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Building Supervised Fine-Tuning Data from NVIDIA Open-SWE-Traces: Trajectory Parsing, Patch Analysis, Token Budgets, and Tool-Use Metrics

Low Severity Global
Date Occurred Jun 27, 2026 00:02 UTC
Event Type AI News
Source MarkTechPost
Recorded Jun 27, 2026
Full Description

<p>In this tutorial, we work with NVIDIA's Open-SWE-Traces dataset to study agentic software-engineering trajectories for fine-tuning. We stream the data directly from Hugging Face, so we can process it efficiently in Google Colab without downloading everything locally. We normalize multi-turn agent conversations, parse final code patches, and build an analysis DataFrame covering trajectory length, tool usage, patch size, language distribution, and resolution outcomes. We then curate a supervise

AI Intelligence Layer

Mentioned Organisations

Google Hugging Face NVIDIA

AI Categories

research
Event Metadata
  • ID #11665
  • Type AI News
  • Region Global
  • Severity Low
  • Indexed Jun 27, 2026