In-Context Learning vs Supervised Fine-Tuning with Sharon Zhou
Mar 24, 2026•Channel
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Video Details
Published3 months ago
Duration1:27
Video IDdL1CDTsdEhM
Languageen
CategoryScience & Technology
PrivacyPublic
Made for KidsNo
Video TypeYouTube Short
Performance Metrics
Views809
Likes12
Comments0
Engagement Rate1.48%
Likes per 100 views1.48
Comments per 1K views0.00
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Description
In-context learning works by putting important information and examples into the prompt context itself, and it can be pretty effective for many use cases—but not all. In her recent conversation with Ben Lorica, AMD’s Sharon Zhou detailed the benefits and trade-offs of in-context learning and supervised fine-tuning, explaining when you may want to use one over the other. #shorts
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