Akeem
@akeem
working on Meridian, my newsletter that aggregates insights from crypto podcast, I leverage LLMs regularly as leverage. Sometimes to eliminate things that would otherwise be a pain in the neck to write.
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Akeem
@akeem
transcribing podcast in generally a starting point, base transcriptions can identify that several people are talking but not who they are. So enrichment is needed
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Akeem
@akeem
The context is in the conversation, and is an easy task for a human. For examples sake, we can say that introductions occur within the first few minutes of a podcast and the enrichment can occur
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Akeem
@akeem
The last issue of the newsletter covered 22 podcasts, that is a pretty heavy time investment for each issue. So I decided to see how far I could get with some of the easily accessible models
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Akeem
@akeem
We sort of do this heuristic in our head of eliminating who the speaker isn't each time we listen to a new podcast. Since we can give the model a fair bit of context it should be able to knock it all down
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