MSKazemi/ExaBench-QA
ExaBench-QA is a benchmark and dataset for evaluating role-aware, LLM-based AI agents for High-Performance Computing (HPC). Includes a corpus of queries, taxonomies, and a JSON schema.
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Jupyter Notebook
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Apache-2.0
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Last pushed
Nov 04, 2025
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