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README
License: apache-2.0Contract
Input messages contain:
context: file name, code/runtime snippets, and glossary.inputSegments: subtitleidandtextonly.timeline: subtitleid,startMs, andendMs.
Output must be one JSON object:
json
{"segments":[{"id":"subtitle-1","text":"这里用 useState 维护 count"}],"chapters":[{"title":"状态设计","startMs":0,"endMs":1000}]}
segments should be sparse and contain only changed subtitles.
Training Notes
- Base:
HuggingFaceTB/SmolLM2-135M-Instruct - Records: 450 curated/distilled examples
- Epochs: 2
- Final train loss: 0.2545
- Corpus gates: JSON valid rate 1.0, sparse output rate 0.9333, unknown segment reference rate 0
Model provider
ceilf6
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Base
HuggingFaceTB/SmolLM2-135M-Instruct
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this model
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