integration: improve vision test robustness and add thinking tests

Add skipIfNoVisionOverride() to skip vision tests when OLLAMA_TEST_MODEL
is set to a non-vision model. Add Think:false to context exhaustion test
to prevent thinking models from using all context before the test can
measure it. Add third test image (ollama homepage) and replace OCR test
with ImageDescription test using it. Relax match strings for broader
model compatibility. Add TestThinkingEnabled and TestThinkingSuppressed
to verify thinking output and channel tag handling.
This commit is contained in:
Daniel Hiltgen
2026-03-30 14:58:08 -07:00
parent e38b606e8b
commit f6b69f3f28
12 changed files with 1213 additions and 21 deletions

View File

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// imageEncodingOllamaHome is a 415x293 JPEG of the ollama.com homepage.
// Shows a cartoon llama character with text "Start building with open models".
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