent tasks, running your parameter estimation campaigns (bilby, dynesty, nessai, pocomc) across thousands of CPU cores and GPUs seamlessly.</description>
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