1,000 Agent Tasks in a Sandbox: What Breaks When LLMs Write and Run Code
Official Schedule Context
- Date/time: 2026-06-30 · 2:25pm-2:45pm
- Track/room: Sandbox & Platform Engineering · Track 1
- Speaker(s): Kevin Orellana
- Session type/status: session · confirmed
Official Description
We ran 1,000 automated tasks through a production code interpreter sandbox — file I/O, package
installs, data analysis, ML training, binary downloads, multi-language execution — and tracked every
failure. 88% passed. The other 12% revealed 18 distinct failure modes that no unit test would catch:
binary encoding corruption in the transport layer, null bytes silently truncating file downloads,
pip blocked by network isolation with no useful error, and path traversal inputs accepted without
validation. This talk walks through the experiment design, the findings ranked by severity, and what
we changed. If you are building or operating sandboxed execution for AI agents, these are the bugs
waiting for your customers to find first.
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