Debanjum 153ae8bea9 Cut binary, long output files from code result for context efficiency
Removing binary data and truncating large data in output files
generated by code runs should improve speed and cost of research mode
runs with large or binary output files.

Previously binary data in code results was passed around in iteration
context during research mode. This made the context inefficient
because models have limited efficiency and reasoning capabilities over
b64 encoded image (and other binary) data and would hit context limits
leading to unnecessary truncation of other useful context

Also remove image data when logging output of code execution
2024-11-13 14:32:22 -08:00
2024-11-12 10:32:56 -08:00
2024-11-12 10:32:56 -08:00

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