How to avoid memory problem while processing huge table?
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I have a huge observation table with around 30 Lacs of rows and 12 columns. While training knn classifier in 2016a version, I am getting errors related to memory. Is there any way to avoid this? I have tried to reduce rows but it's affecting the output quality.
Each row in table is a pixel and it's other values as features in columns. In one set of MRI scan, there are around 20 images of 512x512, I am loading one set for creating observation table. Is there another way to pass large amount of data to knn classifier?
Risposte (1)
KSSV
il 31 Ago 2016
1 voto
doc datastore, memmap, mapreduce.
1 Commento
Nitinkumar Ambekar
il 1 Set 2016
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