YunLearnAI

32 posts

YunLearnAI

YunLearnAI

@YunLearnAI

เข้าร่วม Temmuz 2023
7 กำลังติดตาม4 ผู้ติดตาม
YunLearnAI รีทวีตแล้ว
OpenAI
OpenAI@OpenAI·
ChatGPT can now browse the internet to provide you with current and authoritative information, complete with direct links to sources. It is no longer limited to data before September 2021.
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YunLearnAI
YunLearnAI@YunLearnAI·
it does a great job of seeking areas in the data that have a high density of observations, versus areas of the data that are not very dense with observations. DBSCAN can sort data into clusters of varying shapes as well elutins.medium.com/dbscan-what-is… #DBSCAN #aigraph
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YunLearnAI
YunLearnAI@YunLearnAI·
BERT’s secret sauce lies in its ability to understand the bidirectional context. @shaikhrayyan123/a-comprehensive-guide-to-understanding-bert-from-beginners-to-advanced-2379699e2b51" target="_blank" rel="nofollow noopener">medium.com/@shaikhrayyan1
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YunLearnAI
YunLearnAI@YunLearnAI·
@zaiinn440/a-comparative-analysis-of-llms-like-bert-bart-and-t5-a4a873251ff" target="_blank" rel="nofollow noopener">medium.com/@zaiinn440/a-c… In the case of BERT, the model is trained to predict one word for the corresponding mask. But T5 is hybrid. It is trained to output one word or multiple words for one mask
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YunLearnAI
YunLearnAI@YunLearnAI·
Euclidean distance is sensitive to the magnitudes of the vectors, whereas cosine similarity is not. @swansburg.justin/how-to-use-llms-to-build-better-clustering-models-9b17a5491bb4" target="_blank" rel="nofollow noopener">medium.com/@swansburg.jus…
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YunLearnAI
YunLearnAI@YunLearnAI·
Imagine islands on the ocean, where the sea level is the threshold and the different islands are your clusters. The land below the sea level is noise. As the sea level goes down, new islands appear some islands combine to form bigger island #aigraph towardsdatascience.com/a-gentle-intro…
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YunLearnAI
YunLearnAI@YunLearnAI·
the proposed HAC ultilize the information of the algorithm, reduce the unnecessary computation. Used unsupervised classification accuracy (confusion matrix) to measure the performance. It' s quite intuitive and reasonable. #aigraph arxiv.org/abs/1301.7401
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